gx
chenyc
2025-02-12 ea42ff3ebee1eeb3fb29423aa848a249441db81c
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
254
255
256
257
258
259
260
261
262
263
264
265
266
267
268
269
270
271
272
273
274
275
276
277
278
279
280
281
282
283
284
285
286
287
288
289
290
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
309
310
311
312
313
314
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
338
339
340
341
342
343
344
345
346
347
348
349
350
351
352
353
354
355
356
357
358
359
360
361
362
363
364
365
366
367
368
369
370
371
372
373
374
375
376
377
378
379
380
381
382
383
384
385
386
387
388
389
390
391
392
393
394
395
396
397
398
399
400
401
402
403
404
405
406
407
408
409
410
411
412
413
414
415
416
417
418
419
420
421
422
423
424
425
426
427
428
429
430
431
432
433
434
435
436
437
438
439
440
441
442
443
444
445
446
447
448
449
450
451
452
453
454
455
456
457
458
459
460
461
462
463
464
465
466
467
468
469
470
471
472
473
474
475
476
477
478
479
480
481
482
483
484
485
486
487
488
489
490
491
492
493
494
495
496
497
498
499
500
501
502
503
504
505
506
507
508
509
510
511
512
513
514
515
516
517
518
519
520
521
522
523
524
525
526
527
528
529
530
531
532
533
534
535
536
537
538
539
540
541
542
543
544
545
546
547
548
549
550
551
552
553
554
555
556
557
558
559
560
561
562
563
564
565
566
567
568
569
570
571
572
573
574
575
576
577
578
579
580
581
582
583
584
585
586
587
588
589
590
591
592
593
594
595
596
597
598
599
600
601
602
603
604
605
606
607
608
609
610
611
612
613
614
615
616
617
618
619
620
621
622
623
624
625
626
627
628
629
630
631
632
633
634
635
636
637
638
639
640
641
642
643
644
645
646
647
648
649
650
651
652
653
654
655
656
657
658
659
660
661
662
663
664
665
666
667
668
669
670
671
672
673
674
675
676
677
678
679
680
681
682
683
684
685
686
687
688
689
690
691
692
693
694
695
696
697
698
699
700
701
702
703
704
705
706
707
708
709
710
711
712
713
714
715
716
717
718
719
720
721
722
723
724
725
726
727
728
729
730
731
732
733
734
735
736
737
738
739
740
741
742
743
744
745
746
747
748
749
750
751
752
753
754
755
756
757
758
759
760
761
762
763
764
765
766
767
768
769
770
771
772
773
774
775
776
777
778
779
780
781
782
783
784
785
786
787
788
789
790
791
792
793
794
795
796
797
798
799
800
801
802
803
804
805
806
807
808
809
810
811
812
813
814
815
816
817
818
819
820
821
822
823
824
825
826
827
828
829
830
831
832
833
834
835
836
837
838
839
840
841
842
843
844
845
846
847
848
849
850
851
852
853
854
855
856
857
858
859
860
861
862
863
864
865
866
867
868
869
870
871
872
873
874
875
876
877
878
879
880
881
882
883
884
885
886
887
888
889
890
891
892
893
894
895
896
897
898
899
900
901
902
903
904
905
906
907
908
909
910
911
912
913
914
915
916
917
918
919
920
921
922
923
924
925
926
927
928
929
930
931
932
933
934
935
936
937
938
939
940
941
942
943
944
945
946
947
948
949
950
951
952
953
954
955
956
957
958
959
960
961
962
963
964
965
966
967
968
969
970
971
972
973
974
975
976
977
978
979
980
981
982
983
984
985
986
987
988
989
990
991
992
993
994
995
996
997
998
999
1000
1001
1002
1003
1004
1005
1006
1007
1008
1009
1010
1011
1012
1013
1014
1015
1016
1017
1018
1019
1020
1021
1022
1023
1024
1025
1026
1027
1028
1029
1030
1031
1032
1033
1034
1035
1036
1037
1038
1039
1040
1041
1042
1043
1044
1045
1046
1047
1048
1049
1050
1051
1052
1053
1054
1055
1056
1057
1058
1059
1060
1061
1062
1063
1064
1065
1066
1067
1068
1069
1070
1071
1072
1073
1074
1075
1076
1077
1078
1079
1080
1081
1082
1083
1084
1085
1086
1087
1088
1089
1090
1091
1092
1093
1094
1095
1096
1097
1098
1099
1100
1101
1102
1103
1104
1105
1106
1107
1108
1109
1110
1111
1112
1113
1114
1115
1116
1117
1118
1119
1120
1121
1122
1123
1124
1125
1126
1127
1128
1129
1130
1131
1132
1133
1134
1135
1136
1137
1138
1139
1140
1141
1142
1143
1144
1145
1146
1147
1148
1149
1150
1151
1152
1153
1154
1155
1156
1157
1158
1159
1160
1161
1162
1163
1164
1165
1166
1167
1168
1169
1170
1171
1172
1173
/**
 * @license
 * Copyright 2018 Google LLC
 *
 * Use of this source code is governed by an MIT-style
 * license that can be found in the LICENSE file or at
 * https://opensource.org/licenses/MIT.
 * =============================================================================
 */
/* Original source: keras/engine/topology.py */
import { tidy } from '@tensorflow/tfjs-core';
import { getUid } from '../backend/state';
import { NotImplementedError, RuntimeError, ValueError } from '../errors';
import { deserialize as deserializeLayer } from '../layers/serialization';
import * as generic_utils from '../utils/generic_utils';
import { convertTsToPythonic } from '../utils/serialization_utils';
import * as types_utils from '../utils/types_utils';
import { batchSetValue } from '../variables';
import { version as layersVersion } from '../version';
import { execute, FeedDict } from './executor';
import { InputLayer } from './input_layer';
import { Layer, Node } from './topology';
// get weights key from tensor map in order to check if it is from keras v3.
// e.g. dense/0
const isKerasSavedModelFormat = (weights) => {
    const keys = Object.keys(weights);
    if (keys.length === 0) {
        return false;
    }
    const key = keys[0].split('/');
    return !isNaN(parseInt(key[key.length - 1], 10));
};
/**
 * A Container is a directed acyclic graph of layers.
 *
 * It is the topological form of a "model". A LayersModel
 * is simply a Container with added training routines.
 *
 */
export class Container extends Layer {
    constructor(args) {
        // No args passed to super's constructor.
        super({});
        this.containerNodes = new Set();
        this.name = args.name;
        if (this.name == null) {
            const prefix = this.getClassName().toLowerCase();
            this.name = getUid(prefix);
        }
        this.supportsMasking = false;
        this.trainable_ = true;
        // TODO(michaelterry): Initialize perInputLosses/Updates here.
        // Container-specific properties.
        if (Array.isArray(args.inputs)) {
            this.inputs = args.inputs.slice();
        }
        else {
            this.inputs = [args.inputs];
        }
        if (Array.isArray(args.outputs)) {
            this.outputs = args.outputs.slice();
        }
        else {
            this.outputs = [args.outputs];
        }
        // Check for redundancy in inputs.
        if (generic_utils.unique(this.inputs).length !== this.inputs.length) {
            throw new ValueError('The list of inputs passed to the model is ' +
                'redundant. All inputs should only appear once. Found: ' +
                `${this.inputs.map(x => x.name)}`);
        }
        // Check for redundancy in outputs.
        if (generic_utils.unique(this.outputs).length !== this.outputs.length) {
            console.warn('The list of outputs passed to the model is redundant. ' +
                'All outputs should only appear once. Found: ' +
                `${this.outputs.map(x => x.name)}`);
        }
        /*
          List of initial layers (1 to 1 mapping with this.inputs, hence the same
          layer might appear twice)
        */
        this.inputLayers = [];
        this.inputLayersNodeIndices = [];
        this.inputLayersTensorIndices = [];
        /*
          List of layers (1 to 1 mapping with this.outputs, hence the same layer
          might appear twice)
        */
        this.outputLayers = [];
        this.outputLayersNodeIndices = [];
        this.outputLayersTensorIndices = [];
        /*
          All layers in order of horizontal graph traversal. Entries are unique.
          Includes input and output layers.
        */
        this.layers = [];
        /*
          References to container layers that were constructed internally. We need
          these to properly dispose of tensors from nested containers.
        */
        this.internalContainerRefs = [];
        // TODO(michaelterry): Determine if caching still needed with eager
        // backend.
        /*
          This is for performance optimization when calling the Container on new
          inputs. Every time the Container is called on a set on input tensors,
          we compute the output tensors, output masks and output shapes in one pass,
          then cache them here. When one of these outputs is queried later,
          we retrieve it from there instead of recomputing it.
        */
        // this.outputTensorCache = {};
        // this.outputShapeCache = {};
        // Build this.outputLayers:
        for (const x of this.outputs) {
            const layer = x.sourceLayer;
            const nodeIndex = x.nodeIndex;
            const tensorIndex = x.tensorIndex;
            this.outputLayers.push(layer);
            this.outputLayersNodeIndices.push(nodeIndex);
            this.outputLayersTensorIndices.push(tensorIndex);
        }
        // TODO(michaelterry): Add output mask cache code.
        // Build this.inputLayers:
        for (const x of this.inputs) {
            const layer = x.sourceLayer;
            const nodeIndex = x.nodeIndex;
            const tensorIndex = x.tensorIndex;
            /*
              It's supposed to be an input layer, so only one node
              and one tensor output.
            */
            generic_utils.assert(nodeIndex === 0, 'input layer has >1 nodes');
            generic_utils.assert(tensorIndex === 0, 'input layer has >1 tensors');
            this.inputLayers.push(layer);
            this.inputLayersNodeIndices.push(nodeIndex);
            this.inputLayersTensorIndices.push(tensorIndex);
        }
        // Build this.inputNames and this.outputNames.
        this.inputNames = [];
        this.outputNames = [];
        this.feedInputShapes = [];
        this.feedInputNames = [];
        this.feedOutputNames = [];
        for (let i = 0; i < this.inputLayers.length; i++) {
            const layer = this.inputLayers[i];
            // Check that layer is an InputLayer.
            if (!(layer instanceof InputLayer)) {
                throw new TypeError('Input layers to a LayersModel must be InputLayer objects. ' +
                    `Received inputs: ${args.inputs}. ` +
                    `Input ${i} (0-based) originates ` +
                    `from layer type ${layer.getClassName()}.`);
            }
            this.inputNames.push(layer.name);
            this.feedInputShapes.push(layer.batchInputShape);
            this.feedInputNames.push(layer.name);
        }
        for (const layer of this.outputLayers) {
            this.outputNames.push(layer.name);
        }
        this.internalInputShapes = this.inputs.map(x => x.shape);
        this.internalOutputShapes = this.outputs.map(x => x.shape);
        /*
          Container_nodes: set of nodes included in the graph (not all nodes
          included in the layers are relevant to the current graph).
        */
        // ids of all nodes relevant to the Container:
        const nodesDepths = {};
        // To recover nodes from their ID.
        const nodeIDToNode = {};
        const layersDepths = {};
        // To layers from their ID.
        const layerIDToLayer = {};
        const layerIndices = {};
        const nodesInDecreasingDepth = [];
        /**
         * Builds a map of the graph of layers.
         *
         * This recursively updates the map `layerIndices`,
         * the list `nodesInDecreasingDepth` and the set `containerNodes`.
         *
         * @param tensor Some tensor in a graph.
         * @param finishedNodes Set of nodes whose subgraphs have been traversed
         *         completely. Useful to prevent duplicated work.
         * @param nodesInProgress Set of nodes that are currently active on the
         *         recursion stack. Useful to detect cycles.
         * @param layer Layer from which `tensor` comes from. If not provided,
         *   will be obtained from tensor.sourceLayer.
         * @param nodeIndex Node index from which `tensor` comes from.
         * @param tensorIndex TensorIndex from which `tensor` comes from.
         *
         * @exception RuntimeError if a cycle is detected.
         */
        const buildMapOfGraph = (tensor, finishedNodes, nodesInProgress, layer, nodeIndex, tensorIndex) => {
            if (layer == null || nodeIndex == null || tensorIndex == null) {
                layer = tensor.sourceLayer;
                nodeIndex = tensor.nodeIndex;
                tensorIndex = tensor.tensorIndex;
            }
            const node = layer.inboundNodes[nodeIndex];
            // Prevent cycles.
            if (nodesInProgress.indexOf(node) !== -1) {
                throw new RuntimeError(`The tensor ${tensor.name} at layer "${layer.name}" ` +
                    'is part of a cycle.');
            }
            // Don't repeat work for shared subgraphs
            if (finishedNodes.indexOf(node) !== -1) {
                return;
            }
            // Update containerNodes.
            this.containerNodes.add(Container.nodeKey(layer, nodeIndex));
            // Store the traversal order for layer sorting.
            if (!(layer.id in layerIndices)) {
                layerIndices[layer.id] = Object.keys(layerIndices).length;
            }
            if (nodesInProgress.indexOf(node) === -1) {
                nodesInProgress.push(node);
            }
            // Propagate to all previous tensors connected to this node.
            const numInboundLayers = node.inboundLayers.length;
            for (let i = 0; i < numInboundLayers; i++) {
                const x = node.inputTensors[i];
                const layer = node.inboundLayers[i];
                const nodeIndex = node.nodeIndices[i];
                const tensorIndex = node.tensorIndices[i];
                buildMapOfGraph(x, finishedNodes, nodesInProgress, layer, nodeIndex, tensorIndex);
            }
            finishedNodes.push(node);
            while (nodesInProgress.indexOf(node) >= 0) {
                nodesInProgress.splice(nodesInProgress.indexOf(node), 1);
            }
            nodesInDecreasingDepth.push(node);
        };
        const finishedNodes = [];
        const nodesInProgress = [];
        for (const x of this.outputs) {
            buildMapOfGraph(x, finishedNodes, nodesInProgress);
        }
        const reversedNodesInDecreasingDepth = nodesInDecreasingDepth.slice().reverse();
        for (const node of reversedNodesInDecreasingDepth) {
            nodeIDToNode[node.id] = node;
            // If the depth is not set, the node has no outbound nodes (depth 0).
            if (!(node.id in nodesDepths)) {
                nodesDepths[node.id] = 0;
            }
            let depth = nodesDepths[node.id];
            // Update the depth of the corresponding layer
            const previousDepth = (layersDepths[node.outboundLayer.id] == null ?
                0 :
                layersDepths[node.outboundLayer.id]);
            /*
              If we've seen this layer before at a higher depth, we should use that
              depth instead of the node depth.  This is necessary for shared layers
              that have inputs at different depth levels in the graph.
            */
            depth = Math.max(depth, previousDepth);
            layersDepths[node.outboundLayer.id] = depth;
            layerIDToLayer[node.outboundLayer.id] = node.outboundLayer;
            nodesDepths[node.id] = depth;
            // Update the depth of inbound nodes.
            for (let i = 0; i < node.inboundLayers.length; i++) {
                const inboundLayer = node.inboundLayers[i];
                const nodeIndex = node.nodeIndices[i];
                const inboundNode = inboundLayer.inboundNodes[nodeIndex];
                const previousDepth = (nodesDepths[inboundNode.id] == null ? 0 :
                    nodesDepths[inboundNode.id]);
                nodesDepths[inboundNode.id] = Math.max(depth + 1, previousDepth);
                nodeIDToNode[inboundNode.id] = inboundNode;
            }
        }
        // Build a dict {depth: list of nodes with this depth}
        const nodesByDepth = {};
        for (const nodeID in nodesDepths) {
            const depth = nodesDepths[nodeID];
            if (!(depth in nodesByDepth)) {
                nodesByDepth[depth] = [];
            }
            nodesByDepth[depth].push(nodeIDToNode[nodeID]);
        }
        // Build a dict {depth: list of layers with this depth}
        const layersByDepth = {};
        for (const layerID in layersDepths) {
            const depth = layersDepths[layerID];
            if (!(depth in layersByDepth)) {
                layersByDepth[depth] = [];
            }
            layersByDepth[depth].push(layerIDToLayer[layerID]);
        }
        // Get sorted list of layer depths.
        let depthKeys = Object.keys(layersByDepth)
            .map(x => parseInt(x, 10))
            .sort(generic_utils.reverseNumberCompare);
        // Set this.layers and this.layersByDepth.
        this.layers = [];
        for (const depth of depthKeys) {
            const layersForDepth = layersByDepth[depth];
            // Container.layers needs to have a deterministic order:
            // here we order them by traversal order.
            layersForDepth.sort((a, b) => {
                const aIndex = layerIndices[a.id];
                const bIndex = layerIndices[b.id];
                if (aIndex < bIndex) {
                    return -1;
                }
                if (aIndex > bIndex) {
                    return 1;
                }
                return 0;
            });
            for (const layer of layersForDepth) {
                if (layer instanceof Container) {
                    this.internalContainerRefs.push(layer);
                }
                this.layers.push(layer);
            }
        }
        this.layersByDepth = layersByDepth;
        // Get sorted list of node depths;
        depthKeys = Object.keys(nodesByDepth)
            .map(x => parseInt(x, 10))
            .sort(generic_utils.reverseNumberCompare);
        // Check that all tensors required are computable.
        // computable_tensors: all tensors in the graph
        // that can be computed from the inputs provided.
        const computableTensors = this.inputs.slice();
        // To provide a better error msg.
        const layersWithCompleteInput = [];
        for (const depth of depthKeys) {
            for (const node of nodesByDepth[depth]) {
                const layer = node.outboundLayer;
                if (layer != null) {
                    for (const x of node.inputTensors) {
                        if (computableTensors.indexOf(x) === -1) {
                            throw new RuntimeError(`Graph disconnected: cannot obtain value for tensor ${x}` +
                                ` at layer "${layer.name}". ` +
                                'The following previous layers were accessed without ' +
                                `issue: ${layersWithCompleteInput}`);
                        }
                    }
                    for (const x of node.outputTensors) {
                        computableTensors.push(x);
                    }
                    layersWithCompleteInput.push(layer.name);
                }
            }
        }
        // Set this.containerNodes and this.nodesByDepth.
        this.nodesByDepth = nodesByDepth;
        // Ensure name unicity, which will be crucial for serialization
        // (since serialized nodes refer to layers by their name).
        const allNames = this.layers.map(x => x.name);
        for (const name of allNames) {
            const numOccurrences = allNames.filter(x => x === name).length;
            if (numOccurrences !== 1) {
                throw new RuntimeError(`The name "${name}" is used ${numOccurrences} times ` +
                    'in the model. All layer names should be unique. Layer names: ' +
                    JSON.stringify(allNames));
            }
        }
        // Layer parameters.
        // The new container starts with a single inbound node
        // for its inputs, and no outbound nodes.
        // Will be appended to by future calls to apply().
        this.outboundNodes = [];
        // Will be appended to below, and by future calls to apply().
        this.inboundNodes = [];
        // Create the node linking internal inputs to internal outputs.
        // (This call has side effects.)
        // tslint:disable-next-line:no-unused-expression
        new Node({
            outboundLayer: this,
            inboundLayers: [],
            nodeIndices: [],
            tensorIndices: [],
            inputTensors: this.inputs,
            outputTensors: this.outputs,
            inputMasks: this.inputs.map(x => null),
            outputMasks: this.outputs.map(x => null),
            inputShapes: this.inputs.map(x => x.shape),
            outputShapes: this.outputs.map(x => x.shape)
        });
        this.built = true;
        this._refCount = 1; // The ref count of a container always start at 1.
    }
    assertNotDisposed() {
        if (this._refCount === 0) {
            throw new Error(`Container '${this.name}' is already disposed.`);
        }
    }
    /**
     * Attempt to dispose a LayersModel's weights.
     *
     * This method decrease the reference count of the LayersModel object by 1.
     *
     * A LayersModel is reference-counted. Its reference count is incremented by 1
     * when it is first constructed and when it is used as a Layer of another
     * LayersModel.
     *
     * If the reference count of a LayersModel becomes 0, the `dispose` method of
     * all its constituent `Layer`s will be called.
     *
     * Note: If the reference count is greater than 0 after the decrement, the
     * `dispose` method of its constituent `Layer`s will *not* be called.
     *
     * After a LayersModel is disposed, it cannot be used in calls such as
     * 'predict`, `evaluate` or `fit` anymore.
     *
     * @returns A DisposeResult Object with the following fields:
     *   - refCountAfterDispose: The reference count of the LayersModel after this
     *     `dispose()` call.
     *   - numDisposedVariables: Number of `tf.Variable`s (i.e., weights) disposed
     *     during this `dispose()` call.
     * @throws {Error} If the layer is not built yet, or if the LayersModel has
     *   already been disposed.
     */
    dispose() {
        this.assertNotDisposed();
        const result = { refCountAfterDispose: null, numDisposedVariables: 0 };
        if (--this._refCount === 0) {
            for (const layer of this.layers) {
                result.numDisposedVariables += layer.dispose().numDisposedVariables;
            }
            // Call dispose on each internally created container layer again to ensure
            // their refCounts hit zero and their tensors are subsequently deleted.
            for (const container of this.internalContainerRefs) {
                result.numDisposedVariables += container.dispose().numDisposedVariables;
            }
        }
        result.refCountAfterDispose = this._refCount;
        return result;
    }
    get trainable() {
        return this.trainable_;
    }
    set trainable(trainable) {
        this.layers.forEach(layer => {
            // tslint:disable-next-line:no-any
            layer._trainableWeights
                .forEach(w => w.trainable = trainable);
        });
        this.trainable_ = trainable;
    }
    get trainableWeights() {
        // Porting Note: This check below is to prevent errors where the
        //   _trainableWeights inherited from the parent class (Layer) gets
        //   inadvertently used.
        if (this._trainableWeights.length > 0) {
            throw new ValueError('Container instance unexpectedly contains _trainableWeights.' +
                'The trainable weights of a Container are a union of the ' +
                'trainable weights of its consituent Layers. Its own ' +
                '_trainableWeights must remain an empty Array.');
        }
        if (!this.trainable) {
            return [];
        }
        let weights = [];
        for (const layer of this.layers) {
            weights = weights.concat(layer.trainableWeights);
        }
        return weights;
    }
    get nonTrainableWeights() {
        const weights = [];
        for (const layer of this.layers) {
            weights.push(...layer.nonTrainableWeights);
        }
        if (!this.trainable) {
            const trainableWeights = [];
            for (const layer of this.layers) {
                trainableWeights.push(...layer.trainableWeights);
            }
            return trainableWeights.concat(weights);
        }
        return weights;
    }
    get weights() {
        return this.trainableWeights.concat(this.nonTrainableWeights);
    }
    /**
     * Loads all layer weights from a JSON object.
     *
     * Porting Note: HDF5 weight files cannot be directly loaded in JavaScript /
     *   TypeScript. The utility script at `scripts/pykeras.py` offers means
     *   to convert them into JSON strings compatible with this method.
     * Porting Note: TensorFlow.js Layers supports only loading by name currently.
     *
     * @param weights A JSON mapping weight names to weight values as nested
     *   arrays of numbers, or a `NamedTensorMap`, i.e., a JSON mapping weight
     *   names to `tf.Tensor` objects.
     * @param strict Require that the provided weights exactly match those
     *   required by the container.  Default: `true`.  Passing `false` means that
     *   extra weights and missing weights will be silently ignored.
     */
    loadWeights(weights, strict = true) {
        const nameToWeight = {};
        let totalWeightsCount = 0;
        const modelIsKerasSavedModelFormat = isKerasSavedModelFormat(weights);
        if (modelIsKerasSavedModelFormat) {
            this.parseWeights(weights);
        }
        // Check if weights from keras v3.
        for (const layer of this.layers) {
            for (const [index, weight] of layer.weights.entries()) {
                // Parse the name to layerName/index.
                // e.g. dense/0, dense/1, dense_1/0, dense_1/1
                const parsedName = modelIsKerasSavedModelFormat ?
                    `${weight.name.split('/').slice(0, -1).join('/') + '/'}${index}` :
                    weight.originalName;
                if (nameToWeight[parsedName] != null) {
                    throw new ValueError(`Duplicate weight name: ${parsedName}`);
                }
                nameToWeight[parsedName] = weight;
                totalWeightsCount++;
            }
        }
        const weightValueTuples = [];
        for (const name in weights) {
            // TF 2.2.0 added cell name to the weight name in the format of
            // layer_name/cell_name/weight_name, we need to remove
            // the inner cell name.
            let validatedName = name;
            if (nameToWeight[name] == null) {
                const tokens = name.split('/');
                const shortenNameArray = tokens.slice(0, -2).concat([tokens[tokens.length - 1]]);
                validatedName = shortenNameArray.join('/');
            }
            if (nameToWeight[validatedName] != null) {
                weightValueTuples.push([nameToWeight[validatedName], weights[name]]);
            }
            else if (strict) {
                throw new ValueError(`Provided weight data has no target variable: ${name}`);
            }
            delete nameToWeight[validatedName];
        }
        if (strict) {
            // Check that all weights are set.
            const unsetNames = [];
            for (const name in nameToWeight) {
                unsetNames.push(name);
            }
            if (unsetNames.length > 0) {
                throw new ValueError(`${unsetNames.length} of ${totalWeightsCount} weights are not set: ` +
                    `${unsetNames}`);
            }
        }
        batchSetValue(weightValueTuples);
    }
    parseWeights(weights) {
        for (const key in Object.keys(weights)) {
            const listParts = key.split('/');
            const list = ['vars', 'layer_checkpoint_dependencies'];
            // For keras v3, the weights name are saved based on the folder structure.
            // e.g. _backbone/_layer_checkpoint_dependencies/transformer/_self../
            // _output_dense/vars/0
            // Therefore we discard the `vars` and `layer_checkpoint_depencies` within
            // the saved name and only keeps the layer name and weights.
            // This can help to mapping the actual name of the layers and load each
            // weight accordingly.
            const newKey = listParts
                .map(str => {
                if (str.startsWith('_')) {
                    return str.slice(1);
                }
                return str;
            })
                .filter(str => !list.includes(str))
                .join('/');
            if (newKey !== key) {
                weights[newKey] = weights[key];
                delete weights[key];
            }
        }
    }
    /**
     * Util shared between different serialization methods.
     * @returns LayersModel config with Keras version information added.
     */
    updatedConfig() {
        const theConfig = this.getConfig();
        const modelConfig = {};
        modelConfig['className'] = this.getClassName();
        modelConfig['config'] = theConfig;
        modelConfig['kerasVersion'] = `tfjs-layers ${layersVersion}`;
        // TODO(nielsene): Replace something like K.backend() once
        // possible.
        modelConfig['backend'] = 'TensorFlow.js';
        return modelConfig;
    }
    /**
     * Returns a JSON string containing the network configuration.
     *
     * To load a network from a JSON save file, use
     * models.modelFromJSON(jsonString);
     * @param extraJsonArgs Unused in tfjs-layers, maintained for PyKeras
     * @param returnString Whether the return value should be stringified
     *    (default: `true`).
     * @returns a JSON string if `returnString` (default), or a JSON object if
     *   `!returnString`.
     */
    // tslint:disable-next-line:no-any
    toJSON(unused, returnString = true) {
        const modelConfig = convertTsToPythonic(this.updatedConfig());
        return returnString ? JSON.stringify(modelConfig) : modelConfig;
    }
    /**
     * Call the model on new inputs.
     *
     * In this case `call` just reapplies all ops in the graph to the new inputs
     * (e.g. build a new computational graph from the provided inputs).
     *
     * @param inputs A tensor or list of tensors.
     * @param mask A mask or list of masks. A mask can be either a tensor or null
     *   (no mask).
     *
     * @return A tensor if there is a single output, or a list of tensors if there
     *   are more than one outputs.
     */
    call(inputs, kwargs) {
        return tidy(() => {
            inputs = generic_utils.toList(inputs);
            const feedDict = new FeedDict();
            for (let i = 0; i < this.inputs.length; ++i) {
                feedDict.add(this.inputs[i], inputs[i]);
            }
            return execute(this.outputs, feedDict, kwargs);
        });
    }
    /**
     * Computes an output mask tensor.
     *
     * @param inputs Tensor or list of tensors.
     * @param mask Tensor or list of tensors.
     *
     * @return null or a tensor (or list of tensors, one per output tensor of the
     * layer).
     */
    computeMask(inputs, mask) {
        return tidy(() => {
            inputs = generic_utils.toList(inputs);
            let masks;
            if (mask == null) {
                masks = generic_utils.pyListRepeat(null, inputs.length);
            }
            else {
                masks = generic_utils.toList(mask);
            }
            // TODO(michaelterry): Add support for mask caching.
            return this.runInternalGraph(inputs, masks)[1];
        });
    }
    /**
     * Computes the output shape of the layer.
     *
     * Assumes that the layer will be built to match that input shape provided.
     *
     * @param inputShape A shape (tuple of integers) or a list of shape tuples
     *   (one per output tensor of the layer). Shape tuples can include null for
     *   free dimensions, instead of an integer.
     */
    computeOutputShape(inputShape) {
        const inputShapes = types_utils.normalizeShapeList(inputShape);
        if (inputShapes.length !== this.inputLayers.length) {
            throw new ValueError(`Invalid inputShape argument ${inputShape}: ` +
                `model has ${this.inputLayers.length} tensor inputs.`);
        }
        // TODO(michaelterry): Add caching
        const layersToOutputShapes = {};
        for (let i = 0; i < inputShapes.length; i++) {
            const layer = this.inputLayers[i];
            const inputShape = inputShapes[i];
            // It's an input layer: computeOutputShape is identity,
            // and there is only one node and one tensor output.
            const shapeKey = layer.name + '_0_0';
            layersToOutputShapes[shapeKey] = inputShape;
        }
        const depthKeys = Object.keys(this.nodesByDepth)
            .map(x => parseInt(x, 10))
            .sort(generic_utils.reverseNumberCompare);
        // Iterate over nodes, by depth level.
        if (depthKeys.length > 1) {
            for (const depth of depthKeys) {
                const nodes = this.nodesByDepth[depth];
                for (const node of nodes) {
                    // This is always a single layer, never a list.
                    const layer = node.outboundLayer;
                    if (this.inputLayers.map(x => x.id).indexOf(layer.id) !== -1) {
                        // We've already covered the input layers a few lines above.
                        continue;
                    }
                    // Potentially redundant list, same size of node.inputTensors.
                    const inputShapes = [];
                    for (let j = 0; j < node.inboundLayers.length; j++) {
                        const inboundLayer = node.inboundLayers[j];
                        const nodeIndex = node.nodeIndices[j];
                        const tensorIndex = node.tensorIndices[j];
                        const shapeKey = `${inboundLayer.name}_${nodeIndex}_${tensorIndex}`;
                        const inputShape = layersToOutputShapes[shapeKey];
                        inputShapes.push(inputShape);
                    }
                    const outputShape = layer.computeOutputShape(generic_utils.singletonOrArray(inputShapes));
                    const outputShapes = types_utils.normalizeShapeList(outputShape);
                    const nodeIndex = layer.inboundNodes.indexOf(node);
                    for (let j = 0; j < outputShapes.length; j++) {
                        const shapeKey = `${layer.name}_${nodeIndex}_${j}`;
                        layersToOutputShapes[shapeKey] = outputShapes[j];
                    }
                }
            }
        }
        // Read final output shapes from layersToOutputShapes.
        const outputShapes = [];
        const outputShapeKeys = [];
        for (let i = 0; i < this.outputLayers.length; i++) {
            const layer = this.outputLayers[i];
            const nodeIndex = this.outputLayersNodeIndices[i];
            const tensorIndex = this.outputLayersTensorIndices[i];
            const shapeKey = `${layer.name}_${nodeIndex}_${tensorIndex}`;
            outputShapeKeys.push(shapeKey);
        }
        for (let i = 0; i < outputShapeKeys.length; i++) {
            const key = outputShapeKeys[i];
            generic_utils.assert(key in layersToOutputShapes);
            outputShapes.push(layersToOutputShapes[key]);
        }
        // TODO(michaelterry): Update cache
        return generic_utils.singletonOrArray(outputShapes);
    }
    /**
     * Computes output tensors for new inputs.
     *
     * Note:
     *   - Expects `inputs` to be a list (potentially with 1 element).
     *
     * @param inputs List of tensors
     * @param masks List of masks (tensors or null).
     * @return Three lists: outputTensors, outputMasks, outputShapes
     */
    runInternalGraph(inputs, masks) {
        if (masks == null) {
            masks = generic_utils.pyListRepeat(null, inputs.length);
        }
        // Dictionary mapping reference tensors to tuples
        // (computed tensor, compute mask)
        // we assume a 1:1 mapping from tensor to mask
        // TODO: raise exception when a `.computeMask()` call
        // does not return a list the same size as `call`
        const tensorMap = {};
        for (let i = 0; i < this.inputs.length; ++i) {
            const x = this.inputs[i];
            const y = inputs[i];
            const mask = masks[i];
            tensorMap[x.id] = [y, mask];
        }
        const depthKeys = Object.keys(this.nodesByDepth)
            .map(x => parseInt(x, 10))
            .sort(generic_utils.reverseNumberCompare);
        for (const depth of depthKeys) {
            const nodes = this.nodesByDepth[depth];
            for (const node of nodes) {
                // This is always a single layer, never a list.
                const layer = node.outboundLayer;
                const referenceInputTensors = node.inputTensors;
                const referenceOutputTensors = node.outputTensors;
                // If all previous input tensors are available in tensorMap,
                // then call node.inboundLayer on them.
                // List of tuples [input, mask]:
                const computedData = new Array();
                for (const x of referenceInputTensors) {
                    if (x.id in tensorMap) {
                        computedData.push(tensorMap[x.id]);
                    }
                }
                if (computedData.length === referenceInputTensors.length) {
                    // TODO(michaelterry): Add K.name_scope here, if we need it.
                    let kwargs = {};
                    let computedTensors;
                    let computedMasks;
                    let outputTensors;
                    let outputMasks;
                    // call layer
                    if (node.callArgs != null) {
                        kwargs = node.callArgs;
                    }
                    if (computedData.length === 1) {
                        const [computedTensor, computedMask] = computedData[0];
                        if (kwargs['mask'] == null) {
                            kwargs['mask'] = computedMask;
                        }
                        outputTensors =
                            generic_utils.toList(layer.call(computedTensor, kwargs));
                        outputMasks = generic_utils.toList(layer.computeMask(computedTensor, computedMask));
                        computedTensors = [computedTensor];
                        computedMasks = [computedMask];
                    }
                    else {
                        computedTensors = computedData.map(x => x[0]);
                        computedMasks = computedData.map(x => x[1]);
                        if (kwargs['mask'] == null) {
                            kwargs['mask'] = computedMasks;
                        }
                        outputTensors =
                            generic_utils.toList(layer.call(computedTensors, kwargs));
                        outputMasks = generic_utils.toList(layer.computeMask(computedTensors, computedMasks));
                    }
                    if (layer.activityRegularizer) {
                        throw new NotImplementedError('LayersModel invocation with concrete Tensor value(s) in the ' +
                            'presence of activity regularizer(s) is not supported yet.');
                    }
                    // TODO(michaelterry): Add model updates and losses
                    // Update tensor map.
                    for (let i = 0; i < referenceOutputTensors.length; ++i) {
                        const x = referenceOutputTensors[i];
                        const y = outputTensors[i];
                        const mask = outputMasks[i];
                        tensorMap[x.id] = [y, mask];
                    }
                }
            }
        }
        const outputTensors = [];
        const outputMasks = [];
        const outputShapes = [];
        for (const x of this.outputs) {
            generic_utils.assert(x.id in tensorMap, `Could not compute output ${x.name} : ${x.id}`);
            const [tensor, mask] = tensorMap[x.id];
            outputShapes.push(tensor.shape);
            outputTensors.push(tensor);
            outputMasks.push(mask);
        }
        // TODO(michaelterry): Add support for caches.
        return [outputTensors, outputMasks, outputShapes];
    }
    /**
     * Builds a map of internal node keys to node ordering.
     * Used in serializaion a node orderings may change as unused nodes are
     * dropped. Porting Note:  This helper method was pulled out of getConfig to
     * improve readability.
     * @param layers An array of Layers in the model.
     * @returns Map of Node Keys to index order within the layer.
     */
    buildNodeConversionMap(layers) {
        const nodeConversionMap = {};
        let keptNodes;
        for (const layer of this.layers) {
            keptNodes = layer instanceof Container ? 1 : 0;
            for (let originalNodeIndex = 0; originalNodeIndex < layer.inboundNodes.length; originalNodeIndex++) {
                const nodeKey = Container.nodeKey(layer, originalNodeIndex);
                if (this.containerNodes.has(nodeKey)) {
                    // i.e. we mark it to be saved
                    nodeConversionMap[nodeKey] = keptNodes;
                    keptNodes += 1;
                }
            }
        }
        return nodeConversionMap;
    }
    getLayer(nameOrIndex, index) {
        if (index != null) {
            return this.findLayer(index);
        }
        else {
            if (nameOrIndex == null) {
                throw new ValueError('Provide either a layer name or layer index');
            }
            if (typeof nameOrIndex === 'number') {
                return this.findLayer(nameOrIndex);
            }
        }
        for (const layer of this.layers) {
            if (layer.name === nameOrIndex) {
                return layer;
            }
        }
        throw new ValueError(`No such layer: ${nameOrIndex}`);
    }
    findLayer(index) {
        if (this.layers.length <= index) {
            throw new ValueError(`Was asked to retrieve layer at index ${index}, but model only ` +
                `has ${this.layers.length} layer(s).`);
        }
        else {
            return this.layers[index];
        }
    }
    /**
     * Retrieves the Container's current loss values.
     *
     * Used for regularizers during training.
     */
    calculateLosses() {
        // Porting Node: This is an augmentation to Container.loss in PyKeras.
        //   In PyKeras, Container.loss returns symbolic tensors. Here a concrete
        //   Tensor (specifically Scalar) values are returned. This is due to the
        //   imperative backend.
        return tidy(() => {
            const losses = [];
            for (const layer of this.layers) {
                for (let nodeIndex = 0; nodeIndex < layer.inboundNodes.length; ++nodeIndex) {
                    const nodeKey = Container.nodeKey(layer, nodeIndex);
                    if (this.containerNodes.has(nodeKey)) {
                        losses.push(...layer.calculateLosses());
                    }
                }
            }
            // TODO(cais): Add any unconditional model-level losses?
            return losses;
        });
    }
    getConfig() {
        const config = { name: this.name };
        // Build a map from layer unique name (self._node_key)
        // to the index of the nodes that are saved in the config.
        // Only nodes in container_nodes are saved.
        const nodeConversionMap = this.buildNodeConversionMap(this.layers);
        // Serialize and save the layers in layerConfigs
        const layerConfigs = [];
        for (const layer of this.layers) {
            const layerClassName = layer.getClassName();
            const layerConfig = layer.getConfig();
            const filteredInboundNodes = [];
            for (let originalNodeIndex = 0; originalNodeIndex < layer.inboundNodes.length; originalNodeIndex++) {
                const node = layer.inboundNodes[originalNodeIndex];
                const nodeKey = Container.nodeKey(layer, originalNodeIndex);
                let kwargs = {};
                if (this.containerNodes.has(nodeKey)) {
                    // The node is relevant to the model:
                    // add to filteredInboundNodes.
                    if (node.callArgs) {
                        try {
                            JSON.stringify(node.callArgs);
                            kwargs = node.callArgs;
                        }
                        catch (err) {
                            console.warn(`Layer ${layer.name} was passed ` +
                                `non-serializable keyword arguments: ` +
                                `${node.callArgs}. They will not be included ` +
                                `in the serialized model (and thus will be ` +
                                `missing at deserialization time).`);
                            kwargs = {};
                        }
                    }
                    if (node.inboundLayers.length > 0) {
                        const nodeData = [];
                        for (let i = 0; i < node.inboundLayers.length; i++) {
                            const inboundLayer = node.inboundLayers[i];
                            const nodeIndex = node.nodeIndices[i];
                            const tensorIndex = node.tensorIndices[i];
                            const nodeKey = Container.nodeKey(inboundLayer, nodeIndex);
                            let newNodeIndex = nodeConversionMap[nodeKey];
                            if (newNodeIndex == null) {
                                newNodeIndex = 0;
                            }
                            nodeData.push([inboundLayer.name, newNodeIndex, tensorIndex, kwargs]);
                        }
                        filteredInboundNodes.push(nodeData);
                    }
                }
            }
            const dict = {};
            dict['name'] = layer.name;
            dict['className'] = layerClassName;
            dict['config'] = layerConfig;
            dict['inboundNodes'] = filteredInboundNodes;
            layerConfigs.push(dict);
        }
        config['layers'] = layerConfigs;
        // Gather info about inputs and outputs
        const modelInputs = [];
        for (let i = 0; i < this.inputLayers.length; i++) {
            const layer = this.inputLayers[i];
            const nodeIndex = this.inputLayersNodeIndices[i];
            const nodeKey = Container.nodeKey(layer, nodeIndex);
            if (!this.containerNodes.has(nodeKey)) {
                continue;
            }
            let newNodeIndex = nodeConversionMap[nodeKey];
            if (newNodeIndex === null || newNodeIndex === undefined) {
                newNodeIndex = 0;
            }
            const tensorIndex = this.inputLayersTensorIndices[i];
            modelInputs.push([layer.name, newNodeIndex, tensorIndex]);
        }
        config['inputLayers'] = modelInputs;
        const modelOutputs = [];
        for (let i = 0; i < this.outputLayers.length; i++) {
            const layer = this.outputLayers[i];
            const nodeIndex = this.outputLayersNodeIndices[i];
            const nodeKey = Container.nodeKey(layer, nodeIndex);
            if (!this.containerNodes.has(nodeKey)) {
                continue;
            }
            let newNodeIndex = nodeConversionMap[nodeKey];
            if (newNodeIndex === null || newNodeIndex === undefined) {
                newNodeIndex = 0;
            }
            const tensorIndex = this.outputLayersTensorIndices[i];
            modelOutputs.push([layer.name, newNodeIndex, tensorIndex]);
        }
        config['outputLayers'] = modelOutputs;
        return config;
    }
    /**
     * Instantiates a LayersModel from its config (output of `get_config()`).
     * @param cls the class to create
     * @param config LayersModel config dictionary.
     * @param customObjects An optional dictionary of custom objects.
     * @param fastWeightInit Optional flag to use fast weight initialization
     *   during deserialization. This is applicable to cases in which
     *   the initialization will be immediately overwritten by loaded weight
     *   values. Default: `false`.
     * @returns A LayersModel instance.
     * @throws ValueError: In case of improperly formatted config dict.
     */
    /** @nocollapse */
    static fromConfig(cls, config, customObjects = {}, fastWeightInit = false) {
        // Layer instances created during
        // the graph reconstruction process
        const createdLayers = {};
        // Dictionary mapping layer instances to
        // node data that specifies a layer call.
        // It acts as a queue that maintains any unprocessed
        // layer call until it becomes possible to process it
        // (i.e. until the input tensors to the call all exist).
        const unprocessedNodes = {};
        function addUnprocessedNode(layer, nodeData) {
            if (!(layer.name in unprocessedNodes)) {
                unprocessedNodes[layer.name] = [nodeData];
            }
            else {
                unprocessedNodes[layer.name].push(nodeData);
            }
        }
        function processNode(layer, nodeData) {
            const inputTensors = [];
            let kwargs;
            for (const inputData of nodeData) {
                const inboundLayerName = inputData[0];
                const inboundNodeIndex = inputData[1];
                const inboundTensorIndex = inputData[2];
                kwargs = inputData[3] == null ?
                    {} :
                    inputData[3];
                if (!(inboundLayerName in createdLayers)) {
                    addUnprocessedNode(layer, nodeData);
                    return;
                }
                const inboundLayer = createdLayers[inboundLayerName];
                if (inboundLayer.inboundNodes.length <= inboundNodeIndex) {
                    addUnprocessedNode(layer, nodeData);
                    return;
                }
                const inboundNode = inboundLayer.inboundNodes[inboundNodeIndex];
                inputTensors.push(inboundNode.outputTensors[inboundTensorIndex]);
            }
            // Call layer on its inputs, thus creating the node
            // and building the layer if needed.
            // Note: This has Eager vs Graph Implications.
            if (inputTensors.length > 0) {
                layer.apply(generic_utils.singletonOrArray(inputTensors), kwargs); // was ** kwargs
            }
        }
        /**
         * Deserialize a layer, then call it on appropriate inputs.
         * @param layerData: layer config dict.
         * @throws ValueError: In case of improperly formatted `layer_data`
         * dict.
         */
        function processLayer(layerData) {
            const layerName = layerData['name'];
            // Instantiate layer.
            const layer = deserializeLayer(layerData, config['customObjects'] != null ?
                config['customObjects'] :
                {});
            layer.setFastWeightInitDuringBuild(fastWeightInit);
            createdLayers[layerName] = layer;
            // Gather layer inputs.
            const inboundNodesData = layerData['inboundNodes'];
            inboundNodesData.forEach(nodeData => {
                if (!(nodeData instanceof Array)) {
                    throw new ValueError(`Corrupted configuration, expected array for nodeData: ${nodeData}`);
                }
                // We don't process nodes (i.e. make layer calls)
                // on the fly because the inbound node may not yet exist,
                // in case of layer shared at different topological depths
                // (e.g.a model such as A(B(A(B(x)))))
                addUnprocessedNode(layer, nodeData);
            });
        }
        // First, we create all layers and enqueue nodes to be processed.
        const name = config['name'];
        const layersFromConfig = config['layers'];
        for (const layerData of layersFromConfig) {
            processLayer(layerData);
        }
        // Then we process nodes in order of layer depth.
        // Nodes that cannot yet be processed(if the inbound node
        // does not yet exist) are re - enqueued, and the process
        // is repeated until all nodes are processed.
        while (!generic_utils.isObjectEmpty(unprocessedNodes)) {
            for (const layerData of layersFromConfig) {
                const layer = createdLayers[layerData['name']];
                if (layer.name in unprocessedNodes) {
                    const currentUnprocessedNodesForLayer = unprocessedNodes[layer.name];
                    delete unprocessedNodes[layer.name];
                    for (const nodeData of currentUnprocessedNodesForLayer) {
                        processNode(layer, nodeData);
                    }
                }
            }
        }
        const inputTensors = [];
        const outputTensors = [];
        const inputLayersFromConfig = config['inputLayers'];
        for (const layerData of inputLayersFromConfig) {
            const layerName = layerData[0];
            const nodeIndex = layerData[1];
            const tensorIndex = layerData[2];
            generic_utils.assert(layerName in createdLayers);
            const layer = createdLayers[layerName];
            const layerOutputTensors = layer.inboundNodes[nodeIndex].outputTensors;
            inputTensors.push(layerOutputTensors[tensorIndex]);
        }
        const outputLayersFromConfig = config['outputLayers'];
        for (const layerData of outputLayersFromConfig) {
            const layerName = layerData[0];
            const nodeIndex = layerData[1];
            const tensorIndex = layerData[2];
            generic_utils.assert(layerName in createdLayers);
            const layer = createdLayers[layerName];
            const layerOutputTensors = layer.inboundNodes[nodeIndex].outputTensors;
            outputTensors.push(layerOutputTensors[tensorIndex]);
        }
        return new cls({ inputs: inputTensors, outputs: outputTensors, name });
    }
    /**
     * Determine whether the container is stateful.
     *
     * Porting Note: this is the equivalent of the stateful @property of
     *   the Container class in PyKeras.
     */
    get stateful() {
        // Porting Note: This check is to prevent inadvertent setting of the
        //   _stateful property of the Container instance.
        if (this._stateful) {
            throw new ValueError('Container instance unexpectedly has _stateful = true. The ' +
                'statefulness of a Container is determined by the Layers it ' +
                'contains. Its _stateful property must remain the default false.');
        }
        for (const layer of this.layers) {
            if (layer.stateful) {
                return true;
            }
        }
        return false;
    }
    /**
     * Reset the state of all stateful constituent layers (if any).
     *
     * Examples of stateful layers include RNN layers whose `stateful` property
     * is set as `true`.
     */
    resetStates() {
        tidy(() => {
            this.layers.forEach(layer => {
                // tslint:disable:no-any
                if (layer.stateful) {
                    layer.resetStates();
                }
                // tslint:enable:no-any
            });
        });
    }
}
//# sourceMappingURL=data:application/json;base64,{"version":3,"file":"container.js","sourceRoot":"","sources":["../../../../../../tfjs-layers/src/engine/container.ts"],"names":[],"mappings":"AAAA;;;;;;;;GAQG;AAEH,+CAA+C;AAE/C,OAAO,EAAgD,IAAI,EAAC,MAAM,uBAAuB,CAAC;AAE1F,OAAO,EAAC,MAAM,EAAC,MAAM,kBAAkB,CAAC;AACxC,OAAO,EAAC,mBAAmB,EAAE,YAAY,EAAE,UAAU,EAAC,MAAM,WAAW,CAAC;AAIxE,OAAO,EAAC,WAAW,IAAI,gBAAgB,EAAC,MAAM,yBAAyB,CAAC;AAExE,OAAO,KAAK,aAAa,MAAM,wBAAwB,CAAC;AACxD,OAAO,EAAC,mBAAmB,EAAC,MAAM,8BAA8B,CAAC;AACjE,OAAO,KAAK,WAAW,MAAM,sBAAsB,CAAC;AACpD,OAAO,EAAC,aAAa,EAAgB,MAAM,cAAc,CAAC;AAC1D,OAAO,EAAC,OAAO,IAAI,aAAa,EAAC,MAAM,YAAY,CAAC;AAEpD,OAAO,EAAC,OAAO,EAAE,QAAQ,EAAC,MAAM,YAAY,CAAC;AAC7C,OAAO,EAAC,UAAU,EAAC,MAAM,eAAe,CAAC;AACzC,OAAO,EAAgB,KAAK,EAAE,IAAI,EAAiB,MAAM,YAAY,CAAC;AAStE,4EAA4E;AAC5E,eAAe;AACf,MAAM,uBAAuB,GAAG,CAAC,OAAuB,EAAW,EAAE;IACnE,MAAM,IAAI,GAAG,MAAM,CAAC,IAAI,CAAC,OAAO,CAAC,CAAC;IAClC,IAAI,IAAI,CAAC,MAAM,KAAK,CAAC,EAAE;QACrB,OAAO,KAAK,CAAC;KACd;IACD,MAAM,GAAG,GAAG,IAAI,CAAC,CAAC,CAAC,CAAC,KAAK,CAAC,GAAG,CAAC,CAAC;IAC/B,OAAO,CAAC,KAAK,CAAC,QAAQ,CAAC,GAAG,CAAC,GAAG,CAAC,MAAM,GAAG,CAAC,CAAC,EAAE,EAAE,CAAC,CAAC,CAAC;AACnD,CAAC,CAAC;AAEF;;;;;;GAMG;AACH,MAAM,OAAgB,SAAU,SAAQ,KAAK;IAoC3C,YAAY,IAAmB;QAC7B,yCAAyC;QACzC,KAAK,CAAC,EAAE,CAAC,CAAC;QApBZ,mBAAc,GAAG,IAAI,GAAG,EAAU,CAAC;QAqBjC,IAAI,CAAC,IAAI,GAAG,IAAI,CAAC,IAAI,CAAC;QACtB,IAAI,IAAI,CAAC,IAAI,IAAI,IAAI,EAAE;YACrB,MAAM,MAAM,GAAG,IAAI,CAAC,YAAY,EAAE,CAAC,WAAW,EAAE,CAAC;YACjD,IAAI,CAAC,IAAI,GAAG,MAAM,CAAC,MAAM,CAAC,CAAC;SAC5B;QAED,IAAI,CAAC,eAAe,GAAG,KAAK,CAAC;QAC7B,IAAI,CAAC,UAAU,GAAG,IAAI,CAAC;QAEvB,8DAA8D;QAE9D,iCAAiC;QACjC,IAAI,KAAK,CAAC,OAAO,CAAC,IAAI,CAAC,MAAM,CAAC,EAAE;YAC9B,IAAI,CAAC,MAAM,GAAG,IAAI,CAAC,MAAM,CAAC,KAAK,EAAE,CAAC;SACnC;aAAM;YACL,IAAI,CAAC,MAAM,GAAG,CAAC,IAAI,CAAC,MAAM,CAAC,CAAC;SAC7B;QACD,IAAI,KAAK,CAAC,OAAO,CAAC,IAAI,CAAC,OAAO,CAAC,EAAE;YAC/B,IAAI,CAAC,OAAO,GAAG,IAAI,CAAC,OAAO,CAAC,KAAK,EAAE,CAAC;SACrC;aAAM;YACL,IAAI,CAAC,OAAO,GAAG,CAAC,IAAI,CAAC,OAAO,CAAC,CAAC;SAC/B;QAED,kCAAkC;QAClC,IAAI,aAAa,CAAC,MAAM,CAAC,IAAI,CAAC,MAAM,CAAC,CAAC,MAAM,KAAK,IAAI,CAAC,MAAM,CAAC,MAAM,EAAE;YACnE,MAAM,IAAI,UAAU,CAChB,4CAA4C;gBAC5C,wDAAwD;gBACxD,GAAG,IAAI,CAAC,MAAM,CAAC,GAAG,CAAC,CAAC,CAAC,EAAE,CAAC,CAAC,CAAC,IAAI,CAAC,EAAE,CAAC,CAAC;SACxC;QAED,mCAAmC;QACnC,IAAI,aAAa,CAAC,MAAM,CAAC,IAAI,CAAC,OAAO,CAAC,CAAC,MAAM,KAAK,IAAI,CAAC,OAAO,CAAC,MAAM,EAAE;YACrE,OAAO,CAAC,IAAI,CACR,wDAAwD;gBACxD,8CAA8C;gBAC9C,GAAG,IAAI,CAAC,OAAO,CAAC,GAAG,CAAC,CAAC,CAAC,EAAE,CAAC,CAAC,CAAC,IAAI,CAAC,EAAE,CAAC,CAAC;SACzC;QAED;;;UAGE;QACF,IAAI,CAAC,WAAW,GAAG,EAAE,CAAC;QACtB,IAAI,CAAC,sBAAsB,GAAG,EAAE,CAAC;QACjC,IAAI,CAAC,wBAAwB,GAAG,EAAE,CAAC;QACnC;;;UAGE;QACF,IAAI,CAAC,YAAY,GAAG,EAAE,CAAC;QACvB,IAAI,CAAC,uBAAuB,GAAG,EAAE,CAAC;QAClC,IAAI,CAAC,yBAAyB,GAAG,EAAE,CAAC;QACpC;;;UAGE;QACF,IAAI,CAAC,MAAM,GAAG,EAAE,CAAC;QAEjB;;;UAGE;QACF,IAAI,CAAC,qBAAqB,GAAG,EAAE,CAAC;QAEhC,mEAAmE;QACnE,WAAW;QACX;;;;;;UAME;QACF,+BAA+B;QAC/B,8BAA8B;QAE9B,2BAA2B;QAC3B,KAAK,MAAM,CAAC,IAAI,IAAI,CAAC,OAAO,EAAE;YAC5B,MAAM,KAAK,GAAG,CAAC,CAAC,WAAW,CAAC;YAC5B,MAAM,SAAS,GAAG,CAAC,CAAC,SAAS,CAAC;YAC9B,MAAM,WAAW,GAAG,CAAC,CAAC,WAAW,CAAC;YAClC,IAAI,CAAC,YAAY,CAAC,IAAI,CAAC,KAAK,CAAC,CAAC;YAC9B,IAAI,CAAC,uBAAuB,CAAC,IAAI,CAAC,SAAS,CAAC,CAAC;YAC7C,IAAI,CAAC,yBAAyB,CAAC,IAAI,CAAC,WAAW,CAAC,CAAC;SAClD;QAED,kDAAkD;QAElD,0BAA0B;QAC1B,KAAK,MAAM,CAAC,IAAI,IAAI,CAAC,MAAM,EAAE;YAC3B,MAAM,KAAK,GAAG,CAAC,CAAC,WAAW,CAAC;YAC5B,MAAM,SAAS,GAAG,CAAC,CAAC,SAAS,CAAC;YAC9B,MAAM,WAAW,GAAG,CAAC,CAAC,WAAW,CAAC;YAClC;;;cAGE;YACF,aAAa,CAAC,MAAM,CAAC,SAAS,KAAK,CAAC,EAAE,0BAA0B,CAAC,CAAC;YAClE,aAAa,CAAC,MAAM,CAAC,WAAW,KAAK,CAAC,EAAE,4BAA4B,CAAC,CAAC;YACtE,IAAI,CAAC,WAAW,CAAC,IAAI,CAAC,KAAK,CAAC,CAAC;YAC7B,IAAI,CAAC,sBAAsB,CAAC,IAAI,CAAC,SAAS,CAAC,CAAC;YAC5C,IAAI,CAAC,wBAAwB,CAAC,IAAI,CAAC,WAAW,CAAC,CAAC;SACjD;QAED,8CAA8C;QAC9C,IAAI,CAAC,UAAU,GAAG,EAAE,CAAC;QACrB,IAAI,CAAC,WAAW,GAAG,EAAE,CAAC;QACtB,IAAI,CAAC,eAAe,GAAG,EAAE,CAAC;QAC1B,IAAI,CAAC,cAAc,GAAG,EAAE,CAAC;QACzB,IAAI,CAAC,eAAe,GAAG,EAAE,CAAC;QAC1B,KAAK,IAAI,CAAC,GAAG,CAAC,EAAE,CAAC,GAAG,IAAI,CAAC,WAAW,CAAC,MAAM,EAAE,CAAC,EAAE,EAAE;YAChD,MAAM,KAAK,GAAG,IAAI,CAAC,WAAW,CAAC,CAAC,CAAC,CAAC;YAClC,qCAAqC;YACrC,IAAI,CAAC,CAAC,KAAK,YAAY,UAAU,CAAC,EAAE;gBAClC,MAAM,IAAI,SAAS,CACf,4DAA4D;oBAC5D,oBAAoB,IAAI,CAAC,MAAM,IAAI;oBACnC,SAAS,CAAC,wBAAwB;oBAClC,mBAAmB,KAAK,CAAC,YAAY,EAAE,GAAG,CAAC,CAAC;aACjD;YACD,IAAI,CAAC,UAAU,CAAC,IAAI,CAAC,KAAK,CAAC,IAAI,CAAC,CAAC;YACjC,IAAI,CAAC,eAAe,CAAC,IAAI,CAAC,KAAK,CAAC,eAAe,CAAC,CAAC;YAEjD,IAAI,CAAC,cAAc,CAAC,IAAI,CAAC,KAAK,CAAC,IAAI,CAAC,CAAC;SACtC;QACD,KAAK,MAAM,KAAK,IAAI,IAAI,CAAC,YAAY,EAAE;YACrC,IAAI,CAAC,WAAW,CAAC,IAAI,CAAC,KAAK,CAAC,IAAI,CAAC,CAAC;SACnC;QAED,IAAI,CAAC,mBAAmB,GAAG,IAAI,CAAC,MAAM,CAAC,GAAG,CAAC,CAAC,CAAC,EAAE,CAAC,CAAC,CAAC,KAAK,CAAC,CAAC;QACzD,IAAI,CAAC,oBAAoB,GAAG,IAAI,CAAC,OAAO,CAAC,GAAG,CAAC,CAAC,CAAC,EAAE,CAAC,CAAC,CAAC,KAAK,CAAC,CAAC;QAE3D;;;UAGE;QACF,8CAA8C;QAC9C,MAAM,WAAW,GAA+B,EAAE,CAAC;QACnD,kCAAkC;QAClC,MAAM,YAAY,GAA6B,EAAE,CAAC;QAClD,MAAM,YAAY,GAAgC,EAAE,CAAC;QACrD,2BAA2B;QAC3B,MAAM,cAAc,GAA+B,EAAE,CAAC;QACtD,MAAM,YAAY,GAAgC,EAAE,CAAC;QACrD,MAAM,sBAAsB,GAAW,EAAE,CAAC;QAE1C;;;;;;;;;;;;;;;;;WAiBG;QACH,MAAM,eAAe,GACjB,CAAC,MAAsB,EAAE,aAAqB,EAAE,eAAuB,EACtE,KAAa,EAAE,SAAkB,EAAE,WAAoB,EAAE,EAAE;YAC1D,IAAI,KAAK,IAAI,IAAI,IAAI,SAAS,IAAI,IAAI,IAAI,WAAW,IAAI,IAAI,EAAE;gBAC7D,KAAK,GAAG,MAAM,CAAC,WAAW,CAAC;gBAC3B,SAAS,GAAG,MAAM,CAAC,SAAS,CAAC;gBAC7B,WAAW,GAAG,MAAM,CAAC,WAAW,CAAC;aAClC;YACD,MAAM,IAAI,GAAG,KAAK,CAAC,YAAY,CAAC,SAAS,CAAC,CAAC;YAE3C,kBAAkB;YAClB,IAAI,eAAe,CAAC,OAAO,CAAC,IAAI,CAAC,KAAK,CAAC,CAAC,EAAE;gBACxC,MAAM,IAAI,YAAY,CAClB,cAAc,MAAM,CAAC,IAAI,cAAc,KAAK,CAAC,IAAI,IAAI;oBACrD,qBAAqB,CAAC,CAAC;aAC5B;YAED,yCAAyC;YACzC,IAAI,aAAa,CAAC,OAAO,CAAC,IAAI,CAAC,KAAK,CAAC,CAAC,EAAE;gBACtC,OAAO;aACR;YAED,yBAAyB;YACzB,IAAI,CAAC,cAAc,CAAC,GAAG,CAAC,SAAS,CAAC,OAAO,CAAC,KAAK,EAAE,SAAS,CAAC,CAAC,CAAC;YAE7D,+CAA+C;YAC/C,IAAI,CAAC,CAAC,KAAK,CAAC,EAAE,IAAI,YAAY,CAAC,EAAE;gBAC/B,YAAY,CAAC,KAAK,CAAC,EAAE,CAAC,GAAG,MAAM,CAAC,IAAI,CAAC,YAAY,CAAC,CAAC,MAAM,CAAC;aAC3D;YAED,IAAI,eAAe,CAAC,OAAO,CAAC,IAAI,CAAC,KAAK,CAAC,CAAC,EAAE;gBACxC,eAAe,CAAC,IAAI,CAAC,IAAI,CAAC,CAAC;aAC5B;YAED,4DAA4D;YAC5D,MAAM,gBAAgB,GAAG,IAAI,CAAC,aAAa,CAAC,MAAM,CAAC;YACnD,KAAK,IAAI,CAAC,GAAG,CAAC,EAAE,CAAC,GAAG,gBAAgB,EAAE,CAAC,EAAE,EAAE;gBACzC,MAAM,CAAC,GAAG,IAAI,CAAC,YAAY,CAAC,CAAC,CAAC,CAAC;gBAC/B,MAAM,KAAK,GAAG,IAAI,CAAC,aAAa,CAAC,CAAC,CAAC,CAAC;gBACpC,MAAM,SAAS,GAAG,IAAI,CAAC,WAAW,CAAC,CAAC,CAAC,CAAC;gBACtC,MAAM,WAAW,GAAG,IAAI,CAAC,aAAa,CAAC,CAAC,CAAC,CAAC;gBAC1C,eAAe,CACX,CAAC,EAAE,aAAa,EAAE,eAAe,EAAE,KAAK,EAAE,SAAS,EACnD,WAAW,CAAC,CAAC;aAClB;YACD,aAAa,CAAC,IAAI,CAAC,IAAI,CAAC,CAAC;YACzB,OAAO,eAAe,CAAC,OAAO,CAAC,IAAI,CAAC,IAAI,CAAC,EAAE;gBACzC,eAAe,CAAC,MAAM,CAAC,eAAe,CAAC,OAAO,CAAC,IAAI,CAAC,EAAE,CAAC,CAAC,CAAC;aAC1D;YACD,sBAAsB,CAAC,IAAI,CAAC,IAAI,CAAC,CAAC;QACpC,CAAC,CAAC;QAEN,MAAM,aAAa,GAAW,EAAE,CAAC;QACjC,MAAM,eAAe,GAAW,EAAE,CAAC;QACnC,KAAK,MAAM,CAAC,IAAI,IAAI,CAAC,OAAO,EAAE;YAC5B,eAAe,CAAC,CAAC,EAAE,aAAa,EAAE,eAAe,CAAC,CAAC;SACpD;QAED,MAAM,8BAA8B,GAChC,sBAAsB,CAAC,KAAK,EAAE,CAAC,OAAO,EAAE,CAAC;QAC7C,KAAK,MAAM,IAAI,IAAI,8BAA8B,EAAE;YACjD,YAAY,CAAC,IAAI,CAAC,EAAE,CAAC,GAAG,IAAI,CAAC;YAC7B,qEAAqE;YACrE,IAAI,CAAC,CAAC,IAAI,CAAC,EAAE,IAAI,WAAW,CAAC,EAAE;gBAC7B,WAAW,CAAC,IAAI,CAAC,EAAE,CAAC,GAAG,CAAC,CAAC;aAC1B;YACD,IAAI,KAAK,GAAG,WAAW,CAAC,IAAI,CAAC,EAAE,CAAC,CAAC;YAEjC,8CAA8C;YAC9C,MAAM,aAAa,GACf,CAAC,YAAY,CAAC,IAAI,CAAC,aAAa,CAAC,EAAE,CAAC,IAAI,IAAI,CAAC,CAAC;gBACzC,CAAC,CAAC,CAAC;gBACH,YAAY,CAAC,IAAI,CAAC,aAAa,CAAC,EAAE,CAAC,CAAC,CAAC;YAE9C;;;;cAIE;YACF,KAAK,GAAG,IAAI,CAAC,GAAG,CAAC,KAAK,EAAE,aAAa,CAAC,CAAC;YACvC,YAAY,CAAC,IAAI,CAAC,aAAa,CAAC,EAAE,CAAC,GAAG,KAAK,CAAC;YAC5C,cAAc,CAAC,IAAI,CAAC,aAAa,CAAC,EAAE,CAAC,GAAG,IAAI,CAAC,aAAa,CAAC;YAC3D,WAAW,CAAC,IAAI,CAAC,EAAE,CAAC,GAAG,KAAK,CAAC;YAE7B,qCAAqC;YACrC,KAAK,IAAI,CAAC,GAAG,CAAC,EAAE,CAAC,GAAG,IAAI,CAAC,aAAa,CAAC,MAAM,EAAE,CAAC,EAAE,EAAE;gBAClD,MAAM,YAAY,GAAG,IAAI,CAAC,aAAa,CAAC,CAAC,CAAC,CAAC;gBAC3C,MAAM,SAAS,GAAG,IAAI,CAAC,WAAW,CAAC,CAAC,CAAC,CAAC;gBACtC,MAAM,WAAW,GAAG,YAAY,CAAC,YAAY,CAAC,SAAS,CAAC,CAAC;gBACzD,MAAM,aAAa,GACf,CAAC,WAAW,CAAC,WAAW,CAAC,EAAE,CAAC,IAAI,IAAI,CAAC,CAAC,CAAC,CAAC,CAAC,CAAC;oBACH,WAAW,CAAC,WAAW,CAAC,EAAE,CAAC,CAAC,CAAC;gBACxE,WAAW,CAAC,WAAW,CAAC,EAAE,CAAC,GAAG,IAAI,CAAC,GAAG,CAAC,KAAK,GAAG,CAAC,EAAE,aAAa,CAAC,CAAC;gBACjE,YAAY,CAAC,WAAW,CAAC,EAAE,CAAC,GAAG,WAAW,CAAC;aAC5C;SACF;QAED,sDAAsD;QACtD,MAAM,YAAY,GAA8B,EAAE,CAAC;QACnD,KAAK,MAAM,MAAM,IAAI,WAAW,EAAE;YAChC,MAAM,KAAK,GAAG,WAAW,CAAC,MAAM,CAAC,CAAC;YAClC,IAAI,CAAC,CAAC,KAAK,IAAI,YAAY,CAAC,EAAE;gBAC5B,YAAY,CAAC,KAAK,CAAC,GAAG,EAAE,CAAC;aAC1B;YACD,YAAY,CAAC,KAAK,CAAC,CAAC,IAAI,CAAC,YAAY,CAAC,MAAM,CAAC,CAAC,CAAC;SAChD;QAED,uDAAuD;QACvD,MAAM,aAAa,GAA+B,EAAE,CAAC;QACrD,KAAK,MAAM,OAAO,IAAI,YAAY,EAAE;YAClC,MAAM,KAAK,GAAG,YAAY,CAAC,OAAO,CAAC,CAAC;YACpC,IAAI,CAAC,CAAC,KAAK,IAAI,aAAa,CAAC,EAAE;gBAC7B,aAAa,CAAC,KAAK,CAAC,GAAG,EAAE,CAAC;aAC3B;YACD,aAAa,CAAC,KAAK,CAAC,CAAC,IAAI,CAAC,cAAc,CAAC,OAAO,CAAC,CAAC,CAAC;SACpD;QAED,mCAAmC;QACnC,IAAI,SAAS,GAAG,MAAM,CAAC,IAAI,CAAC,aAAa,CAAC;aACrB,GAAG,CAAC,CAAC,CAAC,EAAE,CAAC,QAAQ,CAAC,CAAC,EAAE,EAAE,CAAC,CAAC;aACzB,IAAI,CAAC,aAAa,CAAC,oBAAoB,CAAC,CAAC;QAE9D,0CAA0C;QAC1C,IAAI,CAAC,MAAM,GAAG,EAAE,CAAC;QACjB,KAAK,MAAM,KAAK,IAAI,SAAS,EAAE;YAC7B,MAAM,cAAc,GAAG,aAAa,CAAC,KAAK,CAAC,CAAC;YAC5C,wDAAwD;YACxD,yCAAyC;YACzC,cAAc,CAAC,IAAI,CAAC,CAAC,CAAC,EAAE,CAAC,EAAE,EAAE;gBAC3B,MAAM,MAAM,GAAG,YAAY,CAAC,CAAC,CAAC,EAAE,CAAC,CAAC;gBAClC,MAAM,MAAM,GAAG,YAAY,CAAC,CAAC,CAAC,EAAE,CAAC,CAAC;gBAClC,IAAI,MAAM,GAAG,MAAM,EAAE;oBACnB,OAAO,CAAC,CAAC,CAAC;iBACX;gBACD,IAAI,MAAM,GAAG,MAAM,EAAE;oBACnB,OAAO,CAAC,CAAC;iBACV;gBACD,OAAO,CAAC,CAAC;YACX,CAAC,CAAC,CAAC;YACH,KAAK,MAAM,KAAK,IAAI,cAAc,EAAE;gBAClC,IAAI,KAAK,YAAY,SAAS,EAAE;oBAC9B,IAAI,CAAC,qBAAqB,CAAC,IAAI,CAAC,KAAK,CAAC,CAAC;iBACxC;gBACD,IAAI,CAAC,MAAM,CAAC,IAAI,CAAC,KAAK,CAAC,CAAC;aACzB;SACF;QACD,IAAI,CAAC,aAAa,GAAG,aAAa,CAAC;QAEnC,kCAAkC;QAClC,SAAS,GAAG,MAAM,CAAC,IAAI,CAAC,YAAY,CAAC;aACpB,GAAG,CAAC,CAAC,CAAC,EAAE,CAAC,QAAQ,CAAC,CAAC,EAAE,EAAE,CAAC,CAAC;aACzB,IAAI,CAAC,aAAa,CAAC,oBAAoB,CAAC,CAAC;QAE1D,kDAAkD;QAClD,+CAA+C;QAC/C,iDAAiD;QACjD,MAAM,iBAAiB,GAAG,IAAI,CAAC,MAAM,CAAC,KAAK,EAAE,CAAC;QAE9C,iCAAiC;QACjC,MAAM,uBAAuB,GAAa,EAAE,CAAC;QAC7C,KAAK,MAAM,KAAK,IAAI,SAAS,EAAE;YAC7B,KAAK,MAAM,IAAI,IAAI,YAAY,CAAC,KAAK,CAAC,EAAE;gBACtC,MAAM,KAAK,GAAG,IAAI,CAAC,aAAa,CAAC;gBACjC,IAAI,KAAK,IAAI,IAAI,EAAE;oBACjB,KAAK,MAAM,CAAC,IAAI,IAAI,CAAC,YAAY,EAAE;wBACjC,IAAI,iBAAiB,CAAC,OAAO,CAAC,CAAC,CAAC,KAAK,CAAC,CAAC,EAAE;4BACvC,MAAM,IAAI,YAAY,CAClB,sDAAsD,CAAC,EAAE;gCACzD,cAAc,KAAK,CAAC,IAAI,KAAK;gCAC7B,sDAAsD;gCACtD,UAAU,uBAAuB,EAAE,CAAC,CAAC;yBAC1C;qBACF;oBACD,KAAK,MAAM,CAAC,IAAI,IAAI,CAAC,aAAa,EAAE;wBAClC,iBAAiB,CAAC,IAAI,CAAC,CAAC,CAAC,CAAC;qBAC3B;oBACD,uBAAuB,CAAC,IAAI,CAAC,KAAK,CAAC,IAAI,CAAC,CAAC;iBAC1C;aACF;SACF;QAED,iDAAiD;QACjD,IAAI,CAAC,YAAY,GAAG,YAAY,CAAC;QAEjC,+DAA+D;QAC/D,0DAA0D;QAC1D,MAAM,QAAQ,GAAG,IAAI,CAAC,MAAM,CAAC,GAAG,CAAC,CAAC,CAAC,EAAE,CAAC,CAAC,CAAC,IAAI,CAAC,CAAC;QAC9C,KAAK,MAAM,IAAI,IAAI,QAAQ,EAAE;YAC3B,MAAM,cAAc,GAAG,QAAQ,CAAC,MAAM,CAAC,CAAC,CAAC,EAAE,CAAC,CAAC,KAAK,IAAI,CAAC,CAAC,MAAM,CAAC;YAC/D,IAAI,cAAc,KAAK,CAAC,EAAE;gBACxB,MAAM,IAAI,YAAY,CAClB,aAAa,IAAI,aAAa,cAAc,SAAS;oBACrD,+DAA+D;oBAC/D,IAAI,CAAC,SAAS,CAAC,QAAQ,CAAC,CAAC,CAAC;aAC/B;SACF;QAED,oBAAoB;QACpB,sDAAsD;QACtD,yCAAyC;QACzC,kDAAkD;QAClD,IAAI,CAAC,aAAa,GAAG,EAAE,CAAC;QACxB,6DAA6D;QAC7D,IAAI,CAAC,YAAY,GAAG,EAAE,CAAC;QAEvB,+DAA+D;QAC/D,gCAAgC;QAChC,gDAAgD;QAChD,IAAI,IAAI,CAAC;YACP,aAAa,EAAE,IAAI;YACnB,aAAa,EAAE,EAAE;YACjB,WAAW,EAAE,EAAE;YACf,aAAa,EAAE,EAAE;YACjB,YAAY,EAAE,IAAI,CAAC,MAAM;YACzB,aAAa,EAAE,IAAI,CAAC,OAAO;YAC3B,UAAU,EAAE,IAAI,CAAC,MAAM,CAAC,GAAG,CAAC,CAAC,CAAC,EAAE,CAAC,IAAI,CAAC;YACtC,WAAW,EAAE,IAAI,CAAC,OAAO,CAAC,GAAG,CAAC,CAAC,CAAC,EAAE,CAAC,IAAI,CAAC;YACxC,WAAW,EAAE,IAAI,CAAC,MAAM,CAAC,GAAG,CAAC,CAAC,CAAC,EAAE,CAAC,CAAC,CAAC,KAAK,CAAC;YAC1C,YAAY,EAAE,IAAI,CAAC,OAAO,CAAC,GAAG,CAAC,CAAC,CAAC,EAAE,CAAC,CAAC,CAAC,KAAK,CAAC;SAC7C,CAAC,CAAC;QACH,IAAI,CAAC,KAAK,GAAG,IAAI,CAAC;QAClB,IAAI,CAAC,SAAS,GAAG,CAAC,CAAC,CAAE,kDAAkD;IACzE,CAAC;IAEkB,iBAAiB;QAClC,IAAI,IAAI,CAAC,SAAS,KAAK,CAAC,EAAE;YACxB,MAAM,IAAI,KAAK,CAAC,cAAc,IAAI,CAAC,IAAI,wBAAwB,CAAC,CAAC;SAClE;IACH,CAAC;IAED;;;;;;;;;;;;;;;;;;;;;;;;;OAyBG;IACM,OAAO;QACd,IAAI,CAAC,iBAAiB,EAAE,CAAC;QACzB,MAAM,MAAM,GACQ,EAAC,oBAAoB,EAAE,IAAI,EAAE,oBAAoB,EAAE,CAAC,EAAC,CAAC;QAC1E,IAAI,EAAE,IAAI,CAAC,SAAS,KAAK,CAAC,EAAE;YAC1B,KAAK,MAAM,KAAK,IAAI,IAAI,CAAC,MAAM,EAAE;gBAC/B,MAAM,CAAC,oBAAoB,IAAI,KAAK,CAAC,OAAO,EAAE,CAAC,oBAAoB,CAAC;aACrE;YAED,0EAA0E;YAC1E,uEAAuE;YACvE,KAAK,MAAM,SAAS,IAAI,IAAI,CAAC,qBAAqB,EAAE;gBAClD,MAAM,CAAC,oBAAoB,IAAI,SAAS,CAAC,OAAO,EAAE,CAAC,oBAAoB,CAAC;aACzE;SACF;QACD,MAAM,CAAC,oBAAoB,GAAG,IAAI,CAAC,SAAS,CAAC;QAC7C,OAAO,MAAM,CAAC;IAChB,CAAC;IAED,IAAa,SAAS;QACpB,OAAO,IAAI,CAAC,UAAU,CAAC;IACzB,CAAC;IAED,IAAa,SAAS,CAAC,SAAkB;QACvC,IAAI,CAAC,MAAM,CAAC,OAAO,CAAC,KAAK,CAAC,EAAE;YAC1B,kCAAkC;YAChC,KAAa,CAAC,iBAAqC;iBAChD,OAAO,CAAC,CAAC,CAAC,EAAE,CAAC,CAAC,CAAC,SAAS,GAAG,SAAS,CAAC,CAAC;QAC7C,CAAC,CAAC,CAAC;QACH,IAAI,CAAC,UAAU,GAAG,SAAS,CAAC;IAC9B,CAAC;IAED,IAAa,gBAAgB;QAC3B,gEAAgE;QAChE,mEAAmE;QACnE,wBAAwB;QACxB,IAAI,IAAI,CAAC,iBAAiB,CAAC,MAAM,GAAG,CAAC,EAAE;YACrC,MAAM,IAAI,UAAU,CAChB,6DAA6D;gBAC7D,0DAA0D;gBAC1D,sDAAsD;gBACtD,+CAA+C,CAAC,CAAC;SACtD;QAED,IAAI,CAAC,IAAI,CAAC,SAAS,EAAE;YACnB,OAAO,EAAE,CAAC;SACX;QACD,IAAI,OAAO,GAAoB,EAAE,CAAC;QAClC,KAAK,MAAM,KAAK,IAAI,IAAI,CAAC,MAAM,EAAE;YAC/B,OAAO,GAAG,OAAO,CAAC,MAAM,CAAC,KAAK,CAAC,gBAAgB,CAAC,CAAC;SAClD;QACD,OAAO,OAAO,CAAC;IACjB,CAAC;IAED,IAAa,mBAAmB;QAC9B,MAAM,OAAO,GAAoB,EAAE,CAAC;QACpC,KAAK,MAAM,KAAK,IAAI,IAAI,CAAC,MAAM,EAAE;YAC/B,OAAO,CAAC,IAAI,CAAC,GAAG,KAAK,CAAC,mBAAmB,CAAC,CAAC;SAC5C;QACD,IAAI,CAAC,IAAI,CAAC,SAAS,EAAE;YACnB,MAAM,gBAAgB,GAAoB,EAAE,CAAC;YAC7C,KAAK,MAAM,KAAK,IAAI,IAAI,CAAC,MAAM,EAAE;gBAC/B,gBAAgB,CAAC,IAAI,CAAC,GAAG,KAAK,CAAC,gBAAgB,CAAC,CAAC;aAClD;YACD,OAAO,gBAAgB,CAAC,MAAM,CAAC,OAAO,CAAC,CAAC;SACzC;QACD,OAAO,OAAO,CAAC;IACjB,CAAC;IAED,IAAa,OAAO;QAClB,OAAO,IAAI,CAAC,gBAAgB,CAAC,MAAM,CAAC,IAAI,CAAC,mBAAmB,CAAC,CAAC;IAChE,CAAC;IAED;;;;;;;;;;;;;;OAcG;IACH,WAAW,CAAC,OAAuB,EAAE,MAAM,GAAG,IAAI;QAChD,MAAM,YAAY,GAAoC,EAAE,CAAC;QACzD,IAAI,iBAAiB,GAAG,CAAC,CAAC;QAC1B,MAAM,4BAA4B,GAAG,uBAAuB,CAAC,OAAO,CAAC,CAAC;QACtE,IAAI,4BAA4B,EAAE;YAChC,IAAI,CAAC,YAAY,CAAC,OAAO,CAAC,CAAC;SAC5B;QACD,kCAAkC;QAClC,KAAK,MAAM,KAAK,IAAI,IAAI,CAAC,MAAM,EAAE;YAC/B,KAAK,MAAM,CAAC,KAAK,EAAE,MAAM,CAAC,IAAI,KAAK,CAAC,OAAO,CAAC,OAAO,EAAE,EAAE;gBACrD,qCAAqC;gBACrC,8CAA8C;gBAC9C,MAAM,UAAU,GAAG,4BAA4B,CAAC,CAAC;oBAC7C,GAAG,MAAM,CAAC,IAAI,CAAC,KAAK,CAAC,GAAG,CAAC,CAAC,KAAK,CAAC,CAAC,EAAE,CAAC,CAAC,CAAC,CAAC,IAAI,CAAC,GAAG,CAAC,GAAG,GAAG,GAAG,KAAK,EAAE,CAAC,CAAC;oBAClE,MAAM,CAAC,YAAY,CAAC;gBACxB,IAAI,YAAY,CAAC,UAAU,CAAC,IAAI,IAAI,EAAE;oBACpC,MAAM,IAAI,UAAU,CAAC,0BAA0B,UAAU,EAAE,CAAC,CAAC;iBAC9D;gBACD,YAAY,CAAC,UAAU,CAAC,GAAG,MAAM,CAAC;gBAClC,iBAAiB,EAAE,CAAC;aACrB;SACF;QAED,MAAM,iBAAiB,GAAmC,EAAE,CAAC;QAC7D,KAAK,MAAM,IAAI,IAAI,OAAO,EAAE;YAC1B,+DAA+D;YAC/D,sDAAsD;YACtD,uBAAuB;YACvB,IAAI,aAAa,GAAG,IAAI,CAAC;YACzB,IAAI,YAAY,CAAC,IAAI,CAAC,IAAI,IAAI,EAAE;gBAC9B,MAAM,MAAM,GAAG,IAAI,CAAC,KAAK,CAAC,GAAG,CAAC,CAAC;gBAC/B,MAAM,gBAAgB,GAClB,MAAM,CAAC,KAAK,CAAC,CAAC,EAAE,CAAC,CAAC,CAAC,CAAC,MAAM,CAAC,CAAC,MAAM,CAAC,MAAM,CAAC,MAAM,GAAG,CAAC,CAAC,CAAC,CAAC,CAAC;gBAC5D,aAAa,GAAG,gBAAgB,CAAC,IAAI,CAAC,GAAG,CAAC,CAAC;aAC5C;YACD,IAAI,YAAY,CAAC,aAAa,CAAC,IAAI,IAAI,EAAE;gBACvC,iBAAiB,CAAC,IAAI,CAAC,CAAC,YAAY,CAAC,aAAa,CAAC,EAAE,OAAO,CAAC,IAAI,CAAC,CAAC,CAAC,CAAC;aACtE;iBAAM,IAAI,MAAM,EAAE;gBACjB,MAAM,IAAI,UAAU,CAChB,gDAAgD,IAAI,EAAE,CAAC,CAAC;aAC7D;YACD,OAAO,YAAY,CAAC,aAAa,CAAC,CAAC;SACpC;QAED,IAAI,MAAM,EAAE;YACV,kCAAkC;YAClC,MAAM,UAAU,GAAa,EAAE,CAAC;YAChC,KAAK,MAAM,IAAI,IAAI,YAAY,EAAE;gBAC/B,UAAU,CAAC,IAAI,CAAC,IAAI,CAAC,CAAC;aACvB;YACD,IAAI,UAAU,CAAC,MAAM,GAAG,CAAC,EAAE;gBACzB,MAAM,IAAI,UAAU,CAChB,GAAG,UAAU,CAAC,MAAM,OAChB,iBAAiB,wBAAwB;oBAC7C,GAAG,UAAU,EAAE,CAAC,CAAC;aACtB;SACF;QAED,aAAa,CAAC,iBAAiB,CAAC,CAAC;IACnC,CAAC;IAES,YAAY,CAAC,OAAuB;QAC5C,KAAK,MAAM,GAAG,IAAI,MAAM,CAAC,IAAI,CAAC,OAAO,CAAC,EAAE;YACtC,MAAM,SAAS,GAAG,GAAG,CAAC,KAAK,CAAC,GAAG,CAAC,CAAC;YACjC,MAAM,IAAI,GAAG,CAAC,MAAM,EAAE,+BAA+B,CAAC,CAAC;YACvD,0EAA0E;YAC1E,qEAAqE;YACrE,uBAAuB;YACvB,0EAA0E;YAC1E,4DAA4D;YAC5D,uEAAuE;YACvE,sBAAsB;YACtB,MAAM,MAAM,GAAG,SAAS;iBACJ,GAAG,CAAC,GAAG,CAAC,EAAE;gBACT,IAAI,GAAG,CAAC,UAAU,CAAC,GAAG,CAAC,EAAE;oBACvB,OAAO,GAAG,CAAC,KAAK,CAAC,CAAC,CAAC,CAAC;iBACrB;gBACD,OAAO,GAAG,CAAC;YACb,CAAC,CAAC;iBACD,MAAM,CAAC,GAAG,CAAC,EAAE,CAAC,CAAC,IAAI,CAAC,QAAQ,CAAC,GAAG,CAAC,CAAC;iBAClC,IAAI,CAAC,GAAG,CAAC,CAAC;YAC9B,IAAI,MAAM,KAAK,GAAG,EAAE;gBAClB,OAAO,CAAC,MAAM,CAAC,GAAG,OAAO,CAAC,GAAG,CAAC,CAAC;gBAC/B,OAAO,OAAO,CAAC,GAAG,CAAC,CAAC;aACrB;SACF;IACH,CAAC;IAED;;;OAGG;IACO,aAAa;QACrB,MAAM,SAAS,GAAG,IAAI,CAAC,SAAS,EAAE,CAAC;QACnC,MAAM,WAAW,GAA6B,EAAE,CAAC;QACjD,WAAW,CAAC,WAAW,CAAC,GAAG,IAAI,CAAC,YAAY,EAAE,CAAC;QAC/C,WAAW,CAAC,QAAQ,CAAC,GAAG,SAAS,CAAC;QAClC,WAAW,CAAC,cAAc,CAAC,GAAG,eAAe,aAAa,EAAE,CAAC;QAC7D,0DAA0D;QAC1D,YAAY;QACZ,WAAW,CAAC,SAAS,CAAC,GAAG,eAAe,CAAC;QACzC,OAAO,WAAW,CAAC;IACrB,CAAC;IAED;;;;;;;;;;OAUG;IACH,kCAAkC;IAClC,MAAM,CAAC,MAAY,EAAE,YAAY,GAAG,IAAI;QACtC,MAAM,WAAW,GAAG,mBAAmB,CAAC,IAAI,CAAC,aAAa,EAAE,CAAe,CAAC;QAC5E,OAAO,YAAY,CAAC,CAAC,CAAC,IAAI,CAAC,SAAS,CAAC,WAAW,CAAC,CAAC,CAAC,CAAC,WAAW,CAAC;IAClE,CAAC;IAED;;;;;;;;;;;;OAYG;IACM,IAAI,CAAC,MAAuB,EAAE,MAAc;QACnD,OAAO,IAAI,CAAC,GAAG,EAAE;YACf,MAAM,GAAG,aAAa,CAAC,MAAM,CAAC,MAAM,CAAC,CAAC;YACtC,MAAM,QAAQ,GAAG,IAAI,QAAQ,EAAE,CAAC;YAChC,KAAK,IAAI,CAAC,GAAG,CAAC,EAAE,CAAC,GAAG,IAAI,CAAC,MAAM,CAAC,MAAM,EAAE,EAAE,CAAC,EAAE;gBAC3C,QAAQ,CAAC,GAAG,CAAC,IAAI,CAAC,MAAM,CAAC,CAAC,CAAC,EAAE,MAAM,CAAC,CAAC,CAAC,CAAC,CAAC;aACzC;YACD,OAAO,OAAO,CAAC,IAAI,CAAC,OAAO,EAAE,QAAQ,EAAE,MAAM,CAAsB,CAAC;QACtE,CAAC,CAAC,CAAC;IACL,CAAC;IAED;;;;;;;;OAQG;IACM,WAAW,CAAC,MAAuB,EAAE,IAAsB;QAElE,OAAO,IAAI,CAAC,GAAG,EAAE;YACf,MAAM,GAAG,aAAa,CAAC,MAAM,CAAC,MAAM,CAAC,CAAC;YACtC,IAAI,KAAe,CAAC;YACpB,IAAI,IAAI,IAAI,IAAI,EAAE;gBAChB,KAAK,GAAG,aAAa,CAAC,YAAY,CAAC,IAAI,EAAE,MAAM,CAAC,MAAM,CAAC,CAAC;aACzD;iBAAM;gBACL,KAAK,GAAG,aAAa,CAAC,MAAM,CAAC,IAAI,CAAC,CAAC;aACpC;YACD,oDAAoD;YACpD,OAAO,IAAI,CAAC,gBAAgB,CAAC,MAAM,EAAE,KAAK,CAAC,CAAC,CAAC,CAAC,CAAC;QACjD,CAAC,CAAC,CAAC;IACL,CAAC;IAED;;;;;;;;OAQG;IACM,kBAAkB,CAAC,UAAyB;QACnD,MAAM,WAAW,GAAG,WAAW,CAAC,kBAAkB,CAAC,UAAU,CAAC,CAAC;QAC/D,IAAI,WAAW,CAAC,MAAM,KAAK,IAAI,CAAC,WAAW,CAAC,MAAM,EAAE;YAClD,MAAM,IAAI,UAAU,CAChB,+BAA+B,UAAU,IAAI;gBAC7C,aAAa,IAAI,CAAC,WAAW,CAAC,MAAM,iBAAiB,CAAC,CAAC;SAC5D;QAED,kCAAkC;QAClC,MAAM,oBAAoB,GAAgC,EAAE,CAAC;QAC7D,KAAK,IAAI,CAAC,GAAG,CAAC,EAAE,CAAC,GAAG,WAAW,CAAC,MAAM,EAAE,CAAC,EAAE,EAAE;YAC3C,MAAM,KAAK,GAAG,IAAI,CAAC,WAAW,CAAC,CAAC,CAAC,CAAC;YAClC,MAAM,UAAU,GAAG,WAAW,CAAC,CAAC,CAAC,CAAC;YAClC,uDAAuD;YACvD,oDAAoD;YACpD,MAAM,QAAQ,GAAG,KAAK,CAAC,IAAI,GAAG,MAAM,CAAC;YACrC,oBAAoB,CAAC,QAAQ,CAAC,GAAG,UAAU,CAAC;SAC7C;QAED,MAAM,SAAS,GAAG,MAAM,CAAC,IAAI,CAAC,IAAI,CAAC,YAAY,CAAC;aACzB,GAAG,CAAC,CAAC,CAAC,EAAE,CAAC,QAAQ,CAAC,CAAC,EAAE,EAAE,CAAC,CAAC;aACzB,IAAI,CAAC,aAAa,CAAC,oBAAoB,CAAC,CAAC;QAChE,sCAAsC;QACtC,IAAI,SAAS,CAAC,MAAM,GAAG,CAAC,EAAE;YACxB,KAAK,MAAM,KAAK,IAAI,SAAS,EAAE;gBAC7B,MAAM,KAAK,GAAG,IAAI,CAAC,YAAY,CAAC,KAAK,CAAC,CAAC;gBACvC,KAAK,MAAM,IAAI,IAAI,KAAK,EAAE;oBACxB,+CAA+C;oBAC/C,MAAM,KAAK,GAAG,IAAI,CAAC,aAAa,CAAC;oBACjC,IAAI,IAAI,CAAC,WAAW,CAAC,GAAG,CAAC,CAAC,CAAC,EAAE,CAAC,CAAC,CAAC,EAAE,CAAC,CAAC,OAAO,CAAC,KAAK,CAAC,EAAE,CAAC,KAAK,CAAC,CAAC,EAAE;wBAC5D,4DAA4D;wBAC5D,SAAS;qBACV;oBACD,8DAA8D;oBAC9D,MAAM,WAAW,GAAY,EAAE,CAAC;oBAChC,KAAK,IAAI,CAAC,GAAG,CAAC,EAAE,CAAC,GAAG,IAAI,CAAC,aAAa,CAAC,MAAM,EAAE,CAAC,EAAE,EAAE;wBAClD,MAAM,YAAY,GAAG,IAAI,CAAC,aAAa,CAAC,CAAC,CAAC,CAAC;wBAC3C,MAAM,SAAS,GAAG,IAAI,CAAC,WAAW,CAAC,CAAC,CAAC,CAAC;wBACtC,MAAM,WAAW,GAAG,IAAI,CAAC,aAAa,CAAC,CAAC,CAAC,CAAC;wBAC1C,MAAM,QAAQ,GAAG,GAAG,YAAY,CAAC,IAAI,IAAI,SAAS,IAAI,WAAW,EAAE,CAAC;wBACpE,MAAM,UAAU,GAAG,oBAAoB,CAAC,QAAQ,CAAC,CAAC;wBAClD,WAAW,CAAC,IAAI,CAAC,UAAU,CAAC,CAAC;qBAC9B;oBAED,MAAM,WAAW,GAAG,KAAK,CAAC,kBAAkB,CACxC,aAAa,CAAC,gBAAgB,CAAC,WAAW,CAAC,CAAC,CAAC;oBAEjD,MAAM,YAAY,GAAG,WAAW,CAAC,kBAAkB,CAAC,WAAW,CAAC,CAAC;oBACjE,MAAM,SAAS,GAAG,KAAK,CAAC,YAAY,CAAC,OAAO,CAAC,IAAI,CAAC,CAAC;oBACnD,KAAK,IAAI,CAAC,GAAG,CAAC,EAAE,CAAC,GAAG,YAAY,CAAC,MAAM,EAAE,CAAC,EAAE,EAAE;wBAC5C,MAAM,QAAQ,GAAG,GAAG,KAAK,CAAC,IAAI,IAAI,SAAS,IAAI,CAAC,EAAE,CAAC;wBACnD,oBAAoB,CAAC,QAAQ,CAAC,GAAG,YAAY,CAAC,CAAC,CAAC,CAAC;qBAClD;iBACF;aACF;SACF;QAED,sDAAsD;QACtD,MAAM,YAAY,GAAY,EAAE,CAAC;QACjC,MAAM,eAAe,GAAa,EAAE,CAAC;QACrC,KAAK,IAAI,CAAC,GAAG,CAAC,EAAE,CAAC,GAAG,IAAI,CAAC,YAAY,CAAC,MAAM,EAAE,CAAC,EAAE,EAAE;YACjD,MAAM,KAAK,GAAG,IAAI,CAAC,YAAY,CAAC,CAAC,CAAC,CAAC;YACnC,MAAM,SAAS,GAAG,IAAI,CAAC,uBAAuB,CAAC,CAAC,CAAC,CAAC;YAClD,MAAM,WAAW,GAAG,IAAI,CAAC,yBAAyB,CAAC,CAAC,CAAC,CAAC;YACtD,MAAM,QAAQ,GAAG,GAAG,KAAK,CAAC,IAAI,IAAI,SAAS,IAAI,WAAW,EAAE,CAAC;YAC7D,eAAe,CAAC,IAAI,CAAC,QAAQ,CAAC,CAAC;SAChC;QAED,KAAK,IAAI,CAAC,GAAG,CAAC,EAAE,CAAC,GAAG,eAAe,CAAC,MAAM,EAAE,CAAC,EAAE,EAAE;YAC/C,MAAM,GAAG,GAAG,eAAe,CAAC,CAAC,CAAC,CAAC;YAC/B,aAAa,CAAC,MAAM,CAAC,GAAG,IAAI,oBAAoB,CAAC,CAAC;YAClD,YAAY,CAAC,IAAI,CAAC,oBAAoB,CAAC,GAAG,CAAC,CAAC,CAAC;SAC9C;QAED,mCAAmC;QACnC,OAAO,aAAa,CAAC,gBAAgB,CAAC,YAAY,CAAC,CAAC;IACtD,CAAC;IAED;;;;;;;;;OASG;IACO,gBAAgB,CAAC,MAAgB,EAAE,KAAgB;QAE3D,IAAI,KAAK,IAAI,IAAI,EAAE;YACjB,KAAK,GAAG,aAAa,CAAC,YAAY,CAAC,IAAI,EAAE,MAAM,CAAC,MAAM,CAAC,CAAC;SACzD;QAED,iDAAiD;QACjD,kCAAkC;QAClC,8CAA8C;QAC9C,qDAAqD;QACrD,iDAAiD;QACjD,MAAM,SAAS,GAA2C,EAAE,CAAC;QAC7D,KAAK,IAAI,CAAC,GAAG,CAAC,EAAE,CAAC,GAAG,IAAI,CAAC,MAAM,CAAC,MAAM,EAAE,EAAE,CAAC,EAAE;YAC3C,MAAM,CAAC,GAAG,IAAI,CAAC,MAAM,CAAC,CAAC,CAAC,CAAC;YACzB,MAAM,CAAC,GAAG,MAAM,CAAC,CAAC,CAAC,CAAC;YACpB,MAAM,IAAI,GAAG,KAAK,CAAC,CAAC,CAAC,CAAC;YACtB,SAAS,CAAC,CAAC,CAAC,EAAE,CAAC,GAAG,CAAC,CAAC,EAAE,IAAI,CAAC,CAAC;SAC7B;QAED,MAAM,SAAS,GAAG,MAAM,CAAC,IAAI,CAAC,IAAI,CAAC,YAAY,CAAC;aACzB,GAAG,CAAC,CAAC,CAAC,EAAE,CAAC,QAAQ,CAAC,CAAC,EAAE,EAAE,CAAC,CAAC;aACzB,IAAI,CAAC,aAAa,CAAC,oBAAoB,CAAC,CAAC;QAChE,KAAK,MAAM,KAAK,IAAI,SAAS,EAAE;YAC7B,MAAM,KAAK,GAAG,IAAI,CAAC,YAAY,CAAC,KAAK,CAAC,CAAC;YACvC,KAAK,MAAM,IAAI,IAAI,KAAK,EAAE;gBACxB,+CAA+C;gBAC/C,MAAM,KAAK,GAAG,IAAI,CAAC,aAAa,CAAC;gBACjC,MAAM,qBAAqB,GAAG,IAAI,CAAC,YAAY,CAAC;gBAChD,MAAM,sBAAsB,GAAG,IAAI,CAAC,aAAa,CAAC;gBAElD,4DAA4D;gBAC5D,uCAAuC;gBACvC,gCAAgC;gBAChC,MAAM,YAAY,GAAG,IAAI,KAAK,EAAoB,CAAC;gBACnD,KAAK,MAAM,CAAC,IAAI,qBAAqB,EAAE;oBACrC,IAAI,CAAC,CAAC,EAAE,IAAI,SAAS,EAAE;wBACrB,YAAY,CAAC,IAAI,CAAC,SAAS,CAAC,CAAC,CAAC,EAAE,CAAC,CAAC,CAAC;qBACpC;iBACF;gBACD,IAAI,YAAY,CAAC,MAAM,KAAK,qBAAqB,CAAC,MAAM,EAAE;oBACxD,4DAA4D;oBAC5D,IAAI,MAAM,GAAW,EAAE,CAAC;oBACxB,IAAI,eAAyB,CAAC;oBAC9B,IAAI,aAAuB,CAAC;oBAC5B,IAAI,aAAuB,CAAC;oBAC5B,IAAI,WAAqB,CAAC;oBAC1B,aAAa;oBACb,IAAI,IAAI,CAAC,QAAQ,IAAI,IAAI,EAAE;wBACzB,MAAM,GAAG,IAAI,CAAC,QAAQ,CAAC;qBACxB;oBACD,IAAI,YAAY,CAAC,MAAM,KAAK,CAAC,EAAE;wBAC7B,MAAM,CAAC,cAAc,EAAE,YAAY,CAAC,GAAG,YAAY,CAAC,CAAC,CAAC,CAAC;wBACvD,IAAI,MAAM,CAAC,MAAM,CAAC,IAAI,IAAI,EAAE;4BAC1B,MAAM,CAAC,MAAM,CAAC,GAAG,YAAY,CAAC;yBAC/B;wBACD,aAAa;4BACT,aAAa,CAAC,MAAM,CAAC,KAAK,CAAC,IAAI,CAAC,cAAc,EAAE,MAAM,CAAC,CAAC,CAAC;wBAC7D,WAAW,GAAG,aAAa,CAAC,MAAM,CAC9B,KAAK,CAAC,WAAW,CAAC,cAAc,EAAE,YAAY,CAAC,CAAC,CAAC;wBACrD,eAAe,GAAG,CAAC,cAAc,CAAC,CAAC;wBACnC,aAAa,GAAG,CAAC,YAAY,CAAC,CAAC;qBAChC;yBAAM;wBACL,eAAe,GAAG,YAAY,CAAC,GAAG,CAAC,CAAC,CAAC,EAAE,CAAC,CAAC,CAAC,CAAC,CAAC,CAAC,CAAC;wBAC9C,aAAa,GAAG,YAAY,CAAC,GAAG,CAAC,CAAC,CAAC,EAAE,CAAC,CAAC,CAAC,CAAC,CAAC,CAAC,CAAC;wBAC5C,IAAI,MAAM,CAAC,MAAM,CAAC,IAAI,IAAI,EAAE;4BAC1B,MAAM,CAAC,MAAM,CAAC,GAAG,aAAa,CAAC;yBAChC;wBACD,aAAa;4BACT,aAAa,CAAC,MAAM,CAAC,KAAK,CAAC,IAAI,CAAC,eAAe,EAAE,MAAM,CAAC,CAAC,CAAC;wBAC9D,WAAW,GAAG,aAAa,CAAC,MAAM,CAC9B,KAAK,CAAC,WAAW,CAAC,eAAe,EAAE,aAAa,CAAC,CAAC,CAAC;qBACxD;oBAED,IAAI,KAAK,CAAC,mBAAmB,EAAE;wBAC7B,MAAM,IAAI,mBAAmB,CACzB,8DAA8D;4BAC9D,2DAA2D,CAAC,CAAC;qBAClE;oBACD,mDAAmD;oBAEnD,qBAAqB;oBACrB,KAAK,IAAI,CAAC,GAAG,CAAC,EAAE,CAAC,GAAG,sBAAsB,CAAC,MAAM,EAAE,EAAE,CAAC,EAAE;wBACtD,MAAM,CAAC,GAAG,sBAAsB,CAAC,CAAC,CAAC,CAAC;wBACpC,MAAM,CAAC,GAAG,aAAa,CAAC,CAAC,CAAC,CAAC;wBAC3B,MAAM,IAAI,GAAG,WAAW,CAAC,CAAC,CAAC,CAAC;wBAC5B,SAAS,CAAC,CAAC,CAAC,EAAE,CAAC,GAAG,CAAC,CAAC,EAAE,IAAI,CAAC,CAAC;qBAC7B;iBACF;aACF;SACF;QAED,MAAM,aAAa,GAAa,EAAE,CAAC;QACnC,MAAM,WAAW,GAAa,EAAE,CAAC;QACjC,MAAM,YAAY,GAAY,EAAE,CAAC;QACjC,KAAK,MAAM,CAAC,IAAI,IAAI,CAAC,OAAO,EAAE;YAC5B,aAAa,CAAC,MAAM,CAChB,CAAC,CAAC,EAAE,IAAI,SAAS,EAAE,4BAA4B,CAAC,CAAC,IAAI,MAAM,CAAC,CAAC,EAAE,EAAE,CAAC,CAAC;YACvE,MAAM,CAAC,MAAM,EAAE,IAAI,CAAC,GAAG,SAAS,CAAC,CAAC,CAAC,EAAE,CAAC,CAAC;YACvC,YAAY,CAAC,IAAI,CAAC,MAAM,CAAC,KAAK,CAAC,CAAC;YAChC,aAAa,CAAC,IAAI,CAAC,MAAM,CAAC,CAAC;YAC3B,WAAW,CAAC,IAAI,CAAC,IAAI,CAAC,CAAC;SACxB;QAED,8CAA8C;QAC9C,OAAO,CAAC,aAAa,EAAE,WAAW,EAAE,YAAY,CAAC,CAAC;IACpD,CAAC;IAED;;;;;;;OAOG;IACK,sBAAsB,CAAC,MAAe;QAC5C,MAAM,iBAAiB,GAAgC,EAAE,CAAC;QAC1D,IAAI,SAAiB,CAAC;QACtB,KAAK,MAAM,KAAK,IAAI,IAAI,CAAC,MAAM,EAAE;YAC/B,SAAS,GAAG,KAAK,YAAY,SAAS,CAAC,CAAC,CAAC,CAAC,CAAC,CAAC,CAAC,CAAC,CAAC;YAC/C,KAAK,IAAI,iBAAiB,GAAG,CAAC,EACzB,iBAAiB,GAAG,KAAK,CAAC,YAAY,CAAC,MAAM,EAAE,iBAAiB,EAAE,EAAE;gBACvE,MAAM,OAAO,GAAG,SAAS,CAAC,OAAO,CAAC,KAAK,EAAE,iBAAiB,CAAC,CAAC;gBAC5D,IAAI,IAAI,CAAC,cAAc,CAAC,GAAG,CAAC,OAAO,CAAC,EAAE;oBACpC,8BAA8B;oBAC9B,iBAAiB,CAAC,OAAO,CAAC,GAAG,SAAS,CAAC;oBACvC,SAAS,IAAI,CAAC,CAAC;iBAChB;aACF;SACF;QACD,OAAO,iBAAiB,CAAC;IAC3B,CAAC;IAwBD,QAAQ,CAAC,WAA2B,EAAE,KAAc;QAClD,IAAI,KAAK,IAAI,IAAI,EAAE;YACjB,OAAO,IAAI,CAAC,SAAS,CAAC,KAAK,CAAC,CAAC;SAC9B;aAAM;YACL,IAAI,WAAW,IAAI,IAAI,EAAE;gBACvB,MAAM,IAAI,UAAU,CAAC,4CAA4C,CAAC,CAAC;aACpE;YACD,IAAI,OAAO,WAAW,KAAK,QAAQ,EAAE;gBACnC,OAAO,IAAI,CAAC,SAAS,CAAC,WAAW,CAAC,CAAC;aACpC;SACF;QAED,KAAK,MAAM,KAAK,IAAI,IAAI,CAAC,MAAM,EAAE;YAC/B,IAAI,KAAK,CAAC,IAAI,KAAK,WAAW,EAAE;gBAC9B,OAAO,KAAK,CAAC;aACd;SACF;QACD,MAAM,IAAI,UAAU,CAAC,kBAAkB,WAAW,EAAE,CAAC,CAAC;IACxD,CAAC;IAED,SAAS,CAAC,KAAa;QACrB,IAAI,IAAI,CAAC,MAAM,CAAC,MAAM,IAAI,KAAK,EAAE;YAC/B,MAAM,IAAI,UAAU,CAChB,wCAAwC,KAAK,mBAAmB;gBAChE,OAAO,IAAI,CAAC,MAAM,CAAC,MAAM,YAAY,CAAC,CAAC;SAC5C;aAAM;YACL,OAAO,IAAI,CAAC,MAAM,CAAC,KAAK,CAAC,CAAC;SAC3B;IACH,CAAC;IAED;;;;OAIG;IACM,eAAe;QACtB,sEAAsE;QACtE,yEAAyE;QACzE,yEAAyE;QACzE,wBAAwB;QACxB,OAAO,IAAI,CAAC,GAAG,EAAE;YACf,MAAM,MAAM,GAAa,EAAE,CAAC;YAC5B,KAAK,MAAM,KAAK,IAAI,IAAI,CAAC,MAAM,EAAE;gBAC/B,KAAK,IAAI,SAAS,GAAG,CAAC,EAAE,SAAS,GAAG,KAAK,CAAC,YAAY,CAAC,MAAM,EACxD,EAAE,SAAS,EAAE;oBAChB,MAAM,OAAO,GAAG,SAAS,CAAC,OAAO,CAAC,KAAK,EAAE,SAAS,CAAC,CAAC;oBACpD,IAAI,IAAI,CAAC,cAAc,CAAC,GAAG,CAAC,OAAO,CAAC,EAAE;wBACpC,MAAM,CAAC,IAAI,CAAC,GAAG,KAAK,CAAC,eAAe,EAAE,CAAC,CAAC;qBACzC;iBACF;aACF;YACD,wDAAwD;YACxD,OAAO,MAAM,CAAC;QAChB,CAAC,CAAC,CAAC;IACL,CAAC;IAEQ,SAAS;QAChB,MAAM,MAAM,GAA6B,EAAC,IAAI,EAAE,IAAI,CAAC,IAAI,EAAC,CAAC;QAE3D,sDAAsD;QACtD,0DAA0D;QAC1D,2CAA2C;QAC3C,MAAM,iBAAiB,GACnB,IAAI,CAAC,sBAAsB,CAAC,IAAI,CAAC,MAAM,CAAC,CAAC;QAE7C,gDAAgD;QAChD,MAAM,YAAY,GAAG,EAAE,CAAC;QACxB,KAAK,MAAM,KAAK,IAAI,IAAI,CAAC,MAAM,EAAE;YAC/B,MAAM,cAAc,GAAG,KAAK,CAAC,YAAY,EAAE,CAAC;YAC5C,MAAM,WAAW,GAAG,KAAK,CAAC,SAAS,EAAE,CAAC;YACtC,MAAM,oBAAoB,GAAG,EAAE,CAAC;YAChC,KAAK,IAAI,iBAAiB,GAAG,CAAC,EACzB,iBAAiB,GAAG,KAAK,CAAC,YAAY,CAAC,MAAM,EAAE,iBAAiB,EAAE,EAAE;gBACvE,MAAM,IAAI,GAAG,KAAK,CAAC,YAAY,CAAC,iBAAiB,CAAC,CAAC;gBACnD,MAAM,OAAO,GAAG,SAAS,CAAC,OAAO,CAAC,KAAK,EAAE,iBAAiB,CAAC,CAAC;gBAC5D,IAAI,MAAM,GAAG,EAAE,CAAC;gBAChB,IAAI,IAAI,CAAC,cAAc,CAAC,GAAG,CAAC,OAAO,CAAC,EAAE;oBACpC,qCAAqC;oBACrC,+BAA+B;oBAC/B,IAAI,IAAI,CAAC,QAAQ,EAAE;wBACjB,IAAI;4BACF,IAAI,CAAC,SAAS,CAAC,IAAI,CAAC,QAAQ,CAAC,CAAC;4BAC9B,MAAM,GAAG,IAAI,CAAC,QAAQ,CAAC;yBACxB;wBAAC,OAAO,GAAG,EAAE;4BACZ,OAAO,CAAC,IAAI,CACR,SAAS,KAAK,CAAC,IAAI,cAAc;gCACjC,sCAAsC;gCACtC,GAAG,IAAI,CAAC,QAAQ,8BAA8B;gCAC9C,4CAA4C;gCAC5C,mCAAmC,CAAC,CAAC;4BACzC,MAAM,GAAG,EAAE,CAAC;yBACb;qBACF;oBACD,IAAI,IAAI,CAAC,aAAa,CAAC,MAAM,GAAG,CAAC,EAAE;wBACjC,MAAM,QAAQ,GAAG,EAAE,CAAC;wBACpB,KAAK,IAAI,CAAC,GAAG,CAAC,EAAE,CAAC,GAAG,IAAI,CAAC,aAAa,CAAC,MAAM,EAAE,CAAC,EAAE,EAAE;4BAClD,MAAM,YAAY,GAAG,IAAI,CAAC,aAAa,CAAC,CAAC,CAAC,CAAC;4BAC3C,MAAM,SAAS,GAAG,IAAI,CAAC,WAAW,CAAC,CAAC,CAAC,CAAC;4BACtC,MAAM,WAAW,GAAG,IAAI,CAAC,aAAa,CAAC,CAAC,CAAC,CAAC;4BAC1C,MAAM,OAAO,GAAG,SAAS,CAAC,OAAO,CAAC,YAAY,EAAE,SAAS,CAAC,CAAC;4BAC3D,IAAI,YAAY,GAAG,iBAAiB,CAAC,OAAO,CAAC,CAAC;4BAC9C,IAAI,YAAY,IAAI,IAAI,EAAE;gCACxB,YAAY,GAAG,CAAC,CAAC;6BAClB;4BACD,QAAQ,CAAC,IAAI,CACT,CAAC,YAAY,CAAC,IAAI,EAAE,YAAY,EAAE,WAAW,EAAE,MAAM,CAAC,CAAC,CAAC;yBAC7D;wBACD,oBAAoB,CAAC,IAAI,CAAC,QAAQ,CAAC,CAAC;qBACrC;iBACF;aACF;YACD,MAAM,IAAI,GAA6B,EAAE,CAAC;YAC1C,IAAI,CAAC,MAAM,CAAC,GAAG,KAAK,CAAC,IAAI,CAAC;YAC1B,IAAI,CAAC,WAAW,CAAC,GAAG,cAAc,CAAC;YACnC,IAAI,CAAC,QAAQ,CAAC,GAAG,WAAW,CAAC;YAC7B,IAAI,CAAC,cAAc,CAAC,GAAG,oBAAoB,CAAC;YAC5C,YAAY,CAAC,IAAI,CAAC,IAAI,CAAC,CAAC;SACzB;QACD,MAAM,CAAC,QAAQ,CAAC,GAAG,YAAY,CAAC;QAChC,uCAAuC;QACvC,MAAM,WAAW,GAAG,EAAE,CAAC;QACvB,KAAK,IAAI,CAAC,GAAG,CAAC,EAAE,CAAC,GAAG,IAAI,CAAC,WAAW,CAAC,MAAM,EAAE,CAAC,EAAE,EAAE;YAChD,MAAM,KAAK,GAAG,IAAI,CAAC,WAAW,CAAC,CAAC,CAAC,CAAC;YAClC,MAAM,SAAS,GAAG,IAAI,CAAC,sBAAsB,CAAC,CAAC,CAAC,CAAC;YAEjD,MAAM,OAAO,GAAG,SAAS,CAAC,OAAO,CAAC,KAAK,EAAE,SAAS,CAAC,CAAC;YACpD,IAAI,CAAC,IAAI,CAAC,cAAc,CAAC,GAAG,CAAC,OAAO,CAAC,EAAE;gBACrC,SAAS;aACV;YACD,IAAI,YAAY,GAAG,iBAAiB,CAAC,OAAO,CAAC,CAAC;YAC9C,IAAI,YAAY,KAAK,IAAI,IAAI,YAAY,KAAK,SAAS,EAAE;gBACvD,YAAY,GAAG,CAAC,CAAC;aAClB;YACD,MAAM,WAAW,GAAG,IAAI,CAAC,wBAAwB,CAAC,CAAC,CAAC,CAAC;YACrD,WAAW,CAAC,IAAI,CAAC,CAAC,KAAK,CAAC,IAAI,EAAE,YAAY,EAAE,WAAW,CAAC,CAAC,CAAC;SAC3D;QACD,MAAM,CAAC,aAAa,CAAC,GAAG,WAAW,CAAC;QAEpC,MAAM,YAAY,GAAG,EAAE,CAAC;QACxB,KAAK,IAAI,CAAC,GAAG,CAAC,EAAE,CAAC,GAAG,IAAI,CAAC,YAAY,CAAC,MAAM,EAAE,CAAC,EAAE,EAAE;YACjD,MAAM,KAAK,GAAG,IAAI,CAAC,YAAY,CAAC,CAAC,CAAC,CAAC;YACnC,MAAM,SAAS,GAAG,IAAI,CAAC,uBAAuB,CAAC,CAAC,CAAC,CAAC;YAElD,MAAM,OAAO,GAAG,SAAS,CAAC,OAAO,CAAC,KAAK,EAAE,SAAS,CAAC,CAAC;YACpD,IAAI,CAAC,IAAI,CAAC,cAAc,CAAC,GAAG,CAAC,OAAO,CAAC,EAAE;gBACrC,SAAS;aACV;YACD,IAAI,YAAY,GAAG,iBAAiB,CAAC,OAAO,CAAC,CAAC;YAC9C,IAAI,YAAY,KAAK,IAAI,IAAI,YAAY,KAAK,SAAS,EAAE;gBACvD,YAAY,GAAG,CAAC,CAAC;aAClB;YACD,MAAM,WAAW,GAAG,IAAI,CAAC,yBAAyB,CAAC,CAAC,CAAC,CAAC;YACtD,YAAY,CAAC,IAAI,CAAC,CAAC,KAAK,CAAC,IAAI,EAAE,YAAY,EAAE,WAAW,CAAC,CAAC,CAAC;SAC5D;QACD,MAAM,CAAC,cAAc,CAAC,GAAG,YAAY,CAAC;QACtC,OAAO,MAAM,CAAC;IAChB,CAAC;IAED;;;;;;;;;;;OAWG;IACH,kBAAkB;IAClB,MAAM,CAAU,UAAU,CACtB,GAA6C,EAC7C,MAAgC,EAChC,gBAAgB,EAA8B,EAC9C,cAAc,GAAG,KAAK;QACxB,iCAAiC;QACjC,mCAAmC;QACnC,MAAM,aAAa,GAAiC,EAAE,CAAC;QAEvD,wCAAwC;QACxC,yCAAyC;QACzC,oDAAoD;QACpD,qDAAqD;QACrD,wDAAwD;QACxD,MAAM,gBAAgB,GAAkD,EAAE,CAAC;QAC3E,SAAS,kBAAkB,CACvB,KAAY,EAAE,QAAkC;YAClD,IAAI,CAAC,CAAC,KAAK,CAAC,IAAI,IAAI,gBAAgB,CAAC,EAAE;gBACrC,gBAAgB,CAAC,KAAK,CAAC,IAAI,CAAC,GAAG,CAAC,QAAQ,CAAC,CAAC;aAC3C;iBAAM;gBACL,gBAAgB,CAAC,KAAK,CAAC,IAAI,CAAC,CAAC,IAAI,CAAC,QAAQ,CAAC,CAAC;aAC7C;QACH,CAAC;QAED,SAAS,WAAW,CAAC,KAAY,EAAE,QAAkC;YACnE,MAAM,YAAY,GAAqB,EAAE,CAAC;YAC1C,IAAI,MAAM,CAAC;YACX,KAAK,MAAM,SAAS,IAAI,QAAQ,EAAE;gBAChC,MAAM,gBAAgB,GAAG,SAAS,CAAC,CAAC,CAAC,CAAC;gBACtC,MAAM,gBAAgB,GAAG,SAAS,CAAC,CAAC,CAAC,CAAC;gBACtC,MAAM,kBAAkB,GAAG,SAAS,CAAC,CAAC,CAAC,CAAC;gBAExC,MAAM,GAAG,SAAS,CAAC,CAAC,CAAC,IAAI,IAAI,CAAC,CAAC;oBAC3B,EAAE,CAAC,CAAC;oBACJ,SAAS,CAAC,CAAC,CAA6B,CAAC;gBAC7C,IAAI,CAAC,CAAC,gBAAgB,IAAI,aAAa,CAAC,EAAE;oBACxC,kBAAkB,CAAC,KAAK,EAAE,QAAQ,CAAC,CAAC;oBACpC,OAAO;iBACR;gBACD,MAAM,YAAY,GAAG,aAAa,CAAC,gBAAgB,CAAC,CAAC;gBACrD,IAAI,YAAY,CAAC,YAAY,CAAC,MAAM,IAAI,gBAAgB,EAAE;oBACxD,kBAAkB,CAAC,KAAK,EAAE,QAAQ,CAAC,CAAC;oBACpC,OAAO;iBACR;gBACD,MAAM,WAAW,GAAG,YAAY,CAAC,YAAY,CAAC,gBAAgB,CAAC,CAAC;gBAChE,YAAY,CAAC,IAAI,CAAC,WAAW,CAAC,aAAa,CAAC,kBAAkB,CAAC,CAAC,CAAC;aAClE;YACD,mDAAmD;YACnD,oCAAoC;YACpC,8CAA8C;YAC9C,IAAI,YAAY,CAAC,MAAM,GAAG,CAAC,EAAE;gBAC3B,KAAK,CAAC,KAAK,CACP,aAAa,CAAC,gBAAgB,CAAC,YAAY,CAAC,EAC5C,MAAM,CAAC,CAAC,CAAE,gBAAgB;aAC/B;QACH,CAAC;QAED;;;;;WAKG;QACH,SAAS,YAAY,CAAC,SAAwC;YAC5D,MAAM,SAAS,GAAG,SAAS,CAAC,MAAM,CAAW,CAAC;YAC9C,qBAAqB;YACrB,MAAM,KAAK,GACP,gBAAgB,CACZ,SAAS,EACT,MAAM,CAAC,eAAe,CAAC,IAAI,IAAI,CAAC,CAAC;gBAC7B,MAAM,CAAC,eAAe,CAA6B,CAAC,CAAC;gBACrD,EAAE,CAAU,CAAC;YACzB,KAAK,CAAC,4BAA4B,CAAC,cAAc,CAAC,CAAC;YACnD,aAAa,CAAC,SAAS,CAAC,GAAG,KAAK,CAAC;YACjC,uBAAuB;YACvB,MAAM,gBAAgB,GAClB,SAAS,CAAC,cAAc,CAA+B,CAAC;YAC5D,gBAAgB,CAAC,OAAO,CAAC,QAAQ,CAAC,EAAE;gBAClC,IAAI,CAAC,CAAC,QAAQ,YAAY,KAAK,CAAC,EAAE;oBAChC,MAAM,IAAI,UAAU,CAChB,yDACI,QAAQ,EAAE,CAAC,CAAC;iBACrB;gBACD,iDAAiD;gBACjD,yDAAyD;gBACzD,0DAA0D;gBAC1D,sCAAsC;gBACtC,kBAAkB,CAAC,KAAK,EAAE,QAAQ,CAAC,CAAC;YACtC,CAAC,CAAC,CAAC;QACL,CAAC;QAED,iEAAiE;QACjE,MAAM,IAAI,GAAG,MAAM,CAAC,MAAM,CAAC,CAAC;QAC5B,MAAM,gBAAgB,GAAG,MAAM,CAAC,QAAQ,CAA+B,CAAC;QACxE,KAAK,MAAM,SAAS,IAAI,gBAAgB,EAAE;YACxC,YAAY,CAAC,SAAS,CAAC,CAAC;SACzB;QAED,iDAAiD;QACjD,yDAAyD;QACzD,yDAAyD;QACzD,6CAA6C;QAC7C,OAAO,CAAC,aAAa,CAAC,aAAa,CAAC,gBAAgB,CAAC,EAAE;YACrD,KAAK,MAAM,SAAS,IAAI,gBAAgB,EAAE;gBACxC,MAAM,KAAK,GAAG,aAAa,CAAC,SAAS,CAAC,MAAM,CAAW,CAAC,CAAC;gBACzD,IAAI,KAAK,CAAC,IAAI,IAAI,gBAAgB,EAAE;oBAClC,MAAM,+BAA+B,GAAG,gBAAgB,CAAC,KAAK,CAAC,IAAI,CAAC,CAAC;oBACrE,OAAO,gBAAgB,CAAC,KAAK,CAAC,IAAI,CAAC,CAAC;oBACpC,KAAK,MAAM,QAAQ,IAAI,+BAA+B,EAAE;wBACtD,WAAW,CAAC,KAAK,EAAE,QAAQ,CAAC,CAAC;qBAC9B;iBACF;aACF;SACF;QAED,MAAM,YAAY,GAAqB,EAAE,CAAC;QAC1C,MAAM,aAAa,GAAqB,EAAE,CAAC;QAC3C,MAAM,qBAAqB,GACvB,MAAM,CAAC,aAAa,CAA+B,CAAC;QACxD,KAAK,MAAM,SAAS,IAAI,qBAAqB,EAAE;YAC7C,MAAM,SAAS,GAAG,SAAS,CAAC,CAAC,CAAW,CAAC;YACzC,MAAM,SAAS,GAAG,SAAS,CAAC,CAAC,CAAW,CAAC;YACzC,MAAM,WAAW,GAAG,SAAS,CAAC,CAAC,CAAW,CAAC;YAC3C,aAAa,CAAC,MAAM,CAAC,SAAS,IAAI,aAAa,CAAC,CAAC;YACjD,MAAM,KAAK,GAAG,aAAa,CAAC,SAAS,CAAC,CAAC;YACvC,MAAM,kBAAkB,GAAG,KAAK,CAAC,YAAY,CAAC,SAAS,CAAC,CAAC,aAAa,CAAC;YACvE,YAAY,CAAC,IAAI,CAAC,kBAAkB,CAAC,WAAW,CAAC,CAAC,CAAC;SACpD;QACD,MAAM,sBAAsB,GACxB,MAAM,CAAC,cAAc,CAA+B,CAAC;QACzD,KAAK,MAAM,SAAS,IAAI,sBAAsB,EAAE;YAC9C,MAAM,SAAS,GAAG,SAAS,CAAC,CAAC,CAAW,CAAC;YACzC,MAAM,SAAS,GAAG,SAAS,CAAC,CAAC,CAAW,CAAC;YACzC,MAAM,WAAW,GAAG,SAAS,CAAC,CAAC,CAAW,CAAC;YAC3C,aAAa,CAAC,MAAM,CAAC,SAAS,IAAI,aAAa,CAAC,CAAC;YACjD,MAAM,KAAK,GAAG,aAAa,CAAC,SAAS,CAAC,CAAC;YACvC,MAAM,kBAAkB,GAAG,KAAK,CAAC,YAAY,CAAC,SAAS,CAAC,CAAC,aAAa,CAAC;YACvE,aAAa,CAAC,IAAI,CAAC,kBAAkB,CAAC,WAAW,CAAC,CAAC,CAAC;SACrD;QACD,OAAO,IAAI,GAAG,CAAC,EAAC,MAAM,EAAE,YAAY,EAAE,OAAO,EAAE,aAAa,EAAE,IAAI,EAAC,CAAC,CAAC;IACvE,CAAC;IAED;;;;;OAKG;IACH,IAAa,QAAQ;QACnB,oEAAoE;QACpE,kDAAkD;QAClD,IAAI,IAAI,CAAC,SAAS,EAAE;YAClB,MAAM,IAAI,UAAU,CAChB,4DAA4D;gBAC5D,6DAA6D;gBAC7D,iEAAiE,CAAC,CAAC;SACxE;QACD,KAAK,MAAM,KAAK,IAAI,IAAI,CAAC,MAAM,EAAE;YAC/B,IAAI,KAAK,CAAC,QAAQ,EAAE;gBAClB,OAAO,IAAI,CAAC;aACb;SACF;QACD,OAAO,KAAK,CAAC;IACf,CAAC;IAED;;;;;OAKG;IACM,WAAW;QAClB,IAAI,CAAC,GAAG,EAAE;YACR,IAAI,CAAC,MAAM,CAAC,OAAO,CAAC,KAAK,CAAC,EAAE;gBAC1B,wBAAwB;gBACxB,IAAI,KAAK,CAAC,QAAQ,EAAE;oBAClB,KAAK,CAAC,WAAW,EAAE,CAAC;iBACrB;gBACD,uBAAuB;YACzB,CAAC,CAAC,CAAC;QACL,CAAC,CAAC,CAAC;IACL,CAAC;CACF","sourcesContent":["/**\n * @license\n * Copyright 2018 Google LLC\n *\n * Use of this source code is governed by an MIT-style\n * license that can be found in the LICENSE file or at\n * https://opensource.org/licenses/MIT.\n * =============================================================================\n */\n\n/* Original source: keras/engine/topology.py */\n\nimport {NamedTensorMap, Scalar, serialization, Tensor, tidy} from '@tensorflow/tfjs-core';\n\nimport {getUid} from '../backend/state';\nimport {NotImplementedError, RuntimeError, ValueError} from '../errors';\nimport {Shape} from '../keras_format/common';\nimport {TensorKeyWithArgsArray} from '../keras_format/node_config';\nimport {PyJsonDict} from '../keras_format/types';\nimport {deserialize as deserializeLayer} from '../layers/serialization';\nimport {Kwargs} from '../types';\nimport * as generic_utils from '../utils/generic_utils';\nimport {convertTsToPythonic} from '../utils/serialization_utils';\nimport * as types_utils from '../utils/types_utils';\nimport {batchSetValue, LayerVariable} from '../variables';\nimport {version as layersVersion} from '../version';\n\nimport {execute, FeedDict} from './executor';\nimport {InputLayer} from './input_layer';\nimport {DisposeResult, Layer, Node, SymbolicTensor} from './topology';\n\n/** Constructor config for Container. */\nexport interface ContainerArgs {\n  inputs: SymbolicTensor|SymbolicTensor[];\n  outputs: SymbolicTensor|SymbolicTensor[];\n  name?: string;\n}\n\n// get weights key from tensor map in order to check if it is from keras v3.\n// e.g. dense/0\nconst isKerasSavedModelFormat = (weights: NamedTensorMap): boolean => {\n  const keys = Object.keys(weights);\n  if (keys.length === 0) {\n    return false;\n  }\n  const key = keys[0].split('/');\n  return !isNaN(parseInt(key[key.length - 1], 10));\n};\n\n/**\n * A Container is a directed acyclic graph of layers.\n *\n * It is the topological form of a \"model\". A LayersModel\n * is simply a Container with added training routines.\n *\n */\nexport abstract class Container extends Layer {\n  inputs: SymbolicTensor[];\n  outputs: SymbolicTensor[];\n\n  inputLayers: Layer[];\n  inputLayersNodeIndices: number[];\n  inputLayersTensorIndices: number[];\n\n  outputLayers: Layer[];\n  outputLayersNodeIndices: number[];\n  outputLayersTensorIndices: number[];\n\n  layers: Layer[];\n  layersByDepth: {[depth: string]: Layer[]};\n  nodesByDepth: {[depth: string]: Node[]};\n\n  internalContainerRefs: Container[];\n\n  containerNodes = new Set<string>();\n\n  // TODO(michaelterry): Add cache support\n  // private outputMaskCache: any;\n  // private outputTensorCache: any;\n  // private outputShapeCache: any;\n\n  inputNames: string[];\n  outputNames: string[];\n  feedInputShapes: Shape[];\n\n  protected internalInputShapes: Shape[];\n  protected internalOutputShapes: Shape[];\n  // TODO(cais): Maybe 'feed' should not in the names of these variables,\n  //   due to the fact that our backend is not symbolic.\n  protected feedInputNames: string[];\n  protected feedOutputNames: string[];\n\n  constructor(args: ContainerArgs) {\n    // No args passed to super's constructor.\n    super({});\n    this.name = args.name;\n    if (this.name == null) {\n      const prefix = this.getClassName().toLowerCase();\n      this.name = getUid(prefix);\n    }\n\n    this.supportsMasking = false;\n    this.trainable_ = true;\n\n    // TODO(michaelterry): Initialize perInputLosses/Updates here.\n\n    // Container-specific properties.\n    if (Array.isArray(args.inputs)) {\n      this.inputs = args.inputs.slice();\n    } else {\n      this.inputs = [args.inputs];\n    }\n    if (Array.isArray(args.outputs)) {\n      this.outputs = args.outputs.slice();\n    } else {\n      this.outputs = [args.outputs];\n    }\n\n    // Check for redundancy in inputs.\n    if (generic_utils.unique(this.inputs).length !== this.inputs.length) {\n      throw new ValueError(\n          'The list of inputs passed to the model is ' +\n          'redundant. All inputs should only appear once. Found: ' +\n          `${this.inputs.map(x => x.name)}`);\n    }\n\n    // Check for redundancy in outputs.\n    if (generic_utils.unique(this.outputs).length !== this.outputs.length) {\n      console.warn(\n          'The list of outputs passed to the model is redundant. ' +\n          'All outputs should only appear once. Found: ' +\n          `${this.outputs.map(x => x.name)}`);\n    }\n\n    /*\n      List of initial layers (1 to 1 mapping with this.inputs, hence the same\n      layer might appear twice)\n    */\n    this.inputLayers = [];\n    this.inputLayersNodeIndices = [];\n    this.inputLayersTensorIndices = [];\n    /*\n      List of layers (1 to 1 mapping with this.outputs, hence the same layer\n      might appear twice)\n    */\n    this.outputLayers = [];\n    this.outputLayersNodeIndices = [];\n    this.outputLayersTensorIndices = [];\n    /*\n      All layers in order of horizontal graph traversal. Entries are unique.\n      Includes input and output layers.\n    */\n    this.layers = [];\n\n    /*\n      References to container layers that were constructed internally. We need\n      these to properly dispose of tensors from nested containers.\n    */\n    this.internalContainerRefs = [];\n\n    // TODO(michaelterry): Determine if caching still needed with eager\n    // backend.\n    /*\n      This is for performance optimization when calling the Container on new\n      inputs. Every time the Container is called on a set on input tensors,\n      we compute the output tensors, output masks and output shapes in one pass,\n      then cache them here. When one of these outputs is queried later,\n      we retrieve it from there instead of recomputing it.\n    */\n    // this.outputTensorCache = {};\n    // this.outputShapeCache = {};\n\n    // Build this.outputLayers:\n    for (const x of this.outputs) {\n      const layer = x.sourceLayer;\n      const nodeIndex = x.nodeIndex;\n      const tensorIndex = x.tensorIndex;\n      this.outputLayers.push(layer);\n      this.outputLayersNodeIndices.push(nodeIndex);\n      this.outputLayersTensorIndices.push(tensorIndex);\n    }\n\n    // TODO(michaelterry): Add output mask cache code.\n\n    // Build this.inputLayers:\n    for (const x of this.inputs) {\n      const layer = x.sourceLayer;\n      const nodeIndex = x.nodeIndex;\n      const tensorIndex = x.tensorIndex;\n      /*\n        It's supposed to be an input layer, so only one node\n        and one tensor output.\n      */\n      generic_utils.assert(nodeIndex === 0, 'input layer has >1 nodes');\n      generic_utils.assert(tensorIndex === 0, 'input layer has >1 tensors');\n      this.inputLayers.push(layer);\n      this.inputLayersNodeIndices.push(nodeIndex);\n      this.inputLayersTensorIndices.push(tensorIndex);\n    }\n\n    // Build this.inputNames and this.outputNames.\n    this.inputNames = [];\n    this.outputNames = [];\n    this.feedInputShapes = [];\n    this.feedInputNames = [];\n    this.feedOutputNames = [];\n    for (let i = 0; i < this.inputLayers.length; i++) {\n      const layer = this.inputLayers[i];\n      // Check that layer is an InputLayer.\n      if (!(layer instanceof InputLayer)) {\n        throw new TypeError(\n            'Input layers to a LayersModel must be InputLayer objects. ' +\n            `Received inputs: ${args.inputs}. ` +\n            `Input ${i} (0-based) originates ` +\n            `from layer type ${layer.getClassName()}.`);\n      }\n      this.inputNames.push(layer.name);\n      this.feedInputShapes.push(layer.batchInputShape);\n\n      this.feedInputNames.push(layer.name);\n    }\n    for (const layer of this.outputLayers) {\n      this.outputNames.push(layer.name);\n    }\n\n    this.internalInputShapes = this.inputs.map(x => x.shape);\n    this.internalOutputShapes = this.outputs.map(x => x.shape);\n\n    /*\n      Container_nodes: set of nodes included in the graph (not all nodes\n      included in the layers are relevant to the current graph).\n    */\n    // ids of all nodes relevant to the Container:\n    const nodesDepths: {[nodeID: string]: number} = {};\n    // To recover nodes from their ID.\n    const nodeIDToNode: {[nodeID: string]: Node} = {};\n    const layersDepths: {[layerID: string]: number} = {};\n    // To layers from their ID.\n    const layerIDToLayer: {[layerID: string]: Layer} = {};\n    const layerIndices: {[layerID: string]: number} = {};\n    const nodesInDecreasingDepth: Node[] = [];\n\n    /**\n     * Builds a map of the graph of layers.\n     *\n     * This recursively updates the map `layerIndices`,\n     * the list `nodesInDecreasingDepth` and the set `containerNodes`.\n     *\n     * @param tensor Some tensor in a graph.\n     * @param finishedNodes Set of nodes whose subgraphs have been traversed\n     *         completely. Useful to prevent duplicated work.\n     * @param nodesInProgress Set of nodes that are currently active on the\n     *         recursion stack. Useful to detect cycles.\n     * @param layer Layer from which `tensor` comes from. If not provided,\n     *   will be obtained from tensor.sourceLayer.\n     * @param nodeIndex Node index from which `tensor` comes from.\n     * @param tensorIndex TensorIndex from which `tensor` comes from.\n     *\n     * @exception RuntimeError if a cycle is detected.\n     */\n    const buildMapOfGraph =\n        (tensor: SymbolicTensor, finishedNodes: Node[], nodesInProgress: Node[],\n         layer?: Layer, nodeIndex?: number, tensorIndex?: number) => {\n          if (layer == null || nodeIndex == null || tensorIndex == null) {\n            layer = tensor.sourceLayer;\n            nodeIndex = tensor.nodeIndex;\n            tensorIndex = tensor.tensorIndex;\n          }\n          const node = layer.inboundNodes[nodeIndex];\n\n          // Prevent cycles.\n          if (nodesInProgress.indexOf(node) !== -1) {\n            throw new RuntimeError(\n                `The tensor ${tensor.name} at layer \"${layer.name}\" ` +\n                'is part of a cycle.');\n          }\n\n          // Don't repeat work for shared subgraphs\n          if (finishedNodes.indexOf(node) !== -1) {\n            return;\n          }\n\n          // Update containerNodes.\n          this.containerNodes.add(Container.nodeKey(layer, nodeIndex));\n\n          // Store the traversal order for layer sorting.\n          if (!(layer.id in layerIndices)) {\n            layerIndices[layer.id] = Object.keys(layerIndices).length;\n          }\n\n          if (nodesInProgress.indexOf(node) === -1) {\n            nodesInProgress.push(node);\n          }\n\n          // Propagate to all previous tensors connected to this node.\n          const numInboundLayers = node.inboundLayers.length;\n          for (let i = 0; i < numInboundLayers; i++) {\n            const x = node.inputTensors[i];\n            const layer = node.inboundLayers[i];\n            const nodeIndex = node.nodeIndices[i];\n            const tensorIndex = node.tensorIndices[i];\n            buildMapOfGraph(\n                x, finishedNodes, nodesInProgress, layer, nodeIndex,\n                tensorIndex);\n          }\n          finishedNodes.push(node);\n          while (nodesInProgress.indexOf(node) >= 0) {\n            nodesInProgress.splice(nodesInProgress.indexOf(node), 1);\n          }\n          nodesInDecreasingDepth.push(node);\n        };\n\n    const finishedNodes: Node[] = [];\n    const nodesInProgress: Node[] = [];\n    for (const x of this.outputs) {\n      buildMapOfGraph(x, finishedNodes, nodesInProgress);\n    }\n\n    const reversedNodesInDecreasingDepth =\n        nodesInDecreasingDepth.slice().reverse();\n    for (const node of reversedNodesInDecreasingDepth) {\n      nodeIDToNode[node.id] = node;\n      // If the depth is not set, the node has no outbound nodes (depth 0).\n      if (!(node.id in nodesDepths)) {\n        nodesDepths[node.id] = 0;\n      }\n      let depth = nodesDepths[node.id];\n\n      // Update the depth of the corresponding layer\n      const previousDepth =\n          (layersDepths[node.outboundLayer.id] == null ?\n               0 :\n               layersDepths[node.outboundLayer.id]);\n\n      /*\n        If we've seen this layer before at a higher depth, we should use that\n        depth instead of the node depth.  This is necessary for shared layers\n        that have inputs at different depth levels in the graph.\n      */\n      depth = Math.max(depth, previousDepth);\n      layersDepths[node.outboundLayer.id] = depth;\n      layerIDToLayer[node.outboundLayer.id] = node.outboundLayer;\n      nodesDepths[node.id] = depth;\n\n      // Update the depth of inbound nodes.\n      for (let i = 0; i < node.inboundLayers.length; i++) {\n        const inboundLayer = node.inboundLayers[i];\n        const nodeIndex = node.nodeIndices[i];\n        const inboundNode = inboundLayer.inboundNodes[nodeIndex];\n        const previousDepth =\n            (nodesDepths[inboundNode.id] == null ? 0 :\n                                                   nodesDepths[inboundNode.id]);\n        nodesDepths[inboundNode.id] = Math.max(depth + 1, previousDepth);\n        nodeIDToNode[inboundNode.id] = inboundNode;\n      }\n    }\n\n    // Build a dict {depth: list of nodes with this depth}\n    const nodesByDepth: {[depth: string]: Node[]} = {};\n    for (const nodeID in nodesDepths) {\n      const depth = nodesDepths[nodeID];\n      if (!(depth in nodesByDepth)) {\n        nodesByDepth[depth] = [];\n      }\n      nodesByDepth[depth].push(nodeIDToNode[nodeID]);\n    }\n\n    // Build a dict {depth: list of layers with this depth}\n    const layersByDepth: {[depth: string]: Layer[]} = {};\n    for (const layerID in layersDepths) {\n      const depth = layersDepths[layerID];\n      if (!(depth in layersByDepth)) {\n        layersByDepth[depth] = [];\n      }\n      layersByDepth[depth].push(layerIDToLayer[layerID]);\n    }\n\n    // Get sorted list of layer depths.\n    let depthKeys = Object.keys(layersByDepth)\n                        .map(x => parseInt(x, 10))\n                        .sort(generic_utils.reverseNumberCompare);\n\n    // Set this.layers and this.layersByDepth.\n    this.layers = [];\n    for (const depth of depthKeys) {\n      const layersForDepth = layersByDepth[depth];\n      // Container.layers needs to have a deterministic order:\n      // here we order them by traversal order.\n      layersForDepth.sort((a, b) => {\n        const aIndex = layerIndices[a.id];\n        const bIndex = layerIndices[b.id];\n        if (aIndex < bIndex) {\n          return -1;\n        }\n        if (aIndex > bIndex) {\n          return 1;\n        }\n        return 0;\n      });\n      for (const layer of layersForDepth) {\n        if (layer instanceof Container) {\n          this.internalContainerRefs.push(layer);\n        }\n        this.layers.push(layer);\n      }\n    }\n    this.layersByDepth = layersByDepth;\n\n    // Get sorted list of node depths;\n    depthKeys = Object.keys(nodesByDepth)\n                    .map(x => parseInt(x, 10))\n                    .sort(generic_utils.reverseNumberCompare);\n\n    // Check that all tensors required are computable.\n    // computable_tensors: all tensors in the graph\n    // that can be computed from the inputs provided.\n    const computableTensors = this.inputs.slice();\n\n    // To provide a better error msg.\n    const layersWithCompleteInput: string[] = [];\n    for (const depth of depthKeys) {\n      for (const node of nodesByDepth[depth]) {\n        const layer = node.outboundLayer;\n        if (layer != null) {\n          for (const x of node.inputTensors) {\n            if (computableTensors.indexOf(x) === -1) {\n              throw new RuntimeError(\n                  `Graph disconnected: cannot obtain value for tensor ${x}` +\n                  ` at layer \"${layer.name}\". ` +\n                  'The following previous layers were accessed without ' +\n                  `issue: ${layersWithCompleteInput}`);\n            }\n          }\n          for (const x of node.outputTensors) {\n            computableTensors.push(x);\n          }\n          layersWithCompleteInput.push(layer.name);\n        }\n      }\n    }\n\n    // Set this.containerNodes and this.nodesByDepth.\n    this.nodesByDepth = nodesByDepth;\n\n    // Ensure name unicity, which will be crucial for serialization\n    // (since serialized nodes refer to layers by their name).\n    const allNames = this.layers.map(x => x.name);\n    for (const name of allNames) {\n      const numOccurrences = allNames.filter(x => x === name).length;\n      if (numOccurrences !== 1) {\n        throw new RuntimeError(\n            `The name \"${name}\" is used ${numOccurrences} times ` +\n            'in the model. All layer names should be unique. Layer names: ' +\n            JSON.stringify(allNames));\n      }\n    }\n\n    // Layer parameters.\n    // The new container starts with a single inbound node\n    // for its inputs, and no outbound nodes.\n    // Will be appended to by future calls to apply().\n    this.outboundNodes = [];\n    // Will be appended to below, and by future calls to apply().\n    this.inboundNodes = [];\n\n    // Create the node linking internal inputs to internal outputs.\n    // (This call has side effects.)\n    // tslint:disable-next-line:no-unused-expression\n    new Node({\n      outboundLayer: this,\n      inboundLayers: [],\n      nodeIndices: [],\n      tensorIndices: [],\n      inputTensors: this.inputs,\n      outputTensors: this.outputs,\n      inputMasks: this.inputs.map(x => null),\n      outputMasks: this.outputs.map(x => null),\n      inputShapes: this.inputs.map(x => x.shape),\n      outputShapes: this.outputs.map(x => x.shape)\n    });\n    this.built = true;\n    this._refCount = 1;  // The ref count of a container always start at 1.\n  }\n\n  protected override assertNotDisposed() {\n    if (this._refCount === 0) {\n      throw new Error(`Container '${this.name}' is already disposed.`);\n    }\n  }\n\n  /**\n   * Attempt to dispose a LayersModel's weights.\n   *\n   * This method decrease the reference count of the LayersModel object by 1.\n   *\n   * A LayersModel is reference-counted. Its reference count is incremented by 1\n   * when it is first constructed and when it is used as a Layer of another\n   * LayersModel.\n   *\n   * If the reference count of a LayersModel becomes 0, the `dispose` method of\n   * all its constituent `Layer`s will be called.\n   *\n   * Note: If the reference count is greater than 0 after the decrement, the\n   * `dispose` method of its constituent `Layer`s will *not* be called.\n   *\n   * After a LayersModel is disposed, it cannot be used in calls such as\n   * 'predict`, `evaluate` or `fit` anymore.\n   *\n   * @returns A DisposeResult Object with the following fields:\n   *   - refCountAfterDispose: The reference count of the LayersModel after this\n   *     `dispose()` call.\n   *   - numDisposedVariables: Number of `tf.Variable`s (i.e., weights) disposed\n   *     during this `dispose()` call.\n   * @throws {Error} If the layer is not built yet, or if the LayersModel has\n   *   already been disposed.\n   */\n  override dispose(): DisposeResult {\n    this.assertNotDisposed();\n    const result:\n        DisposeResult = {refCountAfterDispose: null, numDisposedVariables: 0};\n    if (--this._refCount === 0) {\n      for (const layer of this.layers) {\n        result.numDisposedVariables += layer.dispose().numDisposedVariables;\n      }\n\n      // Call dispose on each internally created container layer again to ensure\n      // their refCounts hit zero and their tensors are subsequently deleted.\n      for (const container of this.internalContainerRefs) {\n        result.numDisposedVariables += container.dispose().numDisposedVariables;\n      }\n    }\n    result.refCountAfterDispose = this._refCount;\n    return result;\n  }\n\n  override get trainable() {\n    return this.trainable_;\n  }\n\n  override set trainable(trainable: boolean) {\n    this.layers.forEach(layer => {\n      // tslint:disable-next-line:no-any\n      ((layer as any)._trainableWeights as LayerVariable[])\n          .forEach(w => w.trainable = trainable);\n    });\n    this.trainable_ = trainable;\n  }\n\n  override get trainableWeights(): LayerVariable[] {\n    // Porting Note: This check below is to prevent errors where the\n    //   _trainableWeights inherited from the parent class (Layer) gets\n    //   inadvertently used.\n    if (this._trainableWeights.length > 0) {\n      throw new ValueError(\n          'Container instance unexpectedly contains _trainableWeights.' +\n          'The trainable weights of a Container are a union of the ' +\n          'trainable weights of its consituent Layers. Its own ' +\n          '_trainableWeights must remain an empty Array.');\n    }\n\n    if (!this.trainable) {\n      return [];\n    }\n    let weights: LayerVariable[] = [];\n    for (const layer of this.layers) {\n      weights = weights.concat(layer.trainableWeights);\n    }\n    return weights;\n  }\n\n  override get nonTrainableWeights(): LayerVariable[] {\n    const weights: LayerVariable[] = [];\n    for (const layer of this.layers) {\n      weights.push(...layer.nonTrainableWeights);\n    }\n    if (!this.trainable) {\n      const trainableWeights: LayerVariable[] = [];\n      for (const layer of this.layers) {\n        trainableWeights.push(...layer.trainableWeights);\n      }\n      return trainableWeights.concat(weights);\n    }\n    return weights;\n  }\n\n  override get weights(): LayerVariable[] {\n    return this.trainableWeights.concat(this.nonTrainableWeights);\n  }\n\n  /**\n   * Loads all layer weights from a JSON object.\n   *\n   * Porting Note: HDF5 weight files cannot be directly loaded in JavaScript /\n   *   TypeScript. The utility script at `scripts/pykeras.py` offers means\n   *   to convert them into JSON strings compatible with this method.\n   * Porting Note: TensorFlow.js Layers supports only loading by name currently.\n   *\n   * @param weights A JSON mapping weight names to weight values as nested\n   *   arrays of numbers, or a `NamedTensorMap`, i.e., a JSON mapping weight\n   *   names to `tf.Tensor` objects.\n   * @param strict Require that the provided weights exactly match those\n   *   required by the container.  Default: `true`.  Passing `false` means that\n   *   extra weights and missing weights will be silently ignored.\n   */\n  loadWeights(weights: NamedTensorMap, strict = true) {\n    const nameToWeight: {[name: string]: LayerVariable} = {};\n    let totalWeightsCount = 0;\n    const modelIsKerasSavedModelFormat = isKerasSavedModelFormat(weights);\n    if (modelIsKerasSavedModelFormat) {\n      this.parseWeights(weights);\n    }\n    // Check if weights from keras v3.\n    for (const layer of this.layers) {\n      for (const [index, weight] of layer.weights.entries()) {\n        // Parse the name to layerName/index.\n        // e.g. dense/0, dense/1, dense_1/0, dense_1/1\n        const parsedName = modelIsKerasSavedModelFormat ?\n            `${weight.name.split('/').slice(0, -1).join('/') + '/'}${index}` :\n            weight.originalName;\n        if (nameToWeight[parsedName] != null) {\n          throw new ValueError(`Duplicate weight name: ${parsedName}`);\n        }\n        nameToWeight[parsedName] = weight;\n        totalWeightsCount++;\n      }\n    }\n\n    const weightValueTuples: Array<[LayerVariable, Tensor]> = [];\n    for (const name in weights) {\n      // TF 2.2.0 added cell name to the weight name in the format of\n      // layer_name/cell_name/weight_name, we need to remove\n      // the inner cell name.\n      let validatedName = name;\n      if (nameToWeight[name] == null) {\n        const tokens = name.split('/');\n        const shortenNameArray =\n            tokens.slice(0, -2).concat([tokens[tokens.length - 1]]);\n        validatedName = shortenNameArray.join('/');\n      }\n      if (nameToWeight[validatedName] != null) {\n        weightValueTuples.push([nameToWeight[validatedName], weights[name]]);\n      } else if (strict) {\n        throw new ValueError(\n            `Provided weight data has no target variable: ${name}`);\n      }\n      delete nameToWeight[validatedName];\n    }\n\n    if (strict) {\n      // Check that all weights are set.\n      const unsetNames: string[] = [];\n      for (const name in nameToWeight) {\n        unsetNames.push(name);\n      }\n      if (unsetNames.length > 0) {\n        throw new ValueError(\n            `${unsetNames.length} of ${\n                totalWeightsCount} weights are not set: ` +\n            `${unsetNames}`);\n      }\n    }\n\n    batchSetValue(weightValueTuples);\n  }\n\n  protected parseWeights(weights: NamedTensorMap) {\n    for (const key in Object.keys(weights)) {\n      const listParts = key.split('/');\n      const list = ['vars', 'layer_checkpoint_dependencies'];\n      // For keras v3, the weights name are saved based on the folder structure.\n      // e.g. _backbone/_layer_checkpoint_dependencies/transformer/_self../\n      // _output_dense/vars/0\n      // Therefore we discard the `vars` and `layer_checkpoint_depencies` within\n      // the saved name and only keeps the layer name and weights.\n      // This can help to mapping the actual name of the layers and load each\n      // weight accordingly.\n      const newKey = listParts\n                         .map(str => {\n                           if (str.startsWith('_')) {\n                             return str.slice(1);\n                           }\n                           return str;\n                         })\n                         .filter(str => !list.includes(str))\n                         .join('/');\n      if (newKey !== key) {\n        weights[newKey] = weights[key];\n        delete weights[key];\n      }\n    }\n  }\n\n  /**\n   * Util shared between different serialization methods.\n   * @returns LayersModel config with Keras version information added.\n   */\n  protected updatedConfig(): serialization.ConfigDict {\n    const theConfig = this.getConfig();\n    const modelConfig: serialization.ConfigDict = {};\n    modelConfig['className'] = this.getClassName();\n    modelConfig['config'] = theConfig;\n    modelConfig['kerasVersion'] = `tfjs-layers ${layersVersion}`;\n    // TODO(nielsene): Replace something like K.backend() once\n    // possible.\n    modelConfig['backend'] = 'TensorFlow.js';\n    return modelConfig;\n  }\n\n  /**\n   * Returns a JSON string containing the network configuration.\n   *\n   * To load a network from a JSON save file, use\n   * models.modelFromJSON(jsonString);\n   * @param extraJsonArgs Unused in tfjs-layers, maintained for PyKeras\n   * @param returnString Whether the return value should be stringified\n   *    (default: `true`).\n   * @returns a JSON string if `returnString` (default), or a JSON object if\n   *   `!returnString`.\n   */\n  // tslint:disable-next-line:no-any\n  toJSON(unused?: any, returnString = true): string|PyJsonDict {\n    const modelConfig = convertTsToPythonic(this.updatedConfig()) as PyJsonDict;\n    return returnString ? JSON.stringify(modelConfig) : modelConfig;\n  }\n\n  /**\n   * Call the model on new inputs.\n   *\n   * In this case `call` just reapplies all ops in the graph to the new inputs\n   * (e.g. build a new computational graph from the provided inputs).\n   *\n   * @param inputs A tensor or list of tensors.\n   * @param mask A mask or list of masks. A mask can be either a tensor or null\n   *   (no mask).\n   *\n   * @return A tensor if there is a single output, or a list of tensors if there\n   *   are more than one outputs.\n   */\n  override call(inputs: Tensor|Tensor[], kwargs: Kwargs): Tensor|Tensor[] {\n    return tidy(() => {\n      inputs = generic_utils.toList(inputs);\n      const feedDict = new FeedDict();\n      for (let i = 0; i < this.inputs.length; ++i) {\n        feedDict.add(this.inputs[i], inputs[i]);\n      }\n      return execute(this.outputs, feedDict, kwargs) as Tensor | Tensor[];\n    });\n  }\n\n  /**\n   * Computes an output mask tensor.\n   *\n   * @param inputs Tensor or list of tensors.\n   * @param mask Tensor or list of tensors.\n   *\n   * @return null or a tensor (or list of tensors, one per output tensor of the\n   * layer).\n   */\n  override computeMask(inputs: Tensor|Tensor[], mask?: Tensor|Tensor[]): Tensor\n      |Tensor[] {\n    return tidy(() => {\n      inputs = generic_utils.toList(inputs);\n      let masks: Tensor[];\n      if (mask == null) {\n        masks = generic_utils.pyListRepeat(null, inputs.length);\n      } else {\n        masks = generic_utils.toList(mask);\n      }\n      // TODO(michaelterry): Add support for mask caching.\n      return this.runInternalGraph(inputs, masks)[1];\n    });\n  }\n\n  /**\n   * Computes the output shape of the layer.\n   *\n   * Assumes that the layer will be built to match that input shape provided.\n   *\n   * @param inputShape A shape (tuple of integers) or a list of shape tuples\n   *   (one per output tensor of the layer). Shape tuples can include null for\n   *   free dimensions, instead of an integer.\n   */\n  override computeOutputShape(inputShape: Shape|Shape[]): Shape|Shape[] {\n    const inputShapes = types_utils.normalizeShapeList(inputShape);\n    if (inputShapes.length !== this.inputLayers.length) {\n      throw new ValueError(\n          `Invalid inputShape argument ${inputShape}: ` +\n          `model has ${this.inputLayers.length} tensor inputs.`);\n    }\n\n    // TODO(michaelterry): Add caching\n    const layersToOutputShapes: {[shapeKey: string]: Shape} = {};\n    for (let i = 0; i < inputShapes.length; i++) {\n      const layer = this.inputLayers[i];\n      const inputShape = inputShapes[i];\n      // It's an input layer: computeOutputShape is identity,\n      // and there is only one node and one tensor output.\n      const shapeKey = layer.name + '_0_0';\n      layersToOutputShapes[shapeKey] = inputShape;\n    }\n\n    const depthKeys = Object.keys(this.nodesByDepth)\n                          .map(x => parseInt(x, 10))\n                          .sort(generic_utils.reverseNumberCompare);\n    // Iterate over nodes, by depth level.\n    if (depthKeys.length > 1) {\n      for (const depth of depthKeys) {\n        const nodes = this.nodesByDepth[depth];\n        for (const node of nodes) {\n          // This is always a single layer, never a list.\n          const layer = node.outboundLayer;\n          if (this.inputLayers.map(x => x.id).indexOf(layer.id) !== -1) {\n            // We've already covered the input layers a few lines above.\n            continue;\n          }\n          // Potentially redundant list, same size of node.inputTensors.\n          const inputShapes: Shape[] = [];\n          for (let j = 0; j < node.inboundLayers.length; j++) {\n            const inboundLayer = node.inboundLayers[j];\n            const nodeIndex = node.nodeIndices[j];\n            const tensorIndex = node.tensorIndices[j];\n            const shapeKey = `${inboundLayer.name}_${nodeIndex}_${tensorIndex}`;\n            const inputShape = layersToOutputShapes[shapeKey];\n            inputShapes.push(inputShape);\n          }\n\n          const outputShape = layer.computeOutputShape(\n              generic_utils.singletonOrArray(inputShapes));\n\n          const outputShapes = types_utils.normalizeShapeList(outputShape);\n          const nodeIndex = layer.inboundNodes.indexOf(node);\n          for (let j = 0; j < outputShapes.length; j++) {\n            const shapeKey = `${layer.name}_${nodeIndex}_${j}`;\n            layersToOutputShapes[shapeKey] = outputShapes[j];\n          }\n        }\n      }\n    }\n\n    // Read final output shapes from layersToOutputShapes.\n    const outputShapes: Shape[] = [];\n    const outputShapeKeys: string[] = [];\n    for (let i = 0; i < this.outputLayers.length; i++) {\n      const layer = this.outputLayers[i];\n      const nodeIndex = this.outputLayersNodeIndices[i];\n      const tensorIndex = this.outputLayersTensorIndices[i];\n      const shapeKey = `${layer.name}_${nodeIndex}_${tensorIndex}`;\n      outputShapeKeys.push(shapeKey);\n    }\n\n    for (let i = 0; i < outputShapeKeys.length; i++) {\n      const key = outputShapeKeys[i];\n      generic_utils.assert(key in layersToOutputShapes);\n      outputShapes.push(layersToOutputShapes[key]);\n    }\n\n    // TODO(michaelterry): Update cache\n    return generic_utils.singletonOrArray(outputShapes);\n  }\n\n  /**\n   * Computes output tensors for new inputs.\n   *\n   * Note:\n   *   - Expects `inputs` to be a list (potentially with 1 element).\n   *\n   * @param inputs List of tensors\n   * @param masks List of masks (tensors or null).\n   * @return Three lists: outputTensors, outputMasks, outputShapes\n   */\n  protected runInternalGraph(inputs: Tensor[], masks?: Tensor[]):\n      [Tensor[], Tensor[], Shape[]] {\n    if (masks == null) {\n      masks = generic_utils.pyListRepeat(null, inputs.length);\n    }\n\n    // Dictionary mapping reference tensors to tuples\n    // (computed tensor, compute mask)\n    // we assume a 1:1 mapping from tensor to mask\n    // TODO: raise exception when a `.computeMask()` call\n    // does not return a list the same size as `call`\n    const tensorMap: {[tensorID: string]: [Tensor, Tensor]} = {};\n    for (let i = 0; i < this.inputs.length; ++i) {\n      const x = this.inputs[i];\n      const y = inputs[i];\n      const mask = masks[i];\n      tensorMap[x.id] = [y, mask];\n    }\n\n    const depthKeys = Object.keys(this.nodesByDepth)\n                          .map(x => parseInt(x, 10))\n                          .sort(generic_utils.reverseNumberCompare);\n    for (const depth of depthKeys) {\n      const nodes = this.nodesByDepth[depth];\n      for (const node of nodes) {\n        // This is always a single layer, never a list.\n        const layer = node.outboundLayer;\n        const referenceInputTensors = node.inputTensors;\n        const referenceOutputTensors = node.outputTensors;\n\n        // If all previous input tensors are available in tensorMap,\n        // then call node.inboundLayer on them.\n        // List of tuples [input, mask]:\n        const computedData = new Array<[Tensor, Tensor]>();\n        for (const x of referenceInputTensors) {\n          if (x.id in tensorMap) {\n            computedData.push(tensorMap[x.id]);\n          }\n        }\n        if (computedData.length === referenceInputTensors.length) {\n          // TODO(michaelterry): Add K.name_scope here, if we need it.\n          let kwargs: Kwargs = {};\n          let computedTensors: Tensor[];\n          let computedMasks: Tensor[];\n          let outputTensors: Tensor[];\n          let outputMasks: Tensor[];\n          // call layer\n          if (node.callArgs != null) {\n            kwargs = node.callArgs;\n          }\n          if (computedData.length === 1) {\n            const [computedTensor, computedMask] = computedData[0];\n            if (kwargs['mask'] == null) {\n              kwargs['mask'] = computedMask;\n            }\n            outputTensors =\n                generic_utils.toList(layer.call(computedTensor, kwargs));\n            outputMasks = generic_utils.toList(\n                layer.computeMask(computedTensor, computedMask));\n            computedTensors = [computedTensor];\n            computedMasks = [computedMask];\n          } else {\n            computedTensors = computedData.map(x => x[0]);\n            computedMasks = computedData.map(x => x[1]);\n            if (kwargs['mask'] == null) {\n              kwargs['mask'] = computedMasks;\n            }\n            outputTensors =\n                generic_utils.toList(layer.call(computedTensors, kwargs));\n            outputMasks = generic_utils.toList(\n                layer.computeMask(computedTensors, computedMasks));\n          }\n\n          if (layer.activityRegularizer) {\n            throw new NotImplementedError(\n                'LayersModel invocation with concrete Tensor value(s) in the ' +\n                'presence of activity regularizer(s) is not supported yet.');\n          }\n          // TODO(michaelterry): Add model updates and losses\n\n          // Update tensor map.\n          for (let i = 0; i < referenceOutputTensors.length; ++i) {\n            const x = referenceOutputTensors[i];\n            const y = outputTensors[i];\n            const mask = outputMasks[i];\n            tensorMap[x.id] = [y, mask];\n          }\n        }\n      }\n    }\n\n    const outputTensors: Tensor[] = [];\n    const outputMasks: Tensor[] = [];\n    const outputShapes: Shape[] = [];\n    for (const x of this.outputs) {\n      generic_utils.assert(\n          x.id in tensorMap, `Could not compute output ${x.name} : ${x.id}`);\n      const [tensor, mask] = tensorMap[x.id];\n      outputShapes.push(tensor.shape);\n      outputTensors.push(tensor);\n      outputMasks.push(mask);\n    }\n\n    // TODO(michaelterry): Add support for caches.\n    return [outputTensors, outputMasks, outputShapes];\n  }\n\n  /**\n   * Builds a map of internal node keys to node ordering.\n   * Used in serializaion a node orderings may change as unused nodes are\n   * dropped. Porting Note:  This helper method was pulled out of getConfig to\n   * improve readability.\n   * @param layers An array of Layers in the model.\n   * @returns Map of Node Keys to index order within the layer.\n   */\n  private buildNodeConversionMap(layers: Layer[]): {[nodeKey: string]: number} {\n    const nodeConversionMap: {[nodeKey: string]: number} = {};\n    let keptNodes: number;\n    for (const layer of this.layers) {\n      keptNodes = layer instanceof Container ? 1 : 0;\n      for (let originalNodeIndex = 0;\n           originalNodeIndex < layer.inboundNodes.length; originalNodeIndex++) {\n        const nodeKey = Container.nodeKey(layer, originalNodeIndex);\n        if (this.containerNodes.has(nodeKey)) {\n          // i.e. we mark it to be saved\n          nodeConversionMap[nodeKey] = keptNodes;\n          keptNodes += 1;\n        }\n      }\n    }\n    return nodeConversionMap;\n  }\n\n  /**\n   * Retrieves a layer based on either its name (unique) or index.\n   *\n   * Indices are based on order of horizontal graph traversal (bottom-up).\n   *\n   * If both `name` and `index` are specified, `index` takes precedence.\n   *\n   * @param name Name of layer.\n   * @param index Index of layer.\n   * @returns A Layer instance.\n   * @throws ValueError: In case of invalid layer name or index.\n   *\n   * @doc {\n   *    heading: 'Layers',\n   *    subheading: 'Classes',\n   *    namespace: 'layers',\n   *    subclasses: ['LayersModel']\n   * }\n   */\n  getLayer(name: string): Layer;\n  getLayer(index: number): Layer;\n  getLayer(name: string, index: number): Layer;\n  getLayer(nameOrIndex?: string|number, index?: number): Layer {\n    if (index != null) {\n      return this.findLayer(index);\n    } else {\n      if (nameOrIndex == null) {\n        throw new ValueError('Provide either a layer name or layer index');\n      }\n      if (typeof nameOrIndex === 'number') {\n        return this.findLayer(nameOrIndex);\n      }\n    }\n\n    for (const layer of this.layers) {\n      if (layer.name === nameOrIndex) {\n        return layer;\n      }\n    }\n    throw new ValueError(`No such layer: ${nameOrIndex}`);\n  }\n\n  findLayer(index: number): Layer {\n    if (this.layers.length <= index) {\n      throw new ValueError(\n          `Was asked to retrieve layer at index ${index}, but model only ` +\n          `has ${this.layers.length} layer(s).`);\n    } else {\n      return this.layers[index];\n    }\n  }\n\n  /**\n   * Retrieves the Container's current loss values.\n   *\n   * Used for regularizers during training.\n   */\n  override calculateLosses(): Scalar[] {\n    // Porting Node: This is an augmentation to Container.loss in PyKeras.\n    //   In PyKeras, Container.loss returns symbolic tensors. Here a concrete\n    //   Tensor (specifically Scalar) values are returned. This is due to the\n    //   imperative backend.\n    return tidy(() => {\n      const losses: Scalar[] = [];\n      for (const layer of this.layers) {\n        for (let nodeIndex = 0; nodeIndex < layer.inboundNodes.length;\n             ++nodeIndex) {\n          const nodeKey = Container.nodeKey(layer, nodeIndex);\n          if (this.containerNodes.has(nodeKey)) {\n            losses.push(...layer.calculateLosses());\n          }\n        }\n      }\n      // TODO(cais): Add any unconditional model-level losses?\n      return losses;\n    });\n  }\n\n  override getConfig(): serialization.ConfigDict {\n    const config: serialization.ConfigDict = {name: this.name};\n\n    // Build a map from layer unique name (self._node_key)\n    // to the index of the nodes that are saved in the config.\n    // Only nodes in container_nodes are saved.\n    const nodeConversionMap: {[nodeKey: string]: number} =\n        this.buildNodeConversionMap(this.layers);\n\n    // Serialize and save the layers in layerConfigs\n    const layerConfigs = [];\n    for (const layer of this.layers) {\n      const layerClassName = layer.getClassName();\n      const layerConfig = layer.getConfig();\n      const filteredInboundNodes = [];\n      for (let originalNodeIndex = 0;\n           originalNodeIndex < layer.inboundNodes.length; originalNodeIndex++) {\n        const node = layer.inboundNodes[originalNodeIndex];\n        const nodeKey = Container.nodeKey(layer, originalNodeIndex);\n        let kwargs = {};\n        if (this.containerNodes.has(nodeKey)) {\n          // The node is relevant to the model:\n          // add to filteredInboundNodes.\n          if (node.callArgs) {\n            try {\n              JSON.stringify(node.callArgs);\n              kwargs = node.callArgs;\n            } catch (err) {\n              console.warn(\n                  `Layer ${layer.name} was passed ` +\n                  `non-serializable keyword arguments: ` +\n                  `${node.callArgs}. They will not be included ` +\n                  `in the serialized model (and thus will be ` +\n                  `missing at deserialization time).`);\n              kwargs = {};\n            }\n          }\n          if (node.inboundLayers.length > 0) {\n            const nodeData = [];\n            for (let i = 0; i < node.inboundLayers.length; i++) {\n              const inboundLayer = node.inboundLayers[i];\n              const nodeIndex = node.nodeIndices[i];\n              const tensorIndex = node.tensorIndices[i];\n              const nodeKey = Container.nodeKey(inboundLayer, nodeIndex);\n              let newNodeIndex = nodeConversionMap[nodeKey];\n              if (newNodeIndex == null) {\n                newNodeIndex = 0;\n              }\n              nodeData.push(\n                  [inboundLayer.name, newNodeIndex, tensorIndex, kwargs]);\n            }\n            filteredInboundNodes.push(nodeData);\n          }\n        }\n      }\n      const dict: serialization.ConfigDict = {};\n      dict['name'] = layer.name;\n      dict['className'] = layerClassName;\n      dict['config'] = layerConfig;\n      dict['inboundNodes'] = filteredInboundNodes;\n      layerConfigs.push(dict);\n    }\n    config['layers'] = layerConfigs;\n    // Gather info about inputs and outputs\n    const modelInputs = [];\n    for (let i = 0; i < this.inputLayers.length; i++) {\n      const layer = this.inputLayers[i];\n      const nodeIndex = this.inputLayersNodeIndices[i];\n\n      const nodeKey = Container.nodeKey(layer, nodeIndex);\n      if (!this.containerNodes.has(nodeKey)) {\n        continue;\n      }\n      let newNodeIndex = nodeConversionMap[nodeKey];\n      if (newNodeIndex === null || newNodeIndex === undefined) {\n        newNodeIndex = 0;\n      }\n      const tensorIndex = this.inputLayersTensorIndices[i];\n      modelInputs.push([layer.name, newNodeIndex, tensorIndex]);\n    }\n    config['inputLayers'] = modelInputs;\n\n    const modelOutputs = [];\n    for (let i = 0; i < this.outputLayers.length; i++) {\n      const layer = this.outputLayers[i];\n      const nodeIndex = this.outputLayersNodeIndices[i];\n\n      const nodeKey = Container.nodeKey(layer, nodeIndex);\n      if (!this.containerNodes.has(nodeKey)) {\n        continue;\n      }\n      let newNodeIndex = nodeConversionMap[nodeKey];\n      if (newNodeIndex === null || newNodeIndex === undefined) {\n        newNodeIndex = 0;\n      }\n      const tensorIndex = this.outputLayersTensorIndices[i];\n      modelOutputs.push([layer.name, newNodeIndex, tensorIndex]);\n    }\n    config['outputLayers'] = modelOutputs;\n    return config;\n  }\n\n  /**\n   * Instantiates a LayersModel from its config (output of `get_config()`).\n   * @param cls the class to create\n   * @param config LayersModel config dictionary.\n   * @param customObjects An optional dictionary of custom objects.\n   * @param fastWeightInit Optional flag to use fast weight initialization\n   *   during deserialization. This is applicable to cases in which\n   *   the initialization will be immediately overwritten by loaded weight\n   *   values. Default: `false`.\n   * @returns A LayersModel instance.\n   * @throws ValueError: In case of improperly formatted config dict.\n   */\n  /** @nocollapse */\n  static override fromConfig<T extends serialization.Serializable>(\n      cls: serialization.SerializableConstructor<T>,\n      config: serialization.ConfigDict,\n      customObjects = {} as serialization.ConfigDict,\n      fastWeightInit = false): T {\n    // Layer instances created during\n    // the graph reconstruction process\n    const createdLayers: {[layerName: string]: Layer} = {};\n\n    // Dictionary mapping layer instances to\n    // node data that specifies a layer call.\n    // It acts as a queue that maintains any unprocessed\n    // layer call until it becomes possible to process it\n    // (i.e. until the input tensors to the call all exist).\n    const unprocessedNodes: {[layer: string]: TensorKeyWithArgsArray[][]} = {};\n    function addUnprocessedNode(\n        layer: Layer, nodeData: TensorKeyWithArgsArray[]) {\n      if (!(layer.name in unprocessedNodes)) {\n        unprocessedNodes[layer.name] = [nodeData];\n      } else {\n        unprocessedNodes[layer.name].push(nodeData);\n      }\n    }\n\n    function processNode(layer: Layer, nodeData: TensorKeyWithArgsArray[]) {\n      const inputTensors: SymbolicTensor[] = [];\n      let kwargs;\n      for (const inputData of nodeData) {\n        const inboundLayerName = inputData[0];\n        const inboundNodeIndex = inputData[1];\n        const inboundTensorIndex = inputData[2];\n\n        kwargs = inputData[3] == null ?\n            {} :\n            inputData[3] as serialization.ConfigDict;\n        if (!(inboundLayerName in createdLayers)) {\n          addUnprocessedNode(layer, nodeData);\n          return;\n        }\n        const inboundLayer = createdLayers[inboundLayerName];\n        if (inboundLayer.inboundNodes.length <= inboundNodeIndex) {\n          addUnprocessedNode(layer, nodeData);\n          return;\n        }\n        const inboundNode = inboundLayer.inboundNodes[inboundNodeIndex];\n        inputTensors.push(inboundNode.outputTensors[inboundTensorIndex]);\n      }\n      // Call layer on its inputs, thus creating the node\n      // and building the layer if needed.\n      // Note: This has Eager vs Graph Implications.\n      if (inputTensors.length > 0) {\n        layer.apply(\n            generic_utils.singletonOrArray(inputTensors),\n            kwargs);  // was ** kwargs\n      }\n    }\n\n    /**\n     * Deserialize a layer, then call it on appropriate inputs.\n     * @param layerData: layer config dict.\n     * @throws ValueError: In case of improperly formatted `layer_data`\n     * dict.\n     */\n    function processLayer(layerData: serialization.ConfigDict|null) {\n      const layerName = layerData['name'] as string;\n      // Instantiate layer.\n      const layer =\n          deserializeLayer(\n              layerData,\n              config['customObjects'] != null ?\n                  config['customObjects'] as serialization.ConfigDict :\n                  {}) as Layer;\n      layer.setFastWeightInitDuringBuild(fastWeightInit);\n      createdLayers[layerName] = layer;\n      // Gather layer inputs.\n      const inboundNodesData =\n          layerData['inboundNodes'] as TensorKeyWithArgsArray[][];\n      inboundNodesData.forEach(nodeData => {\n        if (!(nodeData instanceof Array)) {\n          throw new ValueError(\n              `Corrupted configuration, expected array for nodeData: ${\n                  nodeData}`);\n        }\n        // We don't process nodes (i.e. make layer calls)\n        // on the fly because the inbound node may not yet exist,\n        // in case of layer shared at different topological depths\n        // (e.g.a model such as A(B(A(B(x)))))\n        addUnprocessedNode(layer, nodeData);\n      });\n    }\n\n    // First, we create all layers and enqueue nodes to be processed.\n    const name = config['name'];\n    const layersFromConfig = config['layers'] as serialization.ConfigDict[];\n    for (const layerData of layersFromConfig) {\n      processLayer(layerData);\n    }\n\n    // Then we process nodes in order of layer depth.\n    // Nodes that cannot yet be processed(if the inbound node\n    // does not yet exist) are re - enqueued, and the process\n    // is repeated until all nodes are processed.\n    while (!generic_utils.isObjectEmpty(unprocessedNodes)) {\n      for (const layerData of layersFromConfig) {\n        const layer = createdLayers[layerData['name'] as string];\n        if (layer.name in unprocessedNodes) {\n          const currentUnprocessedNodesForLayer = unprocessedNodes[layer.name];\n          delete unprocessedNodes[layer.name];\n          for (const nodeData of currentUnprocessedNodesForLayer) {\n            processNode(layer, nodeData);\n          }\n        }\n      }\n    }\n\n    const inputTensors: SymbolicTensor[] = [];\n    const outputTensors: SymbolicTensor[] = [];\n    const inputLayersFromConfig =\n        config['inputLayers'] as serialization.ConfigDict[];\n    for (const layerData of inputLayersFromConfig) {\n      const layerName = layerData[0] as string;\n      const nodeIndex = layerData[1] as number;\n      const tensorIndex = layerData[2] as number;\n      generic_utils.assert(layerName in createdLayers);\n      const layer = createdLayers[layerName];\n      const layerOutputTensors = layer.inboundNodes[nodeIndex].outputTensors;\n      inputTensors.push(layerOutputTensors[tensorIndex]);\n    }\n    const outputLayersFromConfig =\n        config['outputLayers'] as serialization.ConfigDict[];\n    for (const layerData of outputLayersFromConfig) {\n      const layerName = layerData[0] as string;\n      const nodeIndex = layerData[1] as number;\n      const tensorIndex = layerData[2] as number;\n      generic_utils.assert(layerName in createdLayers);\n      const layer = createdLayers[layerName];\n      const layerOutputTensors = layer.inboundNodes[nodeIndex].outputTensors;\n      outputTensors.push(layerOutputTensors[tensorIndex]);\n    }\n    return new cls({inputs: inputTensors, outputs: outputTensors, name});\n  }\n\n  /**\n   * Determine whether the container is stateful.\n   *\n   * Porting Note: this is the equivalent of the stateful @property of\n   *   the Container class in PyKeras.\n   */\n  override get stateful(): boolean {\n    // Porting Note: This check is to prevent inadvertent setting of the\n    //   _stateful property of the Container instance.\n    if (this._stateful) {\n      throw new ValueError(\n          'Container instance unexpectedly has _stateful = true. The ' +\n          'statefulness of a Container is determined by the Layers it ' +\n          'contains. Its _stateful property must remain the default false.');\n    }\n    for (const layer of this.layers) {\n      if (layer.stateful) {\n        return true;\n      }\n    }\n    return false;\n  }\n\n  /**\n   * Reset the state of all stateful constituent layers (if any).\n   *\n   * Examples of stateful layers include RNN layers whose `stateful` property\n   * is set as `true`.\n   */\n  override resetStates() {\n    tidy(() => {\n      this.layers.forEach(layer => {\n        // tslint:disable:no-any\n        if (layer.stateful) {\n          layer.resetStates();\n        }\n        // tslint:enable:no-any\n      });\n    });\n  }\n}\n"]}