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dict_value { 31753 } 31754 } 31755 } 31756 } 31757 output_signature { 31758 tuple_value { 31759 } 31760 } 31761 } 31762 } 31763 concrete_functions { 31764 key: "__inference_polymorphic_action_fn_4619080" 31765 value { 31766 bound_inputs: 10 31767 bound_inputs: 11 31768 bound_inputs: 12 31769 bound_inputs: 13 31770 bound_inputs: 14 31771 bound_inputs: 15 31772 canonicalized_input_signature { 31773 tuple_value { 31774 values { 31775 tuple_value { 31776 values { 31777 named_tuple_value { 31778 name: "TimeStep" 31779 values { 31780 key: "step_type" 31781 value { 31782 tensor_spec_value { 31783 name: "time_step/step_type" 31784 shape { 31785 dim { 31786 size: 1 31787 } 31788 } 31789 dtype: DT_INT32 31790 } 31791 } 31792 } 31793 values { 31794 key: "reward" 31795 value { 31796 tensor_spec_value { 31797 name: "time_step/reward" 31798 shape { 31799 dim { 31800 size: 1 31801 } 31802 } 31803 dtype: DT_FLOAT 31804 } 31805 } 31806 } 31807 values { 31808 key: "discount" 31809 value { 31810 tensor_spec_value { 31811 name: "time_step/discount" 31812 shape { 31813 dim { 31814 size: 1 31815 } 31816 } 31817 dtype: DT_FLOAT 31818 } 31819 } 31820 } 31821 values { 31822 key: "observation" 31823 value { 31824 dict_value { 31825 fields { 31826 key: "callee_basic_block_count" 31827 value { 31828 tensor_spec_value { 31829 name: "time_step/observation/callee_basic_block_count" 31830 shape { 31831 dim { 31832 size: 1 31833 } 31834 } 31835 dtype: DT_INT64 31836 } 31837 } 31838 } 31839 fields { 31840 key: "callee_conditionally_executed_blocks" 31841 value { 31842 tensor_spec_value { 31843 name: "time_step/observation/callee_conditionally_executed_blocks" 31844 shape { 31845 dim { 31846 size: 1 31847 } 31848 } 31849 dtype: DT_INT64 31850 } 31851 } 31852 } 31853 fields { 31854 key: "callee_users" 31855 value { 31856 tensor_spec_value { 31857 name: "time_step/observation/callee_users" 31858 shape { 31859 dim { 31860 size: 1 31861 } 31862 } 31863 dtype: DT_INT64 31864 } 31865 } 31866 } 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31922 } 31923 fields { 31924 key: "cost_estimate" 31925 value { 31926 tensor_spec_value { 31927 name: "time_step/observation/cost_estimate" 31928 shape { 31929 dim { 31930 size: 1 31931 } 31932 } 31933 dtype: DT_INT64 31934 } 31935 } 31936 } 31937 fields { 31938 key: "edge_count" 31939 value { 31940 tensor_spec_value { 31941 name: "time_step/observation/edge_count" 31942 shape { 31943 dim { 31944 size: 1 31945 } 31946 } 31947 dtype: DT_INT64 31948 } 31949 } 31950 } 31951 fields { 31952 key: "inlining_default" 31953 value { 31954 tensor_spec_value { 31955 name: "time_step/observation/inlining_default" 31956 shape { 31957 dim { 31958 size: 1 31959 } 31960 } 31961 dtype: DT_INT64 31962 } 31963 } 31964 } 31965 fields { 31966 key: "node_count" 31967 value { 31968 tensor_spec_value { 31969 name: "time_step/observation/node_count" 31970 shape { 31971 dim { 31972 size: 1 31973 } 31974 } 31975 dtype: DT_INT64 31976 } 31977 } 31978 } 31979 fields { 31980 key: "nr_ctant_params" 31981 value { 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12 32051 bound_inputs: 13 32052 bound_inputs: 14 32053 bound_inputs: 15 32054 canonicalized_input_signature { 32055 tuple_value { 32056 values { 32057 tuple_value { 32058 values { 32059 named_tuple_value { 32060 name: "TimeStep" 32061 values { 32062 key: "step_type" 32063 value { 32064 tensor_spec_value { 32065 name: "step_type" 32066 shape { 32067 dim { 32068 size: 1 32069 } 32070 } 32071 dtype: DT_INT32 32072 } 32073 } 32074 } 32075 values { 32076 key: "reward" 32077 value { 32078 tensor_spec_value { 32079 name: "reward" 32080 shape { 32081 dim { 32082 size: 1 32083 } 32084 } 32085 dtype: DT_FLOAT 32086 } 32087 } 32088 } 32089 values { 32090 key: "discount" 32091 value { 32092 tensor_spec_value { 32093 name: "discount" 32094 shape { 32095 dim { 32096 size: 1 32097 } 32098 } 32099 dtype: DT_FLOAT 32100 } 32101 } 32102 } 32103 values { 32104 key: "observation" 32105 value { 32106 dict_value { 32107 fields { 32108 key: "callee_basic_block_count" 32109 value { 32110 tensor_spec_value { 32111 name: "callee_basic_block_count" 32112 shape { 32113 dim { 32114 size: 1 32115 } 32116 } 32117 dtype: DT_INT64 32118 } 32119 } 32120 } 32121 fields { 32122 key: "callee_conditionally_executed_blocks" 32123 value { 32124 tensor_spec_value { 32125 name: "callee_conditionally_executed_blocks" 32126 shape { 32127 dim { 32128 size: 1 32129 } 32130 } 32131 dtype: DT_INT64 32132 } 32133 } 32134 } 32135 fields { 32136 key: "callee_users" 32137 value { 32138 tensor_spec_value { 32139 name: "callee_users" 32140 shape { 32141 dim { 32142 size: 1 32143 } 32144 } 32145 dtype: DT_INT64 32146 } 32147 } 32148 } 32149 fields { 32150 key: "caller_basic_block_count" 32151 value { 32152 tensor_spec_value { 32153 name: "caller_basic_block_count" 32154 shape { 32155 dim { 32156 size: 1 32157 } 32158 } 32159 dtype: DT_INT64 32160 } 32161 } 32162 } 32163 fields { 32164 key: "caller_conditionally_executed_blocks" 32165 value { 32166 tensor_spec_value { 32167 name: "caller_conditionally_executed_blocks" 32168 shape { 32169 dim { 32170 size: 1 32171 } 32172 } 32173 dtype: DT_INT64 32174 } 32175 } 32176 } 32177 fields { 32178 key: "caller_users" 32179 value { 32180 tensor_spec_value { 32181 name: "caller_users" 32182 shape { 32183 dim { 32184 size: 1 32185 } 32186 } 32187 dtype: DT_INT64 32188 } 32189 } 32190 } 32191 fields { 32192 key: "callsite_height" 32193 value { 32194 tensor_spec_value { 32195 name: "callsite_height" 32196 shape { 32197 dim { 32198 size: 1 32199 } 32200 } 32201 dtype: DT_INT64 32202 } 32203 } 32204 } 32205 fields { 32206 key: "cost_estimate" 32207 value { 32208 tensor_spec_value { 32209 name: "cost_estimate" 32210 shape { 32211 dim { 32212 size: 1 32213 } 32214 } 32215 dtype: DT_INT64 32216 } 32217 } 32218 } 32219 fields { 32220 key: "edge_count" 32221 value { 32222 tensor_spec_value { 32223 name: "edge_count" 32224 shape { 32225 dim { 32226 size: 1 32227 } 32228 } 32229 dtype: DT_INT64 32230 } 32231 } 32232 } 32233 fields { 32234 key: "inlining_default" 32235 value { 32236 tensor_spec_value { 32237 name: "inlining_default" 32238 shape { 32239 dim { 32240 size: 1 32241 } 32242 } 32243 dtype: DT_INT64 32244 } 32245 } 32246 } 32247 fields { 32248 key: "node_count" 32249 value { 32250 tensor_spec_value { 32251 name: "node_count" 32252 shape { 32253 dim { 32254 size: 1 32255 } 32256 } 32257 dtype: DT_INT64 32258 } 32259 } 32260 } 32261 fields { 32262 key: "nr_ctant_params" 32263 value { 32264 tensor_spec_value { 32265 name: "nr_ctant_params" 32266 shape { 32267 dim { 32268 size: 1 32269 } 32270 } 32271 dtype: DT_INT64 32272 } 32273 } 32274 } 32275 } 32276 } 32277 } 32278 } 32279 } 32280 values { 32281 tuple_value { 32282 } 32283 } 32284 } 32285 } 32286 values { 32287 dict_value { 32288 } 32289 } 32290 } 32291 } 32292 output_signature { 32293 named_tuple_value { 32294 name: "PolicyStep" 32295 values { 32296 key: "action" 32297 value { 32298 tensor_spec_value { 32299 name: "action" 32300 shape { 32301 dim { 32302 size: 1 32303 } 32304 } 32305 dtype: DT_INT64 32306 } 32307 } 32308 } 32309 values { 32310 key: "state" 32311 value { 32312 tuple_value { 32313 } 32314 } 32315 } 32316 values { 32317 key: "info" 32318 value { 32319 tuple_value { 32320 } 32321 } 32322 } 32323 } 32324 } 32325 } 32326 } 32327 concrete_functions { 32328 key: "__inference_signature_wrapper_4619026" 32329 value { 32330 bound_inputs: 10 32331 bound_inputs: 11 32332 bound_inputs: 12 32333 bound_inputs: 13 32334 bound_inputs: 14 32335 bound_inputs: 15 32336 canonicalized_input_signature { 32337 tuple_value { 32338 values { 32339 tuple_value { 32340 } 32341 } 32342 values { 32343 dict_value { 32344 fields { 32345 key: "callee_basic_block_count" 32346 value { 32347 tensor_spec_value { 32348 name: "callee_basic_block_count" 32349 shape { 32350 dim { 32351 size: 1 32352 } 32353 } 32354 dtype: DT_INT64 32355 } 32356 } 32357 } 32358 fields { 32359 key: "callee_conditionally_executed_blocks" 32360 value { 32361 tensor_spec_value { 32362 name: "callee_conditionally_executed_blocks" 32363 shape { 32364 dim { 32365 size: 1 32366 } 32367 } 32368 dtype: DT_INT64 32369 } 32370 } 32371 } 32372 fields { 32373 key: "callee_users" 32374 value { 32375 tensor_spec_value { 32376 name: "callee_users" 32377 shape { 32378 dim { 32379 size: 1 32380 } 32381 } 32382 dtype: DT_INT64 32383 } 32384 } 32385 } 32386 fields { 32387 key: "caller_basic_block_count" 32388 value { 32389 tensor_spec_value { 32390 name: "caller_basic_block_count" 32391 shape { 32392 dim { 32393 size: 1 32394 } 32395 } 32396 dtype: DT_INT64 32397 } 32398 } 32399 } 32400 fields { 32401 key: "caller_conditionally_executed_blocks" 32402 value { 32403 tensor_spec_value { 32404 name: "caller_conditionally_executed_blocks" 32405 shape { 32406 dim { 32407 size: 1 32408 } 32409 } 32410 dtype: DT_INT64 32411 } 32412 } 32413 } 32414 fields { 32415 key: "caller_users" 32416 value { 32417 tensor_spec_value { 32418 name: "caller_users" 32419 shape { 32420 dim { 32421 size: 1 32422 } 32423 } 32424 dtype: DT_INT64 32425 } 32426 } 32427 } 32428 fields { 32429 key: "callsite_height" 32430 value { 32431 tensor_spec_value { 32432 name: "callsite_height" 32433 shape { 32434 dim { 32435 size: 1 32436 } 32437 } 32438 dtype: DT_INT64 32439 } 32440 } 32441 } 32442 fields { 32443 key: "cost_estimate" 32444 value { 32445 tensor_spec_value { 32446 name: "cost_estimate" 32447 shape { 32448 dim { 32449 size: 1 32450 } 32451 } 32452 dtype: DT_INT64 32453 } 32454 } 32455 } 32456 fields { 32457 key: "discount" 32458 value { 32459 tensor_spec_value { 32460 name: "discount" 32461 shape { 32462 dim { 32463 size: 1 32464 } 32465 } 32466 dtype: DT_FLOAT 32467 } 32468 } 32469 } 32470 fields { 32471 key: "edge_count" 32472 value { 32473 tensor_spec_value { 32474 name: "edge_count" 32475 shape { 32476 dim { 32477 size: 1 32478 } 32479 } 32480 dtype: DT_INT64 32481 } 32482 } 32483 } 32484 fields { 32485 key: "inlining_default" 32486 value { 32487 tensor_spec_value { 32488 name: "inlining_default" 32489 shape { 32490 dim { 32491 size: 1 32492 } 32493 } 32494 dtype: DT_INT64 32495 } 32496 } 32497 } 32498 fields { 32499 key: "node_count" 32500 value { 32501 tensor_spec_value { 32502 name: "node_count" 32503 shape { 32504 dim { 32505 size: 1 32506 } 32507 } 32508 dtype: DT_INT64 32509 } 32510 } 32511 } 32512 fields { 32513 key: "nr_ctant_params" 32514 value { 32515 tensor_spec_value { 32516 name: "nr_ctant_params" 32517 shape { 32518 dim { 32519 size: 1 32520 } 32521 } 32522 dtype: DT_INT64 32523 } 32524 } 32525 } 32526 fields { 32527 key: "reward" 32528 value { 32529 tensor_spec_value { 32530 name: "reward" 32531 shape { 32532 dim { 32533 size: 1 32534 } 32535 } 32536 dtype: DT_FLOAT 32537 } 32538 } 32539 } 32540 fields { 32541 key: "step_type" 32542 value { 32543 tensor_spec_value { 32544 name: "step_type" 32545 shape { 32546 dim { 32547 size: 1 32548 } 32549 } 32550 dtype: DT_INT32 32551 } 32552 } 32553 } 32554 } 32555 } 32556 } 32557 } 32558 output_signature { 32559 dict_value { 32560 fields { 32561 key: "inlining_decision" 32562 value { 32563 tensor_spec_value { 32564 name: "inlining_decision" 32565 shape { 32566 dim { 32567 size: 1 32568 } 32569 } 32570 dtype: DT_INT64 32571 } 32572 } 32573 } 32574 } 32575 } 32576 } 32577 } 32578 concrete_functions { 32579 key: "__inference_signature_wrapper_4619033" 32580 value { 32581 canonicalized_input_signature { 32582 tuple_value { 32583 values { 32584 tuple_value { 32585 } 32586 } 32587 values { 32588 dict_value { 32589 } 32590 } 32591 } 32592 } 32593 output_signature { 32594 dict_value { 32595 } 32596 } 32597 } 32598 } 32599 concrete_functions { 32600 key: "__inference_signature_wrapper_4619048" 32601 value { 32602 bound_inputs: 4 32603 canonicalized_input_signature { 32604 tuple_value { 32605 values { 32606 tuple_value { 32607 } 32608 } 32609 values { 32610 dict_value { 32611 } 32612 } 32613 } 32614 } 32615 output_signature { 32616 dict_value { 32617 fields { 32618 key: "int64" 32619 value { 32620 tensor_spec_value { 32621 name: "int64" 32622 shape { 32623 } 32624 dtype: DT_INT64 32625 } 32626 } 32627 } 32628 } 32629 } 32630 } 32631 } 32632 } 32633} 32634 32635