- 18 Aug, 2022 1 commit
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Jeremy Reizenstein authored
Summary: generic_model_args no longer exists. Update some references to it, mostly in doc. This fixes the testing of all the yaml files in test_forward pass. Reviewed By: shapovalov Differential Revision: D38789202 fbshipit-source-id: f11417efe772d7f86368b3598aa66c52b1309dbf
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- 15 Aug, 2022 1 commit
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David Novotny authored
Summary: Adds additional source views to the eval batches for evaluating many-view models on CO3D Challenge Reviewed By: bottler Differential Revision: D38705904 fbshipit-source-id: cf7d00dc7db926fbd1656dd97a729674e9ff5adb
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- 11 Aug, 2022 1 commit
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Luca Di Grazia authored
Summary: **"filename"**: "projects/nerf/nerf/implicit_function.py" **"warning_type"**: "Incompatible variable type [9]", **"warning_message"**: " input_skips is declared to have type `Tuple[int]` but is used as type `Tuple[]`.", **"warning_line"**: 256, **"fix"**: input_skips: Tuple[int,...] = () Pull Request resolved: https://github.com/facebookresearch/pytorch3d/pull/1288 Reviewed By: kjchalup Differential Revision: D38615188 Pulled By: bottler fbshipit-source-id: a014344dd6cf2125f564f948a3c905ceb84cf994
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- 10 Aug, 2022 3 commits
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Jeremy Reizenstein authored
Summary: add link in main readme Reviewed By: kjchalup Differential Revision: D38560053 fbshipit-source-id: 0814febb67d0580394cfa2664e49e31ff7254bd4
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Jeremy Reizenstein authored
Summary: Updates for recent replaceables. Reviewed By: kjchalup Differential Revision: D38437370 fbshipit-source-id: 00d600aa451e5849ba48107cd7a4319e9fc8549f
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Jeremy Reizenstein authored
Summary: Linear followed by exponential LR progression. Needed for making Blender scenes converge. Reviewed By: kjchalup Differential Revision: D38557007 fbshipit-source-id: ad630dbc5b8fabcb33eeb5bdeed5e4f31360bac2
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- 09 Aug, 2022 1 commit
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Krzysztof Chalupka authored
Summary: LLFF (and most/all non-synth datasets) will have no background/foreground distinction. Add support for data with no fg mask. Also, we had a bug in stats loading, like this: * Load stats * One of the stats has a history of length 0 * That's fine, e.g. maybe it's fg_error but the dataset has no notion of fg/bg. So leave it as len 0 * Check whether all the stats have the same history length as an arbitrarily chosen "reference-stat" * Ooops the reference-stat happened to be the stat with length 0 * assert (legit_stat_len == reference_stat_len (=0)) ---> failed assert Also some minor fixes (from Jeremy's other diff) to support LLFF Reviewed By: davnov134 Differential Revision: D38475272 fbshipit-source-id: 5b35ac86d1d5239759f537621f41a3aa4eb3bd68
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- 05 Aug, 2022 1 commit
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Jeremy Reizenstein authored
Summary: remove n_instances==0 special case, standardise args for GlobalEncoderBase's forward. Reviewed By: shapovalov Differential Revision: D37817340 fbshipit-source-id: 0aac5fbc7c336d09be9d412cffff5712bda27290
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- 03 Aug, 2022 3 commits
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Jeremy Reizenstein authored
Summary: continued - avoid duplicate inputs Reviewed By: davnov134 Differential Revision: D38248827 fbshipit-source-id: 91ed398e304496a936f66e7a70ab3d189eeb5c70
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Jeremy Reizenstein authored
Summary: continued - don't duplicate inputs Reviewed By: kjchalup Differential Revision: D38248829 fbshipit-source-id: 2d56418ecbec9cc597c3cf0c122199e274661516
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Jeremy Reizenstein authored
Summary: Don't copy from one part of config to another, rather do the copy within GenericModel. Reviewed By: davnov134 Differential Revision: D38248828 fbshipit-source-id: ff8af985c37ea1f7df9e0aa0a45a58df34c3f893
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- 02 Aug, 2022 7 commits
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David Novotny authored
Summary: Stats are logically connected to the training loop, not to the model. Hence, moving to the training loop. Also removing resume_epoch from OptimizerFactory in favor of a single place - ModelFactory. This removes the need for config consistency checks etc. Reviewed By: kjchalup Differential Revision: D38313475 fbshipit-source-id: a1d188a63e28459df381ff98ad8acdcdb14887b7
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Krzysztof Chalupka authored
Summary: Blender data doesn't have depths or crops. Reviewed By: shapovalov Differential Revision: D38345583 fbshipit-source-id: a19300daf666bbfd799d0038aeefa14641c559d7
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Jeremy Reizenstein authored
Summary: Simple DataLoaderMapProvider instance Reviewed By: davnov134 Differential Revision: D38326719 fbshipit-source-id: 58556833e76fae5790d25a59bea0aac4ce046bf1
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Krzysztof Chalupka authored
Summary: Before this diff, train_stats.py would not be created by default, EXCEPT when resuming training. This makes them appear from start. Reviewed By: shapovalov Differential Revision: D38320341 fbshipit-source-id: 8ea5b99ec81c377ae129f58e78dc2eaff94821ad
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Jeremy Reizenstein authored
Summary: Remove the dataset's need to provide the task type. Reviewed By: davnov134, kjchalup Differential Revision: D38314000 fbshipit-source-id: 3805d885b5d4528abdc78c0da03247edb9abf3f7
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Darijan Gudelj authored
Summary: Added _NEED_CONTROL to JsonIndexDatasetMapProviderV2 and made dataset_tweak_args use it. Reviewed By: bottler Differential Revision: D38313914 fbshipit-source-id: 529847571065dfba995b609a66737bd91e002cfe
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Jeremy Reizenstein authored
Summary: Only import it if you ask for it. Reviewed By: kjchalup Differential Revision: D38327167 fbshipit-source-id: 3f05231f26eda582a63afc71b669996342b0c6f9
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- 01 Aug, 2022 2 commits
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David Novotny authored
Summary: Currently, seeds are set only inside the train loop. But this does not ensure that the model weights are initialized the same way everywhere which makes all experiments irreproducible. This diff fixes it. Reviewed By: bottler Differential Revision: D38315840 fbshipit-source-id: 3d2ecebbc36072c2b68dd3cd8c5e30708e7dd808
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Jeremy Reizenstein authored
Summary: Make a dummy single-scene dataset using the code from generate_cow_renders (used in existing NeRF tutorials) Reviewed By: kjchalup Differential Revision: D38116910 fbshipit-source-id: 8db6df7098aa221c81d392e5cd21b0e67f65bd70
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- 30 Jul, 2022 1 commit
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Krzysztof Chalupka authored
Summary: This large diff rewrites a significant portion of Implicitron's config hierarchy. The new hierarchy, and some of the default implementation classes, are as follows: ``` Experiment data_source: ImplicitronDataSource dataset_map_provider data_loader_map_provider model_factory: ImplicitronModelFactory model: GenericModel optimizer_factory: ImplicitronOptimizerFactory training_loop: ImplicitronTrainingLoop evaluator: ImplicitronEvaluator ``` 1) Experiment (used to be ExperimentConfig) is now a top-level Configurable and contains as members mainly (mostly new) high-level factory Configurables. 2) Experiment's job is to run factories, do some accelerate setup and then pass the results to the main training loop. 3) ImplicitronOptimizerFactory and ImplicitronModelFactory are new high-level factories that create the optimizer, scheduler, model, and stats objects. 4) TrainingLoop is a new configurable that runs the main training loop and the inner train-validate step. 5) Evaluator is a new configurable that TrainingLoop uses to run validation/test steps. 6) GenericModel is not the only model choice anymore. Instead, ImplicitronModelBase (by default instantiated with GenericModel) is a member of Experiment and can be easily replaced by a custom implementation by the user. All the new Configurables are children of ReplaceableBase, and can be easily replaced with custom implementations. In addition, I added support for the exponential LR schedule, updated the config files and the test, as well as added a config file that reproduces NERF results and a test to run the repro experiment. Reviewed By: bottler Differential Revision: D37723227 fbshipit-source-id: b36bee880d6aa53efdd2abfaae4489d8ab1e8a27
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- 21 Jul, 2022 1 commit
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Jeremy Reizenstein authored
Summary: Avoid calculating all_train_cameras before it is needed, because it is slow in some datasets. Reviewed By: shapovalov Differential Revision: D38037157 fbshipit-source-id: 95461226655cde2626b680661951ab17ebb0ec75
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- 18 Jul, 2022 1 commit
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Jeremy Reizenstein authored
Summary: Add the conditioning types to the repro yaml files. In particular, this fixes test_conditioning_type. Reviewed By: shapovalov Differential Revision: D37914537 fbshipit-source-id: 621390f329d9da662d915eb3b7bc709206a20552
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- 17 Jul, 2022 1 commit
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Jeremy Reizenstein authored
Summary: For debugging, introduce PYTORCH3D_NO_ACCELERATE env var. Reviewed By: shapovalov Differential Revision: D37885393 fbshipit-source-id: de080080c0aa4b6d874028937083a0113bb97c23
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- 15 Jul, 2022 1 commit
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Iurii Makarov authored
Summary: I tried to run `experiment.py` and `pytorch3d_implicitron_runner` and faced the failure with this traceback: https://www.internalfb.com/phabricator/paste/view/P515734086 It seems to be due to the new release of OmegaConf (version=2.2.2) which requires different typing. This fix helped to overcome it. Reviewed By: bottler Differential Revision: D37881644 fbshipit-source-id: be0cd4ced0526f8382cea5bdca9b340e93a2fba2
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- 13 Jul, 2022 3 commits
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Roman Shapovalov authored
Summary: 1. Random sampling of num batches without replacement not supported. 2.Providers should implement the interface for the training loop to work. Reviewed By: bottler, davnov134 Differential Revision: D37815388 fbshipit-source-id: 8a2795b524e733f07346ffdb20a9c0eb1a2b8190
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Jeremy Reizenstein authored
Summary: Accelerate is an additional implicitron dependency, so document it. Reviewed By: shapovalov Differential Revision: D37786933 fbshipit-source-id: 11024fe604107881f8ca29e17cb5cbfe492fc7f9
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Roman Shapovalov authored
Summary: 1. Respecting `visdom_show_preds` parameter when it is False. 2. Clipping the images pre-visualisation, which is important for methods like SRN that are not arare of pixel value range. Reviewed By: bottler Differential Revision: D37786439 fbshipit-source-id: 8dbb5104290bcc5c2829716b663cae17edc911bd
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- 12 Jul, 2022 2 commits
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Jeremy Reizenstein authored
Summary: After recent accelerate change D37543870 (https://github.com/facebookresearch/pytorch3d/commit/aa8b03f31dc2a178f8d7da457df28f19b5917009), update interactive trainer test. Reviewed By: shapovalov Differential Revision: D37785932 fbshipit-source-id: 9211374323b6cfd80f6c5ff3a4fc1c0ca04b54ba
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Nikhila Ravi authored
Summary: ## Changes: - Added Accelerate Library and refactored experiment.py to use it - Needed to move `init_optimizer` and `ExperimentConfig` to a separate file to be compatible with submitit/hydra - Needed to make some modifications to data loaders etc to work well with the accelerate ddp wrappers - Loading/saving checkpoints incorporates an unwrapping step so remove the ddp wrapped model ## Tests Tested with both `torchrun` and `submitit/hydra` on two gpus locally. Here are the commands: **Torchrun** Modules loaded: ```sh 1) anaconda3/2021.05 2) cuda/11.3 3) NCCL/2.9.8-3-cuda.11.3 4) gcc/5.2.0. (but unload gcc when using submit) ``` ```sh torchrun --nnodes=1 --nproc_per_node=2 experiment.py --config-path ./configs --config-name repro_singleseq_nerf_test ``` **Submitit/Hydra Local test** ```sh ~/pytorch3d/projects/implicitron_trainer$ HYDRA_FULL_ERROR=1 python3.9 experiment.py --config-name repro_singleseq_nerf_test --multirun --config-path ./configs hydra/launcher=submitit_local hydra.launcher.gpus_per_node=2 hydra.launcher.tasks_per_node=2 hydra.launcher.nodes=1 ``` **Submitit/Hydra distributed test** ```sh ~/implicitron/pytorch3d$ python3.9 experiment.py --config-name repro_singleseq_nerf_test --multirun --config-path ./configs hydra/launcher=submitit_slurm hydra.launcher.gpus_per_node=8 hydra.launcher.tasks_per_node=8 hydra.launcher.nodes=1 hydra.launcher.partition=learnlab hydra.launcher.timeout_min=4320 ``` ## TODOS: - Fix distributed evaluation: currently this doesn't work as the input format to the evaluation function is not suitable for gathering across gpus (needs to be nested list/tuple/dicts of objects that satisfy `is_torch_tensor`) and currently `frame_data` contains `Cameras` type. - Refactor the `accelerator` object to be accessible by all functions instead of needing to pass it around everywhere? Maybe have a `Trainer` class and add it as a method? - Update readme with installation instructions for accelerate and also commands for running jobs with torchrun and submitit/hydra X-link: https://github.com/fairinternal/pytorch3d/pull/37 Reviewed By: davnov134, kjchalup Differential Revision: D37543870 Pulled By: bottler fbshipit-source-id: be9eb4e91244d4fe3740d87dafec622ae1e0cf76
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- 06 Jul, 2022 4 commits
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Jeremy Reizenstein authored
Summary: As part of removing Task, move camera difficulty bin breaks from hard code to the top level. Reviewed By: davnov134 Differential Revision: D37491040 fbshipit-source-id: f2d6775ebc490f6f75020d13f37f6b588cc07a0b
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Jeremy Reizenstein authored
Summary: Enable pyre checking of the trainer code. Reviewed By: shapovalov Differential Revision: D36545438 fbshipit-source-id: db1ea8d1ade2da79a2956964eb0c7ba302fa40d1
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Jeremy Reizenstein authored
Summary: As part of removing Task, make the dataset code generate the source cameras for itself. There's a small optimization available here, in that the JsonIndexDataset could avoid loading images. Reviewed By: shapovalov Differential Revision: D37313423 fbshipit-source-id: 3e5e0b2aabbf9cc51f10547a3523e98c72ad8755
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Jeremy Reizenstein authored
Summary: Add facilities for dataloading non-sequential scenes. Reviewed By: shapovalov Differential Revision: D37291277 fbshipit-source-id: 0a33e3727b44c4f0cba3a2abe9b12f40d2a20447
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- 04 Jul, 2022 1 commit
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David Novotny authored
Summary: Refactors autodecoders. Tests pass. Reviewed By: bottler Differential Revision: D37592429 fbshipit-source-id: 8f5c9eac254e1fdf0704d5ec5f69eb42f6225113
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- 30 Jun, 2022 1 commit
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Krzysztof Chalupka authored
Summary: Make ViewMetrics easy to replace by putting them into an OmegaConf dataclass. Also, re-word a few variable names and fix minor TODOs. Reviewed By: bottler Differential Revision: D37327157 fbshipit-source-id: 78d8e39bbb3548b952f10abbe05688409fb987cc
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- 24 Jun, 2022 1 commit
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Jeremy Reizenstein authored
Summary: small followup to D37172537 (https://github.com/facebookresearch/pytorch3d/commit/cba26506b6fe8a98695f50673cb20d9597d87551) and D37209012 (https://github.com/facebookresearch/pytorch3d/commit/81d63c63823e146e74d7be367d19314ab16d6815): changing default #harmonics and improving a test Reviewed By: shapovalov Differential Revision: D37412357 fbshipit-source-id: 1af1005a129425fd24fa6dd213d69c71632099a0
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- 20 Jun, 2022 2 commits
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Jeremy Reizenstein authored
Summary: Document the inputs of idr functions and distinguish n_harmonic_functions to be 0 (simple embedding) versus -1 (no embedding). Reviewed By: davnov134 Differential Revision: D37209012 fbshipit-source-id: 6e5c3eae54c4e5e8c3f76cad1caf162c6c222d52
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Jeremy Reizenstein authored
Summary: Allow specifying a color for non-opaque pixels in LSTMRenderer. Reviewed By: davnov134 Differential Revision: D37172537 fbshipit-source-id: 6039726678bb7947f7d8cd04035b5023b2d5398c
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- 16 Jun, 2022 1 commit
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Jeremy Reizenstein authored
Summary: Copy code from NeRF for loading LLFF data and blender synthetic data, and create dataset objects for them Reviewed By: shapovalov Differential Revision: D35581039 fbshipit-source-id: af7a6f3e9a42499700693381b5b147c991f57e5d
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