1. 02 Aug, 2022 2 commits
    • David Novotny's avatar
      Move load_stats to TrainingLoop · c3f8dad5
      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
      c3f8dad5
    • Krzysztof Chalupka's avatar
      Fix train_stats.pdf: they now work by default · b7b188bf
      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
      b7b188bf
  2. 30 Jul, 2022 1 commit
    • Krzysztof Chalupka's avatar
      Replace pluggable components to create a proper Configurable hierarchy. · 1b0584f7
      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
      1b0584f7