### Config Files Explained Taking `projects/mfmmlm.yaml` for example, which run pretraining using masked frame model (MFM) and masked language model (MLM) on a single BERT: ```yaml project_dir: mfmmlm # specify the project dir for this baseline. run_task: - how2.yaml # run pretraining on how2 when launching `projects/taskmfmmlm.yaml` - [vtt.yaml, vttcap.yaml, vttqa.yaml, youcook.yaml, youcookcap.yaml, crosstask.yaml, coin.yaml] # run fine-tuning tasks. base_dir: task # a global template folder to specify each training task. task_group: pretrain: # section for pretraining. Most baselines differs in this section. task_list: - how2.yaml # reconfig `projects/task/how2.yaml` dataset: aligner: MFMMLMAligner # overwrite the aligner for MFMMLM training task. model: model_cls: MMFusionMFMMLM # overwrite the model, which constructs negative examples for MFM on-the-fly. loss: loss_cls: MFMMLM # overwrite the loss as MFMMLM, which combines MFM and MLM together. fairseq: # all fairseq args can be expecified under this name. dataset: batch_size: 128 finetune: # section for fine-tuning tasks, we don't need to change anything here mostly since we want to see how pretraining can contribute to finetuning. task_list: # specify the list of downstream tasks, e.g., copy `projects/task/vtt.yaml` to `projects/mfmmlm`. - vtt.yaml - vttqa.yaml - youcook.yaml - youcookcap.yaml - crosstask.yaml - coin.yaml test: # section for testing. task_list: - test_vtt.yaml - test_vttqa.yaml - test_youcook.yaml - test_youcookcap.yaml - test_crosstask.yaml - test_crosstask_zs.yaml - test_coin.yaml ```