ContinualAI/avalanche

Add the possibility to pretrain on multiple tasks

Open

#743 创建于 2021年9月15日

在 GitHub 查看
 (3 评论) (0 反应) (0 负责人)Python (258 fork)batch import
BenchmarksFeature - Low Prioritygood first issue

仓库指标

Star
 (1,516 star)
PR 合并指标
 (30 天内没有已合并 PR)

描述

For the moment, the nc_benchmark generator function allows for a nc_first_task option, which is good for pre-training in the class-incremental learning scenario. However, the same kind of option is not available if one wants to pretrain in the task-incremental scenario. It would be nice to have an option that could be used together with task_labels=True and allows for pretraining on multiple tasks at the same time, in a multitask training manner.

This kind of pre-training is used for instance in Lifelong Learning of Compositional Structures

A quick fix that I'm using for now, but that is breaking some things (maybe to be put in bugs?) is the following:

# Number of tasks to pretrain on
pretrain = 4
pretrain_datasets = [exp.dataset for exp in scenario.train_stream[:pretrain]]

# Modify the first experience so that it contains data of the 4 first ones
first_experience = scenario.train_stream[0]
first_experience.dataset = AvalancheConcatDataset(pretrain_datasets)

# Train on the modified first experience
cl_strategy.train(first_experience)

# Train on the rest of the experiences
for t, experience in enumerate(scenario.train_stream[pretrain:]):
    cl_strategy.train(experience)

Doing this works as intended except that it multiplies the batch_size by the number of pretraining tasks for some reason:

  • size of strategy.mb_x when pretrain=4: (256, 3, 32, 32)
  • size of strategy.mb_x when pretrain=1: (64, 3, 32, 32)

贡献者指南