Skip to content

upwindflys/AutoNlp

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

31 Commits
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

AutoNlp

AutoNLP-WAIC2019

AutoDL competition introduction:NeurIPS 2019 AutoDL Challenges

Team: Upwind_flys Rank: Second place

Methods:

Our algorithm process data and select models automatically, model lib contains Character-based model, word-based model, which can be selected according to data meta-feature. Then algorithm automatically select early stop strategy and restore weights based on the Information of feedback simulation.

Document description:

Code Framework is AutoNlp-WAIC2019 starting kit
AutoDL_ingestion_program/: The code and libraries used on Codalab to run your submission.
AutoDL_scoring_program/: The code and libraries used on Codalab to score your submission.
AutoDL_sample_code_submission/: An example of code submission you can use as template.
AutoDL_sample_data/: Some sample data to test your code before you submit it.

Main python module:

run_local_test.py: A python script to simulate the runtime in codalab
model.py: Implementation of our algorithm and logics
data_manager.py: Data processing related module
model_manager.py: Automatic model generation from model library

Run the project locally:

python run_local_test.py -dataset_dir=./AutoDL_sample_data/DEMO -code_dir=./AutoDL_sample_code_submission

Experiment Results:

metrics O1 O2 O3 O4 O5
ALC 0.8139 0.9277 0.8053 0.9758 0.8870
2AUC-1 0.8168 0.9723 0.8345 0.9966 0.9447

Other related work:

Our work in AutoML and meta-learning fields: Efficient Automatic Meta Optimization Search for Few-Shot Learning

Licensing

The project is developed at Lenovo Inc,It is distributed under MIT LICENSE

About

WAIC AutoNlp

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages