minerva-ml / open-solution-data-science-bowl-2018

Open solution to the Data Science Bowl 2018

Home Page:https://www.kaggle.com/c/data-science-bowl-2018

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

Data Science Bowl 2018: open solution

This is an open solution to the Data Science Bowl 2018 based on the topcoders winning solution from ods.ai.

More competitions ๐ŸŽ‡

Check collection of public projects ๐ŸŽ, where you can find multiple Kaggle competitions with code, experiments and outputs.

Disclaimer

In this open source solution you will find references to the neptune.ml. It is free platform for community Users, which we use daily to keep track of our experiments. Please note that using neptune.ml is not necessary to proceed with this solution. You may run it as plain Python script ๐Ÿ˜‰.

Installation

Check Installation page on our Wiki, for detailed instructions.

  1. get repository, install PyTorch then remaining requirements
  2. register to Neptune
  3. run experiment:
$ neptune login
$ neptune send main.py --worker gcp-gpu-large --environment pytorch-0.2.0-gpu-py3 -- train_evaluate_predict_pipeline --pipeline_name unet_multitask
  1. collect submit from /output/dsb/experiments/submission.csv directory.

User support

There are several ways to seek help:

  1. Kaggle discussion is our primary way of communication.
  2. Read project's Wiki, where we publish descriptions about the code, pipelines and neptune.
  3. You can submit an issue directly in this repo.

Contributing

Check CONTRIBUTING for more information.