open-solution-ship-detection - Open solution to the Airbus Ship Detection Challenge

  •        58

This is an open solution to the Airbus Ship Detection Challenge. 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 🐍.

https://www.kaggle.com/c/airbus-ship-detection
https://github.com/neptune-ml/open-solution-ship-detection

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