Flow Gym
By: Francesco Banelli , Antonio Terpin , Alan Bonomi and more
Potential Business Impact:
Teaches computers to see moving air from pictures.
Flow Gym is a toolkit for research and deployment of flow-field quantification methods inspired by OpenAI Gym and Stable-Baselines3. It uses SynthPix as synthetic image generation engine and provides a unified interface for the testing, deployment and training of (learning-based) algorithms for flow-field quantification from a number of consecutive images of tracer particles. It also contains a growing number of integrations of existing algorithms and stable (re-)implementations in JAX.
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