saeed349 / Microservices-Based-Algorithmic-Trading-System-V-2.0Links
MBATS is a docker based platform for developing, testing and deploying Algorthmic Trading strategies with a focus on Machine Learning based algorithms. This repository is an advanced version of the MBATS infrastructure without any of the business logic. Compared to MBATs, here are the changes that are made in this version.
☆55Updated 2 years ago
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