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The project involved working with the Prognostic Healthcare Management and Mobility Analytics R&D program teams from Alstom Digital & Integrated Systems. Throughout the collaboration, the team developed, tested, validated, and industrialized machine learning (ML) algorithms for Odometry and Radioscopy.
The industrialization of the mobility analytics project streamlined Alstom’s analytics portfolio, improving customer performance and experience. The goal was to achieve these outcomes using existing and new data analytics, supported by advanced simulations and input from domain experts.
Industrialization was undertaken for the client by extracting and converting the Jupyter Notebooks, applying OOPs concepts, hyper-parameterizing the code, transforming to server-less functions (OpenFaas) driven by NiFi Workflows, and deploying them over Azure-based MDP Platform using CI/CD.
Further, a Dash-based UI was developed to display the predictions, capture the user feedback, i.e., labels, and retrain the models. Additional Screens were also designed to display the Model Performance metrics.
Subsequently, ML and Data Pipelines were created for various stages. Training and Inference Pipelines were implemented to automate training/retraining or predictions of Anomaly Detection and Classification Models.
The project belonged to the Smart Mobility domain.
Alstom is the end customer for the project.
The Teliolabs team was able to achieve: