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Tangle

Tangle is an open source experimentation platform for building and running machine learning and data pipelines through a visual interface. Developed to support reproducible workflows at scale, it lets teams design pipelines, manage experiments, and execute jobs in cloud environments without requiring every contributor to assemble a local development stack first. Organizations can use Tangle to coordinate ML experimentation, standardize data workflows, and make complex pipeline work more accessible across engineering and data teams. It is a strong fit for machine learning engineers, platform teams, and companies that want more structure around iterative experimentation. What makes Tangle different is its blend of visual workflow authoring and scalable execution, giving teams a more collaborative way to operationalize ML work across shared environments.

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