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Published : Apr 26, 2023
NOT ON THE CURRENT EDITION
This blip is not on the current edition of the Radar. If it was on one of the last few editions, it is likely that it is still relevant. If the blip is older, it might no longer be relevant and our assessment might be different today. Unfortunately, we simply don't have the bandwidth to continuously review blips from previous editions of the Radar. Understand more
Apr 2023
Assess ? Worth exploring with the goal of understanding how it will affect your enterprise.

As machine learning finds its way into the mainstream, practices are maturing around automatically testing models, validating training data and observing model performance in production. Increasingly, these automated checks are being incorporated into continuous delivery pipelines or run against production models to detect drift and model performance. A number of tools with similar or overlapping capabilities have emerged to handle various steps in this process (Giskard and Evidently are also covered in this volume). Deepchecks is another of these tools that’s available as an open-source Python library and can be invoked from pipeline code through an extensive set of APIs. One unique feature is its ability to handle either tabular or image data with a module for language data currently in alpha release. At the moment, no single tool can handle the variety of tests and guardrails across the entire ML pipeline. We recommend assessing Deepchecks for your particular application niche.

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