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apache/polaris

Apache Polaris, the interoperable, open source catalog for Apache Iceberg

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What it does

Apache Polaris is an open-source system that acts as a universal filing cabinet for large-scale data, helping different data tools and platforms find, access, and share data with each other seamlessly. It specifically works with Apache Iceberg, a popular format for organizing massive datasets, making it easier for companies to manage their data across multiple cloud services without getting locked into one vendor.

Why it matters

As companies accumulate data across multiple cloud platforms and analytics tools, the cost and complexity of keeping everything in sync becomes a major strategic headache — Polaris offers a vendor-neutral solution that reduces lock-in and lets teams switch or combine tools more freely. With 1,800+ stars and backing from the Apache Software Foundation, this is gaining serious traction as a potential industry standard, which matters for any product strategy built around data interoperability or multi-cloud flexibility.

18Active

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Stars
2.0k
Forks
466
Contributors
132
Language
Java

Score updated Feb 19, 2026

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