Tecton 0.6 Enables Data Teams to Improve Iteration Speed When Building Batch, Streaming & Real-Time Features
Tecton 0.6 introduces a notebook-centric workflow for developing production-ready machine learning features iteratively directly in a Jupyter notebook, bridging the gap between development and production environments. This approach allows data teams to leverage Tecton's feature engineering framework in their core modeling workflow without leaving their notebooks, enabling faster iteration and testing of features. Additionally, Tecton 0.6 includes new capabilities such as Stream Ingest API for publishing real-time data to the feature store, Query Debugging Tree for explaining and debugging pipelines, continuous mode for all stream feature views, and improved aggregation functions. The release also enhances access control and service account management through CLI commands. With these new features, Tecton aims to accelerate feature definition and testing, improving agility and flexibility in feature engineering workflows.
Company
Tecton
Date published
March 15, 2023
Author(s)
Jason Dunne
Word count
828
Language
English
Hacker News points
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