DataOps.live announced the Summer 2023 release of its DataOps platform.
Key enhancements shape how leading enterprises and data teams deliver data applications and products.
The release delivers innovative new capabilities in three primary categories:
- DataOps.live Observe – With its central role in Data Product automation, orchestration, automated testing, and deployment, the DataOps.live platform is in a unique position to provide observability across the entire lifecycle of Data Products. DataOps.live is pleased to announce DataOps.live Observe, a set of data platform and pipeline observability capabilities beginning with Spendview for Snowflake – a free-to-use tool for the Snowflake Data Cloud that helps customers to understand, manage and optimize their spend on Snowflake. DataOps.live will release additional capabilities in 2023 for pipeline monitoring, data usage analysis, and Data Products business value assessment.
- Data Products Done Right – DataOps.live puts managing Data as a Product at the center of the platform's capabilities, with Data Product Lifecycle Management at the heart of everything. With the introduction of change management capabilities, DataOps.live enables data engineering teams to build versioned, backward-compatible Data Products. Leveraging the DataOps Development Environment (DDE) engineers rapidly develop new data assets. Assessed by DataOps.live Observe, teams effectively collaborate with the business stakeholders and publish curated trusted datasets to the customer's data catalog of choice.
- Developer Experience – The DDE matures its developer tools designed to shorten data pipeline tasks from minutes to seconds. Optimized for data science workloads, building data apps, and managing data products, DDE centers on a unified, cloud-based, zero-install development environment designed to accelerate developer productivity and efficiency.
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