March 5, 2024 By David Blanch < 1 min read

Today we’re excited to announce that IBM Databand® has been approved by Snowflake (link resides outside ibm.com), the Data Cloud company, as a Snowflake Ready Technology Validation partner. This recognition confirms that the company’s Snowflake integrations adhere to the platform’s best practices around performance, reliability and security. 

“This is a huge step forward in our Snowflake partnership,” said David Blanch, Head of Product for IBM Databand. “Our customers constantly ask for data observability across their data architecture, from data orchestration to storage. This validation from Snowflake now brings us into a select category of observability solutions.”   

The Snowflake Ready Validation Program (link resides outside ibm.com) recognizes partners that have completed a 3rd party technical validation to confirm their Snowflake integrations are optimized with an emphasis on functional and performance best practices.  

Databand is partnering with Snowflake to provide continuous data observability in the Snowflake Data Cloud. Databand’s integration enables data teams to quickly identify and fix data quality freshness, and volume issues in Snowflake tables.

“Databand’s Technology Ready status reflects the company’s continued investment in providing robust data solutions for our joint customers,” said Tarik Dwiek, Head of Technology Alliances at Snowflake. “We look forward to continuing to witness Databand’s commitment to ensuring a seamless user experience for our joint customers through their continuous data observability solution.” 

Become a Snowflake partner and get access to Snowflake’s self-service partner resources. 

Request a demo to see IBM Databand in action

More from Databand

Introducing Data Observability for Azure Data Factory (ADF)

< 1 min read - In this IBM Databand product update, we’re excited to announce our new support data observability for Azure Data Factory (ADF). Customers using ADF as their data pipeline orchestration and data transformation tool can now leverage Databand’s observability and incident management capabilities to ensure the reliability and quality of their data. Why use Databand with ADF? End-to-end pipeline monitoring: collect metadata, metrics, and logs from all dependent systems. Trend analysis: build historical trends to proactively detect anomalies and alert on potential…

DataOps Tools: Key Capabilities & 5 Tools You Must Know About

4 min read - What are DataOps tools? DataOps, short for data operations, is an emerging discipline that focuses on improving the collaboration, integration and automation of data processes across an organization. DataOps tools are software solutions designed to simplify and streamline the various aspects of data management and analytics, such as data ingestion, data transformation, data quality management, data cataloging and data orchestration. These tools help organizations implement DataOps practices by providing a unified platform for data teams to collaborate, share and manage…

7 Data Testing Methods, Why You Need Them & When to Use Them

5 min read - What is data testing? Data testing involves the verification and validation of datasets to confirm they adhere to specific requirements. The objective is to avoid any negative consequences on business operations or decisions arising from errors, inconsistencies, or inaccuracies. In a world where organizations rely heavily on data observability for informed decision-making, effective data testing methods are crucial to ensure high-quality standards across all stages of the data lifecycle—from data collection and storage to processing and analysis.This is part of…

IBM Newsletters

Get our newsletters and topic updates that deliver the latest thought leadership and insights on emerging trends.
Subscribe now More newsletters