


Discover more integrations
No items found.
Get in touch CTA Section
Lorem ipsum dolor sit amet, consectetur adipiscing elit, sed do eiusmod tempor incididunt ut labore et dolore magna aliqua.
Frequently asked questions
How does a data catalog improve data reliability and governance?
A well-managed data catalog enhances data reliability by capturing metadata like data lineage, ownership, and quality indicators. It supports data governance by enforcing access controls and documenting compliance requirements, making it easier to meet regulatory standards and ensure trustworthy analytics across the organization.
How does the improved test connection process for Snowflake observability help teams?
The revamped 'Test Connection' process for Snowflake observability now provides detailed feedback on missing permissions or policy issues. This makes setup and troubleshooting much easier, especially during onboarding. It helps ensure smooth data pipeline monitoring and reduces the risk of refresh failures down the line.
How does Dailymotion foster a strong data culture beyond just using observability tools?
They’ve implemented a full enablement program with starter kits, trainings, and office hours to build data literacy and trust. Observability tools are just one part of the equation; the real focus is on enabling confident, autonomous decision-making across the organization.
Can Sifflet help with data quality monitoring directly from the Data Catalog?
Absolutely! Sifflet integrates data quality monitoring into its Data Catalog, allowing users to define and view data quality checks right alongside asset metadata. This gives teams real-time insights into data reliability and helps build trust in the assets they’re using for decision-making.
Why is data categorization important for data governance and compliance?
Effective data categorization is essential for data governance and compliance because it helps identify sensitive data like PII, ensuring the correct protection policies are applied. With Sifflet’s classification tags, governance teams can easily locate and safeguard sensitive information, supporting GDPR data monitoring and overall data security compliance.
How is data freshness different from latency or timeliness?
Great question! While these terms are often used interchangeably, they each mean something different. Data freshness is about how up-to-date your data is. Latency measures the delay from data generation to availability, and timeliness refers to whether that data arrives within expected time windows. Understanding these differences is key to effective data pipeline monitoring and SLA compliance.
Can data lineage help with regulatory compliance like GDPR?
Absolutely. Governance lineage, a key type of data lineage, tracks ownership, access controls, and data classifications. This makes it easier to demonstrate compliance with regulations like GDPR and SOX by showing how sensitive data is handled across your stack. It's a critical component of any data governance strategy and helps reduce audit preparation time.
Why are retailers turning to data observability to manage inventory better?
Retailers are adopting data observability to gain real-time visibility into inventory across all channels, reduce stock inaccuracies, and avoid costly misalignments between supply and demand. With data observability tools, they can proactively detect issues, monitor data quality, and improve operational efficiency across their data pipelines.













-p-500.png)
