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

Why is declarative lineage important for data observability?
Declarative lineage is a game changer because it provides a clear, structured view of how data flows through your systems. This visibility is key for effective data pipeline monitoring, root cause analysis, and data governance. With Sifflet’s approach, you can track upstream and downstream dependencies and ensure your data is reliable and well-managed.
How does field-level lineage improve root cause analysis in observability platforms like Sifflet?
Field-level lineage allows users to trace issues down to individual columns across tables, making it easier to pinpoint where a problem originated. This level of detail enhances root cause analysis and impact assessment, helping teams resolve incidents quickly and maintain trust in their data.
What tools can help me monitor data consistency between old and new environments?
You can use data profiling and anomaly detection tools to compare datasets before and after migration. These features are often built into modern data observability platforms and help you validate that nothing critical was lost or changed during the move.
Why is combining data catalogs with data observability tools the future of data management?
Combining data catalogs with data observability tools creates a holistic approach to managing data assets. While catalogs help users discover and understand data, observability tools ensure that data is accurate, timely, and reliable. This integration supports better decision-making, improves data reliability, and strengthens overall data governance.
Why is integration with my existing tools important for observability?
A good observability platform should fit right into your current stack. That means supporting tools like dbt, Airflow, and your cloud infrastructure. Seamless integration ensures better pipeline orchestration visibility and makes it easier to act on data issues without disrupting your workflows.
Can Sifflet help with root cause analysis when there's a data issue?
Absolutely. Sifflet's built-in data lineage tracking plays a key role in root cause analysis. If a dashboard shows unexpected data, teams can trace the issue upstream through the lineage graph, identify where the problem started, and resolve it faster. This visibility makes troubleshooting much more efficient and collaborative.
What can I expect from Sifflet at Big Data Paris 2024?
We're so excited to welcome you at Booth #D15 on October 15 and 16! You’ll get to experience live demos of our latest data observability features, hear real client stories like Saint-Gobain’s, and explore how Sifflet helps improve data reliability and streamline data pipeline monitoring.
How can I measure whether my data is trustworthy?
Great question! To measure data quality, you can track key metrics like accuracy, completeness, consistency, relevance, and freshness. These indicators help you evaluate the health of your data and are often part of a broader data observability strategy that ensures your data is reliable and ready for business use.
Still have questions?