Integrates with your %%modern data stack%%
Sifflet seamlessly integrates into your data sources and preferred tools, and can run on AWS, Google Cloud Platform, and Microsoft Azure.
Thank you! Your submission has been received!
Oops! Something went wrong while submitting the form.
Results tag
Showing 0 results
More integration coming soon !
The Sifflet team is always working hard on incorporating more integrations into our product. Get in touch if you want us to keep you updated!
Oops! Something went wrong while submitting the form.

Still have a question in mind ?
Contact Us
Frequently asked questions
Why is data observability so important for modern data teams?
Great question! Data observability is essential because it gives teams full visibility into the health of their data pipelines. Without it, small issues can quickly snowball into major incidents, like broken dashboards or faulty machine learning models. At Sifflet, we help you catch problems early with real-time metrics and proactive monitoring, so your team can focus on creating insights, not putting out fires.
How can organizations choose the right observability tools for their data stack?
Choosing the right observability tools depends on your data maturity and stack complexity. Look for platforms that offer comprehensive data quality monitoring, support for both batch and streaming data, and features like data lineage tracking and alert correlation. Platforms like Sifflet provide end-to-end visibility, making it easier to maintain SLA compliance and reduce incident response times.
What role does Sifflet’s Data Catalog play in data governance?
Sifflet’s Data Catalog supports data governance by surfacing labels and tags, enabling classification of data assets, and linking business glossary terms for standardized definitions. This structured approach helps maintain compliance, manage costs, and ensure sensitive data is handled responsibly.
How does Sifflet support real-time data lineage and observability?
Sifflet provides automated, field-level data lineage integrated with real-time alerts and anomaly detection. It maps how data flows across your stack, enabling quick root cause analysis and impact assessments. With features like data drift detection, schema change tracking, and pipeline error alerting, Sifflet helps teams stay ahead of issues and maintain data reliability.
Can I use Sifflet to detect issues in my dbt models before they impact downstream dashboards?
Absolutely! Sifflet's real-time anomaly detection and full data lineage tracking make it easy to catch issues in your dbt models early. This proactive approach helps prevent broken dashboards and ensures data reliability across your analytics pipeline.
How does Sifflet support data quality monitoring for large organizations?
Sifflet is built to scale. It supports automated data quality monitoring across hundreds of assets, as seen with Carrefour Links monitoring over 800 data assets in 8+ countries. With dynamic thresholding, schema change detection, and real-time metrics, Sifflet ensures SLA compliance and consistent data reliability across complex ecosystems.
What makes Etam’s data strategy resilient in a fast-changing retail landscape?
Etam’s data strategy is built on clear business alignment, strong data quality monitoring, and a focus on delivering ROI across short, mid, and long-term horizons. With the help of an observability platform, they can adapt quickly, maintain data reliability, and support strategic decision-making even in uncertain conditions.
How can I avoid breaking reports and dashboards during migration?
To prevent disruptions, it's essential to use data lineage tracking. This gives you visibility into how data flows through your systems, so you can assess downstream impacts before making changes. It’s a key part of data pipeline monitoring and helps maintain trust in your analytics.




















-p-500.png)
