Home
Contact
PLG GO GO GO
Download the PLG
It's now!













Still have a question in mind ?
Contact Us
Frequently asked questions
Can I trust the data I find in the Sifflet Data Catalog?
Absolutely! Thanks to Sifflet’s built-in data quality monitoring, you can view real-time metrics and health checks directly within the Data Catalog. This gives you confidence in the reliability of your data before making any decisions.
How does data lineage tracking help when something breaks?
Data lineage tracking is a lifesaver when you’re dealing with broken dashboards or bad reports. It maps your data’s journey from source to consumption, so when something goes wrong, you can quickly see what downstream assets are affected. This is key for fast root cause analysis and helps you notify the right business stakeholders. A good observability platform will give you both technical and business lineage, making it easier to trace issues back to their source.
How does Sifflet help with compliance monitoring and audit logging?
Sifflet is ISO 27001 certified and SOC 2 compliant, and we use a separate secret manager to handle credentials securely. This setup ensures a strong audit trail and tight access control, making compliance monitoring and audit logging seamless for your data teams.
What’s the difference between a data catalog and a storage platform in observability?
A great distinction! Storage platforms hold your actual data, while a data catalog helps you understand what that data means. Sifflet connects both, so when we detect an anomaly, the catalog tells you what business process is affected and who should be notified. It’s how we turn raw telemetry into actionable insights for better incident response automation and SLA compliance.
How does reverse ETL fit into the modern data stack?
Reverse ETL is a game-changer for operational analytics. It moves data from your warehouse back into business tools like CRMs or marketing platforms. This enables teams across the organization to act on insights directly from the data warehouse. It’s a perfect example of how data integration has evolved to support autonomy and real-time metrics in decision-making.
What makes Sifflet's architecture unique for secure data pipeline monitoring?
Sifflet uses a cell-based architecture that isolates each customer’s instance and database. This ensures that even under heavy usage or a potential breach, your data pipeline monitoring remains secure, reliable, and unaffected by other customers’ activities.
What should I consider when choosing a modern observability tool for my data stack?
When evaluating observability tools, consider factors like ease of setup, support for real-time metrics, data freshness checks, and integration with your existing stack. Look for platforms that offer strong data pipeline monitoring, business context in alerts, and cost transparency. Tools like Sifflet also provide fast time-to-value and support for both batch and streaming data observability.
Why is combining dbt Core with a data observability platform like Sifflet a smart move?
Combining dbt Core with a data observability platform like Sifflet helps data teams go beyond transformation and into full-stack monitoring. It enables better root cause analysis, reduces time to resolution, and ensures your data products are trustworthy and resilient.






-p-500.png)
