Home
Contact
Contact Us
Tame %%your%% stack.
If you want to learn more about data observability and what Sifflet can do for you, drop us a message below and we'll get back to you as soon as possible.






Still have a question in mind ?
Contact Us
Frequently asked questions
What makes data observability different from traditional monitoring tools?
Traditional monitoring tools focus on infrastructure and application performance, while data observability digs into the health and trustworthiness of your data itself. At Sifflet, we combine metadata monitoring, data profiling, and log analysis to provide deep insights into pipeline health, data freshness checks, and anomaly detection. It's about ensuring your data is accurate, timely, and reliable across the entire stack.
What’s the difference between static and dynamic freshness monitoring modes?
Great question! In static mode, Sifflet checks whether data has arrived during a specific time slot and alerts you if it hasn’t. In dynamic mode, our system learns your data arrival patterns over time and only sends alerts when something truly unexpected happens. This helps reduce alert fatigue while maintaining high standards for data quality monitoring.
What are some signs that our organization might need better data observability?
If your team struggles with delayed dashboards, inconsistent metrics, or unclear data lineage, it's likely time to invest in a data observability solution. At Sifflet, we even created a simple diagnostic to help you assess your data temperature. Whether you're in a 'slow burn' or a 'five alarm fire' state, we can help you improve data reliability and pipeline health.
Is Sifflet suitable for business users as well as engineers?
Absolutely! Sifflet’s user-friendly interface and clear data asset indicators make it easy for business users to find and trust the right data. With features like visual data discovery and real-time metrics, it bridges the gap between technical teams and business stakeholders.
How does data observability improve data contract enforcement?
Data observability adds critical context that static contracts lack, such as data lineage tracking, real-time usage patterns, and anomaly detection. With observability tools, teams can proactively monitor contract compliance, detect schema drift early, and ensure SLA compliance before issues impact downstream systems. It transforms contracts from documentation into enforceable, living agreements.
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.
What role do Common Table Expressions (CTEs) play in query optimization?
CTEs help simplify complex queries by breaking them into manageable parts. This boosts readability and performance, making it easier to identify issues during root cause analysis and enhancing your data quality monitoring efforts.
What is dbt Impact Analysis and how does it help with data observability?
dbt Impact Analysis is a new feature from Sifflet that automatically comments on GitHub or GitLab pull requests with a list of impacted assets when a dbt model is changed. This helps teams enhance their data observability by understanding downstream effects before changes go live.






-p-500.png)
