


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 Sifflet help reduce alert fatigue in data teams?
Sifflet's observability tools are built with smart alerting in mind. By combining dynamic thresholding, impact-aware triage, and anomaly scoring, we help teams focus on what really matters. This reduces noise and ensures that alerts are actionable, leading to faster resolution and better SLA compliance.
What should a solid data quality monitoring framework include?
A strong data quality monitoring framework should be scalable, rule-based and powered by AI for anomaly detection. It should support multiple data sources and provide actionable insights, not just alerts. Tools that enable data drift detection, schema validation and real-time alerts can make a huge difference in maintaining data integrity across your pipelines.
How does the Sifflet AI Assistant improve data observability at scale?
The Sifflet AI Assistant enhances data observability by automatically fine-tuning your monitoring setup using machine learning and dynamic thresholds. It continuously adapts to changes in your data pipelines, reducing false positives and ensuring accurate anomaly detection, even as your data scales globally.
What’s a real-world example of Dailymotion using real-time metrics to drive business value?
One standout example is their ad inventory forecasting tool. By embedding real-time metrics into internal tools, sales teams can plan campaigns more precisely and avoid last-minute scrambles. It’s a great case of using data to improve both accuracy and efficiency.
Why are data teams moving away from Monte Carlo to newer observability tools?
Many teams are looking for more flexible and cost-efficient observability tools that offer better business user access and faster implementation. Monte Carlo, while a pioneer, has become known for its high costs, limited customization, and lack of business context in alerts. Newer platforms like Sifflet and Metaplane focus on real-time metrics, cross-functional collaboration, and easier setup, making them more appealing for modern data teams.
What benefits does end-to-end data lineage offer my team?
End-to-end data lineage helps your team perform accurate impact assessments and faster root cause analysis. By connecting declared and built-in assets, you get full visibility into upstream and downstream dependencies, which is key for data reliability and operational intelligence.
Can Sifflet support SLA compliance and data governance goals?
Absolutely! Sifflet supports SLA compliance through proactive data quality monitoring and real-time metrics. Its deep metadata integrations and lineage tracking also help organizations enforce data governance policies and maintain trust across the entire data ecosystem.
What new investments is Sifflet making after the latest funding round?
We're excited to be investing in four key areas: enhancing our product roadmap, expanding our AI-powered capabilities, growing our North American presence, and accelerating hiring across teams. These efforts will help us continue leading in cloud data observability and better serve our growing customer base.













-p-500.png)
