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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.

What impressed us most about Sifflet’s AI-native approach is how seamlessly it adapts to our data landscape — without needing constant tuning. The system learns patterns across our workflows and flags what matters, not just what’s noisy. It’s made our team faster and more focused, especially as we scale analytics across the business.

Simoh-Mohamed Labdoui
Head of Data

"Sifflet has been a game-changer for our organization, providing full visibility of data lineage across multiple repositories and platforms. The ability to connect to various data sources ensures observability regardless of the platform, and the clean, intuitive UI makes setup effortless, even when uploading dbt manifest files via the API. Their documentation is concise and easy to follow, and their team's communication has been outstanding—quickly addressing issues, keeping us informed, and incorporating feedback. "

Callum O'Connor
Senior Analytics Engineer, The Adaptavist

"Sifflet serves as our key enabler in fostering a harmonious relationship with business teams. By proactively identifying and addressing potential issues before they escalate, we can shift the focus of our interactions from troubleshooting to driving meaningful value. This approach not only enhances collaboration but also ensures that our efforts are aligned with creating impactful outcomes for the organization."

Sophie Gallay
Data & Analytics Director, Etam

"Having the visibility of our DBT transformations combined with full end-to-end data lineage in one central place in Sifflet is so powerful for giving our data teams confidence in our data, helping to diagnose data quality issues and unlocking an effective data mesh for us at BBC Studios"

Ross Gaskell
Software engineering manager, BBC Studios

"Sifflet has transformed our data observability management at Carrefour Links. Thanks to Sifflet's proactive monitoring, we can identify and resolve potential issues before they impact our operations. Additionally, the simplified access to data enables our teams to collaborate more effectively."

Mehdi Labassi
CTO, Carrefour Links

"Using Sifflet has helped us move much more quickly because we no longer experience the pain of constantly going back and fixing issues two, three, or four times."

Sami Rahman
Director of Data, Hypebeast
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Frequently asked questions

Why is data observability becoming essential for modern data teams?
As data pipelines grow more complex, data observability provides the visibility needed to monitor and troubleshoot issues across the full stack. By adopting a robust observability platform, teams can detect anomalies, ensure SLA compliance, and maintain data reliability without relying on manual checks or reactive fixes.
What best practices should I follow when planning for data quality monitoring?
Start by defining data validation rules and ownership early in your architecture. Use observability tools that support proactive monitoring, anomaly detection, and root cause analysis to catch issues before they affect downstream systems or business decisions.
How can data teams prioritize what to monitor in complex environments?
Not all data is created equal, so it's important to focus data quality monitoring efforts on the assets that drive business outcomes. That means identifying key dashboards, critical metrics, and high-impact models, then using tools like pipeline health dashboards and SLA monitoring to keep them reliable and fresh.
How does Sifflet help with anomaly detection in data pipelines?
Sifflet uses machine learning to power anomaly detection across your data ecosystem. Instead of relying on static rules, it learns your data’s patterns and flags unusual behavior—like a sudden drop in transaction volume. This helps teams catch issues early, avoid alert fatigue, and focus on incidents that actually impact business outcomes. It’s data quality monitoring with real intelligence.
How does Flow Stopper support root cause analysis and incident prevention?
Flow Stopper enables early anomaly detection and integrates with your orchestrator to halt execution when issues are found. This makes it easier to perform root cause analysis before problems escalate and helps prevent incidents that could affect business-critical dashboards or KPIs.
What makes observability essential for AI governance and ML model reliability?
ML models rely on clean, consistent data. With real-time drift detection and schema monitoring, observability tools catch issues before they impact predictions. One global consulting firm used Sifflet to detect feature drift and schema changes early, keeping their models accurate and their stakeholders confident in the results.
What makes Sifflet stand out when it comes to data reliability and trust?
Sifflet shines in data reliability by offering real-time metrics and intelligent anomaly detection. During the webinar, we saw how even non-technical users can set up custom monitors, making it easy for teams to catch issues early and maintain SLA compliance with confidence.
What exactly is a Data Observability Health Score?
A Data Observability Health Score is like a credit score for your data. It combines real-time metrics like freshness, volume, schema integrity, and data lineage tracking to give you a quick, reliable signal on whether your data is trustworthy and ready for use. It's a key part of any modern observability platform.

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