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

What role does data pipeline monitoring play in Dailymotion’s delivery optimization?
By rebuilding their pipelines with strong data pipeline monitoring, Dailymotion reduced storage costs, improved performance, and ensured consistent access to delivery data. This helped eliminate data sprawl and created a single source of truth for operational teams.
How does Sifflet help reduce AI bias and improve model fairness?
Reducing AI bias starts with understanding your data. Sifflet’s observability platform gives you deep visibility into data sources, transformations, and quality. By tracking data lineage and applying data profiling, teams can identify and correct biased inputs before they affect model outcomes. This transparency helps build more ethical and reliable AI systems.
How is Sifflet rethinking root cause analysis in data observability?
Root cause analysis is a critical part of data reliability, and we’re making it smarter. Instead of manually sifting through logs or lineage graphs, Sifflet uses AI and metadata to automate root cause detection and suggest next steps. Our observability tools analyze query logs, pipeline dependencies, and usage patterns to surface the 'why' behind incidents — not just the 'what.' That means faster triage, quicker resolution, and fewer surprises downstream.
Can I use data monitoring and data observability together?
Absolutely! In fact, data monitoring is often a key feature within a broader data observability solution. At Sifflet, we combine traditional monitoring with advanced capabilities like data profiling, pipeline health dashboards, and data drift detection so you get both alerts and insights in one place.
Why are traditional data catalogs no longer enough for modern data teams?
Traditional data catalogs focus mainly on metadata management, but they don't actively assess data quality or track changes in real time. As data environments grow more complex, teams need more than just an inventory. They need data observability tools that provide real-time metrics, anomaly detection, and data quality monitoring to ensure reliable decision-making.
What is SQL Table Tracer and how does it help with data lineage tracking?
SQL Table Tracer (STT) is a lightweight library that automatically extracts table-level lineage from SQL queries. It identifies both destination and upstream tables, making it easier to understand data dependencies and build reliable data lineage workflows. This is a key component of any effective data observability strategy.
What kind of usage insights can I get from Sifflet to optimize my data resources?
Sifflet helps you identify underused or orphaned data assets through lineage and usage metadata. By analyzing this data, you can make informed decisions about deprecating unused tables or enhancing monitoring for critical pipelines. It's a smart way to improve pipeline resilience and reduce unnecessary costs in your data ecosystem.
How can I prevent schema changes from breaking my data pipelines?
You can prevent schema-related breakages by using data observability tools that offer real-time schema drift detection and alerting. These tools help you catch changes early, validate against data contracts, and maintain SLA compliance across your data pipelines.
Still have questions?