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 can data observability help companies stay GDPR compliant?
Great question! Data observability plays a key role in GDPR compliance by giving teams real-time visibility into where personal data lives, how it's being used, and whether it's being processed according to user consent. With an observability platform in place, you can track data lineage, monitor data quality, and quickly respond to deletion or access requests in a compliant way.
Why is investing in data observability important for business leaders?
Great question! Investing in data observability helps organizations proactively monitor the health of their data, reduce the risk of bad data incidents, and ensure data quality across pipelines. It also supports better decision-making, improves SLA compliance, and helps maintain trust in analytics. Ultimately, it’s a strategic move that protects your business from costly mistakes and missed opportunities.
Why is data lineage a pillar of Full Data Stack Observability?
At Sifflet, we consider data lineage a core part of Full Data Stack Observability because it connects data quality monitoring with data discovery. By mapping data dependencies, teams can detect anomalies faster, perform accurate root cause analysis, and maintain trust in their data pipelines.
How does Sifflet enhance data lineage tracking for dbt projects?
Sifflet enriches your data lineage tracking by visually mapping out your dbt models and how they connect across different projects. This is especially useful for teams managing multiple dbt repositories, as Sifflet brings everything together into a clear, centralized lineage view that supports root cause analysis and proactive monitoring.
Which industries or use cases benefit most from Sifflet's observability tools?
Our observability tools are designed to support a wide range of industries, from retail and finance to tech and logistics. Whether you're monitoring streaming data in real time or ensuring data freshness in batch pipelines, Sifflet helps teams maintain high data quality and meet SLA compliance goals.
Why is full-stack visibility important in data pipelines?
Full-stack visibility is key to understanding how data moves across your systems. With a data observability tool, you get data lineage tracking and metadata insights, which help you pinpoint bottlenecks, track dependencies, and ensure your data is accurate from source to destination.
Why is aligning data initiatives with business objectives important for Etam?
At Etam, every data project begins with the question, 'How does this help us reach our OKRs?' This alignment ensures that data initiatives are directly tied to business impact, improving sponsorship and fostering collaboration across departments. It's a great example of business-aligned data strategy in action.
Can Flow Stopper work with tools like Airflow and Snowflake?
Absolutely! Flow Stopper supports integration with popular tools like Airflow for orchestration and Snowflake for storage. It can run anomaly detection and data validation rules mid-pipeline, helping ensure data quality as it moves through your stack.
Still have questions?