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Frequently asked questions

What’s coming next for dbt integration in Sifflet?
We’re just getting started! Soon, you’ll be able to monitor dbt run performance and resource utilization, define monitors in your dbt YAML files, and use custom metadata even more dynamically. These updates will further enhance your cloud data observability and make your workflows even more efficient.
Can Sifflet detect anomalies in my data pipelines?
Yes, it can! Sifflet uses machine learning for anomaly detection, helping you catch unexpected changes in data volume or quality. You can even label anomalies to improve the model's accuracy over time, reducing alert fatigue and improving incident response automation.
Why is data observability becoming such a priority for enterprises in 2025?
Great question! As more organizations rely on AI and analytics for decision-making, ensuring data quality, health, and reliability has become non-negotiable. Data observability platforms like Sifflet help teams detect issues early, reduce downtime, and maintain trust in their data pipelines.
Can Sifflet integrate with our existing data tools and platforms?
Absolutely! Sifflet is designed to integrate seamlessly with your current stack. We support a wide range of tools including Airflow, Snowflake, AWS Glue, and more. Our goal is to provide complete pipeline orchestration visibility and data freshness checks, all from one intuitive interface.
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.
Can open-source ETL tools support data observability needs?
Yes, many open-source ETL tools like Airbyte or Talend can be extended to support observability features. By integrating them with a cloud data observability platform like Sifflet, you can add layers of telemetry instrumentation, anomaly detection, and alerting. This ensures your open-source stack remains robust, reliable, and ready for scale.
What should I consider when choosing a modern observability tool for my data stack?
When evaluating observability tools, consider factors like ease of setup, support for real-time metrics, data freshness checks, and integration with your existing stack. Look for platforms that offer strong data pipeline monitoring, business context in alerts, and cost transparency. Tools like Sifflet also provide fast time-to-value and support for both batch and streaming data observability.
Is this feature scalable for large datasets and multiple data assets?
Yes, it is! With Sifflet’s auto-coverage and observability tools, you can monitor distribution deviation at scale with just a few clicks. Whether you're working with batch data observability or streaming data monitoring, Sifflet has you covered with automated, scalable insights.
Still have questions?