Home
Contact
Contact Us
Tame %%your%% stack.
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.













Still have a question in mind ?
Contact Us
Frequently asked questions
What does 'agentic observability' mean and why does it matter?
Agentic observability is our vision for the future — where observability platforms don’t just monitor, they act. Think of it as moving from real-time alerts to intelligent copilots. With features like auto-remediation, dynamic thresholding, and incident response automation, Sifflet is building systems that can detect issues, assess impact, and even resolve known problems on their own. It’s a huge step toward self-healing pipelines and truly proactive data operations.
What kind of integrations does Sifflet offer for data pipeline monitoring?
Sifflet integrates with cloud data warehouses like Snowflake, Redshift, and BigQuery, as well as tools like dbt, Airflow, Kafka, and Tableau. These integrations support comprehensive data pipeline monitoring and ensure observability tools are embedded across your entire stack.
Can I trust the data I find in the Sifflet Data Catalog?
Absolutely! Thanks to Sifflet’s built-in data quality monitoring, you can view real-time metrics and health checks directly within the Data Catalog. This gives you confidence in the reliability of your data before making any decisions.
Why is data freshness so important for data reliability?
Great question! Data freshness is a key part of data reliability because decisions are only as good as the data they're based on. If your data is outdated or delayed, it can lead to flawed insights and missed opportunities. That's why data freshness checks are a foundational element of any strong data observability strategy.
Can I use the Fivetran integration to monitor data pipeline health?
Absolutely! By surfacing connector statuses and metadata directly in the lineage graph and catalog, Sifflet helps you stay on top of pipeline health and detect issues early. It's a powerful step forward in proactive data pipeline monitoring.
What is agentic observability and how is it different from traditional observability tools?
Agentic observability goes beyond just surfacing logs and metrics. It uses AI agents to understand what broke, why it broke, what it impacts, and even suggests or takes action to fix it. Unlike traditional observability tools that rely on human interpretation, an observability platform like Sifflet automates root cause analysis and incident response, making data pipeline monitoring far more efficient.
How does Sifflet support data documentation in Airflow?
Sifflet centralizes documentation for all your data assets, including DAGs, models, and dashboards. This makes it easier for teams to search, explore dependencies, and maintain strong data governance practices.
Why should I consider switching from Splunk to a dedicated data observability platform?
Great question! While Splunk Observability Cloud is excellent for system-level telemetry like uptime and latency, it doesn't cover the data layer. A dedicated data observability platform like Sifflet gives you full visibility into data quality, lineage, freshness, and anomalies, so you can trust the insights powering your dashboards and models.






-p-500.png)
