


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
Why is using WHERE instead of HAVING so important for performance?
Using WHERE instead of HAVING when not working with GROUP BY clauses is crucial because WHERE filters data earlier in the query execution. This reduces the amount of data processed, which improves query speed and supports better metrics collection in your observability platform.
Where can I find Sifflet at Big Data LDN 2024?
You can find the Sifflet team at Booth Y640 during Big Data LDN on September 18-19. Stop by to learn more about our data observability platform and how we’re helping organizations like the BBC and Penguin Random House improve their data reliability.
Can Sifflet detect unexpected values in categorical fields?
Absolutely. Sifflet’s data quality monitoring automatically flags unforeseen values in categorical fields, which is a common issue for analytics engineers. This helps prevent silent errors in your data pipelines and supports better SLA compliance across your analytics workflows.
Is this integration useful for teams focused on data governance and compliance?
Yes, it really is! With enhanced lineage and metadata tracking from source to destination, the Fivetran integration supports better data governance. It helps ensure transparency, traceability, and SLA compliance across your data ecosystem.
How does Sifflet help with root cause analysis in Firebolt environments?
Sifflet makes root cause analysis easy by providing complete data lineage tracking for your Firebolt assets. You can trace issues back to their source, whether it's an upstream dbt model or a downstream Looker dashboard, all within a single platform.
How does Sifflet help with data discovery across different tools like Snowflake and BigQuery?
Great question! Sifflet acts as a unified observability platform that consolidates metadata from tools like Snowflake and BigQuery into one centralized Data Catalog. By surfacing tags, labels, and schema details, it makes data discovery and governance much easier for all stakeholders.
What kind of alerts can I expect from Sifflet when using it with Firebolt?
With Sifflet, you’ll receive real-time alerts for any data quality issues detected in your Firebolt warehouse. These alerts are powered by advanced anomaly detection and data freshness checks, helping you stay ahead of potential problems.
How does Sifflet support traceability across diverse data stacks?
Traceability is a key pillar of Sifflet’s observability platform. We’ve expanded support for tools like Synapse, MicroStrategy, and Fivetran, and introduced our Universal Connector to bring in any asset, even from AI models. This makes root cause analysis and data lineage tracking more comprehensive and actionable.






-p-500.png)
