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 stakeholder trust in data so important, and how can we protect it?
Stakeholder trust is crucial because inconsistent or unreliable data can lead to poor decisions and reduced adoption of data-driven practices. You can protect this trust with strong data quality monitoring, real-time metrics, and consistent reporting. Data observability tools help by alerting teams to issues before they impact dashboards or reports, ensuring transparency and reliability.
What role did data observability play in improving Meero's data reliability?
Data observability was key to Meero's success in maintaining reliable data pipelines. By using Sifflet’s observability platform, they could monitor data freshness, schema changes, and volume anomalies, ensuring their data remained trustworthy and accurate for business decision-making.
Is Forge able to automatically fix data issues in my pipelines?
Forge doesn’t take action on its own, but it does provide smart, contextual guidance based on past fixes. It helps teams resolve issues faster while keeping you in full control of the resolution process, which is key for maintaining SLA compliance and data quality monitoring.
What should I look for in a modern ETL or ELT tool?
When choosing an ETL or ELT tool, look for features like built-in integrations, ease of use, automation capabilities, and scalability. It's also important to ensure the tool supports observability tools for data quality monitoring, data drift detection, and schema validation. These features help you maintain trust in your data and align with DataOps best practices.
What role does metadata play in a data observability platform?
Metadata provides context about your data, such as who created it, when it was modified, and how it's classified. In a data observability platform, strong metadata management enhances data discovery, supports compliance monitoring, and ensures consistent, high-quality data across systems.
How does data observability complement a data catalog?
While a data catalog helps you find and understand your data, data observability ensures that the data you find is actually reliable. Observability tools like Sifflet monitor the health of your data pipelines in real time, using features like data freshness checks, anomaly detection, and data quality monitoring. Together, they give you both visibility and trust in your data.
Can I customize how alerts are routed to ServiceNow from Sifflet?
Absolutely! You can customize routing based on alert metadata like domain, severity, or affected system. This ensures the right team gets notified without any manual triage, making your data pipeline monitoring more actionable and reliable.
What features should we look for in scalable data observability tools?
When evaluating observability tools, scalability is key. Look for features like real-time metrics, automated anomaly detection, incident response automation, and support for both batch data observability and streaming data monitoring. These capabilities help teams stay efficient as data volumes grow.
Still have questions?