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 kinds of metrics can retailers track with advanced observability tools?
Retailers can track a wide range of metrics such as inventory health, stock obsolescence risks, carrying costs, and dynamic safety stock levels. These observability dashboards offer time-series analysis and predictive insights that support better decision-making and improve overall data reliability.
Why is data observability important during cloud migration?
Great question! Data observability helps you monitor the health and integrity of your data as it moves to the cloud. By using an observability platform, you can track data lineage, detect anomalies, and validate consistency between environments, which reduces the risk of disruptions and broken pipelines.
How does Shippeo ensure data reliability across its supply chain platform?
Shippeo uses Sifflet’s data observability platform to monitor every stage of their data pipelines. By implementing raw data monitoring, intermediate layer checks, and front-facing metric validation, they catch issues early and maintain trust in their real-time supply chain visibility tools.
Can Sifflet help reduce false positives during holidays or special events?
Absolutely! We know that data patterns can shift during holidays or unique business dates. That’s why Sifflet now lets you exclude these dates from alerts by selecting from common calendars or customizing your own. This helps reduce alert fatigue and improves the accuracy of anomaly detection across your data pipelines.
What should I look for when choosing a data integration tool?
Look for tools that support your data sources and destinations, offer automation, and ensure compliance. Features like schema registry integration, real-time metrics, and alerting can also make a big difference. A good tool should work seamlessly with your observability tools to maintain data quality and trust.
What’s the best way to prevent bad data from impacting our business decisions?
Preventing bad data starts with proactive data quality monitoring. That includes data profiling, defining clear KPIs, assigning ownership, and using observability tools that provide real-time metrics and alerts. Integrating data lineage tracking also helps you quickly identify where issues originate in your data pipelines.
What are some signs that our organization might need better data observability?
If your team struggles with delayed dashboards, inconsistent metrics, or unclear data lineage, it's likely time to invest in a data observability solution. At Sifflet, we even created a simple diagnostic to help you assess your data temperature. Whether you're in a 'slow burn' or a 'five alarm fire' state, we can help you improve data reliability and pipeline health.
What is the Model Context Protocol (MCP), and why is it important for data observability?
The Model Context Protocol (MCP) is a new interface standard developed by Anthropic that allows large language models (LLMs) to interact with tools, retain memory, and access external context. At Sifflet, we're excited about MCP because it enables more intelligent agents that can help with data observability by diagnosing issues, triggering remediation tools, and maintaining context across long-running investigations.






-p-500.png)
