Integrates with your %%modern data stack%%
Sifflet seamlessly integrates into your data sources and preferred tools, and can run on AWS, Google Cloud Platform, and Microsoft Azure.
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The Sifflet team is always working hard on incorporating more integrations into our product. Get in touch if you want us to keep you updated!
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Frequently asked questions
Why is smart alerting important in data observability?
Smart alerting helps your team focus on what really matters. Instead of flooding your Slack with every minor issue, a good observability tool prioritizes alerts based on business impact and data asset importance. This reduces alert fatigue and ensures the right people get notified at the right time. Look for platforms that offer customizable severity levels, real-time alerts, and integrations with your incident management tools like PagerDuty or email alerts.
What exactly is the modern data stack, and why is it so popular now?
The modern data stack is a collection of cloud-native tools that help organizations transform raw data into actionable insights. It's popular because it simplifies data infrastructure, supports scalability, and enables faster, more accessible analytics across teams. With tools like Snowflake, dbt, and Airflow, teams can build robust pipelines while maintaining visibility through data observability platforms like Sifflet.
How can data observability help with SLA compliance and incident management?
Data observability plays a huge role in SLA compliance by enabling real-time alerts and proactive monitoring of data freshness, completeness, and accuracy. When issues occur, observability tools help teams quickly perform root cause analysis and understand downstream impacts, speeding up incident response and reducing downtime. This makes it easier to meet service level agreements and maintain stakeholder trust.
What are some best practices for ensuring data quality during transformation?
To ensure high data quality during transformation, start with strong data profiling and cleaning steps, then use mapping and validation rules to align with business logic. Incorporating data lineage tracking and anomaly detection also helps maintain integrity. Observability tools like Sifflet make it easier to enforce these practices and continuously monitor for data drift or schema changes that could affect your pipeline.
Can data lineage help with regulatory compliance like GDPR?
Absolutely. Governance lineage, a key type of data lineage, tracks ownership, access controls, and data classifications. This makes it easier to demonstrate compliance with regulations like GDPR and SOX by showing how sensitive data is handled across your stack. It's a critical component of any data governance strategy and helps reduce audit preparation time.
How can Sifflet help ensure SLA compliance and prevent bad data from affecting business decisions?
Sifflet helps teams stay on top of SLA compliance with proactive data freshness checks, anomaly detection, and incident tracking. Business users can rely on health indicators and lineage views to verify data quality before making decisions, reducing the risk of costly errors due to unreliable data.
What can I expect from Sifflet’s upcoming webinar?
Join us on January 22nd for a deep dive into Sifflet’s 2024 highlights and a preview of what’s ahead in 2025. We’ll cover innovations in data observability, including real-time metrics, faster incident resolution, and the upcoming Sifflet AI Agent. It’s the perfect way to kick off the year with fresh insights and inspiration!
How does data observability fit into a modern data platform?
Data observability is a critical layer of a modern data platform. It helps monitor pipeline health, detect anomalies, and ensure data quality across your stack. With observability tools like Sifflet, teams can catch issues early, perform root cause analysis, and maintain trust in their analytics and reporting.













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