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Frequently asked questions

What are some engineering challenges around the 'right to be forgotten' under GDPR?
The 'right to be forgotten' introduces several technical hurdles. For example, deleting user data across multiple systems, backups, and caches can be tricky. That's where data lineage tracking and pipeline orchestration visibility come in handy. They help you understand dependencies and ensure deletions are complete and safe without breaking downstream processes.
How does data observability differ from traditional data quality monitoring?
Great question! While data quality monitoring focuses on alerting teams when data deviates from expected parameters, data observability goes further by providing context through data lineage tracking, real-time metrics, and root cause analysis. This holistic view helps teams not only detect issues but also understand and fix them faster, making it a more proactive approach.
Why is a centralized Data Catalog important for data reliability and SLA compliance?
A centralized Data Catalog like Sifflet’s plays a key role in ensuring data reliability and SLA compliance by offering visibility into asset health, surfacing incident alerts, and providing real-time metrics. This empowers teams to monitor data pipelines proactively and meet service level expectations more consistently.
How does Sifflet make it easier to manage data volume at scale?
Sifflet simplifies data volume monitoring with plug-and-play integrations, AI-powered baselining, and unified observability dashboards. It automatically detects anomalies, connects them to business impact, and provides real-time alerts. Whether you're using Snowflake, BigQuery, or Kafka, Sifflet helps you stay ahead of data reliability issues with proactive monitoring and alerting.
How does data lineage support compliance with data privacy regulations?
Data lineage plays a key role in compliance monitoring by providing transparency into where data comes from, how it's processed, and where it ends up. This is crucial for meeting regulations like GDPR and HIPAA, and for maintaining strong data governance practices across the organization.
Is Sifflet available for VPC deployment on Google Cloud?
Yes it is! You can deploy Sifflet’s observability platform within your own private Google Cloud environment using VPC deployment, giving you full control over data governance and security.
Is this feature part of Sifflet’s larger observability platform?
Yes, dbt Impact Analysis is a key addition to Sifflet’s observability platform. It integrates seamlessly into your GitHub or GitLab workflows and complements other features like data lineage tracking and data quality monitoring to provide holistic data observability.
How does Sifflet support data quality monitoring at scale?
Sifflet makes data quality monitoring scalable with features like auto-coverage, which automatically generates monitors across your datasets. Whether you're working with Snowflake, BigQuery, or other platforms, you can quickly reach high monitoring coverage and get real-time alerts via Slack, email, or MS Teams to ensure data reliability.
Still have questions?