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

How does data ingestion relate to data observability?
Great question! Data ingestion is where observability starts. Once data enters your system, observability platforms like Sifflet help monitor its quality, detect anomalies, and ensure data freshness. This allows teams to catch ingestion issues early, maintain SLA compliance, and build trust in their data pipelines.
How is AI shaping the future of data observability?

AI enhances data observability with advanced anomaly detection, predictive analytics, and automated root cause analysis. This helps teams identify and resolve issues faster while reducing manual effort. Have a look at how Sifflet is leveraging AI for better data observability here

What tools can help me monitor data consistency between old and new environments?
You can use data profiling and anomaly detection tools to compare datasets before and after migration. These features are often built into modern data observability platforms and help you validate that nothing critical was lost or changed during the move.
What challenges did Hypebeast face when transitioning to full-scale data observability?
One major challenge was shifting the company culture from being data-aware to truly data-driven. Technically, integrating new observability tools into existing infrastructures and managing the initial investment in time and resources also posed hurdles.
Which industries or use cases benefit most from Sifflet's observability tools?
Our observability tools are designed to support a wide range of industries, from retail and finance to tech and logistics. Whether you're monitoring streaming data in real time or ensuring data freshness in batch pipelines, Sifflet helps teams maintain high data quality and meet SLA compliance goals.
What sessions is Sifflet hosting at Big Data LDN?
We’ve got an exciting lineup! Join us for talks on building trust through data observability, monitoring and tracing data assets at scale, and transforming data skepticism into collaboration. Don’t miss our session on how to unlock the power of data observability for your organization.
What is data lineage and why is it important for data teams?
Data lineage is a visual map that shows how data flows from its source through transformations to its final destination, like dashboards or ML models. It's essential for data teams because it enables faster root cause analysis, improves data trust, and supports smarter change management. When paired with a data observability platform like Sifflet, lineage becomes a powerful tool for tracking data quality and ensuring SLA compliance.
What are some common signs of a data distribution issue?
Some red flags include missing categories, unusual clustering of values, unexpected outliers, or uneven splits that don’t align with business logic. These issues often sneak past volume or schema checks, which is why proactive data quality monitoring and data profiling are so important for catching them early.
Still have questions?