


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
What is agentic observability and how is it different from traditional observability tools?
Agentic observability goes beyond just surfacing logs and metrics. It uses AI agents to understand what broke, why it broke, what it impacts, and even suggests or takes action to fix it. Unlike traditional observability tools that rely on human interpretation, an observability platform like Sifflet automates root cause analysis and incident response, making data pipeline monitoring far more efficient.
What should I look for in a modern data discovery tool?
Look for features like self-service discovery, automated metadata collection, and end-to-end data lineage. Scalability is key too, especially as your data grows. Tools like Sifflet also integrate data observability, so you can monitor data quality and pipeline health while exploring your data assets.
How does data observability support AI and machine learning initiatives?
AI models are only as good as the data they’re trained on. With data observability, you can ensure data quality, detect data drift, and enforce validation rules, all of which are critical for reliable AI outcomes. Sifflet helps you maintain trust in your data so you can confidently scale your ML and predictive analytics efforts.
What does Sifflet plan to do with the new $18M in funding?
We're excited to use this funding to accelerate product innovation, expand our North American presence, and grow our team. Our focus will be on enhancing AI-powered capabilities, improving data pipeline monitoring, and helping customers maintain data reliability at scale.
How does Sifflet help improve data discovery across my organization?
Sifflet consolidates metadata from your entire data stack into a centralized Data Catalog, making it easier for data stakeholders to discover, understand, and trust data. With features like enriched metadata, Snowflake tags, and BigQuery labels, data discovery becomes faster and more intuitive, reducing time spent searching for the right assets.
Can I learn about real-world results from Sifflet customers at the event?
Yes, definitely! Companies like Saint-Gobain will be sharing how they’ve used Sifflet for data observability, data lineage tracking, and SLA compliance. It’s a great chance to hear how others are solving real data challenges with our platform.
What’s the main difference between ETL and ELT?
Great question! While both ETL (Extract, Transform, Load) and ELT (Extract, Load, Transform) are data integration methods, the key difference lies in the order of operations. ETL transforms data before loading it into a data warehouse, whereas ELT loads raw data first and transforms it inside the warehouse. ELT has become more popular with the rise of cloud data warehouses like Snowflake and BigQuery, which offer scalable storage and computing power. If you're working with large volumes of data, ELT might be the better fit for your data pipeline monitoring strategy.
Is data governance more about culture or tools?
It's a mix of both, but culture plays a big role. As Dan Power puts it, 'culture eats strategy for breakfast.' Even the best observability tools won't succeed without enterprise-wide data literacy and buy-in. That’s why training, user-friendly platforms, and fostering collaboration are just as important as the technology stack you choose.













-p-500.png)
