AI and Data Science Master the art of data science. Join now
SummaryMaking sense of all your input data isn’t fun, especially when consuming inputs from 10s to 1000s of data sources daily. If your data teams are orchestrating massive amounts of data, across multiple data pipelines, it’s nearly impossible to feel confident in the data quality within your data warehouse. Instead of retroactive data monitoring, it’s time for more of a proactive approach to ensure better data quality. Join this session to learn: • How data observability can provide data quality monitoring for your warehouse • How to use SQL for data quality checks and alert on table freshness • Live demo of IBM Databand providing end-to-end incident visibility for data in transit (data pipeline quality) and data at rest (data warehouse quality)
Key SpeakersRyan Yackel - Product Management Strategy LeaderRyan is the IBM Product Strategy Leader. He’s passionate about solving data quality and reliability problems through data observability. Before IBM, Ryan led GTM programs at high-growth start-ups in software test automation, DevOps, and IAM cybersecurity.Eric Jones - Data Solution Architect Eric is a Data Solution Architect at IBM. He’s passionate about helping customers detect data issues earlier and resolve them faster. Before IBM, Eric consulted companies on becoming more data-driven as a data architect and principal software engineer. When not talking to customers, you can find Eric smoking North Carolina BBQ and hanging with his family.