
Sign up to save your podcasts
Or


In the second episode of The Data Fabric Show, Kaycee Lai, Founder of Promethium, and Ramon Chen, CPO at Acceldata, discuss the dynamic world of data observability as a critical function for ensuring data quality, cost efficiency, and operational effectiveness. They explore the emerging relevance of active metadata, which enables organizations to leverage AI for building smarter data products and managing data more effectively, as well as the challenges and benefits of integrating data observability with active metadata and how it creates a more comprehensive view of data lineage and quality, enhancing trust in data for AI applications.
Ramon also shares his insights on modernization strategies, such as migrating data from legacy systems like Hadoop to the cloud, while using data observability to avoid moving redundant or irrelevant data, and critical need for visibility across the data pipeline to prevent inefficiencies and ensure a clear understanding of the data landscape. Throughout the episode, they emphasize the importance of balancing technology and business goals, understanding market needs, and fostering collaboration between business and IT to achieve a modern, efficient, and transparent data experience.
Listen in for practical insights on creating a data-driven strategy, leveraging AI, and building a modern data observability framework that aligns with your organization's objectives.
Topics discussed:
By PromethiumIn the second episode of The Data Fabric Show, Kaycee Lai, Founder of Promethium, and Ramon Chen, CPO at Acceldata, discuss the dynamic world of data observability as a critical function for ensuring data quality, cost efficiency, and operational effectiveness. They explore the emerging relevance of active metadata, which enables organizations to leverage AI for building smarter data products and managing data more effectively, as well as the challenges and benefits of integrating data observability with active metadata and how it creates a more comprehensive view of data lineage and quality, enhancing trust in data for AI applications.
Ramon also shares his insights on modernization strategies, such as migrating data from legacy systems like Hadoop to the cloud, while using data observability to avoid moving redundant or irrelevant data, and critical need for visibility across the data pipeline to prevent inefficiencies and ensure a clear understanding of the data landscape. Throughout the episode, they emphasize the importance of balancing technology and business goals, understanding market needs, and fostering collaboration between business and IT to achieve a modern, efficient, and transparent data experience.
Listen in for practical insights on creating a data-driven strategy, leveraging AI, and building a modern data observability framework that aligns with your organization's objectives.
Topics discussed: