How Observability is Advancing Data Reliability and Data Quality

Modern Data Infrastructures and platforms store huge amounts of multidimensional data.  But - data pipelines frequently break and a machine learning algorithm's performance is only as good as the quality and reliability of the data itself.In this episode we are joined by Lior Gavish and Ryan Kearns of Monte Carlo, to talk about how the new concept of Data Observability is advancing Data Reliability and Data Quality at Scale.Episode SummaryA overview of Data Reliability/Quality and why it is so critical for organisationsThe limitations of traditional approaches in the area of Data ReliabilityData observability and why it is different to traditional approaches to Data QualityThe 5 Pillars of Data ObservabilityHow to improve data reliability/quality at scale and generate trust in data with stakeholders.How observability can lead to better outcomes for Data Science and engineering teams?Examples of data observability use cases in industryOverview of O’Reilly’s upcoming book, The Fundamentals of Data Quality.

Om Podcasten

Welcome to the Data Science Conversations Podcast hosted by Damien Deighan and Dr Philipp Diesinger. We bring you interesting conversations with the world’s leading Academics working on cutting edge topics with potential for real world impact. We explore how their latest research in Data Science and AI could scale into broader industry applications, so you can expand your knowledge and grow your career. Every 4 or 5 episodes we will feature an industry trailblazer from a strong academic background who has applied research effectively in the real world. Podcast Website: www.datascienceconversations.com