AI Today Podcast: AI Glossary Series- Data Engineer, Data Engineering, Data Pipeline, Data Wrangling, Data feed, Data Governance, Data integration

In this episode of the AI Today podcast hosts Kathleen Walch and Ron Schmelzer define terms related to data. Because, data is the heart of AI. So it's important to understand the role data plays in AI and ML projects. In this episode we go over the terms data engineer, data engineering, and data pipeline. Each project has it's own unique data pipeline, which is a set of interconnected steps developed as part of a data engineering process. The pipeline provides different operations, transformation, integration, aggregation, and other data-centric activities between data sources and final destinations where the data are used. Additionally, we go over the term data wrangling which is the process of transforming data from a raw data form into its desired form. Also we discuss data feed, Data Governance, and Data integration. We explain how these terms relate to AI and why it's important to know about them. Show Notes: FREE Intro to CPMAI mini course CPMAI Training and Certification The Steps for a Machine Learning Project AI Glossary AI Glossary Series - DevOps, Machine Learning Operations (ML Ops) AI Glossary Series - Data Preparation, Data Cleaning, Data Splitting, Data Multiplication, Data Transformation AI Glossary Series - Data Augmentation, Data Labeling, Bounding box, Sensor fusion AI Glossary Series - Data, Dataset, Big Data, DIKUW Pyramid AI Glossary Series - V’s of Big Data, Data Volume, Exabyte / Petabyte / Yottabyte / Zettabyte, Data Variety, Data Velocity, Data Veracity AI Glossary Series - Data Science, Data Scientist, Citizen Data Scientist / Citizen Developer, Data Custodian

Om Podcasten

Cognilytica's AI Today podcast focuses on relevant information about what's going on today in the world of artificial intelligence. Hosts Kathleen Walch and Ron Schmelzer discuss pressing topics around artificial intelligence with easy to digest content, interview guests and experts on the subject, and cut through the hype and noise to identify what is really happening with adoption and implementation of AI.