Avoid the Top 5 Web Data Pitfalls When Developing AI Models
Offered By: PyCon US via YouTube
Course Description
Overview
Learn how to avoid critical web data pitfalls when developing AI models in this 40-minute sponsor presentation by Jakub Glodek from Bright Data at PyCon US. Explore five key challenges in AI model development, including data bias, insufficient data variety, overfitting and underfitting, poor data quality, and data drift. Discover strategies to ensure fair and representative training data, incorporate diverse scenarios, balance model complexity, maintain high data quality, and adapt to evolving real-world conditions. Access the presentation slides to gain valuable insights on creating reliable and accurate AI models that can effectively generalize to new data and maintain performance over time.
Syllabus
Sponsor Presentations - Avoid the top 5 web data pitfalls when developing AI models (Bright Data)
Taught by
PyCon US
Related Courses
Data for Machine LearningAlberta Machine Intelligence Institute via Coursera Microsoft Future Ready: Ethics and Laws in Data and Analytics
Cloudswyft via FutureLearn AI Strategy and Governance
University of Pennsylvania via Coursera Preparar datos para la exploración
Google via Coursera Daten für die Erkundung Vorbereiten
Google via Coursera