Couverture de Unit 1 | Podcast 06 – When Machine Learning Fails: Data, Bias, and Hidden Challenges

Unit 1 | Podcast 06 – When Machine Learning Fails: Data, Bias, and Hidden Challenges

Unit 1 | Podcast 06 – When Machine Learning Fails: Data, Bias, and Hidden Challenges

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Welcome to Podcast 06 of Mindforge ML | Foundations to Intelligence,an educational podcast by Chatake Innoworks Pvt. Ltd.,published under the MindforgeAI initiative.

In this episode, we take a critical look at Machine Learning and explore animportant truth: powerful models can still fail.Understanding these limitations is essential for building responsible andreliable ML systems.

Through simple analogies and real-world scenarios, we discuss some of the mostcommon challenges faced in machine learning:

  • Why data quality matters more than complex algorithms
  • The meaning of “garbage in, garbage out”
  • Overfitting and underfitting, and how models can mislearn
  • How bias in data leads to unfair or misleading outcomes
  • Ethical and practical concerns in real-world ML deployment

This episode emphasizes that machine learning is not just a technical problem,but also a human responsibility involving careful data collection, evaluation,and judgment.

Series: Mindforge ML | Foundations to Intelligence
Unit: Unit 1 – Introduction to Machine Learning
Episode: Podcast 06
Produced by: Chatake Innoworks Pvt. Ltd.
Published under: MindforgeAI
Creator: CI Codesmith

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