
Sign up to save your podcasts
Or
Are you building AI models and systems? Then you need to understand AI ethics! In this episode of Two Voice Devs, Allen Firstenberg welcomes Parul, a Senior Production Engineer at Meta, to dive deep into the world of AI ethics. Learn why fairness and bias are critical considerations for developers, and discover practical techniques to mitigate bias in your AI systems.
Parul shares her experiences and passion for AI ethics, detailing how biases in training data and system design can lead to unfair or even harmful outcomes. This episode provides concrete examples, actionable advice, and valuable resources for developers who want to build more ethical and equitable AI.
More Info:
* Fairlearn: https://fairlearn.org/
* AIF360: https://aif360.readthedocs.io/en/stable/
* what-if tool: https://pair-code.github.io/what-if-tool/
Timestamps:
00:00:00 Introduction
00:00:20 Guest Introduction: Parul, Meta
00:02:22 What is AI Ethics?
00:06:13 Why is AI Ethics Important?
00:08:15 AI Systems vs. AI Models
00:09:52 Examples of Bias in AI Systems
00:12:23 Minimizing Biases: Developer Responsibility
00:14:53 Tips for Minimizing Unfairness and Biases
00:19:40 Fairness Constraints: Demographic Parity
00:23:17 The Bigger Picture: Roles & Responsibilities
00:29:23 Monitoring: Bias Benchmarks
00:32:00 Open Source Frameworks for AI Ethics
00:34:02 Call to Action & Closing
#AIethics #Fairness #Bias #MachineLearning #ArtificialIntelligence #Developers #OpenSource #EthicalAI #TwoVoiceDevs #TechPodcast #DataScience #AIdevelopment
1
11 ratings
Are you building AI models and systems? Then you need to understand AI ethics! In this episode of Two Voice Devs, Allen Firstenberg welcomes Parul, a Senior Production Engineer at Meta, to dive deep into the world of AI ethics. Learn why fairness and bias are critical considerations for developers, and discover practical techniques to mitigate bias in your AI systems.
Parul shares her experiences and passion for AI ethics, detailing how biases in training data and system design can lead to unfair or even harmful outcomes. This episode provides concrete examples, actionable advice, and valuable resources for developers who want to build more ethical and equitable AI.
More Info:
* Fairlearn: https://fairlearn.org/
* AIF360: https://aif360.readthedocs.io/en/stable/
* what-if tool: https://pair-code.github.io/what-if-tool/
Timestamps:
00:00:00 Introduction
00:00:20 Guest Introduction: Parul, Meta
00:02:22 What is AI Ethics?
00:06:13 Why is AI Ethics Important?
00:08:15 AI Systems vs. AI Models
00:09:52 Examples of Bias in AI Systems
00:12:23 Minimizing Biases: Developer Responsibility
00:14:53 Tips for Minimizing Unfairness and Biases
00:19:40 Fairness Constraints: Demographic Parity
00:23:17 The Bigger Picture: Roles & Responsibilities
00:29:23 Monitoring: Bias Benchmarks
00:32:00 Open Source Frameworks for AI Ethics
00:34:02 Call to Action & Closing
#AIethics #Fairness #Bias #MachineLearning #ArtificialIntelligence #Developers #OpenSource #EthicalAI #TwoVoiceDevs #TechPodcast #DataScience #AIdevelopment
350 Listeners
3 Listeners