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שתתחיל
מתחיל 5 June 2026 09:36
נגמר 5 June 2026
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ימים
00
שעות
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דקות
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שניות
35 minutes
שדרוג אופציונלי זמין
Not Specified
התקדמות בקצב שלך
Free Video
שדרוג אופציונלי זמין
סקירה כללית
Explore how Elixir and Erlang can be leveraged to build unbiased machine learning systems, addressing algorithmic discrimination and promoting fairness in AI development.
סילבוס
- Introduction to Elixir and Erlang
- Basics of Machine Learning
- Algorithmic Bias in Machine Learning
- Leveraging Elixir and Erlang for ML
- Building Unbiased ML Systems
- Developing Fair AI Applications
- Practical Projects and Case Studies
- Future Directions in AI Justice
- Course Review and Final Project
Brief history and evolution
Key features and benefits in AI development
Comparison with other programming languages in the AI landscape
Core concepts and terminologies
Overview of common ML algorithms
Evaluation metrics and model performance
Understanding bias and discrimination in AI systems
Case studies of biased AI models
Impact of biased algorithms on society
Concurrency and fault tolerance in AI systems
Integration with machine learning libraries and frameworks
Real-time data processing and analysis
Techniques for identifying and mitigating bias
Fairness-aware algorithms and model adjustments
Tools for bias detection and correction in Elixir and Erlang
Best practices for ethical AI development
Ensuring transparency and accountability in AI systems
Incorporating diverse datasets and perspectives
Hands-on projects using Elixir and Erlang
Analysis of the effectiveness of bias mitigation strategies
Discussion of real-world applications promoting AI fairness
Emerging trends in AI fairness and ethics
Policy and regulatory frameworks for AI development
The role of technology in fostering social justice
Summary of key learnings
Presentation and critique of final projects
Discussion of potential career paths and impacts in AI ethics and fairness
נושאים
Programming