शुरू करने से पहले आपको क्या जानना चाहिए
आप शुरू करें
शुरू होता है 5 June 2026 20:19
समाप्त होता है 5 June 2026
00
दिन
00
घंटे
00
मिनट
00
सेकंड
48 minutes
वैकल्पिक अपग्रेड उपलब्ध है
Not Specified
अपनी गति से आगे बढ़ें
Free Video
वैकल्पिक अपग्रेड उपलब्ध है
अवलोकन
Discover how Causal AI is transforming industries through practical applications, methodologies, and real-world case studies presented by leading researcher Utkarshani Jaimini.
पाठ्यक्रम
- Introduction to Causal AI
- Core Concepts of Causality
- Methodologies for Causal AI
- Real-world Applications in Industries
- Case Studies by Utkarshani Jaimini
- Ethical Considerations and Challenges in Causal AI
- Hands-on Lab Sessions
- Future Trends and Innovations in Causal AI
- Summary and Review
Definition and Overview of Causal AI
Key Differences Between Causal AI and Traditional AI
Importance and Applications in Various Industries
Causal Inference Basics
Causal Graphs and Directed Acyclic Graphs (DAGs)
Counterfactual Reasoning
Data Collection and Preprocessing for Causal Analysis
Causal Discovery Techniques
Tools and Frameworks for Causal AI
Healthcare: Drug Discovery and Patient Treatment Optimization
Finance: Fraud Detection and Risk Management
Marketing: Customer Behavior Analysis and Targeted Advertising
Supply Chain: Demand Forecasting and Inventory Optimization
Successful Implementation of Causal AI in Industry
Lessons Learned and Challenges Encountered
Best Practices for Applying Causal AI
Bias and Fairness in Causal Models
Transparency and Interpretability
Data Privacy and Security Concerns
Setting Up Causal Inference Experiments
Evaluating Causal Models with Real-world Data
Utilizing Popular Causal AI Tools and Libraries
Emerging Research Areas
Potential Industry Disruptions
Integration with Other AI Technologies
Recap of Key Concepts and Applications
Open Discussion and Q&A with Utkarshani Jaimini
विषय
Data Science