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शुरू होता है 4 June 2026 17:15
समाप्त होता है 4 June 2026
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17 minutes
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Free Video
वैकल्पिक अपग्रेड उपलब्ध है
अवलोकन
Explore GANs for synthetic data generation to overcome data scarcity, preserve privacy, and enhance machine learning model training across various domains.
पाठ्यक्रम
- Introduction to Generative Adversarial Networks (GANs)
- Understanding the Need for Synthetic Data
- Fundamentals of GAN Models
- Implementing GANs for Synthetic Data Generation
- Advanced GAN Techniques
- Use Cases and Applications of Synthetic Data
- Evaluating the Quality of Synthetic Data
- Addressing Ethical and Privacy Concerns
- Future Trends and Developments in GANs and Synthetic Data
- Final Project
Overview of GAN architecture
The adversarial process: Generator vs. Discriminator
History and development of GANs
Data scarcity challenges in machine learning
Advantages of synthetic data in preserving privacy
Use cases and applications across industries
Variants of GANs: DCGAN, CGAN, WGAN, etc.
Key components and algorithms
Evaluation metrics for GAN-generated data
Tools and libraries for GAN development (e.g., TensorFlow, PyTorch)
Hands-on lab: Building a simple GAN
Improving GAN stability and convergence
Techniques for enhancing the quality of generated data
Semi-supervised and conditional GANs
Healthcare: Anonymizing patient data
Autonomous vehicles: Augmenting training datasets
Finance: Synthetic transaction datasets for analysis
Statistical similarity measures
Fidelity and diversity of generated data
Practical methods for testing and validating synthetic datasets
Ethical considerations in synthetic data generation
Ensuring privacy with synthetic data
Regulatory and compliance issues
Emerging GAN architectures
Integration with other AI and deep learning technologies
Innovations and future research directions
Designing a GAN-based solution for real-world data challenges
Presentation and peer review of project outcomes
विषय
Data Science