Generative AI is an exciting and rapidly growing field of artificial intelligence that focuses on creating new data similar to existing datasets. This course introduces participants to the fundamental concepts, techniques, and tools required to build and implement generative models. Students will explore various approaches such as Generative Adversarial Networks (GANs), Variational Autoencoders (VAEs), and Diffusion models. The course strikes a balance between theoretical knowledge and practical implementation, providing participants with hands-on experience in developing and deploying generative models in real-world scenarios.
Pre-Requisites:
- Basic knowledge of computer operations
- Familiarity with high-school level mathematics (basic algebra, probability)
- Basic understanding of programming, preferably in Python
Key Learning Outcomes:
By the end of this course, participants will:
- Understand the foundational concepts of Generative AI and its various applications, including image generation, text generation, and data augmentation.
- Be able to differentiate between various generative models such as Generative Adversarial Networks (GANs), Variational Autoencoders (VAEs), and Diffusion models.
- Gain hands-on experience in implementing and experimenting with basic generative models using Python and popular AI frameworks like TensorFlow and PyTorch.
- Learn how to evaluate and fine-tune generative models for specific tasks, such as image creation or text synthesis.
- Understand ethical considerations and challenges associated with Generative AI, such as bias, misinformation, and content manipulation.
Target Audience:
- Beginners who are interested in AI and its generative capabilities
- Students and professionals from non-technical backgrounds looking to gain foundational knowledge in Generative AI
- Individuals interested in enhancing their skills for career opportunities in AI
Test & Evaluation:
- Assignments: Throughout the course, participants will complete practical assignments to reinforce learning.
- Final Assessment: A final evaluation will be conducted to assess participants’ understanding and application of course material.
Certification:
- Successful participants will receive a Certificate of Completion.
- A Project Letter will be awarded upon the successful completion of the project.
- Students who leave the course midway or do not complete it will not receive any certification.
Delivery Mode & Duration:
- Mode: Online Live Sessions
- Duration: 120 Hours (60 Hours of Online Live Sessions + 60 Hours of Assignments)