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Data ScienceAdvanced

Generative AI Models and Transformer Networks Certification

This specialization provides a hands-on pathway to mastering Generative AI techniques from foundational architectures to cutting-edge deployment strategies....

By Simplilearn on Coursera

About This Course

This specialization provides a hands-on pathway to mastering Generative AI techniques from foundational architectures to cutting-edge deployment strategies. Learn to build and train Autoencoders, VAEs, and GANs using TensorFlow to generate synthetic data and realistic outputs. Dive into attention mechanisms and Transformer models powering GPT and BERT. Apply RAG for improved accuracy and analyze emerging GenAI trends to create industry-ready solutions. By the end of this program, you will be able to: - Train Generative Models: Build and evaluate VAEs and GANs using real-world data - Generate Synthetic Data: Use VAEs and GANs to create images and other outputs - Apply Transformer Models: Leverage attention mechanisms in models like GPT and BERT - Improve Output Accuracy: Use Retrieval Augmented Generation (RAG) for enhanced results - Deploy GenAI Solutions: Translate emerging model trends into industry-ready applications Ideal for developers, ML engineers, and AI enthusiasts exploring next-gen model development.

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Frequently Asked Questions

How much does Generative AI Models and Transformer Networks Certification cost?

Generative AI Models and Transformer Networks Certification costs $49. Check the course page for current pricing and available discounts.

Who teaches Generative AI Models and Transformer Networks Certification?

Generative AI Models and Transformer Networks Certification is taught by Simplilearn, Simplilearn.

What skill level is Generative AI Models and Transformer Networks Certification for?

This course is designed for advanced learners.

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$49.00
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Students0
DurationSelf-paced
LevelAdvanced
Languageen
PlatformCoursera
InstructorSimplilearn