AI Masterclass + ChatGPT Prize
Discover the process of developing and executing a Hybrid Intelligent System that integrates the most recent developments in evolutionary algorithms, deep learning, and artificial intelligence.
Description for AI Masterclass + ChatGPT Prize
Developing a Hybrid Intelligent System: Discover the process of creating a robust Hybrid Intelligent System that integrates a variety of sophisticated AI models to achieve optimal performance.
AI Models Included: Comprehensive coverage of fundamental models, including Fully-Connected Neural Networks, Convolutional Neural Networks, and Recurrent Neural Networks, as well as more sophisticated models like Variational AutoEncoders and Mixture Density Networks.
Reinforcement Learning & Evolutionary Techniques: Develop a proficiency in deep reinforcement learning, policy gradients, genetic algorithms, and evolution strategies, including Covariance-Matrix Adaptation Evolution Strategies (CMA-ES).
**Advanced AI Techniques: Enhance your AI development abilities by investigating cutting-edge topics such as Meta Learning, Deep NeuroEvolution, and other advanced AI methods.
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 4
Offered by: On Udemy provided by Ligency Team
Duration: 12h 3m
Schedule: Full Lifetime Access
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