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Genetic Algorithms, Vaes & Gans In Dnns- An Introduction - Panter - 18.07.2022 ![]() Genetic Algorithms, Vaes & Gans In Dnns- An Introduction Last updated 7/2022 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz Language: English | Size: 5.97 GB | Duration: 5h 1m Genetic Algorithms, Variational AutoEncoders, RL, Generative Adversarial Networks & Bayesian Statistics in Deep Learning What you'll learn Introduction to Genetic Algorithms Implementation of Genetic Algorithms in Python Generative Adversarial Networks & Variational Auto-encoders (VAEs) Introduction to Statistical Inference using Bayesian Networks Genetic Algorithms for Hyper- Parameters Optimisation Introduction to Reinforcement Learning & Implementation in Python Requirements No prior experience required Description This course will provide a prospect for participants to establish or progress their considerate on the Genetic Algorithms, GANs and Variational Auto- encoders and their implementation in Python framework. This course encompasses algorithm processes, approaches, and application dimensions.Genetic algorithm which reflects the process of natural selection though selection of fittest individuals is explained thoroughly. Further its implementation in Python Library is exhibited step- wise. Similarly, Generative Adversarial Networks, or GANs for short, are introduced as an approach to generative modelling. Generative modelling is explained as an unsupervised learning task to generate or output new examples that plausibly could have been drawn from the original dataset. Both the Generator and Discriminator modules are explained in Depth. The two models are explained together in a zero-sum game, adversarial, until the discriminator model is fooled about half the time, meaning the generator model is generating plausible examples.The course introduces elements of the research process within quantitative, qualitative, and mixed methods domains. Participants will use these underpinnings to begin to critically understand design thinking and its large-scale optimization. They would be able to develop an understanding to formulate a research question and answer it by framing an effective research methodology based on suitable methodologies. Furthermore, they would learn to derive meaningful inferences and to put them together in the form of a quality research paper. In the last few years, deep learning based generative models have gained more and more interest due to (and implying) some amazing improvements in the field. Relying on huge amount of data, well-designed networks architectures and smart training techniques, deep generative models have shown an incredible ability to produce highly realistic pieces of content of various kind, such as images, texts and sounds. Among these deep generative models, two major families stand out and deserve a special attention: Generative Adversarial Networks (GANs) and Variational Autoencoders (VAEs).The key topics covered in this course are;1. An Introduction to Genetic Algorithms.2. Implementation of Genetic Algorithms in Python using case examples. 3. Framing a hypothesis based on the nature of the study.4. An Introduction to Generative Adversarial Networks (GANs). 5. Implementations of GANs in Python. 6. Meta-Analysis & Large Scale Graph Mining.7. Design Thinking Using Immersion and Sense-Making.8. An Introduction to Reinforcement Learning Algorithms in Deep Learning. 9. An Introduction Bayesian Statistical Inferences. 10. An Introduction to Autoencoders.11. Concept of latent space in Variational Auto- Encoders (VAEs).12. Regularisation and to generate new data from VAEs. Overview Section 1: Genetic Algorithms- An Introduction Lecture 1 Introduction to Genetic Algorithms Lecture 2 Basic Components of Genetic Algorithm Lecture 3 NLP IN CUTTING EDGE RESEARCH Section 2: Novel Search in Genetic Algorithms (GAs) Lecture 4 Novelty Search in GAs Section 3: PyGAD- Python Library for Genetic Algorithms Lecture 5 PyGAD for Genetic Algorithms- Python Package Section 4: Implementation of Genetic Algorithms Lecture 6 Python Implementation of Genetic Algorithms Section 5: Fundamentals of Variational Auto- Encoders (VAEs) Lecture 7 Building Blocks of Variational Auto- Encoders Section 6: Introduction to Generative Adversarial Networks (GANs) Lecture 8 What are GANs- Part I Lecture 9 What are GANs- Part II Lecture 10 How GANs work? Section 7: Python Implementation of GANs Lecture 11 Implementation of GANs in Python Framework Section 8: Introduction to Bayesian Statistical Inference Lecture 12 Bayesian Networks Section 9: Introduction to Reinforcement Learning Lecture 13 Fundamentals of Reinforcement Learning- Part I Lecture 14 Fundamentals of Reinforcement Learning- Part II Section 10: Research Algorithms- Research Dimensions Lecture 15 Optimization through Graph Theory In Deep Learning Lecture 16 How to use large scale graphs using Google analytics Lecture 17 Understanding The Research Terminology & Research Process Lecture 18 Research Ethics and Integrity Lecture 19 Research Thinking From Creativity to Innovation Lecture 20 Qualitative Research and Methods Lecture 21 Quantitative Research and its Types Lecture 22 Random, Stratified, Systematic and Clustered Sampling Techniques Lecture 23 Mixed Methods and their research implications Lecture 24 Why use RCTs for Trials in Research Section 11: Publishing Research: Research Paper Writing Lecture 25 Advanced Research Techniques including machine learning approaches Lecture 26 Why systematic Review and Meta Analysis is important for Evidence based studies Lecture 27 How a research topic is to be selected Lecture 28 Selection of a Research Journals for Publishing Lecture 29 How to prepare a paper/ manuscript for publication? Lecture 30 Students would learn about Informed Consent & Competitive Interests Lecture 31 Moving Averages, Dynamic Moving Averages and Momentum Lecture 32 Why its imperative to understand disruptive innovation cycle Lecture 33 Key differences between different hashing algorithms Section 12: Graph Neural Networks Lecture 34 Introduction to GNNs Lecture 35 Large Language Algorithms Lecture 36 Transformer Algorithms for NLP Section 13: Kernel Algorithms Lecture 37 Introduction to Kernel Algorithms Computer science, engineering and research students involved in basic and applied modelling using Algorithms,Beginners who want to keep themselves abreast with leading algorithms ![]() Download from RapidGator Download from Rapidgator: Download from Keep2Share |