A Primer To The 42 Most Commonly Used Machine Learning Algorithms With Code Samples


Download A Primer To The 42 Most Commonly Used Machine Learning Algorithms With Code Samples PDF/ePub or read online books in Mobi eBooks. Click Download or Read Online button to get A Primer To The 42 Most Commonly Used Machine Learning Algorithms With Code Samples book now. This website allows unlimited access to, at the time of writing, more than 1.5 million titles, including hundreds of thousands of titles in various foreign languages.

Download

A Primer to the 42 Most Commonly Used Machine Learning Algorithms


A Primer to the 42 Most Commonly Used Machine Learning Algorithms

Author: Murad Durmus

language: en

Publisher:

Release Date: 2023


DOWNLOAD





A Primer to the 42 Most commonly used Machine Learning Algorithms (With Code Samples)


A Primer to the 42 Most commonly used Machine Learning Algorithms (With Code Samples)

Author: Murat Durmus

language: en

Publisher: Murat Durmus

Release Date: 2023-02-01


DOWNLOAD





Would you like a quick, profound overview of the most popular machine-learning algorithms? Then this is the book for you.! (This book is also suitable for Beginners) This book introduces you to the 42 most commonly used machine learning algorithms in an understandable way. Each algorithm is also demonstrated with a simple code example in Python. About the Author Murat Durmus is CEO and founder of AISOMA (a Frankfurt am Main (Germany) based company specializing in AI-based technology development and consulting) and Author of the book "Mindful AI - Reflections on Artificial Intelligence" and "INSIDE ALAN TURING." The following algorithms are covered in this book: • ADABOOST • ADAM OPTIMIZATION • AGGLOMERATIVE CLUSTERING • ARMA/ARIMA MODEL • BERT • CONVOLUTIONAL NEURAL NETWORK • DBSCAN • DECISION TREE • DEEP Q-LEARNING • EFFICIENTNET • FACTOR ANALYSIS OF CORRESPONDENCES • GAN • GMM • GPT-3 • GRADIENT BOOSTING MACHINE • GRADIENT DESCENT • GRAPH NEURAL NETWORKS • HIERARCHICAL CLUSTERING • HIDDEN MARKOV MODEL (HMM) • INDEPENDENT COMPONENT ANALYSIS • ISOLATION FOREST • K-MEANS • K-NEAREST NEIGHBOUR • LINEAR REGRESSION • LOGISTIC REGRESSION • LSTM • MEAN SHIFT • MOBILENET • MONTE CARLO ALGORITHM • MULTIMODAL PARALLEL NETWORK • NAIVE BAYES CLASSIFIERS • PROXIMAL POLICY OPTIMIZATION • PRINCIPAL COMPONENT ANALYSIS • Q-LEARNING • RANDOM FORESTS • RECURRENT NEURAL NETWORK • RESNET • SPATIAL TEMPORAL GRAPH CONVOLUTIONAL NETWORKS • STOCHASTIC GRADIENT DESCENT • SUPPORT VECTOR MACHINE • WAVENET • XGBOOST

A Hands-On Introduction to Essential Python Libraries and Frameworks (With Code Samples)


A Hands-On Introduction to Essential Python Libraries and Frameworks (With Code Samples)

Author: Murat Durmus

language: en

Publisher: Murat Durmus

Release Date: 2023-03-02


DOWNLOAD





Essential Python libraries and frameworks that every aspiring data scientist, ML engineer, and Python developer should know. "Python is not just a language, it's a community where developers can learn, collaborate and create wonders." ~ Guido van Rossum (Creator of Python)