Advertisement

Faster previews. Personalized experience. Get started with a FREE account.
Data Structures & Algorithms in Kotlin

Data Structures & Algorithms in Kotlin

by Ajit, Irina Galata, Matie Suica, Tutorial Team, raywenderlich
424 Pages · 2019 · 25  MB · 42 Downloads · New!
" Happiness doesn't result from what we get, but from what we give. ” ― Ben Carson
Hands-On Convolutional Neural Networks with TensorFlow
by Iffat Zafar, Giounona Tzanidou, Richard Burton, Nimesh Patel, Leonardo Araujo
272 Pages · 2015 · 18 MB · 4,545 Downloads · New!
The “Hands-On Convolutional Neural Networks with TensorFlow: Solve computer vision problems with modeling in TensorFlow and Python” is a great book for those who want to use Convolutional Neural Networks for solving real-world problems. Iffat Zafar, Giounona Tzanidou, Richard Burton, Nimesh Patel, and Leonardo Araujo are the authors of this great book. Convolutional Neural Networks are the most popular architectures used in computer vision apps. This book will guide the readers on how to train machine learning models with TensorFlow.
Mastering Machine Learning Algorithms
by Giuseppe Bonaccorso
798 Pages · 2020 · 15 MB · 1,546 Downloads · New!
Mastering Machine Learning Algorithms is the design, machine theory, programming algorithm, and data modeling book that teaches students to master machine learning. Giuseppe Bonaccorso is the author of this remarkable book. It is an updated, revised, and new edition of the book that is based on research. He is the bestselling author in the New York Times. This book brings an opportunity to master and explore the most essential algorithms for solving complex machine learning challenges. Learn about the latest algorithms and how you can use them for the betterment of humanity. It briefly describes cutting edge applications, time series analysis, regression analysis, and deep learning models.
Statistics, Data Analysis, and Decision Modeling
by James R. Evans
552 Pages · 2012 · 13.6 MB · 59 Downloads · New!
“Statistics, Data Analysis, and Decision Modeling 5th Edition” is a great book on data modeling. This book applies real-world scenarios to the concepts presented, which brings the concepts much “closer to home.” James R. Evans is the author of this book. It focuses on the practical understanding of its topics, allowing readers to develop conceptual insight on fundamental techniques and theories. The book is pretty easy to follow and doesn’t get too boring. The concepts of the book help people who are not major in statistic a lot. It uses simple words and some example to help people to understand the concepts in the book. It states a lot of formulas in a way that it expects you to know how to solve them. However, it is very useful in that it comes with an online subscription and excel content that can be downloaded online. Overall it is challenging book, but you will learn from it.
Python Feature Engineering Cookbook
by Soledad Galli
372 Pages · 2015 · 6 MB · 34 Downloads · New!
The “Python Feature Engineering Cookbook: Over 70 recipes for creating, engineering, and transforming features to build machine learning models” is a great book for machine learning professionals, AI engineers and data scientists. Soledad Galli is the author of this data mining book. Soledad Galli is a lead data scientist with more than 10 years of experience in world-class academic institutions and renowned business. She has researched, developed and out into production machine learning models for insurance claims, and fraud prevention. In this book, the author uncovers the end-to-end feature engineering process across continuous, discrete and unstructured datasets. So, you will work with the best tools to streamline and improve the quality of your code. Additionally, Soledad Galli covers the Python recipes that will help you automate feature engineering to simplify complex processes. With the help of this book, you will also get to grips with different feature engineering strategies, like power transform, log transform across machine learning, etc. To sum it up, Python Feature Engineering Cookbook is a must-read book for all the Python developers.
Hands-On Simulation Modeling with Python
by Giuseppe Ciaburro
346 Pages · 2020 · 7 MB · 52 Downloads · New!
Hands-On Simulation Modeling with Python is the computer simulation, python development, and data modeling book that describes essential tips to create prototypes. Giuseppe Ciaburro is the author of this remarkable book. It is a comprehensive guide for model designers, simulation developers, and engineers. Get ready to learn the latest computational methods that let user study the behavior of systems. It is time to explore the latest simulation techniques such as statistical simulation and Monte Carlo methods. Giuseppe provides a whole overview of the different types of simulation models. What is the best way to work with continuous distributions and discrete? Get a complete overview of the data generation process and randomness. What is the best way to simulate random walks? How to generate maximum productivity in real-life applications through optimization methods. What are resampling methods and how you can use them to optimize your work? Get ready to create digital prototypes that will assist you to analyze the performance of physical models. What is the importance of python to expert all these functionalities? Discover the key algorithms that guides students step by step in the whole process.
Learning Jupyter 5
by Dan Toomey
282 Pages · 2018 · 9 MB · 35 Downloads · New!
Learning Jupyter 5 is the programming, Java programming, design, and data modeling book that contains tips and techniques to master advanced coding. Dan Toomey is the author of this fascinating book. He is working on developing software for the last twenty years. This guide brings an opportunity for the people to generate and share explanatory text, equations, and live code with the help of a web browser or a single document. Learn, how to use Jupyter 5x features like stylish table and cell tagging. It is time to explore various notebook servers all around the world. Use the python packages to leverage big data tools along with databases. This is a typical tool that mostly used in machine learning, statistical modeling, transformation, and numerical simulation. It teaches students that how to integrate with the Jupyter system by adopting multiple programming languages like Julia, JavaScript, Python, and R. Become master on installing and running the Jupyter on your machine with easy to follow strategies. Learn how to visualize data in real-time and use interactive widgets to execute the whole process. You can easily share your notebook with colleagues to work with you. It makes it easy for the Jupyter to access data just in few clicks.

Advertisement

Advertisement

Advertisement