Data Science and Machine Learning Data Science and Machine Learning

Data Science and Machine Learning

From data to Knowledge

    • ¥1,100
    • ¥1,100

発行者による作品情報

Extracting knowledge from information through data analysis: the data scientist has been called the most attractive profession of the 21st century. Analyze the relationships between data, discover new information and, thanks to machine learning, exploit the immense potential hidden in it by building predictive models. In this book, we illustrate methods to analyze and manipulate data, and Machine Learning and Deep Learning algorithms to predict information, moving from theoretical knowledge to practical applications with statistical software R, through extensive practical examples



What you will learn

- Mathematics and algebra for machine learning

- Statistics and probability for data science

- Use of the statistical software R and R-Studio

- Data preparation and feature engineering

- Design and validate machine learning algorithms

- Regression, classification and clustering algorithms

- Making predictions based on time series

- The models of neural networks and deep learning

- Data visualization & data storytelling



Who this book is for

This book is for anyone who wants to learn how to manipulate and analyze data by drawing new knowledge from it. If you are an IT manager or an analyst who wants to enter the world of Data Science and Big Data, if you are a developer who wants to know the new trends in the field of Artificial Intelligence or you are simply curious about this world, then this book is for you.



Contents

- Data science and analysis models

- Big data management

- Univariate and multivariate analysis, probability and hypothesis testing

- Exploring and visualizing data

- Data preparation and data cleaning

- Supervised learning: classification and regression

- Unsupervised learning: clustering and dimensionality reduction

- Semi-Supervised Learning

- Association algorithms and time series analysis

- Validation measures and algorithms optimization

- Neural networks and Deep Learning

- Convolutional networks for image recognition

- Recurrent Networks and LSMT for sequences

- Encoders for feature selection

- Generative algorithms

ジャンル
コンピュータ/インターネット
発売日
2021年
12月9日
言語
EN
英語
ページ数
439
ページ
発行者
Michele di Nuzzo
販売元
Michele di Nuzzo
サイズ
5.9
MB
Big Data Analytics Made Easy Big Data Analytics Made Easy
2016年
Practical Machine Learning in R Practical Machine Learning in R
2020年
Fundamentals of Machine Learning for Predictive Data Analytics, second edition Fundamentals of Machine Learning for Predictive Data Analytics, second edition
2020年
Hands-On Machine Learning with R Hands-On Machine Learning with R
2019年
Data Science for Mathematicians Data Science for Mathematicians
2020年
A General Introduction to Data Analytics A General Introduction to Data Analytics
2018年
Data Science e Machine Learning - Seconda Edizione Data Science e Machine Learning - Seconda Edizione
2025年
Intelligenza Artificiale Intelligenza Artificiale
2023年
Deep Learning con Keras e Tensorflow Deep Learning con Keras e Tensorflow
2022年
Machine Learning con Python e Scikit-Learn Machine Learning con Python e Scikit-Learn
2022年
Data Science e Machine Learning Data Science e Machine Learning
2021年