BOOKS - Statistics and Data Visualization in Climate Science with R and Python
Statistics and Data Visualization in Climate Science with R and Python - Samuel S. P. Shen, Gerald R. North 2023 PDF Cambridge University Press BOOKS
ECO~18 kg CO²

1 TON

Views
17092

Telegram
 
Statistics and Data Visualization in Climate Science with R and Python
Author: Samuel S. P. Shen, Gerald R. North
Year: 2023
Pages: 415
Format: PDF
File size: 35.5 MB
Language: ENG



Pay with Telegram STARS
Book Description: The book "Statistics and Data Visualization in Climate Science with R and Python" provides an overview of the most important statistical techniques used in climate science research and their practical implementation using R and Python programming languages. The book covers topics such as data visualization, time series analysis, regression analysis, and machine learning algorithms, all of which are essential tools for understanding and predicting climate change. The book also includes case studies that demonstrate how these techniques can be applied to real-world climate data. The book begins by discussing the importance of statistics and data visualization in climate science research and how they can help us better understand the complex relationships between climate variables. It then delves into the basics of R and Python programming languages and their applications in data analysis. The next chapter covers time series analysis, including trend analysis, spectral analysis, and forecasting methods. This is followed by a discussion on regression analysis, including linear regression, logistic regression, and decision trees. The book also covers machine learning algorithms, including neural networks, support vector machines, and clustering algorithms. The final chapters focus on data visualization, including scatter plots, bar charts, histograms, and heat maps. The book concludes with a case study that demonstrates how these techniques can be applied to real-world climate data to analyze and predict climate phenomena such as El Nio and La Nia events. Throughout the book, the authors emphasize the need to develop a personal paradigm for perceiving the technological process of developing modern knowledge. They argue that this is essential for survival in a warring state and for the unification of people.
''

You may also be interested in:

Statistics for Health Data Science: An Organic Approach
Statistics Applied with the R Commander Data Analysis Is (Not) an Art
Statistics Informed Decisions Using Data, Global Edition
Advances in Business Statistics, Methods and Data Collection
Statistics With R Solving Problems Using Real-World Data
SPSS Data Analysis for Univariate, Bivariate, and Multivariate Statistics
Financial Data Analytics with Machine Learning, Optimization and Statistics
Financial Data Analytics with Machine Learning, Optimization and Statistics
An Introduction to Secondary Data Analysis with IBM SPSS Statistics
Statistics for Biomedical Engineers and Scientists How to Analyze and Visualize Data
Climate Observations Data Quality Control and Time Series Homogenization
TIBCO Spotfire: A Comprehensive Primer: Building enterprise-grade data analytics and visualization solutions, 2nd Edition
Advanced Analytics with Power BI and Excel Learn Powerful Visualization and Data Analysis Techniques Using Microsoft BI Tools along with Python and R
Python Programming: An Introductory Guide for Accounting and Finance (Machine Learning, Financial Analysis, Data Visualization, Automation and More)
Advanced Analytics with Power BI and Excel Learn Powerful Visualization and Data Analysis Techniques Using Microsoft BI Tools along with Python and R
Statistics for Ecologists Using R and Excel Data Collection, Exploration, Analysis and Presentation
R Cookbook Proven Recipes for Data Analysis, Statistics, and Graphics Second Edition
Introduction to Statistics: An Intuitive Guide for Analyzing Data and Unlocking Discoveries
Improving Business Statistics Through Interagency Data Sharing: Summary of a Workshop
Federal Statistics, Multiple Data Sources, and Privacy Protection: Next Steps
Innovations in Federal Statistics: Combining Data Sources While Protecting Privacy
Modern Statistics with R From Wrangling and Exploring Data to Inference and Predictive Modelling Second Edition
Simplifying Statistics for Graduate Students: Making the Use of Data Simple and User-Friendly
Statistics and Data Analysis for Engineers and Scientists (Transactions on Computer Systems and Networks)
Machine Learning for Signal Processing Data Science, Algorithms, and Computational Statistics
Modern Statistics with R From Wrangling and Exploring Data to Inference and Predictive Modelling Second Edition
Learning Data Science Programming and Statistics Fundamentals Using Python (7th Early Release)
Statistics Slam Dunk Statistical analysis with R on real NBA data (Final Release)
Statistics Slam Dunk Statistical analysis with R on real NBA data (Final Release)
Mastering Matplotlib with Python for Developers Effective techniques for data visualization with Python
Mastering Matplotlib with Python for Developers Effective techniques for data visualization with Python
Data Visualization for Social and Policy Research: A Step-by-Step Approach Using R and Python
Excel BI and Dashboards in 7 Days Build interactive dashboards for powerful data visualization and insights
Excel BI and Dashboards in 7 Days Build interactive dashboards for powerful data visualization and insights
Fake Science Exposing the Left|s Skewed Statistics, Fuzzy Facts, and Dodgy Data
Excel BI and Dashboards in 7 Days: Build interactive dashboards for powerful data visualization and insights (English Edition)
Trends and Challenges in Categorical Data Analysis: Statistical Modelling and Interpretation (Statistics for Social and Behavioral Sciences)
Machine Learning for Business How to Build Artificial Intelligence through Concepts of Statistics, Algorithms, Analysis, and Data Mining
Applied Univariate, Bivariate, and Multivariate Statistics Using Python A Beginner|s Guide to Advanced Data Analysis
Hierarchical Modeling and Analysis for Spatial Data (Chapman and Hall CRC Monographs on Statistics and Applied Probability)