Call Number (LC) | Title | Results |
---|---|---|
QA276.45.P9 | Modern statistics : a computer-based approach with Python / | 1 |
QA276.45.P98 | Statistics and data visualisation with Python / | 1 |
QA276.45.P98 D46 2021 | Applied univariate, bivariate, and multivariate statistics using Python / | 1 |
QA276.45.P98 D465 2021 | Applied Univariate, Bivariate, and Multivariate Statistics Using Python A Beginner's Guide to Advanced Data Analysis. | 1 |
QA276.45.R3 |
Statistical data cleaning with applications in R / R PROGRAMMING FOR ACTUARIAL SCIENCE Multiple factor analysis by example using R / Automated trading with R : quantitative research and platform development / DATA SCIENCE a first introduction with python. QCA with R : a comprehensive resource / MODERN STATISTICS WITH R from wrangling and exploring data to inference and predictive modelling. Gráficos estadísticos y mapas con R R for Microsoft Excel users : making the transition for statistical analysis / R 4 quick syntax reference : a pocket guide to the language, API's and library / Graphing data with R : an introduction / Expert data wrangling with R : streamline your work with tidyr, dplyr, and ggvis / Advanced R programming. Data analysis with R : load, wrangle, and analyze your data using the world's most powerful statistical programming language / Sams teach yourself R in 24 hours / Functional programming in R : advanced statistical programming for data science, analysis and finance / Modern optimization with R / Multistate analysis of life histories with R / Advanced R : data programming and the cloud / An introduction to data analysis using aggregation functions in R / Data wrangling with R / Using the R commander : a point-and-click interface for R / R Data Science Quick Reference : a Pocket Guide to APIs, Libraries, and Packages / Advanced deep learning with R : become an expert at designing, building, and improving advanced neural network models using R / Data science : a first introduction / R FOR DATA SCIENCE import, tidy, transform, visualize, and model data. A course in statistics with R / Deep learning with R in motion / Practical data science with R : video edition / Practical R 4 applying R to data manipulation, processing and integration / Advanced R 4 data programming and the cloud using PostgreSQL, AWS, and Shiny / Advanced Object-Oriented Programming in R : Statistical Programming for Data Science, Analysis and Finance / Practical R 4 : applying R to data manipulation, processing and integration / Data visualization in R with ggplot2 : creating effective and attractive data visualizations / Functional programming in R 4 : advanced statistical programming for data science, analysis, and finance / R quick syntax reference / Beginning R : an introduction to statistical programming / The essential R reference / Random forests with R R FOR STATISTICS. Statistical inference via data science : a ModernDive into R and the Tidyverse / R yu yan bian cheng zhi nan = Learning R programming / Liang hua jin rong R yu yan chu ji jiao cheng = Introduction to R for quantitative finance / Gai lü tu mo xing : ji yu R yu yan = Learning probabilistic graphical models in R / R da shu ju fen xi shi yong zhi nan = Big data analytics with R / Shen du xue xi shi zhan shou ce : R yu yan ban = R deep learning cookbook / Advanced R / R data structures and algorithms : increase speed and performance of your applications with efficient data structures and algorithms / R für Data Science : Daten importieren, bereinigen, umformen und visualisieren / R projects for dummies / An introduction to R for quantitative economics : graphing, simulating and computing / Guide to programming and algorithms using R / CRAN recipes DPLYR, Stringr, Lubridate, and RegEx in R / Using R for big data with Spark : hands-on data analytics in the Cloud using Spark, AWS, SparkR, and more / Advanced statistics with applications in R / Bookdown an enhanced version of R Markdown / Shu ju ke xue zhi bian cheng ji shu : shi yong R jin xing shu ju qing li, fen xi yu ke shi hua / R for data science / Advanced R statistical programming and data models : analysis, machine learning, and visualization / Learning probabilistic graphical models in R : familiarize yourself with probabilistic graphical models through real-world problems and illustrative code examples in R / Learning quantitative finance with R : implement machine learning, time-series analysis, algorithmic trading and more / R : predictive analysis : master the art of predictive modeling / R data analysis cookbook : a journey from data computation to data-driven insights / Mastering Spark with R : the complete guide to large-scale analysis and modeling / Applied unsupervised learning with R / Mastering predictive analytics with R : machine learning techniques for advanced models / Statistical application development with R and Python : power of statistics using R and Python / R programming by example : practical, hands-on projects to help you get started with R / A Primer in Biological Data Analysis and Visualization Using R. Statistik mit R Schnelleinstieg : R einfach lernen in 14 Tagen / CRAN recipes : DPLYR, Stringr, Lubridate, and RegEx in R / Advanced R 4 data programming and the cloud : using PostgreSQL, AWS, and Shiny / Writing great R code / Simulation for data science with R : harness actionable insights from your data with computational statistics and simulations using R / Da gui mo shu ju fen xi he jian mo : ji yu Spark yu R = Mastering Spark with R / R jin nang miao ji = R cookbook / R kukku bukku / R deep learning essentials : a step-by-step guide to building deep learning models using TensorFlow, Keras, and MXNet / Shiny R : LiveLessons / Statistical analysis with R essentials / Business case analysis with R : simulation tutorials to support complex business decisions / Introduction to data science with R : manipulating, visualizing, and modeling data with the R language / Text mining with R : a tidy approach / Efficient data processing with R / The R book / R statistics cookbook : over 100 recipes for performing complex statistical operations with R 3.5 / R : kurz & gut / Mastering predictive analytics with R : master the craft of predictive modeling by developing strategy, intuition, and a solid foundation in essential concepts / Machine learning with R : expert techniques for predictive modeling to solve all your data analysis problems / Learning shiny : make the most of R's dynamic capabilities and create web applications with Shiny / R programming / Easy, reproducible report with R / Introduction to Shiny : learn how to build interactive web apps with R, Shiny, and reactive programming / Reproducible research and reports with R Markdown : how to streamline your reporting workflow in R / Big data analytics with R : utilize R to uncover hidden patterns in your big data / R for data science cookbook : over 100 hands-on recipes to effectively solve real-world data problems using the most popular R packages and techniques / R : recipes for analysis, visualization and machine learning : get savvy with R language and actualize projects aimed at analysis, visualization and machine learning / Efficient R programming : a practical guide to smarter programming / Efficient R optimization / Data analysis with R : a comprehensive guide to manipulating, analyzing, and visualizing data in R / Data Analysis Explained. Beginning data science in R 4 : data analysis, visualization, and modelling for the data scientist / Functional data structures in R : advanced statistical programming in R / R-powered Excel for analytics / The R software : fundamentals of programming and statistical analysis / Mastering text mining with R : master text-taming techniques and build effective text-processing applications with R / Practical predictive analytics : back to the future with R, Spark, and more! / Metaprogramming in R : advanced statistical programming for data science, analysis and finance / Machine learning with R cookbook : analyze data and build predictive models / R data analysis projects : build end to end analytics systems to get deeper insights from your data / Data manipulation with R and SQL : building effective, coherent, and streamlined data structures / Machine learning in R : automated algorithms for business analysis : applying K-Means clustering, decision trees, random forests, and neural networks / Hands-on ensemble learning with R : a beginner's guide to combining the power of machine learning algorithms using ensemble techniques / R data analysis without programming : explanation and interpretation / R programming for statistics and data science / Programming skills for data science : start writing code to wrangle, analyze, and visualize data with R / Using R to unlock the value of big data : big data analytics with Oracle R Enterprise and Oracle R Connector for Hadoop / R for marketing research and analytics / R web scraping quick start guide : techniques and tools to crawl and scrape data from websites / Hands-on data science with R : techniques to perform data manipulation and mining to build smart analytical models using R / Hands-on geospatial analysis with R and QGIS : a beginner's guide to manipulating, managing, and analyzing spatial data using R and QGIS 3.2.2 / R programming LiveLessons : fundamentals to advanced / Introduction to R for quantitative finance : solve a diverse range of problems with R, one of the most powerful tools for quantitative finance / R recipes : a problem-solution approach / Mastering R for quantitative finance : use R to optimize your trading strategy and build up your own risk management system / 25 recipes for getting started with R / Hands-on data science for librarians / R für Data Science : Daten importieren, bereinigen, umformen, modellieren und visualisieren / Learn R for applied statistics : with data visualizations, regressions, and statistics / Beginning data science with R / Statistik mit R : eine praxisorientierte Einführung in R / R All-in-One R programming fundamentals / R BOOK R graphics cookbook : practical recipes for visualizing data / Learn R programming / R ultimate 2023 : R for data science and machine learning. VISUALIZING SURVEYS IN R R for data science : import, tidy, transform, visualize, and model data / Understanding and applying basic statistical methods using R / Introduction to R for terrestrial ecology : basics of numerical analysis, mapping, statistical tests and advanced application of R / PROBABILITY with applications and r. |
187 |
QA276.45.R3 A34 2014 |
R Graphs cookbook over 70 recipes for building and customizing publication-quality visualizations of powerful and stunning R graphs / R Graphs cookbook : over 70 recipes for building and customizing publication-quality visualizations of powerful and stunning R graphs / |
2 |
QA276.45.R3 A344 2010 | R in a nutshell / | 1 |
QA276.45.R3 A35 2010 | R in a nutshell / | 1 |
QA276.45.R3 A35 2012 | R in a nutshell / | 1 |
QA276.45.R3 A43 2012 | R by example / | 1 |
QA276.45.R3 A45 2011 | A tiny handbook of R | 1 |
QA276.45.R3 A555 2019eb | Introduction to statistics using R / | 1 |
QA276.45.R3 B43 2017 | Getting started with R : an introduction for biologists. | 1 |
QA276.45.R3 .B533 2014 | R object-oriented programming : a practical guide to help you learn and understand the programming techniques necessary to exploit the full power R / | 1 |
QA276.45.R3 B66 2013 | Analyzing compositional data with R / | 1 |
QA276.45.R3 B73 2008eb | A first course in statistical programming with R / | 1 |
QA276.45.R3 B73 2016eb | A first course in statistical programming with R / | 1 |
QA276.45.R3 B76 2018 |
Business case analysis with R : simulation tutorials to support complex business decisions / Advanced statistics for the behavioral sciences : a computational approach with R / |
2 |
QA276.45.R3 B78 2022 | Spatial sampling with R / | 1 |
QA276.45.R3 C37 2018 | Case study : Titanic. | 1 |