> > 책 및 참고자료
Learn R Programming

Learn R Programming

게시자 : Narendrayadav
라이선스: 8000

스크린샷:

최소
OS
아키텍처x86,x64,ARM,ARM64
권장
OS
아키텍처x86,x64,ARM,ARM64

설명

######## Learn R Programming ########


This app contains tutorials and reports for the all who want to learn R Programming. They can learn easily from this application.


Following Chapters included in this Application:


#1 Getting started with R Language #2 Variables #3 Arithmetic Operators #4 Matrices #5 Formula #6 Reading and writing strings #7 String manipulation with stringi package #8 Classes #9 Lists #10 Hashmaps #11 Creating vectors #12 Date and Time #13 The Date class #14 Date-time classes (POSIXct and POSIXlt) #15 The character class #16 Numeric classes and storage modes #17 The logical class #18 Data frames #19 Split function #20 Reading and writing tabular data in plain-text files (CSV, TSV, etc.) #21 Pipe operators (%>% and others) #22 Linear Models (Regression) #23 data.table #24 Pivot and unpivot with data.table #25 Bar Chart #26 Base Plotting #27 boxplot #28 ggplot2 #29 Factors #30 Pattern Matching and Replacement #31 Run-length encoding #32 Speeding up tough-to-vectorize code #33 Introduction to Geographical Maps #34 Set operations #35 tidyverse #36 Rcpp #37 Random Numbers Generator #38 Parallel processing #39 Subsetting #40 Debugging #41 Installing packages #42 Inspecting packages #43 Creating packages with devtools #44 Using pipe assignment in your own package %<>% How to ? #45 Arima Models #46 Distribution Functions #47 Shiny #48 spatial analysis #49 sqldf #50 Code profiling #51 Control flow structures #52 Column wise operation #53 JSON #54 RODBC #55 lubridate #56 Time Series and Forecasting #57 strsplit function #58 Web scraping and parsing #59 Generalized linear models #60 Reshaping data between long and wide forms #61 RMarkdown and knitr presentation #62 Scope of variables #63 Performing a Permutation Test #64 xgboost #65 R code vectorization best practices #66 Missing values #67 Hierarchical Linear Modeling #68 *apply family of functions (functionals) #69 Text mining #70 ANOVA #71 Raster and Image Analysis #72 Survival analysis #73 Fault-tolerant/resilient code #74 Reproducible R #75 Fourier Series and Transformations #76 .Rprofile #77 dplyr #78 caret #79 Extracting and Listing Files in Compressed Archives #80 Probability Distributions with R #81 R in LaTeX with knitr #82 Web Crawling in R #83 Creating reports with RMarkdown #84 GPU-accelerated computing #85 heatmap and heatmap.2 #86 Network analysis with the igraph package #87 Functional programming #88 Get user input #89 Spark API (SparkR) #90 Meta Documentation Guidelines #91 Input and output #92 I/O for foreign tables (Excel, SAS, SPSS, Stata) #93 I/O for database tables #94 I/O for geographic data (shapefiles, etc.) #95 I/O for raster images #96 I/O for R's binary format #97 Recycling #98 Expression parse + eval #99 Regular Expression Syntax in R #100 Regular Expressions (regex) #101 Combinatorics #102 Solving ODEs in R #103 Feature Selection in R -- Removing Extraneous Features #104 Bibliography in RMD #105 Writing functions in R #106 Color schemes for graphics #107 Hierarchical clustering with hclust #108 Random Forest Algorithm #109 RESTful R Services #110 Machine learning #111 Using texreg to export models in a paper-ready way #112 Publishing #113 Implement State Machine Pattern using S4 Class #114 Reshape using tidyr #115 Modifying strings by substitution #116 Non-standard evaluation and standard evaluation #117 Randomization #118 Object-Oriented Programming in R #119 Coercion #120 Standardize analyses by writing standalone R scripts #121 Analyze tweets with R #122 Natural language processing #123 R Markdown Notebooks (from RStudio) #124 Aggregating data frames #125 Data acquisition #126 R memento by examples #127 Updating R version


피플 추천

리뷰

물품

약 Learn R Programming
Advertisement
최고 평점 게임
We use cookies and other technologies on this website to enhance your user experience.
By clicking any link on this page you are giving your consent to our Privacy Policy and Cookies Policy.