Certificate in R for Accounting Professionals
-- ViewingNowThe Certificate in R for Accounting Professionals is a comprehensive course designed to equip accounting professionals with the essential skills to leverage data analysis using R programming. This course highlights the importance of data analysis in accounting, enhancing decision-making and improving financial reporting.
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GBP £ 140
GBP £ 202
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โข R Programming Basics & Data Structures - covers variables, data types, functions, loops, and common data structures used in R like vectors, matrices, data frames, and lists.
โข Data Manipulation with dplyr - focuses on data manipulation using the dplyr package, including filtering, sorting, summarizing, and transforming data.
โข Data Visualization with ggplot2 - teaches how to create professional-looking visualizations using the ggplot2 package, including line charts, bar charts, scatter plots, and histograms.
โข Financial Data Analysis with tidyquant - covers financial data analysis using the tidyquant package, including stock prices, financial statements, and financial ratios.
โข Statistical Analysis with R - introduces statistical analysis techniques in R, including descriptive statistics, probability distributions, and statistical testing.
โข Data Modeling with Regression Analysis - covers linear regression analysis, multiple regression analysis, and logistic regression analysis using R.
โข Time Series Analysis with R - teaches time series analysis techniques in R, including time series decomposition, moving averages, and autoregressive integrated moving average (ARIMA) models.
โข Data Import and Export - covers importing and exporting data from different file formats, including CSV, Excel, and SQL databases.
โข Data Cleaning and Preparation - focuses on data cleaning and preparation techniques using R, including handling missing values, outliers, and data transformation.
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