Data Science with R and SQL Server Training in Singapore

  • Learn via: Classroom / Virtual Classroom / Online
  • Duration: 4 Days
  • Price: Please contact for booking options
We can host this training at your preferred location. Contact us!

R is the most popular environment and language for statistical analyses, data mining, and machine learning. Managed and scalable version of R runs in SQL Server, Power BI, and Azure ML. The main topic of this 4-day course is the R language. However, the course also shows how to use the languages and tools available in MS BI suite for data science applications, including Python, T-SQL, Power BI, Azure ML, and Excel. The labs focus on R; the demos also show the code in other languages.

Attendees should have basic understanding of data analysis and basic familiarity with SQL Server tools.

Course Format

This seminar consists of instructor presentations and individual work during labs. During labs, the attendees use mainly the R language.

Every attendee gets a .PDF printout of all slides and all code and solutions for the demos presented and for the lab exercises.

In addition, every attendee gets an electronic version of the Data Science with SQL Server Quick Start Guide book by Dejan Sarka, Packt, 2018.

Each attendee works on a pre-prepared computer on a virtual machine with the following software pre-installed:

  • SQL Server 2017 or 2019 Database Engine with ML Services (In-Database)
  • AdventureWorksDW2017 demo database
  • Microsoft R Client
  • RStudio IDE
  • SQL Server Management Studio

Learning Outcomes

Attendees of this course learn to program with R from the scratch. Basic R code is introduced using the free R engine and RStudio IDE. A lifecycle of a data science project is explained in details. The attendees learn how to perform the data overview and do the most tedious task in a project, the data preparation task. After data overview and preparation, the analytical part begins with intermediate statistics in order to analyze associations between pairs of variables. Then the course introduces more advanced methods for researching linear dependencies.

Too many variables in a model can make its own problem. The course shows how to do feature selection, starting with the basics of matrix calculations. Then the course switches more advanced data mining and machine learning analyses, including supervised and unsupervised learning. The course also introduces the currently modern topics, including forecasting, text mining, and reinforcement learning.

Finally, the attendees also learn how to use the R code in SQL Server, Azure ML, and Power BI through labs, and how to use Python for inside all of the tools mentioned through demos.

Course Outline

Following an introduction the modules will be as follows:

  1. Introducing data science and R
    1. What are statistics, data mining, machine learning…
    2. Data science projects and their lifetime
    3. Introducing R
    4. R tools
    5. R data structures

Lab 1

  1. Introducing Python
    1. Basic syntax and objects
    2. Data manipulation with NumPy and Pandas
    3. Visualizations with matplotlib and seaborn libraries
    4. Data science with Scikit-Learn

Discussion: R vs Python

  1. Data overview
    1. Datasets, cases and variables
    2. Types of variables
    3. Introductory statistics for discrete variables
    4. Descriptive statistics for continuous variables
    5. Basic graphs
    6. Sampling, confidence level, confidence interval

Lab 2

  1. Data preparation
    1. Derived variables
    2. Missing values and outliers
    3. Smoothing and normalization
    4. Time series
    5. Training and test sets

Lab 3

  1. Associations between two variables and visualizations of associations
    1. Covariance and correlation
    2. Contingency tables and chi-squared test
    3. T-test and analysis of variance
    4. Bayesian inference
    5. Linear models

Lab 4

  1. Feature selection and matrix operations
    1. Feature selection in linear models
    2. Basic matrix algebra
    3. Principal component analysis
    4. Exploratory factor analysis

Lab 5

  1. Unsupervised learning
    1. Hierarchical clustering
    2. K-means clustering
    3. Association rules

Lab 6

  1. Supervised learning
    1. Neural Networks
    2. Logistic Regression
    3. Decision and regression trees
    4. Random forests
    5. Gradient boosting trees
    6. K-nearest neighbors

Lab 7

  1. Modern topics
    1. Support vector machines
    2. Time series
    3. Text mining
    4. Deep learning
    5. Reinforcement learning

Lab 8

  1. R in SQL Server and MS BI
    1. ML Services (In-Database) structure
    2. Executing external scripts in SQL Server
    3. Storing a model and performing native predictions
    4. R in Azure ML and Power BI

Lab 9



Contact us for more detail about our trainings and for all other enquiries!

Upcoming Trainings

Join our public courses in our Singapore facilities. Private class trainings will be organized at the location of your preference, according to your schedule.

Classroom / Virtual Classroom
10 January 2025
Singapore, Woodlands, Marine Parade
4 Days
Classroom / Virtual Classroom
13 January 2025
Singapore, Woodlands, Marine Parade
4 Days
Classroom / Virtual Classroom
17 January 2025
Singapore, Woodlands, Marine Parade
4 Days
Classroom / Virtual Classroom
23 January 2025
Singapore, Woodlands, Marine Parade
4 Days
Classroom / Virtual Classroom
10 January 2025
Singapore, Woodlands, Marine Parade
4 Days
Classroom / Virtual Classroom
13 January 2025
Singapore, Woodlands, Marine Parade
4 Days
Classroom / Virtual Classroom
17 January 2025
Singapore, Woodlands, Marine Parade
4 Days
Classroom / Virtual Classroom
18 February 2025
Singapore, Woodlands, Marine Parade
4 Days
Data Science with R and SQL Server Training Course in Singapore

Singapore, which is known officially as the Republic of Singapore, is a sovereign island city-state in maritime Southeast Asia and it consists of Singapore island and 60 islets. The capital city of Singapore is Singapore and the population of the island city-state is approximately 5,709,000. The official languages of Singapore are English, Chinese (Mandarin), Malay and Tamil.

Singapore is a year-round destination, but the best time to visit Singapore is from December to June. Between February to April, Singapore has the least amount of rain and the most sunshine, since it's the dry season. Singapore offers more than just luxury hotels and high-end shopping malls; there are many family-friendly attractions and historic places. Marina Bay Sands, Gardens by the Bay, Botanic Gardens and Singapore Flyer are the most popular tourist attractions.

Take advantage of our diverse IT course offerings, spanning programming, software development, business skills, data science, cybersecurity, cloud computing and virtualization. Our knowledgeable instructors will provide you with practical training and industry insights, delivered directly to your chosen venue in Singapore.
By using this website you agree to let us use cookies. For further information about our use of cookies, check out our Cookie Policy.