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Title
Statistics
Category
general
UUID
fd8cfb780b4a488895256c0c6bb92f78
Source URL
https://learningforlife.tudelft.nl/statistics/
Parent URL
https://learningforlife.tudelft.nl/our-courses/core-stem-skills/math-and-statist...
Crawl Time
2026-03-23T11:26:49+00:00
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Statistics

Source: https://learningforlife.tudelft.nl/statistics/ Parent: https://learningforlife.tudelft.nl/our-courses/core-stem-skills/math-and-statistics/

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Free

For instructor paced courses this is the length of the course.

For self-paced courses this is the length of the course if you spend the amount of time per week as specified. You're free to go faster or slower as you see fit.

6 Weeks - Effort 4 - 6 Hours per week

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This course provides an overview of bachelor-level statistics. You will review the concepts of descriptive and inferential statistics. You will use the statistical software package R on real data to gain insight in these topics.

A strong foundation in mathematics is critical for success in all science and engineering disciplines. Whether you want to make a strong start to a master’s degree, prepare for more advanced courses, solidify your knowledge in a professional context or simply brush up on fundamentals, this course will get you up to speed.

In many engineering master’s programs, statistics is used quite intensively. As soon as you are dealing with real-life data, you will need to get an idea of what these data tell you and how you can visualize this (descriptive statistics). But you will also want to perform some analysis (inferential statistics): you may want to build a model that mimics reality, estimate some quantities, or test some hypotheses.

The statistics course in this series will help you refresh your knowledge on these topics. Along the way you will learn how to apply these concepts to datasets, using the statistical software R.

This course offers enough depth to cover the statistics you need to succeed in your engineering master’s or profession in areas such as machine learning, data science and more.

This is a review course\ This self-contained course is modular, so you do not need to follow the entire course if you wish to focus on a particular aspect. As a review course you are expected to have previously studied or be familiar with most of the material. Hence the pace will be higher than in an introductory course.

This format is ideal for refreshing your bachelor level mathematics and letting you practice as much as you want. You will get many exercises, to be solved using Grasple or R, for which you will receive intelligent, personal and immediate feedback. - Details

##### Course Syllabus

Week 1: Descriptive statistics

Week 2: Estimator theory

Week 3: Hypothesis testing

Week 4: Confidence intervals (CI)

Week 5: Linear regression

Week 6: Bootstrap and resampling

##### Chartered Engineering Competences

All our online courses and programs have been matched to the competences determined by KIVI’s Competence Structure, a common frame of reference for everyone, across all disciplines, levels and roles.

These competences apply to this course:

This is a Massive Open Online Course (MOOC) that runs on edX.

##### Prerequisites

Prior knowledge of all the material covered.

Some basic calculus will be used, along with some aspects of probability theory: computation of expectation and variance of a random variable with known PDF, the central limit theorem, Bayes’ theorem ... We expect you to be familiar with these topics.

This course is a review course. As such we expect that you are already familiar with some basic topics in statistics.

This course is a review course. As such we expect that you are already familiar with some basic topics in statistics.

This course is a Massive Open Online Course (MOOC). Our MOOCs are delivered on edX.org and are open to all. They include video lectures, readings, assignments, and community discussions. Content is free, with optional certificates and additional exercises available for a fee.

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