Free Data Science Foundations Course

Data Science Foundations

Enrich your skills in Data Science by strengthening your foundational knowledge. Enroll in this free course and thoroughly learn the life cycle, tasks, programming languages, and analytics landscape concepts.

4.45

Beginner

3.0 Hrs

6.3L+

Ratings

Level

Learning hours

Learners

Skills you’ll Learn

Data Science
Analytics Landscape
Data Science Life Cycle fundamentals

About this course

The Data Science Foundations course roffers your knowledge on the introduction to the subject and gives you insights into the different phases of its life cycle. The course covers topics about various tasks carried out in Data Science and different programming languages that are compatible to work with to accommodate the tasks efficiently, and Machine Learning, contributing to the dynamic behavior of machines and making significant associations with DS. The analytics landscape is another significant component within an organization, which you will learn in the latter part of the course, to understand workflow and asset distribution thoroughly. You will have to take an assessment to test your gain on the subject. The course also provides you with study materials for your reference at any given point after enrolling in it.  After this free, self-paced, beginner's guide to Data Science Foundations, you can embark on your Data Science career with the professional Post Graduate certificate and learn various concepts in depth with millions of aspirants across the globe!

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Course Outline

Introduction to Data Science

This section gives you various examples to help you understand Data Science. It explains how you decide on a place for the vacation, how the weather is predicted, and sales during a particular time in a year using data science. 

Data Science Life Cycle

Data Science life cycle revolves around data acquisition, preprocessing, ML algorithms, pattern evaluation, knowledge representation, and analytical strategies to predict and proffer insights, which we shall learn in this module, into the procedures to yield the best results.

Data Mining Tasks

Data mining tasks include classification, prediction, association, clustering, and summarization. This module explains anomaly detection, continues with matching data points and explains the concept with a real-life example.

Intro to Machine Learning

Machine learning is a learning method to process raw data based on the previously trained model for similar input data. This section explains how machines understand the patterns and the features through which it tags every data.

Languages for Data Science

Most commonly used programming languages used in Data Science are R (for statistical computation) and Python (including MATLAB library), which we will know why in this section. We will also look into the famous libraries in each of these languages for Data Science.

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Frequently Asked Questions

Will I receive a certificate upon completing this free course?

Is this course free?

Is the Data Science Foundations course a certification course?

What are the prerequisites required to learn this Data Science Foundations course?

You do not need any prior knowledge except knowing what computer science is to learn the Data Science Foundations course. But suppose you want to do a little homework to understand the concepts of Data Science faster. In that case, we recommend you learn algorithms used to work with Data Science since you can implement them in any programming language.

How long does it take to complete this free Data Science Foundations course?

Data Science Foundations is 2 hours long course but is self-paced. Once you enroll, you can take your own time to complete the course.

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Data Science Foundations

In conclusion, data science is an ever-evolving field that relies on strong foundational principles. The ability to collect and preprocess data, understand statistics and probability, apply machine learning algorithms, visualize data effectively, program efficiently, handle big data, and prioritize data ethics are essential skills for any data scientist. By mastering these foundations, data scientists can unlock the true potential of data and drive valuable insights that foster innovation and informed decision-making across various industries.

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