Computational Thinking and Big Data
About this Course
Computational thinking is an invaluable skill that can be used across every industry, as it allows you to formulate a problem and express a solution in such a way that a computer can effectively carry it out. In this course, part of the Big Data MicroMasters program, you will learn how to apply computational thinking in data science. You will learn core computational thinking concepts including decomposition, pattern recognition, abstraction, and algorithmic thinking. You will also learn about data representation and analysis and the processes of cleaning, presenting, and visualizing data. You will develop skills in data-driven problem design and algorithms for big data. The course will also explain mathematical representations, probabilistic and statistical models, dimension reduction and Bayesian models. You will use tools such as R and Java data processing libraries in associated language environments.Created by: University of Adelaide
Level: Introductory

Related Online Courses
Housing and Cities is a design-oriented architecture course that focuses on key moments of European urban housing history. It looks into ordinary or replicated housing types of different social... more
Network security plays a vital role in most organizations. It is the process of preventing and detecting unauthorized use of an organization’s networking infrastructure. Network Defense E... more
This course is a practical introduction to Istio, designed for anyone who wishes to build on their knowledge of Linux, Docker, and Kubernetes to learn how to install and configure a service mesh... more
This course, part of the Software Development MicroMasters program, will dig deep into the principles of object oriented design, and introduce new abstraction techniques and design patterns. You... more
RISC-V is a free and open instruction set architecture (ISA) enabling a new era of processor innovation through open standard collaboration. This course will guide you through the various aspects... more