How to Get Into Software Development

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Free to audit · Opens on External: Coursera

How to Get Into Software Development

Coursera · Beginner ·🎮 Reinforcement Learning ·3mo ago
Skills: PM Basics50%

Key Takeaways

Exploring software development as a career and uncovering crucial roles in the field

Original Description

Developing software challenges you to think in different ways and to come up with creative solutions to problems in a range of industries. So if you are a problem solver who likes to be challenged, then software development is a promising career to consider. In this course, you will learn about the dynamic field of software development and uncover the crucial roles, from requirements engineers to backend developers, and the skills essential for success. You'll learn to navigate the development process, including gaining insights from an inspiring career changer who has thrived in the software development field. Whether you're a coding novice or an enthusiast, this course empowers you with the knowledge and confidence to pursue an exciting and rewarding career in software development. Click Start, a nationwide training programme designed to help young people develop digital skills, offers this course. Click Start offers scholarships giving free access to young people in the UK. Follow the link in the Click Start icon on the top, to check if you are eligible for free access!
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