Introduction to Open Source Application Development

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Introduction to Open Source Application Development

Coursera · Beginner ·📐 ML Fundamentals ·3mo ago

Key Takeaways

Introduces open source application development using a modern programming language

Original Description

This course introduces basic concepts of systems programming using a modern open source language. You will learn to apply basic programming concepts toward solving problems, writing pseudocode, working with and effectively using basic data types, abstract data types, control structures, code modularization and arrays. You will learn to detect errors, work with variables and loops, and discover how functions, methods, and operators work with different data types. You will also be introduced to the object paradigm including classes, inheritance, and polymorphism. Learning Python has become increasingly popular in recent years, and for a good reason. Python is a versatile programming language that can be used for a wide range of applications, including data science, machine learning, web development, and more. In an introductory Python course such as this, you can expect to learn the basics of Python syntax, data types, control structures, and functions. Learning Python can lead to many career benefits, including increased job opportunities, higher salaries, and the ability to work on exciting and innovative projects. Additionally, adding online courses and certifications to a resume can demonstrate a commitment to professional development and a willingness to learn new skills. Upon successful completion of this course, you will be able to: - Recall and describe software application and development theory and concepts - Write, compile, execute, troubleshoot, analyze, evaluate, and resolve simple problems through program coding using Python computer language. - Develop, synthesize, and identify important language standard libraries and utilities. - Apply data transfer techniques between modules using parameters and return values. - Construct applications to use simple files for input and output. - Implement arrays as structures to contain data. - Use a higher-level programming language to code, test, and debug software designs. - Implement concepts of Object
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