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How to Learn Python - Python Roadmap in 2024

Offered By: Great Learning via YouTube

Tags

Python Courses Data Science Courses Web Development Courses Software Development Courses Machine Learning Courses TensorFlow Courses Version Control Courses Object-oriented programming Courses Data Wrangling Courses Exploratory Data Analysis Courses

Course Description

Overview

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Embark on an 18-minute journey through the Python programming landscape in 2024 with this comprehensive video. Discover why Python remains crucial in today's tech world and explore its vast applications in software development, data science, and machine learning. Begin with environment setup, including virtual environments, before diving into Python basics such as variables, data structures, and control flow. Progress to object-oriented programming concepts and explore software development practices using Python. Learn about testing methodologies, version control with Git, and web development frameworks like Flask. Delve into data science and machine learning topics, covering data manipulation with Pandas, visualization techniques, and machine learning algorithms. Explore advanced areas like deep learning with TensorFlow, big data processing using PySpark, and natural language processing. Gain insights into model deployment and AI applications, making this video an essential guide for anyone looking to leverage Python in their tech career.

Syllabus

Introduction
- Why Python is Important in 2024?
- Introduction to Python
- Setting Up Your Environment
- Setting Up a Virtual Environment
- Career in Python
- Learning Python Basics
- Python for Software Development
- Testing in Python
- Python in the field of Data and Machine Learning
- Conclusion


Taught by

Great Learning

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