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Python Automation Hot Selling Course! - AD-TEAM - 06-15-2024 Python Automation Hot Selling Course! Published 3/2024 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 896.26 MB | Duration: 3h 58m Automate Tasks with Python
[b]What you'll learn[/b] Introduction to Python Write effective Python code Work with strings and lists Python in practice [b]Requirements[/b] some computer knowledge [b]Description[/b] Automating tasks with Python has revolutionized the way individuals and organizations streamline their workflows. Python's simplicity and versatility make it an ideal choice for automating a wide range of repetitive tasks across various domains. From file management to data processing and web scraping, Python offers an extensive ecosystem of libraries and tools that empower users to automate virtually any task imaginable. With libraries like os and shutil, Python simplifies file manipulation and system-level operations, allowing users to automate tasks such as file renaming, copying, and deletion with just a few lines of code. Furthermore, Python's subprocess module enables seamless integration with external applications, facilitating the automation of complex processes and workflows. For tasks involving web scraping and data extraction, Python's Selenium and Beautiful Soup libraries provide robust solutions, allowing users to automate interactions with web pages and extract data from HTML documents effortlessly. Moreover, Python's PyAutoGUI library enables GUI automation for desktop applications, making it possible to automate mouse and keyboard interactions with graphical interfaces. By leveraging Python's automation capabilities, individuals and organizations can significantly increase productivity, reduce manual errors, and focus on more strategic and creative tasks, ultimately driving efficiency and innovation in their operations. this will help you on your journey Overview Section 1: Introduction to Python Lecture 1 Introduction to Python Lecture 2 Python Overview Lecture 3 Healthy habits for course completion Lecture 4 Introduction to Python Programming Lecture 5 more on python Lecture 6 Get to know python Lecture 7 create basic python script Lecture 8 Python environments Section 2: Core Python Components Lecture 9 Data types in Python Lecture 10 More about data types Lecture 11 work with variables Lecture 12 assign and reassign variables in python Section 3: conditional and iterative statements Lecture 13 Conditional statements in Python Lecture 14 More on conditionals in Python Lecture 15 For loops Lecture 16 While loops Lecture 17 more on loops Lecture 18 wrap up Lecture 19 Reference guide: Python concepts from module 1 Lecture 20 Glossary terms from module 1 Section 4: Welcome to module 2 Lecture 21 Introduction to Function Lecture 22 Create a basic function Lecture 23 Python functions in cybersecurity Section 5: work with functions Lecture 24 Use parameters in functions Lecture 25 Return statements Lecture 26 Functions and variables Lecture 27 Explore built-in functions Lecture 28 Work with built-in functions Section 6: Learn from the python community Lecture 29 Modules and libraries Lecture 30 Import modules and libraries in Python Lecture 31 Code readability Lecture 32 Ensure proper syntax and readability in Python Lecture 33 Reference guide: Python concepts from module 2 Lecture 34 Glossary terms from module 2 Lecture 35 Wrap-up Section 7: working with strings Lecture 36 Welcome to module 3 Lecture 37 String operations Lecture 38 String indices and slices Lecture 39 Strings and the security analyst Section 8: Work with lists and develop algorithms Lecture 40 List operations in Python Lecture 41 Write a simple algorithm Lecture 42 Lists and the security analyst Lecture 43 Regular expressions in Python Lecture 44 wrap up Section 9: Review Lecture 45 More about regular expressions Lecture 46 Reference guide: Python concepts from module 3 Section 10: Python for automation Lecture 47 Welcome to module 4 Lecture 48 Automate tasks with Python Lecture 49 Glossary terms from module 3 Lecture 50 Essential Python components for automation Section 11: work with python Lecture 51 Access a text file in Python Lecture 52 Import files into Python Lecture 53 Parse a text file in Python Lecture 54 Work with files in Python Lecture 55 Develop a parsing algorithm in Python Section 12: Debug Python code Lecture 56 Debugging strategies Lecture 57 Apply debugging strategies Lecture 58 Explore debugging techniques Lecture 59 Wrap-up Lecture 60 course Wrap-up Lecture 61 Reference guide: Python concepts from week 4 Lecture 62 Glossary terms from module 4 Lecture 63 Reference guide: Python concepts Beginner Python Developers curious about data science,security analysts |