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Practically understand concurrency in Python to write efficient programs What you'll learn This course is for Python developers who want to learn concurrency techniques to build high-performance applications with Python. Requirements Prior knowledge of Python language is assumed. Description Python is a very high level, general purpose language that is utilized heavily in fields such as data science and research, as well as being one of the top choices for general purpose programming for programmers around the world. It features a wide number of powerful, high and low-level libraries and frameworks that complement its delightful syntax and enable Python programmers to create.This course introduces some of the most popular libraries and frameworks and goes in-depth into how you can leverage these libraries for your own high-concurrent, highly-performant Python programs. You will learn the fundamental concepts of concurrency needed to be able to write your own concurrent and parallel software systems in Python. You will also learn the concepts such as debugging and exception handling as well as the libraries and frameworks that allow you to create event-driven and reactive systems.Contents and OverviewThis training program includes 2 complete courses, carefully chosen to give you the most comprehensive training possible.The first course, Learning Concurrency in Python, introduces some of the most popular libraries and frameworks and goes in-depth into how you can leverage these libraries for your own high-concurrent, highly-performant Python programs. You will learn the fundamental concepts of concurrency needed to be able to write your own concurrent and parallel software systems in Python.In the second course, Concurrent Programming in Python, you will skill-up with techniques related to various aspects of concurrent programming in Python, including common thread programming techniques and approaches to parallel processing.Filled with examples, this course will show you all you need to know to start using concurrency in Python. You will learn about the principal approaches to concurrency that Python has to offer, including libraries and tools needed to exploit the performance of your processor. Learn the basic theory and history of parallelism and choose the best approach when it comes to parallel processing.By the end of this course, you will have learned the techniques to write incredibly efficient concurrent systems that follow best practices.Meet Your Expert(s):We have the best work of the following esteemed author(s) to ensure that your learning journey is smooth:● Elliot Forbes has worked as a full- software eeer at a leading financial firm for the last two years. He graduated from the University of Strathclyde in Scotland in the spring of 2015 and worked as a freelancer developing web solutions while studying there. He has worked on numerous different technologies such as Golang, Node.js, and plain old Java, and he has spent years working on concurrent enterprise systems.Elliot has even worked at Barclays Investment Bank for a summer internship in London and has maintained a couple of software development websites for the last three years.BignumWorks Software LLP is an India-based software consultancy that provides consultancy services in the area of software development and technical training. Our domain expertise includes web, mobile, cloud app development, data science projects, in-house software training services, and up-skilling services. Overview Section 1: Learning Concurrency in Python Lecture 1 The Course Overview Lecture 2 Threads and Multithreading Lecture 3 Processes and Event-Driven Programming Lecture 4 Concurrent Image Lecture 5 Improving Number Crunching with Multiprocessing Lecture 6 Concurrency and I/O Bottlenecks Lecture 7 Understanding Parallelism Lecture 8 Computer Memory Architecture Styles Lecture 9 Threads in Python Lecture 10 Starting a Thread Lecture 11 Handling Threads in Python Lecture 12 How Does the Operating System Handle Threads? Lecture 13 Deadlocks and Race Condition Lecture 14 Shared Resources and Data Races Lecture 15 Conditions and Semaphores Lecture 16 Events and Barriers Lecture 17 Sets and Decorator Lecture 18 Queues Lecture 19 Queue and Deque Objects Lecture 20 Appending, Popping, and Inserting Elements Lecture 21 Defining Your Own Thread-Safe Communication Structures Lecture 22 Testing Strats Lecture 23 Debugging Lecture 24 Benchmarking Lecture 25 Profiling Lecture 26 Concurrent Futures Lecture 27 Future Objects Lecture 28 Setting Callbacks and Exception Classes Lecture 29 ProcessPoolExecutor Lecture 30 Improving Our Crawler Lecture 31 Working Around the GIL and Daemon Processes Lecture 32 Identifying and Teating Processes Lecture 33 Multiprocessing Pools Lecture 34 Communication Between Processes Lecture 35 Multiprocessing Manager Lecture 36 Communicating Sequential Processes Lecture 37 Event-Driven Programming Lecture 38 Getting Started with Asyncio Lecture 39 Debugging Asyncio Programs Lecture 40 Twisted Lecture 41 Gevent Section 2: Concurrent Programming in Python Lecture 42 The Course Overview Lecture 43 Advanced OSes and Programming Environments Lecture 44 Concurrency Versus Parallelism with Examples Lecture 45 Operating System’s Building Blocks of Parallel Execution Lecture 46 Libraries in Python Used to Achieve Concurrency and Parallelism Lecture 47 Python’s Global Interpreter Lock (GIL) Lecture 48 Overview of Threading Module Lecture 49 Creating Threads Lecture 50 Managing Threads Lecture 51 Synchronization in Python Lecture 52 Using Synchronization Primitives Lecture 53 Producer–Consumer Pattern Lecture 54 Using Python Queue Module Lecture 55 Multithreading in GUI Programming Lecture 56 Limitations Imposed by GIL Lecture 57 Multiprocessing Lecture 58 Similarities Between Thread and Process Management Lecture 59 Difference Between Thread and Process Management Lecture 60 Libraries for Practice Lecture 61 Process Synchronization Lecture 62 Inter-Process Communication Lecture 63 Best Practices and Anti-Patterns Lecture 64 Pool of Workers for Maximizing Usage of the Hardware Lecture 65 When and How to Use a Pool of Workers Lecture 66 Best Practices and Anti-Patterns Increase your awareness of concurrency in Python,Distinguish between parallel programming and concurrent programming,Explore Python's threading module,Familiarize yourself with Python's Global Interpreter Lock (GIL),Learn the similarities between thread and process management,Practice with open source libraries,Learn process synchronization and inter-process communication,Work with best practices and caveats,Know how to handle the hardest part in a concurrent system: shared resources,Build concurrent systems with Communicating Sequential Processes (CSPs),Maintain all concurrent systems and master them HomePage:
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