{"id":842,"date":"2023-07-13T04:35:52","date_gmt":"2023-07-13T04:35:52","guid":{"rendered":"https:\/\/www.ffsikeralam.in\/subscription\/?p=842"},"modified":"2024-02-08T19:06:29","modified_gmt":"2024-02-08T19:06:29","slug":"welcome-to-python-org","status":"publish","type":"post","link":"https:\/\/www.ffsikeralam.in\/subscription\/welcome-to-python-org\/","title":{"rendered":"Welcome to Python org"},"content":{"rendered":"<p>Basically, if a candidate doesn\u2019t mention unittest when answering this question, that should be a huge red flag. Lambda expressions are a shorthand technique for creating single line, anonymous functions. Their simple, inline nature often \u2013 though not always \u2013 leads to more readable and concise code than the alternative of formal function declarations. On the other hand, their terse inline nature, by definition, very much limits what they are capable of doing and their applicability. Being anonymous and inline, the only way to use the same lambda function in multiple locations in your code is to specify it redundantly.<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src=\"https:\/\/deveducation.com\/wp-content\/uploads\/2023\/07\/ai-services-must-try-guide-19.webp\" width=\"307px\" alt=\"python developer\"\/><\/p>\n<p>We hope you find them to be a useful foundation for \u201cseparating the wheat from the chaff\u201d in your quest for the elite few among Python software developers. Yet it is important to remember that these are merely intended as tools to be incorporated into the larger context of your overall recruiting toolbox and  strategy. Conversely, a response that Python is always the right choice is a clear sign of an unsophisticated developer. Generator expressions are syntactically and functionally similar to list comprehensions but there are some fairly significant differences between the ways the two operate and, accordingly, when each should be used. Generator expressions can therefore be used for very large (and even infinite) sequences and their  lazy (i.e., on demand) generation of values results in improved performance and lower memory usage.<\/p>\n<h2>Data Analytics with R Programming Certificati &#8230;<\/h2>\n<p>A machine learning engineer must be proficient enough in Algorithms like gradient descent, Regression analysis and building prediction models. A data scientist must have thorough knowledge of data analysis, interpretation, manipulation , mathematics and statistics in order to help in decision making process. They also have to be masters in Machine <a href=\"https:\/\/deveducation.com\/en\/courses\/python-developer\/\">python developer course<\/a> learning and AI with all the machine learning algorithms like regression analysis, naive bayes etc. A software developer\/engineer must be well versed with core python, web frameworks, Object relational mappers. They should have an understanding of multi process architecture and RESTful API\u2019s to integrate applications with other components.<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src=\"data:image\/jpeg;base64,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\" width=\"308px\" alt=\"python developer\"\/><\/p>\n<p>A developer deals with a huge set of data every day from different codes to modified versions. Therefore, proficiency in version control software like Git, BeanStalk, etc will help you a lot in keeping yourself organized and efficient. A Python developer though often works for server-side (backend) development but being a part of the development team many Python developers assist the front-end developers as well. There are many powerful frameworks in Python like Django, CherryPy, Flask, etc. Accordingly, different employers and companies have different preferences so you could choose the ones that are most used and common among the big companies. There always comes a time in the developer\u2019s learning period that would be a dip in the learning curve.<\/p>\n<h2>Python List, Tuple, String, Set And Dictonary \u2013 Python Sequences<\/h2>\n<p>Other uses include programming applications, web development, game development, quantitative and qualitative analysis, creating new programming languages, and developing graphic design applications. Python Developer is a part of a software team who skills in creating, designing, deploying computer applications, and different programs using the Python programming language. In addition to this, a python developer is also responsible for finding the errors (debugging) in the development projects created with Python. Arjaan is a Python cloud developer and Rasa chatbot engineer with deep experience in web frameworks, APIs, machine learning, data science, and DevOps. He is also keen on several Python web frameworks like Django, Flask, and FastAPI and excels in a wide variety of Python libraries like Pandas, TensorFlow, and Rasa.<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src=\"data:image\/jpeg;base64,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\" width=\"302px\" alt=\"python developer\"\/><\/p>\n","protected":false},"excerpt":{"rendered":"<p>Basically, if a candidate doesn\u2019t mention unittest when answering this question, that should be a huge red flag. Lambda expressions are a shorthand technique for creating single line, anonymous functions. Their simple, inline nature often \u2013 though not always \u2013 leads to more readable and concise code than the alternative of formal function declarations. On &hellip;<\/p>\n<p class=\"read-more\"> <a class=\"\" href=\"https:\/\/www.ffsikeralam.in\/subscription\/welcome-to-python-org\/\"> <span class=\"screen-reader-text\">Welcome to Python org<\/span> Read More &raquo;<\/a><\/p>\n","protected":false},"author":1,"featured_media":0,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"site-sidebar-layout":"default","site-content-layout":"default","ast-global-header-display":"","ast-main-header-display":"","ast-hfb-above-header-display":"","ast-hfb-below-header-display":"","ast-hfb-mobile-header-display":"","site-post-title":"","ast-breadcrumbs-content":"","ast-featured-img":"","footer-sml-layout":"","theme-transparent-header-meta":"","adv-header-id-meta":"","stick-header-meta":"","header-above-stick-meta":"","header-main-stick-meta":"","header-below-stick-meta":"","footnotes":""},"categories":[71],"tags":[],"class_list":["post-842","post","type-post","status-publish","format-standard","hentry","category-it-education-2"],"_links":{"self":[{"href":"https:\/\/www.ffsikeralam.in\/subscription\/wp-json\/wp\/v2\/posts\/842","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/www.ffsikeralam.in\/subscription\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/www.ffsikeralam.in\/subscription\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/www.ffsikeralam.in\/subscription\/wp-json\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/www.ffsikeralam.in\/subscription\/wp-json\/wp\/v2\/comments?post=842"}],"version-history":[{"count":1,"href":"https:\/\/www.ffsikeralam.in\/subscription\/wp-json\/wp\/v2\/posts\/842\/revisions"}],"predecessor-version":[{"id":843,"href":"https:\/\/www.ffsikeralam.in\/subscription\/wp-json\/wp\/v2\/posts\/842\/revisions\/843"}],"wp:attachment":[{"href":"https:\/\/www.ffsikeralam.in\/subscription\/wp-json\/wp\/v2\/media?parent=842"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/www.ffsikeralam.in\/subscription\/wp-json\/wp\/v2\/categories?post=842"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/www.ffsikeralam.in\/subscription\/wp-json\/wp\/v2\/tags?post=842"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}