TGTGInsighttelegram intelligenceLIVE / telegram public index
← Python Заметки

TGINSIGHT SIMILAR POSTS

Најди сличен содржај

Изворен канал @pythonotes · Post #61 · 2 апр.

Ранее я уже упоминал о другой фишке из ˍˍfutureˍˍ , это оператор деления. from __future__ import division Суть проста. Раньше сложность типа данных результата поределялась типом самого сложного операнда. Например: int/int => int int/float => float В первом случае оба операнда int, значит и результат будет int. Во втором float более сложный тип, поэтому результат будет float. Если нам требуется получить дробное значение при делении двух int то приходилось форсированно один из операндов конверировать в float. 12/float(5) => float Но с новой "философией" это не требуется. В Python3 "floor division" заменили на "true division" а старый способ теперь работает через оператор "//". >>> 3/2 1.5 >>> 3//2 1 То есть теперь деление int на int даёт float если результат не целое число. В классах теперь доступны методы __floordiv__() и __truediv__() для определения поведения с этими операторами. Данный переход описан в PEP238. #pep#2to3#basic

Резултати

Пронајдени 13 слични објави

Пребарај: #flask

当前筛选 #flask清除筛选
djangoproject

@djangoproject · Post #592 · 11.04.2018 г., 19:22

https://juliensalinas.com/en/python-flask-vs-django/ Python #Flask vs #Django My experience of Flask is not as extensive as my experience of Django, but still recently I’ve developed some of my projects with Flask and I could not help comparing those 2 Python web frameworks. This will be a quick comparison which will not focus on code but rather on “philosophical” considerations.

Repositorio data science

@repo_science · Post #3160 · 10.05.2023 г., 21:54

#Python#Flask#APIs 🐍 REST APIs with Flask and Python in 2023 Build professional REST APIs with Python, Flask, Docker, Flask-Smorest, and Flask-SQLAlchemy 🗣️ Jose Salvatierra, Teclado by Jose Salvatierra 🌟 4.6 - 20097 votes 🔗Link ----- Main channel: @repo_science Coupons: @freecoupons_reposcience -----

djangoproject

@djangoproject · Post #162 · 15.09.2016 г., 03:22

https://github.com/realpython/discover-flask/blob/master/readme.md #Flask is a micro web #framework powered by Python. Its #API is fairly small, making it easy to learn and simple to use. But don't let this fool you, as it's powerful enough to support enterprise-level applications handling large amounts of traffic. You can start small with an app contained entirely in one file, then slowly scale up to multiple files and folders in a well-structured manner as your site becomes more and more complex.

djangoproject

@djangoproject · Post #501 · 14.11.2017 г., 17:01

http://pyvideo.org/pydx-2016/python-blockchain-and-byte-size-change.html In this talk, I will answer the question of what is #bitcoin and the #blockchain and will end with a quick tutorial on how to create a blockchain application in #Flask. We will not only make a bitcoin application, but we will also reflect upon the implications of this cutting edge technology to the greater society.

Repositorio data science

@repo_science · Post #3250 · 31.05.2023 г., 11:52

#python#flask#django#html#css#bootstrap 🐍 Python Web Dev Pro: Flask, Django, HTML, CSS & Bootstrap Elevate Your Web Development Skills: Master Back-End & Front-End Technologies with Python, Flask, Django, and Responsive 🔗Link ----- Main channel:@repo_science Coupons: @freecoupons_reposcience -----

djangoproject

@djangoproject · Post #539 · 28.12.2017 г., 12:20

Dash, announced this year, is an open source library for building web applications, especially those that make good use of #data visualization, in pure Python. It is built on top of #Flask, #Plotly.js and #React, and provides abstractions that free you from having to learn those frameworks and let you become productive quickly. #Dash is a #Python framework for building analytical web applications. No JavaScript required. https://plot.ly/products/dash/

GitHub Trends

@githubtrending · Post #15433 · 23.01.2026 г., 14:30

#python#deepseek#demo#easy#embedding#flask#gpt#huggingface_transformers#llm#mcp#multimodal#openai#qwen#rag#sentence_transformers#ui#vllm#vlm UltraRAG is a lightweight framework that makes building retrieval-augmented generation (RAG) systems simple and fast. It uses a low-code approach where you write just dozens of lines of YAML configuration instead of complex code to create sophisticated AI workflows with conditional logic and loops. The framework includes a visual development environment where you can drag-and-drop to build pipelines, adjust parameters in real-time, and instantly convert your logic into interactive chat applications. This means you can deploy powerful AI systems that ground answers in your own data—reducing hallucinations and improving accuracy—without needing extensive coding expertise or lengthy development cycles. https://github.com/OpenBMB/UltraRAG

12
ПретходнаСтраница 1 од 2Следна