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  • The Prompt Engineering Playbook for Programmers

    Developers are increasingly relying on AI coding assistants to accelerate our daily workflows. These tools can autocomplete functions, suggest bug fixes, and even generate entire modules or MVPs. Yet, as many of us have learned, the quality of the AI’s output depends largely on the quality of the prompt you provide. In other words, prompt engineering has become an essential skill. A poorly phrased

      The Prompt Engineering Playbook for Programmers
    • GitHub - modelcontextprotocol/servers: Model Context Protocol Servers

      Official integrations are maintained by companies building production ready MCP servers for their platforms. 21st.dev Magic - Create crafted UI components inspired by the best 21st.dev design engineers. ActionKit by Paragon - Connect to 130+ SaaS integrations (e.g. Slack, Salesforce, Gmail) with Paragon’s ActionKit API. Adfin - The only platform you need to get paid - all payments in one place, in

        GitHub - modelcontextprotocol/servers: Model Context Protocol Servers
      • GPT in 60 Lines of NumPy | Jay Mody

        January 30, 2023 In this post, we'll implement a GPT from scratch in just 60 lines of numpy. We'll then load the trained GPT-2 model weights released by OpenAI into our implementation and generate some text. Note: This post assumes familiarity with Python, NumPy, and some basic experience with neural networks. This implementation is for educational purposes, so it's missing lots of features/improv

        • Writing a C compiler in 500 lines of Python

          A few months ago, I set myself the challenge of writing a C compiler in 500 lines of Python1, after writing my SDF donut post. How hard could it be? The answer was, pretty hard, even when dropping quite a few features. But it was also pretty interesting, and the result is surprisingly functional and not too hard to understand! There's too much code for me to comprehensively cover in a single blog

          • Weird Lexical Syntax

            I just learned 42 programming languages this month to build a new syntax highlighter for llamafile. I feel like I'm up to my eyeballs in programming languages right now. Now that it's halloween, I thought I'd share some of the spookiest most surprising syntax I've seen. The languages I decided to support are Ada, Assembly, BASIC, C, C#, C++, COBOL, CSS, D, FORTH, FORTRAN, Go, Haskell, HTML, Java,

              Weird Lexical Syntax
            • How I developed a faster Ruby interpreter | Red Hat Developer

              In this article, I will describe my efforts to implement a faster interpreter for CRuby, the Ruby language interpreter, using a dynamically specialized internal representation (IR). I believe this article will interest developers trying to improve the interpreter performance of dynamic programming languages (e.g., CPython developers). I will cover the following topics: Existing CRuby interpreter a

                How I developed a faster Ruby interpreter | Red Hat Developer
              • Why I use attrs instead of pydantic

                This post is an account of why I prefer using the attrs library over Pydantic. I'm writing it since I am often asked this question and I want to have something concrete to link to. This is not meant to be an objective comparison of attrs and Pydantic; I'm not interested in comparing bullet points of features, nor can I be unbiased since I'm a major contributor to attrs (at time of writing, second

                • ​Getting Started with Python

                  Python is a powerful programming language that provides many packages that we can use. Using the versatile Python programming language, we can develop the following: AutomationDesktop applicationAndroidWebIoT home automationData Science and the list goes on.In this article, our primary focus will be knowing how to start learning Python and the essentials required to be a data scientist. Below is t

                    ​Getting Started with Python
                  • 0.10.0 Release Notes ⚡ The Zig Programming Language

                    Tier 4 Support § Support for these targets is entirely experimental. If this target is provided by LLVM, LLVM may have the target as an experimental target, which means that you need to use Zig-provided binaries for the target to be available, or build LLVM from source with special configure flags. zig targets will display the target if it is available. This target may be considered deprecated by

                    • Modern Python performance considerations

                      There is a lot of work going on right now on speeding up Python; Kevin Modzelewski gave a presentation at PyCon 2022 on some of that work. Much of it has implications for Python programmers in terms of how to best take advantage of these optimizations in their code. He gave an overview of some of the projects, the kinds of optimizations being worked on, and provided some benchmarks to give a gener

                      • What's New in Emacs 28.1?

                        Try Mastering Emacs for free! Are you struggling with the basics? Have you mastered movement and editing yet? When you have read Mastering Emacs you will understand Emacs. It’s that time again: there’s a new major version of Emacs and, with it, a treasure trove of new features and changes. Notable features include the formal inclusion of native compilation, a technique that will greatly speed up y

                        • Vim9 script for Python Developers · GitHub

                          vim9script4pythondevelopers.md Vim9 script for Python Developers Vim9 script�Vim script��������������������������������������������������系��� def������義����������Vim script��vim9script�����使����������(vim9script���

                            Vim9 script for Python Developers · GitHub
                          • 【時系列データ】衛星データの時系列分解を行う【STL分解】 - LabCode

                            時系列分解の意義 多くの実世界のデータは、時間的な変化を伴った時系列データとして記録されます。需要予測、気象予報、株価分析など、時系列データを分析する分野は多岐にわたります。 時系列データは大抵以下のような構造が含まれています。 トレンド(Trend) : 長期的に増減する動き 季節成分(Seasonality) : 1年や1か月など一定の周期で繰り返す変動 残差(Residual) : 不規則な変動やノイズなど これらの成分を分解して扱えると、データの理解が格段に進み、将来予測や異常検知に応用する際にも有利になります。 伝統的な時系列分解モデル 加法モデル(Additive Model) 古典的な加法モデルによる時系列分解では、時系列 $y_t$ を以下のように表します。 $y_t = T_t + S_t + R_t$ $y_t$: 観測値 (Observed series) $T_t$

                              【時系列データ】衛星データの時系列分解を行う【STL分解】 - LabCode
                            • bytecode interpreters for tiny computers ⁑ Dercuano

                              Introduction: Density Is King (With a Tiny VM) I've previously come to the conclusion that there's little reason for using bytecode in the modern world, except in order to get more compact code, for which it can be very effective. So, what kind of a bytecode engine will give you more compact code? Suppose I want a bytecode interpreter for a very small programming environment, specifically to minim

                              • Seaborn Objects ~ グラフィックの文法で強化された Python 可視化ライブラリの新形態 ~ - GMOインターネットグループ グループ研究開発本部

                                2023.02.10 Seaborn Objects ~ グラフィックの文法で強化された Python 可視化ライブラリの新形態 ~ お久しぶりです。グループ研究開発本部・AI研究開発質の T.I. です。色々あって久しぶりの Blog となりました。今回は、趣向を変え、最近大幅に改良された Python のデータ可視化ライブラリである Seaborn の新しい機能を紹介します。昨年9月にリリースされたばかりということもあるのか、本邦どころか英語で検索しても解説資料は公式サイト以外はほぼ皆無(当方調べ)というレアな情報となります。 はじめに データ分析・機械学習などにおいて、データの様々な特徴を可視化しながらの調査・探索(Exploratory Data Analysis (EDA))は、対象の正確で深い理解には不可欠なアプローチと言えます。Python のデータ可視化ライブラリとしては、

                                  Seaborn Objects ~ グラフィックの文法で強化された Python 可視化ライブラリの新形態 ~ - GMOインターネットグループ グループ研究開発本部
                                • Plan 9 Desktop Guide

                                  PLAN 9 DESKTOP GUIDE INDEX What is Plan 9? Limitations and Workarounds Connecting to Other Systems VNC RDP SSH 9P Other methods Porting Applications Emulating other Operating Systems Virtualizing other Operating Systems Basics Window Management Copy Pasting Essential Programs Manipulating Text in the Terminal Acme - The Do It All Application Multiple Workspaces Tiling Windows Plumbing System Admin

                                  • An Experienced (Neo)Vimmer's Workflow

                                    Motivation Ever since TJ said “Personalized Development Environment,” the phrase latched onto me like a cobweb in a mineshaft. A Personalized Development Environment (PDE) describes an ideal setup that is tailored to your needs and preferences – it lies between a bare-bone text editor and a full-fledged IDE. It is a place where you can be productive, efficient, and comfortable. It is a place that

                                    • LispText.pdf

                                      Lisp Common Lisp / Scheme 0.1 Copyright c � 2020, Katsunori Nakamura 2020 2 29 1 1 1.1 Common Lisp . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 1 1.2 . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 1 1.3 . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 1 1.3.1 Lisp . . . . . .

                                      • Building A Generative AI Platform

                                        After studying how companies deploy generative AI applications, I noticed many similarities in their platforms. This post outlines the common components of a generative AI platform, what they do, and how they are implemented. I try my best to keep the architecture general, but certain applications might deviate. This is what the overall architecture looks like. This is a pretty complex system. Thi

                                          Building A Generative AI Platform
                                        • Building a type-safe dictionary in TypeScript - LogRocket Blog

                                          Gapur Kassym I am a full-stack engineer and writer. I'm passionate about building excellent software that improves the lives of those around me. As a software engineer, I enjoy using my obsessive attention to detail and my unequivocal love for making things that change the world. Editor’s note: This article was last updated by Shalitha Suranga on 20 February 2024 to include advanced type checking

                                            Building a type-safe dictionary in TypeScript - LogRocket Blog
                                          • Fitting a Forth in 512 bytes

                                            Fitting a Forth in 512 bytes June 10, 2021 · 31 minute read This article is part of the Bootstrapping series, in which I start from a 512-byte seed and try to bootstrap a practical system. Software is full of circular dependencies if you look deep enough. Compilers written in the language they compile are the most obvious example, but not the only one. To compile a kernel, you need a running kerne

                                              Fitting a Forth in 512 bytes
                                            • GitHub - ComfyUI-Workflow/awesome-comfyui: A collection of awesome custom nodes for ComfyUI

                                              ComfyUI-Gemini_Flash_2.0_Exp (⭐+172): A ComfyUI custom node that integrates Google's Gemini Flash 2.0 Experimental model, enabling multimodal analysis of text, images, video frames, and audio directly within ComfyUI workflows. ComfyUI-ACE_Plus (⭐+115): Custom nodes for various visual generation and editing tasks using ACE_Plus FFT Model. ComfyUI-Manager (⭐+113): ComfyUI-Manager itself is also a cu

                                                GitHub - ComfyUI-Workflow/awesome-comfyui: A collection of awesome custom nodes for ComfyUI
                                              • Django for Startup Founders: A better software architecture for SaaS startups and consumer apps

                                                In an ideal world, startups would be easy. We'd run our idea by some potential customers, build the product, and then immediately ride that sweet exponential growth curve off into early retirement. Of course it doesn't actually work like that. Not even a little. In real life, even startups that go on to become billion-dollar companies typically go through phases like: Having little or no growth fo

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