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  • OpenAIのBatch APIを使ってお得にプロンプトを一括処理してみる - Taste of Tech Topics

    はじめに こんにちは。データサイエンスチームYAMALEXのSsk1029Takashiです。 最近はOpenAIに日本支社が出来て、日本語対応が加速するというニュースにわくわくしています。 今回はそんなOpenAIから発表されたBatch APIという機能が便利、かつお得な機能だったのでどのように使えるのか試してみます。 Introducing the Batch API: save costs and get higher rate limits on async tasks (such as summarization, translation, and image classification). Just upload a file of bulk requests, receive results within 24 hours, and get 50% off API pri

      OpenAIのBatch APIを使ってお得にプロンプトを一括処理してみる - Taste of Tech Topics
    • 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

      • What We Learned from a Year of Building with LLMs (Part I)

        It’s an exciting time to build with large language models (LLMs). Over the past year, LLMs have become “good enough” for real-world applications. The pace of improvements in LLMs, coupled with a parade of demos on social media, will fuel an estimated $200B investment in AI by 2025. LLMs are also broadly accessible, allowing everyone, not just ML engineers and scientists, to build intelligence into

          What We Learned from a Year of Building with LLMs (Part I)
        • 100+ Best GitHub Repositories For Machine Learning

          There are millions of GitHub repos and filtering them is an insane amount of work. It takes a huge time, effort, and a lot more. We have done this for you. In this article, we’ll share a curated list of 100+ widely-known, recommended, and most popular repositories and open source GitHub projects for Machine Learning and Deep Learning. So without further ado, Let’s see all the hubs created by exper

            100+ Best GitHub Repositories For Machine Learning
          • Python open source libraries for scaling time series forecasting solutions

            By Francesca Lazzeri. This article is an extract from the book Machine Learning for Time Series Forecasting with Python, also by Lazzeri, published by Wiley. In the first and second articles in this series, I showed how to perform feature engineering on time series data with Python and how to automate the Machine Learning lifecycle for time series forecasting. In this third and concluding article,

              Python open source libraries for scaling time series forecasting solutions
            • AWS 認定 機械学習 – 専門知識(AWS Certified Machine Learning – Specialty)の学習方法とマシンラーニング・ディープラーニングの基礎知識が学べる学習リソースの紹介 - NRIネットコムBlog

              小西秀和です。 この記事は「AWS認定全冠を維持し続ける理由と全取得までの学習方法・資格の難易度まとめ」で説明した学習方法を「AWS 認定 機械学習 – 専門知識(AWS Certified Machine Learning – Specialty)」に特化した形で紹介するものです。 重複する内容については省略していますので、併せて元記事も御覧ください。 また、現在投稿済の各AWS認定に特化した記事へのリンクを以下に掲載しましたので興味のあるAWS認定があれば読んでみてください。 ALL SAP DOP SCS ANS MLS SAA DVA SOA DEA MLA AIF CLF 「AWS 認定 機械学習 – 専門知識」とは 「AWS 認定 機械学習 – 専門知識(AWS Certified Machine Learning – Specialty)」は一言で言えばAWSクラウドを活用し

                AWS 認定 機械学習 – 専門知識(AWS Certified Machine Learning – Specialty)の学習方法とマシンラーニング・ディープラーニングの基礎知識が学べる学習リソースの紹介 - NRIネットコムBlog
              • Andrej Karpathy — AGI is still a decade away

                The Andrej Karpathy episode. Andrej explains why reinforcement learning is terrible (but everything else is much worse), why model collapse prevents LLMs from learning the way humans do, why AGI will just blend into the previous ~2.5 centuries of 2% GDP growth, why self driving took so long to crack, and what he sees as the future of education. Watch on YouTube; listen on Apple Podcasts or Spotify

                  Andrej Karpathy — AGI is still a decade away
                • GIMP - Development version: GIMP 2.99.12 Released

                  GIMP 2.99.12 is a huge milestone towards GIMP 3.0. Many of the missing pieces are getting together, even though it is still a work in progress. As usual, issues are expected and in particular in this release which got important updates in major areas, such as canvas interaction code, scripts, but also theming… “CMYK space invasion”, by Jehan (based on GPLv3 code screencast), Creative Commons by-sa

                    GIMP - Development version: GIMP 2.99.12 Released
                  • xvw.lol - Why I chose OCaml as my primary language

                    This article is a translation, the original version is available here. I started using the OCaml language regularly around 2012, and since then, my interest and enthusiasm for this language have only grown. It has become my preferred choice for almost all my personal projects, and it has also influenced my professional choices. Since 2014, I have been actively participating in public conferences d

                    • Why We Use Julia, 10 Years Later

                      Exactly ten years ago today, we published "Why We Created Julia", introducing the Julia project to the world. At this point, we have moved well past the ambitious goals set out in the original blog post. Julia is now used by hundreds of thousands of people. It is taught at hundreds of universities and entire companies are being formed that build their software stacks on Julia. From personalized me

                        Why We Use Julia, 10 Years Later
                      • The Pitchfork Story

                        A bit more than two years ago, as part of my work in Shopify’s Ruby and Rails Infrastructure team, I released a new Ruby HTTP server called Pitchfork. It has a bit of an unusual design and makes hard tradeoffs, so I’d like to explain the thought process behind these decisions and how I see the future of that project. Unicorn’s Design Is Fine Ever since I joined Shopify over 11 years ago, the main

                        • Accelerating Generative AI with PyTorch: Segment Anything, Fast – PyTorch

                          Blog Accelerating Generative AI with PyTorch: Segment Anything, Fast This post is the first part of a multi-series blog focused on how to accelerate generative AI models with pure, native PyTorch. We are excited to share a breadth of newly released PyTorch performance features alongside practical examples of how these features can be combined to see how far we can push PyTorch native performance.

                            Accelerating Generative AI with PyTorch: Segment Anything, Fast – PyTorch
                          • Version 1.0

                            Version 1.0# For a short description of the main highlights of the release, please refer to Release Highlights for scikit-learn 1.0. Legend for changelogs Major Feature something big that you couldn’t do before. Feature something that you couldn’t do before. Efficiency an existing feature now may not require as much computation or memory. Enhancement a miscellaneous minor improvement. Fix somethin

                              Version 1.0
                            • Mastering All YOLO Models from YOLOv1 to YOLOv12

                              Home > Computer Vision > Mastering All YOLO Models from YOLOv1 to YOLOv12: Papers Explained (2025) What is YOLO? You Only Look Once (YOLO): Unified, Real-Time Object Detection is a single-stage object detection model published at CVPR 2016, by Joseph Redmon, famous for having low latency and high accuracy. The entire YOLO series of models is a collection of pioneering concepts that have shaped tod

                                Mastering All YOLO Models from YOLOv1 to YOLOv12
                              • Data Visualization Using Python

                                We have seen that Python language is a powerful tool for data science and data operations, but how powerful is Python for Data visualization? One of the key responsibilities of Data scientists is to communicate results effectively with the stakeholders. This is where the power of visualization comes into play. Creating effective visualizations helps businesses identify patterns and subsequently he

                                  Data Visualization Using Python
                                • Essential Machine Learning Equations: A Reference Guide

                                  Why This Guide Exists I created this as a practical reference for the mathematical foundations of machine learning. It’s not comprehensive (no guide could be), but it covers equations I find myself returning to regularly. Each section includes working Python implementations that I’ve tested or used at some point. This started from a tweet by @goyal__pramod and grew as I collected formulas I actual

                                  • The Realistic Guide to Mastering AI Agents in 2026

                                    Paul: Today’s spotlight: Paolo Perrone, master of turning tech into scroll-stopping content. This one’s packed, let’s go 👀 ↓ I’m going to be honest with you. Most AI agent tutorials are garbage. They show you how to copy-paste LangChain code, build a demo that breaks the moment you try anything real, and leave you feeling like you learned something. Three months later, you try to build something

                                      The Realistic Guide to Mastering AI Agents in 2026
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