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XcodeBuildMCP 2.6 is here, and the UI automation tools got a serious glow-up. 🚀 Same task, same simulator, side by side: ⏱ 70% faster (6m57s → 2m06s) 🧠 68% fewer tokens (232.8k → 75k) 🔧 76% fewer tool calls (86 → 21) Watch them race 👇

28,256 Aufrufe • vor 1 Monat •via X (Twitter)

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New course to bring you up to state-of-the-art at using AI to help you code: Build Apps with Windsurf's AI Coding Agents, built in partnership with WIndsurf (Codeium) and taught by Anshul Ramachandran! AI-assisted IDEs (Integrated Development Environments) make developers’ workflows faster, more efficient, and much more fun. Agentic tools like Windsurf are more than just code autocomplete—they are collaborative coding agents that help you break down complex applications, iterate efficiently, and generate code that spans multiple files. Although a lot of coding assistants share the same underlying large language models for planning and reasoning, a major point of distinction is how they handle tools, keep track of context, and stay aligned with your intent as a developer. For instance, if you make modifications to a class definition in your code and make the same modifications to other classes in the same directory, you might tell the AI agent "Do the same thing in similar places in this directory." Here, tracking your intent means understanding that “the same thing" refers to that recent edit you just made, which must be followed by appropriate search and tool-calling to implement the changes. In this course, you'll learn the inner workings of coding agents, their strengths and limitations, and how to use Windsurf to quickly build several applications. In detail, you'll: - Build a mental model of how agents work by combining human-action tracking, tool integration, and context awareness to carry out an agentic coding workflow. - Learn the challenges of code search and discovery and how a multi-step retrieval approach helps coding agents address them. - Use Windsurf to analyze and understand a large, old codebase and update it to the latest versions of the frameworks and packages it uses. - Build a Wikipedia data analysis app that retrieves, parses, and analyzes word frequencies. - Enhance the performance of your Wikipedia analysis app by adding caching, and through this, also learn how to course-correct when the AI agent produces unexpected results. - Learn tips and tricks such as keyboard shortcuts, autocomplete, and @ mentions to quickly call on agentic capabilities. - Use image/multimodal capabilities of the AI agent to increase your development velocity; you'll see an example of uploading a mockup with sketched-out UI features, and ask the agent to use that to build new functionality to an app. By the end of this course, you’ll understand agentic coding in-depth and know how to use it to make your development process much faster, more efficient, and enjoyable. Please sign up here!

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139,803 Aufrufe • vor 1 Jahr

I designed a new test specifically for multimodal models: fill out a paper form. And it's much harder than it sounds. This isn't typing into an electronic field that captures your text. The form is just an image. The model has to place each form element: text, checkmarks — at the correct pixel position on the canvas itself. Results: 🟢 Kimi K2.6 → done in 3:45, 16.7k output tokens 🟡 Step 3.7 Flash → half the fields, 57k output tokens 🔴 Gemini 3.5 Flash → 489k output tokens, never finished. I had to kill it. Gemini burned ~29x more output tokens than Kimi on the exact same task, and Kimi's was the only form that actually looked filled out. The test, a mocked application form, contains some challenging parts, such as one-character-per-box fields. I provided every model the same set of tools: > get canvas size > drop probe markers to find coordinates > add text > add checkmarks > move elements > take a screenshot anytime to check their own work > ... etc So it's vision + spatial reasoning + tool use + long context, all at once. Small models (Qwen, Gemma) can't really complete this test, so I skipped them. What happened: > Kimi nailed name, DOB, ID, gender, marital status, nationality, email, phone, address, postal code — placement slightly loose, but content correct. 15 turns. Clean. > Step got maybe half right — fields dropped, "United States" landed in the email line, data floating outside boxes. Burned 1.24M input tokens doing it (81 turns of re-reading the canvas). > Gemini almost got there visually... then spiraled. By turn 40 it was issuing a delete_elements call wiping element IDs 365–425, basically erasing its own work. 31 minutes, 489k output tokens, still streaming. Terminated. The takeaway isn't "Gemini bad." This test is indeed difficult. But token efficiency is capability now. A model that needs 30x the tokens and still can't converge is going to be 30x the cost in production. Kimi K2.6 just quietly did the thing.

stevibe

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I deleted half of my AI-video prompt — and the result got better. 😶 Here's the before/after that changed how I prompt, and the skill I open-sourced from it. 🧵 We've been prompting video models like a film shot list: 24mm, f/1.4, "volumetric fluid simulation," frame-by-frame timing. But a lot of the time you don't need to — the smarter the model gets, the simpler the prompt can be: tell the story, the texture of the air, the emotion, and let it pick the shots, light, and rhythm. ByteDance shipped this idea with Seedance 2.0 and called it "Vibe Creating" — I open-sourced the skill and the philosophy behind it. Same scene, two prompts 👇 🔧 Regular: "85mm f1.4 macro, 120fps, dolly 0.6x, freeze the sweat at 1/250…" ✨ Vibe: "Late-night street stall. The cook flicks the wok; a ball of orange flame lights up his sweating face. Noodles fly. He plates them and wipes his brow." Same model. One of them feels alive. The skill is built for story-driven video — concept shorts, micro-narratives, emotional or atmosphere pieces, anything where you'd rather describe the moment than dictate the camera. Feed it your idea (or your over-stuffed prompt) and it hands back the version the model actually shoots better. The one place it won't go: UI demos, step-by-step tutorials, or exact dialogue sync — there it'll tell you it's the wrong tool rather than flatten a prompt that needed to stay precise. Try it on your next prompt — repo 👇

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11,501 Aufrufe • vor 22 Tagen

To every NEET candidate and parent - please watch this. A few minutes that could save you serious money and stress this week. Scammers on Telegram were running two rackets targeting you: 1️⃣ Channels demanding ₹14,000 to ₹25,000 - some even ₹10 lakh - claiming they'll send you the re-exam paper. They won't. There is no leaked paper for the re-exam. The money is gone the moment you transfer it. Your admit card and WhatsApp number, if you sent them, become the tools they use to scam the next student. 2️⃣ Fake "proof" videos showing chats from before the exam. The trick: on Telegram, whoever runs a channel can edit any old message AND change what's inside it, while the date on the message stays the same. So a message edited on the 4th can be made to look exactly like it was sent on the 1st. The full explanation is in the video below — please watch and share with anyone you know who's preparing 👇 🎥 The same trick will be tried again after 21st June. Don't fall for it. Don't forward it. Don't pay anyone. ✅ Focus on your prep - you've earned this ✅ Trust only and verified NTA handles ✅ Tell your friends - especially anyone anxious enough to be tempted 📞 Report any scam: National Cyber-Crime Helpline 1930 or Your hard work is what will get you through this exam. Not a Telegram channel. We're on your side. 💪 🎥 Prof. V. Kamakoti, Director, IIT Madras, also explains the technical side clearly - his videos are in the replies below.

National Testing Agency

766,137 Aufrufe • vor 28 Tagen

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Dustin

142,553 Aufrufe • vor 3 Monaten

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29,969 Aufrufe • vor 13 Tagen