GIT_FEED

EvoLinkAI/awesome-gpt-image-2-prompts

Curated GPT-Image-2 prompts fot the Openai API:image examples across portraits, posters, UI mockups, character sheets, and community experiments.

View on GitHub

What it does

This project is a curated collection of ready-to-use text instructions (prompts) for OpenAI's GPT-Image-2 image generation tool, covering use cases like portraits, posters, app screen mockups, and character designs. It pairs each prompt with real image examples so builders can see exactly what results to expect before trying it themselves.

Why it matters

As AI image generation becomes a core part of product workflows — from marketing assets to UI prototyping — having a proven library of prompts dramatically shortens the learning curve and reduces costly trial-and-error. With nearly 3,000 stars, this signals strong market demand for practical, reusable AI image tooling that teams can plug directly into their products.

0Active

On the radar — signal detected

Stars
4.1k
Forks
359
Contributors
0
Language
Python

Score updated Apr 26, 2026

Related projects

RuView uses ordinary WiFi signals to detect human presence, movement, and even vital signs like heart rate and breathing — all without cameras, wearables, or an internet connection. It runs on cheap hardware (around $1 per sensor node) and learns the layout of a space on its own over time, getting smarter the longer it operates.

// why it matters This opens up a massive market for privacy-first sensing in smart buildings, elder care, retail analytics, and security — anywhere cameras are too intrusive or expensive to deploy at scale. Builders can now add human-presence awareness to physical spaces using off-the-shelf hardware, without storing a single image or relying on cloud infrastructure.

Rust50.3k stars6.6k forks14 contrib

Cua is an open-source platform that lets developers build AI agents capable of controlling full computer desktops — clicking, typing, and navigating apps just like a human would — across Mac, Windows, Linux, and Android, either locally or in the cloud. It provides the sandboxed environments, software tools, and testing benchmarks needed to create, train, and deploy these computer-controlling AI systems at scale.

// why it matters As AI agents move from answering questions to actually operating software, builders who can deploy reliable computer-use agents will have a significant advantage in automating complex workflows that traditional APIs can't touch. With over 14,000 stars and growing enterprise interest in autonomous agents, this infrastructure positions teams to build the next wave of AI-powered products before the market matures.

HTML14.2k stars880 forks58 contrib

AITER is AMD's open-source library of high-performance building blocks that make AI models run faster on AMD hardware, supporting everything from basic AI operations to complex training and multi-GPU coordination. Think of it as a toolbox that lets AI software teams tap into AMD's chip capabilities without having to write low-level hardware code themselves.

// why it matters As AI infrastructure costs soar, builders are actively exploring alternatives to Nvidia's dominant GPU ecosystem, and AMD is positioning AITER as the key compatibility layer that makes switching or diversifying hardware more practical. For founders and PMs building AI products, this means AMD GPUs become a more credible option for cost reduction or supply chain diversification — especially relevant as demand for AI compute continues to outpace supply.

Python414 stars291 forks200 contrib

Last30Days is a plug-in skill for the Claude AI coding assistant that automatically researches any topic across Reddit, X, YouTube, Hacker News, Polymarket, and Bluesky, then produces a cited summary of what people are actually talking about right now. Think of it as a one-command briefing tool that scans the social web for the past 30 days and distills the signal into a readable report, saved automatically to your computer.

// why it matters As AI tools and markets shift weekly, founders and product teams who can quickly validate what's gaining traction — before it becomes mainstream knowledge — have a real edge in prioritization and positioning. The 15,000+ stars suggest strong demand for ambient, automated trend intelligence baked directly into developer workflows rather than requiring separate research tools.

Python24.0k stars2.0k forks16 contrib
// SUBSCRIBE

The repos that moved this week, why they matter, and what to watch next. One email. No noise.