MiniMax: MiniMax Hailuo 02
minimax/hailuo-02
Access MiniMax Hailuo 02 AI video generation using Puter.js API.
Get StartedModel Card
MiniMax Hailuo 02 is a next-generation AI video model ranked #2 globally, featuring native 1080p output and advanced physics simulation for realistic motion including gravity, fluid dynamics, and complex movements like gymnastics. It uses Noise-aware Compute Redistribution (NCR) architecture for 2.5x improved efficiency, with 3x more parameters and 4x more training data than its predecessor. The model supports both text-to-video and image-to-video generation with clips up to 10 seconds.
Max Duration 10s
seconds
Frame Rate 25
fps
Aspect Ratio 16:9
supported
Release Date Jul 31, 2025
Code Example
Use MiniMax Hailuo 02 in your app with the Puter.js AI API — no API keys or setup required.
// npm install @heyputer/puter.js
import { puter } from '@heyputer/puter.js';
puter.ai.txt2vid("A cat playing with a ball of yarn", {
model: "minimax/hailuo-02"
}).then(video => {
document.body.appendChild(video);
});
<html>
<body>
<script src="https://js.puter.com/v2/"></script>
<script>
puter.ai.txt2vid("A cat playing with a ball of yarn", {
model: "minimax/hailuo-02"
}).then(video => {
document.body.appendChild(video);
});
</script>
</body>
</html>
More AI Models From MiniMax
MiniMax M3
MiniMax M3 is a frontier-level multimodal language model built for long-horizon coding, agentic workflows, and complex reasoning. It introduces MiniMax Sparse Attention (MSA), which delivers 15x faster decoding and 9x faster prefill at 1M-token context compared to the prior generation. M3 scores 59.0% on SWE-Bench Pro — surpassing GPT-5.5 and Gemini 3.1 Pro — and achieves the highest score on Claw-Eval (74.5%) for autonomous agent tasks. It accepts text, image, and video inputs natively and supports tool calling through standard MCP scaffolding. Ideal for developers building coding agents, long-document pipelines, and multi-step automation that require sustained, multi-hour autonomous execution.
ChatMiniMax M2.7
MiniMax M2.7 is a proprietary reasoning LLM from Chinese AI startup MiniMax, released on March 18, 2026, notable for being one of the first commercial models to actively participate in its own training through autonomous self-evolution loops. It excels at agentic coding workflows with a 56.2% score on SWE-Pro and strong performance in office productivity tasks, scoring the highest ELO (1495) on GDPval-AA among open-source-tier models. It targets developers building complex agent systems and automated workflows.
ChatMiniMax M2.7 Highspeed
MiniMax M2.7 Highspeed is a high-throughput, inference-optimized variant of MiniMax M2.7, delivering approximately 100 tokens per second — roughly 66% faster than the standard version. It shares the same model weights and MoE architecture as M2.7, so output quality and reasoning capability are identical; the speed advantage comes entirely from inference-layer routing and batching optimizations. It supports text and image inputs with a 204K context window and features automatic prompt caching and parallel tool calling. Best suited for live coding assistants, autonomous agent pipelines, and interactive workflows where low latency and high throughput matter.
Frequently Asked Questions
You can access MiniMax Hailuo 02 by MiniMax through Puter.js AI API. Include the library in your web app or Node.js project and start making calls with just a few lines of JavaScript — no backend and no configuration required.
Yes, it is free if you're using it through Puter.js. With the User-Pays Model, you can add MiniMax Hailuo 02 to your app at no cost — your users pay for their own AI usage directly, making it completely free for you as a developer.
MiniMax Hailuo 02 was created by MiniMax and released on Jul 31, 2025.
Yes — the MiniMax Hailuo 02 API works with any JavaScript framework, Node.js, or plain HTML through Puter.js. Just include the library and start building. See the documentation for more details.
Get started with Puter.js
Add MiniMax Hailuo 02 video generation to your app without worrying about API keys or setup.
Read the Docs View Tutorials