Magic

Magic

软件开发

Build aligned and more complete AI to accelerate humanity’s progress on the world’s most important problems

关于我们

Magic is working on frontier-scale code models to build a coworker, not just a copilot. Come join us: https://magic.dev

网站
https://magic.dev/
所属行业
软件开发
规模
2-10 人
总部
San Francisco
类型
私人持股
创立
2022

地点

Magic员工

动态

  • 查看Magic的公司主页,图片

    7,312 位关注者

    LTM-2-Mini is our first model with a 100M token context window. That’s 10 million lines of code, or 750 novels. Full blog: https://lnkd.in/g5-pKWvi Our LTM (Long Term Memory) mechanism needs >1,000x less compute and memory than Llama 3.1 405B’s attention. Llama 3.1 would need 638 H100s *per user* to store a 100M token KV cache. LTM needs a small fraction of one. SSMs, RNNs, and RAG all exploit weaknesses in evals like Needle In a Haystack, so we made a new eval, HashHop: 1) Incompressible 2) Multi-hop 3) No semantic hints 4) No recency bias With context solved, we now focus on unbounded inference-time compute as the next (and potentially last) breakthrough we believe is needed to build reliable AGI. Imagine if you could spend $100 and 10 minutes on one task and reliably get a great pull request for an entire feature. That’s our goal. We are 23 people (+ 8000 H100s) working on a single project: co-designing for long context, inference-time compute, and end-to-end RL to automate coding and research. Ben Chess (fmr. OpenAI supercomputing lead) just joined to help us scale and we’re hiring more engineers and researchers across ML, CUDA, infra, security, and more: https://magic.dev/careers

    100M Token Context Windows — Magic

    100M Token Context Windows — Magic

    magic.dev

  • Magic转发了

    查看Eric Steinberger的档案,图片

    CEO @ Magic.dev | building safe AGI & automating software engineering - we’re hiring

    I love my team a lot and sometimes it’s stressful but life has never been so fulfilling. If you want to build AGI on a small team of people who care a lot with thousands of GPUs, please apply :) www.magic.dev

    查看Magic的公司主页,图片

    7,312 位关注者

    We've raised $117M from Nat Friedman and others to build an AI software engineer. Code generation is both a product and a path to AGI, requiring new algorithms, lots of CUDA, frontier-scale training, RL, and a new UI. This round was led by Nat Friedman & Daniel Gross (NFDG), with participation from CapitalG and Elad Gil, and will allow us to further scale up our models. If you want to solve very hard problems to build safe AGI on a small team with thousands of GPUs, come join us! Link in comments

    • 该图片无替代文字
  • 查看Magic的公司主页,图片

    7,312 位关注者

    We've raised $117M from Nat Friedman and others to build an AI software engineer. Code generation is both a product and a path to AGI, requiring new algorithms, lots of CUDA, frontier-scale training, RL, and a new UI. This round was led by Nat Friedman & Daniel Gross (NFDG), with participation from CapitalG and Elad Gil, and will allow us to further scale up our models. If you want to solve very hard problems to build safe AGI on a small team with thousands of GPUs, come join us! Link in comments

    • 该图片无替代文字

相似主页

融资

Magic 共 4 轮

上一轮

C 轮

US$320,000,000.00

Crunchbase 上查看更多信息