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Magic
28 posts
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Magic
@magicailabs
Long-context, test-time compute, and e2e Reinforcement Learning to build a superhuman coding agent (that then builds the rest of AGI for us). Join us magic.dev
San Francisco
magic.dev
Joined April 2022
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15.8K
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  • Pinned
    user avatar
    Magic
    @magicailabs
    Aug 29, 2024
    LTM-2-Mini is our first model with a 100 million token context window. That’s 10 million lines of code, or 750 novels. Full blog: magic.dev/blog/100m-toke… Evals, efficiency, and more ↓
    100M Token Context Windows
    100M Token Context Windows — Magic
    From magic.dev
    1.6M
  • user avatar
    Magic
    @magicailabs
    Nov 21, 2024
    Excited to announce we’re building an Applied Team focused on post-training. Come explore what's possible with our new (and still unreleased) LTM2 models and their 100M token context window. Apply here: magic.dev/careers/5652b4…
    46K
  • user avatar
    Magic
    @magicailabs
    Sep 24, 2024
    Very excited to welcome @nvidia as Magic's latest investor! With their support, we’re looking forward to scaling long context and inference-time compute.
    47K
  • user avatar
    Magic
    @magicailabs
    Aug 29, 2024
    Replying to @magicailabs
    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
    56K
    user avatar
    Magic
    @magicailabs
    Aug 29, 2024
    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
    52K
  • Magic reposted
    user avatar
    Eric Steinberger
    @EricSteinb
    Feb 27, 2024
    Very excited to welcome @karpathy as Magic's latest investor!
    293K
  • Magic reposted
    user avatar
    Hersh Desai
    @Hersh_Desai
    Feb 15, 2024
    The era of long context is upon us. The question is whether you want to be 1 of 1000 co-authors on the Gemini paper or 1 of <20 building at
    user avatar
    Jeff Dean
    @JeffDean
    Feb 15, 2024
    Replying to @JeffDean
    Needle in a Haystack tests The tech report also details a number of microbenchmark “needle in a haystack” tests (modeled after @GregKamradt’s github.com/gkamradt/LLMTe…) that probe the model’s ability to retrieve specific information from its context. For text, Gemini 1.5 Pro
    Magic
    From magic.dev
    45K
  • Magic reposted
    user avatar
    Hersh Desai
    @Hersh_Desai
    Feb 15, 2024
    I have been continuously in awe of the brilliance, tenacity, and kindness of @EricSteinb and the small but mighty team at Magic.dev. So much so that we've decided to invest $100m! If you're interested in building the future, please do reach out to me or the team!
    user avatar
    Nat Friedman
    @natfriedman
    Feb 15, 2024
    Magic.dev has trained a groundbreaking model with many millions of tokens of context that performed far better in our evals than anything we've tried before. They're using it to build an advanced AI programmer that can reason over your entire codebase and the
    31K
  • Magic reposted
    user avatar
    Eric Steinberger
    @EricSteinb
    Feb 15, 2024
    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 :)
    user avatar
    Magic
    @magicailabs
    Feb 15, 2024
    We've raised $117M from @natfriedman 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. We are hiring!
    Magic
    From magic.dev
    88K
  • user avatar
    Magic
    @magicailabs
    Feb 15, 2024
    Replying to @magicailabs
    This round was led by @natfriedman & @danielgross with participation from @CapitalG and @eladgil, and will allow us to further scale up our models.
    20K
    user avatar
    Magic
    @magicailabs
    Feb 15, 2024
    If you want to solve very hard problems to build safe AGI on a small team with thousands of GPUs, come join us: Magic.dev!
    Magic
    From magic.dev
    16K
  • user avatar
    Magic
    @magicailabs
    Feb 15, 2024
    We've raised $117M from @natfriedman 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. We are hiring!
    459K
  • Magic reposted
    user avatar
    Riley Goodside
    @goodside
    Jun 6, 2023
    5M tokens of context. Let that sink in. Yes, there's caveats. But consider what's to come: - Entire codebases in prompts - Novel-length spec docs as instructions - k-shots where k = 10K - Few-shots where each "shot" is 50K LoC → diff Those who declared the imminent death of
    user avatar
    Magic
    @magicailabs
    Jun 6, 2023
    Meet LTM-1: LLM with *5,000,000 prompt tokens* That's ~500k lines of code or ~5k files, enough to fully cover most repositories. LTM-1 is a prototype of a neural network architecture we designed for giant context windows.
    00:00
    120K
  • Magic reposted
    user avatar
    Nat Friedman
    @natfriedman
    Jun 6, 2023
    👀 Magic.dev showing a sneak peak of their 5M token context code model.
    user avatar
    Magic
    @magicailabs
    Jun 6, 2023
    Meet LTM-1: LLM with *5,000,000 prompt tokens* That's ~500k lines of code or ~5k files, enough to fully cover most repositories. LTM-1 is a prototype of a neural network architecture we designed for giant context windows.
    00:00
    Magic
    From magic.dev
    41K
  • Magic reposted
    user avatar
    Eric Steinberger
    @EricSteinb
    Jun 6, 2023
    AI with long-term memory! *A lot* of work left to do but happy to share a little more about what we've been up to. It's been incredibly fulfilling to work with a wonderful team and the trust of our backers towards this milestone. Thank you for the opportunity <3
    user avatar
    Magic
    @magicailabs
    Jun 6, 2023
    Meet LTM-1: LLM with *5,000,000 prompt tokens* That's ~500k lines of code or ~5k files, enough to fully cover most repositories. LTM-1 is a prototype of a neural network architecture we designed for giant context windows.
    00:00
    36K

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