Co-founder of Axiom - AI for drug toxicity

Joined December 2014
6 Photos and videos
The new "100 chrome tabs" is 15 open cursor windows each with multiple terminals running claude code
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Alex Beatson retweeted
7 Jul 2025
btw by far the most interesting new pattern we are seeing in @latentspacepod (upcoming with @olivierddr and @sdrzn and @pashmerepat) is that people are using @claude_code and @Cline for non-coding tasks and this is becoming surprisingly effective for things like sales/BI automation and Gsuite (read my emails, slacks, linears, search web, make report, etc etc) ofc enabled by MCP, but somehow BOTH chatgpt and claude desktop have not captured this kind of organic integration/white collar work automation behavior part of this i guess is driven by the generous $200 claude max plan limits, part of it is maturity of MCP, but that still doesnt explain why people don't seem to use Claude Desktop for this stuff?
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Alex Beatson retweeted
nobody wants to look at the data, either
18 Jun 2025
everybody wants to do fun experiments nobody wants to write core infrastructure code
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Alex Beatson retweeted
18 Jun 2025
everybody wants to do fun experiments nobody wants to write core infrastructure code
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Alex Beatson retweeted
To replace animal testing with AI, we need MASSIVE human datasets. Today, we're thrilled to share Axiom's new data exploration tool, providing the ability to visually explore the world's largest primary human liver toxicity dataset. Built with Axiom's proprietary wetlab protocols, our dataset includes detailed liver toxicity profiles for over 100,000 distinct molecules. The key to this dataset is our ability to do high-throughput, multiplexed high-content screening with primary human liver cells. Traditionally, toxicity assays either sacrifice throughput or sacrifice biological relevance (using easy-to-grow immortalized cell lines instead of real human cells). We managed to combine throughput, physiological relevance, and multiplexing in one platform. The assays run in a high throughput format using automation, meaning thousands of compound-dose conditions can be tested in one experiment. We achieved this using pooled primary human hepatocytes, which are often fragile and expensive. By systemizing our automation and quality control processes, we were able to run over 120 batches on the same donor pool with incredible reproducibility and consistency. We did this while integrating many readouts per well, whereas many existing toxicity assays only do a single readout. Our multiplexed approach provides far more data per experiment enabling us to measure 10-20 different toxicity phenotypes such as apoptosis, necrosis, mitochondrial fission, endoplasmic reticulum stress, stress granule formation, microtubules, and more all from a single well on a 384-well plate! The combination of scale, high content information, and data quality is exactly what is needed to train highly accurate AI models in biology. If you're interested, please explore the dataset in the comments below and let me know if you want to chat about the details!
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Alex Beatson retweeted
Exclusive: Amplify Partners has raised $200 million for its first biotech-specific fund Targeting ~20 investments of $1.5m-$10m in pre-seed/seed/Series A-stage startups. The Silicon Valley VC has also hired @ElliotHershberg as a partner: endpoints.news/amplify-raise…
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Humanity discovers new drugs painfully slowly. Why? Most clinical trials fail due to (1) drug toxicity or due to (2) selecting the wrong protein target. The bottleneck isn't protein structure prediction, or binding prediction, or molecule generation. It's toxicity and target selection. We're making progress on toxicity at Axiom via massive in vitro experiments, learning representations of cell images, mapping between chemical structure and cell biology, and LLM-driven curation/understanding of clinical trial and tox/chem/bio knowledge. We're selectively hiring across AI/ML, engineering, and chemistry for our small, insanely driven and insanely high pace/ownership team in San Francisco. DM if this sounds interesting.
Announcing Axiom: Eliminating drug toxicity, without using animals! Alex Beatson and I founded Axiom a little over over a year ago with the mission of eliminating drug toxicity by replacing traditional experiments, such as animal testing, with AI models. We are excited to announce that we've raised $15M in seed funding from Amplify Partners, Dimension Capital, and Zetta Ventures to get this done. It has been a wild ride since we got started. Within our first year, we've created the world's largest human toxicity dataset, encompassing data on over 100,000 molecules generated through proprietary lab methods combined with 1000s of clinical outcomes structured using LLMs. With this dataset, we trained an AI model which predicts drug-induced liver injury more accurately than traditional physical experiments, addressing a leading cause of clinical failure recently exemplified by Pfizer's discontinued obesity drug. We publicly launched this model at the Society of Toxicology conference in March and the response has been tremendous! We're actively conducting or finalizing pilot studies with diverse partners, including six of the twenty top pharmaceutical companies, a major agrochemicals firm, many biotechnology companies, hedge funds, and strategic partners. We're honored to partner with these insanely great scientists to rigorously assess our AI models and explore how to best integrate them into their drug discovery workflows. The expertise of these scientists is crucial for validating and thoroughly evaluating these new methods. We have multiple publications out already but we plan to share a lot more data from these early pilot studies in the coming months. At the same time, the FDA recently announced plans to phase out animal testing over the next few years, emphasizing that animal studies will become "the exception rather than the norm." The HHS Secretary RFK has said that "they have found AI to be much more precise in identifying the impacts of toxins" on the human body. With our recent progress, Axiom is uniquely positioned to support the FDA and scientific community in realizing this shift. We will eliminate clinical trial failures due to toxicity. And we don't need animals to do it. For more, you can read Andrew Dunn's Endpoints article on Axiom in the comments.
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Alex Beatson retweeted
Axiom is one of the few techbio startups that I'm bullish on. They're focused on a simple problem (liver toxicity prediction) for which ML is a likely value-add, as opposed to chasing a vague, sprawling, unfocused scaling story. So refreshing!
Announcing Axiom: Eliminating drug toxicity, without using animals! Alex Beatson and I founded Axiom a little over over a year ago with the mission of eliminating drug toxicity by replacing traditional experiments, such as animal testing, with AI models. We are excited to announce that we've raised $15M in seed funding from Amplify Partners, Dimension Capital, and Zetta Ventures to get this done. It has been a wild ride since we got started. Within our first year, we've created the world's largest human toxicity dataset, encompassing data on over 100,000 molecules generated through proprietary lab methods combined with 1000s of clinical outcomes structured using LLMs. With this dataset, we trained an AI model which predicts drug-induced liver injury more accurately than traditional physical experiments, addressing a leading cause of clinical failure recently exemplified by Pfizer's discontinued obesity drug. We publicly launched this model at the Society of Toxicology conference in March and the response has been tremendous! We're actively conducting or finalizing pilot studies with diverse partners, including six of the twenty top pharmaceutical companies, a major agrochemicals firm, many biotechnology companies, hedge funds, and strategic partners. We're honored to partner with these insanely great scientists to rigorously assess our AI models and explore how to best integrate them into their drug discovery workflows. The expertise of these scientists is crucial for validating and thoroughly evaluating these new methods. We have multiple publications out already but we plan to share a lot more data from these early pilot studies in the coming months. At the same time, the FDA recently announced plans to phase out animal testing over the next few years, emphasizing that animal studies will become "the exception rather than the norm." The HHS Secretary RFK has said that "they have found AI to be much more precise in identifying the impacts of toxins" on the human body. With our recent progress, Axiom is uniquely positioned to support the FDA and scientific community in realizing this shift. We will eliminate clinical trial failures due to toxicity. And we don't need animals to do it. For more, you can read Andrew Dunn's Endpoints article on Axiom in the comments.
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Alex Beatson retweeted
Announcing Axiom: Eliminating drug toxicity, without using animals! Alex Beatson and I founded Axiom a little over over a year ago with the mission of eliminating drug toxicity by replacing traditional experiments, such as animal testing, with AI models. We are excited to announce that we've raised $15M in seed funding from Amplify Partners, Dimension Capital, and Zetta Ventures to get this done. It has been a wild ride since we got started. Within our first year, we've created the world's largest human toxicity dataset, encompassing data on over 100,000 molecules generated through proprietary lab methods combined with 1000s of clinical outcomes structured using LLMs. With this dataset, we trained an AI model which predicts drug-induced liver injury more accurately than traditional physical experiments, addressing a leading cause of clinical failure recently exemplified by Pfizer's discontinued obesity drug. We publicly launched this model at the Society of Toxicology conference in March and the response has been tremendous! We're actively conducting or finalizing pilot studies with diverse partners, including six of the twenty top pharmaceutical companies, a major agrochemicals firm, many biotechnology companies, hedge funds, and strategic partners. We're honored to partner with these insanely great scientists to rigorously assess our AI models and explore how to best integrate them into their drug discovery workflows. The expertise of these scientists is crucial for validating and thoroughly evaluating these new methods. We have multiple publications out already but we plan to share a lot more data from these early pilot studies in the coming months. At the same time, the FDA recently announced plans to phase out animal testing over the next few years, emphasizing that animal studies will become "the exception rather than the norm." The HHS Secretary RFK has said that "they have found AI to be much more precise in identifying the impacts of toxins" on the human body. With our recent progress, Axiom is uniquely positioned to support the FDA and scientific community in realizing this shift. We will eliminate clinical trial failures due to toxicity. And we don't need animals to do it. For more, you can read Andrew Dunn's Endpoints article on Axiom in the comments.
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Alex Beatson retweeted
10 Apr 2025
20 trillion dollars to axi.om

10 Apr 2025
Today, the FDA is taking a groundbreaking step to advance public health by replacing animal testing in the development of monoclonal antibody therapies and other drugs with more effective, human-relevant methods. fda.gov/news-events/press-an…
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Alex Beatson retweeted
22 Feb 2024
I'm incredibly excited to announce our new company, @datologyai! Training models is hard and identifying the right data is the most important and difficult part -- our goal @datologyai to make optimizing training data at scale easy and automatic across modalities. techcrunch.com/2024/02/22/da…

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Alex Beatson retweeted
Wrote a blogpost on selling AI products services to big pharma! Check it out below!
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Alex Beatson retweeted
25 Jan 2023
Unlike GPT-3 or PaLM, ChatGPT is not just a raw language model trained with maximum likelihood. It's fine-tuned with a combination of additional supervised and reinforcement learning signals based on human preferences. Video covering the training recipe: youtu.be/VPRSBzXzavo
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Alex Beatson retweeted
21 Feb 2021
Why are random walks recurrent in 1 & 2D, but transient in 3D? Let's try to get some intuition for this 1921 result by mathematician George Pólya. Video: youtu.be/byvEzyFgv44
If you do a random walk in 2D, you'll eventually end up where you started with 100% probability. If you do a random walk in 3D, the probability of returning is 34%. These are called Polya's random walk constants. Lesson: It's easy to get lost in 3D.
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Alex Beatson retweeted
7 Jan 2021
We are hiring PhD interns for my team at Google Research: research.google/teams/applie… We use computational methods (especially ML) to advance research in a variety of scientific fields. For full consideration, please apply by January 15: careers.google.com/jobs/resu…
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At #NeurIPS2020? This Saturday, join for the workshop on ML for Engineering Modeling, Simulation and Design (#ML4Eng)! Schedule & accepted papers: ml4eng.github.io/ Some very interesting talks & papers and I'm looking forward to the gather.town poster sessions

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Speakers: @ProfGraceGu, @PeterWBattaglia, @ZePoLiTaT, Karen E Willcox, Angela Dai, Nils Thuerey. Co-organized with @priyald17, Amira Abdel-Rahman, @shoyer, @yuqirose, @zicokolter, @ryan_p_adams. Come hang out and explore this growing subfield with us :)
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Alex Beatson retweeted
9 Dec 2020
Want to use Gaussian processes for your problem but sometimes find it too costly to afford? Our #NeurIPS2020 paper introduces an amortized inference method as a lightweight alternative to the conventional MLL-opt for training GPs. w/ Xingyuan Sun, Peter Ramadge, @ryan_p_adams
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Tomorrow I'm presenting a NeurIPS oral on NN surrogate models for fast solving of hard PDEs which only need to be trained on solutions to small sub-PDEs. Come check it out and say hi! Talk 9.15am Weds EST Poster 12pm Weds EST Links for talk/poster/paper: neurips.cc/virtual/2020/prot…
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