Sphinx Bio

Sphinx Bio

软件开发

Empowering scientists to make better decisions, faster

关于我们

Biotech is pushing the frontier of bio in amazing ways: designing proteins from scratch, predicting protein structure, extracting insights from scientific literature, and much more. To take advantage of these recent advances, scientists need better software than the current tangled mess of spreadsheets, notebooks, and slide decks. Sphinx's mission is to empower scientists to make better decisions, faster. We're building a data platform that allows biotech companies to focus on their science and ML, not their data infrastructure. If you’re excited to build software for cutting-edge science that saves lives, please reach out. https://www.sphinxbio.com

网站
https://www.sphinxbio.com
所属行业
软件开发
规模
2-10 人
总部
San Francisco
类型
私人持股

地点

Sphinx Bio员工

动态

  • Sphinx Bio转发了

    查看Nicholas Larus-Stone的档案,图片

    CEO @ Sphinx Bio | Better software for scientists

    Excited to announce we're hiring for a Senior Software Engineer! We've seen a lot of interest in what we've been building over the past few months and we'd like to bring on an experienced engineer to help scale our systems. If you're interested in helping improve human health and fix the climate, like LLMs, and want to work on hard problems -- please reach out! It's an exciting time for us at Sphinx Bio and we're looking forward to bringing you on to helps us to build the next generation of biotech infrastructure. See more details here: https://lnkd.in/gzsfZznV

  • Sphinx Bio转发了

    查看Nicholas Larus-Stone的档案,图片

    CEO @ Sphinx Bio | Better software for scientists

    Excited to be talking with Jesse Johnson about using AI to unlock value for existing data for biotechs! There's a ton of excitement about AI in bio, but there hasn't been as much discussion of tactics and how you can use what's available today to accelerate your research processes. We’re calling it “Unlocking Biotech Data: How Sphinx leverages AI to help biotechs move faster and make better use of existing data.” It’ll be on Thursday November 21st at 2pm EST/11am PST. You can sign up here: https://lnkd.in/gTXXgJg4

    register.gotowebinar.com

  • Sphinx Bio转发了

    查看Nicholas Larus-Stone的档案,图片

    CEO @ Sphinx Bio | Better software for scientists

    What's the most frustrating routine task eating up your team's time? One thing I see over and over again is brilliant computational biologists running around putting out fires and doing ad-hoc analysis instead of diving into deeper questions. Why? Because the data "needs to be analyzed right away." But here's the uncomfortable truth: 80% of biochemical assay analysis is completely routine. The same calculations. The same graphs. The same statistical tests. Over and over. This isn't a data science problem. It's a tooling problem. Your data scientists should be: - Building ML models to predict drug candidates - Analyzing complex NGS datasets - Creating novel computational methods Not writing scripts to parse platemaps in Excel. The solution isn't hiring more data scientists. It's giving bench scientists the right tools to handle routine analysis themselves. We built Sphinx Bio because we believe both teams deserve better. Bench scientists get automated analysis they can trust. Data scientists get to work on actually challenging problems. Everyone wins and drugs get into the clinic faster.

  • Sphinx Bio转发了

    查看Bits in Bio的公司主页,图片

    3,360 位关注者

    ?? It's that time of the year again -- our 2024 State of Techbio Survey is now live! Survey will close on Sunday December 1. Take the survey here: https://lnkd.in/dFJ7H4nr This survey is an opportunity for you to help shape the understanding of the use of software in the life sciences. Its goal is to form a shared understanding of trends, progression, and the general state of tech & life sciences year over year. The survey is anonymous and data/insights will be shared publicly in early 2025. You can find last year's results here: https://lnkd.in/gwy2VZ8W The survey will take about 5-7 minutes to complete. Would really appreciate you all helping amplify with your companies/networks! Thank you?in advance

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  • Sphinx Bio转发了

    查看Nicholas Larus-Stone的档案,图片

    CEO @ Sphinx Bio | Better software for scientists

    "Our lab is fully automated, so our data is completely consistent." I hear this all the time, and while I would love it to be true, it's one of the most dangerous myths in modern biotech. While automation CAN make your data much more consistent, it can also create a false sense of security. Think about it: - Reagent lots still vary - Cells still behave differently day-to-day - Equipment still drifts - Edge cases still happen It takes a lot of hard work to ensure consistency in the lab. You’ll usually only be able to identify the harder edge cases once you’ve got your data into the right spot. If you’re analyzing each experiment as a one-off, you’ll be unable to see the larger picture and catch these inconsistencies. However, the answer isn’t to just have a set of inflexible analysis scripts. As soon as your teams’ hypotheses change (and they will change), you’ll be scrambling to fix your analysis pipelines. You need a system that helps with standardization while encouraging scientists, automation engineers, and data teams to dig deeper into their data. Striking the balance between flexibility and consistency is always hard in a biotech. Adding in automation just increases the complexity. But if you’re able to do it right, that’s where the magic happens.

  • Sphinx Bio转发了

    查看Nicholas Larus-Stone的档案,图片

    CEO @ Sphinx Bio | Better software for scientists

    AI is not magic. It’s not going to do the science for you (yet). But it’s still incredibly helpful for any sort of digital task. If you’re a scientist, you usually know *what* you want to do — it’s just the *how* that might be difficult or painful. For example, let’s say you just ran a multi-plate concentration response experiment. You know you want to take that data, join it with your platemap, fit a curve to your data, then make some plots. That’s great — you have the beginning of an analysis SOP right here (even if it's just in your head). How might you do that today? Copy and paste from a few Excel sheets, reshape the data, copy into PRISM, fumble around with the settings for a while, then copy the plots into your slides. If it’s a new experiment (or a large one), it might take an hour or two. If you’ve done this before, maybe it only takes half an hour or less. But that’s a complete waste of your time. You don’t need a PhD to copy and paste data between Excel sheets. That’s where the magic of AI comes in — it takes your *what* and solves the *how*. So the next time you’re upset that “AI” isn’t solving all your problems, make sure you’re using it to solve the how, not the what.

  • Sphinx Bio转发了

    查看Nicholas Larus-Stone的档案,图片

    CEO @ Sphinx Bio | Better software for scientists

    Digital Transformation. AI Native. Techbio. Choose your buzzword — they all boil down to biotech and pharma taking data more seriously. But what are you supposed to do if you have years of data locked up in semi-structured or obscure file formats? Usually this would be a team of people spending weeks or months drudging through spreadsheets, slide decks, and ELN entries in an attempt to clean up the data. This is almost always doomed to fail. Luckily, the recent advances in AI give us a path forward. Data standardization is: - Rule-based - Repetitive - Pattern-matching - Logical Sound familiar? These are exactly the things AI excels at. Stop wasting your team’s time asking them to standardize their data — instead use the right tool for the job. "But what about edge cases?" you might ask. "What about complex experimental contexts?" That's part of the magic of generative AI. These models are flexible enough to handle thousands of edge cases faster than we can write SOPs for them. And we can build systems to make it better with each new example it sees. The real breakthrough isn't standardizing data - it's automating standardization. At Sphinx Bio, we're leveraging AI to handle data extraction and standardization automatically, letting scientists focus on what matters: the science.

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