Jacob Phillips

328 posts

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Jacob Phillips

Jacob Phillips

@jacob_dphillips

building @appliedcompute. prev American Dynamism @a16z, ML @scale_AI, CTO @Themis_AI, AI + History @MIT

Katılım Nisan 2016
1.2K Takip Edilen1.1K Takipçiler
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Jacob Phillips
Jacob Phillips@jacob_dphillips·
Come join us at @appliedcompute! We're coming out of stealth with 80M in funding to build Specific Intelligence: custom models and purpose-built agents for enterprises. We're hiring across research, infrastructure, and engineering -- reach out to learn more!
Applied Compute@appliedcompute

Generalists are useful, but it’s not enough to be smart. Advances come from specialists, whether human or machine. To have an edge, agents need specific expertise, within specific companies, built on models trained on specific data. We call this Specific Intelligence. It's what we're building at Applied Compute. We unlock the latent knowledge inside a company, use it to train custom models, and deploy an in-house agent workforce that reports to your team. We work with sophisticated companies that have already captured early gains from general models, like @cognition, @DoorDash, and @mercor_ai. They’re pulling even further ahead with proprietary in-house agents that don’t need to wait for the next public model release. Together, we are building and validating models and agents in days instead of months, achieving state-of-the-art performance on customer evals. Our team has high density and low latency. Our founders all worked on different parts of this problem while they were researchers at OpenAI — @ypatil125 as a key member on the agentic software engineer effort (Codex), @rhythmrg as a core contributor to the first RL-trained reasoning model (o1), and @lindensli as a core contributor on ML systems and infrastructure for RL training. Two-thirds of the team are former founders, and everyone brings a deep technical background, from top AI researchers to Math Olympiad winners. We are backed by $80M in funding from Benchmark, Sequoia, Lux, Elad Gil, Victor Lazarte, Omri Casspi, and others. With their support, we are growing the team, scaling deployments, and bringing to market the first generation of agent workforces built on specific models. In short: 1. We are building Specific Intelligence for specific work at specific companies. 2. That will power in-house agent workforces to support their human bosses. 3. That in turn will unlock AI’s full potential through humanity’s greatest engine of progress: thriving corporations in a free market.

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Jacob Zietek
Jacob Zietek@JacobZietek·
@oyhsu can one of our portcos help me cut now
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Bryan Lee
Bryan Lee@_brylee10·
at AC i’ve learned forward deployed work is among my favorite. a personal favorite memory was getting a high five from a customer after a day in the office and a successful prod deployment. closely collaborating with companies and diving into the nitty-gritty of their systems to make agents work is challenging but rewarding. it’s “full stack” in the sense it involves a eng, research, and understanding customer needs which makes each day different and gets me excited.
Applied Compute@appliedcompute

There is a large delta between what models can do and what they deliver in company-specific workflows. We bridge that gap through forward deployment. In a given week, our engineers might build eval frameworks from scratch, deploy a large-scale context ingestion engine, and present results to F500 leadership. We fine-tune models on proprietary data no frontier lab has seen and optimize agent performance against real-world outcomes. We're excited by engineers with rigor, high customer empathy, and a bias toward action in ambiguity. appliedcompute.com/blog/unlocking…

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Applied Compute
Applied Compute@appliedcompute·
The FDE role of the AI era has fundamentally changed. It's no longer just about building dashboards and connecting data pipes - it's about building evals, deploying agents that improve in production, winning trust across the org chart, and closing feedback loops that compound over time. We wrote about what to expect when deploying AI in the enterprise today.
Michael Chen@michaelzchen5

x.com/i/article/2037…

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Jacob Zietek
Jacob Zietek@JacobZietek·
Robotics has spent decades optimizing for research. Deployment requires a completely different kind of person: operators, industrialists, and outsiders the field typically ignores. There's a wave of people who want to build in robotics. The field doesn't know what to do with them. New essay, Robotics Needs Fewer Roboticists* below 👇
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Millen Anand
Millen Anand@MillenAnand·
Government, military, and commercial operators must have rapid and resilient spectrum access to deploy the systems of tomorrow. We lack the modern toolkit for complete control of the radio frequency spectrum domain. Thrilled to share our exclusive with @axios on how @teamairbase is fixing the “invisible” crisis grounding U.S. commercial and defense tech. We’re already working alongside federal regulators and the DoW to bring this vision to reality. Read the full story from @demarest_colin on how we’re working with regulators and end users to build modern infrastructure for RF spectrum here:
Axios@axios

Exclusive: Airbase exits stealth with $5 million trib.al/Q3I5ZVu

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Millen Anand
Millen Anand@MillenAnand·
Today, @teamairbase is emerging from stealth. With a $5M round led by @a16z alongside @squadra_vc and @foundersysk, we’re solving a critical, invisible bottleneck in American national security: radio frequency (RF) spectrum coordination. Nearly all modern technology–from 5G on our smartphones to weather satellites and next-generation autonomous defense systems–depends on spectrum access. Yet, as demand for connectivity soars, the government systems used to allocate spectrum licenses and coordinate usage are stuck in a bygone era. Slow, manual workflows stall innovation and allow our adversaries to outpace us. Airbase is building the modern infrastructure for RF spectrum licensing, coordination, and intelligence. This isn’t merely a vision. We’ve secured an active contract with the U.S. Government to build and deploy the modern, software-defined data and coordination layer. We’re grateful to be partnering with brilliant minds across civil federal, commercial, and defense. America’s next era isn't waiting to be built. It’s waiting to be unleashed. The future of wireless is resilient, connected, and abundant. @espricewright, @rmcentush, Alex Oliver, Guy Filippelli, Dom Ventimiglia, Dan Madden, Jen Yip, and many more
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Applied Compute
Applied Compute@appliedcompute·
"Everyone's talking about continual learning. That's entirely where this space is going to go." The Applied Compute platform is architected around that premise: build memory and intuition from fragmented data across your entire org, train reasoning models directly on top of it, and close the loop. A model is just one piece. An agent is where it runs, what tools it has, how permissions and auth are handled, how humans guide and instruct it, and the observability around it all. Every interaction should be treated as a training signal so the system can compound over time. Thanks for having us @tbpn
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Connor Sweeney
Connor Sweeney@_ConnorSweeney·
I’m thrilled to announce Baba, The American Healthcare Company. Baba connects older adults and their families with dedicated advocates who can coordinate their care. Our advocates are nurses and social workers who have worked at the front lines of the healthcare system for decades, and who can get folks the resources they need. This company was born of a family tragedy and has grown to support thousands of families across every corner of the country.
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Applied Compute
Applied Compute@appliedcompute·
We partnered with @DoorDash to train a proprietary RL-powered agent that encodes internal QA standards into an automated grader, turning expert judgment into a scalable training signal. The result: a 30% relative reduction in critical menu errors and a production system now live across all US menu traffic. appliedcompute.com/case-studies/d…
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Josh
Josh@JoshPurtell·
@rywalker There are really two options. Run from it or run to it
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ry@rywalker·
look i get weirdly fired up about this but watching a dev go from "ai is coming for my job" to "ai just 10x'd my output" is genuinely one of my favorite things happening right now the ones leaning in are having way more fun than the ones hiding
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Applied Compute
Applied Compute@appliedcompute·
We partnered with @mercor_ai to train knowledge work agents across law, banking, and consulting. Our approach used RL on fewer than 1K expert-authored tasks, full-trajectory logging, and behavioral analysis to pinpoint where models succeeded or failed. What made the difference was closing the feedback loop. Each training run surfaced what the data was actually teaching, where progress stalled, and what to collect next. Fast iteration prevented wasted time and compute on the wrong data. The result is both a better model and a system that improves with use, with learning curves that keep climbing across all three domains.
Mercor@mercor_ai

x.com/i/article/2016…

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will bitsky
will bitsky@willbitsky·
startup name ideas (please reach out to claim) standard machines standard creative standard labs standard food standard buildings general buildings general biology general automation standard energy standard devices standard places standard metals general kinetics standard drones standard agriculture general machines general plastic standard software standard water standard motors
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Applied Compute
Applied Compute@appliedcompute·
RL is a powerful mechanism for training company-specific models on their unique work and data. This is what we do at Applied Compute. A key challenge is how to make RL efficient, because we need runs to be fast (delivered in days), cheap (scalable unit economics), and predictable (not just fast, but reliably fast). Here are some takeaways: • Synchronous RL is wasteful with time and compute. • Asynchronous RL is more efficient but introduces staleness, which causes learning instabilities. • Modeling and simulations can help analytically solve for what configuration leads to optimal efficiency. This allows us to rapidly prototype training configurations, without burning expensive compute cycles on trial runs. Two of our co-founders, @rhythmrg and @lindensli, discussed some of this research at @aiDotEngineer recently, with a focus on the following subproblem: what is the highest throughput way to do RL given a maximum staleness and compute budget?
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Jacob Phillips
Jacob Phillips@jacob_dphillips·
@mervenoyann The Ministral 3/8/14b MM MT Bench results are promising for Large 3!
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merve
merve@mervenoyann·
only downside to this release that I see is that they didn't release multimodal performance but text-only part is super impressive imo
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