Anthropic Starts Poaching Scientists? $27K Weekly Onsite Stipend to Fix Claude's Expert-Level Errors

marsbit發佈於 2026-04-22更新於 2026-04-22

文章摘要

Anthropic has launched a new STEM Fellow program, offering $3,800 per week for a three-month, in-person residency in San Francisco. The role targets experts from science, technology, engineering, and mathematics (STEM) fields—machine learning experience is helpful but not required. Instead, Anthropic values scientific judgment and a willingness to learn quickly. Fellows will work with Claude models and internal tools under the guidance of an Anthropic researcher. Example projects include a materials scientist identifying errors in Claude’s reasoning or a climate scientist integrating atmospheric modeling software with Claude. The goal is to have experts "tell Claude where it's wrong" and improve its scientific capabilities. This initiative is part of Anthropic’s broader strategy to strengthen its scientific ecosystem, following earlier programs like the AI Safety Fellows and AI for Science programs. The company acknowledges that current AI models, while powerful, still produce high-confidence errors and lack end-to-end research autonomy. The program aims to embed domain expertise directly into model development, turning scientists into "high-level reviewers" for AI. Anthropic CEO Dario Amodei has previously emphasized AI’s potential to accelerate scientific breakthroughs, particularly in biology and healthcare. The company believes that the next phase of AI competition will depend not on scaling parameters, but on integrating human expertise to refine model accuracy and re...

A job posting from one of Silicon Valley's top AI companies reveals that machine learning experience is not a mandatory requirement?

Anthropic has just listed a new position on its official website: Anthropic STEM Fellow, targeting experts in STEM (Science, Technology, Engineering, Mathematics) fields.

In the STEM Fellow job description, Anthropic states that machine learning experience is helpful but not required, emphasizing that scientific judgment and a willingness to learn quickly are more important.

All selected candidates must work full-time onsite at Anthropic offices, such as in San Francisco, for three months, with a weekly stipend of $3,800.

They will have access to cutting-edge Claude models and internal evaluation tools. Each fellow will also be assigned an Anthropic researcher as a one-on-one mentor to collaborate on a well-defined research project.

Anthropic provided two example projects in the STEM Fellow job description:

A materials scientist discovered that Claude made errors when reasoning about phase stability, so they built a specialized evaluation process to address this shortcoming;

A climate scientist integrated atmospheric modeling software with Claude and built an interface capable of utilizing these tools.

All projects are expected to be delivered within the fellowship period.

Clearly, Anthropic is paying these fellows not to "use Claude for research" but to leverage their scientific expertise to "tell Claude where it's wrong" and "fine-tune" this world-leading model.

Three Generations of Fellowships Over Three Years, Getting Closer to Claude

Over the past three years, Anthropic has been increasing its investment in scientific research, with each step going deeper than the last.

The first generation was the AI Safety Fellows Program in 2024.

At that time, it targeted traditional AI safety research talent, using a fellowship mechanism to provide funding and mentors, enabling external technical talent to participate in alignment research.

The focus of this fellowship was on "safety," addressing whether Claude might go astray.

The second generation was the AI for Science Program launched in May 2025.

Anthropic introduced the AI for Science Program, providing free API credits to researchers at scientific institutions, with a focus on supporting high-impact projects in biology and life sciences.

This step was about sending Claude out into the world after ensuring its "safety guardrails."

The third generation is the current Anthropic STEM Fellow.

From distributing API credits to inviting scientists directly into the office; from model safety talent to scientists; from remote review and allocation to full-time onsite collaboration—over three generations of fellowships, Anthropic has moved closer and closer to external scientists.

The first generation sought "people who can make Claude safer";

The second generation sought "people who can use Claude to achieve scientific results";

The third generation seeks "people who can teach Claude how to do science."

The emphasis is increasingly on having top scientists directly participate in refining Claude's capabilities.

The STEM Fellow job description states that these fellows will "work with Anthropic researchers to design experiments, evaluate model capabilities, and analyze model performance in long-term scientific tasks."

This is collaboration at the co-creation level.

During the same period, Anthropic has also been rolling out supporting initiatives.

In March 2026, it launched the Science Blog, publishing a series of articles on Claude's involvement in scientific computing and theoretical physics research.

Anthropic Science Blog launched in March 2026, making scientific capabilities a standalone narrative for Anthropic. https://www.anthropic.com/research/introducing-anthropic-science

It is also a core partner in the U.S. Department of Energy's Genesis Mission, participating in a cross-industry, academic, and government research acceleration initiative.

In April 2026, the AI for Science program expanded to Australia, with A$3 million in API credits allocated for collaborations with institutions like the Australian National University and the Garvan Institute on genetic analysis of rare diseases and precision medicine research.

Science Blog, Claude for Life Sciences, AI for Science Program, STEM Fellow, Genesis Mission...

The thread behind this series of actions is clear:

Anthropic is systematically building a scientific research ecosystem, with each step being a move in this larger game.

The Real Bottleneck in AI Research Isn't Compute, It's "Judgment"

Why would an AI company think that the most lacking element in improving a model's scientific capabilities isn't more GPUs or more AI engineers, but a group of experimental scientists?

The answer lies in one of Anthropic's own blog posts.

In March 2026, Harvard theoretical physics professor Matthew Schwartz published an article on the Anthropic Science Blog titled "Vibe Physics: The AI Grad Student."

https://www.anthropic.com/research/vibe-physics?utm_source=chatgpt.com

He conducted an experiment: having Claude Opus 4.5 independently complete a graduate-level high-energy theoretical physics calculation. He himself did not intervene, only guiding Claude with text prompts.

The results were astonishing. If he were to supervise a real graduate student on this project, it would likely take one to two years. If he did it alone, three to five months. Working with Claude, it took two weeks.

It was 10 times faster.

Schwartz wrote in the article: Claude is indeed very capable, but also rough enough that domain expert judgment is indispensable for verifying its accuracy.

He gave an example.

Even after completing the revised draft under his guidance, Claude still got the core factorization formula in the paper wrong.

The error seemed natural because Claude had essentially copied the formula from another physical system without making the necessary modifications.

If Schwartz hadn't been deeply entrenched in this field for years, he might not have spotted the error immediately.

He also found that Claude kept adjusting parameters just to make the charts fit, rather than identifying the real mistake. "It faked the results, hoping I wouldn't notice."

Furthermore, Claude didn't know what to check to verify its own results.

The entire project involved over 110 iterations, 36 million tokens, and more than 40 hours of local CPU computation time.

Finally, Schwartz gave a precise rating:

Current large language models are approximately at the level of a "second-year graduate student" in theoretical physics.

He also offered another, more crucial judgment: AI has not yet achieved end-to-end autonomous scientific research.

Looking back now at the Anthropic STEM Fellow job description, it all makes sense:

Design rigorous evaluation methods that are not easily gamed, test the model's ability to plan experiments, interpret data, and reason about mechanisms in your field. Systematically identify where it is "confident but wrong." Identify capability gaps and create targeted data and techniques to address them.

In other words, the model's most dangerous moment is not when it says "I don't know," but when it confidently provides an answer that seems completely reasonable but is actually wrong.

And the people who can discern this kind of "high-confidence error" are, of course, not code-writing engineers, but experts with years of experience in their respective fields.

Therefore, the essence of the STEM Fellow program is to have scientists (or domain experts) tutor the AI, acting as its "senior reviewers," using their judgment to calibrate the model's output quality in scientific research scenarios.

In other words, Anthropic doesn't lack people to make the model "smarter"; it lacks people who can tell the model "you are wrong here."

Amodei's Obsession and Anthropic's Bet

Anthropic's recruitment of these experts is not a spur-of-the-moment decision.

Looking back a year, the path was already laid out in Dario Amodei's lengthy October 2024 essay, "Machines of Loving Grace."

https://www.darioamodei.com/essay/machines-of-loving-grace

In this essay, Amodei prioritized AI application scenarios.

Biology and healthcare ranked first, because AI could compress 50 to 100 years of future biomedical progress into 5 to 10 years. More importantly is how he defined AI's role in this endeavor.

Amodei believes AI should be a virtual biologist:

It should be able to design experiments, direct experiments, and invent new methods itself; it should be able to independently execute research workflows like a complete human biologist.

This elevates the role of AI in science from efficiency improvement to "direct participation." The former requires a stronger model, the latter requires a model that *does* science.

Amodei also provided a rationale.

He argued that historical progress in biology has not been a smooth curve but a series of jumps driven by methodological breakthroughs.

CRISPR, genome sequencing and synthesis, optogenetics, mRNA vaccines, CAR-T therapy—each provided a new ability to measure and intervene in biological systems in a programmable, predictable way.

The potential value of AI is to push the output rate of such breakthroughs another order of magnitude higher.

Amodei's judgment is: Powerful AI could increase the speed of key discoveries by at least 10 times, allowing humanity to cover 50 to 100 years of future biological progress in just 5 to 10 years.

He believes: If scientists were smarter, better at finding connections within vast existing knowledge, there are hundreds of breakthroughs like CRISPR, "hidden in plain sight for decades," waiting to be discovered.

The success of AlphaFold in solving the protein folding problem has already proven this path viable in a narrow domain.

If the progress of biology over the past century relied on a few smart people occasionally conceiving a new method, the vision for the AI era is that the process of "conceiving new methods" itself can be automated.

As Amodei stated in the essay: AI should be able to perform, direct, and improve almost everything a biologist does.

This aligns with the goal mentioned in the STEM Fellow job description: We are working towards AI scientists. Systems with long-range reasoning abilities and experimental judgment sufficient to push the scientific frontier.

Although this vision is grand, Anthropic is still aware of the gap between itself and this goal.

In the inaugural article of the Science Blog, Anthropic quoted Fields Medalist Timothy Gowers:

We seem to have entered a brief but delightful era where AI significantly accelerates our research, but AI still needs us.

Anthropic itself admits that although models have demonstrated capabilities surpassing humans in certain parts of the research workflow, they also fabricate results, over-conform to users, and get stuck on problems that seem basic to practitioners in the field.

From Hoarding GPUs to Betting on Scientists

Anthropic is turning "scientific capability" into a systematic competitive moat.

Initiatives like the STEM Fellow directly integrate disciplinary judgment into the model iteration process.

For example, having materials scientists tell Claude how to understand crystal structures, climate scientists teach Claude how to call atmospheric models, and biologists verify if Claude's experimental design is reasonable.

These things cannot be achieved by stacking GPUs or benchmarking.

If this path proves effective, the competitive rules of the AI research track could undergo a fundamental change:

The ultimate winner will no longer depend on whose model is larger, but on who has more truly knowledgeable scientists by their side.

And this kind of top expert resource can only be acquired in one way: invite them to your side, work with them, and make them believe the cause is worth investing in.

This is Anthropic's bet.

But it's not just Anthropic, and not just scientists. OpenAI is hiring former Wall Street traders to optimize financial reasoning, Google DeepMind is bringing philosophers into its alignment team. Everyone is realizing the same thing:

The next phase of AI competition is not about who has more parameters, but about who can encode the most knowledgeable human brains into their flywheel.

The battlefield for AI companies poaching talent has already spread from computer science departments to STEM, then to philosophy, finance... and will go even further in the future.

References:

https://x.com/AnthropicAI/status/2046362119755727256

https://www.anthropic.com/careers/jobs/4493001008

https://www.anthropic.com/research/introducing-anthropic-science

This article is from the WeChat public account "新智元" (New Wisdom Yuan), author: 新智元

相關問答

QWhat is the main purpose of Anthropic's new STEM Fellow program?

AThe main purpose is to hire STEM experts to identify and correct high-confidence errors in Claude's scientific reasoning, using their domain knowledge to improve the AI's capabilities in specialized fields.

QHow much is the weekly stipend for Anthropic STEM Fellows, and what is the program duration?

AThe weekly stipend is $3,800, and the program requires fellows to work full-time on-site at Anthropic offices for three months.

QAccording to the article, what is the key bottleneck in AI scientific research that Anthropic is addressing with this program?

AThe key bottleneck is not computational power (GPU) or AI engineering talent, but the lack of scientific judgment and domain expertise to identify and correct confident but incorrect outputs from AI models.

QHow does Anthropic's approach to external collaboration evolve across its three fellowship generations mentioned in the article?

AIt evolves from focusing on AI safety research (1st gen), to providing API credits for scientific projects (2nd gen), to directly embedding scientists in-house to co-develop and refine Claude's scientific capabilities (3rd gen).

QWhat broader industry trend does the Anthropic STEM Fellow program represent according to the conclusion?

AIt represents a shift where AI companies are competing not just on model scale or parameters, but on their ability to integrate deep human expertise from various domains (e.g., science, finance, philosophy) into their development process.

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什麼是 $S$

什麼是 AGENT S

Agent S:Web3中自主互動的未來 介紹 在不斷演變的Web3和加密貨幣領域,創新不斷重新定義個人如何與數字平台互動。Agent S是一個開創性的項目,承諾通過其開放的代理框架徹底改變人機互動。Agent S旨在簡化複雜任務,為人工智能(AI)提供變革性的應用,鋪平自主互動的道路。本詳細探索將深入研究該項目的複雜性、其獨特特徵以及對加密貨幣領域的影響。 什麼是Agent S? Agent S是一個突破性的開放代理框架,專門設計用來解決計算機任務自動化中的三個基本挑戰: 獲取特定領域知識:該框架智能地從各種外部知識來源和內部經驗中學習。這種雙重方法使其能夠建立豐富的特定領域知識庫,提升其在任務執行中的表現。 長期任務規劃:Agent S採用經驗增強的分層規劃,這是一種戰略方法,可以有效地分解和執行複雜任務。此特徵顯著提升了其高效和有效地管理多個子任務的能力。 處理動態、不均勻的界面:該項目引入了代理-計算機界面(ACI),這是一種創新的解決方案,增強了代理和用戶之間的互動。利用多模態大型語言模型(MLLMs),Agent S能夠無縫導航和操作各種圖形用戶界面。 通過這些開創性特徵,Agent S提供了一個強大的框架,解決了自動化人機互動中涉及的複雜性,為AI及其他領域的無數應用奠定了基礎。 誰是Agent S的創建者? 儘管Agent S的概念根本上是創新的,但有關其創建者的具體信息仍然難以捉摸。創建者目前尚不清楚,這突顯了該項目的初期階段或戰略選擇將創始成員保密。無論是否匿名,重點仍然在於框架的能力和潛力。 誰是Agent S的投資者? 由於Agent S在加密生態系統中相對較新,關於其投資者和財務支持者的詳細信息並未明確記錄。缺乏對支持該項目的投資基礎或組織的公開見解,引發了對其資金結構和發展路線圖的質疑。了解其支持背景對於評估該項目的可持續性和潛在市場影響至關重要。 Agent S如何運作? Agent S的核心是尖端技術,使其能夠在多種環境中有效運作。其運營模型圍繞幾個關鍵特徵構建: 類人計算機互動:該框架提供先進的AI規劃,力求使與計算機的互動更加直觀。通過模仿人類在任務執行中的行為,承諾提升用戶體驗。 敘事記憶:用於利用高級經驗,Agent S利用敘事記憶來跟蹤任務歷史,從而增強其決策過程。 情節記憶:此特徵為用戶提供逐步指導,使框架能夠在任務展開時提供上下文支持。 支持OpenACI:Agent S能夠在本地運行,使用戶能夠控制其互動和工作流程,與Web3的去中心化理念相一致。 與外部API的輕鬆集成:其多功能性和與各種AI平台的兼容性確保了Agent S能夠無縫融入現有技術生態系統,成為開發者和組織的理想選擇。 這些功能共同促成了Agent S在加密領域的獨特地位,因為它以最小的人類干預自動化複雜的多步任務。隨著項目的發展,其在Web3中的潛在應用可能重新定義數字互動的展開方式。 Agent S的時間線 Agent S的發展和里程碑可以用一個時間線來概括,突顯其重要事件: 2024年9月27日:Agent S的概念在一篇名為《一個像人類一樣使用計算機的開放代理框架》的綜合研究論文中推出,展示了該項目的基礎工作。 2024年10月10日:該研究論文在arXiv上公開,提供了對框架及其基於OSWorld基準的性能評估的深入探索。 2024年10月12日:發布了一個視頻演示,提供了對Agent S能力和特徵的視覺洞察,進一步吸引潛在用戶和投資者。 這些時間線上的標記不僅展示了Agent S的進展,還表明了其對透明度和社區參與的承諾。 有關Agent S的要點 隨著Agent S框架的持續演變,幾個關鍵特徵脫穎而出,強調其創新性和潛力: 創新框架:旨在提供類似人類互動的直觀計算機使用,Agent S為任務自動化帶來了新穎的方法。 自主互動:通過GUI自主與計算機互動的能力標誌著向更智能和高效的計算解決方案邁進了一步。 複雜任務自動化:憑藉其強大的方法論,能夠自動化複雜的多步任務,使過程更快且更少出錯。 持續改進:學習機制使Agent S能夠從過去的經驗中改進,不斷提升其性能和效率。 多功能性:其在OSWorld和WindowsAgentArena等不同操作環境中的適應性確保了它能夠服務於廣泛的應用。 隨著Agent S在Web3和加密領域中的定位,其增強互動能力和自動化過程的潛力標誌著AI技術的一次重大進步。通過其創新框架,Agent S展現了數字互動的未來,為各行各業的用戶承諾提供更無縫和高效的體驗。 結論 Agent S代表了AI與Web3結合的一次大膽飛躍,具有重新定義我們與技術互動方式的能力。儘管仍處於早期階段,但其應用的可能性廣泛且引人入勝。通過其全面的框架解決關鍵挑戰,Agent S旨在將自主互動帶到數字體驗的最前沿。隨著我們深入加密貨幣和去中心化的領域,像Agent S這樣的項目無疑將在塑造技術和人機協作的未來中發揮關鍵作用。

686 人學過發佈於 2025.01.14更新於 2025.01.14

什麼是 AGENT S

如何購買S

歡迎來到HTX.com!在這裡,購買Sonic (S)變得簡單而便捷。跟隨我們的逐步指南,放心開始您的加密貨幣之旅。第一步:創建您的HTX帳戶使用您的 Email、手機號碼在HTX註冊一個免費帳戶。體驗無憂的註冊過程並解鎖所有平台功能。立即註冊第二步:前往買幣頁面,選擇您的支付方式信用卡/金融卡購買:使用您的Visa或Mastercard即時購買Sonic (S)。餘額購買:使用您HTX帳戶餘額中的資金進行無縫交易。第三方購買:探索諸如Google Pay或Apple Pay等流行支付方式以增加便利性。C2C購買:在HTX平台上直接與其他用戶交易。HTX 場外交易 (OTC) 購買:為大量交易者提供個性化服務和競爭性匯率。第三步:存儲您的Sonic (S)購買Sonic (S)後,將其存儲在您的HTX帳戶中。您也可以透過區塊鏈轉帳將其發送到其他地址或者用於交易其他加密貨幣。第四步:交易Sonic (S)在HTX的現貨市場輕鬆交易Sonic (S)。前往您的帳戶,選擇交易對,執行交易,並即時監控。HTX為初學者和經驗豐富的交易者提供了友好的用戶體驗。

1.4k 人學過發佈於 2025.01.15更新於 2025.03.21

如何購買S

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