- Страна
- США
- Зарплата
- 315 000 $ – 560 000 $
Откликайтесь
на вакансии с ИИ

Research Engineer, Interpretability
Это одна из самых престижных позиций в индустрии ИИ с чрезвычайно высокой компенсацией и возможностью работать над фундаментальными проблемами безопасности человечества. Anthropic — лидер в области интерпретируемости, что гарантирует работу с лучшими специалистами мира.
Сложность вакансии
Роль требует исключительного сочетания навыков системного программирования (5-10 лет опыта) и глубокого понимания архитектуры LLM. Высокая сложность обусловлена необходимостью оптимизации на уровне ядер CUDA/XLA и работы с петабайтами данных в условиях быстро меняющихся исследовательских задач.
Анализ зарплаты
Предлагаемая зарплата ($315k - $560k) значительно выше средней по рынку даже для Сан-Франциско. Она соответствует уровню Senior/Staff Engineer в топовых AI-лабораториях (OpenAI, Google DeepMind) и включает премию за уникальную экспертизу на стыке системного программирования и ML.
Сопроводительное письмо
I am writing to express my strong interest in the Research Engineer, Interpretability position at Anthropic. With over 8 years of experience in building high-performance software and a deep fascination with the inner workings of large language models, I am eager to contribute to your mission of creating reliable and steerable AI systems. My background in optimizing distributed systems and working with complex ML stacks aligns perfectly with the engineering challenges described in your research blog, particularly regarding the scaling of dictionary learning models.
In my previous roles, I have focused on resolving performance bottlenecks and designing robust abstractions that empower research teams to iterate faster. I am particularly impressed by Anthropic's commitment to mechanistic interpretability and the "big science" approach. I am excited by the prospect of building specialized inference infrastructure and tools like Garcon to extract and analyze internal activations, ultimately helping to bring interpretability into production safety audits.
Составьте идеальное письмо к вакансии с ИИ-агентом

Откликнитесь в anthropic уже сейчас
Присоединяйтесь к Anthropic, чтобы раскрыть тайны работы нейросетей и сделать будущее ИИ безопасным!
Описание вакансии
About Anthropic
Anthropic’s mission is to create reliable, interpretable, and steerable AI systems. We want AI to be safe and beneficial for our users and for society as a whole. Our team is a quickly growing group of committed researchers, engineers, policy experts, and business leaders working together to build beneficial AI systems.
About the role:
When you see what modern language models are capable of, do you wonder, "How do these things work? How can we trust them?"
The Interpretability team at Anthropic is working to reverse-engineer how trained models work because we believe that a mechanistic understanding is the most robust way to make advanced systems safe.
Think of us as doing "neuroscience" of neural networks using "microscopes" we build - or reverse-engineering neural networks like binary programs.
More resources to learn about our work:
- Our research blog - covering advances including Monosemantic Features and Circuits
- An Introduction to Interpretability from our research lead, Chris Olah
- The Urgency of Interpretability from CEO Dario Amodei
- Engineering Challenges Scaling Interpretability - directly relevant to this role
- 60 Minutes segment - Around 8:07, see a demo of tooling our team built
- New Yorker article - what it's like to work on one of AI's hardest open problems
Even if you haven’t worked on interpretability before, the infrastructure expertise is similar to what's needed across the lifecycle of a production language model:
- Pretraining: Training dictionary learning models looks a lot like model pretraining - creating stable, performant training jobs for massively parameterized models across thousands of chips
- Inference: Interp runs a customized inference stack. Day-to-day analysis requires services that allow editing a model's internal activations mid-forward-pass - for example, adding a "steering vector"
- Performance: Like all LLM work, we push up against the limits of hardware and software. Rather than squeezing the last 0.1%, we are focused on finding bottlenecks, fixing them and moving ahead given rapidly evolving research and safety mission
The science keeps scaling - and it's now applied directly in safety audits on frontier models, with real deadlines. As our research has matured, engineering and infrastructure have become a bottleneck. Your work will have a direct impact on one of the most important open problems in AI.
Responsibilities:
- Build and maintain the specialized inference and training infrastructure that powers interpretability research - including instrumented forward/backward passes, activation extraction, and steering vector application
- Resolve scaling and efficiency bottlenecks through profiling, optimization, and close collaboration with peer infrastructure teams
- Design tools, abstractions, and platforms that enable researchers to rapidly experiment without hitting engineering barriers
- Help bring interpretability research into production safety audits - with real deadlines and high reliability expectations
- Work across the stack - from model internals and accelerator-level optimization to user-facing research tooling
You may be a good fit if you:
- Have 5-10+ years of experience building software
- Are highly proficient in at least one programming language (e.g., Python, Rust, Go, Java) and productive with Python
- Are extremely curious about unfamiliar domains; can quickly learn and put that knowledge to work, e.g. diving into new layers of the stack to find bottlenecks
- Have a strong ability to prioritize the most impactful work and are comfortable operating with ambiguity and questioning assumptions
- Prefer fast-moving collaborative projects to extensive solo efforts
- Are curious about interpretability research and its role in AI safety (though no research experience is required!)
- Care about the societal impacts and ethics of your work
- Are comfortable working closely with researchers, translating research needs into engineering solutions.
Strong candidates may also have experience with:
- Optimizing the performance of large-scale distributed systems
- Language modeling fundamentals with transformers
- High Performance LLM optimization: memory management, compute efficiency, parallelism strategies, inference throughput optimization
- Working hands-on in a mainstream ML stack - PyTorch/CUDA on GPUs or JAX/XLA on TPUs
- Collaborating closely with researchers and building tooling to support research teams; or directly performed research with complex engineering challenges
Representative Projects:
- Building Garcon, a tool that allows researchers to easily instrument LLMs to extract internal activations
- Designing and optimizing a pipeline to efficiently collect petabytes of transformer activations and shuffle them
- Profiling and optimizing ML training jobs, including multi-GPU parallelism and memory optimization
- Building a steered inference system that applies targeted interventions to model internals at scale (conceptually similar to Golden Gate Claude but for safety research)
Role Specific Location Policy:
- This role is based in the San Francisco office; however, we are open to considering exceptional candidates for remote work on a case-by-case basis.
The annual compensation range for this role is listed below.
For sales roles, the range provided is the role’s On Target Earnings ("OTE") range, meaning that the range includes both the sales commissions/sales bonuses target and annual base salary for the role.
Annual Salary:
$315,000—$560,000 USD
Logistics
Education requirements: We require at least a Bachelor's degree in a related field or equivalent experience. Location-based hybrid policy: Currently, we expect all staff to be in one of our offices at least 25% of the time. However, some roles may require more time in our offices.
Visa sponsorship: We do sponsor visas! However, we aren't able to successfully sponsor visas for every role and every candidate. But if we make you an offer, we will make every reasonable effort to get you a visa, and we retain an immigration lawyer to help with this.
We encourage you to apply even if you do not believe you meet every single qualification. Not all strong candidates will meet every single qualification as listed. Research shows that people who identify as being from underrepresented groups are more prone to experiencing imposter syndrome and doubting the strength of their candidacy, so we urge you not to exclude yourself prematurely and to submit an application if you're interested in this work. We think AI systems like the ones we're building have enormous social and ethical implications. We think this makes representation even more important, and we strive to include a range of diverse perspectives on our team.
Your safety matters to us. To protect yourself from potential scams, remember that Anthropic recruiters only contact you from @anthropic.com email addresses. In some cases, we may partner with vetted recruiting agencies who will identify themselves as working on behalf of Anthropic. Be cautious of emails from other domains. Legitimate Anthropic recruiters will never ask for money, fees, or banking information before your first day. If you're ever unsure about a communication, don't click any links—visit anthropic.com/careers directly for confirmed position openings.
How we're different
We believe that the highest-impact AI research will be big science. At Anthropic we work as a single cohesive team on just a few large-scale research efforts. And we value impact — advancing our long-term goals of steerable, trustworthy AI — rather than work on smaller and more specific puzzles. We view AI research as an empirical science, which has as much in common with physics and biology as with traditional efforts in computer science. We're an extremely collaborative group, and we host frequent research discussions to ensure that we are pursuing the highest-impact work at any given time. As such, we greatly value communication skills.
The easiest way to understand our research directions is to read our recent research. This research continues many of the directions our team worked on prior to Anthropic, including: GPT-3, Circuit-Based Interpretability, Multimodal Neurons, Scaling Laws, AI & Compute, Concrete Problems in AI Safety, and Learning from Human Preferences.
Come work with us!
Anthropic is a public benefit corporation headquartered in San Francisco. We offer competitive compensation and benefits, optional equity donation matching, generous vacation and parental leave, flexible working hours, and a lovely office space in which to collaborate with colleagues. Guidance on Candidates' AI Usage: Learn about our policy for using AI in our application process
Создайте идеальное резюме с помощью ИИ-агента

Навыки
- Python
- Rust
- Go
- Java
- PyTorch
- CUDA
- JAX
- XLA
- Distributed Systems
- Transformers
- Machine Learning Infrastructure
- Performance Optimization
Возможные вопросы на собеседовании
Проверка опыта работы с низкоуровневой оптимизацией, критически важной для этой роли.
Расскажите о самом сложном случае оптимизации производительности распределенной системы, с которым вы сталкивались. Как вы профилировали проблему и каких результатов достигли?
Оценка понимания специфики работы с активациями моделей, что является ядром интерпретируемости.
Как бы вы спроектировали систему для эффективного сбора и перемешивания (shuffling) петабайтов активаций трансформеров в реальном времени?
Проверка способности инженера работать в тесной связке с исследователями.
Опишите ситуацию, когда вам нужно было перевести абстрактную исследовательскую идею в надежное инженерное решение. С какими трудностями вы столкнулись?
Проверка фундаментальных знаний архитектуры LLM.
В чем заключаются основные сложности при реализации инструментария для редактирования внутренних активаций модели во время прямого прохода (forward pass)?
Оценка мотивации и понимания миссии компании.
Почему, на ваш взгляд, механистическая интерпретируемость является ключом к безопасности ИИ, и как инженерная инфраструктура может ускорить прогресс в этой области?
Похожие вакансии
MLOps Engineer (Python)
AI Engineer (CV & Navigation)
Middle, Middle+, Senior GenAI/LLM Разработчик
Middle / Senior GenAI Engineer (CV)
AI Engineer / AI Mentor
Junior разработчик agent AI-систем
1000+ офферов получено
Устали искать работу? Мы найдём её за вас
Quick Offer улучшит ваше резюме, подберёт лучшие вакансии и откликнется за вас. Результат — в 3 раза больше приглашений на собеседования и никакой рутины!
- Страна
- США
- Зарплата
- 315 000 $ – 560 000 $