- Страна
- США
- Зарплата
- 161 925 $ – 227 325 $
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Senior Machine Learning Engineer
Отличная вакансия в социально значимой сфере (HealthTech) с конкурентной зарплатой, возможностью удаленной работы и использованием передового стека технологий. Компания предлагает прозрачный диапазон оплаты и пакет бонусов.
Сложность вакансии
Высокая сложность обусловлена требованием глубоких знаний в области распределенного обучения (Ray, DeepSpeed), оптимизации GPU и работы с огромными объемами геномных данных. Роль требует сочетания навыков ML-исследователя и инженера инфраструктуры.
Анализ зарплаты
Предлагаемая зарплата ($162k - $227k) полностью соответствует и даже немного превышает рыночные стандарты для Senior ML Engineer в районе залива Сан-Франциско и удаленно по США. Верхняя граница диапазона характерна для топовых технологических компаний.
Сопроводительное письмо
I am writing to express my strong interest in the Senior Machine Learning Research Engineer position at Freenome. With over five years of experience in developing scalable AI/ML pipelines and a deep proficiency in PyTorch and distributed computing frameworks like Ray and DeepSpeed, I am confident in my ability to enhance your DL operations. My background in optimizing hardware utilization and managing massive-scale datasets aligns perfectly with the MLS team's mission to leverage genomic data for early cancer detection.
Throughout my career, I have successfully bridged the gap between research and production, implementing robust CI/CD practices and containerized solutions using Docker and Kubernetes. I am particularly drawn to Freenome's interdisciplinary approach and the opportunity to apply my expertise in high-volume data processing and model optimization to such a meaningful cause. I look forward to the possibility of contributing to your team's efforts in reducing cancer mortality.
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Откликнитесь в freenome уже сейчас
Присоединяйтесь к Freenome, чтобы создавать ML-инфраструктуру нового поколения для ранней диагностики рака и спасения жизней.
Описание вакансии
About this opportunity:
At Freenome, we are seeking a Senior Machine Learning Research Engineer to join the Machine Learning Science (MLS) team, within the Computational Science department. The ideal candidate has a strong knowledge in designing and building deep learning (DL) pipelines, and expertise in creating reliable, scalable artificial intelligence/machine learning (AI/ML) systems in a cloud environment.
The MLS team at Freenome develops DL models using massive-scale genomic data that presents significant challenges for current training paradigms. The Senior Machine Learning Research Engineer will primarily be responsible for developing and deploying the infrastructure needed to support development of such DL models: enabling distributed DL pipelines, optimizing hardware utilization for efficient training, and performing model optimizations. As part of an interdisciplinary R&D team, they will work in close collaboration with machine learning scientists, computational biologists and software engineers to accelerate the development of state-of-the-art ML/AI models and help Freenome achieve its mission of reducing cancer mortality via accessible early detection.
The role reports to the Director of Machine Learning Science. This can be a hybrid role based in our Brisbane, California headquarters (2-3 days per week in office), or remote.
What you’ll do:
- Implement and refine DL pipelines on distributed computing platforms enhancing the speed and efficiency of DL operations including model training, data handling, model management, and inference.
- Collaborate closely with ML scientists and software engineers to understand current challenges and requirements and ensure that the DL model development pipelines you create are perfectly aligned with scientific goals and operational needs.
- Continuously monitor, evaluate, and optimize DL model training pipelines for performance and scalability.
- Stay up to date with the latest advancements in AI, ML, and related technologies, and quickly learn and adapt new tools and frameworks, if necessary.
- Develop and maintain robust and reproducible DL pipelines that guarantee that DL pipelines can be reliably executed, maintaining consistency and accuracy of results.
- Drive performance improvements across our stack through profiling, optimization, and benchmarking. Implement efficient caching solutions and debug distributed systems to accelerate both training and evaluation pipelines.
- Act as a bridge facilitating communication between the engineering and scientific teams, documenting and sharing best practices to foster a culture of learning and continuous improvement.
Must haves:
- MS or equivalent experience in a relevant, quantitative field such as Computer Science, Statistics, Mathematics, Software Engineering, with an emphasis on AI/ML theory and/or practical development.
- 5+ years of post-MS industry experience working on developing AI/ML software engineering pipelines.
- Proficiency in a general-purpose programming language: Python (preferred), Java, Julia, C, C++, etc.
- Strong knowledge of ML and DL fundamentals and hands-on experience with machine learning frameworks such as PyTorch, TensorFlow, Jax or Scikit-learn.
- In-depth knowledge of scalable and distributed computing platforms that support complex model training (such as Ray or DeepSpeed) and their integration with ML developer tools like TensorBoard, Wandb, or MLflow.
- Experience with cloud platforms (e.g., AWS, Google Cloud, Azure) and how to deploy and manage AI/ML models and pipelines in a cloud environment.
- Understanding of containerization technologies (e.g., Docker) and computing resource orchestration tools (e.g., Kubernetes) for deploying scalable ML/AI solutions.
- Proven track record of developing and optimizing workflows for training DL models, large language models (LLMs), or similar for problems with high data complexity and volume.
- Experience managing large datasets, including data storage (such as HDFS or Parquet on S3), retrieval, and efficient data processing techniques (via libraries and executors such as PyArrow and Spark).
- Proficiency in version control systems (e.g., Git) and continuous integration/continuous deployment (CI/CD) practices to maintain code quality and automate development workflows.
- Expertise in building and launching large-scale ML frameworks in a scientific environment that supports the needs of a research team.
- Excellent ability to work effectively with cross-functional teams and communicate across disciplines.
Nice to haves:
- Experience working with large-scale genomics or biological datasets.
- Experience managing multimodal datasets, such as combinations of sequence, text, image, and other data.
- Experience GPU/Accelerator programming and kernel development (such as CUDA, Triton or XLA).
- Experience with infrastructure-as-code and configuration management.
- Experience cultivating MLOps and ML infrastructure best practices, especially around reliability, provisioning and monitoring.
- Strong track record of contributions to relevant DL projects, e.g. on github.
Benefits and additional information:
The US target range of our base salary for new hires is $161,925 - $227,325 You will also be eligible to receive equity, cash bonuses, and a full range of medical, financial, and other benefits depending on the position offered. Please note that individual total compensation for this position will be determined at the Company’s sole discretion and may vary based on several factors, including but not limited to, location, skill level, years and depth of relevant experience, and education. We invite you to check out our career page @ freenome.com/job-openings/ for additional company information.
Freenome is proud to be an equal-opportunity employer, and we value diversity. Freenome does not discriminate on the basis of race, color, religion, marital status, age, national origin, ancestry, physical or mental disability, medical condition, pregnancy, genetic information, gender, sexual orientation, gender identity or expression, veteran status, or any other status protected under federal, state, or local law.
Applicants have rights under Federal Employment Laws.
- Family & Medical Leave Act (FMLA)
- Equal Employment Opportunity (EEO)
- Employee Polygraph Protection Act (EPPA)
#LI-REMOTE
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Навыки
- Python
- PyTorch
- TensorFlow
- JAX
- Scikit-learn
- Ray
- DeepSpeed
- Docker
- Kubernetes
- AWS
- Google Cloud
- Azure
- Spark
- PyArrow
- Git
- CI/CD
- MLOps
- CUDA
- Triton
- XLA
Возможные вопросы на собеседовании
Проверка опыта работы с распределенными системами, что критично для обучения моделей на геномных данных.
Расскажите о вашем опыте настройки распределенного обучения с использованием Ray или DeepSpeed. С какими основными проблемами масштабирования вы сталкивались?
Оценка навыков оптимизации производительности, упомянутых в описании.
Как бы вы подошли к профилированию и устранению узких мест в пайплайне обучения, если загрузка GPU нестабильна или слишком низка?
Проверка умения работать с большими данными в облаке.
Какие стратегии кэширования и форматы хранения данных (например, Parquet) вы использовали для ускорения загрузки данных в модель при работе с S3?
Оценка навыков MLOps и обеспечения воспроизводимости.
Как вы обеспечиваете воспроизводимость результатов в распределенных DL-пайплайнах при частых изменениях в коде и данных?
Проверка способности работать на стыке науки и инженерии.
Опишите случай, когда вам пришлось адаптировать сложную теоретическую модель исследователей под требования продакшн-инфраструктуры. Как вы находили компромисс?
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- Страна
- США
- Зарплата
- 161 925 $ – 227 325 $