- Страна
- США
- Зарплата
- 199 675 $ – 283 500 $
Откликайтесь
на вакансии с ИИ

Staff Machine Learning Scientist
Исключительная вакансия с высокой социальной значимостью (борьба с раком), конкурентной зарплатой и возможностью удаленной работы. Компания предлагает отличный пакет бонусов и работу на острие науки.
Сложность вакансии
Высокая сложность обусловлена требованием степени PhD и более 6 лет опыта после нее. Роль требует глубоких знаний как в ML/DL, так и в вычислительной биологии, а также умения вести независимые исследования.
Анализ зарплаты
Предлагаемая зарплата ($200k–$283k) находится на верхнем уровне рыночных значений для позиции Staff Scientist в США, особенно учитывая дополнительные бонусы и опционы. Это соответствует высоким требованиям к квалификации (PhD + 6 лет опыта).
Сопроводительное письмо
I am writing to express my strong interest in the Staff Machine Learning Scientist position at Freenome. With over six years of post-PhD experience in developing complex deep learning models and a deep-seated passion for applying AI to biological challenges, I am eager to contribute to your mission of transforming cancer detection. My background in training large-scale foundation models and my proficiency with PyTorch and Hugging Face align perfectly with your requirements for driving independent research in computational biology.
Throughout my career, I have focused on building robust, interpretable models that generalize well to novel data, a skill I look forward to applying to Freenome’s molecular signal identification. I am particularly drawn to your cross-functional approach, as I have extensive experience collaborating with computational biologists and ML engineers to bridge the gap between cutting-edge research and production-ready infrastructure. I am excited about the possibility of bringing my expertise in self-supervised learning and genomic data analysis to your talented team in Brisbane.
Составьте идеальное письмо к вакансии с ИИ-агентом

Откликнитесь в freenome уже сейчас
Присоединяйтесь к Freenome, чтобы создавать инновационные алгоритмы ранней диагностики рака и спасать жизни с помощью ИИ.
Описание вакансии
About this opportunity:
At Freenome, we are seeking a Staff Machine Learning Scientist to help grow the Machine Learning Science team, within the Computational Science department. The ideal candidate has a strong knowledge of artificial intelligence (AI), including machine learning (ML) fundamentals and extensive experience with deep learning (DL) methods, a track record of successfully using these methods to answer complex research questions, the ability to drive independent research and thrive in a highly cross-functional environment.
They will be responsible for the development of algorithms for early, blood-based detection tests for cancer. They will build on a foundation of ML/DL and statistical skills to develop models for identifying molecular signals from blood. They will also work with computational biologists, molecular biologists and ML engineers to design and drive research experiments, and will have a significant impact on the continued growth of an organization dedicated to changing the entire landscape of cancer.
The role reports to the Director, Machine Learning Science. This role can be a Hybrid role based in our Brisbane, California headquarters (2-3 days per week in office), or remote.
What you’ll do:
- Independently pursue cutting edge research in AI applied to biological problems (including cancer research, genomics, computational biology, immunology, etc.).
- Build new models or fine-tune existing models to identify biological changes resulting from disease.
- Build models that achieve high accuracy and that generalize robustly to new data.
- Apply contemporary interpretability techniques to provide a deeper understanding of the underlying signal identified by the model, ideally suggesting potential biological mechanisms.
- Work closely with ML Engineering partners to ensure that Freenome’s computational infrastructure supports optimal model training and iteration.
- Take a mindful, transparent, and humane approach to your work.
Must haves:
- PhD or equivalent research experience with an AI emphasis and in a relevant, quantitative field such as Computer Science, Statistics, Mathematics, Engineering, Computational Biology, or Bioinformatics.
- 6+ years of postdoc or post-PhD industry experience achieving impactful results using relevant modeling techniques.
- Expertise demonstrated by research publications or industry achievements, in driving independent research in applied machine learning, deep learning and complex data modeling.
- Practical and theoretical understanding of fundamental ML models like generalized linear models, kernel machines, decision trees and forests, neural networks, boosting and model aggregation.
- Practical and theoretical understanding of DL models like large language models or other foundation models.
- Extensive experience with training paradigms like supervised learning, self-supervised learning, and contrastive learning.
- Proficient in current state of the art in ML/DL approaches in different domains, with an ability to envision their applications in biological data.
- Proficiency in a general-purpose programming language: Python, R, Java, C, C++, etc.
- Proficiency in one or more ML frameworks such as; Pytorch, Tensorflow and Jax; and ML platforms like Hugging Face.
- Experience in ML analysis and developer tools like TensorBoard, MLflow or Weights & Biases.
- Excellent ability to communicate across disciplines, work collaboratively, and make progress in smaller steps via experimental iterations.
- Proficient at productive cross-functional scientific communication and collaboration with software engineers and computational biologists.
- A passion for innovation and demonstrated initiative in tackling new areas of research.
Nice to haves:
- Deep domain-specific experience in computational biology, genomics, proteomics or a related field.
- Experience in building DL models for genomic data, with knowledge of state-of-the-art DNA foundation models.
- Experience in NGS data analysis and bioinformatic pipelines.
- Experience with containerized cloud computing environments such as Docker in GCP, Azure, or AWS.
- Experience in a production software engineering environment, including the use of automated regression testing, version control, and deployment systems.
Benefits and additional information:
The US target range of our base salary for new hires is $199,675.00 - $283,500.00. 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-HYBRID
Создайте идеальное резюме с помощью ИИ-агента

Навыки
- Python
- R
- PyTorch
- TensorFlow
- JAX
- Hugging Face
- Deep Learning
- Machine Learning
- Bioinformatics
- Genomics
- Docker
- MLflow
- Weights & Biases
- TensorBoard
Возможные вопросы на собеседовании
Проверка глубины теоретических знаний в области современных архитектур.
Как бы вы адаптировали архитектуру трансформеров или других foundation models для работы с разреженными геномными данными?
Важно для медицинской сферы, где понимание причин принятия решения моделью критично.
Какие методы интерпретируемости (например, SHAP, Integrated Gradients) вы считаете наиболее эффективными для биологических сигналов и почему?
Оценка практического опыта обучения моделей.
Опишите ваш опыт использования self-supervised learning для предварительного обучения на неразмеченных биологических данных.
Проверка навыков командной работы на стыке дисциплин.
Расскажите о случае, когда вам пришлось объяснять сложную ML-концепцию коллегам-биологам для совместного планирования эксперимента.
Оценка инженерной зрелости.
Как вы обеспечиваете воспроизводимость результатов исследований при работе с большими наборами данных и сложными пайплайнами обучения?
Похожие вакансии
Research Data Scientist
Research Data Scientist
Python Developer
Scientifique de données
Machine Learning Developer, Predictive Maintenance
Bioinformatics Data Scientist
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
- 199 675 $ – 283 500 $