- Страна
- США
- Зарплата
- 160 000 $ – 200 000 $
Откликайтесь
на вакансии с ИИ

Machine Learning Engineer
Отличное предложение от хорошо финансируемого стартапа с прозрачной вилкой зарплаты и сильным стеком технологий. Высокий балл за четкие требования, интересные задачи на стыке физического и цифрового миров и полный пакет бенефитов.
Сложность вакансии
Роль требует глубоких знаний в MLOps и инфраструктуре (Airflow, Kubeflow), а также более 5 лет опыта работы с высоконагруженными системами. Высокая планка ожиданий по части интеграции моделей в продакшн и работы с Big Data.
Анализ зарплаты
Предложенная зарплата ($160k - $200k) полностью соответствует рыночным стандартам для Senior/Staff ML-инженеров в Кремниевой долине. Нижняя граница совпадает с медианой, а верхняя позволяет привлечь высококвалифицированных специалистов.
Сопроводительное письмо
I am writing to express my interest in the Machine Learning Engineer position at RADAR. With over five years of experience in building and scaling production ML systems, I have developed a deep expertise in Python, PyTorch, and cloud-based ML platforms. My background in designing robust CI/CD pipelines for model deployment and optimizing feature engineering workflows aligns perfectly with RADAR's mission to transform physical retail through digital precision.
In my previous roles, I have successfully implemented automated training pipelines and monitoring solutions that significantly improved model reliability and performance. I am particularly drawn to RADAR's collaborative culture and your innovative use of RFID and AI to solve complex real-world problems. I am confident that my technical skills in MLOps and big data processing will allow me to make a high impact on your team from day one.
Составьте идеальное письмо к вакансии с ИИ-агентом

Откликнитесь в radar уже сейчас
Присоединяйтесь к RADAR, чтобы создавать будущее ритейла с помощью передовых технологий машинного обучения!
Описание вакансии
ABOUT US
At RADAR, we're transforming the way the world thinks about physical retail. RADAR has raised over $104M from top investors, retailers, and strategics and works with some of the world's retail brands including American Eagle and Gap. We’re building the future of in-store experience where every product and every person can be precisely located in real time.
Our platform combines RFID and AI to unlock hyper-accurate product visibility and automation at scale. From real-time inventory tracking to seamless checkout experiences, our technology empowers some of the world’s largest retailers to streamline operations, reduce loss, and elevate both employee and customer experiences.
We’re a fast-growing, mission-driven startup where bold ideas, collaboration, and impact are at the core of everything we do. Join us as we reshape the physical world with digital precision, starting with retail and expanding far beyond!
OUR VALUES
Mission-Driven: We're transforming retail with cutting-edge technology and building something that truly matters.
Collaborative Team: We thrive on curiosity, shared goals, and solving complex problems together.
High Impact: You’ll make meaningful contributions from day one and help shape the future of our product and company.
Clear Communication: We value honesty, humility, and respectful dialogue—everyone’s voice matters.
Balanced Lives: We work hard, but not at the expense of well-being. We respect time, boundaries, and life outside of work.
Diverse Perspectives: We believe better ideas come from diverse backgrounds, experiences, and viewpoints.
Empathy-Driven Design: We build with deep respect for our end users, listening closely to their feedback and needs.
ABOUT THE JOB
We are looking for a Machine Learning Engineer to help build and develop our ML capabilities at RADAR. The role requires extensive collaboration with teams and functions across the company ranging from product and customer success to engineering, data science and research.
This is a hybrid position based in our Sunnyvale, CA office location.
Responsibilities:
- Build and scale ML infrastructure: Design and maintain scalable, reliable and efficient production pipelines for feature engineering, training, prediction and model serving using tools including Airflow, Big Query and Kubeflow
- Drive model performance: Train, validate and deploy high-quality ML models, applying advanced techniques in feature selection, hyperparameter tuning and model architecture choices to improve the accuracy of our products
- Accelerate ML development: Optimize feature engineering pipelines for performance and scalability while collaborating with Data Science to research, develop, and deploy new features that improve model accuracy
- Ensure reliability: Implement comprehensive model monitoring, automated training pipelines, and observability solutions to maintain model health and performance
- Accelerate ML development: Optimize feature engineering pipelines for performance and scalability while collaborating with Data Science to research, develop, and deploy new features that improve model accuracy
- Champion best practices: Apply CI/CD principles including automated testing, model validation, and deployment strategies
ABOUT YOU
Required:
- 5+ years building production ML systems at scale, including feature engineering, training, deployment, and monitoring
- Strong proficiency in Python and ML frameworks (scikit-learn, PyTorch, XGBoost)
- Hands-on experience with cloud ML platforms (AWS SageMaker, Vertex AI, or Azure ML)
- Expertise in big data processing including SQL optimization and distributed computing (Spark/Dask)
- Production experience with workflow orchestration tools (Airflow, Dagster, Prefect)
- Proficiency with version control (Git) and CI/CD practices
Preferred:
- Experience with real-time streaming data (Kafka, Flink, Pub/Sub.)
- Bachelor's degree in Computer Science, Statistics, or related field
- Experience with MLOps tools (MLflow, Weights & Biases, etc.)
At RADAR, your base pay is one part of your total compensation package. The expected base salary range for this position is $160,000.00 - $200,000.00. Individual pay is determined by work location and additional factors, including job-related skills, experience and relevant education or training.You will also be eligible to receive other benefits including: equity, comprehensive medical and dental coverage, life and disability benefits, 401k plan, flexible time off, and paid parental leave. The pay range listed for this position is a good faith and reasonable estimate of the range of possible base compensation at the time of posting.
Research has shown that women & underrepresented minorities are more likely to read lists of requirements and consider themselves unqualified if they don't meet every single one. This list represents what we're ideally looking for, but everyone has unique strengths & weaknesses, and we hire for strength & potential, not lack of weakness.
Use of artificial intelligence or a LLM such as ChatGPT during the interview process will be grounds for rejection of your application process.
Создайте идеальное резюме с помощью ИИ-агента

Навыки
- Python
- Scikit-learn
- PyTorch
- XGBoost
- SQL
- Spark
- Dask
- Airflow
- Dagster
- Prefect
- Git
- BigQuery
- Kubeflow
- AWS SageMaker
- Vertex AI
- Azure ML
- Kafka
- Flink
- MLflow
- Weights & Biases
Возможные вопросы на собеседовании
Проверка опыта работы с инфраструктурой, указанной в описании вакансии.
Опишите ваш опыт проектирования и поддержки ML-пайплайнов с использованием Airflow или Kubeflow. С какими основными трудностями вы сталкивались при масштабировании?
Вакансия требует навыков оптимизации SQL и работы с большими данными.
Как вы подходите к оптимизации сложных SQL-запросов для подготовки признаков (feature engineering) в BigQuery при работе с терабайтами данных?
Важный аспект роли — обеспечение надежности моделей.
Какие метрики и инструменты вы используете для мониторинга деградации моделей (model drift) в реальном времени?
Проверка владения современными практиками разработки.
Расскажите, как вы внедряли принципы CI/CD в процесс разработки и деплоя ML-моделей. Как вы автоматизируете валидацию моделей перед релизом?
Оценка способности работать на стыке Data Science и Engineering.
Как вы организуете процесс передачи модели от команды Data Science в продакшн-инжиниринг, чтобы минимизировать ошибки и задержки?
Похожие вакансии
ML Engineer
Data-Scientist (команда динамического ценообразования)
Senior Data Scientist
Middle Data Scientist
Старший аналитик AI/ML
Data Scientist RecSys
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
- 160 000 $ – 200 000 $