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Senior Machine Learning Engineer

EPAM · зарплата не указана · локация не указана · сайт компании · опубликовано 5 июня 2026 г.

Компания EPAM
Источник сайт компании
Опубликовано 5 июня 2026 г.
Зарплата зарплата не указана

Описание вакансии

We are seeking an experienced Senior Machine Learning Engineer to join our team. The ideal candidate will take on leading roles in designing, developing, and optimizing our machine-learning platform. Your contributions will drive the success of our prediction models in real-world applications.
Responsibilities
Contribute to the design, development, and operational lifecycle of the ML pipeline based on best practices
Design, create, maintain, troubleshoot, and optimize ML pipeline steps
Own and contribute to the design and implementation of ML prediction endpoints
Collaborate with System Engineers to configure the ML lifecycle management environment
Write specifications, documentation, and user guides for developed applications
Promote improved coding practices and repository organization in the science work cycle
Establish and configure pipelines for projects
Identify technical risks and gaps, and devise mitigation strategies
Collaborate with data scientists to productionalize predictive models, understand the scope and purpose of the models built by data scientists, and create scalable data preparation pipelines
Requirements
Minimum of 3 years programming language experience, ideally in Python, and strong SQL knowledge
Robust MLOps experience (Sagemaker, Vertex, or Azure ML)
Intermediate level in Data Science, Data Engineering, and DevOps Engineering
Experience with at least one project delivered to production in an MLE role
Expertise in Engineering Best Practices
Practical experience in implementing Data Products using the Apache Spark Ecosystem (Spark SQL, MLlib/SparkML) or alternative technologies
Experience with Big Data technologies (e.g., Hadoop, Spark, Kafka, Cassandra, GCP BigQuery, AWS Redshift, Apache Beam, etc.)
Proficiency in automated data pipeline and workflow management tools, i.e., Airflow, Argo Workflow, etc
Experience in different data processing paradigms (batch, micro-batch, streaming)
Practical experience working with at least one major Cloud Provider such as AWS, GCP, and Azure
Production experience in integrating ML models into complex data-driven systems
DS experience with Tensorflow/PyTorch/XGBoost, NumPy, SciPy, Scikit-learn, Pandas, Keras, Spacy, HuggingFace, Transformers
Experience with different types of databases (Relational, NoSQL, Graph, Document, Columnar, Time Series, etc.)

Навыки

  • machine learning engineering
  • Python
  • SQL
  • DevOps
  • Kafka
  • AWS
  • Airflow
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