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ML Ops Engineer
DevOps

ML Ops Engineer

Warszawa
Type of work
Full-time
Experience
Mid
Employment Type
B2B
Operating mode
Remote

Tech stack

    Azure

    master

    SQL

    master

    Python

    master

    Scrum

    advanced

    Kanban

    advanced

    English

    advanced

    Databricks

    advanced

Job description

Responsibilities:

  • Optimize, standardize and implement data science and machine learning solutions at scale and in cloud-based environments (Azure)
  • Participate in the end-to-end lifecycle of data science projects through the use of DevOps, code, experiment and model management, CI/CD and further industry best practices
  • Write well-designed, testable, efficient code
  • Work closely with engineering to continuously improve the way we consume data and deploy models in production
  • Design and lead on monitoring, troubleshooting, debugging and incident management for our ML pipelines
  • Be a trusted advisor and evangelist to the team and stakeholders on various aspects of ML Ops, from scaling and throughput, to infrastructure and deployment strategies

 

Requirements:

  • 2+ years of professional experience in ML Ops or ML engineering, particularly in productionizing and scaling ML models
  • Business-ready command of English, written and spoken
  • Broad familiarity with Azure cloud environment and Databricks, including its setup and maintenance as an ML platform
  • Proven experience with software development best practices including testing, continuous integration, and DevOps tools
  • Advanced proficiency with Python and SQL in version control systems (git) plus their use in building ML & data pipelines
  • Good understanding of data science lifecycle and the way data scientists work to deliver value
  • Familiarity with agile software development lifecycle (SCRUM, Kanban, etc.)
  • Attention to clarity of code, ease of development, and correctness of implementations


Nice to have:

  • Experience in productionizing ML tools involving a user interface, e.g. Dash, Shiny R, Streamlit
  • Great communication skills to guide audiences of a broad technical knowledge range through complex ML Ops topics
  • Knowledge of KNIME and tools based on it
  • Practice in coaching / mentoring younger team members in your expertise areas

 

Offer:

  • Private medical care
  • Co-financing for the sport card
  • Training & learning opportunities
  • Constant support of dedicated consultant
  • Team-building events organized by DCG
  • Employee referral program