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Data/MLOps Engineer - CT&C (m/k/n)

UPVANTA SPÓŁKA Z OGRANICZONĄ ODPOWIEDZIALNOŚCIĄ

Data/MLOps Engineer – CT&C (m/k/n)

Miejsce pracy: Wrocław

Technologies we use

Expected

  • Python
  • Apache Spark
  • AWS
  • SQL

About the project

We are looking for an experienced and passionate Data/MLOps Engineer to join our CT&C Engineering team. In this role, you will bridge the gap between Data Science and Production Engineering, ensuring that machine learning solutions are scalable, reliable, secure, and production-ready.

You will play a key role in designing, building, maintaining, and optimizing our data platforms and ML infrastructure, enabling efficient data ingestion, transformation, storage, model deployment, and real-time analytics.

This position requires a strong understanding of machine learning concepts, hands-on MLOps expertise, and solid engineering skills across cloud platforms, data processing frameworks, and automation tooling.

Your responsibilities

  • ML & Data Infrastructure
  • Deploy, maintain, and optimize end-to-end machine learning lifecycles, including automated training, deployment, monitoring, and versioning.
  • Build and support core MLOps capabilities such as Feature Stores, Experiment Tracking platforms, and Model Registries.
  • Provision and manage scalable cloud infrastructure using Infrastructure as Code (IaC) solutions such as Terraform or AWS CloudFormation.
  • Design and implement robust CI/CD/CT (Continuous Training) pipelines to enable reliable and repeatable production releases.
  • Collaborate closely with Data Scientists to productionize machine learning models and workflows.
  • Data Engineering & Pipeline Optimization
  • Design and develop high-volume data ingestion and processing pipelines using Apache Spark, PySpark, and Python.
  • Build scalable ETL/ELT solutions supporting advanced analytics and machine learning workloads.
  • Implement optimized data models and storage strategies to support low-latency model inference and high-performance analytics.
  • Integrate automated data quality validation, monitoring, and observability capabilities across data platforms.
  • Governance, Monitoring & Security
  • Implement proactive monitoring for model performance, model drift, data quality issues, and system latency.
  • Ensure complete reproducibility through robust versioning of data, code, models, and artifacts.
  • Apply security best practices across the ML lifecycle, including access management, data privacy, and compliance requirements.
  • Support operational excellence through incident management, troubleshooting, and continuous improvement initiatives.
  • Agile Delivery & Collaboration
  • Work within Agile delivery teams, participating in sprint planning, backlog refinement, daily stand-ups, and retrospectives.
  • Translate business and data science requirements into scalable technical solutions.
  • Collaborate with Product Owners, Data Scientists, Data Engineers, and Platform Teams to deliver production-grade ML solutions.
  • Create and maintain technical documentation covering architecture, workflows, pipelines, and operational procedures.

Our requirements

  • Strong Python development experience
  • Hands-on experience with Apache Spark and PySpark
  • Solid understanding of machine learning lifecycle management and MLOps best practices
  • Experience with AWS services, particularly:
  • Amazon SageMaker
  • AWS Lambda
  • AWS CDK
  • Experience building CI/CD pipelines for data and ML workloads
  • Strong SQL skills
  • Experience designing and implementing ETL/ELT pipelines
  • Knowledge of PyTorch and machine learning frameworks
  • Experience with Infrastructure as Code (Terraform and/or CloudFormation)
  • Understanding of monitoring, observability, and production support practices
  • Experience working in Agile environments
  • Design and implement scalable ML solutions using PySpark and Amazon SageMaker.
  • Balance software engineering best practices with practical machine learning implementation.
  • Drive operational excellence across the entire ML lifecycle.
  • Experience with Feature Stores and Model Registry platforms
  • Experience implementing Continuous Training (CT) pipelines
  • Knowledge of MLOps governance frameworks
  • Experience with real-time streaming architectures
  • Exposure to large-scale cloud-native data platforms

This is how we organize our work

This is how we work

  • agile
  • scrum

What we offer

  • home office work

Benefits

  • sharing the costs of sports activities
  • private medical care
  • sharing the costs of foreign language classes
  • sharing the costs of professional training & courses
  • remote work opportunities

Recruitment stages

  • CV
  • Introductory interview
  • Technical interview

UPVANTA SPÓŁKA Z OGRANICZONĄ ODPOWIEDZIALNOŚCIĄ

Welcome to Upvanta, where our motto is “We Care More”.

Founded in 2018, we have grown into a dynamic IT services company with a team of over 180 dedicated professionals. Our journey has been marked by exceptional year-over-year growth, driven by our unwavering commitment to our clients.

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Oferta pracy dodana 4 dni temu