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    MLOps Engineer
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    Harvey Nash Technology

    MLOps Engineer

    Harvey Nash Technology
    Kraków
    Type of work
    Full-time
    Experience
    Senior
    Employment Type
    Permanent
    Operating mode
    Hybrid

    Tech stack

      SQL

      master

      AWS

      advanced

      Python

      advanced

      CI/CD

      advanced

      English

      advanced

      MLOps

      advanced

      GCP

      nice to have

      Azure

      nice to have

    Job description

    Online interview

    Salary: 20000-30000 PLN/month gross (80% KUP) negotiable

    Location: Kraków, HYBRID 2days/home

    Employment type: PERMANENT (Umowa o pracę)


    As part of this role you'll be designing, setting up and administering infrastructure for deploying, monitoring, and maintaining ML models.


    Role and Responsibilities

    • Create a machine learning infrastructure that is highly scalable and supports low latency and high throughput.
    • Assist downstream applications with ML models, making sure they are safe, scalable, and obtainable.
    • Oversee model iterations and guarantee that clients are provided with the most recent version. Establish a rollback procedure in the event that the current model version has problems.
    • Use observability and monitoring technologies to keep tabs on the functionality, health, and usage of the platform and its constituent parts. Keep an eye on the functioning of the models that have been deployed, taking note of problems like concept drift, data drift, and model deterioration over time. Recognise problems early on and fix them to keep the system responsive and reliable..


    Technologies in use

    • Python
    • REST
    • Terraform
    • TensorFlow
    • PyTorch
    • Github Actions
    • Airflow
    • Kubernetes
    • Grafana
    • AWS
    • Spark
    • Snowflake
    • Snowpark


    Competencies and Credentials

    • degree in a relevant discipline, such as computer science.
    • at least two years of validated microservices industry experience.
    • familiarity with cloud solutions, orchestration tools (such as AWS, Sagemaker, Airflow, and AWS Step/Lambda), and infrastructure as code (Terraform).
    • Possess knowledge of standard ML libraries, ETL, big data tools, and CI/CD (e.g., Docker, Kubernetes, TensorFlow, PyTorch, Spark ML, etc.), as well as MapReduce, Spark, Flink, Kafka, and Unix/Linux with shell.
    • familiarity with real-time monitoring and alerting systems (like Prometheus and Grafana).
    • familiarity with Go, Python, or other OOP languages.
    • familiarity with distributed caching frameworks such as Redis/Aerospike.


    Good to have

    • at least five years of experience in the field of distributed microservices with high throughput, low latency, and integration, such as WS/REST.
    • extensive background in machine learning system architecture design.
    • Understanding of testing frameworks