Machine Learning Engineer (60%)

Luzern, Luzern  ‐ Remote
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Schlagworte

Machine Learning Softwareentwicklung Agile Methodologie Architektur Continuous Integration Devops Python SQL Test-Driven Development Data Science Domain Driven Development Docker

Beschreibung

Machine Learning Engineer

Tasks:
- Design data-driven software solutions in close collaboration with the Analytics Team (ML Engineers & Data Scientists) (MUST).
- Design, implementation and operation of services for operational machine learning models (MLOps) (MUST)
- State of the Art Software Engineering (CleanCode, TDD, DDD, agile architectures, CI/CD) (MUST)
- Identify potential for improvement in the existing Machine Learning pipeline (nice 2 have).

Requirements:
- College or university degree in computer science (MUST).
- Experience with Machine Learning/Data Science (MUST)
- Several years of professional experience in professional software development (MUST), preferably DevOps (nice 2 have)
- Communicative, responsible and team-oriented personality (MUST)

Knowledge of the following languages/technologies:
- Python (MUST: very good knowledge)
- SQL (MUST: basic knowledge) # Good knowledge is of course desirable, but less important - as the client already has a couple of Data Scientists
- Docker (MUST: Good knowledge)
- Kubernetes (MUST)
- Helm (nice 2 have) the client needs for the deployments, but is "nice 2 have" as the parts of Helm the client uses can be learned very quickly (if you already have experience with Kubernetes)
- Grafana (nice 2 have)
- Prometheus (nice 2 have)

Wir freuen uns über Ihre Bewerbungsunterlagen an Für Fragen zu diesem Projekt können Sie sich auch gerne telefonisch bei Mirco melden
Start
07.2023
Dauer
4 Monate
(Verlängerung möglich)
Von
SPIRIT/21 GmbH
Eingestellt
27.03.2023
Ansprechpartner:
Mirco In-Albon
Projekt-ID:
2571641
Vertragsart
Freiberuflich
Einsatzart
100 % Remote
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