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Machine Learning Researcher

Alexander Daniels Global

Berlin

Remote

EUR 60.000 - 80.000

Vollzeit

Heute
Sei unter den ersten Bewerbenden

Zusammenfassung

A pioneering AI company seeks a dedicated ML Research Engineer in Berlin to enhance manufacturing processes through AI. You will lead efforts in Bayesian Optimisation and work in a remote environment. The ideal candidate has strong skills in Python and a passion for solving real-world manufacturing challenges. This role offers a competitive salary, bonuses, and equity options.

Leistungen

Competitive salary
Bonus
Share / equity options

Qualifikationen

  • Strong understanding of optimisation under uncertainty and multi-objective optimisation.
  • Advanced proficiency in Python and machine learning libraries.
  • Hands-on experience with implementing Bayesian Optimisation algorithms.

Aufgaben

  • Collaborate on strategic technical decisions.
  • Rapidly prototype and iterate on AI solutions.
  • Develop robust data quality systems.

Kenntnisse

Bayesian Optimisation
Gaussian Processes
Few-Shot Learning
Python
Statistics

Tools

scikit-learn
GPflow
Jobbeschreibung
Overview

Our client is a pioneering AI company dedicated to transforming manufacturing processes through a “small data” approach to AI. In this role, you will be the first dedicated ML Research Engineer, responsible for building core AI capabilities that will directly impact manufacturing efficiency and sustainability at scale. You’ll work in a remote-first, collaborative environment, pioneering practical AI solutions that put an expert operator next to each industrial machine.

Responsibilities
  • Key duties include collaborating on strategic technical decisions, rapidly prototyping and iterating on AI solutions, and developing and implementing Bayesian Optimisation algorithms that suggest batches of experiments.
  • You will also implement knowledge transfer capabilities across machines and create robust data quality systems.
Qualifications
  • The role requires a strong understanding of optimisation under uncertainty and multi-objective optimisation, and you will occasionally engage directly with manufacturing customers to understand real-world constraints. Candidates should have a strong expertise in Bayesian Optimisation and Gaussian Processes (theory and practical), hands-on experience with Few-Shot Learning, and a solid background in statistics and experimental design.
  • The position requires advanced proficiency in Python and libraries like sklearn and GPflow, a Manufacturing background, along with a startup mindset that prioritises practical, deployable solutions over theoretical approaches. The ideal candidate will be motivated by solving real-world problems with tangible industrial impact and be comfortable with ambiguity and rapid priority changes.
Role Details

Remote role, competitive salary, Bonus, Share / equity options.

Notes

Position Snapshot is a summary of the role. Full job description is available from the client

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