Paid Internship
Work Mode
Time Spent
Required Degree
Duration

Open Positions

Experience More On the Go

GET IT ONGoogle Play
Download on theApp Store
© 2026you'll get it. all rights reserved.

Internship Explorer

  • Explore
  • Saved Internships
Sign In

Internship Explorer

  • Explore
  • Saved Internships
Sign In
Paid Internship
Work Mode
Time Spent
Required Degree
Duration

20Open Positions

Auto-load
  • Master's Thesis Expert-in-the-Loop AgentOps/LLMOps Pipeline for Systems Engineering Process Agents

    FEV.io
    Aachen, Germany
    Found 2 months ago
  • Computer Architecture Intern

    Snap
    Eindhoven, Netherlands
    Found 2 weeks ago
  • Praktikum im Bereich Data Science & Machine Learning (WS26/27)

    TRUMPF
    Ditzingen, Germany
    Found 2 weeks ago
  • Internship

    daedalean
    Zürich, Switzerland
    Found 2 weeks ago
  • Technicien

    Institut DataIA Paris-Saclay
    Évry, France
    Found 4 weeks ago
  • INTERNSHIP/MASTER'S THESIS: RADAR-BASED PERCEPTION FOR AUTONOMOUS DRIVING WITH DEEP LEARNING (F/M/D)

    FORVIA HELLA
    Lippstadt, Germany
    Found 1 month ago
  • Stage - Ingénieur Techniques Avancées en Deep Learning / IA en Imagerie 3D (H/F)

    getzhealthcare
    Buc, France
    Found 1 month ago
  • Research Intern

    Criteo
    Paris, France
    Found 1 month ago
  • Studentische Hilfskraft

    Technische Universität Berlin
    Berlin, Germany
    Found 1 month ago
  • Stage - Ingénieur Techniques Avancées en Deep Learning / IA en Imagerie 3D (H/F)

    Unity Software
    Buc, France
    Found 1 month ago
  • Stage - Perception pour Véhicule Autonome - Radar (F/H)

    Valeo
    Créteil, France
    Found 1 month ago
  • IT Working Student – Junior Machine Learning Engineer

    Julius Baer
    Zurich, Switzerland
    Found 1 month ago
  • Werkstudent im Bereich KI / Large Language Model (w/m/d)

    HENSOLDT
    Immenstaad, Germany
    Found 2 months ago

Master's Thesis Expert-in-the-Loop AgentOps/LLMOps Pipeline for Systems Engineering Process Agents

FEV.io
Found 2 months ago
Location
Aachen, Germany
Duration (Months)
12 Months
Time
Full-time
Work Mode
Remote
Salary
Not disclosed
Visa Help
Not disclosed
Last Verified
1 month ago

Education

  • Master

Skills & Qualifications

Technical Skills

  • Python
  • C++
  • Java
  • machine learning
  • AI
  • large language models
  • prompt engineering
  • retrieval-augmented generation (RAG)
  • context engineering
  • software engineering concepts
  • APIs
  • data models
  • version control
  • testing
  • cloud development
  • Azure
  • MLOps
  • LLMOps
  • AgentOps

Soft Skills

  • Analytical skills
  • Ability to work independently
  • structure complex problems
  • document results
  • Interest in operationalising AI agents
  • integrating expert feedback loops

Job Description

In this thesis, an AgentOps/LLMOps pipeline will be designed and implemented to support engineering process agents with expert-in-the-loop feedback. The work addresses the challenge that current generative-AI agents in systems engineering (SE) — used for tasks such as requirements derivation, test-case generation, and subsystem decomposition — often produce inconsistent or untraceable outputs when deployed as black boxes. The pipeline will embed domain experts into iterative feedback loops, capturing their corrections and context, and using that feedback to selectively adapt the system. The approach will operationalise both forward flow (methods/data → agent output → user feedback → iteration) and backward flow (user feedback → classification/context engineering → selective LLM adaptation/test-update), minimising unnecessary retraining and focusing on context engineering and selective adaptation.The main tasks of the thesis include:Conducting a literature and state-of-the-art review on MLOps, LLMOps, and AgentOps, with focus on engineering process agents and expert-in-the-loop systems.Designing and implementing an open-source AgentOps/LLMOps pipeline tailored for SE use-cases.Empirically comparing adaptation strategies (context engineering, parameter-efficient fine-tuning, hybrid) on two SE tasks: (a) requirements derivation for subsystems, (b) test-case derivation from requirements.Measuring precision/recall, semantic correctness, expert corrections per iteration, and cost-benefit metrics.Quantifying the value of expert feedback in iterative agent improvement.

Requirements

  • Solid programming skills, preferably in Python (experience with other languages such as C++/Java is a plus)
  • Fundamental knowledge of machine learning / AI, ideally including large language models, prompt engineering, retrieval-augmented generation (RAG), and context engineering
  • Basic understanding of software engineering concepts (APIs, data models, version control, testing) and cloud development (Azure preferred)
  • Analytical skills to design experiments, measure performance metrics, and interpret results
  • Ability to work independently, structure complex problems, and document results in scientific English
  • Interest in operationalising AI agents and integrating expert feedback loops
  • German skill >B1

Related Field

  • Software Engineering

Related Subfield

  • AI/ML/GenAI Engineering

Languages

  • English
  • German

Nice to Haves

  • Experience with context engineering, RAG, or fine-tuning LLMs.
  • Interest in systems engineering processes and tools.
▶Apply Now

Similar Roles You Might Like

  • Intern Generative AI in Engineering (f/m/x)

    BMW Group
    Munich, Germany
    Found 1 month ago
  • Internship in AI/ML 2026

    Devoteam | Microsoft Partner
    Machelen, Belgium
    Found 2 months ago
  • Intern Generative AI Knowledge Management (f/m/x)

    BMW Group
    Munich, Germany
    Found 3 weeks ago
  • Working Student (f/m/d) - for AI Agent Research

    SAP
    Karlsruhe, Germany
    Found 2 months ago
  • AI Engineering Intern - Legacy Code Intelligence.

    ING
    Amsterdam, Netherlands
    Found 1 month ago
  • Intern: Software Engineer, Robotic Execution Model Interoperability

    Intrinsec
    Munich, Germany
    Found 1 month ago