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
  • Working Student - Machine Learning

    Snap
    Eindhoven, Netherlands
    Found 6 days 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

Working Student - Machine Learning

Snap
Found 6 days ago
Location
Eindhoven, Netherlands
Time
Full-time
Work Mode
Hybrid
Salary
Not disclosed
Visa Help
Not disclosed
Last Verified
6 days ago

Education

  • Master

Skills & Qualifications

Technical Skills

  • Linear algebra
  • probability
  • optimization
  • Deep learning fundamentals
  • backpropagation
  • regularization
  • basic model architectures
  • PyTorch
  • CNNs
  • vision transformers
  • Python
  • NumPy
  • Git
  • event-based vision
  • model compression techniques
  • pruning
  • quantization
  • knowledge distillation
  • lightweight backbones
  • dynamic computation
  • conditional execution
  • TensorFlow Lite
  • ONNX Runtime
  • performance profiling
  • FLOPs
  • latency
  • memory footprint
  • bandwidth

Soft Skills

  • Interest in turning research ideas into robust, reproducible codebases that others can build on.

Job Description

In this project, you will explore how to combine modern deep learning with event-based and embedded processors to push the limits of what AR glasses can do on-device. You will help answer questions such as: * How can we architect models that are both accurate and ultra-efficient for real-world AR tasks on event-driven or low-power hardware? * What are the right trade-offs between accuracy, latency, memory, and energy for different AR scenarios? * How do we turn promising research ideas into practical, measurable improvements on realistic platforms and workloads? Your work will directly inform how future AR experiences can run locally, responsively, and efficiently on next-generation devices As a thesis student, you will define and drive a focused research direction in efficient on-device ML for AR, with a particular emphasis on event-driven or embedded processors. Possible directions within this space include: * Design and prototype ML models tailored to AR use cases under embedded constraints (e.g., event-based vision models, lightweight CNNs/Vision Transformers, or hybrid frame+event pipelines). * Set up datasets and baselines relevant to AR tasks (e.g., detection, tracking, segmentation, gesture/interaction), and define evaluation metrics across accuracy, latency, memory usage, and energy. * Implement and train models in PyTorch, including data pipelines, training loops, and evaluation scripts that are easy to extend and reproduce. * Explore efficiency techniques such as sparsity, pruning, quantization (PTQ/QAT), or event-based representations, and study their impact on performance–efficiency trade-offs. * Profile models under embedded-like conditions using simulators, profiling tools, or edge accelerators to understand system-level behavior (e.g., FLOPs, latency, memory footprint, bandwidth). * Communicate your findings through ablation studies, a clear thesis report (and optionally a paper-style write-up), and a reproducible codebase with pre-trained checkpoints.

Requirements

  • Currently enrolled in a Master’s program (e.g., Computer Science, Electrical/Computer Engineering, Artificial Intelligence, Robotics, or a related field).
  • Degree program allows a Master’s thesis / graduation project in collaboration with an external organization.
  • Strong background in: Linear algebra, probability, and optimization
  • Deep learning fundamentals, including backpropagation, regularization, and basic model architectures
  • Hands-on experience training deep learning models for computer vision, including: Experience with PyTorch (preferred) or a similar framework
  • Comfort implementing and training CNNs and/or vision transformers
  • Proficiency in Python and standard ML tooling (e.g., NumPy, PyTorch, Git, basic experiment management).
  • Interest in turning research ideas into robust, reproducible codebases that others can build on.

Related Field

  • AI & Machine Learning

Related Subfield

  • Applied Machine Learning

Languages

  • English

Nice to Haves

  • Event-based or streaming vision, or other non-conventional sensor modalities
  • Model compression techniques: pruning, sparsity, quantization, or knowledge distillation
  • Efficient architectures for embedded or real-time applications (e.g., lightweight backbones, dynamic computation, conditional execution)
  • Familiarity with embedded / on-device ML toolchains (e.g., TensorFlow Lite, ONNX Runtime, or similar frameworks).
  • Experience with AI-assisted development and research tools (e.g., experiment tracking, ML tooling, or LLM-based coding and analysis assistants).
  • Exposure to performance profiling and basic systems concepts: FLOPs, latency, memory access patterns, and bandwidth.
▶Apply Now

Similar Roles You Might Like

  • Internship/ Master Thesis on developing tracking methods for deformable objects (f/m/x)

    ZEISS Group
    Oberkochen, Germany
    Found 2 months ago
  • Computer Architecture Intern

    Snap
    Eindhoven, Netherlands
    Found 2 weeks ago
  • Camera Software (Intern)

    Apple
    Cambridge, United Kingdom
    Found 1 month ago
  • Machine Learning Intern

    Apple
    Munich, Germany
    Found 1 month 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
  • Computer Vision Engineering Intern

    snaphr
    Vienna, Austria
    Found 2 months ago