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Paid Internship
Work Mode
Time Spent
Required Degree
Duration

19Open Positions

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  • Schülerpraktikum

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RF & Edge AI Intern (Video Analytics)

Analog Devices
Found 1 month ago
Location
Munich, Germany
Duration (Months)
5 Months
Time
Full-time
Work Mode
Not disclosed
Salary
Not disclosed
Visa Help
Not disclosed
Last Verified
1 month ago

Education

  • Master
  • PhD

Skills & Qualifications

Technical Skills

  • ML foundations
  • CNN-based vision models
  • PyTorch
  • TensorFlow
  • video/computer vision tooling
  • OpenCV
  • FFmpeg
  • Python
  • C/C++
  • edge runtimes
  • optimization
  • ONNX
  • TensorRT
  • TFLite
  • OpenVINO
  • embedded/Linux deployment
  • profiling
  • GPU/NPU acceleration
  • memory/latency profiling
  • NVIDIA GPU environment
  • detection/tracking architectures
  • YOLO-family
  • SSD
  • DETR
  • DeepSORT/ByteTrack
  • dataset curation/labelling strategies
  • class imbalance
  • sensing constraints
  • camera optics
  • motion blur
  • range
  • occlusion

Soft Skills

  • problem solver
  • technical communication

Job Description

Edge AI systems only matter if they run reliably on real hardware under real constraints. This internship focuses on building and validating video analytics for drone detection and related situational awareness use cases, taking models from dataset to deployment on edge devices. Mentorship and structured check-ins are built in, and you’ll be expected to deliver a working demo plus a clear technical readout by the end of the internship.

Requirements

  • Current Masters or PhD student in Electrical/Electronic Engineering, Computer Engineering, Computer Science, or related field (enrolled throughout the internship)
  • Solid ML foundations, including CNN-based vision models and evaluation metrics (precision/recall, ROC, confusion matrix)
  • Hands-on experience with at least one ML stack (PyTorch preferred, TensorFlow acceptable)
  • Experience with video/computer vision tooling (e.g., OpenCV, FFmpeg) and building practical pipelines
  • Programming ability in Python; C/C++ is a plus for performance-critical edge work
  • Strong technical communication: able to explain what you tried, what happened, and what it means

Related Field

  • AI & Machine Learning

Related Subfield

  • Computer Vision

Nice to Haves

  • Experience with edge runtimes and optimization (ONNX, TensorRT, TFLite, OpenVINO)
  • Familiarity with embedded/Linux deployment and profiling (GPU/NPU acceleration, memory/latency profiling). Preferably with NVIDIA GPU environment.
  • Exposure to detection/tracking architectures (e.g., YOLO-family, SSD, DETR, DeepSORT/ByteTrack)
  • Experience with dataset curation/labelling strategies and handling class imbalance
  • Understanding of real-world sensing constraints (camera optics, motion blur, range, occlusion)
▶Apply Now

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