Conference Program

Please note:
On this page you will only see the English-language presentations of the conference. You can find all conference sessions, including the German speaking ones, here.

The times given in the conference program correspond to Central European Time (CET).

From Lab to Device: Deploying Neural Networks on Embedded Systems

Neural networks achieve astonishing results - mostly powered by cloud infrastructure. But for autonomous or safety-critical systems, a stable connection cannot be assumed. These applications must run reliably on embedded hardware with limited compute, memory, and real-time constraints. This talk walks through the full development pipeline, with a focus on optimizing and deploying neural networks for production use on resource-constrained devices.

Target Audience: Developers, ML Engineers, Architects
Prerequisites:Basic understanding of neural network and training pipelines
Level: Introductory

Extended Abstract:
Outline

1) Intro & Pipeline Overview (5 min)

Outline of the end-to-end ML pipeline: data → training → validation → optimization → deployment → monitoring.

2) Optimization for Low-Resource Targets (15 min)

  • Pruning strategies to reduce model size and latency
  • Knowledge distillation and transfer learning for lightweight performance
  • Quantization: from post-training to quantization-aware training (QAT)

3) Deployment Stack (10 min)

  • ONNX as a portable model format
  • TensorRT for high-performance inference on NVIDIA edge platforms
  • C++ integration considerations

4) Retraining & Fine-Tuning (5 min)

  • Handling data drift and domain shifts
  • Designing retraining pipelines
  • Challenges of finetuning quantized models

5) Q&A (10 min)

Attendees will leave with a solid understanding of the practical steps and trade-offs involved in deploying neural networks on embedded systems, with actionable insights for ML model deployment on edge devices.

Presada AI GmbH
AI expert and co-founder

Dr. Julia Imlauer is an AI expert and co-founder of Presada, an EdTech startup building AI-driven communication coaches. With a PhD in multi-modal data fusion from ETH Zurich and research affiliations at Stanford and the University of Zurich, she combines deep academic grounding with 9+ years of industry experience in safety-critical software for autonomous driving and drone systems.

Julia Imlauer
11:00 - 11:45
Vortrag: Do 5.2

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