November 20, 2024
Until filled
PhDs
PhDs
PhD - Efficient Neural Representation of Datasets
in Germany
for Bosch

We conduct research on state-of-the-art deep generative models that are used to enable real-world Bosch systems to be data-efficient. We are looking for a PhD student who is interested in researching creative applications of generative models (e.g. stable diffusion) as a controllable dataset representation for training and validating networks for downstream tasks.

Roles & Responsibilities

  • Not all data points in a dataset are equally important for the performance of a neural network. As training progresses, loss on some data points might become uninformative since the network already learned what it can from it. As such, it can be advantageous to observe the network training to serve it the right type of data at the right time. However, simply selecting data from a fixed dataset could be problematic when no image with the precise mix of attributes exists. The goal of this PhD project is to develop new learning algorithms for generating relevent data "on demand" in response to the need of the target network. This includes improving training efficiency by synthesizing the most relevant data, enforcing desired invariance by creating example, etc.

    • As part of our team, you will develop novel approaches to adapt deep generative models (e.g. diffusion models, GANs, VAEs) as data sources to better train and validate downstream models.
    • Furthermore, you exploit the controllability and knowledge present in generative base models to move past seeing datasets as just a collection of images.
    • You discuss and develop new ideas within the deep learning and computer vision experts at Bosch Center for AI.
    • Last but not least, publications in top-tier journals and at conferences follow.

Requirements

  • Education: excellent degree in Computer Science, or related field with focus on Computer Vision and Deep Learning
  • Experience and Knowledge: strong background in deep learning and computer vision, experience with deep learning frameworks (TensorFlow, PyTorch, etc.), strong programming skills, in particular Python, knowledge and experience in deep generative modeling as well as foundation models are a plus, experience with publication of peer-reviewed research papers is beneficial
  • Enthusiasm: motivation to work in an interdisciplinary and international team
  • Languages: very good English skills and academic writing skills

Our offer