Virtual reality (VR) offers immersive visualization and intuitive
interaction. We leverage VR to enable any biomedical professional to deploy a
deep learning (DL) model for image classification. While DL models can be
powerful tools for data analysis, they are also challenging to understand and
develop. To make deep learning more accessible and intuitive, we have built a
virtual reality-based DL development environment. Within our environment, the
user can move tangible objects to construct a neural network only using their
hands. Our software automatically translates these configurations into a
trainable model and then reports its resulting accuracy on a test dataset in
real-time. Furthermore, we have enriched the virtual objects with
visualizations of the model's components such that users can achieve insight
about the DL models that they are developing. With this approach, we bridge the
gap between professionals in different fields of expertise while offering a
novel perspective for model analysis and data interaction. We further suggest
that techniques of development and visualization in deep learning can benefit
by integrating virtual reality