16 research outputs found
A Visual Programming Paradigm for Abstract Deep Learning Model Development
Deep learning is one of the fastest growing technologies in computer science
with a plethora of applications. But this unprecedented growth has so far been
limited to the consumption of deep learning experts. The primary challenge
being a steep learning curve for learning the programming libraries and the
lack of intuitive systems enabling non-experts to consume deep learning.
Towards this goal, we study the effectiveness of a no-code paradigm for
designing deep learning models. Particularly, a visual drag-and-drop interface
is found more efficient when compared with the traditional programming and
alternative visual programming paradigms. We conduct user studies of different
expertise levels to measure the entry level barrier and the developer load
across different programming paradigms. We obtain a System Usability Scale
(SUS) of 90 and a NASA Task Load index (TLX) score of 21 for the proposed
visual programming compared to 68 and 52, respectively, for the traditional
programming methods