DESIGNING OF A VOICE – BASED PROGRAMMING IDE FOR SOURCE CODE GENERATION
Abstract
Nowadays coding is not a complex thing to do, by
the advancement in technology and AI gives a crucial role in the
easiness to the day to day life of human beings. Traditional type
of coding is complex and not everyone is flexible with that, by
using the voice coding we can make coding easier. Here we are
integrating the gpt model to find the required code they asked
for, this is done with the help of Natural Language Processing
and Speech Recognition. We are integrating python libraries
with the open AI model gpt 3.5 to get the answers in response to
the speech input that is given by the user. Python libraries are
used for these functions : converting audio to text format and
searching the text in the gpt model and response that is given by
the model.
Keywords:
deep learning, natural language processing, source code generation, voice to source code, voice-based IDPublished
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