Optimizing Large Language Models to Expedite the Development of Smart
Contracts
- URL: http://arxiv.org/abs/2310.05178v1
- Date: Sun, 8 Oct 2023 14:29:33 GMT
- Title: Optimizing Large Language Models to Expedite the Development of Smart
Contracts
- Authors: Nii Osae Osae Dade, Margaret Lartey-Quaye, Emmanuel Teye-Kofi Odonkor,
Paul Ammah
- Abstract summary: We introduce MazzumaGPT, a large language model that has been optimised to generate smart contract code.
We outline the optimisation and fine-tuning parameters, evaluate the model's performance on functional correctness and address the limitations and broader impacts of our research.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Programming has always been at the heart of technological innovation in the
21st century. With the advent of blockchain technologies and the proliferation
of web3 paradigms of decentralised applications, smart contracts have been very
instrumental in enabling developers to build applications that reside on
decentralised blockchains. Despite the huge interest and potential of smart
contracts, there is still a significant knowledge and skill gap that developers
need to cross in order to build web3 applications. In light of this, we
introduce MazzumaGPT, a large language model that has been optimised to
generate smart contract code and aid developers to scaffold development and
improve productivity. As part of this research, we outline the optimisation and
fine-tuning parameters, evaluate the model's performance on functional
correctness and address the limitations and broader impacts of our research.
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