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Auteurs principaux: Mejari, Arnav, Vaghulade, Maitreya, Chitaliya, Paarshva, Telang, Arya, D'mello, Lynette
Format: Preprint
Publié: 2024
Sujets:
Accès en ligne:https://arxiv.org/abs/2411.10050
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author Mejari, Arnav
Vaghulade, Maitreya
Chitaliya, Paarshva
Telang, Arya
D'mello, Lynette
author_facet Mejari, Arnav
Vaghulade, Maitreya
Chitaliya, Paarshva
Telang, Arya
D'mello, Lynette
contents In recent years, the global and Indian government efforts in monitoring and collecting data related to the fisheries industry have witnessed significant advancements. Despite this wealth of data, there exists an untapped potential for leveraging artificial intelligence based technological systems to benefit Indian fishermen in coastal areas. To fill this void in the Indian technology ecosystem, the authors introduce Jal Anveshak. This is an application framework written in Dart and Flutter that uses a Llama 2 based Large Language Model fine-tuned on pre-processed and augmented government data related to fishing yield and availability. Its main purpose is to help Indian fishermen safely get the maximum yield of fish from coastal areas and to resolve their fishing related queries in multilingual and multimodal ways.
format Preprint
id arxiv_https___arxiv_org_abs_2411_10050
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Jal Anveshak: Prediction of fishing zones using fine-tuned LlaMa 2
Mejari, Arnav
Vaghulade, Maitreya
Chitaliya, Paarshva
Telang, Arya
D'mello, Lynette
Machine Learning
Artificial Intelligence
In recent years, the global and Indian government efforts in monitoring and collecting data related to the fisheries industry have witnessed significant advancements. Despite this wealth of data, there exists an untapped potential for leveraging artificial intelligence based technological systems to benefit Indian fishermen in coastal areas. To fill this void in the Indian technology ecosystem, the authors introduce Jal Anveshak. This is an application framework written in Dart and Flutter that uses a Llama 2 based Large Language Model fine-tuned on pre-processed and augmented government data related to fishing yield and availability. Its main purpose is to help Indian fishermen safely get the maximum yield of fish from coastal areas and to resolve their fishing related queries in multilingual and multimodal ways.
title Jal Anveshak: Prediction of fishing zones using fine-tuned LlaMa 2
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2411.10050