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Fine-Tuning DialoGPT on Common Diseases in Rural Nepal for Medical Conversations

Poudel, Birat, Ghimire, Satyam, Prasad, Er. Prakash Chandra

arXiv.org Artificial Intelligence

Conversational agents are increasingly being explored to support healthcare delivery, particularly in resource-constrained settings such as rural Nepal. Large-scale conversational models typically rely on internet connectivity and cloud infrastructure, which may not be accessible in rural areas. In this study, we fine-tuned DialoGPT, a lightweight generative dialogue model that can operate offline, on a synthetically constructed dataset of doctor-patient interactions covering ten common diseases prevalent in rural Nepal, including common cold, seasonal fever, diarrhea, typhoid fever, gastritis, food poisoning, malaria, dengue fever, tuberculosis, and pneumonia. Despite being trained on a limited, domain-specific dataset, the fine-tuned model produced coherent, contextually relevant, and medically appropriate responses, demonstrating an understanding of symptoms, disease context, and empathetic communication. These results highlight the adaptability of compact, offline-capable dialogue models and the effectiveness of targeted datasets for domain adaptation in low-resource healthcare environments, offering promising directions for future rural medical conversational AI.


How a Travel YouTuber Captured Nepal's Revolution for the World

WIRED

Harry Jackson went into Kathmandu as a tourist. He ended up being one of the main international sources of news on Nepal's Gen Z protests. When Harry Jackson pulled his small motorcycle into Kathmandu on September 8, he had no idea the city was exploding in protests. He didn't even know there was a curfew. People in Nepal, largely driven by Gen Z youth, had taken to the streets, and that day riots broke out when nearly two dozen people were shot and killed by authorities.


11 adorable photos of red pandas to celebrate International Red Panda Day

Popular Science

There are less than 10,000 of these furry tree-climbers left in the wild. September 20, 2025 is International Red Panda Day. These medium-sized mammals are not pandas at all and are more closely related to weasels and raccoons. Breakthroughs, discoveries, and DIY tips sent every weekday. These endangered mammals are found in the treetops of Nepal, India, Bhutan, Myanmar (Burma), and China and are most closely related to raccoons .


Nepal 'Gen Z' protest death toll climbs, parliament stormed

Al Jazeera

Nepal'Gen Z' protest death toll climbs, parliament stormed NewsFeed Nepal'Gen Z' protest death toll climbs, parliament stormed At least 19 people have been killed in clashes between security forces and protesters in Nepal. Mostly young'Gen Z' demonstrators took to the streets and stormed parliament amid anger over a social media ban and corruption. Israel wants to'destroy Gaza City, not occupy it'


Mount Everest has a poo problem. Are drones the answer?

Popular Science

Breakthroughs, discoveries, and DIY tips sent every weekday. For some adventurers, scaling Mount Everest represents the ultimate test of grit and determination: a visual signifier of humanity's epic struggle to overcome the elements. For others, the peak can seem more like a really tall trash can. Every year, around 600 climbers make the trek from the mountain's base camp to the summit. During their time on Everest, each person produces an estimated 18 pounds of waste, most of which is left behind.


A review on development of eco-friendly filters in Nepal for use in cigarettes and masks and Air Pollution Analysis with Machine Learning and SHAP Interpretability

Paneru, Bishwash, Paneru, Biplov, Mukhiya, Tanka, Poudyal, Khem Narayan

arXiv.org Artificial Intelligence

In Nepal, air pollution is a serious public health concern, especially in cities like Kathmandu where particulate matter (PM2.5 and PM10) has a major influence on respiratory health and air quality. The Air Quality Index (AQI) is predicted in this work using a Random Forest Regressor, and the model's predictions are interpreted using SHAP (SHapley Additive exPlanations) analysis. With the lowest Testing RMSE (0.23) and flawless R2 scores (1.00), CatBoost performs better than other models, demonstrating its greater accuracy and generalization which is cross validated using a nested cross validation approach. NowCast Concentration and Raw Concentration are the most important elements influencing AQI values, according to SHAP research, which shows that the machine learning results are highly accurate. Their significance as major contributors to air pollution is highlighted by the fact that high values of these characteristics significantly raise the AQI. This study investigates the Hydrogen-Alpha (HA) biodegradable filter as a novel way to reduce the related health hazards. With removal efficiency of more than 98% for PM2.5 and 99.24% for PM10, the HA filter offers exceptional defense against dangerous airborne particles. These devices, which are biodegradable face masks and cigarette filters, address the environmental issues associated with traditional filters' non-biodegradable trash while also lowering exposure to air contaminants.


Unification of Balti and trans-border sister dialects in the essence of LLMs and AI Technology

Sharif, Muhammad, Yi, Jiangyan, Shoaib, Muhammad

arXiv.org Artificial Intelligence

The language called Balti belongs to the Sino-Tibetan, specifically the Tibeto-Burman language family. It is understood with variations, across populations in India, China, Pakistan, Nepal, Tibet, Burma, and Bhutan, influenced by local cultures and producing various dialects. Considering the diverse cultural, socio-political, religious, and geographical impacts, it is important to step forward unifying the dialects, the basis of common root, lexica, and phonological perspectives, is vital. In the era of globalization and the increasingly frequent developments in AI technology, understanding the diversity and the efforts of dialect unification is important to understanding commonalities and shortening the gaps impacted by unavoidable circumstances. This article analyzes and examines how artificial intelligence AI in the essence of Large Language Models LLMs, can assist in analyzing, documenting, and standardizing the endangered Balti Language, based on the efforts made in different dialects so far.


WaterQualityNeT: Prediction of Seasonal Water Quality of Nepal Using Hybrid Deep Learning Models

Paneru, Biplov, Paneru, Bishwash

arXiv.org Artificial Intelligence

Ensuring a safe and uncontaminated water supply is contingent upon the monitoring of water quality, especially in developing countries such as Nepal, where water sources are susceptible to pollution. This paper presents a hybrid deep learning model for predicting Nepal's seasonal water quality using a small dataset with many water quality parameters. The model integrates convolutional neural networks (CNN) and recurrent neural networks (RNN) to exploit temporal and spatial patterns in the data. The results demonstrate significant improvements in forecast accuracy over traditional methods, providing a reliable tool for proactive control of water quality. The model that used WQI parameters to classify people into good, poor, and average groups performed 92% of the time in testing. Similarly, the R2 score was 0.97 and the root mean square error was 2.87 when predicting WQI values using regression analysis. Additionally, a multifunctional application that uses both a regression and a classification approach is built to predict WQI values.


Solar Power Prediction Using Satellite Data in Different Parts of Nepal

Nepal, Raj Krishna, Khanal, Bibek, Ghimire, Vibek, Neupane, Kismat, Pokharel, Atul, Niraula, Kshitij, Tiwari, Baburam, Bhattarai, Nawaraj, Poudyal, Khem N., Karki, Nawaraj, Dangi, Mohan B, Biden, John

arXiv.org Artificial Intelligence

Due to the unavailability of solar irradiance data for many potential sites of Nepal, the paper proposes predicting solar irradiance based on alternative meteorological parameters. The study focuses on five distinct regions in Nepal and utilizes a dataset spanning almost ten years, obtained from CERES SYN1deg and MERRA-2. Machine learning models such as Random Forest, XGBoost, K-Nearest Neighbors, and deep learning models like LSTM and ANN-MLP are employed and evaluated for their performance. The results indicate high accuracy in predicting solar irradiance, with R-squared(R2) scores close to unity for both train and test datasets. The impact of parameter integration on model performance is analyzed, revealing the significance of various parameters in enhancing predictive accuracy. Each model demonstrates strong performance across all parameters, consistently achieving MAE values below 6, RMSE values under 10, MBE within |2|, and nearly unity R2 values. Upon removal of various solar parameters such as "Solar_Irradiance_Clear_Sky", "UVA", etc. from the datasets, the model's performance is significantly affected. This exclusion leads to considerable increases in MAE, reaching up to 82, RMSE up to 135, and MBE up to |7|. Among the models, KNN displays the weakest performance, with an R2 of 0.7582546. Conversely, ANN exhibits the strongest performance, boasting an R2 value of 0.9245877. Hence, the study concludes that Artificial Neural Network (ANN) performs exceptionally well, showcasing its versatility even under sparse data parameter conditions.


NewsPanda: Media Monitoring for Timely Conservation Action

Keh, Sedrick Scott, Shi, Zheyuan Ryan, Patterson, David J., Bhagabati, Nirmal, Dewan, Karun, Gopala, Areendran, Izquierdo, Pablo, Mallick, Debojyoti, Sharma, Ambika, Shrestha, Pooja, Fang, Fei

arXiv.org Artificial Intelligence

Non-governmental organizations for environmental conservation have a significant interest in monitoring conservation-related media and getting timely updates about infrastructure construction projects as they may cause massive impact to key conservation areas. Such monitoring, however, is difficult and time-consuming. We introduce NewsPanda, a toolkit which automatically detects and analyzes online articles related to environmental conservation and infrastructure construction. We fine-tune a BERT-based model using active learning methods and noise correction algorithms to identify articles that are relevant to conservation and infrastructure construction. For the identified articles, we perform further analysis, extracting keywords and finding potentially related sources. NewsPanda has been successfully deployed by the World Wide Fund for Nature teams in the UK, India, and Nepal since February 2022. It currently monitors over 80,000 websites and 1,074 conservation sites across India and Nepal, saving more than 30 hours of human efforts weekly. We have now scaled it up to cover 60,000 conservation sites globally.