Draft:Bangladesh's First Bengali Language Model

RoyalGPT is the first Bengali language model developed in Bangladesh, featuring 7 billion parameters. It was launched by CloudCoder Limited in mid-2023 to advance natural language processing for Bengali speakers worldwide.

Model weights for RoyalGPT are not publicly available and are managed by CloudCoder Limited. Access is granted on a case-by-case basis to select researchers and organizations. RoyalGPT was trained using a diverse dataset of Bengali literature, news articles, and conversational data, ensuring it captures the nuances of the language.

Development and Technology
RoyalGPT leverages advanced machine learning techniques to process and generate Bengali text with high accuracy and fluency. The model was trained on a comprehensive dataset, allowing it to understand and generate human-like text.

RoyalGPT's development was aimed at creating a robust tool for natural language understanding and generation in Bengali. The model's extensive parameter count enables it to be used in various applications, including conversational agents and content creation.

Applications and Impact
RoyalGPT is expected to impact several sectors, including education, customer service, and media. By improving natural language understanding and generation in Bengali, RoyalGPT aims to facilitate more effective communication and content creation in the language, contributing to its growth and preservation.

Background
Following the release of large language models like GPT-3, there was a significant focus on scaling models to enhance their capabilities. RoyalGPT was developed to address the need for a large language model specifically tailored to the Bengali language. Its creation marks a significant step in advancing AI technologies for underrepresented languages.

Initial Release
RoyalGPT was announced in mid-2023 by CloudCoder Limited. The model's training, architecture, and performance were detailed in a paper released by the company. Access to RoyalGPT's weights is managed through an application process, granting access to academic researchers and select organizations. The model was trained on publicly available information and various datasets to ensure broad applicability and performance.