Volume no :
9 |
Issue no :
02
Article Type :
Scholarly Article
Author :
Mr. Pradip S. Ingle , Pranav V. Dhande,Avishkar A. Jadhao,Praniket P. Kolte, Prem R. Kandarkar
Published Date :
June, 2025
Publisher :
Journal of Artificial Intelligence and Cyber Security (JAICS)
Page No: 1 - 5
Abstract : LLAMA 2, a powerful language model created by Meta AI, is designed to improve tasks like generating text, understanding natural language, and solving problems. It’s a type of generative AI, which means it can create new content based on the data it has learned. LLAMA 2 is more accurate and efficient than earlier versions, making it valuable in many real-world applications. In healthcare, LLAMA 2 helps doctors and medical professionals by analyzing patient records, providing information quickly, and supporting decision-making processes. It can also improve interactions with patients by understanding their concerns and providing relevant responses. In education, LLAMA 2 acts as a personalized tutor, helping students by answering questions, creating study materials, and making learning easier and more interactive. It also helps teachers by generating content for lessons or quizzes. For content creators in media and marketing, LLAMA 2 is a useful tool. It can write articles, create social media posts, and draft product descriptions, saving time and ensuring high quality, relevant content. In the legal field, LLAMA 2 speeds up tasks like reviewing documents, conducting legal research, and summarizing case law, which are usually time-consuming. Similarly, in the finance sector, it helps with analyzing trends, generating reports, and supporting customer service by automating common tasks. Businesses benefit from LLAMA 2 in customer relationship management (CRM). It can generate quick and accurate responses to customer inquiries, improving customer interaction and providing a better user experience. LLAMA 2 is also important for research and development, helping scientists go through academic papers quickly and gather useful insights. In software development, LLAMA 2 can assist by generating code, fixing bugs, and writing technical documentation. However, it’s important to use LLAMA 2 responsibly. Ethical concerns like bias, transparency, and data privacy need to be addressed to ensure fair and responsible use of the model. Despite these challenges, LLAMA 2’s advanced capabilities make it a valuable tool across different industries. It simplifies tasks, boosts creativity, and provides meaningful insights, with more improvements expected in the future.
Keyword Meta AI, generative AI, natural language processing (NLP), text generation, healthcare, education, personalized tutoring, content creation, media, marketing, legal research, financial analysis, customer relationship management (CRM), research and development, software development, code generation, ethical concerns, bias, transparency, data privacy.
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