Artificial Intelligence: Revolution Or Future Threat
Artificial Intelligence: Revolution Or Future Threat
Vol 8 , Issue 1 , December 2023 | Pages: 16-19
DOI: 10.61691/IPEM_CA.8.2023.16-19
Published Online: December, 2023
- Author Affiliations
- Abstract
- References
- Citation
Author Details
As we all know the latest hot topic all over the world is artificial intelligence (AI). And why shouldn't it be?? As AI has a wide range of applications across various industries including, finance, transportation, healthcare, and human resources. In healthcare, AI can be used for diagnosis and treatment recommendations, patient engagement and adherence, and administrative activities. In finance, AI can help personalize services and products, create opportunities, manage risk and fraud, enable transparency and compliance, and automate operations and reduce costs. In transportation, AI can be used for self-driving vehicles, traffic detection, and pedestrian detection. In human resources, AI can screen resumes, rank candidates based on their qualifications, predict candidate success in given roles, and automate repetitive communication tasks via chatbots. AI can also be used for real-time code completion, chat, and automated test generation. The potential applications of AI are vast and varied, and the technology is expected to continue to revolutionize many industries in the future.
Keywords
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Vishwajeet (2003); Artificial intelligence: revolution or future threat, IPEM JOURNAL OF COMPUTER APPLICATION &RESEARCH, 8(1), 16-19