AI Ethics and Governance: Balancing Innovation with Societal Impact
Abstract
This abstract delves into the intricate landscape of AI Ethics and Governance, seeking equilibrium between fostering innovation and ensuring a positive societal impact. As Artificial Intelligence (AI) burgeons across diverse applications, concerns surrounding ethical considerations and governance frameworks intensify. This paper elucidates the challenges stemming from AI deployment, including ethical dilemmas, biases, privacy infringements, and the potential for societal repercussions. It navigates the evolving landscape of AI governance, emphasizing the urgency for regulatory structures that promote innovation while safeguarding against detrimental impacts. The abstract explores strategies for ethical AI design, principles for responsible deployment, and the pivotal role of multi-stakeholder collaborations in shaping policies and guidelines. It advocates for a balanced approach where technological advancement aligns harmoniously with societal values and welfare, fostering trust, inclusivity, and a sustainable AI future
References
Mallikarjunaradhya, V., & Pothukuchi, A. S. (2015). The Future of SAAS Startups: How AI Accelerates Market Research and Product Development. Asian Journal of Multidisciplinary Research & Review, 2(4), 444-450.
Chaitanya Krishna Suryadevara. (2020). GENERATING FREE IMAGES WITH OPENAI’S GENERATIVE MODELS. International Journal of Innovations in Engineering Research and Technology, 7(3), 49–56. Retrieved from https://repo.ijiert.org/index.php/ijiert/article/view/3653
Chaitanya Krishna Suryadevara. (2020). REAL-TIME FACE MASK DETECTION WITH COMPUTER VISION AND DEEP LEARNING: English. International Journal of Innovations in Engineering Research and Technology, 7(12), 254–259. Retrieved from https://repo.ijiert.org/index.php/ijiert/article/view/3184
Chaitanya Krishna Suryadevara. (2021). ENHANCING SAFETY: FACE MASK DETECTION USING COMPUTER VISION AND DEEP LEARNING. International Journal of Innovations in Engineering Research and Technology, 8(08), 224–229. Retrieved from https://repo.ijiert.org/index.php/ijiert/article/view/3672
Mallikarjunaradhya, V., & Pothukuchi, A. S. (2020). Leveraging AI for Predictive Migration Planning and Automated Data Transfer: Ensuring Optimal Cloud Resource Allocation and Data Integrity. Asian Journal of Multidisciplinary Research & Review, 1(2), 77-89.
Chaitanya Krishna Suryadevara, “TOWARDS PERSONALIZED HEALTHCARE - AN INTELLIGENT MEDICATION RECOMMENDATION SYSTEM”, IEJRD - International Multidisciplinary Journal, vol. 5, no. 9, p. 16, Dec. 2020.
Suryadevara, Chaitanya Krishna, Predictive Modeling for Student Performance: Harnessing Machine Learning to Forecast Academic Marks (December 22, 2018). International Journal of Research in Engineering and Applied Sciences (IJREAS), Vol. 8 Issue 12, December-2018, Available at SSRN: https://ssrn.com/abstract=4591990
Suryadevara, Chaitanya Krishna, Unveiling Urban Mobility Patterns: A Comprehensive Analysis of Uber (December 21, 2019). International Journal of Engineering, Science and Mathematics, Vol. 8 Issue 12, December 2019, Available at SSRN: https://ssrn.com/abstract=4591998
Chaitanya Krishna Suryadevara. (2019). A NEW WAY OF PREDICTING THE LOAN APPROVAL PROCESS USING ML TECHNIQUES. International Journal of Innovations in Engineering Research and Technology, 6(12), 38–48. Retrieved from https://repo.ijiert.org/index.php/ijiert/article/view/3654
Whig, P., & Ahmad, S. N. (2014). Simulation of linear dynamic macro model of photo catalytic sensor in SPICE. COMPEL: The International Journal for Computation and Mathematics in Electrical and Electronic Engineering, 33(1/2), 611-629.
Refbacks
- There are currently no refbacks.