THE ROLE OF GOVERNMENT IN REGULATING AI FOR ECONOMIC BENEFIT
DOI:
https://doi.org/10.29121/shodhkosh.v5.i1.2024.1659Keywords:
artificial intelligence (AI), Data Practices, Manage RisksAbstract [English]
This abstract critically examines the pivotal role of governments in regulating artificial intelligence (AI) to harness its economic benefits while addressing its potential risks. The paper delves into the complexities of designing regulatory frameworks that encourage innovation, while also mitigating challenges such as bias and job displacement. Various regulatory strategies are explored, including the establishment of safety and transparency standards, the promotion of responsible data practices, and significant investments in AI education and workforce retraining. By effectively balancing the need for innovation with the imperative to manage risks, governments can ensure that AI realizes its economic potential for a prosperous future.
The abstract further analyzes the strategies employed by governments to regulate AI for economic advantage. It highlights the concept of regulatory sandboxes, which provide a controlled environment for experimentation and innovation, thereby reducing regulatory burdens on AI startups. Additionally, the importance of international collaboration in developing harmonized AI standards is examined, emphasizing its role in facilitating global trade and investment. The discussion also underscores the significance of proactive government policies in addressing the socioeconomic impacts of AI automation. Essential investments in education and reskilling programs are identified as critical to preparing the workforce for an AI-driven economy. Furthermore, initiatives that promote AI research and development are recognized for enhancing technological competitiveness and stimulating economic growth.
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