democratize machine learning or introduce new risks
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The Hope Behind Decentralization Throughout most of AI history, its dominance has been guarded by a number of tech elitists companies. Owning the servers, data, and the expertise to train massive models, these AI companies monopolized the industry. For small businesses, individuals, or even academicRead more
The Hope Behind Decentralization
Throughout most of AI history, its dominance has been guarded by a number of tech elitists companies. Owning the servers, data, and the expertise to train massive models, these AI companies monopolized the industry. For small businesses, individuals, or even academic institutions, the cost of entry is prohibitively expensive.
Decentralized AI modes serves as a potential breakthrough. Rather than having central servers, models, and data sets, they use distributed networks, where individuals, organizations, and communities can all provide computing power and data. The goal is to remove corporate dominance by placing the AI in the hands of the general public.
The Practical Side of Democratization
Should decentralized AI become a reality, the above scenarios are likely to play out:
In this scenario, AI stops being just another product to be purchased from the Big Tech and starts becoming a commons that we all collaboratively construct.
The Shadows, However, Are Full of Risks
The vision is beautiful; however, decentralization is not a panacea. It has its problems:
To put it differently, while centralization runs the risk of a monopoly, decentralization runs the risk of disorder and abuse.
The Balance is Needed
Finding a solution for this might not necessitate an all or nothing answer. It may be that the best model is some form of compromise. A hybrid structure which fosters participation, diversity, and innovation, but is not held to a high standard of ethical control and open management.
This way, both extremes are avoided:
The corporate AI monopoly problem.
The relapsed anarchy problem of full, unregulated decentralization.
The People Principle
More than just a technology, this discussion is also about trust. Do we trust that a small number of powerful organizations will be responsible enough to guide AI development, or do we trust the open collaborations, with all its risk? History tells us that both extremes of power concentration and unregulated openness tend to let us down. The only question that remains is whether we have the ability to develop the necessary culture and values to enough make decentralized AI a benefit to all, and not a privilege to a few.
Final Comment
“AI and Machine Learning are powerful technologies that could empower people with unprecedented control and autonomy over their lives. However, they also possess the ability to unleash chaos. The impact of these technologies will not be determined by their existence alone, but rather by the frameworks that are put in place in relation to them concerning responsibility, transparency, and governance.
Decentralization, if done correctly, has the potential to be more than just a technological restructuring of society. It could also be a transformative shift in social structure, changing the people who control the access to information in the age of technology.”
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