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Challenges and Solutions in AI Roadmapping: A Workshop Perspective

The recent workshop on AI roadmapping brought to light a number of critical issues that need to be addressed in order to navigate the ever-evolving landscape of artificial intelligence. Two key issues that were discussed in depth during the workshop were timescale and viewpoint.

The timescale issue is a crucial consideration when creating roadmaps for AI development. The workshop highlighted the need to differentiate between short-term and long-term roadmaps, as well as the importance of probabilistic thinking when predicting the future of AI. For example, considering the possibility of general AI being developed within different time frames can greatly impact the roadmap creation process.

Moreover, the workshop delved into the viewpoint issue, emphasizing the importance of considering the perspectives of different actors involved in the AI race. Roadmapping from various viewpoints can help uncover new scenarios and risks, ultimately leading to more comprehensive and robust roadmaps.

The discussion also touched upon the cooperation issue, highlighting the significance of collaboration among actors in the AI space. Cooperation and trust among different stakeholders can mitigate race dynamics and foster a safer and more responsible AI development environment.

By tying the timescale and cooperation issues together, we can proactively prevent negative scenarios from arising in the AI race. Concrete problems in AI safety, such as interpretability and bias-avoidance, need to be addressed collectively and immediately, regardless of the predicted horizon of AGI creation.

Forms of cooperation that maximize AI safety practice were also explored during the workshop. Encouraging open and transparent AI safety research, providing free and anonymous access to safety resources, and fostering inclusive alliances are key strategies to promote collaboration and trust building within the AI community.

As we continue to navigate the complex landscape of AI development, it is critical to engage in ongoing discussions and collaboration efforts to ensure the responsible and ethical advancement of AI technology. The AI Roadmap Institute is dedicated to further exploring these issues, identifying new perspectives, and mitigating risks in the AI race. Join us in this important conversation and help shape the future of AI development. Stay tuned for more updates and opportunities to get involved.

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