Reasoning is crucial for performance in AI models, yet current models often reason in ways constrained by their design rather than emulating human thought processes. There is a vision to enhance reasoning capabilities by designing data that reflects human problem-solving approaches. The emergence of new, advanced models presents opportunities for continual improvement, as better reasoning models can benefit from enhanced training data, creating a cycle of bootstrap improvement. The persistence of current reasoning methods indicates that traditional autoregressive models are limited in their 'thinking' capabilities, highlighting the need for ongoing evolution in model architecture for better reasoning outcomes.

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