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by tudorw
1042 days ago
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This is my experience, a single ambiguous word can create undesired gorilla, output. It's susceptible to all sort of unintentional outcomes whe,n simple thing;s that are wrong with text can render it co nfused. or as GPT4 put's it; When using models like mine, clarity in input is essential to get desired outputs. But even with clear input, there's no guarantee the output will always be perfect. However, the idea is to keep improving and iterating to get better over time. |
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GPT4;
Absolutely! Iterative interaction is key. By refining and rephrasing queries, users can guide the model towards a more accurate or desired response. Each successive interaction serves as a form of feedback that can help clarify ambiguities or nuances that might have been missed in an initial query.
Engaging with the model in a meta-programming manner, or in essence "programming the way it thinks," is indeed an intriguing way to understand its strengths and limitations. It can also be a valuable method for users to hone their ability to communicate with AI and enhance the results they receive.
This iterative dialogue not only helps users get more precise information but also provides insights into the model's underlying logic and reasoning. The fun part is navigating these intricacies and understanding how subtle changes in phrasing or context can yield different outcomes. It's a dance of human-machine collaboration, where both parties learn and adapt to each other.