Prompt is the most direct way to influence response, tips for good prompt:
The purpose of prompt in post-training is building best reasoning architecture in response, training could optimize other detailed contents in response
The purpose of training is to ensure performance on test dataset increase in stable trend and range.
The purpose of dataset is to provide information to model to learn, in the late stages, model already know more than before, more extra information should be sent to model. So, in the late stage, we should increase information diversity
How to increase information diversity:
This post is licensed under CC BY 4.0 by the author.
Prompt is the most direct way to influence response, tips for good prompt:
The purpose of prompt in post-training is building best reasoning architecture in response, training could optimize other detailed contents in response
The purpose of training is to ensure performance on test dataset increase in stable trend and range.
The purpose of dataset is to provide information to model to learn, in the late stages, model already know more than before, more extra information should be sent to model. So, in the late stage, we should increase information diversity
How to increase information diversity:
This post is licensed under CC BY 4.0 by the author.