Shock! GPT can output unlimited content
I don’t know if you have this kind of pain point: sometimes when asking a question, the answer given by GPT always feels like the answer is not complete. Many people don’t know how to operate. In fact, just input "continue" to output. , but many times you will find that the context has poor coherence and often does not match up.
This time GPT is awesome, a new continuation function has been added, and the continuity is very good, as shown in the picture
#The first button should be familiar to everyone. Have you never seen the second button before?
This is a new function. If the answer to the question is not completed, just click below. Isn’t it very convenient! ! ! ! !
When the output of your question is more than about 700 words, this button will appear. Write papers and requirements documents, no longer worry!
Today I share the top prompts to accelerate your learning
Here are the top prompts to accelerate your learning
1. Develop mental models for complex concepts
Prompt:
"Help me create mental models or analogies to better understand and remember key concepts in [topic or skill]."
Establish mental models of complex concepts
Prompt "Help me create mental models or metaphors to better understand and remember key concepts in [topic or skill]."
2. Utilize the Feynman Technique for deeper understanding
##Prompt:
"Explain [topic or skill] in the simplest terms possible as if teaching it to a complete beginner."
Usage fee Man Techniques to Deepen Understanding
Tip: “Explain [topic or skill] in its simplest terms, as if teaching it to a complete beginner.
3. Leverage the Pareto Principle for learning
Prompt:
"Identify the 20% of [topic or skill] that will yield 80% of the desired results and provide a focused learning plan to master it."
Learning with the Pareto Principle
Tip: “Identify 20% of the [topics or skills] that will produce 80% of the desired results , and provide a dedicated study plan to master it. ”
4. Optimize learning through interleaving
Prompt:
"Create a study plan that mixes different topics or skills within [subject area] to help me develop a more robust understanding and facilitate connections between them."
Optimize learning through alternating learning
# Tip: “Create a study that blends different topics or skills from [topic area] program to help me develop a more comprehensive understanding and facilitate connections between them.
5. Implement spaced repetition for long-term retention
Prompt:
##"Design a spaced repetition schedule for me to effectively review [topic or skill] over time, ensuring better retention and recall."
Implement spaced repetition for long-term memory
Tip: “Design a space for me Repeat the plan to effectively review [topic or skill] over time, ensuring better memory and recall."
6. Experience with different learning modalities
Prompt:
##"Suggest various learning resources (e.g., videos, books, podcasts, interactive exercises ) for [topic or skill] that cater to different learning styles."
try different learning styles
Tip: "Suggest a variety of learning resources (e.g. videos, books, podcasts, interactive exercises) for [topic or skill] to cater to different learning styles."
7. Harness the power of active recall
Prompt:
" Provide me with a series of challenging questions or problems related to [topic or skill] to test my understanding and improve long-term retention."
Use active recall The Power of
Prompt: “Give me a set of challenging questions or problems related to [topic or skill] that test my understanding and Improve long-term memory."
8. Use storytelling to enhance memory and comprehension ##Prompt:
"Transform key concepts or lessons from [topic or skill] into engaging stories or narratives to help me better remember and understand the material."
Use Storytelling to Enhance Memory and Comprehension
Tip: “Relate key concepts from [topic or skill] Or lessons are transformed into engaging stories or narratives to help me better remember and understand the material. ”
9. Implement a deliberate practice routine
Prompt:
"Design a deliberate practice routine for [topic or skill], focusing on my weaknesses and providing regular feedback for improvement."
# #implement a deliberate practice routine
Tip: “Design a deliberate practice routine for [topic or skill] that focuses on my weaknesses and provides regular feedback to improve . ”
10. Harness the power of visualization
Prompt:
"Guide me through a visualization exercise to help me internalize [topic or skill] and imagine myself successfully applying it in real-life situations."
Harness the Power of Imagination
Tip: “Use an imagery exercise to help me internalize [topic or skill] and visualize myself succeeding apply it to real-life situations. ”
The above is the detailed content of Shock! GPT can output unlimited content. For more information, please follow other related articles on the PHP Chinese website!

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