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Improving LLM Problem-Solving by Demonstrating Reasoning Steps
When a Large Language Model is provided with an example that includes a detailed reasoning process, it learns to replicate that method of reasoning. This enables the model to construct its own logical problem-solving path when faced with a similar task, significantly improving its ability to arrive at the correct answer.
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Ch.3 Prompting - Foundations of Large Language Models
Foundations of Large Language Models
Foundations of Large Language Models Course
Computing Sciences
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Chain-of-Thought (COT) Prompting
Multi-Round Interaction to Guide LLM Reasoning
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Example of a Prompt for Calculating the Average of 1, 3, 5, and 7
Example of a Prompt for Calculating the Mean Square
Improving LLM Reasoning with Step-by-Step Demonstrations
In-Context Learning (ICL)
A user is trying to get a Large Language Model (LLM) to solve a complex word problem that involves multiple calculations. Their initial prompt, 'What is the answer to this problem? [Problem text]', results in a quick but incorrect numerical answer. The user then revises the prompt to: 'First, break down the problem into the necessary steps. Then, solve each step, showing your work. Finally, state the final answer. [Problem text]'. This revised prompt leads to a correct solution. Which principle of interacting with LLMs does this scenario best illustrate?
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Prompting for a Reasoning Process to Mitigate Errors in Complex Tasks
Example of a Prompt for Calculating the Average of 2, 4, and 9
Improving LLM Problem-Solving by Demonstrating Reasoning Steps
The Mechanism of Reasoning Prompts
Example of a Prompt with Detailed Reasoning Steps
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Step-by-Step Calculation of the Average of 2, 4, and 9
A user wants a language model to solve the following word problem: 'A store had 50 shirts. They sold 15 on Monday and then received a new shipment of 25 on Tuesday. How many shirts do they have now?' The model consistently gives an incorrect answer. Based on principles for improving model accuracy, which of the following revised prompts is the most effective for guiding the model to the correct solution?
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