update
This commit is contained in:
334
src/interface.jl
334
src/interface.jl
@@ -339,6 +339,286 @@ julia>
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# Signature
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"""
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# function evaluator(state::T1, text2textInstructLLM::Function;
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# insertSQLVectorDB::Union{Function, Nothing}=nothing
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# ) where {T1<:AbstractDict}
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# # systemmsg =
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# # """
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# # You are a helpful assistant that analyzes agent's trajectories to find solutions and observations (i.e., the results of actions) to answer the user's questions.
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# # Definitions:
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# # "question" is the user's question.
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# # "thought" is step-by-step reasoning about the current situation.
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# # "plan" is what to do to complete the task from the current situation.
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# # "action" is the taken action which can be one of the following functions:
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# # 1) TABLEINFO[list_of_table_name], which you can use to get the data type of a table column.
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# # 2) GETDATA[instruction], which you can use to get the data from the database.
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# # 3) ANSWERBOX[answer], which returns your answer to the user. "answer" is your answer to the user question.
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# # "observation" is result of the action in JSON format.
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# # At each round of conversation, the user will give you:
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# # Context: ...
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# # Trajectories: ...
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# # You should then respond to the user with:
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# # - Original_question: Repeat the original question.
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# # - Evaluation (you must evaluate all of the following points):
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# # 1) Analyze the trajectories of a solution to answer the user's original question.
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# # Given a question and a trajectory, evaluate its correctness and provide your reasoning and
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# # analysis in detail. Focus on the latest thought, action, and observation.
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# # Incomplete trajectories can be correct if the thoughts and actions so far are correct,
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# # even if the answer is not found yet. Do not generate additional thoughts or actions.
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# # 2) How the observation addresses the original question?
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# # 3) Provide suggestion (if applicable).
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# # - Score: Correctness score s where s is an integer from 0 to 10.
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# # - Accepted_as_answer: Decide whether to accept the observation as the answer to the original question.
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# # 1) The accepted observation should directly answer the question.
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# # 2) The possible responses are either 'Yes' or 'No.'
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# # You should only respond in JSON format as described below:
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# # {"original_question": ..., "evaluation": ..., "score": ..., "accepted_as_answer": ...}
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# # Here are correct trajectory examples:
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# # user:
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# # {
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# # "question": "I'm looking for a sedan with an automatic driving feature.",
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# # "thought_1": "I have many types of sedans in my inventory, each with diverse features.",
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# # "thought_2": "I should check our inventory first to see if we have the one our customer wants.",
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# # "action_1": {"name": "inventory", "input": "a sedan with an automatic driving feature"},
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# # "observation_1": "Yiem Model A, Conez Model B"
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# # }
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# # assistant:
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# # {
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# # "original_question": "the user is looking for a sedan with an automatic driving feature.",
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# # "evaluation": "This trajectory is correct because it is logical to use the INVENTORY function to search for inventory based on the details provided in the question, which could lead to a potential answer. The user is asking whether do you have a sedan with an automatic driving feature and the observation provides a list of sedan models that you have. Thus, it is accepted as the answer.",
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# # "score": 10,
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# # "accepted_as_answer": "Yes"
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# # }
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# # user:
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# # {
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# # "question": "How many cars that fitted with a stereo we have?",
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# # "thought_1": "I have many types of car in my inventory, each with diverse features.",
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# # "thought_3": "I should check our inventory.",
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# # "action_1": {"name": "inventory", "input": "vehicle with a stereo"},
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# # "observation_1": "2015 Conez truck."
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# # }
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# # assistant:
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# # {
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# # "evaluation": “This approach is correct. It's reasonable to use the INVENTORY function to search for inventory. However, the query asked for a car but the observation was a truck. Thus it is not accepted as the answer. To improve, make sure to input the correct terms and match the requested criteria accurately.”,
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# # "score": 5,
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# # "accepted_as_answer": "No"
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# # }
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# # Here are incorrect trajectory examples:
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# # user:
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# # {
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# # "question": "I'm looking for a sedan with an automatic driving feature. Do you have it in stock?",
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# # "thought_1": "I have many types of sedans in my inventory, each with diverse features.",
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# # "thought_2": "I will use SEARCHINTERNET function to search for the car.",
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# # "action_1": {"name": "SEARCHINTERNET", "input": "a sedan with an automatic driving feature.},
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# # "observation_1": "Teza Model A, Teza Model B"
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# # }
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# # assistant:
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# # {
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# # "evaluation": "This trajectory is incorrect. Using the SEARCHINTERNET function to search for a sedan in the Internet is illogical because the question asked for the cars available for sale at your dealership. To improve, ensure that you read the question clearly.",
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# # "score": 0,
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# # "accepted_as_answer": "No"
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# # }
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# # Let's begin!
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# # """
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# # systemmsg =
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# # """
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# # You are a helpful assistant that analyzes agent's trajectories to find solutions and observations (i.e., the results of actions) to answer the user's questions.
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# # Definitions:
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# # "question" is the user's question.
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# # "thought" is step-by-step reasoning about the current situation.
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# # "plan" is what to do to complete the task from the current situation.
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# # “action_name” is the name of the action taken, which can be one of the following functions:
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# # 1) CHATBOX[text], which you can use to talk with the user. "text" is in verbal English.
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# # 2) WINESTOCK[query], which you can use to find info about wine in your inventory. "query" is a search term in verbal English. The best query must includes "budget", "type of wine", "characteristics of wine" and "food pairing".
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# # "action_input" is the input to the action
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# # "observation" is result of the action.
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# # At each round of conversation, the user will give you:
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# # Context: ...
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# # Trajectories: ...
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# # You should then respond to the user with:
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# # - original_question: Repeat the original question.
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# # - evaluation (you must evaluate all of the following points in a single paragraph):
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# # 1) Analyze the trajectories of a solution to answer the user's original question.
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# # Given a question and a trajectory, evaluate its correctness and provide your reasoning and
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# # analysis in detail. Focus on the latest thought, action, and observation.
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# # Incomplete trajectories can be correct if the thoughts and actions so far are correct,
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# # even if the answer is not found yet. Do not generate additional thoughts or actions.
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# # 2) How the observation addresses the question exactly?
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# # - accepted_as_answer: Decide whether to accept the observation as the answer to the original question.
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# # 1) if the observation's content directly answers the question then just accept it as the answer. Oherwise, it is not. The possible responses are either 'Yes' or 'No.'
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# # - score: Correctness score s where s is a single integer between 0 to 9.
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# # 1) 0 means the trajectories are incorrect.
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# # 2) 9 means the trajectories are correct, and the observation's content directly answers the question.
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# # - suggestion: if accepted_as_answer is "No", provide suggestion.
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# # You should only respond in format as described below:
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# # original_question: ...
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# # evaluation: ...
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# # accepted_as_answer: ...
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# # score: ...
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# # suggestion: ...
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# # Let's begin!
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# # """
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# systemmsg =
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# """
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# You are a helpful assistant that analyzes agent's trajectory to find solutions and observations (i.e., the results of actions) to answer the user's questions.
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# Definitions:
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# "question" is the user's question
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# "understanding" is agent's understanding about the current situation
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# "reasoning" is agent's step-by-step reasoning about the current situation
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# "plan" is agent's plan to complete the task from the current situation
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# "action_name" is the name of the action taken, which can be one of the following functions:
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# - GETDATA, which you can use to get the data from the database. Action_input for this function must be a single SQL query to be executed against the database.
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# For more effective text search, it's necessary to use case-insensitivity and the ILIKE operator.
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# Do not wrap the SQL as it will be executed against the database directly and SQL must be ended with ';'.
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# "action_input" is the input to the action
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# "observation" is result of the preceding immediate action
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# At each round of conversation, the user will give you:
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# Trajectory: ...
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# Error note: error note from your previous attempt
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# You must follow the following guidelines:
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# - When the search returns no result, validate whether the SQL query makes sense before accepting it as a valid answer.
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# You should then respond to the user with:
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# 1) Trajectory_evaluation: Analyze the trajectory of a solution to answer the user's original question.
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# - Evaluate the correctness of each section and the overall trajectory based on the given question.
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# - Provide detailed reasoning and analysis, focusing on the latest thought, action, and observation.
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# - Incomplete trajectory are acceptable if the thoughts and actions up to that point are correct, even if the final answer isn't reached.
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# - Do not generate additional thoughts or actions.
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# 2) Answer_evaluation:
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# - Focus only on the matter mentioned in the question and comprehensively analyze how the latest observation's details addresses the question
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# - State your rationale
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# 3) Accepted_as_answer: Decide whether the latest observation's content answers the question. Can be "Yes" or "No"
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# Bad example (The observation didn't answers the question):
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# question: Find cars with 4 wheels.
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# observation: There are an apple in the table.
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# Good example (The observation answers the question):
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# question: Find cars with a stereo.
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# observation: There are 1 cars in the table. 1) brand: Toyota, model: yaris, color: black.
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# 4) Score: Correctness score s where s is a single integer between 0 to 9.
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# Score guideline:
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# - 0 indicates that both the trajectory is incorrect, failed or errors and the observation is incorrect or failed
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# - 4 indicates that the trajectory are correct but the observation is incorrect or failed
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# - 8 indicates that both the trajectory are correct, and the observation's content directly answers the question.
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# - 9 indicates a perfect perfomance. Both the trajectory are correct, and the observation's content directly answers the question, surpassing your expectations.
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# 5) Suggestion: if accepted_as_answer is "No", provide suggestion.
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# You should only respond in format as described below:
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# Trajectory_evaluation: ...
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# Answer_evaluation: ...
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# Accepted_as_answer: ...
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# Score: ...
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# Suggestion: ...
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# Let's begin!
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# """
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# thoughthistory = ""
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# for (k, v) in state[:thoughtHistory]
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# thoughthistory *= "$k: $v\n"
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# end
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# errornote = ""
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# for attempt in 1:5
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# usermsg =
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# """
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# Trajectory: $thoughthistory
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# Error note: $errornote
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# """
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# _prompt =
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# [
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# Dict(:name=> "system", :text=> systemmsg),
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# Dict(:name=> "user", :text=> usermsg)
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# ]
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# # put in model format
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# prompt = GeneralUtils.formatLLMtext(_prompt; formatname="llama3instruct")
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# prompt *=
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# """
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# <|start_header_id|>assistant<|end_header_id|>
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# """
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# header = ["Trajectory_evaluation", "Answer_evaluation", "Accepted_as_answer", "Score", "Suggestion"]
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# try
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# response = text2textInstructLLM(prompt)
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# # make sure every header is in the response
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# for i in header
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# detected = GeneralUtils.detect_keyword(i, response)
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# if detected === nothing
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# error("Keyword $i not found in response")
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# end
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# end
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# responsedict = GeneralUtils.textToDict(response,
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# header;
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# rightmarker=":", symbolkey=true, lowercasekey=true)
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# # check if dict has all required value
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# trajectoryevaluation_text::AbstractString = responsedict[:trajectory_evaluation]
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# answerevaluation_text::AbstractString = responsedict[:answer_evaluation]
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# # responsedict[:score] = replace(responsedict[:score], r"\(.*?\)" => "") # remove (...) if there is any.
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# responsedict[:score] = responsedict[:score][1] # some time "6\nThe trajectories are incomplete" is generated but I only need the number.
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# responsedict[:score] = parse(Int, responsedict[:score]) # convert string "5" into integer 5
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# score::Integer = responsedict[:score]
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# accepted_as_answer::AbstractString = responsedict[:accepted_as_answer]
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# suggestion::AbstractString = responsedict[:suggestion]
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# if accepted_as_answer ∉ ["Yes", "No"] # [PENDING] add errornote into the prompt
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# error("generated accepted_as_answer has wrong format")
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# end
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# # add to state here instead to in transition() because the latter causes julia extension crash (a bug in julia extension)
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# state[:evaluation] = "$(responsedict[:trajectory_evaluation]) $(responsedict[:answer_evaluation])"
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# state[:evaluationscore] = responsedict[:score]
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# state[:accepted_as_answer] = responsedict[:accepted_as_answer]
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# state[:suggestion] = responsedict[:suggestion]
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# # mark as terminal state when the answer is achieved
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# if accepted_as_answer == "Yes"
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# # mark the state as terminal state because the evaluation say so.
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# state[:isterminal] = true
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# # evaluation score as reward because different answers hold different value for the user.
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# state[:reward] = responsedict[:score]
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# end
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# println("\n~~~ Evaluator() ", @__FILE__, ":", @__LINE__)
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# pprintln(Dict(responsedict))
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# return responsedict[:score]
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# catch e
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# io = IOBuffer()
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# showerror(io, e)
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# errorMsg = String(take!(io))
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# st = sprint((io, v) -> show(io, "text/plain", v), stacktrace(catch_backtrace()))
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# println("")
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# println("Attempt $attempt. Error occurred: $errorMsg\n$st")
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# println("")
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# end
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# end
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# error("evaluator failed to generate an evaluation")
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# end
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function evaluator(state::T1, text2textInstructLLM::Function;
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insertSQLVectorDB::Union{Function, Nothing}=nothing
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) where {T1<:AbstractDict}
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@@ -490,14 +770,16 @@ function evaluator(state::T1, text2textInstructLLM::Function;
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"action_input" is the input to the action
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"observation" is result of the preceding immediate action
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At each round of conversation, the user will give you:
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Context: ...
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<At each round of conversation, the user will give you>
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Trajectory: ...
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Error note: error note from your previous attempt
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</At each round of conversation, the user will give you>
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You must follow the following guidelines:
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<You must follow the following guidelines>
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- When the search returns no result, validate whether the SQL query makes sense before accepting it as a valid answer.
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</You must follow the following guidelines>
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You should then respond to the user with:
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<You should then respond to the user with>
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1) Trajectory_evaluation: Analyze the trajectory of a solution to answer the user's original question.
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- Evaluate the correctness of each section and the overall trajectory based on the given question.
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- Provide detailed reasoning and analysis, focusing on the latest thought, action, and observation.
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@@ -520,13 +802,15 @@ function evaluator(state::T1, text2textInstructLLM::Function;
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- 8 indicates that both the trajectory are correct, and the observation's content directly answers the question.
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- 9 indicates a perfect perfomance. Both the trajectory are correct, and the observation's content directly answers the question, surpassing your expectations.
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5) Suggestion: if accepted_as_answer is "No", provide suggestion.
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</You should then respond to the user with>
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You should only respond in format as described below:
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<You should only respond in format as described below>
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Trajectory_evaluation: ...
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Answer_evaluation: ...
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Accepted_as_answer: ...
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Score: ...
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Suggestion: ...
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</You should only respond in format as described below>
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Let's begin!
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"""
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@@ -536,10 +820,15 @@ function evaluator(state::T1, text2textInstructLLM::Function;
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thoughthistory *= "$k: $v\n"
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end
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for attempt in 1:5
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errornote = ""
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for attempt in 1:10
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errorFlag = false
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usermsg =
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"""
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Trajectory: $thoughthistory
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Error note: $errornote
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"""
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_prompt =
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@@ -555,10 +844,23 @@ function evaluator(state::T1, text2textInstructLLM::Function;
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<|start_header_id|>assistant<|end_header_id|>
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"""
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try
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header = ["Trajectory_evaluation", "Answer_evaluation", "Accepted_as_answer", "Score", "Suggestion"]
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response = text2textInstructLLM(prompt)
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# make sure every header is in the response
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for i in header
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detected = GeneralUtils.detect_keyword(i, response)
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if detected === nothing
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errornote = "Keyword $i not found in response"
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errorFlag = true
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end
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end
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if errorFlag
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continue # skip to the next iteration
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end
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responsedict = GeneralUtils.textToDict(response,
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["Trajectory_evaluation", "Answer_evaluation", "Accepted_as_answer", "Score", "Suggestion"];
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header;
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rightmarker=":", symbolkey=true, lowercasekey=true)
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# check if dict has all required value
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@@ -594,20 +896,10 @@ function evaluator(state::T1, text2textInstructLLM::Function;
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pprintln(Dict(responsedict))
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return responsedict[:score]
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catch e
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io = IOBuffer()
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showerror(io, e)
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errorMsg = String(take!(io))
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st = sprint((io, v) -> show(io, "text/plain", v), stacktrace(catch_backtrace()))
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println("")
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println("Attempt $attempt. Error occurred: $errorMsg\n$st")
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println("")
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end
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end
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error("evaluator failed to generate an evaluation")
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end
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"""
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# Arguments
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@@ -979,9 +1271,9 @@ function query(query::T, executeSQL::Function, text2textInstructLLM::Function;
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earlystop(state) = state[:reward] >= 8 ? true : false
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_, _, resultState = LLMMCTS.runMCTS(initialstate, transition, transitionargs;
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horizontalSampleExpansionPhase=2,
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horizontalSampleSimulationPhase=1,
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maxSimulationDepth=3, maxiterations=2,
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horizontalSampleExpansionPhase=5,
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horizontalSampleSimulationPhase=2,
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maxSimulationDepth=10, maxiterations=2,
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explorationweight=1.0,
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earlystop=earlystop,
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saveSimulatedNode=true)
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@@ -35,7 +35,7 @@ function text2textInstructLLM(prompt::String)
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msgPurpose="inference",
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senderName="yiemagent",
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senderId=sessionId,
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receiverName="text2textinstruct_medium",
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receiverName="text2textinstruct_small",
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mqttBrokerAddress=config[:mqttServerInfo][:broker],
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mqttBrokerPort=config[:mqttServerInfo][:port],
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)
|
||||
@@ -64,7 +64,7 @@ function getEmbedding(text::T) where {T<:AbstractString}
|
||||
msgPurpose="embedding",
|
||||
senderName="yiemagent",
|
||||
senderId=sessionId,
|
||||
receiverName="text2textinstruct_medium",
|
||||
receiverName="text2textinstruct_small",
|
||||
mqttBrokerAddress=config[:mqttServerInfo][:broker],
|
||||
mqttBrokerPort=config[:mqttServerInfo][:port],
|
||||
)
|
||||
|
||||
Reference in New Issue
Block a user