This commit is contained in:
2025-03-21 10:03:08 +07:00
parent 8fc3afe348
commit bfadd53033
5 changed files with 614 additions and 650 deletions

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@@ -1,6 +1,6 @@
module interface
export addNewMessage, conversation, decisionMaker, evaluator, reflector, generatechat,
export addNewMessage, conversation, decisionMaker, reflector, generatechat,
generalconversation, detectWineryName, generateSituationReport
using JSON3, DataStructures, Dates, UUIDs, HTTP, Random, PrettyPrinting, Serialization,
@@ -55,6 +55,8 @@ end
config
- `state::T2`
a game state
# Keyword Arguments
# Return
- `thoughtDict::Dict`
@@ -90,8 +92,6 @@ julia> output_thoughtDict = Dict(
# TODO
- [] update docstring
- [x] implement the function
- [] implement RAG to pull similar experience
- [] use customerinfo
- [] user storeinfo
@@ -294,15 +294,13 @@ function decisionMaker(a::T; recent::Integer=5)::Dict{Symbol,Any} where {T<:agen
Dict(:name => "user", :text => usermsg)
]
#[WORKING] change qwen format put in model format
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="llama3instruct")
prompt *= """
<|start_header_id|>assistant<|end_header_id|>
"""
# change qwen format put in model format
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="qwen")
response = a.func[:text2textInstructLLM](prompt)
response = GeneralUtils.remove_french_accents(response)
response = replace(response, '*'=>"")
response = replace(response, "**"=>"")
response = replace(response, "***"=>"")
response = replace(response, "<|eot_id|>"=>"")
# check if response contain more than one functions from ["CHATBOX", "CHECKINVENTORY", "ENDCONVERSATION"]
@@ -395,284 +393,280 @@ function decisionMaker(a::T; recent::Integer=5)::Dict{Symbol,Any} where {T<:agen
end
""" Assigns a scalar value to each new child node to be used for selec-
tion and backpropagation. This value effectively quantifies the agent's progress in task completion,
serving as a heuristic to steer the search algorithm towards the most promising regions of the tree.
# """ Assigns a scalar value to each new child node to be used for selec-
# tion and backpropagation. This value effectively quantifies the agent's progress in task completion,
# serving as a heuristic to steer the search algorithm towards the most promising regions of the tree.
# Arguments
- `a::T1`
one of Yiem's agent
- `state::T2`
a game state
# # Arguments
# - `a::T1`
# one of Yiem's agent
# - `state::T2`
# a game state
# Return
- `evaluation::Tuple{String, Integer}`
evaluation and score
# # Return
# - `evaluation::Tuple{String, Integer}`
# evaluation and score
# Example
```jldoctest
julia>
```
# # Example
# ```jldoctest
# julia>
# ```
# Signature
"""
function evaluator(config::T1, state::T2
)::Tuple{String,Integer} where {T1<:AbstractDict,T2<:AbstractDict}
# # Signature
# """
# function evaluator(config::T1, state::T2
# )::Tuple{String,Integer} where {T1<:AbstractDict,T2<:AbstractDict}
systemmsg =
"""
Analyze the trajectories of a solution to a question answering task. The trajectories are
labeled by environmental observations about the situation, thoughts that can reason about
the current situation and actions that can be three types:
1) CHECKINVENTORY[query], which you can use to find wine in your inventory.
2) CHATBOX[text], which you can use to interact with the user.
# systemmsg =
# """
# Analyze the trajectories of a solution to a question answering task. The trajectories are
# labeled by environmental observations about the situation, thoughts that can reason about
# the current situation and actions that can be three types:
# 1) CHECKINVENTORY[query], which you can use to find wine in your inventory.
# 2) CHATBOX[text], which you can use to interact with the user.
Given a question and a trajectory, evaluate its correctness and provide your reasoning and
analysis in detail. Focus on the latest thought, action, and observation. Incomplete trajectories
can be correct if the thoughts and actions so far are correct, even if the answer is not found
yet. Do not generate additional thoughts or actions. Then ending with the correctness score s
where s is an integer from 0 to 10.
# Given a question and a trajectory, evaluate its correctness and provide your reasoning and
# analysis in detail. Focus on the latest thought, action, and observation. Incomplete trajectories
# can be correct if the thoughts and actions so far are correct, even if the answer is not found
# yet. Do not generate additional thoughts or actions. Then ending with the correctness score s
# where s is an integer from 0 to 10.
You should only respond in JSON format as describe below:
{"evaluation": "your evaluation", "score": "your evaluation score"}
# You should only respond in JSON format as describe below:
# {"evaluation": "your evaluation", "score": "your evaluation score"}
Here are some examples:
user:
{
"question": "I'm looking for a sedan with an automatic driving feature.",
"thought_1": "I have many types of sedans in my inventory, each with diverse features.",
"thought_2": "But there is only 1 model that has the feature customer wanted.",
"thought_3": "I should check our inventory first to see if we have it.",
"action_1": {"name": "inventory", "input": "Yiem model A"},
"observation_1": "Yiem model A is in stock."
}
assistant
{
"evaluation": "This trajectory is correct as it is reasonable to check an inventory for info provided in the question.
It is also better to have simple searches corresponding to a single entity, making this the best action.",
"score": 10
}
# Here are some examples:
# user:
# {
# "question": "I'm looking for a sedan with an automatic driving feature.",
# "thought_1": "I have many types of sedans in my inventory, each with diverse features.",
# "thought_2": "But there is only 1 model that has the feature customer wanted.",
# "thought_3": "I should check our inventory first to see if we have it.",
# "action_1": {"name": "inventory", "input": "Yiem model A"},
# "observation_1": "Yiem model A is in stock."
# }
# assistant
# {
# "evaluation": "This trajectory is correct as it is reasonable to check an inventory for info provided in the question.
# It is also better to have simple searches corresponding to a single entity, making this the best action.",
# "score": 10
# }
user:
{
"question": "Do you have an all-in-one pen with 4 colors and a pencil for sale?",
"thought_1": "Let me check our inventory first to see if I have it.",
"action_1": {"name": "inventory", "input": "pen with 4 color and a pencil."},
"observation_1": "I found {1: "Pilot Dr. grip 4-in-1 pen", 2: "Rotting pencil"}",
"thought_2": "Ok, I have what the user is asking. Let's tell the user.",
"action_2": {"name": "CHATBOX", "input": "Yes, we do have a Pilot Dr. grip 4-in-1 pen and a Rotting pencil"},
"observation_1": "This is not what I wanted."
}
assistant:
{
"evaluation": "This trajectory is incorrect as my search term should be related to a 4-colors pen with a pencil in it,
not a pen and a pencil seperately. A better search term should have been a 4-colors pen with a pencil, all-in-one.",
"score": 0
}
# user:
# {
# "question": "Do you have an all-in-one pen with 4 colors and a pencil for sale?",
# "thought_1": "Let me check our inventory first to see if I have it.",
# "action_1": {"name": "inventory", "input": "pen with 4 color and a pencil."},
# "observation_1": "I found {1: "Pilot Dr. grip 4-in-1 pen", 2: "Rotting pencil"}",
# "thought_2": "Ok, I have what the user is asking. Let's tell the user.",
# "action_2": {"name": "CHATBOX", "input": "Yes, we do have a Pilot Dr. grip 4-in-1 pen and a Rotting pencil"},
# "observation_1": "This is not what I wanted."
# }
# assistant:
# {
# "evaluation": "This trajectory is incorrect as my search term should be related to a 4-colors pen with a pencil in it,
# not a pen and a pencil seperately. A better search term should have been a 4-colors pen with a pencil, all-in-one.",
# "score": 0
# }
Let's begin!
"""
# Let's begin!
# """
usermsg = """
$(JSON3.write(state[:thoughtHistory]))
"""
# usermsg = """
# $(JSON3.write(state[:thoughtHistory]))
# """
chathistory =
[
Dict(:name => "system", :text => systemmsg),
Dict(:name => "user", :text => usermsg)
]
# chathistory =
# [
# Dict(:name => "system", :text => systemmsg),
# Dict(:name => "user", :text => usermsg)
# ]
# put in model format
prompt = formatLLMtext(chathistory, "llama3instruct")
prompt *= """
<|start_header_id|>assistant<|end_header_id|>
{
"""
# # put in model format
# prompt = GeneralUtils.formatLLMtext(_prompt; formatname="qwen")
pprint(prompt)
externalService = config[:externalservice][:text2textinstruct]
# pprint(prompt)
# externalService = config[:externalservice][:text2textinstruct]
# apply LLM specific instruct format
externalService = config[:externalservice][:text2textinstruct]
# # apply LLM specific instruct format
# externalService = config[:externalservice][:text2textinstruct]
msgMeta = GeneralUtils.generate_msgMeta(
externalService[:mqtttopic],
senderName="evaluator",
senderId=string(uuid4()),
receiverName="text2textinstruct",
mqttBroker=config[:mqttServerInfo][:broker],
mqttBrokerPort=config[:mqttServerInfo][:port],
)
# msgMeta = GeneralUtils.generate_msgMeta(
# externalService[:mqtttopic],
# senderName="evaluator",
# senderId=string(uuid4()),
# receiverName="text2textinstruct",
# mqttBroker=config[:mqttServerInfo][:broker],
# mqttBrokerPort=config[:mqttServerInfo][:port],
# )
outgoingMsg = Dict(
:msgMeta => msgMeta,
:payload => Dict(
:text => prompt,
:kwargs => Dict(
:max_tokens => 512,
:stop => ["<|eot_id|>"],
)
)
)
# outgoingMsg = Dict(
# :msgMeta => msgMeta,
# :payload => Dict(
# :text => prompt,
# :kwargs => Dict(
# :max_tokens => 512,
# :stop => ["<|eot_id|>"],
# )
# )
# )
for attempt in 1:5
try
response = GeneralUtils.sendReceiveMqttMsg(outgoingMsg)
_responseJsonStr = response[:response][:text]
expectedJsonExample = """
Here is an expected JSON format:
{"evaluation": "...", "score": "..."}
"""
responseJsonStr = jsoncorrection(config, _responseJsonStr, expectedJsonExample)
evaluationDict = copy(JSON3.read(responseJsonStr))
# for attempt in 1:5
# try
# response = GeneralUtils.sendReceiveMqttMsg(outgoingMsg)
# _responseJsonStr = response[:response][:text]
# expectedJsonExample = """
# Here is an expected JSON format:
# {"evaluation": "...", "score": "..."}
# """
# responseJsonStr = jsoncorrection(config, _responseJsonStr, expectedJsonExample)
# evaluationDict = copy(JSON3.read(responseJsonStr))
# check if dict has all required value
dummya::AbstractString = evaluationDict[:evaluation]
dummyb::Integer = evaluationDict[:score]
# # check if dict has all required value
# dummya::AbstractString = evaluationDict[:evaluation]
# dummyb::Integer = evaluationDict[:score]
return (evaluationDict[:evaluation], evaluationDict[:score])
catch e
io = IOBuffer()
showerror(io, e)
errorMsg = String(take!(io))
st = sprint((io, v) -> show(io, "text/plain", v), stacktrace(catch_backtrace()))
println("\nAttempt $attempt. Error occurred: $errorMsg\n$st ", Dates.now(), " ", @__FILE__, " ", @__LINE__)
end
end
error("evaluator failed to generate an evaluation")
end
# return (evaluationDict[:evaluation], evaluationDict[:score])
# catch e
# io = IOBuffer()
# showerror(io, e)
# errorMsg = String(take!(io))
# st = sprint((io, v) -> show(io, "text/plain", v), stacktrace(catch_backtrace()))
# println("\nAttempt $attempt. Error occurred: $errorMsg\n$st ", Dates.now(), " ", @__FILE__, " ", @__LINE__)
# end
# end
# error("evaluator failed to generate an evaluation")
# end
"""
# """
# Arguments
# # Arguments
# Return
# # Return
# Example
```jldoctest
julia>
```
# # Example
# ```jldoctest
# julia>
# ```
# TODO
- [] update docstring
- [x] implement the function
- [x] add try block. check result that it is expected before returning
# # TODO
# - [] update docstring
# - [x] implement the function
# - [x] add try block. check result that it is expected before returning
# Signature
"""
function reflector(config::T1, state::T2)::String where {T1<:AbstractDict,T2<:AbstractDict}
# https://github.com/andyz245/LanguageAgentTreeSearch/blob/main/hotpot/hotpot.py
# # Signature
# """
# function reflector(config::T1, state::T2)::String where {T1<:AbstractDict,T2<:AbstractDict}
# # https://github.com/andyz245/LanguageAgentTreeSearch/blob/main/hotpot/hotpot.py
_prompt =
"""
You are a helpful sommelier working for a wine store.
Your goal is to recommend the best wine from your inventory that match the user preferences.
You will be given a question and a trajectory of the previous help you've done for a user.
You were unsuccessful in helping the user either because you guessed the wrong answer with Finish[answer], or you didn't know the user enough.
In a few sentences, Diagnose a possible reason for failure and devise a new, concise, high level plan that aims to mitigate the same failure.
Use complete sentences.
# _prompt =
# """
# You are a helpful sommelier working for a wine store.
# Your goal is to recommend the best wine from your inventory that match the user preferences.
# You will be given a question and a trajectory of the previous help you've done for a user.
# You were unsuccessful in helping the user either because you guessed the wrong answer with Finish[answer], or you didn't know the user enough.
# In a few sentences, Diagnose a possible reason for failure and devise a new, concise, high level plan that aims to mitigate the same failure.
# Use complete sentences.
You should only respond in JSON format as describe below:
{"reflection": "your relection"}
# You should only respond in JSON format as describe below:
# {"reflection": "your relection"}
Here are some examples:
Previous Trial:
{
"question": "Hello, I would like a get a bottle of wine",
"thought_1": "A customer wants to buy a bottle of wine. Before making a recommendation, I need to know more about their preferences.",
"action_1": {"name": "CHATBOX", "input": "What is the occasion for which you're buying this wine?"},
"observation_1": "We are holding a wedding party",
# Here are some examples:
# Previous Trial:
# {
# "question": "Hello, I would like a get a bottle of wine",
# "thought_1": "A customer wants to buy a bottle of wine. Before making a recommendation, I need to know more about their preferences.",
# "action_1": {"name": "CHATBOX", "input": "What is the occasion for which you're buying this wine?"},
# "observation_1": "We are holding a wedding party",
"thought_2": "A wedding party, that's a great occasion! The customer might be looking for a celebratory drink. Let me ask some more questions to narrow down the options.",
"action_2": {"name": "CHATBOX", "input": "What type of food will you be serving at the wedding?"},
"observation_2": "It will be Thai dishes.",
# "thought_2": "A wedding party, that's a great occasion! The customer might be looking for a celebratory drink. Let me ask some more questions to narrow down the options.",
# "action_2": {"name": "CHATBOX", "input": "What type of food will you be serving at the wedding?"},
# "observation_2": "It will be Thai dishes.",
"thought_3": "With Thai food, I should recommend a wine that complements its spicy and savory flavors. And since it's a celebratory occasion, the customer might prefer a full-bodied wine.",
"action_3": {"name": "CHATBOX", "input": "What is your budget for this bottle of wine?"},
"observation_3": "I would spend up to 50 bucks.",
# "thought_3": "With Thai food, I should recommend a wine that complements its spicy and savory flavors. And since it's a celebratory occasion, the customer might prefer a full-bodied wine.",
# "action_3": {"name": "CHATBOX", "input": "What is your budget for this bottle of wine?"},
# "observation_3": "I would spend up to 50 bucks.",
"thought_4": "Now that I have some more information, it's time to narrow down the options.",
"action_4": {"name": "winestock", "input": "red wine with full body, pairs well with spicy food, budget \$50"},
"observation_4": "I found the following wines in our stock: \n{\n 1: El Enemigo Cabernet Franc 2019\n2: Tantara Chardonnay 2017\n\n}\n",
# "thought_4": "Now that I have some more information, it's time to narrow down the options.",
# "action_4": {"name": "winestock", "input": "red wine with full body, pairs well with spicy food, budget \$50"},
# "observation_4": "I found the following wines in our stock: \n{\n 1: El Enemigo Cabernet Franc 2019\n2: Tantara Chardonnay 2017\n\n}\n",
"thought_5": "Now that I have a list of potential wines, I need to know more about the customer's taste preferences.",
"action_5": {"name": "CHATBOX", "input": "What type of wine characteristics are you looking for? (e.g. tannin level, sweetness, intensity, acidity)"},
"observation_5": "I like full-bodied red wine with low tannin.",
# "thought_5": "Now that I have a list of potential wines, I need to know more about the customer's taste preferences.",
# "action_5": {"name": "CHATBOX", "input": "What type of wine characteristics are you looking for? (e.g. tannin level, sweetness, intensity, acidity)"},
# "observation_5": "I like full-bodied red wine with low tannin.",
"thought_6": "Now that I have more information about the customer's preferences, it's time to make a recommendation.",
"action_6": {"name": "recommendbox", "input": "El Enemigo Cabernet Franc 2019"},
"observation_6": "I don't like the one you recommend. I want dry wine."
}
# "thought_6": "Now that I have more information about the customer's preferences, it's time to make a recommendation.",
# "action_6": {"name": "recommendbox", "input": "El Enemigo Cabernet Franc 2019"},
# "observation_6": "I don't like the one you recommend. I want dry wine."
# }
{
"reflection": "I asked the user about the occasion, food type, and budget, and then searched for wine in the inventory right away. However, I should have asked the user for the specific wine type and their preferences in order to gather more information before making a recommendation."
}
# {
# "reflection": "I asked the user about the occasion, food type, and budget, and then searched for wine in the inventory right away. However, I should have asked the user for the specific wine type and their preferences in order to gather more information before making a recommendation."
# }
Let's begin!
# Let's begin!
Previous trial:
$(JSON3.write(state[:thoughtHistory]))
{"reflection"
"""
# Previous trial:
# $(JSON3.write(state[:thoughtHistory]))
# {"reflection"
# """
# apply LLM specific instruct format
externalService = config[:externalservice][:text2textinstruct]
llminfo = externalService[:llminfo]
prompt =
if llminfo[:name] == "llama3instruct"
formatLLMtext_llama3instruct("system", _prompt)
else
error("llm model name is not defied yet $(@__LINE__)")
end
# # apply LLM specific instruct format
# externalService = config[:externalservice][:text2textinstruct]
# llminfo = externalService[:llminfo]
# prompt =
# if llminfo[:name] == "llama3instruct"
# formatLLMtext_llama3instruct("system", _prompt)
# else
# error("llm model name is not defied yet $(@__LINE__)")
# end
msgMeta = GeneralUtils.generate_msgMeta(
a.config[:externalservice][:text2textinstruct][:mqtttopic],
senderName="reflector",
senderId=string(uuid4()),
receiverName="text2textinstruct",
mqttBroker=config[:mqttServerInfo][:broker],
mqttBrokerPort=config[:mqttServerInfo][:port],
)
# msgMeta = GeneralUtils.generate_msgMeta(
# a.config[:externalservice][:text2textinstruct][:mqtttopic],
# senderName="reflector",
# senderId=string(uuid4()),
# receiverName="text2textinstruct",
# mqttBroker=config[:mqttServerInfo][:broker],
# mqttBrokerPort=config[:mqttServerInfo][:port],
# )
outgoingMsg = Dict(
:msgMeta => msgMeta,
:payload => Dict(
:text => prompt,
:kwargs => Dict(
:max_tokens => 512,
:stop => ["<|eot_id|>"],
)
)
)
# outgoingMsg = Dict(
# :msgMeta => msgMeta,
# :payload => Dict(
# :text => prompt,
# :kwargs => Dict(
# :max_tokens => 512,
# :stop => ["<|eot_id|>"],
# )
# )
# )
for attempt in 1:5
try
response = GeneralUtils.sendReceiveMqttMsg(outgoingMsg)
_responseJsonStr = response[:response][:text]
expectedJsonExample = """
Here is an expected JSON format:
{"reflection": "..."}
"""
responseJsonStr = jsoncorrection(config, _responseJsonStr, expectedJsonExample)
reflectionDict = copy(JSON3.read(responseJsonStr))
# for attempt in 1:5
# try
# response = GeneralUtils.sendReceiveMqttMsg(outgoingMsg)
# _responseJsonStr = response[:response][:text]
# expectedJsonExample = """
# Here is an expected JSON format:
# {"reflection": "..."}
# """
# responseJsonStr = jsoncorrection(config, _responseJsonStr, expectedJsonExample)
# reflectionDict = copy(JSON3.read(responseJsonStr))
# check if dict has all required value
dummya::AbstractString = reflectionDict[:reflection]
# # check if dict has all required value
# dummya::AbstractString = reflectionDict[:reflection]
return reflectionDict[:reflection]
catch e
io = IOBuffer()
showerror(io, e)
errorMsg = String(take!(io))
st = sprint((io, v) -> show(io, "text/plain", v), stacktrace(catch_backtrace()))
println("\nAttempt $attempt. Error occurred: $errorMsg\n$st ", Dates.now(), " ", @__FILE__, " ", @__LINE__)
end
end
error("reflector failed to generate a thought")
end
# return reflectionDict[:reflection]
# catch e
# io = IOBuffer()
# showerror(io, e)
# errorMsg = String(take!(io))
# st = sprint((io, v) -> show(io, "text/plain", v), stacktrace(catch_backtrace()))
# println("\nAttempt $attempt. Error occurred: $errorMsg\n$st ", Dates.now(), " ", @__FILE__, " ", @__LINE__)
# end
# end
# error("reflector failed to generate a thought")
# end
""" Chat with llm.
@@ -864,46 +858,6 @@ function think(a::T)::NamedTuple{(:actionname, :result),Tuple{String,String}} wh
)
result = chatresponse
# # store thoughtDict after the conversation finish
# if a.memory[:events][end][:thought][:action_name] == "ENDCONVERSATION"
# # generateSituationReport in the agent didn't include the last conversation
# # so the function will be called here
# a.memory[:recap] = generateSituationReport(a, a.func[:text2textInstructLLM]; skiprecent=0)
# for (i, event) in enumerate(a.memory[:events])
# if event[:subject] == "assistant"
# # create timeline of the last 3 conversation except the last one.
# # The former will be used as caching key and the latter will be the caching target
# # in vector database
# all_recapkeys = keys(a.memory[:recap]) # recap as caching
# all_recapkeys_vec = [r for r in all_recapkeys] # convert to a vector
# # select from 1 to 2nd-to-lase event (i.e. excluding the latest which is assistant's response)
# _recapkeys_vec = all_recapkeys_vec[1:i-1]
# # select only previous 3 recaps
# recapkeys_vec =
# if length(_recapkeys_vec) <= 3 # 1st message is a user's hello msg
# _recapkeys_vec # choose all
# else
# _recapkeys_vec[end-2:end]
# end
# #[PENDING] if there is specific data such as number, donot store in database
# tempmem = DataStructures.OrderedDict()
# for k in recapkeys_vec
# tempmem[k] = a.memory[:recap][k]
# end
# recap = GeneralUtils.dictToString_noKey(tempmem)
# thoughtDict = a.memory[:events][i][:thought] # latest assistant thoughtDict
# a.func[:insertSommelierDecision](recap, thoughtDict)
# else
# # skip
# end
# end
# println("Caching conversation done")
# end
elseif actionname == "CHECKINVENTORY"
if rawresponse !== nothing
vd = GeneralUtils.dfToVectorDict(rawresponse)
@@ -1040,10 +994,7 @@ function generatechat(a::sommelier, thoughtDict)
]
# put in model format
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="llama3instruct")
prompt *= """
<|start_header_id|>assistant<|end_header_id|>
"""
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="qwen")
try
response = a.func[:text2textInstructLLM](prompt)
@@ -1170,10 +1121,7 @@ function generatechat(a::companion)
]
# put in model format
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="llama3instruct")
prompt *= """
<|start_header_id|>assistant<|end_header_id|>
"""
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="qwen")
response = a.text2textInstructLLM(prompt)
@@ -1342,10 +1290,7 @@ function generatequestion(a, text2textInstructLLM::Function; recent=nothing)::St
]
# put in model format
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="llama3instruct")
prompt *= """
<|start_header_id|>assistant<|end_header_id|>
"""
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="qwen")
try
response = text2textInstructLLM(prompt)
@@ -1448,6 +1393,9 @@ function generateSituationReport(a, text2textInstructLLM::Function; skiprecent::
Let's begin!
"""
header = ["Event_$i:" for i in eachindex(a.memory[:events])]
dictkey = lowercase.(["Event_$i" for i in eachindex(a.memory[:events])])
if length(a.memory[:events]) <= skiprecent
return nothing
end
@@ -1473,14 +1421,9 @@ function generateSituationReport(a, text2textInstructLLM::Function; skiprecent::
]
# put in model format
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="llama3instruct")
prompt *= """
<|start_header_id|>assistant<|end_header_id|>
"""
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="qwen")
response = text2textInstructLLM(prompt)
header = ["Event_$i:" for i in eachindex(a.memory[:events])]
dictkey = lowercase.(["Event_$i" for i in eachindex(a.memory[:events])])
responsedict = GeneralUtils.textToDict(response, header;
dictKey=dictkey, symbolkey=true)
@@ -1531,10 +1474,7 @@ function detectWineryName(a, text)
]
# put in model format
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="llama3instruct")
prompt *= """
<|start_header_id|>assistant<|end_header_id|>
"""
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="qwen")
try
response = a.func[:text2textInstructLLM](prompt)

View File

@@ -326,7 +326,7 @@ julia>
# TODO
- [] update docstring
- [WORKING] implement the function
- implement the function
# Signature
"""
@@ -382,7 +382,6 @@ function extractWineAttributes_1(a::T1, input::T2)::String where {T1<:agent, T2<
Let's begin!
"""
attributes =
header = ["Comprehension:", "Wine_name:", "Winery:", "Vintage:", "Region:", "Country:", "Wine_type:", "Grape_varietal:", "Tasting_notes:", "Wine_price:", "Occasion:", "Food_to_be_paired_with_wine:"]
dictkey = ["comprehension", "wine_name", "winery", "vintage", "region", "country", "wine_type", "grape_varietal", "tasting_notes", "wine_price", "occasion", "food_to_be_paired_with_wine"]
errornote = ""
@@ -407,7 +406,7 @@ function extractWineAttributes_1(a::T1, input::T2)::String where {T1<:agent, T2<
# check wheter all attributes are in the response
checkFlag = false
for word in attributes
for word in header
if !occursin(word, response)
errornote = "$word attribute is missing in previous attempts"
println("Attempt $attempt $errornote ", Dates.now(), " ", @__FILE__, " ", @__LINE__)
@@ -416,12 +415,20 @@ function extractWineAttributes_1(a::T1, input::T2)::String where {T1<:agent, T2<
end
end
checkFlag == true ? continue : nothing
# check whether response has all header
detected_kw = GeneralUtils.detect_keyword(header, response)
if sum(values(detected_kw)) < length(header)
errornote = "\nYiemAgent extractWineAttributes_1() response does not have all header"
continue
elseif sum(values(detected_kw)) > length(header)
errornote = "\nYiemAgent extractWineAttributes_1() response has duplicated header"
continue
end
responsedict = GeneralUtils.textToDict(response, header;
dictKey=dictkey, symbolkey=true)
responsedict = copy(JSON3.read(response))
# convert
delete!(responsedict, :reasoning)
delete!(responsedict, :comprehension)
delete!(responsedict, :tasting_notes)
delete!(responsedict, :occasion)
delete!(responsedict, :food_to_be_paired_with_wine)
@@ -431,9 +438,9 @@ function extractWineAttributes_1(a::T1, input::T2)::String where {T1<:agent, T2<
# check if winery, wine_name, region, country, wine_type, grape_varietal's value are in the query because sometime AI halucinates
checkFlag = false
for i in attributes
for i in dictkey
j = Symbol(i)
if j [:reasoning, :tasting_notes, :occasion, :food_to_be_paired_with_wine]
if j [:comprehension, :tasting_notes, :occasion, :food_to_be_paired_with_wine]
# in case j is wine_price it needs to be checked differently because its value is ranged
if j == :wine_price
if responsedict[:wine_price] != "NA"
@@ -516,7 +523,7 @@ function extractWineAttributes_2(a::T1, input::T2)::String where {T1<:agent, T2<
conversiontable =
"""
Conversion Table:
<Conversion Table>
Intensity level:
1 to 2: May correspond to "light-bodied" or a similar description.
2 to 3: May correspond to "med light bodied", "medium light" or a similar description.
@@ -541,6 +548,7 @@ function extractWineAttributes_2(a::T1, input::T2)::String where {T1<:agent, T2<
3 to 4: May correspond to "medium acidity" or a similar description.
4 to 5: May correspond to "semi high acidity" or a similar description.
4 to 5: May correspond to "high acidity" or a similar description.
</Conversion Table>
"""
systemmsg =
@@ -554,67 +562,64 @@ function extractWineAttributes_2(a::T1, input::T2)::String where {T1<:agent, T2<
The preference form requires the following information:
sweetness, acidity, tannin, intensity
You must follow the following guidelines:
<You must follow the following guidelines>
1) If specific information required in the preference form is not available in the query or there isn't any, mark with 'NA' to indicate this.
Additionally, words like 'any' or 'unlimited' mean no information is available.
2) Use the conversion table to convert the descriptive word level of sweetness, intensity, tannin, and acidity into a corresponding integer.
3) Do not generate other comments.
</You must follow the following guidelines>
You should then respond to the user with the following points:
- sweetness_keyword: The exact keywords in the user's query describing the sweetness level of the wine.
- sweetness: ( S ), where ( S ) represents integers indicating the range of sweetness levels. Example: 1-2
- acidity_keyword: The exact keywords in the user's query describing the acidity level of the wine.
- acidity: ( A ), where ( A ) represents integers indicating the range of acidity level. Example: 3-5
- tannin_keyword: The exact keywords in the user's query describing the tannin level of the wine.
- tannin: ( T ), where ( T ) represents integers indicating the range of tannin level. Example: 1-3
- intensity_keyword: The exact keywords in the user's query describing the intensity level of the wine.
- intensity: ( I ), where ( I ) represents integers indicating the range of intensity level. Example: 2-4
<You should then respond to the user with>
Sweetness_keyword: The exact keywords in the user's query describing the sweetness level of the wine.
Sweetness: ( S ), where ( S ) represents integers indicating the range of sweetness levels. Example: 1-2
Acidity_keyword: The exact keywords in the user's query describing the acidity level of the wine.
Acidity: ( A ), where ( A ) represents integers indicating the range of acidity level. Example: 3-5
Tannin_keyword: The exact keywords in the user's query describing the tannin level of the wine.
Tannin: ( T ), where ( T ) represents integers indicating the range of tannin level. Example: 1-3
Intensity_keyword: The exact keywords in the user's query describing the intensity level of the wine.
Intensity: ( I ), where ( I ) represents integers indicating the range of intensity level. Example: 2-4
</You should then respond to the user with>
You should only respond in the form (JSON) as described below:
{
"sweetness_keyword": ...,
"sweetness": ...,
"acidity_keyword": ...,
"acidity": ...,
"tannin_keyword": ...,
"tannin": ...,
"intensity_keyword": ...,
"intensity": ...
}
<You should only respond in format as described below>
Sweetness_keyword: ...
Sweetness: ...
Acidity_keyword: ...
Acidity: ...
Tannin_keyword: ...
Tannin: ...
Intensity_keyword: ...
Intensity: ...
</You should only respond in format as described below>
Here are some examples:
User's query: I want a wine with a medium-bodied, low acidity, medium tannin.
{
"sweetness_keyword": "NA",
"sweetness": "NA",
"acidity_keyword": "low acidity",
"acidity": "1-2",
"tannin_keyword": "medium tannin",
"tannin": "3-4",
"intensity_keyword": "medium-bodied",
"intensity": "3-4"
}
User's query: German red wine, under 100, pairs with spicy food
{
"sweetness_keyword": "NA",
"sweetness": "NA",
"acidity_keyword": "NA",
"acidity": "NA",
"tannin_keyword": "NA",
"tannin": "NA",
"intensity_keyword": "NA",
"intensity": "NA"
}
<Here are some examples>
User's query: I want a wine with a medium-bodied, low acidity, medium tannin.
Sweetness_keyword: NA
Sweetness: NA
Acidity_keyword: low acidity
Acidity: 1-2
Tannin_keyword: medium tannin
Tannin: 3-4
Intensity_keyword: medium-bodied
Intensity: 3-4
User's query: German red wine, under 100, pairs with spicy food
Sweetness_keyword: NA
Sweetness: NA
Acidity_keyword: NA
Acidity: NA
Tannin_keyword: NA
Tannin: NA
Intensity_keyword: NA
Intensity: NA
</Here are some examples>
Let's begin!
"""
header = ["Sweetness_keyword:", "Sweetness:", "Acidity_keyword:", "Acidity:", "Tannin_keyword:", "Tannin:", "Intensity_keyword:", "Intensity:"]
dictkey = ["sweetness_keyword", "sweetness", "acidity_keyword", "acidity", "tannin_keyword", "tannin", "intensity_keyword", "intensity"]
errornote = ""
for attempt in 1:5
for attempt in 1:10
usermsg =
"""
$conversiontable
@@ -629,14 +634,22 @@ function extractWineAttributes_2(a::T1, input::T2)::String where {T1<:agent, T2<
]
# put in model format
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="llama3instruct")
prompt *=
"""
<|start_header_id|>assistant<|end_header_id|>
"""
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="qwen")
response = a.func[:text2textInstructLLM](prompt)
responsedict = copy(JSON3.read(response))
# check whether response has all header
detected_kw = GeneralUtils.detect_keyword(header, response)
if sum(values(detected_kw)) < length(header)
errornote = "\nYiemAgent extractWineAttributes_2() response does not have all header"
continue
elseif sum(values(detected_kw)) > length(header)
errornote = "\nYiemAgent extractWineAttributes_2() response has duplicated header"
continue
end
responsedict = GeneralUtils.textToDict(response, header;
dictKey=dictkey, symbolkey=true)
# check whether each describing keyword is in the input to prevent halucination
for i in ["sweetness", "acidity", "tannin", "intensity"]