module interface export agentReact, agentReflex, addNewMessage, clearMessage, removeLatestMsg, conversation, directconversation, writeEvaluationGuideline, grading, analyze, selfReflext, formulateUserResponse, extractinfo, updateEnvState, chat_mistral_openorca, recap, readKeywordMemory using JSON3, DataStructures, Dates, UUIDs, HTTP, Random using CommUtils, GeneralUtils using ..type, ..utils, ..llmfunction # ---------------------------------------------------------------------------- # # pythoncall setting # # ---------------------------------------------------------------------------- # # Ref: https://github.com/JuliaPy/PythonCall.jl/issues/252 # by setting the following variables, PythonCall.jl will use: # 1. system's python and packages installed by system (via apt install) # or 2. conda python and packages installed by conda # if these setting are not set (comment out), PythonCall will use its own python and packages that # installed by CondaPkg.jl (from env_preparation.jl) # ENV["JULIA_CONDAPKG_BACKEND"] = "Null" # set condapkg backend = none # systemPython = split(read(`which python`, String), "\n")[1] # system's python path # ENV["JULIA_PYTHONCALL_EXE"] = systemPython # find python location with $> which python ex. raw"/root/conda/bin/python" # using PythonCall # const py_agents = PythonCall.pynew() # const py_llms = PythonCall.pynew() # function __init__() # # PythonCall.pycopy!(py_cv2, pyimport("cv2")) # # equivalent to from urllib.request import urlopen in python # PythonCall.pycopy!(py_agents, pyimport("langchain.agents")) # PythonCall.pycopy!(py_llms, pyimport("langchain.llms")) # end #------------------------------------------------------------------------------------------------100 """ Add new message to agent. Arguments: Return: ```jldoctest julia> addNewMessage(agent1, "user", "Where should I go to buy snacks") ``` """ function addNewMessage(a::T1, role::String, content::T2) where {T1<:agent, T2<:AbstractString} if role ∉ a.availableRole # guard against typo error("role is not in agent.availableRole $(@__LINE__)") end # check whether user messages exceed limit userMsg = 0 for i in a.messages if i[:role] == "user" userMsg += 1 end end messageleft = 0 if userMsg > a.maxUserMsg # delete all conversation clearMessage(a) messageleft = a.maxUserMsg else userMsg += 1 d = Dict(:role=> role, :content=> content, :timestamp=> Dates.now()) push!(a.messages, d) messageleft = a.maxUserMsg - userMsg end return messageleft end function clearMessage(a::T) where {T<:agent} for i in eachindex(a.messages) if length(a.messages) > 0 pop!(a.messages) else break end end memory::Dict{Symbol, Any} = Dict( :shortterm=> OrderedDict{String, Any}(), :longterm=> OrderedDict{String, Any}(), :log=> OrderedDict{String, Any}(), # span from user stimulus -> multiples attempts -> final respond ) @show a.messages end function removeLatestMsg(a::T) where {T<:agent} if length(a.messages) > 1 pop!(a.messages) end end function chat_mistral_openorca(a::agentReflex) """ general prompt format: " <|system|> {role} {tools} {thinkingFormat} {context} <|im_end|> <|im_start|>user {usermsg} <|im_end|> <|im_start|>assistant " Note: {context} = " {earlierConversation} {env state} {shortterm memory} {longterm memory} " """ conversation = messagesToString(a.messages) aboutYourself = """ Your name is $(a.agentName) $(a.roles[a.role]) """ prompt = """ <|system|> $aboutYourself $conversation <|assistant|> """ response = sendReceivePrompt(a, prompt, timeout=180, stopword=["<|", " {role} {tools} {thinkingFormat} <|im_end|> {context} <|im_start|>user {usermsg} <|im_end|> <|im_start|>assistant " Note: {context} = " {earlierConversation} {env state} {shortterm memory} {longterm memory} " """ conversation = messagesToString(a.messages) toollines = "" for (toolname, v) in a.tools if toolname ∉ [""] # toolline = "$toolname: $(v[:description]) $(v[:input]) $(v[:output])\n" toolline = "$toolname: $(v[:description])\n" toollines *= toolline end end # skip objective and plan because LLM is going to generate new plan shorttermMemory = dictToString(a.memory[:shortterm], skiplist=["Objective:", "Plan 1:"]) aboutYourself = """ Your name is $(a.agentName) $(a.roles[a.role]) $(a.roleSpecificInstruction[a.role]) """ assistant_plan_prompt = """ <|system|> $aboutYourself $toollines $shorttermMemory Plan: first you should always think about your conversation with the user and your earlier work thoroughly then extract and devise a complete, task by task, plan to achieve your objective (pay attention to correct numeral calculation and commonsense). Keyword memory: using JSON format, list all variables in the plan you need to find out P.S.1 each task of the plan should be a single action. Plan: 1. Ask the user about how many miles per day they drive 2. Ask the user about what stuff they usually carry with 3. Ask the user about preferred type of car they want to buy (sedan, sport, SUV, etc) 8. Ask the user about their price range 9. Use inventory tool to find cars that match the user's preferences and are within their price range 10. Use finalanswer tool to present the recommended car to the user. Keyword memory: {"mile per day": null, "carry item": null, "car type": null, "price range": null} $conversation <|assistant|> """ response = sendReceivePrompt(a, assistant_plan_prompt, max_tokens=1024, temperature=0.1, timeout=180, stopword=["<|user|>", " <|system|> $(a.roles[a.role]) Request the user’s input for the following info initially, and use alternative sources of information only if they are unable to provide it: - occasion - type of food ask the user - user's personal taste of wine - ambient temperature at the serving location - wine price range - wines we have in stock (use tools to get the info) You provide a personalized recommendation of up to two wines based on the user's info above, and you describe the benefits of each wine in detail. You have access to the following tools: $toollines Your work: $work Your job is to update the plan using available info from your work. P.S. do not update if no info available. For example: Plan: 1. Ask the user for their food type. Obs: It will be Thai dishes. Updated plan: 1. Ask the user for their food type (Thai dishes). Updated plan: """ result = sendReceivePrompt(a, prompt, max_tokens=1024, temperature=0.1) @show updatedPlan = result a.memory[:shortterm]["Plan 1:"] = result end # function selfAwareness(a::agentReflex) # getonlykeys = ["Actinput", "Obs"] # worknoplan = similar(a.memory[:shortterm]) # for (k, v) in a.memory[:shortterm] # count = 0 # for i in getonlykeys # if occursin(i, k) # count += 1 # end # end # if count != 0 # worknoplan[k] = v # end # end # work = dictToString(worknoplan) # aboutYourself = # """ # Your name is $(a.agentName) # $(a.roles[a.role]) # """ # prompt = # """ # <|system|> # # $aboutYourself # $(a.roleSpecificInstruction[a.role]) # # # $work # # # $(JSON3.write(a.memory[:keyword])) # # # Use the following format strictly: # Info extraction: repeat all important info from the latest observed result thoroughly # Info mapping: based on extracted info, explicitly state what each info could match which keyword memory's key # Info matching: using JSON format, what key in my memory matches which info # # # # The user wants to buy an electric SUV car under 20000 dollars. # # # {"car type": null, "color": null, "financing": null} # # Info extraction: # - The user is buying an electric SUV car. # Info mapping: # - SUV could matches "car type" key # - electric could matches "engine type" key # Info matching: {"car type": "SUV", "engine type": "electric motor", "color": null, "financing": null} # # # <|assistant|> # Info extraction: # """ # response = sendReceivePrompt(a, prompt, max_tokens=1024, temperature=0.2, timeout=180, # stopword=["/n/n", "END", "End", "Obs", "<|", "= worklength - 1 count = 0 for i in getonlykeys if occursin(i, k) count += 1 end end if count != 0 worknoplan[k] = v end end end println("") @show worknoplan work = dictToString(worknoplan) aboutYourself = """ Your name is $(a.agentName) $(a.roles[a.role]) """ #WORKING may be I need to use "- $k is $v" because LLM skip the key for sweetness prompt = """ <|system|> $aboutYourself $(a.roleSpecificInstruction[a.role]) Use the following format strictly: Info extraction: repeat all important info from the latest observed result thoroughly Info mapping: based on extracted info, explicitly state what each info could match which keyword memory's key Info matching: using JSON format, what key in my memory matches which info The user wants to buy an electric SUV car under 20000 dollars. {\"car type\": null, \"engine type\": null, \"price\": null, \"color\": null, \"financing\": null} <|assistant|> Info extraction: - The user is buying an electric SUV car. - price is under 20000 dollars Info mapping: - "SUV" could matches "car type" key - "electric" could matches "engine type" key - "under 20000 dollars" could match "price" key Info matching: {\"car type\": \"SUV\", \"engine type\": \"electric motor\", \"price\": \"under 20000\", \"color\": null, \"financing\": null} $work $(JSON3.write(a.memory[:keyword])) <|assistant|> Info extraction: """ response = sendReceivePrompt(a, prompt, max_tokens=1024, temperature=0.2, timeout=180, stopword=["/n/n", "END", "End", "Obs", "<|", "")[1] response = "Info extraction:" * response println("") @show selfaware_1 = response headerToDetect = ["Info extraction:", "Info mapping:", "Info matching:", "Actinput"] headers = detectCharacters(response, headerToDetect) # headers[1:2] is for when LLM generate more than a paire of "Info extraction" and "Info matching", discard the rest chunkedtext = chunktext(response, headers[1:3]) println("") _infomatch = chunkedtext["Info matching:"] _infomatch = GeneralUtils.getStringBetweenCharacters(_infomatch, '{', '}', endCharLocation="end") infomatch = GeneralUtils.JSON3read_stringKey(_infomatch) # infomatch = copy(JSON3.read(_infomatch)) println("") @show chunkedtext println("") @show infomatch keywordMemoryUpdate!(a.memory[:keyword], infomatch) response = "What I know about user:" * JSON3.write(a.memory[:keyword]) # * response println("") @show selfaware_2 = response return response end # function actor_mistral_openorca(a::agentReflex, selfaware=nothing) # getonlykeys = ["Actinput", "Obs"] # worknoplan = similar(a.memory[:shortterm]) # for (k, v) in a.memory[:shortterm] # count = 0 # for i in getonlykeys # if occursin(i, k) # count += 1 # end # end # if count != 0 # worknoplan[k] = v # end # end # work = dictToString(worknoplan) # """ # general prompt format: # " # <|system|> # {role} # {tools} # {thinkingFormat} # <|im_end|> # {context} # <|im_start|>user # {usermsg} # <|im_end|> # <|im_start|>assistant # " # Note: # {context} = # " # {earlierConversation} # {env state} # {shortterm memory} # {longterm memory} # " # """ # toolslist = [] # toolnames = "" # toollines = "" # for (toolname, v) in a.tools # toolline = "$toolname: $(v[:description]) $(v[:input]) $(v[:output])\n" # toollines *= toolline # toolnames *= "$toolname, " # push!(toolslist, toolname) # end # thought = "Thought: you should always think about what to do according to the plan (pay attention to correct numeral calculation and commonsense and do one thing at a time.)" # startword = "Thought:" # if selfaware !== nothing # " # Thought: based on what you know, you should focus on what you need to improve first then follow your plan to decide what to do next. (P.S. 1) let's think a single step. 2) pay attention to correct numeral calculation and commonsense.) # " # end # # your should request the missing information first before making a decision # aboutYourself = # """ # Your name is $(a.agentName) # $(a.roles[a.role]) # """ # winestocksearchresult = nothing # if haskey(a.memory, :winestocksearchresult) && a.memory[:winestockResult] !== nothing # winestocksearchresult = # """ # # $(a.memory[:winestocksearchresult]) # # """ # else # winestocksearchresult = "\n" # end # prompt = # """ # <|system|> # # $aboutYourself # # # $toollines # # # $(a.memory[:shortterm]["Plan 1:"]) # # # $(JSON3.write(a.memory[:keyword])) # # # Use the following format: # $thought # Act: based on your thought what action to choose?, must be one of [{toolnames}]. # Actinput: your input to the action (pay attention to the tool's input) # Obs: observed result of the action # # # # $(readKeywordMemory(a)) # # Thought: based on what you know, I think he also need to know whether there are any charging station near by his house. I should search the internet to get this info. # Act: internetsearch # Actinput: {\"internetsearch\": \"EV charging station near Bangkok\"} # # # <|assistant|> # $startword # """ # prompt = replace(prompt, "{toolnames}" => toolnames) # println("") # @show actor_prompt = prompt # response = nothing # chunkedtext = nothing # latestTask = nothing # while true # while Thought or Act is empty, run actor again # response = sendReceivePrompt(a, prompt, max_tokens=1024, temperature=0.4, timeout=300, # stopword=["Thought:", "Obs:", "<|system|>", "", "<|end|>"], # seed=rand(1000000:2000000)) # println("") # @show actor_raw = response # response = splittext(response, ["/n/n", "END", "End","obs", "Obs", "<|im_end|>"]) # response = split(response, "<|")[1] # response = split(response, ""Actinput:") : response # response = replace(response, "actinput:"=>"Actinput:") # println("") # @show actor_response = response # headerToDetect = ["Plan $(a.attempt):", # "Self-awareness $latestTask:", # "Thought $latestTask:", # "Act $latestTask:", # "Actinput $latestTask:", # "Obs $latestTask:", # "Check $latestTask:",] # headers = detectCharacters(response, headerToDetect) # chunkedtext = chunktext(response, headers) # # assuming length more than 10 character means LLM has valid thinking # check_1 = haskey(chunkedtext, "Thought $latestTask:") # check_2 = haskey(chunkedtext, "Act $latestTask:") # check_3 = haskey(chunkedtext, "Actinput $latestTask:") # # check for a valid toolname # check_4 = false # for i in toolslist # if occursin(i, chunkedtext["Act $latestTask:"]) # check_4 = true # break # end # end # # check for empty Thought # check_5 = length(chunkedtext["Thought $latestTask:"]) > 5 # # check for empty Actinput # check_6 = nothing # try # check_6 = length(chunkedtext["Actinput $latestTask:"]) > 5 # catch # println("") # @show response # println("") # @show chunkedtext # a.memory[:chunkedtext] = chunkedtext # end # # check whether the act has valid json # check_7 = true # if occursin('{', response) # try # act = GeneralUtils.getStringBetweenCharacters(response, '{', '}', endCharLocation="end") # act = JSON3.read(act) # check_7 = true # catch # check_7 = false # end # end # # print all check_1 to check_6 # println("check_1: $check_1, check_2: $check_2, check_3: $check_3, check_4: $check_4, # check_5: $check_5, check_6: $check_6, check_7: $check_7") # if check_1 && check_2 && check_3 && check_4 && check_5 && check_6 && check_7 # #TODO paraphrase selfaware # break # end # @show retrying_actor = response # end # toolname = toolNameBeingCalled(chunkedtext["Act $latestTask:"], a.tools) # # change trailing number to continue a.memory[:shortterm] # headerToDetect = ["Question:", "Plan:", "Self-awareness:", "Thought:", # "Act:", "Actinput:", "Obs:", "...", # "Answer:", "Conclusion:", "Summary:"] # response = replaceHeaders(response, headerToDetect, latestTask) # println("") # @show actor_response_1 = response # headerToDetect = ["Plan $(a.attempt):", # "Thought $latestTask:", # "Act $latestTask:", # "Actinput $latestTask:", # "Obs $latestTask:", # "Check $latestTask:",] # headers = detectCharacters(response, headerToDetect) # chunkedtext = chunktext(response, headers) # println("") # @show chunkedtext # toolinput = chunkedtext["Actinput $latestTask:"] # # because tools has JSON input but sometime LLM output is not JSON, we need to check. # if occursin("{", toolinput) # act = GeneralUtils.getStringBetweenCharacters(response, '{', '}', endCharLocation="end") # act = copy(JSON3.read(act)) # chunkedtext["Actinput $latestTask:"] = JSON3.write(act[Symbol(toolname)]) # toolinput = act[Symbol(toolname)] # end # chunkedtext["Act $latestTask:"] = toolname # return (toolname=toolname, toolinput=toolinput, chunkedtext=chunkedtext, selfaware=selfaware) # end function actor_mistral_openorca(a::agentReflex, selfaware=nothing) toolslist = [] toolnames = "" toollines = "" for (toolname, v) in a.tools toolline = "$toolname: $(v[:description]) $(v[:input]) $(v[:output])\n" toollines *= toolline toolnames *= "$toolname, " push!(toolslist, toolname) end thought = "Thought: you should always think about what to do according to the plan (pay attention to correct numeral calculation and commonsense and do one thing at a time.)" startword = "Thought:" if selfaware !== nothing " Thought: based on what you know, you should focus on what you need to improve first then follow your plan to decide what to do next. (P.S. 1) let's think a single step. 2) pay attention to correct numeral calculation and commonsense.) " end # your should request the missing information first before making a decision aboutYourself = """ Your name is $(a.agentName) $(a.roles[a.role]) """ winestocksearchresult = nothing if haskey(a.memory, :winestocksearchresult) && a.memory[:winestockResult] !== nothing winestocksearchresult = """ $(a.memory[:winestocksearchresult]) """ else winestocksearchresult = "\n" end keywordmemory = "" for (k, v) in a.memory[:keyword] if v === nothing keywordmemory *= "- I have no info on $k \n" else keywordmemory *= "- $k is $v \n" end end """ - Car type is SUV - Brand is Lexus - Price is 20k dollar - No info on the car color yet - No info on the financing method yet - Luxury level is high {\"car type\": "SUV",\"brand\":\"Lexus\",\"price\":\"200000\",\"color\": null,\"financing method\": null, \"luxury level\":\"high\"} """ prompt = """ <|system|> Your name is $(a.agentName) $(a.roles[a.role]) $toollines Use the following format: Thought: based on what you know about the user, where are you at according to the plan? what to do next?. (PS. 1. let's think only one thing at a time. 2. pay attention to correct numeral calculation and commonsense.) Act: based on your thought what action to choose?, must be one of [{toolnames}]. Actinput: your input to the action using JSON format (pay attention to the tool's input) Obs: observed result of the action I'll ask the user for car type, brand, price, color, financing method and luxury level before I'll give them any advice. - Car type is SUV - Brand is Lexus - Price is 20k dollar - No info on the car color yet - No info on the financing method yet - Luxury level is high <|assistant|> Thought: after checking what I know about the user against my plan, I still don't know the color and financing method yet. Next, I need to know what color the user like. Act: askbox Actinput: $(a.memory[:shortterm]["Plan 1:"]) $keywordmemory) <|assistant|> Thought: """ prompt = replace(prompt, "{toolnames}" => toolnames) println("") @show actor_prompt = prompt response = nothing chunkedtext = nothing latestTask = nothing while true # while Thought or Act is empty, run actor again response = sendReceivePrompt(a, prompt, max_tokens=1024, temperature=0.4, timeout=300, stopword=["Thought:", "Obs:", "<|system|>", "", "<|end|>"], seed=rand(1000000:2000000)) println("") @show actor_raw = response response = splittext(response, ["/n/n", "END", "End","obs", "Obs", "<|im_end|>"]) response = split(response, "<|")[1] response = split(response, ""Actinput:") : response response = replace(response, "actinput:"=>"Actinput:") println("") @show actor_response = response headerToDetect = ["Plan $(a.attempt):", "Self-awareness $latestTask:", "Thought $latestTask:", "Act $latestTask:", "Actinput $latestTask:", "Obs $latestTask:", "Check $latestTask:",] headers = detectCharacters(response, headerToDetect) chunkedtext = chunktext(response, headers) # assuming length more than 10 character means LLM has valid thinking check_1 = haskey(chunkedtext, "Thought $latestTask:") check_2 = haskey(chunkedtext, "Act $latestTask:") check_3 = haskey(chunkedtext, "Actinput $latestTask:") # check for a valid toolname check_4 = false for i in toolslist if occursin(i, chunkedtext["Act $latestTask:"]) check_4 = true break end end # check for empty Thought check_5 = length(chunkedtext["Thought $latestTask:"]) > 5 # check for empty Actinput check_6 = nothing try check_6 = length(chunkedtext["Actinput $latestTask:"]) > 5 catch println("") @show response println("") @show chunkedtext a.memory[:chunkedtext] = chunkedtext end # check whether the act has valid json check_7 = true if occursin('{', response) try act = GeneralUtils.getStringBetweenCharacters(response, '{', '}', endCharLocation="end") println("") @show act act = JSON3.read(act) check_7 = true catch check_7 = false end end if check_1 && check_2 && check_3 && check_4 && check_5 && check_6 && check_7 break end # print all check_1 to check_6 println("") println("check_1: $check_1, check_2: $check_2, check_3: $check_3, check_4: $check_4, check_5: $check_5, check_6: $check_6, check_7: $check_7") @show retrying_actor = response end toolname = toolNameBeingCalled(chunkedtext["Act $latestTask:"], a.tools) # change trailing number to continue a.memory[:shortterm] headerToDetect = ["Question:", "Plan:", "Self-awareness:", "Thought:", "Act:", "Actinput:", "Obs:", "...", "Answer:", "Conclusion:", "Summary:"] response = replaceHeaders(response, headerToDetect, latestTask) println("") @show actor_response_1 = response headerToDetect = ["Plan $(a.attempt):", "Thought $latestTask:", "Act $latestTask:", "Actinput $latestTask:", "Obs $latestTask:", "Check $latestTask:",] headers = detectCharacters(response, headerToDetect) chunkedtext = chunktext(response, headers) chunkedtext["Act $latestTask:"] = toolname println("") @show chunkedtext toolinput = chunkedtext["Actinput $latestTask:"] # # because tools has JSON input but sometime LLM output is not JSON, we need to check. # if occursin("{", toolinput) # act = GeneralUtils.getStringBetweenCharacters(response, '{', '}', endCharLocation="end") # act = copy(JSON3.read(act)) # println("") # @show act # chunkedtext["Actinput $latestTask:"] = JSON3.write(act[Symbol(toolname)]) # a.memory[:c] = chunkedtext # toolinput = act[Symbol(toolname)] # end return (toolname=toolname, toolinput=toolinput, chunkedtext=chunkedtext, selfaware=selfaware) end """ Chat with llm. ```jldoctest julia> using JSON3, UUIDs, Dates, FileIO, CommUtils, ChatAgent julia> mqttClientSpec = ( clientName= "someclient", # name of this client clientID= "$(uuid4())", broker= "mqtt.yiem.cc", pubtopic= (imgAI="img/api/v0.0.1/gpu/request", txtAI="txt/api/v0.1.0/gpu/request"), subtopic= (imgAI="agent/api/v0.1.0/img/response", txtAI="agent/api/v0.1.0/txt/response"), keepalive= 30, ) julia> msgMeta = Dict( :msgPurpose=> "updateStatus", :from=> "agent", :to=> "llmAI", :requestresponse=> "request", :sendto=> "", # destination topic :replyTo=> "agent/api/v0.1.0/txt/response", # requester ask responseer to send reply to this topic :repondToMsgId=> "", # responseer is responseing to this msg id :taskstatus=> "", # "complete", "fail", "waiting" or other status :timestamp=> Dates.now(), :msgId=> "$(uuid4())", ) julia> newAgent = ChatAgent.agentReact( "Jene", mqttClientSpec, role=:assistant_react, msgMeta=msgMeta ) julia> response = ChatAgent.conversation(newAgent, "Hi! how are you?") ``` # """ function conversation(a::agentReflex, usermsg::String; attemptlimit::Int=3) a.attemptlimit = attemptlimit workstate = nothing response = nothing _ = addNewMessage(a, "user", usermsg) isuseplan = isUsePlans(a) # newinfo = extractinfo(a, usermsg) # a.env = newinfo !== nothing ? updateEnvState(a, newinfo) : a.env @show isuseplan if isuseplan # use plan before responding if haskey(a.memory[:shortterm], "User:") == false #TODO should change role if user want to buy wine. a.memory[:shortterm]["User:"] = usermsg end workstate, response = work(a) end # if LLM using askbox, use returning msg form askbox as conversation response if workstate == "askbox" || workstate == "formulatedUserResponse" #TODO paraphrase msg so that it is human friendlier word. else response = chat_mistral_openorca(a) response = split(response, "\n\n")[1] response = split(response, "\n\n")[1] end response = removeTrailingCharacters(response) _ = addNewMessage(a, "assistant", response) return response end """ Continuously run llm functions except when llm is getting Answer: or askbox. There are many work() depend on thinking mode. """ function work(a::agentReflex) workstate = nothing response = nothing # user answering LLM -> Obs if length(a.memory[:shortterm]) > 1 latestTask = shortMemLatestTask(a.memory[:shortterm]) if haskey(a.memory[:shortterm], "Act $latestTask:") if occursin("askbox", a.memory[:shortterm]["Act $latestTask:"]) a.memory[:shortterm]["Obs $latestTask:"] = "(user response) " * a.messages[end][:content] end end end while true # Work loop objective = nothing # make new plan if !haskey(a.memory[:shortterm], "Plan 1:") plan = planner_mistral_openorca(a) a.memory[:shortterm]["Plan $(a.attempt):"] = plan a.memory[:log]["Plan $(a.attempt):"] = plan a.task = 1 # reset because new plan is created println("") @show plan println("") @show a.attempt end if a.attempt <= a.attemptlimit toolname = nothing toolinput = nothing # enter actor loop actorstate, msgToUser = actor(a) if actorstate == "askbox" response = msgToUser workstate = actorstate break elseif actorstate == "formulateFinalResponse" println("all tasks done") response = formulateUserResponse(a) println("") formulatedresponse = response @show formulatedresponse a.memory[:shortterm]["response $(a.attempt):"] = response a.memory[:log]["response $(a.attempt):"] = response # evaluate. if score > 6/10 good enough. guideline = writeEvaluationGuideline(a) println("") @show guideline score = grading(a, guideline, response) @show score if score > 5 # good enough answer println("") formulatedresponse_final = response @show formulatedresponse_final workstate = "formulatedUserResponse" a.memory[:shortterm] = OrderedDict{String, Any}() a.memory[:log] = OrderedDict{String, Any}() break else # self evaluate and reflect then try again analysis = analyze(a) println("") @show analysis lessonwithcontext = selfReflext(a, analysis) println("") @show lessonwithcontext headerToDetect = ["Lesson:", "Context:", ] headers = detectCharacters(lessonwithcontext, headerToDetect) chunkedtext = chunktext(lessonwithcontext, headers) a.memory[:longterm][chunkedtext["Context:"]] = chunkedtext["Lesson:"] a.attempt += 1 a.task = 0 a.memory[:shortterm] = OrderedDict{String, Any}() a.memory[:log] = OrderedDict{String, Any}() println("") println("RETRY $(a.attempt +1)") println("") end else error("undefied condition, actorstate $actorstate $(@__LINE__)") break end else error("attempt limit reach") break end end # good enough answer return workstate, response end """ Actor function. Arguments: a, one of ChatAgent's agent. plan, a task by task plan to response Return: case 1) if actor complete the plan successfully. actorState = "all tasks done" inidicates that all task in plan were done. msgToUser = nothing. case 2) if actor needs to talk to user for more context actorState = "askbox" msgToUser = "message from assistant to user" """ function actor(a::agentReflex) actorState = nothing msgToUser = nothing # totaltasks = checkTotalTaskInPlan(a) while true # Actor loop # check whether the current task is completed, skip evaluation if memory has only "Plan 1:" # taskrecap = "" # if length(keys(a.memory[:shortterm])) != 1 # taskrecap = recap(a) # end # println("") # @show taskrecap latestTask = shortMemLatestTask(a.memory[:shortterm]) +1 println(">>> working") # work selfaware = nothing if length(a.memory[:shortterm]) > 2 # must have User:, Plan:, Thought:, Act:, Actinput: already selfaware = selfAwareness(a) end actorResult = actor_mistral_openorca(a, selfaware) toolname, toolinput, chunkedtext, selfaware = actorResult println("") @show toolname @show toolinput println(typeof(toolinput)) if toolname == "askbox" # chat with user msgToUser = askbox(toolinput) actorState = toolname #WORKING add only a single Q1 to memory because LLM need to ask the user only 1 question at a time latestTask = shortMemLatestTask(a.memory[:shortterm]) +1 chunkedtext["Actinput $latestTask:"] = msgToUser addShortMem!(a.memory[:shortterm], chunkedtext) break elseif toolname == "finalanswer" addShortMem!(a.memory[:shortterm], chunkedtext) println(">>> already done") actorState = "formulateFinalResponse" error(5555) break else # function call addShortMem!(a.memory[:shortterm], chunkedtext) f = a.tools[toolname][:func] toolresult = f(a, actorResult) @show toolresult if toolname == "" a.memory[:shortterm]["Obs $latestTask:"] = "I found wines in " a.memory[:winestockResult] = toolresult a.memory[:log]["Obs $latestTask:"] = "winestock search done" else a.memory[:shortterm]["Obs $latestTask:"] = toolresult a.memory[:log]["Obs $latestTask:"] = toolresult end end end return actorState, msgToUser end """ Write evaluation guideline. Arguments: a, one of ChatAgent's agent. usermsg, stimulus e.g. question, task and etc. Return: An evaluation guideline used to guage AI's work. Example: ```jldoctest julia> using ChatAgent, CommUtils julia> agent = ChatAgent.agentReflex("Jene") julia> usermsg = "What's AMD latest product?" " julia> evaluationGuideLine = writeEvaluationGuideline(agent, usermsg) ``` """ function writeEvaluationGuideline(a::agentReflex) prompt = """ <|system|> $(a.roles[a.role]) askbox: Useful for when you need to ask a customer for more context. Input should be a conversation to customer. wikisearch: Useful for when you need to search an encyclopedia Input is keywords and not a question. 1. Write an evaluation guideline for wine recommendation in order to be able to evaluate your response. 2. An example of what the response should be. <|assistant|> """ response = sendReceivePrompt(a, prompt) return response end """ Determine a score out of 10 according to evaluation guideline. Arguments: a, one of ChatAgent's agent. guidelines, an evaluation guideline. shorttermMemory, a short term memory that logs what happened. Return: A score out of 10 based on guideline. Example: ```jldoctest julia> using ChatAgent, CommUtils julia> agent = ChatAgent.agentReflex("Jene") julia> shorttermMemory = OrderedDict{String, Any}( "user" => "What's the latest AMD GPU?", "Plan 1:" => " To answer this question, I will need to search for the latest AMD GPU using the wikisearch tool.\n", "Act 1:" => " wikisearch\n", "Actinput 1:" => " amd gpu latest\n", "Obs 1:" => "No info available for your search query.", "Act 2:" => " wikisearch\n", "Actinput 2:" => " amd graphics card latest\n", "Obs 2:" => "No info available for your search query.") julia> guideline = "\nEvaluation Guideline:\n1. Check if the user's question has been understood correctly.\n2. Evaluate the tasks taken to provide the information requested by the user.\n3. Assess whether the correct tools were used for the task.\n4. Determine if the user's request was successfully fulfilled.\n5. Identify any potential improvements or alternative approaches that could be used in the future.\n\nThe response should include:\n1. A clear understanding of the user's question.\n2. The tasks taken to provide the information requested by the user.\n3. An evaluation of whether the correct tools were used for the task.\n4. A confirmation or explanation if the user's request was successfully fulfilled.\n5. Any potential improvements or alternative approaches that could be used in the future." julia> score = grading(agent, guideline, shorttermMemory) ``` """ function grading(a, guideline::T, text::T) where {T<:AbstractString} prompt = """ <|system|> askbox: Useful for when you need to ask a customer for more context. Input should be a conversation to customer. wikisearch: Useful for when you need to search an encyclopedia Input is keywords and not a question. $guideline $text Evaluate your response using the evaluation guideline then give yourself a score out of 9 for your response. {"Evaluate": "My response is detailed with good comparison between options.", "Score": 6} <|assistant|> { """ println("") prompt_grading = prompt @show prompt_grading println("") score = nothing while true response = sendReceivePrompt(a, prompt, timeout=180) try response = "{" * split(response, "}")[1] * "}" @show response @show jsonresponse = JSON3.read(response) score = jsonresponse["Score"] break catch println("retry grading") end end return score end """ Analize work. Arguments: a, one of ChatAgent's agent. Return: A report of analized work. Example: ```jldoctest julia> using ChatAgent, CommUtils julia> agent = ChatAgent.agentReflex("Jene") julia> shorttermMemory = OrderedDict{String, Any}( "user:" => "What's the latest AMD GPU?", "Plan 1:" => " To answer this question, I will need to search for the latest AMD GPU using the wikisearch tool.\n", "Act 1:" => " wikisearch\n", "Actinput 1:" => " amd gpu latest\n", "Obs 1:" => "No info available for your search query.", "Act 2:" => " wikisearch\n", "Actinput 2:" => " amd graphics card latest\n", "Obs 2:" => "No info available for your search query.") julia> report = analyze(agent, shorttermMemory) ``` """ function analyze(a) shorttermMemory = dictToString(a.memory[:shortterm]) prompt = """ <|system|> askbox: Useful for when you need to ask a customer for more context. Input should be a conversation to customer. wikisearch: Useful for when you need to search an encyclopedia Input is keywords and not a question. $shorttermMemory You job is to do each of the following in detail to analize your work. 1. What happened? 2. List all relationships, each with cause and effect. 3. Look at each relationship, figure out why it behaved that way. 4. What could you do to improve the response? <|assistant|> """ response = sendReceivePrompt(a, prompt, max_tokens=1024, timeout=180) return response end """ Write a lesson drawn from evaluation. Arguments: a, one of ChatAgent's agent. report, a report resulted from analyzing shorttermMemory Return: A lesson. Example: ```jldoctest julia> using ChatAgent, CommUtils julia> agent = ChatAgent.agentReflex("Jene") julia> report = "What happened: I tried to search for AMD's latest product using the wikisearch tool, but no information was available in the search results. Cause and effect relationships: 1. Searching \"AMD latest product\" -> No info available. 2. Searching \"most recent product release\" -> No info available. 3. Searching \"latest product\" -> No info available. Analysis of each relationship: 1. The search for \"AMD latest product\" did not provide any information because the wikisearch tool could not find relevant results for that query. 2. The search for \"most recent product release\" also did not yield any results, indicating that there might be no recent product releases available or that the information is not accessible through the wikisearch tool. 3. The search for \"latest product\" similarly resulted in no information being found, suggesting that either the latest product is not listed on the encyclopedia or it is not easily identifiable using the wikisearch tool. Improvements: To improve the response, I could try searching for AMD's products on a different source or search engine to find the most recent product release. Additionally, I could ask the user for more context or clarify their question to better understand what they are looking for." julia> lesson = selfReflext(agent, report) ``` """ function selfReflext(a, analysis::T) where {T<:AbstractString} prompt = """ <|system|> askbox: Useful for when you need to ask a customer for more context. Input should be a conversation to customer. wikisearch: Useful for when you need to search an encyclopedia Input is keywords and not a question. $analysis 1. Lesson: what lesson could you learn from your report?. 2. Context: what is the context this lesson could apply to? <|assistant|> """ response = sendReceivePrompt(a, prompt, max_tokens=1024) return response end """ Formulate a response from work for user's stimulus. Arguments: a, one of ChatAgent's agent. Return: A response for user's stimulus. Example: ```jldoctest julia> using ChatAgent, CommUtils julia> agent = ChatAgent.agentReflex("Jene") julia> shorttermMemory = OrderedDict{String, Any}( "user:" => "What's the latest AMD GPU?", "Plan 1:" => " To answer this question, I will need to search for the latest AMD GPU using the wikisearch tool.\n", "Act 1:" => " wikisearch\n", "Actinput 1:" => " amd gpu latest\n", "Obs 1:" => "No info available for your search query.", "Act 2:" => " wikisearch\n", "Actinput 2:" => " amd graphics card latest\n", "Obs 2:" => "No info available for your search query.") julia> report = formulateUserResponse(agent, shorttermMemory) ``` """ function formulateUserResponse(a) conversation = messagesToString_nomark(a.messages, addressAIas="I") work = dictToString(a.memory[:shortterm]) prompt = """ <|system|> Plan: a plan Thought: your thought Act: the action you took Actinput: the input to the action Obs: the result of the action $conversation $work Based on your talk with the user and your work, present a response that compares and justifies each option in great detail to the user. <|assistant|> Recommendation: """ response = sendReceivePrompt(a, prompt, max_tokens=1024, timeout=300) return response end # function formulateUserResponse(a) # conversation = messagesToString_nomark(a.messages, addressAIas="I") # work = dictToString(a.memory[:shortterm]) # prompt = # """ # <|system|> # Symbol: # Plan: a plan # Thought: your thought # Act: the action you took # Actinput: the input to the action # Obs: the result of the action # Your talk with the user: # $conversation # Your work: # $work # From your talk with the user and your work, formulate a response for the user . # # <|assistant|> # response: # """ # response = sendReceivePrompt(a, prompt) # return response # end """ Extract important info from text into key-value pair text. Arguments: a, one of ChatAgent's agent. text, a text you want to extract info Return: key-value pair text. Example: ```jldoctest julia> using ChatAgent julia> agent = ChatAgent.agentReflex("Jene") julia> text = "We are holding a wedding party at the beach." julia> extract(agent, text) "location=beach, event=wedding party" ``` """ function extractinfo(a, text::T) where {T<:AbstractString} # determine whether there are any important info in an input text prompt = """ <|system|> $text Determine whether there are important info in the user's message. Answer: {Yes/No/Not sure} Answer: """ response = sendReceivePrompt(a, prompt, temperature=0.0) if occursin("Yes", response) prompt = """ <|system|> $text Extract important info from the user's message into keys and values using this format: key=value,. p.s.1 you can extract many key-value pairs. """ response = sendReceivePrompt(a, prompt, temperature=0.0) return response else return nothing end end """ Update important info from key-value pair text into another key-value pair text. Arguments: a, one of ChatAgent's agent text, a key-value pair text Return: updated key-value pair text Example: ```jldoctest julia> using ChatAgent julia> agent = ChatAgent.agentReflex("Jene") julia> currentinfo = "location=beach, event=wedding party" julia> newinfo = "wine_type=full body, dry and medium tannin\nprice_range=50 dollars" julia> updateEnvState(agent, currentinfo, newinfo) " location=beach, event=wedding party, wine_type=full body, dry and medium tannin, price_range=50 dollars" ``` """ function updateEnvState(a, newinfo) prompt = """ <|im_start|>system Current state: $(a.env) New info: $newinfo Your job is to update or add information from new info into the current state which use key-value format. <|im_end|> Updated Current State:\n """ response = sendReceivePrompt(a, prompt, temperature=0.0) return response end """ Determine whether LLM should go to next task. Arguments: a, one of ChatAgent's agent. Return: "Yes" or "no" decision to go next task. Example: ```jldoctest julia> using ChatAgent, CommUtils julia> agent = ChatAgent.agentReflex("Jene") julia> shorttermMemory = OrderedDict{String, Any}( "user:" => "What's the latest AMD GPU?", "Plan 1:" => " To answer this question, I will need to search for the latest AMD GPU using the wikisearch tool.\n", "Act 1:" => " wikisearch\n", "Actinput 1:" => " amd gpu latest\n", "Obs 1:" => "No info available for your search query.", "Act 2:" => " wikisearch\n", "Actinput 2:" => " amd graphics card latest\n", "Obs 2:" => "No info available for your search query.") julia> decision = checkTaskCompletion(agent) "Yes" ``` """ function checkTaskCompletion(a) @show a.memory[:shortterm]["Plan 1:"] # stimulus = a.memory[:shortterm]["user:"] work = dictToString(a.memory[:shortterm]) prompt = """ <|system|> Plan: a plan Thought: your thought Act: the action you took Actinput: the input to the action Obs: the result of the action $work Check whether each task of your plan has been completed. Task 1 of the plan: Ask user about their preferred topping of a pizza. Obs: I love Malvasia. assistant: After checking all my work's observed results, I can't find any relevant info that the user tell me what is their preferred topping in pizza. Thus, task 1 isn't done yet. Task 2 of the plan: Ask user if they have any preferred type of car. Obs: I like a semi truck. assistant: After checking all my work's observed results, I found that the user like a semi truck. Thus, task 2 is done. Task 3 of the plan: How much you are looking to spend for a new house? Obs: 50K THB. assistant: After checking all my work's observed results, I found that the user have a budget of 50,000 Baht. Thus, task 3 is done. Let's think step by step. <|assistant|> After """ response = nothing _response = nothing _response = sendReceivePrompt(a, prompt, max_tokens=1024) @show checkTaskCompletion_raw = _response _response = split(_response, " # # Plan: a plan # Thought: your thought # Act: the action you took # Actinput: the input to the action # Obs: the result of the action # # # $work # # # Recap: list all your observed results in detail # # Let's think step by step. # # <|assistant|> # Recap: # """ prompt = """ <|system|> $(a.roles[a.role]) Plan: a plan Thought: your thought Act: the action you took Actinput: the input to the action Obs: the result of the action $toollines $work Extract info: extract each info in details from your earlier work according to the Actinput context. Let's think step by step. <|assistant|> Extracted info: """ aware = "Self-awareness: map the info from the recap to the plan's tasks then state your mapping." response = sendReceivePrompt(a, prompt, max_tokens=1024, temperature=0.0) response = split(response, " using ChatAgent, CommUtils julia> a = ChatAgent.agentReflex("Jene") julia> keywordmemory = OrderedDict{String, Any}( "food type" => nothing, "tannin level" => "low to medium", "intensity level" => "medium-bodied", "acidity level" => nothing, "price range" => "fifteen dollars", "wine type" => "Red", "sweetness level" => "dry", ) julia> readout = readKeywordMemory(a, keywordmemory=keywordmemory) " - The user did not provide food type yet - The user prefers a low to medium tannin level - The user prefers a medium-bodied intensity level - The user did not provide acidity level yet - The user prefers price range is fifteen dollars - The user prefers a Red wine type - The user prefers a dry sweetness level" ``` """ function readKeywordMemory(a; keywordmemory::Union{AbstractDict, Nothing}=nothing) keywordmemory = keywordmemory !== nothing ? keywordmemory : a.memory[:keyword] result = "" if !isempty(keywordmemory) new_keywordmemory = deepcopy(keywordmemory) @show keywordmemory # prepare reversed dict for pop! coz I need to preserve key order reversed_keywordmemory = Dict() while length(new_keywordmemory) > 0 k, v = pop!(new_keywordmemory) reversed_keywordmemory[k] = v end while length(reversed_keywordmemory) > 0 tempdict = OrderedDict() for i in 1:4 if length(reversed_keywordmemory) == 0 break else k, v = pop!(reversed_keywordmemory) tempdict[k] = v end end # ask LLM to read tempdict jsonstr = JSON3.write(tempdict) prompt = """ <|system|> Your name is $(a.agentName) $(a.roles[a.role]) Readout all the key and its value pairs in memory, one by one. Do not say anything else. {\"car type\": "SUV",\"brand\":\"Lexus\",\"price\":\"20k dollar\",\"color\": null,\"financing method\": null, \"luxury level\":\"high\"} <|assistant|> - Car type is SUV - Brand is Lexus - Price is 20k dollar - No info on the car color yet - No info on the financing method yet - Luxury level is high User preference: $jsonstr <|assistant|> """ response = sendReceivePrompt(a, prompt, max_tokens=512, temperature=0.0) response = split(response, "")[1] # store LLM readout string to result result = result * response end end return result end end # module