21 Commits

Author SHA1 Message Date
83ef7d52b2 update 2025-03-15 08:29:33 +07:00
323c232121 update 2025-03-14 21:57:27 +07:00
696a77a483 update 2025-03-14 19:15:42 +07:00
94f2c9479a update 2025-03-14 13:06:26 +07:00
200a1d3e23 update 2025-03-14 12:32:09 +07:00
a22f9c52d2 update 2025-03-13 19:10:02 +07:00
2036a07f46 update 2025-03-11 10:28:38 +07:00
d09e9c1071 update 2025-03-11 00:13:50 +07:00
4f1917e01b update 2025-03-09 18:36:57 +07:00
7dd6b56e4c update 2025-03-09 11:26:55 +07:00
narawat lamaiin
e9f9e431a9 update 2025-03-07 12:32:49 +07:00
narawat lamaiin
2f38f3cd0d update 2025-02-24 06:28:46 +07:00
ton
c1ac00829c Merge pull request 'WIP v0.2.2-dev' (#1) from v0.2.2-dev into main
Reviewed-on: #1
2025-01-25 07:38:21 +00:00
narawat lamaiin
b3345514ca update 2025-01-25 14:21:52 +07:00
narawat lamaiin
112db2929c update 2025-01-15 08:35:25 +07:00
narawat lamaiin
aa7973ca7e update 2025-01-11 16:57:00 +07:00
narawat lamaiin
bba3c26301 update 2025-01-06 13:13:16 +07:00
narawat lamaiin
dcf57420d1 update 2025-01-05 13:34:41 +07:00
4fa16c4b76 update 2025-01-04 16:11:20 +07:00
370f3501b9 update 2025-01-01 07:53:18 +07:00
210aecb183 update 2024-12-27 20:47:22 +07:00
17 changed files with 472 additions and 4595 deletions

View File

@@ -1,8 +1,8 @@
# This file is machine-generated - editing it directly is not advised
julia_version = "1.11.2"
julia_version = "1.11.3"
manifest_format = "2.0"
project_hash = "6e88822413ea4a623cd914d84de127dc6c57fceb"
project_hash = "9e0d7dca51b949f2ffa5477b895b90988ec62529"
[[deps.AliasTables]]
deps = ["PtrArrays", "Random"]
@@ -120,9 +120,9 @@ version = "1.11.0"
[[deps.Distributions]]
deps = ["AliasTables", "FillArrays", "LinearAlgebra", "PDMats", "Printf", "QuadGK", "Random", "SpecialFunctions", "Statistics", "StatsAPI", "StatsBase", "StatsFuns"]
git-tree-sha1 = "3101c32aab536e7a27b1763c0797dba151b899ad"
git-tree-sha1 = "03aa5d44647eaec98e1920635cdfed5d5560a8b9"
uuid = "31c24e10-a181-5473-b8eb-7969acd0382f"
version = "0.25.113"
version = "0.25.117"
[deps.Distributions.extensions]
DistributionsChainRulesCoreExt = "ChainRulesCore"
@@ -200,11 +200,9 @@ version = "1.11.0"
[[deps.GeneralUtils]]
deps = ["CSV", "DataFrames", "DataStructures", "Dates", "Distributions", "JSON3", "MQTTClient", "PrettyPrinting", "Random", "SHA", "UUIDs"]
git-tree-sha1 = "978d9a5c3fc30205dd72d4a2a2ed4fa85ebee5cf"
repo-rev = "main"
repo-url = "https://git.yiem.cc/ton/GeneralUtils"
path = "../GeneralUtils"
uuid = "c6c72f09-b708-4ac8-ac7c-2084d70108fe"
version = "0.1.0"
version = "0.2.2"
[[deps.HTTP]]
deps = ["Base64", "CodecZlib", "ConcurrentUtilities", "Dates", "ExceptionUnwrapping", "Logging", "LoggingExtras", "MbedTLS", "NetworkOptions", "OpenSSL", "PrecompileTools", "Random", "SimpleBufferStream", "Sockets", "URIs", "UUIDs"]
@@ -214,9 +212,9 @@ version = "1.10.13"
[[deps.HypergeometricFunctions]]
deps = ["LinearAlgebra", "OpenLibm_jll", "SpecialFunctions"]
git-tree-sha1 = "b1c2585431c382e3fe5805874bda6aea90a95de9"
git-tree-sha1 = "2bd56245074fab4015b9174f24ceba8293209053"
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version = "0.3.27"
[[deps.ICU_jll]]
deps = ["Artifacts", "JLLWrappers", "Libdl", "Pkg"]
@@ -305,12 +303,10 @@ uuid = "b39eb1a6-c29a-53d7-8c32-632cd16f18da"
version = "1.19.3+0"
[[deps.LLMMCTS]]
deps = ["GeneralUtils", "JSON3"]
git-tree-sha1 = "c8ad9715e78bbd19f5ac79e1f1cacf85f141449d"
repo-rev = "main"
repo-url = "https://git.yiem.cc/ton/LLMMCTS"
deps = ["GeneralUtils", "JSON3", "PrettyPrinting"]
path = "../LLMMCTS"
uuid = "d76c5a4d-449e-4835-8cc4-dd86ec44f241"
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version = "0.1.3"
[[deps.LaTeXStrings]]
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@@ -493,7 +489,7 @@ version = "3.0.15+1"
deps = ["Artifacts", "CompilerSupportLibraries_jll", "JLLWrappers", "Libdl", "Pkg"]
git-tree-sha1 = "13652491f6856acfd2db29360e1bbcd4565d04f1"
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[[deps.OrderedCollections]]
git-tree-sha1 = "12f1439c4f986bb868acda6ea33ebc78e19b95ad"
@@ -502,9 +498,9 @@ version = "1.7.0"
[[deps.PDMats]]
deps = ["LinearAlgebra", "SparseArrays", "SuiteSparse"]
git-tree-sha1 = "949347156c25054de2db3b166c52ac4728cbad65"
git-tree-sha1 = "966b85253e959ea89c53a9abebbf2e964fbf593b"
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version = "0.11.32"
[[deps.Parsers]]
deps = ["Dates", "PrecompileTools", "UUIDs"]
@@ -556,15 +552,15 @@ uuid = "de0858da-6303-5e67-8744-51eddeeeb8d7"
version = "1.11.0"
[[deps.PtrArrays]]
git-tree-sha1 = "77a42d78b6a92df47ab37e177b2deac405e1c88f"
git-tree-sha1 = "1d36ef11a9aaf1e8b74dacc6a731dd1de8fd493d"
uuid = "43287f4e-b6f4-7ad1-bb20-aadabca52c3d"
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version = "1.3.0"
[[deps.QuadGK]]
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git-tree-sha1 = "cda3b045cf9ef07a08ad46731f5a3165e56cf3da"
git-tree-sha1 = "9da16da70037ba9d701192e27befedefb91ec284"
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version = "2.11.1"
version = "2.11.2"
[deps.QuadGK.extensions]
QuadGKEnzymeExt = "Enzyme"
@@ -664,9 +660,9 @@ version = "1.11.0"
[[deps.SpecialFunctions]]
deps = ["IrrationalConstants", "LogExpFunctions", "OpenLibm_jll", "OpenSpecFun_jll"]
git-tree-sha1 = "2f5d4697f21388cbe1ff299430dd169ef97d7e14"
git-tree-sha1 = "64cca0c26b4f31ba18f13f6c12af7c85f478cfde"
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version = "2.4.0"
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[deps.SpecialFunctions.extensions]
SpecialFunctionsChainRulesCoreExt = "ChainRulesCore"

View File

@@ -1,7 +1,7 @@
name = "SQLLLM"
uuid = "2ebc79c7-cc10-4a3a-9665-d2e1d61e63d3"
authors = ["narawat lamaiin <narawat@outlook.com>"]
version = "0.2.1"
version = "0.2.3"
[deps]
CSV = "336ed68f-0bac-5ca0-87d4-7b16caf5d00b"
@@ -23,5 +23,4 @@ URIs = "5c2747f8-b7ea-4ff2-ba2e-563bfd36b1d4"
UUIDs = "cf7118a7-6976-5b1a-9a39-7adc72f591a4"
[compat]
GeneralUtils = "0.1.0"
LLMMCTS = "0.1.2"
Dates = "1.11.0"

View File

@@ -1,879 +0,0 @@
# This file is machine-generated - editing it directly is not advised
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[[deps.TimeZones]]
deps = ["Dates", "Downloads", "InlineStrings", "Mocking", "Printf", "Scratch", "TZJData", "Unicode", "p7zip_jll"]
git-tree-sha1 = "8323074bc977aa85cf5ad71099a83ac75b0ac107"
uuid = "f269a46b-ccf7-5d73-abea-4c690281aa53"
version = "1.18.1"
weakdeps = ["RecipesBase"]
[deps.TimeZones.extensions]
TimeZonesRecipesBaseExt = "RecipesBase"
[[deps.TranscodingStreams]]
git-tree-sha1 = "0c45878dcfdcfa8480052b6ab162cdd138781742"
uuid = "3bb67fe8-82b1-5028-8e26-92a6c54297fa"
version = "0.11.3"
[[deps.URIs]]
git-tree-sha1 = "67db6cc7b3821e19ebe75791a9dd19c9b1188f2b"
uuid = "5c2747f8-b7ea-4ff2-ba2e-563bfd36b1d4"
version = "1.5.1"
[[deps.UTCDateTimes]]
deps = ["Dates", "TimeZones"]
git-tree-sha1 = "4af3552bf0cf4a071bf3d14bd20023ea70f31b62"
uuid = "0f7cfa37-7abf-4834-b969-a8aa512401c2"
version = "1.6.1"
[[deps.UUIDs]]
deps = ["Random", "SHA"]
uuid = "cf7118a7-6976-5b1a-9a39-7adc72f591a4"
version = "1.11.0"
[[deps.Unicode]]
uuid = "4ec0a83e-493e-50e2-b9ac-8f72acf5a8f5"
version = "1.11.0"
[[deps.UnsafePointers]]
git-tree-sha1 = "c81331b3b2e60a982be57c046ec91f599ede674a"
uuid = "e17b2a0c-0bdf-430a-bd0c-3a23cae4ff39"
version = "1.0.0"
[[deps.WeakRefStrings]]
deps = ["DataAPI", "InlineStrings", "Parsers"]
git-tree-sha1 = "b1be2855ed9ed8eac54e5caff2afcdb442d52c23"
uuid = "ea10d353-3f73-51f8-a26c-33c1cb351aa5"
version = "1.4.2"
[[deps.WorkerUtilities]]
git-tree-sha1 = "cd1659ba0d57b71a464a29e64dbc67cfe83d54e7"
uuid = "76eceee3-57b5-4d4a-8e66-0e911cebbf60"
version = "1.6.1"
[[deps.Zlib_jll]]
deps = ["Libdl"]
uuid = "83775a58-1f1d-513f-b197-d71354ab007a"
version = "1.2.13+1"
[[deps.Zstd_jll]]
deps = ["Artifacts", "JLLWrappers", "Libdl"]
git-tree-sha1 = "555d1076590a6cc2fdee2ef1469451f872d8b41b"
uuid = "3161d3a3-bdf6-5164-811a-617609db77b4"
version = "1.5.6+1"
[[deps.libblastrampoline_jll]]
deps = ["Artifacts", "Libdl"]
uuid = "8e850b90-86db-534c-a0d3-1478176c7d93"
version = "5.11.0+0"
[[deps.micromamba_jll]]
deps = ["Artifacts", "JLLWrappers", "LazyArtifacts", "Libdl"]
git-tree-sha1 = "b4a5a3943078f9fd11ae0b5ab1bdbf7718617945"
uuid = "f8abcde7-e9b7-5caa-b8af-a437887ae8e4"
version = "1.5.8+0"
[[deps.nghttp2_jll]]
deps = ["Artifacts", "Libdl"]
uuid = "8e850ede-7688-5339-a07c-302acd2aaf8d"
version = "1.59.0+0"
[[deps.p7zip_jll]]
deps = ["Artifacts", "Libdl"]
uuid = "3f19e933-33d8-53b3-aaab-bd5110c3b7a0"
version = "17.4.0+2"

View File

@@ -1,26 +0,0 @@
name = "SQLLLM"
uuid = "2ebc79c7-cc10-4a3a-9665-d2e1d61e63d3"
authors = ["narawat lamaiin <narawat@outlook.com>"]
version = "0.1.0"
[deps]
CSV = "336ed68f-0bac-5ca0-87d4-7b16caf5d00b"
CondaPkg = "992eb4ea-22a4-4c89-a5bb-47a3300528ab"
DataFrames = "a93c6f00-e57d-5684-b7b6-d8193f3e46c0"
DataStructures = "864edb3b-99cc-5e75-8d2d-829cb0a9cfe8"
Dates = "ade2ca70-3891-5945-98fb-dc099432e06a"
FileIO = "5789e2e9-d7fb-5bc7-8068-2c6fae9b9549"
GeneralUtils = "c6c72f09-b708-4ac8-ac7c-2084d70108fe"
HTTP = "cd3eb016-35fb-5094-929b-558a96fad6f3"
JSON3 = "0f8b85d8-7281-11e9-16c2-39a750bddbf1"
LLMMCTS = "d76c5a4d-449e-4835-8cc4-dd86ec44f241"
LibPQ = "194296ae-ab2e-5f79-8cd4-7183a0a5a0d1"
MQTTClient = "985f35cc-2c3d-4943-b8c1-f0931d5f0959"
PrettyPrinting = "54e16d92-306c-5ea0-a30b-337be88ac337"
PythonCall = "6099a3de-0909-46bc-b1f4-468b9a2dfc0d"
Random = "9a3f8284-a2c9-5f02-9a11-845980a1fd5c"
Revise = "295af30f-e4ad-537b-8983-00126c2a3abe"
StatsBase = "2913bbd2-ae8a-5f71-8c99-4fb6c76f3a91"
Tables = "bd369af6-aec1-5ad0-b16a-f7cc5008161c"
URIs = "5c2747f8-b7ea-4ff2-ba2e-563bfd36b1d4"
UUIDs = "cf7118a7-6976-5b1a-9a39-7adc72f591a4"

View File

@@ -1,56 +0,0 @@
{
"mqttServerInfo": {
"description": "mqtt server info",
"port": 1883,
"broker": "mqtt.yiem.cc"
},
"testingOrProduction": {
"value": "testing",
"description": "agent status, couldbe testing or production"
},
"agentid": {
"value": "2b74b87a-5413-4fe2-a4d3-405891051680",
"description": "a unique id for this agent"
},
"agentCentralConfigTopic": {
"mqtttopic": "/yiem_branch_1/agent/sommelier/backend/config/api/v1.1",
"description": "a central agent server's topic to get this agent config"
},
"servicetopic": {
"mqtttopic": [
"/yiem/branch_1/agent/wine/backend/prompt/api_v1/testing"
],
"description": "a topic this agent are waiting for service request"
},
"role": {
"value": "sommelier",
"description": "agent role"
},
"organization": {
"value": "yiem_branch_1",
"description": "organization name"
},
"externalservice": {
"text2textinstruct": {
"mqtttopic": "/loadbalancer/requestingservice",
"description": "text to text service with instruct LLM",
"llminfo": {
"name": "llama3instruct"
}
},
"virtualWineCustomer_1": {
"mqtttopic": "/virtualenvironment/winecustomer",
"description": "text to text service with instruct LLM that act as wine customer",
"llminfo": {
"name": "llama3instruct"
}
},
"text2textchat": {
"mqtttopic": "/loadbalancer/requestingservice",
"description": "text to text service with instruct LLM",
"llminfo": {
"name": "llama3instruct"
}
}
}
}

View File

@@ -1,103 +0,0 @@
module SQLLLM
# export
""" Order by dependencies of each file. The 1st included file must not depend on any other
files and each file can only depend on the file included before it.
"""
include("type.jl")
using .type
include("util.jl")
using .util
include("llmfunction.jl")
using .llmfunction
include("interface.jl")
using .interface
# ---------------------------------------------- 100 --------------------------------------------- #
end # module SQLLLM

File diff suppressed because it is too large Load Diff

View File

@@ -1,955 +0,0 @@
module llmfunction
export listAllTable_json, listAllTable_str, tableinfo, getdata, finalAnswerBox,
getTableNameFromSQL, extractContent_dataframe, SQLexecution
using HTTP, JSON3, URIs, Random, PrettyPrinting, UUIDs, LibPQ, Tables, DataFrames, CSV,
DataStructures, StatsBase
using GeneralUtils, LLMMCTS
using ..util
# ---------------------------------------------- 100 --------------------------------------------- #
""" List all tables in the database and return in JSON format.
# Arguments
- `executeSQL::Function`
A connection object to Postgres database
# Return
- `NamedTuple{(:result, :success), Tuple{DataFrame, Bool}}`
# Example
```jldoctest
julia> using LibPQ, SQLLLM
julia> function executeSQL(sql)
DBconnection = LibPQ.Connection("host=192.168.88.122 port=5432 dbname=xyz user=zyx password=1234")
result = LibPQ.execute(DBconnection, sql)
close(DBconnection)
return result
end
julia> response = SQLLLM.listAllTable_json(executeSQL)
julia> result = response[:result]
```
# Signature
"""
function listAllTable_json(executeSQL::Function
)::NamedTuple{(:result, :success),Tuple{DataFrame,Bool}}
sql = """
SELECT
table_name,
obj_description(relfilenode, 'pg_class') AS table_comment,
string_agg(column_name || ' (' || data_type || ')', ', ') AS columns
FROM
information_schema.columns
JOIN
pg_class ON table_name = relname
WHERE
table_schema = 'public'
GROUP BY
table_name, relfilenode
ORDER BY
table_name;
"""
result = executeSQL(sql)
df = DataFrame(result)
tablesinfo_df = df
return (result=tablesinfo_df, success=true)
end
function listAllTable_str(executeSQL::Function
)::NamedTuple{(:result, :success),Tuple{String,Bool}}
sql = """
SELECT
table_name,
obj_description(relfilenode, 'pg_class') AS table_comment,
string_agg(column_name || ' (' || data_type || ')', ', ') AS columns
FROM
information_schema.columns
JOIN
pg_class ON table_name = relname
WHERE
table_schema = 'public'
GROUP BY
table_name, relfilenode
ORDER BY
table_name;
"""
result = executeSQL(sql)
df = DataFrame(result)
tableinfo = "Here are a list of available tables in the database (each row is in this format: table name; table comment; table columns): \n"
for i in 1:size(df)[1]
table_name = df[i, 1]
table_comment = df[i, 2]
columns = df[i, 3]
tableinfo *= "$i. $table_name; $table_comment; $columns\n"
end
return (result=tableinfo, success=true)
end
""" Get table description, column comments and the first 3-rows of the table data
# Arguments
- `executeSQL::Function`
A connection object to Postgres database
# Return
- `tableinfo::String`
# Signature
"""
function tableinfo_str(executeSQL::Function, tablename::String)::NamedTuple{(:result, :success),Tuple{String,Bool}}
sql = """
SELECT
column_name,
data_type,
col_description(format('%s.%s', table_schema, table_name)::regclass::oid, ordinal_position) AS column_comment
FROM
information_schema.columns
WHERE
table_name = '$tablename'
AND table_schema = 'public';
"""
result = executeSQL(sql)
df = DataFrame(result)
tableinfo = "Here are info of table $tablename (each row is in this format: column name; data type; column comment):\n"
for i in 1:size(df)[1]
column_name = df[i, 1]
column_datatype = df[i, 2]
column_comment = df[i, 3]
tableinfo *= "$i. $column_name; $column_datatype; $column_comment \n"
end
return (result=tableinfo, success=true)
end
""" Get table description, column comments.
# Arguments
- `executeSQL::Function`
A connection object to Postgres database
- `tablenames<:AbstractVector`
A list of table name to get description
# Return
- `NamedTuple{(:result), Tuple{String}}`
Text contain multiple table info
# Example
```jldoctest
julia> using SQLLLM, LibPQ
julia> function executeSQL(sql)
DBconnection = LibPQ.Connection("host=192.168.88.122 port=5432 dbname=xyz user=zyx password=1234")
result = LibPQ.execute(DBconnection, sql)
close(DBconnection)
return result
end
julia> response = SQLLLM.tableinfo(executeSQL, ["wine", "food"])
julia> result = response[:result]
```
# Signature
"""
function tableinfo(executeSQL::Function, tablenames::T
)::NamedTuple{(:result,),Tuple{String}} where {T<:AbstractVector}
# list all tables in a database
sql = """
SELECT pg_namespace.nspname AS schema_name,
relname AS table_name,
pg_catalog.obj_description(pg_class.oid) AS comment
FROM pg_class
INNER JOIN pg_namespace ON pg_namespace.oid = pg_class.relnamespace
WHERE pg_namespace.nspname = 'public' -- Replace 'public' with your desired schema
AND pg_class.relkind IN ('r', 't');
"""
_result = executeSQL(sql)
df = DataFrame(_result)
alltable_df = df[:, [:table_name, :comment]]
tableNameList = alltable_df.table_name |> collect
# check if the requested table name exist in the database
notExistingTable = []
for i in tablenames
if i tableNameList
push!(notExistingTable, i)
end
end
if !isempty(notExistingTable)
result = "Error, the following tables does not exist in the database: $(JSON3.write(notExistingTable))"
return (result=result,)
end
tableInfoStr = ""
for i in tablenames
x, _ = tableinfo_str(executeSQL, i)
tableInfoStr *= x
end
return (result=tableInfoStr,)
end
""" Convert a query process in English into SQL, execute and get the result from the database.
# Arguments
- `query<:AbstractString`
A query to a database in SQL.
- `context::Union{Dict, Nothing}`
A context to be available at transition()
- `executeSQL::Function`
A connection object connected to the database
- `text2textInstructLLM::Function`
A function that handles communication to LLM service.
# Return
- `NamedTuple{(:result, :errormsg, success), Tuple{String, String, Bool}}`
# TODO
- [x] getdata directly using sql execute
# Signature
"""
function getdata(query::T, context::Union{Dict,Nothing}, executeSQL::Function,
text2textInstructLLM::Function;
) where {T<:AbstractString}
response = SQLexecution(executeSQL, query)
if response[:success]
extracted = extractContent_dataframe(response[:result], context, text2textInstructLLM)
response_ = (result=extracted, errormsg=nothing, success=true)
return response_
else
response_ = (result=nothing, errormsg=response[:errormsg], success=false)
return response_
end
end
# function getdata(query::T, context::Union{Dict, Nothing}, executeSQL::Function,
# text2textInstructLLM::Function;
# )::NamedTuple{(:result, :errormsg, :success), Tuple{String, Union{String, Nothing}, Bool}} where {T<:AbstractString}
# # get table info here because it'll be called only 1-time. If this function is in
# # getdata_decisionMaker(), it'll be called everytime
# mentionedtable = getTableNameFromSQL(query, text2textInstructLLM)
# mentionedTableInfo = tableinfo(executeSQL, mentionedtable)[:result]
# context[:mentionedTableInfo] = mentionedTableInfo
# initialstate = Dict{Symbol, Any}(
# :reward=> 0,
# :isterminal=> false,
# :evaluation=> nothing,
# :errormsg=> nothing,
# :errorexplain=> nothing,
# :question=> query,
# :code=> nothing,
# :response=> nothing,
# )
# transitionargs = (
# # decisionMaker=getdata_decisionMaker,
# # evaluator=getdata_evaluator,
# # reflector=getdata_reflector,
# context=context,
# executeSQL=executeSQL,
# text2textInstructLLM=text2textInstructLLM
# )
# result_1, result_2 = LLMMCTS.runMCTS(initialstate, getdata_transition, transitionargs;
# totalsample=1, maxdepth=3, maxiterations=1, explorationweight=1.0)
# if result_2[:isterminal] == true
# return (result=result_2[:response], errormsg=nothing, success=true) # succues=true to finish getdata()
# else
# # return (response="Failed to act with the following error message: $(result_2[:errorexplain])", select=nothing, reward=0, success=false)
# return (result="Failed to get the data. $(result_1[:errormsg])",
# errormsg=result_1[:errormsg], success=false)
# end
# end
"""
# Arguments
`v::Integer`
dummy variable
# Return
# Example
```jldoctest
julia>
```
# TODO
- [] update docstring
- [PENDING] implement the function
# Signature
"""
function getdata_evaluator(newstate, config)
return (evaluation="None", score=0)
end
""" State transition
# Arguments
- `state<:AbstractDict`
A game state
- `args::NamedTuple`
Arguments for various function within transition()
# Return
- `NamedTuple{(:newNodeKey, :newstate, :progressvalue), Tuple{String, T, Integer}}`
# Signature
"""
function getdata_transition(state::T, args::NamedTuple
)::NamedTuple{(:newNodeKey, :newstate, :progressvalue),Tuple{String,T,Integer}} where {T<:AbstractDict}
# decisionMaker::Function = args[:decisionMaker]
# evaluator::Function = args[:evaluator]
# reflector::Function = args[:reflector]
context = args[:context]
executeSQL::Function = args[:executeSQL]
text2textInstructLLM::Function = args[:text2textInstructLLM]
thought, sql =
if state[:code] !== nothing
result = getdata_decisionMaker(state, context, text2textInstructLLM)
result[:thought], result[:code]
else
nothing, state[:question]
end
# make new state
newNodeKey = GeneralUtils.uuid4snakecase()
newstate = deepcopy(state)
response, success, errormsg, reward, isterminal =
if sql !== nothing
response, success, errormsg, reward, isterminal = SQLexecution(executeSQL, sql)
else
(result=nothing,
success=false,
errormsg="SQL execution failed. An unexpected error occurred. Please try again.",
reward=0,
isterminal=false)
end
println("getdata_transition() 1 ", @__FILE__, " ", @__LINE__)
newstate[:code] = sql
newstate[:response] = response
newstate[:errorexplain] = thought
newstate[:errormsg] = errormsg
newstate[:reward] = reward
newstate[:isterminal] = isterminal
if response !== nothing
extracted = extractContent_dataframe(response, context, text2textInstructLLM)
newstate[:response] = extracted
end
println("getdata_transition() 2 ", @__FILE__, " ", @__LINE__)
stateevaluation = "None"
progressvalue = 0
return (newNodeKey=newNodeKey, newstate=newstate, progressvalue=progressvalue)
end
""" Make a decision using LLM
# Arguments
- `state::Dict`
A game state
- `context::Dict`
Additional context for LLM to use
- `text2textInstructLLM::Function`
A function to handles communication to LLM
# Return
- `NamedTuple{(:thought, :code, :success, :errormsg), Tuple{String, String, Bool, Union{String, Nothing}}}`
# Signature
"""
function getdata_decisionMaker(state::Dict, context::Dict, text2textInstructLLM::Function
)::NamedTuple{(:thought, :code, :success, :errormsg),Tuple{Union{String,Nothing},Union{String,Nothing},Bool,Union{String,Nothing}}}
Hints = "None"
# """
# Here are some useful SQL programs:
# $usefulSQL
# """
# systemmsg =
# """
# You are an assistant helping the user to execute SQL code from the user's query.
# At each round of conversation, the user will give you:
# Context: ...
# User intention: ...
# Code executed from the last round: ...
# Execution error: execution error of the last round code.
# You should consider the following guidelines:
# - Text information in the database is sometimes stored in lower case. If your search returns empty, try using lower case to search.
# You should then respond to the user with:
# - thought: Why the code does not complete the task. What does the execution error imply exactly?
# - plan: Step-by-step instructions of how to complete the task.
# 1) Focus on improving the code from the last round.
# 2) Do not create any table in the database.
# - code:
# 1) Write new improved code.
# 2) Do not wrap the code and no comment as it will be executed directly without any modification against the database.
# You should only respond in format as described below and nothing more:
# thought: ...
# plan:
# 1) ...
# 2) ...
# ...
# code: ...
# Let's begin!
# """
systemmsg = """
You are an assistant helping the user to execute SQL code from the user's query.
At each round of conversation, the user will give you:
Context: ...
User intention: ...
Code executed from the last round: ...
Execution error: execution error of the last round code.
You should consider the following guidelines:
- Text information in the database is sometimes stored in lower case. If your search returns empty, try using lower case to search.
You should then respond to the user with:
1) Understanding:
- State your understanding about the current situation.
2) Reasoning:
- State your step by step reasoning about the current situation.
3) Plan: Step-by-step instructions of how to complete the task.
- Focus on improving the code from the last round.
- Do not create any table in the database.
4) Code:
- Write new improved code.
- Do not wrap the code and no comment as it will be executed directly without any modification against the database.
You should only respond in format as described below and nothing more:
Understanding: ...
Reasoning: ...
Plan:
1) ...
2) ...
...
Code: ...
Let's begin!
"""
noise = ""
note_flag = ""
for attempt in 1:10
usermsg = """
Context:
$(context[:mentionedTableInfo])
User intention: $(context[:userintention])
Code executed from the last round: $(state[:code])
Execution error: $(state[:errormsg])
$noise
$note_flag
"""
_prompt =
[
Dict(:name => "system", :text => systemmsg),
Dict(:name => "user", :text => usermsg)
]
# put in model format
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="llama3instruct")
prompt *= """
<|start_header_id|>assistant<|end_header_id|>
"""
try
response = text2textInstructLLM(prompt)
responsedict = GeneralUtils.textToDict(response,
["Understanding", "Reasoning", "Plan", "Code"];
rightmarker=":", symbolkey=true, lowercasekey=true)
_code = responsedict[:code]
code = strip(_code)
if length(code) < 2
error("No code available.")
elseif code == state[:code]
error("generated code is the same as earlier.")
else
end
# check code
if occursin("CREATE TABLE", code)
note_flag = "Note: Create new table is not allowed."
error("create table is not allowed")
elseif occursin("```", code)
error("Note: code contains backtick ` which is not allowed")
elseif code[end] != ';'
error("SQL does not ending with ';'")
elseif count(';', code) > 1
error("Multiple SQL statement are not allowed")
else
end
println("\n~~~ getdata_decisionMaker() ", @__FILE__, " ", @__LINE__)
pprintln(Dict(responsedict))
return (thought=responsedict[:reasoning], code=code, success=true, errormsg=nothing)
catch e
io = IOBuffer()
showerror(io, e)
errorMsg = String(take!(io))
st = sprint((io, v) -> show(io, "text/plain", v), stacktrace(catch_backtrace()))
print("Attempt $attempt. Error occurred: $errorMsg\n$st")
println("")
noise = GeneralUtils.randstrings(3, 5)
end
end
return (thought=nothing, code=nothing, success=false,
errormsg="Failed to generate SQL after numerous attempts.")
end
""" Execute a given SQL.
# Arguments
- `sql::T<:AbstractString`
A SQL command
- `executeSQL::Function`
A connection object to a database
# Return
- `NamedTuple{(:result, :errormsg, :reward, :isterminal), Tuple{Union{Nothing, DataFrame}, String, Integer, Bool}}`
# Example
```jldoctest
julia> using LibPQ, SQLLLM
julia> function executeSQL(sql)
DBconnection = LibPQ.Connection("host=192.168.88.122 port=5432 dbname=xyz user=zyx password=1234")
result = LibPQ.execute(DBconnection, sql)
close(DBconnection)
return result
end
julia> response = SQLLLM.SQLexecution(executeSQL, sql)
```
# Signature
"""
# function SQLexecution(executeSQL::Function, sql::T
# )::NamedTuple{(:result, :success, :errormsg, :reward, :isterminal), Tuple{Union{DataFrame, Nothing}, Bool, Union{String, Nothing}, Integer, Bool}} where {T<:AbstractString}
# println("\n~~~ 1-01 ", @__FILE__, " ", @__LINE__)
# #XXX dummy SQL. use for testing
# # sql = "SELECT w.wine_name FROM wine w JOIN wine_food wf ON w.wine_id = wf.wine_id JOIN food f ON wf.food_id = f.food_id WHERE f.\"food_name\" = 'lamb';"
# # sql = " SELECT w.wine_name FROM wine w JOIN food f ON f.food_name = 'lamb' JOIN wine_food wf ON w.wine_id = wf.wine_id AND f.food_id = wf.food_id GROUP BY w.wine_name ORDER BY COUNT(DISTINCT w.wine_id) DESC;"
# # sql = " SELECT COUNT(DISTINCT wf.wine_id) FROM wine w JOIN wine_food wf ON w.wine_id = wf.wine_id JOIN food f ON wf.food_id = f.food_id WHERE f.food_name ILIKE '%lamb%'"
# #XXX use for package testing, remove when done
# # ans = "1.schilfwein zweigelt 2.cabernet sauvignon reserve limited edition"
# # ans = "There are 1500 wines that can be paired with lamb."
# # ans = "1500"
# # return (response=ans, errormsg=nothing, reward=1, isterminal=true)
# # add LIMIT to the SQL to prevent loading large data
# sql = strip(sql)
# println("\n~~~ SQL 1", @__FILE__, " ", @__LINE__)
# println(sql)
# println("\n~~~ 1-02 ", @__FILE__, " ", @__LINE__)
# if sql[end] != ';'
# errorMsg = "Error, SQL execution failed because it does not ended with ';'"
# return (result=nothing, success=false, errormsg=errorMsg, reward=0, isterminal=false)
# end
# println("\n~~~ 1-03 ", @__FILE__, " ", @__LINE__)
# if !occursin("LIMIT", sql)
# # sql = sql[1:end-1] * " LIMIT 100;"
# sql = sql[1:end-1] * " ORDER BY RANDOM() LIMIT 2;"
# end
# println("\n~~~ SQL 2", @__FILE__, " ", @__LINE__)
# println(sql)
# println("\n~~~ 1-1 ", @__FILE__, " ", @__LINE__)
# result = executeSQL(sql)
# println("\n~~~ 1-2 ", @__FILE__, " ", @__LINE__)
# df = DataFrame(result)
# println("\n~~~ raw df ", df)
# tablesize = size(df)
# println("\n~~~ df size ", tablesize)
# println("\n~~~ 6 ", @__FILE__, " ", @__LINE__)
# row = tablesize[1]
# println("\n~~~ 7 ", @__FILE__, " ", @__LINE__)
# if row == 0 # if 0 row
# errorMsg = "The resulting table has 0 row. Possible causes: 1) SQL is incorrect 2) There is no data that match your search criteria."
# return (result=nothing, success=false, errormsg=errorMsg, reward=0, isterminal=false)
# end
# println("\n~~~ 8 ", @__FILE__, " ", @__LINE__)
# df1 =
# if row > 2
# # ramdom row to pick
# df[sample(1:nrow(df), 2, replace=false), :] # random select 2 rows from df
# else
# df
# end
# println("\n~~~ SQLexecution result ", @__FILE__, " ", @__LINE__)
# println(df1)
# return (result=df1, success=true, errormsg=nothing, reward=1, isterminal=true)
# end
function SQLexecution(executeSQL::Function, sql::T
) where {T<:AbstractString}
try
#XXX dummy SQL. use for testing
# sql = "SELECT w.wine_name FROM wine w JOIN wine_food wf ON w.wine_id = wf.wine_id JOIN food f ON wf.food_id = f.food_id WHERE f.\"food_name\" = 'lamb';"
# sql = " SELECT w.wine_name FROM wine w JOIN food f ON f.food_name = 'lamb' JOIN wine_food wf ON w.wine_id = wf.wine_id AND f.food_id = wf.food_id GROUP BY w.wine_name ORDER BY COUNT(DISTINCT w.wine_id) DESC;"
# sql = " SELECT COUNT(DISTINCT wf.wine_id) FROM wine w JOIN wine_food wf ON w.wine_id = wf.wine_id JOIN food f ON wf.food_id = f.food_id WHERE f.food_name ILIKE '%lamb%'"
#XXX use for package testing, remove when done
# ans = "1.schilfwein zweigelt 2.cabernet sauvignon reserve limited edition"
# ans = "There are 1500 wines that can be paired with lamb."
# ans = "1500"
# return (response=ans, errormsg=nothing, reward=1, isterminal=true)
# add LIMIT to the SQL to prevent loading large data
sql = strip(sql)
if sql[end] == ';'
if !occursin("LIMIT", sql)
# sql = sql[1:end-1] * " LIMIT 100;"
sql = sql[1:end-1] * " ORDER BY RANDOM() LIMIT 2;"
end
else
sql = sql * ";"
end
println("\n~~~ SQLexecution() SQL: ", @__FILE__, " ", @__LINE__)
println(sql)
result = executeSQL(sql)
df = DataFrame(result)
tablesize = size(df)
row, column = tablesize
if row == 0 # if 0 row
error("The resulting table has 0 row. Possible causes: 1) You might be searching in the wrong place 2) There could be a typo in your search query.")
elseif column > 30
error("SQL execution failed. An unexpected error occurred. Please try again.")
end
df1 =
if row > 2
# ramdom row to pick
df[sample(1:nrow(df), 2, replace=false), :] # random select 2 rows from df
else
df
end
println("\n~~~ SQLexecution() result: ", @__FILE__, " ", @__LINE__)
println(df1)
return (result=df1, success=true, errormsg=nothing)
catch e
io = IOBuffer()
showerror(io, e)
errorMsg = String(take!(io))
st = sprint((io, v) -> show(io, "text/plain", v), stacktrace(catch_backtrace()))
println(errorMsg)
response = (result=nothing, success=false, errormsg=errorMsg)
return response
end
end
""" Extract content from a dataframe with LLM.
# Arguments
- `df::DataFrame`
A dataframe to be read.
- `context::Dict`
A dictionary to give LLM more context
- `text2textInstructLLM::Function`
A function that handles communication to LLM service
# Return
- `result::String`
# Signature
"""
function extractContent_dataframe(df::DataFrame, context::Dict, text2textInstructLLM::Function
)::String
tablesize = size(df)
row = tablesize[1]
column = tablesize[2]
#[PENDING] Since selected column depend on the question, there should be a better way to select column on the fly, not hard coded like this.
# df1 =
# if column > 10 # assuming if columns > 10, agent is getting wine info but the info is too much
# selectedcolumn = ["wine_id",
# "wine_name",
# "winery",
# "region",
# "country",
# "wine_type",
# "grape",
# "serving_temperature",
# "intensity",
# "sweetness",
# "tannin",
# "acidity",
# "fizziness",
# "tasting_notes"]
# df1 = df[:, selectedcolumn]
# else
# df
# end
df1 = df
dfstr = dfToString(df1)
systemmsg = """
You are an assistant that readouts the resulting table after the user executing SQL command.
At each round of conversation, the user will give you:
- User intention: ...
- Resulting table dimension: ...
- Resulting table: The resulting table after executing the user's intention.
You should then respond to the user with:
- About_resulting_table:
1) What is the resulting table represent?
- Search_summary:
1) Summarize the table's content based on the user intension in verbal English.
Here are some example:
Bad example (you are not Summarize the table content): there are 2 columns in the table i.e. "cash" and "number".
2) Do not generate additional text.
You should only respond in format as described below:
About_resulting_table: ...
Search_summary: ...
Let's begin!
"""
usermsg = """
User intention: $(context[:userintention])
Resulting table: $dfstr
"""
_prompt =
[
Dict(:name => "system", :text => systemmsg),
Dict(:name => "user", :text => usermsg)
]
# put in model format
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="llama3instruct")
prompt *= """
<|start_header_id|>assistant<|end_header_id|>
"""
for i in 1:5
response = text2textInstructLLM(prompt)
responsedict = GeneralUtils.textToDict(response, ["About_resulting_table", "Search_summary"],
rightmarker=":", symbolkey=true)
# result = dfstr
result = """
Summary: $(responsedict[:Search_summary])
More details: $dfstr
"""
if row > 2
result *= "There are many more rows, but they are truncated because there are too many of them."
end
println("\n~~~ extractContent_dataframe() ", @__FILE__, " ", @__LINE__)
println(result)
return result
end
error("Failed to get Code part.")
end
""" Extract a database's table name that mentioned in SQL
# Arguments
- `sql<:AbstractString`
SQL command
- `text2textInstructLLM::Function`
A function that handles communication to LLM service
# Return
- `tablename::Vector{String}`
A list of table name
# Example
```jldoctest
julia> using SQLLLM, UUIDs, GeneralUtils
julia> sql = "Get all rows from the \"food\" table where the description contains the word \"lamb\". Then, join this result with the \"wine_food\" table on the \"food_id\" column to get a list of wines that can be paired with lamb. Finally, group the result by the \"wine_id\" column and count the number of unique wines."
julia> function text2textInstructLLM(prompt::String)
config = Dict(
:mqttServerInfo => Dict(
:description => "mqtt server info",
:port => 1883,
:broker => "mqtt.yiem.cc"
),
:externalservice => Dict(
:text2textinstruct => Dict(
:mqtttopic => "/loadbalancer/requestingservice",
:description => "text to text service with instruct LLM",
:llminfo => Dict(:name => "llama3instruct")
),
)
)
# apply LLM specific instruct format
externalService = config[:externalservice][:text2textinstruct]
msgMeta = GeneralUtils.generate_msgMeta(
externalService[:mqtttopic],
senderName= "SQLLLM",
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|>"],
:temperature=> 0.2,
)
)
)
_response = GeneralUtils.sendReceiveMqttMsg(outgoingMsg)
response = _response[:response][:text]
return response
end
julia> result = SQLLLM.getTableNameFromSQL(sql, text2textInstructLLM)
```
# Signature
"""
function getTableNameFromSQL(sql::T, text2textInstructLLM::Function)::Vector{String} where {T<:AbstractString}
systemmsg = """
Extract table name out of the user query.
At each round of conversation, the user will give you:
Query: ...
You should then respond to the user with:
- table_name: a list of table name that the user mentioned in the query.
For example, ["color", "type"]
You must only respond in format as described below:
table_name: ["...", "...", ...]
Let's begin!
"""
usermsg = """
Query: $sql
"""
_prompt =
[
Dict(:name => "system", :text => systemmsg),
Dict(:name => "user", :text => usermsg)
]
# put in model format
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="llama3instruct")
prompt *= """
<|start_header_id|>assistant<|end_header_id|>
"""
for attempt in 1:5
try
response = text2textInstructLLM(prompt)
responsedict = GeneralUtils.textToDict(response,
["table_name"],
rightmarker=":", symbolkey=true)
response = copy(JSON3.read(responsedict[:table_name]))
return response
catch e
io = IOBuffer()
showerror(io, e)
errorMsg = String(take!(io))
st = sprint((io, v) -> show(io, "text/plain", v), stacktrace(catch_backtrace()))
println("")
println("Attempt $attempt. Error occurred: $errorMsg\n$st")
println("")
end
end
error("getTableNameFromSQL failed to generate a thought")
end
end # module llmfunction

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@@ -1,81 +0,0 @@
module type
end # module type

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@@ -1,116 +0,0 @@
module util
export getDataFrameValue, dfRowtoString, dfToString
using DataFrames
""" get a value from a dataframe row by a given key
"""
getDataFrameValue(row::DataFrameRow, key::Symbol) = row.:($key)
""" convert df row into key:value string
"""
function dfRowtoString(row::DataFrameRow)::String
str = ""
for key in keys(row)
value = getDataFrameValue(row, key)
str *= "$key: $value, "
end
result = str[1:end-2] # remove ", " at the end of row
return result
end
""" convert df table into string
"""
function dfToString(df::DataFrame)
dfstr = ""
for (i, row) in enumerate(eachrow(df))
rowstr = dfRowtoString(row)
dfstr *= "$i) $rowstr\n"
end
return dfstr
end
end # module util

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@@ -1,305 +0,0 @@
using Revise
using LibPQ, JSON3, PrettyPrinting, UUIDs, DataFrames, DataStructures, Base64
using GeneralUtils, SQLLLM
config = copy(JSON3.read("config.json"))
function executeSQL(sql::T) where {T<:AbstractString}
DBconnection = LibPQ.Connection("host=192.168.88.12 port=10201 dbname=wineDB user=yiemtechnologies password=yiemtechnologies@Postgres_0.0")
result = LibPQ.execute(DBconnection, sql)
close(DBconnection)
return result
end
function text2textInstructLLM(prompt::String)
msgMeta = GeneralUtils.generate_msgMeta(
config[:externalservice][:text2textinstruct][:mqtttopic];
msgPurpose="inference",
senderName="yiemagent",
senderId=string(uuid4()),
receiverName="text2textinstruct",
mqttBrokerAddress=config[:mqttServerInfo][:broker],
mqttBrokerPort=config[:mqttServerInfo][:port],
)
outgoingMsg = Dict(
:msgMeta => msgMeta,
:payload => Dict(
:text => prompt,
:kwargs => Dict(
:num_ctx => 20480,
:temperature => 0.2,
)
)
)
_response = GeneralUtils.sendReceiveMqttMsg(outgoingMsg; timeout=120)
response = _response[:response][:text]
return response
end
function executeSQLVectorDB(sql)
DBconnection = LibPQ.Connection("host=192.168.88.12 port=10203 dbname=SQLVectorDB user=yiemtechnologies password=yiemtechnologies@Postgres_0.0")
result = LibPQ.execute(DBconnection, sql)
close(DBconnection)
return result
end
function addSQLVectorDB(state)
# get embedding of the query
query = [state[:thoughtHistory][:question]]
msgMeta = GeneralUtils.generate_msgMeta(
config[:externalservice][:text2textinstruct][:mqtttopic];
msgPurpose= "embedding",
senderName= "yiemagent",
senderId= string(uuid4()),
receiverName= "text2textinstruct",
mqttBrokerAddress= config[:mqttServerInfo][:broker],
mqttBrokerPort= config[:mqttServerInfo][:port],
)
outgoingMsg = Dict(
:msgMeta=> msgMeta,
:payload=> Dict(
:text=> query
)
)
response = GeneralUtils.sendReceiveMqttMsg(outgoingMsg)
embedding = response[:response][:embeddings][1]
# check whether there is close enough vector already store in vectorDB. if no, add, else skip
sql =
"""
SELECT *, embedding <-> '$embedding' as distance
FROM sql_statement_repository
ORDER BY distance LIMIT 1;
"""
response = executeSQLVectorDB(sql)
df = DataFrame(response)
row, col = size(df)
distance = row == 0 ? Inf : df[1, :distance]
if row == 0 || distance > 10 # no close enough SQL stored in the database
latestKey, _ = GeneralUtils.findHighestIndexKey(state[:thoughtHistory], :action_input)
_sqlStatement = state[:thoughtHistory][latestKey]
if occursin("SELECT", _sqlStatement) # make sure it is an SQL statement before adding into DB
sqlStatementBase64 = base64encode(_sqlStatement)
sqlStatement = replace(_sqlStatement, "'"=>"")
sql =
"""
INSERT INTO sql_statement_repository (question, sql_statement, sql_statement_base64, embedding) VALUES ('$query', '$sqlStatement', '$sqlStatementBase64', '$embedding');
"""
_ = executeSQLVectorDB(sql)
println("--> added new SQL statement to vectorDB ", @__FILE__, " ", @__LINE__)
println(sqlStatement)
end
end
end
function querySQLVectorDB(state)
# provide similarSQL at the first time thinking only
latestKey, _ = GeneralUtils.findHighestIndexKey(state[:thoughtHistory], :action_input)
if latestKey === nothing
# get embedding of the query
query = [state[:thoughtHistory][:question]]
msgMeta = GeneralUtils.generate_msgMeta(
config[:externalservice][:text2textinstruct][:mqtttopic];
msgPurpose= "embedding",
senderName= "yiemagent",
senderId= string(uuid4()),
receiverName= "text2textinstruct",
mqttBrokerAddress= config[:mqttServerInfo][:broker],
mqttBrokerPort= config[:mqttServerInfo][:port],
)
outgoingMsg = Dict(
:msgMeta=> msgMeta,
:payload=> Dict(
:text=> query
)
)
response = GeneralUtils.sendReceiveMqttMsg(outgoingMsg)
embedding = response[:response][:embeddings][1]
# check whether there is close enough vector already store in vectorDB. if no, add, else skip
sql =
"""
SELECT *, embedding <-> '$embedding' as distance
FROM sql_statement_repository
ORDER BY distance LIMIT 1;
"""
response = executeSQLVectorDB(sql)
df = DataFrame(response)
row, col = size(df)
distance = row == 0 ? Inf : df[1, :distance]
if row != 0 && distance < 100
# if there is usable SQL, return it.
sqlStatementBase64 = df[1, :sql_statement_base64]
sqlStatement = String(base64decode(sqlStatementBase64))
return sqlStatement
else
return nothing
end
end
return nothing
end
# query = Dict(:text=> "How many wines from France do you have that can be paired with lamb?")
# query = "How many wines are from United States?"
query = "retailer: Yiem, wine_type: red, sweetness: 1-2, intensity: 4-5, wine price: 20-40"
# query = "wine_type: white, country: United States, sweetness: 1-2, tannin: 3, food to be served with wine: pizza"
# query = "wine_type: white, country: Austria, food to be served with wine: pork"
# query = "wine price: less than 25, wine_type: rose, country: France, sweetness: 2, tannin: 3, food to be served with wine: pizza"
# query = Dict(:text=> "wine_type: white, country: France, sweetness: 1")
result = SQLLLM.query(query, executeSQL, text2textInstructLLM;
addSQLVectorDB=addSQLVectorDB,
querySQLVectorDB=querySQLVectorDB)
println(result)
error(555)
"""
CREATE TABLE sql_statement_repository (id bigserial PRIMARY KEY, question text, sql_statement text, sql_statement_base64 text, embedding vector(768));
SELECT * FROM wine WHERE wine_type = 'red' AND country = 'France' AND sweetness >= 1 AND sweetness <= 2 AND intensity >= 4 AND intensity <= 5 ORDER BY RANDOM() LIMIT 2;
"""
# sql =
# """
# SELECT COUNT(*) FROM wine_food JOIN wine ON wine_food.wine_id = wine.wine_id JOIN food ON wine_food.food_id = food.food_id WHERE food.description LIKE '%lamb%';
# """
# response = SQLLLM.SQLexecution(executeSQL, sql);
# result = response[:result]
# userintention =
# """
# Since this is the first round, there's no execution error to analyze. However, we can think about how to improve the query to achieve the desired result.
# 1) We need to join the wine_food table with the food table on the food_id column.\n 2) We want to filter the results to include only wines that can be paired with lamb by checking if the food_name or additional_search_term matches 'lamb'.\n 3) We'll use a COUNT(DISTINCT) function to count the number of unique wine_id values that meet the condition.
# """
# userintention_dict = Dict(:userintention=>userintention)
# sql =
# """
# SELECT DISTINCT wf.wine_id, COUNT(wf.wine_id) AS wine_count FROM wine_food wf JOIN food f ON wf.food_id = f.food_id WHERE f.description LIKE '%lamb%' GROUP BY wf.wine_id ORDER BY wine_count DESC;
# """
# response = SQLLLM.SQLexecution(executeSQL, sql);
# result = response[:result]
# userintention =
# """
# 1. Use TABLEINFO function to get information about the columns in the wine_food table.\n2. Use GETDATA function to retrieve data from the wine_food table that contains information about wines paired with lamb.\n3. Join the retrieved data with the wine table on the wine_id column to get information about the wines that can be paired with lamb.\n4. Count the number of unique wines associated with lamb through the wine_food junction table. 1. Use TABLEINFO function to get information about the columns in the wine_food table.\n2. Use GETDATA function to retrieve data from the wine_food table that contains information about wines paired with lamb.\n3. Join the retrieved data with the wine table on the wine_id column to get information about the wines that can be paired with lamb.\n4. Count the number of unique wines associated with lamb through the wine_food junction table.
# """
# userintention_dict = Dict(:userintention=>userintention)
# sql =
# """
# SELECT COUNT(DISTINCT w.wine_name) FROM (SELECT * FROM wine_food wf JOIN food f ON wf.food_id = f.food_id WHERE f.food_name = 'lamb') AS temp_table JOIN wine w ON temp_table.wine_id = w.wine_id;
# """
# response = SQLLLM.SQLexecution(executeSQL, sql);
# result = response[:result]
# userintention =
# """
# 1. Join the wine_food table with the food table using the food_id column in both tables.\n2. Filter the results to only include rows where the associated food is 'lamb'.\n3. Join the resulting table with the wine table using the wine_id column in both tables.\n4. Count the number of unique wines that can be paired with lamb. 1. Join the wine_food table with the food table using the food_id column in both tables.\n2. Filter the results to only include rows where the associated food is 'lamb'.\n3. Join the resulting table with the wine table using the wine_id column in both tables.\n4. Count the number of unique wines that can be paired with lamb.
# """
# userintention_dict = Dict(:userintention=>userintention)
# sql =
# """
# SELECT * FROM wine WHERE country = 'France' AND sweetness = 1 AND wine_type = 'white' LIMIT 2;
# """
# response = SQLLLM.SQLexecution(executeSQL, sql);
# result = response[:result]
# userintention =
# """
# "- Identify the primary key in the wine table.\n- Filter the results to only include wines with type white, from France and level of sweetness 1.\n- Retrieve the information about wines that match the specified criteria. - Identify the primary key in the wine table.\n- Filter the results to only include wines with type white, from France and level of sweetness 1.\n- Retrieve the information about wines that match the specified criteria.
# """
# userintention_dict = Dict(:userintention=>userintention)
# readout = SQLLLM.extractContent_dataframe(result, userintention_dict, text2textInstructLLM)
# println("runtest.jl is done")
# sql =
# """
# SELECT * FROM wine WHERE country = 'France' AND sweetness = 1 AND wine_type = 'white' LIMIT 2;
# """
# _result = executeSQL(sql)
# df2 = DataFrame(_result)
# state = Dict(
# :isterminal => true,
# :lesson => nothing,
# :reward => 1,
# :evaluation =>
# "The user's question is to search the database for wines that have a type of \"white\", are from \"France\", and have a sweetness level of 1. The thought is correct in identifying the conditions needed to filter the wine table. The action taken is to execute a SQL query to retrieve the desired data, which is also correct. The observation provides a search summary and two search results that match the user's question. Each result includes details about the wine such as ID, name, brand, manufacturer, region, country, type, grape variety, serving temperature, intensity, sweetness, tannin, and acidity.",
# :accepted_as_answer => "Yes",
# :thoughtHistory =>
# OrderedDict{Symbol, Any}(:question => "Search the database for wine_type: white, country: France, sweetness: 1", :thought_1 => "The user wants to search the database for wines that have a type of \"white\", are from \"France\", and have a sweetness level of 1. To achieve this, we need to filter the wine table based on these conditions.", :action_name_1 => "GETDATA", :action_input_1 => "SELECT * FROM wine WHERE wine.wine_type = 'white' AND wine.country = 'France' AND wine.sweetness = 1;", :observation_1 => "\"Search summary: The resulting table represents wines.\\nSearch result: 1) wine_id: 5b6b6df9-d87c-4f33-8995-7249c2ecc917, wine_name: corton-charlemagne grand cru, brand: domaine des croix, manufacturer: domaine des croix, region: bourgogne, country: France, wine_type: white, grape_variety: cote de beaune blanc, serving_temperature: 11 to 13 Celsius, intensity: 4, sweetness: 1, tannin: missing, acidity: 3, fizziness: missing\\n2) wine_id: 1ad27d16-ef64-4907-acf1-40631630c143, wine_name: puligny-montrachet 1er cru 'les demoiselles', brand: amiot guy, manufacturer: amiot guy, region: bourgogne, country: France, wine_type: white, grape_variety: cote de beaune blanc, serving_temperature: 11 to 13 Celsius, intensity: 4, sweetness: 1, tannin: missing, acidity: 3, fizziness: missing\\n\\n\""),
# :evaluationscore => 9,
# :select => nothing,
# :suggestion => "None")
# result = SQLLLM.evaluator(state, text2textInstructLLM)
println("runtest.jl done")

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@@ -1,88 +0,0 @@
using Revise
using LibPQ, JSON3, PrettyPrinting, UUIDs, DataFrames, DataStructures, Dates, MQTTClient, Random
using SQLLLM, GeneralUtils
function executeSQL(sql)
DBconnection = LibPQ.Connection("host=192.168.88.12 port=5433 dbname=SQLVectorDB user=yiemtechnologies@gmail.com password=yiem@Postgres_0.0")
result = LibPQ.execute(DBconnection, sql)
close(DBconnection)
return result
end
sql =
"""
CREATE TABLE items (id bigserial PRIMARY KEY, embedding vector(3));
"""
result = executeSQL(sql)
sql =
"""
INSERT INTO items (embedding) VALUES ('[[1,2,3], [1,2,3], [1,2,3]]'), ('[4,5,6]');
"""
result = executeSQL(sql)
sql =
"""
SELECT * FROM items ORDER BY embedding <-> '[3,1,2]' LIMIT 1;
"""
result = executeSQL(sql)
df = DataFrame(result)
config = copy(JSON3.read("config.json"))
msgMeta = GeneralUtils.generate_msgMeta(
config[:externalservice][:text2textinstruct][:mqtttopic];
msgPurpose= "embedding",
senderName= "yiemagent",
senderId= string(uuid4()),
receiverName= "text2textinstruct",
mqttBrokerAddress= "mqtt.yiem.cc",
mqttBrokerPort= 1883,
)
text = ["hello world"]
outgoingMsg = Dict(
:msgMeta=> msgMeta,
:payload=> Dict(
:text=> text,
:kwargs=> Dict(
:max_tokens=> 2048,
:stop=> ["<|eot_id|>"],
:temperature=> 0.2,
)
)
)
response = GeneralUtils.sendReceiveMqttMsg(outgoingMsg; timeout=120)

View File

@@ -1,23 +0,0 @@
using Revise
function testf(a)::NamedTuple{(:a, :b), Tuple{Union{Nothing, Int}, Int}}
if a == 1
return (a=nothing, b=5)
else
return (a=5, b=5)
end
end
q = testf(1)
w = testf(2)

View File

@@ -1,8 +0,0 @@
table_name,comment
customer,"The customer table stores information about customers. It includes details such as first name, last name, display name, username, password, gender, country, telephone number, email, birthdate, additional_search_term, other attributes (in JSON format) and a description."
wine,"The wine table stores information about different wines. It includes details namely id, name, brand, manufacturer, region, country, wine_type, grape_variety, serving_temperature, intensity, sweetness, tannin, acidity, fizziness, additional_search_term, other attributes (in JSON format) and a description."
wine_food,"The wine_food table represents the association between wines and food items. It establishes a many-to-many relationship, allowing us to link specific wines with various food items."
food,"The food table represents various food items. It stores information related to food names, country of origin, taste attributes (spiciness, sweetness, sourness, savoriness, and bitterness), serving temperature, additional_search_term, other attributes (in JSON format) and a description."
retailer,"The retailer table stores information about different retailers. It includes details related to retailer names, usernames, passwords, addresses, contact persons, telephone numbers, email addresses, additional_search_term, other attributes (in JSON format) and a description."
retailer_wine,"The retailer_wine table represents the relationship between retailers and wines. It stores information about the wines available from which retailers, including vintage, their price, and the currency."
retailer_food,"The retailer_food table represents the relationship between retailers and food items. It stores information about the food items available from which retailers, including their price and the currency."
1 table_name comment
2 customer The customer table stores information about customers. It includes details such as first name, last name, display name, username, password, gender, country, telephone number, email, birthdate, additional_search_term, other attributes (in JSON format) and a description.
3 wine The wine table stores information about different wines. It includes details namely id, name, brand, manufacturer, region, country, wine_type, grape_variety, serving_temperature, intensity, sweetness, tannin, acidity, fizziness, additional_search_term, other attributes (in JSON format) and a description.
4 wine_food The wine_food table represents the association between wines and food items. It establishes a many-to-many relationship, allowing us to link specific wines with various food items.
5 food The food table represents various food items. It stores information related to food names, country of origin, taste attributes (spiciness, sweetness, sourness, savoriness, and bitterness), serving temperature, additional_search_term, other attributes (in JSON format) and a description.
6 retailer The retailer table stores information about different retailers. It includes details related to retailer names, usernames, passwords, addresses, contact persons, telephone numbers, email addresses, additional_search_term, other attributes (in JSON format) and a description.
7 retailer_wine The retailer_wine table represents the relationship between retailers and wines. It stores information about the wines available from which retailers, including vintage, their price, and the currency.
8 retailer_food The retailer_food table represents the relationship between retailers and food items. It stores information about the food items available from which retailers, including their price and the currency.

View File

@@ -2,7 +2,7 @@ module interface
export decisionMaker, evaluator, reflector, transition, query
using LibPQ, DataStructures, JSON3, UUIDs, PrettyPrinting
using LibPQ, DataStructures, JSON3, UUIDs, PrettyPrinting, Dates
using GeneralUtils, LLMMCTS
using ..util, ..llmfunction
@@ -136,42 +136,39 @@ function decisionMaker(state::T1, context, text2textInstructLLM::Function,
You are a helpful assistant that find the data from a database to satisfy the user's query.
You are also eager to improve your helpfulness.
For your information:
- Observation: Result of the immediately preceding action
At each round of conversation, the user will give you the current situation:
User Query: ...
Example: ...
Your Q&A: ...
Your work progress: ...
Evaluation: Evaluation of the latest action and observation
Suggestion: ...
Evaluation: Evaluation of the immediately preceding action and observation
Suggestion: Suggestion for the immediately preceding action and observation
You must follow the following guidelines:
- Keep SQL queries focused only on the provided information.
You should follow the following guidelines:
- Do not create any table in the database
- Column name can be the same in different tables. Refer to column comments to get more details by using TABLEINFO function
- A junction table can be used to link tables together. Another use case is for filtering data.
- If you can't find a single table that can be used to answer the user's query, try joining multiple tables to see if you can obtain the answer.
- If you are unable to find the requested information, kindly inform the user, "The current data in our database does not provide the specific answer to your query".
- Text information in the database usually stored in lower case. If your search returns empty, try using lower case to search.
You should then respond to the user with interleaving Understanding, Reasoning, Plan, Action:
1) Understanding:
- State your understanding about the current situation.
2) Reasoning:
- State your step by step reasoning about the current situation.
3) Plan: Given the current circumstances, outline a detailed, step-by-step plan to accomplish the task. Be specific.
4) Action_name (Must be aligned with your plan): Can be one of the following functions:
- TABLEINFO[list_of_table_name], which you can use to get the data type of a table column. "list_of_table_name" is a list of table name you want to get info. e.g. TABLEINFO["table name 1", "table name 2"]
- GETDATA[SQL], which you can use to get the data from the database. "SQL" is a single SQL command to be executed against the database.
1) Comprehension:
- State your comprehension about the current situation.
2) Plan: Given the current circumstances, outline a detailed, step-by-step plan to accomplish the task. Be specific.
3) Action_name (Must be aligned with your plan): Can be one of the following functions:
- 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.
For more effective text search, it's necessary to use case-insensitivity and the ILIKE operator.
Do not wrap the SQL as it will be executed against the database directly and SQL must be ended with ';'.
5) Action_input: Input to the action
6) Observation: Result of the immediately preceding action
4) Action_input: Input to the action
You should only respond in format as described below:
Understanding: ...
Reasoning: ...
Comprehension: ...
Plan: ...
Action_name: ...
Action_input: ...
@@ -219,82 +216,127 @@ function decisionMaker(state::T1, context, text2textInstructLLM::Function,
]
# 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)
try
response = text2textInstructLLM(prompt)
println("\nSQL decisionMaker() rawresponse: ", response)
header = ["Understanding", "Reasoning", "Plan", "Action_name", "Action_input", "Observation"]
# detect if there are more than 1 key per categories
count = GeneralUtils.countGivenWords(response, header)
if sum(count) > length(header)
error("\nSQL decisionMaker() duplicated keywords", @__FILE__, " ", @__LINE__)
# LLM tends to generate observation given that it is in the input
response =
if occursin("observation:", response)
string(split(response, "observation:")[1])
elseif occursin("Observation:", response)
string(split(response, "Observation:")[1])
elseif occursin("observation_", response)
string(split(response, "observation_")[1])
elseif occursin("Observation_", response)
string(split(response, "Observation_")[1])
else
response
end
# textToDict() search for action_input
responsedict = GeneralUtils.textToDict(response, header,
rightmarker=":", symbolkey=true, lowercasekey=true)
# sometime LLM output something like **Comprehension**: which is not expected
response = replace(response, "**"=>"")
response = replace(response, "***"=>"")
delete!(responsedict, :observation)
# remove backticks Error occurred: MethodError: no method matching occursin(::String, ::Vector{String})
if occursin("```", responsedict[:action_input])
sql = GeneralUtils.extract_triple_backtick_text(responsedict[:action_input])[1]
if sql[1:4] == "sql\n"
sql = sql[5:end]
end
sql = split(sql, ';') # some time there are comments in the sql
sql = sql[1] * ';'
responsedict[:action_input] = sql
end
toollist = ["TABLEINFO", "GETDATA"]
if responsedict[:action_name] toollist
error("SQL decisionMaker() didn't use the given functions ", @__FILE__, " ", @__LINE__)
end
for i in toollist
if occursin(i, responsedict[:action_input])
error("Action_name is in action_input which is not allowed.")
end
end
for i [:understanding, :reasoning, :plan, :action_name, :action_input]
if length(JSON3.write(responsedict[i])) == 0
error("$i is empty ", @__FILE__, " ", @__LINE__)
end
end
# check if there are more than 1 key per categories
for i [:understanding, :reasoning, :plan, :action_name, :action_input]
matchkeys = GeneralUtils.findMatchingDictKey(responsedict, i)
if length(matchkeys) > 1
error("DecisionMaker has more than one key per categories")
end
end
state[:decisionMaker] = responsedict
return responsedict
catch e
io = IOBuffer()
showerror(io, e)
errorMsg = String(take!(io))
st = sprint((io, v) -> show(io, "text/plain", v), stacktrace(catch_backtrace()))
println("")
println("\n~~~ SQLLLM decisionMaker() Attempt $attempt. Error occurred: $errorMsg\n$st ", @__FILE__, " ", @__LINE__)
println("")
# some time LLM output Plan_1: so we need to detect and replace topic numbering
regex = r"_[0-1000]+:"
matches = collect(eachmatch(regex, response))
for m in matches
response = replace(response, string(m.match)=>":")
end
if occursin("NULL", response)
errornote = "\nSQL decisionMaker() NULL response is not allowed"
println("Attempt $attempt $errornote ", @__FILE__, ":", @__LINE__, " $(Dates.now())")
continue
end
header = ["Comprehension:", "Plan:", "Action_name:", "Action_input:"]
dictkey = ["comprehension", "plan", "action_name", "action_input"]
# detect if there are more than 1 key per categories
wordcount = GeneralUtils.countGivenWords(response, header)
duplicateKeywordFlag = false
for (i, v) in enumerate(wordcount)
keyword = header[i]
keywordNumber = v
if keywordNumber > 1
errornote = "\nSQL query has duplicated keyword, $keyword"
println("Attempt $attempt $errornote ", @__FILE__, ":", @__LINE__, " $(Dates.now())")
duplicateKeywordFlag = true
break
end
end
duplicateKeywordFlag == true ? continue : nothing
# check whether response has all header
kw = []
# use for loop and detect_keyword function to get the exact variation of each keyword in the text then push to kw list
for keyword in header
detected = GeneralUtils.detect_keyword(keyword, response)
push!(kw, detected)
end
if nothing kw
println("Some keywords are missing, Required keywords=$header, Response keywords=$kw ", @__FILE__, ":", @__LINE__, " $(Dates.now())")
continue # try again next loop
end
# textToDict() search for action_input
responsedict = GeneralUtils.textToDict(response, header;
dictKey=dictkey, symbolkey=true)
delete!(responsedict, :observation)
# remove backticks Error occurred: MethodError: no method matching occursin(::String, ::Vector{String})
if occursin("```", responsedict[:action_input])
sql = GeneralUtils.extract_triple_backtick_text(responsedict[:action_input])[1]
if sql[1:4] == "sql\n"
sql = sql[5:end]
end
sql = split(sql, ';') # some time there are comments in the sql
sql = sql[1] * ';'
responsedict[:action_input] = sql
end
toollist = ["TABLEINFO", "GETDATA"]
if responsedict[:action_name] toollist
errornote = "\nYou must only use the given functions"
println("Attempt $attempt $errornote ", @__FILE__, ":", @__LINE__, " $(Dates.now())")
continue
end
for i in toollist
if occursin(i, responsedict[:action_input])
errornote = "\n action_name is in action_input which is not allowed."
println("Attempt $attempt $errornote ", @__FILE__, ":", @__LINE__, " $(Dates.now())")
continue
end
end
for i [:comprehension, :plan, :action_name, :action_input]
if length(JSON3.write(responsedict[i])) == 0
errornote = "\n $i is empty"
println("Attempt $attempt $errornote ", @__FILE__, ":", @__LINE__, " $(Dates.now())")
continue
end
end
# check if there are more than 1 key per categories
for i [:comprehension, :plan, :action_name, :action_input]
matchkeys = GeneralUtils.findMatchingDictKey(responsedict, i)
if length(matchkeys) > 1
errornote = "\n $i has more than one key"
println("Attempt $attempt $errornote ", @__FILE__, ":", @__LINE__, " $(Dates.now())")
continue
end
end
state[:decisionMaker] = responsedict
return responsedict
end
error("DecisionMaker failed to generate a thought ", response)
error("DecisionMaker failed to generate a thought \n", response)
end
""" Assigns a scalar value to each new child node to be used for selec-
@@ -317,141 +359,9 @@ julia>
# Signature
"""
function evaluator(state::T1, text2textInstructLLM::Function;
insertSQLVectorDB::Union{Function, Nothing}=nothing
function evaluator(state::T1, text2textInstructLLM::Function
) where {T1<:AbstractDict}
# systemmsg =
# """
# 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.
# Definitions:
# "question" is the user's question.
# "thought" is step-by-step reasoning about the current situation.
# "plan" is what to do to complete the task from the current situation.
# "action" is the taken action which can be one of the following functions:
# 1) TABLEINFO[list_of_table_name], which you can use to get the data type of a table column.
# 2) GETDATA[instruction], which you can use to get the data from the database.
# 3) ANSWERBOX[answer], which returns your answer to the user. "answer" is your answer to the user question.
# "observation" is result of the action in JSON format.
# At each round of conversation, the user will give you:
# Context: ...
# Trajectories: ...
# You should then respond to the user with:
# - Original_question: Repeat the original question.
# - Evaluation (you must evaluate all of the following points):
# 1) Analyze the trajectories of a solution to answer the user's original question.
# 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.
# 2) How the observation addresses the original question?
# 3) Provide suggestion (if applicable).
# - Score: Correctness score s where s is an integer from 0 to 10.
# - Accepted_as_answer: Decide whether to accept the observation as the answer to the original question.
# 1) The accepted observation should directly answer the question.
# 2) The possible responses are either 'Yes' or 'No.'
# You should only respond in JSON format as described below:
# {"original_question": ..., "evaluation": ..., "score": ..., "accepted_as_answer": ...}
# Here are correct trajectory 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": "I should check our inventory first to see if we have the one our customer wants.",
# "action_1": {"name": "inventory", "input": "a sedan with an automatic driving feature"},
# "observation_1": "Yiem Model A, Conez Model B"
# }
# assistant:
# {
# "original_question": "the user is looking for a sedan with an automatic driving feature.",
# "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.",
# "score": 10,
# "accepted_as_answer": "Yes"
# }
# user:
# {
# "question": "How many cars that fitted with a stereo we have?",
# "thought_1": "I have many types of car in my inventory, each with diverse features.",
# "thought_3": "I should check our inventory.",
# "action_1": {"name": "inventory", "input": "vehicle with a stereo"},
# "observation_1": "2015 Conez truck."
# }
# assistant:
# {
# "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.”,
# "score": 5,
# "accepted_as_answer": "No"
# }
# Here are incorrect trajectory examples:
# user:
# {
# "question": "I'm looking for a sedan with an automatic driving feature. Do you have it in stock?",
# "thought_1": "I have many types of sedans in my inventory, each with diverse features.",
# "thought_2": "I will use SEARCHINTERNET function to search for the car.",
# "action_1": {"name": "SEARCHINTERNET", "input": "a sedan with an automatic driving feature.},
# "observation_1": "Teza Model A, Teza Model B"
# }
# assistant:
# {
# "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.",
# "score": 0,
# "accepted_as_answer": "No"
# }
# Let's begin!
# """
# systemmsg =
# """
# 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.
# Definitions:
# "question" is the user's question.
# "thought" is step-by-step reasoning about the current situation.
# "plan" is what to do to complete the task from the current situation.
# “action_name” is the name of the action taken, which can be one of the following functions:
# 1) CHATBOX[text], which you can use to talk with the user. "text" is in verbal English.
# 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".
# "action_input" is the input to the action
# "observation" is result of the action.
# At each round of conversation, the user will give you:
# Context: ...
# Trajectories: ...
# You should then respond to the user with:
# - original_question: Repeat the original question.
# - evaluation (you must evaluate all of the following points in a single paragraph):
# 1) Analyze the trajectories of a solution to answer the user's original question.
# 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.
# 2) How the observation addresses the question exactly?
# - accepted_as_answer: Decide whether to accept the observation as the answer to the original question.
# 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.'
# - score: Correctness score s where s is a single integer between 0 to 9.
# 1) 0 means the trajectories are incorrect.
# 2) 9 means the trajectories are correct, and the observation's content directly answers the question.
# - suggestion: if accepted_as_answer is "No", provide suggestion.
# You should only respond in format as described below:
# original_question: ...
# evaluation: ...
# accepted_as_answer: ...
# score: ...
# suggestion: ...
# Let's begin!
# """
systemmsg =
"""
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.
@@ -462,16 +372,22 @@ function evaluator(state::T1, text2textInstructLLM::Function;
"reasoning" is agent's step-by-step reasoning about the current situation
"plan" is agent's plan to complete the task from the current situation
"action_name" is the name of the action taken, which can be one of the following functions:
- TABLEINFO[list_of_table_name], which you can use to get the data type of a table column. "list_of_table_name" is a list of table name you want to get info. e.g. TABLEINFO["table name 1", "table name 2"]
- GETDATA[SQL], which you can use to get the data from the database. "SQL" is the single SQL command to be executed against the database.
- 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.
For more effective text search, it's necessary to use case-insensitivity and the ILIKE operator.
Do not wrap the SQL as it will be executed against the database directly and SQL must be ended with ';'.
"action_input" is the input to the action
"observation" is result of the preceding immediate action
At each round of conversation, the user will give you:
Context: ...
<At each round of conversation, the user will give you>
Trajectory: ...
Error_note: error note from your previous attempt
</At each round of conversation, the user will give you>
You should then respond to the user with:
<You must follow the following guidelines>
- When the search returns no result, validate whether the SQL query makes sense before accepting it as a valid answer.
</You must follow the following guidelines>
<You should then respond to the user with>
1) Trajectory_evaluation: Analyze the trajectory of a solution to answer the user's original question.
- Evaluate the correctness of each section and the overall trajectory based on the given question.
- Provide detailed reasoning and analysis, focusing on the latest thought, action, and observation.
@@ -479,28 +395,31 @@ function evaluator(state::T1, text2textInstructLLM::Function;
- Do not generate additional thoughts or actions.
2) Answer_evaluation:
- Focus only on the matter mentioned in the question and comprehensively analyze how the latest observation's details addresses the question
- State your rationale
3) Accepted_as_answer: Decide whether the latest observation's content answers the question. Can be "Yes" or "No"
Bad example (The observation didn't answers the question):
question: Find cars with 4 wheels.
observation: There are 2 cars in the table.
observation: There are an apple in the table.
Good example (The observation answers the question):
question: Find cars with a stereo.
observation: There are 1 cars in the table. 1) brand: Toyota, model: yaris, color: black.
4) Score: Correctness score s where s is a single integer between 0 to 9.
Score guideline:
For example:
- 0 indicates that both the trajectory is incorrect, failed or errors and the observation is incorrect or failed
- 4 indicates that the trajectory are correct but the observation is incorrect or failed
- 5 indicates that the trajectory are correct, but no results are returned.
- 6 indicates that the trajectory are correct, but the observation's content doesn't directly answer the question
- 8 indicates that both the trajectory are correct, and the observation's content directly answers the question.
- 9 indicates a perfect perfomance. Both the trajectory are correct, and the observation's content directly answers the question, surpassing your expectations.
5) Suggestion: if accepted_as_answer is "No", provide suggestion.
</You should then respond to the user with>
You should only respond in format as described below:
<You should only respond in format as described below>
Trajectory_evaluation: ...
Answer_evaluation: ...
Accepted_as_answer: ...
Score: ...
Suggestion: ...
</You should only respond in format as described below>
Let's begin!
"""
@@ -510,10 +429,15 @@ function evaluator(state::T1, text2textInstructLLM::Function;
thoughthistory *= "$k: $v\n"
end
for attempt in 1:5
errornote = ""
for attempt in 1:10
errorFlag = false
usermsg =
"""
Trajectory: $thoughthistory
Error_note: $errornote
"""
_prompt =
@@ -523,64 +447,67 @@ function evaluator(state::T1, text2textInstructLLM::Function;
]
# 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)
responsedict = GeneralUtils.textToDict(response,
["Trajectory_evaluation", "Answer_evaluation", "Accepted_as_answer", "Score", "Suggestion"];
rightmarker=":", symbolkey=true, lowercasekey=true)
header = ["Trajectory_evaluation:", "Answer_evaluation:", "Accepted_as_answer:", "Score:", "Suggestion:"]
dictkey = ["trajectory_evaluation", "answer_evaluation", "accepted_as_answer", "score", "suggestion"]
# check if dict has all required value
trajectoryevaluation_text::AbstractString = responsedict[:trajectory_evaluation]
answerevaluation_text::AbstractString = responsedict[:answer_evaluation]
# responsedict[:score] = replace(responsedict[:score], r"\(.*?\)" => "") # remove (...) if there is any.
responsedict[:score] = responsedict[:score][1] # some time "6\nThe trajectories are incomplete" is generated but I only need the number.
responsedict[:score] = parse(Int, responsedict[:score]) # convert string "5" into integer 5
score::Integer = responsedict[:score]
accepted_as_answer::AbstractString = responsedict[:accepted_as_answer]
suggestion::AbstractString = responsedict[:suggestion]
response = text2textInstructLLM(prompt)
if accepted_as_answer ["Yes", "No"] # [PENDING] add errornote into the prompt
error("generated accepted_as_answer has wrong format")
# sometime LLM output something like **Comprehension**: which is not expected
response = replace(response, "**"=>"")
response = replace(response, "***"=>"")
# make sure every header is in the response
for i in header
detected = GeneralUtils.detect_keyword(i, response)
if detected === nothing
errornote = "Your previous response didn't provide $i"
errorFlag = true
end
# add to state here instead to in transition() because the latter causes julia extension crash (a bug in julia extension)
state[:evaluation] = "$(responsedict[:trajectory_evaluation]) $(responsedict[:answer_evaluation])"
state[:evaluationscore] = responsedict[:score]
state[:accepted_as_answer] = responsedict[:accepted_as_answer]
state[:suggestion] = responsedict[:suggestion]
# mark as terminal state when the answer is achieved
if accepted_as_answer == "Yes"
# mark the state as terminal state because the evaluation say so.
state[:isterminal] = true
# evaluation score as reward because different answers hold different value for the user.
state[:reward] = responsedict[:score]
end
println("\n~~~ Evaluator() ", @__FILE__, " ", @__LINE__)
pprintln(Dict(responsedict))
return responsedict[: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("")
println("Attempt $attempt. Error occurred: $errorMsg\n$st")
println("")
end
end
error("evaluator failed to generate an evaluation")
end
if errorFlag
continue # skip to the next iteration
end
responsedict = GeneralUtils.textToDict(response, header;
dictKey=dictkey, symbolkey=true)
responsedict[:score] = responsedict[:score][1] # some time "6\nThe trajectories are incomplete" is generated but I only need the number.
try
responsedict[:score] = parse(Int, responsedict[:score]) # convert string "5" into integer 5
catch
continue
end
accepted_as_answer::AbstractString = responsedict[:accepted_as_answer]
if accepted_as_answer ["Yes", "No"] # [PENDING] add errornote into the prompt
error("generated accepted_as_answer has wrong format")
end
# add to state here instead to in transition() because the latter causes julia extension crash (a bug in julia extension)
state[:evaluation] = "$(responsedict[:trajectory_evaluation]) $(responsedict[:answer_evaluation])"
state[:evaluationscore] = responsedict[:score]
state[:accepted_as_answer] = responsedict[:accepted_as_answer]
state[:suggestion] = responsedict[:suggestion]
# mark as terminal state when the answer is achieved
if accepted_as_answer == "Yes"
# mark the state as terminal state because the evaluation say so.
state[:isterminal] = true
# evaluation score as reward because different answers hold different value for the user.
state[:reward] = responsedict[:score]
end
println("\n~~~ Evaluator() ", @__FILE__, ":", @__LINE__, " $(Dates.now())")
pprintln(Dict(responsedict))
return responsedict[:score]
end
error("Evaluator failed to generate an evaluation, Response: \n$response\n<|End of error|>")
end
"""
@@ -677,24 +604,18 @@ function reflector(config::T1, state::T2)::String where {T1<:AbstractDict, T2<:A
]
# put in model format
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="llama3instruct")
prompt *=
"""
<|start_header_id|>assistant<|end_header_id|>
"""
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="qwen")
externalService = config[:externalservice][:text2textinstruct]
# apply LLM specific instruct format
externalService = config[:externalservice][:text2textinstruct]
msgMeta = GeneralUtils.generate_msgMeta(
externalService[:mqtttopic],
externalService[:mqtttopic];
senderName= "reflector",
senderId= string(uuid4()),
receiverName= "text2textinstruct",
mqttBroker= config[:mqttServerInfo][:broker],
mqttBrokerAddress= config[:mqttServerInfo][:broker],
mqttBrokerPort= config[:mqttServerInfo][:port],
)
@@ -709,7 +630,7 @@ function reflector(config::T1, state::T2)::String where {T1<:AbstractDict, T2<:A
)
)
for attempt in 1:5
for attempt in 1:10
try
response = GeneralUtils.sendReceiveMqttMsg(outgoingMsg)
_responseJsonStr = response[:response][:text]
@@ -797,13 +718,12 @@ function transition(state::T, args::NamedTuple
# so that other simulation start from this same node is not contaminated with actioninput
listAllTable_json(executeSQL)
elseif thoughtDict[:action_name] == "TABLEINFO"
input = copy(JSON3.read(thoughtDict[:action_input]))
input = thoughtDict[:action_input]
tableinfo(executeSQL, input)
elseif thoughtDict[:action_name] == "GETDATA"
response = SQLexecution(executeSQL, thoughtDict[:action_input])
if response[:success]
# intention = Dict(:intention=> "$(thoughtDict[:plan])")
extracted = extractContent_dataframe(response[:result], text2textInstructLLM)
extracted = extractContent_dataframe(response[:result], text2textInstructLLM, thoughtDict[:action_input])
(rawresponse=response[:result], result=extracted, errormsg=nothing, success=true)
else
(result=nothing, errormsg=response[:errormsg], success=false)
@@ -819,8 +739,7 @@ function transition(state::T, args::NamedTuple
reward::Integer = haskey(response, :reward) ? response[:reward] : 0
isterminal::Bool = haskey(response, :isterminal) ? response[:isterminal] : false
newNodeKey, newstate = makeNewState(state, thoughtDict, rawresponse, JSON3.write(result), select, reward, isterminal)
progressvalue::Integer = evaluatorF(newstate, text2textInstructLLM;
insertSQLVectorDB=insertSQLVectorDB)
progressvalue::Integer = evaluatorF(newstate, text2textInstructLLM)
return (newNodeKey=newNodeKey, newstate=newstate, progressvalue=progressvalue)
end
@@ -914,7 +833,7 @@ function query(query::T, executeSQL::Function, text2textInstructLLM::Function;
response = SQLexecution(executeSQL, sql)
if response[:success]
# intention = Dict(:intention=> "$(thoughtDict[:plan])")
extracted = extractContent_dataframe(response[:result], text2textInstructLLM)
extracted = extractContent_dataframe(response[:result], text2textInstructLLM, sql)
return (text=extracted, rawresponse=response[:result])
end
end
@@ -952,9 +871,15 @@ function query(query::T, executeSQL::Function, text2textInstructLLM::Function;
earlystop(state) = state[:reward] >= 8 ? true : false
_, resultState = LLMMCTS.runMCTS(initialstate, transition, transitionargs;
totalsample=1, maxdepth=3, maxiterations=3, explorationweight=1.0,
earlystop=earlystop)
_, _, resultState = LLMMCTS.runMCTS(initialstate, transition, transitionargs;
horizontalSampleExpansionPhase=5,
horizontalSampleSimulationPhase=2,
maxSimulationDepth=5,
maxiterations=1,
explorationweight=1.0,
earlystop=earlystop,
saveSimulatedNode=true,
multithread=true)
latestKey, latestInd = GeneralUtils.findHighestIndexKey(resultState[:thoughtHistory], "observation")
action_input = Symbol("action_input_$latestInd") # latest sql
sql = resultState[:thoughtHistory][action_input]
@@ -967,6 +892,10 @@ function query(query::T, executeSQL::Function, text2textInstructLLM::Function;
insertSQLVectorDB(resultState[:thoughtHistory][:question], sql)
end
if extracted === nothing
println("query() return nothing")
end
return (text=extracted, rawresponse=resultState[:rawresponse])
end
@@ -988,7 +917,7 @@ function makeNewState(currentstate::T1, thoughtDict::T4, rawresponse, response::
reward::T3, isterminal::Bool
)::NamedTuple{(:newNodeKey, :newstate), Tuple{String, Dict{Symbol, <:Any}}} where {T1<:AbstractDict, T2<:AbstractString, T3<:Number, T4<:AbstractDict}
keys = [:understanding, :reasoning, :action_name, :action_input, :observation]
keys = [:comprehension, :action_name, :action_input, :observation]
# latestKeys = []
currentstate_latestKey, currentstate_latestIndice =
@@ -1092,7 +1021,6 @@ function generatequestion(state::T1, context, text2textInstructLLM::Function;
response = nothing # store for show when error msg show up
errornote = ""
noise = ""
for attempt in 1:10
usermsg =
@@ -1102,7 +1030,6 @@ function generatequestion(state::T1, context, text2textInstructLLM::Function;
Example: $similarSQL
Your work progress: $workprogress
$errornote
$noise
"""
_prompt =
@@ -1112,11 +1039,7 @@ function generatequestion(state::T1, context, text2textInstructLLM::Function;
]
# 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)
@@ -1131,13 +1054,13 @@ function generatequestion(state::T1, context, text2textInstructLLM::Function;
response = replace(response, '`'=>"")
end
header = ["Understanding:", "Q1:"]
dictkey = ["understanding", "q1"]
# response = string(split(response, "Please")[1]) # LLM usually add comments which is no need.
responsedict = GeneralUtils.textToDict(response,
["Understanding", "Q1"],
rightmarker=":", symbolkey=true; lowercasekey=true)
responsedict = GeneralUtils.textToDict(response, header;
dictKey=dictkey, symbolkey=true)
response = "Q1: " * responsedict[:q1]
println("\n~~~ SQLLLM generatequestion() ", @__FILE__, " ", @__LINE__)
println("\n~~~ SQLLLM generatequestion() ", @__FILE__, ":", @__LINE__, " $(Dates.now())")
pprintln(Dict(responsedict))
return response
catch e
@@ -1145,8 +1068,7 @@ function generatequestion(state::T1, context, text2textInstructLLM::Function;
showerror(io, e)
errorMsg = String(take!(io))
st = sprint((io, v) -> show(io, "text/plain", v), stacktrace(catch_backtrace()))
println("\n~~~ SQLLLM generatequestion() Attempt $attempt. Error occurred: $errorMsg\n$st ", @__FILE__, " ", @__LINE__)
noise = GeneralUtils.randstrings(3, 5)
println("\n~~~ SQLLLM generatequestion() Attempt $attempt. Error occurred: $errorMsg\n$st ", @__FILE__, ":", @__LINE__, " $(Dates.now())")
end
end
error("generatequestion failed to generate a thought ", response)

View File

@@ -352,79 +352,39 @@ function getdata_decisionMaker(state::Dict, context::Dict, text2textInstructLLM:
Hints = "None"
# """
# Here are some useful SQL programs:
# $usefulSQL
# """
systemmsg =
"""
You are an assistant helping the user to execute SQL code from the user's query.
# systemmsg =
# """
# You are an assistant helping the user to execute SQL code from the user's query.
At each round of conversation, the user will give you:
Context: ...
User intention: ...
Code executed from the last round: ...
Execution error: execution error of the last round code.
# At each round of conversation, the user will give you:
# Context: ...
# User intention: ...
# Code executed from the last round: ...
# Execution error: execution error of the last round code.
You should consider the following guidelines:
- Text information in the database is sometimes stored in lower case. If your search returns empty, try using lower case to search.
# You should consider the following guidelines:
# - Text information in the database is sometimes stored in lower case. If your search returns empty, try using lower case to search.
You should then respond to the user with:
1) Comprehension:
- State your comprehension about the current situation.
3) Plan: Step-by-step instructions of how to complete the task.
- Focus on improving the code from the last round.
- Do not create any table in the database.
4) Code:
- Write new improved code.
- Do not wrap the code and no comment as it will be executed directly without any modification against the database.
# You should then respond to the user with:
# - thought: Why the code does not complete the task. What does the execution error imply exactly?
# - plan: Step-by-step instructions of how to complete the task.
# 1) Focus on improving the code from the last round.
# 2) Do not create any table in the database.
# - code:
# 1) Write new improved code.
# 2) Do not wrap the code and no comment as it will be executed directly without any modification against the database.
You should only respond in format as described below and nothing more:
Comprehension: ...
Plan:
1) ...
2) ...
...
Code: ...
# You should only respond in format as described below and nothing more:
# thought: ...
# plan:
# 1) ...
# 2) ...
# ...
# code: ...
# Let's begin!
# """
systemmsg = """
You are an assistant helping the user to execute SQL code from the user's query.
At each round of conversation, the user will give you:
Context: ...
User intention: ...
Code executed from the last round: ...
Execution error: execution error of the last round code.
You should consider the following guidelines:
- Text information in the database is sometimes stored in lower case. If your search returns empty, try using lower case to search.
You should then respond to the user with:
1) Understanding:
- State your understanding about the current situation.
2) Reasoning:
- State your step by step reasoning about the current situation.
3) Plan: Step-by-step instructions of how to complete the task.
- Focus on improving the code from the last round.
- Do not create any table in the database.
4) Code:
- Write new improved code.
- Do not wrap the code and no comment as it will be executed directly without any modification against the database.
You should only respond in format as described below and nothing more:
Understanding: ...
Reasoning: ...
Plan:
1) ...
2) ...
...
Code: ...
Let's begin!
"""
Let's begin!
"""
noise = ""
note_flag = ""
@@ -446,15 +406,15 @@ function getdata_decisionMaker(state::Dict, context::Dict, text2textInstructLLM:
]
# 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)
responsedict = GeneralUtils.textToDict(response,
["Understanding", "Reasoning", "Plan", "Code"];
rightmarker=":", symbolkey=true, lowercasekey=true)
header = ["Comprehension:", "Plan:", "Code:"]
dictkey = ["comprehension", "plan", "code"]
responsedict = GeneralUtils.textToDict(response, header;
dictKey=dictkey, symbolkey=true)
_code = responsedict[:code]
code = strip(_code)
@@ -480,7 +440,7 @@ function getdata_decisionMaker(state::Dict, context::Dict, text2textInstructLLM:
println("\n~~~ getdata_decisionMaker() ", @__FILE__, " ", @__LINE__)
pprintln(Dict(responsedict))
return (thought=responsedict[:reasoning], code=code, success=true, errormsg=nothing)
return (thought=responsedict[:comprehension], code=code, success=true, errormsg=nothing)
catch e
io = IOBuffer()
showerror(io, e)
@@ -520,65 +480,6 @@ julia> response = SQLLLM.SQLexecution(executeSQL, sql)
# Signature
"""
# function SQLexecution(executeSQL::Function, sql::T
# )::NamedTuple{(:result, :success, :errormsg, :reward, :isterminal), Tuple{Union{DataFrame, Nothing}, Bool, Union{String, Nothing}, Integer, Bool}} where {T<:AbstractString}
# println("\n~~~ 1-01 ", @__FILE__, " ", @__LINE__)
# #XXX dummy SQL. use for testing
# # sql = "SELECT w.wine_name FROM wine w JOIN wine_food wf ON w.wine_id = wf.wine_id JOIN food f ON wf.food_id = f.food_id WHERE f.\"food_name\" = 'lamb';"
# # sql = " SELECT w.wine_name FROM wine w JOIN food f ON f.food_name = 'lamb' JOIN wine_food wf ON w.wine_id = wf.wine_id AND f.food_id = wf.food_id GROUP BY w.wine_name ORDER BY COUNT(DISTINCT w.wine_id) DESC;"
# # sql = " SELECT COUNT(DISTINCT wf.wine_id) FROM wine w JOIN wine_food wf ON w.wine_id = wf.wine_id JOIN food f ON wf.food_id = f.food_id WHERE f.food_name ILIKE '%lamb%'"
# #XXX use for package testing, remove when done
# # ans = "1.schilfwein zweigelt 2.cabernet sauvignon reserve limited edition"
# # ans = "There are 1500 wines that can be paired with lamb."
# # ans = "1500"
# # return (response=ans, errormsg=nothing, reward=1, isterminal=true)
# # add LIMIT to the SQL to prevent loading large data
# sql = strip(sql)
# println("\n~~~ SQL 1", @__FILE__, " ", @__LINE__)
# println(sql)
# println("\n~~~ 1-02 ", @__FILE__, " ", @__LINE__)
# if sql[end] != ';'
# errorMsg = "Error, SQL execution failed because it does not ended with ';'"
# return (result=nothing, success=false, errormsg=errorMsg, reward=0, isterminal=false)
# end
# println("\n~~~ 1-03 ", @__FILE__, " ", @__LINE__)
# if !occursin("LIMIT", sql)
# # sql = sql[1:end-1] * " LIMIT 100;"
# sql = sql[1:end-1] * " ORDER BY RANDOM() LIMIT 2;"
# end
# println("\n~~~ SQL 2", @__FILE__, " ", @__LINE__)
# println(sql)
# println("\n~~~ 1-1 ", @__FILE__, " ", @__LINE__)
# result = executeSQL(sql)
# println("\n~~~ 1-2 ", @__FILE__, " ", @__LINE__)
# df = DataFrame(result)
# println("\n~~~ raw df ", df)
# tablesize = size(df)
# println("\n~~~ df size ", tablesize)
# println("\n~~~ 6 ", @__FILE__, " ", @__LINE__)
# row = tablesize[1]
# println("\n~~~ 7 ", @__FILE__, " ", @__LINE__)
# if row == 0 # if 0 row
# errorMsg = "The resulting table has 0 row. Possible causes: 1) SQL is incorrect 2) There is no data that match your search criteria."
# return (result=nothing, success=false, errormsg=errorMsg, reward=0, isterminal=false)
# end
# println("\n~~~ 8 ", @__FILE__, " ", @__LINE__)
# df1 =
# if row > 2
# # ramdom row to pick
# df[sample(1:nrow(df), 2, replace=false), :] # random select 2 rows from df
# else
# df
# end
# println("\n~~~ SQLexecution result ", @__FILE__, " ", @__LINE__)
# println(df1)
# return (result=df1, success=true, errormsg=nothing, reward=1, isterminal=true)
# end
function SQLexecution(executeSQL::Function, sql::T
) where {T<:AbstractString}
@@ -596,9 +497,12 @@ function SQLexecution(executeSQL::Function, sql::T
# add LIMIT to the SQL to prevent loading large data
sql = strip(sql)
# remove DISTINCT keyword because it is incompatible with RANDOM()
sql = replace(sql, "DISTINCT" => "")
if sql[end] == ';'
if !occursin("LIMIT", sql)
# sql = sql[1:end-1] * " LIMIT 100;"
sql = sql[1:end-1] * " ORDER BY RANDOM() LIMIT 2;"
end
else
@@ -612,7 +516,7 @@ function SQLexecution(executeSQL::Function, sql::T
tablesize = size(df)
row, column = tablesize
if row == 0 # if 0 row
if row == 0
error("The resulting table has 0 row. Possible causes: 1) Your search criteria might be too specific. Relaxing some conditions could yield better results. Remember, you can always refine your search later. 2) There could be a typo in your search query. 3) You might be searching in the wrong place.")
elseif column > 30
error("SQL execution failed. An unexpected error occurred. Please try again.")
@@ -656,7 +560,7 @@ end
# Signature
"""
function extractContent_dataframe(df::DataFrame, text2textInstructLLM::Function
function extractContent_dataframe(df::DataFrame, text2textInstructLLM::Function, action::String
)::String
tablesize = size(df)
row = tablesize[1]
@@ -687,32 +591,35 @@ function extractContent_dataframe(df::DataFrame, text2textInstructLLM::Function
dfstr = GeneralUtils.dfToString(df1)
systemmsg = """
You are an assistant that readouts the resulting table after the user executing SQL command.
systemmsg =
"""
You are an assistant that readouts the resulting table after the user executing SQL command.
At each round of conversation, the user will give you:
- User intention: ...
- Resulting table dimension: ...
- Resulting table: The resulting table after executing the user's intention.
At each round of conversation, the user will give you:
- User SQL: the SQL query user executed.
- Resulting table: The resulting table after executing the user's intention.
You should then respond to the user with:
- About_resulting_table:
1) What is the resulting table represent?
- Search_summary:
1) Summarize the table's content based on the user intension in verbal English.
Here are some example:
Bad example (you are not Summarize the table content): there are 2 columns in the table i.e. "cash" and "number".
2) Do not generate additional text.
You should then respond to the user with:
- About_resulting_table:
1) What is the resulting table represent?
- Search_summary:
1) Summarize the table's content based on the user intension in verbal English.
Here are some example:
Bad example (you are not Summarize the table content): there are 2 columns in the table i.e. "cash" and "number".
2) Do not generate additional text.
You should only respond in format as described below:
About_resulting_table: ...
Search_summary: ...
You should only respond in format as described below:
About_resulting_table: ...
Search_summary: ...
Let's begin!
"""
usermsg = """
Resulting table: $dfstr
"""
Let's begin!
"""
usermsg =
"""
User SQL: $action
Resulting table: $dfstr
"""
_prompt =
[
Dict(:name => "system", :text => systemmsg),
@@ -720,20 +627,33 @@ function extractContent_dataframe(df::DataFrame, text2textInstructLLM::Function
]
# put in model format
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="llama3instruct")
prompt *= """
<|start_header_id|>assistant<|end_header_id|>
"""
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="qwen")
header = ["About_resulting_table:", "Search_summary:"]
dictkey = ["about_resulting_table", "search_summary"]
for i in 1:5
response = text2textInstructLLM(prompt)
responsedict = GeneralUtils.textToDict(response, ["About_resulting_table", "Search_summary"],
rightmarker=":", symbolkey=true)
kw = []
# use for loop and detect_keyword function to get the exact variation of each keyword in the text then push to kw list
for keyword in header
detected = GeneralUtils.detect_keyword(keyword, response)
push!(kw, detected)
end
if nothing kw
println("Some keywords are missing, Required keywords=$header, Response keywords=$kw ", @__FILE__, ":", @__LINE__, " $(Dates.now())")
continue # try again next loop
end
responsedict = GeneralUtils.textToDict(response, header;
dictKey=dictkey, symbolkey=true)
# result = dfstr
result = """
Summary: $(responsedict[:Search_summary])
More details: $dfstr
"""
result =
"""
Summary: $(responsedict[:search_summary])
More details: $dfstr
"""
if row > 2
result *= "There are many more rows, but they are truncated because there are too many of them."
@@ -822,11 +742,11 @@ function getTableNameFromSQL(sql::T, text2textInstructLLM::Function)::Vector{Str
Query: ...
You should then respond to the user with:
- table_name: a list of table name that the user mentioned in the query.
- Table_name: a list of table name that the user mentioned in the query.
For example, ["color", "type"]
You must only respond in format as described below:
table_name: ["...", "...", ...]
Table_name: ["...", "...", ...]
Let's begin!
"""
@@ -842,17 +762,15 @@ function getTableNameFromSQL(sql::T, text2textInstructLLM::Function)::Vector{Str
]
# put in model format
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="llama3instruct")
prompt *= """
<|start_header_id|>assistant<|end_header_id|>
"""
prompt = GeneralUtils.formatLLMtext(_prompt; formatname="qwen")
header = ["Table_name:"]
dictkey = ["table_name"]
for attempt in 1:5
try
response = text2textInstructLLM(prompt)
responsedict = GeneralUtils.textToDict(response,
["table_name"],
rightmarker=":", symbolkey=true)
responsedict = GeneralUtils.textToDict(response, header;
dictKey=dictkey, symbolkey=true)
response = copy(JSON3.read(responsedict[:table_name]))
return response

View File

@@ -1,24 +1,41 @@
using Revise
using LibPQ, JSON3, PrettyPrinting, UUIDs, DataFrames, DataStructures, Base64
using LibPQ, Dates, JSON3, PrettyPrinting, UUIDs, DataFrames, DataStructures, Base64
using GeneralUtils, SQLLLM
config = copy(JSON3.read("config.json"))
config = copy(JSON3.read("/appfolder/mountvolume/appdata/config.json"))
function executeSQL(sql::T) where {T<:AbstractString}
DBconnection = LibPQ.Connection("host=192.168.88.12 port=10201 dbname=wineDB user=yiemtechnologies password=yiemtechnologies@Postgres_0.0")
host = config[:externalservice][:wineDB][:host]
port = config[:externalservice][:wineDB][:port]
dbname = config[:externalservice][:wineDB][:dbname]
user = config[:externalservice][:wineDB][:user]
password = config[:externalservice][:wineDB][:password]
DBconnection = LibPQ.Connection("host=$host port=$port dbname=$dbname user=$user password=$password")
result = LibPQ.execute(DBconnection, sql)
close(DBconnection)
return result
end
function text2textInstructLLM(prompt::String)
function executeSQLVectorDB(sql)
host = config[:externalservice][:SQLVectorDB][:host]
port = config[:externalservice][:SQLVectorDB][:port]
dbname = config[:externalservice][:SQLVectorDB][:dbname]
user = config[:externalservice][:SQLVectorDB][:user]
password = config[:externalservice][:SQLVectorDB][:password]
DBconnection = LibPQ.Connection("host=$host port=$port dbname=$dbname user=$user password=$password")
result = LibPQ.execute(DBconnection, sql)
close(DBconnection)
return result
end
function text2textInstructLLM(prompt::String; maxattempt=3)
msgMeta = GeneralUtils.generate_msgMeta(
config[:externalservice][:text2textinstruct][:mqtttopic];
config[:externalservice][:loadbalancer][:mqtttopic];
msgPurpose="inference",
senderName="yiemagent",
senderId=string(uuid4()),
receiverName="text2textinstruct",
senderId=sessionId,
receiverName="text2textinstruct_small",
mqttBrokerAddress=config[:mqttServerInfo][:broker],
mqttBrokerPort=config[:mqttServerInfo][:port],
)
@@ -28,138 +45,127 @@ function text2textInstructLLM(prompt::String)
:payload => Dict(
:text => prompt,
:kwargs => Dict(
:num_ctx => 20480,
:num_ctx => 16384,
:temperature => 0.2,
)
)
)
_response = GeneralUtils.sendReceiveMqttMsg(outgoingMsg; timeout=120)
response = _response[:response][:text]
response = nothing
for attempts in 1:maxattempt
_response = GeneralUtils.sendReceiveMqttMsg(outgoingMsg; timeout=180, maxattempt=2)
response = _response[:response][:text]
if response !== nothing
break
else
println("\n<text2textInstructLLM()> attempt $attempts/$maxattempt failed ", @__FILE__, ":", @__LINE__, " $(Dates.now())")
pprintln(outgoingMsg)
println("</text2textInstructLLM()> attempt $attempts/$maxattempt failed ", @__FILE__, ":", @__LINE__, " $(Dates.now())\n")
sleep(3)
end
end
return response
end
function executeSQLVectorDB(sql)
DBconnection = LibPQ.Connection("host=192.168.88.12 port=10203 dbname=SQLVectorDB user=yiemtechnologies password=yiemtechnologies@Postgres_0.0")
result = LibPQ.execute(DBconnection, sql)
close(DBconnection)
return result
end
function addSQLVectorDB(state)
# get embedding of the query
query = [state[:thoughtHistory][:question]]
# get text embedding from a LLM service
function getEmbedding(text::T) where {T<:AbstractString}
msgMeta = GeneralUtils.generate_msgMeta(
config[:externalservice][:text2textinstruct][:mqtttopic];
msgPurpose= "embedding",
senderName= "yiemagent",
senderId= string(uuid4()),
receiverName= "text2textinstruct",
mqttBrokerAddress= config[:mqttServerInfo][:broker],
mqttBrokerPort= config[:mqttServerInfo][:port],
config[:externalservice][:loadbalancer][:mqtttopic];
msgPurpose="embedding",
senderName="yiemagent",
senderId=sessionId,
receiverName="text2textinstruct_small",
mqttBrokerAddress=config[:mqttServerInfo][:broker],
mqttBrokerPort=config[:mqttServerInfo][:port],
)
outgoingMsg = Dict(
:msgMeta=> msgMeta,
:payload=> Dict(
:text=> query
)
:msgMeta => msgMeta,
:payload => Dict(
:text => [text] # must be a vector of string
)
response = GeneralUtils.sendReceiveMqttMsg(outgoingMsg)
embedding = response[:response][:embeddings][1]
)
response = GeneralUtils.sendReceiveMqttMsg(outgoingMsg; timeout=120)
embedding = response[:response][:embeddings]
return embedding
end
function findSimilarTextFromVectorDB(text::T1, tablename::T2, embeddingColumnName::T3,
vectorDB::Function; limit::Integer=1
)::DataFrame where {T1<:AbstractString, T2<:AbstractString, T3<:AbstractString}
# get embedding from LLM service
embedding = getEmbedding(text)[1]
# check whether there is close enough vector already store in vectorDB. if no, add, else skip
sql =
"""
SELECT *, embedding <-> '$embedding' as distance
FROM sql_statement_repository
ORDER BY distance LIMIT 1;
"""
response = executeSQLVectorDB(sql)
sql = """
SELECT *, $embeddingColumnName <-> '$embedding' as distance
FROM $tablename
ORDER BY distance LIMIT $limit;
"""
response = vectorDB(sql)
df = DataFrame(response)
return df
end
function similarSQLVectorDB(query; maxdistance::Integer=100)
tablename = "sqlllm_decision_repository"
# get embedding of the query
df = findSimilarTextFromVectorDB(query, tablename,
"function_input_embedding", executeSQLVectorDB)
row, col = size(df)
distance = row == 0 ? Inf : df[1, :distance]
if row == 0 || distance > 10 # no close enough SQL stored in the database
latestKey, _ = GeneralUtils.findHighestIndexKey(state[:thoughtHistory], :action_input)
_sqlStatement = state[:thoughtHistory][latestKey]
if occursin("SELECT", _sqlStatement) # make sure it is an SQL statement before adding into DB
sqlStatementBase64 = base64encode(_sqlStatement)
sqlStatement = replace(_sqlStatement, "'"=>"")
sql =
"""
INSERT INTO sql_statement_repository (question, sql_statement, sql_statement_base64, embedding) VALUES ('$query', '$sqlStatement', '$sqlStatementBase64', '$embedding');
"""
_ = executeSQLVectorDB(sql)
println("--> added new SQL statement to vectorDB ", @__FILE__, " ", @__LINE__)
println(sqlStatement)
end
# distance = 100 # CHANGE this is for testing only
if row != 0 && distance < maxdistance
# if there is usable SQL, return it.
output_b64 = df[1, :function_output_base64] # pick the closest match
output_str = String(base64decode(output_b64))
rowid = df[1, :id]
println("\n~~~ found similar sql. row id $rowid, distance $distance ", @__FILE__, ":", @__LINE__, " $(Dates.now())")
return (dict=output_str, distance=distance)
else
println("\n~~~ similar sql not found, max distance $maxdistance ", @__FILE__, ":", @__LINE__, " $(Dates.now())")
return (dict=nothing, distance=nothing)
end
end
function querySQLVectorDB(state)
# provide similarSQL at the first time thinking only
latestKey, _ = GeneralUtils.findHighestIndexKey(state[:thoughtHistory], :action_input)
if latestKey === nothing
# get embedding of the query
query = [state[:thoughtHistory][:question]]
msgMeta = GeneralUtils.generate_msgMeta(
config[:externalservice][:text2textinstruct][:mqtttopic];
msgPurpose= "embedding",
senderName= "yiemagent",
senderId= string(uuid4()),
receiverName= "text2textinstruct",
mqttBrokerAddress= config[:mqttServerInfo][:broker],
mqttBrokerPort= config[:mqttServerInfo][:port],
)
function insertSQLVectorDB(query::T1, SQL::T2; maxdistance::Integer=3) where {T1<:AbstractString, T2<:AbstractString}
tablename = "sqlllm_decision_repository"
# get embedding of the query
# query = state[:thoughtHistory][:question]
df = findSimilarTextFromVectorDB(query, tablename,
"function_input_embedding", executeSQLVectorDB)
row, col = size(df)
distance = row == 0 ? Inf : df[1, :distance]
if row == 0 || distance > maxdistance # no close enough SQL stored in the database
query_embedding = getEmbedding(query)[1]
query = replace(query, "'" => "")
sql_base64 = base64encode(SQL)
sql_ = replace(SQL, "'" => "")
outgoingMsg = Dict(
:msgMeta=> msgMeta,
:payload=> Dict(
:text=> query
)
)
response = GeneralUtils.sendReceiveMqttMsg(outgoingMsg)
embedding = response[:response][:embeddings][1]
# check whether there is close enough vector already store in vectorDB. if no, add, else skip
sql =
"""
SELECT *, embedding <-> '$embedding' as distance
FROM sql_statement_repository
ORDER BY distance LIMIT 1;
"""
response = executeSQLVectorDB(sql)
df = DataFrame(response)
row, col = size(df)
distance = row == 0 ? Inf : df[1, :distance]
if row != 0 && distance < 100
# if there is usable SQL, return it.
sqlStatementBase64 = df[1, :sql_statement_base64]
sqlStatement = String(base64decode(sqlStatementBase64))
return sqlStatement
else
return nothing
end
sql = """
INSERT INTO $tablename (function_input, function_output, function_output_base64, function_input_embedding) VALUES ('$query', '$sql_', '$sql_base64', '$query_embedding');
"""
# println("\n~~~ added new decision to vectorDB ", @__FILE__, ":", @__LINE__, " $(Dates.now())")
# println(sql)
_ = executeSQLVectorDB(sql)
end
return nothing
end
sessionId = "555"
# query = Dict(:text=> "How many wines from France do you have that can be paired with lamb?")
# query = "How many wines are from United States?"
query = "retailer: Yiem, wine_type: red, sweetness: 1-2, intensity: 4-5, wine price: 20-40"
query = "How many French wines do you have?"
# query = "retailer: Yiem, wine_type: red, sweetness: 1-2, intensity: 4-5, wine price: 20-40"
# query = "wine_type: white, country: United States, sweetness: 1-2, tannin: 3, food to be served with wine: pizza"
# query = "wine_type: white, country: Austria, food to be served with wine: pork"
# query = "wine price: less than 25, wine_type: rose, country: France, sweetness: 2, tannin: 3, food to be served with wine: pizza"
# query = Dict(:text=> "wine_type: white, country: France, sweetness: 1")
result = SQLLLM.query(query, executeSQL, text2textInstructLLM;
addSQLVectorDB=addSQLVectorDB,
querySQLVectorDB=querySQLVectorDB)
insertSQLVectorDB=insertSQLVectorDB,
similarSQLVectorDB=similarSQLVectorDB)
println(result)
error(555)