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143module Duets.Agents.LanguageModel
open Duets.Common
open System
open System.IO
open System.Threading
open FSharp.Control
open LLama
open LLama.Common
open LLama.Native
open LLama.Sampling
type private LanguageModelState =
{ Executor: InteractiveExecutor
PreviousChatHistory: ChatHistory option }
let private inferenceParams =
InferenceParams(
SamplingPipeline =
// Settings taken from model card: https://huggingface.co/unsloth/gemma-3-270m-it-GGUF
new DefaultSamplingPipeline(
Temperature = 1f,
TopK = 64,
TopP = 0.95f,
MinP = 0f
),
AntiPrompts = [ "<end_of_turn>" ]
)
type private SavegameAgentMessage =
| Initialize of AsyncReplyChannel<unit>
| StreamMessage of prompt: string * AsyncReplyChannel<AsyncSeq<String>>
/// Agent in charge of writing and loading the stats of the game.
type LanguageModelAgent() =
let agent =
MailboxProcessor.Start
<| fun inbox ->
let rec loop state =
async {
let! msg = inbox.Receive()
match msg with
| Initialize(channel) ->
try
NativeLibraryConfig.All.WithLogCallback(fun _ _ ->
())
|> ignore
// Force to load now instead of after the first inference.
NativeApi.llama_empty_call ()
let modelPath =
Path.Combine(
AppDomain.CurrentDomain.BaseDirectory,
"models",
"model.gguf"
)
let parameters =
ModelParams(modelPath, GpuLayerCount = 5)
let model = LLamaWeights.LoadFromFile(parameters)
let context = model.CreateContext(parameters)
let executor = InteractiveExecutor(context)
let newState =
{ Executor = executor
PreviousChatHistory = None }
channel.Reply()
return! loop (Some newState)
with ex ->
printfn
$"Error initializing LanguageModelAgent: %s{ex.Message}"
channel.Reply()
return! loop None
| StreamMessage(prompt, channel) ->
let executor = state.Value.Executor
let chatHistory = ChatHistory()
let session = ChatSession(executor, chatHistory)
let rawAsyncEnumerable
: Collections.Generic.IAsyncEnumerable<string> =
session.ChatAsync(
ChatHistory.Message(AuthorRole.User, prompt),
inferenceParams,
CancellationToken.None
)
let mutable previousToken = ""
rawAsyncEnumerable
|> AsyncSeq.ofAsyncEnum
|> AsyncSeq.map (fun token ->
let sanitizedToken =
token
|> String.replace @"\s+" " "
|> String.replace @"(?<!\n)\n(?!\n)" " "
let sanitizedToken =
(*
Sometimes tokens include a space on them, other
times they come in a "space word" fashion, from
what I have seen mostly to separate words from
a full stop, so only allow empty spaces if the
previous token was a period to allow that.
*)
if
sanitizedToken = " "
&& previousToken <> "."
then
""
else
sanitizedToken
previousToken <- sanitizedToken
sanitizedToken)
|> channel.Reply
return! loop state
}
loop None
member _.Initialize() =
agent.PostAndReply(fun channel -> Initialize(channel))
member _.StreamMessage(context) =
agent.PostAndReply(fun channel -> StreamMessage(context, channel))
let agent = LanguageModelAgent()
/// Initializes the language model agent.
let initialize = agent.Initialize
/// Streams a message from the language model given a prompt.
let streamMessage prompt = agent.StreamMessage prompt