Files
opendan/src/aios_kernel/local_llama_compute_node.py
T
2023-09-28 14:03:52 -07:00

171 lines
7.1 KiB
Python

import json
import logging
import requests
from typing import Optional, List
from pydantic import BaseModel
from .compute_task import ComputeTask, ComputeTaskResult, ComputeTaskResultCode, ComputeTaskState, ComputeTaskType
from .queue_compute_node import Queue_ComputeNode
from .storage import AIStorage,UserConfig
logger = logging.getLogger(__name__)
"""
This is a custom implementation, it should be redesigned.
"""
class LocalLlama_ComputeNode(Queue_ComputeNode):
def __init__(self, url: str, model_name: str):
super().__init__()
self.url = url
self.model_name = model_name
async def execute_task(self, task: ComputeTask)->ComputeTaskResult:
result = ComputeTaskResult()
result.result_code = ComputeTaskResultCode.ERROR
result.set_from_task(task)
result.worker_id = self.node_id
match task.task_type:
case ComputeTaskType.TEXT_EMBEDDING:
model_name = task.params["model_name"]
input = task.params["input"]
logger.info(f"call local-llama ({self.url}, {self.model_name}) {model_name} input: {input}")
self.embedding(input, result)
if result.result_code == ComputeTaskResultCode.OK:
task.state = ComputeTaskState.DONE
else:
task.state = ComputeTaskState.ERROR
task.error_str = result.error_str
return result
case ComputeTaskType.LLM_COMPLETION:
mode_name = task.params["model_name"]
prompts = task.params["prompts"]
logger.info(f"local-llama({self.url}, {self.model_name}) prompts: {prompts}")
self.completion(task, result)
if result.result_code == ComputeTaskResultCode.OK:
task.state = ComputeTaskState.DONE
else:
task.state = ComputeTaskState.ERROR
task.error_str = result.error_str
case _:
task.state = ComputeTaskState.ERROR
result.result_code = ComputeTaskResultCode.ERROR
task.error_str = f"ComputeTask's TaskType : {task.task_type} not support!"
result.error_str = f"ComputeTask's TaskType : {task.task_type} not support!"
return result
return result
async def initial(self) -> bool:
return True
def display(self) -> str:
return f"local-llama: {self.node_id}"
def get_capacity(self):
pass
def is_support(self, task: ComputeTask) -> bool:
return (task.task_type == ComputeTaskType.TEXT_EMBEDDING or task.task_type == ComputeTaskType.LLM_COMPLETION) and (not task.params["model_name"] or task.params["model_name"] == self.model_name)
def is_local(self) -> bool:
return True
def embedding(self, input: str, result: ComputeTaskResult):
body = {
"input": input
}
try:
response = requests.post(self.url + "/v1/embeddings", json = body, verify=False, headers={"Content-Type": "application/json"})
response.close()
logger.info(f"local-llama({self.url}, {self.model_name}) task responsed, request: {body}, status-code: {response.status_code}, headers: {response.headers}, content: {response.content}")
if response.status_code == 200:
resp = response.json()
result.result = resp["data"][0]["embedding"]
elif response.status_code == 422:
resp = response.json()
result.result_code = ComputeTaskResultCode.ERROR
result.error_str = "http request failed: " + str(resp["detail"][0]["msg"])
else:
result.result_code = ComputeTaskResultCode.ERROR
result.error_str = "http request failed: " + str(response.status_code)
except Exception as e:
logger.error(f"call local-llama({self.url}, {self.model_name}) run TEXT_EMBEDDING task error: {e}")
result.result_code = ComputeTaskResultCode.ERROR
result.error_str = str(e)
return result
def completion(self, task: ComputeTask, result: ComputeTaskResult):
mode_name = task.params["model_name"]
prompts = task.params["prompts"]
max_token_size = task.params.get("max_token_size")
llm_inner_functions = task.params.get("inner_functions")
if max_token_size is None:
max_token_size = max_token_size
body = {
"messages": [],
"max_tokens": 4000
}
for prompt in prompts:
body["messages"].append({
"role": prompt["role"],
"content": prompt["content"]
})
try:
response = requests.post(self.url + "/v1/chat/completions", json = body, verify=False, headers={"Content-Type": "application/json"})
response.close()
logger.info(f"local-llama({self.url}, {self.model_name}) task responsed, request: {body}, status-code: {response.status_code}, headers: {response.headers}, content: {response.content}")
if response.status_code == 200:
resp = response.json()
status_code = resp["choices"][0]["finish_reason"]
token_usage = resp["usage"]
match status_code:
case "function_call":
task.state = ComputeTaskState.DONE
case "stop":
task.state = ComputeTaskState.DONE
case _:
task.state = ComputeTaskState.ERROR
task.error_str = f"The status code was {status_code}."
result.error_str = f"The status code was {status_code}."
result.result_code = ComputeTaskResultCode.ERROR
return None
result.result_code = ComputeTaskResultCode.OK
result.result_str = resp["choices"][0]["message"]["content"]
result.result["message"] = resp["choices"][0]["message"]
if token_usage:
result.result_refers["token_usage"] = token_usage
logger.info(f"local-llama({self.url}, {self.model_name}) success response: {result.result_str}")
elif response.status_code == 422:
resp = response.json()
result.result_code = ComputeTaskResultCode.ERROR
result.error_str = "http request failed: " + str(resp["detail"][0]["msg"])
else:
result.result_code = ComputeTaskResultCode.ERROR
result.error_str = "http request failed: " + str(response.status_code)
except Exception as e:
logger.error(f"call local-llama({self.url}, {self.model_name}) run LLM_COMPLETION task error: {e}")
result.result_code = ComputeTaskResultCode.ERROR
result.error_str = str(e)
return result