259 lines
9.6 KiB
Python
259 lines
9.6 KiB
Python
from abc import ABC, abstractmethod
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import random
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from typing import Optional
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import logging
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import asyncio
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import tiktoken
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from asyncio import Queue
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from ..proto.compute_task import *
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from ..knowledge import ObjectID
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from ..agent.agent_base import AgentPrompt
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from .compute_node import ComputeNode
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logger = logging.getLogger(__name__)
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# How to dispatch different computing tasks (some tasks may contain a large amount of state for correct execution)
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# to suitable computing nodes, achieving a balance of speed, cost, and power consumption,
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# is the CORE GOAL of the entire computing task schedule system (aios_kernel).
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class ComputeKernel:
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_instance = None
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@classmethod
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def get_instance(cls):
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if cls._instance is None:
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cls._instance = ComputeKernel()
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return cls._instance
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def __init__(self) -> None:
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self.is_start = False
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self.task_queue = Queue()
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self.is_start = False
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self.compute_nodes = {}
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def run(self, task: ComputeTask) -> None:
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# check there is compute node can support this task
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if self.is_task_support(task) is False:
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logger.error(
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f"task {task.display()} is not support by any compute node")
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return
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# add task to working_queue
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self.task_queue.put_nowait(task)
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async def start(self):
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if self.is_start is True:
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logger.warn("compute_kernel is already start")
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return
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self.is_start = True
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async def _run_task_loop():
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while True:
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task = await self.task_queue.get()
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logger.info(f"compute_kernel get task: {task.display()}")
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c_node: ComputeNode = self._schedule(task)
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if c_node:
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await c_node.push_task(task)
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logger.warn("compute_kernel is stoped!")
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asyncio.create_task(_run_task_loop())
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def _schedule(self, task) -> ComputeNode:
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# find all the node which supports this task
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support_nodes = []
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total_weights = 0
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for node in self.compute_nodes.values():
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if node.is_support(task) is True:
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support_nodes.append({
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"pos": total_weights,
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"node": node
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})
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total_weights += node.weight()
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if len(support_nodes) < 1:
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logger.warning(f"task {task.display()} is not support by any compute node")
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return None
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# hit a random node with weight
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hit_pos = random.randint(0, total_weights - 1)
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for i in range(min(len(support_nodes) - 1, hit_pos), -1, -1):
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if support_nodes[i]["pos"] <= hit_pos:
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return support_nodes[i]["node"]
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logger.warning(
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f"task {task.display()} is not support by any compute node")
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return None
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def add_compute_node(self, node: ComputeNode):
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if self.compute_nodes.get(node.node_id) is not None:
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logger.warn(
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f"compute_node {node.display()} already in compute_kernel")
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return
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self.compute_nodes[node.node_id] = node
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logger.info(f"add compute_node {node.display()} to compute_kernel")
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def disable_compute_node(self, node_id: str):
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node = self.compute_nodes.get(node_id)
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if node is None:
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logger.warn(f"compute_node {node_id} not in compute_kernel")
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return
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node.enable = False
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def is_task_support(self, task: ComputeTask) -> bool:
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return True
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@staticmethod
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def llm_num_tokens_from_text(text:str,model:str) -> int:
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try:
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encoding = tiktoken.encoding_for_model(model)
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except KeyError:
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logger.debug("Warning: model not found. Using cl100k_base encoding.")
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encoding = tiktoken.get_encoding("cl100k_base")
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token_count = len(encoding.encode(text))
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return token_count
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# friendly interface for use:
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def llm_completion(self, prompt: AgentPrompt, resp_mode:str="text",mode_name: Optional[str] = None, max_token: int = 0,inner_functions = None):
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# craete a llm_work_task ,push on queue's end
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# then task_schedule would run this task.(might schedule some work_task to another host)
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task_req = ComputeTask()
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task_req.set_llm_params(prompt,resp_mode,mode_name, max_token,inner_functions)
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self.run(task_req)
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return task_req
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async def _wait_task(self,task_req:ComputeTask, timeout=60)->ComputeTaskResult:
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async def check_timer():
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check_times = 0
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while True:
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if task_req.state == ComputeTaskState.DONE:
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break
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if task_req.state == ComputeTaskState.ERROR:
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break
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if timeout is not None and check_times >= timeout*2:
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task_req.state = ComputeTaskState.ERROR
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break
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await asyncio.sleep(0.5)
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check_times += 1
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await asyncio.create_task(check_timer())
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if task_req.result:
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return task_req.result
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else:
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time_out_result = ComputeTaskResult()
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time_out_result.result_code = ComputeTaskResultCode.TIMEOUT
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time_out_result.set_from_task(task_req)
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task_req.result = time_out_result
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return time_out_result
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async def do_llm_completion(self, prompt: AgentPrompt,resp_mode:str="text", mode_name: Optional[str]=None, max_token:int=0, inner_functions=None, timeout=60) -> str:
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task_req = self.llm_completion(prompt, resp_mode,mode_name, max_token,inner_functions)
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return await self._wait_task(task_req, timeout)
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def text_embedding(self,input:str,model_name:Optional[str] = None):
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task_req = ComputeTask()
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task_req.set_text_embedding_params(input,model_name)
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self.run(task_req)
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return task_req
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async def do_text_embedding(self,input:str,model_name:Optional[str] = None) -> [float]:
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task_req = self.text_embedding(input,model_name)
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task_result = await self._wait_task(task_req)
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if task_req.state == ComputeTaskState.DONE:
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return task_result.result.get("content")
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else:
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logging.warning(f"do_text_embedding error: {task_req.error_str},input: {input}")
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return None
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def image_embedding(self,input:ObjectID,model_name:Optional[str] = None):
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task_req = ComputeTask()
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task_req.set_image_embedding_params(input,model_name)
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self.run(task_req)
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return task_req
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async def do_image_embedding(self,input:ObjectID,model_name:Optional[str] = None) -> [float]:
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task_req = self.image_embedding(input,model_name)
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task_result = await self._wait_task(task_req)
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if task_req.state == ComputeTaskState.DONE:
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return task_result.result.get("content")
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return None
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async def do_text_to_speech(self,
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input:str,
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language_code:Optional[str] = None,
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gender: Optional[str] = None,
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age: Optional[str] = None,
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voice_name: Optional[str] = None,
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tone: Optional[str] = None,
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model_name: Optional[str] = None):
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task_req = ComputeTask()
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task_req.params["text"] = input
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task_req.params["language_code"] = language_code
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task_req.params["gender"] = gender
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task_req.params["age"] = age
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task_req.params["voice_name"] = voice_name
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task_req.params["tone"] = tone
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task_req.params["model_name"] = model_name
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task_req.task_type = ComputeTaskType.TEXT_2_VOICE
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self.run(task_req)
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task_result = await self._wait_task(task_req)
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if task_req.state == ComputeTaskState.DONE:
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return task_result.result
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async def do_speech_to_text(self,
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audio: str,
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model: str,
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prompt: Optional[str],
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response_format: Optional[str]):
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task_req = ComputeTask()
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task_req.params["file"] = audio
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task_req.params["model_name"] = model
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task_req.params["prompt"] = prompt
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task_req.params["response_format"] = response_format
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task_req.task_type = ComputeTaskType.VOICE_2_TEXT
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self.run(task_req)
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task_result = await self._wait_task(task_req)
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if task_req.state == ComputeTaskState.DONE:
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return task_result
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def text_2_image(self, prompt:str, model_name:Optional[str] = None, negative_prompt = None):
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task = ComputeTask()
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task.set_text_2_image_params(prompt,model_name, negative_prompt)
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self.run(task)
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return task
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async def do_text_2_image(self, prompt:str, model_name:Optional[str] = None, negative_prompt = None) -> ComputeTaskResult:
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task = self.text_2_image(prompt,model_name, negative_prompt)
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task_result = await self._wait_task(task)
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return task_result
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# if task_req.state == ComputeTaskState.DONE:
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# return None, task_result
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def image_2_text(self, image_path: str, prompt:str, model_name:Optional[str] = None, negative_prompt = None):
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task = ComputeTask()
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task.set_image_2_text_params(image_path,prompt,model_name, negative_prompt)
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self.run(task)
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return task
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async def do_image_2_text(self, image_path: str, prompt:str, model_name:Optional[str] = None, negative_prompt = None) -> ComputeTaskResult:
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task = self.image_2_text(image_path,prompt, model_name, negative_prompt)
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task = await self._wait_task(task)
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return task.result
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