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Merge pull request #1013 from arc53/fix/singleton-llama-cpp
fix: use singleton in llama_cpp
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@@ -1,9 +1,30 @@
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from application.llm.base import BaseLLM
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from application.core.settings import settings
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import threading
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class LlamaSingleton:
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_instances = {}
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_lock = threading.Lock() # Add a lock for thread synchronization
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@classmethod
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def get_instance(cls, llm_name):
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if llm_name not in cls._instances:
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try:
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from llama_cpp import Llama
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except ImportError:
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raise ImportError(
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"Please install llama_cpp using pip install llama-cpp-python"
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)
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cls._instances[llm_name] = Llama(model_path=llm_name, n_ctx=2048)
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return cls._instances[llm_name]
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@classmethod
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def query_model(cls, llm, prompt, **kwargs):
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with cls._lock:
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return llm(prompt, **kwargs)
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class LlamaCpp(BaseLLM):
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def __init__(
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self,
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api_key=None,
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@@ -12,41 +33,23 @@ class LlamaCpp(BaseLLM):
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*args,
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**kwargs,
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):
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global llama
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try:
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from llama_cpp import Llama
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except ImportError:
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raise ImportError(
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"Please install llama_cpp using pip install llama-cpp-python"
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)
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super().__init__(*args, **kwargs)
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self.api_key = api_key
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self.user_api_key = user_api_key
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llama = Llama(model_path=llm_name, n_ctx=2048)
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self.llama = LlamaSingleton.get_instance(llm_name)
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def _raw_gen(self, baseself, model, messages, stream=False, **kwargs):
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context = messages[0]["content"]
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user_question = messages[-1]["content"]
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prompt = f"### Instruction \n {user_question} \n ### Context \n {context} \n ### Answer \n"
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result = llama(prompt, max_tokens=150, echo=False)
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# import sys
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# print(result['choices'][0]['text'].split('### Answer \n')[-1], file=sys.stderr)
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result = LlamaSingleton.query_model(self.llama, prompt, max_tokens=150, echo=False)
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return result["choices"][0]["text"].split("### Answer \n")[-1]
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def _raw_gen_stream(self, baseself, model, messages, stream=True, **kwargs):
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context = messages[0]["content"]
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user_question = messages[-1]["content"]
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prompt = f"### Instruction \n {user_question} \n ### Context \n {context} \n ### Answer \n"
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result = llama(prompt, max_tokens=150, echo=False, stream=stream)
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# import sys
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# print(list(result), file=sys.stderr)
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result = LlamaSingleton.query_model(self.llama, prompt, max_tokens=150, echo=False, stream=stream)
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for item in result:
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for choice in item["choices"]:
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yield choice["text"]
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yield choice["text"]
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