llama.cpp/llama_cpp/llama_chat_format.py

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from __future__ import annotations
import os
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import json
import ctypes
import dataclasses
from typing import Any, Dict, Iterator, List, Optional, Tuple, Union, Protocol
import jinja2
import llama_cpp.llama as llama
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import llama_cpp.llama_types as llama_types
import llama_cpp.llama_grammar as llama_grammar
from ._utils import suppress_stdout_stderr, Singleton
class LlamaChatCompletionHandler(Protocol):
"""Base Protocol for a llama chat completion handler.
Very generic protocol that can be used to implement any chat format.
The only hard requirement is that it must return a ChatCompletion when
stream=False and an iterator of ChatCompletionChunks when stream=True."""
def __call__(
self,
*,
# llama.cpp instance
llama: llama.Llama,
# openai api parameters
messages: List[llama_types.ChatCompletionRequestMessage],
functions: Optional[List[llama_types.ChatCompletionFunction]] = None,
function_call: Optional[llama_types.ChatCompletionRequestFunctionCall] = None,
tools: Optional[List[llama_types.ChatCompletionTool]] = None,
tool_choice: Optional[llama_types.ChatCompletionToolChoiceOption] = None,
temperature: float = 0.2,
top_p: float = 0.95,
top_k: int = 40,
stream: bool = False,
stop: Optional[Union[str, List[str]]] = [],
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seed: Optional[int] = None,
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response_format: Optional[
llama_types.ChatCompletionRequestResponseFormat
] = None,
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max_tokens: Optional[int] = None,
presence_penalty: float = 0.0,
frequency_penalty: float = 0.0,
repeat_penalty: float = 1.1,
model: Optional[str] = None,
logit_bias: Optional[Dict[str, float]] = None,
# llama.cpp parameters
min_p: float = 0.05,
typical_p: float = 1.0,
tfs_z: float = 1.0,
mirostat_mode: int = 0,
mirostat_tau: float = 5.0,
mirostat_eta: float = 0.1,
logits_processor: Optional[llama.LogitsProcessorList] = None,
grammar: Optional[llama.LlamaGrammar] = None,
**kwargs, # type: ignore
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) -> Union[
llama_types.CreateChatCompletionResponse,
Iterator[llama_types.CreateChatCompletionStreamResponse],
]:
...
class LlamaChatCompletionHandlerNotFoundException(Exception):
pass
class LlamaChatCompletionHandlerRegistry(Singleton):
_chat_handlers: Dict[str, LlamaChatCompletionHandler] = {}
def register_chat_completion_handler(
self,
name: str,
chat_handler: LlamaChatCompletionHandler,
overwrite: bool = False,
):
if not overwrite and name in self._chat_handlers:
raise ValueError(
f"Formatter with name '{name}' is already registered. Use `overwrite=True` to overwrite it."
)
self._chat_handlers[name] = chat_handler
def unregister_chat_handler(self, name: str):
if name in self._chat_handlers:
del self._chat_handlers[name]
else:
raise ValueError(f"No formatter registered under the name '{name}'.")
def get_chat_completion_handler_by_name(
self, name: str
) -> LlamaChatCompletionHandler:
try:
chat_handler = self._chat_handlers[name]
return chat_handler
except KeyError:
raise LlamaChatCompletionHandlerNotFoundException(
f"Invalid chat handler: {name} (valid formats: {list(self._chat_handlers.keys())})"
)
def get_chat_completion_handler(name: str) -> LlamaChatCompletionHandler:
return LlamaChatCompletionHandlerRegistry().get_chat_completion_handler_by_name(
name
)
def register_chat_completion_handler(name: str):
def decorator(f: LlamaChatCompletionHandler):
LlamaChatCompletionHandlerRegistry().register_chat_completion_handler(name, f)
return f
return decorator
### Chat Formatter ###
@dataclasses.dataclass
class ChatFormatterResponse:
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"""Dataclass that stores completion parameters for a given chat format and
create_chat_completion request.
prompt contains the formatted prompt generated from the chat format and messages.
stop contains the stop token or list of stop tokens to use for the chat format."""
prompt: str
stop: Optional[Union[str, List[str]]] = None
class ChatFormatter(Protocol):
"""Base Protocol for a chat formatter. A chat formatter is a function that
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takes a list of messages and returns a chat format response which can be used
to generate a completion. The response can also include a stop token or list
of stop tokens to use for the completion."""
def __call__(
self,
*,
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
...
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class Jinja2ChatFormatter(ChatFormatter):
def __init__(
self,
template: str,
eos_token: str,
bos_token: str,
):
"""A chat formatter that uses jinja2 templates to format the prompt."""
self.template = template
self.eos_token = eos_token
self.bos_token = bos_token
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self._environment = jinja2.Environment(
loader=jinja2.BaseLoader(),
trim_blocks=True,
lstrip_blocks=True,
).from_string(self.template)
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def __call__(
self,
*,
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
messages = [
*messages,
llama_types.ChatCompletionRequestAssistantMessage(
role="assistant", content=""
),
]
prompt = self._environment.render(
messages=messages, eos_token=self.eos_token, bos_token=self.bos_token
)
return ChatFormatterResponse(prompt=prompt, stop=[self.eos_token])
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def to_chat_handler(self) -> LlamaChatCompletionHandler:
return chat_formatter_to_chat_completion_handler(self)
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def _convert_text_completion_to_chat(
completion: llama_types.Completion,
) -> llama_types.ChatCompletion:
assert "usage" in completion
return {
"id": "chat" + completion["id"],
"object": "chat.completion",
"created": completion["created"],
"model": completion["model"],
"choices": [
{
"index": 0,
"message": {
"role": "assistant",
"content": completion["choices"][0]["text"],
},
"finish_reason": completion["choices"][0]["finish_reason"],
}
],
"usage": completion["usage"],
}
def _convert_text_completion_chunks_to_chat(
chunks: Iterator[llama_types.CreateCompletionStreamResponse],
) -> Iterator[llama_types.ChatCompletionChunk]:
for i, chunk in enumerate(chunks):
if i == 0:
yield {
"id": "chat" + chunk["id"],
"model": chunk["model"],
"created": chunk["created"],
"object": "chat.completion.chunk",
"choices": [
{
"index": 0,
"delta": {
"role": "assistant",
},
"finish_reason": None,
}
],
}
yield {
"id": "chat" + chunk["id"],
"model": chunk["model"],
"created": chunk["created"],
"object": "chat.completion.chunk",
"choices": [
{
"index": 0,
"delta": {
"content": chunk["choices"][0]["text"],
}
if chunk["choices"][0]["finish_reason"] is None
else {},
"finish_reason": chunk["choices"][0]["finish_reason"],
}
],
}
def _convert_completion_to_chat(
completion_or_chunks: Union[
llama_types.CreateCompletionResponse,
Iterator[llama_types.CreateCompletionStreamResponse],
],
stream: bool = False,
) -> Union[
llama_types.CreateChatCompletionResponse, Iterator[llama_types.ChatCompletionChunk]
]:
if stream:
chunks: Iterator[llama_types.CreateCompletionStreamResponse] = completion_or_chunks # type: ignore
return _convert_text_completion_chunks_to_chat(chunks)
else:
completion: llama_types.Completion = completion_or_chunks # type: ignore
return _convert_text_completion_to_chat(completion)
def chat_formatter_to_chat_completion_handler(
chat_formatter: ChatFormatter,
) -> LlamaChatCompletionHandler:
def chat_completion_handler(
*,
llama: llama.Llama,
messages: List[llama_types.ChatCompletionRequestMessage],
functions: Optional[List[llama_types.ChatCompletionFunction]] = None,
function_call: Optional[llama_types.ChatCompletionRequestFunctionCall] = None,
tools: Optional[List[llama_types.ChatCompletionTool]] = None,
tool_choice: Optional[llama_types.ChatCompletionToolChoiceOption] = None,
temperature: float = 0.2,
top_p: float = 0.95,
top_k: int = 40,
min_p: float = 0.05,
typical_p: float = 1.0,
stream: bool = False,
stop: Optional[Union[str, List[str]]] = [],
seed: Optional[int] = None,
response_format: Optional[
llama_types.ChatCompletionRequestResponseFormat
] = None,
max_tokens: Optional[int] = None,
presence_penalty: float = 0.0,
frequency_penalty: float = 0.0,
repeat_penalty: float = 1.1,
tfs_z: float = 1.0,
mirostat_mode: int = 0,
mirostat_tau: float = 5.0,
mirostat_eta: float = 0.1,
model: Optional[str] = None,
logits_processor: Optional[llama.LogitsProcessorList] = None,
grammar: Optional[llama.LlamaGrammar] = None,
logit_bias: Optional[Dict[str, float]] = None,
**kwargs, # type: ignore
) -> Union[
llama_types.CreateChatCompletionResponse,
Iterator[llama_types.CreateChatCompletionStreamResponse],
]:
result = chat_formatter(
messages=messages,
functions=functions,
function_call=function_call,
)
prompt = result.prompt
if result.stop is not None:
stop = [] if stop is None else [stop] if isinstance(stop, str) else stop
rstop = result.stop if isinstance(result.stop, list) else [result.stop]
stop = stop + rstop
if response_format is not None and response_format["type"] == "json_object":
grammar = llama_grammar.LlamaGrammar.from_string(llama_grammar.JSON_GBNF)
completion_or_chunks = llama.create_completion(
prompt=prompt,
temperature=temperature,
top_p=top_p,
top_k=top_k,
min_p=min_p,
typical_p=typical_p,
stream=stream,
stop=stop,
seed=seed,
max_tokens=max_tokens,
presence_penalty=presence_penalty,
frequency_penalty=frequency_penalty,
repeat_penalty=repeat_penalty,
tfs_z=tfs_z,
mirostat_mode=mirostat_mode,
mirostat_tau=mirostat_tau,
mirostat_eta=mirostat_eta,
model=model,
logits_processor=logits_processor,
grammar=grammar,
logit_bias=logit_bias,
)
return _convert_completion_to_chat(completion_or_chunks, stream=stream)
return chat_completion_handler
def hf_autotokenizer_to_chat_formatter(
pretrained_model_name_or_path: Union[str, os.PathLike[str]]
) -> ChatFormatter:
# https://huggingface.co/docs/transformers/main/chat_templating
# https://huggingface.co/mistralai/Mistral-7B-Instruct-v0.1#instruction-format
# https://huggingface.co/mistralai/Mistral-7B-Instruct-v0.1/blob/main/tokenizer_config.json
from transformers import AutoTokenizer # type: ignore
tokenizer = AutoTokenizer.from_pretrained(pretrained_model_name_or_path) # type: ignore
def format_autotokenizer(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
tokenizer.use_default_system_prompt = False # type: ignore
prompt: str = tokenizer.apply_chat_template(messages, tokenize=False) # type: ignore
assert isinstance(prompt, str)
# Return formatted prompt and eos token by default
return ChatFormatterResponse(prompt=prompt, stop=tokenizer.eos_token)
return format_autotokenizer
def hf_autotokenizer_to_chat_completion_handler(
pretrained_model_name_or_path: Union[str, os.PathLike[str]]
) -> LlamaChatCompletionHandler:
chat_formatter = hf_autotokenizer_to_chat_formatter(pretrained_model_name_or_path)
return chat_formatter_to_chat_completion_handler(chat_formatter)
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def hf_tokenizer_config_to_chat_formatter(
tokenizer_config: Dict[str, Any]
) -> ChatFormatter:
assert isinstance(tokenizer_config, dict)
assert "chat_template" in tokenizer_config
assert isinstance(tokenizer_config["chat_template"], str)
chat_template = tokenizer_config["chat_template"]
assert "bos_token" in tokenizer_config
assert isinstance(tokenizer_config["bos_token"], str)
bos_token = tokenizer_config["bos_token"]
assert "eos_token" in tokenizer_config
assert isinstance(tokenizer_config["eos_token"], str)
eos_token = tokenizer_config["eos_token"]
env = jinja2.Environment(
loader=jinja2.BaseLoader(),
trim_blocks=True,
lstrip_blocks=True,
).from_string(chat_template)
def format_autotokenizer(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
# TODO: veryify this is correct
# Add a blank assistant message to the end of the messages to prompt the model to generate a response
prompt = env.render(
messages=[
*messages,
llama_types.ChatCompletionRequestAssistantMessage(
role="assistant", content=""
),
],
bos_token=bos_token,
eos_token=eos_token,
)
return ChatFormatterResponse(prompt=prompt, stop=eos_token)
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return format_autotokenizer
def hf_tokenizer_config_to_chat_completion_handler(
tokenizer_config: Dict[str, Any],
) -> LlamaChatCompletionHandler:
chat_formatter = hf_tokenizer_config_to_chat_formatter(tokenizer_config)
return chat_formatter_to_chat_completion_handler(chat_formatter)
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### Utility functions for formatting chat prompts ###
def _get_system_message(
messages: List[llama_types.ChatCompletionRequestMessage],
) -> str:
"""Get the first system message."""
for message in messages:
if message["role"] == "system":
return message["content"] or ""
return ""
def _map_roles(
messages: List[llama_types.ChatCompletionRequestMessage],
role_map: Dict[str, str],
) -> List[Tuple[str, Optional[str]]]:
"""Map the message roles."""
output: List[Tuple[str, Optional[str]]] = []
for message in messages:
role = message["role"]
if role in role_map:
content: str | None = (
message["content"] if isinstance(message["content"], str) else None
)
output.append((role_map[role], content))
return output
def _format_llama2(
system_message: str, messages: List[Tuple[str, Optional[str]]], sep: str, sep2: str
) -> str:
"""Format the prompt with the llama2 style."""
seps = [sep, sep2]
ret = system_message + sep
for i, (role, message) in enumerate(messages):
if system_message and i == 0:
m = message or ""
ret += m + seps[i % 2]
elif message:
ret += role + message + " " + seps[i % 2]
else:
ret += role + " "
return ret
def _format_add_colon_single(
system_message: str, messages: List[Tuple[str, Optional[str]]], sep: str
) -> str:
"""Format the prompt with the add-colon-single style."""
ret = system_message + sep
for role, message in messages:
if message:
ret += role + ": " + message + sep
else:
ret += role + ":"
return ret
def _format_add_colon_two(
system_message: str, messages: List[Tuple[str, Optional[str]]], sep: str, sep2: str
) -> str:
"""Format the prompt with the add-colon-two style."""
seps = [sep, sep2]
ret = system_message + seps[0]
for i, (role, message) in enumerate(messages):
if message:
ret += role + ": " + message + seps[i % 2]
else:
ret += role + ":"
return ret
def _format_no_colon_single(
system_message: str, messages: List[Tuple[str, Optional[str]]], sep: str
) -> str:
"""Format the prompt with the no-colon-single style."""
ret = system_message
for role, message in messages:
if message:
ret += role + message + sep
else:
ret += role
return ret
def _format_add_colon_space_single(
system_message: str, messages: List[Tuple[str, Optional[str]]], sep: str
) -> str:
"""Format the prompt with the add-colon-space-single style."""
ret = system_message + sep
for role, message in messages:
if message:
ret += role + ": " + message + sep
else:
ret += role + ": " # must be end with a space
return ret
def _format_chatml(
system_message: str, messages: List[Tuple[str, Optional[str]]], sep: str
) -> str:
"""Format the prompt with the chatml style."""
ret = "" if system_message == "" else system_message + sep + "\n"
for role, message in messages:
if message:
ret += role + "\n" + message + sep + "\n"
else:
ret += role + "\n"
return ret
def _format_chatglm3(
system_message: str, messages: List[Tuple[str, Optional[str]]], sep: str
) -> str:
"""Format the prompt with the chatglm3 style."""
ret = ""
if system_message:
ret += system_message
for role, message in messages:
if message:
ret += role + "\n" + " " + message
else:
ret += role
return ret
### Chat Formats ###
def register_chat_format(name: str):
def decorator(f: ChatFormatter):
chat_completion_handler = chat_formatter_to_chat_completion_handler(f)
LlamaChatCompletionHandlerRegistry().register_chat_completion_handler(
name, chat_completion_handler
)
return f
return decorator
# see https://github.com/huggingface/transformers/blob/main/src/transformers/models/llama/tokenization_llama.py
# system prompt is "embedded" in the first message
@register_chat_format("llama-2")
def format_llama2(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
_system_template = "<s>[INST] <<SYS>>\n{system_message}\n<</SYS>>"
_roles = dict(user="<s>[INST]", assistant="[/INST]")
_messages = _map_roles(messages, _roles)
system_message = _get_system_message(messages)
if system_message:
system_message = _system_template.format(system_message=system_message)
_prompt = _format_llama2(system_message, _messages, " ", "</s>") + "[/INST]"
return ChatFormatterResponse(prompt=_prompt)
@register_chat_format("alpaca")
def format_alpaca(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
_roles = dict(user="### Instruction", assistant="### Response")
_sep = "\n\n"
_sep2 = "</s>"
system_message = _get_system_message(messages)
_messages = _map_roles(messages, _roles)
_prompt = _format_add_colon_two(system_message, _messages, _sep, _sep2)
return ChatFormatterResponse(prompt=_prompt)
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@register_chat_format("qwen")
def format_qwen(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
_roles = dict(user="<|im_start|>user", assistant="<|im_start|>assistant")
system_message = "You are a helpful assistant."
system_template = "<|im_start|>system\n{system_message}"
system_message = system_template.format(system_message=system_message)
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_messages = _map_roles(messages, _roles)
_messages.append((_roles["assistant"], None))
_sep = "<|im_end|>"
_prompt = _format_chatml(system_message, _messages, _sep)
_sep2 = "<|endoftext|>"
return ChatFormatterResponse(prompt=_prompt, stop=_sep2)
@register_chat_format("vicuna")
def format(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
_system_message = "A chat between a curious user and an artificial intelligence assistant. The assistant gives helpful, detailed, and polite answers to the user's questions."
_roles = dict(user="USER", assistant="ASSISTANT")
_sep = " "
_sep2 = "</s>"
system_message = _system_message
_messages = _map_roles(messages, _roles)
_messages.append((_roles["assistant"], None))
_prompt = _format_add_colon_two(system_message, _messages, _sep, _sep2)
return ChatFormatterResponse(prompt=_prompt)
@register_chat_format("oasst_llama")
def format_oasst_llama(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
_system_template = "[INST] <<SYS>>\n{system_message}\n<</SYS>>\n\n"
_roles = dict(user="<|prompter|>", assistant="<|assistant|>")
_sep = "</s>"
system_message = _get_system_message(messages)
system_message = _system_template.format(system_message=system_message)
_messages = _map_roles(messages, _roles)
_messages.append((_roles["assistant"], None))
_prompt = _format_no_colon_single(system_message, _messages, _sep)
return ChatFormatterResponse(prompt=_prompt)
@register_chat_format("baichuan-2")
def format_baichuan2(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
_system_template = "{system_message}"
_roles = dict(user="<reserved_106>", assistant="<reserved_107>")
_sep = ""
system_message = _get_system_message(messages)
system_message = _system_template.format(system_message=system_message)
_messages = _map_roles(messages, _roles)
_messages.append((_roles["assistant"], None))
_prompt = _format_no_colon_single(system_message, _messages, _sep)
return ChatFormatterResponse(prompt=_prompt)
@register_chat_format("baichuan")
def format_baichuan(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
_system_template = "{system_message}"
_roles = dict(user="<reserved_102>", assistant="<reserved_103>")
_sep = ""
system_message = _get_system_message(messages)
system_message = _system_template.format(system_message=system_message)
_messages = _map_roles(messages, _roles)
_messages.append((_roles["assistant"], None))
_prompt = _format_no_colon_single(system_message, _messages, _sep)
return ChatFormatterResponse(prompt=_prompt)
@register_chat_format("openbuddy")
def format_openbuddy(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
_system_message = """Consider a conversation between User (a human) and Assistant (named Buddy).
Buddy is an INTP-T, a friendly, intelligent and multilingual AI assistant, by OpenBuddy team. GitHub: https://github.com/OpenBuddy/OpenBuddy
Buddy cannot access the Internet.
Buddy can fluently speak the user's language (e.g. English, Chinese).
Buddy can generate poems, stories, code, essays, songs, parodies, and more.
Buddy possesses vast knowledge about the world, history, and culture.
Buddy's responses are always safe, creative, high-quality, human-like, and interesting.
Buddy strictly refuses to discuss political, NSFW, or other unsafe topics.
User: Hi.
Assistant: Hi, I'm Buddy, your AI assistant. How can I help you today?"""
_roles = dict(user="User", assistant="Assistant")
_sep = "\n"
system_message = _system_message
_messages = _map_roles(messages, _roles)
_messages.append((_roles["assistant"], None))
_prompt = _format_add_colon_single(system_message, _messages, _sep)
return ChatFormatterResponse(prompt=_prompt)
@register_chat_format("redpajama-incite")
def format_redpajama_incite(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
_system_message = _get_system_message(messages)
_roles = dict(user="<human>", assistant="<bot>")
_sep = "\n"
_stop = "<human>"
system_message = _system_message
_messages = _map_roles(messages, _roles)
_messages.append((_roles["assistant"], None))
_prompt = _format_add_colon_single(system_message, _messages, _sep)
return ChatFormatterResponse(prompt=_prompt, stop=_stop)
@register_chat_format("snoozy")
def format_snoozy(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
system_template = "### Instruction:\n{system_message}"
default_system_message = "The prompt below is a question to answer, a task to complete, or a conversation to respond to; decide which and write an appropriate response."
_system_message = _get_system_message(messages)
_system_message = (
_system_message if _system_message != "" else default_system_message
)
system_message = system_template.format(system_message=_system_message)
_roles = dict(user="### Prompt", assistant="### Response")
_sep = "\n"
_stop = "###"
system_message = _system_message
_messages = _map_roles(messages, _roles)
_messages.append((_roles["assistant"], None))
_prompt = _format_add_colon_single(system_message, _messages, _sep)
return ChatFormatterResponse(prompt=_prompt, stop=_stop)
@register_chat_format("phind")
def format_phind(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
_roles = dict(user="### User Message", assistant="### Assistant")
_sep = "\n\n"
_system_message = "### System Prompt\nYou are an intelligent programming assistant."
_messages = _map_roles(messages, _roles)
_messages.append((_roles["assistant"], None))
_prompt = _format_add_colon_single(_system_message, _messages, _sep)
return ChatFormatterResponse(prompt=_prompt)
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@register_chat_format("intel")
def format_intel(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
_roles = dict(user="### User:", assistant="### Assistant:")
_sep = "\n"
_system_message = "### System:\n{system_message}"
_messages = _map_roles(messages, _roles)
_messages.append((_roles["assistant"], None))
_prompt = _format_add_colon_single(_system_message, _messages, _sep)
return ChatFormatterResponse(prompt=_prompt)
@register_chat_format("open-orca")
def format_open_orca(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
system_template = "{system_message}"
system_message = (
"You are a helpful assistant. Please answer truthfully and write out your "
"thinking step by step to be sure you get the right answer. If you make a mistake or encounter "
"an error in your thinking, say so out loud and attempt to correct it. If you don't know or "
"aren't sure about something, say so clearly. You will act as a professional logician, mathematician, "
"and physicist. You will also act as the most appropriate type of expert to answer any particular "
"question or solve the relevant problem; state which expert type your are, if so. Also think of "
"any particular named expert that would be ideal to answer the relevant question or solve the "
"relevant problem; name and act as them, if appropriate."
)
roles = ("User", "Assistant")
sep = "<|end_of_turn|>\n"
# stop_token_ids=[32000, 32001], # "<|end_of_turn|>"
stop_str = "User"
system_message = system_template.format(system_message=system_message)
_messages = _map_roles(messages, dict(zip(roles, roles)))
_messages.append((roles[1], None))
_prompt = _format_add_colon_space_single(system_message, _messages, sep)
return ChatFormatterResponse(prompt=_prompt, stop=stop_str)
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@register_chat_format("mistrallite")
def format_mistrallite(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
_roles = dict(user="<|prompter|>", assistant="</s>\n<|assistant|>")
_sep = " "
system_template = """<|system|>{system_message}</s>"""
system_message = _get_system_message(messages)
system_message = system_template.format(system_message=system_message)
_messages = _map_roles(messages, _roles)
_messages.append((_roles["assistant"], None))
_prompt = _format_no_colon_single(system_message, _messages, _sep)
return ChatFormatterResponse(prompt=_prompt)
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@register_chat_format("zephyr")
def format_zephyr(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
system_template = """<|system|>
{system_message}"""
system_message = _get_system_message(messages)
system_message = system_template.format(system_message=system_message)
_roles = dict(user="<|user|>\n", assistant="<|assistant|>\n")
_sep = "</s>"
_messages = _map_roles(messages, _roles)
_messages.append((_roles["assistant"], None))
_prompt = _format_chatml(system_message, _messages, _sep)
return ChatFormatterResponse(prompt=_prompt, stop=_sep)
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@register_chat_format("pygmalion")
def format_pygmalion(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
system_template = """<|system|>{system_message}"""
system_message = _get_system_message(messages)
system_message = system_template.format(system_message=system_message)
_roles = dict(user="<|user|>", assistant="<|model|>")
_sep = "\n"
_messages = _map_roles(messages, _roles)
_messages.append((_roles["assistant"], None))
_prompt = _format_chatml(system_message, _messages, _sep)
return ChatFormatterResponse(prompt=_prompt, stop=_sep)
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@register_chat_format("chatml")
def format_chatml(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
system_template = """<|im_start|>system
{system_message}"""
system_message = _get_system_message(messages)
system_message = system_template.format(system_message=system_message)
_roles = dict(user="<|im_start|>user", assistant="<|im_start|>assistant")
_sep = "<|im_end|>"
_messages = _map_roles(messages, _roles)
_messages.append((_roles["assistant"], None))
_prompt = _format_chatml(system_message, _messages, _sep)
return ChatFormatterResponse(prompt=_prompt, stop=_sep)
@register_chat_format("chatglm3")
def format_chatglm3(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
system_template = """<|system|>
{system_message}"""
system_message = _get_system_message(messages)
system_message = system_template.format(system_message=system_message)
_roles = dict(user="<|user|>", assistant="<|assistant|>")
_sep = "</s>"
_messages = _map_roles(messages, _roles)
_messages.append((_roles["assistant"], None))
_prompt = _format_chatglm3(system_message, _messages, _sep)
return ChatFormatterResponse(prompt=_prompt, stop=_sep)
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@register_chat_format("openchat")
def format_openchat(
messages: List[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
) -> ChatFormatterResponse:
system_template = "{system_message}<|end_of_turn|>"
system_message = _get_system_message(messages)
system_message = system_template.format(system_message=system_message)
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_roles = dict(
user="GPT4 Correct User: ", assistant="<|end_of_turn|>GPT4 Correct Assistant: "
)
_sep = "<|end_of_turn|>"
_messages = _map_roles(messages, _roles)
_messages.append((_roles["assistant"], None))
_prompt = _format_chatml(system_message, _messages, _sep)
return ChatFormatterResponse(prompt=_prompt, stop=_sep)
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# Chat format for Saiga models, see more details and available models:
# https://huggingface.co/collections/IlyaGusev/saiga2-saigamistral-6505d4ccc3d1e53166b636cd
@register_chat_format("saiga")
def format_saiga(
messages: list[llama_types.ChatCompletionRequestMessage],
**kwargs: Any,
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) -> ChatFormatterResponse:
_message_template = "<s>{role}\n{content}</s>"
_roles = dict(user="user", bot="bot", system="system")
_messages = _map_roles(messages, _roles)
_prompt = ""
for role, content in _messages:
if content:
_prompt += _message_template.format(role=role, content=content)
else:
_prompt += f"<s>{role}\n"
# Response template
_prompt += "<s>bot"
return ChatFormatterResponse(prompt=_prompt.strip())
@register_chat_completion_handler("functionary")
def functionary_chat_handler(
llama: llama.Llama,
messages: List[llama_types.ChatCompletionRequestMessage],
functions: Optional[List[llama_types.ChatCompletionFunction]] = None,
function_call: Optional[llama_types.ChatCompletionRequestFunctionCall] = None,
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tools: Optional[List[llama_types.ChatCompletionTool]] = None,
tool_choice: Optional[llama_types.ChatCompletionToolChoiceOption] = None,
temperature: float = 0.2,
top_p: float = 0.95,
top_k: int = 40,
min_p: float = 0.05,
typical_p: float = 1.0,
stream: bool = False,
stop: Optional[Union[str, List[str]]] = [],
response_format: Optional[llama_types.ChatCompletionRequestResponseFormat] = None,
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max_tokens: Optional[int] = None,
presence_penalty: float = 0.0,
frequency_penalty: float = 0.0,
repeat_penalty: float = 1.1,
tfs_z: float = 1.0,
mirostat_mode: int = 0,
mirostat_tau: float = 5.0,
mirostat_eta: float = 0.1,
model: Optional[str] = None,
logits_processor: Optional[llama.LogitsProcessorList] = None,
grammar: Optional[llama.LlamaGrammar] = None,
**kwargs, # type: ignore
) -> Union[llama_types.ChatCompletion, Iterator[llama_types.ChatCompletionChunk]]:
SYSTEM_MESSAGE = """A chat between a curious user and an artificial intelligence assistant. The assistant gives helpful, detailed, and polite answers to the user's questions. The assistant calls functions with appropriate input when necessary"""
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def generate_type_definition(
param: Dict[str, llama_types.JsonType], indent_level: int, shared_defs
) -> str:
indent = " " * indent_level
if "$ref" in param:
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# Reference to a shared definition
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ref_name = param["$ref"].split("/")[
-1
] # Extract the type name from the reference
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return ref_name
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elif param.get("type") == "array":
items = param.get("items", {})
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item_type = generate_type_definition(items, indent_level + 1, shared_defs)
return f"Array<{item_type}>"
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elif param.get("type") == "object":
properties = param.get("properties", {})
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nested_schema = "{\n"
for nested_param_name, nested_param in properties.items():
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nested_param_type = generate_type_definition(
nested_param, indent_level + 1, shared_defs
)
nested_schema += (
f"{indent} {nested_param_name}: {nested_param_type},\n"
)
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nested_schema += indent + "}"
return nested_schema
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elif "enum" in param:
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# Enum type
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return " | ".join([f'"{enum_value}"' for enum_value in param["enum"]])
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else:
# Simple type
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return param.get("type", "any")
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def generate_shared_definitions(shared_defs, indent_level: int) -> str:
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indent = " " * indent_level
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shared_definitions = ""
for def_name, def_properties in shared_defs.items():
shared_definitions += f"{indent}type {def_name} = "
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if def_properties.get("type") == "object":
shared_definitions += generate_type_definition(
def_properties, indent_level, shared_defs
)
elif "enum" in def_properties:
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# Enum type
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shared_definitions += " | ".join(
[f'"{enum_value}"' for enum_value in def_properties["enum"]]
)
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shared_definitions += ";\n"
return shared_definitions
def generate_schema_from_functions(functions, namespace="functions") -> str:
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schema = (
"// Supported function definitions that should be called when necessary.\n"
)
schema += f"namespace {namespace} {{\n\n"
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# Generate shared definitions
shared_definitions = {}
for function in functions:
parameters = function.get("parameters", {})
shared_definitions.update(parameters.get("$defs", {}))
schema += generate_shared_definitions(shared_definitions, 1)
for function in functions:
function_name = function["name"]
description = function.get("description", "")
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parameters = function.get("parameters", {})
required_params = parameters.get("required", [])
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schema += f" // {description}\n"
schema += f" type {function_name} = (_: {{\n"
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for param_name, param in parameters.get("properties", {}).items():
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param_description = param.get("description", "")
param_type = generate_type_definition(param, 2, shared_definitions)
optional_indicator = "" if param_name in required_params else "?"
schema += f" // {param_description}\n"
schema += f" {param_name}{optional_indicator}: {param_type},\n"
schema += " }) => any;\n\n"
schema += "}} // namespace {}\n".format(namespace)
return schema
def prepare_messages_for_inference(
messages: List[llama_types.ChatCompletionRequestMessage],
functions: Optional[List[llama_types.ChatCompletionFunctions]] = None,
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tools: Optional[List[llama_types.ChatCompletionTool]] = None,
):
all_messages: List[llama_types.ChatCompletionRequestMessage] = []
if functions is not None:
all_messages.append(
llama_types.ChatCompletionRequestSystemMessage(
role="system", content=generate_schema_from_functions(functions)
)
)
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if tools is not None:
all_messages.append(
llama_types.ChatCompletionRequestSystemMessage(
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role="system",
content=generate_schema_from_functions(
[
tool["function"]
for tool in tools
if tool["type"] == "function"
]
),
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)
)
all_messages.append(
llama_types.ChatCompletionRequestSystemMessage(
role="system", content=SYSTEM_MESSAGE
)
)
for message in messages:
# Function call responses
if message["role"] == "function" and "name" in message:
message["name"] = f"functions.{message['name']}"
# Function call requests by assistant
if "function_call" in message:
message["function_call"][
"name"
] = f"functions.{message['function_call']['name']}"
all_messages.append(message)
all_messages.append(
llama_types.ChatCompletionRequestAssistantMessage(
role="assistant", content=None
)
)
def message_to_str(msg: llama_types.ChatCompletionRequestMessage):
if msg["role"] == "system":
return f"system:\n{msg['content']}\n"
elif msg["role"] == "function" and "name" in msg:
return f"function name={msg['name']}:\n{msg['content']}\n"
elif msg["role"] == "function" and "function_call" in msg:
return f"function name={msg['function_call']['name']}:\n{msg['function_call']['arguments']}\n"
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elif msg["role"] == "tool":
if msg["content"] is not None:
return f"function name={msg['tool_call_id']}:\n{msg['content']}\n"
else:
return f"function name={msg['tool_call_id']}\n"
elif msg["role"] == "user":
if msg["content"] is None:
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return "user:\n</s></s>\n"
else:
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return f"user:\n</s>{msg['content']}</s>\n"
elif msg["role"] == "assistant":
if msg["content"] is not None and "function_call" in msg:
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return f"assistant:\n{msg['content']}\nassistant to={msg['function_call']['name']}:\n{msg['function_call']['arguments']}</s>\n"
elif "function_call" in msg:
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return f"assistant to={msg['function_call']['name']}:\n{msg['function_call']['arguments']}</s>\n"
elif "tool_calls" in msg and len(msg["tool_calls"]) > 0:
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for tool_call in msg[
"tool_calls"
]: # NOTE: probably doesn't work with the functionary model
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return f"assistant to={tool_call['id']}:\n{tool_call['function']['arguments']}</s>\n"
elif msg["content"] is None:
return "assistant"
else:
return f"assistant:\n{msg['content']}\n"
else:
raise ValueError(f"Unsupported role: {msg['role']}")
return "".join([message_to_str(msg) for msg in all_messages])
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if tools is not None:
functions = [tool["function"] for tool in tools if tool["type"] == "function"]
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if tool_choice is not None:
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function_call = (
tool_choice if isinstance(tool_choice, str) else tool_choice["function"]
)
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prompt = prepare_messages_for_inference(messages, functions, tools)
if function_call is None and (functions is None or len(functions) == 0):
completion_or_completion_chunks = llama.create_completion(
prompt=prompt + ":\n",
temperature=temperature,
top_p=top_p,
top_k=top_k,
min_p=min_p,
typical_p=typical_p,
stream=stream,
stop=["user:", "</s>"],
max_tokens=max_tokens,
presence_penalty=presence_penalty,
frequency_penalty=frequency_penalty,
repeat_penalty=repeat_penalty,
tfs_z=tfs_z,
mirostat_mode=mirostat_mode,
mirostat_tau=mirostat_tau,
mirostat_eta=mirostat_eta,
model=model,
logits_processor=logits_processor,
grammar=grammar,
)
return _convert_completion_to_chat(completion_or_completion_chunks, stream=stream) # type: ignore
if function_call is None or (
isinstance(function_call, str) and function_call == "auto"
):
stop = "\n"
completion: llama_types.Completion = llama.create_completion(
prompt=prompt, stop=stop, stream=False
) # type: ignore
completion_text = completion["choices"][0]["text"]
# strip " to=functions." and ending ":"
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function_call = completion_text.split(".")[-1][:-1]
new_prompt = prompt + completion_text + stop
elif isinstance(function_call, str) and function_call != "none":
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new_prompt = prompt + f":\n"
elif isinstance(function_call, dict):
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new_prompt = prompt + f" to=functions.{function_call['name']}:\n"
function_call = function_call["name"]
else:
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new_prompt = prompt + f":\n"
function_body = None
for function in functions or []:
if function["name"] == function_call:
function_body = function["parameters"]
break
for tool in tools or []:
if tool["type"] == "function" and tool["function"]["name"] == function_call:
function_body = tool["function"]["parameters"]
break
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if function_body is not None:
try:
with suppress_stdout_stderr(disable=llama.verbose):
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grammar_text = llama_grammar.json_schema_to_gbnf(
json.dumps(function_body)
)
grammar = llama_grammar.LlamaGrammar.from_string(
llama_grammar.json_schema_to_gbnf(json.dumps(function_body))
)
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print(grammar_text)
except Exception as e:
if llama.verbose:
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print(
"Failed to parse function body as JSON schema, falling back to default grammar"
)
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print(e)
with suppress_stdout_stderr(disable=llama.verbose):
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grammar = llama_grammar.LlamaGrammar.from_string(
llama_grammar.JSON_GBNF
)
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else:
with suppress_stdout_stderr(disable=llama.verbose):
grammar = llama_grammar.LlamaGrammar.from_string(llama_grammar.JSON_GBNF)
completion: llama_types.Completion = llama.create_completion(
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prompt=new_prompt,
stop=["user:", "</s>"],
stream=False,
grammar=grammar,
max_tokens=max_tokens,
temperature=temperature,
top_p=top_p,
top_k=top_k,
min_p=min_p,
typical_p=typical_p,
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presence_penalty=presence_penalty,
frequency_penalty=frequency_penalty,
repeat_penalty=repeat_penalty,
tfs_z=tfs_z,
mirostat_mode=mirostat_mode,
mirostat_tau=mirostat_tau,
mirostat_eta=mirostat_eta,
model=model,
logits_processor=logits_processor,
) # type: ignore
assert "usage" in completion
assert isinstance(function_call, str)
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assert stream is False # TODO: support stream mode
if llama.verbose:
print(new_prompt)
print(completion["choices"][0]["text"])
# TODO: support stream mode
return llama_types.CreateChatCompletionResponse(
id="chat" + completion["id"],
object="chat.completion",
created=completion["created"],
model=completion["model"],
choices=[
{
"index": 0,
"message": {
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"role": "assistant",
"content": None,
"function_call": {
"name": function_call,
"arguments": completion["choices"][0]["text"],
},
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"tool_calls": [
{
"id": function_call,
"type": "function",
"function": {
"name": function_call,
"arguments": completion["choices"][0]["text"],
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},
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}
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],
},
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"finish_reason": "tool_calls",
}
],
usage=completion["usage"],
)
class Llava15ChatHandler:
_clip_free = None
def __init__(self, clip_model_path: str, verbose: bool = False):
import llama_cpp.llava_cpp as llava_cpp
self._llava_cpp = llava_cpp
self.clip_model_path = clip_model_path
self.verbose = verbose
self._clip_free = self._llava_cpp._libllava.clip_free # type: ignore
with suppress_stdout_stderr(disable=self.verbose):
self.clip_ctx = self._llava_cpp.clip_model_load(
self.clip_model_path.encode(), 0
)
def __del__(self):
with suppress_stdout_stderr(disable=self.verbose):
if self.clip_ctx is not None and self._clip_free is not None:
self._clip_free(self.clip_ctx)
self.clip_ctx = None
def load_image(self, image_url: str) -> bytes:
if image_url.startswith("data:"):
import base64
image_bytes = base64.b64decode(image_url.split(",")[1])
return image_bytes
else:
import urllib.request
with urllib.request.urlopen(image_url) as f:
image_bytes = f.read()
return image_bytes
def __call__(
self,
*,
llama: llama.Llama,
messages: List[llama_types.ChatCompletionRequestMessage],
functions: Optional[List[llama_types.ChatCompletionFunction]] = None,
function_call: Optional[llama_types.ChatCompletionRequestFunctionCall] = None,
tools: Optional[List[llama_types.ChatCompletionTool]] = None,
tool_choice: Optional[llama_types.ChatCompletionToolChoiceOption] = None,
temperature: float = 0.2,
top_p: float = 0.95,
top_k: int = 40,
min_p: float = 0.05,
typical_p: float = 1.0,
stream: bool = False,
stop: Optional[Union[str, List[str]]] = [],
response_format: Optional[
llama_types.ChatCompletionRequestResponseFormat
] = None,
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max_tokens: Optional[int] = None,
presence_penalty: float = 0.0,
frequency_penalty: float = 0.0,
repeat_penalty: float = 1.1,
tfs_z: float = 1.0,
mirostat_mode: int = 0,
mirostat_tau: float = 5.0,
mirostat_eta: float = 0.1,
model: Optional[str] = None,
logits_processor: Optional[llama.LogitsProcessorList] = None,
grammar: Optional[llama.LlamaGrammar] = None,
**kwargs, # type: ignore
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) -> Union[
llama_types.CreateChatCompletionResponse,
Iterator[llama_types.CreateChatCompletionStreamResponse],
]:
assert (
llama.context_params.logits_all is True
) # BUG: logits_all=True is required for llava
assert self.clip_ctx is not None
system_prompt = _get_system_message(messages)
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system_prompt = (
system_prompt
if system_prompt != ""
else "A chat between a curious human and an artificial intelligence assistant. The assistant gives helpful, detailed, and polite answers to the human's questions."
)
user_role = "\nUSER:"
assistant_role = "\nASSISTANT:"
llama.reset()
llama.eval(llama.tokenize(system_prompt.encode("utf8"), add_bos=True))
for message in messages:
if message["role"] == "user" and message["content"] is not None:
if isinstance(message["content"], str):
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llama.eval(
llama.tokenize(
f"{user_role} {message['content']}".encode("utf8"),
add_bos=False,
)
)
else:
assert isinstance(message["content"], list)
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llama.eval(
llama.tokenize(f"{user_role} ".encode("utf8"), add_bos=False)
)
for content in message["content"]:
if content["type"] == "text":
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llama.eval(
llama.tokenize(
f"{content['text']}".encode("utf8"), add_bos=False
)
)
if content["type"] == "image_url":
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image_bytes = (
self.load_image(content["image_url"]["url"])
if isinstance(content["image_url"], dict)
else self.load_image(content["image_url"])
)
import array
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data_array = array.array("B", image_bytes)
c_ubyte_ptr = (
ctypes.c_ubyte * len(data_array)
).from_buffer(data_array)
with suppress_stdout_stderr(disable=self.verbose):
embed = (
self._llava_cpp.llava_image_embed_make_with_bytes(
ctx_clip=self.clip_ctx,
n_threads=llama.context_params.n_threads,
image_bytes=c_ubyte_ptr,
image_bytes_length=len(image_bytes),
)
)
try:
n_past = ctypes.c_int(llama.n_tokens)
n_past_p = ctypes.pointer(n_past)
with suppress_stdout_stderr(disable=self.verbose):
self._llava_cpp.llava_eval_image_embed(
ctx_llama=llama.ctx,
embed=embed,
n_batch=llama.n_batch,
n_past=n_past_p,
)
assert llama.n_ctx() >= n_past.value
llama.n_tokens = n_past.value
finally:
with suppress_stdout_stderr(disable=self.verbose):
self._llava_cpp.llava_image_embed_free(embed)
if message["role"] == "assistant" and message["content"] is not None:
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llama.eval(
llama.tokenize(
f"ASSISTANT: {message['content']}".encode("utf8"), add_bos=False
)
)
assert llama.n_ctx() >= llama.n_tokens
llama.eval(llama.tokenize(f"{assistant_role}".encode("utf8"), add_bos=False))
assert llama.n_ctx() >= llama.n_tokens
prompt = llama.input_ids[: llama.n_tokens].tolist()
if response_format is not None and response_format["type"] == "json_object":
with suppress_stdout_stderr(disable=self.verbose):
grammar = llama_grammar.LlamaGrammar.from_string(
llama_grammar.JSON_GBNF
)
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return _convert_completion_to_chat(
llama.create_completion(
prompt=prompt,
temperature=temperature,
top_p=top_p,
top_k=top_k,
min_p=min_p,
typical_p=typical_p,
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stream=stream,
stop=stop,
max_tokens=max_tokens,
presence_penalty=presence_penalty,
frequency_penalty=frequency_penalty,
repeat_penalty=repeat_penalty,
tfs_z=tfs_z,
mirostat_mode=mirostat_mode,
mirostat_tau=mirostat_tau,
mirostat_eta=mirostat_eta,
model=model,
logits_processor=logits_processor,
grammar=grammar,
),
stream=stream,
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)