mirror of
https://github.com/oobabooga/text-generation-webui.git
synced 2024-10-01 01:26:03 -04:00
507 lines
19 KiB
Python
507 lines
19 KiB
Python
import copy
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import time
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from collections import deque
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import tiktoken
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import torch
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import torch.nn.functional as F
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from extensions.openai.errors import InvalidRequestError
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from extensions.openai.utils import debug_msg
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from modules import shared
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from modules.chat import (
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generate_chat_prompt,
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generate_chat_reply,
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load_character_memoized
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)
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from modules.presets import load_preset_memoized
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from modules.text_generation import decode, encode, generate_reply
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from transformers import LogitsProcessor, LogitsProcessorList
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class LogitsBiasProcessor(LogitsProcessor):
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def __init__(self, logit_bias={}):
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self.logit_bias = logit_bias
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if self.logit_bias:
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self.keys = list([int(key) for key in self.logit_bias.keys()])
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values = [self.logit_bias[str(key)] for key in self.keys]
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self.values = torch.tensor(values, dtype=torch.float, device=shared.model.device)
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debug_msg(f"{self})")
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def __call__(self, input_ids: torch.LongTensor, logits: torch.FloatTensor) -> torch.FloatTensor:
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if self.logit_bias:
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debug_msg(logits[0, self.keys], " + ", self.values)
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logits[0, self.keys] += self.values
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debug_msg(" --> ", logits[0, self.keys])
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debug_msg(" max/min ", float(torch.max(logits[0])), float(torch.min(logits[0])))
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return logits
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def __repr__(self):
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return f"<{self.__class__.__name__}(logit_bias={self.logit_bias})>"
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class LogprobProcessor(LogitsProcessor):
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def __init__(self, logprobs=None):
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self.logprobs = logprobs
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self.token_alternatives = {}
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def __call__(self, input_ids: torch.LongTensor, logits: torch.FloatTensor) -> torch.FloatTensor:
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if self.logprobs is not None: # 0-5
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log_e_probabilities = F.log_softmax(logits, dim=1)
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top_values, top_indices = torch.topk(log_e_probabilities, k=self.logprobs + 1)
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top_tokens = [decode(tok) for tok in top_indices[0]]
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top_probs = [float(x) for x in top_values[0]]
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self.token_alternatives = dict(zip(top_tokens, top_probs))
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debug_msg(repr(self))
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return logits
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def __repr__(self):
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return f"<{self.__class__.__name__}(logprobs={self.logprobs}, token_alternatives={self.token_alternatives})>"
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def convert_logprobs_to_tiktoken(model, logprobs):
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# more problems than it's worth.
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# try:
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# encoder = tiktoken.encoding_for_model(model)
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# # just pick the first one if it encodes to multiple tokens... 99.9% not required and maybe worse overall.
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# return dict([(encoder.decode([encoder.encode(token)[0]]), prob) for token, prob in logprobs.items()])
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# except KeyError:
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# # assume native tokens if we can't find the tokenizer
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# return logprobs
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return logprobs
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def process_parameters(body, is_legacy=False):
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generate_params = body
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max_tokens_str = 'length' if is_legacy else 'max_tokens'
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generate_params['max_new_tokens'] = body.pop(max_tokens_str)
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if generate_params['truncation_length'] == 0:
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generate_params['truncation_length'] = shared.settings['truncation_length']
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if body['preset'] is not None:
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preset = load_preset_memoized(body['preset'])
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generate_params.update(preset)
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generate_params['custom_stopping_strings'] = []
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if 'stop' in body: # str or array, max len 4 (ignored)
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if isinstance(body['stop'], str):
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generate_params['custom_stopping_strings'] = [body['stop']]
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elif isinstance(body['stop'], list):
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generate_params['custom_stopping_strings'] = body['stop']
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logits_processor = []
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logit_bias = body.get('logit_bias', None)
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if logit_bias: # {str: float, ...}
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# XXX convert tokens from tiktoken based on requested model
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# Ex.: 'logit_bias': {'1129': 100, '11442': 100, '16243': 100}
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try:
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encoder = tiktoken.encoding_for_model(generate_params['model'])
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new_logit_bias = {}
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for logit, bias in logit_bias.items():
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for x in encode(encoder.decode([int(logit)]), add_special_tokens=False)[0]:
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if int(x) in [0, 1, 2, 29871]: # XXX LLAMA tokens
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continue
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new_logit_bias[str(int(x))] = bias
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debug_msg('logit_bias_map', logit_bias, '->', new_logit_bias)
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logit_bias = new_logit_bias
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except KeyError:
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pass # assume native tokens if we can't find the tokenizer
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logits_processor = [LogitsBiasProcessor(logit_bias)]
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logprobs = None # coming to chat eventually
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if 'logprobs' in body:
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logprobs = body.get('logprobs', 0) # maybe cap at topk? don't clamp 0-5.
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generate_params['logprob_proc'] = LogprobProcessor(logprobs)
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logits_processor.extend([generate_params['logprob_proc']])
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else:
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logprobs = None
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if logits_processor: # requires logits_processor support
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generate_params['logits_processor'] = LogitsProcessorList(logits_processor)
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return generate_params
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def convert_history(history):
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'''
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Chat histories in this program are in the format [message, reply].
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This function converts OpenAI histories to that format.
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'''
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chat_dialogue = []
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current_message = ""
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current_reply = ""
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user_input = ""
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system_message = ""
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for entry in history:
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content = entry["content"]
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role = entry["role"]
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if role == "user":
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user_input = content
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if current_message:
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chat_dialogue.append([current_message, ''])
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current_message = ""
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current_message = content
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elif role == "assistant":
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current_reply = content
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if current_message:
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chat_dialogue.append([current_message, current_reply])
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current_message = ""
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current_reply = ""
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else:
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chat_dialogue.append(['', current_reply])
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elif role == "system":
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system_message = content
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# if current_message:
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# chat_dialogue.append([current_message, ''])
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return user_input, system_message, {'internal': chat_dialogue, 'visible': copy.deepcopy(chat_dialogue)}
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def chat_completions_common(body: dict, is_legacy: bool = False, stream=False) -> dict:
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if body.get('functions', []):
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raise InvalidRequestError(message="functions is not supported.", param='functions')
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if body.get('function_call', ''):
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raise InvalidRequestError(message="function_call is not supported.", param='function_call')
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if 'messages' not in body:
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raise InvalidRequestError(message="messages is required", param='messages')
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messages = body['messages']
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for m in messages:
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if 'role' not in m:
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raise InvalidRequestError(message="messages: missing role", param='messages')
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elif m['role'] == 'function':
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raise InvalidRequestError(message="role: function is not supported.", param='messages')
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if 'content' not in m:
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raise InvalidRequestError(message="messages: missing content", param='messages')
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# Chat Completions
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object_type = 'chat.completions' if not stream else 'chat.completions.chunk'
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created_time = int(time.time())
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cmpl_id = "chatcmpl-%d" % (int(time.time() * 1000000000))
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resp_list = 'data' if is_legacy else 'choices'
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# generation parameters
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generate_params = process_parameters(body, is_legacy=is_legacy)
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continue_ = body['continue_']
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# Instruction template
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instruction_template = body['instruction_template'] or shared.settings['instruction_template']
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instruction_template = "Alpaca" if instruction_template == "None" else instruction_template
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name1_instruct, name2_instruct, _, _, context_instruct, turn_template, system_message = load_character_memoized(instruction_template, '', '', instruct=True)
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name1_instruct = body['name1_instruct'] or name1_instruct
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name2_instruct = body['name2_instruct'] or name2_instruct
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turn_template = body['turn_template'] or turn_template
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context_instruct = body['context_instruct'] or context_instruct
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system_message = body['system_message'] or system_message
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# Chat character
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character = body['character'] or shared.settings['character']
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character = "Assistant" if character == "None" else character
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name1 = body['name1'] or shared.settings['name1']
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name1, name2, _, greeting, context, _, _ = load_character_memoized(character, name1, '', instruct=False)
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name2 = body['name2'] or name2
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context = body['context'] or context
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greeting = body['greeting'] or greeting
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# History
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user_input, custom_system_message, history = convert_history(messages)
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generate_params.update({
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'mode': body['mode'],
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'name1': name1,
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'name2': name2,
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'context': context,
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'greeting': greeting,
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'name1_instruct': name1_instruct,
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'name2_instruct': name2_instruct,
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'context_instruct': context_instruct,
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'system_message': system_message,
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'custom_system_message': custom_system_message,
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'turn_template': turn_template,
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'chat-instruct_command': body['chat_instruct_command'],
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'history': history,
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'stream': stream
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})
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max_tokens = generate_params['max_new_tokens']
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if max_tokens in [None, 0]:
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generate_params['max_new_tokens'] = 200
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generate_params['auto_max_new_tokens'] = True
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requested_model = generate_params.pop('model')
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logprob_proc = generate_params.pop('logprob_proc', None)
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def chat_streaming_chunk(content):
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# begin streaming
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chunk = {
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"id": cmpl_id,
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"object": object_type,
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"created": created_time,
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"model": shared.model_name,
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resp_list: [{
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"index": 0,
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"finish_reason": None,
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# So yeah... do both methods? delta and messages.
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"message": {'role': 'assistant', 'content': content},
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"delta": {'role': 'assistant', 'content': content},
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}],
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}
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if logprob_proc: # not official for chat yet
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top_logprobs = convert_logprobs_to_tiktoken(model=requested_model, logprobs=logprob_proc.token_alternatives)
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chunk[resp_list][0]["logprobs"] = {'top_logprobs': [top_logprobs]}
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# else:
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# chunk[resp_list][0]["logprobs"] = None
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return chunk
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if stream:
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yield chat_streaming_chunk('')
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# generate reply #######################################
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prompt = generate_chat_prompt(user_input, generate_params)
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token_count = len(encode(prompt)[0])
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debug_msg({'prompt': prompt, 'generate_params': generate_params})
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generator = generate_chat_reply(
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user_input, generate_params, regenerate=False, _continue=continue_, loading_message=False)
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answer = ''
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seen_content = ''
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completion_token_count = 0
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for a in generator:
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answer = a['internal'][-1][1]
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if stream:
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len_seen = len(seen_content)
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new_content = answer[len_seen:]
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if not new_content or chr(0xfffd) in new_content: # partial unicode character, don't send it yet.
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continue
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seen_content = answer
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chunk = chat_streaming_chunk(new_content)
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yield chunk
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completion_token_count = len(encode(answer)[0])
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stop_reason = "stop"
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if token_count + completion_token_count >= generate_params['truncation_length'] or completion_token_count >= generate_params['max_new_tokens']:
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stop_reason = "length"
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if stream:
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chunk = chat_streaming_chunk('')
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chunk[resp_list][0]['finish_reason'] = stop_reason
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chunk['usage'] = {
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"prompt_tokens": token_count,
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"completion_tokens": completion_token_count,
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"total_tokens": token_count + completion_token_count
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}
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yield chunk
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else:
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resp = {
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"id": cmpl_id,
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"object": object_type,
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"created": created_time,
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"model": shared.model_name,
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resp_list: [{
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"index": 0,
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"finish_reason": stop_reason,
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"message": {"role": "assistant", "content": answer}
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}],
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"usage": {
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"prompt_tokens": token_count,
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"completion_tokens": completion_token_count,
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"total_tokens": token_count + completion_token_count
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}
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}
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if logprob_proc: # not official for chat yet
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top_logprobs = convert_logprobs_to_tiktoken(model=requested_model, logprobs=logprob_proc.token_alternatives)
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resp[resp_list][0]["logprobs"] = {'top_logprobs': [top_logprobs]}
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# else:
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# resp[resp_list][0]["logprobs"] = None
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yield resp
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def completions_common(body: dict, is_legacy: bool = False, stream=False):
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object_type = 'text_completion.chunk' if stream else 'text_completion'
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created_time = int(time.time())
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cmpl_id = "conv-%d" % (int(time.time() * 1000000000))
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resp_list = 'data' if is_legacy else 'choices'
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prompt_str = 'context' if is_legacy else 'prompt'
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# ... encoded as a string, array of strings, array of tokens, or array of token arrays.
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if prompt_str not in body:
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raise InvalidRequestError("Missing required input", param=prompt_str)
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# common params
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generate_params = process_parameters(body, is_legacy=is_legacy)
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max_tokens = generate_params['max_new_tokens']
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generate_params['stream'] = stream
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requested_model = generate_params.pop('model')
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logprob_proc = generate_params.pop('logprob_proc', None)
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suffix = body['suffix'] if body['suffix'] else ''
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echo = body['echo']
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if not stream:
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prompt_arg = body[prompt_str]
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if isinstance(prompt_arg, str) or (isinstance(prompt_arg, list) and isinstance(prompt_arg[0], int)):
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prompt_arg = [prompt_arg]
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resp_list_data = []
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total_completion_token_count = 0
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total_prompt_token_count = 0
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for idx, prompt in enumerate(prompt_arg, start=0):
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if isinstance(prompt[0], int):
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# token lists
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if requested_model == shared.model_name:
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prompt = decode(prompt)[0]
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else:
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try:
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encoder = tiktoken.encoding_for_model(requested_model)
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prompt = encoder.decode(prompt)
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except KeyError:
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prompt = decode(prompt)[0]
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prefix = prompt if echo else ''
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token_count = len(encode(prompt)[0])
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total_prompt_token_count += token_count
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# generate reply #######################################
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debug_msg({'prompt': prompt, 'generate_params': generate_params})
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generator = generate_reply(prompt, generate_params, is_chat=False)
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answer = ''
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for a in generator:
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answer = a
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completion_token_count = len(encode(answer)[0])
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total_completion_token_count += completion_token_count
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stop_reason = "stop"
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if token_count + completion_token_count >= generate_params['truncation_length'] or completion_token_count >= max_tokens:
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stop_reason = "length"
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respi = {
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"index": idx,
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"finish_reason": stop_reason,
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"text": prefix + answer + suffix,
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"logprobs": {'top_logprobs': [logprob_proc.token_alternatives]} if logprob_proc else None,
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}
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resp_list_data.extend([respi])
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resp = {
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"id": cmpl_id,
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"object": object_type,
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"created": created_time,
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"model": shared.model_name,
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resp_list: resp_list_data,
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"usage": {
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"prompt_tokens": total_prompt_token_count,
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"completion_tokens": total_completion_token_count,
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"total_tokens": total_prompt_token_count + total_completion_token_count
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}
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}
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yield resp
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else:
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prompt = body[prompt_str]
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if isinstance(prompt, list):
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if prompt and isinstance(prompt[0], int):
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try:
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encoder = tiktoken.encoding_for_model(requested_model)
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prompt = encoder.decode(prompt)
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except KeyError:
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prompt = decode(prompt)[0]
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else:
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raise InvalidRequestError(message="API Batched generation not yet supported.", param=prompt_str)
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prefix = prompt if echo else ''
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token_count = len(encode(prompt)[0])
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def text_streaming_chunk(content):
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# begin streaming
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chunk = {
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"id": cmpl_id,
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"object": object_type,
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"created": created_time,
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"model": shared.model_name,
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resp_list: [{
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"index": 0,
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"finish_reason": None,
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"text": content,
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"logprobs": {'top_logprobs': [logprob_proc.token_alternatives]} if logprob_proc else None,
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}],
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}
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return chunk
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yield text_streaming_chunk(prefix)
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# generate reply #######################################
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debug_msg({'prompt': prompt, 'generate_params': generate_params})
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generator = generate_reply(prompt, generate_params, is_chat=False)
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answer = ''
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seen_content = ''
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completion_token_count = 0
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for a in generator:
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answer = a
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len_seen = len(seen_content)
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new_content = answer[len_seen:]
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if not new_content or chr(0xfffd) in new_content: # partial unicode character, don't send it yet.
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continue
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seen_content = answer
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chunk = text_streaming_chunk(new_content)
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yield chunk
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completion_token_count = len(encode(answer)[0])
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stop_reason = "stop"
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if token_count + completion_token_count >= generate_params['truncation_length'] or completion_token_count >= max_tokens:
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stop_reason = "length"
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chunk = text_streaming_chunk(suffix)
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chunk[resp_list][0]["finish_reason"] = stop_reason
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chunk["usage"] = {
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"prompt_tokens": token_count,
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"completion_tokens": completion_token_count,
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"total_tokens": token_count + completion_token_count
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}
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yield chunk
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def chat_completions(body: dict, is_legacy: bool = False) -> dict:
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generator = chat_completions_common(body, is_legacy, stream=False)
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return deque(generator, maxlen=1).pop()
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def stream_chat_completions(body: dict, is_legacy: bool = False):
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for resp in chat_completions_common(body, is_legacy, stream=True):
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yield resp
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|
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def completions(body: dict, is_legacy: bool = False) -> dict:
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generator = completions_common(body, is_legacy, stream=False)
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return deque(generator, maxlen=1).pop()
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|
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def stream_completions(body: dict, is_legacy: bool = False):
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for resp in completions_common(body, is_legacy, stream=True):
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yield resp
|