Research-chatbot / prompter.py
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import os
import ast
import time
from enums import PromptType # also supports imports from this file from other files
non_hf_types = ['gpt4all_llama', 'llama', 'gptj']
prompt_type_to_model_name = {
'plain': [
'EleutherAI/gpt-j-6B',
'EleutherAI/pythia-6.9b',
'EleutherAI/pythia-12b',
'EleutherAI/pythia-12b-deduped',
'EleutherAI/gpt-neox-20b',
'openlm-research/open_llama_7b_700bt_preview',
'decapoda-research/llama-7b-hf',
'decapoda-research/llama-13b-hf',
'decapoda-research/llama-30b-hf',
'decapoda-research/llama-65b-hf',
'facebook/mbart-large-50-many-to-many-mmt',
'philschmid/bart-large-cnn-samsum',
'philschmid/flan-t5-base-samsum',
'gpt2',
'distilgpt2',
'mosaicml/mpt-7b-storywriter',
],
'gptj': ['gptj', 'gpt4all_llama'],
'prompt_answer': [
'h2oai/h2ogpt-gm-oasst1-en-1024-20b',
'h2oai/h2ogpt-gm-oasst1-en-1024-12b',
'h2oai/h2ogpt-gm-oasst1-multilang-1024-20b',
'h2oai/h2ogpt-gm-oasst1-multilang-2048-falcon-7b',
'h2oai/h2ogpt-gm-oasst1-multilang-2048-falcon-7b-v2',
'h2oai/h2ogpt-gm-oasst1-en-2048-falcon-7b-v3',
'h2oai/h2ogpt-gm-oasst1-en-2048-falcon-7b',
'h2oai/h2ogpt-gm-oasst1-en-2048-falcon-7b-v2',
'h2oai/h2ogpt-gm-oasst1-en-2048-falcon-40b-v1',
'h2oai/h2ogpt-gm-oasst1-en-2048-falcon-40b-v2',
'h2oai/h2ogpt-gm-oasst1-en-xgen-7b-8k',
'h2oai/h2ogpt-gm-oasst1-multilang-xgen-7b-8k',
'TheBloke/h2ogpt-gm-oasst1-en-2048-falcon-40b-v2-GPTQ',
],
'prompt_answer_openllama': [
'h2oai/h2ogpt-gm-oasst1-en-2048-open-llama-7b-preview-300bt',
'h2oai/h2ogpt-gm-oasst1-en-2048-open-llama-7b-preview-300bt-v2',
'h2oai/h2ogpt-gm-oasst1-en-2048-open-llama-7b-preview-700bt',
'h2oai/h2ogpt-gm-oasst1-en-2048-open-llama-7b',
'h2oai/h2ogpt-gm-oasst1-en-2048-open-llama-13b',
],
'instruct': ['TheBloke/llama-30b-supercot-SuperHOT-8K-fp16'], # https://huggingface.co/TheBloke/llama-30b-supercot-SuperHOT-8K-fp16#prompting
'instruct_with_end': ['databricks/dolly-v2-12b'],
'quality': [],
'human_bot': [
'h2oai/h2ogpt-oasst1-512-12b',
'h2oai/h2ogpt-oasst1-512-20b',
'h2oai/h2ogpt-oig-oasst1-256-6_9b',
'h2oai/h2ogpt-oig-oasst1-512-6_9b',
'h2oai/h2ogpt-oig-oasst1-256-6.9b', # legacy
'h2oai/h2ogpt-oig-oasst1-512-6.9b', # legacy
'h2oai/h2ogpt-research-oasst1-512-30b',
'h2oai/h2ogpt-research-oasst1-llama-65b',
'h2oai/h2ogpt-oasst1-falcon-40b',
'h2oai/h2ogpt-oig-oasst1-falcon-40b',
],
'dai_faq': [],
'summarize': [],
'simple_instruct': ['t5-small', 't5-large', 'google/flan-t5', 'google/flan-t5-xxl', 'google/flan-ul2'],
'instruct_vicuna': ['AlekseyKorshuk/vicuna-7b', 'TheBloke/stable-vicuna-13B-HF', 'junelee/wizard-vicuna-13b'],
'human_bot_orig': ['togethercomputer/GPT-NeoXT-Chat-Base-20B'],
"open_assistant": ['OpenAssistant/oasst-sft-7-llama-30b-xor', 'oasst-sft-7-llama-30b'],
"wizard_lm": ['ehartford/WizardLM-7B-Uncensored', 'ehartford/WizardLM-13B-Uncensored'],
"wizard_mega": ['openaccess-ai-collective/wizard-mega-13b'],
"instruct_simple": ['JosephusCheung/Guanaco'],
"wizard_vicuna": ['ehartford/Wizard-Vicuna-13B-Uncensored'],
"wizard2": ['llama'],
"mptinstruct": ['mosaicml/mpt-30b-instruct', 'mosaicml/mpt-7b-instruct', 'mosaicml/mpt-30b-instruct'],
"mptchat": ['mosaicml/mpt-7b-chat', 'mosaicml/mpt-30b-chat', 'TheBloke/mpt-30B-chat-GGML'],
"vicuna11": ['lmsys/vicuna-33b-v1.3'],
"falcon": ['tiiuae/falcon-40b-instruct', 'tiiuae/falcon-40b', 'tiiuae/falcon-7b-instruct', 'tiiuae/falcon-7b'],
"llama2": [
'meta-llama/Llama-2-7b-chat-hf',
'meta-llama/Llama-2-13b-chat-hf',
'meta-llama/Llama-2-34b-chat-hf',
'meta-llama/Llama-2-70b-chat-hf',
],
# could be plain, but default is correct prompt_type for default TheBloke model ggml-wizardLM-7B.q4_2.bin
}
if os.getenv('OPENAI_API_KEY'):
prompt_type_to_model_name.update({
"openai": ["text-davinci-003", "text-curie-001", "text-babbage-001", "text-ada-001"],
"openai_chat": ["gpt-3.5-turbo", "gpt-3.5-turbo-16k"],
})
inv_prompt_type_to_model_name = {v.strip(): k for k, l in prompt_type_to_model_name.items() for v in l}
inv_prompt_type_to_model_lower = {v.strip().lower(): k for k, l in prompt_type_to_model_name.items() for v in l}
prompt_types_strings = []
for p in PromptType:
prompt_types_strings.extend([p.name])
prompt_types = []
for p in PromptType:
prompt_types.extend([p.name, p.value, str(p.value)])
def get_prompt(prompt_type, prompt_dict, chat, context, reduced, making_context, return_dict=False):
prompt_dict_error = ''
generates_leading_space = False
if prompt_type == PromptType.custom.name and not isinstance(prompt_dict, dict):
try:
prompt_dict = ast.literal_eval(prompt_dict)
except BaseException as e:
prompt_dict_error = str(e)
if prompt_dict_error:
promptA = None
promptB = None
PreInstruct = None
PreInput = ''
PreResponse = ''
terminate_response = None
chat_sep = ''
chat_turn_sep = ''
humanstr = ''
botstr = ''
generates_leading_space = False
elif prompt_type in [PromptType.custom.value, str(PromptType.custom.value),
PromptType.custom.name]:
promptA = prompt_dict.get('promptA', '')
promptB = prompt_dict.get('promptB', '')
PreInstruct = prompt_dict.get('PreInstruct', '')
PreInput = prompt_dict.get('PreInput', '')
PreResponse = prompt_dict.get('PreResponse', '')
terminate_response = prompt_dict.get('terminate_response', None)
chat_sep = prompt_dict.get('chat_sep', '\n')
chat_turn_sep = prompt_dict.get('chat_turn_sep', '\n')
humanstr = prompt_dict.get('humanstr', '')
botstr = prompt_dict.get('botstr', '')
elif prompt_type in [PromptType.plain.value, str(PromptType.plain.value),
PromptType.plain.name]:
promptA = promptB = PreInstruct = PreInput = PreResponse = None
terminate_response = []
chat_turn_sep = chat_sep = ''
# plain should have None for human/bot, so nothing truncated out, not '' that would truncate after first token
humanstr = None
botstr = None
elif prompt_type == 'simple_instruct':
promptA = promptB = PreInstruct = PreInput = PreResponse = None
terminate_response = []
chat_turn_sep = chat_sep = '\n'
humanstr = None
botstr = None
elif prompt_type in [PromptType.instruct.value, str(PromptType.instruct.value),
PromptType.instruct.name] + [PromptType.instruct_with_end.value,
str(PromptType.instruct_with_end.value),
PromptType.instruct_with_end.name]:
promptA = 'Below is an instruction that describes a task, paired with an input that provides further context. Write a response that appropriately completes the request.\n' if not (
chat and reduced) else ''
promptB = 'Below is an instruction that describes a task. Write a response that appropriately completes the request.\n' if not (
chat and reduced) else ''
PreInstruct = """
### Instruction:
"""
PreInput = """
### Input:
"""
PreResponse = """
### Response:
"""
if prompt_type in [PromptType.instruct_with_end.value, str(PromptType.instruct_with_end.value),
PromptType.instruct_with_end.name]:
terminate_response = ['### End']
else:
terminate_response = None
chat_turn_sep = chat_sep = '\n'
humanstr = PreInstruct
botstr = PreResponse
elif prompt_type in [PromptType.quality.value, str(PromptType.quality.value),
PromptType.quality.name]:
promptA = 'Write a detailed high-quality, accurate, fair, Response with about 100 words by following the Instruction as applied on the Input.\n' if not (
chat and reduced) else ''
promptB = 'Write a detailed high-quality, accurate, fair, Response with about 100 words by following the Instruction.\n' if not (
chat and reduced) else ''
PreInstruct = """
### Instruction:
"""
PreInput = """
### Input:
"""
PreResponse = """
### Response:
"""
terminate_response = None
chat_turn_sep = chat_sep = '\n'
humanstr = PreInstruct # first thing human says
botstr = PreResponse # first thing bot says
elif prompt_type in [PromptType.human_bot.value, str(PromptType.human_bot.value),
PromptType.human_bot.name] + [PromptType.human_bot_orig.value,
str(PromptType.human_bot_orig.value),
PromptType.human_bot_orig.name]:
human = '<human>:'
bot = "<bot>:"
if reduced or context or prompt_type in [PromptType.human_bot.value, str(PromptType.human_bot.value),
PromptType.human_bot.name]:
preprompt = ''
else:
cur_date = time.strftime('%Y-%m-%d')
cur_time = time.strftime('%H:%M:%S %p %Z')
PRE_PROMPT = """\
Current Date: {}
Current Time: {}
"""
preprompt = PRE_PROMPT.format(cur_date, cur_time)
start = ''
promptB = promptA = '%s%s' % (preprompt, start)
PreInstruct = human + ' '
PreInput = None
if making_context:
# when making context, want it to appear as-if LLM generated, which starts with space after :
PreResponse = bot + ' '
else:
# normally LLM adds space after this, because was how trained.
# if add space here, non-unique tokenization will often make LLM produce wrong output
PreResponse = bot
terminate_response = ['\n' + human, '\n' + bot, human, bot, PreResponse]
chat_turn_sep = chat_sep = '\n'
humanstr = human # tag before human talks
botstr = bot # tag before bot talks
generates_leading_space = True
elif prompt_type in [PromptType.dai_faq.value, str(PromptType.dai_faq.value),
PromptType.dai_faq.name]:
promptA = ''
promptB = 'Answer the following Driverless AI question.\n'
PreInstruct = """
### Driverless AI frequently asked question:
"""
PreInput = None
PreResponse = """
### Driverless AI documentation answer:
"""
terminate_response = ['\n\n']
chat_turn_sep = chat_sep = terminate_response
humanstr = PreInstruct
botstr = PreResponse
elif prompt_type in [PromptType.summarize.value, str(PromptType.summarize.value),
PromptType.summarize.name]:
promptA = promptB = PreInput = ''
PreInstruct = '## Main Text\n\n'
PreResponse = '\n\n## Summary\n\n'
terminate_response = None
chat_turn_sep = chat_sep = '\n'
humanstr = PreInstruct
botstr = PreResponse
elif prompt_type in [PromptType.instruct_vicuna.value, str(PromptType.instruct_vicuna.value),
PromptType.instruct_vicuna.name]:
promptA = promptB = "A chat between a curious human and an artificial intelligence assistant. " \
"The assistant gives helpful, detailed, and polite answers to the human's questions." if not (
chat and reduced) else ''
PreInstruct = """
### Human:
"""
PreInput = None
PreResponse = """
### Assistant:
"""
terminate_response = [
'### Human:'] # but only allow terminate after prompt is found correctly, else can't terminate
chat_turn_sep = chat_sep = '\n'
humanstr = PreInstruct
botstr = PreResponse
elif prompt_type in [PromptType.prompt_answer.value, str(PromptType.prompt_answer.value),
PromptType.prompt_answer.name]:
preprompt = ''
prompt_tokens = "<|prompt|>"
answer_tokens = "<|answer|>"
start = ''
promptB = promptA = '%s%s' % (preprompt, start)
PreInstruct = prompt_tokens
PreInput = None
PreResponse = answer_tokens
eos = '<|endoftext|>' # neox eos
humanstr = prompt_tokens
botstr = answer_tokens
terminate_response = [humanstr, PreResponse, eos]
chat_sep = eos
chat_turn_sep = eos
elif prompt_type in [PromptType.prompt_answer_openllama.value, str(PromptType.prompt_answer_openllama.value),
PromptType.prompt_answer_openllama.name]:
preprompt = ''
prompt_tokens = "<|prompt|>"
answer_tokens = "<|answer|>"
start = ''
promptB = promptA = '%s%s' % (preprompt, start)
PreInstruct = prompt_tokens
PreInput = None
PreResponse = answer_tokens
eos = '</s>' # llama eos
humanstr = prompt_tokens
botstr = answer_tokens
terminate_response = [humanstr, PreResponse, eos]
chat_sep = eos
chat_turn_sep = eos
elif prompt_type in [PromptType.open_assistant.value, str(PromptType.open_assistant.value),
PromptType.open_assistant.name]:
# From added_tokens.json
preprompt = ''
prompt_tokens = "<|prompter|>"
answer_tokens = "<|assistant|>"
start = ''
promptB = promptA = '%s%s' % (preprompt, start)
PreInstruct = prompt_tokens
PreInput = None
PreResponse = answer_tokens
pend = "<|prefix_end|>"
eos = "</s>"
humanstr = prompt_tokens
botstr = answer_tokens
terminate_response = [humanstr, PreResponse, pend, eos]
chat_turn_sep = chat_sep = eos
elif prompt_type in [PromptType.wizard_lm.value, str(PromptType.wizard_lm.value),
PromptType.wizard_lm.name]:
# https://github.com/ehartford/WizardLM/blob/main/src/train_freeform.py
preprompt = ''
start = ''
promptB = promptA = '%s%s' % (preprompt, start)
PreInstruct = ""
PreInput = None
PreResponse = "\n\n### Response\n"
eos = "</s>"
terminate_response = [PreResponse, eos]
chat_turn_sep = chat_sep = eos
humanstr = promptA
botstr = PreResponse
elif prompt_type in [PromptType.wizard_mega.value, str(PromptType.wizard_mega.value),
PromptType.wizard_mega.name]:
preprompt = ''
start = ''
promptB = promptA = '%s%s' % (preprompt, start)
PreInstruct = """
### Instruction:
"""
PreInput = None
PreResponse = """
### Assistant:
"""
terminate_response = [PreResponse]
chat_turn_sep = chat_sep = '\n'
humanstr = PreInstruct
botstr = PreResponse
elif prompt_type in [PromptType.instruct_vicuna2.value, str(PromptType.instruct_vicuna2.value),
PromptType.instruct_vicuna2.name]:
promptA = promptB = "" if not (chat and reduced) else ''
PreInstruct = """
HUMAN:
"""
PreInput = None
PreResponse = """
ASSISTANT:
"""
terminate_response = [
'HUMAN:'] # but only allow terminate after prompt is found correctly, else can't terminate
chat_turn_sep = chat_sep = '\n'
humanstr = PreInstruct
botstr = PreResponse
elif prompt_type in [PromptType.instruct_vicuna3.value, str(PromptType.instruct_vicuna3.value),
PromptType.instruct_vicuna3.name]:
promptA = promptB = "" if not (chat and reduced) else ''
PreInstruct = """
### User:
"""
PreInput = None
PreResponse = """
### Assistant:
"""
terminate_response = [
'### User:'] # but only allow terminate after prompt is found correctly, else can't terminate
chat_turn_sep = chat_sep = '\n'
humanstr = PreInstruct
botstr = PreResponse
elif prompt_type in [PromptType.wizard2.value, str(PromptType.wizard2.value),
PromptType.wizard2.name]:
# https://huggingface.co/TheBloke/WizardLM-7B-uncensored-GGML
preprompt = """Below is an instruction that describes a task. Write a response that appropriately completes the request.""" if not (
chat and reduced) else ''
start = ''
promptB = promptA = '%s%s' % (preprompt, start)
PreInstruct = """
### Instruction:
"""
PreInput = None
PreResponse = """
### Response:
"""
terminate_response = [PreResponse]
chat_turn_sep = chat_sep = '\n'
humanstr = PreInstruct
botstr = PreResponse
elif prompt_type in [PromptType.wizard3.value, str(PromptType.wizard3.value),
PromptType.wizard3.name]:
# https://huggingface.co/TheBloke/wizardLM-13B-1.0-GGML
preprompt = """A chat between a curious user and an artificial intelligence assistant. The assistant gives helpful, detailed, and polite answers to the user's questions.""" if not (
chat and reduced) else ''
start = ''
promptB = promptA = '%s%s' % (preprompt, start)
PreInstruct = """USER: """
PreInput = None
PreResponse = """ASSISTANT: """
terminate_response = [PreResponse]
chat_turn_sep = chat_sep = '\n'
humanstr = PreInstruct
botstr = PreResponse
elif prompt_type in [PromptType.wizard_vicuna.value, str(PromptType.wizard_vicuna.value),
PromptType.wizard_vicuna.name]:
preprompt = ''
start = ''
promptB = promptA = '%s%s' % (preprompt, start)
PreInstruct = """USER: """
PreInput = None
PreResponse = """ASSISTANT: """
terminate_response = [PreResponse]
chat_turn_sep = chat_sep = '\n'
humanstr = PreInstruct
botstr = PreResponse
elif prompt_type in [PromptType.instruct_simple.value, str(PromptType.instruct_simple.value),
PromptType.instruct_simple.name]:
promptB = promptA = '' if not (chat and reduced) else ''
PreInstruct = """
### Instruction:
"""
PreInput = """
### Input:
"""
PreResponse = """
### Response:
"""
terminate_response = None
chat_turn_sep = chat_sep = '\n'
humanstr = PreInstruct
botstr = PreResponse
elif prompt_type in [PromptType.openai.value, str(PromptType.openai.value),
PromptType.openai.name]:
preprompt = """The following is a conversation with an AI assistant. The assistant is helpful, creative, clever, and very friendly.""" if not (
chat and reduced) else ''
start = ''
promptB = promptA = '%s%s' % (preprompt, start)
PreInstruct = "\nHuman: "
PreInput = None
PreResponse = "\nAI:"
terminate_response = [PreResponse] + [" Human:", " AI:"]
chat_turn_sep = chat_sep = '\n'
humanstr = PreInstruct
botstr = PreResponse
elif prompt_type in [PromptType.gptj.value, str(PromptType.gptj.value),
PromptType.gptj.name]:
preprompt = "### Instruction:\n 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." if not (
chat and reduced) else ''
start = ''
promptB = promptA = '%s%s' % (preprompt, start)
PreInstruct = "\n### Prompt: "
PreInput = None
PreResponse = "\n### Response: "
terminate_response = [PreResponse] + ["Prompt:", "Response:"]
chat_turn_sep = chat_sep = '\n'
humanstr = PreInstruct
botstr = PreResponse
elif prompt_type in [PromptType.openai_chat.value, str(PromptType.openai_chat.value),
PromptType.openai_chat.name]:
# prompting and termination all handled by endpoint
preprompt = """"""
start = ''
promptB = promptA = '%s%s' % (preprompt, start)
PreInstruct = ""
PreInput = None
PreResponse = ""
terminate_response = []
chat_turn_sep = chat_sep = '\n'
humanstr = None
botstr = None
elif prompt_type in [PromptType.vicuna11.value, str(PromptType.vicuna11.value),
PromptType.vicuna11.name]:
preprompt = """A chat between a curious user and an artificial intelligence assistant. The assistant gives helpful, detailed, and polite answers to the user's questions. """ if not (
chat and reduced) else ''
start = ''
promptB = promptA = '%s%s' % (preprompt, start)
eos = '</s>'
PreInstruct = """USER: """
PreInput = None
PreResponse = """ASSISTANT:"""
terminate_response = [PreResponse]
chat_sep = ' '
chat_turn_sep = eos
humanstr = PreInstruct
botstr = PreResponse
if making_context:
# when making context, want it to appear as-if LLM generated, which starts with space after :
PreResponse = PreResponse + ' '
else:
# normally LLM adds space after this, because was how trained.
# if add space here, non-unique tokenization will often make LLM produce wrong output
PreResponse = PreResponse
elif prompt_type in [PromptType.mptinstruct.value, str(PromptType.mptinstruct.value),
PromptType.mptinstruct.name]:
# https://huggingface.co/mosaicml/mpt-30b-instruct#formatting
promptA = promptB = 'Below is an instruction that describes a task. Write a response that appropriately completes the request.\n' if not (
chat and reduced) else ''
PreInstruct = """
### Instruction
"""
PreInput = """
### Input
"""
PreResponse = """
### Response
"""
terminate_response = None
chat_turn_sep = chat_sep = '\n'
humanstr = PreInstruct
botstr = PreResponse
elif prompt_type in [PromptType.mptchat.value, str(PromptType.mptchat.value),
PromptType.mptchat.name]:
# https://huggingface.co/TheBloke/mpt-30B-chat-GGML#prompt-template
promptA = promptB = """<|im_start|>system\nA conversation between a user and an LLM-based AI assistant. The assistant gives helpful and honest answers.\n<|im_end|>""" if not (
chat and reduced) else ''
PreInstruct = """<|im_start|>user
"""
PreInput = None
PreResponse = """<|im_end|><|im_start|>assistant
"""
terminate_response = ['<|im_end|>']
chat_sep = ''
chat_turn_sep = '<|im_end|>'
humanstr = PreInstruct
botstr = PreResponse
elif prompt_type in [PromptType.falcon.value, str(PromptType.falcon.value),
PromptType.falcon.name]:
promptA = promptB = "" if not (chat and reduced) else ''
PreInstruct = """User: """
PreInput = None
PreResponse = """Assistant:"""
terminate_response = ['\nUser', "<|endoftext|>"]
chat_sep = '\n\n'
chat_turn_sep = '\n\n'
humanstr = PreInstruct
botstr = PreResponse
if making_context:
# when making context, want it to appear as-if LLM generated, which starts with space after :
PreResponse = 'Assistant: '
else:
# normally LLM adds space after this, because was how trained.
# if add space here, non-unique tokenization will often make LLM produce wrong output
PreResponse = PreResponse
# generates_leading_space = True
elif prompt_type in [PromptType.guanaco.value, str(PromptType.guanaco.value),
PromptType.guanaco.name]:
# https://huggingface.co/TheBloke/guanaco-65B-GPTQ
promptA = promptB = "" if not (chat and reduced) else ''
PreInstruct = """### Human: """
PreInput = None
PreResponse = """### Assistant:"""
terminate_response = ['### Human:'] # but only allow terminate after prompt is found correctly, else can't terminate
chat_turn_sep = chat_sep = '\n'
humanstr = PreInstruct
botstr = PreResponse
elif prompt_type in [PromptType.llama2.value, str(PromptType.llama2.value),
PromptType.llama2.name]:
PreInstruct = ""
llama2_sys = "<<SYS>>\nYou are a helpful, respectful and honest assistant. Always answer as helpfully as possible, while being safe. Your answers should not include any harmful, unethical, racist, sexist, toxic, dangerous, or illegal content. Please ensure that your responses are socially unbiased and positive in nature.\n\nIf a question does not make any sense, or is not factually coherent, explain why instead of answering something not correct. If you don't know the answer to a question, please don't share false information.\n<</SYS>>\n\n"
prompt = "<s>[INST] "
enable_sys = False # too much safety, hurts accuracy
if not (chat and reduced):
if enable_sys:
promptA = promptB = prompt + llama2_sys
else:
promptA = promptB = prompt
else:
promptA = promptB = ''
PreInput = None
PreResponse = ""
terminate_response = ["[INST]", "</s>"]
chat_sep = ' [/INST]'
chat_turn_sep = ' </s><s>[INST] '
humanstr = PreInstruct
botstr = PreResponse
if making_context:
PreResponse += " "
else:
raise RuntimeError("No such prompt_type=%s" % prompt_type)
if isinstance(terminate_response, (tuple, list)):
assert '' not in terminate_response, "Bad terminate_response"
ret_dict = dict(promptA=promptA, promptB=promptB, PreInstruct=PreInstruct, PreInput=PreInput,
PreResponse=PreResponse, terminate_response=terminate_response, chat_sep=chat_sep,
chat_turn_sep=chat_turn_sep,
humanstr=humanstr, botstr=botstr,
generates_leading_space=generates_leading_space)
if return_dict:
return ret_dict, prompt_dict_error
else:
return tuple(list(ret_dict.values()))
def generate_prompt(data_point, prompt_type, prompt_dict, chat, reduced, making_context):
context = data_point.get('context')
if context is None:
context = ''
instruction = data_point.get('instruction')
input = data_point.get('input')
output = data_point.get('output')
prompt_type = data_point.get('prompt_type', prompt_type)
prompt_dict = data_point.get('prompt_dict', prompt_dict)
assert prompt_type in prompt_types, "Bad prompt type: %s" % prompt_type
promptA, promptB, PreInstruct, PreInput, PreResponse, \
terminate_response, chat_sep, chat_turn_sep, humanstr, botstr, \
generates_leading_space = get_prompt(prompt_type, prompt_dict, chat,
context, reduced, making_context)
# could avoid if reduce=True, but too complex for parent functions to handle
prompt = context
if input and promptA:
prompt += f"""{promptA}"""
elif promptB:
prompt += f"""{promptB}"""
if instruction and PreInstruct is not None and input and PreInput is not None:
prompt += f"""{PreInstruct}{instruction}{PreInput}{input}"""
prompt = inject_chatsep(prompt_type, prompt, chat_sep=chat_sep)
elif instruction and input and PreInstruct is None and PreInput is not None:
prompt += f"""{PreInput}{instruction}
{input}"""
prompt = inject_chatsep(prompt_type, prompt, chat_sep=chat_sep)
elif input and instruction and PreInput is None and PreInstruct is not None:
prompt += f"""{PreInstruct}{instruction}
{input}"""
prompt = inject_chatsep(prompt_type, prompt, chat_sep=chat_sep)
elif instruction and PreInstruct is not None:
prompt += f"""{PreInstruct}{instruction}"""
prompt = inject_chatsep(prompt_type, prompt, chat_sep=chat_sep)
elif input and PreInput is not None:
prompt += f"""{PreInput}{input}"""
prompt = inject_chatsep(prompt_type, prompt, chat_sep=chat_sep)
elif input and instruction and PreInput is not None:
prompt += f"""{PreInput}{instruction}{input}"""
prompt = inject_chatsep(prompt_type, prompt, chat_sep=chat_sep)
elif input and instruction and PreInstruct is not None:
prompt += f"""{PreInstruct}{instruction}{input}"""
prompt = inject_chatsep(prompt_type, prompt, chat_sep=chat_sep)
elif input and instruction:
# i.e. for simple_instruct
prompt += f"""{instruction}: {input}"""
prompt = inject_chatsep(prompt_type, prompt, chat_sep=chat_sep)
elif input:
prompt += f"""{input}"""
prompt = inject_chatsep(prompt_type, prompt, chat_sep=chat_sep)
elif instruction:
prompt += f"""{instruction}"""
prompt = inject_chatsep(prompt_type, prompt, chat_sep=chat_sep)
if PreResponse is not None:
prompt += f"""{PreResponse}"""
pre_response = PreResponse # Don't use strip
else:
pre_response = ''
if output:
prompt += f"""{output}"""
return prompt, pre_response, terminate_response, chat_sep, chat_turn_sep
def inject_chatsep(prompt_type, prompt, chat_sep=None):
if chat_sep:
# only add new line if structured prompt, while 'plain' is just generation of next tokens from input
prompt += chat_sep
return prompt
class Prompter(object):
def __init__(self, prompt_type, prompt_dict, debug=False, chat=False, stream_output=False, repeat_penalty=True,
allowed_repeat_line_length=10):
self.prompt_type = prompt_type
self.prompt_dict = prompt_dict
self.debug = debug
self.chat = chat
self.stream_output = stream_output
self.repeat_penalty = repeat_penalty
self.allowed_repeat_line_length = allowed_repeat_line_length
self.prompt = None
context = "" # not for chat context
reduced = False # not for chat context
making_context = False # not for chat context
self.promptA, self.promptB, self.PreInstruct, self.PreInput, self.PreResponse, \
self.terminate_response, self.chat_sep, self.chat_turn_sep, self.humanstr, self.botstr, \
self.generates_leading_space = \
get_prompt(self.prompt_type, self.prompt_dict, chat, context, reduced, making_context)
self.pre_response = self.PreResponse
def generate_prompt(self, data_point, reduced=None):
"""
data_point['context'] is assumed to be like a system prompt or pre-conversation, not inserted after user prompt
:param data_point:
:param reduced:
:return:
"""
reduced = data_point.get('context') not in ['', None] if reduced is None else reduced
making_context = False # whether really making final prompt or just generating context
prompt, _, _, _, _ = generate_prompt(data_point, self.prompt_type, self.prompt_dict, self.chat, reduced,
making_context)
if self.debug:
print("prompt: %s" % prompt, flush=True)
# if have context, should have always reduced and only preappend promptA/B here
if data_point.get('context'):
if data_point.get('input') and self.promptA:
prompt = self.promptA + prompt
elif self.promptB:
prompt = self.promptB + prompt
self.prompt = prompt
return prompt
def get_response(self, outputs, prompt=None, sanitize_bot_response=False):
if isinstance(outputs, str):
outputs = [outputs]
if self.debug:
print("output:\n%s" % '\n\n'.join(outputs), flush=True)
if prompt is not None:
self.prompt = prompt
def clean_response(response):
meaningless_words = ['<pad>', '</s>', '<|endoftext|>']
for word in meaningless_words:
response = response.replace(word, "")
if sanitize_bot_response:
from better_profanity import profanity
response = profanity.censor(response)
if self.generates_leading_space and isinstance(response, str) and len(response) > 0 and response[0] == ' ':
response = response[1:]
return response
def clean_repeats(response):
lines = response.split('\n')
new_lines = []
[new_lines.append(line) for line in lines if
line not in new_lines or len(line) < self.allowed_repeat_line_length]
if self.debug and len(lines) != len(new_lines):
print("cleaned repeats: %s %s" % (len(lines), len(new_lines)), flush=True)
response = '\n'.join(new_lines)
return response
multi_output = len(outputs) > 1
for oi, output in enumerate(outputs):
if self.prompt_type in [PromptType.plain.value, str(PromptType.plain.value), PromptType.plain.name]:
output = clean_response(output)
elif prompt is None:
# then use most basic parsing like pipeline
if not self.botstr:
pass
elif self.botstr in output:
if self.humanstr:
output = clean_response(output.split(self.botstr)[1].split(self.humanstr)[0])
else:
# i.e. use after bot but only up to next bot
output = clean_response(output.split(self.botstr)[1].split(self.botstr)[0])
else:
# output = clean_response(output)
# assume just not printed yet
output = ""
else:
# find first instance of prereponse
# prompt sometimes has odd characters, that mutate length,
# so can't go by length alone
if self.pre_response:
outputi = output.find(prompt)
if outputi >= 0:
output = output[outputi + len(prompt):]
allow_terminate = True
else:
# subtraction is risky due to space offsets sometimes, so only do if necessary
output = output[len(prompt) - len(self.pre_response):]
# [1] to avoid repeated pre_response, just take first (after prompt - pre_response for chat)
if self.pre_response in output:
output = output.split(self.pre_response)[1]
allow_terminate = True
else:
if output:
print("Failure of parsing or not enough output yet: %s" % output, flush=True)
allow_terminate = False
else:
allow_terminate = True
output = output[len(prompt):]
# clean after subtract prompt out, so correct removal of pre_response
output = clean_response(output)
if self.repeat_penalty:
output = clean_repeats(output)
if self.terminate_response and allow_terminate:
finds = []
for term in self.terminate_response:
finds.append(output.find(term))
finds = [x for x in finds if x >= 0]
if len(finds) > 0:
termi = finds[0]
output = output[:termi]
else:
output = output
if multi_output:
# prefix with output counter
output = "\n=========== Output %d\n\n" % (1 + oi) + output
if oi > 0:
# post fix outputs with seperator
output += '\n'
output = self.fix_text(self.prompt_type, output)
outputs[oi] = output
# join all outputs, only one extra new line between outputs
output = '\n'.join(outputs)
if self.debug:
print("outputclean:\n%s" % '\n\n'.join(outputs), flush=True)
return output
@staticmethod
def fix_text(prompt_type1, text1):
if prompt_type1 == 'human_bot':
# hack bug in vLLM with stopping, stops right, but doesn't return last token
hfix = '<human'
if text1.endswith(hfix):
text1 = text1[:-len(hfix)]
return text1