h2osiri / src /eval.py
ariel0330's picture
Upload folder using huggingface_hub
7e60a5e
raw
history blame contribute delete
No virus
13.6 kB
import inspect
import os
import traceback
import numpy as np
import pandas as pd
import torch
from matplotlib import pyplot as plt
from evaluate_params import eval_func_param_names, eval_extra_columns
from gen import get_context, get_score_model, get_model, evaluate, check_locals
from prompter import Prompter
from utils import clear_torch_cache, NullContext, get_kwargs
def run_eval( # for local function:
base_model=None, lora_weights=None, inference_server=None,
prompt_type=None, prompt_dict=None,
debug=None, chat=False, chat_context=None, stream_output=None,
eval_filename=None, eval_prompts_only_num=None, eval_prompts_only_seed=None, eval_as_output=None,
examples=None, memory_restriction_level=None,
# for get_model:
score_model=None, load_8bit=None, load_4bit=None, load_half=None, load_gptq=None, use_safetensors=None,
use_gpu_id=None, tokenizer_base_model=None,
gpu_id=None, local_files_only=None, resume_download=None, use_auth_token=None,
trust_remote_code=None, offload_folder=None, compile_model=None,
# for evaluate args beyond what's already above, or things that are always dynamic and locally created
temperature=None,
top_p=None,
top_k=None,
num_beams=None,
max_new_tokens=None,
min_new_tokens=None,
early_stopping=None,
max_time=None,
repetition_penalty=None,
num_return_sequences=None,
do_sample=None,
langchain_mode=None,
langchain_action=None,
langchain_agents=[],
top_k_docs=None,
chunk=None,
chunk_size=None,
document_subset=None,
document_choice=None,
# for evaluate kwargs:
src_lang=None, tgt_lang=None, concurrency_count=None, save_dir=None, sanitize_bot_response=None,
model_state0=None,
max_max_new_tokens=None,
is_public=None,
max_max_time=None,
raise_generate_gpu_exceptions=None, load_db_if_exists=None, use_llm_if_no_docs=None,
dbs=None, user_path=None,
detect_user_path_changes_every_query=None,
use_openai_embedding=None, use_openai_model=None, hf_embedding_model=None,
db_type=None, n_jobs=None, first_para=None, text_limit=None, verbose=None, cli=None, reverse_docs=None,
use_cache=None,
auto_reduce_chunks=None, max_chunks=None,
model_lock=None, force_langchain_evaluate=None,
model_state_none=None,
):
check_locals(**locals())
if eval_prompts_only_num > 0:
np.random.seed(eval_prompts_only_seed)
example1 = examples[-1] # pick reference example
examples = []
responses = []
if eval_filename is None:
# override default examples with shareGPT ones for human-level eval purposes only
eval_filename = 'ShareGPT_V3_unfiltered_cleaned_split_no_imsorry.json'
if not os.path.isfile(eval_filename):
os.system(
'wget https://huggingface.co/datasets/anon8231489123/ShareGPT_Vicuna_unfiltered/resolve/main/%s' % eval_filename)
import json
data = json.load(open(eval_filename, 'rt'))
# focus on data that starts with human, else likely chopped from other data
turn_start = 0 # odd in general
data = [x for x in data if len(x['conversations']) > turn_start + 1 and
x['conversations'][turn_start]['from'] == 'human' and
x['conversations'][turn_start + 1]['from'] == 'gpt']
for i in sorted(np.random.randint(0, len(data), size=eval_prompts_only_num)):
assert data[i]['conversations'][turn_start]['from'] == 'human'
instruction = data[i]['conversations'][turn_start]['value']
assert data[i]['conversations'][turn_start + 1]['from'] == 'gpt'
output = data[i]['conversations'][turn_start + 1]['value']
examplenew = example1.copy()
assert not chat, "No gradio must use chat=False, uses nochat instruct"
examplenew[eval_func_param_names.index('instruction_nochat')] = instruction
examplenew[eval_func_param_names.index('iinput_nochat')] = '' # no input
examplenew[eval_func_param_names.index('context')] = get_context(chat_context, prompt_type)
examples.append(examplenew)
responses.append(output)
else:
# get data, assume in correct format: json of rows of dict of instruction and output
# only instruction is required
import json
data = json.load(open(eval_filename, 'rt'))
for i in sorted(np.random.randint(0, len(data), size=eval_prompts_only_num)):
examplenew = example1.copy()
instruction = data[i]['instruction']
output = data[i].get('output', '') # not required
assert not chat, "No gradio must use chat=False, uses nochat instruct"
examplenew[eval_func_param_names.index('instruction_nochat')] = instruction
examplenew[eval_func_param_names.index('iinput_nochat')] = '' # no input
examplenew[eval_func_param_names.index('context')] = get_context(chat_context, prompt_type)
examples.append(examplenew)
responses.append(output)
num_examples = len(examples)
scoring_path = 'scoring'
os.makedirs(scoring_path, exist_ok=True)
if eval_as_output:
used_base_model = 'gpt35'
used_lora_weights = ''
used_inference_server = ''
else:
used_base_model = str(base_model.split('/')[-1])
used_lora_weights = str(lora_weights.split('/')[-1])
used_inference_server = str(inference_server.split('/')[-1])
eval_out_filename = "df_scores_%s_%s_%s_%s_%s_%s_%s.parquet" % (num_examples, eval_prompts_only_num,
eval_prompts_only_seed,
eval_as_output,
used_base_model,
used_lora_weights,
used_inference_server,
)
eval_out_filename = os.path.join(scoring_path, eval_out_filename)
# torch.device("cuda") leads to cuda:x cuda:y mismatches for multi-GPU consistently
n_gpus = torch.cuda.device_count() if torch.cuda.is_available else 0
device = 'cpu' if n_gpus == 0 else 'cuda'
context_class = NullContext if n_gpus > 1 or n_gpus == 0 else torch.device
with context_class(device):
# ensure was set right above before examples generated
assert not stream_output, "stream_output=True does not make sense with example loop"
import time
from functools import partial
# get score model
smodel, stokenizer, sdevice = get_score_model(reward_type=True,
**get_kwargs(get_score_model, exclude_names=['reward_type'],
**locals()))
if not eval_as_output:
model, tokenizer, device = get_model(reward_type=False,
**get_kwargs(get_model, exclude_names=['reward_type'], **locals()))
model_dict = dict(base_model=base_model, tokenizer_base_model=tokenizer_base_model,
lora_weights=lora_weights,
inference_server=inference_server, prompt_type=prompt_type, prompt_dict=prompt_dict)
model_state = dict(model=model, tokenizer=tokenizer, device=device)
model_state.update(model_dict)
my_db_state = [None]
fun = partial(evaluate, model_state, my_db_state,
**get_kwargs(evaluate, exclude_names=['model_state', 'my_db_state'] + eval_func_param_names,
**locals()))
else:
assert eval_prompts_only_num > 0
def get_response(*args, exi=0):
# assumes same ordering of examples and responses
yield responses[exi]
fun = get_response
t0 = time.time()
score_dump = []
score_avg = 0
score_median = 0
for exi, ex in enumerate(examples):
clear_torch_cache()
instruction = ex[eval_func_param_names.index('instruction_nochat')]
iinput = ex[eval_func_param_names.index('iinput_nochat')]
context = ex[eval_func_param_names.index('context')]
clear_torch_cache()
print("")
print("START" + "=" * 100)
print("Question: %s %s" % (instruction, ('input=%s' % iinput if iinput else '')))
print("-" * 105)
# fun yields as generator, so have to iterate over it
# Also means likely do NOT want --stream_output=True, else would show all generations
t1 = time.time()
gener = fun(*tuple(ex), exi=exi) if eval_as_output else fun(*tuple(ex))
for res_fun in gener:
res = res_fun['response']
extra = res_fun['sources']
print(res)
if smodel:
score_with_prompt = False
if score_with_prompt:
data_point = dict(instruction=instruction, input=iinput, context=context)
prompter = Prompter(prompt_type, prompt_dict,
debug=debug, chat=chat, stream_output=stream_output)
prompt = prompter.generate_prompt(data_point)
else:
# just raw input and output
if eval_prompts_only_num > 0:
# only our own examples have this filled at moment
assert iinput in [None, ''], iinput # should be no iinput
if not (chat_context and prompt_type == 'human_bot'):
assert context in [None, ''], context # should be no context
prompt = instruction
if memory_restriction_level > 0:
cutoff_len = 768 if memory_restriction_level <= 2 else 512
else:
cutoff_len = tokenizer.model_max_length
inputs = stokenizer(prompt, res,
return_tensors="pt",
truncation=True,
max_length=cutoff_len)
try:
score = torch.sigmoid(smodel(**inputs).logits[0].float()).cpu().detach().numpy()[0]
except torch.cuda.OutOfMemoryError as e:
print("GPU OOM 1: question: %s answer: %s exception: %s" % (prompt, res, str(e)),
flush=True)
traceback.print_exc()
score = 0.0
clear_torch_cache()
except (Exception, RuntimeError) as e:
if 'Expected all tensors to be on the same device' in str(e) or \
'expected scalar type Half but found Float' in str(e) or \
'probability tensor contains either' in str(e) or \
'cublasLt ran into an error!' in str(e):
print("GPU error: question: %s answer: %s exception: %s" % (prompt, res, str(e)),
flush=True)
traceback.print_exc()
score = 0.0
clear_torch_cache()
else:
raise
score_dump.append(ex + [prompt, res, score])
# dump every score in case abort
df_scores = pd.DataFrame(score_dump,
columns=eval_func_param_names + eval_extra_columns)
df_scores.to_parquet(eval_out_filename, index=False)
# plot histogram so far
plt.figure(figsize=(10, 10))
plt.hist(df_scores['score'], bins=20)
score_avg = np.mean(df_scores['score'])
score_median = np.median(df_scores['score'])
print("SCORE %s: %s So far: AVG: %s MEDIAN: %s" % (exi, score, score_avg, score_median),
flush=True)
plt.title("Score avg: %s median: %s" % (score_avg, score_median))
plt.savefig(eval_out_filename.replace('.parquet', '.png'))
plt.close()
print("END" + "=" * 102)
print("")
t2 = time.time()
print("Time taken for example: %s Time taken so far: %.4f about %.4g per example" % (
t2 - t1, t2 - t0, (t2 - t0) / (1 + exi)))
t1 = time.time()
print("Total time taken: %.4f about %.4g per example" % (t1 - t0, (t1 - t0) / num_examples))
print("Score avg: %s median: %s" % (score_avg, score_median), flush=True)
return eval_out_filename