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| """ |
| Example command with bag of words: |
| python examples/run_pplm.py -B space --cond_text "The president" --length 100 --gamma 1.5 --num_iterations 3 --num_samples 10 --stepsize 0.01 --window_length 5 --kl_scale 0.01 --gm_scale 0.95 |
| |
| Example command with discriminator: |
| python examples/run_pplm.py -D sentiment --class_label 3 --cond_text "The lake" --length 10 --gamma 1.0 --num_iterations 30 --num_samples 10 --stepsize 0.01 --kl_scale 0.01 --gm_scale 0.95 |
| """ |
|
|
| import gradio as gr |
| import argparse |
| import json |
| from operator import add |
| from typing import List, Optional, Tuple, Union |
| from random import choice, randint |
| import numpy as np |
| import torch |
| import torch.nn.functional as F |
| from torch.autograd import Variable |
| from tqdm import trange |
| from transformers import GPT2Tokenizer |
| from transformers.file_utils import cached_path |
| from transformers.modeling_gpt2 import GPT2LMHeadModel |
|
|
| from pplm_classification_head import ClassificationHead |
|
|
| PPLM_BOW = 1 |
| PPLM_DISCRIM = 2 |
| PPLM_BOW_DISCRIM = 3 |
| SMALL_CONST = 1e-15 |
| BIG_CONST = 1e10 |
|
|
| QUIET = 0 |
| REGULAR = 1 |
| VERBOSE = 2 |
| VERY_VERBOSE = 3 |
| VERBOSITY_LEVELS = { |
| 'quiet': QUIET, |
| 'regular': REGULAR, |
| 'verbose': VERBOSE, |
| 'very_verbose': VERY_VERBOSE, |
| } |
|
|
| BAG_OF_WORDS_ARCHIVE_MAP = { |
| 'legal': "https://s3.amazonaws.com/models.huggingface.co/bert/pplm/bow/legal.txt", |
| 'military': "https://s3.amazonaws.com/models.huggingface.co/bert/pplm/bow/military.txt", |
| 'monsters': "https://s3.amazonaws.com/models.huggingface.co/bert/pplm/bow/monsters.txt", |
| 'politics': "https://s3.amazonaws.com/models.huggingface.co/bert/pplm/bow/politics.txt", |
| 'positive_words': "https://s3.amazonaws.com/models.huggingface.co/bert/pplm/bow/positive_words.txt", |
| 'religion': "https://s3.amazonaws.com/models.huggingface.co/bert/pplm/bow/religion.txt", |
| 'science': "https://s3.amazonaws.com/models.huggingface.co/bert/pplm/bow/science.txt", |
| 'space': "https://s3.amazonaws.com/models.huggingface.co/bert/pplm/bow/space.txt", |
| 'technology': "https://s3.amazonaws.com/models.huggingface.co/bert/pplm/bow/technology.txt", |
| } |
|
|
| DISCRIMINATOR_MODELS_PARAMS = { |
| "clickbait": { |
| "url": "https://s3.amazonaws.com/models.huggingface.co/bert/pplm/discriminators/clickbait_classifier_head.pt", |
| "class_size": 2, |
| "embed_size": 1024, |
| "class_vocab": {"non_clickbait": 0, "clickbait": 1}, |
| "default_class": 1, |
| "pretrained_model": "gpt2-medium", |
| }, |
| "sentiment": { |
| "url": "https://s3.amazonaws.com/models.huggingface.co/bert/pplm/discriminators/SST_classifier_head.pt", |
| "class_size": 5, |
| "embed_size": 1024, |
| "class_vocab": {"very_positive": 2, "very_negative": 3}, |
| "default_class": 3, |
| "pretrained_model": "gpt2-medium", |
| }, |
| "3_PerSoothe": { |
| "path": "/content/drive/Shareddrives/COS_IW04_ZL/COSIW04/Discriminators/3_class_opt_lowlr_medgpt/3_PerSoothe_classifier_head_epoch_10.pt", |
| "class_size": 3, |
| "embed_size": 1024, |
| "class_vocab": {"soothes": 0, "neutral": 1, "worsens": 2}, |
| "default_class": 2, |
| "pretrained_model": "microsoft/DialoGPT-medium", |
| }, |
| "3_PerSoothe_eot": { |
| "path": "/content/drive/Shareddrives/COS_IW04_ZL/COSIW04/Discriminators/3_class_opt_eot_lowlr_medgpt/3_PerSoothe_classifier_head_epoch_10.pt", |
| "class_size": 3, |
| "embed_size": 1024, |
| "class_vocab": {"soothes": 0, "neutral": 1, "worsens": 2}, |
| "default_class": 2, |
| "pretrained_model": "microsoft/DialoGPT-medium", |
| }, |
| "3_PerSoothe_lrg": { |
| "class_size": 3, |
| "embed_size": 1280, |
| "class_vocab": {"soothes": 0, "neutral": 1, "worsens": 2}, |
| "default_class": 2, |
| "pretrained_model": "microsoft/DialoGPT-large", |
| }, |
| "3_PerSoothe_med": { |
| "class_size": 3, |
| "embed_size": 1024, |
| "class_vocab": {"soothes": 0, "neutral": 1, "worsens": 2}, |
| "default_class": 2, |
| "pretrained_model": "microsoft/DialoGPT-medium", |
| }, |
| } |
|
|
|
|
| def to_var(x, requires_grad=False, volatile=False, device='cuda'): |
| if torch.cuda.is_available() and device == 'cuda': |
| x = x.cuda() |
| elif device != 'cuda': |
| x = x.to(device) |
| return Variable(x, requires_grad=requires_grad, volatile=volatile) |
|
|
|
|
| def top_k_filter(logits, k, probs=False): |
| """ |
| Masks everything but the k top entries as -infinity (1e10). |
| Used to mask logits such that e^-infinity -> 0 won't contribute to the |
| sum of the denominator. |
| """ |
| if k == 0: |
| return logits |
| else: |
| values = torch.topk(logits, k)[0] |
| batch_mins = values[:, -1].view(-1, 1).expand_as(logits) |
| if probs: |
| return torch.where(logits < batch_mins, |
| torch.ones_like(logits) * 0.0, logits) |
| return torch.where(logits < batch_mins, |
| torch.ones_like(logits) * -BIG_CONST, |
| logits) |
|
|
|
|
| def perturb_past( |
| past, |
| model, |
| last, |
| unpert_past =None, |
| unpert_logits=None, |
| accumulated_hidden=None, |
| grad_norms=None, |
| stepsize=0.01, |
| one_hot_bows_vectors=None, |
| classifier=None, |
| class_label=None, |
| loss_type=0, |
| num_iterations=3, |
| horizon_length=1, |
| window_length=0, |
| decay=False, |
| gamma=1.5, |
| kl_scale=0.01, |
| device='cuda', |
| verbosity_level=REGULAR |
| ): |
| |
| grad_accumulator = [ |
| (np.zeros(p.shape).astype("float32")) |
| for p in past |
| ] |
|
|
| if accumulated_hidden is None: |
| accumulated_hidden = 0 |
|
|
| if decay: |
| decay_mask = torch.arange( |
| 0., |
| 1.0 + SMALL_CONST, |
| 1.0 / (window_length) |
| )[1:] |
| else: |
| decay_mask = 1.0 |
|
|
| |
| |
| _, _, _, curr_length, _ = past[0].shape |
|
|
| if curr_length > window_length and window_length > 0: |
| ones_key_val_shape = ( |
| tuple(past[0].shape[:-2]) |
| + tuple([window_length]) |
| + tuple(past[0].shape[-1:]) |
| ) |
|
|
| zeros_key_val_shape = ( |
| tuple(past[0].shape[:-2]) |
| + tuple([curr_length - window_length]) |
| + tuple(past[0].shape[-1:]) |
| ) |
|
|
| ones_mask = torch.ones(ones_key_val_shape) |
| ones_mask = decay_mask * ones_mask.permute(0, 1, 2, 4, 3) |
| ones_mask = ones_mask.permute(0, 1, 2, 4, 3) |
|
|
| window_mask = torch.cat( |
| (ones_mask, torch.zeros(zeros_key_val_shape)), |
| dim=-2 |
| ).to(device) |
| else: |
| window_mask = torch.ones_like(past[0]).to(device) |
|
|
| |
| loss_per_iter = [] |
| new_accumulated_hidden = None |
| for i in range(num_iterations): |
| if verbosity_level >= VERBOSE: |
| print("Iteration ", i + 1) |
| curr_perturbation = [ |
| to_var(torch.from_numpy(p_), requires_grad=True, device=device) |
| for p_ in grad_accumulator |
| ] |
|
|
| |
| perturbed_past = list(map(add, past, curr_perturbation)) |
| _, _, _, curr_length, _ = curr_perturbation[0].shape |
| all_logits, _, all_hidden = model(last, past_key_values=perturbed_past) |
| hidden = all_hidden[-1] |
| new_accumulated_hidden = accumulated_hidden + torch.sum( |
| hidden, |
| dim=1 |
| ).detach() |
| |
| logits = all_logits[:, -1, :] |
| probs = F.softmax(logits, dim=-1) |
|
|
| loss = 0.0 |
| loss_list = [] |
| if loss_type == PPLM_BOW or loss_type == PPLM_BOW_DISCRIM: |
| for one_hot_bow in one_hot_bows_vectors: |
| bow_logits = torch.mm(probs, torch.t(one_hot_bow)) |
| bow_loss = -torch.log(torch.sum(bow_logits)) |
| loss += bow_loss |
| loss_list.append(bow_loss) |
| if verbosity_level >= VERY_VERBOSE: |
| print(" pplm_bow_loss:", loss.data.cpu().numpy()) |
|
|
| if loss_type == PPLM_DISCRIM or loss_type == PPLM_BOW_DISCRIM: |
| ce_loss = torch.nn.CrossEntropyLoss() |
| |
| curr_unpert_past = unpert_past |
| curr_probs = torch.unsqueeze(probs, dim=1) |
| wte = model.resize_token_embeddings() |
| for _ in range(horizon_length): |
| inputs_embeds = torch.matmul(curr_probs, wte.weight.data) |
| _, curr_unpert_past, curr_all_hidden = model( |
| past_key_values=curr_unpert_past, |
| inputs_embeds=inputs_embeds |
| ) |
| curr_hidden = curr_all_hidden[-1] |
| new_accumulated_hidden = new_accumulated_hidden + torch.sum( |
| curr_hidden, dim=1) |
|
|
| prediction = classifier(new_accumulated_hidden / |
| (curr_length + 1 + horizon_length)) |
|
|
| label = torch.tensor(prediction.shape[0] * [class_label], |
| device=device, |
| dtype=torch.long) |
| discrim_loss = ce_loss(prediction, label) |
| if verbosity_level >= VERY_VERBOSE: |
| print(" pplm_discrim_loss:", discrim_loss.data.cpu().numpy()) |
| loss += discrim_loss |
| loss_list.append(discrim_loss) |
|
|
| kl_loss = 0.0 |
| if kl_scale > 0.0: |
| unpert_probs = F.softmax(unpert_logits[:, -1, :], dim=-1) |
| unpert_probs = ( |
| unpert_probs + SMALL_CONST * |
| (unpert_probs <= SMALL_CONST).float().to(device).detach() |
| ) |
| correction = SMALL_CONST * (probs <= SMALL_CONST).float().to( |
| device).detach() |
| corrected_probs = probs + correction.detach() |
| kl_loss = kl_scale * ( |
| (corrected_probs * (corrected_probs / unpert_probs).log()).sum() |
| ) |
| if verbosity_level >= VERY_VERBOSE: |
| print(' kl_loss', kl_loss.data.cpu().numpy()) |
| loss += kl_loss |
|
|
| loss_per_iter.append(loss.data.cpu().numpy()) |
| if verbosity_level >= VERBOSE: |
| print(' pplm_loss', (loss - kl_loss).data.cpu().numpy()) |
|
|
| |
| loss.backward() |
|
|
| |
| if grad_norms is not None and loss_type == PPLM_BOW: |
| grad_norms = [ |
| torch.max(grad_norms[index], torch.norm(p_.grad * window_mask)) |
| for index, p_ in enumerate(curr_perturbation) |
| ] |
| else: |
| grad_norms = [ |
| (torch.norm(p_.grad * window_mask) + SMALL_CONST) |
| for index, p_ in enumerate(curr_perturbation) |
| ] |
|
|
| |
| grad = [ |
| -stepsize * |
| (p_.grad * window_mask / grad_norms[ |
| index] ** gamma).data.cpu().numpy() |
| for index, p_ in enumerate(curr_perturbation) |
| ] |
|
|
| |
| grad_accumulator = list(map(add, grad, grad_accumulator)) |
|
|
| |
| for p_ in curr_perturbation: |
| p_.grad.data.zero_() |
|
|
| |
| new_past = [] |
| for p_ in past: |
| new_past.append(p_.detach()) |
| past = new_past |
|
|
| |
| grad_accumulator = [ |
| to_var(torch.from_numpy(p_), requires_grad=True, device=device) |
| for p_ in grad_accumulator |
| ] |
| pert_past = list(map(add, past, grad_accumulator)) |
|
|
| return pert_past, new_accumulated_hidden, grad_norms, loss_per_iter |
|
|
|
|
| def get_classifier( |
| name: Optional[str], |
| class_label: Union[str, int], |
| device: str, |
| verbosity_level: int = REGULAR, |
| fp: str = None, |
| is_deep: bool= False, |
| is_deeper: bool=False, |
| ) -> Tuple[Optional[ClassificationHead], Optional[int]]: |
| if name is None: |
| return None, None |
|
|
| params = DISCRIMINATOR_MODELS_PARAMS[name] |
| classifier = ClassificationHead( |
| class_size=params['class_size'], |
| embed_size=params['embed_size'], |
| is_deep=is_deep, |
| is_deeper=is_deeper |
| ).to(device) |
| if "url" in params: |
| resolved_archive_file = cached_path(params["url"]) |
| elif "path" in params: |
| resolved_archive_file = params["path"] |
| elif fp != None: |
| resolved_archive_file = fp |
| else: |
| raise ValueError("Either url or path have to be specified " |
| "in the discriminator model parameters") |
| classifier.load_state_dict( |
| torch.load(resolved_archive_file, map_location=device)) |
| classifier.eval() |
|
|
| if isinstance(class_label, str): |
| if class_label in params["class_vocab"]: |
| label_id = params["class_vocab"][class_label] |
| else: |
| label_id = params["default_class"] |
| if verbosity_level >= REGULAR: |
| print("class_label {} not in class_vocab".format(class_label)) |
| print("available values are: {}".format(params["class_vocab"])) |
| print("using default class {}".format(label_id)) |
|
|
| elif isinstance(class_label, int): |
| if class_label in set(params["class_vocab"].values()): |
| label_id = class_label |
| else: |
| label_id = params["default_class"] |
| if verbosity_level >= REGULAR: |
| print("class_label {} not in class_vocab".format(class_label)) |
| print("available values are: {}".format(params["class_vocab"])) |
| print("using default class {}".format(label_id)) |
|
|
| else: |
| label_id = params["default_class"] |
|
|
| return classifier, label_id |
|
|
|
|
| def get_bag_of_words_indices(bag_of_words_ids_or_paths: List[str], tokenizer) -> \ |
| List[List[List[int]]]: |
| bow_indices = [] |
| for id_or_path in bag_of_words_ids_or_paths: |
| if id_or_path in BAG_OF_WORDS_ARCHIVE_MAP: |
| filepath = cached_path(BAG_OF_WORDS_ARCHIVE_MAP[id_or_path]) |
| else: |
| filepath = id_or_path |
| with open(filepath, "r") as f: |
| words = f.read().strip().split("\n") |
| bow_indices.append( |
| [tokenizer.encode(word.strip(), |
| add_prefix_space=True, |
| add_special_tokens=False) |
| for word in words]) |
| return bow_indices |
|
|
|
|
| def build_bows_one_hot_vectors(bow_indices, tokenizer, device='cuda'): |
| if bow_indices is None: |
| return None |
|
|
| one_hot_bows_vectors = [] |
| for single_bow in bow_indices: |
| single_bow = list(filter(lambda x: len(x) <= 1, single_bow)) |
| single_bow = torch.tensor(single_bow).to(device) |
| num_words = single_bow.shape[0] |
| one_hot_bow = torch.zeros(num_words, tokenizer.vocab_size).to(device) |
| one_hot_bow.scatter_(1, single_bow, 1) |
| one_hot_bows_vectors.append(one_hot_bow) |
| return one_hot_bows_vectors |
|
|
|
|
| def full_text_generation( |
| model, |
| tokenizer, |
| context=None, |
| num_samples=1, |
| device="cuda", |
| bag_of_words=None, |
| discrim=None, |
| class_label=None, |
| length=100, |
| stepsize=0.02, |
| temperature=1.0, |
| top_k=10, |
| sample=True, |
| num_iterations=3, |
| grad_length=10000, |
| horizon_length=1, |
| window_length=0, |
| decay=False, |
| gamma=1.5, |
| gm_scale=0.9, |
| kl_scale=0.01, |
| verbosity_level=REGULAR, |
| fp=None, |
| is_deep=False, |
| is_deeper=False, |
| stop_eot=False, |
| **kwargs |
| ): |
| classifier, class_id = get_classifier( |
| discrim, |
| class_label, |
| device, |
| REGULAR, |
| fp, |
| is_deep, |
| is_deeper |
| ) |
|
|
| bow_indices = [] |
| if bag_of_words: |
| bow_indices = get_bag_of_words_indices(bag_of_words.split(";"), |
| tokenizer) |
|
|
| if bag_of_words and classifier: |
| loss_type = PPLM_BOW_DISCRIM |
| if verbosity_level >= REGULAR: |
| print("Both PPLM-BoW and PPLM-Discrim are on. " |
| "This is not optimized.") |
|
|
| elif bag_of_words: |
| loss_type = PPLM_BOW |
| if verbosity_level >= REGULAR: |
| print("Using PPLM-BoW") |
|
|
| elif classifier is not None: |
| loss_type = PPLM_DISCRIM |
| if verbosity_level >= REGULAR: |
| print("Using PPLM-Discrim") |
|
|
| else: |
| raise Exception("Specify either a bag of words or a discriminator") |
|
|
| unpert_gen_tok_text, _, _, _ = generate_text_pplm( |
| model=model, |
| tokenizer=tokenizer, |
| context=context, |
| device=device, |
| length=length, |
| sample=sample, |
| perturb=False, |
| verbosity_level=verbosity_level, |
| stop_eot=stop_eot |
| ) |
| if device == 'cuda': |
| torch.cuda.empty_cache() |
|
|
| pert_gen_tok_texts = [] |
| discrim_losses = [] |
| losses_in_time = [] |
| perplexities = [] |
|
|
| for i in range(num_samples): |
| pert_gen_tok_text, discrim_loss, loss_in_time, perplexity = generate_text_pplm( |
| model=model, |
| tokenizer=tokenizer, |
| context=context, |
| device=device, |
| perturb=True, |
| bow_indices=bow_indices, |
| classifier=classifier, |
| class_label=class_id, |
| loss_type=loss_type, |
| length=length, |
| stepsize=stepsize, |
| temperature=temperature, |
| top_k=top_k, |
| sample=sample, |
| num_iterations=num_iterations, |
| grad_length=grad_length, |
| horizon_length=horizon_length, |
| window_length=window_length, |
| decay=decay, |
| gamma=gamma, |
| gm_scale=gm_scale, |
| kl_scale=kl_scale, |
| verbosity_level=verbosity_level, |
| stop_eot=stop_eot |
| ) |
| pert_gen_tok_texts.append(pert_gen_tok_text) |
| if classifier is not None: |
| discrim_losses.append(discrim_loss.data.cpu().numpy()) |
| losses_in_time.append(loss_in_time) |
| perplexities.append(perplexity) |
|
|
| if device == 'cuda': |
| torch.cuda.empty_cache() |
|
|
| return unpert_gen_tok_text, pert_gen_tok_texts, discrim_losses, losses_in_time, perplexities |
|
|
|
|
| def generate_text_pplm( |
| model, |
| tokenizer, |
| context=None, |
| past=None, |
| device="cuda", |
| perturb=True, |
| bow_indices=None, |
| classifier=None, |
| class_label=None, |
| loss_type=0, |
| length=100, |
| stepsize=0.02, |
| temperature=1.0, |
| top_k=10, |
| sample=True, |
| num_iterations=3, |
| grad_length=10000, |
| horizon_length=1, |
| window_length=0, |
| decay=False, |
| gamma=1.5, |
| gm_scale=0.9, |
| kl_scale=0.01, |
| verbosity_level=REGULAR, |
| stop_eot=False |
| ): |
| output_so_far = None |
| if context: |
| context_t = torch.tensor(context, device=device, dtype=torch.long) |
| while len(context_t.shape) < 2: |
| context_t = context_t.unsqueeze(0) |
| output_so_far = context_t |
|
|
| |
| one_hot_bows_vectors = build_bows_one_hot_vectors(bow_indices, tokenizer, |
| device) |
|
|
| grad_norms = None |
| last = None |
| unpert_discrim_loss = 0 |
| loss_in_time = [] |
|
|
| if verbosity_level >= VERBOSE: |
| range_func = trange(length, ascii=True) |
| else: |
| range_func = range(length) |
| |
| pert_total_prob = 1 |
| pert_times = 0 |
| last_reps = torch.ones(50257) |
| last_reps = last_reps.to(device) |
| for i in range_func: |
| |
| |
| |
| |
| if past is None and output_so_far is not None: |
| last = output_so_far[:, -1:] |
| if output_so_far.shape[1] > 1: |
| _, past, _ = model(output_so_far[:, :-1]) |
|
|
| unpert_logits, unpert_past, unpert_all_hidden = model(output_so_far) |
| unpert_last_hidden = unpert_all_hidden[-1] |
|
|
| |
| if i >= grad_length: |
| current_stepsize = stepsize * 0 |
| else: |
| current_stepsize = stepsize |
|
|
| |
| if not perturb or num_iterations == 0: |
| pert_past = past |
|
|
| else: |
| accumulated_hidden = unpert_last_hidden[:, :-1, :] |
| accumulated_hidden = torch.sum(accumulated_hidden, dim=1) |
|
|
| if past is not None: |
| pert_past, _, grad_norms, loss_this_iter = perturb_past( |
| past, |
| model, |
| last, |
| unpert_past=unpert_past, |
| unpert_logits=unpert_logits, |
| accumulated_hidden=accumulated_hidden, |
| grad_norms=grad_norms, |
| stepsize=current_stepsize, |
| one_hot_bows_vectors=one_hot_bows_vectors, |
| classifier=classifier, |
| class_label=class_label, |
| loss_type=loss_type, |
| num_iterations=num_iterations, |
| horizon_length=horizon_length, |
| window_length=window_length, |
| decay=decay, |
| gamma=gamma, |
| kl_scale=kl_scale, |
| device=device, |
| verbosity_level=verbosity_level |
| ) |
| loss_in_time.append(loss_this_iter) |
| else: |
| pert_past = past |
|
|
| pert_logits, past, pert_all_hidden = model(last, past_key_values=pert_past) |
| pert_logits = pert_logits[:, -1, :] / temperature |
| pert_probs = F.softmax(pert_logits, dim=-1) |
|
|
| if classifier is not None: |
| ce_loss = torch.nn.CrossEntropyLoss() |
| prediction = classifier(torch.mean(unpert_last_hidden, dim=1)) |
| label = torch.tensor([class_label], device=device, |
| dtype=torch.long) |
| unpert_discrim_loss = ce_loss(prediction, label) |
| if verbosity_level >= VERBOSE: |
| print( |
| "unperturbed discrim loss", |
| unpert_discrim_loss.data.cpu().numpy() |
| ) |
| else: |
| unpert_discrim_loss = 0 |
|
|
| |
| if perturb: |
|
|
| unpert_probs = F.softmax(unpert_logits[:, -1, :], dim=-1) |
|
|
| pert_probs = ((pert_probs ** gm_scale) * ( |
| unpert_probs ** (1 - gm_scale))) |
| if i < 2: |
| pert_probs = top_k_filter(pert_probs, k=max(2, top_k), probs=True) |
| if i == 0: pert_probs[0][50256] = 0 |
| if i == 1: |
| tmp = pert_probs[0][50256] |
| pert_probs[0][50256] = 0 |
| pert_probs[0][50256] = min(torch.max(pert_probs[0]), tmp) |
| else: |
| pert_probs = top_k_filter(pert_probs, k=top_k, probs=True) |
| pert_probs = torch.div(pert_probs, last_reps) |
| |
| if torch.sum(pert_probs) <= 1: |
| pert_probs = pert_probs / torch.sum(pert_probs) |
| else: |
| pert_logits = top_k_filter(pert_logits, k=top_k) |
| pert_probs = F.softmax(pert_logits, dim=-1) |
|
|
| |
| if sample: |
| last = torch.multinomial(pert_probs, num_samples=1) |
| pert_total_prob = pert_total_prob * pert_probs[0][last[0][0]] |
| else: |
| _, last = torch.topk(pert_probs, k=1, dim=-1) |
| last_reps[last[0][0]] = last_reps[last[0][0]] * 8 |
| |
| output_so_far = ( |
| last if output_so_far is None |
| else torch.cat((output_so_far, last), dim=1) |
| ) |
| if verbosity_level >= REGULAR: |
| print(tokenizer.decode(output_so_far.tolist()[0])) |
| pert_times += 1 |
| if last[0][0] == 50256 and stop_eot: |
| break |
| perplexity = (1/pert_total_prob)**(1/pert_times) |
| return output_so_far, unpert_discrim_loss, loss_in_time, perplexity |
|
|
|
|
| def set_generic_model_params(discrim_weights, discrim_meta): |
| if discrim_weights is None: |
| raise ValueError('When using a generic discriminator, ' |
| 'discrim_weights need to be specified') |
| if discrim_meta is None: |
| raise ValueError('When using a generic discriminator, ' |
| 'discrim_meta need to be specified') |
|
|
| with open(discrim_meta, 'r') as discrim_meta_file: |
| meta = json.load(discrim_meta_file) |
| meta['path'] = discrim_weights |
| DISCRIMINATOR_MODELS_PARAMS['generic'] = meta |
|
|
|
|
| pretrained_model="microsoft/DialoGPT-large" |
| cond_text="" |
| uncond=False |
| num_samples=1 |
| bag_of_words=None |
| discrim="3_PerSoothe_lrg" |
| discrim_weights=None |
| discrim_meta=None |
| class_label=0 |
| length=100 |
| stepsize=0.32 |
| temperature=1.3 |
| top_k=2 |
| sample=True |
| num_iterations=10 |
| grad_length=10000 |
| horizon_length=1 |
| window_length=0 |
| decay=False |
| gamma=1.0 |
| gm_scale=0.95 |
| kl_scale=0.01 |
| seed=0 |
| no_cuda=False |
| colorama=False |
| verbosity="quiet" |
| fp="./paper_code/discrim_models/persoothe_classifier.pt" |
| model_fp="./paper_code/discrim_models/persoothe_encoder.pt" |
| calc_perplexity=False |
| is_deep=False |
| is_deeper=True |
| stop_eot=True |
|
|
| |
| torch.manual_seed(seed) |
| np.random.seed(seed) |
|
|
| |
| verbosity_level = VERBOSITY_LEVELS.get(verbosity.lower(), REGULAR) |
|
|
| |
| device = "cuda" if torch.cuda.is_available() and not no_cuda else "cpu" |
|
|
| if discrim == 'generic': |
| set_generic_model_params(discrim_weights, discrim_meta) |
|
|
| if discrim is not None: |
| discriminator_pretrained_model = DISCRIMINATOR_MODELS_PARAMS[discrim][ |
| "pretrained_model" |
| ] |
| if pretrained_model != discriminator_pretrained_model: |
| pretrained_model = discriminator_pretrained_model |
| if verbosity_level >= REGULAR: |
| print("discrim = {}, pretrained_model set " |
| "to discriminator's = {}".format(discrim, pretrained_model)) |
|
|
| |
| model = GPT2LMHeadModel.from_pretrained( |
| pretrained_model, |
| output_hidden_states=True |
| ) |
| if model_fp != None and model_fp != "": |
| model.load_state_dict(torch.load(model_fp, map_location=device)) |
| model.to(device) |
| model.eval() |
|
|
| |
| tokenizer = GPT2Tokenizer.from_pretrained(pretrained_model) |
|
|
| |
| for param in model.parameters(): |
| param.requires_grad = False |
|
|
| starters = ["How are you feeling and why?", "Tell me about your day", "What would you like to talk about?"] |
| eot_token = "<|endoftext|>" |
|
|
| def get_reply(response, username = None, histories = {}, in_stepsize = 0.32, in_horizon_length = 1, in_num_iterations = 10, in_top_k = 2): |
| if username == None or username == "": return "<div class='chatbot'>Enter a username</div>", histories |
| stepsize = in_stepsize |
| horizon_length = int(in_horizon_length) |
| num_iterations = int(in_num_iterations) |
| top_k = int(in_top_k) |
| if response.endswith(("bye", "Bye", "bye.", "Bye.", "bye!", "Bye!","Hello", "Hi", "hello")): |
| starter = choice(starters) |
| histories[username] = starter+"<|endoftext|>" |
| html = "<div class='chatbot'> Chatbot restarted" |
| html += "<div class='msg user'>"+starter+"</div>" |
| html += "</div>" |
| return html, histories |
| history = histories.get(username, None) |
| convo_hist = (history if history != None else "How are you?<|endoftext|>") + response + eot_token |
| |
| tokenized_cond_text = tokenizer.encode( |
| eot_token + convo_hist, |
| add_special_tokens=False |
| ) |
| |
|
|
| |
| |
| _, pert_gen_tok_texts, _, _, _ = full_text_generation( |
| model=model, |
| tokenizer=tokenizer, |
| context=tokenized_cond_text, |
| device=device, |
| num_samples=1, |
| bag_of_words=bag_of_words, |
| discrim=discrim, |
| class_label=class_label, |
| length=length, |
| stepsize=stepsize, |
| temperature=temperature, |
| top_k=top_k, |
| sample=sample, |
| num_iterations=num_iterations, |
| grad_length=grad_length, |
| horizon_length=horizon_length, |
| window_length=window_length, |
| decay=decay, |
| gamma=gamma, |
| gm_scale=gm_scale, |
| kl_scale=kl_scale, |
| verbosity_level=verbosity_level, |
| fp=fp, |
| is_deep=is_deep, |
| is_deeper=is_deeper, |
| stop_eot=stop_eot |
| ) |
|
|
| |
| for i, pert_gen_tok_text in enumerate(pert_gen_tok_texts): |
| try: |
| pert_gen_text = tokenizer.decode(pert_gen_tok_text.tolist()[0]) |
| convo_hist_split = pert_gen_text.split(eot_token) |
| html = "<div class='chatbot'>" |
| for m, msg in enumerate(convo_hist_split[1:-1]): |
| cls = "user" if m%2 == 0 else "bot" |
| html += "<div class='msg {}'> {}</div>".format(cls, msg) |
| html += "</div>" |
|
|
| if len(convo_hist_split) > 4: convo_hist_split = convo_hist_split[-4:] |
| convo_hist = eot_token.join(convo_hist_split) |
|
|
| except: |
| starter = choice(starters) |
| histories[username] = starter+"<|endoftext|>" |
| html = "<div class='chatbot'> Chatbot restarted" |
| html += "<div class='msg user'>"+starter+"</div>" |
| html += "</div>" |
| return html, histories |
| histories[username] = convo_hist |
| return html, histories |
|
|
| css = """ |
| .chatbox {display:flex;flex-direction:column} |
| .msg {padding:4px;margin-bottom:4px;border-radius:4px;width:80%} |
| .msg.user {background-color:cornflowerblue;color:white} |
| .msg.bot {background-color:lightgray;align-self:self-end} |
| .footer {display:none !important} |
| """ |
|
|
| gr.Interface(fn=get_reply, |
| theme="default", |
| inputs=[gr.inputs.Textbox(placeholder="How are you?"), |
| gr.inputs.Textbox(label="Username"), |
| "state"], |
| outputs=["html", "state"], |
| css=css).launch(debug=True, enable_queue=True, share=True) |
|
|