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| import torch | |
| from torch.utils.tensorboard import SummaryWriter | |
| from torch.utils.data import DataLoader | |
| import numpy as np | |
| from sklearn.metrics import * | |
| from omegaconf import OmegaConf | |
| import os | |
| import random | |
| from mcts import MCTS | |
| import esm | |
| from encoders import AptaBLE | |
| from utils import get_scores, API_Dataset, get_nt_esm_dataset | |
| from accelerate import Accelerator | |
| import glob | |
| import os | |
| import requests | |
| from transformers import AutoTokenizer, AutoModelForMaskedLM | |
| # accelerator = Accelerator(kwargs_handlers=[DistributedDataParallelKwargs(find_unused_parameters=True)]) # NOTE: Buggy | Disables unused parameter issue | |
| accelerator = Accelerator() | |
| class AptaBLE_Pipeline(): | |
| """In-house API prediction score pipeline.""" | |
| def __init__(self, lr, dropout, weight_decay, epochs, model_type, model_version, model_save_path, accelerate_save_path, tensorboard_logdir, *args, **kwargs): | |
| self.device = accelerator.device | |
| self.lr = lr | |
| self.weight_decay = weight_decay | |
| self.epochs = epochs | |
| self.model_type = model_type | |
| self.model_version = model_version | |
| self.model_save_path = model_save_path | |
| self.accelerate_save_path = accelerate_save_path | |
| self.tensorboard_logdir = tensorboard_logdir | |
| esm_prot_encoder, self.esm_alphabet = esm.pretrained.esm.pretrained.esm2_t33_650M_UR50D() # ESM-2 Encoder | |
| # Freeze ESM-2 | |
| for name, param in esm_prot_encoder.named_parameters(): | |
| param.requires_grad = False | |
| for name, param in esm_prot_encoder.named_parameters(): | |
| if "layers.30" in name or "layers.31" in name or "layers.32" in name: | |
| param.requires_grad = True | |
| self.batch_converter = self.esm_alphabet.get_batch_converter(truncation_seq_length=1678) | |
| # self.nt_tokenizer = AutoTokenizer.from_pretrained("InstaDeepAI/nucleotide-transformer-2.5b-1000g") | |
| # nt_encoder = AutoModelForMaskedLM.from_pretrained("InstaDeepAI/nucleotide-transformer-2.5b-1000g") | |
| self.nt_tokenizer = AutoTokenizer.from_pretrained("InstaDeepAI/nucleotide-transformer-v2-50m-multi-species", trust_remote_code=True) | |
| nt_encoder = AutoModelForMaskedLM.from_pretrained("InstaDeepAI/nucleotide-transformer-v2-50m-multi-species", trust_remote_code=True) | |
| self.model = AptaBLE( | |
| apta_encoder=nt_encoder, | |
| prot_encoder=esm_prot_encoder, | |
| dropout=dropout, | |
| ).to(self.device) | |
| self.criterion = torch.nn.BCELoss().to(self.device) | |
| def train(self): | |
| print('Training the model!') | |
| # Initialize writer instance | |
| writer = SummaryWriter(log_dir=f"log/{self.model_type}/{self.model_version}") | |
| # Initialize early stopping | |
| self.early_stopper = EarlyStopper(3, 3) | |
| self.optimizer = torch.optim.AdamW(self.model.parameters(), lr=self.lr, weight_decay=self.weight_decay) | |
| self.scheduler = torch.optim.lr_scheduler.MultiStepLR(self.optimizer, [4, 7, 10], 0.1) | |
| # Configure pytorch objects for distributed environment (i.e. sharded dataloader, multiple copies of model, etc.) | |
| self.model, self.optimizer, self.train_loader, self.test_loader, self.bench_loader, self.scheduler = accelerator.prepare(self.model, self.optimizer, self.train_loader, self.test_loader, self.bench_loader, self.scheduler) | |
| best_loss = 100 | |
| for epoch in range(1, self.epochs+1): | |
| self.model.train() | |
| loss_train, _, _ = self.batch_step(self.train_loader, train_mode=True) | |
| self.model.eval() | |
| self.scheduler.step() | |
| with torch.no_grad(): | |
| loss_test, pred_test, target_test = self.batch_step(self.test_loader, train_mode=False) | |
| test_scores = get_scores(target_test, pred_test) | |
| print("\tTrain Loss: {: .6f}\tTest Loss: {: .6f}\tTest ACC: {:.6f}\tTest AUC: {:.6f}\tTest MCC: {:.6f}\tTest PR_AUC: {:.6f}\tF1: {:.6f}\n".format(loss_train ,loss_test, test_scores['acc'], test_scores['roc_auc'], test_scores['mcc'], test_scores['pr_auc'], test_scores['f1'])) | |
| # stop_early = self.early_stopper.early_stop(loss_test) | |
| # Early stop - model has not improved on eval set. | |
| # if stop_early: | |
| # break | |
| # Only do checkpointing after near-convergence | |
| if epoch > 2: | |
| with torch.no_grad(): | |
| loss_bench, pred_bench, target_bench = self.batch_step(self.bench_loader, train_mode=False) | |
| bench_scores = get_scores(target_bench, pred_bench) | |
| print("\Bench Loss: {: .6f}\Bench ACC: {:.6f}\Bench AUC: {:.6f}\tBench MCC: {:.6f}\tBench PR_AUC: {:.6f}\tBench F1: {:.6f}\n".format(loss_bench, bench_scores['acc'], bench_scores['roc_auc'], bench_scores['mcc'], bench_scores['pr_auc'], bench_scores['f1'])) | |
| writer.add_scalar("Loss/bench", loss_bench, epoch) | |
| for k, v in bench_scores.items(): | |
| if isinstance(v, float): | |
| writer.add_scalar(f'{k}/bench', bench_scores[k], epoch) | |
| # Checkpoint based off of benchmark criteria | |
| # If model has improved and early stopping patience counter was just reset: | |
| if bench_scores['mcc'] > 0.5 and test_scores['mcc'] > 0.5 and loss_bench < 0.9 and accelerator.is_main_process: | |
| best_loss = loss_test | |
| # Remove all other files | |
| # for f in glob.glob(f'{self.model_save_path}/model*.pt'): | |
| # os.remove(f) | |
| accelerator.save_state(self.accelerate_save_path) | |
| model = accelerator.unwrap_model(self.model) | |
| torch.save(model.state_dict(), f'{self.model_save_path}/model_epoch={epoch}.pt') | |
| print(f'Model saved at {self.model_save_path}') | |
| print(f'Accelerate statistics saved at {self.accelerate_save_path}!') # Access via accelerator.load_state("./output") | |
| # logging | |
| writer.add_scalar("Loss/train", loss_train, epoch) | |
| writer.add_scalar("Loss/test", loss_test, epoch) | |
| for k, v in test_scores.items(): | |
| if isinstance(v, float): | |
| writer.add_scalar(f'{k}/test', test_scores[k], epoch) | |
| print("Training finished | access tensorboard via 'tensorboard --logdir=runs'.") | |
| writer.flush() | |
| writer.close() | |
| def batch_step(self, loader, train_mode = True): | |
| loss_total = 0 | |
| pred = np.array([]) | |
| target = np.array([]) | |
| for batch_idx, (apta, esm_prot, y, apta_attn, prot_attn) in enumerate(loader): | |
| if train_mode: | |
| self.optimizer.zero_grad() | |
| y_pred = self.predict(apta, esm_prot, apta_attn, prot_attn) | |
| y_true = torch.tensor(y, dtype=torch.float32).to(self.device) # not needed since accelerator modifies dataloader to automatically map input objects to correct dev | |
| loss = self.criterion(torch.flatten(y_pred), y_true) | |
| if train_mode: | |
| accelerator.backward(loss) # Accelerate backward() method scales gradients and uses appropriate backward method as configured across devices | |
| self.optimizer.step() | |
| loss_total += loss.item() | |
| pred = np.append(pred, torch.flatten(y_pred).clone().detach().cpu().numpy()) | |
| target = np.append(target, torch.flatten(y_true).clone().detach().cpu().numpy()) | |
| mode = 'train' if train_mode else 'eval' | |
| print(mode + "[{}/{}({:.0f}%)]".format(batch_idx, len(loader), 100. * batch_idx / len(loader)), end = "\r", flush=True) | |
| loss_total /= len(loader) | |
| return loss_total, pred, target | |
| def predict(self, apta, esm_prot, apta_attn, prot_attn): | |
| y_pred, _, _, _ = self.model(apta, esm_prot, apta_attn, prot_attn) | |
| return y_pred | |
| def inference(self, apta, prot, labels): | |
| """Perform inference on a batch of aptamer/protein pairs.""" | |
| self.model.eval() | |
| max_length = 275#nt_tokenizer.model_max_length | |
| inputs = [(i, j) for i, j in zip(labels, prot)] | |
| _, _, prot_tokens = self.batch_converter(inputs) | |
| apta_toks = self.nt_tokenizer.batch_encode_plus(apta, return_tensors='pt', padding='max_length', max_length=max_length)['input_ids'] | |
| apta_attention_mask = apta_toks != self.nt_tokenizer.pad_token_id | |
| # # truncating | |
| prot_tokenized = prot_tokens[:, :1680] | |
| # # padding | |
| prot_ex = torch.ones((prot_tokenized.shape[0], 1680), dtype=torch.int64)*self.esm_alphabet.padding_idx | |
| prot_ex[:, :prot_tokenized.shape[1]] = prot_tokenized | |
| prot_attention_mask = prot_ex != self.esm_alphabet.padding_idx | |
| loader = DataLoader(API_Dataset(apta_toks, prot_ex, labels, apta_attention_mask, prot_attention_mask), batch_size=1, shuffle=False) | |
| self.model, loader = accelerator.prepare(self.model, loader) | |
| with torch.no_grad(): | |
| _, pred, _ = self.batch_step(loader, train_mode=False) | |
| return pred | |
| def recommend(self, target, n_aptamers, depth, iteration, verbose=True): | |
| candidates = [] | |
| _, _, prot_tokens = self.batch_converter([(1, target)]) | |
| prot_tokenized = torch.tensor(prot_tokens, dtype=torch.int64) | |
| # adjusting for max protein sequence length during model training | |
| encoded_targetprotein = torch.ones((prot_tokenized.shape[0], 1678), dtype=torch.int64)*self.esm_alphabet.padding_idx | |
| encoded_targetprotein[:, :prot_tokenized.shape[1]] = prot_tokenized | |
| encoded_targetprotein = encoded_targetprotein.to(self.device) | |
| mcts = MCTS(encoded_targetprotein, depth=depth, iteration=iteration, states=8, target_protein=target, device=self.device, esm_alphabet=self.esm_alphabet) | |
| for _ in range(n_aptamers): | |
| mcts.make_candidate(self.model) | |
| candidates.append(mcts.get_candidate()) | |
| self.model.eval() | |
| with torch.no_grad(): | |
| sim_seq = np.array([mcts.get_candidate()]) | |
| print('first candidate: ', sim_seq) | |
| # apta = torch.tensor(rna2vec(sim_seq), dtype=torch.int64).to(self.device) | |
| apta = self.nt_tokenizer.batch_encode_plus(sim_seq, return_tensors='pt', padding='max_length', max_length=275)['input_ids'] | |
| apta_attn = apta != self.nt_tokenizer.pad_token_id | |
| prot_attn = encoded_targetprotein != self.esm_alphabet.padding_idx | |
| score, _, _, _ = self.model(apta.to(self.device), encoded_targetprotein.to(self.device), apta_attn.to(self.device), prot_attn.to(self.device)) | |
| if verbose: | |
| candidate = mcts.get_candidate() | |
| print("candidate:\t", candidate, "\tscore:\t", score) | |
| print("*"*80) | |
| mcts.reset() | |
| def set_data_for_training(self, filepath, batch_size): | |
| # ds_train, ds_test, ds_bench = get_nt_esm_dataset(filepath, self.nt_tokenizer, self.batch_converter, self.esm_alphabet) | |
| ds_train, ds_test, ds_bench = get_nt_esm_dataset(filepath, self.nt_tokenizer, self.batch_converter, self.esm_alphabet) | |
| self.train_loader = DataLoader(API_Dataset(ds_train[0], ds_train[1], ds_train[2], ds_train[3], ds_train[4]), batch_size=batch_size, shuffle=True) | |
| self.test_loader = DataLoader(API_Dataset(ds_test[0], ds_test[1], ds_test[2], ds_test[3], ds_test[4]), batch_size=batch_size, shuffle=False) | |
| self.bench_loader = DataLoader(API_Dataset(ds_bench[0], ds_bench[1], ds_bench[2], ds_bench[3], ds_bench[4]), batch_size=batch_size, shuffle=False) | |
| class EarlyStopper: | |
| def __init__(self, patience=1, min_delta=0): | |
| self.patience = patience | |
| self.min_delta = min_delta | |
| self.counter = 0 | |
| self.min_validation_loss = float('inf') | |
| def early_stop(self, validation_loss): | |
| if validation_loss < self.min_validation_loss: | |
| self.min_validation_loss = validation_loss | |
| self.counter = 0 | |
| elif validation_loss > (self.min_validation_loss + self.min_delta): | |
| self.counter += 1 | |
| if self.counter >= self.patience: | |
| return True | |
| return False | |
| def seed_torch(seed=5471): | |
| random.seed(seed) | |
| os.environ['PYTHONHASHSEED'] = str(seed) | |
| np.random.seed(seed) | |
| torch.manual_seed(seed) | |
| torch.cuda.manual_seed(seed) | |
| torch.cuda.manual_seed_all(seed) # if you are using multi-GPU. | |
| torch.backends.cudnn.benchmark = False | |
| torch.backends.cudnn.deterministic = True | |
| def main(): | |
| conf = OmegaConf.load('config.yaml') | |
| hyperparameters = conf.hyperparameters | |
| logging = conf.logging | |
| lr = hyperparameters['lr'] | |
| wd = hyperparameters['weight_decay'] | |
| dropout = hyperparameters['dropout'] | |
| batch_size = hyperparameters['batch_size'] | |
| epochs = hyperparameters['epochs'] | |
| model_type = logging['model_type'] | |
| model_version = logging['model_version'] | |
| model_save_path = logging['model_save_path'] | |
| accelerate_save_path = logging['accelerate_save_path'] | |
| tensorboard_logdir = logging['tensorboard_logdir'] | |
| seed = hyperparameters['seed'] | |
| if not os.path.exists(model_save_path): | |
| os.makedirs(model_save_path) | |
| seed_torch(seed=seed) | |
| pipeline = AptaBLE_Pipeline( | |
| lr=lr, | |
| weight_decay=wd, | |
| epochs=epochs, | |
| model_type=model_type, | |
| model_version=model_version, | |
| model_save_path=model_save_path, | |
| accelerate_save_path=accelerate_save_path, | |
| tensorboard_logdir=tensorboard_logdir, | |
| d_model=128, | |
| d_ff=512, | |
| n_layers=6, | |
| n_heads=8, | |
| dropout=dropout, | |
| load_best_pt=True, # already loads the pretrained model using the datasets included in repo -- no need to run the bottom two cells | |
| device='cuda', | |
| seed=seed) | |
| datapath = "./data/ABW_real_dna_aptamers_HC_v6.pkl" | |
| # datapath = './data/ABW_real_dna_aptamers_HC_neg_scrambles_neg_homology.pkl' | |
| pipeline.set_data_for_training(datapath, batch_size=batch_size) | |
| pipeline.train() | |
| endpoint = 'https://slack.atombioworks.com/hooks/t3y99qu6pi81frhwrhef1849wh' | |
| msg = {"text": "Model has finished training."} | |
| _ = requests.post(endpoint, | |
| json=msg, | |
| headers={"Content-Type": "application/json"}, | |
| ) | |
| return | |
| if __name__ == "__main__": | |
| # launch training w/ the following: "accelerate launch api_prediction.py [args]" | |
| main() | |