import os os.system('cd TimeSformer;' 'pip install .; cd ..') os.system('ls -l') os.system('pwd') import os, sys sys.path.append("/home/user/app/TimeSformer/") import timesformer import torch from torchvision import transforms from transformers import AutoTokenizer from PIL import Image import json import os from torchvision import transforms from models.epalm import ePALM import os from transformers import AutoTokenizer # import ruamel_yaml as yaml from ruamel.yaml import YAML import torch import gradio as gr import torchaudio yaml=YAML(typ='safe') use_cuda = torch.cuda.is_available() device = torch.device('cuda') if use_cuda else torch.device('cpu') device_type = 'cuda' if use_cuda else 'cpu' ## Load model ### Captioning config = 'configs/audio/ePALM_audio_caption.yaml' config = yaml.load(open(config, 'r')) text_model = 'facebook/opt-2.7b' vision_model_name = 'ast' start_layer_idx = 19 end_layer_idx = 31 low_cpu = True MODEL = ePALM(opt_model_name=text_model, vision_model_name=vision_model_name, use_vis_prefix=True, start_layer_idx=start_layer_idx, end_layer_idx=end_layer_idx, return_hidden_state_vision=True, config=config, low_cpu=low_cpu ) print("Model Built") MODEL.to(device) checkpoint_path = 'checkpoints/float32/ePALM_audio_caption/checkpoint_best.pth' checkpoint = torch.load(checkpoint_path, map_location='cpu') state_dict = checkpoint['model'] msg = MODEL.load_state_dict(state_dict,strict=False) MODEL.bfloat16() ## Load tokenizer tokenizer = AutoTokenizer.from_pretrained(text_model, use_fast=False) eos_token = tokenizer.eos_token pad_token = tokenizer.pad_token special_answer_token = '' special_tokens_dict = {'additional_special_tokens': [special_answer_token]} tokenizer.add_special_tokens(special_tokens_dict) def read_audio(path): melbins = 128 target_length = 1024 skip_norm = False norm_mean = -4.2677393 norm_std = 4.5689974 waveform, sr = torchaudio.load(path) waveform = waveform - waveform.mean() # audio fbank = torchaudio.compliance.kaldi.fbank(waveform, htk_compat=True, sample_frequency=sr, use_energy=False, window_type='hanning', num_mel_bins=melbins, dither=0.0, frame_shift=10) n_frames = fbank.shape[0] p = target_length - n_frames # cut and pad if p > 0: m = torch.nn.ZeroPad2d((0, 0, 0, p)) fbank = m(fbank) elif p < 0: fbank = fbank[0:target_length, :] # SpecAug, not do for eval set fbank = torch.transpose(fbank, 0, 1) # this is just to satisfy new torchaudio version, which only accept [1, freq, time] fbank = fbank.unsqueeze(0) # squeeze it back, it is just a trick to satisfy new torchaudio version fbank = fbank.squeeze(0) fbank = torch.transpose(fbank, 0, 1) # normalize the input for both training and test if not skip_norm: fbank = (fbank - norm_mean) / (norm_std * 2) # skip normalization the input if you are trying to get the normalization stats. else: pass audio = fbank.unsqueeze(0) return audio do_sample=False num_beams=5 max_length=30 def inference(image, task_type): if task_type == 'Audio Captioning': text = [''] text_input = tokenizer(text, padding='longest', return_tensors="pt").to(device) model = MODEL else: raise NotImplemented image = read_audio(image) with torch.autocast(device_type=device_type, dtype=torch.bfloat16, enabled=True): out = model(image=image, text=text_input, mode='generate', return_dict=True, max_length=max_length, do_sample=do_sample, num_beams=num_beams) if 'Captioning' in task_type: for i, o in enumerate(out): res = tokenizer.decode(o) response = res.split('')[1].replace(pad_token, '').replace('', '').replace(eos_token, '') # skip_special_tokens=True else: for o in out: o_list = o.tolist() response = tokenizer.decode(o_list).split(special_answer_token)[1].replace(pad_token, '').replace('', '').replace(eos_token, '') # skip_special_tokens=True return response inputs = [gr.Audio(source="upload", type="filepath"), gr.inputs.Radio(choices=['Audio Captioning'], type="value", default="Image Captioning", label="Task")] outputs = ['text'] examples = [ ['examples/audios/6cS0FsUM-cQ.wav', 'Audio Captioning', None], ['examples/audios/AJtNitYMa1I.wav', 'Audio Captioning', None], ] title = "eP-ALM for Audio-Text tasks" description = "Gradio Demo for eP-ALM. For this demo, we use 2.7B OPT. As the model runs on CPUs and float16 mixed precision is not supported on CPUs, the generation can take up to 2 mins." article = "

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" io = gr.Interface(fn=inference, inputs=inputs, outputs=outputs, title=title, description=description, article=article, examples=examples, cache_examples=False) io.launch()