import gradio as gr import json import librosa import os import soundfile as sf import tempfile import uuid import torch from nemo.collections.asr.models import ASRModel from nemo.collections.asr.parts.utils.streaming_utils import FrameBatchMultiTaskAED from nemo.collections.asr.parts.utils.transcribe_utils import get_buffered_pred_feat_multitaskAED SAMPLE_RATE = 16000 # Hz MAX_AUDIO_MINUTES = 1 # wont try to transcribe if longer than this model = ASRModel.from_pretrained("nvidia/canary-1b") model.eval() # make sure beam size always 1 for consistency model.change_decoding_strategy(None) decoding_cfg = model.cfg.decoding decoding_cfg.beam.beam_size = 1 model.change_decoding_strategy(decoding_cfg) # setup for buffered inference model.cfg.preprocessor.dither = 0.0 model.cfg.preprocessor.pad_to = 0 feature_stride = model.cfg.preprocessor['window_stride'] model_stride_in_secs = feature_stride * 8 # 8 = model stride, which is 8 for FastConformer frame_asr = FrameBatchMultiTaskAED( asr_model=model, frame_len=40.0, total_buffer=40.0, batch_size=16, ) amp_dtype = torch.float16 def convert_audio(audio_filepath, tmpdir, utt_id): """ Convert all files to monochannel 16 kHz wav files. Do not convert and raise error if audio too long. Returns output filename and duration. """ data, sr = librosa.load(audio_filepath, sr=None, mono=True) duration = librosa.get_duration(y=data, sr=sr) if duration / 60.0 > MAX_AUDIO_MINUTES: raise gr.Error( f"This demo can transcribe up to {MAX_AUDIO_MINUTES} minutes of audio. " "If you wish, you may trim the audio using the Audio viewer in Step 1 " "(click on the scissors icon to start trimming audio)." ) if sr != SAMPLE_RATE: data = librosa.resample(data, orig_sr=sr, target_sr=SAMPLE_RATE) out_filename = os.path.join(tmpdir, utt_id + '.wav') # save output audio sf.write(out_filename, data, SAMPLE_RATE) return out_filename, duration def transcribe(audio_filepath, src_lang, tgt_lang, pnc): if audio_filepath is None: raise gr.Error("Please provide some input audio: either upload an audio file or use the microphone") utt_id = uuid.uuid4() with tempfile.TemporaryDirectory() as tmpdir: converted_audio_filepath, duration = convert_audio(audio_filepath, tmpdir, str(utt_id)) # make manifest file and save manifest_data = { "audio_filepath": converted_audio_filepath, "source_lang": "en", "target_lang": "en", "taskname": "asr", "pnc": "no", "answer": "predict", "duration": str(duration), } manifest_filepath = os.path.join(tmpdir, f'{utt_id}.json') with open(manifest_filepath, 'w') as fout: line = json.dumps(manifest_data) fout.write(line + '\n') # call transcribe, passing in manifest filepath if duration < 40: output_text = model.transcribe(manifest_filepath)[0] else: # do buffered inference with torch.cuda.amp.autocast(dtype=amp_dtype): # TODO: make it work if no cuda with torch.no_grad(): hyps = get_buffered_pred_feat_multitaskAED( frame_asr, model.cfg.preprocessor, model_stride_in_secs, model.device, manifest=manifest_filepath, filepaths=None, ) output_text = hyps[0].text return output_text import torch from transformers import AutoModelForCausalLM, AutoTokenizer, pipeline torch.random.manual_seed(0) model = AutoModelForCausalLM.from_pretrained( "microsoft/Phi-3-mini-128k-instruct", device_map="auto", torch_dtype="auto", trust_remote_code=True, ) tokenizer = AutoTokenizer.from_pretrained("microsoft/Phi-3-mini-128k-instruct") messages = [ {"role": "user", "content": str(output_text)}, ] pipe = pipeline( "text-generation", model=model, tokenizer=tokenizer, ) generation_args = { "max_new_tokens": 500, "return_full_text": True, "temperature": 0.0, "do_sample": False, } output_text = pipe(messages, **generation_args) print(output[0]['generated_text']) with gr.Blocks( title="myAlexa", css=""" textarea { font-size: 18px;} #model_output_text_box span { font-size: 18px; font-weight: bold; } """, theme=gr.themes.Default(text_size=gr.themes.sizes.text_lg) # make text slightly bigger (default is text_md ) ) as demo: gr.HTML("

Your amazing AI assistant

") with gr.Row(): with gr.Column(): gr.HTML( "

Step 1: Record with your microphone.

" ) audio_file = gr.Audio(sources=["microphone"], type="filepath") with gr.Column(): go_button = gr.Button( value="Transcribe", variant="primary", # make "primary" so it stands out (default is "secondary") ) model_output_text_box = gr.Textbox( label="Model Output", elem_id="model_output_text_box", ) go_button.click( fn=transcribe, inputs = [audio_file], outputs = [model_output_text_box] ) demo.queue() demo.launch()