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import os |
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import time as reqtime |
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import datetime |
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from pytz import timezone |
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import torch |
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import spaces |
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import gradio as gr |
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from x_transformer_1_23_2 import * |
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import random |
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from statistics import mode |
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import tqdm |
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from midi_to_colab_audio import midi_to_colab_audio |
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import TMIDIX |
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import matplotlib.pyplot as plt |
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in_space = os.getenv("SYSTEM") == "spaces" |
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@spaces.GPU |
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def ClassifyMIDI(input_midi): |
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print('=' * 70) |
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print('Req start time: {:%Y-%m-%d %H:%M:%S}'.format(datetime.datetime.now(PDT))) |
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start_time = reqtime.time() |
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print('Loading model...') |
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SEQ_LEN = 1024 |
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PAD_IDX = 14627 |
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DEVICE = 'cuda' |
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model = TransformerWrapper( |
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num_tokens = PAD_IDX+1, |
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max_seq_len = SEQ_LEN, |
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attn_layers = Decoder(dim = 1024, depth = 12, heads = 16, attn_flash = True) |
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) |
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model = AutoregressiveWrapper(model, ignore_index = PAD_IDX) |
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model.to(DEVICE) |
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print('=' * 70) |
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print('Loading model checkpoint...') |
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model.load_state_dict( |
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torch.load('Annotated_MIDI_Dataset_Classifier_Trained_Model_21269_steps_0.4335_loss_0.8716_acc.pth', |
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map_location=DEVICE)) |
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print('=' * 70) |
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model.eval() |
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if DEVICE == 'cpu': |
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dtype = torch.bfloat16 |
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else: |
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dtype = torch.bfloat16 |
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ctx = torch.amp.autocast(device_type=DEVICE, dtype=dtype) |
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print('Done!') |
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print('=' * 70) |
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print('=' * 70) |
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fn = os.path.basename(input_midi.name) |
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fn1 = fn.split('.')[0] |
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print('-' * 70) |
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print('Input file name:', fn) |
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print('=' * 70) |
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print('Loading MIDI file...') |
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midi_name = fn |
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raw_score = TMIDIX.midi2single_track_ms_score(open(input_midi.name, 'rb').read()) |
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escore_notes = TMIDIX.advanced_score_processor(raw_score, return_enhanced_score_notes=True)[0] |
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escore = [e for e in TMIDIX.augment_enhanced_score_notes(escore_notes, timings_divider=32) if e[6] < 80] |
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cscore = TMIDIX.chordify_score([1000, escore]) |
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melody_chords = [] |
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pe = cscore[0][0] |
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for c in cscore: |
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pitches = [] |
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for e in c: |
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if e[4] not in pitches: |
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dtime = max(0, min(127, e[1]-pe[1])) |
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dur = max(1, min(127, e[2])) |
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ptc = max(1, min(127, e[4])) |
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melody_chords.append([dtime, dur, ptc]) |
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pitches.append(ptc) |
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pe = e |
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seq = [] |
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input_data = [] |
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notes_counter = 0 |
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for mm in melody_chords: |
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time = mm[0] |
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dur = mm[1] |
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ptc = mm[2] |
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seq.extend([time, dur+128, ptc+256]) |
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notes_counter += 1 |
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for i in range(0, len(seq)-SEQ_LEN-4, (SEQ_LEN-4) // 2): |
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schunk = seq[i:i+SEQ_LEN-4] |
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input_data.append([14624] + schunk + [14625]) |
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print('Done!') |
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print('=' * 70) |
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print('Composition has', notes_counter, 'notes') |
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print('=' * 70) |
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print('Composition was split into' , len(input_data), 'chunks', 'of 340 notes each with 170 notes overlap') |
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print('Number of notes in all composition chunks:', len(input_data) * 340) |
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number_of_batches = 100 |
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print('=' * 70) |
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print('Annotated MIDI Dataset Classifier') |
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print('=' * 70) |
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print('Classifying...') |
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torch.cuda.empty_cache() |
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model.eval() |
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results = [] |
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for input in input_data: |
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x = torch.tensor([input[:1022]] * number_of_batches, dtype=torch.long, device='cuda') |
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with ctx: |
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out = model.generate(x, |
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1, |
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temperature=0.3, |
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return_prime=False, |
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verbose=False) |
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y = out.tolist() |
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output = [l[0] for l in y] |
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result = mode(output) |
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results.append(result) |
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all_results_labels = [classifier_labels[0][r-384] for r in results] |
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final_result = mode(results) |
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print('Done!') |
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print('=' * 70) |
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print('Most common classification label:', classifier_labels[0][final_result-384]) |
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print('Most common classification label ratio:' , results.count(final_result) / len(results)) |
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print('Most common classification label index', final_result) |
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print('=' * 70) |
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print('All classification labels summary:') |
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print('=' * 70) |
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for i, a in enumerate(all_results_labels): |
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print('Notes', i*170, '-', (i*170)+340, '===', a) |
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print('=' * 70) |
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print('Done!') |
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print('=' * 70) |
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print('Rendering results...') |
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score_idx = processed_scores_labels.index(classifier_labels[0][final_result-384]) |
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output_score = processed_scores[score_idx][1] |
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print('=' * 70) |
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print('Sample INTs', output[:15]) |
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print('=' * 70) |
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fn1 = processed_scores[score_idx][0] |
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detailed_stats = TMIDIX.Tegridy_ms_SONG_to_MIDI_Converter(output_score, |
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output_signature = 'Advanced MIDI Classifier', |
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output_file_name = fn1, |
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track_name='Project Los Angeles', |
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list_of_MIDI_patches=patches, |
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timings_multiplier=16 |
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) |
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new_fn = fn1+'.mid' |
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audio = midi_to_colab_audio(new_fn, |
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soundfont_path=soundfont, |
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sample_rate=16000, |
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volume_scale=10, |
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output_for_gradio=True |
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) |
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print('Done!') |
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print('=' * 70) |
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output_midi_title = str(fn1) |
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output_midi_summary = str('Summary') |
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output_midi = str(new_fn) |
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output_audio = (16000, audio) |
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output_plot = TMIDIX.plot_ms_SONG(output_score, plot_title=output_midi, return_plt=True, timings_multiplier=16) |
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print('Output MIDI file name:', output_midi) |
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print('Output MIDI title:', output_midi_title) |
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print('Output MIDI summary:', output_midi_summary) |
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print('=' * 70) |
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print('-' * 70) |
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print('Req end time: {:%Y-%m-%d %H:%M:%S}'.format(datetime.datetime.now(PDT))) |
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print('-' * 70) |
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print('Req execution time:', (reqtime.time() - start_time), 'sec') |
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return output_midi_title, output_midi_summary, output_midi, output_audio, output_plot |
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if __name__ == "__main__": |
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PDT = timezone('US/Pacific') |
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print('=' * 70) |
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print('App start time: {:%Y-%m-%d %H:%M:%S}'.format(datetime.datetime.now(PDT))) |
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print('=' * 70) |
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soundfont = "SGM-v2.01-YamahaGrand-Guit-Bass-v2.7.sf2" |
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print('Loading Annotated MIDI Dataset processed scores...') |
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processed_scores = TMIDIX.Tegridy_Any_Pickle_File_Reader('processed_scores') |
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processed_scores_labels = [l[0] for l in processed_scores] |
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print('=' * 70) |
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print('Loading Annotated MIDI Dataset Classifier Songs Artists Labels...') |
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classifier_labels = TMIDIX.Tegridy_Any_Pickle_File_Reader('Annotated_MIDI_Dataset_Classifier_Songs_Artists_Labels') |
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print('=' * 70) |
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app = gr.Blocks() |
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with app: |
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gr.Markdown("<h1 style='text-align: center; margin-bottom: 1rem'>Advanced MIDI Classifier</h1>") |
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gr.Markdown("<h1 style='text-align: center; margin-bottom: 1rem'>Detailed MIDI classification with transformers</h1>") |
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gr.Markdown( |
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"![Visitors](https://api.visitorbadge.io/api/visitors?path=asigalov61.Advanced-MIDI-Classifier&style=flat)\n\n") |
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input_midi = gr.File(label="Input MIDI", file_types=[".midi", ".mid", ".kar"]) |
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run_btn = gr.Button("classify", variant="primary") |
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gr.Markdown("## Classification results") |
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output_midi_title = gr.Textbox(label="Output MIDI title") |
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output_midi_summary = gr.Textbox(label="Output MIDI summary") |
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output_audio = gr.Audio(label="Output MIDI audio", format="wav", elem_id="midi_audio") |
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output_plot = gr.Plot(label="Output MIDI score plot") |
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output_midi = gr.File(label="Output MIDI file", file_types=[".mid"]) |
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run_event = run_btn.click(ClassifyMIDI, [input_midi], |
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[output_midi_title, output_midi_summary, output_midi, output_audio, output_plot]) |
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app.queue().launch() |