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import os.path |
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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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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 GenerateAccompaniment(input_midi, input_num_tokens, input_conditioning_type): |
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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 = 8192 |
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PAD_IDX = 707 |
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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 = 2048, depth = 4, 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('Chords_Progressions_Transformer_Small_2048_Trained_Model_12947_steps_0.9316_loss_0.7386_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.float16 |
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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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fn = os.path.basename(input_midi.name) |
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fn1 = fn.split('.')[0] |
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input_num_tokens = max(4, min(128, input_num_tokens)) |
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print('-' * 70) |
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print('Input file name:', fn) |
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print('Req num toks:', input_num_tokens) |
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print('Force acc:', input_acc_type) |
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print('-' * 70) |
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raw_score = TMIDIX.midi2single_track_ms_score(input_midi.name) |
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escore_notes = TMIDIX.advanced_score_processor(raw_score, return_enhanced_score_notes=True)[0] |
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escore_notes = [e for e in escore_notes if e[3] != 9] |
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if len(escore_notes) > 0: |
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escore_notes = TMIDIX.augment_enhanced_score_notes(escore_notes, timings_divider=32) |
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cscore = TMIDIX.chordify_score([1000, escore_notes]) |
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melody = TMIDIX.fix_monophonic_score_durations([sorted(e, key=lambda x: x[4], reverse=True)[0] for e in cscore]) |
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melody_chords = [] |
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pe = cscore[0][0] |
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mpe = melody[0] |
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midx = 1 |
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for i, c in enumerate(cscore): |
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c.sort(key=lambda x: (x[3], x[4]), reverse=True) |
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if midx < len(melody): |
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mtime = melody[midx][1]-mpe[1] |
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mdur = melody[midx][2] |
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mdelta_time = max(0, min(127, mtime)) |
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mdur = max(0, min(127, mdur)) |
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mptc = melody[midx][4] |
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else: |
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mtime = 127-mpe[1] |
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mdur = mpe[2] |
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mdelta_time = max(0, min(127, mtime)) |
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mdur = max(0, min(127, mdur)) |
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mptc = mpe[4] |
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e = melody[i] |
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time = e[1]-pe[1] |
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dur = e[2] |
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delta_time = max(0, min(127, time)) |
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dur = max(0, min(127, dur)) |
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ptc = max(1, min(127, e[4])) |
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if ptc < 60: |
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ptc = 60 + (ptc % 12) |
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cha = e[3] |
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if midx < len(melody): |
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melody_chords.append([delta_time, dur+128, ptc+384, mdelta_time+512, mptc+640]) |
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mpe = melody[midx] |
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midx += 1 |
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else: |
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melody_chords.append([delta_time, dur+128, ptc+384, mdelta_time+512, mptc+640]) |
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pe = e |
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print('=' * 70) |
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print('Sample output events', melody_chords[:5]) |
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print('=' * 70) |
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print('Generating...') |
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output = [] |
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force_acc = input_acc_type |
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num_toks_per_note = 32 |
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temperature=0.9 |
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max_drums_limit=4 |
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num_memory_tokens=4096 |
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output1 = [] |
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output2 = [] |
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for m in melody_chords[:input_num_tokens]: |
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output1.extend(m) |
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input_seq = output1 |
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if force_acc: |
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x = torch.LongTensor([input_seq+[0]]).cuda() |
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else: |
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x = torch.LongTensor([input_seq]).cuda() |
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time = input_seq[-2]-512 |
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cur_time = 0 |
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for _ in range(num_toks_per_note): |
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with ctx: |
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out = model.generate(x[-num_memory_tokens:], |
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1, |
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temperature=temperature, |
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return_prime=False, |
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verbose=False) |
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o = out.tolist()[0][0] |
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if 0 <= o < 128: |
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cur_time += o |
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if cur_time < time and o < 384: |
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out = torch.LongTensor([[o]]).cuda() |
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x = torch.cat((x, out), 1) |
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else: |
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break |
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outy = x.tolist()[0][len(input_seq):] |
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output1.extend(outy) |
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output2.append(outy) |
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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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print('=' * 70) |
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print('Sample INTs', output1[:12]) |
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print('=' * 70) |
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out1 = output2 |
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accompaniment_MIDI_patch_number = 0 |
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melody_MIDI_patch_number = 40 |
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if len(out1) != 0: |
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song = out1 |
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song_f = [] |
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time = 0 |
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ntime = 0 |
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ndur = 0 |
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vel = 90 |
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npitch = 0 |
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channel = 0 |
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patches = [0] * 16 |
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patches[0] = accompaniment_MIDI_patch_number |
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patches[3] = melody_MIDI_patch_number |
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for i, ss in enumerate(song): |
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ntime += melody_chords[i][0] * 32 |
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ndur = (melody_chords[i][1]-128) * 32 |
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nchannel = 1 |
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npitch = (melody_chords[i][2]-256) % 128 |
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vel = max(40, npitch)+20 |
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song_f.append(['note', ntime, ndur, 3, npitch, vel, melody_MIDI_patch_number ]) |
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time = ntime |
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for s in ss: |
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if 0 <= s < 128: |
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time += s * 32 |
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if 128 <= s < 256: |
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dur = (s-128) * 32 |
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if 256 <= s < 384: |
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pitch = (s-256) |
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vel = max(40, pitch) |
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song_f.append(['note', time, dur, 0, pitch, vel, accompaniment_MIDI_patch_number]) |
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fn1 = "Ultimate-Accompaniment-Transformer-Composition" |
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detailed_stats = TMIDIX.Tegridy_ms_SONG_to_MIDI_Converter(song_f, |
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output_signature = 'Ultimate Accompaniment Transformer', |
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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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) |
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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(song_f[:3]) |
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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(song_f, plot_title=output_midi, return_plt=True) |
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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:', '') |
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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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app = gr.Blocks() |
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with app: |
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gr.Markdown("<h1 style='text-align: center; margin-bottom: 1rem'>Chords Progressions Transformer</h1>") |
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gr.Markdown("<h1 style='text-align: center; margin-bottom: 1rem'>Chords-conditioned music transformer</h1>") |
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gr.Markdown( |
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"\n\n" |
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"Generate music based on chords progressions\n\n" |
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"Check out [Chords Progressions Transformer](https://github.com/asigalov61/Chords-Progressions-Transformer) on GitHub!\n\n" |
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"[Open In Colab]" |
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"(https://colab.research.google.com/github/asigalov61/Chords-Progressions-Transformer/blob/main/Chords_Progressions_Transformer.ipynb)" |
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" for faster execution and endless generation" |
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) |
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gr.Markdown("## Upload your MIDI or select a sample example MIDI") |
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input_midi = gr.File(label="Input MIDI", file_types=[".midi", ".mid", ".kar"]) |
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input_num_tokens = gr.Slider(4, 128, value=32, step=1, label="Number of composition chords to generate progression for") |
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input_conditioning_type = gr.Radio(["Chords", "Chords-Times", "Chords-Times-Durations"], label="Conditioning type") |
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run_btn = gr.Button("generate", variant="primary") |
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gr.Markdown("## Generation 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(GenerateAccompaniment, [input_midi, input_num_tokens, input_conditioning_type], |
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[output_midi_title, output_midi_summary, output_midi, output_audio, output_plot]) |
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gr.Examples( |
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[["Chords-Progressions-Transformer-Piano-Seed-1.mid", 128, "Chords"], |
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["Chords-Progressions-Transformer-Piano-Seed-2.mid", 128, "Chords"], |
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["Chords-Progressions-Transformer-Piano-Seed-3.mid", 128, "Chords"], |
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["Chords-Progressions-Transformer-Piano-Seed-4.mid", 128, "Chords"], |
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["Chords-Progressions-Transformer-Piano-Seed-5.mid", 128, "Chords"], |
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["Chords-Progressions-Transformer-Piano-Seed-6.mid", 128, "Chords"], |
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["Chords-Progressions-Transformer-MI-Seed-1.mid", 128, "Chords"] |
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["Chords-Progressions-Transformer-MI-Seed-2.mid", 128, "Chords"] |
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["Chords-Progressions-Transformer-MI-Seed-3.mid", 128, "Chords"] |
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["Chords-Progressions-Transformer-MI-Seed-4.mid", 128, "Chords"] |
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["Chords-Progressions-Transformer-MI-Seed-5.mid", 128, "Chords"] |
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["Chords-Progressions-Transformer-MI-Seed-6.mid", 128, "Chords"] |
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], |
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[input_midi, input_num_tokens, input_conditioning_type], |
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[output_midi_title, output_midi_summary, output_midi, output_audio, output_plot], |
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GenerateAccompaniment, |
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cache_examples=True, |
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) |
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app.queue().launch() |