import gradio as gr import torch import random from unidecode import unidecode import re from samplings import top_p_sampling, top_k_sampling, temperature_sampling from transformers import GPT2Model, GPT2LMHeadModel, PreTrainedModel device = torch.device("cuda" if torch.cuda.is_available() else "cpu") PATCH_LENGTH = 128 # Patch Length PATCH_SIZE = 32 # Patch Size PATCH_NUM_LAYERS = 9 # Number of layers in the encoder CHAR_NUM_LAYERS = 3 # Number of layers in the decoder NUM_EPOCHS = 32 # Number of epochs to train for (if early stopping doesn't intervene) LEARNING_RATE = 5e-5 # Learning rate for the optimizer PATCH_SAMPLING_BATCH_SIZE = 0 # Batch size for patch during training, 0 for full context LOAD_FROM_CHECKPOINT = False # Whether to load weights from a checkpoint SHARE_WEIGHTS = False # Whether to share weights between the encoder and decoder description = """
Duplicate Space
## ℹ️ How to use this demo? 1. Enter the control codes to set the musical form of the generated music. For details, please refer to the below "Control Codes" section. (optional) 2. Enter the prompt of the generated music. You can set the control codes to set the musical form, ABC header (i.e., note length, tempo, meter, and key) and the motif of the melody. (optional) 2. You can set the parameters (i.e., number of tunes, maximum patch, top-p, top-k, temperature, random seed and show control code) for the generation. (optional) 3. Click "Submit" and wait for the result. 4. The generated ABC notation can be played or edited using [EasyABC]([ABC Sheet Music Editor - EasyABC](https://easyabc.sourceforge.net/), you can also use this [Online ABC Player](https://abc.rectanglered.com/) to render the tune. ## 📝 Control Codes Inspired by [CTRL](https://huggingface.co/ctrl), we incorporate control codes into TunesFormer to represent musical forms. These codes, positioned ahead of the ABC notation, enable users to specify the structures of the generated tunes. The following control codes are introduced: - **S:number of sections**: determines the number of sections in the entire melody. It counts on several symbols that can be used to represent section boundaries: `[|`, `||`, `|]`, `|:`, `::`, and `:|`. In our dataset, the range is 1 to 8 (e.g., `S:1` for a single-section melody, and `S:8` for a melody with eight sections). - **B:number of bars**: specifies the desired number of bars within a section. It counts on the bar symbol `|`. In our dataset, the range is 1 to 32 (e.g., `B:1` for a one-bar section, and `B:32` for a section with 32 bars). - **E:edit distance similarity**: controls the similarity level between the current section $c$ and a previous section $p$ in the melody. It is based on the Levenshtein distance $lev(c,p)$ , quantifying the difference between sections for creating variations or contrasts. Mathematically, it can be expressed as: ``` eds(c,p) = 1 - lev(c,p) / max(|c|,|p|) ``` where $|c|$ and $|p|$ are the string lengths of the two sections. It is discretized into 11 levels, ranging from no match at all to an exact match (e.g., `E:0` for no similarity, and `E:10` for an exact match). ## ❕Notice - If the prefix is given, you must also provide the control codes. - The order of the ABC header cannot be changed (i.e., note length, tempo, meter, and key), and also do not support other headers (e.g., composer, title, etc.) as they are not used in the model. For details, please refer to the official [ABC notation](https://abcnotation.com/wiki/abc:standard:v2.1#description_of_information_fields). - The demo is based on GPT2-small and trained from scratch on the [Massive ABC Notation Dataset](https://huggingface.co/datasets/sander-wood/massive_abcnotation_dataset). - The demo is still in the early stage, and the generated music is not perfect. If you have any suggestions, please feel free to contact me via [email](mailto:shangda@mail.ccom.edu.cn). """ class Patchilizer: """ A class for converting music bars to patches and vice versa. """ def __init__(self): self.delimiters = ["|:", "::", ":|", "[|", "||", "|]", "|"] self.regexPattern = '(' + '|'.join(map(re.escape, self.delimiters)) + ')' self.pad_token_id = 0 self.bos_token_id = 1 self.eos_token_id = 2 def split_bars(self, body): """ Split a body of music into individual bars. """ bars = re.split(self.regexPattern, ''.join(body)) bars = list(filter(None, bars)) # remove empty strings if bars[0] in self.delimiters: bars[1] = bars[0] + bars[1] bars = bars[1:] bars = [bars[i * 2] + bars[i * 2 + 1] for i in range(len(bars) // 2)] return bars def bar2patch(self, bar, patch_size=PATCH_SIZE): """ Convert a bar into a patch of specified length. """ patch = [self.bos_token_id] + [ord(c) for c in bar] + [self.eos_token_id] patch = patch[:patch_size] patch += [self.pad_token_id] * (patch_size - len(patch)) return patch def patch2bar(self, patch): """ Convert a patch into a bar. """ return ''.join(chr(idx) if idx > self.eos_token_id else '' for idx in patch if idx != self.eos_token_id) def encode(self, abc_code, patch_length=PATCH_LENGTH, patch_size=PATCH_SIZE, add_special_patches=False): """ Encode music into patches of specified length. """ lines = unidecode(abc_code).split('\n') lines = list(filter(None, lines)) # remove empty lines body = "" patches = [] for line in lines: if len(line) > 1 and ((line[0].isalpha() and line[1] == ':') or line.startswith('%%score')): if body: bars = self.split_bars(body) patches.extend(self.bar2patch(bar + '\n' if idx == len(bars) - 1 else bar, patch_size) for idx, bar in enumerate(bars)) body = "" patches.append(self.bar2patch(line + '\n', patch_size)) else: body += line + '\n' if body: patches.extend(self.bar2patch(bar, patch_size) for bar in self.split_bars(body)) if add_special_patches: bos_patch = [self.bos_token_id] * (patch_size-1) + [self.eos_token_id] eos_patch = [self.bos_token_id] + [self.eos_token_id] * (patch_size-1) patches = [bos_patch] + patches + [eos_patch] return patches[:patch_length] def decode(self, patches): """ Decode patches into music. """ return ''.join(self.patch2bar(patch) for patch in patches) class PatchLevelDecoder(PreTrainedModel): """ An Patch-level Decoder model for generating patch features in an auto-regressive manner. It inherits PreTrainedModel from transformers. """ def __init__(self, config): super().__init__(config) self.patch_embedding = torch.nn.Linear(PATCH_SIZE * 128, config.n_embd) torch.nn.init.normal_(self.patch_embedding.weight, std=0.02) self.base = GPT2Model(config) def forward(self, patches: torch.Tensor) -> torch.Tensor: """ The forward pass of the patch-level decoder model. :param patches: the patches to be encoded :return: the encoded patches """ patches = torch.nn.functional.one_hot(patches, num_classes=128).float() patches = patches.reshape(len(patches), -1, PATCH_SIZE * 128) patches = self.patch_embedding(patches.to(self.device)) return self.base(inputs_embeds=patches) class CharLevelDecoder(PreTrainedModel): """ A Char-level Decoder model for generating the characters within each bar patch sequentially. It inherits PreTrainedModel from transformers. """ def __init__(self, config): super().__init__(config) self.pad_token_id = 0 self.bos_token_id = 1 self.eos_token_id = 2 self.base = GPT2LMHeadModel(config) def forward(self, encoded_patches: torch.Tensor, target_patches: torch.Tensor, patch_sampling_batch_size: int): """ The forward pass of the char-level decoder model. :param encoded_patches: the encoded patches :param target_patches: the target patches :return: the decoded patches """ # preparing the labels for model training target_masks = target_patches == self.pad_token_id labels = target_patches.clone().masked_fill_(target_masks, -100) # masking the labels for model training target_masks = torch.ones_like(labels) target_masks = target_masks.masked_fill_(labels == -100, 0) # select patches if patch_sampling_batch_size!=0 and patch_sampling_batch_size= PATCH_SIZE - 1: break else: tokens = torch.cat((tokens, torch.tensor([token], device=self.device)), dim=0) return generated_patch, n_seed def generate_abc(prompt, num_tunes, max_patch, top_p, top_k, temperature, seed, show_control_code): if torch.cuda.is_available(): device = torch.device("cuda") else: device = torch.device("cpu") patchilizer = Patchilizer() patch_config = GPT2Config(num_hidden_layers=PATCH_NUM_LAYERS, max_length=PATCH_LENGTH, max_position_embeddings=PATCH_LENGTH, vocab_size=1) char_config = GPT2Config(num_hidden_layers=CHAR_NUM_LAYERS, max_length=PATCH_SIZE, max_position_embeddings=PATCH_SIZE, vocab_size=128) model = TunesFormer(patch_config, char_config, share_weights=SHARE_WEIGHTS) filename = "weights.pth" if os.path.exists(filename): print(f"Weights already exist at '{filename}'. Loading...") else: print(f"Downloading weights to '{filename}' from huggingface.co...") try: url = 'https://huggingface.co/sander-wood/tunesformer/resolve/main/weights.pth' response = requests.get(url, stream=True) total_size = int(response.headers.get('content-length', 0)) chunk_size = 1024 with open(filename, 'wb') as file, tqdm( desc=filename, total=total_size, unit='B', unit_scale=True, unit_divisor=1024, ) as bar: for data in response.iter_content(chunk_size=chunk_size): size = file.write(data) bar.update(size) except Exception as e: print(f"Error: {e}") exit() checkpoint = torch.load('weights.pth') model.load_state_dict(checkpoint['model']) model = model.to(device) model.eval() tunes = "" print("\n"+" OUTPUT TUNES ".center(60, "#")) start_time = time.time() for i in range(num_tunes): tune = "X:"+str(i+1) + "\n" + prompt lines = re.split(r'(\n)', tune) tune = "" skip = False for line in lines: if show_control_code or line[:2] not in ["S:", "B:", "E:"]: if not skip: print(line, end="") tune += line skip = False else: skip = True input_patches = torch.tensor([patchilizer.encode(prompt, add_special_patches=True)[:-1]], device=device) if tune=="": tokens = None else: prefix = patchilizer.decode(input_patches[0]) remaining_tokens = prompt[len(prefix):] tokens = torch.tensor([patchilizer.bos_token_id]+[ord(c) for c in remaining_tokens], device=device) while input_patches.shape[1]