| import torch |
| import math |
| import torch.nn.functional as F |
| from comfy.ldm.modules.attention import optimized_attention |
| from .utils import tensor_to_size |
|
|
| class Attn2Replace: |
| def __init__(self, callback=None, **kwargs): |
| self.callback = [callback] |
| self.kwargs = [kwargs] |
|
|
| def add(self, callback, **kwargs): |
| self.callback.append(callback) |
| self.kwargs.append(kwargs) |
|
|
| for key, value in kwargs.items(): |
| setattr(self, key, value) |
|
|
| def __call__(self, q, k, v, extra_options): |
| dtype = q.dtype |
| out = optimized_attention(q, k, v, extra_options["n_heads"]) |
| sigma = extra_options["sigmas"].detach().cpu()[0].item() if 'sigmas' in extra_options else 999999999.9 |
|
|
| for i, callback in enumerate(self.callback): |
| if sigma <= self.kwargs[i]["sigma_start"] and sigma >= self.kwargs[i]["sigma_end"]: |
| out = out + callback(out, q, k, v, extra_options, **self.kwargs[i]) |
|
|
| return out.to(dtype=dtype) |
|
|
| def ipadapter_attention(out, q, k, v, extra_options, module_key='', ipadapter=None, weight=1.0, cond=None, cond_alt=None, uncond=None, weight_type="linear", mask=None, sigma_start=0.0, sigma_end=1.0, unfold_batch=False, embeds_scaling='V only', **kwargs): |
| dtype = q.dtype |
| cond_or_uncond = extra_options["cond_or_uncond"] |
| block_type = extra_options["block"][0] |
| |
| t_idx = extra_options["transformer_index"] |
| layers = 11 if '101_to_k_ip' in ipadapter.ip_layers.to_kvs else 16 |
| k_key = module_key + "_to_k_ip" |
| v_key = module_key + "_to_v_ip" |
|
|
| |
| ad_params = extra_options['ad_params'] if "ad_params" in extra_options else None |
|
|
| b = q.shape[0] |
| seq_len = q.shape[1] |
| batch_prompt = b // len(cond_or_uncond) |
| _, _, oh, ow = extra_options["original_shape"] |
|
|
| if weight_type == 'ease in': |
| weight = weight * (0.05 + 0.95 * (1 - t_idx / layers)) |
| elif weight_type == 'ease out': |
| weight = weight * (0.05 + 0.95 * (t_idx / layers)) |
| elif weight_type == 'ease in-out': |
| weight = weight * (0.05 + 0.95 * (1 - abs(t_idx - (layers/2)) / (layers/2))) |
| elif weight_type == 'reverse in-out': |
| weight = weight * (0.05 + 0.95 * (abs(t_idx - (layers/2)) / (layers/2))) |
| elif weight_type == 'weak input' and block_type == 'input': |
| weight = weight * 0.2 |
| elif weight_type == 'weak middle' and block_type == 'middle': |
| weight = weight * 0.2 |
| elif weight_type == 'weak output' and block_type == 'output': |
| weight = weight * 0.2 |
| elif weight_type == 'strong middle' and (block_type == 'input' or block_type == 'output'): |
| weight = weight * 0.2 |
| elif isinstance(weight, dict): |
| if t_idx not in weight: |
| return 0 |
|
|
| if weight_type == "style transfer precise": |
| if layers == 11 and t_idx == 3: |
| uncond = cond |
| cond = cond * 0 |
| elif layers == 16 and (t_idx == 4 or t_idx == 5): |
| uncond = cond |
| cond = cond * 0 |
|
|
| weight = weight[t_idx] |
|
|
| if cond_alt is not None and t_idx in cond_alt: |
| cond = cond_alt[t_idx] |
| del cond_alt |
|
|
| if unfold_batch: |
| |
| if ad_params is not None and ad_params["sub_idxs"] is not None: |
| if isinstance(weight, torch.Tensor): |
| weight = tensor_to_size(weight, ad_params["full_length"]) |
| weight = torch.Tensor(weight[ad_params["sub_idxs"]]) |
| if torch.all(weight == 0): |
| return 0 |
| weight = weight.repeat(len(cond_or_uncond), 1, 1) |
| elif weight == 0: |
| return 0 |
|
|
| |
| if cond.shape[0] >= ad_params["full_length"]: |
| cond = torch.Tensor(cond[ad_params["sub_idxs"]]) |
| uncond = torch.Tensor(uncond[ad_params["sub_idxs"]]) |
| |
| else: |
| cond = tensor_to_size(cond, ad_params["full_length"]) |
| uncond = tensor_to_size(uncond, ad_params["full_length"]) |
| cond = cond[ad_params["sub_idxs"]] |
| uncond = uncond[ad_params["sub_idxs"]] |
| else: |
| if isinstance(weight, torch.Tensor): |
| weight = tensor_to_size(weight, batch_prompt) |
| if torch.all(weight == 0): |
| return 0 |
| weight = weight.repeat(len(cond_or_uncond), 1, 1) |
| elif weight == 0: |
| return 0 |
|
|
| cond = tensor_to_size(cond, batch_prompt) |
| uncond = tensor_to_size(uncond, batch_prompt) |
|
|
| k_cond = ipadapter.ip_layers.to_kvs[k_key](cond) |
| k_uncond = ipadapter.ip_layers.to_kvs[k_key](uncond) |
| v_cond = ipadapter.ip_layers.to_kvs[v_key](cond) |
| v_uncond = ipadapter.ip_layers.to_kvs[v_key](uncond) |
| else: |
| |
| if isinstance(weight, torch.Tensor): |
| weight = tensor_to_size(weight, batch_prompt) |
| if torch.all(weight == 0): |
| return 0 |
| weight = weight.repeat(len(cond_or_uncond), 1, 1) |
| elif weight == 0: |
| return 0 |
|
|
| k_cond = ipadapter.ip_layers.to_kvs[k_key](cond).repeat(batch_prompt, 1, 1) |
| k_uncond = ipadapter.ip_layers.to_kvs[k_key](uncond).repeat(batch_prompt, 1, 1) |
| v_cond = ipadapter.ip_layers.to_kvs[v_key](cond).repeat(batch_prompt, 1, 1) |
| v_uncond = ipadapter.ip_layers.to_kvs[v_key](uncond).repeat(batch_prompt, 1, 1) |
|
|
| if len(cond_or_uncond) == 3: |
| ip_k = torch.cat([(k_cond, k_uncond, k_cond)[i] for i in cond_or_uncond], dim=0) |
| ip_v = torch.cat([(v_cond, v_uncond, v_cond)[i] for i in cond_or_uncond], dim=0) |
| else: |
| ip_k = torch.cat([(k_cond, k_uncond)[i] for i in cond_or_uncond], dim=0) |
| ip_v = torch.cat([(v_cond, v_uncond)[i] for i in cond_or_uncond], dim=0) |
|
|
| if embeds_scaling == 'K+mean(V) w/ C penalty': |
| scaling = float(ip_k.shape[2]) / 1280.0 |
| weight = weight * scaling |
| ip_k = ip_k * weight |
| ip_v_mean = torch.mean(ip_v, dim=1, keepdim=True) |
| ip_v = (ip_v - ip_v_mean) + ip_v_mean * weight |
| out_ip = optimized_attention(q, ip_k, ip_v, extra_options["n_heads"]) |
| del ip_v_mean |
| elif embeds_scaling == 'K+V w/ C penalty': |
| scaling = float(ip_k.shape[2]) / 1280.0 |
| weight = weight * scaling |
| ip_k = ip_k * weight |
| ip_v = ip_v * weight |
| out_ip = optimized_attention(q, ip_k, ip_v, extra_options["n_heads"]) |
| elif embeds_scaling == 'K+V': |
| ip_k = ip_k * weight |
| ip_v = ip_v * weight |
| out_ip = optimized_attention(q, ip_k, ip_v, extra_options["n_heads"]) |
| else: |
| |
| out_ip = optimized_attention(q, ip_k, ip_v, extra_options["n_heads"]) |
| out_ip = out_ip * weight |
|
|
| if mask is not None: |
| mask_h = oh / math.sqrt(oh * ow / seq_len) |
| mask_h = int(mask_h) + int((seq_len % int(mask_h)) != 0) |
| mask_w = seq_len // mask_h |
|
|
| |
| if (mask.shape[0] > 1 and ad_params is not None and ad_params["sub_idxs"] is not None): |
| |
| if mask.shape[0] >= ad_params["full_length"]: |
| mask = torch.Tensor(mask[ad_params["sub_idxs"]]) |
| mask = F.interpolate(mask.unsqueeze(1), size=(mask_h, mask_w), mode="bilinear").squeeze(1) |
| else: |
| mask = F.interpolate(mask.unsqueeze(1), size=(mask_h, mask_w), mode="bilinear").squeeze(1) |
| mask = tensor_to_size(mask, ad_params["full_length"]) |
| mask = mask[ad_params["sub_idxs"]] |
| else: |
| mask = F.interpolate(mask.unsqueeze(1), size=(mask_h, mask_w), mode="bilinear").squeeze(1) |
| mask = tensor_to_size(mask, batch_prompt) |
|
|
| mask = mask.repeat(len(cond_or_uncond), 1, 1) |
| mask = mask.view(mask.shape[0], -1, 1).repeat(1, 1, out.shape[2]) |
|
|
| |
| mask_len = mask_h * mask_w |
| if mask_len < seq_len: |
| pad_len = seq_len - mask_len |
| pad1 = pad_len // 2 |
| pad2 = pad_len - pad1 |
| mask = F.pad(mask, (0, 0, pad1, pad2), value=0.0) |
| elif mask_len > seq_len: |
| crop_start = (mask_len - seq_len) // 2 |
| mask = mask[:, crop_start:crop_start+seq_len, :] |
|
|
| out_ip = out_ip * mask |
|
|
| |
|
|
| return out_ip.to(dtype=dtype) |
|
|