| import torch |
| from einops import rearrange, repeat |
|
|
|
|
| class TileWorker: |
| def __init__(self): |
| pass |
|
|
|
|
| def mask(self, height, width, border_width): |
| |
| |
| x = torch.arange(height).repeat(width, 1).T |
| y = torch.arange(width).repeat(height, 1) |
| mask = torch.stack([x + 1, height - x, y + 1, width - y]).min(dim=0).values |
| mask = (mask / border_width).clip(0, 1) |
| return mask |
|
|
|
|
| def tile(self, model_input, tile_size, tile_stride, tile_device, tile_dtype): |
| |
| batch_size, channel, _, _ = model_input.shape |
| model_input = model_input.to(device=tile_device, dtype=tile_dtype) |
| unfold_operator = torch.nn.Unfold( |
| kernel_size=(tile_size, tile_size), |
| stride=(tile_stride, tile_stride) |
| ) |
| model_input = unfold_operator(model_input) |
| model_input = model_input.view((batch_size, channel, tile_size, tile_size, -1)) |
|
|
| return model_input |
|
|
|
|
| def tiled_inference(self, forward_fn, model_input, tile_batch_size, inference_device, inference_dtype, tile_device, tile_dtype): |
| |
| tile_num = model_input.shape[-1] |
| model_output_stack = [] |
|
|
| for tile_id in range(0, tile_num, tile_batch_size): |
|
|
| |
| tile_id_ = min(tile_id + tile_batch_size, tile_num) |
| x = model_input[:, :, :, :, tile_id: tile_id_] |
| x = x.to(device=inference_device, dtype=inference_dtype) |
| x = rearrange(x, "b c h w n -> (n b) c h w") |
|
|
| |
| y = forward_fn(x) |
| y = rearrange(y, "(n b) c h w -> b c h w n", n=tile_id_-tile_id) |
| y = y.to(device=tile_device, dtype=tile_dtype) |
| model_output_stack.append(y) |
|
|
| model_output = torch.concat(model_output_stack, dim=-1) |
| return model_output |
|
|
|
|
| def io_scale(self, model_output, tile_size): |
| |
| |
| io_scale = model_output.shape[2] / tile_size |
| return io_scale |
| |
|
|
| def untile(self, model_output, height, width, tile_size, tile_stride, border_width, tile_device, tile_dtype): |
| |
| mask = self.mask(tile_size, tile_size, border_width) |
| mask = mask.to(device=tile_device, dtype=tile_dtype) |
| mask = rearrange(mask, "h w -> 1 1 h w 1") |
| model_output = model_output * mask |
|
|
| fold_operator = torch.nn.Fold( |
| output_size=(height, width), |
| kernel_size=(tile_size, tile_size), |
| stride=(tile_stride, tile_stride) |
| ) |
| mask = repeat(mask[0, 0, :, :, 0], "h w -> 1 (h w) n", n=model_output.shape[-1]) |
| model_output = rearrange(model_output, "b c h w n -> b (c h w) n") |
| model_output = fold_operator(model_output) / fold_operator(mask) |
|
|
| return model_output |
|
|
|
|
| def tiled_forward(self, forward_fn, model_input, tile_size, tile_stride, tile_batch_size=1, tile_device="cpu", tile_dtype=torch.float32, border_width=None): |
| |
| inference_device, inference_dtype = model_input.device, model_input.dtype |
| height, width = model_input.shape[2], model_input.shape[3] |
| border_width = int(tile_stride*0.5) if border_width is None else border_width |
|
|
| |
| model_input = self.tile(model_input, tile_size, tile_stride, tile_device, tile_dtype) |
|
|
| |
| model_output = self.tiled_inference(forward_fn, model_input, tile_batch_size, inference_device, inference_dtype, tile_device, tile_dtype) |
|
|
| |
| io_scale = self.io_scale(model_output, tile_size) |
| height, width = int(height*io_scale), int(width*io_scale) |
| tile_size, tile_stride = int(tile_size*io_scale), int(tile_stride*io_scale) |
| border_width = int(border_width*io_scale) |
|
|
| |
| model_output = self.untile(model_output, height, width, tile_size, tile_stride, border_width, tile_device, tile_dtype) |
| |
| |
| model_output = model_output.to(device=inference_device, dtype=inference_dtype) |
| return model_output |
| |
|
|
|
|
| class FastTileWorker: |
| def __init__(self): |
| pass |
|
|
|
|
| def build_mask(self, data, is_bound): |
| _, _, H, W = data.shape |
| h = repeat(torch.arange(H), "H -> H W", H=H, W=W) |
| w = repeat(torch.arange(W), "W -> H W", H=H, W=W) |
| border_width = (H + W) // 4 |
| pad = torch.ones_like(h) * border_width |
| mask = torch.stack([ |
| pad if is_bound[0] else h + 1, |
| pad if is_bound[1] else H - h, |
| pad if is_bound[2] else w + 1, |
| pad if is_bound[3] else W - w |
| ]).min(dim=0).values |
| mask = mask.clip(1, border_width) |
| mask = (mask / border_width).to(dtype=data.dtype, device=data.device) |
| mask = rearrange(mask, "H W -> 1 H W") |
| return mask |
|
|
|
|
| def tiled_forward(self, forward_fn, model_input, tile_size, tile_stride, tile_device="cpu", tile_dtype=torch.float32, border_width=None): |
| |
| B, C, H, W = model_input.shape |
| border_width = int(tile_stride*0.5) if border_width is None else border_width |
| weight = torch.zeros((1, 1, H, W), dtype=tile_dtype, device=tile_device) |
| values = torch.zeros((B, C, H, W), dtype=tile_dtype, device=tile_device) |
|
|
| |
| tasks = [] |
| for h in range(0, H, tile_stride): |
| for w in range(0, W, tile_stride): |
| if (h-tile_stride >= 0 and h-tile_stride+tile_size >= H) or (w-tile_stride >= 0 and w-tile_stride+tile_size >= W): |
| continue |
| h_, w_ = h + tile_size, w + tile_size |
| if h_ > H: h, h_ = H - tile_size, H |
| if w_ > W: w, w_ = W - tile_size, W |
| tasks.append((h, h_, w, w_)) |
| |
| |
| for hl, hr, wl, wr in tasks: |
| |
| hidden_states_batch = forward_fn(hl, hr, wl, wr).to(dtype=tile_dtype, device=tile_device) |
|
|
| mask = self.build_mask(hidden_states_batch, is_bound=(hl==0, hr>=H, wl==0, wr>=W)) |
| values[:, :, hl:hr, wl:wr] += hidden_states_batch * mask |
| weight[:, :, hl:hr, wl:wr] += mask |
| values /= weight |
| return values |
|
|
|
|
|
|
| class TileWorker2Dto3D: |
| """ |
| Process 3D tensors, but only enable TileWorker on 2D. |
| """ |
| def __init__(self): |
| pass |
|
|
|
|
| def build_mask(self, T, H, W, dtype, device, is_bound, border_width): |
| t = repeat(torch.arange(T), "T -> T H W", T=T, H=H, W=W) |
| h = repeat(torch.arange(H), "H -> T H W", T=T, H=H, W=W) |
| w = repeat(torch.arange(W), "W -> T H W", T=T, H=H, W=W) |
| border_width = (H + W) // 4 if border_width is None else border_width |
| pad = torch.ones_like(h) * border_width |
| mask = torch.stack([ |
| pad if is_bound[0] else t + 1, |
| pad if is_bound[1] else T - t, |
| pad if is_bound[2] else h + 1, |
| pad if is_bound[3] else H - h, |
| pad if is_bound[4] else w + 1, |
| pad if is_bound[5] else W - w |
| ]).min(dim=0).values |
| mask = mask.clip(1, border_width) |
| mask = (mask / border_width).to(dtype=dtype, device=device) |
| mask = rearrange(mask, "T H W -> 1 1 T H W") |
| return mask |
|
|
|
|
| def tiled_forward( |
| self, |
| forward_fn, |
| model_input, |
| tile_size, tile_stride, |
| tile_device="cpu", tile_dtype=torch.float32, |
| computation_device="cuda", computation_dtype=torch.float32, |
| border_width=None, scales=[1, 1, 1, 1], |
| progress_bar=lambda x:x |
| ): |
| B, C, T, H, W = model_input.shape |
| scale_C, scale_T, scale_H, scale_W = scales |
| tile_size_H, tile_size_W = tile_size |
| tile_stride_H, tile_stride_W = tile_stride |
|
|
| value = torch.zeros((B, int(C*scale_C), int(T*scale_T), int(H*scale_H), int(W*scale_W)), dtype=tile_dtype, device=tile_device) |
| weight = torch.zeros((1, 1, int(T*scale_T), int(H*scale_H), int(W*scale_W)), dtype=tile_dtype, device=tile_device) |
|
|
| |
| tasks = [] |
| for h in range(0, H, tile_stride_H): |
| for w in range(0, W, tile_stride_W): |
| if (h-tile_stride_H >= 0 and h-tile_stride_H+tile_size_H >= H) or (w-tile_stride_W >= 0 and w-tile_stride_W+tile_size_W >= W): |
| continue |
| h_, w_ = h + tile_size_H, w + tile_size_W |
| if h_ > H: h, h_ = max(H - tile_size_H, 0), H |
| if w_ > W: w, w_ = max(W - tile_size_W, 0), W |
| tasks.append((h, h_, w, w_)) |
|
|
| |
| for hl, hr, wl, wr in progress_bar(tasks): |
| mask = self.build_mask( |
| int(T*scale_T), int((hr-hl)*scale_H), int((wr-wl)*scale_W), |
| tile_dtype, tile_device, |
| is_bound=(True, True, hl==0, hr>=H, wl==0, wr>=W), |
| border_width=border_width |
| ) |
| grid_input = model_input[:, :, :, hl:hr, wl:wr].to(dtype=computation_dtype, device=computation_device) |
| grid_output = forward_fn(grid_input).to(dtype=tile_dtype, device=tile_device) |
| value[:, :, :, int(hl*scale_H):int(hr*scale_H), int(wl*scale_W):int(wr*scale_W)] += grid_output * mask |
| weight[:, :, :, int(hl*scale_H):int(hr*scale_H), int(wl*scale_W):int(wr*scale_W)] += mask |
| value = value / weight |
| return value |