| | from transformers import AutoTokenizer, TextIteratorStreamer |
| | import difflib |
| | import torch |
| | import numpy as np |
| | import re |
| | from ..models.model_manager import ModelManager |
| | from PIL import Image |
| |
|
| | valid_colors = { |
| | 'aliceblue': (240, 248, 255), 'antiquewhite': (250, 235, 215), 'aqua': (0, 255, 255), |
| | 'aquamarine': (127, 255, 212), 'azure': (240, 255, 255), 'beige': (245, 245, 220), |
| | 'bisque': (255, 228, 196), 'black': (0, 0, 0), 'blanchedalmond': (255, 235, 205), 'blue': (0, 0, 255), |
| | 'blueviolet': (138, 43, 226), 'brown': (165, 42, 42), 'burlywood': (222, 184, 135), |
| | 'cadetblue': (95, 158, 160), 'chartreuse': (127, 255, 0), 'chocolate': (210, 105, 30), |
| | 'coral': (255, 127, 80), 'cornflowerblue': (100, 149, 237), 'cornsilk': (255, 248, 220), |
| | 'crimson': (220, 20, 60), 'cyan': (0, 255, 255), 'darkblue': (0, 0, 139), 'darkcyan': (0, 139, 139), |
| | 'darkgoldenrod': (184, 134, 11), 'darkgray': (169, 169, 169), 'darkgrey': (169, 169, 169), |
| | 'darkgreen': (0, 100, 0), 'darkkhaki': (189, 183, 107), 'darkmagenta': (139, 0, 139), |
| | 'darkolivegreen': (85, 107, 47), 'darkorange': (255, 140, 0), 'darkorchid': (153, 50, 204), |
| | 'darkred': (139, 0, 0), 'darksalmon': (233, 150, 122), 'darkseagreen': (143, 188, 143), |
| | 'darkslateblue': (72, 61, 139), 'darkslategray': (47, 79, 79), 'darkslategrey': (47, 79, 79), |
| | 'darkturquoise': (0, 206, 209), 'darkviolet': (148, 0, 211), 'deeppink': (255, 20, 147), |
| | 'deepskyblue': (0, 191, 255), 'dimgray': (105, 105, 105), 'dimgrey': (105, 105, 105), |
| | 'dodgerblue': (30, 144, 255), 'firebrick': (178, 34, 34), 'floralwhite': (255, 250, 240), |
| | 'forestgreen': (34, 139, 34), 'fuchsia': (255, 0, 255), 'gainsboro': (220, 220, 220), |
| | 'ghostwhite': (248, 248, 255), 'gold': (255, 215, 0), 'goldenrod': (218, 165, 32), |
| | 'gray': (128, 128, 128), 'grey': (128, 128, 128), 'green': (0, 128, 0), 'greenyellow': (173, 255, 47), |
| | 'honeydew': (240, 255, 240), 'hotpink': (255, 105, 180), 'indianred': (205, 92, 92), |
| | 'indigo': (75, 0, 130), 'ivory': (255, 255, 240), 'khaki': (240, 230, 140), 'lavender': (230, 230, 250), |
| | 'lavenderblush': (255, 240, 245), 'lawngreen': (124, 252, 0), 'lemonchiffon': (255, 250, 205), |
| | 'lightblue': (173, 216, 230), 'lightcoral': (240, 128, 128), 'lightcyan': (224, 255, 255), |
| | 'lightgoldenrodyellow': (250, 250, 210), 'lightgray': (211, 211, 211), 'lightgrey': (211, 211, 211), |
| | 'lightgreen': (144, 238, 144), 'lightpink': (255, 182, 193), 'lightsalmon': (255, 160, 122), |
| | 'lightseagreen': (32, 178, 170), 'lightskyblue': (135, 206, 250), 'lightslategray': (119, 136, 153), |
| | 'lightslategrey': (119, 136, 153), 'lightsteelblue': (176, 196, 222), 'lightyellow': (255, 255, 224), |
| | 'lime': (0, 255, 0), 'limegreen': (50, 205, 50), 'linen': (250, 240, 230), 'magenta': (255, 0, 255), |
| | 'maroon': (128, 0, 0), 'mediumaquamarine': (102, 205, 170), 'mediumblue': (0, 0, 205), |
| | 'mediumorchid': (186, 85, 211), 'mediumpurple': (147, 112, 219), 'mediumseagreen': (60, 179, 113), |
| | 'mediumslateblue': (123, 104, 238), 'mediumspringgreen': (0, 250, 154), |
| | 'mediumturquoise': (72, 209, 204), 'mediumvioletred': (199, 21, 133), 'midnightblue': (25, 25, 112), |
| | 'mintcream': (245, 255, 250), 'mistyrose': (255, 228, 225), 'moccasin': (255, 228, 181), |
| | 'navajowhite': (255, 222, 173), 'navy': (0, 0, 128), 'navyblue': (0, 0, 128), |
| | 'oldlace': (253, 245, 230), 'olive': (128, 128, 0), 'olivedrab': (107, 142, 35), |
| | 'orange': (255, 165, 0), 'orangered': (255, 69, 0), 'orchid': (218, 112, 214), |
| | 'palegoldenrod': (238, 232, 170), 'palegreen': (152, 251, 152), 'paleturquoise': (175, 238, 238), |
| | 'palevioletred': (219, 112, 147), 'papayawhip': (255, 239, 213), 'peachpuff': (255, 218, 185), |
| | 'peru': (205, 133, 63), 'pink': (255, 192, 203), 'plum': (221, 160, 221), 'powderblue': (176, 224, 230), |
| | 'purple': (128, 0, 128), 'rebeccapurple': (102, 51, 153), 'red': (255, 0, 0), |
| | 'rosybrown': (188, 143, 143), 'royalblue': (65, 105, 225), 'saddlebrown': (139, 69, 19), |
| | 'salmon': (250, 128, 114), 'sandybrown': (244, 164, 96), 'seagreen': (46, 139, 87), |
| | 'seashell': (255, 245, 238), 'sienna': (160, 82, 45), 'silver': (192, 192, 192), |
| | 'skyblue': (135, 206, 235), 'slateblue': (106, 90, 205), 'slategray': (112, 128, 144), |
| | 'slategrey': (112, 128, 144), 'snow': (255, 250, 250), 'springgreen': (0, 255, 127), |
| | 'steelblue': (70, 130, 180), 'tan': (210, 180, 140), 'teal': (0, 128, 128), 'thistle': (216, 191, 216), |
| | 'tomato': (255, 99, 71), 'turquoise': (64, 224, 208), 'violet': (238, 130, 238), |
| | 'wheat': (245, 222, 179), 'white': (255, 255, 255), 'whitesmoke': (245, 245, 245), |
| | 'yellow': (255, 255, 0), 'yellowgreen': (154, 205, 50) |
| | } |
| |
|
| | valid_locations = { |
| | 'in the center': (45, 45), |
| | 'on the left': (15, 45), |
| | 'on the right': (75, 45), |
| | 'on the top': (45, 15), |
| | 'on the bottom': (45, 75), |
| | 'on the top-left': (15, 15), |
| | 'on the top-right': (75, 15), |
| | 'on the bottom-left': (15, 75), |
| | 'on the bottom-right': (75, 75) |
| | } |
| |
|
| | valid_offsets = { |
| | 'no offset': (0, 0), |
| | 'slightly to the left': (-10, 0), |
| | 'slightly to the right': (10, 0), |
| | 'slightly to the upper': (0, -10), |
| | 'slightly to the lower': (0, 10), |
| | 'slightly to the upper-left': (-10, -10), |
| | 'slightly to the upper-right': (10, -10), |
| | 'slightly to the lower-left': (-10, 10), |
| | 'slightly to the lower-right': (10, 10)} |
| |
|
| | valid_areas = { |
| | "a small square area": (50, 50), |
| | "a small vertical area": (40, 60), |
| | "a small horizontal area": (60, 40), |
| | "a medium-sized square area": (60, 60), |
| | "a medium-sized vertical area": (50, 80), |
| | "a medium-sized horizontal area": (80, 50), |
| | "a large square area": (70, 70), |
| | "a large vertical area": (60, 90), |
| | "a large horizontal area": (90, 60) |
| | } |
| |
|
| | def safe_str(x): |
| | return x.strip(',. ') + '.' |
| |
|
| | def closest_name(input_str, options): |
| | input_str = input_str.lower() |
| |
|
| | closest_match = difflib.get_close_matches(input_str, list(options.keys()), n=1, cutoff=0.5) |
| | assert isinstance(closest_match, list) and len(closest_match) > 0, f'The value [{input_str}] is not valid!' |
| | result = closest_match[0] |
| |
|
| | if result != input_str: |
| | print(f'Automatically corrected [{input_str}] -> [{result}].') |
| |
|
| | return result |
| |
|
| | class Canvas: |
| | @staticmethod |
| | def from_bot_response(response: str): |
| | |
| | matched = re.search(r'```python\n(.*?)\n```', response, re.DOTALL) |
| | assert matched, 'Response does not contain codes!' |
| | code_content = matched.group(1) |
| | assert 'canvas = Canvas()' in code_content, 'Code block must include valid canvas var!' |
| | local_vars = {'Canvas': Canvas} |
| | exec(code_content, {}, local_vars) |
| | canvas = local_vars.get('canvas', None) |
| | assert isinstance(canvas, Canvas), 'Code block must produce valid canvas var!' |
| | return canvas |
| |
|
| | def __init__(self): |
| | self.components = [] |
| | self.color = None |
| | self.record_tags = True |
| | self.prefixes = [] |
| | self.suffixes = [] |
| | return |
| |
|
| | def set_global_description(self, description: str, detailed_descriptions: list, tags: str, |
| | HTML_web_color_name: str): |
| | assert isinstance(description, str), 'Global description is not valid!' |
| | assert isinstance(detailed_descriptions, list) and all(isinstance(item, str) for item in detailed_descriptions), \ |
| | 'Global detailed_descriptions is not valid!' |
| | assert isinstance(tags, str), 'Global tags is not valid!' |
| |
|
| | HTML_web_color_name = closest_name(HTML_web_color_name, valid_colors) |
| | self.color = np.array([[valid_colors[HTML_web_color_name]]], dtype=np.uint8) |
| |
|
| | self.prefixes = [description] |
| | self.suffixes = detailed_descriptions |
| |
|
| | if self.record_tags: |
| | self.suffixes = self.suffixes + [tags] |
| |
|
| | self.prefixes = [safe_str(x) for x in self.prefixes] |
| | self.suffixes = [safe_str(x) for x in self.suffixes] |
| |
|
| | return |
| |
|
| | def add_local_description(self, location: str, offset: str, area: str, distance_to_viewer: float, description: str, |
| | detailed_descriptions: list, tags: str, atmosphere: str, style: str, |
| | quality_meta: str, HTML_web_color_name: str): |
| | assert isinstance(description, str), 'Local description is wrong!' |
| | assert isinstance(distance_to_viewer, (int, float)) and distance_to_viewer > 0, \ |
| | f'The distance_to_viewer for [{description}] is not positive float number!' |
| | assert isinstance(detailed_descriptions, list) and all(isinstance(item, str) for item in detailed_descriptions), \ |
| | f'The detailed_descriptions for [{description}] is not valid!' |
| | assert isinstance(tags, str), f'The tags for [{description}] is not valid!' |
| | assert isinstance(atmosphere, str), f'The atmosphere for [{description}] is not valid!' |
| | assert isinstance(style, str), f'The style for [{description}] is not valid!' |
| | assert isinstance(quality_meta, str), f'The quality_meta for [{description}] is not valid!' |
| |
|
| | location = closest_name(location, valid_locations) |
| | offset = closest_name(offset, valid_offsets) |
| | area = closest_name(area, valid_areas) |
| | HTML_web_color_name = closest_name(HTML_web_color_name, valid_colors) |
| |
|
| | xb, yb = valid_locations[location] |
| | xo, yo = valid_offsets[offset] |
| | w, h = valid_areas[area] |
| | rect = (yb + yo - h // 2, yb + yo + h // 2, xb + xo - w // 2, xb + xo + w // 2) |
| | rect = [max(0, min(90, i)) for i in rect] |
| | color = np.array([[valid_colors[HTML_web_color_name]]], dtype=np.uint8) |
| |
|
| | prefixes = self.prefixes + [description] |
| | suffixes = detailed_descriptions |
| |
|
| | if self.record_tags: |
| | suffixes = suffixes + [tags, atmosphere, style, quality_meta] |
| |
|
| | prefixes = [safe_str(x) for x in prefixes] |
| | suffixes = [safe_str(x) for x in suffixes] |
| |
|
| | self.components.append(dict( |
| | rect=rect, |
| | distance_to_viewer=distance_to_viewer, |
| | color=color, |
| | prefixes=prefixes, |
| | suffixes=suffixes, |
| | location=location, |
| | )) |
| |
|
| | return |
| |
|
| | def process(self): |
| | |
| | self.components = sorted(self.components, key=lambda x: x['distance_to_viewer'], reverse=True) |
| |
|
| | |
| | |
| | initial_latent = np.zeros(shape=(90, 90, 3), dtype=np.float32) + self.color |
| |
|
| | for component in self.components: |
| | a, b, c, d = component['rect'] |
| | initial_latent[a:b, c:d] = 0.7 * component['color'] + 0.3 * initial_latent[a:b, c:d] |
| |
|
| | initial_latent = initial_latent.clip(0, 255).astype(np.uint8) |
| |
|
| | |
| |
|
| | bag_of_conditions = [ |
| | dict(mask=np.ones(shape=(90, 90), dtype=np.float32), prefixes=self.prefixes, suffixes=self.suffixes,location= "full") |
| | ] |
| |
|
| | for i, component in enumerate(self.components): |
| | a, b, c, d = component['rect'] |
| | m = np.zeros(shape=(90, 90), dtype=np.float32) |
| | m[a:b, c:d] = 1.0 |
| | bag_of_conditions.append(dict( |
| | mask = m, |
| | prefixes = component['prefixes'], |
| | suffixes = component['suffixes'], |
| | location = component['location'], |
| | )) |
| | |
| | return dict( |
| | initial_latent = initial_latent, |
| | bag_of_conditions = bag_of_conditions, |
| | ) |
| |
|
| |
|
| | class OmostPromter(torch.nn.Module): |
| | |
| | def __init__(self,model = None,tokenizer = None, template = "",device="cpu"): |
| | super().__init__() |
| | self.model=model |
| | self.tokenizer = tokenizer |
| | self.device = device |
| | if template == "": |
| | template = r'''You are a helpful AI assistant to compose images using the below python class `Canvas`: |
| | ```python |
| | class Canvas: |
| | def set_global_description(self, description: str, detailed_descriptions: list[str], tags: str, HTML_web_color_name: str): |
| | pass |
| | |
| | def add_local_description(self, location: str, offset: str, area: str, distance_to_viewer: float, description: str, detailed_descriptions: list[str], tags: str, atmosphere: str, style: str, quality_meta: str, HTML_web_color_name: str): |
| | assert location in ["in the center", "on the left", "on the right", "on the top", "on the bottom", "on the top-left", "on the top-right", "on the bottom-left", "on the bottom-right"] |
| | assert offset in ["no offset", "slightly to the left", "slightly to the right", "slightly to the upper", "slightly to the lower", "slightly to the upper-left", "slightly to the upper-right", "slightly to the lower-left", "slightly to the lower-right"] |
| | assert area in ["a small square area", "a small vertical area", "a small horizontal area", "a medium-sized square area", "a medium-sized vertical area", "a medium-sized horizontal area", "a large square area", "a large vertical area", "a large horizontal area"] |
| | assert distance_to_viewer > 0 |
| | pass |
| | ```''' |
| | self.template = template |
| | |
| | @staticmethod |
| | def from_model_manager(model_manager: ModelManager): |
| | model, model_path = model_manager.fetch_model("omost_prompt", require_model_path=True) |
| | tokenizer = AutoTokenizer.from_pretrained(model_path) |
| | omost = OmostPromter( |
| | model= model, |
| | tokenizer = tokenizer, |
| | device = model_manager.device |
| | ) |
| | return omost |
| | |
| | |
| | def __call__(self,prompt_dict:dict): |
| | raw_prompt=prompt_dict["prompt"] |
| | conversation = [{"role": "system", "content": self.template}] |
| | conversation.append({"role": "user", "content": raw_prompt}) |
| | |
| | input_ids = self.tokenizer.apply_chat_template(conversation, return_tensors="pt", add_generation_prompt=True).to(self.device) |
| | streamer = TextIteratorStreamer(self.tokenizer, timeout=10.0, skip_prompt=True, skip_special_tokens=True) |
| | attention_mask = torch.ones(input_ids.shape, dtype=torch.bfloat16, device=self.device) |
| | |
| | generate_kwargs = dict( |
| | input_ids = input_ids, |
| | streamer = streamer, |
| | |
| | |
| | do_sample = True, |
| | attention_mask = attention_mask, |
| | pad_token_id = self.tokenizer.eos_token_id, |
| | |
| | |
| | ) |
| | self.model.generate(**generate_kwargs) |
| | outputs = [] |
| | for text in streamer: |
| | outputs.append(text) |
| | llm_outputs = "".join(outputs) |
| | |
| | canvas = Canvas.from_bot_response(llm_outputs) |
| | canvas_output = canvas.process() |
| | |
| | prompts = [" ".join(_["prefixes"]+_["suffixes"][:2]) for _ in canvas_output["bag_of_conditions"]] |
| | canvas_output["prompt"] = prompts[0] |
| | canvas_output["prompts"] = prompts[1:] |
| | |
| | raw_masks = [_["mask"] for _ in canvas_output["bag_of_conditions"]] |
| | masks=[] |
| | for mask in raw_masks: |
| | mask[mask>0.5]=255 |
| | mask = np.stack([mask] * 3, axis=-1).astype("uint8") |
| | masks.append(Image.fromarray(mask)) |
| | |
| | canvas_output["masks"] = masks |
| | prompt_dict.update(canvas_output) |
| | print(f"Your prompt is extended by Omost:\n") |
| | cnt = 0 |
| | for component,pmt in zip(canvas_output["bag_of_conditions"],prompts): |
| | loc = component["location"] |
| | cnt += 1 |
| | print(f"Component {cnt} - Location : {loc}\nPrompt:{pmt}\n") |
| | |
| | return prompt_dict |
| | |
| | |
| | |
| | |