from pathlib import Path import hashlib import math import os import time import cv2 import ox import requests import fal_client from byteplussdkarkruntime import Ark from django.conf import settings from item.models import Item from document.models import Document from archive.models import File, Stream os.environ["FAL_KEY"] = settings.FAL_KEY MAX_DURATION = 12 headers = { "Authorization": "Bearer " + settings.BYTEPLUSE_TOKEN, "Content-Type": "application/json", } def public_url(path): return path.replace("/srv/pandora/static/", settings.PUBLIC_URL + "static/") def public_document_url(document): url = "%sdocuments/%s/source.%s?token=%s" % ( settings.PUBLIC_URL, ox.toAZ(document.id), document.extension, settings.PUBLIC_TOKEN, ) return url def public_video_url(item): url = "%s%s/download/source/?token=%s" % ( settings.PUBLIC_URL, item.public_id, settings.PUBLIC_TOKEN, ) return url def trim_video(src, dst, frames, start0=False): cap = cv2.VideoCapture(src) fps = cap.get(cv2.CAP_PROP_FPS) frames_src = int(cap.get(cv2.CAP_PROP_FRAME_COUNT)) width = int(cap.get(cv2.CAP_PROP_FRAME_WIDTH)) height = int(cap.get(cv2.CAP_PROP_FRAME_HEIGHT)) frame_count = 0 offset = int((frames_src - frames) / 2) if start0: offset = 0 print(frames_src, frames, offset) fourcc = cv2.VideoWriter_fourcc(*"avc1") out = cv2.VideoWriter(dst, fourcc, fps, (width, height)) written = 0 while cap.isOpened(): ret, frame = cap.read() if not ret: break frame_count += 1 if frame_count < offset: continue if frame_count >= (frames + offset): continue out.write(frame) written += 1 out.release() cap.release() def bytedance_task(data): url = "https://ark.ap-southeast.bytepluses.com/api/v3/contents/generations/tasks" model = "seedance-1-5-pro-251215" resolution = "720p" defaults = { "model": model, "generate_audio": False, "ratio": "16:9", "watermark": False, "resolution": resolution, "camera_fixed": True, "return_last_frame": True, } for key, value in defaults.items(): if key not in data: data[key] = value print(data) r = requests.post(url, headers=headers, json=data).json() print(r) task_id = r["id"] status = requests.get(url + "/" + task_id, headers=headers).json() while status["status"] in ("queued", "running", "cancelled"): time.sleep(10) status = requests.get(url + "/" + task_id, headers=headers).json() print(status) return status def bytedance_response(data): url = "https://ark.ap-southeast.bytepluses.com/api/v3/responses" defaults = {"model": "seed-1-8-251228"} for key, value in defaults.items(): if key not in data: data[key] = value print(data) response = requests.post(url, headers=headers, json=data).json() print(response) return response def t2v_bytedance(prompt, duration, output): nduration = max(4, int(math.ceil(duration))) data = { "duration": nduration, "content": [{"type": "text", "text": prompt}], } status = bytedance_task(data) output_url = status["content"]["video_url"] ox.net.save_url(output_url, output, overwrite=True) if "last_frame_url" in status["content"]: ox.net.save_url( status["content"]["last_frame_url"], output + ".last_frame.png", overwrite=True, ) return status def i2v_bytedance(first_frame, prompt, duration, output, last_frame=None): nduration = max(4, int(math.ceil(duration))) data = { "duration": nduration, "content": [ { "type": "text", "text": prompt, }, { "type": "image_url", "role": "first_frame", "image_url": {"url": first_frame}, }, ], } if last_frame: data["content"].append({ "type": "image_url", "role": "last_frame", "image_url": {"url": last_frame}, }) status = bytedance_task(data) output_url = status["content"]["video_url"] ox.net.save_url(output_url, output, overwrite=True) if "last_frame_url" in status["content"]: ox.net.save_url( status["content"]["last_frame_url"], output + ".last_frame.png", overwrite=True, ) return status def first_last(first_frame, last_frame, prompt, duration, output): nduration = max(4, int(math.ceil(duration))) data = { "duration": nduration, "content": [ { "type": "text", "text": prompt, }, { "type": "image_url", "role": "first_frame", "image_url": {"url": first_frame}, }, { "type": "image_url", "role": "last_frame", "image_url": {"url": last_frame}, }, ], } status = bytedance_task(data) output_url = status["content"]["video_url"] ox.net.save_url(output_url, output, overwrite=True) if "last_frame_url" in status["content"]: ox.net.save_url( status["content"]["last_frame_url"], output + ".last_frame.png", overwrite=True, ) return status def get_item_segments(item, max_duration=MAX_DURATION): cuts = item.get("cuts") filename = item.files.all()[0].data.path input_info = ox.avinfo(filename) p = 0 nc = [] for c in cuts: d = c - p if d < 0.5: continue p = c nc.append(c) nc = nc + [input_info["duration"]] if len(nc) > 3: if nc[-1] - nc[-2] < 0.5: nc = nc[:-2] + nc[-1:] segments = [] position = 0 for out in nc: duration = out - position while duration > max_duration: position += max_duration if len(segments): segments.append(["c", position]) else: segments.append(position) duration = out - position else: segments.append(out) position = out return segments def join_segments(processed, joined_output): out = None for filename in processed: cap = cv2.VideoCapture(filename) if out is None: fps = cap.get(cv2.CAP_PROP_FPS) width = int(cap.get(cv2.CAP_PROP_FRAME_WIDTH)) height = int(cap.get(cv2.CAP_PROP_FRAME_HEIGHT)) fourcc = cv2.VideoWriter_fourcc(*"avc1") out = cv2.VideoWriter(joined_output, fourcc, fps, (width, height)) while cap.isOpened(): ret, frame = cap.read() if not ret: break out.write(frame) cap.release() if out is not None: out.release() def remake_video(item_id, prompt): item = Item.objects.get(public_id=item_id) segments = get_item_segments(item) print(segments) prompt_hash = hashlib.sha1(prompt.encode()).hexdigest() position = n = 0 processed = [] for segment in segments: if isinstance(segment, list): stype, segment = segment else: stype = "n" duration = segment - position if stype == "c": first_frame_path = ( "/srv/pandora/static/power/cache/%s_%s/%06d.mp4.last_frame.png" % (item.public_id, prompt_hash, n - 1) ) first_frame = public_url(first_frame_path) else: first_frame = "%s%s/source%s.png?token=%s" % ( settings.PUBLIC_URL, item.public_id, position, settings.PUBLIC_TOKEN, ) last_frame_position = segment - 2 / 24 last_frame = "%s%s/source%0.3f.png?token=%s" % ( settings.PUBLIC_URL, item.public_id, last_frame_position, settings.PUBLIC_TOKEN, ) output = "/srv/pandora/static/power/cache/%s_%s/%06d.mp4" % ( item.public_id, prompt_hash, n, ) if not os.path.exists(output): first_last(first_frame, last_frame, prompt, duration, output) trimmed = "/srv/pandora/static/power/cache/%s_%s/%06d_trimmed.mp4" % ( item.public_id, prompt_hash, n, ) frames = int(duration * 24) if not os.path.exists(trimmed): trim_video(output, trimmed, frames, stype == "c") processed.append(trimmed) position = segment n += 1 joined_output = "/srv/pandora/static/power/cache/%s_%s.mp4" % ( item.public_id, prompt_hash, ) join_segments(processed, joined_output) return joined_output def prepare_image(image, prompt, out=None): model = "seedream-4-5-251128" if not image.startswith("http:"): image = public_url(image) data = { "model": model, "prompt": prompt, "image": image, "size": "2560x1440", "watermark": False, } url = "https://ark.ap-southeast.bytepluses.com/api/v3/images/generations" print("prepare_image", data) r = requests.post(url, headers=headers, json=data).json() print(r) output_url = r["data"][0]["url"] if out is None: out = image + ".ai.png" ox.net.save_url(output_url, out, overwrite=True) return r def process_frame(item, prompt, character=None, position=0): model = "seedream-4-5-251128" if isinstance(item, str): item = Item.objects.get(public_id=item) image = "%s%s/source%s.png?token=%s" % ( settings.PUBLIC_URL, item.public_id, position, settings.PUBLIC_TOKEN, ) if character is not None: image = [image, character] data = { "model": model, "prompt": prompt, "image": image, "size": "2560x1440", "watermark": False, } url = "https://ark.ap-southeast.bytepluses.com/api/v3/images/generations" print("prepare_image", data) response = requests.post(url, headers=headers, json=data).json() print(response) url = response["data"][0]["url"] img = add_ai_image(item, position, url) img.refresh_from_db() img.data['model'] = model img.data['prompt'] = prompt img.data['source'] = item.public_id if character: img.data['source'] += ' ' + character.split('?')[0] print(img, img.data) img.save() img.update_sort() img.update_find() return img def replace_character(item, character, position=0): prompt = "Replace the foreground character in image 1 with the character in image 2, keep the posture, clothing, background, light, admosthere from image 1, but take the face and personality from image 2. Make sure the size of the character is adjusted since the new character is a child. The quality of the image should be the same between foreground and background, adjust the quality of the character to match the background" if character in ("P1", "P2", "P3"): character = public_document_url(Document.objects.get(data__title="Character " + character)) return process_frame(item, prompt, character, position) def replace_character_motion_control(item, character, keep=False): if isinstance(item, str): item = Item.objects.get(public_id=item) # FIXME get character from documents if isinstance(character, str): img = replace_character(item, character, 0) else: img = character image_url = public_document_url(img) video_url = public_video_url(item) prompt = "" model = "fal-ai/kling-video/v2.6/pro/motion-control" prompt_hash = hashlib.sha1((prompt + image_url).encode()).hexdigest() output = "/srv/pandora/static/power/cache/%s_%s/ai.mp4" % (item.public_id, prompt_hash) data = { "prompt": prompt, "image_url": image_url, "video_url": video_url, "keep_original_sound": False, "character_orientation": "video", } print(data) handler = fal_client.submit(model, arguments=data) request_id = handler.request_id print(request_id) result = fal_wait_for(model, request_id) print(result) output_url = result["video"]["url"] ox.net.save_url(output_url, output, overwrite=True) ai = add_ai_variant(item, output, "ai:replace:p1:motion-control") ai.data["prompt"] = ox.escape_html(prompt) ai.data['firstframe'] = image_url.split('?')[0] ai.data["model"] = model ai.save() if not keep: shutil.rmtree(os.path.dirname(output)) img.add(ai) return ai def describe_video_neutral(url): prompt = ( "Detect cuts or scene changes and describe each scene, use as much details as you can. " "Describe each person incudling detalied apreance, haircut in a gender neutral way, " "describe each objects, animal or plant, describe foreground and backgroud, " "describe from what angle the scene is filmed, incude details about camera model, lense, depth of field used to film this scene. " "Use the format: . CAMERA CUT TO . CAMERA CUT TO . " "Don't mention it if you don't find a cut." ) data = { "input": [ { "role": "user", "content": [ {"type": "input_video", "video_url": url, "fps": 1}, {"type": "input_text", "text": prompt}, ], } ], } response = bytedance_response(data) return response["output"][1]["content"][0]["text"] def describe_video(url): prompt = ( "Detect cuts or scene changes and describe each scene, use as much details as you can. " "Describe each person incudling detalied apreance, ethnicity, haircolor, haircut, " "describe each objects, animal or plant, describe foreground and backgroud, " "describe from what angle the scene is filmed, incude details about camera model, lense, depth of field used to film this scene. " "Use the format: . CAMERA CUT TO . CAMERA CUT TO . " "Don't mention it if you don't find a cut." ) data = { "input": [ { "role": "user", "content": [ {"type": "input_video", "video_url": url, "fps": 1}, {"type": "input_text", "text": prompt}, ], } ], } response = bytedance_response(data) return response["output"][1]["content"][0]["text"] def describe_item(item): if isinstance(item, str): item = Item.objects.get(public_id=item) video_url = public_video_url(item) return describe_video(video_url) def reshoot_item(item, extra_prompt=None, first_frame=None, keep=False): if isinstance(item, str): item = Item.objects.get(public_id=item) duration = item.sort.duration frames = int(duration * 24) if first_frame: prompt = describe_item_neutral(item) else: prompt = describe_item(item) if extra_prompt: prompt += " " + extra_prompt prompt_hash = hashlib.sha1((prompt).encode()).hexdigest() output = "/srv/pandora/static/power/cache/%s_%s/ai.mp4" % ( item.public_id, prompt_hash, ) if first_frame: status = i2v_bytedance(first_frame, prompt, duration, output) else: status = t2v_bytedance(prompt, duration, output) trimmed = "/srv/pandora/static/power/cache/%s_%s/trimmed.mp4" % ( item.public_id, prompt_hash, ) trim_video(output, trimmed, frames) variant = "ai:0:reshoot" if first_frame: variant = "ai:0:reshoot-firstframe" ai = add_ai_variant(item, trimmed, variant) ai.data["prompt"] = ox.escape_html(prompt) ai.data["model"] = status["model"] ai.data["seed"] = status["seed"] if first_frame: ai.data["firstframe"] = first_frame.split('?')[0] if isinstance(first_frame, Document): first_frame.add(ai) ai.save() if not keep: shutil.rmtree(os.path.dirname(output)) return ai def describe_image(url): system_prompt = "" system_prompt = "You are an image analyst describing different aspects of an image. You are focused on the form, composition, and task shown in the image." prompt = "Please analyze this image according to the specified structure." data = { "input": [ {"role": "system", "content": system_prompt}, { "role": "user", "content": [ {"type": "input_image", "image_url": url}, {"type": "input_text", "text": prompt}, ], }, ], } response = bytedance_response(data) return response["output"][-1]["content"][0]["text"] def transform_remake_video(item_id, image_prompt, video_prompt): item = Item.objects.get(public_id=item_id) segments = get_item_segments(item) print(segments) prompt_hash = hashlib.sha1((image_prompt + video_prompt).encode()).hexdigest() position = n = 0 processed = [] for segment in segments: if isinstance(segment, list): stype, segment = segment else: stype = "n" duration = segment - position if stype == "c": first_frame_path = ( "/srv/pandora/static/power/cache/%s_%s/%06d.mp4.last_frame.png" % (item.public_id, prompt_hash, n - 1) ) first_frame = public_url(first_frame_path) else: first_frame = "%s%s/source%s.png?token=%s" % ( settings.PUBLIC_URL, item.public_id, position, settings.PUBLIC_TOKEN, ) first_frame_path = ( "/srv/pandora/static/power/cache/%s_%s/%06d.first_frame.png" % (item.public_id, prompt_hash, n) ) if not os.path.exists(first_frame_path): prepare_image(first_frame, image_prompt, first_frame_path) first_frame = public_url(first_frame_path) last_frame_position = segment - 2 / 24 last_frame = "%s%s/source%0.3f.png?token=%s" % ( settings.PUBLIC_URL, item.public_id, last_frame_position, settings.PUBLIC_TOKEN, ) last_frame_path = ( "/srv/pandora/static/power/cache/%s_%s/%06d.last_frame.png" % (item.public_id, prompt_hash, n) ) if not os.path.exists(last_frame_path): prepare_image(last_frame, image_prompt, last_frame_path) last_frame = public_url(last_frame_path) output = "/srv/pandora/static/power/cache/%s_%s/%06d.mp4" % ( item.public_id, prompt_hash, n, ) if not os.path.exists(output): first_last(first_frame, last_frame, video_prompt, duration, output) trimmed = "/srv/pandora/static/power/cache/%s_%s/%06d_trimmed.mp4" % ( item.public_id, prompt_hash, n, ) frames = int(duration * 24) if not os.path.exists(trimmed): trim_video(output, trimmed, frames, stype == "c") processed.append(trimmed) position = segment n += 1 joined_output = "/srv/pandora/static/power/cache/%s_%s.mp4" % ( item.public_id, prompt_hash, ) join_segments(processed, joined_output) return joined_output def restyle_video(item_id, prompt): item = Item.objects.get(public_id=item_id) video_url = public_video_url(item) model = "decart/lucy-restyle" handler = fal_client.submit( model, arguments={ "prompt": prompt, "video_url": video_url, "resolution": "720p", "enhance_prompt": True, }, ) request_id = handler.request_id print(request_id) status = fal_client.status(model, request_id, with_logs=True) while isinstance(status, fal_client.InProgress): time.sleep(10) status = fal_client.status(model, request_id, with_logs=True) result = fal_client.result(model, request_id) print(result) output_url = result["video"]["url"] prompt_hash = hashlib.sha1((prompt).encode()).hexdigest() output_path = "/srv/pandora/static/power/cache/%s_%s.mp4" % ( item.public_id, prompt_hash, ) ox.net.save_url(output_url, output_path, overwrite=True) return output_path def fal_wait_for(model, request_id): status = fal_client.status(model, request_id, with_logs=True) while isinstance(status, fal_client.InProgress): time.sleep(10) status = fal_client.status(model, request_id, with_logs=True) result = fal_client.result(model, request_id) return result def motion_control_preprocess_image(item_id, image_prompt, video_prompt): item = Item.objects.get(public_id=item_id) video_url = public_video_url(item) model = "fal-ai/kling-video/v2.6/pro/motion-control" prompt_hash = hashlib.sha1((image_prompt + video_prompt).encode()).hexdigest() output = "/srv/pandora/static/power/cache/%s_%s.mp4" % (item.public_id, prompt_hash) first_frame = "%s%s/source%s.png?token=%s" % ( settings.PUBLIC_URL, item.public_id, 0, settings.PUBLIC_TOKEN, ) first_frame_path = "/srv/pandora/static/power/cache/%s_%s/%06d.first_frame.png" % ( item.public_id, prompt_hash, 0, ) if not os.path.exists(first_frame_path): os.makedirs(os.path.dirname(first_frame_path), exist_ok=True) prepare_image(first_frame, image_prompt, first_frame_path) image_url = public_url(first_frame_path) data = { "prompt": video_prompt, "image_url": image_url, "video_url": video_url, "keep_original_sound": False, "character_orientation": "video", } print(data) handler = fal_client.submit(model, arguments=data) request_id = handler.request_id print(request_id) result = fal_wait_for(model, request_id) print(result) output_url = result["video"]["url"] ox.net.save_url(output_url, output, overwrite=True) return output def luma_wait_for(id): url = "https://api.lumalabs.ai/dream-machine/v1/generations/%s" % id headers = { "accept": "application/json", "content-type": "application/json", "authorization": "Bearer " + settings.LUMA_TOKEN, } status = requests.get(url, headers=headers).json() while status["state"] in ("queued", "dreaming"): time.sleep(10) status = requests.get(url, headers=headers).json() return status def luma_modify_segment(video_url, prompt, first_frame=None, mode='flex_2'): # also got that at fal-ai/luma-dream-machine/ray-2/modify url = "https://api.lumalabs.ai/dream-machine/v1/generations/video/modify" payload = { "generation_type": "modify_video", "model": "ray-2", "mode": mode, "prompt": prompt, "media": {"url": video_url}, } if first_frame: payload["first_frame"] = {"url": first_frame} headers = { "accept": "application/json", "content-type": "application/json", "authorization": "Bearer " + settings.LUMA_TOKEN, } response = requests.post(url, json=payload, headers=headers).json() print(response) status = luma_wait_for(response["id"]) return status["assets"]["video"] def fragment_video(filename, segmentdir, segments): filename = str(filename) input_info = ox.avinfo(filename) segments_ = [] for segment in segments: if isinstance(segment, list): stype, segment = segment else: stype = "n" segments_.append(segment) segments = segments_ position = 0 segment = 0 cap = cv2.VideoCapture(filename) fps = cap.get(cv2.CAP_PROP_FPS) width = int(cap.get(cv2.CAP_PROP_FRAME_WIDTH)) height = int(cap.get(cv2.CAP_PROP_FRAME_HEIGHT)) fourcc = cv2.VideoWriter_fourcc(*"avc1") frame_count = 0 next_cut = int(segments.pop(0) * fps) last = None os.makedirs(segmentdir, exist_ok=True) while cap.isOpened(): if frame_count == 0: output_path = segmentdir + "/%06d.mp4" % segment out = cv2.VideoWriter(output_path, fourcc, fps, (width, height)) elif next_cut and frame_count >= next_cut and segments: print(frame_count, output_path) cv2.imwrite(output_path.replace(".mp4", "_last.jpg"), frame) out.release() segment += 1 output_path = segmentdir + "/%06d.mp4" % segment out = cv2.VideoWriter(output_path, fourcc, fps, (width, height)) if segments: next_cut = int(segments.pop(0) * fps) else: next_cut = None last = None ret, frame = cap.read() if not ret: break out.write(frame) if last is None: cv2.imwrite(output_path.replace(".mp4", "_first.jpg"), frame) last = frame frame_count += 1 out.release() cap.release() if last is None: os.unlink(output_path) else: cv2.imwrite(output_path.replace(".mp4", "_last.jpg"), last) def flux_edit_image(image, prompt): if isinstance(image, str): image = [image] data = { "prompt": prompt, "safety_tolerance": "5", "enable_safety_checker": False, "output_format": "jpeg", "image_urls": image, } print(data) result = fal_client.subscribe("fal-ai/flux-2-pro/edit", arguments=data) print(result) return result["images"][0]["url"] def in_the_style_of_fal(image, style): prompt = "apply style from @image 2 to @image 1 keep the position of the person in @image 1 but take light, colors, clothing from @image 2" return flux_edit_image([image, style], prompt) def in_the_style_of_byte(image, style): prompt = "apply style from image 2 to image 1 keep the position of the person in image 1 but take light, colors, clothing from image 2" image_model_name = "seedream-4-5-251128" ark_client = Ark( base_url="https://ark.ap-southeast.bytepluses.com/api/v3", api_key=settings.BYTEPLUSE_TOKEN, ) create_result = ark_client.images.generate( model=image_model_name, image=[image, style], prompt=prompt, sequential_image_generation="disabled", response_format="url", size="2560x1440", stream=False, watermark=False, ) print(create_result) return create_result.data[0].url def luma_modify_item(item, prompt="", image_prompt=None, first_frame=None, keep=False): mode = 'flex_2' if isinstance(item, str): item = Item.objects.get(public_id=item) source = item.files.all()[0].data.path info = ox.avinfo(source) duration = info["duration"] max_duration = 10 if duration < max_duration: segments = [duration] else: segments = get_item_segments(item, max_duration=max_duration) print(segments) prompt_hash = hashlib.sha1((prompt + (image_prompt or "")).encode()).hexdigest() processed = [] prefix = "/srv/pandora/static/power/cache/%s_%s" % (item.public_id, prompt_hash) video_segments = fragment_video(source, prefix, segments) n = 0 if isinstance(first_frame, Document): first_frame_url = public_document_url(first_frame) else: first_frame_url = first_frame for segment in segments: if isinstance(segment, list): stype, segment = segment else: stype = "n" output = "/srv/pandora/static/power/cache/%s_%s/%06d.mp4" % ( item.public_id, prompt_hash, n, ) output_ai = "/srv/pandora/static/power/cache/%s_%s/%06d_ai.mp4" % ( item.public_id, prompt_hash, n, ) if os.path.exists(output): video_url = luma_modify_segment( public_url(output), prompt, first_frame=first_frame_url, mode=mode ) ox.net.save_url(video_url, output_ai, overwrite=True) processed.append(output_ai) n += 1 joined_output = "/srv/pandora/static/power/cache/%s_%s/joined.mp4" % ( item.public_id, prompt_hash, ) join_segments(processed, joined_output) ai = add_ai_variant(item, joined_output, "ai:replace:p1:luma") ai.data["prompt"] = ox.escape_html(prompt) if first_frame: ai.data['firstframe'] = first_frame_url.split('?')[0] ai.data["model"] = 'ray-2:%s' % mode ai.save() if not keep: shutil.rmtree(os.path.dirname(joined_output)) if isinstance(first_frame, Document): first_frame.add(ai) return ai def add_ai_variant(item, video_path, type): if isinstance(item, str): item = Item.objects.get(public_id=item) ai = Item() ai.user = item.user ai.data["type"] = [type] ai.data["title"] = item.data["title"] ai.save() file = File() file.oshash = ox.oshash(video_path) file.item = ai file.path = "%s.mp4" % type file.info = ox.avinfo(video_path) del file.info["path"] file.parse_info() file.data.name = file.get_path("data." + video_path.split(".")[-1]) os.makedirs(os.path.dirname(file.data.path), exist_ok=True) shutil.copy(video_path, file.data.path) file.available = True file.selected = True file.queued = True file.wanted = False file.save() file.extract_stream() return ai def add_ai_image(item, position, url, extension=None): if extension is None: extension = url.split('.')[-1].split('?')[0] if extension == 'jpeg': extension = 'jpg' file = Document(user=item.user) file.data['title'] = '%s at %s' % (item.get('title'), position) file.data['position'] = position file.extension = extension file.width = -1 file.pages = -1 file.uploading = True file.save() file.uploading = True name = 'data.%s' % file.extension file.file.name = file.path(name) ox.net.save_url(url, file.file.path, overwrite=True) file.get_info() file.get_ratio() file.oshash = ox.oshash(file.file.path) file.save() file.update_sort() file.add(item) return file