| 12345678910111213141516171819202122232425262728293031323334353637383940414243444546474849505152535455565758596061626364656667686970717273747576777879808182838485868788899091929394959697989910010110210310410510610710810911011111211311411511611711811912012112212312412512612712812913013113213313413513613713813914014114214314414514614714814915015115215315415515615715815916016116216316416516616716816917017117217317417517617717817918018118218318418518618718818919019119219319419519619719819920020120220320420520620720820921021121221321421521621721821922022122222322422522622722822923023123223323423523623723823924024124224324424524624724824925025125225325425525625725825926026126226326426526626726826927027127227327427527627727827928028128228328428528628728828929029129229329429529629729829930030130230330430530630730830931031131231331431531631731831932032132232332432532632732832933033133233333433533633733833934034134234334434534634734834935035135235335435535635735835936036136236336436536636736836937037137237337437537637737837938038138238338438538638738838939039139239339439539639739839940040140240340440540640740840941041141241341441541641741841942042142242342442542642742842943043143243343443543643743843944044144244344444544644744844945045145245345445545645745845946046146246346446546646746846947047147247347447547647747847948048148248348448548648748848949049149249349449549649749849950050150250350450550650750850951051151251351451551651751851952052152252352452552652752852953053153253353453553653753853954054154254354454554654754854955055155255355455555655755855956056156256356456556656756856957057157257357457557657757857958058158258358458558658758858959059159259359459559659759859960060160260360460560660760860961061161261361461561661761861962062162262362462562662762862963063163263363463563663763863964064164264364464564664764864965065165265365465565665765865966066166266366466566666766866967067167267367467567667767867968068168268368468568668768868969069169269369469569669769869970070170270370470570670770870971071171271371471571671771871972072172272372472572672772872973073173273373473573673773873974074174274374474574674774874975075175275375475575675775875976076176276376476576676776876977077177277377477577677777877978078178278378478578678778878979079179279379479579679779879980080180280380480580680780880981081181281381481581681781881982082182282382482582682782882983083183283383483583683783883984084184284384484584684784884985085185285385485585685785885986086186286386486586686786886987087187287387487587687787887988088188288388488588688788888989089189289389489589689789889990090190290390490590690790890991091191291391491591691791891992092192292392492592692792892993093193293393493593693793893994094194294394494594694794894995095195295395495595695795895996096196296396496596696796896997097197297397497597697797897998098198298398498598698798898999099199299399499599699799899910001001100210031004100510061007100810091010101110121013101410151016101710181019102010211022102310241025102610271028102910301031103210331034103510361037103810391040104110421043104410451046104710481049105010511052105310541055105610571058105910601061106210631064106510661067106810691070107110721073107410751076107710781079108010811082108310841085108610871088108910901091109210931094109510961097109810991100110111021103110411051106110711081109111011111112111311141115111611171118111911201121112211231124112511261127112811291130113111321133113411351136113711381139114011411142114311441145114611471148114911501151115211531154115511561157115811591160116111621163116411651166116711681169117011711172117311741175117611771178117911801181118211831184118511861187118811891190119111921193119411951196119711981199120012011202120312041205120612071208120912101211121212131214121512161217121812191220122112221223122412251226122712281229123012311232123312341235123612371238123912401241124212431244124512461247124812491250125112521253125412551256125712581259126012611262126312641265126612671268126912701271127212731274127512761277127812791280128112821283128412851286128712881289129012911292129312941295129612971298129913001301130213031304130513061307130813091310131113121313131413151316131713181319132013211322132313241325132613271328132913301331133213331334133513361337133813391340134113421343134413451346134713481349135013511352135313541355135613571358135913601361136213631364136513661367136813691370137113721373137413751376137713781379138013811382138313841385138613871388138913901391139213931394139513961397139813991400140114021403140414051406140714081409141014111412141314141415141614171418141914201421142214231424142514261427142814291430143114321433143414351436143714381439144014411442144314441445144614471448144914501451145214531454145514561457145814591460146114621463146414651466146714681469147014711472147314741475147614771478147914801481148214831484148514861487148814891490149114921493149414951496149714981499150015011502150315041505150615071508150915101511151215131514151515161517151815191520152115221523152415251526152715281529153015311532153315341535153615371538153915401541154215431544154515461547154815491550155115521553155415551556155715581559156015611562156315641565156615671568156915701571157215731574157515761577157815791580158115821583158415851586158715881589159015911592159315941595159615971598159916001601160216031604160516061607160816091610161116121613161416151616161716181619162016211622162316241625162616271628162916301631163216331634163516361637163816391640164116421643164416451646164716481649165016511652165316541655165616571658165916601661166216631664166516661667166816691670167116721673167416751676167716781679168016811682168316841685168616871688168916901691169216931694169516961697169816991700170117021703170417051706170717081709171017111712171317141715171617171718171917201721172217231724172517261727172817291730173117321733173417351736173717381739174017411742174317441745174617471748174917501751175217531754175517561757175817591760176117621763176417651766176717681769177017711772177317741775177617771778177917801781178217831784178517861787178817891790179117921793179417951796179717981799180018011802180318041805180618071808180918101811181218131814181518161817181818191820182118221823182418251826182718281829183018311832183318341835183618371838183918401841184218431844184518461847184818491850185118521853185418551856185718581859186018611862186318641865186618671868186918701871187218731874187518761877187818791880188118821883188418851886188718881889189018911892189318941895189618971898189919001901190219031904190519061907190819091910191119121913191419151916191719181919192019211922192319241925192619271928192919301931193219331934193519361937193819391940194119421943 |
- # -*- coding: UTF-8 -*-
- import json
- import base64
- import hashlib
- import os
- from curl_cffi import requests as mj_requests
- import requests
- import os
- from dotenv import load_dotenv, find_dotenv
- load_dotenv(find_dotenv())
- # load from env
- APP_ID = 'cli_a22acf2916b8500e'
- APP_SECRET = 'tE0xAB2gZTMlBGdPczCGLcmpRlZQm5CQ'
- LARK_HOST = 'https://open.feishu.cn'
- APP_HOST = 'https://open.feishu.cn'
- EMAIL = 'semsevens@email.com'
- class LarkException(Exception):
- def __init__(self, code=0, msg=None):
- self.code = code
- self.msg = msg
- def __str__(self) -> str:
- return "{}:{}".format(self.code, self.msg)
- __repr__ = __str__
- def request(method, url, headers, payload={}):
- response = requests.request(method, url, headers=headers, json=payload)
- # logging.info("URL: " + url)
- # logging.info("X-Tt-Logid: " + response.headers['X-Tt-Logid'])
- # logging.info("headers:\n"+json.dumps(headers,indent=2, ensure_ascii=False))
- # logging.info("payload:\n"+json.dumps(payload,indent=2, ensure_ascii=False))
- resp = {}
- if response.text[0] == '{':
- resp = response.json()
- # logging.info("response:\n"+json.dumps(resp,indent=2, ensure_ascii=False))
- else:
- pass
- # logging.info("response:\n"+response.text)
- code = resp.get("code", -1)
- if code == -1:
- code = resp.get("StatusCode", -1)
- if code == -1 and response.status_code != 200:
- response.raise_for_status()
- if code != 0:
- raise LarkException(code=code, msg=resp.get("msg", ""))
- return resp
- def get_image_data_from_url(img_url, use_cache=True):
- # 计算URL的MD5哈希值
- url_hash = hashlib.md5(img_url.encode()).hexdigest()
- cache_dir = 'image_cache'
- cache_file = os.path.join(cache_dir, f'{url_hash}.json')
- if use_cache:
- # 检查缓存目录是否存在,如果不存在则创建
- if not os.path.exists(cache_dir):
- os.makedirs(cache_dir)
- # 检查缓存文件是否存在
- if os.path.exists(cache_file):
- with open(cache_file, 'r') as f:
- cached_data = json.load(f)
- return cached_data['image_data']
- # 如果缓存不存在,从URL获取图片
- if 'midjourney' in img_url:
- proxies = {
- 'http': 'http://127.0.0.1:7890',
- 'https': 'http://127.0.0.1:7890',
- }
- # response = mj_requests.get(img_url, impersonate="chrome100", proxies=proxies)
- response = mj_requests.get(img_url.replace("https://", "http://"), impersonate="chrome100")
- else:
- # proxies = {
- # 'http': 'http://t10952018781111:1ap37oc3@d844.kdltps.com:15818',
- # 'https': 'http://t10952018781111:1ap37oc3@d844.kdltps.com:15818',
- # }
- # proxies = {
- # 'http': None,
- # 'https': None,
- # }
- # response = requests.get(img_url.replace("https://", "http://"), proxies=proxies)
- response = requests.get(img_url)
- # response = requests.get(img_url, proxies=proxies)
- if response.status_code == 200:
- image_content = response.content
- missing_padding = 4 - len(image_content) % 4
- if missing_padding:
- image_content += b'=' * missing_padding
- image_data = base64.b64encode(image_content).decode('utf-8')
- # 将图片数据保存到缓存
- with open(cache_file, 'w') as f:
- json.dump({'image_data': image_data}, f)
- return image_data
- else:
- # import traceback
- # traceback.print_exc()
- raise Exception(f"无法从URL获取图片: {img_url}")
- from PIL import Image
- import io
- import os
- def get_image_size(img_url):
- img_data = get_image_data_from_url(img_url)
- img = Image.open(io.BytesIO(base64.b64decode(img_data)))
- width, height = img.size
- return width, height
- if __name__ == "__main__":
- img_url = "https://sns-webpic.xhscdn.com/1040g2sg31c4vs26n12a05ph3cdp3cutm5prqo90"
- img_data = get_image_data_from_url(img_url)
- save_path = "/Users/nieqi/Downloads/save.json"
- with open(save_path, 'w') as f:
- f.write(img_data)
- def column_id(col):
- '''column int to string id'''
- ans = ""
- i = col
- while i > 0:
- m = int((i-1) % 26)
- i = int((i-1) / 26)
- ans = chr(m+65) + ans
- return ans
- def do_compress_image(image_data, image_type):
- # 压缩图片
- from PIL import Image
- import io
- import base64
- Image.MAX_IMAGE_PIXELS = None # 禁用图片大小限制
- # 将base64转为图片对象
- image = Image.open(io.BytesIO(base64.b64decode(image_data)))
- # 计算压缩后的尺寸,保持宽高比
- max_size = 1600
- ratio = min(max_size/image.width, max_size/image.height)
- if ratio < 1:
- new_size = (int(image.width * ratio), int(image.height * ratio))
- image = image.resize(new_size, Image.Resampling.LANCZOS)
- # 在保存之前转换RGBA为RGB
- if image.mode == 'RGBA':
- # 创建白色背景
- background = Image.new('RGB', image.size, (255, 255, 255))
- # 将RGBA图片合成到白色背景上
- background.paste(image, mask=image.split()[3]) # 使用alpha通道作为mask
- image = background
- buffer = io.BytesIO()
- # 将 'JPG' 转换为 'JPEG'
- if image_type and image_type.upper() == 'JPG':
- image_type = 'JPEG'
- image_type = 'JPEG'
- # image.save(buffer, format=image_type.upper(), quality=95, optimize=True)
- image.save(buffer, format=image_type.upper(), quality=85, optimize=True)
- image_data = base64.b64encode(buffer.getvalue()).decode()
- return image_data
- class Client(object):
- def __init__(self, lark_host):
- self._host = lark_host
- def get_tenant_access_token(self, app_id, app_secret):
- url = self._host+"/open-apis/auth/v3/app_access_token/internal/"
- headers = {
- 'Content-Type': 'application/json; charset=utf-8'
- }
- payload = {
- 'app_id': app_id,
- 'app_secret': app_secret
- }
- resp = request("POST", url, headers, payload)
- return resp['tenant_access_token']
- def get_user_access_token(self, tenant_access_token, code):
- url = self._host+"/open-apis/authen/v1/access_token"
- headers = {
- 'Content-Type': 'application/json; charset=utf-8'
- }
- payload = {
- "grant_type": "authorization_code",
- "code": code,
- "app_access_token": tenant_access_token
- }
- resp = request("POST", url, headers, payload)
- return resp['data']['access_token']
- def get_root_folder_token(self, access_token):
- url = self._host+"/open-apis/drive/explorer/v2/root_folder/meta"
- headers = {
- 'Content-Type': 'application/json; charset=utf-8',
- 'Authorization': 'Bearer '+access_token
- }
- resp = request("GET", url, headers)
- return resp['data']['token']
- def create_spreadsheet(self, access_token, foldertoken, title):
- url =self._host+"/open-apis/sheets/v3/spreadsheets"
- headers = {
- 'Content-Type': 'application/json; charset=utf-8',
- 'Authorization': 'Bearer '+access_token
- }
- payload={
- "title": title,
- "folder_token": foldertoken
- }
- resp = request("POST", url, headers, payload)
- return resp['data']['spreadsheet']['spreadsheet_token'], resp['data']['spreadsheet']['url']
- def get_sheetid(self, access_token, doctoken, sheet_index=0):
- url = self._host+"/open-apis/sheets/v2/spreadsheets/"+doctoken+"/metainfo"
- headers = {
- 'Content-Type': 'application/json; charset=utf-8',
- 'Authorization': 'Bearer '+access_token
- }
- resp = request("GET", url, headers)
- return resp['data']['sheets'][sheet_index]["sheetId"]
- def batch_update_values(self, access_token, doctoken, data):
- url =self._host+"/open-apis/sheets/v2/spreadsheets/"+doctoken+"/values_batch_update"
- headers = {
- 'Content-Type': 'application/json; charset=utf-8',
- 'Authorization': 'Bearer '+access_token
- }
- payload=data
- resp = request("POST", url, headers, payload)
- return resp['data']['spreadsheetToken']
- def batch_update_styles(self, access_token, doctoken, data):
- url =self._host+"/open-apis/sheets/v2/spreadsheets/"+doctoken+"/styles_batch_update"
- headers = {
- 'Content-Type': 'application/json; charset=utf-8',
- 'Authorization': 'Bearer '+access_token
- }
- payload=data
- resp = request("PUT", url, headers, payload)
- return resp['data']['spreadsheetToken']
- def add_permissions_member(self, access_token, doctoken, doctype, member_type, member_id, perm):
- url = self._host+"/open-apis/drive/v1/permissions/"+doctoken+"/members?type="+doctype+"&need_notification=false"
- headers = {
- 'Content-Type': 'application/json; charset=utf-8',
- 'Authorization': 'Bearer '+access_token
- }
- payload = {
- "member_type": member_type,
- "member_id": member_id,
- "perm": perm
- }
- request("POST", url, headers, payload)
- def write_image_to_cell(self, access_token, doctoken, sheetid, img_url, row, col, image_type, compress_image=True):
- url = f"{self._host}/open-apis/sheets/v2/spreadsheets/{doctoken}/values_image"
- headers = {
- 'Content-Type': 'application/json; charset=utf-8',
- 'Authorization': f'Bearer {access_token}'
- }
- try:
- image_data = get_image_data_from_url(img_url)
- except Exception as e:
- print(img_url)
- print(e)
- return None, None
- if compress_image:
- image_data = do_compress_image(image_data, image_type)
- image_name = img_url.split('/')[-1].replace(f'.{image_type}', '') # 从URL中提取文件名
- if compress_image:
- image_type = 'JPEG'
- cell_start = column_id(col)+str(row)
- range = f'{sheetid}!{cell_start}:{cell_start}'
- payload = {
- "range": range,
- "image": image_data,
- "name": f"{image_name}.{image_type}"
- }
- try:
- resp = request("POST", url, headers, payload)
- except Exception as e:
- print(img_url)
- print(image_name)
- print(image_type)
- print(e)
- return None, None
- return resp['data']['revision'], resp['data']['updateRange']
- def merge_cells(self, access_token, doctoken, sheetid, start_row, end_row, start_col, end_col):
- print(f"merge start_row = {start_row} end_row = {end_row} start_col = {start_col} end_col = {end_col}")
- url = f"{self._host}/open-apis/sheets/v2/spreadsheets/{doctoken}/merge_cells"
- headers = {
- 'Content-Type': 'application/json; charset=utf-8',
- 'Authorization': f'Bearer {access_token}'
- }
- start_col_id = column_id(start_col)
- end_col_id = column_id(end_col)
- payload = {
- "range": f"{sheetid}!{start_col_id}{start_row}:{end_col_id}{end_row}",
- "mergeType": "MERGE_ALL",
- }
- try:
- resp = request("POST", url, headers, payload)
- except Exception as e:
- print(e)
- return None
- return None
- def write_images_to_cell(self, access_token, doctoken, sheetid, img_url_list, row, col, compress_image=True, grid_width=None, grid_height=None, border_width=3, border_color=(200, 200, 200)):
- """
- 将多张图片拼接后写入单元格
-
- Args:
- img_url_list: 图片URL列表
- row: 目标单元格行号
- col: 目标单元格列号
- compress_image: 是否压缩图片
- grid_width: 拼接图片的列数,如果为None则自动计算
- grid_height: 拼接图片的行数,如果为None则自动计算
- border_width: 边框宽度,像素
- border_color: 边框颜色,RGB元组
- """
- from PIL import Image, ImageDraw
- import io
- import base64
- import math
- # 下载所有图片
- images = []
- for img_url in img_url_list:
- try:
- image_type = get_image_type(img_url)
- if not image_type:
- continue
- image_data = get_image_data_from_url(img_url)
- image = Image.open(io.BytesIO(base64.b64decode(image_data)))
- images.append(image)
- except Exception as e:
- print(f"下载图片失败: {img_url}")
- print(e)
- continue
- if not images:
- return None, None
- # 计算拼接图片的行列数
- img_count = len(images)
- if grid_width is None and grid_height is None:
- # 如果未指定行列数,计算最接近正方形的网格
- grid_width = math.ceil(math.sqrt(img_count))
- grid_height = math.ceil(img_count / grid_width)
- elif grid_width is None:
- # 如果只指定了行数,计算列数
- grid_width = math.ceil(img_count / grid_height)
- elif grid_height is None:
- # 如果只指定了列数,计算行数
- grid_height = math.ceil(img_count / grid_width)
- # 确保网格能容纳所有图片
- while grid_width * grid_height < img_count:
- if grid_width <= grid_height:
- grid_width += 1
- else:
- grid_height += 1
- # 调整所有图片到相同尺寸,保持原始比例
- if images:
- # 计算目标尺寸(使用平均尺寸作为参考)
- avg_width = sum(img.width for img in images) // len(images)
- avg_height = sum(img.height for img in images) // len(images)
- target_size = (avg_width, avg_height)
-
- # 调整图片尺寸,保持原始比例
- resized_images = []
- for img in images:
- # 计算保持比例的缩放尺寸
- img_ratio = img.width / img.height
- target_ratio = target_size[0] / target_size[1]
-
- if img_ratio > target_ratio:
- # 图片比目标更宽,以宽度为准
- new_width = target_size[0]
- new_height = int(target_size[0] / img_ratio)
- else:
- # 图片比目标更高,以高度为准
- new_height = target_size[1]
- new_width = int(target_size[1] * img_ratio)
-
- # 缩放图片,保持比例
- resized_img = img.resize((new_width, new_height), Image.Resampling.LANCZOS)
- resized_images.append(resized_img)
-
- # 创建拼接画布
- canvas_width = grid_width * avg_width + (grid_width + 1) * border_width
- canvas_height = grid_height * avg_height + (grid_height + 1) * border_width
- canvas = Image.new('RGB', (canvas_width, canvas_height), border_color)
-
- # 拼接图片
- for i, img in enumerate(resized_images):
- row_idx = i // grid_width
- col_idx = i % grid_width
-
- # 计算每个网格单元的位置
- cell_x = col_idx * avg_width + (col_idx + 1) * border_width
- cell_y = row_idx * avg_height + (row_idx + 1) * border_width
-
- # 在网格单元中居中放置图片
- center_x = cell_x + (avg_width - img.width) // 2
- center_y = cell_y + (avg_height - img.height) // 2
-
- canvas.paste(img, (center_x, center_y))
-
- # 将拼接后的图片转换为base64
- output = io.BytesIO()
- if compress_image:
- canvas.save(output, format='JPEG', quality=85)
- image_type = 'JPEG'
- else:
- canvas.save(output, format='PNG')
- image_type = 'PNG'
-
- output.seek(0)
- image_data = base64.b64encode(output.getvalue()).decode()
-
- # 调用写入图片的API
- url = f"{self._host}/open-apis/sheets/v2/spreadsheets/{doctoken}/values_image"
- headers = {
- 'Content-Type': 'application/json; charset=utf-8',
- 'Authorization': f'Bearer {access_token}'
- }
-
- cell_start = column_id(col) + str(row)
- range_val = f'{sheetid}!{cell_start}:{cell_start}'
- payload = {
- "range": range_val,
- "image": image_data,
- "name": f"combined_image.{image_type}"
- }
-
- try:
- resp = request("POST", url, headers, payload)
- return resp['data']['revision'], resp['data']['updateRange']
- except Exception as e:
- print(f"写入拼接图片失败: {e}")
- return None, None
-
- return None, None
- def read_range_values(self, access_token, doctoken, range_val):
- """
- 读取指定范围的数据
-
- Args:
- access_token: 访问令牌
- doctoken: 表格token
- range_val: 范围,格式如 "Sheet1!A1:C10"
-
- Returns:
- 读取到的数据列表
- """
- url = f"{self._host}/open-apis/sheets/v2/spreadsheets/{doctoken}/values/{range_val}"
- headers = {
- 'Content-Type': 'application/json; charset=utf-8',
- 'Authorization': f'Bearer {access_token}'
- }
-
- try:
- resp = request("GET", url, headers)
- return resp['data']['valueRange']['values']
- except Exception as e:
- print(f"读取数据失败: {e}")
- return []
- def prepend_data(self, access_token, doctoken, range_val, values):
- """
- 在指定位置前面插入数据
-
- Args:
- access_token: 访问令牌
- doctoken: 表格token
- range_val: 插入范围,格式如 "Sheet1!A1:C1"
- values: 要插入的数据
-
- Returns:
- 操作结果
- """
- url = f"{self._host}/open-apis/sheets/v3/spreadsheets/{doctoken}/sheets/{range_val.split('!')[0]}/prepend"
- headers = {
- 'Content-Type': 'application/json; charset=utf-8',
- 'Authorization': f'Bearer {access_token}'
- }
-
- # 从range_val中提取行数
- range_part = range_val.split('!')[1] # 如 "A1:Z1"
- start_cell = range_part.split(':')[0] # 如 "A1"
-
- payload = {
- "values": values
- }
-
- try:
- resp = request("POST", url, headers, payload)
- return resp
- except Exception as e:
- print(f"插入数据失败: {e}")
- return None
- def insert_data_at_row(self, access_token, doctoken, sheetid, row, values):
- """
- 在指定行插入数据(使用批量更新方式)
-
- Args:
- access_token: 访问令牌
- doctoken: 表格token
- sheetid: 工作表ID
- row: 目标行号
- values: 要插入的数据
-
- Returns:
- 操作结果
- """
- # 使用批量更新的方式插入数据
- cols = len(values[0]) if values else 1
- end_col = column_id(cols)
- range_val = f"{sheetid}!A{row}:{end_col}{row}"
-
- body = {
- "valueRanges": [
- {
- "range": range_val,
- "values": values
- }
- ]
- }
-
- try:
- result = self.batch_update_values(access_token, doctoken, body)
- return result
- except Exception as e:
- print(f"插入数据到第{row}行失败: {e}")
- return None
- def insert_rows_before(self, access_token, doctoken, sheetid, row_index, count=1):
- """
- 在指定行前插入新行(基于飞书官方API)
-
- Args:
- access_token: 访问令牌
- doctoken: 表格token
- sheetid: 工作表ID
- row_index: 插入位置的行号(从1开始,在此行前插入)
- count: 插入行数(默认1行)
-
- Returns:
- 操作结果
- """
- # 先获取工作表信息,检查当前行数
- sheet_props = self.get_sheet_properties(access_token, doctoken, sheetid)
- if not sheet_props:
- print("无法获取工作表信息,尝试直接插入")
- current_row_count = 1000 # 默认值
- else:
- current_row_count = sheet_props['row_count']
- print(f"当前工作表行数: {current_row_count}")
-
- # 如果要插入的位置超过了当前行数,使用追加模式
- if row_index > current_row_count:
- print(f"插入位置({row_index})超过当前行数({current_row_count}),使用追加模式")
- # 使用追加方式在末尾添加行
- return self.append_empty_rows(access_token, doctoken, sheetid, count)
-
- url = f"{self._host}/open-apis/sheets/v2/spreadsheets/{doctoken}/insert_dimension_range"
- headers = {
- 'Content-Type': 'application/json; charset=utf-8',
- 'Authorization': f'Bearer {access_token}'
- }
-
- # 转换为0基索引:row_index=3表示第3行,对应startIndex=2
- start_index = row_index - 1 # 从0开始计数
- end_index = start_index + count # 结束位置(不包含)
-
- # 确保 endIndex 不超过当前工作表的行数限制
- if end_index > current_row_count:
- print(f"警告:计算的endIndex({end_index})超过当前行数({current_row_count}),调整为追加模式")
- return self.append_empty_rows(access_token, doctoken, sheetid, count)
-
- # 智能选择继承样式:插入第2行时继承后面的数据行样式,其他情况继承前面的样式
- inherit_style = "AFTER" if row_index == 2 else "BEFORE"
-
- payload = {
- "dimension": {
- "sheetId": sheetid,
- "majorDimension": "ROWS",
- "startIndex": start_index, # 从0开始计数
- "endIndex": end_index # 结束位置(不包含此行)
- },
- "inheritStyle": inherit_style # 智能继承样式
- }
-
- try:
- resp = request("POST", url, headers, payload)
- print(f"在第{row_index}行前成功插入{count}行(startIndex={start_index}, endIndex={end_index}, inheritStyle={inherit_style})")
- return resp
- except Exception as e:
- print(f"在第{row_index}行前插入{count}行失败: {e}")
- # 如果插入失败,尝试追加模式
- print("尝试使用追加模式...")
- return self.append_empty_rows(access_token, doctoken, sheetid, count)
- def insert_row_with_images(self, access_token, doctoken, sheetid, row, values, compress_image=True, grid_width=None, grid_height=None, border_width=3, border_color=(200, 200, 200)):
- """
- 在指定行插入数据并同时处理图片写入(覆盖方式)
-
- Args:
- access_token: 访问令牌
- doctoken: 表格token
- sheetid: 工作表ID
- row: 目标行号
- values: 要插入的数据
- compress_image: 是否压缩图片
- grid_width: 拼接图片的列数
- grid_height: 拼接图片的行数
- border_width: 边框宽度
- border_color: 边框颜色
-
- Returns:
- 操作结果
- """
- # 1. 先插入文本数据(覆盖指定行)
- result = self.insert_data_at_row(access_token, doctoken, sheetid, row, values)
-
- if not result:
- return None
-
- # 2. 同时处理图片写入
- if values and len(values) > 0:
- row_data = values[0]
- for col_index, cell in enumerate(row_data, start=1):
- if is_image_list_cell_url(cell):
- # 处理图片列表
- try:
- img_urls = eval(cell)
- self.write_images_to_cell(access_token, doctoken, sheetid, img_urls, row, col_index, compress_image, grid_width, grid_height, border_width, border_color)
- except Exception as e:
- print(f"写入图片列表失败 (第{row}行第{col_index}列): {e}")
- elif is_image_cell(cell):
- # 处理单张图片
- image_type = get_image_type(cell)
- if image_type:
- try:
- self.write_image_to_cell(access_token, doctoken, sheetid, cell, row, col_index, image_type, compress_image)
- except Exception as e:
- print(f"写入单张图片失败 (第{row}行第{col_index}列): {e}")
-
- return result
- def update_specific_fields(self, access_token, doctoken, sheetid, row, field_updates, headers=None):
- """
- 只更新指定字段,其他字段保持不变
-
- Args:
- access_token: 访问令牌
- doctoken: 表格token
- sheetid: 工作表ID
- row: 目标行号(从1开始)
- field_updates: 字段更新字典,格式如 {"列名": "新值", "列B": "新值B"}
- 或者 {列索引: "新值", 2: "新值B"}(从1开始计数)
- headers: 表头列表,用于列名到列索引的映射。如果为None,则field_updates的key必须是列索引
-
- Returns:
- 操作结果
- """
- try:
- # 如果提供了headers且field_updates的key是列名,则转换为列索引
- if headers and field_updates:
- column_updates = {}
- for field_name, value in field_updates.items():
- if isinstance(field_name, str): # 如果是列名
- try:
- col_index = headers.index(field_name) + 1 # 转为1基索引
- column_updates[col_index] = value
- except ValueError:
- print(f"警告:找不到列名 '{field_name}',跳过更新")
- continue
- else: # 如果已经是列索引
- column_updates[field_name] = value
- else:
- column_updates = field_updates
-
- # 构建批量更新请求
- value_ranges = []
- for col_index, value in column_updates.items():
- col_letter = column_id(col_index)
- range_val = f"{sheetid}!{col_letter}{row}:{col_letter}{row}"
- value_ranges.append({
- "range": range_val,
- "values": [[value]]
- })
-
- body = {
- "valueRanges": value_ranges
- }
-
- result = self.batch_update_values(access_token, doctoken, body)
-
- if result:
- updated_fields = list(column_updates.keys())
- print(f"成功更新第{row}行的字段: {updated_fields}")
-
- return result
- except Exception as e:
- print(f"更新第{row}行指定字段失败: {e}")
- return None
- def update_row_with_specific_fields_and_images(self, access_token, doctoken, sheetid, row, field_updates, headers=None, compress_image=True, grid_width=None, grid_height=None, border_width=3, border_color=(200, 200, 200)):
- """
- 更新指定字段并处理图片
-
- Args:
- access_token: 访问令牌
- doctoken: 表格token
- sheetid: 工作表ID
- row: 目标行号
- field_updates: 字段更新字典
- headers: 表头列表
- compress_image: 是否压缩图片
- grid_width: 拼接图片的列数
- grid_height: 拼接图片的行数
- border_width: 边框宽度
- border_color: 边框颜色
-
- Returns:
- 操作结果
- """
- # 1. 先更新文本数据
- result = self.update_specific_fields(access_token, doctoken, sheetid, row, field_updates, headers)
-
- if not result:
- return None
-
- # 2. 处理图片写入
- column_updates = {}
- if headers and field_updates:
- for field_name, value in field_updates.items():
- if isinstance(field_name, str): # 如果是列名
- try:
- col_index = headers.index(field_name) + 1
- column_updates[col_index] = value
- except ValueError:
- continue
- else: # 如果已经是列索引
- column_updates[field_name] = value
- else:
- column_updates = field_updates
-
- for col_index, cell in column_updates.items():
- if is_image_list_cell_url(cell):
- # 处理图片列表
- try:
- img_urls = eval(cell)
- self.write_images_to_cell(access_token, doctoken, sheetid, img_urls, row, col_index, compress_image, grid_width, grid_height, border_width, border_color)
- except Exception as e:
- print(f"写入图片列表失败 (第{row}行第{col_index}列): {e}")
- elif is_image_cell(cell):
- # 处理单张图片
- image_type = get_image_type(cell)
- if image_type:
- try:
- self.write_image_to_cell(access_token, doctoken, sheetid, cell, row, col_index, image_type, compress_image)
- except Exception as e:
- print(f"写入单张图片失败 (第{row}行第{col_index}列): {e}")
-
- return result
- def insert_row_with_data_at_position(self, access_token, doctoken, sheetid, row_position, values, compress_image=True, grid_width=None, grid_height=None, border_width=3, border_color=(200, 200, 200)):
- """
- 在指定位置真正插入新行并填入数据
-
- Args:
- access_token: 访问令牌
- doctoken: 表格token
- sheetid: 工作表ID
- row_position: 插入位置(从1开始,在此行前插入)
- values: 要插入的数据
- compress_image: 是否压缩图片
- grid_width: 拼接图片的列数
- grid_height: 拼接图片的行数
- border_width: 边框宽度
- border_color: 边框颜色
-
- Returns:
- 操作结果
- """
- # 获取当前工作表行数
- sheet_props = self.get_sheet_properties(access_token, doctoken, sheetid)
- current_row_count = sheet_props['row_count'] if sheet_props else 1
-
- # 1. 先插入空行
- insert_result = self.insert_rows_before(access_token, doctoken, sheetid, row_position, 1)
-
- if not insert_result:
- print(f"插入空行失败,无法在第{row_position}行插入数据")
- return None
-
- # 如果是追加模式(插入位置超过了原有行数),实际数据位置是当前行数+1
- actual_row_position = row_position
- if row_position > current_row_count:
- actual_row_position = current_row_count + 1
- print(f"追加模式:实际数据插入位置调整为第{actual_row_position}行")
-
- # 2. 再在新插入的行中填入数据
- result = self.insert_data_at_row(access_token, doctoken, sheetid, actual_row_position, values)
-
- if not result:
- print(f"插入数据失败")
- return None
-
- # 3. 同时处理图片写入
- if values and len(values) > 0:
- row_data = values[0]
- for col_index, cell in enumerate(row_data, start=1):
- if is_image_list_cell_url(cell):
- # 处理图片列表
- try:
- img_urls = eval(cell)
- self.write_images_to_cell(access_token, doctoken, sheetid, img_urls, actual_row_position, col_index, compress_image, grid_width, grid_height, border_width, border_color)
- except Exception as e:
- print(f"写入图片列表失败 (第{actual_row_position}行第{col_index}列): {e}")
- elif is_image_cell(cell):
- # 处理单张图片
- image_type = get_image_type(cell)
- if image_type:
- try:
- self.write_image_to_cell(access_token, doctoken, sheetid, cell, actual_row_position, col_index, image_type, compress_image)
- except Exception as e:
- print(f"写入单张图片失败 (第{actual_row_position}行第{col_index}列): {e}")
-
- return result
- def get_sheet_info(self, access_token, doctoken, sheetid):
- """
- 获取工作表的基础信息
-
- Args:
- access_token: 访问令牌
- doctoken: 表格token
- sheetid: 工作表ID
-
- Returns:
- 工作表信息,包含行数、列数等
- """
- url = f"{self._host}/open-apis/sheets/v3/spreadsheets/{doctoken}/sheets/{sheetid}"
- headers = {
- 'Content-Type': 'application/json; charset=utf-8',
- 'Authorization': f'Bearer {access_token}'
- }
-
- try:
- resp = request("GET", url, headers)
- return resp['data']['sheet']
- except Exception as e:
- print(f"获取工作表信息失败: {e}")
- return None
- def get_sheet_properties(self, access_token, doctoken, sheetid):
- """
- 获取工作表属性,包括行数和列数
-
- Args:
- access_token: 访问令牌
- doctoken: 表格token
- sheetid: 工作表ID
-
- Returns:
- dict: 包含 row_count, column_count 等信息
- """
- sheet_info = self.get_sheet_info(access_token, doctoken, sheetid)
- if sheet_info:
- grid_properties = sheet_info.get('grid_properties', {})
- return {
- 'row_count': grid_properties.get('row_count', 0),
- 'column_count': grid_properties.get('column_count', 0),
- 'title': sheet_info.get('title', ''),
- 'sheet_id': sheet_info.get('sheet_id', ''),
- 'sheet_type': sheet_info.get('sheet_type', '')
- }
- return None
- def append_data(self, access_token, doctoken, range_val, values):
- """
- 在指定位置后面追加数据
-
- Args:
- access_token: 访问令牌
- doctoken: 表格token
- range_val: 追加范围,格式如 "Sheet1!A1:C1"
- values: 要追加的数据
-
- Returns:
- 操作结果
- """
- url = f"{self._host}/open-apis/sheets/v2/spreadsheets/{doctoken}/values_append"
- headers = {
- 'Content-Type': 'application/json; charset=utf-8',
- 'Authorization': f'Bearer {access_token}'
- }
-
- payload = {
- "valueRange": {
- "range": range_val,
- "values": values
- }
- }
-
- try:
- resp = request("POST", url, headers, payload)
- return resp
- except Exception as e:
- print(f"追加数据失败: {e}")
- return None
- def delete_rows(self, access_token, doctoken, sheetid, start_row, end_row):
- """
- 删除指定范围的行
-
- Args:
- access_token: 访问令牌
- doctoken: 表格token
- sheetid: 工作表ID
- start_row: 开始行号(从1开始)
- end_row: 结束行号(从1开始,包含)
-
- Returns:
- 操作结果
- """
- url = f"{self._host}/open-apis/sheets/v2/spreadsheets/{doctoken}/dimension_range"
- headers = {
- 'Content-Type': 'application/json; charset=utf-8',
- 'Authorization': f'Bearer {access_token}'
- }
-
- payload = {
- "dimension": {
- "sheetId": sheetid,
- "majorDimension": "ROWS",
- "startIndex": start_row, # 从1开始计数,包含
- "endIndex": end_row # 从1开始计数,包含
- }
- }
-
- try:
- resp = request("DELETE", url, headers, payload)
- return resp
- except Exception as e:
- print(f"删除第{start_row}-{end_row}行失败: {e}")
- return None
- def delete_single_row(self, access_token, doctoken, sheetid, row):
- """
- 删除单行
-
- Args:
- access_token: 访问令牌
- doctoken: 表格token
- sheetid: 工作表ID
- row: 行号(从1开始)
-
- Returns:
- 操作结果
- """
- return self.delete_rows(access_token, doctoken, sheetid, row, row)
- def append_empty_rows(self, access_token, doctoken, sheetid, count=1):
- """
- 在工作表末尾追加空行
-
- Args:
- access_token: 访问令牌
- doctoken: 表格token
- sheetid: 工作表ID
- count: 追加行数(默认1行)
-
- Returns:
- 操作结果
- """
- # 获取当前工作表信息
- sheet_props = self.get_sheet_properties(access_token, doctoken, sheetid)
- if not sheet_props:
- print("无法获取工作表信息,追加失败")
- return None
-
- current_row_count = sheet_props['row_count']
- current_col_count = sheet_props['column_count']
-
- print(f"在工作表末尾追加{count}行,当前行数: {current_row_count}")
-
- # 构造空数据行
- empty_values = [[''] * max(current_col_count, 1) for _ in range(count)]
-
- # 使用append_data在末尾追加
- range_val = f"{sheetid}!A{current_row_count + 1}:{column_id(max(current_col_count, 1))}{current_row_count + count}"
-
- try:
- result = self.append_data(access_token, doctoken, range_val, empty_values)
- if result:
- print(f"成功在末尾追加{count}行空行")
- return result
- except Exception as e:
- print(f"追加空行失败: {e}")
- return None
- # -*- coding: UTF-8 -*-
- import json
- import logging
- from datetime import datetime
- import re
- import os
- import requests
- from urllib.parse import urlparse
- LOG_FORMAT = "%(asctime)s - %(levelname)s - %(message)s"
- logging.basicConfig(format=LOG_FORMAT, level=logging.INFO)
- import os
- logging.info(os.getcwd())
- def column_id(col):
- '''column int to string id'''
- ans = ""
- i = col
- while i > 0:
- m = int((i-1) % 26)
- i = int((i-1) / 26)
- ans = chr(m+65) + ans
- return ans
- def get_image_type(url):
- '''根据图片URL获取图片类型'''
- try:
- # 发送 HEAD 请求以获取头信息
- path = urlparse(url).path
- ext = path.split('.')[-1].lower()
- if ext in ['jpg', 'jpeg', 'png', 'gif']:
- return ext
- ext = 'jpeg'
- if 'jpg' in url:
- ext = 'jpg'
- if 'jpeg' in url:
- ext = 'jpeg'
- if 'png' in url:
- ext = 'png'
- if 'gif' in url:
- ext = 'gif'
- if "webp" in url:
- ext = "webp"
- # 如果无法确定类型,返回 None
- return ext
- except Exception as e:
- print(f"获取图片类型时出错: {str(e)}")
- return None
- def is_image_cell(cell):
- # 判断是否包含中文字符
- if isinstance(cell, str):
- for char in cell:
- if '\u4e00' <= char <= '\u9fff':
- return False
- is_image = False
- if (
- isinstance(cell, str) and
- cell.startswith('http') and
- (
- re.match(r'https?://.+\.(jpg|jpeg|png|gif|webp).*', cell, re.I) or re.match(r'http?://.+\.(jpg|jpeg|png|gif|webp).*', cell, re.I) or
- ('xhscdn.com' in cell and 'format/jpg' in cell) or
- ('rescdn.yishihui.com' in cell and 'jpg' in cell) or
- 'sns-webpic-qc.xhscdn.com' in cell or 'ci.xiaohongshu.com' in cell
- )
- ):
- is_image = True
- return is_image
- def is_image_list_cell_url(cell):
- if isinstance(cell, str) and cell.strip() and cell[0] == '[' and cell[-1] == ']':
- try:
- cell_obj = eval(cell)
- except:
- return False
- if type(cell_obj) == list:
- for c in cell_obj:
- if not is_image_cell(c):
- return False
- return True
- return False
- def write_images(client, access_token, token, sheetid, data, start_row=1, start_col=1, skip_col=[], compress_image=True, grid_width=None, grid_height=None, border_width=3, border_color=(200, 200, 200)):
- '''将图片URL写入单元格'''
- for row_index, row in enumerate(data, start=1):
- if row_index < start_row:
- print(f"跳过行: {row_index}")
- continue
- for col_index, cell in enumerate(row, start=1):
- # if cell is not None and "http" in cell and is_image_cell(cell) is False:
- # print(f"is_image_cell = {is_image_cell(cell)}, {cell}")
- if col_index < start_col:
- continue
- if col_index in skip_col:
- continue
- if is_image_list_cell_url(cell):
- # print(f"is_image_list_cell_url = True , {cell}")
- client.write_images_to_cell(access_token, token, sheetid, eval(cell), row_index, col_index, compress_image, grid_width, grid_height, border_width, border_color)
- elif is_image_cell(cell):
- image_type = get_image_type(cell)
- if image_type:
- client.write_image_to_cell(access_token, token, sheetid, cell, row_index, col_index,image_type, compress_image)
- def merge_cells(client, access_token, token, sheetid, data ):
- row_cnt = len(data)
- col_cnt = len(data[0])
- for col in range(0,col_cnt):
- previous_row = 0
- previous_value = None
- for row in range(0,row_cnt):
- cell_value = data[row][col]
- if cell_value != previous_value :
- if row - previous_row > 1:
- client.merge_cells(access_token, token, sheetid, previous_row+1, row, col+1, col+1)
- previous_row = row
- previous_value= cell_value
- def pack_data(data, sheetid, start_row=1, start_col=1):
- rows = len(data)
- cols = len(data[0])
- range1 = f"{sheetid}!{column_id(start_col)}{start_row}:{column_id(cols)}{rows}"
- body = {
- "valueRanges": [
- {
- "range": range1,
- "values": []
- },
- ]
- }
- print(range1)
- for d in data[start_row-1:]:
- row = []
- for c in d[start_col-1:]:
- row.append(c)
- body["valueRanges"][0]["values"].append(row)
- return body
- def write_data_to_sheet(data, sheet_token='IoTOsjZ4khIqlOtTxnec8oTbn7c', sheetid=None, skip_text=False, skip_images=False, start_row=1, start_col=1, skip_col=[], compress_image=True, grid_width=None, grid_height=None, border_width=3, border_color=(200, 200, 200)):
- '''测试函数'''
- # 初始化 API 客户端
- client = Client(LARK_HOST)
- # 获取租户访问令牌
- access_token = client.get_tenant_access_token(APP_ID, APP_SECRET)
- # 获取第一个 sheet_id
- if sheetid is None:
- sheetid = client.get_sheetid(access_token, sheet_token)
- print(f"Sheet ID: {sheetid}")
- # 构建并写入测试数据
- body = pack_data(data,
- sheetid, start_row=start_row, start_col=start_col)
- if not skip_text:
- client.batch_update_values(access_token, sheet_token, body)
- # merge_cells(client, access_token, sheet_token, sheetid, data)
- # 写入图片
- if not skip_images:
- write_images(client, access_token, sheet_token, sheetid, data, start_row=start_row, start_col=start_col, skip_col=skip_col, compress_image=compress_image, grid_width=grid_width, grid_height=grid_height, border_width=border_width, border_color=border_color)
- def get_test_data():
- data = [
- ["标题1", "标题2", "标题3", "图片"],
- [1, 2,2, "http://sns-webpic.xhscdn.com/1040g2sg316vc6tdrk4705o8h0c2095f1else4i8?imageView2/2/w/0/format/jpg/v3"],
- [4, "https://cdn.midjourney.com/f78df4d5-9b8b-4ec7-ae34-5cc04d176f87/0_0.png", 6, "dd"],
- # [7, 8, 9, "https://sns-webpic.xhscdn.com/1040g2sg317l7814ck4705n3aa5ik4jgjahhcam0?imageView2/2/w/0/format/jpg/v3"],
- ]
- return data
- from typing import List, Dict
- import pandas as pd
- import json
- def to_feishu(
- res_list: List[Dict],
- sheet_id: str = 'Qn9MAs',
- sheet_token: str = 'Rbsysi6FChzCp7tfv19crkWNnEb',
- start_row: int = 1,
- start_col: int = 1,
- grid_width: int = None,
- grid_height: int = None,
- border_width: int = 3,
- border_color: tuple = (200, 200, 200),
- ) -> None:
- """
- 将数据导出到飞书表格
-
- Args:
- res_list: 数据列表
- sheet_id: 表格ID
- sheet_token: 表格token
- start_row: 起始行
- start_col: 起始列
- grid_width: 拼接图片的列数,如果为None则自动计算
- grid_height: 拼接图片的行数,如果为None则自动计算
- border_width: 边框宽度,像素
- border_color: 边框颜色,RGB元组
- """
- from tqdm import tqdm
-
- def truncate_by_bytes(text, max_bytes=450000):
- """按字节长度截断文本"""
- if not text:
- return ""
- text_str = str(text)
- encoded = text_str.encode('utf-8')
- if len(encoded) <= max_bytes:
- return text_str
- # 安全截断,避免截断多字节字符
- truncated = encoded[:max_bytes]
- while len(truncated) > 0:
- try:
- return truncated.decode('utf-8') + "...[已截断]"
- except UnicodeDecodeError:
- truncated = truncated[:-1]
- return ""
-
- res_new_v4 = []
- for row in tqdm(res_list):
- if not row:
- continue
- for k, v in row.items():
- if isinstance(v, list):
- if len(v) > 0 and v[0] and v[0].startswith('http'):
- row[k] = truncate_by_bytes(str(v))
- else:
- json_str = json.dumps(v, ensure_ascii=False, separators=(',', ':'))
- row[k] = truncate_by_bytes(json_str)
- elif isinstance(v, dict):
- json_str = json.dumps(v, ensure_ascii=False, indent=2)
- row[k] = truncate_by_bytes(json_str)
- else:
- row[k] = truncate_by_bytes(v)
- res_new_v4.append(row)
- df = pd.DataFrame(res_new_v4)
- df.fillna('', inplace=True)
- header = df.columns.tolist()
- data_rows = df.values.tolist()
- data_with_header = [header] + data_rows
-
- write_data_to_sheet(
- data_with_header,
- sheet_token=sheet_token,
- sheetid=sheet_id,
- start_col=start_col,
- start_row=start_row,
- grid_width=grid_width,
- grid_height=grid_height,
- border_width=border_width,
- border_color=border_color,
- )
- def to_feishu_incremental(
- res_list: List[Dict],
- sort_field: str = '内容ID',
- sheet_id: str = 'Qn9MAs',
- sheet_token: str = 'Rbsysi6FChzCp7tfv19crkWNnEb',
- unique_field: str = None, # 用于去重的唯一字段,默认使用sort_field
- duplicate_strategy: str = 'skip', # 重复数据处理策略:'skip'跳过, 'delete'删除后插入, 'update'更新
- update_fields: List[str] = None, # 当duplicate_strategy='update'时,指定要更新的字段列表。None表示更新所有字段
- cleanup_duplicates: bool = True, # 是否先清理现有表格中的重复数据
- keep_first: bool = True, # 清理重复数据时保留第一个(True)还是最后一个(False)
- sort_ascending: bool = False, # 排序顺序:True为升序(从小到大),False为降序(从大到小)
- grid_width: int = None,
- grid_height: int = None,
- border_width: int = 3,
- border_color: tuple = (200, 200, 200),
- ) -> None:
- """
- 逐行增量插入数据到飞书表格,按指定字段查找插入位置
-
- Args:
- res_list: 数据列表
- sort_field: 用于排序的字段名,如 '内容ID'
- sheet_id: 表格ID
- sheet_token: 表格token
- unique_field: 用于去重的唯一字段,默认使用sort_field
- duplicate_strategy: 重复数据处理策略
- - 'skip': 跳过重复数据(默认)
- - 'delete': 删除重复数据后插入新数据
- - 'update': 更新重复数据的指定字段
- update_fields: 当duplicate_strategy='update'时,指定要更新的字段列表
- - None: 更新所有字段(除了unique_field)
- - ['字段1', '字段2']: 只更新指定的字段
- cleanup_duplicates: 是否先清理现有表格中的重复数据
- keep_first: 清理重复数据时保留第一个(True)还是最后一个(False)
- sort_ascending: 排序顺序,True为升序(从小到大),False为降序(从大到小),默认False
- grid_width: 拼接图片的列数,如果为None则自动计算
- grid_height: 拼接图片的行数,如果为None则自动计算
- border_width: 边框宽度,像素
- border_color: 边框颜色,RGB元组
- """
- from tqdm import tqdm
- import pandas as pd
- import json
- from typing import List
-
- def truncate_by_bytes(text, max_bytes=450000):
- """按字节长度截断文本"""
- if not text:
- return ""
- text_str = str(text)
- encoded = text_str.encode('utf-8')
- if len(encoded) <= max_bytes:
- return text_str
- # 安全截断,避免截断多字节字符
- truncated = encoded[:max_bytes]
- while len(truncated) > 0:
- try:
- return truncated.decode('utf-8') + "...[已截断]"
- except UnicodeDecodeError:
- truncated = truncated[:-1]
- return ""
-
- # 初始化 API 客户端
- client = Client(LARK_HOST)
- access_token = client.get_tenant_access_token(APP_ID, APP_SECRET)
-
- # 设置去重字段,默认使用排序字段
- if unique_field is None:
- unique_field = sort_field
-
- # 1. 获取工作表基础信息
- print("正在获取工作表信息...")
- sheet_props = client.get_sheet_properties(access_token, sheet_token, sheet_id)
-
- if not sheet_props:
- print("获取工作表信息失败,使用默认范围")
- max_col = 'ZZ'
- max_row = 1000
- else:
- print(f"工作表信息: 行数={sheet_props['row_count']}, 列数={sheet_props['column_count']}")
- max_col = column_id(sheet_props['column_count']) if sheet_props['column_count'] > 0 else 'ZZ'
- max_row = sheet_props['row_count'] if sheet_props['row_count'] > 0 else 1000
-
- # 2. 读取表头(使用精确范围)
- print("正在读取表头...")
- header_range = f"{sheet_id}!A1:{max_col}1" # 表头总是从A列开始读取
- header_data = client.read_range_values(access_token, sheet_token, header_range)
-
- if not header_data or not header_data[0] or all(not cell.strip() for cell in header_data[0] if cell):
- print("表格为空,需要根据数据创建表头")
- # 从第一条数据中提取字段名作为表头
- if not res_list or not res_list[0]:
- print("错误:无法从空数据中创建表头")
- return
-
- # 提取字段名
- headers = list(res_list[0].keys())
- print(f"创建表头: {headers}")
-
- # 写入表头(表头不包含图片,使用普通插入即可)
- header_range = f"{sheet_id}!A1:{column_id(len(headers))}1"
- client.insert_data_at_row(access_token, sheet_token, sheet_id, 1, [headers])
-
- # 表头创建后,从第二行开始插入数据
- print("表头创建完成,开始插入数据...")
- else:
- # 解析现有表头
- headers = [cell.strip() for cell in header_data[0] if cell is not None]
- headers = [h for h in headers if h] # 移除空字段
- print(f"读取到现有表头: {headers}")
-
- # 检查排序字段和去重字段是否存在
- if sort_field not in headers:
- print(f"警告: 排序字段 '{sort_field}' 未在表头中找到。可用字段: {headers}")
- # 如果找不到排序字段,就直接追加到末尾
- # 使用工作表信息中的行数,或从第二行开始(如果刚创建了表头)
- start_row = len(headers) + 1 if 'headers' in locals() else (max_row + 1 if sheet_props else 2)
- to_feishu(res_list, sheet_id, sheet_token, start_row, 1, grid_width, grid_height, border_width, border_color)
- return
-
- if unique_field not in headers:
- print(f"警告: 去重字段 '{unique_field}' 未在表头中找到,将使用排序字段 '{sort_field}' 进行去重")
- unique_field = sort_field
-
- sort_field_index = headers.index(sort_field)
- sort_field_col = column_id(sort_field_index + 1) # 转换为列标识符,如A, B, C...
-
- unique_field_index = headers.index(unique_field)
- unique_field_col = column_id(unique_field_index + 1) # 转换为列标识符,如A, B, C...
-
- # 3. 读取排序字段和去重字段的数据
- print(f"正在读取排序字段 '{sort_field}' 和去重字段 '{unique_field}' 列数据...")
-
- # 读取排序字段数据
- sort_data_range = f"{sheet_id}!{sort_field_col}2:{sort_field_col}{max_row}"
- all_sort_data = client.read_range_values(access_token, sheet_token, sort_data_range)
-
- # 读取去重字段数据(如果与排序字段不同)
- if unique_field != sort_field:
- unique_data_range = f"{sheet_id}!{unique_field_col}2:{unique_field_col}{max_row}"
- all_unique_data = client.read_range_values(access_token, sheet_token, unique_data_range)
- else:
- all_unique_data = all_sort_data
-
- # 先清理空白行(排序字段和去重字段都为空的行)
- print("检查并清理空白行...")
- empty_rows_to_delete = []
-
- if all_unique_data and all_sort_data:
- for i in range(min(len(all_unique_data), len(all_sort_data))):
- unique_row = all_unique_data[i] if i < len(all_unique_data) else None
- sort_row = all_sort_data[i] if i < len(all_sort_data) else None
-
- # 检查去重字段值
- unique_value = ""
- if unique_row and len(unique_row) > 0 and unique_row[0]:
- unique_value = str(unique_row[0]).strip()
-
- # 检查排序字段值
- sort_value = ""
- if sort_row and len(sort_row) > 0 and sort_row[0]:
- sort_value = str(sort_row[0]).strip()
-
- # 如果排序字段和去重字段都为空,标记为空白行
- if not unique_value and not sort_value:
- row_number = i + 2 # +2 因为从第2行开始,且行号从1开始
- empty_rows_to_delete.append(row_number)
- print(f"标记删除空白行: 第{row_number}行")
-
- # 删除空白行
- if empty_rows_to_delete:
- print(f"开始删除 {len(empty_rows_to_delete)} 个空白行...")
- # 按行号倒序删除,避免删除后行号变化的问题
- empty_rows_to_delete.sort(reverse=True)
-
- for row_to_delete in empty_rows_to_delete:
- delete_result = client.delete_single_row(access_token, sheet_token, sheet_id, row_to_delete)
- if delete_result:
- print(f"成功删除空白行: 第{row_to_delete}行")
- else:
- print(f"删除空白行失败: 第{row_to_delete}行")
-
- # 重新读取数据(删除后数据已经改变)
- print("重新读取数据(清理空白行后)...")
- # 重新读取排序字段数据
- sort_data_range = f"{sheet_id}!{sort_field_col}2:{sort_field_col}{max_row}"
- all_sort_data = client.read_range_values(access_token, sheet_token, sort_data_range)
-
- # 重新读取去重字段数据
- if unique_field != sort_field:
- unique_data_range = f"{sheet_id}!{unique_field_col}2:{unique_field_col}{max_row}"
- all_unique_data = client.read_range_values(access_token, sheet_token, unique_data_range)
- else:
- all_unique_data = all_sort_data
-
- # 构建现有数据的去重集合
- duplicate_rows_to_delete = []
-
- if cleanup_duplicates and all_unique_data:
- # 先分析重复数据
- seen_unique_values = {} # 记录已见过的唯一值和对应行号
- actual_data_rows = [] # 记录实际有数据的行号
-
- print(f"开始分析重复数据,总共读取了 {len(all_unique_data)} 行数据")
-
- # 先找出所有有效数据行及其对应的实际行号(必须同时有排序字段和去重字段的值)
- for i in range(min(len(all_unique_data), len(all_sort_data) if all_sort_data else 0)):
- unique_row = all_unique_data[i] if i < len(all_unique_data) else None
- sort_row = all_sort_data[i] if i < len(all_sort_data) else None
-
- # 检查去重字段值
- unique_value = ""
- if unique_row and len(unique_row) > 0 and unique_row[0]:
- unique_value = str(unique_row[0]).strip()
-
- # 检查排序字段值
- sort_value = ""
- if sort_row and len(sort_row) > 0 and sort_row[0]:
- sort_value = str(sort_row[0]).strip()
-
- # 只有当排序字段和去重字段都有值时,才认为是有效数据
- if unique_value and sort_value:
- actual_row_number = i + 2 # +2 因为从第2行开始,且行号从1开始
- actual_data_rows.append((actual_row_number, unique_value, sort_value))
-
- print(f"找到 {len(actual_data_rows)} 行有效数据")
-
- # 分析重复数据
- for actual_row_number, unique_value, sort_value in actual_data_rows:
- if unique_value in seen_unique_values:
- # 发现重复数据
- if keep_first:
- # 保留第一个,删除当前这个
- duplicate_rows_to_delete.append(actual_row_number)
- print(f"标记删除重复行: 第{actual_row_number}行 ({unique_field}={unique_value}, {sort_field}={sort_value})")
- else:
- # 保留最后一个,删除之前的
- previous_row = seen_unique_values[unique_value]
- duplicate_rows_to_delete.append(previous_row)
- print(f"标记删除重复行: 第{previous_row}行 ({unique_field}={unique_value}, {sort_field}={sort_value})")
- seen_unique_values[unique_value] = actual_row_number
- else:
- # 第一次见到这个唯一值
- seen_unique_values[unique_value] = actual_row_number
-
- # 执行清理:删除重复行
- if duplicate_rows_to_delete:
- print(f"开始清理 {len(duplicate_rows_to_delete)} 行重复数据...")
- # 按行号倒序删除,避免删除后行号变化的问题
- duplicate_rows_to_delete.sort(reverse=True)
-
- for row_to_delete in duplicate_rows_to_delete:
- delete_result = client.delete_single_row(access_token, sheet_token, sheet_id, row_to_delete)
- if delete_result:
- print(f"成功删除重复行: 第{row_to_delete}行")
- else:
- print(f"删除重复行失败: 第{row_to_delete}行")
-
- # 重新读取数据(删除后数据已经改变)
- print("重新读取排序和去重字段数据...")
- # 重新读取排序字段数据
- sort_data_range = f"{sheet_id}!{sort_field_col}2:{sort_field_col}{max_row}"
- all_sort_data = client.read_range_values(access_token, sheet_token, sort_data_range)
-
- # 重新读取去重字段数据
- if unique_field != sort_field:
- unique_data_range = f"{sheet_id}!{unique_field_col}2:{unique_field_col}{max_row}"
- all_unique_data = client.read_range_values(access_token, sheet_token, unique_data_range)
- else:
- all_unique_data = all_sort_data
-
- # 构建最终的去重集合(处理清理后的数据,必须同时有排序字段和去重字段的值)
- existing_unique_values = set()
- existing_unique_rows = {} # 用于update策略:{unique_value: row_number}
- if all_unique_data and all_sort_data:
- for i in range(min(len(all_unique_data), len(all_sort_data))):
- unique_row = all_unique_data[i] if i < len(all_unique_data) else None
- sort_row = all_sort_data[i] if i < len(all_sort_data) else None
-
- # 检查去重字段值
- unique_value = ""
- if unique_row and len(unique_row) > 0 and unique_row[0]:
- unique_value = str(unique_row[0]).strip()
-
- # 检查排序字段值
- sort_value = ""
- if sort_row and len(sort_row) > 0 and sort_row[0]:
- sort_value = str(sort_row[0]).strip()
-
- # 只有当排序字段和去重字段都有值时,才添加到去重集合
- if unique_value and sort_value:
- actual_row_number = i + 2 # +2 因为从第2行开始,且行号从1开始
- existing_unique_values.add(unique_value)
- existing_unique_rows[unique_value] = actual_row_number
-
- print(f"现有去重值数量: {len(existing_unique_values)}")
- print(existing_unique_values)
-
- # 获取排序数据用于插入位置计算(基于清理后的最新数据)
- sort_data = []
- if all_sort_data:
- # 同时检查排序字段和去重字段,确保数据完整性
- for i in range(min(len(all_sort_data), len(all_unique_data) if all_unique_data else 0)):
- sort_row = all_sort_data[i] if i < len(all_sort_data) else None
- unique_row = all_unique_data[i] if i < len(all_unique_data) else None
-
- # 检查排序字段值
- sort_value = ""
- if sort_row and len(sort_row) > 0 and sort_row[0]:
- sort_value = str(sort_row[0]).strip()
-
- # 检查去重字段值
- unique_value = ""
- if unique_row and len(unique_row) > 0 and unique_row[0]:
- unique_value = str(unique_row[0]).strip()
-
- # 只有当排序字段和去重字段都有值时,才加入排序数据
- if sort_value and unique_value:
- sort_data.append([sort_value])
-
- if not sort_data:
- print("未读取到排序字段数据,所有新数据将从第二行开始插入")
-
- # 处理新数据
- processed_data = []
- for row in tqdm(res_list, desc="处理数据"):
- if not row:
- continue
- processed_row = {}
- for k, v in row.items():
- if isinstance(v, list):
- if len(v) > 0 and v[0] and str(v[0]).startswith('http'):
- processed_row[k] = truncate_by_bytes(str(v))
- else:
- json_str = json.dumps(v, ensure_ascii=False, indent=1)
- processed_row[k] = truncate_by_bytes(json_str)
- elif isinstance(v, dict):
- json_str = json.dumps(v, ensure_ascii=False, indent=1)
- processed_row[k] = truncate_by_bytes(json_str)
- else:
- processed_row[k] = truncate_by_bytes(v)
- processed_data.append(processed_row)
-
- # 转换为DataFrame以便操作
- df_new = pd.DataFrame(processed_data)
- df_new.fillna('', inplace=True)
-
- # 确保新数据包含所有必要的列
- for header in headers:
- if header not in df_new.columns:
- df_new[header] = ''
-
- # 按表头顺序重新排列列
- df_new = df_new.reindex(columns=headers, fill_value='')
-
- # 预处理:过滤重复数据并确定插入顺序
- print(f"预处理新数据:过滤重复并排序...")
- print(f"传入数据总量: {len(df_new)} 行")
- print(f"现有去重集合大小: {len(existing_unique_values)}")
-
- valid_rows = []
- update_rows = [] # 需要更新的行:[{row_number, values, unique_value}, ...]
- skipped_count = 0
- new_data_duplicates = 0 # 新数据内部重复计数
- updated_count = 0 # 更新计数
-
- for idx, new_row in df_new.iterrows():
- new_row_values = new_row.tolist()
- new_sort_value = str(new_row_values[sort_field_index])
- new_unique_value = str(new_row_values[unique_field_index])
-
- # 检查是否与现有数据重复
- if new_unique_value in existing_unique_values:
- if duplicate_strategy == 'update':
- # 更新策略:记录需要更新的行
- target_row = existing_unique_rows[new_unique_value]
- update_rows.append({
- 'row_number': target_row,
- 'values': new_row_values,
- 'unique_value': new_unique_value
- })
- print(f"标记更新现有数据: 第{target_row}行 {unique_field}={new_unique_value}")
- updated_count += 1
- continue
- elif duplicate_strategy == 'delete':
- # 删除策略:先删除现有行,再插入新数据
- target_row = existing_unique_rows[new_unique_value]
- delete_result = client.delete_single_row(access_token, sheet_token, sheet_id, target_row)
- if delete_result:
- print(f"成功删除重复行: 第{target_row}行 {unique_field}={new_unique_value}")
- # 从去重集合中移除,允许后续插入
- existing_unique_values.remove(new_unique_value)
- # 更新所有行号(删除后后面的行号会前移)
- for key, row_num in existing_unique_rows.items():
- if row_num > target_row:
- existing_unique_rows[key] = row_num - 1
- del existing_unique_rows[new_unique_value]
- else:
- print(f"删除重复行失败: 第{target_row}行 {unique_field}={new_unique_value}")
- skipped_count += 1
- continue
- else: # 'skip' 策略
- print(f"跳过与现有数据重复: {unique_field}={new_unique_value}")
- skipped_count += 1
- continue
-
- # 检查新数据内部是否重复
- already_processed = any(row['unique_value'] == new_unique_value for row in valid_rows)
- if already_processed:
- print(f"跳过新数据内部重复: {unique_field}={new_unique_value}")
- new_data_duplicates += 1
- continue
-
- # 添加到待插入列表
- valid_rows.append({
- 'values': new_row_values,
- 'sort_value': new_sort_value,
- 'unique_value': new_unique_value
- })
-
- print(f"预处理完成:有效数据 {len(valid_rows)} 行,需要更新 {len(update_rows)} 行,跳过与现有重复 {skipped_count} 行,跳过新数据内部重复 {new_data_duplicates} 行")
-
- # 处理更新操作
- if update_rows:
- print(f"开始执行更新操作,共 {len(update_rows)} 行...")
- for update_data in tqdm(update_rows, desc="更新数据"):
- row_number = update_data['row_number']
- new_values = update_data['values']
- unique_value = update_data['unique_value']
-
- # 构建字段更新字典
- if update_fields is None:
- # 更新所有字段,但排除unique_field(避免修改关键字段)
- field_updates = {}
- for i, header in enumerate(headers):
- if header != unique_field: # 不更新去重字段
- field_updates[header] = new_values[i]
- print(f"更新第{row_number}行所有字段(除了{unique_field}): {unique_value}")
- else:
- # 只更新指定字段
- field_updates = {}
- for field_name in update_fields:
- if field_name in headers:
- field_index = headers.index(field_name)
- field_updates[field_name] = new_values[field_index]
- else:
- print(f"警告:字段 '{field_name}' 不存在于表头中,跳过")
- print(f"更新第{row_number}行指定字段 {list(field_updates.keys())}: {unique_value}")
-
- # 执行更新
- if field_updates:
- result = client.update_row_with_specific_fields_and_images(
- access_token, sheet_token, sheet_id, row_number,
- field_updates, headers, True, grid_width, grid_height, border_width, border_color
- )
- if result:
- print(f"✅ 成功更新第{row_number}行")
- else:
- print(f"❌ 更新第{row_number}行失败")
-
- if not valid_rows:
- if update_rows:
- print("所有数据均为更新操作,无新数据需要插入")
- else:
- print("没有新数据需要插入")
- return
-
- # 按排序字段排序新数据(根据sort_ascending参数决定排序方向)
- if sort_ascending:
- # 升序排序:小的值先插入(reverse=False)
- valid_rows.sort(key=lambda x: x['sort_value'], reverse=False)
- print(f"新数据排序完成,将按升序插入")
- else:
- # 降序排序:大的值先插入(reverse=True)
- valid_rows.sort(key=lambda x: x['sort_value'], reverse=True)
- print(f"新数据排序完成,将按降序插入")
-
- # 逐行插入已排序的数据
- for i, row_data in tqdm(enumerate(valid_rows), total=len(valid_rows), desc="插入数据"):
- new_row_values = row_data['values']
- new_sort_value = row_data['sort_value']
- new_unique_value = row_data['unique_value']
-
- # 找到合适的插入位置(根据sort_ascending参数确定排序方向)
- insert_row = len(sort_data) + 2 # 默认插入到末尾
-
- print(f"查找插入位置,新值: {new_sort_value}")
-
- # 找到两个相邻ID之间的正确插入位置
- if sort_ascending:
- # 升序排列:小 → 大,需要找到 prev_value < new_value < current_value 的位置
- for j in range(len(sort_data)):
- current_value = str(sort_data[j][0]) if sort_data[j] and len(sort_data[j]) > 0 else ""
- prev_value = str(sort_data[j-1][0]) if j > 0 and sort_data[j-1] and len(sort_data[j-1]) > 0 else None
-
- # 检查是否应该插入到当前位置
- if prev_value is None:
- # 这是第一个位置,检查是否应该插入到最前面
- if new_sort_value < current_value:
- insert_row = j + 2 # +2 因为表头偏移
- print(f" 插入到最前面第{insert_row}行: 新值{new_sort_value} < 第一个值{current_value}")
- break
- else:
- # 检查是否在两个相邻值之间
- if new_sort_value >= prev_value and new_sort_value < current_value:
- insert_row = j + 2 # +2 因为表头偏移
- print(f" 插入到第{insert_row}行: {prev_value} <= {new_sort_value} < {current_value}")
- break
- elif new_sort_value == current_value:
- # 值相等时插入到相等值之后
- insert_row = j + 3 # +2(表头偏移) +1(插入到此行之后)
- print(f" 插入到第{insert_row}行: 新值{new_sort_value} = 现有值{current_value},插入其后")
- break
-
- # 如果遍历完都没有找到位置,说明新值是最大的,插入到末尾
- if insert_row == len(sort_data) + 2:
- last_value = str(sort_data[-1][0]) if sort_data and sort_data[-1] and len(sort_data[-1]) > 0 else "无"
- print(f" 插入到末尾第{insert_row}行: 新值{new_sort_value} > 最后一个值{last_value}")
- else:
- # 降序排列:大 → 小,需要找到 prev_value > new_value > current_value 的位置
- for j in range(len(sort_data)):
- current_value = str(sort_data[j][0]) if sort_data[j] and len(sort_data[j]) > 0 else ""
- prev_value = str(sort_data[j-1][0]) if j > 0 and sort_data[j-1] and len(sort_data[j-1]) > 0 else None
-
- # 检查是否应该插入到当前位置
- if prev_value is None:
- # 这是第一个位置,检查是否应该插入到最前面
- if new_sort_value > current_value:
- insert_row = j + 2 # +2 因为表头偏移
- print(f" 插入到最前面第{insert_row}行: 新值{new_sort_value} > 第一个值{current_value}")
- break
- else:
- # 检查是否在两个相邻值之间
- if new_sort_value <= prev_value and new_sort_value > current_value:
- insert_row = j + 2 # +2 因为表头偏移
- print(f" 插入到第{insert_row}行: {prev_value} >= {new_sort_value} > {current_value}")
- break
- elif new_sort_value == current_value:
- # 值相等时插入到相等值之后
- insert_row = j + 3 # +2(表头偏移) +1(插入到此行之后)
- print(f" 插入到第{insert_row}行: 新值{new_sort_value} = 现有值{current_value},插入其后")
- break
-
- # 如果遍历完都没有找到位置,说明新值是最小的,插入到末尾
- if insert_row == len(sort_data) + 2:
- last_value = str(sort_data[-1][0]) if sort_data and sort_data[-1] and len(sort_data[-1]) > 0 else "无"
- print(f" 插入到末尾第{insert_row}行: 新值{new_sort_value} < 最后一个值{last_value}")
-
- print(f"[{i+1}/{len(valid_rows)}] 最终插入位置: 第 {insert_row} 行: {sort_field}={new_sort_value}")
-
- # 插入数据到指定行(真正插入新行)
- result = client.insert_row_with_data_at_position(access_token, sheet_token, sheet_id, insert_row, [new_row_values], True, grid_width, grid_height, border_width, border_color)
-
- if result:
- print(f"成功插入数据和图片到第 {insert_row} 行")
- # 更新sort_data:在正确的位置添加新的排序值
- sort_data_index = insert_row - 2 # 转换为sort_data的索引(-2因为表头偏移)
- sort_data.insert(sort_data_index, [new_sort_value])
- # 更新去重集合
- existing_unique_values.add(new_unique_value)
- else:
- print(f"插入数据到第 {insert_row} 行失败")
- if __name__ == "__main__":
- # data = get_test_data()
- # sheet_token = 'IoTOsjZ4khIqlOtTxnec8oTbn7c'
- # sheetid = 'K9c4LG'
- # write_data_to_sheet(data, sheetid=sheetid)
- # is_image_cell_result = is_image_cell('["http://sns-webpic-qc.xhscdn.com/202501021415/1a6e88908930afce92b09206d5a482f8/1040g2sg31b74rf6k7g5g5oo7i8vkgev59lkjet0!nd_whlt34_webp_wm_1","http://sns-webpic-qc.xhscdn.com/202501021415/1a6e88908930afce92b09206d5a482f8/1040g2sg31b74rf6k7g5g5oo7i8vkgev59lkjet0!nd_whlt34_webp_wm_1"]')
- # print(is_image_cell_result)
-
- # 新增函数使用示例
- """
- 示例:使用 to_feishu_incremental 增量插入数据
-
- # 测试数据
- test_data = [
- {
- '内容ID': '1001',
- '标题': '测试标题1',
- '内容': '测试内容1',
- '图片': '["http://example.com/image1.jpg", "http://example.com/image2.jpg"]'
- },
- {
- '内容ID': '1003',
- '标题': '测试标题2',
- '内容': '测试内容2',
- '图片': 'http://example.com/image3.jpg'
- }
- ]
-
- # 调用增量插入函数
- to_feishu_incremental(
- res_list=test_data,
- sort_field='内容ID', # 按此字段排序
- sheet_id='your_sheet_id',
- sheet_token='your_sheet_token',
- unique_field='内容ID', # 去重字段,默认使用sort_field
- duplicate_strategy='update', # 重复处理策略:'skip'跳过, 'delete'删除后插入, 'update'更新指定字段
- update_fields=['标题', '内容', '图片'], # 当strategy='update'时,只更新这些字段
- cleanup_duplicates=True, # 先清理现有表格中的重复数据
- keep_first=True, # 清理时保留第一个重复项
- sort_ascending=False, # 排序顺序:False为降序(大→小),True为升序(小→大)
- grid_width=2, # 图片拼接列数
- grid_height=2, # 图片拼接行数
- )
-
- # 排序方向示例:
-
- # 示例1:按时间戳降序排序(最新的在前面)- 适合新闻、动态等时间敏感内容
- to_feishu_incremental(
- res_list=news_data,
- sort_field='发布时间',
- sort_ascending=False, # 降序,最新时间在前面
- # ... 其他参数
- )
-
- # 示例2:按ID升序排序(从小到大)- 适合有明确编号顺序的内容
- to_feishu_incremental(
- res_list=product_data,
- sort_field='产品ID',
- sort_ascending=True, # 升序,小ID在前面
- # ... 其他参数
- )
-
- # 示例3:按优先级降序排序(高优先级在前面)- 适合任务、问题等需要优先级管理的内容
- to_feishu_incremental(
- res_list=task_data,
- sort_field='优先级',
- sort_ascending=False, # 降序,高优先级在前面
- # ... 其他参数
- )
-
- 功能说明:
- 1. **智能表头处理**:
- - 如果表格为空,自动从数据中提取字段名创建表头
- - 如果表格已有数据,读取现有表头结构
- 2. **空白行清理**:
- - 自动检测并删除排序字段和去重字段都为空的空白行
- - 确保数据的连续性和逻辑一致性
- 3. **重复数据清理**:
- - cleanup_duplicates=True: 先清理现有表格中的重复数据
- - keep_first: 保留第一个或最后一个重复项
- 4. **智能去重检查**:
- - 基于 unique_field 字段检查数据是否已存在
- - 预处理阶段过滤重复数据,避免插入过程中的状态变化问题
- 5. **排序插入**:根据指定的 sort_field 字段和 sort_ascending 参数查找插入位置
- - sort_ascending=False(默认):降序排序,较大的值插入到较前面的位置
- - sort_ascending=True:升序排序,较小的值插入到较前面的位置
- 6. **逐行数据插入**:按排序顺序逐行插入数据,保持表格整体有序
- 7. **完整图片支持**:自动处理图片写入,支持单张图片和图片列表
- 8. **图片拼接功能**:支持多图拼接,可设置拼接的行列数和边框样式
-
- 适用场景:
- - ✅ 空表格:自动创建表头并插入数据
- - ✅ 已有重复数据的表格:先清理重复,再智能插入
- - ✅ 增量数据更新:逐条插入,保持排序,自动去重
- - ✅ 重复运行安全:不会插入重复数据
- - ✅ 数据清理:一键清理现有重复数据
- - ✅ 灵活排序:支持升序和降序两种排序方式
- """
|