xhs_factory/main.py
zhoujie 88dfc09e2a feat(config): 新增多 LLM 提供商支持与账号数据看板
- 新增多 LLM 提供商管理功能,支持添加、删除和切换不同 API 提供商
- 新增账号数据看板,支持可视化展示用户核心指标和笔记点赞排行
- 新增自动获取并保存 xsec_token 功能,提升登录体验
- 新增退出登录功能,支持重新扫码登录
- 新增用户 ID 验证和保存功能,确保账号信息准确性

♻️ refactor(config): 重构配置管理和 LLM 服务调用

- 重构配置管理器,支持多 LLM 提供商配置和兼容旧配置自动迁移
- 重构 LLM 服务调用逻辑,统一从配置管理器获取激活的提供商信息
- 重构 MCP 客户端,增加单例模式和自动重试机制,提升连接稳定性
- 重构数据看板页面,优化用户数据获取和可视化展示逻辑

🐛 fix(mcp): 修复 MCP 连接和登录状态检查问题

- 修复 MCP 客户端初始化问题,避免重复握手
- 修复登录状态检查逻辑,自动获取并保存 xsec_token
- 修复获取我的笔记列表功能,支持通过用户 ID 准确获取
- 修复 JSON-RPC 通知格式问题,确保与 MCP 服务兼容

📝 docs(config): 更新配置文件和代码注释

- 更新配置文件结构,新增多 LLM 提供商配置字段
- 更新代码注释,明确各功能模块的作用和调用方式
- 更新用户界面提示信息,提供更清晰的操作指引
2026-02-08 21:52:29 +08:00

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"""
小红书 AI 爆文生产工坊 V2.0
全自动工作台:灵感 -> 文案 -> 绘图 -> 发布 -> 运营
"""
import gradio as gr
import os
import re
import json
import time
import logging
import platform
import subprocess
from PIL import Image
import matplotlib
import matplotlib.pyplot as plt
from config_manager import ConfigManager, OUTPUT_DIR
from llm_service import LLMService
from sd_service import SDService, DEFAULT_NEGATIVE
from mcp_client import MCPClient, get_mcp_client
# ================= matplotlib 中文字体配置 =================
_font_candidates = ["Microsoft YaHei", "SimHei", "PingFang SC", "WenQuanYi Micro Hei"]
for _fn in _font_candidates:
try:
matplotlib.font_manager.findfont(_fn, fallback_to_default=False)
plt.rcParams["font.sans-serif"] = [_fn]
break
except Exception:
continue
plt.rcParams["axes.unicode_minus"] = False
# ================= 日志配置 =================
logging.basicConfig(
level=logging.INFO,
format="%(asctime)s [%(levelname)s] %(name)s: %(message)s",
handlers=[
logging.StreamHandler(),
logging.FileHandler("autobot.log", encoding="utf-8"),
],
)
logger = logging.getLogger("autobot")
# 强制不走代理连接本地服务
os.environ["NO_PROXY"] = "127.0.0.1,localhost"
# ================= 全局服务初始化 =================
cfg = ConfigManager()
cfg.ensure_workspace()
mcp = get_mcp_client(cfg.get("mcp_url", "http://localhost:18060/mcp"))
# ==================================================
# LLM 多提供商管理
# ==================================================
def _get_llm_config() -> tuple[str, str, str]:
"""获取当前激活 LLM 的 (api_key, base_url, model)"""
p = cfg.get_active_llm()
if p:
return p["api_key"], p["base_url"], cfg.get("model", "")
return "", "", ""
def connect_llm(provider_name):
"""连接选中的 LLM 提供商并获取模型列表"""
if not provider_name:
return gr.update(choices=[], value=None), "⚠️ 请先选择或添加 LLM 提供商"
cfg.set_active_llm(provider_name)
p = cfg.get_active_llm()
if not p:
return gr.update(choices=[], value=None), "❌ 未找到该提供商配置"
try:
svc = LLMService(p["api_key"], p["base_url"])
models = svc.get_models()
if models:
return (
gr.update(choices=models, value=models[0]),
f"✅ 已连接「{provider_name}」,加载 {len(models)} 个模型",
)
else:
# API 无法获取模型列表,保留手动输入
current_model = cfg.get("model", "")
return (
gr.update(choices=[current_model] if current_model else [], value=current_model or None),
f"⚠️ 已连接「{provider_name}」,但未获取到模型列表,请手动输入模型名",
)
except Exception as e:
logger.error("LLM 连接失败: %s", e)
current_model = cfg.get("model", "")
return (
gr.update(choices=[current_model] if current_model else [], value=current_model or None),
f"❌ 连接「{provider_name}」失败: {e}",
)
def add_llm_provider(name, api_key, base_url):
"""添加新的 LLM 提供商"""
msg = cfg.add_llm_provider(name, api_key, base_url)
names = cfg.get_llm_provider_names()
active = cfg.get("active_llm", "")
return (
gr.update(choices=names, value=active),
msg,
)
def remove_llm_provider(provider_name):
"""删除 LLM 提供商"""
if not provider_name:
return gr.update(choices=cfg.get_llm_provider_names(), value=cfg.get("active_llm", "")), "⚠️ 请先选择要删除的提供商"
msg = cfg.remove_llm_provider(provider_name)
names = cfg.get_llm_provider_names()
active = cfg.get("active_llm", "")
return (
gr.update(choices=names, value=active),
msg,
)
def on_provider_selected(provider_name):
"""切换 LLM 提供商时更新显示信息"""
if not provider_name:
return "未选择提供商"
for p in cfg.get_llm_providers():
if p["name"] == provider_name:
cfg.set_active_llm(provider_name)
masked_key = p["api_key"][:8] + "***" if len(p["api_key"]) > 8 else "***"
return f"**{provider_name}** \nAPI Key: `{masked_key}` \nBase URL: `{p['base_url']}`"
return "未找到该提供商"
# ==================================================
# Tab 1: 内容创作
# ==================================================
def connect_sd(sd_url):
"""连接 SD 并获取模型列表"""
try:
svc = SDService(sd_url)
ok, msg = svc.check_connection()
if ok:
models = svc.get_models()
cfg.set("sd_url", sd_url)
return gr.update(choices=models, value=models[0] if models else None), f"{msg}"
return gr.update(choices=[]), f"{msg}"
except Exception as e:
logger.error("SD 连接失败: %s", e)
return gr.update(choices=[]), f"❌ SD 连接失败: {e}"
def check_mcp_status(mcp_url):
"""检查 MCP 连接状态"""
try:
client = get_mcp_client(mcp_url)
ok, msg = client.check_connection()
if ok:
cfg.set("mcp_url", mcp_url)
return f"✅ MCP 服务正常 - {msg}"
return f"{msg}"
except Exception as e:
return f"❌ MCP 连接失败: {e}"
# ==================================================
# 小红书账号登录
# ==================================================
def get_login_qrcode(mcp_url):
"""获取小红书登录二维码"""
try:
client = get_mcp_client(mcp_url)
result = client.get_login_qrcode()
if "error" in result:
return None, f"❌ 获取二维码失败: {result['error']}"
qr_image = result.get("qr_image")
msg = result.get("text", "")
if qr_image:
return qr_image, f"✅ 二维码已生成,请用小红书 App 扫码\n{msg}"
return None, f"⚠️ 未获取到二维码图片MCP 返回:\n{msg}"
except Exception as e:
logger.error("获取登录二维码失败: %s", e)
return None, f"❌ 获取二维码失败: {e}"
def logout_xhs(mcp_url):
"""退出登录:清除 cookies 并重置本地 token"""
try:
client = get_mcp_client(mcp_url)
result = client.delete_cookies()
if "error" in result:
return f"❌ 退出失败: {result['error']}"
cfg.set("xsec_token", "")
client._reset()
return "✅ 已退出登录,可以重新扫码登录"
except Exception as e:
logger.error("退出登录失败: %s", e)
return f"❌ 退出失败: {e}"
def _auto_fetch_xsec_token(mcp_url) -> str:
"""从推荐列表自动获取一个有效的 xsec_token"""
try:
client = get_mcp_client(mcp_url)
entries = client.list_feeds_parsed()
for e in entries:
token = e.get("xsec_token", "")
if token:
return token
except Exception as e:
logger.warning("自动获取 xsec_token 失败: %s", e)
return ""
def check_login(mcp_url):
"""检查登录状态,登录成功后自动获取 xsec_token 并保存"""
try:
client = get_mcp_client(mcp_url)
result = client.check_login_status()
if "error" in result:
return f"{result['error']}", gr.update(), gr.update()
text = result.get("text", "")
if "未登录" in text:
return f"🔴 {text}", gr.update(), gr.update()
# 登录成功 → 自动获取 xsec_token
token = _auto_fetch_xsec_token(mcp_url)
if token:
cfg.set("xsec_token", token)
logger.info("自动获取 xsec_token 成功")
return (
f"🟢 {text}\n\n✅ xsec_token 已自动获取并保存",
gr.update(value=cfg.get("my_user_id", "")),
gr.update(value=token),
)
return f"🟢 {text}\n\n⚠️ 自动获取 xsec_token 失败,请手动刷新", gr.update(), gr.update()
except Exception as e:
return f"❌ 检查登录状态失败: {e}", gr.update(), gr.update()
def save_my_user_id(user_id_input):
"""保存用户 ID (验证 24 位十六进制格式)"""
uid = (user_id_input or "").strip()
if not uid:
cfg.set("my_user_id", "")
return "⚠️ 已清除用户 ID"
if not re.match(r'^[0-9a-fA-F]{24}$', uid):
return (
"❌ 格式错误!用户 ID 应为 24 位十六进制字符串\n"
f"你输入的: `{uid}` ({len(uid)} 位)\n\n"
"💡 如果你输入的是小红书号 (纯数字如 18688457507),那不是 userId。"
)
cfg.set("my_user_id", uid)
return f"✅ 用户 ID 已保存: `{uid}`"
def generate_copy(model, topic, style):
"""生成文案"""
api_key, base_url, _ = _get_llm_config()
if not api_key:
return "", "", "", "", "❌ 请先配置并连接 LLM 提供商"
try:
svc = LLMService(api_key, base_url, model)
data = svc.generate_copy(topic, style)
cfg.set("model", model)
tags = data.get("tags", [])
return (
data.get("title", ""),
data.get("content", ""),
data.get("sd_prompt", ""),
", ".join(tags) if tags else "",
"✅ 文案生成完毕",
)
except Exception as e:
logger.error("文案生成失败: %s", e)
return "", "", "", "", f"❌ 生成失败: {e}"
def generate_images(sd_url, prompt, neg_prompt, model, steps, cfg_scale):
"""生成图片"""
if not model:
return None, [], "❌ 未选择 SD 模型"
try:
svc = SDService(sd_url)
images = svc.txt2img(
prompt=prompt,
negative_prompt=neg_prompt,
model=model,
steps=int(steps),
cfg_scale=float(cfg_scale),
)
return images, images, f"✅ 生成 {len(images)} 张图片"
except Exception as e:
logger.error("图片生成失败: %s", e)
return None, [], f"❌ 绘图失败: {e}"
def one_click_export(title, content, images):
"""导出文案和图片到本地"""
if not title:
return "❌ 无法导出:没有标题"
safe_title = re.sub(r'[\\/*?:"<>|]', "", title)[:20]
folder_name = f"{int(time.time())}_{safe_title}"
folder_path = os.path.join(OUTPUT_DIR, folder_name)
os.makedirs(folder_path, exist_ok=True)
with open(os.path.join(folder_path, "文案.txt"), "w", encoding="utf-8") as f:
f.write(f"{title}\n\n{content}")
saved_paths = []
if images:
for idx, img in enumerate(images):
path = os.path.join(folder_path, f"{idx+1}.png")
if isinstance(img, Image.Image):
img.save(path)
saved_paths.append(os.path.abspath(path))
# 尝试打开文件夹
try:
abs_path = os.path.abspath(folder_path)
if platform.system() == "Windows":
os.startfile(abs_path)
elif platform.system() == "Darwin":
subprocess.call(["open", abs_path])
else:
subprocess.call(["xdg-open", abs_path])
except Exception:
pass
return f"✅ 已导出至: {folder_path} ({len(saved_paths)} 张图片)"
def publish_to_xhs(title, content, tags_str, images, local_images, mcp_url, schedule_time):
"""通过 MCP 发布到小红书"""
if not title:
return "❌ 缺少标题"
client = get_mcp_client(mcp_url)
# 收集图片路径
image_paths = []
# 先保存 AI 生成的图片到临时目录
if images:
temp_dir = os.path.join(OUTPUT_DIR, "_temp_publish")
os.makedirs(temp_dir, exist_ok=True)
for idx, img in enumerate(images):
if isinstance(img, Image.Image):
path = os.path.abspath(os.path.join(temp_dir, f"ai_{idx}.png"))
img.save(path)
image_paths.append(path)
# 添加本地上传的图片
if local_images:
for img_file in local_images:
# Gradio File 组件返回的是 NamedString 或 tempfile path
img_path = img_file.name if hasattr(img_file, 'name') else str(img_file)
if os.path.exists(img_path):
image_paths.append(os.path.abspath(img_path))
if not image_paths:
return "❌ 至少需要 1 张图片才能发布"
# 解析标签
tags = [t.strip().lstrip("#") for t in tags_str.split(",") if t.strip()] if tags_str else None
# 定时发布
schedule = schedule_time if schedule_time and schedule_time.strip() else None
try:
result = client.publish_content(
title=title,
content=content,
images=image_paths,
tags=tags,
schedule_at=schedule,
)
if "error" in result:
return f"❌ 发布失败: {result['error']}"
return f"✅ 发布成功!\n{result.get('text', '')}"
except Exception as e:
logger.error("发布失败: %s", e)
return f"❌ 发布异常: {e}"
# ==================================================
# Tab 2: 热点探测
# ==================================================
def search_hotspots(keyword, sort_by, mcp_url):
"""搜索小红书热门内容"""
if not keyword:
return "❌ 请输入搜索关键词", ""
try:
client = get_mcp_client(mcp_url)
result = client.search_feeds(keyword, sort_by=sort_by)
if "error" in result:
return f"❌ 搜索失败: {result['error']}", ""
text = result.get("text", "无结果")
return "✅ 搜索完成", text
except Exception as e:
logger.error("热点搜索失败: %s", e)
return f"❌ 搜索失败: {e}", ""
def analyze_and_suggest(model, keyword, search_result):
"""AI 分析热点并给出建议"""
if not search_result:
return "❌ 请先搜索", "", ""
api_key, base_url, _ = _get_llm_config()
if not api_key:
return "❌ 请先配置 LLM 提供商", "", ""
try:
svc = LLMService(api_key, base_url, model)
analysis = svc.analyze_hotspots(search_result)
topics = "\n".join(f"{t}" for t in analysis.get("hot_topics", []))
patterns = "\n".join(f"{p}" for p in analysis.get("title_patterns", []))
suggestions = "\n".join(
f"**{s['topic']}** - {s['reason']}"
for s in analysis.get("suggestions", [])
)
structure = analysis.get("content_structure", "")
summary = (
f"## 🔥 热门选题\n{topics}\n\n"
f"## 📝 标题套路\n{patterns}\n\n"
f"## 📐 内容结构\n{structure}\n\n"
f"## 💡 推荐选题\n{suggestions}"
)
return "✅ 分析完成", summary, keyword
except Exception as e:
logger.error("热点分析失败: %s", e)
return f"❌ 分析失败: {e}", "", ""
def generate_from_hotspot(model, topic_from_hotspot, style, search_result):
"""基于热点分析生成文案"""
if not topic_from_hotspot:
return "", "", "", "", "❌ 请先选择或输入选题"
api_key, base_url, _ = _get_llm_config()
if not api_key:
return "", "", "", "", "❌ 请先配置 LLM 提供商"
try:
svc = LLMService(api_key, base_url, model)
data = svc.generate_copy_with_reference(
topic=topic_from_hotspot,
style=style,
reference_notes=search_result[:2000], # 截断防止超长
)
tags = data.get("tags", [])
return (
data.get("title", ""),
data.get("content", ""),
data.get("sd_prompt", ""),
", ".join(tags),
"✅ 基于热点的文案已生成",
)
except Exception as e:
return "", "", "", "", f"❌ 生成失败: {e}"
# ==================================================
# Tab 3: 评论管家
# ==================================================
# ---- 共用: 笔记列表缓存 ----
# 主动评论缓存
_cached_proactive_entries: list[dict] = []
# 我的笔记评论缓存
_cached_my_note_entries: list[dict] = []
def _fetch_and_cache(keyword, mcp_url, cache_name="proactive"):
"""通用: 获取笔记列表并缓存"""
global _cached_proactive_entries, _cached_my_note_entries
try:
client = get_mcp_client(mcp_url)
if keyword and keyword.strip():
entries = client.search_feeds_parsed(keyword.strip())
src = f"搜索「{keyword.strip()}"
else:
entries = client.list_feeds_parsed()
src = "首页推荐"
if cache_name == "proactive":
_cached_proactive_entries = entries
else:
_cached_my_note_entries = entries
if not entries:
return gr.update(choices=[], value=None), f"⚠️ 从{src}未找到笔记"
choices = []
for i, e in enumerate(entries):
title_short = (e["title"] or "无标题")[:28]
label = f"[{i+1}] {title_short} | @{e['author'] or '未知'} | ❤ {e['likes']}"
choices.append(label)
return (
gr.update(choices=choices, value=choices[0]),
f"✅ 从{src}获取 {len(entries)} 条笔记",
)
except Exception as e:
if cache_name == "proactive":
_cached_proactive_entries = []
else:
_cached_my_note_entries = []
return gr.update(choices=[], value=None), f"{e}"
def _pick_from_cache(selected, cache_name="proactive"):
"""通用: 从缓存中提取选中条目的 feed_id / xsec_token / title"""
cache = _cached_proactive_entries if cache_name == "proactive" else _cached_my_note_entries
if not selected or not cache:
return "", "", ""
try:
# 尝试从 [N] 前缀提取序号
idx = int(selected.split("]")[0].replace("[", "")) - 1
if 0 <= idx < len(cache):
e = cache[idx]
return e["feed_id"], e["xsec_token"], e.get("title", "")
except (ValueError, IndexError):
pass
# 回退: 模糊匹配标题
for e in cache:
if e.get("title", "")[:15] in selected:
return e["feed_id"], e["xsec_token"], e.get("title", "")
return "", "", ""
# ---- 模块 A: 主动评论他人 ----
def fetch_proactive_notes(keyword, mcp_url):
return _fetch_and_cache(keyword, mcp_url, "proactive")
def on_proactive_note_selected(selected):
return _pick_from_cache(selected, "proactive")
def load_note_for_comment(feed_id, xsec_token, mcp_url):
"""加载目标笔记详情 (标题+正文+已有评论), 用于 AI 分析"""
if not feed_id or not xsec_token:
return "❌ 请先选择笔记", "", "", ""
try:
client = get_mcp_client(mcp_url)
result = client.get_feed_detail(feed_id, xsec_token, load_all_comments=True)
if "error" in result:
return f"{result['error']}", "", "", ""
full_text = result.get("text", "")
# 尝试分离正文和评论
if "评论" in full_text:
parts = full_text.split("评论", 1)
content_part = parts[0].strip()
comments_part = "评论" + parts[1] if len(parts) > 1 else ""
else:
content_part = full_text[:500]
comments_part = ""
return "✅ 笔记内容已加载", content_part[:800], comments_part[:1500], full_text
except Exception as e:
return f"{e}", "", "", ""
def ai_generate_comment(model, persona,
post_title, post_content, existing_comments):
"""AI 生成主动评论"""
api_key, base_url, _ = _get_llm_config()
if not api_key:
return "⚠️ 请先配置 LLM 提供商", "❌ LLM 未配置"
if not model:
return "⚠️ 请先连接 LLM", "❌ 未选模型"
if not post_title and not post_content:
return "⚠️ 请先加载笔记内容", "❌ 无笔记内容"
try:
svc = LLMService(api_key, base_url, model)
comment = svc.generate_proactive_comment(
persona, post_title, post_content[:600], existing_comments[:800]
)
return comment, "✅ 评论已生成"
except Exception as e:
logger.error(f"AI 评论生成失败: {e}")
return f"生成失败: {e}", f"{e}"
def send_comment(feed_id, xsec_token, comment_content, mcp_url):
"""发送评论到别人的笔记"""
if not all([feed_id, xsec_token, comment_content]):
return "❌ 缺少必要参数 (笔记ID / token / 评论内容)"
try:
client = get_mcp_client(mcp_url)
result = client.post_comment(feed_id, xsec_token, comment_content)
if "error" in result:
return f"{result['error']}"
return "✅ 评论已发送!"
except Exception as e:
return f"{e}"
# ---- 模块 B: 回复我的笔记评论 ----
def fetch_my_notes(mcp_url):
"""通过已保存的 userId 获取我的笔记列表"""
global _cached_my_note_entries
my_uid = cfg.get("my_user_id", "")
xsec = cfg.get("xsec_token", "")
if not my_uid:
return (
gr.update(choices=[], value=None),
"❌ 未配置用户 ID请先到「账号登录」页填写并保存",
)
if not xsec:
return (
gr.update(choices=[], value=None),
"❌ 未获取 xsec_token请先登录",
)
try:
client = get_mcp_client(mcp_url)
result = client.get_user_profile(my_uid, xsec)
if "error" in result:
return gr.update(choices=[], value=None), f"{result['error']}"
# 从 raw 中解析 feeds
raw = result.get("raw", {})
text = result.get("text", "")
data = None
if raw and isinstance(raw, dict):
for item in raw.get("content", []):
if item.get("type") == "text":
try:
data = json.loads(item["text"])
except (json.JSONDecodeError, KeyError):
pass
if not data:
try:
data = json.loads(text)
except (json.JSONDecodeError, TypeError):
pass
feeds = (data or {}).get("feeds") or []
if not feeds:
return (
gr.update(choices=[], value=None),
"⚠️ 未找到你的笔记,可能账号还没有发布内容",
)
entries = []
for f in feeds:
nc = f.get("noteCard") or {}
user = nc.get("user") or {}
interact = nc.get("interactInfo") or {}
entries.append({
"feed_id": f.get("id", ""),
"xsec_token": f.get("xsecToken", ""),
"title": nc.get("displayTitle", "未知标题"),
"author": user.get("nickname", user.get("nickName", "")),
"user_id": user.get("userId", ""),
"likes": interact.get("likedCount", "0"),
"type": nc.get("type", ""),
})
_cached_my_note_entries = entries
choices = [
f"[{i+1}] {e['title'][:20]} | {e['type']} | ❤{e['likes']}"
for i, e in enumerate(entries)
]
return (
gr.update(choices=choices, value=choices[0] if choices else None),
f"✅ 找到 {len(entries)} 篇笔记",
)
except Exception as e:
return gr.update(choices=[], value=None), f"{e}"
def on_my_note_selected(selected):
return _pick_from_cache(selected, "my_notes")
def fetch_my_note_comments(feed_id, xsec_token, mcp_url):
"""获取我的笔记的评论列表"""
if not feed_id or not xsec_token:
return "❌ 请先选择笔记", ""
try:
client = get_mcp_client(mcp_url)
result = client.get_feed_detail(feed_id, xsec_token, load_all_comments=True)
if "error" in result:
return f"{result['error']}", ""
return "✅ 评论加载完成", result.get("text", "暂无评论")
except Exception as e:
return f"{e}", ""
def ai_reply_comment(model, persona, post_title, comment_text):
"""AI 生成评论回复"""
api_key, base_url, _ = _get_llm_config()
if not api_key:
return "⚠️ 请先配置 LLM 提供商", "❌ LLM 未配置"
if not model:
return "⚠️ 请先连接 LLM 并选择模型", "❌ 未选择模型"
if not comment_text:
return "请输入需要回复的评论内容", "⚠️ 请输入评论"
try:
svc = LLMService(api_key, base_url, model)
reply = svc.generate_reply(persona, post_title, comment_text)
return reply, "✅ 回复已生成"
except Exception as e:
logger.error(f"AI 回复生成失败: {e}")
return f"生成失败: {e}", f"{e}"
def send_reply(feed_id, xsec_token, reply_content, mcp_url):
"""发送评论回复"""
if not all([feed_id, xsec_token, reply_content]):
return "❌ 缺少必要参数"
try:
client = get_mcp_client(mcp_url)
result = client.post_comment(feed_id, xsec_token, reply_content)
if "error" in result:
return f"❌ 回复失败: {result['error']}"
return "✅ 回复已发送"
except Exception as e:
return f"❌ 发送失败: {e}"
# ==================================================
# Tab 4: 数据看板 (我的账号)
# ==================================================
def _parse_profile_json(text: str):
"""尝试从文本中解析用户 profile JSON"""
if not text:
return None
# 直接 JSON
try:
return json.loads(text)
except (json.JSONDecodeError, TypeError):
pass
# 可能包含 Markdown 代码块
m = re.search(r'```(?:json)?\s*\n([\s\S]+?)\n```', text)
if m:
try:
return json.loads(m.group(1))
except (json.JSONDecodeError, TypeError):
pass
return None
def _parse_count(val) -> float:
"""解析数字字符串, 支持 '1.2万' 格式"""
if isinstance(val, (int, float)):
return float(val)
s = str(val).strip()
if "" in s:
try:
return float(s.replace("", "")) * 10000
except ValueError:
pass
try:
return float(s)
except ValueError:
return 0.0
def fetch_my_profile(user_id, xsec_token, mcp_url):
"""获取我的账号数据, 返回结构化信息 + 可视化图表"""
if not user_id or not xsec_token:
return "❌ 请填写你的用户 ID 和 xsec_token", "", None, None, None
try:
client = get_mcp_client(mcp_url)
result = client.get_user_profile(user_id, xsec_token)
if "error" in result:
return f"{result['error']}", "", None, None, None
raw = result.get("raw", {})
text = result.get("text", "")
# 尝试从 raw 或 text 解析 JSON
data = None
if raw and isinstance(raw, dict):
content_list = raw.get("content", [])
for item in content_list:
if item.get("type") == "text":
data = _parse_profile_json(item.get("text", ""))
if data:
break
if not data:
data = _parse_profile_json(text)
if not data:
return "✅ 数据加载完成 (纯文本)", text, None, None, None
# ---- 提取基本信息 (注意 MCP 对新号可能返回 null) ----
basic = data.get("userBasicInfo") or {}
interactions = data.get("interactions") or []
feeds = data.get("feeds") or []
gender_map = {0: "未知", 1: "", 2: ""}
info_lines = [
f"## 👤 {basic.get('nickname', '未知')}",
f"- **小红书号**: {basic.get('redId', '-')}",
f"- **性别**: {gender_map.get(basic.get('gender', 0), '未知')}",
f"- **IP 属地**: {basic.get('ipLocation', '-')}",
f"- **简介**: {basic.get('desc', '-')}",
"",
"### 📊 核心数据",
]
for inter in interactions:
info_lines.append(f"- **{inter.get('name', '')}**: {inter.get('count', '0')}")
info_lines.append(f"\n### 📝 展示笔记: {len(feeds)}")
profile_md = "\n".join(info_lines)
# ---- 互动数据柱状图 ----
fig_interact = None
if interactions:
inter_data = {i["name"]: _parse_count(i["count"]) for i in interactions}
fig_interact, ax = plt.subplots(figsize=(4, 3), dpi=100)
labels = list(inter_data.keys())
values = list(inter_data.values())
colors = ["#FF6B6B", "#4ECDC4", "#45B7D1"][:len(labels)]
ax.bar(labels, values, color=colors, edgecolor="white", linewidth=0.5)
ax.set_title("账号核心指标", fontsize=12, fontweight="bold")
for i, v in enumerate(values):
display = f"{v/10000:.1f}" if v >= 10000 else str(int(v))
ax.text(i, v + max(values) * 0.02, display, ha="center", fontsize=9)
ax.set_ylabel("")
ax.spines["top"].set_visible(False)
ax.spines["right"].set_visible(False)
fig_interact.tight_layout()
# ---- 笔记点赞分布图 ----
fig_notes = None
if feeds:
titles, likes = [], []
for f in feeds[:15]:
nc = f.get("noteCard") or {}
t = (nc.get("displayTitle", "") or "无标题")[:12]
lk = _parse_count((nc.get("interactInfo") or {}).get("likedCount", "0"))
titles.append(t)
likes.append(lk)
fig_notes, ax2 = plt.subplots(figsize=(7, 3.5), dpi=100)
ax2.barh(range(len(titles)), likes, color="#FF6B6B", edgecolor="white")
ax2.set_yticks(range(len(titles)))
ax2.set_yticklabels(titles, fontsize=8)
ax2.set_title(f"笔记点赞排行 (Top {len(titles)})", fontsize=12, fontweight="bold")
ax2.invert_yaxis()
for i, v in enumerate(likes):
display = f"{v/10000:.1f}" if v >= 10000 else str(int(v))
ax2.text(v + max(likes) * 0.01 if max(likes) > 0 else 0, i, display, va="center", fontsize=8)
ax2.spines["top"].set_visible(False)
ax2.spines["right"].set_visible(False)
fig_notes.tight_layout()
# ---- 笔记详情表格 (Markdown) ----
table_lines = [
"### 📋 笔记数据明细",
"| # | 标题 | 类型 | ❤ 点赞 |",
"|---|------|------|--------|",
]
for i, f in enumerate(feeds):
nc = f.get("noteCard") or {}
t = (nc.get("displayTitle", "") or "无标题")[:25]
tp = "📹 视频" if nc.get("type") == "video" else "📷 图文"
lk = (nc.get("interactInfo") or {}).get("likedCount", "0")
table_lines.append(f"| {i+1} | {t} | {tp} | {lk} |")
notes_table = "\n".join(table_lines)
return "✅ 数据加载完成", profile_md, fig_interact, fig_notes, notes_table
except Exception as e:
logger.error(f"获取我的数据失败: {e}")
return f"{e}", "", None, None, None
# ==================================================
# UI 构建
# ==================================================
config = cfg.all
with gr.Blocks(
title="小红书 AI 爆文工坊 V2.0",
theme=gr.themes.Soft(),
css="""
.status-ok { color: #16a34a; font-weight: bold; }
.status-err { color: #dc2626; font-weight: bold; }
footer { display: none !important; }
""",
) as app:
gr.Markdown(
"# 🍒 小红书 AI 爆文生产工坊 V2.0\n"
"> 灵感 → 文案 → 绘图 → 发布 → 运营,一站式全闭环"
)
# 全局状态
state_images = gr.State([])
state_search_result = gr.State("")
# ============ 全局设置栏 ============
with gr.Accordion("⚙️ 全局设置 (自动保存)", open=False):
gr.Markdown("#### 🤖 LLM 提供商 (支持所有 OpenAI 兼容接口)")
with gr.Row():
llm_provider = gr.Dropdown(
label="选择 LLM 提供商",
choices=cfg.get_llm_provider_names(),
value=cfg.get("active_llm", ""),
interactive=True, scale=2,
)
btn_connect_llm = gr.Button("🔗 连接 LLM", size="sm", scale=1)
with gr.Row():
llm_model = gr.Dropdown(
label="LLM 模型", value=config["model"],
allow_custom_value=True, interactive=True, scale=2,
)
llm_provider_info = gr.Markdown(
value="*选择提供商后显示详情*",
)
with gr.Accordion(" 添加 / 管理 LLM 提供商", open=False):
with gr.Row():
new_provider_name = gr.Textbox(
label="名称", placeholder="如: DeepSeek / GPT-4o / 通义千问",
scale=1,
)
new_provider_key = gr.Textbox(
label="API Key", type="password", scale=2,
)
new_provider_url = gr.Textbox(
label="Base URL", placeholder="https://api.openai.com/v1",
value="https://api.openai.com/v1", scale=2,
)
with gr.Row():
btn_add_provider = gr.Button("✅ 添加提供商", variant="primary", size="sm")
btn_del_provider = gr.Button("🗑️ 删除当前提供商", variant="stop", size="sm")
provider_mgmt_status = gr.Markdown("")
gr.Markdown("---")
with gr.Row():
mcp_url = gr.Textbox(
label="MCP Server URL", value=config["mcp_url"], scale=2,
)
sd_url = gr.Textbox(
label="SD WebUI URL", value=config["sd_url"], scale=2,
)
persona = gr.Textbox(
label="博主人设(评论回复用)",
value=config["persona"], scale=3,
)
with gr.Row():
btn_connect_sd = gr.Button("🎨 连接 SD", size="sm")
btn_check_mcp = gr.Button("📡 检查 MCP", size="sm")
with gr.Row():
sd_model = gr.Dropdown(
label="SD 模型", allow_custom_value=True,
interactive=True, scale=2,
)
status_bar = gr.Markdown("🔄 等待连接...")
# ============ Tab 页面 ============
with gr.Tabs():
# -------- Tab 1: 内容创作 --------
with gr.Tab("✨ 内容创作"):
with gr.Row():
# 左栏:输入
with gr.Column(scale=1):
gr.Markdown("### 💡 构思")
topic = gr.Textbox(label="笔记主题", placeholder="例如:优衣库早春穿搭")
style = gr.Dropdown(
["好物种草", "干货教程", "情绪共鸣", "生活Vlog", "测评避雷", "知识科普"],
label="风格", value="好物种草",
)
btn_gen_copy = gr.Button("✨ 第一步:生成文案", variant="primary")
gr.Markdown("---")
gr.Markdown("### 🎨 绘图参数")
with gr.Accordion("高级设置", open=False):
neg_prompt = gr.Textbox(
label="反向提示词", value=DEFAULT_NEGATIVE, lines=2,
)
steps = gr.Slider(15, 50, value=25, step=1, label="步数")
cfg_scale = gr.Slider(1, 15, value=7, step=0.5, label="CFG Scale")
btn_gen_img = gr.Button("🎨 第二步:生成图片", variant="primary")
# 中栏:文案编辑
with gr.Column(scale=1):
gr.Markdown("### 📝 文案编辑")
res_title = gr.Textbox(label="标题 (≤20字)", interactive=True)
res_content = gr.TextArea(
label="正文 (可手动修改)", lines=12, interactive=True,
)
res_prompt = gr.TextArea(
label="绘图提示词", lines=3, interactive=True,
)
res_tags = gr.Textbox(
label="话题标签 (逗号分隔)", interactive=True,
placeholder="穿搭, 春季, 好物种草",
)
# 右栏:预览 & 发布
with gr.Column(scale=1):
gr.Markdown("### 🖼️ 视觉预览")
gallery = gr.Gallery(label="AI 生成图片", columns=2, height=300)
local_images = gr.File(
label="📁 上传本地图片(可混排)",
file_count="multiple",
file_types=["image"],
)
gr.Markdown("### 🚀 发布")
schedule_time = gr.Textbox(
label="定时发布 (可选, ISO8601格式)",
placeholder="如 2026-02-08T18:00:00+08:00留空=立即发布",
)
with gr.Row():
btn_export = gr.Button("📂 导出本地", variant="secondary")
btn_publish = gr.Button("🚀 发布到小红书", variant="primary")
publish_msg = gr.Markdown("")
# -------- Tab 2: 热点探测 --------
with gr.Tab("🔥 热点探测"):
gr.Markdown("### 搜索热门内容 → AI 分析趋势 → 一键借鉴创作")
with gr.Row():
with gr.Column(scale=1):
hot_keyword = gr.Textbox(
label="搜索关键词", placeholder="如:春季穿搭",
)
hot_sort = gr.Dropdown(
["综合", "最新", "最多点赞", "最多评论", "最多收藏"],
label="排序", value="综合",
)
btn_search = gr.Button("🔍 搜索", variant="primary")
search_status = gr.Markdown("")
with gr.Column(scale=2):
search_output = gr.TextArea(
label="搜索结果", lines=12, interactive=False,
)
with gr.Row():
btn_analyze = gr.Button("🧠 AI 分析热点趋势", variant="primary")
analysis_status = gr.Markdown("")
analysis_output = gr.Markdown(label="分析报告")
topic_from_hot = gr.Textbox(
label="选择/输入创作选题", placeholder="基于分析选一个方向",
)
with gr.Row():
hot_style = gr.Dropdown(
["好物种草", "干货教程", "情绪共鸣", "生活Vlog", "测评避雷"],
label="风格", value="好物种草",
)
btn_gen_from_hot = gr.Button("✨ 基于热点生成文案", variant="primary")
with gr.Row():
hot_title = gr.Textbox(label="生成的标题", interactive=True)
hot_content = gr.TextArea(label="生成的正文", lines=8, interactive=True)
with gr.Row():
hot_prompt = gr.TextArea(label="绘图提示词", lines=3, interactive=True)
hot_tags = gr.Textbox(label="标签", interactive=True)
hot_gen_status = gr.Markdown("")
btn_sync_to_create = gr.Button(
"📋 同步到「内容创作」Tab → 绘图 & 发布",
variant="primary",
)
# -------- Tab 3: 评论管家 --------
with gr.Tab("💬 评论管家"):
gr.Markdown("### 智能评论管理:主动评论引流 & 自动回复粉丝")
with gr.Tabs():
# ======== 子 Tab A: 主动评论他人 ========
with gr.Tab("✍️ 主动评论引流"):
gr.Markdown(
"> **流程**:搜索/浏览笔记 → 选择目标 → 加载内容 → "
"AI 分析笔记+已有评论自动生成高质量评论 → 一键发送"
)
# 笔记选择器
with gr.Row():
pro_keyword = gr.Textbox(
label="🔍 搜索关键词 (留空则获取推荐)",
placeholder="穿搭、美食、旅行…",
)
btn_pro_fetch = gr.Button("🔍 获取笔记", variant="primary")
with gr.Row():
pro_selector = gr.Dropdown(
label="📋 选择目标笔记",
choices=[], interactive=True,
)
pro_fetch_status = gr.Markdown("")
# 隐藏字段
with gr.Row():
pro_feed_id = gr.Textbox(label="笔记 ID", interactive=False)
pro_xsec_token = gr.Textbox(label="xsec_token", interactive=False)
pro_title = gr.Textbox(label="标题", interactive=False)
# 加载内容 & AI 分析
btn_pro_load = gr.Button("📖 加载笔记内容", variant="secondary")
pro_load_status = gr.Markdown("")
with gr.Row():
with gr.Column(scale=1):
pro_content = gr.TextArea(
label="📄 笔记正文摘要", lines=8, interactive=False,
)
with gr.Column(scale=1):
pro_comments = gr.TextArea(
label="💬 已有评论", lines=8, interactive=False,
)
# 隐藏: 完整文本
pro_full_text = gr.Textbox(visible=False)
gr.Markdown("---")
with gr.Row():
with gr.Column(scale=1):
btn_pro_ai = gr.Button(
"🤖 AI 智能生成评论", variant="primary", size="lg",
)
pro_ai_status = gr.Markdown("")
with gr.Column(scale=2):
pro_comment_text = gr.TextArea(
label="✏️ 评论内容 (可手动修改)", lines=3,
interactive=True,
placeholder="点击左侧按钮自动生成,也可手动编写",
)
with gr.Row():
btn_pro_send = gr.Button("📩 发送评论", variant="primary")
pro_send_status = gr.Markdown("")
# ======== 子 Tab B: 回复我的评论 ========
with gr.Tab("💌 回复粉丝评论"):
gr.Markdown(
"> **流程**:选择我的笔记 → 加载评论 → "
"粘贴要回复的评论 → AI 生成回复 → 一键发送"
)
# 笔记选择器 (自动用已保存的 userId 获取)
with gr.Row():
btn_my_fetch = gr.Button("🔍 获取我的笔记", variant="primary")
with gr.Row():
my_selector = gr.Dropdown(
label="📋 选择我的笔记",
choices=[], interactive=True,
)
my_fetch_status = gr.Markdown("")
with gr.Row():
my_feed_id = gr.Textbox(label="笔记 ID", interactive=False)
my_xsec_token = gr.Textbox(label="xsec_token", interactive=False)
my_title = gr.Textbox(label="笔记标题", interactive=False)
btn_my_load_comments = gr.Button("📥 加载评论", variant="primary")
my_comment_status = gr.Markdown("")
my_comments_display = gr.TextArea(
label="📋 粉丝评论列表", lines=12, interactive=False,
)
gr.Markdown("---")
gr.Markdown("#### 📝 回复评论")
with gr.Row():
with gr.Column(scale=1):
my_target_comment = gr.TextArea(
label="要回复的评论内容", lines=3,
placeholder="从上方评论列表中复制粘贴要回复的评论",
)
btn_my_ai_reply = gr.Button(
"🤖 AI 生成回复", variant="secondary",
)
my_reply_gen_status = gr.Markdown("")
with gr.Column(scale=1):
my_reply_content = gr.TextArea(
label="回复内容 (可修改)", lines=3,
interactive=True,
)
btn_my_send_reply = gr.Button(
"📩 发送回复", variant="primary",
)
my_reply_status = gr.Markdown("")
# -------- Tab 4: 账号登录 --------
with gr.Tab("🔐 账号登录"):
gr.Markdown(
"### 小红书账号登录\n"
"> 扫码登录后自动获取 xsec_token配合用户 ID 即可使用所有功能"
)
with gr.Row():
with gr.Column(scale=1):
gr.Markdown(
"**操作步骤:**\n"
"1. 确保 MCP 服务已启动\n"
"2. 点击「获取登录二维码」→ 用小红书 App 扫码\n"
"3. 点击「检查登录状态」→ 自动获取并保存 xsec_token\n"
"4. 首次使用请填写你的用户 ID 并点击保存\n\n"
"⚠️ 登录后不要在其他网页端登录同一账号,否则会被踢出"
)
btn_get_qrcode = gr.Button(
"📱 获取登录二维码", variant="primary", size="lg",
)
btn_check_login = gr.Button(
"🔍 检查登录状态 (自动获取 Token)",
variant="secondary", size="lg",
)
btn_logout = gr.Button(
"🚪 退出登录 (重新扫码)",
variant="stop", size="lg",
)
login_status = gr.Markdown("🔄 等待操作...")
gr.Markdown("---")
gr.Markdown(
"#### 📌 我的账号信息\n"
"> **注意**: 小红书号 ≠ 用户 ID\n"
"> - **小红书号 (redId)**: 如 `18688457507`,是你在 App 个人页看到的\n"
"> - **用户 ID (userId)**: 如 `5a695db6e8ac2b72e8af2a53`24位十六进制字符串\n\n"
"💡 **如何获取 userId?**\n"
"1. 用浏览器打开你的小红书主页\n"
"2. 网址格式为: `xiaohongshu.com/user/profile/xxxxxxxx`\n"
"3. `profile/` 后面的就是你的 userId"
)
login_user_id = gr.Textbox(
label="我的用户 ID (24位 userId, 非小红书号)",
value=config.get("my_user_id", ""),
placeholder="如: 5a695db6e8ac2b72e8af2a53",
)
login_xsec_token = gr.Textbox(
label="xsec_token (登录后自动获取)",
value=config.get("xsec_token", ""),
interactive=False,
)
btn_save_uid = gr.Button(
"💾 保存用户 ID", variant="secondary",
)
save_uid_status = gr.Markdown("")
with gr.Column(scale=1):
qr_image = gr.Image(
label="扫码登录", height=350, width=350,
)
# -------- Tab 5: 数据看板 --------
with gr.Tab("📊 数据看板"):
gr.Markdown(
"### 我的账号数据看板\n"
"> 用户 ID 和 xsec_token 从「账号登录」自动获取,直接点击加载即可"
)
with gr.Row():
with gr.Column(scale=1):
data_user_id = gr.Textbox(
label="我的用户 ID (自动填充)",
value=config.get("my_user_id", ""),
interactive=True,
)
data_xsec_token = gr.Textbox(
label="xsec_token (自动填充)",
value=config.get("xsec_token", ""),
interactive=True,
)
btn_refresh_token = gr.Button(
"🔄 刷新 Token", variant="secondary",
)
btn_load_my_data = gr.Button(
"📊 加载我的数据", variant="primary", size="lg",
)
data_status = gr.Markdown("")
with gr.Column(scale=2):
profile_card = gr.Markdown(
value="*等待加载...*",
label="账号概览",
)
gr.Markdown("---")
gr.Markdown("### 📈 数据可视化")
with gr.Row():
with gr.Column(scale=1):
chart_interact = gr.Plot(label="📊 核心指标")
with gr.Column(scale=2):
chart_notes = gr.Plot(label="❤ 笔记点赞排行")
gr.Markdown("---")
notes_detail = gr.Markdown(
value="*加载数据后显示笔记明细表格*",
label="笔记数据明细",
)
# ==================================================
# 事件绑定
# ==================================================
# ---- 全局设置: LLM 提供商管理 ----
btn_connect_llm.click(
fn=connect_llm, inputs=[llm_provider],
outputs=[llm_model, status_bar],
)
llm_provider.change(
fn=on_provider_selected,
inputs=[llm_provider],
outputs=[llm_provider_info],
)
btn_add_provider.click(
fn=add_llm_provider,
inputs=[new_provider_name, new_provider_key, new_provider_url],
outputs=[llm_provider, provider_mgmt_status],
)
btn_del_provider.click(
fn=remove_llm_provider,
inputs=[llm_provider],
outputs=[llm_provider, provider_mgmt_status],
)
btn_connect_sd.click(
fn=connect_sd, inputs=[sd_url],
outputs=[sd_model, status_bar],
)
btn_check_mcp.click(
fn=check_mcp_status, inputs=[mcp_url],
outputs=[status_bar],
)
# ---- Tab 1: 内容创作 ----
btn_gen_copy.click(
fn=generate_copy,
inputs=[llm_model, topic, style],
outputs=[res_title, res_content, res_prompt, res_tags, status_bar],
)
btn_gen_img.click(
fn=generate_images,
inputs=[sd_url, res_prompt, neg_prompt, sd_model, steps, cfg_scale],
outputs=[gallery, state_images, status_bar],
)
btn_export.click(
fn=one_click_export,
inputs=[res_title, res_content, state_images],
outputs=[publish_msg],
)
btn_publish.click(
fn=publish_to_xhs,
inputs=[res_title, res_content, res_tags, state_images,
local_images, mcp_url, schedule_time],
outputs=[publish_msg],
)
# ---- Tab 2: 热点探测 ----
btn_search.click(
fn=search_hotspots,
inputs=[hot_keyword, hot_sort, mcp_url],
outputs=[search_status, search_output],
)
# 搜索结果同步到 state
search_output.change(
fn=lambda x: x, inputs=[search_output], outputs=[state_search_result],
)
btn_analyze.click(
fn=analyze_and_suggest,
inputs=[llm_model, hot_keyword, search_output],
outputs=[analysis_status, analysis_output, topic_from_hot],
)
btn_gen_from_hot.click(
fn=generate_from_hotspot,
inputs=[llm_model, topic_from_hot, hot_style, search_output],
outputs=[hot_title, hot_content, hot_prompt, hot_tags, hot_gen_status],
)
# 同步热点文案到内容创作 Tab
btn_sync_to_create.click(
fn=lambda t, c, p, tg: (t, c, p, tg, "✅ 已同步到「内容创作」,可切换 Tab 继续绘图和发布"),
inputs=[hot_title, hot_content, hot_prompt, hot_tags],
outputs=[res_title, res_content, res_prompt, res_tags, status_bar],
)
# ---- Tab 3: 评论管家 ----
# == 子 Tab A: 主动评论引流 ==
btn_pro_fetch.click(
fn=fetch_proactive_notes,
inputs=[pro_keyword, mcp_url],
outputs=[pro_selector, pro_fetch_status],
)
pro_selector.change(
fn=on_proactive_note_selected,
inputs=[pro_selector],
outputs=[pro_feed_id, pro_xsec_token, pro_title],
)
btn_pro_load.click(
fn=load_note_for_comment,
inputs=[pro_feed_id, pro_xsec_token, mcp_url],
outputs=[pro_load_status, pro_content, pro_comments, pro_full_text],
)
btn_pro_ai.click(
fn=ai_generate_comment,
inputs=[llm_model, persona,
pro_title, pro_content, pro_comments],
outputs=[pro_comment_text, pro_ai_status],
)
btn_pro_send.click(
fn=send_comment,
inputs=[pro_feed_id, pro_xsec_token, pro_comment_text, mcp_url],
outputs=[pro_send_status],
)
# == 子 Tab B: 回复粉丝评论 ==
btn_my_fetch.click(
fn=fetch_my_notes,
inputs=[mcp_url],
outputs=[my_selector, my_fetch_status],
)
my_selector.change(
fn=on_my_note_selected,
inputs=[my_selector],
outputs=[my_feed_id, my_xsec_token, my_title],
)
btn_my_load_comments.click(
fn=fetch_my_note_comments,
inputs=[my_feed_id, my_xsec_token, mcp_url],
outputs=[my_comment_status, my_comments_display],
)
btn_my_ai_reply.click(
fn=ai_reply_comment,
inputs=[llm_model, persona,
my_title, my_target_comment],
outputs=[my_reply_content, my_reply_gen_status],
)
btn_my_send_reply.click(
fn=send_reply,
inputs=[my_feed_id, my_xsec_token, my_reply_content, mcp_url],
outputs=[my_reply_status],
)
# ---- Tab 4: 账号登录 ----
btn_get_qrcode.click(
fn=get_login_qrcode,
inputs=[mcp_url],
outputs=[qr_image, login_status],
)
btn_check_login.click(
fn=check_login,
inputs=[mcp_url],
outputs=[login_status, login_user_id, login_xsec_token],
)
btn_logout.click(
fn=logout_xhs,
inputs=[mcp_url],
outputs=[login_status],
)
btn_save_uid.click(
fn=save_my_user_id,
inputs=[login_user_id],
outputs=[save_uid_status],
)
# ---- Tab 5: 数据看板 ----
def refresh_xsec_token(mcp_url):
token = _auto_fetch_xsec_token(mcp_url)
if token:
cfg.set("xsec_token", token)
return gr.update(value=token), "✅ Token 已刷新"
return gr.update(value=cfg.get("xsec_token", "")), "❌ 刷新失败,请确认已登录"
btn_refresh_token.click(
fn=refresh_xsec_token,
inputs=[mcp_url],
outputs=[data_xsec_token, data_status],
)
btn_load_my_data.click(
fn=fetch_my_profile,
inputs=[data_user_id, data_xsec_token, mcp_url],
outputs=[data_status, profile_card, chart_interact, chart_notes, notes_detail],
)
# ---- 启动时自动刷新 SD ----
app.load(fn=connect_sd, inputs=[sd_url], outputs=[sd_model, status_bar])
# ==================================================
if __name__ == "__main__":
logger.info("🍒 小红书 AI 爆文工坊 V2.0 启动中...")
app.launch(inbrowser=True, share=False)