Files
check_in/main.py
jeremygan2021 6190fae22f 更新
2026-01-10 01:58:17 +08:00

769 lines
32 KiB
Python

from fastapi import FastAPI, HTTPException, Request
from fastapi.staticfiles import StaticFiles
from fastapi.templating import Jinja2Templates
from fastapi.responses import HTMLResponse, JSONResponse
from pydantic import BaseModel
import psycopg2
from psycopg2 import pool
from psycopg2.extras import RealDictCursor
from typing import Optional, List, Dict
import random
import uuid
import os
import difflib
from concurrent.futures import ProcessPoolExecutor
from dotenv import load_dotenv
load_dotenv()
app = FastAPI()
# 进程池全局变量
process_pool = None
@app.on_event("startup")
async def startup_event():
global process_pool
# RK3588 有 8 个核心,预留一些给数据库和系统,使用 6 个核心进行计算
process_pool = ProcessPoolExecutor(max_workers=6)
print("ProcessPoolExecutor initialized with 6 workers")
@app.on_event("shutdown")
async def shutdown_event():
if process_pool:
process_pool.shutdown()
print("ProcessPoolExecutor shutdown")
# Database connection parameters
DB_CONFIG = {
"host": os.getenv("DB_HOST", "121.43.104.161"),
"port": os.getenv("DB_PORT", "6432"),
"user": os.getenv("DB_USER", "gsdh"),
"password": os.getenv("DB_PASSWORD", "123gsdh"),
"database": os.getenv("DB_NAME", "gsdh")
}
# 商业领域同义词库 (Business Thesaurus) - 用于解决模糊语义匹配
BUSINESS_THESAURUS = {
# 核心意图: [关联行业/关键词列表]
"上市": ["IPO", "证券", "股票", "股份", "路演", "投行", "辅导", "财报", "合规", "董秘", "财务顾问", "审计", "律所", "金融", "机构"],
"证券": ["上市", "交易", "股票", "投资", "金融", "资本", "券商", "投行"],
"融资": ["找钱", "搞钱", "资金", "投资", "VC", "PE", "天使", "风投", "路演", "BP", "基金", "银行", "贷款"],
"资金": ["融资", "投资", "银行", "贷款", "过桥", "保理", "供应链金融"],
"获客": ["销售", "渠道", "推广", "流量", "代理", "分销", "增长", "营销", "广告", "传媒", "品牌", "私域"],
"销售": ["获客", "渠道", "代理", "分销", "带货", "电商", "直播"],
"技术": ["研发", "代码", "程序", "系统", "平台", "App", "小程序", "AI", "智能", "软件", "SaaS", "数字化", "算法", "架构"],
"法律": ["合规", "律师", "法务", "合同", "知识产权", "维权", "纠纷", "仲裁", "数据合规"],
"财税": ["会计", "审计", "报税", "记账", "财务", "税务", "节税"],
"出海": ["跨境", "外贸", "物流", "海外", "国际", "通关", "Tiktok", "多语言", "本地化"],
"供应链": ["物流", "仓储", "采购", "原材料", "制造", "工厂", "代工", "OEM"],
"人力": ["招聘", "猎头", "培训", "HR", "劳务", "派遣", "灵活用工"],
# 短视频与互联网专项扩展
"自媒体": ["抖音", "快手", "视频号", "小红书", "B站", "直播", "带货", "种草", "网红", "KOL", "KOC", "MCN", "内容创作", "剪辑", "拍摄", "流量", "完播率", "点赞", "评论", "转发", "DOU+", "投流", "橱窗", "小黄车", "团购", "同城号", "剧情号", "知识号", "颜值号", "三农号"],
"互联网": ["电商", "平台", "流量", "运营", "产品", "用户增长", "裂变", "留存", "转化", "GMV", "DAU", "MAU", "PV", "UV", "SEO", "SEM", "ASO", "投放", "拉新", "促活", "留存", "变现", "闭环", "私域", "公域", "矩阵", "账号", "内容", "社群", "小程序", "H5", "Web", "App", "iOS", "Android", "中台", "SaaS", "PaaS", "IaaS", "云原生", "微服务", "低代码", "零代码", "敏捷", "DevOps", "CI/CD"],
"电商": ["购物", "订单", "支付", "物流", "仓储", "采购", "原材料", "制造", "工厂", "代工", "OEM"],
# AI 行业专项扩展
"AI": ["大模型", "算法", "算力", "芯片", "数据", "数字人", "机器人", "智能", "自动化", "Agent", "RAG", "AIGC", "智能体"],
"智能体": ["Agent", "Copilot", "数字员工", "LangChain", "LlamaIndex", "AutoGPT", "Coze", "Dify", "扣子", "工作流", "Workflow", "编排", "RAG", "知识库", "向量", "Embedding", "工具调用", "Function Call", "多智能体", "Multi-Agent", "Swarm", "CrewAI", "AutoGen"],
"大模型": ["OpenAI", "GPT", "文心", "通义", "Llama", "微调", "训练", "部署", "推理", "Token", "向量", "Prompt", "提示词"],
"算力": ["GPU", "显卡", "英伟达", "H800", "4090", "服务器", "云计算", "智算中心", "租赁", "托管"],
"芯片": ["半导体", "集成电路", "英伟达", "华为昇腾", "寒武纪", "FPGA", "ASIC"],
"数据": ["标注", "清洗", "采集", "语料", "数据集", "版权", "向量数据库"],
"数字人": ["直播", "短视频", "IP", "形象", "克隆", "配音", "虚拟人", "元宇宙"],
"具身智能": ["机器人", "机械臂", "无人机", "自动驾驶", "传感器", "视觉", "雷达", "端侧模型"],
"AIGC": ["生成式AI", "文本生成", "图像生成", "视频生成", "音乐生成", "代码生成"],
"AI短剧": ["短剧", "视频", "内容创作", "剪辑", "拍摄", "流量", "完播率", "点赞", "评论", "转发"]
}
def compute_expert_score(text_a: str, text_b: str) -> float:
"""
计算两个文本的匹配度,结合了字符相似度和专家规则语义匹配。
"""
if not text_a or not text_b:
return 0.0
# 1. 基础字符相似度 (Base Character Similarity)
# difflib 计算最长公共子序列,处理 "软件开发" vs "软件工程" 这种字面相似
base_score = difflib.SequenceMatcher(None, text_a, text_b).ratio()
# 2. 语义增强 (Semantic Boost)
# 通过同义词库建立 "上市" <-> "证券" 这种非字面联系
semantic_boost = 0.0
# 归一化处理
str_a = str(text_a).strip()
str_b = str(text_b).strip()
found_match = False
# 检查 A 中的关键词是否匹配 B 中的关联词
for key, related_words in BUSINESS_THESAURUS.items():
if key in str_a:
# 如果 A 包含 "上市",检查 B 是否包含 ["证券", "投行"...]
for word in related_words:
if word in str_b:
semantic_boost = 0.6 # 给予显著加分
found_match = True
break
if found_match: break
# 双向检查:检查 B 中的关键词是否匹配 A 中的关联词
if not found_match:
for key, related_words in BUSINESS_THESAURUS.items():
if key in str_b:
for word in related_words:
if word in str_a:
semantic_boost = 0.6
found_match = True
break
if found_match: break
# 最终分数:基础分 + 语义分,上限 1.0
# 这样 "尽快上市" (A) vs "证券行业" (B):
# base_score ≈ 0
# semantic_boost = 0.6 (因为 "上市" -> "证券")
# total = 0.6 -> 属于高匹配
return min(base_score + semantic_boost, 1.0)
def calculate_matches_task(user_industry: str, user_vision: str, others: List[Dict]) -> Dict:
"""
CPU 密集型匹配任务,将在子进程中运行。
"""
matches = {
"customers": [], # My Industry vs Their Vision
"partners": [], # My Vision vs Their Industry
"peers": [] # My Industry vs Their Industry
}
for other in others:
# Handle potential None values safely
other_ind_comp = other.get('industry_company') or ''
other_bus_scope = other.get('business_scope') or ''
other_industry = f"{other_ind_comp} {other_bus_scope}".strip()
other_vision = other.get('vision_2026') or ""
# 3.1 Customers (They need me)
# My Industry (Supply) matches Their Vision (Demand)
if user_industry and other_vision:
score = compute_expert_score(user_industry, other_vision)
if score > 0.15:
matches["customers"].append({**other, "score": score})
# 3.2 Partners (I need them)
# My Vision (Demand) matches Their Industry (Supply)
if user_vision and other_industry:
score = compute_expert_score(user_vision, other_industry)
if score > 0.15:
matches["partners"].append({**other, "score": score})
# 3.3 Peers (Same industry)
# My Industry matches Their Industry
if user_industry and other_industry:
score = compute_expert_score(user_industry, other_industry)
if score > 0.2:
matches["peers"].append({**other, "score": score})
# 4. Sort and Limit
for key in matches:
matches[key].sort(key=lambda x: x["score"], reverse=True)
# Limit to top 5 per category
matches[key] = matches[key][:5]
# Hide sensitive info
for p in matches[key]:
# Safe phone masking
p_phone = p.get('phone', '')
if len(p_phone) >= 7:
p['phone'] = p_phone[:3] + "****" + p_phone[-4:]
else:
p['phone'] = "****"
p['location'] = "???" # Hidden location
p['unlocked'] = False
return matches
# Initialize Connection Pool
try:
postgreSQL_pool = psycopg2.pool.ThreadedConnectionPool(1, 20, **DB_CONFIG)
print("PostgreSQL connection pool created successfully")
except (Exception, psycopg2.DatabaseError) as error:
print("Error while connecting to PostgreSQL", error)
# Mount static files
app.mount("/static", StaticFiles(directory="static"), name="static")
templates = Jinja2Templates(directory="templates")
# Models
class CheckinRequest(BaseModel):
gsdh_id: str
name: str
phone: str
company_name: Optional[str] = None
position: Optional[str] = None
business_scope: Optional[str] = None
vision_2026: Optional[str] = None
location: Optional[str] = None
class AddUserRequest(BaseModel):
name: str
phone: str
industry_company: Optional[str] = None
fee: Optional[str] = None
payment_channel: Optional[str] = None
def get_db_connection():
max_retries = 5
for attempt in range(max_retries):
conn = None
try:
conn = postgreSQL_pool.getconn()
if conn.closed:
# Should not happen with getconn() usually, but just in case
postgreSQL_pool.putconn(conn, close=True)
continue
try:
with conn.cursor() as cur:
cur.execute('SELECT 1')
return conn
except (psycopg2.OperationalError, psycopg2.InterfaceError, psycopg2.DatabaseError):
# Connection is dead, remove it from pool
if conn:
postgreSQL_pool.putconn(conn, close=True)
# Loop will continue to get next connection
continue
except Exception as e:
if conn:
postgreSQL_pool.putconn(conn, close=True)
print(f"Error getting DB connection (attempt {attempt+1}): {e}")
if attempt == max_retries - 1:
raise e
raise Exception("Failed to get a valid database connection after retries")
def release_db_connection(conn):
if conn:
postgreSQL_pool.putconn(conn)
def assign_seat(cur, user_industry: str) -> str:
"""
Allocate a seat based on:
1. Even distribution (11 tables, max 12 per table)
- Prioritize filling empty tables first (min count)
- If counts are equal, fill sequentially (Table 1 before Table 2)
2. Mix industries (try to put user in a table where their industry is least represented)
- Uses natural language similarity to judge industry overlap
"""
TOTAL_TABLES = 11
MAX_PER_TABLE = 12
# Initialize table stats
tables = {i: {'count': 0, 'industries': []} for i in range(1, TOTAL_TABLES + 1)}
# Fetch current seating status
# Uses aggregation for efficiency as requested
# We use array_agg to collect industries for the diversity check in one query
# Update: Include business_scope from checkin_info for more detailed matching
# We concatenate industry_company (from gsdh_data) and business_scope (from checkin_info)
query = """
SELECT
ci.location,
COUNT(ci.gsdh_id),
array_agg(
COALESCE(gd.industry_company, '') || ' ' || COALESCE(ci.business_scope, '')
)
FROM checkin_info ci
LEFT JOIN gsdh_data gd ON ci.gsdh_id = gd.new_id
WHERE ci.location IS NOT NULL AND ci.location LIKE '%'
GROUP BY ci.location
"""
cur.execute(query)
rows = cur.fetchall()
for row in rows:
loc = row[0]
count = row[1]
industries = row[2] if row[2] else []
try:
# Extract table number
table_num = int(loc.replace("", "").replace("", ""))
if 1 <= table_num <= TOTAL_TABLES:
tables[table_num]['count'] = count
# Filter out None values from industries
tables[table_num]['industries'] = [ind for ind in industries if ind]
except ValueError:
continue
# Filter tables that are not full
available_tables = [t for t in tables.items() if t[1]['count'] < MAX_PER_TABLE]
if not available_tables:
return "自由席" # Fallback if all full
# Strategy 1: Find tables with Minimum Count
# This automatically handles "Prioritize filling TOTAL_TABLES" because empty tables have count 0
min_count = min(t[1]['count'] for t in available_tables)
candidates = [t for t in available_tables if t[1]['count'] == min_count]
# Sort by table number to ensure sequential filling if counts are equal (Requirement: 顺序分配)
candidates.sort(key=lambda x: x[0])
# Strategy 2: Optimize for Industry Diversity
if not user_industry:
# If no industry info, just pick the first one (Sequential)
best_table = candidates[0][0]
else:
# Calculate similarity scores
# Score = sum of similarity with existing users
# Lower score is better (more unique)
scored_candidates = []
for table_id, stats in candidates:
total_similarity = 0.0
for existing_ind in stats['industries']:
if existing_ind:
# Use Expert Score for better semantic matching
# This helps understand "Natural Language" industries better than exact match
sim = compute_expert_score(user_industry, existing_ind)
total_similarity += sim
scored_candidates.append((table_id, total_similarity))
# Sort by similarity score (asc), then by table_id (asc)
scored_candidates.sort(key=lambda x: (x[1], x[0]))
best_table = scored_candidates[0][0]
return f"{best_table}"
def get_tablemates(cur, location: str, exclude_id: str, user_vision: str = "", user_industry: str = "") -> List[Dict]:
"""
Get 3 tablemates based on:
1. Vision similarity: Match tablemate's vision_2026 with user's vision_2026 (Find similar goals)
2. Supply-Demand match: Match tablemate's vision_2026 with user's industry (Find potential partners)
"""
if not location or location == "自由席":
return []
# Debug: Check who is at this location
print(f"DEBUG: Fetching tablemates for location: '{location}', excluding: '{exclude_id}'")
# Updated query to fetch more details from checkin_info
query = """
SELECT ci.name, gd.industry_company, ci.company_name, ci.position, ci.business_scope, ci.vision_2026
FROM checkin_info ci
LEFT JOIN gsdh_data gd ON ci.gsdh_id = gd.new_id
WHERE ci.location = %s AND ci.gsdh_id != %s
"""
cur.execute(query, (location, exclude_id))
rows = cur.fetchall()
print(f"DEBUG: Found {len(rows)} potential tablemates")
candidates = []
for row in rows:
candidate = {
"name": row[0],
"industry": row[1] or "暂无行业信息",
"company_name": row[2] or "暂无单位信息",
"position": row[3] or "暂无职务信息",
"business_scope": row[4] or "暂无业务信息",
"vision_2026": row[5] or "",
"match_type": [],
"score": 0.0
}
candidates.append(candidate)
if not candidates:
return []
# Scoring Logic
for cand in candidates:
cand_vision = cand["vision_2026"]
cand_industry = cand["industry"]
# 1. Vision Similarity (Find peers with similar goals)
if user_vision and cand_vision:
sim = compute_expert_score(user_vision, cand_vision)
# Weight this score
cand["score"] += sim * 1.0
if sim > 0.25: # Threshold for "similarity" (Adjusted to 0.25 for better precision)
cand["match_type"].append("志同道合 (愿景相似)")
# 2. Cross Match: My Industry matches Their Vision (I can help them)
if user_industry and cand_vision:
sim = compute_expert_score(user_industry, cand_vision)
cand["score"] += sim * 1.5 # Give higher weight to potential business match
if sim > 0.25:
cand["match_type"].append("潜在合作 (您的行业匹配对方愿景)")
# 3. Cross Match: Their Industry matches My Vision (They can help me)
if user_vision and cand_industry:
sim = compute_expert_score(user_vision, cand_industry)
cand["score"] += sim * 1.5
if sim > 0.25:
cand["match_type"].append("潜在贵人 (对方行业匹配您的愿景)")
# Sort by score descending
candidates.sort(key=lambda x: x["score"], reverse=True)
# Take top 3
top_candidates = candidates[:3]
# Format output
result = []
for cand in top_candidates:
# If no specific match type, just say "同桌伙伴"
match_reason = " | ".join(cand["match_type"]) if cand["match_type"] else "同桌伙伴"
result.append({
"name": cand["name"],
"industry": cand["industry"],
"company_name": cand["company_name"],
"position": cand["position"],
"business_scope": cand["business_scope"],
"vision_2026": cand["vision_2026"] or "暂无愿景信息",
"match_reason": match_reason
})
return result
@app.get("/", response_class=HTMLResponse)
async def read_root(request: Request):
return templates.TemplateResponse("index.html", {"request": request})
class UnlockRequest(BaseModel):
my_phone: str
target_id: str
class ResourceMatchRequest(BaseModel):
phone: str
@app.get("/search", response_class=HTMLResponse)
async def resource_match_page(request: Request):
return templates.TemplateResponse("resource_match.html", {"request": request})
@app.post("/api/resource-match")
def resource_match(req: ResourceMatchRequest):
try:
conn = get_db_connection()
cur = conn.cursor(cursor_factory=RealDictCursor)
# 1. Fetch current user
# Optimize: Only fetch necessary fields
cur.execute("""
SELECT gd.new_id, gd.name, gd.phone, ci.social_point as points,
gd.industry_company, ci.business_scope, ci.vision_2026
FROM gsdh_data gd
LEFT JOIN checkin_info ci ON gd.new_id = ci.gsdh_id
WHERE gd.phone = %s
""", (req.phone,))
user = cur.fetchone()
if not user:
cur.close()
release_db_connection(conn)
return JSONResponse(content={"success": False, "message": "用户不存在"}, status_code=404)
user_industry = f"{user['industry_company'] or ''} {user['business_scope'] or ''}".strip()
user_vision = user['vision_2026'] or ""
# 2. Fetch ALL other users (who have checked in)
# Performance Note: Fetching all rows is slow if N is large.
# But for N < 1000 it's acceptable. For larger N, we need vector search (e.g. pgvector).
# We limit the fields to reduce payload size.
cur.execute("""
SELECT gd.new_id, gd.name, gd.phone, gd.industry_company,
ci.company_name, ci.position, ci.business_scope, ci.vision_2026, ci.location
FROM checkin_info ci
JOIN gsdh_data gd ON ci.gsdh_id = gd.new_id
WHERE gd.new_id != %s
""", (user['new_id'],))
others = cur.fetchall()
cur.close()
release_db_connection(conn)
# 3. Calculate Matches (Using Process Pool for Concurrency)
# 将 CPU 密集型计算提交给进程池,避免阻塞主进程和 GIL 锁竞争
if process_pool:
future = process_pool.submit(calculate_matches_task, user_industry, user_vision, others)
matches = future.result() # Wait for result (blocks this thread, but not the whole server)
else:
# Fallback if pool not initialized
matches = calculate_matches_task(user_industry, user_vision, others)
return {
"success": True,
"user": {
"name": user['name'],
"industry_company": user['industry_company'],
"points": user['points'] if user['points'] is not None else 0,
"phone": user['phone']
},
"matches": matches
}
except Exception as e:
import traceback
traceback.print_exc()
if 'conn' in locals() and conn:
release_db_connection(conn)
return JSONResponse(content={"success": False, "message": str(e)}, status_code=500)
@app.post("/api/unlock-contact")
def unlock_contact(req: UnlockRequest):
try:
conn = get_db_connection()
cur = conn.cursor(cursor_factory=RealDictCursor)
# 1. Check User Points
cur.execute("""
SELECT ci.social_point as points
FROM checkin_info ci
JOIN gsdh_data gd ON ci.gsdh_id = gd.new_id
WHERE gd.phone = %s
""", (req.my_phone,))
res = cur.fetchone()
if not res:
cur.close()
release_db_connection(conn)
return JSONResponse(content={"success": False, "message": "用户未签到或不存在"}, status_code=404)
points = res['points'] if res['points'] is not None else 0
if points <= 0:
cur.close()
release_db_connection(conn)
return JSONResponse(content={"success": False, "message": "积分不足"}, status_code=400)
# 2. Deduct Point
# Update checkin_info using a subquery to map phone to gsdh_id
cur.execute("""
UPDATE checkin_info
SET social_point = social_point - 1
WHERE gsdh_id = (SELECT new_id FROM gsdh_data WHERE phone = %s)
""", (req.my_phone,))
# 3. Fetch Target Info
cur.execute("""
SELECT gd.phone, ci.location
FROM gsdh_data gd
LEFT JOIN checkin_info ci ON gd.new_id = ci.gsdh_id
WHERE gd.new_id = %s
""", (req.target_id,))
target = cur.fetchone()
conn.commit()
cur.close()
release_db_connection(conn)
return {
"success": True,
"remaining_points": points - 1,
"contact": {
"phone": target['phone'],
"location": target['location'] or "未分配座位"
}
}
except Exception as e:
if 'conn' in locals() and conn:
conn.rollback()
release_db_connection(conn)
return JSONResponse(content={"success": False, "message": str(e)}, status_code=500)
@app.get("/api/search")
def search_user(query: str):
"""
Search user by phone (exact match) or name (fuzzy match).
"""
print(f"DEBUG: Searching for query: {query}")
try:
conn = get_db_connection()
cur = conn.cursor(cursor_factory=RealDictCursor)
# Priority 1: Exact Phone Match
cur.execute("SELECT * FROM gsdh_data WHERE phone = %s", (query,))
user = cur.fetchone()
# Priority 2: Fuzzy Name Match if not found by phone
if not user:
# Using ILIKE for case-insensitive fuzzy search
cur.execute("SELECT * FROM gsdh_data WHERE name ILIKE %s", (f"%{query}%",))
users = cur.fetchall()
if len(users) == 0:
cur.close()
release_db_connection(conn)
return JSONResponse(content={"found": False, "message": "未查询到相关信息,请检查输入是否正确"}, status_code=404)
elif len(users) > 1:
# If multiple users found by name, return list for user to select (simplified here to return first or error)
# For this MVP, let's return all matching users so frontend can handle selection
cur.close()
release_db_connection(conn)
return JSONResponse(content={"found": True, "multiple": True, "users": users})
else:
user = users[0]
# Check if already signed
if user.get('is_signed') == 'TRUE':
# Check if already signed
cur.execute("SELECT location, vision_2026 FROM checkin_info WHERE gsdh_id = %s", (user['new_id'],))
checkin_info = cur.fetchone() # Fetch as RealDictRow
assigned_seat = checkin_info['location'] if checkin_info else "自由席"
# Fetch tablemates
# Use a new cursor for the helper function to avoid cursor factory conflict or state issues
# Note: get_tablemates expects a standard cursor for tuple results, but here we have DictCursor
# We can adapt get_tablemates or just use key access if we pass the DictCursor
# Let's create a fresh standard cursor to be safe and consistent with get_tablemates implementation
cur_plain = conn.cursor()
# Fetch user's vision and industry for matching
user_vision = checkin_info.get('vision_2026', '') if checkin_info else ''
# user['industry_company'] is already available in user dict
user_industry = user.get('industry_company', '')
tablemates = get_tablemates(cur_plain, assigned_seat, user['new_id'], user_vision, user_industry)
cur_plain.close()
cur.close()
release_db_connection(conn)
return JSONResponse(content={
"found": True,
"user": user,
"already_signed": True,
"seat": assigned_seat,
"tablemates": tablemates
})
cur.close()
release_db_connection(conn)
return JSONResponse(content={"found": True, "user": user, "already_signed": False})
except Exception as e:
if 'conn' in locals() and conn:
release_db_connection(conn)
return JSONResponse(content={"error": str(e)}, status_code=500)
@app.post("/api/checkin")
def checkin_user(checkin_data: CheckinRequest):
try:
conn = get_db_connection()
cur = conn.cursor()
# 0. Get user's industry from gsdh_data to help with seat allocation
cur.execute("SELECT industry_company FROM gsdh_data WHERE new_id = %s", (checkin_data.gsdh_id,))
res = cur.fetchone()
base_industry = res[0] if res and res[0] else ""
# Combine base industry with the newly provided business_scope for better matching
user_industry_info = f"{base_industry} {checkin_data.business_scope or ''}".strip()
# 1. Allocate Seat
assigned_seat = assign_seat(cur, user_industry_info)
# 2. Insert into checkin_info with assigned seat
# Initialize social_point to 5
insert_sql = """
INSERT INTO checkin_info
(name, phone, company_name, position, business_scope, vision_2026, location, gsdh_id, social_point)
VALUES (%s, %s, %s, %s, %s, %s, %s, %s, 4)
"""
cur.execute(insert_sql, (
checkin_data.name,
checkin_data.phone,
checkin_data.company_name,
checkin_data.position,
checkin_data.business_scope,
checkin_data.vision_2026,
assigned_seat, # Use the generated seat
checkin_data.gsdh_id
))
# 3. Update gsdh_data is_signed to TRUE
update_sql = "UPDATE gsdh_data SET is_signed = 'TRUE' WHERE new_id = %s"
cur.execute(update_sql, (checkin_data.gsdh_id,))
conn.commit()
# 4. Fetch tablemates for the newly assigned seat
# Use provided vision and industry for matching
tablemates = get_tablemates(cur, assigned_seat, checkin_data.gsdh_id, checkin_data.vision_2026 or "", user_industry_info)
cur.close()
release_db_connection(conn)
return {"success": True, "message": "签到成功!", "seat": assigned_seat, "tablemates": tablemates}
except Exception as e:
if 'conn' in locals() and conn:
conn.rollback()
release_db_connection(conn)
return JSONResponse(content={"success": False, "message": f"签到失败: {str(e)}"}, status_code=500)
@app.get("/add-user", response_class=HTMLResponse)
async def add_user_page(request: Request):
secret = os.getenv("ADD_USER_SECRET", "123quant-speed")
print(f"DEBUG: Secret loaded: '{secret}'")
return templates.TemplateResponse("add_user.html", {"request": request, "secret": secret})
@app.post("/api/add-user")
def add_user_api(user_data: AddUserRequest):
try:
conn = get_db_connection()
cur = conn.cursor()
# Check if phone already exists
cur.execute("SELECT * FROM gsdh_data WHERE phone = %s", (user_data.phone,))
if cur.fetchone():
cur.close()
release_db_connection(conn)
return JSONResponse(content={"success": False, "message": "该手机号已存在"}, status_code=400)
# Calculate next new_id
cur.execute("SELECT MAX(CAST(new_id AS INTEGER)) FROM gsdh_data WHERE new_id ~ '^[0-9]+$'")
row = cur.fetchone()
max_id = row[0] if row and row[0] is not None else 0
new_id = str(max_id + 1)
insert_sql = """
INSERT INTO gsdh_data (new_id, name, phone, industry_company, fee, payment_channel, is_signed)
VALUES (%s, %s, %s, %s, %s, %s, 'FALSE')
"""
cur.execute(insert_sql, (
new_id,
user_data.name,
user_data.phone,
user_data.industry_company,
user_data.fee,
user_data.payment_channel
))
conn.commit()
cur.close()
release_db_connection(conn)
return {"success": True, "message": "添加成功", "new_id": new_id}
except Exception as e:
if 'conn' in locals() and conn:
conn.rollback()
release_db_connection(conn)
return JSONResponse(content={"success": False, "message": f"添加失败: {str(e)}"}, status_code=500)
if __name__ == "__main__":
import uvicorn
import argparse
parser = argparse.ArgumentParser(description='Run the Checkin System.')
parser.add_argument('--port', type=int, default=8800, help='Port to run the server on')
args = parser.parse_args()
uvicorn.run(app, host="0.0.0.0", port=args.port)