| 123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170171172173174175176177178179180181182183184185186187188189190191192193194195196197198199200201202203204205206207208209210211212213214215216217218219220221222223224225226227228229230231232233234235236237238239240241242243244245246247248249250251252253254255256257258259260261262263264265266267268269270271272273274275276277278279280281282283284285286287288289290291292293294295296297298299300301302303304305306307308309310311312313314315316317318319320321322323324325326327328329330331332333334335336337338339340341342343344345346347348349350351352353354355356357358359360361362363364365366367368369370371372373374375376377378379 |
- #!/usr/bin/env python3
- # -*- coding: utf-8 -*-
- """
- 销售概览分析服务
- """
- import pandas as pd
- import numpy as np
- from datetime import datetime
- from collections import defaultdict
- import json
- def analyze_sale_overview(df, filename):
- """
- 分析销售概览数据
-
- Args:
- df: 销售数据DataFrame
- filename: 文件名
-
- Returns:
- dict: 分析结果
- """
- try:
- print(f"开始分析销售概览数据: {filename}")
- print(f"数据形状: {df.shape}")
-
- # 1. 数据预处理
- df = preprocess_data(df)
-
- # 2. 计算总体指标
- summary = calculate_summary(df)
-
- # 3. 按品类分析
- categories = analyze_categories(df)
-
- # 4. 按SKU分析
- sku_data = analyze_skus(df)
-
- # 5. 趋势分析
- trends = analyze_trends(df)
-
- # 6. 异常检测
- anomalies = detect_anomalies(df)
-
- # 7. 构建结果
- results = {
- 'summary': summary,
- 'categories': categories['categories_data'],
- 'category_list': categories['category_list'],
- 'category_skus': categories['category_skus'],
- 'data': sku_data['sku_data'],
- 'sku_list': sku_data['sku_list'],
- 'trends': trends,
- 'anomalies': anomalies
- }
-
- print("销售概览分析完成")
- return results
-
- except Exception as e:
- print(f"分析销售概览时出错: {str(e)}")
- raise
- def preprocess_data(df):
- """
- 预处理数据
- """
- # 复制数据以避免修改原始数据
- df = df.copy()
-
- # 处理日期列
- if '订单创建时间' in df.columns:
- df['订单创建时间'] = pd.to_datetime(df['订单创建时间'], errors='coerce')
- # 提取日期部分
- df['日期'] = df['订单创建时间'].dt.date
-
- # 处理数值列
- numeric_columns = ['价格', '购买数量', '买家应付货款', '买家实际支付金额', '退款金额']
- for col in numeric_columns:
- if col in df.columns:
- df[col] = pd.to_numeric(df[col], errors='coerce')
-
- # 填充缺失值
- df = df.fillna({
- '价格': 0,
- '购买数量': 0,
- '买家应付货款': 0,
- '买家实际支付金额': 0,
- '退款金额': 0
- })
-
- # 确保SKU列存在
- if '商家编码' in df.columns:
- df['SKU'] = df['商家编码']
- elif '外部系统编号' in df.columns:
- df['SKU'] = df['外部系统编号']
- else:
- # 如果没有SKU列,使用商品名称作为SKU
- df['SKU'] = df['商品名称']
-
- # 确保品类列存在
- if '品类' not in df.columns:
- # 简单品类划分:基于商品名称
- df['品类'] = df['商品名称'].apply(lambda x: categorize_product(x))
-
- return df
- def categorize_product(product_name):
- """
- 根据商品名称简单分类
- """
- product_name = str(product_name).lower()
- if '腰垫' in product_name or '靠垫' in product_name:
- return '家居用品'
- elif '手机' in product_name or '电脑' in product_name:
- return '电子产品'
- elif '服装' in product_name or '鞋' in product_name:
- return '服装鞋包'
- else:
- return '其他'
- def calculate_summary(df):
- """
- 计算总体指标
- """
- total_quantity = df['购买数量'].sum()
- total_revenue = df['买家实际支付金额'].sum()
- avg_price = total_revenue / total_quantity if total_quantity > 0 else 0
-
- # 计算促销力度
- df['促销力度'] = 1 - (df['买家实际支付金额'] / df['买家应付货款'])
- df['促销力度'] = df['促销力度'].fillna(0)
- avg_promotion = df['促销力度'].mean() * 100 # 转换为百分比
-
- # 计算退款相关指标
- refunded_orders = df[df['退款状态'] != '没有申请退款']
- total_refund = refunded_orders['退款金额'].sum()
- refund_rate = len(refunded_orders) / len(df) * 100 if len(df) > 0 else 0
-
- summary = {
- 'total_orders': len(df),
- 'total_quantity': int(total_quantity),
- 'total_revenue': round(total_revenue, 2),
- 'avg_price': round(avg_price, 2),
- 'avg_promotion': round(avg_promotion, 2),
- 'total_refund': round(total_refund, 2),
- 'refund_rate': round(refund_rate, 2)
- }
-
- return summary
- def analyze_categories(df):
- """
- 按品类分析
- """
- categories_data = {}
- category_list = []
- category_skus = defaultdict(list)
-
- # 按品类分组
- grouped = df.groupby('品类')
-
- for category, group in grouped:
- category_list.append(category)
-
- # 计算品类指标
- total_quantity = group['购买数量'].sum()
- total_revenue = group['买家实际支付金额'].sum()
- avg_price = total_revenue / total_quantity if total_quantity > 0 else 0
-
- # 计算促销力度
- group['促销力度'] = 1 - (group['买家实际支付金额'] / group['买家应付货款'])
- group['促销力度'] = group['促销力度'].fillna(0)
- avg_promotion = group['促销力度'].mean() * 100
-
- # 计算退款相关指标
- refunded_orders = group[group['退款状态'] != '没有申请退款']
- total_refund = refunded_orders['退款金额'].sum()
- refund_rate = len(refunded_orders) / len(group) * 100 if len(group) > 0 else 0
-
- # 趋势数据
- date_series = []
- quantity_series = []
- price_series = []
-
- # 按日期排序
- date_grouped = group.groupby('日期')
- for date in sorted(date_grouped.groups.keys()):
- date_series.append(str(date))
- date_data = date_grouped.get_group(date)
- quantity_series.append(int(date_data['购买数量'].sum()))
- avg_date_price = date_data['买家实际支付金额'].sum() / date_data['购买数量'].sum() if date_data['购买数量'].sum() > 0 else 0
- price_series.append(round(avg_date_price, 2))
-
- categories_data[category] = {
- 'total_quantity': int(total_quantity),
- 'total_revenue': round(total_revenue, 2),
- 'avg_price': round(avg_price, 2),
- 'avg_promotion': round(avg_promotion, 2),
- 'total_refund': round(total_refund, 2),
- 'refund_rate': round(refund_rate, 2),
- 'date_series': date_series,
- 'quantity_series': quantity_series,
- 'price_series': price_series
- }
-
- # 收集该品类下的SKU
- skus = group['SKU'].unique().tolist()
- category_skus[category] = skus
-
- return {
- 'categories_data': categories_data,
- 'category_list': category_list,
- 'category_skus': dict(category_skus)
- }
- def analyze_skus(df):
- """
- 按SKU分析
- """
- sku_data = {}
- sku_list = []
-
- # 按SKU分组
- grouped = df.groupby('SKU')
-
- for sku, group in grouped:
- sku_list.append(sku)
-
- # 计算SKU指标
- total_quantity = group['购买数量'].sum()
- total_revenue = group['买家实际支付金额'].sum()
- avg_price = total_revenue / total_quantity if total_quantity > 0 else 0
-
- # 计算促销力度
- group['促销力度'] = 1 - (group['买家实际支付金额'] / group['买家应付货款'])
- group['促销力度'] = group['促销力度'].fillna(0)
- avg_promotion = group['促销力度'].mean() * 100
-
- # 计算退款相关指标
- refunded_orders = group[group['退款状态'] != '没有申请退款']
- total_refund = refunded_orders['退款金额'].sum()
- refund_rate = len(refunded_orders) / len(group) * 100 if len(group) > 0 else 0
-
- # 趋势数据
- date_series = []
- quantity_series = []
- price_series = []
-
- # 按日期排序
- date_grouped = group.groupby('日期')
- for date in sorted(date_grouped.groups.keys()):
- date_series.append(str(date))
- date_data = date_grouped.get_group(date)
- quantity_series.append(int(date_data['购买数量'].sum()))
- avg_date_price = date_data['买家实际支付金额'].sum() / date_data['购买数量'].sum() if date_data['购买数量'].sum() > 0 else 0
- price_series.append(round(avg_date_price, 2))
-
- sku_data[sku] = {
- 'total_quantity': int(total_quantity),
- 'total_revenue': round(total_revenue, 2),
- 'avg_price': round(avg_price, 2),
- 'avg_promotion': round(avg_promotion, 2),
- 'total_refund': round(total_refund, 2),
- 'refund_rate': round(refund_rate, 2),
- 'date_series': date_series,
- 'quantity_series': quantity_series,
- 'price_series': price_series
- }
-
- return {
- 'sku_data': sku_data,
- 'sku_list': sku_list
- }
- def analyze_trends(df):
- """
- 分析趋势数据
- """
- # 按日期分组
- date_grouped = df.groupby('日期')
-
- date_series = []
- quantity_series = []
- revenue_series = []
- avg_price_series = []
- avg_promotion_series = []
-
- for date in sorted(date_grouped.groups.keys()):
- date_series.append(str(date))
- date_data = date_grouped.get_group(date)
-
- quantity = date_data['购买数量'].sum()
- revenue = date_data['买家实际支付金额'].sum()
- avg_price = revenue / quantity if quantity > 0 else 0
-
- # 计算促销力度
- date_data['促销力度'] = 1 - (date_data['买家实际支付金额'] / date_data['买家应付货款'])
- date_data['促销力度'] = date_data['促销力度'].fillna(0)
- avg_promotion = date_data['促销力度'].mean() * 100
-
- quantity_series.append(int(quantity))
- revenue_series.append(round(revenue, 2))
- avg_price_series.append(round(avg_price, 2))
- avg_promotion_series.append(round(avg_promotion, 2))
-
- trends = {
- 'date_series': date_series,
- 'quantity_series': quantity_series,
- 'revenue_series': revenue_series,
- 'avg_price_series': avg_price_series,
- 'avg_promotion_series': avg_promotion_series
- }
-
- return trends
- def detect_anomalies(df):
- """
- 检测异常数据
- """
- anomalies = []
-
- # 按SKU分组检测异常
- grouped = df.groupby('SKU')
-
- for sku, group in grouped:
- # 检测销量异常
- quantity_mean = group['购买数量'].mean()
- quantity_std = group['购买数量'].std()
- if quantity_std > 0:
- for idx, row in group.iterrows():
- quantity = row['购买数量']
- z_score = abs((quantity - quantity_mean) / quantity_std)
- if z_score > 2.5:
- anomalies.append({
- 'date': str(row['日期']) if pd.notna(row['日期']) else '未知',
- 'sku': sku,
- 'type': 'quantity_spike' if quantity > quantity_mean else 'quantity_drop',
- 'reason': f'销量异常,偏离均值 {z_score:.2f} 个标准差',
- 'value': float(quantity),
- 'expected': float(quantity_mean),
- 'deviation': float(z_score)
- })
-
- # 检测价格异常
- price_mean = group['价格'].mean()
- price_std = group['价格'].std()
- if price_std > 0:
- for idx, row in group.iterrows():
- price = row['价格']
- z_score = abs((price - price_mean) / price_std)
- if z_score > 2.5:
- anomalies.append({
- 'date': str(row['日期']) if pd.notna(row['日期']) else '未知',
- 'sku': sku,
- 'type': 'price_spike' if price > price_mean else 'price_drop',
- 'reason': f'价格异常,偏离均值 {z_score:.2f} 个标准差',
- 'value': float(price),
- 'expected': float(price_mean),
- 'deviation': float(z_score)
- })
-
- anomaly_count = len(anomalies)
- anomaly_rate = (anomaly_count / len(df)) * 100 if len(df) > 0 else 0
-
- return {
- 'anomaly_count': anomaly_count,
- 'anomaly_rate': round(anomaly_rate, 2),
- 'anomalies': anomalies
- }
|