Pandas数据帧中值的矢量化查找

luc*_*ool 24 python numpy vectorization pandas

我有两个pandas数据帧,一个叫做'orders',另一个叫做'daily_prices'.daily_prices如下:

              AAPL    GOOG     IBM    XOM
2011-01-10  339.44  614.21  142.78  71.57
2011-01-13  342.64  616.69  143.92  73.08
2011-01-26  340.82  616.50  155.74  75.89
2011-02-02  341.29  612.00  157.93  79.46
2011-02-10  351.42  616.44  159.32  79.68
2011-03-03  356.40  609.56  158.73  82.19
2011-05-03  345.14  533.89  167.84  82.00
2011-06-03  340.42  523.08  160.97  78.19
2011-06-10  323.03  509.51  159.14  76.84
2011-08-01  393.26  606.77  176.28  76.67
2011-12-20  392.46  630.37  184.14  79.97
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订单如下:

           direction  size ticker  prices
2011-01-10       Buy  1500   AAPL  339.44
2011-01-13      Sell  1500   AAPL  342.64
2011-01-13       Buy  4000    IBM  143.92
2011-01-26       Buy  1000   GOOG  616.50
2011-02-02      Sell  4000    XOM   79.46
2011-02-10       Buy  4000    XOM   79.68
2011-03-03      Sell  1000   GOOG  609.56
2011-03-03      Sell  2200    IBM  158.73
2011-06-03      Sell  3300    IBM  160.97
2011-05-03       Buy  1500    IBM  167.84
2011-06-10       Buy  1200   AAPL  323.03
2011-08-01       Buy    55   GOOG  606.77
2011-08-01      Sell    55   GOOG  606.77
2011-12-20      Sell  1200   AAPL  392.46
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两个数据帧的索引是datetime.date.'orders'数据框中的'price'列通过使用列表推导来循环遍历所有订单并在'daily_prices'数据框中查找特定日期的特定代码,然后将该列表作为列添加到'订单'数据框.我想使用数组操作而不是循环的东西来做这件事.能做到吗?我试着用:

daily_prices.ix [日期,代号]

但是这会返回两个列表中的笛卡尔积的矩阵.我希望它返回指定日期的指定股票价格的列向量.

Wes*_*ney 44

使用我们的朋友lookup,专为此目的而设计:

In [17]: prices
Out[17]: 
              AAPL    GOOG     IBM    XOM
2011-01-10  339.44  614.21  142.78  71.57
2011-01-13  342.64  616.69  143.92  73.08
2011-01-26  340.82  616.50  155.74  75.89
2011-02-02  341.29  612.00  157.93  79.46
2011-02-10  351.42  616.44  159.32  79.68
2011-03-03  356.40  609.56  158.73  82.19
2011-05-03  345.14  533.89  167.84  82.00
2011-06-03  340.42  523.08  160.97  78.19
2011-06-10  323.03  509.51  159.14  76.84
2011-08-01  393.26  606.77  176.28  76.67
2011-12-20  392.46  630.37  184.14  79.97

In [18]: orders
Out[18]: 
                  Date direction  size ticker  prices
0  2011-01-10 00:00:00       Buy  1500   AAPL  339.44
1  2011-01-13 00:00:00      Sell  1500   AAPL  342.64
2  2011-01-13 00:00:00       Buy  4000    IBM  143.92
3  2011-01-26 00:00:00       Buy  1000   GOOG  616.50
4  2011-02-02 00:00:00      Sell  4000    XOM   79.46
5  2011-02-10 00:00:00       Buy  4000    XOM   79.68
6  2011-03-03 00:00:00      Sell  1000   GOOG  609.56
7  2011-03-03 00:00:00      Sell  2200    IBM  158.73
8  2011-06-03 00:00:00      Sell  3300    IBM  160.97
9  2011-05-03 00:00:00       Buy  1500    IBM  167.84
10 2011-06-10 00:00:00       Buy  1200   AAPL  323.03
11 2011-08-01 00:00:00       Buy    55   GOOG  606.77
12 2011-08-01 00:00:00      Sell    55   GOOG  606.77
13 2011-12-20 00:00:00      Sell  1200   AAPL  392.46

In [19]: prices.lookup(orders.Date, orders.ticker)
Out[19]: 
array([ 339.44,  342.64,  143.92,  616.5 ,   79.46,   79.68,  609.56,
        158.73,  160.97,  167.84,  323.03,  606.77,  606.77,  392.46])
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  • 我正在尝试各种奇特的方式自己做,我应该知道你已经实现了它.谢谢你这个很棒的包Wes.让生活变得更加轻松.迫不及待地想看看你接下来会想出什么. (3认同)
  • 我不确定这是否会引起注意,但首先尝试这里是有意义的:我想做一些接近但我需要将系列值与按天数索引的系列匹配到按日期时间索引的数据帧.我得到"系列对象没有属性查找".所以像df ['d'] = df.index.date - > df ['x'] = ts.lookup(df.d) (2认同)