Python .resample(';W';)仅拾取一列,而子集包含两列

Python .resample(';W';)仅拾取一列,而子集包含两列,python,pandas,summarize,Python,Pandas,Summarize,我试图在对两列进行子集设置后对熊猫数据帧重新采样。下面是数据帧的头部。两列都是熊猫系列 temp_2011_clean[['visibility', 'dry_bulb_faren']].head() visibility dry_bulb_faren 2011-01-01 00:53:00 10.00 51.0 2011-01-01 01:53:00 10.00 51.0 2011-01-01 02:53:00 10.0

我试图在对两列进行子集设置后对熊猫数据帧重新采样。下面是数据帧的头部。两列都是熊猫系列

temp_2011_clean[['visibility', 'dry_bulb_faren']].head()
                    visibility  dry_bulb_faren
2011-01-01 00:53:00     10.00   51.0
2011-01-01 01:53:00     10.00   51.0
2011-01-01 02:53:00     10.00   51.0
2011-01-01 03:53:00     10.00   50.0
2011-01-01 04:53:00     10.00   50.0

type(temp_2011_clean['visibility'])
pandas.core.series.Series

type(temp_2011_clean['dry_bulb_faren'])
pandas.core.series.Series
虽然.resample('W')方法成功地创建了重采样对象,但如果我将.mean()方法链接到同一个对象,它只拾取一列,而不是预期的两列。有人能提出什么问题吗?为什么少了一列

temp_2011_clean[['visibility', 'dry_bulb_faren']].resample('W')
<pandas.core.resample.DatetimeIndexResampler object at 0x0000016F4B943288>

temp_2011_clean[['visibility', 'dry_bulb_faren']].resample('W').mean().head()
            dry_bulb_faren
2011-01-02  44.791667
2011-01-09  50.246637
2011-01-16  41.103774
2011-01-23  47.194313
2011-01-30  53.486188
temp_2011_clean[[能见度”,“干球”[u faren']。重新采样('W')
温度(2011年)清洁[[“能见度”,“干球”]。重新取样('W')。平均值()。水头()
干球
2011-01-02  44.791667
2011-01-09  50.246637
2011-01-16  41.103774
2011-01-23  47.194313
2011-01-30  53.486188

我认为问题应该是列
可见性
不是数字列,所以非数字列被排除在外

print (temp_2011_clean.dtypes)
visibility         object
dry_bulb_faren    float64
dtype: object

df = temp_2011_clean[['visibility', 'dry_bulb_faren']].resample('W').mean()
print (df)
            dry_bulb_faren
2011-01-02            50.6
因此,通过使用
errors='concurve'
将列转换为数值,以便将非数值转换为
NaN
s:

temp_2011_clean['visibility'] = pd.to_numeric(temp_2011_clean['visibility'], errors='coerce')

print (temp_2011_clean.dtypes)
visibility        float64
dry_bulb_faren    float64
dtype: object

df = temp_2011_clean[['visibility', 'dry_bulb_faren']].resample('W').mean()
print (df)
            visibility  dry_bulb_faren
2011-01-02        10.0            50.6

嗨,耶斯雷尔,你说得完全正确。谢谢。我只是想知道。为了重现解决方案/分析示例(如上所述),您是否重构了类似的数据帧和其他对象?响应者通常采用什么流程?@Srinivas-我使用
temp\u 2011\u clean['visibility']=temp\u 2011\u clean['visibility'].astype(str)
;)