Let*_*t4U 7 python statistics pandas
这里的熊猫新手。一个(微不足道的)问题:主机、操作、执行时间。我想按主机分组,然后按主机+操作,计算每个主机的执行时间的标准偏差,然后按主机+操作对。看起来很简单?
它适用于按单列分组:
df
Out[360]:
<class 'pandas.core.frame.DataFrame'>
Int64Index: 132564 entries, 0 to 132563
Data columns (total 9 columns):
datespecial 132564 non-null values
host 132564 non-null values
idnum 132564 non-null values
operation 132564 non-null values
time 132564 non-null values
...
dtypes: float32(1), int64(2), object(6)
byhost = df.groupby('host')
byhost.std()
Out[362]:
datespecial idnum time
host
ahost1.test 11946.961952 40367.033852 0.003699
host1.test 15484.975077 38206.578115 0.008800
host10.test NaN 37644.137631 0.018001
...
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好的。现在:
byhostandop = df.groupby(['host', 'operation'])
byhostandop.std()
---------------------------------------------------------------------------
ValueError Traceback (most recent call last)
<ipython-input-364-2c2566b866c4> in <module>()
----> 1 byhostandop.std()
/home/username/anaconda/lib/python2.7/site-packages/pandas/core/groupby.pyc in std(self, ddof)
386 # todo, implement at cython level?
387 if ddof == 1:
--> 388 return self._cython_agg_general('std')
389 else:
390 f = lambda x: x.std(ddof=ddof)
/home/username/anaconda/lib/python2.7/site-packages/pandas/core/groupby.pyc in _cython_agg_general(self, how, numeric_only)
1615
1616 def _cython_agg_general(self, how, numeric_only=True):
-> 1617 new_blocks = self._cython_agg_blocks(how, numeric_only=numeric_only)
1618 return self._wrap_agged_blocks(new_blocks)
1619
/home/username/anaconda/lib/python2.7/site-packages/pandas/core/groupby.pyc in _cython_agg_blocks(self, how, numeric_only)
1653 values = com.ensure_float(values)
1654
-> 1655 result, _ = self.grouper.aggregate(values, how, axis=agg_axis)
1656
1657 # see if we can cast the block back to the original dtype
/home/username/anaconda/lib/python2.7/site-packages/pandas/core/groupby.pyc in aggregate(self, values, how, axis)
838 if is_numeric:
839 result = lib.row_bool_subset(result,
--> 840 (counts > 0).view(np.uint8))
841 else:
842 result = lib.row_bool_subset_object(result,
/home/username/anaconda/lib/python2.7/site-packages/pandas/lib.so in pandas.lib.row_bool_subset (pandas/lib.c:16540)()
ValueError: Buffer dtype mismatch, expected 'float64_t' but got 'float'
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嗯??为什么我会收到此异常?
更多问题:
我如何计算标准偏差dataframe.groupby([several columns])?
如何将计算限制为选定的列?例如,在这里计算日期/时间戳的 std dev 显然没有意义。
了解您的 Pandas / Python 版本非常重要。看起来这个异常可能会在 Pandas 版本 < 0.10 中出现(参见ValueError: Buffer dtype Mismatch, Expected 'float64_t' but getting 'float')。为了避免这种情况,您可以将float列转换为float64:
df.astype('float64')
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要计算std()选定的列,只需选择列:)
>>> df = pd.DataFrame({'a':range(10), 'b':range(10,20), 'c':list('abcdefghij'), 'g':[1]*3 + [2]*3 + [3]*4})
>>> df
a b c g
0 0 10 a 1
1 1 11 b 1
2 2 12 c 1
3 3 13 d 2
4 4 14 e 2
5 5 15 f 2
6 6 16 g 3
7 7 17 h 3
8 8 18 i 3
9 9 19 j 3
>>> df.groupby('g')[['a', 'b']].std()
a b
g
1 1.000000 1.000000
2 1.000000 1.000000
3 1.290994 1.290994
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就目前而言,它看起来像是std()在调用aggregation()结果groupby,并且存在一个微妙的错误(请参阅此处 - Python Pandas:使用聚合与应用来定义新列)。为了避免这种情况,您可以使用apply():
byhostandop['time'].apply(lambda x: x.std())
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