[英]Converting a pandas multi-index series to a dataframe by using second index as columns
Hi I have a DataFrame/Series with 2-level multi-index and one column. 嗨我有一个带有2级多索引和一列的DataFrame / Series。 I would like to take the second-level index and use it as a column. 我想采用二级索引并将其用作列。 For example (code taken from multi-index docs ): 例如(从多索引文档中获取的代码):
import pandas as pd
import numpy as np
arrays = [['bar', 'bar', 'baz', 'baz', 'foo', 'foo', 'qux', 'qux'],
['one', 'two', 'one', 'two', 'one', 'two', 'one', 'two']]
tuples = list(zip(*arrays))
index = pd.MultiIndex.from_tuples(tuples, names=['first', 'second'])
s = pd.DataFrame(np.random.randn(8), index=index, columns=["col"])
Which looks like: 看起来像:
first second
bar one -0.982656
two -0.078237
baz one -0.345640
two -0.160661
foo one -0.605568
two -0.140384
qux one 1.434702
two -1.065408
dtype: float64
What I would like is to have a DataFrame with index [bar, baz, foo, qux]
and columns [one, two]
. 我想要的是一个带有索引[bar, baz, foo, qux]
和列[one, two]
[bar, baz, foo, qux]
。
You just need to unstack
your series: 你只需要unstack
你的系列:
>>> s.unstack(level=1)
second one two
first
bar -0.713374 0.556993
baz 0.523611 0.328348
foo 0.338351 -0.571854
qux 0.036694 -0.161852
Here's a solution using array reshaping - 这是使用数组重塑的解决方案 -
>>> idx = s.index.levels
>>> c = len(idx[1])
>>> pd.DataFrame(s.values.reshape(-1,c),index=idx[0].values, columns=idx[1].values)
one two
bar 2.225401 1.624866
baz 1.067359 0.349440
foo -0.468149 -0.352303
qux 1.215427 0.429146
If you don't care about the names appearing on top of indexes - 如果你不关心索引顶部出现的名字 -
>>> pd.DataFrame(s.values.reshape(-1,c), index=idx[0], columns=idx[1])
second one two
first
bar 2.225401 1.624866
baz 1.067359 0.349440
foo -0.468149 -0.352303
qux 1.215427 0.429146
Timings for the given dataset size - 给定数据集大小的计时 -
# @AChampion's solution
In [201]: %timeit s.unstack(level=1)
1000 loops, best of 3: 444 µs per loop
# Using array reshaping step-1
In [199]: %timeit s.index.levels
1000000 loops, best of 3: 214 ns per loop
# Using array reshaping step-2
In [202]: %timeit pd.DataFrame(s.values.reshape(-1,2), index=idx[0], columns=idx[1])
10000 loops, best of 3: 47.3 µs per loop
Another powerful solution is using .reset_index
and .pivot
: 另一个强大的解决方案是使用.reset_index
和.pivot
:
levels= [['bar', 'baz'], ['one', 'two', 'three']]
index = pd.MultiIndex.from_product(levels, names=['first', 'second'])
series = pd.Series(np.random.randn(6), index)
df = series.reset_index()
# Shorthand notation instead of explicitly naming index, columns and values
df = df.pivot(*df.columns)
Result: 结果:
second one three two
first
bar 1.047692 1.209063 0.891820
baz 0.083602 -0.303528 -1.385458
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