Pandas: Modify a particular level of Multiindex Pandas: Modify a particular level of Multiindex python python

Pandas: Modify a particular level of Multiindex


Thanks to @cxrodgers's comment, I think the fastest way to do this is:

df.index = df.index.set_levels(df.index.levels[0].str.replace(' ', ''), level=0)

Old, longer answer:

I found that the list comprehension suggested by @Shovalt works but felt slow on my machine (using a dataframe with >10,000 rows).

Instead, I was able to use .set_levels method, which was quite a bit faster for me.

%timeit pd.MultiIndex.from_tuples([(x[0].replace(' ',''), x[1]) for x in df.index])1 loop, best of 3: 394 ms per loop%timeit df.index.set_levels(df.index.get_level_values(0).str.replace(' ',''), level=0)10 loops, best of 3: 134 ms per loop

In actuality, I just needed to prepend some text. This was even faster with .set_levels:

%timeit pd.MultiIndex.from_tuples([('00'+x[0], x[1]) for x in df.index])100 loops, best of 3: 5.18 ms per loop%timeit df.index.set_levels('00'+df.index.get_level_values(0), level=0)1000 loops, best of 3: 1.38 ms per loop%timeit df.index.set_levels('00'+df.index.levels[0], level=0)1000 loops, best of 3: 331 µs per loop

This solution is based on the answer in the link from the comment by @denfromufa ...

python - Multiindex and timezone - Frozen list error - Stack Overflow


As mentioned in the comments, indexes are immutable and must be remade when modifying, but you do not have to use reset_index for that, you can create a new multi-index directly:

df.index = pd.MultiIndex.from_tuples([(x[0], x[1].replace(' ', ''), x[2]) for x in df.index])

This example is for a 3-level index, where you want to modify the middle level. You need to change the size of the tuple for different level sizes.

Update

John's improvement is great performance-wise, but as mentioned in the comments it causes an error. So here's the corrected implementation with small improvements:

df.index.set_levels(    df.index.levels[0].str.replace(' ',''),     level=0,    inplace=True,  # If False, you will need to use `df.index = ...`)

If you'd like to use level names instead of numbers, you'll need another small variation:

df.index.set_levels(    df.index.levels[df.index.names.index('level_name')].str.replace(' ',''),     level='level_name',    inplace=True,)


The other answers are working fine. Depending on the structure of the multi-index, it can be considerably faster to apply a map directly on the levels instead of constructing a new multi-index.

I use the following function to modify a particular index level. It works also on single-level indices.

def map_index_level(index, mapper, level=0):    """    Returns a new Index or MultiIndex, with the level values being mapped.    """    assert(isinstance(index, pd.Index))    if isinstance(index, pd.MultiIndex):        new_level = index.levels[level].map(mapper)        new_index = index.set_levels(new_level, level=level)    else:        # Single level index.        assert(level==0)        new_index = index.map(mapper)    return new_index

Usage:

df = pd.DataFrame([[1,2],[3,4]])df.index = pd.MultiIndex.from_product([["a"],["i","ii"]])df.columns = ["x","y"]df.index = map_index_level(index=df.index, mapper=str.upper, level=1)df.columns = map_index_level(index=df.columns, mapper={"x":"foo", "y":"bar"})# Result:#       foo  bar# a I     1    2#   II    3    4

Note: The above works only if mapper preserves the uniqueness of level values! In the above example, mapper = {"i": "new", "ii": "new"} will fail in set_index() with a ValueError: Level values must be unique. One could disable the integrity check modifying above code to:

new_index = index.set_levels(new_level, level=level,                             verify_integrity=False)

But better don't! See the docs of set_levels.