1

I have a dataframe like this:

r_id c_id
0 x 1
1 y 1
2 z 2
3 u 3
4 v 3
5 w 4
6 x 4

which you can reproduce like this:

import pandas as pd

r1 = ['x', 'y', 'z', 'u', 'v', 'w', 'x']
r2 = ['1', '1', '2', '3', '3', '4', '4']
df = pd.DataFrame([r1,r2]).T
df.columns = ['r_id', 'c_id']

Where a row has a duplicate r_id, I want to relabel all cases of that c_id with the first c_id value that was given for the duplicate r_id.

(Edit: maybe this is somewhat subtle, but I therefore want to relabel 'w's c_id as '1', as well as that belonging to the second case of 'x'. The duplication of 'x' shows me that all instances where c_id == '1' and c_id == '2' should have the same label.)

For a small dataframe, this works:

from collections import defaultdict
import networkx as nx

g = nx.from_pandas_edgelist(df, 'r_id', 'c_id')
subgraphs = [g.subgraph(c) for c in nx.connected_components(g)]
translator = {n: sorted(list(g.nodes))[0] for g in subgraphs for n in g.nodes if n in df.c_id.values}
df['simplified'] = df.c_id.apply(lambda x: translator[x])

so that I get this:

r_id c_id simplified
0 x 1 1
1 y 1 1
2 z 2 2
3 u 3 3
4 v 3 3
5 w 4 1
6 x 4 1

But I'm trying to do this for a table with 2.5 million rows and my computer is struggling... There must be a more efficient way to do something like this.

3
  • Your explanation is not clear and please don't change your question entirely after the answers come in.
    – Vishnudev
    Sep 15 at 16:49
  • The edit history clearly shows that 'changing the question entirely' is an absurd complaint. @Vishnudev I'm sorry you didn't understand my problem. ¯_(ツ)_/¯ Sep 15 at 21:24
  • By entirely I mean the logic required. Nowhere other than the code it is mentioned that network/graph is to be used. @Peter
    – Vishnudev
    Sep 16 at 5:16
0

Okay, if I optimize my initial answer by just using the memory id() as a unique label for a connected set (or rather, a subgraph, since I'm using networkx to find these), and don't check any condition while I'm generating the dictionary but just use a .get() so that it passes gracefully past values that have no key, then this seems to work:

def simplify(original_df):
    df = original_df.copy()
    g = nx.from_pandas_edgelist(df, 'r_id', 'c_id')
    subgraphs = [g.subgraph(c) for c in nx.connected_components(g)]
    translator = {n: id(g) for g in subgraphs for n in g.nodes}
    df['simplified'] = df.c_id.apply(lambda x: translator.get(x,x))
    return df

Manages to do what I want for 2,840,759 rows in 14.49 seconds on my laptop, which will do fine.

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