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.