Hi Amine,

I haven't worked with the map type directly, but the underlying storage would 
probably be a set of byte buffers to represent offsets and data.
You could read them as numpy arrays, and use numba to get the 2D numpy arrays?

There is a helpful tutorial here: 
https://uwekorn.com/2018/08/03/use-numba-to-work-with-apache-arrow-in-pure-python.html
[https://avatars2.githubusercontent.com/u/70274?s=460&v=4]<https://uwekorn.com/2018/08/03/use-numba-to-work-with-apache-arrow-in-pure-python.html>
Use Numba to work with Apache Arrow in pure Python | Uwe’s 
Blog<https://uwekorn.com/2018/08/03/use-numba-to-work-with-apache-arrow-in-pure-python.html>
Use Numba to work with Apache Arrow in pure Python · 03 Aug 2018 Apache Arrow 
is an in-memory memory format for columnar data. In more “plain” English, it is 
a standard on how to store DataFrames/tables in memory, independent of the 
programming language.
uwekorn.com

Best,
Ishan
________________________________
From: Amine Boubezari <[email protected]>
Sent: Wednesday, November 25, 2020 9:11 AM
To: [email protected] <[email protected]>
Subject: How to best get data from pyarrow.Table column of MapType to a 2D 
numpy array?


Hello, I have question regarding best practices with Apache Arrow. I have a 
very large dataset (10's of millions of rows) stored on a partitioned parquet 
dataset on disk. I load this dataset into memory into a pyarrow.Table, and drop 
all columns except one, which is of type MapType mapping integers to floats. 
This column represents sparse feature vector data to be used in an ML context. 
Call the number of rows "num_rows". My job is to transform this column to a 2D 
numpy array of shape ("num_rows" x "num_cols") where both rows and cols are 
known before hand. If one of my pyarrow.Table rows looks like [(1, 3.4), (2, 
4.4), (4, 5.4), (6, 6.4)] and "num_cols" = 10, then that row in the numpy array 
would look like [0, 3.4, 4.4, 0, 5.4, 0, 6.4, 0, 0, 0, 0], where unmapped 
values are just 0. My 2D numpy array would just be the collection of rows from 
the pyarrow.Table transformed in such a way. What is the best, most efficient 
way to accomplish this, considering I have 10's of millions of rows? Assume I 
have enough memory to fit the entire dataset.

Note that I can use table.to_pandas() to get a pandas DF, and then map 
functions on the pandas series, if that would help in the solution. So far I 
have been stumped, however. df.to_numpy() has not been helpful here.

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