I am using python for some data analysis. I have two tables, the first (lets call it 'A') has 10 million rows and 10 columns and the second ('B') has 73 million rows and 2 columns. They have 1 column with common ids and I want to intersect the two tables based on that column. In particular I want the inner join of the tables. I could not load the table B on memory as a pandas dataframe to use the normal merge function on pandas. I tried by reading the file of table B on chunks, intersecting each chunk with A and the concatenating these intersections (output from inner joins). This is OK on speed but every now and then this gives me problems and spits out a segmentation fault ... no so great. This error is difficult to reproduce but it happens on two different machines (Mac OS Snow Leopard and UNIX, RedHat). I finally tried with the combination of Pandas and PyTables by writing table B to disk and then iterating over table A and selecting from table B the matching rows. This last options works but it is slow. Table B on pytables has been indexed already by default. I wonder if you could suggest any other idea of how to tackle this problem. Thanks in advance
this is a little pseudo codish, but I think should be quite fast. straightfoward disk based merge, with all tables on disk. The key is that you are not doing selection per se, just indexing into the table via start/stop, which is quite fast.
Selecting the rows that meet a criteria in B (using A's ids) won't be very fast because I think it might be bringing the data into python space rather than an in-kernel search (I am not sure, but you might want to investiage on pytables.org more in the in-kernel optmization section, there is a way to tell if its going to be in-kernel or not)
Also if you are up to it, this is a very parallel problem (just don't write the results to the same file from multiple processes, pytables is not write-safe for that)
See this answer for a comment on how doing a join operation will actually be an 'inner' join.
For your merge_a_b operation I think you can use a standard pandas join which is quite efficient (when in-memory)
One other option (depending on how 'big' A) is, might be to separate A into 2 pieces (that are indexed the same), using a smaller (maybe use single column) in the first table; instead of storing the merge results per se, store the row index; later you can pull out the data you need (kind of like using an indexer and take) see http://pandas.pydata.org/pandas-docs/stable/io.html#multiple-table-queries