I received over 100GB of data with 67million records from one of the retailers. My objective is to do some market-basket analysis and CLV. This data is a direct sql dump from one of the tables with 70 columns. I'm trying to find a way to extract information from this data as managing itself in a small laptop/desktop setup is becoming time consuming. I considered the following options
- Parse the data and convert the same to CSV format. File size might come down to around 35-40GB as more than half of the information in each records is column names. However, I may still have to use a db as I cant use R or Excel with 66 million records.
- Migrate the data to mysql db. Unfortunately I don't have the schema for the table and I'm trying to recreate the schema looking at the data. I may have to replace
to_date()in the data dump to
str_to_date()to match with MySQL format.
Are there any better way to handle this? All that I need to do is extract the data from the sql dump by running some queries. Hadoop etc. are options, but I dont have the infrastructure to setup a cluster. I'm considering mysql as I have storage space and some memory to spare.
Suppose I go in the MySQL path, how would I import the data? I'm considering one of the following
str_to_date()inline. Note that, I need to do this for a 100GB file. Then import the data using
- Write python/perl script that will read the file, convert the data and write to mysql directly.
What would be faster? Thank you for your help.