Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I have a database of person records that I need to load into memory, since they will be accessed many times in a variety of orders. Up until now I've just instantiated one Python object per record. But now that I have 8,000,000 records to work with, I don't have enough memory for this straightforward approach.

In a flat file, each record only takes up at most 500 bytes, without compression (much less with compression). So the whole dataset is less than 4 GB on disk. Once each record is loaded by Python as an object, however, I estimate 40 GB of RAM will be used. My machine only has 12 GB of RAM.

I'm considering integrating C with my Python program, and storing each record as a struct in C. Does this sound like a good solution? Or is there a better way to store records compactly in Python, that doesn't require interfacing with C?

Update: The database I'm using is Hbase (http://hbase.apache.org/), running on Hadoop. The connection to Python happens through Thrift (http://thrift.apache.org/).

Update 2: I need to access all the records in the database in many different orders, and these orders are determined at run time. I guess, at every iteration, I could make 8,000,000 queries to the database, but I think this is likely to be quite slow.

Update 3: I don't think there's a good way to store the rows, such that they can be accessed sequentially. The order in which I need the records in the next iteration (my program is an iterative machine learning algorithm), is determined by a linear algebra projection onto a particular eigenvector of the data matrix during the previous iteration.

share|improve this question
2  
Isn't the point of most databases that you don't have to store your data in memory? –  Waleed Khan Aug 27 '12 at 19:12
    
What is your database? Why do you need to load into memory? –  JBernardo Aug 27 '12 at 19:12
    
Yeah, what is the point of dumping the entire db into memory? –  reptilicus Aug 27 '12 at 19:14
3  
Have you looked into __slots__ on the class that stores a record of data? That should make your objects more memory efficient at the expense of flexability. –  mgilson Aug 27 '12 at 19:19
1  
What type of data do you get from the database ? If it's for a ML algorithm, you should only need numerical values, and thus I would recommend to see numpy and store everything in matrices (stored as raw C arrays) –  Scharron Aug 27 '12 at 19:20

4 Answers 4

up vote 2 down vote accepted

It sounds like numpy structured arrays could work well here. It will use a lot less memory than using python objects and numpy provides many fast & convenient operations on them. Additionally, the arrays can be memory mapped files which can be useful sometimes.

Whether or not a database is a good option (as others suggest) depends on your algorithm as well as data sizes. There are many cases where numpy is a better solution (less work, more efficient, etc.).

share|improve this answer
    
It seems like numpy's structured arrays are about as memory efficient as structs is C, so this is exactly what I was looking for! Thanks much. –  Jeff Aug 28 '12 at 15:34

This is a perfect use case for a database. Instead of storing everything in memory, you can store it on disk and query it as you like.

sqllite3 is one good and easy option. You might be particularly interested in an Object Relational Mapper (ORM) such as SQLAlchemy, which makes working with databases similar to working with Python objects.

share|improve this answer
    
Actually, SQLite can work with in-memory databases, so it covers that requirement as well. –  lanzz Aug 27 '12 at 20:31
    
@lanzz: True, but I assumed the database was too large for that to be a good option. –  David Robinson Aug 27 '12 at 20:43

There may be a lot of ways to handle this depending on the desired performance and use cases, but you probably don't really need to have all data in memory. One obvious way to go is using a real database engine like sqlite or mysql. A simpler-to-implement, but probably much slower way is shelve.

share|improve this answer
    
Actually I have found shelve to be much faster for certain use cases (num reads >>> num writes) -- with the added cost of the data being restricted to a single machine –  Pyrce Aug 27 '12 at 19:19

I agree with the others in that thread that a database would be the tool of choice, but if you insist on in memory have a lookt at http://www.memsql.com/ (though I have never worked with it)

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.