2

I have a big dictionary (1mil keys) in the form of:

{
    key1: {
        file1: [number_list1],
        file7: [number_list2],
        file10: [number_list3],
        ...
    }
    key2: {
        file1: [number_list4],
        file5: [number_list5],
        file2: [number_list6],
        ...               
    }
    ...
    ...
}

Due to various constraints, after building it I can't keep it in memory and have to dump it on disk in its pickled form. However, I still want fast lookup from disk to any one of the keys.

My idea was to divide the big dict into smaller chunks (ballpark of 0.5-1MB). This requires an additional key:chunk mapping but allows me to load only the necessary chunk during lookup. I came up with the following algorithm:

  def split_to_pages(self, big_dict):
    page_buffer = defaultdict(lambda: defaultdict(list))
    page_size = 0
    page_number = 0
    symbol2page = {}
    for symbol, files in big_dict.items():
        page_buffer[symbol] = files
        symbol2page[symbol] = page_number
        page_size += deep_sizeof_bytes(files)
        if page_size > max_page_size:
            save_page_to_file(page_number, page_buffer)
            page_buffer.clear()
            page_size = 0
            page_number += 1
    if page_size > 0:
        save_page_to_file(page_number, page_buffer)

This solution performs well for a static dict. However, since it represents a dynamic entity, it's very likely that a new key is introduced to or removed from the dict during operation. To reflect this change, my solution requires partitioning the entire dict from scratch. Is there a better way to handle this scenario? I have a feeling that this is a common problem which I'm not aware of and better solutions have already been proposed for this matter.

EDIT:

I tried shelve, about 0.5s key lookup time for a small database (2k keys), which is very slow. My half-baked paging algorithm described above was about 0.01s. sqlite3 did 0.4s lookuptime for a 1mil key table, I doubt mongo will be faster. There's just too much overhead for my use case. I guess I'll go on with my own implementation of a partitioned database.

  • 2
    I'm guessing this is the reason databases were invented? – Grimmy Jul 16 '17 at 15:19
  • Agreed. You might try using redis, mongoDB, or some other NoSQL store. – bpscott Jul 16 '17 at 15:20
  • You could give tinydb a shot. No idea how much data it can handle. – Grimmy Jul 16 '17 at 15:28
  • I was aware of databases, thought I wouldn't have to go that route as it's a bit of overkill to my application. I guess there's no alternative. – susdu Jul 16 '17 at 15:44
  • Before using databases, try the shelve module – chapelo Jul 16 '17 at 16:27
0

It is a common problem. I think you should take a look at databases like mongodb

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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