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_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.


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

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

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