One idea is to break up the dictionary structure into simpler structures, but it may affect how efficiently you can process it.
1 Create separate array for the keys
keys = array('i', [key1, key2, ..., key10000])
Depending on the possible values of the keys, you can further specify the particular int type for the array. Also, the keys should be ordered, so you could perform binary search on the key table. This way you also save some space from the hash table used in the Python dictionary implementation. Downside is that key lookup now takes
O(logn) time instead of
2 Store inner_list elements in a 10000x10000 matrices or in a 100000000 length lists
As each position
i from 0 to 9999 corresponds to a specific key that can be obtained from keys array, each list of lists can be put into
i'th row in the matrix and each
inner_list elements in columns of the row.
Other option is to put them in a long list and index using the key position
i such that
idx = i*10000 + j
i is the index of key in keys array and
j is the index of particular
Additionally, for each
inner_list element you can have total of five separate arrays, which somewhat breaks the locality of the data in memory
int_array = array('i', [value1, ..., value100000000])
float1_array = array('f', [value1, ..., value100000000])
small_int_array = array('h', [value1, ..., value100000000])
bool_array = array('?', [value1, ..., value100000000])
float2_array = array('f', [value1, ..., value100000000])
Boolean array can be further optimized by packing them into bits.
Alternative is also to pack
inner_list elements in a binary string using struct module and store them in a single list instead of five different lists.
3 Releasing memory
As soon as the variables go out of scope, they are ready to be garbage collected, so the memory can be claimed back. To do this sooner, for example in a function or a loop, you may just replace a list with a dummy value to bring the reference count of the variable down to zero.
variable = None
However, these ideas may not be good enough for you particular solution. There are other possibilities too, such as loading only some part of the data in memory. It depends, how do you plan to process it.
Generally Python takes its own share of the memory for internal handling of the pointers/structures. Therefore, yet another alternative is to implement that particular data strucure and its handling in a language like Fortran, C or C++, which can be more easily tuned for your particular needs.