| NOTES ON OPTIMIZING DICTIONARIES | 
 | ================================ | 
 |  | 
 |  | 
 | Principal Use Cases for Dictionaries | 
 | ------------------------------------ | 
 |  | 
 | Passing keyword arguments | 
 |     Typically, one read and one write for 1 to 3 elements. | 
 |     Occurs frequently in normal python code. | 
 |  | 
 | Class method lookup | 
 |     Dictionaries vary in size with 8 to 16 elements being common. | 
 |     Usually written once with many lookups. | 
 |     When base classes are used, there are many failed lookups | 
 |         followed by a lookup in a base class. | 
 |  | 
 | Instance attribute lookup and Global variables | 
 |     Dictionaries vary in size.  4 to 10 elements are common. | 
 |     Both reads and writes are common. | 
 |  | 
 | Builtins | 
 |     Frequent reads.  Almost never written. | 
 |     Size 126 interned strings (as of Py2.3b1). | 
 |     A few keys are accessed much more frequently than others. | 
 |  | 
 | Uniquification | 
 |     Dictionaries of any size.  Bulk of work is in creation. | 
 |     Repeated writes to a smaller set of keys. | 
 |     Single read of each key. | 
 |     Some use cases have two consecutive accesses to the same key. | 
 |  | 
 |     * Removing duplicates from a sequence. | 
 |         dict.fromkeys(seqn).keys() | 
 |  | 
 |     * Counting elements in a sequence. | 
 |         for e in seqn: | 
 |           d[e] = d.get(e,0) + 1 | 
 |  | 
 |     * Accumulating references in a dictionary of lists: | 
 |  | 
 |         for pagenumber, page in enumerate(pages): | 
 |           for word in page: | 
 |             d.setdefault(word, []).append(pagenumber) | 
 |  | 
 |     Note, the second example is a use case characterized by a get and set | 
 |     to the same key.  There are similar used cases with a __contains__ | 
 |     followed by a get, set, or del to the same key.  Part of the | 
 |     justification for d.setdefault is combining the two lookups into one. | 
 |  | 
 | Membership Testing | 
 |     Dictionaries of any size.  Created once and then rarely changes. | 
 |     Single write to each key. | 
 |     Many calls to __contains__() or has_key(). | 
 |     Similar access patterns occur with replacement dictionaries | 
 |         such as with the % formatting operator. | 
 |  | 
 | Dynamic Mappings | 
 |     Characterized by deletions interspersed with adds and replacements. | 
 |     Performance benefits greatly from the re-use of dummy entries. | 
 |  | 
 |  | 
 | Data Layout (assuming a 32-bit box with 64 bytes per cache line) | 
 | ---------------------------------------------------------------- | 
 |  | 
 | Smalldicts (8 entries) are attached to the dictobject structure | 
 | and the whole group nearly fills two consecutive cache lines. | 
 |  | 
 | Larger dicts use the first half of the dictobject structure (one cache | 
 | line) and a separate, continuous block of entries (at 12 bytes each | 
 | for a total of 5.333 entries per cache line). | 
 |  | 
 |  | 
 | Tunable Dictionary Parameters | 
 | ----------------------------- | 
 |  | 
 | * PyDict_MINSIZE.  Currently set to 8. | 
 |     Must be a power of two.  New dicts have to zero-out every cell. | 
 |     Each additional 8 consumes 1.5 cache lines.  Increasing improves | 
 |     the sparseness of small dictionaries but costs time to read in | 
 |     the additional cache lines if they are not already in cache. | 
 |     That case is common when keyword arguments are passed. | 
 |  | 
 | * Maximum dictionary load in PyDict_SetItem.  Currently set to 2/3. | 
 |     Increasing this ratio makes dictionaries more dense resulting | 
 |     in more collisions.  Decreasing it improves sparseness at the | 
 |     expense of spreading entries over more cache lines and at the | 
 |     cost of total memory consumed. | 
 |  | 
 |     The load test occurs in highly time sensitive code.  Efforts | 
 |     to make the test more complex (for example, varying the load | 
 |     for different sizes) have degraded performance. | 
 |  | 
 | * Growth rate upon hitting maximum load.  Currently set to *2. | 
 |     Raising this to *4 results in half the number of resizes, | 
 |     less effort to resize, better sparseness for some (but not | 
 |     all dict sizes), and potentially doubles memory consumption | 
 |     depending on the size of the dictionary.  Setting to *4 | 
 |     eliminates every other resize step. | 
 |  | 
 | Tune-ups should be measured across a broad range of applications and | 
 | use cases.  A change to any parameter will help in some situations and | 
 | hurt in others.  The key is to find settings that help the most common | 
 | cases and do the least damage to the less common cases.  Results will | 
 | vary dramatically depending on the exact number of keys, whether the | 
 | keys are all strings, whether reads or writes dominate, the exact | 
 | hash values of the keys (some sets of values have fewer collisions than | 
 | others).  Any one test or benchmark is likely to prove misleading. | 
 |  | 
 | While making a dictionary more sparse reduces collisions, it impairs | 
 | iteration and key listing.  Those methods loop over every potential | 
 | entry.  Doubling the size of dictionary results in twice as many | 
 | non-overlapping memory accesses for keys(), items(), values(), | 
 | __iter__(), iterkeys(), iteritems(), itervalues(), and update(). | 
 | Also, every dictionary iterates at least twice, once for the memset() | 
 | when it is created and once by dealloc(). | 
 |  | 
 |  | 
 | Results of Cache Locality Experiments | 
 | ------------------------------------- | 
 |  | 
 | When an entry is retrieved from memory, 4.333 adjacent entries are also | 
 | retrieved into a cache line.  Since accessing items in cache is *much* | 
 | cheaper than a cache miss, an enticing idea is to probe the adjacent | 
 | entries as a first step in collision resolution.  Unfortunately, the | 
 | introduction of any regularity into collision searches results in more | 
 | collisions than the current random chaining approach. | 
 |  | 
 | Exploiting cache locality at the expense of additional collisions fails | 
 | to payoff when the entries are already loaded in cache (the expense | 
 | is paid with no compensating benefit).  This occurs in small dictionaries | 
 | where the whole dictionary fits into a pair of cache lines.  It also | 
 | occurs frequently in large dictionaries which have a common access pattern | 
 | where some keys are accessed much more frequently than others.  The | 
 | more popular entries *and* their collision chains tend to remain in cache. | 
 |  | 
 | To exploit cache locality, change the collision resolution section | 
 | in lookdict() and lookdict_string().  Set i^=1 at the top of the | 
 | loop and move the  i = (i << 2) + i + perturb + 1 to an unrolled | 
 | version of the loop. | 
 |  | 
 | This optimization strategy can be leveraged in several ways: | 
 |  | 
 | * If the dictionary is kept sparse (through the tunable parameters), | 
 | then the occurrence of additional collisions is lessened. | 
 |  | 
 | * If lookdict() and lookdict_string() are specialized for small dicts | 
 | and for largedicts, then the versions for large_dicts can be given | 
 | an alternate search strategy without increasing collisions in small dicts | 
 | which already have the maximum benefit of cache locality. | 
 |  | 
 | * If the use case for a dictionary is known to have a random key | 
 | access pattern (as opposed to a more common pattern with a Zipf's law | 
 | distribution), then there will be more benefit for large dictionaries | 
 | because any given key is no more likely than another to already be | 
 | in cache. | 
 |  | 
 | * In use cases with paired accesses to the same key, the second access | 
 | is always in cache and gets no benefit from efforts to further improve | 
 | cache locality. | 
 |  | 
 | Optimizing the Search of Small Dictionaries | 
 | ------------------------------------------- | 
 |  | 
 | If lookdict() and lookdict_string() are specialized for smaller dictionaries, | 
 | then a custom search approach can be implemented that exploits the small | 
 | search space and cache locality. | 
 |  | 
 | * The simplest example is a linear search of contiguous entries.  This is | 
 |   simple to implement, guaranteed to terminate rapidly, never searches | 
 |   the same entry twice, and precludes the need to check for dummy entries. | 
 |  | 
 | * A more advanced example is a self-organizing search so that the most | 
 |   frequently accessed entries get probed first.  The organization | 
 |   adapts if the access pattern changes over time.  Treaps are ideally | 
 |   suited for self-organization with the most common entries at the | 
 |   top of the heap and a rapid binary search pattern.  Most probes and | 
 |   results are all located at the top of the tree allowing them all to | 
 |   be located in one or two cache lines. | 
 |  | 
 | * Also, small dictionaries may be made more dense, perhaps filling all | 
 |   eight cells to take the maximum advantage of two cache lines. | 
 |  | 
 |  | 
 | Strategy Pattern | 
 | ---------------- | 
 |  | 
 | Consider allowing the user to set the tunable parameters or to select a | 
 | particular search method.  Since some dictionary use cases have known | 
 | sizes and access patterns, the user may be able to provide useful hints. | 
 |  | 
 | 1) For example, if membership testing or lookups dominate runtime and memory | 
 |    is not at a premium, the user may benefit from setting the maximum load | 
 |    ratio at 5% or 10% instead of the usual 66.7%.  This will sharply | 
 |    curtail the number of collisions but will increase iteration time. | 
 |    The builtin namespace is a prime example of a dictionary that can | 
 |    benefit from being highly sparse. | 
 |  | 
 | 2) Dictionary creation time can be shortened in cases where the ultimate | 
 |    size of the dictionary is known in advance.  The dictionary can be | 
 |    pre-sized so that no resize operations are required during creation. | 
 |    Not only does this save resizes, but the key insertion will go | 
 |    more quickly because the first half of the keys will be inserted into | 
 |    a more sparse environment than before.  The preconditions for this | 
 |    strategy arise whenever a dictionary is created from a key or item | 
 |    sequence and the number of *unique* keys is known. | 
 |  | 
 | 3) If the key space is large and the access pattern is known to be random, | 
 |    then search strategies exploiting cache locality can be fruitful. | 
 |    The preconditions for this strategy arise in simulations and | 
 |    numerical analysis. | 
 |  | 
 | 4) If the keys are fixed and the access pattern strongly favors some of | 
 |    the keys, then the entries can be stored contiguously and accessed | 
 |    with a linear search or treap.  This exploits knowledge of the data, | 
 |    cache locality, and a simplified search routine.  It also eliminates | 
 |    the need to test for dummy entries on each probe.  The preconditions | 
 |    for this strategy arise in symbol tables and in the builtin dictionary. | 
 |  | 
 |  | 
 | Readonly Dictionaries | 
 | --------------------- | 
 | Some dictionary use cases pass through a build stage and then move to a | 
 | more heavily exercised lookup stage with no further changes to the | 
 | dictionary. | 
 |  | 
 | An idea that emerged on python-dev is to be able to convert a dictionary | 
 | to a read-only state.  This can help prevent programming errors and also | 
 | provide knowledge that can be exploited for lookup optimization. | 
 |  | 
 | The dictionary can be immediately rebuilt (eliminating dummy entries), | 
 | resized (to an appropriate level of sparseness), and the keys can be | 
 | jostled (to minimize collisions).  The lookdict() routine can then | 
 | eliminate the test for dummy entries (saving about 1/4 of the time | 
 | spent in the collision resolution loop). | 
 |  | 
 | An additional possibility is to insert links into the empty spaces | 
 | so that dictionary iteration can proceed in len(d) steps instead of | 
 | (mp->mask + 1) steps.  Alternatively, a separate tuple of keys can be | 
 | kept just for iteration. | 
 |  | 
 |  | 
 | Caching Lookups | 
 | --------------- | 
 | The idea is to exploit key access patterns by anticipating future lookups | 
 | based of previous lookups. | 
 |  | 
 | The simplest incarnation is to save the most recently accessed entry. | 
 | This gives optimal performance for use cases where every get is followed | 
 | by a set or del to the same key. |