Eric Snow | 2ebc5ce | 2017-09-07 23:51:28 -0600 | [diff] [blame] | 1 | #ifndef Py_INTERNAL_MEM_H |
| 2 | #define Py_INTERNAL_MEM_H |
| 3 | #ifdef __cplusplus |
| 4 | extern "C" { |
| 5 | #endif |
| 6 | |
| 7 | #include "objimpl.h" |
| 8 | #include "pymem.h" |
| 9 | |
Eric Snow | 2ebc5ce | 2017-09-07 23:51:28 -0600 | [diff] [blame] | 10 | |
| 11 | /* GC runtime state */ |
| 12 | |
| 13 | /* If we change this, we need to change the default value in the |
| 14 | signature of gc.collect. */ |
| 15 | #define NUM_GENERATIONS 3 |
| 16 | |
| 17 | /* |
| 18 | NOTE: about the counting of long-lived objects. |
| 19 | |
| 20 | To limit the cost of garbage collection, there are two strategies; |
| 21 | - make each collection faster, e.g. by scanning fewer objects |
| 22 | - do less collections |
| 23 | This heuristic is about the latter strategy. |
| 24 | |
| 25 | In addition to the various configurable thresholds, we only trigger a |
| 26 | full collection if the ratio |
| 27 | long_lived_pending / long_lived_total |
| 28 | is above a given value (hardwired to 25%). |
| 29 | |
| 30 | The reason is that, while "non-full" collections (i.e., collections of |
| 31 | the young and middle generations) will always examine roughly the same |
| 32 | number of objects -- determined by the aforementioned thresholds --, |
| 33 | the cost of a full collection is proportional to the total number of |
| 34 | long-lived objects, which is virtually unbounded. |
| 35 | |
| 36 | Indeed, it has been remarked that doing a full collection every |
| 37 | <constant number> of object creations entails a dramatic performance |
| 38 | degradation in workloads which consist in creating and storing lots of |
| 39 | long-lived objects (e.g. building a large list of GC-tracked objects would |
| 40 | show quadratic performance, instead of linear as expected: see issue #4074). |
| 41 | |
| 42 | Using the above ratio, instead, yields amortized linear performance in |
| 43 | the total number of objects (the effect of which can be summarized |
| 44 | thusly: "each full garbage collection is more and more costly as the |
| 45 | number of objects grows, but we do fewer and fewer of them"). |
| 46 | |
| 47 | This heuristic was suggested by Martin von Löwis on python-dev in |
| 48 | June 2008. His original analysis and proposal can be found at: |
| 49 | http://mail.python.org/pipermail/python-dev/2008-June/080579.html |
| 50 | */ |
| 51 | |
| 52 | /* |
| 53 | NOTE: about untracking of mutable objects. |
| 54 | |
| 55 | Certain types of container cannot participate in a reference cycle, and |
| 56 | so do not need to be tracked by the garbage collector. Untracking these |
| 57 | objects reduces the cost of garbage collections. However, determining |
| 58 | which objects may be untracked is not free, and the costs must be |
| 59 | weighed against the benefits for garbage collection. |
| 60 | |
| 61 | There are two possible strategies for when to untrack a container: |
| 62 | |
| 63 | i) When the container is created. |
| 64 | ii) When the container is examined by the garbage collector. |
| 65 | |
| 66 | Tuples containing only immutable objects (integers, strings etc, and |
| 67 | recursively, tuples of immutable objects) do not need to be tracked. |
| 68 | The interpreter creates a large number of tuples, many of which will |
| 69 | not survive until garbage collection. It is therefore not worthwhile |
| 70 | to untrack eligible tuples at creation time. |
| 71 | |
| 72 | Instead, all tuples except the empty tuple are tracked when created. |
| 73 | During garbage collection it is determined whether any surviving tuples |
| 74 | can be untracked. A tuple can be untracked if all of its contents are |
| 75 | already not tracked. Tuples are examined for untracking in all garbage |
| 76 | collection cycles. It may take more than one cycle to untrack a tuple. |
| 77 | |
| 78 | Dictionaries containing only immutable objects also do not need to be |
| 79 | tracked. Dictionaries are untracked when created. If a tracked item is |
| 80 | inserted into a dictionary (either as a key or value), the dictionary |
| 81 | becomes tracked. During a full garbage collection (all generations), |
| 82 | the collector will untrack any dictionaries whose contents are not |
| 83 | tracked. |
| 84 | |
| 85 | The module provides the python function is_tracked(obj), which returns |
| 86 | the CURRENT tracking status of the object. Subsequent garbage |
| 87 | collections may change the tracking status of the object. |
| 88 | |
| 89 | Untracking of certain containers was introduced in issue #4688, and |
| 90 | the algorithm was refined in response to issue #14775. |
| 91 | */ |
| 92 | |
| 93 | struct gc_generation { |
| 94 | PyGC_Head head; |
| 95 | int threshold; /* collection threshold */ |
| 96 | int count; /* count of allocations or collections of younger |
| 97 | generations */ |
| 98 | }; |
| 99 | |
| 100 | /* Running stats per generation */ |
| 101 | struct gc_generation_stats { |
| 102 | /* total number of collections */ |
| 103 | Py_ssize_t collections; |
| 104 | /* total number of collected objects */ |
| 105 | Py_ssize_t collected; |
| 106 | /* total number of uncollectable objects (put into gc.garbage) */ |
| 107 | Py_ssize_t uncollectable; |
| 108 | }; |
| 109 | |
| 110 | struct _gc_runtime_state { |
| 111 | /* List of objects that still need to be cleaned up, singly linked |
| 112 | * via their gc headers' gc_prev pointers. */ |
| 113 | PyObject *trash_delete_later; |
| 114 | /* Current call-stack depth of tp_dealloc calls. */ |
| 115 | int trash_delete_nesting; |
| 116 | |
| 117 | int enabled; |
| 118 | int debug; |
| 119 | /* linked lists of container objects */ |
| 120 | struct gc_generation generations[NUM_GENERATIONS]; |
| 121 | PyGC_Head *generation0; |
brainfvck | c75edab | 2017-10-16 12:49:41 -0700 | [diff] [blame] | 122 | /* a permanent generation which won't be collected */ |
| 123 | struct gc_generation permanent_generation; |
Eric Snow | 2ebc5ce | 2017-09-07 23:51:28 -0600 | [diff] [blame] | 124 | struct gc_generation_stats generation_stats[NUM_GENERATIONS]; |
| 125 | /* true if we are currently running the collector */ |
| 126 | int collecting; |
| 127 | /* list of uncollectable objects */ |
| 128 | PyObject *garbage; |
| 129 | /* a list of callbacks to be invoked when collection is performed */ |
| 130 | PyObject *callbacks; |
| 131 | /* This is the number of objects that survived the last full |
| 132 | collection. It approximates the number of long lived objects |
| 133 | tracked by the GC. |
| 134 | |
| 135 | (by "full collection", we mean a collection of the oldest |
| 136 | generation). */ |
| 137 | Py_ssize_t long_lived_total; |
| 138 | /* This is the number of objects that survived all "non-full" |
| 139 | collections, and are awaiting to undergo a full collection for |
| 140 | the first time. */ |
| 141 | Py_ssize_t long_lived_pending; |
| 142 | }; |
| 143 | |
| 144 | PyAPI_FUNC(void) _PyGC_Initialize(struct _gc_runtime_state *); |
| 145 | |
| 146 | #define _PyGC_generation0 _PyRuntime.gc.generation0 |
| 147 | |
| 148 | #ifdef __cplusplus |
| 149 | } |
| 150 | #endif |
| 151 | #endif /* !Py_INTERNAL_MEM_H */ |