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DEPSH A D25-Apr-2025191 76

README.mdH A D25-Apr-202517.3 KiB395306

adapters.hH A D25-Apr-20251.5 KiB5827

adapters_unittest.ccH A D25-Apr-20251,004 5341

analyze_containers_memory_benchmark.pyH A D25-Apr-20255 KiB167108

any_internal_unittest.ccH A D25-Apr-20251 KiB3626

buffer_iterator.hH A D25-Apr-20259.3 KiB243101

buffer_iterator_nocompile.ncH A D25-Apr-20252.3 KiB7557

buffer_iterator_unittest.ccH A D25-Apr-20256.5 KiB249181

checked_iterators.hH A D25-Apr-20257.1 KiB234171

checked_iterators_nocompile.ncH A D25-Apr-20256.7 KiB9879

checked_iterators_unittest.ccH A D25-Apr-20254.1 KiB14388

circular_deque.hH A D25-Apr-202536.7 KiB1,115684

circular_deque_unittest.ccH A D25-Apr-202523 KiB921652

containers_memory_benchmark.ccH A D25-Apr-20258.9 KiB256170

contains.hH A D25-Apr-20253.9 KiB9858

contains_nocompile.ncH A D25-Apr-20251.2 KiB3324

contains_unittest.ccH A D25-Apr-20251.9 KiB7148

dynamic_extent.hH A D25-Apr-2025451 198

enum_set.hH A D25-Apr-202512.9 KiB402238

enum_set_nocompile.ncH A D25-Apr-2025933 3225

enum_set_unittest.ccH A D25-Apr-202522.4 KiB649513

extend.hH A D25-Apr-20251.3 KiB4826

extend_unittest.ccH A D25-Apr-20253.7 KiB137100

fixed_flat_map.hH A D25-Apr-20254.8 KiB12229

fixed_flat_map_nocompile.ncH A D25-Apr-2025571 139

fixed_flat_map_unittest.ccH A D25-Apr-20252.7 KiB8258

fixed_flat_set.hH A D25-Apr-20254.7 KiB12430

fixed_flat_set_nocompile.ncH A D25-Apr-20251.1 KiB2014

fixed_flat_set_unittest.ccH A D25-Apr-20251.2 KiB3423

flat_map.hH A D25-Apr-202515 KiB401171

flat_map_unittest.ccH A D25-Apr-202515.4 KiB480341

flat_set.hH A D25-Apr-20256.8 KiB18630

flat_set_unittest.ccH A D25-Apr-20253.6 KiB159113

flat_tree.hH A D25-Apr-202540.8 KiB1,121732

flat_tree_unittest.ccH A D25-Apr-202549.6 KiB1,5241,096

heap_array.hH A D25-Apr-20258 KiB219124

heap_array_nocompile.ncH A D25-Apr-20251.9 KiB6648

heap_array_unittest.ccH A D25-Apr-20256.9 KiB285233

id_map.hH A D25-Apr-202510.1 KiB333208

id_map_unittest.ccH A D25-Apr-202511 KiB451321

intrusive_heap.ccH A D25-Apr-20251.2 KiB4726

intrusive_heap.hH A D25-Apr-202540.4 KiB1,108621

intrusive_heap_unittest.ccH A D25-Apr-202530.9 KiB1,148828

linked_list.ccH A D25-Apr-20251.4 KiB6241

linked_list.hH A D25-Apr-20255.6 KiB19271

linked_list_unittest.ccH A D25-Apr-20257.9 KiB383287

lru_cache.hH A D25-Apr-202511.1 KiB294163

lru_cache_unittest.ccH A D25-Apr-202516.5 KiB598430

map_util.hH A D25-Apr-20252.4 KiB7239

map_util_unittest.ccH A D25-Apr-20251.7 KiB6441

queue.hH A D25-Apr-2025712 249

ring_buffer.hH A D25-Apr-20254 KiB13478

small_map.hH A D25-Apr-202517.7 KiB606395

small_map_unittest.ccH A D25-Apr-202515.1 KiB604467

span.hH A D25-Apr-202560.2 KiB1,421536

span_nocompile.ncH A D25-Apr-202512.7 KiB281232

span_reader.hH A D25-Apr-20256.8 KiB206140

span_reader_unittest.ccH A D25-Apr-20258.6 KiB329275

span_rust.hH A D25-Apr-20251.6 KiB4415

span_rust_unittest.ccH A D25-Apr-2025562 2213

span_unittest.ccH A D25-Apr-202583.7 KiB2,4241,969

span_writer.hH A D25-Apr-20255.1 KiB168110

span_writer_unittest.ccH A D25-Apr-20259.4 KiB283229

stack.hH A D25-Apr-2025712 249

to_value_list.hH A D25-Apr-20251.4 KiB4631

to_value_list_nocompile.ncH A D25-Apr-20251.6 KiB5038

to_value_list_unittest.ccH A D25-Apr-20251.8 KiB6644

to_vector.hH A D25-Apr-20251.4 KiB4424

to_vector_nocompile.ncH A D25-Apr-20251.3 KiB4433

to_vector_unittest.ccH A D25-Apr-20252.2 KiB7959

unique_ptr_adapters.hH A D25-Apr-20252.4 KiB8036

unique_ptr_adapters_unittest.ccH A D25-Apr-20253 KiB133102

util.hH A D25-Apr-2025535 2210

vector_buffer.hH A D25-Apr-20255.6 KiB171100

vector_buffer_unittest.ccH A D25-Apr-20254.6 KiB152102

README.md

1# base/containers library
2
3[TOC]
4
5## What goes here
6
7This directory contains some STL-like containers.
8
9Things should be moved here that are generally applicable across the code base.
10Don't add things here just because you need them in one place and think others
11may someday want something similar. You can put specialized containers in
12your component's directory and we can promote them here later if we feel there
13is broad applicability.
14
15### Design and naming
16
17Fundamental [//base principles](../README.md#design-and-naming) apply, i.e.:
18
19Containers should adhere as closely to STL as possible. Functions and behaviors
20not present in STL should only be added when they are related to the specific
21data structure implemented by the container.
22
23For STL-like containers our policy is that they should use STL-like naming even
24when it may conflict with the style guide. So functions and class names should
25be lower case with underscores. Non-STL-like classes and functions should use
26Google naming. Be sure to use the base namespace.
27
28## Map and set selection
29
30### Usage advice
31
32*   Do not use `base::flat_map` or `base::flat_set` if the number of items will
33    be large or unbounded and elements will be inserted/deleted outside of the
34    containers constructor/destructor - they have O(n) performance on inserts
35    and deletes of individual items.
36
37*   Do not default to using `std::unordered_set` and `std::unordered_map`. In
38    the common case, query performance is unlikely to be sufficiently higher
39    than `std::map` to make a difference, insert performance is slightly worse,
40    and the memory overhead is high. This makes sense mostly for large tables
41    where you expect a lot of lookups.
42
43*   Most maps and sets in Chrome are small and contain objects that can be moved
44    efficiently. In this case, consider `base::flat_map` and `base::flat_set`.
45    You need to be aware of the maximum expected size of the container since
46    individual inserts and deletes are O(n), giving O(n^2) construction time for
47    the entire map. But because it avoids mallocs in most cases, inserts are
48    better or comparable to other containers even for several dozen items, and
49    efficiently-moved types are unlikely to have performance problems for most
50    cases until you have hundreds of items. If your container can be constructed
51    in one shot, the constructor from vector gives O(n log n) construction times
52    and it should be strictly better than a `std::map`.
53
54    Conceptually inserting a range of n elements into a `base::flat_map` or
55    `base::flat_set` behaves as if insert() was called for each individually
56    element. Thus in case the input range contains repeated elements, only the
57    first one of these duplicates will be inserted into the container. This
58    behaviour applies to construction from a range as well.
59
60*   `base::small_map` has better runtime memory usage without the poor mutation
61    performance of large containers that `base::flat_map` has. But this
62    advantage is partially offset by additional code size. Prefer in cases where
63    you make many objects so that the code/heap tradeoff is good.
64
65*   Use `std::map` and `std::set` if you can't decide. Even if they're not
66    great, they're unlikely to be bad or surprising.
67
68### Map and set details
69
70Sizes are on 64-bit platforms. Stable iterators aren't invalidated when the
71container is mutated.
72
73| Container                                  | Empty size            | Per-item overhead | Stable iterators? | Insert/delete complexity     |
74|:------------------------------------------ |:--------------------- |:----------------- |:----------------- |:-----------------------------|
75| `std::map`, `std::set`                     | 16 bytes              | 32 bytes          | Yes               | O(log n)                     |
76| `std::unordered_map`, `std::unordered_set` | 128 bytes             | 16 - 24 bytes     | No                | O(1)                         |
77| `base::flat_map`, `base::flat_set`         | 24 bytes              | 0 (see notes)     | No                | O(n)                         |
78| `base::small_map`                          | 24 bytes (see notes)  | 32 bytes          | No                | depends on fallback map type |
79
80**Takeaways:** `std::unordered_map` and `std::unordered_set` have high
81overhead for small container sizes, so prefer these only for larger workloads.
82
83Code size comparisons for a block of code (see appendix) on Windows using
84strings as keys.
85
86| Container            | Code size  |
87|:-------------------- |:---------- |
88| `std::unordered_map` | 1646 bytes |
89| `std::map`           | 1759 bytes |
90| `base::flat_map`     | 1872 bytes |
91| `base::small_map`    | 2410 bytes |
92
93**Takeaways:** `base::small_map` generates more code because of the inlining of
94both brute-force and red-black tree searching. This makes it less attractive
95for random one-off uses. But if your code is called frequently, the runtime
96memory benefits will be more important. The code sizes of the other maps are
97close enough it's not worth worrying about.
98
99### std::map and std::set
100
101A red-black tree. Each inserted item requires the memory allocation of a node
102on the heap. Each node contains a left pointer, a right pointer, a parent
103pointer, and a "color" for the red-black tree (32 bytes per item on 64-bit
104platforms).
105
106### std::unordered\_map and std::unordered\_set
107
108A hash table. Implemented on Windows as a `std::vector` + `std::list` and in libc++
109as the equivalent of a `std::vector` + a `std::forward_list`. Both implementations
110allocate an 8-entry hash table (containing iterators into the list) on
111initialization, and grow to 64 entries once 8 items are inserted. Above 64
112items, the size doubles every time the load factor exceeds 1.
113
114The empty size is `sizeof(std::unordered_map)` = 64 + the initial hash table
115size which is 8 pointers. The per-item overhead in the table above counts the
116list node (2 pointers on Windows, 1 pointer in libc++), plus amortizes the hash
117table assuming a 0.5 load factor on average.
118
119In a microbenchmark on Windows, inserts of 1M integers into a
120`std::unordered_set` took 1.07x the time of `std::set`, and queries took 0.67x
121the time of `std::set`. For a typical 4-entry set (the statistical mode of map
122sizes in the browser), query performance is identical to `std::set` and
123`base::flat_set`. On ARM, `std::unordered_set` performance can be worse because
124integer division to compute the bucket is slow, and a few "less than" operations
125can be faster than computing a hash depending on the key type. The takeaway is
126that you should not default to using unordered maps because "they're faster."
127
128### base::flat\_map and base::flat\_set
129
130A sorted `std::vector`. Seached via binary search, inserts in the middle require
131moving elements to make room. Good cache locality. For large objects and large
132set sizes, `std::vector`'s doubling-when-full strategy can waste memory.
133
134Supports efficient construction from a vector of items which avoids the O(n^2)
135insertion time of each element separately.
136
137The per-item overhead will depend on the underlying `std::vector`'s reallocation
138strategy and the memory access pattern. Assuming items are being linearly added,
139one would expect it to be 3/4 full, so per-item overhead will be 0.25 *
140sizeof(T).
141
142`flat_set` and `flat_map` support a notion of transparent comparisons.
143Therefore you can, for example, lookup `std::string_view` in a set of
144`std::strings` without constructing a temporary `std::string`. This
145functionality is based on C++14 extensions to the `std::set`/`std::map`
146interface.
147
148You can find more information about transparent comparisons in [the `less<void>`
149documentation](https://en.cppreference.com/w/cpp/utility/functional/less_void).
150
151Example, smart pointer set:
152
153```cpp
154// Declare a type alias using base::UniquePtrComparator.
155template <typename T>
156using UniquePtrSet = base::flat_set<std::unique_ptr<T>,
157                                    base::UniquePtrComparator>;
158
159// ...
160// Collect data.
161std::vector<std::unique_ptr<int>> ptr_vec;
162ptr_vec.reserve(5);
163std::generate_n(std::back_inserter(ptr_vec), 5, []{
164  return std::make_unique<int>(0);
165});
166
167// Construct a set.
168UniquePtrSet<int> ptr_set(std::move(ptr_vec));
169
170// Use raw pointers to lookup keys.
171int* ptr = ptr_set.begin()->get();
172EXPECT_TRUE(ptr_set.find(ptr) == ptr_set.begin());
173```
174
175Example `flat_map<std::string, int>`:
176
177```cpp
178base::flat_map<std::string, int> str_to_int({{"a", 1}, {"c", 2},{"b", 2}});
179
180// Does not construct temporary strings.
181str_to_int.find("c")->second = 3;
182str_to_int.erase("c");
183EXPECT_EQ(str_to_int.end(), str_to_int.find("c")->second);
184
185// NOTE: This does construct a temporary string. This happens since if the
186// item is not in the container, then it needs to be constructed, which is
187// something that transparent comparators don't have to guarantee.
188str_to_int["c"] = 3;
189```
190
191### base::fixed\_flat\_map and base::fixed\_flat\_set
192
193These are specializations of `base::flat_map` and `base::flat_set` that operate
194on a sorted `std::array` instead of a sorted `std::vector`. These containers
195have immutable keys, and don't support adding or removing elements once they are
196constructed. However, these containers are constructed on the stack and don't
197have any space overhead compared to a plain array. Furthermore, these containers
198are constexpr friendly (assuming the key and mapped types are), and thus can be
199used as compile time lookup tables.
200
201To aid their constructions type deduction helpers in the form of
202`base::MakeFixedFlatMap` and `base::MakeFixedFlatSet` are provided. While these
203helpers can deal with unordered data, they require that keys are not repeated.
204This precondition is CHECKed, failing compilation if this precondition is
205violated in a constexpr context.
206
207Example:
208
209```cpp
210constexpr auto kSet = base::MakeFixedFlatSet<int>({1, 2, 3});
211
212constexpr auto kMap = base::MakeFixedFlatMap<std::string_view, int>(
213    {{"foo", 1}, {"bar", 2}, {"baz", 3}});
214```
215
216Both `MakeFixedFlatSet` and `MakeFixedFlatMap` require callers to explicitly
217specify the key (and mapped) type.
218
219### base::small\_map
220
221A small inline buffer that is brute-force searched that overflows into a full
222`std::map` or `std::unordered_map`. This gives the memory benefit of
223`base::flat_map` for small data sizes without the degenerate insertion
224performance for large container sizes.
225
226Since instantiations require both code for a `std::map` and a brute-force search
227of the inline container, plus a fancy iterator to cover both cases, code size
228is larger.
229
230The initial size in the above table is assuming a very small inline table. The
231actual size will be `sizeof(int) + min(sizeof(std::map), sizeof(T) *
232inline_size)`.
233
234## Deque
235
236### Usage advice
237
238Chromium code should always use `base::circular_deque` or `base::queue` in
239preference to `std::deque` or `std::queue` due to memory usage and platform
240variation.
241
242The `base::circular_deque` implementation (and the `base::queue` which uses it)
243provide performance consistent across platforms that better matches most
244programmer's expectations on performance (it doesn't waste as much space as
245libc++ and doesn't do as many heap allocations as MSVC). It also generates less
246code than `std::queue`: using it across the code base saves several hundred
247kilobytes.
248
249Since `base::deque` does not have stable iterators and it will move the objects
250it contains, it may not be appropriate for all uses. If you need these,
251consider using a `std::list` which will provide constant time insert and erase.
252
253### std::deque and std::queue
254
255The implementation of `std::deque` varies considerably which makes it hard to
256reason about. All implementations use a sequence of data blocks referenced by
257an array of pointers. The standard guarantees random access, amortized
258constant operations at the ends, and linear mutations in the middle.
259
260In Microsoft's implementation, each block is the smaller of 16 bytes or the
261size of the contained element. This means in practice that every expansion of
262the deque of non-trivial classes requires a heap allocation. libc++ (on Android
263and Mac) uses 4K blocks which eliminates the problem of many heap allocations,
264but generally wastes a large amount of space (an Android analysis revealed more
265than 2.5MB wasted space from deque alone, resulting in some optimizations).
266libstdc++ uses an intermediate-size 512-byte buffer.
267
268Microsoft's implementation never shrinks the deque capacity, so the capacity
269will always be the maximum number of elements ever contained. libstdc++
270deallocates blocks as they are freed. libc++ keeps up to two empty blocks.
271
272### base::circular_deque and base::queue
273
274A deque implemented as a circular buffer in an array. The underlying array will
275grow like a `std::vector` while the beginning and end of the deque will move
276around. The items will wrap around the underlying buffer so the storage will
277not be contiguous, but fast random access iterators are still possible.
278
279When the underlying buffer is filled, it will be reallocated and the constents
280moved (like a `std::vector`). The underlying buffer will be shrunk if there is
281too much wasted space (_unlike_ a `std::vector`). As a result, iterators are
282not stable across mutations.
283
284## Stack
285
286`std::stack` is like `std::queue` in that it is a wrapper around an underlying
287container. The default container is `std::deque` so everything from the deque
288section applies.
289
290Chromium provides `base/containers/stack.h` which defines `base::stack` that
291should be used in preference to `std::stack`. This changes the underlying
292container to `base::circular_deque`. The result will be very similar to
293manually specifying a `std::vector` for the underlying implementation except
294that the storage will shrink when it gets too empty (vector will never
295reallocate to a smaller size).
296
297Watch out: with some stack usage patterns it's easy to depend on unstable
298behavior:
299
300```cpp
301base::stack<Foo> stack;
302for (...) {
303  Foo& current = stack.top();
304  DoStuff();  // May call stack.push(), say if writing a parser.
305  current.done = true;  // Current may reference deleted item!
306}
307```
308
309## Safety
310
311Code throughout Chromium, running at any level of privilege, may directly or
312indirectly depend on these containers. Much calling code implicitly or
313explicitly assumes that these containers are safe, and won't corrupt memory.
314Unfortunately, [such assumptions have not always proven
315true](https://bugs.chromium.org/p/chromium/issues/detail?id=817982).
316
317Therefore, we are making an effort to ensure basic safety in these classes so
318that callers' assumptions are true. In particular, we are adding bounds checks,
319arithmetic overflow checks, and checks for internal invariants to the base
320containers where necessary. Here, safety means that the implementation will
321`CHECK`.
322
323As of 8 August 2018, we have added checks to the following classes:
324
325- `base::span`
326- `base::RingBuffer`
327- `base::small_map`
328
329Ultimately, all base containers will have these checks.
330
331### Safety, completeness, and efficiency
332
333Safety checks can affect performance at the micro-scale, although they do not
334always. On a larger scale, if we can have confidence that these fundamental
335classes and templates are minimally safe, we can sometimes avoid the security
336requirement to sandbox code that (for example) processes untrustworthy inputs.
337Sandboxing is a relatively heavyweight response to memory safety problems, and
338in our experience not all callers can afford to pay it.
339
340(However, where affordable, privilege separation and reduction remain Chrome
341Security Team's first approach to a variety of safety and security problems.)
342
343One can also imagine that the safety checks should be passed on to callers who
344require safety. There are several problems with that approach:
345
346- Not all authors of all call sites will always
347  - know when they need safety
348  - remember to write the checks
349  - write the checks correctly
350  - write the checks maximally efficiently, considering
351    - space
352    - time
353    - object code size
354- These classes typically do not document themselves as being unsafe
355- Some call sites have their requirements change over time
356  - Code that gets moved from a low-privilege process into a high-privilege
357    process
358  - Code that changes from accepting inputs from only trustworthy sources to
359    accepting inputs from all sources
360- Putting the checks in every call site results in strictly larger object code
361  than centralizing them in the callee
362
363Therefore, the minimal checks that we are adding to these base classes are the
364most efficient and effective way to achieve the beginning of the safety that we
365need. (Note that we cannot account for undefined behavior in callers.)
366
367## Appendix
368
369### Code for map code size comparison
370
371This just calls insert and query a number of times, with `printf`s that prevent
372things from being dead-code eliminated.
373
374```cpp
375TEST(Foo, Bar) {
376  base::small_map<std::map<std::string, Flubber>> foo;
377  foo.insert(std::make_pair("foo", Flubber(8, "bar")));
378  foo.insert(std::make_pair("bar", Flubber(8, "bar")));
379  foo.insert(std::make_pair("foo1", Flubber(8, "bar")));
380  foo.insert(std::make_pair("bar1", Flubber(8, "bar")));
381  foo.insert(std::make_pair("foo", Flubber(8, "bar")));
382  foo.insert(std::make_pair("bar", Flubber(8, "bar")));
383  auto found = foo.find("asdf");
384  printf("Found is %d\n", (int)(found == foo.end()));
385  found = foo.find("foo");
386  printf("Found is %d\n", (int)(found == foo.end()));
387  found = foo.find("bar");
388  printf("Found is %d\n", (int)(found == foo.end()));
389  found = foo.find("asdfhf");
390  printf("Found is %d\n", (int)(found == foo.end()));
391  found = foo.find("bar1");
392  printf("Found is %d\n", (int)(found == foo.end()));
393}
394```
395