Dual Window Cache
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The highest performance constant complexity cache algorithm.
Maintenance
The source code is maintained on the next source repository.
https://github.com/falsandtru/spica
Efficiency
TLRU and TRC are abbreviations for TrueLRU (spica/tlru).
Mathematical efficiency
Some different cache algorithms require extra memory space to retain evicted keys.
Linear time complexity indicates the existence of batch processing.
Note that admission algorithm doesn't work without eviction algorithm.
Algorithm | Type | Time complexity (Worst case) | Space complexity (Extra) | Key size | Data structures |
---|
LRU | Evict | Constant | Constant | 1x | 1 list |
TLRU | Evict | Constant | Constant | 1x | 1 list |
DWC | Evict | Constant | Constant | 1x | 2 lists |
ARC | Evict | Constant | Linear | 2x | 4 lists |
LIRS | Evict | Linear | Linear | 3-2500x | 2 lists |
TinyLFU | Admit | Linear | Linear | ~1-10x (8bit * 10N * 4) | 5 arrays |
W-TinyLFU | Admit | Linear | Linear | ~1-10x (8bit * 10N * 4) | 1 list 4 arrays |
https://github.com/ben-manes/caffeine/wiki/Efficiency
https://github.com/zhongch4g/LIRS2/blob/master/src/replace_lirs_base.cc
Engineering efficiency
A pointer is 8 bytes, bool and int8 are each 1 byte in C.
8 byte key and value (int64, float64, 8 chars)
Memoize, etc.
Algorithm | Entry overhead | Key size | Total per entry | Attenuation coefficient |
---|
LRU | 16 bytes | 1x | 32 bytes | 100.00% |
TLRU | 16 bytes | 1x | 32 bytes | 100.00% |
DWC | 17 bytes | 1x | 33 bytes | 96.96% |
ARC | 17 bytes | 2x | 58 bytes | 55.17% |
(LIRS) | 33 bytes | 3x | 131 bytes | 24.42% |
(LIRS) | 33 bytes | 10x | 418 bytes | 7.65% |
(TinyLFU) | 56 bytes | 1x | 72 bytes | 44.44% |
W-TinyLFU | 56 bytes | 1x | 72 bytes | 44.44% |
32 byte key and 8 byte value (Session ID / ID)
In-memory KVS, etc.
Algorithm | Entry overhead | Key size | Total per entry | Attenuation coefficient |
---|
LRU | 16 bytes | 1x | 56 bytes | 100.00% |
TLRU | 16 bytes | 1x | 56 bytes | 100.00% |
DWC | 17 bytes | 1x | 57 bytes | 98.24% |
ARC | 17 bytes | 2x | 88 bytes | 63.63% |
(LIRS) | 33 bytes | 3x | 203 bytes | 27.58% |
(LIRS) | 33 bytes | 10x | 658 bytes | 8.51% |
(TinyLFU) | 56 bytes | 1x | 96 bytes | 58.33% |
W-TinyLFU | 56 bytes | 1x | 96 bytes | 58.33% |
16 byte key and 512 byte value (Domain / DNS packet)
DNS cache server, etc.
Algorithm | Entry overhead | Key size | Total per entry | Attenuation coefficient |
---|
LRU | 16 bytes | 1x | 544 bytes | 100.00% |
TLRU | 16 bytes | 1x | 544 bytes | 100.00% |
DWC | 17 bytes | 1x | 545 bytes | 99.81% |
ARC | 17 bytes | 2x | 578 bytes | 94.11% |
(LIRS) | 33 bytes | 3x | 659 bytes | 82.54% |
(LIRS) | 33 bytes | 10x | 1,002 bytes | 54.29% |
(TinyLFU) | 56 bytes | 1x | 584 bytes | 93.15% |
W-TinyLFU | 56 bytes | 1x | 584 bytes | 93.15% |
Resistance
LIRS's burst resistance means the resistance to continuous cache misses for the last LIR entry or the HIR entries.
TLRU's loop resistance is limited.
Algorithm | Type | Scan | Loop | Burst |
---|
LRU | Evict | | | ✓ |
TLRU | Evict | ✓ | ✓ | ✓ |
DWC | Evict | ✓ | ✓ | ✓ |
ARC | Evict | ✓ | | ✓ |
LIRS | Evict | ✓ | ✓ | |
TinyLFU | Admit | ✓ | ✓ | |
W-TinyLFU | Admit | ✓ | ✓ | ✓ |
Strategies
- Dynamic partition
- Sampled history injection
- Transitive wide MRU with cyclic replacement
Properties
Generally superior and almost flawless.
- Highest performance
- High hit ratio (DS1, S3, OLTP, GLI)
- Highest hit ratio of all the general-purpose cache algorithms.
- Approximate to W-TinyLFU (DS1, GLI).
- Approximate to ARC (S3, OLTP).
- W-TinyLFU is basically not a general-purpose cache algorithm due to some problems.
- W-TinyLFU is not a general-purpose cache algorithm without dynamic window and incremental reset.
- W-TinyLFU is impossible to efficiently implement without pointer addresses or fast hash functions.
- W-TinyLFU's benchmark settings are not described (Especially suspicious with OLTP).
- Highest engineering hit ratio of all the general cache algorithms.
- As a result of engineering efficiency.
- Low time overhead (High throughput)
- Low latency
- Constant time complexity.
- No batch processing like LIRS and TinyLFU.
- Parallel suitable
- Separated lists are suitable for lock-free processing.
- Efficient
- Low memory usage
- Largest capacity per memory size of all the advanced cache algorithms.
- Constant extra space complexity.
- Retain only keys of resident entries (No history).
- Immediate release of evicted keys
- Primary cache algorithm in the standard library must release memory immediately.
- Low space overhead
- Add only two smallest fields to entries.
- High resistance
- Scan, loop, and burst resistance
- Few tradeoffs
- Not the highest hit ratio
- Highest hit ratio of each workload is resulted by W-TinyLFU or ARC.
- Statistical accuracy dependent
- Very smaller cache size than sufficient can degrade hit ratio.
- Cache size 1,000 or more is recommended.
- For discontinuous workloads, TLRU is better.
- No tradeoffs other than hit ratio
- Other advanced cache algorithms have some tradeoffs such as spike latency by linear time complexity, delayed memory release by linear space complexity, or implementability.
- Other advanced cache algorithms cannot generally replace LRU due to these tradeoffs.
Tradeoffs
Note that LIRS and TinyLFU are risky cache algorithms.
- LRU
- Low performance
- No resistance
- Scan access clears all entries.
- TLRU
- Middle performance
- Lower hit ratio than DWC.
- Limited resistance
- DWC
- Not the highest hit ratio
- Statistical accuracy dependent
- ARC
- Middle performance
- Inefficient
- High overhead
- Few resistance
- LIRS
- Extremely inefficient
- Spike latency
- Bulk deletion of low-frequency entries takes linear time.
- Vulnerable algorithm
- Continuous cache misses for the last LIR entry or the HIR entries explode key size.
- TinyLFU
- Incomplete algorithm
- TinyLFU is just a vulnerable incomplete base-algorithm of W-TinyLFU.
- Burst access saturates Bloom filters.
- TinyLFU is worse than LRU in theory.
- Language dependent
- Impossible to efficiently implement without pointer addresses or fast hash functions.
- High overhead
- Read and write average 40 array elements per access.
- Restricted delete operation
- Bloom filters don't support delete operation.
- Frequent delete operations degrade performance.
- Spike latency
- Whole reset of Bloom filters takes linear time.
- Vulnerable algorithm
- Burst access degrades performance.
- W-TinyLFU
- Language dependent
- Impossible to efficiently implement without pointer addresses or fast hash functions.
- High overhead
- Read and write average 40 array elements per access.
- Restricted delete operation
- Bloom filters don't support delete operation.
- Frequent delete operations degrade performance.
- Spike latency
- Whole reset of Bloom filters takes linear time.
Hit ratio
Note that another cache algorithm sometimes changes the parameter values per workload to get a favorite result as the paper of TinyLFU has changed the window size of W-TinyLFU.
- DWC's results are measured by the same default parameter values.
- TinyLFU's results are the traces of Caffeine.
- Set the datasets to
./benchmark/trace
(See ./benchmark/ratio.ts
). - Run
npm i
. - Run
npm run bench
. - Click the DEBUG button to open a debug tab.
- Close the previous tab.
- Press F12 key to open devtools.
- Select the console tab.
https://github.com/dgraph-io/benchmarks
https://github.com/ben-manes/caffeine/wiki/Efficiency
https://docs.google.com/spreadsheets/d/1G3deNz1gJCoXBE2IuraUSwLE7H_EMn4Sn2GU0HTpI5Y (https://github.com/jedisct1/rust-arc-cache/issues/1)
DS1
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W-TinyLFU, (TinyLFU) > DWC > (LIRS) > TLRU > ARC > LRU
- DWC is an approximation of W-TinyLFU.
DS1 1,000,000
LRU hit ratio 3.08%
TRC hit ratio 7.94%
DWC hit ratio 14.73%
DWC - LRU hit ratio delta 11.65%
DWC / LRU hit ratio ratio 477%
DS1 2,000,000
LRU hit ratio 10.74%
TRC hit ratio 21.70%
DWC hit ratio 27.94%
DWC - LRU hit ratio delta 17.20%
DWC / LRU hit ratio ratio 260%
DS1 3,000,000
LRU hit ratio 18.59%
TRC hit ratio 33.46%
DWC hit ratio 39.46%
DWC - LRU hit ratio delta 20.87%
DWC / LRU hit ratio ratio 212%
DS1 4,000,000
LRU hit ratio 20.24%
TRC hit ratio 39.28%
DWC hit ratio 44.20%
DWC - LRU hit ratio delta 23.96%
DWC / LRU hit ratio ratio 218%
DS1 5,000,000
LRU hit ratio 21.03%
TRC hit ratio 46.10%
DWC hit ratio 50.19%
DWC - LRU hit ratio delta 29.16%
DWC / LRU hit ratio ratio 238%
DS1 6,000,000
LRU hit ratio 33.95%
TRC hit ratio 53.28%
DWC hit ratio 56.83%
DWC - LRU hit ratio delta 22.88%
DWC / LRU hit ratio ratio 167%
DS1 7,000,000
LRU hit ratio 38.89%
TRC hit ratio 60.42%
DWC hit ratio 62.55%
DWC - LRU hit ratio delta 23.65%
DWC / LRU hit ratio ratio 160%
DS1 8,000,000
LRU hit ratio 43.03%
TRC hit ratio 68.74%
DWC hit ratio 70.03%
DWC - LRU hit ratio delta 26.99%
DWC / LRU hit ratio ratio 162%
S3
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W-TinyLFU, (TinyLFU) > (LIRS) > DWC > TLRU, ARC > LRU
- DWC is an approximation of ARC.
S3 100,000
LRU hit ratio 2.32%
TRC hit ratio 3.96%
DWC hit ratio 10.14%
DWC - LRU hit ratio delta 7.81%
DWC / LRU hit ratio ratio 435%
S3 200,000
LRU hit ratio 4.63%
TRC hit ratio 12.98%
DWC hit ratio 20.25%
DWC - LRU hit ratio delta 15.61%
DWC / LRU hit ratio ratio 437%
S3 300,000
LRU hit ratio 7.58%
TRC hit ratio 21.55%
DWC hit ratio 27.39%
DWC - LRU hit ratio delta 19.80%
DWC / LRU hit ratio ratio 360%
S3 400,000
LRU hit ratio 12.03%
TRC hit ratio 30.31%
DWC hit ratio 32.69%
DWC - LRU hit ratio delta 20.65%
DWC / LRU hit ratio ratio 271%
S3 500,000
LRU hit ratio 22.76%
TRC hit ratio 38.81%
DWC hit ratio 38.12%
DWC - LRU hit ratio delta 15.35%
DWC / LRU hit ratio ratio 167%
S3 600,000
LRU hit ratio 34.63%
TRC hit ratio 47.22%
DWC hit ratio 46.82%
DWC - LRU hit ratio delta 12.19%
DWC / LRU hit ratio ratio 135%
S3 700,000
LRU hit ratio 46.04%
TRC hit ratio 55.58%
DWC hit ratio 55.71%
DWC - LRU hit ratio delta 9.66%
DWC / LRU hit ratio ratio 120%
S3 800,000
LRU hit ratio 56.59%
TRC hit ratio 64.00%
DWC hit ratio 64.03%
DWC - LRU hit ratio delta 7.43%
DWC / LRU hit ratio ratio 113%
OLTP
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ARC > DWC > TLRU > W-TinyLFU > (LIRS) > LRU > (TinyLFU)
- DWC is an approximation of ARC.
OLTP 250
LRU hit ratio 16.47%
TRC hit ratio 16.92%
DWC hit ratio 19.59%
DWC - LRU hit ratio delta 3.11%
DWC / LRU hit ratio ratio 118%
OLTP 500
LRU hit ratio 23.44%
TRC hit ratio 28.52%
DWC hit ratio 29.12%
DWC - LRU hit ratio delta 5.68%
DWC / LRU hit ratio ratio 124%
OLTP 750
LRU hit ratio 28.28%
TRC hit ratio 33.50%
DWC hit ratio 34.90%
DWC - LRU hit ratio delta 6.62%
DWC / LRU hit ratio ratio 123%
OLTP 1,000
LRU hit ratio 32.83%
TRC hit ratio 37.01%
DWC hit ratio 37.93%
DWC - LRU hit ratio delta 5.10%
DWC / LRU hit ratio ratio 115%
OLTP 1,250
LRU hit ratio 36.20%
TRC hit ratio 39.18%
DWC hit ratio 39.96%
DWC - LRU hit ratio delta 3.75%
DWC / LRU hit ratio ratio 110%
OLTP 1,500
LRU hit ratio 38.69%
TRC hit ratio 41.19%
DWC hit ratio 41.79%
DWC - LRU hit ratio delta 3.09%
DWC / LRU hit ratio ratio 108%
OLTP 1,750
LRU hit ratio 40.78%
TRC hit ratio 42.65%
DWC hit ratio 43.43%
DWC - LRU hit ratio delta 2.64%
DWC / LRU hit ratio ratio 106%
OLTP 2,000
LRU hit ratio 42.46%
TRC hit ratio 43.95%
DWC hit ratio 44.70%
DWC - LRU hit ratio delta 2.23%
DWC / LRU hit ratio ratio 105%
GLI
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W-TinyLFU, (TinyLFU), (LIRS) > DWC > TLRU >> ARC > LRU
- DWC is an approximation of W-TinyLFU.
GLI 250
LRU hit ratio 0.93%
TRC hit ratio 10.48%
DWC hit ratio 15.44%
DWC - LRU hit ratio delta 14.51%
DWC / LRU hit ratio ratio 1658%
GLI 500
LRU hit ratio 0.96%
TRC hit ratio 23.88%
DWC hit ratio 31.53%
DWC - LRU hit ratio delta 30.56%
DWC / LRU hit ratio ratio 3270%
GLI 750
LRU hit ratio 1.16%
TRC hit ratio 36.31%
DWC hit ratio 41.55%
DWC - LRU hit ratio delta 40.39%
DWC / LRU hit ratio ratio 3571%
GLI 1,000
LRU hit ratio 11.22%
TRC hit ratio 46.82%
DWC hit ratio 49.30%
DWC - LRU hit ratio delta 38.08%
DWC / LRU hit ratio ratio 439%
GLI 1,250
LRU hit ratio 21.25%
TRC hit ratio 52.04%
DWC hit ratio 52.42%
DWC - LRU hit ratio delta 31.16%
DWC / LRU hit ratio ratio 246%
GLI 1,500
LRU hit ratio 36.56%
TRC hit ratio 53.00%
DWC hit ratio 53.49%
DWC - LRU hit ratio delta 16.92%
DWC / LRU hit ratio ratio 146%
GLI 1,750
LRU hit ratio 45.04%
TRC hit ratio 55.88%
DWC hit ratio 55.60%
DWC - LRU hit ratio delta 10.55%
DWC / LRU hit ratio ratio 123%
GLI 2,000
LRU hit ratio 57.41%
TRC hit ratio 57.96%
DWC hit ratio 57.96%
DWC - LRU hit ratio delta 0.54%
DWC / LRU hit ratio ratio 100%
Throughput
No result with 10,000,000 because lru-cache crushes with the next error on the next machine of GitHub Actions.
It is verified that the error was thrown also when benchmarking only lru-cache.
Of course it is verified that DWC works fine under the same condition.
Error: Uncaught RangeError: Map maximum size exceeded
System:
OS: Linux 5.15 Ubuntu 20.04.5 LTS (Focal Fossa)
CPU: (2) x64 Intel(R) Xeon(R) Platinum 8370C CPU @ 2.80GHz
Memory: 5.88 GB / 6.78 GB
Clock: spica/clock
ISC: lru-cache
LRU: spica/lru
TRC-C: spica/tlru (spica/trul.clock)
TRC-L: spica/trul.lru
DWC: spica/cache
'Clock new x 1,552,561 ops/sec ±1.66% (113 runs sampled)'
'ISC new x 17,669 ops/sec ±0.83% (122 runs sampled)'
'LRU new x 26,469,709 ops/sec ±0.93% (121 runs sampled)'
'TRC-C new x 24,865,728 ops/sec ±0.89% (120 runs sampled)'
'TRC-L new x 25,006,319 ops/sec ±0.91% (122 runs sampled)'
'DWC new x 6,775,282 ops/sec ±0.94% (121 runs sampled)'
'Clock simulation 100 10% x 9,363,738 ops/sec ±0.61% (121 runs sampled)'
'ISC simulation 100 10% x 9,008,687 ops/sec ±0.80% (121 runs sampled)'
'LRU simulation 100 10% x 10,725,903 ops/sec ±0.56% (121 runs sampled)'
'TRC-C simulation 100 10% x 10,571,693 ops/sec ±0.64% (122 runs sampled)'
'TRC-L simulation 100 10% x 8,459,734 ops/sec ±0.78% (122 runs sampled)'
'DWC simulation 100 10% x 6,584,195 ops/sec ±0.42% (123 runs sampled)'
'Clock simulation 1,000 10% x 9,384,521 ops/sec ±0.60% (122 runs sampled)'
'ISC simulation 1,000 10% x 8,268,271 ops/sec ±0.96% (121 runs sampled)'
'LRU simulation 1,000 10% x 9,449,176 ops/sec ±0.79% (122 runs sampled)'
'TRC-C simulation 1,000 10% x 9,205,839 ops/sec ±0.45% (121 runs sampled)'
'TRC-L simulation 1,000 10% x 8,005,839 ops/sec ±0.95% (122 runs sampled)'
'DWC simulation 1,000 10% x 7,532,780 ops/sec ±0.59% (122 runs sampled)'
'Clock simulation 10,000 10% x 9,359,627 ops/sec ±0.79% (122 runs sampled)'
'ISC simulation 10,000 10% x 6,781,153 ops/sec ±0.72% (121 runs sampled)'
'LRU simulation 10,000 10% x 8,730,973 ops/sec ±0.72% (120 runs sampled)'
'TRC-C simulation 10,000 10% x 8,021,631 ops/sec ±2.00% (119 runs sampled)'
'TRC-L simulation 10,000 10% x 6,130,857 ops/sec ±2.73% (116 runs sampled)'
'DWC simulation 10,000 10% x 5,836,941 ops/sec ±1.04% (122 runs sampled)'
'Clock simulation 100,000 10% x 5,590,625 ops/sec ±1.73% (115 runs sampled)'
'ISC simulation 100,000 10% x 3,278,209 ops/sec ±1.70% (111 runs sampled)'
'LRU simulation 100,000 10% x 4,765,807 ops/sec ±2.79% (111 runs sampled)'
'TRC-C simulation 100,000 10% x 4,685,016 ops/sec ±2.90% (105 runs sampled)'
'TRC-L simulation 100,000 10% x 4,150,880 ops/sec ±2.95% (111 runs sampled)'
'DWC simulation 100,000 10% x 3,822,807 ops/sec ±2.51% (108 runs sampled)'
'Clock simulation 1,000,000 10% x 2,280,505 ops/sec ±4.09% (97 runs sampled)'
'ISC simulation 1,000,000 10% x 1,241,084 ops/sec ±4.17% (101 runs sampled)'
'LRU simulation 1,000,000 10% x 1,742,529 ops/sec ±3.63% (89 runs sampled)'
'TRC-C simulation 1,000,000 10% x 1,973,322 ops/sec ±5.40% (88 runs sampled)'
'TRC-L simulation 1,000,000 10% x 1,644,990 ops/sec ±4.36% (97 runs sampled)'
'DWC simulation 1,000,000 10% x 1,951,708 ops/sec ±3.92% (98 runs sampled)'
'Clock simulation 100 90% x 21,254,002 ops/sec ±0.68% (123 runs sampled)'
'ISC simulation 100 90% x 19,742,448 ops/sec ±0.62% (122 runs sampled)'
'LRU simulation 100 90% x 18,749,189 ops/sec ±0.68% (122 runs sampled)'
'TRC-C simulation 100 90% x 16,785,649 ops/sec ±0.63% (122 runs sampled)'
'TRC-L simulation 100 90% x 16,148,417 ops/sec ±0.80% (122 runs sampled)'
'DWC simulation 100 90% x 10,688,142 ops/sec ±0.60% (121 runs sampled)'
'Clock simulation 1,000 90% x 19,744,639 ops/sec ±0.85% (122 runs sampled)'
'ISC simulation 1,000 90% x 17,049,505 ops/sec ±0.90% (121 runs sampled)'
'LRU simulation 1,000 90% x 16,579,637 ops/sec ±0.58% (122 runs sampled)'
'TRC-C simulation 1,000 90% x 15,110,520 ops/sec ±0.63% (121 runs sampled)'
'TRC-L simulation 1,000 90% x 14,668,067 ops/sec ±0.55% (122 runs sampled)'
'DWC simulation 1,000 90% x 8,654,990 ops/sec ±0.44% (123 runs sampled)'
'Clock simulation 10,000 90% x 17,330,494 ops/sec ±1.05% (121 runs sampled)'
'ISC simulation 10,000 90% x 13,822,754 ops/sec ±0.54% (122 runs sampled)'
'LRU simulation 10,000 90% x 11,492,835 ops/sec ±1.18% (120 runs sampled)'
'TRC-C simulation 10,000 90% x 10,603,672 ops/sec ±1.00% (121 runs sampled)'
'TRC-L simulation 10,000 90% x 9,814,431 ops/sec ±1.61% (119 runs sampled)'
'DWC simulation 10,000 90% x 7,915,551 ops/sec ±0.91% (121 runs sampled)'
'Clock simulation 100,000 90% x 10,156,702 ops/sec ±1.60% (113 runs sampled)'
'ISC simulation 100,000 90% x 7,467,007 ops/sec ±1.15% (117 runs sampled)'
'LRU simulation 100,000 90% x 7,179,007 ops/sec ±2.16% (117 runs sampled)'
'TRC-C simulation 100,000 90% x 6,660,546 ops/sec ±2.31% (112 runs sampled)'
'TRC-L simulation 100,000 90% x 6,263,904 ops/sec ±2.89% (110 runs sampled)'
'DWC simulation 100,000 90% x 5,045,747 ops/sec ±4.65% (111 runs sampled)'
'Clock simulation 1,000,000 90% x 3,587,431 ops/sec ±4.83% (96 runs sampled)'
'ISC simulation 1,000,000 90% x 2,312,996 ops/sec ±3.32% (104 runs sampled)'
'LRU simulation 1,000,000 90% x 1,770,884 ops/sec ±2.79% (102 runs sampled)'
'TRC-C simulation 1,000,000 90% x 1,803,313 ops/sec ±3.00% (105 runs sampled)'
'TRC-L simulation 1,000,000 90% x 1,649,346 ops/sec ±1.57% (113 runs sampled)'
'DWC simulation 1,000,000 90% x 1,589,534 ops/sec ±1.67% (115 runs sampled)'
'ISC simulation 100 90% expire x 4,261,673 ops/sec ±4.13% (112 runs sampled)'
'DWC simulation 100 90% expire x 7,782,281 ops/sec ±0.41% (123 runs sampled)'
'ISC simulation 1,000 90% expire x 3,984,608 ops/sec ±4.70% (109 runs sampled)'
'DWC simulation 1,000 90% expire x 7,160,830 ops/sec ±0.87% (121 runs sampled)'
'ISC simulation 10,000 90% expire x 3,594,196 ops/sec ±2.68% (115 runs sampled)'
'DWC simulation 10,000 90% expire x 5,985,963 ops/sec ±1.45% (120 runs sampled)'
'ISC simulation 100,000 90% expire x 2,442,721 ops/sec ±3.29% (104 runs sampled)'
'DWC simulation 100,000 90% expire x 2,143,528 ops/sec ±4.06% (108 runs sampled)'
'ISC simulation 1,000,000 90% expire x 476,958 ops/sec ±5.88% (91 runs sampled)'
'DWC simulation 1,000,000 90% expire x 582,347 ops/sec ±4.32% (106 runs sampled)'
API
export namespace Cache {
export interface Options<K, V = undefined> {
readonly capacity?: number;
readonly resource?: number;
readonly age?: number;
readonly eagerExpiration?: boolean;
readonly disposer?: (value: V, key: K) => void;
readonly capture?: {
readonly delete?: boolean;
readonly clear?: boolean;
};
readonly window?: number;
readonly sample?: number;
readonly sweep?: {
readonly threshold?: number;
readonly ratio?: number;
readonly window?: number;
readonly room?: number;
readonly range?: number;
readonly shift?: number;
};
}
}
export class Cache<K, V> {
constructor(capacity: number, opts?: Cache.Options<K, V>);
constructor(opts: Cache.Options<K, V>);
readonly length: number;
readonly size: number;
add(key: K, value: V, opts?: { size?: number; age?: number; }): boolean;
add(this: Cache<K, undefined>, key: K, value?: V, opts?: { size?: number; age?: number; }): boolean;
put(key: K, value: V, opts?: { size?: number; age?: number; }): boolean;
put(this: Cache<K, undefined>, key: K, value?: V, opts?: { size?: number; age?: number; }): boolean;
set(key: K, value: V, opts?: { size?: number; age?: number; }): this;
set(this: Cache<K, undefined>, key: K, value?: V, opts?: { size?: number; age?: number; }): this;
get(key: K): V | undefined;
has(key: K): boolean;
delete(key: K): boolean;
clear(): void;
resize(capacity: number, resource?: number): void;
[Symbol.iterator](): Iterator<[K, V], undefined, undefined>;
}
export class TLRU<K, V> {
constructor(capacity: number, step?: number, window?: number, retrial?: boolean);
readonly length: number;
readonly size: number;
add(key: K, value: V): boolean;
set(key: K, value: V): this;
get(key: K): V | undefined;
has(key: K): boolean;
delete(key: K): boolean;
clear(): void;
[Symbol.iterator](): Iterator<[K, V], undefined, undefined>;
}