New blog post for Ribbon filter (#8992)
Summary: new blog post for Ribbon filter Pull Request resolved: https://github.com/facebook/rocksdb/pull/8992 Test Plan: markdown render in GitHub, Pages on my fork Reviewed By: jay-zhuang Differential Revision: D33342496 Pulled By: pdillinger fbshipit-source-id: a0a7c19100abdf8755f8a618eb4dead755dfddaemain
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title: Ribbon Filter |
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layout: post |
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author: pdillinger |
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category: blog |
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--- |
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|
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## Summary |
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Since version 6.15 last year, RocksDB supports Ribbon filters, a new |
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alternative to Bloom filters that save space, especially memory, at |
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the cost of more CPU usage, mostly in constructing the filters in the |
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background. Most applications with long-lived data (many hours or |
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longer) will likely benefit from adopting a Ribbon+Bloom hybrid filter |
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policy. Here we explain why and how. |
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|
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[Ribbon filter on RocksDB wiki](https://github.com/facebook/rocksdb/wiki/RocksDB-Bloom-Filter#ribbon-filter) |
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|
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[Ribbon filter paper](https://arxiv.org/abs/2103.02515) |
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|
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## Problem & background |
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Bloom filters play a critical role in optimizing point queries and |
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some range queries in LSM-tree storage systems like RocksDB. Very |
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large DBs can use 10% or more of their RAM memory for (Bloom) filters, |
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so that (average case) read performance can be very good despite high |
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(worst case) read amplification, [which is useful for lowering write |
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and/or space |
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amplification](http://smalldatum.blogspot.com/2015/11/read-write-space-amplification-pick-2_23.html). |
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Although the `format_version=5` Bloom filter in RocksDB is extremely |
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fast, all Bloom filters use around 50% more space than is |
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theoretically possible for a hashed structure configured for the same |
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false positive (FP) rate and number of keys added. What would it take |
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to save that significant share of “wasted” filter memory, and when |
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does it make sense to use such a Bloom alternative? |
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|
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A number of alternatives to Bloom filters were known, especially for |
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static filters (not modified after construction), but all the |
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previously known structures were unsatisfying for SSTs because of some |
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combination of |
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* Not enough space savings for CPU increase. For example, [Xor |
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filters](https://arxiv.org/abs/1912.08258) use 3-4x more CPU than |
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Bloom but only save 15-20% of |
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space. [GOV](https://arxiv.org/pdf/1603.04330.pdf) can save around |
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30% space but requires around 10x more CPU than Bloom. |
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* Inconsistent space savings. [Cuckoo |
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filters](https://www.cs.cmu.edu/~dga/papers/cuckoo-conext2014.pdf) |
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and Xor+ filters offer significant space savings for very low FP |
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rates (high bits per key) but little or no savings for higher FP |
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rates (low bits per key). ([Higher FP rates are considered best for |
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largest levels of |
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LSM.](https://stratos.seas.harvard.edu/files/stratos/files/monkeykeyvaluestore.pdf)) |
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[Spatially-coupled Xor |
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filters](https://arxiv.org/pdf/2001.10500.pdf) require very large |
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number of keys per filter for large space savings. |
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* Inflexible configuration. No published alternatives offered the same |
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continuous configurability of Bloom filters, where any FP rate and |
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any fractional bits per key could be chosen. This flexibility |
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improves memory efficiency with the `optimize_filters_for_memory` |
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option that minimizes internal fragmentation on filters. |
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|
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## Ribbon filter development and implementation |
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The Ribbon filter came about when I developed a faster, simpler, and |
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more adaptable algorithm for constructing a little-known [Xor-based |
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structure from Dietzfelbinger and |
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Walzer](https://arxiv.org/pdf/1907.04750.pdf). It has very good space |
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usage for required CPU time (~30% space savings for 3-4x CPU) and, |
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with some engineering, Bloom-like configurability. The complications |
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were managable for use in RocksDB: |
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* Ribbon space efficiency does not naturally scale to very large |
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number of keys in a single filter (whole SST file or partition), but |
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with the current 128-bit Ribbon implementation in RocksDB, even 100 |
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million keys in one filter saves 27% space vs. Bloom rather than 30% |
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for 100,000 keys in a filter. |
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* More temporary memory is required during construction, ~230 bits per |
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key for 128-bit Ribbon vs. ~75 bits per key for Bloom filter. A |
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quick calculation shows that if you are saving 3 bits per key on the |
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generated filter, you only need about 50 generated filters in memory |
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to offset this temporary memory usage. (Thousands of filters in |
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memory is typical.) Starting in RocksDB version 6.27, this temporary |
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memory can be accounted for under block cache using |
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`BlockBasedTableOptions::reserve_table_builder_memory`. |
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* Ribbon filter queries use relatively more CPU for lower FP rates |
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(but still O(1) relative to number of keys added to filter). This |
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should be OK because lower FP rates are only appropriate when then |
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cost of a false positive is very high (worth extra query time) or |
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memory is not so constrained (can use Bloom instead). |
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|
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Future: data in [the paper](https://arxiv.org/abs/2103.02515) suggests |
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that 32-bit Balanced Ribbon (new name: [Bump-Once |
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Ribbon](https://arxiv.org/pdf/2109.01892.pdf)) would improve all of |
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these issues and be better all around (except for code complexity). |
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|
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## Ribbon vs. Bloom in RocksDB configuration |
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Different applications and hardware configurations have different |
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constraints, but we can use hardware costs to examine and better |
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understand the trade-off between Bloom and Ribbon. |
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|
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### Same FP rate, RAM vs. CPU hardware cost |
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Under ideal conditions where we can adjust our hardware to suit the |
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application, in terms of dollars, how much does it cost to construct, |
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query, and keep in memory a Bloom filter vs. a Ribbon filter? The |
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Ribbon filter costs more for CPU but less for RAM. Importantly, the |
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RAM cost directly depends on how long the filter is kept in memory, |
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which in RocksDB is essentially the lifetime of the filter. |
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(Temporary RAM during construction is so short-lived that it is |
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ignored.) Using some consumer hardware and electricity prices and a |
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predicted balance between construction and queries, we can compute a |
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“break even” duration in memory. To minimize cost, filters with a |
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lifetime shorter than this should be Bloom and filters with a lifetime |
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longer than this should be Ribbon. (Python code) |
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|
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``` |
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# Commodity prices based roughly on consumer prices and rough guesses |
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# Upfront cost of a CPU per hardware thread |
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upfront_dollars_per_cpu_thread = 30.0 |
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|
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# CPU average power usage per hardware thread |
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watts_per_cpu_thread = 3.5 |
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|
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# Upfront cost of a GB of RAM |
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upfront_dollars_per_gb_ram = 8.0 |
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|
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# RAM average power usage per GB |
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# https://www.crucial.com/support/articles-faq-memory/how-much-power-does-memory-use |
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watts_per_gb_ram = 0.375 |
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|
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# Estimated price of power per kilowatt-hour, including overheads like conversion losses and cooling |
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dollars_per_kwh = 0.35 |
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|
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# Assume 3 year hardware lifetime |
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hours_per_lifetime = 3 * 365 * 24 |
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seconds_per_lifetime = hours_per_lifetime * 60 * 60 |
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|
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# Number of filter queries per key added in filter construction is heavily dependent on workload. |
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# When replication is in layer above RocksDB, it will be low, likely < 1. When replication is in |
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# storage layer below RocksDB, it will likely be > 1. Using a rough and general guesstimate. |
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key_query_per_construct = 1.0 |
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|
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#================================== |
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# Bloom & Ribbon filter performance |
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typical_bloom_bits_per_key = 10.0 |
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typical_ribbon_bits_per_key = 7.0 |
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|
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# Speeds here are sensitive to many variables, especially query speed because it |
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# is so dependent on memory latency. Using this benchmark here: |
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# for IMPL in 2 3; do |
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# ./filter_bench -impl=$IMPL -quick -m_keys_total_max=200 -use_full_block_reader |
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# done |
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# and "Random filter" queries. |
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nanoseconds_per_construct_bloom_key = 32.0 |
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nanoseconds_per_construct_ribbon_key = 140.0 |
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nanoseconds_per_query_bloom_key = 500.0 |
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nanoseconds_per_query_ribbon_key = 600.0 |
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|
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#================================== |
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# Some constants |
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kwh_per_watt_lifetime = hours_per_lifetime / 1000.0 |
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bits_per_gb = 8 * 1024 * 1024 * 1024 |
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|
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#================================== |
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# Crunching the numbers |
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# on CPU for constructing filters |
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dollars_per_cpu_thread_lifetime = upfront_dollars_per_cpu_thread + watts_per_cpu_thread * kwh_per_watt_lifetime * dollars_per_kwh |
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dollars_per_cpu_thread_second = dollars_per_cpu_thread_lifetime / seconds_per_lifetime |
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|
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dollars_per_construct_bloom_key = dollars_per_cpu_thread_second * nanoseconds_per_construct_bloom_key / 10**9 |
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dollars_per_construct_ribbon_key = dollars_per_cpu_thread_second * nanoseconds_per_construct_ribbon_key / 10**9 |
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|
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dollars_per_query_bloom_key = dollars_per_cpu_thread_second * nanoseconds_per_query_bloom_key / 10**9 |
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dollars_per_query_ribbon_key = dollars_per_cpu_thread_second * nanoseconds_per_query_ribbon_key / 10**9 |
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dollars_per_bloom_key_cpu = dollars_per_construct_bloom_key + key_query_per_construct * dollars_per_query_bloom_key |
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dollars_per_ribbon_key_cpu = dollars_per_construct_ribbon_key + key_query_per_construct * dollars_per_query_ribbon_key |
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|
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# on holding filters in RAM |
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dollars_per_gb_ram_lifetime = upfront_dollars_per_gb_ram + watts_per_gb_ram * kwh_per_watt_lifetime * dollars_per_kwh |
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dollars_per_gb_ram_second = dollars_per_gb_ram_lifetime / seconds_per_lifetime |
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|
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dollars_per_bloom_key_in_ram_second = dollars_per_gb_ram_second / bits_per_gb * typical_bloom_bits_per_key |
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dollars_per_ribbon_key_in_ram_second = dollars_per_gb_ram_second / bits_per_gb * typical_ribbon_bits_per_key |
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|
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#================================== |
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# How many seconds does it take for the added cost of constructing a ribbon filter instead |
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# of bloom to be offset by the added cost of holding the bloom filter in memory? |
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break_even_seconds = (dollars_per_ribbon_key_cpu - dollars_per_bloom_key_cpu) / (dollars_per_bloom_key_in_ram_second - dollars_per_ribbon_key_in_ram_second) |
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print(break_even_seconds) |
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# -> 3235.1647730256936 |
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``` |
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|
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So roughly speaking, filters that live in memory for more than an hour |
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should be Ribbon, and filters that live less than an hour should be |
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Bloom. This is very interesting, but how long do filters live in |
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RocksDB? |
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|
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First let's consider the average case. Write-heavy RocksDB loads are |
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often backed by flash storage, which has some specified write |
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endurance for its intended lifetime. This can be expressed as *device |
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writes per day* (DWPD), and supported DWPD is typically < 10.0 even |
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for high end devices (excluding NVRAM). Roughly speaking, the DB would |
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need to be writing at a rate of 20+ DWPD for data to have an average |
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lifetime of less than one hour. Thus, unless you are prematurely |
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burning out your flash or massively under-utilizing available storage, |
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using the Ribbon filter has the better cost profile *on average*. |
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|
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### Predictable lifetime |
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But we can do even better than optimizing for the average case. LSM |
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levels give us very strong data lifetime hints. Data in L0 might live |
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for minutes or a small number of hours. Data in Lmax might live for |
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days or weeks. So even if Ribbon filters weren't the best choice on |
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average for a workload, they almost certainly make sense for the |
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larger, longer-lived levels of the LSM. As of RocksDB 6.24, you can |
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specify a minimum LSM level for Ribbon filters with |
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`NewRibbonFilterPolicy`, and earlier levels will use Bloom filters. |
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|
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### Resident filter memory |
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The above analysis assumes that nearly all filters for all live SST |
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files are resident in memory. This is true if using |
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`cache_index_and_filter_blocks=0` and `max_open_files=-1` (defaults), |
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but `cache_index_and_filter_blocks=1` is popular. In that case, |
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if you use `optimize_filters_for_hits=1` and non-partitioned filters |
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(a popular MyRocks configuration), it is also likely that nearly all |
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live filters are in memory. However, if you don't use |
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`optimize_filters_for_hits` and use partitioned filters, then |
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cold data (by age or by key range) can lead to only a portion of |
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filters being resident in memory. In that case, benefit from Ribbon |
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filter is not as clear, though because Ribbon filters are smaller, |
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they are more efficient to read into memory. |
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|
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RocksDB version 6.21 and later include a rough feature to determine |
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block cache usage for data blocks, filter blocks, index blocks, etc. |
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Data like this is periodically dumped to LOG file |
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(`stats_dump_period_sec`): |
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|
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``` |
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Block cache entry stats(count,size,portion): DataBlock(441761,6.82 GB,75.765%) FilterBlock(3002,1.27 GB,14.1387%) IndexBlock(17777,887.75 MB,9.63267%) Misc(1,0.00 KB,0%) |
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Block cache LRUCache@0x7fdd08104290#7004432 capacity: 9.00 GB collections: 2573 last_copies: 10 last_secs: 0.143248 secs_since: 0 |
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``` |
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|
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This indicates that at this moment in time, the block cache object |
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identified by `LRUCache@0x7fdd08104290#7004432` (potentially used |
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by multiple DBs) uses roughly 14% of its 9GB, about 1.27 GB, on filter |
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blocks. This same data is available through `DB::GetMapProperty` with |
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`DB::Properties::kBlockCacheEntryStats`, and (with some effort) can |
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be compared to total size of all filters (not necessarily in memory) |
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using `rocksdb.filter.size` from |
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`DB::Properties::kAggregatedTableProperties`. |
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|
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### Sanity checking lifetime |
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Can we be sure that using filters even makes sense for such long-lived |
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data? We can apply [the current 5 minute rule for caching SSD data in |
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RAM](http://renata.borovica-gajic.com/data/adms2017_5minuterule.pdf). A |
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4KB filter page holds data for roughly 4K keys. If we assume at least |
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one negative (useful) filter query in its lifetime per added key, it |
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can satisfy the 5 minute rule with a lifetime of up to about two |
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weeks. Thus, the lifetime threshold for “no filter” is about 300x |
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higher than the lifetime threshold for Ribbon filter. |
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|
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### What to do with saved memory |
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The default way to improve overall RocksDB performance with more |
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available memory is to use more space for caching, which improves |
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latency, CPU load, read IOs, etc. With |
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`cache_index_and_filter_blocks=1`, savings in filters will |
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automatically make room for caching more data blocks in block |
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cache. With `cache_index_and_filter_blocks=0`, consider increasing |
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block cache size. |
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|
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Using the space savings to lower filter FP rates is also an option, |
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but there is less evidence for this commonly improving existing |
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*optimized* configurations. |
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|
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## Generic recommendation |
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If using `NewBloomFilterPolicy(bpk)` for a large persistent DB using |
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compression, try using `NewRibbonFilterPolicy(bpk)` instead, which |
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will generate Ribbon filters during compaction and Bloom filters |
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for flush, both with the same FP rate as the old setting. Once new SST |
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files are generated under the new policy, this should free up some |
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memory for more caching without much effect on burst or sustained |
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write speed. Both kinds of filters can be read under either policy, so |
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there's always an option to adjust settings or gracefully roll back to |
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using Bloom filter only (keeping in mind that SST files must be |
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replaced to see effect of that change). |
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