github.com/dtm-labs/rockscache@v0.1.1/helper/README-en.md (about) 1 ![license](https://img.shields.io/github/license/dtm-labs/rockscache) 2 ![Build Status](https://github.com/dtm-labs/rockscache/actions/workflows/tests.yml/badge.svg?branch=main) 3 [![codecov](https://codecov.io/gh/dtm-labs/rockscache/branch/main/graph/badge.svg?token=UKKEYQLP3F)](https://codecov.io/gh/dtm-labs/rockscache) 4 [![Go Report Card](https://goreportcard.com/badge/github.com/dtm-labs/rockscache)](https://goreportcard.com/report/github.com/dtm-labs/rockscache) 5 [![Go Reference](https://pkg.go.dev/badge/github.com/dtm-labs/rockscache.svg)](https://pkg.go.dev/github.com/dtm-labs/rockscache) 6 7 English | [简体中文](https://github.com/dtm-labs/rockscache/blob/main/helper/README-cn.md) 8 9 # RocksCache 10 The first Redis cache library to ensure eventual consistency and strong consistency with DB. 11 12 ## Features 13 - Eventual Consistency: ensures eventual consistency of cache even in extreme cases 14 - Strong consistency: provides strong consistent access to applications 15 - Anti-breakdown: a better solution for cache breakdown 16 - Anti-penetration 17 - Anti-avalanche 18 - Batch Query 19 20 ## Usage 21 This cache repository uses the most common `update DB and then delete cache` cache management policy 22 23 ### Read cache 24 ``` Go 25 import "github.com/dtm-labs/rockscache" 26 27 // new a client for rockscache using the default options 28 rc := rockscache.NewClient(redisClient, NewDefaultOptions()) 29 30 // use Fetch to fetch data 31 // 1. the first parameter is the key of the data 32 // 2. the second parameter is the data expiration time 33 // 3. the third parameter is the data fetch function which is called when the cache does not exist 34 v, err := rc.Fetch("key1", 300, func()(string, error) { 35 // fetch data from database or other sources 36 return "value1", nil 37 }) 38 ``` 39 40 ### Delete the cache 41 ``` Go 42 rc.TagAsDeleted(key) 43 ``` 44 45 ## Batch usage 46 47 ### Batch read cache 48 ``` Go 49 import "github.com/dtm-labs/rockscache" 50 51 // new a client for rockscache using the default options 52 rc := rockscache.NewClient(redisClient, NewDefaultOptions()) 53 54 // use FetchBatch to fetch data 55 // 1. the first parameter is the keys list of the data 56 // 2. the second parameter is the data expiration time 57 // 3. the third parameter is the batch data fetch function which is called when the cache does not exist 58 // the parameter of the batch data fetch function is the index list of those keys 59 // missing in cache, which can be used to form a batch query for missing data. 60 // the return value of the batch data fetch function is a map, with key of the 61 // index and value of the corresponding data in form of string 62 v, err := rc.FetchBatch([]string{"key1", "key2", "key3"}, 300, func(idxs []int) (map[int]string, error) { 63 // fetch data from database or other sources 64 values := make(map[int]string) 65 for _, i := range idxs { 66 values[i] = fmt.Sprintf("value%d", i) 67 } 68 return values, nil 69 }) 70 ``` 71 72 ### Batch delete cache 73 ``` Go 74 rc.TagAsDeletedBatch(keys) 75 ``` 76 77 ## Eventual consistency 78 With the introduction of caching, consistency problems in a distributed system show up, as the data is stored in two places at the same time: the database and Redis. For background on this consistency problem, and an introduction to popular Redis caching solutions, see. 79 - [https://yunpengn.github.io/blog/2019/05/04/consistent-redis-sql/](https://yunpengn.github.io/blog/2019/05/04/consistent-redis-sql/) 80 81 But all the caching solutions we've seen so far, without introducing versioning at the application level, fail to address the following data inconsistency scenario. 82 83 <img alt="cache-version-problem" src="https://en.dtm.pub/assets/cache-version.39d3aace.svg" height=400 /> 84 85 Even if you use lock to do the updating, there are still corner cases that can cause inconsistency. 86 87 <img alt="redis cache inconsistency" src="https://martin.kleppmann.com/2016/02/unsafe-lock.png" height=400 /> 88 89 ### Solution 90 This project brings you a brand new solution that guarantee data consistency between the cache and the database, without introducing version. This solution is the first of its kind and has been patented and is now open sourced for everyone to use. 91 92 When the developer calls `Fetch` when reading the data, and makes sure to call `TagAsDeleted` after updating the database, then the cache can guarentee the eventual consistency. When step 5 in the diagram above is writing to v1, the write in this solution will eventually be ignored. 93 - See [Atomicity of DB and cache operations](https://en.dtm.pub/app/cache.html#atomic) for how to ensure that TagAsDeleted is called after updating the database. 94 - See [Cache consistency](https://en.dtm.pub/app/cache.html) for why data writes are ignored when step 5 is writing v1 to cache. 95 96 For a full runnable example, see [dtm-cases/cache](https://github.com/dtm-labs/dtm-cases/tree/main/cache) 97 98 ## Strongly consistent access 99 If your application needs to use caching and requires strong consistency rather than eventual consistency, then this can be supported by turning on the option `StrongConsisteny`, with the access method remaining the same 100 ``` Go 101 rc.Options.StrongConsisteny = true 102 ``` 103 104 Refer to [cache consistency](https://en.dtm.pub/app/cache.html) for detailed principles and [dtm-cases/cache](https://github.com/dtm-labs/dtm-cases/tree/main/cache) for examples 105 106 ## Downgrading and strong consistency 107 The library supports downgrading. The downgrade switch is divided into 108 - `DisableCacheRead`: turns off cache reads, default `false`; if on, then Fetch does not read from the cache, but calls fn directly to fetch the data 109 - `DisableCacheDelete`: disables cache delete, default false; if on, then TagAsDeleted does nothing and returns directly 110 111 When Redis has a problem and needs to be downgraded, you can control this with these two switches. If you need to maintain strong consistent access even during a downgrade, rockscache also supports 112 113 Refer to [cache-consistency](https://en.dtm.pub/app/cache.html) for detailed principles and [dtm-cases/cache](https://github.com/dtm-labs/dtm-cases/tree/main/cache) for examples 114 115 ## Anti-Breakdown 116 The use of cache through this library comes with an anti-breakdown feature. On the one hand `Fetch` will use `singleflight` within the process to avoid multiple requests being sent to Redis within a process, and on the other hand distributed locks will be used in the Redis layer to avoid multiple requests being sent to the DB from multiple processes at the same time, ensuring that only one data query request ends up at the DB. 117 118 The project's anti-breakdown provides a faster response time when hot cached data is deleted. If a hot cache data takes 3s to compute, a normal anti-breakdown solution would cause all requests for this hot data to wait 3s for this time, whereas this project's solution returns it immediately. 119 120 ## Anti-Penetration 121 The use of caching through this library comes with anti-penetration features. When `fn` in `Fetch` returns an empty string, this is considered an empty result and the expiry time is set to `EmptyExpire` in the rockscache option. 122 123 `EmptyExpire` defaults to 60s, if set to 0 then anti-penetration is turned off and no empty results are saved 124 125 ## Anti-Avalanche 126 The cache is used with this library and comes with an anti-avalanche. `RandomExpireAdjustment` in rockscache defaults to 0.1, if set to an expiry time of 600 then the expiry time will be set to a random number in the middle of `540s - 600s` to avoid data expiring at the same time 127 128 ## Contact us 129 130 ## Chat Group 131 132 Join the chat via [https://discord.gg/dV9jS5Rb33](https://discord.gg/dV9jS5Rb33). 133 134 ## Give a star! ⭐ 135 136 If you think this project is interesting, or helpful to you, please give a star!