InkdownInkdown
Start writing

Arpit Bhayani Blogs

336 files·168 subfolders

Shared Workspace

Arpit Bhayani Blogs
001 Ai Topological Sort

112-handling-outages-master-replica

Shared from "Arpit Bhayani Blogs" on Inkdown

What Happens When a Master or Replica Fails

Source: https://arpitbhayani.me/blogs/handling-outages-master-replica Date: 2021-09-07

Explore Master-Replica architecture - handling node outages, replica recovery, and master failover strategies for robust systems.


Master-Replica architecture is one the most common high-level architectural pattern prevalent in distributed systems. We can find it in use across databases, brokers, and custom-built storage engines. In the previous essay, we saw how a new replica is set up in a distributed data store and the challenges that come with that. This essay talks about the worse - nodes going down - impact, recovery, and real-world practices.

Nodes go down, and it is okay

001-ai-topological-sort.md
tldr.md
002 Temporal Primer
002-temporal-primer.md
tldr.md
003 Rag Production
003-rag-production.md
tldr.md
004 Structure Of Llm Chat
004-structure-of-llm-chat.md
tldr.md
005 How Llms Work
005-how-llms-work.md
tldr.md
006 Monolith Is Distributed System
006-monolith-is-distributed-system.md
tldr.md
007 Defensive Databases
007-defensive-databases.md
tldr.md
008 Bm25
008-bm25.md
tldr.md
009 Join Algorithms
009-join-algorithms.md
tldr.md
010 Venting At Work
010-venting-at-work.md
tldr.md
011 Half Life
011-half-life.md
tldr.md
012 Multi Paxos
012-multi-paxos.md
tldr.md
013 Mysql Replication Internals
013-mysql-replication-internals.md
tldr.md
014 Bloom Filters
014-bloom-filters.md
tldr.md
015 Clock Sync Nightmare
015-clock-sync-nightmare.md
tldr.md
016 Kafka Partitions
016-kafka-partitions.md
tldr.md
017 Product Quantization
017-product-quantization.md
tldr.md
018 Qkv Matrices
018-qkv-matrices.md
tldr.md
019 Deleted Production
019-deleted-production.md
tldr.md
020 How Llm Inference Works
020-how-llm-inference-works.md
tldr.md
021 Blocking Queues
021-blocking-queues.md
tldr.md
022 Heartbeats In Distributed Systems
022-heartbeats-in-distributed-systems.md
tldr.md
023 Cassandra Writes
023-cassandra-writes.md
tldr.md
024 Redis Replication
024-redis-replication.md
tldr.md
025 Arrogant People At Work
025-arrogant-people-at-work.md
tldr.md
026 Cdn Content Replication
026-cdn-content-replication.md
tldr.md
027 Cant Fix Everything Day One
027-cant-fix-everything-day-one.md
tldr.md
028 Emotions At Work
028-emotions-at-work.md
tldr.md
029 Grpc Http2
029-grpc-http2.md
tldr.md
030 Meetings With No Agenda Are A Waste Of Time
030-meetings-with-no-agenda-are-a-waste-of-time.md
tldr.md
031 Growth Is Not About Doing Everything
031-growth-is-not-about-doing-everything.md
tldr.md
032 Career Longevity Vs Job Hopping
032-career-longevity-vs-job-hopping.md
tldr.md
033 Stay Relevant At Higher Salary Levels
033-stay-relevant-at-higher-salary-levels.md
tldr.md
034 Why Consensus
034-why-consensus.md
tldr.md
035 Database Deadlocks
035-database-deadlocks.md
tldr.md
036 Cpu Cache Locality
036-cpu-cache-locality.md
tldr.md
037 Eventual Consistency
037-eventual-consistency.md
tldr.md
038 Dns Udp Tcp
038-dns-udp-tcp.md
tldr.md
039 Masters
039-masters.md
tldr.md
040 Empathy Makes Great Engineers Unstoppable
040-empathy-makes-great-engineers-unstoppable.md
tldr.md
041 Good Mentors Build People
041-good-mentors-build-people.md
tldr.md
042 Always Have Back Burner Projects
042-always-have-back-burner-projects.md
tldr.md
043 Before You Push Back Know What Youre Standing On
043-before-you-push-back-know-what-youre-standing-on.md
tldr.md
044 Be The One They Can Count On
044-be-the-one-they-can-count-on.md
tldr.md
045 How Much People Bet On You
045-how-much-people-bet-on-you.md
tldr.md
046 How To Get Leadership To Say Yes To Your Project
046-how-to-get-leadership-to-say-yes-to-your-project.md
tldr.md
047 Dont Let Your Best Ideas Die In Silence
047-dont-let-your-best-ideas-die-in-silence.md
tldr.md
048 Be Someone Others Want To Work With
048-be-someone-others-want-to-work-with.md
tldr.md
049 Dont Fall For Xy Problem Ask Right Questions
049-dont-fall-for-xy-problem-ask-right-questions.md
tldr.md
050 Biggest Lie Startups Tell Engineers
050-biggest-lie-startups-tell-engineers.md
tldr.md
051 Promotions Are Proactive Not Reactive
051-promotions-are-proactive-not-reactive.md
tldr.md
052 Not Enough To Be Right Learn To Be Heard
052-not-enough-to-be-right-learn-to-be-heard.md
tldr.md
053 No One Ships Alone
053-no-one-ships-alone.md
tldr.md
054 Not Every Mistake Needs A Correction
054-not-every-mistake-needs-a-correction.md
tldr.md
055 Build Influence At Work
055-build-influence-at-work.md
tldr.md
056 Your Soft Skills Arent Soft At All
056-your-soft-skills-arent-soft-at-all.md
tldr.md
057 Experience Before Forming Opinion
057-experience-before-forming-opinion.md
tldr.md
058 Curiosity And High Bias For Action
058-curiosity-and-high-bias-for-action.md
tldr.md
059 Worklog
059-worklog.md
tldr.md
060 Mistakes And Growth
060-mistakes-and-growth.md
tldr.md
061 Own It Instead Of Sweeping It Aside
061-own-it-instead-of-sweeping-it-aside.md
tldr.md
062 Dont Wait Step Up
062-dont-wait-step-up.md
tldr.md
063 Temporary Fix Is Permanent
063-temporary-fix-is-permanent.md
tldr.md
064 Interview Bias And What Sets You Apart
064-interview-bias-and-what-sets-you-apart.md
tldr.md
065 Saying This Isnt My Problem Is A Problem
065-saying-this-isnt-my-problem-is-a-problem.md
tldr.md
066 Okr
066-okr.md
tldr.md
067 Miscommunication
067-miscommunication.md
tldr.md
068 When In Doubt Code It Out
068-when-in-doubt-code-it-out.md
tldr.md
069 Follow Up Without Annoying People
069-follow-up-without-annoying-people.md
tldr.md
070 Lead Projects That Land
070-lead-projects-that-land.md
tldr.md
071 Abstract Thinking Skill Next Decade
071-abstract-thinking-skill-next-decade.md
tldr.md
072 We Engineers Suck At Task Estimation
072-we-engineers-suck-at-task-estimation.md
tldr.md
073 Shiny Object Syndrome In Tech
073-shiny-object-syndrome-in-tech.md
tldr.md
074 3p
074-3p.md
tldr.md
075 Leverage The Equilibrium
075-leverage-the-equilibrium.md
tldr.md
076 On Demand Container Loading In Aws Lambda
076-on-demand-container-loading-in-aws-lambda.md
tldr.md
077 Sql Has Problems We Can Fix Them Pipe Syntax In Sql
077-sql-has-problems-we-can-fix-them-pipe-syntax-in-sql.md
tldr.md
078 Nanolog A Nanosecond Scale Logging System
078-nanolog-a-nanosecond-scale-logging-system.md
tldr.md
079 Best Resource Is Mythical
079-best-resource-is-mythical.md
tldr.md
080 Wtf The Who To Follow Service At Twitter
080-wtf-the-who-to-follow-service-at-twitter.md
tldr.md
081 Know A Lot
081-know-a-lot.md
tldr.md
082 Out Of Syllabus
082-out-of-syllabus.md
tldr.md
083 Negotiate The Offer
083-negotiate-the-offer.md
tldr.md
084 Never Bad Mouth Your Ex Exployer
084-never-bad-mouth-your-ex-exployer.md
tldr.md
085 Culture Fit
085-culture-fit.md
tldr.md
086 Quantification In Resume
086-quantification-in-resume.md
tldr.md
087 Hiring Is Unfair
087-hiring-is-unfair.md
tldr.md
088 Questions For Interviewers
088-questions-for-interviewers.md
tldr.md
089 Collaboration Communication
089-collaboration-communication.md
tldr.md
090 Out Of Vicious Interview Cycle
090-out-of-vicious-interview-cycle.md
tldr.md
091 Pitch Projects Not Ideas
091-pitch-projects-not-ideas.md
tldr.md
092 Read Design Docs
092-read-design-docs.md
tldr.md
093 Read Rca Docs
093-read-rca-docs.md
tldr.md
094 Start Generalist
094-start-generalist.md
tldr.md
095 Do Not Rely On Summaries
095-do-not-rely-on-summaries.md
tldr.md
096 Structure Your Design Interviews
096-structure-your-design-interviews.md
tldr.md
097 Title Inflation
097-title-inflation.md
tldr.md
098 Find Your Own Project
098-find-your-own-project.md
tldr.md
099 Six Pointers To Crack Coding And Design Interviews
099-six-pointers-to-crack-coding-and-design-interviews.md
tldr.md
100 Keep Yourself Unblocked
100-keep-yourself-unblocked.md
tldr.md
101 Genetic Knapsack
101-genetic-knapsack.md
tldr.md
102 Pseudorandom Number Generation Lfsr
102-pseudorandom-number-generation-lfsr.md
tldr.md
103 How Indexes Work On Partitioned And Sharded Data
103-how-indexes-work-on-partitioned-and-sharded-data.md
tldr.md
104 Some Data Partitioning Strategies For Distributed Data Stores
104-some-data-partitioning-strategies-for-distributed-data-stores.md
tldr.md
105 Data Partitioning
105-data-partitioning.md
tldr.md
106 Leaderless Replication
106-leaderless-replication.md
tldr.md
107 Conflict Resolution
107-conflict-resolution.md
tldr.md
108 Conflict Detection
108-conflict-detection.md
tldr.md
109 Multi Master Replication
109-multi-master-replication.md
tldr.md
110 Monotonic Reads
110-monotonic-reads.md
tldr.md
111 Read Your Write Consistency
111-read-your-write-consistency.md
tldr.md
112 Handling Outages Master Replica
112-handling-outages-master-replica.md
tldr.md
113 Replication Formats
113-replication-formats.md
tldr.md
114 Replication Strategies
114-replication-strategies.md
tldr.md
115 Master Replica Replication
115-master-replica-replication.md
tldr.md
116 Durability
116-durability.md
tldr.md
117 Isolation
117-isolation.md
tldr.md
118 Atomicity
118-atomicity.md
tldr.md
119 Consistency
119-consistency.md
tldr.md
120 Architectures In Distributed Systems
120-architectures-in-distributed-systems.md
tldr.md
121 Mistaken Beliefs Of Distributed Systems
121-mistaken-beliefs-of-distributed-systems.md
tldr.md
122 Fork Bomb
122-fork-bomb.md
tldr.md
123 Chained Operators Python
123-chained-operators-python.md
tldr.md
124 Taxonomy On Sql
124-taxonomy-on-sql.md
tldr.md
125 The Weird Walrus
125-the-weird-walrus.md
tldr.md
126 Fully Persistent Arrays
126-fully-persistent-arrays.md
tldr.md
127 Persistent Data Structures Introduction
127-persistent-data-structures-introduction.md
tldr.md
128 Constant Folding Python
128-constant-folding-python.md
tldr.md
129 String Interning Python
129-string-interning-python.md
tldr.md
130 Recursion Visualizer Python
130-recursion-visualizer-python.md
tldr.md
131 Flajolet Martin
131-flajolet-martin.md
tldr.md
132 2q Cache
132-2q-cache.md
tldr.md
133 Israeli Queues
133-israeli-queues.md
tldr.md
134 1d Terrain
134-1d-terrain.md
tldr.md
135 Jaccard Minhash
135-jaccard-minhash.md
tldr.md
136 Ts Smoothing
136-ts-smoothing.md
tldr.md
137 Lfu
137-lfu.md
tldr.md
138 Morris Counter
138-morris-counter.md
tldr.md
139 Slowsort
139-slowsort.md
tldr.md
140 Bitcask
140-bitcask.md
tldr.md
141 Phi Accrual
141-phi-accrual.md
tldr.md
142 10x Engineer
142-10x-engineer.md
tldr.md
143 Decipher Repeated Key Xor
143-decipher-repeated-key-xor.md
tldr.md
144 Decipher Single Xor
144-decipher-single-xor.md
tldr.md
145 Python Iterable Integers
145-python-iterable-integers.md
tldr.md
146 Inheritance C
146-inheritance-c.md
tldr.md
147 Rum
147-rum.md
tldr.md
148 Consistent Hashing
148-consistent-hashing.md
tldr.md
149 Python Caches Integers
149-python-caches-integers.md
tldr.md
150 Fractional Cascading
150-fractional-cascading.md
tldr.md
151 Copy On Write
151-copy-on-write.md
tldr.md
152 Midpoint Insertion Caching Strategy
152-midpoint-insertion-caching-strategy.md
tldr.md
153 Fsm Python
153-fsm-python.md
tldr.md
154 Bayesian Average
154-bayesian-average.md
tldr.md
155 Sliding Window Ratelimiter
155-sliding-window-ratelimiter.md
tldr.md
156 Idf
156-idf.md
tldr.md
157 Better Programmer
157-better-programmer.md
tldr.md
158 Python Prompts
158-python-prompts.md
tldr.md
159 Rule 30 Cellular Automata
159-rule-30-cellular-automata.md
tldr.md
160 Function Overloading
160-function-overloading.md
tldr.md
161 Isolation Forest
161-isolation-forest.md
tldr.md
162 Image Steganography
162-image-steganography.md
tldr.md
163 Long Integers Python
163-long-integers-python.md
tldr.md
164 I Changed My Python
164-i-changed-my-python.md
tldr.md
165 Benchmark And Compare Pagination Approach In Mongodb
165-benchmark-and-compare-pagination-approach-in-mongodb.md
tldr.md
166 Mongodb Cursor Skip Is Slow
166-mongodb-cursor-skip-is-slow.md
tldr.md
167 Fast And Efficient Pagination In Mongodb
167-fast-and-efficient-pagination-in-mongodb.md
tldr.md
168 Making Http Requests Using Netcat
168-making-http-requests-using-netcat.md
tldr.md

Anything that can go wrong will go wrong. - Murphy’s Law

Outages are inevitable; we cannot completely eradicate them, but we can be prepared enough to minimize the impact. One way to make any distributed data store robust is by assuming that the node goes down after executing every operation. Building systems around these aggressive failure scenarios is the easiest way to make any distributed system robust and fault-tolerant.

A few reasons why nodes crash are: system overload, hardware issues, overheating, physical damage, or worse, a natural disaster. Nodes going down is a very common phenomenon, and it happens all the time in massive infrastructures. So, instead of panicking, deal with it by minimizing cascaded failures and speeding up the recovery.

In a Master-Replica setup, there are two kinds of nodes - Master and Replica. Let’s see what happens when the nodes start crashing and recover the system after the crash.

Replica outage

When Replica is down, the reads going to it fail. If the nodes are within an abstracted cluster, the front-facing proxy can redirect the request to another Replica upon discovering the outage.

Talking about writes during the Replica outage, we know that the Replica does not handle any writes directly from the client. Still, it does pull the updates through the Replication log and re-applies the changes on its own copy of data. So, are these writes affected during the outage?

To keep track of the updates that Replica already applied to its data, it keeps track of the Sequence Number of the operation. This sequence number is stored on disk and is atomically updated after pulling and applying update operation from the Master.

When the Replica crashes and recovers, it reconnects to the Master, and the hindered replication resumes from the last processed sequence number from what was persisted on the disk. Once the replication resumes, the Replica will fetch all the updates that happened on the Master, apply them on its own copy of data, and eventually catch up.

Master outage

Master is the most critical component in any distributed data store. When the Master crashes and becomes unavailable, it does not accept any request (read or write) coming to the system. This directly impacts the business, resulting in the loss of new writes coming to the system.

The 3 typical steps in fixing the Master outage are:

  • Discover the crash
  • Set up the new Master
  • Announce the new Master

Discovering the crashed Master

The first step of fixing the crashed master is to identify that the Master crashed. This discovery step is not just limited to Master but is also applicable to Replica and other relevant nodes in the datastore. So, although we might use the term “Master” while discovering the crash, the process and the flow would be the same for other nodes.

A typical process of detecting a crash is as simple as checking the heartbeat of the Master. This means either Master ping the orchestrator that it is alive or the orchestrator checking with the Master if it is healthy. In both cases, the orchestrator would expect that the Master responds within a certain threshold of time, say 30 seconds; and if the Master does not respond, the orchestrator can infer the crash.

discovering an outage

In a typical architecture, the orchestrator is a separate node that keeps an eye on all the nodes and repeatedly checks how they are doing. There are Failure Detection systems that specialize in detecting failures, and one efficient and interesting algorithm for detecting failure is called Phi φ Accrual Failure Detection that instead of expecting a heartbeat at regular intervals estimates the probability and sets a dynamic threshold.

Setting up the new Master

When the Master crashes, there are two common ways of setting up the new Master - manual and automated. Picking one over the other depends on the sophistication and maturity of the organization and the infrastructure. Still, it is typically observed that smaller organizations tend to do it manually, while the larges ones have automation in place.

The manual way

Once the orchestrator detects the Master crash, it raises the alarm to the infrastructure team. Depending on the severity of the incident and the nature of the issue, the infrastructure engineer will either.

  • reboot the Master node, or
  • restart the Master database process, or
  • promote one of the Replica as the new Master

Setting up the Master after the crash manually is common when the team is lean, and the organization is not operating at a massive infrastructure scale. Master crashing is also once in a blue moon event, and setting up complex automation just for one rare occurrence might not be the best use of the engineer’s time.

The entire process is automated once the infrastructure grows massive, and even an outage of a few minutes becomes unacceptable.

The automated way

In a Master-Replica setup, the automation is mainly around promoting an existing replica as the new Master. So, when the orchestrator detects that the Master crashed, it triggers the Leader Election among the Replicas to elect the new Master. The elected Replica is then promoted, the other Replicas are re-configured to follow this new Master.

electing the new master

The new Master is thus ready to accept new incoming writes and reads to the system. This automated way of setting up the new Master is definitely faster, but it requires a lot of sophistication from the infrastructure, the algorithms, and practices before implementation.

Announcing the new Master

Once the new Master is set up, either manually or elected among the Replicas, this information must be conveyed to the end clients connecting to the Master. So, as the final step of the process, the Clients are re-configured such that they now start sending writes to this new Master.

announcing the new master

The Big Challenge

What if the Master crashed before propagating the changes to the Replica? In such scenarios, if the Replica is promoted as the new Master, this would result in data loss, or conflicts, or split-brain problems if the old Master continues to act as the Master.

The Passive Master

Data loss or inconsistencies is unacceptable in the real world, so as the solution to this problem, the Master always has a passive standby node. Every time the write happens on the Master, it is synchronously replicated to this stand by passive node, and asynchronously to configured Replicas.

The write made on the Master is marked as complete only after the updates are synchronously made on this passive Master. This way, the passive Master node is always in sync with the Master. So when the main Master node crashes, we can safely promote this passive Master instead of an existing Replica.

The Passive Master

This approach is far better and accurate than running an election across asynchronously replicated Replicas. Still, it incurs a little extra cost of running a parallel Master that will never serve production traffic. But given that it helps in avoiding data loss, this approach is taken by all managed database services.