Upgrade to Pro
— share decks privately, control downloads, hide ads and more …
Speaker Deck
Features
Speaker Deck
PRO
Sign in
Sign up for free
Search
Search
The Rocky Road from Monolithic to Microservice...
Search
cnu
November 25, 2017
Programming
0
1k
The Rocky Road from Monolithic to Microservices Architecture
The explanation of our Microservices architecture and the lessons we learnt from it.
cnu
November 25, 2017
Tweet
Share
More Decks by cnu
See All by cnu
Redisconf 2018: Probabilistic Data Structures
cnu
1
960
Probabilistic Data Structures
cnu
0
620
AWS Lambda - Pycon India 2016
cnu
0
500
ZeroMQ - PyCon India 2013
cnu
2
1.5k
Other Decks in Programming
See All in Programming
FormFlow - Build Stunning Multistep Forms
yceruto
1
180
イベントストーミングから始めるドメイン駆動設計
jgeem
4
850
Bytecode Manipulation 으로 생산성 높이기
bigstark
2
360
AIコーディング道場勉強会#2 君(エンジニア)たちはどう生きるか
misakiotb
1
230
機械学習って何? 5分で解説頑張ってみる
kuroneko2828
0
210
A2A プロトコルを試してみる
azukiazusa1
1
320
Kotlin エンジニアへ送る:Swift 案件に参加させられる日に備えて~似てるけど色々違う Swift の仕様 / from Kotlin to Swift
lovee
1
210
try-catchを使わないエラーハンドリング!? PHPでResult型の考え方を取り入れてみよう
kajitack
3
510
型付きアクターモデルがもたらす分散シミュレーションの未来
piyo7
0
790
プロダクト開発でも使おう 関数のオーバーロード
yoiwamoto
0
150
業務自動化をJavaとSeleniumとAWS Lambdaで実現した方法
greenflagproject
1
120
Claude Codeの使い方
ttnyt8701
1
120
Featured
See All Featured
Adopting Sorbet at Scale
ufuk
77
9.4k
KATA
mclloyd
29
14k
The Language of Interfaces
destraynor
158
25k
The Myth of the Modular Monolith - Day 2 Keynote - Rails World 2024
eileencodes
26
2.8k
4 Signs Your Business is Dying
shpigford
184
22k
The Straight Up "How To Draw Better" Workshop
denniskardys
233
140k
Side Projects
sachag
455
42k
Intergalactic Javascript Robots from Outer Space
tanoku
271
27k
We Have a Design System, Now What?
morganepeng
52
7.6k
Why Our Code Smells
bkeepers
PRO
337
57k
[RailsConf 2023 Opening Keynote] The Magic of Rails
eileencodes
29
9.5k
Raft: Consensus for Rubyists
vanstee
140
7k
Transcript
THE ROCKY ROAD FROM MONOLITHIC TO MICROSERVICES ARCHITECTURE
THE ROCKY ROAD FROM MONOLITHIC TO MICROSERVICES ARCHITECTURE
SRINIVASAN RANGARAJAN Head of Product Engineering
SRINIVASAN RANGARAJAN https://cnu.name Twitter: @cnu Github: @cnu
RETAIL AUTOMATION PRODUCT
Catalog & User Events Processing Recommendation
MONOLITHIC ARCHITECTURE
MONOLITHIC ARCHITECTURE Image Processing API Image Searcher File Storage
MINIMUM TWO SERVERS BEHIND ELB Load Balancer
CLOUD VS BARE METAL
EXPENSIVE
NOT REALTIME
NOT PERSONALIZABLE
API Data Store Ingestion Image Processing Image Searcher User Event
Personalization Engine
GOTHAM
API Data Store Ingestion Image Processing Image Searcher User Event
Personalization Engine
JOKER • Convert client’s catalog into one common MAD Format
• Normalization of fields and metadata • Can process batch and streaming data • Major cause of chaos in the system
GORDON • Routes the product metadata to the right micro
services • Is it a new product? or update to an existing product? • Streaming data from AWS SQS
WONDER WOMAN • Not a microservice, But a tool used
to generate rules for the catalog • Rules are send to the Image Processing microservice • Works on Samples of data and not entire dataset
WATCHTOWER • Central Source of Truth for all metadata •
Backed by an RDBMS Database (Postgresql) • Input via SQS and REST API • Output via REST API
INGESTION Gordon Joker Joker Joker Wonder Woman Watchtower Next Stage
API Data Store Ingestion Image Processing Image Searcher User Event
Personalization Engine
NIGHTWING • Computer Vision and Deep Learning Models • Convert
Image to high dimensional vectors • Tag image with visual attributes • Computer Intensive
API Data Store Ingestion Image Processing Image Searcher User Event
Personalization Engine
BATMAN • Custom very fast Vector Indexer and Search Engine
• Stores everything in memory • Two sub-parts: Indexer and Searcher • Store binary information about image in DynamoDB
API Data Store Ingestion Image Processing Image Searcher User Event
Personalization Engine
SUPERMAN • User behaviour based recommendation • Multiple products like
Collaborative filtering, Cross Product recommendation • Records every user event data and stores in a data warehouse
TWO FACE • Individual User level Personalization • Shows a
different “face” to each user • Dynamic and realtime
API Data Store Ingestion Image Processing Image Searcher User Event
Personalization Engine
FLASH • Very fast data structure storage - redis instance
• User session level history, Product Availability, etc. • Fast access, but non- expirable
GCPD • “Global Cache for Products Digested” • Rough first
level of cache for the results
API Data Store Ingestion Image Processing Image Searcher User Event
Personalization Engine
ROBIN • API Gateway for all our products • Combines
data from other micro services like Batman, Two Face, Watchtower, Superman, etc and returns JSON Response
API Data Store Ingestion Image Processing Image Searcher User Event
Personalization Engine Joker, Gordon, Wonder Woman Nightwing Batman Robin Watchtower, GCPD, Flash Superman, Two Face
LESSONS WE LEARNT
START WITH A MONOLITH. CHIP OFF PIECES AND BUILD THE
MICROSERVICES. Lesson 0
–Melvin Conway “… organizations which design systems ... are constrained
to produce designs which are copies of the communication structures of these organizations."
DEPLOY HETEROGENOUS MICROSERVICES IN A SINGLE SERVER Lesson 1
Compute Optimized Server Memory Optimized Server Nightwing Batman Robin Robin
Robin Joker Joker Joker Gordon Watch tower Watch tower Joker
IMMUTABLE MICROSERVICES Lesson 2
Constable Inspector Assistant Commissioner Commissioner
ASYNCHRONOUS IS BETTER THAN SYNCHRONOUS Lesson 3
None
NOT ALL MICROSERVICES NEED TO BE SERVERS Lesson 4
ADD REQUEST ID OR TRANSACTION ID TO DEBUG EASILY Lesson
5
GIVE A CHARACTER TO YOUR MICROSERVICES Lesson 6
None
THANK YOU
http://cnu.name/talks/ @cnu