SlideShare a Scribd company logo
1 of 23
Download to read offline
High Concurrency
Architecture
09-2019. TIKI.VN
Contributors
Bùi Anh Dũng
Principal Engineer
Nguyễn Hoàng Bách
Senior Principal
Engineer
Phan Công Huân
Senior Software
Engineer
Lê Minh Nghĩa
Senior Architect
Trần Nguyên Bản
Principal Engineer
Agenda
- Principles
- Pegasus - Highest throughput API
- Arcturus - High concurrency inventory API
- Conclusion
Principles
- Use local memory to handle high concurrency transaction
- Non blocking architecture
- Trade-offs consistency vs eventual consistency
- Reliable replication
- Authority: each service owns its problems.
Pegasus - Highest Throughput API at TIKI
Problems:
- Handle the most of traffic to fetch product information
- Has to handle at least 10k request/s, tp95 < 5ms
Pegasus - Architecture
Pegasus - Architecture
Practises:
- Cache product data in local memory
- Subscribe product change event to
invalid cache
- Non-Blocking http web server
- Compress to reduce payload size
Technology:
- Java
- Guava - In Memory Cache
- Gridgo - Async IO & Event driven
framework
Pegasus - Compression
Two cases:
- Get single product by id
- Get multiple product by a list id
Solutions:
- Using gzip to compress product data to store in
cache. Reduce from 200kb text to 3Kb
- Handle single product request: return
compressed gzip bytes to client directly
- Handle multiple product request: store plain
product data and merge them to build a list of
products, then use Snappy format to compress
data and return to client
- Gzip format compress better than Snappy and
is supported natively by most http client, but
Snappy compress faster and use less CPU
- Output cache can be enabled in hot-deal
situation
Pegasus - Technology
- Java
- Gridgo
- Guava
- Kafka
Pegasus - Benchmark
Benchmark use WRK tools, 4VM,
L4 LB, GCP:
- 90%<6.6ms
- 96k request/s
Production
- 200k request/minutes (all
platforms)
- <2ms
Cache hit: 85%. Increased to 95% with Consistent Hashing With Bounded Load.
Average payload: Single (3KB), Multi (60KB)
Pegasus - Benchmark/Replication
Arcturus - High concurrency Inventory API
Problems:
- Handle inventory transaction when customers place orders
- Handle high concurrency transaction for extreme hot deals with very cheap
and low quantity. Exp: Only ten 1đ iPhone XS, only in ten minutes from 9AM
to 9h10 AM.
- Guarantee eventual consistency of inventory data between many systems
Arcturus - Context Diagram
Arcturus - Architecture
Arcturus - Problems and Solutions
Problems:
- Many customers may place order at the same time, especially for hot skus.
- System has to be deterministic and can be recovered after crashing
Solutions:
- All write requests are published to Kafka with only one partition to guarantee
the ordering of message and recover if system crashes.
- Non Blocking In Memory Cache for both read and write
- All changes are flushed to database asynchronously
- Recovery based on the offset of write command
Arcturus - In Memory Cache Data Structure
Problem:
- There will be a race condition when many
customer place the same skus at the
same time
- Building an in memory cache structure
that can buffer data changes and flush to
database asynchronously
Approach:
- Each record have a key (string, bytes…)
and a value (8 bytes long number).
- A transaction is a set of record updates.
- Transactions must be ordered (e.g. key_1
must +3 before can be -1).
- It can be millions of keys and process upto
10k TPS.
- Using ring buffer data structure to
guarantee the ordering of changes
* The hardest thing is to keep
everything ordered when make it
fast enough.
Arcturus - Old solution
- Multi threading application
- DB transaction, row locking
Pros
- Strong consistency
- Simple implementation
Cons
- Slow
- Deadlock/timeout implicit risk
Arcturus - LMax Architecture
- Non Blocking architecture using single
thread business logic processor
- Use Ring Buffer data structure to
communicate between processors
- Handle million transaction per seconds
Arcturus - Batching marshaller
vBatching: use multi thread marshaller
● Pros
- Fast (400k-600k ops/s*)
- Avoid multi key locking
- Write only most updated value
● Cons
- Inconsistent transaction offset
→ use when you just want to make your code as fast
as possible.
* Macbook pro 2016 15’’ 2.7GHz Core i7, 16G ram. Without I/O, single update per
transaction
*** Test without I/O: [Single ops vbatch] Total time running for 1000000 transactions: 1085 ms; at rate: 921,658.99 ops/s
Arcturus - Batching marshaller
hBatching: use single marshaller thread
● Pros
- Ensure transaction offset
- Ordered db updating
● Cons
- A little bit slower than vBatching.
→ use when you need to re-create application state
after fail.
*** Test without I/O: [Single ops hbatch] Total time running for 1000000 transactions: 1056 ms; at rate: 946,969.70 ops/s
Arcturus - Recovery/Replay
Arcturus - Technology
- Java
- Kafka
- ZeroMQ
- Gridgo
- MySQL
- LMax/Ring Buffer
Conclusion
- Has to trade-off between consistency and eventual consistency
- In Memory is a great way to improve the performance
- Reliable replication is the key to split and scale system
- Non Blocking architecture is a great way to utilize hardware resources
efficiently.

More Related Content

What's hot

Grokking Techtalk #37: Data intensive problem
 Grokking Techtalk #37: Data intensive problem Grokking Techtalk #37: Data intensive problem
Grokking Techtalk #37: Data intensive problemGrokking VN
 
Grokking TechTalk #35: Efficient spellchecking
Grokking TechTalk #35: Efficient spellcheckingGrokking TechTalk #35: Efficient spellchecking
Grokking TechTalk #35: Efficient spellcheckingGrokking VN
 
Asynchronous processing in big system
Asynchronous processing in big systemAsynchronous processing in big system
Asynchronous processing in big systemNghia Minh
 
Toi uu hoa he thong 30 trieu nguoi dung
Toi uu hoa he thong 30 trieu nguoi dungToi uu hoa he thong 30 trieu nguoi dung
Toi uu hoa he thong 30 trieu nguoi dungIT Expert Club
 
Introduction to ELK
Introduction to ELKIntroduction to ELK
Introduction to ELKYuHsuan Chen
 
Grokking Techtalk #40: Consistency and Availability tradeoff in database cluster
Grokking Techtalk #40: Consistency and Availability tradeoff in database clusterGrokking Techtalk #40: Consistency and Availability tradeoff in database cluster
Grokking Techtalk #40: Consistency and Availability tradeoff in database clusterGrokking VN
 
HBase and HDFS: Understanding FileSystem Usage in HBase
HBase and HDFS: Understanding FileSystem Usage in HBaseHBase and HDFS: Understanding FileSystem Usage in HBase
HBase and HDFS: Understanding FileSystem Usage in HBaseenissoz
 
Using ClickHouse for Experimentation
Using ClickHouse for ExperimentationUsing ClickHouse for Experimentation
Using ClickHouse for ExperimentationGleb Kanterov
 
Introduction and Overview of Apache Kafka, TriHUG July 23, 2013
Introduction and Overview of Apache Kafka, TriHUG July 23, 2013Introduction and Overview of Apache Kafka, TriHUG July 23, 2013
Introduction and Overview of Apache Kafka, TriHUG July 23, 2013mumrah
 
Apache Iceberg - A Table Format for Hige Analytic Datasets
Apache Iceberg - A Table Format for Hige Analytic DatasetsApache Iceberg - A Table Format for Hige Analytic Datasets
Apache Iceberg - A Table Format for Hige Analytic DatasetsAlluxio, Inc.
 
What is in a Lucene index?
What is in a Lucene index?What is in a Lucene index?
What is in a Lucene index?lucenerevolution
 
LMAX Disruptor as real-life example
LMAX Disruptor as real-life exampleLMAX Disruptor as real-life example
LMAX Disruptor as real-life exampleGuy Nir
 
Apache Kafka Introduction
Apache Kafka IntroductionApache Kafka Introduction
Apache Kafka IntroductionAmita Mirajkar
 
High Availability PostgreSQL with Zalando Patroni
High Availability PostgreSQL with Zalando PatroniHigh Availability PostgreSQL with Zalando Patroni
High Availability PostgreSQL with Zalando PatroniZalando Technology
 
webservice scaling for newbie
webservice scaling for newbiewebservice scaling for newbie
webservice scaling for newbieDaeMyung Kang
 
Software architecture for high traffic website
Software architecture for high traffic websiteSoftware architecture for high traffic website
Software architecture for high traffic websiteTung Nguyen Thanh
 
Introduction to memcached
Introduction to memcachedIntroduction to memcached
Introduction to memcachedJurriaan Persyn
 
itlchn 20 - Kien truc he thong chung khoan - Phan 2
itlchn 20 - Kien truc he thong chung khoan - Phan 2itlchn 20 - Kien truc he thong chung khoan - Phan 2
itlchn 20 - Kien truc he thong chung khoan - Phan 2IT Expert Club
 

What's hot (20)

Grokking Techtalk #37: Data intensive problem
 Grokking Techtalk #37: Data intensive problem Grokking Techtalk #37: Data intensive problem
Grokking Techtalk #37: Data intensive problem
 
Grokking TechTalk #35: Efficient spellchecking
Grokking TechTalk #35: Efficient spellcheckingGrokking TechTalk #35: Efficient spellchecking
Grokking TechTalk #35: Efficient spellchecking
 
Asynchronous processing in big system
Asynchronous processing in big systemAsynchronous processing in big system
Asynchronous processing in big system
 
Toi uu hoa he thong 30 trieu nguoi dung
Toi uu hoa he thong 30 trieu nguoi dungToi uu hoa he thong 30 trieu nguoi dung
Toi uu hoa he thong 30 trieu nguoi dung
 
Introduction to ELK
Introduction to ELKIntroduction to ELK
Introduction to ELK
 
Grokking Techtalk #40: Consistency and Availability tradeoff in database cluster
Grokking Techtalk #40: Consistency and Availability tradeoff in database clusterGrokking Techtalk #40: Consistency and Availability tradeoff in database cluster
Grokking Techtalk #40: Consistency and Availability tradeoff in database cluster
 
HBase and HDFS: Understanding FileSystem Usage in HBase
HBase and HDFS: Understanding FileSystem Usage in HBaseHBase and HDFS: Understanding FileSystem Usage in HBase
HBase and HDFS: Understanding FileSystem Usage in HBase
 
Apache ZooKeeper
Apache ZooKeeperApache ZooKeeper
Apache ZooKeeper
 
Using ClickHouse for Experimentation
Using ClickHouse for ExperimentationUsing ClickHouse for Experimentation
Using ClickHouse for Experimentation
 
Introduction and Overview of Apache Kafka, TriHUG July 23, 2013
Introduction and Overview of Apache Kafka, TriHUG July 23, 2013Introduction and Overview of Apache Kafka, TriHUG July 23, 2013
Introduction and Overview of Apache Kafka, TriHUG July 23, 2013
 
Apache Iceberg - A Table Format for Hige Analytic Datasets
Apache Iceberg - A Table Format for Hige Analytic DatasetsApache Iceberg - A Table Format for Hige Analytic Datasets
Apache Iceberg - A Table Format for Hige Analytic Datasets
 
What is in a Lucene index?
What is in a Lucene index?What is in a Lucene index?
What is in a Lucene index?
 
Kafka 101
Kafka 101Kafka 101
Kafka 101
 
LMAX Disruptor as real-life example
LMAX Disruptor as real-life exampleLMAX Disruptor as real-life example
LMAX Disruptor as real-life example
 
Apache Kafka Introduction
Apache Kafka IntroductionApache Kafka Introduction
Apache Kafka Introduction
 
High Availability PostgreSQL with Zalando Patroni
High Availability PostgreSQL with Zalando PatroniHigh Availability PostgreSQL with Zalando Patroni
High Availability PostgreSQL with Zalando Patroni
 
webservice scaling for newbie
webservice scaling for newbiewebservice scaling for newbie
webservice scaling for newbie
 
Software architecture for high traffic website
Software architecture for high traffic websiteSoftware architecture for high traffic website
Software architecture for high traffic website
 
Introduction to memcached
Introduction to memcachedIntroduction to memcached
Introduction to memcached
 
itlchn 20 - Kien truc he thong chung khoan - Phan 2
itlchn 20 - Kien truc he thong chung khoan - Phan 2itlchn 20 - Kien truc he thong chung khoan - Phan 2
itlchn 20 - Kien truc he thong chung khoan - Phan 2
 

Similar to Grokking TechTalk #33: High Concurrency Architecture at TIKI

Slow things down to make them go faster [FOSDEM 2022]
Slow things down to make them go faster [FOSDEM 2022]Slow things down to make them go faster [FOSDEM 2022]
Slow things down to make them go faster [FOSDEM 2022]Jimmy Angelakos
 
Building big data pipelines with Kafka and Kubernetes
Building big data pipelines with Kafka and KubernetesBuilding big data pipelines with Kafka and Kubernetes
Building big data pipelines with Kafka and KubernetesVenu Ryali
 
DPDK Summit 2015 - Aspera - Charles Shiflett
DPDK Summit 2015 - Aspera - Charles ShiflettDPDK Summit 2015 - Aspera - Charles Shiflett
DPDK Summit 2015 - Aspera - Charles ShiflettJim St. Leger
 
IBM Power9 Features and Specifications
IBM Power9 Features and SpecificationsIBM Power9 Features and Specifications
IBM Power9 Features and Specificationsinside-BigData.com
 
Extending Piwik At R7.com
Extending Piwik At R7.comExtending Piwik At R7.com
Extending Piwik At R7.comLeo Lorieri
 
Redpanda and ClickHouse
Redpanda and ClickHouseRedpanda and ClickHouse
Redpanda and ClickHouseAltinity Ltd
 
High perf-networking
High perf-networkingHigh perf-networking
High perf-networkingmtimjones
 
Ceph Day Amsterdam 2015 - Deploying flash storage for Ceph without compromisi...
Ceph Day Amsterdam 2015 - Deploying flash storage for Ceph without compromisi...Ceph Day Amsterdam 2015 - Deploying flash storage for Ceph without compromisi...
Ceph Day Amsterdam 2015 - Deploying flash storage for Ceph without compromisi...Ceph Community
 
Ceph Day SF 2015 - Deploying flash storage for Ceph without compromising perf...
Ceph Day SF 2015 - Deploying flash storage for Ceph without compromising perf...Ceph Day SF 2015 - Deploying flash storage for Ceph without compromising perf...
Ceph Day SF 2015 - Deploying flash storage for Ceph without compromising perf...Ceph Community
 
Storage and performance- Batch processing, Whiptail
Storage and performance- Batch processing, WhiptailStorage and performance- Batch processing, Whiptail
Storage and performance- Batch processing, WhiptailInternet World
 
Deploying flash storage for Ceph without compromising performance
Deploying flash storage for Ceph without compromising performance Deploying flash storage for Ceph without compromising performance
Deploying flash storage for Ceph without compromising performance Ceph Community
 
Using a Fast Operational Database to Build Real-time Streaming Aggregations
Using a Fast Operational Database to Build Real-time Streaming AggregationsUsing a Fast Operational Database to Build Real-time Streaming Aggregations
Using a Fast Operational Database to Build Real-time Streaming AggregationsVoltDB
 
Boyan Krosnov - Building a software-defined cloud - our experience
Boyan Krosnov - Building a software-defined cloud - our experienceBoyan Krosnov - Building a software-defined cloud - our experience
Boyan Krosnov - Building a software-defined cloud - our experienceShapeBlue
 
OSS Presentation Metro Cluster by Andy Bennett & Roel De Frene
OSS Presentation Metro Cluster by Andy Bennett & Roel De FreneOSS Presentation Metro Cluster by Andy Bennett & Roel De Frene
OSS Presentation Metro Cluster by Andy Bennett & Roel De FreneOpenStorageSummit
 

Similar to Grokking TechTalk #33: High Concurrency Architecture at TIKI (20)

Slow things down to make them go faster [FOSDEM 2022]
Slow things down to make them go faster [FOSDEM 2022]Slow things down to make them go faster [FOSDEM 2022]
Slow things down to make them go faster [FOSDEM 2022]
 
Building big data pipelines with Kafka and Kubernetes
Building big data pipelines with Kafka and KubernetesBuilding big data pipelines with Kafka and Kubernetes
Building big data pipelines with Kafka and Kubernetes
 
Mahti quick-start guide
Mahti quick-start guide Mahti quick-start guide
Mahti quick-start guide
 
DPDK Summit 2015 - Aspera - Charles Shiflett
DPDK Summit 2015 - Aspera - Charles ShiflettDPDK Summit 2015 - Aspera - Charles Shiflett
DPDK Summit 2015 - Aspera - Charles Shiflett
 
IBM Power9 Features and Specifications
IBM Power9 Features and SpecificationsIBM Power9 Features and Specifications
IBM Power9 Features and Specifications
 
Extending Piwik At R7.com
Extending Piwik At R7.comExtending Piwik At R7.com
Extending Piwik At R7.com
 
Kafka vs kinesis
Kafka vs kinesisKafka vs kinesis
Kafka vs kinesis
 
Redpanda and ClickHouse
Redpanda and ClickHouseRedpanda and ClickHouse
Redpanda and ClickHouse
 
High perf-networking
High perf-networkingHigh perf-networking
High perf-networking
 
Ceph Day Amsterdam 2015 - Deploying flash storage for Ceph without compromisi...
Ceph Day Amsterdam 2015 - Deploying flash storage for Ceph without compromisi...Ceph Day Amsterdam 2015 - Deploying flash storage for Ceph without compromisi...
Ceph Day Amsterdam 2015 - Deploying flash storage for Ceph without compromisi...
 
100 M pps on PC.
100 M pps on PC.100 M pps on PC.
100 M pps on PC.
 
Ceph Day SF 2015 - Deploying flash storage for Ceph without compromising perf...
Ceph Day SF 2015 - Deploying flash storage for Ceph without compromising perf...Ceph Day SF 2015 - Deploying flash storage for Ceph without compromising perf...
Ceph Day SF 2015 - Deploying flash storage for Ceph without compromising perf...
 
Storage and performance- Batch processing, Whiptail
Storage and performance- Batch processing, WhiptailStorage and performance- Batch processing, Whiptail
Storage and performance- Batch processing, Whiptail
 
Deploying flash storage for Ceph without compromising performance
Deploying flash storage for Ceph without compromising performance Deploying flash storage for Ceph without compromising performance
Deploying flash storage for Ceph without compromising performance
 
OpenDS_Jazoon2010
OpenDS_Jazoon2010OpenDS_Jazoon2010
OpenDS_Jazoon2010
 
Using a Fast Operational Database to Build Real-time Streaming Aggregations
Using a Fast Operational Database to Build Real-time Streaming AggregationsUsing a Fast Operational Database to Build Real-time Streaming Aggregations
Using a Fast Operational Database to Build Real-time Streaming Aggregations
 
Boyan Krosnov - Building a software-defined cloud - our experience
Boyan Krosnov - Building a software-defined cloud - our experienceBoyan Krosnov - Building a software-defined cloud - our experience
Boyan Krosnov - Building a software-defined cloud - our experience
 
OSS Presentation Metro Cluster by Andy Bennett & Roel De Frene
OSS Presentation Metro Cluster by Andy Bennett & Roel De FreneOSS Presentation Metro Cluster by Andy Bennett & Roel De Frene
OSS Presentation Metro Cluster by Andy Bennett & Roel De Frene
 
Data center network reference architecture with hpe flex fabric
Data center network reference architecture with hpe flex fabricData center network reference architecture with hpe flex fabric
Data center network reference architecture with hpe flex fabric
 
Rust at Ather
Rust at AtherRust at Ather
Rust at Ather
 

More from Grokking VN

Grokking Techtalk #46: Lessons from years hacking and defending Vietnamese banks
Grokking Techtalk #46: Lessons from years hacking and defending Vietnamese banksGrokking Techtalk #46: Lessons from years hacking and defending Vietnamese banks
Grokking Techtalk #46: Lessons from years hacking and defending Vietnamese banksGrokking VN
 
Grokking Techtalk #45: First Principles Thinking
Grokking Techtalk #45: First Principles ThinkingGrokking Techtalk #45: First Principles Thinking
Grokking Techtalk #45: First Principles ThinkingGrokking VN
 
Grokking Techtalk #42: Engineering challenges on building data platform for M...
Grokking Techtalk #42: Engineering challenges on building data platform for M...Grokking Techtalk #42: Engineering challenges on building data platform for M...
Grokking Techtalk #42: Engineering challenges on building data platform for M...Grokking VN
 
Grokking Techtalk #43: Payment gateway demystified
Grokking Techtalk #43: Payment gateway demystifiedGrokking Techtalk #43: Payment gateway demystified
Grokking Techtalk #43: Payment gateway demystifiedGrokking VN
 
Grokking Techtalk #40: AWS’s philosophy on designing MLOps platform
Grokking Techtalk #40: AWS’s philosophy on designing MLOps platformGrokking Techtalk #40: AWS’s philosophy on designing MLOps platform
Grokking Techtalk #40: AWS’s philosophy on designing MLOps platformGrokking VN
 
Grokking Techtalk #39: Gossip protocol and applications
Grokking Techtalk #39: Gossip protocol and applicationsGrokking Techtalk #39: Gossip protocol and applications
Grokking Techtalk #39: Gossip protocol and applicationsGrokking VN
 
Grokking Techtalk #38: Escape Analysis in Go compiler
 Grokking Techtalk #38: Escape Analysis in Go compiler Grokking Techtalk #38: Escape Analysis in Go compiler
Grokking Techtalk #38: Escape Analysis in Go compilerGrokking VN
 
Grokking Techtalk #34: K8S On-premise: Incident & Lesson Learned ZaloPay Mer...
 Grokking Techtalk #34: K8S On-premise: Incident & Lesson Learned ZaloPay Mer... Grokking Techtalk #34: K8S On-premise: Incident & Lesson Learned ZaloPay Mer...
Grokking Techtalk #34: K8S On-premise: Incident & Lesson Learned ZaloPay Mer...Grokking VN
 
Grokking TechTalk #33: Architecture of AI-First Systems - Engineering for Big...
Grokking TechTalk #33: Architecture of AI-First Systems - Engineering for Big...Grokking TechTalk #33: Architecture of AI-First Systems - Engineering for Big...
Grokking TechTalk #33: Architecture of AI-First Systems - Engineering for Big...Grokking VN
 
Grokking TechTalk #31: Asynchronous Communications
Grokking TechTalk #31: Asynchronous CommunicationsGrokking TechTalk #31: Asynchronous Communications
Grokking TechTalk #31: Asynchronous CommunicationsGrokking VN
 
Grokking TechTalk #30: From App to Ecosystem: Lessons Learned at Scale
Grokking TechTalk #30: From App to Ecosystem: Lessons Learned at ScaleGrokking TechTalk #30: From App to Ecosystem: Lessons Learned at Scale
Grokking TechTalk #30: From App to Ecosystem: Lessons Learned at ScaleGrokking VN
 
Grokking TechTalk #29: Building Realtime Metrics Platform at LinkedIn
Grokking TechTalk #29: Building Realtime Metrics Platform at LinkedInGrokking TechTalk #29: Building Realtime Metrics Platform at LinkedIn
Grokking TechTalk #29: Building Realtime Metrics Platform at LinkedInGrokking VN
 
Grokking TechTalk #27: Optimal Binary Search Tree
Grokking TechTalk #27: Optimal Binary Search TreeGrokking TechTalk #27: Optimal Binary Search Tree
Grokking TechTalk #27: Optimal Binary Search TreeGrokking VN
 
Grokking TechTalk #26: Kotlin, Understand the Magic
Grokking TechTalk #26: Kotlin, Understand the MagicGrokking TechTalk #26: Kotlin, Understand the Magic
Grokking TechTalk #26: Kotlin, Understand the MagicGrokking VN
 
Grokking TechTalk #26: Compare ios and android platform
Grokking TechTalk #26: Compare ios and android platformGrokking TechTalk #26: Compare ios and android platform
Grokking TechTalk #26: Compare ios and android platformGrokking VN
 
Grokking TechTalk #24: Thiết kế hệ thống Background Job Queue bằng Ruby & Pos...
Grokking TechTalk #24: Thiết kế hệ thống Background Job Queue bằng Ruby & Pos...Grokking TechTalk #24: Thiết kế hệ thống Background Job Queue bằng Ruby & Pos...
Grokking TechTalk #24: Thiết kế hệ thống Background Job Queue bằng Ruby & Pos...Grokking VN
 
Grokking TechTalk #24: Kafka's principles and protocols
Grokking TechTalk #24: Kafka's principles and protocolsGrokking TechTalk #24: Kafka's principles and protocols
Grokking TechTalk #24: Kafka's principles and protocolsGrokking VN
 
Grokking TechTalk #21: Deep Learning in Computer Vision
Grokking TechTalk #21: Deep Learning in Computer VisionGrokking TechTalk #21: Deep Learning in Computer Vision
Grokking TechTalk #21: Deep Learning in Computer VisionGrokking VN
 
Grokking TechTalk #20: PostgreSQL Internals 101
Grokking TechTalk #20: PostgreSQL Internals 101Grokking TechTalk #20: PostgreSQL Internals 101
Grokking TechTalk #20: PostgreSQL Internals 101Grokking VN
 
Grokking TechTalk #19: Software Development Cycle In The International Moneta...
Grokking TechTalk #19: Software Development Cycle In The International Moneta...Grokking TechTalk #19: Software Development Cycle In The International Moneta...
Grokking TechTalk #19: Software Development Cycle In The International Moneta...Grokking VN
 

More from Grokking VN (20)

Grokking Techtalk #46: Lessons from years hacking and defending Vietnamese banks
Grokking Techtalk #46: Lessons from years hacking and defending Vietnamese banksGrokking Techtalk #46: Lessons from years hacking and defending Vietnamese banks
Grokking Techtalk #46: Lessons from years hacking and defending Vietnamese banks
 
Grokking Techtalk #45: First Principles Thinking
Grokking Techtalk #45: First Principles ThinkingGrokking Techtalk #45: First Principles Thinking
Grokking Techtalk #45: First Principles Thinking
 
Grokking Techtalk #42: Engineering challenges on building data platform for M...
Grokking Techtalk #42: Engineering challenges on building data platform for M...Grokking Techtalk #42: Engineering challenges on building data platform for M...
Grokking Techtalk #42: Engineering challenges on building data platform for M...
 
Grokking Techtalk #43: Payment gateway demystified
Grokking Techtalk #43: Payment gateway demystifiedGrokking Techtalk #43: Payment gateway demystified
Grokking Techtalk #43: Payment gateway demystified
 
Grokking Techtalk #40: AWS’s philosophy on designing MLOps platform
Grokking Techtalk #40: AWS’s philosophy on designing MLOps platformGrokking Techtalk #40: AWS’s philosophy on designing MLOps platform
Grokking Techtalk #40: AWS’s philosophy on designing MLOps platform
 
Grokking Techtalk #39: Gossip protocol and applications
Grokking Techtalk #39: Gossip protocol and applicationsGrokking Techtalk #39: Gossip protocol and applications
Grokking Techtalk #39: Gossip protocol and applications
 
Grokking Techtalk #38: Escape Analysis in Go compiler
 Grokking Techtalk #38: Escape Analysis in Go compiler Grokking Techtalk #38: Escape Analysis in Go compiler
Grokking Techtalk #38: Escape Analysis in Go compiler
 
Grokking Techtalk #34: K8S On-premise: Incident & Lesson Learned ZaloPay Mer...
 Grokking Techtalk #34: K8S On-premise: Incident & Lesson Learned ZaloPay Mer... Grokking Techtalk #34: K8S On-premise: Incident & Lesson Learned ZaloPay Mer...
Grokking Techtalk #34: K8S On-premise: Incident & Lesson Learned ZaloPay Mer...
 
Grokking TechTalk #33: Architecture of AI-First Systems - Engineering for Big...
Grokking TechTalk #33: Architecture of AI-First Systems - Engineering for Big...Grokking TechTalk #33: Architecture of AI-First Systems - Engineering for Big...
Grokking TechTalk #33: Architecture of AI-First Systems - Engineering for Big...
 
Grokking TechTalk #31: Asynchronous Communications
Grokking TechTalk #31: Asynchronous CommunicationsGrokking TechTalk #31: Asynchronous Communications
Grokking TechTalk #31: Asynchronous Communications
 
Grokking TechTalk #30: From App to Ecosystem: Lessons Learned at Scale
Grokking TechTalk #30: From App to Ecosystem: Lessons Learned at ScaleGrokking TechTalk #30: From App to Ecosystem: Lessons Learned at Scale
Grokking TechTalk #30: From App to Ecosystem: Lessons Learned at Scale
 
Grokking TechTalk #29: Building Realtime Metrics Platform at LinkedIn
Grokking TechTalk #29: Building Realtime Metrics Platform at LinkedInGrokking TechTalk #29: Building Realtime Metrics Platform at LinkedIn
Grokking TechTalk #29: Building Realtime Metrics Platform at LinkedIn
 
Grokking TechTalk #27: Optimal Binary Search Tree
Grokking TechTalk #27: Optimal Binary Search TreeGrokking TechTalk #27: Optimal Binary Search Tree
Grokking TechTalk #27: Optimal Binary Search Tree
 
Grokking TechTalk #26: Kotlin, Understand the Magic
Grokking TechTalk #26: Kotlin, Understand the MagicGrokking TechTalk #26: Kotlin, Understand the Magic
Grokking TechTalk #26: Kotlin, Understand the Magic
 
Grokking TechTalk #26: Compare ios and android platform
Grokking TechTalk #26: Compare ios and android platformGrokking TechTalk #26: Compare ios and android platform
Grokking TechTalk #26: Compare ios and android platform
 
Grokking TechTalk #24: Thiết kế hệ thống Background Job Queue bằng Ruby & Pos...
Grokking TechTalk #24: Thiết kế hệ thống Background Job Queue bằng Ruby & Pos...Grokking TechTalk #24: Thiết kế hệ thống Background Job Queue bằng Ruby & Pos...
Grokking TechTalk #24: Thiết kế hệ thống Background Job Queue bằng Ruby & Pos...
 
Grokking TechTalk #24: Kafka's principles and protocols
Grokking TechTalk #24: Kafka's principles and protocolsGrokking TechTalk #24: Kafka's principles and protocols
Grokking TechTalk #24: Kafka's principles and protocols
 
Grokking TechTalk #21: Deep Learning in Computer Vision
Grokking TechTalk #21: Deep Learning in Computer VisionGrokking TechTalk #21: Deep Learning in Computer Vision
Grokking TechTalk #21: Deep Learning in Computer Vision
 
Grokking TechTalk #20: PostgreSQL Internals 101
Grokking TechTalk #20: PostgreSQL Internals 101Grokking TechTalk #20: PostgreSQL Internals 101
Grokking TechTalk #20: PostgreSQL Internals 101
 
Grokking TechTalk #19: Software Development Cycle In The International Moneta...
Grokking TechTalk #19: Software Development Cycle In The International Moneta...Grokking TechTalk #19: Software Development Cycle In The International Moneta...
Grokking TechTalk #19: Software Development Cycle In The International Moneta...
 

Recently uploaded

Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...FIDO Alliance
 
Intro in Product Management - Коротко про професію продакт менеджера
Intro in Product Management - Коротко про професію продакт менеджераIntro in Product Management - Коротко про професію продакт менеджера
Intro in Product Management - Коротко про професію продакт менеджераMark Opanasiuk
 
Custom Approval Process: A New Perspective, Pavel Hrbacek & Anindya Halder
Custom Approval Process: A New Perspective, Pavel Hrbacek & Anindya HalderCustom Approval Process: A New Perspective, Pavel Hrbacek & Anindya Halder
Custom Approval Process: A New Perspective, Pavel Hrbacek & Anindya HalderCzechDreamin
 
WSO2CONMay2024OpenSourceConferenceDebrief.pptx
WSO2CONMay2024OpenSourceConferenceDebrief.pptxWSO2CONMay2024OpenSourceConferenceDebrief.pptx
WSO2CONMay2024OpenSourceConferenceDebrief.pptxJennifer Lim
 
UiPath Test Automation using UiPath Test Suite series, part 2
UiPath Test Automation using UiPath Test Suite series, part 2UiPath Test Automation using UiPath Test Suite series, part 2
UiPath Test Automation using UiPath Test Suite series, part 2DianaGray10
 
A Business-Centric Approach to Design System Strategy
A Business-Centric Approach to Design System StrategyA Business-Centric Approach to Design System Strategy
A Business-Centric Approach to Design System StrategyUXDXConf
 
IoT Analytics Company Presentation May 2024
IoT Analytics Company Presentation May 2024IoT Analytics Company Presentation May 2024
IoT Analytics Company Presentation May 2024IoTAnalytics
 
UiPath Test Automation using UiPath Test Suite series, part 1
UiPath Test Automation using UiPath Test Suite series, part 1UiPath Test Automation using UiPath Test Suite series, part 1
UiPath Test Automation using UiPath Test Suite series, part 1DianaGray10
 
Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...
Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...
Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...CzechDreamin
 
The UX of Automation by AJ King, Senior UX Researcher, Ocado
The UX of Automation by AJ King, Senior UX Researcher, OcadoThe UX of Automation by AJ King, Senior UX Researcher, Ocado
The UX of Automation by AJ King, Senior UX Researcher, OcadoUXDXConf
 
Buy Epson EcoTank L3210 Colour Printer Online.pdf
Buy Epson EcoTank L3210 Colour Printer Online.pdfBuy Epson EcoTank L3210 Colour Printer Online.pdf
Buy Epson EcoTank L3210 Colour Printer Online.pdfEasyPrinterHelp
 
WebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM PerformanceWebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM PerformanceSamy Fodil
 
Introduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdf
Introduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdfIntroduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdf
Introduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdfFIDO Alliance
 
Agentic RAG What it is its types applications and implementation.pdf
Agentic RAG What it is its types applications and implementation.pdfAgentic RAG What it is its types applications and implementation.pdf
Agentic RAG What it is its types applications and implementation.pdfChristopherTHyatt
 
IESVE for Early Stage Design and Planning
IESVE for Early Stage Design and PlanningIESVE for Early Stage Design and Planning
IESVE for Early Stage Design and PlanningIES VE
 
Salesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
Salesforce Adoption – Metrics, Methods, and Motivation, Antone KomSalesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
Salesforce Adoption – Metrics, Methods, and Motivation, Antone KomCzechDreamin
 
What's New in Teams Calling, Meetings and Devices April 2024
What's New in Teams Calling, Meetings and Devices April 2024What's New in Teams Calling, Meetings and Devices April 2024
What's New in Teams Calling, Meetings and Devices April 2024Stephanie Beckett
 
Unpacking Value Delivery - Agile Oxford Meetup - May 2024.pptx
Unpacking Value Delivery - Agile Oxford Meetup - May 2024.pptxUnpacking Value Delivery - Agile Oxford Meetup - May 2024.pptx
Unpacking Value Delivery - Agile Oxford Meetup - May 2024.pptxDavid Michel
 
The Metaverse: Are We There Yet?
The  Metaverse:    Are   We  There  Yet?The  Metaverse:    Are   We  There  Yet?
The Metaverse: Are We There Yet?Mark Billinghurst
 
Simplified FDO Manufacturing Flow with TPMs _ Liam at Infineon.pdf
Simplified FDO Manufacturing Flow with TPMs _ Liam at Infineon.pdfSimplified FDO Manufacturing Flow with TPMs _ Liam at Infineon.pdf
Simplified FDO Manufacturing Flow with TPMs _ Liam at Infineon.pdfFIDO Alliance
 

Recently uploaded (20)

Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
 
Intro in Product Management - Коротко про професію продакт менеджера
Intro in Product Management - Коротко про професію продакт менеджераIntro in Product Management - Коротко про професію продакт менеджера
Intro in Product Management - Коротко про професію продакт менеджера
 
Custom Approval Process: A New Perspective, Pavel Hrbacek & Anindya Halder
Custom Approval Process: A New Perspective, Pavel Hrbacek & Anindya HalderCustom Approval Process: A New Perspective, Pavel Hrbacek & Anindya Halder
Custom Approval Process: A New Perspective, Pavel Hrbacek & Anindya Halder
 
WSO2CONMay2024OpenSourceConferenceDebrief.pptx
WSO2CONMay2024OpenSourceConferenceDebrief.pptxWSO2CONMay2024OpenSourceConferenceDebrief.pptx
WSO2CONMay2024OpenSourceConferenceDebrief.pptx
 
UiPath Test Automation using UiPath Test Suite series, part 2
UiPath Test Automation using UiPath Test Suite series, part 2UiPath Test Automation using UiPath Test Suite series, part 2
UiPath Test Automation using UiPath Test Suite series, part 2
 
A Business-Centric Approach to Design System Strategy
A Business-Centric Approach to Design System StrategyA Business-Centric Approach to Design System Strategy
A Business-Centric Approach to Design System Strategy
 
IoT Analytics Company Presentation May 2024
IoT Analytics Company Presentation May 2024IoT Analytics Company Presentation May 2024
IoT Analytics Company Presentation May 2024
 
UiPath Test Automation using UiPath Test Suite series, part 1
UiPath Test Automation using UiPath Test Suite series, part 1UiPath Test Automation using UiPath Test Suite series, part 1
UiPath Test Automation using UiPath Test Suite series, part 1
 
Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...
Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...
Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...
 
The UX of Automation by AJ King, Senior UX Researcher, Ocado
The UX of Automation by AJ King, Senior UX Researcher, OcadoThe UX of Automation by AJ King, Senior UX Researcher, Ocado
The UX of Automation by AJ King, Senior UX Researcher, Ocado
 
Buy Epson EcoTank L3210 Colour Printer Online.pdf
Buy Epson EcoTank L3210 Colour Printer Online.pdfBuy Epson EcoTank L3210 Colour Printer Online.pdf
Buy Epson EcoTank L3210 Colour Printer Online.pdf
 
WebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM PerformanceWebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM Performance
 
Introduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdf
Introduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdfIntroduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdf
Introduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdf
 
Agentic RAG What it is its types applications and implementation.pdf
Agentic RAG What it is its types applications and implementation.pdfAgentic RAG What it is its types applications and implementation.pdf
Agentic RAG What it is its types applications and implementation.pdf
 
IESVE for Early Stage Design and Planning
IESVE for Early Stage Design and PlanningIESVE for Early Stage Design and Planning
IESVE for Early Stage Design and Planning
 
Salesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
Salesforce Adoption – Metrics, Methods, and Motivation, Antone KomSalesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
Salesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
 
What's New in Teams Calling, Meetings and Devices April 2024
What's New in Teams Calling, Meetings and Devices April 2024What's New in Teams Calling, Meetings and Devices April 2024
What's New in Teams Calling, Meetings and Devices April 2024
 
Unpacking Value Delivery - Agile Oxford Meetup - May 2024.pptx
Unpacking Value Delivery - Agile Oxford Meetup - May 2024.pptxUnpacking Value Delivery - Agile Oxford Meetup - May 2024.pptx
Unpacking Value Delivery - Agile Oxford Meetup - May 2024.pptx
 
The Metaverse: Are We There Yet?
The  Metaverse:    Are   We  There  Yet?The  Metaverse:    Are   We  There  Yet?
The Metaverse: Are We There Yet?
 
Simplified FDO Manufacturing Flow with TPMs _ Liam at Infineon.pdf
Simplified FDO Manufacturing Flow with TPMs _ Liam at Infineon.pdfSimplified FDO Manufacturing Flow with TPMs _ Liam at Infineon.pdf
Simplified FDO Manufacturing Flow with TPMs _ Liam at Infineon.pdf
 

Grokking TechTalk #33: High Concurrency Architecture at TIKI

  • 2. Contributors Bùi Anh Dũng Principal Engineer Nguyễn Hoàng Bách Senior Principal Engineer Phan Công Huân Senior Software Engineer Lê Minh Nghĩa Senior Architect Trần Nguyên Bản Principal Engineer
  • 3. Agenda - Principles - Pegasus - Highest throughput API - Arcturus - High concurrency inventory API - Conclusion
  • 4. Principles - Use local memory to handle high concurrency transaction - Non blocking architecture - Trade-offs consistency vs eventual consistency - Reliable replication - Authority: each service owns its problems.
  • 5. Pegasus - Highest Throughput API at TIKI Problems: - Handle the most of traffic to fetch product information - Has to handle at least 10k request/s, tp95 < 5ms
  • 7. Pegasus - Architecture Practises: - Cache product data in local memory - Subscribe product change event to invalid cache - Non-Blocking http web server - Compress to reduce payload size Technology: - Java - Guava - In Memory Cache - Gridgo - Async IO & Event driven framework
  • 8. Pegasus - Compression Two cases: - Get single product by id - Get multiple product by a list id Solutions: - Using gzip to compress product data to store in cache. Reduce from 200kb text to 3Kb - Handle single product request: return compressed gzip bytes to client directly - Handle multiple product request: store plain product data and merge them to build a list of products, then use Snappy format to compress data and return to client - Gzip format compress better than Snappy and is supported natively by most http client, but Snappy compress faster and use less CPU - Output cache can be enabled in hot-deal situation
  • 9. Pegasus - Technology - Java - Gridgo - Guava - Kafka
  • 10. Pegasus - Benchmark Benchmark use WRK tools, 4VM, L4 LB, GCP: - 90%<6.6ms - 96k request/s Production - 200k request/minutes (all platforms) - <2ms Cache hit: 85%. Increased to 95% with Consistent Hashing With Bounded Load. Average payload: Single (3KB), Multi (60KB)
  • 12. Arcturus - High concurrency Inventory API Problems: - Handle inventory transaction when customers place orders - Handle high concurrency transaction for extreme hot deals with very cheap and low quantity. Exp: Only ten 1đ iPhone XS, only in ten minutes from 9AM to 9h10 AM. - Guarantee eventual consistency of inventory data between many systems
  • 15. Arcturus - Problems and Solutions Problems: - Many customers may place order at the same time, especially for hot skus. - System has to be deterministic and can be recovered after crashing Solutions: - All write requests are published to Kafka with only one partition to guarantee the ordering of message and recover if system crashes. - Non Blocking In Memory Cache for both read and write - All changes are flushed to database asynchronously - Recovery based on the offset of write command
  • 16. Arcturus - In Memory Cache Data Structure Problem: - There will be a race condition when many customer place the same skus at the same time - Building an in memory cache structure that can buffer data changes and flush to database asynchronously Approach: - Each record have a key (string, bytes…) and a value (8 bytes long number). - A transaction is a set of record updates. - Transactions must be ordered (e.g. key_1 must +3 before can be -1). - It can be millions of keys and process upto 10k TPS. - Using ring buffer data structure to guarantee the ordering of changes * The hardest thing is to keep everything ordered when make it fast enough.
  • 17. Arcturus - Old solution - Multi threading application - DB transaction, row locking Pros - Strong consistency - Simple implementation Cons - Slow - Deadlock/timeout implicit risk
  • 18. Arcturus - LMax Architecture - Non Blocking architecture using single thread business logic processor - Use Ring Buffer data structure to communicate between processors - Handle million transaction per seconds
  • 19. Arcturus - Batching marshaller vBatching: use multi thread marshaller ● Pros - Fast (400k-600k ops/s*) - Avoid multi key locking - Write only most updated value ● Cons - Inconsistent transaction offset → use when you just want to make your code as fast as possible. * Macbook pro 2016 15’’ 2.7GHz Core i7, 16G ram. Without I/O, single update per transaction *** Test without I/O: [Single ops vbatch] Total time running for 1000000 transactions: 1085 ms; at rate: 921,658.99 ops/s
  • 20. Arcturus - Batching marshaller hBatching: use single marshaller thread ● Pros - Ensure transaction offset - Ordered db updating ● Cons - A little bit slower than vBatching. → use when you need to re-create application state after fail. *** Test without I/O: [Single ops hbatch] Total time running for 1000000 transactions: 1056 ms; at rate: 946,969.70 ops/s
  • 22. Arcturus - Technology - Java - Kafka - ZeroMQ - Gridgo - MySQL - LMax/Ring Buffer
  • 23. Conclusion - Has to trade-off between consistency and eventual consistency - In Memory is a great way to improve the performance - Reliable replication is the key to split and scale system - Non Blocking architecture is a great way to utilize hardware resources efficiently.