An organized reading list for illustrating the patterns behind scalable, reliable, and performant large-scale systems. Concepts are explained in the articles of prominent engineers and credible references. Case studies are taken from battle-tested systems that serve millions to billions of users.
Understand your problems: scalability problem (fast for a single user but slow under heavy load) or performance problem (slow for a single user) by reviewing some design principles and checking how scalability and performance problems are solved at tech companies. The section of intelligence are created for those who work with data and machine learning at big (data) and deep (learning) scale.
"Even if you lose all one day, you can build all over again if you retain your calm!" - Thuan Pham, CTO of Uber. So, keep calm and mind the availability and stability matters!
Look at some interview notes and real-world architectures with completed diagrams to get a comprehensive view before designing your system on whiteboard. You can check some talks of engineers from tech giants to know how they build, scale, and optimize their systems. There are some selected books for you (most of them are free)! Good luck 🍀
The goal of scaling team is not growing team size but increasing team output and value. You can find out how tech companies reach that goal in various aspects: hiring, management, organization, culture, and communication in the organization section.
Contributions are greatly welcome! You may want to take a look at the contribution guidelines.
If you find this project helpful, please share on your chat groups, on Twitter, or on Weibo so more people can be helped! Power is gained by sharing knowledge, not hoarding it. Thank you! 🌺
- Principle
- Scalability
- Availability
- Stability
- Performance
- Intelligence
- Architecture
- Interview
- Organization
- Talk
- Book
- Lessons from Giant-Scale Services - Eric Brewer, UC Berkeley & Google
- Designs, Lessons and Advice from Building Large Distributed Systems - Jeff Dean, Google
- How to Design a Good API & Why it Matters - Joshua Bloch, CMU & Google
- On Efficiency, Reliability, Scaling - James Hamilton, VP at AWS
- Things to Keep in Mind When Building a Platform for the Enterprise - Heidi Williams, VP Platform at Box
- Principles of Chaos Engineering
- Finding the Order in Chaos
- The Twelve-Factor App
- Clean Architecture
- High Cohesion and Low Coupling
- Monoliths and Microservices
- CAP Theorem and Trade-offs
- CP Databases and AP Databases
- Stateless vs Stateful Scalability
- Scale Up vs Scale Out
- Scale Up vs Scale Out: Hidden Costs
- Best Practices for Scaling Out
- Best Practices for Continuous Delivery
- ACID and BASE
- Blocking/Non-Blocking and Sync/Async
- Performance and Scalability of Databases
- Database Isolation Levels and Effects on Performance and Scalability
- The Probability of Data Loss in Large Clusters
- Data Access for Highly-Scalable Solutions: Using SQL, NoSQL, and Polyglot Persistence
- SQL vs NoSQL
- SQL vs NoSQL - Lesson Learned at Salesforce
- NoSQL Databases: Survey and Decision Guidance
- How Sharding Works
- Consistent Hashing
- Consistent Hashing: Algorithmic Tradeoffs
- Don’t be tricked by the Hashing Trick
- Uniform Consistent Hashing at Netflix
- Eventually Consistent - Werner Vogels, CTO at Amazon
- Cache is King
- Anti-Caching
- Understand Latency
- Latency Numbers Every Programmer Should Know
- The Calculus of Service Availability
- Architecture Issues When Scaling Web Applications: Bottlenecks, Database, CPU, IO
- Common Bottlenecks
- Life Beyond Distributed Transactions
- Relying on Software to Redirect Traffic Reliably at Various Layers
- Breaking Things on Purpose
- Avoid Over Engineering
- Scalability Worst Practices
- Use Solid Technologies - Don’t Re-invent the Wheel - Keep It Simple!
- Simplicity by Distributing Complexity
- Why Over-Reusing is Bad
- Performance is a Feature
- Make Performance Part of Your Workflow
- The Benefits of Server Side Rendering over Client Side Rendering
- Writing Code that Scales
- Automate and Abstract: Lessons at Facebook
- AWS Do's and Don'ts
- (UI) Design Doesn’t Scale - Stanley Wood, Design Director at Spotify
- Linux Performance
- Building Fast and Resilient Web Applications - Ilya Grigorik
- Accept Partial Failures, Minimize Service Loss
- Design for Loose-coupling
- Design for Resiliency
- Design for Self-healing
- Design for Scaling Out
- Design for Evolution
- Learn from Mistakes
- Microservices and Orchestration
- Microservices Resource Guide - Martin Fowler
- Microservices Patterns
- Advantages and Drawbacks of Microservices
- Microservices Scale Cube
- Thinking Inside the Container (8 parts) at Riot Games
- Containerization at Pinterest
- Techniques for Splitting Up a Codebase into Microservices and Artifacts at LinkedIn
- The Evolution of Container Usage at Netflix
- Dockerizing MySQL at Uber
- Testing of Microservices at Spotify
- Organize Monolith Before Breaking it into Services at Weebly
- Lessons learned running Docker in production at Treehouse
- Inside a SoundCloud Microservice
- Operate Kubernetes Reliably at Stripe
- Kubernetes Traffic Routing (2 parts) at Rakuten
- Agrarian-Scale Kubernetes (3 parts) at New York Times
- Nanoservices at BBC Online
- PowerfulSeal: Testing Tool for Kubernetes Clusters at Bloomberg
- Conductor: Microservices Orchestrator at Netflix
- Making 10x Improvement in Release Times with Docker and Amazon ECS at Nextdoor
- K8Guard: Auditing System for Kubernetes Clusters at Target.com
- Deconstructing Monolithic Applications into (Kafka-driven) Services at Heroku
- Docker Containers that Power Over 100.000 Online Shops at Shopify
- Microservice Architecture at Medium
- From bare-metal to Kubernetes at Betabrand
- Distributed Caching
- Read-Through, Write-Through, Write-Behind, and Refresh-Ahead Caching
- Eviction Policy and Expiration Policy
- EVCache: Distributed In-memory Caching at Netflix
- EVCache Cache Warmer Infrastructure at Netflix
- Memsniff: Robust Memcache Traffic Analyzer at Box
- Caching with Consistent Hashing and Cache Smearing at Etsy
- Analysis of Photo Caching at Facebook
- Cache Efficiency Exercise at Facebook
- tCache: Scalable Data-aware Java Caching at Trivago
- Reduce Memcached Memory Usage by 50% at Trivago
- Caching Internal Service Calls at Yelp
- Scaling Live Streaming for Large Events (with Distributed Cache) at Hulu
- Estimating the Cache Efficiency using Big Data at Allegro
- Caching (with Hashing) at Zenefits
- Distributed Cache (Akka, Kubernetes) at Zalando
- Application Data Caching from RAM to SSD at NetFlix
- Tradeoffs of Replicated Cache at Skyscanner
- Avoiding Cache Stampede at DoorDash
- Location Caching with Quadtrees at Yext
- HTTP Caching
- Caching 404s Saved 66% On Server Time at The Onion
- Zynga Geo Proxy: Reducing Mobile Game Latency at Zynga
- Google AMP at Condé Nast
- Running A/B Tests on Hosting Infrastructure (CDNs) at Deliveroo
- HAProxy with Kubernetes for User-facing Traffic at SoundCloud
- Bandaid: Service Proxy at Dropbox
- CDN in LIVE's Encoder Layer at LINE
- Distributed Locking
- Distributed Tracking, Tracing, and Measuring
- Zipkin: Distributed Systems Tracing at Twitter
- Improve Zipkin Traces using Kubernetes Pod Metadata at SoundCloud
- Canopy: Scalable Distributed Tracing & Analysis at Facebook
- Pintrace: Distributed Tracing at Pinterest
- Real-time Distributed Tracing at LinkedIn
- Tracking Service Infrastructure at Scale at Shopify
- Distributed Tracing at HelloFresh
- Analyzing Distributed Trace Data at Pinterest
- Distributed Tracing at Uber
- JVM Profiler: Tracing Distributed JVM Applications at Uber
- Data Checking at Dropbox
- Tracing Distributed Systems at Showmax
- osquery Across the Enterprise at Palantir
- StatsD at Etsy
- StatsD at DoorDash
- Distributed Scheduling
- Building Cron at Google
- Distributed Cron Architecture at Quora
- Chronos: A Replacement for Cron at Airbnb
- Scheduler at Nextdoor
- Peloton: Unified Resource Scheduler for Diverse Cluster Workloads at Uber
- Fenzo: OSS Scheduler for Apache Mesos Frameworks at Netflix
- Airflow - Workflow Management Platform at Airbnb
- Distributed Logging
- The Problem with Logging - Jeff Atwood
- The Log: What Every Software Engineer Should Know
- Using Logs to Build a Solid Data Infrastructure - Martin Kleppmann
- Scalable and Reliable Log Ingestion at Pinterest
- Building DistributedLog at Twitter: High-performance replicated log service
- Logging Service with Spark at CERN Accelerator
- Logging and Aggregation at Quora
- BookKeeper: Distributed Log Storage at Yahoo
- LogDevice: Distributed Data Store for Logs at Facebook
- LogFeeder: Log Collection System at Yelp
- Collection and Analysis of Daemon Logs at Badoo
- Distributed Monitoring and Alerting
- Alibaba Monitoring System
- Smart Monitoring System for Anomaly Detection on Business Trends at Alibaba
- Real User Monitoring at Dailymotion
- Alerting Ecosystem at Uber
- Job-based Forecasting Workflow for Observability Anomaly Detection at Uber
- Securitybot: Distributed Alerting Bot at Dropbox
- Observability (2 parts) at Twitter
- Distributed Security Alerting at Slack
- Real-Time News Alerting at Bloomberg
- Unicorn: Remediation System at eBay
- Optimising M3 at Uber
- Distributed Security
- Approach to Security at Scale at Dropbox
- Aardvark and Repokid: AWS Least Privilege for Distributed, High-Velocity Development at Netflix
- LISA: Distributed Firewall at LinkedIn
- Secure Infrastructure To Store Bitcoin In The Cloud at Coinbase
- BinaryAlert: Real-time Serverless Malware Detection at Airbnb
- Scalable IAM Architecture to Secure Access to 100 AWS Accounts at Segment
- OAuth Audit Toolbox at Indeed
- Active Directory Password Blacklisting at Yelp
- Syscall Auditing at Scale at Slack
- Athenz: Fine-Grained, Role-Based Access Control at Yahoo
- WebAuthn Support for Secure Sign In at Dropbox
- Security Development Lifecycle (SDL) at Slack
- Unprivileged Container Builds at Kinvolk
- Diffy: Differencing Engine for Digital Forensics in the Cloud at Netflix
- Detecting Credential Compromise in AWS at Netflix
- Scalable User Privacy at Spotify
- AVA: Audit Web Applications at Indeed
- TTL as a Service: Automatic Revocation of Stale Privileges at Yelp
- Distributed Messaging, Queuing, and Event Streaming
- Cape: Event Stream Processing Framework at Dropbox
- Druid: Event Stream Analytics at Walmart
- Samza: Stream Processing System for Latency Insighs at LinkedIn
- Bullet: Forward-Looking Query Engine for Streaming Data at Yahoo
- EventHorizon: Tool for Watching Events Streaming at Etsy
- Qmessage: Distributed, Asynchronous Task Queue at Quora
- Cherami: Message Queue System for Transporting Async Tasks at Uber
- Messaging Service at Riot Games
- Debugging Production with Event Logging at Zillow
- Cross-platform In-app Messaging Orchestration Service at Netflix
- Scaling Push Messaging for Millions of Devices at Netflix
- Delaying Asynchronous Message Processing with RabbitMQ at Indeed
- Benchmarking Streaming Computation Engines at Yahoo
- Event-Driven Messaging
- Pub-Sub Messaging
- Kafka the Message Broker
- Kafka at LinkedIn
- Kafka at Pinterest
- Kafka at Trello
- Kafka at Salesforce
- Kafka at Rakuten
- Kafka at The New York Times
- Kafka at Yelp
- Migrating Kafka's Zookeeper with No Downtime at Yelp
- Reprocessing and Dead Letter Queues with Kafka at Uber
- Chaperone: Audit Kafka End-to-End at Uber
- Finding Kafka throughput limit in infrastructure at Dropbox
- Stream Data Deduplication
- Distributed Searching
- Search Architecture of Instagram
- Search Architecture of eBay
- Improving Search Engine Efficiency by over 25% at eBay
- Indexing and Querying Telemetry Logs with Lucene at Palantir
- Search Federation Architecture at LinkedIn (2018)
- Search at Slack
- Search and Recommendations at DoorDash
- Search Service at Twitter (2014)
- Autocomplete Search (2 parts) at Traveloka
- Nautilus: Search Engine at Dropbox
- Galene: Search Architecture of LinkedIn
- Manas: High Performing Customized Search System at Pinterest
- Sherlock: Near Real Time Search Indexing at Flipkart
- Nebula: Storage Platform to Build Search Backends at Airbnb
- ELK (Elasticsearch, Logstash, Kibana) Stack
- Predictions in Real Time with ELK at Uber
- Scaling Elasticsearch Clusters at Uber
- Elasticsearch Performance Tuning Practice at eBay
- Elasticsearch at Kickstarter
- Distributed Troubleshooting Platform with ELK Stack at Target.com
- ELK at Robinhood
- Log Parsing with Logstash and Google Protocol Buffers at Trivago
- Fast Order Search using Data Pipeline and Elasticsearch at Yelp
- Moving Core Business Search to Elasticsearch at Yelp
- Sharding out Elasticsearch at Vinted
- Self-Ranking Search with Elasticsearch at Wattpad
- Distributed Storage
- In-memory Storage
- Introduction to In-memory Data - Viktor Gamov, Solutions Architect at Hazelcast
- MemSQL Architecture - The Fast (MVCC, InMem, LockFree, CodeGen) And Familiar (SQL)
- Optimizing Memcached Efficiency at Quora
- Real-Time Data Warehouse with MemSQL on Cisco UCS
- Moving to MemSQL (with Horizontally Scalable, ACID Compliant, MySQL Compatibility) at Tapjoy
- MemSQL and Kinesis for Real-time Insights at Disney-ABC TV
- Object Storage
- Scaling HDFS at Uber
- Reasons for Choosing S3 over HDFS at Databricks
- File System on Amazon S3 at Quantcast
- Image Recovery at Scale Using S3 Versioning at Trivago
- Cloud Object Store at Yahoo
- Ambry: Distributed Immutable Object Store at LinkedIn
- Hammerspace: Persistent, Concurrent, Off-heap Storage at Airbnb
- MezzFS: Mounting Object Storage in Media Processing Platform at Netflix
- In-memory Storage
- Relational Databases (MySQL, MSSQL, PostgreSQL)
- MySQL for schema-less data at FriendFeed (Bret Taylor)
- MySQL at Pinterest
- PostgreSQL at Twitch
- Scaling MySQL-based Financial Reporting System at Airbnb
- Scaling MySQL at Wix
- MaxScale (MySQL) Database Proxy at Airbnb
- Switching from Postgres to MySQL at Uber
- Handling Growth with Postgres at Instagram
- Scaling the Analytics Database (Postgres) at TransferWise
- Updating a 50 Terabyte PostgreSQL Database at Adyen
- Replication
- MySQL Parallel Replication (4 parts) at Booking.com
- Mitigating MySQL Replication Lag and Reducing Read Load at Github
- Black-Box Auditing: Verifying End-to-End Replication Integrity between MySQL and Redshift at Yelp
- Monitoring MySQL Delayed Replication at IMVU
- Partitioning Main MySQL Database at Airbnb
- Herb: Multi-DC Replication Engine for Schemaless Datastore at Uber
- Sharding (Horizontal Partitioning)
- NoSQL Databases
- Key-Value Databases (DynamoDB)
- DynamoDB at Nike
- DynamoDB at Segment
- DynamoDB at Mapbox
- Manhattan: Distributed Key-Value Database at Twitter
- Sherpa: Distributed NoSQL Key-Value Store at Yahoo
- HaloDB: Embedded Key-Value Storage Engine at Yahoo
- MPH: Fast and Compact Immutable Key-Value Stores at Indeed
- zBase: High Performance, Elastic, Distributed Key-Value Store at Zynga
- Venice: Distributed Key-Value Database at Linkedin
- Columnar Databases (Cassandra, HBase, Redshift)
- Cassandra
- Cassandra at Instagram
- Storing Images in Cassandra at Walmart
- Storing Messages with Cassandra at Discord
- Scaling Cassandra Cluster at Walmart
- Scaling Ad Analytics with Cassandra at Yelp
- Scaling to 100+ Million Reads/Writes using Spark and Cassandra at Dream11
- Moving Food Feed from Redis to Cassandra at Zomato
- Benchmarking Cassandra Scalability on AWS at Netflix
- Service Decomposition at Scale with Cassandra at Intuit QuickBooks
- Cassandra for Keeping Counts In Sync at SoundCloud
- cstar: Cassandra Orchestration Tool at Spotify
- HBase
- Redshift
- Cassandra
- Document Databases (MongoDB, SimpleDB, CouchDB)
- eBay: Building Mission-Critical Multi-Data Center Applications with MongoDB
- MongoDB at Baidu: Multi-Tenant Cluster Storing 200+ Billion Documents across 160 Shards
- Migrating Mongo Data at Addepar
- The AWS and MongoDB Infrastructure of Parse (acquired by Facebook)
- Migrating Mountains of Mongo Data at Addepar
- Couchbase Ecosystem at LinkedIn
- SimpleDB at Zendesk
- Espresso: Distributed Document Store at LinkedIn
- Graph Databases
- Datastructure Databases (Redis, Hazelcast)
- Scaling Redis at Twitter
- Scaling Job Queue with Redis at Slack
- Moving persistent data out of Redis at Github
- Storing Hundreds of Millions of Simple Key-Value Pairs in Redis at Instagram
- Redis in Chat Architecture of Twitch (from 27:22)
- Learn Redis the hard way (in production) at Trivago
- Optimizing Session Key Storage in Redis at Deliveroo
- Optimizing Redis Storage at Deliveroo
- Memory Optimization in Redis at Wattpad
- Sending an e-mail to millions of users (with Redis) at Drivy
- Redis Fleet at Heroku
- Key-Value Databases (DynamoDB)
- Time Series Databases
- What is Time-Series Data & Why We Need a Time-Series Database
- Time Series Data: Why and How to Use a Relational Database instead of NoSQL
- Practical Guide to Monitoring and Alerting with Time Series at Scale
- Beringei: High-performance Time Series Storage Engine at Facebook
- Atlas: In-memory Dimensional Time Series Database at Netflix
- Heroic: Time Series Database at Spotify
- Roshi: Distributed Storage System for Time-Series Event at SoundCloud
- Goku: Time Series Database at Pinterest
- Building a Scalable Time Series Database on PostgreSQL
- Scaling Time Series Data Storage (2 parts) at Netflix
- Distributed Repositories, Dependencies, and Configurations Management
- Distributed Version Control Systems: A Not-So-Quick Guide Through
- DGit: Distributed Git at Github
- Stemma: Distributed Git Server at Palantir
- Configuration Management for Distributed Systems at Flickr
- Git Repository at Microsoft
- How Microsoft Solved Git’s Problem with Large Repositories
- Single Repository at Google
- Scaling Infrastructure and (Git) Workflow at Adyen
- Dotfiles Distribution at Booking.com
- Secret Detector: Preventing Secrets in Source Code at Yelp
- Managing Software Dependency at Scale at LinkedIn
- Dynamic Configuration at Twitter
- Scaling Continuous Integration and Continuous Delivery
- Resilience Engineering: Learning to Embrace Failure
- Resilience Engineering with Project Waterbear at LinkedIn
- Resiliency against Traffic Oversaturation at iHeartRadio
- Resiliency in Distributed Systems at GO-JEK
- Practical NoSQL Resilience Design Pattern for the Enterprise at eBay
- Ensuring Resilience to Disaster at Quora
- Resilience at Shopify
- Site Resiliency at Expedia
- Failover
- The Evolution of Global Traffic Routing and Failover
- Testing for Disaster Recovery Failover Testing
- Designing a Microservices Architecture for Failure
- ELB for Automatic Failover at GoSquared
- Eliminate the Database for Higher Availability at American Express
- Failover with Redis Sentinel at Vinted
- High-availability SaaS Infrastructure at FreeAgent
- Load Balancing
- Introduction to Modern Network Load Balancing and Proxying
- Top Five (Load Balancing) Scalability Patterns
- Load Balancing infrastructure to support more than 1.3 billion users at Facebook
- DHCPLB: DHCP Load Balancer at Facebook
- Katran: Scalable Network Load Balancer at Facebook
- Load Balancing with Eureka at Netflix
- Edge Load Balancing at Netflix
- Zuul 2: Cloud Gateway at Netflix
- Load Balancing at Yelp
- Load Balancing at Github
- Consistent Hashing to Improve Load Balancing at Vimeo
- UDP Load Balancing at 500 pixel
- QALM: QoS Load Management Framework at Uber
- Traffic Steering using Rum DNS at LinkedIn
- Traffic Infrastructure (Edge Network) at Dropbox
- Rate Limiting
- Autoscaling
- Autoscaling Pinterest
- Autoscaling Based on Request Queuing at Square
- Autoscaling Applications at PayPal
- Autoscaling Jenkins at Trivago
- Autoscaling Pub-Sub Consumers at Spotify
- Autoscaling Bigtable Clusters based on CPU Load at Spotify
- Scryer: Predictive Auto Scaling Engine at Netflix
- Bouncer: Simple AWS Auto Scaling Rollovers at Palantir
- Clusterman: Autoscaling Mesos Clusters at Yelp
- Availability in Globally Distributed Storage Systems at Google
- NodeJS High Availability at Yahoo
- Operations (11 parts) at LinkedIn
- Monitoring Powers High Availability for LinkedIn Feed
- Supporting Global Events at Facebook
- High Availability at BlaBlaCar
- High Availability at Netflix
- High Availability Cloud Infrastructure at Twilio
- Automating Datacenter Operations at Dropbox
- Circuit Breaker
- Circuit Breaking in Distributed Systems
- Circuit Breakers for Distributed Services at LINE
- Applying Circuit Breaker to Channel Gateway at LINE
- Lessons in Resilience at SoundCloud
- Circuit Breaker for Scaling Containers
- Protector: Circuit Breaker for Time Series Databases at Trivago
- Improved Production Stability with Circuit Breakers at Heroku
- Circuit Breakers at Zendesk
- Circuit Breakers at Traveloka
- Always Use Timeouts If Possible
- Crash Early: Better Error Now Than Response Tomorrow
- Fault Tolerance (Timeouts and Retries, Thread Separation, Semaphores, Circuit Breakers) at Neflix
- Crash-safe Replication for MySQL at Booking.com
- Bulkheads: Partition and Tolerate Failure in One Part
- Steady State: Always Put Logs on Separate Disk
- Throttling: Maintain a Steady Pace
- Multi-Clustering: Improving Resiliency and Stability of a Large-scale Monolithic API Service at LinkedIn
- Determinism (4 parts) in League of Legends Server
- Performance Optimization on OS, Storage, Database, Network
- Improving Performance with Background Data Prefetching at Instagram
- Compression Techniques to Solve Network I/O Bottlenecks at eBay
- Optimizing Web Servers for High Throughput and Low Latency at Dropbox
- Linux Performance Analysis in 60.000 Milliseconds at Netflix
- Live Downsizing Google Cloud Persistent Disks (PD-SSD) at Mixpanel
- Decreasing RAM Usage by 40% Using jemalloc with Python & Celery at Zapier
- Reducing Memory Footprint at Slack
- Performance Improvements at Pinterest
- Server Side Rendering at Wix
- 30x Performance Improvements on MySQLStreamer at Yelp
- Optimizing APIs through Dynamic Polyglot Runtime, Fully Asynchronous, and Reactive Programming at Netflix
- Performance Monitoring with Riemann and Clojure at Walmart
- Performance Tracking Dashboard for Live Games at Zynga
- Optimizing CAL Report Hadoop MapReduce Jobs at eBay
- Performance Tuning on Quartz Scheduler at eBay
- Profiling C++ (Part 1: Optimization, Part 2: Measurement and Analysis) at Riot Games
- Diagnosing Networking Issues in the Linux Kernel at Mixpanel
- Hardware-Assisted Video Transcoding at Dailymotion
- Cross Shard Transactions at 10 Million RPS at Dropbox
- API Profiling at Pinterest
- Pagelets Parallelize Server-side Processing at Yelp
- Improving key expiration in Redis at Twitter
- Performance Optimization by Tuning Garbage Collection
- Garbage Collection in Java Applications at LinkedIn
- Garbage Collection in Redux Applications at SoundCloud
- Analyzing V8 Garbage Collection Logs at Alibaba
- Python Garbage Collection for Dropping 50% Memory Growth Per Request at Instagram
- Performance Impact of Removing Out of Band Garbage Collector (OOBGC) at Github
- Debugging Java Memory Leaks at Allegro
- Optimizing JVM at Alibaba
- Performance Optimization on Image, Video, Page Load
- Optimizing 360 Photos at Scale at Facebook
- Reducing Image File Size in the Photos Infrastructure at Etsy
- Improving GIF Performance at Pinterest
- Optimizing Video Playback Performance at Pinterest
- Optimizing Video Stream for Low Bandwidth with Dynamic Optimizer at Netflix
- Adaptive Video Streaming at YouTube
- Reducing Video Loading Time at Dailymotion
- Boosting Site Speed Using Brotli Compression at LinkedIn
- Improving Homepage Performance at Zillow
- The Process of Optimizing for Client Performance at Expedia
- Big Data
- Data Platform at Uber
- Data Platform at Netflix
- Data Platform at Flipkart
- Data Platform at Khan Academy
- Data Infrastructure at Airbnb
- Data Infrastructure at LinkedIn
- Data Infrastructure at GO-JEK
- Data Ingestion Infrastructure at Pinterest
- Data Analytics Architecture at Pinterest
- Big Data Processing (2 parts) at Spotify
- Big Data Processing at Uber
- Analytics Pipeline at Lyft
- Analytics Pipeline at Grammarly
- Analytics Pipeline at Teads.tv
- ML Data Pipelines for Real-Time Fraud Prevention at PayPal
- Big Data Analytics and ML Techniques at LinkedIn
- Self-Serve Reporting Platform on Hadoop at LinkedIn
- Privacy-Preserving Analytics and Reporting at LinkedIn
- Analytics Platform for Tracking Item Availability at Walmart
- HALO: Hardware Analytics and Lifecycle Optimization at Facebook
- RBEA: Real-time Analytics Platform at King
- Gimel: Analytics Data Processing Platform at PayPal
- AthenaX: Streaming Analytics Platform at Uber
- Keystone: Real-time Stream Processing Platform at Netflix
- Databook: Turning Big Data into Knowledge with Metadata at Uber
- Amundsen: Data Discovery & Metadata Engine at Lyft
- Maze: Funnel Visualization Platform at Uber
- Metacat: Making Big Data Discoverable and Meaningful at Netflix
- SpinalTap: Change Data Capture System at Airbnb
- Accelerator: Fast Data Processing Framework at eBay
- Omid: Transaction Processing Platform at Yahoo
- TensorFlowOnSpark: Distributed Deep Learning on Big Data Clusters at Yahoo
- CaffeOnSpark: Distributed Deep Learning on Big Data Clusters at Yahoo
- Experimentation Platform at Airbnb
- Smart Product Platform at Zalando
- Log Analysis Platform at LINE
- Data Visualisation Platform at Myntra
- Building and Scaling Data Lineage at Netflix
- Distributed Machine Learning
- Michelangelo: Machine Learning Platform at Uber
- Scaling Michelangelo
- Horovod: Open Source Distributed Deep Learning Framework for TensorFlow at Uber
- COTA: Improving Customer Care with NLP & Machine Learning at Uber
- Manifold: Model-Agnostic Visual Debugging Tool for Machine Learning at Uber
- Repo-Topix: Topic Extraction Framework at Github
- Concourse: Generating Personalized Content Notifications in Near-Real-Time at LinkedIn
- Altus Care: Applying a Chatbot to Platform Engineering at eBay
- Box Graph: Spontaneous Social Network at Box
- PricingNet: Pricing Modelling with Neural Networks at Skyscanner
- Scaling Gradient Boosted Trees for Click-Through-Rate Prediction at Yelp
- Learning with Privacy at Scale at Apple
- Deep Learning for Image Classification Experiment at Mercari
- Deep Learning for Frame Detection in Product Images at Allegro
- Content-based Video Relevance Prediction at Hulu
- Improving Photo Selection With Deep Learning at TripAdvisor
- Machine Learning (2 parts) at Condé Nast
- Natural Language Processing and Content Analysis (2 parts) at Condé Nast
- Machine Learning Applications In The E-commerce Domain (4 parts) at Rakuten
- Mapping the World of Music Using Machine Learning (2 parts) at iHeartRadio
- Venue Rating System at Foursquare
- Machine Learning to Improve Streaming Quality at Netflix
- Machine Learning to Match Drivers & Riders at GO-JEK
- Improving Video Thumbnails with Deep Neural Nets at YouTube
- Quantile Regression for Delivering On Time at Instacart
- Cross-Lingual End-to-End Product Search with Deep Learning at Zalando
- Machine Learning at Jane Street
- Machine Learning for Ranking Answers End-to-End at Quora
- Clustering Similar Stories Using LDA at Flipboard
- Similarity Search at Flickr
- Large-Scale Machine Learning Pipeline for Job Recommendations at Indeed
- Deep Learning from Prototype to Production at Taboola
- Atom Smashing using Machine Learning at CERN
- Mapping Tags at Medium
- Clustering with the Dirichlet Process Mixture Model in Scala at Monsanto
- Map Pins with DBSCAN & Random Forests at Foursquare
- Detecting and Preventing Fraud at Uber
- Forecasting at Uber
- Financial Forecasting at Uber
- Productionizing ML with Workflows at Twitter
- GUI Testing Powered by Deep Learning at eBay
- Scaling Machine Learning to Recommend Driving Routes at Pivotal
- Real-Time Predictions at DoorDash
- Machine Intelligence at Dropbox
- Machine Learning for Indexing Text from Billions of Images at Dropbox
- Modeling User Journeys via Semantic Embeddings at Etsy
- Automated Fake Account Detection at LinkedIn
- Building Knowledge Graph at Airbnb
- Systems We Make
- Tech Stack (2 parts) at Uber
- Tech Stack at Medium
- Tech Stack at Shopify
- Services (2 parts) at Airbnb
- Architecture of Evernote
- Architecture of Chat Service (3 parts) at Riot Games
- Back-end at LinkedIn
- Back-end at Flickr
- Cloud Infrastructure at Grubhub
- Real-time Presence Platform at LinkedIn
- Real-time User Action Counting System for Ads at Pinterest
- API Platform at Riot Games
- Games Platform at The New York Times
- Simone: Distributed Simulation Service at Netflix
- Seagull: Distributed System that Helps Running > 20 Million Tests Per Day at Yelp
- Architecture of Play API Service at Netflix
- Architecture of Sticker Services at LINE
- Stack Overflow Enterprise at Palantir
- Architecture of Following Feed, Interest Feed, and Picked For You at Pinterest
- API Specification Workflow at WeWork
- Media Database at Netflix
- Architectures of Finance and Banking Systems
- Designing Large-Scale Systems
- My Scaling Hero - Jeff Atwood (a dose of Endorphins before your interview, JK)
- Software Engineering Advice from Building Large-Scale Distributed Systems - Jeff Dean
- Introduction to Architecting Systems for Scale
- Anatomy of a System Design Interview
- 8 Things You Need to Know Before a System Design Interview
- Top 10 System Design Interview Questions
- Top 10 Common Large-Scale Software Architectural Patterns in a Nutshell
- Cloud Big Data Design Patterns - Lynn Langit
- How NOT to design Netflix in your 45-minute System Design Interview?
- API Best Practices: Webhooks, Deprecation, and Design
- Explaining Low-Level Systems (OS, Network/Protocol, Database, Storage)
- "What Happens When... and How" Questions
- Engineering Levels at SoundCloud
- Scaling Engineering Teams at Twitter
- Scaling Decision-Making Across Teams at LinkedIn
- Scaling Data Science Team at GOJEK
- Scaling Agile at Zalando
- Scaling Agile at bol.com
- Lessons Learned from Scaling a Product Team at Intercom
- Hiring, Managing, and Scaling Engineering Teams at Typeform
- Scaling the Datagram Team at Instagram
- Scaling the Design Team at Flexport
- Team Model for Scaling a Design System at Salesforce
- Building Analytics Team (4 parts) at Wish
- From 2 Founders to 1000 Employees at Transferwise
- Lessons Learned Growing a UX Team from 10 to 170 at Adobe
- Five Lessons from Scaling at Pinterest
- Approach Engineering at Vinted
- Using Metrics to Improve the Development Process (and Coach People) at Indeed
- Mistakes to Avoid while Creating an Internal Product at Skyscanner
- RACI (Responsible, Accountable, Consulted, Informed) at Etsy
- Four Pillars of Leading People (Empathy, Inspiration, Trust, Honesty) at Zalando
- Code Review at Palantir
- Code Review at LINE
- Python at Netflix
- Distributed Systems in One Lesson - Tim Berglund, Senior Director of Developer Experience at Confluent
- Building Real Time Infrastructure at Facebook - Jeff Barber and Shie Erlich, Software Engineer at Facebook
- Building Reliable Social Infrastructure for Google - Marc Alvidrez, Senior Manager at Google
- Building a Distributed Build System at Google Scale - Aysylu Greenberg, SDE at Google
- Site Reliability Engineering at Dropbox - Tammy Butow, Site Reliability Engineering Manager at Dropbox
- How Google Does Planet-Scale for Planet-Scale Infra - Melissa Binde, SRE Director for Google Cloud Platform
- Netflix Guide to Microservices - Josh Evans, Director of Operations Engineering at Netflix
- Achieving Rapid Response Times in Large Online Services - Jeff Dean, Google Senior Fellow
- Architecture to Handle 80K RPS Celebrity Sales at Shopify - Simon Eskildsen, Engineering Lead at Shopify
- Lessons of Scale at Facebook - Bobby Johnson, Director of Engineering at Facebook
- Performance Optimization for the Greater China Region at Salesforce - Jeff Cheng, Enterprise Architect at Salesforce
- How GIPHY Delivers a GIF to 300 Millions Users - Alex Hoang and Nima Khoshini, Services Engineers at GIPHY
- High Performance Packet Processing Platform at Alibaba - Haiyong Wang, Senior Director at Alibaba
- Solving Large-scale Data Center and Cloud Interconnection Problems - Ihab Tarazi, CTO at Equinix
- Scaling Dropbox - Kevin Modzelewski, Back-end Engineer at Dropbox
- Scaling Reliability at Dropbox - Sat Kriya Khalsa, SRE at Dropbox
- Scaling with Performance at Facebook - Bill Jia, VP of Infrastructure at Facebook
- Scaling Live Videos to a Billion Users at Facebook - Sachin Kulkarni, Director of Engineering at Facebook
- Scaling Low-latency Live Streams at Facebook (Latencies for Real-time Interactions) - Saral Shodhan, SDE at Facebook
- Scaling Low-latency Live Streams at Facebook (End-to-End Considerations) - Federico Larumbe, SDE at Facebook
- Scaling Infrastructure at Instagram - Lisa Guo, Instagram Engineering
- Scaling Infrastructure at Twitter - Yao Yue, Staff Software Engineer at Twitter
- Scaling Infrastructure at Etsy - Bethany Macri, Engineering Manager at Etsy
- Scaling Real-time Infrastructure at Alibaba for Global Shopping Holiday - Xiaowei Jiang, Senior Director at Alibaba
- Scaling Data Infrastructure at Spotify - Matti (Lepistö) Pehrs, Spotify
- Scaling Pinterest - Marty Weiner, Pinterest’s founding engineer
- Scaling Slack - Bing Wei, Software Engineer (Infrastructure) at Slack
- Scaling Backend at Youtube - Sugu Sougoumarane, SDE at Youtube
- Scaling Backend at Uber - Matt Ranney, Chief Systems Architect at Uber
- Scaling Global CDN at Netflix - Dave Temkin, Director of Global Networks at Netflix
- Scaling Load Balancing Infra to Support 1.3 Billion Users at Facebook - Patrick Shuff, Production Engineer at Facebook
- Scaling (a NSFW site) to 200 Million Views A Day And Beyond - Eric Pickup, Lead Platform Developer at MindGeek
- Scaling Counting Infrastructure at Quora - Chun-Ho Hung and Nikhil Gar, SEs at Quora
- Scaling Git at Microsoft - Saeed Noursalehi, Principal Program Manager at Microsoft
- Scaling Multitenant Architecture Across Multiple Data Centres at Shopify - Weingarten, Engineering Lead at Shopify
- Big Data, Web Ops & DevOps Ebooks - O'Reilly (Online - Free)
- Google Site Reliability Engineering (Online - Free)
- Distributed Systems for Fun and Profit (Online - Free)
- What Every Developer Should Know About SQL Performance (Online - Free)
- Beyond the Twelve-Factor App - Exploring the DNA of Highly Scalable, Resilient Cloud Applications (Free)
- Chaos Engineering - Building Confidence in System Behavior through Experiments (Free)
- The Art of Scalability
- Designing Data-Intensive Applications
- Web Scalability for Startup Engineers
- Scalability Rules: 50 Principles for Scaling Web Sites
By O(range), an 🍊 grows in linear time 🏁