Tobias Petry
Scaling Databases
#1about 2 minutes
The database is the real bottleneck in scaling applications
Your programming language or framework is rarely the performance problem; the database is almost always the component that limits growth.
#2about 1 minute
Optimize queries and add caching before scaling out
Before distributing your database across multiple servers, you must first fix slow queries, add proper indexes, and implement caching to avoid amplifying existing problems.
#3about 1 minute
Scaling up is the simplest and most effective first step
Instead of immediately adding complexity with multiple servers, simply upgrading your existing database server with more memory and CPU cores is a cost-effective solution.
#4about 4 minutes
Understanding the trade-offs of multi-master replication
While multi-master replication allows writes to any server and guarantees read-after-write consistency, it often suffers from performance degradation due to write conflicts on the same data.
#5about 5 minutes
Using read replication to scale read-heavy workloads
Read replication uses a single primary for writes and multiple secondaries for reads, but requires careful application design to handle asynchronous replication lag and potential stale data.
#6about 5 minutes
The power and complexity of database sharding
Sharding provides near-infinite scalability by distributing data across multiple independent databases, but introduces significant complexity like cross-shard joins and managing multiple database systems.
#7about 2 minutes
Keep your database scaling strategy as simple as possible
Avoid premature optimization by choosing the simplest scaling solution that meets your current needs, as overly complex systems are difficult to manage and can lead to costly rewrites.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
02:59 MIN
Scaling and ensuring high availability with Couchbase architecture
Database Magic behind 40 Million operations/s
02:28 MIN
Summarizing key takeaways for building hyperscale systems
From 0 to 1.000.000: How to build a serverless raffle service for hyperscale
03:35 MIN
How distributed systems increase infrastructure complexity
Databaseless Data Processing - High-Performance for Cloud-Native Apps and AI
01:52 MIN
An overview of scaling a sports app to millions of users
Scaling: from 0 to 20 million users
00:56 MIN
Optimizing costs with multi-dimensional scaling
Tomorrow's cloud data platforms - fully managed database-as-a-service (DBaaS)
01:07 MIN
Key design patterns for distributed database applications
Fault Tolerance and Consistency at Scale: Harnessing the Power of Distributed SQL Databases
08:41 MIN
Amazon's early monolith and database scaling challenges
Building Systems that Last
02:19 MIN
Addressing the challenges of scaling large web applications
Leveraging Storybook for Component Driven Development outside of your classic Component Library.
Featured Partners
Related Videos
Scaling: from 0 to 20 million users
Josip Stuhli
Fault Tolerance and Consistency at Scale: Harnessing the Power of Distributed SQL Databases
Wei Hu
Fault Tolerance and Consistency at Scale: Harnessing the Power of Distributed SQL Databases
Wei Hu
Database Magic behind 40 Million operations/s
Jürgen Pilz
How building an industry DBMS differs from building a research one
Markus Dreseler
Branch your database like your code: How schema changes and pull requests go hand in hand
Johannes Nicolai & Lilli Seyther-Besecke
Maximising Cassandra's Potential: Tips on Schema, Queries, Parallel Access, and Reactive Programming
Hartmut Armbruster
In-Memory Computing - The Big Picture
Markus Kett
Related Articles
View all articles.gif?w=240&auto=compress,format)

.gif?w=240&auto=compress,format)

From learning to earning
Jobs that call for the skills explored in this talk.



Interhyp Gruppe
München, Germany
Intermediate
Senior
MongoDB
Terraform
PostgreSQL

evoila Frankfurt GmbH
Mainz, Germany
Intermediate
Senior
Kubernetes


Peter Park System GmbH
München, Germany
Senior
Python
Docker
Node.js
JavaScript

CONTIAMO GMBH
Berlin, Germany
Senior
Python
Docker
TypeScript
PostgreSQL

