- Mailing Lists
- in
- A Guide to Database Replication: Key Concepts and Strategies
Archives
- By thread 5232
-
By date
- June 2021 10
- July 2021 6
- August 2021 20
- September 2021 21
- October 2021 48
- November 2021 40
- December 2021 23
- January 2022 46
- February 2022 80
- March 2022 109
- April 2022 100
- May 2022 97
- June 2022 105
- July 2022 82
- August 2022 95
- September 2022 103
- October 2022 117
- November 2022 115
- December 2022 102
- January 2023 88
- February 2023 90
- March 2023 116
- April 2023 97
- May 2023 159
- June 2023 145
- July 2023 120
- August 2023 90
- September 2023 102
- October 2023 106
- November 2023 100
- December 2023 74
- January 2024 75
- February 2024 75
- March 2024 78
- April 2024 74
- May 2024 108
- June 2024 98
- July 2024 116
- August 2024 134
- September 2024 130
- October 2024 141
- November 2024 171
- December 2024 115
- January 2025 216
- February 2025 140
- March 2025 220
- April 2025 233
- May 2025 239
- June 2025 303
- July 2025 44
A Guide to Database Replication: Key Concepts and Strategies
A Guide to Database Replication: Key Concepts and Strategies
Latest articlesIf you’re not a subscriber, here’s what you missed this month.
To receive all the full articles and support ByteByteGo, consider subscribing: Every modern application relies on data, and users expect that data to be fast, current, and always accessible. However, databases are not magic. They can fail or slow down under load. They can also encounter physical and geographic limits, which is where replication becomes necessary. Database Replication means keeping copies of the same data across multiple machines. These machines can sit in the same data center or be spread across the globe. The goal is straightforward:
Replication sits at the heart of any system that aims to survive failures without losing data or disappointing users. Whether it's a social feed updating in milliseconds, an e-commerce site handling flash sales, or a financial system processing global transactions, replication ensures the system continues to operate, even when parts of it break. However, replication also introduces complexity. It forces difficult decisions around consistency, availability, and performance. The database might be up, but a lagging replica can still serve stale data. A network partition might make two leader nodes think they’re in charge, leading to split-brain writes. Designing around these issues is non-trivial. In this article, we walk through the concept of replication lag and major replication strategies used in distributed databases today. We will cover single-leader, multi-leader, and leaderless replication models, breaking down how each works, what problems they solve, and where they fall apart. Why Replicate Data?...![]() Continue reading this post for free in the Substack app© 2025 ByteByteGo |
by "ByteByteGo" <bytebytego@substack.com> - 11:38 - 3 Jul 2025