SQL Auto-Caching with No Code Changes

Heimdall Data auto-caches and auto-invalidates, removing complex configuration. It requires zero changes to your application and database. Try it out.

 

There are only two hard things in Computer Science: cache invalidation and naming things.”

-Phil Karlton

 

 

Caching is complex and engineering intensive. Because it requires manual configuration (i.e. what to cache and invalidate), managing cache systems has been burdensome. This article explains how Heimdall Data auto-caches safely without any code changes.

Why Cache?

  • Studies have shown a 20% improvement in page-load-time increased conversion rates by 20%
  • Improve application response times
  • Reduce database costs: Less queries to the database results in less licenses and hardware (fewer cores licensed)
  • Increase horizontal database scaling

 

What Should I Cache?

When implementing caching, there is a typical checklist:

  • What is safe to cache?
  • Will caching give me a performance benefit?
  • How can I maintain cache freshness?

 

What is safe to cache?  For a postal delivery code, the table rarely changes and is safe to cache for an extended period of time, without impact.  This would not apply for monetary account balances that changes often.  Cacheability depends on the freshness and synchronization that any cache solution provides. What are the guarantees that a write made on one node will be updated on another node immediately?  Without such guarantees, caching can become very risky, and will likely break an application. A caching solution needs to be adaptive and adjust to changing conditions for optimal performance.

 

Application-Level Caching

While databases have some cache functionality (e.g. query plan and buffer pool cache), it does not solve network latency as queries still hit the database servers.

 

Getting warmer: Some deploy additional caches on the application side such as Redis, Amazon ElastiCache or Hazelcast: These are SQL caches deployed in front of databases that improve application performance while offloading database processing. They lower the memory pressure on the buffer pool and improve the efficiency of queries that are processed by the database server.

 

Application-level caching, however, is manual and prone to errors. Developers still need to determine what to cache and what to invalidate, frequently monitoring the changes in data patterns and adjusting accordingly. ORM frameworks provide SQL caching, but they do not synchronize invalidations across cache nodes, nor guarantee consistent data across the application tier. What if there was a solution that automated what you should cache, ensuring reliability and synchronization data across cache nodes?

 

 

 

Figure 1:  Heimdall Data Caching Architecture

 

Engineering teams spend up to 20% of their resources on building and maintaining a cache subsystem. Heimdall Data solution:

  • Intelligently auto-caches, requiring no changes to the database, application or ORM framework
  • Intelligently caches in two tiers: 1) In-memory and 2) Cache of your choice (e.g. Redis, AWS ElastiCache). Our machine learning algorithms cache only if there is a performance benefit and automatically invalidates
  • Supports on-premise and cloud (Azure, AWS) environments

 

Heimdall Data works with any application, including 3rd party applications as no code changes are required.  Just connect the application to the proxy which connects to the database on its behalf.

 

Beyond caching, read replica failover, and read/write split is supported. See Figure 2 below. How is Heimdall Data caching unique?

  • Automatic invalidation; no more stale data
  • Automatic tuning of what NOT to cache
  • Distributed cache deployment: Heimdall is installed on each application server, eliminating network latency to the database
  • Supports SQL Server, PostgreSQL, MySQL, and Oracle

 

 

 

Figure 2: Heimdall Data SQL Optimization Platform

 

Today’s caching solutions lack invalidation logic beyond TTL or require complex configurations. It is a risky, time-consuming, manual process. Heimdall intelligently caches and invalidates taking the risk and guesswork out. Here’s how:

  1. Choose storage of choice (e.g. In-memory, Redis, Hazelcast)
  2. Install the Heimdall software into each application server
  3. Walk through the Heimdall configuration wizard
  4. Auto-caching and auto-invalidation begin towards the storage you chose

 

Download for free or visit us at www.HeimdallData.com

 

 

 

 

 

 

Note: Please test scripts in Non Prod before trying in Production.
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