Imagine there's a web service:
- Runs on a cluster of servers (nginx/node.js)
- All data is stored remotely
- Must respond within 20ms
Data that must be read for a response is split like this..
- Millions of small objects stored in AWS DynamoDB
- Updated randomly at random times
- Only consistent reads, can't be catched
- ~2,000 records in SQL
- Updated rarely, records up to 1KB
- Can be catched for up to 60-90s
We can't read them all at once as we don't know which records to fetch from BatchB until we read from BatchA.
Read from DynamoDB takes up to 10ms. If we read BatchB from remote location, it would leave us with no time for calculations or we would have already been timed out.
My current idea is to load all BatchB records into memory of each node (that's only ~2MB). On startup, the system would connect to SQL server and fetch all records and then it would update them every 60 or 90 seconds. The question is what's the best way to do this?
I could simply read them all into a variable (array) in node.js and then use SetTimeout to update the array after 60-90s. But is the the best solution?