So the data hierarchy is pretty simple:
Account >> SubAccount >> Category >> Product
I need to pull a daily statistic (which is just a number, lets call it daily-performance) for each product. There can be tens of accounts, tens of subaccounts, hundreds of categories, and millions of products.
The API that lets me do this is of the form
Now, in a web based dashboard, I need to be able to show a time-vs-performance for any product, category, subaccount, and account. I also need to be able to raise alerts if any product's performance changes drastically (say by more than 30%) since the last fetch of
I'm building this solution on the cloud, preferably on AWS. I'm trying to decide how to best store my daily fetched data. Here is what I have considered:
- Put everything in a database (RDBMS). Concerned about how quickly the table size will grow out of hand.
- Maintain a flat-file per product, append day's performance to this file. Compute the statistic for category, subaccount, and account while fetching (average), and maintain a file per category, sub-account, and account too. Concern: Files will need to be stored on S3, and S3 does not support append. Makes the overall pull-file, append-data, push-file very time consuming.
- Maintain a single file for each day's data (across all products). Then in a batch job, compute the stats for each product, category, sub-account, and account. Maintain a file/database so that all files don't have to be referenced for the average computation. Concern: To show the timeline for a particular product, need to read hundreds of files.
- A No-SQL database? Don't have any experience with this.
This seems like a very simple problem - but I'm confused about the best way to proceed. Suggestions appreciated.