I would definitely use a database, but picking the right one for the problem would require a bit more information, especially about the format of the data. Here are my recommendations, with some details about when I'd choose one over the other:
If all of your data fits the same schema (has all the same fields), then relational would make sense. From your question, you mentioned that you only need 2 indexes,
Assuming you have a lot of other data for each entry, an SQL database would make a lot of sense (using something like your query).
- You seem to already know how it works
- Very similar to the CSV style of doing things
- You can use SELECT/JOIN (if you need to later)
- Wasted space for unused fields
- Doesn't scale well (if you need more space)
- Might be overkill, because the problem isn't embarassingly relational
If your data doesn't fit the same schema (a lot of different keys with only a couple shared keys), a document store would make more sense. Since your data is kind of relational, MongoDB would make a ton of sense.
I would use the following JSON guide for your database:
I would set
date to be indexes, just like in the SQL example. MongoDB is fast, and it doesn't take up space for extra keys.
Benefits of this approach:
- Scales really well (you can add nodes and shard)
- Really simple to work with
- Might not offer the features you need
Both are good approaches, but it really depends on what exactly the data looks like. In general, databases are really good at querying, filesystems aren't, especially as the data gets big.
I would personally go the NoSQL route, but I would really need more information about the dataset and usage patterns. If the data needs to scale, then this is likely the best option.
I'm not really an expert, but I just don't like working with SQL that much. If the data is embarassingly relational, then SQL makes tons of sense, but it seems that everything you're doing would fit in one or two tables.