The normal MongoDB behaviour is to page data and indexes into memory as used by your application, and leave the decision of what to page out to the operating system's memory management. The data and indexes typically used by your application are referred to as your "working set".
mongod server that has been running for some time should already have the natural working set in memory, so you shouldn't need (or want) to schedule a nightly data/index reload unless you understand the impact of this.
There are a few different scenarios to "preheat" a server to load appropriate data into memory.
NOTE: Use with caution
Generally these approaches should only be used on a "cold server" (i.e. on initial startup) rather than nightly. You can easily end up swapping out useful data or indexes (and adversely affect performance) if your data & indexes are larger than the memory available to MongoDB. You can also end up using more memory than necessary by forcing infrequently used data or indexes to be loaded into RAM.
Scenario #1: Load all data or indexes for a given collection
In MongoDB 2.2+ you can use the
touch command to load all data or indexes for a collection from disk into memory. This can be helpful if you need to work with the full data or indexes for a collection, and have available memory to store these.
Scenario #2: Load a subset based on current working set
If you want to load a subset of data which corresponds to your current working set, you could run some queries to "warm up" the database. The developers at Parse have open sourced some utilities to help provide more specific preheating by sampling and replaying current ops: Techniques for Warming Up a MongoDB Secondary.
Scenario #3: Run your application's common queries to preload
You can run a set of typical queries for your application, which might load a more realistic working set as compared to "all" data/indexes for a collection or a sample of current operations.