It's hard to give a general answer to your question as choosing the "right" strategy heavily depends on the organization of the data you are reading.
Especially if there's a really huge amount of data to be processed options 1. and 2. won't work anyways as the available amount of main memory poses an upper limit to any attempt like this.
Most probably the biggest gain in terms of efficiency can be accomplished by (re)structuring the data you are going to process.
Checking if there is any chance to organize the data in a way to save from needlessly processing whole chunks would be the primary spot I'd try to improve upon before addressing the problem mentioned in the question.
In terms of efficiency there's nothing but a constant to win in choosing any of the mentioned methods while on the other hand there might be much better improvement with the right organization of your data. The bigger the data the more important your decision will get.
Some facts about the data that seem interesting enough to take into consideration include:
- Is there any regular pattern to the data you are going to process ?
- Is the data mostly static or highly dynamic?
- Does it have to be parsed sequentially or is it possible to process data in parallel?