This is a pretty classic string-search / string-matching problem. First, some terminology: String matching algorithms usually refer to the search space as the 'text' - in this case, your tweet or tweets; and the 'pattern(s)' - your search terms.
The complexity of most string-matching algorithms is measured in terms of the length of the text, the length of the pattern(s), and the number of matches.
The naive approach is of course nested loops and linear search. Pseudocode:
foreach text (tweet)
foreach pattern (search term)
linear search the text for the pattern
That's O(t * p), where t is the total length of all texts and p is the total length of all patterns. You can probably improve considerably on this, especially if either the text or the patterns are fixed over multiple runs, allowing you to do some pre-processing for efficient search. Take a look at Wikipedia's description of string search algorithms for a few possibilities.