There are two major factors that influence the time it takes for you to get a response from your search engine.
The first is if you're storing your index on hard disk. If you're using a database, it's very likely that you're using the hard disk at least a little. From a cold boot, your queries will be slow until the data necessary for those queries has been pulled into the database cache.
The other is having a cache for your popular queries. It takes a lot longer to search for a query than it does to return results from a cache. Now, the random access time for a disk is too slow, so they need to have it stored in RAM.
To solve both of these problems, Google uses memcached. It's an application that caches the output of the Google search engine and feeds slightly old results to users. This is fine because most of the time the web doesn't change fast enough for it to be a problem, and because of the significant overlap in searches. You can be almost guaranteed that Barack Obama has been searched for recently.
Another issue that effects search engine latency is the network overheads.
Google have been using a custom variant of the Linux (IIRC) that has been optimised for use as a web server. They've managed to reduce some of the time it takes to start turning around results to a query.
The moment a query hits their servers, the server immediately responds back to the user with the header for the HTTP response, even before Google has finished processing the query terms.
I'm sure they have a bunch of other tricks up their sleeves, too.
They also keep their inverted lists sorted already, from the indexing process (it's better to process once than for each query).
With these pre-sorted lists, the most expensive operation is list intersection. Although I'm fairly sure Google doesn't rely on a vector space model, so list intersection isn't so much a factor for them.
The models that pay off the best according to the literature are the probabilistic models. As an example, you may wish to look up Okapi BM25. It does fairly well in practice within my area of research (XML Retrieval). When working with probabilistic models, it tends to be much more efficient to process document at a time instead of term at a time. What this means is that instead of getting a list of all of the documents that contain a term, we look at each document and rank it based on the terms it contains from our query (skipping documents that have no terms).
But if we want to be smart, we can approach the problem in a different way (but only when it appears to be better). If there's a query term that is extremely rare, we can rank with that first, because it has the highest impact. Then we rank with the next best term, and we continue until we've determined if it's likely that this document will be within our top k results.