> I wrote a JSON-API in NodeJS for a small project, running behind an
> Apache webserver.
I would just run the API on different port and not behind apache(proxy??). If you want to proxy I would advice you to use NGINX. See Ryan Dahl's slides discussing Apache vs NGINX(Slides 8+). NGINX can also do compression/caching(fast). Maybe you should not compress all your JSON(size? few KB?). I recommendt you to read Google's Page Speed "Minimum payload size" section(good read!) explaining that, which I also quote below:
Note that gzipping is only beneficial for larger resources. Due to the
overhead and latency of compression and decompression, you should only
gzip files above a certain size threshold; we recommend a minimum
range between 150 and 1000 bytes. Gzipping files below 150 bytes can
actually make them larger.
> Now I'd like to improve performance by adding caching and compression
You could do compression/caching via NGINX(+memcached) which is going to be very fast. Even more prefered would be a CDN(for static files) which are optimized for this purpose. I don't think you should be doing any compressing in node.js, although some modules are available through NPM's search(search for gzip) like for example https://github.com/saikat/node-gzip
For caching I would advice you to have a look at redis which is extremely fast. It is even going to be faster than most client libraries because node.js fast client library(node_redis) uses hiredis(C). For this it is important to also install
hiredis via npm:
npm install hiredis redis
Some benchmarks with hiredis
PING: 20000 ops 46189.38 ops/sec 1/4/1.082
SET: 20000 ops 41237.11 ops/sec 0/6/1.210
GET: 20000 ops 39682.54 ops/sec 1/7/1.257
INCR: 20000 ops 40080.16 ops/sec 0/8/1.242
LPUSH: 20000 ops 41152.26 ops/sec 0/3/1.212
LRANGE (10 elements): 20000 ops 36563.07 ops/sec 1/8/1.363
LRANGE (100 elements): 20000 ops 21834.06 ops/sec 0/9/2.287
> The API calls have unique URLs (e.g. /api/user-id/content) and I want
> to cache them for at least 60 seconds.
You can achieve this caching easily thanks to redis's setex command. This is going to be extremely fast.