Current file format
If the numbers are represented as
Strings there is no faster way to read them in and parse them, disk I/O is going to be orders of magnitude slower than anything the CPU is doing. The only thing can do is use a
BufferedReader with a huge buffer size and try and get as much if not all the file in the memory before using
Alternate file format
If you can represent them as binary in the file and read the numbers in using the
DataInputStream class, then you might get a small decrease in I/O time and a marginal CPU decrease because you don't need to parse the
String representation into an
int that probably would not be measurable unless your input file in in hundreds of megabytes or larger. **Buffering the input stream will still have more effect than anything else, use a
BufferedInputStream in this case.
How to optimize
You need robust profiling to even detect if any changes you make are impacting performance positively or negatively.
Things like OS disk caching will skew benchmarks if you read the same file in over and over, the OS will cache it and screw up your benchmarks. Learn what good enough is sooner than later.
"We should forget about small
efficiencies, say about 97% of the
time: premature optimization is the
root of all evil" - Donald Knuth
The premature part of Kunth's quote is the important part, it means:
Don't optimize without profiling and benchmarks to verify that what you are changing is actually a bottleneck and that you can measure the positve or negative impact of your changes.
Here is a quick benchmark comparing a
BufferedInputStream reading the same set of binary numbers versus a
Scanner backed by a
BufferedReader reading the same set of numbers as text representations with a
the results are pretty consistent:
For 1,000 numbers on my Core i3 laptop with 8GB of RAM
Read binary file in 0001 ms
Read text file in 0041 ms
For 1,000,000 numbers on my Core i3 laptop with 8GB of RAM
Read binary file in 0603 ms
Read text file in 1509 ms
For 50,000,000 numbers on my Core i3 laptop with 8GB of RAM
Read binary file in 29020 ms
Read text file in 70346 ms
File sizes for the 50,000,000 numbers were as follows:
Reading the binary is much faster until the set of numbers grows very large. I/O on binary encoded ints is less ( by about 10 times ), there is no
String parsing logic, and other overhead of object creation and whatever else that
Scanner does. I went ahead and used the
Buffered versions of the
Reader classes because those are best practices and should be used whenever possible.
For extra credit, compression would reduce the I/O wait even more on the large files with almost no measurable effect on the CPU time.