There are times when you write clean, easily to understand code, and there are times when you see 50% of your performance goes into DateTime parsing, at which point you’ll need to throw nice code out the window, put on some protective gear and seek out that performance hit that you need so much.

Note to the readers: This isn’t something that I recommend you’ll do unless you have considered it carefully, you have gathered evidence in the form of actual profiler results that show that this is justified, and you covered it with good enough tests. The only reason that I was actually able to do anything is that I know so much about the situation. The dates are strictly formatted, the values are stored as UTF8 and there are no cultures to consider.

With that said, it means that we are back to C’s style number parsing and processing:

Note that the code is pretty strange, we do upfront validation into the string, then parse all those numbers, then plug this in together.

The tests we run are:

Note that I’ve actually realized that I’ve been forcing the standard CLR parsing to go through conversion from byte array to string on each call. This is actually what we need to do in RavenDB to support this scenario, but I decided to test it out without the allocations as well.

All the timings here are in nanoseconds.

Note that the StdDev for those test is around 70 ns. And this usually takes about 2,400 ns to run.

Without allocations, things are better, but not by much. StdDev goes does to 50 ns, and the performance is around 2,340 ns, so there is a small gain from not doing allocations.

Here are the final results of the three methods:

Note that my method is about as fast as the StdDev on the alternative. With an average of 90 ns or so, and StdDev of 4 ns. Surprisingly, LegacyJit on X64 was the faster of them all, coming in at almost 60% of the LegacyJit on X86, and 20% faster than RyuJit on X64. Not sure why, and dumping the assembly at this point is quibbling, honestly. Our perf cost just went down from 2400 ns to 90 ns. In other words, we are now going to be able to do the same work at 3.66% of the cost. Figuring out how to push it further down to 2.95% seems to insult the 96% perf that we gained.

And anyway, that does leave us with some spare performance on the table if this ever become a hotspot again*.

* Actually, the guys on the performance teams are going to read this post, and I’m sure they wouldn’t be able to resist improving it further .