I have been asked to test a library provided by a 3rd party. The library is known to be accurate to *n* significant figures. Any less-significant errors can safely be ignored. I want to write a function to help me compare the results:

```
def nearlyequal( a, b, sigfig=5 ):
```

The purpose of this function is to determine if two floating-point numbers (a and b) are approximately equal. The function will return True if a==b (exact match) or if a and b have the same value when rounded to **sigfig** significant-figures when written in decimal.

Can anybody suggest a good implementation? I've written a mini unit-test. Unless you can see a bug in my tests then a good implementation should pass the following:

```
assert nearlyequal(1, 1, 5)
assert nearlyequal(1.0, 1.0, 5)
assert nearlyequal(1.0, 1.0, 5)
assert nearlyequal(-1e-9, 1e-9, 5)
assert nearlyequal(1e9, 1e9 + 1 , 5)
assert not nearlyequal( 1e4, 1e4 + 1, 5)
assert nearlyequal( 0.0, 1e-15, 5 )
assert not nearlyequal( 0.0, 1e-4, 6 )
```

Additional notes:

- Values a and b might be of type int, float or numpy.float64. Values a and b will always be of the same type. It's vital that conversion does not introduce additional error into the function.
- Lets keep this numerical, so functions that convert to strings or use non-mathematical tricks are not ideal. This program will be audited by somebody who is a mathematician who will want to be able to prove that the function does what it is supposed to do.
- Speed... I've got to compare a lot of numbers so the faster the better.
- I've got numpy, scipy and the standard-library. Anything else will be hard for me to get, especially for such a small part of the project.