The library that progrmr mentions looks rich--both in the sense of being laden with features, and rich in the sense of being heavy. Since your needs are relatively simple and limited, something custom might lead to the most efficient code, though it will certainly be a little harder to write.
For multiplication, think about how many integer and fractional bits each factor has, multiply into the next wider integer, and then remember where the binary point has moved to. For example:
i32_t s3dot28 = (int)(3.14159 * (1 << 28)); // 1 sign, 3 integer, 28 fractional bits
i32_t s15dot16 = (int)(1234.5678 * (1 << 16)); // 1 sign, 15 integer, 16 fractional bits
i64_t temp = (i64_t)s3dot28 * (i64_t)s15dot16;
// After the multiply, the binary point is at position 28 + 16 = 44.
// We want an integer result, so we need to shift right by 32 bits.
// However, in a signed multiply, the sign bit is duplicated, so
// shifting right by 31 bits is safe, and preserves a bit of precision.
i32_t s18dot13 = (i32_t)(temp >> 31); // 1 sign, 18 integer, 13 fractional bits
While this is a little harder than using a library or template class, it has the advantage of sometimes preserving more precision than a library/template that uses uniform integer and fractional bit counts throughout your code. It might be best to think of it as integer floating point, as the binary point floats around within an integer, rather than staying in a fixed position. For even more precision, you can shift each factor left by the number of replicated sign bits at its MSB end before the multiply.
I have read that the ARM processor used in iOS devices does not have a division instruction, thus divisions are expensive. It might be possible to beat the implementation Apple/ARM provides by first computing the inverse (aka the reciprocal) of the divisor (aka the denominator) and then multiplying. Newton-Raphson is a common technique for computing the inverse of a number, and it can be done in just a few lines of code.
For cube roots, Newton-Raphson can also apply, but you might have better performance with this code from Hacker's Delight. It is designed for 64-bit integers, but can probably be adapted for narrower types.