Chaining hash functions or generating a series of hash functions would be unneccesarily computationally expensive. You should rather use a hash function that already has the required properties out-of-the-box.

**Possible candidates**

From what you described, the hash function should be deterministic (your "hello" example) - this is true for all hash functions - and should generate an even distribution.

A cryptographic hash such as SHA-256 should meet your requirements, as it outputs completely different hashes even for only slightly different inputs like "hello" and "hallo". By using the modulo (%) operation on the hash, you can then have as many buckets as you like (not more than the number of hashes of course).

However, cryptographic hash functions are built for security and checksums and involve some complex computation. In your case, it is very likely that you will not need the strong security-related properties they provide.

You may rather want to look for so-called "non-cryptographic hash functions" which have relaxed properties and are more designed for lookups - so they are optimized for speed.
Java's hashCode(), MurmurHash and the already mentioned CityHash (Google announcement) might be a good start.

**Deterministic nature of hash functions vs. even distribution of hashes**

That said, as hash functions are deterministic regarding the input, the hash for a certain input as "hello" will always be the same, even if you call the hash function multiple times. If your data set contains some elements with a lot of exact duplicates (e.g. "a" and "the" are usual suspects for tokenized texts), this can easily lead to un-uniformly sized buckets, no matter which hash function you use.

Assuming you want to use the even distribution of hashes for even distribution of workload, this can be overcome using the following strategy. Think of each bucket as a work package or job that can be processed by any of the available machines. If you have more work packages than machines (let's say 20 or 30 packages for 10 machines), you can evenly distribute the workload as long as you allow for flexible scheduling. When machine A gets one of the oversized packages and takes some time to process it, machine B could process two small or medium-sized packages in the same time, thus the overall performance impact of the oversized package is reduced.