Once you've decided to distribute data, how should the data be distributed?
Firstly, data needs to be distributed using a partitioning key in the data. The partitioning key can be the primary key or any other unique key. Once you've identified the partitioning key, we need to decide how to assign a key to a given shard.
One way to do this would be to take a key and apply a hash function. Based on the hash bucket and the number of shards to map keys into, the key would be assigned to a shard. There's a bit of nuance here in the sense that an assignment scheme based on a modulo by the number of nodes currently in the cluster will result in a lot of data movement when nodes join or leave the cluster (since all of the assignments need to be recalculated). This is addressed by something called consistent hashing, a detailed description of which is outside the scope of this chapter.
Another way to do assignments would be to take the entire keyspace and break it up into a set of ranges. Each range corresponds to a shard and is assigned to a given node in the cluster. Given a key, you would then do a binary search to find out the node it is meant to be assigned to. A range partition doesn't have the churn issue that a naive hashing scheme would have. When a node joins, shards from existing nodes will migrate onto the new node. When a node leaves, the shards on the node will migrate to one or more of the existing nodes.
What impact do the hash and range partitions have on the system design? A hash-based assignment can be built in a decentralized manner, where all nodes are peers of each other and there are no special master-slave relationships between nodes. Ceph and Cassandra both do hash-based partition assignment.
On the other hand, a range-based partitioning scheme requires that range assignments be kept in some special service. Hence, databases that do range-based partitioning, such as Bigtable and HBase, tend to be centralized and peer to peer, but instead have nodes with special roles and responsibilities.