I hold messages in a map for each user in the datastore. It's held as an unindexed serialized value keyed by a unique name. A user can message many users at once. Currently I execute a batch get for the (e.g.) 20 targets, update the serialized value in each, then execute a batch put. The serialized message size is small enough to be unimportant, around 1KB.
This is quick for the user, the real time shown in appstats is 90ms. However the cpu-time cost is 918ms. This causes warnings and may become expensive with high usage, or cause trouble if I wish to message 50 users. Is there any way to reduce this cpu-time cost, either with datastore tweaks, or an obvious change to the architecture I've missed? A task queue solution would remove the warnings but would really only redistribute the cost.
EDIT: The datastore key is the username of the receiver, the value is the messages stored as serialized Map where key is username of sender and Message is simple object holding two ints. There are two types of request. The 'update' type described above where the message map is retrieved, the new message is added to the map, and the map is stored. The 'get' type is the inbox owner reading the messages which is a simple get based on key. My thinking was that even if this was split out into a multi-value relationship or similar, this made improve the fidelity (allowing two updates at once) but the amount of put work would still be the same provided it's a simple key-value approach.