This is a naïve solution, since I am unaware of how your use case will tolerate variances in the data due to Cassandra's eventually-consistent and last-write-wins semantics. But as often the case in Cassandra, the way to support different views (or ways of querying) your data is to denormalize and store it in multiple ways that make that convenient.
CREATE TABLE latest_metrics (
PRIMARY KEY (metric_name, schedule_id)
When you insert data into
metrics, at the same time also write into
latest_metrics (this assumes your data is always input in monotonically increasing time, like from a real-time feed).
INSERT INTO metrics (schedule_id, time, value) VALUES (?, ?, ?);
INSERT INTO latest_metrics (metric_name, schedule_id, latest_time, latest_value)
VALUES ('WellKnownIdentifier', ?, ?, ?);
In this case, "latest" is really in terms of when the record was written and not the actual timestamp field value. If you are ingesting data that comes with interleaved times, you will likely have to take care of this on your application side. You could also potentially use new new Compare-and-Set (CAS) functionality in Cassandra 2.x, but the Paxos process required to do that will severely impact your write performance:
INSERT INTO latest_metrics (...) VALUES (...) IF latest_time <= ?;
If all of these assumptions work for your data, you can query the "latest" value for all schedules easily enough:
SELECT schedule_id, latest_time, latest_value FROM latest_metrics WHERE metric_name = 'WellKnownIdentifier';