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seen May 19 at 16:59

Feb
13
awarded  Scholar
Feb
13
accepted SBT before/after hooks for a task
Sep
13
awarded  Commentator
Sep
13
comment SBT before/after hooks for a task
Stil learning sbt's implementation... So, this would mean making a key for it and modify EvaluateTask to def progress: ExecuteProgress[Unit, Task] = getSetting(Keys.executeProgress, new ExecuteProgress [...] )?
Sep
12
comment SBT before/after hooks for a task
The ExecuteProgress looks neat. Is it possible to specify one from "outside" of sbt?
Sep
12
comment SBT before/after hooks for a task
Thanks! As I only needed to measure the time of a run, I ended up making a task that wraps a ScalaRun run.
Sep
12
revised SBT before/after hooks for a task
added 49 characters in body
Sep
12
awarded  Student
Sep
10
asked SBT before/after hooks for a task
Jul
3
comment What's the best CRLF handling strategy with git?
The problem with line ending is computing correct diffs. So the answer is wrong and misleading.
Jun
2
answered Akka for simulations
Feb
24
answered Scala type parameter bracket
Oct
15
awarded  Supporter
Oct
10
answered Getting Date in HTTP format in Java
Oct
10
revised Concurrency at the data row level
cleared a point regarding safety
Oct
10
comment Concurrency at the data row level
@PeterLawrey ConcurrentHashMap doesn't need locks for operations on it but it makes no guarantee regarding your other code. You can still get data races on values stored within the map or other atomicity violations. As I understand, mazen wants to make sure another thread doesn't mess up his computation between get and put. And locking on the key is a way to achieve that. mazen, this only works if your values are unique within the map. Otherwise you might want to sync on something else, maybe the value. Or both the value and the key.
Oct
9
awarded  Teacher
Oct
9
revised Concurrency at the data row level
added 358 characters in body
Oct
9
comment Concurrency at the data row level
I'll add a version with key (row) level locks in case you need that.
Oct
9
comment Concurrency at the data row level
more to the point, as you asked about how to do this without locking on the entire map, I assumed performance is a concern. The algorithm above does not use locks at all and this makes it very fast. If you do need to update shared data, you can still use this approach and simply lock on some fine-grained object where you do the update. Still, in this case, remember that some computation is discarded. If you increment a count, for example, you would get unexpected results.