We can just pickle task options instead of json so that we don't need to write custom `to_dict` and `from_dict` methods for complex python option objects (e.g. PlacementGroup).
Partly addresses #20774 by registering node launcher failures in driver logs, via the event summarizer.
This way, users can tell that the launch failed from the driver logs.
Also pushes the node creation exception to driver logs, but only once per 60 minutes.
Right now in ray, a lot of edge cases related to grpc are not tested. This PR is just a simple try to give the developer some way to delay grpc request. It could be used with manual testing and also e2e test since it's supporting delay for specific grpc method.
To use this feature, just simple set os env `RAY_TESTING_ASIO_DELAY_US="method1=10:20,method2=20:30,*=200:200"`
This means, for `method1` it'll delay 10-20us, for method2 it'll delay 20-30us. For all the rest, it'll delay 200us.
Arrow byte-packs boolean arrays, with 8 entries per byte, and both Arrow and NumPy utilize bit-based offsets for indexing into data buffers. This PR adds support for properly indexing into boolean tensor columns by using bit-based offsets for such columns.
Now the Java LongPollClient's is not singleton, and a new polling thread will be created within a new LongPollClient for per RayServeHandle. It will degrade the performance of Replica Actor. So we change the LongPollClient's polling thread to singleton.
We shouldn't ray.get() all the blocks immediately during the to_pandas call, it's better to do it one by one. That's a little slower but to_pandas() isn't expected to be fast anyways.
This PR addresses two issues an issue with the Session.get_next docstring:
It's unclear whether the tense should be imperative or non-imperative. The Ray documentation states that we use Google style (which is non-imperative), but we are formatting using PEP8 (which is imperative). Moreover, we use both imperative and non-imperative summaries across the Ray Train code. I've stuck with a non-imperative summary for consistency with the rest of the Session class.
The docstring doesn't describe the conditions under which the function returns None.
It's useful when measuring autoscaler performance to know how long the autoscaler takes for update iterations.
This PR adds a prometheus metric for that.
The bucket ticks for the histogram are arranged in powers of ten:
[.001, .01, .1, 1, 10, 100, 1000]. Depending on the situation, we've seen the update time range from .1 second to a few minutes.
Separate the CoreWorkerProcess static functions from CoreWorkerProcess state; Currently the static and non-static state are mixed together, and more importantly the static state is not thread safe. By separating them and create helper class for non-static state CoreWorkerProcessImpl, we can make it thread safe.
in follow up PR we will make CoreWorkerProcess state thread safe.
This PR depends on #19677, The follow up PR is #19679
we fixed groupby issue in cuj2; sync the change into nightly test. this test doesn't need to use gpu at all. it returns soon after data ingestion finishes.
Quotation marks were needed in Anyscale app configs to avoid install errors when # were used e.g. in URLs.
Since this has been fixed on the Anyscale side, we can get rid of these.
So I have a AMD machine with many cores and 32GB of memory. When I do `pip install -e .`, my machine crashes since bazel tries to use all the cores, but quickly runs out of memory. It seems there is no native way to set environment variables to tell bazel to limit its resource consumption, but there is a `--local_cpu_resources` command-line option.
This PR exposes that to the `pip install` via an environment variable. I also went through the setup.py and documented all the environment variables I could find.
Object metadata are fully managed by workers now, so the related protos and logic in GCS are obsolete. Most of the logic has been removed in https://github.com/ray-project/ray/pull/19963. This PR removes some remaining obsolete protos.
Adds a set_max_concurrency method to the Searcher API. This method allows for the ConcurrencyLimiter to override the max_concurrency value on searchers with custom internal logic for limiting concurrency (atm. SigOpt and HEBO). This PR also changes the initialisation of SigOpt and HEBO optimisers to happen on set_search_properties instead of in the constructor, so that the new max_concurrency is respected.
Furthermore, this PR breaks up test_tune_restore.py into test_tune_restore_warm_start.py and test_tune_restore.py to deal with a timeout, and ensures that the automatic application of ConcurrencyLimiter in tune.run doesn't override a user-defined ConcurrencyLimiter.