Commit Graph

242 Commits

Author SHA1 Message Date
Przemysław Witek c89917c799
Register DFA jobs on putAnalytics rather than via a separate method (#55458) (#55708) 2020-04-24 10:59:32 +02:00
Dimitris Athanasiou b8379872a7
[7.x][ML] Logs error when DFA task is set to failed (#55545) (#55668)
Also unmutes the integ test that stops and restarts
an outlier detection job with the hope of learning more
of the failure in #55068.

Backport of #55545

Co-authored-by: Elastic Machine <elasticmachine@users.noreply.github.com>
2020-04-24 11:06:07 +03:00
David Roberts da5aeb8be7
[ML] Return assigned node in start/open job/datafeed response (#55570)
Adds a "node" field to the response from the following endpoints:

1. Open anomaly detection job
2. Start datafeed
3. Start data frame analytics job

If the job or datafeed is assigned to a node immediately then
this field will return the ID of that node.

In the case where a job or datafeed is opened or started lazily
the node field will contain an empty string.  Clients that want
to test whether a job or datafeed was opened or started lazily
can therefore check for this.

Backport of #55473
2020-04-22 12:06:53 +01:00
Stuart Tettemer 93a2e9b0f9
Test: MockScoreScript can be cacheable. (#55499)
Backport: 0ed1eb5
2020-04-20 17:09:58 -06:00
Benjamin Trent cabff65aec
[ML] Fixing inference stats race condition (#55163) (#55486)
`updateAndGet` could actually call the internal method more than once on contention.
If I read the JavaDocs, it says:
```* @param updateFunction a side-effect-free function```
So, it could be getting multiple updates on contention, thus having a race condition where stats are double counted.

To fix, I am going to use a `ReadWriteLock`. The `LongAdder` objects allows fast thread safe writes in high contention environments. These can be protected by the `ReadWriteLock::readLock`.

When stats are persisted, I need to call reset on all these adders. This is NOT thread safe if additions are taking place concurrently. So, I am going to protect with `ReadWriteLock::writeLock`.

This should prevent race conditions while allowing high (ish) throughput in the highly contention paths in inference.

I did some simple throughput tests and this change is not significantly slower and is simpler to grok (IMO).

closes  https://github.com/elastic/elasticsearch/issues/54786
2020-04-20 16:21:18 -04:00
Benjamin Trent fa0373a19f
[7.x] [ML] Fix log spam and disable ILM/SLM history for native ML tests (#55475)
* [ML] fix native ML test log spam (#55459)

This adds a dependency to ingest common. This removes the log spam resulting from basic plugins being enabled that require the common ingest processors.

* removing unnecessary changes

* removing unused imports

* removing unnecessary java setting
2020-04-20 15:41:30 -04:00
William Brafford 7817948926 Disable monitoring in ML multinode tests (#55461)
Removing the deprecated "xpack.monitoring.enabled" setting introduced
log spam and potentially some failures in ML tests. It's possible to use
a different, non-deprecated setting to disable monitoring, so we do that
here.
2020-04-20 10:51:16 -04:00
Przemysław Witek 7d5f74e964
Fix and unmute testSetUpgradeMode_ExistingTaskGetsUnassigned (#55368) (#55452) 2020-04-20 13:29:29 +02:00
William Brafford 49e30b15a2
Deprecate disabling basic-license features (#54816) (#55405)
We believe there's no longer a need to be able to disable basic-license
features completely using the "xpack.*.enabled" settings. If users don't
want to use those features, they simply don't need to use them. Having
such features always available lets us build more complex features that
assume basic-license features are present.

This commit deprecates settings of the form "xpack.*.enabled" for
basic-license features, excluding "security", which is a special case.
It also removes deprecated settings from integration tests and unit
tests where they're not directly relevant; e.g. monitoring and ILM are
no longer disabled in many integration tests.
2020-04-17 15:04:17 -04:00
Benjamin Trent 2b68aa3471
muting test for issue 55068 (#55312) 2020-04-16 10:32:12 -04:00
David Roberts 8489f8c121
[ML] Add test to prove categorization state written after lookback (#55297)
When a datafeed transitions from lookback to real-time we request
that state is persisted from the autodetect process in the
background.

This PR adds a test to prove that for a categorization job the
state that is persisted includes the categorization state.
Without the fix from elastic/ml-cpp#1137 this test fails.  After
that C++ fix is merged this test should pass.

Backport of #55243
2020-04-16 11:55:18 +01:00
David Roberts 5de6ddfef2 Mute ClassificationIT.testSetUpgradeMode_ExistingTaskGetsUnassigned
Due to https://github.com/elastic/elasticsearch/issues/55221
2020-04-16 09:03:46 +01:00
William Brafford 2ba3be9db6
Remove deprecated third-party methods from tests (#55255) (#55269)
I've noticed that a lot of our tests are using deprecated static methods
from the Hamcrest matchers. While this is not a big deal in any
objective sense, it seems like a small good thing to reduce compilation
warnings and be ready for a new release of the matcher library if we
need to upgrade. I've also switched a few other methods in tests that
have drop-in replacements.
2020-04-15 17:54:47 -04:00
Dimitris Athanasiou 4000138105
[7.x][ML] Add debug logging for outlier detection stop and restart integ test (#55169) (#55202)
To understand the failures in #55068

Backport of #55169
2020-04-15 10:40:38 +03:00
Przemysław Witek d5bb574e1e
[7.x] Unassign DFA tasks in SetUpgradeModeAction (#54523) (#55143) 2020-04-14 14:09:02 +02:00
Mark Vieira cb58725164 Mute InferenceIngestIT.testPipelineIngest 2020-04-14 09:27:56 +01:00
Benjamin Trent d32f6fed1d
[ML] inference only persist if there are stats (#54752) (#55121)
We needlessly send documents to be persisted. If there are no stats added, then we should not attempt to persist them.

Also, this PR fixes the race condition that caused issue:  https://github.com/elastic/elasticsearch/issues/54786
2020-04-13 14:03:05 -04:00
Benjamin Trent c5c7ee9d73
[7.x] [ML] Start gathering and storing inference stats (#53429) (#54738)
* [ML] Start gathering and storing inference stats (#53429)

This PR enables stats on inference to be gathered and stored in the `.ml-stats-*` indices.

Each node + model_id will have its own running stats document and these will later be summed together when returning _stats to the user.

`.ml-stats-*` is ILM managed (when possible). So, at any point the underlying index could change. This means that a stats document that is read in and then later updated will actually be a new doc in a new index. This complicates matters as this means that having a running knowledge of seq_no and primary_term is complicated and almost impossible. This is because we don't know the latest index name.

We should also strive for throughput, as this code sits in the middle of an ingest pipeline (or even a query).
2020-04-13 08:15:46 -04:00
Przemysław Witek 17101d86d9
[7.x] Do not execute ML CRUD actions when upgrade mode is enabled (#54437) (#55049) 2020-04-10 16:07:11 +02:00
Ryan Ernst 37795d259a
Remove guava from transitive compile classpath (#54309) (#54695)
Guava was removed from Elasticsearch many years ago, but remnants of it
remain due to transitive dependencies. When a dependency pulls guava
into the compile classpath, devs can inadvertently begin using methods
from guava without realizing it. This commit moves guava to a runtime
dependency in the modules that it is needed.

Note that one special case is the html sanitizer in watcher. The third
party dep uses guava in the PolicyFactory class signature. However, only
calling a method on the PolicyFactory actually causes the class to be
loaded, a reference alone does not trigger compilation to look at the
class implementation. There we utilize a MethodHandle for invoking the
relevant method at runtime, where guava will continue to exist.
2020-04-07 23:20:17 -07:00
David Roberts df4ae79b41
[TEST] Unmute CategorizationIT.testNumMatchesAndCategoryPreference (#54868)
Should work again now that https://github.com/elastic/ml-cpp/issues/1121
is resolved.

Backport of #54768
2020-04-07 11:04:31 +01:00
David Roberts 470aa9a5f1 [TEST] Mute CategorizationIT.testNumMatchesAndCategoryPreference (#54717)
The test results are affected by the off-by-one error that is
fixed by https://github.com/elastic/ml-cpp/pull/1122

This test can be unmuted once that fix is merged and has been
built into ml-cpp snapshots.
2020-04-03 14:40:47 +01:00
Benjamin Trent 6e73f67f3b
[ML] unmute categorization test for native backport (#54679) 2020-04-02 17:08:19 -04:00
Benjamin Trent 7fe38935f6
[ML] add training_percent to analytics process params (#54605) (#54678)
This adds training_percent parameter to the analytics process for Classification and Regression. This parameter is then used to give more accurate memory estimations.

See native side pr: elastic/ml-cpp#1111
2020-04-02 17:08:06 -04:00
Benjamin Trent 4a1610265f
[7.x] [ML] add new inference_config field to trained model config (#54421) (#54647)
* [ML] add new inference_config field to trained model config (#54421)

A new field called `inference_config` is now added to the trained model config object. This new field allows for default inference settings from analytics or some external model builder.

The inference processor can still override whatever is set as the default in the trained model config.

* fixing for backport
2020-04-02 12:25:10 -04:00
Benjamin Trent 65233383f6
[7.x] [ML] prefer secondary authorization header for data[feed|frame] authz (#54121) (#54645)
* [ML] prefer secondary authorization header for data[feed|frame] authz (#54121)

Secondary authorization headers are to be used to facilitate Kibana spaces support + ML jobs/datafeeds.

Now on PUT/Update/Preview datafeed, and PUT data frame analytics the secondary authorization is preferred over the primary (if provided).

closes https://github.com/elastic/elasticsearch/issues/53801

* fixing for backport
2020-04-02 11:20:25 -04:00
Benjamin Trent eb31be0e71
[7.x] [ML] add num_matches and preferred_to_categories to category defintion objects (#54214) (#54639)
* [ML] add num_matches and preferred_to_categories to category defintion objects (#54214)

This adds two new fields to category definitions.

- `num_matches` indicating how many documents have been seen by this category
- `preferred_to_categories` indicating which other categories this particular category supersedes when messages are categorized.

These fields are only guaranteed to be up to date after a `_flush` or `_close`

native change: https://github.com/elastic/ml-cpp/pull/1062

* adjusting for backport
2020-04-02 09:09:19 -04:00
Jason Tedor 5fcda57b37
Rename MetaData to Metadata in all of the places (#54519)
This is a simple naming change PR, to fix the fact that "metadata" is a
single English word, and for too long we have not followed general
naming conventions for it. We are also not consistent about it, for
example, METADATA instead of META_DATA if we were trying to be
consistent with MetaData (although METADATA is correct when considered
in the context of "metadata"). This was a simple find and replace across
the code base, only taking a few minutes to fix this naming issue
forever.
2020-03-31 17:24:38 -04:00
Dimitris Athanasiou 6d96ca9bc8
[7.x][ML] Reenable classification and regression integ tests (#54489) (#54494)
Relates #54401

Backport of #54489
2020-03-31 17:50:08 +03:00
Dimitris Athanasiou b4b54efa73
[7.x][ML] Hyperparameter names should match config (#54401) (#54435)
Java side of elastic/ml-cpp#1096

Backport of #54401
2020-03-30 23:32:40 +03:00
Przemysław Witek d40afc7871
[7.x] Do not fail Evaluate API when the actual and predicted fields' types differ (#54255) (#54319) 2020-03-27 10:05:19 +01:00
Dimitris Athanasiou cc981fa377
[7.x][ML] Get ML filters size should default to 100 (#54207) (#54278)
When get filters is called without setting the `size`
paramter only up to 10 filters are returned. However,
100 filters should be returned. This commit fixes this
and adds an integ test to guard it.

It seems this was accidentally broken in #39976.

Closes #54206

Backport of #54207
2020-03-26 17:51:43 +02:00
Mark Vieira 7728ccd920
Encore consistent compile options across all projects (#54120)
(cherry picked from commit ddd068a7e92dc140774598664efdc15155ab05c2)
2020-03-25 08:24:21 -07:00
Dimitris Athanasiou ba09a778dc
[7.x][ML] Unmute classification cardinality integ test (#54165) (#54173)
Adjusts test to work for new cardinality limit.

Backport of #54165
2020-03-25 15:00:34 +02:00
Dimitris Athanasiou 5ce7c99e74
[7.x][ML] Data frame analytics data counts (#53998) (#54031)
This commit instruments data frame analytics
with stats for the data that are being analyzed.
In particular, we count training docs, test docs,
and skipped docs.

In order to account docs with missing values as skipped
docs for analyses that do not support missing values,
this commit changes the extractor so that it only ignores
docs with missing values when it collects the data summary,
which is used to estimate memory usage.

Backport of #53998
2020-03-24 11:30:43 +02:00
Benjamin Trent 19af869243
[ML] adds multi-class feature importance support (#53803) (#54024)
Adds multi-class feature importance calculation. 

Feature importance objects are now mapped as follows
(logistic) Regression:
```
{
   "feature_name": "feature_0",
   "importance": -1.3
}
```
Multi-class [class names are `foo`, `bar`, `baz`]
```
{ 
   “feature_name”: “feature_0”, 
   “importance”: 2.0, // sum(abs()) of class importances
   “foo”: 1.0, 
   “bar”: 0.5, 
   “baz”: -0.5 
},
```

For users to get the full benefit of aggregating and searching for feature importance, they should update their index mapping as follows (before turning this option on in their pipelines)
```
 "ml.inference.feature_importance": {
          "type": "nested",
          "dynamic": true,
          "properties": {
            "feature_name": {
              "type": "keyword"
            },
            "importance": {
              "type": "double"
            }
          }
        }
```
The mapping field name is as follows
`ml.<inference.target_field>.<inference.tag>.feature_importance`
if `inference.tag` is not provided in the processor definition, it is not part of the field path.
`inference.target_field` is defaulted to `ml.inference`.
//cc @lcawl ^ Where should we document this?

If this makes it in for 7.7, there shouldn't be any feature_importance at inference BWC worries as 7.7 is the first version to have it.
2020-03-23 18:49:07 -04:00
Benjamin Trent d276058c6c
[ML] adjusting feature importance mapping for multi-class support (#53821) (#54013)
Feature importance storage format is changing to encompass multi-class.

Feature importance objects are now mapped as follows
(logistic) Regression:
```
{
   "feature_name": "feature_0",
   "importance": -1.3
}
```
Multi-class [class names are `foo`, `bar`, `baz`]
```
{
   “feature_name”: “feature_0”,
   “importance”: 2.0, // sum(abs()) of class importances
   “foo”: 1.0,
   “bar”: 0.5,
   “baz”: -0.5
},
```

This change adjusts the mapping creation for analytics so that the field is mapped as a `nested` type.

Native side change: https://github.com/elastic/ml-cpp/pull/1071
2020-03-23 15:50:12 -04:00
Przemysław Witek 88c5d520b3
[7.x] Verify that the field is aggregatable before attempting cardinality aggregation (#53874) (#54004) 2020-03-23 19:36:33 +01:00
Przemysław Witek a68071dbba
[7.x] Delete empty .ml-state* indices during nightly maintenance task. (#53587) (#53849) 2020-03-20 13:08:36 +01:00
Przemysław Witek ec13c093df
Make ML index aliases hidden (#53160) (#53710) 2020-03-18 10:28:45 +01:00
Przemysław Witek 376b2ae735
[7.x] Make classification evaluation metrics work when there is field mapping type mismatch (#53458) (#53601) 2020-03-16 15:38:56 +01:00
Dimitris Athanasiou 94da4ca3fc
[7.x][ML] Extend classification to support multiple classes (#53539) (#53597)
Prepares classification analysis to support more than just
two classes. It introduces a new parameter to the process config
which dictates the `num_classes` to the process. It also
changes the max classes limit to `30` provisionally.

Backport of #53539
2020-03-16 15:00:54 +02:00
Benjamin Trent 4e43ede735
[ML] renaming inference processor field field_mappings to new name field_map (#53433) (#53502)
This renames the `inference` processor configuration field `field_mappings` to `field_map`.

`field_mappings` is now deprecated.
2020-03-13 15:40:57 -04:00
Tom Veasey 690099553c
[7.x][ML] Adds the class_assignment_objective parameter to classification (#53552)
Adds a new parameter for classification that enables choosing whether to assign labels to
maximise accuracy or to maximise the minimum class recall.

Fixes #52427.
2020-03-13 17:35:51 +00:00
Benjamin Trent 89668c5ea0
[ML][Inference] adds new default_field_map field to trained models (#53294) (#53419)
Adds a new `default_field_map` field to trained model config objects.

This allows the model creator to supply field map if it knows that there should be some map for inference to work directly against the training data.

The use case internally is having analytics jobs supply a field mapping for multi-field fields. This allows us to use the model "out of the box" on data where we trained on `foo.keyword` but the `_source` only references `foo`.
2020-03-11 13:49:39 -04:00
Przemysław Witek 8c4c19d310
Perform evaluation in multiple steps when necessary (#53295) (#53409) 2020-03-11 15:36:38 +01:00
Przemysław Witek 063957b7d8
Simplify "refresh" calls. (#53385) (#53393) 2020-03-11 12:26:11 +01:00
Dimitris Athanasiou 0fd0516d0d
[7.x][ML] Rename data frame analytics maximum_number_trees to max_trees (#53300) (#53390)
Deprecates `maximum_number_trees` parameter of classification and
regression and replaces it with `max_trees`.

Backport of #53300
2020-03-11 12:45:27 +02:00
Przemysław Witek d54d7f2be0
[7.x] Implement ILM policy for .ml-state* indices (#52356) (#53327) 2020-03-10 14:24:18 +01:00
Benjamin Trent 856d9bfbc1
[ML] fixing data frame analysis test when two jobs are started in succession quickly (#53192) (#53332)
A previous change (#53029) is causing analysis jobs to wait for certain indices to be made available. While this it is good for jobs to wait, they could fail early on _start. 

This change will cause the persistent task to continually retry node assignment when the failure is due to shards not being available.

If the shards are not available by the time `timeout` is reached by the predicate, it is treated as a _start failure and the task is canceled. 

For tasks seeking a new assignment after a node failure, that behavior is unchanged.


closes #53188
2020-03-10 08:30:47 -04:00