Hi Mortiz,
There's two types of stability you should be aware of: API behavior and model scores.
You should expect that the version'd API behavior will remain stable. So, if we choose to make a change to the request or response style, that will appear under the path "v3/" and so forth. So, if you write code against the v2/ API (you shouldn't be writing new code against the v1/ API, but you *can* expect it to be stable), you should expect that it will continue to work as expected. You can see the swagger spec's for the APIs at these endpoints: https://ores.wmflabs.org/v1/spec/ or https://ores.wmflabs.org/v2/spec/ You should expect that the API behavior described will not change.
But we may still need to update the models in the future and that would likely change the range of scores slightly. We include versions of the models in the basic API response so that you can cache and invalidate scores that you get from the API. We're still working out the right way to report evaluation metrics to you so that you'll be able to dynamically adjust any thresholds you set in your own application. FWIW, I do not forsee us changing our modeling strategy substantially in the short- or mid-term. It took us ~3 months of work to prepare for the breaking change that was announced in this thread.
In the end, we're interested in learning about your needs and concerns so that we can adjust our process and make changes accordingly. So if you have concerns with any of the above please let us know.
-Aaron
On Sat, Apr 30, 2016 at 5:50 PM, Moritz Schubotz physik@physikerwelt.de wrote:
Hi Aaron,
can you say a few words about the stability of the API. We are working on a scoring model for user contributions, rather than revisions using Apache Flink. http://imwa.gehaxelt.in:9090/pdfs/expose.pdf However, it would be nice to have a somehow compatible API in the end.
Best Moritz
On Thu, Apr 7, 2016 at 10:55 AM, Aaron Halfaker aaron.halfaker@gmail.com wrote:
FYI, the new models (BREAKING CHANGE) are now deployed.
On Sun, Apr 3, 2016 at 5:38 AM, Aaron Halfaker <aaron.halfaker@gmail.com
wrote:
Hey folks, we have a couple of announcements for you today. First is
that
ORES has a large set of new functionality that you might like to take advantage of. We'll also want to talk about a *BREAKING CHANGE on April 7th.*
Don't know what ORES is? See
http://blog.wikimedia.org/2015/11/30/artificial-intelligence-x-ray-specs/
*New functionality*
*Scoring UI* Sometimes you just want to score a few revisions in ORES and
remembering
the URL structure is hard. So, we've build a simple scoring
user-interface
https://ores.wmflabs.org/ui/ that will allow you to more easily
score
a
set of edits.
*New API version* We've been consistently getting requests to include more information in ORES' responses. In order to make space for this new information, we
needed
to change the structure of responses. But we wanted to do this without breaking the tools that are already using ORES. So, we've developed a versioning scheme that will allow you to take advantage of new functionality when you are ready. The same old API will continue to be available at https://ores.wmflabs.org/scores/, but we've added two additional paths on top of this.
- https://ores.wmflabs.org/v1/scores/ is a mirror of the old
scoring
API which will henceforth be referred to as "v1"
- https://ores.wmflabs.org/v2/scores/ implements a new response
format
that is consistent between all sub-paths and adds some new
functionality
*Swagger documentation* Curious about the new functionality available in "v2" or maybe what the change was from "v1"? We've implemented a structured description of
both
versions of the scoring API using swagger -- which is becoming a
defacto
stanard for this sort of thing. Visit https://ores.wmflabs.org/v1/ or https://ores.wmflabs.org/v2/ to see the Swagger user-interface. Visithttps://ores.wmflabs.org/v1/spec/ or https://ores.wmflabs.org/v2/spec/ to get the specification in a machine-readable format.
*Feature values & injection* Have you wondered what ORES uses to make it's predictions? You can now
ask
ORES to show you the list of "feature" statistics it uses to score revisions. For example, https://ores.wmflabs.org/v2/scores/enwiki/wp10/34567892/?features will return the score with a mapping of feature values used by the "wp10" article quality model in English Wikipedia to score oldid=34567892 https://en.wikipedia.org/wiki/Special:Diff/34567892. You can also "inject" features into the scoring process to see how that affects the prediction. E.g.,
https://ores.wmflabs.org/v2/scores/enwiki/wp10/34567892?features&feature...
*Breaking change -- new models* We've been experimenting with new learning algorithms to make ORES work better and we've found that we get better results with gradient
boosting
https://en.wikipedia.org/wiki/Gradient_boosting and random forest https://en.wikipedia.org/wiki/Random_forest strategies than we do
with
the current linear svc https://en.wikipedia.org/wiki/Support_vector_machine models. We'd
like
to get these new, better models deployed as soon as possible, but with
the
new algorithm comes a change in the range of probabilities returned by
the
model. So, when we deploy this change, any tools that uses hard-coded thresholds on ORES' prediction probabilities will suddenly start
behaving
strangely. Regretfully, we haven't found a way around this problem, so we're announcing the change now and we plan to deploy this *BREAKING CHANGE on April 7th*. Please subscribe to the AI mailinglist https://lists.wikimedia.org/mailman/listinfo/ai or watch our project page [[:m:ORES https://meta.wikimedia.org/wiki/ORES]] to catch announcements of future changes and new functionality.
In order to make sure we don't end up in the same situation the next
time
we want to change an algorithm, we've included a suite of evaluation statistics with each model. The filter_rate_at_recall(0.9), filter_rate_at_recall(0.75), and recall_at_fpr(0.1) thresholds
represent
three critical thresholds (should review, needs review, and definitely damaging -- respectively) that can be used to automatically configure
your
wiki tool. You can find out these thresholds for your model of choice
by
adding the ?model_info parameter to requests. So, come breaking
change,
we strongly recommend basing your thresholds on these statistics in the future. We'll be working to submit patches to tools that use ORES in
the
next week to implement this flexibility. Hopefully, all you'll need to
do
is worth with us on those.
-halfak & The Revision Scoring team <
https://meta.wikimedia.org/wiki/Research:Revision_scoring_as_a_service%3E
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-- Mit freundlichen Grüßen Moritz Schubotz
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