Releases: SeldonIO/seldon-server
v0.95.1
Optimization minor release.
- less default logging
- configurable number of spymemcached clients
- central ModelManager to load models
v0.95
This release provides a new Association Rule Recommender useful for e-commerce settings.
See http://docs.seldon.io/spark-models.html#assoc-rules
v0.94
- tag affinity based recommender
- performance optimization updates
- multiple item dimension handling
v0.93
General Prediction Endpoint
Until now, Seldon has been focused on providing an enterprise-grade open-source recommendation engine – i.e. to suggest articles, videos, products to people based on behavioural and contextual data.
In version 0.93, a general prediction endpoint is now available to developers. This major new feature allows easy integration of classification and regression machine learning models into the Seldon platform for runtime scoring. In this initial release, we provide the ability to load and score Vowpal Wabbit classification models inside the Seldon server.
You can update models in production with no downtime. We have also created a simple microservice REST API to make it straightforward to integrate existing machine learning toolkits. As an example, we show how to integrate Vowpal Wabbit running a model in daemon mode.
We plan to provide further examples of integrating toolkits via the microservice REST API as well as further extend the Seldon server itself to load and store a range of popular models.
Seldon AWS AMI Private Access Program
Our Seldon AWS AMI private access program continues to grow as more users choose to get up and running quickly using the AMI. To participate, register for access.
Users that have registered and received access to the Seldon AWS AMI will get access enabled to new AMI releases when they become available. Check the Seldon user group for details of the latest launch URLs.
Seldon Virtual Machine 0.93 release
We are pleased to announce an exciting new version of the Seldon virtual machine. This release makes the Seldon Platform more accessible and easier to get up and running.
There are two flavours to choose from:
- On the desktop there is a Vagrant install.
- On Amazon Web Services there a pre-configured AMI.
Both these virtual machines now use Ubuntu and allows developers to extend and customize the system as necessary.
The size of the Vagrant download has now been significantly reduced by utilizing Docker Hub for additional content.
We look forward to hearing from developers who are working with this functionality. If you have any questions or feedback, please send them to the Seldon user group or email [email protected].
V0.92.1
- Bug fix for tag affinity algorithm
- Handle node deletion in Zookeeper for configuration settings
v0.92
- Allow multiple item recommendation algorithms per client controlled by a tag. Also allowing multiple variant testing within each recommendation tag.
v0.91.1
v0.91.0
This release's main change is a move from using properties files for configuration to using ZooKeeper. It also includes a more fully functional external recommender implementation and many bug fixes.
v0.90
Refactoring for pluggable algorithms
Bug fix release for VM
v0.85.3 fix dependencies