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A new open source deep learning interface which allows developers to more easily and quickly build machine learning models, without compromising performance. Gluon provides a clear, concise API for defining machine learning models using a collection of pre-built, optimized neural network components. | It makes it easy to personalize any listing: recommendations, articles, and search results. Developers make one reranking API call, and Metarank takes care of ML feature updates, model training, and improving target goals like CTR/conversion. |
Simple, Easy-to-Understand Code: Gluon offers a full set of plug-and-play neural network building blocks, including predefined layers, optimizers, and initializers.;Flexible, Imperative Structure: Gluon does not require the neural network model to be rigidly defined, but rather brings the training algorithm and model closer together to provide flexibility in the development process.;Dynamic Graphs: Gluon enables developers to define neural network models that are dynamic, meaning they can be built on the fly, with any structure, and using any of Python’s native control flow.;High Performance: Gluon provides all of the above benefits without impacting the training speed that the underlying engine provides. | Built-in feature store to compute features used for online and offline training;
REST API, Kafka, Apache Pulsar connectors to receive events and metadata updates;
Offline and online (real-time personalization) operation modes;
Explain mode to understand how final ranking is computed;
Local mode to run Metarank locally without deploying to a cluster;
Cloud native: deploy Metarank to Kubernetes or AWS |
Statistics | |
GitHub Stars 2.3K | GitHub Stars 2.2K |
GitHub Forks 219 | GitHub Forks 102 |
Stacks 29 | Stacks 2 |
Followers 80 | Followers 9 |
Votes 3 | Votes 0 |
Pros & Cons | |
Pros
| No community feedback yet |
Integrations | |
| No integrations available | |

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