Results


What is hardcore data science – in practice?

@machinelearnbot

For example, for personalized recommendations, we have been working with learning to rank methods that learn individual rankings over item sets. Figure 1: Typical data science workflow, starting with raw data that is turned into features and fed into learning algorithms, resulting in a model that is applied on future data. This means that this pipeline is iterated and improved many times, trying out different features, different forms of preprocessing, different learning methods, or maybe even going back to the source and trying to add more data sources. Probably the main difference between production systems and data science systems is that production systems are real-time systems that are continuously running.


Amazon Joins Tech Giants in Open Sourcing a Key Machine Learning Tool

#artificialintelligence

"DSSTNE (pronounced "Destiny") is an open source software library for training and deploying deep neural networks using GPUs. Amazon engineers built DSSTNE to solve deep learning problems at Amazon's scale. DSSTNE is built for production deployment of real-world deep learning applications, emphasizing speed and scale over experimental flexibility. "Deep Scalable Sparse Tensor Network Engine, (DSSTNE), pronounced "Destiny", is an Amazon developed library for building Deep Learning (DL) machine learning (ML) models.