PipelineAI Platform
A PipelineAI Platform is an enterprise end-to-end ML framework.
- Context:
- It can be for Real-time Spark and Tensorflow Data Pipelines.
 - It can be used for ML Deploying, Optimizing and Scaling.
 
 - Example(s):
 - Counter-Example(s):
 - See: Spark ML Pipeline, Chris Fregley.
 
References
2017
- http://pipeline.ai/features/
- Fast Model Deployments / Deploy Models to Production in 1-Click
 - Safe Experiments in Prod / Test on 1% of Live and Shadow Traffic
 - 360º Model Comparisons / Compare Real-Time and Batch Metrics
 - Automatic Traffic Shifting / Shift Traffic to Winning Model or Cloud
 - Model + Runtime Tuning / Tune Both Model and Runtime Params
 - Deep Prediction Tuning / Monitor Predictions at All Layers
 - Live Prediction Streams / View Live Predictions in Real-Time
 - Real-Time Model Updates / Improve Models with Crowd-Sourcing
 - Auto-Optimized Models / Optimize Models for Fast Predictions
 - Secure Private Hosting / Host in Your Own Cloud or Data Center
 
 
2017b
- https://www.crunchbase.com/organization/pipelineio
- QUOTE: PipelineAI: End-to-End ML and AI Platform for Real-time Spark and Tensorflow Data Pipelines         
 PipelineAI’s primary focus is Continuous ML and AI Model Deploying, Optimizing and Scaling. Using a combination of open source and proprietary technologies, the PipelineIO service enables data scientists to rapidly train, test, optimize, deploy, and scale models in production directly from a Jupyter Notebook or command-line interface.
We treat model optimizing and serving as a first-class citizen in the modern data pipeline - alongside model training. We give data scientists and engineers the freedom to quickly deploy, test, and rollback (if needed) their models directly in production. A concept we practiced heavily at Netflix, this freedom comes with responsibility. PipelineIO provides the tooling, infrastructure, and dashboards necessary to responsibily manage production directly - and with no downtime.
We currently support models built with Spark, Tensorflow, Scikit-learn, XGBoost, and R. We are constantly tuning and optimizing our runtime to provide the best price per prediction available - even across multiple data centers and cloud vendors. Our hybrid-cloud “auto-shift” technology compliments the traditional, single-cloud “auto-scale” technology.
PipelineAI opens up new ways to increase performance of your predictions, improve the uptime of your model serving infrastructure, and reduce cost per prediction.
 
 - QUOTE: PipelineAI: End-to-End ML and AI Platform for Real-time Spark and Tensorflow Data Pipelines