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Machine Learning in Production
Deep Dive into Dato Predictive Services
Ping Wang (ping@dato.com)
Principal Engineer, Dato Inc.
datoinc
Hello my name is..
Ping Wang
Principal Engineer at Dato
Was:
* Teacher
* Cofounder of a startup
Loves:
* Nature
2
About Dato!
Agenda
• Overview of Dato Machine Learning Platform
• Machine Learning in Production
• Dato Predictive Services
 Sample Intelligent Application
 Deploy and Serve
 Monitor and Manage
 Evaluate and Experiment
Agenda
• Overview of Dato Machine Learning Platform
• Machine Learning in Production
• Dato Predictive Services
 Sample Intelligent Application
 Deploy and Serve
 Monitor and Manage
 Evaluate and Experiment
6
Intelligent Applications
powered by
MACHINE
LEARNING
are driving
Business innovation
Intelligent
Applications
Model Serving Service
Consuming
Applications
Request
Response
• Book ID: List of recommended books
• Image URL: List of similar images
• Transaction info: Fraud yes/no
• Recommender
• Image Search
• Fraud Detection
Machine Learning
in Production –
The Challenges
Build / Train
Models
Deploy/
Serve
Monitor/
Manage
Evaluate /
Experiment
Online
Experimentation
Monitor /
Manage
Product Usage
Information
Deploy
Model
Batch
Retraining
Agenda
• Overview of Dato Machine Learning Platform
• Machine Learning in Production
• Dato Predictive Services
 Sample Intelligent Application
 Deploy and Serve
 Monitor and Manage
 Evaluate and Experiment
Dato Predictive
Services Deploy/
Serve
Manage
/Monitor
Evaluate /
Experiment
Online
Experimentation
Monitor /
Manage
Product Usage
Information
Deploy
Model
Dato Predictive Services
…
Models:
Agenda
• Overview of Dato Machine Learning Platform
• Machine Learning in Production
• Dato Predictive Services
 Sample Intelligent Application
 Deploy and Serve
 Monitor and Manage
 Evaluate and Experiment
Demo
Sample Intelligent App – Book Recommender
Dato Predictive
Services Deploy/
Serve
Manage
/Monitor
Evaluate /
Experiment
Online
Experimentation
Monitor /
Manage
Product Usage
Information
Deploy
Model
Dato Predictive Services
…
Models:
Deployment Options
Demo
Deploying Machine Learning Models with
Dato Predictive Services
Dato Predictive
Services Deploy/
Serve
Manage
/Monitor
Evaluate /
Experiment
Online
Experimentation
Monitor /
Manage
Product Usage
information
Deploy
Model
Dato Predictive Services
…
Models:
Demo
Monitoring and Manage
Dato Predictive
Services Deploy/
Serve
Manage
/Monitor
Evaluate /
Experiment
Online
Experimentation
Monitor /
Manage
Product Usage
information
Deploy
Model
Dato Predictive Services
…
Models:
Demo
Evaluate and Experiment with Models in
Production
Summary
Deploy/
Serve
Manage
/Monitor
Evaluate /
Experiment
Online
Experimentation
Monitor /
Manage
Product Usage
Information
Deploy
Model
Dato Predictive Services
…
Models:
For more information, visit Dato.com
Dato ML Platform Overview
Predictive Service User Guide
Deploy Predictive Service on premises
22
Thank you for joining!
Questions
23
Thank you for joining!

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Machine Learning in Production with Dato Predictive Services

Notes de l'éditeur

  1. Hello, welcome to the webinar of "Bring Machine Learning to Production". My name is Ping Wang, I am a Principal Engineer at Dato and the lead for Dato Predictive Serivces product.
  2. As most of you may already be familiar with, Dato is a Seattle based startup that was founded on May of 2013. Dato is backed by VCs like Madrona, NEA, Opus Capital and Vulcan Capital. We have about 45 employees now and is growing really fast. We have offices in US and Europe.
  3. We will focus on how to setup DPS in AWS
  4. We will focus on how to setup DPS in AWS
  5. We will focus on how to setup DPS in AWS
  6. We will focus on how to setup DPS in AWS
  7. We will focus on how to setup DPS in AWS
  8. We will focus on how to setup DPS in AWS
  9. We will focus on how to setup DPS in AWS
  10. Put logo here
  11. We will focus on how to setup DPS in AWS
  12. We will focus on how to setup DPS in AWS
  13. We will focus on how to setup DPS in AWS