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What is this and how can I use it?

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Presentation on theme: "What is this and how can I use it?"— Presentation transcript:

1 What is this and how can I use it?
Azure ML What is this and how can I use it? Warren Sifre  2016 Allegient. All rights reserved.

2 About Me Warren Sifre Professional History Solution Architect
Website: Professional History 20 years in the technology industry focusing on Information Technology and se  2016 Allegient. All rights reserved.

3 Session Agenda What is Machine Learning? Techniques of Learning
What is Azure ML? What is a Data Scientist? Demonstration  2016 Allegient. All rights reserved.

4 What is Machine Learning?
 2016 Allegient. All rights reserved.

5 What is Machine Learning?
Formal definition: “A computer program is said to learn from experience E with respect to some class of tasks T and performance measure P, if its performance at tasks in T, as measured by P, improves with experience E” - Tom M. Mitchell Another definition: “The goal of machine learning is to program computers to use example data or past experience to solve a given problem.” – Introduction to Machine Learning, 2nd Edition, MIT Press “In general, ML converts data sets into pieces of software, known as ‘models’, that can represent the data set and generalize to make predictions on new data.” - John Platt  2016 Allegient. All rights reserved.

6 Techniques of Learning
Supervised Learning by using a set number of inputs and outputs. Limited in providing deep undiscovered insights. Used when you want to predict unknown answers from answers you already have. (Historical Data) Unsupervised Learning by using all inputs. Can learn larger and more complex models. Can take longer to learn depending on the number of linear levels. Used when you want to find unknown answers directly from data. (No simple way to validate results.)  2016 Allegient. All rights reserved.

7 What is AZURE ML? A cloud-based platform for designing, developing, testing and deploying predictive models. There are three conceptual areas Experiments, Web Service and ML Studio. Experiments –Predictive models for both training and scoring. Web Service – Data Interaction point for predictive models. ML Studio – Interface for developing and training predictive models. Leverage existing R, Python, OpenCV and other industry adopted predictive algorithms.  2016 Allegient. All rights reserved.

8 What is a Data Scientist?
Subject Matter Expert Technology Statistics  2016 Allegient. All rights reserved.

9 Demonstration  2016 Allegient. All rights reserved.

10 Algorithm Selection???  2016 Allegient. All rights reserved.

11 Helpful Links Azure ML Studio Azure ML – Microsoft Virtual Academy
Azure ML – Microsoft Virtual Academy Azure ML Algorithm Cheat Sheet  2016 Allegient. All rights reserved.

12 Warren Sifre LinkedIn:  2016 Allegient. All rights reserved.


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