Download presentation
Presentation is loading. Please wait.
Published byDarrell Hubbard Modified over 9 years ago
2
Azure Machine Learning: From design to integration Peter Myers M355
9
Machine Learning Subfield of computer science and statistics that deals with the construction and study of systems that can learn from data, rather than follow only explicitly programmed instructions -Wikipedia
10
f() num1, num2 I need to add two numbers together…
11
I need to predict customer profitability… f() Age, Marital Status, Gender, Yearly Income, Total Children, Education, Occupation, Home Owner, Commute Distance
12
Define Objective Collect Data Prepare Data Train Models Evaluate Models PublishManageIntegrate
14
Strategic change Lots of buzz words New markets High competition DATA SCIENTIST Expensive Isolated data Tool chaos Complexity Consequences Lost opportunities Expensive operative mistakes Traditional approach Guessing Rules of thumb Trial and error
17
Azure Portal ML Studio ML API service Azure Ops team Data professionals & Data scientists Software developers
20
Define Objective Collect Data Prepare Data Train Models Evaluate Models PublishManageIntegrate
21
Define Objective I need to predict customer profitability…
22
Collect Data
24
Prepare Data
26
Train Models Evaluate Models
28
Publish
30
Manage
32
Integrate
36
Ad targeting Equipment monitoring Spam filtering Churn analysis Recommendation s Fraud detection Image detection & classification Forecasting Anomaly detection Imagine what you could use Machine Learning for…
38
Azure Portal Azure Ops Team ML Studio Data Professional HDInsightAzure StorageDesktop Data Azure Portal & ML API service Azure Ops Team Power BI/DashboardsMobile AppsWeb Apps ML API service Application Developer
39
Azure Portal Azure Ops Team ML Studio Data Scientist HDInsightAzure StorageDesktop Data Azure Portal & ML API service Azure Ops Team Power BI/DashboardsMobile AppsWeb Apps ML API service Developer ML Studio and the Data Professional Access and prepare data Create, test and train models Collaborate One click to stage for production via the API service Azure Portal & ML API service and the Azure Ops Team Create ML Studio workspace Assign storage account(s) Monitor ML consumption See alerts when model is ready Deploy models to web service ML API service and the Application Developer Tested models available as a URL that can be called from any endpoint Business users easily access results from anywhere, on any device
40
Quick and easy extensibility with cloud functions such as Power BI, Hadoop (Azure HDInsight) and cloud storage
45
Subscribe to our fortnightly newsletter http://aka.ms/technetnz http://aka.ms/msdnnz http://aka.ms/ch9nz Free Online Learning http://aka.ms/mva Sessions on Demand
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.