Tieturi järjestää nyt koulutuksen:

MOC 20774A: Perform Cloud Data Science with Azure Machine Learning (3 pv)

The main purpose of the course is to give students the ability to analyze and present data by using Azure Machine Learning, and to provide an introduction to the use of machine learning with big data tools such as HDInsight and R Services.

After completing this course, students will be able to:

– Explain machine learning, and how algorithms and languages are used
– Describe the purpose of Azure Machine Learning, and list the main features of Azure Machine Learning Studio
– Upload and explore various types of data to Azure Machine Learning
– Explore and use techniques to prepare datasets ready for use with Azure Machine Learning
– Explore and use feature engineering and selection techniques on datasets that are to be used with Azure Machine Learning
– Explore and use regression algorithms and neural networks with Azure Machine Learning
– Explore and use classification and clustering algorithms with Azure Machine Learning
– Use R and Python with Azure Machine Learning, and choose when to use a particular language
– Explore and use hyperparameters and multiple algorithms and models, and be able to score and evaluate models
– Explore how to provide end-users with Azure Machine Learning services, and how to share data generated from Azure Machine Learning models
– Explore and use the Cognitive Services APIs for text and image processing, to create a recommendation application, and describe the use of neural networks with Azure Machine Learning
– Explore and use HDInsight with Azure Machine Learning
– Explore and use R and R Server with Azure Machine Learning, and explain how to deploy and configure SQL Server to support R services.


Esitiedot
In addition to their professional experience, students who attend this course should have:

Programming experience using R, and familiarity with common R packages.
Knowledge of common statistical methods and data analysis best practices.
Basic knowledge of the Microsoft Windows operating system and its core functionality.
Working knowledge of relational databases.



OHJELMA

The training begins at 9.00 and ends around 16.-16.30. Breakfast is served since 8.30.

Module 1: Introduction to Machine LearningThis module introduces machine learning and discussed how algorithms and languages are used.

Lessons
What is machine learning?
Introduction to machine learning algorithms
Introduction to machine learning languages

Lab: Introduction to machine Learning
Sign up for Azure machine learning studio account
View a simple experiment from gallery
Evaluate an experiment
After completing this module, students will be able to:
– Describe machine learning
– Describe machine learning algorithms
– Describe machine learning languages

Module 2: Introduction to Azure Machine Learning Describe the purpose of Azure Machine Learning, and list the main features of Azure Machine Learning Studio.

Lessons
Azure machine learning overview
Introduction to Azure machine learning studio
Developing and hosting Azure machine learning applications

Lab: Introduction to Azure machine learning
Explore the Azure machine learning studio workspace
Clone and run a simple experiment
Clone an experiment, make some simple changes, and run the experiment
After completing this module, students will be able to:
– Describe Azure machine learning.
– Use the Azure machine learning studio.
– Describe the Azure machine learning platforms and environments.

Module 3: Managing Datasets At the end of this module the student will be able to upload and explore various types of data in Azure machine learning.

Lessons
Categorizing your data
Importing data to Azure machine learning
Exploring and transforming data in Azure machine learning

Lab: Managing Datasets
Prepare Azure SQL database
Import data
Visualize data
Summarize data
After completing this module, students will be able to:
– Understand the types of data they have.
– Upload data from a number of different sources.
– Explore the data that has been uploaded.

Module 4: Preparing Data for use with Azure Machine Learning This module provides techniques to prepare datasets for use with Azure machine learning.

Lessons
Data pre-processing
Handling incomplete datasets

Lab: Preparing data for use with Azure machine learning
Explore some data using Power BI
Clean the data
After completing this module, students will be able to:
– Pre-process data to clean and normalize it.
– Handle incomplete datasets.

Module 5: Using Feature Engineering and SelectionThis module describes how to explore and use feature engineering and selection techniques on datasets that are to be used with Azure machine learning.

Lessons
Using feature engineering
Using feature selection

Lab: Using feature engineering and selection
Prepare datasets
Use Join to Merge data
After completing this module, students will be able to:
– Use feature engineering to manipulate data.
– Use feature selection.

Module 6: Building Azure Machine Learning ModelsThis module describes how to use regression algorithms and neural networks with Azure machine learning.

Lessons
Azure machine learning workflows
Scoring and evaluating models
Using regression algorithms
Using neural networks

Lab: Building Azure machine learning models
Using Azure machine learning studio modules for regression
Create and run a neural-network based application
After completing this module, students will be able to:
– Describe machine learning workflows.
– Explain scoring and evaluating models.
– Describe regression algorithms.
– Use a neural-network.

Module 7: Using Classification and Clustering with Azure machine learning models This module describes how to use classification and clustering algorithms with Azure machine learning.

Lessons
Using classification algorithms
Clustering techniques
Selecting algorithms

Lab: Using classification and clustering with Azure machine learning models
Using Azure machine learning studio modules for classification.
Add k-means section to an experiment
Add PCA for anomaly detection.
Evaluate the models
After completing this module, students will be able to:
– Use classification algorithms.
– Describe clustering techniques.
– Select appropriate algorithms.

Module 8: Using R and Python with Azure Machine Learning This module describes how to use R and Python with azure machine learning and choose when to use a particular language.

Lessons
Using R
Using Python
Incorporating R and Python into Machine Learning experiments

Lab: Using R and Python with Azure machine learning
Exploring data using R
Analyzing data using Python
After completing this module, students will be able to:
– Explain the key features and benefits of R.
– Explain the key features and benefits of Python.
– Use Jupyter notebooks.
– Support R and Python.

Module 9: Initializing and Optimizing Machine Learning Models This module describes how to use hyper-parameters and multiple algorithms and models, and be able to score and evaluate models.

Lessons
Using hyper-parameters
Using multiple algorithms and models
Scoring and evaluating Models

Lab: Initializing and optimizing machine learning models
Using hyper-parameters
After completing this module, students will be able to:
– Use hyper-parameters.
– Use multiple algorithms and models to create ensembles.
– Score and evaluate ensembles.

Module 10: Using Azure Machine Learning Models This module explores how to provide end users with Azure machine learning services, and how to share data generated from Azure machine learning models.

Lessons
Deploying and publishing models
Consuming Experiments

Lab: Using Azure machine learning models
Deploy machine learning models
Consume a published model
After completing this module, students will be able to:
– Deploy and publish models.
– Export data to a variety of targets.

Module 11: Using Cognitive Services This module introduces the cognitive services APIs for text and image processing to create a recommendation application, and describes the use of neural networks with Azure machine learning.

Lessons
Cognitive services overview
Processing language
Processing images and video
Recommending products

Lab: Using Cognitive Services
Build a language application
Build a face detection application
Build a recommendation application
After completing this module, students will be able to:
– Describe cognitive services.
– Process text through an application.
– Process images through an application.
– Create a recommendation application.

Module 12: Using Machine Learning with HDInsight This module describes how use HDInsight with Azure machine learning.

Lessons
Introduction to HDInsight
HDInsight cluster types
HDInsight and machine learning models

Lab: Machine Learning with HDInsight
Provision an HDInsight cluster
Use the HDInsight cluster with MapReduce and Spark
After completing this module, students will be able to:
– Describe the features and benefits of HDInsight.
– Describe the different HDInsight cluster types.
– Use HDInsight with machine learning models.

Module 13: Using R Services with Machine Learning This module describes how to use R and R server with Azure machine learning, and explain how to deploy and configure SQL Server and support R services.

Lessons
R and R server overview
Using R server with machine learning
Using R with SQL Server

Lab: Using R services with machine learning
Deploy DSVM
Prepare a sample SQL Server database and configure SQL Server and R
Use a remote R session
Execute R scripts inside T-SQL statements
After completing this module, students will be able to:
– Implement interactive queries.

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Koulutuspaikka:
Tieturi Oy, Mannerheimintie 15, Helsinki

Ajankohta:
10.–12.06.2019

Hinta:
1 990 euroa
/hlö + alv 24 %.

Ilmoittautumisen peruutusehdot:
Alle 14 päivää ennen koulutusta tehdyistä perumisista perimme osallistumismaksusta 50 %. Alle 7 päivää ennen koulutusta tehdyistä perumisista perimme osallistumismaksun täysimääräisenä. Mikäli et saavu koulutukseen, veloitamme koko osallistumismaksun ja mahdolliset jo tilatut testit.
Pidätämme oikeuden muutoksiin kansainvälisten koulutuskumppaniemme koulutuksiin. Näiden koulutusten osalta olemme sinuun yhteydessä ilmoittautumisesi jälkeen.