Microsoft Azure DP-100: Designing and Implementing a Data Science Solution Exam Covered. Learn Azure Machine Learning
This course will help you and your team to build skills required to pass the most in demand and challenging, Azure DP-100 Certification exam. It will earn you one of the most in-demand certificate of Microsoft Certified: Azure Data Scientist Associate.
DP-100 is designed for Data Scientists. This exam tests your knowledge of Data Science and Machine learning to implement machine learning models on Azure. So you must know right from Machine Learning fundamentals, Python, planning and creating suitable environments in Azure, creating machine learning models as well as deploying them in production.
Why should you go for DP-100 Certification?
One of the very few certifications in the field of Data Science and Machine Learning.
You can successfully demonstrate your knowledge and abilities in the field of Data Science and Machine Learning.
You will improve your job prospects substantially in the field of Data Science and Machine Learning.
Key points about this course
Covers the most current syllabus as on May, 2021.
100% syllabus of DP-100 Exam is covered.
Very detailed and comprehensive coverage with more than 200 lectures and 25 Hours of content
Crash courses on Python and Azure Fundamentals for those who are new to the world of Data Science
Machine Learning is one of the hottest and top paying skills. It's also one of the most interesting field to work on.
In this course of Machine Learning using Azure Machine Learning, we will make it even more exciting and fun to learn, create and deploy machine learning models using Azure Machine Learning Service as well as the Azure Machine Learning Studio. We will go through every concept in depth. This course not only teaches basic but also the advance techniques of Data processing, Feature Selection and Parameter Tuning which an experienced and seasoned Data Science expert typically deploys. Armed with these techniques, in a very short time, you will be able to match the results that an experienced data scientist can achieve.
This course will help you prepare for the entry to this hot career path of Machine Learning as well as the Azure DP-100: Azure Data Scientist Associate exam.
----- Exam Syllabus for DP-100 Exam -----
1. Set up an Azure Machine Learning Workspace (30-35%)
Create an Azure Machine Learning workspace
Create an Azure Machine Learning workspaceConfigure workspace settings
Manage a workspace by using Azure Machine Learning studio
Manage data objects in an Azure Machine Learning workspace
Register and maintain datastores
Create and manage datasets
Manage experiment compute contexts
Create a compute instance
Determine appropriate compute specifications for a training workload
Create compute targets for experiments and training
Run Experiments and Train Models (25-30%)
Create models by using Azure Machine Learning Designer
Create a training pipeline by using Azure Machine Learning designer
Ingest data in a designer pipeline
Use designer modules to define a pipeline data flow
Use custom code modules in designer
Run training scripts in an Azure Machine Learning workspace
Create and run an experiment by using the Azure Machine Learning SDK
Configure run settings for a script
Consume data from a dataset in an experiment by using the Azure Machine Learning SDK
Generate metrics from an experiment run
Log metrics from an experiment run
Retrieve and view experiment outputs
Use logs to troubleshoot experiment run errors
Automate the model training process
Create a pipeline by using the SDK
Pass data between steps in a pipeline
Run a pipeline
Monitor pipeline runs
Optimize and Manage Models (20-25%)
Use Automated ML to create optimal models
Use the Automated ML interface in Azure Machine Learning studio
Use Automated ML from the Azure Machine Learning SDK
Select pre-processing options
Determine algorithms to be searched
Define a primary metric
Get data for an Automated ML run
Retrieve the best model
Use Hyperdrive to tune hyperparameters
Select a sampling method
Define the search space
Define the primary metric
Define early termination options
Find the model that has optimal hyperparameter values
Use model explainers to interpret models
Select a model interpreter
Generate feature importance data
Manage models
Register a trained model
Monitor model usage
Monitor data drift
Deploy and Consume Models (20-25%)
Create production compute targets
Consider security for deployed services
Evaluate compute options for deployment
Deploy a model as a service
Configure deployment settings
Consume a deployed service
Troubleshoot deployment container issues
Create a pipeline for batch inferencing
Publish a batch inferencing pipeline
Run a batch inferencing pipeline and obtain outputs
Publish a designer pipeline as a web service
Create a target compute resource
Configure an Inference pipeline
Consume a deployed endpoint
Some feedback from previous students,
"The instructor explained every concept smoothly and clearly. I'm an acountant without tech background nor excellent statistical knowledge. I do really appreciate these helpful on-hand labs and lectures. Passed the DP-100 in Dec 2020. This course really help."
"Cleared DP-100 today with the help of this course. I would say this is the one of the best course to get in depth knowledge about Azure machine learning and clear the DP-100 with ease. Thank you Jitesh and team for this wonderful tutorial which helped me clear the certification."
"The instructor explained math concept clearly. These math concepts are necessary as fundation of machine learning, and also are very helpful for studying DP-100 exam concepts. Passed DP-100."
I am committed to and invested in your success. I have always provided answers to all the questions and not a single question remains unanswered for more than a few days. The course is also regularly updated with newer features.
Learning data science and then further deploying Machine Learning Models have been difficult in the past. To make it easier, I have explained the concepts using very simple and day-to-day examples. Azure ML is Microsoft's way of democratizing Machine Learning. We will use this revolutionary tool to implement our models. Once learnt, you will be able to create and deploy machine learning models in less than an hour using Azure Machine Learning Studio.
Azure Machine Learning Studio is a great tool to learn to build advance models without writing a single line of code using simple drag and drop functionality. Azure Machine Learning (AzureML) is considered as a game changer in the domain of Data Science and Machine Learning.
This course has been designed keeping in mind entry level Data Scientists or no background in programming. This course will also help the data scientists to learn the AzureML tool. You can skip some of the initial lectures or run them at 2x speed, if you are already familiar with the concepts or basics of Machine Learning.
The course is very hands on and you will be able to develop your own advance models while learning,
Advance Data Processing methods
Statistical Analysis of the data using Azure Machine Learning Modules
MICE or Multiple Imputation By Chained Equation
SMOTE or Synthetic Minority Oversampling Technique
PCA; Principal Component Analysis
Two class and multiclass classifications
Logistic Regression
Decision Trees
Linear Regression
Support Vector Machine (SVM)
Understanding how to evaluate and score models
Detailed Explanation of input parameters to the models
How to choose the best model using Hyperparameter Tuning
Deploy your models as a webservice using Azure Machine Learning Studio
Cluster Analysis
K-Means Clustering
Feature selection using Filter-based as well as Fisher LDA of AzureML Studio
Recommendation system using one of the most powerful recommender of Azure Machine Learning
All the slides and reference material for offline reading
You will learn and master, all of the above even if you do not have any prior knowledge of programming.
This course is a complete Machine Learning course with basics covered. We will not only build the models but also explain various parameters of all those models and where we can apply them.
We would also look at
Steps for building an ML model.
Supervised and Unsupervised learning
Understanding the data and pre-processing
Different model types
The AzureML Cheat Sheet.
How to use Classification and Regression
What is clustering or cluster analysis
KDNuggets one of the leading forums on Data Science calls Azure Machine Learning as the next big thing in Machine Learning. It further goes on to say, "people without data science background can also build data models through drag-and-drop gestures and simple data flow diagrams."
Azure Machine Learning's library has many pre-built models that you can re-use as well as deploy them.
So, hit the enroll button and I will see you inside the course.
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