DP-100 Azure Data Scientist Associate Complete Exam Guide
DP-100 Azure Data Scientist Associate Complete Exam Guide, available at $74.99, has an average rating of 4.38, with 97 lectures, 2 quizzes, based on 433 reviews, and has 3189 subscribers.
You will learn about Everything you need to pass the DP-100 exam and receive the Azure Data Scientist Associate certification All learning objectives found in the DP-100 curriculum, through video lectures, demos, applications, and practice exams Learn and master Azure Machine Learning, a service by Microsoft that enables anyone to build, deploy, and manage Data Science and Machine Learning solutions Create a predictive service based on a model that you create, with a full end-to-end walkthrough Design and prepare a machine learning solution Explore data and train models Prepare a model for deployment Deploy and retrain a model This course is ideal for individuals who are Business Analysts who want to build, test, and deploy models quickly, especially if they want to create Data Science solutions and predictive services or Students who want to pass the DP-100 exam and receive the Azure Data Scientist Associate certification or Individuals who want to receive a formal certificate from Microsoft for their progress and achievement (useful for moving upwards and getting hired) or Users who want to create and deploy Data Science and Machine Learning solutions with no-code or Data Scientists who want a more streamlined approach to creating, deploying, and managing Machine Learning solutions and services or Data Scientists and Machine Learning Engineers who want to focus on what matters most, and want to automate the rest (algorithm and hyperparameter tuning, endpoint containerization) or Anyone who wants to learn Azure Machine Learning, a tool for building ML model services, from the most basic to the most advanced or Students who want to make a career in Data Science and Machine Learning It is particularly useful for Business Analysts who want to build, test, and deploy models quickly, especially if they want to create Data Science solutions and predictive services or Students who want to pass the DP-100 exam and receive the Azure Data Scientist Associate certification or Individuals who want to receive a formal certificate from Microsoft for their progress and achievement (useful for moving upwards and getting hired) or Users who want to create and deploy Data Science and Machine Learning solutions with no-code or Data Scientists who want a more streamlined approach to creating, deploying, and managing Machine Learning solutions and services or Data Scientists and Machine Learning Engineers who want to focus on what matters most, and want to automate the rest (algorithm and hyperparameter tuning, endpoint containerization) or Anyone who wants to learn Azure Machine Learning, a tool for building ML model services, from the most basic to the most advanced or Students who want to make a career in Data Science and Machine Learning.
Enroll now: DP-100 Azure Data Scientist Associate Complete Exam Guide
Summary
Title: DP-100 Azure Data Scientist Associate Complete Exam Guide
Price: $74.99
Average Rating: 4.38
Number of Lectures: 97
Number of Quizzes: 2
Number of Published Lectures: 97
Number of Published Quizzes: 2
Number of Curriculum Items: 99
Number of Published Curriculum Objects: 99
Number of Practice Tests: 2
Number of Published Practice Tests: 2
Original Price: $199.99
Quality Status: approved
Status: Live
What You Will Learn
- Everything you need to pass the DP-100 exam and receive the Azure Data Scientist Associate certification
- All learning objectives found in the DP-100 curriculum, through video lectures, demos, applications, and practice exams
- Learn and master Azure Machine Learning, a service by Microsoft that enables anyone to build, deploy, and manage Data Science and Machine Learning solutions
- Create a predictive service based on a model that you create, with a full end-to-end walkthrough
- Design and prepare a machine learning solution
- Explore data and train models
- Prepare a model for deployment
- Deploy and retrain a model
Who Should Attend
- Business Analysts who want to build, test, and deploy models quickly, especially if they want to create Data Science solutions and predictive services
- Students who want to pass the DP-100 exam and receive the Azure Data Scientist Associate certification
- Individuals who want to receive a formal certificate from Microsoft for their progress and achievement (useful for moving upwards and getting hired)
- Users who want to create and deploy Data Science and Machine Learning solutions with no-code
- Data Scientists who want a more streamlined approach to creating, deploying, and managing Machine Learning solutions and services
- Data Scientists and Machine Learning Engineers who want to focus on what matters most, and want to automate the rest (algorithm and hyperparameter tuning, endpoint containerization)
- Anyone who wants to learn Azure Machine Learning, a tool for building ML model services, from the most basic to the most advanced
- Students who want to make a career in Data Science and Machine Learning
Target Audiences
- Business Analysts who want to build, test, and deploy models quickly, especially if they want to create Data Science solutions and predictive services
- Students who want to pass the DP-100 exam and receive the Azure Data Scientist Associate certification
- Individuals who want to receive a formal certificate from Microsoft for their progress and achievement (useful for moving upwards and getting hired)
- Users who want to create and deploy Data Science and Machine Learning solutions with no-code
- Data Scientists who want a more streamlined approach to creating, deploying, and managing Machine Learning solutions and services
- Data Scientists and Machine Learning Engineers who want to focus on what matters most, and want to automate the rest (algorithm and hyperparameter tuning, endpoint containerization)
- Anyone who wants to learn Azure Machine Learning, a tool for building ML model services, from the most basic to the most advanced
- Students who want to make a career in Data Science and Machine Learning
Do you want to quickly build, deploy, and scale Data Science and Machine Learning solutions, without knowing any in-depth code, worrying about containers / endpoints, or coding data pipelines?
Do you want to learn and master Azure Machine Learning, an enterprise-grade service by Microsoft that gives you tools for the end-to-end machine learning lifecycle?
Do you want to build, deploy, and manage high quality models faster and with confidence?
Do you want to be certified from Microsoft, so that you can put it on your Resume/CV and showcase to potential employers that you know how to deploy Data Science solutions using Azure Machine Learning?
Do you want to pass the Microsoft DP 100 on the first try, and want one single complete resource that has everything you need for the DP-100 certification?
Then this is the course for you. Learn from over 15 hours of instructional content with video lectures, demos, real-life applications, and practice exams, with the only complete guide to everything you need to know to pass the DP-100 exam and receive your certification.
This course gives you all the training you need to pass – with detailed lectures, demos, and practice questions for each of the 62 learning objectives within the DP100 curriculum. This course gives you the structure you need to succeed – we go through each learning objective in sequential order, so that you are never lost.
This course is also for those students who want to learn Azure Machine Learning, and its underlying services. Along with the training required to pass the DP 100 certification, students master this tool.
DP-100 Designing and Implementing a Data Science Solution on Azure and Azure Data Scientist Associate certification is also called DP-100, DP100, and DP 100 certifications, and so these are used interchangeably.
What is the DP-100?
The DP-100 is a certification exam offered by Microsoft, that enables you to receive the Azure Data Scientist Associate certification. The exam covers how to design, build, and deploy a Machine Learning solution using Azure Machine Learning. The certification enables you to proves to employers and clients that you can build and operationalize Machine Learning and Data Science solutions and understand the core capabilities of the Azure Machine Learning. The exam format varies, but is most often 40-60 questions within about 2 hours. DP-100 is also referred to as DP 100 or DP100.
What is this course all about?
The purpose of this course is to prepare you for the DP 100 Designing and Implementing a Data Science Solution on Azure exam, so that you can pass it on the first try. It offers you dedicated video lectures, walk through demos, real-life applications, and practice exams to maximize your chances of success. This course covers 100% of the 62 learning objectives in Microsoft’s curriculum, and trains you to receive the certification on the first try.
What does the DP-100 cover?
The DP-100 covers how to use Azure Machine Learning to design and implement a Data Science and Machine Learning solution. Specifically, it covers how to design and prepare a Machine Learning solution, how to explore data and train models, how to prepare a model for deployment, and how to deploy and retrain a model. The curriculum covers everything about Azure Machine Learning Studio, in both the designer (no-code) workflow, the Automated ML workflow, and the coding (Python SDK, Notebooks) workflow.
What are the prerequisites of taking the DP-100?
Candidates should have subject matter expertise in applying data science and ML to implement and run ML workloads.
What is Azure Machine Learning?
Azure Machine Learning (or Azure ML for short) is a service from Microsoft to create, validate, and deploy Machine Learning and Data Science solutions. It covers everything you would need, from data preparation, to model training and validation, to endpoint model management, and monitoring / model management. It makes it easier for anyone to deploy Data Science and Machine Learning solutions, especially if you are not familiar with Data Science algorithms, container management, compute monitoring, etc. – it does that all for you. Azure Machine Learning lets Data Scientists focus on what matters most, and automates the rest. It gives the power of Data Science and Machine Learning to anyone.
Why is Azure Machine Learning so important?
Azure Machine Learning is Microsoft’s way to democratize Machine Learning and Data Science to the everyday user.
Why should you get the DP-100 certification?
The DP-100 certification from Microsoft is a recognized way to prove that you understand and can use Azure Machine Learning to build business critical machine learning models at scale. You can use the knowledge you learn in the DP-100 course to create impact in your organization, but deploying predictive services and endpoints. You can add it to your resume to significantly boost your chances of employment. Most employers even cover the cost of the training and exam because of the value that this certification provides. In certain countries, you can even receive ACE college credits.
Why choose this course?
-
Complete guide – this is the 100% complete, start to finish zero to hero training guide to passing the DP 100 exam. It includes lectures, demos, study guides, practice exams, and more. It is the only resource that you will ever need to ace the exam. It contains over 15 hours of instructional content!
-
Full coverage – we go through Microsoft’s curriculum one-by-one and cover all aspects of each of the 62 different learning objectives. This means no surprises on the exam, and it ensures that you are best prepared to pass the DP-100 exam on the first try.
-
Structured to succeed – the course mirrors Microsoft’s DP 100 curriculum exactly. Each of the 62 learning objectives has a combination of a PDF study guide, full video lectures, full video walk through demos, and application.
-
Instructional and applicable – we not only go through important concepts, but also apply them as we are building our application so that we can solidify them. This is not only a walkthrough of the all the features and theoretical concepts, but a DP-100 course that actually builds applications with you
-
Practice exams – this course contains practice exams with questions that exactly mirror the types of questions found on the DP-100 exam. Use them to validate your knowledge and find weaker areas where you need to review.
-
Step by step – each learning objective within Microsoft’s DP 100 curriculum is covered in order, step by step. This ensures that you never get lost in the course.
-
Teacher response – if there’s anything else you would like to learn, or if there’s something you cannot figure out, I’m here for you! Look at the ways to reach out video
-
Community – when you enroll in this course, you join a DP100 community full of learners just like you
-
Master a new tool – Learn Azure Machine Learning, from basic no-code designer tools to fully customized code deployments using Python SDK
Course overview theory
The course follows exactly according to DP100 curriculum, based on 62 learning objectives (LO) that Microsoft has defined. Everything in this course is made to maximize your chances of passing the exam. For each learning objective, the course offers a combination of guided lecture videos, walk-through demos, and application. We then end with practice exams.
Course overview
Introduction – learn about the DP 100 exam and how best to succeed
Environment Setup – set up an Azure account so you can follow along, and review the curriculum
LO1: Design and prepare a machine learning solution (20–25%)
LO2: Explore data and train models (35–40%)
LO3: Prepare a model for deployment (20–25%)
LO4: Deploy and retrain a model (10–15%)
Practice Exams – practice what you have learned to validate your knowledge
Conclusion – take your exam, earn your certification, and next steps
Icons by Freepik / Flaticon. Music by Bensound.
Course Curriculum
Chapter 1: Introduction
Lecture 1: What is DP-100?
Lecture 2: Course tips
Lecture 3: What are the objectives of this course?
Lecture 4: Course roadmap
Lecture 5: Learning objectives
Lecture 6: Instructor overview
Lecture 7: Ways to reach out
Lecture 8: Keys to success
Lecture 9: Leave a rating
Lecture 10: Watch in 1080p
Chapter 2: Environment Setup
Lecture 1: Create an Azure account
Lecture 2: Cost management in Azure
Lecture 3: Reference material
Lecture 4: Resources and prerequisites
Lecture 5: Helpful advice from students
Chapter 3: LO1: Design and prepare a machine learning solution (20–25%)
Lecture 1: 1-1-1 Determine the appropriate compute specifications
Lecture 2: 1-1-2 Model deployment requirements
Lecture 3: 1-1-3 Choice to development approach to build or train a model
Lecture 4: 1-2-1 Create an Azure Machine Learning workspace
Lecture 5: 1-2-1 Walkthrough of workspace
Lecture 6: 1-2-1 Resources created by ML workspace
Lecture 7: 1-2-1 How to access Azure ML tools
Lecture 8: 1-2-1 Create a compute instance
Lecture 9: 1-2-1 Run python SDK import statements
Lecture 10: 1-2-1 Stopping compute instance
Lecture 11: 1-3-1 Create Azure Data resources
Lecture 12: 1-3-2 Create and register a datastore
Lecture 13: 1-3-2 Example of transfering files to datastore
Lecture 14: 1-3-3 Create a data asset
Lecture 15: 1-3-3 Register a data asset through SDK
Lecture 16: 1-3-3 Register and consume data assets through SDK
Chapter 4: LO2: Explore data and train models (35–40%)
Lecture 1: 2-1-1 Load and transform data
Lecture 2: 2-1-2 Analyze data using Azure Data Explorer 1
Lecture 3: 2-1-2 Analyze data using Azure Data Explorer 2
Lecture 4: 2-1-2 Use profile mechanics to explore data
Lecture 5: 2-2-1 Create a training pipeline introduction
Lecture 6: 2-2-2 Consume data assets into the designer
Lecture 7: 2-2-3 Use data preparation components in designer
Lecture 8: 2-2-3 Training model and scoring components in designer
Lecture 9: 2-2-3 Evaluating trained model components in designer
Lecture 10: 2-2-3 Evaluation results defined
Lecture 11: 2-2-4 Context and use-case for custom code components
Lecture 12: 2-2-4 Adding custom python code in custom components in designer
Lecture 13: 2-3-1 Automated ML introduction
Lecture 14: 2-3-1 Automated ML regression and tabular data example 1
Lecture 15: 2-3-1 Automated ML regression and tabular data example 2
Lecture 16: 2-3-1 Automated ML regression and tabular data example 3
Lecture 17: 2-3-2 Automated ML natural language processing NLP example
Lecture 18: 2-3-4 Training options in Automated ML, including preprocessing and algorithms
Lecture 19: 2-4-1 Develop code using a compute instance
Lecture 20: 2-4-2 Consume data in a notebook
Lecture 21: 2-4-3 How to run an experiment
Lecture 22: 2-4-4 2-4-5 Evaluate and train a model using Python SDK 1
Lecture 23: 2-4-4 2-4-5 Evaluate and train a model using Python SDK 2
Lecture 24: 2-4-4 2-4-5 Evaluate and train a model using Python SDK 3
Lecture 25: 2-4-4 2-4-5 Run experiments and measure impact on evaluation metrics
Chapter 5: LO3: Prepare a model for deployment (20–25%)
Lecture 1: 3-1-1 Introduction to model training scripts
Lecture 2: 3-1-1 3-1-3 3-1-4 3-1-6 3-1-7 Run model training script end-to-end 1
Lecture 3: 3-1-1 3-1-3 3-1-4 3-1-6 3-1-7 Run model training script end-to-end 2
Lecture 4: 3-1-1 3-1-3 3-1-4 3-1-6 3-1-7 Run model training script end-to-end 3
Lecture 5: 3-1-1 3-1-3 3-1-4 3-1-6 3-1-7 Run model training script end-to-end 4
Lecture 6: 3-1-1 3-1-3 3-1-4 3-1-6 3-1-7 Run model training script end-to-end 5
Lecture 7: 3-1-8 3-1-2 Configure compute and set up script parameters set up
Lecture 8: 3-1-8 3-1-2 Using script parameters
Lecture 9: 3-1-8 3-1-2 Cycling through script parameters
Lecture 10: 3-1-8 3-1-2 Testing different script parameters
Lecture 11: 3-1-8 3-1-2 Configure compute for a job run
Lecture 12: 3-1-8 3-1-2 Adding compute to an environment
Lecture 13: 3-1-8 3-1-2 Deleting a compute through Python SDK
Lecture 14: 3-2-1 Introduction to pipelines
Lecture 15: 3-2-1 Pipeline context
Lecture 16: 3-2-1 Create a prepare data step in pipeline
Lecture 17: 3-2-1 Create a train model step in pipeline
Lecture 18: 3-2-1 Fix errors in pipeline
Lecture 19: 3-2-1 Create a pipeline run script
Lecture 20: 3-2-2 Pass data between steps in pipeline
Lecture 21: 3-2-3 Run the pipeline
Lecture 22: 3-2-3 Other ways to run the pipeline
Lecture 23: 3-2-3 Publishing the endpoint
Lecture 24: 3-2-3 Create a pipeline endpoint
Lecture 25: 3-2-3 Call an endpoint 1
Lecture 26: 3-2-3 Call an endpoint 2
Lecture 27: 3-2-4 Monitor pipeline runs
Chapter 6: LO4: Deploy and retrain a model (10–15%)
Lecture 1: 4-1-1 4-1-3 4-1-5 Introduction to deploying model
Lecture 2: 4-1-1 4-1-3 4-1-5 Create a model to be deployed
Lecture 3: 4-1-1 4-1-3 4-1-5 Configure model for a real-time deployment
Lecture 4: 4-1-1 4-1-3 4-1-5 Removing the dependent variable
Lecture 5: 4-1-1 4-1-3 4-1-5 Deploy a model to a real-time endpoint
Lecture 6: 4-1-1 4-1-3 4-1-5 Test a real-time deployed service
Lecture 7: 4-1-1 4-1-3 4-1-5 Consume the deployed model in endpoint
Lecture 8: 4-1-1 4-1-3 4-1-5 Make modifications to deployed model
Lecture 9: 4-1-1 4-1-3 4-1-5 Redeploy a model
Chapter 7: Practice Exams
Instructors
-
Henry Habib
Top Instructor with 200K Students | Gen AI No-Code Master
Rating Distribution
- 1 stars: 10 votes
- 2 stars: 15 votes
- 3 stars: 39 votes
- 4 stars: 170 votes
- 5 stars: 199 votes
Frequently Asked Questions
How long do I have access to the course materials?
You can view and review the lecture materials indefinitely, like an on-demand channel.
Can I take my courses with me wherever I go?
Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!
You may also like
- Top 10 Video Editing Courses to Learn in November 2024
- Top 10 Music Production Courses to Learn in November 2024
- Top 10 Animation Courses to Learn in November 2024
- Top 10 Digital Illustration Courses to Learn in November 2024
- Top 10 Renewable Energy Courses to Learn in November 2024
- Top 10 Sustainable Living Courses to Learn in November 2024
- Top 10 Ethical AI Courses to Learn in November 2024
- Top 10 Cybersecurity Fundamentals Courses to Learn in November 2024
- Top 10 Smart Home Technology Courses to Learn in November 2024
- Top 10 Holistic Health Courses to Learn in November 2024
- Top 10 Nutrition And Diet Planning Courses to Learn in November 2024
- Top 10 Yoga Instruction Courses to Learn in November 2024
- Top 10 Stress Management Courses to Learn in November 2024
- Top 10 Mindfulness Meditation Courses to Learn in November 2024
- Top 10 Life Coaching Courses to Learn in November 2024
- Top 10 Career Development Courses to Learn in November 2024
- Top 10 Relationship Building Courses to Learn in November 2024
- Top 10 Parenting Skills Courses to Learn in November 2024
- Top 10 Home Improvement Courses to Learn in November 2024
- Top 10 Gardening Courses to Learn in November 2024