Download Microsoft.DP-100.PassGuide.2019-11-16.48q.tqb

Vendor: Microsoft
Exam Code: DP-100
Exam Name: Designing and Implementing a Data Science Solution on Azure
Date: Nov 16, 2019
File Size: 1 MB

Demo Questions

Question 1
You are developing a hands-on workshop to introduce Docker for Windows to attendees. 
You need to ensure that workshop attendees can install Docker on their devices. 
Which two prerequisite components should attendees install on the devices? Each correct answer presents part of the solution. 
NOTE: Each correct selection is worth one point.
  1. Microsoft Hardware-Assisted Virtualization Detection Tool
  2. Kitematic
  3. BIOS-enabled virtualization
  4. VirtualBox
  5. Windows 10 64-bit Professional
Correct answer: CE
Explanation:
C: Make sure your Windows system supports Hardware Virtualization Technology and that virtualization is enabled.Ensure that hardware virtualization support is turned on in the BIOS settings. For example:    E: To run Docker, your machine must have a 64-bit operating system running Windows 7 or higher. References:https://docs.docker.com/toolbox/toolbox_install_windows/https://blogs.technet.microsoft.com/canitpro/2015/09/08/step-by-step-enabling-hyper-v-for-use-on-windows-10/
C: Make sure your Windows system supports Hardware Virtualization Technology and that virtualization is enabled.
Ensure that hardware virtualization support is turned on in the BIOS settings. For example: 
 
E: To run Docker, your machine must have a 64-bit operating system running Windows 7 or higher. 
References:
https://docs.docker.com/toolbox/toolbox_install_windows/
https://blogs.technet.microsoft.com/canitpro/2015/09/08/step-by-step-enabling-hyper-v-for-use-on-windows-10/
Question 2
Your team is building a data engineering and data science development environment. 
The environment must support the following requirements:
  • support Python and Scala 
  • compose data storage, movement, and processing services into automated data pipelines 
  • the same tool should be used for the orchestration of both data engineering and data science 
  • support workload isolation and interactive workloads 
  • enable scaling across a cluster of machines 
You need to create the environment. 
What should you do?
  1. Build the environment in Apache Hive for HDInsight and use Azure Data Factory for orchestration.
  2. Build the environment in Azure Databricks and use Azure Data Factory for orchestration.
  3. Build the environment in Apache Spark for HDInsight and use Azure Container Instances for orchestration.
  4. Build the environment in Azure Databricks and use Azure Container Instances for orchestration.
Correct answer: B
Explanation:
In Azure Databricks, we can create two different types of clusters. Standard, these are the default clusters and can be used with Python, R, Scala and SQL High-concurrency Azure Databricks is fully integrated with Azure Data Factory. Incorrect Answers:D: Azure Container Instances is good for development or testing. Not suitable for production workloads.References:https://docs.microsoft.com/en-us/azure/architecture/data-guide/technology-choices/data-science-and-machine-learning
In Azure Databricks, we can create two different types of clusters. 
  • Standard, these are the default clusters and can be used with Python, R, Scala and SQL 
  • High-concurrency 
Azure Databricks is fully integrated with Azure Data Factory. 
Incorrect Answers:
D: Azure Container Instances is good for development or testing. Not suitable for production workloads.
References:
https://docs.microsoft.com/en-us/azure/architecture/data-guide/technology-choices/data-science-and-machine-learning
Question 3
You plan to build a team data science environment. Data for training models in machine learning pipelines will be over 20 GB in size. 
You have the following requirements:
  • Models must be built using Caffe2 or Chainer frameworks. 
  • Data scientists must be able to use a data science environment to build the machine learning pipelines and train models on their personal devices in both connected and disconnected network environments. 
Personal devices must support updating machine learning pipelines when connected to a network. 
You need to select a data science environment. 
Which environment should you use?
  1. Azure Machine Learning Service
  2. Azure Machine Learning Studio
  3. Azure Databricks
  4. Azure Kubernetes Service (AKS)
Correct answer: A
Explanation:
The Data Science Virtual Machine (DSVM) is a customized VM image on Microsoft’s Azure cloud built specifically for doing data science. Caffe2 and Chainer are supported by DSVM. DSVM integrates with Azure Machine Learning. Incorrect Answers:B: Use Machine Learning Studio when you want to experiment with machine learning models quickly and easily, and the built-in machine learning algorithms are sufficient for your solutions.References:https://docs.microsoft.com/en-us/azure/machine-learning/data-science-virtual-machine/overview
The Data Science Virtual Machine (DSVM) is a customized VM image on Microsoft’s Azure cloud built specifically for doing data science. Caffe2 and Chainer are supported by DSVM. 
DSVM integrates with Azure Machine Learning. 
Incorrect Answers:
B: Use Machine Learning Studio when you want to experiment with machine learning models quickly and easily, and the built-in machine learning algorithms are sufficient for your solutions.
References:
https://docs.microsoft.com/en-us/azure/machine-learning/data-science-virtual-machine/overview
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