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  • Exam Name: Using HPE AI and Machine Learning
  • Last Update: Dec 3, 2024
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HPE2-N69 Practice Exam Questions with Answers Using HPE AI and Machine Learning Certification

Question # 6

You are proposing an HPE Machine Learning Development Environment solution for a customer. On what do you base the license count?

A.

The number of servers in the cluster

B.

The number of agent GPUs

C.

The number of processor cores on agents

D.

The number of processor cores on all servers in the cluster

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Question # 7

What is a reason to use the best tit policy on an HPE Machine Learning Development Environment resource pool?

A.

Ensuring that all experiments receive their fair share of resources

B.

Minimizing costs in a cloud environment

C.

Equally distributing utilization across multiple agents

D.

Ensuring that the highest priority experiments obtain access to more resources

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Question # 8

What distinguishes deep learning (DL) from other forms of machine learning (ML)?

A.

Models based on neural networks with interconnected layers of nodes, including multiple hidden layers

B.

Models defined with Apache Spark rather than MapReduce

C.

Models that are trained through unsupervised, rather than supervised, training

D.

Models trained through multiple training processes implemented by different team members

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Question # 9

What is the role of a hidden layer in an artificial neural network (ANN)?

A.

It is responsible for passively reformatting data for use in the ANN.

B.

It is responsible for making the final decision about how to label a record, based on weighted input from preceding layers.

C.

It receives and weighs inputs from the preceding layer and produces outputs for the next layer.

D.

It does not play a role during the forward pass of data through the ANN, but it helps to optimize during the backward pass.

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Question # 10

Your cluster uses Amazon S3 to store checkpoints. You ran an experiment on an HPE Machine Learning Development Environment cluster, you want to find the location tor the best checkpoint created during the experiment. What can you do?

A.

In the experiment config that you used, look for the "bucket" field under "hyperparameters." This is the UUID for checkpoints.

B.

Use the "det experiment download -top-n I" command, referencing the experiment ID.

C.

In the Web Ul, go to the Task page and click the checkpoint task that has the experiment ID.

D.

Look for a "determined-checkpoint/" bucket within Amazon S3, referencing your experiment ID.

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Question # 11

Compared to Asynchronous Successive Halving Algorithm (ASHA), what is an advantage of Adaptive ASHA?

A.

Adaptive ASHA can handle hyperparameters related to neural architecture while ASHA cannot.

B.

ASHA selects hyperparameter configs entirely at random while Adaptive ASHA clones higher-performing configs.

C.

Adaptive ASHA can train more trials in certain amount of time, as compared to ASHA.

D.

Adaptive ASHA tries multiple exploration/exploitation tradeoffs oy running multiple Instances of ASHA.

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Question # 12

A customer mentions that the ML team wants to avoid overfitting models. What does this mean?

A.

The team wants to avoid wasting resources on training models with poorly selected hyperparameters.

B.

The team wants to spend less time on creating the code tor models and more time training models.

C.

The team wants to avoid training models to the point where they perform less well on new data.

D.

The team wants to spend less time figuring out which CPUs are available for training models.

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