【評判】Practice Exams: AWS Machine Learning Engineer Associate Cert


  • Practice Exams: AWS Machine Learning Engineer Associate Cert
  • Practice Exams: AWS Machine Learning Engineer Associate Certで学習できる内容
    本コースの特徴
  • Practice Exams: AWS Machine Learning Engineer Associate Certを受講した感想の一覧
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講座情報

  • ・講師名:Stephane Maarek | AWS Certified Cloud Practitioner,Solutions Architect,Developer(詳しい経歴はこちら)
  • ・作成日:2024-08-21
  • ・レクチャー数:0

    レビュー数

  • ・週間:0記事
  • ・月間:1記事
  • ・年間:1記事
  • ・全期間:1記事
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学習内容

Guaranteed chance to pass the exam if you score 90%+ on each practice exam
Ace your AWS Certified Machine Learning Engineer - Associate (MLA-C01) exam
Practice with high quality practice exams alongside detailed explanation to learn concepts
The MLA-C01 practice exams have been written from scratch

詳細

Preparing for AWS Certified Machine Learning Engineer - Associate (MLA-C01)? This is THE practice exams course to give you the winning edge.

These practice exams have been co-authored by Stephane Maarek and Abhishek Singh who bring their collective experience of passing 18 AWS Certifications to the table.

The tone and tenor of the questions mimic the real exam. Along with the detailed description and “exam alert” provided within the explanations, we have also extensively referenced AWS documentation to get you up to speed on all domain areas being tested for the MLA-C01 exam.

We want you to think of this course as the final pit-stop so that you can cross the winning line with absolute confidence and get AWS Certified! Trust our process, you are in good hands.

All questions have been written from scratch! More questions are being added based on the student feedback!

You will get a warm-up practice exam and ONE high-quality FULL-LENGTH practice exam to be ready for your certification.


Quality speaks for itself:

SAMPLE QUESTION:

You are working as a data scientist at a financial services company tasked with developing a credit risk prediction model. After experimenting with several models, including logistic regression, decision trees, and support vector machines, you find that none of the models individually achieves the desired level of accuracy and robustness. Your goal is to improve overall model performance by combining these models in a way that leverages their strengths while minimizing their weaknesses.

Given the scenario, which of the following approaches is the MOST LIKELY to improve the model’s performance?


1. Use a simple voting ensemble, where the final prediction is based on the majority vote from the logistic regression, decision tree, and support vector machine models

2. Implement boosting by training sequentially different types of models - logistic regression, decision trees, and support vector machines - where each new model corrects the errors of the previous ones

3. Apply stacking, where the predictions from logistic regression, decision trees, and support vector machines are used as inputs to a meta-model, such as a random forest, to make the final prediction

4. Use bagging, where different types of models - logistic regression, decision trees, and support vector machines - are trained on different subsets of the data, and their predictions are averaged to produce the final result


What's your guess? Scroll below for the answer.














Correct: 3

Explanation:

Correct option:

Apply stacking, where the predictions from logistic regression, decision trees, and support vector machines are used as inputs to a meta-model, such as a random forest, to make the final prediction

In bagging, data scientists improve the accuracy of weak learners by training several of them at once on multiple datasets. In contrast, boosting trains weak learners one after another.

Stacking involves training a meta-model on the predictions of several base models. This approach can significantly improve performance because the meta-model learns to leverage the strengths of each base model while compensating for their weaknesses.

For the given use case, leveraging a meta-model like a random forest can help capture the relationships between the predictions of logistic regression, decision trees, and support vector machines.


<Solution reference image>

<via - reference link>


Incorrect options:

Use a simple voting ensemble, where the final prediction is based on the majority vote from the logistic regression, decision tree, and support vector machine models - A voting ensemble is a straightforward way to combine models, and it can improve performance. However, it typically does not capture the complex interactions between models as effectively as stacking.

Implement boosting by training sequentially different types of models - logistic regression, decision trees, and support vector machines - where each new model corrects the errors of the previous ones - Boosting is a powerful technique for improving model performance by training models sequentially, where each model focuses on correcting the errors of the previous one. However, it typically involves the same base model, such as decision trees (e.g., XGBoost), rather than combining different types of models.

Use bagging, where different types of models - logistic regression, decision trees, and support vector machines - are trained on different subsets of the data, and their predictions are averaged to produce the final result - Bagging, like boosting, is effective for reducing variance and improving the stability of models, particularly for high-variance models like decision trees. However, it usually involves training multiple instances of the same model type (e.g., decision trees in random forests) rather than combining different types of models.


<With multiple reference links from AWS documentation>


Instructor

My name is Stéphane Maarek, I am passionate about Cloud Computing, and I will be your instructor in this course. I teach about AWS certifications, focusing on helping my students improve their professional proficiencies in AWS.

I have already taught 2,500,000+ students and gotten 800,000+ reviews throughout my career in designing and delivering these certifications and courses!

I'm delighted to welcome Abhishek Singh as my co-instructor for these practice exams!



Welcome to the best practice exams to help you prepare for your AWS Certified Machine Learning Engineer - Associate exam.

  • You can retake the exams as many times as you want

  • This is a huge original question bank

  • You get support from instructors if you have questions

  • Each question has a detailed explanation

  • Mobile-compatible with the Udemy app

  • 30-days money-back guarantee if you're not satisfied

We hope that by now you're convinced! And there are a lot more questions inside the course.

Happy learning and best of luck for your AWS Certified Machine Learning Engineer - Associate exam!


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レビューの一覧

 ・AWS 新資格 Machine Learning Engineer - Associate(MLA-C01)合格体験記[2024-12-29に投稿]

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