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[Practice Exams] AWS Certified AI Practitioner - AIF-C01

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  • 61,862 Students
  • Updated 12/2024
4.6
(6,527 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
0 Hour(s) 0 Minute(s)
Language
English
Taught by
Stephane Maarek | AWS Certified Cloud Practitioner,Solutions Architect,Developer, Abhishek Singh
Rating
4.6
(6,527 Ratings)
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Course Overview

[Practice Exams] AWS Certified AI Practitioner - AIF-C01

Prepare the AWS Certified AI Practitioner AIF-C01. 260 unique high-quality test questions with detailed explanations!

Preparing for AWS Certified AI Practitioner AIF-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 20 AWS Certifications to the table.

Why Serious Learners Choose These Practice Exams

  • Human-crafted, exam-aware questions backed by real AWS expertise
    Every item is designed by an instructor with deep, hands-on AWS experience and insight into how AWS actually tests concepts, not mass-generated by generic AI tools.

  • Authentic exam feel with blueprint-aligned difficulty and distractors
    Questions mirror the tone, complexity, and trap patterns used in actual certification exams, helping learners build confidence under realistic conditions.

  • Enhanced with diagrams, flows, and AWS-doc-based explanations
    Answers include visually rich explanations, custom diagrams, and carefully written descriptions distilled from official AWS documentation.

  • Updated to reflect real-world patterns and the latest AWS services
    Content stays aligned with how AWS evolves its exams, focusing on the topics and service combinations most likely to appear in current and upcoming versions.

  • Designed to build actual problem-solving skill, not just memorization
    Scenarios train reasoning across architectures, security, data, and AI patterns, preparing learners to think like AI Practitioners instead of guessing. Do not just ace the exam, become a stronger AWS Professional.

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.


You will get FOUR high-quality FULL-LENGTH practice exams to be ready for your certification


Quality speaks for itself:

SAMPLE QUESTION:

Which of the following are valid model customization methods for Amazon Bedrock? (Select two)

1. Continued Pre-training

2. Fine-tuning

3. Retrieval Augmented Generation (RAG)

4. Zero-shot prompting

5. Chain-of-thought prompting


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
















Correct: 1,2

Explanation:

Correct options:

Model customization involves further training and changing the weights of the model to enhance its performance. You can use continued pre-training or fine-tuning for model customization in Amazon Bedrock.

Continued Pre-training

In the continued pre-training process,  you provide unlabeled data to pre-train a foundation model by familiarizing it with certain types of inputs. You can provide data from specific topics to expose a model to those areas. The Continued Pre-training process will tweak the model parameters to accommodate the input data and improve its domain knowledge.

For example, you can train a model with private data, such as business documents, that are not publicly available for training large language models. Additionally, you can continue to improve the model by retraining the model with more unlabeled data as it becomes available.

Fine-tuning

While fine-tuning a model, you provide labeled data to train a model to improve performance on specific tasks. By providing a training dataset of labeled examples, the model learns to associate what types of outputs should be generated for certain types of inputs. The model parameters are adjusted in the process and the model's performance is improved for the tasks represented by the training dataset.


Model customization - reference image

via - reference link


Benefits of model customization - reference image

via - reference link


Incorrect options:

Retrieval Augmented Generation (RAG)

Retrieval Augmented Generation (RAG) allows you to customize a model’s responses when you want the model to consider new knowledge or up-to-date information. When your data changes frequently, like inventory or pricing, it’s not practical to fine-tune and update the model while it’s serving user queries. To equip the FM with up-to-date proprietary information, organizations turn to RAG, a technique that involves fetching data from company data sources and enriching the prompt with that data to deliver more relevant and accurate responses. RAG is not a model customization method.


Zero-shot prompting

Chain-of-thought prompting

Prompt engineering is the practice of carefully designing prompts to efficiently tap into the capabilities of FMs. It involves the use of prompts, which are short pieces of text that guide the model to generate more accurate and relevant responses. With prompt engineering, you can improve the performance of FMs and make them more effective for a variety of applications. Prompt engineering has techniques such as zero-shot and few-shot prompting, which rapidly adapts FMs to new tasks with just a few examples, and chain-of-thought prompting, which breaks down complex reasoning into intermediate steps.

Prompt engineering is not a model customization method. Therefore, both these options are incorrect.


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 AI Practitioner 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 AI Practitioner exam!

Course Content

  • 1 section(s)
  • Section 1 Practice Tests

What You’ll Learn

  • Guaranteed chance to pass the exam if you score 90%+ on each practice exam
  • Ace your AWS Certified AI Practitioner (AIF-C01) exam
  • Practice with high quality practice exams alongside detailed explanation to learn concepts
  • The AIF-C01 practice exams have been written from scratch
  • Perfect companion to the "Ultimate AWS Certified AI Practitioner" course by Stephane Maarek


Reviews

  • W
    Won K Hong
    5.0

    I passed the exam today, and these practice tests were a major part of my preparation, in addition to Stephane's course and official practice tests from aws-Thank you Stephane & Abhishek!!

  • k
    kishore Kishore
    5.0

    Very good explanation of all the topics. After following the course I was able to clear most of the practice exams with minimum of 80%.

  • N
    Niraj Kanti Samal
    5.0

    Decent questions with proper explanations. Tried both Practice mode and Exam mode . Pretty satisfied with the course structure.

  • C
    Chris Eberl
    1.0

    Be aware that questions in the real exam are completely different and answers, due to sometimes being single worded highly speculative, if you don't put weight in every single word of the very short answers. I passed, but will honestly say, I think it could've swayed either way. I used a lot of common sense, but I felt like prepping with these questions did not prepare me. This is not, because the course materials aren't great, but they are simply not accurate. I spent a lot of time on fundamental differences between self-supervised, supervised and unsupervised learning and none of it came up. No Groundtruth, no deepracer, no long example descriptions in the questions. This course now almost feels very off topic. I highly recommend revisiting this course and stress the creators to retake a cert to see for themselves.

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