star_border star_border star_border star_border star_border

Exam AI-900: Microsoft Azure AI Fundamentals

This exam is an opportunity for you to demonstrate knowledge of machine learning and AI concepts and related Microsoft Azure services. As a candidate for this exam, you should have familiarity with Exam AI-900’s self-paced or instructor-led learning material.

This exam is intended for you if you have both technical and non-technical backgrounds. Data science and software engineering experience are not required. However, you would benefit from having awareness of:

  • Cloud basics

  • Client-server applications

You can use Azure AI Fundamentals to prepare for other Azure role-based certifications like Azure Data Scientist Associate or Azure AI Engineer Associate, but it’s not a prerequisite for any of them.


Skills measured

  • The English language version of this exam will be updated on November 2, 2023. Review the study guide linked in the preceding “Tip” box for details about the skills measured and upcoming changes.

  • Describe Artificial Intelligence workloads and considerations (20–25%)

  • Describe fundamental principles of machine learning on Azure (25–30%)

  • Describe features of computer vision workloads on Azure (15–20%)

  • Describe features of Natural Language Processing (NLP) workloads on Azure (25–30%)

Tips-

  • Review the AI-900 study guide to help you prepare for the exam

  • Demo the exam experience by visiting our exam sandbox

star_border star_border star_border star_border star_border

Exam AI-900: Microsoft Azure AI Fundamentals

This exam is an opportunity for you to demonstrate knowledge of machine learning and AI concepts and related Microsoft Azure services. As a candidate for this exam, you should have familiarity with Exam AI-900’s self-paced or instructor-led learning material.

This exam is intended for you if you have both technical and non-technical backgrounds. Data science and software engineering experience are not required. However, you would benefit from having awareness of:

  • Cloud basics

  • Client-server applications

You can use Azure AI Fundamentals to prepare for other Azure role-based certifications like Azure Data Scientist Associate or Azure AI Engineer Associate, but it’s not a prerequisite for any of them.


Skills measured

  • The English language version of this exam will be updated on November 2, 2023. Review the study guide linked in the preceding “Tip” box for details about the skills measured and upcoming changes.

  • Describe Artificial Intelligence workloads and considerations (20–25%)

  • Describe fundamental principles of machine learning on Azure (25–30%)

  • Describe features of computer vision workloads on Azure (15–20%)

  • Describe features of Natural Language Processing (NLP) workloads on Azure (25–30%)

Tips-

  • Review the AI-900 study guide to help you prepare for the exam

  • Demo the exam experience by visiting our exam sandbox

starstarstarstarstar

Unlock Your Future as a Software Architect: Master UML and Design Software with Ease

Don't Just Code—Command! I'll Transform You from Developer to Architect with UML Expertise. Make Software Design Your Second Nature."

AI in UML: Discover the power of generative AI in automating and enhancing UML diagram creation.

Are you a software developer looking to escalate your career and transition into software architecture? Look no further. This course is designed to bridge that gap, transforming you from a skilled developer into a visionary software architect.

Coding is Just the Start: Soar to Architect Status with UML Mastery! Design, Communicate, and Lead Projects with Unmatched Clarity

Why This Course Is Essential:

As software development evolves, there's an increasing need for professionals who can see the big picture, create robust system designs, and lead teams effectively. Understanding Unified Modeling Language (UML) is crucial for anyone aspiring to become a software architect. UML serves as the common language that fosters clear communication, collaboration, and a shared understanding among team members and stakeholders.

Skyrocket Your Career from Coder to Architect: Master UML and Design Systems that Wow Stakeholders. Be the Architect Everyone Needs!

What You'll Learn:

  • Master UML: Grasp the essential UML diagrams and how they contribute to a project’s success.

  • Transitioning Skills: Practical steps to shift from a software developer to a software architect role.

  • Team Leadership: How to communicate effectively with stakeholders and lead a development team.

  • Design Principles: Master the art of designing robust and scalable software architectures.

Course Highlights:

  • Hands-on UML projects

  • Real-world case studies

  • A special 15-minute video on leveraging generative AI for UML diagramming

  • Interactive quizzes and assignments

  • Expert-led video lectures

  • Peer discussions and network opportunities

Who This Course Is For:

This course is ideal for software developers, junior architects, project managers, technical leads, software analysts, and anyone interested in progressing into software architecture roles.

Elevate Your Code to Architecture: Master UML and Become the Software Architect You're Meant to Be! Cut Through Complexity and Design Like a Pro.

Prerequisites:

  • Basic to intermediate programming skills

  • Familiarity with software development lifecycles

  • A willing mind and eagerness to learn

Course Outcomes:

  • Proficient understanding of UML

  • Understanding of how AI can streamline and innovate UML diagram generation

  • Ability to design complex software systems

  • Enhanced leadership and communication skills

  • Certificate of Completion

Enroll today to transition from coding tasks to leading architectural visions and designing software with ease!

Unlock Architect-Level Design Skills: I Fast-Track Developers into Master Architects with UML—Turn Complex Systems into Child's Play!

Quantifiable End Outcomes:

  1. UML Proficiency: Ability to create and interpret at least 10 different types of UML diagrams accurately.

  2. Design Skills: Demonstrated ability to design a medium-complexity software system, evidenced by a capstone project or a set of smaller projects throughout the course.

  3. Communication Metrics: Gain the skill to effectively communicate complex system designs to both technical and non-technical stakeholders, evidenced by peer and instructor assessments.

  4. Leadership Ability: Lead at least one team project or simulation during the course, applying best practices in workflow management and team communication.

  5. Exam Scores: Achieve an average score of 85% or above on all course assessments, quizzes, and final exams focused on UML and software architecture principles.

starstarstarstarstar

Unlock Your Future as a Software Architect: Master UML and Design Software with Ease

Don't Just Code—Command! I'll Transform You from Developer to Architect with UML Expertise. Make Software Design Your Second Nature."

AI in UML: Discover the power of generative AI in automating and enhancing UML diagram creation.

Are you a software developer looking to escalate your career and transition into software architecture? Look no further. This course is designed to bridge that gap, transforming you from a skilled developer into a visionary software architect.

Coding is Just the Start: Soar to Architect Status with UML Mastery! Design, Communicate, and Lead Projects with Unmatched Clarity

Why This Course Is Essential:

As software development evolves, there's an increasing need for professionals who can see the big picture, create robust system designs, and lead teams effectively. Understanding Unified Modeling Language (UML) is crucial for anyone aspiring to become a software architect. UML serves as the common language that fosters clear communication, collaboration, and a shared understanding among team members and stakeholders.

Skyrocket Your Career from Coder to Architect: Master UML and Design Systems that Wow Stakeholders. Be the Architect Everyone Needs!

What You'll Learn:

  • Master UML: Grasp the essential UML diagrams and how they contribute to a project’s success.

  • Transitioning Skills: Practical steps to shift from a software developer to a software architect role.

  • Team Leadership: How to communicate effectively with stakeholders and lead a development team.

  • Design Principles: Master the art of designing robust and scalable software architectures.

Course Highlights:

  • Hands-on UML projects

  • Real-world case studies

  • A special 15-minute video on leveraging generative AI for UML diagramming

  • Interactive quizzes and assignments

  • Expert-led video lectures

  • Peer discussions and network opportunities

Who This Course Is For:

This course is ideal for software developers, junior architects, project managers, technical leads, software analysts, and anyone interested in progressing into software architecture roles.

Elevate Your Code to Architecture: Master UML and Become the Software Architect You're Meant to Be! Cut Through Complexity and Design Like a Pro.

Prerequisites:

  • Basic to intermediate programming skills

  • Familiarity with software development lifecycles

  • A willing mind and eagerness to learn

Course Outcomes:

  • Proficient understanding of UML

  • Understanding of how AI can streamline and innovate UML diagram generation

  • Ability to design complex software systems

  • Enhanced leadership and communication skills

  • Certificate of Completion

Enroll today to transition from coding tasks to leading architectural visions and designing software with ease!

Unlock Architect-Level Design Skills: I Fast-Track Developers into Master Architects with UML—Turn Complex Systems into Child's Play!

Quantifiable End Outcomes:

  1. UML Proficiency: Ability to create and interpret at least 10 different types of UML diagrams accurately.

  2. Design Skills: Demonstrated ability to design a medium-complexity software system, evidenced by a capstone project or a set of smaller projects throughout the course.

  3. Communication Metrics: Gain the skill to effectively communicate complex system designs to both technical and non-technical stakeholders, evidenced by peer and instructor assessments.

  4. Leadership Ability: Lead at least one team project or simulation during the course, applying best practices in workflow management and team communication.

  5. Exam Scores: Achieve an average score of 85% or above on all course assessments, quizzes, and final exams focused on UML and software architecture principles.

star_border star_border star_border star_border star_border

Welcome to the ultimate practice exams course designed to give you the winning edge in your journey to becoming Microsoft Azure AI Fundamentals - AI-900 certified!


Are you ready to pass the Microsoft Azure AI Fundamentals (AI-900) certification exam? Find out by testing yourself with this new offering on Udemy. Each of the 6 full practice tests in this set provides an entire exam’s worth of questions, enabling you to confirm your mastery of the topics and providing you with the confidence you’ll need to take your Microsoft Azure AI Fundamentals (AI-900) Certification exam.


The tests in this set are timed, so you’ll know when you’re taking more time than the official test allows, and at the end of the test, you’ll receive a personal breakdown of the questions you answered correctly and incorrectly to improve your knowledge and make you more prepared to pass the actual Microsoft exam.


AI-900 : Microsoft Azure AI Fundamentals Exam details :

  • Exam Name: Microsoft Certified - Azure AI Fundamentals

  • Exam Code: AI-900

  • Exam Price: $99 (USD)

  • Number of Questions: Maximum of 40-60 questions,

  • Type of Questions: Multiple Choice Questions (single and multiple response), drag and drops and performance-based,

  • Length of Test: 60 Minutes. The exam is available in English and Japanese languages.

  • Passing Score: 700 / 1000

  • Languages : English, Japanese, Korean, and Simplified Chinese

  • Schedule Exam : Pearson VUE


AI-900 : Microsoft Azure AI Fundamentals Certification Exams skill questions:

Skill Measurement Exam Topics:-

  • Describe Artificial Intelligence workloads and considerations (20–25%)

  • Describe fundamental principles of machine learning on Azure (25–30%)

  • Describe features of computer vision workloads on Azure (15–20%)

  • Describe features of Natural Language Processing (NLP) workloads on Azure (25–30%)


##) Describe Artificial Intelligence workloads and considerations (20–25%)

Identify features of common AI workloads

  • Identify features of anomaly detection workloads

  • Identify computer vision workloads

  • Identify natural language processing workloads

  • Identify knowledge mining workloads

Identify guiding principles for responsible AI

  • Describe considerations for fairness in an AI solution

  • Describe considerations for reliability and safety in an AI solution

  • Describe considerations for privacy and security in an AI solution

  • Describe considerations for inclusiveness in an AI solution

  • Describe considerations for transparency in an AI solution

  • Describe considerations for accountability in an AI solution


#) Describe fundamental principles of machine learning on Azure (25–30%)

Identify common machine learning types

  • Identify regression machine learning scenarios

  • Identify classification machine learning scenarios

  • Identify clustering machine learning scenarios

Describe core machine learning concepts

  • Identify features and labels in a dataset for machine learning

  • Describe how training and validation datasets are used in machine learning

Describe capabilities of visual tools in Azure Machine Learning Studio

  • Automated machine learning

  • Azure Machine Learning designer


#) Describe features of computer vision workloads on Azure (15–20%)

Identify common types of computer vision solution

  • Identify features of image classification solutions

  • Identify features of object detection solutions

  • Identify features of optical character recognition solutions

  • Identify features of facial detection and facial analysis solutions

Identify Azure tools and services for computer vision tasks

  • Identify capabilities of the Computer Vision service

  • Identify capabilities of the Custom Vision service

  • Identify capabilities of the Face service

  • Identify capabilities of the Form Recognizer service


#) Describe features of Natural Language Processing (NLP) workloads on Azure (25–30%)

Identify features of common NLP Workload Scenarios

  • Identify features and uses for key phrase extraction

  • Identify features and uses for entity recognition

  • Identify features and uses for sentiment analysis

  • Identify features and uses for language modeling

  • Identify features and uses for speech recognition and synthesis

  • Identify features and uses for translation

Identify Azure tools and services for NLP workloads

  • Identify capabilities of the Language service

  • Identify capabilities of the Speech service

  • Identify capabilities of the Translator service

Identify considerations for conversational AI solutions on Azure

  • Identify features and uses for bots

  • Identify capabilities of Power Virtual Agents and the Azure Bot service


Azure AI Fundamentals can be used to prepare for other Azure role-based certifications like Azure Data Scientist Associate or Azure AI Engineer Associate, but it is not a prerequisite for any of them.


You may be eligible for ACE college credit if you pass this certification exam. See ACE college credit for certification exams for details.


Prove that you can describe the following: AI workloads and considerations; fundamental principles of machine learning on Azure; features of computer vision workloads on Azure; and features of Natural Language Processing (NLP) workloads on Azure.

star_border star_border star_border star_border star_border

Welcome to the ultimate practice exams course designed to give you the winning edge in your journey to becoming Microsoft Azure AI Fundamentals - AI-900 certified!


Are you ready to pass the Microsoft Azure AI Fundamentals (AI-900) certification exam? Find out by testing yourself with this new offering on Udemy. Each of the 6 full practice tests in this set provides an entire exam’s worth of questions, enabling you to confirm your mastery of the topics and providing you with the confidence you’ll need to take your Microsoft Azure AI Fundamentals (AI-900) Certification exam.


The tests in this set are timed, so you’ll know when you’re taking more time than the official test allows, and at the end of the test, you’ll receive a personal breakdown of the questions you answered correctly and incorrectly to improve your knowledge and make you more prepared to pass the actual Microsoft exam.


AI-900 : Microsoft Azure AI Fundamentals Exam details :

  • Exam Name: Microsoft Certified - Azure AI Fundamentals

  • Exam Code: AI-900

  • Exam Price: $99 (USD)

  • Number of Questions: Maximum of 40-60 questions,

  • Type of Questions: Multiple Choice Questions (single and multiple response), drag and drops and performance-based,

  • Length of Test: 60 Minutes. The exam is available in English and Japanese languages.

  • Passing Score: 700 / 1000

  • Languages : English, Japanese, Korean, and Simplified Chinese

  • Schedule Exam : Pearson VUE


AI-900 : Microsoft Azure AI Fundamentals Certification Exams skill questions:

Skill Measurement Exam Topics:-

  • Describe Artificial Intelligence workloads and considerations (20–25%)

  • Describe fundamental principles of machine learning on Azure (25–30%)

  • Describe features of computer vision workloads on Azure (15–20%)

  • Describe features of Natural Language Processing (NLP) workloads on Azure (25–30%)


##) Describe Artificial Intelligence workloads and considerations (20–25%)

Identify features of common AI workloads

  • Identify features of anomaly detection workloads

  • Identify computer vision workloads

  • Identify natural language processing workloads

  • Identify knowledge mining workloads

Identify guiding principles for responsible AI

  • Describe considerations for fairness in an AI solution

  • Describe considerations for reliability and safety in an AI solution

  • Describe considerations for privacy and security in an AI solution

  • Describe considerations for inclusiveness in an AI solution

  • Describe considerations for transparency in an AI solution

  • Describe considerations for accountability in an AI solution


#) Describe fundamental principles of machine learning on Azure (25–30%)

Identify common machine learning types

  • Identify regression machine learning scenarios

  • Identify classification machine learning scenarios

  • Identify clustering machine learning scenarios

Describe core machine learning concepts

  • Identify features and labels in a dataset for machine learning

  • Describe how training and validation datasets are used in machine learning

Describe capabilities of visual tools in Azure Machine Learning Studio

  • Automated machine learning

  • Azure Machine Learning designer


#) Describe features of computer vision workloads on Azure (15–20%)

Identify common types of computer vision solution

  • Identify features of image classification solutions

  • Identify features of object detection solutions

  • Identify features of optical character recognition solutions

  • Identify features of facial detection and facial analysis solutions

Identify Azure tools and services for computer vision tasks

  • Identify capabilities of the Computer Vision service

  • Identify capabilities of the Custom Vision service

  • Identify capabilities of the Face service

  • Identify capabilities of the Form Recognizer service


#) Describe features of Natural Language Processing (NLP) workloads on Azure (25–30%)

Identify features of common NLP Workload Scenarios

  • Identify features and uses for key phrase extraction

  • Identify features and uses for entity recognition

  • Identify features and uses for sentiment analysis

  • Identify features and uses for language modeling

  • Identify features and uses for speech recognition and synthesis

  • Identify features and uses for translation

Identify Azure tools and services for NLP workloads

  • Identify capabilities of the Language service

  • Identify capabilities of the Speech service

  • Identify capabilities of the Translator service

Identify considerations for conversational AI solutions on Azure

  • Identify features and uses for bots

  • Identify capabilities of Power Virtual Agents and the Azure Bot service


Azure AI Fundamentals can be used to prepare for other Azure role-based certifications like Azure Data Scientist Associate or Azure AI Engineer Associate, but it is not a prerequisite for any of them.


You may be eligible for ACE college credit if you pass this certification exam. See ACE college credit for certification exams for details.


Prove that you can describe the following: AI workloads and considerations; fundamental principles of machine learning on Azure; features of computer vision workloads on Azure; and features of Natural Language Processing (NLP) workloads on Azure.

starstarstarstarstar_half

                                               Mock Tests : Oracle Cloud Infrastructure 2023 AI Foundations Associate 1Z0-1122-23

                          The Oracle Cloud Infrastructure AI Foundations Associate certification is designed for individuals who intend to demonstrate fundamental knowledge of Artificial Intelligence, Machine Learning, and related services provided by Oracle Cloud Infrastructure (OCI). This certification does not mandate candidates to have data science and software engineering experience, yet familiarity with OCI basics is beneficial. This credential serves as a foundation for other OCI role-based certifications like OCI Data Science Professional or OCI Digital Assistant Professional, even though it is not a prerequisite for any of them.

This is a mock exam bundle of 3 mock exams and have the similar approach in line with actual exam

  • Question type :  Multiple choice or Multi select.

  • Number of Questions: 15 question (1 test) | 30 Question (2 tests) : Total 75 questions

  • Duration : 30 minutes (short test) | 60 minutes(full test).

  • Passing score : 60%

The topics of coverage in the test are


AI Concepts and Workloads

  • Understand the fundamental AI concepts and workloads

Machine Learning and Deep Learning

  • Explain the key concepts and terminologies of Machine Learning

  • Explain the key concepts and terminologies of Deep Learning

  • Identify common Machine Learning types

Generative AI and Large Language Models

  • Understand the fundamentals of Generative AI

  • Explain Large Language Model concepts

  • Explain the role of prompt engineering and fine-tuning in Generative AI

OCI AI Infrastructure and Services

  • Describe OCI AI Infrastructure

  • Describe OCI AI Services


Wish you good luck for certification & career ahead !

starstarstarstarstar_half

                                               Mock Tests : Oracle Cloud Infrastructure 2023 AI Foundations Associate 1Z0-1122-23

                          The Oracle Cloud Infrastructure AI Foundations Associate certification is designed for individuals who intend to demonstrate fundamental knowledge of Artificial Intelligence, Machine Learning, and related services provided by Oracle Cloud Infrastructure (OCI). This certification does not mandate candidates to have data science and software engineering experience, yet familiarity with OCI basics is beneficial. This credential serves as a foundation for other OCI role-based certifications like OCI Data Science Professional or OCI Digital Assistant Professional, even though it is not a prerequisite for any of them.

This is a mock exam bundle of 3 mock exams and have the similar approach in line with actual exam

  • Question type :  Multiple choice or Multi select.

  • Number of Questions: 15 question (1 test) | 30 Question (2 tests) : Total 75 questions

  • Duration : 30 minutes (short test) | 60 minutes(full test).

  • Passing score : 60%

The topics of coverage in the test are


AI Concepts and Workloads

  • Understand the fundamental AI concepts and workloads

Machine Learning and Deep Learning

  • Explain the key concepts and terminologies of Machine Learning

  • Explain the key concepts and terminologies of Deep Learning

  • Identify common Machine Learning types

Generative AI and Large Language Models

  • Understand the fundamentals of Generative AI

  • Explain Large Language Model concepts

  • Explain the role of prompt engineering and fine-tuning in Generative AI

OCI AI Infrastructure and Services

  • Describe OCI AI Infrastructure

  • Describe OCI AI Services


Wish you good luck for certification & career ahead !

starstarstarstarstar_half

Thank you for your interest in this course! 


Salesforce is on the cutting edge of Artificial Intelligence and has a new associate certification for you to show your knowledge! Artificial Intelligence, especially in business, can be daunting. We cover AI for CRM to get you caught up on all you need to know!


In this course, we cover all of the necessities to pass the Salesforce AI associate Certification, with absolutely no fluff! Easily and quickly getting you Salesforce Certified.


You can be confident in taking the Salesforce AI Associate Certification after learning these concepts, learning the key terms, and working through practice questions.


Easily get certified through this streamlined course with the following resources: 

  1. Complete video lectures covering all exam topics.

  2. Demoed solutions and practice questions after every section.

  3. Comprehensive glossary of all terms you need to know with links to learn more.

  4. A full practice exam formatted like the actual exam with explanations and documentation links.

  5. Notes on the 52 trailhead modules that make up this Trailmix.

Learn how to leverage AI with Salesforce and increase your productivity.


We are excited to see you pass the Salesforce AI Associate Certification and celebrate both your Salesforce and AI wins!

starstarstarstarstar_half

Thank you for your interest in this course! 


Salesforce is on the cutting edge of Artificial Intelligence and has a new associate certification for you to show your knowledge! Artificial Intelligence, especially in business, can be daunting. We cover AI for CRM to get you caught up on all you need to know!


In this course, we cover all of the necessities to pass the Salesforce AI associate Certification, with absolutely no fluff! Easily and quickly getting you Salesforce Certified.


You can be confident in taking the Salesforce AI Associate Certification after learning these concepts, learning the key terms, and working through practice questions.


Easily get certified through this streamlined course with the following resources: 

  1. Complete video lectures covering all exam topics.

  2. Demoed solutions and practice questions after every section.

  3. Comprehensive glossary of all terms you need to know with links to learn more.

  4. A full practice exam formatted like the actual exam with explanations and documentation links.

  5. Notes on the 52 trailhead modules that make up this Trailmix.

Learn how to leverage AI with Salesforce and increase your productivity.


We are excited to see you pass the Salesforce AI Associate Certification and celebrate both your Salesforce and AI wins!