Course Information
Course Overview
100% Original material with 100% Success, 4 complete timed practice tests for AI-900 Azure AI Fundamentals exam
Microsoft Certified: Azure AI Fundamentals AI-900
This exam is an opportunity to demonstrate knowledge of common ML and AI workloads and how to implement them on Azure.
This exam is intended for candidates with both technical and non-technical backgrounds. Data science and software engineering experience is not required; however, some general programming knowledge or experience would be beneficial.
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’s not a prerequisite for any of them.
Skills measured AI 900
Describe AI workloads and considerations
Describe fundamental principles of machine learning on Azure
Describe features of computer vision workloads on Azure
Describe features of Natural Language Processing (NLP) workloads on Azure
Describe features of conversational AI workloads on Azure
Microsoft market share in cloud services has increased exponentially in the last couple of years and many enterprises have started their journey on cloud. Hence, not only coveted, but Azure certifications are very well respected certifications in the job market too.
If you are a Data Scientist, data analyst or data engineer and want to foray into the domain of Machine Learning/Artificial Intelligence, then you should consider certifying with Microsoft Azure AI Fundamentals AI 900 to begin your journey!
Topics covered in these practice exam:
-Fundamental principles of machine learning not limited to Azure (30-35%)
-Artificial Intelligence workloads (15-20%)
-Computer vision workloads on Azure (15-20%)
-Natural Language Processing (NLP) workloads on Azure (15-20%)
-Conversational AI workloads on Azure (15-20%)
Overview of AI
AI is the creation of software that imitates human behaviors and capabilities. Key elements include:
Machine learning - This is often the foundation for an AI system, and is the way we "teach" a computer model to make predictions and draw conclusions from data.
Anomaly detection - The capability to automatically detect errors or unusual activity in a system.
Computer vision - The capability of software to interpret the world visually through cameras, video, and images.
Natural language processing - The capability for a computer to interpret written or spoken language, and respond in kind.
Conversational AI - The capability of a software "agent" to participate in a conversation.
Azure Machine Learning
Machine Learning is the basis of most AI solutions.
Microsoft Azure offers the following: Azure Machine Learning Service - A cloud-based platform that allows you to create, manage and publish machine learning models. Azure Machine Learning offers the following capabilities and features:
Automated machine-learning: This feature allows non-experts to create machine learning models quickly from data.
Azure Machine Learning designer: An interface that allows for no-code creation of machine learning solutions.
Data and compute management: Professional data scientists can access cloud-based data storage and compute resources to run code for data experiments at scale.
Pipelines: Software engineers, data scientists, and IT operations professionals are able to create pipelines that can be used to manage model deployment, training, and management.
Course Content
- 1 section(s)
- Section 1 Practice Tests
What You’ll Learn
- People that will take the Microsoft Azure AI Fundamentals certification
- This course is perfect for those who want to obtain the Azure IA fundamentals certificate
- This course is perfect for anyone who wants to increase their IA Azure skills
- This course is perfect for Data Scientist, data analysts, data engineers who want to apply AI on Azure
Skills covered in this course
Reviews
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FFrancisco Sanchez Rodriguez
I am certified now, thanks to Richa for your excellent course.
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EEvangelos Nittis
Most of the questions are really easy and there are no explanations in most of the answers but only links to generic articles - how does this help? Also, there are wrong QnAs like the following one: Ensuring that the numeric variables in training data are on a similar scale is an example of: answer: "feature selection". The correct answer is either feature engineering, feature scaling or normalization. Also, another wrong statement that is flagged as correct in the tests is the following one: "A web form used to submit a request to reset a password is an example of a conversational AI workload.". This is not right either.
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RRichard Steinbiss
Good. Would appreciate more detailed explanations about why answers are right or wrong.
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MMelvin Vergara
Curso actualizado, salen casi todas las preguntas, pase con 750 puntos.