Microsoft Azure AI Fundamentals AI-900 Exam Prep Specialization
Learners will gain the fundamentals necessary to implement AI solutions on Microsoft Azure with this course specialization, which will set them up for success with the AI-900 competency.
Description for Microsoft Azure AI Fundamentals AI-900 Exam Prep Specialization
Comprehensive Exam Preparation: Comprises five courses aimed at preparation for the AI-900 Microsoft Azure AI Fundamentals Exam.
Fundamental AI and ML Principles: Addresses essential topics in artificial intelligence and machine learning, relevant to several Azure services and solutions.
Practical Azure Skills: Instructs on the implementation of AI solutions on Azure, with material directly corresponding to the knowledge domains assessed in the certification examination.
Path to Advanced Certifications: Although not mandatory for elevated certifications, this specialization offers a robust basis for further Azure Data Scientist or AI Engineer certifications.
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 21
Offered by: On Coursera provided by MicrosoftDuration: 1 month at 10 hours a week (approximately)
Schedule: Flexible/Project-based
Pricing for Microsoft Azure AI Fundamentals AI-900 Exam Prep Specialization
Use Cases for Microsoft Azure AI Fundamentals AI-900 Exam Prep Specialization
FAQs for Microsoft Azure AI Fundamentals AI-900 Exam Prep Specialization
Reviews for Microsoft Azure AI Fundamentals AI-900 Exam Prep Specialization
0 / 5
from 0 reviews
Ease of Use
Ease of Customization
Intuitive Interface
Value for Money
Support Team Responsiveness
Alternative Tools for Microsoft Azure AI Fundamentals AI-900 Exam Prep Specialization
This course equips students with the necessary business leadership skills and technical knowledge to propel the success of ML.
By learning how to analyze health data and sequence genomes using AI, this course equips students with the tools they need to contribute to medical research.
The objective of this course is to provide students with an understanding of the future of finance and investments, as well as the role of emergent AI and Machine Learning technologies in InsurTech and Real Estate Tech.
The purpose of this course is to provide students with the opportunity to develop practical, cloud-based machine learning skills. It focuses on the use of Apache Spark to teach logistic regression modeling on Google Cloud.
With the help of machine learning, this course teaches students how to predict health insurance costs by taking into account factors like age, gender, BMI, and smoking habits.
In order to facilitate effective learning, this course provides learners with the necessary skills to develop scalable and resilient ML solutions on AWS, combining theory and practical experience.
With an emphasis on quantitative, pairs, and momentum trading, this course prepares students to create and backtest sophisticated trading strategies utilizing machine learning.
Using the complete machine learning pipeline in computer vision, this course teaches students how to use MATLAB for object detection and classification in images.
This course�trains on source code summary and programming language identification with Vertex AI LLM within Google Cloud.
Featured Tools
Learn through case studies, techniques, challenges, and objectives to master classification tasks, techniques, and metrics in Python for effective machine learning on various datasets.
Critical AI skills will be acquired by students, which will encompass both theoretical concepts and practical applications in the fields of deep learning and machine learning.
Gain a foundational understanding of generative AI, including its functions, key concepts like large language models, datasets, and prompts, and the components used to build and operate AI solutions.
Use Tome AI to create detailed presentation outlines, integrate relevant documents, and generate visually appealing slides through effective prompts.
Acquire the skills necessary to program powerful systems in Rust. Through projects in data engineering, Linux tools, DevOps, LLMs, Cloud Computing, and machine learning operations, acquire the skills necessary to develop software that is both efficient and robust, utilizing Rust's distinctive safety and speed.