Since our Microsoft AI-900日本語 exam review materials are accurate and valid our service is also very good. We are 7*24 online service. When you want to ask any questions or share with us your AI-900日本語 passing score you will reply you in 3 hours. We have one-year service warranty that we will send you the latest AI-900日本語 exam review materials if you want or other service. If you pass AI-900日本語 with a good mark and want to purchase other Microsoft exams review materials we will give you discount. Or if you stands for your company and want to long-term cooperate with us we welcome and give you 50%+ discount from the second year.
Our IT system department staff checks the updates every day. Once the AI-900日本語 exam review materials are updated we will notice our customers ASAP. We make sure that all AI-900日本語 exam review materials we sell out are accurate, AI-900日本語 valid and latest. As for the payment we advise people using the Credit Card which is a widely used in international online payments and the safer, faster way to send money, receive money or set up a merchant account for both buyers and sellers. If you have any query about the payment we are pleased to solve for you. (AI-900日本語 pass review - Microsoft Azure AI Fundamentals (AI-900日本語版))
We assure you 100% pass for sure. If you fail the AI-900日本語 exam you can send us your unqualified score we will full refund to you or you can choose to change other subject exam too. We aim to "Customer First, Service Foremost", that's why we can become the PassReview in this area.
Instant Download AI-900日本語 Exam Braindumps: Upon successful payment, Our systems will automatically send the product you have purchased to your mailbox by email. (If not received within 12 hours, please contact us. Note: don't forget to check your spam.)
Prerequisites
This certification test has no official prerequisites. However, the interested candidates must develop their skills and knowledge in the domains of the exam topics. Although the individuals do not need this test to pursue more advanced Azure role-based options, they can gain extensive expertise while preparing for this exam. Your knowledge base can contribute to the success of more advanced certificates such as Microsoft Certified: Azure AI Engineer Associate or Microsoft Certified: Azure Data Scientist Associate.
Reference: https://docs.microsoft.com/en-us/learn/certifications/exams/ai-900
Microsoft AI-900 Exam Syllabus Topics:
| Topic | Details |
|---|---|
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, facial recognition, 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 the Azure Bot service |






