- Promoted by: Anonymous
- Platform: Udemy
- Category: IT Certifications
- Language: English
- Instructor: SkillBoost Learning LLC
- Duration:
- Student(s): 117
- Rate 0 Of 5 From 0 Votes
- Expires on: 2025/11/25
-
Price:
19.990
AI services, ML pipelines, generative models, ethics, MLOps automation & Azure cognitive design
Unlock your potential with a Free coupon code
for the "AZ-900 AI & Machine Learning: 1500 Certified Questions" course by SkillBoost Learning LLC on Udemy.
This course, boasting a 0.0-star rating from 0 reviews
and with 117 enrolled students, provides comprehensive training in IT Certifications.
Spanning approximately
, this course is delivered in English
and we updated the information on November 21, 2025.
To get your free access, find the coupon code at the end of this article. Happy learning!
Artificial intelligence and machine learning are becoming core strategic capabilities across every industry — and Azure now delivers a structured ecosystem for cognitive AI, applied ML, automation, operational governance, and responsible deployment.
This practice test course provides 1,500 exam-style questions, carefully divided across six architecture-based domains, designed to train your understanding of how AI operates inside real Azure environments. Instead of vague theory, you’ll engage with practical logic, decision-making patterns, pipeline behavior, and compliance-driven engineering.
We begin with Cognitive Azure AI Services & Intelligent Foundations, explaining how AI services are organized within Azure, how models are consumed by applications, and how developers interact with APIs and SDKs to build intelligent user experiences. You will analyze capabilities such as text analysis, vision models, speech recognition, and cognitive search — understanding how Azure structures intelligence behind everyday workloads.
The second section explores ML Pipelines, Dataset Preparation & Model Lifecycle Management. You will study how datasets shape training accuracy, how pipeline components interact, and how lifecycle management defines deployment safety. Topics include feature engineering, versioning, labeling, monitoring drift, and testing models before production rollout.
Next, Deployment Strategies, Real-Time Inference & Scoring Endpoints covers how predictions are served to live applications. You will explore real-time vs. batch inference, scaling strategies, endpoint configuration, latency challenges, and how Azure uses containers and managed services to stabilize inference under variable workloads.
The fourth section focuses on Generative AI, Prompt Engineering & Azure OpenAI Integration. This domain explains token-based reasoning, prompt efficiency, safety layers, and real use cases of generative AI embedded into enterprise applications. You’ll explore how Azure connects OpenAI models with business logic — ensuring safe and meaningful generation.
The fifth domain addresses one of the most critical areas in modern AI — Responsible AI, Ethics, Bias Detection & Governance Principles. Here you will analyze risk evaluation, fairness frameworks, detection methods, compliance alignment, and transparency requirements that transform AI from experimental tools into accountable systems. This section helps you understand what makes an AI system trustworthy — and why governance is a business requirement, not just a technical design choice.
The final section teaches where AI truly becomes operational — AI Automation, MLOps Monitoring & Continuous Model Improvement. You will explore monitoring patterns, version control, production rollback logic, retraining triggers, alerting pipelines, and how automation creates resilient AI environments that evolve instead of degrading silently.
Each section contains 250 unique questions, allowing every student to train practical reasoning and reshape their understanding across real Azure AI domains. Every test can be repeated multiple times, helping you steadily strengthen your exam readiness — while avoiding the need for cashback through progressive learning and continuous score improvement.
Whether you aim for AI-900, AZ-900, or future AI-powered cloud roles — this course builds clarity, discipline, and hands-on confidence across every layer of Azure’s cognitive intelligence.