Opleiding: Artificial Intelligence - Machine learning - For Decision-makers + Exam
Artificial Intelligence - Machine learning - For Decision-makers
Data science methods are used in various industries to provide value to businesses. Machine learning (ML) is a data science method that uses prediction algorithms to find patterns in large amounts of data. data, allowing machines to predict future outcomes and make decisions with minimal human intervention. Artificial intelligence (AI) provides advanced tools to help organisations predict behaviour, identify key patterns and drive decision-making in an increasingly data-driven world.
Package Includes
- 12 Months Online Access featuring ondemand instructor-led classroom sessions with full audio and video lectures
- Final Exam: AI and ML for Decision-makers
This Learning Kit with over 7 learning hours is divided into three tracks:
Course content
Track 1: Fundamentals of AI and ML
Courses (1½ hour +):
Fundamentals of AI & ML: Foundational Data Science Methods
Course: 34 Minutes
- Course Overview
- Machine Learning (ML)
- Clustering
- Evaluation of Clustering Algorithm Accuracy
- Classification
- Evaluation of Classification Model Accuracy
- Regression
- Simple Linear Regression
- Multiple Linear Regression
- Machine Learning Challenges
- Course Summary
Fundamentals of AI & ML: Advanced Data Science Methods
Course: 27 Minutes
- Course Overview
- Text Mining
- Evaluate Text Mining Accuracy
- Graph Analysis
- Anomaly Detection
- Novelty Detection
- Association Rule Mining
- Neural Networks
- Course Summary
Fundamentals of AI & ML: Introduction to Artificial Intelligence
Course: 42 Minutes
- Course Overview
- What is Artificial Intelligence (AI)?
- What Can AI Do?
- How AI Works: Data
- How AI Works: Tools and Technologies
- Artificial Intelligence Life Cycle
- Data Science Process: Ask
- Data Science Process: Research
- Data Science Process: Model, Validate, and Test
- Data Science Process: Interpret
- Course Summary
Track 2: Developing an AI/ML Data Strategy
Courses (1½ hours +)
Developing an AI/ML Data Strategy: The Data Analytics Maturity Model
Course: 39 Minutes
- Course Overview
- Data Analytics Maturity Model6
- Analytics Maturity Model Categories
- Data Governance
- Emerging Trends in Data Analytics
- Data Storage Tools
- Data Cleaning and Analysis Tools
- Data Collaboration and Visualization Tools
- Data Tool Selection
- Course Summary
Developing an AI/ML Data Strategy: Building an AI-powered Workforce
Course: 29 Minutes
- Course Overview
- Artificial Intelligence (AI) in the Workforce
- Data Science Team Structures
- Hiring vs. Contracting vs. Training Data Teams
- Data Team Roles
- Data-driven Culture and AI Strategy
- Move toward a Data-driven Culture
- Course Summary
Developing an AI/ML Data Strategy: Data Analytics & Data Ethics
Course: 38 Minutes
- Course Overview
- Data Science Ethics
- Considerations for Adopting AI/ML
- Data Bias Creation, Types, and Reduction
- Key Principles of Data Ethics
- Artificial Intelligence (AI) and Data Ethics
- Data Ethics Examples
- Course Summary
Track 3: Visualizing Data for Impact
Courses (1½ hours +)
Visualizing Data for Impact: Introduction to Data Visualization
Course: 27 Minutes
- Course Overview
- Examples and Use Cases of Data Visualization
- Data Visualization Charts and Graphs Part 1
- Data Visualization Charts and Graphs Part 1
- Know Your Audience
- Choose the Right Visualization
- Select Visualization Tools
- Course Summary
Visualizing Data for Impact: Visual Design Theory
Course: 27 Minutes
- Course Overview
- Visual Design
- Use Contrast and Position
- Size and Group Items
- Add Legends, Arrange Items, and Address Gaps
- Color Usage in Visualizations
- Course Summary
Visualizing Data for Impact: Data Storytelling
Course: 28 Minutes
- Course Overview
- What Is Data Storytelling?
- Refine Your Insight
- Tailor to Your Audience
- Outline Around the Insight
- Plot with a Storyboard
- Format a Story for Delivery
- Course Summary
Visualizing Data for Impact: Analyzing Misleading Visualizations
Course: 27 Minutes
- Course Overview
- Common Data Visualization Mistakes
- Issues with Color and Chart Selection
- Misleading Statistics
- Visual Distortions
- Deceiving Graphs
- Data Omission and Misleading Visualizations
- Course Summary
Track 4: Cloud Computing and MLOps in AI/ML
Courses (1½ hours +)
Cloud Computing and MLOps: Cloud and AI
Course: 46 Minutes
- Course Overview
- Cloud Computing in AI
- The Benefits and Challenges of Cloud Computing
- Cloud AI Strategy Implementation
- The Architecture of Cloud Computing
- AI as a Service (AIaaS)
- Data Management and Governance Cloud AI Tools
- AI in Cloud Security
- Key Cloud Technologies for AI
- Future Trends for Cloud Computing and AI
- Course Summary
Cloud Computing and MLOps: Introduction to MLOps
Course: 36 Minutes
- Course Overview
- What Is XOps?
- Version Control
- Types of Version Control
- Version Control Tools
- What Is MLOps?
- Benefits MLOps
- What Is DataOps?
- Benefits and Use Cases of DataOps
- DataOps Pipeline Elements
- The Role of Humans in ML Pipeline Automation
- MLOps Ethical Concerns
- Course Summary
Cloud Computing and MLOps: ML Pipelines
Course: 26 Minutes
- Course Overview
- What Are ML Pipelines and Why Are They Needed?
- Manual Pipelines
- Automated Pipelines
- ML Pipeline Preparation and Build Best Practices
- Development, Staging, and Production Environments
- CI/CD Pipelines
- Use Cases for CI/CD
- Testing ML Pipelines
- ML Pipeline Testing Tools and Frameworks
- Course Summary
Assessment:
• Final Exam: AI and ML for Decision-makers
OEM Office Elearning Menu is an officially accredited Test Centre for Pearson Vue Test & Certiport. You are welcome to contact us for exams available through these Test Centres. Exams can be taken by appointment within office hours.
Date
You can start at any time! Please contact one of our training advisors.
Locations
Self-study
Learning method
E-Learning
Training duration: 7+ hours
Language
English
Tip!
Provide a quiet learning environment, time and motivation, audio equipment such as headphones or speakers for audio, account information such as login details to access the e-learning platform.