أساسيات تعلم الآلة
عن الدورة
أساسيات تعلم الآلة
Module 1: Introduction to Machine Learning
- What is Machine Learning?
- Relationship between AI, Machine Learning, and Deep Learning
- History and evolution of Machine Learning
- Why Machine Learning matters today
- Real-world use cases and industry adoption
Module 2: How Machine Learning Works
- Data → Training → Model → Prediction process
- Understanding datasets
- Features and labels
- Training vs. testing data
- Model evaluation basics
Module 3: Data Preparation Fundamentals
- Types of data
- Data collection methods
- Data cleaning and preprocessing
- Handling missing values
- Data visualization basics
Module 4: Supervised Learning
- What is supervised learning?
- Classification problems
- Regression problems
- Common supervised learning algorithms
- Linear Regression
- Logistic Regression
- Decision Trees
- K-Nearest Neighbors (KNN)
- Practical examples
Module 5: Unsupervised Learning
- What is unsupervised learning?
- Clustering concepts
- Dimensionality reduction basics
- Common algorithms
- K-Means Clustering
- Hierarchical Clustering
- PCA (Introduction)
- Practical examples
Module 6: Reinforcement Learning Overview
- What is reinforcement learning?
- Agents, environments, rewards
- Learning through trial and error
- Common applications
- Robotics
- Gaming
- Autonomous systems
Module 7: Machine Learning Applications
- Recommendation systems
- Image and face recognition
- Fraud detection
- Healthcare applications
- Business analytics
- Smart assistants and chatbots
Module 8: Benefits and Challenges of Machine Learning
- Advantages of ML systems
- Automation
- Fast data processing
- Accurate predictions
- Challenges and limitations
- Data quality issues
- Bias and fairness
- Model interpretability
- Privacy concerns
Module 9: Introduction to Machine Learning Tools
- Overview of Python for ML
- Introduction to:
- Jupyter Notebook
- NumPy
- Pandas
- Matplotlib
- Scikit-Learn
- Building a simple ML model
Module 10: Future of Machine Learning
- Emerging trends
- Generative AI and Large Language Models
- Automation across industries
- Ethical AI considerations
- Career paths in Machine Learning
Final Practical Project
- Dataset selection
- Data preparation
- Model training
- Evaluation and presentation of results
- Project report and discussion
محتوى الدورة
Introduction & Get Started
Artboards & Raster Layers
Creative Layer Styles
Work with Smart Objects
Repair Your Photos
تقييمات ومراجعات الطلاب
Great course. Well structured, paced and I feel far more confident using this software now then I did back in school when I was learning. And the guy doing the voice over really is great at what he does. I will probably do the course again and look at what other courses this instructor provides. Great quality and well worth the cost.