Free Artificial Intelligence Learning Course
In this course, you will learn about the fundamentals of Artificial Intelligence and how it is transforming the world.
Artificial Intelligence (AI) Free Basic Course
In this course, you will learn about the fundamentals of Artificial Intelligence and how it is transforming the world.
Lecture 1 | AI Free Basic Course
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Basics of Python – Part 1
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Basics of Python – Part 2
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Basics of Python – Part 3
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Irfan Malik
Founder & CEO Xeven Solutions
Irfan Malik is an accomplished data scientist, entrepreneur and tech consultant with over 10+ years of industry experience. He is also the Founder & CEO of Xeven Solutions, a leading software development company. Irfan specializes in working with emerging technologies and has a deep understanding of machine learning, data analytics, and cloud computing. His expertise in these areas has allowed him to develop innovative solutions for his clients and help them stay ahead of the curve.
Irfan is also a certified professional in data science and has contributed to several open-source projects. His passion for technology has resulted in several successful software products, and he continues to push the boundaries of what is possible in the field of data science.
Dr. Sheraz Naseer
AI SME
Dr. Sheraz Naseer is a highly experienced professional with a Ph.D. in computer science, having 15+ years of industry and academia experience. He specializes in developing intelligent applications using AI tools like Langchain, OpenAI, Hugging Face, TensorFlow, PyTorch, and scikit-learn. Dr. Naseer’s research in AI has resulted in 15+ impactful publications in top-tier journals, with a focus on machine learning, deep learning, and natural language processing. He also holds industry-standard certifications like CISSP and ITIL and has contributed to several information security projects.
Stage 0: Orientation days (1)
- What it AI?
- What is future going to be like?
- Some Demos and interesting videos on it.
- Object detection
- Segmentation
- Classification
- Generative models
- Chatgpt
- Dall-e
- stable-diffusion
- Our Goal and Expectations from Students.
- Working plan.
- Work Ethics
- Practise sessions
- Evaluations
- Professional Grooming
Stage 1: Introduction with the Tools days (3 to 4)
- Introduction to Chat Gpt and Interaction with it.
- Introduction to Dall-EĀ and interaction with it.
- Introduction to Stable Diffusion and interaction with it
- Guideline about prompting.
- At the initial stage the students should interact with Open.ai tools like Chat GPT and DALL-E-2. This will greatly develop their interest and help them understand the products better. From this they will also learn the prompting which will help them later.
Stage 2: Basics of python days (20 to 30)
- Installing the IDE and Making Environments
- Basic Variables
- Data types
- String manipulation
- List
- Loops
- Tuples
- Dictionary
- JSON
- Functions
- Built in
- Custom
- Classes in python
- Declaration
- Initialization
- Code practise with Chat GPT
- Stage Evaluation
Stage 3: Basics of ML days (5 to 6)
- Introduction the Machine Learning
- Supervised Learning
- Video demo
- Semi-supervised Learning
- Video demo
- Un-supervised Learning
- Video demo
- Re-inforcement learning
- Video demo
- Basics of ML Model
- Model
- Dataset
- Types of Data sets (Structured , Unstructured)
- Examples of Datasets
- Data preprocessing
- Data Cleaning (Missing Values and Outliers)
- Dimensionality Reduction
- Data Transformation
- Training process (Theory at this stage)
- Testing processĀ (Theory at this stage)
- Evaluation Metric
- Loss functions
- Confusion matric
- Accuracy
- Precision
- Recall
- Stage Evaluation
Stage 4: Basics of API days (10 to 15)
- Introduction to API
- Basics of API
- Open.ai API
- Stable Diffusion API
- Fast API
- Stage Project 1: (NLP Project)
- Stage Project 2: (Image Generation Project)
- Stage Evaluation
Stage 5: Basics of ML frame work days (20 to 30)
- Understanding of Scikit-learn for Machine Learning Models
- Working with Structured Data (ETL Pipeline) Using Scikit-Learn
- Data Cleaning (Missing Values and Outliers)
- Dimensionality Reduction
- Data Transformation
- Concept of classification and regression
- Difference between them and where to use them
- Use case examples
- Creating Classification Models using Scikit-learn
- Evaluating Classification Models
- Creating Regression Models using Scikit-learn
- Evaluating Regression Models
- Creating Recommender System (Content Based and Collaborative Filtering based)
- Stage Project
Stage 6: Basics of Data Visualisations days (5 to 7)
- Basic concepts of Matplotlib
- Introduction to Visualisations
- Line plot
- Scatter plot
- Regression plot
- Bar charts
- Distribution plots
- Box plot
- Creating Visualisations using Seaborn
- Creating Visualisations using Plotly
- Stage Evaluation
Stage 7: Introduction to Hugging Face days (10 to 15)
- Introduction to Hugging Face
- Installation and Setup
- Text Classification using Pipelines
- Hands on practise
- Name Entity Recognition (NER) with Pipelines
- Hand on practise
- Sentiment Analysis With Pipelines
- Hands on practise
- Stage Evaluation
You will learn
- Understanding of the fundamentals of artificial intelligence and its various applications.
- Familiarity with popular AI tools like ChatGPT, DALL-E, and Stable Diffusion.
- Proficiency in Python programming language and its data structures, control statements, functions, and classes.
- Knowledge of different types of machine learning, their applications, and the difference between supervised, unsupervised, semi-supervised, and reinforcement learning.
- Understanding of machine learning models, datasets, data preprocessing, training, testing, and evaluation metrics.
- Familiarity with different machine learning frameworks and their usage in creating structured data models.
- Knowledge of data visualization techniques using Matplotlib, Seaborn, and Plotly libraries.
- Familiarity with Hugging Face library and its usage in NLP tasks like text classification, NER, and sentiment analysis.