AI projects - Esuru Pooja
Duration:3 months
Batch Type:Weekend and Weekdays
Languages:English, Tamil
Class Type:Online
Course Fee:
Course Content
However, a comprehensive Introductory AI Course for a beginner or aspiring professional would typically cover the following major modules and topics:
1. Foundations and Introduction
What is AI? Definition, history, and different approaches (Symbolic AI, Connectionist AI/Neural Networks).
Intelligent Agents: Concepts of agents, environments, and rational behavior.
AI Domains/Applications: Overview of how AI is used in various fields like healthcare, finance, gaming, and robotics.
AI Ethics and Responsible AI: Bias, fairness, transparency, and societal impact.
2. Mathematics and Programming Fundamentals (Prerequisites/Review)
Programming Language: Typically Python, including essential libraries like:
NumPy (for numerical operations, especially arrays and matrices).
Pandas (for data manipulation and analysis).
Matplotlib/Seaborn (for data visualization).
Linear Algebra: Vectors, matrices, and their operations (crucial for neural networks).
Calculus: Derivatives and optimization (needed for training models like gradient descent).
Probability and Statistics: Probability theory, distributions, statistical significance (foundational for machine learning models).
3. Machine Learning (ML) Fundamentals
This is often the core of a practical AI course.
What is Machine Learning? How machines learn from data.
Types of Learning:
Supervised Learning: Classification (e.g., predicting categories) and Regression (e.g., predicting a continuous value).
Unsupervised Learning: Clustering (e.g., K-means) and Dimensionality Reduction (e.g., PCA).
Reinforcement Learning (Basic Concept): Agents learning through trial and error.
Key Algorithms: Introduction to algorithms like Linear Regression, Logistic Regression, Decision Trees, K-Nearest Neighbors (KNN), and Support Vector Machines (SVM).
Model Evaluation: Metrics like accuracy, precision, recall, F1-score, and concepts like overfitting and underfitting.
4. Deep Learning and Neural Networks
Neural Network Basics: Perceptron, activation functions, and the concept of a multi-layer perceptron (MLP).
Training Neural Networks: Backpropagation and gradient descent.
Deep Learning Frameworks: Introduction to popular tools like TensorFlow and PyTorch.
Common Architectures (Overview):
Convolutional Neural Networks (CNNs): For image processing/Computer Vision.
Recurrent Neural Networks (RNNs) / LSTMs: For sequential data like text.
5. Specialization Topics (Modules on Major AI Fields)
- Natural Language Processing (NLP):
Text representation (e.g., Bag-of-Words, TF-IDF, Word Embeddings).
Applications like sentiment analysis, text generation, and named entity recognition.
-Computer Vision (CV):
Image manipulation and basic operations (e.g., with OpenCV).
Applications like image classification, object detection, and segmentation.
-Generative AI (Trending Topic):
Large Language Models (LLMs): Understanding what they are and their capabilities.
Prompt Engineering: Learning how to write effective instructions (prompts) for models like ChatGPT or Gemini.
Generative models like GANs and VAEs (at an intermediate level).
6. Practical Skills and Projects
Data Preprocessing: Data cleaning, handling missing values, and feature scaling.
Cloud AI Services (Overview): Introduction to platforms like Google Cloud AI, Microsoft Azure AI, or AWS AI.
Hands-on Projects: Building and deploying small AI/ML models on real-world datasets.
Skills
Ai and Data Analytics, Ai Applications, Ai Ml, Ai Tools
Tutor
0.0 Average Ratings
0 Reviews
1.3 Years Experience
Oldno.9, newno.4, Ethiraj swamy koil Street Near Indira Hall Erukkencherry Chennai -600118





