Artificial Intelligence Training
ProCodeInstructor’s AI Training equips you to become an AI expert by mastering machine learning, deep learning, data preprocessing, model building, and real-world AI integrations. Learn from industry professionals and gain hands-on experience with neural networks, natural language processing, computer vision, generative AI, and best practices in AI development and deployment.
Artificial Intelligence Topics
Introduction to Artificial Intelligence
Gain foundational knowledge of Artificial Intelligence including:
- What AI is and its business value
- Types of AI techniques and real-world applications
- Overview of popular AI tools and frameworks
- How AI drives digital transformation
Getting Started with AI
Learn the basics of Artificial Intelligence and build your first AI model:
- Installing and setting up AI development tools
- Exploring the user interface of popular AI platforms
- Creating your first AI project
- Using datasets, models, and workflows effectively
Feature Selection & Model Optimization
Dive into AI model optimization using feature selection techniques:
- Understanding and refining feature selection methods
- Using filters, wrappers, and embedded approaches
- Troubleshooting overfitting and data imbalance issues
- Best practices in AI model optimization
Data Handling & Preprocessing
Learn how to prepare and manipulate data effectively for AI workflows:
- Understanding variables, parameters, and data types in AI pipelines
- Working with text, numerical, and categorical data
- Handling tabular datasets and spreadsheet inputs
- Applying data cleaning, transformation, and normalization
Data Collection & Web Automation
This lesson focuses on extracting and managing data for AI-driven applications:
- Advanced techniques for handling dynamic web content
- Collecting structured and unstructured data from online sources
- Managing API connections, authentication, and sessions
- Strategies to handle restricted or secured data sources
- Scaling and optimizing large-scale data gathering for AI modelsg
Error Handling & Model Debugging
Master essential techniques to make AI workflows more reliable and efficient:
- Applying structured error-handling in AI pipelines
- Defining and managing custom exception scenarios in model execution
- Using logging frameworks for traceability and experiment tracking
- Debugging model training and inference with checkpoints and breakpoints
- Profiling performance to optimize computation, memory, and latency
AI Workflow Orchestration
Learn how to manage and automate AI workflows at an enterprise scale:
- Setting up and managing task queues for AI pipelines
- Securing credentials, APIs, and data assets
- Scheduling jobs and prioritizing model training or inference tasks
- Monitoring pipeline performance and configuring alerts
- Best practices for deploying AI solutions across multiple environments
Final Project Overview
Develop a complete end-to-end AI solution covering:
- Gathering requirements and understanding the problem domain
- Designing the AI solution architecture and workflow
- Implementing all learned techniques: data preprocessing, modeling, and evaluation
- Documenting methodology and ensuring knowledge transfer
- Deploying the AI solution and planning for maintenance and monitoring
Ready to Experience Our Training?
Book a free live demo session with our expert instructors
