Shape

Turn ideas into intelligence with world-class AI tools

Artificial Intelligence Training:

ProCodeInstructor's UiPath training equips you to become an RPA expert by mastering automation, data manipulation, debugging, and real-world integrations. Learn from industry professionals and gain hands-on experience with workflow design, UI automation, and best practices in RPA development.

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