Boost logo
Language
course | Making Decisions Using Artificial Intelligence for Files and Their Preparation

We turn your development needs and aspirations into powerful digital solutions that drive growth

IT-983 | Making Decisions Using Artificial Intelligence for Files and Their Preparation

Course Sector : Information Technology

Duration
Date from
Date to Course Venue Course fees Book a course
5 Days2025-05-052025-05-09Barcelona$5,250 Book now
5 Days2025-06-162025-06-20Vienna$4,950 Book now
5 Days2025-09-082025-09-12Dubai$4,250 Book now
5 Days2025-12-292026-01-02Dubai$4,250 Book now

Course Introduction

This training program aims to equip participants with the knowledge and skills to effectively use artificial intelligence for decision making, focusing on the preparation, management, and utilization of various data files to support and enhance organizational processes. 

Participants will learn to handle different file types, preprocess data, engineer and select features, and integrate AI into organizational decision making. 

The training covers applying AI in organizational decision-making, integrating AI systems into existing workflows, and developing AI-powered decision support systems. Through real-world case studies and practical applications, attendees will gain insights into aligning AI applications with business goals, addressing ethical considerations, and continuously improving and scaling AI solutions across departments.

Training Course Methodology 

 

This course is designed to be interactive and participatory, and includes various learning tools to enable the participants to function effectively and efficiently. The course will use sessions, exercises, and case applications, and presentation about proven-by-practice methods, new insights and ideas about emotional intelligence and its effects in a corporate world.


Course objective

  •  Understand the role of artificial intelligence in enhancing decision-making processes and recognize the ethical considerations and potential biases involved.
  • Gain proficiency in handling, organizing, and preprocessing various file types (text, CSV, JSON, XML, etc.) to ensure data quality and readiness for AI applications.
  • Develop skills in feature engineering and selection from file-based data to improve the performance of machine learning models.
  • Understand how to integrate AI into organizational decision-making processes, leveraging data from various files to develop, implement, and continuously improve AI-powered decision support systems.
  • Acquire the knowledge to deploy, monitor, and maintain AI models in different environments, managing data files efficiently to support ongoing model improvements and address issues such as model and data drift.

Course Outline | Day 01

Introduction to AI in Decision Making with File Preparation

        Overview of AI in Decision Making

 

  •    Definition and types of AI relevant to decision making
  •    Importance of AI in enhancing decision-making processes
  •    Case studies showcasing AI in decision making
  •    Ethical considerations and biases in AI-driven decisions
  •    Future trends and developments in AI for decision making
 

 

        Understanding File Types and Structures

 

  •    Different types of files (text, CSV, JSON, XML, etc.)
  •    File structures and formats
  •    Importance of file formats in data analysis
  •    Tools for handling different file types
  •    File encoding and decoding methods
  •   Real-world examples of file usage in AI applications

 

 

Course Outline | Day 02

Data Collection and File Handling

        Collecting Data for AI Applications

 

  •         Methods for data collection (web scraping, APIs, sensors, etc.)
  •         Ethical considerations in data collection
  •        Ensuring data privacy and security
  •         Data licensing and compliance issues
        Handling and Managing Files

 

  •    Reading and writing files in different formats
  •    File handling libraries and tools (Pandas, Openpyxl, JSON libraries)
  •    Organizing and storing files efficiently
  •    Batch processing of files
  •    File versioning and management systems
  •    Automating file handling processes
 

 

        Preprocessing Files for AI

  •    Cleaning and normalizing data within files
  •    Handling missing data in files
  •    Detecting and correcting errors in files
  •    Data transformation techniques (scaling, encoding, etc.)
  •    Tools for data preprocessing

Course Outline | Day 03

Feature Engineering and Selection from Files

        Understanding Features and Their Importance

 

  •    Definition and types of features in datasets
  •    Role of feature engineering in improving model performance
  •    Feature extraction from different file types (text, CSV, etc.)

 

       Techniques for Feature Engineering

 

  •    Creating new features from existing data
  •    Handling categorical and numerical features
  •    Temporal feature extraction from time-series files
  •   Feature scaling and normalization
        Feature Selection Methods

 

  •    Importance of selecting relevant features
  •    Filter, wrapper, and embedded methods for feature selection
  •    Dimensionality reduction techniques
  • Tools and libraries for feature engineering and selection

Course Outline | Day 04

Applying AI in Decision Making within an Organization

       Integrating AI into Organizational Decision Making

 

  •    Identifying key decision-making areas that can benefit from AI
  •    Mapping out processes and data flows within the organization
  •    Aligning AI applications with organizational goals and strategies
  •   Ensuring stakeholder buy-in and collaboration across departments

 

        Using AI to Analyze Organizational Data

 

  •    Collecting and consolidating data from various organizational files
  •    Applying AI models to detect patterns and insights in organizational data
  •    Automating routine decision-making tasks with AI-driven insights
  •   Tools and platforms for implementing AI in organizational contexts

 

        Developing AI-Powered Decision Support Systems

 

  •    Designing AI systems to support decision-making processes
  •    Integrating AI systems with existing organizational software and databases
  •    Real-time data processing and decision making
  •    User interfaces and dashboards for AI-driven decision support

Course Outline | Day 05

Deployment and Maintenance of AI Models Using Files

        Deploying AI Models

 

  •    Methods for deploying models (cloud, on-premise, edge)
  •    Preparing files for deployment (formatting, compression, etc.)
  •    Tools for deploying AI models (Flask, Docker, Kubernetes)

 

        Monitoring and Maintaining Deployed Models

 

  •    Setting up monitoring for model performance
  •    Automating retraining with new data files
  •    Handling model drift and data drift
  •    Version control for models and data files
Course Certificates
BOOST Logo

BOOST’s Professional Attendance Certificate “BPAC”

BPAC is always given to the delegates after completing the training course,and depends on their attendance of the program at a rate of no less than 80%,besides their active participation and engagement during the program sessions.

Request a Quote
Follow us
facebook iconinstagram iconlinkedIn icontwitter icon
BOOST Logo

Since 2001, we have been pioneering the training field in the Middle East, helping individuals, teams, and organizations reach their full potential with integrated solutions.

left

🔗 Quick Links

Boost Abroad logoSparks logo

Sister Companies to Boost Consulting and Training

Training Image 1Training Image 2Training Image 3Training Image 4Training Image 5Training Image 6

We believe in progress for everyone.

We helped more than 10,000 clients over 20 countries on 4 continents in boosting their knowledge, skills, and careers.

Copy rights

Boost Training And Consulting All Copyrights Reserved 2025