Applications of AI and Machine Learning in Predicting Economic Variables
Paris
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Outcomes

Equip participants with the expertise to utilize AI and machine learning for financial and economic data analysis, optimizing operational efficiency, and solving contemporary financial challenges.


Target Group

Finance professionals, data analysts, and technology experts seeking to apply AI and machine learning in financial workflows.


Contents

 

  1. 1.   Core Concepts and Future Prospects of Artificial Intelligence:    

   This topic will explore the foundational principles of AI and its evolving role in the financial sector. Participants will gain insights into current trends and the future challenges that AI poses in areas such as financial forecasting, risk management, and decision-making.

  1. 2.   Python Fundamentals for Machine Learning:    

   In this session, participants will receive practical training in Python, focusing on its application in machine learning. Key programming techniques and essential ML algorithms will be covered to equip attendees with the necessary tools for implementing AI-driven solutions in finance.

  1. 3.   The Role of Machine Learning in AI Development:    

   This topic delves into the critical role of machine learning in the development of AI systems. Participants will understand how machine learning serves as the backbone of AI, enhancing its ability to process large data sets, recognize patterns, and make predictions in financial applications.

  1. 4.   Supervised Learning Techniques:    

   Focused on regression and classification models, this session covers how these supervised learning techniques can be applied to predictive analytics. Participants will learn how to use supervised learning methods to improve forecasting accuracy, manage risk, and drive data-driven decisions in finance.

  1. 5.   Unsupervised Learning Approaches:    

   This topic will cover unsupervised learning techniques such as dimensionality reduction and clustering. Participants will explore how these methods help in identifying hidden patterns and insights within large financial datasets, supporting smarter decisions and efficient data analysis.

  1. 6.   Applications of NLP and Generative AI in Finance:    

   In this session, participants will explore the practical applications of Natural Language Processing (NLP) and Generative AI in finance. They will learn how these technologies can improve customer service, automate financial document analysis, and generate innovative solutions for the finance industry.

  1. 7.  Ethical and Regulatory Aspects of AI in Finance:

This session will cover the ethical challenges and regulatory issues related to AI in finance, including data privacy, algorithmic bias, transparency, and compliance with existing regulations to ensure responsible AI use in the sector.


Type of Traning

Short Course

Training Activity Rate
Training activity Hours
12
Training activity Date
6/04/2025 - 9/04/2025
Training Activity Days
Sun- Mon- Tue- Wed
Start and End Time
17:00 - 20:00
Training Activity Classification
Digitization and Recent Development
Language
Arabic
Methodology
Blended
Deadline for registration
3/04/2025
Price For Jordanian
96 JOD
Price For Non Jordanian
180 US$

* Will be given discounts for groups