• training@skillsforafrica.org
    info@skillsforafrica.org

Data-driven Economics: Big Data & Ai For Inflation Monitoring Training Course in Somalia

Introduction

In an increasingly digitized global economy, traditional methods of inflation monitoring are being transformed by the power of big data and artificial intelligence. This shift allows for the analysis of vast and diverse datasets—from consumer spending habits and online search trends to supply chain logistics and social media sentiment—in real-time. By moving beyond conventional economic indicators, we can gain a more nuanced, forward-looking perspective on price movements, providing policymakers, businesses, and investors with a critical advantage. This innovative approach offers unprecedented speed and accuracy in detecting inflationary pressures, enabling more proactive and effective decision-making.

This comprehensive training course is designed to equip you with the advanced skills needed to leverage these cutting-edge technologies. You will learn how to source, process, and analyze complex datasets to build predictive models for inflation. The curriculum covers foundational concepts in data science, the application of machine learning algorithms for time-series forecasting, and the use of natural language processing to extract insights from unstructured text. By the end of this program, you will be able to design and implement your own AI-driven inflation monitoring systems, contributing to more stable and resilient economic strategies.

Duration: 10 Days

Target Audience

  • Financial Analysts
  • Economic Researchers
  • Data Scientists
  • Quantitative Analysts
  • Portfolio Managers
  • Government Statisticians
  • Central Bank Employees
  • Risk Management Professionals
  • Market Strategists
  • Business Intelligence Specialists

Objectives

  • Understand the limitations of traditional inflation metrics.
  • Master the techniques for sourcing and cleaning large-scale datasets.
  • Apply machine learning models for forecasting economic trends.
  • Utilize natural language processing (NLP) to analyze sentiment.
  • Evaluate the performance and accuracy of predictive models.
  • Create compelling data visualizations to communicate insights.
  • Learn to integrate diverse data sources into a cohesive pipeline.
  • Recognize the ethical considerations in economic data analysis.
  • Understand the role of AI in financial market predictability.
  • Build a full-stack system for real-time inflation monitoring.

Course Modules

Module 1: Foundations of Big Data for Economics

  • Introduction to non-traditional economic data sources.
  • The structure and types of big data.
  • Core principles of data collection and ingestion.
  • Data quality, integrity, and cleaning techniques.
  • Legal and ethical considerations for data handling.

Module 2: Economic Data Acquisition & Scraping

  • Techniques for web scraping and API access.
  • Sourcing data from public and private datasets.
  • The challenges of unstructured data.
  • Building a reliable data pipeline.
  • The importance of data refresh and validation.

Module 3: Introduction to Machine Learning

  • A review of core machine learning concepts.
  • Supervised vs. unsupervised learning.
  • Regression models for forecasting.
  • Cross-validation and model evaluation.
  • Practical application of popular ML libraries.

Module 4: Time Series Analysis for Inflation

  • Introduction to time series data.
  • Common time series models.
  • Feature engineering for economic forecasting.
  • Handling seasonality and trends in data.
  • Predicting future inflation rates using historical data.

Module 5: Natural Language Processing (NLP) for Economic Insights

  • Introduction to NLP and its applications.
  • Sentiment analysis from news articles and social media.
  • Topic modeling of financial reports.
  • Entity extraction for key economic indicators.
  • Using NLP to anticipate market shifts.

Module 6: Advanced Predictive Models

  • An introduction to neural networks.
  • The use of LSTM and other RNNs.
  • Building ensemble models for robust predictions.
  • Applying gradient boosting algorithms.
  • Comparing different models for forecasting accuracy.

Module 7: Geospatial Analysis & Regional Insights

  • Introduction to geospatial data.
  • Mapping inflation trends by region.
  • Identifying local price shocks and their origins.
  • Using GIS tools for economic analysis.
  • Visualizing regional disparities.

Module 8: Data Visualization & Communication

  • Principles of effective data visualization.
  • Creating interactive dashboards.
  • Using visualizations to identify outliers and trends.
  • Tools for dynamic data storytelling.
  • Communicating complex findings to a non-technical audience.

Module 9: Cloud Infrastructure for Big Data

  • An overview of cloud computing platforms.
  • Storing and processing large datasets in the cloud.
  • Scaling big data applications.
  • Managing costs and security in a cloud environment.
  • Designing a scalable and reliable architecture.

Module 10: Capstone Project Part 1: Design

  • Defining a project scope and key objectives.
  • Choosing relevant data sources.
  • Outlining the data processing pipeline.
  • Selecting appropriate machine learning models.
  • Creating a project timeline.

Module 11: Capstone Project Part 2: Implementation

  • Building the data acquisition scripts.
  • Developing the data cleaning and transformation logic.
  • Coding and training the predictive model.
  • Writing scripts for evaluation and reporting.
  • Integrating all components into a functional system.

Module 12: Capstone Project Part 3: Presentation

  • Presenting the final project findings.
  • Discussing the model's performance and limitations.
  • Proposing future improvements and enhancements.
  • A peer review and feedback session.
  • Q&A with instructors and industry experts.

Module 13: Case Studies in Inflation Monitoring

  • A deep dive into a real-world case study.
  • Analyzing a past economic event using the tools learned.
  • Examining the predictive accuracy of models in practice.
  • Learning from successes and failures.
  • Discussing lessons for future applications.

Module 14: Integrating AI Tools

  • Using automated feature engineering.
  • Implementing model monitoring and alerts.
  • Integrating third-party APIs for real-time data.
  • Building a continuous learning pipeline.
  • Automating the entire forecasting process.

Module 15: Ethical AI & Responsible Data Use

  • Addressing bias in data and algorithms.
  • Ensuring fairness and transparency in AI.
  • Privacy concerns and data anonymization.
  • The societal impact of AI in economics.
  • Frameworks for ethical decision-making.

Training Approach

This course will be delivered by our skilled trainers who have vast knowledge and experience as expert professionals in the fields. The course is taught in English and through a mix of theory, practical activities, group discussion and case studies. Course manuals and additional training materials will be provided to the participants upon completion of the training.

Tailor-Made Course

This course can also be tailor-made to meet organization requirement. For further inquiries, please contact us on: Email: info@skillsforafrica.orgtraining@skillsforafrica.org  Tel: +254 702 249 449

Training Venue

The training will be held at our Skills for Africa Training Institute Training Centre. We also offer training for a group at requested location all over the world. The course fee covers the course tuition, training materials, two break refreshments, and buffet lunch.

Visa application, travel expenses, airport transfers, dinners, accommodation, insurance, and other personal expenses are catered by the participant

Certification

Participants will be issued with Skills for Africa Training Institute certificate upon completion of this course.

Airport Pickup and Accommodation

Airport pickup and accommodation is arranged upon request. For booking contact our Training Coordinator through Email: info@skillsforafrica.orgtraining@skillsforafrica.org  Tel: +254 702 249 449

Terms of Payment: Unless otherwise agreed between the two parties’ payment of the course fee should be done 10 working days before commencement of the training.

Course Schedule
Dates Fees Location Apply
15/09/2025 - 26/09/2025 $3000 Nairobi, Kenya
06/10/2025 - 17/10/2025 $3000 Nairobi, Kenya
13/10/2025 - 24/10/2025 $4500 Kigali, Rwanda
20/10/2025 - 31/10/2025 $3000 Nairobi, Kenya
03/11/2025 - 14/11/2025 $3000 Nairobi, Kenya
10/11/2025 - 21/11/2025 $3500 Mombasa, Kenya
17/11/2025 - 28/11/2025 $3000 Nairobi, Kenya
01/12/2025 - 12/12/2025 $3000 Nairobi, Kenya
08/12/2025 - 19/12/2025 $3000 Nairobi, Kenya
05/01/2026 - 16/01/2026 $3000 Nairobi, Kenya
12/01/2026 - 23/01/2026 $3000 Nairobi, Kenya
19/01/2026 - 30/01/2026 $3000 Nairobi, Kenya
02/02/2026 - 13/02/2026 $3000 Nairobi, Kenya
09/02/2026 - 20/02/2026 $3000 Nairobi, Kenya
16/02/2026 - 27/02/2026 $3000 Nairobi, Kenya
02/03/2026 - 13/03/2026 $3000 Nairobi, Kenya
09/03/2026 - 20/03/2026 $4500 Kigali, Rwanda
16/03/2026 - 27/03/2026 $3000 Nairobi, Kenya
06/04/2026 - 17/04/2026 $3000 Nairobi, Kenya
13/04/2026 - 24/04/2026 $3500 Mombasa, Kenya
13/04/2026 - 24/04/2026 $3000 Nairobi, Kenya
04/05/2026 - 15/05/2026 $3000 Nairobi, Kenya
11/05/2026 - 22/05/2026 $5500 Dubai, UAE
18/05/2026 - 29/05/2026 $3000 Nairobi, Kenya