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No of Days 10

Price: Ksh 180000/ USD 2200

Agricultural Value Chain Finance Nairobi, Mombasa; Kenya

 

 This course on AgVCF provides an understanding of the gaps and challenges of agriculture finance. It defines AgVCF, different business models, and the available instruments for accessing financial services. Furthermore, it examines the risk mitigation tools with innovative methodologies and systems that have worked in services development. The provision of credit and general financial services to all the actors in the AgVC in developing countries, although high in demand, has not been widespread due to lack of extension of knowledge and appropriate financial instruments. In this course, the participants will learn to analyse the products and their delivery mechanisms with the risk mitigation tools to serve the actors of the entire AgVC.

The course takes a case study approach to analyse what works and what does not in the context of AgVCF. Facilitators will provide an overview of each topic and highlight the issues through an examination of case studies. Participants will be encouraged to share their own experiences and facilitate the discussions throughout the course.

Duration

10 days

Objectives

To sharpen the awareness of the fundamental issues of financing agriculture and agribusiness using an AgVCF approach and to build the skill set required in designing the instruments and delivering innovative services for all actors in the AgVC.

Prerequisites

The participants should have a basic understanding of financial services, such as agriculture finance, rural finance, microfinance, development finance, banking and/or rural economic development. Some knowledge of agricultural market development services and agribusiness would be helpful.

Who should attend?

The intended course participants for the training include: agricultural finance officers from different banks and financial institutions, government and non-government development agencies, micro-finance institutions (MFIs), donors who advise in and work with agriculture finance, and faculty staff and students of universities specializing in agriculture/rural finance.

Course contents

Module 01: The key issues (5)

Module 02: Actors and approaches (4)

Module 03: Loan planning and analysis (5)

Module 04: Loan risk analysis (5)

Module 05: RF service delivery (5)

Module 06: Loan management (5)

Module 07: Agricultural products and services (5)

Module 08: Portfolio risk management (5)

Module 09: The role of innovations (5)

Module 10: Savings, funding, product and program design (5)

Methodology

The instructor led trainings are delivered using a blended learning approach and comprises of presentations, guided sessions of practical exercise, web-based tutorials, and group work. Our facilitators are seasoned industry experts with years of experience, working as professional and trainers in these fields.

 

 

Course Schedule

Start Date End Date Register
08/12/2025 19/12/2025 Register
06/10/2025 17/10/2025 Register
03/11/2025 14/11/2025 Register
08/09/2025 19/09/2025 Register
04/08/2025 15/08/2025 Register
07/07/2025 18/07/2025 Register
02/06/2025 13/06/2025 Register
05/05/2025 16/05/2025 Register
07/04/2025 18/04/2025 Register
03/03/2025 14/03/2025 Register
03/02/2025 14/02/2025 Register
06/01/2025 17/01/2025 Register
07/10/2024 18/10/2024 Register
21/10/2024 01/11/2024 Register
04/11/2024 15/11/2024 Register
18/11/2024 29/11/2024 Register
02/12/2024 13/12/2024 Register
16/12/2024 27/12/2024 Register
Get In Touch

College House , Along University Way , Nairobi, Kenya

+254724527104/ +254734969612

info@datastatresearch.org

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