Anti Money Laundering (AML) TTR Programme
Objective:
The AML programme under the TTR initiative aims to train mid/senior level professionals in anti-money laundering techniques and practices. The objective is to equip participants with the necessary skills to detect, prevent, and combat money laundering activities within their organizations.
Purpose
The purpose of the AML TTR programme is to enhance the capabilities of professionals in identifying and mitigating risks associated with money laundering. This programme is designed to provide participants with a deep understanding of AML regulations, compliance requirements, and effective investigation techniques.
Objectives
- To provide comprehensive training on AML regulations and compliance.
- To equip participants with practical skills for AML investigations.
- To enhance participants’ ability to develop and implement AML strategies.
- To prepare participants for certifications and job roles in AML.
- To foster a network of AML professionals for knowledge sharing and collaboration.
Programme Services
- Classroom Training:
- Detailed sessions on AML regulations, compliance, and investigation techniques.
- Interactive workshops and group discussions.
- Practical Sessions:
- Hands-on exercises and real-world case studies.
- Simulated AML investigations.
- Professional Development:
- Interview preparation and mock interviews.
- LinkedIn profile optimization.
- Internships:
- Placement opportunities with partner organizations.
- Real-world project participation.
- Networking and Collaboration:
- Access to conferences, forums, and networking events.
- Collaboration with peers and industry experts.
Contact Information
For further details, please contact ttr[@]cyberastridia.com
Books
Purchase Guide books for family’s, guardians, wards, managers, leaders on cybersecurity, AI and ML
Featured Articles
Dolor ultrices facilisis odio donec massa amet mattis nunc scelerisque nunc tincidunt vitae nunc amet placerat.
Secure Minds: Your Guide to Cybersecurity and Mental Health
Secure Minds: Your Guide to Cybersecurity and Mental Health. Author: Patricia Eromosele Understanding the Connection I doubt when Tim Berners-Lee proposed the World Wide Web (WWW) in 1989, while working at CERN, he was thinking about mental health. However, his proposition of providing a way to access information through a system of interlinked hypertext documents
Ethical Considerations in AI and ML Development
Why Ethics Matter: Imagine you have a magical pencil that can draw anything you want. That sounds fun, right? But what if this magical pencil could also draw things that could hurt people or make them sad? That wouldn’t be good. AI and ML are a bit like that magical pencil. They can create wonderful
AI Bias and Fairness: Addressing Challenges in Machine Learning
Artificial Intelligence (AI) has transformed the way we live, work, and interact with technology. Machine Learning (ML), a subset of AI, enables systems to learn from data and make decisions without explicit programming. While these advancements bring numerous benefits, they also bring forth an essential issue: AI bias and fairness Understanding AI Bias: AI systems