Course Information
- Available
- *The delivery and distribution of the certificate are subject to the policies and arrangements of the course provider.
Course Overview
Build AI-Powered Systems to Detect Anomalies, Fraud, and Unusual Patterns in Real-Time Using Machine Learning & Gen AI
Disclaimer- This course contains the use of artificial intelligence
Unlock the power of AI to detect anomalies, fraud, and suspicious behaviour in digital systems. "AI for Suspicious Activity Monitoring" is a hands-on, end-to-end course designed to teach you how to use traditional AI techniques, deep learning, and generative AI (GenAI) to monitor and respond to unusual patterns in real-world data.
Whether you're a developer, data analyst, or aspiring AI professional, this course provides practical tools and strategies to build intelligent monitoring systems using Python, autoencoders, and large language models (LLMs).
What You’ll Learn
Anomaly Detection Techniques: Implement classical and modern methods, including statistical outlier detection, clustering-based approaches, and autoencoders.
Deep Learning for Behaviour Monitoring: Use unsupervised learning (e.g., autoencoders) to detect irregular patterns in time series, text, or sensor data.
GenAI & LLM Integration: Explore how large language models like OpenAI’s GPT and frameworks such as LangChain and LLAMA-Index can assist in monitoring human-generated activity (e.g., suspicious conversations, document scans).
Fraud and Cyber Threat Detection: Apply AI tools to detect threats in finance, cybersecurity, e-commerce, and other high-risk domains.
Cloud-Based Implementation: Build scalable pipelines using tools like Google Colab for real-time or batch monitoring.
Text Analysis for Audit Trails: Perform NLP-based extraction, entity recognition, and text summarisation to flag risky interactions and records.
Why Enrol in This Course?
In today’s fast-paced digital world, AI-powered monitoring systems are essential to detect threats early, reduce risk, and protect operations. This course offers:
A practical, Python-based curriculum tailored for real-world applications
Step-by-step project-based learning guided by an instructor with an MPhil from the University of Oxford and a PhD from the University of Cambridge
A rare combination of AI, deep learning, and GenAI in a single course
Use of cutting-edge LLM frameworks like OpenAI, LangChain, and LLAMA-Index to expand beyond numerical anomaly detection into text-based threat detection
Lifetime access, updates, and instructor support
Course Content
- 4 section(s)
- 35 lecture(s)
- Section 1 Introduction
- Section 2 llms and genai
- Section 3 Autoencoders
- Section 4 Miscellaneous Section
What You’ll Learn
- Learn about the uses of self-supervised machine learning
- Implement self-supervised machine learning frameworks such as autoencoders using Python
- Learn about deep learning frameworks such as Keras and H2O
- Learn about Gen AI and LLM Frameworks
Reviews
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AAshwini Honakeri
Excellent
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AANTONIO CHAGAS
could be more dynamic, with more presentations, explanations, showing the code has resources for download
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AAharez Imad
Before this course, I had little knowledge about AI in security, but now I can confidently say I understand the fundamentals of machine learning and how it helps in monitoring.
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SSadiqullah Ghani
The best part of the course was the real-world case studies. They showed exactly how AI systems can prevent threats before they escalate.