Learners will demonstrate mastery by completing a Secure AI Testing Toolkit, where they will evaluate a dependency update, run integration tests, and document their findings, while developing a comprehensive testing suite with pytest that achieves at least 88% coverage. As part of this process, learners will evaluate a sample PR upgrading LangChain from version 0.1.5 to 0.1.8. Working in an off-platform Python environment, they will review changelogs for deprecated features, run security scans to identify vulnerabilities, and perform integration tests to validate compatibility. They will submit a structured report that includes an evaluation of a LangChain upgrade, a testing strategy documentation, and a reflection on the CI/CD pipeline improvements.

Test and Secure Your AI Code

Test and Secure Your AI Code
This course is part of Agentic AI Development & Security Specialization

Instructor: LearningMate
Access provided by Interbank
Recommended experience
What you'll learn
Evaluate AI code dependencies for security and compatibility, and design testing strategies to ensure long-term code quality and coverage.
Skills you'll gain
- AI Security
- Secure Coding
- Software Versioning
- Dependency Analysis
- Large Language Modeling
- Continuous Integration
- Unit Testing
- Software Testing
- Code Coverage
- Integration Testing
- Vulnerability Scanning
- Vulnerability Assessments
- CI/CD
- Test Automation
- Test Driven Development (TDD)
- Continuous Deployment
- Skills section collapsed. Showing 10 of 16 skills.
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December 2025
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There are 2 modules in this course
This module introduces learners to secure dependency management practices within modern AI frameworks such as LangChain, LangGraph, and CrewAI. Learners will conduct vulnerability assessments, analyze version updates using semantic versioning (SemVer), and apply software engineering discipline to maintain stable and secure AI environments. The module includes a guided changelog analysis and a dependency upgrade evaluation.
What's included
2 videos2 readings2 assignments
This module focuses on developing and applying structured testing methodologies for AI and multi-agent systems. Learners will create unit and integration test suites using pytest, design mocks for LLM responses, and achieve measurable code coverage goals. The module blends best practices in test-driven development (TDD) with secure software maintenance principles to ensure reliable AI performance.
What's included
3 videos1 reading2 assignments1 ungraded lab
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