What’s Included?

icon High-Video icon AI Mentor icon Access for Tablet & Phone

Prerequisites

    • Strong foundation in at least one programming language (e.g., Python, JavaScript, Java).
    • Basic understanding of the Software Development Lifecycle (SDLC).
    • Active subscription to the certificate (which includes free access/credits to all listed tools).
    • A reliable laptop/desktop and a stable internet connection.
    • No prior expertise in Machine Learning or Deep Learning models is required.
    • Familiarity with Git/GitHub for version control.

Skills You’ll Gain

  • Generative AI for Code (Code synthesis and optimization).
  • Advanced Prompt Engineering for development tasks.
  • AI-Accelerated Debugging and error prediction.
  • Automated Test Case Generation and Quality Assurance.
  • Architectural Design with AI insights.
  • Code Auditing for quality, performance, and security.
  • Simulation and Modeling of complex engineering systems.
  • Integrating AI models via API calls (e.g., using OpenAI services).
  • Using LLMs for Automated Documentation and legacy code explanation.
  • Mastering AI-Augmented IDEs and developer workflows.

Self Study Materials Included

Videos

Engaging visual content to enhance understanding and learning experience.

Tools You’ll Master

Tabnine

Tabnine

Heuristica

Heuristica

Codeium

Codeium

OpenAI Codex

OpenAI Codex

OpenModelica

OpenModelica

Figstack

Figstack

Replit Ghostwriter

Replit Ghostwriter

Cursor

Cursor

OpenAI Playground (free credits)

OpenAI Playground (free credits)

Simscale

Simscale

What You’ll Learn

Build AI-Driven Workflows that automate planning, coding, testing, and maintenance.

Master AI coding assistants (Tabnine, Codeium, Ghostwriter) for 10x productivity gains.

Design, build, and deploy AI features using the OpenAI Codex/Playground API.

Utilize Cursor to debug and navigate large codebases using natural language.

Apply Heuristica to enforce code quality and Simscale/OpenModelica for physical system modeling.

Generate comprehensive documentation and explain legacy code instantly with Figstack.

Implement best practices for Prompt Engineering to maximize LLM effectiveness in development.

Understand the ethical and security considerations of deploying AI-generated code.

Frequently Asked Questions

It is ideal for mid-level to senior Software Engineers, Developers, DevOps professionals, and QA specialists who are ready to adopt Generative AI tools to significantly boost their efficiency and code quality.

No. The course covers the fundamentals of LLMs and how to interact with them effectively through Prompt Engineering. Programming experience is the primary prerequisite.

The self-paced curriculum is designed to be completed in approximately 10 to 14 weeks, depending on your existing experience and time commitment.

All 10 tools are either free, open-source, or provide free tiers/trial credits sufficient for completing the entire hands-on curriculum (e.g., OpenAI Playground free credits).

Absolutely. The course is project-based, focusing on real-world engineering tasks like refactoring a legacy application, generating a test suite, and creating an AI-powered documentation feature.

No, this is a specialization certificate that builds upon existing programming and software engineering knowledge, focusing specifically on the new paradigm of AI-augmented development.

The course focuses on applying and integrating existing powerful LLMs (like Codex) into the SDLC, not on the complex task of building them from scratch.