Empower your full stack developers to become AI engineers who can build and deploy intelligent, AI-driven applications.
Elevate Your Dev Teams to AI Specialists Equip your full stack engineers with in-depth AI competencies to build, deploy, and scale intelligent systems.
Accelerate Delivery & Optimize Quality Harness AI-driven tooling and best practices to automate repetitive tasks, refine user experiences, and deliver robust solutions faster.
Future-Proof Your Tech Stack Adopt next-gen AI strategies, frameworks, and methodologies to stay ahead.
Why Transform Full Stack Engineers
into AI Engineers?
Accelerate Development
Automate repetitive tasks, streamline testing, and boost productivity with AI-powered code suggestions and tools.
Improve Product Quality
Integrate advanced AI features, optimize user experiences, and adapt products to real-time data and user behavior.
Enhance Collaboration & Efficiency
Leverage AI-driven documentation, code reviews, and design suggestions to speed up development cycles.
Key Responsibilities of an AI Engineer
Integrate pre-trained models and AI tools into existing products.
Design, develop, and deploy scalable AI systems.
Collaborate with data scientists, engineers, and stakeholders to align AI solutions with business goals.
Monitor performance, troubleshoot issues, and ensure reliability in production.
AI Engineer vs. Other Roles
AI Engineers
Focus on practical implementation and deployment of AI solutions.
Data Scientists
Specialize in extracting insights and building new models.
ML Engineers
Concentrate on research, model optimization, and algorithm refinement.
Pricing
Custom add-ons available for specialized technologies or advanced topics.
Discounts offered for multiple team bookings or extended training sessions.
Fully Customizable Training Agenda
1. Introduction to AI & Recent Advancements
Overview of AI for Full Stack Software Developers: Foundational understanding of AI concepts, including machine learning and deep learning, focusing on how these fit into a full stack developer's skillset.
Latest Trends in AI: Explore recent breakthroughs in generative AI, LLMs (Large Language Models), and practical applications relevant to web and backend development.
Use Cases in Full Stack Development: How AI is transforming areas like intelligent user interfaces, backend automation, code generation, and testing.
AI Development Tools Overview: Introduction to tools like GitHub Copilot, Cursor, Supermaven, and other AI-driven IDE assistants that enhance productivity. Learn how to use them efficiently, including their strengths and weaknesses.
2. Building AI-Driven Applications
API integration for AI features: Integrate services like OpenAI API, Anthropic, and self-hosted open-source models into web apps for smarter front-end and backend capabilities.
Prompt engineering: Master prompt crafting to optimize language model outputs and tackle development challenges.
AI frameworks & libraries: Explore LangChain, LangGraph, LlamaIndex, and their integration into full-stack tech stacks.
Building agentic systems: Design systems that autonomously perform tasks using AI-driven decision-making.
Embeddings & vector databases: Use embeddings and vector databases for intelligent search and recommendations.
Retrieval-Augmented Generation (RAG): Combine retrieval methods with language models for context-aware responses.
Cost optimization: Manage and optimize AI system costs while balancing performance and budget.
Multimodal AI UI/UX: Create intuitive experiences combining text, images, voice, and other inputs/outputs.
AI system security: Implement best practices to secure sensitive data, maintain consistency, and prevent errors.
Responsible AI: Address ethical concerns like data privacy, bias, and transparency, with real-world mitigation strategies.
3. Future of AI in Software Development
AI trends & predictions: What to expect in the next 2-5 years and how full stack developers can stay ahead by expanding their AI capabilities.
Discussion & wrap-up: Open discussion on potential AI projects for your team and strategies for transitioning from traditional full stack roles to AI-enhanced engineering roles. Opportunity to reflect, share key takeaways, and network with fellow developers transitioning to AI engineering.