AI Trainings for Dev Teams

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.
AI Trainings for Dev Teams

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

    AI Engineers

    Focus on practical implementation and deployment of AI solutions.
  • Data Scientists

    Data Scientists

    Specialize in extracting insights and building new models.
  • ML Engineers

    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.
  • Building AI-Driven Applications

    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.

Help your team make the leap.