Build AI employees
Design domain-specific operators that automate business workflows across sales, HR, support, finance, and operations.
Architect-led AI engineering training
Build AI agents, RAG applications, MCP servers, AI workflows, and production-ready AI systems through live, project-based training.
Software architecture mindset, enterprise delivery experience, and production system thinking.
Real AI systems: RAG apps, agents, MCP servers, automation pipelines, and deployable products.
Grow into AI engineering, architecture, automation consulting, or product-building roles.
Book a free demo, choose a roadmap, and join live project-based sessions.
Design domain-specific operators that automate business workflows across sales, HR, support, finance, and operations.
Learn authentication, security, observability, monitoring, cost control, and reliable deployment patterns.
Connect AI to APIs, databases, documents, DevOps pipelines, and cloud infrastructure used by real companies.
Challenge: AI tools are everywhere, but production patterns are unclear.
Learn: RAG, agents, APIs, evals, testing, and deployment.
Outcome: Build portfolio-grade AI applications.
Challenge: Teams need scalable AI designs, not isolated demos.
Learn: AI architecture, MCP, observability, security, and scaling.
Outcome: Lead enterprise AI adoption confidently.
Challenge: Testing AI systems requires new automation thinking.
Learn: AI test generation, evaluation, regression checks, and test agents.
Outcome: Move toward AI QA and automation engineering.
Challenge: AI apps introduce model, cost, latency, and reliability concerns.
Learn: Docker, Kubernetes, monitoring, deployment, and model operations.
Outcome: Deploy and operate AI workloads safely.
Challenge: Leaders must separate hype from useful execution.
Learn: Use-case selection, team enablement, governance, and ROI planning.
Outcome: Run practical AI adoption programs.
Challenge: Academic learning rarely shows production AI engineering.
Learn: Python, LLMs, RAG, agents, GitHub projects, and demos.
Outcome: Graduate with visible AI engineering proof.
Challenge: Interviews require evidence, not certificate-only learning.
Learn: Interview patterns, project explanation, resume positioning.
Outcome: Build an AI portfolio recruiters can understand.
Challenge: AI product ideas need MVP clarity and technical direction.
Learn: AI product architecture, workflows, SaaS packaging, and cost planning.
Outcome: Prototype market-ready AI solutions faster.
Chat UI, streaming responses, memory, auth-ready backend, document upload, and observability hooks.
Score resumes, suggest rewrites, and map skills to job descriptions.
Resolve tickets using knowledge base search, tool calls, and escalation rules.
Screen profiles, summarize interviews, and rank candidates with explainable criteria.
Generate test scenarios, edge cases, and automation-ready test data.
Review pull requests for security, maintainability, and architecture issues.
Build a safety-focused assistant for intake summaries and document search.
Extract fields, validate totals, and route exceptions for approval.
Index PDFs, answer questions with citations, and manage retrieval quality.
Summarize meetings, create actions, and send follow-up emails.
Connect forms, databases, notifications, and approval flows with AI operators.
Classify, draft, and route emails with human approval controls.
Analyze filings, news, and financial metrics with traceable summaries.
Create itineraries, compare options, and manage constraints with tool use.
Find clauses, summarize risk, and compare contract versions.
Live demo videos
Free learning resources
Skills, projects, tools, and milestones for engineering roles.
System design, governance, deployment, and enterprise strategy.
RAG, agents, LLM APIs, architecture, debugging, and project explanation.
GitHub-ready projects, demo videos, resume stories, and certifications.
Student dashboard
Community
"The training helped me move from Copilot usage to building an AI code review agent with GitHub integration."
Software Engineer to AI Engineer track"We identified automation use cases and built a working document search assistant for our internal teams."
Corporate training cohort"The architecture sessions made AI deployment, monitoring, and cost planning clear for our product roadmap."
Startup founder program18 years of experience in the IT industry.
17 years of experience in the IT industry.
Basic programming is helpful. Separate support is provided for students, QA engineers, managers, and founders.
Python is the primary language, with JavaScript or TypeScript references where useful for web applications.
Core training is live and project-based. Recordings, notes, assignments, and code downloads are available in the student dashboard.
Yes. Certificates are issued after completing required projects and assignments.
Career guidance includes resume positioning, interview preparation, portfolio review, and project explanation practice.
Class schedule, refund terms, and support duration are shared during the demo call based on the selected cohort.
Enroll or book a demo
Use the form for training inquiries, demo booking, WhatsApp contact requests, email support, and corporate training programs.