AI
MasterAI Institute
Specialised Prospectus · 01
Combination Programme · Premium Track

Machine Learning
& AI Combination.

A fifteen-month combination programme pairing rigorous machine-learning theory and engineering with full AI product-building craft. The most complete ML-to-product education offered in India.
Duration
15 Months
Investment
₹5,00,000
Format
In-Person
Batch
15–20
Chandigarh · Mohali · India
DOC-SPEC-2026.ML-AI
Chapter One · Why Combine

Two disciplines. One practitioner.

India produces ML researchers. India produces AI product builders. India does not, at scale, produce both in the same person.

The Gap

Machine-learning programmes treat the model as the artifact. Product programmes treat the model as a magic box. The result is two specialists who cannot speak to each other — and a third role that India urgently needs but does not produce.

That third role is the engineer-founder who can pre-train, fine-tune, evaluate, and deploy their own models inside a product they themselves built, shipped, and monetised.

The Combination

This programme combines a deep machine-learning track — covering neural network fundamentals, transformer internals, fine-tuning methodology, evaluation regimes, and GPU economics — with the full MasterAI product-building curriculum.

Graduates can both train and ship. They build models other graduates have to buy from OpenAI. They architect products other model-builders have to outsource. They are the rare bilingual operator.

The ML person who cannot ship is half a practitioner. The product builder who cannot fine-tune is half a founder. We refuse to graduate halves.
Chapter Two · Programme at a Glance

The numbers.

15
Months · in-person
15–20
Students per batch · smallest of all tracks
04
Phases of work · ML, product, integration, launch
02
Shipped artefacts · one trained model, one launched product

Who Should Apply

Candidates with quantitative aptitude or prior coding background. Students who want both research literacy and product capability. Engineers planning to start a model-led AI company within the year.

Pre-requisites

Strong comfort with high-school mathematics and either a coding background or completed Tier I of the main MasterAI pathway. A short technical interview confirms readiness.

Graduation

Graduation requires shipping two deliverables: a fine-tuned model with published evaluation report, and a launched product that uses it in production with paying users.

Chapter Three · Curriculum Structure

Four phases. Fifteen months.

A deliberate sequencing of theory, building, integration, and launch.
01
Months 1–4 · Phase One

Machine Learning Foundations

Mathematics review, neural network theory, transformer internals, modern training infrastructure.

  • Linear algebra, calculus, statistics — the working subset for ML
  • From perceptron to transformer — building intuition, then architecture
  • Attention mechanics, encoder–decoder, MoE, KV cache
  • Training infrastructure — CUDA basics, distributed training, mixed precision
  • Evaluation methodology — benchmarks, hold-outs, eval harnesses
02
Months 5–7 · Phase Two

Fine-Tuning & Deployment

Move from theory to applied ML engineering. Fine-tune your first production-ready model.

  • LoRA, QLoRA, full fine-tunes — when each is appropriate
  • Synthetic data generation, evaluation, dataset hygiene
  • RLHF, DPO, KTO — alignment technique selection in practice
  • Model serving — vLLM, TGI, llama.cpp, edge deployment
  • GPU economics — H100 vs A100 vs consumer; rent vs own
03
Months 8–11 · Phase Three

AI Product Architecture

The full MasterAI product-building stack, applied to a model the student trained themselves.

  • Full-stack product development with v0, Bolt.new, Cursor AI
  • Multi-agent orchestration using your fine-tuned model as the core
  • Production architecture — auth, billing, observability, cost control
  • Programmatic SEO and AI-driven distribution channels
  • Subscription & usage-metered billing tied to model token economics
04
Months 12–15 · Phase Four

Launch · Scale · Research Output

Ship to market. Iterate against real users. Publish a research artefact.

  • Public product launch with paid acquisition campaigns
  • Telemetry, evaluation pipelines, model retraining loops
  • Investor introductions via CU-TBI and regional VC network
  • Optional: short technical paper or evaluation report for publication
  • Demo Day with founding instructor, faculty, and invited investors
Chapter Four · Investment & Enrolment

A serious fee for a serious programme.

No discounts. No hidden costs. The most demanding programme we offer.

Total Tuition

₹5,00,000
Inclusive · GST extra · payable in two instalments

What This Includes

Fifteen months of in-person tuition, weekly one-on-one mentorship across all four phases, GPU compute credits sufficient for fine-tuning workloads, lab access at both campuses, guest faculty sessions, and post-graduation alumni mentorship for a minimum of one year.

Payment Schedule

Ten percent (₹50,000) on offer acceptance. Forty percent (₹2,00,000) at batch start. Fifty percent (₹2,50,000) at the end of Phase Two.

Limited financing is available through institutional banking partners for qualifying applicants.

Cancellation & Refund

Full refund (less ten percent) is available up to four weeks before batch start. After batch start, refunds are subject to discretion of the founding instructor and the institutional policy book.

Chapter Five · Apply

Apply for the next combination batch.

Batches start quarterly. Capacity is fifteen to twenty students. Founder interview is mandatory.
01
Written Application

Online form with brief statement of intent. Five minutes.

02
Technical Interview

Thirty-minute call to verify mathematical and coding readiness.

03
Founder Interview

Thirty-minute conversation with Sam Sandhu. Mutual fit and motivation.

04
Offer

Decision within seven days. Ten percent commitment fee secures the seat.

Admissions Office

+91 89685 66992

admissions@masterai.education
masterai.education

Apply for the Combination Programme 📞 Call +91 89685 66992