Want to turn an AI idea into a paying business without reinventing the wheel? AI Startup Book gives founders an operational playbook â not theory â with plug-and-run templates, pitch decks, MLOps checklists and a 90-day launch sprint.
Tired of expensive pilots that don't convert, ballooning inference costs, and regulatory surprise-storms? This book cuts straight to the operational steps that actually move deals: how to validate hypotheses faster, design low-risk pilots, control inference economics, and present an investor-grade narrative that VCs can act on. Inside you'll find actionable artifacts you can paste into playbooks or hand to your first hire:
â˘Validate â Build â Pitch â Scale loop with a 90-day sprint and week-by-week tasks â˘LaTeX-ready unit-econ & P&L templates and a live spreadsheet to project margins â˘Seed & Series A pitch decks, VC Q&A scripts, and investor diligence checklists â˘Complete MLOps & monitoring playbook: drift detection, canary deploys, alert runbooks â˘Region playbooks for US, UK/EU and India plus 5 sector case studies (Health, Fintech, Retail, EdTech, Manufacturing) â˘Downloadable companion files: code snippets, YAML alert templates, pitch PPTX and a metrics toolkit
This is a practical field manual for founders, product leads and ML engineers â built for real customers, not hypothetical labs. Each chapter contains step-by-step templates, checklists and real examples so you can run pilots that pay for themselves and scale profitably. What you will be able to do after reading:
â˘Design a pilot in 30 days that proves customer ROI â˘Build a defensible pricing and token-cost strategy that protects margin â˘Prepare board-ready metrics, investor decks and a reproducible diligence pack â˘Deploy safe, auditable models into production and measure drift
Includes an optional downloadable companion ZIP with editable templates and scripts to speed execution. â Himanshoo Jaiswal
AI Startup Book: How to Build, Pitch and Scale AI Businesses - Himanshoo Jaiswal
Want to turn an AI idea into a paying business without reinventing the wheel? AI Startup Book gives founders an operational playbook â not theory â with plug-and-run templates, pitch decks, MLOps checklists and a 90-day launch sprint.
Tired of expensive pilots that don't convert, ballooning inference costs, and regulatory surprise-storms? This book cuts straight to the operational steps that actually move deals: how to validate hypotheses faster, design low-risk pilots, control inference economics, and present an investor-grade narrative that VCs can act on. Inside you'll find actionable artifacts you can paste into playbooks or hand to your first hire:
â˘Validate â Build â Pitch â Scale loop with a 90-day sprint and week-by-week tasks â˘LaTeX-ready unit-econ & P&L templates and a live spreadsheet to project margins â˘Seed & Series A pitch decks, VC Q&A scripts, and investor diligence checklists â˘Complete MLOps & monitoring playbook: drift detection, canary deploys, alert runbooks â˘Region playbooks for US, UK/EU and India plus 5 sector case studies (Health, Fintech, Retail, EdTech, Manufacturing) â˘Downloadable companion files: code snippets, YAML alert templates, pitch PPTX and a metrics toolkit
This is a practical field manual for founders, product leads and ML engineers â built for real customers, not hypothetical labs. Each chapter contains step-by-step templates, checklists and real examples so you can run pilots that pay for themselves and scale profitably. What you will be able to do after reading:
â˘Design a pilot in 30 days that proves customer ROI â˘Build a defensible pricing and token-cost strategy that protects margin â˘Prepare board-ready metrics, investor decks and a reproducible diligence pack â˘Deploy safe, auditable models into production and measure drift
Includes an optional downloadable companion ZIP with editable templates and scripts to speed execution. â Himanshoo Jaiswal