Hi, I'm Ajay Sharma —

I work where
AI systems meet product.

2.9+ years across AI evaluation and product operations — improving model quality, solving user conversion problems, and shipping AI products grounded in real workflows.

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Frontier Lab Programs
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Feature Adoption Growth
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Reasoning Failure Axes
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Trial-to-Paid Conversion
Dual-Pass
Factuality Method
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Observed Conversion Lift
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AI Products Shipped

Products built from problem framing to working prototype.

Each project started with a user problem, not a technology choice.

Case Study Live Prototype

Signal - Returns Discovery Tool

  • Operational PMs spend 7-8 hours per week manually extracting and synthesizing signals across 5 disconnected data sources, with no existing tool that performs ranked, cross-source synthesis at scale.
  • PMs owning returns, fulfillment, or CX verticals at product-led companies who need ranked problem signals, not raw insight dumps.
  • Built a live AI pipeline that ingests 5 source types, returns data, CRM transcripts, reviews, fraud signals, and NPS, processes each through a dedicated RAG layer, and synthesizes a ranked top-5 problem list with confidence scores and evidence citations.
  • Chose separate RAG namespaces per source over a unified index to prevent signal contamination across qualitative and quantitative data types, a deliberate tradeoff that increases infra cost but preserves retrieval integrity.
  • Targets a reduction in PM discovery time from 7-8 hours per week to 2 hours, a 75% time savings, validated against a manual extraction baseline.
  • Currently processing 5,700+ live records; PM signal adoption target is 60% vs. 0% baseline, measured by PMs tagging the tool as the source of their problem definition.
Signal Landing Page
Signal ★
Case Study AI Simulator

RoleBridge - Career Transition Interview Simulator

  • Career-transition candidates lose offers in the interview room, not at the resume screen — their answers collapse under follow-up pressure because they have never practiced explaining their experience in the target role's language.
  • Professionals actively switching roles or industries who have the experience to get shortlisted but lack a way to stress-test their interview narrative before the real conversation.
  • Built an AI-driven interview simulator that parses the user's actual resume and target job description to generate contextually grounded, role-specific follow-up pressure — not generic practice questions.
  • Chose to focus the session on a single user-selected resume section rather than a broad interview, forcing deep articulation over surface coverage — the key design tradeoff that separates drill-down from generic coaching.
  • Product delivers a structured evaluation report to the user's inbox scoring evidence quality, ownership clarity, and role-language fit — giving candidates a concrete pre-interview diagnostic.
  • Target: session completion rate as primary success metric; report open rate as the secondary signal of perceived value.
RoleBridge Landing Page
RoleBridge ★
Live Product AI Workflow

Resumatch — AI Resume Tailoring Engine

  • Job seekers applying to multiple roles spend 20–30 minutes manually tailoring their resume per application, a bottleneck that makes high-volume search unsustainable.
  • Professionals applying at volume who need role-specific, recruiter-ready positioning without rewriting their accomplishments from scratch each time.
  • Built a web app that accepts a base resume and a job description, runs a 9-stage AI pipeline with 4 independent rewrite passes across Summary, Experience, Projects, and Skills, and outputs a downloadable PDF in approximately 1 minute.
  • Chose section-isolated AI rewrites over full-document generation to prevent hallucination — factual data including titles, tenures, and company names are locked and never touched by the model.
  • Reduces a 20–30 minute manual editing cycle to a 1-minute automated run, targeting over 95% time reduction per application.
  • 4 targeted AI decisions across a 9-stage pipeline — each section rewritten with dedicated context, not a single monolithic prompt.
Resumatch Landing Page
Resumatch ★
Case Study Live Project

Swiggy Instamart — Smart Cart Retention Feature

  • Quick-commerce cart pages serve static, category-based recommendations that ignore real-time cart composition, missing high-intent upsell moments for shoppers mid-session.
  • Mobile grocery shoppers building mixed carts on Swiggy Instamart who are receptive to contextual product discovery at the point of checkout.
  • Designed and prototyped a dual-engine cart recommendation system combining a deterministic rule layer for reliability with a live LLM (Gemini 2.0 Flash) layer for contextual bundling (e.g., cart containing "Chips" surfaces a "Movie Night" recommendation cluster).
  • Chose a server-side API architecture over client-side AI calls to eliminate API key exposure — a deliberate security-first tradeoff that also reduced attack surface without impacting recommendation latency.
  • Identified and remediated a high-severity API key exposure vulnerability present in the original client-side implementation.
  • Identified redundant AI calls as a latency and cost risk during rapid cart toggling and scoped a caching solution as a next-sprint requirement.
Smart Cart ★
Swiggy Instamart Landing Page

Where I've Built Product Judgment

June 2024 – April 2026

Team Lead - AI Evaluation & Quality Systems

Turing

RLHF · Benchmark Design · LLM Evaluation · Quality Systems
  • Diagnosed broken production rubrics scoring near-zero (0.0–0.2) by isolating conflicting constraints and vague referents; enforced an 8-section verification checklist that restored benchmark scoring reliability across a frontier LLM engagement.
  • Designed adversarial multi-turn conversations using a structured 3-phase methodology - context seeding, topic steering, implicit recall - to systematically surface model failure modes across 4 reasoning axes (RVE, SC, IM, IR).
  • Identified systematic false positives in an internal LLM evaluator by reconciling automated flags against human QA outcomes; shared structured edge-case examples that helped refine evaluation alignment and usability.
  • Promoted from IC to dedicated QA based on evaluation output quality; shaped multimodal training data reliability across OCR, diagram reasoning, and chart interpretation within an RLHF pipeline for a major platform.
  • Led teams of 3–14 across sustained engagements and high-churn bootcamps; maintained annotation quality standards, disseminated guideline revisions, and delivered performance-based staffing recommendations to leadership.
April 2023 – April 2024

Associate Product Operations Manager

Preplaced

Problem Discovery · Marketplace Trust · Funnel Optimization
  • Diagnosed trial-quality degradation and supply-side capacity overload as dual conversion blockers via Mixpanel data and 20–25 mentor interviews; contributed the pre-booking filter concept that became a customizable screening and intake-cap feature.
  • Surfaced a post-trial context-decay problem - where buyer conviction faded within 1–2 days despite positive sessions - and contributed to a structured post-session plan; adoption scaled from 3.6% to ~60% in six months, associated with a ~21% observed uplift in trial-to-paid conversion.
  • Translated recurring mentor no-show complaints into a rule-based accountability framework with explicit thresholds, reducing no-show rates by 10% and strengthening marketplace trust for first-time users.
  • Operated close to users and funnel data in a founder-led pre-seed startup; repeatedly pulled into founder discussions because of direct signal from calls, objections, post-trial outcomes, and conversion patterns.
Ajay Sharma

Two adjacent tracks. One clear direction.

Preplaced gave me close exposure to user problems, conversion funnels, and marketplace operations in a founder-led startup. Turing put me inside AI evaluation systems - diagnosing rubric failures, designing adversarial test cases, and learning what makes quality measurement trustworthy or noisy. Together, those tracks built the foundation I bring to product work: user insight, systems thinking, and ground-truth knowledge of how AI breaks in practice. AI PM is the convergence, not a pivot.

Connect on LinkedIn →

Shipped AI products. Operated inside RLHF systems. Ready for the product side.

Open to PM, APM, Product Analyst, and Founder’s Office roles where product sense and AI depth both matter.