Senior Product Designer · B2B SaaS · AI · Bengaluru, India
Complexity is inevitable in enterprise. Confusion isn’t.
I design AI-powered B2B platforms that turn overwhelming, data-heavy systems into intuitive, decision-ready experiences — owning every product from blank canvas to measurable revenue impact.
India’s largest retail chains were making ₹100Cr+ site decisions on gut feel. I built the end-to-end location intelligence platform — IA, map interaction model, and data layer that turned 25,000+ geospatial signals into a boardroom-ready evaluation tool.
Retail expansion teams had no reliable property pipeline. I designed a multi-role workflow platform unifying brand managers, BD teams, and 700+ independent brokers in one system — mobile-first, zero to active in weeks.
Area managers were spending 3–4 hrs every Monday assembling reports manually. I designed an anomaly-first dashboard that surfaces critical issues proactively and auto-generates AI action briefs — no manual queries.
Post-acquisition, I led UX for B.ai — a conversational AI across web and 2,000+ stores. Designed the trust model, voice interaction patterns, precision sizing, and AI-guided checkout for India’s most linguistically diverse e-commerce base.
Before any wireframe, I define what decision the product is helping someone make — and what would stop them trusting it. Product strategy, user research, and constraint mapping happen before a single frame opens in Figma.
I design the component system, the interaction grammar, the edge cases, and the developer handoff — not just the hero screen. Enterprise products break at scale when the system isn’t designed upfront.
I define success metrics before the project starts, track them after launch, and bring post-release data into the next sprint. Design decisions I can’t measure are hypotheses, not deliverables.
AI features fail when users can’t understand or interrogate the output. I design explicit confidence signals, explainability layers, correction flows, and graceful failure states — so trust is built incrementally, not assumed.
I’ve led discovery with founders, pushed back on scope with engineering, and turned user research into sales narratives. I’m the designer who can hold the product thread across PM, engineering, GTM, and leadership simultaneously.
Oversimplifying a complex product is as damaging as overwhelming users with it. I find the mental model that works for both experts and novices, then build an interface architecture that serves both without compromise.
Before opening Figma, I run stakeholder alignment sessions, map user jobs-to-be-done, and establish the success metrics the design will be measured against. If the brief is wrong, I push back and reframe it. Most of the best design decisions happen before the first wireframe.
IA, user flows, mental models, edge cases — I design the architecture of the experience before I design its surface. For enterprise products especially, the structure determines whether the product scales. A beautiful screen built on a broken IA ships broken.
My developer background means I prototype at high fidelity, write specs that are precise, and make trade-off calls before they hit the backlog. I join engineering syncs, flag feasibility risks early, and produce annotated handoffs that don’t require a translation session.
Usability testing, A/B experiments (Google Analytics, Clarity, Mixpanel), and stakeholder walkthroughs — I test before launch and measure after. If a feature shipped and the metric didn’t move, I bring that data into the next sprint instead of moving on.
Every project I ship includes a component system, documented interaction patterns, and reusable design tokens — because one-off screens don’t scale and create debt for the next designer. I’ve built GeoIQ’s entire design system from scratch across 3 products.
I’ve presented to investors, aligned founders on product direction, translated user research into GTM narratives, and negotiated scope with engineering under deadline. Design is a coordination sport at senior level — I’m comfortable being the thread that connects strategy to shipped.
I understand spatial cognition, progressive data layering, and the visual language of geographic decisions. Built India’s first B2B retail location intelligence platform from 0→1 at GeoIQ, now used by the country’s largest expansion teams.
High-density, multi-role B2B systems where expert and novice users coexist. PropIQ onboarded 700+ first-time SaaS users with zero training. I design for adoption, not just usability.
Designed B.ai end-to-end: voice interaction model, trust signals, precision recommendation flows, and AI-guided checkout — measured at +17% conversion lift and ₹80L+ monthly revenue uplift via A/B testing.
I design dashboards that guide attention, not scatter it — anomaly-first layouts, drill-down hierarchies, and AI-generated summaries that replace manual reporting. Shipped for enterprise retail, fintech, and SaaS analytics teams.
Senior Product Designer
GeoIQ · Acquired by Lenskart
Bengaluru, India
I’m a Senior Product Designer with 3+ years of full-time design experience, shipping complex B2B SaaS, AI-powered products, and enterprise analytics platforms. Most recently at GeoIQ (acquired by Lenskart) — where I joined as founding designer and built the entire UX practice from zero as the company pivoted from services to product-led SaaS.
I own products end-to-end. That means leading discovery, defining information architecture, designing systems and edge cases, running usability testing, and closing the loop with post-launch metrics. I’ve shipped across geospatial intelligence, enterprise workflow platforms, AI-powered commerce, and retail analytics — domains where a wrong design decision has a measurable cost.
My background as a full-stack developer gives me a structural advantage in cross-functional teams: I write specs engineers trust, prototype at high fidelity, and make trade-off calls that don’t stall in backlog ambiguity. I can move fast in both early-stage ambiguity and large-team enterprise delivery.
The question I’m most interested in right now: how do you design AI systems that build user trust incrementally, rather than demanding it upfront? Every product I’ve shipped at Lenskart and GeoIQ has a version of this problem at its core. It’s the design challenge of this decade.
If you’re building a complex B2B product, scaling an AI feature, or need a designer who can own a problem from strategy to shipped — let’s talk. I respond within 24 hours.
City Maps workspace — layer-toggles for income bands, footfall, competitor density, and custom location sets. Designed for brand analysts without GIS expertise.
India’s fastest-growing retail chains — QSR, fashion, pharmacy — were making ₹100Cr+ site decisions using broker relationships, gut feel, and spreadsheets. The data existed but lived in silos: footfall APIs, census datasets, competitor scrapers. No one had stitched it into a usable decision tool for non-GIS users.
Sole product designer at GeoIQ. I owned everything from initial discovery through production handoff — user research with retail expansion teams, information architecture, the map interaction model, progressive disclosure system, component library, and all high-fidelity screens.
Comprehensive site report — catchment potential tab showing total households (4,50,880), affluence indicators, income bands, and competitor/complimentary brand overlays. Every data point surfaced from a single pin on the map.
Expansion Decision Dashboard — list-map split view showing markets under evaluation across Karnataka, with priority status, visited/total properties ratio, and direct map navigation.
PropIQ overview — broker-facing lead management, property detail with brand-matching status, requirement specs, and an AI-assisted improvement panel nudging brokers to fix submission gaps before review.
Retail brands expanding across India needed a reliable pipeline of qualified properties. But the broker network — hundreds of independent agents — was submitting via WhatsApp, email, and phone calls. Properties were duplicated, incomplete, or simply lost. Brand expansion teams had no visibility into the pipeline at all.
The challenge: three distinct user types (brand expansion managers, business development teams, and brokers) with completely different contexts, digital comfort levels, and definitions of progress. Building a single system that served all three was harder than building three separate tools.
Lead designer. I ran discovery research with all three user types, mapped journey conflicts across roles, designed the information architecture for the multi-role system, and owned all screens through to engineering handoff.
Market-level workflow — brand managers define catchments per locality, standardize property requirements, and directly activate brokers with a structured brief. Cuts time from planning to broker pipeline.
Property submission flow — brokers can add properties in two steps from mobile, with the catchment context always visible. Standardised briefs mean every submission is pre-aligned with brand requirements.
Quality gate flow — every broker-submitted property undergoes structured validation across 11 steps (site info, competitor analysis, market overview) before an approval deck is auto-generated for the brand.
MarketConnect — the brand-side counterpart to PropIQ, enabling expansion teams to evaluate, prioritise, and approve high-potential markets before sourcing begins.
PerformanceIQ hero — a centralised dashboard enabling area managers to monitor revenue targets, flag operational risks, and trigger corrective workflows across hundreds of active stores.
Area managers overseeing 28–50+ live stores had no single view of what was underperforming and why. Existing reporting required manually pulling data from separate systems, pasting into Excel, and spending 3–4 hours every Monday morning just to get the picture. By the time they had it, half the week’s intervention window was gone.
Worse: because the process was so painful, many managers had quietly stopped doing it consistently. Compliance issues, revenue misses, and staff attendance problems were going undetected for weeks.
Lead designer. I conducted contextual research with area managers across store networks, designed the full dashboard system, and worked directly with engineering on the anomaly detection and alert trigger logic.
Alert-first layout — the overview surfaces critical issues immediately (store opening compliance, performance off-track, NPS failures) with auto-created tasks for each store. Managers see the most urgent problem before anything else.
Operational health module — forecasted revenue vs. target with AI-suggested actions, staff attendance anomalies by store, inventory health + replenishment time, and reputation score. Each section surfaces “See (X) suggested actions” so managers always have a clear next step.
B.ai entry points — “Talk to B in 8 languages” banner on the Lenskart homepage, Meet B.AI onboarding sheet, microphone permission request, and the live conversational stylist interface: “Hi! I’m B, Lenskart’s eyewear expert.”
Lenskart serves 300M+ users across 2,000+ stores and a massive online catalogue. But frame selection was broken: customers had no reliable way to know which frames would fit their face, match their style, or suit their occasion. Browse-to-abandon rates were high. Returns were expensive. Customer service was overwhelmed with pre-purchase questions.
Post-acquisition of GeoIQ, I was tasked with designing B.ai — a conversational AI stylist that would be embedded directly into the Lenskart shopping experience and available in 8 languages.
Lead designer for the B.ai product. I defined the conversational interaction model, designed the voice permission and onboarding flow, built the trust and explainability patterns, and designed the frame recommendation and checkout assistance experiences.
Smarter frame selection — voice-enabled AI recommendations, precision sizing grid (face width 132mm M = Perfect Fit highlighted), and 3D try-on. Users go from browsing to confident selection in a single AI conversation.
AI-guided checkout — B.ai reads out saved addresses, confirms the payment amount (₹45,200), and takes the user to the payment page via voice. Designed for users who browse with one hand and find form-heavy checkout exhausting.