Scale Your Team with Gen AI in Product Design

Empower your product teams to move from initial concept to validated design faster. Lyzr is the secure, enterprise-grade Gen AI platform for modern product design.

AI-Assisted Design

for Your Workflow:

Lyzr supports your entire product design lifecycle. From synthesizing research to accelerating prototypes and ensuring governed handoffs, we streamline every step of the way.

01

Research Synthesis

02

Idea Generation

03

Prototype Acceleration

04

Handoff Readiness

Integrate Gen AI into Your

Workflows

Select a workflow and empower your team to deliver faster, more consistent results while improving cross-functional collaboration and alignment.

From PRD to Concepts

Convert requirements into multiple UI/UX directions with constraints.

Design System Growth

Summarize user testing feedback and propose fixes prioritized by impact and effort.

Usability Insights

Summarize user testing feedback and propose fixes prioritized by impact and effort.

Move beyond slow cycles and stakeholder churn. Deliver confident, spec-aligned designs with speed and clarity.

Unlock Measurable Value

For Your Design Team

Reduce time from initial idea to a testable prototype without sacrificing quality.

Explore more creative options each sprint while keeping all constraints consistent.

Ensure designs stay tied to requirements, accessibility, and system rules.

Align PM, design, and engineering with shared, clear artifacts.

Enterprise Capabilities

for Product Design

Our platform supports multimodal inputs, robust governance, and seamless integration into your product design workflow from start to finish.

Multimodal Inputs

Use PRDs, sketches, user feedback, and screenshots as inputs to generate outputs.

Constraint Generation

Generate concepts that strictly follow brand, accessibility, and platform rules.

Automated Design QA Checks

Automatically flag inconsistencies in flows, copy, components, and requirements.

Workflow Integrations

Connect to your existing tools like Jira, Figma, and Confluence for usable artifacts.

Enterprise Governance

Utilize permissions, audit logs, and secure data handling controls.

Comparing Lyzr to

Generic AI Tools

Lyzr provides a "Bank-in-a-Box" AI framework, ensuring your generative AI banking security matches your most stringent internal standards through total isolation.

Feature

Generic AI Tools

Copywriting AI

Lyzr

PRD to Design Flow

Manual process

Not applicable

Automated concept gen

Design-System Adherence

No awareness

Style guide only

Built-in compliance

Multimodal Input

Text-only input

Text-based

Text, image, and docs

Integrations

Requires API work

Limited plugins

Native Jira/Figma sync

Audit Controls

No audit trails

User-level only

Full enterprise controls

Spec and Access Checks

No validation

Not supported

Automated QA checks

Manual edits

Manual edits

Copy edits

Instant design variants

Research Synthesis

Manual analysis

Limited scope

Automated insight reports

The Enterprise Choice

for Design AI

Workflow-first AI

Built for product design steps, not isolated chat interactions.

Design-safe Outputs

Produces consistent assets aligned to your specs, patterns, and constraints.

Toolchain Ready

Fits into your existing design, PM, and engineering tools with minimal disruption.

Secure by Design

Supports robust permissions, data controls, and compliance-friendly operations.

Built Specifically for

Financial Institutions

Join a growing ecosystem of consulting and technology partners

Lyzr has fundamentally changed our design sprints. We're now moving from a detailed PRD to a range of high-fidelity, testable concepts in days, not weeks. The alignment between product specs and the initial design outputs has eliminated at least one major rework loop for every new feature.

Head of PD

Fintech B2B SaaS Company

Zero

Data Exfiltration Incidents

Your Path to AI-Powered

Product Design

Workflow Discovery

Identify your top design bottlenecks and target use cases.

Ingest Data & Rules

Connect PRDs, your design system, project constraints, and policies.

Pilot Sprint

Run a controlled pilot with clear, measurable cycle-time reduction goals.

Scale and Govern

Expand to more teams, add integrations, and set governance KPIs.

Frequently asked questions

In real-world teams, it's used for concept ideation automation, turning product requirements into multiple design directions instantly. It also accelerates prototyping by generating wireframes and user flows, and synthesizes user research into actionable insights for faster, data-informed decisions.
It integrates seamlessly, acting as a co-pilot. It doesn't replace designers but augments their workflow. It can connect to tools like Figma and Jira, taking inputs like PRDs to produce initial designs, which are then refined by the design team, saving significant upfront effort.
Multimodal inputs deliver the best results. This includes structured product requirement documents (PRDs), user personas, raw user feedback, existing design system rules, and even rough sketches or wireframes. The more context the AI has, the more relevant and aligned its outputs will be.
Yes. Enterprise-grade platforms are designed for this. You can provide your design system tokens, component libraries, and accessibility standards (like WCAG) as constraints. The AI then generates designs that are compliant from the start, reducing manual checks and rework.
Utilize permissions, audit logs, and secure data handling controls.
Yes, robust platforms offer native or deep integrations. This allows for a smooth AI product design workflow, such as pulling requirements from a Jira ticket, generating designs that can be pushed to Figma, and documenting the rationale and specs back into Confluence automatically.
This is managed through strong constraint-based generation and grounding. By providing the AI with specific rules from your design system, PRDs, and accessibility guidelines, its creative space is narrowed. This ensures outputs are relevant, consistent, and adhere strictly to project specs.
Enterprise solutions provide comprehensive governance, including role-based access controls, detailed audit logs to track generation history, and secure handling of all proprietary data. You can manage who can use which models and data sources, ensuring full compliance and security.
Key metrics for ROI include reduction in design cycle time from concept to prototype, an increase in the number of design variations explored per project, and a decrease in rework caused by misaligned specs. You can also measure improvements in design-to-development handoff efficiency.
A focused pilot can be launched within a few weeks. It typically starts by identifying a specific, high-value use case, connecting the necessary data sources like your design system and a sample PRD, and then running a single design sprint to measure the impact on speed and quality.
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