RagaAI Catalyst by MAYANK MRagaAI Catalyst by MAYANK M

RagaAI Catalyst

MAYANK M

MAYANK M

RagaAI Catalyst- Powering Secure & Reliable GenAI Solutions

COMPANY

ROLE

UX Designer

EXPERTISE

UX/UI Design

YEAR

2024

RagaAI Catalyst - YouTube
Tap to unmute
RagaAI111 subscribers
0:04Time elapsed 4 seconds/1:18Time duration 1 minute, 18 seconds
More videos

Project description

RagaAI Catalyst is a cutting-edge AI testing platform, built specifically to detect and resolve issues across the entire LLM (Large Language Model) pipeline. Designed to address challenges like hallucination detection, implementing relevant guardrails, and ensuring context quality for retrieval-augmented generation (RAG) systems, Catalyst ensures that LLMs perform reliably in real-world applications.
RagaAI Catalyst platform empowers AI teams by automating issue detection, identifying root causes, and providing actionable insights to swiftly fix problems. It reduces risk exposure in production by 95% while accelerating AI development cycles by 90%. With support for various genAI applications like chatbots, agents, and customer support systems, RagaAI Catalyst offers a comprehensive, end-to-end solution for testing and optimizing AI across industries.
Timeline
Transforming initial concepts into final designs within 16 weeks, all while managing multiple projects.
Background
As LLMs and GenAI rapidly evolve, testing these models has become a complex and often confusing process, lacking the clarity needed by data scientists, product managers, and business leaders. Traditional workflows waste time and fail to deliver key insights. To address this, I worked closely with data scientists and stakeholders to design a more intuitive testing process. By simplifying complex workflows, we made critical information easily accessible, enabling faster, more effective testing while uncovering insights that drive impactful business decisions.
Case Study
Full Case Study Coming Soon
Lets connect on:
Like this project

Posted May 27, 2026

AI testing platform for LLMs ensuring reliability and reducing risk exposure.

Likes

0

Views

0