Medical Triage Agent
Hybrid conversational agent using Gemini Pro, Med-PaLM 2
Engineered to mimic a clinician's stepwise reasoning process, combining multiple AI technologies for comprehensive patient assessment and support
AI Engineering Services & Consulting
With over a decade of experience in modeling and delivering scalable AI solutions across healthcare, finance, and marketing, I translate uncertainty into upside. Across hospitals that can’t afford a single false negative, banks that process millions of micro-transactions a second, and brands that live or die on the next best offer, I design AI systems that transmute chaotic data into exponentially compounding value.
"I bring that same expertise to companies looking to ship real AI products: I learn your business language, find the real leverage point, prove the signal, then help you scale."
Hybrid conversational agent using Gemini Pro, Med-PaLM 2
Engineered to mimic a clinician's stepwise reasoning process, combining multiple AI technologies for comprehensive patient assessment and support
Applying Google LLMs for alternative therapy recommendations from RWD EHR
The generator uses advanced AI techniques to analyze biomedical data and generate novel hypotheses for drug repurposing
Multi-variate time-series models predicting readmission, mortality and LOS using clinical variables
Fine-tuned open source LLMs with hybrid retrieval with efficient inference and scalable deployment
End-to-end customer LTV and churn prediction as well as transactional fraud detection
COVID-19 diagnosis through acoustic analysis of breathing, cough, and speech signals
Latest technical walk-through on enhancing medical-reasoning LLMs with CoT fine-tuning
Low-memory, high-speed training on customer-support data
Master reasoning prompts and guardrails for reliable outputs
Push LLMs beyond narrow fine-tuning.
In the age of large language models (LLMs), the ability to perform complex tasks with minimal data is revolutionizing how we approach artificial intelligence. Few-shot and zero-shot learning are two pivotal techniques that push the boundaries of machine learning, enabling models to generalize across domains and perform tasks they were not explicitly trained on. This article delves into these learning paradigms, explaining their origins, mechanisms, and real-world applications
Monitor & remediate production ML models
End-to-end Unsloth & TRL workflow for customer service
In this article, I have dived into the technical intricacies of Unsloth and Gemma 3, showcasing their powerful features and how they can be leveraged together to build a highly optimized, fine-tuned model for any type of customer support assistant, whether it be a sophisticated chatbot, an intelligent agent, or an interactive FAQ system. I provided a step-by-step guide through the fine-tuning process, from data preparation to model deployment, highlighting best practices and practical considerations for achieving optimal performance in real-world customer service scenarios
Rethinking documentation Q&A with large-context LLMs.
15-min deck on self-evolving retrieval agents.
Identify high-ROI AI opportunities and receive a detailed technical roadmap to build a powerful, custom AI solution.
Take the architectural plan, forge your strategic blueprint and bring it to life through rigorous engineering, testing, and iteration.
Production deployment, LLMOps, monitoring, cost optimizations and team handover. Phased contracting available.
Mentoring tailored to your goals— ML engineers or data scientists who want to level-up fast or LLM Engineers who want to build a custom curriculum.
Fast, focused build to validate product/technical fit. We deliver an interactive demo, integration smoke-tests, and a clear go/no-go recommendation.
Design and ship multi-step agents that reason, call tools, and integrate with systems (APIs). Focused on observability, guardrails, so agents can operate reliably in production.