# Kamal T > Sr Software Engineer | Generative AI, Agentic AI, LLMs, RAG, Agentic Systems | Led AI Copilot (↓87% resolution time) for 500+ users | LangChain, Transformers, MLOps, AWS/Azure | KPMG, Ex-Teladoc | Scaling AI systems Location: San Francisco Bay Area, United States Profile: https://flows.cv/kamalt As a Software Engineer who builds AI systems that solve real problems at scale, I led a team at Teladoc Inc. that delivered an enterprise AI Copilot helping 500+ employees find answers instantly — cutting resolution time by 87%. Behind that was a production-grade stack of RAG pipelines, fine-tuned LLMs, multi-agent orchestration, and cloud-native infrastructure designed and deployed from scratch. My sweet spot is the intersection of ML research and engineering — taking models from experimentation to production where they actually create business value. Whether it's architecting semantic search across 10,000+ documents, fine-tuning open-source LLMs to reduce hallucinations by 50%, or building automated ML pipelines that cut costs by 30%, I care about outcomes, not just technology. M.S. in Computer Science, UT Arlington. Open to what's next. ## Work Experience ### Software Engineer @ KPMG US Jan 2025 – Present | San Francisco, CA • Designed and implemented a Generative AI workflow using LLMs and LangChain to automate structured comparison of financial disclosures across audit engagements, improving document review efficiency by 36% while maintaining traceable output logs for compliance validation. • Built an NLP-based risk classification pipeline using Hugging Face Transformers to evaluate regulatory filings against predefined risk indicators, increasing early-stage risk detection accuracy by 29% during advisory assessments. • Developed a retrieval-augmented internal knowledge assistant with refined prompt logic and context-window management, ensuring consistent, policy-aligned responses for tax and compliance consulting teams. • Standardized model deployment by containerizing FastAPI inference services and orchestrating them on AWS with Kubernetes, introducing structured version control and monitoring aligned with internal AI governance standards. • Engineered Spark-based preprocessing pipelines in Databricks to normalize large financial datasets prior to anomaly detection modeling, reducing data-quality related reprocessing efforts across advisory workflows. • Implemented MLflow experiment tracking and performance monitoring to improve reproducibility, streamline model audits, and simplify documentation during internal compliance reviews. • Partnered with risk analysts and data governance teams to translate model outputs into structured reporting artifacts, ensuring business stakeholders understood model assumptions, confidence levels, and operational limitations. ### Software Engineer @ Teladoc Health Jan 2023 – Jan 2025 | Dallas, TX • Architecting and deploying enterprise-grade Generative AI solutions to transform employee productivity and information access. Built an internal AI Copilot using Python, Azure Cognitive Search, and Large Language Models (LLMs) serving 10,000+ employees, enabling conversational document retrieval and policy queries with 95% answer accuracy. • Key contributions include developing Retrieval-Augmented Generation (RAG) pipelines that improved answer relevance by 60%, fine-tuning LLMs for contextual accuracy and factual grounding, and implementing prompt optimization strategies. Built Flask REST APIs to serve AI models with sub-150ms response times, integrating Azure Cognitive Search for semantic document retrieval with metadata filtering and secure access controls. • Automated SharePoint API workflows using Python and Power Automate, reducing manual HR query processing time by 40%. Collaborate closely with Data Science, IT, and business stakeholders to identify AI use cases, integrate models into production workflows, and measure impact through user analytics and feedback loops. • Ensure HIPAA compliance and data security in AI implementations while continuously optimizing model performance, inference latency, and system reliability. Champion responsible AI practices including bias detection, explainability, and human-in-the-loop validation for healthcare applications. ### Software Engineer @ Legato Health Technologies Jan 2021 – Jan 2023 | Hyderabad • Built and maintained full-stack web applications using React and Python (Flask/Django), integrating ML-powered features including intelligent search ranking, anomaly detection dashboards, and automated content classification for enterprise clients. • Developed and deployed Java Spring Boot microservices implementing RESTful API endpoints, service-to-service communication, and database integration layers that supported 10,000+ daily transactions across multiple product lines. • Integrated Scikit-learn, XGBoost, and pandas-based machine learning models into production web applications for predictive analytics, building model serving endpoints and automated retraining pipelines that improved forecast accuracy to 85%. • Designed and optimized Python-based ETL automation workflows orchestrated with Airflow and Apache Spark that processed and transformed 2M+ enterprise records daily, ensuring data integrity across downstream analytics dashboards and ML feature stores. • Refactored and modernized 50+ legacy Java batch processing jobs, implementing error-handling frameworks and retry logic that reduced pipeline failure rates by 45% and improved system reliability for business-critical nightly data loads. • Partnered with DevOps teams to implement CI/CD pipelines with Docker containerization, GitHub Actions, and Jenkins for automated testing, build, and deployment workflows, reducing release cycles from bi-weekly to daily. • Led the migration of 30+ legacy Java-based services to Python, redesigning monolithic schedulers into modular scripts with improved logging, unit testing, and error handling, reducing average job execution time by 25%. ## Education ### Master's Degree in Computer Science The University of Texas at Arlington ## Contact & Social - LinkedIn: https://linkedin.com/in/kamal-t-74b2b03a5 --- Source: https://flows.cv/kamalt JSON Resume: https://flows.cv/kamalt/resume.json Last updated: 2026-04-16