Vetted LangChain Professionals

Pre-screened and vetted.

SK

Sharath Kumar

Screened

Mid-level AI/ML Engineer specializing in LLM fine-tuning, RAG, and MLOps

Remote, USA5y exp
HPWilmington University

AI/ML engineer with HP experience building and productionizing an LLM-powered document intelligence platform (LangChain + Pinecone) to deliver semantic search and contextual Q&A across millions of enterprise support documents. Demonstrates strong MLOps and scaling expertise (Airflow, Kubernetes autoscaling, Triton GPU inference, monitoring with Prometheus/W&B) plus a structured approach to evaluation (A/B tests, shadow deployments, failover) and effective collaboration with non-technical stakeholders.

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HK

Harini Kv

Screened

Mid-level AI/ML Engineer specializing in GenAI, NLP, and MLOps

Dallas, TX7y exp
EquinixFitchburg State University

GenAI/data engineering practitioner with production experience across Equinix, Optum, and Citibank—built an Azure OpenAI (GPT-4) + LangChain document intelligence platform processing 1.5M+ docs/month and a HIPAA-compliant Airflow healthcare pipeline handling 5M+ claims/day. Also delivered a real-time fraud detection + explainability system using LightGBM and a fine-tuned T5 NLG component, improving fraud accuracy by 15%+ while partnering closely with compliance stakeholders.

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SS

Mid-level AI Engineer specializing in Generative AI, MLOps, and NLP for finance and healthcare

Remote, USA4y exp
EYUniversity of South Florida

Built and deployed a secure, production LLM-based document summarization and risk-highlighting tool for financial auditors, running inside a private Azure environment to protect confidential data. Focused on reliability (hallucination mitigation via retrieval-based prompts and source citations) and validated performance through comparisons to auditor summaries plus a user pilot, cutting review time by about half.

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UC

Mid-level Machine Learning Engineer specializing in NLP, computer vision, and RAG systems

Atlanta, GA5y exp
Morgan StanleyKennesaw State University

Machine learning/NLP engineer who built a production-oriented retrieval-based AI system at Morgan Stanley for healthcare use cases, combining RAG over unstructured patient records with deep-learning medical image segmentation (U-Net/Mask R-CNN). Strong in end-to-end pipelines and MLOps (Spark/MongoDB, AWS SageMaker, CI/CD, monitoring, automated retraining) and in entity resolution/data quality validation for noisy clinical data.

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SK

Mid-level AI/ML Engineer specializing in LLMs, RAG, and MLOps

USA4y exp
ServiceNowValparaiso University

ServiceNow engineer who built and launched a production LLM-powered ticket resolution/knowledge assistant using RAG (LangChain + Hugging Face embeddings + vector search) integrated into internal support dashboards via REST APIs. Optimized the system from ~6–8s to ~2–3s latency while improving usability with concise, cited answers and guardrails (grounding + similarity thresholds), delivering ~30–35% reduction in manual ticket investigation effort.

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SM

Sahithi M

Screened

Mid-level GenAI/ML Engineer specializing in LLM applications and enterprise automation

5y exp
UnitedHealth GroupRivier University

Built and shipped a production LLM-powered healthcare support agent at UnitedHealthGroup, using LangChain + FAISS RAG on AWS SageMaker with CloudWatch monitoring and human-in-the-loop fallbacks for safety. Strong focus on reliability engineering (confidence gating, retries/timeouts, caching) and continuous evaluation loops; reported ~40% improvement in query resolution efficiency while reducing manual support workload.

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Pooja Dokuri - Mid-level AI/ML Engineer specializing in GenAI, RAG pipelines, and cloud MLOps in Remote, USA

Pooja Dokuri

Screened

Mid-level AI/ML Engineer specializing in GenAI, RAG pipelines, and cloud MLOps

Remote, USA4y exp
UnitedHealth GroupEast Texas A&M University

Built and deployed a production LLM + vector search clinical decision support system at UnitedHealth Group, retrieving medical evidence and patient context in real time for prior authorization and risk scoring. Strong in end-to-end RAG architecture (Hugging Face embeddings, Pinecone/FAISS, SageMaker, Redis) plus orchestration (Airflow/Kubeflow) and rigorous evaluation/monitoring, with demonstrated ability to align solutions with clinical operations stakeholders.

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Thomas To - Mid-level Full-Stack Engineer specializing in AI/ML data platforms for biotech and FinTech in Emeryville, CA

Thomas To

Screened

Mid-level Full-Stack Engineer specializing in AI/ML data platforms for biotech and FinTech

Emeryville, CA6y exp
Canventa Life SciencesUC Davis

AI/ML full-stack practitioner in a small-scale manufacturing/lab operations environment who deployed a production ML system to improve blood cell order fulfillment by predicting yield/success from donor characteristics. Experienced building custom multi-agent orchestration (Python, LangChain/LangGraph, MCP) and balancing reliability, data quality constraints, and token/ROI economics while communicating tradeoffs to VP-level business stakeholders.

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Ganesh Bandi - Mid-level AI Engineer specializing in LLMs, RAG, and MLOps in USA

Ganesh Bandi

Screened

Mid-level AI Engineer specializing in LLMs, RAG, and MLOps

USA6y exp
Capital OneUniversity of North Texas

LLM engineer who has deployed production RAG systems for regulated document QA (PDFs/knowledge bases), emphasizing grounded answers with citations, RBAC, monitoring, and continuous feedback. Demonstrates deep practical expertise in retrieval quality (semantic chunking, hybrid BM25+embeddings, re-ranking), reliability (guardrails, deterministic workflows), and measurable evaluation (golden sets, log replay, A/B tests) while partnering closely with compliance/operations stakeholders.

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Utkarsh Srivastava - Junior Machine Learning Engineer specializing in LLMs, RAG, and medical imaging in New York City, USA

Junior Machine Learning Engineer specializing in LLMs, RAG, and medical imaging

New York City, USA3y exp
NYU Langone HealthNYU

At Fileread, the candidate built and deployed an LLM-powered legal document classification and retrieval layer for an agentic extraction system that turns unstructured legal PDFs into structured tables with line-level citations. They productionized a RAG-style pipeline (ingestion, embeddings, retrieval, reranking, generation) and report 95%+ F1 across 70+ legal categories, emphasizing rigorous evaluation and close collaboration with legal domain experts for high-stakes precision.

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Sai Charan Kolla - Mid-level AI/ML Engineer specializing in LLMs, RAG, and MLOps on AWS in TX, USA

Mid-level AI/ML Engineer specializing in LLMs, RAG, and MLOps on AWS

TX, USA5y exp
BlackRockTexas A&M University-Kingsville

LLM engineer who built a production document intelligence/RAG pipeline to extract structured data from thousands of unstructured PDFs, cutting manual review time by 60%. Experienced with LangChain and Airflow orchestration plus rigorous evaluation (labeled datasets, prompt testing, HITL review, monitoring) to improve accuracy and reduce hallucinations while partnering closely with non-technical operations stakeholders.

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AC

Mid-level AI/ML Engineer specializing in LLM systems, MLOps, and Healthcare AI

Remote, USA5y exp
CVS HealthUniversity of Missouri-Kansas City

Built and shipped a production-grade agentic RAG system at CVS Health for patient adherence and medication recommendations, processing 20k+ patient records/day. Strong focus on real-world reliability: hybrid retrieval tuned with re-ranking (<400ms latency), strict JSON/schema validation and tool guardrails, and monitoring/drift detection that reduced MTTD from 6 days to 18 hours while improving recommendation accuracy (+8%) and cutting escalations (~23%).

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DM

Mid Software Engineer specializing in distributed cloud-native backend systems

Gainesville, FL4y exp
Silicon AssuranceUniversity of Florida

Backend/AI workflow engineer who built production-grade orchestration systems for hardware security verification at Silicon Assurance (Nextflow/Python/Postgres) and a multi-agent LLM-driven regulatory code checking system at the University of Florida. Emphasizes reliability: strict plan/execute/verify boundaries, queue-based isolation, and strong observability/auditability with Prometheus/Grafana and persisted prompts/tool calls.

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BN

Mid-level Machine Learning Engineer specializing in AI/LLM systems

New York, NY5y exp
ServiceNowUniversity at Buffalo

ML/LLM systems engineer who has owned AI support automation products end-to-end, including ServiceNow-integrated incident routing, RAG-based resolution suggestion systems, and production stabilization. Stands out for combining hands-on platform work across PySpark, AWS Glue, FastAPI, Kubernetes, and Pinecone with measurable operational impact, including 30-35% MTTR reduction and 25-30% improvement in first-touch resolution.

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Chaitanya Prasad Reddy Narala - Mid-level AI/ML Engineer specializing in FinTech risk and fraud systems in USA

Mid-level AI/ML Engineer specializing in FinTech risk and fraud systems

USA4y exp
ServiceNowSaint Louis University

Senior AI/ML engineer focused on production LLM systems, combining RAG, fine-tuning, distributed training, and AI safety to ship scalable real-time moderation and conversational AI platforms. Stands out for pairing deep AWS/Kubernetes MLOps expertise with measurable impact: 40% lower latency/cost, 30-50% fewer hallucinations, and major reliability gains through observability and automation.

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MC

Manish Challa

Screened

Mid-level AI/ML Engineer specializing in Generative AI and financial services

OR, USA5y exp
JPMorgan ChaseSeattle University

ML/AI engineer with hands-on experience shipping regulated financial AI systems at JPMC and Capgemini, spanning credit risk, fraud detection, and generative AI assistants. Stands out for combining modern LLM/RAG architectures with strong MLOps, real-time infrastructure, and explainability/compliance practices, while delivering measurable business impact in latency, accuracy, cost, and risk reduction.

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Sachin Komati - Mid-level AI/ML Engineer specializing in GenAI, RAG, and healthcare ML in Florida, USA

Sachin Komati

Screened

Mid-level AI/ML Engineer specializing in GenAI, RAG, and healthcare ML

Florida, USA5y exp
BlackRockFlorida International University

Built an end-to-end GenAI/RAG platform for financial compliance and research at BlackRock, focused on safe, auditable answers in a highly regulated environment. Combines strong LLM engineering depth with production platform skills and delivered clear business impact, including reducing research/compliance turnaround from hours to seconds, improving retrieval relevance by 22%, and cutting inference costs by 75%.

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Farhan Shahbaz - Senior Software Engineer specializing in cloud infrastructure and platform engineering in New York, NY

Senior Software Engineer specializing in cloud infrastructure and platform engineering

New York, NY4y exp
JPMorgan ChaseWest Virginia University

Backend engineer with deep experience in security and access-management platforms at JPMorgan Chase, including owning automation for migrating 50+ engineering teams from CyberArk to HashiCorp Vault. Stands out for combining regulated-environment rigor, infrastructure automation, and production operations with practical AI integration in internal access workflows.

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MS

Mihir Sahu

Screened

Intern software engineer specializing in AI, full-stack, and applied ML

Madison, WI1y exp
Capital OneUniversity of Wisconsin–Madison

Backend/ML-focused engineer with experience spanning fintech, sales enablement, and medtech, including a Capital One capstone and a Singapore medtech startup internship. Stands out for owning end-to-end AI/backend systems, from a GenAI sales pitch platform that cut prep time by 50% to an ultrasound-guidance MVP for non-expert operators in a highly ambiguous domain.

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MG

Mid-level Software Development Engineer specializing in cloud-native AI/ML systems

California, USA4y exp
ServiceNowCal State Long Beach

AI/ML-focused engineer with practical experience building RAG-based and multi-agent systems, including architectures for retrieval, reasoning, context processing, and response generation. Stands out for combining LLM productivity gains with disciplined software engineering practices like validation, monitoring, and reproducibility.

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AT

Anchal Thool

Screened

Mid-level Software Engineer specializing in cloud infrastructure and backend systems

Pune, India3y exp
TelstraNYU

AI/ML-focused software engineer who has built and orchestrated multi-agent systems with separate retrieval, planning, validation, execution, and escalation components. Stands out for combining hands-on experimentation with a strong reliability mindset, using observability, structured logging, tracing, and evaluation to make agentic workflows production-ready.

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Deepthi Pamisetty - Mid-level Full-Stack Engineer specializing in FinTech and cloud-native systems in Dallas, TX

Mid-level Full-Stack Engineer specializing in FinTech and cloud-native systems

Dallas, TX6y exp
JPMorgan ChaseUniversity of Texas at Arlington

Full-stack engineer with production experience building AI-powered search and automation systems at JPMorgan Chase and customer-facing product features at Wayfair. Stands out for combining React frontend work with backend microservices, RAG/LangChain AI integration, and cloud-scale performance tuning, including a support chatbot that reduced ticket resolution time by 35%.

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Anshika Bajpai - Mid-level Machine Learning Engineer specializing in LLMs, RAG, and MLOps in Bloomington, IN

Mid-level Machine Learning Engineer specializing in LLMs, RAG, and MLOps

Bloomington, IN4y exp
Indiana UniversityIndiana University Bloomington

Engineer with impactful experience at Palo Alto Networks and Optum, focused on production automation and AI-powered internal tools. Built and owned an end-to-end RAG knowledge system adopted by 1000+ internal users with roughly 75% faster response times, and also transformed a legacy Optum coverage-feed workflow from 500+ minutes to under 3 minutes through data standardization and microservices refactoring.

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