Vetted Apache Airflow Professionals

Pre-screened and vetted.

Srinivas Vasudevan - Junior Software Engineer specializing in distributed systems and FinTech in Durham, NC

Junior Software Engineer specializing in distributed systems and FinTech

Durham, NC3y exp
Troxler Electronic LaboratoriesNorth Carolina State University

Built an end-to-end payment fraud monitoring dashboard with a React/TypeScript frontend, GraphQL backend, Redis hot path, and a production RAG chatbot, while solving real-time latency and scaling issues. Also shipped an OCR system on AWS EKS for a live manufacturing line at Troxler, improving production accuracy by 15% with custom preprocessing and model tuning.

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Sanjay Santhanam - Mid-level AI Software Engineer specializing in LLMs and FinTech data systems in San Jose, CA

Mid-level AI Software Engineer specializing in LLMs and FinTech data systems

San Jose, CA4y exp
Scry AIWestcliff University

Backend/AI systems engineer focused on productionizing agentic document-processing workflows for large financial PDFs. They describe owning deployments end-to-end, combining Python, Redis, LLM function calling, RAG/ReAct-style orchestration, and strong reliability practices to deliver 80% faster processing, reduce parsing errors from 12% to ~1%, and sustain 99.9% uptime in high-concurrency environments.

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SG

Mid-level AI/ML Engineer specializing in NLP, LLMs, and MLOps for healthcare and finance

6y exp
CVS HealthUniversity of New Haven

Built a production LLM-powered RAG agent for healthcare/insurance operations that retrieves and summarizes patient medical documents with grounded citations, scaling to ~4.5M records. Addressed medical shorthand and terminology by fine-tuning ~120 lightweight DistilBERT models by specialty and validating entities against SNOMED/RxNorm, while using SHAP/LIME and human-in-the-loop review to make decisions explainable to stakeholders.

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JA

Jeevan aher

Screened

Junior AI Engineer specializing in fraud detection, credit risk, and LLMs in FinTech

Remote, USA3y exp
JPMorgan ChaseUniversity of Illinois Urbana-Champaign

AI engineer with production experience building a high-accuracy (98%) fraud detection system operating at real-time latency (1–2s) over millions of transactions, using a multi-model pipeline approach to meet performance constraints. Also implemented Airflow-orchestrated workflows (DAGs, retries, alerts) to replace brittle cron scripts and is currently pursuing a master’s project on real-time ASL-to-text conversion.

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CS

Intern Data Scientist specializing in generative AI and forecasting

San Francisco, CA5y exp
Aurora AIUniversity of Chicago

ML/NLP practitioner working across healthcare and business/finance use cases: currently fine-tuning a domain-specific Llama 3.1 model for safe reasoning over EHRs/clinical notes using RAG + RL/DPO and RAGAS-based evaluation. Has built UMLS-driven entity normalization pipelines with quantified quality gains and developed embedding/vector-DB systems (FAISS) for semantic matching and forecasting/recommendation applications at Aurora AI and Banxico.

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Vamshikrishna Bandi - Senior AI/ML Engineer specializing in Generative AI and agentic multi-agent systems

Senior AI/ML Engineer specializing in Generative AI and agentic multi-agent systems

6y exp
PayPalTrine University

Built and shipped a production LLM-powered multi-agent RAG system to automate complex internal support workflows, integrating tool execution (SQL/APIs) with validation guardrails to reduce hallucinations. Optimized for real-world latency and cost via model routing, caching, and async parallel tool calls, and enforced reliability with CI-gated golden test sets derived from anonymized production queries.

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Praveen Nutulapati - Mid-level Generative AI Engineer specializing in LLM fine-tuning, RAG, and agentic systems in New York, NY

Mid-level Generative AI Engineer specializing in LLM fine-tuning, RAG, and agentic systems

New York, NY6y exp
JPMorgan ChaseUniversity of Central Missouri

Built and deployed a production multi-agent RAG system at JPMorgan Chase to automate regulated credit analysis and compliance clause discovery across large internal policy/document libraries. Implemented LangGraph-based supervisor orchestration with structured state management (Azure OpenAI) to support long-running, resumable workflows, plus hybrid retrieval + re-ranking and guardrails for reliability. Strong at evaluation/observability (trace logging, LLM-judge, HITL) and at communicating results to non-technical stakeholders via Power BI embeds and Streamlit prototypes.

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Kunal Singh Pundir - Mid-level Full-Stack Developer specializing in cloud microservices and GenAI systems in USA, USA

Mid-level Full-Stack Developer specializing in cloud microservices and GenAI systems

USA, USA5y exp
UberNortheastern University

Built and owned an end-to-end AI-driven decisioning platform at Uber, combining LLM orchestration with typed tool contracts and a Snowflake-based RAG pipeline to make decisions fully auditable. Delivered large-scale measurable impact (120k requests/day, 18k cases auto-resolved/month) while improving ops SLA from 3 days to 6 hours and cutting incident response time nearly in half. Previously led a high-risk strangler-fig modernization of a legacy insurance platform across 120+ microsites at Accenture, coordinating across multiple squads with feature-flagged parallel cutovers.

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Felix Li - Intern Software Engineer specializing in data pipelines and full-stack web development in New York, NY

Felix Li

Screened

Intern Software Engineer specializing in data pipelines and full-stack web development

New York, NY1y exp
RadarUniversity of Waterloo

Internship at Radar (geolocation infrastructure) where they owned automation of multiple geospatial data ingestion pipelines (including US/Canadian address ingestion), orchestrating Spark (Scala) jobs via Python-based Airflow and using GitOps-style CI/CD workflows.

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Vasudha Prerepa - Mid-Level Java Full-Stack Developer specializing in cloud-native microservices

Mid-Level Java Full-Stack Developer specializing in cloud-native microservices

5y exp
BMOTexas Tech University

QA/validation-focused engineer with experience at Meta testing an ML+LLM content classification/summarization system, including production-vs-test behavior gaps. Built automated E2E validation and drift monitoring (PSI, KL divergence, embedding cosine similarity) run daily/multiple times per day and gated via CI. Also implemented Jenkins-orchestrated Selenium/API test suites in Docker at Capgemini and partnered with a business analyst to convert business rules into automated AI-driven validation checks.

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YP

Mid-level Software Engineer specializing in backend, distributed systems, and AI infrastructure

Menlo Park, CA4y exp
SnowflakeUSC

Built Baioniq, an enterprise LLM platform for automating extraction from massive unstructured documents like contracts and insurance claims. They demonstrate unusually strong production depth in agentic AI—scaling to 100k+ requests/day, processing 1M+ claim documents, and improving extraction accuracy through rigorous RAG architecture, evaluation, and fallback design.

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Sirisha Maddikunta - Mid-level Generative AI Engineer specializing in enterprise LLM and healthcare AI solutions in O Fallon, MO

Mid-level Generative AI Engineer specializing in enterprise LLM and healthcare AI solutions

O Fallon, MO6y exp
MastercardUniversity of Texas at Arlington

Built and owned an end-to-end LLM-powered fraud investigation assistant that automated case summaries and risk analysis, cutting analyst investigation/documentation time by 40%. Stands out for translating RAG concepts into a production-grade internal platform with strong evaluation, monitoring, and reusable Python service architecture that improved both analyst trust and engineering velocity.

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VP

Victor Pirie

Screened

Senior AI/ML Engineer specializing in LLMs, NLP, and enterprise conversational AI

Des Moines, IA11y exp
AssistRxMonash University

Built and owned a production conversational AI platform for a healthcare contact center, including RAG-based agent assist, hybrid retrieval, safety guardrails, and production monitoring. Stands out for combining LLM product delivery with strong operational rigor, driving a reported 25-30% improvement in handling time in a sensitive healthcare environment.

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BM

Mid-level AI/ML Engineer specializing in fraud detection and recommendation systems

California, USA3y exp
PayPalFlorida Atlantic University

ML engineer with production experience at PayPal and Flipkart, owning high-scale systems across fraud detection, recommendations, and LLM tooling. Stands out for combining strong modeling judgment with practical platform engineering, delivering measurable impact like 22% fewer fraud false positives, 18% CTR lift, 40% less LLM manual review, and 30% faster redeployments.

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HW

Henry Wu

Screened

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

Baltimore, MD4y exp
Johns Hopkins UniversityJohns Hopkins University

Built and launched a production self-healing MLOps agent that autonomously diagnosed and fixed model training failures on Kubernetes GPU infrastructure. Combines deep AI infrastructure knowledge with full-stack product ownership, and has delivered measurable impact including 35% less infrastructure waste, nearly 50% less troubleshooting time, and 60% lower LLM API costs.

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SC

Director-level technology architect specializing in AI, cloud platforms, and AdTech

Glendale, CA13y exp
DisneyD.Y. Patil College of Engineering

Architecture leader from Disney who managed system, AI, and data architects while staying hands-on in solution design. Has experience building LLM-based video advertising products, designing Kafka-based real-time data architectures, and using MVP/POC approaches to align product and executive stakeholders.

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HG

Harish Gaddam

Screened

Mid-level AI/ML Engineer specializing in LLM agents and RAG systems

Dallas, TX5y exp
VerizonUniversity of Texas at Arlington

LLM/agentic systems builder at Verizon who deployed a LangGraph-orchestrated multi-agent ticket-automation platform with RAG (FAISS) to replace brittle rule-based bots. Improved routing correctness by ~30–40%, hit ~300ms latency targets via model routing, and reduced ops workload by ~60% through tight iteration with non-technical stakeholders and strong testing/observability practices.

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VS

Mid-Level Software Engineer specializing in LLM agents and real-time data streaming

8y exp
AmazonRutgers University–New Brunswick

Software engineer with experience at Striim and Amazon who ships end-to-end production systems across UI, backend, ML, and operations. Built a real-time PII detection capability for a streaming data platform by integrating Python ML inference into a Java monolith via gRPC sidecars, achieving ~3M events/hour throughput and ~93% accuracy, and helped drive enterprise adoption (Fiserv, CVS). Also modernized internal Amazon tooling for multi-region scale with modularization and fully automated deployments.

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RR

Rahul Reddy

Screened

Senior Data Engineer specializing in cloud data platforms and big data pipelines

New York, NY6y exp
CVS HealthSouthern Arkansas University

Data engineer with healthcare (CVS Health) experience who migrated production PySpark workloads to native BigQuery SQL and built a Great Expectations-based validation microservice on GKE (Flask + REST) integrated into Cloud Composer. Has operated high-volume pipelines (~300–400GB/day) and designed external vendor ingestion on AWS (Lambda/Step Functions/Glue) with schema-drift detection, alerting, and backfill-safe controls to protect downstream Snowflake/BigQuery tables.

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RK

Mid-level AI/ML Engineer specializing in Generative AI, Conversational AI, and RAG systems

NJ, USA4y exp
Scale AIRowan University

Built and shipped a production enterprise RAG knowledge assistant that returns grounded, cited answers and uses confidence-based fallbacks (clarifying questions/abstention) with monitoring and compliance controls for sensitive data. Implemented end-to-end agent orchestration (function calling, structured JSON, state, retries/rate limits) plus eval/feedback loops, and achieved a reported 30–40% improvement in knowledge-task completion time while reducing hallucinations via retrieval improvements.

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Lavanya Chilakalapudi - Mid-level Full-Stack Developer specializing in cloud-native web apps and APIs in Tampa, FL

Mid-level Full-Stack Developer specializing in cloud-native web apps and APIs

Tampa, FL5y exp
DatabricksUniversity of South Florida

Backend engineer with experience building microservice-based systems that integrate LLM workflows (code review suggestions, documentation generation, test scaffolding) using REST APIs, Celery/Redis, and OpenTelemetry for observability. Demonstrates hands-on database and performance optimization in PostgreSQL/SQLAlchemy (bulk inserts, lock mitigation, cursor-based pagination) plus multi-tenant data isolation via tenant-aware models, middleware scoping, and schema/row-level strategies.

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Shriya Bannikop - Mid-level Software Engineer specializing in cloud platforms, data engineering, and distributed systems in Seattle, WA

Mid-level Software Engineer specializing in cloud platforms, data engineering, and distributed systems

Seattle, WA5y exp
Amazon Web ServicesKLE Technological University

Full-stack engineer who built and owned an AI-assisted job-matching dashboard in Next.js App Router/TypeScript, keeping LLM logic server-side and improving performance via deduplication, caching/revalidation, and streaming (35% fewer duplicate LLM calls; 40% faster first render). Also has strong data/backend chops: designed Postgres models and optimized queries at million-record scale (1.8s to 120ms) and built durable AWS multi-region telemetry workflows with idempotency, retries, and monitoring.

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