Reval Logo
Home Browse Talent Skilled in Apache Airflow

Vetted Apache Airflow Professionals

Pre-screened and vetted.

Apache AirflowPythonDockerSQLAWSCI/CD
SK

Shireesh Kumar Poral Ashok Kumar

Screened

Senior Full-Stack Developer specializing in cloud-native web applications

5y exp
eTe OptimizaUniversity of Houston

“Full-stack engineer who built an oil & gas analytics dashboard backend using FastAPI, MongoDB, and Redis with a metadata-driven design for dynamic plotting. Shipped an LLM-powered chatbot (LangChain + tool/function calling) to let engineers query analytics in natural language, and also built a multi-step university chatbot workflow with Azure logging, confidence scoring, and human-in-the-loop review.”

PythonFastAPIReactTypeScriptC#REST APIs+74
View profile
SV

Shabari Vignesh

Screened

Mid-level Data Engineer specializing in cloud data platforms and AI agents

Santa Clara, CA6y exp
SwirepaySan José State University

“Data/Backend engineer who has owned end-to-end merchant analytics systems on AWS: orchestrated multi-source ingestion (FISERV/Shopify/Clover) with Step Functions/Lambda, enforced strong data quality gates, and served curated datasets via Redshift and a FastAPI layer. Also built an early-stage Merchant Insights AI agent that converts natural language questions into SQL using OpenAI models, with full CI/CD and observability.”

PythonPandasPySparkNumPySQLShell Scripting+106
View profile
SP

Supreet P

Screened

Mid-Level Full-Stack Software Engineer specializing in cloud-native FinTech systems

Lawrence, Kansas5y exp
JPMorgan ChaseUniversity of Kansas

“Software engineer with JPMorgan Chase experience delivering end-to-end fintech features (Next.js/React/Node/Postgres on AWS) and measurable performance gains. Built and productionized an AI-native credit decisioning workflow combining LLMs, vector retrieval, and a rules engine with strong governance (bias checks, auditability, human-in-loop), improving precision and cutting underwriting turnaround time by 40%.”

JavaJavaScriptTypeScriptPythonNext.jsTailwind CSS+143
View profile
SA

Sai Addala

Screened

Mid-level AI/ML Engineer specializing in financial risk, fraud analytics, and forecasting

USA4y exp
Northern TrustSyracuse University

“Built and productionized an LLM-powered financial intelligence and forecasting platform at Northern Trust using a RAG architecture (LangChain + Hugging Face + FAISS) with end-to-end MLOps (Docker/Kubernetes, Airflow, MLflow). Emphasized regulatory-grade explainability (SHAP/Power BI) and hallucination control (retrieval-only grounding), achieving ~30% forecasting accuracy improvement and ~65% reduction in analyst research time, with sub-second inference and 95% uptime on EKS/AKS.”

PythonNumPyPandasJSONSQLPostgreSQL+116
View profile
LP

Lakshmi Priya Ramisetty

Screened

Mid-level ML & Data Engineer specializing in GenAI, graph modeling, and fraud/risk analytics

Redwood City, CA5y exp
BlueArcYeshiva University

“Built a production AI fraud/risk scoring platform at BlueArc that ingests web business/product/site data, generates text+image embeddings, and connects entities in a graph to detect reuse patterns and links to known bad actors. Optimized for scale with incremental graph re-scoring and delivered investigator-friendly explainability by surfacing the exact signals/relationships behind each score; orchestrated workflows with Airflow and GCP event-driven components (Pub/Sub, Dataflow, Cloud Run) and has recent LLM workflow orchestration experience (retrieval, prompting, scoring).”

PythonSQLPySparkApache AirflowETLPostgreSQL+92
View profile
SS

Sai somapalli

Screened

Senior LLM Engineer specializing in Generative AI, RAG, and multimodal assistants

USA6y exp
Stellar AI SolutionsCampbellsville University

“GenAI/NLP engineer with experience building classification and summarization pipelines in PyTorch and deploying multimodal GPT-4-style workflows. Has integrated LLM applications across OpenAI, Azure OpenAI, and Amazon Bedrock, and uses LangChain/LlamaIndex/Semantic Kernel to orchestrate RAG and agent workflows with production-focused evaluation metrics like task success rate and groundedness.”

Generative AILarge Language Models (LLMs)ClaudeLlamaLangChainRetrieval-Augmented Generation (RAG)+83
View profile
BY

Billy Y

Screened

Junior Software Engineer specializing in Full-Stack and GenAI/LLM applications

San Jose, CA2y exp
ZymebalanzBoston University

“LLM/RAG practitioner building clinician-facing AI search and Q&A inside EHR workflows, focused on trust, latency, and safety (grounded answers with citations, PHI controls, encryption/audit logs). Demonstrated real-time incident response for production LLM systems (e.g., fixing a metadata-filter deployment regression to prevent irrelevant results/cross-patient leakage) and strong demo/enablement skills for mixed technical and clinical stakeholders; also shipped a multi-model RAG tool at OrbeX Labs with upload/search/audit features for day-to-day adoption.”

PythonC++JavaCHTMLJavaScript+174
View profile
AG

Aravind Gudipudi

Screened

Mid-level AI/ML Engineer specializing in MLOps and cloud-deployed ML systems

Austin, TX3y exp
PurevisitxUniversity of Illinois Springfield

“ML/AI engineer who built and productionized an NLP system at PurevisitX, orchestrating end-to-end ML workflows with Airflow (S3 ingestion through auto-retraining) and optimizing for drift and low-latency inference. Also partnered with Citibank risk teams on a fraud detection model, translating results via dashboards and iterating thresholds based on stakeholder feedback.”

A/B TestingAgileApache AirflowAWSAWS GlueAWS Lambda+93
View profile
JC

Jahnavi Chakka

Screened

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

USA5y exp
McKessonSUNY

“Built a production LLM-RAG system at McKesson to let internal healthcare operations teams query large volumes of unstructured operational documents via natural language with source-backed answers, designed with HIPAA/FHIR compliance in mind. Demonstrated strong production engineering across hallucination mitigation, retrieval quality tuning, and latency/scalability optimization, using LangChain/LangGraph and Airflow plus rigorous evaluation/monitoring practices.”

A/B TestingAgileAmazon ECSAmazon EKSAmazon EMRAmazon SageMaker+125
View profile
SK

SaiGanesh Konagalla

Screened

Mid-level ML Engineer specializing in NLP and Generative AI

Houston, TX4y exp
Epic SystemsUniversity of Central Missouri

“Healthcare AI/ML engineer with Epic experience who built and deployed a HIPAA-compliant GPT-4 RAG clinical assistant over large medical document sets, emphasizing privacy controls and low-latency performance. Also automated end-to-end retraining and deployment of patient risk models using orchestration/CI-CD (Jenkins, SageMaker, MLflow), cutting deployment time from hours to minutes while improving reliability.”

PythonNumPyPandasSciPyScikit-learnSeaborn+186
View profile
MV

Manish Vemula

Screened

Mid-level Machine Learning Engineer specializing in real-time pipelines and NLP/GenAI

TX, USA4y exp
DiscoverCentral Michigan University

“ML/MLOps practitioner from Discover Financial who built and deployed a real-time AI fraud detection platform (LSTM + VAE) on AWS SageMaker with Docker/FastAPI and Jenkins-driven CI/CD. Demonstrated measurable impact (30% accuracy lift, 25% fewer false alerts) and deep expertise in class-imbalance mitigation, drift monitoring, and orchestration (Airflow/Kubeflow), plus strong stakeholder adoption via Power BI dashboards for fraud/compliance teams.”

AgileAnomaly DetectionAPI IntegrationAWS LambdaAzure Machine LearningCI/CD+101
View profile
GD

Gayatri Devi Dasari

Screened

Mid-level GenAI/ML Engineer specializing in LLM systems and RAG chatbots

Houston, TX3y exp
University of HoustonUniversity of Houston

“Built and shipped a production agentic LLM analytics platform that lets non-SQL business users query relational databases in plain English via a RAG + LangChain/LangGraph workflow and FastAPI service. Emphasizes safety and reliability with guardrails (validation/access control), testing/evaluation frameworks, and performance optimization (caching, monitoring, Dockerized scalable deployment), reducing dependency on data teams and speeding analytics turnaround.”

Amazon CloudWatchAmazon DynamoDBAmazon EC2Amazon S3Amazon SageMakerAuthentication+137
View profile
DD

Dhairya Desai

Screened

Senior AI/ML Engineer specializing in healthcare NLP and predictive analytics

Chicago, IL13y exp
OptumUniversity of Texas at Dallas

“ML/NLP engineer with healthcare and industrial IoT experience: built an Optum pipeline that converted 2M+ physician notes into structured entities and linked them with claims/pharmacy data to create an actionable patient timeline. Deep hands-on expertise in production NER, entity resolution, and hybrid search (Elasticsearch + embeddings/FAISS), plus robust data engineering practices (Airflow, Spark, data contracts, auditability) and experimentation-to-production rollout via shadow mode and feature flags.”

PythonRSQLMATLABCC#+157
View profile
DG

Dimple Galla

Screened

Mid-level Data Scientist / AI-ML Engineer specializing in RAG, MLOps, and real-time analytics

Lawrence, KS4y exp
PaycomUniversity of Kansas

“Software/ML engineer who built a production automated job-finding and cold-email personalization system for Fortune 500 outreach, using JobSpy for dynamic scraping, LangChain orchestration, and LLM+vector DB semantic search with grounding/relevance metrics and guardrails. Also delivered a predictive investment analytics platform for financial advisors, communicating results via Tableau dashboards and portfolio KPIs like Sharpe ratio and drawdowns.”

A/B TestingAmazon EC2Apache KafkaApache SparkAWSAWS Glue+163
View profile
MN

Meghana Nandivada

Screened

Junior Machine Learning Engineer specializing in production ML systems and MLOps

2y exp
TCSStevens Institute of Technology

“ML/AI engineer (TCS) who built and productionized a customer segmentation and personalized-offer recommendation pipeline end-to-end (data cleaning/feature engineering/clustering through Flask API deployment in Docker with monitoring). Emphasizes reliability and operational rigor via validation checks, periodic retraining, model/API versioning, and latency optimization, and has experience translating marketing KPIs into usable dashboards for non-technical teams.”

PythonSQLJavaScalaMachine LearningMLOps+99
View profile
PS

Ponugoti Sushma

Screened

Mid-level Machine Learning Engineer specializing in IoT, edge AI, and enterprise ML

Texas, USA5y exp
AllstateTexas A&M University-Corpus Christi

“Built and productionized an LLM/RAG question-answering service over technical documentation, focusing on retrieval quality (reranking + IR metrics), latency, and scaling. Experienced orchestrating end-to-end ETL/ML workflows with Airflow/Prefect/AWS Step Functions and improving reliability via parallelism, retries, and shadow testing. Also delivered an explainable healthcare risk-flagging classifier with a stakeholder-friendly dashboard for a non-technical program manager.”

PythonCC++TensorFlowPyTorchScikit-learn+134
View profile
SS

Sumit Sahu

Screened

Mid-level Machine Learning Engineer specializing in computer vision and MLOps on GCP

Atlanta, GA4y exp
NCR VoyixUniversity of Georgia

“ML/AI engineer who deployed a real-time, edge-based computer-vision pipeline for produce recognition in retail self-checkout to reduce shrink. Demonstrates strong end-to-end production chops: multi-camera data calibration/sync, ranking-based modeling for fine-grained classes, latency-focused optimization, and continuous A/B testing/monitoring with guardrails. Experienced with ML orchestration (Kubeflow Pipelines, Airflow) and CI/CD via GitHub Actions, and collaborates closely with store operations to make interventions usable in the checkout flow.”

PythonC++SQLJavaPyTorchTensorFlow+100
View profile
TW

Tejaswini Waghmare

Screened

Senior Data Analytics & Data Science professional specializing in Financial Services

4y exp
InfosysGeorgia State University

“Worked on large financial analytics datasets combining complaint text, transaction logs, and demographics; built end-to-end NLP/ML pipelines (TF-IDF + Random Forest) and data integration in BigQuery with Tableau reporting, citing ~95–98% accuracy. Also implemented entity resolution with fuzzy matching and semantic linking using BERT sentence-transformer embeddings stored in FAISS, including fine-tuning on labeled pairs to improve search/linking relevance.”

SQLXMLMySQLPythonRBigQuery+109
View profile
SY

Sarthak Yadav

Screened

Intern AI/ML Engineer specializing in NLP, computer vision, and reinforcement learning

USA1y exp
Alien AttorneyUniversity at Buffalo

“Built an Arduino-based obstacle-avoiding robot using sonar/laser sensors and improved performance from 0.60 to 0.87 accuracy through sensor-fusion thresholding and iterative tuning. In an internship, optimized a legal-document NLP pipeline by switching to a distilled/quantized transformer and offloading inference to a GPU-backed Flask service, cutting inference time by 40%+ without added infrastructure spend.”

AWSBERTCI/CDComputer VisionData EngineeringDeep Learning+88
View profile
MK

Mahalakshmi Konakanchi

Screened

Mid-level AI/ML Engineer specializing in Generative AI and MLOps

Arlington, TX4y exp
micro1University of Texas at Austin

“Built and shipped a production RAG assistant using GPT-4, LangChain, and Pinecone/FAISS to search 50K+ institutional documents, with a strong focus on groundedness and hallucination reduction through retrieval optimization and re-ranking. Pairs this with a metrics-driven evaluation/monitoring approach (BLEU/ROUGE, manual sampling, logging) and workflow automation via Airflow, and has experience translating stakeholder needs into iterative AI prototypes.”

A/B TestingAmazon EC2Amazon S3Apache AirflowApache KafkaBash+95
View profile
DP

DEDEEPYA PALAKURTHI

Screened

Junior Software Engineer specializing in cloud-native microservices and applied NLP

Baltimore, MD3y exp
CVS HealthUniversity of Maryland, Baltimore County

“Backend engineer who built an AI-driven "Smart Feedback Analyzer" API (Flask → FastAPI) that processes user feedback with NLP (Hugging Face + OpenAI) and returns structured insights. Demonstrates strong production-minded architecture: stateless services, Cloud Run + Docker deployment, Redis/Celery background processing, and Postgres/SQLAlchemy performance tuning (EXPLAIN ANALYZE, indexing, N+1 fixes), plus multi-tenant data isolation via JWT/API-key derived tenant IDs.”

AgileAngularAnsibleAWSAWS LambdaCI/CD+213
View profile
SD

Sachin Dulla

Screened

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

Kentwood, MI3y exp
Fifth Third BankCalifornia State University, San Bernardino

“Built and deployed a domain-specific LLM chatbot for research/support, cutting manual effort by ~50%. Demonstrates strong applied LLM engineering: RAG, prompt grounding with citations and fallbacks, embedding/top-k tuning, and production monitoring (confidence, latency, feedback loops). Experienced orchestrating agent workflows with LangChain-style pipelines and continuous evaluation to maintain reliability.”

Amazon EC2Amazon EKSAWSAWS LambdaAzure Machine LearningAzure Monitor+93
View profile
SC

Sahil Chaubal

Screened

Senior AI/ML Engineer specializing in financial risk, fraud detection, and GenAI analytics

USA7y exp
Northern TrustSyracuse University

“AI/ML engineer with experience at Northern Trust and Persistent Systems building production LLM + RAG systems for regulated financial use cases, including liquidity forecasting, anomaly detection, and credit scoring. Emphasizes compliance-first design with explainability (SHAP), traceability (MLflow), and hallucination controls (FAISS + citation-grounded prompting), and has delivered drift-triggered retraining pipelines using Airflow and Kubernetes while translating model outputs into business-ready marketing segments.”

PythonRSQLPostgreSQLMySQLMicrosoft SQL Server+114
View profile
TK

Tadigotla Kumar Reddy

Screened

Mid-level AI/ML Engineer specializing in healthcare imaging and GenAI/LLM systems

New York, USA6y exp
UnitedHealthcareAuburn University at Montgomery

“Built and deployed a production LLM/RAG clinical document understanding and summarization system for healthcare, focused on reducing manual review time while meeting strict accuracy, latency, and compliance needs. Demonstrates strong MLOps/orchestration depth (Airflow, Kubernetes, Azure ML Pipelines) and a rigorous approach to hallucination mitigation through layered, source-grounded safeguards and stakeholder-driven requirements with physicians/compliance teams.”

PythonSQLRJavaJavaScriptBash+157
View profile
1...757677...104

Related

Machine Learning EngineersSoftware EngineersData ScientistsData EngineersAI EngineersData AnalystsAI & Machine LearningEngineeringData & AnalyticsEducation

Need someone specific?

AI Search