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Vetted Retrieval-Augmented Generation (RAG) Professionals

Pre-screened and vetted.

Retrieval-Augmented Generation (RAG)PythonDockerCI/CDAWSSQL
RM

Rakesh Munaga

Screened

Mid-level Full-Stack Engineer specializing in AI and FinTech platforms

TX, USA4y exp
JPMorgan ChaseUniversity of Texas at Arlington

“Full-stack engineer building real-time internal banking operations dashboards (Java/Spring Boot microservices + React/TypeScript) with Kafka-based streaming and post-launch performance optimizations. Also shipped a production internal AI support assistant using RAG (Confluence/PDF/support docs ingestion, embeddings + vector DB retrieval) with guardrails, evaluation loops, and observability to reduce hallucinations and prevent regressions.”

Amazon API GatewayAmazon CloudWatchAmazon EC2Amazon RDSAmazon S3Amazon SNS+132
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KK

Kiran Kumar

Screened

Mid-Level Full-Stack Software Engineer specializing in Java/Spring and React with GenAI automation

USA4y exp
AirbnbAuburn University at Montgomery

“Software engineer (4+ years) with hands-on production GenAI experience: built an AI incident triage assistant that summarizes production logs for on-call engineers and iterated it using real incident metrics (time-to-signal, triage duration). Also shipped a RAG-based customer support knowledge assistant using embeddings + vector retrieval with strong guardrails (relevance thresholds/abstain, sanitization, auditing) and a formal eval loop (500-query gold set) that drove measurable retrieval improvements.”

JavaPythonJavaScriptTypeScriptC++SQL+151
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SR

Sanjana Reddy

Screened

Mid-Level Software Engineer specializing in cloud-native microservices and AI/ML integration

Remote, USA4y exp
BrexArizona State University

“Product-minded software engineer with experience shipping AI-powered financial insights (spend forecasting, cashflow, credit optimization) and building real-time analytics systems using React/TypeScript and FastAPI. Has designed microservices with RabbitMQ/gRPC and strong observability (Prometheus/Grafana/OpenTelemetry), and also built an internal Figma plugin adopted by designers that reduced export time by 50%.”

AngularAnsibleApache KafkaArgo CDAWSAWS CodePipeline+253
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AS

ABHIJOY SARKAR

Screened

Senior AI Engineer specializing in LLMs, agentic systems, and MLOps

San Francisco Bay Area, CA8y exp
FlipkartIIT Ropar

“Built and shipped PromptGuard, a production middleware proxy that secures GenAI RAG/agent systems against prompt injection and unsafe tool use using risk scoring, graded policy actions, and least-privilege tool gating. Also replaced LangChain abstractions with a custom state-machine runner for a production voice agent to reduce latency and improve traceability, and delivered a clinic call assistant by converting front-desk/doctor requirements into scenario-based guardrails and measurable evals.”

AWSBashCI/CDData PipelinesDockerGit+76
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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.”

AWSAWS LambdaAutomationBackend DevelopmentCI/CDCollaboration+103
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SS

Sriprasanna Sharma

Screened

Executive IT Leader specializing in enterprise architecture, cloud modernization, and AI transformation

Los Angeles, CA25y exp
Tokio Marine HCCUC Davis

“Enterprise Architecture leader with insurance domain experience (Farmers Insurance) who drove a multi-phase roadmap to modernize a siloed CRM landscape—migrating from legacy Siebel to Salesforce Financial Services Cloud with Customer 360, MDM, and omnichannel capabilities. Also led a high-impact architecture decision to implement offline billing to reduce customer-facing downtime, including complex SAP/on-prem-to-cloud integration and transaction sync.”

AWSChange ManagementContract NegotiationCost OptimizationDevOpsETL+128
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SB

Shriya Bannikop

Screened

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.”

AgileAmazon CloudWatchAmazon DynamoDBAmazon EC2Amazon ECSAmazon EKS+170
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DG

Deepika Gotla

Screened

Senior Technical Support Engineer specializing in Azure Cloud & Generative AI

Bellevue, WA7y exp
MicrosoftSUNY New Paltz

“Microsoft cloud/infra engineer with 5+ years supporting enterprise Azure environments, specializing in security-focused networking (private endpoints, DNS) and production troubleshooting across Azure Front Door/App Gateway WAF/AKS. Has implemented posture improvements via Defender for Cloud, Azure Policy, and RBAC tightening, and also designs secure AWS agent/scanner integrations and modern EKS/GitHub Actions/Secrets Manager observability-enabled SDK rollouts.”

Azure DevOpsAzure Machine LearningBashChatGPTCI/CDCloud-native architecture+145
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VS

vamshi saggurthi

Screened

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.”

PythonJavaRJavaScriptApache AirflowApache Kafka+110
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AS

Allaudheen Shaik

Screened

Mid-level Java Full-Stack Developer specializing in cloud microservices

USA4y exp
PaychexTrine University

“Backend/platform engineer with payroll domain depth who built high-volume payroll processing microservices (Java/Spring Boot, Kafka, PostgreSQL, Redis) on AWS Kubernetes and debugged major peak-cycle latency by redesigning transaction boundaries and moving to async Kafka processing (>50% latency reduction). Also shipped an LLM-powered HR assistant using RAG with strong security/guardrails (RBAC, PII masking, audit logs) that cut support tickets by 40%, and designed reliable multi-step agent workflows with retries, circuit breakers, and idempotency.”

JavaSpring BootSpring MVCSpring SecuritySpring Data JPAHibernate+173
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YJ

Yashwanth J

Screened

Mid-level Software Engineer specializing in LLM agentic AI and full-stack systems

Seattle, WA4y exp
AppleUniversity of North Texas

“Full-stack engineer at Bank of America who built and iterated a real-time transaction monitoring/fraud detection system processing 50K+ daily transactions, improving latency (25%), dashboard performance (30%), and reducing manual investigation time (40%) while meeting PCI DSS via OAuth2 and RBAC. Also built a scalable ETL pipeline for messy financial data with strong reliability/observability (ELK, retries, DLQ), boosting data integrity from 87% to 99% and sustaining 99.8% uptime.”

PythonJavaJavaScriptTypeScriptSQLNode.js+149
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AK

Akshay Koneti

Screened

Mid-Level Full-Stack Software Engineer specializing in AWS cloud and microservices

Dallas, TX6y exp
AmazonUniversity of North Texas

“Backend/LLM engineer who built a production-critical Amazon Bedrock + RAG correction and compliance layer for employee communications, integrating tightly with existing Spring Boot/AWS microservices to reduce manual review while keeping outputs explainable and auditable. Also designed an event-driven system processing 10M+ events/day (SQS/Lambda/DynamoDB/Elasticsearch) and handled on-call incidents with strong observability and reliability patterns (idempotency, retries, hotspot mitigation).”

JavaPythonJavaScriptTypeScriptJSONXML+138
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TN

Tanveer Nazir

Screened

Senior Cloud & DevOps Engineer specializing in enterprise cloud automation and Kubernetes

Remote, NY11y exp
Bank of AmericaCollege of Staten Island, CUNY

“Infrastructure/DevOps engineer with primary ownership in enterprise Linux and AWS/Azure production environments (including financial systems). Built secure, repeatable CI/CD pipelines deploying containerized workloads to EKS/ECS and implemented Terraform/CloudFormation IaC with drift detection and rollback practices; lacks direct IBM Power/AIX/PowerHA experience.”

AgileAmazon BedrockAmazon CloudWatchAmazon DynamoDBAmazon ECSAmazon EKS+155
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MX

Ming-Sheng Xu

Screened

Intern Software Engineer specializing in full-stack web development and automation

Oklahoma City, OK1y exp
PaycomTexas A&M University

“Undergraduate robotics researcher who built a crowd-aware motion planning system to navigate safely and efficiently through dynamic pedestrian environments, implementing the full pipeline in ROS (move_base, global planning, SLAM/localization) and validating via 2D crowd simulation. Also brings modern software delivery experience from web apps, including Docker/Kubernetes-based cloud deployment and CI/CD with automated testing.”

AgileAndroidAsanaAzure Blob StorageCC#+72
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AN

Apoorva Nanabolu

Screened

Senior Data Scientist / Generative AI Engineer specializing in fraud, risk, and MLOps

5y exp
PayPalUniversity of New Haven

“Built and deployed a production LLM/RAG fraud investigation system to replace manual investigator workflows, combining transaction data, historical cases, and policy documents with agent-style steps and LoRA fine-tuning. Demonstrates strong reliability engineering (grounding, citations, abstention paths), performance optimization (retrieval/indexing/caching), and end-to-end MLOps orchestration using Azure ML Pipelines/MLflow plus Kubernetes/Argo with canary and rollback deployments.”

PythonRSQLNoSQLSnowflakeBigQuery+178
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SM

Srushti Manjunath

Screened

Mid-level Data Scientist specializing in NLP, LLMs, and cloud ML platforms

Remote, USA5y exp
Wells FargoUniversity of Illinois Urbana-Champaign

“LLM/MLOps engineer who has shipped production systems for complaint intelligence and contact-center NLU, including LoRA/RLHF-tuned LLaMA models deployed on GKE with vLLM and Vertex AI batch pipelines to BigQuery. Demonstrates strong practical focus on hallucination control, data imbalance mitigation, and production monitoring (Langfuse) with regression testing and canary rollouts, plus experience orchestrating complex workflows with AWS Step Functions.”

PythonRSQLMATLABC++Scala+169
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VR

Vivek Reddy

Screened

Mid-level Data Scientist/Data Engineer specializing in ML pipelines, insurance and healthcare analytics

Los Angeles, CA7y exp
Venture ConnectUC Berkeley

“Built a production assistive-vision iPhone app to help visually impaired users find grocery items, training a custom YOLO detector on 2,000+ self-collected/annotated images and deploying via CoreML with a cloud multimodal LLM for navigation instructions. Brings hands-on AWS serverless + ECS container deployment (CDK/GitHub Actions) and a disciplined approach to AI workflow reliability (state-machine design, offline evals, stress tests, logging/metrics), plus experience communicating model insights to non-technical stakeholders (MOTER Technologies).”

A/B TestingAmazon BedrockAmazon ECSAmazon RDSAWS LambdaCI/CD+109
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VV

Vishnu Varma

Screened

Senior AI/ML Engineer specializing in LLMs, GenAI, and MLOps

Milpitas, California8y exp
DatabricksCampbellsville University

“AI/ML engineer (Cognizant) who built a production, real-time credit card fraud detection platform combining deep-learning anomaly detection with an LLM-based explanation layer. Strong focus on regulated deployment: addressed class imbalance and feature drift, and added guardrails (SHAP/structured inputs, fine-tuning on analyst reports, rule-based validation) to keep explanations accurate and compliant. Orchestrated the full pipeline with Airflow + Databricks/Spark and used MLflow/Prometheus plus A/B and shadow deployments for measurable reliability.”

PythonSQLPySparkBashTensorFlowPyTorch+106
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YN

Yash Nileshkumar Mirani

Screened

Mid-level Software Engineer specializing in AI agents, data pipelines, and cloud systems

Sunnyvale, CA5y exp
Vertex PharmaceuticalsUniversity of Arizona

“Generalist software engineer with recent contract work at Vertex Pharmaceuticals shipping a desktop-integrated RAG assistant for lab scientists (2000+ pages ingested; ~40% support-ticket reduction in pilot). Previously owned Python/AWS financial automation services at Amazon operating at multi-billion-dollar scale, with strong strengths in API design, observability, and database/performance tuning; also built a React/TypeScript AI contract analysis product (ContractsGuy).”

AWSAutomationC#CSSEmbeddingsFigma+87
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GS

Geetha Sri Kasu

Screened

Mid-level Software Engineer specializing in Java/Spring Boot, Kafka, and AWS

5y exp
BarclaysLamar University

“Software engineer who owned an end-to-end self-service reporting workflow (secure APIs, async/batched processing, and React UI), improving report generation performance by ~30–40% and reducing manual support effort. Also built a RAG/embeddings prototype over internal docs and service logs with grounding-focused guardrails, and has a strong reliability/observability mindset (retries, DLQs, CI/CD validation, dashboards/tracing) for distributed workflows.”

JavaPythonJavaScriptTypeScriptSQLSpring Boot+117
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SK

Siva Kumar Katta

Mid-Level Software Engineer specializing in ML platforms and full-stack systems

Diamond Bar, CA4y exp
AmazonArizona State University
A/B TestingAgileAPI TestingAWSBERTC+++80
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ST

Sahithi Tummala

Mid-level AI Engineer specializing in Generative AI, LLMs, and RAG systems

Dallas, TX6y exp
NewmarkUniversity of North Texas
A/B TestingAmazon BedrockAmazon DynamoDBAmazon EC2Amazon ECSAmazon EKS+159
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PS

Pavnit Sethi

Junior Generative AI Engineer specializing in LLM agents and RAG

San Francisco, CA3y exp
Robert HalfGeorgia Tech
.NETAgileAngularAzure FunctionsCC#+60
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