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Vetted Vector Databases Professionals

Pre-screened and vetted.

Vector DatabasesPythonDockerSQLCI/CDAWS
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
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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
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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
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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
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AC

Andrew Clayman

Screened

Senior Data Scientist specializing in ML, NLP, and production AI systems

Remote8y exp
AppstemUniversity of Southampton

“Machine learning/NLP engineer with deep Azure stack experience (Data Factory, Databricks/Spark, Delta Lake, Azure OpenAI, Azure AI Search) who built end-to-end production systems for semantic clustering, entity resolution, and hybrid search. Demonstrated measurable gains from embedding fine-tuning (~15% retrieval precision, ~10–12% nDCG@10) and designed scalable, quality-checked pipelines with MLOps best practices.”

PythonC++SQLDockerFlaskCI/CD+133
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VK

Varun Kothapalli

Screened

Mid-level AI/Machine Learning Engineer specializing in Generative AI, NLP, and MLOps

Saint Louis, MO6y exp
EquifaxWebster University

“Built a production LLM/RAG document analysis system for large financial documents (credit reports/PDFs) to help business analysts extract insights faster. Implemented end-to-end pipeline orchestration with LangChain, vector search (e.g., FAISS), and hallucination controls (context grounding, similarity thresholds, and no-answer fallback), delivered as a Dockerized Python API.”

Artificial IntelligenceMachine LearningDeep LearningSupervised LearningUnsupervised LearningFeature Engineering+89
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DB

Dinesh Battula

Screened

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

Kansas, null5y exp
Cardinal HealthUniversity of Central Missouri

“Senior full-stack engineer with strong healthcare domain experience who has shipped an Azure OpenAI RAG-based patient medication support chatbot to production, driving ~10K queries/month and a reported 38% reduction in call center volume. Also builds polished real-time React/TypeScript pharmacy tooling and operates large-scale Python/Spark ETL pipelines (~12M records/day) with strong API design, observability, and cloud deployment experience across Azure/Kubernetes and AWS.”

SDLCAgileScrumKanbanMicroservices ArchitectureJava+136
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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
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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
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SK

Sabita Kumari

Screened

Senior Full-Stack AI Engineer specializing in LLM/RAG agentic systems

Boston, MA11y exp
Northeastern UniversityNortheastern University

“Built and deployed JobMatcher AI, an LLM-driven workflow automation product for job seekers that extracts requirements from job descriptions, matches to user skills, and generates tailored outreach. Demonstrated strong production engineering by cutting per-run cost ~70%, improving reliability with retries/backoff/fallbacks, and reducing hallucinations via schema validation and templating; also orchestrated the system with LangGraph plus Docker Compose across API, vector DB, and workers.”

PythonJavaJavaScriptTypeScriptSQLHTML+116
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JC

Jen-Ting Chang

Screened

Mid-Level Backend Software Engineer specializing in FinTech and distributed systems

Taipei, Taiwan5y exp
Crypto-ArsenalUSC

“Backend engineer who built an AI RAG quoting system for the fastener industry, reducing quote turnaround from weeks to ~30 minutes and raising retrieval accuracy to ~90% by solving a semantic-collision issue with a parent-document retrieval design. Strong in production AWS integrations (Cognito auth, S3 pre-signed uploads), performance optimization (multithreading/out-of-core), and real-time streaming (Kafka/Spark Kappa architecture achieving sub-second latency), plus Kubernetes logging and GitHub Actions CI/CD to ECR.”

API GatewayAWSAWS LambdaAlgorithmsCI/CDC+++80
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SK

SUJAY Kanakamedala

Screened

Mid-level AI Developer & Machine Learning Engineer specializing in LLM and MLOps systems

Champaign, IL5y exp
CenteneEastern Illinois University

“Built and deployed an enterprise RAG application at Centene to help clinical teams retrieve insights from large internal policy document sets, cutting manual research by 30–40%. Implemented custom domain-adapted embeddings (SageMaker + BERT transfer learning) and hybrid retrieval (BM25 + Pinecone) to drive a 22% relevance lift, and ran the system in production on AWS EKS with CI/CD, MLflow, and Prometheus monitoring (99% uptime, ~40% latency reduction).”

A/B TestingAgileApache KafkaApache SparkAWSAWS Lambda+145
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SB

Shashank Bijarapu

Screened

Mid-level AI/ML & Data Engineer specializing in MLOps and cloud data pipelines

Remote, USA4y exp
MerkleUniversity of North Carolina at Charlotte

“AI/ML engineer (Merkle) with hands-on experience deploying RAG-based LLM applications and real-time recommendation engines into production. Strong in cloud/on-prem architectures, GPU autoscaling, caching, and network optimization—delivered measurable latency reductions (40–70%) and improved retrieval relevance by systematically benchmarking chunking/embedding configurations and validating pipelines via CI/CD.”

PythonSQLRJavaBashScikit-learn+103
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KG

Krithika GandlurMurali

Screened

Mid-Level Forward Deployed AI Engineer specializing in RAG systems and backend microservices

Austin, TX4y exp
SequretekStevens Institute of Technology

“LLM solutions practitioner with SOC/alert-triage experience who takes LLM prototypes to production using RAG (Pinecone), FastAPI services, guardrails, CI/CD, monitoring, and robust fallback logic. Known for rapid real-time debugging of embedding/vector and agent workflow issues, and for driving adoption through code-first workshops and sales-aligned custom demos with measurable improvements (35% faster triage; 40% increase in correct tool usage).”

PythonFastAPIRetrieval-Augmented Generation (RAG)Prompt engineeringOpenAI APIEmbeddings+85
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PJ

PRAHARSHA JANDHYALA

Screened

Mid-level Data Scientist/Data Analyst specializing in ML, BI dashboards, and ETL pipelines

Dallas, TX4y exp
HumanaArizona State University

“Data/ML practitioner with experience at Humana and Hexaware, focused on turning messy, semi-structured datasets into production-ready pipelines. Built an age-prediction model from book ratings using heavy feature engineering and multiple regression models, and has hands-on entity resolution (deterministic + fuzzy matching) plus embeddings/vector DB approaches for linking and search relevance.”

PythonRSQLPower BITableauMicrosoft Excel+178
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SB

Shrinivas Bhusannavar

Screened

Mid-level AI Engineer specializing in agentic LLM systems and RAG platforms

San Jose, CA5y exp
SquareShiftSan José State University

“Built and shipped Serrano AI, a multi-tenant SaaS conversational AI platform that automates Odoo ERP workflows and lets ops/finance/supply-chain teams query ERP data in natural language. Implemented a multi-agent architecture (LangChain/LangGraph/CrewAI) with hybrid RAG over ERP schemas, deployed on Heroku/Vercel with production observability, cutting reporting time by ~80% while addressing hallucinations, latency, and schema complexity.”

Apache HadoopApache KafkaApache SparkAWSAWS LambdaAzure Data Factory+154
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VU

Vinaya Uttam Bomnale

Screened

Junior Full-Stack Software Engineer specializing in cloud web apps and authentication

Richardson, Texas3y exp
CrowdDoingUniversity of Texas at Dallas

“Full-stack engineer with Deloitte and CrowdDoing experience shipping production web platforms on AWS (EC2/RDS/S3/Fargate) using React/TypeScript and Node/Express/PostgreSQL. Built customer-facing authentication/SSO flows (OAuth2 + JWT) and state-specific US privacy consent workflows, and also delivered a Python/Flask LLM-based finance document parser chatbot with vector DB integration and latency optimizations.”

JavaScriptTypeScriptPythonSQLReactAngular+66
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JT

Jarin Tasnim

Screened

Staff/Lead Software Engineer specializing in distributed data and ML platforms

Mountain View, CA6y exp
Stanford UniversityUniversity of Saskatchewan

“Defense-domain AI engineer who built a production ReAct-style RAG system for military training data/material generation, scaling to ~1000 users and cutting generation time by 50%. Also has experience designing GPU-cluster parallel computation with PyTorch and handling production incidents involving database performance and schema design.”

PythonPyTorchFastAPIDjangoJavaSpring Boot+71
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AL

Alexander Lin

Screened

Mid-level Software Engineer specializing in automation, AI agents, and full-stack web development

Greater Los Angeles Area, CA5y exp
MensaCalifornia State Polytechnic University, Pomona

“Full-stack engineer who built and shipped an AI-powered internal knowledge search system for APL Services, including document ingestion into a vector database, a Python backend, and a React/TypeScript chat-style UI with source citations for trust. Improved production reliability by migrating from Streamlit Cloud to GCP with containerization and scaling controls to eliminate cold-start friction; also co-led a Mensa chapter website redesign as Digital Communications Committee co-chair.”

PythonJavaBashC++TypeScriptJavaScript+74
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SC

Sreeraj Chintham

Screened

Mid-level Python Developer specializing in backend microservices, APIs, and AI/RAG pipelines

4y exp
PTCSt. Francis College

“Backend/infrastructure-focused engineer building AI-agent products for small businesses, including a customer-service agent platform with intent routing, RAG over Pinecone, and external booking API integration. Has shipped Python/FastAPI services with JWT auth, versioned APIs, Docker deployments to AWS EC2 via GitHub Actions, and production monitoring with Prometheus/Grafana.”

PythonObject-Oriented Programming (OOP)Error HandlingJavaDjangoFlask+119
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LD

Leelakarthik Devisetty

Screened

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

Atlanta, GA3y exp
AIGKennesaw State University

“Data professional with ~4 years of experience, most recently at AIG (insurance), building ML/NLP systems for fraud detection and policy automation using transformers, CNNs, and clustering/anomaly detection. Also developed a RAG-based knowledge retrieval system, iterating across embedding models and moving to production based on precision and latency SLAs, then containerizing and deploying with SageMaker and CI/CD.”

AWSAWS LambdaBERTBigQueryCI/CDClaude+143
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BC

Bhavishyasai Chigurupati

Screened

Mid-Level Data/ML Engineer specializing in Generative AI and cloud data platforms

Overland Park, KS5y exp
CignaUniversity of Central Missouri

“Built and productionized an LLM-based financial document analysis system using a RAG pipeline, including robust ingestion/chunking/embedding workflows, vector DB retrieval, and an AWS-deployed FastAPI service containerized with Docker. Demonstrates strong applied expertise in improving retrieval quality and latency at scale, plus hands-on experience debugging agentic/LLM workflows with monitoring and trace-based analysis while supporting demos and customer-facing adoption.”

SDLCAgileWaterfallPythonSQLR+179
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CC

Chop C

Screened

Executive CTO specializing in Web3/GameFi, cloud infrastructure, and AI-driven platforms

Remote11y exp
AlwaysGeeky Games

“Entrepreneurial product builder who created chaintrigger.com in response to early Web3 demand for real-time on-chain event reactions, offering an alternative to The Graph Protocol and achieving adoption among games and other Web3 projects. Currently developing new tools, dogfooding internally, and building distribution via personal network and a niche Twitter/X following to gather feedback and iterate quickly.”

AgileAndroidAWSBashCI/CDCollaboration+110
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SK

Saketh Kota

Screened

Mid-level Data Scientist / ML Engineer specializing in Generative AI, RAG, and MLOps

Irving, TX4y exp
U.S. Bank

“Built and productionized a RAG-based LLM research assistant for biomedical and regulatory document search using Mixtral 7B on SageMaker, LangChain, and Milvus, cutting research time by ~40%. Has hands-on multi-cloud MLOps experience across AWS/Azure/GCP with Kubeflow/Airflow/Composer plus Terraform + ArgoCD, and applies rigorous evaluation/monitoring (latency, accuracy, hallucinations). Also partnered with a non-technical PM to deliver an insurance policy Q&A chatbot that reduced customer response time by 30%+.”

AgileA/B TestingAmazon SageMakerAPI DevelopmentArgo CDAWS+185
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