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Vetted ChromaDB Professionals

Pre-screened and vetted.

ChromaDBPythonDockerLangChainSQLAWS
KS

kumar satyam

AI/ML Software Engineer specializing in LLM agents and distributed systems

New York, NY5y exp
AlphalyticsUniversity at Buffalo
PythonC++CSQLC#TypeScript+103
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VA

Venkata Ajay Kumar Yadlapalli

Mid-level Full-Stack Python Developer specializing in FinTech and Healthcare IT

Texas, USA4y exp
CitibankGeorge Washington University
PythonJavaScriptTypeScriptDjangoFlaskFastAPI+76
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KA

Kshithesh aleti

Senior AI/ML Engineer specializing in Agentic AI, LLM applications, and RAG

USA6y exp
CVS HealthMarist College
Generative AIMachine LearningDeep LearningMLOpsRetrieval-Augmented Generation (RAG)LLM Fine-Tuning+120
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YK

yoga kodaganti

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

Salt Lake City, UT5y exp
Intermountain HealthNorthern Illinois University
A/B TestingAgileApache KafkaApache SparkAWSAzure DevOps+140
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TM

Thejasvi Mopuru

Mid-level AI/ML Engineer specializing in predictive maintenance, computer vision, and LLM/RAG systems

Alabama, USA3y exp
HyundaiSaint Louis University
AgileAnomaly DetectionAPI IntegrationAWSBashBERT+109
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JM

jagadeesh Meruva

Junior AI Engineer specializing in Generative AI and RAG pipelines

3y exp
VerizonSaint Louis University
PythonSQLGenerative AILarge Language Models (LLMs)GPT-4Retrieval-Augmented Generation (RAG)+32
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JK

Jaya Krishna

Mid-level Data Scientist & AI/ML Engineer specializing in GenAI and LLM-driven enterprise systems

Minnesota, USA6y exp
UnitedHealth GroupSaint Peter's University
Apache KafkaApache SparkAWSAWS GlueAWS LambdaChromaDB+67
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SA

Sushma A

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

Dallas, TX5y exp
Fidelity InvestmentsUniversity of North Texas
PythonSQLJavaCC++JavaScript+135
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BR

Bhargav Reddy Duddugunta

Mid-level Software Engineer specializing in LLM systems and RAG

USA3y exp
Capital OneGeorge Mason University
PythonGoJavaScriptSQLHTMLCSS+86
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AS

Asvad Shaik

Screened

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

Dallas, TX5y exp
CognizantUniversity of North Texas

“Backend engineer who built and migrated a large-scale document intelligence platform used by legal, healthcare, and insurance clients, processing millions of pages. Experienced moving from a monolithic, LLM-heavy approach to a modular FastAPI service architecture with ML classification + RAG, strong validation/auditability, and enterprise security (JWT/OAuth, RBAC, PostgreSQL RLS) with zero-downtime incremental rollouts.”

AngularAWSBERTCSSData CleaningData Pipelines+130
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VN

Venkatesh Nagubandi

Screened

Mid-level Software Engineer specializing in ML, LLM apps, and cloud data systems

Tracy, California4y exp
GeneaUC Santa Cruz

“Built a production SQL chatbot for access-log analytics that replaced manual custom report requests with natural-language querying, using LangGraph and a ChromaDB-backed RAG pipeline for grounded, consistent answers. Implemented a privacy-preserving design where the LLM never sees raw customer data (only query metadata) and has experience building multi-agent/tool-calling systems with LangGraph (DeepAgents), including solving sub-agent communication drift via self-reflection.”

PythonJavaJavaScriptRPyTorchTensorFlow+84
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AM

Ankita Mungalpara

Screened

Mid-level Data Scientist specializing in Generative AI and multimodal systems

Irving, TX5y exp
University of Massachusetts DartmouthUniversity of Massachusetts Dartmouth

“Recent J&J intern who built a conversational RAG agent and led a shift from a monolithic model to a modular RAG workflow, cutting response time from several days to under a second by tackling data fragmentation, context retention, and embedding/latency optimization. Also worked on a large (7B-parameter) multimodal VQA pipeline for healthcare research and stays current via NeurIPS/ICLR and open-source contributions.”

A/B TestingAmazon BedrockAmazon EC2Amazon RDSAmazon RedshiftAmazon S3+154
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SS

Shejal Shankar

Screened

Junior Software Engineer specializing in full-stack systems and LLM automation

San Francisco, CA2y exp
AscendGeorge Washington University

“Full-stack engineer who shipped a production "Financial Insight" assistant dashboard in Next.js App Router/TypeScript, integrating a RAG pipeline (embeddings + ChromaDB + LLM) via route handlers and owning post-launch performance (latency, token cost, retrieval relevance). Also built/optimized Postgres-backed workflows for an outbound dialer and callback routing engine handling ~10,000 daily contacts, validating query performance with EXPLAIN (ANALYZE, BUFFERS).”

Asynchronous ProcessingAWSAWS LambdaChromaDBCI/CDC+95
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SG

Shree Gopalakrishnan

Screened

Entry-Level AI/ML Engineer specializing in LLM apps, RAG pipelines, and production ML systems

1y exp
iFrog Marketing SolutionsUC San Diego

“AI/LLM practitioner at iFrog Marketing Solutions who drove a RAG chatbot from prototype to production in a legacy, AI-resistant environment by validating customer needs and building a business case. Implemented production-grade LLM practices (CI/CD eval gating, rollbacks, prompt/context engineering) and led internal workshops to bring non-AI-native developers up to speed while partnering with sales on tailored demos to drive adoption.”

Machine LearningLangChainRetrieval-Augmented Generation (RAG)OpenAI APIHugging FacePyTorch+87
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YC

Yukta Chikate

Screened

Mid-level Machine Learning Engineer specializing in safety-critical and uncertainty-aware ML systems

Brooklyn, NY5y exp
MTech DistributorsNortheastern University

“Built and productionized an LLM-powered assistant for company documents and support questions, focused on reducing time spent searching PDFs/policies/tickets while preventing hallucinations by grounding answers in approved sources. Demonstrates strong production engineering (Kubernetes/orchestration, caching, monitoring, fallbacks) plus security-minded permissioning and close collaboration with operations/support stakeholders.”

Machine LearningPredictive ModelingMulti-Agent SystemsRoot-Cause AnalysisStatistical AnalysisAnomaly Detection+102
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KL

Kshitij Lingthep

Screened

Mid-level Full-Stack Software Engineer specializing in enterprise web apps and real-time dashboards

Stanton, TN6y exp
SK Battery AmericaUniversity of Mississippi

“Backend/full-stack engineer from Foxconn Industrial Internet who led development of a production TypeScript/Node.js facility monitoring platform delivering near real-time manufacturing metrics (e.g., downtime and OEE) using MySQL + InfluxDB and a React dashboard. Demonstrates strong production operations mindset with queue-based workers, idempotency/DLQ patterns, structured observability, and automated Docker + GitLab CI/CD deployments.”

AgileApache TomcatAuthenticationAuthorizationBootstrapC#+153
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YD

Yash De

Screened

Intern Full-Stack Developer specializing in AI/LLM applications

San Jose, CA3y exp
Kingship AIStevens Institute of Technology

“Backend-focused intern who built and refactored the backend for an LLM-driven gifting mobile app using FastAPI, tackling high-latency LLM + product-API workflows. Implemented async worker-pool/queue processing with Redis caching plus retries/fallbacks, cutting end-to-end suggestion latency from ~4–5 seconds to ~1 second while improving reliability and rollout safety via staged migrations and testing.”

PythonTypeScriptJavaScriptJavaSQLReact Native+64
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SS

Somil Shah

Screened

Mid-level AI/ML Engineer specializing in generative AI, RAG platforms, and LLM agents

San Francisco, CA4y exp
INTERACT Animal LabNortheastern University

“AI/LLM engineer who has shipped 10+ production applications, including InvestIQ on GCP—a production-grade RAG due-diligence engine that ethically scrapes web/PDF sources, builds a ChromaDB knowledge base, and delivers analyst-style dashboards plus a citation-backed chat copilot. Deep focus on reliability (evidence-only answers, hard citations, refusal gating), retrieval tuning, and orchestration (Airflow/Cloud Composer), plus multi-agent systems (CrewAI with 7 specialized finance agents).”

API DevelopmentBashBigQueryBusiness IntelligenceChromaDBCI/CD+136
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AM

Abhishek Mathukiya

Screened

Mid-Level Software Engineer specializing in backend microservices and distributed systems

Waltham, MA4y exp
Dassault SystèmesNortheastern University

“Built and productionized an internal LLM-powered search tool that helps engineers find the right SolidWorks macros using plain-English queries, using OpenAI embeddings and ChromaDB with strong logging/fallback safeguards. Experienced in diagnosing RAG/agentic workflow issues in real time and in hands-on API support, including fixing customer macros after SolidWorks version updates and driving adoption through reusable solutions and best practices.”

AlgorithmsAWSCachingC#CI/CDContainerization+73
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SR

Srikanth Reddy

Screened

Mid-level AI/ML Engineer specializing in GenAI and financial risk & compliance analytics

Plainsboro, NJ7y exp
State StreetWilmington University

“Built and deployed a production LLM-powered financial risk and compliance platform to reduce manual trade exception handling and speed up insights from regulatory documents. Implemented a LangChain multi-agent workflow with structured/unstructured data integration (Redshift + vector DB) and emphasized hallucination reduction for regulatory safety using Amazon Bedrock. Strong MLOps/orchestration background across Kubernetes, Airflow, Jenkins, and monitoring/testing with MLflow, Evidently AI, and PyTest.”

A/B TestingAgileAmazon BedrockAmazon CloudWatchAmazon EC2Amazon RDS+178
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AS

Ashok Sai Doredla

Screened

Mid-level AI/ML Engineer specializing in Generative AI and production ML systems

United States5y exp
CVS HealthUniversity of Maryland, Baltimore County

“At CVS Health, the candidate productionized a RAG-based LLM solution in a regulated healthcare setting, emphasizing reliable data pipelines, LoRA fine-tuning, monitoring, safety guardrails, and A/B testing. They have hands-on experience troubleshooting real-time RAG failures (e.g., chunking/embedding issues) and regularly lead developer-focused demos/workshops while translating technical architecture into business value for stakeholders.”

A/B TestingAsynchronous ProcessingAWSAWS LambdaAzure Blob StorageAzure Functions+142
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