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Vetted GPT-4 Professionals

Pre-screened and vetted.

GPT-4PythonDockerLangChainSQLCI/CD
RG

Raja Gurugubelli

Screened

Mid-level GenAI Engineer specializing in production RAG and LLM fine-tuning

San Jose, California5y exp
eBayTexas Tech University

“LLM engineer who built a production seller-support RAG system at eBay using hybrid retrieval (BM25 + Pinecone vectors) with Cohere reranking, LangGraph orchestration, and citation-grounded answers. Strong focus on reliability: semantic/structure-aware chunking, automated Ragas-based evaluation with nightly regressions, and production observability (LangSmith) plus drift monitoring (Arize). Also implemented a multi-agent fraud pipeline with AutoGen using JSON-schema contracts and explicit termination conditions.”

PythonSQLBashGPT-4LoRALangChain+130
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KS

Kunal Santosh Bhujbal

Screened

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

Middletown, DE2y exp
VibeSea AIUSC

“Distributed-systems engineer applying robotics-style patterns to software: built "Vibecheck," a high-throughput real-time video + OS-telemetry fusion and analysis system (500+ MB/session) with strict latency constraints. Strong in containerization and CI/CD (Docker, GitHub Actions) and in designing fault-tolerant, event-driven architectures (Kafka/RabbitMQ), plus hands-on debugging of multi-agent coordination using blackboard + watchdog/circuit-breaker control patterns.”

TypeScriptPythonJavaC++C#Node.js+111
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SK

Santhosh Kumar

Screened

Mid-level GenAI/ML Engineer specializing in LLM agents and RAG for Financial Services & Healthcare

5y exp
Bank of AmericaVirginia Commonwealth University

“Built and deployed a production GenAI internal support agent at Bank of America (“Ask GPS/AskGPT”) using RAG on Azure, focused on reducing escalations and improving response quality for repetitive knowledge-based queries. Demonstrates strong production LLM engineering: custom LangChain orchestration, retrieval tuning to reduce hallucinations, rigorous offline/online evaluation, and model benchmarking with dynamic routing (e.g., GPT-4 vs Claude).”

AWSAWS LambdaCI/CDClaudeDatabricksDecision Trees+97
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DD

Dhyey Desai

Screened

Intern AI/ML Engineer specializing in RAG, multimodal AI, and LLM systems

Los Angeles, California0y exp
NalaUSC

“Built and shipped 'PetPulse,' a production AI pet-health note system that records voice notes, transcribes them, converts transcripts into structured symptom/event data, and supports grounded Q&A over a user’s notes and vet PDFs. Demonstrates full-stack LLM product execution (FastAPI + GPT-4 + Firebase), with concrete reliability/performance work (async endpoints, caching, RAG/embeddings, function calling) and user-centered iteration with a non-technical product stakeholder.”

Apache HadoopBERTCCachingData VisualizationDatabricks+87
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SG

Shruti Gaikwad

Screened

Mid-Level Software Engineer specializing in secure cloud microservices and FinTech

Remote, USA4y exp
BrexSyracuse University

“Built and owned major parts of a real-time distributed AI fraud-detection pipeline (ingestion, inference microservice integration, and automated action layer), optimizing latency and observability and reducing false positives by ~35%. Understands ROS/ROS2 concepts (nodes/topics/services) and planned hands-on ramp-up via ROS2 pub/sub exercises and Gazebo simulation, but has not worked on physical robots or ROS in production.”

Amazon API GatewayAmazon CloudWatchAmazon EKSAmazon SNSAnsibleAngular+220
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HK

Harshitha Kotari

Screened

Mid-level Data/ML Engineer specializing in NLP, GenAI, and scalable data pipelines

5y exp
AbbottClarkson University

“AI/ML engineer with production experience building LLM-powered document intelligence and customer support systems in healthcare/insurance, emphasizing high-accuracy RAG, long-document processing, and robust monitoring/fallback mechanisms. Also automates and scales ML lifecycle workflows using Apache Airflow and Kubeflow, and partners closely with non-technical operations stakeholders to drive adoption.”

PythonRSQLJavaMATLABHTML+148
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UK

Uday Kumar gattu

Screened

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

4y exp
Capital OneLindsey Wilson College

“Built and deployed a production LLM/RAG knowledge assistant integrating internal docs, wikis, and ticket histories to reduce tribal-knowledge dependency and repetitive questions. Emphasizes reliability via grounding + a validation layer, and achieved major latency gains (>50%) through vector index optimization, caching, quantization, and selective re-validation. Comfortable orchestrating end-to-end LLM/data workflows with Airflow, Prefect, and Dagster, including monitoring and alerting.”

A/B TestingAmazon CloudWatchAmazon DynamoDBAmazon EKSAmazon RedshiftAmazon S3+129
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HG

Harshavardhan Garikala

Screened

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

NJ, USA4y exp
Red HatOklahoma Christian University

“Red Hat ML/LLM engineer who designed and deployed a production LLM-powered customer support automation system using RAG, improving latency by 30% via PEFT and vector search optimization. Built security and governance into retrieval (access-level filtering, encrypted Pinecone/ChromaDB) and delivered SHAP-based explainability via a dashboard for non-technical stakeholders. Experienced orchestrating distributed ML/RAG pipelines across AWS SageMaker and OpenShift with Airflow/Prefect, plus multi-agent workflows using CrewAI and LangGraph.”

PythonPySparkSQLTensorFlowPyTorchHugging Face+127
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SM

Subhasmita Maharana

Screened

Mid-level Data Scientist specializing in NLP/LLMs, time series forecasting, and MLOps

New York, NY6y exp
CitigroupKent State University

“Data/ML practitioner with hands-on experience building NLP systems from prototype to production: delivered a Twitter sentiment classifier with robust preprocessing, SVM modeling, and Power BI reporting, and built entity-resolution pipelines for messy multi-source customer data (reporting ~95% improvement in unique entity identification). Also implemented semantic linking/search using SBERT embeddings with FAISS vector retrieval and domain fine-tuning (reported ~15% precision lift), and applies production workflow best practices (Airflow/Prefect, Docker, Azure ML/Databricks, Great Expectations).”

A/B TestingApache AirflowAzure Machine LearningBERTCI/CDClustering+170
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SG

Sahithya Godishala

Screened

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

St. Louis, MO5y exp
CenteneSaint Louis University

“Built and deployed a production LLM-powered RAG document intelligence/Q&A system for healthcare prior authorization, reducing manual medical document review time and improving decision efficiency. Strong in end-to-end LLM application engineering (LangChain/LangGraph), retrieval quality improvements (hybrid search, embedding tuning, chunking strategies), and rigorous evaluation/monitoring for reliability.”

PythonSQLPostgreSQLREST APIsFastAPIFlask+108
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VS

Vaibhav Sharma

Screened

Mid-level Software Engineer specializing in AI/ML and data platforms

Remote, USA5y exp
GoogleIndiana University Bloomington

“AI/ML engineer who built a production agentic system to automate computational research experiments (simulation execution, parameter exploration, and numerical analysis) and mitigated context-window failures using constrained tool-calling/prompt-chaining patterns in LangChain with OpenAI tool-enabled models. Also has adtech/big-data pipeline experience at InMobi, orchestrating Spark jobs in Airflow to filter bot-like user IDs and publish clean IDs to an online NoSQL store for live serving, plus Apache open-source collaboration experience.”

A/B TestingApache AirflowApache HadoopApache HiveApache KafkaApache Spark+100
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SM

SUSENDRANATH MUSANI

Screened

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

Connecticut, USA5y exp
PfizerUniversity of New Haven

“Built and deployed an enterprise GenAI knowledge assistant over thousands of internal PDFs/reports using a RAG stack (GPT-4 + Hugging Face embeddings + vector DB) to reduce manual search and SME escalations. Uses LangGraph/LangChain to orchestrate modular agent workflows with relevance filtering and fallback handling, and applies rigorous evaluation (golden datasets, edge cases, A/B tests) with production monitoring metrics.”

A/B TestingAgileApache KafkaApache SparkAWS LambdaBERT+103
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MS

Monish Sri Sai Devineni

Screened

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

Boca Raton, FL5y exp
Morgan StanleyFlorida Atlantic University

“AI/ML engineer with experience at Accenture and Morgan Stanley, building production LLM systems (GPT-3 summarization) and finance-focused ML models (credit risk and trading anomaly detection). Combines MLOps depth (Docker/Kubernetes, AWS SageMaker/Glue/Lambda, MLflow, A/B testing, drift monitoring) with practical domain adaptation techniques like few-shot prompting and RAG/knowledge-base integration.”

A/B TestingAnomaly DetectionAPI GatewayAWSAWS GlueAWS Lambda+119
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SV

Sathwik Varikoti

Screened

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

Remote5y exp
InfosysUniversity at Buffalo

“GenAI Engineer at Infosys who built and deployed a production multi-agent RAG system for a top-tier bank, scaling to ~50,000 queries/day with 99.9% uptime. Drove measurable gains (45% accuracy improvement, 30% API cost reduction) through open-source LLM fine-tuning, Pinecone indexing/retrieval optimization, and AWS-based MLOps/monitoring, and has experience enabling adoption via developer workshops and customer-facing collaboration.”

A/B TestingAmazon BedrockAmazon EC2Amazon S3AWS GlueAWS IAM+99
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RK

Ramtin Khorrami

Screened

Principal Software Engineer specializing in AI/ML and cloud-native backend systems

New York, NY16y exp
McKinsey & CompanyNJIT

“McKinsey data/ML practitioner who led production deployment of an entity resolution + semantic search platform for unstructured finance and healthcare data, integrating with legacy systems under HIPAA constraints. Deep hands-on stack across transformers (spaCy/HF BERT), embeddings + FAISS, and production MLOps/workflow tooling (Airflow, Docker, CI/CD, Prometheus/Grafana), with reported gains of +30% decision speed and +25% search relevance.”

PythonSQLRRubyJavaJavaScript+124
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SA

Sai Aditya Paruchuri

Screened

Mid-level Software Engineer specializing in cloud-native microservices and AI-powered web applications

Remote, USA5y exp
BigCommerceArizona State University

“Backend engineer who built and owned an AI-powered SMS survey platform for a nonprofit serving at-risk communities (internet-limited users), using Cloudflare Workers + Twilio and a state-machine survey engine. Scaled it to ~10k active users with near-zero downtime, added English/Spanish support, and iteratively improved LLM behavior (Claude 3.7 Sonnet) to handle nuanced, real-world SMS responses reliably.”

JavaKotlinPythonJavaScriptTypeScriptSQL+201
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AC

AKHIL CHIPPALTHURTHY

Screened

Mid-level AI/ML Engineer specializing in NLP, LLMs, and risk modeling

NJ, USA5y exp
JPMorgan ChaseStevens Institute of Technology

“GenAI/LLM engineer who architected and deployed a production RAG “research assistant” for JPMorgan Chase’s regulatory compliance team, focused on safety-critical behavior (mandatory citations, refusal when evidence is missing). Deep hands-on experience with LlamaIndex, Pinecone, Hugging Face embeddings, LangGraph agent workflows, and metric-driven evaluation (golden sets, TruLens), including a reported 28% relevancy lift via cross-encoder re-ranking.”

AWSAWS CloudFormationAWS LambdaBERTBigQueryClaude+110
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DM

Deepthi Mundarinti

Screened

Mid-level Generative AI Engineer specializing in decision intelligence and RAG for regulated enterprises

5y exp
JPMorgan ChaseSaint Louis University

“Healthcare GenAI engineer who built a HIPAA-compliant, auditable RAG-based claims decision support system at Molina Healthcare, processing 3M claims and delivering major impact (48% faster manual reviews, 43% higher decision accuracy). Deep hands-on experience with LangChain orchestration, vector search (ChromaDB/FAISS), embedding fine-tuning, and safety controls (confidence scoring, rule validation, human-in-the-loop escalation) for clinical workflows.”

Generative AIGPT-4OpenAI APIPrompt EngineeringRetrieval-Augmented Generation (RAG)Machine Learning+96
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JZ

jiayu Zhao

Screened

Junior Quantitative Analyst and Full-Stack Engineer specializing in FinTech and web platforms

Chicago, IL6y exp
Happy CashierUniversity of Chicago

“Backend/distributed-systems engineer with AI infrastructure experience who built an AI-driven video generation platform, focusing on an asynchronous FastAPI-based orchestration layer between user APIs and heavy inference services. Strong in production instrumentation and latency/concurrency optimization; actively learning ROS 2 but has not yet worked on physical robotics or ROS-based deployments.”

AWSAWS CodePipelineAWS LambdaCC++CI/CD+67
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PK

Pavan Kumar Malasani

Screened

Mid-level AI/ML Engineer specializing in financial risk, fraud detection, and GenAI

Remote, USA4y exp
CitigroupUniversity of Colorado Boulder

“GenAI/ML engineer in Citigroup’s finance environment who has deployed production RAG systems for investment banking under strict privacy and model-risk constraints. Built an internal-VPC Llama2 + Pinecone + LangChain solution with NER redaction and citation-based verification to prevent hallucinations, delivering major time savings, and also partnered with global finance executives to ship an AI early-warning indicator for treasury/liquidity risk.”

A/B TestingAmazon CloudWatchApache AirflowApache HiveApache KafkaApache Spark+137
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ST

Sai Teja Challa

Screened

Mid-Level AI Engineer specializing in NLP, computer vision, and LLM applications

Austin, TX3y exp
BookedByUniversity of Maryland, Baltimore County

“LLM/RAG practitioner who productionized an LLM-driven customer communication and transaction understanding system at PayPal, emphasizing privacy/compliance guardrails and large-scale data normalization. Experienced in real-time debugging of hallucinations via retrieval pipeline tuning and in leading hands-on developer workshops and sales-aligned POCs to drive adoption.”

PythonPySparkSQLNoSQLNumPyPandas+169
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VK

venkata Kommineni

Screened

Senior AI/ML Engineer specializing in Generative AI, agentic systems, and RAG

Texas, USA4y exp
Bank of AmericaWichita State University

“Built and deployed an agentic RAG assistant in production to automate enterprise knowledge search and multi-step workflows with tool calling, tackling real-world issues like hallucinations, retrieval accuracy, and latency. Demonstrates strong LLMOps and orchestration depth (MLflow, Airflow, LangGraph/LangChain/LlamaIndex) plus a metrics-driven approach to agent testing/evaluation and cross-functional delivery with business stakeholders.”

AgileAWSCachingCI/CDClassificationData Ingestion+127
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PG

Pandari G

Screened

Mid-level Machine Learning Engineer specializing in Generative AI and RAG systems

San Francisco, USA5y exp
SephoraSaint Mary's College of California

“GenAI/LLM engineer with production deployments in both fintech and retail: built an AI-powered mortgage document analysis/automated underwriting pipeline at Fannie Mae (OCR + custom LLM) cutting underwriting review from 3–4 hours to under an hour with privacy-by-design controls. Also helped build Sephora’s GenAI product advisory bot using LangChain-orchestrated RAG (Azure GPT-4, Azure AI Search, MySQL HeatWave vector search), focusing on grounding, evaluation, and compliance-aware architecture choices.”

PythonSQLRPySparkPowerShellGenerative AI+158
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OL

Olivia Liau

Screened

Junior Data Scientist specializing in ML research, NLP, and healthcare analytics

Los Angeles, CA2y exp
Worcester Polytechnic InstituteUSC

“Completed an Amazon externship building a GPT-4 + RAG pipeline to summarize themes from hundreds of employee reviews for workforce analytics aimed at improving warehouse retention. Emphasizes production-readiness through labeled-data evaluation, source attribution for explainability, human-in-the-loop review, and rigorous data cleaning/observability to debug real-world LLM workflow issues.”

A/B TestingArtificial IntelligenceCI/CDCC++Clustering+74
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