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Vetted Vertex AI Professionals

Pre-screened and vetted.

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SP

Sharath Pampalker

Screened

Mid-level AI/ML Engineer specializing in real-time anomaly detection and AI agents

Remote, USA5y exp
HSBCUniversity of North Texas

“Built a production real-time anomaly detection platform for high-frequency trading at HSBC, using a streaming stack (Pulsar + Spark Structured Streaming + AWS Lambda) and a transformer-based model combining time-series and numerical signals. Experienced in MLOps and safe deployment (Kubernetes, canary releases, MLflow/Grafana monitoring) and in aligning model performance with risk/compliance expectations through SLA-driven tuning and stakeholder-friendly dashboards.”

A/B TestingApache KafkaApache SparkAWS LambdaAzure Machine LearningCI/CD+100
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KK

Kasireddy Kumar reddy

Screened

Mid-level AI/ML Engineer specializing in healthcare, fraud detection, and recommender systems

Missouri, USA6y exp
CenteneUniversity of Central Missouri

“Healthcare-focused applied ML/LLM engineer who has deployed production systems including an LLM medical documentation assistant that summarizes unstructured EHR notes into physician-ready structured outputs. Experienced building secure, compliant pipelines (PHI minimization, RBAC, encryption) and scaling via Docker/Kubernetes/Azure ML, plus orchestrating ETL/ML workflows with Airflow and Kubeflow; also built an LLM-driven clinical coding assistant at Centene with measurable performance metrics.”

A/B TestingAgileApache AirflowApache KafkaAzure Blob StorageBigQuery+137
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NK

Nikitha Kommidi

Screened

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

6y exp
CitibankUniversity of Texas at Arlington

“Built a production real-time fraud detection and customer-support automation platform at Citibank, tackling extreme class imbalance (reported ~1:5000) and strict latency constraints. Combines hands-on MLOps (Airflow, Kubernetes, MLflow; Snowflake/Spark/S3 integrations; CI/CD model promotion) with cross-functional delivery to Risk & Compliance focused on interpretability and reducing false positives.”

PythonSQLBashCJavaScriptPHP+154
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AN

Alex Nguyen

Screened

Junior Applied AI Engineer specializing in LLMs, RAG, and agentic systems

La Jolla, CA2y exp
Uniwise.aiUC San Diego

“Co-founded a healthcare AI startup building and deploying software directly with end users, emphasizing rapid shipping, deep user interviews, and workflow-first adoption. Has hands-on production deployment experience on AWS (including diagnosing a silent AWS App Runner failure caused by an ARM vs amd64 Docker build mismatch) and is motivated by customer-facing, travel-heavy roles to keep engineering tightly connected to real-world usage.”

PythonPyTorchPandasNumPyScikit-learnHugging Face+83
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AR

Anurag Reddy

Screened

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

TX, USA5y exp
CaterpillarUniversity of Illinois Chicago

“ML/NLP engineer who built a RAG-based technical assistant for Caterpillar field engineers, transforming PDF keyword search into intent-based semantic retrieval across manuals, logs, sensor reports, and technician notes. Strong in productionizing data/ML systems (Airflow, PySpark) with rigorous preprocessing, entity resolution, and evaluation—delivering measurable gains in accuracy, relevance, and duplicate reduction.”

A/B TestingAgileAnomaly DetectionAnsibleApache AirflowApache Hadoop+138
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CV

Cristian Vega

Screened

Senior AI/ML Engineer specializing in Generative AI and RAG

California, null9y exp
Morf HealthUniversity of Texas at Austin

“ML/NLP practitioner at Morf Health focused on unifying fragmented healthcare data by linking structured patient/encounter records with unstructured clinical notes. Has hands-on experience with transformer embeddings, vector databases, and domain fine-tuning, plus rigorous evaluation (precision/recall) and human-in-the-loop validation with clinical SMEs to make pipelines production-grade.”

PythonRJavaJavaScriptSQLMySQL+154
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SG

Sai Ganesh nelluri

Screened

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

5y exp
Huntington BankCentral Michigan University

“Currently at Huntington Bank, built a production-grade RAG system that helps business/operations teams get grounded answers from large volumes of internal enterprise documents. Owns ingestion and FastAPI backend, tuned hybrid BM25+vector retrieval and chunking for relevance, and evaluates reliability with metrics and observability (LangSmith, CloudWatch, Prometheus/Grafana) while partnering closely with non-technical stakeholders.”

PythonSQLJavaBashShell ScriptingR+169
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SR

Sahithi Reddy

Screened

Mid-level Machine Learning Engineer specializing in LLM-powered products

Dallas, TX4y exp
VerizonUniversity of Massachusetts Dartmouth

“Verizon engineer who productionized an LLM-based personalization capability for a customer-facing digital platform, owning the path from success metrics through scalable APIs, A/B validation, and post-launch monitoring (latency/accuracy/drift). Experienced in diagnosing and fixing real-time LLM/RAG workflow issues under peak load, and in enabling adoption via tailored technical demos/workshops and sales support materials.”

Machine LearningArtificial IntelligenceDeep LearningPyTorchTensorFlowKeras+110
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PK

PHANINDRA KETHAMUKKALA

Screened

Senior GenAI/ML Engineer specializing in LLMs, RAG, and multimodal generative AI

USA4y exp
GE HealthCareFranklin University

“LLM/RAG engineer with production deployments in highly regulated domains (Frost Bank and GE Healthcare). Built secure, explainable document-grounded Q&A systems using LoRA fine-tuning, strict RAG with confidence thresholds, and citation-based responses; also established evaluation/monitoring (golden QA sets, hallucination tracking, drift) and achieved ~40% latency reduction through retrieval/prompt tuning.”

A/B TestingAgileApache KafkaApache SparkAWS GlueAWS Lambda+170
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AS

Aditya Sairam

Screened

Mid-Level Software Engineer specializing in cloud data platforms and AI search

Troy, MI6y exp
Robotics Technologies LLCCleveland State University

“Open-source JavaScript contributor focused on data visualization, extending Chart.js/React with custom plugins for real-time streaming dashboards. Designed an end-to-end telemetry pipeline using Apache Kafka and Azure Cosmos DB, optimizing partitioning, batching, caching, and client throttling to keep latency low and support thousands of concurrent users. Demonstrates strong ownership in fast-changing environments, including building full-stack AI applications and ingestion/ETL pipelines at Robotics Technologies LLC.”

Apache KafkaAWSAWS LambdaAzure FunctionsC#Cloud Computing+89
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PV

PAVAN VARMA PENMETHSA

Screened

Mid-level Machine Learning Engineer specializing in LLM agents, RAG, and MLOps

New York City, NY6y exp
AvanadeUniversity of North Texas

“Built a production AI-driven contract/document extraction system combining OCR, normalization, and LLM schema-guided extraction, orchestrated with PySpark and Azure Data Factory and loaded into PostgreSQL for analytics. Emphasizes reliability at scale—using strict JSON schemas, confidence scoring, targeted retries, and multi-layer validation to control hallucinations while processing thousands of PDFs per hour—and partners closely with non-technical business teams to refine fields and deliver usable dashboards.”

Machine LearningGenerative AILarge Language Models (LLMs)Prompt EngineeringRetrieval-Augmented Generation (RAG)Embeddings+131
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VM

Vigneshwaran Moorthi

Screened

Mid-level Machine Learning Engineer specializing in LLMs, RAG, and Clinical AI

Chicago, Illinois4y exp
OptumIllinois Institute of Technology

“Built and productionized a HIPAA-compliant LLM+RAG Clinical AI assistant at Optum, fine-tuning GPT/LLaMA on de-identified patient notes and integrating FAISS/Pinecone for sub-second retrieval; reported to cut diagnosis time by ~20 minutes per case. Experienced in orchestrating ML pipelines (Airflow, AWS Step Functions, Azure Data Factory) and in reliability techniques for LLM systems (grounding, citations, confidence filters, monitoring) while partnering closely with clinicians and compliance teams.”

A/B TestingAmazon CloudWatchAmazon EC2Amazon RedshiftAmazon S3Apache Airflow+138
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KR

Krishnakaanth Reddy Yeduguru

Screened

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

Texas, USA4y exp
McKessonUniversity of Texas at Arlington

“AI/ML engineer with healthcare domain depth who led a HIPAA-compliant, production LLM system at McKesson to automate clinical document understanding—extracting entities, summarizing provider notes, and supporting authorization decisions. Hands-on across Spark/Python ETL, Hugging Face + LoRA/QLoRA fine-tuning, RAG, and cloud-native MLOps (Airflow/Kubernetes/Step Functions, MLflow, blue-green on EKS/GKE), with explicit work on PHI handling and hallucination reduction.”

PythonC++SQLBashTensorFlowPyTorch+129
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UK

Uday kumar swamy

Screened

Senior Machine Learning Engineer specializing in MLOps and NLP/GenAI

Chicago, USA9y exp
UnitedHealth GroupIllinois Institute of Technology

“Built a production LLM-agent framework for a startup that performs daily financial/trading analysis by combining live market data with internal tools, including a centralized memory module to prevent context drift and reduce hallucinations. Also implemented an Airflow-orchestrated retail price forecasting pipeline deployed to AWS endpoints, scaling parallel workloads via Kubernetes Executor and validating systems with rigorous functional + LLM-specific metrics and cross-team collaboration.”

PythonSQLRJavaScikit-learnTensorFlow+126
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MR

Mallikarjuna Reddy Gayam

Screened

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

Springfield, Missouri5y exp
O'Reilly Auto PartsSaint Louis University

“ML/LLM engineer who has shipped production RAG systems (LangChain + HF Transformers + FAISS) with hybrid retrieval and cross-encoder re-ranking, deployed via FastAPI/Docker/Kubernetes and monitored with MLflow. Also partnered with wealth advisors at Edward Jones to deliver a client retention model with SHAP-driven explanations and a dashboard that improved trust, adoption, and reduced high-value client churn.”

PythonSQLRJavaScalaMachine Learning+112
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MR

Manichandra Reddy Bethi

Screened

Mid-level GenAI Engineer specializing in production AI agents and evaluation pipelines

Overland Park, Kansas5y exp
MinutentagWilmington University

“Built and shipped a production LLM-powered internal operations automation platform using LangChain RAG (Pinecone) and FastAPI microservices, deployed on AWS EKS, serving 10k+ daily interactions. Implemented a rigorous evaluation/observability stack (golden datasets, prompt regression tests, MLflow, retrieval metrics, hallucination monitoring) that drove hallucinations below 2% and improved reliability, and partnered closely with non-technical ops leaders to cut manual lookup work by 60%+.”

A/B TestingAlertingAWSAWS LambdaBERTCI/CD+120
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SG

Suraj Gajula

Screened

Junior Full-Stack Software Engineer specializing in video and security applications

Menlo Park, CA1y exp
HoneywellUC Santa Cruz

“Full-stack engineer who built and owned a generative-AI pipeline end-to-end inside the Vibecut video editor using Next.js App Router/TypeScript, Gemini-based prompt routing, and Zustand state management, including concurrency-safe requests. Also integrated Python services to access newly released AI tooling, optimized Postgres/S3 data flows for thumbnails, and built Modal-to-Amplitude workflows for Reddit-driven sentiment/metrics in a pre-seed environment while also handling marketing.”

TypeScriptHTMLCSSPythonSQLJavaScript+62
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SG

Sai Garipally

Screened

Mid-level AI/ML Engineer specializing in GenAI, LLMs, and computer vision

USA5y exp
UiPathSacred Heart University

“Built and productionized a multi-agent, LLM-powered document understanding system to replace manual review of long documents, using LangGraph orchestration plus RAG to reduce hallucinations. Implemented layered reliability controls (structured templates, checker agent, and human-in-the-loop feedback) and reported ~40% speed improvement after orchestration; also has hands-on Airflow experience for scheduled data pipelines.”

AWSAWS LambdaCI/CDContainerizationData PreprocessingDeep Learning+91
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KK

Kranthi Kumar Karupati

Screened

Mid-level Generative AI Engineer specializing in LLM apps, RAG, and MLOps

Remote, United States6y exp
AccentureEastern Illinois University

“LLM/GenAI engineer with US Bank experience building a production financial-document intelligence platform using LangChain/LangGraph, GPT-4, and Amazon OpenSearch. Delivered a RAG-based assistant for compliance/audit teams with grounded, cited answers, focusing on reducing hallucinations and latency, and deployed securely on AWS (SageMaker/EKS) with CI/CD and evaluation tooling (LangSmith, RAGAS).”

Amazon API GatewayAmazon BedrockAmazon CloudWatchAmazon DynamoDBAmazon EKSAmazon ECS+168
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RJ

Ramesh Jasti

Screened

Mid-level AI/ML & MLOps Engineer specializing in cloud AI infrastructure and GenAI

San Jose, USA5y exp
HPEWestern Illinois University

“At HPE, led and deployed an enterprise-grade LLM document intelligence platform for an insurance client, automating extraction from highly variable PDFs/scans/emails and raising field accuracy from 74% to 93%. Built a LangChain/Pinecone/OpenSearch RAG framework to cut hallucinations by 37% and operationalized LangSmith evals in CI, driving a 41% triage accuracy lift and >33% fewer incorrect resolutions while partnering closely with claims operations via HITL workflows.”

PythonBashPowerShellGoTensorFlowPyTorch+144
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AS

Anuj Shah

Screened

Senior Data Analyst specializing in cloud data platforms, experimentation, and predictive analytics

GA, USA9y exp
UnitedHealth GroupNorthwestern Polytechnic University

“Healthcare data/ML practitioner with experience at UnitedHealth Group building production ETL and streaming pipelines (Python, BigQuery, Kafka) that unify EHR, IoT device, and lab data for patient risk prediction. Also implemented embedding-based semantic search/linking for noisy clinical notes via domain adaptation and rigorous validation with clinical stakeholders; previously built churn prediction at DirecTV using XGBoost.”

PythonSQLRApache SparkPySparkApache Kafka+111
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SG

SASIREKHA GULIPALLI

Screened

Mid-level Data Analyst specializing in procurement, supply chain analytics, and applied machine learning

Alpharetta, GA4y exp
MotrexGeorgia State University

“Strategic sourcing professional specializing in seasonal apparel supply chains, combining Coupa/JD Edwards analytics with Excel/Python modeling and Power BI dashboards to drive cost reduction and OTIF gains. Notable for rapid mitigation of a 10-day factory delay affecting 12 holiday SKUs (preserved 95% of revenue) and for automating PO workflows to cut cycle time by 4.2 days and improve OTIF by 15%.”

A/B TestingAmazon EC2Amazon S3BashBigQueryClassification+113
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VH

Varsha Hemakumar

Screened

Mid-level ML/AI Engineer specializing in NLP, RAG pipelines, and financial risk & fraud systems

USA3y exp
FintaUniversity at Buffalo

“Built and shipped LLM/RAG systems in finance and startup settings, including a Goldman Sachs document intelligence platform that indexed ~8TB of regulatory filings and delivered cited, conversational answers with <2s latency—cutting compliance research by ~4.5 hours per batch. Also developed LangChain-based agent workflows at Finta to automate CRM enrichment and investor lookup with strong testing, tracing (LangSmith), privacy guardrails, and auditability.”

PythonRSQLMongoDBPandasNumPy+95
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KP

Keerthana Priya

Screened

Mid-level Data Analytics & ML Engineer specializing in NLP, LLMs, and cloud data platforms

Dallas, TX5y exp
MattelKennesaw State University

“At KPMG, built and productionized a secure RAG-based LLM assistant that lets business and risk stakeholders query data warehouses in natural language, reducing dependence on data engineers for ad-hoc analysis. Demonstrates strong production rigor (Airflow orchestration, CI/CD, containerization), retrieval/embedding tuning (rechunking, semantic abstraction for structured data), and reliability controls (confidence thresholds, refusal behavior, monitoring and canary evals).”

SQLPythonRPySparkApache SparkPandas+123
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