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Vetted Machine Learning Engineers

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Bay AreaDFW MetroplexRemoteNYC MetroGreater BostonDMVLos Angeles MetroChicago MetroAustin MetroGreater Seattle
HW

Hans Walker

Screened

Junior Machine Learning Engineer specializing in generative AI and computer vision

Boston, MA2y exp
CuebricUSC

“AI engineer who deployed a production LLM-powered safety system for an education platform, combining rule-based checks, multi-LLM verification, and selective context (prompt+image vs image-only) to prevent explicit prompts/images from getting through. Strong focus on reliability via benchmarking, trace-based failure analysis, and continuous improvement driven by stakeholder feedback and manual review.”

AWSBashBERTCC++Classification+80
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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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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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KS

Koti Sai venkata Bhargav Edupuganti

Screened

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

USA6y exp
UnitedHealth GroupKent State University

“Built and deployed a GPT-based RAG enterprise search system for healthcare clinicians, emphasizing low-latency performance and reduced hallucinations while maintaining end-to-end HIPAA compliance. Demonstrates deep applied experience with PHI-safe data governance (detection/redaction/de-identification), secure Azure ML deployment patterns, and orchestration of production LLM workflows using LangChain and Airflow.”

A/B TestingAgileAWSBashBigQueryCI/CD+131
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JB

Jaideep bommidi

Screened

Senior ML Engineer & Data Scientist specializing in LLM agents, retrieval/ranking, and MLOps

Denton, TX8y exp
Webster BankUniversity of North Texas

“Machine Learning Engineer currently at Webster Bank building an enterprise-scale LLM agent for Temenos Journey Manager/Maestro, using RAG-style multi-stage retrieval with FAISS/Pinecone, hybrid dense+sparse search, and LoRA fine-tuning optimized via NDCG/MAP and A/B testing. Previously handled messy incident/telemetry data at Deuta Werke GmbH with deterministic + fuzzy entity resolution, and has strong production data engineering experience across Spark/Hadoop and Python ETL systems.”

A/B TestingAgileAmazon EC2Amazon EKSAmazon ECSAmazon Kinesis+181
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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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NV

Naga Venkata Padala

Screened

Mid-level AI/ML Engineer specializing in Generative AI, RAG, and real-time fraud detection

4y exp
U.S. BankUniversity of Massachusetts Dartmouth

“GenAI/ML engineer who has shipped production agentic systems in highly regulated and high-throughput environments, including an AWS Bedrock-based fraud/compliance workflow at U.S. Bank with PII redaction and hallucination detection that cut investigation time by 50%+. Also built and evaluated RAG and recommendation systems at Target, using RAGAS-driven testing, hybrid retrieval with re-ranking, and SHAP explainability dashboards to align model behavior with merchandising business KPIs.”

AWSAWS CloudFormationAWS GlueAWS LambdaApache AirflowApache Kafka+143
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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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RK

Ram Kottala

Screened

Mid-level Data & GenAI Engineer specializing in lakehouse, streaming, and RAG platforms

Michigan, USA5y exp
FordWebster University

“Built a production internal LLM-powered knowledge assistant using a RAG architecture (Python, LLM APIs, cloud services) that answers employee questions with sourced, grounded responses from internal documents. Demonstrates strong practical depth in retrieval tuning (chunking/metadata filters), orchestration with LangChain, and production reliability practices (latency optimization, automated embedding refresh, evaluation metrics, logging/monitoring) while partnering closely with non-technical operations teams.”

PythonPySparkScalaJavaRSQL+173
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KP

Krisha Patel

Screened

Entry-Level Software Engineer specializing in AI/ML and Full-Stack Development

United States0y exp
TargetUniversity at Albany

“Backend engineer who built an NL-to-SQL system at Target, using a multi-step LLM pipeline with vector-store schema retrieval and SQL validation to safely answer business questions. Strong in production FastAPI systems (async, Pydantic, Docker/Uvicorn, load balancing) and security (OAuth2/JWT, scopes, and database row-level security), with experience migrating Flask apps to FastAPI + PostgreSQL using strangler/feature-flagged canary rollouts.”

.NETAlgorithmsAngularAPI TestingBootstrapC+97
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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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TM

Tejal Mane

Screened

Mid-level Machine Learning Engineer specializing in GenAI, LLMs, and real-time ML systems

Moundsville, WV4y exp
CitiusTechUniversity of Michigan

“Built and deployed a production long-form article summarization system using BART/T5/PEGASUS, tackling real-world constraints like token limits, latency/quality tradeoffs, and factual drift via chunking/merge logic and constrained decoding. Uses pragmatic Python-based pipeline orchestration (scheduled jobs, modular scripts, logging/retries) and iterates with stakeholder feedback to make outputs genuinely useful for content workflows.”

AgileApache HadoopApache KafkaAWSCI/CDCUDA+112
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LK

Lokeshwar Kodipunjula

Screened

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

New York, NY4y exp
AIGUniversity of Texas at Arlington

“LLM/ML platform engineer with hands-on experience taking an LLM document summarization prototype into a production-grade service on AWS EKS, emphasizing low-latency inference, drift monitoring, and safe CI/CD rollouts (canary + rollback). Strong in real-time debugging of agentic/RAG systems (tracing, retrieval/index drift fixes) and in developer enablement through practical workshops (Docker/Kubernetes/FastAPI) plus pre-sales support via demos and benchmarks to close pilots.”

PythonSQLRJavaJavaScriptScala+148
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CS

Chandra Shekar Akkandra

Screened

Mid-level AI/ML Engineer specializing in fraud detection and risk analytics in Financial Services

Newark, CA5y exp
JPMorgan ChaseUniversity of Missouri-Kansas City

“Finance-domain ML/LLM engineer who has shipped production systems including a RAG-based financial insights assistant with a custom post-generation validation layer that verifies atomic claims against retrieved source text to prevent hallucinations in compliance-critical workflows. Also built large-scale MLOps automation on AWS using Kubeflow + MLflow + CI/CD for fraud detection and credit risk models processing 500M+ transactions/day with a 99.99% uptime goal, and partnered closely with JP Morgan risk/compliance stakeholders on NLP-driven compliance monitoring.”

A/B TestingAmazon DynamoDBAmazon EC2Amazon ECSAmazon EKSAmazon Kinesis+136
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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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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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PK

Phani K

Screened

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

Indiana, USA4y exp
UnitedHealth GroupIndiana State University

“Built and deployed a production LLM-powered clinical insights/summarization assistant for healthcare teams, including a Spark+Airflow pipeline, fine-tuned transformer models, and a FastAPI Docker service on AWS. Demonstrates strong MLOps/LLMOps depth (Airflow on Kubernetes, custom AWS operators/IAM, MLflow, CloudWatch) and practical reliability work like hallucination mitigation, confidence scoring, and retrieval-backed evaluation with shadow deployments.”

A/B TestingAgileApache AirflowApache KafkaApache SparkAWS+116
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SK

Sana Khan

Screened

Mid-level AI/ML Engineer specializing in MLOps, LLMs, and real-time inference in FinTech

Oklahoma, USA4y exp
Capital OneOklahoma Christian University

“ML/LLM engineer who has deployed a production LLM-powered assistant for intent classification and query routing (order recommendation/support deflection), combining BERT fine-tuning with an embedding-based retrieval layer and optimizing for low-latency inference. Experienced with end-to-end reliability practices—Airflow-orchestrated ETL, data validation/alerting, MLflow experiment tracking, and iterative improvements driven by user feedback and monitoring.”

PythonSQLNumPyPandasBashPySpark+97
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TR

Tejaswi Rao

Screened

Mid-level Machine Learning Engineer specializing in MLOps and GenAI analytics

Jersey City, New Jersey7y exp
MediacomStevens Institute of Technology

“ML/LLM practitioner who has deployed a production RAG-based trouble-call identifier using multiple datasets (device, network, past complaints). Experienced in end-to-end MLOps (FastAPI + Docker + Kubernetes with HPA) and in evaluating/monitoring LLM behavior to reduce hallucinations, with additional applied work in forecasting/anomaly detection and churn prediction for retention campaigns.”

Apache AirflowBigQueryC++CI/CDClassificationDeep Learning+54
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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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RR

Rishitha reddy katamareddy

Screened

Mid-level Generative AI & Machine Learning Engineer specializing in agentic LLM systems

USA4y exp
OptumUniversity at Buffalo

“Built and deployed a production agentic LLM knowledge assistant that answers complex questions over internal documents, APIs, and databases using a RAG architecture (FAISS/Pinecone) and LangChain/LangGraph orchestration. Emphasizes production-grade reliability and hallucination control through grounding, confidence thresholds, validation, retries/fallbacks, and full observability (logging/metrics/traces) with continuous evaluation and feedback loops.”

Generative AILarge Language Models (LLMs)LangChainLangGraphReActPrompt Engineering+175
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SB

Sharath Bandi

Screened

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

Saint Louis, Missouri4y exp
LSEGAvila University

“Open-source JavaScript contributor focused on performance and maintainability in data visualization libraries—refactored legacy ES5 into modular ES6, added tests/docs, and delivered ~30% faster load times with positive community adoption. Also optimized a React dashboard (~40% load-time reduction) and took ownership in an ambiguous AI product initiative by setting milestones, standing up an initial ML pipeline, and shipping a prototype in ~6 weeks that became the basis for production.”

A/B TestingApache AirflowApache HadoopApache HiveApache KafkaApache Spark+225
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SK

Sravan Kumar Jajam

Screened

Mid-level Data Scientist / ML Engineer specializing in streaming ML systems for healthcare and IoT

Urbandale, IA4y exp
John DeereAuburn University at Montgomery

“ML/GenAI engineer with production experience building an LLM-powered governance layer that summarizes verified drift/performance signals into validation reports and release notes, designed for regulated environments with de-identification and non-blocking fallbacks. Strong Airflow-based orchestration background across healthcare and finance, integrating Databricks/Spark and MLflow for scalable retraining/monitoring. Demonstrated ability to partner with non-technical healthcare operations teams to deliver actionable risk-scoring outputs via dashboards and automated reporting.”

PythonRSQLBashPandasNumPy+127
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