Reval Logo
Home Browse Talent Skilled in MLflow

Vetted MLflow Professionals

Pre-screened and vetted.

MLflowPythonDockerSQLTensorFlowPyTorch
DW

David Wisdom

Screened

Mid-level Data & Machine Learning Engineer specializing in production ML and data platforms

San Francisco, CA5y exp
Spice DataWilliam & Mary

“Built and deployed a production LLM system that scraped Google Maps menu photos, extracted structured prices via OpenAI, and cross-validated them against website-scraped data to automate data-quality verification at scale (replacing costly manual contractor checks). Demonstrates strong reliability instincts—precision-first prompting, output gating with image-quality metadata, and fuzzy matching/RAG techniques—plus solid orchestration (Dagster/Airflow) and observability (Sentry, Prometheus/Grafana).”

PythonSQLRubySnowflakeBigQuerydbt+74
View profile
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
View profile
KP

Kavya Paluvai

Screened

Mid-level Data Scientist specializing in fraud detection and healthcare ML

North Carolina, USA4y exp
Wells FargoUniversity of North Carolina at Charlotte

“Applied NLP/ML in healthcare and financial services, including fine-tuning BERT on unstructured EHR text and building embedding-based similarity search for clinical concepts. Also redesigned a Wells Fargo fraud detection data pipeline using modular Python + AWS Glue/Step Functions, cutting runtime ~40% with improved monitoring and reliability.”

A/B TestingAWSAWS GlueAWS LambdaAWS Step FunctionsAzure DevOps+117
View profile
AB

Ananya Bojja

Screened

Mid-level AI/ML Engineer specializing in healthcare analytics and MLOps

USA4y exp
CignaUniversity of New Hampshire

“AI/ML engineer at Cigna Healthcare building a production, HIPAA-compliant LLM-powered clinical insights platform that summarizes unstructured medical notes using a fine-tuned transformer + RAG on AWS. Demonstrates strong end-to-end MLOps and cloud optimization (distillation, Spot/Lambda/Auto Scaling) with quantified outcomes (~28% accuracy lift, ~40% less manual review, ~25% lower ops cost) and strong clinician-facing explainability via SHAP and dashboards.”

A/B TestingAgileAPI IntegrationApache AirflowApache KafkaApache Spark+148
View profile
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
View profile
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
View profile
NM

naveena musku

Screened

Senior AI/ML Engineer specializing in Agentic AI and LLM automation

8y exp
Western UnionJawaharlal Nehru Technological University

“Backend engineer focused on productionizing LLM systems: built a FastAPI-based RAG and multi-agent automation platform deployed with Docker/Kubernetes, prioritizing safe execution and reduced hallucinations. Experienced in refactoring monolithic ML services with feature-flagged incremental rollouts, and implementing JWT/RBAC plus row-level security (e.g., Supabase) for secure, scalable APIs.”

A/B TestingAWSAWS LambdaBigQueryCI/CDClaude+122
View profile
SH

Sri Harsha patallapalli

Screened

Mid-level Machine Learning & Data Infrastructure Engineer specializing in MLOps on AWS

Boston, MA5y exp
Dextr.aiNortheastern University

“Built and deployed a fine-tuned Qwen 2.5 14B model into production at Dextr.ai as the backbone for hotel-operations agentic workflows, running on AWS EKS with Triton and TensorRT-LLM. Demonstrates strong cost-aware LLM engineering (QLoRA, FP8/BF16 on H100) plus rigorous benchmarking/observability (Prometheus, LangSmith) with reported sub-30ms TTNT. Previously handled long-running ETL orchestration with Airflow at GE Healthcare and Lowe's.”

PythonJavaC++SQLJavaScriptBash+113
View profile
SC

Sai Chatrathi

Screened

Mid-level AI/ML Engineer specializing in healthcare analytics and MLOps

NY, USA4y exp
HumanaSyracuse University

“Built and deployed a production LLM-powered lesson adaptation platform for K–12 educators that personalizes content for multilingual and neurodiverse students using RAG and content transformation. Owned the full stack from FastAPI backend and OpenAI integration through reliability/safety controls, latency/cost optimization, and weekly shippable modular APIs, iterating directly with curriculum stakeholders to reduce hallucinations and improve educator trust.”

PythonPandasNumPyScikit-learnSQLTensorFlow+77
View profile
EG

Esha Gangam

Screened

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

USA4y exp
DeloitteUniversity at Albany

“GenAI/ML engineer from Deloitte who built and shipped a production RAG-based internal search assistant for support teams, delivering quantified operational gains (20% effort reduction, 35% faster manual lookup). Experienced in enterprise-grade LLM reliability (grounding/hallucination control), compliance/security constraints, and rapid release cycles using CI/CD, MLflow, and orchestration tools (Airflow, Databricks Jobs, LangChain).”

PythonPySparkSQLFeature EngineeringData ValidationSupervised Learning+89
View profile
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
View profile
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
View profile
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
View profile
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
View profile
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
View profile
KK

Krishna Kandlakunta

Screened

Mid-level Data Scientist specializing in MLOps, LLM/RAG applications, and deep learning

United States5y exp
CitigroupUniversity of North Texas

“Built and deployed a production compliance automation RAG system (at Citi) that generates citation-backed, schema-validated risk summaries for regulatory document review. Emphasizes regulated-environment reliability with retrieval-only grounding, abstention, confidence thresholds, and immutable audit logging, plus orchestration using LangChain/LangGraph and Airflow. Reported ~60% reduction in compliance review effort while maintaining high precision and traceability.”

A/B TestingAgileAnomaly DetectionApache HadoopApache HiveApache Kafka+167
View profile
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
View profile
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
View profile
SR

Saketh Reddy

Screened

Mid-Level Software Development Engineer specializing in full-stack and LLM/AI systems

CA, USA4y exp
JPMorgan ChaseUniversity of Central Missouri

“AI engineer with hands-on production experience building an end-to-end RAG system that reduced document-answering time from hours to minutes, improving accuracy through chunk overlap and hybrid BM25+semantic retrieval. Also built a LangGraph-based agent that researches company financial news via web search (Google Serper), using Pydantic structured outputs and checkpointing for reliability; experienced collaborating with non-technical stakeholders at JPMC and communicating ROI.”

AgileAngularApache AirflowApache KafkaAWSBitbucket+138
View profile
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
View profile
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
View profile
AJ

Aniket Janrao

Screened

Junior Data Scientist specializing in healthcare ML and clinical NLP/LLMs

Houma, LA2y exp
Objective Medical Systems LLCUniversity at Buffalo

“Healthcare-focused LLM engineer who has built two production clinical applications: an automated structured clinical report generator from physician-patient conversations and a RAG-based chatbot for retrieving patient history (procedures, allergies, etc.). Demonstrates strong applied RAG expertise (overlapping chunking, entity dependency graphs, temporal filtering, graph RAG) to reduce hallucinations/omissions and partners closely with clinicians to automate hospital workflows.”

BERTC++Data preprocessingData visualizationDecision treesDeep learning+125
View profile
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
View profile
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
View profile
1...333435...79

Related

Machine Learning EngineersData ScientistsSoftware EngineersAI EngineersData EngineersGenerative AI EngineersAI & Machine LearningEngineeringData & AnalyticsEducation

Need someone specific?

AI Search