Reval Logo
Home Browse Talent Machine Learning Engineers

Vetted Machine Learning Engineers

Pre-screened and vetted.

PythonDockerSQLTensorFlowPyTorchscikit-learn
Bay AreaDFW MetroplexRemoteNYC MetroGreater BostonDMVLos Angeles MetroChicago MetroAustin MetroGreater Seattle
RR

Rajeev Reddy

Screened

Mid-level AI/ML Engineer specializing in NLP and production ML on cloud

4y exp
The HartfordFlorida Atlantic University

“ML engineer/data scientist who deployed a production credit risk + insurance claims triage platform at Hartford Financial, combining XGBoost default prediction with BERT-based document classification. Demonstrated strong MLOps by cutting inference latency to sub-500ms and building drift monitoring plus automated retraining/deployment pipelines (MLflow, CloudWatch, GitHub Actions, SageMaker) with human-in-the-loop review and SHAP-based explainability for underwriting adoption.”

A/B TestingAgileAmazon EC2Amazon RedshiftAmazon S3Anomaly Detection+115
View profile
RP

Raj Patel

Screened

Junior Machine Learning Engineer specializing in LLMs and RAG systems

Remote, USA1y exp
EmotionallNYU Tandon School of Engineering

“Production-focused applied ML/LLM engineer who has deployed an LLM-powered RAG assistant and improved reliability through rigorous retrieval evaluation (recall/MRR), reranking, and guardrails that prevent confident wrong answers. Experienced running containerized ML/LLM services on Kubernetes (including AWS-managed layers) with CI/CD and observability, and has delivered a real-time predictive maintenance system using streaming sensor data and time-series anomaly detection in close partnership with maintenance teams.”

PythonJavaTensorFlowPyTorchScikit-LearnLarge Language Models (LLMs)+86
View profile
MK

Meghavardhan Ketireddi

Screened

Mid-level AI & Machine Learning Engineer specializing in Generative AI and MLOps

USA6y exp
Northern TrustUniversity of North Texas

“Built a production GPT-4/LangChain/Pinecone RAG “AI Copilot” at Northern Trust to automate financial report generation and analyst Q&A over internal structured (SQL warehouse) and unstructured policy data. Focused on real-world production challenges—grounding and latency—achieving major speed gains (seconds to milliseconds) via MiniLM embedding optimization and Redis caching, and implemented rigorous testing/evaluation with MLflow-backed metrics while aligning compliance and finance stakeholders for deployment.”

PythonSQLBashJavaTypeScriptPyTorch+127
View profile
CK

Chaitanya Kalagara

Screened

Mid-level Machine Learning Engineer specializing in LLMs, GenAI, and Computer Vision

Boston, MA3y exp
Camp4 TherapeuticsNortheastern University

“LLM/agent engineer who built a production multi-agent research automation system using LangGraph (planner, retriever with FAISS, supervisor, evaluator) with structured outputs and citation tracking for traceable reports. Emphasizes reliability and operations—LangSmith-based observability, multi-level testing, hallucination mitigation, and latency/cost controls—plus prior experience as a Computer Vision Software Engineer at Deepsight AI Labs working directly with non-technical customers.”

A/B TestingAmazon EC2Amazon S3Amazon SageMakerAWSAWS Lambda+87
View profile
SC

Sai Charan C

Screened

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

CT, USA3y exp
HCLTechUniversity of New Haven

“Built and deployed a production RAG-based enterprise document intelligence platform for financial/compliance/operational documents on AWS (Spark/Glue ingestion, embeddings + vector DB, LangChain orchestration, REST APIs on Docker/Kubernetes). Deep hands-on experience orchestrating multi-step and multi-agent LLM workflows (LangChain, LangGraph, CrewAI) with strong focus on grounding, evaluation, observability, and cost/latency optimization, and has partnered closely with non-technical finance/compliance teams to drive adoption.”

A/B TestingAgileAmazon CloudWatchAmazon DynamoDBAmazon S3Apache Airflow+139
View profile
AD

Atharva Deshmukh

Screened

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

Rochester, New York4y exp
CrowdDoingRochester Institute of Technology

“Applied LLMs to high-stakes domains (wildfire risk for emergency teams and loan approval via a fine-tuned IBM Granite model), with a strong focus on reliability—using RAG-based cross-validation to reduce hallucinations and continuous ingestion pipelines (MODIS satellite imagery via AWS Lambda) to keep data current. Experienced in production orchestration and MLOps-style workflows using Airflow, AWS Step Functions, and SageMaker Pipelines, and collaborates closely with analysts on KPI-driven evaluation.”

PythonRSQLBashJavaJavaScript+90
View profile
KK

KHUSHBU KAKDIYA

Screened

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

California, USA6y exp
CVS HealthCleveland State University

“Built and deployed a production LLM/RAG system at CVS to automate clinical documents, addressing PHI compliance, retrieval accuracy, and latency; achieved a 35–40% reduction in review effort through chunking and FP16/INT8 optimization. Also has experience translating AI outputs into actionable insights for non-technical stakeholders (sports analysts).”

PythonSQLPySparkRBashScikit-learn+114
View profile
GF

Gabriel Fagundes

Screened

Mid-level AI/ML & Backend Engineer specializing in AI platforms and computer vision

New York, New York6y exp
LyraUniversity of South Florida

“Backend engineer with hands-on experience building real-time, low-latency systems: owned the Python backend for a real-time crowd-monitoring product (top 5% at HackHarvard 2025) using OpenCV, GPU YOLO inference (PyTorch), WebRTC, and OAuth. Also has production Kubernetes/GitOps experience (Helm/Kustomize, GitHub Actions, Argo CD), Kafka-based event pipelines, and executed a minimal-downtime on-prem PostgreSQL migration to AWS EC2.”

TypeScriptJavaPythonSQLC++Node.js+96
View profile
HP

HemaSri Perumalla

Screened

Mid-level AI/ML Engineer specializing in fraud detection and healthcare predictive analytics

Reston, VA4y exp
TruistUniversity of Central Missouri

“ML/AI engineer with production experience in high-scale banking fraud detection at Truist, building an end-to-end pipeline (Airflow/AWS Glue/Snowflake, PyTorch/sklearn) with automated retraining and Kubernetes-based deployment; delivered measurable gains (22% fewer false positives, 15% higher recall) and reduced manual ops ~40%. Also partnered with clinicians at Kellton to deploy an LLM system for summarizing/classifying clinical notes, improving review time and decision speed.”

A/B TestingAgileApache KafkaApache SparkAWS GlueAWS Lambda+108
View profile
BM

Bharath Muthyam

Screened

Mid-level Applied AI/ML Engineer specializing in agentic systems and LLM automation

4y exp
Frontier CommunicationsRivier University

“Built a production LLM-powered workflow at Frontier to extract structured signals from messy, high-volume documents and route work to the right teams, replacing a multi-day, error-prone manual process. Emphasizes production reliability with schema/consistency validation, re-prompting and deterministic fallbacks, plus async pipeline optimizations for predictable latency. Experienced with multi-agent orchestration (LangGraph, AutoGen, CrewAI) and AWS workflow tooling (Step Functions, SQS, Lambda), and delivered ~70% safe automation via stakeholder-driven thresholds and human review.”

PythonSQLBashJavaScriptTypeScriptLangGraph+91
View profile
VS

Venkatarama Sai Teja Dasarathi

Screened

Mid-level Machine Learning Engineer specializing in deep learning and generative AI

San Jose, CA5y exp
MetLifeUniversity of Alabama at Birmingham

“ML/NLP engineer with hands-on experience building production systems for unstructured insurance claims and customer data linking. Delivered measurable impact at scale (millions of documents), combining transformer-based NLP, vector search (FAISS/Pinecone), and human-in-the-loop validation, and has strong production workflow/observability practices (Airflow, AWS Batch, Grafana/Prometheus).”

PythonRSQLMATLABTensorFlowKeras+126
View profile
PG

PremKumar Gandla

Screened

Mid-level AI/ML Engineer specializing in MLOps, NLP, and scalable model deployment

Texas, USA4y exp
BlackbaudSouthern Arkansas University

“Built and deployed a production autonomous AI data analyst agent (LangChain + GPT + Streamlit on AWS) that turns natural-language questions into validated SQL, visualizations, and insights, cutting manual analysis time by ~50%. Emphasizes reliability and MLOps: schema-aware validation/guardrails to prevent hallucinations, scalable large-data processing, and Azure DevOps CI/CD + MLflow for automated deployment and experiment tracking.”

PythonSQLRTensorFlowPyTorchScikit-learn+87
View profile
BS

Bhavya Sri Gunnapaneni

Screened

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

United States4y exp
AIGLewis University

“Built production AI/RAG-style systems for message Q&A and insurance claims workflows, combining data ingestion, indexing/retrieval, and LLM integration with fallback modes. Has hands-on orchestration experience (Airflow, Prefect, LangChain) and cites large operational gains (claims processing reduced to ~45 seconds; manual review -50%; false alerts -30%) through automated, monitored pipelines and close collaboration with non-technical stakeholders.”

PythonSQLRJavaTensorFlowPyTorch+125
View profile
MN

Monisha Nettem

Screened

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

USA5y exp
M&T BankKennesaw State University

“AI/ML engineer with banking domain experience (M&T Bank) who built a production credit-risk prediction and reporting platform combining ML models (XGBoost/TensorFlow) with a RAG pipeline (LangChain + GPT-4) over compliance documents. Delivered measurable impact (≈20% better risk detection/precision, 50% less manual reporting) and productionized workflows on Vertex AI/Kubeflow with CI/CD and monitoring; also implemented embedding-based semantic search using FAISS/Pinecone.”

PythonRSQLJupyter NotebookMachine LearningPredictive Analytics+112
View profile
RK

Ramya Konda

Screened

Mid-level AI/ML Engineer specializing in healthcare ML and generative AI

Remote, USA5y exp
HumanaUniversity of New Haven

“AI/LLM engineer at Humana who built and deployed a HIPAA-aware RAG system for clinical record retrieval, cutting search time dramatically and improving retrieval efficiency by 30%. Experienced with Spark-scale data preprocessing, QLoRA fine-tuning, LangChain orchestration, and MLflow+SageMaker integration, with a strong testing/evaluation discipline (A/B tests, human eval) to hit 95%+ accuracy and production latency targets.”

PythonRSQLPostgreSQLBigQuerySnowflake+108
View profile
SR

Shruti Rawat

Screened

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

Jersey City, NJ4y exp
State StreetPace University

“Built and deployed a production Llama 3-based RAG document Q&A system using FAISS, addressing context-window limits through chunking and keeping retrieval accurate by regularly refreshing embeddings. Has hands-on orchestration experience with LangChain and LlamaIndex for multi-step LLM workflows (including memory management) and collaborates with non-technical teams (e.g., marketing) to deliver AI solutions like recommendation systems.”

A/B TestingAPI IntegrationApache AirflowAWSAWS GlueAWS Lambda+112
View profile
MP

Manvi Panjwani

Screened

Mid-level Machine Learning Engineer specializing in cloud, governance automation, and distributed systems

San Francisco, CA4y exp
SoftmaxClark University

“Governance engineer intern at GSK who built policy-as-code automation using Open Policy Agent/Rego integrated into GitHub CI/CD and Terraform workflows. Also built and shipped a voice-enabled expense tracking app using speech-to-text + LLM structured extraction with strong validation, retries, and semantic guardrails, and designed the supporting PostgreSQL data model with performance-focused indexing.”

PythonJavaCC++SQLHTML+97
View profile
BV

Butchi Venkatesh Adari

Screened

Mid-level Machine Learning Engineer specializing in LLM platforms and robotic perception

NewYork, NY4y exp
Alpheva AIWorcester Polytechnic Institute

“Built and shipped a production multi-agent personal financial assistant at AlphevaAI on AWS ECS, combining FastAPI microservices, Redis/SQS orchestration, and Pinecone-based hybrid RAG (semantic + BM25) to ground financial guidance. Improved routing accuracy with an embedding-based SetFit + logistic regression intent classifier feeding an LLM router, and optimized UX with live streaming plus cost controls via model tiering and caching.”

AWSAWS LambdaBashBigQueryBlenderC+++130
View profile
SC

Sudeepti Chalamalasetti

Screened

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

Atlanta, GA4y exp
Universal Health ServicesUniversity of New Haven

“Built a production RAG-based healthcare chatbot to retrieve patient medical documents spread across multiple platforms, reducing manual and error-prone searching. Implemented semantic search with custom embeddings (Hugging Face) and Pinecone, deployed via FastAPI/Docker on AWS SageMaker with MLflow tracking, and optimized fine-tuning cost using LoRA while orchestrating retraining pipelines in Airflow.”

A/B TestingAnomaly DetectionAudit LoggingAWSAWS GlueAWS Lambda+123
View profile
KG

Karthik Gantasala

Screened

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

Chesterfield, MO4y exp
Reinsurance Group of AmericaUniversity of Central Missouri

“GenAI/LLM engineer who built and deployed a production RAG system for enterprise document search and decision support, cutting manual lookup time by 40%+. Experienced with LangChain/LangGraph agent orchestration plus Airflow/Prefect for ingestion and incremental reindexing, with a strong focus on reliability (testing, observability) and stakeholder-driven metrics.”

A/B TestingAgileAmazon BedrockAnsibleApache AirflowAWS+168
View profile
PM

Pranav Marla

Screened

Mid-level AI/ML & Full-Stack Engineer specializing in LLM agents and generative AI

Dallas, United States5y exp
KalpaNortheastern University

“LLM/agent builder who shipped a live consumer AI-agent app (kalpa.chat) that visualizes complex reasoning as interactive graphs and abstracts multi-provider model usage via a unified wallet. Professionally has applied LangChain/LangGraph to IVR parsing and to scaling a football video-generation pipeline at DAZN, including shipping a VAR-specific retrieval/order fix via SQL after iterating with a non-technical PM.”

PythonJavaC++JavaScriptTypeScriptSQL+80
View profile
VN

Vidit Naik

Screened

Junior AI/ML & Full-Stack Engineer specializing in LLMs and RAG systems

San Francisco, CA2y exp
Checksum AIUC Riverside

“Forward-deployed engineer who built a production AI drone-control chatbot that lets users fly a drone via natural language while viewing a real-time feed. Implemented RAG over drone SDK documentation (vector DB + top-k retrieval) and LoRA fine-tuning, with a focus on latency, token efficiency, and cost reduction, and regularly works with non-technical clients to integrate and explain AI system architecture.”

Artificial IntelligenceAWSAWS GlueAWS LambdaBERTCI/CD+101
View profile
JK

Jitesh Kumar S

Screened

Junior Machine Learning Engineer specializing in NLP, computer vision, and MLOps

Lafayette, IN3y exp
YaarcubesUniversity of Maryland, College Park

“ML/LLM engineer with Meta experience building production AI systems for near real-time user-report classification and summarization under strict latency (<250ms), safety, cost, and privacy constraints. Has hands-on MLOps/orchestration experience (Airflow, Spark, MLflow, Kubernetes, Docker, GitHub Actions) plus observability (Prometheus/Grafana) and applies rigorous evaluation, staged rollouts, and A/B testing to keep agent workflows reliable in production.”

PythonSQLBashShell ScriptingJavaC+++99
View profile
FP

Farida Poor

Screened

Junior Machine Learning Engineer specializing in NLP and multimodal transformers

Bay Area, CA3y exp
Altea TechnologyUniversity of Denver

“Built and deployed LLM-powered agentic chatbot and text-to-SQL systems using LangGraph/LangChain (and Bedrock), structuring workflows as DAGs with planning/replanning and validation to improve tool-calling reliability and reduce hallucinations. Operates production feedback loops with online/offline metrics, drift detection, and LangSmith-based evaluation pipelines, and regularly partners with business stakeholders and clinicians using slide decks and visual charts.”

PythonCC++MATLABRSQL+107
View profile
1...434445...63

Related

Machine Learning Engineers in Bay AreaMachine Learning Engineers in DFW MetroplexMachine Learning Engineers in RemoteMachine Learning Engineers in NYC MetroMachine Learning Engineers in Greater BostonMachine Learning Engineers in DMVMachine Learning Engineers in Los Angeles MetroMachine Learning Engineers in Chicago MetroMachine Learning Engineers in Austin MetroMachine Learning Engineers in Greater Seattle

Need someone specific?

AI Search