Reval Logo
Home Browse Talent Skilled in scikit-learn

Vetted scikit-learn Professionals

Pre-screened and vetted.

scikit-learnPythonDockerSQLTensorFlowAWS
SK

Sasi Katamneni

Screened

Mid-level Data Scientist / AI-ML Engineer specializing in Generative AI and LLM applications

Dallas, TX5y exp
Baylor Scott & WhiteUniversity of North Texas

“Built a production GenAI-powered analytics assistant to reduce reliance on data analysts by enabling natural-language Q&A over Databricks/Power BI dashboards, backed by vector search (Pinecone/Milvus) and a Neo4j knowledge graph, including multimodal support via OpenAI Vision. Demonstrates strong real-world LLM reliability engineering with strict RAG, LangGraph multi-step verification, and Guardrails/custom validators, plus broad orchestration and production monitoring experience (Airflow, ADF, Step Functions, Kubernetes, Prometheus/CloudWatch).”

A/B TestingAgileAjaxAmazon API GatewayAmazon BedrockAmazon CloudWatch+267
View profile
AR

Ali Rahmati

Screened

Senior Machine Learning Engineer specializing in optimization, LLMs, and on-device AI

Santa Clara, CA9y exp
QualcommNorth Carolina State University

“Engineer with hands-on experience debugging and hardening a fixed-point implementation for an internal PoC, quickly diagnosing overflow/underflow issues that caused intermittent failures across thousands of runs and delivering a code fix. Comfortable presenting technical solutions with layered slide depth and doing follow-up deep dives for interested stakeholders, though has limited direct customer/sales partnership experience.”

CC++Computer VisionDeep LearningDockerFlask+67
View profile
SR

Santhosh Reddy

Screened

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

MA, USA6y exp
Flatiron HealthClark University

“Built and shipped a real-time oncology risk prediction system used by doctors during patient visits, trained on clinical data in AWS SageMaker and deployed via FastAPI with sub-second responses. Emphasizes clinician-trust features (SHAP explainability, validation checks) and HIPAA-compliant controls (encryption, RBAC, audit logging), plus Kubernetes-based production operations with autoscaling, monitoring, and drift/retraining workflows; collaborated closely with oncologists at Flatiron Health.”

PythonRSQLJavaC++Bash+123
View profile
BK

Bharath kumar

Screened

Director-level AI & Data Science leader specializing in GenAI, LLMs, and MLOps

Draper, UT12y exp
ThorneBharathiar University

“ML/NLP engineer currently working in NYC on a system that connects complex unstructured data sources to deliver personalized insights, using embeddings + vector DB retrieval and a RAG architecture (LangChain, Pinecone/OpenSearch). Strong focus on production constraints—especially low-latency retrieval—using FAISS/ANN, PCA, index partitioning, and Redis caching, plus PEFT fine-tuning (LoRA/QLoRA) and KPI/SLA-driven promotion to production.”

A/B TestingAPI DevelopmentAPI TestingApache HadoopApache HiveApache Kafka+251
View profile
OB

Omkar Bhope

Screened

Staff Full-Stack Engineer specializing in AI platforms and infrastructure automation

San Jose, CA5y exp
Etched AIUC San Diego

“Backend/full-stack engineer building complex internal platforms and customer-facing demos at the intersection of infrastructure and product. Shipped a no-code Product Lifecycle Manager for manufacturing (3 manufacturers, 1000+ evolving tests) using AWS S3/SQS ingestion and extensible Postgres (EAV+JSONB) with end-to-end traceability. Also built a FastAPI-based company data intelligence platform with Okta-secured RBAC and an LLM/MCP layer for ChatGPT-like analytics over enterprise data sources.”

PythonCC++TypeScriptJavaScriptSQL+159
View profile
JP

Jincheng Pang

Screened

Principal Data Scientist specializing in healthcare analytics and medical imaging AI

Sudbury, MA11y exp
AccessHopeTufts University

“Developed an LLM-driven recommendation agent in Azure Databricks to triage oncology patients and trigger second-opinion case creation using medical claims and EHR data. Uses ICD-10/CPT/J-code features in prompts, embeddings + vector DB similarity, and a backtesting framework emphasizing recall to avoid missing clinically relevant cases while supporting business revenue.”

A/B testingAWSComputer visionData analysisData pipelinesDeep learning+84
View profile
SB

Silpa Bhavani

Screened

Mid-level Full-Stack Java Developer specializing in cloud-native microservices

Oakland, CA5y exp
BlockLamar University

“Software engineer with strong compliance-domain experience who built a customer-facing compliance and reporting dashboard using React/TypeScript with Spring Boot microservices. Demonstrates mature production engineering practices—contract-first APIs, event-driven architecture (Kafka/RabbitMQ), caching (Redis), and robust CI/CD + observability (Prometheus/Grafana/ELK)—and also created a Python-based audit automation tool adopted into the standard release process.”

AgileAmazon CloudWatchAmazon DynamoDBAmazon EC2Amazon EKSAmazon RDS+139
View profile
RW

Rebecca Witmer

Screened

Principal Data Scientist specializing in NLP and Generative AI

Chicago, IL9y exp
Witmer Consulting CorporationGeorgetown University

“ML/NLP practitioner with experience building an embedding-based ad matching and search system at Vericast (BERT embeddings + similarity search) to replace a third-party taxonomy approach, evaluated via a human-curated gold standard. Also built a custom NER pipeline at Allstate for auto accident claims calls using a bidirectional LSTM and achieved 90%+ F1, with a strong emphasis on production-grade ML workflows (testing, CI/CD, orchestration, versioning, validation).”

Agentic AIPythonPySparkRetrieval Augmented Generation (RAG)SQLOpenAI+81
View profile
RN

Ritvik Nimmagadda

Screened

Junior AI/ML Software Engineer specializing in LLMs and MLOps

Remote3y exp
CignaUSC

“Built and productionized an AI-native, agentic appeals decisioning system for health insurance operations, automating 500k+ scanned appeals/year. Delivered measurable impact by cutting review time from 12–15 minutes to ~3 minutes and auto-resolving ~85% of cases with strong auditability, evaluations, and human-in-the-loop guardrails, deployed as containerized microservices on Azure AKS.”

PythonC#C++JavaJavaScriptSQL+85
View profile
NP

Navya Panyala

Screened

Senior Software Engineer specializing in identity, cloud-native microservices, and reactive web apps

Bentonville, AR6y exp
WalmartUniversity at Albany

“Product-focused full-stack engineer with Walmart and Dell experience who built and shipped a real-time engagement dashboard end-to-end (Kafka Streams, Spring Boot, React/TypeScript/D3) used daily by business teams, moving them from next-day reports to real-time decisioning. Strong in performance/reliability (Redis caching cut latency ~40%, 90%+ test coverage, Prometheus/CloudWatch monitoring) and production operations on AWS/EKS including handling a cascading failure from a memory leak with zero-downtime rollback and redeploy.”

ReactReduxTypeScriptBootstrapAngularD3.js+141
View profile
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
View profile
DB

Dharmik Bhingradiya

Screened

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

TX, USA5y exp
BlackRockTexas A&M University-Kingsville

“AI engineer who built a production RAG-based internal analyst tool at BlackRock, fine-tuning an LLM on proprietary financial data and adding four layers of guardrails (input/retrieval/generation/output) to improve grounding and reduce hallucinations. Implemented a LangChain-based multi-agent orchestration (7 major agents) deployed on AWS ECS, with reliability measured via internal human evaluation, LLM-as-judge, and RLHF/drift monitoring.”

PythonSQLRJavaC++Machine Learning+90
View profile
GB

Ganesh Bandi

Screened

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

USA6y exp
Capital OneUniversity of North Texas

“LLM engineer who has deployed production RAG systems for regulated document QA (PDFs/knowledge bases), emphasizing grounded answers with citations, RBAC, monitoring, and continuous feedback. Demonstrates deep practical expertise in retrieval quality (semantic chunking, hybrid BM25+embeddings, re-ranking), reliability (guardrails, deterministic workflows), and measurable evaluation (golden sets, log replay, A/B tests) while partnering closely with compliance/operations stakeholders.”

A/B TestingAgileAmazon EKSAmazon S3Anomaly DetectionApache Spark+128
View profile
SG

Sindhu Gunti

Screened

Mid-level Full-Stack Java Developer specializing in cloud microservices and AI-driven platforms

Remote, USA5y exp
IntuitChristian Brothers University

“Software engineer with Intuit experience shipping an end-to-end real-time financial insights product on AWS, using event-driven architecture with Kafka and Spark Streaming to process millions of records with low latency. Also delivers customer-facing React + TypeScript dashboards and has hands-on production operations experience, including resolving a database scaling incident via read replicas, query tuning, and connection pooling.”

JavaSpring BootHibernateC#JavaScriptTypeScript+143
View profile
DM

Durga Mahesh Boppani

Screened

Mid-level Backend Software Engineer specializing in distributed cloud-native systems

Gainesville, FL4y exp
Silicon AssuranceUniversity of Florida

“Backend/AI workflow engineer who built production-grade orchestration systems for hardware security verification at Silicon Assurance (Nextflow/Python/Postgres) and a multi-agent LLM-driven regulatory code checking system at the University of Florida. Emphasizes reliability: strict plan/execute/verify boundaries, queue-based isolation, and strong observability/auditability with Prometheus/Grafana and persisted prompts/tool calls.”

PythonJavaCC++JavaScriptSQL+117
View profile
AP

Aaditey Pillai

Screened

Intern AI/ML Engineer specializing in LLM applications, RAG, and model evaluation

Atlanta, GA1y exp
PRGXDuke University

“Backend/ML engineer who built production LLM-enabled systems at PRGX, including an interpretable contract opportunity scoring engine (Bradley-Terry pairwise ranking) that reached 0.82 weighted Spearman agreement with SME auditors and was integrated into workflow. Also built a Duke student advisor chatbot and hardened it for real-world reliability/security with schema-driven tool calling, normalization, and off-domain defenses; led staged production rollouts with shadow testing and achieved 0.90 F1 on a new extraction field before shipping.”

PythonPandasNumPyScikit-LearnObject-Oriented Programming (OOP)Feature Engineering+94
View profile
AS

Aayushi Singh

Screened

Intern AI/ML Engineer specializing in robotics and computer vision

Los Angeles, CA0y exp
BoltIOTUSC

“Worked on Sophia the humanoid robot, building production animation pipelines and enhancing human-robot interaction via perception and behavior orchestration. Experienced in stabilizing noisy perception-driven state transitions and designing smooth, user-centered behavioral flows, collaborating closely with artists, animators, and experience designers to translate creative intent into measurable system behavior.”

AgileAngularJSBlenderBootstrapC++CI/CD+144
View profile
MS

Mohan Shri Harsha Guntu

Screened

Mid-level Data Scientist / Machine Learning Engineer specializing in fraud, risk, and MLOps

Remote, MO7y exp
Northern TrustWebster University

“AI/ML practitioner with Northern Trust experience who has shipped production LLM systems (internal support assistant) using RAG, vector databases, orchestration (LangChain/custom pipelines), and rigorous monitoring/feedback loops. Also built AI-driven fraud detection/risk monitoring solutions in a regulated financial environment, emphasizing explainability (SHAP), audit readiness, and stakeholder trust through dashboards and clear communication.”

PythonRSQLPandasNumPyScikit-learn+137
View profile
GB

Geetha Bommareddy

Screened

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

USA5y exp
JPMorgan ChaseTrine University

“At JP Morgan Chase, built and deployed a production LLM-powered RAG knowledge assistant to help fraud investigators and risk analysts quickly navigate regulatory updates and internal policies, reducing investigation delays and compliance risk. Strong focus on secure retrieval (RBAC filtering), reliability (layered testing + observability), and production constraints (latency/SLOs), with Airflow-orchestrated, auditable ML pipelines.”

Amazon EC2Amazon EKSAmazon RedshiftAmazon S3Amazon SageMakerAnomaly Detection+159
View profile
YP

Yash Pise

Screened

Mid-level Data Scientist specializing in Generative AI, LLMOps, and clinical data pipelines

5y exp
NovartisStevens Institute of Technology

“LLM/RAG engineer who has built and deployed corporate-scale systems at Novartis and Johnson & Johnson, including a healthcare AI agent that generates day-to-day treatment schedules. Recently handled a high-stakes safety incident (LLM suggesting overdose) by tightening model instructions and validating with ~200 test prompts, and has strong end-to-end data/embedding/vector DB pipeline experience (PySpark, FAISS, Pinecone) plus SME-in-the-loop evaluation (RLHF).”

PythonRJavaScriptMySQLPostgreSQLNumPy+88
View profile
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
View profile
TP

Tejas Penmetsa

Screened

Mid-level Python & AI/ML Engineer specializing in backend APIs and MLOps

USA6y exp
Capital OneUniversity of Memphis

“Built and deployed a production LLM/RAG document automation system for business documents (contracts/claim forms) that extracts schema-validated JSON, generates grounded summaries/Q&A, and integrates into transaction systems via APIs. Emphasizes real-world reliability: hallucination controls, layout-aware parsing with OCR fallback, Step Functions-orchestrated workflows with retries/timeouts, and human-in-the-loop review designed in close partnership with operations and claims stakeholders.”

PythonJavaScriptFastAPIFlaskDjangoSQLAlchemy+102
View profile
AR

Ashwin Ram

Screened

Junior Data Scientist specializing in Generative AI and applied machine learning

Dayton, OH1y exp
Evoke TechnologiesUniversity of Chicago

“At Evoke Tech, built a production LLM "Testbench" to quickly compare LLMs/embedding models and RAG strategies (semantic, hybrid BM25, re-ranking, HyDE, query expansion) to select optimal architectures for different client needs. Also developed a multi-agent, multimodal (voice/text) RAG system for live catalog retrieval and safe product recommendations using LangGraph/LangChain with LangSmith monitoring, and regularly translated PM/UX goals into concrete agent behaviors via demos and flowcharts.”

PythonSQLRPandasNumPyScikit-learn+62
View profile
NP

Nikita Prasad

Screened

Mid-level AI/ML Engineer specializing in NLP, MLOps, and scalable data pipelines

Remote, USA5y exp
JPMorgan ChaseUniversity of Dayton

“Built and shipped a production LLM-powered personalized client engagement assistant in the financial domain, balancing real-time recommendations with strict privacy/compliance requirements. Demonstrates strong MLOps/LLMOps depth (Airflow + MLflow, containerized microservices, drift monitoring) and a privacy-by-design approach validated in collaboration with risk and compliance teams.”

PythonPandasspaCyRSQLPySpark+199
View profile
1...394041...173

Related

Machine Learning EngineersSoftware EngineersData ScientistsResearch AssistantsSoftware DevelopersAI EngineersAI & Machine LearningEngineeringData & AnalyticsEducation

Need someone specific?

AI Search