Reval Logo
Home Browse Talent Skilled in PyTorch

Vetted PyTorch Professionals

Pre-screened and vetted.

PyTorchPythonDockerTensorFlowSQLAWS
SK

Sridharan Kairmaknoda

Screened

Mid-level Data Engineer specializing in cloud data platforms and real-time analytics

Saint Louis, MO5y exp
CignaSaint Louis University

“Customer-facing data engineering professional who builds and deploys real-time reporting/dashboard solutions, gathering reporting and compliance requirements through direct stakeholder engagement. Experienced with Google Cloud IAM governance, secure integrations (encryption, audit logging), and fast production troubleshooting of ETL/pipeline failures with follow-on monitoring and automated recovery improvements; motivated by hands-on, travel-oriented customer work.”

SDLCAgileWaterfallPythonSQLJupyter Notebook+137
View profile
AG

Archit Gangal

Screened

Senior Full-Stack Developer specializing in cloud-native microservices and AI/ML analytics

7y exp
AllstateColorado State University

“Full-stack/backend engineer with deep insurance claims domain experience who built and operated a microservices + ETL platform (Java/Spring Boot + Python + Kafka/Databricks) processing 1M+ daily transactions. Combines production-grade reliability (99.7% uptime, zero-downtime blue/green releases, strong observability) with customer-facing UI delivery (AngularJS/React+TS dashboards and a hackathon-winning research chatbot).”

API DevelopmentAgileAmazon EC2Amazon RDSAmazon S3Ansible+174
View profile
MB

Medhovarsh Bayyapureddi

Screened

Intern Machine Learning & Full-Stack Engineer specializing in computer vision and healthcare AI

India0y exp
Amrita Vishwa VidyapeethamUniversity of Illinois Urbana-Champaign

“AI/ML-focused backend engineer who shipped two production systems: PersonaPal (agentic LLM chatbot with RAG, FAISS-based retrieval, and Redis semantic caching) and CervixScan (clinical diagnostics platform with PostgreSQL data modeling and human-in-the-loop safety for low-confidence predictions). Demonstrates strong performance/reliability work (indexed vector search, caching, query optimization to ~200ms) and end-to-end ownership from orchestration design through deployment.”

API DevelopmentCC++ClusteringData StructuresDeep Learning+69
View profile
MH

Michael Huang

Screened

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

Remote2y exp
Dynamic ExpertsCal Poly San Luis Obispo

“Built production LLM tooling focused on reproducibility and verification by enforcing JSON schemas and using multi-step checks with tools like Firecrawl and Perplexity. Also implemented the containerized infrastructure layer for a 9-agent app on K3s, dealing with rolling updates and uptime, and has experience advising a non-technical builder on search grounding and LLM data-flow design.”

AgileCC++ConfluenceDeep learningDocker+70
View profile
CT

Chethan Thimapuram

Screened

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

5y exp
HCA HealthcareUniversity of South Florida

“Built a production, real-time clinical documentation system at HCA that converts doctor–patient conversations into structured clinical summaries using speech-to-text, LLM summarization, and RAG. Demonstrated measurable gains from medical-domain fine-tuning (clinical concept recall +18%, ROUGE-L 0.62 to 0.74) while meeting HIPAA constraints via PHI anonymization and encryption, and deployed via Docker/FastAPI with CI/CD and monitoring.”

Amazon CloudWatchApache AirflowApache KafkaApache SparkAWS GlueAWS IAM+125
View profile
AN

Alir Navid

Screened

Executive CTO specializing in FinTech, Healthcare IT, and AI platforms

Irvine, CA19y exp
AphidUniversity of Phoenix

“Engineering/product leader who builds business-aligned technology roadmaps and scales pod-based orgs with strong delivery discipline (OKRs, CI/CD, QA automation). Led a SaaS supply-chain application adopted by Fortune 100 customers, citing ~$4M MRR and ~87% gross profit, and has hands-on experience standardizing LLM + cloud/MLOps architectures with security/compliance guardrails. Also created the PISEK methodology and used it to run distributed innovation sprints (e.g., an AI ETA predictor moved from pilot to production).”

ObservabilityHIPAAOpenAIRetrieval-Augmented Generation (RAG)AgileBudgeting+171
View profile
VM

Vaibhav Monpara

Screened

Mid-Level Full-Stack/Backend Engineer specializing in AWS, APIs, and GenAI systems

Los Angeles, CA5y exp
AIRKITCHENZCalifornia State University, Fullerton

“Backend engineer who built the core backend for Air Kitchens’ discovery/booking platform on AWS (Node + Python, DynamoDB, SQS/Lambda), optimizing for fast user-facing APIs and scalable async workflows. Introduced an AI matching service with a deterministic pre-filter + LLM ranking approach to balance latency vs quality, and has hands-on experience with production security (JWT/RBAC/RLS), CI/CD, and blue-green, staged migrations from Django to modular services.”

A/B TestingAlgorithmsAPI DesignAPI GatewayAsynchronous ProcessingAudit Logging+101
View profile
RA

Rayyan Alam

Screened

Junior Robotics & Machine Learning Engineer specializing in autonomy and RAG systems

Arlington, VA1y exp
Manitou Research Inc.University of Virginia

“New-grad robotics software engineer with hands-on ROS 2 autonomy experience (Nav2, SLAM Toolbox, AMCL) and a strong track record debugging real-world instability (QoS, lifecycle timing, sensor dropouts). Built an HRI speech system on a Stretch 3 robot with deterministic, context-aware templates to manipulate trust/competence/emotion conditions, and integrated an LLM high-level planner that outputs PDDL for classical task planning and replanning.”

AWSCI/CDC++CUDADockerGazebo+104
View profile
SV

Sai Venkata Sathwik Golla

Screened

Mid-level Backend & Applied ML Engineer specializing in LLM systems and scalable APIs

Palo Alto, CA3y exp
University at BuffaloUniversity at Buffalo

“Backend engineer who significantly evolved an internal analytics/reporting platform (Python API + Postgres) powering self-service dashboards for product/business teams, focusing on reliability under heavy concurrent load and fast query performance. Demonstrates strong production engineering practices across API design (FastAPI), observability, incremental rollouts with feature flags, and data security using JWT/RBAC plus Postgres row-level security.”

PythonSQLJavaScriptC++ReactPyTorch+85
View profile
VG

Varun Gattamaneni

Screened

Mid-level GenAI Engineer specializing in LLM fine-tuning, RAG, and MLOps

Glassboro, NJ5y exp
HCLTechRowan University

“Healthcare-focused LLM engineer who deployed a production triage and clinical knowledge retrieval assistant using RAG and LangGraph-orchestrated multi-agent workflows. Emphasizes clinical safety and compliance with robust hallucination controls, HIPAA/PHI protections (tokenization, encryption, audit logging, zero-retention), and human-in-the-loop escalation; reports a 75% latency reduction in a healthcare agent system.”

PythonPandasNumPyRSQLBash+150
View profile
AT

Aishwarya Thorat

Screened

Intern Data Scientist specializing in ML engineering and LLM agentic workflows

San Francisco, CA6y exp
ContentstackSan José State University

“Built an agentic, multi-step LLM system that generates full-stack code for API integrations using LangChain orchestration, Pinecone/SentenceBERT RAG, and a human-in-the-loop feedback loop for iterative code refinement. Also collaborated with non-technical content writers and PMs during a Contentstack internship to deliver a Slack-based AI workflow that generates and brand-checks articles with one-click approvals.”

A/B TestingAmazon RedshiftAmazon S3API IntegrationAWSAWS Glue+129
View profile
MY

Manish Yamsani

Screened

Mid-level AI/ML Engineer specializing in Generative AI and RAG systems

6y exp
Elevance HealthMLR Institute of Technology

“Built a production multi-agent orchestration platform to automate healthcare claims and HR workflows, combining LangChain/CrewAI/AutoGPT with RAG (FAISS/Pinecone) and fine-tuned open-source LLMs (LLaMA/Mistral/Falcon) in private Azure ML environments to meet HIPAA requirements. Emphasizes rigorous agent evaluation/observability (trajectory eval, adversarial testing, LLM-as-judge, drift monitoring) and reports measurable outcomes including 35% faster claims processing and 40% fewer chatbot errors.”

Anomaly DetectionAPI IntegrationAWSAWS GlueAWS LambdaAzure Machine Learning+116
View profile
MB

Maneesh Bilalpur

Screened

Mid-level AI Researcher specializing in multimodal LLMs and human-centered AI

Pittsburgh, PA7y exp
University of PittsburghUniversity of Pittsburgh

“Has production deployment experience delivering computer-vision systems on AWS (Docker + S3) including a GDPR-focused face/license-plate obfuscation pipeline and a semantic-segmentation project aimed at reducing annotation time. Worked closely with DevOps and frontend teams and partnered with CEO/CMO to present an AI-driven annotation workflow to non-technical VC stakeholders.”

Large Language Models (LLMs)Deep LearningTransformersComputer VisionNatural Language ProcessingModel Deployment+60
View profile
VS

Venkatesh Sanaboina

Screened

Senior AI/ML Engineer specializing in Generative AI, LLMs, and MLOps

Tampa, FL9y exp
VerizonJawaharlal Nehru Technological University

“Telecom (Verizon) AI/ML practitioner who built a production multimodal system that ingests messy customer issue reports (calls, chats, emails, screenshots, videos) and turns them into confidence-scored incident summaries with reproducible steps and evidence links. Also built KPI/alarm-to-ticket correlation to rank likely root-cause domains (RAN/Core/Transport), cutting triage from hours to minutes and improving MTTR.”

A/B TestingAgileAmazon RedshiftAmazon S3Amazon SageMakerAnomaly Detection+168
View profile
AD

Alex D'Souza

Screened

Junior Machine Learning Researcher specializing in healthcare AI and security

Davis, CA2y exp
University of California, DavisUC Davis

“Research-focused AI/ML candidate who built an fMRI-based classifier to predict schizophrenia treatment effectiveness under small-dataset constraints. Demonstrated pragmatic model selection by moving from a complex GNN to graph-summary feature engineering with logistic regression, significantly improving accuracy and AUC; primarily works in Google Colab with script-based workflows.”

Artificial IntelligenceComputer VisionData AnalysisData PreprocessingDeep LearningDocker+45
View profile
RN

Rishika Namineni

Screened

Mid-level Full-Stack Software Engineer specializing in cloud-native microservices

4y exp
American ExpressUniversity of North Texas

“Full-stack engineer who owned end-to-end delivery of a customer-facing financial services web platform and built internal tooling for engineering teams. Strong in microservices and event-driven systems (Kafka/RabbitMQ), distributed transaction management (saga), and production performance/observability—achieving ~40% backend response-time improvement through database and query optimization.”

JavaGoPythonC#JavaScriptTypeScript+134
View profile
DV

Dyuti Vartak

Screened

Junior Data Scientist/Data Engineer specializing in ML pipelines and analytics

Seattle, WA1y exp
DocsumoUniversity of Washington

“Machine Learning Intern at Docsumo who delivered a customer-facing fraud-detection solution end-to-end: rebuilt the pipeline, deployed a Random Forest model, and shipped a Python/Flask microservice on AWS SageMaker. Drove measurable production impact (precision +30%, processing time cut in half, manual review -60%, customer satisfaction +15%) and demonstrated strong customer integration and live-incident response skills.”

AWSBashBigQueryCC++CSS+103
View profile
PY

Pavan Yarlagadda

Screened

Junior Robotics Software Engineer specializing in ROS2 autonomy

Buffalo, NY1y exp
University at BuffaloUniversity at Buffalo

“Graduate student researcher on the EARTH project (college collaboration with Moog) working on robotics for an arm/bucket system. Implemented waypoint-based path planning, built an Apriltag data pipeline, and developed ROS 2 tooling including a joystick-to-DeltaCAN teleop node; exploring reinforcement learning policies trained from Tera simulator + ROS 2 bag data to optimize trajectory planning under varying pressure/load conditions.”

Artificial IntelligenceC++CI/CDDeep LearningDistributed SystemsGazebo+102
View profile
MP

Meghana P

Screened

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

Illinois, USA5y exp
State FarmSaint Louis University

“AI/ML engineer with forensic analytics and healthcare claims experience (Optum), building production LLM/RAG systems to surface context-driven fraud patterns from unstructured claim notes and explain risk to investigators. Strong in large-scale retrieval performance tuning, legacy API integration with reliability patterns (SQS, circuit breakers), and MLOps orchestration on Airflow/Kubernetes with rigorous testing, monitoring, and stakeholder-friendly interpretability.”

A/B TestingApache SparkAWSAWS LambdaAzure Data FactoryAzure Functions+125
View profile
SM

Sahithi Mogudala

Screened

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

WI, USA3y exp
Cardinal HealthAnderson University

“Full-stack engineer with enterprise experience at Metasystems Inc. (and Qualcomm) building high-traffic, security-sensitive systems—owned a secure transaction processing module end-to-end using Java/Spring Boot, Python/Django, and React. Strong AWS production operations (EKS/ECS/Lambda/RDS/DynamoDB) with IaC (Terraform/CloudFormation), observability, and reliability patterns; also delivered resilient ETL/integration pipelines with idempotency/retries/backfills and achieved a 50% deployment-time reduction through CI/CD and modular refactoring.”

AjaxAmazon CloudFrontAmazon CloudWatchAmazon DynamoDBAmazon EC2Amazon ECS+284
View profile
TP

Tejaswini P

Screened

Mid-level Machine Learning Engineer specializing in NLP, LLMs, and MLOps

Austin, TX3y exp
State StreetUniversity of Central Missouri

“Built and deployed an LLM-powered financial/regulatory document analysis platform at State Street, combining fine-tuned transformer models with a RAG pipeline over internal knowledge bases. Owned the productionization stack (FastAPI, Docker, SageMaker, Terraform, CI/CD) plus monitoring for drift/latency/hallucinations, delivering ~40% faster analyst review and improved reliability through chunking/embeddings and grounding.”

PythonJavaSQLJavaScriptTensorFlowPyTorch+91
View profile
BS

Bandla Sai Giridhar

Screened

Mid-level Software Engineer specializing in full-stack and cloud-native microservices

Dallas, TX4y exp
Northern TrustUniversity of Texas at Arlington

“Backend engineer who built a Python/Flask system for high-volume healthcare claims processing, using PostgreSQL as the source of truth and RabbitMQ workers for scalable async processing. Experienced in SQLAlchemy/Postgres performance tuning, multi-tenant data isolation (including Postgres RLS), and integrating/versioning ML model services (scikit-learn/PyTorch/Hugging Face) with controlled rollouts. Drove measurable performance gains by batching background jobs and adding Redis caching (40% less workload; response times cut from ~10s to 2–3s).”

JavaPythonGoC++JavaScriptTypeScript+113
View profile
HS

Harsha Sikha

Screened

Mid-level AI/ML Engineer specializing in Generative AI and data engineering

Armonk, New York4y exp
IBMSaint Peter's University

“IBM engineer who built and deployed a production RAG-based LLM assistant using LangChain/FAISS with a fine-tuned LLaMA model, served via FastAPI microservices on Kubernetes, achieving 99%+ uptime. Demonstrates strong practical expertise in reducing hallucinations (semantic chunking + metadata-driven retrieval) and managing latency, plus mature MLOps practices (Airflow/dbt pipelines, MLflow tracking, monitoring, A/B and shadow deployments) and effective collaboration with non-technical stakeholders.”

A/B TestingAgileAnomaly DetectionAPI DevelopmentApache HadoopApache Hive+157
View profile
PY

Palaniappan Yeagappan

Screened

Junior Robotics Engineer specializing in autonomous driving and SLAM

Bengaluru, India2y exp
CognizantNortheastern University

“Robotics software engineer focused on real-time state estimation and perception pipelines, with hands-on C++/ROS work improving LiDAR+IMU odometry stability via an iterative EKF and careful timing/synchronization fixes. Has integrated LIO-SAM, built multi-robot communication bridges (ROS + custom UDP with heartbeat/fallback), and uses Gazebo + Docker for repeatable testing, backed by CI/CD experience maintaining Azure DevOps pipelines at Cognizant.”

GazeboPyTorchTensorFlowPythonC++MATLAB+174
View profile
1...108109110...195

Related

Machine Learning EngineersSoftware EngineersData ScientistsResearch AssistantsAI EngineersSoftware DevelopersAI & Machine LearningEngineeringData & AnalyticsEducation

Need someone specific?

AI Search