Reval Logo

Vetted FastAPI Professionals

Pre-screened and vetted.

LS

Mid-level Python Backend Developer specializing in FinTech and ML-driven fraud detection

San Francisco, USA4y exp
StripeUniversity of North Carolina at Charlotte
View profile
MG

Senior Full-Stack Engineer specializing in backend systems and cloud-native microservices

Pace, FL11y exp
micro1Florida Institute of Technology
View profile
LG

Mid-level Full-Stack Engineer specializing in Python microservices and cloud automation

San Jose, CA6y exp
MicrosoftSaint Louis University
View profile
RC

Senior Data/GenAI Engineer specializing in cloud-native ML, RAG, and real-time data platforms

Richardson, TX8y exp
ToyotaTexas A&M University
View profile
SS

Mid-Level Full-Stack Python Engineer specializing in AI-powered web apps and cloud-native systems

San Francisco, CA6y exp
StripeSaint Louis University
View profile
DS

Junior AI/ML Engineer specializing in agentic AI and cloud optimization

Cupertino, CA1y exp
AdvantisUC San Diego
View profile
SN

Mid-level Software Development Engineer specializing in backend systems and ML platforms

New York, USA2y exp
FlipkartNYU
View profile
DM

Senior Full-Stack Engineer specializing in AI automation and LLM-powered products

SF Bay Area, CA6y exp
University of California, BerkeleyStanford University
View profile
SV

Mid-level AI/ML Engineer specializing in recommendation, retrieval, and MLOps

San Francisco, CA5y exp
MetaConcordia University
View profile
SP

Mid-level Full-Stack Developer specializing in AWS modernization and Java/Angular

Dallas, TX6y exp
AmazonHumphreys University
View profile
WW

Entry-Level Software Engineer specializing in backend systems and cloud messaging

Mountain View, CA1y exp
NewsBreakRice University
View profile
PD

Pavan Devulapalle

Screened ReferencesModerate rec.

Mid-level Software Engineer specializing in cloud platforms and AI-integrated full-stack development

Seattle, WA3y exp
AmazonUniversity of Texas at Dallas

Backend engineer who built Flask-based internal APIs supporting GenAI-driven provisioning/diagnostics (Outpost/AWS Outposts-like environment), with deep hands-on optimization across Postgres/SQLAlchemy (2s to <200ms endpoint improvement). Experienced integrating ML/LLM workflows via AWS SageMaker and Bedrock, and designing multi-tenant isolation plus high-throughput Redis-backed background task pipelines (minutes to seconds).

View profile
GM

Gagan Mundada

Screened

Intern Machine Learning Engineer specializing in multimodal AI and evaluation benchmarks

San Diego, CA2y exp
McAuley Lab, UC San DiegoUC San Diego

ML-focused candidate with beginner ROS/ROS2 experience (custom pub-sub nodes; TurtleBot3 SLAM simulation debugging via topic inspection and transform/orientation checks). Has research/project exposure to LLM training approaches (GRPO with pseudo-labels using Hugging Face TRL on Qwen/Llama) and uses Docker/Kubernetes + CI/CD to run ViT saliency-attention/compression workloads on UCSD Nautilus infrastructure.

View profile
VS

Junior Software Engineer specializing in full-stack development and applied ML

New York, NY2y exp
AmazonNYU

Full-stack engineer with experience at Zoho and Amazon who has owned production systems end-to-end, including a monolith-to-microservices migration using Kafka and Cassandra that improved search latency ~25% and increased throughput without data loss. Also built a hackathon project (Buildwise) into a sold product for a construction company (AI-driven document compliance checks) and shipped an IoT-based parking availability MVP in 3 weeks.

View profile
SN

Mid-level AI/ML Engineer specializing in NLP, graph models, and MLOps for FinTech and Healthcare

Remote, USA5y exp
StripeKent State University

AI/ML engineer who has deployed production LLM/transformer-based systems for merchant intelligence and fraud/support optimization, delivering +27% merchant engagement and +18% payment success. Deep experience in privacy-preserving, PCI DSS-compliant data/ML pipelines (Airflow, AWS Glue, Spark, Delta Lake) and scalable microservices on Kubernetes, plus proven cross-functional delivery in healthcare claims analytics at UnitedHealth Group (12% HEDIS claim reduction).

View profile
NM

Mid-level Full-Stack Python Developer specializing in cloud-native banking applications

6y exp
TruistPace University

Backend engineer who built a low-latency real-time transaction API in Python/Flask, with strong depth in PostgreSQL/SQLAlchemy performance tuning (time-based partitioning, indexing, connection pooling). Has production experience integrating ML scoring and OpenAI-style APIs with safety/latency controls, and designing multi-tenant isolation strategies including per-tenant pooling/caching and premium-tenant isolation.

View profile
PP

Mid-Level Software Engineer specializing in distributed backend systems and cloud-native microservices

Seattle, WA5y exp
UberGeorge Mason University

Software engineer focused on data platforms and applied LLM systems: built an internal data quality monitoring layer to catch silent data drift and iterated post-launch after finding ~30% false-positive alerts, reducing noise via dynamic baselines and improved structured logging. Also shipped a production RAG-based internal knowledge assistant over Jira/Confluence with citations, confidence-based fallbacks, and nightly automated evals to prevent regressions.

View profile
RG

Junior Software Engineer specializing in full-stack, cloud infrastructure, and applied AI

Herndon, Virginia2y exp
Amazon Web ServicesUC San Diego

Master’s student at UC San Diego who built an LLM-powered healthcare chatbot for patient history-taking and sepsis-related output, using a Node.js backend integrated with FastAPI for RAG/LLM interactions and a Flutter client. Also has healthcare AI startup experience deploying on AWS (ECS/Terraform/Docker) and implementing Kubernetes autoscaling to improve efficiency and reduce costs, with strong iterative evaluation in collaboration with a physician.

View profile
BK

Mid-level Machine Learning & Software Engineer specializing in RAG systems and ML infrastructure

Atlanta, GA4y exp
Montage TechnologyGeorgia Tech

Built and deployed an in-house RAG LLM system ("MONTY") using LLaMA 3B + FAISS to help teams quickly understand long internal/external specifications. Delivered usable production performance despite severe compute limits (single RTX 3080) by tuning retrieval/reranking and model choice, and is planning a LightRAG/knowledge-graph rewrite to improve accuracy and latency.

View profile
WL

winston lo

Screened

Junior Software Engineer specializing in AI agents, RAG, and full-stack development

Remote2y exp
Tresle AIUC Berkeley

Backend engineer who built and iterated a secure, multi-tenant RAG system over a large document corpus, emphasizing strict RBAC/ACL isolation, hybrid retrieval (vector+keyword), reranking, and strong observability to balance relevance, latency, and cost. Also led production refactors/migrations using strangler + feature flags/dual writes and has experience catching subtle real-world failure modes (including in a sensor calibration optimization pipeline).

View profile
YY

Yuanhui Yang

Screened

Senior Software Engineer specializing in Python backend systems on AWS

Livermore, CA8y exp
ASMLShanghai Jiao Tong University

Backend/data engineer from ASML who modernized a legacy SAS-based statistical processing system into a cloud-native AWS platform (Lambda/FastAPI, Step Functions/EventBridge, Glue, S3/RDS) with strong reliability and data-quality practices. Demonstrated measurable performance wins (RDS query reduced from 90+ seconds to <5 seconds) and hands-on incident ownership for production ETL pipelines.

View profile
AP

Senior Backend/Platform Engineer specializing in Python and AWS

Covington, Georgia, United State10y exp
CapgeminiGeorgia State University

Backend/data engineer with hands-on production experience across Python/FastAPI services and AWS (Lambda, API Gateway, SQS, ECS) delivered via Terraform and GitHub Actions. Built Glue-to-Redshift ETL pipelines with Step Functions retry/catch patterns, schema evolution safeguards, and data quality checks; also modernized a legacy SAS monthly reporting system into Python microservices with rigorous side-by-side parity validation. Demonstrated strong SQL tuning skills with a reported improvement from 5 minutes to 15 seconds.

View profile

Need someone specific?

AI Search