Vetted AWS Lambda Professionals

Pre-screened and vetted.

MK

Mid-level Full-Stack Software Engineer specializing in cloud-native and data platforms

Austin, TX5y exp
AmazonUniversity of Texas at Arlington
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RP

Mid-level Full-Stack Software Engineer specializing in AI-powered applications

Seattle, WA5y exp
AmazonUniversity at Buffalo
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MN

Senior AI/ML Engineer specializing in NLP, computer vision, and MLOps

Ohio, USA10y exp
Pixolat LLC
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JH

Executive Engineering Leader (CTO/VP) specializing in platform scaling and video streaming

Los Angeles, CA21y exp
TrueParity
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CS

Senior Full-Stack Java Developer specializing in cloud-native microservices

7y exp
Goldman Sachs
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EP

Ethan Pribble

Screened ReferencesStrong rec.

Senior Software Engineer specializing in cloud cost intelligence and FinOps platforms

21y exp
CloudZeroNorthwestern University

Backend/data engineer with strong authorization and compliance-domain experience: led a phased migration from a simplistic role model to modern RBAC on a Python serverless stack (Auth0 + AWS Lambda/API Gateway), coordinating changes across 5 repos with extensive manual and automated validation. Previously built and operated custom ETL pipelines (Airflow + Groovy/Java on Spark/YARN/Hadoop) to normalize messy customer email/chat/voice data for NLP-driven financial compliance indicators, including complex email journaling metadata enrichment and large-scale remediation reprocessing after production bugs.

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RE

Robert Elwell

Screened

Executive Engineering Leader specializing in cloud platforms, DevOps, and security

18y exp
MacStadiumUniversity of Texas at Austin

Senior engineering/CTO-level leader with hands-on delivery of serverless, event-driven cloud governance platforms (deployed across multiple GE business units) and experience building adaptable usage-based billing at UserTesting. Has advised startups (including CaseText during YC) and supported fundraising and acquisition due diligence, including investor materials for a smart cooler custody management system presented to BARDA during Operation Warp Speed.

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Pavanika Thotakura - Senior Data Engineer specializing in cloud big data pipelines and real-time streaming in Seattle, WA

Senior Data Engineer specializing in cloud big data pipelines and real-time streaming

Seattle, WA6y exp
AmazonUniversity of North Texas

Amazon data engineer who built a real-time fraud detection pipeline for AWS Lambda, tackling multi-region telemetry quality issues and scaling stream processing for billions of daily requests. Strong in production-grade data/ML workflows on AWS (EMR, Glue, Kinesis, SageMaker) with hands-on entity resolution and anomaly detection.

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Surya Teja - Mid-level Backend/Full-Stack Engineer specializing in AI and FinTech payments in Tempe, AZ

Surya Teja

Screened

Mid-level Backend/Full-Stack Engineer specializing in AI and FinTech payments

Tempe, AZ4y exp
StripeArizona State University

Full-stack engineer who has owned an operational reporting/dashboard product end-to-end—building a React UI, designing/implementing FastAPI services, and deploying/operating on AWS. Demonstrates strong performance engineering (Postgres query/index tuning using EXPLAIN ANALYZE) with concrete impact (reports reduced from tens of seconds to a few seconds) and a reliability mindset across observability, migrations, and resilient third-party/ETL integrations.

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Paul Liu - Senior Software Engineer specializing in cloud-native backend and web/mobile apps in Seattle, WA

Paul Liu

Screened

Senior Software Engineer specializing in cloud-native backend and web/mobile apps

Seattle, WA8y exp
TeslaUniversity of Calgary

Backend engineer with Tesla experience building Python-based, serverless microservices for a supply chain portal, including a MongoDB-backed tracking/logging system and a reconciler Lambda to manage retries and failures. Has hands-on Kubernetes (EKS) and GitOps (Argo CD) experience, plus real-time Kafka pipelines for fleet/IoT telemetry and proxy-based migrations from monolith systems to AWS databases.

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Deekshit Myakala - Mid-level Software Engineer specializing in cloud automation and data/ETL platforms in Arlington, Virginia

Mid-level Software Engineer specializing in cloud automation and data/ETL platforms

Arlington, Virginia6y exp
AmazonVirginia Tech

Backend engineer with AWS multi-region production experience building APIs and workflow automation for data center/storage hardware operations (firmware orchestration, maintenance checks, ticketing, dashboards). Also shipped an internal AI chat tool that parses hardware runbooks and incorporates user feedback to retrain the model, and has a strong testing/quality discipline (95%+ coverage) plus database performance tuning via indexing and query monitoring.

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JK

Mid-level Software Engineer specializing in backend, cloud, and AI systems

Seattle, WA4y exp
AmazonSaint Louis University

Engineer with hands-on experience across backend, full-stack, cloud, and AI/ML systems, with particular depth in Python, FastAPI, AWS Bedrock, SageMaker, and RAG-based architectures. Stands out for treating AI and agents as accelerators within disciplined production engineering, emphasizing guardrails, observability, latency/cost monitoring, and scalable system design.

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BS

Mid-level Full-Stack Developer specializing in cloud-native backend services and real-time data platforms

Remote, USA4y exp
NetflixUniversity of Dayton

Backend/data engineering candidate with Netflix experience designing and migrating analytics platforms from batch to real-time streaming (Kafka/Flink) across AWS and GCP. Delivered measurable improvements (40% lower data delay, 99.9% accuracy) using phased rollouts, automated data validation (Great Expectations), and strong observability (Prometheus/Grafana), and proactively hardened pipelines with idempotency to prevent duplicate Kafka processing.

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BK

Mid-level Full-Stack Software Engineer specializing in cloud microservices and AI integration

Jersey City, NJ3y exp
UberPace University

Backend/distributed-systems engineer with Uber experience building real-time telemetry and safety signal pipelines. Strong in Kafka-based event-driven architectures, low-latency processing under peak load, and production reliability via monitoring, retries, and fallback logic; has Docker/Kubernetes and CI/CD deployment experience.

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TW

Tianyi Wang

Screened

Entry-Level Backend/Cloud Engineer specializing in distributed systems and AI platforms

Seattle, WA1y exp
AmazonUniversity of Michigan

Full-stack engineer with deep serverless AWS experience who built VidToNote, an AI video analysis platform, end-to-end using Next.js App Router/TypeScript and an event-driven pipeline (API Gateway, Lambda, DynamoDB, S3, Step Functions, SQS). Strong on production reliability and observability (CloudWatch, X-Ray, structured logging), plus data/analytics work in Postgres with measurable query optimizations and durable LLM evaluation workflows. Amazon background; integrated 22 AWS services and completed AWS Solutions Architect Professional certification within a month.

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Yeshwanth Sai Pala - Mid-level Full-Stack Developer specializing in cloud microservices and AI-driven FinTech in Remote, USA

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

Remote, USA4y exp
StripeSouthern Arkansas University

Stripe engineer who shipped an end-to-end merchant fraud insights dashboard, spanning Spring Boot/Kafka risk-scoring services and a React+TypeScript UI. Focused on low-latency, high-volume transaction processing and production operations on AWS (EKS/CloudWatch), including handling a real traffic-spike latency incident via query optimization, indexing, and rate limiting.

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XL

Xicheng Liang

Screened

Intern AI/Full-Stack Engineer specializing in backend systems and applied machine learning

Chicago, IL1y exp
Becker’s HealthcareUniversity of Pennsylvania

Built and shipped a production agentic RAG system for healthcare analysts that automated compliance/operations knowledge retrieval across PDFs, reports, and databases. Emphasizes production reliability (monitoring, retries, fallbacks, async queues), strong evaluation/iteration loops, and measurable impact (3–10s responses and ~98% top-k retrieval accuracy).

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CR

Senior Machine Learning Engineer specializing in conversational AI and Generative AI

San Francisco, CA6y exp
Scale AIDallas Baptist University

ML/AI engineer with experience at Uber and Scale AI, focused on customer service automation across both classical NLP and generative AI systems. Has owned systems from experimentation through production on AWS, including LLM fine-tuning, RAG optimization, safety evaluation, and internal Python platform tooling that improved consistency and engineering velocity.

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VK

Senior Software Engineer specializing in backend systems, cloud, and AI automation

Houston, TX5y exp
NetflixUniversity of Houston-Clear Lake

Built a production AI-powered workflow automation system at Netflix that integrated OpenAI and LangChain with FastAPI services on AWS, cutting roughly 320 hours of manual operational effort. Brings a mix of full-stack product development and practical AI systems experience, with strong attention to reliability, maintainability, and non-technical user adoption.

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DB

Staff Software Engineer specializing in Healthcare platforms and AI data pipelines

Remote10y exp
DrwellBinghamton University

Backend/data engineer with hands-on production AWS experience spanning serverless APIs (Chalice/Lambda/API Gateway/Cognito) and data pipelines (Glue PySpark + Step Functions). Has modernized a legacy SAS reporting system into AWS microservices and implemented schema-drift detection and incident prevention for ETL workflows, plus measurable SQL tuning wins (30 min to <10 min runtime).

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SC

Shweta Chavan

Screened

Junior Computer Vision & ML Engineer specializing in autonomous perception systems

Pittsburgh, PA2y exp
Magna InternationalCarnegie Mellon University

LLM/RAG engineer who built a production-style multi-agent orchestrator for resume-to-recommendation workflows (PDF ingestion through screening and recommendations), emphasizing prompt tuning and strict JSON output contracts. Currently building a RAG application for an NGO using Airflow (DAGs + embeddings) and tackling messy, missing/imbalanced data; has hands-on retrieval stack experience (FAISS/HNSW, bge embeddings) and uses rigorous evaluation metrics for groundedness and hallucination control.

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