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Vetted Git Professionals

Pre-screened and vetted.

KS

Entry-Level Full-Stack Developer specializing in Python and Vue.js

Alameda, CA
UC Santa Cruz
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EG

Senior Software Engineer specializing in secure cloud-native Java microservices

6y exp
Deloitte
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KC

Senior AI/ML Engineer specializing in MLOps and Generative AI (LLMs/RAG)

Chicago, IL10y exp
United Airlines
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DG

Senior QA Analyst specializing in manual/automation testing for Guidewire, Salesforce, and E2E systems

Lakeland, FL12y exp
Publix
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VS

Mid-level Applied AI Engineer specializing in Generative AI and RAG systems

Dallas, Texas5y exp
AT&T
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KE

Mid-level DevOps Engineer specializing in cloud infrastructure, automation, and CI/CD

Remote4y exp
Aetna
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MA

Senior DevOps/Site Reliability Engineer specializing in multi-cloud Kubernetes platforms

Austin, TX11y exp
KIBO
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DP

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

Columbus, IN6y exp
Cummins
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AD

Mid-Level Full-Stack Software Engineer specializing in cloud and kiosk applications

Chicago, IL6y exp
The Aspen Group
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JM

Mid-level Cloud Security & DevSecOps Engineer specializing in AWS/Azure security automation

Atlanta, Georgia7y exp
WEG Electric Corp.
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SK

Mid-Level .NET Full-Stack Developer specializing in Azure cloud and SPA development

New York, NY6y exp
Morgan Stanley
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KS

Senior Full-Stack Java Engineer specializing in cloud microservices and FinTech/insurance platforms

Chicago, IL6y exp
State Farm
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AB

Mid-Level Full-Stack Java Developer specializing in Spring Boot microservices and Angular

Riverwoods, IL7y exp
Discover
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TJ

Tushar Jayendra Mhatre

Screened ReferencesStrong rec.

Intern Data Scientist/ML Engineer specializing in generative AI and ML platforms

Remote4y exp
The Aether LoopUniversity of Oklahoma

AI Engineering Intern at The Etherloop building the backend for a healthcare lifestyle recommendation app, including a multi-agent RAG-based system that uses curated SME data plus web search to generate personalized supplement recommendations from user lifestyle details and blood biomarkers. Evaluates against 500+ SME ground-truth profiles with ranking metrics and focuses on HIPAA-aligned deployment, privacy/security, and guardrails to reduce hallucinations and unsafe outputs.

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TG

Tushar Gwal

Screened ReferencesStrong rec.

Mid-level AI/ML Engineer specializing in GenAI, computer vision, and MLOps

Tallahassee, FL4y exp
Product Manager AcceleratorIllinois Institute of Technology

AI engineer with experience taking a GPT-4-powered GenAI career coach toward production on Azure AI Foundry, re-architecting the backend with hybrid (vector + keyword) search and RAG optimizations to cut latency by 50%. Also has client-facing TCS experience building healthcare ETL pipelines and delivering error-free monthly reports, plus current work analyzing agentic system reasoning traces and guardrail drift as an AI research fellow.

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BR

Bharath Reddy Nallu

Screened ReferencesStrong rec.

Mid-level Machine Learning Engineer specializing in NLP and scalable MLOps

4y exp
Northern TrustUniversity of the Cumberlands

Data/ML engineer in financial services (Northern Trust) who built a production RAG-based LLM system to connect structured transaction/portfolio data with unstructured market and internal documents for risk teams. Strong in end-to-end pipelines (AWS Glue/Airflow/PySpark), entity resolution, and taking models from prototype to reliable daily production with performance tuning (LoRA + TensorRT) and monitoring.

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AK

Ashutosh Khatavkar

Screened ReferencesStrong rec.

Mid-level SDET/Software Engineer specializing in test automation and CI/CD

Syracuse, NY3y exp
UbisoftSyracuse University

AAA game QA professional from Ubisoft (For Honor) with deep live-service multiplayer experience. Known for owning network/competitive integrity risks and building a custom network simulation tool to reliably reproduce desync issues, accelerating debugging and saving 100+ hours. Strong end-to-end QA process skills spanning test planning, triage, regression, and release verification using JIRA/TestRail.

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BK

Bhuvaneswari Kudaravalli

Screened ReferencesStrong rec.

Mid-Level Full-Stack Software Engineer specializing in TypeScript, React/Next.js, and Node/Nest APIs

Portland, OR5y exp
Portland State UniversityPortland State University

Full-stack engineer who built and scaled an AI-powered web product (React/Next.js + TypeScript/NestJS) with MongoDB, Redis, and RabbitMQ. Strong in rapid iteration while maintaining production quality—uses versioned APIs, feature flags, CI/CD, and observability (correlation IDs/structured logs) to ship frequently and debug distributed workflows. Also created an internal operations dashboard for real-time visibility and control of background jobs/AI workflows that was adopted quickly by ops and product teams.

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US

Urvish Shah

Screened ReferencesStrong rec.

Mid-level Robotics Software & Systems Engineer specializing in ROS2 multi-robot autonomy

Buffalo, NY4y exp
Indian Institute of Technology GandhinagarUniversity at Buffalo

Robotics software engineer with ROS2 multi-robot experience spanning decentralized signal source localization (LoRa RSSI on TurtleBot3) and a master’s-thesis project on collaborative object transportation with 4 robots. Strong in sim-to-real debugging—implemented noise modeling (RBF) and practical hardware/coordination fixes (CoG tuning, clock sync/flags) to make algorithms work reliably on real robots.

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BI

Bhavesh Ittadwar

Screened ReferencesStrong rec.

Senior Full-Stack Engineer specializing in scalable web and cloud systems

USA3y exp
Heartland Community NetworkNorth Carolina State University

JavaScript engineer who built a Michelin-specific headless CMS forms platform based on apostrophe-forms, powering forms across 400+ Michelin websites. Designed an extensible, SOLID-aligned modular field architecture with a shared design system, cutting hundreds of lines of per-project code across 10+ implementations while driving cross-device compatibility and performance (BrowserStack, Lighthouse, SSR).

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SM

Sai Manikanta Kasireddy

Screened ReferencesStrong rec.

Mid-level Machine Learning Engineer specializing in cloud-native GenAI and RAG systems

5y exp
Revstar ConsultingUniversity of North Texas

Built and productionized an internal GenAI chatbot that makes company policy/SOP knowledge instantly searchable, using a secure RAG architecture on AWS (Bedrock/Titan embeddings/OpenSearch Serverless, Textract/Lambda/S3 ingestion, Claude 3 Sonnet). Demonstrates strong MLOps/orchestration experience (Airflow, Step Functions with Lambda/Glue/SageMaker) and a rigorous reliability approach (RAGAS metrics, A/B testing, citation validation, monitoring), including collaboration with compliance stakeholders via review dashboards.

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MF

Michael Forster

Screened ReferencesStrong rec.

Senior Data Engineer specializing in ETL/ELT pipelines and data integration platforms

New York, NY15y exp
PearsonCleveland State University

Data engineer/software engineer who led an end-to-end ETL/ELT pipeline at Pearson processing millions of rows of student data nightly, including client-side data prep/validation, SFTP/API ingestion, staging-based SQL validation/transforms, and production loading. Built reliability features like configurable per-client validation thresholds, detailed reporting, concurrency throttling via a custom queue, and multi-source merge/backfill logic to keep nightly loads running even when sources fail.

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SK

Sudheer koki

Screened ReferencesStrong rec.

Mid-level AI/ML Engineer specializing in predictive modeling, data pipelines, and RAG systems

Florida, USA5y exp
MetLifeCumberland University

Built and productionized an LLM-powered internal knowledge search system in a regulated environment, using embeddings/vector DB retrieval with strict grounding and confidence gating to reduce hallucinations. Reported ~45% accuracy improvement over keyword search and implemented end-to-end orchestration, monitoring, CI/CD, and incremental re-indexing to manage latency and data freshness while driving adoption with business stakeholders.

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