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Vetted Unit Testing Professionals

Pre-screened and vetted.

Unit TestingPythonDockerCI/CDJavaScriptGit
ZI

Zufeshan Imran

Screened

Senior Machine Learning Engineer specializing in LLMs, RAG, and computer vision

San Diego, CA10y exp
SOTER AIUC San Diego

“Built an "AskMyVideo" system that turns YouTube videos into queryable knowledge graphs by transcribing audio (Whisper), chunking and embedding content, and enabling traceable answers back to exact timestamps. Strong in entity resolution (rules + fuzzy matching + TF-IDF/cosine with PR-curve thresholding) and modern retrieval stacks (FAISS, hybrid dense/sparse, domain fine-tuning with ~12% precision gain), with a production mindset using Airflow/Prefect, Docker/FastAPI, and LangSmith/Prometheus/Grafana observability.”

Machine LearningDeep LearningGenerative AITransformersLarge Language Models (LLMs)LLM fine-tuning+120
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AV

Alex Vo

Screened

Staff Backend Software Engineer specializing in telemetry pipelines and observability

San Jose, CA3y exp
VMwareUC Irvine

“Backend engineer from VMware focused on proprietary enterprise systems (monitoring tools, data pipelines, and APIs). Drove a ClickHouse migration POC (local to remote host) using a dual-write/cutover approach and source-level debugging across Node/driver differences during a Node 12→20 upgrade, and delivered measurable performance gains (~20% CPU/memory improvement) through batching and streaming ingestion.”

Backend DevelopmentNode.jsTypeScriptSQLREST APIsAPI Design+60
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NV

Nagarjuna Vaddineni

Screened

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

Seattle, WA6y exp
AmazonTexas A&M University-Kingsville

“Amazon backend engineer who built and operated high-scale Java Spring Boot microservices on AWS (EKS/EC2) handling millions of daily transactions, with deep experience debugging p95 latency and database/ORM bottlenecks. Shipped an AI-driven real-time personalization feature by integrating SageMaker model inference end-to-end with low-latency caching and graceful fallbacks, and designed robust order/payment orchestration with retries, compensations, and DLQ-based escalation.”

AgileAnsibleApache KafkaApache SparkApache TomcatAWS+122
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RC

Richard Cerow

Screened

Director of Marketing Technologies specializing in scalable web platforms for gaming

El Segundo, CA19y exp
KraftonUniversity of Notre Dame

“Player-coach engineering leader focused on consumer-grade video/multimodal products and high-reliability identity/auth experiences. Led design and implementation of multi-step mobile login/MFA flows with telemetry-driven funnel improvements, shipped Node services and security fixes, and owned auth incidents end-to-end using RUM and step-level instrumentation. Introduced feature-flagged delivery and targeted review/testing practices to speed iteration ~20–30% while keeping login stability high.”

API DevelopmentArgo CDAWSCI/CDCross-Functional CollaborationC+++130
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SD

Sai Dinesh Pusapati

Screened

Senior AI/ML Engineer specializing in GenAI agents and LLM workflows

San Francisco, CA6y exp
Scale AIBelhaven University

“LLM/AI engineer with production experience building a retrieval-based document intelligence system that extracts information from PDFs/emails, backed by Python + Spark pipelines. Focused on reliability and cost/latency optimization (caching, batch processing) and has hands-on orchestration experience with Airflow (sensors, retries, alerts). Also partnered with business stakeholders to deliver customer feedback classification/summarization for faster sentiment insights.”

PythonTypeScriptJavaC#JavaScriptR+103
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HB

Hemanth Bompally

Screened

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

Virginia, USA3y exp
Amazon Web ServicesUniversity of Maryland, Baltimore County

“Full-stack engineer with hands-on ownership of a customer-facing advanced performance metrics experience in the Amazon S3 console, spanning React UI, Python/Node services, Redshift/RDS data access, and AWS IaC/CI-CD with CloudWatch/Route53 operational readiness. Demonstrates strong production instincts around resilience (partial failures, multi-region inconsistencies), progressive rollouts/feature flags, and reliable ETL/integration patterns (idempotency, backfills, reconciliation).”

Amazon EC2Amazon S3Amazon SQSAmazon SNSAmazon CloudWatchAWS CodePipeline+194
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AS

Arjun Sundaram

Screened

Staff-level Software Engineer specializing in identity, access management, and platform security

Grapevine, TX4y exp
PaycomRice University

“Backend engineer focused on scalable, security-first platform architecture—recently built an end-to-end centralized access-control system that launched successfully with ~50k early adopters and was designed to support ~10x traffic growth. Experienced in production authn/authz (token verification, handoff/session migration), and in de-risking migrations via feature flags, phased rollouts, A/B testing, and Splunk-based monitoring.”

Node.jsReactTypeScriptAngularJSGitPHP+93
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PK

Piyush Kautkar

Screened

Junior Software Engineer specializing in full-stack systems and distributed log analytics

Miami, FL1y exp
NeocisCarnegie Mellon University

“CMU candidate with hands-on experience taking LLM concepts from research prototypes toward production-ready designs (structured outputs, guardrails, failure-scenario evaluation). Also partnered with sales/customer teams at Mazecare to drive adoption with Dontia Alliance (largest dental clinic chain in Singapore) and engaged Singapore government stakeholders, bridging clinical workflow needs with IT security/integration concerns.”

AgileAnalyticsAnomaly DetectionAuthenticationAWSC+++190
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AG

Arun Gampala

Screened

Mid-level Full-Stack Developer specializing in MERN and AWS microservices

TX, USA4y exp
MetLifeSouthern Arkansas University

“Backend engineer with experience at MetLife and Amazon focused on security and control for internal and customer-facing services. Emphasizes contract-first Python/FastAPI APIs with strong auth (JWT + RBAC/claims), data-layer isolation (RLS/tenant scoping), and reliability practices like incremental refactors, rollback planning, and idempotency to handle retry-driven failure modes.”

ReactReact HooksReduxRedux ToolkitTypeScriptTailwind CSS+92
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RD

RICKY DAM

Screened

Mid-Level Full-Stack Web Developer specializing in internal tools and workflow automation

Ottawa, Canada6y exp
ShopifyCarleton University

“Frontend-focused engineer with 5 years at Shopify building and maintaining internal tooling. Led modernization from ERB/jQuery to React/TypeScript/GraphQL and improved performance on large datasets with server-side pagination. Also delivered an end-to-end search feature with filters, URL-driven state, pagination, and error correction, using strong review/testing and zero-downtime rollout practices.”

RubyJavaScriptReactTypeScriptGraphQLJest+79
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AJ

Akhil Jaggari

Screened

Mid-level Full-Stack Software Engineer specializing in scalable web platforms and cloud microservices

CA, CA6y exp
UberUniversity of North Texas

“Backend engineer with fintech/real-estate lending domain experience (Berkadia) building Python/Flask services for indicative loan pricing across Fannie/Freddie workflows. Strong in scalable AWS architectures (S3, Lambda, SageMaker), database performance (PostgreSQL read replicas, indexing, pooling), and high-throughput optimizations (streaming exports, Redis caching) with measurable production impact.”

PythonObject-Oriented Programming (OOP)JavaCC++Angular+111
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KL

Ke Liu

Screened

Mid-Level Software Engineer specializing in search platforms and distributed systems

New York, NY4y exp
Fitch RatingsColumbia University

“JavaScript/React-focused engineer with meaningful open-source impact: redesigned cache key normalization for a client-side data fetching/caching library using deterministic hashing, added robust test coverage, and collaborated closely with maintainers through GitHub PRs/issues. Also drives measurable runtime improvements by profiling hot paths, refactoring core abstractions, and validating with benchmarks/load tests; has taken ownership of unowned initiatives like improving relevance/ranking in an internal search platform.”

PythonJavaJavaScriptTypeScriptSQLAWS+73
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SG

Svachuta Gollavilli

Screened

Mid-level AI/ML Engineer specializing in NLP, LLMs, and MLOps for healthcare and finance

6y exp
CVS HealthUniversity of New Haven

“Built a production LLM-powered RAG agent for healthcare/insurance operations that retrieves and summarizes patient medical documents with grounded citations, scaling to ~4.5M records. Addressed medical shorthand and terminology by fine-tuning ~120 lightweight DistilBERT models by specialty and validating entities against SNOMED/RxNorm, while using SHAP/LIME and human-in-the-loop review to make decisions explainable to stakeholders.”

A/B TestingAnomaly DetectionAPI TestingAWS GlueAWS LambdaBERT+107
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FL

Felix Li

Screened

Intern Software Engineer specializing in data pipelines and full-stack web development

New York, NY1y exp
RadarUniversity of Waterloo

“Internship at Radar (geolocation infrastructure) where they owned automation of multiple geospatial data ingestion pipelines (including US/Canadian address ingestion), orchestrating Spark (Scala) jobs via Python-based Airflow and using GitOps-style CI/CD workflows.”

AWSBashCC++CypressData Pipelines+60
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VV

Venu Venkata Surendra reddy Erusu

Screened

Mid-Level Software Engineer specializing in AI/ML and Cloud-Native Microservices

Syracuse, NY4y exp
Syracuse UniversitySyracuse University

“Research assistant at Syracuse University who owned a Python/FastAPI analytics backend for user-uploaded large datasets, using S3 streaming uploads and background workers for heavy processing. Has hands-on experience deploying Dockerized Python/Java microservices to AWS EKS with Jenkins-based CI/CD, plus Kafka-based event-driven pipelines and practical migration patterns (dependency mapping, dual-write, reconciliation) to minimize downtime.”

PythonTensorFlowPyTorchKerasDeep LearningReinforcement Learning+100
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VP

Vasudha Prerepa

Screened

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

5y exp
BMOTexas Tech University

“QA/validation-focused engineer with experience at Meta testing an ML+LLM content classification/summarization system, including production-vs-test behavior gaps. Built automated E2E validation and drift monitoring (PSI, KL divergence, embedding cosine similarity) run daily/multiple times per day and gated via CI. Also implemented Jenkins-orchestrated Selenium/API test suites in Docker at Capgemini and partnered with a business analyst to convert business rules into automated AI-driven validation checks.”

AJAXApache KafkaApache TomcatAWSAWS CloudFormationAWS Glue+141
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JA

Jeevan aher

Screened

Junior AI Engineer specializing in fraud detection, credit risk, and LLMs in FinTech

Remote, USA3y exp
JPMorgan ChaseUniversity of Illinois Urbana-Champaign

“AI engineer with production experience building a high-accuracy (98%) fraud detection system operating at real-time latency (1–2s) over millions of transactions, using a multi-model pipeline approach to meet performance constraints. Also implemented Airflow-orchestrated workflows (DAGs, retries, alerts) to replace brittle cron scripts and is currently pursuing a master’s project on real-time ASL-to-text conversion.”

PythonRSQLJavaScriptBashC+107
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SR

Sandeep Reddy Karumudi

Screened

Mid-level Data & Business Analyst specializing in analytics engineering and BI

6y exp
AdobeUniversity of Wisconsin–Madison

“Data/analytics professional with experience across manufacturing and enterprise environments (Wisconsin School of Business project with CNH Industrial; roles/projects at Ascensia Technologies, S&C, and Adobe). Has hands-on work combining warranty/lifecycle tables with technician free-text notes using TF-IDF + tree models (XGBoost/Random Forest), and deep experience in entity resolution/reconciliation across mismatched financial systems using Python/SQL and fuzzy matching, with production-grade pipeline practices in Azure Data Factory/Databricks.”

PythonPandasNumPyscikit-learnRSQL+119
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CS

Cassandra Sullivan

Screened

Intern Data Scientist specializing in generative AI and forecasting

San Francisco, CA5y exp
Aurora AIUniversity of Chicago

“ML/NLP practitioner working across healthcare and business/finance use cases: currently fine-tuning a domain-specific Llama 3.1 model for safe reasoning over EHRs/clinical notes using RAG + RL/DPO and RAGAS-based evaluation. Has built UMLS-driven entity normalization pipelines with quantified quality gains and developed embedding/vector-DB systems (FAISS) for semantic matching and forecasting/recommendation applications at Aurora AI and Banxico.”

A/B TestingAutomationClassificationDashboardingData CleaningData Visualization+109
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HC

Harsh Chaudhari

Screened

Intern Software Engineer specializing in ML/NLP and LLM applications

Boulder, CO0y exp
SplunkUniversity of Colorado Boulder

“Full-stack AI/LLM engineer who has deployed a production LLM backend (Mistral 14B) on GKE to auto-transform datasets and generate runnable ML training pipelines, addressing hallucinations, schema mismatch, latency, and burst scaling with caching/prompt compression and HPA. Also has internship experience (Splunk, BlackOffer) delivering data automation and 10+ Power BI dashboards for non-technical stakeholders with measurable efficiency gains.”

C++Data PipelinesData PreprocessingDockerEmbeddingsFAISS+70
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BP

Bharadwaj P

Screened

Mid-level Full-Stack Java Engineer specializing in cloud microservices across e-commerce, finance, and healthcare

5y exp
WalmartUniversity of North Carolina at Charlotte

“Backend-leaning full-stack engineer with e-commerce and analytics experience who modernized synchronous order workflows into a Kafka-based event-driven architecture (Java/Spring Boot) to reduce checkout latency and peak-traffic failures. Has built production FastAPI services with JWT/RBAC and strong testing/observability, delivered React+TypeScript reporting dashboards, and handled AWS scaling incidents end-to-end (RDS read latency mitigated with read replicas and query tuning).”

JavaSQLTypeScriptPythonSpring BootSpring MVC+98
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JS

Jason Salas

Screened

Senior QA Engineer specializing in game quality ownership, automation, and analytics

Los Angeles, California9y exp
Riot GamesArizona State University

“QA/engineering background spanning Riot Games (VALORANT leaderboard systems) and early-stage startups. Has hands-on experience improving performance and reliability via caching, rate limiting, deduplication/idempotency, and shipping/validating high-stakes production hotfixes; also builds Next.js/TypeScript projects and automation/internal tools (Python).”

AngularPythonJavaScriptSQLUnreal EngineDatabricks+101
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VS

Viraj Shirodkar

Screened

Mid-Level Software Engineer specializing in full-stack web, AI telemetry, and real-time graphics

San Francisco, CA3y exp
C3 AINortheastern University

“Product-focused full-stack engineer building a GenAI-powered case summarization workflow for a telemetry dashboard, spanning React/TypeScript UI (confidence indicators, reasoning traces) and Python/FastAPI backend with caching to control LLM latency/cost. Has operated services on AWS (ECS Fargate, RDS Postgres, S3) and Kubernetes, and has hands-on experience resolving real production latency incidents through query/index optimization and caching.”

CC++C#PythonJavaTypeScript+94
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KS

Kunal Singh Pundir

Screened

Mid-level Full-Stack Developer specializing in cloud microservices and GenAI systems

USA, USA5y exp
UberNortheastern University

“Built and owned an end-to-end AI-driven decisioning platform at Uber, combining LLM orchestration with typed tool contracts and a Snowflake-based RAG pipeline to make decisions fully auditable. Delivered large-scale measurable impact (120k requests/day, 18k cases auto-resolved/month) while improving ops SLA from 3 days to 6 hours and cutting incident response time nearly in half. Previously led a high-risk strangler-fig modernization of a legacy insurance platform across 120+ microsites at Accenture, coordinating across multiple squads with feature-flagged parallel cutovers.”

C#Java.NETFlaskSpring BootNode.js+140
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