Vetted NumPy Professionals

Pre-screened and vetted.

Surya Vardhan - Junior Operations Data Analyst specializing in KPI dashboards and SLA reporting in Seattle, WA

Surya Vardhan

Screened

Junior Operations Data Analyst specializing in KPI dashboards and SLA reporting

Seattle, WA1y exp
AmazonCentral Michigan University

Manufacturing/quality-focused professional with experience at Sikorsky Aerospace supporting aircraft parts production for clients such as Boeing and Cobham. Drove data-driven process improvements (cleaned/visualized production data) and redesigned material usage to cut delays by ~20% and reduce waste, while coordinating across production, inspection, QC, and delivery readiness.

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HK

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

Boston, MA5y exp
Northeastern UniversityPenn State University

Full-stack engineer with experience spanning Amazon IMDb and Northeastern’s NeuroJSON portal, combining consumer product work with complex scientific data applications. Built IMDb’s streaming providers feature—described as the company’s most impactful feature of 2023—and has hands-on experience with React/Angular, GraphQL, AWS, Python services, and production monitoring.

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Chitra Uppalapati - Entry-level Software Engineer specializing in full-stack and machine learning applications in Sunnyvale, CA

Entry-level Software Engineer specializing in full-stack and machine learning applications

Sunnyvale, CA1y exp
WalmartUniversity of Illinois Urbana-Champaign

Built production Python data integrations and dashboard automation for incident analytics, with a strong focus on data quality, observability, and reliability for leadership-facing reporting. Also translated an ambiguous manual creator evaluation process at startup Spring into an automated predictive scoring feature, showing a blend of backend data engineering, test automation, and cross-functional product thinking.

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TY

Timothy Yeav

Screened

Senior AI/ML Engineer specializing in Generative AI and FinTech

Bronx, NY8y exp
InsitroNew York City College of Technology (CUNY)

Built end-to-end LLM/RAG systems for biological data and scientific literature analysis in a drug discovery setting, helping researchers explore disease insights and treatment hypotheses faster. Combines applied GenAI product work with strong production engineering, including monitoring, retrieval optimization, reusable Python services, and scalable deployment on AWS/Kubeflow.

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Pavan Kishore Ramavath - Intern Software Engineer specializing in machine learning and backend systems in Leesburg, VA

Intern Software Engineer specializing in machine learning and backend systems

Leesburg, VA1y exp
Clinpex LLCNYU

Built an AI-powered medical coding system at Clinpex that mapped 88,000+ clinical terms to standardized codes, achieving about 86% accuracy and cutting manual review time by over 80%. Brings hands-on backend ownership in a healthcare AI setting, with experience using semantic retrieval, LLM validation, and human review to handle ambiguity and reliability in a regulated domain.

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XQ

Junior Software Engineer specializing in data engineering for satellite telemetry

Berkeley, CA3y exp
NASA Jet Propulsion LaboratorySan Jose State University

Data/pipeline engineer with experience in space and scientific data systems, including JPL-related satellite transmission workflows and customer deployments involving NOAA/Argo standards. Stands out for building autonomous production pipelines, debugging subtle logic failures in data integrations, and improving processing efficiency while reducing manual operational work.

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Aakash Khepar - Mid-level Full-Stack AI Engineer specializing in agentic AI systems in Tempe, AZ

Aakash Khepar

Screened

Mid-level Full-Stack AI Engineer specializing in agentic AI systems

Tempe, AZ4y exp
Arizona State UniversityArizona State University

Full-stack engineer with strong ownership across production SaaS and AI agent systems, including a multi-tenant enterprise analytics product at Fractal Analytics and an archive intelligence platform for a real nonprofit. Stands out for combining deep backend/system design, secure AI/RAG implementation, and rapid zero-to-one execution—plus multiple hackathon wins and leadership roles.

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KJ

Krishi Jain

Screened

Junior Implementation Manager / Solution Engineer specializing in AI, ERP integrations, and predictive maintenance

Chicago, IL2y exp
Continuum AIWestcliff University

LLM/agentic workflow practitioner (Continuum AI) who productionized an LLM system for manufacturing RMA intake and warranty claims by moving from a brittle prompt to a modular pipeline with RAG, function-calling extraction, deterministic validation, and strong observability. Also diagnosed and fixed an agentic ticket-triage misrouting issue by tracing failures to retrieval timeouts, adding guardrails/fallbacks, and implementing retries plus continuous evaluation—bringing misroutes near zero while creating a repeatable debugging playbook.

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SD

Mid-level Data Scientist specializing in business intelligence and machine learning

Pittsburgh, PA2y exp
Armada PartnersCarnegie Mellon University

Internship experience building a production LLM-powered podcast operations agent that automated lead intake (HubSpot), guest research, scheduling (Calendly), meeting-summary evaluation (Gemini), and human approval via Slack bot—while retaining rejected candidates for future outreach. Also contributed to ideation of a multi-agent orchestration framework with parsing and task routing, and emphasized reliability via structured prompts, HITL feedback, and prompt-based test sets.

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JM

Jonathan Ma

Screened

Intern Robotics & Computer Vision Engineer specializing in surgical robotics

Columbia, Maryland2y exp
Optosurgical LLCUniversity of Pennsylvania

Robotics software engineer who built and owned an autonomous laparoscope tracking system on a UR3e with an eye-in-hand RealSense camera, integrating YOLO-based tool detection with velocity control under a strict RCM constraint and deploying successfully in a hospital setting. Deep ROS2/MoveIt2 experience (architecture, QoS, custom nodes) plus autonomy stack work across SLAM, planning, and real-time latency/control debugging.

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CS

Mid-level Applied AI Engineer specializing in LLM infrastructure and model optimization

San Jose, CA3y exp
AMDUSC

LLM engineer who has deployed privacy-preserving, real-time workplace risk monitoring over massive enterprise chat/email streams, tackling latency, hallucinations, and extreme class imbalance with model benchmarking, RAG + fine-tuning, and a pre-filter alerting layer. Also built an agentic legal contract drafting system (Jurisagent) using LangGraph/LangChain with deterministic multi-agent control flow, structured outputs, and reliability-focused evaluation/telemetry.

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ML

Mengyu Liu

Screened

Senior Data Scientist specializing in GenAI agents and causal inference

Remote, USA10y exp
HumanaUniversity of Miami

Built and deployed a production healthcare medical review agent that automates call-transcript summarization and medication reconciliation using a hybrid deterministic + LangGraph-orchestrated LLM workflow. Demonstrates strong reliability engineering (guardrails, schema validation, confidence thresholds, golden/adversarial eval, Langfuse monitoring) in a regulated environment, delivering 60% lower latency and 70%+ efficiency gains while partnering closely with care managers and operations.

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SS

Mid-level Business Data Analyst specializing in Financial Services and Healthcare analytics

USA4y exp
VisaGeorge Mason University

Full-stack engineer (~4 years) who has owned and shipped customer-facing SaaS onboarding and a role-based real-time analytics dashboard using TypeScript/React with a modular backend. Experienced in microservices with RabbitMQ and strong observability practices (correlation IDs, structured logging, queue metrics), and built an internal deployment tracker integrated with CI/CD that replaced manual spreadsheet/Slack processes.

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VS

Mid-level Data Scientist/ML Engineer specializing in GenAI agents and MLOps

5y exp
Capital OneUniversity of the Cumberlands

AI/LLM engineer at Capital One who deployed a production RAG-powered fraud analysis and document intelligence platform using LangChain, OpenAI, Pinecone, Kafka, and AWS. Focused on reliability in real-time investigations via hybrid retrieval, schema-validated outputs, and LLM verification loops, reporting review-time reduction from hours to minutes and ~99% fraud detection precision.

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PJ

Prachi Jain

Screened

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

Remote, US6y exp
JPMorgan ChaseUniversity of Massachusetts Amherst

Built and productionized a RAG-based analytics Q&A assistant for a financial analytics team, enabling natural-language querying across 200+ datasets (SQL tables, PDFs, compliance docs, wikis) and cutting turnaround time by 60%. Deep experience delivering regulated, audit-ready LLM systems on Azure (Azure OpenAI + LangChain) with strict grounding/citations, hybrid retrieval, and AKS-based low-latency deployment, plus strong collaboration with compliance analysts and auditors via iterative Gradio demos.

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KK

Mid-Level Software Engineer specializing in AWS distributed systems and microservices

Chico, CA4y exp
AmazonCalifornia State University, Chico

Backend/ML-systems engineer with experience (including Amazon) building real-time face recognition services using PyTorch (MTCNN/FaceNet) and AWS (SQS/S3/Lambda/EC2) with a focus on low latency, burst handling, and cost control. Also led a revenue-critical legacy pricing workflow migration to a serverless event-driven architecture using strangler-pattern rollout, simulation-based validation, and strong security practices (JWT/RBAC/RLS).

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GK

Junior Full-Stack Software Engineer specializing in web platforms and data systems

Atlanta, GA2y exp
IntuitGeorgia Tech

Full-stack engineer and KICKOFFUSA cofounder who built production payment/registration and live tournament experiences under real matchday load (200+ concurrent users), including Stripe webhooks with idempotency and UX improvements that cut checkout abandonment ~15%. Also owned an end-to-end research hub at a GTSCL internship—designed a normalized Postgres schema and full-text search (tsvector/GIN) delivering sub-100ms queries for 300+ researchers.

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Pratima Singh - Senior Full-Stack Software Engineer specializing in FinTech, cloud microservices, and blockchain in Tempe, AZ

Pratima Singh

Screened

Senior Full-Stack Software Engineer specializing in FinTech, cloud microservices, and blockchain

Tempe, AZ10y exp
Arizona State UniversityArizona State University

Python/ML engineer with strong DevOps depth: built an end-to-end regime-aware stock prediction system (custom fine-tuned FinBERT sentiment + technical/macro features) delivering a 12% accuracy lift. Also implemented Kubernetes/Helm + Jenkins/GitHub Actions pipelines (including GitOps-style workflows for multi-cloud Hyperledger Besu) and improved deployment speed/stability by ~50% while addressing race conditions and image drift.

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Amit Sharma - Principal Software Engineer specializing in AI/LLM platforms, payments, and healthcare systems in San Francisco, CA

Amit Sharma

Screened

Principal Software Engineer specializing in AI/LLM platforms, payments, and healthcare systems

San Francisco, CA25y exp
FambotUniversity of Delhi

Engineering player-coach who recently shipped an agent-based workflow to extract key info from unstructured web data (browser agents + CDP) and populate daily digests/calendars, owning architecture through testing. Also built a Flask-based LLM evaluation and regression testing system using G-Eval/Confident AI dashboards, and applies a rigorous, research-driven approach to selecting third-party tools with stakeholder buy-in; has healthcare ops/onboarding workflow experience at Vivio Health.

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BB

Biplob Bidari

Screened

Senior Data Engineer specializing in FinTech analytics and ML data platforms

USA5y exp
Goldman SachsUniversity of the Cumberlands

ML/AI engineer with Goldman Sachs experience building production fraud detection and RAG-based trading insights systems end-to-end. Stands out for combining real-time ML infrastructure, GenAI retrieval systems, and compliance-aware design, with measurable impact including nearly 25% false-positive reduction and improved analyst productivity.

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Sai Karthik Chittamuru - Senior Salesforce Developer specializing in AI systems and enterprise cloud solutions in Pittsburgh, PA

Senior Salesforce Developer specializing in AI systems and enterprise cloud solutions

Pittsburgh, PA15y exp
CRMIT SolutionsCarnegie Mellon University

Salesforce-focused engineer with hands-on experience building Sales Cloud and Service Cloud solutions, including a Zoho billing integration for quote/contract workflows and a multi-panel LWC case management dashboard. Stands out for making practical architecture decisions around middleware vs. custom REST, handling idempotency with upsert patterns, and modernizing legacy Aura patterns with Lightning Message Service.

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AM

Asad Mohammed

Screened

Mid-level AI/ML Engineer specializing in generative AI and intelligent automation

Illinois, USA4y exp
JPMorgan ChaseLewis University

Backend-focused AI engineer with enterprise experience building startup-style internal products at JPMorgan Chase. He helped create an AI-powered financial research platform for analysts, leading retrieval and multi-agent orchestration work that cut research prep from hours to under 20 minutes while scaling across large volumes of SEC filings and earnings transcripts.

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Sanjay Santhanam - Mid-level AI Software Engineer specializing in LLMs and FinTech data systems in San Jose, CA

Mid-level AI Software Engineer specializing in LLMs and FinTech data systems

San Jose, CA4y exp
Scry AIWestcliff University

Backend/AI systems engineer focused on productionizing agentic document-processing workflows for large financial PDFs. They describe owning deployments end-to-end, combining Python, Redis, LLM function calling, RAG/ReAct-style orchestration, and strong reliability practices to deliver 80% faster processing, reduce parsing errors from 12% to ~1%, and sustain 99.9% uptime in high-concurrency environments.

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