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Vetted Embeddings Professionals

Pre-screened and vetted.

DP

Mid-level Data Scientist specializing in machine learning, analytics, and cloud data pipelines

Herndon, VA3y exp
EpsilonTrine University
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SS

Mid-level AI/ML Engineer specializing in NLP, Generative AI, and fraud detection

Centennial, CO4y exp
Capital OneUniversity of Colorado Boulder
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SC

Mid-level Machine Learning & Generative AI Engineer specializing in enterprise RAG and MLOps

Remote5y exp
GEICOGuru Nanak Institutions Technical Campus
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SJ

Senior Data Scientist specializing in Generative AI and NLP

9y exp
AcquiaIIT Jodhpur
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VK

Mid-level Software Engineer specializing in backend systems and LLM-powered AI applications

San Francisco, CA6y exp
Twist BioscienceUniversity of Texas at Arlington
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VD

Mid-level Machine Learning Engineer specializing in LLMs, RAG, and document intelligence

Bloomington, IN5y exp
Project 990Indiana University
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SP

Mid-level AI/ML Engineer specializing in NLP, MLOps, and financial risk & fraud analytics

USA4y exp
JPMorgan ChaseFlorida International University
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YR

Mid-level AI Engineer specializing in Generative AI and LLM/RAG systems

Cincinnati, OH4y exp
Piper SandlerUniversity of Cincinnati
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BS

Senior Data Scientist specializing in LLMs, NLP, and anomaly detection

Foster City, CA9y exp
VisaUniversity at Buffalo
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SB

Mid-Level Software Engineer specializing in GenAI and FinTech

San Francisco, CA6y exp
CascaQueen's University
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AR

Adithya Rajendra

Screened ReferencesStrong rec.

Junior Data Engineer specializing in Azure data platforms and GenAI analytics

Bengaluru, India1y exp
ZEISSUC Irvine

Data/ML practitioner with experience spanning medical imaging (retinal vessel analysis for hypertension/CVD risk prediction) and enterprise data engineering at Carl Zeiss. Built large-scale SAP data cleaning/validation pipelines (10M+ daily records, ~99% accuracy) and RAG-based semantic search with LangChain/vector DBs that cut manual querying by 82%, plus automation that reduced data onboarding from 8 hours to 12 minutes.

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CC

Caden Cheah

Screened

Intern Full-Stack/ML Engineer specializing in LLM applications and mobile development

Los Angeles, CA1y exp
IlloominateUC Berkeley

Backend engineer who built a serverless AWS Lambda microservices backend for a parenting assistance mobile app, including a personalized recommendation system optimized to sub-500ms via precomputed scoring and DynamoDB caching. Demonstrates strong production pragmatism: CloudWatch-driven performance tuning (provisioned concurrency), zero-downtime phased schema migrations, and robustness patterns like optimistic locking and request deduplication. Also led a refactor of an LLM RAG pipeline to improve retrieval quality and cut latency from ~5s to ~3s.

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AP

Anurag Patil

Screened

Mid-level Data Analyst specializing in machine learning, ETL, and real-world evidence analytics

California, USA6y exp
AbbVieUC Irvine

Developed and productionized an AI-driven "indication finding" system for AbbVie to identify additional diseases a drug could target, working closely with clinical research teams on cohort inclusion/exclusion criteria and disease rollups. Leveraged an LLM to map clinical inputs to ICD codes and built configuration-driven ML pipelines (Cloudera ML, YAML, scheduled jobs) with structured testing and evaluation for reliability.

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AR

Mid-level AI Engineer specializing in GenAI, NLP, and MLOps

Remote, USA3y exp
PayPalUniversity of Central Missouri

LLM/agentic-systems engineer with PayPal experience hardening an LLM-powered fraud support assistant from prototype to production, focusing on low-latency distributed architecture, rigorous evaluation/testing, and security/compliance. Comfortable in customer-facing and GTM contexts—runs technical demos/workshops, builds tailored pilots, and aligns sales/CS with engineering to close deals and drive adoption.

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SR

Mid-level AI/ML Engineer specializing in deep learning, NLP/LLMs, and MLOps

MA, USA6y exp
Flatiron HealthClark University

Built and shipped a real-time oncology risk prediction system used by doctors during patient visits, trained on clinical data in AWS SageMaker and deployed via FastAPI with sub-second responses. Emphasizes clinician-trust features (SHAP explainability, validation checks) and HIPAA-compliant controls (encryption, RBAC, audit logging), plus Kubernetes-based production operations with autoscaling, monitoring, and drift/retraining workflows; collaborated closely with oncologists at Flatiron Health.

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BK

Bharath kumar

Screened

Director-level AI & Data Science leader specializing in GenAI, LLMs, and MLOps

Draper, UT12y exp
ThorneBharathiar University

ML/NLP engineer currently working in NYC on a system that connects complex unstructured data sources to deliver personalized insights, using embeddings + vector DB retrieval and a RAG architecture (LangChain, Pinecone/OpenSearch). Strong focus on production constraints—especially low-latency retrieval—using FAISS/ANN, PCA, index partitioning, and Redis caching, plus PEFT fine-tuning (LoRA/QLoRA) and KPI/SLA-driven promotion to production.

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JP

Jincheng Pang

Screened

Principal Data Scientist specializing in healthcare analytics and medical imaging AI

Sudbury, MA11y exp
AccessHopeTufts University

Developed an LLM-driven recommendation agent in Azure Databricks to triage oncology patients and trigger second-opinion case creation using medical claims and EHR data. Uses ICD-10/CPT/J-code features in prompts, embeddings + vector DB similarity, and a backtesting framework emphasizing recall to avoid missing clinically relevant cases while supporting business revenue.

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AP

Intern AI/ML Engineer specializing in LLM applications, RAG, and model evaluation

Atlanta, GA1y exp
PRGXDuke University

Backend/ML engineer who built production LLM-enabled systems at PRGX, including an interpretable contract opportunity scoring engine (Bradley-Terry pairwise ranking) that reached 0.82 weighted Spearman agreement with SME auditors and was integrated into workflow. Also built a Duke student advisor chatbot and hardened it for real-world reliability/security with schema-driven tool calling, normalization, and off-domain defenses; led staged production rollouts with shadow testing and achieved 0.90 F1 on a new extraction field before shipping.

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YP

Yash Pise

Screened

Mid-level Data Scientist specializing in Generative AI, LLMOps, and clinical data pipelines

5y exp
NovartisStevens Institute of Technology

LLM/RAG engineer who has built and deployed corporate-scale systems at Novartis and Johnson & Johnson, including a healthcare AI agent that generates day-to-day treatment schedules. Recently handled a high-stakes safety incident (LLM suggesting overdose) by tightening model instructions and validating with ~200 test prompts, and has strong end-to-end data/embedding/vector DB pipeline experience (PySpark, FAISS, Pinecone) plus SME-in-the-loop evaluation (RLHF).

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AR

Ashwin Ram

Screened

Junior Data Scientist specializing in Generative AI and applied machine learning

Dayton, OH1y exp
Evoke TechnologiesUniversity of Chicago

At Evoke Tech, built a production LLM "Testbench" to quickly compare LLMs/embedding models and RAG strategies (semantic, hybrid BM25, re-ranking, HyDE, query expansion) to select optimal architectures for different client needs. Also developed a multi-agent, multimodal (voice/text) RAG system for live catalog retrieval and safe product recommendations using LangGraph/LangChain with LangSmith monitoring, and regularly translated PM/UX goals into concrete agent behaviors via demos and flowcharts.

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US

Junior Machine Learning Engineer specializing in LLMs, RAG, and medical imaging

New York City, USA3y exp
NYU Langone HealthNYU

At Fileread, the candidate built and deployed an LLM-powered legal document classification and retrieval layer for an agentic extraction system that turns unstructured legal PDFs into structured tables with line-level citations. They productionized a RAG-style pipeline (ingestion, embeddings, retrieval, reranking, generation) and report 95%+ F1 across 70+ legal categories, emphasizing rigorous evaluation and close collaboration with legal domain experts for high-stakes precision.

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