Pre-screened and vetted.
Mid-level AI/ML & MLOps Engineer specializing in cloud AI infrastructure and GenAI
“At HPE, led and deployed an enterprise-grade LLM document intelligence platform for an insurance client, automating extraction from highly variable PDFs/scans/emails and raising field accuracy from 74% to 93%. Built a LangChain/Pinecone/OpenSearch RAG framework to cut hallucinations by 37% and operationalized LangSmith evals in CI, driving a 41% triage accuracy lift and >33% fewer incorrect resolutions while partnering closely with claims operations via HITL workflows.”
Mid-level Machine Learning Engineer specializing in MLOps and GenAI analytics
“ML/LLM practitioner who has deployed a production RAG-based trouble-call identifier using multiple datasets (device, network, past complaints). Experienced in end-to-end MLOps (FastAPI + Docker + Kubernetes with HPA) and in evaluating/monitoring LLM behavior to reduce hallucinations, with additional applied work in forecasting/anomaly detection and churn prediction for retention campaigns.”
Mid-level Data Analyst specializing in healthcare and financial analytics
“Built and productionized an LLM-powered clinical documentation and insights pipeline at Cardinal Health using LangChain + GPT-4 with RAG to summarize long clinical notes, extract medication/dosage entities, and generate structured SQL-ready outputs for downstream analytics. Emphasizes clinical reliability via labeled benchmarking (precision/recall/F1), shadow deployments, clinician human-in-the-loop review, and ongoing monitoring/orchestration with Airflow, Lambda, S3, Postgres, and Power BI.”
Junior Data Scientist specializing in healthcare ML and clinical NLP/LLMs
“Healthcare-focused LLM engineer who has built two production clinical applications: an automated structured clinical report generator from physician-patient conversations and a RAG-based chatbot for retrieving patient history (procedures, allergies, etc.). Demonstrates strong applied RAG expertise (overlapping chunking, entity dependency graphs, temporal filtering, graph RAG) to reduce hallucinations/omissions and partners closely with clinicians to automate hospital workflows.”
Junior Data Analyst specializing in ML, NLP, and cloud data pipelines
“Built and deployed a GenAI-powered PhD career intelligence platform at NYU that maps academic backgrounds to career paths and converts long academic CVs into job-ready resumes. Stands out for treating LLM systems as structured production pipelines—combining NLP extraction, embeddings, orchestration, and AWS deployment—to improve recommendation quality and cut resume preparation time by 70%.”
Healthcare technology executive and architect with 20+ years leading enterprise platforms and digital transformation.
“Healthcare-focused founder in the R&D stage building an EHR and clinical staffing startup centered on value-based care. They have already tested the concept with the market, are engaging Medicaid/Medicare leaders and industry conferences like ViVE and HIMSS, and are focused on early-signal detection to improve patient outcomes while lowering utilization costs.”
Executive sales leader specializing in cybersecurity SaaS
“Senior public sector enterprise sales leader with experience across RedSeal, eIQ, Reconnex, Dhaani Systems, Tufin, and Skybox, specializing in cybersecurity and regulated infrastructure accounts. Stands out for leading multi-region government territories, ranking #1 in 13 of 16 quarters, and winning complex seven-figure deals by tying security and technology investments to compliance, operational resilience, and measurable ROI.”
“AI/full-stack engineer in gaming analytics who joined Omnic.ai at a 2-person stage, helped grow with the company, and built both backend and frontend for real-time gameplay analysis products. He combines computer vision production experience with LLM/RAG systems work, and has already led 4 employees while shipping 12 models in a fast-moving startup environment.”
Mid-level Full-Stack Engineer specializing in AI SaaS and web applications
“Built a career platform feature end-to-end that generates tailored resumes and cover letters using a React/TypeScript frontend, Postgres, and AWS Lambda/SQS backend. Strong in event-driven, serverless architecture and pragmatic product iteration, with a quantified 60% improvement in onboarding completion after redesigning the UX with resume parsing and a multi-step flow.”
Mid-level Generative AI Engineer specializing in LLMs, RAG, and multimodal generation
“Open-source JavaScript contributor focused on performance and maintainability in data visualization libraries—refactored legacy ES5 into modular ES6, added tests/docs, and delivered ~30% faster load times with positive community adoption. Also optimized a React dashboard (~40% load-time reduction) and took ownership in an ambiguous AI product initiative by setting milestones, standing up an initial ML pipeline, and shipping a prototype in ~6 weeks that became the basis for production.”
Junior Full-Stack Machine Learning Engineer specializing in production ML systems
“Software engineer who owned end-to-end delivery of customer-facing agricultural forecast reporting (crop yield/health) and iterated quickly via rigorous edge-case testing and customer feedback. Also built an internal ML training platform (TypeScript/React + Flask/Python + MongoDB) used by every developer, with architecture designed to stay responsive under heavy compute load.”
Mid-level Data Scientist & Machine Learning Engineer specializing in fraud and forecasting
“ML/LLM practitioner who has shipped production RAG systems (summarization + Q&A) and end-to-end Airflow-orchestrated demand forecasting pipelines at NEON IT. Strong focus on reliability—uses evaluation scripts, retrieval/chunking tuning, validation/retries/alerts, and stakeholder-driven iteration to make AI workflows consistent and usable.”
Intern Full-Stack & ML Engineer specializing in AI products and data-driven optimization
“Worked in a startup building an automated carbon accounting/climate reporting product, partnering with client IT and internal cross-functional teams to ship features and train end users. Also has software engineering internship experience debugging complex multi-workflow systems, including uncovering a significant (~20%) data annotation error by instrumenting and testing each workflow step.”
Executive automotive remarketing & operations leader specializing in fleet, wholesale, and retail disposition
“Talent/recruiting operations leader with 20+ years of experience managing large, distributed teams across ~78 U.S. sites. Led multi-site restructuring and a major onboarding initiative that delivered nearly $15M in first-year savings, with a strong emphasis on quality hiring and operational metrics (time-to-hire, conversion, offers/approvals) using Lever and CRM tools.”
Mid-level Full-Stack Java Developer specializing in cloud-native microservices
“Full-stack engineer with Bank of America experience modernizing a large-scale financial reporting platform. Built React frontends and Java/Spring Boot microservice APIs end-to-end, optimized data-heavy SQL performance (indexing/caching/pagination), and implemented an AI feature for forecasting and anomaly detection using Python/scikit-learn, with deployments supported on AWS.”
Director of Customer Success specializing in enterprise data platforms and hybrid cloud
“Enterprise Principal/Lead CSM with experience owning high-profile tech, fintech, and government accounts end-to-end, including regulated AWS high-side deployments for a GPU-accelerated query engine. Built onboarding and VoC programs from the ground up, drove 90% adoption in 2 months, and influenced roadmap changes delivering 10x performance gains. Previously led Cloudera’s Apple relationship across 40+ teams and delivered 125% NRR through cloud/hybrid expansion and POCs.”
Junior Data Engineer specializing in Snowflake and investment data platforms
“Private markets/private credit data engineer owning core Snowflake/AWS data infrastructure (S3 → ActiveBatch → Snowflake) with automated iceDQ quality checks and curated datasets for internal Power BI/React reporting. Drove major reliability and delivery improvements, including cutting DB CI/CD deploy time 50% and reducing downstream table errors by 90%+, and also built an internal React/FastAPI app to visualize the team’s data infrastructure in an ambiguous early-stage environment.”
Senior Data Analyst specializing in marketing, BI, and financial analytics
“Marketing analytics candidate with experience at WPP and on a global Coca-Cola campaign, focused on turning messy multi-platform media data into trusted reporting and decision systems. They combine hands-on SQL/Python pipeline building with stakeholder KPI alignment, and cite a 22% improvement in media effectiveness plus faster budget reallocation through daily automated reporting.”
Executive sales leader specializing in global SaaS revenue growth
“Sales leader with deep North American public sector SaaS experience spanning government, municipalities, and adjacent nonprofit segments, including payments/FinTech monetization. Stands out for combining large-scale new ARR ownership ($27M target), measurable retention improvement (cut churn from 13% to 7%), and a track record of building new-market teams from scratch to multi-million-dollar ARR outcomes.”
Executive sales leader specializing in global retail, distribution, and e-commerce growth
“Sales executive with a consumer products and national retail background who successfully built a government/public sector channel from scratch while leading six sales divisions across retail, ecommerce, international, and institutional markets. Particularly compelling is his blend of eight-figure commercial leadership and firsthand law enforcement/SWAT experience, which helped him win business with agencies like the FBI Academy at Quantico, the U.S. Military Academy, and Homeland Security.”
Executive product leader specializing in AI, SaaS, and digital platforms
“Product leader with 20 years of experience across startups and agencies, including leading the end-to-end rebuild of Filmik, an AI-enabled workflow platform for film and television production teams. Stands out for combining deep UX simplification instincts with human-centered AI thinking, using automation to reduce friction while preserving trust, control, and collaboration. Has also built and mentored globally distributed product, design, engineering, and delivery teams across multiple regions.”
Junior Data Engineer / Analyst specializing in AI/ML data infrastructure
“Built and deployed a compliance-sensitive LLM pipeline that extracts rebate logic from hospital–supplier medical contracts, using multi-layer redaction (regex/NER/dictionary), schema-validated structured outputs, and secure placeholder reinsertion. Hosted models on Amazon Bedrock to avoid retraining on sensitive data and improved both accuracy and cost by splitting the workflow into a lightweight section classifier plus a fine-tuned extraction model, orchestrated with LangChain and evaluated via layered, test-driven agent assessments.”
Mid-level AI/ML Engineer specializing in Generative AI and NLP
“AI/LLM engineer with production experience building secure, scalable compliance-focused generative AI systems (GPT-3/4, BERT) including RAG over internal regulatory document bases. Has delivered end-to-end pipelines on AWS with PySpark/Airflow/Kubernetes/FastAPI, emphasizing privacy controls, monitoring, and iterative evaluation (A/B testing). Also partnered closely with bank compliance officers using prototypes to refine NLP summarization/classification and reduce document review time.”
Senior Full-Stack Software Engineer specializing in digital health and AI
“ML practitioner with hands-on experience in healthcare time-series modeling (CGM-based blood glucose prediction) including a novel ICA-based blind source separation approach and robust data-cleaning for noisy, missing sensor data. Also built an embeddings + LLM-powered podcast recommendation workflow using YouTube transcript scraping and Vellum AI document indexing, with a strong emphasis on production-grade engineering practices (TDD, monitoring) and realistic rolling validation for forecasting.”