Vetted Anomaly Detection Professionals

Pre-screened and vetted.

BH

Senior Software Engineer specializing in cloud-native microservices and AI/ML automation

Austin, TX11y exp
CubixCloud Web ServicesMacMurray College
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VS

Mid-level AI Product Engineer and Data Analyst specializing in LLM automation

Baltimore, MD3y exp
PayPalUniversity of Maryland, Baltimore County
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NS

Junior Full-Stack Developer specializing in cloud apps and LLM-powered systems

United States3y exp
Kramer AmericaNortheastern University
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SI

Junior Software Engineer specializing in full-stack, mobile, and cloud systems

Atlanta, GA3y exp
ABE Scott EnterprisesUniversity of Georgia
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DG

Intern AI/ML Engineer specializing in NLP, graph analytics, and agentic RAG systems

Dallas, TX2y exp
FlashmockUniversity of North Texas
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HV

Mid-level Data Scientist specializing in FinTech and healthcare NLP/LLMs

4y exp
University of North TexasUniversity of North Texas
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HK

Junior Full-Stack Software Engineer specializing in backend, cloud, and AI systems

Seattle, WA3y exp
Before You SolutionsUniversity of Dayton
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BY

Executive Technology Entrepreneur specializing in FinTech, Healthcare IT, and Cybersecurity

46y exp
V2R Group, LLC
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AR

Atiman Rohatgi

Screened ReferencesModerate rec.

Junior Software Engineer specializing in AI/ML and full-stack applications

Tempe, AZ2y exp
Arizona State UniversityArizona State University

AI/backend-focused builder who has shipped two distinct applied AI products: a game discovery platform with vector search + RAG chat, and an AI accounting platform for small businesses. Stands out for combining product discovery with hands-on system design, including sub-100ms retrieval performance, privacy-conscious financial workflows, and measurable impact like 58% compute-time reduction and support for 24,000+ user profiles.

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RP

Rukmini Pisipati

Screened ReferencesModerate rec.

Junior AI/ML Engineer specializing in LLM automation and NLP

Indiana, United States2y exp
Human.ReadableUniversity of Cincinnati

Built and shipped a production LLM hallucination detection and monitoring pipeline using semantic-level entropy (embedding-clustered multi-generation variance) to flag unreliable outputs in downstream automation. Implemented a scalable async architecture (FastAPI + Docker + Redis/Celery) with strong observability (structured logs + PostgreSQL) and developed evaluation loops combining controlled prompts and human review; also partnered with non-technical stakeholders on AI-driven form validation/document processing.

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VP

Vishesh Patel

Screened

Junior AI/ML Engineer specializing in Python ML, NLP, and model deployment

Piscataway, New Jersey3y exp
Fairfield UniversityFairfield University

Built and productionized a real-time social-media sentiment analysis system used by a marketing team to monitor brand/campaign performance. Experienced in orchestrating LLM workflows with LangChain (validation → prompting → parsing → post-processing), plus monitoring, retraining, and RAG-style retrieval using embeddings/vector stores to keep outputs reliable over time.

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TS

Tirth Shah

Screened

Mid-level AI/ML Engineer specializing in anomaly detection, data tooling, and cloud-native systems

Chico, CA4y exp
Chico State EnterprisesCalifornia State University, Chico

Backend/platform engineer who built an LLM-driven QA automation system (“mockmouse”) using a Flask orchestration microservice, Socket.IO real-time updates, Redis caching, and strict Pydantic schemas to turn prompts into reliable action graphs and automated browser tests. Has hands-on Kubernetes delivery experience (Docker/Helm/Jenkins) and has supported large migration programs, validating ETL cutovers with 1M+ synthetic records and rigorous output comparisons; also built event-driven monitoring/anomaly detection streaming into Grafana.

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BM

Mid-level AIML Engineer specializing in production ML and MLOps

West Palm Beach, FL5y exp
EasyBee AIFlorida Atlantic University

ML practitioner who built a production customer risk scoring system to replace slow manual approvals, owning the full pipeline from feature engineering and XGBoost training to deploying a Dockerized FastAPI prediction service. Emphasizes reliability and business-aligned evaluation (recall/ROC-AUC, threshold tuning, drift monitoring) and is comfortable translating model decisions into stakeholder metrics like conversion rate (experience at EasyBee AI).

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Prasad Sadineni - Mid-level AI Engineer specializing in LLM fine-tuning, RAG, and agentic systems in Nashville, TN

Mid-level AI Engineer specializing in LLM fine-tuning, RAG, and agentic systems

Nashville, TN6y exp
HS Solutions.INCEastern Illinois University

Building and deploying production in-house, domain-specific LLM chatbots for enterprises that cannot use third-party GPT tools due to internal policies. Focused on reducing latency and improving domain awareness using fine-tuning, continual learning, and advanced RAG/agent retrieval strategies, with experience orchestrating multi-agent workflows via LangChain/LlamaIndex and vector DBs (FAISS, Weaviate, Chroma).

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Kevin Thomas - Intern Software Engineer specializing in AI, cloud, and backend systems in Torrance, CA

Kevin Thomas

Screened

Intern Software Engineer specializing in AI, cloud, and backend systems

Torrance, CA1y exp
Easley-Dunn ProductionsSan Jose State University

Candidate has internship and graduate-project experience building AI agents, including a production log-analysis assistant using a lightweight agentic/RAG-style workflow with local GPT training and validation against historical logs. They also worked on Android/iOS game build and release processes in a Unity-based robot racing game environment, and highlight measurable LLM outcomes including 80% analysis accuracy, 2-5 second latency, and 50% cost reduction.

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VM

Mid-level AI Engineer specializing in LLM agents, RAG, and data pipelines

4y exp
AllyzentUniversity of Central Florida

Built and productionized LLM-powered workflows that generate contextual insights from structured financial data, including prompt/retrieval design, data standardization, and reliability controls like rate limiting and batching. Also diagnosed and fixed real-time failures in an automated order validation system using logs/metrics, staging reproduction, edge-case handling, retries, and alerting, while supporting sales/customer teams with demos, scripts, and FAQs to drive adoption.

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Iskhak Ishmakhametov - Mid-level Full-Stack Software Engineer specializing in FinTech and real-time systems in Bellevue, WA

Mid-level Full-Stack Software Engineer specializing in FinTech and real-time systems

Bellevue, WA7y exp
ATLABYTEKumasi Technical University

Full-stack product engineer with a strong real-time systems focus: built and rolled out a WebSocket-based notifications system (with robust reconnect/resync and event ordering protections) that cut update latency to under 200ms. Also owned a workflow automation platform backend in FastAPI (JWT/RBAC, versioned APIs, standardized errors), designed the PostgreSQL schema for workflows/tasks/executions, and operated deployments on AWS ECS Fargate with blue-green CI/CD and performance stabilization via caching and autoscaling.

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JC

Jeet Choksi

Screened

Mid-level Machine Learning Engineer specializing in real-time AI and data platforms

New York, NY3y exp
MyEdMasterUniversity of Colorado Boulder

ML/NLP engineer who has built production systems end-to-end: a real-time recommendation platform (100k+ profiles) using BERTopic-style clustering and a RAG-based news summarization/recommendation stack with ChromaDB. Strong focus on scaling and reliability (GPU batching, Redis caching, Kafka ingestion, Docker/Kubernetes, Prometheus/Grafana) and on maintaining model quality over time via drift monitoring and retraining triggers.

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AG

Athwika Gade

Screened

Junior AI/ML Engineer specializing in agentic systems and RAG

Atlanta, GA1y exp
Connex AIPittsburg State University

LLM/RAG engineer at Connex AI who built and deployed a production healthcare agent to extract clinical insights from medical data/notes. Strong focus on real-world reliability—hallucination mitigation (citations, schema validation, confidence thresholds, rejection logic), custom LangChain orchestration (query rewriting, fallback paths), and production evaluation/observability—while collaborating closely with clinical SMEs to ensure clinical fit and time savings.

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