Vetted Multi-Agent Systems Professionals

Pre-screened and vetted.

Gaurav Narasimhan - Executive AI platform leader specializing in autonomous agent systems for enterprise SaaS in Redwood City, CA

Executive AI platform leader specializing in autonomous agent systems for enterprise SaaS

Redwood City, CA26y exp
OracleUC Berkeley

Real estate entrepreneur who has previously raised capital from friends and family and has engaged directly with VC firms including A16z. Demonstrates unusually strong founder commitment, having worked two full-time jobs for the past six years while pursuing entrepreneurial goals, with hypothesys.ai described as the outcome.

View profile
Jeremiah Medina - Senior AI/ML Engineer specializing in LLMs, RAG, and cloud-native MLOps in Orlando, FL

Senior AI/ML Engineer specializing in LLMs, RAG, and cloud-native MLOps

Orlando, FL11y exp
Andor HealthMarshall University

Built and owned a real-time clinical AI assistant at Andor Health, taking it from prototype through deployment, monitoring, and iterative improvement. Brings strong healthcare-focused GenAI experience across RAG, hybrid retrieval, LoRA fine-tuning, and production Python services, with measurable gains in accuracy, speed, and reliability.

View profile
SK

Mid-level Software Engineer specializing in backend systems and cloud data platforms

Seattle, WA5y exp
AmazonOhio State University

Candidate is a hands-on engineer using AI as a controlled coding partner rather than an autonomous decision-maker. They have practical experience designing and leading structured multi-agent coding pipelines with specialized roles for code generation, review, and test coverage, and show strong judgment around reliability through schemas, guardrails, reviewer gates, and manual validation.

View profile
MG

Executive Technology Leader specializing in Generative AI, platform architecture, and digital transformation

Austin, TX14y exp
ExpediaSaint Joseph's University

Engineering/technology leader with experience at Expedia and startup OneRail, known for building business-aligned technology roadmaps and scaling orgs rapidly (11 to 120 engineers in a year). Has driven large productivity and efficiency gains by operationalizing AI agents (code reviews, upgrades, security fixes) and implementing ChatOps-based deployment architecture, using data-driven experimentation to manage platform changes and conversion impacts.

View profile
CC

Chenghui Cai

Screened

Director of Applied Sciences specializing in reinforcement learning and agentic AI for finance

New York City, NY16y exp
AyataDuke University

Embodied AI/robotics ML engineer with hands-on experience deploying POMDP-based reinforcement learning controllers on real mobile robots and vehicle fleets. Strong in sim-to-real robustness (domain randomization) and production rollout practices (HIL, shadow-mode, canaries, safety instrumentation), and has published related work (mentions a NeurIPS paper).

View profile
Dhruv Arora - Senior Generative AI Implementation Consultant specializing in RAG and agentic AI on cloud in Bay Area, CA

Dhruv Arora

Screened

Senior Generative AI Implementation Consultant specializing in RAG and agentic AI on cloud

Bay Area, CA3y exp
CapgeminiDuke University

LLM/RAG practitioner who built an AWS-based enterprise document search and summarization platform with RBAC and scaled it to 10K+ users, solving relevance issues via contextual chunking and hybrid retrieval. Also designed agentic workflows for a telecom forecast-validation use case using sub-agents, tool APIs, and strict context management, and has proven pre-sales influence (supported a $300K manufacturing deal with a roadmap-driven pitch).

View profile
TG

Senior Machine Learning Engineer specializing in NLP, LLMs, and scalable ML platforms

Cupertino, CA19y exp
WiproPortland State University
View profile
AM

Mid-level Product Engineer specializing in AI and FinTech platforms

New York, NY7y exp
Insightful.ioNYU
View profile
SP

Senior AI & Data Engineer specializing in LLM agents, RAG, and data platforms

San Jose, CA25y exp
Capital OneUC Berkeley
View profile
NA

Mid-level AI/ML Engineer specializing in GenAI agents and production ML systems

Dallas, TX5y exp
PerplexityUniversity of North Texas
View profile
RI

Senior AI/ML Engineer specializing in healthcare and fintech AI systems

San Mateo, CA8y exp
Notable HealthcareUniversity of California
View profile
SE

Staff AI & Data Engineer specializing in LLM systems and real-time data platforms

Salt Lake City, UT10y exp
Jump AILouisiana Tech University
View profile
BJ

Senior AI Engineer specializing in healthcare and FinTech AI systems

New York, NY8y exp
HyroUniversity of North Carolina at Charlotte
View profile
AK

Staff AI Systems Engineer specializing in multi-agent and distributed platforms

San Francisco Bay Area, CA18y exp
Reddit
View profile
NB

Executive Product & Technical Services Leader specializing in AI, Crypto, and FinTech

San Francisco, CA17y exp
Blink AI
View profile
Aaditya Voruganti - Junior AI & Software Engineer specializing in robotics and ML infrastructure

Aaditya Voruganti

Screened ReferencesStrong rec.

Junior AI & Software Engineer specializing in robotics and ML infrastructure

2y exp
SamsaraUniversity of Illinois Urbana-Champaign

Robotics engineer from UIUC’s Intelligent Motion Lab who led the perception stack for a humanoid robotic nurse, fusing camera/LiDAR/IMU on NVIDIA Jetson Orin for real-time localization and scene understanding across six robots. Deep expertise in ROS 2 and edge ML optimization (TensorRT, CUDA, zero-copy), delivering major latency/throughput gains (10 FPS to 22+ FPS) and building fault-tolerant pipelines with gRPC offloading and real-time reliability practices.

View profile
JK

Mid-level Software Engineer specializing in backend, cloud, and AI systems

Seattle, WA4y exp
AmazonSaint Louis University

Engineer with hands-on experience across backend, full-stack, cloud, and AI/ML systems, with particular depth in Python, FastAPI, AWS Bedrock, SageMaker, and RAG-based architectures. Stands out for treating AI and agents as accelerators within disciplined production engineering, emphasizing guardrails, observability, latency/cost monitoring, and scalable system design.

View profile
BK

Balpreet Kaur

Screened

Junior Machine Learning Engineer specializing in LLMs and data pipelines

Amherst, MA2y exp
Google DeepMindUniversity of Massachusetts Amherst

Research Extern at Google DeepMind and former AWS Software Development Engineer Intern with a strong focus on practical, trustworthy AI engineering. Built a multi-agent RAG system for personalized news headline generation using a fine-tuned Flan-T5 model, parallel critic agents, FAISS retrieval, and style embeddings, while also leading a 3-person team on the project.

View profile
XL

Xicheng Liang

Screened

Intern AI/Full-Stack Engineer specializing in backend systems and applied machine learning

Chicago, IL1y exp
Becker’s HealthcareUniversity of Pennsylvania

Built and shipped a production agentic RAG system for healthcare analysts that automated compliance/operations knowledge retrieval across PDFs, reports, and databases. Emphasizes production reliability (monitoring, retries, fallbacks, async queues), strong evaluation/iteration loops, and measurable impact (3–10s responses and ~98% top-k retrieval accuracy).

View profile
SC

Shweta Chavan

Screened

Junior Computer Vision & ML Engineer specializing in autonomous perception systems

Pittsburgh, PA2y exp
Magna InternationalCarnegie Mellon University

LLM/RAG engineer who built a production-style multi-agent orchestrator for resume-to-recommendation workflows (PDF ingestion through screening and recommendations), emphasizing prompt tuning and strict JSON output contracts. Currently building a RAG application for an NGO using Airflow (DAGs + embeddings) and tackling messy, missing/imbalanced data; has hands-on retrieval stack experience (FAISS/HNSW, bge embeddings) and uses rigorous evaluation metrics for groundedness and hallucination control.

View profile
Jingyao Chen - Junior Backend/Platform Engineer specializing in AI microservices and cloud-native systems in Pittsburgh, PA

Jingyao Chen

Screened

Junior Backend/Platform Engineer specializing in AI microservices and cloud-native systems

Pittsburgh, PA2y exp
MeowyAICarnegie Mellon University

Cofounder at MeowyAI who shipped a production multimodal (vision/voice/text) AI task manager using Gemini, tackling real-world issues like hallucinations, tool-calling safety, and RAG-based preference memory. Also built a production multi-agent RAG system orchestrated with LangGraph (and contributes to LangChain), with strong emphasis on latency optimization, observability (OpenTelemetry), and rigorous testing/evaluation including A/B tests and adversarial prompting.

View profile
PV

Praveen V

Screened

Mid-Level Software Engineer specializing in Generative AI and RAG systems

Remote, USA5y exp
MetaUniversity of North Carolina at Charlotte

Built a production RAG-based natural-language-to-SQL system at Global Atlantic to replace slow, expensive manual analytics ticket workflows, focusing heavily on retrieval quality and measurable evaluation (200-question ground-truth set; recall@5 improved 0.65→0.78 via semantic chunking). Also built a custom MCP-style agent orchestrator for a personal project (arxiv-ai) to improve flexibility and Langfuse-aligned observability, and has hands-on experience with LangGraph, CrewAI, and n8n.

View profile
SJ

Intern Full-Stack Engineer specializing in AI/ML and cloud infrastructure

Bangalore, India1y exp
MaerskCornell University

Built multiple AI-powered products from scratch, including ConnectAbility, an accessibility tool combining computer vision and LLMs to describe visual content for users with disabilities, and SpamBack!, a macOS app that detects scam texts and auto-generates responses. Stands out for full-stack/backend ownership of applied AI systems, especially around async workflows, inference performance, and reliability safeguards.

View profile
NS

Nitin Sunda

Screened

Mid-level Software Engineer specializing in FinTech and GenAI platforms

Seattle, WA4y exp
AmazonNortheastern University

Candidate describes a development approach centered on AI-assisted coding, testing, and agent-driven workflows, including production exposure to multi-agent systems and governance-oriented logging. They appear particularly focused on combining AI speed with structured validation through unit tests, boundary tests, and edge-case monitoring.

View profile

Need someone specific?

AI Search