Vetted AI & Machine Learning Professionals in the DFW Metroplex

Pre-screened and vetted in the DFW Metroplex.

NR

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

Dallas, TX6y exp
OpenAIUniversity of Texas at Dallas
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BH

Senior Full-Stack Engineer specializing in AI/GenAI and cloud-native platforms

Dallas, TX13y exp
Kamet Consulting GroupUniversity of Texas at Austin
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PK

Mid-level AI/ML Engineer specializing in RAG, NLP, and MLOps

Dallas, TX5y exp
MetaUniversity of North Texas
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MJ

Senior AI/ML Engineer specializing in Generative AI, NLP, and RAG systems

Mesquite, TX11y exp
AmazonUniversity of Texas at Dallas

ML/NLP engineer focused on production-grade data and search/recommendation systems: built an end-to-end pipeline that connects unstructured customer feedback with product data using TF-IDF/BERT, Spark, and AWS (SageMaker/S3), orchestrated with Airflow and monitored for drift. Also has hands-on experience with entity resolution at scale and improving search relevance via BERT embeddings, FAISS vector search, and domain fine-tuning validated with precision@k and A/B testing.

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Sai Sravanth Segu - Mid-level AI/ML Engineer specializing in recommender systems, fraud detection, and LLMs in Plano, TX

Mid-level AI/ML Engineer specializing in recommender systems, fraud detection, and LLMs

Plano, TX5y exp
MetaUniversity of Texas at Arlington
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KR

Mid-level AI/ML Engineer specializing in NLP/LLMs and production ML systems

Allen, TX4y exp
AnthropicUniversity of North Texas
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SK

Mid-level Machine Learning Engineer specializing in MLOps, RAG, and real-time personalization

Arlington, TX5y exp
NetflixUniversity of Texas at Arlington
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GO

Principal AI Architect specializing in GenAI, agentic systems, and RAG

Dallas, Texas13y exp
PwCUC Berkeley
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NA

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

Dallas, TX5y exp
PerplexityUniversity of North Texas
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Ritika Ghosh - Junior Robotics & AI Engineer specializing in ROS2 autonomy and real-time computer vision in Dallas, US

Ritika Ghosh

Screened ReferencesStrong rec.

Junior Robotics & AI Engineer specializing in ROS2 autonomy and real-time computer vision

Dallas, US3y exp
ComputerVisionaries.aiNorthwestern University

Robotics software engineer from Stanley Black & Decker’s autonomous team who built and deployed a ROS2-based model predictive control system for a commercial autonomous lawn mower, integrating real-time localization, Nav2 planning, and custom control under real-time constraints. Has hands-on field debugging experience (Foxglove, TF timing, covariance/noise tuning) to resolve issues that only appeared outside simulation, plus containerized deployment and CI/CD experience.

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HS

Mid-level AI Engineer specializing in computer vision and RAG systems

Fort Worth, TX4y exp
Lockheed MartinJohns Hopkins University
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CB

Staff-level AI/ML Engineer specializing in LLM agents and RAG for e-commerce

Euless, TX10y exp
eBayUniversity of Texas at Austin
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PK

Mid-level AI/ML Engineer specializing in GenAI, LLMs, and RAG pipelines

Dallas, TX6y exp
MetaUniversity of North Texas
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JC

Senior Machine Learning Engineer specializing in GenAI, NLP, and MLOps

McKinney, TX8y exp
UberTexas Southern University
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RC

Senior Data/GenAI Engineer specializing in cloud-native ML, RAG, and real-time data platforms

Richardson, TX8y exp
ToyotaTexas A&M University
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VG

Machine learning engineer and software developer with experience across fintech, e-commerce, and gaming.

Dallas, Texas, USA6y exp
Fidelity InvestmentsUniversity of the Cumberlands

ML/AI engineer with hands-on ownership of production systems spanning classical ML fraud detection and GenAI agent workflows. At Fidelity, they built an end-to-end fraud platform that improved review queue Precision@K by 15-20% while reducing false positives 10-15%, and they also shipped RAG-based agent systems that cut manual workflow effort by 30-40%.

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JA

Mid-level AI/ML Engineer specializing in NLP, RAG, and MLOps

McKinney, TX6y exp
Globe LifeTexas A&M University

Built a production LLM/RAG-based “model excellence scoring” system at Uber to automatically evaluate hundreds of ML models, standardizing quality assessment and cutting evaluation time from days to minutes on GCP. Also delivered an NLP document classification solution for insurance claims at Globe Life, partnering closely with compliance/operations and improving routing accuracy from ~85% manual to 93% with the model.

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YP

Mid-level AI/ML Engineer specializing in Databricks, MLOps, and real-time fraud detection

The Colony, TX4y exp
DatabricksUniversity of North Texas

ML/LLM engineer building production, real-time fraud detection for financial transactions using a two-tier architecture (fast ML + GPT) to deliver both low-latency decisions and analyst-friendly risk explanations. Experienced orchestrating end-to-end retraining, drift monitoring, and automated model promotion with Databricks Jobs/Workflows and MLflow, and partnering closely with fraud analysts to tune alerts, thresholds, and dashboards.

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HG

Harish Gaddam

Screened

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

Dallas, TX5y exp
VerizonUniversity of Texas at Arlington

LLM/agentic systems builder at Verizon who deployed a LangGraph-orchestrated multi-agent ticket-automation platform with RAG (FAISS) to replace brittle rule-based bots. Improved routing correctness by ~30–40%, hit ~300ms latency targets via model routing, and reduced ops workload by ~60% through tight iteration with non-technical stakeholders and strong testing/observability practices.

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RR

Director-level AI Architect/Manager specializing in GenAI, MLOps, and enterprise automation

Dallas, TX10y exp
Bank of America

GenAI/ML engineering leader (player-coach) who built and deployed an image-to-text production system for topology/resource diagrams, combining YOLO-based issue detection with an LLM to generate support-ready reports at scale. Heavy AWS stack (SageMaker, Step Functions, Lambda, CloudWatch, FastAPI, Kubernetes/Docker) with KPI-driven optimization (MTTR, P50), including ~21 custom labels and reported 30–50% faster issue identification while processing thousands of images in production.

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ST

Mid-level AI Engineer specializing in Generative AI, LLMs, and RAG systems

Dallas, TX6y exp
NewmarkUniversity of North Texas
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