Vetted Machine Learning Engineers in the DFW Metroplex

Pre-screened and vetted in the DFW Metroplex.

JA

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

McKinney, TX5y exp
Globe LifeTexas A&M University
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AM

Abhishikth Meesala

Screened ReferencesStrong rec.

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

Dallas, TX4y exp
PwCCampbellsville University

At PwC, built and productionized an agentic RAG enterprise search assistant over 6M internal documents (8M embeddings), deployed across AWS and GCP. Drove major retrieval gains (72%→92% precision via BM25+dense hybrid with RRF and cross-encoder re-ranking), reduced hallucinations 30%, achieved <2s latency at 50–60K queries/month, and cut support tickets 30%—boosting adoption to 2,500 users by adding source-cited answers.

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SK

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

Frisco, TX3y exp
AdobeUniversity of North Texas
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KM

Mid-Level AI/ML Software Engineer specializing in agentic LLM systems

Dallas, Texas6y exp
DatatronUniversity of West Florida

Built and deployed a production LLM-powered multi-agent compliance copilot (life sciences/finance) using LangChain/LangGraph + RAG over vector databases, delivered via async FastAPI on Kubernetes. Emphasizes audit-ready, deterministic outputs with schema constraints and citations, plus rigorous evaluation/monitoring; reports 60%+ reduction in manual research time and successful production adoption.

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SK

Mid-level Data Scientist / AI-ML Engineer specializing in Generative AI and LLM applications

Dallas, TX5y exp
Baylor Scott & WhiteUniversity of North Texas

Built a production GenAI-powered analytics assistant to reduce reliance on data analysts by enabling natural-language Q&A over Databricks/Power BI dashboards, backed by vector search (Pinecone/Milvus) and a Neo4j knowledge graph, including multimodal support via OpenAI Vision. Demonstrates strong real-world LLM reliability engineering with strict RAG, LangGraph multi-step verification, and Guardrails/custom validators, plus broad orchestration and production monitoring experience (Airflow, ADF, Step Functions, Kubernetes, Prometheus/CloudWatch).

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HK

Harini Kv

Screened

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

Dallas, TX7y exp
EquinixFitchburg State University

GenAI/data engineering practitioner with production experience across Equinix, Optum, and Citibank—built an Azure OpenAI (GPT-4) + LangChain document intelligence platform processing 1.5M+ docs/month and a HIPAA-compliant Airflow healthcare pipeline handling 5M+ claims/day. Also delivered a real-time fraud detection + explainability system using LightGBM and a fine-tuned T5 NLG component, improving fraud accuracy by 15%+ while partnering closely with compliance stakeholders.

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PE

Mid-Level Software Engineer specializing in distributed systems and cloud-native backends

Dallas, USA5y exp
T-MobilePurdue University

AI/LLM engineer with production experience at Charles Schwab building a RAG-based assistant to help 5,000+ reps answer complex financial policy questions. Implemented a multi-layer anti-hallucination approach (GNN-driven ontology/graph retrieval + citation-only answers) and compliance-focused guardrails (Azure AI Content Safety) in partnership with audit/compliance stakeholders.

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Akhil Ghanta - Mid-level AI/ML Engineer specializing in NLP, computer vision, and MLOps in Dallas, TX

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

Dallas, TX4y exp
JPMorgan ChaseUniversity at Buffalo
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Ankur Ankit - Mid-level AI/ML Engineer specializing in GenAI, RAG, and real-time ML systems in Irving, TX

Mid-level AI/ML Engineer specializing in GenAI, RAG, and real-time ML systems

Irving, TX5y exp
Qualibar Inc.Boston University
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JK

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

Dallas, TX5y exp
ServiceNowUniversity of Houston
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HS

Mid-level AI/ML Engineer specializing in Generative AI, RAG, and multi-agent systems

Plano, Texas5y exp
ToyotaTexas Tech University
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RG

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

Dallas, TX5y exp
EtsyIndiana Wesleyan University
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TK

Mid-level AI/ML Engineer specializing in Generative AI, RAG, and multi-agent systems

Irving, TX5y exp
Goldman SachsGannon University
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RM

Senior Data Scientist specializing in GenAI, ML, and cloud platforms for finance and healthcare

Addison, TX5y exp
Bank of AmericaUniversity of New Haven
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MD

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

Arlington, TX4y exp
HumanaUniversity of Texas at Austin
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HV

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

Dallas, TX6y exp
EquinixFitchburg State University
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SS

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

Dallas, TX5y exp
Goldman SachsSouthern Arkansas University
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Pavan Punna - Mid-level AI/ML Engineer specializing in LLMs, MLOps, and healthcare-fintech AI in Dallas, TX

Pavan Punna

Screened

Mid-level AI/ML Engineer specializing in LLMs, MLOps, and healthcare-fintech AI

Dallas, TX5y exp
Federal Soft SystemsConcordia University

Built and owned a production GPT-4 RAG assistant for clinical and enterprise query resolution, taking it from initial experiment to deployment, monitoring, and iterative improvement. Their work cut resolution time from 45 minutes to under 2 minutes, achieved roughly 95% accuracy, and scaled to thousands of additional monthly queries while emphasizing safety and trust in a sensitive clinical domain.

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SR

Sahithi Reddy

Screened

Mid-level Machine Learning Engineer specializing in LLM-powered products

Dallas, TX4y exp
VerizonUniversity of Massachusetts Dartmouth

Verizon engineer who productionized an LLM-based personalization capability for a customer-facing digital platform, owning the path from success metrics through scalable APIs, A/B validation, and post-launch monitoring (latency/accuracy/drift). Experienced in diagnosing and fixing real-time LLM/RAG workflow issues under peak load, and in enabling adoption via tailored technical demos/workshops and sales support materials.

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Jaideep bommidi - Senior ML Engineer & Data Scientist specializing in LLM agents, retrieval/ranking, and MLOps in Denton, TX

Senior ML Engineer & Data Scientist specializing in LLM agents, retrieval/ranking, and MLOps

Denton, TX8y exp
Webster BankUniversity of North Texas

Machine Learning Engineer currently at Webster Bank building an enterprise-scale LLM agent for Temenos Journey Manager/Maestro, using RAG-style multi-stage retrieval with FAISS/Pinecone, hybrid dense+sparse search, and LoRA fine-tuning optimized via NDCG/MAP and A/B testing. Previously handled messy incident/telemetry data at Deuta Werke GmbH with deterministic + fuzzy entity resolution, and has strong production data engineering experience across Spark/Hadoop and Python ETL systems.

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KP

Mid-level Data Analytics & ML Engineer specializing in NLP, LLMs, and cloud data platforms

Dallas, TX5y exp
MattelKennesaw State University

At KPMG, built and productionized a secure RAG-based LLM assistant that lets business and risk stakeholders query data warehouses in natural language, reducing dependence on data engineers for ad-hoc analysis. Demonstrates strong production rigor (Airflow orchestration, CI/CD, containerization), retrieval/embedding tuning (rechunking, semantic abstraction for structured data), and reliability controls (confidence thresholds, refusal behavior, monitoring and canary evals).

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SS

Sowmya Sree

Screened

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

Dallas, TX5y exp
Bank of AmericaUniversity of North Texas

Built production LLM systems including a real-time customer feedback analysis and workflow automation platform using RAG and multi-agent orchestration with confidence-based human escalation, addressing privacy and legacy integration challenges. Also automated ML operations with Airflow/Kubernetes (e.g., daily churn model retraining) cutting retraining time to under 30 minutes, and demonstrates a rigorous testing/monitoring approach plus strong non-technical stakeholder collaboration.

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