Principal/Lead AIML Engineer with Graph GenAI-Onsite-Dallas, TX-F2F interview for client round -10+years must

Dallas, TX, US • Posted 3 hours ago • Updated 3 hours ago
Contract W2
Contract Corp To Corp
No Travel Required
On-site
Depends on Experience
Company Branding Image
Fitment

Dice Job Match Score™

🧠 Analyzing your skills...

Job Details

Skills

  • Continuous Delivery
  • Benchmarking
  • Cloud Computing
  • Continuous Integration
  • Artificial Intelligence
  • Amazon Web Services
  • Machine Learning Operations (ML Ops)
  • Microsoft Azure
  • Machine Learning (ML)
  • Large Language Models (LLMs)
  • Language Models
  • Knowledge Base
  • LlamaIndex
  • Mapping
  • Google Cloud Platform
  • Graph Databases
  • Good Clinical Practice
  • LangChain
  • Generative Artificial Intelligence (AI)
  • Data Quality
  • Evaluation
  • Unstructured Data
  • Vector Databases
  • Workflow
  • Systems Design
  • Semantic Search
  • Semantics
  • SPARQL
  • Resource Description Framework
  • Reasoning
  • Ontology Engineering
  • Performance Monitoring
  • Scalability
  • Python
  • Prompt Engineering
  • OWL
  • Performance Tuning
  • Named-Entity Recognition (NER)
  • Adapter
  • Neo4j
  • Training
  • Modeling
  • Analytics
  • Ontologies

Summary

Job Title - Principal / Lead AI ML Engineer – Knowledge Graphs & GenAI 

 Location - Onsite in Dallas, TX

 

 Experience Required

 14+ years of hands on experience in AI/ML engineering, with strong depth in knowledge graphs, unstructured data processing, and generative AI systems.

 ________________________________________

 Role Summary

 We are seeking a highly experienced AI/ML Engineer with a strong foundation in knowledge graph engineering and generative AI to design, build, and scale intelligent data pipelines that transform large scale unstructured data into enterprise grade Knowledge Graphs.

 The ideal candidate will have deep experience in ontology modeling, entity resolution, probabilistic pattern matching, and agentic knowledge base enrichment, combined with strong expertise in LLMs/SMLs, fine tuning pipelines, and graph based reasoning systems.

 This role involves architecting and delivering production grade AI systems that integrate LLMs with knowledge graphs, enabling contextual reasoning, anomaly detection, and intelligent automation at scale.

 ________________________________________

 Key Responsibilities

 Knowledge Graph & Ontology Engineering

 • Design, build, and maintain enterprise scale Knowledge Graphs from large volumes of unstructured data (text, documents, logs, PDFs, web data).

 • Create and evolve ontologies using RDF/OWL, including:

 o Entity extraction and linking

 o Entity resolution and disambiguation

 o Probabilistic pattern matching

 o Ontology alignment across heterogeneous data sources

 • Implement semantic modeling for complex domains to support reasoning, discovery, and analytics.

 

 Agentic Knowledge Base Enrichment

 • Develop agentic AI systems for:

 o Automated data gap identification

 o Knowledge base enrichment and validation

 o Continuous learning and self improving graph pipelines

 • Build workflows that combine LLM reasoning with graph traversal and inference.

 

 AI/ML & GenAI Systems

 • Design and implement AI/ML pipelines integrating:

 o Large Language Models (LLMs)

 o Small Language Models (SMLs)

 o Reasoning and task specific models

 • Build fine tuning pipelines, including:

 o Dataset generation and curation

 o Training and fine tuning (SFT, PEFT, adapters)

 o Evaluation, benchmarking, and deployment

 • Apply prompt engineering, RAG, and hybrid LLM + Knowledge Graph (GraphRAG) techniques for contextual intelligence.

 

 Anomaly Detection & Analytics

 • Develop anomaly detection systems on top of knowledge graph data at scale.

 • Apply graph analytics, embeddings, and ML techniques to detect:

 o Semantic inconsistencies

 o Behavioral anomalies

 o Data quality and relationship drift

 

 Data & ML Engineering

 • Build robust data pipelines that ingest, process, enrich, and publish knowledge graph data.

 • Implement scalable ML systems using Python for:

 o Model development

 o Training and tuning

 o Inference and deployment

 ________________________________________

 Technical Skills & Expertise

 Core AI/ML

 • Strong AI/ML engineering background with deep expertise in:

 o Python

 o Model development, training, tuning, and deployment

 • Extensive hands on experience with:

 o Large Language Models (LLMs)

 o Small Language Models (SMLs)

 o Generative AI and reasoning models

 o Text generation, summarization, and semantic search workflows

 Knowledge Graph Technologies

 • Strong experience with:

 o Neo4j, GraphDB

 o RDF, OWL

 o Cypher, SPARQL

 • Proven ability to implement:

 o Entity linking and resolution

 o Semantic search

 o Relationship mapping and inference

 

 GenAI Frameworks & Tooling

 • Experience building GenAI systems using:

 o LangChain, LangGraph

 o LlamaIndex

 o OpenAI / Azure OpenAI

 o Vector databases such as Pinecone and FAISS

 

 MLOps & LLMOps

 • Strong experience in MLOps and LLMOps, including:

 o MLflow, Azure ML, Datadog

 o CI/CD automation for ML systems

 o Observability, logging, and tracing

 o Model performance monitoring and drift detection

 • Experience deploying and operating AI systems in production environments.

 

 Cloud & Scalability

 • Experience building and optimizing AI/ML and graph pipelines either of any on:

 o Azure

 o AWS

 o Google Cloud Platform

 • Strong understanding of distributed systems, scalability, and performance optimization.

 ________________________________________

 Client is looking for candidates who have experience in building:

 • Ontology from large scale data (requires experience in entity resolution, probabilistic pattern matching)

 • Agentic knowledge-base enrichment (automated data gap identification, and data enrichment)

 • Anomaly detection on top of knowledge graph data at scale

 • Fine tuning pipeline (including dataset generation, tuning, evaluation, deployment) for small language models and reasoning models

Employers have access to artificial intelligence language tools (“AI”) that help generate and enhance job descriptions and AI may have been used to create this description. The position description has been reviewed for accuracy and Dice believes it to correctly reflect the job opportunity.
  • Dice Id: 10423210A
  • Position Id: 8963778
  • Posted 3 hours ago

Company Info

About Keylent

We established Keylent to provide the Key Talent that our clients seek. We are all about People. About Passion. Professional and Process driven.



We have been involved with the industry for over 2 decades and have seen the up's and down's. We have weathered bad times and enjoyed good times by putting our client needs ahead of ours. We continue to do the same thing.



We take great care of our Talent Acquisition and Administrative staff who in turn put in their best work to fulfill our Consultant and Client needs.



Our Clients and our Consultants have a variety of choices and we are thankful that they have chosen Keylent.


Careers
About_Company_OneAbout_Company_Two
Create job alert
Set job alertNever miss an opportunity! Create an alert based on the job you applied for.

Similar Jobs

Dallas, Texas

3d ago

Easy Apply

Full-time, Third Party

Depends on Experience

Dallas, Texas

9d ago

Easy Apply

Contract

Depends on Experience

Remote or Dallas, Texas

7d ago

Easy Apply

Full-time

Depends on Experience

Remote

Today

Easy Apply

Contract, Third Party

Depends on Experience

Search all similar jobs