< More Jobs

Posted on 2026/05/23

Principal / Lead AI/ML Engineer

Genius Business Solutions (GBSI)

Dallas, TX, United States

Full-time

Job Description

About Genius Business Solutions Inc. (GBSI)

Featured in CNBC, Digital Journal, Fox News, and CIO Review, Genius Business Solutions Inc. (GBSI) is a globally recognized IT services leader with 20+ years of experience serving Fortune 500 organizations.

Our teams deliver cutting-edge solutions across industries such as Healthcare, Life Sciences, Automotive, Manufacturing, and Consumer Goods helping clients transform business processes through innovation and technology.

Position Overview

We are seeking a highly experienced Principal / Lead AI/ML Engineer with deep expertise in Knowledge Graphs, Generative AI, and enterprise-scale AI systems.

The ideal candidate will lead the architecture, development, and deployment of intelligent data platforms that transform massive volumes of unstructured enterprise data into scalable Knowledge Graphs integrated with advanced LLM-driven reasoning systems.

This role requires strong hands-on expertise in ontology engineering, entity resolution, probabilistic pattern matching, graph-based reasoning, and GenAI/LLM fine-tuning pipelines. The candidate will work on cutting-edge AI initiatives involving GraphRAG, agentic AI systems, anomaly detection, and intelligent automation at scale.

Responsibilities

Knowledge Graph & Ontology Engineering

  • Design, develop, and maintain enterprise-scale Knowledge Graphs using structured and unstructured data sources including documents, PDFs, logs, text, and web data

  • Build and evolve ontologies using RDF/OWL standards

  • Implement:

  • Entity extraction and entity linking

  • Entity resolution and disambiguation

  • Probabilistic pattern matching

  • Ontology alignment across heterogeneous datasets

  • Develop semantic models supporting reasoning, analytics, and contextual intelligence

  • Design graph schemas, inference workflows, and relationship mapping systems

Agentic Knowledge Base Enrichment

  • Develop agentic AI systems for:

  • Automated data gap identification

  • Knowledge graph enrichment and validation

  • Self-improving graph learning pipelines

  • Build AI workflows combining LLM reasoning with graph traversal and semantic inference

  • Create autonomous enrichment pipelines for continuous knowledge evolution

AI/ML & Generative AI Systems

  • Design and implement AI/ML pipelines leveraging:

  • Large Language Models (LLMs)

  • Small Language Models (SMLs)

  • Reasoning and task-specific AI models

  • Build and optimize fine-tuning pipelines including:

  • Dataset generation and curation

  • SFT, PEFT, LoRA, and adapter-based tuning

  • Model evaluation, benchmarking, and deployment

  • Implement:

  • Prompt engineering

  • Retrieval-Augmented Generation (RAG)

  • GraphRAG architectures

  • Semantic search and contextual intelligence systems

Anomaly Detection & Graph Analytics

  • Build anomaly detection systems on top of large-scale knowledge graph datasets

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

  • Semantic inconsistencies

  • Behavioral anomalies

  • Data quality issues

  • Relationship drift and graph integrity problems

Data Engineering & MLOps

  • Build scalable data pipelines for ingesting, enriching, and publishing graph data

  • Develop production-grade ML systems for:

  • Training

  • Tuning

  • Inference

  • Deployment

  • Implement robust MLOps and LLMOps frameworks including monitoring, observability, CI/CD, and drift detection

Core AI/ML

Required Skills & Expertise

  • 14+ years of hands-on AI/ML engineering experience

  • Strong expertise in:

  • Python

  • Model development and deployment

  • ML training and optimization

Extensive Experience With

  • Large Language Models (LLMs)

  • Small Language Models (SMLs)

  • Generative AI systems

  • Reasoning models

  • Semantic search and summarization workflows

Knowledge Graph Technologies

  • Hands-on expertise with:

  • Neo4j

  • GraphDB

  • RDF / OWL

  • Cypher

  • SPARQL

Strong Experience Implementing

  • Entity linking and resolution

  • Semantic search

  • Relationship inference

  • Ontology modeling

GenAI Frameworks & Tooling

  • Experience with:

  • LangChain

  • LangGraph

  • LlamaIndex

  • OpenAI / Azure OpenAI

  • Vector databases such as Pinecone and FAISS

  • Strong understanding of GraphRAG and hybrid graph + LLM systems

MLOps / LLMOps

  • Experience with:

  • MLflow

  • Azure ML

  • Datadog

  • CI/CD for AI systems

  • Observability and tracing

  • Model monitoring and drift detection

  • Experience deploying enterprise-grade AI platforms into production

Cloud & Scalability

  • Strong experience with cloud platforms:

  • Azure

  • AWS

  • Google Cloud Platform

Understanding Of

  • Distributed systems

  • Scalable AI architectures

  • Performance optimization

  • High-throughput data pipelines

Preferred Experience

Client is specifically looking for candidates with proven experience building:

  • Ontology systems from large-scale unstructured data

  • Entity resolution and probabilistic pattern matching systems

  • Agentic knowledge-base enrichment platforms

  • Automated data gap identification and enrichment workflows

  • Large-scale anomaly detection systems on top of graph data

  • Fine-tuning pipelines for reasoning models and SMLs including:

  • Dataset generation

  • Tuning

  • Evaluation

  • Production deployment

Equal Employment Opportunity

GeniusBSI is an Equal Opportunity Employer.

We believe that no one should be discriminated against because of their differences, such as age, disability, ethnicity, gender, gender identity and expression, religion, or sexual orientation.

All employment decisions are made without regard to any legally protected characteristics.

Zero to AI Engineer Program

Zero to AI Engineer

Skip the degree. Learn real-world AI skills used by AI researchers and engineers. Get certified in 8 weeks or less. No experience required.