1

Contract Knowledge Graph Software Engineer Jobs in Georgia

Software Roles

Atlanta, GA · Remote

$117.80K - $155.30K/yr

Streaming systems and SQL/NoSQL/Graph databases. * CI/CD, Git, DevOps practices. * Observability ... Strong ML/LLM knowledge (transformers, attention mechanisms). * Prompt engineering and model ...

Senior Principal AI/ML Engineer

Atlanta, GA · On-site

$120.70K - $166.40K/yr

Enterprise Knowledge Graph & Ontology * Contribute to the design and maintenance of the enterprise knowledge graph, including schema design, entity resolution, and relationship modeling. * Lead ...

AI/ML Software Engineer

Atlanta, GA · Remote

$140K - $220K/yr

AI/ML Software Engineer ID 2026-6949 Category Engineering Type Regular Full-Time Location ... Familiarity with databases such as PostgreSQL, MongoDB, or graph databases. * Knowledge of ...

... and core graph-based software algorithms. You will work in roles such as full-stack development, algorithm development, cyber security, infrastructure engineering, UX/HCI or analytics ...

Knowledge Graph and Semantic Layer (primary focus) * Lead the design and evolution of the knowledge ... Define data contracts, attributes, and metadata that policy engines can reason over for attribute ...

Software Engineer III (AI)

Alpharetta, GA · On-site

$56.25 - $75.50/hr

AI Software Engineer III We are CirrusLabs. Our vision is to become the world's most sought-after ... ML, AI, Python, Graph databases, background as a Developer ideally with both frontend and backend ...

Neo4J Graph Database Engineer

Atlanta, GA

$110.10K - $132.20K/yr

Neo4J Graph Database Engineer Choosing Capgemini means choosing a company where you will be ... Experienced Professionals Contract Type: Permanent Location: Atlanta, GA, US Brand: Capgemini ...

next page

Showing results 1-20

Contract Knowledge Graph Software Engineer information

What are the key skills and qualifications needed to thrive as a Contract Knowledge Graph Software Engineer, and why are they important?

To thrive as a Contract Knowledge Graph Software Engineer, you need a strong background in computer science, proficiency in graph databases (such as Neo4j or Amazon Neptune), and experience with knowledge representation and data modeling. Familiarity with programming languages like Python or Java, as well as tools for semantic web technologies (RDF, SPARQL), is typically required. Strong problem-solving skills, adaptability, and effective collaboration are essential soft skills in this role. These competencies ensure efficient design and implementation of complex knowledge graphs, enabling organizations to unlock valuable insights from their data.

How does a Contract Knowledge Graph Software Engineer typically collaborate with data scientists and domain experts during a project?

As a Contract Knowledge Graph Software Engineer, you’ll often work closely with data scientists and domain experts to ensure that the knowledge graph accurately represents the underlying data and business logic. Collaboration usually involves regular meetings to clarify requirements, discuss data models, and review results. You may be tasked with translating complex domain concepts into graph structures, while also providing feedback on data quality and integration challenges. This cross-functional teamwork ensures that the final product meets both technical standards and business needs.

What is a Contract Knowledge Graph Software Engineer?

A Contract Knowledge Graph Software Engineer is a professional who specializes in designing, developing, and maintaining knowledge graphs on a contract basis. Knowledge graphs are data structures that represent relationships between entities, enabling more effective data integration and semantic search. These engineers often work with graph databases, semantic web technologies, and ontologies to help organizations manage and leverage complex data. Their contract role means they are typically hired for specific projects or fixed periods rather than as permanent employees.

What is the difference between Contract Knowledge Graph Software Engineer vs Contract Data Engineer?

AspectContract Knowledge Graph Software EngineerContract Data Engineer
Required CredentialsBachelor's in CS or related, knowledge of graph databases, programming skillsBachelor's in CS, experience with data pipelines, SQL, and cloud platforms
Work EnvironmentTech companies, consulting firms, project-based rolesData-focused teams, cloud environments, analytics projects
Industry UsageAI, semantic web, knowledge managementData warehousing, big data, analytics

The Contract Knowledge Graph Software Engineer primarily focuses on developing and maintaining knowledge graphs using graph databases and semantic technologies, while the Contract Data Engineer concentrates on building data pipelines, managing large datasets, and supporting analytics. Both roles require strong programming skills and are often found in tech-driven industries, but they serve different core functions within data and knowledge management ecosystems.

What are the most commonly searched types of Knowledge Graph Software Engineer jobs in Georgia? The most popular types of Knowledge Graph Software Engineer jobs in Georgia are:
Principal Software Architect, Buliding Ontology

Principal Software Architect, Buliding Ontology

Honeywell

Atlanta, GA

Full-time

Posted 18 days ago


Honeywell rating

8.3

Company rating: 8.3 out of 10

Based on 177 frontline employees who took The Breakroom Quiz

63rd of 514 rated manufacturers


Job description

We are looking for a Senior Ontologist to lead the design, development, and operationalization of buildings ontologies and taxonomies that power data interoperability, analytics, and intelligent systems across connected buildings products.

This role is hands-on and strategic. You will work at the intersection of domain modeling, semantic technologies, and standards, shaping how complex data is represented, connected, and consumed at scale.

You will collaborate closely with domain experts, data engineers, platform architects, and product teams to ensure that semantic models are accurate, extensible, and aligned with industry standards and real-world operational needs.

Honeywell helps organizations solve the world's most complex challenges in automation, the future of aviation and energy transition. As a trusted partner, we provide actionable solutions and innovation through our Aerospace Technologies, Building Automation, Energy and Sustainability Solutions, and Industrial Automation business segments - powered by our Honeywell Forge software - that help make the world smarter, safer and more sustainable.

Required Qualifications

Core Expertise

  • Deep, hands-on experience in ontology engineering and taxonomy design for industrial or building domains.
  • Strong working knowledge of Brick Schema, Project Haystack, and IFC (not just theoretical familiarity).
  • Proven experience building real-world, production-grade semantic models.
  • Understanding of Large Language model along with structured knowledge of graphs for semantic backbone creation

Technical Skills

  • Expert-level proficiency in OWL 2, RDF, RDFS, SPARQL, SHACL, SKOS, JSON-LD, and Turtle.Semantic Web Stack:
  • Deep expertise in at least two of: Neo4j, Amazon Neptune, Stardog, GraphDB, Virtuoso, Ontotext, TigerGraph.Graph Databases:
  • Familiarity with semantic querying (e.g., SPARQL, CIPHER) and metadata-driven architectures.
  • Familiarity with cloud data stacks (AWS, GCP, Azure), Apache Kafka, dbt, Databricks, or Snowflake.Data Platforms:
  • Experience with OWL reasoners (Pellet, HermiT, FaCT++) and rule-based systems (SWRL, RIF).Reasoning Engines:
  • Familiarity with knowledge graph platforms like Palantir Foundry, Microsoft Fabric, or Google Enterprise Knowledge Graph.
  • Ability to collaborate effectively with software and data engineers.
  • Understanding of how industrial systems generate, structure, and consume data.
  • Experience with digital twins, asset modeling and systems engineering.
  • Experience designing ontology governance frameworks on a scale.
  • Ability to evaluate and integrate open vs proprietary semantic models.
  • Prior experience in a platform, product, or enterprise-scale environment.
  • Experience working in a fast-paced technology environment focused on delivering a world class product within an agile methodology utilizing latest technology frameworks

Key Responsibilities

Ontology & Semantic Model Development

  • Design, build, and maintain industrial ontologies, taxonomies, and knowledge models covering assets, spaces, processes, and operational data.
  • Develop and extend models aligned with industry standards such as:
    • Brick Schema
    • Project Haystack
    • ASHRAE 233P
    • IFC (Industry Foundation Classes)
    • Related building, utilities, energy, or asset-management ontologies
  • Define clear concept hierarchies, relationships, constraints, and naming conventions.
  • Conduct ontology alignment and integration with external knowledge bases and domain-specific ontologies.

Standards & Interoperability

  • Map, align, and reconcile concepts across multiple industry schemas and customer-specific models.
  • Design semantic alignment strategies between heterogeneous data sources (BMS, IoT, SCADA, CMMS, ERP, digital twins).
  • Ensure models support interoperability, extensibility, and backward compatibility.
  • Leverage large language models (e.g., GPT-4, Claude, LLaMA, Mistral) and NLP pipelines to automate ontology population, entity extraction, and relation classification

Applied Semantics & Engineering Collaboration

  • Work closely with data engineering and platform teams to:
    • Operationalize ontologies in production systems
    • Support semantic querying, reasoning, and metadata-driven pipelines
  • Define best practices for ontology versioning, governance, and lifecycle management.
  • Translate abstract semantic models into practical, implementable artifacts.

Architecture Leadership & Strategy

  • Define the long-term technical vision and roadmap for the enterprise semantic and knowledge graph platform.
  • Establish architectural standards, design patterns, and reference architectures for semantic data integration across business units.
  • Partner with data engineering, ML, product, and business teams to translate domain requirements into graph and semantic models.
  • Evaluate and recommend emerging technologies, tools, and open standards in the knowledge graph and AI/LLM landscape.

Represent the organization in external technical communities, standards bodies, and industry working groups.


What Honeywell employees say

Pay

Benefits

Hours and flexibility

Workplace

Get the full story on Breakroom


Honeywell logo

About Honeywell

Sourced by ZipRecruiter

Honeywell is charging into the Industrial IoT revolution with the establishment of Honeywell Connected Enterprise (HCE), building on our heritage of invention and deep, on-the-ground industry expertise. HCE is the leading industrial disruptor, building and connecting software solutions to streamline and centralize the assets, people and processes that help our customers make smarter, more accurate business decisions. Moving at the speed of software, we are creating, innovating and delivering solutions fast, challenging the way things have always been done, piloting new ways for all of us to work, and expecting our successes to set new standards for our customers and for Honeywell. The Chief Architect for Honeywell Connected Enterprise will lead a team of architects and system engineers responsible for the design of applications and infrastructure that deliver high value outcomes for customers in industrial, buildings, distribution centers, and aerospace vertical markets. The Chief Architect will work directly with leadership, development teams, and offering management to design well integrated solutions that utilize software platforming to encourage reuse and speed to market.

Industry

Furniture manufacturing

Company size

10,000+ Employees

Headquarters location

Charlotte, NC, US

Year founded

1906