Lead the buildout of a new enterprise data platform, designing infrastructure, pipelines, and storage while ensuring data governance and quality.
The Role
We're looking for a product-minded Senior Data Engineer to lead the buildout of a new, graph-backed enterprise data platform at Fusion.
This is not a maintenance role. You will architect and own a new data platform from the ground up-designing the ingestion layer, graph and relational storage, entity resolution pipelines, and APIs that unify resilience data across customers, systems, and cloud environments.
You will define how data is ingested, resolved, modeled as a graph, governed, and exposed across Fusion's ecosystem. This platform will power dependency analysis, recovery modeling, predictive intelligence, and a new generation of resilience products.
This is a high-ownership opportunity for someone who wants to build something foundational, work with graph and network data structures at scale, and create a platform that becomes core to Fusion's long-term strategy.
Key Responsibilities • Architect and build Fusion's next-generation data platform from the ground up, including a graph database layer, relational storage, and data lake components.• Design and implement scalable ETL/ELT pipelines to ingest and transform data from customer environments, internal systems, and third-party platforms using managed connector frameworks.• Build and maintain entity resolution pipelines that match, merge, and link records across disparate sources into a unified graph model.• Design and implement graph data models that represent operational dependencies, recovery sequences, and organizational relationships-supporting traversal queries across complex, multi-hop networks.• Develop temporal and bitemporal data models that capture how entities and relationships change over time, enabling historical replay and audit-grade versioning.• Establish best practices for data governance, quality, observability, lineage, and security across the platform.• Build backend services and APIs that expose graph queries, entity lookups, and data capabilities to downstream applications and ML systems.• Support containerized deployment across both managed cloud and customer-hosted (reverse SaaS) environments.• Partner with product and engineering leadership to shape the long-term data platform roadmap.
Knowledge, Skills, and Abilities • Strong SQL expertise with experience designing performant data models and production-grade transformations.• Experience with graph databases or network-oriented data problems-e.g., dependency mapping, supply chain graphs, knowledge graphs, social network analysis, or similar domains where relationships between entities are central to the data model.• Familiarity with graph query languages or traversal patterns (e.g., Gremlin, Cypher, SPARQL, or recursive SQL) and an understanding of when graph representations outperform relational models.• Experience with entity resolution, record linkage, or deduplication at scale-whether using probabilistic matching frameworks, deterministic rules, or ML-assisted approaches.• Experience building data lakes, warehouses, and distributed data systems from the
ground up.• Strong understanding of ETL/ELT patterns, orchestration (e.g., Airflow, Dagster, dbt, or similar), and pipeline reliability.• Experience with open-source or self-hosted data infrastructure components and a pragmatic sense for build-vs-buy trade-offs.• Experience designing and implementing enterprise system integrations, connectors, and APIs.• Strong engineering fundamentals with focus on scalability, performance, monitoring, and security.• Familiarity with containerized deployments and orchestration (Docker, Kubernetes, Helm, or similar) (bonus).• Experience with temporal or bitemporal data modeling patterns (bonus).• Experience with Salesforce or ServiceNow data models and integrations (bonus).• Strong Python or Java skills for building backend services (bonus).• Familiarity with AI-assisted development tools (e.g., Copilot, Cursor, Claude Code, or similar) and comfort using them to accelerate engineering workflows.• Product-oriented mindset with the ability to make pragmatic architectural decisions in ambiguous, early-stage environments
Qualifications (Education and Experience) • Bachelor's degree in Computer Science, Engineering, Information Systems, or a related field.• 5+ years of experience in data engineering, backend data systems, or platform engineering roles.• Experience building or significantly expanding a data platform or data infrastructure in a production environment.• Experience working with graph, network, or highly relational data structures in a professional or academic setting.• Experience working in cloud-native environments (Azure preferred).• Experience designing enterprise-grade integrations and connectors.• Experience with entity resolution or record-matching techniques (nice to have).• Experience with containerized deployments (Docker, Kubernetes) (nice to have).
Milestones for the First Six Months
In one month, you will:
- Complete onboarding and gain deep familiarity with Fusion's products, data strategy, and long-term platform vision
- Assess the current state of data infrastructure and evaluate graph database and entity resolution options against platform requirements
- Align with product and engineering leadership on platform scope and priorities
In three months, you will:
- Deliver the first foundational components of the new data platform-core graph storage layer, initial ingestion pipelines, and entity resolution workflow
- Implement initial ETL/ELT workflows and at least one production-grade system connector
- Establish standards for graph data modeling, governance, and observability
In six months, you will:
- Own and deliver the first production-ready version of Fusion's new data platform, including graph traversal APIs and entity resolution
- Have multiple ingestion pipelines and connectors operating reliably in production
- Serve as the architectural owner of the platform, driving roadmap and technical direction
- Propose and lead the next phase of platform expansion-temporal modeling, advanced graph analytics, and ML feature pipelines
Compensation & Benefits
The annual base salary range for this position is $135,000-$155,000, depending on the candidate's experience, qualifications, and relevant skill set. The position is also eligible for an annual bonus. Fusion offers a comprehensive benefits package including medical, dental, vision, and a 401(k) plan.
Disclaimers
Fusion is an Equal Opportunity Employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, disability, age, pregnancy, military service or discharge status, genetic information, sex, sexual orientation, gender identity, or national origin. Nothing in this job posting should be construed as an offer or guarantee of employment.
We're looking for a product-minded Senior Data Engineer to lead the buildout of a new, graph-backed enterprise data platform at Fusion.
This is not a maintenance role. You will architect and own a new data platform from the ground up-designing the ingestion layer, graph and relational storage, entity resolution pipelines, and APIs that unify resilience data across customers, systems, and cloud environments.
You will define how data is ingested, resolved, modeled as a graph, governed, and exposed across Fusion's ecosystem. This platform will power dependency analysis, recovery modeling, predictive intelligence, and a new generation of resilience products.
This is a high-ownership opportunity for someone who wants to build something foundational, work with graph and network data structures at scale, and create a platform that becomes core to Fusion's long-term strategy.
Key Responsibilities • Architect and build Fusion's next-generation data platform from the ground up, including a graph database layer, relational storage, and data lake components.• Design and implement scalable ETL/ELT pipelines to ingest and transform data from customer environments, internal systems, and third-party platforms using managed connector frameworks.• Build and maintain entity resolution pipelines that match, merge, and link records across disparate sources into a unified graph model.• Design and implement graph data models that represent operational dependencies, recovery sequences, and organizational relationships-supporting traversal queries across complex, multi-hop networks.• Develop temporal and bitemporal data models that capture how entities and relationships change over time, enabling historical replay and audit-grade versioning.• Establish best practices for data governance, quality, observability, lineage, and security across the platform.• Build backend services and APIs that expose graph queries, entity lookups, and data capabilities to downstream applications and ML systems.• Support containerized deployment across both managed cloud and customer-hosted (reverse SaaS) environments.• Partner with product and engineering leadership to shape the long-term data platform roadmap.
Knowledge, Skills, and Abilities • Strong SQL expertise with experience designing performant data models and production-grade transformations.• Experience with graph databases or network-oriented data problems-e.g., dependency mapping, supply chain graphs, knowledge graphs, social network analysis, or similar domains where relationships between entities are central to the data model.• Familiarity with graph query languages or traversal patterns (e.g., Gremlin, Cypher, SPARQL, or recursive SQL) and an understanding of when graph representations outperform relational models.• Experience with entity resolution, record linkage, or deduplication at scale-whether using probabilistic matching frameworks, deterministic rules, or ML-assisted approaches.• Experience building data lakes, warehouses, and distributed data systems from the
ground up.• Strong understanding of ETL/ELT patterns, orchestration (e.g., Airflow, Dagster, dbt, or similar), and pipeline reliability.• Experience with open-source or self-hosted data infrastructure components and a pragmatic sense for build-vs-buy trade-offs.• Experience designing and implementing enterprise system integrations, connectors, and APIs.• Strong engineering fundamentals with focus on scalability, performance, monitoring, and security.• Familiarity with containerized deployments and orchestration (Docker, Kubernetes, Helm, or similar) (bonus).• Experience with temporal or bitemporal data modeling patterns (bonus).• Experience with Salesforce or ServiceNow data models and integrations (bonus).• Strong Python or Java skills for building backend services (bonus).• Familiarity with AI-assisted development tools (e.g., Copilot, Cursor, Claude Code, or similar) and comfort using them to accelerate engineering workflows.• Product-oriented mindset with the ability to make pragmatic architectural decisions in ambiguous, early-stage environments
Qualifications (Education and Experience) • Bachelor's degree in Computer Science, Engineering, Information Systems, or a related field.• 5+ years of experience in data engineering, backend data systems, or platform engineering roles.• Experience building or significantly expanding a data platform or data infrastructure in a production environment.• Experience working with graph, network, or highly relational data structures in a professional or academic setting.• Experience working in cloud-native environments (Azure preferred).• Experience designing enterprise-grade integrations and connectors.• Experience with entity resolution or record-matching techniques (nice to have).• Experience with containerized deployments (Docker, Kubernetes) (nice to have).
Milestones for the First Six Months
In one month, you will:
- Complete onboarding and gain deep familiarity with Fusion's products, data strategy, and long-term platform vision
- Assess the current state of data infrastructure and evaluate graph database and entity resolution options against platform requirements
- Align with product and engineering leadership on platform scope and priorities
In three months, you will:
- Deliver the first foundational components of the new data platform-core graph storage layer, initial ingestion pipelines, and entity resolution workflow
- Implement initial ETL/ELT workflows and at least one production-grade system connector
- Establish standards for graph data modeling, governance, and observability
In six months, you will:
- Own and deliver the first production-ready version of Fusion's new data platform, including graph traversal APIs and entity resolution
- Have multiple ingestion pipelines and connectors operating reliably in production
- Serve as the architectural owner of the platform, driving roadmap and technical direction
- Propose and lead the next phase of platform expansion-temporal modeling, advanced graph analytics, and ML feature pipelines
Compensation & Benefits
The annual base salary range for this position is $135,000-$155,000, depending on the candidate's experience, qualifications, and relevant skill set. The position is also eligible for an annual bonus. Fusion offers a comprehensive benefits package including medical, dental, vision, and a 401(k) plan.
Disclaimers
Fusion is an Equal Opportunity Employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, disability, age, pregnancy, military service or discharge status, genetic information, sex, sexual orientation, gender identity, or national origin. Nothing in this job posting should be construed as an offer or guarantee of employment.
Similar Jobs at Fusion Risk Management
Professional Services • Software
The Staff Architect will define and scale Fusion's platform and integration strategies, ensuring scalability, security, and adaptability for enterprise SaaS workloads, while providing technical leadership across teams.
Top Skills:
APIsCloud-Native DesignEvent-Driven SystemsIdentity And Access ManagementKafkaMicroservicesAzureOauthRestSaaSSso
Professional Services • Software
The Vice President of Product Management at Fusion Risk Management leads the product lifecycle, builds a world-class team, and champions AI adoption to drive growth and market leadership.
Top Skills:
AISaaS
Professional Services • Software
The role involves managing AI agents for software delivery, crafting specifications, and reviewing AI-generated outputs to ensure quality and alignment with product requirements.
Top Skills:
Ai AgentsCi/Cd PipelinesAzureSalesforceSoftware EngineeringVersion Control
What you need to know about the Charlotte Tech Scene
Ranked among the hottest tech cities in 2024 by CompTIA, Charlotte is quickly cementing its place as a major U.S. tech hub. Home to more than 90,000 tech workers, the city’s ecosystem is primed for continued growth, fueled by billions in annual funding from heavyweights like Microsoft and RevTech Labs, which has created thousands of fintech jobs and made the city a go-to for tech pros looking for their next big opportunity.
Key Facts About Charlotte Tech
- Number of Tech Workers: 90,859; 6.5% of overall workforce (2024 CompTIA survey)
- Major Tech Employers: Lowe’s, Bank of America, TIAA, Microsoft, Honeywell
- Key Industries: Fintech, artificial intelligence, cybersecurity, cloud computing, e-commerce
- Funding Landscape: $3.1 billion in venture capital funding in 2024 (CED)
- Notable Investors: Microsoft, Google, Falfurrias Management Partners, RevTech Labs Foundation
- Research Centers and Universities: University of North Carolina at Charlotte, Northeastern University, North Carolina Research Campus

