Arcfield
Software Engineer – Backend Software Dev / Cloud Dev
Arcfield, Home Creek, Virginia, United States
Software Engineer – Backend Software Dev / Cloud Dev (Arcfield)
Join to apply for the Software Engineer – Backend Software Dev / Cloud Dev role at Arcfield.
Overview STC, a wholly owned subsidiary of Arcfield, was founded to do systems engineering differently. As an industry-leading solutions provider in digital engineering and model-based systems engineering (MBSE), the company delivers MBSE-as-a-Service, integrated digital engineering environment deployments, training and consulting to both commercial and public sector customers. Every day, STC’s team of expert engineers are unleashing the power of digital engineering to navigate complexity, increase understanding and inform decision‑making. Learn more at stc.arcfield.com.
Responsibilities This position is for Strategic Technology Consulting (STC), an Arcfield Company. In this role, the candidate will be a key contributor to a fast‑paced cross‑functional software and AI team developing cloud‑based AI applications. They will collaborate closely with front‑end, back‑end, and AI/ML pipeline engineers to design, build, and deploy scalable solutions. The candidate will work closely with stakeholders to understand use cases and needs. He or she will take ownership of translating requirements into well‑defined and scalable software architectures, integrating AI services and cloud infrastructure. They will participate in agile workflows, contribute to continuous improvement, and ensure seamless and secure delivery of products to various environments. Occasionally customer‑facing demonstrations of software technology are required. Additional duties as assigned.
Roles and Responsibilities
The candidate should be motivated and success oriented. He or she should exhibit expertise in:
AI Application Design & Development – Design, develop and integrate cloud‑based applications leveraging Azure and AWS AI/ML services (e.g., OpenAI, Bedrock), and related APIs, with a focus on generative AI models and large language model integration.
Software Cloud and Database Deployment and Management – Package, release, and deploy AI‑enabled applications into secure, scalable environment (Gov Cloud, Air‑gapped).
Collaboration with Data/ML Teams – Work closely with data scientists and ML engineers to provision scalable cloud hosting environments.
Integration – Connect AI services with front‑end applications, back‑end systems, and client APIs to deliver end‑to‑end solutions.
Problem Solving & Innovation – Identify challenges in AI service integration and propose creative, practical solutions.
Stakeholder Engagement – Communicate technical progress, risks, and solutions clearly with stakeholders and team members.
Continuous Improvement – Stay current with evolving Azure and AWS AI services, bringing forward best practices and new capabilities.
Qualifications Required
BS 8‑10, MS 6‑8, PhD 3‑5
Must be able to obtain and maintain a Secret Clearance
Technology and Tools
Software Engineering (Java, Python)
Graph‑Based/Data Science Skills (PyGraph, Pydantic)
Familiarity with cloud security frameworks and compliance requirements (e.g., NIST, DoD STIGs)
Proficiency with infrastructure‑as‑code tools (Terraform, Ansible, CloudFormation) for controlled deployments.
AI/MLOps – (Azure AI Studio; AWS Sagemaker, Kubeflow, etc)
Familiarity with LLM APIs (OpenAI API, AWS Bedrock/boto)
Experience with modern LLM integration methods and applicable tools (LlamaIndex/LangChain):
Orchestration frameworks (RAG, Agents, MCP, etc)
Retrieval (Vector Search, BM25, Hierarchical, etc)
Experience with Software Development lifecycle practices and automations (Pipeline design, management, Git/GitOps, CI/CD, Version Control, Testing)
Experience with Infrastructure as Code (AWS CloudFormation, Azure Arm Templates, Terraform)
Experience implementing authentication/authorization and role‑based access controls (RBAC)
Cloud‑native technologies and development (Python/FastAPI, SQL, Redis)
Command‑line (CLI) Proficiency (Bash, PowerShell, etc)
Experience integrating software via RESTful APIs, Java APIs, WebSockets, Async Message Queues (Pub/Sub, etc)
Preferred Technologies
Software application design and development using UML or SysML
Performance Optimization (server‑side rendering, code splitting, CSS modules)
Systems Engineering processes, methods, and tools as applied to systems lifecycles
Digital Engineering methodologies and tooling
Compensation Min: $93,262.13 Max: $224,107.51
Arcfield invests in its employees beyond just compensation. Arcfield’s benefits offerings include, dependent upon position, Health Insurance, Life Insurance, Paid Time Off, Holiday Pay, Short Term and Long‑Term Disability, Retirement and Savings, Learning and Development opportunities, wellness programs as well as other optional benefit elections.
EEO Statement We are an equal opportunity employer and federal government contractor. We do not discriminate against any employee or applicant for employment as protected by law.
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Overview STC, a wholly owned subsidiary of Arcfield, was founded to do systems engineering differently. As an industry-leading solutions provider in digital engineering and model-based systems engineering (MBSE), the company delivers MBSE-as-a-Service, integrated digital engineering environment deployments, training and consulting to both commercial and public sector customers. Every day, STC’s team of expert engineers are unleashing the power of digital engineering to navigate complexity, increase understanding and inform decision‑making. Learn more at stc.arcfield.com.
Responsibilities This position is for Strategic Technology Consulting (STC), an Arcfield Company. In this role, the candidate will be a key contributor to a fast‑paced cross‑functional software and AI team developing cloud‑based AI applications. They will collaborate closely with front‑end, back‑end, and AI/ML pipeline engineers to design, build, and deploy scalable solutions. The candidate will work closely with stakeholders to understand use cases and needs. He or she will take ownership of translating requirements into well‑defined and scalable software architectures, integrating AI services and cloud infrastructure. They will participate in agile workflows, contribute to continuous improvement, and ensure seamless and secure delivery of products to various environments. Occasionally customer‑facing demonstrations of software technology are required. Additional duties as assigned.
Roles and Responsibilities
The candidate should be motivated and success oriented. He or she should exhibit expertise in:
AI Application Design & Development – Design, develop and integrate cloud‑based applications leveraging Azure and AWS AI/ML services (e.g., OpenAI, Bedrock), and related APIs, with a focus on generative AI models and large language model integration.
Software Cloud and Database Deployment and Management – Package, release, and deploy AI‑enabled applications into secure, scalable environment (Gov Cloud, Air‑gapped).
Collaboration with Data/ML Teams – Work closely with data scientists and ML engineers to provision scalable cloud hosting environments.
Integration – Connect AI services with front‑end applications, back‑end systems, and client APIs to deliver end‑to‑end solutions.
Problem Solving & Innovation – Identify challenges in AI service integration and propose creative, practical solutions.
Stakeholder Engagement – Communicate technical progress, risks, and solutions clearly with stakeholders and team members.
Continuous Improvement – Stay current with evolving Azure and AWS AI services, bringing forward best practices and new capabilities.
Qualifications Required
BS 8‑10, MS 6‑8, PhD 3‑5
Must be able to obtain and maintain a Secret Clearance
Technology and Tools
Software Engineering (Java, Python)
Graph‑Based/Data Science Skills (PyGraph, Pydantic)
Familiarity with cloud security frameworks and compliance requirements (e.g., NIST, DoD STIGs)
Proficiency with infrastructure‑as‑code tools (Terraform, Ansible, CloudFormation) for controlled deployments.
AI/MLOps – (Azure AI Studio; AWS Sagemaker, Kubeflow, etc)
Familiarity with LLM APIs (OpenAI API, AWS Bedrock/boto)
Experience with modern LLM integration methods and applicable tools (LlamaIndex/LangChain):
Orchestration frameworks (RAG, Agents, MCP, etc)
Retrieval (Vector Search, BM25, Hierarchical, etc)
Experience with Software Development lifecycle practices and automations (Pipeline design, management, Git/GitOps, CI/CD, Version Control, Testing)
Experience with Infrastructure as Code (AWS CloudFormation, Azure Arm Templates, Terraform)
Experience implementing authentication/authorization and role‑based access controls (RBAC)
Cloud‑native technologies and development (Python/FastAPI, SQL, Redis)
Command‑line (CLI) Proficiency (Bash, PowerShell, etc)
Experience integrating software via RESTful APIs, Java APIs, WebSockets, Async Message Queues (Pub/Sub, etc)
Preferred Technologies
Software application design and development using UML or SysML
Performance Optimization (server‑side rendering, code splitting, CSS modules)
Systems Engineering processes, methods, and tools as applied to systems lifecycles
Digital Engineering methodologies and tooling
Compensation Min: $93,262.13 Max: $224,107.51
Arcfield invests in its employees beyond just compensation. Arcfield’s benefits offerings include, dependent upon position, Health Insurance, Life Insurance, Paid Time Off, Holiday Pay, Short Term and Long‑Term Disability, Retirement and Savings, Learning and Development opportunities, wellness programs as well as other optional benefit elections.
EEO Statement We are an equal opportunity employer and federal government contractor. We do not discriminate against any employee or applicant for employment as protected by law.
#J-18808-Ljbffr