Posted at: 12 May
Generative AI Solution Engineer
Company
GuidePoint Security
GuidePoint Security is a Herndon, Virginia-based B2B cybersecurity consulting firm specializing in tailored security solutions, incident response, and compliance services for commercial and federal organizations.
Remote Hiring Policy:
GuidePoint Security supports remote work and primarily hires from the U.S., with roles available in various regions including the Mid-Atlantic. Most remote positions are limited to U.S.-based candidates.
Job Type
Full-time
Allowed Applicant Locations
United States
Job Description
General Description
GuidePoint Security is seeking a skilled and security-conscious Generative AI Engineer/Architect to join our technology team. This role is pivotal in building and scaling our generative AI capabilities. You will be responsible for the design, implementation, security, and operational management of generative AI solutions that will be leveraged internally. You will work closely with IT infrastructure and information security teams to ensure all implementations adhere to enterprise security standards, company policies, and industry best practices. This role offers the exciting opportunity to contribute to our AI strategy and potentially expand into more advanced ML implementations as the program and capabilities mature.
The Generative AI Solution Engineer/Architect will be required to demonstrate patience, self-motivation, and strong business/ financial acumen.
Roles and Responsibilities
Design & Implement GenAI Solutions: Help design, build, deploy, and manage secure and scalable generative AI solutions using both SaaS and local resources.
Enable Technical Users: Provide guidance, best practices, and support to internal teams utilizing SaaS AI services to build custom applications.
Data Integration: Design and assist with implementing secure data connectors and ingestion pipelines to allow enterprise AI services to query internal organizational data sources (e.g., knowledge bases, document repositories).
Security & Compliance: Collaborate closely with Information Security and IT teams to define security requirements, implement robust security controls (IAM policies, network configurations, data encryption, logging, monitoring), conduct security reviews, and ensure compliance with internal policies and relevant regulations for all AI deployments.
Operational Excellence: Assist as needed in establishing monitoring and alerting for applicable AI solutions and help develop operational procedures for deployed AI services. Optimize for performance, scalability, and cost-effectiveness.
Collaboration: Act as a liaison between business stakeholders, technical teams, IT operations, and information security regarding generative AI initiatives.
Stay Current: Keep abreast of the latest developments in SaaS AI/ML services, generative AI trends, and cloud security best practices.
Documentation: Create and maintain clear technical documentation, architecture diagrams, and security guidelines.
Future Planning: Contribute to the strategic roadmap for AI/ML within the organization.
Facilitate Education: Assist with maintaining, developing, and presenting educational material to internal users about effective and safe usage of AI.
Required Experience
5+ years of experience in cloud engineering and/or solutions architecture with a significant focus on AWS
Deep hands-on experience specifically implementing, managing, and supporting AI solutions using AWS services within an enterprise context
Strong understanding and practical experience with core AWS services (e.g., IAM, DynamoDB, S3, Lambda, CloudWatch, CloudTrail)
Proven experience designing and implementing secure, cloud-based AI solutions on AWS, including familiarity with AWS security services (e.g., Guardrails, KMS, Secrets Manager)
Enterprise-level experience with AI-focused AWS services such as Bedrock, SageMaker, Transcribe, Rekognition, and Q Business
Demonstrated experience working collaboratively with IT Operations and Information Security teams on cloud deployments and security reviews
Proficiency in at least one relevant programming language, preferably Python
Solid understanding of generative AI concepts, Large Language Models (LLMs), prompt engineering, and foundational AI/ML principles
Excellent problem-solving skills, the ability to troubleshoot complex technical issues, and the patience to come up with creative solutions that work for all stakeholders within policy boundaries
Strong written and oral communication and interpersonal skills, with the ability to explain complex technical concepts to both technical and non-technical audiences
Demonstrated experience applying security principles to AI implementations, including data protection, access controls, and threat modeling for AI systems
Understanding of AI-specific security challenges including prompt injection, data poisoning, and model extraction attacks
Preferred Qualifications
AWS Certified Cloud Practitioner
AWS Certified AI Practitioner
AWS Certified Solutions Architect
AWS Certified Machine Learning Engineer
Understanding or experience with model fine-tuning techniques
Experience with Infrastructure as Code (IaC) tools like AWS CloudFormation, Terraform, OpenTofu, or equivalent technologies
Familiarity with MLOps principles and practices
Experience integrating AI services with enterprise applications and data warehouses
Experience designing and implementing agentic AI architectures that can autonomously perform complex workflows while maintaining appropriate security boundaries and human oversight
Familiarity with MCP client/server architecture and the associated security risks
Travel Requirements
Any travel/onsite requirements as needed