Join the Future of Fundraising at Givzey!
Givzey is one of the fastest-growing and most innovative technology companies serving the nonprofit sector, on a mission to unlock more generosity through AI-powered donor engagement. At the center of that innovation is Version2.ai, the world’s first Autonomous AI fundraisers—Virtual Engagement Officers (VEOs)—designed to independently manage donor engagement and generate revenue. Unlike traditional AI tools that simply make staff more efficient, VEOs expand fundraising capacity by acting as AI workers that operate donor portfolios, build relationships, and secure gifts on their own. In just three years, Givzey’s platform has already helped organizations raise $10M+ through autonomous engagement, including individual gifts as large as $100,000. Alongside this breakthrough technology, Givzey’s Gift Agreement Platform modernizes the multi-year giving process, enabling nonprofits to secure, manage, and forecast commitments with unprecedented ease.
About the Role
We’re hiring a Senior Applied AI Engineer to build production AI systems that real customers depend on.
This role is for an experienced software engineer who also understands modern AI systems. You should be comfortable building with LLMs, agents, retrieval pipelines, and workflow orchestration, but just as comfortable thinking about system design, reliability, testing, deployment, debugging, and long-term maintainability.
You’ll work on everything from agent workflows and retrieval systems to backend APIs, evaluation tooling, observability, and production infrastructure.
We care a lot about engineering quality. That means building systems that are understandable, testable, observable, and reliable in production. We are looking for someone who can help raise the engineering bar around AI development and bring strong technical judgment to a fast-moving environment.
What You’ll Work On- Agentic AI workflows that automate complex business processes
- AI-powered product experiences that combine LLMs, retrieval, backend systems, and human review workflows
- Retrieval systems that connect AI agents to organization-specific knowledge and data
- Backend services and APIs that allow AI systems to safely interact with internal product workflows and data
- Prompting, evaluation, and observability systems that improve the quality and consistency of generated outputs
- Monitoring and debugging infrastructure for production AI systems
- Human-in-the-loop review systems that combine automation with expert oversight
- Internal AI tooling, orchestration frameworks, and operational infrastructure
- Design, build, and maintain production-grade AI systems and customer-facing AI features
- Develop agentic workflows using LLMs, retrieval systems, tools, APIs, and backend services
- Build backend services, orchestration systems, automation, and infrastructure supporting AI-powered workflows
- Design and implement retrieval-augmented generation (RAG) systems, including ingestion pipelines, embeddings, semantic retrieval, and context assembly
- Integrate foundation models through platforms such as Amazon Bedrock or Agent Core
- Develop robust prompting strategies, structured outputs, guardrails, and workflow logic for production use cases
- Implement evaluation systems for prompts, agents, and workflows, including regression testing, trace review, golden datasets, and human QA processes
- Monitor and improve production AI systems for quality, reliability, latency, observability, and cost efficiency
- Debug AI behavior through logs, traces, evaluations, user feedback, and production telemetry
- Collaborate closely with engineering, product, operations, and customer-facing teams to turn ambiguous requirements into reliable systems
- Help establish strong engineering standards around testing, deployment, CI/CD, version control workflows, code review, and operational reliability
- Mentor and collaborate with engineers across both software and AI disciplines
- Evaluate emerging AI technologies pragmatically based on business impact, maintainability, and operational reliability
- US Citizen or authorized to work in US
- 5+ years of professional software engineering experience building production systems
- Strong proficiency in Python
- Strong backend engineering fundamentals and experience building scalable APIs, services, distributed systems, or workflow orchestration platforms
- Proven hands-on experience building and shipping AI-powered applications using LLMs, generative AI APIs, agents, retrieval systems, or related technologies in production environments
- Experience designing and implementing agentic workflows, tool-calling systems, structured outputs, prompt pipelines, or retrieval-augmented generation architectures
- Strong understanding of the practical challenges involved in production AI systems, including hallucination mitigation, evaluation, reliability, observability, latency, and cost management
- Experience building production software systems with strong engineering standards around testing, QA, deployment, monitoring, and maintainability
- Strong understanding of modern software engineering practices, including Git workflows, code review, CI/CD, automated testing, operational debugging, and release management
- Experience working with cloud infrastructure, preferably AWS
- Experience working with SQL and/or NoSQL databases
- Strong debugging, systems-thinking, and problem-solving skills
- Ability to operate effectively in fast-moving environments with evolving requirements and imperfect information
- Strong communication skills and ability to collaborate across technical and non-technical teams
- Experience with Amazon Bedrock, AWS Lambda, Step Functions, S3, DynamoDB, RDS, SQS, EventBridge, or related AWS services
- Experience with LangGraph, LangChain, DSPy, Semantic Kernel, or similar orchestration frameworks
- Experience building multi-step agents that interact with tools, APIs, external systems, or business workflows
- Experience implementing AI evaluation systems, prompt regression testing, trace analysis, or human-in-the-loop review workflows
- Experience with vector databases and semantic retrieval systems such as OpenSearch, pgvector, Pinecone, Weaviate, FAISS, or similar technologies
- Experience with observability and LLMOps tooling such as LangSmith, Arize, Helicone, Weights & Biases, OpenTelemetry, or similar platforms
- Experience balancing quality, latency, reliability, and cost tradeoffs in production AI systems
- Experience mentoring engineers and helping establish strong engineering culture and development practices
- Experience working in startup or high-ownership product environments
- Ability to think critically about edge cases, failure modes, operational risk, and long-term maintainability
- AI systems that are reliable, observable, maintainable, and trusted by both customers and internal teams
- Engineering practices that improve development velocity, operational quality, and long-term maintainability
- AI workflows that solve meaningful business problems rather than isolated demos or experiments
- Strong collaboration between product engineering and applied AI efforts
- Pragmatic adoption of AI technologies based on measurable business impact and operational reliability
Skills Required
- 5+ years of professional software engineering experience building production systems
- Strong proficiency in Python
- Experience building scalable APIs and backend services
- Proven experience building AI-powered applications using LLMs
- Strong understanding of production AI challenges
What We Do
Givzey's standalone Gift Agreement Platform empowers fundraisers to formalize and book gift commitments in seconds.
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