Principal AI & Engineering Productivity Lead
A
ACCPRO International
170 - 215K PHP
Full-time
N/A
JavaReactFrontend FrameworksLLMsSaaSAI agents
Job Qualifications
The applicant or candidate must have/be:
Technical & Engineering Expertise
- 10+ years of software development experience, with strong expertise in Java; familiarity with modern frontend frameworks (React, etc.) is a plus
- Hands-on experience with SaaS product development and building production-ready AI systems
- Proven experience with LLMs, AI agents, and tools like Claude, Kiro, GitHub Copilot, or similar
- Strong understanding of modern software architecture, scalable systems, and AI integration in real-world workflows
AI & R&D Experience
- Implemented AI-driven solutions in production systems, including LLM orchestration, prompt engineering, retrieval-augmented systems, and agent-based workflows
- Skilled in evaluating new AI technologies pragmatically and translating prototypes into scalable solutions
- Strong research and experimentation mindset with focus on delivering measurable impact
KEY RESPONSIBILITIES
1) AI-Driven Engineering Acceleration (Primary Focus)
- Deliver measurable improvements in engineering productivity by designing and operationalizing AI-enabled workflows
- Drive successful adoption of enterprise AI tools or equivalent AI coding/productivity tools (e.g., Claude, Kiro, GitHub Copilot, agent-based systems) to create tangible gains in speed, quality, and automation
- Build and scale internal AI assistants that reduce development effort across code generation, refactoring, documentation, test creation, and debugging
- Achieve sustained improvements in:
> Code quality and maintainability standards
> Automated test coverage and defect reduction
> Documentation accuracy and accessibility
> API design consistency and reusability
> Deployment efficiency and release reliability
- Establish governance frameworks and best practices that ensure secure, responsible, and scalable AI adoption
- Enable engineers to confidently integrate AI into daily workflows through structured coaching, practical playbooks, and hands-on guidance
2) Product AI Innovation (Secondary Focus)
- Identify and prioritize high-impact opportunities to embed AI into Strato product features that enhance customer value and competitive differentiation
- Rapidly prototype and validate AI-driven capabilities, converting viable concepts into production-ready solutions
- Partner cross-functionally with Product, UX, and Engineering to accelerate the commercialization of validated AI innovations
- Deliver AI features that are practical, scalable, secure, and commercially viable—driving measurable customer adoption and business growth
3) AI Architecture Foundations
- Define and operationalize a long-term AI architecture strategy that supports scalable, secure, and enterprise-grade AI adoption across Strato
- Architect and validate robust AI patterns, including LLM integrations, agent-based systems, retrieval-augmented generation (RAG), internal knowledge systems, and vector database strategies where appropriate
- Establish governance frameworks that ensure secure, compliant, and responsible AI usage aligned with data privacy and enterprise standards
- Ensure AI-enabled components are scalable, maintainable, observable, and production-ready—supporting long-term sustainability and technical resilience
4) AI Culture & Education
- Build and institutionalize AI capability across engineering through structured education initiatives and practical enablement programs
- Deliver high-impact workshops and hands-on sessions that accelerate confident, effective AI adoption in daily engineering workflows
- Foster a culture of experimentation, continuous learning, and responsible AI usage grounded in governance and best practices
- Establish yourself as the trusted AI thought leader within Strato Engineering, providing strategic guidance and technical direction on AI initiatives