Globalization Platform Engineer
As Expedia Group accelerates its AI-driven transformation and expands globally, the ability to deliver truly local, high-quality experiences at scale has become a core competitive advantage.
The Globalization Platform Lead is a critical technical leadership role that ensures globalization is not a downstream activity, but a platform capability embedded into product development from day one. This role focuses on designing, deploying and maintaining the architecture of AI-enabled localization workflows, machine translation pipelines, and developer tooling that make it easier for product teams to launch globally.
This is a highly hands-on role for someone who enjoys building platforms, collaborating across teams, and shaping how global products are delivered.
Core responsibilities and deliverables:
1. Globalization Platforms & Architecture
- Design and implement services and workflows that support machine translation, localization automation, and multilingual content delivery.
- Contribute to technical designs and architecture reviews for globalization systems, including internal and external systems
- Translate product requirements into maintainable, scalable solutions.
- Help define technical standards and best practices for “global-by-default” development.
- Participate in quarterly planning & prioritization cycles and drives execution of assigned globalization initiatives.
2. AI/ML enablement
- Build integrations between LLMs, MT engines, and internal systems using APIs.
- Run technical experiments to test new AI-powered workflows, notably using Agentic AI.
- Engineer prompts and automation pipelines for AI-assisted localization.
- Leverage NLP/NLU techniques to improve localization automation, translation quality evaluation, and multilingual content understanding across Expedia Group experiences.
3. Machine Translation and linguistic systems
- Develop Python and/or AI-based tooling for MT evaluation, terminology extraction, and LQA automation.
- Maintain and improve MT pipelines and linguistic asset repositories.
- Work with our Analytics partners on building dashboards and reports from MT and TMS data sources.
- Partner with linguists and vendors to operationalize technical improvements.
4. Cross-functional delivery
- Collaborate with Product, UX, ML, and Platform teams to embed globalization early in the development lifecycle.
- Support workflow automation and process improvements.
- Help define success metrics and track business impact.
- Contribute to documentation and knowledge sharing for globalization tooling.
Functional/Technical Skills:
Required Experience
- 4–7 years of professional experience
- Strong programming skills (Python, Java, JavaScript/TypeScript)
- REST APIs, testing tools
- Regex and string handling
- Solid knowledge of Unicode, ICU & CLDR
- Working knowledge of NLP and NLU concepts: tokenization, embeddings, classification, sequence labeling, semantic similarity, intent/entity extraction
- Experience building production services, scripts, or internal platforms.
- Experience working with CI/CD pipelines and cloud environments.
Globalization & AI
- Solid knowledge of i18n, localization systems, globalization platforms, NMT engines.
- Strong literacy of LLM-based systems and prompt engineering.
- Experience in multilingual systems and experimentation.
- Working knowledge of NLU/NLP concepts
Architecture & Operations
- Experience contributing to system designs and technical reviews.
- Awareness of observability, monitoring, and reliability practices.
- Ability to troubleshoot production issues.
Collaboration & Communication
- Clear written and verbal communication skills.
- Comfortable working with global partners.
- Inclusive, collaborative approach to problem-solving.
Values & Leadership Competencies:
Customer first & Ownership
- Builds systems with traveler experience and quality at the core.
- Uses data to understand how global customers interact with products.
- Owns technical deliverables end-to-end within assigned projects.
- Flags risks early and proposes creative and when applicable, AI-based solutions.
Data-driven
- Defines measurable success criteria for globalization initiatives (quality, speed, cost, reliability, adoption) before building.
- Uses instrumentation and experimentation to validate whether AI/MT workflows improve outcomes vs. existing approaches
- Builds feedback loops so production data informs model/tooling improvements (e.g., post-edit data, LQA outcomes, customer signals).
- Makes tradeoffs transparently (e.g., cost vs. quality, latency vs. coverage) using evidence, not opinions.
- Operationalizes metrics into dashboards/alerts that teams can use without manual analysis.
Bias for action
- Ships incrementally, learns from results, and iterates quickly.
- Prototypes new ideas before scaling them.
- Ability to simplify complex systems and deploy clear, scalable and maintainable architectures.
- Works effectively across disciplines and geographies.
- Communicates clearly with both technical and non-technical partners.
Learning & Growth mindset
- Stays current on AI + globalization trends: keeps up with developments in LLMs, MT/NMT, evaluation methods, prompt/agent patterns, terminology management, and content quality practices
- Demonstrates a repeatable approach to learning: read, experiment, measure, operationalize.
- Can articulate trade-offs and “why” behind decisions, not just “how.”
- Converts new ideas into reliable tooling, standards, and best practices adopted by product teams.
- Builds personal credibility across disciplines by speaking both engineering and localization/linguistic perspectives.