AI Deployment Engineer, Messenger Integrations
Hands-on engineering role building and scaling ChatGPT integrations with third-party messaging platforms. Focus on partner collaboration, prototyping, debugging, and translating partner needs into product roadmap.
Responsibilities
- Partner with messenger app product and engineering teams to design ChatGPT-powered experiences that fit naturally into chat, group, contact, and app-tab surfaces.
- Deepen existing partner integrations, with an initial focus on improving user experience, retention, reliability, and feature set.
- Build prototypes, integration guides, reference flows, and launch checklists that help partners move from concept to production.
- Debug API, latency, authentication, quota, quality, and user-experience issues across partner and OpenAI systems.
- Translate privacy, trust, login, and data-handling requirements into clear technical constraints and implementation plans.
- Work with product, engineering, design, partnerships, legal, policy, and support teams to make partner launches reliable, scalable, and maintainable.
- Capture repeatable patterns from messenger integrations and turn them into reusable playbooks for future ecosystem partners.
- Travel periodically to meet with international partners during key integration, launch, and post-launch milestones.
Requirements
- Strong software engineering background and still enjoy writing code daily.
- Built or deployed API integrations with external partners and can reason across client, backend, auth, privacy, reliability, and UX constraints.
- Strong product sense and design judgment, especially for consumer-facing experiences.
- Can make ambiguous product ideas concrete without over-specifying partner-specific internals.
- Communicate clearly with engineers, product leaders, executives, and business stakeholders.
- Comfortable debugging distributed systems and narrowing broad performance or reliability issues into actionable hypotheses.
- Care deeply about user trust, privacy, and product quality, especially in communication surfaces where context is sensitive.
- Can balance urgency with judgment and keep launches moving without skipping the details that matter.
Nice-to-Haves
- Experience working on B2C consumer, social, or messaging products.
- Experience working with international partners or in cross-cultural product and engineering environments.
- Familiarity with OAuth/login flows, API rate limits, webviews, mobile release cycles, and partner launch operations.
- Experience with AI product launches, developer platforms, or API-first products.
- Prior customer-facing or partner-facing engineering experience, especially in a startup or smaller-company environment.
- Ability to collaborate across APAC time zones and travel internationally roughly quarterly, sometimes for up to two weeks around major launch milestones.
Specialist Solutions Architect - GCP Infrastructure
Guide customers on Databricks administration and security on GCP. Architect production deployments, provide technical leadership, and support pre/post-sales activities. Requires 5+ years GCP expertise and 2+ years big data experience.
Specialist Solutions Architect - Data Engineering & Observability
Guide customers through cloud data engineering transformations and architect production data pipelines on the Databricks platform. Requires 5+ years of hands-on data engineering experience with Spark, streaming, lakehouse architecture, and cloud platforms.
Senior Implementation Engineer
Serve as primary technical contact for healthcare customers, leading onboarding, integration, and ongoing support. Requires 3+ years implementation experience and full-stack skills in React, TypeScript, and Node.js.