Member of Technical Staff, Core Backend
Bangun sistem backend real-time untuk Voice AI yang menangani 1 miliar panggilan
Anda akan membangun dan memelihara sistem backend real-time untuk Voice AI yang menangani 1 miliar panggilan. Anda akan bekerja dengan tim untuk mengembangkan dan mengoptimalkan sistem yang menggunakan teknologi VAD, STT, LLM, TTS, dan Transport. Anda akan bertanggung jawab untuk memastikan sistem ini dapat menangani beban tinggi dan memberikan pengalaman pengguna yang baik. Sistem ini digunakan oleh perusahaan besar seperti Amazon Ring, ServiceT
Kenapa Menarik?
Bekerja di perusahaan yang sedang berkembang dengan teknologi yang digunakan oleh perusahaan besar dan startup
Tanggung Jawab Utama
- Mengoptimalkan pipeline StreamModule yang terdiri dari VAD, STT, LLM, TTS, dan Transport
- Mengatasi masalah backpressure pada sistem real-time
- Mengintegrasikan BullMQ ke Kafka untuk meningkatkan skalabilitas dan reliabilitas
- Menginstrumentasikan pipeline dengan event-driven OTEL tracing
- Mengatasi Single Point of Failure (SPOF) pada Postgres
Persyaratan
- Pengalaman membangun sistem real-time atau streaming dalam produksi
- Memiliki pemahaman tentang arsitektur queue seperti BullMQ, Kafka, dan Temporal
- Pengalaman membangun arsitektur plugin atau adapter
- Pengalaman mengoperasikan Postgres pada skala besar
- Pengalaman menginstrumentasi dengan OpenTelemetry
Skills Wajib
Keywords
Lihat Deskripsi Asli dari Ashby Job Boards
Deskripsi asli dari Ashby Job Boards
Voice AI that resolves, not transfers. Most phone systems trap callers in menus and scripts. Vapi is the platform for deploying voice agents that know your business and can listen, adapt, and resolve in minutes. - The numbers: 1 billion calls. 1 million developers. 10x enterprise ARR growth - The customers: Amazon Ring, ServiceTitan, New York Life, Intuit, Kavak, and thousands more, from YC startups to the Fortune 500 - The news: a $50M Series B led by Peak XV Partners, with Bessemer Venture Partners, Kleiner Perkins, M12 (Microsoft's Venture Fund), Y Combinator, and our earlier backers. Total raised: $72M Why We’re Hiring This Role: The StreamModule pipeline — VAD → STT → LLM → TTS → Transport — runs on cork/uncork backpressure during live phone calls. A hundred milliseconds of delay is audible. This role owns pipeline stability and pluggability, so the agents and FDE teams can add new models and providers without touching core. You’ll consolidate BullMQ into Kafka, harden the provider abstractions (LLM, STT, TTS base classes), instrument the pipeline with event-driven OTEL tracing, and shore up the Postgres SPOFs that contributed to the Oct 15 and Oct 22 incidents. What You’ll Do: 30 Day: Ramp on the StreamModule pipeline and the cork/uncork backpressure model. Walk the Oct 15 / Oct 22 DB incidents and the duplicate-message incident. Land a scoped pipeline or provider-abstraction improvement. 60 Day: Own a slice of the BullMQ → Kafka consolidation. Ship event-driven OTEL instrumentation for at least one critical pipeline stage. Harden one provider plugin path so a new model can be added without core changes. 90 Day: Drive a measurable reliability or latency win on the call path. Be the backend owner that agents and FDE teams pull in for design reviews on new providers and pipeline changes. Who You Are: Must-haves: - You’ve built real-time or streaming systems in production — media pipelines, streaming data, or event-driven backends. You’ve debugged a backpressure cascade. - You have opinions on queue architecture (BullMQ, Kafka, Temporal) and when each is the right fit. - You’ve built plugin or adapter architectures — extending base classes cleanly, with decoupled implementations. - You’ve operated Postgres at scale: connection pooling, read replicas, schema migrations (Liquibase or similar). - You instrument with OpenTelemetry and think in event-driven traces, not just logs. Nice-to-haves: - TypeScript + Node.js + NestJS. The codebase is huge NestJS, but a strong systems-thinking engineer ramps fast — language doesn’t gate the hire. Tech stack you’ll work in: - Languages: TypeScript on Node.js (primary). - Framework: NestJS (large codebase). - Pipeline: StreamModule (VAD → STT → LLM → TTS → Transport), cork/uncork backpressure. - Queues: BullMQ (current), Kafka (target — consolidation on roadmap), Temporal. - Database: Postgres (connection pooling, read replicas), Liquibase for schema migrations. - Plugin system: provider abstractions — LLM, STT, TTS base classes (pluggable, decoupled from model integrations). - Observability: OpenTelemetry tracing, event-driven instrumentation. Where you likely come from: A streaming or real-time platform (Discord, Slack, Zoom, Twitch, Mux, LiveKit), an ML-infra company (Modal, Baseten, Replicate, Together), or a pipeline/workflow shop (Temporal, Stripe Radar, trading systems). Weak fit: backend engineer who’s only built systems where users don’t wait in real time (overnight jobs, reports, dashboards). Why Vapi: Generational impact: Build the human interface for every business Ownership culture: 70% of the company are previous founders Kind team: The founders, Jordan and Nikhil, are Canadians Tier-1 Investors: YC, KP seed, Bessemer Series A, Recent Series B raise What We Offer: Real stake: We offer a competitive salary and excellent equity ownership Comprehensive health coverage: medical, dental, and vision plans Team love: We love hanging out, and we do quarterly off-sites Flexible time off: take what you need More: catered meals, transportation, gym, and a $10k annual L&D budget
Data & laporan pasar
Riset gaji & permintaan skill dari data lowongan kami sendiri.
- Lowongan IT Indonesia vs Remote Global (2026)Analisis data primer 2.049 lowongan: metodologi, klasifikasi, dataset bisa diunduh.
- Permintaan Skill AI: Indonesia vs Global (2026)10.000+ lowongan, classifier taxonomy-first, Wilson CI, pra-registrasi sebelum analisis.
- Laporan Hiring Indonesia: Tech vs Non-TechPermintaan lowongan per bidang dari hitungan agregat — bukan listing per-listing.
- Benchmark Gaji IndonesiaKisaran gaji agregat lintas peran, dengan metodologi dan dataset terbuka.
- Laporan Pasar Remote per PeranLaporan otomatis per kelompok peran — skill, senioritas, perusahaan, gaji.
