【What You’ll Do】
You’ll be part of a very direct loop:
Turning user intent into product value—and potentially revenue.
Your day-to-day will include:
1️⃣ Product Development (End-to-End Ownership)
• Design and build backend services (Go / Python)
• Develop OpenAPI-first APIs (evolving toward AI / agent interfaces)
• Build frontend experiences (Vue / Nuxt), including AI Q&A, interactive flows, and embedded content
2️⃣ AI Integration (Production, not PoC)
• Integrate LLMs / AI models into real product features
• Apply them to use cases such as content understanding, question generation, recommendation, and conversational flows
• Work with real users and real traffic—not just demos
3️⃣ Rapid Experimentation & Iteration
• Build prototypes quickly (in days, not weeks)
• Decide what to push forward and what to stop
• Continuously move strong ideas into production
4️⃣ Full Ownership (From Development to Production)
• Deploy, monitor, and operate the systems you build (Kubernetes / EKS)
• Use tools like Prometheus, Grafana, and Sentry for observability
• Diagnose and resolve issues quickly when they occur
5️⃣ Engineering × Business Thinking
• Understand how the product creates value (e.g., conversion, matching, traffic quality)
• Consider performance, user experience, and cost (FinOps) in technical decisions
6️⃣ AI-Native Development Workflow
• Use AI tools (Claude, Cursor, etc.) as part of your daily workflow
• Automate testing, documentation, and development processes
• Continuously improve development speed and quality
【Requirements】
• 3+ years of full-stack or related development experience (aligned with the stack above)
• Experience building and shipping products end-to-end (frontend, backend, deployment, operations)
• Proficiency in Go or Python (at least one), and Vue.js or similar frontend frameworks
• Hands-on experience applying AI / LLMs in real product scenarios (not just experimentation)
• Ability to move forward in ambiguous situations instead of waiting for perfect clarity
【Nice to Have】
• Familiarity with agent architectures or tools (MCP, LangGraph, n8n, etc.)
• Experience in ad tech / martech / SaaS
• Understanding of basic business metrics (e.g., conversion rate, traffic value)
【How We Build (Please Read)】
We’ve documented how we actually build products, including:
• How we ship AI pipelines within a day
• How AI tools become our default workflow
• Why everyone here is a Product Builder—not just an engineer
→ https://careers.mlytics.com/how-we-ship.html
We know it’s not a short read.
But if you take the time to go through it—and even come to the interview with your thoughts or questions—it will significantly increase the chances of a strong match.
【Final Note】
If you’ve read through “How We Build” and found parts you strongly agree with or even disagree with—we’d love to hear your perspective in the interview.