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Job Title


AI/ML Engineer


Company : Traya


Location : Bangalore, Karnataka


Created : 2026-02-17


Job Type : Full Time


Job Description

Role: AI + Machine Learning Engineerat Traya HealthLocation: Mumbai / Bangalore (Hybrid)Experience: 4–7 years (flexible for exceptional talent)Why this role exists Traya is an outcomes-led, personalized treatment company - not a cosmetic brand. Hair regrowth takes months. Most people quit early. Our biggest challenge is not whether the product works - it’s whether people stay consistent long enough to see results. What makes Traya rare is the data we sit on: ● Deep diagnostic data (hair tests, root-cause profiles) ● Longitudinal behavior data (daily routines, adherence logs, streaks) ● Human interaction data (doctor notes, hair coach calls, chats, tickets) ● Multichannel communication data (App, WhatsApp, push, calls) ● Long-term outcomes data (scalp images, reorders, results over months) We now want to build a unified intelligence layer that: ● Predicts what each customer needs right now ● Decides the next best action + channel ● Powers AI experiences (chat, voice, automation) that feel human, timely, and helpful This role is about turning data → intelligence → action → outcomes. What you’ll work on (AI + ML) This role is deliberately broad and high-ownership. We already have a strong point of view on where AI and ML can help today — but we’re equally excited about what we haven’t imagined yet. You’ll have the space (and expectation) to discover new opportunities hidden in our data and turn them into real product and business impact. Machine Learning & Decision Intelligence ● Explore Traya’s rich, longitudinal customer data to uncover patterns in behavior, adherence, engagement, and outcomes ● Build models, heuristics, or learning systems that help the business: Anticipate customer needs and risks Decide when automation is sufficient and when human intervention adds value Continuously improve decisions as more data and feedback flow in ● Design systems that move us from static, rule-based workflows to learning-driven, adaptive decision-making ● Work closely with product and CX teams to translate insights into shipped features and operational improvements This could evolve into anything from prediction, ranking, optimization, experimentation, or entirely new decision frameworks — depending on what you discover. Applied AI (LLMs, Voice, Automation) ● Experiment with and build AI-powered experiences across chat, voice, and internal tools ● Use modern AI systems to: Understand and summarize large volumes of unstructured data (text, conversations, audio) Assist human teams (coaches, doctors, CX) by reducing cognitive and operational load Create scalable, personalized customer interactions that feel timely and relevant ● Prototype quickly, learn from real usage, and scale what works into production systems Some of these may become customer-facing; others may quietly power internal workflows. The direction is intentionally open. How to read this role We don’t expect you to do all of the above on Day 1. We do expect you to: ● Ask the right questions ● Spot high-leverage opportunities in data ● Choose the right level of sophistication for the problem ● Build things that meaningfully change outcomes This role will naturally evolve as you do. What success looks like Within 6–12 months, you will have helped Traya: ● Improve early-stage adherence and reduce drop-offs ● Increase long-term retention and reorder rates ● Reduce unnecessary human effort while improving outcomes ● Create AI experiences that customers trust, not ignore ● Build a scalable intelligence engine that compounds with every new customer If your work doesn’t change customer behavior or business metrics, it doesn’t count. Who will thrive here You’ll love this role if you: ● Enjoy working at the intersection of AI, ML, and human behavior ● Care about shipping impact more than perfect models ● Are excited by messy data and real-world constraints ● Can think both systems-first and customer-first ● Want ownership, not just tickets Must-have skills ● Strong ML foundations (classification, time-series, experimentation) ● Hands-on experience with Python and ML frameworks ● Experience taking ML or AI systems to production ● Comfort working with large, noisy, behavioral datasets ● Solid understanding of modern AI systems (LLMs, embeddings, prompt design) Big plus if you have experience with ● Recommendation systems / NBA frameworks ● LLM orchestration, RAG, tool calling ● Voice AI (ASR, TTS, call flows) ● Healthcare, consumer subscriptions, or retention-heavy products ● Experimentation, causal inference, or uplift modeling Why Traya is a special place to build AI Most AI roles: ● Optimize clicks ● Ship generic chatbots ● Sit far from real outcomes At Traya: ● Your models decide when to talk, when to stay silent, and when to escalate to a human ● Your AI systems directly impact health outcomes and trust ● You’re building a core intelligence layer, not a demo feature If you want to build AI that actually changes lives - not just dashboards - this is it.