Machine Learning Engineer
Listed on 2026-06-01
-
IT/Tech
Machine Learning/ ML Engineer, AI Engineer, Data Scientist, Data Engineer
We are building Q an advanced next-generation platform where the entire experience is driven by adaptive, learning-based intelligence rather than fixed or static rules
This role is not about tuning existing models.
It is about designing and building the central intelligence of the product from zero:
- A recommendation engine that competes with Amazon level systems
- A search engine that understands intent, not keywords
- A fully adaptive personalized experience
- A behavioral intelligence layer that drives real business impact
If you want a role where your work becomes the backbone of the product, this is it.
What You Will Build and OwnThis is an end to end engineering role.
1) Advanced Recommendation SystemsYou will design systems such as:
- Session-based and sequence models
You will build search that truly understands users:
- Learning-to-rank models
- Semantic retrieval
- Query understanding and rewriting
- Vector search and embedding pipelines
You will own:
- Behavior-driven recommendations and offers
You will:
- Establish metrics that matter
- Analyze experiments accurately
- Drive product decisions based on evidence
You will design:
- Tight integration with backend microservices
You will ship:
- Low-latency inference pipelines
- Monitored, versioned, continuously improving models
1) You have real, hands-on experience building recommendation systems from zero
Not just using libraries or pre-built models.
You have actually designed and implemented recommendation engines end-to-end, including data pipelines, candidate generation, ranking, personalization, and evaluation, and you understand the underlying math, signals, and behavioral patterns that drive real-world recommendation quality.
2) You understand algorithms deeply
Not just frameworks.
You can explain why a model works, not just how to run it.
3) You've built real production systems
Even if partially.
You know the difference between academic ML and commercial ML.
4) You take ownership without waiting for direction
You design, build, and lead your area end-to-end.
5) You think in terms of business impact
You optimize for relevance, revenue, retention not just accuracy metrics.
6) You don't accept shallow fixes
You prefer fundamental, scalable solutions that materially improve the user experience.
Required Technical Skills- Strong Python engineering skills
- Hands-on experience in recommender systems or search
- Experience with embeddings and vector search (FAISS, Weaviate, Pinecone, etc.)
- Strong SQL and data manipulation
- Experience shipping ML to production environments
Candidates with 3-10 years of experience are welcome if they meet the required skill level.
What You'll Get at Q- Full ownership no layers of bureaucracy
- Ability to build foundational systems from scratch
- A product where ML is central, not a side feature
- Clear impact on thousands of users (and soon millions)
To Search, View & Apply for jobs on this site that accept applications from your location or country, tap here to make a Search: