About Nyburs
Nyburs is building a trustable, creator-first social platform focused on high quality conversations and media. We are hiring a hands-on Senior AI / ML Engineer to own the recommendation problem end to end.
⚠️ Important : We are only accepting candidates who have prior hands-on experience building recommendation systems in production.
What you will build
End-to-end recommendation pipelines : candidate generation, reranking, and post-ranking rules
Multi-modal feature extraction for images, short videos, and audio to power retrieval and ranking
Systems for offline training and online serving that meet product latency and scalability targets
Experimentation frameworks to measure impact and guardrails to preserve fairness and creator exposure
Production-grade monitoring and model lifecycle processes
Key responsibilities
Design, implement, and own recommender models and ML infrastructure
Translate product goals into modeling objectives and measurable metrics
Productionize multi-modal pipelines and low-latency serving solutions
Collaborate with product, backend, and data engineering on feature ingestion, training pipelines, and deployment
Run experiments, measure uplift, detect drift, and iterate on models
Implement fairness, diversity, and safety guardrails in ranking
Mentor and elevate junior engineers
Must have
4+ years hands-on experience building production ML systems
Prior experience building and deploying recommendation systems is mandatory (must have worked on recommender systems in the past 2-3 years)
Strong software engineering skills and comfort building production services and data pipelines
Practical experience with embeddings, approximate nearest neighbor retrieval, or other retrieval techniques
Experience with one or more deep learning frameworks and working with multi-modal data
Solid understanding of recommender evaluation metrics such as precision@k, recall@k, NDCG, CTR, watch time, and uplift measurement
Experience deploying models to production and designing for low latency
Strong product sense and ability to align technical work with business metrics
Nice to have
Experience with sequential or transformer-based recommenders or graph-based recommenders
Familiarity with streaming ingestion and feature stores
Background in social feeds, short form video, or creator platforms
Advanced degree in ML, CS, or related field
Knowledge of data science practices and tools, including statistical modeling, feature engineering, and experimentation analysis
Tech signals we value
Production ML and MLOps experience (model serving, monitoring, CI / CD)
Practical knowledge of vector / embedding retrieval and scalable retrieval architectures
Familiarity with model evaluation, A / B testing, and metrics-driven iteration
Compensation and benefits
Employee Stock Ownership Plans (ESOPs)
Comprehensive benefits package
Learning budget and conference support
Opportunity to shape product and influence ML roadmap from day one
Employment type
We welcome applications for contractual positions.
How to apply
Send your CV, a short note about a recommender project you built, and links to code or demos to careers@nyburs.com with subject : Senior AI / ML Engineer - Recs
Engineer Aiml • dombivli, maharashtra, in