Bridging the Gap Between Data Engineering and ML Operations: A Scalable Framework for Feature Curation, Discovery, and High-Throughput Serving

preprint OA: closed CC-BY-4.0
🔓 Open OA copy View at publisher

Abstract

The transition of machine learning (ML) from experimental models to production-ready systems is hindered by the complexities of managing high-dimensional data and mitigating "train-serve skew." This paper presents an architectural framework for a high-performance Feature Store, designed as a centralized "missing data layer" that unifies feature engineering across the ML lifecycle. Utilizing a microservices approach, the system leverages Go for low-latency serving and Apache Spark for scalable distributed aggregations. We propose a dual-layer storage strategy integrating DragonflyDB for sub-millisecond online retrieval and Apache Iceberg for transactional offline persistence and historical time-travel. Experimental results demonstrate that this architecture achieves a p99 latency of less than 0.85ms at 50,000 requests per second while maintaining 100 percent data consistency. Finally, the research addresses the emerging shift toward embedding-centric pipelines, outlining the evolution required to manage high-dimensional vector spaces and drift in self-supervised models.

My notes (saved in your browser only)

Citation neighborhood (no data yet)

We don't have any in-corpus citations linked to this paper yet. This is a recent paper (2025) — citers typically take a year or two to land, and the OpenAlex reference graph may still be filling in.

Source provenance

europepmc
last seen: 2026-05-20T01:45:00.602351+00:00
unpaywall
last seen: 2026-05-22T02:00:06.705733+00:00
License: CC-BY-4.0