Senior Backend Engineer / Senior Software Engineer
π Doha, Qatar Β· π Remote-friendly
Iβm a backend and data engineer with 7+ years of experience building scalable, fault-tolerant systems and real-time data pipelines. My work sits at the intersection of backend architecture, data engineering, and production ML, with a strong focus on performance, reliability, and systems that keep working as data grows.
I enjoy solving problems where scale, data volume, and system design actually matter.
- Backend architecture for data-intensive platforms
- High-throughput ingestion & ETL pipelines
- Clean, scalable API design (performance-aware)
- Data modeling for large, highly-connected datasets
- Production integration of ML / lightweight LLMs
- Observability, reliability, and operational simplicity
Senior Backend Engineer β sbomify
Working on the backend platform powering end-to-end SBOM lifecycle management for enterprise customers. I design ingestion pipelines for CycloneDX and SPDX, model complex component graphs, and build APIs for trust centers, public/private artifact publishing, and compliance-ready distribution. A big part of my work is improving performance and reliability through pagination-first APIs, query optimization, caching, and sane payload limits. I also actively contribute to sbomifyβs open-source core.
Previously β Senior Backend Engineer at Brave
Worked on Brave News, building and scaling backend new systems serving 200K+ MAUs across multiple geographies. Designed FastAPI-based microservices on AWS EKS, built Kafka-driven aggregation pipelines, and integrated lightweight NLP/ML models for topic clustering, categorization, and recommendations. Focused heavily on performance, observability, and globally scalable data pipelines.
Previously β Senior Software Engineer at Arbisoft
Built and scaled backend systems for large SaaS platforms, including Lola.com (corporate travel & expense management). Worked on high-volume data pipelines, ETL systems, API services, and automation using Python, Django, FastAPI, and cloud-native tooling, with a strong emphasis on data quality, reliability, and system performance.
- IEEE CloudCom 2022 β Scalable Containerized Pipeline for Real-time Big Data Analytics
Achieved 2.4Γ throughput and 80Γ latency reduction using Kubernetes-based pipelines.
Research interests include small/efficient LLMs, and resource-aware ML pipelines.
- Mentor junior engineers and run internal tech talks
- Chess.com rating: 1700+
- Enjoy building systems that stay fast after the dataset grows
- Email: [email protected]
- LinkedIn: https://www.linkedin.com/in/rana-aurangzaib-45557b135
- GitHub: https://github.com/aurangzaib048