Software Engineer - Core DB

IPV Curator
London
1 month ago
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Software Engineer - Core DBYellowbrick

London, GB
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  • Job Type:Full-Time
  • Function:Engineering Software
  • Industry:Infrastructure
  • Post Date:02/14/2025
  • Website:yellowbrick.com

About Yellowbrick

Yellowbrick Data Warehouse is a modern, elastic data warehouse with separate storage and compute that runs in the cloud. Yellowbrick enables large-scale enterprises to eliminate complexity, reduce risk, and predict and control costs by running all their data anywhere, across multi-cloud and on-premises instances.

Job Description

Yellowbrick Data is a modern cloud Data Platform start-up headquartered in Silicon Valley. We are a flexible Kubernetes cloud-native product used by big name global enterprise customers. Yellowbrick is used by the worlds largest insurers, credit card companies, telcos and healthcare firms, all of whom depend on us to make critical decisions quickly without compromising the security of their data. Yellowbrick is well-funded with $248m raised from top-tier venture firms.

Job Overview

Were a driven R&D team building the best database in the world for data warehousing: We innovate in all areas of the software stack, from operating systems through to user interface and everything in between. Our technology is elastic and horizontally scalable and supports business critical operations. It runs both on-premises and in the cloud.

We are looking for a motivated software engineer to work on our core database team in areas such as query execution, performance optimization, cluster management, addition of semantic search capabilities and efficient storage of document embeddings. Youll have the opportunity to work in all areas of our software stack which includes almost every aspect of computer science - from hardware to operating systems and user interfaces and everything in between.

You love computer architecture, data structures, massively parallel algorithms, multicore programming, and performance analysis and optimization. You have a flair for inventing solutions that generate more efficient machine instructions, can debug the hardest issues around concurrency, and relish the exploration and mastery of large complex code. Youll own your development end-to-end - being responsible for design, development and testing features. You take initiative, and are always on the lookout for new technology that can make a difference - and love to share such things with your team members. Perhaps most importantly, you love to get things done, ship product, and see it solving business problems that benefit thousands of users around the world.

Were based just off Trafalgar Square in the heart of London, and typically work from the office three days a week. We have great benefits, flexible vacations and an exceptionally talented engineer crew to learn from.

Responsibilities

  • Design, develop, test data warehouse microservices
  • Help troubleshoot and fix issues encountered in the field

Qualifications

  • 5-10+ years of experience
  • Strong knowledge of C and C++ and/or Java
  • Strong debugging skills with LLDB or GDB
  • Strong knowledge of Java, JavaRx, JIT and GC profiling and optimization
  • Experience developing software for Linux
  • Fundamental computer science knowledge in:
    • Hashing, sorting, searching, aggregation
    • Indexing
    • Distributed algorithms
    • File systems and storage APIs
    • Operating systems - kernels, threading, scheduling, memory management
    • TCP and RDMA networking
    • Multi-core programming and memory models
    • Compilers - front end, internals or back-ends
    • SQL and relational databases
    • Machine Learning systems/platforms
    • Internals of open source or commercial databases
    • Strong working knowledge of Kubernetes, Docker, Helm
  • Eager to learn and not afraid to dive into new areas of the software stack

We encourage people from underrepresented groups to apply. Come advance with us! In keeping with our values, no employee or applicant will face discrimination/harassment based on: race, color, ancestry, national origin, religion, age, gender, marital domestic partner status, sexual orientation, gender identity, disability status, or veteran status. Yellowbrick Data also strives to prevent other, subtler forms of inappropriate behavior (e.g., stereotyping) from ever gaining a foothold in our organization. Whether blatant or hidden, barriers to success have no place at Yellowbrick Data.

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