Trapier Marshall is a Customer Success Engineer with 11 years of hands-on Linux, container, and networking experience, currently based in Raleigh, NC. He has a long track record at prominent cloud and container companies (Docker, Mirantis, VAST Data) moving from support into staff-level engineering roles and customer-facing success. A pragmatic troubleshooter and systems thinker, Trapier has contributed to core container infrastructure—improving Docker's libnetwork and addressing platform-specific network and load-balancer cleanup issues. He pairs deep operational instincts with a knack for empowering customers and colleagues to run resilient systems in production. Trained originally as an environmental engineer, he brings a methodical, research-oriented mindset to solving messy, real-world infrastructure problems.
11 years of coding experience
11 years of employment as a software developer
Bachelor of Science (BS) Environmental Engineering, Bachelor of Science (BS) Environmental Engineering at North Carolina State University
The Moby Project - a collaborative project for the container ecosystem to assemble container-based systems
Role in this project:
Backend & DevOps Engineer
Contributions:9 commits, 1 PR, 27 comments in 4 years 2 months
Contributions summary:Trapier primarily focused on enhancing the `libnetwork` component of the Docker project. Their contributions involved fixing issues related to iptables configuration, adding support for host links and inspecting stopped containers. Furthermore, the user addressed Windows-specific load balancer cleanup, ensuring proper removal of policy lists and delayed network deletion for improved stability and performance.
Contributions:5 PRs, 64 pushes, 116 branches in 2 years 11 months
docker
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Trapier Marshall - Customer Success Engineer at VAST Data