refresh

トレンド企業

トレンド企業

採用

求人Together AI

Staff Engineer, Distributed Storage,HPC & AI Infrastructure

Together AI

Staff Engineer, Distributed Storage,HPC & AI Infrastructure

Together AI

Amsterdam

·

On-site

·

Full-time

·

1mo ago

必須スキル

Python

Kubernetes

Go

Terraform

About the Role

In this role, you will design and deliver multi-petabyte storage systems purpose-built for the world’s largest AI training and inference workloads. You’ll architect high-performance parallel filesystems and object stores, evaluate and integrate cutting-edge technologies such as WekaFS, Ceph, and Lustre, and drive aggressive cost optimization-routinely achieving 30-50% savings through intelligent tiering, lifecycle policies, capacity forecasting, and right-sizing.

You will also build Kubernetes-native storage operators and self-service platforms that provide automated provisioning, strict multi-tenancy, performance isolation, and quota enforcement at cluster scale. Day-to-day, you’ll optimize end-to-end data paths for 10-50 GB/s per node, design multi-tier caching architectures, implement intelligent prefetching and model-weight distribution, and tune parallel filesystems for AI workloads.

Hybrid Working 2 days a week at our offices in Amsterdam

Responsibilities

  • Design multi-petabyte AI/ML storage systems; integrate WekaFS, Ceph, etc.; lead capacity planning and cost optimization (30-50% savings via tiering, lifecycle policies, right-sizing).

  • Design/optimize RDMA, Infini Band, 400GbE networks; tune for max throughput/min latency; implement NVMe-oF/iSCSI; troubleshoot bottlenecks; optimize TCP/IP for storage.

  • Build Kubernetes storage operators/controllers; enable automated provisioning, self-service abstractions, multi-tenant isolation, quotas; create reusable Helm/Terraform patterns.

  • Deliver 10-50 GB/s per GPU node; optimize caching (weights/datasets/checkpoints), parallel filesystems, and data paths; troubleshoot with profiling tools; scale to thousands of nodes.

  • Build multi-tier caches (local NVMe, distributed, object); optimize data locality and model-weight distribution; implement smart prefetching/eviction.

  • Implement monitoring, alerting, SLOs; design DR/backups with runbooks; run chaos engineering; ensure 99.9%+ uptime via proactive/automated remediation.

  • Partner with ML/SRE teams; mentor on storage best practices; contribute to open-source; write docs, postmortems, and public learnings.

Requirements

  • 8+ years in storage engineering with 3+ years managing distributed storage at multi-petabyte scale

  • Proven track record deploying and operating high-performance storage for GPU/HPC clusters

  • Deep Kubernetes and cloud-native storage experience in production environments

  • Strong coding skills in Go and Python with demonstrated ability to build production-grade tools

  • BS/MS in Computer Science, Engineering, or equivalent practical experience

  • History of technical leadership: designing systems that significantly improved performance (>3x), reliability (99.9%+ uptime), or cost efficiency

  • Distributed Storage Systems: Deep expertise in WekaFS, Lustre, GPFS, BeeGFS, or similar parallel filesystems at multi-petabyte scale

  • Object Storage: Production experience with S3, MinIO, Ceph, or R2 including performance optimization and cost management

  • Kubernetes Storage: CSI drivers, Stateful Sets, Persistent Volumes, storage operators, and custom controllers

  • Storage optimization for GPU workloads, RDMA/Infini Band networking, parallel filesystem optimization (100+ GB/s aggregate cluster throughput)

  • Programming: Go and Python for automation, operators, and tooling

  • Infrastructure as Code: Terraform, Ansible, Helm, Git Ops (ArgoCD)

  • Linux Storage Stack: Advanced knowledge of filesystems (ext4, xfs), LVM, NVMe optimization, RAID configurations

  • Observability: Prometheus, Grafana, Thanos architecture and operations

Nice to Have Skills

  • GPU Direct Storage (GDS), NVMe-oF, storage networking (100GbE/400GbE)

  • ML/AI storage patterns (model weights, checkpointing, dataset caching)

  • Kubernetes operator development (controller-runtime, kubebuilder)

  • Storage snapshots, cloning, and thin provisioning

  • Backup and disaster recovery (Velero, Restic, cross-region replication)

  • Storage encryption (at-rest and in-transit), security and compliance

  • Storage benchmarking and profiling tools (fio, iperf3, iostat, blktrace)

About Together AI

Together AI is a research-driven artificial intelligence company. We believe open and transparent AI systems will drive innovation and create the best outcomes for society, and together we are on a mission to significantly lower the cost of modern AI systems by co-designing software, hardware, algorithms, and models. We have contributed to leading open-source research, models, and datasets to advance the frontier of AI, and our team has been behind technological advancement such as Flash Attention, Hyena, Flex Gen, and Red Pajama. We invite you to join a passionate group of researchers in our journey in building the next generation AI infrastructure.

Equal Opportunity

Together AI is an Equal Opportunity Employer and is proud to offer equal employment opportunity to everyone regardless of race, color, ancestry, religion, sex, national origin, sexual orientation, age, citizenship, marital status, disability, gender identity, veteran status, and more.

Please see our privacy policy at https://www.together.ai/privacy

総閲覧数

0

応募クリック数

0

模擬応募者数

0

スクラップ

0

Together AIについて

Together AI

Together AI

Series B

Data annotation company.

51-200

従業員数

San Francisco

本社所在地

$1.25B

企業価値

レビュー

3.8

10件のレビュー

ワークライフバランス

3.5

報酬

2.5

企業文化

4.2

キャリア

2.8

経営陣

3.0

65%

友人に勧める

良い点

Great team spirit and collaboration

Good work-life balance and flexible hours

Supportive work environment

改善点

Below industry standard compensation

High workload and overwhelming workpace

Limited career advancement opportunities

給与レンジ

0件のデータ

Mid/L4

Senior

Mid/L4 · Product Designer

0件のレポート

$156,800

年収総額

基本給

$156,800

ストック

-

ボーナス

-

$133,280

$180,320

面接体験

3件の面接

難易度

3.0

/ 5

期間

14-28週間

面接プロセス

1

Application Review

2

Recruiter Screen

3

Technical Phone Screen

4

Coding Rounds

5

System Design Interview

6

Final Interview

よくある質問

Coding/Algorithm

System Design

Technical Knowledge

Behavioral/STAR

Infrastructure/SRE