Senior Solutions Architect, First Time Deployment Validation

🔥 1 minute ago

Apply Now
Find Similar Remote Jobs

📊 Check your resume score for this job

Improve your chances of getting an interview by checking your resume score before you apply.

Logo of NVIDIA

NVIDIA

10,000+ employees

Founded 1993

🤖 Artificial Intelligence

🎮 Gaming

Artificial Intelligence • Gaming • Automotive

NVIDIA is a leading technology company specializing in accelerated computing and artificial intelligence. NVIDIA pioneers advancements in graphical processing units (GPUs), cloud computing, data centers, and virtual reality, with a focus on gaming, automotive, healthcare, and robotics industries. The company's innovations, such as NVIDIA Omniverse, transform traditional digital processes by enabling high-fidelity simulations and rendering tasks. Their applications span various industries, from autonomous vehicles using NVIDIA DRIVE to healthcare solutions with NVIDIA Clara, and AI-driven analytics and workflows.

📋 Description

• Set up, adjust, and verify AI factory environments across multi-GPU and multi-node Linux clusters. • Ensure configurations align with guidelines for NCCL, collectives, and distributed training frameworks. • Own the execution of key AI/LLM benchmarks, including setup, orchestration, result collection, and analysis. • Investigate and resolve issues when training jobs or benchmarks fail, hang, or underperform. • Build and improve observability for AI factories (metrics, logs, traces, dashboards) to understand workload behavior and system health. • Develop automation (Python, Shell) for running benchmarks, collecting results, and performing regression checks • Examine communication patterns and NCCL usage for AI/LLM workloads, concentrating on collectives such as AllReduce and AllToAll. • Recommend changes to job configuration, parallelism strategies, and cluster settings to improve throughput, latency, and scaling efficiency. • Work closely with hardware, software, networking, datacenter, and product teams to prepare AI factories for customer use. • Contribute to documentation, guidelines, and readiness collateral that support internal collaborators and customer-facing teams.

🎯 Requirements

• Bachelor’s degree or equivalent experience in Computer Science, Mathematics, Engineering, Physics, or related field. • More than 6+ years of experience managing Linux-based systems in HPC, distributed systems, or extensive AI/ML settings. • Hands-on experience running AI/ML workloads on multi-GPU and/or multi-node clusters, with practical knowledge of NCCL. • Solid grasp of collective communication patterns, particularly AllReduce and AllToAll, and how they are applied in contemporary ML/LLM training. • Familiarity with LLM training and/or inference workflows using frameworks such as PyTorch or TensorFlow. • Proficiency with Python and Shell/Bash for scripting, automation, and tooling. • Experience with benchmarking (crafting, executing, and interpreting performance benchmarks). • Comfortable working with observability data (metrics, logs, dashboards) to troubleshoot and optimize complex distributed workloads. • Strong communication skills and the ability to work effectively with cross-functional teams.

🏖️ Benefits

• equity • benefits

Apply Now

Similar Jobs

🔥 3 hours ago

Accenture Federal Services

10,000+ employees

🤖 Artificial Intelligence

🔒 Cybersecurity

🏛️ Government

AWS Solution Architect applying technical knowledge to architect solutions for US federal agencies. Collaborating with teams to design and deliver cloud services that meet business needs.

AWS

Cloud

🔥 3 hours ago

Clutch

51 - 200

☁️ SaaS

🏢 Enterprise

Senior Solutions Engineer bridging sales and technical needs for WithClutch. Fostering client relationships and demonstrating product solutions in fintech.

JavaScript

Python

React

🔥 3 hours ago

Lavendo

1 - 10

🎯 Recruiter

👥 HR Tech

🤝 B2B

Senior Solutions Engineer responsible for pre-sales activities at a leading application security platform company. Collaborating with sales teams and technical stakeholders to deliver customer solutions.

Cloud

Jenkins

Kubernetes

🔥 3 hours ago

Neo4j

501 - 1000

☁️ SaaS

🏢 Enterprise

Solutions Engineer collaborating with sales teams to demonstrate Neo4j's graph platform value in financial services. Building customer relationships and delivering tailored technical solutions in the financial sector.

AWS

Azure

Cloud

Google Cloud Platform

Java

JavaScript

Neo4j

NoSQL

Python

SQL

Go

🔥 4 hours ago

Astronomer

201 - 500

☁️ SaaS

🤖 Artificial Intelligence

Senior Solutions Architect leading Airflow implementations for customers at Astronomer. Collaborating with engineering teams to design data orchestration platforms and ensure operational excellence.

Airflow

Amazon Redshift

AWS

Azure

BigQuery

Cloud

Docker

Google Cloud Platform

Kubernetes

Python

SQL