Full-Time

Developer Relations Manager

Gsi

Confirmed live in the last 24 hours

NVIDIA

NVIDIA

10,001+ employees

Designs GPUs and AI computing solutions

No salary listed

Expert

Bengaluru, Karnataka, India

Category
Developer Relations
Required Skills
LLM
Requirements
  • BS or MS in Engineering, Mathematics, Physics, or Computer Science (or equivalent experience)
  • 12+ years of work-related experience in technical leadership role and architecting GPU accelerated computing solutions
  • Deep understanding of Gen AI and LLM ecosystem of startups, ISVs, data stores, CSP services, and SaaS/platform offers
  • Strong analytical and problem-solving skills combined with an ability to multitask effectively in a dynamic environment
  • Clear written and oral communication skills with proven ability to articulate value propositions to executive and technical audiences
  • Extensive knowledge, curiosity, and experience with recent advancements in LLMs and Gen AI
Responsibilities
  • Closely engage with partner executives and practice leaders on building strategy and execution plan to grow Gen AI and LLM capabilities and solution offers
  • Deeply understand Gen AI workflows and LLM breakthroughs, evolving ecosystem and alliances, attending conferences, building a network of influencers, and tracking opportunities in progress
  • Promote NVIDIA tools, libraries, and SDK’s with partner architects and developers
  • Discover new workflows, identify blockers to partner adoption, and report back to the product teams
  • Drive early adoption of new products and support launch and go-to-market activities
  • Collaborate with NVIDIA partner managers, solution architects, industry business development managers, sales and marketing
  • Make heavy use of conferencing tools, but some travel is required
Desired Qualifications
  • Experience developing with ML/DL frameworks and MLOps ecosystem of partners and solutions in the cloud and on-prem
  • Background with cloud-based solution designing, APIs and Microservices, orchestration platforms, storage solutions and data migration techniques
  • Experience in software engineering and application development

NVIDIA designs and manufactures graphics processing units (GPUs) and system on a chip units (SoCs) for various markets, including gaming, professional visualization, data centers, and automotive. Their products, particularly GPUs, are essential for high-performance computing and artificial intelligence applications. NVIDIA's GPUs enable users to run complex graphics and data processing tasks efficiently, while their AI and HPC platforms support developers and data scientists in building advanced applications. Unlike many competitors, NVIDIA focuses on both hardware and software solutions, offering cloud-based services that enhance the capabilities of their products. The company's goal is to lead in AI and high-performance computing by continuously investing in research and development to provide effective solutions for a wide range of clients, from gamers to enterprises.

Company Size

10,001+

Company Stage

IPO

Headquarters

Santa Clara, California

Founded

1993

Simplify Jobs

Simplify's Take

What believers are saying

  • NVIDIA's investment in Skild AI enhances its AI-driven automation solutions.
  • Collaboration with Utilidata opens new markets in smart grid solutions for NVIDIA.
  • Backing SandboxAQ positions NVIDIA in the emerging quantum AI field.

What critics are saying

  • Increased competition from startups like nEye Systems challenges NVIDIA's AI hardware dominance.
  • Integration of Lepton AI poses cultural and technological alignment challenges for NVIDIA.
  • Rapid AI and HPC innovation could render NVIDIA's current products obsolete.

What makes NVIDIA unique

  • NVIDIA leads in AI and HPC with cutting-edge GPU technology.
  • The company excels in cloud-based AI solutions, enhancing scalability and performance.
  • NVIDIA's strategic acquisitions bolster its AI infrastructure and cloud capabilities.

Help us improve and share your feedback! Did you find this helpful?

Benefits

Company Equity

401(k) Company Match

Growth & Insights and Company News

Headcount

6 month growth

1%

1 year growth

0%

2 year growth

0%
ITjuzi
Jun 12th, 2025
Skild AI Secures $200M in Funding

Skild AI, a robotics systems developer, has secured a $200 million Series B funding round, bringing its valuation to approximately $4.5 billion. The round was led by Japan's SoftBank Group, which contributed $100 million. Other investors include NVIDIA and Samsung Electronics.

Dealroom
Jun 2nd, 2025
Nvidia company information, funding & investors

Nvidia, designing and manufacturing high-performance gpus, ai platforms, and software solutions for gaming, professional visualization, data centers, and autonomous vehicles. Here you'll find information about their funding, investors and team.

Business Insider
May 9th, 2025
Nvidia-backed Israeli AI startup AI21 is raising a $300 million funding round

AI21, an Israeli startup building its own large language models (LLMs), is raising a $300 million funding round, a source said.

Canary Media
Apr 29th, 2025
Utilidata raises $60M for smarter grids

Utilidata has raised $60 million to explore the potential of AI chips in enhancing grid intelligence. Collaborating with Nvidia and utility partners like Portland General Electric and Duquesne Light, the projects aim to gather detailed grid data, particularly regarding distributed energy resources like rooftop solar and EV chargers. These efforts focus on optimizing grid operations through virtual power plants and distributed energy resource management systems, leveraging real-time data and communication.

SiliconANGLE
Apr 11th, 2025
nEye Systems raises $58M for AI chips

Silicon photonics startup nEye Systems raised $58M in funding led by CapitalG, with participation from Microsoft, Micron, Nvidia, and others. The Emeryville-based company is developing optical networking chips for AI data centers, promising faster, more efficient, and cost-effective data transfers. nEye's technology aims to overcome bandwidth and energy limitations of current electrical interconnects. Prototypes are ready, with production samples expected next year. Total funding exceeds $72M.