×
Why reasoning models like DeepSeek-R1 are increasing (not decreasing) demand for GPUs
Written by
Published on
Join our daily newsletter for breaking news, product launches and deals, research breakdowns, and other industry-leading AI coverage
Join Now

The rise of advanced AI reasoning models like DeepSeek-R1 has transformed the computational landscape for AI infrastructure providers. Together AI has secured significant funding to meet growing enterprise demands for high-performance AI model deployment and reasoning capabilities.

Recent funding and growth: Together AI has raised $305 million in Series B funding led by General Catalyst and Prosperity7, marking a significant expansion of its AI deployment platform.

  • The company has experienced 6X year-over-year growth with over 450,000 registered developers
  • Notable customers include AI startups like Krea AI, Captions, and Pika Labs
  • The platform now supports multiple AI modalities including language, reasoning, images, audio, and video

Infrastructure demands: Contrary to initial expectations, DeepSeek-R1 and similar reasoning models are driving increased infrastructure requirements.

  • DeepSeek-R1’s 671 billion parameters require distribution across multiple servers
  • User requests can last up to 2-3 minutes, necessitating dedicated computational resources
  • Together AI has introduced “reasoning clusters” offering 128 to 2,000 chips for optimal performance

Key applications: Reasoning models are finding practical applications across various use cases.

  • Enhanced coding capabilities through problem decomposition
  • Reduced model hallucinations through verification processes
  • Quality improvements in non-reasoning models
  • Self-improvement capabilities using reinforcement learning

Technical innovations: Together AI has made strategic moves to enhance its platform capabilities.

  • Acquisition of CodeSandbox for lightweight VM deployment
  • Implementation of Nvidia’s Blackwell GPUs, offering 2X performance improvement
  • Optimization of inference speeds, achieving 85 tokens per second compared to Azure’s 7 tokens per second

Competitive landscape: Together AI operates in an increasingly crowded market for AI infrastructure.

  • Major cloud providers Microsoft, AWS, and Google offer competing platforms
  • Specialized AI infrastructure providers like Groq and Samba Nova target similar markets
  • Together AI differentiates through full-stack offerings and superior performance metrics

Market implications: The increasing demand for AI infrastructure, particularly for reasoning models, suggests a continuing trend toward more sophisticated and resource-intensive AI applications, potentially creating new opportunities and challenges for infrastructure providers and enterprises alike.

Together AI’s $305M bet: Reasoning models like DeepSeek-R1 are increasing, not decreasing, GPU demand

Recent News

AI agents reshape digital workplaces as Moveworks invests heavily

AI agents evolve from chatbots to task-completing digital coworkers as Moveworks launches comprehensive platform for enterprise-ready agent creation, integration, and deployment.

McGovern Institute at MIT celebrates a quarter century of brain science research

MIT's McGovern Institute marks 25 years of translating brain research into practical applications, from CRISPR gene therapy to neural-controlled prosthetics.

Agentic AI transforms hiring practices in recruitment industry

AI recruitment tools accelerate candidate matching and reduce bias, but require human oversight to ensure effective hiring decisions.