AMD and Rapt AI Partner to Optimize GPU Utilization for AI Workloads

AMD and Rapt AI are partnering to improve AI workload efficiency across AMD Instinct GPUs, including MI300X and MI350. By integrating Rapt AI's intelligent workload automation tools, the collaboration aims to optimize GPU performance, reduce costs, and streamline AI training and inference deployment. This partnership positions AMD as a stronger competitor to Nvidia in the high-performance AI GPU market while offering businesses better scalability and resource utilization.
Observe.AI Launches VoiceAI for Call Center Automation

Advanced Micro Devices Inc. (AMD) is enhancing the way businesses handle AI workloads through a strategic partnership with Rapt AI Inc. This collaboration focuses on improving the efficiency of AI operations on AMDs Instinct series graphics processing units (GPUs), a move that promises to bolster AI training and inference tasks across various industries.

How Rapt AI Enhances AMD Instinct GPU Performance for AI Workloads


Rapt AI introduces an AI-driven platform that automates workload management on high-performance GPUs. The partnership with AMD is aimed at optimizing GPU performance and scalability, which is essential for deploying AI applications more efficiently and at a reduced cost.

Managing large GPU clusters is a significant challenge for enterprises due to the complexity of AI workloads. Effective resource allocation is essential to avoid performance bottlenecks and ensure seamless operation of AI systems. Rapt AI’s solution intelligently manages and optimizes the use of AMD’s Instinct GPUs, including the MI300X, MI325X, and the upcoming MI350 models. These GPUs are positioned as competitors to Nvidias renowned H100, H200, and “Blackwell” AI accelerators.

Maximizing AI ROI: Lower Costs and Better GPU Usage with Rapt AI

The use of Rapt AIs automation tools allows businesses to maximize the performance of their AMD GPU investments. The software optimizes GPU resource utilization, which reduces the total cost of ownership for AI applications. Additionally, it simplifies the deployment of AI frameworks in both on-premise and cloud environments.

Rapt AI’s software reduces the time needed for testing and configuring different infrastructure setups. It automatically determines the most efficient workload distribution, even across diverse GPU clusters. This capability not only improves inference and training performance but also enhances the scalability of AI deployments, facilitating efficient auto-scaling based on application demands.

Future-Proof AI Infrastructure: Integration of Rapt AI with AMD GPUs

The integration of Rapt AIs software with AMDs Instinct GPUs is designed to provide seamless, immediate enhancements in performance. AMD and Rapt AI are committed to continuing their collaboration to explore further improvements in areas such as GPU scheduling and memory utilization.

Charlie Leeming, CEO of Rapt AI, shared his excitement about the partnership, highlighting the expected improvements in performance, cost-efficiency, and reduced time-to-value for customers utilizing this integrated approach.

The Broader Impact of the AMD and Rapt AI Partnership

This collaboration between AMD and Rapt AI is setting new benchmarks in AI infrastructure management. By optimizing GPU utilization and automating workload management, the partnership effectively addresses the challenges enterprises face in scaling and managing AI applications. This initiative not only promises improved performance and cost savings but also streamlines the deployment and scalability of AI technologies across different sectors.

As AI technology becomes increasingly integrated into business processes, the need for robust, efficient, and cost-effective AI infrastructure becomes more critical. AMDs strategic partnership with Rapt AI underscores the company’s commitment to delivering advanced solutions that meet the evolving needs of modern enterprises in maximizing the potential of AI technologies.

This collaboration will likely influence future trends in GPU utilization and AI application management, positioning AMD and Rapt AI at the forefront of technological advancements in AI infrastructure. As the partnership evolves, it will continue to drive innovations that cater to the dynamic demands of global industries looking to leverage AI for competitive advantage.

The synergy between AMDs hardware expertise and Rapt AIs innovative software solutions paves the way for transformative changes in how AI applications are deployed and managed, ensuring businesses can achieve greater efficiency and better results from their AI initiatives.


Recent Content

This article critiques the common practice of exhaustive data cleaning before implementing AI, labeling it a consultant-driven “scam.” Data cleaning is a never-ending and expensive process, delaying AI implementation while competitors move forward. Instead, I champion a “clean as you go” approach, emphasizing starting with a specific AI use case and cleaning data only as needed. Smart companies prioritize iterative improvement by using AI to fill in data gaps and building safeguards around imperfect data, ultimately achieving faster results. The core message is it’s more important to prioritize action over perfection, enabling quicker AI adoption and thereby competitive advantage.
Edge AI is reshaping broadband customer experience by powering smart routers, proactive troubleshooting, conversational AI, and personalized Wi-Fi management. Learn how leading ISPs like Comcast and Charter use edge computing to boost reliability, security, and customer satisfaction.
The pressure to adopt artificial intelligence is intense, yet many enterprises are rushing into deployment without adequate safeguards. This article explores the significant risks of unchecked AI deployment, highlighting examples like the UK Post Office Horizon scandal, Air Canada’s chatbot debacle, and Zillow’s real estate failure to demonstrate the potential for financial, reputational, and societal damage. It examines the pitfalls of bias in training data, the problem of “hallucinations” in generative AI, and the economic and societal costs of AI failures. Emphasizing the importance of human oversight, data quality, explainability, ethical guidelines, and robust security, the article urges organizations to proactively navigate the challenges of AI adoption. It advises against delaying implementation, as competitors are already integrating AI, and advocates for a cautious, informed approach to mitigate risks and maximize the potential for success in the AI era.
A global IBM study reveals 81% of CMOs see AI as critical for growth, yet 54% underestimated the operational complexity. Only 22% have set clear AI usage guidelines, despite 64% now being responsible for profitability. Siloed systems, talent gaps, and lack of collaboration hinder translating AI strategies into results, highlighting a major execution gap as marketing leaders adapt to increased accountability for profit and revenue growth.
Elon Musk’s generative AI firm, xAI, is targeting $4.3 billion in new equity funding, following its previous $6 billion raise and a $5 billion debt effort. The capital will support high-cost AI models like Grok and Aurora, expand massive GPU-powered data centers, and drive xAI’s ambition to compete with leaders like OpenAI and DeepMind. Investors remain interested despite concerns over spending, betting on Musk’s strategy to blend social media and AI under one ecosystem.
The emergence of 6G networks marks a paradigm shift in the way wireless systems are conceived and managed. Unlike its predecessors, 6G will embed Artificial Intelligence (AI) as a native capability across all network layers, enabling real-time adaptability, intelligent orchestration, and autonomous decision-making. This paper explores the symbiosis between AI and 6G, highlighting key applications such as predictive analytics, alarm correlation, and edge-native intelligence. Detailed insights into AI model selection and architecture are provided to bridge the current technical gap. Finally, the cultural and organizational changes required to realize AI-driven 6G networks are discussed. A graphical abstract is suggested to visually summarize the proposed architecture.
Whitepaper
Explore the Private Network Edition of 5G Magazine, your guide to the latest in private 5G/LTE and CBRS networks. This edition spotlights 11 award categories including private 5G/LTE leader, neutral host leader, and rising startups. It features insights from industry leaders like Jason Wallin of John Deere and an analysis...
Whitepaper
Discover the potential of mobile networks in modern warfare through our extensive whitepaper. Dive into its strategic significance, understand its security risks, and gain insights on optimizing mobile networks in critical situations. An essential guide for defense planners and cybersecurity enthusiasts....

It seems we can't find what you're looking for.

Download Magazine

With Subscription

Subscribe To Our Newsletter

Scroll to Top

Private Network Readiness Assessment

Run your readiness check now — for enterprises, operators, OEMs & SIs planning and delivering Private 5G solutions with confidence.