Discover ANY AI to make more online for less.

select between over 22,900 AI Tool and 17,900 AI News Posts.


venturebeat
ScaleOps' new AI Infra Product slashes GPU costs for self-hosted enterprise LLMs by 50% for early adopters

ScaleOps has expanded its cloud resource management platform with a new product aimed at enterprises operating self-hosted large language models (LLMs) and GPU-based AI applications. The AI Infra Product announced today, extends the company’s existing automation capabilities to address a growing need for efficient GPU utilization, predictable performance, and reduced operational burden in large-scale AI deployments. The company said the system is already running in enterprise production environments and delivering major efficiency gains for early adopters, reducing GPU costs by between 50% and 70%, according to the company. The company does not publicly list enterprise pricing for this solution and instead invites interested customers to receive a custom quote based on their operation size and needs here.In explaining how the system behaves under heavy load, Yodar Shafrir, CEO and Co-Founder of ScaleOps, said in an email to VentureBeat that the platform uses “proactive and reactive mechanisms to handle sudden spikes without performance impact,” noting that its workload rightsizing policies “automatically manage capacity to keep resources available.” He added that minimizing GPU cold-start delays was a priority, emphasizing that the system “ensures instant response when traffic surges,” particularly for AI workloads where model load times are substantial.Expanding Resource Automation to AI InfrastructureEnterprises deploying self-hosted AI models face performance variability, long load times, and persistent underutilization of GPU resources. ScaleOps positioned the new AI Infra Product as a direct response to these issues. The platform allocates and scales GPU resources in real time and adapts to changes in traffic demand without requiring alterations to existing model deployment pipelines or application code.According to ScaleOps, the system manages production environments for organizations including Wiz, DocuSign, Rubrik, Coupa, Alkami, Vantor, Grubhub, Island, Chewy, and several Fortune 500 companies. The AI Infra Product introduces workload-aware scaling policies that proactively and reactively adjust capacity to maintain performance during demand spikes. The company stated that these policies reduce the cold-start delays associated with loading large AI models, which improves responsiveness when traffic increases.Technical Integration and Platform CompatibilityThe product is designed for compatibility with common enterprise infrastructure patterns. It works across all Kubernetes distributions, major cloud platforms, on-premises data centers, and air-gapped environments. ScaleOps emphasized that deployment does not require code changes, infrastructure rewrites, or modifications to existing manifests. Shafrir said the platform “integrates seamlessly into existing model deployment pipelines without requiring any code or infrastructure changes,” and he added that teams can begin optimizing immediately with their existing GitOps, CI/CD, monitoring, and deployment tooling.Shafrir also addressed how the automation interacts with existing systems. He said the platform operates without disrupting workflows or creating conflicts with custom scheduling or scaling logic, explaining that the system “doesn’t change manifests or deployment logic” and instead enhances schedulers, autoscalers, and custom policies by incorporating real-time operational context while respecting existing configuration boundaries.Performance, Visibility, and User ControlThe platform provides full visibility into GPU utilization, model behavior, performance metrics, and scaling decisions at multiple levels, including pods, workloads, nodes, and clusters. While the system applies default workload scaling policies, ScaleOps noted that engineering teams retain the ability to tune these policies as needed.In practice, the company aims to reduce or eliminate the manual tuning that DevOps and AIOps teams typically perform to manage AI workloads. Installation is intended to require minimal effort, described by ScaleOps as a two-minute process using a single helm flag, after which optimization can be enabled through a single action.Cost Savings and Enterprise Case StudiesScaleOps reported that early deployments of the AI Infra Product have achieved GPU cost reductions of 50–70% in customer environments. The company cited two examples:A major creative software company operating thousands of GPUs averaged 20% utilization before adopting ScaleOps. The product increased utilization, consolidated underused capacity, and enabled GPU nodes to scale down. These changes reduced overall GPU spending by more than half. The company also reported a 35% reduction in latency for key workloads.A global gaming company used the platform to optimize a dynamic LLM workload running on hundreds of GPUs. According to ScaleOps, the product increased utilization by a factor of seven while maintaining service-level performance. The customer projected $1.4 million in annual savings from this workload alone.ScaleOps stated that the expected GPU savings typically outweigh the cost of adopting and operating the platform, and that customers with limited infrastructure budgets have reported fast returns on investment.Industry Context and Company PerspectiveThe rapid adoption of self-hosted AI models has created new operational challenges for enterprises, particularly around GPU efficiency and the complexity of managing large-scale workloads. Shafrir described the broader landscape as one in which “cloud-native AI infrastructure is reaching a breaking point.”“Cloud-native architectures unlocked great flexibility and control, but they also introduced a new level of complexity,” he said in the announcement. “Managing GPU resources at scale has become chaotic—waste, performance issues, and skyrocketing costs are now the norm. The ScaleOps platform was built to fix this. It delivers the complete solution for managing and optimizing GPU resources in cloud-native environments, enabling enterprises to run LLMs and AI applications efficiently, cost-effectively, and while improving performance.”Shafrir added that the product brings together the full set of cloud resource management functions needed to manage diverse workloads at scale. The company positioned the platform as a holistic system for continuous, automated optimization.A Unified Approach for the FutureWith the addition of the AI Infra Product, ScaleOps aims to establish a unified approach to GPU and AI workload management that integrates with existing enterprise infrastructure. The platform’s early performance metrics and reported cost savings suggest a focus on measurable efficiency improvements within the expanding ecosystem of self-hosted AI deployments.

Rating

Innovation

Pricing

Technology

Usability

We have discovered similar tools to what you are looking for. Check out our suggestions for similar AI tools.

How to buy a GPU in 2025
How to buy a GPU in 2025

<p>One of the trickiest parts of any new computer build or upgrade is finding the right video card. In a gaming PC, the GPU is easily the most important component, and you can hamstring your exp [...]

Match Score: 115.02

venturebeat
GitHub leads the enterprise, Claude leads the pack—Cursor’s speed can

<p>In the race to deploy generative AI for coding, the fastest tools are not winning enterprise deals. A new VentureBeat analysis, combining a comprehensive survey of 86 engineering teams with o [...]

Match Score: 114.57

venturebeat
Self-improving language models are becoming reality with MIT's updated SEAL

<p>Researchers at the Massachusetts Institute of Technology (MIT) are gaining renewed attention for developing and <a href="https://github.com/Continual-Intelligence/SEAL/blob/main/LICEN [...]

Match Score: 89.85

venturebeat
'Western Qwen': IBM wows with Granite 4 LLM launch and hybrid Mamba/Transfo

<p>IBM today <a href="https://www.ibm.com/new/announcements/ibm-granite-4-0-hyper-efficient-high-performance-hybrid-models">announced the release of Granite 4.0</a>, the ne [...]

Match Score: 76.43

venturebeat
Mistral launches its own AI Studio for quick development with its European

<p>The next big trend in AI providers appears to be &quot;studio&quot; environments on the web that allow users to spin up agents and AI applications within minutes. </p><p>C [...]

Match Score: 72.29

venturebeat
Alembic melted GPUs chasing causal A.I. — now it's running one of the fas

<p><a href="https://getalembic.com/"><u>Alembic Technologies</u></a> has raised <a href="https://www.wsj.com/articles/accenture-and-jeffrey-katzenbergs- [...]

Match Score: 63.08

venturebeat
IBM claims 45% productivity gains with Project Bob, its multi-model IDE tha

<p>For many enterprises, there continue to be barriers to fully adopting and benefiting from agentic AI.</p><p><a href="https://www.ibm.com/"><u>IBM</u>&l [...]

Match Score: 58.36

venturebeat
Writer's AI agents can actually do your work—not just chat about it

<p><a href="https://writer.com/"><u>Writer</u></a>, a San Francisco-based artificial intelligence startup, is launching a unified AI agent platform designed to [...]

Match Score: 56.59

venturebeat
Salesforce launches AI 'trust layer' to tackle enterprise deployment failur

<p><a href="https://www.salesforce.com/"><u>Salesforce Inc.</u></a> is expanding its artificial intelligence platform with new data management and governance ca [...]

Match Score: 55.19