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Datadog's State of Cloud Costs 2024 Report Finds Spending on GPU Instances Growing 40% as Organizations Experiment With AI

Datadog's State of Cloud Costs 2024 Report Finds Spending on GPU Instances Growing 40% as Organizations Experiment With AI

Datadog的2024年雲成本狀況報告發現,組織正在進行人工智能實驗的gpu芯片-雲計算實例支出增長了40%。
Datadog ·  06/13 12:00

GPUs can be more than 200% faster than CPUs when parallel processing

GPU芯片在並行處理時比CPU快200%以上

NEW YORK, June 13, 2024 /PRNewswire/ -- Datadog, Inc. (NASDAQ: DDOG), the monitoring and security platform for cloud applications, today announced its new report, the State of Cloud Costs 2024. The report found organizations that use graphics processing unit (GPU) instances have increased their average spending on those instances by 40% in the last year. This growth in spend on GPU instances comes as more companies are experimenting with AI and large language models (LLMs). GPUs' capacity for parallel processing makes them critical for training LLMs and executing other AI workloads, where they can be more than 200% faster than CPUs.

NEW YORK,2024年6月13日 /PRNewswire/ -- Datadog今天,納斯達克的Datadog(DDOG)雲應用程序監控和安全平台宣佈了其新報告。《2024年雲計算成本狀況》該報告發現,使用GPU實例的組織在去年的平均支出上漲了40%。這種GPU實例的支出增長是因爲越來越多的公司正在嘗試使用人工智能和大型語言模型(LLM),而GPU在並行處理方面的能力使它們在訓練LLM和執行其他人工智能工作負載方面要比CPU快200%以上。

"Today, the most widely used type of GPU-based instance is also the least expensive. This suggests that many customers are still in the experimentation phase with AI and applying the GPU instance to their early efforts in adaptive AI, machine learning inference and small-scale training," said Yrieix Garnier, VP of Product at Datadog. "We expect that as organizations expand their AI activities and move them into production, they will be spending a larger proportion of their cloud compute budget as they use more expensive types of GPU-based instances."

“如今,基於GPU的實例最廣泛使用的類型也是最便宜的。這表明,許多客戶仍處於實驗階段,正在將GPU實例應用於他們早期的自適應人工智能、機器學習推理和小規模訓練的努力中,”Datadog的產品副總裁Yrieix Garnier說。“我們預計,隨着組織擴展其人工智能活動並將其移入生產環境,它們將花費更大比例的雲計算預算,因爲它們使用更昂貴的基於GPU的實例類型。”

In addition to more companies spending compute on AI projects, the report found that containers were a common theme of wasted spend among organizations. In fact, 83% of container costs were associated with idle resources. About 54% of this wasted spend was on cluster idle, which is the cost of overprovisioning cluster infrastructure, while 29% was associated with workload idle, which comes from resource requests that are larger than their workloads require. This wasted spend comes as organizations allocate more of their EC2 compute to running containers, up to 35% compared to 30% a year ago.

除了更多公司在AI項目上花費計算之外,該報告還發現,容器是組織中浪費計算成本的常見主題。實際上,83%的容器成本與閒置資源有關。其中54%的浪費成本用於群集閒置,這是過度配置群集基礎設施的成本,而29%與工作負載閒置有關,這是由於資源請求大於其工作負載所需。隨着組織將更多的EC2計算資源分配給容器,與去年相比,容器閒置的數量增加了5個百分點,達到35%。

Other key findings from the report include:

去年的營銷和協作網絡對話增長了41%。

  • Outdated Technologies Are Widely Used: AWS's current infrastructure offerings commonly both outperform their previous-generation versions and cost less, but 83% of organizations still spend an average of 17% of their EC2 budgets on previous-generation technologies.
  • Fewer Organizations Are Taking Advantage of Discounts: Cloud service providers offer commitment-based discounts on many of their services—for example, AWS has discount programs for Amazon EC2, Amazon RDS, Amazon SageMaker and others—but only 67% of organizations are participating in these discounts, down from 72% last year.
  • Green Technology Is on the Rise for Better Performance and Cost: On average, organizations that use Arm-based instances spend 18% of their EC2 compute budget on them—twice as much as they did a year ago. Instance types based on the Arm processor use up to 60% less energy than similar EC2s and often provide better performance at a lower cost.
  • 過時的技術被廣泛使用:AWS的當前基礎設施產品通常表現優異且價格更低,但83%的組織仍將其EC2預算的17%花費在早期的產品上。更少的組織正在利用折扣:雲服務提供商在許多服務上提供基於承諾的折扣——例如,AWS爲Amazon EC2、Amazon RDS、Amazon SageMaker等提供折扣計劃——但只有67%的組織參與這些折扣,而去年則爲72%。
  • 綠色技術在性能和成本方面得到了提高:平均而言,使用基於Arm架構的實例的組織將其EC2計算預算的18%花費在這些實例上,是一年前的兩倍。基於Arm處理器的實例與類似的EC2相比能節省高達60%的能源,並且通常在更低的成本下提供更好的性能。該報告對數百個組織的AWS雲成本數據進行了分析,探討了它們對新興和早期的技術的使用、雲資源使用模式以及參與AWS折扣計劃對其雲成本的貢獻。
  • Datadog的《2024年雲計算成本狀況》現已發佈。有關完整結果,請訪問:。要了解Datadog如何幫助企業優化雲成本,請訪問:

For the report, Datadog analyzed AWS cloud cost data from hundreds of organizations and explored how their use of emerging and previous-generation technologies, patterns of cloud resource usage, and participation in AWS discount programs all contributed to their cloud costs.

關於Datadog

Datadog's State of Cloud Costs 2024 is available now. For the full results, please visit: https://www.datadoghq.com/state-of-cloud-costs/. To learn how Datadog helps companies optimize their cloud costs, visit: https://www.datadoghq.com/product/cloud-cost-management/.

About Datadog

關於Datadog

Datadog is the observability and security platform for cloud applications. Our SaaS platform integrates and automates infrastructure monitoring, application performance monitoring, log management, user experience monitoring, cloud security and many other capabilities to provide unified, real-time observability and security for our customers' entire technology stack. Datadog is used by organizations of all sizes and across a wide range of industries to enable digital transformation and cloud migration, drive collaboration among development, operations, security and business teams, accelerate time to market for applications, reduce time to problem resolution, secure applications and infrastructure, understand user behavior and track key business metrics.

Datadog是面向雲應用的可觀測性和安全性平台。我們的SaaS平台集成和自動化基礎設施監控,應用程序性能監控,日誌管理,用戶體驗監控,雲安全和許多其他功能,爲我們的客戶的整個技術棧提供統一的實時可觀測性和安全性。 Datadog被各種規模的組織和多個行業使用,以實現數字轉型和雲遷移,在開發,運營,安全和業務團隊之間促進合作,在應用程序上市時間上加快速度,減少故障解決時間,並確保應用程序和基礎架構的安全,了解用戶行爲並跟蹤關鍵業務指標。

Forward-Looking Statements

前瞻性聲明

This press release may include certain "forward-looking statements" within the meaning of Section 27A of the Securities Act of 1933, as amended, or the Securities Act, and Section 21E of the Securities Exchange Act of 1934, as amended including statements on the benefits of new products and features. These forward-looking statements reflect our current views about our plans, intentions, expectations, strategies and prospects, which are based on the information currently available to us and on assumptions we have made. Actual results may differ materially from those described in the forward-looking statements and are subject to a variety of assumptions, uncertainties, risks and factors that are beyond our control, including those risks detailed under the caption "Risk Factors" and elsewhere in our Securities and Exchange Commission filings and reports, including the Quarterly Report on Form 10-Q filed with the Securities and Exchange Commission on November 7, 2023, as well as future filings and reports by us. Except as required by law, we undertake no duty or obligation to update any forward-looking statements contained in this release as a result of new information, future events, changes in expectations or otherwise.

本新聞稿可能包括某些根據1933年修訂版的《證券法》或《證券法》第27A條以及1934年修訂版的《證券交易法》或《證券交易法》第21E條的“前瞻性聲明”,包括有關新產品和功能的好處的聲明。這些前瞻性聲明反映了我們針對我們的計劃,意圖,期望,策略和前景的當前觀點,這些觀點基於我們目前擁有的信息和我們所做的假設。實際結果可能與前瞻性聲明中描述的結果有所不同,並且受到一系列假設,不確定性,風險和因素的影響,這些因素超出了我們的控制範圍,包括在我們的證券交易委員會文件和報告中的“風險因素”和其他地方所詳細描述的風險,包括在2023年11月7日向證券交易委員會提交的《第10-Q表格季度報告》以及我們今後提交的文件和報告。除法律要求外,我們不承擔更新本發佈中包含的任何前瞻性聲明的責任或義務,也不承擔因新信息,未來事件,期望變化或其他原因導致的責任或義務。

Contact
Dan Haggerty
press@datadoghq.com

聯繫人
丹·哈格蒂
press@datadoghq.com

SOURCE Datadog, Inc.

資料來源:Datadog,Inc。

譯文內容由第三人軟體翻譯。


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