SEALSQ Utilizes Ultra-Secure Data Centers in Switzerland to Store and Process Vast Amounts of Data Generated by Its Sensors and Semiconductors
SEALSQ Utilizes Ultra-Secure Data Centers in Switzerland to Store and Process Vast Amounts of Data Generated by Its Sensors and Semiconductors
Geneva, Switzerland, Aug. 26, 2024 (GLOBE NEWSWIRE) -- SEALSQ uses AI-driven techniques such as machine learning, deep learning, and computer vision to analyze and interpret the incoming data streams, which when applied to data ranging from predictive maintenance insights in factories to real-time environmental monitoring in cities, provide businesses with the ability to optimize operations, reduce downtime, and enhance decision-making capabilities.
SEALSQ利用AI驅動的技術,如機器學習、深度學習和計算機視覺,來分析和解釋傳入的數據流,應用於從預測性維護洞察到城市實時環境監測的各種數據,爲企業提供優化運營、減少停機時間和增強決策能力的能力。
SEALSQ Corp (NASDAQ: LAES) ("SEALSQ" or "Company"), a company that focuses on developing and selling Semiconductors, PKI and Post-Quantum technology hardware and software products, today announced that it is taking a significant step forward in the realm of IoT data security by utilizing ultra-secure data centers in Switzerland to store and process vast amounts of data generated by its sensors and semiconductors.
SEALSQ corp (納斯達克: LAES) ("SEALSQ" 或 "公司") 是一家專注於開發和銷售半導體、PKI和後量子技術硬件和軟件產品的公司,今天宣佈通過利用瑞士的超安全數據中心存儲和處理由其傳感器和半導體生成的大量數據,在物聯網數據安全領域邁出了重要的一步。
As IoT devices continue to collect critical information across various sectors—ranging from smart cities and consumer devices to industrial automation and smart grids—there is an increasing need for robust infrastructure capable of managing the massive datasets these devices produce. The IoT data landscape is characterized by its high volume, diverse structure, and real-time requirements. Data streams include everything from telemetry and video feeds to unstructured machine logs and environmental metrics, all of which must be processed with ultra-low latency to derive actionable insights.
隨着物聯網設備在各個領域收集關鍵信息,從智能城市和消費者設備到工業自動化和智能電網,對於能夠管理這些設備產生的海量數據集的強大基礎設施的需求日益增加。物聯網數據景觀以其高容量、多樣的結構和實時需求爲特點。數據流包括從遙測和視頻源到非結構化的機器日誌和環境指標的所有內容,所有這些都必須以超低延遲進行處理,以得出可行的見解。
Switzerland's strategic push toward digital sovereignty aligns perfectly with SEALSQ's objective. The country is in the process of developing an independent digital infrastructure, the Swiss Government Cloud, slated to be operational by 2026. This investment, costing CHF 319.4 million, will not only support federal agencies but also provide a secure environment for cantons, cities, and local municipalities. Switzerland's emphasis on digital sovereignty transcends mere data protection—it focuses on harnessing data-driven innovation while maintaining control over essential digital resources. SEALSQ's adoption of this infrastructure reflects a commitment to both security and technological independence.
瑞士對數字主權的戰略推動與SEALSQ的目標完美契合。該國正在開發獨立的數字基礎設施,即瑞士政府雲,預計在2026年投入運營。這項投資耗資31940萬瑞郎,不僅將支持聯邦機構,還將爲州、城市和地方政府提供一個安全的環境。瑞士強調數字主權不僅僅是數據保護,還注重在保持對關鍵數字資源的控制的同時推動數據驅動的創新。SEALSQ採用這一基礎設施的做法反映了對安全和技術自主的承諾。
The significance of this move lies in Switzerland's established reputation for digital trust and privacy, making it an optimal location for processing sensitive IoT data. As IoT devices become more embedded in daily operations—from smart consumer gadgets like wearables to complex industrial systems—there is an increasing need for data centers that can offer not only the capacity but also the reliability and security required to handle such data. SEALSQ is tapping into this potential by using AI-driven techniques like machine learning, deep learning, and computer vision to analyze and interpret the incoming data streams. These analytical techniques, applied to data ranging from predictive maintenance insights in factories to real-time environmental monitoring in cities, provide businesses with the ability to optimize operations, reduce downtime, and enhance decision-making capabilities.
這一舉措的意義在於瑞士在數字信任和隱私方面建立了良好的聲譽,使其成爲處理敏感物聯網數據的最佳位置。隨着物聯網設備在日常運營中變得更加深入,從智能消費產品(如可穿戴設備)到複雜的工業系統,不僅需要提供容量,還需要可靠性和安全性,以處理此類數據。SEALSQ正在利用人工智能驅動的技術,如機器學習、深度學習和計算機視覺,來分析和解釋傳入的數據流。這些分析技術應用於從工廠預測性維護洞察到城市實時環境監測的數據,爲企業提供了優化運營、減少停機時間和增強決策能力的能力。
This initiative builds on the Swiss Confederation's broader vision for a secure digital landscape, a goal solidified by the Federal Council's announcement on May 22, 2024, to establish a comprehensive cloud infrastructure. The focus is not only on technological independence but also on fostering international trust by adhering to the highest standards of data security and operational excellence. For SEALSQ, leveraging Switzerland's advanced cloud infrastructure is more than a strategic advantage; it is a concrete measure of support for digital sovereignty, an essential element in maintaining both data security and the capacity to drive innovation in an interconnected world.
這一舉措是基於瑞士聯邦的更廣泛願景,即建立一個安全的數字化環境,這一目標由聯邦委員會於2024年5月22日宣佈建立全面雲基礎設施而得以鞏固。重點不僅在於技術獨立性,還在於通過遵守數據安全和運營卓越的最高標準來培育國際信任。對於SEALSQ來說,利用瑞士先進的雲基礎設施不僅是戰略優勢,更是對數字主權的具體支持措施,這對於維護數據安全和推動在互連世界中的創新能力都是必不可少的要素。
In parallel, SEALSQ is actively enhancing its digital storage solutions with Swiss-EU-based services designed to ensure seamless and secure data management across borders. Underpinning all these efforts is the concept of Root of Trust (RoT), a fundamental pillar in cryptographic systems, which provides a reliable source for generating digital certificates used in legally binding transactions. While traditional Public Key Infrastructure (PKI) systems face challenges in integrating with decentralized blockchain trust models, SEALSQ's approach bridges these gaps, creating an end-to-end trust architecture that is both secure and scalable.
與此同時,SEALSQ正積極增強其數字存儲解決方案,並利用瑞士-歐盟基礎的服務,旨在實現跨境無縫和安全的數據管理。所有這些努力的基礎是信任根(RoT)的概念,這是密碼系統中的基本支柱,爲生成用於法律約束交易的數字證書提供可靠來源。傳統的公鑰基礎設施(PKI)系統在與分散的區塊鏈信任模型集成時面臨挑戰,而SEALSQ的方法彌合了這些差距,創造了一個端到端的信任架構,既安全又可擴展。
By anchoring its operations in Switzerland, SEALSQ is setting a benchmark in IoT data security, offering a solution that not only meets today's rigorous demands but is also future-proof in its design. The combination of cutting-edge analytics, robust infrastructure, and a focus on digital sovereignty positions SEALSQ as a leader in the global IoT landscape.
SEALSQ將其業務錨定在瑞士,爲物聯網數據安全樹立了一個基準,提供了一個不僅滿足當今嚴格要求,而且在設計上也具備未來可靠性的解決方案。先進的分析、強大的基礎設施和對數字主權的關注使SEALSQ在全球物聯網領域中成爲一家領導者。
The integration of IoT data with AI is unlocking powerful applications across various industries. Below are some specific examples of how AI processes IoT data to drive efficiency, automation, and innovation:
物聯網數據與人工智能的整合正在爲各行業帶來強大的應用。以下是一些具體示例,說明人工智能如何處理物聯網數據以實現效率、自動化和創新:
- Predictive Maintenance in Manufacturing: In smart factories, IoT sensors continuously monitor the performance of machinery and equipment. AI algorithms analyze this data to predict when a machine is likely to fail or require maintenance. By identifying patterns and anomalies in real-time, AI can trigger maintenance schedules before a breakdown occurs, reducing downtime and minimizing repair costs.
- Smart Energy Management: Smart meters in energy grids collect data on electricity consumption across homes, businesses, and industrial facilities. AI processes this data to optimize energy distribution, balancing supply and demand dynamically. By analyzing usage patterns, AI can predict peak times and adjust energy flows to reduce waste, improve efficiency, and even integrate renewable energy sources more effectively.
- Connected Vehicles and Fleet Management: In logistics and transportation, IoT devices installed in trucks, shipping containers, and railcars provide real-time data on location, temperature, fuel levels, and cargo condition. AI uses this data to optimize routes, predict delivery times, and manage vehicle maintenance. For instance, AI can detect when a vehicle's fuel efficiency is dropping and suggest proactive servicing, leading to cost savings and better resource utilization.
- Smart Cities and Traffic Management: Urban environments use IoT-enabled traffic sensors, cameras, and parking monitors to collect data on traffic flow, congestion, and parking availability. AI analyzes this data to optimize traffic lights, reduce congestion, and manage parking spaces more efficiently. In some cities, AI-driven traffic management systems can adjust signal timing in real-time based on the density of vehicles, reducing delays and improving road safety.
- Healthcare and Wearable Devices: Wearable IoT devices like smartwatches and fitness trackers monitor vital signs such as heart rate, sleep patterns, and activity levels. AI processes this data to provide personalized health insights, detect irregularities, and even predict potential health issues like heart conditions. In more advanced applications, AI-driven analysis of IoT data from medical devices can support remote patient monitoring, enabling early intervention and better chronic disease management.
- Smart Retail and Consumer Analytics: In retail environments, IoT sensors track customer movements, product interactions, and in-store behavior. AI analyzes this data to optimize store layouts, personalize promotions, and enhance customer experiences. For example, AI can predict customer preferences based on their past interactions, enabling targeted marketing and inventory management to ensure that popular items are always in stock.
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Environmental Monitoring and Agriculture: In agriculture, IoT devices collect data on soil moisture, temperature, humidity, and crop health. AI processes this data to guide irrigation, pest control, and fertilizer application, resulting in more efficient farming practices. By predicting weather patterns and crop growth cycles, AI-driven IoT systems can maximize yields while minimizing resource usage.
- 製造業中的預測性維護:在智能工廠中,物聯網傳感器不斷監測機械和設備的性能。人工智能算法分析這些數據,預測機器可能出現故障或需要維護的時間。通過實時識別模式和異常,人工智能可以在故障發生之前觸發維護計劃,減少停機時間並降低維修成本。
- 智能能源管理:能源網格中的智能儀表收集家庭、企業和工業設施的用電數據。人工智能處理這些數據,優化能源分配,動態平衡供需。通過分析使用模式,人工智能可以預測高峰時間,並調整能源流動以減少浪費,提高效率,甚至更有效地整合可再生能源來源。
- 連接車輛和車隊管理:在物流和運輸中,安裝在卡車、集裝箱和鐵路車輛上的物聯網設備提供實時的位置、溫度、燃油水平和貨物狀況數據。人工智能使用這些數據來優化路線、預測交貨時間和管理車輛維護。例如,人工智能可以檢測到車輛燃油效率下降,並建議主動維修,從而實現成本節約和更好的資源利用。
- 智能城市與交通管理:城市環境使用物聯網的交通傳感器、攝像頭和停車監視器收集交通流量、擁堵和停車位的數據。人工智能分析這些數據,優化交通信號燈,減少擁堵,並更高效地管理停車位。在一些城市,基於車輛密度,由人工智能驅動的交通管理系統可以實時調整信號時序,減少延誤,提高道路安全。
- 醫療保健與可穿戴設備:可穿戴的物聯網設備,如智能手錶和健身追蹤器,監測生命體徵,如心率、睡眠模式和活動水平。人工智能處理這些數據,提供個性化的健康見解,檢測異常情況,甚至預測潛在的心臟病等健康問題。在更先進的應用中,基於物聯網設備的人工智能驅動的數據分析可以支持遠程患者監測,實現早期干預和更好的慢性病管理。
- 智能零售和消費者分析:在零售環境中,物聯網傳感器跟蹤客戶移動、產品互動和店內行爲。人工智能分析這些數據,優化店鋪佈局,個性化促銷活動,並提升客戶體驗。例如,人工智能可以根據客戶過去的互動預測客戶偏好,實現定向營銷和庫存管理,確保熱門商品始終有貨。
- 環境監測與農業:在農業中,物聯網設備收集土壤溼度、溫度、溼度和作物健康狀況的數據。人工智能處理這些數據,指導灌溉、害蟲防控和施肥,實現更高效的農業生產實踐。通過預測天氣模式和作物生長週期,基於人工智能的物聯網系統可以最大化產量,同時減少資源使用。
These examples demonstrate how the combination of IoT data and AI is driving innovation across industries, leading to smarter, more responsive systems that improve operational efficiency, enhance decision-making, and deliver value in real-time.
這些例子展示了物聯網數據和人工智能的結合如何推動跨行業創新,帶來更智能、更響應的系統,提高運營效率,增強決策能力,並實現即時價值的交付。
About SEALSQ
關於SEALSQ
SEALSQ focuses on selling integrated solutions based on Semiconductors, PKI and Provisioning services, while developing Post-Quantum technology hardware and software products. Our solutions can be used in a variety of applications, from Multi-Factor Authentication tokens, Smart Energy, Smart Home Appliances, Medical and Healthcare and IT Network Infrastructure, to Automotive, Industrial Automation and Control Systems.
SEALSQ專注於銷售基於半導體、PKI和配額服務的綜合解決方案,同時開發後量子技術硬件和軟件產品。我們的解決方案可用於各種應用,從多因素身份驗證令牌、智能能源、智能家電、醫療保健和IT網絡基礎設施,到汽車、工業自動化和控制系統。
Post-Quantum Cryptography (PQC) refers to cryptographic methods that are secure against an attack by a quantum computer. As quantum computers become more powerful, they may be able to break many of the cryptographic methods that are currently used to protect sensitive information, such as RSA and Elliptic Curve Cryptography (ECC). PQC aims to develop new cryptographic methods that are secure against quantum attacks. For more information, please visit .
後量子密碼學(PQC)是指針對量子計算機攻擊而安全的加密方法。隨着量子計算機變得更加強大,它們可能能夠破解許多當前用於保護敏感信息的加密方法,如RSA和橢圓曲線加密(ECC)。PQC旨在開發新的加密方法,以抵禦量子攻擊。有關更多信息,請訪問。
Forward-Looking Statements
This communication expressly or implicitly contains certain forward-looking statements concerning SEALSQ Corp and its businesses. Forward-looking statements include statements regarding our business strategy, financial performance, results of operations, market data, events or developments that we expect or anticipates will occur in the future, as well as any other statements which are not historical facts. Although we believe that the expectations reflected in such forward-looking statements are reasonable, no assurance can be given that such expectations will prove to have been correct. These statements involve known and unknown risks and are based upon a number of assumptions and estimates which are inherently subject to significant uncertainties and contingencies, many of which are beyond our control. Actual results may differ materially from those expressed or implied by such forward-looking statements. Important factors that, in our view, could cause actual results to differ materially from those discussed in the forward-looking statements include the expected success of our technology strategy and solutions for IoMT Security for Medical and Healthcare sectors, SEALSQ's ability to implement its growth strategies, SEALSQ's ability to continue beneficial transactions with material parties, including a limited number of significant customers; market demand and semiconductor industry conditions; and the risks discussed in SEALSQ's filings with the SEC. Risks and uncertainties are further described in reports filed by SEALSQ with the SEC.
前瞻性聲明
本通信明示或暗示涉及SEALSQ公司及其業務的某些前瞻性聲明。前瞻性聲明包括有關我們的業務策略、財務績效、業績、市場數據、預計將在未來發生的事件或發展,以及任何其他不是歷史事實的聲明。雖然我們認爲這些前瞻性聲明所反映的預期是合理的,但無法保證這些預期將被證明是正確的。這些聲明涉及已知和未知的風險,並基於一些本質上面臨重大不確定和意外情況的假設和估計,其中許多超出了我們的控制範圍。實際結果可能與此類前瞻性聲明所表達的有所不同。從我們的角度來看,可能導致實際結果與前瞻性聲明中討論的不同的重要因素包括我們的IoMT醫療和醫療保健領域的技術戰略和解決方案的預期成功,SEALSQ實施其增長戰略的能力,SEALSQ繼續與重要方面的有利交易的能力,包括少數重要客戶;市場需求和半導體行業狀況;以及SEALSQ與美國證券交易委員會提交的文件中討論的風險。風險和不確定性在SEALSQ提交給美國證券交易委員會的報告中進一步描述。
SEALSQ Corp is providing this communication as of this date and does not undertake to update any forward-looking statements contained herein as a result of new information, future events or otherwise.
SEALSQ Corp於本日期採取此項通信,並不作出承諾更新此處包含的任何前瞻性陳述,因爲有新信息、未來事件或其他原因。
Press and Investor Contacts
新聞和投資者聯繫方式
SEALSQ Corp. Carlos Moreira Chairman & CEO Tel: +41 22 594 3000 info@sealsq.com |
SEALSQ Investor Relations (US) The Equity Group Inc. Lena Cati Tel: +1 212 836-9611 / lcati@equityny.com Katie Murphy Tel: +212 836-9612 / kmurphy@equityny.com |
SEALSQ corp。 Carlos Moreira 董事長兼首席執行官 電話:+41 22 594 3000 info@sealsq.com |
SEALSQ投資者關係(美國) The Equity Group Inc. Lena Cati 電話:+1 212 836-9611 / lcati@equityny.com Katie Murphy 電話:+212 836-9612 / kmurphy@equityny.com |