Jul 28, 2024

Slowing growth and intensifying competition: In the second half of 2023, China’s cloud professional and managed services market grew 13.5% year-on-year to 21.19 billion

北京,2024年07月29日——国际数据公司(IDC)最新发布的《中国云专业与管理服务市场(2023下半年)跟踪》报告显示,2023下半年中国云专业与管理服务市场整体规模达到211.9亿元人民币,同比增长13.5%。自2023年以来中国经济及产业经营进入承压周期,企业数字化支出不如预期,云市场逐渐走向存量竞争。其中,云专业服务市场规模为156.7亿元,同比增长13.0%;云管理服务市场规模达到55.2亿元人民币,同比增长14.9%。

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Jul 28, 2024

大跨步地走向整合统一 :《IDC Technology Assessment:中国安全资源池技术评估》报告正式发布

北京,2024年7月29日——近年来,我国陆续颁布了如《网络安全法》、《数据安全法》、《密码法》以及“等保2.0”、《关键信息基础设施安全保护条例》等法律法规,从政策合规层面规定了企业安全建设的合规基线,合规一体机/服务、等保一体机/服务等产品和服务受到了众多最终用户的青睐,通过集成多种安全能力于一体,结合安全服务帮助用户一键合规和指导改进。与此同时,云计算技术的快速发展为用户也增加了新的安全隐患,公有云、私有云、混合云、多云等部署形态的出现使得用户对于统一管理的需求快速增加,云安全资源池开始成为众多最终用户做统一安全管理的重要手段之一。在政策和业务需求的双重推动下,安全资源池市场开始快速发展。

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Jul 28, 2024

降本增效,智能领航,IDC 2023年中国托管安全服务(MSS)市场份额报告发布

北京,2024年7月29日——面对全球范围日益严峻的网络安全、数据安全挑战,企业对于安全合规以及所投资的安全防护体系的真实作用的重视度逐渐提升。越来越多的企业管理者意识到专业网络安全服务的价值,愿意采用托管安全服务的形式将企业网络安全运营交付给专业第三方服务商。

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The Artificial Intelligence (AI) revolution has taken the world by storm. IDC forecasts that worldwide AI spending will exceed $512 billion by 2027, more than double its 2024 market size. While AI was picking up pace, the introduction of Generative AI (GenAI) changed the way enterprises leveraged AI.

In India, AI and GenAI adoption is significantly increasing across software, services, and hardware for AI-centric systems, with AI and GenAI spending projected to reach $6 billion by 2027 with a compound annual growth rate (CAGR) of 33.7% for the period 2022-2027. The AI revolution has also accelerated digital adoption in India with 62% of Indian enterprises expecting more than 50% of revenue to come from digital models by 2026.

Multiple AI Use Cases Are Emerging Across Indian Industries

Industries that have been slow in terms of digital adoption have accelerated their journey to get ready for their AI journey while industries that have been digital leaders have already started evaluating and deploying relevant use cases.

Governments in the Asia Pacific are the third-largest adopters of AI/GenAI, with spending expected to increase with a 5-year CAGR of 96.2% by 2027. This growth offers a chance to enhance efficiency, transparency, and citizen engagement in public services. In India, almost 50% of government organizations are planning to invest significantly in data management-related services, such as discovery, quality, data engineering, and governance in 2024. Hence, the approach is clearly shifting towards data-centric rather than model-centric. Additionally, a sizable chunk of these organizations is planning to significantly increase investments in AI and Machine Learning (ML), including GenAI. For example, citizen services in states like Haryana are leveraging Jugalbandi, a new GenAI-powered chatbot on WhatsApp, to facilitate a wide range of tasks, including pension payments and college scholarship applications. While adopting AI/GenAI, the government also has a responsibility to govern the usage of this technology while giving the necessary impetus for innovation.

Digital in healthcare has been a focal point in recent years, particularly in the post-pandemic period. The Indian healthcare sector is witnessing a surge in clinical data driven by patient-centric care management that is evolving into real-time patient data capture and analysis. Such a surge in the clinical data, along with immunity to AI investments by healthcare organizations aligns the healthcare sector increasingly towards an “AI everywhere” approach. There is already an increased focus on early detection of diseases, both communicable and non-communicable diseases.

During our discussions with CIOs of multi-specialty hospitals, AI-based use cases, mainly focusing on diagnostic accuracy, speed, and workflow efficiency are popular. For example, Apollo Hospital is set to leverage the use of AI to detect TB from chest X-rays, as a means of triaging. They even scan the villages to screen TB cases. Another case is the launch of “iOncology.ai”, by AIIMS Delhi for early detection of breast and ovarian cancers, the two most prominent types of cancer in the country and percolate the solution to district hospitals.

AI is also transforming every corner of the Banking, Financial Services, and Insurance (BFSI) sector, with the most significant impact on customer interactions, risk management, and operational efficiency in India’s financial landscape. JP Morgan’s AI-focused strategy, implemented six years ago, exemplifies the long-term commitment of leading financial institutions to AI integration. In a highly regulated industry like BFSI, institutions face challenges such as big data management, outdated IT infrastructure, market responsiveness, and cyber fraud risks, which function as a speed breaker for AI adoption. Despite that, we are witnessing growing importance for GenAI pilots among many BFSI institutions in India across various business functions primarily to enhance existing services.

Telecom operators are aspiring to be more than just connectivity providers –  they want to be recognized as digital leaders. India is the second largest market by subscribers globally, yet it has one of the lowest average revenues per user. IDC predicts total connections in India will reach 1.5 billion in 2028 (both mobile and fixed) with a total data traffic of 468 exabytes. Though the demand is high, balancing churn and profit margins have continued to challenge telcos in India.

Two areas which tie into churn and profit margins are customer experience (CX) and network operations. For CX, the augmentation of AI is at the forefront of addressing customers across various touchpoints. For example, any ambiguity in the bill will lead to customer churn, both in consumers and enterprises. Use of AI to explain and analyze bills consisting of varying bill cycles, bill splits, multiple payment modes, loyalty, and promotional offers reduces the number and duration of calls for contact center agents.  On the network operations side, AI is infused to shift from reactive to proactive network management eventually to predictive network management. As networks become more disaggregated with increased virtualization and edge deployments, the urgent need to look past manual troubleshooting has led to network automation. The closed-loop network management should span across network operation workflows and BSS systems.  

India is at a pivotal moment, ready to become a global manufacturing hub as the world looks for alternatives to China. Today, China makes up about 28% of global manufacturing, while India accounts for only 3.3%, competing with countries like Vietnam and South Korea in Southeast Asia. For India to become a manufacturing hub, India must leverage technologies like AI, robotics, automation, IoT, and 3D printing. Furthermore, the manufacturing industry also faces challenges with regular supply chain disruptions. According to IDC’s April 2024 Global Supply Chain Survey, more than 30% of India’s manufacturers, retailers, and logistics companies are expecting supply chain disruptions due to rising costs, talent shortages, and regulatory compliance issues.

These challenges are also accelerating the adoption of data-driven technologies and AI in the manufacturing sector. AI can help India with three very important competitive factors in the manufacturing industry – enable scale, reduce cost, and increase efficiency. AI can also enhance supply chain security by detecting any risk or fraud in the supply chain system. Furthermore, navigating regulatory compliance is becoming more manageable with AI solutions that automate compliance monitoring and reporting, ensuring adherence to complex regulations.

Given all these, the expectations of Indian enterprises from AI vendors are around multiple dimensions and IDC recommends tech vendors to take the following approach to be successful:

  1. Develop robust data platform (necessary governance, security, data privacy, ethics and so on) and sound, workable & effective data infrastructure.
  2. Offer data integration and data management capabilities which align with existing legacy government IT infrastructure.
  3. Identify specific use cases for national priorities & areas such as agriculture, healthcare, traffic, insurance, etc., and build relevant solutions around those.
  4. Controlling Costs is critical. Explore the option of a “pay-as-you-go” model, explore Small Language Models (SLM) and Medium Language Models (MLM) instead of full-fledged Large Language Models (LLM) which may not be needed for all enterprises. 
  5. Ensure Trust most importantly, ensure trust by maintaining transparency.
  6. Communicating the functionalities and risks of AI systems to stakeholders and offering continuous education and training are essential for effective AI utilization and to bridge knowledge gaps.
  7. Expedite the implementation process to ensure faster time to value, helping organizations quickly realize the benefits of AI

Sharath Srinivasamurthy - Associate Vice President - IDC

Sharath Srinivasamurthy is an associate vice president who heads the research group for IDC India. His research expertise cuts across the multiple facets of digital transformation (DX). Sharath has around 20 years of experience in different leadership roles with leading IT services firms. Before IDC, he worked in different roles including solutioning, presales, project management, business analysis, and application support and development. Sharath has worked in various capacities in global markets, namely the United States, Asia, Europe, and the United Kingdom. Sharath previously worked with DXC Technology as Asia Head-Solutioning for Application Services, Global Head-Solutioning and Business Unit head in the application services business of Xchanging and led application support and development services for Zensar Technologies. He also worked with Hewlett-Packard and Cognizant. He is a distinguished leader and a frequent keynote speaker. Sharath's views on technology have been quoted in numerous publications such as CNBC, Forbes India, The Economic Times, and CIO.com. Sharath holds a Global MBA from SP Jain, Singapore and a bachelor's degree in Engineering from VTU, Karnataka.
Jul 25, 2024

Vivo topped the Chinese smartphone market in the second quarter

北京,2024年7月26日——国际数据公司(IDC)发布的最新手机季度跟踪报告显示,2024年第二季度,中国智能手机市场出货量约7,158万台,同比增长8.9%,延续增长势头。其中,在vivo、Huawei和Xiaomi等厂商的推动下,Android市场同比增长11.1%。大幅降价以后,虽然Apple的市场需求明显改善,但是iOS市场出货量依然同比下降3.1%。去年同期较低的出货量和新一轮换机周期的到来,帮助今年上半年中国智能手机市场出货量超过1.4亿台,同比增长7.7%。

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Jul 24, 2024

需求驱动产业升级——《IDC MarketScape:中国实时湖仓市场2024年厂商评估》报告正式发布

北京,2024年7月25日——国际数据公司(IDC)发布的数据显示,未来12个月,选择外部合作来构建数据管理服务的企业比例将从58%快速增长至85%。数据量的快速增长、对数据管理需求的升级以及技术架构复杂度和独立开发成本的上升,都将推动企业开始越来越多地考虑湖仓一体的管理解决方案。同时,多模数据管理、实时化将会是数据管理服务演进的两个重要方向。

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