AI PC占第二季度PC总出货量的14%

币界网Published on 2024-08-13Last updated on 2024-08-14

币界网报道:

研究公司Canalys透露,随着对增加人工智能功能的需求不断增加,人工智能PC占2024年第二季度个人电脑总出货量的14%,从而推动了需求。这些设备通常带有专门用于执行AI任务的特征神经处理单元。

据路透社报道,这是因为PC供应商和芯片制造商押注于可以直接在系统上执行人工智能任务并绕过云的设备。该行业目前正在走出多年来最严重的衰退。

苹果公司处于领先地位

根据这家研究公司的数据,苹果公司在其包含M系列芯片和神经引擎的Mac产品组合所支持的AI PC市场中占据了60%的份额。

该研究公司补充说,在微软的Windows系统中,自该公司于5月推出高通公司的Snapdragon“Copilot+”后,本季度AI PC的出货量环比增长了127%。

该研究进一步表明,陷入困境的英特尔也加大了其人工智能PC芯片的交付量,希望利用生产具有人工智能功能的设备的努力。

总体而言,随着市场继续转向人工智能来优化运营和处理一些日常任务,本季度各品牌的人工智能PC数量都有所增加。

AI PC普遍增长

根据该报告,人工智能PC的引入正在增加高端市场的增长。这是因为在本季度,售价超过800美元的Windows PC出货量环比增长了9%。

同行们,联想的AI PC出货量增长了228%,占其Windows PC总出货量的6%。AI PC占惠普Windows的8%,而戴尔在其AI PC所代表的Windows总出货量中增长了7%。

Canalys首席分析师Ishan Dutt透露,在强劲需求的推动下,这一趋势预计将持续到今年下半年。

“现在有了坚实的基础,支持人工智能的PC出货量将在2024年下半年获得进一步的吸引力。”Dutt。

国际数据公司(IDC)的数据显示,全球个人电脑市场在经历了近两年的低迷之后正在复苏。

随着人们对被吹捧为优化生产力的人工智能能力的兴趣日益浓厚,该行业预计将在未来三年保持增长轨迹。

人工智能PC市场预计今年将增长50%以上。预计明年将再次翻番,占PC市场总量的43%以上。

IDC预测,到2027年,AI PC将进一步增长,约占所有PC销售额的60%。

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