"Macquarie Capital推荐北美科技行业最佳股票选项"
需积分: 0 125 浏览量
更新于2023-12-29
收藏 2.31MB PDF 举报
The document "麦格理-美股-科技行业-北美科技行业最佳选择-14-36页.pdf" provides insights and analysis on top stock picks in the North American technology industry. The report, dated 4 January 2019, focuses on equities in the region and highlights specific companies as top picks for the year 2019.
The report features a list of recommended stocks, with in-depth analysis and assessments of each company. The highlighted companies include Shopify (SHOP US/SHOP CN), Celestica (CLS US/CLS CN), CGI Group (GIB/A CN/GIB US), BlackBerry (BB US/BB CN), and Open Text (OTEX CN/OTEX US). Each of these companies is discussed in detail, providing readers with valuable information for potential investment decisions.
The analysts responsible for the report are from Macquarie Capital Markets Canada Ltd., particularly Gus Papageorgiou, CFA, and Alex Turner. Their contact information is provided for readers who may seek further information or clarification on the report's content.
Furthermore, the report emphasizes the importance of referring to page 34 for important disclosures and analyst certification, or visiting Macquarie's website at www.macquarie.com/research/disclosures for additional information. This demonstrates the commitment to transparency and compliance with regulatory requirements in the financial industry.
In conclusion, "麦格理-美股-科技行业-北美科技行业最佳选择-14-36页.pdf" provides valuable insights and recommendations for investors interested in the North American technology industry. The document offers a comprehensive analysis of top stock picks for 2019, supported by the expertise of analysts from Macquarie Capital Markets Canada Ltd. As always, readers are encouraged to review the important disclosures and certifications included in the report, and to contact the analysts directly for any further inquiries.
2024-09-26 上传
2024-09-26 上传
2024-09-26 上传
2024-09-26 上传
qq_41146932
- 粉丝: 11
- 资源: 6307
最新资源
- 达梦数据库DM8手册大全:安装、管理与优化指南
- Python Matplotlib库文件发布:适用于macOS的最新版本
- QPixmap小demo教程:图片处理功能实现
- YOLOv8与深度学习在玉米叶病识别中的应用笔记
- 扫码购物商城小程序源码设计与应用
- 划词小窗搜索插件:个性化搜索引擎与快速启动
- C#语言结合OpenVINO实现YOLO模型部署及同步推理
- AutoTorch最新包文件下载指南
- 小程序源码‘有调’功能实现与设计课程作品解析
- Redis 7.2.3离线安装包快速指南
- AutoTorch-0.0.2b版本安装教程与文件概述
- 蚁群算法在MATLAB上的实现与应用
- Quicker Connector: 浏览器自动化插件升级指南
- 京东白条小程序源码解析与实践
- JAVA公交搜索系统:前端到后端的完整解决方案
- C语言实现50行代码爱心电子相册教程