Hewlett Packard Enterprise (HPE) Unveils Edge, Cloud, and AI Innovations at HPE Discover Event

Reading time: 1 mins

Meet the Authors

Key Takeaways

⇨ HPE's investment in networking infrastructure strengthens network capabilities and advances wireless technologies like Private 5G and Wi-Fi

⇨ HPE GreenLake expands with new cloud solutions, simplified integration with AWS, and a partnership with Equinix for faster and greener deployment

⇨ HPE enters the AI cloud market with HPE GreenLake for Large Language Models (LLMs), enabling private training and deployment of large-scale AI models

Hewlett Packard Enterprise recently held its annual HPE Discover event, showcasing advancements in edge computing, hybrid cloud, and artificial intelligence. The event, attended by 10,000 customers, partners, and team members, focused on new solutions and the transformative power of HPE’s edge-to-cloud technology.

HPE’s CEO and President Antonio Neri is committed to a future that prioritizes edge-centricity, cloud-enablement, and data-driven approaches. Recent announcements demonstrated the translation of this vision into strategies, innovations, and benefits for customers.

The major news was HPE’s entry into the AI public cloud market, emphasizing their commitment to meeting evolving customer needs. Discussions with customers, partners, and experts reaffirmed HPE’s strength in edge-to-cloud strategies, leveraging advanced technologies for valuable insights and unprecedented actions.

Explore related questions

HPE earmarks $5.5 billion for a top-notch networking portfolio, including HPE Aruba access points and SD-WAN solutions. HPE GreenLake will provide unified and sustainable hybrid cloud experiences, expanded with new cloud solutions, including SaaS offerings, backup and machine learning capabilities, and improved NaaS options. HPE will enter the AI cloud market to make powerful AI training tools accessible. Finally, Hewlett Packard Enterprise GreenLake for Large Language Models will enable private training, fine-tuning, and deployment of large-scale AI models.

 

More Resources

See All Related Content