
Abstract
A recent study from Cisco highlighted how unprepared CEOs are regarding AI adoption. Key concerns include inadequate infrastructure and safety/security issues. Cisco’s response to these challenges includes the Secure AI Factory in partnership with Nvidia. This blog explores how Alkira’s Network Infrastructure-as-a-Service complements and enhances the capabilities of solutions like the Secure AI Factory, enabling enterprises to fully harness the potential of AI while addressing their infrastructure and security needs.
Introduction
As AI becomes increasingly integral to business operations, enterprises face significant challenges in preparing their infrastructure and ensuring security. The Cisco study found that 97% of CEOs are excited about AI, but only 1.7% feel prepared. The primary reasons cited for this unpreparedness are insufficient infrastructure and safety/security concerns. In response, Cisco announced a partnership with Nvidia to create the Secure AI Factory, a datacenter solution designed specifically for AI workloads. While this partnership addresses critical needs, it does require significant capital investment. Alkira’s Network on-demand network infrastructure offers a cost-effective approach by providing a unified, scalable, and secure network which meets the demands of modern AI applications. This blog delves into how network infrastructure as-a-service helps enterprises overcome the infrastructure and security challenges associated with AI adoption.
1. Infrastructure Challenges in AI Adoption
Current State:
- Complex, inefficient and Costly: Traditional hardware-based networking environments are often not agile enough to support the high-performance demands of AI workloads. This complexity coupled with prohibitive operational costs hinder the ability of enterprises to optimize their AI operations.
- Limited Scalability: Many enterprises struggle with scaling their infrastructure to meet the fluctuating demands of AI, particularly during model training and inferencing.
- Dependence on Hyperscalers: Companies are reluctant to rely solely on hyperscalers for their AI infrastructure due to concerns about data sovereignty and control.
Alkira’s Solution:
- Unified Network Fabric: Alkira’s network infrastructure provides a unified global network fabric that abstracts the complexity of connecting on-premises and cloud resources, making it easier for enterprises to build and manage AI-ready infrastructure.
- Dynamic Resource Allocation: The platform supports dynamic scaling of network resources, allowing enterprises to adjust their infrastructure seamlessly as AI workloads grow or change.
- Flexibility for Enterprises: Alkira’s network infrastructure supports both on-premises and cloud environments, enabling enterprises to design AI infrastructure that aligns with their specific needs, including those who prefer not to rely on hyperscalers.
Benefits:
- Simplified Infrastructure Management: By providing a unified and scalable network backbone, Alkira reduces the complexity of managing network infrastructure for AI, allowing enterprises to focus on innovation rather than network management.
- Optimal Performance: Utilizing resources on-demand optimizes performance and cost for AI workloads, supporting both model training and inferencing.
- Visibility and Control: A single control consul gives network operators full visibility across all environments and the ability to fine-tune their AI workloads.
2. Safety and Security Challenges in AI Adoption
Current State:
- Security Concerns: Safety and security are major barriers to AI adoption. Enterprises are concerned about the potential negative effects of AI on their systems if they are not adequately secured.
- Trust Issues: If enterprises do not trust their AI systems, they are less likely to adopt and fully utilize them.
Alkira’s Solution:
- Zero-Trust Security Architecture: Alkira incorporates a zero-trust security model into its network fabric, ensuring secure access and data transmission across all connected environments. This is crucial for protecting AI workloads and data.
- Segmentation: Alkira allows the ability to isolate traffic through segmentation, allowing enterprises to isolate traffic between users, applications, and environments to ensure LLM workloads remain secure and compliant.
- Policy Enforcement: allows enterprises to apply fine-grained controls with agility across multi-cloud and hybrid environments, ideal for managing LLM data flows.
- Integrated Security Services: The platform supports integrated security services like firewalls and intrusion detection systems, enhancing network security without the need for separate deployments.
- Compliance and Governance: Alkira’s centralized management capabilities enable enterprises to enforce security policies and meet regulatory requirements across their AI infrastructure.
Benefits:
- Enhanced Security: By implementing a zero-trust security model and integrated security services, Alkira ensures that AI systems are protected against threats, fostering trust and encouraging adoption.
- Simplified Compliance Management: Centralized policy management helps enterprises maintain compliance with industry standards and regulations, reducing the risk of non-compliance penalties.
- Reduced Security Overhead: Alkira’s private fabric minimize the operational overhead of managing security for AI infrastructure, allowing enterprises to focus on their core AI initiatives.
3. Complementary Role of Alkira’s network infrastructure with the Secure AI Factory
Secure AI Factory Overview:
- AI-Optimized Datacenters: The Secure AI Factory, a partnership between Cisco and Nvidia, aims to create datacenters specifically designed for AI workloads, enabling enterprises to harness the full potential of AI.
- Focus on Security and Performance: This solution emphasizes both the security and performance required for AI operations, supporting both model training and inferencing.
How Alkira Enhances the Secure AI Factory:
- Global Network Connectivity: Alkira’s extensive network of Cloud Exchange Points (CXPs) ensures low latency and high performance across different geographies, complementing the Secure AI Factory’s focus on performance.
- Seamless Integration: Alkira’s unified network fabric can seamlessly integrate the Secure AI Factory with other cloud and on-premises resources, providing a comprehensive AI infrastructure solution.
- Scalability and Flexibility: Alkira’s dynamic resource allocation and subscription-based model enable enterprises to scale their AI infrastructure as needed, enhancing the scalability offered by the Secure AI Factory.
Benefits:
- Comprehensive AI Infrastructure: By combining the Secure AI Factory with Alkira’s network infrastructure, enterprises can create a comprehensive, secure, and scalable AI infrastructure that meets their specific needs.
- Enhanced Global Operations: The global reach of Alkira’s network ensures that enterprises can support AI operations across multiple regions, enhancing the value of the Secure AI Factory.
- Simplified Management: Alkira’s centralized management and automation capabilities simplify the management of a complex AI infrastructure, reducing the operational burden on enterprises.
4. Use Cases and Practical Applications
Enterprise AI Operations:
- Scenario: A global enterprise wants to deploy AI models across multiple regions while ensuring high performance and security.
- Solution with Alkira network infrastructure: The enterprise can use the Secure AI Factory for its AI-optimized datacenters and leverage Alkira’s network infrastructure for global connectivity and security.
- Benefits: The combination of the Secure AI Factory and Alkira’s network infrastructure provides a high-performance, secure, and scalable AI infrastructure that supports global operations.
Hybrid AI Environments:
- Scenario: An organization operates a mix of on-premises and cloud resources for AI workloads and requires seamless connectivity and security across these environments.
- Solution with Alkira network infrastructure: Alkira’s network infrastructure ensures efficient and secure connectivity between on-premises and cloud resources, complementing the Secure AI Factory’s capabilities.
- Benefits: The organization achieves a unified, secure, and high-performance AI infrastructure across hybrid environments.
AI Model Training and Inferencing:
- Scenario: A company needs to train AI models in its datacenters and perform inferencing in a distributed manner across multiple regions.
- Solution with Alkira network infrastructure: The company can use the Secure AI Factory for model training and Alkira’s network infrastructure for distributing inferencing across its global network.
- Benefits: The company gains a scalable and secure infrastructure that supports both model training and distributed inferencing, enhancing overall AI operations.
Conclusion
The excitement about AI among CEOs is clear, but the challenges of inadequate infrastructure and security concerns remain significant barriers to adoption. Cisco’s Secure AI Factory, in partnership with Nvidia, addresses these challenges by providing AI-optimized datacenters with a focus on security and performance. Alkira’s Backbone as a Service (network infrastructure) complements this solution by offering a unified, scalable, and secure network backbone that enhances global connectivity and simplifies management. Together, these solutions enable enterprises to fully harness the potential of AI, overcoming the infrastructure and security challenges that have held them back. By leveraging both the Secure AI Factory and Alkira’s network infrastructure, enterprises can confidently embrace AI and drive innovation in their operations.
About Alkira
Alkira is a leading provider of Network Infrastructure-as-a-Service solutions, empowering enterprises to build, manage, and scale their networks with ease through its comprehensive as-a-service platform.