The rapid development of AI technology is transforming the software stack, with new tools and frameworks emerging to help developers navigate the complexities of building AI applications. This article explores the concept of the AI stack and the key components needed to create intelligent software solutions.
Defining the AI stack: The AI stack consists of multiple layers, each playing a crucial role in the development and deployment of AI applications:
Navigating the AI stack effectively: Building successful AI applications requires careful navigation of the AI stack and the use of high-performance tools:
- AI databases that can handle both structured and unstructured data are essential for processing and analyzing AI-ready data in real-time.
- Developers need to ensure that decisions coming out of the stack are accurate, precise, explainable, and understandable while maintaining efficiency in resource and power usage.
- Companies like MongoDB are working to enable developers to use closed or open-source large language models (LLMs) and proprietary data to build AI applications by securely unifying operational, unstructured, and AI-related data.
Overcoming the “false finish line” in AI projects: Many companies face challenges when moving beyond prototypes and addressing the full AI stack for production-ready AI:
Simplifying the AI development process: As the AI stack grows in complexity, there is a growing need for simplification and guidance tools to abstract away unnecessary complexity:
- Observability tools and automation functions built into databases and development environments can help streamline the AI development process.
- Integrations like Pinecone Connect allow developers to manage resources directly from other platforms, reducing the need to switch between multiple tools and environments.
- Partnerships between AI-focused companies are emerging to create more seamless workflows and experiences for developers building AI applications.
Analyzing the future of the AI stack: As the AI industry continues to evolve, there is a clear need for wider and deeper connection points, extended simplification, and more widespread standardization:
- The AI stack is both lengthening and broadening, with new tools and frameworks constantly emerging to support the development of intelligent applications.
- Simplification and automation will be critical in managing the growing complexity of the AI stack, enabling developers to focus on building innovative solutions.
- Standardization efforts will be essential in ensuring interoperability between different components of the AI stack and promoting collaboration within the AI community.
As the AI stack continues to mature and evolve, developers and organizations must stay informed about the latest tools, frameworks, and best practices to successfully navigate this rapidly-changing landscape and build powerful, production-ready AI applications.
A Journey Up (And Down) The AI Stack