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The rise of generative AI in business: Generative AI is rapidly becoming a critical technology for businesses, requiring CEOs and other leaders to make informed decisions about its implementation and use.

  • Generative AI involves two core phases: training, where the model learns from curated data, and inference, where the model applies its learning to analyze, recognize, and respond.
  • Business leaders must balance cost considerations with the potential value that generative AI can deliver to their organizations, people, and customers.

Choosing the right foundation model: Selecting an appropriate foundation model (FM) or large language model (LLM) is crucial for determining the cost and capabilities of generative AI applications.

  • There is no one-size-fits-all approach to choosing a model, necessitating rigorous evaluation to balance price and performance.
  • Criteria for selection include latency, scalability, and suitability for specific organizational needs.
  • Experimenting with multiple models and involving stakeholders from various departments can lead to more informed technical and business decisions.

Customization techniques and their implications: Model customization is an important business decision that affects the accuracy and utility of generative AI applications.

  • Fine-tuning modifies the model to make its responses more relevant to specific use cases.
  • Retrieval-augmented generation (RAG) is a simpler, more cost-effective technique that optimizes output accuracy by retrieving data from external sources without modifying the model.
  • The choice of customization technique impacts both cost and complexity of implementation.

Leveraging data as a competitive advantage: Integrating organizational data with generative AI applications can transform generic tools into powerful, company-specific assets.

  • Customization techniques like RAG help models draw from diverse data stores to provide accurate, relevant results and personalized recommendations.
  • Business leaders may need to consider investing in upgrading data infrastructure to better fuel generative AI applications.
  • The condition and availability of data significantly affect the relevance of results, success of applications, and implementation costs.

Mitigating risks associated with generative AI: Implementing proper risk mitigation strategies is crucial for protecting an organization’s finances, brand reputation, and customer loyalty.

  • Context grounding is a customization technique that checks model output against verifiable sources, helping reduce bias and hallucinations.
  • Implementing effective guardrails and testing results against defined policies helps ensure accurate, relevant, and unbiased outputs.
  • According to Gartner, organizations that implement transparency, trust, and security in their AI models may see a 50% improvement in adoption, goal achievement, and user acceptance by 2026.

Holistic cost considerations: Business leaders need to consider all costs associated with generative AI implementation, beyond just the model itself.

  • Factors affecting cost include model choice, customization methods, testing, data preparation, and the anticipated volume of user interactions after scaling.
  • Inference costs can increase significantly for customer-facing applications available on the internet.

Creating value through generative AI: Business leaders should focus on the potential value that generative AI can deliver to their organization.

  • • Value can manifest as higher revenue, improved customer experiences, or breakthrough innovation.
  • • Consistently asking “What is the business value here?” throughout the generative AI journey can help keep organizations on track.

Collaborative approach to AI implementation: Business leaders who actively engage with their tech-focused colleagues are better positioned to guide their organizations through the generative AI journey.

  • This collaboration can lead to the creation of a viable generative AI roadmap.
  • It also helps in guiding the organization from initial experiments to production-grade applications that deliver significant value at scale and at the right cost.

Balancing technical and business perspectives: As generative AI continues to evolve, business leaders must strike a balance between technical considerations and broader organizational goals.

  • Understanding the technical aspects of generative AI allows leaders to make more informed decisions about its implementation and use.
  • By focusing on both the technological capabilities and the potential business impact, organizations can maximize the benefits of generative AI while minimizing risks and costs.
Technical Considerations for Business Leaders Operationalizing Gen AI

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