Need for Contextualized, Reliable and Cost-Effective Solutions Is Driving the Shift Toward Small Task-Specific AI Models
By commercializing their proprietary models, enterprises can create new revenue streams while simultaneously fostering a more interconnected ecosystem.
Implementing Small Task-Specific AI models
Enterprises looking to implement small task-specific AI models must consider the following recommendations:
- Pilot Contextualized Models: Implement small, contextualized models in areas where business context is crucial or where LLMs have not met response quality or speed expectations.
- Adopt Composite Approaches: Identify use cases where single model orchestration falls short, and instead, employ a composite approach involving multiple models and workflow steps.
- Strengthen Data and Skills: Prioritize data preparation efforts to collect, curate and organize the data necessary for fine-tuning language models. Simultaneously, invest in upskilling personnel across technical and functional groups such as AI and data architects, data scientists, AI and data engineers, risk and compliance teams, procurement teams and business subject matter experts, to effectively drive these initiatives.