Some good best practices here on AI token cost optimization. None of these happens though without a deep understanding of the underlying work being done in a non-abstract way.
The ultimate implication is that a layer between the work itself and the underlying intelligence needs to deeply understand your workflows, context, and business process. Now, each individual company doing this on their own is unlikely to be effective at scale, so as a consequence, this is effectively the playbook for any applied AI company right now.
By evaling the models for the applied use cases, deeply understanding the domain, having tuned UX and features for the use case, and having the ability to support adoption and change (via FDEs), allow this layer to add a ton of value. And as a result, enterprises get higher ROI because you actually can get more intelligence per dollar by having optimal architecture and workflows.
There will be many horizontal and vertical versions of this approach. Huge opportunity right now.
- AI 토큰 비용 최적화를 위한 베스트 프랙티스를 소개합니다.
- 작업 프로세스와 비즈니스 맥락을 이해하는 것이 필수적입니다.
- 이는 AI 적용 기업이 따라야 할 전략이 됩니다.
- 모델 평가, 도메인 이해, UX 최적화가 가치를 더합니다.
- 최적 아키텍처를 통해 지능을 더 많이 얻을 수 있습니다.
- 수평적 및 수직적 접근 방식에 큰 기회가 있습니다.