
AI Engineering Podcast Beyond the Chatbot: Practical Frameworks for Agentic Capabilities in SaaS
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Dec 29, 2025 Preeti Shukla, a seasoned product and engineering leader with a focus on generative AI and SaaS, dives into the operational challenges of integrating agentic capabilities. She discusses crucial factors like latency, cost control, and data privacy in multi-tenant environments. Preeti emphasizes the importance of starting with internal pilots and outlines frameworks for choosing models and deployment strategies. She also tackles the complexities of evaluation and monitoring in AI systems, offering valuable insights on avoiding confident hallucinations and ensuring reliability.
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SaaS Forces Deterministic Expectations On Agents
- SaaS requires agents to meet strict delivery constraints like latency, cost, and tenant isolation.
- Agents must align with SLA, unit economics, and privacy expectations to be viable in SaaS.
Match Models To SaaS Segment And Use Case
- Segment use cases by SaaS type (B2C, B2B, enterprise) to pick models and strategies.
- Use cheaper classifiers, RAG, and capability routing to control cost for complex workflows.
Roll Out Agents With Graduated Autonomy
- Start with internal adoption and low-risk automation before exposing agents to customers.
- Roll out graduated autonomy: proven ROI automations first, then more complex workflows later.
