
Beyond the Chatbot: Practical Frameworks for Agentic Capabilities in SaaS
AI Engineering Podcast
00:00
Innovative agent deployments in SaaS
Preeti shares examples: MCP-hosted multi-agent backends, agents-as-code, planner-with-agent-tools, and client-agnostic UIs.
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Transcript
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Summary
In this episode product and engineering leader Preeti Shukla explores how and when to add agentic capabilities to SaaS platforms. She digs into the operational realities that AI agents must meet inside multi-tenant software: latency, cost control, data privacy, tenant isolation, RBAC, and auditability. Preeti outlines practical frameworks for selecting models and providers, when to self-host, and how to route capabilities across frontier and cheaper models. She discusses graduated autonomy, starting with internal adoption and low-risk use cases before moving to customer-facing features, and why many successful deployments keep a human-in-the-loop. She also covers evaluation and observability as core engineering disciplines - layered evals, golden datasets, LLM-as-a-judge, path/behavior monitoring, and runtime vs. offline checks - to achieve reliability in nondeterministic systems.
Announcements
Interview
Contact Info
Parting Question
Links
The intro and outro music is from Hitman's Lovesong feat. Paola Graziano by The Freak Fandango Orchestra/CC BY-SA 3.0
In this episode product and engineering leader Preeti Shukla explores how and when to add agentic capabilities to SaaS platforms. She digs into the operational realities that AI agents must meet inside multi-tenant software: latency, cost control, data privacy, tenant isolation, RBAC, and auditability. Preeti outlines practical frameworks for selecting models and providers, when to self-host, and how to route capabilities across frontier and cheaper models. She discusses graduated autonomy, starting with internal adoption and low-risk use cases before moving to customer-facing features, and why many successful deployments keep a human-in-the-loop. She also covers evaluation and observability as core engineering disciplines - layered evals, golden datasets, LLM-as-a-judge, path/behavior monitoring, and runtime vs. offline checks - to achieve reliability in nondeterministic systems.
Announcements
- Hello and welcome to the AI Engineering Podcast, your guide to the fast-moving world of building scalable and maintainable AI systems
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- Your host is Tobias Macey and today I'm interviewing Preeti Shukla about the process for identifying whether and how to add agentic capabilities to your SaaS
Interview
- Introduction
- How did you get involved in machine learning?
- Can you start by describing how a SaaS context changes the requirements around the business and technical considerations of an AI agent?
- Software-as-a-service is a very broad category that includes everything from simple website builders to complex data platforms. How does the scale and complexity of the service change the equation for ROI potential of agentic elements?
- How does it change the implementation and validation complexity?
- One of the biggest challenges with introducing generative AI and LLMs in a business use case is the unpredictable cost associated with it. What are some of the strategies that you have found effective in estimating, monitoring, and controlling costs to avoid being upside-down on the ROI equation?
- Another challenge of operationalizing an agentic workload is the risk of confident mistakes. What are the tactics that you recommend for building confidence in agent capabilities while mitigating potential harms?
- A corollary to the unpredictability of agent architectures is that they have a large number of variables. What are the evaluation strategies or toolchains that you find most useful to maintain confidence as the system evolves?
- SaaS platforms benefit from unit economics at scale and often rely on multi-tenant architectures. What are the security controls and identity/attribution mechanisms that are critical for allowing agents to operate across tenant boundaries?
- What are the most interesting, innovative, or unexpected ways that you have seen SaaS products adopt agentic patterns?
- What are the most interesting, unexpected, or challenging lessons that you have learned while working on bringing agentic workflows to SaaS products?
- When is an agent the wrong choice?
- What are your predictions for the role of agents in the future of SaaS products?
Contact Info
Parting Question
- From your perspective, what are the biggest gaps in tooling, technology, or training for AI systems today?
Links
- SaaS == Software as a Service
- Multi-Tenancy
- Few-shot Learning
- LLM as a Judge
- RAG == Retrieval Augmented Generation
- MCP == Model Context Protocol
- Loveable
The intro and outro music is from Hitman's Lovesong feat. Paola Graziano by The Freak Fandango Orchestra/CC BY-SA 3.0
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