Data Engineering Podcast

Beyond Prompts: Practical Paths to Self‑Improving AI

62 snips
Mar 16, 2026
Raj Shukla, CTO at SymphonyAI and veteran applied AI leader, discusses building production-grade self-improving AI for regulated industries. He covers agentic architectures, feedback loops, and intelligent memory as a practical middle ground. He also talks about sandboxing, policy alignment, subagent code loops, model brittleness, and how owning memory and process graphs creates enterprise differentiation.
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INSIGHT

Differentiation Shifts To Knowledge And Process

  • Models are becoming commoditized; differentiation moves to the enterprise knowledge, process, and action context layers.
  • Raj emphasizes owning customer‑specific memory/knowledge files and process graphs as the true IP.
ADVICE

Test Model Upgrades Rigorously Before Swapping

  • Expect brittleness when changing foundation model versions and catch regressions before they reach users.
  • SymphonyAI evaluates repeatability and often must adjust prompts or retain small self‑hosted models for reliability.
ADVICE

Prepare The End‑To‑End Environment First

  • Prepare the full environment: ingest data, instrument triggers, digitize actions, and capture human feedback hooks.
  • Raj finds enterprises investing first in environment readiness and judged feedback pipelines before agents.
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