Garbage In. Gospel Out

AI will not make butterflies self-produce honey

We’ve all heard the pitch: AI will make butterflies self-produce honey and winters shorter. But we’ve also heard or experienced the truth: most AI projects stall out, deliver marginal value, or simply can’t keep pace with market demands.

While enterprises have experimented with AI, the result is often one of three sub-optimal outcomes: 

First, the 'shiny demo', such as a simple chatbot, that looks good to share the lonely cubicle with but delivers marginal business impact. Second, the 'misfires', projects with valid goals that stall at the Proof-of-Concept (POC) stage because they lack the foundational data or the AI structure needed for production accuracy and scale. Third, the 'ambition trap': overly broad initiatives that get caught in endless research and iteration cycles, consuming resources without ever delivering measurable market speed. 

The problem isn't the technology; it’s the structure. AI’s true power isn't magic; it's a disciplined, fact-based engineering process. The biggest competitive gap isn't having AI; it's the speed at which you can reliably deliver and adapt new intelligent capabilities to the market.

To move beyond simple tools and build an intelligent, automated enterprise, that isn’t held back by mere mortals (We know that is what you want), you need to stop chasing the hype and start building a secure, structured foundation. 

This foundation has three non-negotiable pillars. Get these right, and you don't just use AI - you build a strategic delivery engine that dramatically accelerates time to market (TTM) or faster moat digging, leaving competitors behind.

Pillar 1: The Data Bedrock (The Foundation of Trust)

Remember this: Every AI product is a data product first. AI automation is data flow.

"Garbage In, Gospel Out"

No, read it again. Not “Garbage Out.”

With generative AI every output looks like gospel, even the garbage one.

Bad data and wrong intelligence results in flawed decisions that are confidently embraced, due to implicit faith in algorithms and technology. 

This data foundation has to be an immutable source of truth, delivering all the data that is required, to provide context to the AI agents. But raw data itself isn’t enough. The main bottleneck to speed is often data accessibility stalled by gnarly data orchestration troubles that feel like pregnancy that never ends.

Every time someone says data orchestration, a few butterflies turn gray. What is data orchestration?

.It is simply about storing data in structures and formats that allow for easy retrieval and analysis. It is also about establishing lineage and trust scores for your information. By automating these pipelines, you ensure data is immediately clean, accessible, and, crucially, auditable. Such a data foundation that ensures data quality and flow can cut weeks off the initial development cycle before a single agent is birthed.

Data orchestration is what makes the collective hive mind of your enterprise available to AI.

Pillar 2: The Intelligence Pillar (The Foresight Engine) 

This pillar is where raw data transforms into actionable foresight. This is the crucial strategic leap from Descriptive Business Intelligence (BI) - just telling us what happened - to Prescriptive Intelligence - telling us what we should do and how. Advanced Analytics and Machine Learning (ML) algorithms generate the predictions and prescriptions that drive value.

But speed is the moat, innit?. Intelligence is perishable; if the market changes, your models decay. That’s why you need rigorous AI/ML Orchestration and MLOps. This factory floor for intelligence provides automated pipelines for training, validation, deployment, and crucial model drift monitoring. This means a data scientist can move from a tested model to a deployed API in hours, not weeks, preventing time wasted on troubleshooting stale systems and ensuring the intelligence remains fresh and relevant.

But wait a minute. Why are we talking about machine learning? Is that not dead? Did we not bury it? Did we not upgrade to agents? Well, that’s what they said. In reality, try forecasting inventory with agents.

Agents can ask the ML model to do the forecast and based on that tell your category manager that the ugly christmas sweater is likely to have ugly sales and give an alternative option to spend inventory dollars on. But it can’t forecast all by itself.

So, data science is alive and well. The modern AI is a pig that self-applies its own shades of lipsticks that it produces. Turns out the pig can produce some great shades when trained well.

Pillar 3: The AI Action Pillar (The Accelerated Delivery Engine) 

This is the decision and automation pillar, engineered specifically for maximizing the speed of delivery and time-to-market (TTM) for new business capabilities. It translates the clean intelligence from Pillar 2 into immediate, governed action.

The breakthrough here is the integration of Agentic AI for Rapid Workflow Integration. These aren't simple bots; they are abstracted 'action executors' given a business objective ("Maximize customer retention in Segment X"). The Agent then figures out the necessary steps - connecting to the CRM, checking inventory, issuing a personalized offer - without requiring custom code for every integration.

This Pillar drastically reduces TTM because:

Abstraction of Action: The Agent acts as a reusable system component, eliminating the need to custom-build complex API integrations or decision-flow logic for every new capability. This can reduce development time from months to days.

Dynamic Response: The system can autonomously observe, decide, and act on Pillar 2 intelligence in near real-time, delivering a competitive speed advantage that enables faster reaction to market shifts than any human-driven process could achieve.

Alright. In simple terms, it is good that agents (built on LLMs) understand when you tell in English what to do. They do that by talking to multiple systems, phantom-clicking several buttons and presenting to you in a neatly formatted table, what to do – as long as you know system prompts and evals. It is better than reading API docs and your SOAP documentation you dad wrote when he built the multi-generational company you are running now.

The 90-Day Challenge: From Scratch to Strategic Impact 

This three-Pillar foundation is not a decade-long cloud migration project. It is a strategic mandate that, with the right tools, platforms, and disciplined teams, can be operationalized fast.

We propose a 90-day challenge. 

By focusing on well-defined, well-scoped business use cases (like optimizing a specific marketing funnel or automating a defined compliance check), you can start from scratch and deliver demonstrable, positive business impact within one quarter.

The key to this speed is embracing the structure: trust Pillar 1 (data orchestration) for reliable data, rely on Pillar 2 (MLOps) for automated intelligence deployment, and leverage Pillar 3's Agentic AI (AI apps on top of the data and ML orchestration layers) for near-instant execution and workflow reinvention.

Governance and the Human Shift

This foundation demands a commitment to governance. 

Speed cannot compromise security or compliance. When Agentic AI makes decisions, trust and accountability are paramount. The system must include inherent explainability (XAI), robust audit trails, and clear Human-in-the-Loop mechanisms for high-stakes decisions, ensuring fast action is safe action.

Finally, this is an organizational transformation. It requires reskilling teams to govern high-speed Agentic systems and focusing development efforts on strategic workflow reinvention rather than manual coding and integration. Your people become sophisticated system governors and exception handlers, not task executors.

Ok, I am going to tell you what to do next:

  1. Pick 2 top enterprise systems you use

  2. Open them up to orchestrate a clean data pipe. We have tools to do this in under 30 days. Or you can ask Deloitte to do it for 50,000 Patagonia vests.

  3. On the side, use a fancy agentic tool like N8N to stick to the first automation use case. Before everyone finishes their high-fives and realizes that Bob from accounting still didn’t get the invoice updated on his Netsuite, connect that agent to Netsuite. How? Remember the data orchestration work? That’s how. But why? You show the promise and tell where it breaks. And show how it can be fixed. You already did. That’s how to win trust, dollars, and motivation across the board.

  4. Ditch N8N and get serious. Take an enterprise-class AI orchestration tool (we have one), build the next agent. 

  5. Continue building the orchestration of data across the other 5 systems that were built during World War II.

  6. Rinse, repeat.

See, AI is magic but it also is not. Data is boring, but is also what makes AI AI.

I want to end this essay on a poignant note but I think the previous sentence is sufficient.

Enjoy your Sunday!

Colleagues often like to rib the author Shrikanth Jagannathan, Chief Data Scientist and co-founder, Moative, about the day a dataset disagreed with him – and lost.