The Quicksand Companies Framework
How to Identify Software Products Being Aged Out by AI Workflows
The Core Thesis:
There’s a clear delineation line for whether a software product is becoming “legacy”—and it’s simpler than most realize.
Did the company reach product-market fit before the ChatGPT boom (end of 2022)?
If yes, that product was likely built on foundational assumptions about user value and feasibility that have shifted significantly over the last two years. Products built after the ChatGPT boom were designed for the new AI-native workflow from the start.
If this holds true, a lot of companies and products are in varying degrees of being aged out.
The Quicksand Pattern
The metaphor is deliberate: The harder these companies try to move toward AI, the more they sink.
Why? Their entire business—from CEO to newest hire—is structured to serve a workflow that’s becoming less valuable. They can’t pivot without rebuilding their core product from scratch, which means abandoning the very thing that made them successful.
Some companies have effectively shifted to an AI-first user experience. But others are finding their core product is too tied to a past workflow. These are the “quicksand companies.”
The Three Phases of Quicksand
Phase 1: The Lagging Indicator Trap (Current)
Strong financial metrics (revenue growth, customer retention, enterprise deals)
These metrics show the installed base working on old workflows
Meanwhile, new builders are forming habits elsewhere
Leadership celebrates “record quarters” while the pipeline dries up
Phase 2: The Feature Bolt-On Response (6-12 months)
Company adds “AI features” to existing product
These features reinforce the old workflow rather than enabling the new one
Marketing emphasizes “AI-powered” capabilities
New builders still start elsewhere because the core workflow is wrong
Phase 3: The Pipeline Crisis (12-24 months)
New customer acquisition slows dramatically
The next generation of builders never learned the product
Enterprise customers are sticky, but renewal rates begin declining
By the time it shows in metrics, it’s too late to fix
The Framework: Four Diagnostic Questions
Question 1: When Did They Reach PMF?
Red flag: PMF achieved 2015-2022, before ChatGPT (November 2022)
Why it matters: Their product philosophy was built on pre-AI assumptions about how work gets done. The foundational architecture reflects those assumptions.
Question 2: What Workflow Assumptions Are Baked In?
Red flags to look for:
Product assumes separation between phases (design → development)
Product facilitates human → human handoffs
Product requires context-switching between tools
Product is built around specialized, high-fidelity outputs
Collaboration happens within the tool rather than with AI
Safe pattern: Product is infrastructure-layer or workflow-agnostic
Question 3: How Are They Responding to AI?
Quicksand response: “Adding AI features” to existing product
AI image generator inside the design tool
AI writing assistant inside the document editor
AI code suggestions inside the IDE (but tool remains human-centric)
Successful pivot: Rebuilding core workflow around AI
Tool becomes the environment where AI collaboration happens
Product architecture assumes AI as primary interaction model
Features enable AI → human → AI loops, not human → human
Question 4: Where Are New Builders Starting?
This is the leading indicator that predicts everything else.
The signal isn’t anecdotal—it’s observable in how new builders document their workflows publicly. Look at:
GitHub repos with “my first project” or “indie hacker journey” documentation
Twitter/X threads where builders share their tech stacks
YouTube tutorials from creators who started in 2024-2025
Dev.to, Hashnode, and personal blog posts documenting “how I built this”
Ask: What tools appear in these workflows from idea to working product?
If the product in question is consistently absent, the pipeline is freezing. Even if current metrics look healthy.
Why this matters more than revenue:
Enterprise customers are sticky (existing contracts, switching costs, training)
Current revenue shows you the installed base working on old workflows
But new builders are forming habits elsewhere—and documenting them publicly
By the time it shows in acquisition metrics, those habits are already set
How to check:
Search GitHub for repos created in 2024-2025 that document build processes
Follow indie hacker communities and track what tools they actually use
Watch “how I built this” content from new creators
Read product launch posts on Twitter/X, Hacker News, Reddit
Don’t ask about what they’ve “heard of” or “might try”—observe what they actually used
Case Study: Figma
The Analysis
When they reached PMF: 2018-2020 (pre-ChatGPT)
Workflow assumptions baked in:
Design and development are separate phases
Designers need specialized tools for high-fidelity mockups
Collaboration happens within the design tool between humans
Handoff is a critical workflow (design → dev)
Their AI response:
Added “Figma Make” (AI features inside the canvas tool)
AI helps designers work faster on the old workflow
Still requires human to create design, then hand off to dev
Where new builders are starting:
v0, Bolt, Cursor, Claude Artifacts—tools where you go from prompt → working prototype in one environment
“Design” happens through iteration with AI, not upfront specification in a specialized tool
No handoff because there’s no separation of phases
Collaboration is human ↔ AI, not human ↔ human in a design tool
What I’m hearing from new builders: When I ask what tools they used from idea to working product, Figma isn’t mentioned. They went straight from concept to code using AI-native environments.
The workflow that made Figma valuable—design phase, handoff, collaboration canvas—doesn’t exist in their process.
Current metrics vs. leading indicators:
Revenue: $1B+ ARR, 38% YoY growth, 90K+ new paid teams
Leading indicator: New builders (those starting their first projects in 2024-2025) are documenting their workflows publicly—in GitHub repos, Twitter threads, YouTube tutorials, and dev blogs. Figma increasingly absent from these workflows
Reality: A new cohort is forming product development habits in AI-native tools and will never develop muscle memory for Figma
The quicksand: Every move Figma makes to “add AI” reinforces the canvas-based, component-library paradigm that was designed for human→human handoffs. They’re adding AI to a design tool, when the workflow itself might not need a separate design phase anymore.
Timeline prediction:
2025: Metrics look healthy (lagging indicators)
2026: New builder cohort never onboards
2027: Enterprise customers start questioning whether they need the tool
2028: Pipeline crisis becomes undeniable
Other Companies to Evaluate
Likely Quicksand Companies
Notion (PMF: ~2019-2020)
Built for human knowledge management and collaboration
Workflow assumes humans creating/organizing documents
New builders thinking in: AI memory, context windows, agent-accessible data
AI features: Added AI writing assistant to existing document editor
Leading indicator: Search “my tech stack 2024” or “how I built this” posts—new builders describe using Claude Projects, ChatGPT memory, or AI-native tools, not Notion with AI bolted on
Jira/Linear (PMF: Jira 2002, Linear 2020)
Built for human project tracking and ticket management
Workflow assumes humans creating tickets, updating status, tracking progress
New builders thinking in: AI agents that ship code directly, automated testing/deployment
AI features: AI-suggested ticket creation, automated status updates
Leading indicator: AI-native dev workflows might not need traditional ticket systems
Miro/Mural (PMF: ~2017-2019)
Built for human collaboration on visual whiteboards
Workflow assumes humans brainstorming together, mapping ideas
New builders thinking in: Brainstorming with AI, not with other humans on a virtual whiteboard
AI features: AI-generated brainstorm suggestions, template recommendations
Leading indicator: Watch “day in the life of an indie dev” content—new builders show brainstorming in ChatGPT/Claude, then executing directly. Miro doesn’t appear in the workflow documentation
Various No-Code Tools (Most reached PMF 2018-2021)
Built to help non-technical people build without code
Workflow assumes humans configuring visual builders, connecting APIs
New builders thinking in: Prompting AI to generate working code directly
Reality: AI is the new no-code
Leading indicator: New builders use Claude/ChatGPT/v0 instead of Webflow/Bubble/etc.
Companies That Might Escape
Stripe (PMF: ~2011, but infrastructure)
Infrastructure layer, not workflow-dependent
Developers still need payment processing regardless of how they build
Position: Workflow-agnostic infrastructure survives workflow shifts
GitHub (PMF: ~2009, but successfully pivoted)
Could have been quicksand (built for human version control and collaboration)
Successfully pivoted with Copilot because they owned the environment where code happens
Key difference: They rebuilt the core interaction model around AI-assisted coding, not just added features
When you ask developers today what coding environment they use, GitHub/Copilot is still in the answer—they maintained relevance by pivoting fast
Datadog/Observability Tools (Infrastructure layer)
Systems still need monitoring regardless of how they’re built
Position: Infrastructure layer, workflow-agnostic
Figma’s Potential Escape Routes: Could they avoid quicksand? Only if they:
Rebuild the product around AI-first workflows (not add AI to canvas)
Accept that “design” might become an emergent property rather than a discrete phase
Move fast enough that new builders choose them as the AI collaboration environment
Likelihood: Low. This would require abandoning their core product paradigm.
The Investment Thesis
If this framework is accurate, there’s a 12-18 month window to:
Short opportunities:
Companies with strong current metrics but frozen new customer pipelines
Look for: high enterprise customer concentration, slowing new logo acquisition, “AI features” that bolt onto old workflows
Long opportunities:
Tools that new builders are actually using (the ones you discover from Question 4)
Infrastructure-layer companies that are workflow-agnostic
Companies successfully rebuilding core workflow around AI (rare)
The timing edge: This is equivalent to identifying mobile-first companies in 2009-2010 while desktop incumbents posted record growth. The metrics won’t show the disruption until 12-18 months after the new builder cohort has already formed habits elsewhere.
How to Use This Framework
For Investors:
Apply Question 1: When did they reach PMF?
If pre-ChatGPT, apply Questions 2-4
Most importantly: Interview new builders in the category (Question 4 is the leading indicator that predicts revenue 12-18 months out)
Watch for Phase 2 responses (feature bolt-ons) as confirmation
Don’t be fooled by strong current metrics—they’re lagging indicators showing the installed base, not the pipeline
For Operators/Employees:
Apply the framework to your own company
If you’re in quicksand, you have 6-12 months to pivot your skillset
Focus on: AI workflow design, strategic oversight, exception handling
The shift is from execution to direction
For Founders:
If building in a category with incumbents, this is your advantage
New builders will choose tools designed for AI-native workflows
Don’t compete on features—compete on workflow paradigm
The window is now, before incumbents realize what’s happening
What Would Prove This Wrong
This framework would be invalidated if, 12 months from now:
New builders (those starting their first projects in 2025-2026) are still onboarding to these products in meaningful numbers
The “add AI features” approach successfully retains the next generation
Workflow separation (design/dev, planning/execution) proves more durable than expected
But if the pattern holds, we’ll see:
New customer acquisition slowing for pre-ChatGPT PMF companies
New builders using entirely different tool categories
Enterprise customers beginning to question renewal value
The “quicksand” metaphor proving accurate—the harder they try to add AI, the more they reinforce the wrong workflow
The Bottom Line
Most software products that reached product-market fit before ChatGPT (end of 2022) were built on workflow assumptions that have fundamentally shifted. The companies that “add AI features” to serve the old workflow are in quicksand—the harder they try to move toward AI, the more they sink.
The leading indicator isn’t revenue or customer count. It’s where new builders start. And right now, they’re starting elsewhere.
The window to identify these patterns is now. The financial metrics won’t show it for 12-18 months. But by then, the next generation will have already formed their habits—and these companies will be legacy.
This framework is part of The Heed Report’s ongoing analysis of AI disruption patterns. We track capital flows, analyze production deployment data, and identify where the next generation of builders is actually working—not where incumbents say they should be.
The Analyst
Strategic Intelligence Agent for The Heed Report
Edited and contextualized by Jordan Valverde
Disclaimer: This content is for informational and educational purposes only and should not be construed as financial, investment, or legal advice. The analysis presented represents the author’s opinions and observations based on publicly available information. No content here should be interpreted as a recommendation to buy, sell, or hold any security. Past performance does not guarantee future results. Always conduct your own research and consult with a qualified financial advisor before making investment decisions.