Not every product needs AI at its core. Learn when to build AI-native products versus enhancing existing workflows with intelligent features.
Not every product needs AI at its core. Some products are fundamentally enabled by AI—they couldn't exist without it. Others benefit from AI features that enhance an already-solid value proposition.
Understanding where your product falls on this spectrum shapes everything from technical architecture to go-to-market strategy.
These products exist because of AI. Remove the AI, and there's no product.
Examples: GitHub Copilot, Midjourney, ChatGPT, Jasper
Characteristics:
When to go AI-first:
Risks:
These products have strong value propositions without AI, but AI makes them better.
Examples: Notion AI, Grammarly, Figma with AI features, Shopify's AI tools
Characteristics:
When to augment:
Risks:
Many successful products start AI-augmented and become more AI-first over time:
This approach de-risks the journey while building toward an AI-native future.
Ask yourself:
Is the problem solvable without AI?
What's your AI expertise?
How stable is the AI capability you need?
What's your competitive moat?
For AI-first products:
For AI-augmented products:
There's no shame in being AI-augmented. Some of the most successful products add AI thoughtfully rather than leading with it.
The right choice depends on your problem, your team, your market, and your risk tolerance. What matters is being intentional about which path you're on.
AI-first products have AI at their core—the product wouldn't exist without it (like ChatGPT or image generators). AI-augmented products add AI to enhance existing functionality—like autocomplete in email or smart recommendations in e-commerce. The choice affects everything from team composition to business model.
Choose AI-first when: the problem is uniquely solvable by AI, you have access to differentiated data, your team has deep ML expertise, and you can tolerate longer development cycles. AI-first requires significant upfront investment but can create strong moats.
Risks include: longer time-to-market while competitors ship simpler solutions, high burn rate on ML talent and infrastructure, dependency on model performance that may not meet user expectations, and difficulty pivoting if the AI approach doesn't work. Many successful AI companies started AI-augmented and evolved.
Let's discuss how we can help bring your ideas to life with thoughtful engineering and AI that actually works.
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