ChatGPT Marketing Strategy in 20 Minutes: Real Prompts and Error Breakdown
Most marketers complain that ChatGPT outputs 15 pages of fluff instead of a strategy — and they're right, if they ask 'write a marketing strategy for SaaS.'…
AI-processed from Habr AI; edited by Hamidun News
Marketers who build strategies with ChatGPT in 20 minutes, and those who get 15 pages of fluff — do the same thing, but in completely different ways. The difference lies in the structure of requests and understanding what AI does well and what requires human judgment.
Why ChatGPT produces banalities
The problem isn't the neural network — it's the prompt. When a marketer writes "write a marketing strategy for SaaS," the model doesn't know your audience, competitors, or current product position in the market. In response, it outputs a universal structure — a nicely formatted set of tips from any textbook. AI works like an intelligent assistant, not a strategist with access to your CRM.
To get a useful result, you first need to give it context: a description of a typical customer, examples of real objections heard during demos, the main differences from competitors. This is called contextual prompting — and this is where most marketers stop too early.
"A neural network doesn't know your business.
Your task is to explain it in the way you'd explain it to a new marketer on their first day of work."
Working workflow: a chain instead of a single request
Instead of one large request, a chain of short requests works more effectively. Each step builds on the result of the previous one and clarifies context for the next.
Typical structure for a SaaS product:
- Product and audience: "Here's our product, here's the ICP, here are three main customer pain points — what we hear at every demo"
- Competitors: "Here are three key competitors and their positioning. How are we different?"
- Positioning: "Suggest 3 positioning options — from conservative to aggressive"
- Channels: "Which channels work for B2B SaaS with this ICP? Explain the logic for each choice"
- Criticism: "What looks weak in this strategy? Where might we be wrong?"
People often skip the last step — and that's a mistake. The model is good at finding holes in its own reasoning if you directly ask it to take a skeptical position. This is one of the most underrated techniques for working with ChatGPT on strategic tasks.
Where AI still falls short
Honest answer: where data is required that the model doesn't have. Conversion forecasts, specific market figures, audience reaction to a new offer — AI doesn't calculate these, it guesses based on general patterns. If you take these figures as reality, the strategy ends up built on beautiful assumptions.
The second trap is the tendency to agree. By default, the model supports the user. Write "I think we need TikTok" — and you'll get a detailed justification. It's easy to avoid this: ask the reverse question. "Why might TikTok not be suitable for B2B SaaS with a 3-month sales cycle?" — that kind of answer will be much more useful.
The third problem is hallucinations in competitive analysis. If you ask ChatGPT to tell you about competitors "from memory," it often makes up details about their features and pricing. The rule is simple: you need to insert all information about competitors into the prompt yourself, not trusting the model to search the internet without verification.
What this means
ChatGPT doesn't replace a marketer — it removes the work of starting from scratch and accelerates structural thinking. Teams that learned to give AI the right context and structure dialogue in chains of requests spend 3–5 times less time on strategy drafts.
The key isn't the tool, but how exactly you talk to it — and what you're willing to explain to it.
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