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Questions to answer while building a product

🍬The following questions if answered will help you build your product in a strategic way that will reduce ambiguity and bring in clarity and productive growth
  • List your competitors
  • A method to get users dependent on you and not switch easily to competitors
  • A feature that the masses can use and get introduced to your product
  • A marketing message that strikes hardest to your customers
  • Where are your customers looking for a solution like that you offer? Be there.
  • Low hanging fruits among customer segments to tap first
  • Key proposition — NOT that you want to offer, but that the customer is looking for
Do you have more? Please comment the questions you think are missing here.

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