07 May 2025
Cooking Food & Drink

cooking by image, user upload image and receive recipe to know how to ...

...cook

Confidence
Engagement
Net use signal
Net buy signal

Idea type: Swamp

The market has seen several mediocre solutions that nobody loves. Unless you can offer something fundamentally different, you’ll likely struggle to stand out or make money.

Should You Build It?

Don't build it.


Your are here

Your idea of cooking by image, where users upload an image and receive a recipe, falls into a crowded space. We've identified 8 similar products, indicating a 'Swamp' category where many mediocre solutions exist. The average engagement, measured by comments, is low (2 comments per product), suggesting that while these products exist, they don't generate a lot of buzz. There's no significant positive or negative signal regarding people wanting to use or buy such products, indicating a neutral sentiment. Given the number of similar products and low engagement, it may be challenging to stand out without a fundamentally different approach. You're entering a space where many have tried and seemingly not succeeded in capturing significant user attention, so tread carefully.

Recommendations

  1. Before diving in, thoroughly research why existing image-to-recipe solutions haven't taken off. Analyze user reviews, identify pain points, and understand the limitations of current AI and image recognition technologies in the cooking domain. Are the recipes inaccurate? Is the image recognition unreliable? Understanding the failures of your predecessors is crucial.
  2. If you still want to proceed, identify a niche audience with specific dietary needs or cooking preferences (e.g., vegan baking, keto-friendly meals, gluten-free Asian cuisine). Catering to a specific group allows you to tailor the AI's training data and improve recipe accuracy and relevance. Specialization can also make your marketing efforts more focused and effective.
  3. Consider developing tools or APIs that could be integrated into existing recipe platforms or food inventory management systems. Rather than building a standalone app, you could enhance established services with your image-to-recipe technology. This approach could lower your customer acquisition costs and speed up adoption.
  4. Since image accuracy seems to be a concern, explore how your app can use user feedback to improve over time. As noted in the Tomaito criticism summary, image accuracy is key to recipe generation so the app should proactively ask users if the recipe matched the ingredients in the photo. Or, maybe the app could suggest alternative recipes with similar ingredients.
  5. Given the concerns about the reliability of AI-generated recipes, focus on transparency and user education. Clearly communicate the limitations of the AI, provide disclaimers about potential inaccuracies, and encourage users to double-check ingredients and instructions. Build trust by being honest about the technology's capabilities.
  6. Instead of focusing solely on generating full recipes, explore using image recognition to identify ingredients and suggest complementary dishes or cooking techniques. This could be a more practical and reliable application of the technology, providing value without promising perfect recipe generation.

Questions

  1. How can you guarantee a certain level of recipe accuracy, and what measures will you take to mitigate the risk of incorrect or unsafe cooking instructions?
  2. Given the concerns about AI recipe generation, how can you build trust with users and ensure they perceive your product as a reliable and valuable cooking tool?
  3. Considering the existence of multiple similar products, what specific, defensible advantage will your solution offer that will attract and retain users in a crowded market?

Your are here

Your idea of cooking by image, where users upload an image and receive a recipe, falls into a crowded space. We've identified 8 similar products, indicating a 'Swamp' category where many mediocre solutions exist. The average engagement, measured by comments, is low (2 comments per product), suggesting that while these products exist, they don't generate a lot of buzz. There's no significant positive or negative signal regarding people wanting to use or buy such products, indicating a neutral sentiment. Given the number of similar products and low engagement, it may be challenging to stand out without a fundamentally different approach. You're entering a space where many have tried and seemingly not succeeded in capturing significant user attention, so tread carefully.

Recommendations

  1. Before diving in, thoroughly research why existing image-to-recipe solutions haven't taken off. Analyze user reviews, identify pain points, and understand the limitations of current AI and image recognition technologies in the cooking domain. Are the recipes inaccurate? Is the image recognition unreliable? Understanding the failures of your predecessors is crucial.
  2. If you still want to proceed, identify a niche audience with specific dietary needs or cooking preferences (e.g., vegan baking, keto-friendly meals, gluten-free Asian cuisine). Catering to a specific group allows you to tailor the AI's training data and improve recipe accuracy and relevance. Specialization can also make your marketing efforts more focused and effective.
  3. Consider developing tools or APIs that could be integrated into existing recipe platforms or food inventory management systems. Rather than building a standalone app, you could enhance established services with your image-to-recipe technology. This approach could lower your customer acquisition costs and speed up adoption.
  4. Since image accuracy seems to be a concern, explore how your app can use user feedback to improve over time. As noted in the Tomaito criticism summary, image accuracy is key to recipe generation so the app should proactively ask users if the recipe matched the ingredients in the photo. Or, maybe the app could suggest alternative recipes with similar ingredients.
  5. Given the concerns about the reliability of AI-generated recipes, focus on transparency and user education. Clearly communicate the limitations of the AI, provide disclaimers about potential inaccuracies, and encourage users to double-check ingredients and instructions. Build trust by being honest about the technology's capabilities.
  6. Instead of focusing solely on generating full recipes, explore using image recognition to identify ingredients and suggest complementary dishes or cooking techniques. This could be a more practical and reliable application of the technology, providing value without promising perfect recipe generation.

Questions

  1. How can you guarantee a certain level of recipe accuracy, and what measures will you take to mitigate the risk of incorrect or unsafe cooking instructions?
  2. Given the concerns about AI recipe generation, how can you build trust with users and ensure they perceive your product as a reliable and valuable cooking tool?
  3. Considering the existence of multiple similar products, what specific, defensible advantage will your solution offer that will attract and retain users in a crowded market?

  • Confidence: High
    • Number of similar products: 8
  • Engagement: Low
    • Average number of comments: 2
  • Net use signal: 25.5%
    • Positive use signal: 29.1%
    • Negative use signal: 3.6%
  • Net buy signal: 0.0%
    • Positive buy signal: 0.0%
    • Negative buy signal: 0.0%

This chart summarizes all the similar products we found for your idea in a single plot.

The x-axis represents the overall feedback each product received. This is calculated from the net use and buy signals that were expressed in the comments. The maximum is +1, which means all comments (across all similar products) were positive, expressed a willingness to use & buy said product. The minimum is -1 and it means the exact opposite.

The y-axis captures the strength of the signal, i.e. how many people commented and how does this rank against other products in this category. The maximum is +1, which means these products were the most liked, upvoted and talked about launches recently. The minimum is 0, meaning zero engagement or feedback was received.

The sizes of the product dots are determined by the relevance to your idea, where 10 is the maximum.

Your idea is the big blueish dot, which should lie somewhere in the polygon defined by these products. It can be off-center because we use custom weighting to summarize these metrics.

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Got random ingredients lying around? CookThis is here to help you use them up. Type them in or scan with the camera (no barcodes needed!), and CookThis will generate a tasty recipe for you. No more food waste or boring meals!

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