Industry wide view | GenAI


Examples of Generative AI in industry

Generative AI for Fashion Vertical

How Fashion Industry is revolutionzed

ChatGPT can assist human who know how to build a fashion product. If you expect that someone who has never built a fashion product and do not know much, will be able to simply ask chatGPT and ChatGPT will build product, you may be disappointed

  • What are latest fashiion trends? ChatGPT can present this info and assist
  • What are fabric available that have low waste and are eco friendly
  • Who are manufacturers of such fabric (use few fabric from top)
  • Wht are tech pack software (Tech Pack software are used in fashion industry for design - measurement, color, finishing etc.
  • How much ime it take to sew a suit with [material you have chosen above]
  • how much material/clothing is required to sew a man suit with [material ou have selected]
  • What are other material required for mensuit that goes well with [material selected above]
  • What kind of measurment I need to collect and use in tech pack software
  • What are various kind of sizes popular in men's suite
  • For what kind of sizes people use custom tailoring
  • Few other examples that can be used in fashion are:

  • What did people of age 20-24 wear on marriage occasion
  • In 1990 movies what were common type of suites male actor wore
  • In addition to above ChatGPT can help write product descriptions. Customer read description, see images make decision whether to buy product or not

  • ChatGpt can write description in multiple ways

  • It can generate images

  • ChatGPT impact on Social Media in Fashion industry

    Social media play important role in fashion industry.

  • Generate social media post, tweet that aligns with your fashion product
  • Generate images for people wearing your new product
  • Generate social media post that are engaging to users

  • ChatGPT impact on Customer support in Fashion industry

    ChatGPT can assist Customer support in Fashion industry

  • Handle variety of customr inquiries
  • Handle order management e.g. send me trosuser but no shirt
  • Available all time to answer customer question irrespective of time zone

  • Fashion company is not limited by number of human agent
  • Customer support agent can participate in engaging discussion with customer without gettng tired
  • It can even translate and understand customer tone/language and reply appropriately
  • Example Nordstrom virutal assitant Nordy can help customer find right size, styling tipcs

    Fifth avanue virtul assistan Sak provide advice on trends, styling avice and recommend product


    ChatGPT - Virtual Styling assistant in Fashion industry

    ChatGPT can provide virtual styling assistant to capture customer preference and build customized product

  • Interact with customer to ask prefernces - color, body type, occasion for which outfit is needed
  • Make suggstion related to outfit for occassion, body type
  • Further provide suggestion and help customer choose accessories, shoes with outfit/jewelry
  • Virtual assistant can also use past purchases to suggest what customer have prefered to bought, related product
  • After purchase, guide customer thru checkout, delivery steps.
  • If customer want to make eco friendly choices, virtual assistant can help
  • If customer has allergies etc, it may be able to suggest clothig material























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