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hugging for a CEO just tweeted that they are trying to build a Twitter bot that automatically creates alt text for images for accessibility at the hugging face hackathon so this problem in machine learning is called an image captioning problem where you have got an image and you want to generate a text that can describe the image and this is quite an important thing for accessibility a lot of times when you upload a picture on the internet people who can see can see the image but a lot of people who cannot see who is visually impaired they also use the internet and these alt texts can help them see the image through the words that you have added to the image and also for SEO search engine optimization these texts could be really helpful so to make it easier for you to pick the next best model the state of the model for image captioning I am going to compare three different image captioning model of two different sizes weamp;#39;re going to compare git weamp;#39;re going to compare bl