- Популярные видео
- Авто
- Видео-блоги
- ДТП, аварии
- Для маленьких
- Еда, напитки
- Животные
- Закон и право
- Знаменитости
- Игры
- Искусство
- Комедии
- Красота, мода
- Кулинария, рецепты
- Люди
- Мото
- Музыка
- Мультфильмы
- Наука, технологии
- Новости
- Образование
- Политика
- Праздники
- Приколы
- Природа
- Происшествия
- Путешествия
- Развлечения
- Ржач
- Семья
- Сериалы
- Спорт
- Стиль жизни
- ТВ передачи
- Танцы
- Технологии
- Товары
- Ужасы
- Фильмы
- Шоу-бизнес
- Юмор
Image Reader AI w/ Llama3.2-Vision | Ollama & Streamlit
🔗 Links
Github: https://github.com/curiositydataanalytics/Image-Reader-AI-w-Llama3.2-Vision-Ollama-Streamlit
In this video, we explore the capabilities of the Llama3.2-Vision model and how you can use it to extract content from images within a Streamlit app.
📝 Topics covered in this video:
- Setting up Streamlit with a file uploader for image input
- Transforming images into base64 encoding for LLM processing
- Utilizing the LLAMA Vision model for:
- Description: Generate detailed image descriptions
- Extraction: Extract text and key elements from images
- Summarization: Create concise summaries of extracted information
- Real-world testing on various image types: logos, receipts, invoices, articles, and graphs
Don't forget to like, share, and subscribe for more AI-powered tutorials!
#streamlit #python #llamavision #streamlitapps #ai #machinelearning #artificialintelligence #visionmodels #imageprocessing #datascience #llama #ollama #streamlitpython #datavisualization #streamlittutorial #pythonprogramming #deeplearning #streamlitcommunity #aiintegration #textanalysis #nlp #visionai #openai #datapipeline #imagetoinsights #fileuploader #aiexperiments #pythonai #dataengineering #contentextraction #imageanalysis #llm #aiapps #aiworkflow #dataextraction #base64 #techreviews #pythonprojects #streamlittips #modelcomparison
Видео Image Reader AI w/ Llama3.2-Vision | Ollama & Streamlit канала Curiosity Data Analytics
Github: https://github.com/curiositydataanalytics/Image-Reader-AI-w-Llama3.2-Vision-Ollama-Streamlit
In this video, we explore the capabilities of the Llama3.2-Vision model and how you can use it to extract content from images within a Streamlit app.
📝 Topics covered in this video:
- Setting up Streamlit with a file uploader for image input
- Transforming images into base64 encoding for LLM processing
- Utilizing the LLAMA Vision model for:
- Description: Generate detailed image descriptions
- Extraction: Extract text and key elements from images
- Summarization: Create concise summaries of extracted information
- Real-world testing on various image types: logos, receipts, invoices, articles, and graphs
Don't forget to like, share, and subscribe for more AI-powered tutorials!
#streamlit #python #llamavision #streamlitapps #ai #machinelearning #artificialintelligence #visionmodels #imageprocessing #datascience #llama #ollama #streamlitpython #datavisualization #streamlittutorial #pythonprogramming #deeplearning #streamlitcommunity #aiintegration #textanalysis #nlp #visionai #openai #datapipeline #imagetoinsights #fileuploader #aiexperiments #pythonai #dataengineering #contentextraction #imageanalysis #llm #aiapps #aiworkflow #dataextraction #base64 #techreviews #pythonprojects #streamlittips #modelcomparison
Видео Image Reader AI w/ Llama3.2-Vision | Ollama & Streamlit канала Curiosity Data Analytics
Комментарии отсутствуют
Информация о видео
30 декабря 2024 г. 19:00:37
00:09:37
Другие видео канала




















