# Image Captioning with MAGIC *author: David Wang*
## Description This operator generates the caption with [MAGIC](https://arxiv.org/abs/2205.02655) which describes the content of the given image. MAGIC is a simple yet efficient plug-and-play framework, which directly combines an off-the-shelf LM (i.e., GPT-2) and an image-text matching model (i.e., CLIP) for image-grounded text generation. During decoding, MAGIC influences the generation of the LM by introducing a CLIP-induced score, called magic score, which regularizes the generated result to be semantically related to a given image while being coherent to the previously generated context. This is an adaptation from [yxuansu / MAGIC](https://github.com/yxuansu/MAGIC).
## Code Example Load an image from path './image.jpg' to generate the caption. *Write a pipeline with explicit inputs/outputs name specifications:* ```python from towhee import pipe, ops, DataCollection p = ( pipe.input('url') .map('url', 'img', ops.image_decode.cv2_rgb()) .map('img', 'text', ops.image_captioning.magic(model_name='magic_mscoco')) .output('img', 'text') ) DataCollection(p('./image.jpg')).show() ``` result2
## Factory Constructor Create the operator via the following factory method ***magic(model_name)*** **Parameters:** ​ ***model_name:*** *str* ​ The model name of MAGIC. Supported model names: - magic_mscoco
## Interface An image captioning operator takes a [towhee image](link/to/towhee/image/api/doc) as input and generate the correspoing caption. **Parameters:** ​ ***data:*** *towhee.types.Image (a sub-class of numpy.ndarray)* ​ The image to generate caption. **Returns:** *str* ​ The caption generated by model. # More Resources - [Multimodal RAG locally with CLIP and Llama3 - Zilliz blog](https://zilliz.com/blog/multimodal-RAG-with-CLIP-Llama3-and-milvus): A tutorial walks you through how to build a multimodal RAG with CLIP, Llama3, and Milvus. - [Supercharged Semantic Similarity Search in Production - Zilliz blog](https://zilliz.com/learn/supercharged-semantic-similarity-search-in-production): Building a Blazing Fast, Highly Scalable Text-to-Image Search with CLIP embeddings and Milvus, the most advanced open-source vector database. - [The guide to clip-vit-base-patch32 | OpenAI](https://zilliz.com/ai-models/clip-vit-base-patch32): clip-vit-base-patch32: a CLIP multimodal model variant by OpenAI for image and text embedding. - [An LLM Powered Text to Image Prompt Generation with Milvus - Zilliz blog](https://zilliz.com/blog/llm-powered-text-to-image-prompt-generation-with-milvus): An interesting LLM project powered by the Milvus vector database for generating more efficient text-to-image prompts. - [From Text to Image: Fundamentals of CLIP - Zilliz blog](https://zilliz.com/blog/fundamentals-of-clip): Search algorithms rely on semantic similarity to retrieve the most relevant results. With the CLIP model, the semantics of texts and images can be connected in a high-dimensional vector space. Read this simple introduction to see how CLIP can help you build a powerful text-to-image service.