ATTENTION: This plugin currently requires a custom fork of payload to work (replace payload
with yarn add alessiogr/payload#production-with-custom
). This is because this plugins depends on two PRs which haven't been merged into payload yet:
In this repository I will add a bunch of AI stuff! Currently, it can just generate embeddings for fields using the OpenAI API. Expect things to break with updates without notice.
yarn add payload-plugin-ai
Add this to your payload.config.ts:
import { ai } from 'payload-plugin-ai';
...
plugins: [
ai({
OPENAI_SECRET: process.env.OPENAI_SECRET,
NLPCLOUD_API_KEY: process.env.NLP_CLOUD_API_KEY,
embeddings: {
provider: "nlpcloud", // Nlpcloud is recommended
},
}),
]
To enable embeddings on a field, simply add this property to the field:
import { genEmbeddings } from 'payload-plugin-ai';
...
yourField: {
...
custom: {
...genEmbeddings({ visible: true }),
},
}
Now, every time you save the collection, embeddings for that field will be generated.
You can use MongoDB atlas search to search through embeddings. In MongoDB Atlas, create a search index which looks like this:
{
"mappings": {
"fields": {
"textArea_embeddings": [
{
"dimensions": 768,
"similarity": "euclidean",
"type": "knnVector"
}
]
}
}
}
Replace textArea_embeddings
with the name of the embeddings field generated by this plugins.
Once the index is created, you can search through your documents using something like mongoose. There's an example in the payload.config.ts in the demo folder (make sure you adjust the index
name and the path
).
Project structure inspired by payload-plugin-cloud-storage and pcms-backpop