FaheemBEG commited on
Commit
34f08fd
·
verified ·
1 Parent(s): cea715a

Update README.md

Browse files
Files changed (1) hide show
  1. README.md +3 -3
README.md CHANGED
@@ -112,17 +112,17 @@ The resulting embedding vector is stored in the `embeddings_bge-m3` column as a
112
 
113
  ## 🎓 Tutorials
114
 
115
- ### 1. 🔄 The chunking doesn't fit your use case?
116
 
117
  If you need to reconstitute the original, un-chunked dataset, you can follow [this tutorial notebook available on our GitHub repository](https://github.com/etalab-ia/mediatech/blob/main/docs/reconstruct_vector_database.ipynb).
118
 
119
  ⚠️ The tutorial is only relevant for datasets that were chunked **without overlap**.
120
 
121
- ### 2. 🤖 How to load MediaTech's datasets from Hugging Face and use them in a RAG pipeline ?
122
 
123
  To learn how to load MediaTech's datasets from Hugging Face and integrate them into a Retrieval-Augmented Generation (RAG) pipeline, check out our [step-by-step RAG tutorial available on our GitHub repository !](https://github.com/etalab-ia/mediatech/blob/main/docs/hugging_face_rag_tutorial.ipynb)
124
 
125
- ### 3. 📌 Embedding Use Notice
126
 
127
  ⚠️ The `embeddings_bge-m3` column is stored as a **stringified list** of floats (e.g., `"[-0.03062629,-0.017049594,...]"`).
128
  To use it as a vector, you need to parse it into a list of floats or NumPy array.
 
112
 
113
  ## 🎓 Tutorials
114
 
115
+ ### 🔄 1. The chunking doesn't fit your use case?
116
 
117
  If you need to reconstitute the original, un-chunked dataset, you can follow [this tutorial notebook available on our GitHub repository](https://github.com/etalab-ia/mediatech/blob/main/docs/reconstruct_vector_database.ipynb).
118
 
119
  ⚠️ The tutorial is only relevant for datasets that were chunked **without overlap**.
120
 
121
+ ### 🤖 2. How to load MediaTech's datasets from Hugging Face and use them in a RAG pipeline ?
122
 
123
  To learn how to load MediaTech's datasets from Hugging Face and integrate them into a Retrieval-Augmented Generation (RAG) pipeline, check out our [step-by-step RAG tutorial available on our GitHub repository !](https://github.com/etalab-ia/mediatech/blob/main/docs/hugging_face_rag_tutorial.ipynb)
124
 
125
+ ### 📌 3. Embedding Use Notice
126
 
127
  ⚠️ The `embeddings_bge-m3` column is stored as a **stringified list** of floats (e.g., `"[-0.03062629,-0.017049594,...]"`).
128
  To use it as a vector, you need to parse it into a list of floats or NumPy array.