ChernovAndrei commited on
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final changes

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  1. README.md +3 -0
  2. app.py +1 -2
README.md CHANGED
@@ -164,6 +164,9 @@ The system follows a multi-stage pipeline that processes movie data and user cur
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  ### Pipeline Stages
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  #### 1. Preprocessing Stage
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  - **Movie Title Processing**: Raw movie titles are converted into semantic embeddings using Mistral AI
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  - **Graph Convolution Enhancement**: Movie embeddings are enriched through Graph Convolution Layers (GCL) that capture user interaction patterns and movie relationships
 
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  ### Pipeline Stages
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+ The complete preprocessing pipeline code is available in our GitHub repository:
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+ 🔗 **[Preprocessing Code](https://github.com/RecoFM/HF-hackathon2025)**
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+
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  #### 1. Preprocessing Stage
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  - **Movie Title Processing**: Raw movie titles are converted into semantic embeddings using Mistral AI
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  - **Graph Convolution Enhancement**: Movie embeddings are enriched through Graph Convolution Layers (GCL) that capture user interaction patterns and movie relationships
app.py CHANGED
@@ -13,7 +13,6 @@ from ranking_agent import rank_with_ai
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  from scipy.sparse import load_npz
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  from rapidfuzz import process, fuzz
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  import re
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- from sklearn.metrics.pairwise import cosine_similarity
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  load_dotenv()
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@@ -269,7 +268,7 @@ def create_interface():
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  Get personalized movie recommendations based on your taste and preferences utilizing zero-shot predicitons from Foundation Recommender!
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  **How to use:**
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- 1. Search and select movies you've enjoyed
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  2. Describe the type of film you are looking for. Consider factors such as genre, length, whether it is animated, etc.
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  3. Adjust the preference weight (α) to balance between your description and movie history
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  4. Get personalized recommendations
 
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  from scipy.sparse import load_npz
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  from rapidfuzz import process, fuzz
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  import re
 
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  load_dotenv()
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  Get personalized movie recommendations based on your taste and preferences utilizing zero-shot predicitons from Foundation Recommender!
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  **How to use:**
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+ 1. Search and select movies you've enjoyed
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  2. Describe the type of film you are looking for. Consider factors such as genre, length, whether it is animated, etc.
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  3. Adjust the preference weight (α) to balance between your description and movie history
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  4. Get personalized recommendations