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·
a992504
1
Parent(s):
1ce7f5c
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Browse files- .gitattributes +3 -0
- Images/IMG-20220413-WA0005.jpg +0 -0
- Images/analytics.png +0 -0
- Images/pipeline.png +0 -0
- app.py +167 -0
- videos/Fairly-used.mp4 +3 -0
- videos/movie-recommender.mp4 +3 -0
- videos/music-mood.mp4 +3 -0
- videos/requirements.txt +1 -0
.gitattributes
CHANGED
@@ -35,3 +35,6 @@ saved_model/**/* filter=lfs diff=lfs merge=lfs -text
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my_portfolio/videos/Fairly-used.mp4 filter=lfs diff=lfs merge=lfs -text
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my_portfolio/videos/movie-recommender.mp4 filter=lfs diff=lfs merge=lfs -text
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my_portfolio/videos/music-mood.mp4 filter=lfs diff=lfs merge=lfs -text
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my_portfolio/videos/Fairly-used.mp4 filter=lfs diff=lfs merge=lfs -text
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my_portfolio/videos/movie-recommender.mp4 filter=lfs diff=lfs merge=lfs -text
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my_portfolio/videos/music-mood.mp4 filter=lfs diff=lfs merge=lfs -text
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videos/Fairly-used.mp4 filter=lfs diff=lfs merge=lfs -text
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videos/movie-recommender.mp4 filter=lfs diff=lfs merge=lfs -text
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videos/music-mood.mp4 filter=lfs diff=lfs merge=lfs -text
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Images/IMG-20220413-WA0005.jpg
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Images/analytics.png
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Images/pipeline.png
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app.py
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import streamlit as st
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from PIL import Image
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st.title(' _Welcome to my Projects Portfolio_ ')
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with st.sidebar:
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image = Image.open("/Images/IMG-20220413-WA0005.jpg")
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st.image(image)
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st.subheader("Interest")
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st.markdown("""
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- Football
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- Reading
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- Cycling
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""")
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col1, col2 = st.columns(2)
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with col1:
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st.write("Name: Abubakar Muhammed Muktar")
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st.write("Status: Masters Student, Data Science & Analytics")
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st.write("School: EPITA")
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with col2:
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st.write("Strength: Serial learning, knowing I can always improve.")
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st.write("Favourite Quote: In God we trust, Everyone else bring data!")
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st.header("Data Science and Engineering Project Section")
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with st.expander("PROJECT 1: Fairly Used Car Prediction Platform"):
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st.subheader('Fairly Used Car Prediction Platform')
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st.write("This project is ...")
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st.markdown("""
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- Created a price estimation model for fairly used car using Linear Regression
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- Developed a web platform Using Streamlit and deployed the model as a service\n
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- Platform can predict take direct input from a user or take a csv file and run predictions on them\n
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- Used postgres to save user predictions and user can query past prediction from the database\n
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- Airflow to schedule data ingestion and prediction jobs\n
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- Used Grafana to monitor model and MLFlow for retraining.
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""")
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st.markdown("[Project CODE](https://github.com/sadiksmart0/Used-Car-ML)")
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video_file = open('C:/Users/A.M. MUKTAR/my_portfolio/videos/Fairly-used.mp4', 'rb')
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video_bytes = video_file.read()
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st.video(video_bytes)
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with st.expander("PROJECT 2: Music Emotion Recognition and Recommendatation."):
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st.subheader('Music Emotion Recognition and Recommendatation')
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st.write("This project is ...")
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st.markdown("""
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- Collaborated and developed a state-of-the-art deep learning model using BERT and gensims Doc2Vec for recognizing song emotion and give recommendations based on that given lyrics, song title and artist name.
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- Deployed the model on Heroku and serve the it using FastApi.
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- Develop and deployed the app on streamlit.
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- Presented the work as part of our masters thesis.
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""")
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st.markdown("[Project CODE](https://github.com/anthonybassaf/music-mood-recognition)")
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video_file = open('videos/music-mood.mp4', 'rb')
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video_bytes = video_file.read()
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st.video(video_bytes)
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with st.expander("PROJECT 3: Brain Tumor Segmentation"):
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st.subheader('Brain Tumor Segmentation')
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st.write("This project is ...")
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st.markdown("""
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- Created a deep learning model based on the U-net architecture to segment brain tumor images.
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- Used tensorflow in the implementation.
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- Engineered the data into desired format.
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- Evaluated model performance based on Dice loss
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""")
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st.markdown("[Project CODE](https://github.com/sadiksmart0/Image-seg)")
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video_file = open('videos/Fairly-used.mp4', 'rb')
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video_bytes = video_file.read()
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st.video(video_bytes)
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with st.expander("PROJECT 4: Movie Recommendatation system."):
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st.subheader('Movie Recommendatation system.')
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st.write("This project is ...")
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st.markdown("""
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- Implemented a movie recommendation system for using the cosine similarity, users and movie rating.
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- Scrape the web for movie posters and details using BeautifulSoup
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- Built a streamlit app for the recommendation plaform
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- Employed TF-IDF for tokenization.
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""")
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st.markdown("[Project CODE](https://github.com/sadiksmart0/Movie-Recommender)")
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video_file = open('videos/movie-recommender.mp4', 'rb')
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video_bytes = video_file.read()
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st.video(video_bytes)
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with st.expander("PROJECT 5: End-to-End Data Engineering Project using Kaggle YouTube Trending Dataset"):
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st.subheader('Movie Recommendatation system.')
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st.write("This project intends to manage, simplify, and analyze structured and semi-structured YouTube video data based on video categories and trending metrics in a secure manner.")
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st.markdown("""
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- Implement the data pipeline completely using AWS cloud.
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- Data Lake to hold raw ingested data using Amazon S3
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- Used AWS Lambda to preprocess the data to a parquet.
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- Data Warehouse to hold cleansed data in Amazon S3
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- Catalogue the data using AWS Glue.
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- Used Athena to query the data.
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- Used IAM to create rule and policies to allow access accross these tools
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- Used QuickSight to run analysis on our final data
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- Used cloudwatch to monitor all of the processes for easy tracking.
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""")
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image1 = Image.open("C:/Users/A.M. MUKTAR/my_portfolio/Images/pipeline.png")
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image2 = Image.open("C:/Users/A.M. MUKTAR/my_portfolio/Images/analytics.png")
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st.image(image1)
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st.image(image2)
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st.header("Data Analysis Project Section")
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st.subheader('Pandas')
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with st.expander("PROJECT 1: Analysis of Ligue 1 From 2010-2021"):
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st.subheader('Analysis of Ligue 1 From 2010-2021')
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st.write("This project intends to ...")
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st.markdown("""
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- Collaborated and developed a state-of-the-art deep learning model using BERT and gensims Doc2Vec for recognizing song emotion and give recommendations based on that given lyrics, song title and artist name.
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- Deployed the model on Heroku and serve the it using FastApi.
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- Develop and deployed the app on streamlit.
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- Presented the work as part of our masters thesis.
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""")
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# # st.image("https://static.streamlit.io/examples/dice.jpg")
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st.markdown("[Project CODE](https://github.com/sadiksmart0/DataVisualizationProject)")
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with st.expander("PROJECT 1: Analysis of Google play Apps"):
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st.subheader('Analysis of Google play Apps')
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st.write("This project intends to ...")
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st.markdown("""
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- Collaborated and developed a state-of-the-art deep learning model using BERT and gensims Doc2Vec for recognizing song emotion and give recommendations based on that given lyrics, song title and artist name.
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- Deployed the model on Heroku and serve the it using FastApi.
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- Develop and deployed the app on streamlit.
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- Presented the work as part of our masters thesis.
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""")
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# # st.image("https://static.streamlit.io/examples/dice.jpg")
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st.markdown("[Project CODE](https://github.com/sadiksmart0/Android-App-Market/blob/main/Android%20App%20Market.ipynb)")
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with st.expander("PROJECT 1: Analysis of Netflix movies"):
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st.subheader('Analysis of Netflix movies')
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st.write("This project intends to ...")
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st.markdown("""
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- Collaborated and developed a state-of-the-art deep learning model using BERT and gensims Doc2Vec for recognizing song emotion and give recommendations based on that given lyrics, song title and artist name.
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- Deployed the model on Heroku and serve the it using FastApi.
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- Develop and deployed the app on streamlit.
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- Presented the work as part of our masters thesis.
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""")
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# # st.image("https://static.streamlit.io/examples/dice.jpg")
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st.markdown("[Project CODE](https://github.com/sadiksmart0/Netflix-Movies/blob/main/Netflix-Movies.ipynb)")
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with st.expander("PROJECT 1: Analysis of Nobel Prize Winners"):
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st.subheader('Analysis of Nobel Prize Winners')
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st.write("This project intends to ...")
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st.markdown("""
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- Collaborated and developed a state-of-the-art deep learning model using BERT and gensims Doc2Vec for recognizing song emotion and give recommendations based on that given lyrics, song title and artist name.
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- Deployed the model on Heroku and serve the it using FastApi.
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- Develop and deployed the app on streamlit.
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- Presented the work as part of our masters thesis.
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""")
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# # st.image("https://static.streamlit.io/examples/dice.jpg")
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st.markdown("[Project CODE](https://github.com/sadiksmart0/Nobel-Prize/blob/main/Nobel_Prize.ipynb)")
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st.subheader('Tableau')
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st.subheader('Dataiku')
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videos/Fairly-used.mp4
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version https://git-lfs.github.com/spec/v1
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oid sha256:8a8af4fe6ef00f765a7f1496652d94ee307edef547ea560811daeae7e9b57a71
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size 27906155
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videos/movie-recommender.mp4
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version https://git-lfs.github.com/spec/v1
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oid sha256:ed8dfb4881b256ce9dea8690195ed66c2a1d56cd40ebdcd00cee4ceb8871e04b
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size 19207311
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videos/music-mood.mp4
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@@ -0,0 +1,3 @@
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version https://git-lfs.github.com/spec/v1
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oid sha256:422eac24929a3a900f1d4354b7987846dc0948625e5efe2f30e4f97bdee4fef0
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size 19784159
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videos/requirements.txt
ADDED
@@ -0,0 +1 @@
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streamlit==1.19.0
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