PBusienei commited on
Commit
14448db
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1 Parent(s): 97ede01

added emoji icons

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Files changed (1) hide show
  1. app.py +4 -4
app.py CHANGED
@@ -25,13 +25,13 @@ from urllib.error import URLError
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  # set up title and sidebar
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  st.title (" Nashville Analytics Summit Conference Helper")# (" Your top 3 Important Sessions")
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- st.markdown("**Problem**🤔:")
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  st.markdown("Since its inception in 2013, Nashville Analytics Summit has seen a growth of over 488%. The Summit prides its itself as the fastest growing locally grown tech events in the south region. With an increasing number of participants and dozens of talks covering a myriad of topics, there is a need to tailor participants needs to their interests")
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  st.markdown("---")
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  st.markdown("**Solution**💡:" )
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  st.markdown("Develop an application in which users can input the description of areas of interest and app returns the top three Sessions matching the description requested.")
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  st.markdown("---")
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- st.markdown("** Approach**🔑:")
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  st.markdown("* For the approach, I used a transformer model, multi-qa-MiniLM-L6-cos-v1, that uses sentence similarity to match the description of the event and the input description.")
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  st.markdown("* The dataset used is Nashville Analytics Summit descriptions of the presentations, which include the Unique ID, Name of presenter, Description of presentation, Activity Code, Start Time, End Time, Location Name")
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@@ -48,7 +48,7 @@ st.image(dificult_reading, caption='Reading sessions descriptions.')
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  st.markdown("---")
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  # section 2: how can transformers help?
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- st.markdown("### How can Transformers Help?💡")
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  st.markdown("**Sentence Similarity**")
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  #st.markdown("* FEVER, or Fact Extraction and VERification, was introduced in 2018 as the first dataset containing {fact, evdience, entailment_label} information. They extracted altering sentences from Wikipedia and had annotators report the relationship between the setences: entailment, contradition, not enough information.")
@@ -62,7 +62,7 @@ st.markdown("**Sentence Similarity**")
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  st.markdown("---")
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  # section 4: The process
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  # this is the pipeline in my notes (u are here highlight)
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- st.markdown("### The Process 🔑")
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  #st.markdown("Imagine: A person is curious about whether a claim they heard about climate change is true. How can transformers help validate or refute the claim?")
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  # set up title and sidebar
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  st.title (" Nashville Analytics Summit Conference Helper")# (" Your top 3 Important Sessions")
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+ st.markdown("**Problem** 🧐:")
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  st.markdown("Since its inception in 2013, Nashville Analytics Summit has seen a growth of over 488%. The Summit prides its itself as the fastest growing locally grown tech events in the south region. With an increasing number of participants and dozens of talks covering a myriad of topics, there is a need to tailor participants needs to their interests")
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  st.markdown("---")
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  st.markdown("**Solution**💡:" )
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  st.markdown("Develop an application in which users can input the description of areas of interest and app returns the top three Sessions matching the description requested.")
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  st.markdown("---")
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+ st.markdown("** Approach**🗝️ :")
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  st.markdown("* For the approach, I used a transformer model, multi-qa-MiniLM-L6-cos-v1, that uses sentence similarity to match the description of the event and the input description.")
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  st.markdown("* The dataset used is Nashville Analytics Summit descriptions of the presentations, which include the Unique ID, Name of presenter, Description of presentation, Activity Code, Start Time, End Time, Location Name")
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  st.markdown("---")
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  # section 2: how can transformers help?
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+ st.markdown("### How can Transformers Help?🪄 ")
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  st.markdown("**Sentence Similarity**")
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  #st.markdown("* FEVER, or Fact Extraction and VERification, was introduced in 2018 as the first dataset containing {fact, evdience, entailment_label} information. They extracted altering sentences from Wikipedia and had annotators report the relationship between the setences: entailment, contradition, not enough information.")
 
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  st.markdown("---")
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  # section 4: The process
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  # this is the pipeline in my notes (u are here highlight)
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+ st.markdown("### The Process 🔍")
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  #st.markdown("Imagine: A person is curious about whether a claim they heard about climate change is true. How can transformers help validate or refute the claim?")
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