explain
Browse files- app.py +6 -1
- xgb/tree.svg +1032 -0
app.py
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@@ -228,13 +228,14 @@ With no need for jargon, SSDS delivers tangible value to our fintech operations.
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=============
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sorted feature from top(most
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dist_subway when at low value(green) make big impact to price
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dist_store doesnt make much impact to price
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high age lower the price
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low age raise the price
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@@ -264,7 +265,11 @@ With no need for jargon, SSDS delivers tangible value to our fintech operations.
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over all trend is negative that mean, closer to subway is contribute to higher price
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there is a point at 6500 far from subway and it has negative impact on price, despite is is close to store(dist_stores)
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""")
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gr.DataFrame(df)
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with gr.Tab("Fine Tune LLM"):
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=============
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+
sorted feature from top(most importance)
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dist_subway when at low value(green) make big impact to price
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dist_store doesnt make much impact to price
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high age lower the price
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+
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low age raise the price
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over all trend is negative that mean, closer to subway is contribute to higher price
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there is a point at 6500 far from subway and it has negative impact on price, despite is is close to store(dist_stores)
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+
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+

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""")
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+
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gr.DataFrame(df)
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with gr.Tab("Fine Tune LLM"):
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xgb/tree.svg
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