etrotta commited on
Commit
83ee5cf
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1 Parent(s): 3667af3

Fix some texts

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Files changed (1) hide show
  1. polars/05_reactive_plots.py +5 -7
polars/05_reactive_plots.py CHANGED
@@ -54,8 +54,7 @@ def _(pl):
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  def _(mo):
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  mo.md(
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  """
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-
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- You should always take a look at the data you are working on before actually doing any operations on it - for data coming from sources such as HuggingFace or Kaggle can preview it via their websites, and optionally filter or do some transformations before downloading.
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  The [Polars Lazy API](https://docs.pola.rs/user-guide/lazy/) allows for you define operations before loading the data, and polars will optimize the plan in order to avoid doing unnecessary operations or loading data we do not care about.
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@@ -90,7 +89,6 @@ def _(lz, pl):
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  def _(mo):
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  mo.md(
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  r"""
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-
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  When you start exploring a dataset, some of the first things to do may include:
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  - investigating any values that seem weird
@@ -150,7 +148,7 @@ def _(mo):
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  @app.cell
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  def _(pl, plot):
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- # The format of `plot.value` may vary depending on which kind of plot you are working with, let's see what we have for this case:
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  pl.DataFrame(plot.value)
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  return
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@@ -307,7 +305,7 @@ def _(
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  opacity=alpha.value,
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  trendline="lowess" if include_trendline.value else None,
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  render_mode="webgl",
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- # strings on `hover` get fairly heavy when there are too many rows, but you can try using it after applying a few filters
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  # hover_name="track_name",
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  # hover_data=("artists", "album_name"),
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  )
@@ -352,8 +350,8 @@ def _(mo):
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  Reviewing what we have covered in this Notebook:
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  - Understand the data you're working with first and foremost
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- - Creating plots can help you understand patterns, identify outliers and observe trends
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- - Thanks to marimo interactive UI elements we can explore multiple facets of the data without changing the code
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  """
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  )
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  return
 
54
  def _(mo):
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  mo.md(
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  """
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+ You should always take a look at the data you are working on before actually doing any operations on it - for data coming from sources such as HuggingFace or Kaggle you can preview it via their websites, and optionally filter or do some transformations before downloading.
 
58
 
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  The [Polars Lazy API](https://docs.pola.rs/user-guide/lazy/) allows for you define operations before loading the data, and polars will optimize the plan in order to avoid doing unnecessary operations or loading data we do not care about.
60
 
 
89
  def _(mo):
90
  mo.md(
91
  r"""
 
92
  When you start exploring a dataset, some of the first things to do may include:
93
 
94
  - investigating any values that seem weird
 
148
 
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  @app.cell
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  def _(pl, plot):
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+ # The format of plot.value may vary depending on which kind of plot you are working with, let's see what we have for this case:
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  pl.DataFrame(plot.value)
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  return
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  opacity=alpha.value,
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  trendline="lowess" if include_trendline.value else None,
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  render_mode="webgl",
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+ # strings on hover get fairly heavy when there are too many rows, but you can try using it after applying a few filters
309
  # hover_name="track_name",
310
  # hover_data=("artists", "album_name"),
311
  )
 
350
  Reviewing what we have covered in this Notebook:
351
 
352
  - Understand the data you're working with first and foremost
353
+ - Creating plots can help you find and explain patterns, identify outliers and observe trends
354
+ - Thanks to marimo's interactive UI elements, we can explore multiple facets of the data without changing the code
355
  """
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  )
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  return