straight line fn dev
This commit is contained in:
@@ -11,15 +11,13 @@ def _():
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from pathlib import Path
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from utils import JPMCSurvey, combine_exclusive_columns
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from plots import plot_average_scores_with_counts, plot_top3_ranking_distribution
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return (
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JPMCSurvey,
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combine_exclusive_columns,
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mo,
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pl,
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plot_average_scores_with_counts,
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plot_top3_ranking_distribution,
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)
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return JPMCSurvey, combine_exclusive_columns, mo, pl
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@app.cell
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def _(mo):
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mo.outline()
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return
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@app.cell
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@@ -70,7 +68,6 @@ def _(data, mo, pl):
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return mo.md("## ⚠️ There are incomplete responses (progress < 100) ⚠️")
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check_progress(data)
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return
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@@ -229,10 +226,18 @@ def _(mo):
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@app.cell
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def _(data, survey):
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_lf, _choice_map = survey.get_ss_green_blue(data)
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# _lf.collect()
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print(_lf.collect().head())
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return
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@app.cell
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def _(df):
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df
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return
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@app.cell
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def _(mo):
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mo.md(r"""
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@@ -297,7 +302,6 @@ def _(data, survey):
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traits_refined = survey.get_character_refine(data)[0]
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traits_refined.collect()
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return (traits_refined,)
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@@ -10,7 +10,7 @@ def _():
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import polars as pl
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from pathlib import Path
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from validation import check_progress, duration_validation
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from validation import check_progress, duration_validation, check_straight_liners
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from utils import JPMCSurvey, combine_exclusive_columns, calculate_weighted_ranking_scores
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import utils
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@@ -28,6 +28,18 @@ def _():
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)
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@app.cell(hide_code=True)
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def _(mo):
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mo.outline(label="Table of Contents")
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return
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@app.cell
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def _():
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# Select Dataset
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return
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@app.cell
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def _(mo):
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file_browser = mo.ui.file_browser(
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@@ -63,21 +75,27 @@ def _(JPMCSurvey, QSF_FILE, RESULTS_FILE, mo):
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return S, data_all
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@app.cell(hide_code=True)
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def _(Path, RESULTS_FILE, data_all, mo):
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mo.md(f"""
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---
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# Load Data
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**Dataset:** `{Path(RESULTS_FILE).name}`
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{mo.ui.table(data_all.collect())}
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""")
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@app.cell
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def _():
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# check_straight_liners(S.get_ss_green_blue(data_all)[0])
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return
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@app.cell(hide_code=True)
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def _(Path, RESULTS_FILE, mo):
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mo.md(f"""
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---
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# Load Data
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**Dataset:** `{Path(RESULTS_FILE).name}`
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""")
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return
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@app.cell
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def _(check_progress, data_all, duration_validation, mo):
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mo.md(f"""
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## Data Validation
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@@ -87,14 +105,9 @@ def _(check_progress, data_all, duration_validation, mo):
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{duration_validation(data_all)}
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""")
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return
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@app.cell(hide_code=True)
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def _(mo):
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mo.md(r"""
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### ⚠️ ToDo: "straight-liner" detection and removal
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""")
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return
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@@ -1,5 +1,5 @@
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Running on Ct-105 for shared access:
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```
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uv run marimo edit --headless --port 8080 --host ct-105.tail44fa00.ts.net
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uv run marimo run 02_quant_analysis.py --headless --port 8080
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```
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109
validation.py
109
validation.py
@@ -36,11 +36,13 @@ def duration_validation(data):
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**⚠️ Potential outliers detected based on response duration ⚠️**
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- Mean Duration: {mean_duration:.2f} seconds (approximately {mean_duration/60:.2f} minutes)
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- Standard Deviation of Duration: {std_duration:.2f} seconds
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- Upper Outlier Threshold (Mean + 3*Std): {upper_outlier_threshold:.2f} seconds
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- Lower Outlier Threshold (Mean - 3*Std): {lower_outlier_threshold:.2f} seconds
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- Number of Outlier Responses: {outlier_data.shape[0]}
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| Metric | Value |
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|--------|-------|
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| Mean Duration | {mean_duration:.2f} seconds (approximately {mean_duration/60:.2f} minutes) |
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| Standard Deviation of Duration | {std_duration:.2f} seconds |
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| Upper Outlier Threshold (Mean + 3*Std) | {upper_outlier_threshold:.2f} seconds |
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| Lower Outlier Threshold (Mean - 3*Std) | {lower_outlier_threshold:.2f} seconds |
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| Number of Outlier Responses | {outlier_data.shape[0]} |
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Outliers:
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@@ -51,3 +53,100 @@ def duration_validation(data):
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"""
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def check_straight_liners(data, max_score=3):
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"""
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Check for straight-lining behavior (selecting same value for all attributes).
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Args:
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data: Polars LazyFrame
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max_score: The maximum score that is flagged if straight-lined (e.g., if 4, then 5s are allowed).
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"""
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import re
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# detect columns groups based on pattern SS_...__Vxx__Choice_y
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schema_names = data.collect_schema().names()
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# regex groupings
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pattern = re.compile(r"(.*__V\d+)__Choice_\d+")
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groups = {}
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for col in schema_names:
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match = pattern.search(col)
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if match:
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group_key = match.group(1)
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if group_key not in groups:
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groups[group_key] = []
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groups[group_key].append(col)
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# Filter for groups with multiple attributes/choices
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multi_attribute_groups = {k: v for k, v in groups.items() if len(v) > 1}
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if not multi_attribute_groups:
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return "### Straight-lining Checks: \n\nℹ️ No multi-attribute question groups found."
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# Build expressions
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expressions = []
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for key, cols in multi_attribute_groups.items():
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# Logic:
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# 1. Create list of values
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# 2. Drop nulls
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# 3. Check if all remaining are equal (n_unique == 1) AND value <= max_score
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list_expr = pl.concat_list(cols).list.drop_nulls()
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# Use .list.min() instead of .list.get(0) to avoid "index out of bounds" on empty lists
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# If n_unique == 1, min() is the same as the single value.
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# If list is empty, min() is null, which is safe.
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safe_val = list_expr.list.min()
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is_straight = (
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(list_expr.list.len() > 0) &
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(list_expr.list.n_unique() == 1) &
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(safe_val <= max_score)
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).alias(f"__is_straight__{key}")
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value_expr = safe_val.alias(f"__val__{key}")
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expressions.extend([is_straight, value_expr])
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# collect data with checks
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# We only need _recordId and the check columns
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# We do with_columns then select implicitly/explicitly via filter/select later.
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checked_data = data.with_columns(expressions).collect()
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# Process results into a nice table
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outliers = []
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for key in multi_attribute_groups.keys():
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flag_col = f"__is_straight__{key}"
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val_col = f"__val__{key}"
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filtered = checked_data.filter(pl.col(flag_col))
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if filtered.height > 0:
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rows = filtered.select(["_recordId", val_col]).rows()
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for row in rows:
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outliers.append({
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"Record ID": row[0],
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"Question Group": key,
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"Value": row[1]
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})
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if not outliers:
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return f"### Straight-lining Checks: \n\n✅ No straight-liners detected (value <= {max_score})"
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outlier_df = pl.DataFrame(outliers)
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return f"""### Straight-lining Checks:
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**⚠️ Potential straight-liners detected ⚠️**
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Respondents selected the same value (<= {max_score}) for all attributes in the following groups:
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{mo.ui.table(outlier_df)}
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"""
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