Agent skill
autoviz-2-chart-format-and-output-options
Sub-skill of autoviz: 2. Chart Format and Output Options (+1).
Install this agent skill to your Project
npx add-skill https://github.com/vamseeachanta/workspace-hub/tree/main/.claude/skills/_archive/data/analysis/autoviz/2-chart-format-and-output-options
SKILL.md
2. Chart Format and Output Options (+1)
2. Chart Format and Output Options
Different Chart Formats:
from autoviz import AutoViz_Class
import pandas as pd
df = pd.read_csv("data.csv")
AV = AutoViz_Class()
# SVG format (vector, scalable)
df_svg = AV.AutoViz(
filename="",
dfte=df,
chart_format="svg", # Scalable vector graphics
verbose=1
)
# PNG format (raster, good for presentations)
df_png = AV.AutoViz(
filename="",
dfte=df,
chart_format="png", # PNG images
verbose=1
)
# HTML format (interactive, for web)
df_html = AV.AutoViz(
filename="",
dfte=df,
chart_format="html", # Interactive HTML
verbose=1
)
# Bokeh backend for interactive plots
df_bokeh = AV.AutoViz(
filename="",
dfte=df,
chart_format="bokeh", # Bokeh interactive
verbose=1
)
# Server mode (for Jupyter notebooks)
df_server = AV.AutoViz(
filename="",
dfte=df,
chart_format="server", # Inline in notebook
verbose=1
)
Saving Charts to Directory:
from autoviz import AutoViz_Class
import pandas as pd
import os
# Create output directory
output_dir = "analysis_output"
os.makedirs(output_dir, exist_ok=True)
df = pd.read_csv("data.csv")
AV = AutoViz_Class()
# Save all charts to specified directory
df_analyzed = AV.AutoViz(
filename="",
dfte=df,
chart_format="png",
save_plot_dir=output_dir, # Directory to save plots
verbose=1
)
# List generated files
for file in os.listdir(output_dir):
print(f"Generated: {file}")
3. Handling Large Datasets
Sampling Strategies:
from autoviz import AutoViz_Class
import pandas as pd
import numpy as np
# Create large dataset
np.random.seed(42)
large_df = pd.DataFrame({
"feature_" + str(i): np.random.randn(500000)
for i in range(20)
})
large_df["category"] = np.random.choice(["A", "B", "C", "D"], 500000)
large_df["target"] = np.random.randint(0, 2, 500000)
print(f"Dataset size: {large_df.shape}")
AV = AutoViz_Class()
# Control sampling with max_rows_analyzed
df_analyzed = AV.AutoViz(
filename="",
dfte=large_df,
max_rows_analyzed=100000, # Sample 100K rows
max_cols_analyzed=25, # Limit columns analyzed
verbose=1,
chart_format="png"
)
# For very large datasets, use smaller sample
df_analyzed_small = AV.AutoViz(
filename="",
dfte=large_df,
max_rows_analyzed=50000, # Smaller sample for speed
max_cols_analyzed=15,
verbose=0, # Minimal output
chart_format="svg"
)
Memory-Efficient Analysis:
from autoviz import AutoViz_Class
import pandas as pd
def analyze_large_file(file_path: str, sample_size: int = 100000) -> pd.DataFrame:
"""
Analyze large files efficiently with sampling.
Args:
file_path: Path to CSV file
sample_size: Number of rows to sample
Returns:
Analyzed DataFrame
"""
# Read only a sample for initial analysis
total_rows = sum(1 for _ in open(file_path)) - 1 # Exclude header
if total_rows > sample_size:
# Calculate skip probability
skip_prob = 1 - (sample_size / total_rows)
# Read with sampling
df = pd.read_csv(
file_path,
skiprows=lambda i: i > 0 and np.random.random() < skip_prob
)
else:
df = pd.read_csv(file_path)
print(f"Sampled {len(df)} rows from {total_rows} total")
AV = AutoViz_Class()
return AV.AutoViz(
filename="",
dfte=df,
verbose=1,
chart_format="png"
)
# Usage
# df_result = analyze_large_file("huge_dataset.csv", sample_size=75000)
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