skills/csv-pipeline/SKILL.md
Process, transform, analyze, and report on CSV and JSON data files. Use when the user needs to filter rows, join datasets, compute aggregates, convert formats, deduplicate, or generate summary reports from tabular data. Works with any CSV, TSV, or JSON Lines file.
npx skillsauth add aaaaqwq/claude-code-skills csv-pipelineInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Process tabular data (CSV, TSV, JSON, JSON Lines) using standard command-line tools and Python. No external dependencies required beyond Python 3.
# Preview first rows
head -5 data.csv
# Count rows (excluding header)
tail -n +2 data.csv | wc -l
# Show column headers
head -1 data.csv
# Count unique values in a column (column 3)
tail -n +2 data.csv | cut -d',' -f3 | sort -u | wc -l
awk# Filter rows where column 3 > 100
awk -F',' 'NR==1 || $3 > 100' data.csv > filtered.csv
# Filter rows matching a pattern in column 2
awk -F',' 'NR==1 || $2 ~ /pattern/' data.csv > matched.csv
# Sum column 4
awk -F',' 'NR>1 {sum += $4} END {print sum}' data.csv
# Sort by column 2 (numeric)
head -1 data.csv > sorted.csv && tail -n +2 data.csv | sort -t',' -k2 -n >> sorted.csv
# Deduplicate by all columns
head -1 data.csv > deduped.csv && tail -n +2 data.csv | sort -u >> deduped.csv
# Deduplicate by specific column (keep first occurrence)
awk -F',' '!seen[$2]++' data.csv > deduped.csv
import csv, json, sys
from collections import Counter
def read_csv(path, delimiter=','):
"""Read CSV/TSV into list of dicts."""
with open(path, newline='', encoding='utf-8') as f:
return list(csv.DictReader(f, delimiter=delimiter))
def write_csv(rows, path, delimiter=','):
"""Write list of dicts to CSV."""
if not rows:
return
with open(path, 'w', newline='', encoding='utf-8') as f:
writer = csv.DictWriter(f, fieldnames=rows[0].keys(), delimiter=delimiter)
writer.writeheader()
writer.writerows(rows)
# Quick stats
data = read_csv('data.csv')
print(f"Rows: {len(data)}")
print(f"Columns: {list(data[0].keys())}")
for col in data[0]:
non_empty = sum(1 for r in data if r[col].strip())
print(f" {col}: {non_empty}/{len(data)} non-empty")
# Filter rows
filtered = [r for r in data if float(r['amount']) > 100]
# Add computed column
for r in data:
r['total'] = str(float(r['price']) * int(r['quantity']))
# Rename columns
renamed = [{('new_name' if k == 'old_name' else k): v for k, v in r.items()} for r in data]
# Type conversion
for r in data:
r['amount'] = float(r['amount'])
r['date'] = r['date'].strip()
from collections import defaultdict
def group_by(rows, key):
"""Group rows by a column value."""
groups = defaultdict(list)
for r in rows:
groups[r[key]].append(r)
return dict(groups)
def aggregate(rows, group_col, agg_col, func='sum'):
"""Aggregate a column by groups."""
groups = group_by(rows, group_col)
results = []
for name, group in sorted(groups.items()):
values = [float(r[agg_col]) for r in group if r[agg_col].strip()]
if func == 'sum':
agg = sum(values)
elif func == 'avg':
agg = sum(values) / len(values) if values else 0
elif func == 'count':
agg = len(values)
elif func == 'min':
agg = min(values) if values else 0
elif func == 'max':
agg = max(values) if values else 0
results.append({group_col: name, f'{func}_{agg_col}': str(agg), 'count': str(len(group))})
return results
# Example: sum revenue by category
summary = aggregate(data, 'category', 'revenue', 'sum')
write_csv(summary, 'summary.csv')
def inner_join(left, right, on):
"""Inner join two datasets on a key column."""
right_index = {}
for r in right:
key = r[on]
if key not in right_index:
right_index[key] = []
right_index[key].append(r)
results = []
for lr in left:
key = lr[on]
if key in right_index:
for rr in right_index[key]:
merged = {**lr}
for k, v in rr.items():
if k != on:
merged[k] = v
results.append(merged)
return results
def left_join(left, right, on):
"""Left join: keep all left rows, fill missing right with empty."""
right_index = {}
right_cols = set()
for r in right:
key = r[on]
right_cols.update(r.keys())
if key not in right_index:
right_index[key] = []
right_index[key].append(r)
right_cols.discard(on)
results = []
for lr in left:
key = lr[on]
if key in right_index:
for rr in right_index[key]:
merged = {**lr}
for k, v in rr.items():
if k != on:
merged[k] = v
results.append(merged)
else:
merged = {**lr}
for col in right_cols:
merged[col] = ''
results.append(merged)
return results
# Example
orders = read_csv('orders.csv')
customers = read_csv('customers.csv')
joined = left_join(orders, customers, on='customer_id')
write_csv(joined, 'orders_with_customers.csv')
def deduplicate(rows, key_cols=None):
"""Remove duplicate rows. If key_cols specified, dedupe by those columns only."""
seen = set()
unique = []
for r in rows:
if key_cols:
key = tuple(r[c] for c in key_cols)
else:
key = tuple(sorted(r.items()))
if key not in seen:
seen.add(key)
unique.append(r)
return unique
# Deduplicate by email column
clean = deduplicate(data, key_cols=['email'])
import json, csv
with open('data.csv', newline='', encoding='utf-8') as f:
rows = list(csv.DictReader(f))
# Array of objects
with open('data.json', 'w') as f:
json.dump(rows, f, indent=2)
# JSON Lines (one object per line, streamable)
with open('data.jsonl', 'w') as f:
for row in rows:
f.write(json.dumps(row) + '\n')
import json, csv
with open('data.json') as f:
rows = json.load(f)
with open('data.csv', 'w', newline='', encoding='utf-8') as f:
writer = csv.DictWriter(f, fieldnames=rows[0].keys())
writer.writeheader()
writer.writerows(rows)
import json, csv
rows = []
with open('data.jsonl') as f:
for line in f:
if line.strip():
rows.append(json.loads(line))
with open('data.csv', 'w', newline='', encoding='utf-8') as f:
all_keys = set()
for r in rows:
all_keys.update(r.keys())
writer = csv.DictWriter(f, fieldnames=sorted(all_keys))
writer.writeheader()
writer.writerows(rows)
tr '\t' ',' < data.tsv > data.csv
def clean_csv(rows):
"""Clean common CSV data quality issues."""
cleaned = []
for r in rows:
clean_row = {}
for k, v in r.items():
# Strip whitespace from keys and values
k = k.strip()
v = v.strip() if isinstance(v, str) else v
# Normalize empty values
if v in ('', 'N/A', 'n/a', 'NA', 'null', 'NULL', 'None', '-'):
v = ''
# Normalize boolean values
if v.lower() in ('true', 'yes', '1', 'y'):
v = 'true'
elif v.lower() in ('false', 'no', '0', 'n'):
v = 'false'
clean_row[k] = v
cleaned.append(clean_row)
return cleaned
def validate_rows(rows, schema):
"""
Validate rows against a schema.
schema: dict of column_name -> 'int'|'float'|'date'|'email'|'str'
Returns (valid_rows, error_rows)
"""
import re
valid, errors = [], []
for i, r in enumerate(rows):
errs = []
for col, dtype in schema.items():
val = r.get(col, '').strip()
if not val:
continue
if dtype == 'int':
try:
int(val)
except ValueError:
errs.append(f"{col}: '{val}' not int")
elif dtype == 'float':
try:
float(val)
except ValueError:
errs.append(f"{col}: '{val}' not float")
elif dtype == 'email':
if not re.match(r'^[^@]+@[^@]+\.[^@]+$', val):
errs.append(f"{col}: '{val}' not email")
elif dtype == 'date':
if not re.match(r'^\d{4}-\d{2}-\d{2}', val):
errs.append(f"{col}: '{val}' not YYYY-MM-DD")
if errs:
errors.append({'row': i + 2, 'errors': errs, 'data': r})
else:
valid.append(r)
return valid, errors
# Usage
valid, bad = validate_rows(data, {'amount': 'float', 'email': 'email', 'date': 'date'})
print(f"Valid: {len(valid)}, Errors: {len(bad)}")
for e in bad[:5]:
print(f" Row {e['row']}: {e['errors']}")
def generate_report(data, title, group_col, value_col):
"""Generate a Markdown summary report."""
lines = [f"# {title}", f"", f"**Total rows**: {len(data)}", ""]
# Group summary
groups = group_by(data, group_col)
lines.append(f"## By {group_col}")
lines.append("")
lines.append(f"| {group_col} | Count | Sum | Avg | Min | Max |")
lines.append("|---|---|---|---|---|---|")
for name in sorted(groups):
vals = [float(r[value_col]) for r in groups[name] if r[value_col].strip()]
if vals:
lines.append(f"| {name} | {len(vals)} | {sum(vals):.2f} | {sum(vals)/len(vals):.2f} | {min(vals):.2f} | {max(vals):.2f} |")
lines.append("")
lines.append(f"*Generated from {len(data)} rows*")
return '\n'.join(lines)
report = generate_report(data, "Sales Summary", "category", "revenue")
with open('report.md', 'w') as f:
f.write(report)
For files too large to load into memory at once:
def stream_process(input_path, output_path, transform_fn, delimiter=','):
"""Process a CSV row-by-row without loading entire file."""
with open(input_path, newline='', encoding='utf-8') as fin, \
open(output_path, 'w', newline='', encoding='utf-8') as fout:
reader = csv.DictReader(fin, delimiter=delimiter)
writer = None
for row in reader:
result = transform_fn(row)
if result is None:
continue # Skip row
if writer is None:
writer = csv.DictWriter(fout, fieldnames=result.keys(), delimiter=delimiter)
writer.writeheader()
writer.writerow(result)
# Example: filter and transform in streaming fashion
def process_row(row):
if float(row.get('amount', 0) or 0) < 10:
return None # Skip small amounts
row['amount_usd'] = str(float(row['amount']) * 1.0) # Add computed field
return row
stream_process('big_file.csv', 'output.csv', process_row)
file -i data.csv or open with encoding='utf-8-sig' for BOM filesjson.dumps(ensure_ascii=False) for international charactersdelimiter='|' in csv.reader/writersqlite3 which Python includes:
sqlite3 :memory: ".mode csv" ".import data.csv t" "SELECT category, SUM(amount) FROM t GROUP BY category;"
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