SQL CLI - Powerful CSV/JSON Query Tool with Interactive TUI & CLI Modes
A vim-inspired SQL query tool for CSV and JSON files. Features both an interactive terminal UI for data exploration and a non-interactive CLI mode for scripting and automation.
🚀 Why SQL CLI?
Think less
for CSV files, but with SQL superpowers:
- 🎯 Two Modes: Interactive TUI for exploration, non-interactive for scripting & automation
- 📁 Point & Query: Drop any CSV/JSON file and immediately start querying
- ⚡ Lightning Fast: In-memory engine handles 100K+ rows with sub-second response
- 🎮 Vim-Inspired: Modal editing,
hjkl
navigation, powerful keyboard shortcuts - 🧠 Smart Completion: Context-aware SQL completion with fuzzy matching
- 🔍 Advanced Filtering: Regex, fuzzy search, complex WHERE clauses
- 📊 Rich SQL Features: Date functions, string manipulation, mathematical operations
- 📤 Multiple Outputs: CSV, JSON, TSV, or pretty tables - perfect for pipelines
⚡ Quick Start
# Install from Cargo
# Point at any CSV or JSON file
# Immediately start querying with full SQL support
🎯 Two Powerful Modes
🖥️ Interactive TUI Mode (Default)
Launch the full vim-inspired terminal interface for data exploration:
# Interactive mode - explore your data with vim keybindings
# Navigate with hjkl, search with /, execute queries interactively
🚀 Non-Interactive Query Mode (New!)
Execute SQL queries directly from the command line - perfect for scripting and automation:
# Run a query and get CSV output
# Output as JSON
# Pretty table format
# Save results to file
# Execute SQL from a file
# Limit output rows
Non-Interactive Options:
-q, --query <SQL>
- Execute SQL query directly-f, --query-file <file>
- Execute SQL from file-o, --output <format>
- Output format:csv
,json
,table
,tsv
(default: csv)-O, --output-file <file>
- Write results to file-l, --limit <n>
- Limit output to n rows--case-insensitive
- Case-insensitive string matching--auto-hide-empty
- Auto-hide empty columns
Use Cases:
# Data pipeline integration
|
# Automated reporting
# Quick data analysis
# Data cleaning
# Complex calculations
💪 Powerful SQL Engine Features
🔥 Core SQL + Modern Extensions
Your SQL CLI combines traditional SQL with modern LINQ-style methods and advanced functions:
-- Traditional SQL with modern LINQ methods
SELECT
customer_name.Trim as name,
email.EndsWith('.com') as valid_email,
ROUND(price * quantity, 2) as total,
DATEDIFF('day', order_date, NOW ) as days_ago
FROM orders
WHERE customer_name.Contains('corp')
AND price BETWEEN 100 AND 1000
AND order_date > DATEADD('month', -6, TODAY )
ORDER BY total DESC
LIMIT 25
📊 Advanced Functions Library
Date & Time Functions
-- Comprehensive date handling with multiple format support
SELECT
NOW as current_time, -- 2024-08-31 15:30:45
TODAY as current_date, -- 2024-08-31
DATEDIFF('day', '2024-01-01', order_date) as days_since_year,
DATEADD('month', 3, ship_date) as warranty_expires
FROM orders
WHERE DATEDIFF('year', created_date, NOW ) <= 2
Supported Date Formats:
- ISO:
2024-01-15
,2024-01-15 14:30:00
- US:
01/15/2024
,01/15/2024 2:30 PM
- EU:
15/01/2024
,15/01/2024 14:30
- Excel:
15-Jan-2024
,Jan 15, 2024
- Full:
January 15, 2024
,15 January 2024
Mathematical Functions
-- Rich mathematical operations
SELECT
ROUND(price * 1.08, 2) as taxed_price,
SQRT(POWER(width, 2) + POWER(height, 2)) as diagonal,
MOD(id, 100) as batch_number,
ABS(actual - target) as variance,
POWER(growth_rate, years) as compound_growth
FROM products
WHERE SQRT(area) BETWEEN 10 AND 50
Available Math Functions:
ROUND
, ABS
, FLOOR
, CEILING
, MOD
, QUOTIENT
, POWER
, SQRT
, EXP
, LN
, LOG
, LOG10
, PI()
String & Text Functions
-- Advanced text manipulation
SELECT
TEXTJOIN(' | ', 1, first_name, last_name, department) as employee_info,
name.Trim .Length as clean_name_length,
email.IndexOf('@') as at_position,
description.StartsWith('Premium') as is_premium
FROM employees
WHERE name.Contains('manager')
AND email.EndsWith('.com')
AND department.Trim != ''
LINQ-Style String Methods:
column.Contains('text')
- Case-insensitive substring searchcolumn.StartsWith('prefix')
- Case-insensitive prefix checkcolumn.EndsWith('suffix')
- Case-insensitive suffix checkcolumn.Length()
- Character countcolumn.IndexOf('substring')
- Find position (0-based, -1 if not found)column.Trim()
- Remove leading/trailing spacescolumn.TrimStart()
- Remove leading spaces onlycolumn.TrimEnd()
- Remove trailing spaces only
🎯 Advanced Query Capabilities
Complex WHERE Clauses
-- Sophisticated filtering with nested logic
SELECT * FROM financial_data
WHERE (category.StartsWith('equity') OR category.Contains('bond'))
AND price BETWEEN 50 AND 500
AND quantity NOT IN (0, 1)
AND trader_name.Length > 3
AND DATEDIFF('day', trade_date, settlement_date) <= 3
AND commission NOT BETWEEN 0 AND 10
Computed Columns & Expressions
-- Complex calculations in SELECT
SELECT
-- Computed columns with aliases
price * quantity * (1 - discount/100) as net_amount,
ROUND((selling_price - cost_basis) / cost_basis * 100, 2) as profit_margin_pct,
-- Nested function calls
ROUND(SQRT(POWER(leg1, 2) + POWER(leg2, 2)), 3) as hypotenuse,
-- Conditional logic with functions
CASE
WHEN price.Contains('.') THEN 'Decimal'
WHEN MOD(ROUND(price, 0), 2) = 0 THEN 'Even'
ELSE 'Odd'
END as price_type
FROM trade_data
Flexible ORDER BY
-- Order by computed expressions and functions
SELECT *, price * quantity as total_value
FROM orders
ORDER BY
customer_name.Trim , -- LINQ method in ORDER BY
ROUND(price * quantity, 2) DESC, -- Mathematical expression
DATEDIFF('day', order_date, NOW ) ASC, -- Date function
total_value DESC -- Computed column alias
LIMIT 100
🧠 Smart Type Handling
- Automatic Coercion: String methods work on numbers (
quantity.Contains('5')
) - Flexible Parsing: Multiple date formats automatically recognized
- NULL Handling: Graceful handling of missing/empty values
- Error Recovery: Helpful suggestions for column name typos
⚡ Performance Features
- In-Memory Processing: 100K+ rows with sub-second response times
- Smart Caching: Query results cached for instant re-filtering
- Optimized Evaluation: Efficient column operations and expression parsing
- Streaming Support: Large dataset handling without memory bloat
🖥️ Vim-Inspired Terminal UI
Lightning-Fast Navigation
- Vim Keybindings:
hjkl
movement,g
/G
for top/bottom,/
and?
for search - Column Operations: Sort (
s
), Pin (p
), Hide (H
) columns with single keystrokes - Smart Search: Column search, data search, fuzzy matching with
n
/N
navigation - Virtual Scrolling: Handle datasets with 1000+ rows and 190+ columns efficiently
- Mode Switching: Insert (
i
), Append (a
/A
), Command mode (Esc
)
Power User Features
- Key History: See your last 10 keystrokes with 2s fade
- Query Caching: Results cached for instant re-filtering
- Export:
Ctrl+S
to save current view as CSV - Debug Mode:
F5
for internal state inspection
🚀 Why Choose SQL CLI?
🔥 Unique Advantages
Feature | SQL CLI | csvlens | csvkit | Other Tools |
---|---|---|---|---|
LINQ Methods | ✅ .Contains() , .StartsWith() |
❌ | ❌ | ❌ |
Date Functions | ✅ DATEDIFF , DATEADD , NOW() |
❌ | Limited | ❌ |
Math Functions | ✅ ROUND , SQRT , POWER , etc. |
❌ | Basic | ❌ |
Vim Navigation | ✅ Full vim-style | Basic | ❌ | ❌ |
Computed Columns | ✅ price * qty as total |
❌ | ❌ | Limited |
Smart Completion | ✅ Context-aware SQL | ❌ | ❌ | ❌ |
Multiple Date Formats | ✅ Auto-detection | ❌ | ❌ | ❌ |
🎯 Perfect For
- Data Analysts: Complex calculations with LINQ-style methods
- Developers: Vim navigation + SQL power for log analysis
- Financial Teams: Advanced date arithmetic and mathematical functions
- Anyone: Who wants
less
for CSV files but with SQL superpowers
🔗 Real-World Examples
-- Financial Analysis
SELECT
trader.Trim as trader_name,
ROUND(SUM(price * quantity), 2) as total_volume,
COUNT(*) as trade_count,
ROUND(AVG(price), 4) as avg_price,
DATEDIFF('day', MIN(trade_date), MAX(trade_date)) as trading_span
FROM trades
WHERE settlement_date > DATEADD('month', -3, TODAY )
AND counterparty.Contains('BANK')
AND commission BETWEEN 5 AND 100
AND NOT status.StartsWith('CANCEL')
GROUP BY trader.Trim
ORDER BY total_volume DESC
LIMIT 20;
-- Log Analysis
SELECT
log_level,
message.IndexOf('ERROR') as error_position,
TEXTJOIN(' | ', 1, timestamp, service, user_id) as context,
ROUND(response_time_ms / 1000.0, 3) as response_seconds
FROM application_logs
WHERE timestamp > DATEADD('hour', -24, NOW )
AND (message.Contains('timeout') OR message.Contains('exception'))
AND response_time_ms BETWEEN 1000 AND 30000
ORDER BY timestamp DESC;
📦 Installation
Install with Cargo
# Install directly from git
# Or install from crates.io (when published)
Build from Source
🎮 Usage
Basic Usage
# Load CSV file
# Load JSON file
# With enhanced mode
Key Bindings
- Navigation:
hjkl
(vim-style),g
/G
(top/bottom) - Search:
/
(column search),?
(data search),n
/N
(next/prev) - Columns:
s
(sort),p
(pin),H
(hide) - Modes:
i
(insert),a
/A
(append),Esc
(normal) - Export:
Ctrl+S
(save current view as CSV)
Advanced SQL Examples
-- Date functions and complex filtering
SELECT * FROM data
WHERE created_date > DATEADD(MONTH, -3, NOW )
AND status.Contains('active')
ORDER BY updated_date DESC
-- Aggregations and grouping
SELECT category, COUNT(*) as count, AVG(amount) as avg_amount
FROM sales
GROUP BY category
HAVING count > 10
-- String manipulation
SELECT UPPER(name) as name_upper,
LEFT(description, 50) as desc_preview
FROM products
WHERE name.StartsWith('A')
🔧 Development
Running Tests
# Run all tests
# Run specific test suite
Build Commands
# Format code (required before commits)
# Build release
# Run with file
🎯 Performance
- 10K-100K rows: Interactive queries (50-200ms)
- Complex queries on 100K rows: ~100-200ms
- Memory usage: ~50MB for 100K rows
- Navigation: Zero-latency keyboard response
📚 Documentation
Comprehensive documentation available in the docs/
folder covering:
- Architecture and design decisions
- SQL parser implementation
- TUI component system
- Performance optimization techniques
🤝 Contributing
- Fork the repository
- Create a feature branch
- Run
cargo fmt
before committing (required) - Submit a pull request
📄 License
MIT License - see the LICENSE file for details.
Built with Rust 🦀 | Powered by ratatui + crossterm | Inspired by vim