Find out if your data is what you think it is.
Project description
What is Pointblank?
Pointblank is a modern data validation framework for Python that helps you trust your data with confidence. It provides a fluent, expressive API to validate your data against a wide range of constraints and presents results in beautiful, interactive reports.
Whether you're a data scientist, data engineer, or analyst, Pointblank helps you catch data quality issues before they impact your analyses or downstream systems.
Getting Started in 30 Seconds
import pointblank as pb
validation = (
pb.Validate(data=pb.load_dataset(dataset="small_table"))
.col_vals_gt(columns="d", value=100) # Validate values > 100
.col_vals_le(columns="c", value=5) # Validate values <= 5
.col_exists(columns=["date", "date_time"]) # Check columns exist
.interrogate() # Execute and collect results
)
# Get the validation report from the REPL with:
validation.get_tabular_report().show()
# From a notebook simply use:
validation
Why Choose Pointblank?
- Works with your existing stack - Seamlessly integrates with Polars, Pandas, DuckDB, MySQL, PostgreSQL, SQLite, Parquet, and more!
- Beautiful, interactive reports - Crystal-clear validation results that highlight issues and help communicate data quality
- Composable validation pipeline - Chain validation steps into a complete data quality workflow
- Threshold-based alerts - Set 'warning', 'error', and 'critical' thresholds with custom actions
- Practical outputs - Use validation results to filter tables, extract problematic data, or trigger downstream processes
Real-World Example
import pointblank as pb
import polars as pl
# Load your data
sales_data = pl.read_csv("sales_data.csv")
# Create a comprehensive validation
validation = (
pb.Validate(
data=sales_data,
tbl_name="sales_data", # Name of the table for reporting
label="Real-world example.", # Label for the validation, appears in reports
thresholds=(0.01, 0.02, 0.05), # Set thresholds for warnings, errors, and critical issues
actions=pb.Actions( # Define actions for any threshold exceedance
critical="Major data quality issue found in step {step} ({time})."
),
final_actions=pb.FinalActions( # Define final actions for the entire validation
pb.send_slack_notification(
webhook_url="https://hooks.slack.com/services/your/webhook/url"
)
),
brief=True, # Add automatically-generated briefs for each step
)
.col_vals_between( # Check numeric ranges with precision
columns=["price", "quantity"],
left=0, right=1000
)
.col_vals_not_null( # Ensure that columns ending with '_id' don't have null values
columns=pb.ends_with("_id")
)
.col_vals_regex( # Validate patterns with regex
columns="email",
pattern="^[a-zA-Z0-9._%+-]+@[a-zA-Z0-9.-]+\\.[a-zA-Z]{2,}$"
)
.col_vals_in_set( # Check categorical values
columns="status",
set=["pending", "shipped", "delivered", "returned"]
)
.conjointly( # Combine multiple conditions
lambda df: pb.expr_col("revenue") == pb.expr_col("price") * pb.expr_col("quantity"),
lambda df: pb.expr_col("tax") >= pb.expr_col("revenue") * 0.05
)
.interrogate()
)
Major data quality issue found in step 7 (2025-04-16 15:03:04.685612+00:00).
# Get an HTML report you can share with your team
validation.get_tabular_report().show("browser")
# Get a report of failing records from a specific step
validation.get_step_report(i=3).show("browser") # Get failing records from step 3
Features That Set Pointblank Apart
- Complete validation workflow - From data access to validation to reporting in a single pipeline
- Built for collaboration - Share results with colleagues through beautiful interactive reports
- Practical outputs - Get exactly what you need: counts, extracts, summaries, or full reports
- Flexible deployment - Use in notebooks, scripts, or data pipelines
- Customizable - Tailor validation steps and reporting to your specific needs
- Internationalization - Reports can be generated in over 20 languages, including English, Spanish, French, and German
Documentation and Examples
Visit our documentation site for:
Join the Community
We'd love to hear from you! Connect with us:
- GitHub Issues for bug reports and feature requests
- Discord server for discussions and help
- Contributing guidelines if you'd like to help improve Pointblank
Installation
You can install Pointblank using pip:
pip install pointblank
You can also install Pointblank from Conda-Forge by using:
conda install conda-forge::pointblank
If you don't have Polars or Pandas installed, you'll need to install one of them to use Pointblank.
pip install "pointblank[pl]" # Install Pointblank with Polars
pip install "pointblank[pd]" # Install Pointblank with Pandas
To use Pointblank with DuckDB, MySQL, PostgreSQL, or SQLite, install Ibis with the appropriate backend:
pip install "pointblank[duckdb]" # Install Pointblank with Ibis + DuckDB
pip install "pointblank[mysql]" # Install Pointblank with Ibis + MySQL
pip install "pointblank[postgres]" # Install Pointblank with Ibis + PostgreSQL
pip install "pointblank[sqlite]" # Install Pointblank with Ibis + SQLite
Technical Details
Pointblank uses Narwhals to work with Polars and Pandas DataFrames, and integrates with Ibis for database and file format support. This architecture provides a consistent API for validating tabular data from various sources.
Contributing to Pointblank
There are many ways to contribute to the ongoing development of Pointblank. Some contributions can be simple (like fixing typos, improving documentation, filing issues for feature requests or problems, etc.) and others might take more time and care (like answering questions and submitting PRs with code changes). Just know that anything you can do to help would be very much appreciated!
Please read over the contributing guidelines for information on how to get started.
Roadmap
We're actively working on enhancing Pointblank with:
- Additional validation methods for comprehensive data quality checks
- Advanced logging capabilities
- Messaging actions (Slack, email) for threshold exceedances
- LLM-powered validation suggestions and data dictionary generation
- JSON/YAML configuration for pipeline portability
- CLI utility for validation from the command line
- Expanded backend support and certification
- High-quality documentation and examples
If you have any ideas for features or improvements, don't hesitate to share them with us! We are always looking for ways to make Pointblank better.
Code of Conduct
Please note that the Pointblank project is released with a contributor code of conduct.
By participating in this project you agree to abide by its terms.
📄 License
Pointblank is licensed under the MIT license.
© Posit Software, PBC.
🏛️ Governance
This project is primarily maintained by Rich Iannone. Other authors may occasionally assist with some of these duties.