Search Shortcut cmd + k | ctrl + k
- Installation
- Documentation
- Getting Started
- Connect
- Data Import
- Overview
- Data Sources
- CSV Files
- JSON Files
- Overview
- Creating JSON
- Loading JSON
- Writing JSON
- JSON Type
- JSON Functions
- Format Settings
- Installing and Loading
- SQL to / from JSON
- Caveats
- Multiple Files
- Parquet Files
- Partitioning
- Appender
- INSERT Statements
- Client APIs
- Overview
- ADBC
- C
- Overview
- Startup
- Configuration
- Query
- Data Chunks
- Vectors
- Values
- Types
- Prepared Statements
- Appender
- Table Functions
- Replacement Scans
- API Reference
- C++
- CLI
- Dart
- Go
- Java (JDBC)
- Julia
- Node.js (Deprecated)
- Node.js (Neo)
- ODBC
- Python
- Overview
- Data Ingestion
- Conversion between DuckDB and Python
- DB API
- Relational API
- Function API
- Types API
- Expression API
- Spark API
- API Reference
- Known Python Issues
- R
- Rust
- Swift
- Wasm
- SQL
- Introduction
- Statements
- Overview
- ANALYZE
- ALTER TABLE
- ALTER VIEW
- ATTACH and DETACH
- CALL
- CHECKPOINT
- COMMENT ON
- COPY
- CREATE INDEX
- CREATE MACRO
- CREATE SCHEMA
- CREATE SECRET
- CREATE SEQUENCE
- CREATE TABLE
- CREATE VIEW
- CREATE TYPE
- DELETE
- DESCRIBE
- DROP
- EXPORT and IMPORT DATABASE
- INSERT
- LOAD / INSTALL
- PIVOT
- Profiling
- SELECT
- SET / RESET
- SET VARIABLE
- SUMMARIZE
- Transaction Management
- UNPIVOT
- UPDATE
- USE
- VACUUM
- Query Syntax
- SELECT
- FROM and JOIN
- WHERE
- GROUP BY
- GROUPING SETS
- HAVING
- ORDER BY
- LIMIT and OFFSET
- SAMPLE
- Unnesting
- WITH
- WINDOW
- QUALIFY
- VALUES
- FILTER
- Set Operations
- Prepared Statements
- Data Types
- Overview
- Array
- Bitstring
- Blob
- Boolean
- Date
- Enum
- Interval
- List
- Literal Types
- Map
- NULL Values
- Numeric
- Struct
- Text
- Time
- Timestamp
- Time Zones
- Union
- Typecasting
- Expressions
- Overview
- CASE Expression
- Casting
- Collations
- Comparisons
- IN Operator
- Logical Operators
- Star Expression
- Subqueries
- Functions
- Overview
- Aggregate Functions
- Array Functions
- Bitstring Functions
- Blob Functions
- Date Format Functions
- Date Functions
- Date Part Functions
- Enum Functions
- Interval Functions
- Lambda Functions
- List Functions
- Map Functions
- Nested Functions
- Numeric Functions
- Pattern Matching
- Regular Expressions
- Struct Functions
- Text Functions
- Time Functions
- Timestamp Functions
- Timestamp with Time Zone Functions
- Union Functions
- Utility Functions
- Window Functions
- Constraints
- Indexes
- Meta Queries
- DuckDB's SQL Dialect
- Overview
- Indexing
- Friendly SQL
- Keywords and Identifiers
- Order Preservation
- PostgreSQL Compatibility
- SQL Quirks
- Samples
- Configuration
- Extensions
- Overview
- Core Extensions
- Community Extensions
- Installing Extensions
- Advanced Installation Methods
- Distributing Extensions
- Versioning of Extensions
- Arrow
- AutoComplete
- Avro
- AWS
- Azure
- Delta
- Excel
- Full Text Search
- httpfs (HTTP and S3)
- Iceberg
- ICU
- inet
- jemalloc
- MySQL
- PostgreSQL
- Spatial
- SQLite
- TPC-DS
- TPC-H
- UI
- VSS
- Guides
- Overview
- Data Viewers
- Database Integration
- File Formats
- Overview
- CSV Import
- CSV Export
- Directly Reading Files
- Excel Import
- Excel Export
- JSON Import
- JSON Export
- Parquet Import
- Parquet Export
- Querying Parquet Files
- File Access with the file: Protocol
- Network and Cloud Storage
- Overview
- HTTP Parquet Import
- S3 Parquet Import
- S3 Parquet Export
- S3 Iceberg Import
- S3 Express One
- GCS Import
- Cloudflare R2 Import
- DuckDB over HTTPS / S3
- Fastly Object Storage Import
- Meta Queries
- Describe Table
- EXPLAIN: Inspect Query Plans
- EXPLAIN ANALYZE: Profile Queries
- List Tables
- Summarize
- DuckDB Environment
- ODBC
- Performance
- Overview
- Environment
- Import
- Schema
- Indexing
- Join Operations
- File Formats
- How to Tune Workloads
- My Workload Is Slow
- Benchmarks
- Python
- Installation
- Executing SQL
- Jupyter Notebooks
- SQL on Pandas
- Import from Pandas
- Export to Pandas
- Import from Numpy
- Export to Numpy
- SQL on Arrow
- Import from Arrow
- Export to Arrow
- Relational API on Pandas
- Multiple Python Threads
- Integration with Ibis
- Integration with Polars
- Using fsspec Filesystems
- SQL Editors
- SQL Features
- Snippets
- Creating Synthetic Data
- Dutch Railway Datasets
- Sharing Macros
- Analyzing a Git Repository
- Importing Duckbox Tables
- Copying an In-Memory Database to a File
- Glossary of Terms
- Browsing Offline
- Operations Manual
- Overview
- DuckDB's Footprint
- Logging
- Securing DuckDB
- Non-Deterministic Behavior
- Limits
- Development
- DuckDB Repositories
- Profiling
- Building DuckDB
- Overview
- Build Configuration
- Building Extensions
- Android
- Linux
- macOS
- Raspberry Pi
- Windows
- Python
- R
- Troubleshooting
- Unofficial and Unsupported Platforms
- Benchmark Suite
- Testing
- Internals
- Why DuckDB
- FAQ
- Code of Conduct
- Release Calendar
- Roadmap
- Sitemap
- Live Demo
Documentation
/ Guides
/ Snippets
Dutch Railway Datasets
Examples in this documentation often use datasets based on the Dutch Railway datasets. These high-quality datasets are maintained by the team behind the Rijden de Treinen (Are the trains running?) application. This page contains download links to our mirrors to the datasets.
Loading the Datasets
You can load the datasets directly as follows:
CREATE TABLE services AS
FROM 'https://blobs.duckdb.org/nl-railway/services-2025-03.csv.gz';
DESCRIBE services;
column_name | column_type | null | key | default | extra |
---|---|---|---|---|---|
Service:RDT-ID | BIGINT | YES | NULL | NULL | NULL |
Service:Date | DATE | YES | NULL | NULL | NULL |
Service:Type | VARCHAR | YES | NULL | NULL | NULL |
Service:Company | VARCHAR | YES | NULL | NULL | NULL |
Service:Train number | BIGINT | YES | NULL | NULL | NULL |
Service:Completely cancelled | BOOLEAN | YES | NULL | NULL | NULL |
Service:Partly cancelled | BOOLEAN | YES | NULL | NULL | NULL |
Service:Maximum delay | BIGINT | YES | NULL | NULL | NULL |
Stop:RDT-ID | BIGINT | YES | NULL | NULL | NULL |
Stop:Station code | VARCHAR | YES | NULL | NULL | NULL |
Stop:Station name | VARCHAR | YES | NULL | NULL | NULL |
Stop:Arrival time | TIMESTAMP WITH TIME ZONE | YES | NULL | NULL | NULL |
Stop:Arrival delay | BIGINT | YES | NULL | NULL | NULL |
Stop:Arrival cancelled | BOOLEAN | YES | NULL | NULL | NULL |
Stop:Departure time | TIMESTAMP WITH TIME ZONE | YES | NULL | NULL | NULL |
Stop:Departure delay | BIGINT | YES | NULL | NULL | NULL |
Stop:Departure cancelled | BOOLEAN | YES | NULL | NULL | NULL |
Datasets
Yearly Data Sets
Monthly Data Sets
- 2024-01 (29 MB)
- 2024-02 (28 MB)
- 2024-03 (30 MB)
- 2024-04 (28 MB)
- 2024-05 (30 MB)
- 2024-06 (29 MB)
- 2024-07 (30 MB)
- 2024-08 (29 MB)
- 2024-09 (29 MB)
- 2024-10 (30 MB)
- 2024-11 (29 MB)
- 2024-12 (29 MB)
- 2025-01 (30 MB)
- 2025-02 (28 MB)
- 2025-03 (30 MB)