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commit 0e26d42f550e2ded64d230b95e4803d0d02ba257
Author: Jia Yu <[email protected]>
AuthorDate: Wed Jan 14 00:52:50 2026 -0700

    [DOCS] Add Apache Sedona 2025 Year In Review blog post (#2591)
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+---
+date:
+  created: 2026-01-11
+links:
+  - Release notes: https://sedona.apache.org/latest/setup/release-notes/
+  - SedonaDB: https://sedona.apache.org/sedonadb/
+  - SpatialBench: https://sedona.apache.org/spatialbench/
+  - Apache Parquet and Iceberg native geo type: 
https://wherobots.com/blog/apache-iceberg-and-parquet-now-support-geo/
+authors:
+  - jia
+title: "Apache Sedona 2025 Year in Review"
+---
+
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+
+2025 was a milestone year for **Apache Sedona**. We made major progress in 
distributed spatial analytics on Spark, Flink, and Snowflake, launched a new 
single-node engine called SedonaDB, and pushed forward benchmarking and open 
geospatial data standards.
+
+This post summarizes the most important highlights from the Apache Sedona 
ecosystem in 2025.
+
+<!-- more -->
+
+## Apache Sedona Ecosystem Releases in 2025
+
+Apache Sedona shipped four releases from January 2025 to January 2026: 1.7.1, 
1.7.2, 1.8.0, and 1.8.1. In the same year, the Sedona ecosystem expanded in two 
major ways: we introduced SedonaDB for fast single-machine analytics and 
SpatialBench to make spatial performance comparisons reproducible.
+
+- Apache Sedona releases: Ongoing improvements across distributed engines and 
integrations (Spark, Flink, Snowflake). See the release notes for details.
+- SedonaDB: A new single-node spatial engine built for interactive analytics 
and developer workflows.
+- SpatialBench: A benchmark suite designed to standardize how we evaluate 
spatial SQL performance across engines.
+
+Release notes: 
[https://sedona.apache.org/latest/setup/release-notes/](https://sedona.apache.org/latest/setup/release-notes/)
+
+## Distributed Engines Highlights
+
+Across SedonaSpark, SedonaFlink, and SedonaSnow, 2025 brought major usability 
improvements, broader SQL coverage, and better support for modern open 
geospatial data formats:
+
+* GeoPandas API on SedonaSpark: Write GeoPandas-style code, but run it on 
Spark through Sedona, so familiar workflows like spatial joins (`sjoin`), 
buffering, distance, and coordinate system transforms can scale beyond a single 
machine. Learn more: [GeoPandas API for Apache 
Sedona](../../tutorial/geopandas-api.md).
+* GeoStats for clustering, outliers, and hot spots: Built-in tools for common 
spatial statistics workflows on DataFrames, including DBSCAN clustering, Local 
Outlier Factor (LOF), and Getis-Ord Gi/Gi* hot spot analysis. Learn more: 
[Stats module](../../api/stats/sql.md).
+* Faster SedonaSpark to GeoPandas conversion with GeoArrow: Convert query 
results to GeoPandas more efficiently using Arrow/GeoArrow, such as 
`geopandas.GeoDataFrame.from_arrow(dataframe_to_arrow(df))`. Learn more: 
[GeoPandas + Shapely interoperability](../../tutorial/geopandas-shapely.md).
+* STAC catalog reader: Load STAC collections from local files, S3, or HTTPS 
endpoints using `sedona.read.format("stac")`, and apply time/area filters early 
so you read less data. Supports authenticated STAC APIs too. Learn more: [STAC 
catalog with Apache Sedona and 
Spark](../../tutorial/files/stac-sedona-spark.md).
+* More built-in data sources: Easier ingestion from formats people use in 
practice, including GeoPackage and OSM PBF (OpenStreetMap). Learn more: 
[SedonaSQL / DataFrame I/O tutorial](../../tutorial/sql.md).
+* Vectorized UDFs (Python): A faster way to run Python UDFs by processing data 
in batches using Apache Arrow, including geometry-aware UDFs with Shapely or 
GeoPandas GeoSeries. Learn more: [Spatial vectorized UDFs (Python 
only)](../../tutorial/sql.md).
+* More functions across engines: Function coverage kept expanding across 
Spark, Flink, and Snowflake. For example: ST_ApproximateMedialAxis, 
ST_StraightSkeleton, ST_Collect_Agg, and ST_OrientedEnvelope. See the function 
catalogs for [SedonaSpark SQL](../../api/sql/Overview.md), [SedonaFlink 
SQL](../../api/flink/Overview.md), and [SedonaSnow 
SQL](../../api/snowflake/vector-data/Overview.md).
+
+## SedonaDB: A New Single-Node Spatial Engine
+
+One of the biggest developments in 2025 was the introduction of SedonaDB, a 
new analytics engine designed for geospatial data on a single machine.
+
+SedonaDB was announced in September 2025 and represents a new direction for 
the Sedona project family. It is written in Rust and built on Apache Arrow and 
DataFusion, enabling fast columnar execution with a lightweight deployment 
model.
+
+SedonaDB shipped two releases in 2025: 0.1.0 (initial release) and 0.2.0 
(major expansion).
+
+The initial 0.1.0 release introduced the core engine with native geometry and 
geography types, built-in spatial indexing, and optimized spatial joins and 
nearest-neighbor queries, with Python and SQL interfaces and a zero-setup, 
embedded-style experience.
+
+SedonaDB 0.2.0, released in December 2025, rapidly expanded the engine with 
broader spatial SQL coverage including raster, native support for reading GDAL 
and OGR compatible formats, GeoParquet 1.1 write support with bounding box 
metadata, Python UDF support, and initial raster data type support.
+
+Blog posts:
+
+* [Introducing 
SedonaDB](https://sedona.apache.org/latest/blog/2025/09/24/introducing-sedonadb-a-single-node-analytical-database-engine-with-geospatial-as-a-first-class-citizen/)
+* [SedonaDB 0.2.0 
Release](https://sedona.apache.org/latest/blog/2025/12/01/sedonadb-020-release/)
+
+## SpatialBench: Standardizing Spatial Performance Evaluation
+
+Another major milestone in 2025 was the introduction of SpatialBench, a 
benchmark suite designed specifically for spatial SQL workloads.
+
+Traditional database benchmarks often miss the patterns that matter most in 
geospatial analytics, such as spatial joins, distance filters, and spatial 
aggregations. SpatialBench was created to address this gap.
+
+SpatialBench provides:
+
+* Realistic spatial datasets
+* Configurable scale factors
+* Reproducible query workloads
+* Comparable results across engines
+
+The first SpatialBench release evaluated SedonaDB, DuckDB with spatial 
extensions, and GeoPandas, offering transparent and reproducible performance 
comparisons.
+
+Blog post: [Introducing 
SpatialBench](https://sedona.apache.org/latest/blog/2025/12/11/introducing-spatialbench-performance-benchmarks-for-spatial-database-queries/)
+
+## Advancing Open Geospatial Data Formats
+
+2025 was also a turning point for geospatial interoperability. Apache Iceberg 
and Apache Parquet gained native geometry and geography type support, making it 
easier to store spatial data directly in open lakehouse tables.
+
+This advancement enables:
+
+* Open and vendor neutral spatial storage
+* Reliable transactions for geospatial tables
+* Filtering data early so engines can scan less
+* Seamless interoperability across engines
+
+Apache Sedona and the broader geospatial community played an active role in 
driving this effort forward.
+
+Blog post: [Apache Iceberg and Parquet now support 
Geo](https://wherobots.com/blog/apache-iceberg-and-parquet-now-support-geo/)
+
+## Community and Ecosystem Growth
+
+Beyond technical milestones, 2025 saw continued growth in the Apache Sedona 
community:
+
+* New committers and contributors joined the project
+    - New committers: Pranav Toggi, Peter Nguyen, Dewey Dunnington
+    - New PMC member: Feng Zhang
+* More contributors participated across the year
+    - In 2025, 27 new contributors made their first contribution to the Apache 
Sedona repository for SedonaSpark, SedonaFlink, and SedonaSnow, bringing the 
project to 155 total contributors. In total, 46 people contributed to Apache 
Sedona in 2025.
+    - New contributors across the ecosystem:
+        - SedonaDB: 26 new contributors in 2025
+        - SpatialBench: 8 new contributors in 2025
+* Adoption continued to grow
+    - Total downloads of Apache Sedona have exceeded 65 million overall.
+    - Monthly downloads are now more than 2 million.
+    - Commit activity increased from 1,509 commits in 2024 to 2,137 commits in 
2025.
+
+Sedona’s evolution into a multi-engine, multi-deployment ecosystem reflects 
both community demand and sustained contributor effort.
+
+## Looking Ahead to 2026
+
+With strong momentum across distributed analytics, single-node engines, 
benchmarking, and open formats, Apache Sedona enters 2026 well positioned for 
further growth.
+
+Areas of continued focus include:
+
+* Deeper raster analytics support
+* Expanded SpatialBench coverage
+* Tighter integration with Iceberg native spatial features
+* Improved developer experience across Python, SQL, and Rust
+
+Spatial analytics is becoming a core capability in modern data platforms, and 
Apache Sedona is increasingly positioned as a foundational project in that 
landscape.
+
+Thank you to everyone in the community who contributed to making 2025 such a 
productive year.
+
+## References
+
+* Sedona 1.7.1, 1.7.2, 1.8.0, and 1.8.1 release notes: 
[https://sedona.apache.org/latest/setup/release-notes/](https://sedona.apache.org/latest/setup/release-notes/)
+* SedonaDB 0.1.0 release notes: 
[https://sedona.apache.org/latest/blog/2025/09/24/introducing-sedonadb-a-single-node-analytical-database-engine-with-geospatial-as-a-first-class-citizen/](https://sedona.apache.org/latest/blog/2025/09/24/introducing-sedonadb-a-single-node-analytical-database-engine-with-geospatial-as-a-first-class-citizen/)
+* SedonaDB 0.2.0 release notes: 
[https://sedona.apache.org/latest/blog/2025/12/01/sedonadb-020-release/](https://sedona.apache.org/latest/blog/2025/12/01/sedonadb-020-release/)
+* SpatialBench release notes: 
[https://sedona.apache.org/latest/blog/2025/12/11/introducing-spatialbench-performance-benchmarks-for-spatial-database-queries/](https://sedona.apache.org/latest/blog/2025/12/11/introducing-spatialbench-performance-benchmarks-for-spatial-database-queries/)
+* Apache Parquet and Iceberg native geo type: 
[https://wherobots.com/blog/apache-iceberg-and-parquet-now-support-geo/](https://wherobots.com/blog/apache-iceberg-and-parquet-now-support-geo/)

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