xudong963 commented on code in PR #155:
URL: https://github.com/apache/datafusion-site/pull/155#discussion_r2934568462


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content/blog/2026-03-10-limit-pruning.md:
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+---
+layout: post
+title: Turning LIMIT into an I/O Optimization: Inside DataFusion’s Multi-Layer 
Pruning Stack
+date: 2026-03-10
+author: xudong
+categories: [features]
+---
+<!--
+{% comment %}
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+
+[TOC]
+
+<style>
+figure {
+  margin: 20px 0;
+}
+
+figure img {
+  display: block;
+  max-width: 80%;
+  margin: auto;
+}
+
+figcaption {
+  font-style: italic;
+  color: #555;
+  font-size: 0.9em;
+  max-width: 80%;
+  margin: auto;
+  text-align: center;
+}
+</style>
+
+*Xudong Wang, [Massive](https://www.massive.com/)*
+
+Reading data efficiently means touching as little data as possible. The 
fastest I/O is the I/O you never make. This sounds obvious, but making it 
happen in practice requires careful engineering at every layer of the query 
engine. [Apache DataFusion] achieves this through a multi-layer **pruning 
pipeline** — a series of stages that progressively narrow down the data before 
decoding a single row.
+
+In this post, we describe a new optimization called **limit pruning** that 
makes this pipeline aware of SQL `LIMIT` clauses. By identifying row groups 
where *every* row is guaranteed to match the predicate, DataFusion can satisfy 
a `LIMIT` query without ever touching partially matching row groups — 
eliminating wasted I/O entirely.
+
+This work was inspired by the "Pruning for LIMIT Queries" section of 
Snowflake's paper [*Pruning in Snowflake: Working Smarter, Not 
Harder*](https://arxiv.org/pdf/2504.11540).
+
+## DataFusion's Pruning Pipeline
+
+Before diving into limit pruning, let's understand the full pruning pipeline. 
DataFusion scans Parquet data through a series of increasingly fine-grained 
filters, each one eliminating data so the next stage processes less:
+
+<figure>
+<img src="/blog/images/limit-pruning/pruning-phases.svg" width="80%" 
alt="Three phases of DataFusion's pruning pipeline"/>
+<figcaption>Figure 1: The three phases of DataFusion's pruning pipeline — from 
directories down to individual rows.</figcaption>
+</figure>
+
+### Phase 1: High-Level Discovery
+
+- **Partition Pruning**: The `ListingTable` component evaluates filters that 
depend only on partition columns — things like `year`, `month`, or `region` 
encoded in directory paths (e.g., `s3://data/year=2024/month=01/`). Irrelevant 
directories are eliminated before we even open a file.
+- **File Stats Pruning**: The `FilePruner` checks file-level min/max and 
null-count statistics. If these statistics prove that a file cannot satisfy the 
predicate, we drop it entirely — no need to read row group metadata.
+
+### Phase 2: Row Group Statistics
+
+For each surviving file, DataFusion reads row group metadata and classifies 
each row group into one of three states:
+
+<figure>
+<img src="/blog/images/limit-pruning/row-group-states.svg" width="80%" 
alt="Row group classification: not matching, partially matching, fully 
matching"/>
+<figcaption>Figure 2: Row groups are classified into three states based on 
their statistics.</figcaption>
+</figure>
+
+- **Not Matching (Skipped)**: Statistics prove no rows can match. The row 
group is ignored completely.
+- **Partially Matching**: Statistics cannot rule out matching rows, but also 
cannot guarantee them. These groups might be scanned and verified row by row 
later.
+- **Fully Matching**: Statistics prove that *every single row* in the group 
satisfies the predicate. This state is key to making limit pruning possible.
+
+Additionally, **bloom filters** could eliminate row groups for equality and 
`IN`-list predicates at this stage.
+
+### Phase 3: Granular Pruning
+
+The final phase goes even deeper:
+
+- **Page Index Pruning**: Parquet pages have their own min/max statistics. 
DataFusion uses these to skip individual data pages within a surviving row 
group.
+- **Late Materialization (Row Filtering)**: Instead of decoding all columns at 
once, DataFusion decodes the cheapest, most selective columns first. It filters 
rows using those columns, then only decodes the remaining columns for surviving 
rows.
+
+## The Problem: LIMIT Was Ignored
+
+Before limit pruning, all of these stages worked well — but the pruning 
pipeline had **no awareness of `LIMIT`**. Consider a query like:
+
+```sql
+SELECT * FROM tracking_data
+WHERE species LIKE 'Alpine%' AND s >= 50
+LIMIT 3
+```
+
+Even when fully matched row groups alone contain enough rows to satisfy the 
`LIMIT`, the scan would still visit partially matching groups — decoding data 
that might contribute zero qualifying rows.
+
+<figure>
+<img src="/blog/images/limit-pruning/wasted-io.svg" width="80%" 
alt="Traditional pruning decodes partially matching groups with no LIMIT 
awareness"/>
+<figcaption>Figure 3: Without limit awareness, partially matching groups are 
scanned even when fully matched groups already have enough rows.</figcaption>
+</figure>
+
+If five fully matched rows in a fully matched group already satisfy `LIMIT 5`, 
why bother decoding groups where we're not even sure any rows qualify?
+
+## The Solution: Limit-Aware Pruning
+
+The solution adds a new step in the pruning pipeline — right after row group 
pruning and before page index pruning:
+
+<figure>
+<img src="/blog/images/limit-pruning/pruning-pipeline.svg" width="80%" 
alt="Pruning pipeline with limit pruning highlighted"/>
+<figcaption>Figure 4: Limit pruning is inserted between row group and page 
index pruning.</figcaption>
+</figure>
+
+The idea is simple: **if fully matched row groups already contain enough rows 
to satisfy the `LIMIT`, rewrite the access plan to scan only those groups and 
skip everything else.**
+
+This optimization is applied only when the query is a pure limit query with no 
`ORDER BY`, because reordering which groups we scan could change the output 
ordering of the results. In the implementation, this check is expressed as:
+
+```rust
+// Prune by limit if limit is set and order is not sensitive
+if let (Some(limit), false) = (limit, preserve_order) {
+    row_groups.prune_by_limit(limit, rg_metadata, &file_metrics);
+}
+```
+
+## Mechanism: Detecting Fully Matched Row Groups
+
+The core insight is **predicate negation**. To determine if every row in a row 
group satisfies the predicate, we:

Review Comment:
   +1



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