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ivangdavila

Elasticsearch

by Iván · GitHub ↗ · v1.0.0
linuxdarwinwin32 ✓ Security Clean
1530
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5
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10
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1
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Install in OpenClaw
/install elasticsearch
Description
Query and index Elasticsearch with proper mappings, analyzers, and search patterns.
README (SKILL.md)

Mapping Mistakes

  • Always define explicit mappings—dynamic mapping guesses wrong (first "123" makes field integer, later "abc" fails)
  • text for full-text search, keyword for exact match/aggregations—using text for IDs breaks filters
  • Can't change field type after indexing—must reindex to new index with correct mapping
  • Set dynamic: "strict" to reject unmapped fields—catches typos in field names

Text vs Keyword

  • text is analyzed (tokenized, lowercased)—"Quick Brown" matches search for "quick"
  • keyword is exact bytes—"Quick Brown" only matches exactly "Quick Brown"
  • Need both? Use multi-field: "title": { "type": "text", "fields": { "raw": { "type": "keyword" }}}
  • Sort/aggregate on title.raw, search on title

Query vs Filter Context

  • Query context calculates relevance score—expensive, use for search ranking
  • Filter context is yes/no—cacheable, use for exact conditions (status, date ranges)
  • Combine: bool.must for scoring, bool.filter for filtering without scoring
  • Range queries on dates/numbers almost always belong in filter, not query

Analyzers

  • standard analyzer lowercases and removes punctuation—fine for most text
  • keyword analyzer keeps exact string—use for codes, SKUs, emails
  • Language analyzers (english) stem words—"running" matches "run"
  • Test analyzer with _analyze endpoint before indexing—surprises in production hurt

Nested vs Object

  • Object type flattens arrays—{"tags": [{"key":"a","val":1}, {"key":"b","val":2}]} becomes tags.key: [a,b], tags.val: [1,2]
  • Flattened loses association—query key=a AND val=2 incorrectly matches above
  • Use nested type to preserve object boundaries—requires nested query wrapper
  • Nested is expensive—avoid for high-cardinality arrays

Pagination Traps

  • from + size limited to 10,000 hits—deep pagination fails
  • search_after for deep pagination—requires consistent sort, typically _id
  • Scroll API for bulk export—keeps point-in-time view, but ties up resources
  • Don't use scroll for user pagination—search_after is correct choice

Bulk Operations

  • Never index documents one-by-one—use _bulk API, 5-15MB batches
  • Bulk format: newline-delimited JSON, action line then document line
  • Check response for partial failures—bulk can succeed overall with individual doc errors
  • Set refresh=false during bulk loads—refresh after batch completes

Performance

  • _source: false with stored_fields if you don't need full document—reduces I/O
  • Use filter for cacheable conditions—Elasticsearch caches filter results
  • Avoid leading wildcards (*term)—forces full scan; use reverse field for suffix search
  • profile: true shows query execution breakdown—find slow clauses

Sharding

  • Shard size 10-50GB optimal—too small = overhead, too large = slow recovery
  • Number of shards fixed at creation—can't reshard without reindexing
  • Replicas for read throughput and availability—set based on query load
  • Start with 1 shard for small indices—over-sharding kills performance

Index Management

  • Use index templates—new indices get consistent mappings and settings
  • Use aliases for zero-downtime reindexing—point alias to new index after reindex
  • ILM (Index Lifecycle Management) for time-series—auto-rollover, delete old indices
  • Close unused indices to free memory—closed index uses no heap

Aggregations

  • terms agg needs keyword field—text fields fail or give garbage
  • Default size: 10 on terms agg—increase to get all buckets, or use composite
  • Cardinality is approximate (HyperLogLog)—exact count requires scanning all docs
  • Nested aggs require nested wrapper—matches nested query pattern

Common Errors

  • "cluster_block_exception"—disk > 85%, cluster goes read-only; clear disk, reset with _cluster/settings
  • "version conflict"—concurrent update; retry with retry_on_conflict or use optimistic locking
  • "circuit_breaker_exception"—query uses too much memory; reduce aggregation scope
  • Mapping explosion from dynamic fields—set index.mapping.total_fields.limit and use strict mapping
Usage Guidance
This skill is a read-only instruction bundle (no code) that provides Elasticsearch best practices. It is internally consistent and low-risk to install. Before using: ensure any Elasticsearch endpoint and credentials you provide are least-privilege (prefer API keys limited to specific indices and actions), restrict network access to trusted clusters, test bulk/index operations on staging, and consider disabling autonomous invocation or not supplying credentials if you don't want the agent to perform queries/indexes automatically.
Capability Analysis
Type: OpenClaw Skill Name: elasticsearch Version: 1.0.0 The skill bundle is benign. It primarily consists of informational content about Elasticsearch best practices and common issues in SKILL.md. The only notable capability is the explicit requirement for `curl` in the metadata, which is a standard tool for interacting with Elasticsearch APIs and is consistent with the skill's stated purpose. There are no signs of prompt injection, data exfiltration, malicious execution, persistence mechanisms, or obfuscation.
Capability Assessment
Purpose & Capability
Name/description match the provided content (mapping, analyzers, queries, bulk operations, etc.). Declaring curl as an available binary is appropriate for an instruction-only skill that may use HTTP to call an Elasticsearch API.
Instruction Scope
SKILL.md contains best-practice guidance and operational notes about Elasticsearch APIs and behaviors. It does not instruct the agent to read arbitrary system files, access unrelated services, or exfiltrate data. All actions described are within the Elasticsearch domain.
Install Mechanism
No install spec or code files are present (instruction-only), so nothing will be written to disk or downloaded during installation — lowest-risk model.
Credentials
The skill declares no required environment variables or credentials. This is reasonable for a generic guidance skill, but practical use will require an Elasticsearch endpoint and likely credentials (API key/basic auth). The skill does not request them explicitly; ensure any credentials you supply are minimal-privilege and scoped.
Persistence & Privilege
always is false and the skill is user-invocable. Autonomous invocation is enabled (platform default) but not by itself a problem — be mindful that with provided ES credentials the agent could run queries or index data autonomously.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install elasticsearch
  3. After installation, invoke the skill by name or use /elasticsearch
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
Initial release
Metadata
Slug elasticsearch
Version 1.0.0
License
All-time Installs 10
Active Installs 10
Total Versions 1
Frequently Asked Questions

What is Elasticsearch?

Query and index Elasticsearch with proper mappings, analyzers, and search patterns. It is an AI Agent Skill for Claude Code / OpenClaw, with 1530 downloads so far.

How do I install Elasticsearch?

Run "/install elasticsearch" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Elasticsearch free?

Yes, Elasticsearch is completely free (open-source). You can download, install and use it at no cost.

Which platforms does Elasticsearch support?

Elasticsearch is cross-platform and runs anywhere OpenClaw / Claude Code is available (linux, darwin, win32).

Who created Elasticsearch?

It is built and maintained by Iván (@ivangdavila); the current version is v1.0.0.

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