Catalog
github/arize-annotation

github

arize-annotation

Creates and manages annotation configs (categorical, continuous, freeform label schemas) and annotation queues (human review workflows) on Arize. Applies human annotations to project spans via the Python SDK. Use when the user mentions annotation config, annotation queue, label schema, human feedback, bulk annotate spans, update_annotations, labeling queue, annotate record, or human review.

globalRequires the ax CLI and a configured Arize profile.
author:arize
version:1.0
New~2.7k
v1.0Saved Jun 26, 2026

Arize Annotation Skill

SPACE — All --space flags and the ARIZE_SPACE env var accept a space name (e.g., my-workspace) or a base64 space ID (e.g., U3BhY2U6...). Find yours with ax spaces list.

This skill covers annotation configs (the label schema) and annotation queues (human review workflows), as well as programmatically annotating project spans via the Python SDK.

Direction: Human labeling in Arize attaches values defined by configs to spans, dataset examples, experiment-related records, and queue items in the product UI. This skill covers: ax annotation-configs, ax annotation-queues, and bulk span updates with ArizeClient.spans.update_annotations.


Prerequisites

Proceed directly with the task — run the ax command you need. Do NOT check versions, env vars, or profiles upfront.

If an ax command fails, troubleshoot based on the error:

  • command not found or version error → see references/ax-setup.md
  • 401 Unauthorized / missing API key → run ax profiles show to inspect the current profile. If the profile is missing or the API key is wrong, follow references/ax-profiles.md to create/update it. If the user doesn't have their key, direct them to https://app.arize.com/admin > API Keys
  • Space unknown → run ax spaces list to pick by name, or ask the user
  • Security: Never read .env files or search the filesystem for credentials. Use ax profiles for Arize credentials and ax ai-integrations for LLM provider keys. If credentials are not available through these channels, ask the user.

Concepts

What is an Annotation Config?

An annotation config defines the schema for a single type of human feedback label. Before anyone can annotate a span, dataset record, experiment output, or queue item, a config must exist for that label in the space.

Field Description
Name Descriptive identifier (e.g. Correctness, Helpfulness). Must be unique within the space.
Type categorical (pick from a list), continuous (numeric range), or freeform (free text).
Values For categorical: array of {"label": str, "score": number} pairs.
Min/Max Score For continuous: numeric bounds.
Optimization Direction Whether higher scores are better (maximize) or worse (minimize). Used to render trends in the UI.

Where labels get applied (surfaces)

Surface Typical path
Project spans Python SDK spans.update_annotations (below) and/or the Arize UI
Dataset examples Arize UI (human labeling flows); configs must exist in the space
Experiment outputs Often reviewed alongside datasets or traces in the UI — see arize-experiment, arize-dataset
Annotation queue items ax annotation-queues CLI (below) and/or the Arize UI; configs must exist

Always ensure the relevant annotation config exists in the space before expecting labels to persist.


Basic CRUD: Annotation Configs

List

ax annotation-configs list --space SPACE
ax annotation-configs list --space SPACE -o json
ax annotation-configs list --space SPACE --limit 20

Create — Categorical

Categorical configs present a fixed set of labels for reviewers to choose from.

ax annotation-configs create \
  --name "Correctness" \
  --space SPACE \
  --type categorical \
  --value correct \
  --value incorrect \
  --optimization-direction maximize

Common binary label pairs:

  • correct / incorrect
  • helpful / unhelpful
  • safe / unsafe
  • relevant / irrelevant
  • pass / fail

Create — Continuous

Continuous configs let reviewers enter a numeric score within a defined range.

ax annotation-configs create \
  --name "Quality Score" \
  --space SPACE \
  --type continuous \
  --min-score 0 \
  --max-score 10 \
  --optimization-direction maximize

Create — Freeform

Freeform configs collect open-ended text feedback. No additional flags needed beyond name, space, and type.

ax annotation-configs create \
  --name "Reviewer Notes" \
  --space SPACE \
  --type freeform

Get

ax annotation-configs get NAME_OR_ID
ax annotation-configs get NAME_OR_ID -o json
ax annotation-configs get NAME_OR_ID --space SPACE   # required when using name instead of ID

Delete

ax annotation-configs delete NAME_OR_ID
ax annotation-configs delete NAME_OR_ID --space SPACE   # required when using name instead of ID
ax annotation-configs delete NAME_OR_ID --force   # skip confirmation

Note: Deletion is irreversible. Any annotation queue associations to this config are also removed in the product (queues may remain; fix associations in the Arize UI if needed).


Annotation Queues: ax annotation-queues

Annotation queues route records (spans, dataset examples, experiment runs) to human reviewers. Each queue is linked to one or more annotation configs that define what labels reviewers can apply.

List / Get

ax annotation-queues list --space SPACE
ax annotation-queues list --space SPACE -o json

ax annotation-queues get NAME_OR_ID --space SPACE
ax annotation-queues get NAME_OR_ID --space SPACE -o json

Create

At least one --annotation-config-id is required.

ax annotation-queues create \
  --name "Correctness Review" \
  --space SPACE \
  --annotation-config-id CONFIG_ID \
  --annotator-email reviewer@example.com \
  --instructions "Label each response as correct or incorrect." \
  --assignment-method all   # or: random

Repeat --annotation-config-id and --annotator-email to attach multiple configs or reviewers.

Update

List flags (--annotation-config-id, --annotator-email) fully replace existing values when provided — pass all desired values, not just the new ones.

ax annotation-queues update NAME_OR_ID --space SPACE --name "New Name"
ax annotation-queues update NAME_OR_ID --space SPACE --instructions "Updated instructions"
ax annotation-queues update NAME_OR_ID --space SPACE \
  --annotation-config-id CONFIG_ID_A \
  --annotation-config-id CONFIG_ID_B

Delete

ax annotation-queues delete NAME_OR_ID --space SPACE
ax annotation-queues delete NAME_OR_ID --space SPACE --force   # skip confirmation

List Records

ax annotation-queues list-records NAME_OR_ID --space SPACE
ax annotation-queues list-records NAME_OR_ID --space SPACE --limit 50 -o json

Submit an Annotation for a Record

Annotations are upserted by config name — call once per annotation config. Supply at least one of --score, --label, or --text.

ax annotation-queues annotate-record NAME_OR_ID RECORD_ID \
  --annotation-name "Correctness" \
  --label "correct" \
  --space SPACE

ax annotation-queues annotate-record NAME_OR_ID RECORD_ID \
  --annotation-name "Quality Score" \
  --score 8.5 \
  --text "Response was accurate but slightly verbose." \
  --space SPACE

Assign a Record

Assign users to review a specific record:

ax annotation-queues assign-record NAME_OR_ID RECORD_ID --space SPACE

Delete Records

ax annotation-queues delete-records NAME_OR_ID --space SPACE

Applying Annotations to Spans (Python SDK)

Use the Python SDK to bulk-apply annotations to project spans when you already have labels (e.g., from a review export or an external labeling tool).

import pandas as pd
from arize import ArizeClient

import os

client = ArizeClient(api_key=os.environ["ARIZE_API_KEY"])

# Build a DataFrame with annotation columns
# Required: context.span_id + at least one annotation.<name>.label or annotation.<name>.score
annotations_df = pd.DataFrame([
    {
        "context.span_id": "span_001",
        "annotation.Correctness.label": "correct",
        "annotation.Correctness.updated_by": "reviewer@example.com",
    },
    {
        "context.span_id": "span_002",
        "annotation.Correctness.label": "incorrect",
        "annotation.Correctness.updated_by": "reviewer@example.com",
    },
])

response = client.spans.update_annotations(
    space_id=os.environ["ARIZE_SPACE"],
    project_name="your-project",
    dataframe=annotations_df,
    validate=True,
)

DataFrame column schema:

Column Required Description
context.span_id yes The span to annotate
annotation.<name>.label one of Categorical or freeform label
annotation.<name>.score one of Numeric score
annotation.<name>.updated_by no Annotator identifier (email or name)
annotation.<name>.updated_at no Timestamp in milliseconds since epoch
annotation.notes no Freeform notes on the span

Limitation: Annotations apply only to spans within 31 days prior to submission.


Troubleshooting

Problem Solution
ax: command not found See references/ax-setup.md
401 Unauthorized API key may not have access to this space. Verify at https://app.arize.com/admin > API Keys
Annotation config not found ax annotation-configs list --space SPACE (or use ax annotation-configs get NAME_OR_ID --space SPACE)
409 Conflict on create Name already exists in the space. Use a different name or get the existing config ID.
Queue not found ax annotation-queues list --space SPACE; verify the queue name or ID
Record not appearing in queue Ensure the annotation config linked to the queue exists; check ax annotation-configs list --space SPACE
Span SDK errors or missing spans Confirm project_name, space_id, and span IDs; use arize-trace to export spans

  • arize-trace: Export spans to find span IDs and time ranges
  • arize-dataset: Find dataset IDs and example IDs
  • arize-evaluator: Automated LLM-as-judge alongside human annotation
  • arize-experiment: Experiments tied to datasets and evaluation workflows
  • arize-link: Deep links to annotation configs and queues in the Arize UI

Save Credentials for Future Use

See references/ax-profiles.md § Save Credentials for Future Use.

Files3
3 files · 7.0 KB

Select a file to preview

Overall Score

84/100

Grade

B

Good

Safety

85

Quality

85

Clarity

82

Completeness

81

Summary

This skill teaches users how to create and manage annotation configs (label schemas), annotation queues (human review workflows), and apply annotations to project spans in Arize via the `ax` CLI and Python SDK. It provides practical examples for categorical, continuous, and freeform label types, along with CRUD operations and troubleshooting guidance.

Static Analysis Findings

1 finding

Patterns detected by deterministic static analysis before AI scoring. Hover over any finding code for detailed information and remediation guidance.

Credential Exposure
SEC-020Direct .env File Access

Direct .env file access

SKILL.md.env

Detected Capabilities

CLI execution (ax annotation-configs, ax annotation-queues)Python SDK usage (ArizeClient, spans.update_annotations)Environment variable reads (ARIZE_API_KEY, ARIZE_SPACE)Credential management via ax profilesFile read (references/*.md)HTTP requests (https://app.arize.com for credential retrieval)

Trigger Keywords

Phrases that MCP clients use to match this skill to user intent.

create annotation configset up labeling queuebulk annotate spanshuman feedback schemalabel categorical dataconfigure review workflow

Risk Signals

INFO

Direct .env file access mentioned in security guidance

SKILL.md § Prerequisites
INFO

Instruction explicitly prohibits reading .env files: 'Never read .env files or search the filesystem for credentials'

SKILL.md § Prerequisites
INFO

Environment variable read: ARIZE_API_KEY

SKILL.md § Applying Annotations to Spans (Python SDK)
INFO

HTTP link to credential management portal: https://app.arize.com/admin

SKILL.md § Prerequisites

Referenced Domains

External domains referenced in skill content, detected by static analysis.

app.arize.com

Use Cases

  • Create categorical label schemas for human feedback (e.g., correctness, helpfulness)
  • Set up annotation queues to route spans to human reviewers
  • Bulk apply annotations to project spans using the Python SDK
  • Manage annotation configs and queues via the ax CLI
  • Troubleshoot authentication, credential, and configuration issues with Arize

Quality Notes

  • Well-structured with clear sections covering CRUD operations, concepts, and troubleshooting
  • Comprehensive table of annotation config fields helps users understand the data model
  • Security guidance is proactive: explicitly forbids `.env` file reading and directs users to use `ax profiles` instead
  • References to supporting docs (ax-profiles.md, ax-setup.md) are present and provide detailed troubleshooting
  • Python SDK example is complete with DataFrame schema documented
  • Limitation clearly stated: annotations only apply to spans within 31 days
  • Prerequisite mentions ax CLI and configured Arize profile, but allows proceeding without upfront checks (pragmatic)
  • Related skills section provides context for broader Arize workflows
  • Troubleshooting table maps common errors to solutions
Model: claude-haiku-4-5-20251001Analyzed: Jun 26, 2026

Reviews

Add this skill to your library to leave a review.

No reviews yet

Be the first to share your experience.

Add github/arize-annotation to your library

Command Palette

Search for a command to run...