SKILL.md
Arize Prompt Optimization 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.
Concepts
Where Prompts Live in Trace Data
LLM applications emit spans following OpenInference semantic conventions. Prompts are stored in different span attributes depending on the span kind and instrumentation:
Column
What it contains
When to use
attributes.llm.input_messages
Structured chat messages (system, user, assistant, tool) in role-based format
Primary source for chat-based LLM prompts
attributes.llm.input_messages.roles
Array of roles: system, user, assistant, tool
Extract individual message roles
attributes.llm.input_messages.contents
Array of message content strings
Extract message text
attributes.input.value
Serialized prompt or user question (generic, all span kinds)
Fallback when structured messages are not available
attributes.llm.prompt_template.template
Template with {variable} placeholders (e.g., "Answer {question} using {context}")
When the app uses prompt templates
attributes.llm.prompt_template.variables
Template variable values (JSON object)
See what values were substituted into the template
attributes.output.value
Model response text
See what the LLM produced
attributes.llm.output_messages
Structured model output (including tool calls)
Inspect tool-calling responses
Finding Prompts by Span Kind
- LLM span (
attributes.openinference.span.kind = 'LLM'): Checkattributes.llm.input_messagesfor structured chat messages, ORattributes.input.valuefor a serialized prompt. Checkattributes.llm.prompt_template.templatefor the template.
- Chain/Agent span:
attributes.input.valuecontains the user's question. The actual LLM prompt lives on child LLM spans -- navigate down the trace tree.
- Tool span:
attributes.input.valuehas tool input,attributes.output.valuehas tool result. Not typically where prompts live.
Performance Signal Columns
These columns carry the feedback data used for optimization:
Column pattern
Source
What it tells you
annotation.<name>.label
Human reviewers
Categorical grade (e.g., correct, incorrect, partial)
annotation.<name>.score
Human reviewers
Numeric quality score (e.g., 0.0 - 1.0)
annotation.<name>.text
Human reviewers
Freeform explanation of the grade
eval.<name>.label
LLM-as-judge evals
Automated categorical assessment
eval.<name>.score
LLM-as-judge evals
Automated numeric score
eval.<name>.explanation
LLM-as-judge evals
Why the eval gave that score -- most valuable for optimization
attributes.input.value
Trace data
What went into the LLM
attributes.output.value
Trace data
What the LLM produced
{experiment_name}.output
Experiment runs
Output from a specific experiment
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 foundor version error → see references/ax-setup.md
401 Unauthorized/ missing API key → runax profiles showto 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 listto pick by name, or ask the user
- Project unclear → ask the user, or run
ax projects list -o json --limit 100and present as selectable options
- LLM provider call fails (missing OPENAI_API_KEY / ANTHROPIC_API_KEY) → run
ax ai-integrations list --space SPACEto check for platform-managed credentials. If none exist, ask the user to provide the key or create an integration via the arize-ai-provider-integration skill
- Security: Never read
.envfiles or search the filesystem for credentials. Useax profilesfor Arize credentials andax ai-integrationsfor LLM provider keys. If credentials are not available through these channels, ask the user.
Phase 1: Extract the Current Prompt
Find LLM spans containing prompts
# Sample LLM spans (where prompts live)
ax spans export PROJECT --filter "attributes.openinference.span.kind = 'LLM'" -l 10 --stdout
# Filter by model
ax spans export PROJECT --filter "attributes.llm.model_name = 'gpt-4o'" -l 10 --stdout
# Filter by span name (e.g., a specific LLM call)
ax spans export PROJECT --filter "name = 'ChatCompletion'" -l 10 --stdout
Export a trace to inspect prompt structure
# Export all spans in a trace
ax spans export PROJECT --trace-id TRACE_ID
# Export a single span
ax spans export PROJECT --span-id SPAN_ID
Extract prompts from exported JSON
# Extract structured chat messages (system + user + assistant)
jq '.[0] | {
messages: .attributes.llm.input_messages,
model: .attributes.llm.model_name
}' trace_*/spans.json
# Extract the system prompt specifically
jq '[.[] | select(.attributes.llm.input_messages.roles[]? == "system")] | .[0].attributes.llm.input_messages' trace_*/spans.json
# Extract prompt template and variables
jq '.[0].attributes.llm.prompt_template' trace_*/spans.json
# Extract from input.value (fallback for non-structured prompts)
jq '.[0].attributes.input.value' trace_*/spans.json
Reconstruct the prompt as messages
Once you have the span data, reconstruct the prompt as a messages array:
[
{"role": "system", "content": "You are a helpful assistant that..."},
{"role": "user", "content": "Given {input}, answer the question: {question}"}
]
If the span has attributes.llm.prompt_template.template, the prompt uses variables. Preserve these placeholders ({variable} or {{variable}}) -- they are substituted at runtime.
Phase 2: Gather Performance Data
From traces (production feedback)
# Find error spans -- these indicate prompt failures
ax spans export PROJECT \
--filter "status_code = 'ERROR' AND attributes.openinference.span.kind = 'LLM'" \
-l 20 --stdout
# Find spans with low eval scores
ax spans export PROJECT \
--filter "annotation.correctness.label = 'incorrect'" \
-l 20 --stdout
# Find spans with high latency (may indicate overly complex prompts)
ax spans export PROJECT \
--filter "attributes.openinference.span.kind = 'LLM' AND latency_ms > 10000" \
-l 20 --stdout
# Export error traces for detailed inspection
ax spans export PROJECT --trace-id TRACE_ID
From datasets and experiments
# Export a dataset (ground truth examples)
ax datasets export DATASET_NAME --space SPACE
# -> dataset_*/examples.json
# Export experiment results (what the LLM produced)
ax experiments export EXPERIMENT_NAME --dataset DATASET_NAME --space SPACE
# -> experiment_*/runs.json
Merge dataset + experiment for analysis
Join the two files by example_id to see inputs alongside outputs and evaluations:
# Count examples and runs
jq 'length' dataset_*/examples.json
jq 'length' experiment_*/runs.json
# View a single joined record
jq -s '
.[0] as $dataset |
.[1][0] as $run |
($dataset[] | select(.id == $run.example_id)) as $example |
{
input: $example,
output: $run.output,
evaluations: $run.evaluations
}
' dataset_*/examples.json experiment_*/runs.json
# Find failed examples (where eval score < threshold)
jq '[.[] | select(.evaluations.correctness.score < 0.5)]' experiment_*/runs.json
Identify what to optimize
Look for patterns across failures:
- Compare outputs to ground truth: Where does the LLM output differ from expected?
- Read eval explanations:
eval.*.explanationtells you WHY something failed
- Check annotation text: Human feedback describes specific issues
- Look for verbosity mismatches: If outputs are too long/short vs ground truth
- Check format compliance: Are outputs in the expected format?
Phase 3: Optimize the Prompt
The Optimization Meta-Prompt
Use this template to generate an improved version of the prompt. Fill in the three placeholders and send it to your LLM (GPT-4o, Claude, etc.):
You are an expert in prompt optimization. Given the original baseline prompt
and the associated performance data (inputs, outputs, evaluation labels, and
explanations), generate a revised version that improves results.
ORIGINAL BASELINE PROMPT
========================
{PASTE_ORIGINAL_PROMPT_HERE}
========================
PERFORMANCE DATA
================
The following records show how the current prompt performed. Each record
includes the input, the LLM output, and evaluation feedback:
{PASTE_RECORDS_HERE}
================
HOW TO USE THIS DATA
1. Compare outputs: Look at what the LLM generated vs what was expected
2. Review eval scores: Check which examples scored poorly and why
3. Examine annotations: Human feedback shows what worked and what didn't
4. Identify patterns: Look for common issues across multiple examples
5. Focus on failures: The rows where the output DIFFERS from the expected
value are the ones that need fixing
ALIGNMENT STRATEGY
- If outputs have extra text or reasoning not present in the ground truth,
remove instructions that encourage explanation or verbose reasoning
- If outputs are missing information, add instructions to include it
- If outputs are in the wrong format, add explicit format instructions
- Focus on the rows where the output differs from the target -- these are
the failures to fix
RULES
Maintain Structure:
- Use the same template variables as the current prompt ({var} or {{var}})
- Don't change sections that are already working
- Preserve the exact return format instructions from the original prompt
Avoid Overfitting:
- DO NOT copy examples verbatim into the prompt
- DO NOT quote specific test data outputs exactly
- INSTEAD: Extract the ESSENCE of what makes good vs bad outputs
- INSTEAD: Add general guidelines and principles
- INSTEAD: If adding few-shot examples, create SYNTHETIC examples that
demonstrate the principle, not real data from above
Goal: Create a prompt that generalizes well to new inputs, not one that
memorizes the test data.
OUTPUT FORMAT
Return the revised prompt as a JSON array of messages:
[
{"role": "system", "content": "..."},
{"role": "user", "content": "..."}
]
Also provide a brief reasoning section (bulleted list) explaining:
- What problems you found
- How the revised prompt addresses each one
Preparing the performance data
Format the records as a JSON array before pasting into the template:
# From dataset + experiment: join and select relevant columns
jq -s '
.[0] as $ds |
[.[1][] | . as $run |
($ds[] | select(.id == $run.example_id)) as $ex |
{
input: $ex.input,
expected: $ex.expected_output,
actual_output: $run.output,
eval_score: $run.evaluations.correctness.score,
eval_label: $run.evaluations.correctness.label,
eval_explanation: $run.evaluations.correctness.explanation
}
]
' dataset_*/examples.json experiment_*/runs.json
# From exported spans: extract input/output pairs with annotations
jq '[.[] | select(.attributes.openinference.span.kind == "LLM") | {
input: .attributes.input.value,
output: .attributes.output.value,
status: .status_code,
model: .attributes.llm.model_name
}]' trace_*/spans.json
Applying the revised prompt
After the LLM returns the revised messages array:
- Compare the original and revised prompts side by side
- Verify all template variables are preserved
- Check that format instructions are intact
- Test on a few examples before full deployment
Phase 4: Iterate
The optimization loop
1. Extract prompt -> Phase 1 (once)
2. Run experiment -> ax experiments create ...
3. Export results -> ax experiments export EXPERIMENT_NAME --dataset DATASET_NAME --space SPACE
4. Analyze failures -> jq to find low scores
5. Run meta-prompt -> Phase 3 with new failure data
6. Apply revised prompt
7. Repeat from step 2
Measure improvement
# Compare scores across experiments
# Experiment A (baseline)
jq '[.[] | .evaluations.correctness.score] | add / length' experiment_a/runs.json
# Experiment B (optimized)
jq '[.[] | .evaluations.correctness.score] | add / length' experiment_b/runs.json
# Find examples that flipped from fail to pass
jq -s '
[.[0][] | select(.evaluations.correctness.label == "incorrect")] as $fails |
[.[1][] | select(.evaluations.correctness.label == "correct") |
select(.example_id as $id | $fails | any(.example_id == $id))
] | length
' experiment_a/runs.json experiment_b/runs.json
A/B compare two prompts
- Create two experiments against the same dataset, each using a different prompt version
- Export both:
ax experiments export EXP_Aandax experiments export EXP_B
- Compare average scores, failure rates, and specific example flips
- Check for regressions -- examples that passed with prompt A but fail with prompt B
Prompt Engineering Best Practices
Apply these when writing or revising prompts:
Technique
When to apply
Example
Clear, detailed instructions
Output is vague or off-topic
"Classify the sentiment as exactly one of: positive, negative, neutral"
Instructions at the beginning
Model ignores later instructions
Put the task description before examples
Step-by-step breakdowns
Complex multi-step processes
"First extract entities, then classify each, then summarize"
Specific personas
Need consistent style/tone
"You are a senior financial analyst writing for institutional investors"
Delimiter tokens
Sections blend together
Use ---, ###, or XML tags to separate input from instructions
Few-shot examples
Output format needs clarification
Show 2-3 synthetic input/output pairs
Output length specifications
Responses are too long or short
"Respond in exactly 2-3 sentences"
Reasoning instructions
Accuracy is critical
"Think step by step before answering"
"I don't know" guidelines
Hallucination is a risk
"If the answer is not in the provided context, say 'I don't have enough information'"
Variable preservation
When optimizing prompts that use template variables:
- Single braces (
{variable}): Python f-string / Jinja style. Most common in Arize.
- Double braces (
{{variable}}): Mustache style. Used when the framework requires it.
- Never add or remove variable placeholders during optimization
- Never rename variables -- the runtime substitution depends on exact names
- If adding few-shot examples, use literal values, not variable placeholders
Workflows
Optimize a prompt from a failing trace
- Find failing traces:
ax traces list PROJECT --filter "status_code = 'ERROR'" --limit 5
- Export the trace:
ax spans export PROJECT --trace-id TRACE_ID
- Extract the prompt from the LLM span:
jq '[.[] | select(.attributes.openinference.span.kind == "LLM")][0] | {
messages: .attributes.llm.input_messages,
template: .attributes.llm.prompt_template,
output: .attributes.output.value,
error: .attributes.exception.message
}' trace_*/spans.json
- Identify what failed from the error message or output
- Fill in the optimization meta-prompt (Phase 3) with the prompt and error context
- Apply the revised prompt
Optimize using a dataset and experiment
- Find the dataset and experiment:
ax datasets list --space SPACE
ax experiments list --dataset DATASET_NAME --space SPACE
- Export both:
ax datasets export DATASET_NAME --space SPACE
ax experiments export EXPERIMENT_NAME --dataset DATASET_NAME --space SPACE
- Prepare the joined data for the meta-prompt
- Run the optimization meta-prompt
- Create a new experiment with the revised prompt to measure improvement
Debug a prompt that produces wrong format
- Export spans where the output format is wrong:
ax spans export PROJECT \
--filter "attributes.openinference.span.kind = 'LLM' AND annotation.format.label = 'incorrect'" \
-l 10 --stdout > bad_format.json
- Look at what the LLM is producing vs what was expected
- Add explicit format instructions to the prompt (JSON schema, examples, delimiters)
- Common fix: add a few-shot example showing the exact desired output format
Reduce hallucination in a RAG prompt
- Find traces where the model hallucinated:
ax spans export PROJECT \
--filter "annotation.faithfulness.label = 'unfaithful'" \
-l 20 --stdout
- Export and inspect the retriever + LLM spans together:
ax spans export PROJECT --trace-id TRACE_ID
jq '[.[] | {kind: .attributes.openinference.span.kind, name, input: .attributes.input.value, output: .attributes.output.value}]' trace_*/spans.json
- Check if the retrieved context actually contained the answer
- Add grounding instructions to the system prompt: "Only use information from the provided context. If the answer is not in the context, say so."
Troubleshooting
Problem
Solution
ax: command not found
See references/ax-setup.md
No profile found
No profile is configured. See references/ax-profiles.md to create one.
No input_messages on span
Check span kind -- Chain/Agent spans store prompts on child LLM spans, not on themselves
Prompt template is null
Not all instrumentations emit prompt_template. Use input_messages or input.value instead
Variables lost after optimization
Verify the revised prompt preserves all {var} placeholders from the original
Optimization makes things worse
Check for overfitting -- the meta-prompt may have memorized test data. Ensure few-shot examples are synthetic
No eval/annotation columns
Run evaluations first (via Arize UI or SDK), then re-export
Experiment output column not found
The column name is {experiment_name}.output -- check exact experiment name via ax experiments get
jq errors on span JSON
Ensure you're targeting the correct file path (e.g., trace_*/spans.json)