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Tracks the platform's fai->chain rename: capability provider chain, WIT ABI chain:platform (binding paths/accessors), SDK pin bumped. Signed-off-by: flemming-it <sf@flemming.it>
3.7 KiB
3.7 KiB
llm.chat
Generic Ollama-compatible LLM chat adapter. The building-block module any flow uses when it needs a one-shot LLM completion — classify, extract-fields, rewrite, decide — instead of rolling its own HTTP client.
Capability
llm.chat@0.1.0
Inputs
| Name | Type | Description |
|---|---|---|
prompt |
text | The user-facing prompt. |
endpoint |
text | Ollama-shaped /api/chat URL (e.g. http://localhost:11434/api/chat). |
model |
text | Model identifier (e.g. qwen2.5:14b, llama3.1:8b). |
api_key |
text | Optional bearer token for cloud-hosted endpoints. |
system_prompt |
text | Optional system message. Empty = use the model's default. |
Outputs
| Name | Type | Description |
|---|---|---|
response |
text | The assistant's plain-text reply. |
model_endpoint |
text | The endpoint the response was generated against. |
model_name |
text | The model identifier as supplied to the LLM API. |
model_digest |
text | SHA-256 digest of the served Ollama model. Empty for cloud APIs. |
Together the three model_* outputs answer the audit
question: "which exact model produced this response?" — that
audit trail is the reason flows use this module rather than
spawning their own HTTP calls.
Permissions
permissions:
- "net: localhost"
- "net: 127.0.0.1"
- "net: api.openai.com"
- "net: api.anthropic.com"
Loopback (local Ollama) by default. Cloud endpoints require an
operator-policy override in ~/.chain/config.yaml#security.max_permissions.
Why this module instead of inline HTTP
Three reasons:
- Audit. Every LLM call surfaces
model_endpoint,model_name,model_digestas separate outputs that land in the hash-chained audit log alongside the response. A regulator-facing reproducibility check just compares the digest field to the model snapshot. - Permission posture. The operator sees
llm.chatin the installed modules + its declarednet:list. A home-grown HTTP module would either hide its endpoints or be a fresh review surface every time. - Endpoint portability. The endpoint + model are flow
inputs, not compile-time constants. The same flow runs
against
localhost:11434in dev and a production inference cluster in prod just by swapping the input.
Limits in v0.1.0
- No streaming. The whole reply is buffered before the output step fires.
- No tool-call / function-call surface. A flow needing tool
use composes multiple
llm.chatsteps with prompt engineering, or uses MCP via the bridge. - Cloud-provider adapters for OpenAI and Anthropic are deferred until a flow actually needs them. Today the Ollama wire-format is the only target.
Example flow
name: classify-incoming
inputs:
text: text
steps:
- id: classify
use: llm.chat@^0
with:
prompt: $inputs.text
system_prompt: |
Classify the text as one of: question, complaint,
feedback, spam. Answer with the label only.
endpoint: "http://localhost:11434/api/chat"
model: "qwen2.5:14b"
outputs:
category: $classify.response
audit_model: $classify.model_digest
Build
cargo build --release --target wasm32-wasip2
# Output: target/wasm32-wasip2/release/llm_chat.wasm