# Backend Agentic Service API Contract This document describes the Python agentic backend used by the frontend for AI chat, help/report tools, and traceability data shown alongside chat answers. Base path examples use relative URLs. Configure the frontend with the deployed Python service base URL. ## Overview The Python backend owns the generative AI interaction surface: 1. Stream chat answers from the AI agent. 2. Execute tool-style actions for help and report generation. 3. Return report versions and report details. 4. Return traceability/provenance for a completed assistant answer. The frontend uses this service during the analysis conversation flow: 1. User sends a chat message. 2. Frontend calls `POST /api/v2/chat/stream` and renders the streamed answer. 3. When the stream emits `done`, frontend stores or reads the returned `message_id`. 4. Frontend calls `GET /api/v1/traceability` for planning, tool calls, and source provenance. 5. Frontend calls `/api/v1/tools/help` for guided help and `/api/v1/tools/report` for report generation. ## Endpoint Summary | Method | Path | Purpose | | --- | --- | --- | | `POST` | `/api/v2/chat/stream` | Stream an AI chat answer for one analysis conversation. | | `GET` | `/api/v1/tools/list` | List available frontend tools. | | `POST` | `/api/v1/tools/help` | Stream contextual help for the current analysis conversation. | | `POST` | `/api/v1/tools/report` | Generate and persist a new report version. | | `GET` | `/api/v1/tools/report/{analysis_id}` | List report versions for an analysis. | | `GET` | `/api/v1/tools/report/{analysis_id}/{version}` | Retrieve one report version. | | `GET` | `/api/v1/traceability` | Retrieve provenance for one assistant answer. | ## Common Concepts ### Identifiers - `user_id`: user identifier passed by the frontend. - `analysis_id`: analysis conversation identifier. - `message_id`: assistant answer identifier used to correlate chat streaming with traceability. ### Server-Sent Events Chat and help endpoints return `text/event-stream`. Frontend should parse events by `event` name and `data` payload. Blank lines separate SSE events. Common event types: | Event | Data | Meaning | | --- | --- | --- | | `sources` | JSON array | Always `[]` — sources moved to `GET /api/v1/traceability` (KM-691). Event kept for backward-compat; read `sources[]` from the traceability call. | | `status` | text | Optional progress update for slower paths. | | `chunk` | text | Answer text fragment. Concatenate chunks in order. | | `done` | JSON object | Terminal success event. Includes `message_id`. | | `error` | text | Terminal error event. Stream stops after this. | The stream carries answer text only. Planning, tool call details, and full provenance are fetched from `GET /api/v1/traceability` after the stream is done. ## Chat ### `POST /api/v2/chat/stream` Streams an AI answer for one user message in an analysis conversation. Request body: ```json { "user_id": "u_1a2b3c", "analysis_id": "an_42", "message_id": "msg_88f1", "message": "What were total sales by region last quarter?" } ``` Fields: | Field | Required | Description | | --- | --- | --- | | `user_id` | Yes | User identifier. | | `analysis_id` | Yes | Analysis conversation identifier. | | `message_id` | No | Assistant answer id for traceability correlation. If omitted, Python returns one in `done`. | | `message` | Yes | User message text. | Response: `text/event-stream`. Example structured answer: ```text event: sources data: [] event: status data: Planning analysis... event: status data: Running 3 steps... event: chunk data: Total sales by region last quarter: event: chunk data: Central led at $1.21M (38%), East $0.74M, West $0.55M (down 12% QoQ). event: done data: {"message_id":"msg_88f1"} ``` Example simple chat answer: ```text event: sources data: [] event: chunk data: I'm your AI data analyst. Connect a source or ask a question to get started. event: done data: {"message_id":"msg_12"} ``` Behavior notes: - Greeting and farewell messages may use a fast canned path. - Stateless `chat` intent may use a 1-hour Redis response cache. - The router may classify messages into intents such as `chat`, `help`, `check`, `unstructured_flow`, or `structured_flow`. - `sources` in the stream is **always `[]`** (KM-691) — read the real `sources[]` from `GET /api/v1/traceability` after `done`. - `status` events are optional and should be safe for the frontend to ignore. ## Tools ### `GET /api/v1/tools/list` Returns the deterministic list of tools available to the frontend. Request: none. Response `200`: ```json { "count": 2, "tools": [ { "command": "/help", "name": "help", "type": "skill", "description": "Show what the assistant can do and guide your next step." }, { "command": "/report", "name": "report", "type": "skill", "description": "Generate a versioned analysis report with background, EDA, key findings, and insights." } ] } ``` Tool item shape: ```json { "command": "/help", "name": "help", "type": "skill", "description": "Show what the assistant can do and guide your next step." } ``` Frontend behavior: - Surface `/help` in the slash menu. - Surface report generation as a button or explicit UI action. ### `POST /api/v1/tools/help` Streams contextual guidance for the current analysis conversation. Request body: ```json { "user_id": "u_1a2b3c", "analysis_id": "an_42" } ``` Response: `text/event-stream` using the same event shape as chat. Help responses usually emit `sources: []` and no `status` pings. Example: ```text event: sources data: [] event: chunk data: Your goal is set. You can start exploring now. Try a question like "average order value by month", then I can generate a report. event: done data: {"message_id":"msg_h7"} ``` ## Reports ### `POST /api/v1/tools/report` Generates, persists, and returns a new report version for an analysis. Query params: | Query | Required | Description | | --- | --- | --- | | `analysis_id` | Yes | Analysis identifier. | | `user_id` | Yes | User identifier. | Example: ```text POST /api/v1/tools/report?analysis_id=an_42&user_id=u_1a2b3c ``` Status codes: | Status | Meaning | | --- | --- | | `201` | New report version generated. | | `409` | Report floor/precondition not met. | | `500` | Generation or persistence failed. | Response `201`: ```json { "report_id": "8f3a2b1c9d4e4f6a8b0c1d2e3f4a5b6c", "analysis_id": "an_42", "user_id": "u_1a2b3c", "version": 2, "generated_at": "2026-06-30T09:14:33.512Z", "problem_statement": { "objective": "Understand which regions drive revenue and why Q1 dipped.", "business_questions": [ "Which regions contribute most to total revenue?", "Did any region decline quarter-over-quarter?" ] }, "record_ids": ["rec_a1", "rec_b2"], "executive_summary": "Revenue is concentrated in the Central region (38% of total). The West was the only region to contract, down 12% QoQ, the main driver of the Q1 dip.", "findings": [ { "text": "Central region contributed 38% of total revenue, the largest share.", "record_ids": ["rec_a1"], "supporting_data": null }, { "text": "West region revenue fell 12% quarter-over-quarter.", "record_ids": ["rec_b2"], "supporting_data": null } ], "caveats": [ { "text": "March data for the East region was partially missing, around 6% of rows.", "record_ids": ["rec_b2"] } ], "open_questions": [ { "text": "What drove the West region's QoQ decline?", "record_ids": ["rec_b2"] } ], "data_sources": [ { "source_id": "src_sales_db", "name": "orders", "source_type": "postgres", "detail": { "tables": ["orders"], "row_count": 48213, "columns": ["region", "amount", "ordered_at"] } } ], "method_steps": [ { "task_id": "t1", "stage": "data_understanding", "objective": "Inventory the sales source", "status": "success", "tools_used": ["check_data"] }, { "task_id": "t2", "stage": "modeling", "objective": "Aggregate revenue by region", "status": "success", "tools_used": ["analyze_aggregate"] } ], "rendered_markdown": "# Analysis Report\n\n*Generated 2026-06-30 by u_1a2b3c*\n\n## Objective\nUnderstand which regions drive revenue..." } ``` Response `409`: ```json { "detail": "Not ready to generate a report - still needs at least one completed analysis." } ``` Precondition: - Reports require at least one completed analysis record for the session. - If slow-path analysis recording is disabled, report generation can return `409` by design. ### `GET /api/v1/tools/report/{analysis_id}` Lists report versions for one analysis, oldest first. Response `200`: ```json [ { "report_id": "1b2c3d4e", "version": 1, "generated_at": "2026-06-24T15:02:11Z", "record_count": 1 }, { "report_id": "8f3a2b1c", "version": 2, "generated_at": "2026-06-25T09:14:33Z", "record_count": 2 } ] ``` If no reports exist, returns `[]`. ### `GET /api/v1/tools/report/{analysis_id}/{version}` Returns one report version. Shape is the same as the `201` response from `POST /api/v1/tools/report`. Response `404`: ```json { "detail": "No report v3 for analysis 'an_42'." } ``` ## Traceability > Renamed from `observability` (team decision 2026-07-06) so it is never confused with the internal Langfuse *observability* stack (engineering telemetry, PII-masked). Traceability is **user-facing** provenance — real tool args, output previews, and the executed query — shown alongside the answer. ### `GET /api/v1/traceability` Returns user-facing provenance for one assistant answer. The frontend should call this after the chat/help stream emits `done`, using the `message_id` from the `done` event. The row is written **before** `done`, so an immediate GET returns `200` (no polling race). A `404` means the id is unknown or the turn errored before completing (error turns never produce a row). Query params: | Query | Required | Description | | --- | --- | --- | | `analysis_id` | Yes | Analysis identifier. | | `message_id` | Yes | Assistant answer identifier returned by the stream. | Example: ```text GET /api/v1/traceability?analysis_id=an_42&message_id=msg_88f1 ``` `intent` values the frontend may see: `chat` · `help` · `check` · `unstructured_flow` · `structured_flow` · `out_of_scope` · `blocked` (`blocked` = input-guard or Azure content-filter refusal; `chat` also covers the greeting fast-path and cache replays). Field rules: - `planning`: present only when the planner ran (`structured_flow`); otherwise `null`. - `thinking`: **always `null` in v1** — our agents are plain chat completions with no native reasoning output, and synthesizing it post-hoc would be unfaithful. The field stays in the payload so it can be populated later without a contract change. - `tool_calls`: every invoked tool with `input`, `output`, `status`, `task_id` (nullable), and `error` (nullable); empty for chat / help / greeting / refusal paths. - `sources`: required for retrieval flows; empty for chat / help / refusal paths and for `check`. - The payload also carries an internal `user_id` (ownership); the frontend may ignore it. - Truncation: `preview` ≤ 5 rows; any string inside `input`/`output`/`preview`/`snippet` ≤ 300 chars; rows beyond the preview are dropped (`row_count` is preserved). Response `200` for `structured_flow`: ```json { "analysis_id": "an_42", "message_id": "msg_88f1", "user_id": "user_7", "intent": "structured_flow", "generated_at": "2026-07-06T03:21:09.114Z", "planning": { "goal_restated": "Find which regions drive revenue and why Q1 dipped.", "assumptions": [], "steps": [ { "step": 1, "stage": "data_understanding", "objective": "Inventory the sales source", "status": "success", "tools_used": ["check_data"] }, { "step": 2, "stage": "modeling", "objective": "Aggregate revenue by region", "status": "success", "tools_used": ["retrieve_data", "analyze_aggregate"] } ] }, "thinking": null, "tool_calls": [ { "order": 1, "task_id": null, "name": "check_data", "input": { "source_hint": "structured" }, "output": { "kind": "table", "columns": ["source_id", "name", "source_type", "table_count"], "row_count": 1, "preview": [["src_sales_db", "orders", "schema", 1]] }, "status": "success", "error": null }, { "order": 2, "task_id": null, "name": "retrieve_data", "input": { "ir": { "source_id": "src_sales_db", "table_id": "orders", "select": ["region", "amount"], "group_by": ["region"] } }, "output": { "kind": "table", "columns": ["region", "total"], "row_count": 4, "preview": [["Central", 1210000], ["East", 740000]] }, "status": "success", "error": null } ], "sources": [ { "type": "database", "source_id": "src_sales_db", "name": "orders", "query": "SELECT region, SUM(amount) AS total FROM orders GROUP BY region", "detail": { "table": "orders", "row_count": 4 } } ] } ``` > Note: `retrieve_data`'s real `input` is the compiled query IR under an `ir` key (the planner builds an IR, never raw SQL). The executed SQL/rendered query appears on the corresponding `sources[].query`. Response `200` for `unstructured_flow`: ```json { "analysis_id": "an_42", "message_id": "msg_55", "user_id": "user_7", "intent": "unstructured_flow", "generated_at": "2026-07-06T03:40:02.001Z", "planning": null, "thinking": null, "tool_calls": [ { "order": 1, "task_id": null, "name": "retrieve_knowledge", "input": { "query": "technology stack used in this project" }, "output": { "kind": "documents", "row_count": 4 }, "status": "success", "error": null } ], "sources": [ { "type": "document", "document_id": "doc_7", "filename": "tech_handbook.pdf", "page_label": "12", "query": "technology stack used in this project", "snippet": "The backend is built on FastAPI with async SQLAlchemy...", "score": 0.83 } ] } ``` Response `200` for chat / greeting / help / refusals (`out_of_scope`, `blocked`): ```json { "analysis_id": "an_42", "message_id": "msg_12", "user_id": "user_7", "intent": "chat", "generated_at": "2026-07-06T03:05:00.000Z", "planning": null, "thinking": null, "tool_calls": [], "sources": [] } ``` Response `404`: ```json { "detail": "No traceability for message 'msg_88f1' yet." } ``` Frontend rendering guidance: - Render traceability separately from the streamed answer. - Default state can be collapsed. - Show planning, tool calls, and sources as separate sections. - Treat `planning: null`, `tool_calls: []`, and `sources: []` as valid states.