| 123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170171172173174175176177178179180181182183184185186187188189190191192193194195196197198199200201202203204205206207208209210211212213214215216217218219220221222223224225226227228229230231232233234235236237238239240241242243244245246247248249250251252253254255256257258259260261262263264265266267268269270271272273274275276277278279280281282283284285286287288289290291292293294295296297298299300301302303304305306307308309310311312313314315316317318319320321322323324325326327328329330331332333334335336337338339340341342343344345346347348349350351352353354355356357358359360361362363364365366367368369370371372373374375376377378379380381382383384385386387388389390391392393394395396397398399400401402403404405406407408409410411412413414415416417418419420421422423424425426427428429430431432433434435436437438439440441442443444445446447448449450451452453454455456457458459460461462463464465466467468469470471472473474475476477478479480481482483484485486487488489490491492493494495496497498499500501502503504505506507508509510511512513514515516517518519520521522523524525526527528529530531532533534535536537538539540541542543544545546547548549550551552553554555556557558559560561562563564565566567568569570571572573574575576577578579580581582583584585586587588589590591592593594595596597598599600601602603604605606607608609610611612613614615616617618619620621622623624625626627628629630631632633634635 |
- from __future__ import annotations
- import base64
- import json
- import mimetypes
- import time
- from pathlib import Path
- from typing import Any
- import psutil
- from fastapi import HTTPException
- from . import ai_service, windows_automation
- from .database import DATA_DIR, get_db
- from .scanner import now_iso
- from .schemas import (
- AutomationKeyboardActionRequest,
- AutomationMouseActionRequest,
- AutomationStartProgramRequest,
- AutomationTextInputRequest,
- AutomationVisionAnalyzeRequest,
- AutomationWorkflowSaveRequest,
- )
- AUTOMATION_DIR = DATA_DIR / "automation"
- SCREEN_DIR = AUTOMATION_DIR / "screens"
- ERROR_DIR = AUTOMATION_DIR / "errors"
- RUNTIME_DIR = AUTOMATION_DIR / "runtime"
- OPENED_PROCESS_IDS: set[int] = set()
- SCREEN_ANALYZE_PROMPT = """请作为 AI 视觉自动化助手分析这张 Windows 屏幕截图,并严格只输出 JSON 对象。
- 输出字段:
- - interface_name:界面名称,简洁中文。
- - description:界面描述,说明当前主要窗口或桌面内容。
- - is_windows_desktop:boolean,截图是否处于 Windows 桌面。
- - is_browser_webpage:boolean,截图是否为浏览器中的网页。
- - elements:可操作元素数组。
- 元素字段:
- - name:元素名称。
- - x_percent:元素中心点 X 相对整张截图宽度的百分比,范围 0-100,可以保留 2 位小数。
- - y_percent:元素中心点 Y 相对整张截图高度的百分比,范围 0-100,可以保留 2 位小数。
- 判断规则:
- 1. 如果截图位于 Windows 桌面,请识别桌面图标、开始菜单入口、任务栏应用、托盘区域等可操作元素。
- 2. 如果不是 Windows 桌面,也就是存在打开的前台窗口或全屏界面,只识别该前台窗口内的可操作元素,不要识别被遮挡的桌面元素。
- 3. 不要输出 Markdown,不要解释,只输出 JSON。
- """
- SCREEN_COMPARE_PROMPT = """请作为 AI 视觉自动化校验器判断两张截图是否处于同一个目标界面。
- 图片1是当前实际屏幕截图。图片2是数据库中保存的目标界面截图。
- 目标界面描述如下:
- {description}
- 请严格只输出 JSON 对象,字段为:
- - is_match:boolean,图片1是否仍然处于目标界面。
- - similarity:0 到 1 的数值,表示相似度。
- - reason:简短中文原因。
- 判断时可以允许小的光标位置、时间、列表内容滚动或轻微刷新差异,但如果前台窗口、网页、弹窗、主要页面或应用已经不同,应返回 false。
- """
- def ensure_dirs() -> None:
- """确保自动化截图、错误截图和运行时目录存在。"""
- for path in [SCREEN_DIR, ERROR_DIR, RUNTIME_DIR]:
- path.mkdir(parents=True, exist_ok=True)
- def image_to_base64(path: str | Path) -> dict[str, str]:
- """读取图片文件并转为 AI 服务可接收的 base64 结构。"""
- file_path = Path(path)
- mime_type = mimetypes.guess_type(file_path.name)[0] or "image/png"
- return {
- "base64": base64.b64encode(file_path.read_bytes()).decode("ascii"),
- "mime_type": mime_type,
- }
- def json_from_ai(content: str) -> dict[str, Any]:
- """从 AI 输出中提取 JSON 对象,兼容模型误加代码块的情况。"""
- parsed = json.loads(ai_service.extract_json_text(content))
- if not isinstance(parsed, dict):
- raise ValueError("AI output must be a JSON object")
- return parsed
- def take_screenshot_file(folder: Path, prefix: str) -> dict[str, Any]:
- """截取当前屏幕并保存为 PNG 文件,同时返回 base64 和分辨率信息。"""
- ensure_dirs()
- filename = f"{prefix}_{int(time.time() * 1000)}.png"
- path = folder / filename
- result = windows_automation.take_screenshot(str(path), include_base64=True)
- result["path"] = str(path)
- return result
- def analyze_screen(payload: AutomationVisionAnalyzeRequest) -> dict[str, Any]:
- """截图当前屏幕,调用 AI 识别界面和可操作元素,并保存识别结果。"""
- screenshot = take_screenshot_file(SCREEN_DIR, "screen")
- image = image_to_base64(screenshot["path"])
- ai_result = ai_service.chat_with_images(
- payload.provider_id,
- payload.model_id,
- SCREEN_ANALYZE_PROMPT,
- [image],
- payload.temperature,
- )
- try:
- parsed = json_from_ai(ai_result["content"])
- except (json.JSONDecodeError, ValueError) as exc:
- raise HTTPException(status_code=502, detail=f"AI vision output is not valid JSON: {exc}") from exc
- width = int(screenshot["width"])
- height = int(screenshot["height"])
- elements = normalize_elements(parsed.get("elements"), width, height)
- now = now_iso()
- with get_db() as conn:
- cursor = conn.execute(
- """
- INSERT INTO automation_screens (
- interface_name, description, image_path, width, height,
- is_windows_desktop, is_browser_webpage, raw_ai_json, created_at, updated_at
- )
- VALUES (?, ?, ?, ?, ?, ?, ?, ?, ?, ?)
- """,
- (
- str(parsed.get("interface_name") or "未命名界面")[:160],
- parsed.get("description"),
- screenshot["path"],
- width,
- height,
- 1 if bool(parsed.get("is_windows_desktop")) else 0,
- 1 if bool(parsed.get("is_browser_webpage")) else 0,
- json.dumps(parsed, ensure_ascii=False),
- now,
- now,
- ),
- )
- screen_id = cursor.lastrowid
- for index, element in enumerate(elements, start=1):
- conn.execute(
- """
- INSERT INTO automation_screen_elements (
- screen_id, element_index, name, x_percent, y_percent, x, y, raw_json, created_at
- )
- VALUES (?, ?, ?, ?, ?, ?, ?, ?, ?)
- """,
- (
- screen_id,
- index,
- element["name"],
- element["x_percent"],
- element["y_percent"],
- element["x"],
- element["y"],
- json.dumps(element.get("raw") or element, ensure_ascii=False),
- now,
- ),
- )
- detail = get_screen(screen_id)
- detail["image_base64"] = screenshot["image_base64"]
- detail["mime_type"] = screenshot["mime_type"]
- detail["ai_raw_content"] = ai_result["content"]
- return detail
- def normalize_elements(raw_elements: Any, width: int, height: int) -> list[dict[str, Any]]:
- """把 AI 返回的百分比坐标转换为截图像素坐标。"""
- if not isinstance(raw_elements, list):
- return []
- result = []
- for item in raw_elements:
- if not isinstance(item, dict):
- continue
- name = str(item.get("name") or f"元素 {len(result) + 1}")[:160]
- x_percent = normalize_percent(item.get("x_percent"))
- y_percent = normalize_percent(item.get("y_percent"))
- x = round(width * x_percent / 100)
- y = round(height * y_percent / 100)
- result.append(
- {
- "name": name,
- "x_percent": x_percent,
- "y_percent": y_percent,
- "x": max(0, min(width - 1, x)),
- "y": max(0, min(height - 1, y)),
- "raw": item,
- }
- )
- return result
- def normalize_percent(value: Any) -> float:
- """规范化百分比数值,兼容模型偶尔输出 0-1 小数的情况。"""
- try:
- number = float(value)
- except (TypeError, ValueError):
- return 0.0
- if 0 <= number <= 1:
- number *= 100
- return max(0.0, min(100.0, round(number, 2)))
- def list_screens(page: int, page_size: int) -> dict[str, Any]:
- """分页查询已识别界面列表。"""
- offset = (page - 1) * page_size
- with get_db() as conn:
- total = conn.execute("SELECT COUNT(*) AS total FROM automation_screens").fetchone()["total"]
- rows = conn.execute(
- """
- SELECT s.*, COUNT(e.id) AS element_count
- FROM automation_screens s
- LEFT JOIN automation_screen_elements e ON e.screen_id = s.id
- GROUP BY s.id
- ORDER BY s.created_at DESC
- LIMIT ? OFFSET ?
- """,
- (page_size, offset),
- ).fetchall()
- return {"items": [public_screen(row) for row in rows], "total": total, "page": page, "page_size": page_size}
- def get_screen(screen_id: int, include_image: bool = False) -> dict[str, Any]:
- """读取单个已识别界面的详情和可操作元素。"""
- with get_db() as conn:
- screen = conn.execute("SELECT * FROM automation_screens WHERE id = ?", (screen_id,)).fetchone()
- if not screen:
- raise HTTPException(status_code=404, detail="Automation screen not found")
- elements = conn.execute(
- "SELECT * FROM automation_screen_elements WHERE screen_id = ? ORDER BY element_index ASC",
- (screen_id,),
- ).fetchall()
- item = public_screen(screen)
- item["elements"] = [public_element(row) for row in elements]
- if include_image and Path(item["image_path"]).exists():
- image = image_to_base64(item["image_path"])
- item["image_base64"] = image["base64"]
- item["mime_type"] = image["mime_type"]
- return item
- def delete_screen(screen_id: int) -> dict[str, Any]:
- """删除已识别界面记录,图片文件保留用于审计。"""
- with get_db() as conn:
- cursor = conn.execute("DELETE FROM automation_screens WHERE id = ?", (screen_id,))
- if cursor.rowcount == 0:
- raise HTTPException(status_code=404, detail="Automation screen not found")
- return {"deleted": cursor.rowcount}
- def public_screen(row: dict[str, Any]) -> dict[str, Any]:
- """把数据库中的界面行转换为接口返回格式。"""
- item = dict(row)
- item["is_windows_desktop"] = bool(item.get("is_windows_desktop"))
- item["is_browser_webpage"] = bool(item.get("is_browser_webpage"))
- return item
- def public_element(row: dict[str, Any]) -> dict[str, Any]:
- """把数据库中的元素行转换为接口返回格式。"""
- item = dict(row)
- return item
- def process_snapshot() -> dict[int, dict[str, Any]]:
- """获取当前进程快照,只用于自动化动作前后对比,不写入进程扫描表。"""
- snapshot: dict[int, dict[str, Any]] = {}
- for proc in psutil.process_iter(["pid", "name", "exe"]):
- try:
- snapshot[int(proc.info["pid"])] = {
- "pid": int(proc.info["pid"]),
- "name": proc.info.get("name"),
- "exe": proc.info.get("exe"),
- }
- except (psutil.Error, OSError, TypeError, ValueError):
- continue
- return snapshot
- def diff_new_processes(before: dict[int, dict[str, Any]], after: dict[int, dict[str, Any]]) -> list[dict[str, Any]]:
- """比较动作前后的进程快照,找出本次自动化动作新增的进程。"""
- new_items = [after[pid] for pid in sorted(set(after) - set(before))]
- OPENED_PROCESS_IDS.update(item["pid"] for item in new_items)
- return new_items
- def validate_screen_before_action(
- screen_id: int | None,
- provider_id: int | None,
- model_id: int | None,
- temperature: float,
- action_type: str,
- workflow_id: int | None = None,
- node_id: int | None = None,
- ) -> dict[str, Any] | None:
- """如果动作绑定了界面 ID,则先用 AI 判断当前屏幕是否仍处于目标界面。"""
- if screen_id is None:
- return None
- if provider_id is None or model_id is None:
- raise HTTPException(status_code=400, detail="provider_id and model_id are required when screen_id is provided")
- target = get_screen(screen_id)
- current = take_screenshot_file(RUNTIME_DIR, "compare_current")
- prompt = SCREEN_COMPARE_PROMPT.replace("{description}", target.get("description") or target.get("interface_name") or "")
- ai_result = ai_service.chat_with_images(
- provider_id,
- model_id,
- prompt,
- [image_to_base64(current["path"]), image_to_base64(target["image_path"])],
- temperature,
- )
- try:
- parsed = json_from_ai(ai_result["content"])
- except (json.JSONDecodeError, ValueError) as exc:
- raise HTTPException(status_code=502, detail=f"AI compare output is not valid JSON: {exc}") from exc
- is_match = bool(parsed.get("is_match"))
- similarity = safe_float(parsed.get("similarity"))
- if not is_match:
- error = record_error(
- action_type=action_type,
- message=str(parsed.get("reason") or "界面对比失败,当前屏幕不是目标界面"),
- screen_id=screen_id,
- workflow_id=workflow_id,
- node_id=node_id,
- similarity=similarity,
- expected_image_path=target["image_path"],
- actual_image_path=current["path"],
- compare_result=parsed,
- )
- raise HTTPException(status_code=409, detail={"message": error["message"], "error": error})
- return parsed
- def safe_float(value: Any) -> float | None:
- """安全转换浮点数。"""
- try:
- return float(value)
- except (TypeError, ValueError):
- return None
- def record_error(
- action_type: str,
- message: str,
- screen_id: int | None = None,
- workflow_id: int | None = None,
- node_id: int | None = None,
- similarity: float | None = None,
- expected_image_path: str | None = None,
- actual_image_path: str | None = None,
- compare_result: dict[str, Any] | None = None,
- ) -> dict[str, Any]:
- """保存自动化错误记录,便于在错误记录菜单中回看。"""
- now = now_iso()
- with get_db() as conn:
- cursor = conn.execute(
- """
- INSERT INTO automation_errors (
- workflow_id, node_id, screen_id, action_type, message, similarity,
- expected_image_path, actual_image_path, compare_result_json, created_at
- )
- VALUES (?, ?, ?, ?, ?, ?, ?, ?, ?, ?)
- """,
- (
- workflow_id,
- node_id,
- screen_id,
- action_type,
- message,
- similarity,
- expected_image_path,
- actual_image_path,
- json.dumps(compare_result or {}, ensure_ascii=False),
- now,
- ),
- )
- row = conn.execute("SELECT * FROM automation_errors WHERE id = ?", (cursor.lastrowid,)).fetchone()
- return public_error(row)
- def execute_mouse_action(payload: AutomationMouseActionRequest) -> dict[str, Any]:
- """执行鼠标点击类动作,并记录动作前后新增进程。"""
- before = process_snapshot()
- compare = validate_screen_before_action(
- payload.screen_id,
- payload.provider_id,
- payload.model_id,
- payload.temperature,
- f"mouse_{payload.mouse_action}",
- payload.workflow_id,
- payload.node_id,
- )
- action_map = {"click": "click", "double_click": "double_click", "right_click": "right_click"}
- result = windows_automation.mouse_action(action_map[payload.mouse_action], x=payload.x, y=payload.y)
- time.sleep(0.5)
- new_processes = diff_new_processes(before, process_snapshot())
- return {"result": result, "compare": compare, "new_processes": new_processes}
- def execute_keyboard_action(payload: AutomationKeyboardActionRequest) -> dict[str, Any]:
- """执行键盘组合键动作,并记录动作前后新增进程。"""
- before = process_snapshot()
- compare = validate_screen_before_action(
- payload.screen_id,
- payload.provider_id,
- payload.model_id,
- payload.temperature,
- "keyboard",
- payload.workflow_id,
- payload.node_id,
- )
- result = windows_automation.keyboard_action("hotkey" if len(payload.keys) > 1 else "press", key=payload.keys[0], keys=payload.keys)
- time.sleep(0.5)
- new_processes = diff_new_processes(before, process_snapshot())
- return {"result": result, "compare": compare, "new_processes": new_processes}
- def execute_text_input(payload: AutomationTextInputRequest) -> dict[str, Any]:
- """通过剪贴板粘贴文本,避免直接模拟按键时中文输入不稳定。"""
- before = process_snapshot()
- compare = validate_screen_before_action(
- payload.screen_id,
- payload.provider_id,
- payload.model_id,
- payload.temperature,
- "text_input",
- payload.workflow_id,
- payload.node_id,
- )
- try:
- import pyperclip
- except ImportError as exc:
- raise HTTPException(status_code=500, detail="pyperclip is not installed") from exc
- pyperclip.copy(payload.text)
- result = windows_automation.keyboard_action("hotkey", keys=["ctrl", "v"])
- time.sleep(0.5)
- new_processes = diff_new_processes(before, process_snapshot())
- return {"result": result, "compare": compare, "new_processes": new_processes}
- def execute_start_program(payload: AutomationStartProgramRequest) -> dict[str, Any]:
- """启动程序,并把动作后新增的进程记录为本次自动化打开的程序。"""
- before = process_snapshot()
- compare = validate_screen_before_action(
- payload.screen_id,
- payload.provider_id,
- payload.model_id,
- payload.temperature,
- "start_program",
- payload.workflow_id,
- payload.node_id,
- )
- result = windows_automation.start_program(payload.command, payload.cwd, payload.shell)
- time.sleep(1)
- new_processes = diff_new_processes(before, process_snapshot())
- if result.get("pid"):
- OPENED_PROCESS_IDS.add(int(result["pid"]))
- return {"result": result, "compare": compare, "new_processes": new_processes}
- def close_opened_programs(pids: list[int] | None = None) -> dict[str, Any]:
- """关闭本次自动化过程中记录的新进程。"""
- targets = sorted(set(pids or list(OPENED_PROCESS_IDS)))
- closed = []
- for pid in targets:
- try:
- closed.append(windows_automation.stop_program(pid=pid))
- OPENED_PROCESS_IDS.discard(pid)
- except HTTPException as exc:
- closed.append({"pid": pid, "error": exc.detail})
- return {"action": "close_opened_programs", "items": closed}
- def save_workflow(payload: AutomationWorkflowSaveRequest) -> dict[str, Any]:
- """保存前端记录或手动编辑的自动化工作流和节点。"""
- now = now_iso()
- raw_json = payload.model_dump()
- with get_db() as conn:
- cursor = conn.execute(
- """
- INSERT INTO automation_workflows (name, description, raw_json, created_at, updated_at)
- VALUES (?, ?, ?, ?, ?)
- """,
- (payload.name.strip(), payload.description, json.dumps(raw_json, ensure_ascii=False), now, now),
- )
- workflow_id = cursor.lastrowid
- insert_workflow_nodes(conn, workflow_id, payload.nodes, now)
- return get_workflow(workflow_id)
- def update_workflow(workflow_id: int, payload: AutomationWorkflowSaveRequest) -> dict[str, Any]:
- """更新工作流基础信息和节点列表。"""
- now = now_iso()
- raw_json = payload.model_dump()
- with get_db() as conn:
- existing = conn.execute("SELECT id FROM automation_workflows WHERE id = ?", (workflow_id,)).fetchone()
- if not existing:
- raise HTTPException(status_code=404, detail="Automation workflow not found")
- conn.execute(
- """
- UPDATE automation_workflows
- SET name = ?, description = ?, raw_json = ?, updated_at = ?
- WHERE id = ?
- """,
- (payload.name.strip(), payload.description, json.dumps(raw_json, ensure_ascii=False), now, workflow_id),
- )
- conn.execute("DELETE FROM automation_workflow_nodes WHERE workflow_id = ?", (workflow_id,))
- insert_workflow_nodes(conn, workflow_id, payload.nodes, now)
- return get_workflow(workflow_id)
- def insert_workflow_nodes(conn, workflow_id: int, nodes: list[Any], now: str) -> None:
- """批量写入工作流节点。"""
- for index, node in enumerate(nodes, start=1):
- conn.execute(
- """
- INSERT INTO automation_workflow_nodes (
- workflow_id, node_index, node_type, screen_id, title, config_json, created_at, updated_at
- )
- VALUES (?, ?, ?, ?, ?, ?, ?, ?)
- """,
- (
- workflow_id,
- index,
- node.node_type,
- node.screen_id,
- node.title,
- json.dumps(node.config, ensure_ascii=False),
- now,
- now,
- ),
- )
- def list_workflows(page: int, page_size: int) -> dict[str, Any]:
- """分页查询自动化工作流列表。"""
- offset = (page - 1) * page_size
- with get_db() as conn:
- total = conn.execute("SELECT COUNT(*) AS total FROM automation_workflows").fetchone()["total"]
- rows = conn.execute(
- """
- SELECT w.*, COUNT(n.id) AS node_count
- FROM automation_workflows w
- LEFT JOIN automation_workflow_nodes n ON n.workflow_id = w.id
- GROUP BY w.id
- ORDER BY w.updated_at DESC
- LIMIT ? OFFSET ?
- """,
- (page_size, offset),
- ).fetchall()
- return {"items": rows, "total": total, "page": page, "page_size": page_size}
- def get_workflow(workflow_id: int) -> dict[str, Any]:
- """读取工作流详情和节点列表。"""
- with get_db() as conn:
- workflow = conn.execute("SELECT * FROM automation_workflows WHERE id = ?", (workflow_id,)).fetchone()
- if not workflow:
- raise HTTPException(status_code=404, detail="Automation workflow not found")
- nodes = conn.execute(
- "SELECT * FROM automation_workflow_nodes WHERE workflow_id = ? ORDER BY node_index ASC",
- (workflow_id,),
- ).fetchall()
- item = dict(workflow)
- item["nodes"] = [public_node(row) for row in nodes]
- return item
- def delete_workflow(workflow_id: int) -> dict[str, Any]:
- """删除工作流及其节点。"""
- with get_db() as conn:
- cursor = conn.execute("DELETE FROM automation_workflows WHERE id = ?", (workflow_id,))
- if cursor.rowcount == 0:
- raise HTTPException(status_code=404, detail="Automation workflow not found")
- return {"deleted": cursor.rowcount}
- def public_node(row: dict[str, Any]) -> dict[str, Any]:
- """把工作流节点行转换为接口返回格式。"""
- item = dict(row)
- try:
- item["config"] = json.loads(item.pop("config_json") or "{}")
- except json.JSONDecodeError:
- item["config"] = {}
- return item
- def list_errors(page: int, page_size: int) -> dict[str, Any]:
- """分页查询自动化错误记录。"""
- offset = (page - 1) * page_size
- with get_db() as conn:
- total = conn.execute("SELECT COUNT(*) AS total FROM automation_errors").fetchone()["total"]
- rows = conn.execute(
- """
- SELECT e.*, s.interface_name
- FROM automation_errors e
- LEFT JOIN automation_screens s ON s.id = e.screen_id
- ORDER BY e.created_at DESC
- LIMIT ? OFFSET ?
- """,
- (page_size, offset),
- ).fetchall()
- return {"items": [public_error(row) for row in rows], "total": total, "page": page, "page_size": page_size}
- def get_error(error_id: int, include_images: bool = False) -> dict[str, Any]:
- """读取单条自动化错误详情,可附带目标截图和实际截图。"""
- with get_db() as conn:
- row = conn.execute("SELECT * FROM automation_errors WHERE id = ?", (error_id,)).fetchone()
- if not row:
- raise HTTPException(status_code=404, detail="Automation error not found")
- item = public_error(row)
- if include_images:
- for key in ["expected_image_path", "actual_image_path"]:
- path = item.get(key)
- if path and Path(path).exists():
- image = image_to_base64(path)
- item[key.replace("_path", "_base64")] = image["base64"]
- item[key.replace("_path", "_mime_type")] = image["mime_type"]
- return item
- def public_error(row: dict[str, Any]) -> dict[str, Any]:
- """把错误记录行转换为接口返回格式。"""
- item = dict(row)
- try:
- item["compare_result"] = json.loads(item.pop("compare_result_json") or "{}")
- except json.JSONDecodeError:
- item["compare_result"] = {}
- return item
|