Files
AstrBot/astrbot/dashboard/utils.py
Weilong Liao 0d8e8682db refactor(core): migrate backend backbone from Quart to FastAPI and introduce more OpenAPI (#8688)
* refactor: migrate to fastapi

* structure refactor

* fix: pyright fix

* refactor: improve error handling and public messages in plugin services

* feat(api): refactor API client integration and enhance request handling

- Updated API client configuration to use a dedicated HTTP client.
- Introduced utility functions for generating options, queries, and form data for API requests.
- Refactored multiple API methods to utilize the new utility functions for improved consistency and readability.
- Renamed types for clarity and updated import statements accordingly.

feat(docs): add script to update OpenAPI JSON from YAML spec

- Created a Python script to convert OpenAPI YAML specification to JSON format.
- The script supports customizable input and output paths.
- Ensured the script handles directory creation for output paths and validates the YAML structure.

* fix

* feat(auth): implement rate limiting for v1 login endpoint and enhance request handling

* Refactor dashboard API routers to use legacy_router for backward compatibility

- Changed all instances of dashboard_router to legacy_router across multiple API modules including platform, plugins, providers, sessions, skills, stats, subagents, t2i, tools, updates, and asgi_runtime.
- Updated route definitions to ensure existing endpoints remain functional under the new router structure.
- Introduced support for Quart request context in asgi_runtime to enhance compatibility with existing Quart-based plugins.
- Added a test case to validate the functionality of the new Quart request context handling in plugin extensions.

* chore: remove cli test

* fix: update dashboard tests for fastapi migration

* chore: satisfy ruff checks

* fix: update openapi api key scopes

* fix: sync config scope chip selection

* fix: restore quart dependency

* docs: clarify quart plugin api compatibility

* docs: update openapi scope documentation

* fix: use singular skill openapi scope

* fix: hide update service exception details

* fix: address fastapi review comments

* fix: address dashboard review findings

* docs: revert unrelated package deployment changes

* docs: update agent api generation guidance

* feat: add plugin page web api helpers

* docs: add plugin page bridge demo

* fix: type plugin upload files

* fix: stabilize plugin page uploads

* fix: type plugin web request proxy

* docs: remove plugin page docs example

* fix: authenticate plugin page SSE bridge
2026-06-14 15:03:26 +08:00

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import base64
import traceback
from io import BytesIO
from typing import TYPE_CHECKING
from astrbot.api import logger
from astrbot.core.knowledge_base.kb_helper import KBHelper
from astrbot.core.knowledge_base.kb_mgr import KnowledgeBaseManager
if TYPE_CHECKING:
from astrbot.core.db.vec_db.faiss_impl import FaissVecDB
async def generate_tsne_visualization(
query: str,
kb_names: list[str],
kb_manager: KnowledgeBaseManager,
) -> str | None:
"""生成 t-SNE 可视化图片
Args:
query: 查询文本
kb_names: 知识库名称列表
kb_manager: 知识库管理器
Returns:
图片路径或 None
"""
try:
import faiss
import matplotlib # type: ignore[reportMissingImports]
import numpy as np
matplotlib.use("Agg") # 使用非交互式后端
import matplotlib.pyplot as plt # type: ignore[reportMissingImports]
from sklearn.manifold import TSNE # type: ignore[reportMissingImports]
except ImportError as e:
raise Exception(
"缺少必要的库以生成 t-SNE 可视化。请安装 matplotlib 和 scikit-learn: {e}",
) from e
try:
# 获取第一个知识库的向量数据
kb_helper: KBHelper | None = None
for kb_name in kb_names:
kb_helper = await kb_manager.get_kb_by_name(kb_name)
if kb_helper:
break
if not kb_helper:
logger.warning("未找到知识库")
return None
kb = kb_helper.kb
index_path = kb_helper.kb_dir / "index.faiss"
# 读取 FAISS 索引
if not index_path.exists():
logger.warning(f"FAISS 索引不存在: {index_path!s}")
return None
index = faiss.read_index(str(index_path))
if index.ntotal == 0:
logger.warning("索引为空")
return None
# 提取所有向量
logger.info(f"提取 {index.ntotal} 个向量用于可视化...")
if isinstance(index, faiss.IndexIDMap):
base_index = faiss.downcast_index(index.index)
if hasattr(base_index, "reconstruct_n"):
vectors = base_index.reconstruct_n(0, index.ntotal)
else:
vectors = np.zeros((index.ntotal, index.d), dtype=np.float32)
for i in range(index.ntotal):
base_index.reconstruct(i, vectors[i])
elif hasattr(index, "reconstruct_n"):
vectors = index.reconstruct_n(0, index.ntotal)
else:
vectors = np.zeros((index.ntotal, index.d), dtype=np.float32)
for i in range(index.ntotal):
index.reconstruct(i, vectors[i])
# 获取查询向量
vec_db: FaissVecDB = kb_helper.vec_db # type: ignore
embedding_provider = vec_db.embedding_provider
query_embedding = await embedding_provider.get_embedding(query)
query_vector = np.array([query_embedding], dtype=np.float32)
# 合并所有向量和查询向量
all_vectors = np.vstack([vectors, query_vector])
# t-SNE 降维
logger.info("开始 t-SNE 降维...")
perplexity = min(30, all_vectors.shape[0] - 1)
tsne = TSNE(n_components=2, random_state=42, perplexity=perplexity)
vectors_2d = tsne.fit_transform(all_vectors)
# 分离知识库向量和查询向量
kb_vectors_2d = vectors_2d[:-1]
query_vector_2d = vectors_2d[-1]
# 可视化
logger.info("生成可视化图表...")
plt.figure(figsize=(14, 10))
# 绘制知识库向量
scatter = plt.scatter(
kb_vectors_2d[:, 0],
kb_vectors_2d[:, 1],
alpha=0.5,
s=40,
c=range(len(kb_vectors_2d)),
cmap="viridis",
label="Knowledge Base Vectors",
)
# 绘制查询向量(红色 X
plt.scatter(
query_vector_2d[0],
query_vector_2d[1],
c="red",
s=300,
marker="X",
edgecolors="black",
linewidths=2,
label="Query",
zorder=5,
)
# 添加查询文本标注
plt.annotate(
"Query",
(query_vector_2d[0], query_vector_2d[1]),
xytext=(10, 10),
textcoords="offset points",
fontsize=10,
bbox={"boxstyle": "round,pad=0.5", "fc": "yellow", "alpha": 0.7},
arrowprops={"arrowstyle": "->", "connectionstyle": "arc3,rad=0"},
)
plt.colorbar(scatter, label="Vector Index")
plt.title(
f"t-SNE Visualization: Query in Knowledge Base\n"
f"({index.ntotal} vectors, {index.d} dimensions, KB: {kb.kb_name})",
fontsize=14,
pad=20,
)
plt.xlabel("t-SNE Dimension 1", fontsize=12)
plt.ylabel("t-SNE Dimension 2", fontsize=12)
plt.grid(True, alpha=0.3)
plt.legend(fontsize=10, loc="upper right")
# base64 编码图片返回
buffer = BytesIO()
plt.savefig(buffer, format="png", dpi=150, bbox_inches="tight")
plt.close()
buffer.seek(0)
img_base64 = base64.b64encode(buffer.read()).decode("utf-8")
return img_base64
except Exception as e:
logger.error(f"生成 t-SNE 可视化时出错: {e}")
logger.error(traceback.format_exc())
return None