paddle_local_daemon_1.6.sh 13 KB

123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170171172173174175176177178179180181182183184185186187188189190191192193194195196197198199200201202203204205206207208209210211212213214215216217218219220221222223224225226227228229230231232233234235236237238239240241242243244245246247248249250251252253254255256257258259260261262263264265266267268269270271272273274275276277278279280281282283284285286287288289290291292293294295296297298299300301302303304305306307308309310311312313314315316317318319320321322323324325326327328329330331332333334335336337338339340341342343344345346347348349350351352353354355356357358359360361362363364365366367368369370371372373374375376377378379380381382383384385386387388389390391392393394395396
  1. #!/bin/bash
  2. # filepath: ocr_platform/ocr_tools/daemons/paddleocr_local_daemon.sh
  3. # 对应: PaddleOCR-VL 本地 llama-server 服务(macOS),使用 GGUF 格式模型
  4. # 适用于 Mac M4 Pro 48G,使用 Metal GPU 加速
  5. # 模型下载地址: https://huggingface.co/PaddlePaddle/PaddleOCR-VL-1.5-GGUF
  6. # unset https_proxy http_proxy HF_ENDPOINT
  7. # llama-server -hf PaddlePaddle/PaddleOCR-VL-1.5-GGUF
  8. # mv ~/Library/Caches/llama.cpp/PaddlePaddle_PaddleOCR-VL-1.5-GGUF_PaddleOCR-VL-1.5.gguf ~/models/paddleocr_vl
  9. # mv ~/Library/Caches/llama.cpp/PaddlePaddle_PaddleOCR-VL-1.5-GGUF_PaddleOCR-VL-1.5-mmproj.gguf ~/models/paddleocr_vl
  10. # curl -X POST http://localhost:8102/v1/chat/completions -d @payload.json
  11. LOGDIR="$HOME/workspace/logs"
  12. mkdir -p $LOGDIR
  13. PIDFILE="$LOGDIR/paddleocr_llamaserver.pid"
  14. LOGFILE="$LOGDIR/paddleocr_llamaserver.log"
  15. # 配置参数
  16. CONDA_ENV="mineru"
  17. PORT="8102"
  18. HOST="0.0.0.0"
  19. # 本地 GGUF 模型路径(llama-server -hf 下载后的实际路径)
  20. HF_CACHE="$HOME/models/PaddleOCR-VL-1.6-GGUF"
  21. # MODEL_PATH="$HF_CACHE/PaddleOCR-VL-1.6-F16.gguf"
  22. MODEL_PATH="$HF_CACHE/PaddleOCR-VL-1.6-Q8_0.gguf"
  23. MMPROJ_PATH="$HF_CACHE/PaddleOCR-VL-1.6-F16-mmproj.gguf"
  24. # 模型别名(对外暴露的模型 ID,对应 yaml 中的 model_name)
  25. MODEL_NAME="PaddleOCR-VL-1.6"
  26. # llama-server 执行文件
  27. LLAMA_SERVER_EXECUTABLE="/Users/zhch158/workspace/repository.git/llama.cpp/build/bin/llama-server"
  28. # llama-server 参数
  29. CONTEXT_SIZE="16384" # 上下文长度(需 >= max_tokens,推荐 8192-16384)
  30. GPU_LAYERS="99" # Metal GPU 层数(99 表示全部)
  31. THREADS="8" # CPU 线程数(M4 Pro 建议值)
  32. BATCH_SIZE="512" # 批处理大小
  33. UBATCH_SIZE="128" # 微批处理大小
  34. # conda 环境激活
  35. if [ -f "$HOME/anaconda3/etc/profile.d/conda.sh" ]; then
  36. source "$HOME/anaconda3/etc/profile.d/conda.sh"
  37. conda activate $CONDA_ENV
  38. elif [ -f "$HOME/miniconda3/etc/profile.d/conda.sh" ]; then
  39. source "$HOME/miniconda3/etc/profile.d/conda.sh"
  40. conda activate $CONDA_ENV
  41. elif [ -f "/opt/miniconda3/etc/profile.d/conda.sh" ]; then
  42. source /opt/miniconda3/etc/profile.d/conda.sh
  43. conda activate $CONDA_ENV
  44. else
  45. echo "Warning: conda initialization file not found, trying direct path"
  46. export PATH="/opt/miniconda3/envs/$CONDA_ENV/bin:$PATH"
  47. fi
  48. start() {
  49. if [ -f $PIDFILE ] && kill -0 $(cat $PIDFILE) 2>/dev/null; then
  50. echo "PaddleOCR-VL llama-server 已在运行"
  51. return 1
  52. fi
  53. echo "启动 PaddleOCR-VL llama-server 守护进程..."
  54. echo "Host: $HOST, Port: $PORT"
  55. echo "主模型: $MODEL_PATH"
  56. echo "多模态投影器: $MMPROJ_PATH"
  57. echo "上下文长度: $CONTEXT_SIZE"
  58. echo "GPU 层数: $GPU_LAYERS (Metal)"
  59. echo "线程数: $THREADS"
  60. # 检查模型文件是否存在
  61. if [ ! -f "$MODEL_PATH" ]; then
  62. echo "❌ 主模型文件不存在: $MODEL_PATH"
  63. echo "请确认模型已下载到 llama.cpp 缓存目录"
  64. return 1
  65. fi
  66. if [ ! -f "$MMPROJ_PATH" ]; then
  67. echo "❌ 多模态投影器文件不存在: $MMPROJ_PATH"
  68. echo "请确认 mmproj 文件已下载"
  69. return 1
  70. fi
  71. # 检查 llama-server 执行文件(本机编译版本)
  72. if [ ! -x "$LLAMA_SERVER_EXECUTABLE" ]; then
  73. echo "❌ llama-server 执行文件不存在或不可执行: $LLAMA_SERVER_EXECUTABLE"
  74. echo "请确认已在本机编译 llama.cpp(cmake --build build)"
  75. return 1
  76. fi
  77. echo "🔧 使用 llama-server: $LLAMA_SERVER_EXECUTABLE"
  78. echo "🔧 llama.cpp 版本: $("$LLAMA_SERVER_EXECUTABLE" --version 2>&1 | head -1 || echo 'Unknown')"
  79. echo "💻 系统信息:"
  80. echo " 架构: $(uname -m)"
  81. echo " 系统: $(uname -s)"
  82. echo " 内存: $(sysctl -n hw.memsize | awk '{printf "%.1f GB", $1/1024/1024/1024}')"
  83. # 启动 llama-server
  84. nohup "$LLAMA_SERVER_EXECUTABLE" \
  85. -m "$MODEL_PATH" \
  86. --mmproj "$MMPROJ_PATH" \
  87. --alias $MODEL_NAME \
  88. --host $HOST \
  89. --port $PORT \
  90. --media-path $HOME/workspace \
  91. -c $CONTEXT_SIZE \
  92. -ngl $GPU_LAYERS \
  93. -t $THREADS \
  94. -b $BATCH_SIZE \
  95. -ub $UBATCH_SIZE \
  96. --temp 0 \
  97. > $LOGFILE 2>&1 &
  98. echo $! > $PIDFILE
  99. echo "✅ PaddleOCR-VL llama-server 已启动,PID: $(cat $PIDFILE)"
  100. echo "📋 日志文件: $LOGFILE"
  101. echo "🌐 服务 URL: http://$HOST:$PORT"
  102. echo "📖 OpenAI 兼容 API: http://localhost:$PORT/v1 (chat/completions, models)"
  103. echo ""
  104. echo "等待服务启动..."
  105. sleep 5
  106. status
  107. }
  108. stop() {
  109. if [ ! -f $PIDFILE ]; then
  110. echo "PaddleOCR-VL llama-server 未在运行"
  111. return 1
  112. fi
  113. PID=$(cat $PIDFILE)
  114. echo "停止 PaddleOCR-VL llama-server (PID: $PID)..."
  115. kill $PID
  116. for i in {1..30}; do
  117. if ! kill -0 $PID 2>/dev/null; then
  118. break
  119. fi
  120. echo "等待进程停止... ($i/30)"
  121. sleep 1
  122. done
  123. if kill -0 $PID 2>/dev/null; then
  124. echo "强制终止进程..."
  125. kill -9 $PID
  126. fi
  127. rm -f $PIDFILE
  128. echo "✅ PaddleOCR-VL llama-server 已停止"
  129. }
  130. status() {
  131. if [ -f $PIDFILE ] && kill -0 $(cat $PIDFILE) 2>/dev/null; then
  132. PID=$(cat $PIDFILE)
  133. echo "✅ PaddleOCR-VL llama-server 正在运行 (PID: $PID)"
  134. echo "🌐 服务 URL: http://$HOST:$PORT"
  135. echo "📋 日志文件: $LOGFILE"
  136. # 检查端口监听状态
  137. if lsof -nP -iTCP:$PORT -sTCP:LISTEN >/dev/null 2>&1; then
  138. echo "🔗 端口 $PORT 正在监听"
  139. else
  140. echo "⚠️ 端口 $PORT 未在监听(服务可能正在启动)"
  141. fi
  142. # 检查 API 响应
  143. if command -v curl >/dev/null 2>&1; then
  144. if curl -s --connect-timeout 2 http://127.0.0.1:$PORT/v1/models > /dev/null 2>&1; then
  145. echo "🎯 API 响应正常"
  146. else
  147. echo "⚠️ API 无响应(服务可能正在启动)"
  148. fi
  149. fi
  150. # 显示进程内存使用
  151. if command -v ps >/dev/null 2>&1; then
  152. MEM=$(ps -o rss= -p $PID 2>/dev/null | awk '{printf "%.2f GB", $1/1024/1024}')
  153. if [ -n "$MEM" ]; then
  154. echo "💾 内存使用: $MEM"
  155. fi
  156. fi
  157. if [ -f $LOGFILE ]; then
  158. echo "📄 最近日志(最后 3 行):"
  159. tail -3 $LOGFILE | sed 's/^/ /'
  160. fi
  161. else
  162. echo "❌ PaddleOCR-VL llama-server 未在运行"
  163. if [ -f $PIDFILE ]; then
  164. echo "删除过期的 PID 文件..."
  165. rm -f $PIDFILE
  166. fi
  167. fi
  168. }
  169. logs() {
  170. if [ -f $LOGFILE ]; then
  171. echo "📄 PaddleOCR-VL llama-server 日志:"
  172. echo "====================="
  173. tail -f $LOGFILE
  174. else
  175. echo "❌ 日志文件不存在: $LOGFILE"
  176. fi
  177. }
  178. config() {
  179. echo "📋 当前配置:"
  180. echo " Conda 环境: $CONDA_ENV"
  181. echo " Host: $HOST"
  182. echo " Port: $PORT"
  183. echo " 模型别名: $MODEL_NAME"
  184. echo " 主模型路径: $MODEL_PATH"
  185. echo " 多模态投影器: $MMPROJ_PATH"
  186. echo " 上下文长度: $CONTEXT_SIZE"
  187. echo " GPU 层数: $GPU_LAYERS"
  188. echo " 线程数: $THREADS"
  189. echo " 批处理大小: $BATCH_SIZE"
  190. echo " 微批处理大小: $UBATCH_SIZE"
  191. echo " PID 文件: $PIDFILE"
  192. echo " 日志文件: $LOGFILE"
  193. echo ""
  194. echo "📦 模型文件检查:"
  195. if [ -f "$MODEL_PATH" ]; then
  196. SIZE=$(du -h "$MODEL_PATH" | cut -f1)
  197. echo " ✅ 主模型存在 ($SIZE)"
  198. else
  199. echo " ❌ 主模型不存在"
  200. fi
  201. if [ -f "$MMPROJ_PATH" ]; then
  202. SIZE=$(du -h "$MMPROJ_PATH" | cut -f1)
  203. echo " ✅ 多模态投影器存在 ($SIZE)"
  204. else
  205. echo " ❌ 多模态投影器不存在"
  206. fi
  207. echo ""
  208. echo "🔧 环境检查:"
  209. echo " llama-server: $LLAMA_SERVER_EXECUTABLE"
  210. if [ -x "$LLAMA_SERVER_EXECUTABLE" ]; then
  211. LLAMA_VERSION=$("$LLAMA_SERVER_EXECUTABLE" --version 2>&1 | head -1 || echo 'Unknown')
  212. echo " 版本: $LLAMA_VERSION"
  213. else
  214. echo " ⚠️ 执行文件不存在或不可执行"
  215. fi
  216. echo " Conda: $(which conda 2>/dev/null || echo '未找到')"
  217. echo " 当前 Python: $(which python 2>/dev/null || echo '未找到')"
  218. echo ""
  219. echo "💻 系统信息:"
  220. echo " 架构: $(uname -m)"
  221. echo " 系统版本: $(sw_vers -productVersion 2>/dev/null || echo 'Unknown')"
  222. echo " 总内存: $(sysctl -n hw.memsize 2>/dev/null | awk '{printf "%.1f GB", $1/1024/1024/1024}' || echo 'Unknown')"
  223. echo " CPU 核心: $(sysctl -n hw.ncpu 2>/dev/null || echo 'Unknown')"
  224. }
  225. test_api() {
  226. echo "🧪 测试 PaddleOCR-VL llama-server API..."
  227. if [ ! -f $PIDFILE ] || ! kill -0 $(cat $PIDFILE) 2>/dev/null; then
  228. echo "❌ PaddleOCR-VL llama-server 服务未在运行"
  229. return 1
  230. fi
  231. if ! command -v curl >/dev/null 2>&1; then
  232. echo "❌ curl 命令未找到"
  233. return 1
  234. fi
  235. echo "📡 测试 /v1/models 端点..."
  236. response=$(curl -s --connect-timeout 10 http://127.0.0.1:$PORT/v1/models)
  237. if [ $? -eq 0 ]; then
  238. echo "✅ Models 端点可访问"
  239. echo "$response" | python -m json.tool 2>/dev/null || echo "$response"
  240. else
  241. echo "❌ Models 端点不可访问"
  242. fi
  243. echo ""
  244. echo "📡 测试 /health 端点..."
  245. health=$(curl -s --connect-timeout 5 http://127.0.0.1:$PORT/health)
  246. if [ $? -eq 0 ]; then
  247. echo "✅ Health 端点: $health"
  248. else
  249. echo "⚠️ Health 端点不可访问"
  250. fi
  251. }
  252. test_client() {
  253. echo "🧪 测试 PaddleOCR-VL 与 llama-server 集成..."
  254. if [ ! -f $PIDFILE ] || ! kill -0 $(cat $PIDFILE) 2>/dev/null; then
  255. echo "❌ PaddleOCR-VL llama-server 服务未在运行,请先启动: $0 start"
  256. return 1
  257. fi
  258. CONFIG_FILE="/Users/zhch158/workspace/repository.git/ocr_platform/ocr_tools/universal_doc_parser/config/bank_statement_paddleocr_local.yaml"
  259. echo "📄 配置文件: $CONFIG_FILE"
  260. echo ""
  261. echo "确保配置文件中 vl_recognition.api_url 指向: http://localhost:$PORT/v1/chat/completions"
  262. echo ""
  263. echo "测试命令示例:"
  264. echo " cd /Users/zhch158/workspace/repository.git/ocr_platform/ocr_tools/universal_doc_parser"
  265. echo " conda activate mineru"
  266. echo " python parse.py --input /path/to/test/image.png --config $CONFIG_FILE --debug"
  267. echo ""
  268. echo "或者使用 curl 直接测试 API:"
  269. echo " curl -X POST http://localhost:$PORT/v1/chat/completions \\"
  270. echo " -H 'Content-Type: application/json' \\"
  271. echo " -d '{"
  272. echo " \"model\": \"paddleocr-vl\","
  273. echo " \"messages\": ["
  274. echo " {"
  275. echo " \"role\": \"user\","
  276. echo " \"content\": ["
  277. echo " {\"type\": \"text\", \"text\": \"Table Recognition:\"},"
  278. echo " {\"type\": \"image_url\", \"image_url\": {\"url\": \"file:///path/to/image.png\"}}"
  279. echo " ]"
  280. echo " }"
  281. echo " ],"
  282. echo " \"max_tokens\": 4096"
  283. echo " }'"
  284. }
  285. usage() {
  286. echo "PaddleOCR-VL llama-server 服务守护进程(macOS)"
  287. echo "==========================================="
  288. echo "用法: $0 {start|stop|restart|status|logs|config|test|test-client}"
  289. echo ""
  290. echo "命令:"
  291. echo " start - 启动 PaddleOCR-VL llama-server 服务"
  292. echo " stop - 停止 PaddleOCR-VL llama-server 服务"
  293. echo " restart - 重启 PaddleOCR-VL llama-server 服务"
  294. echo " status - 显示服务状态和资源使用"
  295. echo " logs - 显示服务日志(跟踪模式)"
  296. echo " config - 显示当前配置"
  297. echo " test - 测试 /v1/models API 端点"
  298. echo " test-client - 显示如何测试与配置文件集成"
  299. echo ""
  300. echo "配置(编辑脚本修改):"
  301. echo " Host: $HOST"
  302. echo " Port: $PORT"
  303. echo " 主模型: $MODEL_PATH"
  304. echo " 多模态投影器: $MMPROJ_PATH"
  305. echo " 上下文长度: $CONTEXT_SIZE"
  306. echo " GPU 层数: $GPU_LAYERS (Metal)"
  307. echo ""
  308. echo "示例:"
  309. echo " ./paddleocr_local_daemon.sh start"
  310. echo " ./paddleocr_local_daemon.sh status"
  311. echo " ./paddleocr_local_daemon.sh logs"
  312. echo " ./paddleocr_local_daemon.sh test"
  313. echo ""
  314. echo "前置要求:"
  315. echo " 1. 本机编译 llama.cpp,执行文件: $LLAMA_SERVER_EXECUTABLE"
  316. echo " 2. 模型文件位于: $HF_CACHE"
  317. echo " 3. conda 环境 mineru 已配置"
  318. }
  319. case "$1" in
  320. start)
  321. start
  322. ;;
  323. stop)
  324. stop
  325. ;;
  326. restart)
  327. stop
  328. sleep 3
  329. start
  330. ;;
  331. status)
  332. status
  333. ;;
  334. logs)
  335. logs
  336. ;;
  337. config)
  338. config
  339. ;;
  340. test)
  341. test_api
  342. ;;
  343. test-client)
  344. test_client
  345. ;;
  346. *)
  347. usage
  348. exit 1
  349. ;;
  350. esac