目录
- 边缘 AI 概览
- TensorFlow Lite (TFLite)
- ONNX 与 ONNX Runtime
- Core ML (Apple)
- NVIDIA Jetson 平台
- Raspberry Pi AI
- MediaPipe
- llama.cpp 与 GGUF
- Whisper.cpp
- 网页浏览器 AI
- AI 模型优化流水线
1. 边缘 AI 概览
云端 AI vs 边缘 AI
AI 推理在哪里执行,很大程度上取决于应用的性质和需求。传统的云端 AI 方式是把数据发送到远程服务器,在服务器上完成推理后再把结果传回来。而边缘 AI 则是直接在生成数据的设备(智能手机、IoT 传感器、摄像头等)上执行推理。
| 维度 | 云端 AI | 边缘 AI |
|---|---|---|
| 运算位置 | 远程服务器 | 本地设备 |
| 延迟 | 数百毫秒 ~ 数秒 | 数毫秒 ~ 数十毫秒 |
| 隐私 | 数据外传 | 数据本地处理 |
| 网络依赖 | 必需 | 不需要 |
| 成本 | 产生 API 调用费用 | 仅有初期模型成本 |
| 模型大小限制 | 无 | 受内存/存储限制 |
边缘 AI 的优势
1. 隐私保护
医疗影像、生物识别数据、个人语音等敏感信息不会离开设备。GDPR、HIPAA 等数据合规要求也因此自然得到满足。
2. 超低延迟响应
自动驾驶、工业自动化、实时翻译、AR/VR 等需要毫秒级响应的应用能从中获得决定性的优势。由于没有网络往返延迟,可以保证响应速度的一致性。
3. 成本节省
不产生云端 API 调用费用,大规模部署时服务器成本会大幅下降。当数百万台设备都在本地完成推理时,中心服务器的成本几乎接近于零。
4. 离线运行
在网络连接不稳定或没有网络的环境(农村、地下、飞机上等)中,AI 功能依然可以运行。
5. 实时数据处理
在把 IoT 传感器数据上传到云端之前先在本地完成过滤、异常检测、分类,可以大幅减少传输的数据量和存储成本。
边缘硬件
移动端 GPU/NPU
现代智能手机都搭载了专用的 AI 硬件。
- Apple Neural Engine (ANE):iPhone 8 之后开始搭载,M 系列 Mac 也包含在内。A17 Pro 的性能为 35 TOPS
- Qualcomm Hexagon DSP:Android 旗舰机型。Snapdragon 8 Gen 3 搭载了 Hexagon NPU
- Google Tensor:Pixel 手机专用芯片,针对端侧语音识别、翻译做了优化
- MediaTek APU:在中端 Android 手机上广泛支持
边缘计算板
- NVIDIA Jetson:用于自动驾驶、机器人、智能摄像头。Jetson Orin 达到 275 TOPS
- Raspberry Pi 5:4GB/8GB 内存,适合一般的计算机视觉任务
- Google Coral:搭载 Edge TPU,为 TFLite 提供专用加速
- Intel Neural Compute Stick:USB 形态的推理加速器
边缘 AI 应用领域
- 智能手机:人脸解锁、照片分类、实时翻译、语音助手
- 智能家居:语音命令处理、动作检测、能耗优化
- 工业 IoT:不良品检测、预测性维护、异常检测
- 医疗设备:心电图分析、血糖预测、皮肤疾病诊断
- 自动驾驶:实时目标检测、车道识别、障碍物规避
- 农业:基于无人机的作物监测、病虫害检测
2. TensorFlow Lite (TFLite)
TensorFlow Lite 是 Google 开发的面向移动和边缘设备的轻量级 ML 框架。它把 TensorFlow 模型转换为 TFLite 格式(.tflite),运行在 Android、iOS、嵌入式 Linux、微控制器上。
TFLite 转换(SavedModel → TFLite)
import tensorflow as tf
# 方法 1:从 SavedModel 转换
converter = tf.lite.TFLiteConverter.from_saved_model('saved_model_dir')
tflite_model = converter.convert()
with open('model.tflite', 'wb') as f:
f.write(tflite_model)
# 方法 2:直接从 Keras 模型转换
model = tf.keras.applications.MobileNetV2(weights='imagenet')
converter = tf.lite.TFLiteConverter.from_keras_model(model)
tflite_model = converter.convert()
with open('mobilenetv2.tflite', 'wb') as f:
f.write(tflite_model)
# 方法 3:从 concrete function 转换
@tf.function(input_signature=[tf.TensorSpec(shape=[1, 224, 224, 3], dtype=tf.float32)])
def predict(x):
return model(x)
converter = tf.lite.TFLiteConverter.from_concrete_functions(
[predict.get_concrete_function()]
)
tflite_model = converter.convert()
量化(Quantization)
量化是把模型的权重和激活值从浮点数转换为低精度整数,从而缩小模型体积、提升推理速度。
Float16 量化
converter = tf.lite.TFLiteConverter.from_saved_model('saved_model_dir')
converter.optimizations = [tf.lite.Optimize.DEFAULT]
converter.target_spec.supported_types = [tf.float16]
tflite_model = converter.convert()
# 模型体积减少约 50%,精度几乎保持不变
INT8 全整数量化
import numpy as np
def representative_dataset():
# 使用 100~1000 个真实数据样本
for _ in range(100):
data = np.random.rand(1, 224, 224, 3).astype(np.float32)
yield [data]
converter = tf.lite.TFLiteConverter.from_saved_model('saved_model_dir')
converter.optimizations = [tf.lite.Optimize.DEFAULT]
converter.representative_dataset = representative_dataset
converter.target_spec.supported_ops = [tf.lite.OpsSet.TFLITE_BUILTINS_INT8]
converter.inference_input_type = tf.int8
converter.inference_output_type = tf.int8
tflite_model = converter.convert()
# 模型体积减少约 75%,推理速度提升 2-4 倍
动态范围量化
converter = tf.lite.TFLiteConverter.from_saved_model('saved_model_dir')
converter.optimizations = [tf.lite.Optimize.DEFAULT]
# 不需要 representative_dataset 也可以 - 只量化权重
tflite_model = converter.convert()
TFLite Interpreter
import tensorflow as tf
import numpy as np
from PIL import Image
# 初始化 interpreter
interpreter = tf.lite.Interpreter(model_path='mobilenetv2.tflite')
interpreter.allocate_tensors()
# 查看输入输出张量信息
input_details = interpreter.get_input_details()
output_details = interpreter.get_output_details()
print(f"输入 shape: {input_details[0]['shape']}")
print(f"输入 dtype: {input_details[0]['dtype']}")
print(f"输出 shape: {output_details[0]['shape']}")
# 图像预处理
img = Image.open('test_image.jpg').resize((224, 224))
input_data = np.expand_dims(np.array(img, dtype=np.float32) / 255.0, axis=0)
# 执行推理
interpreter.set_tensor(input_details[0]['index'], input_data)
interpreter.invoke()
# 提取结果
output_data = interpreter.get_tensor(output_details[0]['index'])
predicted_class = np.argmax(output_data[0])
confidence = output_data[0][predicted_class]
print(f"预测类别: {predicted_class}, 置信度: {confidence:.4f}")
多线程与 GPU 委托(Delegate)
# 多线程设置
interpreter = tf.lite.Interpreter(
model_path='model.tflite',
num_threads=4
)
# GPU 委托 (Android/iOS)
try:
from tensorflow.lite.python.interpreter import load_delegate
gpu_delegate = load_delegate('libdelegate.so')
interpreter = tf.lite.Interpreter(
model_path='model.tflite',
experimental_delegates=[gpu_delegate]
)
print("GPU 委托已启用")
except Exception as e:
print(f"GPU 委托失败,改用 CPU: {e}")
interpreter = tf.lite.Interpreter(model_path='model.tflite')
interpreter.allocate_tensors()
Android 部署
build.gradle 配置:
dependencies {
implementation 'org.tensorflow:tensorflow-lite:2.13.0'
implementation 'org.tensorflow:tensorflow-lite-gpu:2.13.0'
implementation 'org.tensorflow:tensorflow-lite-support:0.4.4'
}
Kotlin 代码:
import org.tensorflow.lite.Interpreter
import org.tensorflow.lite.support.image.TensorImage
import org.tensorflow.lite.support.tensorbuffer.TensorBuffer
import java.nio.ByteBuffer
import java.nio.ByteOrder
class TFLiteClassifier(private val context: Context) {
private lateinit var interpreter: Interpreter
private val inputSize = 224
private val numClasses = 1000
fun initialize() {
val model = loadModelFile("mobilenetv2.tflite")
val options = Interpreter.Options().apply {
numThreads = 4
useNNAPI = true // Android Neural Networks API
}
interpreter = Interpreter(model, options)
}
private fun loadModelFile(filename: String): ByteBuffer {
val assetFileDescriptor = context.assets.openFd(filename)
val fileInputStream = FileInputStream(assetFileDescriptor.fileDescriptor)
val fileChannel = fileInputStream.channel
val startOffset = assetFileDescriptor.startOffset
val declaredLength = assetFileDescriptor.declaredLength
return fileChannel.map(FileChannel.MapMode.READ_ONLY, startOffset, declaredLength)
}
fun classify(bitmap: Bitmap): FloatArray {
val resized = Bitmap.createScaledBitmap(bitmap, inputSize, inputSize, true)
val inputBuffer = ByteBuffer.allocateDirect(1 * inputSize * inputSize * 3 * 4)
inputBuffer.order(ByteOrder.nativeOrder())
for (y in 0 until inputSize) {
for (x in 0 until inputSize) {
val pixel = resized.getPixel(x, y)
inputBuffer.putFloat(((pixel shr 16 and 0xFF) / 255.0f))
inputBuffer.putFloat(((pixel shr 8 and 0xFF) / 255.0f))
inputBuffer.putFloat(((pixel and 0xFF) / 255.0f))
}
}
val outputBuffer = Array(1) { FloatArray(numClasses) }
interpreter.run(inputBuffer, outputBuffer)
return outputBuffer[0]
}
}
iOS 部署
Swift 代码:
import TensorFlowLite
import UIKit
class TFLiteImageClassifier {
private var interpreter: Interpreter
private let inputWidth = 224
private let inputHeight = 224
init(modelName: String) throws {
guard let modelPath = Bundle.main.path(forResource: modelName, ofType: "tflite") else {
throw NSError(domain: "ModelNotFound", code: 0, userInfo: nil)
}
var options = Interpreter.Options()
options.threadCount = 4
interpreter = try Interpreter(modelPath: modelPath, options: options)
try interpreter.allocateTensors()
}
func classify(image: UIImage) throws -> [Float] {
guard let cgImage = image.cgImage else { return [] }
let inputTensor = try interpreter.input(at: 0)
let batchSize = 1
let inputChannels = 3
let inputData = preprocessImage(cgImage: cgImage)
try interpreter.copy(inputData, toInputAt: 0)
try interpreter.invoke()
let outputTensor = try interpreter.output(at: 0)
let results: [Float] = [Float](unsafeData: outputTensor.data) ?? []
return results
}
private func preprocessImage(cgImage: CGImage) -> Data {
var data = Data(count: inputWidth * inputHeight * 3 * 4)
// 图像缩放及归一化处理
return data
}
}
3. ONNX 与 ONNX Runtime
ONNX(Open Neural Network Exchange)是让 ML 模型能在不同框架之间移植的开放格式。可以把在 PyTorch、TensorFlow、scikit-learn 等框架中训练好的模型导出为这一种标准格式,再用 ONNX Runtime 在任何地方运行。
从 PyTorch 转换到 ONNX
import torch
import torch.nn as nn
import torchvision.models as models
# 加载模型
model = models.resnet50(pretrained=True)
model.eval()
# 生成 dummy 输入
dummy_input = torch.randn(1, 3, 224, 224)
# 导出 ONNX
torch.onnx.export(
model,
dummy_input,
"resnet50.onnx",
export_params=True,
opset_version=17,
do_constant_folding=True,
input_names=['input'],
output_names=['output'],
dynamic_axes={
'input': {0: 'batch_size'},
'output': {0: 'batch_size'}
}
)
print("ONNX 转换完成!")
# 校验 ONNX 模型
import onnx
onnx_model = onnx.load("resnet50.onnx")
onnx.checker.check_model(onnx_model)
print(f"ONNX IR 版本: {onnx_model.ir_version}")
print(f"Opset 版本: {onnx_model.opset_import[0].version}")
ONNX Runtime 推理
import onnxruntime as ort
import numpy as np
from PIL import Image
import torchvision.transforms as transforms
# 创建会话并设置 provider
providers = ['CUDAExecutionProvider', 'CPUExecutionProvider']
session = ort.InferenceSession("resnet50.onnx", providers=providers)
# 确认实际使用的 provider
print(f"使用的 provider: {session.get_providers()}")
# 查看输入输出信息
input_name = session.get_inputs()[0].name
output_name = session.get_outputs()[0].name
input_shape = session.get_inputs()[0].shape
print(f"输入名称: {input_name}, shape: {input_shape}")
# 图像预处理
transform = transforms.Compose([
transforms.Resize(256),
transforms.CenterCrop(224),
transforms.ToTensor(),
transforms.Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225])
])
img = Image.open('test.jpg')
input_tensor = transform(img).unsqueeze(0).numpy()
# 推理
outputs = session.run([output_name], {input_name: input_tensor})
logits = outputs[0]
predicted_class = np.argmax(logits[0])
print(f"预测类别: {predicted_class}")
ONNX Runtime 优化
from onnxruntime.transformers import optimizer
from onnxruntime.quantization import quantize_dynamic, QuantType
# 图优化(Transformer 模型)
optimized_model = optimizer.optimize_model(
'bert_base.onnx',
model_type='bert',
num_heads=12,
hidden_size=768,
optimization_options=None
)
optimized_model.save_model_to_file('bert_optimized.onnx')
# 动态量化 (INT8)
quantize_dynamic(
model_input='bert_optimized.onnx',
model_output='bert_quantized_int8.onnx',
weight_type=QuantType.QInt8,
per_channel=True
)
print("量化完成!")
# 会话选项调优
so = ort.SessionOptions()
so.graph_optimization_level = ort.GraphOptimizationLevel.ORT_ENABLE_ALL
so.intra_op_num_threads = 4
so.inter_op_num_threads = 2
so.execution_mode = ort.ExecutionMode.ORT_SEQUENTIAL
session = ort.InferenceSession('model.onnx', sess_options=so)
ONNX Runtime Web(浏览器)
// npm install onnxruntime-web
import * as ort from 'onnxruntime-web'
async function runInference() {
// 设置 WebAssembly 后端
ort.env.wasm.wasmPaths = '/static/'
ort.env.wasm.numThreads = 4
// 创建会话
const session = await ort.InferenceSession.create('/models/mobilenet.onnx', {
executionProviders: ['webgpu', 'wasm'],
graphOptimizationLevel: 'all',
})
// 创建输入张量 (1, 3, 224, 224)
const inputData = new Float32Array(1 * 3 * 224 * 224).fill(0.5)
const inputTensor = new ort.Tensor('float32', inputData, [1, 3, 224, 224])
// 执行推理
const feeds = { input: inputTensor }
const results = await session.run(feeds)
// 处理结果
const outputData = results.output.data
const maxIndex = Array.from(outputData).indexOf(Math.max(...outputData))
console.log('预测类别:', maxIndex)
}
runInference()
4. Core ML (Apple)
Core ML 是用于在 Apple 平台(iOS、macOS、watchOS、tvOS)上运行 ML 模型的框架。它利用 Neural Engine 提供省电且快速的推理。
使用 coremltools 转换
import coremltools as ct
import torch
import torchvision.models as models
# 转换 PyTorch 模型
torch_model = models.mobilenet_v2(pretrained=True)
torch_model.eval()
example_input = torch.rand(1, 3, 224, 224)
traced_model = torch.jit.trace(torch_model, example_input)
# 转换为 Core ML
mlmodel = ct.convert(
traced_model,
inputs=[ct.TensorType(name='input', shape=(1, 3, 224, 224))],
compute_units=ct.ComputeUnit.ALL, # 同时使用 CPU + GPU + Neural Engine
minimum_deployment_target=ct.target.iOS16
)
# 添加元数据
mlmodel.short_description = "MobileNetV2 图像分类器"
mlmodel.author = "YJ Blog"
mlmodel.version = "1.0"
mlmodel.save("MobileNetV2.mlpackage")
print("Core ML 转换完成!")
Float16 及 INT8 量化
import coremltools as ct
from coremltools.optimize.coreml import (
OpLinearQuantizerConfig,
OptimizationConfig,
linearly_quantize_weights
)
# 加载原始模型
mlmodel = ct.models.MLModel("MobileNetV2.mlpackage")
# 线性权重量化(8 位)
op_config = OpLinearQuantizerConfig(mode="linear_symmetric", dtype="int8")
config = OptimizationConfig(global_config=op_config)
compressed_model = linearly_quantize_weights(mlmodel, config)
compressed_model.save("MobileNetV2_int8.mlpackage")
# 调色板量化(4 位)
from coremltools.optimize.coreml import palettize_weights, OpPalettizerConfig
palette_config = OptimizationConfig(
global_config=OpPalettizerConfig(mode="kmeans", nbits=4)
)
palette_model = palettize_weights(mlmodel, palette_config)
palette_model.save("MobileNetV2_4bit.mlpackage")
在 Swift 中使用 Core ML
import CoreML
import Vision
import UIKit
class CoreMLClassifier {
private var model: VNCoreMLModel?
func loadModel() {
guard let modelURL = Bundle.main.url(forResource: "MobileNetV2", withExtension: "mlpackage") else {
print("找不到模型文件")
return
}
let config = MLModelConfiguration()
config.computeUnits = .all // CPU + GPU + Neural Engine
do {
let coreMLModel = try MLModel(contentsOf: modelURL, configuration: config)
model = try VNCoreMLModel(for: coreMLModel)
print("模型加载成功")
} catch {
print("模型加载失败: \(error)")
}
}
func classify(image: UIImage, completion: @escaping ([VNClassificationObservation]?) -> Void) {
guard let model = model,
let cgImage = image.cgImage else {
completion(nil)
return
}
let request = VNCoreMLRequest(model: model) { request, error in
guard let results = request.results as? [VNClassificationObservation] else {
completion(nil)
return
}
let topResults = results.prefix(5)
completion(Array(topResults))
}
request.imageCropAndScaleOption = .centerCrop
let handler = VNImageRequestHandler(cgImage: cgImage, options: [:])
DispatchQueue.global(qos: .userInteractive).async {
do {
try handler.perform([request])
} catch {
print("推理失败: \(error)")
completion(nil)
}
}
}
}
// 使用示例
let classifier = CoreMLClassifier()
classifier.loadModel()
classifier.classify(image: UIImage(named: "test")!) { results in
results?.forEach { result in
print("\(result.identifier): \(String(format: "%.2f", result.confidence * 100))%")
}
}
用 Create ML 训练自定义模型
import CreateML
import Foundation
// 训练图像分类模型
let trainingData = MLImageClassifier.DataSource.labeledDirectories(
at: URL(fileURLWithPath: "/path/to/training_data")
)
let parameters = MLImageClassifier.ModelParameters(
featureExtractor: .scenePrint(revision: 2),
maxIterations: 25,
augmentation: [.flip, .crop, .rotation]
)
let classifier = try MLImageClassifier(
trainingData: trainingData,
parameters: parameters
)
// 评估
let evaluationData = MLImageClassifier.DataSource.labeledDirectories(
at: URL(fileURLWithPath: "/path/to/test_data")
)
let metrics = classifier.evaluation(on: evaluationData)
print("准确率: \(metrics.classificationError)")
// 保存
try classifier.write(to: URL(fileURLWithPath: "MyClassifier.mlmodel"))
5. NVIDIA Jetson 平台
NVIDIA Jetson 是面向 AI 边缘计算的嵌入式平台,广泛用于机器人、自动驾驶、智能摄像头等领域。
Jetson 型号对比
| 型号 | AI 性能 | RAM | 功耗 | 主要用途 |
|---|---|---|---|---|
| Jetson Nano | 472 GFLOPS | 4GB | 10W | 教育、原型开发 |
| Jetson Xavier NX | 21 TOPS | 8/16GB | 15W | 工业 IoT |
| Jetson AGX Orin | 275 TOPS | 64GB | 60W | 自动驾驶、机器人 |
| Jetson Orin NX | 100 TOPS | 16GB | 25W | 边缘 AI |
TensorRT 转换
import tensorrt as trt
import numpy as np
import pycuda.driver as cuda
import pycuda.autoinit
# 创建 TensorRT logger
TRT_LOGGER = trt.Logger(trt.Logger.WARNING)
def build_engine_from_onnx(onnx_path, engine_path, fp16=True, int8=False):
with trt.Builder(TRT_LOGGER) as builder, \
builder.create_network(1 << int(trt.NetworkDefinitionCreationFlag.EXPLICIT_BATCH)) as network, \
trt.OnnxParser(network, TRT_LOGGER) as parser:
config = builder.create_builder_config()
config.max_workspace_size = 1 << 30 # 1GB
if fp16:
config.set_flag(trt.BuilderFlag.FP16)
if int8:
config.set_flag(trt.BuilderFlag.INT8)
# 解析 ONNX
with open(onnx_path, 'rb') as f:
if not parser.parse(f.read()):
for error in range(parser.num_errors):
print(parser.get_error(error))
return None
# 构建引擎
print("正在构建 TensorRT 引擎...(需要几分钟)")
serialized_engine = builder.build_serialized_network(network, config)
# 保存
with open(engine_path, 'wb') as f:
f.write(serialized_engine)
print(f"引擎保存完成: {engine_path}")
build_engine_from_onnx('resnet50.onnx', 'resnet50_fp16.trt', fp16=True)
TensorRT 推理
import tensorrt as trt
import pycuda.driver as cuda
import pycuda.autoinit
import numpy as np
class TRTInference:
def __init__(self, engine_path):
TRT_LOGGER = trt.Logger(trt.Logger.WARNING)
with open(engine_path, 'rb') as f:
runtime = trt.Runtime(TRT_LOGGER)
self.engine = runtime.deserialize_cuda_engine(f.read())
self.context = self.engine.create_execution_context()
self.inputs, self.outputs, self.bindings, self.stream = self._allocate_buffers()
def _allocate_buffers(self):
inputs, outputs, bindings = [], [], []
stream = cuda.Stream()
for binding in self.engine:
size = trt.volume(self.engine.get_binding_shape(binding))
dtype = trt.nptype(self.engine.get_binding_dtype(binding))
host_mem = cuda.pagelocked_empty(size, dtype)
device_mem = cuda.mem_alloc(host_mem.nbytes)
bindings.append(int(device_mem))
if self.engine.binding_is_input(binding):
inputs.append({'host': host_mem, 'device': device_mem})
else:
outputs.append({'host': host_mem, 'device': device_mem})
return inputs, outputs, bindings, stream
def infer(self, input_data):
np.copyto(self.inputs[0]['host'], input_data.ravel())
cuda.memcpy_htod_async(self.inputs[0]['device'], self.inputs[0]['host'], self.stream)
self.context.execute_async_v2(bindings=self.bindings, stream_handle=self.stream.handle)
cuda.memcpy_dtoh_async(self.outputs[0]['host'], self.outputs[0]['device'], self.stream)
self.stream.synchronize()
return self.outputs[0]['host']
# 使用
trt_model = TRTInference('resnet50_fp16.trt')
input_array = np.random.rand(1, 3, 224, 224).astype(np.float32)
result = trt_model.infer(input_array)
print(f"预测类别: {np.argmax(result)}")
DeepStream SDK
# 使用 DeepStream Python 绑定构建视频流水线
import gi
gi.require_version('Gst', '1.0')
from gi.repository import GObject, Gst, GLib
Gst.init(None)
def create_pipeline():
pipeline = Gst.Pipeline()
# 源: USB 摄像头
source = Gst.ElementFactory.make("v4l2src", "usb-cam-source")
source.set_property("device", "/dev/video0")
# capsfilter
caps = Gst.ElementFactory.make("capsfilter", "capsfilter")
caps.set_property("caps", Gst.Caps.from_string("video/x-raw,width=1280,height=720,framerate=30/1"))
# NVARGUS(摄像头 ISP)
nvconv = Gst.ElementFactory.make("nvvideoconvert", "convertor")
# nvinfer (TensorRT 推理)
nvinfer = Gst.ElementFactory.make("nvinfer", "primary-inference")
nvinfer.set_property("config-file-path", "config_infer_primary.txt")
# 跟踪器
tracker = Gst.ElementFactory.make("nvtracker", "tracker")
tracker.set_property("ll-lib-file", "/opt/nvidia/deepstream/deepstream/lib/libnvds_nvmultiobjecttracker.so")
# OSD (屏幕显示叠加)
osd = Gst.ElementFactory.make("nvdsosd", "onscreendisplay")
# 输出
sink = Gst.ElementFactory.make("nveglglessink", "nvvideo-renderer")
for element in [source, caps, nvconv, nvinfer, tracker, osd, sink]:
pipeline.add(element)
source.link(caps)
caps.link(nvconv)
nvconv.link(nvinfer)
nvinfer.link(tracker)
tracker.link(osd)
osd.link(sink)
return pipeline
pipeline = create_pipeline()
pipeline.set_state(Gst.State.PLAYING)
6. Raspberry Pi AI
树莓派最初是一款教育用产品,如今已广泛用作真正的边缘 AI 部署平台。
Raspberry Pi 5 + Hailo-8
Hailo-8 是一款树莓派 HAT 形态的 AI 加速器,性能为 26 TOPS。
# 安装 Hailo SDK
pip install hailort
# 转换模型 (ONNX -> HEF)
# Hailo Model Zoo 提供预先转换好的模型
wget https://hailo-model-zoo.s3.eu-west-2.amazonaws.com/ModelZoo/Compiled/v2.11.0/hailo8/resnet_v1_50.hef
import hailo_platform as hp
import numpy as np
# 加载 HEF 并推理
with hp.VDevice() as vdevice:
hef = hp.Hef("resnet_v1_50.hef")
network_groups = vdevice.configure(hef)
network_group = network_groups[0]
input_vstreams_params = hp.InputVStreamParams.make_from_network_group(
network_group, quantized=False, format_type=hp.FormatType.FLOAT32
)
output_vstreams_params = hp.OutputVStreamParams.make_from_network_group(
network_group, quantized=False, format_type=hp.FormatType.FLOAT32
)
with hp.InferVStreams(network_group, input_vstreams_params, output_vstreams_params) as infer_pipeline:
input_data = {"input_layer1": np.random.rand(1, 224, 224, 3).astype(np.float32)}
with network_group.activate():
infer_results = infer_pipeline.infer(input_data)
print(f"结果: {np.argmax(infer_results['resnet_v1_50/softmax1'])}")
OpenCV + 树莓派摄像头
import cv2
import numpy as np
import tflite_runtime.interpreter as tflite
# TFLite Interpreter(在树莓派上使用轻量版)
interpreter = tflite.Interpreter(
model_path='ssd_mobilenet_v2.tflite',
num_threads=4
)
interpreter.allocate_tensors()
input_details = interpreter.get_input_details()
output_details = interpreter.get_output_details()
# 初始化摄像头(树莓派摄像头 v2)
cap = cv2.VideoCapture(0)
cap.set(cv2.CAP_PROP_FRAME_WIDTH, 640)
cap.set(cv2.CAP_PROP_FRAME_HEIGHT, 480)
while True:
ret, frame = cap.read()
if not ret:
break
# 预处理
input_size = (input_details[0]['shape'][2], input_details[0]['shape'][1])
rgb_frame = cv2.cvtColor(frame, cv2.COLOR_BGR2RGB)
resized = cv2.resize(rgb_frame, input_size)
input_data = np.expand_dims(resized, axis=0).astype(np.uint8)
# 推理
interpreter.set_tensor(input_details[0]['index'], input_data)
interpreter.invoke()
# 提取结果 (SSD MobileNet)
boxes = interpreter.get_tensor(output_details[0]['index'])[0]
classes = interpreter.get_tensor(output_details[1]['index'])[0]
scores = interpreter.get_tensor(output_details[2]['index'])[0]
# 结果可视化
h, w = frame.shape[:2]
for i in range(len(scores)):
if scores[i] > 0.5:
ymin, xmin, ymax, xmax = boxes[i]
cv2.rectangle(frame,
(int(xmin * w), int(ymin * h)),
(int(xmax * w), int(ymax * h)),
(0, 255, 0), 2)
label = f"类别 {int(classes[i])}: {scores[i]:.2f}"
cv2.putText(frame, label, (int(xmin * w), int(ymin * h) - 10),
cv2.FONT_HERSHEY_SIMPLEX, 0.5, (0, 255, 0), 2)
cv2.imshow('树莓派 AI', frame)
if cv2.waitKey(1) & 0xFF == ord('q'):
break
cap.release()
cv2.destroyAllWindows()
7. MediaPipe
Google MediaPipe 是提供人脸检测、手部追踪、姿态估计、目标检测等多种视觉 ML 解决方案的框架。
用 Python 实现手部追踪
import mediapipe as mp
import cv2
import numpy as np
mp_hands = mp.solutions.hands
mp_drawing = mp.solutions.drawing_utils
mp_drawing_styles = mp.solutions.drawing_styles
def run_hand_tracking():
cap = cv2.VideoCapture(0)
with mp_hands.Hands(
static_image_mode=False,
max_num_hands=2,
min_detection_confidence=0.7,
min_tracking_confidence=0.5
) as hands:
while cap.isOpened():
ret, frame = cap.read()
if not ret:
break
# BGR -> RGB 转换
rgb_frame = cv2.cvtColor(frame, cv2.COLOR_BGR2RGB)
rgb_frame.flags.writeable = False
results = hands.process(rgb_frame)
rgb_frame.flags.writeable = True
frame = cv2.cvtColor(rgb_frame, cv2.COLOR_RGB2BGR)
if results.multi_hand_landmarks:
for hand_landmarks in results.multi_hand_landmarks:
mp_drawing.draw_landmarks(
frame,
hand_landmarks,
mp_hands.HAND_CONNECTIONS,
mp_drawing_styles.get_default_hand_landmarks_style(),
mp_drawing_styles.get_default_hand_connections_style()
)
# 提取关键点坐标(21 个关键点)
for idx, landmark in enumerate(hand_landmarks.landmark):
h, w, _ = frame.shape
cx, cy = int(landmark.x * w), int(landmark.y * h)
if idx == 8: # 食指指尖
cv2.circle(frame, (cx, cy), 10, (255, 0, 0), -1)
cv2.imshow('手部追踪', frame)
if cv2.waitKey(5) & 0xFF == ord('q'):
break
cap.release()
cv2.destroyAllWindows()
run_hand_tracking()
姿态估计(Pose Estimation)
import mediapipe as mp
import cv2
mp_pose = mp.solutions.pose
def calculate_angle(a, b, c):
"""根据三个点计算角度"""
import numpy as np
a = np.array(a)
b = np.array(b)
c = np.array(c)
radians = np.arctan2(c[1] - b[1], c[0] - b[0]) - \
np.arctan2(a[1] - b[1], a[0] - b[0])
angle = np.abs(radians * 180.0 / np.pi)
if angle > 180.0:
angle = 360 - angle
return angle
cap = cv2.VideoCapture(0)
with mp_pose.Pose(
min_detection_confidence=0.5,
min_tracking_confidence=0.5,
model_complexity=1 # 0: Lite, 1: Full, 2: Heavy
) as pose:
while cap.isOpened():
ret, frame = cap.read()
if not ret:
break
rgb_frame = cv2.cvtColor(frame, cv2.COLOR_BGR2RGB)
results = pose.process(rgb_frame)
frame = cv2.cvtColor(rgb_frame, cv2.COLOR_RGB2BGR)
if results.pose_landmarks:
landmarks = results.pose_landmarks.landmark
h, w, _ = frame.shape
# 计算肘部角度
shoulder = [landmarks[mp_pose.PoseLandmark.LEFT_SHOULDER.value].x * w,
landmarks[mp_pose.PoseLandmark.LEFT_SHOULDER.value].y * h]
elbow = [landmarks[mp_pose.PoseLandmark.LEFT_ELBOW.value].x * w,
landmarks[mp_pose.PoseLandmark.LEFT_ELBOW.value].y * h]
wrist = [landmarks[mp_pose.PoseLandmark.LEFT_WRIST.value].x * w,
landmarks[mp_pose.PoseLandmark.LEFT_WRIST.value].y * h]
angle = calculate_angle(shoulder, elbow, wrist)
cv2.putText(frame, f"肘部角度: {angle:.1f}度",
(int(elbow[0]), int(elbow[1])),
cv2.FONT_HERSHEY_SIMPLEX, 0.8, (0, 255, 0), 2)
mp.solutions.drawing_utils.draw_landmarks(
frame, results.pose_landmarks, mp_pose.POSE_CONNECTIONS
)
cv2.imshow('姿态估计', frame)
if cv2.waitKey(5) & 0xFF == ord('q'):
break
cap.release()
cv2.destroyAllWindows()
MediaPipe Tasks API(最新版本)
import mediapipe as mp
from mediapipe.tasks import python
from mediapipe.tasks.python import vision
# 目标检测任务
base_options = python.BaseOptions(model_asset_path='efficientdet_lite0.tflite')
options = vision.ObjectDetectorOptions(
base_options=base_options,
running_mode=vision.RunningMode.IMAGE,
max_results=5,
score_threshold=0.5
)
with vision.ObjectDetector.create_from_options(options) as detector:
image = mp.Image.create_from_file('test_image.jpg')
detection_result = detector.detect(image)
for detection in detection_result.detections:
category = detection.categories[0]
print(f"目标: {category.category_name}, 置信度: {category.score:.2f}")
bbox = detection.bounding_box
print(f" 位置: ({bbox.origin_x}, {bbox.origin_y}), 尺寸: {bbox.width}x{bbox.height}")
8. llama.cpp 与 GGUF
llama.cpp 是用 C++ 实现的 Meta LLaMA 模型运行框架,即使没有 GPU、仅凭 CPU 也能运行大型语言模型。
安装与基本用法
# 源码编译
git clone https://github.com/ggerganov/llama.cpp
cd llama.cpp
# 仅 CPU
make -j4
# Apple Silicon(Metal GPU 加速)
make LLAMA_METAL=1 -j4
# NVIDIA CUDA
make LLAMA_CUDA=1 -j4
# 下载 GGUF 模型 (例如 Llama 3.2 3B)
huggingface-cli download \
bartowski/Llama-3.2-3B-Instruct-GGUF \
Llama-3.2-3B-Instruct-Q4_K_M.gguf \
--local-dir ./models
# 交互式对话
./llama-cli \
-m models/Llama-3.2-3B-Instruct-Q4_K_M.gguf \
-n 512 \
-p "你是一个友善的 AI 助手。" \
--repeat-penalty 1.1 \
-t 8 \
--color
量化级别(GGUF)
GGUF 文件的量化级别决定了模型体积与质量之间的权衡。
| 量化 | 位/权重 | 大小(7B) | 质量 | 建议场景 |
|---|---|---|---|---|
| Q2_K | ~2.6 位 | ~2.7GB | 低 | 内存极度受限 |
| Q4_0 | 4.5 位 | ~3.8GB | 一般 | 常规使用 |
| Q4_K_M | 4.8 位 | ~4.1GB | 良好 | 推荐:兼顾平衡 |
| Q5_K_M | 5.7 位 | ~4.8GB | 好 | 注重质量 |
| Q6_K | 6.6 位 | ~5.5GB | 非常好 | 需要高质量 |
| Q8_0 | 8.5 位 | ~7.2GB | 最高 | 内存充裕时 |
llama-cpp-python
from llama_cpp import Llama
# 加载模型
llm = Llama(
model_path="./models/Llama-3.2-3B-Instruct-Q4_K_M.gguf",
n_ctx=4096, # 上下文窗口
n_threads=8, # CPU 线程数
n_gpu_layers=35, # 放到 GPU 上的层数(-1 表示全部)
verbose=False
)
# 基本文本生成
output = llm(
"韩国的首都是哪里?",
max_tokens=128,
temperature=0.7,
top_p=0.95,
top_k=40,
repeat_penalty=1.1
)
print(output['choices'][0]['text'])
# 对话格式
messages = [
{"role": "system", "content": "你是一个友善的 AI 助手。请用中文回答。"},
{"role": "user", "content": "请写一段用 Python 求斐波那契数列的代码。"}
]
response = llm.create_chat_completion(
messages=messages,
max_tokens=512,
temperature=0.7
)
print(response['choices'][0]['message']['content'])
# 流式输出
stream = llm.create_chat_completion(
messages=messages,
max_tokens=512,
stream=True
)
for chunk in stream:
delta = chunk['choices'][0]['delta']
if 'content' in delta:
print(delta['content'], end='', flush=True)
print()
OpenAI 兼容服务器
# 运行 llama.cpp 服务器
./llama-server \
-m models/Llama-3.2-3B-Instruct-Q4_K_M.gguf \
--port 8080 \
--host 0.0.0.0 \
-n 2048 \
-t 8 \
--n-gpu-layers 35
# 用 OpenAI SDK 调用本地服务器
from openai import OpenAI
client = OpenAI(
base_url="http://localhost:8080/v1",
api_key="none"
)
response = client.chat.completions.create(
model="local-model",
messages=[
{"role": "user", "content": "请说明机器学习与深度学习的区别。"}
],
max_tokens=512,
temperature=0.7
)
print(response.choices[0].message.content)
PyTorch 模型 → GGUF 转换
# HuggingFace 模型 → GGUF
cd llama.cpp
# 安装 Python 依赖
pip install -r requirements.txt
# 转换
python convert_hf_to_gguf.py \
/path/to/hf_model \
--outfile models/my_model.gguf \
--outtype f16
# 量化
./quantize models/my_model.gguf models/my_model_q4km.gguf Q4_K_M
9. Whisper.cpp
Whisper.cpp 是用 C++ 实现的 OpenAI Whisper 语音识别模型,让树莓派乃至智能手机等各种环境都能实现离线语音识别。
安装与基本用法
# 编译
git clone https://github.com/ggerganov/whisper.cpp
cd whisper.cpp
make -j4
# Apple Silicon
make WHISPER_METAL=1 -j4
# 下载模型
bash ./models/download-ggml-model.sh base.en # 仅英语,142MB
bash ./models/download-ggml-model.sh medium # 多语言,1.5GB
bash ./models/download-ggml-model.sh large-v3 # 最高质量,3.1GB
# 转录音频文件
./main -m models/ggml-medium.bin \
-f audio.wav \
-l zh \
--output-txt \
-of output
# 实时麦克风输入
./stream -m models/ggml-medium.bin \
-t 8 \
--step 500 \
--length 5000 \
-l zh
whisper-cpp-python
import whisper_cpp
import numpy as np
import soundfile as sf
# 加载模型
model = whisper_cpp.Whisper.from_pretrained("medium")
# 转录 WAV 文件
audio, sr = sf.read("audio.wav", dtype="float32")
if audio.ndim > 1:
audio = audio.mean(axis=1) # 立体声 -> 单声道
# 转换采样率(需要 16kHz)
if sr != 16000:
import librosa
audio = librosa.resample(audio, orig_sr=sr, target_sr=16000)
result = model.transcribe(audio, language="zh")
print(f"转录结果:\n{result['text']}")
# 包含时间戳
for segment in result['segments']:
start = segment['start']
end = segment['end']
text = segment['text']
print(f"[{start:.2f}s -> {end:.2f}s] {text}")
量化 Whisper 模型
# Whisper GGML 模型量化
./quantize models/ggml-medium.bin models/ggml-medium-q5_0.bin q5_0
# 体积对比
ls -lh models/ggml-medium*.bin
# ggml-medium.bin: 1.5GB
# ggml-medium-q5_0.bin: 约 900MB
iOS/Android 上的 Whisper.cpp
iOS 支持 Metal GPU 加速。
// 在 iOS 上使用 whisper.cpp(WhisperKit 库)
import WhisperKit
class SpeechRecognizer {
var whisperKit: WhisperKit?
func initialize() async {
do {
whisperKit = try await WhisperKit(
model: "openai_whisper-medium",
computeOptions: ModelComputeOptions(melCompute: .cpuAndGPU)
)
print("Whisper 模型加载完成")
} catch {
print("初始化失败: \(error)")
}
}
func transcribe(audioURL: URL) async -> String? {
guard let whisperKit = whisperKit else { return nil }
do {
let result = try await whisperKit.transcribe(
audioPath: audioURL.path,
decodeOptions: DecodingOptions(language: "zh")
)
return result.map(\.text).joined(separator: " ")
} catch {
print("转录失败: \(error)")
return nil
}
}
}
10. 网页浏览器 AI
随着 WebAssembly 和 WebGPU 的发展,如今在浏览器里也能实现强大的 AI 推理。
TensorFlow.js
<!DOCTYPE html>
<html>
<head>
<title>浏览器图像分类</title>
<script src="https://cdn.jsdelivr.net/npm/@tensorflow/tfjs@latest"></script>
<script src="https://cdn.jsdelivr.net/npm/@tensorflow-models/mobilenet@2.1.1"></script>
</head>
<body>
<input type="file" id="imageInput" accept="image/*" />
<img id="preview" style="max-width: 400px;" />
<div id="result"></div>
<script>
let model
async function loadModel() {
model = await mobilenet.load({ version: 2, alpha: 1.0 })
console.log('模型加载完成!')
document.getElementById('result').textContent = '模型已就绪,请选择图片。'
}
document.getElementById('imageInput').addEventListener('change', async (e) => {
const file = e.target.files[0]
if (!file) return
const img = document.getElementById('preview')
img.src = URL.createObjectURL(file)
img.onload = async () => {
const predictions = await model.classify(img, 5)
const resultDiv = document.getElementById('result')
resultDiv.innerHTML = '<h3>预测结果:</h3>'
predictions.forEach((pred) => {
resultDiv.innerHTML += ``
})
}
})
loadModel()
</script>
</body>
</html>
Transformers.js(HuggingFace)
import { pipeline, env } from '@xenova/transformers'
// 设置 WASM 路径
env.backends.onnx.wasm.wasmPaths = 'https://cdn.jsdelivr.net/npm/onnxruntime-web/dist/'
// 文本分类流水线
async function runTextClassification() {
const classifier = await pipeline(
'sentiment-analysis',
'Xenova/distilbert-base-uncased-finetuned-sst-2-english'
)
const results = await classifier(['I love machine learning!', 'This is terrible.'])
results.forEach((result, i) => {
console.log(`文本 ${i + 1}: ${result.label} (${(result.score * 100).toFixed(2)}%)`)
})
}
// 图像分类
async function runImageClassification() {
const classifier = await pipeline('image-classification', 'Xenova/vit-base-patch16-224')
const result = await classifier('https://example.com/image.jpg')
console.log('图像分类结果:', result)
}
// 文本生成(小型 LLM)
async function runTextGeneration() {
const generator = await pipeline('text-generation', 'Xenova/gpt2')
const output = await generator('人工智能的未来是', {
max_new_tokens: 100,
temperature: 0.7,
})
console.log('生成的文本:', output[0].generated_text)
}
runTextClassification()
WebGPU 加速推理
import * as ort from 'onnxruntime-web'
async function runWithWebGPU() {
// 检查 WebGPU 支持情况
if (!navigator.gpu) {
console.log('当前浏览器不支持 WebGPU。')
return
}
const adapter = await navigator.gpu.requestAdapter()
const device = await adapter.requestDevice()
console.log('WebGPU adapter:', adapter.info)
// 在 ONNX Runtime 中使用 WebGPU
ort.env.wasm.wasmPaths = '/'
const session = await ort.InferenceSession.create('/models/resnet50.onnx', {
executionProviders: ['webgpu'],
graphOptimizationLevel: 'all',
})
// 批量推理
const batchSize = 4
const inputData = new Float32Array(batchSize * 3 * 224 * 224)
const inputTensor = new ort.Tensor('float32', inputData, [batchSize, 3, 224, 224])
const startTime = performance.now()
const output = await session.run({ input: inputTensor })
const elapsed = performance.now() - startTime
console.log(`WebGPU 推理时间: ${elapsed.toFixed(2)}ms`)
console.log(`批处理吞吐量: ${((batchSize / elapsed) * 1000).toFixed(1)} images/sec`)
}
runWithWebGPU()
11. AI 模型优化流水线
训练 → 优化 → 部署全流程
训练 (PyTorch/TF)
↓
剪枝(去除不必要的权重)
↓
知识蒸馏(Teacher-Student)
↓
量化感知训练 (QAT)
↓
格式转换 (ONNX/TFLite/GGUF)
↓
运行时优化 (TensorRT/OpenVINO)
↓
部署(移动端/边缘/网页)
剪枝(Pruning)
import torch
import torch.nn.utils.prune as prune
import torchvision.models as models
model = models.resnet50(pretrained=True)
# 结构化剪枝:移除 Conv2d 层 50% 的过滤器
for name, module in model.named_modules():
if isinstance(module, torch.nn.Conv2d):
prune.l1_unstructured(module, name='weight', amount=0.3)
prune.remove(module, 'weight') # 永久应用掩码
# 确认模型体积
original_params = sum(p.numel() for p in models.resnet50().parameters())
pruned_params = sum(p.numel() for p in model.parameters() if p.requires_grad)
print(f"原始参数: {original_params:,}")
print(f"剪枝后: {pruned_params:,}")
print(f"减少比例: {(1 - pruned_params/original_params)*100:.1f}%")
知识蒸馏(Knowledge Distillation)
import torch
import torch.nn as nn
import torch.nn.functional as F
class DistillationLoss(nn.Module):
def __init__(self, temperature=4.0, alpha=0.7):
super().__init__()
self.T = temperature
self.alpha = alpha
def forward(self, student_logits, teacher_logits, labels):
# 软目标损失(蒸馏损失)
soft_loss = F.kl_div(
F.log_softmax(student_logits / self.T, dim=1),
F.softmax(teacher_logits / self.T, dim=1),
reduction='batchmean'
) * (self.T ** 2)
# 硬目标损失(交叉熵)
hard_loss = F.cross_entropy(student_logits, labels)
return self.alpha * soft_loss + (1 - self.alpha) * hard_loss
def train_student(teacher, student, dataloader, epochs=10):
teacher.eval()
student.train()
optimizer = torch.optim.AdamW(student.parameters(), lr=1e-4)
criterion = DistillationLoss(temperature=4.0, alpha=0.7)
for epoch in range(epochs):
total_loss = 0
for images, labels in dataloader:
with torch.no_grad():
teacher_logits = teacher(images)
student_logits = student(images)
loss = criterion(student_logits, teacher_logits, labels)
optimizer.zero_grad()
loss.backward()
optimizer.step()
total_loss += loss.item()
print(f"Epoch {epoch+1}/{epochs}, Loss: {total_loss/len(dataloader):.4f}")
# 教师: ResNet50,学生: MobileNetV2
teacher = models.resnet50(pretrained=True)
student = models.mobilenet_v2(pretrained=False)
量化感知训练(QAT)
import torch
from torch.quantization import get_default_qat_qconfig, prepare_qat, convert
model = models.mobilenet_v2(pretrained=True)
model.train()
# QAT 设置
model.qconfig = get_default_qat_qconfig('qnnpack') # ARM/移动端
# model.qconfig = get_default_qat_qconfig('fbgemm') # x86
# 准备 QAT(插入伪量化)
model = prepare_qat(model, inplace=False)
# 微调训练(少量 epoch)
optimizer = torch.optim.SGD(model.parameters(), lr=0.0001)
model.train()
for epoch in range(5):
for images, labels in dataloader:
outputs = model(images)
loss = nn.CrossEntropyLoss()(outputs, labels)
optimizer.zero_grad()
loss.backward()
optimizer.step()
print(f"QAT Epoch {epoch+1}/5 完成")
# 转换为 INT8 模型
model.eval()
quantized_model = convert(model.eval(), inplace=False)
torch.save(quantized_model.state_dict(), 'mobilenetv2_int8.pth')
print("QAT 完成!精度几乎没有下降,模型体积缩小了 4 倍")
综合基准测试工具
import time
import numpy as np
import psutil
import os
class EdgeAIBenchmark:
def __init__(self, model_path, framework='tflite'):
self.model_path = model_path
self.framework = framework
self.results = {}
def measure_latency(self, input_data, num_runs=100, warmup=10):
"""测量平均推理延迟"""
import tensorflow as tf
interpreter = tf.lite.Interpreter(model_path=self.model_path)
interpreter.allocate_tensors()
input_details = interpreter.get_input_details()
output_details = interpreter.get_output_details()
# 预热
for _ in range(warmup):
interpreter.set_tensor(input_details[0]['index'], input_data)
interpreter.invoke()
# 测量
latencies = []
for _ in range(num_runs):
start = time.perf_counter()
interpreter.set_tensor(input_details[0]['index'], input_data)
interpreter.invoke()
_ = interpreter.get_tensor(output_details[0]['index'])
latencies.append((time.perf_counter() - start) * 1000)
self.results['latency_mean_ms'] = np.mean(latencies)
self.results['latency_p99_ms'] = np.percentile(latencies, 99)
self.results['throughput_fps'] = 1000 / np.mean(latencies)
return self.results
def measure_memory(self):
"""测量内存使用量"""
process = psutil.Process(os.getpid())
before = process.memory_info().rss / 1024 / 1024
import tensorflow as tf
interpreter = tf.lite.Interpreter(model_path=self.model_path)
interpreter.allocate_tensors()
after = process.memory_info().rss / 1024 / 1024
self.results['memory_mb'] = after - before
return self.results
def measure_model_size(self):
"""模型文件大小"""
size_bytes = os.path.getsize(self.model_path)
self.results['model_size_mb'] = size_bytes / 1024 / 1024
return self.results
def run_full_benchmark(self, input_data):
self.measure_model_size()
self.measure_memory()
self.measure_latency(input_data)
print(f"\n=== {self.model_path} 基准测试 ===")
print(f"模型大小: {self.results.get('model_size_mb', 0):.2f} MB")
print(f"内存使用: {self.results.get('memory_mb', 0):.2f} MB")
print(f"平均延迟: {self.results.get('latency_mean_ms', 0):.2f} ms")
print(f"P99 延迟: {self.results.get('latency_p99_ms', 0):.2f} ms")
print(f"吞吐量: {self.results.get('throughput_fps', 0):.1f} FPS")
return self.results
# 使用
import numpy as np
input_data = np.random.rand(1, 224, 224, 3).astype(np.float32)
bench = EdgeAIBenchmark('mobilenetv2.tflite')
results = bench.run_full_benchmark(input_data)
bench_q = EdgeAIBenchmark('mobilenetv2_int8.tflite')
results_q = bench_q.run_full_benchmark(input_data)
print("\n=== 量化效果 ===")
size_reduction = (1 - results_q['model_size_mb'] / results['model_size_mb']) * 100
speed_improvement = results['latency_mean_ms'] / results_q['latency_mean_ms']
print(f"体积减少: {size_reduction:.1f}%")
print(f"速度提升: {speed_improvement:.1f}倍")
结语
边缘 AI 已经不再只是研究领域,而是被实际应用于产品之中的技术。整理本指南中涉及的要点:
- TFLite:在移动应用中使用最广泛。Android/iOS 均支持
- ONNX Runtime:与框架无关,最适合跨平台部署
- Core ML:在 Apple 设备上最大限度利用 Neural Engine
- TensorRT:将 NVIDIA GPU 加速发挥到极致
- llama.cpp:在 CPU 上运行 LLM,在 Apple Silicon 上尤其强大
- Whisper.cpp:离线语音识别的标准
- MediaPipe:视觉 ML 解决方案的快速原型开发
- Transformers.js:在浏览器中直接运行 HuggingFace 模型
模型选择与优化策略取决于目标硬件、所需精度、延迟目标。INT8 量化在大多数场景下都能在几乎不损失精度的前提下大幅改善体积与速度,因此强烈推荐作为边缘 AI 项目的第一个优化步骤。
参考资料
현재 단락 (1/1015)
1. [边缘 AI 概览](#1-边缘-ai-概览)