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10_Wiki/Topics 대규모 정리: - 오류 캡처/미완성 stub 문서 227개 제거 - 교차폴더 중복 43클러스터 병합 (63파일 → redirect) - 링크명 정규화: 깨진 링크 수정·redirect 직결·개념 매핑 ~2,400건 - 카테고리 MOC 6개 신규 생성 - Graph 섹션 미해결 related-keyword 링크 10,058건 제거 Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
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id, title, category, status, canonical_id, aliases, duplicate_of, source_trust_level, confidence_score, verification_status, tags, raw_sources, last_reinforced, github_commit, tech_stack
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| wiki-2026-0508-edge-ai-and-computing | Edge AI and Computing | 10_Wiki/Topics | verified | self |
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none | A | 0.95 | applied |
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2026-05-10 | pending |
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Edge AI and Computing
매 한 줄
"매 cloud 의 X — 매 device 의 inference". 매 latency ↓ + 매 privacy ↑ + 매 bandwidth ↓ + 매 offline. 매 model: 매 quantized + pruned + distilled. 매 hardware: 매 NPU (Apple Neural Engine, Snapdragon Hexagon), TinyML MCU. 매 modern: 매 on-device LLM (Phi-3, Llama 3.2 1B, Gemma 2B).
매 핵심
매 motivation
- Latency: 매 ms 의 round-trip cloud → 매 sub-ms.
- Privacy: 매 data 의 device 의 stay.
- Cost: 매 cloud GPU 의 X.
- Offline: 매 connectivity 의 independent.
매 model compression
- Quantization: FP32 → INT8 → INT4 → 4-bit.
- Pruning: 매 zero weights.
- Distillation: 매 teacher → student.
- Architecture: 매 MobileNet, EfficientNet, MobileViT.
매 hardware
- Apple Neural Engine (16-core).
- Snapdragon Hexagon NPU.
- Google Tensor TPU edge.
- NVIDIA Jetson (Orin, Xavier).
- TinyML MCU: ESP32, Cortex-M.
- Coral Edge TPU.
매 framework
- Mobile: TFLite, Core ML, MediaPipe, ONNX Runtime Mobile.
- Embedded: TensorFlow Lite Micro, Edge Impulse, NCNN, MNN.
- LLM-on-device: llama.cpp, MLC LLM, Apple Foundation Models, MLX.
매 응용
- Mobile photo: 매 portrait, HDR.
- Voice: 매 wake word, ASR.
- AR: 매 hand tracking.
- IoT: 매 anomaly.
- Automotive: 매 ADAS.
- Wearable: 매 ECG, sleep.
매 modern (2024+)
- On-device LLM: 매 Phi-3-mini (3.8B INT4), Llama 3.2 1B/3B, Gemma 2B.
- Apple Foundation Models framework.
- Qualcomm AI Hub.
- Hybrid edge-cloud: 매 simple → device, complex → cloud.
💻 패턴
TFLite quantize (Python)
import tensorflow as tf
converter = tf.lite.TFLiteConverter.from_saved_model('saved_model/')
converter.optimizations = [tf.lite.Optimize.DEFAULT]
converter.representative_dataset = lambda: ((tf.cast(x[:1], tf.float32),) for x in calibration_data)
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()
open('model_int8.tflite', 'wb').write(tflite_model)
Mobile inference (Core ML, Swift)
import CoreML
let config = MLModelConfiguration()
config.computeUnits = .all // 매 ANE + GPU + CPU
let model = try MyModel(configuration: config)
let prediction = try model.prediction(input: input)
Android (TFLite + delegate)
val options = Interpreter.Options().apply {
addDelegate(NnApiDelegate()) // 매 NPU
setNumThreads(4)
}
val interpreter = Interpreter(modelFile, options)
interpreter.run(input, output)
llama.cpp (LLM on-device)
#include "llama.h"
struct llama_model_params model_params = llama_model_default_params();
model_params.n_gpu_layers = 99; // 매 Metal / CUDA
struct llama_model* model = llama_load_model_from_file("model_q4.gguf", model_params);
struct llama_context_params ctx_params = llama_context_default_params();
struct llama_context* ctx = llama_new_context_with_model(model, ctx_params);
MLX (Apple, Python)
import mlx.core as mx
import mlx_lm
model, tokenizer = mlx_lm.load('mlx-community/Llama-3.2-1B-Instruct-4bit')
prompt = tokenizer.apply_chat_template([{'role': 'user', 'content': 'Hi'}], tokenize=False)
response = mlx_lm.generate(model, tokenizer, prompt, max_tokens=128)
TinyML (TF Lite Micro, C)
#include "tensorflow/lite/micro/all_ops_resolver.h"
constexpr int kArenaSize = 8 * 1024;
uint8_t tensor_arena[kArenaSize];
void setup() {
static tflite::MicroErrorReporter error_reporter;
static tflite::AllOpsResolver resolver;
static tflite::MicroInterpreter interpreter(model, resolver, tensor_arena, kArenaSize);
interpreter.AllocateTensors();
}
void loop() {
TfLiteTensor* input = interpreter.input(0);
// 매 fill from sensor
interpreter.Invoke();
TfLiteTensor* output = interpreter.output(0);
}
Distillation (PyTorch)
def distill_loss(student_logits, teacher_logits, target, T=3, alpha=0.5):
soft = F.kl_div(F.log_softmax(student_logits / T, -1),
F.softmax(teacher_logits / T, -1), reduction='batchmean') * T * T
hard = F.cross_entropy(student_logits, target)
return alpha * soft + (1 - alpha) * hard
Pruning (PyTorch)
import torch.nn.utils.prune as prune
for module in model.modules():
if isinstance(module, nn.Linear):
prune.l1_unstructured(module, 'weight', amount=0.5)
prune.remove(module, 'weight')
Hybrid edge-cloud
def smart_dispatch(query, device_capability):
complexity = estimate_complexity(query)
if complexity < THRESHOLD and device_capability.has_local_llm:
return local_llm.generate(query)
return cloud_llm.generate(query)
Power-aware scheduling
void schedule_inference() {
if (battery_level < 0.2) {
use_quantized_model(); // 매 INT8
skip_low_priority_inferences();
} else {
use_full_model();
}
}
Latency benchmark
import time
def benchmark_tflite(interpreter, input_data, n=100):
times = []
for _ in range(n):
t0 = time.perf_counter()
interpreter.set_tensor(input_idx, input_data)
interpreter.invoke()
times.append(time.perf_counter() - t0)
return {'p50': sorted(times)[n // 2], 'p99': sorted(times)[int(n * 0.99)]}
매 결정 기준
| 상황 | Approach |
|---|---|
| Mobile vision | TFLite + NNAPI / Core ML |
| Mobile LLM | MLX / llama.cpp / MLC |
| MCU (mW power) | TinyML / TF Lite Micro |
| Privacy critical | On-device only |
| Latency critical | Edge + 매 cache |
| Variable complexity | Hybrid edge-cloud |
기본값: 매 INT8 quantize + 매 NPU delegate + 매 device-tier model + 매 hybrid 의 fallback.
🔗 Graph
- 부모: Machine-Learning · Distributed-Systems
- 변형: TinyML · Mobile-AI
- 응용: LLM_Optimization_and_Deployment_Strategies · LLM_Optimization_and_Deployment_Strategies
- Adjacent: NPU · Federated-Learning
🤖 LLM 활용
언제: 매 mobile app. 매 IoT. 매 privacy. 매 low-latency. 언제 X: 매 huge model only. 매 frequent retrain.
❌ 안티패턴
- Cloud model 의 device 의 push: 매 ROM / RAM 의 fail.
- No quantization: 매 latency / battery.
- Single delegate hardcode: 매 device 의 fail.
- Edge-only stubborn: 매 hybrid 의 win 의 miss.
- No power awareness: 매 battery drain.
🧪 검증 / 중복
- Verified (TFLite docs, MLX, Apple WWDC, Qualcomm AI Hub).
- 신뢰도 A.
🕓 Changelog
| 날짜 | 변경 |
|---|---|
| 2026-04-26 | EDGE-AI auto |
| 2026-05-08 | Phase 1 |
| 2026-05-10 | Manual cleanup — quantize + 매 TFLite / MLX / llama.cpp / TinyML / hybrid code |