MiniMind: Lightweight and flexible AI generation library
Project description
from minimind import GPMGenerator, Sampler, SimpleTokenizer
def main(): print("MiniMind GPMGenerator 테스트 시작!")
import csv
csv_path = "MLdata.csv" # 네 데이터셋 경로로 변경
pairs = []
with open(csv_path, encoding='utf-8') as f:
reader = csv.DictReader(f)
for row in reader:
pairs.append((row['input_text'].strip(), row['output_text'].strip()))
# 샘플러 생성 (top-k 예시)
sampler = Sampler(method='top_k', k=3)
tokenizer = SimpleTokenizer()
# 생성기 초기화 시 sampler 연결
gpm = GPMGenerator(sampler=sampler, tokenizer=tokenizer)
gpm.fit(pairs[:327])
# 생성 테스트
prompt = "안녕하세요"
response = gpm.chat(prompt, max_tokens=10)
print("입력 프롬프트:", prompt)
print("생성된 텍스트:", response)
prompt = "오늘 날씨 어때?"
response = gpm.chat(prompt, max_tokens=10)
print("입력 프롬프트:", prompt)
print("생성된 텍스트:", response)
prompt = "지금 뭐해?"
response = gpm.chat(prompt, max_tokens=10)
print("입력 프롬프트:", prompt)
print("생성된 텍스트:", response)
if name == "main": main()
import autograd.numpy as anp from autograd import grad import numpy as np from minimind.neuralnet import token_embedding, positional_embedding, attention, dense, tanh, softmax
class SimpleModel: def init(self, vocab_size, seq_len, embed_dim, hidden_dim): rng = np.random.default_rng(42) self.vocab_size = vocab_size self.seq_len = seq_len self.embed_dim = embed_dim self.hidden_dim = hidden_dim
self.params = {
"W_embed": rng.normal(0, 0.1, (vocab_size, embed_dim)),
"W_pos": rng.normal(0, 0.1, (seq_len, embed_dim)),
"W_dense": rng.normal(0, 0.1, (embed_dim, hidden_dim)),
"b_dense": np.zeros(hidden_dim),
"W_out": rng.normal(0, 0.1, (hidden_dim, vocab_size)),
"b_out": np.zeros(vocab_size)
}
def forward(self, X, params):
emb_tokens = token_embedding(X, params["W_embed"]) # (batch, seq_len, embed_dim)
emb_positions = positional_embedding(self.seq_len, params["W_pos"])
emb = emb_tokens + emb_positions
Q, K, V = emb, emb, emb
attn_out, _ = attention(Q, K, V)
attn_out_flat = attn_out.reshape(-1, self.embed_dim)
hidden = tanh(dense(attn_out_flat, params["W_dense"], params["b_dense"]))
logits = dense(hidden, params["W_out"], params["b_out"]) # (batch*seq_len, vocab_size)
logits = logits.reshape(-1, self.seq_len, self.vocab_size)
return logits
def loss(self, params, X, Y):
logits = self.forward(X, params)
probs = softmax(logits, axis=2)
batch_size = X.shape[0]
loss = 0.0
count = 0
for i in range(batch_size):
for t in range(self.seq_len):
loss -= anp.log(probs[i, t, Y[i, t]] + 1e-12)
count += 1
return loss / count
def train(model, X_train, Y_train, epochs=20, batch_size=8, lr=0.01): loss_grad = grad(model.loss) N = X_train.shape[0]
for epoch in range(epochs):
perm = np.random.permutation(N)
total_loss = 0
for i in range(0, N, batch_size):
idx = perm[i:i+batch_size]
X_batch, Y_batch = X_train[idx], Y_train[idx]
grads = loss_grad(model.params, X_batch, Y_batch)
# 파라미터 업데이트 (SGD)
for k in model.params:
model.params[k] -= lr * grads[k]
batch_loss = model.loss(model.params, X_batch, Y_batch)
total_loss += batch_loss * len(idx)
avg_loss = total_loss / N
print(f"Epoch {epoch+1}/{epochs}, Loss: {avg_loss:.4f}")
if name == "main": # 더미 데이터 생성 (단어 인덱스 시퀀스) vocab_size = 50 seq_len = 4 batch_size = 64
np.random.seed(123)
X_train = np.random.randint(0, vocab_size, (batch_size*10, seq_len))
Y_train = np.random.randint(0, vocab_size, (batch_size*10, seq_len)) # 정답도 토큰 인덱스
model = SimpleModel(vocab_size, seq_len, embed_dim=8, hidden_dim=16)
train(model, X_train, Y_train, epochs=20, batch_size=batch_size, lr=0.01)
from minimind.dl import MLPTrainer, NeuralGenerator import numpy as np
num_samples = 100
X_train = np.random.randn(num_samples, 10) y_train = np.random.randint(0, 3, size=num_samples)
model = NeuralGenerator(vocab_size=1000, embed_dim=64, hidden_layer_sizes=(128,64)) trainer = MLPTrainer(model, learning_rate=0.001)
trainer.fit(X_train, y_train, epochs=50)
from minimind.ml import SAPGenerator from minimind import SimpleTokenizer def main(): print("MiniMind SAPGenerator 테스트 시작!")
import csv
csv_path = "MLdata.csv" # 네 데이터셋 경로로 변경
pairs = []
with open(csv_path, encoding='utf-8') as f:
reader = csv.DictReader(f)
for row in reader:
pairs.append((row['input_text'].strip(), row['output_text'].strip()))
# SAPGenerator 인스턴스 생성 및 학습
tokenizer = SimpleTokenizer()
sap_gen = SAPGenerator(tokenizer=tokenizer)
sap_gen.fit(pairs[:200])
# 생성 테스트
prompt = "오늘은 뭐 할까?"
print(f"입력: {prompt}")
generated = sap_gen.chat(prompt, max_tokens=10)
print(f"생성 결과: {generated}")
if name == "main": main()
test_sampling.py
import numpy as np from minimind import top_k_sampling, top_p_sampling, temperature_sampling, Sampler
def dummy_probs(size=100): probs = np.random.rand(size) return probs / probs.sum()
def test_sampling_functions(): probs = dummy_probs()
print("top_k_sampling:", top_k_sampling(probs, k=5))
print("top_p_sampling:", top_p_sampling(probs, p=0.8))
print("temperature_sampling (temp=0.5):", temperature_sampling(probs, temperature=0.5))
print("temperature_sampling (temp=2.0):", temperature_sampling(probs, temperature=2.0))
def test_sampler_class(): probs = dummy_probs() sampler = Sampler(method='top_p', p=0.9) print("Sampler top_p:", sampler.sample(probs))
sampler.method = 'top_k'
sampler.k = 3
print("Sampler top_k:", sampler.sample(probs))
sampler.method = 'temperature'
sampler.temperature = 0.7
print("Sampler temperature:", sampler.sample(probs))
if name == "main": test_sampling_functions() test_sampler_class()
from minimind import SimpleTokenizer
tokenizer = SimpleTokenizer()
text = "Hello, 안녕하세요! Let's test the tokenizer 123." tokens = tokenizer.tokenize(text) print("토큰:", tokens)
reconstructed = tokenizer.detokenize(tokens) print("복원된 문장:", reconstructed)
import os import numpy as np from minimind import set_seed, save_json, load_json, save_model_weights, load_model_weights, simple_logger
if name == "main": # 테스트 함수들
def test_set_seed():
set_seed(123)
a = np.random.rand(3)
set_seed(123)
b = np.random.rand(3)
assert np.allclose(a, b), "set_seed 실패!"
print("set_seed 테스트 통과!")
def test_save_load_json():
data = {'name': 'MiniMind', 'version': 1.0}
filepath = 'test.json'
save_json(data, filepath)
loaded = load_json(filepath)
assert data == loaded, "JSON 저장/로드 실패!"
os.remove(filepath)
print("save_json & load_json 테스트 통과!")
def test_save_load_weights_multi_format():
weights = {
'W1': np.array([1, 2, 3]),
'b1': np.array([0.1, 0.2, 0.3])
}
for fmt in ['npz', 'joblib', 'json']:
filepath = f"weights_test.{fmt}"
save_model_weights(weights, filepath, format=fmt)
loaded = load_model_weights(filepath, format=fmt)
for k in weights:
assert np.allclose(weights[k], loaded[k]), f"{fmt} {k} 가중치 저장/로드 실패!"
os.remove(filepath)
print("멀티 포맷 가중치 저장/로드 테스트 통과!")
def test_logger():
simple_logger("테스트 로그 메시지")
# 실행 테스트 모음
test_set_seed()
test_save_load_json()
test_save_load_weights_multi_format()
test_logger()
from minimind.dl import CNN_MNIST, load_mnist, predict import autograd.numpy as anp
if name == "main": X_train, X_val, Y_train, Y_val = load_mnist() model = CNN_MNIST() model.fit(X_train, Y_train, X_val, Y_val, epochs=1, batch_size=128, lr=0.01)
# 샘플 디코딩
idx = 0
pred = predict(model, X_val[idx:idx+1])[0]
label = anp.argmax(Y_val[idx])
print(f"[예측 결과] 예측: {pred}, 실제: {label}")
from minimind.dl import VAE, init_params from Conv2D import load_mnist
if name == "main": X_train, X_val, _, _ = load_mnist() X_train = X_train.reshape(-1, 28, 28, 1) X_val = X_val.reshape(-1, 28, 28, 1)
params = init_params(latent_dim=30, init_std=0.05)
model = VAE((28, 28, 1), 30, params)
model.fit(params, X_train, X_val=X_val, epochs=10, batch_size=64, lr=0.001)
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