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import os, numpy as np, tensorflow as tf
from tensorflow.keras import layers
import gradio as gr
# --- 1. ํ๊ฒฝ ์ค์ ๋ฐ ๋ชจ๋ธ ๊ตฌ์กฐ ์ ์ ---
# ํ์ผ ์ด๋ฆ๋ง ์ฌ์ฉ (ํ์ฌ ์์
๋๋ ํ ๋ฆฌ์ ํ์ผ์ด ์์ด์ผ ํจ)
TOKENIZER_PATH = "tokenizer.model"
sp = spm.SentencePieceProcessor(TOKENIZER_PATH)
pad_id = sp.piece_to_id("<pad>") if sp.piece_to_id("<pad>") != -1 else 0
end_id = sp.piece_to_id("</s>")
vocab_size = sp.get_piece_size()
class TimeMix(layers.Layer):
def __init__(self, d_model, layer_id, n_layers):
super().__init__()
self.d_model = d_model
ratio = (layer_id / (n_layers - 1)) if n_layers > 1 else 0.5
decay_speed = np.arange(d_model)
self.time_decay = tf.Variable(-5 + 8 * (decay_speed / (d_model - 1)) ** (0.7 + 1.3 * ratio), dtype=tf.float32)
self.time_first = tf.Variable(np.ones(d_model) * np.log(0.3), dtype=tf.float32)
self.w_proj = layers.Dense(d_model, kernel_initializer='zeros', use_bias=False)
self.r_proj = layers.Dense(d_model, kernel_initializer='zeros', use_bias=False)
self.k_proj = layers.Dense(d_model, kernel_initializer='zeros', use_bias=False)
self.v_proj = layers.Dense(d_model, kernel_initializer='zeros', use_bias=False)
self.key = layers.Dense(d_model, use_bias=False)
self.value = layers.Dense(d_model, use_bias=False)
self.receptance = layers.Dense(d_model, use_bias=False)
self.output_projection = layers.Dense(d_model, use_bias=False)
self.tm_w = tf.Variable(1 - (ratio ** 0.5), dtype=tf.float32)
self.tm_k = tf.Variable(1 - (ratio ** 0.5), dtype=tf.float32)
self.tm_v = tf.Variable(1 - (ratio ** 0.5), dtype=tf.float32)
self.tm_r = tf.Variable(1 - (ratio ** 0.2), dtype=tf.float32)
def call(self, x, state):
last_x, aa, bb, pp = state
t_type = x.dtype
tm_w, tm_k, tm_v, tm_r = tf.cast(self.tm_w, t_type), tf.cast(self.tm_k, t_type), tf.cast(self.tm_v, t_type), tf.cast(self.tm_r, t_type)
dx = x * tm_w + last_x * (1 - tm_w)
w = tf.cast(self.time_decay, t_type) + tf.cast(self.w_proj(dx), t_type)
w = -tf.exp(tf.cast(w, tf.float32))
r = self.receptance(x * tm_r + last_x * (1 - tm_r)) + self.r_proj(dx)
k = self.key(x * tm_k + last_x * (1 - tm_k)) + self.k_proj(dx)
v = self.value(x * tm_v + last_x * (1 - tm_v)) + self.v_proj(dx)
u = tf.cast(self.time_first, tf.float32)
kv, vv = tf.cast(k, tf.float32), tf.cast(v, tf.float32)
ww = u + kv
p = tf.maximum(pp, ww)
e1, e2 = tf.exp(pp - p), tf.exp(ww - p)
wkv = (e1 * aa + e2 * vv) / (e1 * bb + e2 + 1e-12)
ww_next = w + pp
p_next = tf.maximum(ww_next, kv)
e1_next, e2_next = tf.exp(ww_next - p_next), tf.exp(kv - p_next)
new_state = [x, e1_next * aa + e2_next * vv, e1_next * bb + e2_next, p_next]
return self.output_projection(tf.nn.sigmoid(r) * tf.cast(wkv, t_type)), new_state
class ChannelMix(layers.Layer):
def __init__(self, d_model, layer_id, n_layers):
super().__init__()
ratio = (layer_id / (n_layers - 1)) if n_layers > 1 else 0.5
self.time_mix_k = tf.Variable(1 - (ratio ** 0.5), dtype=tf.float32)
self.time_mix_r = tf.Variable(1 - (ratio ** 0.5), dtype=tf.float32)
self.key = layers.Dense(int(d_model * 4.25), use_bias=False)
self.receptance = layers.Dense(d_model, use_bias=False)
self.value = layers.Dense(d_model, use_bias=False)
def call(self, x, last_x):
t_type = x.dtype
tm_k, tm_r = tf.cast(self.time_mix_k, t_type), tf.cast(self.time_mix_r, t_type)
k = self.key(x * tm_k + last_x * (1 - tm_k))
r = self.receptance(x * tm_r + last_x * (1 - tm_r))
kv = self.value(tf.square(tf.nn.relu(k)))
return tf.nn.sigmoid(r) * kv, x
class Block(layers.Layer):
def __init__(self, d_model, layer_id, n_layers):
super().__init__()
self.ln = layers.LayerNormalization(epsilon=1e-5)
self.time_mix = TimeMix(d_model, layer_id, n_layers)
self.channel_mix = ChannelMix(d_model, layer_id, n_layers)
def call(self, x, state):
ln_x = self.ln(x)
tm_out, tm_state = self.time_mix(ln_x, state[:4])
x = x + tm_out
cm_out, cm_last_x = self.channel_mix(ln_x, state[4])
x = x + cm_out
return x, tm_state + [cm_last_x]
class Head(tf.keras.Model):
def __init__(self, vocab_size):
super().__init__()
self.lm_head = layers.Dense(vocab_size, use_bias=False, name="output_head")
def call(self, x):
return tf.cast(self.lm_head(x), tf.float32)
class LM(tf.keras.Model):
def __init__(self, d_model, n_layers):
super().__init__()
self.token_embedding = layers.Embedding(vocab_size, d_model)
self.blocks = [Block(d_model, i, n_layers) for i in range(n_layers)]
self.ln_f = layers.LayerNormalization(epsilon=1e-5, dtype=tf.float32)
def call(self, x, states):
x = self.token_embedding(x)
new_states = []
for i, block in enumerate(self.blocks):
x, b_state = block(x, states[i*5 : (i+1)*5])
new_states.extend(b_state)
return self.ln_f(x), new_states
# --- 2. ์ด๊ธฐํ ๋ฐ ๊ฐ์ค์น ๋ก๋ ---
d_model, n_layers = 512, 10
blocklm = LM(d_model, n_layers)
head = Head(vocab_size)
def get_init_state():
return [tf.zeros((1, 1, d_model)) if i%5!=3 else tf.ones((1, 1, d_model))*-1e30 for i in range(n_layers*5)]
# Dummy call
_o, _s = blocklm(tf.constant([[0]]), get_init_state())
_ = head(_o)
blocklm.load_weights("blocklm.weights.h5")
head.load_weights("head.weights.h5")
# --- 3. ์ถ๋ก ์์ง ---
class InferenceEngine:
def __init__(self, model, head, sp):
self.model = model
self.head = head
self.sp = sp
self.pad_id = sp.piece_to_id("<pad>") if sp.piece_to_id("<pad>") != -1 else 0
self.eos_id = sp.piece_to_id("</s>") if sp.piece_to_id("</s>") != -1 else sp.piece_to_id("[EOS]")
def apply_repetition_penalty(self, logits, generated_ids, penalty, window=64):
if not generated_ids: return logits
recent_ids = set(generated_ids[-window:])
for token_id in recent_ids:
if logits[token_id] > 0: logits[token_id] /= penalty
else: logits[token_id] *= penalty
return logits
def sample(self, logits, temp, top_k, top_p):
if temp <= 0: return np.argmax(logits)
logits = logits / temp
if top_k > 0:
indices_to_remove = logits < np.sort(logits)[-min(top_k, logits.shape[-1])]
logits[indices_to_remove] = -float('inf')
probs = tf.nn.softmax(logits).numpy()
sorted_indices = np.argsort(probs)[::-1]
sorted_probs = probs[sorted_indices]
cumulative_probs = np.cumsum(sorted_probs)
idx_to_remove = cumulative_probs > top_p
if np.any(idx_to_remove):
cutoff_idx = max(1, np.where(idx_to_remove)[0][0] + 1)
probs[sorted_indices[cutoff_idx:]] = 0
if np.sum(probs) > 0: probs /= np.sum(probs)
else: probs[sorted_indices[0]] = 1.0
return np.random.choice(len(probs), p=probs)
@tf.function(reduce_retracing=True)
def model_step(self, token_id, states):
out, next_states = self.model(token_id, states)
logits = self.head(out)
return logits, next_states
def generate(self, prompt, max_new_tokens, temp, top_k, top_p, penalty):
input_ids = self.sp.encode(prompt)
states = get_init_state()
generated = []
if len(input_ids) > 1:
for i in range(len(input_ids) - 1):
_, states = self.model_step(tf.constant([[input_ids[i]]]), states)
curr_token_id = input_ids[-1]
prev_text = ""
for _ in range(max_new_tokens):
logits_out, states = self.model_step(tf.constant([[curr_token_id]]), states)
logits = logits_out[0, 0].numpy()
logits = self.apply_repetition_penalty(logits, input_ids + generated, penalty)
logits[self.pad_id] = -float('inf')
next_id = int(self.sample(logits, temp, top_k, top_p))
if next_id == self.eos_id: break
generated.append(next_id)
full_text = self.sp.decode(generated)
new_part = full_text[len(prev_text):]
if new_part:
yield new_part
prev_text = full_text
curr_token_id = next_id
engine = InferenceEngine(blocklm, head, sp)
# --- 4. Gradio UI (๋จ์ ํ
์คํธ ์
์ถ๋ ฅ ๋ฐฉ์) ---
with gr.Blocks(title="RWKV Text Generator") as demo:
gr.Markdown("## ๐๏ธ Dynamic RWKV Text Generation")
gr.Markdown("์ง๋ฌธ์ ์
๋ ฅํ๊ณ Generate๋ฅผ ๋๋ฅด๋ฉด ๋ต๋ณ์ด ์๋ ํ
์คํธ ๋ฐ์ค์ ์ค์๊ฐ์ผ๋ก ์์ฑ๋ฉ๋๋ค.")
with gr.Row():
with gr.Column():
input_text = gr.Textbox(lines=5, label="Input Prompt", placeholder="์ฌ๊ธฐ์ ์ง๋ฌธ์ด๋ ๋ฌธ์ฅ์ ์
๋ ฅํ์ธ์...")
with gr.Row():
temp_slider = gr.Slider(0, 2, value=0.7, label="Temperature")
top_p_slider = gr.Slider(0, 1, value=0.92, label="Top-P")
with gr.Row():
penalty_slider = gr.Slider(1, 2, value=1.2, label="Penalty")
max_tokens = gr.Slider(1, 2048, value=512, step=1, label="Max Tokens")
submit_btn = gr.Button("Generate", variant="primary")
clear_btn = gr.Button("Clear")
with gr.Column():
output_text = gr.Textbox(lines=15, label="Generated Output", interactive=False)
def run_generation(prompt, tokens, temp, top_p, penalty):
if not prompt.strip():
return "ํ๋กฌํํธ๋ฅผ ์
๋ ฅํด์ฃผ์ธ์."
full_prompt = f"Question: {prompt}\nAnswer:"
current_output = ""
for chunk in engine.generate(full_prompt, int(tokens), temp, 40, top_p, penalty):
current_output += chunk
yield current_output
# ๋ฒํผ ํด๋ฆญ ๋ฐ ์ํฐ ํค ์
๋ ฅ ์ด๋ฒคํธ
submit_btn.click(
fn=run_generation,
inputs=[input_text, max_tokens, temp_slider, top_p_slider, penalty_slider],
outputs=output_text
)
clear_btn.click(lambda: ("", ""), outputs=[input_text, output_text])
if __name__ == "__main__":
demo.queue().launch() |