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# Create a clean app.py WITHOUT any file-writing code (fixing the runtime error)

app_py_clean = """import gradio as gr
import numpy as np
import matplotlib.pyplot as plt

# =============================
# Gridworld RL demo (visual + step-by-step)
# =============================

ACTIONS = ["↑", "→", "↓", "←"]
DELTAS = [(-1, 0), (0, 1), (1, 0), (0, -1)]

def clamp(x, lo, hi):
    return max(lo, min(hi, x))

# -----------------------------
# Environment
# -----------------------------
class Gridworld:
    def __init__(self, n=6, step_penalty=-0.01):
        self.n = n
        self.goal = (n - 1, n - 1)
        self.traps = {(n // 2, n // 2)}
        self.step_penalty = float(step_penalty)
        self.reset()

    def reset(self):
        self.pos = (0, 0)
        return self.state()

    def state(self):
        r, c = self.pos
        return r * self.n + c

    def step(self, a):
        dr, dc = DELTAS[a]
        r, c = self.pos
        nr = clamp(r + dr, 0, self.n - 1)
        nc = clamp(c + dc, 0, self.n - 1)
        self.pos = (nr, nc)

        if self.pos == self.goal:
            return self.state(), 1.0, True
        if self.pos in self.traps:
            return self.state(), -1.0, True
        return self.state(), self.step_penalty, False

# -----------------------------
# RL helpers
# -----------------------------
def epsilon_greedy(Q, s, eps):
    if np.random.rand() < eps:
        return int(np.random.randint(Q.shape[1]))
    return int(np.argmax(Q[s]))

# -----------------------------
# Rendering (HTML + plots)
# -----------------------------
def render_grid_html(env):
    n = env.n
    sr, sc = (0, 0)
    gr_, gc_ = env.goal
    ar, ac = env.pos

    def cell(bg, txt, bold=False):
        w = "font-weight:700;" if bold else ""
        return (
            f\"<td style='background:{bg};{w}border:1px solid #ddd;"
            "width:42px;height:42px;text-align:center;font-size:18px'>"
            f\"{txt}</td>\"
        )

    html = ["<table style='border-collapse:collapse'>"]
    for r in range(n):
        html.append("<tr>")
        for c in range(n):
            pos = (r, c)
            if pos == (sr, sc):
                html.append(cell("#dbeafe", "S", True))
            elif pos == (gr_, gc_):
                html.append(cell("#dcfce7", "G", True))
            elif pos in env.traps:
                html.append(cell("#fee2e2", "X", True))
            elif pos == (ar, ac):
                html.append(cell("#fef9c3", "A", True))
            else:
                html.append(cell("#ffffff", "·"))
        html.append("</tr>")
    html.append("</table>")
    return "".join(html)

def render_policy_html(Q, env):
    n = env.n
    sr, sc = (0, 0)
    gr_, gc_ = env.goal

    html = ["<table style='border-collapse:collapse'>"]
    for r in range(n):
        html.append("<tr>")
        for c in range(n):
            pos = (r, c)
            s = r * n + c
            if pos == (sr, sc):
                html.append("<td>S</td>")
            elif pos == (gr_, gc_):
                html.append("<td>G</td>")
            elif pos in env.traps:
                html.append("<td>X</td>")
            else:
                html.append(f"<td>{ACTIONS[int(np.argmax(Q[s]))]}</td>")
        html.append("</tr>")
    html.append("</table>")
    return "".join(html)

def reward_plot(rewards, current=None):
    fig = plt.figure()
    ys = list(rewards)
    if current is not None:
        ys.append(current)
    if ys:
        plt.plot(ys)
        plt.scatter(len(ys) - 1, ys[-1])
    plt.xlabel("Episode")
    plt.ylabel("Total reward")
    plt.tight_layout()
    return fig

# -----------------------------
# State + step-by-step learning
# -----------------------------
def init_state(n=6):
    env = Gridworld(n=n)
    return {
        "env": env,
        "Q": np.zeros((n * n, 4)),
        "epsilon": 0.6,
        "alpha": 0.3,
        "gamma": 0.95,
        "eps_decay": 0.98,
        "episode_reward": 0.0,
        "rewards": [],
        "steps": 0,
        "max_steps": 50,
        "last_info": "Klik op ‘Next step’ om te starten."
    }

def next_step(state):
    env = state["env"]
    Q = state["Q"]

    s = env.state()
    a = epsilon_greedy(Q, s, state["epsilon"])
    s2, r, done = env.step(a)

    td_target = r + (0 if done else state["gamma"] * np.max(Q[s2]))
    td_error = td_target - Q[s, a]
    Q[s, a] += state["alpha"] * td_error

    state["episode_reward"] += r
    state["steps"] += 1

    state["last_info"] = (
        f"State s = {s}\\n"
        f"Action a = {ACTIONS[a]}\\n"
        f"Reward r = {r}\\n"
        f"Next state s' = {s2}\\n\\n"
        f"TD target = {td_target:.3f}\\n"
        f"TD error = {td_error:.3f}\\n\\n"
        f"Q(s,a) = {Q[s, a]:.3f}"
    )

    if done or state["steps"] >= state["max_steps"]:
        state["rewards"].append(state["episode_reward"])
        state["episode_reward"] = 0.0
        state["steps"] = 0
        state["epsilon"] *= state["eps_decay"]
        env.reset()

    return (
        state,
        render_grid_html(env),
        render_policy_html(Q, env),
        reward_plot(state["rewards"], state["episode_reward"]),
        state["last_info"],
    )

# -----------------------------
# UI
# -----------------------------
with gr.Blocks() as demo:
    gr.Markdown(
        \"\"\"
# 🎮 Gridworld Reinforcement Learning (Q-learning)

Klik **Next step** om **één echte reinforcement learning update** te zien.
Je ziet de agent bewegen, de reward oplopen en de Q-waarden veranderen.
\"\"\"
    )

    state = gr.State(init_state())

    grid = gr.HTML(label="Gridworld")
    policy = gr.HTML(label="Policy")
    plot = gr.Plot(label="Reward per episode")
    info = gr.Textbox(label="Wat gebeurt er nu?", lines=10)

    btn = gr.Button("Next step")

    btn.click(
        next_step,
        inputs=state,
        outputs=[state, grid, policy, plot, info],
    )

    demo.load(
        lambda st: (
            st,
            render_grid_html(st["env"]),
            render_policy_html(st["Q"], st["env"]),
            reward_plot(st["rewards"], st["episode_reward"]),
            st["last_info"],
        ),
        inputs=state,
        outputs=[state, grid, policy, plot, info],
    )

demo.launch()
"""

req = "gradio\nnumpy\nmatplotlib\n"

with open("/mnt/data/app.py", "w", encoding="utf-8") as f:
    f.write(app_py_clean)

with open("/mnt/data/requirements.txt", "w", encoding="utf-8") as f:
    f.write(req)

("/mnt/data/app.py", "/mnt/data/requirements.txt")