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import json
import os
import re
import ast
from pathlib import Path

import gradio as gr
import httpx

LANGUAGES = ["Python", "JavaScript", "TypeScript", "Rust", "Go", "C++"]


def load_local_env() -> None:
    env_path = Path(".env")
    if not env_path.exists():
        return

    for line in env_path.read_text(encoding="utf-8").splitlines():
        if not line or line.startswith("#") or "=" not in line:
            continue
        key, value = line.split("=", 1)
        os.environ.setdefault(key.strip(), value.strip())


load_local_env()
MODAL_VERIFIER_URL = os.environ.get("MODAL_VERIFIER_URL")
MODAL_SANDBOX_URL = os.environ.get("MODAL_SANDBOX_URL")
os.environ.setdefault("GRADIO_ANALYTICS_ENABLED", "False")


def load_static(filename: str) -> str:
    return Path("static", filename).read_text(encoding="utf-8")


def endpoint_url(url: str | None, path: str) -> str | None:
    if not url:
        return None
    clean = url.rstrip("/")
    if clean.endswith(path):
        return clean
    return f"{clean}{path}"


custom_html = f"""
<div id="split-brain-root">
    <div class="brain-rail" aria-label="Split-brain architecture">
        <div class="brain-node local-node">
            <span class="brain-label">Local Draft</span>
            <strong>WebGPU 1.5B</strong>
            <small>fast browser stream</small>
        </div>
        <div class="brain-pulse" aria-hidden="true">
            <span></span>
            <span></span>
            <span></span>
        </div>
        <div class="brain-node cloud-node">
            <span class="brain-label">Cloud Check</span>
            <strong>Modal A10G 14B</strong>
            <small>llama.cpp verifier</small>
        </div>
    </div>
    <div class="webgpu-notice" id="webgpu-warning" hidden>
        WebGPU not detected. Use Chrome 113+ on desktop for local inference.
    </div>
    <div id="load-section" class="load-section">
        <button id="load-btn" class="local-button" onclick="window.initEngine()">Load 1.5B Model</button>
        <div class="loading-bar"><div class="loading-bar-fill" id="load-progress"></div></div>
        <span id="load-status" class="load-status">Model not loaded</span>
    </div>
    <div class="stream-shell">
        <div class="stream-toolbar">
            <span>Speculative draft</span>
            <span id="stream-phase">Idle</span>
        </div>
        <pre id="stream-display" class="code-stream">Waiting for model load...</pre>
    </div>
    <div class="status-bar">
        <span id="status-text">Idle</span>
        <span id="token-count">0 tok/s</span>
        <span id="verifier-status">Verifier idle</span>
    </div>
</div>
<script type="module">
{load_static("engine.js")}
{load_static("ui.js")}

const warning = document.getElementById("webgpu-warning");
const loadButton = document.getElementById("load-btn");

function formatBrowserError(error) {{
    if (!error) return "unknown error";
    if (error.message) return error.message;
    if (typeof error === "string") return error;
    try {{
        return JSON.stringify(error);
    }} catch (_err) {{
        return String(error);
    }}
}}

function findGradioInput(id) {{
    const root = document.getElementById(id);
    if (!root) return null;
    if (root.matches("input, textarea")) return root;
    return root.querySelector("input, textarea");
}}

function findGradioButton(id) {{
    const root = document.getElementById(id);
    if (!root) return null;
    if (root.matches("button")) return root;
    return root.querySelector("button");
}}

function cleanGeneratedCode(code) {{
    if (!code) return "";
    return stripMarkdownCodeFence(code);
}}

if (!isWebGPUSupported()) {{
    warning.hidden = false;
    loadButton.disabled = true;
    setStatus("Chrome 113+ with WebGPU required", "warning");
}}

window.initEngine = async function() {{
    loadButton.disabled = true;
    document.getElementById("load-status").textContent = "Loading model weights...";
    try {{
        await loadModel((progress) => {{
            if (progress.status === "attempt") {{
                document.getElementById("load-status").textContent = `Trying ${{progress.dtype}} WebGPU weights...`;
                return;
            }}
            const value = progress.progress ? Math.round(progress.progress) : 0;
            document.getElementById("load-progress").style.width = `${{value}}%`;
            if (progress.file) {{
                document.getElementById("load-status").textContent = `${{progress.file}} (${{progress.dtype || "auto"}}) - ${{value}}%`;
            }}
        }});
        document.getElementById("load-progress").style.width = "100%";
        document.getElementById("load-status").textContent = `Model ready - WebGPU active (${{getActiveDtype() || "auto"}})`;
        document.getElementById("load-section").classList.add("loaded");
        setStatus("Ready", "success");
    }} catch (error) {{
        console.error("Model load failed", error);
        loadButton.disabled = false;
        setStatus(`Model load failed: ${{formatBrowserError(error)}}`, "warning");
        document.getElementById("load-status").textContent = "Load failed";
    }}
}};

window.runLocalGeneration = async function(prompt, language) {{
    if (!prompt || !prompt.trim()) {{
        setStatus("Enter a prompt first", "warning");
        return [];
    }}

    reset();
    setVerifierStatus("IDLE");
    setStatus("Generating locally (WebGPU)...", "neutral");

    let tokenCount = 0;
    const startTime = Date.now();

    try {{
        const fullCode = await generateCode(
            prompt,
            language,
            (token) => {{
                appendToken(token);
                tokenCount += 1;
                const elapsed = Math.max((Date.now() - startTime) / 1000, 0.1);
                document.getElementById("token-count").textContent = `${{Math.round(tokenCount / elapsed)}} tok/s`;
            }},
            () => {{
                setStatus("Local generation complete. Verifier warming up...", "neutral");
                setVerifierStatus("CHECKING");
            }}
        );
        const cleanCode = cleanGeneratedCode(fullCode);
        if (cleanCode !== getCurrentCode()) {{
            setCode(cleanCode);
        }}

        const hidden = findGradioInput("draft-output-hidden");
        const trigger = findGradioButton("trigger-verify-btn");
        if (!hidden || !trigger) {{
            setStatus("Gradio verification bridge not ready", "warning");
            return [];
        }}

        hidden.value = cleanCode;
        hidden.dispatchEvent(new Event("input", {{ bubbles: true }}));
        trigger.click();
    }} catch (error) {{
        setStatus(`Generation failed: ${{error.message}}`, "warning");
    }}
    return [];
}};

window.applyVerification = function(verdictJson) {{
    if (!verdictJson) return [];
    let verdict;
    try {{
        verdict = JSON.parse(verdictJson);
    }} catch (error) {{
        setStatus("Verifier returned invalid JSON", "warning");
        return [];
    }}

    if (verdict.verdict === "PASS") {{
        setVerifierStatus("PASS");
        setStatus("Verified clean", "success");
    }} else if (verdict.verdict === "ERROR") {{
        setVerifierStatus("ERROR");
        setStatus(`Verifier failed: ${{verdict.reason || "unknown error"}}`, "warning");
    }} else {{
        verdict.corrected_code = cleanGeneratedCode(verdict.corrected_code || "");
        rollbackAndReplace(verdict.corrected_code, verdict.reason || "Verifier supplied a correction", verdict.verdict);
    }}
    return [];
}};
</script>
"""


async def verify_with_modal(prompt: str, draft_code: str, language: str) -> str:
    draft_code = strip_markdown_code_fence(draft_code)
    verifier_url = endpoint_url(MODAL_VERIFIER_URL, "/verify")
    if not verifier_url:
        return json.dumps(
            {
                "verdict": "PASS",
                "reason": "MODAL_VERIFIER_URL is not configured; local demo fallback used.",
            }
        )

    try:
        async with httpx.AsyncClient(timeout=180.0) as client:
            response = await client.post(
                verifier_url,
                json={"prompt": prompt, "draft_code": draft_code, "language": language.lower()},
            )
            response.raise_for_status()
            return response.text
    except Exception as exc:
        return json.dumps({"verdict": "ERROR", "reason": str(exc)})


async def execute_in_sandbox(code: str) -> dict:
    code = strip_markdown_code_fence(code)
    sandbox_url = endpoint_url(MODAL_SANDBOX_URL, "/execute")
    if not sandbox_url:
        return {"stdout": "", "stderr": "Sandbox not configured", "returncode": -1}

    async with httpx.AsyncClient(timeout=30.0) as client:
        response = await client.post(sandbox_url, json={"code": code})
        response.raise_for_status()
        return response.json()


def code_from_verdict(draft_code: str, verdict_json: str) -> str:
    draft_code = strip_markdown_code_fence(draft_code)
    if not verdict_json:
        return draft_code
    try:
        verdict = json.loads(verdict_json)
    except json.JSONDecodeError:
        return draft_code
    return strip_markdown_code_fence(verdict.get("corrected_code") or draft_code)


def strip_markdown_code_fence(code: str) -> str:
    text = (code or "").strip()
    if not text:
        return ""

    opening_fence = re.match(r"^```(?:[a-zA-Z0-9_+#.-]+)?\s*\n?", text)
    if opening_fence:
        text = text[opening_fence.end() :]
        closing_index = text.find("```")
        if closing_index >= 0:
            text = text[:closing_index]
    else:
        first_fence = text.find("```")
        if first_fence >= 0:
            text = text[:first_fence]

    return trim_markdown_explanation(text)


def trim_markdown_explanation(text: str) -> str:
    explanation = re.compile(
        r"^\s*(?:[-*]\s+|\d+\.\s+|#{1,6}\s+|Explanation\s*:|Steps\s*:|Notes?\s*:|The code\b|This code\b)",
        re.IGNORECASE,
    )
    kept = []
    for line in text.splitlines():
        if explanation.match(line):
            break
        kept.append(line)
    return "\n".join(kept).strip()


async def run_sandbox(language: str, draft_code: str, verdict_json: str) -> str:
    if language.lower() != "python":
        return "Sandbox execution is currently wired for Python only."

    code = prepare_python_for_sandbox(code_from_verdict(draft_code, verdict_json))
    if not code.strip():
        return "No generated code is available yet."

    result = await execute_in_sandbox(code)
    stdout = result.get("stdout", "")
    stderr = result.get("stderr", "")
    returncode = result.get("returncode", "")
    return "\n".join(
        [
            f"returncode: {returncode}",
            "",
            "stdout:",
            stdout or "<empty>",
            "",
            "stderr:",
            stderr or "<empty>",
        ]
    )


def prepare_python_for_sandbox(code: str) -> str:
    code = strip_markdown_code_fence(code)
    try:
        tree = ast.parse(code)
    except SyntaxError:
        return code

    executable_nodes = (
        ast.Assign,
        ast.AugAssign,
        ast.AnnAssign,
        ast.Assert,
        ast.Delete,
        ast.Expr,
        ast.For,
        ast.AsyncFor,
        ast.While,
        ast.If,
        ast.Match,
        ast.Raise,
        ast.Return,
        ast.Try,
        ast.With,
        ast.AsyncWith,
    )
    has_top_level_execution = any(isinstance(node, executable_nodes) for node in tree.body)
    if has_top_level_execution:
        return code

    for node in tree.body:
        if isinstance(node, ast.FunctionDef) and function_has_no_required_args(node):
            return f'{code}\n\nif __name__ == "__main__":\n    {node.name}()\n'

    return code


def function_has_no_required_args(node: ast.FunctionDef) -> bool:
    args = node.args
    positional = [*args.posonlyargs, *args.args]
    required_positional = len(positional) - len(args.defaults)
    required_kwonly = sum(
        1 for arg, default in zip(args.kwonlyargs, args.kw_defaults) if default is None
    )
    return required_positional == 0 and required_kwonly == 0


with gr.Blocks(
    title="Split-Brain Co-Pilot",
    css=load_static("style.css"),
    theme=gr.themes.Base(primary_hue="blue", neutral_hue="slate"),
) as demo:
    gr.HTML(
        """
        <section class="app-header">
            <p class="eyebrow">Build Small Hackathon · 15.5B parameters total</p>
            <h1>Split-Brain Co-Pilot</h1>
            <p>One small model drafts in your browser. Another small model checks it on Modal. The UI shows the handoff, verdict, rollback, and executable proof.</p>
            <div class="badge-row" aria-label="Project badges">
                <span>WebGPU local-first</span>
                <span>llama.cpp verifier</span>
                <span>Modal sandbox</span>
                <span>Custom Gradio UI</span>
            </div>
        </section>
        <div class="space-init" id="space-init">Space initializing...</div>
        <script>
            requestAnimationFrame(() => {
                const el = document.getElementById("space-init");
                if (el) el.hidden = true;
            });
        </script>
        """
    )

    with gr.Row(equal_height=False):
        with gr.Column(scale=2, min_width=320):
            prompt_input = gr.Textbox(
                label="Prompt",
                placeholder="Write a Python function that finds all prime numbers up to n using a segmented sieve, handling edge cases.",
                lines=6,
            )
            language_select = gr.Dropdown(choices=LANGUAGES, value="Python", label="Language")
            generate_btn = gr.Button("Generate -> Verify", variant="primary")
        with gr.Column(scale=3, min_width=420):
            gr.HTML(custom_html)
            draft_hidden = gr.Textbox(
                label="draft bridge",
                elem_id="draft-output-hidden",
                elem_classes=["bridge-hidden"],
            )
            verify_trigger = gr.Button(
                "verify",
                elem_id="trigger-verify-btn",
                elem_classes=["bridge-hidden"],
            )
            verdict_output = gr.Textbox(
                label="verdict",
                elem_classes=["bridge-hidden"],
            )

    with gr.Row():
        sandbox_btn = gr.Button("Run Python Sandbox", variant="secondary")
    sandbox_output = gr.Code(label="Sandbox Execution Output", language="shell")

    generate_btn.click(
        fn=None,
        inputs=[prompt_input, language_select],
        outputs=[],
        js="(prompt, lang) => window.runLocalGeneration(prompt, lang)",
    )

    async def run_verification(prompt: str, draft_code: str, language: str) -> str:
        return await verify_with_modal(prompt, draft_code, language)

    verify_trigger.click(
        fn=run_verification,
        inputs=[prompt_input, draft_hidden, language_select],
        outputs=[verdict_output],
    )

    verdict_output.change(
        fn=None,
        inputs=[verdict_output],
        outputs=[],
        js="(verdict) => window.applyVerification(verdict)",
    )

    sandbox_btn.click(
        fn=run_sandbox,
        inputs=[language_select, draft_hidden, verdict_output],
        outputs=[sandbox_output],
    )


if __name__ == "__main__":
    demo.launch(
        server_name=os.environ.get("GRADIO_SERVER_NAME", "127.0.0.1"),
        server_port=int(os.environ.get("GRADIO_SERVER_PORT", "7860")),
        show_api=False,
    )