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app.py β Enhanced Open Computer Agent v2.0
==========================================
Powered by smolagents + E2B + Playwright + Multi-Model Router + Memory + SoM + Voice
"""
import os
import json
import time
import uuid
import shutil
import base64
from io import BytesIO
from threading import Timer
from typing import Any, Dict, List, Optional, Generator
from datetime import datetime
import gradio as gr
from dotenv import load_dotenv
from e2b_desktop import Sandbox
from huggingface_hub import login, upload_folder
from PIL import Image
from smolagents import CodeAgent
from smolagents.gradio_ui import GradioUI, stream_to_gradio
try:
from gradio_modal import Modal
HAS_GRADIO_MODAL = True
except ImportError:
HAS_GRADIO_MODAL = False
Modal = None
# Our enhanced modules
from core_agent import (
AgentConfig,
IntelligenceRouter,
HierarchicalPlanner,
VerifierAgent,
AgentMemory,
SoMPreprocessor,
SessionRecorder,
HITLCheckpoint,
CostTracker,
ModelCall,
Subtask,
)
from mcp_tools import (
BrowserMCP,
CodeExecutionMCP,
FileSystemMCP,
HFHubMCP,
make_browser_tools,
make_code_tools,
make_fs_tools,
make_hf_tools,
)
from voice_interface import VoiceInterface
from eval_harness import EvaluationHarness, DEFAULT_BENCHMARKS
load_dotenv(override=True)
# =============================================================================
# Config & Globals
# =============================================================================
E2B_API_KEY = os.getenv("E2B_API_KEY")
SANDBOXES: Dict[str, Sandbox] = {}
SANDBOX_METADATA: Dict[str, Dict[str, float]] = {}
SANDBOX_TIMEOUT = 600
WIDTH = 1024
HEIGHT = 768
TMP_DIR = "./tmp/"
os.makedirs(TMP_DIR, exist_ok=True)
hf_token = os.getenv("HF_TOKEN") or os.getenv("HUGGINGFACE_API_KEY")
if hf_token:
login(token=hf_token)
# Global enhanced components (lazy init per session)
SESSION_COMPONENTS: Dict[str, Dict[str, Any]] = {}
ACTIVE_AGENTS: Dict[str, Any] = {} # session_uuid -> agent for interrupt
# UI warnings collected at import time
STARTUP_WARNINGS: List[str] = []
if not E2B_API_KEY:
STARTUP_WARNINGS.append("β οΈ E2B_API_KEY not set. Desktop automation will be unavailable.")
if not hf_token:
STARTUP_WARNINGS.append("β οΈ HF_TOKEN not set. Model inference and Hub tools may be limited.")
# =============================================================================
# CSS & HTML Templates
# =============================================================================
custom_css = """
.modal-container { margin: var(--size-16) auto !important; }
.sandbox-container { position: relative; width: 910px; overflow: hidden; margin: auto; height: 800px; }
.sandbox-frame { display: none; position: absolute; top: 0; left: 0; width: 910px; height: 800px; pointer-events: none; }
.sandbox-iframe, .bsod-image { position: absolute; width: <<WIDTH>>px; height: <<HEIGHT>>px; border: 4px solid #444444; transform-origin: 0 0; }
.primary-color-label label span { font-weight: bold; color: var(--color-accent); }
.status-bar { display: flex; flex-direction: row; align-items: center; z-index: 100; }
.status-indicator { width: 15px; height: 15px; border-radius: 50%; }
.status-text { font-size: 16px; font-weight: bold; padding-left: 8px; text-shadow: none; }
.status-interactive { background-color: #2ecc71; animation: blink 2s infinite; }
.status-view-only { background-color: #e74c3c; }
.status-error { background-color: #e74c3c; animation: blink-error 1s infinite; }
@keyframes blink-error { 0% { background-color: rgba(231, 76, 60, 1); } 50% { background-color: rgba(231, 76, 60, 0.4); } 100% { background-color: rgba(231, 76, 60, 1); } }
@keyframes blink { 0% { background-color: rgba(46, 204, 113, 1); } 50% { background-color: rgba(46, 204, 113, 0.4); } 100% { background-color: rgba(46, 204, 113, 1); } }
#chatbot { height: 1000px !important; }
#chatbot .role { max-width: 95%; }
#chatbot .bubble-wrap { overflow-y: visible; }
.logo-container { display: flex; flex-direction: column; align-items: flex-start; width: 100%; box-sizing: border-box; gap: 5px; }
.logo-item { display: flex; align-items: center; padding: 0 30px; gap: 10px; text-decoration: none !important; color: #f59e0b; font-size: 17px; }
.logo-item:hover { color: #935f06 !important; }
.thought-stream { font-family: monospace; font-size: 13px; background: #1a1a2e; color: #a0c4ff; padding: 10px; border-radius: 8px; max-height: 300px; overflow-y: auto; white-space: pre-wrap; }
.plan-checklist { background: #16213e; padding: 10px; border-radius: 8px; }
.plan-checklist li { list-style: none; margin: 4px 0; }
.plan-checklist li.done::before { content: "β
"; }
.plan-checklist li.pending::before { content: "β¬ "; }
.plan-checklist li.running::before { content: "π "; }
.plan-checklist li.failed::before { content: "β "; }
.cost-badge { font-family: monospace; background: #0f3460; color: #e94560; padding: 4px 8px; border-radius: 4px; font-size: 12px; }
""".replace("<<WIDTH>>", str(WIDTH + 15)).replace("<<HEIGHT>>", str(HEIGHT + 10))
footer_html = """
<h3 style="text-align: center; margin-top:50px;"><i>Powered by open source:</i></h2>
<link rel="stylesheet" href="https://cdnjs.cloudflare.com/ajax/libs/font-awesome/4.7.0/css/font-awesome.min.css">
<div class="logo-container">
<a class="logo-item" href="https://github.com/huggingface/smolagents"><i class="fa fa-github"></i>smolagents</a>
<a class="logo-item" href="https://huggingface.co/Qwen/Qwen2.5-VL-72B-Instruct"><i class="fa fa-github"></i>Qwen2.5-VL</a>
<a class="logo-item" href="https://github.com/e2b-dev/desktop"><i class="fa fa-github"></i>E2B Desktop</a>
<a class="logo-item" href="https://playwright.dev"><i class="fa fa-github"></i>Playwright</a>
</div>
"""
sandbox_html_template = """
<style>@import url('https://fonts.googleapis.com/css2?family=Oxanium:wght@200..800&display=swap');</style>
<h1 style="color:var(--color-accent);margin:0;">Open Computer Agent v2.0 β <i>Enhanced</i></h1>
<div class="sandbox-container" style="margin:0;">
<div class="status-bar">
<div class="status-indicator {status_class}"></div>
<div class="status-text">{status_text}</div>
</div>
<iframe id="sandbox-iframe" src="{stream_url}" class="sandbox-iframe" style="display:block;" allowfullscreen></iframe>
<img src="https://huggingface.co/datasets/mfarre/servedfiles/resolve/main/blue_screen_of_death.gif" class="bsod-image" style="display:none;"/>
<img src="https://huggingface.co/datasets/m-ric/images/resolve/main/HUD_thom.png" class="sandbox-frame" />
</div>
"""
custom_js = """function() {
document.body.classList.add('dark');
const checkSandboxTimeout = function() {
const timeElement = document.getElementById('sandbox-creation-time');
if (timeElement) {
const creationTime = parseFloat(timeElement.getAttribute('data-time'));
const timeoutValue = parseFloat(timeElement.getAttribute('data-timeout'));
const currentTime = Math.floor(Date.now() / 1000);
const elapsedTime = currentTime - creationTime;
if (elapsedTime >= timeoutValue) { showBSOD('Error'); return; }
}
setTimeout(checkSandboxTimeout, 5000);
};
const showBSOD = function(statusText = 'Error') {
const iframe = document.getElementById('sandbox-iframe');
const bsod = document.querySelector('.bsod-image');
if (iframe && bsod) { iframe.style.display = 'none'; bsod.style.display = 'block'; }
};
const resetBSOD = function() {
const iframe = document.getElementById('sandbox-iframe');
const bsod = document.querySelector('.bsod-image');
if (iframe && bsod && bsod.style.display === 'block') {
iframe.style.display = 'block'; bsod.style.display = 'none'; return true;
}
return false;
};
checkSandboxTimeout();
document.addEventListener('click', function(e) {
if (e.target.tagName === 'BUTTON') {
if (e.target.innerText.includes("Let's go") || e.target.innerText.includes("Run")) { resetBSOD(); }
}
});
const params = new URLSearchParams(window.location.search);
if (!params.has('__theme')) { params.set('__theme', 'dark'); window.location.search = params.toString(); }
}"""
# =============================================================================
# Sandbox Lifecycle
# =============================================================================
def upload_to_hf_and_remove(folder_path: str) -> str:
repo_id = "smolagents/computer-agent-logs"
try:
folder_name = os.path.basename(os.path.normpath(folder_path))
url = upload_folder(
folder_path=folder_path, repo_id=repo_id, repo_type="dataset",
path_in_repo=folder_name, ignore_patterns=[".git/*", ".gitignore"],
)
shutil.rmtree(folder_path)
return url
except Exception as e:
print(f"Upload error: {e}")
return ""
def cleanup_sandboxes() -> None:
current_time = time.time()
to_remove = [sid for sid, meta in SANDBOX_METADATA.items() if current_time - meta["last_accessed"] > SANDBOX_TIMEOUT]
for sid in to_remove:
if sid in SANDBOXES:
try:
data_dir = os.path.join(TMP_DIR, sid)
if os.path.exists(data_dir):
upload_to_hf_and_remove(data_dir)
SANDBOXES[sid].kill()
del SANDBOXES[sid]
del SANDBOX_METADATA[sid]
print(f"Cleaned up sandbox {sid}")
except Exception as e:
print(f"Cleanup error for {sid}: {e}")
def get_or_create_sandbox(session_uuid: str) -> Optional[Sandbox]:
if not E2B_API_KEY:
return None
current_time = time.time()
if session_uuid in SANDBOXES and session_uuid in SANDBOX_METADATA:
if current_time - SANDBOX_METADATA[session_uuid]["created_at"] < SANDBOX_TIMEOUT:
SANDBOX_METADATA[session_uuid]["last_accessed"] = current_time
return SANDBOXES[session_uuid]
if session_uuid in SANDBOXES:
try:
SANDBOXES[session_uuid].kill()
except Exception:
pass
desktop = Sandbox(
api_key=E2B_API_KEY, resolution=(WIDTH, HEIGHT), dpi=96,
timeout=SANDBOX_TIMEOUT, template="k0wmnzir0zuzye6dndlw",
)
desktop.stream.start(require_auth=True)
setup_cmd = """sudo mkdir -p /usr/lib/firefox-esr/distribution && echo '{"policies":{"OverrideFirstRunPage":"","OverridePostUpdatePage":"","DisableProfileImport":true,"DontCheckDefaultBrowser":true}}' | sudo tee /usr/lib/firefox-esr/distribution/policies.json > /dev/null"""
desktop.commands.run(setup_cmd)
SANDBOXES[session_uuid] = desktop
SANDBOX_METADATA[session_uuid] = {"created_at": current_time, "last_accessed": current_time}
return desktop
def update_html(interactive_mode: bool, session_uuid: str) -> str:
desktop = get_or_create_sandbox(session_uuid)
if desktop is None:
no_key_html = (
'<div style="padding:20px; background:#1a1a2e; color:#e94560; border-radius:8px; text-align:center;">'
'<h3>π E2B_API_KEY Required</h3>'
'<p>Desktop automation is unavailable because <code>E2B_API_KEY</code> is not configured.</p>'
'<p>Please add it in <b>Space Settings β Secrets</b> and restart the Space.</p>'
'</div>'
)
return no_key_html
auth_key = desktop.stream.get_auth_key()
base_url = desktop.stream.get_url(auth_key=auth_key)
stream_url = base_url if interactive_mode else f"{base_url}&view_only=true"
status_class = "status-interactive" if interactive_mode else "status-view-only"
status_text = "Interactive" if interactive_mode else "Agent running..."
creation_time = SANDBOX_METADATA.get(session_uuid, {}).get("created_at", time.time())
html = sandbox_html_template.format(
stream_url=stream_url, status_class=status_class, status_text=status_text,
)
html += f'<div id="sandbox-creation-time" style="display:none;" data-time="{creation_time}" data-timeout="{SANDBOX_TIMEOUT}"></div>'
return html
# =============================================================================
# Enhanced Agent Factory
# =============================================================================
def build_session_components(session_uuid: str, data_dir: str) -> Dict[str, Any]:
"""Initialize all enhanced components for a session."""
cfg = AgentConfig(hf_token=hf_token, cost_budget_usd=2.0)
# Core intelligence
router = IntelligenceRouter(hf_token=hf_token)
planner = HierarchicalPlanner(router)
verifier = VerifierAgent(router)
memory = AgentMemory(persist_dir=f"./memory_db/{session_uuid}")
som = SoMPreprocessor(use_icon_detection=False)
hitl = HITLCheckpoint(auto_approve=False)
tracker = CostTracker()
recorder = SessionRecorder(session_uuid, output_dir=data_dir)
voice = VoiceInterface(hf_token=hf_token)
# MCP tools
try:
browser_mcp = BrowserMCP(headless=True)
except Exception:
browser_mcp = None
try:
code_mcp = CodeExecutionMCP(api_key=E2B_API_KEY)
except Exception:
code_mcp = None
fs_mcp = FileSystemMCP(base_dir=data_dir)
try:
hf_mcp = HFHubMCP(token=hf_token)
except Exception:
hf_mcp = None
components = {
"config": cfg,
"router": router,
"planner": planner,
"verifier": verifier,
"memory": memory,
"som": som,
"hitl": hitl,
"tracker": tracker,
"recorder": recorder,
"voice": voice,
"browser_mcp": browser_mcp,
"code_mcp": code_mcp,
"fs_mcp": fs_mcp,
"hf_mcp": hf_mcp,
}
SESSION_COMPONENTS[session_uuid] = components
return components
# =============================================================================
# Streaming Agent Runner with Plan + Thought Visibility
# =============================================================================
def run_enhanced_agent(
task_input: str,
session_uuid: str,
use_planner: bool = True,
use_verifier: bool = True,
use_som: bool = False,
use_browser_mcp: bool = True,
consent_storage: bool = True,
) -> Generator[Any, None, None]:
"""Yields (chat_messages, plan_markdown, cost_html) tuples."""
# Early guard for missing E2B key
if not E2B_API_KEY:
yield [
{"role": "user", "content": task_input},
{"role": "assistant", "content": (
"π **Desktop automation unavailable**\n\n"
"The agent needs an **E2B_API_KEY** to launch a sandboxed desktop.\n\n"
"**How to fix:**\n"
"1. Go to [e2b.dev](https://e2b.dev) and create a free API key\n"
"2. Open this Space's **Settings β Secrets** tab\n"
"3. Add a secret with name `E2B_API_KEY` and your key as the value\n"
"4. Restart the Space (Factory Rebuild)\n\n"
"Once configured, the agent can browse, click, type, and run code in a real desktop environment."
)},
], "*No plan β E2B key missing*", '<span class="cost-badge">Cost: $0.0000 / $2.00</span>'
return
try:
interaction_id = f"{session_uuid}_{int(time.time())}"
data_dir = os.path.join(TMP_DIR, interaction_id)
os.makedirs(data_dir, exist_ok=True)
desktop = get_or_create_sandbox(session_uuid)
if desktop is None:
yield [{"role": "assistant", "content": "π₯ Failed to initialize E2B sandbox. Please check E2B_API_KEY and try again."}], "*Sandbox failed*", '<span class="cost-badge">Cost: $0.0000 / $2.00</span>'
return
comps = build_session_components(session_uuid, data_dir)
tracker: CostTracker = comps["tracker"]
recorder: SessionRecorder = comps["recorder"]
planner: HierarchicalPlanner = comps["planner"]
verifier: VerifierAgent = comps["verifier"]
memory: AgentMemory = comps["memory"]
hitl: HITLCheckpoint = comps["hitl"]
router: IntelligenceRouter = comps["router"]
som: SoMPreprocessor = comps["som"]
browser_mcp: BrowserMCP = comps["browser_mcp"]
tracker.start_task(interaction_id)
plan_md: str = "*Plan will appear here...*"
cost_html: str = '<span class="cost-badge">Cost: $0.0000 / $2.00</span>'
messages: List[Any] = []
messages.append({"role": "user", "content": task_input})
yield messages.copy(), plan_md, cost_html
# ---- PLANNING PHASE ----
plan = None
if use_planner:
messages.append({
"role": "assistant",
"content": f"π§ **Planning...** Breaking down: *{task_input}*",
})
yield messages.copy(), plan_md, cost_html, plan_md, cost_html
# Retrieve similar past tasks
similar = memory.retrieve_similar(task_input, n_results=2)
context = ""
if similar:
context = "Previous successful strategies:\n" + "\n".join(
f"- {s.get('strategy_summary', '')}" for s in similar
)
plan = planner.plan(task_input, context=context)
plan_md = "π **Plan**\n"
for st in plan.subtasks:
plan_md += f"- β¬ [{st.strategy}] {st.description}\n"
messages.append({"role": "assistant", "content": plan_md})
yield messages.copy(), plan_md, cost_html, plan_md, cost_html
# ---- EXECUTION PHASE ----
# Bridge E2BVisionAgent with our IntelligenceRouter for multi-model support.
from e2bqwen import E2BVisionAgent
# Use the IntelligenceRouter (already initialized) as the vision model.
# It auto-selects the cheapest capable model and tracks cost.
vision_model = router
agent = E2BVisionAgent(
model=vision_model,
data_dir=data_dir,
desktop=desktop,
max_steps=100,
verbosity_level=2,
use_v1_prompt=True,
)
ACTIVE_AGENTS[session_uuid] = agent
# Inject MCP browser tools if enabled
if use_browser_mcp:
try:
browser_mcp.start()
mcp_tools = make_browser_tools(browser_mcp)
# Merge into agent.tools
for name, fn in mcp_tools.items():
agent.tools[name] = fn
messages.append({
"role": "assistant",
"content": "π **Playwright MCP connected.** Browser automation ready.",
})
yield messages.copy(), plan_md, cost_html, plan_md, cost_html
except Exception as e:
messages.append({
"role": "assistant",
"content": f"β οΈ Playwright MCP unavailable: {e}. Using vision-only fallback.",
})
yield messages.copy(), plan_md, cost_html, plan_md, cost_html
# Inject HF Hub tools
try:
hf_tools = make_hf_tools(comps["hf_mcp"])
for name, fn in hf_tools.items():
agent.tools[name] = fn
except Exception:
pass
# Take initial screenshot
screenshot_bytes = desktop.screenshot(format="bytes")
initial_screenshot = Image.open(BytesIO(screenshot_bytes))
# SoM preprocessing on initial screenshot (optional)
if use_som:
annotated, registry = som.preprocess(initial_screenshot)
annotated_path = os.path.join(data_dir, "som_initial.png")
annotated.save(annotated_path)
messages.append({
"role": "assistant",
"content": {"path": annotated_path, "mime_type": "image/png"},
})
yield messages.copy(), plan_md, cost_html, plan_md, cost_html
# Execute task with streaming
step_count = 0
try:
for msg in stream_to_gradio(
agent, task=task_input, task_images=[initial_screenshot], reset_agent_memory=False,
):
step_count += 1
# Thought streaming: inject router cost status
if step_count % 5 == 0:
cost_report = router.get_cost_report()
cost_text = f"π° Cost: ${cost_report['spent_usd']:.4f} / ${cost_report['budget_usd']:.2f} | Calls: {cost_report['calls']}"
messages.append({"role": "assistant", "content": cost_text})
# Sync to tracker
tracker.tasks[interaction_id] = [ModelCall(model_id='sync', cost_usd=cost_report['spent_usd'])]
cost_html = f'<span class="cost-badge">Cost: ${cost_report["spent_usd"]:.4f} / ${cost_report["budget_usd"]:.2f}</span>'
yield messages.copy(), plan_md, cost_html, plan_md, cost_html
# Append screenshots
if hasattr(agent, "last_marked_screenshot") and getattr(msg, "content", None) == "-----":
try:
img = agent.last_marked_screenshot
img_path = getattr(img, "path", str(img))
messages.append({
"role": "assistant",
"content": {"path": img_path, "mime_type": "image/png"},
})
except Exception:
pass
# Convert smolagents message to dict if needed
if hasattr(msg, "role") and hasattr(msg, "content"):
messages.append({"role": msg.role, "content": msg.content})
else:
messages.append({"role": "assistant", "content": str(msg)})
yield messages.copy(), plan_md, cost_html, plan_md, cost_html
# HITL check every step
if hasattr(agent, "memory") and agent.memory.steps:
last_step = agent.memory.steps[-1]
if hasattr(last_step, "tool_calls") and last_step.tool_calls:
action_str = str(last_step.tool_calls[0])
approved, reason = hitl.check_action(action_str)
if not approved:
messages.append({
"role": "assistant",
"content": f"π **HITL Checkpoint:** {reason}\nPlease approve or modify the action.",
})
yield messages.copy(), plan_md, cost_html, plan_md, cost_html
# In a real implementation we'd pause here for user input
# For now, auto-continue after logging
time.sleep(0.5)
# ---- VERIFICATION PHASE ----
if use_verifier and plan:
messages.append({"role": "assistant", "content": "π **Verifying task completion...**"})
yield messages.copy(), plan_md, cost_html, plan_md, cost_html
final_screenshot_bytes = desktop.screenshot(format="bytes")
final_screenshot = Image.open(BytesIO(final_screenshot_bytes))
trace = [str(s) for s in agent.memory.steps[-20:]]
for st in plan.subtasks:
result = verifier.verify(st, trace, final_screenshot)
status_icon = "β
" if result.get("success") else "β"
messages.append({
"role": "assistant",
"content": f"{status_icon} **{st.description}** β {result.get('reason', '')}",
})
yield messages.copy(), plan_md, cost_html, plan_md, cost_html
# Final summary
final_output = agent.memory.steps[-1].observations if agent.memory.steps else "Task completed."
memory.add_task(
task=task_input,
strategy_summary=f"Completed in {step_count} steps. Final: {str(final_output)[:200]}",
success=True,
domain=plan.subtasks[0].strategy if plan and plan.subtasks else "general",
)
# Cost report
report = tracker.get_task_report(interaction_id)
# Sync router history into tracker
for call in router.call_history:
tracker.log_call(interaction_id, call)
cost_summary = (
f"π **Task Complete**\n"
f"- Steps: {step_count}\n"
f"- Cost: ${report['total_cost_usd']:.4f}\n"
f"- Tokens: {report['total_tokens']}\n"
f"- Avg latency: {report['avg_latency_ms']}ms"
)
messages.append({"role": "assistant", "content": cost_summary})
cost_html = f'<span class="cost-badge">Cost: ${report["total_cost_usd"]:.4f} / $2.00</span>'
yield messages.copy(), plan_md, cost_html, plan_md, cost_html
if consent_storage:
from e2bqwen import get_agent_summary_erase_images
summary = get_agent_summary_erase_images(agent)
with open(os.path.join(data_dir, "metadata.json"), "w") as f:
json.dump({"status": "completed", "summary": summary, "cost_report": report}, f, default=str)
upload_to_hf_and_remove(data_dir)
except Exception as e:
error_msg = f"Error: {str(e)}"
messages.append({"role": "assistant", "content": f"π₯ **Run failed:**\n{error_msg}"})
total_cost = sum(
c.cost_usd for calls in tracker.tasks.values() for c in calls
)
cost_html = f'<span class="cost-badge">Cost: ${total_cost:.4f} / $2.00</span>'
yield messages.copy(), plan_md, cost_html, plan_md, cost_html
if consent_storage:
with open(os.path.join(data_dir, "metadata.json"), "w") as f:
json.dump({"status": "failed", "error": error_msg}, f)
upload_to_hf_and_remove(data_dir)
finally:
try:
if browser_mcp:
browser_mcp.close()
except Exception:
pass
except Exception as outer_e:
# Catch-all for setup errors so Gradio doesn't show generic "Error"
yield [{"role": "assistant", "content": f"π₯ **Setup failed:** {outer_e}"}], "*Setup failed*", '<span class="cost-badge">Cost: $0.0000 / $2.00</span>'
# =============================================================================
# Gradio UI
# =============================================================================
theme = gr.themes.Default(font=["Oxanium", "sans-serif"], primary_hue="amber", secondary_hue="blue")
with gr.Blocks(title="Computer Agent v2.0") as demo:
session_uuid_state = gr.State(None)
# Startup configuration warnings
if STARTUP_WARNINGS:
gr.HTML(
value='<div style="padding:12px; background:#2c1a1a; color:#ff6b6b; border-left:4px solid #ff6b6b; margin-bottom:12px;">'
+ "<br>".join(STARTUP_WARNINGS)
+ '</div>'
)
with gr.Row():
# Main sandbox view
sandbox_html = gr.HTML(
value=sandbox_html_template.format(stream_url="", status_class="status-interactive", status_text="Interactive"),
label="Desktop",
)
with gr.Sidebar(position="left"):
if HAS_GRADIO_MODAL and Modal:
with Modal(visible=True) as modal:
gr.Markdown("""
### π₯οΈ Open Computer Agent v2.0
Welcome to the **enhanced** computer agent powered by:
- **Multi-Model Router** (auto-selects cheapest capable model)
- **Playwright MCP** (semantic browser control)
- **Hierarchical Planner** + **Verifier**
- **Set-of-Marks Vision** + **Long-Term Memory**
- **Voice I/O** + **Human-in-the-Loop**
- **Cost Dashboard** + **Session Recording**
π Type a task, hit **Run**, and watch the agent think, plan, and execute.
""")
else:
with gr.Accordion("π₯οΈ Open Computer Agent v2.0 β Click to expand info", open=False):
gr.Markdown("""
Welcome to the **enhanced** computer agent powered by:
- **Multi-Model Router** (auto-selects cheapest capable model)
- **Playwright MCP** (semantic browser control)
- **Hierarchical Planner** + **Verifier**
- **Set-of-Marks Vision** + **Long-Term Memory**
- **Voice I/O** + **Human-in-the-Loop**
- **Cost Dashboard** + **Session Recording**
π Type a task, hit **Run**, and watch the agent think, plan, and execute.
""")
task_input = gr.Textbox(
value="Find me pictures of cute puppies",
label="Enter your task:",
elem_classes="primary-color-label",
)
with gr.Row():
run_btn = gr.Button("π Let's go!", variant="primary")
voice_input = gr.Audio(sources=["microphone"], type="numpy", label="Or speak your task")
gr.Examples(
examples=[
"Use Google Maps to find the Hugging Face HQ in Paris",
"Go to Wikipedia and find what happened on April 4th",
"Find train travel time from Bern to Basel on Google Maps",
"Go to Hugging Face Spaces, find flux.1 schnell, generate an image of a GPU",
"Search HF Hub for top text-to-video models and list them",
"Open GitHub trending and find the top Python repo today",
],
inputs=task_input,
label="Example Tasks",
examples_per_page=6,
)
with gr.Accordion("βοΈ Advanced Options", open=False):
use_planner_cb = gr.Checkbox(label="Use Hierarchical Planner", value=True)
use_verifier_cb = gr.Checkbox(label="Use Verifier", value=True)
use_som_cb = gr.Checkbox(label="Use Set-of-Marks Vision", value=False)
use_browser_cb = gr.Checkbox(label="Use Playwright Browser MCP", value=True)
consent_storage_cb = gr.Checkbox(label="Store task & agent trace?", value=True)
auto_approve_cb = gr.Checkbox(label="Auto-approve all actions (disable HITL)", value=False)
session_state = gr.State({})
stored_messages = gr.State([])
# Cost display
cost_display = gr.HTML(value='<span class="cost-badge">Cost: $0.0000 / $2.00</span>', label="Cost Tracker")
gr.Markdown("""
- **Data**: Uncheck storage to opt-out. No personal data please.
- **Captcha**: VMs may get flagged. Interrupt and solve manually if needed.
- **HITL**: Sensitive actions pause for approval unless auto-approve is on.
- **Restart**: Refresh the page if the agent seems stuck.
""")
footer = gr.HTML(value=footer_html)
# Thought stream + logs
with gr.Row():
with gr.Column(scale=1):
plan_display = gr.Markdown(label="π Plan", value="*Plan will appear here...*")
with gr.Column(scale=2):
chatbot_display = gr.Chatbot(
elem_id="chatbot",
label="Agent's Execution Logs",
avatar_images=(
None,
"https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/smolagents/mascot_smol.png",
),
resizable=True,
)
stop_btn = gr.Button("π Stop the agent!", variant="huggingface")
# ---- Event Wiring ----
def clear_and_set_view_only(task_input, session_uuid):
return update_html(False, session_uuid)
def set_interactive(session_uuid):
return update_html(True, session_uuid)
def reactivate_stop():
return gr.Button("π Stop the agent!", variant="huggingface")
def update_cost_display():
# Aggregate cost from all sessions
total = 0.0
for comps in SESSION_COMPONENTS.values():
total += comps.get("router", IntelligenceRouter(hf_token=hf_token)).cost_so_far_usd
return f'<span class="cost-badge">Cost: ${total:.4f} / $2.00</span>'
def process_voice(audio_tuple, session_uuid):
if audio_tuple is None:
return ""
comps = SESSION_COMPONENTS.get(session_uuid)
if not comps:
# Build minimal components
data_dir = os.path.join(TMP_DIR, session_uuid)
comps = build_session_components(session_uuid, data_dir)
voice: VoiceInterface = comps["voice"]
try:
text = voice.process_gradio_audio(audio_tuple)
return text
except Exception as e:
return f"[Voice error: {e}]"
def interrupt_agent(session_state):
for sid, agent in list(ACTIVE_AGENTS.items()):
if hasattr(agent, "interrupt") and hasattr(agent, "interrupt_switch") and not agent.interrupt_switch:
try:
agent.interrupt()
del ACTIVE_AGENTS[sid]
return gr.Button("Stopping agent...", variant="secondary")
except Exception:
pass
return gr.Button("π Stop the agent!", variant="huggingface")
# Voice -> textbox
voice_input.stop_recording(
fn=process_voice,
inputs=[voice_input, session_uuid_state],
outputs=[task_input],
)
# Run button chain
run_event = (
run_btn.click(
fn=clear_and_set_view_only,
inputs=[task_input, session_uuid_state],
outputs=[sandbox_html],
)
.then(
fn=run_enhanced_agent,
inputs=[
task_input,
session_uuid_state,
use_planner_cb,
use_verifier_cb,
use_som_cb,
use_browser_cb,
consent_storage_cb,
],
outputs=[chatbot_display, plan_display, cost_display],
)
.then(fn=set_interactive, inputs=[session_uuid_state], outputs=[sandbox_html])
.then(fn=reactivate_stop, outputs=[stop_btn])
)
stop_btn.click(fn=interrupt_agent, inputs=[session_state], outputs=[stop_btn])
# Init session
demo.load(
fn=lambda: True,
outputs=[gr.Checkbox(value=True, visible=False)],
).then(
fn=lambda interactive, browser_uuid: (
update_html(interactive, browser_uuid or str(uuid.uuid4())),
browser_uuid or str(uuid.uuid4()),
),
js="() => localStorage.getItem('gradio-session-uuid') || (() => { const id = self.crypto.randomUUID(); localStorage.setItem('gradio-session-uuid', id); return id })()",
inputs=[gr.Checkbox(value=True, visible=False)],
outputs=[sandbox_html, session_uuid_state],
)
if __name__ == "__main__":
Timer(60, cleanup_sandboxes).start()
demo.launch(
server_name="0.0.0.0",
server_port=7860,
theme=theme,
css=custom_css,
js=custom_js,
)
|