# interface.py # Author: Liam Grinstead import gradio as gr from app import run_simulation from registry_utils import append_to_registry from registry_viewer import display_registry from mutation_designer import build_mutation from lineage_tracker import register_lineage from lineage_visualizer import render_lineage_tree from waveform_renderer import render_waveform from leaderboard import generate_leaderboard from codex.formulas import GVU_FORMULAS, rft_invariants import stage1 # keep imports at the top # Safety guard to ensure agent has required keys def ensure_agent_shape(agent: dict, mutation_profile: dict) -> dict: if not isinstance(agent, dict): agent = {} agent.setdefault("id", mutation_profile.get("agent_id", "Agent_Unknown")) agent.setdefault("tier", mutation_profile.get("tier_drift", "Tier_1")) agent.setdefault("symbolic_operators", mutation_profile.get("symbolic_operators", ["R", "O", "T", "P"])) agent.setdefault("emotional_resonance", mutation_profile.get("emotional_resonance", False)) overlay = agent.get("collapse_overlay", {}) if not isinstance(overlay, dict): overlay = {} if mutation_profile.get("collapse_overlay"): ov = mutation_profile["collapse_overlay"] overlay.setdefault("tau_eff", ov.get("tau_eff")) overlay.setdefault("beta_band", ov.get("beta_band")) overlay.setdefault("operator_weights", ov.get("operator_weights")) overlay.setdefault("tau_eff", 1.8 if mutation_profile.get("collapse_torque") == "Gen6508_M5" else 1.2) overlay.setdefault("beta_band", 0.65 if mutation_profile.get("collapse_torque") == "Gen6508_M5" else 0.4) overlay.setdefault("operator_weights", {("R","O"): 0.9, ("T","P"): 0.7}) agent["collapse_overlay"] = overlay return agent # --- Simulation --- def simulate(agent_id, collapse_torque, emotional_resonance, tier_drift): mutation_profile = build_mutation(agent_id, collapse_torque, tier_drift, emotional_resonance) agent, sha512 = run_simulation(agent_id, mutation_profile) agent = ensure_agent_shape(agent, mutation_profile) score = GVU_FORMULAS["Formula_20"].evaluate(agent) invariants = rft_invariants(agent) or {} tau = invariants.get("tau_eff", "?") beta = invariants.get("beta_band", "?") op_count = invariants.get("operator_count", 0) tier_level = invariants.get("tier_level", 1) fields = { "Φᵢ": f"
Φᵢ Awareness
Tier={agent.get('tier')} τ_eff={tau}
", "Kᵢⱼ": f"
Kᵢⱼ Coupling
Operators={op_count}
", "Φ_col": f"
Φ_col Collective
Score={score}
" } append_to_registry(agent_id, collapse_torque, tier_drift, emotional_resonance, score, sha512) summary = ( f"📊 Fitness (GVU): {score}
" f"🧷 Invariants: τ_eff={tau}, β={beta}, |K|={op_count}, tier={tier_level}
" f"🔐 SHA-512: {sha512}" ) wf = render_waveform(agent, score) return fields["Φᵢ"], fields["Kᵢⱼ"], fields["Φ_col"], wf, summary # --- Forge --- def forge_agent(parent_id, new_id, collapse_torque, emotional_resonance, tier_drift, max_depth): mutation_profile = build_mutation(new_id, collapse_torque, tier_drift, emotional_resonance) agent, _ = run_simulation(new_id, mutation_profile) agent = ensure_agent_shape(agent, mutation_profile) register_lineage(parent_id, new_id, { "tier_drift": tier_drift, "collapse_torque": collapse_torque, "symbolic_operators": agent.get("symbolic_operators", []) }) return render_lineage_tree(parent_id, max_depth=max_depth) # --- Validation Stage Wrapper --- def run_stage(stage_name, mode, epochs, batch, lr): if stage_name == "Stage 1 — CIFAR-10 Baseline": stage1.train( mode=mode, epochs=int(epochs), batch=int(batch), lr=float(lr), log_path="stage1_cifar10_log.jsonl" ) return f"Stage 1 complete. Telemetry saved to stage1_cifar10_log.jsonl" else: return "Stage not yet implemented." # --- Interface Layout --- with gr.Blocks(theme="soft") as demo: gr.Markdown("# 🧠 RFT Codex Sovereign") gr.Markdown("Rendered Frame Theory simulation, lineage, and GVU sealing. Author: Liam Grinstead.") # --- What is this Tab --- with gr.Tab("What is this?"): gr.Markdown("... your existing intro markdown ...") # --- Simulation Tab --- with gr.Tab("Simulate Agent"): with gr.Row(): agent_id = gr.Dropdown(["Agent_5", "Agent_7", "Agent_1032"], label="Agent ID") collapse_torque = gr.Dropdown(["Gen6508_M5", "Gen26_M23"], label="Collapse Torque Overlay") emotional_resonance = gr.Dropdown(["Yes", "No"], label="Inject Emotional Resonance") tier_drift = gr.Dropdown(["Tier_1", "Tier_2", "Tier_6"], label="Tier Drift") simulate_btn = gr.Button("Run Simulation") with gr.Row(): phi_i = gr.HTML(label="Φᵢ Awareness Field") k_ij = gr.HTML(label="Kᵢⱼ Correlation Kernel") with gr.Row(): phi_col = gr.HTML(label="Φ_col Coherence Field") waveform = gr.HTML(label="Collapse Torque Waveform") summary = gr.HTML(label="Simulation Summary") simulate_btn.click( lambda agent_id, collapse_torque, emotional_resonance, tier_drift: simulate(agent_id, collapse_torque, emotional_resonance == "Yes", tier_drift), inputs=[agent_id, collapse_torque, emotional_resonance, tier_drift], outputs=[phi_i, k_ij, phi_col, waveform, summary] ) # --- Registry Tab --- with gr.Tab("View Registry"): registry_output = gr.Textbox(label="Codex Registry", lines=20) refresh_btn = gr.Button("Refresh Registry") refresh_btn.click(display_registry, outputs=registry_output) # --- Forge Tab --- with gr.Tab("Codex Forge"): gr.Markdown("### 🧬 Evolve a New Agent from a Parent") parent_id = gr.Dropdown(["Agent_5", "Agent_7", "Agent_1032"], label="Parent Agent") new_id = gr.Textbox(label="New Agent ID") forge_torque = gr.Dropdown(["Gen6508_M5", "Gen26_M23"], label="Collapse Torque") forge_resonance = gr.Dropdown(["Yes", "No"], label="Inject Emotional Resonance") forge_tier = gr.Dropdown(["Tier_1", "Tier_2", "Tier_6"], label="Tier Drift") max_depth = gr.Slider(1, 8, value=5, step=1, label="Lineage depth") forge_btn = gr.Button("Forge Agent") lineage_svg_output = gr.HTML(label="Lineage Visualization") forge_btn.click( lambda parent_id, new_id, forge_torque, forge_resonance, forge_tier, max_depth: forge_agent(parent_id, new_id, forge_torque, forge_resonance == "Yes", forge_tier, max_depth), inputs=[parent_id, new_id, forge_torque, forge_resonance, forge_tier, max_depth], outputs=lineage_svg_output ) # --- Leaderboard Tab --- with gr.Tab("Leaderboard"): leaderboard_output = gr.Textbox(label="Top Agents", lines=15) refresh_leaderboard = gr.Button("Refresh Leaderboard") refresh_leaderboard.click(generate_leaderboard, outputs=leaderboard_output) # --- Codex Reference Tab --- with gr.Tab("Codex Reference"): gr.Markdown("... your existing reference markdown ...") # --- Validation Stages Tab --- with gr.Tab("Validation Stages"): stage = gr.Dropdown( ["Stage 1 — CIFAR-10 Baseline"], # extend with Stage 2–12 later label="Select Stage" ) mode = gr.Dropdown(["RFT", "BASE"], label="Mode") epochs = gr.Number(label="Epochs", value=5) batch = gr.Number(label="Batch Size", value=256) lr = gr.Number(label="Learning Rate", value=5e-4) val_output = gr.Textbox(label="Validation Output") run_button = gr.Button("Run Stage") run_button.click( fn=run_stage, inputs=[stage, mode, epochs, batch, lr], outputs=val_output ) if __name__ == "__main__": demo.launch()