| import streamlit as st
|
| import pandas as pd
|
| import plotly.graph_objects as go
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| import torch
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| from src.backend import ModelResearcher, ModelManager
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| from src.benchmarks import BenchmarkSuite
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| from src.model_diagnostics import ModelDiagnostics
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| import src.ablation_lab as ab
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|
|
|
|
| st.set_page_config(page_title="DeepBench: AI Researcher Workbench", layout="wide", page_icon="π§ͺ")
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|
|
| st.markdown("""
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| <style>
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| .stApp { background-color: #0e1117; color: #FAFAFA; }
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| h1, h2, h3 { color: #00d4ff; }
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| .metric-card {
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| background-color: #262730; border: 1px solid #41424C;
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| border-radius: 8px; padding: 15px; margin-bottom: 10px;
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| text-align: center;
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| }
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| .metric-val { font-size: 24px; font-weight: bold; }
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| .stButton>button { width: 100%; border-radius: 5px; }
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| </style>
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| """, unsafe_allow_html=True)
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|
|
|
|
| if 'manager' not in st.session_state:
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| st.session_state['manager'] = ModelManager(device="cuda" if torch.cuda.is_available() else "cpu")
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|
|
|
|
| with st.sidebar:
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| st.title("π§ͺ DeepBench")
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| st.markdown("### Researcher Control Panel")
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| task = st.selectbox("Domain", ["Language", "Vision"])
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| arch = st.radio("Architecture", ["All", "Transformer", "RNN/RWKV"])
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| st.markdown("---")
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| st.info(f"Device: {st.session_state['manager'].device.upper()}")
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| st.caption("v4.0 Full Suite | Ablation Lab Active")
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|
|
|
|
|
|
| tab_names = ["π Discovery", "βοΈ Battle Arena", "π¬ Playground", "πΎ Hardware Forecast", "π©» Model X-Ray", "βοΈ Ablation Lab"]
|
| tab1, tab2, tab3, tab4, tab5, tab6 = st.tabs(tab_names)
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|
|
|
|
| with tab1:
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| researcher = ModelResearcher()
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| col_search, col_res = st.columns([1, 4])
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| with col_search:
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| if st.button("Fetch Models", use_container_width=True):
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| st.session_state['models'] = researcher.search_models(task_domain=task, architecture_type=arch)
|
| with col_res:
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| if 'models' in st.session_state:
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| st.dataframe(st.session_state['models'], column_config={"downloads": st.column_config.ProgressColumn("Downloads", format="%d", min_value=0, max_value=1000000)}, use_container_width=True)
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|
|
|
|
| with tab2:
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| if 'models' in st.session_state:
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| all_ids = st.session_state['models']['model_id'].tolist()
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| select_options = ["None"] + all_ids
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| c1, c2 = st.columns(2)
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|
|
| with c1:
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| st.subheader("Champion (Model A)")
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| model_a = st.selectbox("Select Model A", select_options, index=1 if len(all_ids)>0 else 0)
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| quant_a = st.selectbox("Quantization A", ["None (FP16)", "8-bit (Int8)"], key="q_a")
|
| with c2:
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| st.subheader("Challenger (Model B)")
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| model_b = st.selectbox("Select Model B", select_options, index=0)
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| quant_b = st.selectbox("Quantization B", ["None (FP16)", "8-bit (Int8)"], key="q_b")
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|
|
| bench_opts = ["Perplexity", "MMLU", "GSM8K", "ARC-C", "ARC-E", "HellaSwag", "PIQA"]
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| selected_bench = st.multiselect("Benchmarks", bench_opts, default=["Perplexity", "MMLU"])
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|
|
| if st.button("βοΈ Run Comparison"):
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| col_a, col_mid, col_b = st.columns([1, 0.1, 1])
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| results_a, results_b = {}, {}
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| q_map_a = "8-bit" if "8-bit" in quant_a else "None"
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| q_map_b = "8-bit" if "8-bit" in quant_b else "None"
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|
|
| with col_a:
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| if model_a != "None":
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| succ, msg = st.session_state['manager'].load_model(model_a, quantization=q_map_a)
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| if succ:
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| mod, tok = st.session_state['manager'].get_components(model_a, quantization=q_map_a)
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| suite = BenchmarkSuite(mod, tok, model_id=f"{model_a}_{q_map_a}")
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| for b in selected_bench:
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| res = suite.run_benchmark(b, simulation_mode=True)
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| results_a[b] = res
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| st.markdown(f"""<div class='metric-card'><div style='color:#aaa;'>{b}</div><div class='metric-val'>{res['score']:.2f}</div><div>{res['rating']}</div></div>""", unsafe_allow_html=True)
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| with col_b:
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| if model_b != "None":
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| succ, msg = st.session_state['manager'].load_model(model_b, quantization=q_map_b)
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| if succ:
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| mod, tok = st.session_state['manager'].get_components(model_b, quantization=q_map_b)
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| suite = BenchmarkSuite(mod, tok, model_id=f"{model_b}_{q_map_b}")
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| for b in selected_bench:
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| res = suite.run_benchmark(b, simulation_mode=True)
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| results_b[b] = res
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| st.markdown(f"""<div class='metric-card'><div style='color:#aaa;'>{b}</div><div class='metric-val'>{res['score']:.2f}</div><div>{res['rating']}</div></div>""", unsafe_allow_html=True)
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|
|
| if results_a and results_b:
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| st.markdown("### πΈοΈ Comparison Map")
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| categories = list(results_a.keys())
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| vals_a = [r['score'] if r['unit'] == "%" else (100-r['score']) for r in results_a.values()]
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| vals_b = [r['score'] if r['unit'] == "%" else (100-r['score']) for r in results_b.values()]
|
| fig = go.Figure()
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| fig.add_trace(go.Scatterpolar(r=vals_a, theta=categories, fill='toself', name=f"{model_a} ({q_map_a})", line_color="#00d4ff"))
|
| fig.add_trace(go.Scatterpolar(r=vals_b, theta=categories, fill='toself', name=f"{model_b} ({q_map_b})", line_color="#ff0055"))
|
| fig.update_layout(polar=dict(radialaxis=dict(visible=True, range=[0, 100])), paper_bgcolor="rgba(0,0,0,0)", font_color="white")
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| st.plotly_chart(fig, use_container_width=True)
|
| else:
|
| st.warning("Go to Discovery tab first.")
|
|
|
|
|
| with tab3:
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| st.subheader("π¬ Generation Playground")
|
| if 'models' in st.session_state:
|
| all_ids = st.session_state['models']['model_id'].tolist()
|
| select_options_play = ["None"] + all_ids
|
| pc1, pc2 = st.columns(2)
|
| with pc1:
|
| pm_a = st.selectbox("Generator A", select_options_play, index=1 if len(all_ids)>0 else 0, key="pm_a")
|
| pq_a = st.selectbox("Quant A", ["None (FP16)", "8-bit (Int8)"], key="pq_a")
|
| with pc2:
|
| pm_b = st.selectbox("Generator B", select_options_play, index=0, key="pm_b")
|
| pq_b = st.selectbox("Quant B", ["None (FP16)", "8-bit (Int8)"], key="pq_b")
|
| user_prompt = st.text_area("Prompt", value="Explain quantum computing like I'm 5.")
|
| if st.button("Generate Text"):
|
| c1, c2 = st.columns(2)
|
| pq_map_a = "8-bit" if "8-bit" in pq_a else "None"
|
| pq_map_b = "8-bit" if "8-bit" in pq_b else "None"
|
| with c1:
|
| if pm_a != "None":
|
| succ, msg = st.session_state['manager'].load_model(pm_a, quantization=pq_map_a)
|
| if succ:
|
| out = st.session_state['manager'].generate_text(pm_a, pq_map_a, user_prompt)
|
| st.info(out)
|
| with c2:
|
| if pm_b != "None":
|
| succ, msg = st.session_state['manager'].load_model(pm_b, quantization=pq_map_b)
|
| if succ:
|
| out = st.session_state['manager'].generate_text(pm_b, pq_map_b, user_prompt)
|
| st.success(out)
|
| else: st.warning("Please fetch models in Tab 1 first.")
|
|
|
|
|
| with tab4:
|
| st.header("πΎ Hardware Forecast")
|
| col1, col2 = st.columns(2)
|
| with col1:
|
| vram_input = st.text_input("Enter Model Size (e.g., 7B, 13B)", value="7B")
|
| if st.button("Calculate VRAM"):
|
| res = ModelDiagnostics.estimate_vram(vram_input)
|
| if res: st.session_state['vram_res'] = res
|
| else: st.error("Invalid format.")
|
| with col2:
|
| if 'vram_res' in st.session_state:
|
| res = st.session_state['vram_res']
|
| st.success(f"**Results for {res['params_in_billions']}B Params**")
|
| st.markdown(f"- **Training (FP32):** `{res['FP32 (Training/Full)']}`\n- **Inference (FP16):** `{res['FP16 (Inference)']}`\n- **Quantized (Int8):** `{res['INT8 (Quantized)']}`")
|
|
|
|
|
| with tab5:
|
| st.header("π Model X-Ray")
|
| if 'models' in st.session_state:
|
| all_ids = st.session_state['models']['model_id'].tolist()
|
| xray_model = st.selectbox("Select Model to Inspect", all_ids)
|
| if st.button("Scan Layers"):
|
| succ, msg = st.session_state['manager'].load_model(xray_model, quantization="None")
|
| if succ:
|
| mod, _ = st.session_state['manager'].get_components(xray_model, quantization="None")
|
| structure = ModelDiagnostics.get_layer_structure(mod)
|
| st.text_area("Raw PyTorch Structure", value=structure, height=400)
|
| else: st.warning("Go to Discovery tab first.")
|
|
|
|
|
| with tab6:
|
|
|
| ab.render_ablation_dashboard() |