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| # app.py | |
| # D3 physics (client-side) + Plotly visualization for MF churn explorer | |
| # Liquid "gel" motion (viscous, slow, ooze-like) - Option L2 | |
| # Requirements: gradio, networkx, plotly, pandas, numpy | |
| import gradio as gr | |
| import pandas as pd | |
| import networkx as nx | |
| import plotly.graph_objects as go | |
| import numpy as np | |
| import json | |
| from collections import defaultdict | |
| # --------------------------- | |
| # DATA | |
| # --------------------------- | |
| AMCS = [ | |
| "SBI MF", "ICICI Pru MF", "HDFC MF", "Nippon India MF", "Kotak MF", | |
| "UTI MF", "Axis MF", "Aditya Birla SL MF", "Mirae MF", "DSP MF" | |
| ] | |
| COMPANIES = [ | |
| "HDFC Bank", "ICICI Bank", "Bajaj Finance", "Bajaj Finserv", "Adani Ports", | |
| "Tata Motors", "Shriram Finance", "HAL", "TCS", "AU Small Finance Bank", | |
| "Pearl Global", "Hindalco", "Tata Elxsi", "Cummins India", "Vedanta" | |
| ] | |
| BUY_MAP = { | |
| "SBI MF": ["Bajaj Finance", "AU Small Finance Bank"], | |
| "ICICI Pru MF": ["HDFC Bank"], | |
| "HDFC MF": ["Tata Elxsi", "TCS"], | |
| "Nippon India MF": ["Hindalco"], | |
| "Kotak MF": ["Bajaj Finance"], | |
| "UTI MF": ["Adani Ports", "Shriram Finance"], | |
| "Axis MF": ["Tata Motors", "Shriram Finance"], | |
| "Aditya Birla SL MF": ["AU Small Finance Bank"], | |
| "Mirae MF": ["Bajaj Finance", "HAL"], | |
| "DSP MF": ["Tata Motors", "Bajaj Finserv"] | |
| } | |
| SELL_MAP = { | |
| "SBI MF": ["Tata Motors"], | |
| "ICICI Pru MF": ["Bajaj Finance", "Adani Ports"], | |
| "HDFC MF": ["HDFC Bank"], | |
| "Nippon India MF": ["Hindalco"], | |
| "Kotak MF": ["AU Small Finance Bank"], | |
| "UTI MF": ["Hindalco", "TCS"], | |
| "Axis MF": ["TCS"], | |
| "Aditya Birla SL MF": ["Adani Ports"], | |
| "Mirae MF": ["TCS"], | |
| "DSP MF": ["HAL", "Shriram Finance"] | |
| } | |
| COMPLETE_EXIT = {"DSP MF": ["Shriram Finance"]} | |
| FRESH_BUY = {"HDFC MF": ["Tata Elxsi"], "UTI MF": ["Adani Ports"], "Mirae MF": ["HAL"]} | |
| def sanitize_map(m): | |
| out = {} | |
| for k, vals in m.items(): | |
| out[k] = [v for v in vals if v in COMPANIES] | |
| return out | |
| BUY_MAP = sanitize_map(BUY_MAP) | |
| SELL_MAP = sanitize_map(SELL_MAP) | |
| COMPLETE_EXIT = sanitize_map(COMPLETE_EXIT) | |
| FRESH_BUY = sanitize_map(FRESH_BUY) | |
| # --------------------------- | |
| # BUILD GRAPH | |
| # --------------------------- | |
| company_edges = [] | |
| for amc, comps in BUY_MAP.items(): | |
| for c in comps: | |
| company_edges.append((amc, c, {"action": "buy", "weight": 1})) | |
| for amc, comps in SELL_MAP.items(): | |
| for c in comps: | |
| company_edges.append((amc, c, {"action": "sell", "weight": 1})) | |
| for amc, comps in COMPLETE_EXIT.items(): | |
| for c in comps: | |
| company_edges.append((amc, c, {"action": "complete_exit", "weight": 3})) | |
| for amc, comps in FRESH_BUY.items(): | |
| for c in comps: | |
| company_edges.append((amc, c, {"action": "fresh_buy", "weight": 3})) | |
| def infer_amc_transfers(buy_map, sell_map): | |
| transfers = defaultdict(int) | |
| company_to_sellers = defaultdict(list) | |
| company_to_buyers = defaultdict(list) | |
| for amc, comps in sell_map.items(): | |
| for c in comps: | |
| company_to_sellers[c].append(amc) | |
| for amc, comps in buy_map.items(): | |
| for c in comps: | |
| company_to_buyers[c].append(amc) | |
| for c in set(company_to_sellers.keys()) | set(company_to_buyers.keys()): | |
| sellers = company_to_sellers[c] | |
| buyers = company_to_buyers[c] | |
| for s in sellers: | |
| for b in buyers: | |
| transfers[(s,b)] += 1 | |
| out = [] | |
| for (s,b), w in transfers.items(): | |
| out.append((s,b, {"action":"transfer","weight":w})) | |
| return out | |
| transfer_edges = infer_amc_transfers(BUY_MAP, SELL_MAP) | |
| def build_graph(include_transfers=True): | |
| G = nx.DiGraph() | |
| for a in AMCS: | |
| G.add_node(a, type="amc") | |
| for c in COMPANIES: | |
| G.add_node(c, type="company") | |
| for u,v,attr in company_edges: | |
| if G.has_edge(u,v): | |
| G[u][v]["weight"] += attr["weight"] | |
| G[u][v]["actions"].append(attr["action"]) | |
| else: | |
| G.add_edge(u,v,weight=attr["weight"], actions=[attr["action"]]) | |
| if include_transfers: | |
| for s,b,attr in transfer_edges: | |
| if G.has_edge(s,b): | |
| G[s][b]["weight"] += attr["weight"] | |
| G[s][b]["actions"].append("transfer") | |
| else: | |
| G.add_edge(s,b,weight=attr["weight"], actions=["transfer"]) | |
| return G | |
| # --------------------------- | |
| # BUILD PLOTLY FIGURE (placeholders for positions) | |
| # --------------------------- | |
| def build_plotly_figure(G, | |
| node_color_amc="#9EC5FF", | |
| node_color_company="#FFCF9E", | |
| edge_color_buy="#2ca02c", | |
| edge_color_sell="#d62728", | |
| edge_color_transfer="#888888", | |
| edge_thickness_base=1.4): | |
| node_names = [] | |
| node_x = [] | |
| node_y = [] | |
| node_color = [] | |
| node_size = [] | |
| for n,d in G.nodes(data=True): | |
| node_names.append(n) | |
| node_x.append(0.0); node_y.append(0.0) | |
| if d["type"]=="amc": | |
| node_color.append(node_color_amc); node_size.append(36) | |
| else: | |
| node_color.append(node_color_company); node_size.append(56) | |
| edge_traces = [] | |
| edge_src = [] | |
| edge_tgt = [] | |
| edge_colors = [] | |
| edge_widths = [] | |
| for u,v,attrs in G.edges(data=True): | |
| edge_traces.append(go.Scatter(x=[0,0], y=[0,0], mode="lines", | |
| line=dict(color="#888", width=1), hoverinfo="none")) | |
| edge_src.append(node_names.index(u)) | |
| edge_tgt.append(node_names.index(v)) | |
| acts = attrs.get("actions",[]) | |
| weight = attrs.get("weight",1) | |
| if "complete_exit" in acts: | |
| edge_colors.append(edge_color_sell); edge_widths.append(edge_thickness_base*3) | |
| elif "fresh_buy" in acts: | |
| edge_colors.append(edge_color_buy); edge_widths.append(edge_thickness_base*3) | |
| elif "transfer" in acts: | |
| edge_colors.append(edge_color_transfer); edge_widths.append(edge_thickness_base*(1+np.log1p(weight))) | |
| elif "sell" in acts: | |
| edge_colors.append(edge_color_sell); edge_widths.append(edge_thickness_base*(1+np.log1p(weight))) | |
| else: | |
| edge_colors.append(edge_color_buy); edge_widths.append(edge_thickness_base*(1+np.log1p(weight))) | |
| node_trace = go.Scatter(x=node_x, y=node_y, mode="markers+text", | |
| marker=dict(color=node_color, size=node_size, line=dict(width=2,color="#222")), | |
| text=node_names, textposition="top center", hoverinfo="text") | |
| fig = go.Figure(data=edge_traces + [node_trace]) | |
| fig.update_layout(showlegend=False, autosize=True, | |
| margin=dict(l=8,r=8,t=36,b=8), xaxis=dict(visible=False), yaxis=dict(visible=False)) | |
| meta = { | |
| "node_names": node_names, | |
| "edge_source_index": edge_src, | |
| "edge_target_index": edge_tgt, | |
| "edge_colors": edge_colors, | |
| "edge_widths": edge_widths, | |
| "node_sizes": node_size | |
| } | |
| return fig, meta | |
| # --------------------------- | |
| # Build HTML with D3 + viscous "gel" motion | |
| # --------------------------- | |
| def make_network_html_d3_gel(fig, meta, div_id="network-plot-div"): | |
| fig_json = json.dumps(fig.to_plotly_json()) | |
| meta_json = json.dumps(meta) | |
| html = f""" | |
| <div id="{div_id}" style="width:100%;height:560px;"></div> | |
| <div style="margin-top:6px;margin-bottom:8px;"> | |
| <button id="{div_id}-reset" style="padding:8px 12px;border-radius:6px;">Reset view</button> | |
| <button id="{div_id}-stop" style="padding:8px 12px;border-radius:6px;margin-left:8px;">Stop layout</button> | |
| </div> | |
| <script src="https://d3js.org/d3.v7.min.js"></script> | |
| <script src="https://cdn.plot.ly/plotly-latest.min.js"></script> | |
| <script> | |
| const fig = {fig_json}; | |
| const meta = {meta_json}; | |
| const container = document.getElementById("{div_id}"); | |
| Plotly.newPlot(container, fig.data, fig.layout, {{responsive:true}}); | |
| // index bookkeeping | |
| const nodeTraceIndex = fig.data.length - 1; | |
| const edgeCount = fig.data.length - 1; | |
| // build nodes and links for D3 | |
| const nodes = meta.node_names.map((n,i)=>({{id:i, name:n, r: meta.node_sizes[i] || 20}})); | |
| const links = meta.edge_source_index.map((s,i)=>({{source:s, target: meta.edge_target_index[i], color: meta.edge_colors[i], width: meta.edge_widths[i] || 1}})); | |
| // Viscous gel simulation parameters (softer, slower motion) | |
| const simulation = d3.forceSimulation(nodes) | |
| .force("link", d3.forceLink(links).id(d => d.id).distance(140).strength(0.35)) | |
| .force("charge", d3.forceManyBody().strength(-40)) | |
| .force("collision", d3.forceCollide().radius(d => d.r * 0.85)) | |
| .force("center", d3.forceCenter(0,0)) | |
| .velocityDecay(0.55); | |
| // We add per-node velocity smoothing variables to create "gel" feel | |
| nodes.forEach(n => {{ | |
| n.vx_smooth = 0; | |
| n.vy_smooth = 0; | |
| n.displayX = n.x || 0; | |
| n.displayY = n.y || 0; | |
| }}); | |
| let tickCount = 0; | |
| const maxTicks = 400; // safety cap | |
| simulation.on("tick", () => {{ | |
| tickCount++; | |
| // On each tick, update the target positions from d3, then apply viscous smoothing | |
| nodes.forEach(n => {{ | |
| // D3 provides n.x/n.y; we do gel smoothing on displayX/displayY using velocity | |
| const targetX = n.x || 0; | |
| const targetY = n.y || 0; | |
| // viscous velocity update (gel-like): vx_smooth integrates difference slowly | |
| n.vx_smooth = (n.vx_smooth * 0.82) + (targetX - n.displayX) * 0.06; | |
| n.vy_smooth = (n.vy_smooth * 0.82) + (targetY - n.displayY) * 0.06; | |
| // apply a small damping to give heavy 'gel' inertia | |
| n.vx_smooth *= 0.92; | |
| n.vy_smooth *= 0.92; | |
| // update display positions | |
| n.displayX += n.vx_smooth; | |
| n.displayY += n.vy_smooth; | |
| }}); | |
| // prepare arrays for Plotly update using displayX/displayY | |
| const xs = nodes.map(n => n.displayX); | |
| const ys = nodes.map(n => n.displayY); | |
| // update node trace | |
| Plotly.restyle(container, {{ 'x': [xs], 'y': [ys] }}, [nodeTraceIndex]); | |
| // update each edge trace using display positions | |
| for (let e = 0; e < edgeCount; e++) {{ | |
| const sIdx = meta.edge_source_index[e]; | |
| const tIdx = meta.edge_target_index[e]; | |
| const sx = nodes[sIdx].displayX || 0; | |
| const sy = nodes[sIdx].displayY || 0; | |
| const tx = nodes[tIdx].displayX || 0; | |
| const ty = nodes[tIdx].displayY || 0; | |
| Plotly.restyle(container, {{ 'x': [[sx, tx]], 'y': [[sy, ty]] }}, [e]); | |
| // set line style color/width (ensure visual matches original meta) | |
| Plotly.restyle(container, {{ 'line.color': [meta.edge_colors[e]], 'line.width': [meta.edge_widths[e]] }}, [e]); | |
| }} | |
| // Safety stop conditions | |
| if (simulation.alpha() < 0.02 || tickCount > maxTicks) {{ | |
| simulation.stop(); | |
| }} | |
| }}); | |
| // stop button | |
| document.getElementById("{div_id}-stop").addEventListener('click', () => {{ | |
| simulation.stop(); | |
| }}); | |
| // map name to index | |
| const nameToIndex = {{}}; | |
| meta.node_names.forEach((n,i)=> nameToIndex[n]=i); | |
| // focus and reset functions (hide others on focus - Option A) | |
| function focusNode(nodeName) {{ | |
| const idx = nameToIndex[nodeName]; | |
| const keep = new Set([idx]); | |
| for (let e = 0; e < meta.edge_source_index.length; e++) {{ | |
| const s = meta.edge_source_index[e], t = meta.edge_target_index[e]; | |
| if (s === idx) keep.add(t); | |
| if (t === idx) keep.add(s); | |
| }} | |
| const N = meta.node_names.length; | |
| const nodeOp = Array(N).fill(0.0); | |
| const textColors = Array(N).fill("rgba(0,0,0,0)"); | |
| for (let i=0;i<N;i++) {{ | |
| if (keep.has(i)) {{ nodeOp[i]=1.0; textColors[i]="black"; }} | |
| }} | |
| Plotly.restyle(container, {{ "marker.opacity": [nodeOp], "textfont.color": [textColors] }}, [nodeTraceIndex]); | |
| // edges | |
| for (let e=0;e<edgeCount;e++) {{ | |
| const s = meta.edge_source_index[e], t = meta.edge_target_index[e]; | |
| const show = keep.has(s) && keep.has(t); | |
| const color = show ? meta.edge_colors[e] : 'rgba(0,0,0,0)'; | |
| const width = show ? meta.edge_widths[e] : 0.1; | |
| Plotly.restyle(container, {{ 'line.color': [color], 'line.width': [width] }}, [e]); | |
| }} | |
| // zoom to bbox | |
| const nodesTrace = fig.data[nodeTraceIndex]; | |
| const xs = [], ys = []; | |
| for (let j=0;j<meta.node_names.length;j++) {{ | |
| if (keep.has(j)) {{ xs.push(nodesTrace.x[j]); ys.push(nodesTrace.y[j]); }} | |
| }} | |
| if (xs.length>0) {{ | |
| const xmin = Math.min(...xs), xmax = Math.max(...xs); | |
| const ymin = Math.min(...ys), ymax = Math.max(...ys); | |
| const padX = (xmax - xmin) * 0.4 + 10; | |
| const padY = (ymax - ymin) * 0.4 + 10; | |
| Plotly.relayout(container, {{ xaxis: {{ range: [xmin - padX, xmax + padX] }}, yaxis: {{ range: [ymin - padY, ymax + padY] }} }}); | |
| }} | |
| }} | |
| // reset | |
| function resetView() {{ | |
| const N = meta.node_names.length; | |
| const nodeOp = Array(N).fill(1.0); | |
| const textColors = Array(N).fill("black"); | |
| Plotly.restyle(container, {{ "marker.opacity": [nodeOp], "textfont.color": [textColors] }}, [nodeTraceIndex]); | |
| for (let e=0;e<edgeCount;e++) {{ | |
| Plotly.restyle(container, {{ 'line.color': [meta.edge_colors[e]], 'line.width': [meta.edge_widths[e]] }}, [e]); | |
| }} | |
| Plotly.relayout(container, {{ xaxis: {{autorange:true}}, yaxis: {{autorange:true}} }}); | |
| // restart a gentle simulation to re-space nodes | |
| tickCount = 0; | |
| simulation.alpha(0.5); | |
| simulation.restart(); | |
| }} | |
| // click handler | |
| container.on('plotly_click', function(eventData) {{ | |
| const p = eventData.points[0]; | |
| if (p.curveNumber === nodeTraceIndex) {{ | |
| const nodeIndex = p.pointNumber; | |
| const nodeName = meta.node_names[nodeIndex]; | |
| focusNode(nodeName); | |
| }} | |
| }}); | |
| // reset button | |
| document.getElementById("{div_id}-reset").addEventListener('click', function() {{ | |
| resetView(); | |
| }}); | |
| </script> | |
| """ | |
| return html | |
| # --------------------------- | |
| # Company / AMC summaries (unchanged) | |
| # --------------------------- | |
| def company_trade_summary(company_name): | |
| buyers = [a for a, comps in BUY_MAP.items() if company_name in comps] | |
| sellers = [a for a, comps in SELL_MAP.items() if company_name in comps] | |
| fresh = [a for a, comps in FRESH_BUY.items() if company_name in comps] | |
| exits = [a for a, comps in COMPLETE_EXIT.items() if company_name in comps] | |
| df = pd.DataFrame({ | |
| "Role": ["Buyer"]*len(buyers) + ["Seller"]*len(sellers) + ["Fresh buy"]*len(fresh) + ["Complete exit"]*len(exits), | |
| "AMC": buyers + sellers + fresh + exits | |
| }) | |
| if df.empty: | |
| return None, pd.DataFrame([], columns=["Role","AMC"]) | |
| counts = df.groupby("Role").size().reset_index(name="Count") | |
| fig = go.Figure(go.Bar(x=counts["Role"], y=counts["Count"], marker_color=["green","red","orange","black"][:len(counts)])) | |
| fig.update_layout(title_text=f"Trade summary for {company_name}", autosize=True, margin=dict(t=30,b=10)) | |
| return fig, df | |
| def amc_transfer_summary(amc_name): | |
| sold = SELL_MAP.get(amc_name, []) | |
| transfers = [] | |
| for s in sold: | |
| buyers = [a for a, comps in BUY_MAP.items() if s in comps] | |
| for b in buyers: | |
| transfers.append({"security": s, "buyer_amc": b}) | |
| df = pd.DataFrame(transfers) | |
| if df.empty: | |
| return None, pd.DataFrame([], columns=["security","buyer_amc"]) | |
| counts = df["buyer_amc"].value_counts().reset_index() | |
| counts.columns = ["Buyer AMC","Count"] | |
| fig = go.Figure(go.Bar(x=counts["Buyer AMC"], y=counts["Count"], marker_color="lightslategray")) | |
| fig.update_layout(title_text=f"Inferred transfers from {amc_name}", autosize=True, margin=dict(t=30,b=10)) | |
| return fig, df | |
| # --------------------------- | |
| # Build initial HTML | |
| # --------------------------- | |
| def build_network_html(node_color_company="#FFCF9E", node_color_amc="#9EC5FF", | |
| edge_color_buy="#2ca02c", edge_color_sell="#d62728", | |
| edge_color_transfer="#888888", edge_thickness=1.4, include_transfers=True): | |
| G = build_graph(include_transfers=include_transfers) | |
| fig, meta = build_plotly_figure(G, | |
| node_color_amc=node_color_amc, | |
| node_color_company=node_color_company, | |
| edge_color_buy=edge_color_buy, | |
| edge_color_sell=edge_color_sell, | |
| edge_color_transfer=edge_color_transfer, | |
| edge_thickness_base=edge_thickness) | |
| return make_network_html_d3_gel(fig, meta) | |
| initial_html = build_network_html() | |
| # --------------------------- | |
| # Mobile CSS & UI | |
| # --------------------------- | |
| responsive_css = """ | |
| .gradio-container { padding:0 !important; margin:0 !important; } | |
| .plotly-graph-div, .js-plotly-plot, .output_plot { width:100% !important; max-width:100% !important; } | |
| .js-plotly-plot { height:560px !important; } | |
| @media(max-width:780px){ .js-plotly-plot{ height:520px !important; } } | |
| body, html { overflow-x:hidden !important; } | |
| """ | |
| with gr.Blocks(css=responsive_css, title="MF Churn Explorer (Gel Motion)") as demo: | |
| gr.Markdown("## Mutual Fund Churn Explorer — Gel-like liquid motion (L2)") | |
| network_html = gr.HTML(value=initial_html) | |
| legend_html = gr.HTML(value=\"\"\" | |
| <div style='font-family:sans-serif;font-size:14px;margin-top:10px;line-height:1.6;'> | |
| <b>Legend</b><br> | |
| <div><span style="display:inline-block;width:28px;border-bottom:3px solid #2ca02c;"></span> BUY (green solid)</div> | |
| <div><span style="display:inline-block;width:28px;border-bottom:3px dotted #d62728;"></span> SELL (red dotted)</div> | |
| <div><span style="display:inline-block;width:28px;border-bottom:3px dashed #888;"></span> TRANSFER (grey dashed — inferred, not actual reported transfer)</div> | |
| <div><span style="display:inline-block;width:28px;border-bottom:5px solid #2ca02c;"></span> FRESH BUY (thick green)</div> | |
| <div><span style="display:inline-block;width:28px;border-bottom:5px solid #d62728;"></span> COMPLETE EXIT (thick red)</div> | |
| </div> | |
| \"\"\") | |
| with gr.Accordion("Network Customization — expand to edit", open=False): | |
| node_color_company = gr.ColorPicker("#FFCF9E", label="Company node color") | |
| node_color_amc = gr.ColorPicker("#9EC5FF", label="AMC node color") | |
| edge_color_buy = gr.ColorPicker("#2ca02c", label="BUY edge color") | |
| edge_color_sell = gr.ColorPicker("#d62728", label="SELL edge color") | |
| edge_color_transfer = gr.ColorPicker("#888888", label="Transfer edge color") | |
| edge_thickness = gr.Slider(0.5, 6.0, value=1.4, step=0.1, label="Edge thickness base") | |
| include_transfers = gr.Checkbox(value=True, label="Show AMC→AMC inferred transfers") | |
| update_button = gr.Button("Update Network Graph") | |
| gr.Markdown("### Inspect Company (buyers / sellers)") | |
| select_company = gr.Dropdown(choices=COMPANIES, label="Select company") | |
| company_plot = gr.Plot() | |
| company_table = gr.DataFrame() | |
| gr.Markdown("### Inspect AMC (inferred transfers)") | |
| select_amc = gr.Dropdown(choices=AMCS, label="Select AMC") | |
| amc_plot = gr.Plot() | |
| amc_table = gr.DataFrame() | |
| def update_network_html(node_color_company_val, node_color_amc_val, | |
| edge_color_buy_val, edge_color_sell_val, edge_color_transfer_val, | |
| edge_thickness_val, include_transfers_val): | |
| return build_network_html(node_color_company=node_color_company_val, | |
| node_color_amc=node_color_amc_val, | |
| edge_color_buy=edge_color_buy_val, | |
| edge_color_sell=edge_color_sell_val, | |
| edge_color_transfer=edge_color_transfer_val, | |
| edge_thickness=edge_thickness_val, | |
| include_transfers=include_transfers_val) | |
| def on_company_select(cname): | |
| fig, df = company_trade_summary(cname) | |
| if fig is None: | |
| return None, pd.DataFrame([], columns=["Role", "AMC"]) | |
| return fig, df | |
| def on_amc_select(aname): | |
| fig, df = amc_transfer_summary(aname) | |
| if fig is None: | |
| return None, pd.DataFrame([], columns=["security", "buyer_amc"]) | |
| return fig, df | |
| update_button.click(fn=update_network_html, | |
| inputs=[node_color_company, node_color_amc, | |
| edge_color_buy, edge_color_sell, edge_color_transfer, | |
| edge_thickness, include_transfers], | |
| outputs=[network_html]) | |
| select_company.change(fn=on_company_select, inputs=[select_company], outputs=[company_plot, company_table]) | |
| select_amc.change(fn=on_amc_select, inputs=[select_amc], outputs=[amc_plot, amc_table]) | |
| if __name__ == "__main__": | |
| demo.launch() | |