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# app.py
# Static weighted semi-layer arc diagram (L1 labels outside)
# With short labels by default & full label on click

import gradio as gr
import pandas as pd
import json
import numpy as np
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)

# ---------------------------
# Label maps (NEW)
# ---------------------------
SHORT_LABEL = {
    "SBI MF": "SBI",
    "ICICI Pru MF": "ICICI",
    "HDFC MF": "HDFC",
    "Nippon India MF": "NIP",
    "Kotak MF": "KOTAK",
    "UTI MF": "UTI",
    "Axis MF": "AXIS",
    "Aditya Birla SL MF": "ABSL",
    "Mirae MF": "MIRAE",
    "DSP MF": "DSP",

    "HDFC Bank": "HDFC Bk",
    "ICICI Bank": "ICICI Bk",
    "Bajaj Finance": "Bajaj Fin",
    "Bajaj Finserv": "Bajaj Fsrv",
    "Adani Ports": "AdaniPt",
    "Tata Motors": "TataMot",
    "Shriram Finance": "Shriram",
    "HAL": "HAL",
    "TCS": "TCS",
    "AU Small Finance Bank": "AU SFB",
    "Pearl Global": "PearlG",
    "Hindalco": "Hindalco",
    "Tata Elxsi": "Elxsi",
    "Cummins India": "Cummins",
    "Vedanta": "Vedanta"
}

FULL_LABEL = {k: k for k in SHORT_LABEL}

# ---------------------------
# Infer AMC→AMC transfers
# ---------------------------
def infer_amc_transfers(buy_map, sell_map):
    transfers = defaultdict(int)
    c2s = defaultdict(list)
    c2b = defaultdict(list)
    for amc, comps in sell_map.items():
        for c in comps: c2s[c].append(amc)
    for amc, comps in buy_map.items():
        for c in comps: c2b[c].append(amc)
    for c in set(c2s) | set(c2b):
        for s in c2s[c]:
            for b in c2b[c]:
                transfers[(s, b)] += 1
    return transfers

TRANSFER_COUNTS = infer_amc_transfers(BUY_MAP, SELL_MAP)

# ---------------------------
# Mixed ordering to reduce crossings
# ---------------------------
def build_mixed_ordering(amcs, companies):
    mixed = []
    n = max(len(amcs), len(companies))
    for i in range(n):
        if i < len(amcs): mixed.append(amcs[i])
        if i < len(companies): mixed.append(companies[i])
    return mixed

NODES = build_mixed_ordering(AMCS, COMPANIES)
NODE_TYPE = {n: ("amc" if n in AMCS else "company") for n in NODES}

# ---------------------------
# Build flows
# ---------------------------
def build_flows():
    buys, sells, transfers, loops = [], [], [], []
    for amc, comps in BUY_MAP.items():
        for c in comps:
            w = 3 if (amc in FRESH_BUY and c in FRESH_BUY.get(amc,[])) else 1
            buys.append((amc,c,w))
    for amc, comps in SELL_MAP.items():
        for c in comps:
            w = 3 if (amc in COMPLETE_EXIT and c in COMPLETE_EXIT.get(amc,[])) else 1
            sells.append((c,amc,w))
    for (s,b),w in TRANSFER_COUNTS.items():
        transfers.append((s,b,w))
    for a,c,_ in buys:
        for c2,b,_ in sells:
            if c==c2: loops.append((a,c,b))
    loops = list({(a,c,b) for (a,c,b) in loops})
    return buys, sells, transfers, loops

BUYS, SELLS, TRANSFERS, LOOPS = build_flows()

# ---------------------------
# Inspect panels
# ---------------------------
def company_trade_summary(company):
    buyers = [a for a,cs in BUY_MAP.items() if company in cs]
    sellers = [a for a,cs in SELL_MAP.items() if company in cs]
    fresh = [a for a,cs in FRESH_BUY.items() if company in cs]
    exits = [a for a,cs in COMPLETE_EXIT.items() if company in cs]
    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, df
    counts = df.groupby("Role").size().reset_index(name="Count")
    fig = {"data":[{"type":"bar","x":counts["Role"].tolist(),"y":counts["Count"].tolist()}],
           "layout":{"title":f"Trades for {company}"}}
    return fig,df

def amc_transfer_summary(amc):
    sold = SELL_MAP.get(amc,[])
    transfers=[]
    for s in sold:
        buyers=[a for a,cs in BUY_MAP.items() if s in cs]
        for b in buyers: transfers.append({"security":s,"buyer_amc":b})
    df=pd.DataFrame(transfers)
    if df.empty:return None,df
    counts=df["buyer_amc"].value_counts().reset_index()
    counts.columns=["Buyer AMC","Count"]
    fig={"data":[{"type":"bar","x":counts["Buyer AMC"].tolist(),"y":counts["Count"].tolist()}],
         "layout":{"title":f"Inferred transfers from {amc}"}}
    return fig,df

# ---------------------------
# HTML template: safe, no f-strings
# ---------------------------
JS_TEMPLATE = """
<div id="arc-container" style="width:100%; height:720px;"></div>
<div style="margin-top:8px;">
  <button id="arc-reset" style="padding:8px 12px; border-radius:6px;">Reset</button>
</div>

<div style="margin-top:10px; font-family:sans-serif; font-size:13px;">
  <b>Legend</b><br/>
  BUY = green solid<br/>
  SELL = red dotted<br/>
  TRANSFER = grey<br/>
  LOOP = teal external arc<br/>
  <div style="margin-top:6px;color:#666;font-size:12px;">Labels: short by default. Clicking a node shows full name.</div>
</div>

<script src="https://d3js.org/d3.v7.min.js"></script>
<script>
const NODES = __NODES__;
const NODE_TYPE = __NODE_TYPE__;
const BUYS = __BUYS__;
const SELLS = __SELLS__;
const TRANSFERS = __TRANSFERS__;
const LOOPS = __LOOPS__;

const SHORT_LABEL_JS = __SHORT_LABEL__;
const FULL_LABEL_JS = __FULL_LABEL__;

function draw() {
    const container = document.getElementById("arc-container");
    container.innerHTML = "";
    const w = Math.min(920, container.clientWidth || 820);
    const h = Math.max(420, Math.floor(w * 0.75));
    const svg = d3.select(container).append("svg")
        .attr("width","100%")
        .attr("height",h)
        .attr("viewBox",[-w/2,-h/2,w,h].join(" "));

    const radius = Math.min(w,h)*0.36;

    const n=NODES.length;
    function angleFor(i){return (i/n)*2*Math.PI;}
    const nodePos = NODES.map((name,i)=>{
        const ang=angleFor(i)-Math.PI/2;
        return {name,angle:ang,x:Math.cos(ang)*radius,y:Math.sin(ang)*radius};
    });
    const nameToIndex={};
    NODES.forEach((nm,i)=>nameToIndex[nm]=i);

    const group=svg.append("g").selectAll("g").data(nodePos).enter().append("g")
        .attr("transform", d=>`translate(${d.x},${d.y})`);

    group.append("circle")
        .attr("r",16)
        .style("fill",d=>NODE_TYPE[d.name]==="amc"?"#2b6fa6":"#f2c88d")
        .style("stroke","#222")
        .style("stroke-width",1)
        .style("cursor","pointer");

    group.append("text")
        .attr("x", d => Math.cos(d.angle) * (radius + 20))
        .attr("y", d => Math.sin(d.angle) * (radius + 20))
        .attr("dy", "0.35em")
        .style("font-family", "sans-serif")
        .style("font-size", Math.max(10, Math.min(13, radius*0.038)))
        .style("text-anchor", "middle")
        .style("cursor","pointer")
        .text(d => d.name);


    function bezierPath(x0,y0,x1,y1,above=true){
        const mx=(x0+x1)/2, my=(y0+y1)/2;
        const dx=mx, dy=my;
        const len=Math.sqrt(dx*dx+dy*dy)||1;
        const ux=dx/len, uy=dy/len;
        const offset=(above?-1:1)*Math.max(30,radius*0.9);
        const cx=mx+ux*offset, cy=my+uy*offset;
        return `M ${x0} ${y0} Q ${cx} ${cy} ${x1} ${y1}`;
    }

    const allW=[].concat(BUYS.map(d=>d[2]),SELLS.map(d=>d[2]),TRANSFERS.map(d=>d[2]));
    const stroke=d3.scaleLinear().domain([1,Math.max(...allW,1)]).range([1.0,6.0]);

    // BUYS top
    const buyG=svg.append("g");
    BUYS.forEach(b=>{
        const a=b[0], c=b[1], wt=b[2];
        if(!(a in nameToIndex)||!(c in nameToIndex))return;
        const s=nodePos[nameToIndex[a]], t=nodePos[nameToIndex[c]];
        buyG.append("path")
            .attr("d",bezierPath(s.x,s.y,t.x,t.y,true))
            .attr("fill","none")
            .attr("stroke","#2e8540")
            .attr("stroke-width",stroke(wt))
            .attr("opacity",0.92)
            .attr("data-src",a)
            .attr("data-tgt",c);
    });

    // SELLS bottom
    const sellG=svg.append("g");
    SELLS.forEach(s=>{
        const c=s[0], a=s[1], wt=s[2];
        if(!(c in nameToIndex)||!(a in nameToIndex))return;
        const sp=nodePos[nameToIndex[c]], tp=nodePos[nameToIndex[a]];
        sellG.append("path")
            .attr("d",bezierPath(sp.x,sp.y,tp.x,tp.y,false))
            .attr("fill","none")
            .attr("stroke","#c0392b")
            .attr("stroke-width",stroke(wt))
            .attr("stroke-dasharray","4,3")
            .attr("opacity",0.86)
            .attr("data-src",c)
            .attr("data-tgt",a);
    });

    // transfers
    const trG=svg.append("g");
    TRANSFERS.forEach(t=>{
        const s=t[0], b=t[1], wt=t[2];
        if(!(s in nameToIndex)||!(b in nameToIndex))return;
        const sp=nodePos[nameToIndex[s]], tp=nodePos[nameToIndex[b]];
        const mx=(sp.x+tp.x)/2, my=(sp.y+tp.y)/2;
        const path=`M ${sp.x} ${sp.y} Q ${mx*0.3} ${my*0.3} ${tp.x} ${tp.y}`;
        trG.append("path")
            .attr("d",path)
            .attr("fill","none")
            .attr("stroke","#7d7d7d")
            .attr("stroke-width",stroke(wt))
            .attr("opacity",0.7)
            .attr("data-src",s)
            .attr("data-tgt",b);
    });

    // loops
    const loopG=svg.append("g");
    LOOPS.forEach(lp=>{
        const a=lp[0], c=lp[1], b=lp[2];
        if(!(a in nameToIndex)||!(b in nameToIndex))return;
        const sa=nodePos[nameToIndex[a]], sb=nodePos[nameToIndex[b]];
        const mx=(sa.x+sb.x)/2, my=(sa.y+sb.y)/2;
        const len=Math.sqrt((sa.x-sb.x)**2+(sa.y-sb.y)**2);
        const outward=Math.max(40,radius*0.28+len*0.12);
        const ndx=mx, ndy=my;
        const nlen=Math.sqrt(ndx*ndx+ndy*ndy)||1;
        const ux=ndx/nlen, uy=ndy/nlen;
        const cx=mx+ux*outward, cy=my+uy*outward;
        const path=`M ${sa.x} ${sa.y} Q ${cx} ${cy} ${sb.x} ${sb.y}`;
        loopG.append("path")
            .attr("d",path)
            .attr("fill","none")
            .attr("stroke","#227a6d")
            .attr("stroke-width",2.8)
            .attr("opacity",0.95);
    });

    // click -> highlight + full label
    function setOpacityFor(nodeName){
        group.selectAll("circle").style("opacity",d=>d.name===nodeName?1.0:0.18);
        group.selectAll("text")
            .style("opacity",d=>d.name===nodeName?1.0:0.28)
            .text(d=>d.name===nodeName?FULL_LABEL_JS[d.name]:SHORT_LABEL_JS[d.name]);
        buyG.selectAll("path").style("opacity",function(){
            return (this.getAttribute("data-src")===nodeName||
                    this.getAttribute("data-tgt")===nodeName)?0.98:0.06;
        });
        sellG.selectAll("path").style("opacity",function(){
            return (this.getAttribute("data-src")===nodeName||
                    this.getAttribute("data-tgt")===nodeName)?0.98:0.06;
        });
        trG.selectAll("path").style("opacity",function(){
            return (this.getAttribute("data-src")===nodeName||
                    this.getAttribute("data-tgt")===nodeName)?0.98:0.06;
        });
    }

    function resetOpacity(){
        group.selectAll("circle").style("opacity",1.0);
        group.selectAll("text").style("opacity",1.0)
            .text(d=>SHORT_LABEL_JS[d.name]);
        buyG.selectAll("path").style("opacity",0.92);
        sellG.selectAll("path").style("opacity",0.86);
        trG.selectAll("path").style("opacity",0.7);
        loopG.selectAll("path").style("opacity",0.95);
    }

    group.selectAll("circle").on("click",function(e,d){
        setOpacityFor(d.name);
        e.stopPropagation();
    });
    group.selectAll("text").on("click",function(e,d){
        setOpacityFor(d.name);
        e.stopPropagation();
    });

    document.getElementById("arc-reset").onclick=resetOpacity;
    svg.on("click",()=>resetOpacity());
}

draw();
window.addEventListener("resize",draw);
</script>
"""

# ---------------------------
# Build final HTML
# ---------------------------
def make_arc_html(nodes, node_type, buys, sells, transfers, loops):
    html = JS_TEMPLATE
    html = html.replace("__NODES__", json.dumps(nodes))
    html = html.replace("__NODE_TYPE__", json.dumps(node_type))
    html = html.replace("__BUYS__", json.dumps(buys))
    html = html.replace("__SELLS__", json.dumps(sells))
    html = html.replace("__TRANSFERS__", json.dumps(transfers))
    html = html.replace("__LOOPS__", json.dumps(loops))
    html = html.replace("__SHORT_LABEL__", json.dumps(SHORT_LABEL))
    html = html.replace("__FULL_LABEL__", json.dumps(FULL_LABEL))
    return html

initial_html = make_arc_html(NODES, NODE_TYPE, BUYS, SELLS, TRANSFERS, LOOPS)

# ---------------------------
# Gradio UI
# ---------------------------
with gr.Blocks(title="MF Churn — Arc Diagram (Short→Full Label on Click)") as demo:
    gr.Markdown("## Mutual Fund Churn — Weighted Arc Diagram (Short labels → Full label on click)")
    gr.HTML(initial_html)

    gr.Markdown("### Inspect Company / AMC")
    select_company = gr.Dropdown(COMPANIES, label="Select company")
    company_plot = gr.Plot()
    company_table = gr.DataFrame()

    select_amc = gr.Dropdown(AMCS, label="Select AMC")
    amc_plot = gr.Plot()
    amc_table = gr.DataFrame()

    select_company.change(company_trade_summary, inputs=[select_company], outputs=[company_plot, company_table])
    select_amc.change(amc_transfer_summary, inputs=[select_amc], outputs=[amc_plot, amc_table])

if __name__ == "__main__":
    demo.launch()