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<header>
<h1>Delta Atlas - Explore</h1>
<p><b>See how the words connect by meaning.</b> Browse every term, or tick boxes on the left (like <i>a risk</i>, <i>hard to undo</i>, <i>no human in charge</i>) to narrow it. Each term shows what it does and which other terms it <b>couples with</b>: what defends what, what needs what, what is a kind of what. Try a <b>Try:</b> example below.</p>
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const T=DATA.terms, R=DATA.relations;
const byId={}; T.forEach(t=>byId[t.id]=t);
function nm(t){return t.names.plain[0]||(t.names.technical[0]&&t.names.technical[0].name)||t.id;}
function esc(s){return (s==null?'':String(s)).replace(/[&<>"']/g,c=>({'&':'&','<':'<','>':'>','"':'"',"'":'''}[c]));}
const PURP={capability:"capability",absorb:"absorb",check:"check",reset:"reset",center:"center",risk:"risk"};
const DIR=new Set(["enables","requires","mitigates","detects","causes","checks","governs","instance_of"]);
// adjacency + load-bearing signal (typed, non-'related' relations; weighted by strength)
const deg={}; const out={}, inc={};
T.forEach(t=>{deg[t.id]=0; out[t.id]=[]; inc[t.id]=[];});
const SW={strong:3,asserted:2,weak:1};
R.forEach(r=>{ if(!byId[r.source]||!byId[r.target])return;
out[r.source].push(r); inc[r.target].push(r);
if(r.type!=='related'){ const w=SW[r.strength]||1; deg[r.source]+=w; deg[r.target]+=w; } });
// facet definitions: key -> accessor
const FACETS=[
{key:'cluster',label:'Area',get:t=>t.cluster},
{key:'purpose',label:'What it does',get:t=>PURP[t.purpose]||t.purpose},
{key:'sysdyn',label:'System role',get:t=>t.sysdyn||'undefined'},
{key:'tier',label:'Level (core or detailed)',get:t=>t.tier},
{key:'actor',label:'Who acts',get:t=>t.attributes.actor},
{key:'accountability',label:'Who is accountable',get:t=>t.attributes.accountability},
{key:'cost_substrate',label:'Lasting cost (resets or sticks)',get:t=>t.attributes.cost_substrate},
{key:'reversibility',label:'Can it be undone?',get:t=>t.attributes.reversibility},
{key:'observability',label:'Can you see it happen?',get:t=>t.attributes.observability},
];
const sel={}; FACETS.forEach(f=>sel[f.key]=new Set());
let relPred={type:'',target:''};
// build value sets with counts
const VALS={};
FACETS.forEach(f=>{ const c={}; T.forEach(t=>{const v=f.get(t)||'undefined'; c[v]=(c[v]||0)+1;});
VALS[f.key]=Object.keys(c).sort().map(v=>[v,c[v]]); });
function buildSide(){
const s=document.getElementById('side'); let h='';
FACETS.forEach(f=>{ h+='<div class="facet"><h4>'+esc(f.label)+'</h4>';
VALS[f.key].forEach(vc=>{ h+='<span class="chip" data-f="'+f.key+'" data-v="'+esc(vc[0])+'">'+esc(vc[0])+'<span class="ct">'+vc[1]+'</span></span>'; });
h+='</div>'; });
// advanced relation predicate
h+='<div class="adv"><h4>Find connections</h4><div class="advhelp">Show every term that has a chosen relationship to a chosen term.</div><label class="advlab" for="relType">Relationship</label><select id="relType"><option value="">any relationship</option>';
[['mitigates','defends against'],['detects','detects'],['enables','enables'],['requires','needs'],['causes','can cause'],['checks','checks'],['governs','governs'],['instance_of','is a kind of'],['alias_of','is another name for'],['handoff','hands off to']].forEach(rt=>h+='<option value="'+rt[0]+'">'+rt[1]+' …</option>');
h+='</select><label class="advlab" for="relTarget">Term</label><select id="relTarget"><option value="">choose a term</option>';
T.slice().sort((a,b)=>nm(a).localeCompare(nm(b))).forEach(t=>h+='<option value="'+esc(t.id)+'">'+esc(nm(t))+'</option>');
h+='</select><span class="clear" id="clearAll">clear all filters</span></div>';
s.innerHTML=h;
s.querySelectorAll('.chip').forEach(c=>c.onclick=()=>{
const f=c.dataset.f,v=c.dataset.v; if(sel[f].has(v))sel[f].delete(v); else sel[f].add(v);
c.classList.toggle('on'); focusId=null; run(); });
document.getElementById('relType').onchange=e=>{relPred.type=e.target.value; focusId=null; run();};
document.getElementById('relTarget').onchange=e=>{relPred.target=e.target.value; focusId=null; run();};
document.getElementById('clearAll').onclick=()=>{ FACETS.forEach(f=>sel[f.key].clear()); relPred={type:'',target:''};
document.querySelectorAll('.chip').forEach(c=>c.classList.remove('on'));
document.getElementById('relType').value=''; document.getElementById('relTarget').value=''; focusId=null; run(); };
}
function matchFacets(t){
for(const f of FACETS){ if(sel[f.key].size===0) continue;
const v=f.get(t)||'undefined'; if(!sel[f.key].has(v)) return false; }
return true;
}
function matchRel(t){
if(!relPred.type||!relPred.target) return true;
return out[t.id].some(r=>r.type===relPred.type && r.target===relPred.target);
}
function queryString(){
const parts=[]; FACETS.forEach(f=>{ if(sel[f.key].size) parts.push(esc(f.label)+': '+[...sel[f.key]].join(' or ')); });
if(relPred.type&&relPred.target) parts.push(relPred.type+' → '+esc(nm(byId[relPred.target])));
return parts.length? parts.join(' and ') : 'Showing all terms (nothing ticked yet)';
}
let focusId=null;
function anyFilter(){ return FACETS.some(f=>sel[f.key].size>0) || (relPred.type&&relPred.target); }
const TW={mitigates:'defends against',checks:'checks',detects:'detects',enables:'enables',requires:'needs',instance_of:'is a kind of',governs:'governs',causes:'can cause',handoff:'hands off to',alias_of:'same as',related:'relates to'};
// Incoming phrasing must name BOTH ends or the sentence dangles ("X same as" ...what?).
// Each phrase completes with "this term" so every relation line reads as a full statement.
const TWIN={mitigates:'defends against this term',checks:'checks this term',detects:'detects this term',enables:'enables this term',requires:'needs this term',governs:'governs this term',causes:'can cause this term',handoff:'hands off to this term',alias_of:'is another name for this term',related:'relates to this term'};
function jlink(id,label){ return '<span class="jump" data-id="'+id+'">'+esc(label)+'</span>'; }
function coupleLine(t){
const outs=out[t.id].filter(r=>r.type!=='related').slice(0,8).map(r=>(TW[r.type]||r.type)+' '+jlink(r.target,nm(byId[r.target])));
const insr=inc[t.id].filter(r=>r.type!=='related'&&r.type!=='instance_of').slice(0,6).map(r=>jlink(r.source,nm(byId[r.source]))+' '+(TWIN[r.type]||((TW[r.type]||r.type)+' this term')));
return (outs.length?'<div class="rel"><b>couples with:</b> '+outs.join(', ')+'</div>':'')+
(insr.length?'<div class="rel"><b>coupled from:</b> '+insr.join(', ')+'</div>':'');
}
function termCard(t){
return '<div class="card"><h3>'+sdot(t.status)+jlink(t.id,nm(t))+'</h3>'+
'<div class="fn">'+esc(t.function_statement||'(not yet written)')+'</div>'+
'<span class="tag p">'+esc(PURP[t.purpose]||t.purpose)+'</span><span class="tag">'+esc(t.cluster)+'</span>'+
coupleLine(t)+'</div>';
}
function bindJumps(scope){ scope.querySelectorAll('.jump').forEach(el=>el.onclick=()=>{ focusId=el.dataset.id; run(); var m=document.querySelector('main'); if(m)m.scrollTop=0; }); }
function run(){
const rdiv=document.getElementById('results'), cnt=document.getElementById('count');
if(focusId && byId[focusId]){
const f=byId[focusId];
const nb=[...new Set(out[focusId].concat(inc[focusId]).map(r=>r.source===focusId?r.target:r.source))].map(id=>byId[id]).filter(Boolean).sort((a,b)=>nm(a).localeCompare(nm(b)));
cnt.innerHTML='Showing <b>'+esc(nm(f))+'</b> and what it couples with · <span class="jclear" style="cursor:pointer;color:var(--accent)">show all terms</span>';
rdiv.innerHTML=termCard(f)+(nb.length?'<div class="seclbl2">Connected terms</div>'+nb.map(termCard).join(''):'<div class="none">No connections recorded for this term yet.</div>');
var jc=cnt.querySelector('.jclear'); if(jc)jc.onclick=()=>{ focusId=null; run(); };
bindJumps(rdiv); return;
}
const res=T.filter(t=>matchFacets(t)&&matchRel(t)).sort((a,b)=>nm(a).localeCompare(nm(b)));
cnt.innerHTML='<b>'+res.length+'</b> term'+(res.length===1?'':'s')+(anyFilter()?' match your filters':'')+' · click any term to follow its connections';
if(!res.length){ rdiv.innerHTML='<div class="none">Nothing matches. Untick something on the left.</div>'; return; }
rdiv.innerHTML=res.map(termCard).join(''); bindJumps(rdiv);
}
// non-narrative preset queries
const PRESETS=[
{label:'Hidden risks that never reset', set:{cost_substrate:['non-resetting'],observability:['silent'],purpose:['risk']}},
{label:'Irreversible failures the AI causes', set:{actor:['ai'],reversibility:['irreversible'],purpose:['risk']}},
{label:'Human-accountable checks', set:{accountability:['human'],purpose:['check']}},
{label:'Costs that stick to people', set:{cost_substrate:['non-resetting'],tier:['core']}},
{label:'Latent risks nobody owns', set:{observability:['latent'],accountability:['undefined'],purpose:['risk']}},
{label:'Core controls (Control & Safety)', set:{cluster:['Control & Safety'],tier:['core']}},
{label:'What mitigates Hallucination', rel:{type:'mitigates',targetName:'Hallucination'}},
];
function applyPreset(p){
focusId=null; FACETS.forEach(f=>sel[f.key].clear()); relPred={type:'',target:''};
if(p.set){ Object.keys(p.set).forEach(k=>p.set[k].forEach(v=>sel[k].add(v))); }
if(p.rel){ const tgt=T.find(t=>nm(t)===p.rel.targetName); relPred={type:p.rel.type,target:tgt?tgt.id:''}; }
// reflect into UI
document.querySelectorAll('.chip').forEach(c=>c.classList.toggle('on', sel[c.dataset.f].has(c.dataset.v)));
document.getElementById('relType').value=relPred.type||'';
document.getElementById('relTarget').value=relPred.target||'';
run();
}
function buildPresets(){
const p=document.getElementById('presets');
p.innerHTML='<span style="color:var(--dim);font-size:11.5px;align-self:center;margin-right:4px">Try:</span>'+
PRESETS.map((x,i)=>'<span class="preset" data-i="'+i+'">'+esc(x.label)+'</span>').join('');
p.querySelectorAll('.preset').forEach(el=>el.onclick=()=>applyPreset(PRESETS[+el.dataset.i]));
}
buildSide(); buildPresets(); run();
</script></body></html>