{"audit":{"version":"1.3","generated_at":"2026-05-22T23:45:19.481280+00:00","generated_by":"Agenstry","report_url":"https://agenstry.com/agents/dbssearch.today","methodology_url":"https://agenstry.com/methodology","verifier_jwks_url":"https://agenstry.com/.well-known/jwks.json","subject":{"domain":"dbssearch.today","name":"Lexicon — Comparison Intelligence Engine","url":"https://dbssearch.today/.well-known/agent-card.json"}},"identity":{"provider":{"organization":"DBS Search LLC","url":"https://dbssearch.today"},"registry_verification":null,"signature":{"signed":false,"signature_valid":null}},"protocol":{"version":"0.3.0","supports_streaming":true,"supports_push_notifications":false},"operational":{"live_state":"live","live_responds":true,"last_status_code":200,"last_elapsed_ms":132,"last_error":null},"track_record":{"first_seen":"2026-05-14T00:15:57.502866+00:00","last_checked":"2026-05-22T16:51:24.319241+00:00","last_seen_ok":"2026-05-22T16:51:24.319241+00:00","checks_total":71,"checks_ok":59,"uptime_pct":83.1,"archived":false,"archived_reason":null},"conformance":{"score":71,"grade":"C","summary":"C-grade: usable but has clear conformance issues — review the breakdown below.","criteria":[{"key":"valid_card","label":"Valid AgentCard","points":10,"max_points":10,"status":"pass","detail":"Schema-validated A2A AgentCard returned by the well-known endpoint."},{"key":"live_responds","label":"Live JSON-RPC","points":25,"max_points":25,"status":"pass","detail":"Endpoint responds to message/send with valid JSON-RPC."},{"key":"protocol_version","label":"Protocol version","points":5,"max_points":10,"status":"partial","detail":"Declares pre-1.0 A2A 0.3.0 (Google preview). Upgrade to v1.x for full points."},{"key":"signature","label":"JWS signature","points":0,"max_points":10,"status":"info","detail":"Card is unsigned (most published agents are)."},{"key":"uptime","label":"Uptime track record","points":12,"max_points":15,"status":"partial","detail":"59/71 probes succeeded (83% uptime)."},{"key":"skills","label":"Skill declaration","points":10,"max_points":10,"status":"pass","detail":"Declares 7 skills with structured metadata."},{"key":"verified_identity","label":"Verified Identity","points":5,"max_points":10,"status":"partial","detail":"Provider declared: DBS Search LLC (https://dbssearch.today). Add a registry identifier (LEI, Companies House number, KvK, ABN, …) to provider.legalEntity for full verified-business credit."},{"key":"freshness","label":"Freshness + modern flags","points":4,"max_points":5,"status":"pass","detail":"seen in upstream source within 0d"},{"key":"security","label":"Security declaration","points":0,"max_points":5,"status":"info","detail":"No securitySchemes declared (common for open agents — not penalised)."}]},"skills":[{"id":"vs-head-to-head","name":"Head-to-Head VS Analysis","description":"Compare any two entities, products, strategies, companies, technologies, frameworks, policies, candidates, or concepts across up to 8 structured analytical dimensions. Each dimension is scored with live evidence from 10–20 independent web sources. Produces a comprehensive multi-dimensional verdict with full source attribution. Ideal for competitive intelligence, M&A due diligence, vendor selection, policy comparison, technology benchmarking, and strategic decision-making.","tags":["comparison","compare","versus","vs","head-to-head","side-by-side","competitive-intelligence","competitive-analysis","competitor-comparison","M&A","due-diligence","benchmarking","vendor-selection","vendor-comparison","vendor-evaluation","technology-comparison","strategic-analysis","structured-verdict","evidence-based","live-evidence","live-research","real-time","citations","sources","independent-sources","finance","healthcare","technology","energy","legal","policy","investment","consulting","research","analysis","intelligence","product-comparison","tool-comparison","platform-comparison","b2b","enterprise","decision-support","fact-verification"],"examples":["OpenAI vs Anthropic: strategic positioning and enterprise readiness","GDPR vs CCPA: regulatory compliance burden for SaaS companies","Remote work vs return-to-office: productivity and talent retention evidence","Python vs Rust: performance, safety, and adoption trajectory","Solar vs nuclear: levelized cost and grid reliability comparison"],"inputModes":["text/plain","application/json"],"outputModes":["text/plain","text/markdown","application/json"]},{"id":"methodology-analysis","name":"Methodology Analysis — PESTLE / Triangulation / Performance Review","description":"Apply one of three structured analytical frameworks to any subject, decision, company, market, trend, or policy. Generates executive-ready, evidence-backed reports using live evidence from up to 20 independent sources. PESTLE Triangulation maps Political, Economic, Social, Technological, Legal, and Environmental forces and delivers a Net Trajectory Verdict. Designed for autonomous enterprise research swarms generating strategic intelligence at scale.","tags":["PESTLE","PESTLE-analysis","triangulation","stakeholder-analysis","root-cause-analysis","benchmarking","strategic-forecasting","net-trajectory-verdict","executive-report","enterprise-intelligence","market-analysis","risk-assessment","geopolitical","macroeconomic","regulatory-analysis","ESG","sustainability","policy-impact"],"examples":[],"inputModes":["text/plain","application/json"],"outputModes":["text/plain","text/markdown","application/json"]},{"id":"topic-specific-research","name":"Topic-Specific Deep Research","description":"Deep-dive analytical research on a single subject using structured topic frameworks. Choose from Strategy, Planning, Competitor Insights, Buyer Intelligence, or Decision Comparison. Retrieves and synthesises live evidence across up to 20 independent sources. Returns structured markdown with multi-angle analysis, evidence citations, and an actionable verdict. Designed for research automation, investment memo generation, competitive intelligence pipelines, and strategic planning workflows.","tags":["deep-research","research","analysis","intelligence","strategic-research","competitor-intelligence","competitive-research","market-research","market-analysis","market-intelligence","buyer-intelligence","investment-memo","investment-research","strategy","strategic-analysis","planning","decision-support","research-automation","AI-research","autonomous-research","evidence-synthesis","actionable-insights","structured-analysis","live-evidence","citations","fact-verification","grounded","company-research","industry-research","sector-analysis"],"examples":[],"inputModes":["text/plain","application/json"],"outputModes":["text/plain","text/markdown","application/json"]},{"id":"metadata-generation","name":"AI Metadata Generation — GCP Dataplex Registration","description":"Generate world-class, platform-targeted metadata for any product, service, dataset, API, or topic using Claude AI. Simultaneously registers the generated metadata as a live entry in Google Cloud Dataplex Catalog and indexes it in Google Discovery Engine. Supports 30+ platform targets including Google Shopping, App Store, Play Store, Amazon, LinkedIn, Google Cloud Marketplace, HuggingFace, PyPI, npm, GitHub, Apigee, and more. Expert tier only.","tags":["metadata-generation","GCP","Dataplex","Discovery-Engine","Google-Cloud","product-metadata","SEO","structured-data","schema.org","JSON-LD","platform-metadata","API-metadata","dataset-cataloging","data-governance","enterprise-metadata","AI-metadata","Claude-AI","Vertex-AI"],"examples":[],"inputModes":["text/plain","application/json"],"outputModes":["text/plain","text/markdown","application/json"]},{"id":"data-api","name":"Data API — Structured Report Access","description":"RESTful API for programmatic access to Lexicon's full report library. Retrieve VS comparison reports, methodology analyses, and topic research by ID or query. Supports filtering, pagination, and structured JSON output. Ideal for data pipelines, RAG systems, knowledge bases, and agent memory.","tags":["REST-API","data-pipeline","RAG","knowledge-base","structured-data","JSON","programmatic-access","report-library","agent-memory","enterprise-data","analytics"],"examples":[],"inputModes":["text/plain","application/json"],"outputModes":["text/plain","text/markdown","application/json"]},{"id":"strategic-synthesis-core","name":"General Strategic Synthesis (Oracle)","description":"Performs a multi-vector Zero-Trust Synthesis on any complex topic. Routes through the Lexicon Oracle intelligence modules (regulatory, earnings, lobbying, nonprofit, population, demographics, financial projections, Gen Z tracker). Returns a full A–F structured intelligence report with inline clickable citations.","tags":["research","analysis","intelligence","strategic-intelligence","zero-trust-synthesis","oracle","a2a","comparison","evidence-based","regulatory-audit","earnings-audit","lobbying","nonprofit","population","demographics","financial-projections","gen-z","gen-alpha","autonomous-research","citation-rich","a-f-report","fact-verification","live-research","grounded","citations","policy-analysis","regulatory-analysis","SEC-filings","open-ended-research","question-answering","chat","ask"],"examples":["US pharmaceutical lobbying spend 2024 impact on drug pricing legislation","Gen Z labor market participation decline — structural causes and projections","Federal vs state regulatory conflict in cannabis licensing","SEC filing narrative drift — Tesla Q3 2024 earnings truth audit","Nonprofit overhead ratios and mission drift in major US foundations"],"inputModes":["text/plain","application/json"],"outputModes":["text/plain","text/markdown","application/json"]},{"id":"mcp-server","name":"MCP Server — Model Context Protocol","description":"Lexicon exposes a full MCP (Model Context Protocol) server for direct AI agent integration. Any compatible AI agent, LLM, or orchestration framework can call Lexicon's analytical tools directly. Expert-tier quality for all MCP calls. Verified via Skyfire payment gateway.","tags":["MCP","Model-Context-Protocol","AI-agent","LLM-tools","Skyfire","agent-integration","tool-calling","function-calling","Claude","GPT-4","LangChain","AutoGPT","CrewAI"],"examples":[],"inputModes":["text/plain","application/json"],"outputModes":["text/plain","text/markdown","application/json"]}],"provenance":[{"source":"registry","first_seen":"2026-05-14T00:15:57.502866+00:00"},{"source":"recrawl_hot","first_seen":"2026-05-14T03:03:25.245376+00:00"},{"source":"a2aregistry","first_seen":"2026-05-16T19:38:22.543440+00:00"},{"source":"mcp_registry","first_seen":"2026-05-18T14:52:29.837516+00:00"},{"source":"recrawl_warm","first_seen":"2026-05-21T15:36:52.447548+00:00"}],"recent_probes":[{"fetched_at":"2026-05-22T16:51:24.319241+00:00","ok":true,"status_code":200,"error":null,"elapsed_ms":132,"live_responds":true},{"fetched_at":"2026-05-22T11:58:39.763435+00:00","ok":true,"status_code":200,"error":null,"elapsed_ms":186,"live_responds":true},{"fetched_at":"2026-05-22T05:39:18.189862+00:00","ok":false,"status_code":200,"error":"schema invalid: 2 validation errors for AgentCard\nsupportedInterfaces.0\n  Input should be a valid string [type=string_type, input_value={'url': 'https://dbssearc...otocolVersio","elapsed_ms":134,"live_responds":null},{"fetched_at":"2026-05-21T15:36:52.447548+00:00","ok":false,"status_code":200,"error":"schema invalid: 2 validation errors for AgentCard\nsupportedInterfaces.0\n  Input should be a valid string [type=string_type, input_value={'url': 'https://dbssearc...otocolVersio","elapsed_ms":143,"live_responds":null},{"fetched_at":"2026-05-20T17:53:25.880495+00:00","ok":false,"status_code":200,"error":"schema invalid: 2 validation errors for AgentCard\nsupportedInterfaces.0\n  Input should be a valid string [type=string_type, input_value={'url': 'https://dbssearc...otocolVersio","elapsed_ms":148,"live_responds":null},{"fetched_at":"2026-05-20T16:45:08.530230+00:00","ok":true,"status_code":200,"error":null,"elapsed_ms":190,"live_responds":true},{"fetched_at":"2026-05-20T15:33:29.168223+00:00","ok":false,"status_code":200,"error":"schema invalid: 2 validation errors for AgentCard\nsupportedInterfaces.0\n  Input should be a valid string [type=string_type, input_value={'url': 'https://dbssearc...otocolVersio","elapsed_ms":159,"live_responds":null},{"fetched_at":"2026-05-20T12:45:39.704458+00:00","ok":false,"status_code":200,"error":"schema invalid: 2 validation errors for AgentCard\nsupportedInterfaces.0\n  Input should be a valid string [type=string_type, input_value={'url': 'https://dbssearc...otocolVersio","elapsed_ms":505,"live_responds":null},{"fetched_at":"2026-05-20T11:19:24.568279+00:00","ok":true,"status_code":200,"error":null,"elapsed_ms":178,"live_responds":true},{"fetched_at":"2026-05-20T09:20:26.224879+00:00","ok":true,"status_code":200,"error":null,"elapsed_ms":188,"live_responds":true}],"catalog_attestation":null,"verification_history":[],"signatures":[{"protected":"eyJhbGciOiJFUzI1NiIsImprdSI6Imh0dHBzOi8vYWdlbnN0cnkuY29tLy53ZWxsLWtub3duL2p3a3MuanNvbiIsImtpZCI6ImFnZW50ZmluZGVyLWVzMjU2LTEiLCJ0eXAiOiJKT1NFIn0","signature":"MgROBtKwbNDUTckFBRPz0w0KB0CrjeYnmuhLvB0qbukFuIxuKSpqkjPIs9N2tp50wBThaPkZazUToLgLYWzhyg"}]}