{"passport":{"unfragile":{"@version":"1.0","version":"2026-05","artifact":{"id":"awesome-aomni","slug":"aomni","name":"Aomni","type":"agent","url":"https://www.aomni.com/?utm_source=awesome-ai-agents","page_url":"https://unfragile.ai/aomni","categories":["ai-agents"],"tags":[],"pricing":{"model":"unknown","free":false,"starting_price":null},"status":"active","verified":false},"capabilities":[{"id":"awesome-aomni__cap_0","uri":"capability://planning.reasoning.autonomous.business.intelligence.research.and.synthesis","name":"autonomous business intelligence research and synthesis","description":"Aomni autonomously conducts multi-source business research by orchestrating web search, data aggregation, and synthesis workflows to compile comprehensive intelligence reports. The agent decomposes research queries into sub-tasks, executes parallel data collection from public sources, and synthesizes findings into structured business intelligence outputs without requiring manual data gathering or report assembly.","intents":["I need competitive intelligence on a target company without spending hours on manual research","I want to quickly understand market dynamics and industry trends for a prospect before a sales call","I need to automate the collection and synthesis of business data for due diligence processes","I want to generate comprehensive company profiles with financial, operational, and market data automatically"],"best_for":["sales teams conducting prospect research at scale","business development professionals evaluating partnership opportunities","market research teams automating competitive intelligence workflows","investment professionals performing rapid due diligence on target companies"],"limitations":["Accuracy depends on public data availability — private or proprietary information cannot be sourced","Real-time data freshness may lag behind live market conditions by hours or days","Research scope limited to companies and industries with sufficient public documentation","No access to paywalled databases or premium data sources unless explicitly integrated"],"requires":["Internet connectivity for web search and data aggregation","API credentials for integrated data sources (if using premium data connectors)","Structured query input defining research scope and target entities"],"input_types":["text (company names, industry keywords, research questions)","structured parameters (research scope, data categories, output format preferences)"],"output_types":["structured business intelligence reports (JSON, markdown, PDF)","company profiles with financial metrics, leadership, market position","competitive analysis matrices","industry trend summaries"],"categories":["planning-reasoning","search-retrieval","data-processing-analysis"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"awesome-aomni__cap_1","uri":"capability://data.processing.analysis.multi.source.data.aggregation.and.normalization","name":"multi-source data aggregation and normalization","description":"Aomni collects structured and unstructured data from heterogeneous sources (web pages, APIs, databases, documents) and normalizes them into consistent schemas for downstream analysis. The agent applies entity extraction, data type inference, and conflict resolution to harmonize data from sources with different formats, completeness levels, and update frequencies into unified data structures.","intents":["I need to combine company data from multiple public sources into a single normalized dataset","I want to deduplicate and reconcile conflicting information across different data sources","I need to extract structured fields from unstructured web content and documents","I want to maintain data freshness by automatically re-aggregating from multiple sources on a schedule"],"best_for":["data engineering teams building business intelligence pipelines","sales operations professionals consolidating prospect data from multiple systems","market research teams normalizing data from diverse industry sources","CRM administrators enriching contact records with external data"],"limitations":["Normalization quality depends on source data consistency — highly unstructured sources may require manual validation","Schema inference may fail or produce incorrect types for ambiguous or sparse data","Rate limiting on external APIs may slow aggregation for large-scale data collection","No built-in handling for encrypted or access-restricted data sources"],"requires":["Access to target data sources (public APIs, web endpoints, or database connections)","Target schema definition or automatic schema inference capability enabled","Network connectivity and appropriate authentication credentials for each source"],"input_types":["structured data (JSON, CSV, database records)","semi-structured data (HTML, XML, API responses)","unstructured text (web pages, documents)"],"output_types":["normalized JSON objects conforming to defined schemas","deduplicated and reconciled datasets","data quality reports with conflict resolution logs","structured tables (CSV, database-ready formats)"],"categories":["data-processing-analysis","search-retrieval"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"awesome-aomni__cap_2","uri":"capability://planning.reasoning.intelligent.task.decomposition.and.execution.planning","name":"intelligent task decomposition and execution planning","description":"Aomni breaks down complex business intelligence queries into discrete, executable sub-tasks with dependency tracking and parallel execution where possible. The agent analyzes query intent, identifies required data sources and processing steps, determines task ordering based on dependencies, and executes tasks in optimal sequence while managing failures and retries at the task level.","intents":["I want the agent to automatically figure out what research steps are needed to answer my question","I need complex multi-step analysis executed in the right order without manual orchestration","I want the agent to handle failures gracefully and retry failed research steps","I need to understand what data collection and processing steps the agent is performing"],"best_for":["teams using AI agents for complex, multi-step business processes","organizations automating research workflows that previously required manual coordination","developers building agent-based applications requiring transparent task execution","business users who need to understand agent reasoning without technical expertise"],"limitations":["Task decomposition quality depends on query clarity — ambiguous requests may produce suboptimal task graphs","No built-in optimization for complex task dependencies — execution may not be globally optimal","Retry logic is task-level only — no cross-task compensation or rollback mechanisms","Execution transparency limited to task-level logging — internal reasoning steps not fully exposed"],"requires":["Clearly structured input queries with defined business objectives","Access to all data sources and APIs required by decomposed tasks","Sufficient execution timeout to complete multi-step workflows"],"input_types":["natural language business queries","structured task specifications with parameters"],"output_types":["task execution logs with step-by-step progress","task dependency graphs showing execution plan","final synthesized results from all executed tasks","error reports and retry attempts"],"categories":["planning-reasoning","automation-workflow"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"awesome-aomni__cap_3","uri":"capability://search.retrieval.real.time.web.search.and.content.retrieval","name":"real-time web search and content retrieval","description":"Aomni performs targeted web searches to retrieve current information about companies, markets, and industries, with result ranking and relevance filtering to surface the most pertinent sources. The agent queries search engines, filters results by relevance and recency, extracts content from web pages, and maintains result freshness for time-sensitive business intelligence queries.","intents":["I need current information about a company that may have changed recently","I want to find the most relevant web sources about a market trend or competitor","I need to retrieve and extract specific data points from web pages automatically","I want search results ranked by relevance to my specific business question"],"best_for":["sales teams needing current prospect information before calls","market researchers tracking industry news and trends","competitive intelligence professionals monitoring competitor activities","business development teams evaluating market opportunities"],"limitations":["Search results depend on search engine indexing — very recent changes may not be indexed yet","Content extraction from complex web pages may fail or produce incomplete results","No access to paywalled or subscription-based content behind login walls","Search result ranking may not perfectly align with business relevance — manual filtering may be needed"],"requires":["Internet connectivity and access to search engine APIs","Search engine API credentials (if using premium search services)","Ability to parse and extract content from HTML/web pages"],"input_types":["text search queries","company names or keywords","structured search parameters (date range, source filters)"],"output_types":["ranked list of web search results with URLs and snippets","extracted content from web pages","structured data extracted from unstructured web content","freshness metadata (last updated, crawl date)"],"categories":["search-retrieval","data-processing-analysis"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"awesome-aomni__cap_4","uri":"capability://data.processing.analysis.structured.data.extraction.from.unstructured.sources","name":"structured data extraction from unstructured sources","description":"Aomni extracts structured business data (company financials, leadership, market metrics) from unstructured sources like web pages, PDFs, and documents using pattern recognition and entity extraction. The agent identifies relevant data fields, maps them to target schemas, handles missing or ambiguous values, and produces structured outputs suitable for databases or analysis tools.","intents":["I need to extract company financial metrics from earnings reports or web pages","I want to automatically identify and extract leadership team information from company websites","I need to pull structured data from PDFs or documents without manual copying","I want to extract market data and metrics from industry reports automatically"],"best_for":["data teams automating extraction from documents and web sources","CRM administrators enriching records with extracted company data","research teams processing large volumes of documents","business analysts automating data collection from unstructured sources"],"limitations":["Extraction accuracy varies with source document quality and structure — poorly formatted sources may produce errors","No built-in OCR for scanned documents — image-based PDFs may not extract correctly","Ambiguous or missing data may be inferred incorrectly without human validation","Complex tables or nested data structures may not extract perfectly"],"requires":["Access to source documents (web pages, PDFs, text files)","Target schema definition specifying fields to extract","Sufficient document quality for reliable pattern matching"],"input_types":["HTML web pages","PDF documents","plain text documents","unstructured business content"],"output_types":["structured JSON objects with extracted fields","CSV or database-ready formats","extraction confidence scores","validation reports highlighting uncertain extractions"],"categories":["data-processing-analysis","search-retrieval"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"awesome-aomni__cap_5","uri":"capability://data.processing.analysis.competitive.analysis.and.market.positioning.synthesis","name":"competitive analysis and market positioning synthesis","description":"Aomni analyzes competitive landscapes by gathering data on multiple competitors, normalizing their attributes, and synthesizing comparative insights about market positioning, differentiation, and competitive advantages. The agent identifies key competitive dimensions, collects competitor data across those dimensions, and produces structured competitive matrices and positioning analyses.","intents":["I need to understand how my company compares to competitors across key dimensions","I want to identify market gaps and positioning opportunities in my industry","I need to track competitor moves and changes in their positioning over time","I want to generate competitive battle cards for sales teams automatically"],"best_for":["product teams evaluating competitive positioning","sales leaders creating competitive battle cards","marketing teams analyzing market positioning","business strategists assessing competitive landscapes"],"limitations":["Analysis limited to publicly available competitor information — private strategies cannot be inferred","Competitive dimensions must be defined or inferred from data — may not capture all relevant factors","Positioning analysis is descriptive rather than prescriptive — doesn't recommend strategy changes","Data freshness depends on competitor public communications — may lag actual strategy changes"],"requires":["List of competitors to analyze","Definition of competitive dimensions or automatic dimension inference","Access to competitor data sources (websites, press releases, product pages)"],"input_types":["list of competitor company names","competitive dimensions to analyze","market segment or product category definition"],"output_types":["competitive matrices comparing competitors across dimensions","positioning maps showing market segments","competitive battle cards with key differentiators","market gap analysis identifying unserved segments"],"categories":["data-processing-analysis","planning-reasoning"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"awesome-aomni__cap_6","uri":"capability://planning.reasoning.business.context.aware.query.understanding.and.intent.classification","name":"business context-aware query understanding and intent classification","description":"Aomni interprets business queries by understanding context, disambiguating intent, and identifying required data sources and analysis approaches. The agent classifies query types (competitive analysis, market research, due diligence, etc.), extracts key entities and parameters, and determines the appropriate research methodology without requiring explicit instructions.","intents":["I want to ask a business question in natural language without specifying exactly what data I need","I need the agent to understand the business context behind my query and research appropriately","I want the agent to automatically determine what type of analysis is needed for my question","I need the agent to ask clarifying questions when my query is ambiguous"],"best_for":["business users querying agents in natural language","teams using AI agents for business intelligence without technical expertise","organizations automating research workflows with varied query types","sales and business development teams asking ad-hoc research questions"],"limitations":["Intent classification accuracy depends on query clarity — vague queries may be misinterpreted","No persistent context across queries — each query is analyzed independently","Ambiguous queries may require clarification rather than proceeding with assumptions","Domain-specific terminology may be misunderstood without explicit definition"],"requires":["Natural language query input","Business domain context or industry knowledge base","Sufficient query detail to disambiguate intent"],"input_types":["natural language business questions","conversational queries with context"],"output_types":["classified query type and intent","extracted entities and parameters","recommended research methodology","clarifying questions if needed"],"categories":["planning-reasoning","text-generation-language"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"awesome-aomni__cap_7","uri":"capability://text.generation.language.automated.report.generation.and.formatting","name":"automated report generation and formatting","description":"Aomni synthesizes research findings into formatted business intelligence reports with appropriate structure, visualizations, and presentation for different audiences. The agent organizes data into logical sections, generates summaries and insights, applies formatting templates, and produces outputs in multiple formats (PDF, markdown, HTML) suitable for different stakeholders.","intents":["I want research findings automatically formatted into a professional report","I need reports tailored for different audiences (executives, sales teams, analysts)","I want to generate reports in multiple formats without manual reformatting","I need reports with appropriate visualizations and data presentation"],"best_for":["business teams generating reports for stakeholders","sales organizations creating prospect research documents","market research teams producing industry reports","business development professionals documenting due diligence findings"],"limitations":["Report quality depends on underlying research data — poor data produces poor reports","Visualization generation limited to standard chart types — complex visualizations may require manual creation","Report templates are predefined — highly custom formatting may require manual adjustment","Audience-specific tailoring is limited to content selection — deep customization may be needed"],"requires":["Structured research data to include in report","Report template or format specification","Target audience definition for content tailoring"],"input_types":["structured research data (JSON, tables)","report template specification","audience and format preferences"],"output_types":["formatted PDF reports","markdown documents","HTML reports","presentation-ready formats"],"categories":["text-generation-language","automation-workflow"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"awesome-aomni__cap_8","uri":"capability://data.processing.analysis.temporal.data.tracking.and.change.detection","name":"temporal data tracking and change detection","description":"Aomni monitors business data over time, detects changes in company information, market conditions, or competitive positioning, and alerts users to significant updates. The agent maintains historical snapshots of tracked entities, compares current data to previous states, identifies meaningful changes, and surfaces updates relevant to business decisions.","intents":["I want to be notified when a prospect company makes significant changes","I need to track how competitor positioning or offerings have changed","I want to monitor market conditions and be alerted to significant shifts","I need to understand what has changed about a company since my last research"],"best_for":["sales teams tracking prospect changes and trigger events","competitive intelligence professionals monitoring competitor activities","market researchers tracking industry trends and shifts","business development teams monitoring market conditions"],"limitations":["Change detection depends on data source update frequency — may lag actual changes","Significance determination is heuristic-based — may miss subtle but important changes","No built-in persistence — requires external storage for historical data","Alert fatigue possible if too many minor changes are flagged"],"requires":["Historical data snapshots or baseline data for comparison","Regular data collection and update schedule","External storage for maintaining historical records","Change significance thresholds or rules"],"input_types":["current entity data","historical baseline data","change significance rules"],"output_types":["change detection reports","alerts for significant changes","before/after comparisons","change impact analysis"],"categories":["data-processing-analysis","automation-workflow"],"confidence":0.5,"matches":0,"success_rate":0}],"trust":{"score":27,"verified":false,"data_access_risk":"high","permissions":["Internet connectivity for web search and data aggregation","API credentials for integrated data sources (if using premium data connectors)","Structured query input defining research scope and target entities","Access to target data sources (public APIs, web endpoints, or database connections)","Target schema definition or automatic schema inference capability enabled","Network connectivity and appropriate authentication credentials for each source","Clearly structured input queries with defined business objectives","Access to all data sources and APIs required by decomposed tasks","Sufficient execution timeout to complete multi-step workflows","Internet connectivity and access to search engine APIs"],"failure_modes":["Accuracy depends on public data availability — private or proprietary information cannot be sourced","Real-time data freshness may lag behind live market conditions by hours or days","Research scope limited to companies and industries with sufficient public documentation","No access to paywalled databases or premium data sources unless explicitly integrated","Normalization quality depends on source data consistency — highly unstructured sources may require manual validation","Schema inference may fail or produce incorrect types for ambiguous or sparse data","Rate limiting on external APIs may slow aggregation for large-scale data collection","No built-in handling for encrypted or access-restricted data sources","Task decomposition quality depends on query clarity — ambiguous requests may produce suboptimal task graphs","No built-in optimization for complex task dependencies — execution may not be globally optimal","builder identity is not verified yet","no observed match outcomes yet"],"rank_breakdown":{"adoption":0.05,"quality":0.28,"ecosystem":0.25,"match_graph":0.25,"freshness":0.75,"weights":{"adoption":0.25,"quality":0.25,"ecosystem":0.1,"match_graph":0.28,"freshness":0.12}},"observed_outcomes":{"matches":0,"success_rate":0,"avg_confidence":0,"top_intents":[],"last_matched_at":null},"maintenance":{"status":"active","updated_at":"2026-06-17T09:51:02.370Z","last_scraped_at":"2026-05-03T14:00:10.321Z","last_commit":null},"community":{"stars":null,"forks":null,"weekly_downloads":null,"model_downloads":null,"model_likes":null}},"distribution":{"claim_url":"https://unfragile.ai/submit?claim=aomni","compare_url":"https://unfragile.ai/compare?artifact=aomni"}},"signature":"rchXzTGQo+64b9Yqk2DJ5YsjNqwZZuMx1tY8NvpyVSKbel4xGWXRKIAbsHoCzirI/NkADN7+hpaE4H5Beup5BQ==","signedAt":"2026-06-21T17:20:58.617Z","signedBy":"unfragile.ai","version":1},"_links":{"self":"https://unfragile.ai/api/v1/passport/aomni","artifact":"https://unfragile.ai/aomni","verify":"https://unfragile.ai/api/v1/verify?slug=aomni","publicKey":"https://unfragile.ai/api/v1/trust-passport-public-key","spec":"https://unfragile.ai/trust","schema":"https://unfragile.ai/schema.json","docs":"https://unfragile.ai/docs"}}