Strategic Portfolio Intelligence

Enterprise Portfolio Intelligence

Continuously evaluate the current and future value of bp's asset portfolio using finance, operations, carbon, market, and risk signals.

Core decision question
Which assets should bp grow, optimize, divest, or transform?

Every signal, context package, evidence pack, policy result, recommendation, human approval, action, replay, and learning artifact should serve this question.

North Star KPIs
Portfolio ROIEnterprise value growthAsset productivityCapital efficiency
Agent workforce
Portfolio Intelligence AgentAsset Performance AgentValue Creation AgentRisk AgentCarbon Intelligence Agent
Enterprise integrations
Production systemsTrading systemsSAP S/4HANATreasuryCarbon systemsDatabricksFuture UDP
Monitored domains
UpstreamLNGRefiningRetailEV ChargingHydrogenBioenergyCarbon
Reference signal ticker

Signal visibility must be more than the word signal. Each mission shows reference signal counts, severity, scenario REF-TICK ID, and current blocked/recommended state. These are scenario proof shapes until connected to live traversal.

Reference signal generated from the scenario library; REF-TICK IDs show the expected production trace shape and are not attested live events.

3131 reference signals / scenario
88 asset value movements
ScenarioScenario event REF-TICK-60418 at 14:17
44 portfolio actions pending
Reference signals and recommended responses
SignalSourceImpactRecommended response
Asset performance deterioratedProduction systemROACE -1.2 ptsOptimize or divest scenario
Commodity outlook changedMarket feedPortfolio value shiftRe-rank assets
Carbon cost increasedCarbon systemRefining margin riskRun transition exposure scenario
Demo sequence
  1. Asset performance deteriorates
  2. Commodity outlook changes
  3. Carbon costs increase
  4. Sphere recommends hold, invest, optimize, or divest with evidence
Source-system traceability for major numbers

Every major value is tied to a source system, API object, data product, or source transaction. This answers where the number came from before BP asks.

Context pack: business unit: Group Finance · cost center: CC-1042 · entity code: BP-GROUP · owner: mission runtime.

Number / metricSource system or data productRecord / API objectBusiness context
ROACE -1.2 ptsProduction system + SAP profitabilityasset=REF-UK-440Business unit: Refining
Portfolio value shiftReference portfolio model shapescenario_run=REF-PORT-VAL-882Owner: Portfolio Lead
Carbon margin riskCarbon system + asset economicsasset=REF-EU-221Policy: Transition risk
Evidence, policy, replay, learning, and action artifacts
Decision memory
Runtime artifactIdentifierCredibility proof
Evidence packEP-PORT-60418data-evidence="pack" · source records and supporting documents
Policy IDFIN-PORT-2026-04Policy runtime gate evaluated before recommendation
Replay IDREPLAY-PORT-60418Replay available from signal through human judgment and action
Learningpatterns learned: 4Decision memory updates after accepted/rejected outcome
Action payloadPortfolio optimize/divest workflowNext action: governed execution after approval limit $500K and human override check
Alternative actions table

Alternative actions table. This is the concrete recommendation surface: bp Sphere shows what it recommends, what it rejected, the expected value, the risk, and the action path.

Alternative actionConfidenceExpected value / impactRisk / tradeoffAction path
Optimize refining asset84%+$180M EBITDAOperational dependencyAsset optimization plan
Divest underperforming asset79%+$1.2B capital releasedMarket timingBoard review
Increase LNG weighting82%+0.3 ROACEPortfolio concentrationStrategy scenario
Runtime injection console

Use these controls during the workshop to show the mission changing state. Injection creates a named runtime event, updates mission KPI/readiness, adds a replay row, and opens the trace from signal to learning.

Mission KPI
Portfolio ROI

Awaiting scenario injection.

Mission readiness
Baseline

No injected blockers or opportunities yet.

Latest replay event
None

Click an injection below to create a replayable runtime event.

TimeEventScenarioDecision impact
--:--:--WaitingNo scenario injectedNo mission state change
Decision portfolio
DecisionImpactOwnerStatus
Optimize refining asset+$180M EBITDAPortfolio LeadRecommended
Divest underperforming asset+$1.2B capital releasedCFOBoard review
Increase LNG portfolio weighting+0.3 ROACEStrategy LeadScenario ready
Vertical operating-model audit

This validates that the mission is useful from frontline work through enterprise steering: Agent Runtime → Analyst → Supervisor → Function Leader/Controller → FB&T Leader → CFO.

Role layerWhat this layer can doExecutive credibility proof
Agent RuntimePortfolio, asset performance, value creation, risk, and carbon agents monitor enterprise assets.Asset-to-portfolio trace with value, risk, carbon, and recommendation.
AnalystReview asset performance, drivers, and evidence.Can explain why asset value changed.
SupervisorMonitor asset-review workload and escalations.Can see which analyses are blocked.
Function Leader / Portfolio LeadOptimize asset portfolio and recommend hold, invest, optimize, or divest.Can compare assets and scenario outcomes.
FB&T LeaderView portfolio health, value creation, and enterprise risk concentration.Can identify where intervention improves returns.
CFOSteer portfolio value and capital efficiency.Can decide grow, hold, optimize, transform, or divest.
Executive credibility scenarios

These are the scenarios BP can challenge live. The mission must show signal, context, evidence, policy, decision, action, replay, learning, and enterprise impact for each.

ScenarioInjectExpected runtime proofAction
Asset underperformanceAsset performance deterioratesInvest, hold, optimize, or divest recommendation is evidence-backed.
Refinery margin collapseMargin outlook changesPortfolio value, asset ranking, and transition options update.
LNG demand growthDemand outlook improvesGrowth/investment recommendation and scenario evidence are shown.
12+ dimension BP credibility audit
DimensionVisible proof requirementThis mission's answer
SignalBusiness event or market movement is visible and linked to a mission decision.Asset performance deteriorated · Scenario event REF-TICK-60418 at 14:17
ContextEntity, business unit, owner, system object, policy domain, and history are resolved.Resolved through enterprise context graph: owner, system object, business unit, history, and policy domain.
EvidenceSource records, documents, approvals, and source-system snapshots are inspectable.Evidence pack includes source system record, curated data snapshot, policy reference, and supporting document where applicable.
PolicyAuthority, control, risk, accounting, tax, treasury, or investment policies are referenced.Policy/runtime gate is evaluated before recommendation or action.
DecisionThe mission produces a named decision object, not just a metric or chart.Optimize refining asset
RecommendationRecommended response and alternatives are shown with impact.Optimize refining asset · confidence 84% · impact +$180M EBITDA
Human OverrideHuman approval, rejection, override, or escalation path is explicit.Approval, rejection, override reason, and escalation owner are retained in replay.
ActionAction payload is traceable to workflow, system update, notification, hold, hedge, or approval.Recommended
ReplayEvent, context, evidence, policy, recommendation, human judgment, action, and outcome can be replayed.Replay captures signal, context, evidence, policy, agent output, human judgment, action, outcome, and learning.
LearningAccepted/rejected outcomes are captured as future pattern memory.Outcome becomes pattern memory after human decision and realized impact are known.
Business ImpactFinancial, risk, cash, control, or value impact is quantified.+$180M EBITDA
Enterprise IntegrationSystems of record, data products, APIs, and future UDP context layer are named.Production systems · Trading systems · SAP S/4HANA · Treasury · example: Production system + SAP profitability
Source Drill-downUsers can drill from decision to source transaction, document, or curated data product.Source drill-down points to SOR/API record, Databricks/UDP data product, document, or market feed behind the decision.
ConfidenceThe decision carries confidence and uncertainty drivers.Confidence is shown in decision formation and decomposed into data freshness, evidence completeness, policy clarity, and model uncertainty.
AlternativesAt least two alternative actions or scenarios are available.Optimize refining asset | Divest underperforming asset | Increase LNG weighting
Audit TrailEvery material step is retained with timestamp, actor/agent, evidence, and policy result.Timestamped audit trail spans agent, human, policy, evidence, and action events.
Executive NarrativeThe mission can produce an executive answer: what happened, why, what to do, and expected outcome.Narrative answers what happened, why, recommended action, value, risk, and next owner.
Mission KPIA mission-level KPI changes when the scenario changes.Portfolio ROI
ReadinessReadiness or confidence updates when blockers, policies, or evidence status change.Mission readiness/confidence updates when signals, evidence, policies, or blockers change.
Enterprise ImpactThe mission shows enterprise-level consequence beyond one transaction.Which assets should bp grow, optimize, divest, or transform?
Runtime architecture
SignalBusiness event, market movement, policy breach, or performance variance.
ContextEntity, asset, customer, project, policy, historical pattern, and owner resolution.
Evidence + PolicySource records, documents, controls, authority, and data-quality checks.
Decision + ActionAlternatives, confidence, financial impact, owner, action payload, and approval path.
Replay + LearningFull trace, outcome, accepted/rejected recommendation, and pattern memory.