Command Center

Live burn per owner, dollar-ranked actions ready to approve — illustrative pilot data
Date range: Last 30 days
Region: All regions
Service: All (Cloud + Tokens)
Spend this month
$806k
↑ 9% vs plan
Savings identified
$91k
4 actions ready
Approved this month
$0k
approve actions below
Anomalies flagged
6
2 need review today

Spend trend & forecast — cloud vs. tokens

Actuals through today (Jul 16); dotted lines are P50 predictions to month end

Budget: $850k Today · Jul 16 Jun 16 Aug 15
Cloud Tokens

Top recommendations

Ranked by dollar impact, one click to approve

Idle GPU cluster
ML team
$41k
Route 60% of calls → smaller model
Optimization agent
$23k
Semantic + context caching
Optimization agent
$18k
Delete 1.2k orphaned volumes
Storage cleanup
$9k

Attribution snapshot

Top spenders this month

ML Platform
$312k
Payments Eng
$188k
Risk & Fraud AI
$143k
Data Platform
$76k
Digital Channels
$54k

Anomalies today

Flagged by the forecasting agent

GPU burst · Risk AI+312% vs. baseline
Token spike · retry loop2.1× normal
Egress · Data Platformresolved

Breach forecast

Probability of exceeding budget ceiling

This month14%
Next month61%
Q3 total73%

Predict

Forecast compute, storage and token demand as a distribution, not a guess
Horizon: Next 8 weeks
Region: All regions
Service: All (Cloud + Tokens)

Projected monthly spend — P10–P90 band vs. budget ceiling

Solid line is realized spend to date; dotted lines are the P10–P90 forecast from today forward

Budget ceiling Jun 25 Today · Jul 16 Wk 4 · Aug 13 Wk 8 · Sep 10
Forecast generated today, Jul 16, shows the ceiling being crossed in Week 6 (Aug 27) — already flagged at Week 4 (Aug 13), giving two weeks of runway to act. Click a chart marker for the agent's full reasoning.

Per-service forecast — this month, P50 vs. ceiling share

Click a row to see which signals the model weighted most

ServiceP10 – P90 bandBreach risk
Risk & Fraud AI (GPU)
73%
ML Platform (tokens)
41%
Payments Engineering
19%
Data Platform
8%
Select a service above to see its top forecast drivers.

Agent reasoning log

Live trace of the forecasting agent's decisions this week

08:02InfoNightly retrain complete on 18mo of usage history — MAPE improved from 4.6% → 4.2%.
08:04DecisionRe-forecast issued: P50 $806k, band $742k–$894k for the current month.
09:15AlertRisk & Fraud AI GPU usage 3.1σ above its rolling baseline — breach probability recalculated to 73% for Week 6.
09:16DecisionFlagged to Optimization Agent for a routing recommendation; surfaced on the Overview command center for approval.

Attribute

Every dollar and token mapped to an owner, in real time — no tagging debt
Date range: This month
Region: All regions
Service: All (Cloud + Tokens)

Spend by team — this month

Drawn from the cost attribution graph, no manual tagging required — $773k total, split by team and by source

$420k Cloud $353k Tokens
ML Platform Payments Engineering Risk & Fraud AI Data Platform Digital Channels
TeamCloudTokensTotal
ML Platform
$312k
Payments Engineering
$188k
Risk & Fraud AI
$143k
Data Platform
$76k
Digital Channels
$54k
CloudTokens

How ambiguous spend gets resolved without a tag

MonInfo14 untagged GPU nodes observed in shared cluster ml-shared-01.
MonDecisionUsage-pattern match to Risk & Fraud AI's inference workload (job scheduling correlation 0.91) → $41k attributed at 82% confidence.
TueAlert$21k in shared K8s spend has no confident owner (best match 58%, below the 70% auto-attribute threshold) — routed to manual review.
WedInfoAttribution graph re-scored nightly against 40+ signals: service account, VPC, job labels, deploy pipeline, on-call rotation.

Optimize & Pre-buy

Rank quantified savings actions, then commit ahead of demand — the two levers that actually move the bill
Date range: This month
Region: All regions
Service: All (Cloud + Tokens)
Ranked savings
$91k
Demand pre-committed
89%
Human-gated actions
100%

Optimize — cut what's already being spent

Four levers, ranked by confidence and dollar impact — no chart needed to see which ones matter

Idle GPU cleanup — $41k/mo

Clusters idle 6+ days with zero scheduled jobs. 97% confidence — safe to approve in one click.

Model routing & right-sizing — $23k/mo

Route ~60% of calls to a smaller model where quality holds up in testing — ~80% lower cost-per-answer, 88% confidence.

Semantic + context caching — $18k/mo

Serve repeated prompts from cache instead of re-computing them. Needs a small integration lift — 71% confidence.

Orphaned volume cleanup — $9k/mo

1.2k volumes with zero attachment events for 30+ days. 99% confidence — flagged auto-safe.

Monthly token cost — lever by lever

$63.9k → $22.4k, ≈65% lower, applied in sequence — the one chart worth keeping here

Baseline Caching Routing Batching PTU floor $63.9k $22.4k

Pre-buy — commit ahead of demand

Once the steady-state floor is known, lock in the cheapest instrument for it

Commitment ladder

Procurement agent recommendation for the steady baseline, human-gated

InstrumentCoverageDiscount vs. on-demand
Reserved instances (1-yr)
−42%
Savings plan (compute)
−55%
Provisioned throughput (LLM)
−72%
89% covered
Steady-state demand committed

Approval gate

No material commitment is placed automatically — every buy routes to a named approver before it executes.

Connectors

Every cloud and model provider streaming into one unified cost + usage schema
Connected
AWS
Cost Explorer + CUR · usage every 15 min
Synced 2 min ago$350k
Connected
Azure
Cost Management API · usage every 15 min
Synced 4 min ago$120k
Connected
GCP
Billing export (BigQuery) · hourly
Synced 11 min ago$73k
Connected
Kubernetes / GPU
Node & pod-level cost agent · 5 min
Synced just now$141k
Connected
OpenAI
Usage API · token + spend, near real-time
Synced just now$68k
Connected
Anthropic
Usage & cost API · near real-time
Synced just now$54k
Pending
Self-hosted LLMs
GPU metering agent · awaiting install on vLLM cluster
Setup link sent to platform team
Add a connector
Any provider with a billing or usage API can be wired in during Phase 3
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