Overview
ML Cost Intelligence Dashboard
MLCostIntel - Cost Intelligence Built for Machine Learning on AWS
MLCostIntel is a cost intelligence platform purpose-built for machine learning workloads on AWS. It helps ML engineers, platform teams, and FinOps leaders understand the real cost of training jobs, GPU workloads, and large language model usage across their environments.
The Problem with Traditional Cloud Cost Tools
Generic cloud cost tools provide high-level billing visibility but lack the context needed for machine learning workloads. They cannot attribute shared GPU costs across concurrent experiments, correlate infrastructure spend with specific training runs, or break down LLM token usage by model and application. MLCostIntel bridges that gap by automatically connecting infrastructure usage with ML experiments, training runs, and model deployments - giving teams clear, experiment-level insight into what their ML workflows actually cost.
Key Capabilities
- GPU Utilization and Idle Resource Detection: Identify underutilized compute, detect idle GPU instances between experiment runs, and optimize ML infrastructure efficiency.
- SageMaker Training Job Tracking: Monitor costs at the individual training job and experiment level, with attribution that goes beyond what AWS Cost Explorer tagging provides.
- LLM and Amazon Bedrock Cost Monitoring: Analyze generative AI usage across Amazon Bedrock and LLM APIs. Track token usage and model requests to understand the real cost of running AI workloads.
- Cost Anomaly Detection: Automatically detect unexpected cost spikes across ML pipelines, enabling platform teams to triage issues before budgets are exceeded.
- Experiment-Level Cost Attribution: Connect infrastructure costs directly to ML experiments and training runs without requiring manual tagging or custom instrumentation.
Example Use Case
A platform engineering team running hundreds of GPU-hours weekly notices a steady increase in their SageMaker bill but cannot identify the source using native AWS tools. Using MLCostIntel, they discover that a significant portion of GPU spend comes from idle notebook instances left running between experiment iterations and from over-provisioned training jobs that complete in a fraction of their allocated time. By right-sizing instances and implementing automated shutdown policies informed by MLCostIntel's utilization data, the team reclaims wasted compute spend and redirects budget toward productive experimentation.
AWS Integration
MLCostIntel integrates with core AWS services including Amazon SageMaker, Amazon Bedrock, Amazon EC2 GPU instances, and AWS Cost Explorer. The platform reads infrastructure telemetry and billing data to provide unified cost views across your ML environment.
Prerequisites and Scope
- Supported AWS services: Amazon SageMaker, Amazon Bedrock, EC2 GPU instances
- Requires cross-account IAM role for billing and infrastructure data access
- Works with AWS Organizations for multi-account environments
Getting Started
To begin using MLCostIntel, subscribe through AWS Marketplace and follow the onboarding flow to connect your AWS accounts. Contact contact@mlcostintel.com to request a live demo or discuss a pilot engagement tailored to your ML environment.
Security and Data Handling
MLCostIntel accesses billing and infrastructure metadata through scoped IAM roles with least-privilege permissions. Contact our team for detailed information about data handling practices, encryption, and compliance posture.
Highlights
- Real-Time ML Infrastructure Cost Visibility Gain clear insight into machine learning infrastructure costs on AWS. Track SageMaker training jobs, experiments, and GPU workloads to understand exactly where ML spending occurs.
- GPU Utilization & Idle Resource Optimization Identify underutilized compute and reduce unnecessary GPU spend. Monitor utilization, detect idle resources, and optimize ML infrastructure efficiency.
- LLM and Bedrock Cost Monitoring Analyze generative AI usage across Amazon Bedrock and LLM APIs. Track token usage and model requests to understand the real cost of running AI workloads
Details
Introducing multi-product solutions
You can now purchase comprehensive solutions tailored to use cases and industries.
Features and programs
Financing for AWS Marketplace purchases
Pricing
Dimension | Description | Cost/month |
|---|---|---|
Monitoring Starter - Up to $50K/month ML Spend | ML infrastructure cost monitoring for teams running smaller ML workloads. Includes GPU utilization monitoring, ML workload cost visibility, and SageMaker training cost tracking. | $500.00 |
Monitoring Standard - $50k - $150K/month ML Spend | Advanced ML workload cost analysis with GPU utilization monitoring, SageMaker training cost tracking, and ML pipeline cost visibility for growing ML platforms. | $2,000.00 |
Monitoring Scale - $150K - $500K/month ML Spend | Full ML infrastructure cost visibility and optimization insights for large ML platforms running production training workloads and GPU clusters. | $7,500.00 |
Vendor refund policy
Refund requests for MLCostIntel subscriptions purchased through AWS Marketplace may be submitted within 14 days of the initial purchase. To request a refund, customers must contact support and provide their AWS Marketplace subscription details. Approved refunds will be processed according to AWS Marketplace procedures. Contact: support@mlcostintel.com .
How can we make this page better?
Legal
Vendor terms and conditions
Content disclaimer
Delivery details
Software as a Service (SaaS)
SaaS delivers cloud-based software applications directly to customers over the internet. You can access these applications through a subscription model. You will pay recurring monthly usage fees through your AWS bill, while AWS handles deployment and infrastructure management, ensuring scalability, reliability, and seamless integration with other AWS services.
Support
Vendor support
Support Channels
MLCostIntel provides email support for all paid subscribers.
- General Support: support@mlcostintel.com
- General Inquiries: contact@mlcostintel.com
- Response Time: 1-2 business days for standard support
Enterprise Support
Enterprise customers receive dedicated support with priority response times as part of their direct engagement agreement.
Getting Started and Demos
To request a live demo, discuss a pilot engagement, or get help with onboarding and connecting your AWS accounts, contact contact@mlcostintel.com .
Refunds and Billing
For questions about billing, subscription management, or refund requests, contact support@mlcostintel.com with your AWS Marketplace subscription details.
AWS infrastructure support
AWS Support is a one-on-one, fast-response support channel that is staffed 24x7x365 with experienced and technical support engineers. The service helps customers of all sizes and technical abilities to successfully utilize the products and features provided by Amazon Web Services.