Whitepaper 'FinOps and cost management for Kubernetes'
Please consider giving OptScale a Star on GitHub, it is 100% open source. It would increase its visibility to others and expedite product development. Thank you!
Ebook 'From FinOps to proven cloud cost management & optimization strategies'
OptScale FinOps
OptScale — FinOps
FinOps overview
Cost optimization:
AWS
MS Azure
Google Cloud
Alibaba Cloud
Kubernetes
MLOps
OptScale — MLOps
ML/AI Profiling
ML/AI Optimization
Big Data Profiling
OPTSCALE PRICING
cloud migration
Acura — Cloud migration
Overview
Database replatforming
Migration to:
AWS
MS Azure
Google Cloud
Alibaba Cloud
VMWare
OpenStack
KVM
Public Cloud
Migration from:
On-premise
disaster recovery
Acura — DR & cloud backup
Overview
Migration to:
AWS
MS Azure
Google Cloud
Alibaba Cloud
VMWare
OpenStack
KVM
Whitepapers

Hystax OptScale - MLOps open source platform

OptScale is an MLOps open source platform
OptScale MLOps and FinOps schema

OptScale MLOps capabilities

Runsets to automatically scale a number of experiments

  • Automated run of a number of experiments with configurable datasets, hyperparameter ranges, and model versions
  • Optimal hardware with cost-efficient usage of Spot, Reserved Instances / Savings Plans
  • Configurable experiment goals and success criteria
  • Various complete/abort conditions – take first successful, complete all
  • Integrated profiling to identify bottlenecks

Team and individual ML engineer progress/status observability

  • List of models with goals status and active recommendations
  • Tracking the number and quality of experiments run by a team
  • Cost of an overall model and individual experiments
aws
MS Azure
google cloud platform
Alibaba Cloud
Kubernetes
kubeflow
TensorFlow
spark-apache

Supported platforms

ML/AI task profiling and optimization, bottleneck identification

  • ML/AI model training tracking and profiling, inside and outside metrics collection
  • CPU/RAM/GPU/Disk IO correlation tracking
  • Minimal cloud cost for ML/AI experiments and development by utilizing Reserved Instances/Savings Plans and dozens of optimization scenarios

ML/AI optimization recommendations

  • Utilizing Reserved/Spot Instances and Savings Plans
  • Rightsizing and instance family migration
  • Detecting CPU, GPU, RAM, and IO bottlenecks
  • Cross-regional traffic
  • Experiment/run comparison

PaaS or any external service instrumentation

  • Cost, performance, and output details of any API call to PaaS or an external service
  • Metrics tracking and visualization
  • Performance and cost optimization of API calls
  • Cross-regional traffic
  • S3, Redshift, BigQuery – ready, unified way to add more services
snowflake

Contacts

Email: [email protected]
Phone: +1 628 251 1280
Address: 1250 Borregas Avenue Sunnyvale, CA 94089

Enter your email to be notified about new and relevant content.

Thank you for joining us!

We hope you'll find it usefull

You can unsubscribe from these communications at any time. Privacy Policy