offscale.io

Scale from a single developer and server to 100s of engineering teams and 10,000 nodes.

graph TD
    subgraph Deployment
        cloud("Cloud (AWS; Azure; Google; ...)")
        native("Native (Windows; Linux; UNIX; ...)")
        vm("VMs; Docker; …")
        wasm("WASM")
    end

    subgraph ML
        ml_python("Python compiler")
    end
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graph TD
    subgraph Frontend
        android["Android (Kotlin [KMP])"]
        ios("iOS (Swift / KMP)")
        desktop("Desktop (KMP)")
        web("Web (KMP)")
        cli("CLI")
        sdk("SDK (C)")
    end

    subgraph Backend
        c("C")
        python("Python")
        rust("Rust")
        typescript("TypeScript")
    end

    Backend <-->|OpenAPI compilers| Frontend
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Deploy at any scale

From one [e.g., embedded] device to 10,000 servers:

Purpose Repo
Provision nodes specified in JSON, across 50+ clouds offstrategy
SSH into node provisioned by offstrategy|offset offshell
Deprovision node provisioned by offstrategy|offset from cloud providers offswitch
Bring Your Own Node (BYON) [so can use ↕] offset
Deploy any of 50 "offregister-" prefixed softwares—including clustered databases—to nodes provisioned by offstrategy|offset offregister

Competitive advantage

  • Support for more cloud vendors;
  • Uses normal Python packages deployable to PyPi, as opposed to Puppet/Chef/Ansible with their custom systems;
  • [WiP] Deploy to any operating system (cross-platform: SunOS, Windows, Linux, macOS, OpenBSD);
  • [WiP] Experiment with different versions of each package, including clustered variants.

Multicloud

From one cloud vendor to many:

  • [old] See aforementioned Apache Libcloud and Fabric utilising Python repos;
  • [new] C89 google-cloud-c library (soon: auto-generate entire library, and other vendors);
  • [planned] autogenerate vendors other than Google Cloud.

Competitive advantage

  • [C89] Can be called from most any programming language and runs in all environments;
  • [planned] Build specific abstractions for multicloud, like: container-as-a-Service; ML-as-a-Service; Storage-as-a-Service; &etc.

Multi-ML

From one machine-learning framework to many:

Google Other vendors
tensorflow pytorch
keras skorch
flax sklearn
trax xgboost
jax cntk

Competitive advantage

  • Keep up-to-date with latest innovations without porting to favourite framework;
  • Experiment with every model on all major Python ML frameworks.

Native development, cross-platform, without tradeoffs

Compilers to automatically translate—within and—between:

Language Compiler
Python cdd-python
C cdd-c
Java (Android) cdd-java
Kotlin (Android) cdd-kotlin
Swift (iOS) cdd-swift
TypeScript (Angular) cdd-ts-ng
Rust cdd-rust

Competitive advantage

  • [intra-language] Automatically synchronise tests (& mocks), docs, types & interfaces;
  • [exolanguage] Translate changes across language boundaries;
  • Develop multi-language applications—e.g., Android, iOS, web, backend—as fast as single-language applications (compare with: Django or Ruby on Rails) and at a higher quality thanks to increased consistency, test coverage and doc coverage.