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Your premium consulting partner for Data and AI

Get Started with Bitstrapped

Accelerate your journey, from Data to AI

Data Driven
phase
01

Data Strategy

Craft a visionary plan for unparalleled data-driven success

Data Aware
phase
02

Data Foundations

Build a rock-solid data infrastructure for limitless scale

Data Assisted
phase
03

Data Integration

Connect, converge, and unlock the power of unified data

Data Driven
phase
04

AI Innovation

Innovate at the speed of AI by transforming data insights into actions

Data Intelligent
phase
05

AI in Production

Deploy intelligent AI models for your products to boost productivity and delight customers

01
Data Strategy
02
Data Foundations
03
Data Integration
04
AI Innovation
05
AI in Production

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Join the leading enterprises and industry disruptors who work with Bitstrapped

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SOLUTIONS

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Celebrating customer success

Predictive Maintenance for Oil and Gas Supermajors

Cloud-based simulations to predict failure of equipment and improve the efficiency of maintenance operations

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Event-Driven Kubernetes pipelines for high performant at-home patient health monitoring systems

Reducing patient falls — a billion dollar cost to the healthcare system, can be combatted with help of Kubernetes Engine

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Predictive responsiveness in neurological recovery therapy

Medical devices and robotics company leverages machine learning to launch predictive models to classify the level of responsiveness of in-home neurological recovery therapy

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Do it right the first time,
with our proven path to success.

85% of machine learning models end as experiments. Don't take chances, work with Bitstrapped to avoid the pitfalls and blindspots at the (3) stages of the machine learning journey:

1

ML Readiness

  • Validate data and objectives
  • Organize, Clean, Augment, Enrich datasets
  • Prototype initial models for validation
2

Infrastructure for ML

  • Establish foundational Infrastructure for ML
  • Put your Data platform and tooling to work
  • Architectures to train, evaluate, validate, monitor, and deploy models
3

Scale and Operate ML

  • Special Ops teams to manage
    and evolve ML environments
  • Ongoing Cloud platform management
  • Roadmap planning and strategic wins