All Projects → h1st-ai → H1st

h1st-ai / H1st

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The AI Application Platform We All Need. Human AND Machine Intelligence. Based on experience building AI solutions at Panasonic: robotics predictive maintenance, cold-chain energy optimization, Gigafactory battery mfg, avionics, automotive cybersecurity, and more.

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Join the Human-First AI revolution

“We humans have .. insight that can then be mixed with powerful AI .. to help move society forward. Second, we also have to build trust directly into our technology .. And third, all of the technology we build must be inclusive and respectful to everyone.”
— Satya Nadella, Microsoft CEO

As trail-blazers in Industrial AI, our team at Arimo-Panasonic has found Satya Nadella‘s observations to be powerful and prescient. Many hard-won lessons from the field have led us to adopt this approach which we call Human-First AI (H1st AI).

Today, we‘re excited to share these ideas and concrete implementation of H1st AI with you and the open-source data science community!

Learn the Key Concepts

Human-First AI (H1st AI) solves three critical challenges in real-world data science:

  1. Industrial AI needs human insight: In so many important applications, there isn‘t enough data for ML. For example, last year‘s product‘s data does not apply to this year‘s new model. Or, equipment not yet shipped obviously have no data history to speak of. H1st combines human knowledge and any available data to enable intelligent systems, and companies can achieve earlier time-to-market.

  2. Data scientists need human tools: Today‘s tools are to compete rather than to collaborate. When multiple data scientists work on the same project, they are effectively competing to see who can build the better model. H1st breaks a large modeling problem into smaller, easier parts. This allows true collaboration and high productivity, in ways similar to well-established software engineering methodology.

  3. AI needs human trust: AI models can't be deployed when they lack user trust. AI increasingly face regulatory challenges. H1st supports model description and explanation at multiple layers, enabling transparent and trustworthy AI.

Get started

H1st runs on Python 3.7 or above. Install with pip3 install h1st. For Windows, please use 64bit version and install VS Build Tools before installing H1st.

See the examples/HelloWorld folder for simple "Hello world" examples of using H1st rule-based & machine-learned models and using H1st Graph.

For a simple real-world data science example using H1st Model API, take a look at the forecasting example.

To fully understand H1st philosophy and power, check out the H1st Automotive Cybersecurity Tutorial.

Read the Tutorials, Wiki, and API Documentation

We highly recommend following the H1st Automotive Cybersecurity Tutorial as well as the quick-start examples in the examples/HelloWorld folder.

See the wiki for design consideration e.g. H1st.AI Model Explained, H1st.AI Graph Explained.

Our full API Documentation is at docs.h1st.ai.

See our public H1st.AI's roadmap.

Join and Learn from Our Open-Source Community

We are collaborating with the open-source community. For Arimo-Panasonic, use cases include industrial applications such as Cybersecurity, Predictive Maintenance, Fault Prediction, Home Automation, Avionic & Automotive Experience Management, etc.

We'd love to see your use cases and your contributions to open-source H1st AI.

Note that the project description data, including the texts, logos, images, and/or trademarks, for each open source project belongs to its rightful owner. If you wish to add or remove any projects, please contact us at [email protected].