September 10, 2020 By Pearl Chen 4 min read

What do railroad tracks, ink-jet printers, and nutrition labels have to do with open source technologies and AI? Each helps IBM® define its commitment to open source, a 25-year heritage that is at the core of developing AI with trust and transparency. More recently, IBM has ramped up initiatives in open sourcing technologies that support fair and unbiased AI.

Open source is in the DNA of IBM. Long before our 2019 acquisition of Red Hat, a global leader in open source technology, IBM helped establish The Linux Foundation, The Apache Software Foundation and Eclipse Foundation. We contributed software projects for the open source community to host. We championed open governance and standards, and we advocated for public collaboration and transparency. This decades-long history is actually one of our best-kept secrets, and it helps unlock the “black box of AI” in a modern era when trust is a top concern for many companies considering an AI investment.

According to Mike Hind, Distinguished Research Staff Member at IBM Research, two key objectives lie at the heart of the open source culture at IBM:

  • Accelerate science: Scientific advancement builds on results achieved by others. When these results are provided in an open source system, other researchers can focus on advancing science and avoid the burden of re-implementing the software described in research papers.
  • Democratize the industry: Providing software building blocks allows people to develop more sophisticated projects on top of already-established standards, reducing redundancies.

“Think of it like a railroad,” says Hind. “If the tracks are already there, you can focus on building better trains. You’re not starting from scratch.”

Although a company doesn’t earn revenue directly from open source technology, it can benefit from creating an ecosystem that uses open source tools. Similar to how an ink-jet printer can create a new market for ink cartridges, this ecosystem can open new business opportunities such as consulting services and related offerings.

IBM’s open source strategy for trusted AI

So how does IBM embrace open source — and what is the connection to trust and transparency in AI? Mike Hind details a combination of software and accessible educational materials that form the cornerstone of IBM’s trusted AI open source strategy:

Creating enterprise-ready, explainable AI with the help of the open source community

Nurturing our open source community provides IBM with a pragmatic approach to implementing our research in the real world. “People think when there’s a research result published in a paper, that it’s done. It’s not done,” says Hind. “When we productize research, incorporating customer feedback from our open source community is crucial. Part of the transition from research to product is to determine which research gems are appropriate for an enterprise environment.” When it comes to completing the end-to-end product lifecycle, including capabilities for explainable AI and model monitoring, evaluating different use cases in an open system has been vital in turning theory into reality.

Who benefits from a robust open source community?

Mike Hind identifies an expansive ecosystem. By using open source:

  • Data scientists can try out ideas in real software without reading reports and implementing the ideas themselves.
  • Researchers can share results quickly and make true apples-to-apples comparisons on a common platform.
  • Executives and business leaders can develop a framework of thinking that helps them make key decisions as informed buyers and evaluators.
  • Policy makers and social scientists gain more education so they can provide key feedback on important social issues such as trust and transparency in AI.

“It’s a big mistake to have just data scientists and researchers define trust,” explains Hind. “Trust is a human characteristic. You need psychologists, philosophers and other stakeholders to inform what that really means.” Open source toolkits that help all participants — from both the arts and sciences — speak the same language can foster the deep collaboration needed to protect trust in AI.

When businesses can explain and trust AI, they can increase the number and accuracy of models in production — resulting in measurable economic value. Open source is a key part of this effort. People can share ideas, advance science and gain visibility into a secure and fair AI lifecycle, all of which are rooted in core IBM values to make technology that positively impacts the world. Cultivating AI trust and transparency through open source technologies is excellent for the bottom line. But even more important, it’s simply the right thing to do.

Next steps

Integrate a wide array of open source technologies on our unified data and AI platform, IBM Cloud Pak® for Data.

See product benefits, use cases, customer stories and testimonials at our website.

Learn about the future of AI-powered analytics in our newsletter featuring complimentary research from Gartner.

Dive deeper into how IBM supports trust and transparency with explainable AI in this two-sheeter.

Was this article helpful?
YesNo

More from Cloud

IBM Tech Now: April 8, 2024

< 1 min read - ​Welcome IBM Tech Now, our video web series featuring the latest and greatest news and announcements in the world of technology. Make sure you subscribe to our YouTube channel to be notified every time a new IBM Tech Now video is published. IBM Tech Now: Episode 96 On this episode, we're covering the following topics: IBM Cloud Logs A collaboration with IBM watsonx.ai and Anaconda IBM offerings in the G2 Spring Reports Stay plugged in You can check out the…

The advantages and disadvantages of private cloud 

6 min read - The popularity of private cloud is growing, primarily driven by the need for greater data security. Across industries like education, retail and government, organizations are choosing private cloud settings to conduct business use cases involving workloads with sensitive information and to comply with data privacy and compliance needs. In a report from Technavio (link resides outside ibm.com), the private cloud services market size is estimated to grow at a CAGR of 26.71% between 2023 and 2028, and it is forecast to increase by…

Optimize observability with IBM Cloud Logs to help improve infrastructure and app performance

5 min read - There is a dilemma facing infrastructure and app performance—as workloads generate an expanding amount of observability data, it puts increased pressure on collection tool abilities to process it all. The resulting data stress becomes expensive to manage and makes it harder to obtain actionable insights from the data itself, making it harder to have fast, effective, and cost-efficient performance management. A recent IDC study found that 57% of large enterprises are either collecting too much or too little observability data.…

IBM Newsletters

Get our newsletters and topic updates that deliver the latest thought leadership and insights on emerging trends.
Subscribe now More newsletters