Mojo Programming Language Makes Its Debut on Mac Platform
Mojo Programming Language Makes Its Debut on Mac Platform
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Mojo Programming Language Makes Its Debut on Mac Platform
News on October 20th – In a recent development, the Mojo programming language has made its entry into the Mac platform, offering AI developers an experience similar to Python.
The development of the Mojo programming language is spearheaded by Chris Lattner, a prominent figure who played a significant role in the creation of Apple’s Swift programming language.

During his tenure at Apple, Lattner was primarily involved in Xcode development. He later worked at Tesla for a period and joined Google’s Brain AI project in 2017. In 2022, Lattner, along with collaborators, founded Modular AI to oversee the development of the Mojo programming language.
Mojo was made available for download in September this year, initially supporting only Linux systems. In addition to the compiler, the Mojo SDK includes a comprehensive set of developer and IDE tools for building and iterating Mojo applications.
Modular AI has reported that since the launch of the Mojo programming language on May 2nd, over 120,000 developers have registered to use the Mojo Playground, with more than 19,000 developers actively discussing Mojo on Discord and GitHub.
Mojo is described as a high-performance “Python++” programming language for computation, targeting AI developers. Over time, it is expected to evolve into a superset of Python. Currently, Mojo seamlessly integrates with any Python code and boasts an extensible programming model for performance-critical systems, including the common accelerators found in artificial intelligence, such as GPUs.