MTP: A Meaning-Typed Language Abstraction for AI-Integrated Programming
Jayanaka L. Dantanarayana, Yiping Kang, Kugesan Sivasothynathan, Christopher Clarke, Baichuan Li, Savini Kashmira, Krisztian Flautner, Lingjia Tang, Jason Mars

TL;DR
MTP introduces a semantic-based programming paradigm that simplifies AI-LLM integration by automating prompt handling, reducing development effort, and improving performance in AI-enhanced software development.
Contribution
MTP presents a novel language abstraction with new operators and representations that automate LLM interactions, simplifying AI-integrated programming and enhancing robustness.
Findings
Reduces coding complexity and development time.
Maintains or improves accuracy and efficiency.
Demonstrates robustness to degraded naming conventions.
Abstract
Software development is shifting from traditional programming to AI-integrated applications that leverage generative AI and large language models (LLMs) during runtime. However, integrating LLMs remains complex, requiring developers to manually craft prompts and process outputs. Existing tools attempt to assist with prompt engineering, but often introduce additional complexity. This paper presents Meaning-Typed Programming (MTP), a novel paradigm that abstracts LLM integration through intuitive language-level constructs. By leveraging the inherent semantic richness of code, MTP automates prompt generation and response handling without additional developer effort. We introduce the (1) by operator for seamless LLM invocation, (2) MT-IR, a meaning-based intermediate representation for semantic extraction, and (3) MT-Runtime, an automated system for managing LLM interactions. We implement…
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Taxonomy
TopicsNatural Language Processing Techniques
