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Main Authors: Gliozzo, Alfio Massimiliano, Lee, Junkyu, Defosse, Nahuel
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.04241
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author Gliozzo, Alfio Massimiliano
Lee, Junkyu
Defosse, Nahuel
author_facet Gliozzo, Alfio Massimiliano
Lee, Junkyu
Defosse, Nahuel
contents Agentic AI is rapidly transitioning from research prototypes to enterprise deployments, where requirements extend to meet the software quality attributes of reliability, scalability, and observability beyond plausible text generation. We present Agentics 2.0, a lightweight, Python-native framework for building high-quality, structured, explainable, and type-safe agentic data workflows. At the core of Agentics 2.0, the logical transduction algebra formalizes a large language model inference call as a typed semantic transformation, which we call a transducible function that enforces schema validity and the locality of evidence. The transducible functions compose into larger programs via algebraically grounded operators and execute as stateless asynchronous calls in parallel in asynchronous Map-Reduce programs. The proposed framework provides semantic reliability through strong typing, semantic observability through evidence tracing between slots of the input and output types, and scalability through stateless parallel execution. We instantiate reusable design patterns and evaluate the programs in Agentics 2.0 on challenging benchmarks, including DiscoveryBench for data-driven discovery and Archer for NL-to-SQL semantic parsing, demonstrating state-of-the-art performance.
format Preprint
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institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Agentics 2.0: Logical Transduction Algebra for Agentic Data Workflows
Gliozzo, Alfio Massimiliano
Lee, Junkyu
Defosse, Nahuel
Artificial Intelligence
Machine Learning
Agentic AI is rapidly transitioning from research prototypes to enterprise deployments, where requirements extend to meet the software quality attributes of reliability, scalability, and observability beyond plausible text generation. We present Agentics 2.0, a lightweight, Python-native framework for building high-quality, structured, explainable, and type-safe agentic data workflows. At the core of Agentics 2.0, the logical transduction algebra formalizes a large language model inference call as a typed semantic transformation, which we call a transducible function that enforces schema validity and the locality of evidence. The transducible functions compose into larger programs via algebraically grounded operators and execute as stateless asynchronous calls in parallel in asynchronous Map-Reduce programs. The proposed framework provides semantic reliability through strong typing, semantic observability through evidence tracing between slots of the input and output types, and scalability through stateless parallel execution. We instantiate reusable design patterns and evaluate the programs in Agentics 2.0 on challenging benchmarks, including DiscoveryBench for data-driven discovery and Archer for NL-to-SQL semantic parsing, demonstrating state-of-the-art performance.
title Agentics 2.0: Logical Transduction Algebra for Agentic Data Workflows
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2603.04241