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ARXIV:2604.18907 · PROGRAM SYNTHESIS · SUBMITTED 22 APR · 20:35 UTC · FRESHNESS STALE
ARXIV:2604.18907PROGRAM SYNTHESISSUBMITTED 22 APR · 20:35 UTCFRESHNESS STALEMatthew V. Macfarlane · Clément Bonnet · Herke van Hoof · Levi H. S. Lelis · arXiv
Develops a neural interpreter that learns its own symbolic programming language for end-to-end gradient-based program synthesis and adaptation.
Opportunity summary
Pain Develops a neural interpreter that learns its own symbolic programming language for end-to-end gradient-based program synthesis and adaptation.
Evidence 0 refs | 3 sources | 50% coverage
Blocker Evidence unverified
Develops a neural interpreter that learns its own symbolic programming language for end-to-end gradient-based program synthesis and adaptation. Symbolic methods offer compositional generalisation and data efficiency, yet their scalability is constrained by formalisms such…
A central challenge in program induction has long been the trade-off between symbolic and neural approaches. Symbolic methods offer compositional generalisation and data efficiency, yet their scalability is constrained by formalisms such as domain-specific…
ScienceToStartup currently rates this 4.0/10 on the public viability pass. Crucially, this same differentiability enables powerful test-time adaptation. Code availability is flagged in the production record; the public repository link still needs proof alignment.
Program Synthesis moved forward this cycle; last verified April 2026. Public score 4.0/10. Production flags indicate code availability.
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Develops a neural interpreter that learns its own symbolic programming language for end-to-end gradient-based program synthesis and adaptation.
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10.48550/arXiv.2604.18907Develops a neural interpreter that learns its own symbolic programming language for end-to-end gradient-based program synthesis and adaptation.
Abstract
A central challenge in program induction has long been the trade-off between symbolic and neural approaches. Symbolic methods offer compositional generalisation and data efficiency, yet their scalability is constrained by formalisms such as domain-specific languages (DSLs), which are labour-intensive to create and may not transfer to new domains. In contrast, neural networks flexibly learn from data but tend to generalise poorly in compositional and out-of-distribution settings. We bridge this divide with an instance of a Latent Adaptation Network architecture named Neural Language Interpreter (NLI), which learns its own discrete, symbolic-like programming language end-to-end. NLI autonomously discovers a vocabulary of primitive operations and uses a novel differentiable neural executor to interpret variable-length sequences of these primitives. This allows NLI to represent programs that are not bound to a constant number of computation steps, enabling it to solve more complex problems than those seen during training. To make these discrete, compositional program structures amenable to gradient-based optimisation, we employ the Gumbel-Softmax relaxation, enabling the entire model to be trained end-to-end. Crucially, this same differentiability enables powerful test-time adaptation. At inference, NLI's program inductor provides an initial program guess. This guess is then refined via gradient descent through the neural executor, enabling efficient search for the neural program that best explains the given data. We demonstrate that NLI outperforms in-context learning, test-time training, and continuous latent program networks on tasks that require combinatorial generalisation and rapid adaptation to unseen tasks. Our results establish a new path toward models that combine the compositionality of discrete languages with the gradient-based search and end-to-end learning of neural networks.
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Dimensions overall score 4.0
PROBLEM
Develops a neural interpreter that learns its own symbolic programming language for end-to-end gradient-based program synthesis and adaptation. Symbolic methods offer compositional generalisation and data efficiency, yet their scalability is constrained by formalisms such as dom...
METHOD
A central challenge in program induction has long been the trade-off between symbolic and neural approaches. Symbolic methods offer compositional generalisation and data efficiency, yet their scalability is constrained by formalisms such as domain-specific languages (DSLs), whic...
RESULT
ScienceToStartup currently rates this 4.0/10 on the public viability pass. Crucially, this same differentiability enables powerful test-time adaptation. Code availability is flagged in the production record; the public repository link still needs proof alignment.
WHY NOW
Program Synthesis moved forward this cycle; last verified April 2026. Public score 4.0/10. Production flags indicate code availability.
{"file name": "input.pdf", "number of pages": 26, "author": "Matthew V. Macfarlane; Cl\u00e9ment Bonnet; Herke van Hoof; Levi H. S. Lelis", "title": "Gradient-Based Program Synthesis with Neurally Interpreted Languages"
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Develops a neural interpreter that learns its own symbolic programming language for end-to-end gradient-based program synthesis and adaptation.
Segment
Program Synthesis
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Commercial read
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