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Ndea

@ndea

A new intelligence science lab founded by @fchollet & @mikeknoop. Deep Learning-guided Program Synthesis. We're hiring.

Sumali Ekim 2024
94 Sinusundan10K Mga Tagasunod
Ndea
Ndea@ndea·
AI researcher @pidgeyusedgust of @ProseMsft joins us on the pod to discuss his favorite paper, "Semantic Programming by Example with Pre-trained Models" - a neurosymbolic framework where Flash Fill meets GPT-3. Symbolic for structure (syntactic), LLMs for meaning (semantic).
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Ndea@ndea·
New open role: Technical Staff - Search Guidance Accelerate science & innovation. Join our small, talent-dense, globally remote team. Apply your RL/DL search expertise to the most advanced program synthesis system. Also: $10k referral bonus Details: ndea.com/jobs/search-gu…
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Ndea
Ndea@ndea·
Watch the mini-recap episode: youtu.be/t_RgBe2CVms Subscribe + share your feedback!
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Ndea@ndea·
In the past 8 episodes of the Abstract Synthesis podcast, we've covered grammar filtering, temporal synthesis, inductive logic programming, vision-language programs, and symbolic world models. This week, we step back to reflect on 3 emergent themes.
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Ndea@ndea·
"...simply looking at a problem differently can greatly improve learning performance." New pod: Ndea researcher & ILP expert @CelineHocquette on "Relational Decomposition for Program Synthesis" - making symbolic learning systems more efficient without domain-specific knowledge.
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Ndea@ndea·
On the pod: @topwasu from @ellisk_kellis' lab at @Cornell discusses his paper PoE-World. We explore how symbolic world models can achieve strong generalization and sample efficiency by composing many small causal programs instead of learning a single monolithic model.
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Ndea@ndea·
Dive into the paper, "Synthesizing Visual Concepts as Vision-Language Programs". A neuro-symbolic approach to visual concept induction that treats VLMs as perceptual tools inside symbolic programs. Watch the full episode: youtu.be/uefqvsButp8
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Ndea@ndea·
Vision-language models (VLMs) can see well, but they struggle to reason. In this episode, @toniwuest (PhD researcher, @TUDarmstadt) explains how combining VLMs with program synthesis yields more reliable visual reasoning, with fewer tokens than chain-of-thought.
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Ndea@ndea·
Take a tour through the history & future of inductive logic programming (ILP) with Andrew Cropper. We discuss inductive bias, falsification-driven learning, solver-backed search, symbolic rule learning, and Popper, his influential modern ILP system.
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Ndea@ndea·
Watch the full interview: youtu.be/Hw-PHdgFCEQ Or listen anywhere you get your podcasts.
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Ndea@ndea·
On the pod: Professor @RiceUniversity and one of the most influential figures in logic, verification, and theoretical computer science, @vardi discusses his paper "Symbolic LTLf Synthesis" and the history of program synthesis.
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Ndea@ndea·
Pre-show convo with the great @vardi about symbolic + neural reasoning for the Abstract Synthesis pod. Subscribe to watch the full interview next week. Don't miss this one.
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Ndea@ndea·
Subscribe on YouTube or wherever you get your podcasts for upcoming episodes in 2026! youtu.be/yy_uqL86SSc
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Ndea@ndea·
Special episode of the Abstract Synthesis podcast recorded live @ NeurIPS 2025. Program synthesis meets vision, quantum, RL, world models, and scientific discovery. Featuring @ClementBonnet16, @toniwuest, @LeopoldoSarra, @topwasu, Jumyung Park, Colin Conwell, Chris Hamblin.
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Ndea@ndea·
New Abstract Synthesis podcast episode! Kedar Namjoshi of @BellLabs discusses his extended abstract "Program Synthesis And Non-monotonic Reasoning". Explore the gap between formal specifications and human expectations in IoT control programs + multi-agent robotics systems.
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