Probabilistic Circuits (PCs) offer a unified framework for tractable probability distributions, enabling efficient probabilistic inference through structured computation graphs. Researchers are advancing their speed and scalability via GPU parallelization, tensorized designs, and even custom hardware like DAG Processing Units. With applications ranging from explainability and data compression to neuro-symbolic AI and large language model detoxification, PCs are emerging as a powerful foundation for the next wave of efficient, interpretable AI.Probabilistic Circuits (PCs) offer a unified framework for tractable probability distributions, enabling efficient probabilistic inference through structured computation graphs. Researchers are advancing their speed and scalability via GPU parallelization, tensorized designs, and even custom hardware like DAG Processing Units. With applications ranging from explainability and data compression to neuro-symbolic AI and large language model detoxification, PCs are emerging as a powerful foundation for the next wave of efficient, interpretable AI.

Why Researchers Are Betting on PCs to Power the Next Wave of AI

4 min read

Abstract and 1. Introduction

  1. Preliminaries and Related Work

  2. Key Bottlenecks in PC Parallelization

  3. Harnessing Block-Based PC Parallelization

    4.1. Fully Connected Sum Layers

    4.2. Generalizing To Practical Sum Layers

    4.3. Efficient Implementations by Compiling PC Layers

    4.4. Analysis: IO and Computation Overhead

  4. Optimizing Backpropagation with PC Flows

  5. Experiments

    6.1. Faster Models with PyJuice

    6.2. Better PCs At Scale

    6.3. Benchmarking Existing PCs

  6. Conclusion, Acknowledgements, Impact Statement, and References

A. Algorithm Details

B. Additional Technical Details

C. Experimental Details

D. Additional Experiments

\

2. Preliminaries and Related Work

Many probabilistic inference tasks can be cast into computing sums of products. By viewing them from a computation graph standpoint, PCs provide a unified perspective on many bespoke representations of tractable probability distributions, including Arithmetic Circuits (Darwiche, 2002; 2003), Sum-Product Networks (Poon & Domingos, 2011), Cutset Networks (Rahman et al., 2014), and Hidden Markov Models (Rabiner & Juang, 1986). Specifically, PCs define distributions with computation graphs consisting of sum and product operations, as elaborated below.

\

\ The key to guaranteeing exact and efficient computation of various probabilistic queries is to impose proper structural constraints on the DAG of the PC. As an example, with smoothness and decomposability (Poon & Domingos, 2011), computing any marginal probability amounts to a forward pass (children before parents) following Equation (1), with the only exception that we set the value of input nodes defined on marginalized variables to be 1. Please refer to Choi et al. (2020) for a comprehensive overview of different structural constraints and what queries they enable.

\

\ For example, Peharz et al. (2020a) demonstrate how the above parameter gradients can be used to apply ExpectationMaximization (EM) updates, and Vergari et al. (2021) elaborates how the forward pass can be used to compute various probabilistic and information-theoretic queries when coupled with PC structure transformation algorithms. Therefore, the speed and memory efficiency of these two procedures largely determine the overall efficiency of PCs.

\ Figure 1. Layering a PC by grouping nodes with the same topological depth (as indicated by the colors) into disjoint subsets. Both the forward and the backward computation can be carried out independently on nodes within the same layer.

\ Related work on accelerating PCs. There has been a great amount of effort put into speeding up training and inference for PCs. One of the initial attempts performs nodebased computations on both CPUs (Lowd & Rooshenas, 2015) and GPUs (Pronobis et al., 2017; Molina et al., 2019), i.e., by computing the outputs for a mini-batch of inputs (data) recursively for every node. Despite its simplicity, it fails to fully exploit the parallel computation capability possessed by modern GPUs since it can only parallelize over a batch of samples. This problem is mitigated by also parallelizing topologically independent nodes (Peharz et al., 2020a; Dang et al., 2021). Specifically, a PC is chunked into topological layers, where nodes in the same layer can be computed in parallel. This leads to 1-2 orders of magnitude speedup compared to node-based computation.

\ The regularity of edge connection patterns is another key factor influencing the design choices. Specifically, EiNets (Peharz et al., 2020a) leverage off-the-shelf Einsum operations to parallelize dense PCs where every layer contains groups of densely connected sum and product/input nodes. Mari et al. (2023) generalize the notion of dense PCs to tensorized PCs, which greatly expands the scope of EiNets. Dang et al. (2021) instead focus on speeding up sparse PCs, where different nodes could have drastically different numbers of edges. They use custom CUDA kernels to balance the workload of different GPU threads and achieve decent speedup on both sparse and dense PCs.

\ Another thread of work focuses on designing computation hardware that is more suitable for PCs. Specifically, Shah et al. (2021) propose DAG Processing Units (DPUs) that can efficiently traverse sparse PCs, Dadu et al. (2019) introduce an indirect read reorder-buffer to improve the efficiency of data-dependent memory accesses in PCs, and Yao et al. (2023) use addition-as-int multiplications to significantly improve the energy efficiency of PC inference algorithms.

\ Figure 2. Runtime breakdown of the feedforward pass of a PC with ∼150M edges. Both the IO and the computation overhead of the sum layers are significantly larger than the total runtime of product layers. Detailed configurations of the PC are shown in the table.

\ Applications of PCs. PCs have been applied to many domains such as explainability and causality (Correia et al., 2020; Wang & Kwiatkowska, 2023), graph link prediction (Loconte et al., 2023), lossless data compression (Liu et al., 2022), neuro-symbolic AI (Xu et al., 2018; Manhaeve et al., 2018; Ahmed et al., 2022a;b), gradient estimation (Ahmed et al., 2023b), graph neural networks rewiring (Qian et al., 2023), and even large language model detoxification (Ahmed et al., 2023a).

\

:::info Authors:

(1) Anji Liu, Department of Computer Science, University of California, Los Angeles, USA (liuanji@cs.ucla.edu);

(2) Kareem Ahmed, Department of Computer Science, University of California, Los Angeles, USA;

(3) Guy Van den Broeck, Department of Computer Science, University of California, Los Angeles, USA;

:::


:::info This paper is available on arxiv under CC BY 4.0 DEED license.

:::

\

Market Opportunity
NodeAI Logo
NodeAI Price(GPU)
$0.02465
$0.02465$0.02465
-9.90%
USD
NodeAI (GPU) Live Price Chart
Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact service@support.mexc.com for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.

You May Also Like

Woman shot 5 times by DHS to stare down Trump at State of the Union address

Woman shot 5 times by DHS to stare down Trump at State of the Union address

A House Democrat has invited Marimar Martinez to attend President Donald Trump's State of the Union address in Washington, D.C., after she was shot by Customs and
Share
Rawstory2026/02/06 03:36
What is Play-to-Earn Gaming? Unlocking New Possibilities

What is Play-to-Earn Gaming? Unlocking New Possibilities

The post What is Play-to-Earn Gaming? Unlocking New Possibilities appeared on BitcoinEthereumNews.com. The Play-to-Earn (P2E) model is playing a key role in the advancement of the crypto industry. Users are able to earn crypto by playing games and get involved with global communities of gamers, creators, and developers. In this article, we’ll explore the functionalities of P2E gaming, its core features, potential risks, benefits, legal issues, and highlight some of the most impactful games shaping the Web3 gaming frontier.  What is Play-to-Earn Gaming? As its name implies, you gain rewards for playing the game. Players in Play-to-Earn games get involved with blockchain networks and can receive crypto assets or NFTs as prizes. The assets you acquire can be sold, traded or kept as an investment to see if their value rises. In Axie Infinity, players gathered and combated Axies, which are fantastical creatures. The game gave players SLP, a coin that works the same as money and could be traded for fiat currencies or other coins. Due to its success, it has grown into a more advanced and eco-friendly economy on current gaming platforms. How P2E Works? Most P2E gaming relies on Ethereum and Layer 2 networks, including Immutable, Ronin, and Base. Users are given both tokens and NFTs for accomplishing various game goals, such as: Completing missions or winning battles Trading or crafting in-game items Participating in tournaments or community events Staking assets or voting in DAOs The main difference between P2E games and traditional ones is that players can truly own what they earn in the game. Weapons, land, avatars, and resources on the Web3 game are tokenized, enabling you to trade or transfer them elsewhere. For example, users in Decentraland are able to purchase virtual land as NFTs, set up experiences and earn money from events or the services they provide. They are different from other items since they…
Share
BitcoinEthereumNews2025/09/19 21:33
DBS Partners With Franklin Templeton and Ripple for Tokenized Lending Platform

DBS Partners With Franklin Templeton and Ripple for Tokenized Lending Platform

TLDR DBS Digital Exchange, Franklin Templeton, and Ripple signed a memorandum of understanding to launch tokenized trading and lending services on the XRP Ledger DBS will list Franklin Templeton’s sgBENJI token alongside Ripple’s RLUSD stablecoin, allowing real-time swaps for institutional investors The partnership enables portfolio rebalancing and yield generation during volatile market conditions through tokenized [...] The post DBS Partners With Franklin Templeton and Ripple for Tokenized Lending Platform appeared first on CoinCentral.
Share
Coincentral2025/09/18 17:06