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Folding@home

Folding@home (FAH or F@h) is a distributed computing project that has harnessed volunteered computational resources from millions of personal computers worldwide to perform large-scale molecular dynamics simulations of protein folding and dynamics. Launched in 2000 at Stanford University by Vijay Pande, it enables citizen scientists to contribute idle processing power via free software clients, forming a virtual supercomputer that has achieved petascale and exascale computing milestones. The project's primary goal is to elucidate the mechanisms of protein misfolding and aggregation, which underlie numerous diseases, thereby accelerating drug discovery and therapeutic development. The science behind Folding@home revolves around simulating the conformational changes in proteins at atomic resolution, a computationally intensive process that traditional supercomputers struggle to scale. By distributing work units—short simulation trajectories—to volunteer machines, the project employs advanced algorithms such as Markov State Models (MSMs) and adaptive sampling techniques like Folding@home Adaptive Sampling Tools (FAST) to reconstruct long-timescale dynamics from ensemble data. This massively parallel approach has provided unprecedented insights into protein behavior that guide experimental validation and structure-based . Over more than two decades, Folding@home has made significant contributions to biomedical across diverse disease areas, including Alzheimer's, Huntington's, cancer, Parkinson's, and . Key achievements include characterizations of mechanisms and, during the , rapid scaling to exascale levels for simulations of proteins that informed inhibitor design efforts such as the COVID Moonshot initiative. As of 2025, the project continues to advance , including AI-driven and simulations, with peer-reviewed outputs exceeding 200 publications that have influenced clinical trials and therapeutic strategies.

History and Background

Founding and Early Development

Folding@home was founded in October 2000 by Vijay Pande in the at as a distributed computing project aimed at simulating processes through volunteer contributions of computational power. The initiative sought to harness idle computing resources from personal computers worldwide to perform simulations, enabling large-scale studies that were infeasible on traditional supercomputers at the time. Inspired by the success of SETI@home's model of public participation in scientific computing, Folding@home shifted the focus to , specifically the challenges of understanding protein misfolding in diseases. The project launched publicly in late , recruiting volunteers to run client software that downloaded small tasks, or work units, processed them locally, and uploaded results to Stanford servers for aggregation. Early milestones included the publication of the project's first peer-reviewed paper in , which demonstrated β-hairpin folding using atomistic detail and an implicit solvent model, validating the distributed approach for biophysical research. In 2006, support for graphics processing units (GPUs) was introduced, dramatically accelerating by leveraging capabilities. This was followed in March 2007 by integration with the console through a collaboration with , expanding participation to gaming hardware and boosting computational throughput. By 2007, Folding@home had grown to over one million registered users, earning recognition from as the world's most powerful network at the time. The project achieved power, exceeding 100 petaFLOPS, by 2016, reflecting sustained expansion in volunteer engagement and hardware efficiency. In 2018, leadership transitioned to Greg Bowman, a former Pande student, who relocated the project to and established the Folding@home Consortium.

Scientific Foundations

Protein folding is the process by which a linear chain of adopts its functional three-dimensional , known as the native state, through a complex series of conformational changes driven by the minimization of . This folding occurs on an energy landscape where the protein navigates from high-energy unfolded states toward lower-energy configurations, guided by interactions such as hydrophobic effects, hydrogen bonding, and van der Waals forces; however, misfolding can trap proteins in metastable states, leading to aggregation and contributing to diseases like Alzheimer's and Parkinson's. Folding@home employs (MD) simulations to model these atomic-level movements over time, using physics-based s to approximate interatomic interactions and predict protein behavior. These simulations integrate Newton's with femtosecond time steps to capture the dynamic evolution of protein structures, often employing the for its accuracy in biomolecular systems. The core of such s is the potential energy function, which decomposes the total energy U into contributions from bonded and non-bonded interactions: U = U_{\text{bonds}} + U_{\text{angles}} + U_{\text{dihedrals}} + U_{\text{nonbonded}} where U_{\text{bonds}} accounts for bond stretching, U_{\text{angles}} for angle bending, U_{\text{dihedrals}} for torsional rotations, and U_{\text{nonbonded}} for electrostatic and van der Waals terms between non-adjacent atoms. A primary challenge in these simulations is capturing rare events along folding pathways, such as transitions between conformational states, which occur on timescales of microseconds to milliseconds—far beyond the nanosecond scales accessible by conventional single-machine computations. Distributed computing in Folding@home addresses this by aggregating short, independent simulation trajectories from volunteers worldwide, enabling the statistical reconstruction of long-timescale dynamics through methods like Markov state models and achieving aggregate computational power at the exascale level (over 10^18 floating-point operations per second), which surpasses even the largest dedicated supercomputers. This approach has allowed simulations of protein folding events up to 1.5 milliseconds, providing insights unattainable otherwise.

Research Applications

Protein Dynamics and Disease Mechanisms

Folding@home simulations have elucidated protein misfolding mechanisms underlying neurodegenerative diseases, such as the aggregation of amyloid-beta (Aβ) peptides in . These studies reveal that familial s in Aβ42 alter the propensity for α-helical structures in the monomer ensemble, with specific changes depending on the (e.g., increased α-helix at residues 20–23 for E22K and E22Q). Similarly, in cancer, Folding@home simulations have contributed to understanding tumor suppressor protein dynamics. Common "hotspot" s in the cause structural instability, including increased fluctuations near zinc-binding sites, thereby facilitating tumorigenesis. To overcome the computational challenges of rare misfolding events, Folding@home employs enhanced sampling techniques like replica exchange (REMD), which parallelizes simulations across multiple temperatures to efficiently cross energy barriers and map folding landscapes. This method has enabled the exploration of millisecond-scale dynamics for proteins like the Trp-cage miniprotein, revealing hub-like landscapes with multiple pathways that align with experimental folding rates. By distributing REMD across volunteer computers, Folding@home achieves exascale sampling, providing insights into conformational changes that drive disease pathology without exhaustive enumeration of all states. A central concept in these simulations is protein allostery, where binding at distant sites modulates function through propagated conformational shifts, offering opportunities for targeted therapeutics. Folding@home has identified cryptic allosteric sites—transient pockets invisible to static structures—in proteins like β-lactamase, using Markov state models to predict modulators that inhibit antibiotic resistance or immune deficiencies. These simulations prioritize high-impact sites by analyzing fluctuations, guiding the design of allosteric drugs that exploit dynamic vulnerabilities. Simulation accuracy is ensured through integration with experimental data, such as (NMR) spectroscopy and (cryo-EM), which validate predicted dynamics against observed structures and timescales. For example, Folding@home models of peptide folding have been corroborated by NMR-derived chemical shifts and relaxation data, confirming nanosecond fluctuations in Alzheimer's-related Aβ ensembles. Cryo-EM density maps further refine these predictions, as seen in ensemble refinements that match low-resolution experimental envelopes for misfolded states. Recent 2024-2025 efforts have applied this approach to protein dynamics in cancer, generating 1.5 milliseconds of all-atom simulations to uncover metastable encounter states with von Hippel-Lindau (VHL) for proteolysis-targeting chimeras (PROTACs). These reveal novel protein-protein interaction interfaces and binding paths, including three favorable geometries for linker design that align with structures of potent degraders, advancing targeted therapies for KRAS-driven tumors like and pancreatic cancers.

Key Biomedical Studies

Folding@home simulations in the 2000s contributed to understanding polyglutamine aggregation in by modeling the molecular origins of expanded polyglutamine tracts in proteins like the , revealing how these repeats promote toxic aggregation through altered folding pathways. In the 2010s, the project advanced research by simulating dynamics, identifying key folding intermediates that facilitate the formation of neurotoxic aggregates and highlighting potential intervention points for stabilizing native conformations. In , a 2025 Folding@home study examined the effects of mutations in , simulating how these variants impair mechanisms and increase oncogenic risk, affecting approximately 70,000 cases annually worldwide and informing strategies to enhance repair fidelity. Simulations of protein dynamics have also supported drug targeting efforts by elucidating transient binding-competent states that disrupt p53-MDM2 interactions, enabling the design of inhibitors to restore p53's tumor-suppressive function in various cancers. For infectious diseases, Folding@home's 2020 exascale simulations of the predicted dramatic conformational opening beyond prior experimental observations, providing insights into receptor binding and aiding the stabilization strategies used in designs like those targeting the prefusion state. Ongoing studies continue to explore viral entry mechanisms, modeling rearrangements that facilitate host and identifying cryptic sites for broad-spectrum antiviral interventions. Beyond specific diseases, early 2000s Folding@home work on folding in demonstrated how missense mutations delay triple-helix formation, leading to overmodified and unstable that cause fragility and guiding chaperone-based therapeutic concepts. The project has also enabled large-scale for , evaluating millions of compounds against protein targets to prioritize leads with optimal binding poses and accelerating hit identification in early discovery pipelines. In late 2024 advances, Folding@home simulations revealed the allosteric "glue" mechanism of drugs like (FK506), showing how it bridges multiple proteins to induce inhibitory complexes, such as calcineurin-FKBP, and inspiring new multi-target glues for immune modulation and beyond. Additionally, project data has enhanced models for protein dynamics, training algorithms to generate realistic conformational ensembles from limited inputs and reducing computational demands for predicting folding pathways in druggable targets.

Participation and Community

User Engagement Patterns

Folding@home relies on a volunteer-driven model in which participants install free client software on their personal computers to contribute idle CPU and GPU cycles toward simulating and related biomedical processes. This distributed approach aggregates computing resources from individual devices worldwide, creating a that has historically involved millions of contributors, enabling large-scale scientific computations without dedicated hardware infrastructure. Participation trends experienced a dramatic surge during the in 2020, when the number of active devices escalated from around 30,000 to over 4 million, propelling the network's performance beyond 1 exaFLOP—the first computing system to achieve such scale—and supporting urgent research on mechanisms. Post-pandemic, engagement has stabilized at more modest but sustained levels. As of August 2025, there are approximately 6,500 active users, a decline from pre-pandemic levels of around 28,000 active participants (as documented in mid-2010s analyses), encompassing a diverse range of users from and hardware enthusiasts to professional scientists. This mix reflects the project's appeal to those interested in leveraging personal technology for collective scientific impact. The Folding@home community thrives through dedicated online platforms that facilitate support, collaboration, and interaction. Key resources include the official at foldingforum.org for and discussions, a server for real-time engagement, and channels such as (@foldingathome) and for news updates and volunteer outreach. Team-based competitions play a central role in dynamics, with 89% of participants (per a 2018 study of mid-2010s data) affiliating with organized teams like EVGA or Power Cows to compete on rankings and total output, enhancing motivation through social bonds and friendly rivalry. According to a of mid-2010s participants, user motivations are predominantly rooted in and scientific , with 25% citing a desire to advance and 18% motivated by personal or familial connections to targeted diseases such as Alzheimer's or cancer. No recent post-pandemic surveys are available to assess changes in motivations. via a points system rewards completed simulations, briefly referencing the competitive aspect without delving into mechanics, while software updates have mitigated entry barriers by simplifying configuration for broader accessibility. A of mid-2010s participants found the user base consisted mainly of tech-savvy individuals from and , with 98% identifying as male, 63% under 40 years old, 57% holding university degrees (80% in STEM fields), and 37% working in professions. Recent demographic data is unavailable. This profile underscores the project's strong draw among hardware enthusiasts and overclockers, who account for a disproportionate share of computational contributions despite representing a smaller subset of the community.

Performance and Incentives

Folding@home has demonstrated remarkable computational , reaching a peak of approximately 1.5 exaFLOPS during the heightened participation spurred by the in 2020, surpassing the combined power of the world's 500 supercomputers at the time. By November 2025, the project's aggregate compute capacity stands at around 26.8 petaFLOPS in x86-equivalent , reflecting sustained but reduced volunteer engagement compared to pandemic peaks. Work unit completion rates contribute to global rankings tracked on the platform, where donors and teams are listed based on points earned from returned units, with monthly tallies showing thousands of active participants processing simulations daily. The points system serves as a core incentive mechanism, awarding credits to users based on their hardware's performance relative to a standardized benchmark machine—an i5 CPU 750 at 2.67 GHz running —to ensure equitable recognition of computational contributions. Base points for each are calculated by scaling a project's assigned value against the estimated time required for completion on the benchmark, with final points adjusted via a formula that rewards efficiency: final_points = base_points × max(1, √(k × deadline_length / elapsed_time)), where k is a project-specific constant typically set at 0.75. Teams aggregate member points for collective leaderboards, fostering competition and sustained involvement among groups like research institutions and online communities. Introduced in 2010, the Quick Return Bonus (QRB) enhanced the incentive structure by providing additional points for users who complete and return work units promptly and reliably, requiring a , at least 10 eligible returns, an 80% return rate, and submission before the deadline to qualify. Adjustments for hardware efficiency include plans to extend QRB to GPUs alongside the rollout of FAHCore 17, addressing disparities in processing speeds between CPU and GPU contributors. In 2025, the v8.4.9 client update streamlined team management features, indirectly supporting incentive fairness by simplifying participation without altering core points mechanics. This incentive framework directly correlates with research throughput, as higher aggregate compute power has enabled simulations of increasingly complex biomolecular systems, such as those involving over a million atoms to model protein and interactions. For instance, the exascale efforts in 2020 facilitated detailed studies of viral proteins with hundreds of thousands of atoms, yielding insights into folding pathways unattainable on traditional supercomputers alone. However, challenges persist due to variability in volunteer , which introduces heterogeneity in contribution rates and requires ongoing adjustments to maintain fairness in allocation.

Software and Technology

Client Software Evolution

The Folding@home client software debuted in October 2000 as a rudimentary application for Windows and , enabling volunteer computers to execute CPU-intensive simulations in the background. By 2005, the client had expanded to support multiple operating systems, including macOS, broadening accessibility for participants. Version 6, released in 2008, introduced multi-core processing via the client, allowing efficient utilization of emerging multi-processor hardware configurations. This update marked a significant advancement in leveraging contemporary CPU architectures for accelerated simulations. In 2011, version 7 brought the open-source FAHControl graphical , which facilitated user configuration and remote monitoring of multiple computation slots across devices. V7 emphasized modularity with components like FAHClient for operations and Web Control for browser-based oversight, enhancing administrative flexibility. Version 8, launched in 2024 as a full rewrite codenamed , prioritized a streamlined to lower entry barriers and foster wider adoption. It consolidated controls into a single web-based frontend, automating resource allocation for CPUs and GPUs without manual slot configuration. The January 2025 release of version 8.4.9 incorporated simplified team creation and joining mechanisms, accessible through account settings, alongside enhancements for runtime stability during prolonged computations. Core features across versions include automatic software updates, HTTP proxy compatibility for networked environments, slot management to handle multiple GPUs, and web-based monitoring via dedicated statistics pages. Since 2018, the project's GitHub repositories have enabled open-source collaboration, with community-driven pull requests addressing bugs and refining functionality.

Hardware and Computational Support

Folding@home distributes computational tasks as self-contained work units, which are molecular dynamics simulations of protein trajectories typically spanning 1 to 100 microseconds. These units are downloaded from central servers, processed locally on volunteer hardware, and uploaded upon completion to contribute to larger ensemble simulations. Each work unit includes the protein structure in (PDB) format, parameters, initial conditions, and simulation directives tailored to specific research projects. The project's computational cores are specialized executables that execute these simulations, optimized for Folding@home's force fields and simulation protocols. For GPUs, cores leverage OpenMM, a high-performance toolkit that accelerates calculations on parallel architectures. CPU cores primarily use , an open-source package modified for multi-core efficiency and large-scale tasks. These cores enable distributed volunteers to perform accurate, reproducible simulations while minimizing overhead from data transfer. Hardware support in Folding@home emphasizes heterogeneous computing to maximize global throughput. GPU acceleration began in 2007 with NVIDIA cards via CUDA, later extending to AMD GPUs through OpenCL, though AMD support remains limited on Linux due to driver issues. Multi-core CPUs from various architectures are fully supported, with big advanced work units requiring at least 16 cores for extended simulations on high-end systems. Historically, the project utilized the PlayStation 3's CELL processor from 2007 to 2012, enabling console-based contributions until Sony discontinued the service. Mobile and browser platforms expanded accessibility, with an Android app launched in 2015 for ARM-based devices, supporting simulations on smartphones and tablets running 4.4 or higher. A Native Client version debuted in 2014, allowing browser-based folding via Portable Native Client technology, but was discontinued following Google's deprecation of NaCl in 2019. As of 2025, AI-accelerated cores that incorporate Folding@home datasets to enable faster protein sampling via models like BioEmu, reducing reliance on full traditional simulations.

Impact and Comparisons

Achievements and Recent Advances

Folding@home has contributed to over 200 peer-reviewed scientific papers, providing foundational data for biomolecular simulations and therapeutic development. These publications have enabled key breakthroughs, such as the identification of potential drug candidates targeting cancer-related proteins; for instance, simulations have informed strategies for degrading mutant proteins, a common driver in , pancreatic, and colorectal cancers. Additionally, the project's 2020 pivot to research mobilized power, generating massive datasets on the that revealed cryptic binding pockets and accelerated insights into viral entry mechanisms, supporting and therapeutic efforts. A landmark impact metric is the project's role in achieving the first millisecond-timescale simulations of in 2010, using Markov state models on the NTL9 protein to capture previously inaccessible to conventional . This breakthrough validated long-timescale dynamics and has influenced subsequent studies. More recently, Folding@home datasets have been integrated into AI-driven protein prediction models; in 2025, the BioEmu generative model was trained primarily on FAH simulation data to produce ensembles of protein structures from sequences, enhancing accuracy in emulating biomolecular behaviors despite some limitations in capturing full dynamics. The project fosters extensive collaborations, including longstanding partnerships with the (NIH) for funding and research integration, as well as pharmaceutical entities through initiatives like the COVID Moonshot, which crowdsourced antiviral candidates against SARS-CoV-2. In 2025, Folding@home participated in a workshop in , focused on combining molecular simulations with to advance protein dynamics research, highlighting ongoing interdisciplinary efforts. Recent advances include 2025 studies on mutations in , simulating how pathogenic variants disrupt allosteric control and protein interactions to inform precision medicine approaches for the ~70,000 annual cases involving BRCA1 alterations. Similarly, KRAS investigations have uncovered new pathways for targeted degradation, potentially enabling mutant-specific therapies. Looking forward, Folding@home aims to scale simulations for emerging challenges, such as quantum-inspired methods to model complex systems more efficiently, while expanding applications to combat antibiotic resistance through discovery of cryptic pockets in enzymes like beta-lactamases.

Comparisons to Other Projects

Folding@home differs from other BOINC-based projects, such as , in its focus on atomistic simulations that model the detailed folding pathways of proteins at the atomic level, whereas employs coarser-grained approaches primarily for predicting final folded structures and . This distinction allows Folding@home to capture dynamic processes like conformational changes over time, complementing 's emphasis on static predictions. In terms of computational scale, Folding@home achieved a peak performance of 2.4 exaFLOPS during the 2020 surge, far surpassing 's estimated 1.26 petaFLOPS at the time, though both projects leverage volunteer resources for biomedical research. Compared to centralized supercomputers like IBM's , which achieved around 149 petaFLOPS of sustained performance (Linpack Rmax), with a theoretical of 200 petaFLOPS, at a cost exceeding $200 million, Folding@home's volunteer-driven model attains comparable or greater scales—such as 2.4 exaFLOPS—through distributed, low-cost contributions from millions of personal devices worldwide. This decentralized enables exceptional flexibility for sampling rare molecular events, like protein conformational shifts, by running numerous independent simulations in parallel across heterogeneous , a capability less efficient on dedicated supercomputers optimized for uniform, high-density workloads. Folding@home's unique strengths lie in its biomedicine-centric mission, allowing rapid pivots to urgent health crises, as demonstrated by its swift redirection of resources to simulations in early 2020, mobilizing over 1 million contributors within weeks. Additionally, its commitment to policies ensures that all generated datasets, including extensive trajectories, are publicly accessible via platforms like the AWS Registry of Open Data, contrasting with proprietary simulations in industry or some academic settings that restrict sharing. Despite these advantages, Folding@home faces limitations inherent to volunteer computing, including variability in participant hardware and uptime, which introduces heterogeneity in computational reliability and efficiency compared to the consistent, high-performance dedicated hardware of supercomputers. In 2025, integrations with AI tools are addressing some gaps; for instance, Folding@home datasets are now training models like BioEmu to emulate protein dynamics, enhancing simulation accuracy and scalability. In broader context, Folding@home complements AI-based predictors like by generating dynamic trajectory data that reveal functional motions absent in static structure predictions, enabling hybrid approaches where provides initial folds and Folding@home simulations explore real-time behaviors critical for .

References

  1. [1]
    Folding@home – Fighting disease with a world wide distributed ...
    We empower anyone with a computer and an internet connection to become a citizen scientist and join forces to fight global health threats.Download · Statistics · Project Timeline · News
  2. [2]
    Folding@home: Achievements from over 20 years of citizen science ...
    The Folding@home distributed computing project has pioneered a massively parallel approach to biomolecular simulation, harnessing the resources of citizen ...
  3. [3]
    Project Timeline - Folding@home
    Folding@Home began in October 2000 in the lab of Dr. Vijay Pande at Stanford University. Since 2019, the project has been in the hands of Dr. Gregory Bowman.Missing: founding | Show results with:founding
  4. [4]
    Folding@home: Achievements from over 20 years of citizen science ...
    Folding@home was originally conceived at Stanford University by Vijay Pande ... In the year 2000, the Pande lab announced the Folding@home distributed ...Missing: founding | Show results with:founding
  5. [5]
    Science wikinomics. Mass networking through the web creates new ...
    Inspired by the success of the first large projects SETI@home and Folding ... volunteer computing… Figure 1. Figure 1. Open in a new tab. FightAIDS@home ...
  6. [6]
  7. [7]
    β-hairpin folding simulations in atomistic detail using an implicit ...
    We have used distributed computing techniques and a supercluster of thousands of computer processors to study folding of the C-terminal β-hairpin from ...
  8. [8]
    History - Folding@home
    After much work, we released our first GPU client on October 2006, the SMP client in November, and our PS3 client the following March. Thanks to these ...
  9. [9]
    PlayStation®3 Users Significantly Contribute to the Folding@Home ...
    Apr 25, 2007 · Since the program launched in March, participation by the PS3 user community has been phenomenal, providing Folding@home with immense computing ...
  10. [10]
  11. [11]
  12. [12]
    Gregory Bowman, PhD - Folding@home
    Greg started his lab at WUSTL in 2014 and became director of Folding@home in 2018. He is also Associate Director of CSELS. The Bowman lab devises new ways ...Missing: open- source
  13. [13]
    OpenSource - Folding@home
    As of version 8 the Folding@home client software is Open-Source. The source code can be found on GitHub.Missing: becomes 2018
  14. [14]
    Dig deeper - Folding@home
    This section describes how Folding@home simulations work and why our methods benefit from distributed computing.
  15. [15]
    Folding Simulations for Proteins with Diverse Topologies Are ...
    Sep 16, 2014 · Systems range from short peptides to proteins of nearly 100 amino acids, with topologies including all α-helix, all β-sheet, and combinations.
  16. [16]
    A Second Generation Force Field for the Simulation of Proteins ...
    A second generation force field for the simulation of proteins, nucleic acids, and organic molecules.
  17. [17]
    SARS-CoV-2 simulations go exascale to predict dramatic spike ...
    May 24, 2021 · To address this challenge, over a million citizen scientists banded together through the Folding@home distributed computing project to create ...
  18. [18]
    Molecular simulation of ab initio protein folding for a millisecond ...
    Dec 9, 2021 · We report simulations of several folding trajectories of NTL9(1-39), a protein which has a folding time of approximately 1.5 ms. Distributed ...
  19. [19]
    Effects of Familial Mutations on the Monomer Structure of Aβ42 - PMC
    Dec 19, 2012 · Amyloid beta (Aβ) peptide plays an important role in Alzheimer's disease. A ... We thank the valued contributors of the Folding@home. We ...
  20. [20]
    Identification of a Folding Nucleus by Molecular Dynamics Simulations
    Dimerization of the p53 oligomerization domain involves coupled folding and binding of monomers. To examine the dimerization, we have performed molecular ...
  21. [21]
    Tumorigenic p53 mutants undergo common structural disruptions ...
    These simulations involve all six “hot spot” residues , and represent eight of the ten most common mutations and 21% of the listings in the IARC TP53 Database ( ...
  22. [22]
    Multiplexed-Replica Exchange Molecular Dynamics Method for ...
    Here, we present an algorithm to calculate a canonical distribution from molecular dynamics simulation of protein folding. This algorithm is based on the ...
  23. [23]
    Exploring the Energy Landscape of Protein Folding using Replica ...
    Two independent replica-exchange molecular dynamics (REMD) simulations with an explicit water model were performed of the Trp-cage mini-protein.
  24. [24]
    Equilibrium fluctuations of a single folded protein reveal a multitude ...
    Dec 9, 2021 · Cryptic allosteric sites–transient pockets in a folded protein that are invisible to conventional experiments but can alter enzymatic activity ...
  25. [25]
    Investigating How Peptide Length and a Pathogenic Mutation Modify ...
    The authors thank the valued contributors of the Folding@home project. ... Simulation study on the disordered state of an Alzheimer's β amyloid peptide Aβ ...
  26. [26]
    CryoFold: Determining protein structures and data-guided ...
    Oct 6, 2021 · We introduce CryoFold, a pipeline of molecular dynamics simulations that determines ensembles of protein structures by integrating density data ...
  27. [27]
    Non-Markovian Dynamic Models Identify Non-Canonical KRAS-VHL ...
    (f) Perform extensive MD simulations using Folding@Home to explore the PPI interfaces of the encounter complex. (g-h) Utilize MoSAIC community detection and ...
  28. [28]
    Molecular Origin of Polyglutamine Aggregation in ... - PubMed Central
    Expansion of polyglutamine (polyQ) tracts in proteins results in protein aggregation and is associated with cell death in at least nine neurodegenerative ...
  29. [29]
    Alzheimer's Disease - Folding@home
    We have submitted our first paper for peer review and we're working on the next 2 paper right now. We're very excited about the results! Read more. 2005. Prof.
  30. [30]
    BRCA1 in breast cancer - Folding@home
    Jun 10, 2025 · People with mutations in bRCA1 are less able to repair damage in their DNA, leading to an increased risk of cancer. Therapeutics that enhance ...Missing: study | Show results with:study
  31. [31]
  32. [32]
    SARS-CoV-2 Simulations Go Exascale to Capture Spike Opening ...
    Jun 28, 2020 · To address this challenge, over a million citizen scientists banded together through the Folding@home distributed computing project to create ...
  33. [33]
    Osteogenesis Imperfecta - Folding@home
    Sep 19, 2005 · September 19, 2005 by Folding@Home. Our first work on collagen mutations connected to Osteogenesis Imperfecta was accepted for publication.
  34. [34]
    AI for Drug Discovery in Two Stories - Folding@home
    Apr 20, 2018 · A simple back-of-the-envelope calculation shows that experimentally testing all 100 million purchasable compounds in the ZINC small molecule ...Introduction · Paper 1: Spatial Graph... · Paper 2: Machine Learning...
  35. [35]
    An allosteric glue - Folding@home
    Dec 18, 2024 · September 2025 ... There has been growing interest in developing drugs that bind two or more proteins to “glue” them together. Tacrolimus (aka ...
  36. [36]
    FAH is enabling AI developments - Folding@home
    Aug 21, 2025 · August 21, 2025. by Greg ... A recent study shows how this data can be used to take a first step towards AI-generated protein dynamics.Missing: enhanced | Show results with:enhanced
  37. [37]
  38. [38]
    Over 4 Million Computers Worldwide Joined Folding@home to Aid ...
    Jun 26, 2020 · Before the switch to the novel coronavirus, about 30,000 devices were running Folding@home software. With the prospect of contributing to ...
  39. [39]
    Folding@Home Network Breaks the ExaFLOP Barrier In Fight ...
    Mar 26, 2020 · The Folding@Home network has broken the one exaFLOP barrier as users from around the world combine powers to beat the coronavirus.
  40. [40]
    Folding Forum - Index page - Folding@home
    If you're new to FAH and need help getting started or you have very basic questions, start here. Moderators: Site Moderators, FAHC Science Team.Missing: Discord social
  41. [41]
  42. [42]
    Folding@home is now more powerful than the world's top 500 ...
    Apr 13, 2020 · In total, Folding@home now generates over 2.4 exaFLOPS of computational performance, which is over 2,400,000,000,000,000,000 operations per ...
  43. [43]
    How fast is Folding@Home today? - Reddit
    Jul 11, 2025 · The statistics page shows 17 600 TFLOPS x86 equivalent. That's 17PFLOPS and change. I remember news about F@H breaking into the ExaFLOPS region during the 2020 ...Missing: active 2025
  44. [44]
    Folding@home | Statistics
    Folding@home studies proteins to help research diseases like COVID-19, Alzheimer's, and cancers. Teams earn points to help progress research.Team · Donor · OS · ProjectMissing: active 2025 current
  45. [45]
    Points – Folding@home
    Points are determined by the performance of each contributor's folding hardware (CPU, GPU, etc.) relative to a reference benchmark machine.Missing: ns | Show results with:ns
  46. [46]
    Bonus Points – Folding@home
    So in 2010 we introduced the Quick Return Bonus (QRB), which gives extra points to users who rapidly and reliably complete WUs. The QRB has been fairly ...Missing: system history
  47. [47]
    Team - Folding@home | Statistics
    Folding@home Statistics. ... Team Statistics. Lookup. Monthly. All-Time. Create My Team. November. 2025 ...Missing: 2020s | Show results with:2020s
  48. [48]
    New client v8.4.9 - Folding@home
    Jan 23, 2025 · New client v8.4.9. January 23 ... If you haven't already, we invite you to check out the latest release of the Folding@home client (v8.
  49. [49]
    Biophysical experiments and biomolecular simulations - Science
    Jul 27, 2018 · ... million atoms (33). Massive parallelization has been exploited in the folding@home project, which utilizes hundreds of thousands of “stand ...
  50. [50]
    Stats, teams and usernames - Folding@home
    Usernames can be letters, numbers, and underscores, case-sensitive. Join teams by entering their team #. Check for existing usernames using the search tool.Missing: social media
  51. [51]
    Windows/SMP client - Folding@home
    Right now, we are making available two Win/SMP clients. The primary one (6.22) is on our download page ( https://foldingathome.org/English/ ...
  52. [52]
    FAHClient V7.3.2 released (9th Open Beta) - Folding Forum
    Feb 1, 2013 · This release adds two new major features. 1) a screensaver based on FAHViewer 2) a new user interface which runs in your browser which we ...
  53. [53]
    The release of our latest Folding@home desktop client
    Mar 19, 2014 · The Folding@home network currently consists of about a quarter of a million active computers and is nearing a top speed of 40 PetaFLOPs. That is ...
  54. [54]
    v8.4 Client Guide - Folding@home
    We are excited to announce version 8.4 of the Folding@home software. V8 has been code named “Bastet” in reference to the Ancient Egyptian goddess who is ...
  55. [55]
    New software release! - Folding@home
    Jun 26, 2024 · New software release! June 26, 2024. by Greg Bowman. We're delighted to announce the full release of our new client software!
  56. [56]
    FoldingAtHome/fah-control: Folding@home Client ... - GitHub
    Apr 4, 2024 · Folding@home Client Advanced Control. FAHControl can monitor and control one or more FAHClients. To run: python FAHControl See: https://foldingathome.org/Missing: V7 | Show results with:V7
  57. [57]
    Introduction - Folding@home
    In FAH, we use these multiple CPU cores together to speed up our simulations. For example, a quad-core CPU can complete Work Units nearly four times faster ...
  58. [58]
    Big Advanced - Folding@home
    Sets a client preference to request extra large work units for multi-CPU socket class server systems. A minimum of 16 CPU cores is required for Assignment ...
  59. [59]
    Configuration — Folding@home Work Server documentation
    There are currently two main types of simulation project which can be run on Folding@home. These use either the GROMACS or OpenMM molecular dynamics simulation ...
  60. [60]
    Technical Details - FAHBench
    FAHBench is the official Folding@Home benchmark. Like the Folding@Home “cores” being executed by hundreds of thousands of donors across the world to solve ...
  61. [61]
    Requirements - Folding@home
    Requirements · OpenCL compatible GPU, 5xxx series or newer, see full list · 14.4 AMD device driver or newer.Missing: expansion 2007<|control11|><|separator|>
  62. [62]
    For Nvidia - Folding@home
    This list comprises most of the hardware supported by NVIDIA's CUDA. However, for best performance, we recommend the more recent series (GeForce G*). Due to the ...
  63. [63]
    Folding on the Sony Playstation 3 (PS3)
    Following discussions with Sony, we retired the PS3 client on November 6, 2012. Please see the PS3 FAQ for more information about the PS3 client.Missing: integration | Show results with:integration
  64. [64]
    First full version of our Folding@Home client for Android Mobile ...
    Jul 7, 2015 · We're proud to announce the first full version of our Folding@Home client for Android Mobile phones. This version is available to all Android Mobile phones ...Missing: ARM | Show results with:ARM
  65. [65]
    Folding@chrome – folding with just your browser - Folding@home
    Jun 25, 2014 · For those interested in the technical details, Portable Native Client takes high-performance native code that uses a device's full hardware ...
  66. [66]
    Simulations Reveal New Paths for Targeted Protein Degradation
    Sep 18, 2025 · Mutations in the KRAS protein are among the most common drivers of human cancers, including lung, pancreatic, and colorectal tumors.
  67. [67]
  68. [68]
    Reunion in Madison - Folding@home
    Last week we had a really nice meeting in Madison, WI on combining simulations and machine learning to understand protein dynamics.Missing: workshop | Show results with:workshop
  69. [69]
    Folding@home vs. Rosetta@home
    Jun 11, 2006 · However, Rosetta@home and Folding@Home are addressing very different problems. Rosetta only predicts the final folded state, not how do proteins ...Missing: simulations FLOPS
  70. [70]
    Rosetta@home Rallies a Legion of Computers Against ... - HPCwire
    Mar 24, 2020 · Currently, Rosetta@home comprises nearly 100,000 hosts across 151 countries, collectively enabling an estimated 1.26 petaflops of volunteer ...Missing: simulations FLOPS
  71. [71]
    Folding@Home Surpasses 2.4 Exaflops - Faster Than Top 500 ...
    Apr 13, 2020 · Folding@Home has gained another 900petaFLOPS and is now not only 15x more powerful than the next most powerful supercomputer, IBM's Summit but more powerful ...
  72. [72]
    Folding@Home Now More Powerful Than World's Top 7 ...
    Mar 21, 2020 · The Folding@Home network is now pushing out 470 PetaFLOPS of raw compute power. To put that in perspective, that's twice as fast as Summit, the world's fastest ...
  73. [73]
    Folding@home quickly pivots to fight COVID-19 - The Source - WashU
    Mar 10, 2021 · WashU researchers leading the effort pivoted quickly to COVID-19 and found a wealth of people eager to help. Before the switch to the novel ...Missing: policy | Show results with:policy
  74. [74]
    Foldingathome COVID-19 Datasets - Registry of Open Data on AWS
    Folding@home is a massively distributed computing project that uses biomolecular simulations to investigate the molecular origins of disease and accelerate ...<|control11|><|separator|>
  75. [75]
    Large-scale volunteer computing over the Internet
    Oct 25, 2012 · These Volunteer Computing (VC) systems harness computing resources from machines running commodity hardware and software, and perform highly ...
  76. [76]
    AlphaFold opens new opportunities for Folding@home
    May 2, 2024 · Its predictive power is one of the most compelling examples of the enormous power that computational methods have to offer biomedical research.Missing: computing active<|control11|><|separator|>