• Live Feeds
    • Press Releases
    • Insider Trading
    • FDA Approvals
    • Analyst Ratings
    • Insider Trading
    • SEC filings
    • Market insights
  • Analyst Ratings
  • Alerts
  • Subscriptions
  • Settings
  • RSS Feeds
Quantisnow Logo
  • Live Feeds
    • Press Releases
    • Insider Trading
    • FDA Approvals
    • Analyst Ratings
    • Insider Trading
    • SEC filings
    • Market insights
  • Analyst Ratings
  • Alerts
  • Subscriptions
  • Settings
  • RSS Feeds
Dashboard
    Quantisnow Logo

    © 2025 quantisnow.com
    Democratizing insights since 2022

    Services
    Live news feedsRSS FeedsAlerts
    Company
    AboutQuantisnow PlusContactJobs
    Legal
    Terms of usePrivacy policyCookie policy

    MicroAlgo Inc. Develops a Blockchain Storage Optimization Solution Based on the Archimedes Optimization Algorithm (AOA)

    5/8/25 8:30:00 AM ET
    $MLGO
    EDP Services
    Technology
    Get the next $MLGO alert in real time by email

    SHENZHEN, May 08, 2025 (GLOBE NEWSWIRE) -- MicroAlgo Inc. Develops a Blockchain Storage Optimization Solution Based on the Archimedes Optimization Algorithm (AOA)

    Shenzhen, May. 08, 2025/––MicroAlgo Inc. (the "Company" or "MicroAlgo") (NASDAQ: MLGO), announced a focus on addressing the efficiency bottlenecks in blockchain storage by introducing the Archimedes Optimization Algorithm (AOA) into distributed storage architecture. Through intelligent algorithmic restructuring of data storage and node collaboration mechanisms, they aim to provide an innovative solution for large-scale blockchain applications.

    The Archimedes Optimization Algorithm (AOA) is a metaheuristic algorithm that simulates the force-driven motion of objects in a fluid. Its core concept is derived from the principle of Archimedean buoyancy: the buoyant force exerted on an object immersed in a fluid equals the weight of the fluid displaced. By dynamically adjusting parameters such as density, volume, and acceleration, the algorithm models the iterative motion of an object from a random initial position toward an optimal "equilibrium point." MicroAlgo has deeply integrated this algorithm into blockchain storage scenarios. By targeting core issues such as data sharding strategies, node resource allocation, and consensus efficiency optimization, the company has constructed a multi-objective optimization model. AOA adaptively switches between global search and local exploitation to solve for optimal storage solutions under complex constraints, achieving multiple goals including reduced data redundancy, balanced node load, and enhanced storage performance. This injects intelligent and dynamic adjusting ability into blockchain storage systems.

    MicroAlgo's blockchain storage optimization solution uses AOA as its core engine and spans the entire data-on-chain lifecycle. The technical workflow is divided into five key stages:data Preprocessing, sharding Strategy Optimization, node Resource Allocation, consensus Mechanism Enhancement and security Strategy Tuning.

    Data Feature Analysis and Preprocessing: Multi-dimensional feature extraction is performed on data destined for the blockchain. Depending on the characteristics of different data units, differentiated preprocessing strategies are applied: lightweight serialized encoding for structured transaction data; chunk-based hashing for unstructured file data; and homomorphic encryption or zero-knowledge proof preprocessing for privacy-sensitive data. The feature vectors generated during preprocessing, along with storage constraints (such as maximum node storage capacity, network latency thresholds, and data redundancy safety margins), collectively form the input parameter space for AOA.

    Dynamic Sharding Strategy Optimization: AOA models the data sharding problem as an optimal partitioning task in multi-dimensional space. During initialization, storage nodes in the blockchain network are abstracted as "virtual objects," where each object's "density" corresponds to the node's storage cost coefficient, "volume" to its remaining available storage space, and "buoyancy" to its network transmission efficiency. In the iterative process, AOA performs a global exploration phase simulating the random movement of objects in fluid, traversing various shard combinations and employing collision detection to avoid local optima. In the local exploitation phase, the algorithm converges toward the current optimal sharding plan based on gradient information and dynamically adjusts the storage node allocation for each data block. For example, frequently accessed "hot data" is preferentially stored with multiple replicas on nodes with low latency and strong computational performance to ensure fast response, while infrequently accessed "cold data" is stored using erasure coding on nodes with lower cost and larger capacity, thereby reducing redundancy while ensuring availability. Through adjustment of the adaptive Transfer Factor, the algorithm dynamically balances exploration and exploitation, ultimately producing a sharding strategy that optimizes both storage efficiency and access performance.

    Node Load Balancing and Resource Scheduling: At the node level, AOA builds a real-time load monitoring model, collecting dynamic status data such as storage utilization, CPU usage, and network bandwidth consumption, which serve as input for the algorithm's "force analysis." When node load exceeds a threshold (e.g., storage utilization surpasses 90%), the load balancing mechanism is triggered: by adjusting the "density" parameter (i.e., storage priority) of adjacent nodes, new data is guided toward underloaded nodes. Simultaneously, migration of low-frequency data from overloaded nodes is initiated, following a "minimum transmission cost" principle that evaluates migration paths based on network latency, data volume, and current node loads to generate the optimal migration sequence. Additionally, to accommodate heterogeneous nodes (e.g., full nodes, light nodes, edge nodes), AOA adopts a layered resource scheduling strategy: light nodes store only essential index information, edge nodes handle local data caching, and full nodes take charge of core data validation and long-term storage—thus forming a tiered storage architecture based on core-edge collaboration.

    Consensus Efficiency Enhancement and Block Optimization: At the consensus layer, AOA is deeply integrated with blockchain consensus mechanisms to optimize block generation and validation. Taking PBFT-like consensus as an example, the algorithm reformulates block packaging as a multi-objective optimization problem: it seeks balance between block size limits (e.g., 1MB maximum) and transaction throughput by analyzing transaction type (transfer vs. smart contract), priority (urgent vs. regular), and correlation (cross-contract vs. independent transactions). Based on this analysis, it dynamically adjusts transaction sorting and grouping within blocks. During node election, AOA calculates each node's "trust density" in real time, based on historical performance (e.g., participation in consensus, data validation accuracy, and network stability), and prioritizes high-trust nodes to participate in consensus, reducing the risk of malicious interference. For PoW-based consensus, AOA predicts hash power distribution and network load to dynamically adjust mining difficulty targets, thereby shortening block intervals and reducing energy waste while maintaining decentralization.

    Adaptive Security Strategy Optimization: To meet blockchain storage demands for privacy protection and data security, AOA builds an encryption parameter optimization model. In homomorphic encryption scenarios, the algorithm automatically selects optimal parameters (e.g., modulus size, key length) based on data sensitivity and computational complexity, reducing overhead while maintaining cryptographic strength. In zero-knowledge proof contexts, AOA enhances efficiency by optimizing randomness selection and constraint composition in proof generation, minimizing on-chain storage demands. To mitigate risks of data tampering and node failure, AOA monitors anomalies in on-chain data hash values in real time, and uses cross-verification across multiple node replicas to quickly identify compromised nodes and trigger recovery workflows. During recovery, the algorithm selects the optimal replica node for synchronization based on node trust level and network connectivity, ensuring rapid system consistency restoration.

    Compared to traditional approaches, MicroAlgo's AOA-based blockchain storage optimization solution offers significant advantages. Conventional storage strategies often rely on fixed rules—such as uniform sharding or round-robin allocation—which are prone to falling into the pitfalls of local optima. In contrast, AOA leverages a global search mechanism inspired by fluid dynamics, enabling it to rapidly explore over a million sharding combinations within a complex network of tens of millions of nodes. Its solution efficiency surpasses that of Genetic Algorithms (GA) by 40%, and reduces the number of iterations needed by 25% compared to Particle Swarm Optimization (PSO), effectively avoiding the blindness of static strategies.

    The node status and data characteristics of blockchain networks are in constant flux. The AOA transfer factor mechanism dynamically switches search modes based on real-time load data: during network congestion, it enhances local exploitation to quickly stabilize system performance; during low load, it activates global exploration to discover optimal resource allocation solutions. Empirical data shows this approach controls the standard deviation of node storage utilization within 15%, reducing load imbalance by 60% compared to traditional methods.

    As blockchain penetrates deeper into Web3.0, the metaverse, and other fields, on-chain data volume will experience explosive growth. MicroAlgo's AOA technology will continue to evolve in the following directions: at the algorithmic level, it plans to introduce quantum computing acceleration to boost AOA's iteration speed by over 100 times, addressing optimization needs for exabyte-scale data; at the architectural level, it will explore "algorithm-hardware" co-design, developing dedicated ASIC chips for AOA hardware acceleration to reduce energy costs of blockchain nodes; at the ecosystem level, it will promote deep integration of AOA with cross-chain protocols (e.g., Polkadot, Cosmos) to build a cross-chain storage resource scheduling network, achieving the ultimate goal of "one-point on-chain, network-wide intelligent storage."

    In the future, AOA is poised to become the "intelligent hub" of blockchain storage, driving distributed storage from "rule-driven" to "algorithmic autonomy," laying the technical foundation for unlocking data value in the digital economy era.

    About MicroAlgo Inc.

    MicroAlgo Inc. (the "MicroAlgo"), a Cayman Islands exempted company, is dedicated to the development and application of bespoke central processing algorithms. MicroAlgo provides comprehensive solutions to customers by integrating central processing algorithms with software or hardware, or both, thereby helping them to increase the number of customers, improve end-user satisfaction, achieve direct cost savings, reduce power consumption, and achieve technical goals. The range of MicroAlgo's services includes algorithm optimization, accelerating computing power without the need for hardware upgrades, lightweight data processing, and data intelligence services. MicroAlgo's ability to efficiently deliver software and hardware optimization to customers through bespoke central processing algorithms serves as a driving force for MicroAlgo's long-term development.

    Forward-Looking Statements

    This press release contains statements that may constitute "forward-looking statements." Forward-looking statements are subject to numerous conditions, many of which are beyond the control of MicroAlgo, including those set forth in the Risk Factors section of MicroAlgo's periodic reports on Forms 10-K and 8-K filed with the SEC. Copies are available on the SEC's website, www.sec.gov. Words such as "expect," "estimate," "project," "budget," "forecast," "anticipate," "intend," "plan," "may," "will," "could," "should," "believes," "predicts," "potential," "continue," and similar expressions are intended to identify such forward-looking statements. These forward-looking statements include, without limitation, MicroAlgo's expectations with respect to future performance and anticipated financial impacts of the business transaction.

    MicroAlgo undertakes no obligation to update these statements for revisions or changes after the date of this release, except as may be required by law.

    Contact

    MicroAlgo Inc.

    Investor Relations

    Email: [email protected]



    Get the next $MLGO alert in real time by email

    Chat with this insight

    Save time and jump to the most important pieces.

    Recent Analyst Ratings for
    $MLGO

    DatePrice TargetRatingAnalyst
    More analyst ratings

    $MLGO
    Press Releases

    Fastest customizable press release news feed in the world

    See more
    • MicroAlgo Inc. Develops Quantum Image Encryption Algorithm Based on Quantum Key Images, Offering A Higher Security Image Protection Solution

      SHENZHEN, China, May 8, 2025 /PRNewswire/ -- MicroAlgo Inc. (the "Company" or "MicroAlgo") (NASDAQ: MLGO) announced that the quantum image encryption algorithm they developed, based on quantum key images, is an innovative image protection scheme. This algorithm uses a quantum key image to store encryption keys, leveraging quantum entanglement and parallelism to achieve efficient image encryption. The quantum key image is a special type of quantum image prepared using a specific quantum storage method, with its grayscale values representing the key sequence generated by the encryption algorithm. During encryption, the plaintext image undergoes a bitwise XOR operation with the quantum key imag

      5/8/25 12:40:00 PM ET
      $MLGO
      EDP Services
      Technology
    • MicroAlgo Inc. Develops a Blockchain Storage Optimization Solution Based on the Archimedes Optimization Algorithm (AOA)

      SHENZHEN, May 08, 2025 (GLOBE NEWSWIRE) -- MicroAlgo Inc. Develops a Blockchain Storage Optimization Solution Based on the Archimedes Optimization Algorithm (AOA) Shenzhen, May. 08, 2025/––MicroAlgo Inc. (the "Company" or "MicroAlgo") (NASDAQ: MLGO), announced a focus on addressing the efficiency bottlenecks in blockchain storage by introducing the Archimedes Optimization Algorithm (AOA) into distributed storage architecture. Through intelligent algorithmic restructuring of data storage and node collaboration mechanisms, they aim to provide an innovative solution for large-scale blockchain applications.The Archimedes Optimization Algorithm (AOA) is a metaheuristic algorithm that simulates

      5/8/25 8:30:00 AM ET
      $MLGO
      EDP Services
      Technology
    • MicroAlgo Inc. Develops Classifier Auto-Optimization Technology Based on Variational Quantum Algorithms, Accelerating the Advancement of Quantum Machine Learning

      SHENZHEN, China, May 2, 2025 /PRNewswire/ -- MicroAlgo Inc. (the "Company" or "MicroAlgo") (NASDAQ: MLGO) announced today the launch of their latest classifier auto-optimization technology based on Variational Quantum Algorithms (VQA). This technology significantly reduces the complexity of parameter updates during training through deep optimization of the core circuit, markedly improving computational efficiency. Compared to other quantum classifiers, this optimized model has lower complexity and incorporates advanced regularization techniques, effectively preventing model overfitting and enhancing the classifier's generalization capability. The introduction of this technology marks a signi

      5/2/25 11:10:00 AM ET
      $MLGO
      EDP Services
      Technology

    $MLGO
    Financials

    Live finance-specific insights

    See more
    • MicroAlgo Announces Strong Net Income and Cash Growth in 2024, Driven by Robust Demand for Central Processing Algorithm Services

      SHENZHEN, China, April 28, 2025 /PRNewswire/ -- MicroAlgo Inc. (NASDAQ:MLGO), (the "Company"), a leading developer and application provider of bespoke central processing algorithms, today announced its financial results for the year ended December 31, 2024. The Company reported total revenues of RMB 541.5 million (USD 75.3 million) and net income of RMB 53.4 million (USD 7.3 million), marking a significant turnaround from the previous year's net loss of RMB 266.2 million and net loss of RMB 46.54 million in 2022. This return to profitability is largely attributed to the company's strategic shift away from its intelligent chips and services segment, and dedication of resources resulting in st

      4/28/25 1:00:00 PM ET
      $MLGO
      EDP Services
      Technology
    • MicroAlgo Announces Strong Net Income and Cash Growth in 2024, Driven by Robust Demand for Central Processing Algorithm Services

      Shenzhen, April 28, 2025 (GLOBE NEWSWIRE) -- Shenzhen, China, April 28, 2025 – MicroAlgo Inc. (NASDAQ:MLGO), (the "Company"), a leading developer and application provider of bespoke central processing algorithms, today announced its financial results for the year ended December 31, 2024. The Company reported total revenues of RMB 541.5 million (USD 75.3 million) and net income of RMB 53.4 million (USD 7.3 million), marking a significant turnaround from the previous year's net loss of RMB 266.2 million and net loss of RMB 46.54 million in 2022. This return to profitability is largely attributed to the company's strategic shift away from its intelligent chips and services segment, and dedica

      4/28/25 8:00:00 AM ET
      $MLGO
      EDP Services
      Technology

    $MLGO
    SEC Filings

    See more
    • SEC Form 424B5 filed by MicroAlgo Inc.

      424B5 - MicroAlgo Inc. (0001800392) (Filer)

      5/8/25 4:18:07 PM ET
      $MLGO
      EDP Services
      Technology
    • SEC Form 6-K filed by MicroAlgo Inc.

      6-K - MicroAlgo Inc. (0001800392) (Filer)

      5/8/25 4:15:06 PM ET
      $MLGO
      EDP Services
      Technology
    • SEC Form 6-K filed by MicroAlgo Inc.

      6-K - MicroAlgo Inc. (0001800392) (Filer)

      4/28/25 8:10:21 AM ET
      $MLGO
      EDP Services
      Technology

    $MLGO
    Large Ownership Changes

    This live feed shows all institutional transactions in real time.

    See more

    $MLGO
    Insider Trading

    Insider transactions reveal critical sentiment about the company from key stakeholders. See them live in this feed.

    See more
    • Amendment: SEC Form SC 13G/A filed by MicroAlgo Inc.

      SC 13G/A - MicroAlgo Inc. (0001800392) (Subject)

      10/7/24 12:42:29 PM ET
      $MLGO
      EDP Services
      Technology
    • Amendment: SEC Form SC 13G/A filed by MicroAlgo Inc.

      SC 13G/A - MicroAlgo Inc. (0001800392) (Subject)

      10/1/24 3:10:31 PM ET
      $MLGO
      EDP Services
      Technology
    • SEC Form SC 13G filed by MicroAlgo Inc.

      SC 13G - MicroAlgo Inc. (0001800392) (Subject)

      10/1/24 3:09:32 PM ET
      $MLGO
      EDP Services
      Technology
    • SEC Form 3 filed by new insider Sbi Securities Co., Ltd.

      3 - MicroAlgo Inc. (0001800392) (Issuer)

      10/3/24 9:30:38 PM ET
      $MLGO
      EDP Services
      Technology