Table of Contents
1. The basic principles of MongoDB sharding
3. Precautions and FAQ
Home Technology peripherals AI Explore horizontal scaling with MongoDB: building efficient large-scale data storage solutions

Explore horizontal scaling with MongoDB: building efficient large-scale data storage solutions

Dec 01, 2023 pm 12:27 PM
data storage

MongoDB is a NoSQL database that is ideal for building large-scale data storage solutions. It scales horizontally to cope with growing data volume and load requirements. The following will introduce the horizontal expansion mechanism of MongoDB in detail, and explore how to use MongoDB to build high-performance, scalable large-scale data storage solutions.

Horizontal expansion refers to distributing data on multiple nodes to achieve data sharding and load balancing, thereby improving system performance and capacity. In MongoDB, horizontal expansion is achieved by using the sharding function

1. The basic principles of MongoDB sharding

1. Shard Key: Shard Key refers to a field used to split data into different fragments. Choosing an appropriate shard key can ensure that data is evenly distributed among various fragments and avoid data hotspots and load imbalance issues

2. Shard Cluster: Shard Cluster It consists of multiple shard nodes and one or more configuration servers (Config Server). Each shard node is responsible for storing a portion of the data in the sharded cluster.

3. Routing and load balancing: The client will interact with the sharded cluster through the router. The router will route the query to the corresponding shard node based on the shard key in the query. In addition, the load balancing mechanism can also ensure load balancing among various shard nodes to improve system performance and capacity

2. Steps to build a large-scale data storage solution

1. Design the sharding key: Choose the appropriate sharding key based on business needs and data characteristics. Sharding keys should be evenly distributed to avoid data skew and hotspot issues.

The content that needs to be rewritten is: 2. Deploy sharding cluster: configure and start the configuration server and sharding nodes. Configure the server to store the metadata of the sharded cluster, and the sharded nodes are used to store data

3. Initialize the sharded cluster: split the data into multiple fragments and distribute the fragments on different shard nodes. Use the mongos command line tool to initialize the sharded cluster and add sharded nodes.

4. Monitoring and management: Use the tools and functions provided by MongoDB, such as MongoDB Ops Manager and MongoDB Cloud Manager, to monitor the status, performance and health of the sharded cluster. Identify and resolve problems promptly.

5. Data migration: If data already exists, data migration operation is required. MongoDB provides tools and commands, such as mongodump and mongorestore, for migrating data from existing deployments into sharded clusters.

6. Query and data access: The client interacts with the sharded cluster through the router. Use the correct shard key in queries to ensure the query is routed to the correct shard node.

When the amount of data grows or the load demand becomes larger, the capacity and performance of the system can be expanded by adding more shard nodes. The sharded cluster can automatically balance the load to ensure load balancing among each sharded node

3. Precautions and FAQ

Required The rewritten content is: 1. Sharding key design: Choosing an appropriate sharding key is very important. The sharding key should be selected based on specific business needs and data characteristics to avoid selecting a single hotspot data as the sharding key, which may lead to load imbalance

2. Sharded cluster deployment: The number and location of nodes in a sharded cluster need to be deployed appropriately. While considering network connection and latency issues, ensure stable communication and data replication between shard nodes

3. Monitoring and management: Regularly monitor the status, performance and performance of the sharded cluster. Health status. Discover and solve potential problems in a timely manner, such as load imbalance, data skew, etc.

4. Data migration: Data migration is a complex and time-consuming process. Before data migration, careful planning and testing are required to ensure the accuracy and completeness of the data migration.

5. Data consistency: In a sharded cluster, data replication and synchronization are performed asynchronously. It is necessary to pay attention to the delay and synchronization issues of data replication to ensure the consistency of data during query

Through horizontal expansion, MongoDB can build high-performance, scalable large-scale data storage solutions. Proper design and selection of shard keys, deployment and management of shard clusters, and handling of precautions and common problems are all key to building large-scale data storage solutions. Using the tools and functions provided by MongoDB, you can better monitor and manage sharded clusters to ensure system performance, availability, and scalability. In actual applications, these steps and precautions need to be flexibly applied according to specific needs and environments to build a large-scale data storage solution that meets business needs

The above is the detailed content of Explore horizontal scaling with MongoDB: building efficient large-scale data storage solutions. For more information, please follow other related articles on the PHP Chinese website!

Statement of this Website
The content of this article is voluntarily contributed by netizens, and the copyright belongs to the original author. This site does not assume corresponding legal responsibility. If you find any content suspected of plagiarism or infringement, please contact admin@php.cn

Hot AI Tools

Undresser.AI Undress

Undresser.AI Undress

AI-powered app for creating realistic nude photos

AI Clothes Remover

AI Clothes Remover

Online AI tool for removing clothes from photos.

Undress AI Tool

Undress AI Tool

Undress images for free

Clothoff.io

Clothoff.io

AI clothes remover

AI Hentai Generator

AI Hentai Generator

Generate AI Hentai for free.

Hot Article

R.E.P.O. Energy Crystals Explained and What They Do (Yellow Crystal)
4 weeks ago By 尊渡假赌尊渡假赌尊渡假赌
R.E.P.O. Best Graphic Settings
4 weeks ago By 尊渡假赌尊渡假赌尊渡假赌
R.E.P.O. How to Fix Audio if You Can't Hear Anyone
4 weeks ago By 尊渡假赌尊渡假赌尊渡假赌
R.E.P.O. Chat Commands and How to Use Them
4 weeks ago By 尊渡假赌尊渡假赌尊渡假赌

Hot Tools

Notepad++7.3.1

Notepad++7.3.1

Easy-to-use and free code editor

SublimeText3 Chinese version

SublimeText3 Chinese version

Chinese version, very easy to use

Zend Studio 13.0.1

Zend Studio 13.0.1

Powerful PHP integrated development environment

Dreamweaver CS6

Dreamweaver CS6

Visual web development tools

SublimeText3 Mac version

SublimeText3 Mac version

God-level code editing software (SublimeText3)

Use ddrescue to recover data on Linux Use ddrescue to recover data on Linux Mar 20, 2024 pm 01:37 PM

DDREASE is a tool for recovering data from file or block devices such as hard drives, SSDs, RAM disks, CDs, DVDs and USB storage devices. It copies data from one block device to another, leaving corrupted data blocks behind and moving only good data blocks. ddreasue is a powerful recovery tool that is fully automated as it does not require any interference during recovery operations. Additionally, thanks to the ddasue map file, it can be stopped and resumed at any time. Other key features of DDREASE are as follows: It does not overwrite recovered data but fills the gaps in case of iterative recovery. However, it can be truncated if the tool is instructed to do so explicitly. Recover data from multiple files or blocks to a single

Open source! Beyond ZoeDepth! DepthFM: Fast and accurate monocular depth estimation! Open source! Beyond ZoeDepth! DepthFM: Fast and accurate monocular depth estimation! Apr 03, 2024 pm 12:04 PM

0.What does this article do? We propose DepthFM: a versatile and fast state-of-the-art generative monocular depth estimation model. In addition to traditional depth estimation tasks, DepthFM also demonstrates state-of-the-art capabilities in downstream tasks such as depth inpainting. DepthFM is efficient and can synthesize depth maps within a few inference steps. Let’s read about this work together ~ 1. Paper information title: DepthFM: FastMonocularDepthEstimationwithFlowMatching Author: MingGui, JohannesS.Fischer, UlrichPrestel, PingchuanMa, Dmytr

How to use Excel filter function with multiple conditions How to use Excel filter function with multiple conditions Feb 26, 2024 am 10:19 AM

If you need to know how to use filtering with multiple criteria in Excel, the following tutorial will guide you through the steps to ensure you can filter and sort your data effectively. Excel's filtering function is very powerful and can help you extract the information you need from large amounts of data. This function can filter data according to the conditions you set and display only the parts that meet the conditions, making data management more efficient. By using the filter function, you can quickly find target data, saving time in finding and organizing data. This function can not only be applied to simple data lists, but can also be filtered based on multiple conditions to help you locate the information you need more accurately. Overall, Excel’s filtering function is a very practical

Google is ecstatic: JAX performance surpasses Pytorch and TensorFlow! It may become the fastest choice for GPU inference training Google is ecstatic: JAX performance surpasses Pytorch and TensorFlow! It may become the fastest choice for GPU inference training Apr 01, 2024 pm 07:46 PM

The performance of JAX, promoted by Google, has surpassed that of Pytorch and TensorFlow in recent benchmark tests, ranking first in 7 indicators. And the test was not done on the TPU with the best JAX performance. Although among developers, Pytorch is still more popular than Tensorflow. But in the future, perhaps more large models will be trained and run based on the JAX platform. Models Recently, the Keras team benchmarked three backends (TensorFlow, JAX, PyTorch) with the native PyTorch implementation and Keras2 with TensorFlow. First, they select a set of mainstream

Slow Cellular Data Internet Speeds on iPhone: Fixes Slow Cellular Data Internet Speeds on iPhone: Fixes May 03, 2024 pm 09:01 PM

Facing lag, slow mobile data connection on iPhone? Typically, the strength of cellular internet on your phone depends on several factors such as region, cellular network type, roaming type, etc. There are some things you can do to get a faster, more reliable cellular Internet connection. Fix 1 – Force Restart iPhone Sometimes, force restarting your device just resets a lot of things, including the cellular connection. Step 1 – Just press the volume up key once and release. Next, press the Volume Down key and release it again. Step 2 – The next part of the process is to hold the button on the right side. Let the iPhone finish restarting. Enable cellular data and check network speed. Check again Fix 2 – Change data mode While 5G offers better network speeds, it works better when the signal is weaker

Huawei will launch innovative MED storage products next year: rack capacity exceeds 10 PB and power consumption is less than 2 kW Huawei will launch innovative MED storage products next year: rack capacity exceeds 10 PB and power consumption is less than 2 kW Mar 07, 2024 pm 10:43 PM

This website reported on March 7 that Dr. Zhou Yuefeng, President of Huawei's Data Storage Product Line, recently attended the MWC2024 conference and specifically demonstrated the new generation OceanStorArctic magnetoelectric storage solution designed for warm data (WarmData) and cold data (ColdData). Zhou Yuefeng, President of Huawei's data storage product line, released a series of innovative solutions. Image source: Huawei's official press release attached to this site is as follows: The cost of this solution is 20% lower than that of magnetic tape, and its power consumption is 90% lower than that of hard disks. According to foreign technology media blocksandfiles, a Huawei spokesperson also revealed information about the magnetoelectric storage solution: Huawei's magnetoelectronic disk (MED) is a major innovation in magnetic storage media. First generation ME

The vitality of super intelligence awakens! But with the arrival of self-updating AI, mothers no longer have to worry about data bottlenecks The vitality of super intelligence awakens! But with the arrival of self-updating AI, mothers no longer have to worry about data bottlenecks Apr 29, 2024 pm 06:55 PM

I cry to death. The world is madly building big models. The data on the Internet is not enough. It is not enough at all. The training model looks like "The Hunger Games", and AI researchers around the world are worrying about how to feed these data voracious eaters. This problem is particularly prominent in multi-modal tasks. At a time when nothing could be done, a start-up team from the Department of Renmin University of China used its own new model to become the first in China to make "model-generated data feed itself" a reality. Moreover, it is a two-pronged approach on the understanding side and the generation side. Both sides can generate high-quality, multi-modal new data and provide data feedback to the model itself. What is a model? Awaker 1.0, a large multi-modal model that just appeared on the Zhongguancun Forum. Who is the team? Sophon engine. Founded by Gao Yizhao, a doctoral student at Renmin University’s Hillhouse School of Artificial Intelligence.

The first robot to autonomously complete human tasks appears, with five fingers that are flexible and fast, and large models support virtual space training The first robot to autonomously complete human tasks appears, with five fingers that are flexible and fast, and large models support virtual space training Mar 11, 2024 pm 12:10 PM

This week, FigureAI, a robotics company invested by OpenAI, Microsoft, Bezos, and Nvidia, announced that it has received nearly $700 million in financing and plans to develop a humanoid robot that can walk independently within the next year. And Tesla’s Optimus Prime has repeatedly received good news. No one doubts that this year will be the year when humanoid robots explode. SanctuaryAI, a Canadian-based robotics company, recently released a new humanoid robot, Phoenix. Officials claim that it can complete many tasks autonomously at the same speed as humans. Pheonix, the world's first robot that can autonomously complete tasks at human speeds, can gently grab, move and elegantly place each object to its left and right sides. It can autonomously identify objects

See all articles