精品欧美一区二区三区在线观看 _久久久久国色av免费观看性色_国产精品久久在线观看_亚洲第一综合网站_91精品又粗又猛又爽_小泽玛利亚一区二区免费_91亚洲精品国偷拍自产在线观看 _久久精品视频在线播放_美女精品久久久_欧美日韩国产成人在线

Product VP at Cloudcy.cn Introduced How AIOps and Observability Streamline Cloud-native Oper

原創(chuàng) 精選
Techplur
In this article, we invited Mr. Zhang Huaipeng, product VP of Cloudcy.cn, to share his experience and expertise on what it takes to build a digital observation tool in an era of cloud computing.

While cloud computing brings a number of benefits such as intensification, efficiency, elasticity, and business agility, it also poses unprecedented challenges to the field of cloud operations. In this regard, adapting to new technology trends, creating an intelligent monitoring platform in the cloud era, and achieving better protection for cloud-based applications have become imperative for enterprises today.

In this article, we invited Mr. Zhang Huaipeng, product VP of Cloudcy.cn, to share his experience and expertise on what it takes to build a digital observation tool in an era of cloud computing.


Operational challenges under digital transformation

We live in a digital age where digitalization influences all aspects of our daily lives, including how we work, consume, shop, and travel. It is fair to say that now we have shifted from the IT era into the "DT" (digital transformation) one.

Since the advent of digital transformation, enterprises and their customers have experienced a fundamental change in how they conduct business. It should be noted, however, that as the digital revolution continues to advance across a range of industries,increasing numbers of accidents have been reported related to digital applications. 

A recent survey reported that 60% of CEOs believe digital transformation is essential, and businesses should make significant progress towards digital transformation and artificial intelligence evolution. Conversely, 95% of enterprise applications are not monitored effectively and may pose some problems.

It is important to note that most of the current digital operation tools were developed during the era of traditional data centers, and a significant number of tools and technologies do not consider cloud computing scenarios. Due to the popularity of cloud computing, the information technology scenario has dramatically changed.Increasingly complex, distributed, and dependent applications are evolving at a rapid pace. Thus, enterprises must develop DT-based solutions based on business and data flows to succeed in a competitive market.

Cloud-native technology is among the many new technologies and scenarios emerging during the DT era. With the introduction of cloud-native technologies, operation manners have evolved at an accelerated pace. Traditional scenarios have a large amount of physical infrastructure, which may require enterprises to care about conventional server room management, weak power management, hardware monitoring of bare metal, UPS power distribution, and temperature & humidity.

However, with business in the cloud,infrastructure will be managed by operators or providers, so enterprises will no longer need to worry about these issues.

Thus, the traditional equipment operations have evolved into site reliability, which means that enterprise investments in old-fashioned operations will diminish over time.

Currently, we are undergoing a transition to AIOps. Now is the time to make digital operations and IT operations more lightweight, more efficient, and less costly. Operations teams must focus on the enterprise business, which is the key to success.


The road to AIOps for enterprises

What is AIOps?

Defined by some research services such as Forrester and Gartner, AIOps is a software system that uses artificial intelligence and data science in business and operations to establish data correlation and provide real-time prescriptive and predictive guidance. As a software system, AIOps can be used in a commercial product. AIOps may enhance and partially replace traditional critical IT operations functions, such as monitoring availability and performance, organizing and analyzing events, and automatically managing IT services.

AIOps, as the name suggests, is concerned with operations, such as observation, management, and disposal. As Forrester suggested in their reports, AIOps promises greater observability and stability, both of which are important in this field.

According to Forrester, one of the core values of current AIOps is the enhancement and extension of ex-ante capabilities.

What is observability?

It was in the field of Cybernetics that the term "observability" was first used, and it defined a system's output to be used to infer the internal state of the system. IT research firm Gartner defines observability as a characteristic of software and systems. In particular, it refers to the ability to determine a system's current state and condition based on telemetry data it generates.

Why is observability a key concept?

Observability is essential to improving the control of complex systems. Traditional monitoring techniques and tools have difficulty tracking communication paths and dependencies of today's increasingly distributed architectures. Meanwhile, cloud-native or cloud-based application dependencies are much more complex than those in traditional monolithic applications. In addition, the three pillars of observability facilitate an intuitive understanding of all aspects of the complex system.

Department of Ops, Development, SRE,Marketing, and Business could benefit from observability. Therefore, if AIOps and observability can be integrated into one integrated platform, we will receive a perfect product and will be able to accomplish two things at once.


The paths to AIOps for enterprises

AIOps can be achieved exogenously and endogenously in enterprises. An exogenous AIOps platform is integrated into an IT operations environment as a sidecar platform. In this case, AIOps is an independent algorithm platform that accesses heterogeneous data from various sources. Data engineers process the data using big data analytics to resolve interdependencies between data sources and produce project-based results.

While endogenous AIOps emphasize the integrated technology route. It can facilitate the closing loop of the whole data processing without involving data engineers. This is like sending a courier package, but with data as the "items". Data is encapsulated,stored, scheduled, and transported by the "courier", eliminating any need for the sender or final recipient to be involved in these tasks.Endogenous AIOps emphasize this capability by embedding AI capabilities into one single integrated observation platform.

Exogenous vs. endogenous AIOps in technological implementation

Generally, exogenous AIOps use traditional machine learning techniques. They are essentially statistical approaches that correlate and analyze information such as metrics, logs, and events to reduce alert noise. Machine learning enables us to obtain a set of correlated alerts, which requires a specific period. Exogenous AIOps need manual or historical records to establish a recommended or probable root cause.

Meanwhile, exogenous AIOps require a large amount of external data dependency, and vendors usually only design their algorithms. Data cleansing, dependencies between entities within a CMDB, etc.,all rely on external data. Exogenous AIOps, therefore, require a mature information technology operations system, products with APM, the prerequisite of calling data, and excellent observability.

Endogenous AIOps provide a deterministic AI analysis with deterministic results being the targets.Therefore, the root cause of the problem is deterministic in real-time following the occurrence of the problem. Endogenous AIOps maintain a matrix dependency map in real-time. The technology does not depend on a static CMDB but rather on a dependency map that acts like a real-time CMDB, allowing the dependency to be changed in real-time and management analysis to be carried out by an endogenous relationship.

How to choose your technological pathway?

For managers, the trade-offs between cost, stability, and efficiency must be considered along with fundamental issues such as cost and team. Using AIOps can solve problems rationally,optimizing the stability and efficiency of enterprise business and keeping costs to a minimum.

According to a report from Forrester, enterprises should focus on the following key aspects when implementing AIOps:

?Whether the AIOps platform integrates seamlessly with the ITOM toolchain and is highly automated;

?AIOps will place great emphasis on native data, including cloud-native dependencies and machine data;

?An automated and comprehensive mapping of full-service dependencies;

?AIOps will require intelligent observation awareness and automation implementation;

?Automating the analysis of root causes and the planning of remediation for incidents;

?Technical operations today require intelligence and automation.

Data processing differences:

Traditional AIOps platforms(exogenous AIOps platforms) have used various tools to build up a rickety big data processing system. In this system, team members are likely to leave new employees with a significant amount of technical debt following their resignation.

Data collection begins with the use of a variety of open source and commercial tools.

After the data has been collected,the next step is to inject it into the big data platform.

The data relationships will be manually sorted and cleaned. These require a lot of time and effort.

Identify the issues in which the AIOps vendor would be involved in the field. Vendors will ask for specifications and provide services following those specifications.

Develop the dashboard.

Scale up the system. The system will, therefore, grow linearly as the application system scales.

It is common to see data engineers spend almost 80% of their time cleaning, collecting, and organizing data. The process requires cutting-edge ops talents and an understanding of ops,algorithms, and development. Meanwhile, AIOps is a tool that helps solve problems, but exogenous AIOps may increase ops workload and require a dedicated maintenance team.

As for endogenous AIOps, their data processing is very simplistic, and one tool can handle all aspects of the data collection. As a highly commercialized product, endogenous AIOps have out-of-the-box capabilities, such as a dashboard, engine, etc., and do not require business engineers to understand algorithms or SRE.

In addition, as the enterprise business system scales, endogenous AIOps will grow non-linearly. It is important to note that the entire system, including the user's team and the product, increases non-linearly. Using Cloudcy as an example, once the solution has been deployed, enterprises only need to install Databuff OneAgent, and many of the subsequent tasks can be automated. Consequently, operations personnel can devote their attention to the enterprise's core business.

Rather than presenting raw data, the industry requires a new generation of software AI platforms that can cover the entire data processing process. AIOps, which belongs to the new paradigm of AIOps, is recommended over the two paths of exogenous and endogenous AIOps.


Endogenous AIOps facilitate cloud-native operations

The objective of the endogenous AIOps platform is to build an integrated platform that combines AIOps and observability. For it to be observable, it needs to be centered on application monitoring, which is the phenomenon layer for end users. Meanwhile, it is necessary to integrate infrastructure monitoring, including monitoring of cloud platforms as well as black boxes. Lastly, it is essential to provide a digital experience that is focused on the front end.

The new AIOps platform should provide continuous automation from data access to results output. In addition,it needs to be capable of predicting and warning.

AIOps platforms must provide high-level observability to enterprises, not just raw data and raw parts, but focus on phenomena and experience and provide accurate results to minimize the impact of massive noise on enterprises.

An endogenous AIOp can have many different data processing models, such as the strength of Databuff OneAgent to the data collection process. Data processing emphasizes the metrics system, and our implementation of the metrics system differs from the traditional AIOps platform, resulting in a true endogenous AIOps.

Endogenous AIOps platforms will simplify cloud-native operations in the following five areas:

?Direct access to high-quality observation data;

?Developing continuous automation that is more efficient for operations;

?Platforms can construct real-time matrix topologies for querying;

?An instant assessment of the impact surface;

?Disclose root causes to prove results.

1.Directly access to high-quality
observation data

High-quality back-end analysis requires high-quality front-end telemetry data. Tracking data, indicators, log data, and critical topology and code data are essential for high-level observability and endogenous AIOps analysis. The data quality directly indicates how high a model can go.

Monitoring data that can be directly accessed must be non-invasive, automatedly collected, related to business and applications, a combination of context and automation, and without modifying source code. Context is an indispensable component of real root cause analysis.It can help extract accurate background information and help the platform build real-time service flow and topology diagrams for dependencies, including matrix relationship topology.

These diagrams display the dependencies of the application environment, primarily in the form of vertical and horizontal stacks. A service flow diagram provides an overview of the entire transaction from the perspective of service or request. A service flow diagram or topology diagram can demonstrate the calling sequence among services. The service flow diagram illustrates all transactions orderly,whereas the topology diagram represents dependencies more abstractly.

While there are already many open-source and free powerful monitoring tools on the market, commercialized Databuff OneAgent technology has several advantages that open-source tools lack, including:

?Agent probes collected are guaranteed for stability, security, and reliability;

?Ensured resource overhead and performance impact on core business servers;

?A reduced amount of manual labor is required for deployment, insertion, and changes;

?Dynamic methods and container classes can be automatically monitored

?High fidelity native sampling of metrics;

?Obtaining sufficient information and context to construct a unified data model.

These are some of the advantages that many free tools don't have. Endogenous AIOps rely on OneAgent technology,which is designed to perform a great deal of aggregation and cleaning work at the endpoints using edge computing.

2.Continuous
automation

Endogenous AIOps platforms are designed to enable continuous automation, which is essential to the monitoring of cloud-native environments. This includes automating deployment, adaptation,discovery, monitoring, injection, cleaning, etc. It isn't easy to understand the end-to-end business process in the complex cloud-native environment with human intelligence, so automated operations are necessary as an additional tool.

3.Construct a real-time matrix diagram

Endogenous AIOps platforms are capable of building real-time topology matrices. You can check the diagram horizontally to view the dependencies between the service, container, host, and process levels. The vertical side of the table displays which container the service is running on, which process this container corresponds to, and on which cloud host the service is running.

4.Instant assessment of the impact surface

It is similar to the analysis performed on network security but pertains to the operations. If a system failure occurs, the team should analyze which users, services, and applications are affected and what is the root cause of the failures. By automating the process, users can view the results without performing manual analysis.

5.Disclose root causes to prove results

Lastly, it is vital to identify the root causes of the problem to prove the results. AIOps offers a solution based on endogenous root cause location instead of traditional methods such as knowledge base, CMDB, and causal inference. In addition, it can bridge data dependencies between objects and data types, such as call chains, logs, and metrics. With low overhead, it provides a real-time root cause location with high adaptability and high accuracy. Furthermore, its unsupervised learning capability requires little human intervention.


Conclusion

For digital transformation to be successful, enterprises must ensure that all applications, digital services,and the dynamic multi-cloud platforms that underpin them work flawlessly.

Compared to traditional scenarios,these highly dynamic, distributed, cloud-native technologies present different challenges. Micro-services, containers and software-defined cloud infrastructure contribute to the current complexity. These complexities far exceed the capacity of a team to manage, and they are growing exponentially.Therefore, it is necessary to increase observability and AIOps capabilities to remain abreast of the changes in these rapidly changing environments.

Cloud-native operations must be made lightweight, more efficient, and less costly using highly automated and artificial intelligence technologies so that enterprise teams can focus on the core business and truly transition into the era of AI-assisted operations.


Guest Introduction

Mr. Zhang Huaipeng is the Product Vice President for Cloudcy.cn. He joined the company in 2017 and is responsible for the daily management of the DataBuff Integrated Observation and AIOps product line. As manager of the IPD integrated product development team, he is in charge of market management, requirements analysis, team collaboration, process structuring, quality assurance, etc.

責(zé)任編輯:龐桂玉 來(lái)源: 51CTO
相關(guān)推薦

2022-08-30 20:45:41

cloudcloud natieducation

2022-08-31 14:58:48

data lakescloud natibig data

2022-08-31 16:13:11

cloud nati

2016-01-22 13:12:38

云計(jì)算云原生云原生應(yīng)用

2015-09-22 14:19:56

Cloud NativDevOps持續(xù)交付

2022-08-31 09:31:20

AlibabaKoodinatorcontainers

2021-03-26 10:31:19

人工智能AIOps

2016-04-07 22:11:13

時(shí)速云Cloud NativDocker

2020-05-28 10:53:32

存儲(chǔ)數(shù)據(jù)框架

2021-03-18 12:41:42

AIOps機(jī)器學(xué)習(xí)人工智能

2017-06-29 14:29:46

互聯(lián)網(wǎng)

2021-05-10 17:20:55

AIOps開(kāi)發(fā)人員人工智能

2025-07-30 00:00:00

2024-11-28 15:03:15

SUSERacher

2017-08-02 09:37:32

NFVCloud Nativ虛擬機(jī)

2019-07-17 15:10:12

WOT2019人工智能

2021-10-15 13:44:09

人工智能AI深度學(xué)習(xí)

2022-09-23 09:02:16

數(shù)字化轉(zhuǎn)型AIOps

2021-01-27 11:56:45

AIops人工智能AI

2021-07-26 10:42:49

云計(jì)算AIOps人工智能
點(diǎn)贊
收藏

51CTO技術(shù)棧公眾號(hào)

中文字幕不卡一区| 日韩免费视频| 色婷婷av一区| 一区二区精品在线观看| 国产免费视频一区二区三区| 欧美日韩第一区| 亚洲精品一区av在线播放| 黄色av免费在线播放| 黄色av网站在线播放| 成人美女视频在线观看| 国产成人精品免高潮在线观看| 制服丨自拍丨欧美丨动漫丨| 涩爱av色老久久精品偷偷鲁 | 欧美凹凸一区二区三区视频| 久久午夜免费视频| 久久福利综合| 精品无码久久久久久国产| 中文字幕在线视频精品| 在线天堂中文资源最新版| 亚洲少妇最新在线视频| 开心色怡人综合网站| 国产一区二区在线视频观看| 亚洲综合三区| 欧美国产第二页| 网爆门在线观看| 亚洲综合福利| 欧美精品一区二区三区久久久| 精品久久久久久中文字幕2017| 伦理在线一区| 亚洲日本乱码在线观看| 亚洲高清在线播放| 九色视频网站在线观看| 成人美女在线视频| 97视频资源在线观看| 一级黄色片在线播放| 久久综合图片| 91成人天堂久久成人| 久久免费视频99| 亚洲狼人综合网| 少妇高潮一区二区三区99| 午夜视频久久久久久| 国产盗摄视频在线观看| 91视频在线观看| 国产午夜亚洲精品理论片色戒| 精品欧美日韩| 黄色小视频免费观看| 国产麻豆一精品一av一免费| 91精品国产综合久久男男 | 欧美又粗又大又爽| 免费成人在线视频网站| av资源中文在线| 亚洲国产日产av| 日韩av高清| porn视频在线观看| 国产色产综合产在线视频| 蜜桃成人在线| 欧洲天堂在线观看| 久久亚洲免费视频| 欧美日韩中文国产一区发布| 日本一二三区在线视频| 91蝌蚪porny九色| 秋霞在线观看一区二区三区 | 久久大大胆人体| 久久精品一区二区三区四区五区| 我不卡神马影院| 久久中国妇女中文字幕| 久久久久久久久久网站| 亚洲网站视频| 欧洲日本亚洲国产区| 波多野结衣毛片| 美女久久久精品| 91色视频在线观看| 丰满岳乱妇国产精品一区| av在线这里只有精品| 久久综合狠狠综合久久综青草| 欧美在线观看在线观看| 国产精品无圣光一区二区| 成人性做爰片免费视频| 成人三级小说| 色吊一区二区三区| 久久久久久久久久毛片| 久久精品—区二区三区舞蹈| 国产精品va视频| 精品国产百合女同互慰| 中文字幕一区二区三区人妻| 久久精品99久久无色码中文字幕| 久久精品在线播放| 日韩av在线电影| 免费成人小视频| 国产91亚洲精品一区二区三区| 女人偷人在线视频| **欧美大码日韩| av免费观看大全| 日本精品久久| 亚洲精品福利在线观看| jizz日本在线播放| 欧美激情四色| 人九九综合九九宗合| 国产日韩精品suv| 26uuu色噜噜精品一区二区| 中文有码久久| 欧美性xxx| 日韩欧美久久久| 国产真人做爰视频免费| 激情自拍一区| 成人黄色片在线| 天堂中文在线资| 亚洲色欲色欲www| 无遮挡又爽又刺激的视频| 未满十八勿进黄网站一区不卡| 欧美v亚洲v综合ⅴ国产v| 一区二区三区久久久久| 亚洲国产精品第一区二区| 国产欧美精品在线播放| 色视频在线看| 亚洲一区二区三区不卡国产欧美| 中文字幕亚洲欧洲| 欧美男gay| 国内精品久久久久久久| 97人人爽人人爽人人爽| 国产欧美日韩亚州综合| |精品福利一区二区三区| 国产肉体ⅹxxx137大胆| 国产一区二区三区四区五区3d | 美女毛片在线看| 亚洲乱码一区二区三区在线观看| 日韩中文字幕免费在线| 欧美挤奶吃奶水xxxxx| 欧美成人激情在线| 亚洲天堂自拍偷拍| 久久久99精品久久| 99在线精品免费视频| 中文字幕一区图| 欧美成人高清视频| 99在线精品视频免费观看软件 | 国产一区二区精品久久| 手机成人在线| 日本美女久久| 中文字幕v亚洲ⅴv天堂| 看黄色一级大片| 久久久久久久久97黄色工厂| 免费国产a级片| 国产欧美三级电影| 久久人人爽人人爽人人片av高清| 国产夫妻在线观看| 亚洲日本一区二区| 奇米777在线视频| 97精品视频| 成人性生交大片免费看小说 | 蜜臀一区二区三区精品免费视频| 免费电影一区二区三区| 日本精品va在线观看| 免费毛片在线| 91搞黄在线观看| 超碰97av在线| 久久99精品久久久久久国产越南 | 91精品国产欧美一区二区| 日本女人性生活视频| 狠狠色丁香久久婷婷综| 国内自拍中文字幕| 高清日韩中文字幕| 欧美综合在线观看| 成人一区二区不卡免费| 欧美精品色一区二区三区| 秋霞欧美一区二区三区视频免费| 精品一区二区免费| 加勒比海盗1在线观看免费国语版| 日韩精品久久久久久久软件91| 欧美国产亚洲视频| 深夜影院在线观看| 欧洲精品一区二区三区在线观看| 色噜噜噜噜噜噜| 激情国产一区二区| 日本大片免费看| 九九在线精品| 91亚洲精品一区二区| 538在线观看| 日韩久久免费视频| 国产又爽又黄又嫩又猛又粗| 亚洲一区二区四区蜜桃| 午夜理伦三级做爰电影| 国产中文字幕一区| 日韩av在线播放不卡| 你懂的视频欧美| 成人精品福利视频| 色戒汤唯在线| 久久精品成人一区二区三区| 日韩一卡二卡在线| 欧美日韩dvd在线观看| 日韩免费一二三区| 中文字幕精品—区二区四季| 18禁一区二区三区| 日韩精品一二区| 日本香蕉视频在线观看| 国产最新精品| 风间由美一区二区三区| 国产成人a视频高清在线观看| 欧美俄罗斯乱妇| www 日韩| 精品调教chinesegay| 精品毛片一区二区三区| 在线免费精品视频| 日本三级午夜理伦三级三| 国产精品少妇自拍| 好男人香蕉影院| 狠狠色狠狠色综合日日91app| 黄色片一级视频| 激情成人亚洲| 杨幂一区欧美专区| 免费黄色成人| 激情视频一区二区| 韩国三级成人在线| 国产精品日韩在线播放| 日韩激情电影免费看| 欧美成人精品一区| 日本美女高清在线观看免费| 精品五月天久久| 国产 欧美 自拍| 4438x亚洲最大成人网| 中文字幕精品三级久久久| 亚洲最色的网站| 日本午夜在线观看| 国产精品每日更新在线播放网址| 亚洲乱码国产乱码精品精大量| 国产成人鲁色资源国产91色综| www.涩涩涩| 久久精品五月| 日韩中文字幕二区| 中日韩视频在线观看| 青青草国产免费| 亚洲网站在线| www.avtt| 91tv官网精品成人亚洲| 一区二区三区观看| 全球成人免费直播| 五月天色一区| 欧美中文一区二区| 天堂精品一区二区三区| 欧美日韩中文一区二区| 日本中文不卡| 波多野结衣在线播放一区| 日韩国产精品一区二区| 中文字幕精品影院| 欧美精品v日韩精品v国产精品| 日韩a级大片| 久久精品人人做人人爽电影| 日本精品影院| 久久久精品动漫| 尤物tv在线精品| 品久久久久久久久久96高清| 国产一区二区三区四区二区| 区一区二区三区中文字幕| 狠狠做六月爱婷婷综合aⅴ | 国产尤物精品| 日本精品久久久久久久久久| 亚洲激情社区| 亚洲 高清 成人 动漫| 老司机午夜精品视频| 欧美日韩在线观看不卡| 久久99国产精品久久| 欧美污在线观看| 国产99久久久国产精品免费看| 特级特黄刘亦菲aaa级| 97久久超碰国产精品| 粉嫩av蜜桃av蜜臀av| 亚洲国产成人午夜在线一区| 强制高潮抽搐sm调教高h| 亚洲激情综合网| 国产网址在线观看| 色悠悠久久综合| 又色又爽又黄无遮挡的免费视频| 欧美一区国产二区| 日韩中文字幕免费观看| 亚洲欧美激情一区| 免费的黄网站在线观看| 韩国三级日本三级少妇99| 欧美一区久久久| 成人黄在线观看| 国产一区丝袜| 亚洲成人第一| 国产综合色产| 天天影视综合色| 国产成人在线视频网址| 18禁裸乳无遮挡啪啪无码免费| 久久先锋影音av鲁色资源网| 日日操免费视频| 亚洲成人一区二区在线观看| 怡红院男人天堂| 欧美精品一区二区在线播放| 尤物网在线观看| 国内精品400部情侣激情| 欧美韩国亚洲| 国产不卡一区二区在线观看 | 中文在线观看av| 精品国产一区二区在线观看| 黄色av网站在线| 欧美大片免费看| 免费成人高清在线视频| 国产精品一区在线观看| 日韩中文欧美| www.com毛片| 粉嫩av一区二区三区| 五月天婷婷丁香网| 日韩欧美精品在线观看| 性欧美一区二区三区| 有码中文亚洲精品| 川上优av中文字幕一区二区| 成人久久久久久久| 国产精品日韩精品中文字幕| 久久这里只有精品23| 国产呦萝稀缺另类资源| 中文字幕在线观看免费高清| 午夜a成v人精品| 亚洲AV无码乱码国产精品牛牛| 在线观看视频亚洲| 蜜桃麻豆av在线| 国产精品国产三级欧美二区| 999国产精品视频| 国产a级片免费观看| a在线欧美一区| 精品午夜福利视频| 日韩视频免费观看高清完整版 | 日韩精品免费| 成人免费观看毛片| 91天堂素人约啪| 欧美成人片在线观看| 欧美丰满美乳xxx高潮www| 二区在线观看| 国产成人高清激情视频在线观看| 欧美精品中文| 极品美女扒开粉嫩小泬| 成人综合在线观看| 欧美日韩人妻精品一区二区三区| 欧美人与z0zoxxxx视频| 粉嫩av一区| 国产精品视频午夜| 日本一区二区三区视频| 少妇激情一区二区三区| 国产亚洲欧洲997久久综合| 伊人手机在线视频| 日韩电影视频免费| 蜜桃视频在线观看免费视频| 精品一区二区久久久久久久网站| 伊人激情综合| 久久久久久久久免费看无码| 激情懂色av一区av二区av| 人妻偷人精品一区二区三区| 国内偷自视频区视频综合| 超碰在线亚洲| 成年人午夜免费视频| 99精品久久99久久久久| av大片在线免费观看| 亚洲欧美激情精品一区二区| 午夜精品成人av| 天天爽天天狠久久久| 美女视频一区二区三区| 在线免费看av网站| 日韩欧美国产小视频| 国产盗摄精品一区二区酒店| 国产伦精品一区二区三区高清版| 国产一级久久| 亚洲欧美va天堂人熟伦| 欧美日韩一区久久| 亚洲小说区图片| 国产精品一区二区三区不卡| av成人毛片| 中字幕一区二区三区乱码| 欧美高清hd18日本| 国产精品探花在线| 久久青青草原一区二区| 日韩高清欧美激情| 艳妇荡乳欲伦69影片| 欧美v亚洲v综合ⅴ国产v| 欲香欲色天天天综合和网| 涩涩涩999| 国产精品一卡二卡| 久久精品一二区| 最近2019中文字幕第三页视频 | 精品国产精品网麻豆系列| 在线观看涩涩| 亚洲一区二区不卡视频| 高清不卡在线观看| 男人天堂2024| 久久深夜福利免费观看| 久久动漫网址| 黄色三级视频在线| 一区二区三区欧美亚洲| 每日更新av在线播放| 91久久久久久久| 久久高清国产| 国产乱国产乱老熟300| 国产婷婷成人久久av免费高清| 日韩一级特黄| 国模无码视频一区二区三区| 成人欧美一区二区三区黑人麻豆 | 欧美日韩第一页| 美女毛片一区二区三区四区| 韩国三级hd中文字幕有哪些| 色综合久久中文字幕| 丝袜美女在线观看|