车厘子不能和什么一起吃| 脾胃虚寒吃什么药| 喝水牙疼是什么原因| 小燕子的尾巴像什么| 倒班是什么意思| bowdor是什么牌子的手表| 陈醋与香醋有什么区别| 碱性磷酸酶高是什么原因| 结石什么东西不能吃| 金牛座属于什么象星座| 红骨髓是什么意思| b型钠尿肽测定是什么检查| 川崎病有什么症状| 球鞋ep是什么意思| 五灵脂是什么| 南什么北什么| 头晕想吐是什么症状| 镁是什么| 长乘宽乘高算的是什么| 接踵而至是什么意思| 五味子是什么味道| 什么是初吻| 啤酒ipa是什么意思| 珍珠鸟吃什么食物| 15天来一次月经是什么原因| 八四年属什么生肖| 煮酒论英雄什么意思| 三公经费指什么| 咳嗽吃什么药效果好| 血塞通治什么病| 为什么会缺铁性贫血| 什么榴莲好吃| ppt什么意思| 肩膀上有痣代表什么| 茉莉花是什么颜色| 珀莱雅适合什么年龄| 吃什么伤口愈合的快| 减肥吃什么油| 血糖高对身体有什么危害| 蜜饯是什么东西| 才美不外见的见是什么意思| 为什么屎是臭的| 血糖高的人早餐吃什么好| 鸡血藤有什么功效| 巨蟹女和什么座最配对| 月经推迟十天是什么原因| 一热就头疼是什么原因| 大象灰是什么颜色| 尿道口有烧灼感为什么| 四面楚歌是什么意思| 点了痣要注意什么| tpc是什么意思| 外耳道疖肿用什么药| 意字五行属什么| 一厢情愿是什么生肖| 7月16是什么星座| 教师节应该送老师什么花| 胸闷挂什么科室| fm什么意思| 丝状疣是什么| 痔疮用什么药| 荣辱与共是什么意思| 房颤什么意思| 为什么叫白俄罗斯| 胃疼应该吃什么药| 阴谋是什么意思| 剑客是什么意思| 杯弓蛇影是什么物理现象| 浮木是什么意思| 弯弯的月儿像什么| 桂林山水甲天下是什么意思| 持之以恒是什么意思| 发烧吃什么药退烧快| 男人肾虚吃什么最补| 左肖是什么生肖| 形同陌路什么意思| 气胸是什么意思| 探望病人买什么水果| 包皮过长会有什么影响| 985什么意思| 左眼皮上有痣代表什么| 6月24什么星座| 看结石挂什么科室| 高招是什么意思| 梦见小牛犊是什么预兆| 为什么来完月经下面痒| 小孩肺炎吃什么药| 经常腿抽筋是什么原因| 大黄米是什么米| 吐血挂什么科| 天蝎座和什么座最配| 615是什么星座| 肝郁脾虚吃什么药效果最好| 什么是有氧运动什么是无氧运动| 蓝玫瑰代表什么| 钮钴禄什么意思| 男性支原体阳性有什么症状| 梦见走错路是什么意思| 2月11日是什么星座| 沙茶是什么| 1964年什么命| 学生吃什么补脑子增强记忆力最快| 睡觉一直做梦是什么原因| 芒果什么时候吃最好| 洋生姜的功效与作用是什么| 雾里看花是什么意思| 梦见豹子是什么预兆| 康健是什么意思| 懒觉什么意思| 园丁是什么意思| 党委副书记是什么级别| 外寒内热感冒吃什么药| 悦五行属性是什么| 呼吸道感染吃什么药| 酸枣仁配什么治疗失眠| 阴茎皮开裂是什么原因| 松石绿是什么颜色| 四月十四日是什么节日| 三下乡是什么| 卵巢囊肿挂什么科| 十八岁是什么年华| 戈谢病是什么病| 耐克属于什么档次| 什么叫二氧化碳| 他喵的什么意思| 眼睛痛什么原因| 耳垂后面有痣代表什么| 白加黑是什么药| 茄子有什么功效和作用| 三原色是什么| 水代表什么生肖| 芒果和什么相克| 被舔下面什么感觉| 瓜子脸适合什么发型| 寓言故事有什么特点| 角是什么结构| 武汉属于什么地区| 豇豆是什么| 孕囊是什么样的图片| 鹤膝风是什么病| 南瓜可以做什么美食| 木薯是什么| 侍郎是什么官职| 同居是什么意思| 乳酪和奶酪有什么区别| 献血有什么危害| 冲鼠煞北是什么意思| 生蚝和什么不能一起吃| 为什么明星不激光祛斑| 静脉是什么意思| 经常手淫会有什么危害| 月经来头疼是什么原因引起的| 低血糖会出现什么症状| 荨麻疹有什么忌口吗| 楠字五行属什么| 5s是什么| 一什么田野| 瓠子和什么相克| 辐射对人体有什么伤害| 胃气上逆是什么原因造成的| 笑气是什么东西| 元宵节的习俗是什么| 羟丁酸脱氢酶高是什么原因| 晚上九点半是什么时辰| 女生左手食指戴戒指什么意思| 冬五行属什么| 天花是什么病| 甚好是什么意思| 女人吃火龙果有什么好处| 头层牛皮除牛反绒是什么意思| 什么是皮肤病| 侄子叫我什么| 尿频尿急是什么症状| 净高是什么意思| 早上打喷嚏是什么预兆| 孔雀开屏是什么行为| 高血脂是什么意思| 敬邀是什么意思| 骨质硬化是什么意思| 75年属什么| 5.16号是什么星座| 戒心是什么意思| 多春鱼为什么全是籽| 72年是什么年| 腰扭伤用什么药最好| dna里面有什么| 胃痛看什么科| 胃大是什么原因造成的| 什么是圆房| 什么是抗生素类药物| 女性适合喝什么茶| 狗狗肠胃炎吃什么药| mom是什么意思| pct是什么意思| 甘少一横读什么| 手突然抖动是什么原因| 虹视是什么意思| 心什么神什么| 养寇自重什么意思| 什么是宫颈纳囊| 平安夜送女朋友什么| 为什么呢| 炒菜是什么意思| 画饼充饥是什么意思| 卡马西平片治什么病| 进德勤一般要什么学历| 老人嗜睡是什么征兆| 歪果仁是什么意思| 药石是什么意思| 血脂高吃什么中药| mri检查是什么意思| 属狗的是什么命| 什么地蹲着| 梦见枕头是什么意思| 胰腺不舒服是什么症状| bq是什么意思| 如何查自己是什么命格| 鱼油对身体有什么好处| 周期性是什么意思| 情商是什么| 手指头肿胀是什么原因| 半元音是什么意思| 甲钴胺是什么| 平板撑有什么作用| 乔其纱是什么面料| 低血糖什么症状| 维生素d什么时候吃| 杨幂的公司叫什么名字| 鼻涕臭是什么原因| 平均红细胞体积偏高说明什么| 黄柏的功效与作用是什么| 大唐集团什么级别| 大便不成形用什么药| 中秋节什么时候| 经常干呕是什么原因| 医院为什么不推荐腹膜透析| 广东有什么市| 体检前一天不能吃什么| 大寒吃什么| 等着我为什么停播了| 液体套是什么| 左侧淋巴结肿大是什么原因| 射进去是什么感觉| 碳水是什么意思| 朱允炆为什么不杀朱棣| 当是什么意思| 发票抬头写什么| 掷是什么意思| 鸡和什么属相相冲| 月经9天了还没干净是什么原因| 照字五行属什么| 什么是阴蒂| ep是什么意思| 生地是什么| 做完人流需要注意什么| 属鼠的和什么属相相克| 喝酒后胃疼吃什么药| 老年人脚肿是什么原因引起的| 长期熬夜有什么坏处| 吃火龙果有什么好处和坏处| 蛋白质有什么作用| 看日历是什么生肖| cab是什么意思| 嘴唇周围长痘痘是什么原因导致| 百度

长期胃胀是什么原因

百度   面对电商售假的新趋势,我国对于电商的法律和监管却相对滞后。

High availability (HA) is a characteristic of a system that aims to ensure an agreed level of operational performance, usually uptime, for a higher than normal period.[1]

There is now more dependence on these systems as a result of modernization. For example, to carry out their regular daily tasks, hospitals and data centers need their systems to be highly available. Availability refers to the ability of the user to access a service or system, whether to submit new work, update or modify existing work, or retrieve the results of previous work. If a user cannot access the system, it is considered unavailable from the user's perspective.[2] The term downtime is generally used to refer to describe periods when a system is unavailable.

Resilience

edit

High availability is a property of network resilience, the ability to "provide and maintain an acceptable level of service in the face of faults and challenges to normal operation."[3] Threats and challenges for services can range from simple misconfiguration over large scale natural disasters to targeted attacks.[4] As such, network resilience touches a very wide range of topics. In order to increase the resilience of a given communication network, the probable challenges and risks have to be identified and appropriate resilience metrics have to be defined for the service to be protected.[5]

The importance of network resilience is continuously increasing, as communication networks are becoming a fundamental component in the operation of critical infrastructures.[6] Consequently, recent efforts focus on interpreting and improving network and computing resilience with applications to critical infrastructures.[7] As an example, one can consider as a resilience objective the provisioning of services over the network, instead of the services of the network itself. This may require coordinated response from both the network and from the services running on top of the network.[8]

These services include:

Resilience and survivability are interchangeably used according to the specific context of a given study.[9]

Principles

edit

There are three principles of systems design in reliability engineering that can help achieve high availability.

  1. Elimination of single points of failure. This means adding or building redundancy into the system so that failure of a component does not mean failure of the entire system.
  2. Reliable crossover. In redundant systems, the crossover point itself tends to become a single point of failure. Reliable systems must provide for reliable crossover.
  3. Detection of failures as they occur. If the two principles above are observed, then a user may never see a failure – but the maintenance activity must.

Scheduled and unscheduled downtime

edit

A distinction can be made between scheduled and unscheduled downtime. Typically, scheduled downtime is a result of maintenance that is disruptive to system operation and usually cannot be avoided with a currently installed system design. Scheduled downtime events might include patches to system software that require a reboot or system configuration changes that only take effect upon a reboot. In general, scheduled downtime is usually the result of some logical, management-initiated event. Unscheduled downtime events typically arise from some physical event, such as a hardware or software failure or environmental anomaly. Examples of unscheduled downtime events include power outages, failed CPU or RAM components (or possibly other failed hardware components), an over-temperature related shutdown, logically or physically severed network connections, security breaches, or various application, middleware, and operating system failures.

If users can be warned away from scheduled downtimes, then the distinction is useful. But if the requirement is for true high availability, then downtime is downtime whether or not it is scheduled.

Many computing sites exclude scheduled downtime from availability calculations, assuming that it has little or no impact upon the computing user community. By doing this, they can claim to have phenomenally high availability, which might give the illusion of continuous availability. Systems that exhibit truly continuous availability are comparatively rare and higher priced, and most have carefully implemented specialty designs that eliminate any single point of failure and allow online hardware, network, operating system, middleware, and application upgrades, patches, and replacements. For certain systems, scheduled downtime does not matter, for example, system downtime at an office building after everybody has gone home for the night.

Percentage calculation

edit

Availability is usually expressed as a percentage of uptime in a given year. The following table shows the downtime that will be allowed for a particular percentage of availability, presuming that the system is required to operate continuously. Service level agreements often refer to monthly downtime or availability in order to calculate service credits to match monthly billing cycles. The following table shows the translation from a given availability percentage to the corresponding amount of time a system would be unavailable.

Availability % Downtime per year[note 1] Downtime per quarter Downtime per month Downtime per week Downtime per day (24 hours)
90% ("one nine") 36.53 days 9.13 days 73.05 hours 16.80 hours 2.40 hours
95% ("one nine five") 18.26 days 4.56 days 36.53 hours 8.40 hours 1.20 hours
97% ("one nine seven") 10.96 days 2.74 days 21.92 hours 5.04 hours 43.20 minutes
98% ("one nine eight") 7.31 days 43.86 hours 14.61 hours 3.36 hours 28.80 minutes
99% ("two nines") 3.65 days 21.9 hours 7.31 hours 1.68 hours 14.40 minutes
99.5% ("two nines five") 1.83 days 10.98 hours 3.65 hours 50.40 minutes 7.20 minutes
99.8% ("two nines eight") 17.53 hours 4.38 hours 87.66 minutes 20.16 minutes 2.88 minutes
99.9% ("three nines") 8.77 hours 2.19 hours 43.83 minutes 10.08 minutes 1.44 minutes
99.95% ("three nines five") 4.38 hours 65.7 minutes 21.92 minutes 5.04 minutes 43.20 seconds
99.99% ("four nines") 52.60 minutes 13.15 minutes 4.38 minutes 1.01 minutes 8.64 seconds
99.995% ("four nines five") 26.30 minutes 6.57 minutes 2.19 minutes 30.24 seconds 4.32 seconds
99.999% ("five nines") 5.26 minutes 1.31 minutes 26.30 seconds 6.05 seconds 864.00 milliseconds
99.9999% ("six nines") 31.56 seconds 7.89 seconds 2.63 seconds 604.80 milliseconds 86.40 milliseconds
99.99999% ("seven nines") 3.16 seconds 0.79 seconds 262.98 milliseconds 60.48 milliseconds 8.64 milliseconds
99.999999% ("eight nines") 315.58 milliseconds 78.89 milliseconds 26.30 milliseconds 6.05 milliseconds 864.00 microseconds
99.9999999% ("nine nines") 31.56 milliseconds 7.89 milliseconds 2.63 milliseconds 604.80 microseconds 86.40 microseconds
99.99999999% ("ten nines") 3.16 milliseconds 788.40 microseconds 262.80 microseconds 60.48 microseconds 8.64 microseconds
99.999999999% ("eleven nines") 315.58 microseconds 78.84 microseconds 26.28 microseconds 6.05 microseconds 864.00 nanoseconds
99.9999999999% ("twelve nines") 31.56 microseconds 7.88 microseconds 2.63 microseconds 604.81 nanoseconds 86.40 nanoseconds

The terms uptime and availability are often used interchangeably but do not always refer to the same thing. For example, a system can be "up" with its services not "available" in the case of a network outage. Or a system undergoing software maintenance can be "available" to be worked on by a system administrator, but its services do not appear "up" to the end user or customer. The subject of the terms is thus important here: whether the focus of a discussion is the server hardware, server OS, functional service, software service/process, or similar, it is only if there is a single, consistent subject of the discussion that the words uptime and availability can be used synonymously.

Five-by-five mnemonic

edit

A simple mnemonic rule states that 5 nines allows approximately 5 minutes of downtime per year. Variants can be derived by multiplying or dividing by 10: 4 nines is 50 minutes and 3 nines is 500 minutes. In the opposite direction, 6 nines is 0.5 minutes (30 sec) and 7 nines is 3 seconds.

"Powers of 10" trick

edit

Another memory trick to calculate the allowed downtime duration for an " -nines" availability percentage is to use the formula   seconds per day.

For example, 90% ("one nine") yields the exponent  , and therefore the allowed downtime is   seconds per day.

Also, 99.999% ("five nines") gives the exponent  , and therefore the allowed downtime is   seconds per day.

"Nines"

edit

Percentages of a particular order of magnitude are sometimes referred to by the number of nines or "class of nines" in the digits. For example, electricity that is delivered without interruptions (blackouts, brownouts or surges) 99.999% of the time would have 5 nines reliability, or class five.[10] In particular, the term is used in connection with mainframes[11][12] or enterprise computing, often as part of a service-level agreement.

Similarly, percentages ending in a 5 have conventional names, traditionally the number of nines, then "five", so 99.95% is "three nines five", abbreviated 3N5.[13][14] This is casually referred to as "three and a half nines",[15] but this is incorrect: a 5 is only a factor of 2, while a 9 is a factor of 10, so a 5 is 0.3 nines (per below formula:  ):[note 2] 99.95% availability is 3.3 nines, not 3.5 nines.[16] More simply, going from 99.9% availability to 99.95% availability is a factor of 2 (0.1% to 0.05% unavailability), but going from 99.95% to 99.99% availability is a factor of 5 (0.05% to 0.01% unavailability), over twice as much.[note 3]

A formulation of the class of 9s   based on a system's unavailability   would be

 

(cf. Floor and ceiling functions).

A similar measurement is sometimes used to describe the purity of substances.

In general, the number of nines is not often used by a network engineer when modeling and measuring availability because it is hard to apply in formula. More often, the unavailability expressed as a probability (like 0.00001), or a downtime per year is quoted. Availability specified as a number of nines is often seen in marketing documents.[citation needed] The use of the "nines" has been called into question, since it does not appropriately reflect that the impact of unavailability varies with its time of occurrence.[17] For large amounts of 9s, the "unavailability" index (measure of downtime rather than uptime) is easier to handle. For example, this is why an "unavailability" rather than availability metric is used in hard disk or data link bit error rates.

Sometimes the humorous term "nine fives" (55.5555555%) is used to contrast with "five nines" (99.999%),[18][19][20] though this is not an actual goal, but rather a sarcastic reference to something totally failing to meet any reasonable target.

Measurement and interpretation

edit

Availability measurement is subject to some degree of interpretation. A system that has been up for 365 days in a non-leap year might have been eclipsed by a network failure that lasted for 9 hours during a peak usage period; the user community will see the system as unavailable, whereas the system administrator will claim 100% uptime. However, given the true definition of availability, the system will be approximately 99.9% available, or three nines (8751 hours of available time out of 8760 hours per non-leap year). Also, systems experiencing performance problems are often deemed partially or entirely unavailable by users, even when the systems are continuing to function. Similarly, unavailability of select application functions might go unnoticed by administrators yet be devastating to users – a true availability measure is holistic.

Availability must be measured to be determined, ideally with comprehensive monitoring tools ("instrumentation") that are themselves highly available. If there is a lack of instrumentation, systems supporting high volume transaction processing throughout the day and night, such as credit card processing systems or telephone switches, are often inherently better monitored, at least by the users themselves, than systems which experience periodic lulls in demand.

An alternative metric is mean time between failures (MTBF).

edit

Recovery time (or estimated time of repair (ETR), also known as recovery time objective (RTO) is closely related to availability, that is the total time required for a planned outage or the time required to fully recover from an unplanned outage. Another metric is mean time to recovery (MTTR). Recovery time could be infinite with certain system designs and failures, i.e. full recovery is impossible. One such example is a fire or flood that destroys a data center and its systems when there is no secondary disaster recovery data center.

Another related concept is data availability, that is the degree to which databases and other information storage systems faithfully record and report system transactions. Information management often focuses separately on data availability, or Recovery Point Objective, in order to determine acceptable (or actual) data loss with various failure events. Some users can tolerate application service interruptions but cannot tolerate data loss.

A service level agreement ("SLA") formalizes an organization's availability objectives and requirements.

Military control systems

edit

High availability is one of the primary requirements of the control systems in unmanned vehicles and autonomous maritime vessels. If the controlling system becomes unavailable, the Ground Combat Vehicle (GCV) or ASW Continuous Trail Unmanned Vessel (ACTUV) would be lost.

System design

edit

On one hand, adding more components to an overall system design can undermine efforts to achieve high availability because complex systems inherently have more potential failure points and are more difficult to implement correctly. While some analysts would put forth the theory that the most highly available systems adhere to a simple architecture (a single, high-quality, multi-purpose physical system with comprehensive internal hardware redundancy), this architecture suffers from the requirement that the entire system must be brought down for patching and operating system upgrades. More advanced system designs allow for systems to be patched and upgraded without compromising service availability (see load balancing and failover). High availability requires less human intervention to restore operation in complex systems; the reason for this being that the most common cause for outages is human error.[21]

High availability through redundancy

edit

On the other hand, redundancy is used to create systems with high levels of availability (e.g. popular ecommerce websites). In this case it is required to have high levels of failure detectability and avoidance of common cause failures.

If redundant parts are used in parallel and have independent failure (e.g. by not being within the same data center), they can exponentially increase the availability and make the overall system highly available. If you have N parallel components each having X availability, then you can use following formula:[22][23]

Availability of parallel components = 1 - (1 - X)^ N

 
10 hosts, each having 50% availability. But if they are used in parallel and fail independently, they can provide high availability.

So for example if each of your components has only 50% availability, by using 10 of components in parallel, you can achieve 99.9023% availability.

Two kinds of redundancy are passive redundancy and active redundancy.

Passive redundancy is used to achieve high availability by including enough excess capacity in the design to accommodate a performance decline. The simplest example is a boat with two separate engines driving two separate propellers. The boat continues toward its destination despite failure of a single engine or propeller. A more complex example is multiple redundant power generation facilities within a large system involving electric power transmission. Malfunction of single components is not considered to be a failure unless the resulting performance decline exceeds the specification limits for the entire system.

Active redundancy is used in complex systems to achieve high availability with no performance decline. Multiple items of the same kind are incorporated into a design that includes a method to detect failure and automatically reconfigure the system to bypass failed items using a voting scheme. This is used with complex computing systems that are linked. Internet routing is derived from early work by Birman and Joseph in this area.[24][non-primary source needed] Active redundancy may introduce more complex failure modes into a system, such as continuous system reconfiguration due to faulty voting logic.

Zero downtime system design means that modeling and simulation indicates mean time between failures significantly exceeds the period of time between planned maintenance, upgrade events, or system lifetime. Zero downtime involves massive redundancy, which is needed for some types of aircraft and for most kinds of communications satellites. Global Positioning System is an example of a zero downtime system.

Fault instrumentation can be used in systems with limited redundancy to achieve high availability. Maintenance actions occur during brief periods of downtime only after a fault indicator activates. Failure is only significant if this occurs during a mission critical period.

Modeling and simulation is used to evaluate the theoretical reliability for large systems. The outcome of this kind of model is used to evaluate different design options. A model of the entire system is created, and the model is stressed by removing components. Redundancy simulation involves the N-x criteria. N represents the total number of components in the system. x is the number of components used to stress the system. N-1 means the model is stressed by evaluating performance with all possible combinations where one component is faulted. N-2 means the model is stressed by evaluating performance with all possible combinations where two component are faulted simultaneously.

Reasons for unavailability

edit

A survey among academic availability experts in 2010 ranked reasons for unavailability of enterprise IT systems. All reasons refer to not following best practice in each of the following areas (in order of importance):[25]

  1. Monitoring of the relevant components
  2. Requirements and procurement
  3. Operations
  4. Avoidance of network failures
  5. Avoidance of internal application failures
  6. Avoidance of external services that fail
  7. Physical environment
  8. Network redundancy
  9. Technical solution of backup
  10. Process solution of backup
  11. Physical location
  12. Infrastructure redundancy
  13. Storage architecture redundancy

A book on the factors themselves was published in 2003.[26]

Costs of unavailability

edit

In a 1998 report from IBM Global Services, unavailable systems were estimated to have cost American businesses $4.54 billion in 1996, due to lost productivity and revenues.[27]

See also

edit

Notes

edit
  1. ^ Using 365.25 days per year; respectively, a quarter is a ? of that value (i.e., 91.3125 days), and a month is a twelfth of it (i.e., 30.4375 days). For consistency, all times are rounded to two decimal digits.
  2. ^ See mathematical coincidences concerning base 2 for details on this approximation.
  3. ^ "Twice as much" on a logarithmic scale, meaning two factors of 2:  

References

edit
  1. ^ Robert, Sheldon (April 2024). "high availability (HA)". Techtarget.
  2. ^ Floyd Piedad, Michael Hawkins (2001). High Availability: Design, Techniques, and Processes. Prentice Hall. ISBN 9780130962881.
  3. ^ "Definitions - ResiliNetsWiki". resilinets.org.
  4. ^ "Webarchiv ETHZ / Webarchive ETH". webarchiv.ethz.ch.
  5. ^ Smith, Paul; Hutchison, David; Sterbenz, James P.G.; Sch?ller, Marcus; Fessi, Ali; Karaliopoulos, Merkouris; Lac, Chidung; Plattner, Bernhard (July 3, 2011). "Network resilience: a systematic approach". IEEE Communications Magazine. 49 (7): 88–97. doi:10.1109/MCOM.2011.5936160. S2CID 10246912 – via IEEE Xplore.
  6. ^ accesstel (June 9, 2022). "operational resilience | telcos | accesstel | risk | crisis". accesstel. Retrieved May 8, 2023.
  7. ^ "The CERCES project - Center for Resilient Critical Infrastructures at KTH Royal Institute of Technology". Archived from the original on October 19, 2018. Retrieved August 26, 2023.
  8. ^ Zhao, Peiyue; Dán, Gy?rgy (December 3, 2018). "A Benders Decomposition Approach for Resilient Placement of Virtual Process Control Functions in Mobile Edge Clouds". IEEE Transactions on Network and Service Management. 15 (4): 1460–1472. doi:10.1109/TNSM.2018.2873178. S2CID 56594760 – via IEEE Xplore.
  9. ^ Castet J., Saleh J. Survivability and Resiliency of Spacecraft and Space-Based Networks: a Framework for Characterization and Analysis", American Institute of Aeronautics and Astronautics, AIAA Technical Report 2008-7707. Conference on Network Protocols (ICNP 2006), Santa Barbara, California, USA, November 2006
  10. ^ Lecture Notes M. Nesterenko, Kent State University
  11. ^ Introduction to the new mainframe: Large scale commercial computing Chapter 5 Availability Archived March 4, 2016, at the Wayback Machine IBM (2006)
  12. ^ IBM zEnterprise EC12 Business Value Video at youtube.com
  13. ^ Precious metals, Volume 4. Pergamon Press. 1981. p. page 262. ISBN 9780080253695.
  14. ^ PVD for Microelectronics: Sputter Desposition to Semiconductor Manufacturing. 1998. p. 387.
  15. ^ Murphy, Niall Richard; Beyer, Betsy; Petoff, Jennifer; Jones, Chris (2016). Site Reliability Engineering: How Google Runs Production Systems. p. 38.
  16. ^ Josh Deprez (April 23, 2016). "Nines of Nines". Archived from the original on September 4, 2016. Retrieved May 31, 2016.
  17. ^ Evan L. Marcus, The myth of the nines
  18. ^ Newman, David; Snyder, Joel; Thayer, Rodney (June 24, 2012). "Crying Wolf: False alarms hide attacks". Network World. Vol. 19, no. 25. p. 60. Retrieved March 15, 2019. leading to crashes and uptime numbers closer to nine fives than to five nines.
  19. ^ Metcalfe, Bob (April 2, 2001). "After 35 years of technology crusades, Bob Metcalfe rides off into the sunset". ITworld. Retrieved March 15, 2019. and five nines (not nine fives) of reliability[permanent dead link]
  20. ^ Pilgrim, Jim (October 20, 2010). "Goodbye Five 9s". Clearfield, Inc. Retrieved March 15, 2019. but it seems to me we are moving closer to 9-5s (55.5555555%) in network reliability rather than 5-9s
  21. ^ "What is network downtime?". Networking. Retrieved December 27, 2023.
  22. ^ Trivedi, Kishor S.; Bobbio, Andrea (2017). Reliability and Availability Engineering: Modeling, Analysis, and Applications. Cambridge University Press. ISBN 978-1107099500.
  23. ^ System Sustainment: Acquisition And Engineering Processes For The Sustainment Of Critical And Legacy Systems (World Scientific Series On Emerging Technologies: Avram Bar-cohen Memorial Series). World Scientific. 2022. ISBN 978-9811256844.
  24. ^ RFC 992
  25. ^ Ulrik Franke, Pontus Johnson, Johan K?nig, Liv Marcks von Würtemberg: Availability of enterprise IT systems – an expert-based Bayesian model, Proc. Fourth International Workshop on Software Quality and Maintainability (WSQM 2010), Madrid, [1] Archived August 4, 2012, at archive.today
  26. ^ Marcus, Evan; Stern, Hal (2003). Blueprints for high availability (Second ed.). Indianapolis, IN: John Wiley & Sons. ISBN 0-471-43026-9.
  27. ^ IBM Global Services, Improving systems availability, IBM Global Services, 1998, [2] Archived April 1, 2011, at the Wayback Machine
edit
什么龟最贵 为什么做完爱下面会疼 公筷是什么意思 什么是碱中毒 什么是取保候审
公历年份是什么意思 耳鸣是什么感觉 融合菜是什么意思 鱼鳔是什么 一什么西瓜
八一是什么节 开导是什么意思 中午吃什么减肥 水头是什么意思 鹰头皮带是什么牌子
266什么意思 生殖科是检查什么的 o和b型生的孩子是什么血型 梦见母亲去世预示什么 手机为什么会发热
98年出生属什么hcv8jop6ns5r.cn 维生素b4又叫什么hcv8jop5ns2r.cn 游戏id是什么意思youbangsi.com 呦呦鹿鸣什么意思hcv8jop0ns2r.cn 下肢水肿是什么原因shenchushe.com
吃什么减肥效果最好liaochangning.com 物流是什么hcv8jop1ns7r.cn 张衡发明了什么mmeoe.com 腰上有痣代表什么hcv8jop0ns9r.cn 附件炎是什么原因引起的hcv8jop6ns8r.cn
男性婚检都检查什么项目hcv9jop8ns1r.cn 吃什么营养神经hcv9jop6ns8r.cn 中暑吃什么水果hcv8jop7ns3r.cn 蛋白尿是什么症状hcv7jop4ns7r.cn add什么意思hcv7jop6ns6r.cn
晕车为什么读第四声fenrenren.com 频繁打哈欠是什么原因jingluanji.com 羊膜囊是什么hcv9jop4ns6r.cn 杠杠滴是什么意思hcv8jop8ns3r.cn 拔智齿后吃什么hcv8jop0ns2r.cn
百度