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Retina: Cross-Layered Key-Value Store using Computational StorageBikonda, Naga Sanjana 10 March 2022 (has links)
Modern SSDs are getting faster and smarter with near-data computing capabilities. Due to their design choices, traditional key-value stores do not fully leverage these new storage devices. These key-value stores become CPU-bound even before fully utilizing the IO bandwidth. LSM or B+ tree-based key-value stores involve complex garbage collection and store sorted keys and complicated synchronization mechanisms. In this work, we propose a cross-layered key-value store named Retina that decouples the design to delegate control path manipulations to host CPU and data path manipulations to computational SSD to maximize performance and reduce compute bottlenecks. We employ many design choices not explored in other persistent key-value stores to achieve this goal. In addition to the cross-layered design paradigm, Retina introduces a new caching mechanism called Mirror cache, support for variable key-value pairs, and a novel version-based crash consistency model. By enabling all the design features, we equip Retina to reduce compute hotspots on the host CPU, take advantage of the on-storage accelerators to leverage the data locality on the computational storage, improve overall bandwidth and reduce the bandwidth net- work latencies. Thus when evaluated using YCSB, we observe the CPU utilization reduced by 4x and throughput performance improvement of 20.5% against the state-of-the-art for read-intensive workloads. / Master of Science / Modern secondary storage systems are providing an exponential increase in memory access speeds. In addition, new generation storage systems attach compute resources near data to offload computation to storage. Traditional datastore systems are lacking in performance when used with the new generation SSDs (Solid State Drive). The key reason is the SSDs are underutilized due to CPU bottlenecks. Due to design choices, conventional datastores incur expensive CPU tasks that cause the CPU to bottleneck even before the storage speeds are fully utilized. Thus, when attached to a modern SSD, conventional datastores will underutilize the storage resources. In this work, we propose a cross-layered key-value store named Retina that decouples the design to delegate control path manipulations to host CPU and data path manipulations to computational SSD to maximize performance and reduce compute bottlenecks. In addition to the cross-layered design paradigm, Retina introduces a new caching mechanism called Mirror cache and a novel version-based crash consistency model. By enabling all the design features, we equip Retina to reduce compute hotspots on the host CPU, take advantage of the on-storage accelerators to leverage the data locality on the computational storage and improve overall access speed. To evaluate Retina, we use throughput and CPU utilization as the comparison metric. We test our implementation with Yahoo Cloud Serving Benchmark, a popular datastore benchmark. We evaluate against RocksDB(the most widely adopted datastore) to enable fair performance comparison. In conclusion, we show that Retina key-value store improves the throughput performance by offloading logic to computational storage to reduce the CPU bottlenecks.
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Accelerated Storage SystemsKhasymski, Aleksandr Sergeev 11 March 2015 (has links)
Today's large-scale, high-performance, data-intensive applications put a tremendous stress on data centers to store, index, and retrieve large amounts of data. Exemplified by technologies such as social media, photo and video sharing, and e-commerce, the rise of the real-time web demands data stores support minimal latencies, always-on availability and ever-growing capacity. These requirements have fostered the development of a large number of high-performance storage systems, arguably the most important of which are Key-Value (KV) stores. An emerging trend for achieving low latency and high throughput in this space is a solution, which utilizes both DRAM and flash by storing an efficient index for the data in memory and minimizing accesses to flash, where both keys and values are stored. Many proposals have examined how to improve KV store performance in this area. However, these systems have shortcomings, including expensive sorting and excessive read and write amplification, which is detrimental to the life of the flash.
Another trend in recent years equips large scale deployments with energy-efficient, high performance co-processors, such as Graphics Processing Units (GPUs). Recent work has explored using GPUs to accelerate compute-intensive I/O workloads, including RAID parity generation, encryption, and compression. While this research has proven the viability of GPUs to accelerate these workloads, we argue that there are significant benefits to be had by developing methods and data structures for deep integration of GPUs inside the storage stack, in order to achieve better performance, scalability, and reliability.
In this dissertation, we propose comprehensive frameworks that leverage emerging technologies, such as GPUs and flash-based SSDs, to accelerate modern storage systems. For our accelerator-based solution, we focus on developing a system that features deep integration of the GPU in a distributed parallel file system. We utilize a framework that builds on the resources available in the file system and coordinates the workload in such a way that minimizes data movement across the PCIe bus, while exposing data parallelism to maximize the potential for acceleration on the GPU. Our research aims to improve the overall reliability of a PFS by developing a distributed per-file parity generation that provides end-to-end data integrity and unprecedented flexibility. Finally, we design a high-performance KV store utilizing a novel data structure tailored to specific flash requirements; it arranges data on flash in such a way as to minimize write amplification, which is detrimental to the flash cells. The system delivers outstanding read amplification through the use of a trie index and false positive filter. / Ph. D.
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Caching of key-value stores in the data plane / Caching av nyckel-värde-databaser i dataplanetLarsson, Samuel January 2019 (has links)
The performance of distributed key-value stores is usually dependent on its underlying network, and have potential to improve read/write latencies by improving upon the per- formance of the network communication. We explore the potential performance increase by designing an experimental in-network cache based on NetCache in the switch data plane for the distributed key-value store DXRAM, and placing it on a programmable switch that connects the peers in a DXRAM storage cluster. To accomodate DXRAM which uses TCP for its transport protocol, we also design a TCP flow state translator for the cache and implement an experimental version of this cache design. Benchmark runs with the cache show that best-case item read latency for DXRAM is reduced to approximately half and prove the potential performance gain that can be expected once a proper cache is designed and implemented.
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Predicting Service Metrics from Device and Network StatisticsForte, Paolo January 2015 (has links)
For an IT company that provides a service over the Internet like Facebook or Spotify, it is very important to provide a high quality of service; however, predicting the quality of service is generally a hard task. The goal of this thesis is to investigate whether an approach that makes use of statistical learning to predict the quality of service can obtain accurate predictions for a Voldemort key-value store [1] in presence of dynamic load patterns and network statistics. The approach follows the idea that the service-level metrics associated with the quality of service can be estimated from serverside statistical observations, like device and network statistics. The advantage of the approach analysed in this thesis is that it can virtually work with any kind of service, since it is based only on device and network statistics, which are unaware of the type of service provided. The approach is structured as follows. During the service operations, a large amount of device statistics from the Linux kernel of the operating system (e.g. cpu usage level, disk activity, interrupts rate) and some basic end-to-end network statistics (e.g. average round-trip-time, packet loss rate) are periodically collected on the service platform. At the same time, some service-level metrics (e.g. average reading time, average writing time, etc.) are collected on the client machine as indicators of the store’s quality of service. To emulate network statistics, such as dynamic delay and packet loss, all the traffic is redirected to flow through a network emulator. Then, different types of statistical learning methods, based on linear and tree-based regression algorithms, are applied to the data collections to obtain a learning model able to accurately predict the service-level metrics from the device and network statistics. The results, obtained for different traffic scenarios and configurations, show that the thesis’ approach can find learning models that can accurately predict the service-level metrics for a single-node store with error rates lower than 20% (NMAE), even in presence of network impairments.
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Automated Control of Elasticity for a Cloud-Based Key-Value StoreArman, Ala January 2012 (has links)
“Pay-as-you-go” is one of the basic properties of Cloud computing. It means that people pay for the resources or services that they use. Moreover, the concept of load balancing has been a controversial issue in recent years. It is a method that is used to split a task to some smaller tasks and allocate them fairly to different resources resulting in a better performance. Considering these two concepts, the idea of “Elasticity” comes to attention. An Elastic system is one which adds or releases the resources based on the changes of the system variables. In this thesis, we extended a distributed storage called Voldemort by adding a controller to provide elasticity. Control theory was used to design this controller. In addition, we used Yahoo! Cloud Service Benchmark (YCSB) which is an open source framework that can be used to provide several load scenarios, as well as evaluating the controller. Automatic control is accomplished by adding or removing nodes in Voldemort by considering changes in the system such as the average service time in our case. We will show that when the service time increases due to increasing the load, as generated by YCSB tool, the controller senses this change and adds appropriate number of nodes to the storage. The number of nodes added is based on the controller parameters to decrease the service time and meet Service Level Objectives (SLO). Similarly, when the average service time decreases, the controller removes some nodes to reduce the cost of using the resources and meet “pay-as-you-go” property.
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Designing Fast, Resilient and Heterogeneity-Aware Key-Value Storage on Modern HPC ClustersShankar, Dipti 30 September 2019 (has links)
No description available.
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Design and Implementation of an Architecture-aware In-memory Key- Value StoreGiordano, Omar January 2021 (has links)
Key-Value Stores (KVSs) are a type of non-relational databases whose data is represented as a key-value pair and are often used to represent cache and session data storage. Among them, Memcached is one of the most popular ones, as it is widely used in various Internet services such as social networks and streaming platforms. Given the continuous and increasingly rapid growth of networked devices that use these services, the commodity hardware on which the databases are based must process packets faster to meet the needs of the market. However, in recent years, the performance improvements characterising the new hardware has become thinner and thinner. From here, as the purchase of new products is no longer synonymous with significant performance improvements, companies need to exploit the full potential of the hardware already in their possession, consequently postponing the purchase of more recent hardware. One of the latest ideas for increasing the performance of commodity hardware is the use of slice-aware memory management. This technique exploits the Last Level of Cache (LLC) by making sure that the individual cores take data from memory locations that are mapped to their respective cache portions (i.e., LLC slices). This thesis focuses on the realisation of a KVS prototype—based on Intel Haswell micro-architecture—built on top of the Data Plane Development Kit (DPDK), and to which the principles of slice-aware memory management are applied. To test its performance, given the non-existence of a DPDKbased traffic generator that supports the Memcached protocol, an additional prototype of a traffic generator that supports these features has also been developed. The performances were measured using two distinct machines: one for the traffic generator and one for the KVS. First, the “regular” KVS prototype was tested, then, to see the actual benefits, the slice-aware one. Both KVS prototypeswere subjected to two types of traffic: (i) uniformtraffic where the keys are always different from each other, and (ii) skewed traffic, where keys are repeated and some keys are more likely to be repeated than others. The experiments show that, in real-world scenario (i.e., characterised by skewed key distributions), the employment of a slice-aware memory management technique in a KVS can slightly improve the end-to-end latency (i.e.,~2%). Additionally, such technique highly impacts the look-up time required by the CPU to find the key and the corresponding value in the database, decreasing the mean time by ~22.5%, and improving the 99th percentile by ~62.7%. / Key-Value Stores (KVSs) är en typ av icke-relationsdatabaser vars data representeras som ett nyckel-värdepar och används ofta för att representera lagring av cache och session. Bland dem är Memcached en av de mest populära, eftersom den används ofta i olika internettjänster som sociala nätverk och strömmande plattformar. Med tanke på den kontinuerliga och allt snabbare tillväxten av nätverksenheter som använder dessa tjänster måste den råvaruhårdvara som databaserna bygger på bearbeta paket snabbare för att möta marknadens behov. Under de senaste åren har dock prestandaförbättringarna som kännetecknar den nya hårdvaran blivit tunnare och tunnare. Härifrån, eftersom inköp av nya produkter inte längre är synonymt med betydande prestandaförbättringar, måste företagen utnyttja den fulla potentialen för hårdvaran som redan finns i deras besittning, vilket skjuter upp köpet av nyare hårdvara. En av de senaste idéerna för att öka prestanda för råvaruhårdvara är användningen av skivmedveten minneshantering. Denna teknik utnyttjar den Sista Nivån av Cache (SNC) genom att se till att de enskilda kärnorna tar data från minnesplatser som är mappade till deras respektive cachepartier (dvs. SNCskivor). Denna avhandling fokuserar på förverkligandet av en KVS-prototyp— baserad på Intel Haswell mikroarkitektur—byggd ovanpå Data Plane Development Kit (DPDK), och på vilken principerna för skivmedveten minneshantering tillämpas. För att testa dess prestanda, med tanke på att det inte finns en DPDK-baserad trafikgenerator som stöder Memcachedprotokollet, har en ytterligare prototyp av en trafikgenerator som stöder dessa funktioner också utvecklats. Föreställningarna mättes med två olika maskiner: en för trafikgeneratorn och en för KVS. Först testades den “vanliga” KVSprototypen, för att se de faktiska fördelarna, den skivmedvetna. Båda KVSprototyperna utsattes för två typer av trafik: (i) enhetlig trafik där nycklarna alltid skiljer sig från varandra och (ii) sned trafik, där nycklar upprepas och vissa nycklar är mer benägna att upprepas än andra. Experimenten visar att i verkliga scenarier (dvs. kännetecknas av snedställda nyckelfördelningar) kan användningen av en skivmedveten minneshanteringsteknik i en KVS förbättra förbättringen från slut till slut (dvs. ~2%). Dessutom påverkar sådan teknik i hög grad uppslagstiden som krävs av CPU: n för att hitta nyckeln och motsvarande värde i databasen, vilket minskar medeltiden med ~22, 5% och förbättrar 99th percentilen med ~62, 7%.
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VoloDB: High Performance and ACID Compliant Distributed Key Value Store with Scalable Prune Index ScansDar, Ali January 2015 (has links)
Relational database provide an efficient mechanism to store and retrieve structured data with ACID properties but it is not ideal for every scenario. Their scalability is limited because of huge data processing requirement of modern day systems. As an alternative NoSQL is different way of looking at a database, they generally have unstructured data and relax some of the ACID properties in order to achieve massive scalability. There are many flavors of NoSQL system, one of them is a key value store. Most of the key value stores currently available in the market offers reasonable performance but compromise on many important features such as lack of transactions, strong consistency and range queries. The stores that do offer these features lack good performance. The aim of this thesis is to design and implement VoloDB, a key value store that provides high throughput in terms of both reads and writes but without compromising on ACID properties. VoloDB is built over MySQL Cluster and instead of using high-level abstractions, it communicates with the cluster using the highly efficient native low level C++ asynchronous NDB API. VoloDB talks directly to the data nodes without the need to go through MySQL Server that further enhances the performance. It exploits many of MySQL Cluster’s features such as primary and partition key lookups and prune index scans to hit only one of the data nodes to achieve maximum performance. VoloDB offers a high level abstraction that hides the complexity of the underlying system without requiring the user to think about internal details. Our key value store also offers various additional features such as multi-query transactions and bulk operation support. C++ client libraries are also provided to allow developers to interface easily with our server. Extensive evaluation is performed which benchmarks various scenarios and also compares them with another high performance open source key value store.
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An analysis of LSM caching in NVRAMLersch, Lucas, Oukid, Ismail, Lehner, Wolfgang, Schreter, Ivan 13 June 2022 (has links)
The rise of NVRAM technologies promises to change the way we think about system architectures. In order to fully exploit its advantages, it is required to develop systems specially tailored for NVRAM devices. Not only this imposes great challenges, but developing full system architectures from scratch is undesirable in many scenarios due to prohibitive development costs. Instead, we analyze in this paper the behavior of an existing log-structured persistent key-value store, namely LevelDB, when run on top of an emulated NVRAM device. We investigate initial opportunities for improvement when adapting a system tailored for HDD/SSDs to run on top of an NVRAM environment. Furthermore, we analyze the behavior of the legacy DRAM caching component of LevelDB and whether more suitable caching policies are required.
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Scaling Apache Hudi by boosting query performance with RonDB as a Global Index : Adopting a LATS data store for indexing / Skala Apache Hudi genom att öka frågeprestanda med RonDB som ett globalt index : Antagande av LATS-datalager för indexeringZangis, Ralfs January 2022 (has links)
The storage and use of voluminous data are perplexing issues, the resolution of which has become more pressing with the exponential growth of information. Lakehouses are relatively new approaches that try to accomplish this while hiding the complexity from the user. They provide similar capabilities to a standard database while operating on top of low-cost storage and open file formats. An example of such a system is Hudi, which internally uses indexing to improve the performance of data management in tabular format. This study investigates if the execution times could be decreased by introducing a new engine option for indexing in Hudi. Therefore, the thesis proposes the usage of RonDB as a global index, which is expanded upon by further investigating the viability of different connectors that are available for communication. The research was conducted using both practical experiments and the study of relevant literature. The analysis involved observations made over multiple workloads to document how adequately the solutions can adapt to changes in requirements and types of actions. This thesis recorded the results and visualized them for the convenience of the reader, as well as made them available in a public repository. The conclusions did not coincide with the author’s hypothesis that RonDB would provide the fastest indexing solution for all scenarios. Nonetheless, it was observed to be the most consistent approach, potentially making it the best general-purpose solution. As an example, it was noted, that RonDB is capable of dealing with read and write heavy workloads, whilst consistently providing low query latency independent from the file count. / Lagring och användning av omfattande data är förbryllande frågor, vars lösning har blivit mer pressande med den exponentiella tillväxten av information. Lakehouses är relativt nya metoder som försöker åstadkomma detta samtidigt som de döljer komplexiteten för användaren. De tillhandahåller liknande funktioner som en standarddatabas samtidigt som de fungerar på toppen av lågkostnadslagring och öppna filformat. Ett exempel på ett sådant system är Hudi, som internt använder indexering för att förbättra prestandan för datahantering i tabellformat. Denna studie undersöker om exekveringstiderna kan minskas genom att införa ett nytt motoralternativ för indexering i Hudi. Därför föreslår avhandlingen användningen av RonDB som ett globalt index, vilket utökas genom att ytterligare undersöka lönsamheten hos olika kontakter som är tillgängliga för kommunikation. Forskningen genomfördes med både praktiska experiment och studie av relevant litteratur. Analysen involverade observationer som gjorts över flera arbetsbelastningar för att dokumentera hur adekvat lösningarna kan anpassas till förändringar i krav och typer av åtgärder. Denna avhandling registrerade resultaten och visualiserade dem för att underlätta för läsaren, samt gjorde dem tillgängliga i ett offentligt arkiv. Slutsatserna sammanföll inte med författarnas hypotes att RonDB skulle tillhandahålla den snabbaste indexeringslösningen för alla scenarier. Icke desto mindre ansågs det vara det mest konsekventa tillvägagångssättet, vilket potentiellt gör det till den bästa generella lösningen. Som ett exempel noterades att RonDB är kapabel att hantera läs- och skrivbelastningar, samtidigt som det konsekvent tillhandahåller låg frågelatens oberoende av filantalet.
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