Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Gaurav Makkar is active.

Publication


Featured researches published by Gaurav Makkar.


international conference on big data | 2013

On the use of shared storage in shared-nothing environments

K R Krish; Aleksandr Khasymski; Guanying Wang; Ali Raza Butt; Gaurav Makkar

Shared-nothing environments, exemplified by systems such as MapReduce and Hadoop, employ node-local storage to achieve high scalability. The exponential growth in application datasets, however, demands ever higher I/O throughput and disk capacity. Simply equipping individual nodes in a Hadoop cluster with more disks is not scalable as it: increases the per-node cost, increases the probability of storage failure at the node, and worsens node failure recovery times. To this end, we propose dividing a Hadoop rack into several (small) sub-racks, and consolidating disks of a sub-racks compute nodes into a separate shared Localized Storage Node (LSN) within the subrack. Such a shared LSN is easier to manage and provision, and can offer an economically better solution by employing overall fewer disks at the LSN than the total of the sub-racks individual nodes, while still achieving high I/O performance. In this paper, we provide a quantitative study on the impact of shared storage in Hadoop clusters. We utilize several typical Hadoop applications and test them on a medium-sized cluster and via simulations. Our evaluation shows that: (i) the staggered workload allows our design to support the same number of compute nodes at a comparable or better throughput using fewer total disks than in the node-local case, thus providing more efficient resource utilization; (ii) the impact of lost locality can be mitigated by better provisioning the LSN-node network interconnect and the number of disks in an LSN; and (iii) the consolidation of disks into an LSN is a viable and efficient alternative to the extant node-local storage design. Finally, we show that LSN-based design can deliver up to 39% performance improvement over standard Hadoop.


Archive | 2013

Metadata subsystem for a distributed object store in a network storage system

Gaurav Makkar; Sudhir Srinivasan; Ravi Kavuri


Archive | 2008

Logical block replication with deduplication

Alan Stuart Driscoll; Damarugendra Mallaiah; Gaurav Makkar; Balaji Rao


Archive | 2012

CONTENTION-FREE MULTI-PATH DATA ACCESS IN DISTRIBUTED COMPUTE SYSTEMS

Gaurav Makkar; Arthur F. Lent


Archive | 2012

Migrating deduplicated data

Nagesh Panyam Chandrasekarasastry; Atish Kathpal; Gaurav Makkar


Archive | 2009

Methods and Systems for Concurrently Reading Direct and Indirect Data Blocks

Gaurav Makkar; Timothy Bisson


Archive | 2014

System and method for a scalable crash-consistent snapshot operation

Bipul Raj; Gaurav Makkar


Archive | 2013

Distributed file system gateway

Kartheek Muthyala; Gaurav Makkar; Arun Suresh; Srinivasan Narayanamurthy


Archive | 2015

Object store architecture for distributed data processing system

Gaurav Makkar; Srinivasan Narayanamurthy; Kartheek Muthyala; Stephen Daniel


Archive | 2013

DATA MANAGEMENT IN DISTRIBUTED FILE SYSTEMS

Srinivasan Narayanamurthy; Gaurav Makkar; Kartheek Muthyala; Arun Suresh

Researchain Logo
Decentralizing Knowledge