Ian Lumb’s Cloud Computing Portfolio

When I first introduced it, it made sense to me (at the time, at least!) to divide my Data Science Portfolio into two parts; the latter part was “… intended to showcase those efforts that have enabled other Data Scientists” – in other words, my contributions as a Data Science Enabler.

As of today, most of what was originally placed in that latter part of my Data Science Portfolio has been transferred to a new portfolio – namely one that emphasizes Cloud computing. Thus my Cloud Computing Portfolio is a self-curated, online, multimedia effort intended to draw together into a cohesive whole my efforts in Cloud computing; specifically this new Portfolio is organized as follows:

  • Strictly Cloud – A compilation of contributions in which Cloud computing takes centerstage
  • Cloud-Related – A compilation of contributions drawn from clusters and grids to miscellany. Also drawn out in this section, however, are contributions relating to containerization.

As with my Data Science Portfolio, you’ll find in my Cloud Computing Portfolio everything from academic articles and book chapters, to blog posts, to webinars and conference presentations – in other words, this Portfolio also lives up to its multimedia billing!

Since this is intentionally a work-in-progress, like my Data Science Portfolio, feedback is always welcome as there will definitely be revisions applied !

Data Science: Identifying My Professional Bias

Data Science: Identifying My Professional Bias

In the Summer of 1984, I arrived at Toronto’s York University as a graduate student in Physics & Astronomy. (Although my grad programme was Physics & Astronomy, my research emphasized the application of fluid dynamics to Earth’s deep interior.) Some time after that, I ran my first non-interactive computation on a cluster of VAX computers. I’m not sure if this was my first exposure to Distributed Computing or not not; I am, however, fairly certain that this was the first time it (Distributed Computing) registered with me as something exceedingly cool, and exceedingly powerful.

Even back in those days, armed with nothing more than a VT100 terminal ultimately connected to a serial interface on one of the VAXes, I could be logged in and able to submit a computational job that might run on some other VAX participating in the cluster. The implied connectedness, the innate ability to make use of compute cycles on some ‘remote’ system was intellectually intoxicating – and I wasn’t even doing any parallel computing (yet)!

More than a decade later, while serving in a staff role as a computer coordinator, I became involved in procuring a modest supercomputer for those members of York’s Faculty of Pure & Applied Science who made High Performance Computing (HPC) a critical component of their research. If memory serves me correctly, this exercise resulted in the purchase of a NUMA-architecture system from SGI powered by MIPS CPUs. Though isolated initially, and as a component of the overall solution, Platform LSF was included to manage the computational workloads that would soon consume the resources of this SGI system.

The more I learned about Platform LSF, the more I was smitten by the promise and reality of Distributed Computing – a capability to be leveraged from a resource-centric perspective with this Load Sharing Facility (LSF). [Expletive deleted], Platform founder Songnian Zhou expressed the ramifications of his technical vision for this software as Utopia in a 1993 publication. Although buying the company wasn’t an option, I did manage to be hired by Platform, and work there in various roles for about seven-and-a-half years.

Between my time at Platform (now an IBM company) and much-more recently Univa, over a decade of my professional experience has been spent focused on managing workloads in Distributed Computing environments. From a small handful of VAXes, to core counts that have reached 7 figures, these environments have included clusters, grids and clouds.

My professional bias towards Distributed Computing was further enhanced through the experience of being employed by two software vendors who emphasized the management of clusters – namely Scali (Scali Manage) and subsequently Bright Computing (Bright Cluster Manager). Along with Univa (Project Tortuga and Navops Launch), Bright extended their reach to the management of HPC resources in various cloud configurations.

If it wasn’t for a technical role at Allinea (subsequently acquired by ARM), I might have ended up ‘stuck in the middle’ of the computational stack – as workload and cluster management is regarded by the HPC community (at least) as middleware … software that exists between the operating environment (i.e., the compute node and its operating system) and the toolchain (e.g., binaries, libraries) that ultimately support applications and end users (e.g., Figure 5 here).

Allinea’s focuses on tools to enable HPC developers. Although they were in the process of broadening their product portfolio to include a profiling capability around the time of my departure, in my tenure there the emphasis was on a debugger – a debugger capable of handling code targeted for (you guessed it) Distributed Computing environments.

Things always seemed so much bigger when we were children. Whereas Kid Ian was impressed by a three-node VAX cluster, and later ‘blown away’ by a modest NUMA-architecture ‘supercomputer’, Adult Ian had the express privilege of running Allinea DDT on some of the largest supercomputers on the planet (at the time) – tracking down a bug that only showed up when more than 20K cores were used in parallel on one of Argonne’s Blue Genes, and demonstrating scalable, parallel debugging during a tutorial on some 700K cores of NCSA’s Blue Waters supercomputer. In hindsight, I can’t help but feel humbled by this impressive capability of Allinea DDT to scale to these extremes. Because HPC’s appetite for scale has extended beyond tera and petascale capabilities, and is eyeing seriously the demand to perform at the exascale, software like Allinea DDT needs also to match this penchant for extremely extreme scale.

At this point, suffice it to say that scalable Distributed Computing has been firmly encoded into my professional DNA. As with my scientifically based academic bias, it’s difficult not to frame my predisposition towards Distributed Computing in a positive light within the current context of Data Science. Briefly, it’s a common experience for the transition from prototype-to-production to include the introduction of Distributed Computing – if not only to merely execute applications and/or their workflows on more powerful computers, but perhaps to simultaneously scale these in parallel.

I anticipate the need to return to this disclosure regarding the professional bias I bring to Data Science. For now though, calling out the highly influential impact Distributed Computing has had on my personal trajectory, appears warranted within the context of my Data Science Portfolio.

Possibilities for Reverse-Time Seismic Migration (RTM) using Apache Spark

Background

Just published on the Bright blog is my follow-up post regarding my poster presentation (poster, video) at the 2015 Rice Oil and Gas HPC Workshop. In addition to summarizing the disruptive potential for Apache Spark in energy exploration and other industries, this new post also captures my shift in emphasis from Apache Hadoop to Spark. Because the scientific details of my investigation are more-than-a-little OT for the Bright blog, I thought I’d share them here.

About RTM

RTM has a storied history of being performance-challenged. Although the method was originally conceived by geophysicists in the 1980s, it was almost two decades before it became computationally tractable. Considered table stakes in terms of seismic processing by today’s standards, algorithms research for RTM remains highly topical – not just at Rice, York and other universities, but also at the multinational corporations whose very livelihood depends upon the effective and efficient processing of seismic-reflection data. And of particular note are the consistent gains being made since the introduction of GPU programmability via CUDA, as innovative algorithms for RTM can exploit this platform for double-digit speedups.

Why does RTM remain performance-challenged? Dr. G. Liu and colleagues in the School of Geophysics and Information Technology at China University of Geosciences in Beijing identify the two key challenges:

  1. RTM modelling is inherently compute intensive. In RTM, propagating seismic waves are modeled using the three-dimensional wave equation. This classic equation of mathematical physics needs to be applied twice. First in the forward problem, assumptions are made about the characteristics of the seismic source as well as variations in subsurface velocity, so that seismic waves can be propagated forward in time from their point of origin into the subsurface (i.e., an area of geological interest from a petroleum exploration perspective); this results in the forward or source wavefields in the upper-branch of the diagram below. Using seismic traces recorded at arrays of geophones (receivers sensitive to various types of seismic waves) as well as an assumed subsurface-velocity model, these observations are reversed-in-time (hence the name RTM), and then backwards propagated using the same 3D wave equation; this results in the receivers’ wavefields in the lower-branch of the diagram below. It is standard practice to make use of the Finite Difference Method (FDM) to numerically propagate all wavefields in space and time. In order to ensure meaningful results (stable and non-dispersive from the perspective of numerical analysis) from application of FDM to the 3D wave equation, however, both time and 3D space need to be discretized into small steps and grid intervals, respectively. Because the wave equation is a Partial Differential Equation in time and space, the FDM estimates future values using approximations for all derivatives. And in practice, it has been determined that RTM requires high-order approximations for all spatial derivatives if reliable results are to be optimally obtained. In short, there are valid reasons why the RTM modeling kernel is inherently and unavoidably compute intensive.RTM conventional workflow
  2. RTM data exceeds memory capacity. From the earliest days of computational tractability around the late 1990s, standard practice was to write the forward/source wavefields to disk. Then, in a subsequent step, cross-correlate this stored data of forward wavefields with the receivers’ wavefields. Using cross-correlation as the basis for an imaging condition, coherence (in the time-series analysis sense) between the two wavefields is interpreted as being of geological interest – i.e., the identification in space and time of geological reflectors like (steeply dipping) interfaces between different sedimentary lithologies, folds, faults, salt domes as well as reservoirs of even more complex geometrical structure. Although the method consistently delivered the ‘truest images’ of the subsurface, it was literally being crushed by its own success, as multiple-TB data volumes are typical for the forward wavefields. The need to write the forward wavefields to disk, and then re-read them piecemeal from disk during cross-correlation with the receivers’ wavefields, results in disk I/O emerging as the significant bottleneck. 

GPU-Enabled RTM

Not surprisingly then, researchers like Liu et al. have programmed GPUs using CUDA for maximum performance impact when it comes to implementing RTM’s modeling kernel. However they, along with a number of other researchers, have introduced novel algorithms to address the challenge of disk I/O. As you might anticipate, the novel aspect of their algorithms is in how they make use of the memory hierarchy presented by hybrid-architecture systems based on CPUs and accelerators. (Although CUDA 6 introduced a kernel module to allow for shared memory between CPUs and GPUs in the first quarter of 2014, I am unaware of the resulting contiguous memory being exploited in the case of RTM.) Programming GPUs via CUDA is not for the feint of coding heart. However, the double-digit performance gains achieved using this platform have served only to validate an ongoing investment.

Spark’ing Possibilities for RTM

Inspired by the in-memory applications of GPUs, and informed about the meteoric rise of interest in Apache Spark, the inevitable (and refactored) question for the Rice workshop became: “RTM using Spark? Is there a case for migration?” In other words, rather than work with HDFS and YARN in a Hadoop context, might Spark have more to offer to RTM?

With the caveat that my investigation is at its earliest stages, and that details need to be fleshed out by me (and hopefully!) many others, Spark appears to present the following possibilities for RTM:

  • Replace/reduce disk I/O with RDDs. The key innovation implemented in Spark is RDDs – Resilient Distributed Datasets. This in-memory abstraction (please see the 6th reason here for more) has the potential to replace disks in RTM workflows. More specifically, in making use of RDDs via Spark:RTM workflow with RDDs
    • Forward wavefields could reside in memory and be rendered available without the need for disk I/O during the application of the imaging condition – i.e., as forward and receivers’ wavefields are cross-correlated. This is illustrated in a modified version of RTM’s computational workflow above. You should be skeptical about the multiple-TBs of data involved here – as you’re unlikely to have a single system with such memory capacity in isolation. This is where the Distributed aspect of RDDs factors in. In a fashion that mimics Hadoop’s use of distributed, yet distinct disks to provide the abstraction of a contiguous file system, RDDs do the same only with memory. Because RDDs are inherently Resilient, they are intended for clustered environments where various types of failures (e.g., a kernel panic followed by a system crash) are inevitable and can be tolerated. Even more enticing in this use case involving RTM wavefields, the ability to functionally transform datasets using Spark’s built-in capability for partitioning RDDs means that more sophisticated algorithms for imaging RTM’s two wavefields can be crafted – i.e., algorithms that exploit topological awareness of the wavefields’ locality in memory. In confronting the second challenge identified above by Liu et al., an early win for in-memory RTM via RDDs would certainly demonstrate the value of the approach.
    • Gathers of seismic data could reside in memory, and be optimally partitioned using Spark for wavefield calculations. Once acquired, reflection-seismic data is written to an industry-standard format (SEG Y rev 1) established by the Society of Exploration Geophysicists (SEG). Gathers are collections of data for pairs of sources and receivers that have depth (typically) in common. (This is referred to as a Common Depth Point or CDP gather by the industry.) RTM is systematically applied to each gather. Although this has not been a point of focus from an algorithms-research perspective, even in the innovative cases involving GPUs, the in-memory possibilities afforded by Spark may be cause for reconsideration. In fact Professor Huang and his students, in the Department of Computer Science at Prairie View A&M University (PVAMU) in the Houston area, have already applied Spark to SEG Y rev 1 format seismic data. In a poster presented at the Rice workshop, not only did Prof. Huang demonstrate the feasibility of introducing RDDs via Spark, he indicated how this use is crucial to a cloud-based platform for seismic analytics currently under development at PVAMU.
  • Apply alternate imaging conditions. For each (CDP) gather, coherence between RTM’s two wavefields comprises the basis for establishing the presence of subsurface reflectors of geological origin. Using cross-correlation, artifacts introduced by complex reflector geometries, for example, are de-emphasized as the gather is migrated as-a-whole. Whereas it represents the canonical imaging condition envisaged by the originators of RTM in the 1980s, cross-correlation is by no means the only mechanism for establishing coherence between wavefields. Because Spark includes support for machine learning (MLlib), graph analytics (GraphX) and even statistics (SparkR), alternate possibilities for rapidly establishing imaging conditions have never been more accessible to the petroleum industry. Spark’s analytics upside for imaging conditions is much more about introducing new capabilities than computational performance. For example, parameter studies based upon varying gathers and/or velocity models might serve to reduce the levels of uncertainty inherently present in inverse problems that seek to image the subsurface in areas of potential interest for the exploitation of petroleum resources. Using Spark’ified Genetic Algorithms (e.g., derivative of Spark-complimentary ones already written in Scala), for example, criteria could be established for evaluating the imaging conditions resulting from parameter studies – i.e., naturally selecting the most-appropriate velocity model.
  • Alternate implementation of the modeling kernel. Is it possible to Spark’ify the RTM modeling kernel? In other words, make programmatic use of Spark to propagate wavefields via the FDM implementation of the 3D wave equation. And even if this is possible, does it make sense? Clearly, this is the most speculative of the suggestions here. Though most speculative, in asking more questions than it presently answers, also the most intriguing. How so? At its core, speculation of this kind speaks to the generality of RDDs as a paradigm for parallel computing that reaches well beyond just RTM using FDM, and consequently of Spark as a representative implementation. Without speculating further at this time, I’ll take the 5th, and close conservatively here with: Further research is required.
  • Real-time streaming. Spark includes support for streamed data. Whereas streaming seismic data upon acquisition in real time through an RTM workflow appears problematical even to blue-skying me at this point, the notion might find application in related contexts. For example, perhaps a stream-based implementation involving Spark might aid in ensuring the quality of seismic data in near real time as it is acquired, or be used to assess the resolution adequacy in an area of heightened interest within a broader campaign.

Incorporating Spark into Your IT Environment

Whether you’re a boutique outfit, a multinational corporation, or something in between, you have an incumbent legacy to consider in upstream-processing workflows for petroleum exploration. Therefore, introducing technologies from Big Data Analytics into your existing HPC environments is likely to be deemed unwelcome at the very least. However based on a number of discussions at the Rice workshop, and elsewhere in the Houston oil patch, there are a number of reasons why Spark presents as more appealing than Hadoop in complimenting existing IT infrastructures:

  • Spark can likely make use of your existing file systems;
  • Spark will integrate with your HPC workload manager;
  • Spark can be deployed alongside your HPC cluster;
  • You can likely use your existing code with Spark;
  • You could run Spark in a public or private cloud, or even a (Docker) container;
  • Spark is not a transient phenomena – despite the name; and finally
  • Spark continues to improve.

Conclusions

Briefly, in conclusion:

  • RTM has a past, present and future of being inherently performance-challenged. This means that algorithms research remains topical. Noteworthy gains are being made through the use of GPU programmability involving CUDA.
  • Using some ‘novel exploitation’ of HDFS and YARN, Hadoop might afford some performance-related benefits – especially if diskless HDFS is employed. Performance aside, the analytics upside for Hadoop is arguably comparable to that of Spark, even though there would be a need to make use of a number of separate and distinct applications in the Hadoop case.
  • Spark is much easier to integrate with an existing HPC IT infrastructure – mostly because Spark is quite flexible when it comes to file systems. Anecdotal evidence suggests that this is a key consideration for organizations involved in petroleum exploration, as they have incumbent storage solutions in which they have made significant and repeated investments. Spark has eclipsed Hadoop in many respects, and the risk of adoption can be mitigated on many fronts.
  • From in-memory data distributed in a fault-tolerant fashion across a cluster, to analytics-based imaging conditions, to refactored modeling kernels, to possibilities involving data streaming, Spark introduces a number of possibilities that are already demanding the attention of those involved in processing seismic data.

In making use of Spark in the RTM context, there is the potential for significant depth and breadth. Of course, the application of Spark beyond RTM serves only to deepen and broaden the possibilities. Spark is based on sound research in computer science. It has developed into what it is today on the heels of collaboration. That same spirit of collaboration is now required to determine how and when Spark will be applied in the exploration for petroleum, in other areas of the geosciences, as well as in other industries – possibilities for which have been enumerated elsewhere.

Shameless plug: Interested in taking Spark for a test drive? With Bright Cluster Manager for Apache Hadoop all you need is a minimal amount of hardware on the ground or in the cloud. Starting with bare metal, Bright provides you with the entire system stack from Linux through HDFS (or alternative) all the way up to Spark. In other words, you can have your test environment for Spark in minutes, and get cracking on possibilities for Spark-enabling RTM or almost any other application.