Commvault Metallic: No-Comprise BaaS

Event: Tech Field Day 22

Appearance: Commvault Presents at Tech Field Day 22

Company: Commvault

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Personnel: David Ngo, Janet Giesen

Janet Giesen, VP, Operations & Programs, and David Ngo, CTO, introduce Metallic, a Commvault Venture. One year after introducing Metallic, Commvault is seeing customer adoption and accolades for the backup as a service product. Metallic is now available in 14 countries and has been expanded from core backup and recovery, Microsoft Office 365 data protection, and endpoint backup and recovery, to include VM and Kubernetes backup, database backup, file & object backup, and eDiscovery as well as a cloud storage service for Commvault customers. Ngo demonstrates Metallic Cloud Storage Services (MCSS), which provides a managed cloud storage solution in Microsoft Azure, and discusses how the Metallic as-a-service offerings work with the Tech Field Day delegates.


Introducing Commvault Recovery Readiness Solutions

Event: Tech Field Day 22

Appearance: Commvault Presents at Tech Field Day 22

Company: Commvault

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Personnel: Jeff Harbert

Jeff Harbert, Director, Technical Services Programs, presents Commvault’s recovery readiness solutions. Recovering from a catastrophic data loss or data-compromising event requires a plan, and Commvault’s Readiness Solutions help prepare companies to return to operations. Harbert discusses Commvault’s readiness approach and takes questions from the Tech Field Day delegates.


Commvault Disaster Recovery Updates

Event: Tech Field Day 22

Appearance: Commvault Presents at Tech Field Day 22

Company: Commvault

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Personnel: Rahul Pawar

Rahul Pawar, VP, Product Management, introduces the expanded Commvault portfolio of disaster recovery products. Disaster Recovery is a new product in the Commvault portfolio, providing a simple, flexible, powerful, scalable, and intelligent disaster recovery solution for businesses. It addresses the modern hybrid and multi-cloud enterprise, supporting common platforms like VMware and clouds like Azure, AWS, and GCP. Pawar then demonstrates the product and takes questions from the Tech Field Day delegates.


Don Foster Introduces the New Commvault

Event: Tech Field Day 22

Appearance: Commvault Presents at Tech Field Day 22

Company: Commvault

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Personnel: Don Foster

Don Foster, Global VP, Sales Engineering, introduces the new Commvault in 2020. Commvault has responded to multi-cloud, cloud-native, automation, DevOps, and changing IT economics to build an intelligent data management portfolio. The goal is to provide data awareness, agility, and automation through Commvault products, from backup & recovery and disaster recovery to file storage optimization, data governance, eDiscovery and compliance, and multi-protocol storage both on-premises and as SaaS.


Introduction to VAST Data LightSpeed: Storage Architecture for Machine Intelligence

Event: AI Field Day 1

Appearance: Intel Presents VAST Data at AI Field Day 1

Company: Intel, VAST Data

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Personnel: Howard Marks, Jeff Denworth

Jeff Denworth, CMO, introduces VAST Data LightSpeed, a storage platform for next-generation AI applications. The LightSpeed platform is designed to enable any platform to gain maximum performance via a single NFS mount point. NFS over RDMA can exceed multiple gigabyte per second performance using nconnect multipath. Denworth then discusses the need for high-speed NFS storage for AI applications and presents benchmarks for Nvidia DGX-A100 with VAST Data LightSpeed. He also presents a use case of AI imaging using LightSpeed. This session was sponsored by Intel.


Introduction to VAST Data Universal Storage

Event: AI Field Day 1

Appearance: Intel Presents VAST Data at AI Field Day 1

Company: Intel, VAST Data

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Personnel: Jeff Denworth

Jeff Denworth, CMO, introduces VAST Data’s universal storage product. It is designed to be a universal data platform for all applications, with all-NVMe performance, tier-5 cost efficiency, and exabyte scale for NAS and object storage. It is built on a modern foundation with disaggregated storage networking using NVMe-over-Fabrics, revolutionary flash economics using Intel QLC NAND SSDs, and persistent memory using Intel Optane SSDs. This session was sponsored by Intel.


Machine Learning Use Cases for MemVerge Memory Machine Software

Event: AI Field Day 1

Appearance: Intel Presents MemVerge at AI Field Day 1

Company: Intel, MemVerge

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Personnel: Yue Li

Yue Li, Co-Founder and CTO, presents AI applications for MemVerge Memory Machine software. He begins with training using large memory, showing that DRAM can be combined with Intel Optane Persistent Memory (PMEM) to provide large memory capacity with DRAM-like speed. He uses GraphSAGE as an example of machine learning on a large graph with MemVerge Transparent Memory Service. Next he presents inference with a large model and feature embeddings using Facebook’s DLRM as an example. He also uses image recognition as an example of leveraging MemVerge. Finally he discusses using persistent memory for instant model rollback or recovery.


Cisco AL and ML for Endpoint Analytics and Detecting Spoofing Attacks

Event: AI Field Day 1

Appearance: Cisco Presents at AI Field Day 1

Company: Cisco

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Personnel: JP Vasseur

JP Vasseur PhD, Cisco Fellow and head of ML and Data Science engineering, presents an advanced use case for machine learning in network security. He discusses clustering using machine learning and how Cisco can measure the efficacy of the results in terms of purity, percentage of unassigned, number of clusters, speed of unknowns resolution, and stability. He then gives a sneak peek at what comes next: Detecting spoofing attacks with ML/AI. ML is an excellent tool for detecting anomalies, and Vasseur presents a specific mechanism to accomplish this using ML instead of complex rules.


Advanced Endpoint Visibility with Cisco AI Endpoint Analytics

Event: AI Field Day 1

Appearance: Cisco Presents at AI Field Day 1

Company: Cisco

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Personnel: Krishnan Thiruvengadam

Krishnan Thiruvengadam, Technical Marketing Engineer, discusses advanced endpoint visibility using Cisco’s AI Endpoint Analytics. After discussing the benefits and challenges of network visibility, Thiruvengadam presents Cisco’s next-generation endpoint visibility capability with AI-driven analytics and deep packet inspection. It provides high-fidelity profiling, improved classification, and better workflows with integration with third-party products.


Cisco’s AI/ML Networking Journey

Event: AI Field Day 1

Appearance: Cisco Presents at AI Field Day 1

Company: Cisco

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Personnel: JP Vasseur

In this presentation, JP Vasseur PhD, Cisco Fellow and head of ML and Data Science engineering, presents the journey of Cisco’s AI applications from 2013 to 2020. This journey began with self-learning networks, then proceeded to AI network analytics for wireless automated detection and root cause analysis, and now to ML-based security classification and behavioral spoofing detection. He also demonstrates Cisco AI Endpoint Analytics on Cisco ISE.


Building Big Data AI Applications on Intel Analytics Zoo

Event: AI Field Day 1

Appearance: Intel Presents Analytics Zoo at AI Field Day 1

Company: Intel

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Personnel: Jason Dai

Jason Dai, Senior Principal Engineer, discusses practical applications of Intel’s Analytics Zoo, an open source software platform for big data AI. This presentation focuses on four applications: Recommendation, time series analysis, computer vision, and natural language processing. His first example is the food recommendation engine used by Burger King, which uses a transformer cross transformer (TxT) model leveraging HDFS, Apache Spark and MXNet, and Ray. Next, Dai discusses how SK Telecom’s time series based network quality prediction solution is able to run up to 6x faster using Analytics Zoo on Intel Xeon and presents a similar use case of wind power prediction using Analytics Zoo by GoldWind, which improved accuracy to 79% with a 4x training speedup. When it comes to computer vision, Dai presents industrial inspection by Midea and KUKA and AI-assisted radiology with Dell EMC. Finally, natural language processing (NLP) is presented, using a chatbot in Microsoft Azure and job recommendation engine in Talroo as examples.


Intel Analytics Zoo Technical Overview and Case Studies

Event: AI Field Day 1

Appearance: Intel Presents Analytics Zoo at AI Field Day 1

Company: Intel

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Personnel: Jason Dai

Jason Dai, Senior Principal Engineer, gives a deeper technical overview of Intel’s Analytics Zoo, an open source software platform for big data AI. Analytics Zoo uses distributed TensorFlow/PyTorch on Apache Spark, and Dai discusses how it is used in network quality prediction by SK Telecom. Next he focuses on RayOnSpark to run Ray programs directly on the big data platform, giving the example of Burger King’s fast food recommendation engine which leverages an end-to-end training pipeline with RayOnSpark. Turning to the ML workflow question, Dai discusses how a scalable AutoML allows time series prediction, using the example of Tencent Cloud’s TI-One ML platform. Finally, Dai presents the Zouwu open source time series framework on Analytics Zoo.


Intel Analytics Zoo: Software Platform for Big Data AI

Event: AI Field Day 1

Appearance: Intel Presents Analytics Zoo at AI Field Day 1

Company: Intel

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Personnel: Jason Dai

Jason Dai, Senior Principal Engineer, presents Intel’s Analytics Zoo, a software platform for big data AI. Just as BigDL enables distributed, high-performance deep learning, Analytics Zoo is a unified big data AI platform for TensorFlow, PyTorch, Keras, BigDL, OpenVINO, Ray, and Apache Spark. This open source project reflects the transformation of big data, which now includes AI. After a brief case study, Dai presents the overall architecture of Analytics Zoo and discusses seamless scaling of analytics and AI from laptop to distributed big data.


Intel’s Transformation for the Intelligence Era

Event: AI Field Day 1

Appearance: Intel Presents Analytics Zoo at AI Field Day 1

Company: Intel

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Personnel: Fadi Zuhayri

Fadi Zuhayri, Sr. Director, Big Data AI, introduces Intel’s transformation for the the intelligence era. He begins with some background, as compute democratization has brought technology to the exascale era. He also presents the drivers for transformation, 5G, artificial intelligence (AI), and the intelligent edge, and how these have driven the technology pillars addressed by Intel. Intel’s analytics and AI strategy focuses on diverse hardware, software, and ecosystems from edge to cloud, providing a foundation for AI workloads. Next, he looks at Intel’s oneAPI which provides an abstraction layer to support any application or middleware on any hardware, and Intel DevCloud, which makes it easier to learn and develop software.


AI/ML Customer Success Stories on Red Hat OpenShift

Event: AI Field Day 1

Appearance: Red Hat Presents at AI Field Day 1

Company: Red Hat

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Personnel: Abhinav Joshi

Abhinav Joshi, Senior Manager, Product Marketing, OpenShift Business Unit, explains how organizations globally have achieved key business goals by operationalizing AI/ML projects on Red Hat OpenShift, broader portfolio, open source technologies and partner ecosystem.


Operationalize ML Models with Red Hat OpenShift

Event: AI Field Day 1

Appearance: Red Hat Presents at AI Field Day 1

Company: Red Hat

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Personnel: Tushar Katarki

Tushar Katarki, Senior Manager, Product Management, OpenShift Business Unit, discusses how companies can leverage DevOps capabilities in Red Hat OpenShift (industry leading Kubernetes platform) to operationalize ML models into production.


Speed Up AI/ML Projects with Red Hat OpenShift Hybrid Cloud Platform

Event: AI Field Day 1

Appearance: Red Hat Presents at AI Field Day 1

Company: Red Hat

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Personnel: Abhinav Joshi, Tushar Katarki

Abhinav Joshi, Senior Manager, Product Marketing, OpenShift Business Unit, presents the value of containers, Kubernetes, and DevOps powered Red Hat OpenShift (industry leading Kubernetes Platform), broader portfolio, open source AI/ML tooling, and a broad AI/ML ISV and infrastructure ecosystem to help solve them.


Red Hat AI/ML Market Trends, Desired Architecture, and Execution Challenges

Event: AI Field Day 1

Appearance: Red Hat Presents at AI Field Day 1

Company: Red Hat

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Personnel: Tushar Katarki

Tushar Katarki, Senior Manager, Product Management, OpenShift Business Unit, presents the AI/ML use cases across industries, desired capabilities in the end to end solution architecture, and potential execution challenges with operationalizing AI/ML at scale.


Live Demo of Audio and Visual Classification with BrainChip Akida

Event: AI Field Day 1

Appearance: BrainChip Presents at AI Field Day 1

Company: BrainChip

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Personnel: Anil Mankar, Chris Anastasi

Anil Mankar, Co-Founder and Chief Development Officer, demonstrates audio and visual classification with the BrainChip Akida development board.


Neural Networks Optimized to Run on BrainChip Akida Technology

Event: AI Field Day 1

Appearance: BrainChip Presents at AI Field Day 1

Company: BrainChip

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Personnel: Anil Mankar

Anil Mankar, Co-Founder and Chief Development Officer, presents the various neural networks optimized to operate on the BrainChip Akida processor. He begins with auditory classification, discussing keyword spotting in an always on microphone. He then presents visual processing, using person detection as an example. Next he discusses olfactory detection using the Fox 3000 olfactory data set and detecting volatile organic compounds. The next sense is taste classification using an “e-tongue”. Finally he presents somatosensory classification with an example of electric motor ball bearing fault diagnosis.