Cloudera Enterprise is a data platform that provides:
1) Data science and engineering capabilities for developing and serving predictive models.
2) An operational database for real-time insights.
3) A modern data warehouse.
It can be deployed across multiple cloud platforms and on-premises, and supports various analytic tools. Cloudera Enterprise also provides security, governance, and automation features.
Cortana Analytics Suite is a fully managed big data and advanced analytics suite that transforms your data into intelligent action. It is comprised of data storage, information management, machine learning, and business intelligence software in a single convenient monthly subscription. This presentation will cover all the products involved, how they work together, and use cases.
Cortana Analytics Workshop: Azure Data LakeMSAdvAnalytics
Rajesh Dadhia. This session introduces the newest services in the Cortana Analytics family. Azure Data Lake is a hyper-scale data repository designed for big data analytics workloads. It provides a single place to store any type of data in its native format. In this session, we will show how the HDFS compatibility of Azure Data Lake as a Hadoop File System enables all Hadoop workloads including Azure HDInsight, Hortonworks and Cloudera. Further, we will focus on the key capabilities of the Azure Data Lake that make it an ideal choice for storing, accessing and sharing data for a wide range of analytics applications. Go to https://channel9.msdn.com/ to find the recording of this session.
Azure Days 2019: Grösser und Komplexer ist nicht immer besser (Meinrad Weiss)Trivadis
«Moderne» Data Warehouse/Data Lake Architekturen strotzen oft nur von Layern und Services. Mit solchen Systemen lassen sich Petabytes von Daten verwalten und analysieren. Das Ganze hat aber auch seinen Preis (Komplexität, Latenzzeit, Stabilität) und nicht jedes Projekt wird mit diesem Ansatz glücklich.
Der Vortrag zeigt die Reise von einer technologieverliebten Lösung zu einer auf die Anwender Bedürfnisse abgestimmten Umgebung. Er zeigt die Sonnen- und Schattenseiten von massiv parallelen Systemen und soll die Sinne auf das Aufnehmen der realen Kundenanforderungen sensibilisieren.
Machine learning allows us to build predictive analytics solutions of tomorrow - these solutions allow us to better diagnose and treat patients, correctly recommend interesting books or movies, and even make the self-driving car a reality. Microsoft Azure Machine Learning (Azure ML) is a fully-managed Platform-as-a-Service (PaaS) for building these predictive analytics solutions. It is very easy to build solutions with it, helping to overcome the challenges most businesses have in deploying and using machine learning. In this presentation, we will take a look at how to create ML models with Azure ML Studio and deploy those models to production in minutes.
Embarking on building a modern data warehouse in the cloud can be an overwhelming experience due to the sheer number of products that can be used, especially when the use cases for many products overlap others. In this talk I will cover the use cases of many of the Microsoft products that you can use when building a modern data warehouse, broken down into four areas: ingest, store, prep, and model & serve. It’s a complicated story that I will try to simplify, giving blunt opinions of when to use what products and the pros/cons of each.
Cortana Analytics Suite is a fully managed big data and advanced analytics suite that transforms your data into intelligent action. It is comprised of data storage, information management, machine learning, and business intelligence software in a single convenient monthly subscription. This presentation will cover all the products involved, how they work together, and use cases.
Cortana Analytics Workshop: Azure Data LakeMSAdvAnalytics
Rajesh Dadhia. This session introduces the newest services in the Cortana Analytics family. Azure Data Lake is a hyper-scale data repository designed for big data analytics workloads. It provides a single place to store any type of data in its native format. In this session, we will show how the HDFS compatibility of Azure Data Lake as a Hadoop File System enables all Hadoop workloads including Azure HDInsight, Hortonworks and Cloudera. Further, we will focus on the key capabilities of the Azure Data Lake that make it an ideal choice for storing, accessing and sharing data for a wide range of analytics applications. Go to https://channel9.msdn.com/ to find the recording of this session.
Azure Days 2019: Grösser und Komplexer ist nicht immer besser (Meinrad Weiss)Trivadis
«Moderne» Data Warehouse/Data Lake Architekturen strotzen oft nur von Layern und Services. Mit solchen Systemen lassen sich Petabytes von Daten verwalten und analysieren. Das Ganze hat aber auch seinen Preis (Komplexität, Latenzzeit, Stabilität) und nicht jedes Projekt wird mit diesem Ansatz glücklich.
Der Vortrag zeigt die Reise von einer technologieverliebten Lösung zu einer auf die Anwender Bedürfnisse abgestimmten Umgebung. Er zeigt die Sonnen- und Schattenseiten von massiv parallelen Systemen und soll die Sinne auf das Aufnehmen der realen Kundenanforderungen sensibilisieren.
Machine learning allows us to build predictive analytics solutions of tomorrow - these solutions allow us to better diagnose and treat patients, correctly recommend interesting books or movies, and even make the self-driving car a reality. Microsoft Azure Machine Learning (Azure ML) is a fully-managed Platform-as-a-Service (PaaS) for building these predictive analytics solutions. It is very easy to build solutions with it, helping to overcome the challenges most businesses have in deploying and using machine learning. In this presentation, we will take a look at how to create ML models with Azure ML Studio and deploy those models to production in minutes.
Embarking on building a modern data warehouse in the cloud can be an overwhelming experience due to the sheer number of products that can be used, especially when the use cases for many products overlap others. In this talk I will cover the use cases of many of the Microsoft products that you can use when building a modern data warehouse, broken down into four areas: ingest, store, prep, and model & serve. It’s a complicated story that I will try to simplify, giving blunt opinions of when to use what products and the pros/cons of each.
Azure Data Factory | Moving On-Premise Data to Azure Cloud | Microsoft Azure ...Edureka!
** Microsoft Azure Certification Training : https://www.edureka.co/microsoft-azure-training **
This Edureka "Azure Data Factory” tutorial will give you a thorough and insightful overview of Microsoft Azure Data Factory and help you understand other related terms like Data Lakes and Data Warehousing.
Following are the offering of this tutorial:
1. Why Azure Data Factory?
2. What Is Azure Data Factory?
3. Data Factory Concepts
4. What is Azure Data Lake?
5. Data Lake Concepts
6. Data Lake Vs Data Warehouse
7. Demo- Moving On-Premise Data To Cloud
Check out our Playlists: https://goo.gl/A1CJjM
The new Microsoft Azure SQL Data Warehouse (SQL DW) is an elastic data warehouse-as-a-service and is a Massively Parallel Processing (MPP) solution for "big data" with true enterprise class features. The SQL DW service is built for data warehouse workloads from a few hundred gigabytes to petabytes of data with truly unique features like disaggregated compute and storage allowing for customers to be able to utilize the service to match their needs. In this presentation, we take an in-depth look at implementing a SQL DW, elastic scale (grow, shrink, and pause), and hybrid data clouds with Hadoop integration via Polybase allowing for a true SQL experience across structured and unstructured data.
Azure Synapse Analytics is Azure SQL Data Warehouse evolved: a limitless analytics service, that brings together enterprise data warehousing and Big Data analytics into a single service. It gives you the freedom to query data on your terms, using either serverless on-demand or provisioned resources, at scale. Azure Synapse brings these two worlds together with a unified experience to ingest, prepare, manage, and serve data for immediate business intelligence and machine learning needs. This is a huge deck with lots of screenshots so you can see exactly how it works.
The cloud is all the rage. Does it live up to its hype? What are the benefits of the cloud? Join me as I discuss the reasons so many companies are moving to the cloud and demo how to get up and running with a VM (IaaS) and a database (PaaS) in Azure. See why the ability to scale easily, the quickness that you can create a VM, and the built-in redundancy are just some of the reasons that moving to the cloud a “no brainer”. And if you have an on-prem datacenter, learn how to get out of the air-conditioning business!
The Hive Think Tank - The Microsoft Big Data Stack by Raghu Ramakrishnan, CTO...The Hive
Until recently, data was gathered for well-defined objectives such as auditing, forensics, reporting and line-of-business operations; now, exploratory and predictive analysis is becoming ubiquitous, and the default increasingly is to capture and store any and all data, in anticipation of potential future strategic value. These differences in data heterogeneity, scale and usage are leading to a new generation of data management and analytic systems, where the emphasis is on supporting a wide range of very large datasets that are stored uniformly and analyzed seamlessly using whatever techniques are most appropriate, including traditional tools like SQL and BI and newer tools, e.g., for machine learning and stream analytics. These new systems are necessarily based on scale-out architectures for both storage and computation.
Hadoop has become a key building block in the new generation of scale-out systems. On the storage side, HDFS has provided a cost-effective and scalable substrate for storing large heterogeneous datasets. However, as key customer and systems touch points are instrumented to log data, and Internet of Things applications become common, data in the enterprise is growing at a staggering pace, and the need to leverage different storage tiers (ranging from tape to main memory) is posing new challenges, leading to caching technologies, such as Spark. On the analytics side, the emergence of resource managers such as YARN has opened the door for analytics tools to bypass the Map-Reduce layer and directly exploit shared system resources while computing close to data copies. This trend is especially significant for iterative computations such as graph analytics and machine learning, for which Map-Reduce is widely recognized to be a poor fit.
While Hadoop is widely recognized and used externally, Microsoft has long been at the forefront of Big Data analytics, with Cosmos and Scope supporting all internal customers. These internal services are a key part of our strategy going forward, and are enabling new state of the art external-facing services such as Azure Data Lake and more. I will examine these trends, and ground the talk by discussing the Microsoft Big Data stack.
First introduced with the Analytics Platform System (APS), PolyBase simplifies management and querying of both relational and non-relational data using T-SQL. It is now available in both Azure SQL Data Warehouse and SQL Server 2016. The major features of PolyBase include the ability to do ad-hoc queries on Hadoop data and the ability to import data from Hadoop and Azure blob storage to SQL Server for persistent storage. A major part of the presentation will be a demo on querying and creating data on HDFS (using Azure Blobs). Come see why PolyBase is the “glue” to creating federated data warehouse solutions where you can query data as it sits instead of having to move it all to one data platform.
Building a Data Hub that Empowers Customer Insight (Technical Workshop)Cloudera, Inc.
We have seen the evolution with the Bi and Data Science fields from the structured data warehouse to data lake and finally, to the data hub. This session will cover the key steps required to building a data hub, examining how best to align and engage stakeholders and develop architectural sanction to enable your organisations to realise new customer insights and better enable you to achieve business objectives.
Spark as a Service with Azure DatabricksLace Lofranco
Presented at: Global Azure Bootcamp (Melbourne)
Participants will get a deep dive into one of Azure’s newest offering: Azure Databricks, a fast, easy and collaborative Apache® Spark™ based analytics platform optimized for Azure. In this session, we will go through Azure Databricks key collaboration features, cluster management, and tight data integration with Azure data sources. We’ll also walk through an end-to-end Recommendation System Data Pipeline built using Spark on Azure Databricks.
--session donnée lors du SQL Saturday Lisbon 2015--
Data Management Gateway (and also AS Connector) is what make modern Microsoft BI stack hybrid. Power BI and Azure Data Factory use that component to interact with On-Prem Data assets.
That session is a Deep dive into the DMG and the hybrid architecture involved by Power BI and ADF. How does it work ? Security, Firewall, Certificates, Multiple gateways, Admin delegation, Scale out, Disaster Recovery…. All that topics will be covered during that technical session.
Business Intelligence is an extremely hot career. If you are a DBA or have another IT position, how can you transition to a BI role? James Serra will describe what exactly BI is, what encompasses the Microsoft BI stack, why it is so popular, and why a BI career pays so much. Then James will delve into the steps to take to become a BI expert and how he made the transition.
Big Data is the Buzz word in today's scenario & many current application & products wants to leverage it But there are a lot of challenges involved. The ppt talk about the challenges, big data platform & high level architecture to support it.
Azure Data Factory | Moving On-Premise Data to Azure Cloud | Microsoft Azure ...Edureka!
** Microsoft Azure Certification Training : https://www.edureka.co/microsoft-azure-training **
This Edureka "Azure Data Factory” tutorial will give you a thorough and insightful overview of Microsoft Azure Data Factory and help you understand other related terms like Data Lakes and Data Warehousing.
Following are the offering of this tutorial:
1. Why Azure Data Factory?
2. What Is Azure Data Factory?
3. Data Factory Concepts
4. What is Azure Data Lake?
5. Data Lake Concepts
6. Data Lake Vs Data Warehouse
7. Demo- Moving On-Premise Data To Cloud
Check out our Playlists: https://goo.gl/A1CJjM
The new Microsoft Azure SQL Data Warehouse (SQL DW) is an elastic data warehouse-as-a-service and is a Massively Parallel Processing (MPP) solution for "big data" with true enterprise class features. The SQL DW service is built for data warehouse workloads from a few hundred gigabytes to petabytes of data with truly unique features like disaggregated compute and storage allowing for customers to be able to utilize the service to match their needs. In this presentation, we take an in-depth look at implementing a SQL DW, elastic scale (grow, shrink, and pause), and hybrid data clouds with Hadoop integration via Polybase allowing for a true SQL experience across structured and unstructured data.
Azure Synapse Analytics is Azure SQL Data Warehouse evolved: a limitless analytics service, that brings together enterprise data warehousing and Big Data analytics into a single service. It gives you the freedom to query data on your terms, using either serverless on-demand or provisioned resources, at scale. Azure Synapse brings these two worlds together with a unified experience to ingest, prepare, manage, and serve data for immediate business intelligence and machine learning needs. This is a huge deck with lots of screenshots so you can see exactly how it works.
The cloud is all the rage. Does it live up to its hype? What are the benefits of the cloud? Join me as I discuss the reasons so many companies are moving to the cloud and demo how to get up and running with a VM (IaaS) and a database (PaaS) in Azure. See why the ability to scale easily, the quickness that you can create a VM, and the built-in redundancy are just some of the reasons that moving to the cloud a “no brainer”. And if you have an on-prem datacenter, learn how to get out of the air-conditioning business!
The Hive Think Tank - The Microsoft Big Data Stack by Raghu Ramakrishnan, CTO...The Hive
Until recently, data was gathered for well-defined objectives such as auditing, forensics, reporting and line-of-business operations; now, exploratory and predictive analysis is becoming ubiquitous, and the default increasingly is to capture and store any and all data, in anticipation of potential future strategic value. These differences in data heterogeneity, scale and usage are leading to a new generation of data management and analytic systems, where the emphasis is on supporting a wide range of very large datasets that are stored uniformly and analyzed seamlessly using whatever techniques are most appropriate, including traditional tools like SQL and BI and newer tools, e.g., for machine learning and stream analytics. These new systems are necessarily based on scale-out architectures for both storage and computation.
Hadoop has become a key building block in the new generation of scale-out systems. On the storage side, HDFS has provided a cost-effective and scalable substrate for storing large heterogeneous datasets. However, as key customer and systems touch points are instrumented to log data, and Internet of Things applications become common, data in the enterprise is growing at a staggering pace, and the need to leverage different storage tiers (ranging from tape to main memory) is posing new challenges, leading to caching technologies, such as Spark. On the analytics side, the emergence of resource managers such as YARN has opened the door for analytics tools to bypass the Map-Reduce layer and directly exploit shared system resources while computing close to data copies. This trend is especially significant for iterative computations such as graph analytics and machine learning, for which Map-Reduce is widely recognized to be a poor fit.
While Hadoop is widely recognized and used externally, Microsoft has long been at the forefront of Big Data analytics, with Cosmos and Scope supporting all internal customers. These internal services are a key part of our strategy going forward, and are enabling new state of the art external-facing services such as Azure Data Lake and more. I will examine these trends, and ground the talk by discussing the Microsoft Big Data stack.
First introduced with the Analytics Platform System (APS), PolyBase simplifies management and querying of both relational and non-relational data using T-SQL. It is now available in both Azure SQL Data Warehouse and SQL Server 2016. The major features of PolyBase include the ability to do ad-hoc queries on Hadoop data and the ability to import data from Hadoop and Azure blob storage to SQL Server for persistent storage. A major part of the presentation will be a demo on querying and creating data on HDFS (using Azure Blobs). Come see why PolyBase is the “glue” to creating federated data warehouse solutions where you can query data as it sits instead of having to move it all to one data platform.
Building a Data Hub that Empowers Customer Insight (Technical Workshop)Cloudera, Inc.
We have seen the evolution with the Bi and Data Science fields from the structured data warehouse to data lake and finally, to the data hub. This session will cover the key steps required to building a data hub, examining how best to align and engage stakeholders and develop architectural sanction to enable your organisations to realise new customer insights and better enable you to achieve business objectives.
Spark as a Service with Azure DatabricksLace Lofranco
Presented at: Global Azure Bootcamp (Melbourne)
Participants will get a deep dive into one of Azure’s newest offering: Azure Databricks, a fast, easy and collaborative Apache® Spark™ based analytics platform optimized for Azure. In this session, we will go through Azure Databricks key collaboration features, cluster management, and tight data integration with Azure data sources. We’ll also walk through an end-to-end Recommendation System Data Pipeline built using Spark on Azure Databricks.
--session donnée lors du SQL Saturday Lisbon 2015--
Data Management Gateway (and also AS Connector) is what make modern Microsoft BI stack hybrid. Power BI and Azure Data Factory use that component to interact with On-Prem Data assets.
That session is a Deep dive into the DMG and the hybrid architecture involved by Power BI and ADF. How does it work ? Security, Firewall, Certificates, Multiple gateways, Admin delegation, Scale out, Disaster Recovery…. All that topics will be covered during that technical session.
Business Intelligence is an extremely hot career. If you are a DBA or have another IT position, how can you transition to a BI role? James Serra will describe what exactly BI is, what encompasses the Microsoft BI stack, why it is so popular, and why a BI career pays so much. Then James will delve into the steps to take to become a BI expert and how he made the transition.
Big Data is the Buzz word in today's scenario & many current application & products wants to leverage it But there are a lot of challenges involved. The ppt talk about the challenges, big data platform & high level architecture to support it.
How to Build Multi-disciplinary Analytics Applications on a Shared Data PlatformCloudera, Inc.
Machine learning and analytics applications are exploding in the enterprise; driving use cases for preventative maintenance, delivering new desirable product offers to customers at the right time, and combating insider threats to your business.
But each of these high-value use cases rely on a variety of data analysis capabilities working in concert to combine data from different sources into a single coherent picture. Cloudera SDX delivers a “shared data experience” that makes applications easier to develop, less expensive to deploy and more consistently secure.
3 things to learn:
* Why multi-function applications are difficult to build and secure
* How shared catalog, governance, management, and security applied consistently everywhere can deliver a “shared data experience”
* How enterprise customers are building new, high-value applications with SDX
Multidisziplinäre Analyseanwendungen auf einer gemeinsamen Datenplattform ers...Cloudera, Inc.
Maschinelles Lernen und Analyseanwendungen explodieren im Unternehmen und ermöglichen Anwendungsfällen in Bereichen wie vorbeugende Wartung, Bereitstellung neuer, wünschenswerter Produktangebote für Kunden zum richtigen Zeitpunkt und Bekämpfung von Insider-Bedrohungen für Ihr Unternehmen.
Cloud-Native Machine Learning: Emerging Trends and the Road AheadDataWorks Summit
Big data platforms are being asked to support an ever increasing range of workloads and compute environments, including large-scale machine learning and public and private clouds. In this talk, we will discuss some emerging capabilities around cloud-native machine learning and data engineering, including running machine learning and Spark workloads directly on Kubernetes, and share our vision of the road ahead for ML and AI in the cloud.
Cloudera GoDataFest Deploying Cloudera in the CloudGoDataDriven
Cloud can offer flexibility and agility to your clusters. Learn more about how to deploy Cloudera in the cloud, the best practices for long-running clusters and transient clusters. And see how easy it is to spin up both kind of clusters in the cloud with Altus and Director.
Cloudera - The Modern Platform for AnalyticsCloudera, Inc.
This presentation provides an overview of Cloudera and how a modern platform for Machine Learning and Analytics better enables a data-driven enterprise.
Azure Days 2019: Business Intelligence auf Azure (Marco Amhof & Yves Mauron)Trivadis
In dieser Session stellen wir ein Projekt vor, in welchem wir ein umfassendes BI-System mit Hilfe von Azure Blob Storage, Azure SQL, Azure Logic Apps und Azure Analysis Services für und in der Azure Cloud aufgebaut haben. Wir berichten über die Herausforderungen, wie wir diese gelöst haben und welche Learnings und Best Practices wir mitgenommen haben.
It’s becoming clear that enterprises need more than one cloud. Hybrid enables enterprises to optimize how their business works – public cloud for elasticity and scale, multi-cloud for redundancy and choice, and on-premises for performance and privacy. Cloudera delivers a hybrid cloud solution that works where enterprises work, with the agility, security and governance enterprise IT needs, and the self-service analytics business people and enterprise data professionals demand. In this session, we will talk about how Cloudera helps deliver hybrid solutions for enterprises and will run a hands-on Cloudera PaaS demo to exhibit:
- Altus Environment Setup
- Configure Altus SDX
- Spin-up transient clusters with Altus
- Execute workload on Altus Data Engineering clusters
- Run interactive queries on object store with Altus Data Warehouse
- Job Analytics with Workload Experience Manager (WXM)
Speaker: Junaid Rao, Senior Cloud Sales Engineer, Cloudera
Hadoop and Spark are big data frameworks used to extract useful span a variety of scenarios from ingestion, data prep, data management, processing, analyzing and visualizing data. Each step requires specialized toolsets to be productive. In this talk I will share solution examples in the Big Data ecosystem such as Cask, StreamSets, Datameer, AtScale, Dataiku on Microsoft’s Azure HDInsight that simplify your Big Data solutions. Azure HDInsight is a cloud Spark and Hadoop service for the enterprise and take advantage of all the benefits of HDInsight giving you the best of both worlds. Join this session for practical information that will enable faster time to insights for you and your business.
The BlueData EPIC™ software platform solves the challenges that can slow down and stall Big Data initiatives. It makes deployment of Big Data infrastructure easier, faster, and more
cost-effective – eliminating complexity as a barrier to adoption.
A deep dive into running data analytic workloads in the cloudCloudera, Inc.
Aishwarya Venkataraman, Jason Wang, Mala Ramakrishnan, Stefan Salandy, and Vinithra Varadharajan lead a deep dive into running data analytic workloads in a managed service capacity in the public cloud and highlight cloud infrastructure best practices.
Differentiate Big Data vs Data Warehouse use cases for a cloud solutionJames Serra
It can be quite challenging keeping up with the frequent updates to the Microsoft products and understanding all their use cases and how all the products fit together. In this session we will differentiate the use cases for each of the Microsoft services, explaining and demonstrating what is good and what isn't, in order for you to position, design and deliver the proper adoption use cases for each with your customers. We will cover a wide range of products such as Databricks, SQL Data Warehouse, HDInsight, Azure Data Lake Analytics, Azure Data Lake Store, Blob storage, and AAS as well as high-level concepts such as when to use a data lake. We will also review the most common reference architectures (“patterns”) witnessed in customer adoption.
As Europe's leading economic powerhouse and the fourth-largest hashtag#economy globally, Germany stands at the forefront of innovation and industrial might. Renowned for its precision engineering and high-tech sectors, Germany's economic structure is heavily supported by a robust service industry, accounting for approximately 68% of its GDP. This economic clout and strategic geopolitical stance position Germany as a focal point in the global cyber threat landscape.
In the face of escalating global tensions, particularly those emanating from geopolitical disputes with nations like hashtag#Russia and hashtag#China, hashtag#Germany has witnessed a significant uptick in targeted cyber operations. Our analysis indicates a marked increase in hashtag#cyberattack sophistication aimed at critical infrastructure and key industrial sectors. These attacks range from ransomware campaigns to hashtag#AdvancedPersistentThreats (hashtag#APTs), threatening national security and business integrity.
🔑 Key findings include:
🔍 Increased frequency and complexity of cyber threats.
🔍 Escalation of state-sponsored and criminally motivated cyber operations.
🔍 Active dark web exchanges of malicious tools and tactics.
Our comprehensive report delves into these challenges, using a blend of open-source and proprietary data collection techniques. By monitoring activity on critical networks and analyzing attack patterns, our team provides a detailed overview of the threats facing German entities.
This report aims to equip stakeholders across public and private sectors with the knowledge to enhance their defensive strategies, reduce exposure to cyber risks, and reinforce Germany's resilience against cyber threats.
Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...John Andrews
SlideShare Description for "Chatty Kathy - UNC Bootcamp Final Project Presentation"
Title: Chatty Kathy: Enhancing Physical Activity Among Older Adults
Description:
Discover how Chatty Kathy, an innovative project developed at the UNC Bootcamp, aims to tackle the challenge of low physical activity among older adults. Our AI-driven solution uses peer interaction to boost and sustain exercise levels, significantly improving health outcomes. This presentation covers our problem statement, the rationale behind Chatty Kathy, synthetic data and persona creation, model performance metrics, a visual demonstration of the project, and potential future developments. Join us for an insightful Q&A session to explore the potential of this groundbreaking project.
Project Team: Jay Requarth, Jana Avery, John Andrews, Dr. Dick Davis II, Nee Buntoum, Nam Yeongjin & Mat Nicholas
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Empowering the Data Analytics Ecosystem: A Laser Focus on Value
The data analytics ecosystem thrives when every component functions at its peak, unlocking the true potential of data. Here's a laser focus on key areas for an empowered ecosystem:
1. Democratize Access, Not Data:
Granular Access Controls: Provide users with self-service tools tailored to their specific needs, preventing data overload and misuse.
Data Catalogs: Implement robust data catalogs for easy discovery and understanding of available data sources.
2. Foster Collaboration with Clear Roles:
Data Mesh Architecture: Break down data silos by creating a distributed data ownership model with clear ownership and responsibilities.
Collaborative Workspaces: Utilize interactive platforms where data scientists, analysts, and domain experts can work seamlessly together.
3. Leverage Advanced Analytics Strategically:
AI-powered Automation: Automate repetitive tasks like data cleaning and feature engineering, freeing up data talent for higher-level analysis.
Right-Tool Selection: Strategically choose the most effective advanced analytics techniques (e.g., AI, ML) based on specific business problems.
4. Prioritize Data Quality with Automation:
Automated Data Validation: Implement automated data quality checks to identify and rectify errors at the source, minimizing downstream issues.
Data Lineage Tracking: Track the flow of data throughout the ecosystem, ensuring transparency and facilitating root cause analysis for errors.
5. Cultivate a Data-Driven Mindset:
Metrics-Driven Performance Management: Align KPIs and performance metrics with data-driven insights to ensure actionable decision making.
Data Storytelling Workshops: Equip stakeholders with the skills to translate complex data findings into compelling narratives that drive action.
Benefits of a Precise Ecosystem:
Sharpened Focus: Precise access and clear roles ensure everyone works with the most relevant data, maximizing efficiency.
Actionable Insights: Strategic analytics and automated quality checks lead to more reliable and actionable data insights.
Continuous Improvement: Data-driven performance management fosters a culture of learning and continuous improvement.
Sustainable Growth: Empowered by data, organizations can make informed decisions to drive sustainable growth and innovation.
By focusing on these precise actions, organizations can create an empowered data analytics ecosystem that delivers real value by driving data-driven decisions and maximizing the return on their data investment.
1. DATA SHEET
One Platform. Many Applications.
DATA SCIENCE & ENGINEERING
Process, develop, and serve predictive
models
DATA WAREHOUSE
The modern data warehouse for today,
tomorrow, and beyond
OPERATIONAL DATABASE
Real-time insights for modern data-driven
business
Deploy and Run Anywhere
MULTI-CLOUD PROVISIONING
Deploy and manage Cloudera Enterprise
across AWS, Google Cloud Platform,
Microsoft Azure, and private networks
HIGH-PERFORMANCE ANALYTICS
Run your analytic tool of choice against
cloud-native object stores like Amazon S3
ELASTIC AND FLEXIBLE
Support transient clusters and grow and
shrink as needed, or permanent clusters
for long-running BI and operational jobs
AUTOMATED METERING AND BILLING
Spin up and terminate clusters, and only
pay for what you need, when you need it
Many of the world's largest companies rely on Cloudera's multi-function, multi-environment
platform to provide the foundation for their critical business value drivers - growing business,
connecting products and services, and protecting business. Find out what makes Cloudera
Enterprise di erent from other data platforms.
Enterprise grade
The scale and performance required for today’s modern data workloads meets the security and
governance demands of today’s IT. Cloudera’s modern platform makes it easy to bring more users
- thousands of them - to petabytes of diverse data and provides industry-leading engines to
process and query data, as well as develop and serve models quickly. The platform also provides
several layers of fine-grained security and complete audibility for companies to prevent
unauthorized data access and demonstrate accountability for actions taken.
Shared data experience
Eliminate costly and unnecessary application silos by bringing your data warehouse, data
science, data engineering, and operational database workloads together on a single, integrated
data platform. Cloudera SDX enables these diverse analytic processes to operate against a
shared data catalog that preserves business context like security and governance policies and
schema. This common services framework persists even in transient cloud environments and
makes it easier for IT to set and enforce policies while enabling business access to self-service
analytics.
Hybrid deployment
Work where and how it’s most convenient, a ordable, and e ective. Cloudera Enterprise can read
direct from and write direct to cloud object stores like Amazon S3 and Azure Data Lake (ADLS)
as well as on-premises storage environments, or HDFS and Kudu on IaaS. This provides flexibility
to work on the data that you want wherever it lives, with zero copies or moves. Cloudera also
provides the most popular data warehouse and machine learning engines that can run on any
compute resource for ultimate deployment flexibility. Our hybrid control means users can self-
service via PaaS o ering, or opt for more configurability and management via IaaS, private cloud,
or on-premises.
Powerful open source
Cloudera develops and validates the best of open source innovations into one seamless, rock-
solid platform. Key features include:
One Platform. Many Uses. Designed for Your Needs.
Cloudera Enterprise is available on a subscription basis in five editions, each designed for your
specific needs. Essentials provides superior support and advanced management for core Apache
Hadoop. We also o er editions designed around how you’re using the platform: Data Science and
Engineering for programmatic preparation and predictive modeling; Operational DB for online
CLOUDERA ENTERPRISE
Cloudera Enterprise is the modern platform for machine learning and
analytics optimized for the cloud.
In-Memory Data Processing: The longest and deepest experience with Apache Spark_
Fast Analytic SQL: The lowest latency and best concurrency for BI with Apache Impala_
Updatable Analytic Storage: The only storage for fast analytics on fast changing data with
Apache Kudu
_
Open Source Leadership: Constant open source development and curation, with the most
rigorous testing, for trusted innovation
_