Η παρουσίαση Master the art of Data Science πραγματοποιήθηκε από τον Παντελή Ξανθούλη, Analytics Software Sales | IBM, στην εκδήλωση της εταιρίας μας, InTech – Accelerate your AI journey.
The document discusses IBM's AI tools and capabilities. It summarizes IBM's suite of AI products including Watson Studio, Watson Machine Learning, Watson OpenScale, and the Watson Knowledge Catalog which help with data preparation, building and training models, deploying and managing models, and ensuring trusted AI. It also discusses IBM's strategy around automating the AI lifecycle through capabilities like transfer learning, neural network search, and AutoAI experiments.
Auto AI : AI used to create AI applicationsKaran Sachdeva
Building AI applications is a very complex process involving steps and workflows which are becoming more complex every other day. Its a circle since the AI application is nothing but a feedback loop between various steps involving data. Consider the below picture a data scientist or ML engineer has to work through. Now my mission as an evangelist of the AI technology who sees a lot of promise in this technology would like to make it simple so we can empower more professionals in the business to become what we call "citizen data scientists". A citizen data scientist is a business person empowered so well that he can combine his domain knowledge with tools an expert data scientist uses in a simplified way. We have seen this impacting customer experience in 5x and revenue increase in the range of 15-20%.
The document discusses how data is a strategic asset for organizations and how moving data to the cloud can unlock innovation and accelerate change. It emphasizes that businesses need a data strategy to ensure data is managed and used as an asset. This involves defining requirements for data quality, quantity, and sources. Migrating data to the cloud allows businesses to realize benefits like cost savings, build analytics capabilities, and gain new insights from data lakes, IoT, and machine learning. Case studies provide examples of how companies have benefited from improved data strategies and analytics.
The document discusses the importance of data and analytics for organizations. It notes that data is now the world's most valuable resource, not oil. It provides examples of how organizations are using AWS services like data lakes, machine learning, and data migration to unlock innovation from their data and gain strategic business advantages.
Advanced Analytics and Artificial Intelligence - Transforming Your Business T...David J Rosenthal
Recent advances in AI have incredible potential and they are already fundamentally changing our lives in ways we couldn’t have imagined even five years ago. And yet, AI is also probably one of the least understood technological breakthroughs in modern times. Come to this event to learn about breakthrough advances in AI and the power of the cloud, and how Microsoft provides a flexible platform for you to infuse intelligence into your own products and services. Microsoft empowers you to transform your business, uniquely combining AI innovation with a proven Enterprise platform, deriving intelligence from a wide range of data relevant to your business no matter where it lives.
This document outlines a cloud migration plan with the following sections: executive summary, scope, cloud migration prerequisites, considerations, planning assessment tools, application discovery services, evaluation of discovered data, migration recommendations, and conclusion. The scope section defines cloud-ready applications as IaaS, SaaS, and PaaS and identifies the cloud provider as AWS. The document assesses growth projections, service level agreements, data security, vendor governance strategy, and the business and technical impact of cloud migration. It aims to develop a comprehensive cloud adoption policy and migration strategy.
엔터프라이즈의 AI/ML 활용을 돕는 Paxata 지능형 데이터 전처리 플랫폼 (최문규 이사, PAXATA) :: AWS Techforum...Amazon Web Services Korea
This document discusses Paxata, an intelligent data preparation platform. It summarizes Paxata's history and products, and describes common data challenges that enterprises face. These include spending significant resources on manual data preparation in Excel, which can introduce errors and limit agility. The document then outlines how Paxata addresses these challenges through its self-service, visual, intelligent and collaborative data preparation capabilities. It provides examples of Paxata's use in machine learning pipelines and integration with AWS services. Customer use cases and industry analyst recognition of Paxata as a leader are also mentioned.
SeattleUniv-IntroductionToCloudComputing-WinsowsAzure101Mithun T. Dhar
The document discusses cloud computing and Microsoft Azure. It provides an overview of Azure including its data centers, virtual machines, storage options like blobs and tables, services like App Fabric, and the Fabric Controller which manages virtual instances and load balancing. It also discusses the different roles in Azure like Web Roles and Worker Roles and platforms offered, such as Infrastructure as a Service, Platform as a Service and Software as a Service.
Watson Analytics is a cloud-based analytics tool from IBM that leverages Watson technology to accelerate data discovery for business users. It provides semantic recognition of data concepts, identifies analysis starting points, and allows natural language interaction. The tool automates tasks like data preparation, generates insights and visualizations, and enables predictive analytics. It aims to make analytics more self-service, collaborative, and accessible to non-experts.
With the rapid growth in data and move towards data commercialisation there are multiple aspects to focus on and prioritize the steps being taken across an enterprise. Enterprises face many challenges when it comes to truly becoming a data driven organization and realize the full potential of data. Some of those challenges include data availability, capacity to process, store and analyze this data, sharing the models and data artefacts across different teams etc. Most of these challenges could be handled through a platform which is Cloud based, scalable, and offers different capabilities for Governance, security, reusability and their likes. In this talk, I will talk about how IBM Cloud Pak serves as a framework for implementing your AI Strategy and how it could be used to build different artefacts while adhering to above listed requirements and being future ready. We will further illustrate how Cloud Pak for Data fastens and shortens the route to data commercialisation?
The document provides recommendations for a big data platform and architecture. It discusses why big data is important, how big data works involving collecting, storing, processing and analyzing data, and then consuming and visualizing insights. It considers whether to use cloud or on-premise solutions. Among cloud providers, it analyzes Google Cloud Platform, AWS, Microsoft Azure and Cloudera Cloud. It ultimately recommends Google Cloud Platform based on tools and support, platform expertise, performance, integration and flexibility. The document then outlines example big data architectures on GCP including a basic data lake workflow, real-time self-reporting dashboard, machine learning integration and data warehouse transition. It also discusses running GCP with existing on-premise systems and understanding
Customer Engagement Reimagined - AI and ML SolutionSagittarius
The document is an agenda for a Travolution event featuring presentations from Microsoft, Sitecore, and Sagittarius on data, AI, and digital transformation in travel and hospitality. It includes:
1) A schedule of presentations and times from 9:30am to 12:20pm including introductions, presentations from Microsoft on data and AI, Sitecore, and Sagittarius, followed by a Q&A and closing lunch.
2) An overview of Microsoft's presentation on how data is important for AI and examples of how AI is creating opportunities in travel including increased revenue and productivity.
3) Case studies of how companies are using Microsoft AI including predictive maintenance on ships to optimize water usage, saving $
Integra: Get Your Head in the Cloud (Infographic)Jessica Legg
Concepted, copywrote and creative directed the development of a cloud themed infographic as part of a larger campaign for Integra.
Summary: Picture a network of over 50M servers running at 200,000x the speed of a home Internet connection. The cloud lets you virtualize Infrastructure, Platforms, Software, etc., reducing costs, improving efficiencies, and increasing agility. Read Integra's infographic, "Get Your Head Into the Cloud," to learn why you should look to the skies.
RightScale Webinar: November 10, 2009 – In this webinar, we showed practical information about cloud computing and demonstrated a new approach to business intelligence. No longer are dedicated hardware and software required to meet ad hoc or unpredictable BI requirements. Watch the video at http://vimeo.com/rightscale/business-intelligence-in-the-cloud.
You are not Facebook or Google? Why you should still care about Big Data and ...Kai Wähner
Big data represents a significant paradigm shift in enterprise technology. Big data radically changes the nature of the data management profession as it introduces new concerns about the volume, velocity and variety of corporate data.
This session goes beyond the well-known examples of huge companies such as Facebook or Google with millions of users. Instead, this session explains the "big" paradigm and technology shift for your company. See several use cases how big data enables small / medium-sized companies to gain insight into new business opportunities (and threats) and how big data stands to transform much of what the modern enterprise is today.
Learn about solving the unique challenges of big data without an own research lab or several big data experts in your company. Learn how to implement the relevant use cases for your company with low costs and efforts by using open source frameworks, which simplify working with big data a lot.
IBM Cloud Pak for Data Improves Cataloging Technologies for EnterpriseTimothy Valihora
Timothy Valihora is an Ottawa IT consultant who coordinates with IBM on developing next generation data solutions. Among the areas in which Timothy Valihora has extensive knowledge is IBM Cloud Pak for Data, an enterprise platform that was expanded in 2020 to include new data cataloging technologies.
The synergy provided by this solution is that it combines containerized software metadata repositories with new ways of simplifying and unifying elements that enable seamless collection and organization of data. This is critical in situations where business continuity efforts are at the forefront and massive volumes of data from various sources are challenging to aggregate and analyze, in ways that generate fast, actionable insights.
This document brings together a set
of latest data points and publicly
available information relevant for
Hybrid Cloud Infrastructure
Industry. We are very excited to share
this content and believe that readers
will benefit from this periodic
publication immensely.
Your Cloud Strategy: Evolution or RevolutionSirius
Digital Transformation is the new black in IT.
Every business needs IT to be faster, cheaper and more flexible. Traditional IT cannot adapt to the new rules in many markets. In an increasingly disruptive competitive environment, digital transformation through cloud looms as an inevitability.
You need a cloud strategy, however, many organizations struggle with the “what, why, where and how.” You must honestly and thoroughly assess your current state and your future needs, with very clearly defined expected business outcomes. A plan is key; it can be very difficult to get to a new destination without map or a GPS.
Can you methodically evolve and optimize your IT, or is a revolution required now to save your business from getting left behind? View to learn:
--Key questions to ask yourself to understand if you need an IT evolution or revolution.
--Use cases that can drive the pace and scope of your digital transformation.
--What evolution and revolution look like in practice.
--How this approach sets you up to create the right cloud strategy for your business.
This document discusses how advanced analytics and AI capabilities like machine learning can be applied across many industries and use cases to drive faster innovation, improve outcomes, and increase revenue. Specific applications mentioned include customer analytics, risk management, predictive maintenance, supply chain optimization, cybersecurity threat prevention, and more. A variety of data types from different sources can be analyzed to generate insights, recommendations and predictions.
Is Your Data Paying You Dividends? Data innovation is a means to an end where data as an asset can be managed, developed, monetized, and eventually expected to pay dividends to the business.While 70% of CEOs surveyed expect investments in data, analytics, ML and AI initiatives to improve their bottom-line, 56% stated concerns over the integrity of their data1. Data science teams are now tasked to deliver true business value but fundamental issues remain in data preparation, data cleansing which impedes speed to market.Join Karan Sachdeva as he demonstrates capabilities of the all-new IBM Cloud Private for Data –a single containerized platform - that bridges the gap between data consumability, governance, integration, and visualization, accelerating speed to market and dividends to your business.by Karan Sachdeva, Sales Leader Big Data Analytics, IBM Asia Pacific
Every business is looking for a game-changer in data science, machine learning, and AI. Most organizations are also looking for ways to tap into open-source and commercial data science tools such as Python, RStudio, Apache Spark, Jupyter, and Zeppelin notebooks, to accelerate predictive and machine learning model building and deployment while leveraging the scale, security and governance of the Hortonworks Data Platform and other commercial platforms.
Ana Maria Echeverri will demonstrate how to accelerate data science, machine learning, and deep learning workflows by using IBM Watson Studio, an integrated environment for data scientists, application developers, and subject matter experts. This suite of tools allows to collaboratively connect to data, wrangle that data and use it to build, train and deploy models at scale while using Open Source skills (i.e.: Python) and expanding into cognitive capabilities through access to Watson APIs to build AI-powered applications. If you love Python and want to tap into the power of IBM Watson, this is the session for you.
Unlock Data-driven Insights in Databricks Using Location IntelligencePrecisely
Today’s data-driven organisations are turning to Databricks for a cloud-based, open, unified platform for data and AI. Yet many companies struggle to unlock the value of the data they have in Databricks. To capitalise on the promise of a competitive edge through increased efficiency and insight, data scientists are turning to location to make sense of massive volumes of business data.
Watch this on-demand to hear from The Spatial Distillery Co. and Databricks on how to leverage advanced location intelligence and enrichment solutions in Databricks to:
- Simplify the complexity of location data and transform it into valuable insights
- Enrich data with thousands of attributes for better, more accurate analytics, AI, and ML models
- Leverage the power of Databricks to integrate geospatial data into business processes for real-time answers
- Create more meaningful and timely customer interactions by streamlining customer-facing and operational tasks
This document provides information about IBM's cloud services including Watson Assistant, IBM Cloud Paks for Automation, IBM Watson IOT Platform, and IBM Cloud SQL Query. It describes the key features and benefits of each service, how they can be used to automate processes, gain insights from IoT data, and analyze data through querying. It also provides examples of how Bradesco Bank leveraged Watson Assistant to improve customer experience and reduce wait times.
This document discusses strategies for effective data monetization. It outlines challenges in data monetization like the increasing volume of data and the need for AI. It presents a data monetization maturity model and describes the top 5 best practices for successful data monetization as: getting the foundation right by infusing AI/data science; focusing on people like data engineers and scientists; constructing a robust business model; and ensuring trust and ethics. The document recommends using case generation and prioritization and provides industry examples. It promotes IBM Cloud Private for Data as an integrated analytics platform to overcome challenges and realize the benefits of data monetization.
PwC provides artificial intelligence capabilities across various industries including healthcare, financial services, and consumer markets. PwC's AI strategy involves cross-functional teams that include data scientists, domain experts, and specialized AI skills. PwC has developed numerous AI solutions including predictive maintenance models that reduced airline delays by 15% and costs by 25%, and natural language processing that improved diagnostic accuracy in healthcare by 96% and cost savings by 35-45%. PwC's innovation lab allows clients to explore AI use cases, brainstorm ideas, and witness AI solutions through an immersive experience.
Accelerate Self-Service Analytics with Data Virtualization and VisualizationDenodo
Watch full webinar here: https://bit.ly/3fpitC3
Enterprise organizations are shifting to self-service analytics as business users need real-time access to holistic and consistent views of data regardless of its location, source or type for arriving at critical decisions.
Data Virtualization and Data Visualization work together through a universal semantic layer. Learn how they enable self-service data discovery and improve performance of your reports and dashboards.
In this session, you will learn:
- Challenges faced by business users
- How data virtualization enables self-service analytics
- Use case and lessons from customer success
- Overview of the highlight features in Tableau
Data Engineering Proposal for Homerunner.pptxDamilolaLana1
The document proposes a data engineering solution called ManhattanDB to help Homerunner address challenges around integrating data from multiple sources, talent shortage, and limited productivity. ManhattanDB is a no-code platform that allows users to build data pipelines to ingest, transform, and analyze data. It promises to democratize access to data science and machine learning by unifying data engineering processes. Current clients are using ManhattanDB to build end-to-end data workflows for tasks like customer segmentation, transaction monitoring, and medical data transformation.
Azure IoT - A Practical Entry to New RetailDaniel Li
The document discusses how retailers can use Microsoft Azure and Azure IoT technologies like IoT Edge, IoT Central, machine learning, and Dynamics 365 to transform their business through connecting devices, analyzing data, gaining insights, and delivering personalized customer experiences across channels from edge to cloud. It provides an overview of the Azure IoT reference architecture and key Azure IoT technologies and services that retailers can leverage, and suggests next steps for developers and decision makers to explore these solutions.
Analytics in a Day Ft. Synapse Virtual WorkshopCCG
Say goodbye to data silos! Analytics in a Day will simplify and accelerate your journey towards the modern data warehouse. Join CCG and Microsoft for a half-day virtual workshop, hosted by James McAuliffe.
Watson Analytics is a cloud-based analytics tool from IBM that leverages Watson technology to accelerate data discovery for business users. It provides semantic recognition of data concepts, identifies analysis starting points, and allows natural language interaction. The tool automates tasks like data preparation, generates insights and visualizations, and enables predictive analytics. It aims to make analytics more self-service, collaborative, and accessible to non-experts.
With the rapid growth in data and move towards data commercialisation there are multiple aspects to focus on and prioritize the steps being taken across an enterprise. Enterprises face many challenges when it comes to truly becoming a data driven organization and realize the full potential of data. Some of those challenges include data availability, capacity to process, store and analyze this data, sharing the models and data artefacts across different teams etc. Most of these challenges could be handled through a platform which is Cloud based, scalable, and offers different capabilities for Governance, security, reusability and their likes. In this talk, I will talk about how IBM Cloud Pak serves as a framework for implementing your AI Strategy and how it could be used to build different artefacts while adhering to above listed requirements and being future ready. We will further illustrate how Cloud Pak for Data fastens and shortens the route to data commercialisation?
The document provides recommendations for a big data platform and architecture. It discusses why big data is important, how big data works involving collecting, storing, processing and analyzing data, and then consuming and visualizing insights. It considers whether to use cloud or on-premise solutions. Among cloud providers, it analyzes Google Cloud Platform, AWS, Microsoft Azure and Cloudera Cloud. It ultimately recommends Google Cloud Platform based on tools and support, platform expertise, performance, integration and flexibility. The document then outlines example big data architectures on GCP including a basic data lake workflow, real-time self-reporting dashboard, machine learning integration and data warehouse transition. It also discusses running GCP with existing on-premise systems and understanding
Customer Engagement Reimagined - AI and ML SolutionSagittarius
The document is an agenda for a Travolution event featuring presentations from Microsoft, Sitecore, and Sagittarius on data, AI, and digital transformation in travel and hospitality. It includes:
1) A schedule of presentations and times from 9:30am to 12:20pm including introductions, presentations from Microsoft on data and AI, Sitecore, and Sagittarius, followed by a Q&A and closing lunch.
2) An overview of Microsoft's presentation on how data is important for AI and examples of how AI is creating opportunities in travel including increased revenue and productivity.
3) Case studies of how companies are using Microsoft AI including predictive maintenance on ships to optimize water usage, saving $
Integra: Get Your Head in the Cloud (Infographic)Jessica Legg
Concepted, copywrote and creative directed the development of a cloud themed infographic as part of a larger campaign for Integra.
Summary: Picture a network of over 50M servers running at 200,000x the speed of a home Internet connection. The cloud lets you virtualize Infrastructure, Platforms, Software, etc., reducing costs, improving efficiencies, and increasing agility. Read Integra's infographic, "Get Your Head Into the Cloud," to learn why you should look to the skies.
RightScale Webinar: November 10, 2009 – In this webinar, we showed practical information about cloud computing and demonstrated a new approach to business intelligence. No longer are dedicated hardware and software required to meet ad hoc or unpredictable BI requirements. Watch the video at http://vimeo.com/rightscale/business-intelligence-in-the-cloud.
You are not Facebook or Google? Why you should still care about Big Data and ...Kai Wähner
Big data represents a significant paradigm shift in enterprise technology. Big data radically changes the nature of the data management profession as it introduces new concerns about the volume, velocity and variety of corporate data.
This session goes beyond the well-known examples of huge companies such as Facebook or Google with millions of users. Instead, this session explains the "big" paradigm and technology shift for your company. See several use cases how big data enables small / medium-sized companies to gain insight into new business opportunities (and threats) and how big data stands to transform much of what the modern enterprise is today.
Learn about solving the unique challenges of big data without an own research lab or several big data experts in your company. Learn how to implement the relevant use cases for your company with low costs and efforts by using open source frameworks, which simplify working with big data a lot.
IBM Cloud Pak for Data Improves Cataloging Technologies for EnterpriseTimothy Valihora
Timothy Valihora is an Ottawa IT consultant who coordinates with IBM on developing next generation data solutions. Among the areas in which Timothy Valihora has extensive knowledge is IBM Cloud Pak for Data, an enterprise platform that was expanded in 2020 to include new data cataloging technologies.
The synergy provided by this solution is that it combines containerized software metadata repositories with new ways of simplifying and unifying elements that enable seamless collection and organization of data. This is critical in situations where business continuity efforts are at the forefront and massive volumes of data from various sources are challenging to aggregate and analyze, in ways that generate fast, actionable insights.
This document brings together a set
of latest data points and publicly
available information relevant for
Hybrid Cloud Infrastructure
Industry. We are very excited to share
this content and believe that readers
will benefit from this periodic
publication immensely.
Your Cloud Strategy: Evolution or RevolutionSirius
Digital Transformation is the new black in IT.
Every business needs IT to be faster, cheaper and more flexible. Traditional IT cannot adapt to the new rules in many markets. In an increasingly disruptive competitive environment, digital transformation through cloud looms as an inevitability.
You need a cloud strategy, however, many organizations struggle with the “what, why, where and how.” You must honestly and thoroughly assess your current state and your future needs, with very clearly defined expected business outcomes. A plan is key; it can be very difficult to get to a new destination without map or a GPS.
Can you methodically evolve and optimize your IT, or is a revolution required now to save your business from getting left behind? View to learn:
--Key questions to ask yourself to understand if you need an IT evolution or revolution.
--Use cases that can drive the pace and scope of your digital transformation.
--What evolution and revolution look like in practice.
--How this approach sets you up to create the right cloud strategy for your business.
This document discusses how advanced analytics and AI capabilities like machine learning can be applied across many industries and use cases to drive faster innovation, improve outcomes, and increase revenue. Specific applications mentioned include customer analytics, risk management, predictive maintenance, supply chain optimization, cybersecurity threat prevention, and more. A variety of data types from different sources can be analyzed to generate insights, recommendations and predictions.
Is Your Data Paying You Dividends? Data innovation is a means to an end where data as an asset can be managed, developed, monetized, and eventually expected to pay dividends to the business.While 70% of CEOs surveyed expect investments in data, analytics, ML and AI initiatives to improve their bottom-line, 56% stated concerns over the integrity of their data1. Data science teams are now tasked to deliver true business value but fundamental issues remain in data preparation, data cleansing which impedes speed to market.Join Karan Sachdeva as he demonstrates capabilities of the all-new IBM Cloud Private for Data –a single containerized platform - that bridges the gap between data consumability, governance, integration, and visualization, accelerating speed to market and dividends to your business.by Karan Sachdeva, Sales Leader Big Data Analytics, IBM Asia Pacific
Every business is looking for a game-changer in data science, machine learning, and AI. Most organizations are also looking for ways to tap into open-source and commercial data science tools such as Python, RStudio, Apache Spark, Jupyter, and Zeppelin notebooks, to accelerate predictive and machine learning model building and deployment while leveraging the scale, security and governance of the Hortonworks Data Platform and other commercial platforms.
Ana Maria Echeverri will demonstrate how to accelerate data science, machine learning, and deep learning workflows by using IBM Watson Studio, an integrated environment for data scientists, application developers, and subject matter experts. This suite of tools allows to collaboratively connect to data, wrangle that data and use it to build, train and deploy models at scale while using Open Source skills (i.e.: Python) and expanding into cognitive capabilities through access to Watson APIs to build AI-powered applications. If you love Python and want to tap into the power of IBM Watson, this is the session for you.
Unlock Data-driven Insights in Databricks Using Location IntelligencePrecisely
Today’s data-driven organisations are turning to Databricks for a cloud-based, open, unified platform for data and AI. Yet many companies struggle to unlock the value of the data they have in Databricks. To capitalise on the promise of a competitive edge through increased efficiency and insight, data scientists are turning to location to make sense of massive volumes of business data.
Watch this on-demand to hear from The Spatial Distillery Co. and Databricks on how to leverage advanced location intelligence and enrichment solutions in Databricks to:
- Simplify the complexity of location data and transform it into valuable insights
- Enrich data with thousands of attributes for better, more accurate analytics, AI, and ML models
- Leverage the power of Databricks to integrate geospatial data into business processes for real-time answers
- Create more meaningful and timely customer interactions by streamlining customer-facing and operational tasks
This document provides information about IBM's cloud services including Watson Assistant, IBM Cloud Paks for Automation, IBM Watson IOT Platform, and IBM Cloud SQL Query. It describes the key features and benefits of each service, how they can be used to automate processes, gain insights from IoT data, and analyze data through querying. It also provides examples of how Bradesco Bank leveraged Watson Assistant to improve customer experience and reduce wait times.
This document discusses strategies for effective data monetization. It outlines challenges in data monetization like the increasing volume of data and the need for AI. It presents a data monetization maturity model and describes the top 5 best practices for successful data monetization as: getting the foundation right by infusing AI/data science; focusing on people like data engineers and scientists; constructing a robust business model; and ensuring trust and ethics. The document recommends using case generation and prioritization and provides industry examples. It promotes IBM Cloud Private for Data as an integrated analytics platform to overcome challenges and realize the benefits of data monetization.
PwC provides artificial intelligence capabilities across various industries including healthcare, financial services, and consumer markets. PwC's AI strategy involves cross-functional teams that include data scientists, domain experts, and specialized AI skills. PwC has developed numerous AI solutions including predictive maintenance models that reduced airline delays by 15% and costs by 25%, and natural language processing that improved diagnostic accuracy in healthcare by 96% and cost savings by 35-45%. PwC's innovation lab allows clients to explore AI use cases, brainstorm ideas, and witness AI solutions through an immersive experience.
Accelerate Self-Service Analytics with Data Virtualization and VisualizationDenodo
Watch full webinar here: https://bit.ly/3fpitC3
Enterprise organizations are shifting to self-service analytics as business users need real-time access to holistic and consistent views of data regardless of its location, source or type for arriving at critical decisions.
Data Virtualization and Data Visualization work together through a universal semantic layer. Learn how they enable self-service data discovery and improve performance of your reports and dashboards.
In this session, you will learn:
- Challenges faced by business users
- How data virtualization enables self-service analytics
- Use case and lessons from customer success
- Overview of the highlight features in Tableau
Data Engineering Proposal for Homerunner.pptxDamilolaLana1
The document proposes a data engineering solution called ManhattanDB to help Homerunner address challenges around integrating data from multiple sources, talent shortage, and limited productivity. ManhattanDB is a no-code platform that allows users to build data pipelines to ingest, transform, and analyze data. It promises to democratize access to data science and machine learning by unifying data engineering processes. Current clients are using ManhattanDB to build end-to-end data workflows for tasks like customer segmentation, transaction monitoring, and medical data transformation.
Azure IoT - A Practical Entry to New RetailDaniel Li
The document discusses how retailers can use Microsoft Azure and Azure IoT technologies like IoT Edge, IoT Central, machine learning, and Dynamics 365 to transform their business through connecting devices, analyzing data, gaining insights, and delivering personalized customer experiences across channels from edge to cloud. It provides an overview of the Azure IoT reference architecture and key Azure IoT technologies and services that retailers can leverage, and suggests next steps for developers and decision makers to explore these solutions.
Analytics in a Day Ft. Synapse Virtual WorkshopCCG
Say goodbye to data silos! Analytics in a Day will simplify and accelerate your journey towards the modern data warehouse. Join CCG and Microsoft for a half-day virtual workshop, hosted by James McAuliffe.
Enable Better Decision Making with Power BI Visualizations & Modern Data EstateCCG
Self-service BI empowers users to reach analytic outputs through data visualizations and reporting tools. Solution Architect and Cloud Solution Specialist, James McAuliffe, will be taking you through a journey of Azure's Modern Data Estate.
Customer Presentation - IBM Cloud Pak for Data Overview (Level 100).PPTXtsigitnist02
This document provides instructions for using a presentation deck on Cloud Pak for Data. It instructs the user to:
1. Delete the first slide before using the deck.
2. Customize the presentation for the intended audience as the deck covers various topics and using all slides may not fit a single meeting.
3. The deck contains 6 embedded video records for a demo that takes 15-25 minutes to present. Guidance on pitching the demo is available.
The appendix contains slides on Cloud Pak for Data licensing and IBM's overall strategy.
IBM Cloud Pak for Data is a unified platform that simplifies data collection, organization, and analysis through an integrated cloud-native architecture. It allows enterprises to turn data into insights by unifying various data sources and providing a catalog of microservices for additional functionality. The platform addresses challenges organizations face in leveraging data due to legacy systems, regulatory constraints, and time spent preparing data. It provides a single interface for data teams to collaborate and access over 45 integrated services to more efficiently gain insights from data.
Keynote presentation from IBM Solutions Connect 2013 covering topics such as changing business world today and how technologies can help organisations cope with this change and move forward.
Arocom is a consulting and solution engineering company with expertise in providing engineering services for AI & Machine Learning, Data Operations & Analytics, MLOps and Cloud Computing.
Our clients include companies within biotech, drug discovery, therapeutics, manufacturing, retail and startups. Our consultants are best in their skills and offer hands-on talent to our clients in achieving their goals.
Unlock Innovation with AWS Generative AI: Transform Your Business with Scalab...Akhil Khandelwal
Unlock Innovation with AWS Generative AI: Transform Your Business with Scalable, AI-Driven Solutions for Enhanced Customer Engagement, Improved Decision-Making, and Operational Efficiency. Empower Your Organization with Cutting-Edge Generative AI Tools on the Secure, Reliable AWS Cloud Platform."
IBM Governed data lake is a value-driven big data platform journey. The journey starts by ingesting wide variety of data, governing it, applying data science and machine learning on it to produce actionable insights.
IBM i & digital transformation - Presentation & basic demo
IBM Watson Studio, IBM DSX Local w/ Open Source (Spark) & IBM Technology (OpenPower, CAPI, NVLINK)
How IBM is Creating a Foundation for Cloud InnovationCCG
IBM is making waves in the Cloud Innovation. At our Data Analytics Meetup, Tom Ericsson, explores the transformation that IBM has taken with its recent announcement of moving from Bluemix to Cloud.
This document provides a marketing snapshot and overview for 2019. It outlines the marketing pillars of content, events, and social media for IBM technology expertise, including hardware, software, DevOps, cloud platforms, and storage systems. Specific content like brochures, events on RPA, POWER, Quantum, and Watson are mentioned. The marketing also targeted activities for Microsoft technology expertise, such as event invitations, videos, and presence at a Microsoft summit event.
InTech Event | Red Hat OpenShift Container PlatformInTTrust S.A.
This document discusses containers and Kubernetes as well as Red Hat OpenShift. It asks what is in a container and what Kubernetes is before explaining what OpenShift is and why Red Hat OpenShift is useful, particularly on IBM Power systems. The document concludes by thanking the reader.
InTech Event | Cognitive Infrastructure for Enterprise AIInTTrust S.A.
The document introduces the IBM Power Systems AC922 system as a cognitive infrastructure for enterprise AI. Some key points:
- Existing server infrastructures are not well-suited for modern AI workloads and large-scale cognitive data volumes.
- The AC922 is designed specifically for AI with accelerated computing capabilities like GPUs and fast interconnects to enable faster model training, larger models, and quicker time to value from AI projects.
- Features include the POWER9 processor, high-bandwidth NVLink connections between CPUs and multiple GPUs, support for large memory and accelerated databases/frameworks, and scaling to warehouse-sized deployments through distributed deep learning.
Dev Dives: Automate and orchestrate your processes with UiPath MaestroUiPathCommunity
This session is designed to equip developers with the skills needed to build mission-critical, end-to-end processes that seamlessly orchestrate agents, people, and robots.
📕 Here's what you can expect:
- Modeling: Build end-to-end processes using BPMN.
- Implementing: Integrate agentic tasks, RPA, APIs, and advanced decisioning into processes.
- Operating: Control process instances with rewind, replay, pause, and stop functions.
- Monitoring: Use dashboards and embedded analytics for real-time insights into process instances.
This webinar is a must-attend for developers looking to enhance their agentic automation skills and orchestrate robust, mission-critical processes.
👨🏫 Speaker:
Andrei Vintila, Principal Product Manager @UiPath
This session streamed live on April 29, 2025, 16:00 CET.
Check out all our upcoming Dev Dives sessions at https://community.uipath.com/dev-dives-automation-developer-2025/.
Semantic Cultivators : The Critical Future Role to Enable AIartmondano
By 2026, AI agents will consume 10x more enterprise data than humans, but with none of the contextual understanding that prevents catastrophic misinterpretations.
AI Changes Everything – Talk at Cardiff Metropolitan University, 29th April 2...Alan Dix
Talk at the final event of Data Fusion Dynamics: A Collaborative UK-Saudi Initiative in Cybersecurity and Artificial Intelligence funded by the British Council UK-Saudi Challenge Fund 2024, Cardiff Metropolitan University, 29th April 2025
https://alandix.com/academic/talks/CMet2025-AI-Changes-Everything/
Is AI just another technology, or does it fundamentally change the way we live and think?
Every technology has a direct impact with micro-ethical consequences, some good, some bad. However more profound are the ways in which some technologies reshape the very fabric of society with macro-ethical impacts. The invention of the stirrup revolutionised mounted combat, but as a side effect gave rise to the feudal system, which still shapes politics today. The internal combustion engine offers personal freedom and creates pollution, but has also transformed the nature of urban planning and international trade. When we look at AI the micro-ethical issues, such as bias, are most obvious, but the macro-ethical challenges may be greater.
At a micro-ethical level AI has the potential to deepen social, ethnic and gender bias, issues I have warned about since the early 1990s! It is also being used increasingly on the battlefield. However, it also offers amazing opportunities in health and educations, as the recent Nobel prizes for the developers of AlphaFold illustrate. More radically, the need to encode ethics acts as a mirror to surface essential ethical problems and conflicts.
At the macro-ethical level, by the early 2000s digital technology had already begun to undermine sovereignty (e.g. gambling), market economics (through network effects and emergent monopolies), and the very meaning of money. Modern AI is the child of big data, big computation and ultimately big business, intensifying the inherent tendency of digital technology to concentrate power. AI is already unravelling the fundamentals of the social, political and economic world around us, but this is a world that needs radical reimagining to overcome the global environmental and human challenges that confront us. Our challenge is whether to let the threads fall as they may, or to use them to weave a better future.
DevOpsDays Atlanta 2025 - Building 10x Development Organizations.pptxJustin Reock
Building 10x Organizations with Modern Productivity Metrics
10x developers may be a myth, but 10x organizations are very real, as proven by the influential study performed in the 1980s, ‘The Coding War Games.’
Right now, here in early 2025, we seem to be experiencing YAPP (Yet Another Productivity Philosophy), and that philosophy is converging on developer experience. It seems that with every new method we invent for the delivery of products, whether physical or virtual, we reinvent productivity philosophies to go alongside them.
But which of these approaches actually work? DORA? SPACE? DevEx? What should we invest in and create urgency behind today, so that we don’t find ourselves having the same discussion again in a decade?
Massive Power Outage Hits Spain, Portugal, and France: Causes, Impact, and On...Aqusag Technologies
In late April 2025, a significant portion of Europe, particularly Spain, Portugal, and parts of southern France, experienced widespread, rolling power outages that continue to affect millions of residents, businesses, and infrastructure systems.
Special Meetup Edition - TDX Bengaluru Meetup #52.pptxshyamraj55
We’re bringing the TDX energy to our community with 2 power-packed sessions:
🛠️ Workshop: MuleSoft for Agentforce
Explore the new version of our hands-on workshop featuring the latest Topic Center and API Catalog updates.
📄 Talk: Power Up Document Processing
Dive into smart automation with MuleSoft IDP, NLP, and Einstein AI for intelligent document workflows.
Linux Support for SMARC: How Toradex Empowers Embedded DevelopersToradex
Toradex brings robust Linux support to SMARC (Smart Mobility Architecture), ensuring high performance and long-term reliability for embedded applications. Here’s how:
• Optimized Torizon OS & Yocto Support – Toradex provides Torizon OS, a Debian-based easy-to-use platform, and Yocto BSPs for customized Linux images on SMARC modules.
• Seamless Integration with i.MX 8M Plus and i.MX 95 – Toradex SMARC solutions leverage NXP’s i.MX 8 M Plus and i.MX 95 SoCs, delivering power efficiency and AI-ready performance.
• Secure and Reliable – With Secure Boot, over-the-air (OTA) updates, and LTS kernel support, Toradex ensures industrial-grade security and longevity.
• Containerized Workflows for AI & IoT – Support for Docker, ROS, and real-time Linux enables scalable AI, ML, and IoT applications.
• Strong Ecosystem & Developer Support – Toradex offers comprehensive documentation, developer tools, and dedicated support, accelerating time-to-market.
With Toradex’s Linux support for SMARC, developers get a scalable, secure, and high-performance solution for industrial, medical, and AI-driven applications.
Do you have a specific project or application in mind where you're considering SMARC? We can help with Free Compatibility Check and help you with quick time-to-market
For more information: https://www.toradex.com/computer-on-modules/smarc-arm-family
Procurement Insights Cost To Value Guide.pptxJon Hansen
Procurement Insights integrated Historic Procurement Industry Archives, serves as a powerful complement — not a competitor — to other procurement industry firms. It fills critical gaps in depth, agility, and contextual insight that most traditional analyst and association models overlook.
Learn more about this value- driven proprietary service offering here.
HCL Nomad Web – Best Practices and Managing Multiuser Environmentspanagenda
Webinar Recording: https://www.panagenda.com/webinars/hcl-nomad-web-best-practices-and-managing-multiuser-environments/
HCL Nomad Web is heralded as the next generation of the HCL Notes client, offering numerous advantages such as eliminating the need for packaging, distribution, and installation. Nomad Web client upgrades will be installed “automatically” in the background. This significantly reduces the administrative footprint compared to traditional HCL Notes clients. However, troubleshooting issues in Nomad Web present unique challenges compared to the Notes client.
Join Christoph and Marc as they demonstrate how to simplify the troubleshooting process in HCL Nomad Web, ensuring a smoother and more efficient user experience.
In this webinar, we will explore effective strategies for diagnosing and resolving common problems in HCL Nomad Web, including
- Accessing the console
- Locating and interpreting log files
- Accessing the data folder within the browser’s cache (using OPFS)
- Understand the difference between single- and multi-user scenarios
- Utilizing Client Clocking
Noah Loul Shares 5 Steps to Implement AI Agents for Maximum Business Efficien...Noah Loul
Artificial intelligence is changing how businesses operate. Companies are using AI agents to automate tasks, reduce time spent on repetitive work, and focus more on high-value activities. Noah Loul, an AI strategist and entrepreneur, has helped dozens of companies streamline their operations using smart automation. He believes AI agents aren't just tools—they're workers that take on repeatable tasks so your human team can focus on what matters. If you want to reduce time waste and increase output, AI agents are the next move.
AI EngineHost Review: Revolutionary USA Datacenter-Based Hosting with NVIDIA ...SOFTTECHHUB
I started my online journey with several hosting services before stumbling upon Ai EngineHost. At first, the idea of paying one fee and getting lifetime access seemed too good to pass up. The platform is built on reliable US-based servers, ensuring your projects run at high speeds and remain safe. Let me take you step by step through its benefits and features as I explain why this hosting solution is a perfect fit for digital entrepreneurs.
Big Data Analytics Quick Research Guide by Arthur MorganArthur Morgan
This is a Quick Research Guide (QRG).
QRGs include the following:
- A brief, high-level overview of the QRG topic.
- A milestone timeline for the QRG topic.
- Links to various free online resource materials to provide a deeper dive into the QRG topic.
- Conclusion and a recommendation for at least two books available in the SJPL system on the QRG topic.
QRGs planned for the series:
- Artificial Intelligence QRG
- Quantum Computing QRG
- Big Data Analytics QRG
- Spacecraft Guidance, Navigation & Control QRG (coming 2026)
- UK Home Computing & The Birth of ARM QRG (coming 2027)
Any questions or comments?
- Please contact Arthur Morgan at [email protected].
100% human made.
HCL Nomad Web – Best Practices und Verwaltung von Multiuser-Umgebungenpanagenda
Webinar Recording: https://www.panagenda.com/webinars/hcl-nomad-web-best-practices-und-verwaltung-von-multiuser-umgebungen/
HCL Nomad Web wird als die nächste Generation des HCL Notes-Clients gefeiert und bietet zahlreiche Vorteile, wie die Beseitigung des Bedarfs an Paketierung, Verteilung und Installation. Nomad Web-Client-Updates werden “automatisch” im Hintergrund installiert, was den administrativen Aufwand im Vergleich zu traditionellen HCL Notes-Clients erheblich reduziert. Allerdings stellt die Fehlerbehebung in Nomad Web im Vergleich zum Notes-Client einzigartige Herausforderungen dar.
Begleiten Sie Christoph und Marc, während sie demonstrieren, wie der Fehlerbehebungsprozess in HCL Nomad Web vereinfacht werden kann, um eine reibungslose und effiziente Benutzererfahrung zu gewährleisten.
In diesem Webinar werden wir effektive Strategien zur Diagnose und Lösung häufiger Probleme in HCL Nomad Web untersuchen, einschließlich
- Zugriff auf die Konsole
- Auffinden und Interpretieren von Protokolldateien
- Zugriff auf den Datenordner im Cache des Browsers (unter Verwendung von OPFS)
- Verständnis der Unterschiede zwischen Einzel- und Mehrbenutzerszenarien
- Nutzung der Client Clocking-Funktion
What is Model Context Protocol(MCP) - The new technology for communication bw...Vishnu Singh Chundawat
The MCP (Model Context Protocol) is a framework designed to manage context and interaction within complex systems. This SlideShare presentation will provide a detailed overview of the MCP Model, its applications, and how it plays a crucial role in improving communication and decision-making in distributed systems. We will explore the key concepts behind the protocol, including the importance of context, data management, and how this model enhances system adaptability and responsiveness. Ideal for software developers, system architects, and IT professionals, this presentation will offer valuable insights into how the MCP Model can streamline workflows, improve efficiency, and create more intuitive systems for a wide range of use cases.
Increasing Retail Store Efficiency How can Planograms Save Time and Money.pptxAnoop Ashok
In today's fast-paced retail environment, efficiency is key. Every minute counts, and every penny matters. One tool that can significantly boost your store's efficiency is a well-executed planogram. These visual merchandising blueprints not only enhance store layouts but also save time and money in the process.
2. Key take-aways
The AI Ladder
AI is not magic, it’s a journey!
Data fuels digital transformation
AI unlocks the value of Data
Hybrid cloud democratizes Data
3. Predict and shape future outcomes
Empower people to do higher value work
Reimagine new business models
AI is shaping the future of work
Automate decisions, processes, experiences
How AI
pioneers
see value
28%
72%
Cost
Savings
Revenue
Increase
IBM & Inttrust
4. AI-powered
advertising
engagement
4
Predict fraud across
their web & mobile
banking system
Predict power
demand by for
renewable energy
Predict and target first-
time buyers in the US
Surface hidden
insights to optimize fantasy
football outcomes
Visually categorize
damage & instantly
issues quote
However, AI is not magic
Cognitive car manual
explaining increased vehicle
complexity
Achieved a 40% call
deflection rate with
virtual agents
Mercedes-Benz
Identifies gaps in
terms in complex
RFPs
Optimize cardiac care
in high volume remote
regions
Our learnings from
experience in helping
thousands of enterprises
put
AI to work iKure
IBM & Inttrust
5. 5
Turning AI aspirations into outcomes
DATA TALENT TRUST
The lifeblood of AI, but
complexity slows progress
60%
Are challenged in
managing data quality
AI skills are rare
and in high demand
62%
Are challenged to acquire
talent [and build skills]
Skepticism of AI systems
& processes
62%
Need an approach to
AI production readiness
find operationalizing, sustaining
and scalingAI challenging
Stuck in
Experimentation 51%
Based on 2019 Forrester “Challenges That Hold Firms Back From Achieving AI Aspirations”
IBM & Inttrust
6. 81%
6
No amount of AI algorithmic sophistication
will overcome a lack of data [architecture]“ Data collection & preparation is the most
time consuming and difficult part of AI
8x
more likely to
have a robust
data architecture
do not understand
the data needed for
AI
Sources: 2018 MITSlone ”Reshaping business with AI”
There is no AI
without an IA
AI pioneers are
[Information architecture]
IBM & Inttrust
7. COLLECT - Make data simple and accessible
ORGANIZE - Create a business-ready analytics foundation
ANALYZE - Build and scale AI with trust and transparency
INFUSE - Operationalize AI throughout the business
AI
MODERNIZE
Make your data ready for an
AI and hybrid cloud world
The AI Ladder
A prescriptive approach to the journey to AI
One Platform,
Any CloudTalent &
Skills
8. Cloud Pak
for Data
Speed digital transformation by digesting and unifying volumes of
data for real-time AI insights delivered as cloud AI microservices
Modernize
Make your data ready for an AI and hybrid cloud world
Virtualize all data,
regardless of where it lives
Dynamically scale on-demand to
accommodate changing needs
Integrate and govern data across
hybrid cloud and data settings
ONE unified set of cloud-native
data & AI services, on any cloud
Automate the end-to-end data
and AI lifecycle management
An open, extensible information
architecture for AI
IBM & Inttrust
9. Infuse
Operationalize AI throughout the business
Instill trust and transparency across
business leaders and users
Innovate with new business models
optimized by industry vertical needs
Leverage AI to streamline
knowledge work & productivity
Speed time to value with pre-built
apps (e.g., customer service)
Automate analytical planning, forecasting,
budgeting, etc.
Employ AI-assisted business
intelligence and data visualization
Using pre-built and custom AI to empower advisors to better know
clients and shape improved outcomes across 350K inquiries per day
Watson
Applications
& Solutions
IBM & Inttrust
10. 10
The Ladder to AI
IBM’s AI Portfolio
Everything you need for Enterprise AI, on any cloud
Watson
Knowledge
Catalog
Watson
Studio
Watson Machine
Learning
Watson
OpenScale
Build Deploy Manage
Interact with Pre-built AI Services
Watson Application Services
Catalog
Unify on a Multicloud Data Platform
IBM Cloud Private for Data
AI Open Source Frameworks
Watson Solutions
Health | Financial Services | Retail | etc
IBM & Inttrust
12. 3 Primary Use Cases Customer Care
Through the Watson Assistant, IBM
can decrease call center operations
cost, while improving the customer
experience and developing new
revenue streams
Conversational Commerce
Provide guided buying experience for
prospective customers to purchase
goods and services through the
mobile or messaging channel of their
choice
Employee Productivity
Simplify access to common questions
and tasks through enterprise channels
14. Watson Visual Recognition is An image recognition
service that enables users to
quickly and accurately tag,
classify, and train visual
content using machine
learning.
BASIL
LEAF
HERB
PLANT STEM
GREEN
What is Watson Visual Recognition?
15. Watson Visual Recognition focuses on
Assessment
Watson Visual Recognition
assesses for better problem-
solving.
What is Watson Visual Recognition?
Identification
Watson Visual Recognition
identifies objects and people.
Categorization
Watson Visual Recognition
categorizes for easy organization.
Recommendation
Watson Visual Recognition
recommends for faster decision-
making.
hatchback
compact car
vehicle
claret red color
vintage
modern
Fender bender, 87%
confident
Historically, we’ve paid
$7,500 for similar types
of damage
16. Why are enterprises struggling to
capture the value of AI?
Tools &
Infrastructure
• Need an
environment that
enables a “fail fast”
approach
• Discrete tools
present barriers to
productivity
Governance
• If the data isn’t
secure, self-
service isn’t a
reality
• Challenge
understanding
data lineage and
getting to a system
of truth
Skills
• Data Science skills
are in low supply
and high demand
• Nurturing new data
professionals is
challenging
Data
• Data resides in
silos & difficult to
access
• Unstructured and
external data
wasn’t considered
IBM & Inttrust
17. The building blocks of AI
• Find, Catalog, mask data
• Built in compliance
• Advanced transformation
capabilities
• Organize data so that it
can be trusted
• Open platform for Data Science
• Descriptive, predictive to
prescriptive
• ML deployment
• Analyze insights on demand
• All Sources of Data
• The Common Application
layer
• Write once, deploy
anywhere
• Relevant data and make
it simple & accessible
Collect Organize Analyze
2. Solution Overview
IBM & Inttrust
19. Search and Explore with Data Privacy 2. Solution Overview
IBM & Inttrust
20. Analyze any data, no matter where it lives
Connect to and analyze your data without moving a single
through dozens of connectors and multiple deployment
Empower your entire organization with notebooks,
visual productivity, and automation tools
Leverage your entire organization with a variety of tools in a
integrated platform
One platform to rule them all from discovery to
production
Analyze data, build predictive models, and seamlessly integrate
Watson Machine Learning to deploy
IBM Watson Studio
Enterprise Data Science platform that helps your
team work together to build models to make better
data driven decisions for your business
IBM & Inttrust
21. • Integrated with Watson Studio and
Watson Machine learning
• Automatically ingest, clean, transform, and
model with hyperparameter optimization
• Training feedback visualizations provide
real-time results to see model
performance
• One-click deployment to Watson Machine
Learning
21
IBM AutoAI
22. Cloud Pak for Data: Modular
Cloud-native Data Micro Services
Collect Data Organize Data Analyze Data
Data Virtualization In-Memory
Warehouse
Relational Database
NoSQL (MongoDB)
Data Visualization
Machine Learning
Text Mining/NLP
Watson
SPSS Modeler
Transformation
Profiling
Masking
Govern
Prescriptive Analytics
(Optimization)
Quality
Real Time
Streaming
ETL - DataStage
23. Cloud Pak for Data
Cloud Pak for
Data
Collect,
organize,
and analyze data
With Machine Learning
capabilities and AI Model
Deployment
IBM containerized
software
Container
platform and
operational services
Watson
APIs
Real Time
Streams
Mongo Cognos Watson Studio Machine / Deep LearningSPSS
On-Premise
Credit goes to Clay Davis
RHEL / Kubernetes Based
Appliance
Data virtualization
Data warehouse
Governance catalog & discovery
services
Data Integration services
Data Visualization & Dashboards
Data Science: Model Design &
Deployment
Collect Organize Analyze
Insights Platform
IBM & Inttrust
24. IBM & Inttrust
Consumer Layer
(Interface Provisioning)
Applications Mobile Apps
Analytics
Tools
Portals Web
Services
Virtualization Layer
Caching &
Optimization
Connection Layer
(Adaptors)
Governance Catalog
(Metadata)
Consumers
Data Sources
Warehouses
Marts
Cloud Applications
Web
Services
Lakes
Files
NoSQL
Virtualization
Platform
Data Virtualization
25. Life event and financial
event prediction
Predict life and financial events
impacting client’s financial lives
to help advisors proactively
service a client’s needs
Machine learning
accelerators to
provide insights
Dynamic segmentation
Advanced dynamic client
segmentation helps identify
unique cohorts of clients by
behaviors, account profile
information, and
demographics
Client attrition
Ability to predict client attrition at
configurable points in the future
to protect revenue and
wallet share, while also building
profound client loyalty
IBM & Inttrust
Offer Affinity
Run campaigns effectively
by identifying client product
propensities or investment
theme affinities to drive new
or more desirable business
opportunities.
Intelligent Maintenance for Asset
Intensive Industries
(Telecommunications, Manufacturing , Oil and Gas, and Transportation)
Use Machine Learning to calculate optimal maintenance day
Editor's Notes
#3: We all know data is the foundation for businesses to drive smarter decisions. Data is what fuels digital transformation. But, it is Artificial intelligence (AI) that unlocks the value of that data, which is why AI is poised to transform businesses with the potential to add almost 16 trillion dollars to the global economy by 2030.
However, adoption has been slower than anticipated. Business leaders not only need to understand the power of AI, but how they can fully unleash its potential and operate in a hybrid, multicloud world.
This presentation aims to demystify AI, present common AI challenges and failures, and finally, provide a unified, prescriptive approach (which we call “the AI Ladder”) to help organizations unlock the value of their data and accelerate their journey to AI.
#4: Across an array of use cases, AI pioneers are employing a core set of new AI capabilities and shaping the future of work. They’re leveraging AI to:
Predict and shape future outcomes
Empower people to do higher value work
Automate decisions, processes, and experiences
Reimagine new business models that are trusted, transparent, and deployable anywhere
Some of our clients paving the way are:
Geisinger (Predict and shape future outcomes) – One sepsis patient dies every two minutes in the US, but over 80 percent of deaths are preventable with prompt diagnosis and care. Geisinger partnered with IBM and used the data science tools available in IBM Watson Studio to develop machine learning models capable of analyzing thousands of patient records and medical journals. Working with IBM, Geisinger has successfully built a predictive model for sepsis mortality based on real-life EHR data, that has helped researchers identify clinical biomarkers that are associated with the higher rates of mortality from sepsis.
Woodside Energy (Empower people to do higher value work) - Woodside, Australia’s largest independent energy company has been a global leader in oil and gas for over half a century. Their secret? Hire and develop heroes. This formula has helped Woodside build some of the largest structures on the planet, in some of the most remote parts of the ocean, and safely transport the energy they produce to people around the globe. To ensure the next generation could successfully carry the torch, Woodside knew they had to harness the instinctual know-how of their best employees. This goal — to create a cognitive business to augment and share their tribal knowledge — is what led Woodside into an industry-first partnership with IBM and Watson.
Experian (Automate decisions, processes, and experiences) -- Experian collects and aggregates information on over one billion people and businesses including 235 million individual US consumers and more than 25 million US businesses. Currently they use a rules-based system to determine if a file should be automatically loaded or checked. However, this system misses may correct files, resulting in additional human labor to check files and load them manually. Experian worked with IBM Watson Studio to reduce the number of files sent to be checked by approving them directly in the load process using machine learning techniques to classify these documents and descriptive analytics to get a better understanding of how the current rules are working, and successfully reduced 96% of false positives and 95% of false negatives.
Legalmation (Reimagine new business models) -- With intuitive IBM® Watson® offerings, LegalMation developed a first-of-its-kind AI platform to automate routine litigation tasks. Supported by the IBM Watson ecosystem, the company quickly launched its solution for drafting early phase response documents, helping legal teams save time, drive down costs and shift strategic focus.
#5: But those AI pioneers are just some of the few. There are thousands of clients IBM is helping put AI to work, and while these clients are on various stages in their own journey, they all have one thing in common -- they are transforming their business through the use of AI.
#6: However, to ensure a successful AI strategy, organizations need to understand how to adopt and implement the technology and realize there will be failures along the way. In order to turn AI aspirations into outcomes, organizations need to overcome three major AI challenges: data complexity, skills, and trust.
AI Challenge: Data Complexity
Data is the foundation and fuel for businesses to drive smarter decisions particularly as they embark upon digital transformations. The problem is that while 90 percent of business leaders list improving the use of data as a top priority, only 15 percent of them are actually getting what they need from their data. As a result, the majority of businesses have a plan to build a system of insights to become data-driven and have declared the journey to AI as a strategic priority. Data is the lifeblood of AI, and if organizations don’t solve for its complexities, their progress can be slowed by data siloes, incomplete data, and the appropriate approach to governance.
AI Challenge: Skills
Data is the lifeblood of AI, but you also need skills , such as knowing how to code, understanding and building deep learning and machine learning models, to bring AI to fruition. The challenge is that AI skills are rare, and therefore in high demand, so there’s a shortage of skilled workers available to hire. This makes it even more important that the technology being built and used is more easily accessible to everyone within the business, regardless of skill level.
AI Challenge: Trust
For organizations to truly embrace and scale AI across the entire businesses, they need to break open the ‘black box’ of AI and trust the systems. It is critical to ensure AI recommendations or decisions are fully traceable – enabling enterprises to audit the lineage of the models and the associated training data, along with the inputs and outputs for each AI recommendation. As more applications make use of AI, businesses need visibility into the recommendations made by their AI applications. In the case of certain industries like finance and healthcare, in which adherence to GDPR and other comprehensive regulations present significant barriers to widespread AI adoption, applications must explain their outcomes in order to be used in production situations.
For AI to thrive, and for businesses to reap its benefits, it is imperative that organizations are able to address these three challenges to ensure they have trust their AI systems, have the right skills across their organization, and access to their data, no matter where it resides.
#7: As companies look to harness the potential of AI, they need to use data from diverse sources, support best-in-class tools and frameworks, and run models across a variety of environments. However, 81 percent of business leaders do not understand the data and infrastructure required for AI.
According to MIT Sloan, “No amount of AI algorithmic sophistication will overcome a lack of data [architecture]…bad data is simply paralyzing.”
Put simply: There is no AI without IA (information architecture).
#8: IBM recognizes this challenge our clients are facing. As a result, we’ve built a prescriptive approach (known as the the AI ladder), to help clients overcome these challenges and accelerate their journey to AI, no matter where they are on their journey. It allows them to simplify and automate how organizations turn data into insights by unifying the collection, organization and analysis of data, regardless of where it lives. By climbing the ladder to AI, enterprises can build a governed, efficient, agile, and future-proof approach to AI. Furthermore, it is an organizing construct to the Data and AI products and services offered by IBM and our business partners, and it is the technology foundation to unify how those products and services work together.
What we have learned from AI pioneers is that every step of the ladder is critical. AI is not magic and requires a thoughtful and well-architected approach. For example, the vast majority of AI failures are due to data preparation and organization, not the AI models themselves. Success with AI models is dependent on achieving success first with how you collect and organize data.
The AI ladder has four steps (often referred to as “rungs”):
Collect: Make data simple and accessible.Collect data of every type regardless of where it lives, enabling flexibility in the face of ever-changing data sources.
Organize: Create a business-ready analytics foundation.Organize all the client's data into a trusted, business-ready foundation with built-in governance, protection, and compliance.
Analyze: Build and scale AI with trust and explainability.Analyze the client's data in smarter ways and benefit from AI models that empower the client's team to gain new insights and make better, smarter decisions.
Infuse: Operationalize AI throughout the business.Operationalize AI throughout the business - across multiple departments and within various processes - drawing on predictions, automation, and optimization.
Then, spanning the four steps of the AI ladder is the concept of Modernize, which is how clients can simplify and automate how they turn data into insights by unifying the collection, organization and analysis of data, regardless of where it lives, within a multicloud data platform.
#9: What is meant by "modernize"? Modernize means building an information architecture for AI that provides choice and flexibility across a client's enterprise. As clients modernize for an AI and multicloud world, they will find that there is less "assembly required" in expanding the impact of AI across the organization.
IBM has the depth and breadth of capabilities to help clients:
Deploy an information architecture for AI
Prepare data for a multicloud world
Infuse AI everywhere, with confidence
Harness the flexibility and growth of open source technologies
Speed time-to-value with unprecedented simplicity & agility
Our lead-with products supporting this rung are:
IBM Cloud Pak for Data
IBM Cloud Pak for Data Systems
#10: Most organizations are still in the early days of determining how and where to use AI to advance their business agenda. But, interest is growing, largely because AI has the potential to solve one of the biggest challenges we face: we’re drowning in data – 2.5 quintillion bytes – generated every day, but we’re starved for insights. AI helps us take advantage of all this data, much of which is dark and inaccessible, and make better decisions from the insights it can produce, while creating net-new or augmenting existing workflows across the entire organization.
Building on projects with thousands of organizations around the world, we’ve observed that organizations choose to:
Speed time to value with pre-built AI apps for common use case (e.g., customer service, financial planning)
Automate knowledge work and business processes
Employ AI-assisted business intelligence and data visualization
Automate planning, budgeting and forecasting analytics
Customize with Industry vertical AI-driven frameworks
Innovate with new business models intelligently powered by AI
Our lead-with products supporting this rung are:
IBM Watson Assistant
IBM Cognos Analytics
IBM Planning Analytics
IBM Watson Discovery
#11: AI is all about the ability to build, deploy, catalog, and manage models, which is what IBM’s AI portfolio provides. It gives you the ability to:
BUILD models for making predictions. Watson Studio supports this.
DEPLOY to put custom models into production, in an application or business process. This is where the model starts to make predictions for the client’s business and it happens with Watson Machine Learning.
CATALOG for data discovery and activation. The Watson Knowledge Catalog allows users to access, curate, categorize, and share data and assets wherever they are.
MANAGE to operationalize and automate the management of models and tools across your business, with trust and transparency. IBM’s answer for that is Watson OpenScale.
All of this together is our AI portfolio that you can access on the private cloud, on the public cloud, on prem, or on desktop.
Watson Application Services are packaged applications that we bundle together to provide the user with AI in a box.
AI Open Source Framework: This is, without a doubt, the future of the market. We built our AI portfolio on open source to make it secure and managed so that our clients can put it to use without the risk or extra cost.
IBM Cloud Private for Data: IBM’s AI portfolio is designed to deploy on our unifying platform. This is our prescriptive approach—one platform, supporting a multi-cloud environment, that brings all of a client’s data and AI capabilities into one set of collaborative workflows and governance capabilities.
#21: Without having to move to a new database we have DS solution that will work for you – coud, local dektop, connectors
“we are not making money on where your data is hosted” – you don’t have to move your data
These are things I’m running into
Building upon previous slides what are we introducing today? Meets your wants while solving your problems
Low to high DS skills spectrum
How does WS fit into the trends – looking at BMC for cloud + WS whatis our value to customer; how are we differentiating from SPSS Modeler?
30 min filling in BMC
30 mins which messages do we want to articulate given strwngths as offering and where we’re going
Goal: crisp & differrentiating
Okay so now diving a level deeper – and again each of these will go back to the 3 values we have on the board
WS = DS platform where your whole team can work together – meaning DS, LOB expert, business analyst, or anyone working on the DS platform – it’s very easy to bring all these people with different levels of expertise on the 1 platform of WS
The reason all these varying levels of expertise can work together is because of these tools you see on the right
DS are rare resources – they each have their own preferences of tools or languages that they want to work with so we have open source tools like R studio and Jupyter Notebooks where DS can come in and write their own code by choosing their own language (R, Scala, whatever they want), and go ahead and get started
At the same time, if someone is not really into coding but has the knowledge, they can use visual tools - like SPSS Modeler, Data Refinery, & Model Builder – where they have a drag and drop UI they can use to build a model normally and get predictions
Both sides are available in the same platform of Watson Studio.
You can give different access to different people.
The whole point is that WS really reduces the barrier between your resources and the DS journey – anyone can get started regardless of their expertise
which brings us back to the strategy of increasing your team productivity
You can see on the right, we provide different technologies and frameworks to support building models - you can use Spark or if you're working with Deep Learning we support all the other favorites so you can choose any of these and work on Studio
Let's say you're into deep learning, but you are not a coder, we have a drag & drop interface where you can build a deep learning model, expose that node, and use it in some other applications
We provide all these cutting edge infrastructure technologies so you can take advantage of any of them while you are working in WS
Again: easy, fast, and increases your team productivity
Again getting started very quickly to increase productivity
#22: So What is Watson Studio Desktop?
What are the key capabilities?
What benefits do you offer?