A Connections-first Approach to Supply Chain OptimizationNeo4j
Neo4j is a graph database platform for connected data. The document introduces Neo4j and discusses how connected data and relationships between data are increasingly important for business value. It provides examples of how Neo4j is used by organizations for applications like fraud detection, personalization, and network analysis. The document also summarizes Neo4j's capabilities like real-time transaction processing, analytics, and visualization and highlights its native graph architecture and performance advantages over traditional databases. Finally, it briefly describes Neo4j's key architecture components and how it can be used for common data architecture patterns.
3. Relationships Matter: Using Connected Data for Better Machine LearningNeo4j
The document discusses how graph databases and graph data science can be used to enhance machine learning models by incorporating relationship data. It provides examples of how organizations are using Neo4j's graph data science platform to improve predictive models in areas like fraud detection, health outcomes, and supply chain reliability. The platform includes over 50 graph algorithms, graph-native machine learning workflows, and the ability to train, apply, and manage predictive models on graph data.
Enterprise Ready: A Look at Neo4j in Production at Neo4j GraphDay New York CityNeo4j
This document contains the agenda for an enterprise Neo4j training session in New York City on April 18, 2017. The agenda includes sessions on using graphs with Neo4j, working examples of transforming data, and a look at deploying Neo4j in production environments. Lunch is from 12:30-1:30 and a training session runs from 1:30-5:00pm.
The document discusses how graph databases can help governments address challenges like fraud detection, cybersecurity, and intelligence analysis. It provides examples of how Neo4j has helped organizations like Lockheed Martin, the US Army, and NASA optimize processes and save time and money by integrating diverse data sources and analyzing relationships within the data. The document promotes Neo4j's graph data platform for its flexibility, performance, and ability to handle large, interconnected datasets in real-time.
Relationships Matter: Using Connected Data for Better Machine LearningNeo4j
Relationships are highly predictive of behavior, yet most data science models overlook this information because it's difficult to extract network structure for use in machine learning (ML).
With graphs, relationships are embedded in the data itself, making it practical to add these predictive capabilities to your existing practices.
That’s why we’re presenting and demoing the use of graph-native ML to make breakthrough predictions. This will cover:
- Different approaches to graph feature engineering, from queries and algorithms to embeddings
- How ML techniques leverage everything from classical network science to deep learning and graph convolutional neural networks
- How to generate representations of your graph using graph embeddings, create ML models for link prediction or node classification, and apply these models to add missing information to an existing graph/incoming data
- Why no-code visualization and prototyping is important
4. Document Discovery with Graph Data ScienceNeo4j
This document discusses using graphs for document discovery and data science. Graphs can combine structured and unstructured data, show relationships between information, and enable visual exploration of data. Graph algorithms can enhance graphs by identifying important entities, predicting unknown relationships, and supporting analytical use cases like discovery. The document advocates building a graph from documents, applying graph analytics to aid discovery, enabling search and exploration of the graph, and developing applications to integrate these capabilities.
Introduction to the Neo4j Graph Platform & use casesNeo4j
The document is an agenda for a Neo4j GraphTalks event in Madrid on network and application management. It includes an introduction to graph databases and Neo4j, new approaches for network and application management with graphs, and how to succeed with Neo4j graph database projects. There are also sessions on the impact of graphs and the state of the graph database field.
Neo4j Aura on AWS: The Customer Choice for Graph DatabasesNeo4j
Neo4j, the leading enterprise graph platform, is now globally available on Amazon Web Services (AWS) as a fully managed, always-on database service.
Neo4j Aura Enterprise on AWS empowers organizations to rapidly build mission-critical, intelligent cloud-based applications backed by the performance, scale, security, and reliability that only the most deployed and most trusted graph technology can provide.
Customers like Levi Strauss & Co., Sainsbury’s, Siemens, The Orchard and Tourism Media are already using Aura Enterprise on AWS for fraud detection, regulatory compliance, recommendation engines, supply chain analysis, and much more.
Join us for this exclusive digital event to learn more about Neo4j Aura Enterprise on AWS:
- Understand the state of the data and analytics market and how investing in Neo4j and AWS fits in the big picture
- Get insights into how Siemens and Tourism Media are unlocking the power of graph databases on AWS during a panel discussion
- Discover how to build modern graph applications with Neo4j on AWS through a step-by-step presentation and demo
Neo4j Innovation Lab – Bringing the Best of Data Science and Design Thinking ...Neo4j
The document discusses the importance of understanding data structures when designing products. It notes that product designers and data scientists both aim to reduce friction. Their work intersects as user experience depends on the underlying data architecture. Different data structures like relational databases, graphs, and knowledge graphs are suited to different problems. Case studies show how graphs power applications like image recognition and last-mile delivery by connecting product, inventory, logistics and other data. The document proposes a data thinking prototyping framework to map business problems, data models, value opportunities and applications when considering new solutions.
Knowledge Graphs for Transformation: Dynamic Context for the Intelligent Ente...Neo4j
The document discusses knowledge graphs and their benefits for enterprises. Some key points:
- 2/3 of Neo4j customers have implemented knowledge graphs and 88% of CXOs believe they will significantly improve business outcomes.
- A knowledge graph is an interconnected dataset enriched with meaning to allow reasoning about data and confident decision-making.
- Neo4j offers knowledge graph products like Bloom for visualization, Graph Data Science for analytics, and Workbench for knowledge graph management.
- Knowledge graphs can transform businesses by providing dynamic context, bridging silos, and enabling predictions and innovations.
This document provides an agenda and overview for GraphTour 2020. It introduces Herman Roelandts and Rik Van Bruggen as hosts and discusses what GraphTour is and solving the "Graph Problem". It highlights Neo4j's growing community, adoption in enterprises, and support for the GQL standard. New features in Neo4j 4.0 like Neo4j Aura are showcased. Graph data science and Neo4j Labs projects like the Graph Algorithms Playground are also summarized. The document concludes by wishing attendees to enjoy the rest of the day's events.
Transforming Innovation: Digital Twin for the Win!Neo4j
The document discusses digital twins, which are virtual representations of physical objects or processes. It provides background on the origins of digital twins, noting the term was coined in 2002 but the concept owes to decades of modeling work. It then discusses the current state of digital twins, including applications in large software systems, power generation, and transportation. However, it notes implementation has been challenging to scale up beyond simple cases like jet turbines. The document proposes knowledge graphs as a better data structure for mastering complex, connected domains like digital twins due to their ability to represent relationships. It provides an example of using a knowledge graph as a digital twin for IT infrastructure. In conclusion, it discusses several vertical opportunities for digital twins in areas like asset tracking and
Neo4j im Einsatz gegen Geldwäsche und FinanzbetrugNeo4j
The document discusses how Neo4j can be used to combat money laundering and financial fraud. It introduces the presenters and provides an agenda for the seminar. Additionally, it outlines Neo4j's capabilities for connecting disparate data sources and exposing related information to support enhanced decision making, fraud prevention, and compliance. Neo4j allows users to explore network and transactional data across multiple "anchor points" to discover relationships and patterns that may indicate money laundering or fraud.
GraphTour 2020 - Customer Journey with Neo4j ServicesNeo4j
This document provides an overview of Neo4j's customer journey and solutions for working with graph databases. It includes sections on problem identification and modeling sessions, desired business outcomes and data integration. It also shows examples of graph queries and discusses architecture, sizing and implementation considerations. The document aims to illustrate Neo4j's full end-to-end process for helping customers adopt graph databases from initial problem assessment through solution delivery.
Kick Off – Graphs: The Fuel Behind Innovation and Transformation in Every FieldNeo4j
The document introduces Neo4j, a graph database company. It discusses how graphs can help harness relationships in data to drive business value and decisions. Neo4j uses graphs to power applications in domains like customer experience, fraud prevention, operations optimization, and more. The document provides examples of how Neo4j customers like the US Army have used the Neo4j graph platform to solve complex problems and accelerate innovation.
Combining a Knowledge Graph and Graph Algorithms to Find Hidden Skills at NASANeo4j
This document discusses how NASA uses knowledge graphs and algorithms to identify hidden skills in employees. It explains that enterprise knowledge graphs combine structured and unstructured data to enable faster search and decision making. NASA creates knowledge graphs using tools like Neo4j and analyzes the graphs using algorithms like node similarity. The knowledge graphs connect data on occupations, skills, abilities, and projects. The graphs can be used to discover employee skills, support diversity initiatives, and compare occupations based on required skills. Contact information is provided for two NASA data scientists working on these knowledge graphs.
This document discusses graph data science and Neo4j's capabilities. It describes how Neo4j can help simplify graph data science through its native graph database, graph data science library, and data visualization tool. Example use cases are also provided that demonstrate how Neo4j has helped companies with fraud detection, customer journey analysis, supply chain management, and patient outcomes.
AI, ML and Graph Algorithms: Real Life Use Cases with Neo4jIvan Zoratti
I gave this presentation at DataOps 19 in Barcelona.
You will find information about Neo4j and how to use it with Graph Algorithms for Machine Learning and Artificial Intelligence.
Digital Graph tour Rome: "Connect the Dots, Lorenzo SperanzoniNeo4j
This document provides information about a GraphTour Rome 2020 event hosted by LARUS, including:
- LARUS is an Italian company founded in 2004 that is a leader in graph database development and Neo4j partner.
- The event will discuss how viewing business problems as networks can provide benefits, as well as examples of how customers like banks and telecom companies are using Neo4j for applications like fraud detection and recommendations.
- LARUS' typical customer success roadmap for graph database projects is presented, outlining the assessment, use case identification, prototype, and production phases of a project.
This document discusses knowledge graphs and how they can transform businesses by providing dynamic context. It provides examples of how knowledge graphs are used by companies like Neo4j, Caterpillar, the US Army, and Boston Scientific. It outlines a methodology for creating a knowledge graph and discusses how knowledge graphs can be used for applications like recommendations, knowledge management, and machine teaching.
Data is both our most valuable asset and our biggest ongoing challenge. As data grows in volume, variety and complexity, across applications, clouds and siloed systems, traditional ways of working with data no longer work.
Unlike traditional databases, which arrange data in rows, columns and tables, Neo4j has a flexible structure defined by stored relationships between data records.
We'll discuss the primary use cases for graph databases
Explore the properties of Neo4j that make those use cases possible
Look into the visualisation of graphs
Introduce how to write queries.
Webinar, 23 July 2020
Translating the Human Analog to Digital with GraphsNeo4j
Jeff Morris presented on how graphs can translate human analog activities and relationships to the digital world. Some key points:
1) Graphs can represent people, objects, locations, events and their relationships, capturing information like who, what, where, when, why and how. This models human analog data.
2) Modeling data as graphs allows representing complex relationships that are difficult to uncover with traditional methods. This helps with applications like fraud detection.
3) Graphs are well-suited to power applications like recommendations, smart homes, fraud detection and more by combining diverse data sources and identifying new connections.
A comparison of relational and graph model theories, with an eye towards DataStax's implementation of Graph. Note: I'm working on a concise, formal mathematical definition of relational, based on Codd's 1970 paper. (Thanks to Artem Chebotko for suggesting this.)
This document provides an overview of the Neo4j Graph Platform vision, including existing and upcoming products. It discusses Neo4j's long-term vision of being a graph platform beyond just a database, including tools for development and administration, analytics, and integrations. It also highlights some key existing products like the Neo4j browser and algorithms library, as well as upcoming capabilities like analytics integrations and better visibility of partner software.
This document discusses graphs and graph databases. It provides examples of graphs and compares SQL queries to Gremlin queries on graphs. It also discusses different types of graph databases for online transaction processing (OLTP) and online analytical processing (OLAP). The document then discusses how a social and data graph could help address the problem of data going dark in life sciences research by enabling collaboration, data sharing and discovery of relevant experts and data. It proposes using bi-clustering algorithms to identify relevant groups within the social and data graph to facilitate data and expert discovery.
Using data relationships to make connections between individual data records transforms the data you already have into something much more powerful. This webinar will explain how both young and established companies have adopted graph thinking - and how they’ve risen to dominate their fields.
Data centric business and knowledge graph trendsAlan Morrison
The document discusses data-centric architecture and knowledge graphs. It defines key terms like data, content, and knowledge graphs. It discusses how knowledge graphs are evolving to be multi-model and can combine different data structures. The document argues that a data-centric approach is needed to reduce data and application silos and enable greater data reuse. It provides examples of how knowledge graphs can help industries like banking, pharmaceuticals, and oil and gas better manage their data assets and digital twins. The market potential for knowledge graph technologies is large but there is still low awareness of how they can help organizations.
Neo4j Innovation Lab – Bringing the Best of Data Science and Design Thinking ...Neo4j
The document discusses the importance of understanding data structures when designing products. It notes that product designers and data scientists both aim to reduce friction. Their work intersects as user experience depends on the underlying data architecture. Different data structures like relational databases, graphs, and knowledge graphs are suited to different problems. Case studies show how graphs power applications like image recognition and last-mile delivery by connecting product, inventory, logistics and other data. The document proposes a data thinking prototyping framework to map business problems, data models, value opportunities and applications when considering new solutions.
Knowledge Graphs for Transformation: Dynamic Context for the Intelligent Ente...Neo4j
The document discusses knowledge graphs and their benefits for enterprises. Some key points:
- 2/3 of Neo4j customers have implemented knowledge graphs and 88% of CXOs believe they will significantly improve business outcomes.
- A knowledge graph is an interconnected dataset enriched with meaning to allow reasoning about data and confident decision-making.
- Neo4j offers knowledge graph products like Bloom for visualization, Graph Data Science for analytics, and Workbench for knowledge graph management.
- Knowledge graphs can transform businesses by providing dynamic context, bridging silos, and enabling predictions and innovations.
This document provides an agenda and overview for GraphTour 2020. It introduces Herman Roelandts and Rik Van Bruggen as hosts and discusses what GraphTour is and solving the "Graph Problem". It highlights Neo4j's growing community, adoption in enterprises, and support for the GQL standard. New features in Neo4j 4.0 like Neo4j Aura are showcased. Graph data science and Neo4j Labs projects like the Graph Algorithms Playground are also summarized. The document concludes by wishing attendees to enjoy the rest of the day's events.
Transforming Innovation: Digital Twin for the Win!Neo4j
The document discusses digital twins, which are virtual representations of physical objects or processes. It provides background on the origins of digital twins, noting the term was coined in 2002 but the concept owes to decades of modeling work. It then discusses the current state of digital twins, including applications in large software systems, power generation, and transportation. However, it notes implementation has been challenging to scale up beyond simple cases like jet turbines. The document proposes knowledge graphs as a better data structure for mastering complex, connected domains like digital twins due to their ability to represent relationships. It provides an example of using a knowledge graph as a digital twin for IT infrastructure. In conclusion, it discusses several vertical opportunities for digital twins in areas like asset tracking and
Neo4j im Einsatz gegen Geldwäsche und FinanzbetrugNeo4j
The document discusses how Neo4j can be used to combat money laundering and financial fraud. It introduces the presenters and provides an agenda for the seminar. Additionally, it outlines Neo4j's capabilities for connecting disparate data sources and exposing related information to support enhanced decision making, fraud prevention, and compliance. Neo4j allows users to explore network and transactional data across multiple "anchor points" to discover relationships and patterns that may indicate money laundering or fraud.
GraphTour 2020 - Customer Journey with Neo4j ServicesNeo4j
This document provides an overview of Neo4j's customer journey and solutions for working with graph databases. It includes sections on problem identification and modeling sessions, desired business outcomes and data integration. It also shows examples of graph queries and discusses architecture, sizing and implementation considerations. The document aims to illustrate Neo4j's full end-to-end process for helping customers adopt graph databases from initial problem assessment through solution delivery.
Kick Off – Graphs: The Fuel Behind Innovation and Transformation in Every FieldNeo4j
The document introduces Neo4j, a graph database company. It discusses how graphs can help harness relationships in data to drive business value and decisions. Neo4j uses graphs to power applications in domains like customer experience, fraud prevention, operations optimization, and more. The document provides examples of how Neo4j customers like the US Army have used the Neo4j graph platform to solve complex problems and accelerate innovation.
Combining a Knowledge Graph and Graph Algorithms to Find Hidden Skills at NASANeo4j
This document discusses how NASA uses knowledge graphs and algorithms to identify hidden skills in employees. It explains that enterprise knowledge graphs combine structured and unstructured data to enable faster search and decision making. NASA creates knowledge graphs using tools like Neo4j and analyzes the graphs using algorithms like node similarity. The knowledge graphs connect data on occupations, skills, abilities, and projects. The graphs can be used to discover employee skills, support diversity initiatives, and compare occupations based on required skills. Contact information is provided for two NASA data scientists working on these knowledge graphs.
This document discusses graph data science and Neo4j's capabilities. It describes how Neo4j can help simplify graph data science through its native graph database, graph data science library, and data visualization tool. Example use cases are also provided that demonstrate how Neo4j has helped companies with fraud detection, customer journey analysis, supply chain management, and patient outcomes.
AI, ML and Graph Algorithms: Real Life Use Cases with Neo4jIvan Zoratti
I gave this presentation at DataOps 19 in Barcelona.
You will find information about Neo4j and how to use it with Graph Algorithms for Machine Learning and Artificial Intelligence.
Digital Graph tour Rome: "Connect the Dots, Lorenzo SperanzoniNeo4j
This document provides information about a GraphTour Rome 2020 event hosted by LARUS, including:
- LARUS is an Italian company founded in 2004 that is a leader in graph database development and Neo4j partner.
- The event will discuss how viewing business problems as networks can provide benefits, as well as examples of how customers like banks and telecom companies are using Neo4j for applications like fraud detection and recommendations.
- LARUS' typical customer success roadmap for graph database projects is presented, outlining the assessment, use case identification, prototype, and production phases of a project.
This document discusses knowledge graphs and how they can transform businesses by providing dynamic context. It provides examples of how knowledge graphs are used by companies like Neo4j, Caterpillar, the US Army, and Boston Scientific. It outlines a methodology for creating a knowledge graph and discusses how knowledge graphs can be used for applications like recommendations, knowledge management, and machine teaching.
Data is both our most valuable asset and our biggest ongoing challenge. As data grows in volume, variety and complexity, across applications, clouds and siloed systems, traditional ways of working with data no longer work.
Unlike traditional databases, which arrange data in rows, columns and tables, Neo4j has a flexible structure defined by stored relationships between data records.
We'll discuss the primary use cases for graph databases
Explore the properties of Neo4j that make those use cases possible
Look into the visualisation of graphs
Introduce how to write queries.
Webinar, 23 July 2020
Translating the Human Analog to Digital with GraphsNeo4j
Jeff Morris presented on how graphs can translate human analog activities and relationships to the digital world. Some key points:
1) Graphs can represent people, objects, locations, events and their relationships, capturing information like who, what, where, when, why and how. This models human analog data.
2) Modeling data as graphs allows representing complex relationships that are difficult to uncover with traditional methods. This helps with applications like fraud detection.
3) Graphs are well-suited to power applications like recommendations, smart homes, fraud detection and more by combining diverse data sources and identifying new connections.
A comparison of relational and graph model theories, with an eye towards DataStax's implementation of Graph. Note: I'm working on a concise, formal mathematical definition of relational, based on Codd's 1970 paper. (Thanks to Artem Chebotko for suggesting this.)
This document provides an overview of the Neo4j Graph Platform vision, including existing and upcoming products. It discusses Neo4j's long-term vision of being a graph platform beyond just a database, including tools for development and administration, analytics, and integrations. It also highlights some key existing products like the Neo4j browser and algorithms library, as well as upcoming capabilities like analytics integrations and better visibility of partner software.
This document discusses graphs and graph databases. It provides examples of graphs and compares SQL queries to Gremlin queries on graphs. It also discusses different types of graph databases for online transaction processing (OLTP) and online analytical processing (OLAP). The document then discusses how a social and data graph could help address the problem of data going dark in life sciences research by enabling collaboration, data sharing and discovery of relevant experts and data. It proposes using bi-clustering algorithms to identify relevant groups within the social and data graph to facilitate data and expert discovery.
Using data relationships to make connections between individual data records transforms the data you already have into something much more powerful. This webinar will explain how both young and established companies have adopted graph thinking - and how they’ve risen to dominate their fields.
Data centric business and knowledge graph trendsAlan Morrison
The document discusses data-centric architecture and knowledge graphs. It defines key terms like data, content, and knowledge graphs. It discusses how knowledge graphs are evolving to be multi-model and can combine different data structures. The document argues that a data-centric approach is needed to reduce data and application silos and enable greater data reuse. It provides examples of how knowledge graphs can help industries like banking, pharmaceuticals, and oil and gas better manage their data assets and digital twins. The market potential for knowledge graph technologies is large but there is still low awareness of how they can help organizations.
Platform for Big Data Analytics and Visual Analytics: CSIRO use cases. Februa...Tomasz Bednarz
Presented at the ACEMS workshop at QUT in February 2015.
Credits: whole project team (names listed in the first slide).
Approved by CSIRO to be shared externally.
Data Science at Scale - The DevOps ApproachMihai Criveti
DevOps Practices for Data Scientists and Engineers
1 Data Science Landscape
2 Process and Flow
3 The Data
4 Data Science Toolkit
5 Cloud Computing Solutions
6 The rise of DevOps
7 Reusable Assets and Practices
8 Skills Development
Agents for Agility - The Just-in-Time Enterprise Has ArrivedInside Analysis
Hot Technologies with Krish Krishnan, Robin Bloor and EnterpriseWeb
Live Webcast Aug. 21, 2013
The demand for agility continues to motivate today's data-driven organizations. Competitors all over the globe are vying for faster time-to-insight, or even time-to-action. But there are other issues like governance and data quality that typically slow down key processes. Almost invariably, legacy systems that perform critical business processes are late to the party, resulting in enterprise inertia. However, a new wave of innovation is solving that problem by incorporating a late-binding approach for both analytics and operations.
Register for this episode of Hot Technologies to hear Analysts Krish Krishnan of Sixth Sense, and Dr. Robin Bloor of The Bloor Group, as they outline their competing visions for the architecture of a real-time enterprise. They'll be briefed by Dave Duggal of EnterpriseWeb, who will tout his company's platform for delivering robust enterprise functionality at the speed of the network. He'll discuss how EnterpriseWeb leverages the best ideas of service orientation, combined with intelligent agents that act as virtual hubs for the sharing of data, analytics, and mission-critical business processes.
TechWise with Eric Kavanagh, Dr. Robin Bloor and Dr. Kirk Borne
Live Webcast on July 23, 2014
Watch the archive: https://bloorgroup.webex.com/bloorgroup/lsr.php?RCID=59d50a520542ee7ed00a0c38e8319b54
Analytical applications are everywhere these days, and for good reason. Organizations large and small are using analytics to better understand any aspect of their business: customers, processes, behaviors, even competitors. There are several critical success factors for using analytics effectively: 1) know which kind of apps make sense for your company; 2) figure out which data sets you can use, both internal and external; 3) determine optimal roles and responsibilities for your team; 4) identify where you need help, either by hiring new employees or using consultants 5) manage your program effectively over time.
Register for this episode of TechWise to learn from two of the most experienced analysts in the business: Dr. Robin Bloor, Chief Analyst of The Bloor Group, and Dr. Kirk Borne, Data Scientist, George Mason University. Each will provide their perspective on how companies can address each of the key success factors in building, refining and using analytics to improve their business. There will then be an extensive Q&A session in which attendees can ask detailed questions of our experts and get answers in real time. Registrants will also receive a consolidated deck of slides, not just from the main presenters, but also from a variety of software vendors who provide targeted solutions.
Visit InsideAnlaysis.com for more information.
Big Data for Data Scientists - Info SessionWeCloudData
In this talk, WeCloudData introduces the Hadoop/Spark ecosystem and how businesses use big data tools and platforms. For more detail about WeCloudData's big data for data scientist course please visit: https://weclouddata.com/data-science/
RedIRIS 2014 - Revising Software Innovation in Science University and Industr...Jordi Guijarro
This document discusses innovation in cloud computing technologies and software. It outlines the objectives of the Megha Working Group, which was initiated in 2010 to push innovation in cloud technologies by deploying a federated cloud infrastructure for evaluation and exploring cloud possibilities in science, academia, and industry. Key questions are raised about cloud infrastructure being always on and going hybrid. The document also addresses challenges around increasing software needs for eScience, eUniversity, and eIndustry and the need for a sustainability strategy. It provides examples of aligned projects exploiting dynamic modularity and concludes by discussing expanding digital life towards digital intelligence and the need for more open and sustainable software innovation across science, university, software, and industry.
This document discusses implementing a single view of customer data across an enterprise. It begins by outlining common barriers such as a lack of digital experience strategy, silos between teams, and challenges measuring ROI. It then proposes using MongoDB as a flexible data platform to integrate new and existing data sources. Pentaho is recommended for blended analytics across data silos. The approach aims to provide a single customer view, resolve technology skills gaps, and iteratively define strategies by starting small projects and engaging stakeholders.
Confirming PagesLess managing. More teaching. Greater AlleneMcclendon878
Confirming Pages
Less managing. More teaching. Greater learning.
INSTRUCTORS GET:
• Interactive Applications – book-specific interactive
assignments that require students to APPLY what
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• Detailed Visual Reporting where student and
section results can be viewed and analyzed.
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• A filtering and reporting function
that allows you to easily assign and
report on materials that are correlated
to accreditation standards, learning
outcomes, and Bloom’s taxonomy.
• An easy-to-use lecture capture tool.
Would you like your students to show up for class more prepared? (Let’s face it, class
is much more fun if everyone is engaged and prepared…)
Want ready-made application-level interactive assignments, student progress
reporting, and auto-assignment grading? (Less time grading means more time teaching…)
Want an instant view of student or class performance relative to learning
objectives? (No more wondering if students understand…)
Need to collect data and generate reports required for administration or
accreditation? (Say goodbye to manually tracking student learning outcomes…)
Want to record and post your lectures for students to view online?
INSTRUCTORS...
With McGraw-Hill's Connect® MIS,
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Want an online, searchable version of your textbook?
Wish you could reference your textbook online while you’re doing
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Management Information Systems
FOR THE INFORMATION AGE
NINTH EDITION
Stephen Haag
DANIELS COLLEGE OF BUSINESS
UNIVERSITY OF DENVER
Maeve Cummings
KELCE COLLEGE OF BUSINESS
PITTSBURG STATE UNIVERSITY
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MANAGEMENT INFORMATION SYSTEMS FOR THE INF ...
DevOps for Data Engineers - Automate Your Data Science Pipeline with Ansible,...Mihai Criveti
- The document discusses automating data science pipelines with DevOps tools like Ansible, Packer, and Kubernetes.
- It covers obtaining data, exploring and modeling data, and how to automate infrastructure setup and deployment with tools like Packer to build machine images and Ansible for configuration management.
- The rise of DevOps and its cultural aspects are discussed as well as how tools like Packer, Ansible, Kubernetes can help automate infrastructure and deploy machine learning models at scale in production environments.
The document summarizes a presentation about graph databases and Neo4j. It discusses:
1) Why graph databases are useful for modeling connected data and enabling fast querying of relationships.
2) How the Neo4j graph database works with nodes, relationships, and properties to intuitively represent real-world networks.
3) A demonstration of starting a graph database project using Neo4j to model and query connected data.
Developing and deploying AI solutions on the cloud using Team Data Science Pr...Debraj GuhaThakurta
Presented at: Global Big AI Conference, Santa Clara, Jan 2018 Developing and deploying AI solutions on the cloud using Team Data Science Process (TDSP) and Azure Machine Learning (AML)
Hadoop is a Java framework for managing large datasets distributed across clusters of commodity hardware. It allows for the distributed processing of large datasets across clusters of computers using simple programming models. Hadoop features distributed storage and processing of data and is designed to scale up from single servers to thousands of machines, each offering local computation and storage. It provides reliable, scalable, and distributed computing and storage for big data applications.
This document provides an overview of how to build your own personalized search and discovery tool like Microsoft Delve by combining machine learning, big data, and SharePoint. It discusses the Office Graph and how signals across Office 365 are used to populate insights. It also covers big data concepts like Hadoop and machine learning algorithms. Finally, it proposes a high-level architectural concept for building a Delve-like tool using Azure SQL Database, Azure Storage, Azure Machine Learning, and presenting insights.
How to build your own Delve: combining machine learning, big data and SharePointJoris Poelmans
You are experiencing the benefits of machine learning everyday through product recommendations on Amazon & Bol.com, credit card fraud prevention, etc… So how can we leverage machine learning together with SharePoint and Yammer. We will first look into the fundamentals of machine learning and big data solutions and next we will explore how we can combine tools such as Windows Azure HDInsight, R, Azure Machine Learning to extend and support collaboration and content management scenarios within your organization.
This document provides an overview of how to prepare for a career in data science. It discusses the author's own career path, which included degrees in bioinformatics and machine learning as well as jobs as a data scientist. It then outlines the typical data science workflow, including identifying problems, accessing and cleaning data, exploratory analysis, modeling, and deploying results. It emphasizes that data science is an iterative process and stresses the importance of communication skills. Finally, it discusses how data science fits within business contexts and the value of working on teams with complementary skills.
This is a talk about Big Data, focusing on its impact on all of us. It also encourages institution to take a close look on providing courses in this area.
Graphs & GraphRAG - Essential Ingredients for GenAINeo4j
Knowledge graphs are emerging as useful and often necessary for bringing Enterprise GenAI projects from PoC into production. They make GenAI more dependable, transparent and secure across a wide variety of use cases. They are also helpful in GenAI application development: providing a human-navigable view of relevant knowledge that can be queried and visualised.
This talk will share up-to-date learnings from the evolving field of knowledge graphs; why more & more organisations are using knowledge graphs to achieve GenAI successes; and practical definitions, tools, and tips for getting started.
Discover how Neo4j-based GraphRAG and Generative AI empower organisations to deliver hyper-personalised customer experiences. Explore how graph-based knowledge empowers deep context understanding, AI-driven insights, and tailored recommendations to transform customer journeys.
Learn actionable strategies for leveraging Neo4j and Generative AI to revolutionise customer engagement and build lasting relationships.
GraphTalk New Zealand - The Art of The Possible.pptxNeo4j
Discover firsthand how organisations use relationships in data to uncover contextual insights and solve our most pressing challenges – from optimising supply chains, detecting fraud, and improving customer experiences to accelerating drug discoveries.
In this presentation, ANZ will be sharing their journey towards AI-enabled data management at scale. The session will explore how they are modernising their data architecture to support advanced analytics and decision-making. By leveraging a knowledge graph approach, they are enhancing data integration, governance, and discovery, breaking down silos to create a unified view across diverse data sources. This enables AI applications to access and contextualise information efficiently, and drive smarter, data-driven outcomes for the bank. They will also share lessons they are learning and key steps for successfully implementing a scalable, AI-ready data framework.
Google Cloud Presentation GraphSummit Melbourne 2024: Building Generative AI ...Neo4j
GenerativeAI is taking the world by storm while traditional ML maturity and successes continue to accelerate across AuNZ . Learn how Google is working with Neo4J to build a ML foundation for trusted, sustainable, and innovative use cases.
Telstra Presentation GraphSummit Melbourne: Optimising Business Outcomes with...Neo4j
This session will highlight how knowledge graphs can significantly enhance business outcomes by supporting the Data Mesh approach. We’ll discuss how knowledge graphs empower organisations to create and manage data products more effectively, enabling a more agile and adaptive data strategy. By leveraging knowledge graphs, businesses can better organise and connect their data assets, driving innovation and maximising the value derived from their data, ultimately leading to more informed decision-making and improved business performance.
Building Smarter GenAI Apps with Knowledge Graphs
While GenAI offers great potential, it faces challenges with hallucination and limited domain knowledge. Graph-powered retrieval augmented generation (GraphRAG) helps overcome these challenges by integrating vector search with knowledge graphs and data science techniques. This approach improves context, enhances semantic understanding, enables personalisation, and facilitates real-time updates.
In this workshop, you’ll explore detailed code examples to kickstart your journey with GenAI and graphs. You’ll leave with practical skills you can immediately apply to your own projects.
How Siemens bolstered supply chain resilience with graph-powered AI insights ...Neo4j
In this captivating session, Siemens will reveal how Neo4j’s powerful graph database technology uncovers hidden data relationships, helping businesses reach new heights in IT excellence. Just as organizations often face unseen barriers, your business may be missing critical insights buried in your data. Discover how Siemens leverages Neo4j to enhance supply chain resilience, boost sustainability, and unlock the potential of AI-driven insights. This session will demonstrate how to navigate complexity, optimize decision-making, and stay ahead in a constantly evolving market.
Knowledge Graphs for AI-Ready Data and Enterprise Deployment - Gartner IT Sym...Neo4j
Knowledge graphs are emerging as useful and often necessary for bringing Enterprise GenAI projects from PoC into production. They make GenAI more dependable, transparent and secure across a wide variety of use cases. They are also helpful in GenAI application development: providing a human-navigable view of relevant knowledge that can be queried and visualised. This talk will share up-to-date learnings from the evolving field of knowledge graphs; why more & more organisations are using knowledge graphs to achieve GenAI successes; and practical definitions, tools, and tips for getting started.
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/.
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.
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.
This is the keynote of the Into the Box conference, highlighting the release of the BoxLang JVM language, its key enhancements, and its vision for the future.
Complete Guide to Advanced Logistics Management Software in Riyadh.pdfSoftware Company
Explore the benefits and features of advanced logistics management software for businesses in Riyadh. This guide delves into the latest technologies, from real-time tracking and route optimization to warehouse management and inventory control, helping businesses streamline their logistics operations and reduce costs. Learn how implementing the right software solution can enhance efficiency, improve customer satisfaction, and provide a competitive edge in the growing logistics sector of Riyadh.
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.
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.
Andrew Marnell: Transforming Business Strategy Through Data-Driven InsightsAndrew Marnell
With expertise in data architecture, performance tracking, and revenue forecasting, Andrew Marnell plays a vital role in aligning business strategies with data insights. Andrew Marnell’s ability to lead cross-functional teams ensures businesses achieve sustainable growth and operational excellence.
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.
Book industry standards are evolving rapidly. In the first part of this session, we’ll share an overview of key developments from 2024 and the early months of 2025. Then, BookNet’s resident standards expert, Tom Richardson, and CEO, Lauren Stewart, have a forward-looking conversation about what’s next.
Link to recording, presentation slides, and accompanying resource: https://bnctechforum.ca/sessions/standardsgoals-for-2025-standards-certification-roundup/
Presented by BookNet Canada on May 6, 2025 with support from the Department of Canadian Heritage.
UiPath Community Berlin: Orchestrator API, Swagger, and Test Manager APIUiPathCommunity
Join this UiPath Community Berlin meetup to explore the Orchestrator API, Swagger interface, and the Test Manager API. Learn how to leverage these tools to streamline automation, enhance testing, and integrate more efficiently with UiPath. Perfect for developers, testers, and automation enthusiasts!
📕 Agenda
Welcome & Introductions
Orchestrator API Overview
Exploring the Swagger Interface
Test Manager API Highlights
Streamlining Automation & Testing with APIs (Demo)
Q&A and Open Discussion
Perfect for developers, testers, and automation enthusiasts!
👉 Join our UiPath Community Berlin chapter: https://community.uipath.com/berlin/
This session streamed live on April 29, 2025, 18:00 CET.
Check out all our upcoming UiPath Community sessions at https://community.uipath.com/events/.
#StandardsGoals for 2025: Standards & certification roundup - Tech Forum 2025BookNet Canada
Book industry standards are evolving rapidly. In the first part of this session, we’ll share an overview of key developments from 2024 and the early months of 2025. Then, BookNet’s resident standards expert, Tom Richardson, and CEO, Lauren Stewart, have a forward-looking conversation about what’s next.
Link to recording, transcript, and accompanying resource: https://bnctechforum.ca/sessions/standardsgoals-for-2025-standards-certification-roundup/
Presented by BookNet Canada on May 6, 2025 with support from the Department of Canadian Heritage.
Quantum Computing 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.
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?
Technology Trends in 2025: AI and Big Data AnalyticsInData Labs
At InData Labs, we have been keeping an ear to the ground, looking out for AI-enabled digital transformation trends coming our way in 2025. Our report will provide a look into the technology landscape of the future, including:
-Artificial Intelligence Market Overview
-Strategies for AI Adoption in 2025
-Anticipated drivers of AI adoption and transformative technologies
-Benefits of AI and Big data for your business
-Tips on how to prepare your business for innovation
-AI and data privacy: Strategies for securing data privacy in AI models, etc.
Download your free copy nowand implement the key findings to improve your business.
2. Tell us about yourself: Who are you and how
did you come to be working with Graphs?
Question:
3. Can you give us some background about the
Problem you are trying to solve?
Salmon
Background
slide:
4. too much
~100,000 projects, people, places,.
too complicated
many dimensions, each diverse:
ecology, habitat, method, management,
analysis, sociology,.
too dynamic
churn, obsolescence, lags,.
too hidden
technical reports, web pages, Excel files,.
too isolated
important connections missing.
the problem
is information
13. the human ideas
in a decision process
are types of :Idea nodes
in a knowledge graph
14. experiments
2018
who is doing what?
2019
international salmon data laboratory
2020
prototype: decision support
2021
proof: program management
15. Management Use case:
Coordination of salmon projects
Visibility: Who is doing what, where,
when?
Coordination: How do projects align or
conflict with each other, with high level
metrics, with existing knowledge?
Effectiveness: Did we do what we set out
to do? How could we do it better?
24. Organizational Challenges
- New software = new training, IT management
- Information and data are siloed inside business
units
- Cultural, political and security barriers to
engagement and implementation
- Why should I use this?
25. Technical Challenges for Neo4j
- Thousands of node types
- Some nodes and linkages are stochastic
- Some parts of the data schema need to be discovered
by the crowd
- What are some similar graph analysis use-cases?
26. Next steps for Graphish 2.0
- Make user engagement part of the technical workflow
- Identify cross-cutting problems and high value network
analyses
- Let users interact with and structure the graph
- Make it accessible to people managing the current
Salmon crisis