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Big data analytics: Technology's bleeding edge
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A connected city brings benefits to the residents and the municipal agencies and departments that serve them. For instance, smart lighting is more efficient, saving substantial costs to the city which can be passed down to the residents, and it also provides added safety and security. Connected cars and street lights can enable traffic managers to control traffic lights to optimize the flow of traffic in the most congested areas. From services to safety a smart, connected city, will be a successful and economically sound city.
MassIntelligence 2018: Intelligent Connected Cities
MassIntelligence 2018: Intelligent Connected Cities
MassTLC
Dr. Ames discusses how new tools and technologies in AI are disrupting the traditional AI workflow. She shares pragmatic and tangible recommendations for building an AI solution (faster, better and smarter) and shares new tools on the market today to help you rapidly prototype your AI Solution.
MassIntelligence 2018: How to Rapidly Prototype an AI Solution
MassIntelligence 2018: How to Rapidly Prototype an AI Solution
MassTLC
Ed Anthes-Washburn, Executive Director of the New Bedford (MA) Port Authority, details how the port's data bank can be used to protect fishing resources while providing fishermen with a financial asset
MassIntelligence 2018: Connecting the Nation's Top Fishing Port
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MassTLC
Transportation is one of the most fundamental aspects facing humanity around the world. Advances in the automotive industry will allow all individuals to travel in a variety of conditions. Our panel of experts will discuss the role AI currently plays, what is being deployed in vehicles today, and what is on the horizon, both in and outside of the vehicles.
MassIntelligence 2018: Transportation & Mobility, Alex Wyglinski
MassIntelligence 2018: Transportation & Mobility, Alex Wyglinski
MassTLC
Ground truth for data is frequently missing in business. It is either unavailable, expensive to get, or private. This talk focuses on the ubiquity of this problem in today’s world in which more and more of the data production flows require Machine Learning/Artificial Intelligence algorithms. How can we measure the accuracy of our algorithms/robots when curated data is scarce or missing? We offer a universal suggestion to solving these problems – bypass the need for detailed knowledge of the ground truth for your data by estimating directly the statistics of interest for research and business development. We suggest that a future with smart robots will require that they measure their own errors so they can function autonomously from humans. We illustrate this approach with four real-world examples Focusing multiple aerial maps into a precise final map – ground truthunknown. Studying the dynamics of data flows in a large ad-tech database withHyperLogLog – ground truth expensive. Measuring the accuracy of a unique web ID service (super cookie)without user identity – ground truth private. Measuring the accuracy of binary classifiers – ground truth unknown.
Andres Corrada-Emmanuel - Ground Truth Problems in Business
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MassTLC
In June of 2018, MassTLC's product marketing peer group met to discuss product launch campaign strategies. Jason Baudreau from NetBrain facilitated one of the conversations, here is his presentation.
MassTLC product launch campaign strategies, Jason Baudreau, NetBrain
MassTLC product launch campaign strategies, Jason Baudreau, NetBrain
MassTLC
In June of 2018, MassTLC's product marketing peer group met to discuss product launch campaign strategies. Ben Austin from Carbon Black facilitated one of the conversations, here is his presentation.
MassTLC product launch campaign strategies, ben austin, Carbon Black
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MassTLC
Forget about A.G.I. Let's Build Useable Ai Tools!
Forget about A.G.I. Let's Build Useable Ai Tools!
Forget about A.G.I. Let's Build Useable Ai Tools!
MassTLC
Cloud Edge Computing: Beyond the Data Center
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MassTLC
Gene Shkolnik
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MassTLC
Keynote for MassTLC's Intersection of IoT and Robotics
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Lisa seacat deluca io t robotics presentation
MassTLC
Balancing the future vision of the connected city with citizens' protections
Smart cities thinking outside the box
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MassTLC Opening Slides and Simulation Session
MassTLC Opening Slides and Simulation Session
MassTLC Opening Slides and Simulation Session
MassTLC
Presentation given for MassTLC CXO Forum: Designing the Future in an age of Disruption.
Tom Hopcroft: State of the Tech Economy Key Findings
Tom Hopcroft: State of the Tech Economy Key Findings
MassTLC
Presentation given for MassTLC CXO Forum: Designing the Future in an age of Disruption.
Michael Goodman: The State of the State Economy
Michael Goodman: The State of the State Economy
MassTLC
Allison MacLeod, Sr. Director of Demand Gen at Rapid7 presented "Making Predictive Analytics Work" at the MassTLC sales and marketing conference, March 2016
MassTLC summit_amacleod_predictiveanalytics
MassTLC summit_amacleod_predictiveanalytics
MassTLC
Inside a B2B Brand Revitalization was presented at the MassTLC sales and marketing conference on 3/24/16 by Robin Saitz, CMO at Brainshark.
Brainshark mass tlc brand revitalizaion_final for distribution
Brainshark mass tlc brand revitalizaion_final for distribution
MassTLC
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MassIntelligence 2018: How to Rapidly Prototype an AI Solution
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MassIntelligence 2018: Connecting the Nation's Top Fishing Port
MassIntelligence 2018: Transportation & Mobility, Alex Wyglinski
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Andres Corrada-Emmanuel - Ground Truth Problems in Business
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In this talk, we are going to cover the use-case of food image generation at Delivery Hero, its impact and the challenges. In particular, we will present our image scoring solution for filtering out inappropriate images and elaborate on the models we are using.
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
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The Good, the Bad and the Governed - Why is governance a dirty word? David O'Neill, Chief Operating Officer - APIContext Apidays New York 2024: The API Economy in the AI Era (April 30 & May 1, 2024) ------ Check out our conferences at https://www.apidays.global/ Do you want to sponsor or talk at one of our conferences? https://apidays.typeform.com/to/ILJeAaV8 Learn more on APIscene, the global media made by the community for the community: https://www.apiscene.io Explore the API ecosystem with the API Landscape: https://apilandscape.apiscene.io/
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Tracing the root cause of a performance issue requires a lot of patience, experience, and focus. It’s so hard that we sometimes attempt to guess by trying out tentative fixes, but that usually results in frustration, messy code, and a considerable waste of time and money. This talk explains how to correctly zoom in on a performance bottleneck using three levels of profiling: distributed tracing, metrics, and method profiling. After we learn to read the JVM profiler output as a flame graph, we explore a series of bottlenecks typical for backend systems, like connection/thread pool starvation, invisible aspects, blocking code, hot CPU methods, lock contention, and Virtual Thread pinning, and we learn to trace them even if they occur in library code you are not familiar with. Attend this talk and prepare for the performance issues that will eventually hit any successful system. About authorWith two decades of experience, Victor is a Java Champion working as a trainer for top companies in Europe. Five thousands developers in 120 companies attended his workshops, so he gets to debate every week the challenges that various projects struggle with. In return, Victor summarizes key points from these workshops in conference talks and online meetups for the European Software Crafters, the world’s largest developer community around architecture, refactoring, and testing. Discover how Victor can help you on victorrentea.ro : company training catalog, consultancy and YouTube playlists.
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
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Webinar Recording: https://www.panagenda.com/webinars/why-teams-call-analytics-is-critical-to-your-entire-business Nothing is as frustrating and noticeable as being in an important call and being unable to see or hear the other person. Not surprising then, that issues with Teams calls are among the most common problems users call their helpdesk for. Having in depth insight into everything relevant going on at the user’s device, local network, ISP and Microsoft itself during the call is crucial for good Microsoft Teams Call quality support. To ensure a quick and adequate solution and to ensure your users get the most out of their Microsoft 365. But did you know that ‘bad calls’ are also an excellent indicator of other problems arising? Precisely because it is so noticeable!? Like the canary in the mine, bad calls can be early indicators of problems. Problems that might otherwise not have been noticed for a while but can have a big impact on productivity and satisfaction. Join this session by Christoph Adler to learn how true Microsoft Teams call quality analytics helped other organizations troubleshoot bad calls and identify and fix problems that impacted Teams calls or the use of Microsoft365 in general. See what it can do to keep your users happy and productive! In this session we will cover - Why CQD data alone is not enough to troubleshoot call problems - The importance of attributing call problems to the right call participant - What call quality analytics can do to help you quickly find, fix-, and prevent problems - Why having retrospective detailed insights matters - Real life examples of how others have used Microsoft Teams call quality monitoring to problem shoot problems with their ISP, network, device health and more.
Why Teams call analytics are critical to your entire business
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This Slide deck talk about how FHIR is being used in Ayushman Bharat Digital Mission (ABDM). It introduces the readers to ABDM and also to FHIR Documents paradigm. This is part of FHIR India community Basics learning initiative.
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MINDCTI Revenue Release Quarter 1 2024
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Scaling API-first – The story of a global engineering organization Ian Reasor, Senior Computer Scientist - Adobe Radu Cotescu, Senior Computer Scientist - Adobe Apidays New York 2024: The API Economy in the AI Era (April 30 & May 1, 2024) ------ Check out our conferences at https://www.apidays.global/ Do you want to sponsor or talk at one of our conferences? https://apidays.typeform.com/to/ILJeAaV8 Learn more on APIscene, the global media made by the community for the community: https://www.apiscene.io Explore the API ecosystem with the API Landscape: https://apilandscape.apiscene.io/
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
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apidays
The microservices honeymoon is over. When starting a new project or revamping a legacy monolith, teams started looking for alternatives to microservices. The Modular Monolith, or 'Modulith', is an architecture that reaps the benefits of (vertical) functional decoupling without the high costs associated with separate deployments. This talk will delve into the advantages and challenges of this progressive architecture, beginning with exploring the concept of a 'module', its internal structure, public API, and inter-module communication patterns. Supported by spring-modulith, the talk provides practical guidance on addressing the main challenges of a Modultith Architecture: finding and guarding module boundaries, data decoupling, and integration module-testing. You should not miss this talk if you are a software architect or tech lead seeking practical, scalable solutions. About the author With two decades of experience, Victor is a Java Champion working as a trainer for top companies in Europe. Five thousands developers in 120 companies attended his workshops, so he gets to debate every week the challenges that various projects struggle with. In return, Victor summarizes key points from these workshops in conference talks and online meetups for the European Software Crafters, the world’s largest developer community around architecture, refactoring, and testing. Discover how Victor can help you on victorrentea.ro : company training catalog, consultancy and YouTube playlists.
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
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Terragrunt, Terraspace, Terramate, terra... whatever. What is wrong with Terraform so people keep on creating wrappers and solutions around it? How OpenTofu will affect this dynamic? In this presentation, we will look into the fundamental driving forces behind a zoo of wrappers. Moreover, we are going to put together a wrapper ourselves so you can make an educated decision if you need one.
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Following the popularity of “Cloud Revolution: Exploring the New Wave of Serverless Spatial Data,” we’re thrilled to announce this much-anticipated encore webinar. In this sequel, we’ll dive deeper into the Cloud-Native realm by uncovering practical applications and FME support for these new formats, including COGs, COPC, FlatGeoBuf, GeoParquet, STAC, and ZARR. Building on the foundation laid by industry leaders Michelle Roby of Radiant Earth and Chris Holmes of Planet in the first webinar, this second part offers an in-depth look at the real-world application and behind-the-scenes dynamics of these cutting-edge formats. We will spotlight specific use-cases and workflows, showcasing their efficiency and relevance in practical scenarios. Discover the vast possibilities each format holds, highlighted through detailed discussions and demonstrations. Our expert speakers will dissect the key aspects and provide critical takeaways for effective use, ensuring attendees leave with a thorough understanding of how to apply these formats in their own projects. Elevate your understanding of how FME supports these cutting-edge technologies, enhancing your ability to manage, share, and analyze spatial data. Whether you’re building on knowledge from our initial session or are new to the serverless spatial data landscape, this webinar is your gateway to mastering cloud-native formats in your workflows.
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
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Join our latest Connector Corner webinar to discover how UiPath Integration Service revolutionizes API-centric automation in a 'Quote to Cash' process—and how that automation empowers businesses to accelerate revenue generation. A comprehensive demo will explore connecting systems, GenAI, and people, through powerful pre-built connectors designed to speed process cycle times. Speakers: James Dickson, Senior Software Engineer Charlie Greenberg, Host, Product Marketing Manager
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
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Keynote 2: APIs in 2030: The Risk of Technological Sleepwalk Paolo Malinverno, Growth Advisor - The Business of Technology Apidays New York 2024: The API Economy in the AI Era (April 30 & May 1, 2024) ------ Check out our conferences at https://www.apidays.global/ Do you want to sponsor or talk at one of our conferences? https://apidays.typeform.com/to/ILJeAaV8 Learn more on APIscene, the global media made by the community for the community: https://www.apiscene.io Explore the API ecosystem with the API Landscape: https://apilandscape.apiscene.io/
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In this keynote, Asanka Abeysinghe, CTO,WSO2 will explore the shift towards platformless technology ecosystems and their importance in driving digital adaptability and innovation. We will discuss strategies for leveraging decentralized architectures and integrating diverse technologies, with a focus on building resilient, flexible, and future-ready IT infrastructures. We will also highlight WSO2's roadmap, emphasizing our commitment to supporting this transformative journey with our evolving product suite.
Platformless Horizons for Digital Adaptability
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When you’re building (micro)services, you have lots of framework options. Spring Boot is no doubt a popular choice. But there’s more! Take Quarkus, a framework that’s considered the rising star for Kubernetes-native Java. It always depends on what's best for your situation, but how to choose the best solution if you're comparing 2 frameworks? Both Spring Boot and Quarkus have their positives and negatives. Let us compare the two by live coding a couple of common use cases in Spring Boot and Quarkus. After this talk, you’ll be ready to get started with Quarkus yourself, and know when to select Quarkus or Spring Boot.
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Michael Stonebraker How to do Complex Analytics
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