Building with Watson: Streaming data enhanced with PubNub BLOCKS and Conversation
Join Josh Marinacci, Head of Developer Relations at PubNub, and his geology-themed chatbot, Mr. Rockbot, as he demonstrates how easy it is both to manage streaming data with PubNub and add the Watson-powered, machine-intelligent Conversation service to your streams with the PubNub BLOCKS technology.
BLOCKS is a set of customizable microservices that give developers a simple way to add code and deploy features for real-time apps. The serverless architecture gives developers a single-click way to add real-time functions to an app.
In this video, Josh will use a Conversation service BLOCK to build Mr. Rockbot. He also explains serverless chatbots (just think of them as functions and stop worrying about setting up the server; they are a content delivery network, or CDN, for computation). The benefit is that the serverless app or bot will find and use the data it needs at the nearest available server in the great network of servers.
Serverless apps and bots also tend to scale easily. Josh details the chatbot requirements:
- They must have a real-time infrastructure
- And possess some level of artificial or augmented intelligence
- They should carry domain-specific knowledge
But, as Josh points out, he uses the word requirements – it’s what’s great about serverless. These are requirements, not the focus of your efforts. You don’t go build your own real-time infrastructure, you don’t supply the intelligence systems.
Resources for you
相關推薦
Building with Watson: Streaming data enhanced with PubNub BLOCKS and Conversation
Join Josh Marinacci, Head of Developer Relations at PubNub, and his geology-themed chatbot, Mr. Rockbot, as he demonstrates how easy it is both to manage
Building with Watson: Integrate Tone Analyzer with Conversation
IBM Watson Senior Software Engineer Dan O’Connor takes you on a short introduction to changes in the customer care industry (from human CSRs to automated,
Building with Watson: Advanced audio transcription with Speech to Text
IBM Watson Senior Offering Manager Bhavik Shah discusses the Speech to Text service and the host of recent improvements and new features designed to make
SDP(0):Streaming-Data-Processor - Data Processing with Akka-Stream
數據庫管理 新的 集成 部分 ont lock 感覺 sharding 數據源 再有兩天就進入2018了,想想還是要準備一下明年的工作方向。回想當初開始學習函數式編程時的主要目的是想設計一套標準API給那些習慣了OOP方式開發商業應用軟件的程序員們,使他們能用一種接近
Building Data Models with PowerPivot_進階篇2
5.1 使用 Userelationship 建立兩表之間的多個關係 USERELATIONSHIP(多端,一端) Measure_送貨數量 = CALCULATE(SUM([數量])),USERELATIONSHIP('銷售記錄'[實際送貨日期],'日曆年'[日期]) 5.2
Building Data Models with PowerPivot_進階篇
Building Data Models with PowerPivot_進階篇 2.3 使用連結回標進行RFM分析 R Recent近度 MIN([近度]); [近度]=TODAY()-[下單日期] 3.1 使用高階DAX函式 高階聚合函式SUMX SUMX函式
Building a Big Data Pipeline With Airflow, Spark and Zeppelin
Building a Big Data Pipeline With Airflow, Spark and Zeppelin“black tunnel interior with white lights” by Jared Arango on UnsplashIn this data-driven era,
Getting Streaming data from Kafka with Spark Streaming using Python.
Getting Streaming data from Kafka with Spark Streaming using Python.If you are looking to use spark to perform data transformation and manipulation when da
Building a Data Processing Pipeline with Amazon Kinesis Data Streams and Kubeless
If you’re already running Kubernetes, FaaS (Functions as a Service) platforms on Kubernetes can help you leverage your existing investment in EC2
Building with Watson
Learn about the new Passage Retrieval and Relevancy Training beta capabilities of Watson Discovery Service, two tools that enable users to get the informat
Building with Watson: Enhance Discovery with relevance training
IBM Offering Manager Anish Mathur explains the new Passage Retrieval and Relevancy Training beta capabilities of Watson Discovery Service, two tools that
Building with Watson: Connect the dots in your domain-specific content
IBM Watson can extract helpful insights about your data out of the box. Like a knowledgeable friend, it “reads” through data to show you its themes and im
Building with Watson: Introduction to Natural Language Understanding
In this video, developer Joshua Elliott will take you on a journey to learn the development basics of using Natural Language Understanding as he demonstra
解決Problem with writing the data, class java.util.ArrayList, ContentType: application/xml
writing 數據庫 今天,在使用cxf讀取內網數據庫的數據時,報以下一個錯誤Problem with writing the data, class java.util.ArrayList, ContentType: application/xml以上錯誤提示我們,在寫入數據時有錯誤,最後經檢查
Data Analysis with Python : Exercise- Titantic Survivor Analysis | packtpub.com
.com pub nal kaggle out conda anti vivo python kaggle-titantic, from: https://www.youtube.com/watch?v=siEPqQsPLKA install matplotlib: con
論文閱讀筆記《The Contextual Loss for Image Transformationwith Non-Aligned Data》(ECCV2018 oral)
github 區域 偏移 org nbsp 修改 transfer style 但是 目錄: 相關鏈接 方法亮點 相關工作 方法細節 實驗結果 總結與收獲 相關鏈接 論文:https://arxiv.org/abs/1803.02077 代碼:https://
Objects are not valid as a React child (found: object with keys {status, data, operationId, correlat
Objects are not valid as a React child (found: object with keys {status, data, operationId, correlationId}). If you meant to render a collection of ch
Change the default MySQL data directory with SELinux enabled
轉載:https://rmohan.com/?p=4605 Change the default MySQL data directory with SELinux enabled This is a short article that explains how you
DataCamp Data Scientist with Python track 學習筆記
Importing Data in Python: Customizing your pandas import: # Import matplotlib.pyplot as plt import matplotlib.pyplot as plt #
Modern Data Lake with Minio : Part 1
轉自:https://blog.minio.io/modern-data-lake-with-minio-part-1-716a49499533 Modern data lakes are now built on cloud storage, helping organizations lever