Electronic data processing
Resource Information
The concept Electronic data processing represents the subject, aboutness, idea or notion of resources found in Sydney Jones Library, University of Liverpool.
The Resource
Electronic data processing
Resource Information
The concept Electronic data processing represents the subject, aboutness, idea or notion of resources found in Sydney Jones Library, University of Liverpool.
- Label
- Electronic data processing
- Authority link
- http://id.worldcat.org/fast/00906956
- Source
- fast
216 Items that share the Concept Electronic data processing
Context
Context of Electronic data processingSubject of
No resources found
No enriched resources found
- 2013 data science salary survey : tools, trends, what pays (and what doesn't) for data professionals
- 2014 Ieee 38Th Annual Computer Software and Applications Conference (Compsac)
- 2016 data science salary survey : tools, trends, what pays (and what doesn't) for data professionals
- 2017 European data science salary survey
- 2017 data science salary survey : tools, trends, what pays (and what doesn't) for data professionals
- 2020 International Conference on Emerging Trends in Communication, Control and Computing : copyright information, proceedings : February 21-22, 2020
- 31 Days Before Your CCNP and CCIE Enterprise Core Exam
- A developer's guide to Ethereum
- A dictionary of computing
- A practical guide to algorithmic bias and explainability in machine learning
- Addressing data volume, velocity, and variety with IBM InfoSphere Streams V3.0
- Advanced analytics and real-time data processing in Apache Spark
- Advances in computers, Volume 108
- Advances in computers, Volume 94
- Advances in computers, Volume ninety three
- All models are wrong, but some are useful, especially with the right data
- Améliorer la qualité des services
- An in-depth look at how to survive the data deluge
- Apache Kafka 1.0 cookbook : over 100 practical recipes on using distributed enterprise messaging to handle real-time data
- Apache Spark 2 data processing and real-time analytics : master complex big data processing, stream analytics, and machine learning with Apache
- Apache Spark with Python : big data with PySpark and Spark
- Apache spark graph processing : build, process, and analyze large-scale graphs with Spark
- Applied data science with Python and Jupyter
- Artificial Intelligence Basics : a Self-Teaching Introduction
- AutoIt v3 : your quick guide
- Azure masterclass : analyze data with Azure Stream Analytics
- BCS glossary of computing
- BCS glossary of computing and ICT, 13th edition
- Bad data handbook
- Beginning data analysis with Python and Jupyter : use powerful industry-standard tools to unlock new, actionable insight from your existing data
- Beginning data science with Python and Jupyter
- Better data brings a renewal at the Bank of England : a venerable banking institution is using data in new ways to refine its view of the UK economy
- Big Data Glossary
- Big data analytics beyond Hadoop : real-time applications with Storm, Spark, and more Hadoop alternatives
- Big data analytics using Apache Spark
- Big data for chimps : a guide to massive-scale data processing in practice
- Big data processing with Apache Spark
- Building applications on Mesos
- Building better distributed data pipelines
- Building the data-driven organization
- Business models for the data economy
- Causal inference 101 : answering the crucial "why" in your analysis
- Cleaning up the data lake with an operational data hub
- CompTIA Cloud+ CVO-001 LiveLessons : (sneak peek video training)
- Complete CompTIA® A+ Guide to PCs, Sixth Edition
- Computer fundamentals
- Computer fundamentals and programming in C
- Computer science : a concise introduction
- Computers simplified
- Concepts of database management system
- Configuration et dépannage de PC, 4 edition
- Cracking the data science interview : what to expect and how to succeed
- Data Protection for Virtual Data Centers
- Data Science, 2nd Edition
- Data algorithms : recipes for scaling up with Hadoop and Spark
- Data analysis with Pandas and Python
- Data analysis with Python : a modern approach
- Data architecture : a primer for the data scientist
- Data as a feature : a guide for product managers
- Data driven : creating a data culture
- Data manipulation with R and SQL : building effective, coherent, and streamlined data structures
- Data pipelines with Apache Airflow
- Data preparation for analytics using SAS
- Data quality for analytics using SAS
- Data science with Microsoft Azure and R
- Data visualization recipes in Python
- Data wrangling with Python : creating actionable data from raw sources
- Datenanalyse mit Python
- Datenanalyse mit Python : Auswertung von Daten mit Pandas, NumPy und IPython
- Deep learning for time series data
- Designing for infinity
- DevOps and business : aligning business and IT goals for operational efficiency
- DevOps for models : how to manage millions of models in production, and at the edge
- Distributed Artificial Intelligence
- END-TO-END DATA SCIENCE WITH SAS : a hands-on programming guide;a hands-on programming guide
- Ethereum : tools & skills
- Executive Briefing : Building a culture of self-service from predeployment to continued engagement
- Extracting business value from semi-structured data
- Feature engineering made easy : identify unique features from your dataset in order to build powerful machine learning systems
- Financial governance for data processing in the cloud : managing costs while democratizing data at scale
- Getting started with Hazelcast : get acquainted with the highly scalable data grid, Hazelcast, and learn how to bring its powerful in-memory features into your application
- Getting started with machine learning in R
- Git for grownups
- Hadoop : What You Need to Know
- Hadoop : data processing and modelling : unlock the power of your data with Hadoop 2.X ecosystem and its data warehousing techniques across large data sets
- Hands-on big data analytics with PySpark : analyze large datasets and discover techniques for testing, immunizing, and parallelizing Spark jobs
- Hands-on data analysis with Pandas : efficiently perform data collection, wrangling, analysis, and visualization using Python
- Hands-on data science with Anaconda : utilize the right mix of tools to create high-performance data science applications
- Hands-on machine learning with Scala and Spark
- How to develop big data applications for Hadoop
- How to transfer data to a new Windows 8 computer : (Que video)
- Hybrid analytics solution using IBM DB2 Analytics Accelerator for z/OS V3.1
- IBM POWER8 high-performance computing guide : IBM Power System S822LC (8335-GTB) edition
- IBM Power System AC922 introduction and technical overview
- IBM Power System IC922 technical overview and introduction
- IBM Power Systems Bits : understanding IBM patterns for cognitive systems
- IBM System z connectivity handbook
- IBM System z in a mobile world : providing secure and timely mobile access to the mainframe
- IBM XIV storage system business continuity functions
- IBM high-performance computing insights with IBM Power System AC922 Clustered Solution
- IBM storage solutions for Splunk enterprise
- IMS integration and connectivity across the enterprise
- IT Manager's Handbook, 2nd Edition
- Implementing an IBM high-performance computing solution on IBM POWER8
- Implementing an IBM high-performance computing solution on IBM Power System S822LC
- Implementing the IBM System Storage SAN Volume Controller V6.1
- Informatics 2019 : IEEE 15th International Scientific Conference on Informatics : proceedings : November 20-22, 2019, Poprad, Slovakia
- Introducing regular expressions
- Introduction to Data Technologies
- Introduction to data technologies
- Introduction to quantum physics and information processing
- Introduction to regular expressions in SAS
- Java 9 regular expressions : zero-length assertions, back-references, quantifiers, and more
- Jupyter cookbook : over 75 recipes to perform interactive computing across Python, R, Scala, Spark, JavaScript, and more
- JupyterCon New York 2018
- Kafka : the definitive guide : real-time data and stream processing at scale
- Kafka : the definitive guide : real-time data and stream processing at scale
- Keys to leading highly effective data science teams
- Learn computers step by step
- Learning Apache Storm for big data processing
- Learning Python data analysis
- Learning pandas : get to grips with pandas--a versatile and high-performance Python library for data manipulation, analysis, and discovery
- Learning pandas : high-performance data manipulation and analysis in Python
- Legal, privacy, and marketing issues with big data
- Leveraging entity-resolution to identify customers in 3rd party data
- Mac Kung Fu - 300 Tipps und Tricks für Lion (Prags)
- Mac OS X Lion efficace
- Machine learning and data monetization
- Making sense of stream processing : the philosophy behind Apache Kafka and scalable stream data platforms
- Managing data science : effective strategies to manage data science projects and build a sustainable team
- Mapping big data : a data-driven market report
- Mastering Apache Storm : processing big data streams in real time
- Mastering Scala machine learning : advance your skills in efficient data analysis and data processing using the powerful tools of Scala, Spark, and Hadoop
- Mastering Spark with R : the complete guide to large-scale analysis and modeling
- Microsoft Office Home and Student 2013 Das Handbuch
- National Information Center : hearings before the United States House Committee on Education and Labor, Ad Hoc Subcommittee on a National Research Data Processing and Information Retrieval Center, Eighty-Eighth Congress, first session, on July 18, 19, 1963, Part 2
- National Information Center : hearings before the United States House Committee on Education and Labor, Ad Hoc Subcommittee on a National Research Data Processing and Information Retrieval Center, Eighty-Eighth Congress, first session, on May 27, 28, 1963, Part 1
- National Information Center : hearings before the United States House Committee on Education and Labor, Ad Hoc Subcommittee on a National Research Data Processing and Information Retrieval Center, Eighty-Eighth Congress, first session, on Sept. 17, 19, 1963, Part 3
- NoSQL for mere mortals
- Novell ZENworks 6.5 Suite Administrator's Handbook
- O'Reilly Strata Conference : making data work
- O'Reilly Strata Data Conference 2019, New York, New York
- O'Reilly Strata Data and AI Superstream
- Online evaluation of machine learning models
- Optimizing and troubleshooting Hyper-V storage
- Oracle GoldenGate 11g handbook
- Oracle regular expressions : pocket reference
- Orchestrating, clustering, and managing containers
- Pandas data analysis with Python : going from spreadsheets to pandas
- Pandas data cleaning and modeling with Python
- Pandas for everyone : Python data analysis
- Parallel computing for data science : with examples in R, C++ and CUDA
- Performance optimization and tuning techniques for IBM processors, including IBM POWER8
- Practical Synthetic Data Generation
- Practical data migration
- Practical data migration
- Practical network automation : a beginner's guide to automating and optimizing networks using Python, Ansible, and more
- Pro MySQL NDB Cluster : master the MySQL Cluster lifecycle
- Proceedings of the 47th Annual Hawaii International Conference on System Sciences : 6-9 January 2014, Waikoloa, Hawaii
- Proceedings of the International Conference on Intelligent Computing and Control Systems (ICICCS 2020) : 13-15 May, 2020
- Professional Scala : combine object-oriented and functional programming to build high-performance applications
- Programming with data : Python and Pandas : LiveLessons
- Prototyping with data
- Python Data Analysis : Perform Data Collection, Data Processing, Wrangling, Visualization, and Model Building Using Python
- Python automation cookbook : explore the world of automation using Python recipes that will enhance your skills
- Python, SQL, Tableau : integrating Python, SQL, and Tableau
- R for data science : import, tidy, transform, visualize, and model data
- Real-time searching of big data with Solr and Hadoop
- Rebuilding reliable data pipelines through modern tools
- Release management in TFS
- Riak core
- SAS 9.4 output delivery system : user's guide
- SN Video coding and web development, SQL Server indexing, statistics, and parameter sniffing
- SQL Server Indexing, Statistics, and Parameter Sniffing : Solving Performance Challenges by Designing Better Data Structures
- Scala : applied machine learning : leverage the power of Scala and master the art of building, improving, and validating scalable machine learning and AI applications using Scala's most advanced and finest features : a course in three modules
- Scala : guide for data science professionals : Scala will be a valuable tool to have on hand during your data science journey for everything from data cleaning to cutting-edge machine learning : a course in three modules
- Scala machine learning projects : build real-world machine learning and deep learning projects with Scala
- Scala programming for big data analytics : get started with big data analytics using Apache Spark
- Scaling data services with Pivotal GemFire : getting started with in-memory data grids
- Search logs + machine learning = autotagged inventory
- Sed & awk, kurz & gut
- Setting up your Go development docker environment
- Software testing interview questions
- Spark in motion
- Splunk 7.x quick start guide : gain business data insights from operational intelligence
- Splunk : enterprise operational intelligence delivered : demystify big data and discover how to bring operational intelligence to your data to revolutionize your work
- Streaming change data capture : a foundation for modern data architectures
- Streaming data : understanding the real-time pipeline
- Supersized data? : Get real-time insights
- Tableau 2019.1 for data scientists
- The Art of Monitoring
- The Docker Book
- The Packer Book
- The Tao of computing
- The art and science of analyzing software data
- The big data transformation : understanding why change is actually good for your business
- The concise PRINCE2 : a pocket guide
- The essential guide to computing
- The real-time video collection : 2016
- The state of data analytics and visualization adoption
- Think like a data scientist : tackle the data science process step-by-step
- Time series analysis with Pandas
- Trill : the crown jewel of Microsoft's streaming pipeline explained
- Type inheritance and relational theory
- Type inheritance and relational theory : subtypes, supertypes, and substitutability : inheritance in The third manifesto
- Understanding message brokers : learn the mechanics of messaging though ActiveMQ and Kafka
- Using AutoML to automate selection of machine learning models and hyperparameters
- Using R to unlock the value of big data : big data analytics with Oracle R Enterprise and Oracle R Connector for Hadoop
- Visualizing shared, distributed data
- What is DevOps?
- What is DevOps?
- What is data engineering? : a role for data science enablers
- What is data science?
- Where's the Money in Big Data
- Winning with software : an executive strategy
- Working with Elasticsearch : search, aggregate, analyze, and scale large volume datastores
Embed
Settings
Select options that apply then copy and paste the RDF/HTML data fragment to include in your application
Embed this data in a secure (HTTPS) page:
Layout options:
Include data citation:
<div class="citation" vocab="http://schema.org/"><i class="fa fa-external-link-square fa-fw"></i> Data from <span resource="http://link.liverpool.ac.uk/resource/jUMzPzmvhaw/" typeof="CategoryCode http://bibfra.me/vocab/lite/Concept"><span property="name http://bibfra.me/vocab/lite/label"><a href="http://link.liverpool.ac.uk/resource/jUMzPzmvhaw/">Electronic data processing</a></span> - <span property="potentialAction" typeOf="OrganizeAction"><span property="agent" typeof="LibrarySystem http://library.link/vocab/LibrarySystem" resource="http://link.liverpool.ac.uk/"><span property="name http://bibfra.me/vocab/lite/label"><a property="url" href="http://link.liverpool.ac.uk/">Sydney Jones Library, University of Liverpool</a></span></span></span></span></div>
Note: Adjust the width and height settings defined in the RDF/HTML code fragment to best match your requirements
Preview
Cite Data - Experimental
Data Citation of the Concept Electronic data processing
Copy and paste the following RDF/HTML data fragment to cite this resource
<div class="citation" vocab="http://schema.org/"><i class="fa fa-external-link-square fa-fw"></i> Data from <span resource="http://link.liverpool.ac.uk/resource/jUMzPzmvhaw/" typeof="CategoryCode http://bibfra.me/vocab/lite/Concept"><span property="name http://bibfra.me/vocab/lite/label"><a href="http://link.liverpool.ac.uk/resource/jUMzPzmvhaw/">Electronic data processing</a></span> - <span property="potentialAction" typeOf="OrganizeAction"><span property="agent" typeof="LibrarySystem http://library.link/vocab/LibrarySystem" resource="http://link.liverpool.ac.uk/"><span property="name http://bibfra.me/vocab/lite/label"><a property="url" href="http://link.liverpool.ac.uk/">Sydney Jones Library, University of Liverpool</a></span></span></span></span></div>