Open Government Licence 3.0http://www.nationalarchives.gov.uk/doc/open-government-licence/version/3/
License information was derived automatically
This Website Statistics dataset has four resources showing usage of the Lincolnshire Open Data website. Web analytics terms used in each resource are defined in their accompanying Metadata file.
Website Usage Statistics: This document shows a statistical summary of usage of the Lincolnshire Open Data site for the latest calendar year.
Website Statistics Summary: This dataset shows a website statistics summary for the Lincolnshire Open Data site for the latest calendar year.
Webpage Statistics: This dataset shows statistics for individual Webpages on the Lincolnshire Open Data site by calendar year.
Dataset Statistics: This dataset shows cumulative totals for Datasets on the Lincolnshire Open Data site that have also been published on the national Open Data site Data.Gov.UK - see the Source link.
Note: Website and Webpage statistics (the first three resources above) show only UK users, and exclude API calls (automated requests for datasets). The Dataset Statistics are confined to users with javascript enabled, which excludes web crawlers and API calls.
These Website Statistics resources are updated annually in January by the Lincolnshire County Council Business Intelligence team. For any enquiries about the information contact opendata@lincolnshire.gov.uk.
As of September 2024, 75 percent of the 100 most visited websites in the United States shared personal data with advertising 3rd parties, even when users opted out. Moreover, 70 percent of them drop advertising 3rd party cookies even when users opt out.
https://www.sci-tech-today.com/privacy-policyhttps://www.sci-tech-today.com/privacy-policy
Website Statistics: The internet landscape is constantly evolving, and understanding the dynamics of website development and browser usage is crucial for businesses and individuals alike. In 2024, the web design and development industry has grown significantly, driven by increased demand for innovative and responsive web solutions. Major browsers like Google Chrome, Safari, and Microsoft Edge dominate the market, each offering unique features that cater to diverse user needs.
This article delves into the latest statistics, market shares, and technological trends in the web development and browser domains, providing valuable insights to help you navigate the digital world effectively.
https://www.semrush.com/company/legal/terms-of-service/https://www.semrush.com/company/legal/terms-of-service/
campaign-statistics.com is ranked #94773 in US with 298.13K Traffic. Categories: . Learn more about website traffic, market share, and more!
An analysis showed that as of April 2024 only ** percent of small business home pages in the United States provided the users with contact information for the company they represented. Most commonly featured elements were photographs and call-to-action buttons, included on ** percent and ** percent of SME home pages, respectively.
https://webtechsurvey.com/termshttps://webtechsurvey.com/terms
A complete list of live websites using the Burst Statistics technology, compiled through global website indexing conducted by WebTechSurvey.
Business Software Alliance is a trade association that represents the world's leading software companies, including Autodesk, IBM, and Symantec. The organization's members are committed to promoting the use of legitimate software and ensuring the integrity of their intellectual property.
As a result, the data housed on BSA's website is rich in information related to the software industry, including software licensing, anti-piracy efforts, and digital piracy statistics. The data includes information on software usage, software development, and the impact of piracy on the technology industry. With its focus on promoting legitimate software use, the data on BSA's website provides valuable insights into the global software industry.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
Monthly statistics for pages viewed by visitors to the Queensland Government website—Homes and housing franchise. Source: Google Analytics
PredictLeads Key Customers Data provides essential business intelligence by analyzing company relationships, uncovering vendor partnerships, client connections, and strategic affiliations through advanced web scraping and logo recognition. This dataset captures business interactions directly from company websites, offering valuable insights into market positioning, competitive landscapes, and growth opportunities.
Use Cases:
✅ Account Profiling – Gain a 360-degree customer view by mapping company relationships and partnerships. ✅ Competitive Intelligence – Track vendor-client connections and business affiliations to identify key industry players. ✅ B2B Lead Targeting – Prioritize leads based on their business relationships, improving sales and marketing efficiency. ✅ CRM Data Enrichment – Enhance company records with detailed key customer data, ensuring data accuracy. ✅ Market Research – Identify emerging trends and industry networks to optimize strategic planning.
Key API Attributes:
📌 PredictLeads Key Customers Data is an indispensable tool for B2B sales, marketing, and market intelligence teams, providing actionable relationship insights to drive targeted outreach, competitor tracking, and strategic decision-making.
PredictLeads Docs: https://docs.predictleads.com/v3/guide/connections_dataset
As of 2024, WordPress.org is the leading website builder in the world, accounting for over ** percent of global market share. Wix and Squarespace ranked as the second and third most popular website building platforms, each of which accounted for ** and *** percent respectively of market share. Website builders Website building tools such as Wix and Squarespace allow for users to construct and manage customizable websites without the need for advanced coding knowledge. These platforms often include customizable design templates and offer extensions for e-commerce and mailing lists. Although Wix has the biggest worldwide market share, Weebly and Squarespace rank as the most popular platforms in the United States. As the functionality offered by these platforms increases, so too does the market’s overall revenue figure. Between 2012 and 2017 website builder revenue increased from around ****billion U.S. dollars to over *** billion dollars. As overall web traffic and global internet access continue to rise, it has become increasingly important for businesses to have an online site for sales, marketing, and general contact information. These website building tools allow businesses of all sizes to maintain an online presence without having to spend huge sums of money on web design or coding.
During a study conducted among e-commerce professionals in the UK and the U.S. in *********, respondents were asked about their use of personalization on their websites. According to the results, ** percent of survey participants were already using real-time behavioral data to personalize user experience on their e-commerce websites.
https://electroiq.com/privacy-policyhttps://electroiq.com/privacy-policy
edX Statistics: In this digital era, online learning has developed into a powerful tool for education and career enhancement. Among many platforms in this regard, edX is a key provider of Massive Open Online Courses (MOOCs). Founded by Harvard University and MIT, edX grew in 2012 and has continued to do so by offering thousands of courses in various fields. In 2024, edX has achieved new milestones in terms of its users, revenue, partnerships, and courses.
This article shall look at the latest edX statistics concerning its influence on learners and the future of education.
https://www.semrush.com/company/legal/terms-of-service/https://www.semrush.com/company/legal/terms-of-service/
data.ai is ranked #48448 in US with 388.83K Traffic. Categories: . Learn more about website traffic, market share, and more!
Code:
Packet_Features_Generator.py & Features.py
To run this code:
pkt_features.py [-h] -i TXTFILE [-x X] [-y Y] [-z Z] [-ml] [-s S] -j
-h, --help show this help message and exit -i TXTFILE input text file -x X Add first X number of total packets as features. -y Y Add first Y number of negative packets as features. -z Z Add first Z number of positive packets as features. -ml Output to text file all websites in the format of websiteNumber1,feature1,feature2,... -s S Generate samples using size s. -j
Purpose:
Turns a text file containing lists of incomeing and outgoing network packet sizes into separate website objects with associative features.
Uses Features.py to calcualte the features.
startMachineLearning.sh & machineLearning.py
To run this code:
bash startMachineLearning.sh
This code then runs machineLearning.py in a tmux session with the nessisary file paths and flags
Options (to be edited within this file):
--evaluate-only to test 5 fold cross validation accuracy
--test-scaling-normalization to test 6 different combinations of scalers and normalizers
Note: once the best combination is determined, it should be added to the data_preprocessing function in machineLearning.py for future use
--grid-search to test the best grid search hyperparameters - note: the possible hyperparameters must be added to train_model under 'if not evaluateOnly:' - once best hyperparameters are determined, add them to train_model under 'if evaluateOnly:'
Purpose:
Using the .ml file generated by Packet_Features_Generator.py & Features.py, this program trains a RandomForest Classifier on the provided data and provides results using cross validation. These results include the best scaling and normailzation options for each data set as well as the best grid search hyperparameters based on the provided ranges.
Data
Encrypted network traffic was collected on an isolated computer visiting different Wikipedia and New York Times articles, different Google search queres (collected in the form of their autocomplete results and their results page), and different actions taken on a Virtual Reality head set.
Data for this experiment was stored and analyzed in the form of a txt file for each experiment which contains:
First number is a classification number to denote what website, query, or vr action is taking place.
The remaining numbers in each line denote:
The size of a packet,
and the direction it is traveling.
negative numbers denote incoming packets
positive numbers denote outgoing packets
Figure 4 Data
This data uses specific lines from the Virtual Reality.txt file.
The action 'LongText Search' refers to a user searching for "Saint Basils Cathedral" with text in the Wander app.
The action 'ShortText Search' refers to a user searching for "Mexico" with text in the Wander app.
The .xlsx and .csv file are identical
Each file includes (from right to left):
The origional packet data,
each line of data organized from smallest to largest packet size in order to calculate the mean and standard deviation of each packet capture,
and the final Cumulative Distrubution Function (CDF) caluclation that generated the Figure 4 Graph.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
Traffic statistics for the For government franchise on the Queensland Government website. Source: Google Analytics.
CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
License information was derived automatically
This data about nola.gov provides a window into how people are interacting with the the City of New Orleans online. The data comes from a unified Google Analytics account for New Orleans. We do not track individuals and we anonymize the IP addresses of all visitors.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
This dataset contains statistics related to the Unleashed website (http://uladl.com). Unleashed is an open data competition, an initiative of the Office for Digital Government, Department of the Premier and Cabinet. The data is used to monitor the level of engagement activity with the audience, and make the communication effective in regards to the event.
https://webtechsurvey.com/termshttps://webtechsurvey.com/terms
A complete list of live websites using the WordPress Stats technology, compiled through global website indexing conducted by WebTechSurvey.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
59,000+ WordPress plugins are in the official directory, with new ones being added daily.
https://datafeature.com/privacy-policyhttps://datafeature.com/privacy-policy
You would have come across the term SSL while talking about website security and encryption. Even if you haven’t heard the term, you have come across websites that use SSL certificates. Well, if you see HTTPS on the URL bar when you open a website, it means the site is...
Open Government Licence 3.0http://www.nationalarchives.gov.uk/doc/open-government-licence/version/3/
License information was derived automatically
This Website Statistics dataset has four resources showing usage of the Lincolnshire Open Data website. Web analytics terms used in each resource are defined in their accompanying Metadata file.
Website Usage Statistics: This document shows a statistical summary of usage of the Lincolnshire Open Data site for the latest calendar year.
Website Statistics Summary: This dataset shows a website statistics summary for the Lincolnshire Open Data site for the latest calendar year.
Webpage Statistics: This dataset shows statistics for individual Webpages on the Lincolnshire Open Data site by calendar year.
Dataset Statistics: This dataset shows cumulative totals for Datasets on the Lincolnshire Open Data site that have also been published on the national Open Data site Data.Gov.UK - see the Source link.
Note: Website and Webpage statistics (the first three resources above) show only UK users, and exclude API calls (automated requests for datasets). The Dataset Statistics are confined to users with javascript enabled, which excludes web crawlers and API calls.
These Website Statistics resources are updated annually in January by the Lincolnshire County Council Business Intelligence team. For any enquiries about the information contact opendata@lincolnshire.gov.uk.