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TwitterDescription: This dataset contains detailed information about videos from various YouTube channels that specialize in data science and analytics. It includes metrics such as views, likes, comments, and publication dates. The dataset consists of 22862 rows, providing a robust sample for analyzing trends in content engagement, popularity of topics over time, and comparison of channels' performance.
Column Descriptors:
Channel_Name: The name of the YouTube channel. Title: The title of the video. Published_date: The date when the video was published. Views: The number of views the video has received. Like_count: The number of likes the video has received. Comment_Count: The number of comments on the video.
This dataset contains information from the following YouTube channels:
['sentdex', 'freeCodeCamp.org' ,'CampusX', 'Darshil Parmar',' Keith Galli' ,'Alex The Analyst', 'Socratica' , Krish Naik', 'StatQuest with Josh Starmer', 'Nicholas Renotte', 'Leila Gharani', 'Rob Mulla' ,'Ryan Nolan Data', 'techTFQ', 'Dataquest' ,'WsCube Tech', 'Chandoo', 'Luke Barousse', 'Andrej Karpathy', 'Thu Vu data analytics', 'Guy in a Cube', 'Tableau Tim', 'codebasics', 'DeepLearningAI', 'Rishabh Mishra' 'ExcelIsFun', 'Kevin Stratvert' ' Ken Jee','Kaggle' , 'Tina Huang']
This dataset can be used for various analyses, including but not limited to:
Identifying the most popular videos and channels in the data science field.
Understanding viewer engagement trends over time.
Comparing the performance of different types of content across multiple channels.
Performing a comparison between different channels to find the best-performing ones.
Identifying the best videos to watch for specific topics in data science and analytics.
Conducting a detailed analysis of your favorite YouTube channel to understand its content strategy and performance.
Note: The data is current as of the date of extraction and may not reflect real-time changes on YouTube. For any analyses, ensure to consider the date when the data was last updated to maintain accuracy and relevance.
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IntroductionA required step for presenting results of clinical studies is the declaration of participants demographic and baseline characteristics as claimed by the FDAAA 801. The common workflow to accomplish this task is to export the clinical data from the used electronic data capture system and import it into statistical software like SAS software or IBM SPSS. This software requires trained users, who have to implement the analysis individually for each item. These expenditures may become an obstacle for small studies. Objective of this work is to design, implement and evaluate an open source application, called ODM Data Analysis, for the semi-automatic analysis of clinical study data.MethodsThe system requires clinical data in the CDISC Operational Data Model format. After uploading the file, its syntax and data type conformity of the collected data is validated. The completeness of the study data is determined and basic statistics, including illustrative charts for each item, are generated. Datasets from four clinical studies have been used to evaluate the application’s performance and functionality.ResultsThe system is implemented as an open source web application (available at https://odmanalysis.uni-muenster.de) and also provided as Docker image which enables an easy distribution and installation on local systems. Study data is only stored in the application as long as the calculations are performed which is compliant with data protection endeavors. Analysis times are below half an hour, even for larger studies with over 6000 subjects.DiscussionMedical experts have ensured the usefulness of this application to grant an overview of their collected study data for monitoring purposes and to generate descriptive statistics without further user interaction. The semi-automatic analysis has its limitations and cannot replace the complex analysis of statisticians, but it can be used as a starting point for their examination and reporting.
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Copies of Anaconda 3 Jupyter Notebooks and Python script for holistic and clustered analysis of "The Impact of COVID-19 on Technical Services Units" survey results. Data was analyzed holistically using cleaned and standardized survey results and by library type clusters. To streamline data analysis in certain locations, an off-shoot CSV file was created so data could be standardized without compromising the integrity of the parent clean file. Three Jupyter Notebooks/Python scripts are available in relation to this project: COVID_Impact_TechnicalServices_HolisticAnalysis (a holistic analysis of all survey data) and COVID_Impact_TechnicalServices_LibraryTypeAnalysis (a clustered analysis of impact by library type, clustered files available as part of the Dataverse for this project).
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| BASE YEAR | 2024 |
| HISTORICAL DATA | 2019 - 2023 |
| REGIONS COVERED | North America, Europe, APAC, South America, MEA |
| REPORT COVERAGE | Revenue Forecast, Competitive Landscape, Growth Factors, and Trends |
| MARKET SIZE 2024 | 3.75(USD Billion) |
| MARKET SIZE 2025 | 4.25(USD Billion) |
| MARKET SIZE 2035 | 15.0(USD Billion) |
| SEGMENTS COVERED | Application, Deployment Type, End User, Technology, Regional |
| COUNTRIES COVERED | US, Canada, Germany, UK, France, Russia, Italy, Spain, Rest of Europe, China, India, Japan, South Korea, Malaysia, Thailand, Indonesia, Rest of APAC, Brazil, Mexico, Argentina, Rest of South America, GCC, South Africa, Rest of MEA |
| KEY MARKET DYNAMICS | Rapid technological advancements, Increasing demand for data-driven insights, Growing adoption of cloud computing, Rise in automation and efficiency, Expanding regulatory compliance requirements |
| MARKET FORECAST UNITS | USD Billion |
| KEY COMPANIES PROFILED | NVIDIA, MicroStrategy, Microsoft, Google, Alteryx, Oracle, Domo, SAP, SAS Institute, DataRobot, Amazon, Qlik, Siemens, TIBCO Software, Palantir Technologies, Salesforce, IBM |
| MARKET FORECAST PERIOD | 2025 - 2035 |
| KEY MARKET OPPORTUNITIES | Increased demand for real-time analytics, Growth of big data applications, Rising cloud adoption for data solutions, Expanding AI technology integration, Focus on predictive analytics capabilities |
| COMPOUND ANNUAL GROWTH RATE (CAGR) | 13.4% (2025 - 2035) |
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| BASE YEAR | 2024 |
| HISTORICAL DATA | 2019 - 2023 |
| REGIONS COVERED | North America, Europe, APAC, South America, MEA |
| REPORT COVERAGE | Revenue Forecast, Competitive Landscape, Growth Factors, and Trends |
| MARKET SIZE 2024 | 55.9(USD Billion) |
| MARKET SIZE 2025 | 61.2(USD Billion) |
| MARKET SIZE 2035 | 150.0(USD Billion) |
| SEGMENTS COVERED | Service Type, Deployment Type, End Use Industry, Data Type, Regional |
| COUNTRIES COVERED | US, Canada, Germany, UK, France, Russia, Italy, Spain, Rest of Europe, China, India, Japan, South Korea, Malaysia, Thailand, Indonesia, Rest of APAC, Brazil, Mexico, Argentina, Rest of South America, GCC, South Africa, Rest of MEA |
| KEY MARKET DYNAMICS | Data volume expansion, Increased cloud adoption, Rising demand for analytics, Need for real-time processing, Regulatory compliance pressures |
| MARKET FORECAST UNITS | USD Billion |
| KEY COMPANIES PROFILED | Tableau, Qlik, HPE, Sysdig, SAP, Teradata, Google, Palantir Technologies, Microsoft, Deloitte, Snowflake, Cisco, Accenture, Cloudera, Amazon Web Services, IBM, Oracle |
| MARKET FORECAST PERIOD | 2025 - 2035 |
| KEY MARKET OPPORTUNITIES | Cloud-based data solutions, AI and machine learning integration, Real-time data analytics, Enhanced data security services, Regulatory compliance support |
| COMPOUND ANNUAL GROWTH RATE (CAGR) | 9.4% (2025 - 2035) |
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Alternative Data Market Size 2025-2029
The alternative data market size is valued to increase USD 60.32 billion, at a CAGR of 52.5% from 2024 to 2029. Increased availability and diversity of data sources will drive the alternative data market.
Major Market Trends & Insights
North America dominated the market and accounted for a 56% growth during the forecast period.
By Type - Credit and debit card transactions segment was valued at USD 228.40 billion in 2023
By End-user - BFSI segment accounted for the largest market revenue share in 2023
Market Size & Forecast
Market Opportunities: USD 6.00 million
Market Future Opportunities: USD 60318.00 million
CAGR from 2024 to 2029 : 52.5%
Market Summary
The market represents a dynamic and rapidly expanding landscape, driven by the increasing availability and diversity of data sources. With the rise of alternative data-driven investment strategies, businesses and investors are increasingly relying on non-traditional data to gain a competitive edge. Core technologies, such as machine learning and natural language processing, are transforming the way alternative data is collected, analyzed, and utilized. Despite its potential, the market faces challenges related to data quality and standardization. According to a recent study, alternative data accounts for only 10% of the total data used in financial services, yet 45% of firms surveyed reported issues with data quality.
Service types, including data providers, data aggregators, and data analytics firms, are addressing these challenges by offering solutions to ensure data accuracy and reliability. Regional mentions, such as North America and Europe, are leading the adoption of alternative data, with Europe projected to grow at a significant rate due to increasing regulatory support for alternative data usage. The market's continuous evolution is influenced by various factors, including technological advancements, changing regulations, and emerging trends in data usage.
What will be the Size of the Alternative Data Market during the forecast period?
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How is the Alternative Data Market Segmented ?
The alternative data industry research report provides comprehensive data (region-wise segment analysis), with forecasts and estimates in 'USD million' for the period 2025-2029, as well as historical data from 2019-2023 for the following segments.
Type
Credit and debit card transactions
Social media
Mobile application usage
Web scrapped data
Others
End-user
BFSI
IT and telecommunication
Retail
Others
Geography
North America
US
Canada
Mexico
Europe
France
Germany
Italy
UK
APAC
China
India
Japan
Rest of World (ROW)
By Type Insights
The credit and debit card transactions segment is estimated to witness significant growth during the forecast period.
Alternative data derived from credit and debit card transactions plays a significant role in offering valuable insights for market analysts, financial institutions, and businesses. This data category is segmented into credit card and debit card transactions. Credit card transactions serve as a rich source of information on consumers' discretionary spending, revealing their luxury spending tendencies and credit management skills. Debit card transactions, on the other hand, shed light on essential spending habits, budgeting strategies, and daily expenses, providing insights into consumers' practical needs and lifestyle choices. Market analysts and financial institutions utilize this data to enhance their strategies and customer experiences.
Natural language processing (NLP) and sentiment analysis tools help extract valuable insights from this data. Anomaly detection systems enable the identification of unusual spending patterns, while data validation techniques ensure data accuracy. Risk management frameworks and hypothesis testing methods are employed to assess potential risks and opportunities. Data visualization dashboards and machine learning models facilitate data exploration and trend analysis. Data quality metrics and signal processing methods ensure data reliability and accuracy. Data governance policies and real-time data streams enable timely access to data. Time series forecasting, clustering techniques, and high-frequency data analysis provide insights into trends and patterns.
Model training datasets and model evaluation metrics are essential for model development and performance assessment. Data security protocols are crucial to protect sensitive financial information. Economic indicators and compliance regulations play a role in the context of this market. Unstructured data analysis, data cleansing pipelines, and statistical significance are essential for deriving meaningful insights from this data. New
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Software tools used to collect and analyze data. Parentheses for analysis software indicate the tools participants were taught to use as part of their education in research methods and statistics. “Other” responses for data collection software were largely comprised of survey tools (e.g. Survey Monkey, LimeSurvey) and tools for building and running behavioral experiments (e.g. Gorilla, JsPsych). “Other” responses for data analysis software largely consisted of neuroimaging-related tools (e.g. SPM, AFNI).
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Big Data Analytics in the Manufacturing Industry Report is Segmented by Component (Software and Services), Deployment Mode (On-Premise, Cloud, and Edge/Fog), Analytics Type (Descriptive Analytics, and More), Data Type (Structured, and More), Application (Quality Management, and More), End-User Industry (Automotive, Semiconductor and Electronics, and More), and Geography. The Market Forecasts are Provided in Terms of Value (USD).
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Scientific and related management challenges in the water domain require synthesis of data from multiple domains. Many data analysis tasks are difficult because datasets are large and complex; standard formats for data types are not always agreed upon nor mapped to an efficient structure for analysis; water scientists may lack training in methods needed to efficiently tackle large and complex datasets; and available tools can make it difficult to share, collaborate around, and reproduce scientific work. Overcoming these barriers to accessing, organizing, and preparing datasets for analyses will be an enabler for transforming scientific inquiries. Building on the HydroShare repository’s established cyberinfrastructure, we have advanced two packages for the Python language that make data loading, organization, and curation for analysis easier, reducing time spent in choosing appropriate data structures and writing code to ingest data. These packages enable automated retrieval of data from HydroShare and the USGS’s National Water Information System (NWIS), loading of data into performant structures keyed to specific scientific data types and that integrate with existing visualization, analysis, and data science capabilities available in Python, and then writing analysis results back to HydroShare for sharing and eventual publication. These capabilities reduce the technical burden for scientists associated with creating a computational environment for executing analyses by installing and maintaining the packages within CUAHSI’s HydroShare-linked JupyterHub server. HydroShare users can leverage these tools to build, share, and publish more reproducible scientific workflows. The HydroShare Python Client and USGS NWIS Data Retrieval packages can be installed within a Python environment on any computer running Microsoft Windows, Apple MacOS, or Linux from the Python Package Index using the PIP utility. They can also be used online via the CUAHSI JupyterHub server (https://jupyterhub.cuahsi.org/) or other Python notebook environments like Google Collaboratory (https://colab.research.google.com/). Source code, documentation, and examples for the software are freely available in GitHub at https://github.com/hydroshare/hsclient/ and https://github.com/USGS-python/dataretrieval.
This presentation was delivered as part of the Hawai'i Data Science Institute's regular seminar series: https://datascience.hawaii.edu/event/data-science-and-analytics-for-water/
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Scraped Data on AI, ML, DS & Big Data Jobs is a comprehensive dataset that includes valuable information about job opportunities in the fields of Artificial Intelligence (AI), Machine Learning (ML), Data Science (DS), and Big Data. The dataset covers various aspects, including company names, job titles, locations, job types (full-time, part-time, remote), experience levels, salary ranges, job requirements, and available facilities.
This dataset offers a wealth of insights for job seekers, researchers, and organizations interested in the rapidly evolving fields of AI, ML, DS, and Big Data. By analyzing the data, users can gain a better understanding of the job market trends, geographical distribution of opportunities, popular job titles, required skills and qualifications, salary expectations, and the types of facilities provided by companies in these domains.
Whether you are exploring career prospects, conducting market research, or building predictive models, this dataset serves as a valuable resource to extract meaningful insights and make informed decisions in the exciting world of AI, ML, DS, and Big Data jobs.
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TwitterXverum’s Point of Interest (POI) Data is a comprehensive dataset containing 230M+ verified locations across 5000 business categories. Our dataset delivers structured geographic data, business attributes, location intelligence, and mapping insights, making it an essential tool for GIS applications, market research, urban planning, and competitive analysis.
With regular updates and continuous POI discovery, Xverum ensures accurate, up-to-date information on businesses, landmarks, retail stores, and more. Delivered in bulk to S3 Bucket and cloud storage, our dataset integrates seamlessly into mapping, geographic information systems, and analytics platforms.
🔥 Key Features:
Extensive POI Coverage: ✅ 230M+ Points of Interest worldwide, covering 5000 business categories. ✅ Includes retail stores, restaurants, corporate offices, landmarks, and service providers.
Geographic & Location Intelligence Data: ✅ Latitude & longitude coordinates for mapping and navigation applications. ✅ Geographic classification, including country, state, city, and postal code. ✅ Business status tracking – Open, temporarily closed, or permanently closed.
Continuous Discovery & Regular Updates: ✅ New POIs continuously added through discovery processes. ✅ Regular updates ensure data accuracy, reflecting new openings and closures.
Rich Business Insights: ✅ Detailed business attributes, including company name, category, and subcategories. ✅ Contact details, including phone number and website (if available). ✅ Consumer review insights, including rating distribution and total number of reviews (additional feature). ✅ Operating hours where available.
Ideal for Mapping & Location Analytics: ✅ Supports geospatial analysis & GIS applications. ✅ Enhances mapping & navigation solutions with structured POI data. ✅ Provides location intelligence for site selection & business expansion strategies.
Bulk Data Delivery (NO API): ✅ Delivered in bulk via S3 Bucket or cloud storage. ✅ Available in structured format (.json) for seamless integration.
🏆Primary Use Cases:
Mapping & Geographic Analysis: 🔹 Power GIS platforms & navigation systems with precise POI data. 🔹 Enhance digital maps with accurate business locations & categories.
Retail Expansion & Market Research: 🔹 Identify key business locations & competitors for market analysis. 🔹 Assess brand presence across different industries & geographies.
Business Intelligence & Competitive Analysis: 🔹 Benchmark competitor locations & regional business density. 🔹 Analyze market trends through POI growth & closure tracking.
Smart City & Urban Planning: 🔹 Support public infrastructure projects with accurate POI data. 🔹 Improve accessibility & zoning decisions for government & businesses.
💡 Why Choose Xverum’s POI Data?
Access Xverum’s 230M+ POI dataset for mapping, geographic analysis, and location intelligence. Request a free sample or contact us to customize your dataset today!
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Sports Analytics Market Size 2025-2029
The sports analytics market size is valued to increase USD 8.4 billion, at a CAGR of 28.5% from 2024 to 2029. Increase in adoption of cloud-based deployment solutions will drive the sports analytics market.
Major Market Trends & Insights
North America dominated the market and accounted for a 38% growth during the forecast period.
By Type - Football segment was valued at USD 749.30 billion in 2023
By Solution - Player analysis segment accounted for the largest market revenue share in 2023
Market Size & Forecast
Market Opportunities: USD 584.13 million
Market Future Opportunities: USD 8403.30 million
CAGR : 28.5%
North America: Largest market in 2023
Market Summary
The market represents a dynamic and ever-evolving industry, driven by advancements in core technologies and applications. Notably, the increasing adoption of cloud-based deployment solutions and the growth in use of wearable devices are key market trends. These developments enable real-time data collection and analysis, enhancing team performance and fan engagement. However, the market faces challenges, such as limited potential for returns on investment.
Despite this, the market continues to expand, with a recent study indicating that over 30% of sports organizations have adopted sports analytics. This underscores the market's potential to revolutionize the way sports are managed and enjoyed.
What will be the Size of the Sports Analytics Market during the forecast period?
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How is the Sports Analytics Market Segmented and what are the key trends of market segmentation?
The sports analytics industry research report provides comprehensive data (region-wise segment analysis), with forecasts and estimates in 'USD million' for the period 2025-2029, as well as historical data from 2019-2023 for the following segments.
Type
Football
Cricket
Hockey
Tennis
Others
Solution
Player analysis
Team performance analysis
Health assessment
Fan engagement analysis
Others
Geography
North America
US
Canada
Europe
France
Germany
Italy
UK
APAC
China
India
Japan
South Korea
Rest of World (ROW)
By Type Insights
The football segment is estimated to witness significant growth during the forecast period.
The market is experiencing significant growth, driven by the increasing demand for data-driven insights in football and other popular sports. According to recent reports, the market for sports analytics is currently expanding by approximately 18% annually, with a projected growth rate of around 21% in the coming years. This growth can be attributed to the integration of statistical modeling techniques, game outcome prediction, and physiological data into tactical decision support systems. Skill assessment metrics, win probability estimation, and wearable sensor data are increasingly being used to enhance performance and optimize training programs. Data visualization tools, data-driven coaching decisions, deep learning applications, and machine learning models are revolutionizing player workload management and predictive modeling algorithms.
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The Football segment was valued at USD 749.30 billion in 2019 and showed a gradual increase during the forecast period.
Three-dimensional motion analysis, recruiting optimization tools, sports data integration, and computer vision systems are transforming performance metrics dashboards and motion capture technology. Biomechanical analysis software, fatigue detection systems, talent identification systems, game strategy optimization, opponent scouting reports, athlete performance monitoring, video analytics platforms, real-time game analytics, and injury risk assessment are all integral components of the market. These technologies enable teams and organizations to make informed decisions, improve player performance, and reduce the risk of injuries. The ongoing evolution of sports analytics is set to continue, with new applications and innovations emerging in the field.
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Regional Analysis
North America is estimated to contribute 38% to the growth of the global market during the forecast period. Technavio's analysts have elaborately explained the regional trends and drivers that shape the market during the forecast period.
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The market in the North American region is experiencing significant growth due to technological advancements and increasing investments. In 2024, the US and Canada were major contributors to this expansion. The adoption of sports software is a driving factor, with a high emphasis on its use in American football, basketball, and baseball. Major sports leagues in the US are
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TwitterA DataSet of Supply Chains used by the company DataCo Global was used for the analysis. Dataset of Supply Chain , which allows the use of Machine Learning Algorithms and R Software. Areas of important registered activities : Provisioning , Production , Sales , Commercial Distribution.It also allows the correlation of Structured Data with Unstructured Data for knowledge generation.
Type Data : Structured Data : DataCoSupplyChainDataset.csv Unstructured Data : tokenized_access_logs.csv (Clickstream)
Types of Products : Clothing , Sports , and Electronic Supplies
Additionally it is attached in another file called DescriptionDataCoSupplyChain.csv, the description of each of the variables of the DataCoSupplyChainDatasetc.csv.
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| BASE YEAR | 2024 |
| HISTORICAL DATA | 2019 - 2023 |
| REGIONS COVERED | North America, Europe, APAC, South America, MEA |
| REPORT COVERAGE | Revenue Forecast, Competitive Landscape, Growth Factors, and Trends |
| MARKET SIZE 2024 | 23.1(USD Billion) |
| MARKET SIZE 2025 | 24.5(USD Billion) |
| MARKET SIZE 2035 | 45.0(USD Billion) |
| SEGMENTS COVERED | Service Type, Deployment Type, End User, Data Type, Regional |
| COUNTRIES COVERED | US, Canada, Germany, UK, France, Russia, Italy, Spain, Rest of Europe, China, India, Japan, South Korea, Malaysia, Thailand, Indonesia, Rest of APAC, Brazil, Mexico, Argentina, Rest of South America, GCC, South Africa, Rest of MEA |
| KEY MARKET DYNAMICS | Data-driven decision-making demand, Cloud-based solutions growth, Increasing data volume challenges, Regulatory compliance pressures, Customization and integration needs |
| MARKET FORECAST UNITS | USD Billion |
| KEY COMPANIES PROFILED | IBM, Amazon Web Services, Snowflake, Palantir Technologies, ServiceNow, Oracle, Salesforce, Tableau, SAP, Microsoft, MongoDB, Cloudera, Google, SAS Institute, Teradata |
| MARKET FORECAST PERIOD | 2025 - 2035 |
| KEY MARKET OPPORTUNITIES | Cloud-based data solutions growth, Increasing demand for AI integration, Rising need for data security, Expansion of IoT applications, Enhanced analytics capabilities development |
| COMPOUND ANNUAL GROWTH RATE (CAGR) | 6.3% (2025 - 2035) |
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The Data Analytics in Retail Industry is segmented by Application (Merchandising and Supply Chain Analytics, Social Media Analytics, Customer Analytics, Operational Intelligence, Other Applications), by Business Type (Small and Medium Enterprises, Large-scale Organizations), and Geography. The market size and forecasts are provided in terms of value (USD billion) for all the above segments.
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Global big data analytics in healthcare market is expected to generate revenue of around $145.03 billion by 2032, growing at a CAGR of around 15.96%.
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As per our latest research, the global Alternative Data Analytics for Trading AI market size reached USD 4.7 billion in 2024, reflecting robust adoption across financial institutions and trading firms. The market is projected to grow at a CAGR of 23.5% during the forecast period, reaching a remarkable USD 37.6 billion by 2033. This exceptional growth is driven by the increasing demand for actionable insights from unconventional data sources, the rapid evolution of AI-based trading strategies, and the intensifying need for competitive differentiation in global capital markets.
A primary growth factor fueling the expansion of the Alternative Data Analytics for Trading AI market is the ongoing digital transformation within the financial services industry. As traditional data sources become saturated and less effective at generating alpha, investment managers and traders are turning to alternative data—such as satellite imagery, social media sentiment, and transactional records—to gain unique market perspectives. The integration of AI and machine learning technologies with these diverse data streams enables the extraction of predictive signals and actionable intelligence, which significantly enhances trading performance and portfolio optimization. This trend is further accelerated by the proliferation of big data platforms and advanced analytics tools, making it feasible for firms of all sizes to process, analyze, and derive value from massive, unstructured datasets in real time.
Another significant driver is the evolving regulatory landscape and the increasing emphasis on transparency and risk management in global financial markets. Regulatory bodies are encouraging the adoption of sophisticated analytics to ensure compliance, detect anomalies, and mitigate systemic risks. Alternative data analytics platforms, powered by AI, not only facilitate better risk assessment but also help in identifying fraudulent activities, market manipulation, and emerging market trends. This regulatory impetus, coupled with the growing sophistication of AI models, is compelling both buy-side and sell-side institutions to invest in alternative data solutions, thereby propelling market growth.
Additionally, the democratization of alternative data is expanding the market's reach beyond institutional investors to include retail traders and smaller asset managers. Cloud-based deployment models, open-source analytics frameworks, and API-driven data marketplaces are making alternative data more accessible and affordable. As a result, there is a notable surge in demand from retail investors and fintech startups seeking to leverage AI-powered trading signals derived from non-traditional data sources. This broadening end-user base is expected to sustain the market's momentum over the next decade, as more participants seek to capitalize on the informational edge provided by alternative data analytics.
From a regional perspective, North America commands the largest share of the Alternative Data Analytics for Trading AI market, owing to its advanced financial ecosystem, high concentration of hedge funds and asset managers, and early adoption of AI technologies. Europe follows closely, driven by stringent regulatory requirements and the growing presence of fintech innovation hubs. Meanwhile, the Asia Pacific region is emerging as a high-growth market, fueled by rapid digitalization, expanding capital markets, and increasing investments in AI infrastructure. Latin America and the Middle East & Africa, while currently representing smaller shares, are expected to witness accelerated growth as local financial institutions embrace alternative data analytics to enhance trading efficiency and market competitiveness.
The Data Type segment is a cornerstone of the Alternative Data Analytics for Trading AI market, encompassing a diverse array of sources such as Social Media Data, Satellite Data, Web Scraping Data, Financial Transaction Data, Sensor Data, and Others.
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This dataset contains a list of sales and movement data by item and department appended monthly.
It is rich in information that can be leveraged for various data science applications. For instance, analyzing this dataset can offer insights into consumer behavior, such as preferences for specific types of beverages (e.g., wine, beer) during different times of the year. Furthermore, the dataset can be used to identify trends in sales and transfers, highlighting seasonal effects or the impact of certain suppliers on the market.
One could start with exploratory data analysis (EDA) to understand the basic distribution of sales and transfers across different item types and suppliers. Time series analysis can provide insights into seasonal trends and sales forecasts. Cluster analysis might reveal groups of suppliers or items with similar sales patterns, which can be useful for targeted marketing and inventory management.
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TwitterBackground Microarray experiments offer a potent solution to the problem of making and comparing large numbers of gene expression measurements either in different cell types or in the same cell type under different conditions. Inferences about the biological relevance of observed changes in expression depend on the statistical significance of the changes. In lieu of many replicates with which to determine accurate intensity means and variances, reliable estimates of statistical significance remain problematic. Without such estimates, overly conservative choices for significance must be enforced. Results A simple statistical method for estimating variances from microarray control data which does not require multiple replicates is presented. Comparison of datasets from two commercial entities using this difference-averaging method demonstrates that the standard deviation of the signal scales at a level intermediate between the signal intensity and its square root. Application of the method to a dataset related to the β-catenin pathway yields a larger number of biologically reasonable genes whose expression is altered than the ratio method. Conclusions The difference-averaging method enables determination of variances as a function of signal intensities by averaging over the entire dataset. The method also provides a platform-independent view of important statistical properties of microarray data.
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TwitterDescription: This dataset contains detailed information about videos from various YouTube channels that specialize in data science and analytics. It includes metrics such as views, likes, comments, and publication dates. The dataset consists of 22862 rows, providing a robust sample for analyzing trends in content engagement, popularity of topics over time, and comparison of channels' performance.
Column Descriptors:
Channel_Name: The name of the YouTube channel. Title: The title of the video. Published_date: The date when the video was published. Views: The number of views the video has received. Like_count: The number of likes the video has received. Comment_Count: The number of comments on the video.
This dataset contains information from the following YouTube channels:
['sentdex', 'freeCodeCamp.org' ,'CampusX', 'Darshil Parmar',' Keith Galli' ,'Alex The Analyst', 'Socratica' , Krish Naik', 'StatQuest with Josh Starmer', 'Nicholas Renotte', 'Leila Gharani', 'Rob Mulla' ,'Ryan Nolan Data', 'techTFQ', 'Dataquest' ,'WsCube Tech', 'Chandoo', 'Luke Barousse', 'Andrej Karpathy', 'Thu Vu data analytics', 'Guy in a Cube', 'Tableau Tim', 'codebasics', 'DeepLearningAI', 'Rishabh Mishra' 'ExcelIsFun', 'Kevin Stratvert' ' Ken Jee','Kaggle' , 'Tina Huang']
This dataset can be used for various analyses, including but not limited to:
Identifying the most popular videos and channels in the data science field.
Understanding viewer engagement trends over time.
Comparing the performance of different types of content across multiple channels.
Performing a comparison between different channels to find the best-performing ones.
Identifying the best videos to watch for specific topics in data science and analytics.
Conducting a detailed analysis of your favorite YouTube channel to understand its content strategy and performance.
Note: The data is current as of the date of extraction and may not reflect real-time changes on YouTube. For any analyses, ensure to consider the date when the data was last updated to maintain accuracy and relevance.