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TwitterReport includes a snapshot of active projects where DASNY delivers some level of project management oversight.
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China Construction: Project Revenue data was reported at 26,800,738.923 RMB mn in 2022. This records an increase from the previous number of 26,245,381.074 RMB mn for 2021. China Construction: Project Revenue data is updated yearly, averaging 3,940,958.660 RMB mn from Dec 1990 (Median) to 2022, with 33 observations. The data reached an all-time high of 26,800,738.923 RMB mn in 2022 and a record low of 116,953.690 RMB mn in 1990. China Construction: Project Revenue data remains active status in CEIC and is reported by National Bureau of Statistics. The data is categorized under China Premium Database’s Construction Sector – Table CN.EE: Construction Enterprise: All.
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This project is aimed to put some light upon the problem of predicting which of the incoming projects and their budgets are accurate scheduling the end of the construction and its resources. The initial issue to solve is to get valid data of real constructions with their delay reported.
Of course, large construction companies have huge lists of observations of this kind. But in this sector local circumstances are highly relevant, like the socioeconomic moment or the location of each construction process, as they affect to viability, prices and HHRR. So, even for these companies, having big “clean” data doesn’t mean that this data will be helpful without expert data preprocessing.
As an Expert Model, the relevant raw data is provided by the Data Scientist to train the model. This is an strategic decision that helps to use the scarce data from the field effectively as testing data. Taking into account that the Data Scientist on command for this study is an Architect and works as Project Manager in the construction sector, we expect that his experience is valuable for creating a rich and expert dataset with observations of good and bad constructions characteristics in terms of its delay. The method used for creating this Train Dataset is a controlled normal distribution (using “numpy.random”). Variables are controlled by restricting the “centre” of the distribution and its standard deviation. Of course, every normal distribution captures an intuition of “good” or “bad” characteristics in terms of project planning.
The concept "True delay" depends on the delays and the duration, assigning a threshold. It is considered TRUE DELAY time terms higher than 15% of the total duration of the construction project. So, the threshold is assigned on a new boolean variable “DELAYED”, the one used as target. With ML ensemble ,we have increased accuracy by 2% over the most accurate algorithm alone (68.6% acc Random Forest) by giving each of the algorithms the right of flagging the project as a “possible delayed project”. But this strategy obviously tend to overfit the model, reducing its robustness. We have trained a ML Ensemble model to detect Delays in a construction only with some previous conditions of the construction contract. As the Train Dataset have higher proportion of “DELAYED” observations, this machine will tend to over detect false positives.
This study and the resulting tool would be helpful for a “second opinion” in management auditions. Due to the changing socio-economic variables (material and human resources prices and fluctuations in the building market), the data has a short-term validity. So it is strongly advised to have a maintenance plan for this kind of models. The maintenance should be driven by an expert in Data Science with experience in the construction field.
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TwitterSuccess.ai’s Construction Data for Building Materials & Construction Industry Leaders in Europe provides a reliable dataset tailored for businesses seeking to connect with leaders in the European construction and building materials sectors. Covering contractors, suppliers, architects, and project managers, this dataset offers verified profiles, firmographic insights, and decision-maker contacts.
With access to over 700 million verified global profiles and data from 70 million businesses, Success.ai ensures that your outreach, market analysis, and strategic partnerships are powered by accurate, continuously updated, and AI-validated information. Backed by our Best Price Guarantee, this solution empowers you to engage effectively with the construction industry across Europe.
Why Choose Success.ai’s Construction Data?
Verified Contact Data for Industry Leaders
Comprehensive Coverage Across Europe’s Construction Sector
Continuously Updated Datasets
Ethical and Compliant
Data Highlights:
Key Features of the Dataset:
Leadership Profiles in Construction
Advanced Filters for Precision Campaigns
Firmographic Insights and Project Data
AI-Driven Enrichment
Strategic Use Cases:
Sales and Vendor Development
Market Research and Competitive Analysis
Partnership Development and Supply Chain Optimization
Recruitment and Workforce Solutions
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This dataset captures 1300 key performance and planning variables from large-scale infrastructure construction projects. It includes features such as task duration, labor availability, equipment usage, material costs, and constraint scores related to site and resource conditions. Additionally, risk levels, dependencies, and start constraints are represented to reflect the complexities of real-world project scheduling and resource planning.
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TwitterThis statistic describes the largest construction project starts in the United States based on value as of January 2020. The Stonewall Secure Business Park - Project Kale Data Center in Ashburn, Virginia was valued at 600 million U.S. dollars.
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TwitterNew school projects (Capacity) and Capital Improvement Projects (CIP) currently under Construction.
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Total dollar value and number of projects either in review, pending construction, in construction, or in closure aggregated into California counties, once every two weeks since September 2013. A construction project moves through the Department of Health Care Access and Information (HCAI) in four stages - In Review; Pending Construction Start; Under Construction; and In Closure. A project can only be in one of these four stages at any time. Additional data when available will be added to this dataset approximately once every two weeks.
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TwitterDataset Overview
This dataset is a simulated dataset containing 1,000 entries of construction cost estimates. It is designed for use in predictive modeling, machine learning, and business analytics, particularly in the construction and project management domains. The dataset includes both numerical and textual data, providing opportunities for hybrid modeling approaches that combine structured data and natural language processing.
The primary objective of this dataset is to facilitate modeling of construction cost estimation while considering policy-driven adjustments (discounts or markups). It can be used to analyze and predict how various factors, such as material costs, labor costs, and policy reasons, affect final project estimates.
Feature Descriptions
1) Material_Cost (numeric):
2) Labor_Cost (numeric):
3) Profit_Rate (numeric):
4) Discount_or_Markup (numeric):
5) Policy_Reason (text):
6) Total_Estimate (numeric): - The final estimated project cost, calculated as:
(Material_Cost + Labor_Cost) × (1 + Profit_Rate/100) + Discount_or_Markup
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Information related to construction projects for determining the project duration
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Twitterhttps://www.ibisworld.com/about/termsofuse/https://www.ibisworld.com/about/termsofuse/
Over the past five years, construction project managers have benefitted from alternating periods of strong investment into residential, private nonresidential and public construction. While interest rate hikes led to a slowdown in residential construction growth in 2022, multifamily construction remained resilient and benefitted construction project managers. Rate cuts in 2024 made investment cheaper, to the benefit of project managers, while a pause in rate cuts amid economic uncertainty in 2025 slowed investment. Industry revenue has been increasing at a CAGR of 5.0% over the past five years and is expected to total $372.5 billion in 2025, when revenue will climb by an estimated 1.6%. Profit has increased in recent years as revenue growth has been able to outpace wage growth. Surging street and highway construction activity has also been a crucial source of growth for project managers. The Infrastructure Investment and Jobs Act was a boon to construction project managers as these projects are often large-scale, requiring them. A late uptick in factory construction has also contributed to growth for construction project managers, spurred by the CHIPS and Science Act boosting domestic manufacturing. While these programs faced headwinds from the Trump administration, public spending as a whole has been more resilient than private investment amid economic uncertainty. Private investment in data center construction been surging in recent years, however. While commercial construction markets have endured headwinds, there have been bright spots. Ramping hotel construction activity has provided project managers an avenue of growth amid sluggish office building construction. The expanding US economy and stable demand for construction will benefit project managers. Expanding corporate profit will support rising private nonresidential construction, which construction project managers rely heavily on because of the large scope of these projects. Residential construction, particularly apartment and condominium construction, will continue to expand strongly alongside rate cuts and high home costs, benefitting project managers. Industry revenue is expected to expand at a CAGR of 2.0% to $412.0 billion through the end of 2030.
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Building construction projects generate huge amounts of data that can be leveraged to understand improvements in efficiency, cost savings, etc. There are several digital apps on the market that helps construction project managers keep track of the details of the process.
This is a simple data set from a number of construction sites generated from project management field apps that are used for quality, safety a and site management.
Essential there are two files in this data set: - Forms – generated from check list for quality/safety/site management - Tasks – which is an action item typically used for quality snags/defects or safety issues.
This data set was donated by Jason Rymer, a BIM Manager from Ireland who was keen to see more construction-related data online to be used to learn
The goal of this data set is to help construction industry professionals to learn how to code and process data.
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TwitterList of currently active infrastructure projects including description and high level schedule and budget range.
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TwitterComprehensive database showcasing planned and in-construction infrastructure projects worldwide, uncovering technology, capital flows, people in upcoming mega investments and business opportunities for market research and business intelligence
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Construction projects data
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This is the dataset included in the paper "Causes of time and cost overruns in construction projects: a scoping review"
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TwitterThe Capital Projects Database reports information at the project level on discrete capital investments from the Capital Commitment Plan.Each row is uniquely identified by its Financial Management Service (FMS) ID, and contains data pertaining to the sponsoring and managing agency.
To explore the data, please visit Capital Planning Explorer
For additional information, please visit A Guide to The Capital Budget. Current version: 25exec
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TwitterThe Engineering Division of the City of Galesburg's Public Works Department supervises a number of large capital projects across the City each year. This dataset outlines the bounds of past projects, along with costs, funding sources and contact information.
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TwitterAs of November 2024, several high-value construction projects to develop wind farms and clean energy infrastructure among other projects had been added to the Australian Construction Infrastructure Forum (ACIF) Major Projects Database in Australia, with commencement dates between 2025 and 2030. The Elanora offshore wind farm stages 1 & 2 project had the highest value across the thirty major construction projects at around ** billion Australian dollars, with an expected start date of June 2029.
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China Construction: Project Payment Receivable: Completed Project data was reported at 840,957.290 RMB mn in 2012. This records an increase from the previous number of 655,380.120 RMB mn for 2011. China Construction: Project Payment Receivable: Completed Project data is updated yearly, averaging 373,180.930 RMB mn from Dec 2002 (Median) to 2012, with 11 observations. The data reached an all-time high of 840,957.290 RMB mn in 2012 and a record low of 192,456.730 RMB mn in 2002. China Construction: Project Payment Receivable: Completed Project data remains active status in CEIC and is reported by National Bureau of Statistics. The data is categorized under China Premium Database’s Construction Sector – Table CN.EE: Construction Enterprise: All.
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TwitterReport includes a snapshot of active projects where DASNY delivers some level of project management oversight.