63 datasets found
  1. e

    Del Agro Solutions For The Field Sas Export Import Data | Eximpedia

    • eximpedia.app
    Updated Jan 29, 2025
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    (2025). Del Agro Solutions For The Field Sas Export Import Data | Eximpedia [Dataset]. https://www.eximpedia.app/companies/del-agro-solutions-for-the-field-sas/34657257
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    Dataset updated
    Jan 29, 2025
    Description

    Del Agro Solutions For The Field Sas Export Import Data. Follow the Eximpedia platform for HS code, importer-exporter records, and customs shipment details.

  2. e

    Sas Open Field Export Import Data | Eximpedia

    • eximpedia.app
    Updated Oct 9, 2025
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    (2025). Sas Open Field Export Import Data | Eximpedia [Dataset]. https://www.eximpedia.app/companies/sas-open-field/70748357
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    Dataset updated
    Oct 9, 2025
    Description

    Sas Open Field Export Import Data. Follow the Eximpedia platform for HS code, importer-exporter records, and customs shipment details.

  3. Integrated Postsecondary Education Data System, Complete 1980-2023

    • datalumos.org
    Updated Feb 11, 2025
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    United States Department of Education. Institute of Education Sciences. National Center for Education Statistics (2025). Integrated Postsecondary Education Data System, Complete 1980-2023 [Dataset]. http://doi.org/10.3886/E218981V2
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    Dataset updated
    Feb 11, 2025
    Dataset provided by
    National Center for Education Statisticshttps://nces.ed.gov/
    United States Department of Educationhttps://ed.gov/
    Institute of Education Scienceshttp://ies.ed.gov/
    Authors
    United States Department of Education. Institute of Education Sciences. National Center for Education Statistics
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Time period covered
    1980 - 2023
    Description

    Integrated Postsecondary Education Data System (IPEDS) Complete Data Files from 1980 to 2023. Includes data file, STATA data file, SPSS program, SAS program, STATA program, and dictionary. All years compressed into one .zip file due to storage limitations.Updated on 2/14/2025 to add Microsoft Access Database files.From IPEDS Complete Data File Help Page (https://nces.ed.gov/Ipeds/help/complete-data-files):Choose the file to download by reading the description in the available titles. Then, click on the link in that row corresponding to the column header of the type of file/information desired to download.To download and view the survey files in basic CSV format use the main download link in the Data File column.For files compatible with the Stata statistical software package, use the alternate download link in the Stata Data File column.To download files with the SPSS, SAS, or STATA (.do) file extension for use with statistical software packages, use the download link in the Programs column.To download the data Dictionary for the selected file, click on the corresponding link in the far right column of the screen. The data dictionary serves as a reference for using and interpreting the data within a particular survey file. This includes the names, definitions, and formatting conventions for each table, field, and data element within the file, important business rules, and information on any relationships to other IPEDS data.For statistical read programs to work properly, both the data file and the corresponding read program file must be downloaded to the same subdirectory on the computer’s hard drive. Download the data file first; then click on the corresponding link in the Programs column to download the desired read program file to the same subdirectory.When viewing downloaded survey files, categorical variables are identified using codes instead of labels. Labels for these variables are available in both the data read program files and data dictionary for each file; however, for files that automatically incorporate this information you will need to select the Custom Data Files option.

  4. u

    SAS Chat Logs

    • data.ucar.edu
    • ckanprod.data-commons.k8s.ucar.edu
    ascii
    Updated Oct 7, 2025
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    (2025). SAS Chat Logs [Dataset]. http://doi.org/10.5065/D67W69KP
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    asciiAvailable download formats
    Dataset updated
    Oct 7, 2025
    Time period covered
    May 30, 2013 - Jul 17, 2013
    Area covered
    Description

    This dataset contains the scrubbed chat logs from the Southeast Atmosphere Study (SAS) project, including NOMADSS (Nitrogen, Oxidants, Mercury and Aerosol Distributions, Sources and Sinks), from May 30 - July 17, 2013. The chat logs contain conversations between scientists and other field project participants regarding data collection within the SAS-NOMADSS project.

  5. S

    SAS Switches Report

    • datainsightsmarket.com
    doc, pdf, ppt
    Updated Sep 18, 2025
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    Data Insights Market (2025). SAS Switches Report [Dataset]. https://www.datainsightsmarket.com/reports/sas-switches-868080
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    doc, pdf, pptAvailable download formats
    Dataset updated
    Sep 18, 2025
    Dataset authored and provided by
    Data Insights Market
    License

    https://www.datainsightsmarket.com/privacy-policyhttps://www.datainsightsmarket.com/privacy-policy

    Time period covered
    2025 - 2033
    Area covered
    Global
    Variables measured
    Market Size
    Description

    The global SAS switches market is poised for significant growth, projected to reach approximately $8,500 million by 2025, driven by an estimated Compound Annual Growth Rate (CAGR) of 12.5% through 2033. This expansion is fundamentally fueled by the escalating demand for high-speed, reliable data storage and connectivity solutions across diverse industries. Enterprises are increasingly adopting SAS switches to manage burgeoning data volumes and ensure seamless data flow for critical applications, from transactional processing to big data analytics. Data centers, the backbone of modern digital infrastructure, are a primary growth engine, requiring robust SAS switch architectures to support high-performance computing, cloud services, and extensive storage networks. The increasing adoption of advanced technologies like AI, IoT, and machine learning further amplifies the need for efficient storage management, directly benefiting the SAS switches market. The market's trajectory is further shaped by several key trends and potential restraints. The continuous evolution of storage technologies, including the integration of NVMe over Fabrics, presents both opportunities and challenges, pushing manufacturers to innovate and adapt. Midrange SAS switches are expected to witness substantial adoption as businesses seek a balance between performance and cost-effectiveness. While the adoption of cloud-native solutions might present some headwinds for purely on-premises storage, the critical need for direct-attached storage and high-speed SAN connectivity in hybrid cloud environments ensures sustained demand. Geographically, Asia Pacific, led by China and India, is anticipated to be a dominant region, owing to rapid digital transformation and massive investments in data infrastructure. North America and Europe also represent mature yet growing markets, driven by enterprise modernization and the increasing complexity of data management needs. Challenges such as the initial cost of deployment for high-end director-class switches and potential competition from alternative interconnect technologies will need to be strategically addressed by market players. This comprehensive report delves into the global SAS (Serial Attached SCSI) switches market, providing an in-depth analysis of its dynamics from the historical period of 2019-2024 through to an estimated market outlook in 2025 and a robust forecast extending to 2033. The study encompasses crucial aspects including market concentration, prevailing trends, regional dominance, product insights, driving forces, challenges, emerging trends, growth catalysts, and a detailed profile of leading players. Leveraging extensive primary and secondary research, this report offers actionable intelligence for stakeholders seeking to understand and capitalize on the evolving SAS switches landscape.

  6. d

    MCSP Monarch and Plant Monitoring - SAS Output Summarizing 2018 Monarch...

    • catalog.data.gov
    • gimi9.com
    Updated Nov 25, 2025
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    U.S. Fish and Wildlife Service (2025). MCSP Monarch and Plant Monitoring - SAS Output Summarizing 2018 Monarch Butterfly Abundance from SOP 2 Data [Dataset]. https://catalog.data.gov/dataset/mcsp-monarch-and-plant-monitoring-sas-output-summarizing-2018-monarch-butterfly-abundance-
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    Dataset updated
    Nov 25, 2025
    Dataset provided by
    U.S. Fish and Wildlife Service
    Description

    Output from programming code written to summarize 2018 monarch butterfly abundance from monitoring data acquired using a modified Pollard walk at custom 2017 GRTS draw sites within select monitoring areas (see SOP 2 in ServCat reference 103367 for methods) of FWS Legacy Regions 2 and 3. Areas monitored included Balcones Canyonlands (TX), Hagerman (TX), Washita (OK), Neal Smith (IA) NWRs and several locations near the town of Lamoni, Iowa and northern Missouri. Input data file is named 'FWS_2018_MM_SOP2_for_SAS.csv' and is stored in ServCat reference 136485. See SM 5 (ServCat reference 103388) for dictionary of data fields in the input data file.

  7. d

    MCSP Monarch and Plant Monitoring - SAS Output Summarizing 2018 Immature...

    • catalog.data.gov
    • gimi9.com
    Updated Nov 25, 2025
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    U.S. Fish and Wildlife Service (2025). MCSP Monarch and Plant Monitoring - SAS Output Summarizing 2018 Immature Monarch Butterfly and Plant Abundance from SOP 3 Data [Dataset]. https://catalog.data.gov/dataset/mcsp-monarch-and-plant-monitoring-sas-output-summarizing-2018-immature-monarch-butterfly-a
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    Dataset updated
    Nov 25, 2025
    Dataset provided by
    U.S. Fish and Wildlife Service
    Description

    Output from programming code written to summarize immature monarch butterfly, milkweed and nectar plant abundance from monitoring data acquired using a grid of 1 square-meter quadrats at custom 2017 GRTS draw sites within select monitoring areas (see SOP 3 in ServCat reference 103368 for methods) of FWS Legacy Regions 2 and 3. Areas monitored included Balcones Canyonlands (TX), Hagerman (TX), Washita (OK), Neal Smith (IA) NWRs and several locations near the town of Lamoni, Iowa and northern Missouri. Input data file is named 'FWS_2018_MonMonSOP3DS1_forSAS.csv' and is stored in ServCat reference 137698. See SM 5 (ServCat reference 103388) for dictionary of data fields in the input data file.

  8. SAS-3 Y-Axis Pointed Obs Log - Dataset - NASA Open Data Portal

    • data.nasa.gov
    Updated Apr 1, 2025
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    nasa.gov (2025). SAS-3 Y-Axis Pointed Obs Log - Dataset - NASA Open Data Portal [Dataset]. https://data.nasa.gov/dataset/sas-3-y-axis-pointed-obs-log
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    Dataset updated
    Apr 1, 2025
    Dataset provided by
    NASAhttp://nasa.gov/
    Description

    This database is the Third Small Astronomy Satellite (SAS-3) Y-Axis Pointed Observation Log. It identifies possible pointed observations of celestial X-ray sources which were performed with the y-axis detectors of the SAS-3 X-Ray Observatory. This log was compiled (by R. Kelley, P. Goetz and L. Petro) from notes made at the time of the observations and it is expected that it is neither complete nor fully accurate. Possible errors in the log are (i) the misclassification of an observation as a pointed observation when it was either a spinning or dither observation and (ii) inaccuracy of the dates and times of the start and end of an observation. In addition, as described in the HEASARC_Updates section, the HEASARC added some additional information when creating this database. Further information about the SAS-3 detectors and their fields of view can be found at: http://heasarc.gsfc.nasa.gov/docs/sas3/sas3_about.html Disclaimer: The HEASARC is aware of certain inconsistencies between the Start_date, End_date, and Duration fields for a number of rows in this database table. They appear to be errors present in the original table. Except for one entry where the HEASARC corrected an error where there was a near-certainty which parameter was incorrect (as noted in the 'HEASARC_Updates' section of this documentation), these inconsistencies have been left as they were in the original table. This database table was released by the HEASARC in June 2000, based on the SAS-3 Y-Axis pointed Observation Log (available from the NSSDC as dataset ID 75-037A-02B), together with some additional information provided by the HEASARC itself. This is a service provided by NASA HEASARC .

  9. e

    General Oil Field Industrial Services Sas Export Import Data | Eximpedia

    • eximpedia.app
    Updated Nov 9, 2025
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    (2025). General Oil Field Industrial Services Sas Export Import Data | Eximpedia [Dataset]. https://www.eximpedia.app/companies/general-oil-field-industrial-services-sas/43594717
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    Dataset updated
    Nov 9, 2025
    Description

    General Oil Field Industrial Services Sas Export Import Data. Follow the Eximpedia platform for HS code, importer-exporter records, and customs shipment details.

  10. J

    Cumulative patient data collected for LSOCA study

    • archive.data.jhu.edu
    Updated Mar 29, 2023
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    Mark L. Van Natta; K. Patrick May (2023). Cumulative patient data collected for LSOCA study [Dataset]. http://doi.org/10.7281/T1SF2T31
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    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Mar 29, 2023
    Dataset provided by
    Johns Hopkins Research Data Repository
    Authors
    Mark L. Van Natta; K. Patrick May
    License

    Attribution-NonCommercial 4.0 (CC BY-NC 4.0)https://creativecommons.org/licenses/by-nc/4.0/
    License information was derived automatically

    Dataset funded by
    National Institutes of Health
    Description

    The Longitudinal Study of Ocular Complications of AIDS was a 15-year multi-center observational study which collected demographic, medical history, treatment, and vision-related data at quarterly visits from 2,392 patients with AIDS. Each SAS dataset in this collection relates to the cumulative patient-visits from a particular LSOCA form. For example, va.sas7bdat is the SAS dataset for the visual acuity data. Use the appropriate LSOCA form and SAS labels from the SAS PROC CONTENTS to decode each data item.

  11. d

    Current Population Survey (CPS)

    • search.dataone.org
    • dataverse.harvard.edu
    Updated Nov 21, 2023
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    Damico, Anthony (2023). Current Population Survey (CPS) [Dataset]. http://doi.org/10.7910/DVN/AK4FDD
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    Dataset updated
    Nov 21, 2023
    Dataset provided by
    Harvard Dataverse
    Authors
    Damico, Anthony
    Description

    analyze the current population survey (cps) annual social and economic supplement (asec) with r the annual march cps-asec has been supplying the statistics for the census bureau's report on income, poverty, and health insurance coverage since 1948. wow. the us census bureau and the bureau of labor statistics ( bls) tag-team on this one. until the american community survey (acs) hit the scene in the early aughts (2000s), the current population survey had the largest sample size of all the annual general demographic data sets outside of the decennial census - about two hundred thousand respondents. this provides enough sample to conduct state- and a few large metro area-level analyses. your sample size will vanish if you start investigating subgroups b y state - consider pooling multiple years. county-level is a no-no. despite the american community survey's larger size, the cps-asec contains many more variables related to employment, sources of income, and insurance - and can be trended back to harry truman's presidency. aside from questions specifically asked about an annual experience (like income), many of the questions in this march data set should be t reated as point-in-time statistics. cps-asec generalizes to the united states non-institutional, non-active duty military population. the national bureau of economic research (nber) provides sas, spss, and stata importation scripts to create a rectangular file (rectangular data means only person-level records; household- and family-level information gets attached to each person). to import these files into r, the parse.SAScii function uses nber's sas code to determine how to import the fixed-width file, then RSQLite to put everything into a schnazzy database. you can try reading through the nber march 2012 sas importation code yourself, but it's a bit of a proc freak show. this new github repository contains three scripts: 2005-2012 asec - download all microdata.R down load the fixed-width file containing household, family, and person records import by separating this file into three tables, then merge 'em together at the person-level download the fixed-width file containing the person-level replicate weights merge the rectangular person-level file with the replicate weights, then store it in a sql database create a new variable - one - in the data table 2012 asec - analysis examples.R connect to the sql database created by the 'download all microdata' progr am create the complex sample survey object, using the replicate weights perform a boatload of analysis examples replicate census estimates - 2011.R connect to the sql database created by the 'download all microdata' program create the complex sample survey object, using the replicate weights match the sas output shown in the png file below 2011 asec replicate weight sas output.png statistic and standard error generated from the replicate-weighted example sas script contained in this census-provided person replicate weights usage instructions document. click here to view these three scripts for more detail about the current population survey - annual social and economic supplement (cps-asec), visit: the census bureau's current population survey page the bureau of labor statistics' current population survey page the current population survey's wikipedia article notes: interviews are conducted in march about experiences during the previous year. the file labeled 2012 includes information (income, work experience, health insurance) pertaining to 2011. when you use the current populat ion survey to talk about america, subract a year from the data file name. as of the 2010 file (the interview focusing on america during 2009), the cps-asec contains exciting new medical out-of-pocket spending variables most useful for supplemental (medical spending-adjusted) poverty research. confidential to sas, spss, stata, sudaan users: why are you still rubbing two sticks together after we've invented the butane lighter? time to transition to r. :D

  12. f

    Data from: Mean cost and cost-effectiveness ratios with censored data: a...

    • tandf.figshare.com
    txt
    Updated Nov 17, 2025
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    Eduard Poltavskiy; Dingning Liu; Shuai Chen; Heejung Bang; Hongwei Zhao (2025). Mean cost and cost-effectiveness ratios with censored data: a tutorial and SAS® macros [Dataset]. http://doi.org/10.6084/m9.figshare.30287400.v1
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    txtAvailable download formats
    Dataset updated
    Nov 17, 2025
    Dataset provided by
    Taylor & Francis
    Authors
    Eduard Poltavskiy; Dingning Liu; Shuai Chen; Heejung Bang; Hongwei Zhao
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Censoring is an unignorable issue when analyzing survival data and/or medical cost data. Medical costs may be viewed as a type of survival data−in that they accrue over time until an endpoint such as death−or a ‘mark’ variable. Since Lin et al. (1997) and Mushlin et al. (1998) published landmark papers on this topic, censored cost data have been extensively studied. In this tutorial, we explain how to estimate mean cost and cost-effectiveness ratios, along with three examples under two different data scenarios: when only total cost data (so one observation per person) or longitudinal data (or cost history) are available. We also provide an updated literature review. SAS codes in the supplement could be useful to practitioners and data analysts.

  13. s

    Toyota Import Data of Caribbean Associated Free Zones Sas Importer to US...

    • seair.co.in
    Updated Apr 14, 2025
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    Seair Exim Solutions (2025). Toyota Import Data of Caribbean Associated Free Zones Sas Importer to US from Canada at New Yorknewark Area Newark Nj Port [Dataset]. https://www.seair.co.in/us-import/product-toyota/i-caribbean-associated-free-zones-sas/c-canada/port-new-yorknewark-area-newark-nj.aspx
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    .text/.csv/.xml/.xls/.binAvailable download formats
    Dataset updated
    Apr 14, 2025
    Dataset authored and provided by
    Seair Exim Solutions
    Area covered
    Caribbean, Canada, Newark, New Jersey, United States
    Description

    View details of Toyota Import Data of Caribbean Associated Free Zones Sas Buyer to US form Canada at New Yorknewark Area Newark Nj Port with product description, price, date, quantity and more.

  14. i

    Season Agriculture Survey 2019 - Rwanda

    • catalog.ihsn.org
    Updated Aug 2, 2023
    + more versions
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    National Institute of Statistics of Rwanda (2023). Season Agriculture Survey 2019 - Rwanda [Dataset]. https://catalog.ihsn.org/catalog/study/RWA_2019_SAS_v01_M
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    Dataset updated
    Aug 2, 2023
    Dataset authored and provided by
    National Institute of Statistics of Rwanda
    Time period covered
    2018 - 2019
    Area covered
    Rwanda
    Description

    Abstract

    The main objective of the Seasonal Agricultural Survey is to provide timely, accurate, reliable and comprehensive agricultural statistics that describe the structure of agriculture in Rwanda mainly in terms of land use, crop area, yield and crop production to monitor current agricultural and food supply conditions and to facilitate evidence-based decision making for the development of the agricultural sector.

    In this regard, the National Institute of Statistics of Rwanda conducted the Seasonal Agriculture Survey (SAS) from September 2018 to august 2019 to gather up-to-date information for monitoring progress on agriculture programs and policies. This 2019 SAS covered Main agricultural seasons are Season A (which starts from September to February of the following year) and Season B (which starts from March to June). Season C is the small agricultural season mainly for vegetables and sweet potato grown in swamps and Irish potato grown in volcanic agro-ecological zone and provides data on farm characteristics (area, yield and production), agricultural practices, agricultural inputs and use of crop production

    Geographic coverage

    National coverage allowing district-level estimation of key indicators

    Analysis unit

    This seasonal agriculture survey focused on the following units of analysis: Small scale agricultural farms and large scale farms

    Universe

    The SAS 2019 targeted potential agricultural land and large scale farmers

    Kind of data

    Sample survey data [ssd]

    Sampling procedure

    Out of 10 strata, only 4 are considered to represent the country land potential for agriculture, and they cover the total area of 1,787,571.2 hectares (ha). Those strata are: 1.0 (tea plantations), 1.1 (intensive agriculture land on hillsides), 2.0 (intensive agriculture land in marshlands) and 3.0 (rangelands). The remainder of land use strata represents all the non-agricultural land in Rwanda. Stratum 1.0, which represents tea plantations, is assumed to be well monitored through administrative records by the National Agriculture Export Board (NAEB), an institution whose main mission is to promote the agriculture export commodities. Thus, SAS is conducted on 3 strata (1.1; 2.0 & 3.0) to cover other major crops. Within district, the agriculture strata (1.1, 2.0 & 3.0) were divided into larger sampling units called first-step or primary sampling units (PSUs) (as shown in Figure 2). Strata 1.1 and 2.0 were divided into PSUs of around 100 ha while stratum 3.0 was divided into PSUs of around 500 ha. After sample size determination, a sample of PSUs was done by systematic sampling method with probability proportional to size, then a given number of PSUs to be selected for each stratum, was assigned in every district. In 2019, the 2018 SAS sample of 780 segments has been kept the same for SAS 2019 in Season A and B.

    At first stage, 780 PSUs sampled countrywide were proportionally allocated in different levels of stratification (Hill side, marshland and rangeland strata) for 30 districts of Rwanda, to allow publication of results at district level. Sampled PSUs in each stratum were systematically selected from the frame with probability of selection proportional to the size of the PSU.

    At the second stage 780 sampled PSUs were divided into secondary sampling units (SSUs) also called segments. Each segment is estimated to be around 10 ha for strata 1.1 and 2.0 and 50 ha for stratum 3.0 (as shown in Figure 3). For each PSU, only one SSU is selected by random sampling method without replacement. This is why for 2019 5 SAS season A and B, the same number of 780 SSUs was selected. In addition to this, a list frame of large-scale farmers (LSF), with at least 10 hectares of agricultural holdings, was done to complement the area frame just to cover crops mostly grown by large scale farmers and that cannot be easily covered in area frame

    At the last sampling stage, in strata 1.1 and 2.0 each segment of an average size of 10 ha (100,000 Square meters) has been divided into around 1,000 grids squares of 100 Sq. meters each, while for stratum 3.0 around 5,000 grids squares of 100 Sq. meters each have been divided. A point was placed at the center of every grid square and named a grid point (A grid point is a geographical location at the center of every grid square). A random sample of 5% of the total grid points were selected in each segment of strata 1.1 and 2.0 whereas a random sample of 2% of total grid points was selected in each segment of stratum 3.0. Grids points are reporting units within a segment, where enumerators go to every grid point, locate and delineate the plots in which the grid falls, and collect records of land use and related information. The recorded information represents the characteristics of the whole segment which are extrapolated to the stratum level and hence the combination of strata within each district provides district area related statistics.

    Mode of data collection

    Face-to-face [f2f]

    Research instrument

    There were two types of questionnaires used for this survey namely screening questionnaire and plot questionnaire. A Screening questionnaire was used to collect information that enabled identification of a plot and its land use using the plot questionnaire. For point-sampling, the plot questionnaire is concerned with the collection of data on characteristics of crop identification, crop production and use of production, inputs (seeds, fertilizers and pesticides), agricultural practices and land tenure. All the surveys questionnaires used were published in English

    Cleaning operations

    The CAPI method of data collection allows the enumerators in the field to collect and enter data with their tablets and then synchronize to the server at headquarters where data are received by NISR staff, checked for consistency at NISR and thereafter transmitted to analysts for tabulation using STATA software, and reporting using office Excel and word as well.

    Response rate

    Data collection was done in 780 segments and 222 large scale farmers holdings for Season A, whereas in Season C data was collected in 232 segments, response rate was 100% of the sample

  15. s

    Jute Bags Import Data of Sucafina Colombia Sas Calle Exporter from China to...

    • seair.co.in
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    Seair Exim Solutions, Jute Bags Import Data of Sucafina Colombia Sas Calle Exporter from China to US at New Yorknewark Area Newark Nj Port [Dataset]. https://www.seair.co.in/us-import/product-jute-bags/e-sucafina-colombia-sas-calle/c-china/port-new-yorknewark-area-newark-nj.aspx
    Explore at:
    .text/.csv/.xml/.xls/.binAvailable download formats
    Dataset authored and provided by
    Seair Exim Solutions
    Area covered
    Newark, Colombia, New Jersey, China, United States
    Description

    View details of Jute Bags Import Data of Sucafina Colombia Sas Calle Supplier from China to US at New Yorknewark Area Newark Nj Port with product description, price, date, quantity and more.

  16. d

    Data from: The Bronson Files, Dataset 7, Field 13, 2015

    • catalog.data.gov
    • s.cnmilf.com
    • +2more
    Updated Apr 21, 2025
    + more versions
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    Agricultural Research Service (2025). The Bronson Files, Dataset 7, Field 13, 2015 [Dataset]. https://catalog.data.gov/dataset/the-bronson-files-dataset-7-field-13-2015-1c371
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    Dataset updated
    Apr 21, 2025
    Dataset provided by
    Agricultural Research Service
    Description

    Dr. Kevin Bronson provides a second experiment year of Field 13 nitrogen and water management in cotton agricultural research data for compute, including notation of field events and operations, an intermediate analysis mega-table of correlated and calculated parameters, and laboratory analysis results generated during the experimentation, plus high-resolution plot level intermediate data analysis tables of SAS process output, as well as the complete raw data sensor recorded logger outputs. The reflectance data is good. There are some errors in the CS data. See included README file for operational details and further description of the measured data signals. Summary: Active optical proximal cotton canopy sensing spatial data and including additional related metrics are presented. Agronomic nitrogen and irrigation management related field operations are listed. Unique research experimentation intermediate analysis table is made available, along with raw data. The raw data recordings, and annotated table outputs with calculated VIs are made available. Plot polygon coordinate designations allow a re-intersection spatial analysis. Data was collected in the 2015 cotton season at Maricopa Agricultural Center, Arizona, USA. High throughput proximal plant phenotyping via electronic sampling and data processing method approach is exampled using a modified high-clearance Hamby spray-rig. Acquired data conforms to location standard methodologies of the plant phenotyping. SAS and GIS compute processing output tables, including Excel formatted examples are presented, where data tabulation and analysis is available. Additional data illustration is offered as a report file with annotated time-series charts. The weekly proximal sensing data collected include the primary canopy reflectance at six wavelengths. Lint and seed yields, first open boll biomass, and nitrogen uptake were also determined. Soil profile nitrate to 1.8 m depth was determined in 30-cm increments, before planting and after harvest. Nitrous oxide emissions were determined with 1-L vented chambers (samples taken at 0, 12, and 24 minutes). Nitrous oxide was determined by gas chromatography (electron detection detector).

  17. w

    Global Plant Substation Automation System SAS Market Research Report: By...

    • wiseguyreports.com
    Updated Aug 3, 2025
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    (2025). Global Plant Substation Automation System SAS Market Research Report: By Application (Power Generation, Power Distribution, Renewable Energy Management, Utilities Management), By Component (Supervisory Control and Data Acquisition, Programmable Logic Controllers, Human Machine Interface, Field Devices), By End Use (Electric Utilities, Independent Power Producers, Industrial), By Communication Technology (Wired Communication, Wireless Communication, Hybrid Communication) and By Regional (North America, Europe, South America, Asia Pacific, Middle East and Africa) - Forecast to 2035 [Dataset]. https://www.wiseguyreports.com/reports/plant-substation-automation-system-sas-market
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    Dataset updated
    Aug 3, 2025
    License

    https://www.wiseguyreports.com/pages/privacy-policyhttps://www.wiseguyreports.com/pages/privacy-policy

    Time period covered
    Aug 25, 2025
    Area covered
    Global
    Description
    BASE YEAR2024
    HISTORICAL DATA2019 - 2023
    REGIONS COVEREDNorth America, Europe, APAC, South America, MEA
    REPORT COVERAGERevenue Forecast, Competitive Landscape, Growth Factors, and Trends
    MARKET SIZE 20244.04(USD Billion)
    MARKET SIZE 20254.35(USD Billion)
    MARKET SIZE 20359.0(USD Billion)
    SEGMENTS COVEREDApplication, Component, End Use, Communication Technology, Regional
    COUNTRIES COVEREDUS, 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 DYNAMICSIncreased demand for energy efficiency, Rising importance of renewable energy integration, Advancements in IoT technologies, Growing safety and reliability concerns, Increasing investments in smart grid infrastructure
    MARKET FORECAST UNITSUSD Billion
    KEY COMPANIES PROFILEDSchneider Electric, TechnipFMC, Larsen & Toubro, Wärtsilä, Mitsubishi Electric, Cisco Systems, Rockwell Automation, Siemens, ABB, General Electric, Hitachi, Siemens Energy, Honeywell, Eaton, Emerson Electric, OMRON
    MARKET FORECAST PERIOD2025 - 2035
    KEY MARKET OPPORTUNITIESIncreased demand for renewable energy, Aging infrastructure upgrades, Integration with smart grid technology, Enhanced cybersecurity measures, IoT-enabled automation solutions
    COMPOUND ANNUAL GROWTH RATE (CAGR) 7.6% (2025 - 2035)
  18. d

    Data from: The Bronson Files, Dataset 3, Field 107, 2013

    • catalog.data.gov
    • agdatacommons.nal.usda.gov
    Updated Dec 2, 2025
    + more versions
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    Agricultural Research Service (2025). The Bronson Files, Dataset 3, Field 107, 2013 [Dataset]. https://catalog.data.gov/dataset/the-bronson-files-dataset-3-field-107-2013-9df89
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    Dataset updated
    Dec 2, 2025
    Dataset provided by
    Agricultural Research Service
    Description

    Dr. Kevin Bronson provides a small area nitrogen and water management in Guayule agricultural research dataset for compute, including notation of field events and operations, an intermediate analysis table of correlated and calculated parameters with laboratory analysis results generated during the experimentation, plus high resolution plot level intermediate data analysis tables of SAS process output, as well as the complete raw sensor recorded logger outputs. This data was collected during the beginning time period of our USDA Maricopa terrestrial proximal high-throughput plant phenotyping tri-metric method generation, where a 5Hz crop canopy height, temperature and spectral signature are recorded coincident to indicate a plant health status. In this early development period, our Proximal Sensing Cart Mark1 (PSCM1) platform supplants people carrying the CropCircle (CC) sensors, and with an improved view mechanical performance result. Summary: Active optical proximal cotton canopy sensing spatial data and including additional related metrics such as thermal are presented. Agronomic nitrogen and irrigation management related field operations are listed. Unique research experimentation intermediate analysis table is made available, along with raw data. The raw data recordings, and annotated table outputs with calculated VIs are made available. Plot polygon coordinate designations allow a re-intersection spatial analysis. Data was collected in the 2013 season at Maricopa Agricultural Center, Arizona, USA. High throughput proximal plant phenotyping via electronic sampling and data processing method approach is exampled. Acquired data using USDA Maricopa first mobile platforms, such as the Proximal Sensing Cart Mark 1, where the first dual sliding arm configuration was deployed and platform clearance raised successfully as design improvements. SAS and GIS compute processing output tables, including Excel formatted examples are presented, where intermediate data tabulation and analysis is available. The weekly proximal sensing data collected include canopy reflectance at six wavelengths, ultrasonic distance sensing of canopy height, and infrared thermometry. Lint and seed yields, first open boll biomass, and nitrogen uptake were also determined. Soil profile nitrate to 1.8 m depth was determined in 30-cm increments, before planting and after harvest. Nitrous oxide emissions were determined 20 or more weeks in the season with 1-L vented chambers (samples taken at 0, 12, and 24 minutes). Nitrous oxide was determined by gas chromatography (electron detection detector).

  19. H

    Area Resource File (ARF)

    • dataverse.harvard.edu
    Updated May 30, 2013
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    Anthony Damico (2013). Area Resource File (ARF) [Dataset]. http://doi.org/10.7910/DVN/8NMSFV
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    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    May 30, 2013
    Dataset provided by
    Harvard Dataverse
    Authors
    Anthony Damico
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Description

    analyze the area resource file (arf) with r the arf is fun to say out loud. it's also a single county-level data table with about 6,000 variables, produced by the united states health services and resources administration (hrsa). the file contains health information and statistics for over 3,000 us counties. like many government agencies, hrsa provides only a sas importation script and an as cii file. this new github repository contains two scripts: 2011-2012 arf - download.R download the zipped area resource file directly onto your local computer load the entire table into a temporary sql database save the condensed file as an R data file (.rda), comma-separated value file (.csv), and/or stata-readable file (.dta). 2011-2012 arf - analysis examples.R limit the arf to the variables necessary for your analysis sum up a few county-level statistics merge the arf onto other data sets, using both fips and ssa county codes create a sweet county-level map click here to view these two scripts for mo re detail about the area resource file (arf), visit: the arf home page the hrsa data warehouse notes: the arf may not be a survey data set itself, but it's particularly useful to merge onto other survey data. confidential to sas, spss, stata, and sudaan users: time to put down the abacus. time to transition to r. :D

  20. e

    Agromachinary Of The Field Sas Export Import Data | Eximpedia

    • eximpedia.app
    Updated Oct 21, 2025
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    (2025). Agromachinary Of The Field Sas Export Import Data | Eximpedia [Dataset]. https://www.eximpedia.app/companies/agromachinary-of-the-field-sas/79152730
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    Dataset updated
    Oct 21, 2025
    Description

    Agromachinary Of The Field Sas Export Import Data. Follow the Eximpedia platform for HS code, importer-exporter records, and customs shipment details.

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(2025). Del Agro Solutions For The Field Sas Export Import Data | Eximpedia [Dataset]. https://www.eximpedia.app/companies/del-agro-solutions-for-the-field-sas/34657257

Del Agro Solutions For The Field Sas Export Import Data | Eximpedia

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Dataset updated
Jan 29, 2025
Description

Del Agro Solutions For The Field Sas Export Import Data. Follow the Eximpedia platform for HS code, importer-exporter records, and customs shipment details.

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