86 datasets found
  1. Police Killings US

    • kaggle.com
    zip
    Updated Feb 6, 2022
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    Matthew Connor (2022). Police Killings US [Dataset]. https://www.kaggle.com/datasets/azizozmen/police-killings-us
    Explore at:
    zip(62816 bytes)Available download formats
    Dataset updated
    Feb 6, 2022
    Authors
    Matthew Connor
    Description

    "In 2015, The Washington Post began to log every fatal shooting by an on-duty police officer in the United States. In that time there have been more than 5,000 such shootings recorded by The Post. After Michael Brown, an unarmed Black man, was killed in 2014 by police in Ferguson, Mo., a Post investigation found that the FBI undercounted fatal police shootings by more than half. This is because reporting by police departments is voluntary and many departments fail to do so. The Washington Post’s data relies primarily on news accounts, social media postings, and police reports. Analysis of more than five years of data reveals that the number and circumstances of fatal shootings and the overall demographics of the victims have remained relatively constant..." SOURCE ==> Washington Post Article

    For more information about this story

    This dataset has been prepared by The Washington Post (they keep updating it on runtime) with every fatal shooting in the United States by a police officer in the line of duty since Jan. 1, 2015.

    2016 PoliceKillingUS DATASET
    2017 PoliceKillingUS DATASET
    2018 PoliceKillingUS DATASET
    2019 PoliceKillingUS DATASET
    2020 PoliceKillingUS DATASET

    Features at the Dataset:

    The file fatal-police-shootings-data.csv contains data about each fatal shooting in CSV format. The file can be downloaded at this URL. Each row has the following variables:

    • id: a unique identifier for each victim
    • name: the name of the victim
    • date: the date of the fatal shooting in YYYY-MM-DD format
    • manner_of_death: shot, shot and Tasered
    • armed: indicates that the victim was armed with some sort of implement that a police officer believed could inflict harm
      • undetermined: it is not known whether or not the victim had a weapon
      • unknown: the victim was armed, but it is not known what the object was
      • unarmed: the victim was not armed
    • age: the age of the victim
    • gender: the gender of the victim. The Post identifies victims by the gender they identify with if reports indicate that it differs from their biological sex.
      • M: Male
      • F: Female
      • None: unknown
    • race:
      • W: White, non-Hispanic
      • B: Black, non-Hispanic
      • A: Asian
      • N: Native American
      • H: Hispanic
      • O: Other
      • None: unknown
    • city: the municipality where the fatal shooting took place. Note that in some cases this field may contain a county name if a more specific municipality is unavailable or unknown.
    • state: two-letter postal code abbreviation
    • signs of mental illness: News reports have indicated the victim had a history of mental health issues, expressed suicidal intentions or was experiencing mental distress at the time of the shooting.
    • threat_level: The threat_level column was used to flag incidents for the story by Amy Brittain in October 2015. http://www.washingtonpost.com/sf/investigative/2015/10/24/on-duty-under-fire/ As described in the story, the general criteria for the attack label was that there was the most direct and immediate threat to life. That would include incidents where officers or others were shot at, threatened with a gun, attacked with other weapons or physical force, etc. The attack category is meant to flag the highest level of threat. The other and undetermined categories represent all remaining cases. Other includes many incidents where officers or others faced significant threats.
    • flee: News reports have indicated the victim was moving away from officers
      • Foot
      • Car
      • Not fleeing

    The threat column and the fleeing column are not necessarily related. For example, there is an incident in which the suspect is fleeing and at the same time turns to fire at gun at the officer. Also, attacks represent a status immediately before fatal shots by police while fleeing could begin slightly earlier and involve a chase. - body_camera: News reports have indicated an officer w...

  2. FiveThirtyEight Police Locals Dataset

    • kaggle.com
    zip
    Updated Mar 26, 2019
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    FiveThirtyEight (2019). FiveThirtyEight Police Locals Dataset [Dataset]. https://www.kaggle.com/fivethirtyeight/fivethirtyeight-police-locals-dataset
    Explore at:
    zip(3728 bytes)Available download formats
    Dataset updated
    Mar 26, 2019
    Dataset authored and provided by
    FiveThirtyEighthttps://abcnews.go.com/538
    License

    https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/

    Description

    Content

    Police Residence

    This folder contains data behind the story Most Police Don’t Live In The Cities They Serve.

    Includes the cities with the 75 largest police forces, with the exception of Honolulu for which data is not available. All calculations are based on data from the U.S. Census.

    The Census Bureau numbers are potentially going to differ from other counts for three reasons:

    1. The census category for police officers also includes sheriffs, transit police and others who might not be under the same jurisdiction as a city’s police department proper. The census category won’t include private security officers.
    2. The census data is estimated from 2006 to 2010; police forces may have changed in size since then.
    3. There is always a margin of error in census numbers; they are estimates, not complete counts.

    How to read police-locals.csv

    HeaderDefinition
    cityU.S. city
    police_force_sizeNumber of police officers serving that city
    allPercentage of the total police force that lives in the city
    whitePercentage of white (non-Hispanic) police officers who live in the city
    non-whitePercentage of non-white police officers who live in the city
    blackPercentage of black police officers who live in the city
    hispanicPercentage of Hispanic police officers who live in the city
    asianPercentage of Asian police officers who live in the city

    Note: When a cell contains ** it means that there are fewer than 100 police officers of that race serving that city.

    Context

    This is a dataset from FiveThirtyEight hosted on their GitHub. Explore FiveThirtyEight data using Kaggle and all of the data sources available through the FiveThirtyEight organization page!

    • Update Frequency: This dataset is updated daily.

    Acknowledgements

    This dataset is maintained using GitHub's API and Kaggle's API.

    This dataset is distributed under the Attribution 4.0 International (CC BY 4.0) license.

  3. Data from: Felonious Homicides of American Police Officers, 1977-1992

    • catalog.data.gov
    • datasets.ai
    • +1more
    Updated Nov 14, 2025
    + more versions
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    National Institute of Justice (2025). Felonious Homicides of American Police Officers, 1977-1992 [Dataset]. https://catalog.data.gov/dataset/felonious-homicides-of-american-police-officers-1977-1992-25657
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    Dataset updated
    Nov 14, 2025
    Dataset provided by
    National Institute of Justicehttp://nij.ojp.gov/
    Description

    The study was a comprehensive analysis of felonious killings of officers. The purposes of the study were (1) to analyze the nature and circumstances of incidents of felonious police killings and (2) to analyze trends in the numbers and rates of killings across different types of agencies and to explain these differences. For Part 1, Incident-Level Data, an incident-level database was created to capture all incidents involving the death of a police officer from 1983 through 1992. Data on officers and incidents were collected from the Law Enforcement Officers Killed and Assaulted (LEOKA) data collection as coded by the Uniform Crime Reporting (UCR) program. In addition to the UCR data, the Police Foundation also coded information from the LEOKA narratives that are not part of the computerized LEOKA database from the FBI. For Part 2, Agency-Level Data, the researchers created an agency-level database to research systematic differences among rates at which law enforcement officers had been feloniously killed from 1977 through 1992. The investigators focused on the 56 largest law enforcement agencies because of the availability of data for explanatory variables. Variables in Part 1 include year of killing, involvement of other officers, if the officer was killed with his/her own weapon, circumstances of the killing, location of fatal wounds, distance between officer and offender, if the victim was wearing body armor, if different officers were killed in the same incident, if the officer was in uniform, actions of the killer and of the officer at entry and final stage, if the killer was visible at first, if the officer thought the killer was a felon suspect, if the officer was shot at entry, and circumstances at anticipation, entry, and final stages. Demographic variables for Part 1 include victim's sex, age, race, type of assignment, rank, years of experience, agency, population group, and if the officer was working a security job. Part 2 contains variables describing the general municipal environment, such as whether the agency is located in the South, level of poverty according to a poverty index, population density, percent of population that was Hispanic or Black, and population aged 15-34 years old. Variables capturing the crime environment include the violent crime rate, property crime rate, and a gun-related crime index. Lastly, variables on the environment of the police agencies include violent and property crime arrests per 1,000 sworn officers, percentage of officers injured in assaults, and number of sworn officers.

  4. d

    Officers Assaulted

    • catalog.data.gov
    • data.bloomington.in.gov
    • +1more
    Updated Nov 22, 2025
    + more versions
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    data.bloomington.in.gov (2025). Officers Assaulted [Dataset]. https://catalog.data.gov/dataset/officers-assaulted-826cf
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    Dataset updated
    Nov 22, 2025
    Dataset provided by
    data.bloomington.in.gov
    Description

    Information found in this report follow the Uniformed Crime Reporting guidelines established by the FBI for LEOKA. Key code for Race: A- Asian/Pacific Island, Non-Hispanic B- African American, Non-Hispanic C- Hawaiian/Other Pacific Island, Hispanic H- Hawaiian/Other Pacific Island, Non-Hispanic I- Indian/Alaskan Native, Non-Hispanic K- African American, Hispanic L- Caucasian, Hispanic N- Indian/Alaskan Native, Hispanic P- Asian/Pacific Island, Hispanic S- Asian, Non-Hispanic T- Asian, Hispanic U- Unknown W- Caucasian, Non-Hispanic Key Code for Reading Districts: Example: LB519 L for Law call or incident B stands for Bloomington 5 is the district or beat where incident occurred All numbers following represents a grid sector. Disclaimer: The Bloomington Police Department takes great effort in making open data as accurate as possible, but there is no avoiding the introduction of errors in this process, which relies on data provided by many people and that cannot always be verified. Information contained in this dataset may change over a period of time. The Bloomington Police Department is not responsible for any error or omission from this data, or for the use or interpretation of the results of any research conducted.

  5. H

    Vol 16(2): Replication Data for: Black Lives Matter: Evidence that Police-...

    • dataverse.harvard.edu
    • search.dataone.org
    Updated May 16, 2018
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    Kris-Stella Trump; Vanessa Williamson; Katherine Levine Einstein (2018). Vol 16(2): Replication Data for: Black Lives Matter: Evidence that Police- Caused Deaths Predict Protest Activity [Dataset]. http://doi.org/10.7910/DVN/L2GSK6
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    May 16, 2018
    Dataset provided by
    Harvard Dataverse
    Authors
    Kris-Stella Trump; Vanessa Williamson; Katherine Levine Einstein
    License

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

    Description

    Since 2013, protests opposing police violence against Black people have occurred across a number of American cities under the banner of “Black Lives Matter.” We develop a new dataset of Black Lives Matter protests that took place in 2014–2015 and explore the contexts in which they emerged. We find that Black Lives Matter protests are more likely to occur in localities where more Black people have previously been killed by police. We discuss the implications of our findings in light of the literature on the development of social movements and recent scholarship on the carceral state’s impact on political engagement.

  6. d

    Officer Involved Shootings

    • catalog.data.gov
    • data.bloomington.in.gov
    • +1more
    Updated Oct 18, 2025
    + more versions
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    data.bloomington.in.gov (2025). Officer Involved Shootings [Dataset]. https://catalog.data.gov/dataset/officer-involved-shootings-6781b
    Explore at:
    Dataset updated
    Oct 18, 2025
    Dataset provided by
    data.bloomington.in.gov
    Description

    Bloomington Police Department cases where officers have fired a gun at an individual. Key code for Race: A- Asian/Pacific Island, Non-Hispanic B- African American, Non-Hispanic C- Hawaiian/Other Pacific Island, Hispanic H- Hawaiian/Other Pacific Island, Non-Hispanic I- Indian/Alaskan Native, Non-Hispanic K- African American, Hispanic L- Caucasian, Hispanic N- Indian/Alaskan Native, Hispanic P- Asian/Pacific Island, Hispanic S- Asian, Non-Hispanic T- Asian, Hispanic U- Unknown W- Caucasian, Non-Hispanic Key Code for Reading Districts: Example: LB519 L for Law call or incident B stands for Bloomington 5 is the district or beat where incident occurred All numbers following represents a grid sector. Disclaimer: The Bloomington Police Department takes great effort in making open data as accurate as possible, but there is no avoiding the introduction of errors in this process, which relies on data provided by many people and that cannot always be verified. Information contained in this dataset may change over a period of time. The Bloomington Police Department is not responsible for any error or omission from this data, or for the use or interpretation of the results of any research conducted.

  7. San Francisco Police Stop Data 2018-2023

    • kaggle.com
    zip
    Updated Dec 8, 2023
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    asaniczka (2023). San Francisco Police Stop Data 2018-2023 [Dataset]. https://www.kaggle.com/datasets/asaniczka/san-francisco-police-stop-data-2018-2023
    Explore at:
    zip(20531503 bytes)Available download formats
    Dataset updated
    Dec 8, 2023
    Authors
    asaniczka
    License

    https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/

    Area covered
    San Francisco
    Description

    This dataset provides comprehensive information on police stops conducted by the San Francisco Police Department from 2018 to 2023.

    It includes details such as the date and time of the stop, duration, location, race/ethnicity of the person stopped, gender, age, reason for the stop, actions taken, search basis, property seizure, contraband or evidence found, and the results of the stop.

    If you find this dataset valuable, don't forget to hit the upvote button! 😊💝

    Checkout my top datasets

    Interesting Task Ideas:

    1. Analyze racial disparities in police stops and identify any biases or discriminatory patterns.
    2. Investigate the relationship between the reason for the stop and subsequent actions taken by the police.
    3. Explore geographical variations in police stop patterns and their correlation with socio-economic factors.
    4. Determine the impact of traffic violations on the likelihood of search or property seizure during a stop.
    5. Examine the role of perceived or known disabilities in police stops and potential disparities in treatment.
    6. Create predictive models to estimate the duration and outcome of a police stop based on various factors.
    7. Investigate the use of force during police stops and its correlation with different variables.
    8. Analyze changes in police stop patterns over time and identify any emerging trends or shifts in enforcement strategies.

    Photo by Scott Rodgerson on Unsplash

  8. A Multi-Level Bayesian Analysis of Racial Bias in Police Shootings at the...

    • plos.figshare.com
    zip
    Updated Jun 5, 2023
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    Cody T. Ross (2023). A Multi-Level Bayesian Analysis of Racial Bias in Police Shootings at the County-Level in the United States, 2011–2014 [Dataset]. http://doi.org/10.1371/journal.pone.0141854
    Explore at:
    zipAvailable download formats
    Dataset updated
    Jun 5, 2023
    Dataset provided by
    PLOShttp://plos.org/
    Authors
    Cody T. Ross
    License

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

    Area covered
    United States
    Description

    A geographically-resolved, multi-level Bayesian model is used to analyze the data presented in the U.S. Police-Shooting Database (USPSD) in order to investigate the extent of racial bias in the shooting of American civilians by police officers in recent years. In contrast to previous work that relied on the FBI’s Supplemental Homicide Reports that were constructed from self-reported cases of police-involved homicide, this data set is less likely to be biased by police reporting practices. County-specific relative risk outcomes of being shot by police are estimated as a function of the interaction of: 1) whether suspects/civilians were armed or unarmed, and 2) the race/ethnicity of the suspects/civilians. The results provide evidence of a significant bias in the killing of unarmed black Americans relative to unarmed white Americans, in that the probability of being {black, unarmed, and shot by police} is about 3.49 times the probability of being {white, unarmed, and shot by police} on average. Furthermore, the results of multi-level modeling show that there exists significant heterogeneity across counties in the extent of racial bias in police shootings, with some counties showing relative risk ratios of 20 to 1 or more. Finally, analysis of police shooting data as a function of county-level predictors suggests that racial bias in police shootings is most likely to emerge in police departments in larger metropolitan counties with low median incomes and a sizable portion of black residents, especially when there is high financial inequality in that county. There is no relationship between county-level racial bias in police shootings and crime rates (even race-specific crime rates), meaning that the racial bias observed in police shootings in this data set is not explainable as a response to local-level crime rates.

  9. Police Data

    • kaggle.com
    zip
    Updated Aug 2, 2025
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    Data Science Lovers (2025). Police Data [Dataset]. https://www.kaggle.com/datasets/rohitgrewal/police-data
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    zip(543415 bytes)Available download formats
    Dataset updated
    Aug 2, 2025
    Authors
    Data Science Lovers
    License

    http://opendatacommons.org/licenses/dbcl/1.0/http://opendatacommons.org/licenses/dbcl/1.0/

    Description

    📹Project Video available on YouTube - https://youtu.be/GyUbo45mVSE

    🖇️Connect with me on LinkedIn - https://www.linkedin.com/in/rohit-grewal

    Police Check-posts Data

    This dataset contains detailed records of police traffic stops. Each row represents a single stop, with information about the date, time, driver demographics, the reason for the stop, whether a search was conducted, and the outcome. It can be useful for analysing traffic stop patterns, demographic trends, law enforcement behaviour, and correlations with violations or arrests.

    Using this dataset, we answered multiple questions with Python in our Project.

    Q.1) Instruction ( For Data Cleaning ) - Remove the column that only contains missing values

    Q.2) For Speeding , were Men or Women stopped more often ?

    Q.3) Does gender affect who gets searched during a stop ?

    Q.4) What is the mean stop_duration ?

    Q.5) Compare the age distributions for each violation

    These are the main Features/Columns available in the dataset :

    1) stop_date – The date on which the traffic stop occurred.

    2) stop_time – The exact time when the stop took place.

    3) driver_gender – Gender of the driver (M for male, F for female).

    4) driver_age_raw – Raw recorded birth year of the driver.

    5) driver_age – Calculated or cleaned driver’s age at the time of the stop.

    6) driver_race – Race or ethnicity of the driver (e.g., White, Black, Asian, Hispanic).

    7) violation_raw – Original recorded reason for the stop.

    8) violation – Categorized reason for the stop (e.g., Speeding, Other).

    9) search_conducted – Boolean value indicating whether a search was performed (True/False).

    10) search_type – Type of search conducted, if any (e.g., vehicle search, driver search).

    11) stop_outcome – The result of the stop (e.g., Citation, Arrest, Warning).

    12) is_arrested – Boolean value indicating if the driver was arrested (True/False).

    13) stop_duration – Approximate length of the stop (e.g., 0-15 Min, 16-30 Min).

    14) drugs_related_stop – Boolean value indicating if the stop was related to drugs (True/False).

  10. H

    Replication Data: Officer Diversity May Reduce Black Americans’ Fear of the...

    • dataverse.harvard.edu
    • search.dataone.org
    Updated Jan 30, 2024
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    Justin Pickett; Amanda Graham; Justin Nix; Francis T. Cullen (2024). Replication Data: Officer Diversity May Reduce Black Americans’ Fear of the Police [Dataset]. http://doi.org/10.7910/DVN/ASL3JD
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Jan 30, 2024
    Dataset provided by
    Harvard Dataverse
    Authors
    Justin Pickett; Amanda Graham; Justin Nix; Francis T. Cullen
    License

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

    Description

    This dataset includes responses to two survey experiments testing the effects of officer diversity, which were conducted with a national sample (N = 1,100). The survey was fielded by YouGov in the spring of 2022 (between April 21 and May 2). For our experiments, YouGov constructed two synthetic sampling frames (SSF) via stratified sampling from the 2019 American Community Survey, which were used to select two matched (on gender, age, and education) samples of opt-in panelists: a general population sample (N = 650) and a large oversample of Black Americans (N = 450). (The general population sample was also matched on race.) Using propensity scoring based on region and the matching variables, both samples were then weighted to their respective SSFs, after which the weights were post-stratified on 2016 and 2020 Presidential vote choice. The purpose of the oversample was to yield (after combining Black respondents in the oversample with those in the general population sample) similarly sized analytic samples of Black and non-Black Americans. Per this sampling design, we estimated the models for the experiments separately for Black and non-Black respondents. For the main analysis, we applied the provided sampling weights. (NOTE: The original files were uploaded in Stata-12 version.)

  11. A

    Officer Involved Shootings Data

    • data.amerigeoss.org
    • data.wu.ac.at
    csv
    Updated Jul 26, 2019
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    United States[old] (2019). Officer Involved Shootings Data [Dataset]. https://data.amerigeoss.org/vi/dataset/officer-involved-shootings-data
    Explore at:
    csvAvailable download formats
    Dataset updated
    Jul 26, 2019
    Dataset provided by
    United States[old]
    Description

    This set of raw data contains information from Bloomington Police Department cases, specifically it identified cases where officers have fired a gun at a suspect.

    **Please note that this particular dataset contains no data. As of current date, the Bloomington Police Department has had no officer involved shootings to report. **

    Key code for Race:

    • A- Asian/Pacific Island, Non-Hispanic
    • B- African American, Non-Hispanic
    • I- Indian/Alaskan Native, Non-Hispanic
    • K- African American, Hispanic
    • L- Caucasian, Hispanic
    • N- Indian/Alaskan Native, Hispanic
    • P- Asian/Pacific Island, Hispanic
    • U- Unknown
    • W- Caucasian, Non-Hispanic

    Key Code for Reading Districts:

    Example: LB519

    • ‘L’ for Law call or incident
    • ‘B’ stands for Bloomington
    • 5 is the district or beat where incident occurred
    • All numbers following represents a grid sector.

    A map of the five districts can be located on Raidsonline.com, under the tab labeled ‘Agency Layers’.

    Disclaimer: The Bloomington Police Department takes great effort in making all sets of data as accurate as possible, but there is no avoiding the introduction of errors in this process. Information contained in this dataset may change over a period of time. The Bloomington Police Department is not responsible for any error or omission from this data or for the use, or interpretation of the results of any research conducted.

  12. w

    Use of Force Data

    • data.wu.ac.at
    • data.amerigeoss.org
    csv
    Updated Feb 9, 2018
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    City of Bloomington (2018). Use of Force Data [Dataset]. https://data.wu.ac.at/odso/data_gov/YzQyNTg3MGEtMWQyMi00ZThjLWFmYWItMmZlNDFiODdkZDI2
    Explore at:
    csvAvailable download formats
    Dataset updated
    Feb 9, 2018
    Dataset provided by
    City of Bloomington
    Description

    This set of raw data contains information from Bloomington Police Department Use of Force data.

    Key code for Race:

    • A- Asian/Pacific Island, Non-Hispanic
    • B- African American, Non-Hispanic
    • I- Indian/Alaskan Native, Non-Hispanic
    • K- African American, Hispanic
    • L- Caucasian, Hispanic
    • N- Indian/Alaskan Native, Hispanic
    • P- Asian/Pacific Island, Hispanic
    • U- Unknown
    • W- Caucasian, Non-Hispanic

    Key Code for Reading Districts:

    Example: LB519

    • ‘L’ for Law call or incident
    • ‘B’ stands for Bloomington
    • 5 is the district or beat where incident occurred
    • All numbers following represents a grid sector.

    A map of the five districts can be located on Raidsonline.com, under the tab labeled ‘Agency Layers’.

    Disclaimer: The Bloomington Police Department takes great effort in making Use of Force data as accurate as possible, but there is no avoiding the introduction of errors in this process, which relies on data provided that cannot always be verified. Information contained in this dataset may change over a period of time. The Bloomington Police Department is not responsible for any error or omission from this data, or for the use or interpretation of the results of any research conducted.

  13. d

    Hate Crimes

    • catalog.data.gov
    • data.bloomington.in.gov
    • +2more
    Updated Oct 18, 2025
    + more versions
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    data.bloomington.in.gov (2025). Hate Crimes [Dataset]. https://catalog.data.gov/dataset/hate-crimes-63992
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    Dataset updated
    Oct 18, 2025
    Dataset provided by
    data.bloomington.in.gov
    Description

    Information from Bloomington Police Department cases where a hate or bias crime has been reported. Key code for Race: A- Asian/Pacific Island, Non-Hispanic B- African American, Non-Hispanic C- Hawaiian/Other Pacific Island, Hispanic H- Hawaiian/Other Pacific Island, Non-Hispanic I- Indian/Alaskan Native, Non-Hispanic K- African American, Hispanic L- Caucasian, Hispanic N- Indian/Alaskan Native, Hispanic P- Asian/Pacific Island, Hispanic S- Asian, Non-Hispanic T- Asian, Hispanic U- Unknown W- Caucasian, Non-Hispanic Key Code for Reading Districts: Example: LB519 L for Law call or incident B stands for Bloomington 5 is the district or beat where incident occurred All numbers following represents a grid sector. Disclaimer: The Bloomington Police Department takes great effort in making open data as accurate as possible, but there is no avoiding the introduction of errors in this process, which relies on data provided by many people and that cannot always be verified. Information contained in this dataset may change over a period of time. The Bloomington Police Department is not responsible for any error or omission from this data, or for the use or interpretation of the results of any research conducted.

  14. d

    Vehicle Pursuits

    • catalog.data.gov
    • data.bloomington.in.gov
    • +1more
    Updated Nov 22, 2025
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    data.bloomington.in.gov (2025). Vehicle Pursuits [Dataset]. https://catalog.data.gov/dataset/vehicle-pursuits-abf0b
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    Dataset updated
    Nov 22, 2025
    Dataset provided by
    data.bloomington.in.gov
    Description

    Data from Bloomington Police Department cases where a vehicle pursuit occurred. Key code for Race: A- Asian/Pacific Island, Non-Hispanic B- African American, Non-Hispanic C- Hawaiian/Other Pacific Island, Hispanic H- Hawaiian/Other Pacific Island, Non-Hispanic I- Indian/Alaskan Native, Non-Hispanic K- African American, Hispanic L- Caucasian, Hispanic N- Indian/Alaskan Native, Hispanic P- Asian/Pacific Island, Hispanic S- Asian, Non-Hispanic T- Asian, Hispanic U- Unknown W- Caucasian, Non-Hispanic Key Code for Reading Districts: Example: LB519 L for Law call or incident B stands for Bloomington 5 is the district or beat where incident occurred All numbers following represents a grid sector. Disclaimer: The Bloomington Police Department takes great effort in making open data as accurate as possible, but there is no avoiding the introduction of errors in this process, which relies on data provided by many people and that cannot always be verified. Information contained in this dataset may change over a period of time. The Bloomington Police Department is not responsible for any error or omission from this data, or for the use or interpretation of the results of any research conducted.

  15. p

    Trends in Black Student Percentage (2011-2023): Law Enforcement Officers...

    • publicschoolreview.com
    Updated Aug 3, 2015
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    Public School Review (2015). Trends in Black Student Percentage (2011-2023): Law Enforcement Officers Memorial High School vs. Florida vs. Miami-Dade School District [Dataset]. https://www.publicschoolreview.com/law-enforcement-officers-memorial-high-school-profile
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    Dataset updated
    Aug 3, 2015
    Dataset authored and provided by
    Public School Review
    License

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

    Area covered
    Dade County School District, Miami-Dade County
    Description

    This dataset tracks annual black student percentage from 2011 to 2023 for Law Enforcement Officers Memorial High School vs. Florida and Miami-Dade School District

  16. c

    Calls for Service

    • s.cnmilf.com
    • data.bloomington.in.gov
    • +2more
    Updated Oct 25, 2025
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    data.bloomington.in.gov (2025). Calls for Service [Dataset]. https://s.cnmilf.com/user74170196/https/catalog.data.gov/dataset/calls-for-service-6702d
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    Dataset updated
    Oct 25, 2025
    Dataset provided by
    data.bloomington.in.gov
    Description

    Information from the Bloomington Police Department on all calls for service received. Key code for Race: A- Asian/Pacific Island, Non-Hispanic B- African American, Non-Hispanic C- Hawaiian/Other Pacific Island, Hispanic H- Hawaiian/Other Pacific Island, Non-Hispanic I- Indian/Alaskan Native, Non-Hispanic K- African American, Hispanic L- Caucasian, Hispanic N- Indian/Alaskan Native, Hispanic P- Asian/Pacific Island, Hispanic S- Asian, Non-Hispanic T- Asian, Hispanic U- Unknown W- Caucasian, Non-Hispanic Key Code for Reading Districts: Example: LB519 L for Law call or incident B stands for Bloomington 5 is the district or beat where incident occurred All numbers following represents a grid sector. Disclaimer: The Bloomington Police Department takes great effort in making open data as accurate as possible, but there is no avoiding the introduction of errors in this process, which relies on data provided by many people and that cannot always be verified. Information contained in this dataset may change over a period of time. The Bloomington Police Department is not responsible for any error or omission from this data, or for the use or interpretation of the results of any research conducted.

  17. c

    CMPD Employee Demographics

    • data.charlottenc.gov
    • data.wu.ac.at
    Updated Mar 27, 2024
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    City of Charlotte (2024). CMPD Employee Demographics [Dataset]. https://data.charlottenc.gov/datasets/cmpd-employee-demographics
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    Dataset updated
    Mar 27, 2024
    Dataset authored and provided by
    City of Charlotte
    Area covered
    Description

    CMPD is the largest metropolitan police department between Atlanta, GA and Washington, DC. The department consists of over 1,850 sworn and 400 non-sworn personnel committed to providing the best services possible to the residents and guests of Charlotte-Mecklenburg. We believe the department should be reflective demographically of the community we serve. We are continually striving to achieve this through recruiting efforts.

  18. T

    Stolen Guns

    • data.bloomington.in.gov
    • bloomington.data.socrata.com
    • +2more
    csv, xlsx, xml
    Updated Dec 2, 2025
    + more versions
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    Bloomington Police Department (2025). Stolen Guns [Dataset]. https://data.bloomington.in.gov/Police/Stolen-Guns/y66s-bnfm
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    xlsx, csv, xmlAvailable download formats
    Dataset updated
    Dec 2, 2025
    Dataset authored and provided by
    Bloomington Police Department
    License

    ODC Public Domain Dedication and Licence (PDDL) v1.0http://www.opendatacommons.org/licenses/pddl/1.0/
    License information was derived automatically

    Description

    Information from Bloomington Police Department regarding guns reported stolen.

    Key code for Race:

    A- Asian/Pacific Island, Non-Hispanic B- African American, Non-Hispanic C- Hawaiian/Other Pacific Island, Hispanic H- Hawaiian/Other Pacific Island, Non-Hispanic I- Indian/Alaskan Native, Non-Hispanic K- African American, Hispanic L- Caucasian, Hispanic N- Indian/Alaskan Native, Hispanic P- Asian/Pacific Island, Hispanic S- Asian, Non-Hispanic T- Asian, Hispanic U- Unknown W- Caucasian, Non-Hispanic

    Key Code for Reading Districts:

    Example: LB519

    L for Law call or incident B stands for Bloomington 5 is the district or beat where incident occurred All numbers following represents a grid sector.

    Disclaimer: The Bloomington Police Department takes great effort in making open data as accurate as possible, but there is no avoiding the introduction of errors in this process, which relies on data provided by many people and that cannot always be verified. Information contained in this dataset may change over a period of time. The Bloomington Police Department is not responsible for any error or omission from this data, or for the use or interpretation of the results of any research conducted.

  19. d

    Armored Rescue Vehicle Use

    • catalog.data.gov
    • data.bloomington.in.gov
    • +3more
    Updated Nov 8, 2025
    + more versions
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    data.bloomington.in.gov (2025). Armored Rescue Vehicle Use [Dataset]. https://catalog.data.gov/dataset/armored-rescue-vehicle-use-ead99
    Explore at:
    Dataset updated
    Nov 8, 2025
    Dataset provided by
    data.bloomington.in.gov
    Description

    Bloomington Police Department Calls for Service that resulted in the use of an armored rescue vehicle. Key code for Race: A- Asian/Pacific Island, Non-Hispanic B- African American, Non-Hispanic C- Hawaiian/Other Pacific Island, Hispanic H- Hawaiian/Other Pacific Island, Non-Hispanic I- Indian/Alaskan Native, Non-Hispanic K- African American, Hispanic L- Caucasian, Hispanic N- Indian/Alaskan Native, Hispanic P- Asian/Pacific Island, Hispanic S- Asian, Non-Hispanic T- Asian, Hispanic U- Unknown W- Caucasian, Non-Hispanic Key Code for Reading Districts: Example: LB519 L for Law call or incident B stands for Bloomington 5 is the district or beat where incident occurred All numbers following represents a grid sector. Disclaimer: The Bloomington Police Department takes great effort in making open data as accurate as possible, but there is no avoiding the introduction of errors in this process, which relies on data provided by many people and that cannot always be verified. Information contained in this dataset may change over a period of time. The Bloomington Police Department is not responsible for any error or omission from this data, or for the use or interpretation of the results of any research conducted.

  20. g

    Domestic Violence

    • gimi9.com
    • data.bloomington.in.gov
    • +1more
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    Domestic Violence [Dataset]. https://gimi9.com/dataset/data-gov_domestic-violence-1dc16/
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    License

    ODC Public Domain Dedication and Licence (PDDL) v1.0http://www.opendatacommons.org/licenses/pddl/1.0/
    License information was derived automatically

    Description

    These Bloomington Police Department cases have been identified as Domestic Battery using the State Statue definition of 'domestic'. Key code for Race: A- Asian/Pacific Island, Non-Hispanic B- African American, Non-Hispanic C- Hawaiian/Other Pacific Island, Hispanic H- Hawaiian/Other Pacific Island, Non-Hispanic I- Indian/Alaskan Native, Non-Hispanic K- African American, Hispanic L- Caucasian, Hispanic N- Indian/Alaskan Native, Hispanic P- Asian/Pacific Island, Hispanic S- Asian, Non-Hispanic T- Asian, Hispanic U- Unknown W- Caucasian, Non-Hispanic Key Code for Reading Districts: Example: LB519 L for Law call or incident B stands for Bloomington 5 is the district or beat where incident occurred All numbers following represents a grid sector. Disclaimer: The Bloomington Police Department takes great effort in making open data as accurate as possible, but there is no avoiding the introduction of errors in this process, which relies on data provided by many people and that cannot always be verified. Information contained in this dataset may change over a period of time. The Bloomington Police Department is not responsible for any error or omission from this data, or for the use or interpretation of the results of any research conducted.

Share
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Matthew Connor (2022). Police Killings US [Dataset]. https://www.kaggle.com/datasets/azizozmen/police-killings-us
Organization logo

Police Killings US

Explore at:
453 scholarly articles cite this dataset (View in Google Scholar)
zip(62816 bytes)Available download formats
Dataset updated
Feb 6, 2022
Authors
Matthew Connor
Description

"In 2015, The Washington Post began to log every fatal shooting by an on-duty police officer in the United States. In that time there have been more than 5,000 such shootings recorded by The Post. After Michael Brown, an unarmed Black man, was killed in 2014 by police in Ferguson, Mo., a Post investigation found that the FBI undercounted fatal police shootings by more than half. This is because reporting by police departments is voluntary and many departments fail to do so. The Washington Post’s data relies primarily on news accounts, social media postings, and police reports. Analysis of more than five years of data reveals that the number and circumstances of fatal shootings and the overall demographics of the victims have remained relatively constant..." SOURCE ==> Washington Post Article

For more information about this story

This dataset has been prepared by The Washington Post (they keep updating it on runtime) with every fatal shooting in the United States by a police officer in the line of duty since Jan. 1, 2015.

2016 PoliceKillingUS DATASET
2017 PoliceKillingUS DATASET
2018 PoliceKillingUS DATASET
2019 PoliceKillingUS DATASET
2020 PoliceKillingUS DATASET

Features at the Dataset:

The file fatal-police-shootings-data.csv contains data about each fatal shooting in CSV format. The file can be downloaded at this URL. Each row has the following variables:

  • id: a unique identifier for each victim
  • name: the name of the victim
  • date: the date of the fatal shooting in YYYY-MM-DD format
  • manner_of_death: shot, shot and Tasered
  • armed: indicates that the victim was armed with some sort of implement that a police officer believed could inflict harm
    • undetermined: it is not known whether or not the victim had a weapon
    • unknown: the victim was armed, but it is not known what the object was
    • unarmed: the victim was not armed
  • age: the age of the victim
  • gender: the gender of the victim. The Post identifies victims by the gender they identify with if reports indicate that it differs from their biological sex.
    • M: Male
    • F: Female
    • None: unknown
  • race:
    • W: White, non-Hispanic
    • B: Black, non-Hispanic
    • A: Asian
    • N: Native American
    • H: Hispanic
    • O: Other
    • None: unknown
  • city: the municipality where the fatal shooting took place. Note that in some cases this field may contain a county name if a more specific municipality is unavailable or unknown.
  • state: two-letter postal code abbreviation
  • signs of mental illness: News reports have indicated the victim had a history of mental health issues, expressed suicidal intentions or was experiencing mental distress at the time of the shooting.
  • threat_level: The threat_level column was used to flag incidents for the story by Amy Brittain in October 2015. http://www.washingtonpost.com/sf/investigative/2015/10/24/on-duty-under-fire/ As described in the story, the general criteria for the attack label was that there was the most direct and immediate threat to life. That would include incidents where officers or others were shot at, threatened with a gun, attacked with other weapons or physical force, etc. The attack category is meant to flag the highest level of threat. The other and undetermined categories represent all remaining cases. Other includes many incidents where officers or others faced significant threats.
  • flee: News reports have indicated the victim was moving away from officers
    • Foot
    • Car
    • Not fleeing

The threat column and the fleeing column are not necessarily related. For example, there is an incident in which the suspect is fleeing and at the same time turns to fire at gun at the officer. Also, attacks represent a status immediately before fatal shots by police while fleeing could begin slightly earlier and involve a chase. - body_camera: News reports have indicated an officer w...

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