71 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. Police deaths in USA from 1791 to 2022

    • kaggle.com
    zip
    Updated Dec 7, 2022
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    Mayuresh Koli (2022). Police deaths in USA from 1791 to 2022 [Dataset]. https://www.kaggle.com/datasets/mayureshkoli/police-deaths-in-usa-from-1791-to-2022
    Explore at:
    zip(5762743 bytes)Available download formats
    Dataset updated
    Dec 7, 2022
    Authors
    Mayuresh Koli
    License

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

    Area covered
    United States
    Description

    This dataset contains information on fatal police deaths in the United States. The data includes the victim's rank, name, department, date of death, and cause of death. The data spans from 1791 to the present day. This dataset will be updated on monthly basis. Data Scrapped from this website :- https://www.odmp.org/

    New Version Features -> With the new web scrapper I have upgraded dataset with more information. 1) The new dataset version is "police_deaths_USA_v6.csv" and "k9_deaths_USA_v6.csv". 2) Splitted the dataset into 2 different datasets 1 for Human Unit and other for K9 Unit. 3) Check out the new web scrapper code in this file "final_scrapper_program_with_comments.ipynb". 4) Also added the correction file which is needed to adjust some data points from K9 dataset. 5) Extended data of Human Unit dataset to 13 Features. 6) Extended data of K9 Unit dataset to 14 Features.

    The police_deaths dataset contains 13 variables:

    1) Rank -> Rank assigned or achieved by the police throughout their tenure.

    2) Name -> The name of the person.

    3) Age -> Age of the person.

    4) End_Of_Watch -> The death date on which the the person declared as dead.

    5) Day_Of_Week -> The day of the week [Sunday, Monday, etc.].

    6) Cause -> The cause of the death.

    7) Department -> The department's name where the person works.

    8) State -> The state where the department is situated.

    9) Tour -> The Duration of there Tenure.

    10) Badge -> Badge of the person.

    11) Weapon -> The Weapon by which the officer has been killed.

    12) Offender -> Offender / Killer this says what happened to the offender after the incident was he/she [Arrested, Killed, etc.].

    13) Summary -> Summary of the police officer and also the summary of the incident of what happened ? How he/she died ?, etc.

    The k9_deaths dataset contains 14 variables:

    1) Rank -> Rank assigned or achieved by the K9 throughout their tenure.

    2) Name -> The name of the K9.

    3) Breed -> Breed of the K9.

    4) Gender -> Gender of the K9.

    5) Age -> Age of the K9.

    6) End_Of_Watch -> The death date on which the the person declared as dead.

    7) Day_Of_Week -> The day of the week [Sunday, Monday, etc.].

    8) Cause -> The cause of the death.

    9) Department -> The department's name where the K9 was assigned.

    10) State -> The state where the department is situated.

    11) Tour -> The Duration of there Tenure.

    12) Weapon -> The Weapon by which the officer has been killed.

    13) Offender -> Offender / Killer this says what happened to the offender after the incident was he/she [Arrested, Killed, etc.].

    14) Summary -> Summary of the K9 dog and also the summary of the incident of what happened ? How he/she died ?, etc.

    Acknowledgements:

    The original dataset was collected by FiveThirtyEight and it contains police death data from 1791 to 2016. Here is the link -> https://data.world/fivethirtyeight/police-deaths.

    The reason I made this dataset is because it had not been updated since 2016 and the scrapping script was outdated, so I decided to make a new scrapper and update the dataset till present. I got this idea from the FiveThirtyEight group and a fellow kaggler, Satoshi Datamoto, who uploaded the dataset on kaggle. Thank you for inspiration.

    Tableau Visualization link :- https://public.tableau.com/app/profile/mayuresh.koli/viz/USALawEnforcementLineofDutyDeaths/main_dashboard

  3. People shot to death by U.S. police 2017-2024, by race

    • statista.com
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    Statista, People shot to death by U.S. police 2017-2024, by race [Dataset]. https://www.statista.com/statistics/585152/people-shot-to-death-by-us-police-by-race/
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    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    United States
    Description

    Sadly, the trend of fatal police shootings in the United States seems to only be increasing, with a total 1,173 civilians having been shot, 248 of whom were Black, as of December 2024. In 2023, there were 1,164 fatal police shootings. Additionally, the rate of fatal police shootings among Black Americans was much higher than that for any other ethnicity, standing at 6.1 fatal shootings per million of the population per year between 2015 and 2024. Police brutality in the U.S. In recent years, particularly since the fatal shooting of Michael Brown in Ferguson, Missouri in 2014, police brutality has become a hot button issue in the United States. The number of homicides committed by police in the United States is often compared to those in countries such as England, where the number is significantly lower. Black Lives Matter The Black Lives Matter Movement, formed in 2013, has been a vocal part of the movement against police brutality in the U.S. by organizing “die-ins”, marches, and demonstrations in response to the killings of black men and women by police. While Black Lives Matter has become a controversial movement within the U.S., it has brought more attention to the number and frequency of police shootings of civilians.

  4. Dataset on US police killings 2013-2024

    • kaggle.com
    zip
    Updated May 14, 2024
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    Lord Voldemort (2024). Dataset on US police killings 2013-2024 [Dataset]. https://www.kaggle.com/datasets/lordvoldemortt/dataset-on-us-police-killings-2013-2024
    Explore at:
    zip(8405081 bytes)Available download formats
    Dataset updated
    May 14, 2024
    Authors
    Lord Voldemort
    License

    Apache License, v2.0https://www.apache.org/licenses/LICENSE-2.0
    License information was derived automatically

    Area covered
    United States
    Description

    This data was obtained from https://mappingpoliceviolence.us/.

    Mapping Police Violence is a 501(c)(3) organization that publishes the most comprehensive and up-to-date data on police violence in America to support transformative change.

    This is a database set on openly sharing information on police violence in America.

    Some information on this data according to their website: Our data has been meticulously sourced from official police use of force data collection programs in states like California, Texas and Virginia, combined with nationwide data from The Gun Violence Archive and the Fatal Encounters database, two impartial crowdsourced databases. We've also done extensive original research to further improve the quality and completeness of the data; searching social media, obituaries, criminal records databases, police reports and other sources to identify the race of 90 percent of all victims in the database.

    We believe the data represented on this site is the most comprehensive accounting of people killed by police since 2013. Note that the Mapping Police Violence database is more comprehensive than the Washington Post police shootings database: while WaPo only tracks cases where people are fatally shot by on-duty police officers, our database includes additional incidents such as cases where police kill someone through use of a chokehold, baton, taser or other means as well as cases such as killings by off-duty police. A recent report from the Bureau of Justice Statistics estimated approximately 1,200 people were killed by police between June, 2015 and May, 2016. Our database identified 1,100 people killed by police over this time period. While there are undoubtedly police killings that are not included in our database (namely, those that go unreported by the media), these estimates suggest that our database captures 92% of the total number of police killings that have occurred since 2013. We hope these data will be used to provide greater transparency and accountability for police departments as part of the ongoing work to end police violence in America.

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

    • catalog.data.gov
    • datasets.ai
    • +1more
    Updated Nov 14, 2025
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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
    Explore at:
    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.

  6. o

    Uniform Crime Reporting Program Data: Law Enforcement Officers Killed and...

    • openicpsr.org
    Updated Jun 6, 2018
    + more versions
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    Jacob Kaplan (2018). Uniform Crime Reporting Program Data: Law Enforcement Officers Killed and Assaulted (LEOKA) 1975-2015 [Dataset]. http://doi.org/10.3886/E102180V3
    Explore at:
    Dataset updated
    Jun 6, 2018
    Dataset provided by
    University of Pennsylvania
    Authors
    Jacob Kaplan
    License

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

    Time period covered
    1975 - 2015
    Area covered
    United States
    Description
    Version 3 release notes:
    • Fix bug where Philadelphia Police Department had incorrect FIPS county code.

    The LEOKA data sets contain highly detailed data about the number of officers/civilians employed by an agency and how many officers were killed or assaulted. Each data set contains over 2,200 columns and has a wealth of information about the circumstances of assaults on officers.

    All the data was downloaded from NACJD as ASCII+SPSS Setup files and read into R using the package asciiSetupReader. It was then cleaned in R. The "cleaning" just means that column names were standardized (different years have slightly different spellings for many columns). Standardization of column names is necessary to stack multiple years together. Categorical variables (e.g. state) were also standardized (i.e. fix spelling errors).

    About 7% of all agencies in the data report more officers or civilians than population. As such, I removed the officers/civilians per 1,000 population variables. You should exercise caution if deciding to generate and use these variables yourself.

    I did not make any changes to the numeric columns except for the following. A few years of data had the values "blank" or "missing" as indicators of missing values. Rows in otherwise numeric columns (e.g. jan_asslt_no_injury_knife) with these values were replaced with NA. There were three obvious data entry errors in officers killed by felony/accident that I changed to NA.

    In 1978 the agency "pittsburgh" (ORI = PAPPD00) reported 576 officers killed by accident during March.
    In 1979 the agency "metuchen" (ORI = NJ01210) reported 991 officers killed by felony during August.
    In 1990 the agency "penobscot state police" (ORI = ME010SP) reported 860 officers killed by accident during July.

    No other changes to numeric columns were made.

    Each zip file contains all years as individual monthly files of the specified data type It also includes a file with all years aggregated yearly and stacked into a single data set. Please note that each monthly file is quite large (2,200+ columns) so it may take time to download the zip file and open each data file.

    For the R code used to clean this data, see here.
    https://github.com/jacobkap/crime_data.

    The UCR Handbook (https://ucr.fbi.gov/additional-ucr-publications/ucr_handbook.pdf/view) describes the LEOKA data as follows:

    "The UCR Program collects data from all contributing agencies ... on officer line-of-duty deaths and assaults. Reporting agencies must submit data on ... their own duly sworn officers feloniously or accidentally killed or assaulted in the line of duty. The purpose of this data collection is to identify situations in which officers are killed or assaulted, describe the incidents statistically, and publish the data to aid agencies in developing policies to improve officer safety.

    "... agencies must record assaults on sworn officers. Reporting agencies must count all assaults that resulted in serious injury or assaults in which a weapon was used that could have caused serious injury or death. They must include other assaults not causing injury if the assault involved more than mere verbal abuse or minor resistance to an arrest. In other words, agencies must include in this section all assaults on officers, whether or not the officers sustained injuries."

    If you have any questions, comments, or suggestions please contact me at jkkaplan6@gmail.com



  7. o

    Aggregated Fatal Police Shootings Dataset

    • openicpsr.org
    delimited
    Updated May 23, 2024
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    Cholyeon Cho; Eric Dobbie; Adam Glynn (2024). Aggregated Fatal Police Shootings Dataset [Dataset]. http://doi.org/10.3886/E203684V2
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    delimitedAvailable download formats
    Dataset updated
    May 23, 2024
    Dataset provided by
    Emory University, Political Science and Quantitative Theory and Methods
    Emory University, Quantitative Theory and Methods
    Authors
    Cholyeon Cho; Eric Dobbie; Adam Glynn
    License

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

    Description

    A comprehensive review of an aggregated dataset, containing any death happening between the years 2015 to 2021 that is inflicted by an on-duty or off-duty officer where the officer fatally shoots the victim. The dataset is called aggregated because it's an aggregation of the observations inside three fatal police datasets: Fatal Encounters, Mapping Police Violence, Washington Post.

  8. Police Shootings in the United States: 2015-2024

    • kaggle.com
    zip
    Updated Jul 23, 2024
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    Aquib Ahmad (2024). Police Shootings in the United States: 2015-2024 [Dataset]. https://www.kaggle.com/datasets/aquibahmad7/police-shootings-in-the-united-states-2015-2024
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    zip(295593 bytes)Available download formats
    Dataset updated
    Jul 23, 2024
    Authors
    Aquib Ahmad
    License

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

    Area covered
    United States
    Description

    This dataset, compiled by The Washington Post, logs every person shot and killed by an on-duty police officer in the United States from 2015 to 2024. Following the 2014 shooting of Michael Brown in Ferguson, it was discovered that FBI reports were significantly undercounted, with only a third of fatal shootings recorded by 2021. This comprehensive database aims to fill that gap and provide detailed information on each incident, including the police departments involved, to enhance accountability.

  9. Data from: Police Use of Deadly Force, 1970-1979

    • catalog.data.gov
    • datasets.ai
    • +1more
    Updated Mar 12, 2025
    + more versions
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    National Institute of Justice (2025). Police Use of Deadly Force, 1970-1979 [Dataset]. https://catalog.data.gov/dataset/police-use-of-deadly-force-1970-1979-fdf67
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    Dataset updated
    Mar 12, 2025
    Dataset provided by
    National Institute of Justicehttp://nij.ojp.gov/
    Description

    The circumstances surrounding "justifiable homicides" by police are the focus of this data collection, which examines occurrences in 57 United States cities during the period 1970-1979. Homicides by on- and off-duty police officers serving communities of 250,000 or more were studied. Data were collected through a survey questionnaire sent to police executives of the 57 cities. The Federal Bureau of Investigation supplied data on justifiable homicides by police, including age, sex, and race data. The variables include number of sworn officers, number of supervisory officers, average years of education, department regulations about issues such as off-duty employment, uniforms, carrying firearms, and disciplinary actions, in-service training, pre-service training, firearms practice, assignments without firearms, on-duty deaths, and off-duty deaths. The study was funded by a grant from the National Institute of Justice to the International Association of Chiefs of Police.

  10. d

    Year wise Deaths in Police Custody/Lock-up where persons in remand and...

    • dataful.in
    Updated Nov 26, 2025
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    Dataful (Factly) (2025). Year wise Deaths in Police Custody/Lock-up where persons in remand and persons not in remand [Dataset]. https://dataful.in/datasets/18052
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    application/x-parquet, csv, xlsxAvailable download formats
    Dataset updated
    Nov 26, 2025
    Dataset authored and provided by
    Dataful (Factly)
    License

    https://dataful.in/terms-and-conditionshttps://dataful.in/terms-and-conditions

    Time period covered
    1999 - 2022
    Area covered
    India
    Variables measured
    Deaths in police custody
    Description

    This dataset contains the details of deaths in police custody/lock-up compiled by NCRB. It has details of deaths of both 'persons in remand' and 'persons not in remand'.

  11. Police Deaths

    • kaggle.com
    zip
    Updated Sep 13, 2021
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    mysar ahmad bhat (2021). Police Deaths [Dataset]. https://www.kaggle.com/mysarahmadbhat/police-deaths
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    zip(745159 bytes)Available download formats
    Dataset updated
    Sep 13, 2021
    Authors
    mysar ahmad bhat
    License

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

    Description

    For most of the last 35 years, the number of police officers who die on the job in the U.S. declined, but one grim statistic held steady: The most common cause of death was gun homicide. Those numbers grew significantly on Thursday night when five police officers were shot and killed at a demonstration in Dallas that was protesting recent killings by police officers in other states. President Obama called it “a vicious, calculated and despicable attack on law enforcement.” Per officer, policing had become even safer in recent years than the overall death counts suggest, which makes the Dallas shooting that much more of a singular, horrific massacre. That’s because the decline in the number of deaths by police officers in the line of duty has occurred as the number of officers has risen. The number of full-time, sworn local police officers increased by 35 percent from 1987 to 2013, according to the Bureau of Justice Statistics. During that same period, the number of officers killed declined by 34 percent. 1 And a growing share of officer deaths are happening in accidental or deliberate car collisions.

  12. o

    Jacob Kaplan's Concatenated Files: Uniform Crime Reporting Program Data: Law...

    • openicpsr.org
    Updated Mar 25, 2018
    + more versions
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    Jacob Kaplan (2018). Jacob Kaplan's Concatenated Files: Uniform Crime Reporting Program Data: Law Enforcement Officers Killed and Assaulted (LEOKA) 1960-2021 [Dataset]. http://doi.org/10.3886/E102180V12
    Explore at:
    Dataset updated
    Mar 25, 2018
    Dataset provided by
    Princeton University
    Authors
    Jacob Kaplan
    License

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

    Time period covered
    1960 - 2020
    Area covered
    United States
    Description

    For a comprehensive guide to this data and other UCR data, please see my book at ucrbook.comVersion 12 release notes:Adds 2021 data.Version 11 release notes:Adds 2020 data. Please note that the FBI has retired UCR data ending in 2020 data so this will (probably, I haven't seen confirmation either way) be the last LEOKA data they release. Changes .rda file to .rds.Version 10 release notes:Changes release notes description, does not change data.Version 9 release notes:Adds data for 2019.Version 8 release notes:Fix bug for years 1960-1971 where the number of months reported variable was incorrectly down by 1 month. I recommend caution when using these years as they only report either 0 or 12 months of the year, which differs from every other year in the data. Added the variable officers_killed_total which is the sum of officers_killed_by_felony and officers_killed_by_accident.Version 7 release notes:Adds data from 2018Version 6 release notes:Adds data in the following formats: SPSS and Excel.Changes project name to avoid confusing this data for the ones done by NACJD.Version 5 release notes: Adds data for 1960-1974 and 2017. Note: many columns (including number of female officers) will always have a value of 0 for years prior to 1971. This is because those variables weren't collected prior to 1971. These should be NA, not 0 but I'm keeping it as 0 to be consistent with the raw data. Removes support for .csv and .sav files.Adds a number_of_months_reported variable for each agency-year. A month is considered reported if the month_indicator column for that month has a value of "normal update" or "reported, not data."The formatting of the monthly data has changed from wide to long. This means that each agency-month has a single row. The old data had each agency being a single row with each month-category (e.g. jan_officers_killed_by_felony) being a column. Now there will just be a single column for each category (e.g. officers_killed_by_felony) and the month can be identified in the month column. This also results in most column names changing. As such, be careful when aggregating the monthly data since some variables are the same every month (e.g. number of officers employed is measured annually) so aggregating will be 12 times as high as the real value for those variables. Adds a date column. This date column is always set to the first of the month. It is NOT the date that a crime occurred or was reported. It is only there to make it easier to create time-series graphs that require a date input.All the data in this version was acquired from the FBI as text/DAT files and read into R using the package asciiSetupReader. The FBI also provided a PDF file explaining how to create the setup file to read the data. Both the FBI's PDF and the setup file I made are included in the zip files. Data is the same as from NACJD but using all FBI files makes cleaning easier as all column names are already identical. Version 4 release notes: Add data for 2016.Order rows by year (descending) and ORI.Version 3 release notes: Fix bug where Philadelphia Police Department had incorrect FIPS county code. The LEOKA data sets contain highly detailed data about the number of officers/civilians employed by an agency and how many officers were killed or assaulted. All the data was acquired from the FBI as text/DAT files and read into R using the package asciiSetupReader. The FBI also provided a PDF file explaining how to create the setup file to read the data. Both the FBI's PDF and the setup file I made are included in the zip files. About 7% of all agencies in the data report more officers or civilians than population. As such, I removed the officers/civilians per 1,000 population variables. You should exercise caution if deciding to generate and use these variables yourself. Several agency had impossible large (>15) officer deaths in a single month. For those months I changed the value to NA. The UCR Handbook (https://ucr.fbi.gov/additional-ucr-publications/ucr_handbook.pdf/view) describes the LEOKA data as follows:"The UCR Program collects data from all contributing agencies ... on officer line-of-duty deaths and assaults. Reporting agencies must submit data on ... their own duly sworn officers feloniously or accidentally killed or assaulted in the line of duty. The purpose of this data collection is to identify situations in which

  13. d

    NYPD Shooting Incident Data (Year To Date)

    • catalog.data.gov
    • data.cityofnewyork.us
    • +3more
    Updated Nov 1, 2025
    + more versions
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    data.cityofnewyork.us (2025). NYPD Shooting Incident Data (Year To Date) [Dataset]. https://catalog.data.gov/dataset/nypd-shooting-incident-data-year-to-date
    Explore at:
    Dataset updated
    Nov 1, 2025
    Dataset provided by
    data.cityofnewyork.us
    Description

    List of every shooting incident that occurred in NYC during the current calendar year. This is a breakdown of every shooting incident that occurred in NYC during the current calendar year. This data is manually extracted every quarter and reviewed by the Office of Management Analysis and Planning before being posted on the NYPD website. Each record represents a shooting incident in NYC and includes information about the event, the location and time of occurrence. In addition, information related to suspect and victim demographics is also included. This data can be used by the public to explore the nature of police enforcement activity. Please refer to the attached data footnotes for additional information about this dataset.

  14. FiveThirtyEight Police Deaths Dataset

    • kaggle.com
    zip
    Updated Apr 26, 2019
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    FiveThirtyEight (2019). FiveThirtyEight Police Deaths Dataset [Dataset]. https://www.kaggle.com/fivethirtyeight/fivethirtyeight-police-deaths-dataset
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    zip(1307578 bytes)Available download formats
    Dataset updated
    Apr 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 Deaths

    This directory contains the data and code behind the story The Dallas Shooting Was Among The Deadliest For Police In U.S. History. The primary source of data is the Officer Down Memorial Page (ODMP), started in 1996 by a college student who is now a police officer and who continues to maintain the database.

    File descriptions:

    FileDescription
    scrape.RScrapes data on the death of every officer tracked on ODMP
    all_data.csvOutput of scrape.R
    clean.RTakes the data in all_data.csv, cleans it and formats the dates correctly, and tags every entry as human or canine.
    clean_data.csvOutput of clean.R
    plot.RSummarizes police deaths by category and generates a plot similar to the one below

    https://i1.wp.com/espnfivethirtyeight.files.wordpress.com/2016/07/bialik-flowers-king-police-deaths-1.png" alt="">

    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.

  15. C

    Murder

    • data.cityofchicago.org
    Updated Dec 2, 2025
    + more versions
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    Chicago Police Department (2025). Murder [Dataset]. https://data.cityofchicago.org/Public-Safety/Murder/5s47-c9ay
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    csv, kml, kmz, xml, application/geo+json, xlsxAvailable download formats
    Dataset updated
    Dec 2, 2025
    Authors
    Chicago Police Department
    Description

    This dataset reflects reported incidents of crime (with the exception of murders where data exists for each victim) that occurred in the City of Chicago from 2001 to present, minus the most recent seven days. Data is extracted from the Chicago Police Department's CLEAR (Citizen Law Enforcement Analysis and Reporting) system. In order to protect the privacy of crime victims, addresses are shown at the block level only and specific locations are not identified. Should you have questions about this dataset, you may contact the Research & Development Division of the Chicago Police Department at 312.745.6071 or RandD@chicagopolice.org. Disclaimer: These crimes may be based upon preliminary information supplied to the Police Department by the reporting parties that have not been verified. The preliminary crime classifications may be changed at a later date based upon additional investigation and there is always the possibility of mechanical or human error. Therefore, the Chicago Police Department does not guarantee (either expressed or implied) the accuracy, completeness, timeliness, or correct sequencing of the information and the information should not be used for comparison purposes over time. The Chicago Police Department will not be responsible for any error or omission, or for the use of, or the results obtained from the use of this information. All data visualizations on maps should be considered approximate and attempts to derive specific addresses are strictly prohibited. The Chicago Police Department is not responsible for the content of any off-site pages that are referenced by or that reference this web page other than an official City of Chicago or Chicago Police Department web page. The user specifically acknowledges that the Chicago Police Department is not responsible for any defamatory, offensive, misleading, or illegal conduct of other users, links, or third parties and that the risk of injury from the foregoing rests entirely with the user. The unauthorized use of the words "Chicago Police Department," "Chicago Police," or any colorable imitation of these words or the unauthorized use of the Chicago Police Department logo is unlawful. This web page does not, in any way, authorize such use. Data is updated daily Tuesday through Sunday. The dataset contains more than 65,000 records/rows of data and cannot be viewed in full in Microsoft Excel. Therefore, when downloading the file, select CSV from the Export menu. Open the file in an ASCII text editor, such as Wordpad, to view and search. To access a list of Chicago Police Department - Illinois Uniform Crime Reporting (IUCR) codes, go to http://data.cityofchicago.org/Public-Safety/Chicago-Police-Department-Illinois-Uniform-Crime-R/c7ck-438e

  16. C

    Violence Reduction - Victim Demographics - Aggregated

    • data.cityofchicago.org
    • s.cnmilf.com
    • +1more
    csv, xlsx, xml
    Updated Dec 2, 2025
    + more versions
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    City of Chicago (2025). Violence Reduction - Victim Demographics - Aggregated [Dataset]. https://data.cityofchicago.org/Public-Safety/Violence-Reduction-Victim-Demographics-Aggregated/gj7a-742p
    Explore at:
    xml, xlsx, csvAvailable download formats
    Dataset updated
    Dec 2, 2025
    Dataset authored and provided by
    City of Chicago
    Description

    This dataset contains aggregate data on violent index victimizations at the quarter level of each year (i.e., January – March, April – June, July – September, October – December), from 2001 to the present (1991 to present for Homicides), with a focus on those related to gun violence. Index crimes are 10 crime types selected by the FBI (codes 1-4) for special focus due to their seriousness and frequency. This dataset includes only those index crimes that involve bodily harm or the threat of bodily harm and are reported to the Chicago Police Department (CPD). Each row is aggregated up to victimization type, age group, sex, race, and whether the victimization was domestic-related. Aggregating at the quarter level provides large enough blocks of incidents to protect anonymity while allowing the end user to observe inter-year and intra-year variation. Any row where there were fewer than three incidents during a given quarter has been deleted to help prevent re-identification of victims. For example, if there were three domestic criminal sexual assaults during January to March 2020, all victims associated with those incidents have been removed from this dataset. Human trafficking victimizations have been aggregated separately due to the extremely small number of victimizations.

    This dataset includes a " GUNSHOT_INJURY_I " column to indicate whether the victimization involved a shooting, showing either Yes ("Y"), No ("N"), or Unknown ("UKNOWN.") For homicides, injury descriptions are available dating back to 1991, so the "shooting" column will read either "Y" or "N" to indicate whether the homicide was a fatal shooting or not. For non-fatal shootings, data is only available as of 2010. As a result, for any non-fatal shootings that occurred from 2010 to the present, the shooting column will read as “Y.” Non-fatal shooting victims will not be included in this dataset prior to 2010; they will be included in the authorized dataset, but with "UNKNOWN" in the shooting column.

    The dataset is refreshed daily, but excludes the most recent complete day to allow CPD time to gather the best available information. Each time the dataset is refreshed, records can change as CPD learns more about each victimization, especially those victimizations that are most recent. The data on the Mayor's Office Violence Reduction Dashboard is updated daily with an approximately 48-hour lag. As cases are passed from the initial reporting officer to the investigating detectives, some recorded data about incidents and victimizations may change once additional information arises. Regularly updated datasets on the City's public portal may change to reflect new or corrected information.

    How does this dataset classify victims?

    The methodology by which this dataset classifies victims of violent crime differs by victimization type:

    Homicide and non-fatal shooting victims: A victimization is considered a homicide victimization or non-fatal shooting victimization depending on its presence in CPD's homicide victims data table or its shooting victims data table. A victimization is considered a homicide only if it is present in CPD's homicide data table, while a victimization is considered a non-fatal shooting only if it is present in CPD's shooting data tables and absent from CPD's homicide data table.

    To determine the IUCR code of homicide and non-fatal shooting victimizations, we defer to the incident IUCR code available in CPD's Crimes, 2001-present dataset (available on the City's open data portal). If the IUCR code in CPD's Crimes dataset is inconsistent with the homicide/non-fatal shooting categorization, we defer to CPD's Victims dataset.

    For a criminal homicide, the only sensible IUCR codes are 0110 (first-degree murder) or 0130 (second-degree murder). For a non-fatal shooting, a sensible IUCR code must signify a criminal sexual assault, a robbery, or, most commonly, an aggravated battery. In rare instances, the IUCR code in CPD's Crimes and Victims dataset do not align with the homicide/non-fatal shooting categorization:

    1. In instances where a homicide victimization does not correspond to an IUCR code 0110 or 0130, we set the IUCR code to "01XX" to indicate that the victimization was a homicide but we do not know whether it was a first-degree murder (IUCR code = 0110) or a second-degree murder (IUCR code = 0130).
    2. When a non-fatal shooting victimization does not correspond to an IUCR code that signifies a criminal sexual assault, robbery, or aggravated battery, we enter “UNK” in the IUCR column, “YES” in the GUNSHOT_I column, and “NON-FATAL” in the PRIMARY column to indicate that the victim was non-fatally shot, but the precise IUCR code is unknown.

    Other violent crime victims: For other violent crime types, we refer to the IUCR classification that exists in CPD's victim table, with only one exception:

    1. When there is an incident that is associated with no victim with a matching IUCR code, we assume that this is an error. Every crime should have at least 1 victim with a matching IUCR code. In these cases, we change the IUCR code to reflect the incident IUCR code because CPD's incident table is considered to be more reliable than the victim table.

    Note: All businesses identified as victims in CPD data have been removed from this dataset.

    Note: The definition of “homicide” (shooting or otherwise) does not include justifiable homicide or involuntary manslaughter. This dataset also excludes any cases that CPD considers to be “unfounded” or “noncriminal.”

    Note: In some instances, the police department's raw incident-level data and victim-level data that were inputs into this dataset do not align on the type of crime that occurred. In those instances, this dataset attempts to correct mismatches between incident and victim specific crime types. When it is not possible to determine which victims are associated with the most recent crime determination, the dataset will show empty cells in the respective demographic fields (age, sex, race, etc.).

    Note: The initial reporting officer usually asks victims to report demographic data. If victims are unable to recall, the reporting officer will use their best judgment. “Unknown” can be reported if it is truly unknown.

  17. Shootings

    • data.boston.gov
    csv
    Updated Dec 2, 2025
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    Boston Police Department (2025). Shootings [Dataset]. https://data.boston.gov/dataset/shootings
    Explore at:
    csv(2), csv(376)Available download formats
    Dataset updated
    Dec 2, 2025
    Dataset authored and provided by
    Boston Police Departmenthttps://bpdnews.com/
    Description

    The Shootings dashboard contains information on shooting incidents where a victim was struck by a bullet, either fatally or non-fatally; that occurred in the City of Boston and fall under Boston Police Department jurisdiction. The dashboard does not contain records for self-inflicted gunshot wounds or shootings determined to be justifiable. Information on the incident, and the demographics of victims are included. This information is updated based on analysis conducted by the Boston Regional Intelligence Center under the Boston Police Department Bureau of Intelligence and Analysis. The data is for 2015 forward, with a 7 day rolling delay to allow for analysis and data entry to occur.

  18. d

    Data from: DM-FS: A Comprehensive Database on Death-Modulated Fatal...

    • search.dataone.org
    Updated Jan 18, 2025
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    Verrey, Jacob (2025). DM-FS: A Comprehensive Database on Death-Modulated Fatal Shootings [Dataset]. http://doi.org/10.7910/DVN/7HK7HH
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    Dataset updated
    Jan 18, 2025
    Dataset provided by
    Harvard Dataverse
    Authors
    Verrey, Jacob
    Time period covered
    Jan 1, 2015 - Dec 31, 2020
    Description

    DM-FS enables the bidirectional exploration of fatal encounters. In other words, it allows others to investigate how deaths in one group, officers, modulate deaths in another, fatally shot civilians and vice-versa Recommended Instructions First, click on the "Tree" button near the bold "Change View" text, underneath the "Files" tab. This will make the repository legible. Second, there are three folders listed below. Click on the folder whose contents you wish to access and download the corresponding database. Civilians. This folder contains DM-FS Civilians, a database that can enable the exploration of how a civilian’s death affects the number of officers that other civilians kill each year, and under which circumstances. Officers.This folder contains DM-FS Officers, a database that enables the exploration of how an officer’s death affects the number of civilians other officers fatally shoot each year, and under which circumstances. Technical Validation Tables. This folder contains the various technical validation tables that appear in the DM-FS data descriptor. For most users, we recommend (i) reading the codebook and (ii) downloading the cleaned version of DM-FS. For more advanced users who wish to customize the database and apply their own filtering, we recommend downloading the full database. Changelog DM-FS will be updated with additional information, such as additional years or databases. Any additions or changes to the database will appear in the text below. ************************* Version 1.0 January 16, 2025 ************************* This post represents the launch of the first full version of DM-FS. The version of DM-FS that appears below is therefore an exact copy of the one described in the Scientific Data dataset descriptor.

  19. O

    The-counted-guardian-dataset

    • evergreen.data.socrata.com
    csv, xlsx, xml
    Updated Oct 23, 2015
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    The Guardian (2015). The-counted-guardian-dataset [Dataset]. https://evergreen.data.socrata.com/Public-Safety/The-counted-guardian-dataset/g6dx-9xh3
    Explore at:
    xml, xlsx, csvAvailable download formats
    Dataset updated
    Oct 23, 2015
    Dataset authored and provided by
    The Guardianhttp://theguardian.com/
    License

    U.S. Government Workshttps://www.usa.gov/government-works
    License information was derived automatically

    Description

    What is The Counted? The Counted is a project by the Guardian – and you – working to count the number of people killed by police and other law enforcement agencies in the United States throughout 2015, to monitor their demographics and to tell the stories of how they died. The database will combine Guardian reporting with verified crowdsourced information to build a more comprehensive record of such fatalities. The Counted is the most thorough public accounting for deadly use of force in the US, but it will operate as an imperfect work in progress – and will be updated by Guardian reporters and interactive journalists as frequently and as promptly as possible.

  20. d

    Violence Reduction - Victims of Homicides and Non-Fatal Shootings

    • catalog.data.gov
    • data.cityofchicago.org
    • +1more
    Updated Nov 22, 2025
    + more versions
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    data.cityofchicago.org (2025). Violence Reduction - Victims of Homicides and Non-Fatal Shootings [Dataset]. https://catalog.data.gov/dataset/violence-reduction-victims-of-homicides-and-non-fatal-shootings
    Explore at:
    Dataset updated
    Nov 22, 2025
    Dataset provided by
    data.cityofchicago.org
    Description

    This dataset contains individual-level homicide and non-fatal shooting victimizations, including homicide data from 1991 to the present, and non-fatal shooting data from 2010 to the present (2010 is the earliest available year for shooting data). This dataset includes a "GUNSHOT_INJURY_I " column to indicate whether the victimization involved a shooting, showing either Yes ("Y"), No ("N"), or Unknown ("UKNOWN.") For homicides, injury descriptions are available dating back to 1991, so the "shooting" column will read either "Y" or "N" to indicate whether the homicide was a fatal shooting or not. For non-fatal shootings, data is only available as of 2010. As a result, for any non-fatal shootings that occurred from 2010 to the present, the shooting column will read as “Y.” Non-fatal shooting victims will not be included in this dataset prior to 2010; they will be included in the authorized-access dataset, but with "UNKNOWN" in the shooting column. Each row represents a single victimization, i.e., a unique event when an individual became the victim of a homicide or non-fatal shooting. Each row does not represent a unique victim—if someone is victimized multiple times there will be multiple rows for each of those distinct events. The dataset is refreshed daily, but excludes the most recent complete day to allow the Chicago Police Department (CPD) time to gather the best available information. Each time the dataset is refreshed, records can change as CPD learns more about each victimization, especially those victimizations that are most recent. The data on the Mayor's Office Violence Reduction Dashboard is updated daily with an approximately 48-hour lag. As cases are passed from the initial reporting officer to the investigating detectives, some recorded data about incidents and victimizations may change once additional information arises. Regularly updated datasets on the City's public portal may change to reflect new or corrected information. A version of this dataset with additional crime types is available by request. To make a request, please email dataportal@cityofchicago.org with the subject line: Violence Reduction Victims Access Request. Access will require an account on this site, which you may create at https://data.cityofchicago.org/signup. How does this dataset classify victims? The methodology by which this dataset classifies victims of violent crime differs by victimization type: Homicide and non-fatal shooting victims: A victimization is considered a homicide victimization or non-fatal shooting victimization depending on its presence in CPD's homicide victims data table or its shooting victims data table. A victimization is considered a homicide only if it is present in CPD's homicide data table, while a victimization is considered a non-fatal shooting only if it is present in CPD's shooting data tables and absent from CPD's homicide data table. To determine the IUCR code of homicide and non-fatal shooting victimizations, we defer to the incident IUCR code available in CPD's Crimes, 2001-present dataset (available on the City's open data portal). If the IUCR code in CPD's Crimes dataset is inconsistent with the homicide/non-fatal shooting categorization, we defer to CPD's Victims dataset. For a criminal homicide, the only sensible IUCR codes are 0110 (first-degree murder) or 0130 (second-degree murder). For a non-fatal shooting, a sensible IUCR code must signify a criminal sexual assault, a robbery, or, most commonly, an aggravated battery. In rare instances, the IUCR code in CPD's Crimes and Victims dataset do not align with the homicide/non-fatal shooting categorization: In instances where a homicide victimization does not correspond to an IUCR code 0110 or 0130, we set the IUCR code to "01XX" to indicate that the victimization was a homicide but we do not know whether it was a fi

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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

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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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