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analytics_rules_doc.txt
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analytics_rules_doc.txt
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2019
NBA Hackathon Application –
Basketball Analytics Prompt
Task
: Use the attached data and instructions to calculate offensive rating and defensive rating for each
player in each game
from the 2018 Playoffs
.
Offensive Rating is defined as the team points scored per 100 possessions while the player is on the
court.
Defensive Rating is defined as the number of points per 100 possessions that the team allows
while that individual player is on the court. A possession is ended by (1) made field goal attempts, (2)
made final free throw attempt, (3) missed final free throw attempt that results in a defensive rebound,
(4) missed field goal attempt that results in a defensive rebound, (5) turnover, or (6) end of time period.
Note: When a player is substituted before or during a set of free throws but was on the court at the time
of the foul that caused the free throw, he is considered to be on the court for the free throws for the
purposes of offensive and defensive rat
ing. A player substituted in before a free throw but after a foul is
not considered to be on the court until after the conclusion of the free throws.
Additionally, when there
is a technical foul, the players marked on the court at the time of the technical foul are credited with any
points resulting from the FTs. This is similar to a normal foul but can be a bit confusing as technical fouls
often happ
en in the midst of other foul events/FTs/substitutions.
Ex: In a
Bucks
vs.
Nets
game, Kyle Lowry commits a shooting foul on Kristaps Porzingis. Porzingis shoots
and scores the first free throw, and then Jonas Valanciunas is substituted in for Serge Ibaka. Porzingis
makes the second free throw. For the purposes of offensive and defensive ratings
, Ibaka (because he was
on the court at the time of
the foul) receives a value of 2
toward his defensive rating
for those free
throws
while
Valanciunas is not considered on the court until after the free throws are completed.
Porzingis receives a value of 2 toward his offensive rating.
This folder includes three data sets:
E
vent_Codes.txt, Play_by_Play.txt,
and
Game_Lineup.txt
. Please note that each question is permitted a maximum of two file attachments.
Please submit your answer in a
.csv
file and save your code, spreadsheets and all other work in a
.zip
file.
Please submit a
.csv
file
titled “
Your_Team_Name_Q1_BBALL.csv
” substituting in the name of
your team for "
Your_Team_Name
"
. Please save as a
.csv
. The final product should have 4
columns. Column 1:
Game_ID
, Column 2:
Player_ID
, Column 3:
OffRtg
, Column 4:
DefRtg
.
Provided Data:
-
Event_Codes.txt
o
This dataset provides look up values for the event message types and action types found
in the play by play dataset. Each code is converted to an English language description of
the event.
-
Game_Lineup.txt
o
This
dataset provides the start of period player availability.
Game_id
– a unique game code for each game
Period
(Quarter)
– the associated period of the line up (overtime periods are
indicated by values greater than 4)
Person_id
– a unique identifier for each
player
Team_id
– a unique identifier for each team
Status
– a variable indicating whether the player is active (A) or inactive (I)
-
Play_by_Play.txt
o
This dataset provides play by play information on the event level for each game.
o
To properly sort the events in a game, use the following sequence
of sorted columns:
Period
(ascending),
PC_Time
(descending),
WC_Time
(ascending),
Event_Num
(ascending)
Event_Num
– an ordered counter for each event in a game. Note, this number
may not be perfectly sequential so please use the sorting methodology outlined
above
Event_Msg_Type, Action_Type
– coded descriptions of what happened
during the event (see the
Event_Codes.txt
dataset to see the codes)
WC_Time
– the in-arena time of the event in Unix format. It is coded as tenths
of a second
PC_Time
– the time on the game clock in tenths of a second (e.g. 7200
corresponds to 720 seconds/12 minutes remaining in the quarter)
Option1
– on a shot attempt, this column will tell you the point value of the
shot
•
On free throw attempts, if the value in this column is 1, it means it was a
made free throw, otherwise, it was missed
Person1, Person2
– the
Person_id’s
of the players who are
directly
associated with the event (e.g. if the event is an assisted made basket,
Person1
is the shot maker and
Person2
is the player who assisted)
•
In the case of a substitution, the
Event_Msg_Type
will be 8,
Person1
will be the
Person_id
for the player leaving the game, and
Person2
will be the
Person_id
for the player entering the game
Team_id
– in most scenarios, this is the
Team_id
associated with the
Person1
column. However, there are instances when this is not the case. To
accurately and consistently identify a player’s team, we suggest merging with
the
Game_Lineup
dataset on the
Person1
and
Person2
columns.