seyia92coding's picture
Update app.py
8d21a3a
raw
history blame
7.22 kB
# -*- coding: utf-8 -*-
"""Most Popular Albums Per Artist With Gradio.ipynb
Automatically generated by Colaboratory.
Original file is located at
https://colab.research.google.com/drive/1wMpev3zhNcOdO_amUdfeE6HCflOB8KIL
# Set up Spotify credentials
Before getting started you need:
* Spotify API permissions & credentials that could apply for [here](https://developer.spotify.com/). Simply log in, go to your “dashboard” and select “create client id” and follow the instructions. Spotify are not too strict on providing permissions so put anything you like when they ask for commercial application.
* Python module — spotipy — imported
"""
import spotipy
#To access authorised Spotify data - https://developer.spotify.com/
from spotipy.oauth2 import SpotifyClientCredentials
from fuzzywuzzy import fuzz
import pandas as pd
import seaborn as sns
import gradio as gr
#https://gradio.app/docs/#i_slider
import matplotlib.pyplot as plt
import time
import numpy as np
#Create Function for identifying your artist
def choose_artist(name_input, sp):
results = sp.search(name_input)
#result_1 = result['tracks']['items'][0]['artists']
top_matches = []
counter = 0
#for each result item (max 10 I think)
for i in results['tracks']['items']:
#store current item
current_item = results['tracks']['items'][counter]['artists']
counter+=1
#for each item in that search_term
counter2 = 0
for i in current_item:
#append artist name to top_matches
#I will need to append something to identify the correct match, please update once I know
top_matches.append((current_item[counter2]['name'], current_item[counter2]['uri']))
counter2+=1
#remove duplicates by turning list into a set, then back into a list
top_matches = list(set(top_matches))
fuzzy_matches = []
#normal list doesn't need len(range)
for i in top_matches:
#put ratio result in variable to avoid errors
ratio = fuzz.ratio(name_input, i[0])
#store as tuple but will need to increase to 3 to include uid
fuzzy_matches.append((i[0], ratio, i[1]))
#sort fuzzy matches by ratio score
fuzzy_matches = sorted(fuzzy_matches, key=lambda tup: tup[1], reverse=True)
#store highest tuple's attributes in chosen variables
chosen = fuzzy_matches[0][0]
chosen_id = fuzzy_matches[0][1]
chosen_uri = fuzzy_matches[0][2]
print("The results are based on the artist: ", chosen)
return chosen, chosen_id, chosen_uri
#Function to Pull all of your artist's albums
def find_albums(artist_uri, sp):
sp_albums = sp.artist_albums(artist_uri, album_type='album', limit=50) #There's a 50 album limit
album_names = []
album_uris = []
for i in range(len(sp_albums['items'])):
#Keep names and uris in same order to keep track of duplicate albums
album_names.append(sp_albums['items'][i]['name'])
album_uris.append(sp_albums['items'][i]['uri'])
return album_uris, album_names
#Function to store all album details along with their song details
def albumSongs(album, sp, album_count, album_names, spotify_albums):
spotify_albums[album] = {} #Creates dictionary for that specific album
#Create keys-values of empty lists inside nested dictionary for album
spotify_albums[album]['album_name'] = [] #create empty list
spotify_albums[album]['track_number'] = []
spotify_albums[album]['song_id'] = []
spotify_albums[album]['song_name'] = []
spotify_albums[album]['song_uri'] = []
tracks = sp.album_tracks(album) #pull data on album tracks
for n in range(len(tracks['items'])): #for each song track
spotify_albums[album]['album_name'].append(album_names[album_count]) #append album name tracked via album_count
spotify_albums[album]['track_number'].append(tracks['items'][n]['track_number'])
spotify_albums[album]['song_id'].append(tracks['items'][n]['id'])
spotify_albums[album]['song_name'].append(tracks['items'][n]['name'])
spotify_albums[album]['song_uri'].append(tracks['items'][n]['uri'])
#Add popularity category
def popularity(album, sp, spotify_albums):
#Add new key-values to store audio features
spotify_albums[album]['popularity'] = []
#create a track counter
track_count = 0
for track in spotify_albums[album]['song_uri']:
#pull audio features per track
pop = sp.track(track)
spotify_albums[album]['popularity'].append(pop['popularity'])
track_count+=1
def gradio_music_graph(client_id, client_secret, artist_name): #total_albums
#Insert your credentials
client_credentials_manager = SpotifyClientCredentials(client_id=client_id, client_secret=client_secret)
sp = spotipy.Spotify(client_credentials_manager=client_credentials_manager) #spotify object to access API
#Choose your artist via input
chosen_artist, ratio_score, artist_uri = choose_artist(artist_name, sp=sp)
#Retrieve their album details
album_uris, album_names = find_albums(artist_uri, sp=sp)
#Create dictionary to store all the albums
spotify_albums = {}
#Album count tracker
album_count = 0
for i in album_uris: #for each album
albumSongs(i, sp=sp, album_count=album_count, album_names=album_names, spotify_albums=spotify_albums)
print("Songs from " + str(album_names[album_count]) + " have been added to spotify_albums dictionary")
album_count+=1 #Updates album count once all tracks have been added
#To avoid it timing out
sleep_min = 2
sleep_max = 5
start_time = time.time()
request_count = 0
#Update albums with popularity scores
for album in spotify_albums:
popularity(album, sp=sp, spotify_albums=spotify_albums)
request_count+=1
if request_count % 5 == 0:
# print(str(request_count) + " playlists completed")
time.sleep(np.random.uniform(sleep_min, sleep_max))
# print('Loop #: {}'.format(request_count))
# print('Elapsed Time: {} seconds'.format(time.time() - start_time))
#Create song dictonary to convert into Dataframe
dic_df = {}
dic_df['album_name'] = []
dic_df['track_number'] = []
dic_df['song_id'] = []
dic_df['song_name'] = []
dic_df['song_uri'] = []
dic_df['popularity'] = []
for album in spotify_albums:
for feature in spotify_albums[album]:
dic_df[feature].extend(spotify_albums[album][feature])
#Convert into dataframe
df = pd.DataFrame.from_dict(dic_df)
df = df.sort_values(by='popularity')
df = df.drop_duplicates(subset=['song_id'], keep=False)
sns.set_style('ticks')
fig, ax = plt.subplots()
fig.set_size_inches(11, 8)
ax.set_xticklabels(ax.get_xticklabels(), rotation=40, ha="right")
plt.tight_layout()
sns.boxplot(x=df["album_name"], y=df["popularity"], ax=ax)
plt.show()
return fig
#Interface will include these buttons based on parameters in the function with a dataframe output
music_plots = gr.Interface(gradio_music_graph, ["text", "text", "text"],
["plot"], title="Popular Songs By Album Box Plot Distribution on Spotify", description="Using your Spotify API Access from https://developer.spotify.com/ you can see your favourite artist's most popular albums on Spotify")
music_plots.launch(debug=True)