# api: streamtuner2
# title: Search feature
# description: Provides the quick search box, and server/cache search window.
# version: 0.9
# type: feature
# category: ui
# config: -
# priority: core
#
# Configuration dialog for audio applications,
# general settings, and plugin activation and
# associated options.
#
# Some plugins hook into the saving method. Most
# require a restart of streamtuner2 for changes
# to take effect.
from uikit import *
import channels
from config import *
from copy import copy
# Search window, and quicksearch box handler.
#
# Aux win: search dialog - keeps search text in self.q
# Quick search textbox - uses main.q instead
#
class search (AuxiliaryWindow):
# either current channel, or last channel (avoid searching in bookmarks)
current = None
# show search dialog
def menu_search(self, w):
self.search_dialog.show_all();
# Update (x) current_channel checkbox
if not self.current or self.main.current_channel != "bookmarks":
self.current = self.main.current_channel
self.search_dialog_current.set_label("just %s" % self.main.channels[self.current].meta["title"])
# Update icon
if "finder" in dir(self) and self.finder:
self.search_img.set_from_pixbuf(uikit.pixbuf(self.finder))
self.finder = None
# hide dialog box again
def cancel(self, *args):
self.search_dialog.hide()
return True # stop any other gtk handlers
# prepare variables
def prepare_search(self):
self.main.status("Searching... Stand back.")
self.cancel()
self.q = self.search_full.get_text().lower()
if self.search_dialog_all.get_active():
self.targets = self.main.channels.keys()
else:
self.targets = [self.current]
self.main.bookmarks.streams["search"] = []
# perform search
def cache_search(self, *w):
self.prepare_search()
entries = []
# which fields?
fields = ["title", "playing", "homepage"]
for i,cn in enumerate([self.main.channels[c] for c in self.targets]):
if cn.streams: # skip disabled plugins
# categories
for cat in cn.streams.keys():
# stations
for row in cn.streams[cat]:
# assemble text fields to compare
text = " ".join([str(row.get(f, " ")) for f in fields])
if text.lower().find(self.q) >= 0:
row = copy(row)
row["genre"] = c + " " + row.get("genre", "")
entries.append(row)
self.show_results(entries)
# display "search" in "bookmarks"
def show_results(self, entries):
self.main.status(1.0)
self.main.status("")
self.main.channel_switch_by_name("bookmarks")
self.main.bookmarks.set_category("search")
# insert data and show
self.main.channels["bookmarks"].streams["search"] = entries # we have to set it here, else .currentcat() might reset it
self.main.bookmarks.load("search")
# live search on directory server homepages
def server_search(self, w):
self.prepare_search()
entries = []
for i,cn in enumerate([self.main.channels[c] for c in self.targets]):
if cn.has_search: # "search" in cn.update_streams.func_code.co_varnames:
self.main.status("Server searching: " + cn.module)
__print__(dbg.PROC, "has_search:", cn.module)
try:
add = cn.update_streams(cat=None, search=self.q)
for row in add:
row["genre"] = cn.meta["title"] + " " + row.get("genre", "")
entries += add
except:
continue
#main.status(main, 1.0 * i / 15)
self.show_results(entries)
# search text edited in text entry box
def quicksearch_set(self, w, *eat, **up):
# keep query string
self.main.q = self.search_quick.get_text().lower()
# get streams
c = self.main.channel()
rows = c.stations()
col = c.rowmap.index("search_col") # this is the gtk.ListStore index # which contains the highlighting color
# callback to compare (+highlight) rows
m = c.gtk_list.get_model()
m.foreach(self.quicksearch_treestore, (rows, self.main.q, col, col+1))
search_set = quicksearch_set
# callback that iterates over whole gtk treelist,
# looks for search string and applies TreeList color and flag if found
def quicksearch_treestore(self, model, path, iter, extra_data):
i = path[0]
(rows, q, color, flag) = extra_data
# compare against interesting content fields:
text = rows[i].get("title", "") + " " + rows[i].get("homepage", "")
# config.quicksearch_fields
text = text.lower()
# simple string match (probably doesn't need full search expression support)
if len(q) and text.find(q) >= 0:
model.set_value(iter, color, "#fe9") # highlighting color
model.set_value(iter, flag, True) # background-set flag
# color = 12 in liststore, flag = 13th position
else:
model.set_value(iter, color, "") # for some reason the cellrenderer colors get applied to all rows, even if we specify an iter (=treelist position?, not?)
model.set_value(iter, flag, False) # that's why we need the secondary -set option
#??
return False
# #ifdef PKG_PYZ
finder = """
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"""
#endif