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{"kind":"Backup","apiVersion":"v1","display-name":"Backup","format":"JSON","metadata":{},"model":{"name":"collabora-online","version":"14.0.14","display-name":"collabora-online","category":"","subCategory":""},"schema":"{\n \"description\": \"Specification of the desired behavior of the backup. More info: https://git.k8s.io/community/contributors/devel/sig-architecture/api-conventions.md#spec-and-status\",\n \"properties\": {\n \"cluster\": {\n \"description\": \"The cluster to backup\",\n \"properties\": {\n \"name\": {\n \"description\": \"Name of the referent.\",\n \"type\": \"string\"\n }\n },\n \"required\": [\n \"name\"\n ],\n \"type\": \"object\"\n }\n },\n \"title\": \"Backup\",\n \"type\": \"object\"\n}"} |
{"latitude":30.5958,"longitude":-97.1458,"zipcode":"76577","msa":"625","dma":"NULL","state":"TX"} |
{
"directions": [
"Preheat oven to 450 degrees F (230 degrees C). Line a baking sheet with aluminum foil.",
"Stir together olive oil, maple syrup, and cayenne pepper in a small bowl. Brush the sweet potato slices with the maple mixture and place onto the prepared baking sheet. Sprinkle with salt and pepper to taste.",
"Bake in preheated oven for 8 minutes, then turn the potato slices over, brush with any remaining maple mixture, and continue baking until tender in the middle, and crispy on the edges, about 7 minutes more."
],
"ingredients": [
"2 tablespoons olive oil",
"2 tablespoons maple syrup",
"1/4 teaspoon cayenne pepper",
"3 large sweet potato, peeled and cut into 1/4-inch slices",
"salt and pepper to taste"
],
"language": "en-US",
"source": "allrecipes.com",
"tags": [],
"title": "Spicy Sweet Potato Chips",
"url": "http://allrecipes.com/recipe/143891/spicy-sweet-potato-chips/"
}
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"sn48.29:0.1": "Linked Discourses 48.29 ",
"sn48.29:0.2": "3. The Six Faculties ",
"sn48.29:0.3": "Ascetics and Brahmins (1st) ",
"sn48.29:1.1": "“Mendicants, there are these six faculties. ",
"sn48.29:1.2": "What six? ",
"sn48.29:1.3": "The faculties of the eye, ear, nose, tongue, body, and mind. ",
"sn48.29:1.4": "There are ascetics and brahmins who don’t truly understand the origin, ending, gratification, drawback, and escape when it comes to these six faculties. ",
"sn48.29:1.5": "I don’t deem them as true ascetics and brahmins. Those venerables don’t realize the goal of life as an ascetic or brahmin, and don’t live having realized it with their own insight. ",
"sn48.29:1.6": "There are ascetics and brahmins who do truly understand the origin, ending, gratification, drawback, and escape when it comes to these six faculties. ",
"sn48.29:1.7": "I deem them as true ascetics and brahmins. Those venerables realize the goal of life as an ascetic or brahmin, and live having realized it with their own insight.” "
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\nIrish Solar energy Association","memberOrga":"","goal":"Trina Solar Limited (NYSE:TSL) is a global leader in photovoltaic modules, solutions and services. Founded in 1997 as a PV system integrator, Trina Solar today drives smart energy together with installers, distributors, utilities and developers worldwide. The company’s industry-shaping position is based on innovation excellence, superior product quality, vertically integrated capabilities and environmental stewardship. 
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<br />The core values of Trina Solar are “Customer Focus, Open Mindedness, Respect & Collaboration for Win-Win, and Pursuit of Excellence”. Our corporate mission is to benefit humanity with solar energy. We are committed to being a responsible corporate citizen, building a safe, healthy and environment-friendly work environment for all employees. For the past 3 years, the Silicon Valley Toxic coalition has ranked Trina Solar as the most environmentally sustainable solar manufacturer globally. We additionally hold an Ecovadis Silver rating from 2014. 
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[
{"title": ["東京", "部 - Wikipedia"], "texts": ["東京", "部(とうきょうとくぶ)は、東京都の23の特別区から構成される地域。三権の\n最高機関である行政府・立法府・司法府の中枢機能は千代田区に、23特別区を多摩\n地域・島嶼部と合わせて統括する都庁は新宿区に置かれている。</ref>。東京", "部を\n中心とした東京大都市圏は3700万人以上を有する世界最大の都市圏である。 1943年\n(昭和18年)6月までは市制を敷き東京府にある東京市であったが、同府・市が都制に\n移行したことで東京市とはいえなくなり、主にこのように呼称されることとなった。東京23\n区または ..."]},
{"title": ["東京都 - Wikipedia"], "texts": ["東京", "部 · 足立区、荒川区、板橋区、江戸川区、大田区、葛飾区、北区、江東区、\n品川区、渋谷区、新宿区、杉並区、墨田区、世田谷区、台東区、中央区、千代田区、\n豊島区、中野区、練馬区、文京区、港区、目黒区 · 多摩地域, 市部, 昭島市、あきる野市\n、稲城市、青梅市、清瀬市、国立市、小金井市、国分寺市、小平市、狛江市、立川市、\n多摩市、調布市、西東京市、八王子市、羽村市、東久留米市、東村山市、東大和市、\n日野市、府中市、福生市、町田市、三鷹市、武蔵野市、武蔵村山市."]},
{"title": ["特定", "市内 - Wikipedia"], "texts": ["特定", "市内(とくていとくしない)とは、JRの運賃計算の特例の一つである。 目次. [非\n表示]. 1 概要; 2 特例の内容. 2.1 旅客営業規則(旅規)より. 2.1.1 規定内容; 2.1.2 具体\n例. 2.2 旅客営業取扱基準規程(規程)より. 3 設定区域一覧; 4 沿革; 5 特別企画乗車\n券での例外. 5.1 営業キロの例外; 5.2 設定都市(エリア)の例外. 5.2.1 過去のケース; \n5.2.2 現在のケース. 6 株主優待割引乗車券の例外. 6.1 概要; 6.2 具体例. 7 JR線以外\nでの適用. 7.1", "内の常磐緩行線各駅にて乗降する場合; 7.2 その他. 8 脚注. 8.1 \n注釈 ..."]},
{"title": ["東京", "部とは - Weblio辞書"], "texts": ["東京", "部とは? 東京", "部(とうきょうとくぶ)は、東京都の23の特別区から構成され\nる地域であり、日本国の首都としての機能を有する[4]。東京", "部を1つの市とみなした\n場合、市域人口は国内最大で、世界23位。また、東京..."]},
{"title": ["制度の概要"], "texts": ["1.制度の趣旨.", "制度は、東京都の特別区の存する区域において、人. 口の高度に\n集中する大都市地域における行政の一体性及. び統一性の確保の観点から、当該区域\nを通じて、都が一体. 的に処理することが必要であると認められる事務を除いた上. で、\n一般的に市が処理するものとされている事務を特別区が. 処理することとするものである\n。 2.事務配分の特例. 都は、都道府県が処理する事務のほか、特別区に関する. 連絡\n調整に関する事務、市町村の事務のうち都が一体的に. 処理することが必要であると\n認め ..."]},
{"title": ["内パス - おトクなきっぷ:JR東日本"], "texts": ["お求め・お問い合わせは、フリーエリア内のJR東日本の主な駅の指定席券売機、みどり\nの窓口、びゅうプラザ、提携販売センター、JR EAST Travel Service Center及び主な\n旅行会社へ。 フリーエリア外のびゅうプラザ、提携販売センター、成田空港駅・空港第2\nビル駅に所在するJR EAST Travel Service Center及び主な旅行会社では、フリー\nエリアを着地に含む旅行商品と同時にお求めいただけます。 (一部お取扱いしていない\n箇所もあります。) ..."]},
{"title": ["まだ東京都で消耗してるの?", "財政調整制度から脱し「新宿市」になれ ..."], "texts": ["本日は都庁にお伺いし、おときた都議と一緒に、", "財政調整制度に関して担当課から\n説明をしていただきました。 まずは、", "財政調整制度について簡単にご紹介。 ご存知\nのように、自治体が事業を行うための財源は「税」です。 例えば、消防や上下水道は\n市町村の事業ですが、23区の場合は東京都の管轄です。 人口が高度に密集している\nため、23区全区をまとめて管轄することで、効率的かつ統一的なサービスが提供され\nています。 よく「市区町村」と括られることもありますが、このように「市町村」 ..."]},
{"title": ["のあり方検討委員会 - 特別区長会"], "texts": ["第24回 平成29年5月16日 (書面による会議). 議案 ·", "のあり方検討委員会委員\n名簿. PDF (約65KB) 幹事会構成員名簿. PDF (約83KB). 第23回 平成29年4月17日 \n(書面による会議). 議案 · 幹事会構成員名簿. PDF (約83KB). 第22回 平成28年7月\n15日 (書面による会議). 議案 · 幹事会構成員名簿. PDF (約158KB). 第21回 平成28\n年4月15日 (書面による会議). 議案 · 幹事会構成員名簿. PDF (約158KB). 第20回 \n平成27年5月13日 (書面による会議). 議案 ·", "のあり方検討委員会委員名簿"]},
{"title": ["特別区制度改革と", "のあり方:練馬区公式ホームページ - 東京"], "texts": ["昭和39年と昭和49年の地方自治法改正により、保健所事務や福祉事務所事務などが\n都から移管され特別区の権限が拡大したが、依然として東京都の内部団体の位置づけ\nのままであった。 平成6年9月、都と23特別区は、(1)特別区を「基礎的な地方公共団体\n」に位置づける、(2)清掃事業など住民に身近な事務を特別区に移管する、などを骨子と\nする「", "制度改革に関するまとめ(協議案)」に合意し、制度改革の実現に必要な法令\n改正を国に要請した。 平成10年4月に", "制度改革関連法案は、「 ..."]},
{"title": ["のあり方や地方分権改革の動向等 | 板橋区 - 東京"], "texts": ["このホームページは東京都板橋区が公式に作成・設置しているものです。板橋区は人口\n約54万人を擁する生活都市であり、歴史と新しい時代の息吹が調和を奏でる魅力ある\nまちです。区内には、区名の由来ともされる、旧中山道の石神井川に架かる「板橋」を\nはじめ、数多くの有形・無形の文化財が今も息づき、地域に共通のよすがとなって彩りと\n潤いをもたらしています。また、賑いある商店街を中心とする商業、緑豊かな赤塚地域\nにおける都市農業、荒川沿岸部などの活力ある工業は、新しい価値を創造し続けてい\nます。"]},
{"title": ["制度改革|杉並区公式ホームページ - 東京"], "texts": ["未完の", "制度改革の解決をめざして(平成12年度改革で残された5つの課題) · 区政\n情報 · 財政 · 予算 · 予算編成過程の公表 · 区財政;", "制度改革; 資金管理 · 決算. \nこのページの先頭へ戻る. 前のページへ戻る; トップページへ戻る. 表示. PC; \nスマートフォン. 新着更新情報 · RSS · モバイル版 すぎなみ · このサイトについて · 個人\n情報の取り扱い. 杉並区役所. 法人番号(8000020131156). 〒166-8570 東京都杉並\n区阿佐谷南1丁目15番1号 電話:03-3312-2111(代表) ※電話番号をお確かめのうえ、\nお間違えの ..."]},
{"title": ["新", "- Wikipedia"], "texts": ["新", "(しんと-く)は中華人民共和国四川省成都市に位置する市轄区。成都市北部に\n位置している。2001年に新都県から新", "になった。 行政区画[編集]. 3街道、10鎮を\n管轄する。 街道:大豊街道、三河街道、新都街道; 鎮:石版灘鎮、新繁鎮、新民鎮、泰興\n鎮、斑竹園鎮、清流鎮、馬家鎮、竜橋鎮、木蘭鎮、軍屯鎮. 観光地[編集]. 宝光寺; 升庵\n桂湖. 関連項目[編集]. 四川大地震 · 泉佐野市. [隠す]. 表 · 話 · 編 · 歴 · 四川省の行政\n区画. 省都:成都市 · 副省級市 · 成都市 · 錦江区 · 青羊区 · 金牛区 · 武侯区 · 成華区 · \n竜泉駅 ..."]},
{"title": ["内パス - Wikipedia"], "texts": ["内パス(とくないパス)とは、東日本旅客鉄道(JR東日本)の鉄道路線の内東京", "内が乗り降り自由となる特別企画乗車券である。2013年まで発売されていた", "内\nフリーきっぷ、", "内・りんかいフリーきっぷ等についても併記する。 目次. [非表示]. 1 \n概要; 2 沿革. 2.1", "内パス・", "内フリーきっぷ(旧・", "内フリー乗車券)系; 2.2", "", "内・りんかいフリーきっぷ(旧・東京自由乗車券)系. 3 通用範囲. 3.1 発売終了. 4", "内関係の他の乗車券; 5 脚注; 6 関連項目; 7 外部リンク. 概要[編集]. 1990年頃の", "内 ..."]},
{"title": ["制度改革:新宿区 - 東京"], "texts": ["特別区は市町村と同じ地方自治法上の「基礎的な地方公共団体」に位置付けられてい\nますが、事務分担や税財政制度が通常の市とは一部異なっています。 例えば、特別区\nの区域内では、市が行う事務の一部(上水道、下水道、消防、都市計画決定に関する一\n部の事務)を東京都が行っています。また、地方税法の特例により市税の一部(市町村\n民税法人分、固定資産税、特別土地保有税)を都税として東京都が徴収し、このうち\n一定割合を特別区に配分する仕組み(", "財政調整制度)が設けられてい ..."]},
{"title": ["財政調整制度:新宿区 - 東京"], "texts": ["新宿区ホーム · その他区政情報 · 財政・会計・公有財産 · 財政;", "財政調整制度.", "", "財政調整制度. 最終更新日:2017年3月22日.", "財政調整制度についてお知らせ\nします。", "財政調整制度(新宿区の財政).", "財政調整制度(新宿区の財政) [PDF\n形式:2.0MB] (新規ウィンドウ表示). P3・P4参照. 2.1MB [PDF形式] (新規ウィンドウ\n表示).", "財政調整制度の概要(特別区長会).", "財政調整制度の概要(特別区長\n会)(新規ウィンドウ表示). 本ページに関するお問い合わせ. 新宿区 総合政策部-財政課"]},
{"title": ["特別区長会", "のあり方検討委員会"], "texts": ["平成12年の", "制度改革により、都と特別区の役割分担及び財源配分の原則が地方\n自治法に規定されました。この原則に基づく都区間財源配分のあり方が制度改革後の\n引き続きの課題となりましたが、都区間の協議の結果、平成18年2月の", "協議会\nにおいて、今後の", "のあり方について、事務配分、特別区の区域のあり方(再編等)、\n税財政制度などを根本的かつ発展的に検討することとし、財源配分のあり方については\n、その結論に従い整理を行うこととされました。 このため、平成18年11月の", "協議会\nで", "..."]},
{"title": ["特別区長会", "財政調整制度の概要"], "texts": ["会長就任挨拶 活動状況 · 特別区全国連携プロジェクト · 被災地への特別区の対応 · \n要望活動 · 共同事業 (「みどり東京・温暖化防止プロジェクト」サイトへのリンク); 特別区\nの国民健康保険制度 ·", "協議会 ·", "のあり方検討委員会 · 東京の自治のあり方\n研究会 · 税源偏在是正議論についての特別区の主張 · 東京富裕論への反論 · 都市\n計画交付金についての特別区の主張 · その他の活動 ..."]},
{"title": ["きっぷあれこれ > 運賃計算の特例:JR東日本"], "texts": ["JRのきっぷの種類・発売日・有効期間や、学割・団体割引をはじめとする割引料金、\n変更・払いもどしなど、きっぷに関するさまざまなご案内をしています。"]},
{"title": ["路線バス", "内フリー定期券 | 路線バス | 国際興業バス - 東京"], "texts": ["国際興業バスの東京", "内一般路線でご利用頂ける定期券です。区間を選びません\nので都内複数路線をご利用の場合にもおトクです。 [路線バス]通勤定期券. 定期券\n名称, 1ヶ月, 3ヶ月, 6ヶ月.", "内フリー定期券, 9,630円, 27,450円, 49,410円. 【発売\n箇所】 国際興業バスの各営業所・案内所窓口(名栗車庫を除く). [路線バス]通学定期\n券. 定期券名称, 1ヶ月, 3ヶ月, 6ヶ月, ばすく~る365.", "内フリー定期券, 7,690円, \n21,920円, 39,460円, 56,160円. 【発売箇所】 国際興業バスの各営業所・案内所窓口(\n名栗車庫を ..."]},
{"title": ["特別区長会", "協議会"], "texts": ["高度に集中する大都市地域における行政の一体性及び統一性の確保を目的とする", "制度の趣旨に従い、都と特別区及び特別区相互間の連携を密にするために法定された\n協議組織です。都知事が特別区財政調整交付金に関する条例を制定する場合は、\nあらかじめ", "協議会の意見を聞かなければならないとされています。 ◇ 根拠・構成員\n. ◇", "協議会開催状況. お問い合わせ先 特別区長会事務局 調整担当 03-5210\n-9764 ..."]},
{"title": ["特別区長会", "財政調整制度"], "texts": ["財政調整関係資料. 区別算定結果 · 協議結果. お問い合わせ先 特別区長会事務\n局調査第2課 電話 03-5210-9754~62・67. アドビ リーダー PDF形式ファイルを\n閲覧するには、無料の閲覧ソフトAdobe Readerが必要です。 Adobe Reader をお持ち\nでない方は、こちらのサイトからダウンロードできます。 Adobe Reader のダウンロード\nページへ >>. 特別区長会事務局 〒102-0072 東京都千代田区飯田橋3-5-1. 東京区政\n会館19階. TEL 03-5210-9738 メールアドレス 東京区政会館 アクセスマップ >> ..."]},
{"title": ["特別区長会", "財政調整制度の概要"], "texts": ["1", "財政調整制度の意義. 都と特別区の間には、他の自治体には見られない、財政\n調整の仕組みがあります。これは、高度に人口が集中する大都市地域における行政を、\n広域自治体である都と基礎自治体である複数の特別区の特別な分担関係で処理する", "", "制度に対応した財政上の特別な制度です。 まず、通常基礎自治体が行っている事務\nのうち特別区の区域を通じて一体的に処理する必要のある事務(上下水道、消防等)を\n都が処理する特例に対応して、それに見合う基礎自治体の財源を都にも配分する必要\nが ..."]},
{"title": ["運賃計算の特例(特定の", "市内駅および東京山手線内の駅を発着する ..."], "texts": ["2018年3月17日", "東京、大阪など11都市内の駅とその都市内の中心駅(図の中で◎の駅)から営業キロが\n201キロ以上ある駅との区間の運賃は、その都市内の外を経てから再びその都市内を\n通過する場合(または都市内を通過し、外を経てから再びその都市内に戻る場合)を\n除いて、中心駅から(または中心駅まで)の営業キロ、運賃計算キロで計算します。", "市内発(または着)の乗車券は、それぞれの同じゾーン内ならどの駅でも乗り始める(\nまたは降りる)ことができます。ただし、同じゾーン内の駅で途中下車は ..."]},
{"title": ["特定の", "市内駅を発着する場合の特例 きっぷのルール:JRおでかけ ..."], "texts": ["JR西日本エリアのきっぷに関するルールのご案内です。"]},
{"title": ["Category:東京", "部出身の人物 - Wikipedia"], "texts": ["東京", "部(23特別区)出身の人物に関するカテゴリ。旧東京市(1889年 - 1943年)\nおよび、東京市へ編入された町村の出身人物も本カテゴリに含める。 ※このカテゴリを\n貼り付けている場合はCategory:東京都出身の人物を貼る必要はありません。 目次. \nこのカテゴリのTOP · あ · い · う · え · お · は · ひ · ふ · へ · ほ · か · き · く · け · こ · ま · み \n· む · め · も · さ · し · す · せ · そ · や · ゆ · よ · た · ち · つ · て · と · ら · り · る · れ · ろ · な · \nに · ぬ · ね · の · わ · を · ん. カテゴリ「東京", "部出身の人物」にあるページ. この\nカテゴリに ..."]},
{"title": ["都内区市町村マップ|東京都"], "texts": ["2018年3月1日", "単位:人、平方キロメートル). 地域, 人口, 面積. 総数, 13,754,043, 2,193.96. 区部, \n9,482,125, 627.57. 千代田区, 61,420, 11.66. 中央区, 157,484, 10.21. 港区, \n253,940, 20.37. 新宿区, 343,494, 18.22. 文京区, 227,224, 11.29. 台東区, 203,219, \n10.11. 墨田区, 264,515, 13.77. 江東区, 510,692, 40.16. 品川区, 398,732, 22.84. \n目黒区, 283,153, 14.67. 大田区, 728,437, 60.83. 世田谷区, 921,708, 58.05. 渋谷区\n, 229,994, 15.11. 中野区, 335,813, 15.59. 杉並区, 575,691, 34.06. 豊島区 ..."]},
{"title": ["リンク集/都内区市町村|東京都"], "texts": ["リンク集/都内区市町村. 特別区. 特別区人事・厚生事務組合 特別区協議会 東京二十\n三区清掃一部事務組合 · 千代田区 · 中央区 · 港区 · 新宿区 · 文京区 · 台東区 · 墨田区 \n· 江東区 · 品川区 · 目黒区 · 大田区 · 世田谷区 · 渋谷区 · 中野区 · 杉並区 · 豊島区 · 北\n区 · 荒川区 · 板橋区 · 練馬区 · 足立区 · 葛飾区 · 江戸川区. 多摩地域. 東京市町村総合\n事務組合 東京都市長会 東京都町村会 · 八王子市 · 立川市 · 武蔵野市 · 三鷹市 · 府中\n市 · 昭島市 · 調布市 · 町田市 · 小金井市 · 日野市 · 国分寺市 · 国立市 · 狛江市."]},
{"title": ["財政調整制度と特別区交付金について 目黒区 - 目黒区役所"], "texts": ["2018年4月6日", "", "財政調整制度とは、東京都が賦課・徴収を行っている固定資産税、市町村民税法\n人分、特別土地保有税の三税(調整税)について、都と区の間の財源配分を行う制度\nです。"]},
{"title": ["東京", "部(トウキョウトクブ)とは - コトバンク"], "texts": ["デジタル大辞泉 - 東京", "部の用語解説 - 東京都で23の特別区がある区域。"]},
{"title": ["東京", "部災害時透析医療ネットワーク"], "texts": ["お問い合わせ ikaneko@kc.twmu.ac.jp."]},
{"title": ["都・特別区における税財政関係資料"], "texts": ["都・特別区における事務配分・税の特例と", "財政調整. 1.事務配分の特例. 都は、\n市町村が処理する事務のうち、人口が高度に集中する大都市地域における行政の一体\n性及. び統一性の確保の観点から、特別区の存する区域を通じて都が一体的に処理\nすることが必要である. と認められる事務を処理する。(地方自治法第281条の2). (主\nな事務). ・ 上水道の整備、管理運営. ・ 公共下水道の整備・管理運営. ・ 消防に関する\n事務. ・ 都市計画決定(上下水道、電気ガス供給施設、産業廃棄物処理施設、市場、\nと畜場等 ..."]},
{"title": ["統計局ホームページ/消費者物価指数(CPI) 東京", "部速報(最新の月次 ..."], "texts": ["2018年3月30日", "2015年基準 消費者物価指数 東京", "部 平成30年(2018年)3月分(中旬速報値). \n2018年3月30日公表. ≪ポイント≫. (1) 総合指数は2015年(平成27年)を100として\n100.5 前年同月比は1.0%の上昇 前月比(季節調整値)は0.5%の下落 (2) 生鮮食品を\n除く総合指数は100.2 前年同月比は0.8%の上昇 前月比(季節調整値)は0.2%の下落 \n(3) 生鮮食品及びエネルギーを除く総合指数は100.7 前年同月比は0.5%の上昇 前月\n比(季節調整値)は0.2%の下落. 次回の公表は、2018年4月27日 午前8時30分です。"]},
{"title": ["花", "- Wikipedia"], "texts": ["花", "(かとく)は中国広東省広州市に位置する区。広州白雲国際空港及び東風汽車\n有限公司花都工場、東風日産乗用車開発センター所在地である。 歴史[編集]. 1686年(\n康熙25年)、清朝は南海県、番禺県の一部に花県を設置、広州府の管轄とした。1993\n年6月18日、花県の廃止と同時に県級市の花都市に改編、更に2000年5月21日、花\n都市は廃止となり広州市花", "に改編された。 清代には、この地を故郷とする洪秀全が\n拝上帝会を結成した。のちに彼は広西省金田村に拠点を移して挙兵し、太平天国の乱\nへと ..."]},
{"title": ["堯", "- Wikipedia"], "texts": ["堯", "(ぎょうと-く)は中華人民共和国山西省臨汾市に位置する市轄区。 目次. [非表示]\n. 1 歴史; 2 行政区画; 3 交通. 3.1 航空. 歴史[編集]. 春秋時代に設置された平陽県を\n前身とする。当時の県治は現在の金殿鎮に設置されていた。南北朝時代になると445年\n(太平真君6年)、北魏により廃止されたが、487年(太和11年)に再設置、528年(建義\n元年)には県治も現在地の白馬城に移されている。隋朝が成立すると581年(開皇元年)\nに平河県と、583年(開皇3年)には臨汾県と改称された。隋代には晋州(後の臨汾郡)、\n唐代 ..."]},
{"title": ["東京", "市町村との連携による地域環境力活性化事業|東京都環境局"], "texts": ["2018年2月9日", "本制度の趣旨. 【区市町村への補助事業】 環境政策の一層の推進を図るためには、\n地域の実情に精通している区市町村との連携を一層強化していくことが重要です。 \nそこで、都は、都内の区市町村が実施する地域の多様な主体との連携や、地域特性・\n地域資源の活用等、地域の実情に即した取組のうち、東京の広域的環境課題の解決に\n資するものに対して、必要な財政的支援を実施するため、2014(平成26)年度から「\n東京", "市町村との連携による地域環境力活性化事業」を創設し、都と区市町村が ..."]},
{"title": ["のあり方についてどのような検討がされているか教えてください ..."], "texts": ["2017年5月1日", "", "のあり方についてどのような検討がされているか教えてください。 更新日:2017年5\n月1日.", "のあり方を根本的かつ発展的に検討するため、", "協議会に", "のあり方\n検討委員会が設置されています。また、検討委員会のもとに、幹事会をおき、専門的な\n事項を検討しています。 これらの開催状況や会議要旨などについては、特別区長会の\nホームページをご参照ください。 新規ウィンドウで開きます。 特別区長会ホームページ(", "のあり方検討委員会)(外部サイトへリンク) ..."]},
{"title": ["特別区長会", "財政調整制度 Q&A"], "texts": ["特別区財政調整交付金は、", "制度の特例として、都と特別区の役割分担に応じて\n市町村財源を都区間で配分するとともに、特別区間の行政水準の均衡が図れるよう\n財源を調整する仕組みが設けられていることに基づいて交付されるものです。市町村税\nの一部を都が徴収し、このうち、", "の共通財源となる3つの税を財源として都と特別区\nの財源配分を行い、特別区分が交付されます。特別区に配分される額は、いわば都が\n特別区に代わって徴収した特別区共有の固有財源であり、各特別区への交付額は、\n使途の特定 ..."]},
{"title": ["きっぷあれこれ > 運賃計算の特例:JR東日本"], "texts": ["特定の", "市内駅を発着する場合の特例. ○東京、大阪など11都市内の駅(図参照)と\nその都市内の中心駅(図の中で◎の駅)から営業キロが201キロ以上ある駅との区間の\n運賃は、その都市内の外を経てから再びその都市内を通過する場合(または都市内を\n通過し外を経てから再びその都市内に戻る場合)を除いて、中心駅から(または中心駅\nまで)の営業キロ、運賃計算キロで計算します。 ○", "市内発(または着)の乗車券は、\nそれぞれの同じゾーン内ならどの駅でも乗り始める(または降りる)ことができます。\nただし、同じ ..."]},
{"title": ["公益財団法人 東京", "市町村振興協会"], "texts": ["当協会は、東京都内の区市町村の健全な発展を図るために、市町村振興宝くじ(サマー\nジャンボ宝くじ・ハロウィンジャンボ宝くじ)の収益金を活用し、区市町村の財政支援の\nための貸付事業等、区市町村を支援する事業を行なっています。"]},
{"title": ["制度に関する参考資料 - 総務省"], "texts": ["制度改革の変遷. 改革の背景. 改革のポイント. 地方自治法. 大都市の一体性を\n確保しつつ. 身近な自治を強化. 昭22施行. 昭27改正. (同年施行). 昭39改正. (昭40\n施行). 昭49改正. (昭50施行). 平10改正. (平12施行).", "2層制の復活(法定). ⇒", "の役割分担、財源配分. 原則明確化(清掃等の移管他).", "2層制(特別区は「\n基礎」). ⇒実態的権限なし. 特別区は都の内部的団体に. ⇒都が「基礎」、区長公選\n廃止、. 事務の限定列挙、都が調整権. 特別区の権限を拡大. ⇒福祉事務所等 ..."]},
{"title": ["平成29年度", "財政調整算定結果(要旨)|東京都"], "texts": ["2017年8月7日", "平成29年度", "財政調整について、各特別区に対する交付額が決定しましたので、 \n下記のとおりお知らせします。"]},
{"title": ["平成29年度", "財政調整について(要旨)|東京都"], "texts": ["1 平成29年度", "財政調整 2 平成28年度", "財政調整再調整."]},
{"title": ["財政調整制度とは - コトバンク"], "texts": ["23区の財政は「", "財政調整制度」という他の自治体とは違うしくみで運営されている。\n市町村が徴収する税の一部を23区の場合は都税として集め、うち固定資産税、法人区\n民税、特別土地保有税の「調整3税」は合計額の55%が23区の財源となり、各区の財政\n事情に応じて財政調整交付金として振り分けられる。11年度分は総額8983億円。港区\nなど、税収が特に多い区には交付されない。大都市地域である23区を一体的に運営\nするための特例制度で、市町村が担う上下水道や消防などの事業は都が広域的に担っ\nて ..."]},
{"title": ["協議会(とくきょうぎかい)とは - コトバンク"], "texts": ["ブリタニカ国際大百科事典 小項目事典 -", "協議会の用語解説 - 東京都および特別\n区の事務の処理,または都知事および特別区の区長の権限に属する国の事務の管理\nおよび執行について,都と特別区および特別区相互の間の連絡調整をはかるため,都と\n特別区とで設けられる協議会 (地方自治法 282の2) 。 1974年..."]},
{"title": ["制度 中央区ホームページ - 東京"], "texts": ["2017年5月16日", "", "のあり方検討委員会.", "のあり方を根本的かつ発展的に検討するため、", "協議会に「", "のあり方検討委員会」を設置しています。「", "のあり方検討委員会」\nでは、平成19年1月以降、次の4項目、都と特別区の具体的な事務配分・特別区の区域\nのあり方・税財政制度のあり方・その他について検討を進め、平成20年度中に基本的\n方向性を打ち出すこととしています。 詳しくは、 外部サイトへリンク 特別区長会\nホームページ(外部サイトへリンク)をご覧ください。"]},
{"title": ["デジタル標高地形図ってこんなにおもしろい! 東京", "部編|国土地理院"], "texts": ["「1:25,000デジタル標高地形図」は、航空レーザ測量によって整備した「数値地図5m\nメッシュ(標高)」の標高データを用いて作成した陰影段彩図の上に2万5千分の1地形図\nを重ねた地図です。この図は、詳細な地形の起伏がカラー表示されており、地形の特徴\nを直感的に理解することができます。 左の図をもっと詳しくみる [低解像度(275KB)] · [\n高解像度(1905KB)]. デジタル標高地形図の解説書 「デジタル標高地形図って\nこんなにおもしろい! 東京", "部編」. デジタル標高地形図の特性を生かして、東京", "", "部の特徴 ..."]},
{"title": ["内エスペラント会連絡会"], "texts": ["2017年12月4日", "", "内エスペラント会連絡会.", "内エスペ ラント会連絡会は1989 年に発足しました。\n都内8つのエスペラントサークルが協力して、一日公開講座、エスペラント祭を毎年開催\nしています。 その他に、各グループ独自での学習会や入門講習会なども行っています。"]},
{"title": ["協議会関係法令抜粋"], "texts": ["協議会関係法令抜粋. 〇 地方自治法. (特別区財政調整交付金). 第二百八十二\n条 都は、都と特別区及び特別区相互間の財源の均衡化を図り、並びに特別区の行政の\n自主. 的かつ計画的な運営を確保するため、政令の定めるところにより、条例で、特別区\n財政調整交付金を交. 付するものとする。 2 前項の特別区財政調整交付金とは、地方\n税法第五条第二項 に掲げる税のうち同法第七百三十四条第. 一項 及び第二項第三号 \nの規定により都が課するものの収入額に条例で定める割合を乗じて得た額で. 特別区が\n ..."]},
{"title": ["特別区長会", "財政調整関係資料"], "texts": ["平成30年度", "財政調整協議. まとめ, PDF (約187KB). 区側提案事項, PDF(約\n216KB). 区側追加提案事項, PDF(約33KB). 協議結果(速報), PDF (約253KB). \n協議経過の概要, PDF (約389KB). 協議結果の概要, PDF (約94KB). 新規算定・算定\n改善等, PDF (約258KB). 29年度再調整協議, PDF (約77KB). 議事録・会議資料 ..."]},
{"title": ["東京", "市町村年報 - 東京都総務局"], "texts": ["東京", "市町村年報を年次別に掲載します。 ○東京", "市町村年報 2016 (第44号)\n〔PDF〕(2.5 MB) · 東京", "市町村年報 2016 (第44号) 正誤表〔PDF〕 · ○東京", "市町村年報 2015 (第43号)〔PDF〕( 15 MB) · ○東京", "市町村年報 2014 (第42号\n)〔PDF〕(3.4 MB) · 東京", "市町村年報 2014 (第42号) 正誤表〔PDF〕 · ○東京", "市町村年報 2013 (第41号)〔PDF〕( 11 MB) · 東京", "市町村年報 2013 (第41号) \n正誤表〔PDF〕 · ○東京", "市町村年報 2012 (第40号)〔PDF〕( 19 MB) · 東京", "..."]},
{"title": ["東京", "市町村の税情報について - 東京都総務局"], "texts": ["市町村税課税状況等の調 (特別区関係). 「市町村税課税状況等の調」は、地方自治法\n第252条の17の5の規定に基づき、全国の市町村(特別区を含む。)に対して実施される\n統計調査です。 市町村税の課税状況に関する唯一の統計資料として、地方財政計画\nにおける収入見込や、税制改正が行われる場合等における重要な基礎資料として活用\nされるほか、 個々の市町村の財政運営の状況、経済動向等を知ることのできる重要な\n調査となっています。 調査基準日は、毎年度「7月1日」とされており、原則として当該\n年度 ..."]},
{"title": ["秦", "- Wikipedia"], "texts": ["秦", "(しんと-く)は中華人民共和国陝西省咸陽市に位置する市轄区。 行政区画[編集]. \n街道:人民路街道、西蘭路街道、呉家堡街道、古渡街道、渭陽西路街道、陳楊寨街道、\n釣台街道、馬泉街道、双照街道、渭浜街道; 鎮:馬庄鎮. [隠す]. 表 · 話 · 編 · 歴 · 陝西省\nの行政区画. 省都:西安市 · 副省級市 · 西安市 · 蓮湖区 | 新城区 | 碑林区 | 雁塔区 | 灞\n橋区 | 未央区 | 閻良区 | 臨潼区 | 長安区 | 高陵区 | 鄠邑区 | 藍田県 | 周至県 · 地級市 · \n銅川市 · 耀州区 | 王益区 | 印台区 | 宜君県 · 宝鶏市 · 渭浜区 | 金台区 | 陳倉区 | 岐山\n県 ..."]},
{"title": ["武", "- Wikipedia"], "texts": ["武", "(ぶと-く)は中華人民共和国甘粛省隴南市に位置する市轄区。隴南市の政治・\n経済の中心である。区人民政府の所在地は城関鎮。 2004年、武都県より市轄区に\n昇格。 特産物は花椒。 行政区画[編集]. 12鎮、22郷、2民族郷を管轄:. 鎮:城関鎮、安\n化鎮、東江鎮、両水鎮、漢王鎮、洛塘鎮、角弓鎮、馬街鎮、三河鎮、甘泉鎮、魚竜鎮、\n琵琶鎮; 郷:城郊郷、蒲池郷、石門郷、漢林郷、柏林郷、馬営郷、池壩郷、仏崖郷、黄坪\n郷、隆興郷、竜壩郷、竜鳳郷、桔柑郷、外納郷、玉皇郷、郭河郷、楓相郷、三倉郷、五庫\n郷、月照 ..."]},
{"title": ["Category:東京", "部の神社 - Wikipedia"], "texts": ["日枝神社 (千代田区) · 稗田神社 · 東大島神社 · 氷川神社 (渋谷区東) · 氷川神社 (目黒\n区八雲) · 氷川神社 (目黒区大橋) · 氷川神社 (足立区千住) · 氷川神社 (板橋区氷川町) \n· 氷川神社 (品川区) · 氷川神社 (渋谷区本町) · 氷川神社 (新宿区) · 氷川神社 (中野区\n沼袋) · 氷川神社 (中野区東中野) · 氷川神社 (練馬区豊玉南) · 氷川神社 (練馬区\n氷川台) · 簸川神社 (文京区) · 氷川神社 (東京都港区赤坂) · 氷川神社 (東京都港区\n白金) · 氷川神社 (東京都港区元麻布) · 氷川神社 (世田谷区喜多見) · 日比谷神社 · \n碑文谷 ..."]},
{"title": ["殷", "- Wikipedia"], "texts": ["殷", "(いんと-く)は中華人民共和国河南省安陽市に位置する市轄区。 行政区画[編集]\n. 街道:梅園庄街道、李珍街道、電廠路街道、紗廠路街道、鉄西路街道、水冶街道、\n清風街道、北蒙街道、相台街道; 郷:西郊郷. [隠す]. 表 · 話 · 編 · 歴 · 河南省の行政区画\n. 省都:鄭州市 · 地級市 · 鄭州市 · 中原区 · 二七区 · 管城回族区 · 金水区 · 上街区 · 恵\n済区 · 鞏義市 · 滎陽市 · 新鄭市 · 新密市 · 登封市 · 中牟県 · 開封市 · 竜亭区 · 順河\n回族区 · 鼓楼区 · 禹王台区 · 祥符区 · 杞県 · 通許県 · 尉氏県 · 蘭考県 · 洛陽市 · 老\n城区 · 西 ..."]},
{"title": ["平成30年度", "財政調整について(要旨)|東京都"], "texts": ["2018年1月26日", "平成30年度", "財政調整等について、お知らせします。"]},
{"title": ["第2回", "協議会及び特別区長との意見交換会を開催|東京都"], "texts": ["2018年1月26日", "平成29年度第2回", "協議会及び特別区長との意見交換会を下記のとおり開催します\nので、お知らせいたします。"]},
{"title": ["東京", "部の若年人口-1970年~2015年に20~24歳人口は63%減 ..."], "texts": ["2017年9月26日", "東京", "部の若年人口-1970年~2015年に20~24歳人口は63%減の記事なら\nニッセイ基礎研究所。【シンクタンク】ニッセイ基礎研究所は、保険・年金・社会保障、\n経済・金融・不動産、暮らし・高齢社会、経営・ビジネスなどの各専門領域の研究員を\n抱え、様々な情報提供を行っています。"]},
{"title": ["特別区長会", "財政調整関係資料"], "texts": ["財政調整算定結果. ☆のついているものには、表中に記載されている", "財政\n調整特有の用語部分に、当サイト中の該当用語説明ページへのリンクを設定しています\n。 □平成29年度当初算定. 総括, ☆ excel XLS (約62KB). 基準財政収入額, excel \nXLS (約39KB). 基準財政需要額, excel XLS (約42KB). ※平成29年度", "財政\n調整協議の資料はこちら. □平成28年度再調整. 総括, ☆ excel XLS (約64KB). 基準\n財政需要額, excel XLSX (約33KB). □平成28年度当初算定. 総括, ☆ excel XLS (\n約71KB)."]},
{"title": ["東京", "市町村の集中改革プランの取組状況について - 東京都総務局"], "texts": ["平成17年3月29日に総務省が示した 「地方公共団体における行政改革の推進のため\nの新たな指針」 (総務事務次官通知)を受けて、各区市町村が、行政改革に集中的に\n取り組むため、平成17年度から 平成21年度までの具体的な取組を住民に分かりやすく\n明示した計画です。 ※1 計画の名称自体は、「○○区集中改革プラン」ではなく、「○○\n区行財政改革大綱」等となっている場合があります。 ※2 各区市町村では、集中改革\nプラン以外にも、独自に行政改革に取り組んでおります。取組の詳細や財政状況等\nについて ..."]},
{"title": ["国勢調査 東京", "市町村町丁別報告トップページ - 東京都の統計"], "texts": ["2018年3月20日", "平成27年 □ (平成30年3月20日公表); □ 平成22年 □ (平成25年3月19日公表); \n統計表の一部を訂正しました。(平成26年12月25日); □ 平成17年 □ (平成20年3月\n27日公表); □ 平成12年 □ (平成15年3月公表); □ 平成7年(区市町村別報告) □ (\n平成10年3月公表) ※ 平成7年報告は、区市町村別のみを掲載しています。 平成7年\nの町丁別報告は、統計資料室にて閲覧することができます。 また、 政府統計の総合\n窓口 e-Stat からもご覧になれます。"]},
{"title": ["中古マンション値下げ広がる 東京", "部 :日本経済新聞"], "texts": ["2017年6月22日", "転勤などに伴ってマンションを中古で売る人が価格を下げる動きが東京や大阪で広がっ\nている。過去数年間で価格が高騰し、購入に二の足を踏む消費者が増えているのが\n背景だ。売却するまでに長い時間がかかるのを嫌い."]},
{"title": ["平成27年度", "財政調整算定結果(要旨)|東京都"], "texts": ["平成27年度", "財政調整について、各特別区に対する交付額が決定しましたので、\nお知らせします。"]},
{"title": ["都政のしくみ/都と区市町村[都と特別区]|東京都"], "texts": ["これは、特別区の財源不足額について、都の一般会計から平衡交付金を交付するもの\nです。 昭和40年、自治法の改正により、特別区の事務は限定列挙から一部例示列挙に\n改められ、福祉事務所に係る事務等が特別区の事務とされました。さらに、財政上の\n措置として今日の", "財政調整制度が設けられました。 その後、各区において区長の\n公選制復活を軸とした自治権拡充運動が展開され、昭和50年の自治法の改正により、\n区長は再び公選制となり、特別区は都に留保されたものを除き、原則として一般の市の\n事務 ..."]},
{"title": ["平成29年東京", "市町村の給与水準(ラスパイレス指数)|東京都"], "texts": ["2017年12月26日", "平成29年の東京", "市町村の給与水準(ラスパイレス指数)について、本日、総務省\nから公表されましたので、下記のとおりお知らせします。"]},
{"title": ["ヒ", "- Wikipedia"], "texts": ["郫", "(ひと-く)は中華人民共和国四川省成都市に位置する市轄区。2016年までは郫\n県であった。 豆板醤の名産地であり、「郫県豆板醤」(ピーシェントウバンジャン、ひけん\nトウバンジャン、繁体字: 郫縣豆瓣醬、簡体字: 郫县豆瓣酱)は四川料理における最高級\n豆板醤として名高い。日本でも中華食材専門店や中華街で入手可能。 行政区画[編集]. \n2街道、13鎮を管轄する。 街道:郫筒街道、合作街道; 鎮:団結鎮、犀浦鎮、花園鎮、唐\n昌鎮、安徳鎮、三道堰鎮、安靖鎮、紅光鎮、新民場鎮、徳源鎮、友愛鎮、古城鎮、唐元\n鎮 ..."]},
{"title": ["特別区 - Wikipedia"], "texts": ["しかし、2000年(平成12年)の地方分権改革により、特別区は「基礎的な地方公共団体\n」と規定され、その母体である東京都から相当程度の独立性を与えられた。ただし、特別\n区の法的地位は未だに「特別地方公共団体」であり、固定資産税の賦課徴収や消防\n責任など本来は市町村の権限に属するものが東京都(特別区の連合体としての地位に\nある東京都)に留保されており、また", "財政調整制度のような地方税の特殊な分配\n制度があるなど、市町村のような「普通地方公共団体」と同一の権能を有するわけでは\nない。"]},
{"title": ["魏", "- Wikipedia"], "texts": ["魏", "(ぎと-く)は中華人民共和国河南省許昌市に位置する市轄区。 行政区画[編集]. \n街道:南関街道、五一路街道、西大街道、七里店街道、高橋営街道、西関街道、東大\n街道、北大街道、丁庄街道、文峰街道、新興街道. [隠す]. 表 · 話 · 編 · 歴 · 河南省の\n行政区画. 省都:鄭州市 · 地級市 · 鄭州市 · 中原区 · 二七区 · 管城回族区 · 金水区 · 上\n街区 · 恵済区 · 鞏義市 · 滎陽市 · 新鄭市 · 新密市 · 登封市 · 中牟県 · 開封市 · 竜亭区 · \n順河回族区 · 鼓楼区 · 禹王台区 · 祥符区 · 杞県 · 通許県 · 尉氏県 · 蘭考県 · 洛陽市."]},
{"title": ["蓮", "- Wikipedia"], "texts": ["蓮", "(れんと-く)は中華人民共和国浙江省麗水市に位置する市轄区。 目次. [非表示]. \n1 歴史; 2 行政区画; 3 交通. 3.1 鉄道; 3.2 道路. 歴史[編集]. 589年(開皇9年)、隋朝\nにより松陽県東部を分割し括蒼県が設置される。779年(大暦14年)に麗水県と改称され\n、現代まで沿襲される。1986年3月1日、県級市としての麗水市に改編されるが、2000\n年7月18日に麗水地区が地級市に改編されるに伴い、市轄区の蓮", "に改編され現在\nに至る。 行政区画[編集]. 街道:紫金街道、岩泉街道、万象街道、白雲街道、水閣街道、\n富 ..."]},
{"title": ["Category:東京", "部の地域 - Wikipedia"], "texts": ["下位カテゴリ. このカテゴリには下位カテゴリ 107 件が含まれており、そのうち以下の\n107 件を表示しています。 *. ▻ 東京の副都心 (7サブカテゴリ、1ページ). ▻ 東京を\n舞台とした作品 (地域別) (44サブカテゴリ). あ. ▻ 青海 (江東区) (34ページ). ▻ \n青山 (100ページ). ▻ 赤坂 (1サブカテゴリ、165ページ). ▻ 秋葉原 (4\nサブカテゴリ、126ページ). ▻ 阿佐谷 (19ページ). ▻ 浅草 (3サブカテゴリ、65\nページ). ▻ 麻布 (1サブカテゴリ、94ページ). ▻ 綾瀬 (16ページ). ▻ 有明 (江東区)\n (5サブカテゴリ、56ページ). い."]},
{"title": ["塩", "- Wikipedia"], "texts": ["塩", "(えんと-く)は中国江蘇省塩城市に位置する市轄区。 行政区画[編集]. 街道:張荘\n街道、塩竜街道、潘黄街道、浜湖街道、北竜港街道、中興街道、葛武街道、北蒋街道、\n鞍湖街道、岡中街道、新都街道; 鎮:大縦湖鎮、楼王鎮、学富鎮、尚荘鎮、秦南鎮、竜岡\n鎮、郭猛鎮、大岡鎮. [隠す]. 表 · 話 · 編 · 歴 · 江蘇省の行政区画. 省都:南京市 · 副省級\n市 · 南京市 · 玄武区 · 秦淮区 · 建鄴区 · 鼓楼区 · 棲霞区 · 雨花台区 · 浦口区 · 江寧区 · \n六合区 · 溧水区 · 高淳区 · 地級市 · 無錫市 · 浜湖区 · 錫山区 · 恵山区 · 梁渓区 · 新呉\n区 ..."]},
{"title": ["曽", "- Wikipedia"], "texts": ["曽", "(そうと-く)は中華人民共和国湖北省の随州市に位置する市轄区。 地理[編集]. \n曽", "は湖北省北西部の江漢平原北端、武漢市と襄陽市の中間に位置している。南は\n宜城市及び鍾祥市、安陸市、京山県の4市県と、北は河南省桐柏県と接している。 歴史[\n編集]. 曽都の歴史は古く、夏朝の始祖である炎帝神農の出生地とされることから中国で\nの農耕文化の発祥地といわれる。「曽」の名称は殷墟から出土した甲骨文に「左比曽」、\nまた安州六器の中にも「王令中先省南国,串貫行、在曽」と記載されるなど殷代には ..."]},
{"title": ["都・特別区における事務配分・税の特例と", "財政調整"], "texts": ["都・特別区における事務配分・税の特例と", "財政調整. 1.事務配分の特例. 都は、\n市町村が処理する事務のうち、人口が高度に集中する大都市地域における行政の一体\n性及. び統一性の確保の観点から、特別区の存する区域を通じて都が一体的に処理\nすることが必要である. と認められる事務を処理する。(地方自治法第281条の2). (主\nな事務). ・ 上水道の整備、管理運営. ・ 公共下水道の整備・管理運営. ・ 消防に関する\n事務. ・ 都市計画決定(上下水道、電気ガス供給施設、産業廃棄物処理施設、市場、\nと畜場等 ..."]},
{"title": ["東京", "市町村の財政情報について - 東京都総務局"], "texts": ["平成28年度の決算状況等を掲載しました。(平成30年1月12日). 団体別資料集. 地図\n中の団体名をクリックしてください。 団体別資料集からも選択できます。 ※資料集の\n掲載は5か年分としています。 年度別資料集 ○ 平成28年度 ○ 平成27年度 ○ 平成\n26年度 ○ 平成25年度 ○ 平成24年度 ※資料集の掲載は5か年分としています。 \n用語集. リンク集. 区市町村財政: ◇区市町村行財政 · 東京", "市町村の給与・定員等\nの状況について · 東京都内市町村の給与制度に関する状況の公表について · 東京", "市町村の ..."]},
{"title": ["区市町村行財政―東京都総務局行政部のページ |", "のあり方検討 ..."], "texts": ["のあり方検討委員会.", "のあり方検討委員会.", "のあり方を根本的かつ発展\n的に検討するため、", "協議会の下に、「", "のあり方検討委員会」を設置しました。 \n検討事項は、", "の事務配分、特別区の区域のあり方(再編等)、", "の税財政制度等\nです。 □ 開催状況、会議次第・資料及び議事要旨 · □ 委員名簿 〔PDF〕 · □ 設置要綱 \n〔PDF〕 · □ 運営規程 〔PDF〕 ..."]},
{"title": ["行政部 - 区市町村行財政―東京都総務局行政部のページ"], "texts": ["行政部について. 行政部は、区市町村等の地方公共団体の行財政運営に関する助言\n及び連絡調整、地方分権の推進、地域振興計画の策定指導、多摩及び島しょ地域に\n係る都の事務事業の連絡調整並びに小笠原諸島振興開発計画の推進及び調整などの\n事務を行っています。 具体的な所掌範囲は以下のとおりです。"]},
{"title": ["「東京の土地利用 平成23年東京", "部」の作成について | 東京都都市 ..."], "texts": ["平成25年5月29日 都市整備局. 東京都は、このたび、平成23年に東京都23区を対象\nに実施した土地利用現況調査の結果の概要を「東京の土地利用 平成23年東京", "部\n」として取りまとめましたので、お知らせします。 本調査は、東京の土地利用の現況と\n変化の動向を把握するため、概ね5年ごとに実施しているものです。 <調査結果の概要\n>. 区部の土地面積は増加。土地利用別の変化としては、宅地、公園等、道路等で増加\n傾向。農用地、水面等が減少傾向. 土地面積, :, 62,854 ha, (108 ha増加)."]},
{"title": ["制度調査会第二次報告の考え方(いよいよ本腰", "制度のあり方を ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京", "東北部医療圏|地域医療情報システム(日本医師会)"], "texts": ["医療:区東北部医療圏 □ 医療:全国平均 □ 介護:区東北部医療圏 □ 介護:全国平均\n. □将来推計人口:国立社会保障・人口問題研究所(2018年3月推計) ・福島県の各\n市町村は、県全体の推計値を2015年国勢調査人口で按分 ※富岡町、大熊町、双葉町\n、浪江町は、2015年国勢調査人口が0のため異常値となっています。 ・さいたま市、\n相模原市、新潟市、静岡市、浜松市、堺市、岡山市、熊本市の各区は、市全体の推計値\nを2015年国勢調査人口で按分. □医療介護需要予測:各年の需要量を以下で計算し、\n2015 ..."]},
{"title": ["内一日乗車券|京王バス"], "texts": ["京王バスのお得な「", "内一日フリー乗車券」。", "内均一運賃地区の京王の路線\nバスを1日に限り何回でもご利用になれる便利でお得な乗車券。"]},
{"title": ["東京", "西部医療圏|地域医療情報システム(日本医師会)"], "texts": ["医療:区西部医療圏 □ 医療:全国平均 □ 介護:区西部医療圏 □ 介護:全国平均. □\n将来推計人口:国立社会保障・人口問題研究所(2018年3月推計) ・福島県の各市町村\nは、県全体の推計値を2015年国勢調査人口で按分 ※富岡町、大熊町、双葉町、浪江\n町は、2015年国勢調査人口が0のため異常値となっています。 ・さいたま市、相模原市\n、新潟市、静岡市、浜松市、堺市、岡山市、熊本市の各区は、市全体の推計値を2015\n年国勢調査人口で按分. □医療介護需要予測:各年の需要量を以下で計算し、2015年\nの ..."]},
{"title": ["東京", "西南部医療圏|地域医療情報システム(日本医師会)"], "texts": ["将来推計人口:国立社会保障・人口問題研究所(2018年3月推計) ・福島県の各市町村\nは、県全体の推計値を2015年国勢調査人口で按分 ※富岡町、大熊町、双葉町、浪江\n町は、2015年国勢調査人口が0のため異常値となっています。 ・さいたま市、相模原市\n、新潟市、静岡市、浜松市、堺市、岡山市、熊本市の各区は、市全体の推計値を2015\n年国勢調査人口で按分. □医療介護需要予測:各年の需要量を以下で計算し、2015年\nの国勢調査に基づく需要量=100として指数化 ・各年の医療需要量=~14 ..."]},
{"title": ["東京", "中央部医療圏|地域医療情報システム(日本医師会)"], "texts": ["医療:区中央部医療圏 □ 医療:全国平均 □ 介護:区中央部医療圏 □ 介護:全国平均\n. □将来推計人口:国立社会保障・人口問題研究所(2018年3月推計) ・福島県の各\n市町村は、県全体の推計値を2015年国勢調査人口で按分 ※富岡町、大熊町、双葉町\n、浪江町は、2015年国勢調査人口が0のため異常値となっています。 ・さいたま市、\n相模原市、新潟市、静岡市、浜松市、堺市、岡山市、熊本市の各区は、市全体の推計値\nを2015年国勢調査人口で按分. □医療介護需要予測:各年の需要量を以下で計算し、\n2015 ..."]},
{"title": ["東京", "西北部医療圏|地域医療情報システム(日本医師会)"], "texts": ["医療:区西北部医療圏 □ 医療:全国平均 □ 介護:区西北部医療圏 □ 介護:全国平均\n. □将来推計人口:国立社会保障・人口問題研究所(2018年3月推計) ・福島県の各\n市町村は、県全体の推計値を2015年国勢調査人口で按分 ※富岡町、大熊町、双葉町\n、浪江町は、2015年国勢調査人口が0のため異常値となっています。 ・さいたま市、\n相模原市、新潟市、静岡市、浜松市、堺市、岡山市、熊本市の各区は、市全体の推計値\nを2015年国勢調査人口で按分. □医療介護需要予測:各年の需要量を以下で計算し、\n2015 ..."]},
{"title": ["2015年基準 消費者物価指数 東京", "部 平成30年(2018年)3月分 ..."], "texts": ["2018年3月30日", "2 東京", "部. ◎ 前年同月との比較(10大費目). 表3 10大費目指数,前年同月比\n及び寄与度. 生鮮食品 生 鮮 食 品 及 食料 ・ エ. 生鮮食品. を 除 く びエネルギー \nネルギー. を 除 く. 総. 合 を 除 く 総 合 を除く*. 食. 料. 指. 数 100.5 100.2. 100.7 \n100.2 103.0 107.0 102.2. 99.2. 92.7. 98.7 101.3 102.6. 99.1 101.0 102.2 101.0. ( \n1.4) ( 0.9). ( 0.5) ( 0.4) ( 3.1) ( 13.4) ( 1.0) (-0.2) ( 4.6) ( 1.2) (-0.8) ( 2.1) ( 1.0) ( 0.1) \n( 1.9) ( 0.5). 1.0. 0.8. 0.5. 0.4. 1.6. 5.4. 0.9. -0.2. 4.1. 0.3. -0.1. 2.1. 1.6. 0.0. 0.9."]},
{"title": ["平成28年度", "財政調整算定結果について(要旨)|東京都"], "texts": ["平成28年度", "財政調整について、各特別区に対する交付額が決定しましたので、\nお知らせします。"]},
{"title": ["平成28年東京", "市町村の給与水準(ラスパイレス指数)|東京都"], "texts": ["平成28年の東京", "市町村の給与水準(ラスパイレス指数)について、本日、総務省\nから公表されましたので、下記のとおりお知らせします。"]},
{"title": ["総務省|2015年基準 消費者物価指数 東京", "部 平成30年(2018年)3 ..."], "texts": ["2018年3月30日", "総務省は、2015年基準 消費者物価指数 東京", "部 平成30年(2018年)3月分(中旬\n速報値)及び平成29年度(2017年度)平均(速報値)の結果を公表しました。"]},
{"title": ["楽", "- Wikipedia"], "texts": ["楽", "(らくと-く)は中華人民共和国青海省海東市に位置する市轄区。旧称は湟水県。\n五胡十六国時代には南涼が首都を置いていた。 行政区画[編集]. 鎮:碾伯鎮、高廟鎮、\n洪水鎮、雨潤鎮、高店鎮、寿楽鎮、瞿曇鎮; 郷:共和郷、中嶺郷、李家郷、馬営郷、蘆花\n郷、馬廠郷、蒲台郷、峰堆郷、城台郷; 民族郷:達拉トゥ族郷、中壩チベット族郷、下営\nチベット族郷. [隠す]. 表 · 話 · 編 · 歴 · 青海省の行政区画. 省都:西寧市 · 地級市 · 西寧\n市 · 城東区 · 城中区 · 城西区 · 城北区 · 湟中県 · 湟源県 · 大通回族トゥ族自治県 · 海東\n市."]},
{"title": ["東京", "市町村別人口の予測 - 東京都の統計"], "texts": ["予測結果の概要 (PDF形式 792KB ) □ 統計データ * 予測方法 (PDF形式 493KB ) * \n利用上の注意 (PDF形式 193KB ) □ アンケートのお願い. □ 【Excel】及び【PDF】\nについては、利用ガイドを参照してください。 人口統計課 人口予測担当. 電話:03-5388-\n2295(直通) *お手数をおかけいたしますが(at)を@マークに変えて送信してください。 E\nメール:S0000030(at)section.metro.tokyo.jp. このページのトップへ. サイトポリシー · \n個人情報保護方針 · 著作権 · リンク集 · お問い合わせ. 東京都総務局統計部Statistics\n ..."]},
{"title": ["東京の物価トップページ - 東京都の統計"], "texts": ["2018年3月20日", "東京の物価、東京", "部消費者物価指数(中旬速報値)のページです。"]},
{"title": ["東京", "南部医療圏|地域医療情報システム(日本医師会)"], "texts": ["医療:区南部医療圏 □ 医療:全国平均 □ 介護:区南部医療圏 □ 介護:全国平均. □\n将来推計人口:国立社会保障・人口問題研究所(2018年3月推計) ・福島県の各市町村\nは、県全体の推計値を2015年国勢調査人口で按分 ※富岡町、大熊町、双葉町、浪江\n町は、2015年国勢調査人口が0のため異常値となっています。 ・さいたま市、相模原市\n、新潟市、静岡市、浜松市、堺市、岡山市、熊本市の各区は、市全体の推計値を2015\n年国勢調査人口で按分. □医療介護需要予測:各年の需要量を以下で計算し、2015年\nの ..."]},
{"title": ["東京", "東部医療圏|地域医療情報システム(日本医師会)"], "texts": ["医療:区東部医療圏 □ 医療:全国平均 □ 介護:区東部医療圏 □ 介護:全国平均. □\n将来推計人口:国立社会保障・人口問題研究所(2018年3月推計) ・福島県の各市町村\nは、県全体の推計値を2015年国勢調査人口で按分 ※富岡町、大熊町、双葉町、浪江\n町は、2015年国勢調査人口が0のため異常値となっています。 ・さいたま市、相模原市\n、新潟市、静岡市、浜松市、堺市、岡山市、熊本市の各区は、市全体の推計値を2015\n年国勢調査人口で按分. □医療介護需要予測:各年の需要量を以下で計算し、2015年\nの ..."]},
{"title": ["Category:東京", "部の町名 - Wikipedia"], "texts": ["東京", "部(23区)の町に関するカテゴリ。 東京", "部内にある広域地名・汎称地名・\n俗称地名についてはCategory:東京", "部の地理又は各区の地理カテゴリを参照。 \n目次. このカテゴリのTOP · あ · い · う · え · お · は · ひ · ふ · へ · ほ · か · き · く · け · こ · \nま · み · む · め · も · さ · し · す · せ · そ · や · ゆ · よ · た · ち · つ · て · と · ら · り · る · れ · \nろ · な · に · ぬ · ね · の · わ · を · ん. 下位カテゴリ. このカテゴリには下位カテゴリ 23 件\nが含まれており、そのうち以下の23 件を表示しています。 あ. ▻ 足立区の町名 (87\nページ)."]},
{"title": ["平成29年度第2回", "協議会及び特別区長との意見交換会|東京都"], "texts": ["2018年2月1日", "平成29年度第2回", "協議会及び特別区長との意見交換会. 平成30年(2018年)2月1\n日(木曜日)、平成29年度第2回", "協議会及び特別区長との意見交換会が都庁で\n開催され、小池知事が出席しました。 はじめに開催された第2回", "協議会の冒頭、\n知事は、「東京には少子高齢社会への対応、防災、治安対策、環境対策など、多くの\n課題が山積しています。こうした課題を解決し、東京をさらに持続的に発展させるために\nは、住民と最も近いところで尽力されている区長の皆さまとの連携が欠かせ ..."]},
{"title": ["区市町村との連携による地域環境力活性化事業 :東京都地球温暖化 ..."], "texts": ["東京都の環境政策の一層の推進を図るためには、地域の実情に精通している区市町村\nとの連携を一層強化していくことが重要です。「東京", "市町村との連携による地域環境\n力活性化事業」では、都内の区市町村が実施する地域の多様な主体との連携や、地域\n特性・地域資源の活用等、地域の実情に即した取組のうち、東京の広域的環境課題の\n解決に資するものに対して支援を実施しています。公社は、東京都からの委託を受けて\n都と区市町村が一体となって環境課題に取り組めるよう支援を行っています。"]},
{"title": ["東京", "市町村における燃料電池自動車の導入促進事業 :東京都地球 ..."], "texts": ["東京", "市町村における燃料電池自動車の導入促進事業とは、水素社会の早期実現\nに向けて、水素インフラ整備、燃料電池自動車の初期需要の創出等水素エネルギーの\n普及拡大を図る東京都内の区市町村において燃料電池自動車の導入を促進することを\n目的としています。 本事業では、公社が東京都から委託を受け、燃料電池自動車を自ら\n導入する東京都内の区市町村に対し、燃料電池自動車の導入に要する経費の一部を\n助成する事務を実施しています。"]},
{"title": ["内運賃地区|運賃表|路線バス|小田急バス"], "texts": ["小田急バスの路線バスの各路線区間内の運賃をご案内しています。"]},
{"title": ["統計局ホームページ/小売物価統計調査(動向編)/東京", "部の価格の ..."], "texts": ["総務省統計局、統計研究研修所の共同運営によるサイトです。国勢の基本に関する\n統計の企画・作成・提供、国及び地方公共団体の統計職員に専門的な研修を行ってい\nます。"]},
{"title": ["平成27年度", "財政調整区別算定結果(当初算定)|東京都"], "texts": ["区名, 基準財政収入額, 基準財政需要額, 内訳, 普通交付金. 経常的経費, 投資的経費. \n千代田区, 22,655,823, 26,657,303, 22,131,229, 4,526,074, 4,001,480. 中央区, \n28,865,991, 41,461,524, 34,888,585, 6,572,939, 12,595,533. 港区, 66,372,956, \n55,828,944, 46,660,419, 9,168,525, 0", ". 新宿区, 47,935,649, 73,468,719, \n63,380,791, 10,087,928, 25,533,070. 文京区, 31,368,536, 47,498,594, \n40,550,092, 6,948,502, 16,130,058. 台東区, 22,609,340, 49,154,397, 41,769,712, \n7,384,685 ..."]},
{"title": ["27年度", "財政調整について(要旨)|東京都"], "texts": ["対前年度増減率. (1)調整税(当年度分), 1兆7,585億円, (-0.9%). (2)交付金の総額(\nア+イ), 9,743億円, (-0.7%). ア 当年度分(調整税の55%), 9,672億円. イ 精算分, \n71億円. (3)基準財政収入額A, 1兆987億円, (11.3%). (4)基準財政需要額B, 2兆\n243億円, (5.5%). 1 経常的経費, 1兆7,229億円. 2 投資的経費, 3,014億円. (5)交付\n金, 9,743億円, (-0.7%). 1 普通交付金(B-A), 9,256億円. 2 特別交付金, 487億円 ..."]},
{"title": ["26年度", "財政調整について(要旨)|東京都"], "texts": ["対前年度増減率. (1) 調整税(当年度分), 1兆7,745億円, (7.4%). (2) 交付金の総額\n(ア+イ), 9,812億円, (7.7%). ア 当年度分(調整税の55%), 9,760億円. イ 精算分, \n52億円. (3) 基準財政収入額A, 9,870億円, (5.1%). (4) 基準財政需要額B, 1兆\n9,191億円, (6.3%). 1) 経常的経費, 1兆6,790億円. 2) 投資的経費, 2,401億円. (5) \n交付金, 9,812億円, (7.7%). 1) 普通交付金(B-A), 9,321億円. 2) 特別交付金, 491億\n円 ..."]},
{"title": ["平成28年度第3回", "協議会及び特別区長との意見交換会|東京都"], "texts": ["平成28年度第3回", "協議会及び特別区長との意見交換会. 平成29(2017)年2月2日\n(木曜)、小池知事は、都庁で平成28年度第3回", "協議会及び特別区長との意見交換\n会に出席しました。", "協議会では、まず始めに、小池知事が協議会会長に選任され、\n知事は会長として挨拶しました。 知事は、就任から半年がたち、「都民ファーストを掲げ\nて、都の改革すべきことを、ひとつずつ進めているところ」とした上で、平成29年度予算\n編成に際し、昨年末に特別区から直接聞いた要望のうち、子育て支援 ..."]},
{"title": ["Category:東京", "部の専修学校 - Wikipedia"], "texts": ["カテゴリ「東京", "部の専修学校」にあるページ. このカテゴリには 130 ページが含まれ\nており、そのうち以下の 130 ページを表示しています。 あ. ICSカレッジオブアーツ · 青山\nファッションカレッジ · アクト情報スポーツ保育専門学校 · 阿佐ヶ谷美術専門学校. い. \n池袋調理師専門学校. え. 東京都立荏原看護専門学校. お. お茶の水はりきゅう専門\n学校 · 御茶の水美術学院 · 御茶の水美術専門学校 · 音響芸術専門学校. か. 蒲田保育\n専門学校 · 神田外語学院. き. 玉成保育専門学校. く. 窪田理容美容専門学校 · グレッグ\n外語 ..."]},
{"title": ["Category:東京", "部の行政 - Wikipedia"], "texts": ["Category:東京", "部の行政. 出典: フリー百科事典『ウィキペディア(Wikipedia)』. \n移動先: 案内、 検索. 日本の行政区画 > 日本の都道府県 > 東京都 > 東京 > 東京", "部の行政. 東京", "部(23特別区)の行政に関するカテゴリ。 下位カテゴリ. この\nカテゴリには下位カテゴリ 2 件が含まれており、そのうち以下の2 件を表示しています。 \nく. ▻ 東京都の区役所 (24ページ). と. ▻ 東京都の特別区長 (1サブカテゴリ、56\nページ) ..."]},
{"title": ["JRの切符のいう「東京", "内」の範囲はどこまでなのか? - ライフハッカー"], "texts": ["JRの切符のいう「東京", "内」の範囲はどこまでな Image: eakkarat rangram/\nShutterstock.com. 新幹線で都内に入ったことのある人であればお気づきだと思います\nが、乗車券に書かれている「東京", "内」の文字。これは JRの特別な運賃計算である「\n特定", "市内」の東京都版ですが、この「東京", "内」とは具体的にどの区間を指して\nいるのでしょうか? 大宮は? 舞浜は?など、地図で何県に位置しているのかとは別に、\nJRが規定する「東京", "内」なのかどうかがわからない駅はありませんか?"]},
{"title": ["総務省|2015年基準 消費者物価指数 東京", "部 平成30年(2018年)2 ..."], "texts": ["2018年3月2日", "総務省は、2015年基準 消費者物価指数 東京", "部 平成30年(2018年)2月分(中旬\n速報値)の結果を公表しました。"]},
{"title": ["花", "卷(广州市文物普查汇编)|書誌詳細|国立国会図書館オンライン"], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京都の都市外交 | 東京", "・", "市町村の国際政策 - 東京都政策企画局"], "texts": ["東京都政策企画局外務部のホームページ。東京都都市外交戦略や姉妹友好都市など\n東京都の都市外交についての情報。"]},
{"title": ["創立30周年記念特集[含 年譜]([東京", "市町村振興協会]創立30周年 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京", "市町村勢要覧 昭和45年|書誌詳細|国立国会図書館オンライン"], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京", "市町村勢要覧 昭和37年|書誌詳細|国立国会図書館オンライン"], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["財政調整について|書誌詳細|国立国会図書館オンライン"], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京", "市町村の給与・定員等の状況について - 東京都総務局"], "texts": ["2、東京", "市町村の給与情報等の公表に関するホームページ一覧. ※区市町村名を\nクリックするとホームページにジャンプします。(一部の区市町村については、当該区\n市町村のホームページ管理の方針により、区市町村のトップページにリンクしています。\n) *特別区 ..."]},
{"title": ["丼丸 »", "外"], "texts": ["海鮮丼・寿司の持ち帰り鮨。関東23区で展開。FC加盟店募集中。"]},
{"title": ["都と特別区に関する検討の視点 - 総務省"], "texts": ["現在特別区で処理している事務の中に、都において処理すべき事務はあるか。特別区\nが一部事務. 組合で共同処理している事務(例:ごみ焼却施設の整備・管理運営、人事\n委員会等)についてどのよう. に考えるか。 ○ 特別区の区域のあり方について、どう\n考えるか。 ○ 都と特別区の税財源の配分について、どう考えるか。", "財政調整制度\nは有効に機能しているか。 ○ 都と特別区の間の調整は有効に行われているか。法定\nされている", "協議会の運用状況について. どのように考えるか。 ○ 地方自治法に\n位置づけられ ..."]},
{"title": ["金沢→吉祥寺の乗車券は,東京", "内までと同額なのに,有楽町,渋谷 ..."], "texts": ["2017年6月7日", "北陸新幹線の乗車券で,金沢→東京", "内と金沢→吉祥寺は同額です。東京", "内\nまでの乗車券は,", "内で最初に下車した駅で回収されます。しかし,吉祥寺着に\nすると,山手線内などを大回りでき,途中下車も可能。その実例と注意点の説明です。"]},
{"title": ["部直下地震の被害想定"], "texts": ["部直下地震の被害想定. 防災対策の対象地震.", "部直下地震. * 東京湾内の\n津波は小さい(1m以下). 震度分布(都心南部直下地震). - 全壊・焼失家屋 : 最大 約 \n61万棟. - 死者. : 最大 約 2.3 万人. - 要救助者. : 最大 約 7.2 万人. - 被害額. : 約 95 \n兆円. 被害想定(最大値、未対策(現状)). 1. 【 都心南部直下地震】 M7.3. ※冬、夕方 \n風速8m/秒のケース (要救助者の最大は冬、深夜のケース). 資料2-6 ..."]},
{"title": ["都政のしくみ/都と区市町村[都と市町村]|東京都"], "texts": ["都政のしくみ/都と区市町村[都と市町村]. 1 法制関係. 東京都には、前述の特別地方\n公共団体である特別区と普通地方公共団体である市町村があります。 地方自治法\nにおいては、都道府県も市町村も同じ普通地方公共団体として、一部の例外を除き、\n同一の規定により規律されており、それぞれ完全に独立した地方公共団体として\n位置づけられています。都道府県が、市町村を包括するという二層構造をとっています\nが、都と市町村は、上下の関係にあるものではありません。 都と市町村は対等の関係\nですが、その処理 ..."]},
{"title": ["Category:東京", "部の公立小学校 - Wikipedia"], "texts": ["カテゴリ「東京", "部の公立小学校」にあるページ. このカテゴリには 181 ページが含ま\nれており、そのうち以下の 181 ページを表示しています。 あ. 足立区立足立小学校 · \n足立区立綾瀬小学校 · 足立区立伊興小学校 · 足立区立大谷田小学校 · 足立区立興本\n扇学園 · 足立区立亀田小学校 · 足立区立北三谷小学校 · 足立区立栗原小学校 · 足立\n区立中川小学校 · 足立区立中川東小学校 · 足立区立中島根小学校 · 足立区立長門\n小学校 · 足立区立西新井小学校 · 足立区立西新井第一小学校 · 足立区立西新井第二\n小学校 ..."]},
{"title": ["Category:東京", "部の私立中学校 - Wikipedia"], "texts": ["カテゴリ「東京", "部の私立中学校」にあるページ. このカテゴリには 123 ページが含ま\nれており、そのうち以下の 123 ページを表示しています。 あ. 愛国中学校・高等学校 · \n青山学院中等部・高等部 · 麻布中学校・高等学校 · 足立学園中学校・高等学校 · 跡見\n学園中学校・高等学校. い. 郁文館中学校・高等学校. う. 上野学園中学校・高等学校. え\n. 江戸川女子中学校・高等学校. お. 桜蔭中学校・高等学校 · 大妻中学校・高等学校 · \n大妻中野中学校・高等学校 · 小野学園女子中学・高等学校. か. 海城中学校・高等学校 \n· 開成 ..."]},
{"title": ["平成 28 年度", "財政調整協議まとまる - 特別区長会"], "texts": ["協議の特徴. 昨年の 12 月2日から始まった平成 28 年度", "財政調整協議は、本年2\n月4日の", "協議. 会において", "合意に至りました。 今回の協議は、法人住民税の\n国税化(地方法人税)の影響が平年度化され、消費税率 10%. 段階における更なる国税\n化が危惧されるなど、", "を取り巻く財政環境が厳しくなることが. 見込まれる中での\n協議となりました。 今年度も都区間の財源配分を見直すべき事由が生じていないこと\nから、大きな課題であっ. た人件費の見直しや子ども・子育て支援新制度の反映などが\n、協議の ..."]},
{"title": ["旅客営業規則 - 横浜市 - JR東日本"], "texts": ["第2編 旅客営業 -第3章 旅客運賃・料金 -第2節 普通旅客運賃. (特定", "市内にある\n駅に関連する片道普通旅客運賃の計算方). 第86条: 次の各号の図に掲げる東京", "内、横浜市内(川崎駅、尻手駅、八丁畷駅、川崎新町駅及び小田栄駅並びに鶴見線\n各駅を含む。)、名古屋市内、京都市内、大阪市内(新加美駅を除く。)、神戸市内(道場\n駅を除く。)、広島市内(海田市駅及び向洋駅を含む。)、北九州市内、福岡市内(姪浜駅\n、下山門駅、今宿駅、九大学研都市駅及び周船寺駅を除く。)、仙台市内又は札幌市内(\n以下 ..."]},
{"title": ["きっぷあれこれ > 途中下車:JR東日本"], "texts": ["東京", "内→大阪市内」の乗車券は、次のようなお取扱いとなります。 <東京", "内の\n駅での下車>. 下車駅から先の区間については無効となります。ただし、乗車駅から\n下車駅までの運賃を別にお支払いいただいた場合は再びご利用になれます。 <川崎~\n吹田間の駅で下車>. もどらない限り何回でも途中下車できます。 <大阪市内の駅で\n下車>. 旅行終了として乗車券はいただきます。ただし、大阪と北新地とを当日中に徒歩\n連絡する場合に限って大阪または北新地での途中出場ができます(大阪市内のその他\nの駅 ..."]},
{"title": ["財政調整協議会設置要綱 - 東京都総務局"], "texts": ["財政調整協議会設置要綱. 第1 設 置. 都と特別区及び特別区相互間の財政調整(\n以下「", "財政調整」という。)について、適正. な行政水準の確保及び算定方法の合理\n的な改善に資するため、", "協議会の下に", "財政調整. 協議会(以下「協議会」という\n。)を設置する。 第2 協議事項. 協議会における協議事項は、次のとおりとする。 1 経費\nの種類、測定単位、単位費用及び測定単位の数値の補正その他の", "財政調整に\nおけ. る基準財政需要額の算定に関すること. 2 特別区税収入見込みその他の", "財政調整 ..."]},
{"title": ["EX予約運賃ナビ|エクスプレス予約 新幹線の会員制ネット予約"], "texts": ["EX予約サービスで在来線とお乗り継ぎの場合、別途在来線区間のきっぷ等が必要\nとなります(新幹線と在来線の運賃は、別々に計算します)。このため、ご利用の区間\nによっては、「e特急券+片道乗車券」をご利用になられた方が、高額となる場合と低額\nとなる場合があります。 EX予約サービスは乗車券と特急券の効力が一体となった\n東海道・山陽新幹線専用のきっぷ商品です。このため、通常のきっぷと異なり、「東京", "", "内」「大阪市内」といったいわゆる「特定", "市内制度」は適用されません。乗継の\n場合、別途在来線 ..."]},
{"title": ["東京", "部消費者物価、2月の上昇率0.9%に拡大 宿泊料・豚肉上昇 ..."], "texts": ["2018年3月1日", "総務省が2日発表した2月の東京", "部の消費者物価指数は、指標とされる除く生鮮(\nコアCPI)が前年比0.9%上昇し、1月の0.7%からプラス幅が拡大した。エネルギー\n価格上昇による指数押し上げは弱まったが、春節や平昌冬季五輪の影響で宿泊料や\n外国パック旅行のプラス幅が拡大し、指数を押し上げた。携帯電話の本体価格や通信\n料も、昨年は値下げした反動で指数の押し上げ要因となった。豚肉などの食料(除く\n生鮮)価格も上昇した。このため物価のより基調的な動きを示すとされる除く ..."]},
{"title": ["東京", "・", "市町村における消費者教育講座等実施状況報告書 昭和58 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["花", "(広州北駅) のホテル・旅館 宿泊予約 【楽天トラベル】"], "texts": ["花", "(広州北駅) のホテル・旅館の予約は楽天トラベルで!お客さまの声など口コミ\n情報満載."]},
{"title": ["Template:東京", "部 imagemap - Wikipedia"], "texts": ["クリッカブル画像(Imagemap)を用いたクリックリンク可能な東京", "部の地図です。\n左寄せ固定です。 「https://ja.wikipedia.org/w/index.php?title=Template:東京", "部\n_imagemap&oldid=60051780」から取得. カテゴリ: 東京", "部の地理 · 日本の行政\n区画のテンプレート · クリッカブル画像. 案内メニュー. 個人用ツール. ログインしていませ\nん; トーク · 投稿記録 · アカウント作成 · ログイン. 名前空間. テンプレート · ノート. 変種. \n表示. 閲覧 · ソースを編集 · 履歴表示. その他. 検索. 案内. メインページ · コミュニティ・ ..."]},
{"title": ["Category:東京", "部のショッピングセンター - Wikipedia"], "texts": ["カテゴリ「東京", "部のショッピングセンター」にあるページ. このカテゴリには 41 ページ\nが含まれており、そのうち以下の 41 ページを表示しています。 あ. アーバンドック \nららぽーと豊洲 · アクアシティお台場 · アニヴェルセル東京ベイ · アリオ葛西 · アリオ\n亀有 · アリオ北砂 · アリオ西新井 · アルカキット錦糸町. い. イオン赤羽北本通り店 · \nイオン板橋ショッピングセンター · イオン品川シーサイドショッピングセンター · イオン\nスタイル碑文谷 · イオン西新井店. う. ヴィーナスフォート · ウィラ大井. お. OAK plaza · \n荻窪タウンセブン ..."]},
{"title": ["Category:東京", "部のスポーツ施設 - Wikipedia"], "texts": ["カテゴリ「東京", "部のスポーツ施設」にあるページ. このカテゴリには 79 ページが含ま\nれており、そのうち以下の 79 ページを表示しています。 2. 東京オリンピックスタジアム. \nA. ALLIANCE-SQUARE. あ. アカデミア・アーザ水道橋 · 赤羽スポーツの森公園 · \nアクアフィールド芝公園 · 足立区総合スポーツセンター · アニマル浜口レスリング道場 · \n荒川総合スポーツセンター. い. 板橋区立小豆沢体育館. う. ウィラサクレックフェア\nテックスムエタイジム. え. 江戸川競艇場 · 江戸川区球場 · 江戸川区スポーツセンター · \n江戸川区陸上 ..."]},
{"title": ["東京", "中央部保健医療圏地域保健医療計画|書誌詳細|国立国会 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["郷土・", "行政資料目録 : 郷土資料室収蔵 昭和55年1月現在|書誌 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["前払い:", "内エリア|京王バス"], "texts": ["京王バスのバスの乗り方をご案内いたします。こちらでは現金や紙式(磁気)定期券、\nシルバーパスでの", "内エリア[運賃前払い方式]バス利用についてご案内いたします。"]},
{"title": ["新幹線乗換改札機の通り方 - JR東日本"], "texts": ["在来線から新幹線へのお乗り換え例. 「東京(", "内)⇒仙台(市内)のきっぷ」と「Suica\n」をお持ちのお客さまが、茅ケ崎駅からSuicaで入場して、東京駅から新幹線に乗車する\n場合、新幹線乗換改札機にきっぷを投入し、Suicaをタッチすることで、茅ケ崎駅~蒲田\n駅(東京", "内の入口駅)間のIC運賃がSuicaのチャージ残額から自動精算されます。 \n在来線から新幹線へのお乗り換え例 ..."]},
{"title": ["東京", "市町村別人口の予測(統計表) 平成29年3月公表"], "texts": ["東京", "市町村別人口の予測(統計表) 平成29年3月公表のページです。"]},
{"title": ["国勢調査トップページ - 東京都の統計"], "texts": ["2018年3月20日", "お知らせ. ○平成27年国勢調査 東京都の昼間人口(従業地・通学地による人口)(平成\n30年3月20日公表). ○平成27年国勢調査 東京", "市町村町丁別報告(平成30年3\n月20日公表). 平成27年国勢調査(平成27年10月1日現在)の集計結果に基づき、東京\n都の昼間人口及び東京", "市町村町丁別報告をまとめました。上記リンクよりご覧\nください。"]},
{"title": ["一般財団法人 東京都弘済会|健康増進旅行(", "退職者)"], "texts": ["福利厚生事業(", "退職者). 都や区を退職された方々の福利増進を目的とした活動\nに対する支援及び情報提供等を行っています。 ○東京都弘済会「友の会」の活動支援 \n友の会が実施する事業(日帰りバス旅行、宿泊旅行等)を共催するとともに、その活動を\n支援しています。 お問い合わせ ..."]},
{"title": ["東京", "部における環境騒音の調査結果(公害研究所資料 ; 3-2-23 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["制度における「一体性」と大阪都構想の持つ意味(大都市制度の改革 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["制度の改革と都区間の新たな役割分担--地方自治法等の一部を ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["新編武蔵風土記稿東京", "部編|書誌詳細|国立国会図書館オンライン"], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京", "市町村組織人事一覧 平成27年版|書誌詳細|国立国会 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京", "市町村別人口の予測 平成12年・17年・22年・27年各年10月1 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["平成28年度", "財政調整について(要旨)|東京都"], "texts": ["対前年度増減率. (1) 調整税(当年度分), 1兆7,692億円, (0.6%). (2) 交付金の総額\n(ア+イ), 9,756億円, (0.1%). ア 当年度分(調整税の55%), 9,731億円. イ 精算分, \n25億円. (3) 基準財政収入額A, 1兆1,429億円, (4.0%). (4) 基準財政需要額B, 2兆 \n697億円, (2.2%). 1) 経常的経費, 1兆7,921億円. 2) 投資的経費, 2,776億円. (5) \n交付金, 9,756億円, (0.1%). 1) 普通交付金(B-A), 9,268億円. 2) 特別交付金, 488\n億円 ..."]},
{"title": ["東京", "市町村との連携による地域環境力活性化事業 ... - 東京都環境局"], "texts": ["この要綱は、東京都(以下「都」という。)が、都内の区市町村(以下単に「区市町村」\nという。)と. 連携し、広域的環境課題への対応を図ることにより、東京の環境政策を一層\n推進することを目的として. 行う「東京", "市町村との連携による地域環境力活性化事業\n」(以下「本事業」という。)の実施に関す. る基本的な事項を定めることを目的とする。 第\n2 本事業の概要. 1 都は、東京の広域的環境課題の解決に資する事業又は地域特性や\n地域資源を活用した事業を実施. する区市町村に対し、当該事業に係る経費の一部を\n補助 ..."]},
{"title": ["内一日フリー乗車券の払戻し方法|京王バス"], "texts": ["京王バスの", "内一日フリー乗車券の払い戻し方法をご案内いたします。"]},
{"title": ["未完の", "制度改革 の解決をめざして - 東京"], "texts": ["主要5課題」が解決しないと、", "が明確な役割分担のもとに住民に対する行政責任を. \n果たしていくしくみをつくるという、", "制度改革の目的そのものが実現されなくなります\n。ま. た、", "の財源関係に係る課題が解決されなければ、区民のニーズに的確に対応\nできな. いという現実的な問題も生じます。 その意味で、「主要5課題」は、まさに区民\n生活に直結する問題です。 未完の", "制度改革. の解決をめざして. ∼平成12年改革\nで残された「主要5課題」∼. 平成12年4月1日、", "制度改革が実現しました。この\n改革 ..."]},
{"title": ["特別区長会", "財政調整制度の概要"], "texts": ["現行制度の下での最大の課題は、都が一体的に処理する「市町村事務」の具体的な\n整理により、改正自治法の原則に則った役割分担の明確化と役割分担に基づく安定的\nな財源配分を確立すること そのことを通じて、住民に対する", "の行政責任の明確化を\n図り、基礎自治体である特別区の行財政基盤の強化と都が広域的課題に専念できる\n体制を確保し、", "の真のパートナーシップ確立による住民福祉の向上と大都市東京の\n発展を期するもの. ― 平24.3.16 第30次地方制度調査会第8回専門小委員会特別区\n提出 ..."]},
{"title": ["制度改革の概要|書誌詳細|国立国会図書館オンライン"], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["平成13年", "財政調整|書誌詳細|国立国会図書館オンライン"], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["財政調整制度の変遷-4-|書誌詳細|国立国会図書館オンライン"], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京", "主任試験ハンドブック 第14版|書誌詳細|国立国会図書館 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京", "部における病院の緑化実態について|書誌詳細|国立国会 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京", "内のケーブル系統の現状と将来計画|書誌詳細|国立国会 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["平成29年度 東京", "市町村 住宅助成(融資)制度の概要"], "texts": ["変更等が行われる場合がありますので、詳しくは各区市町村担当課にお問い合わせ\nください。 平成29年度 東京", "市町村 住宅助成(融資)制度の概要. (平成29年7月\n現在). 本人負担. 自治体負担. ○自己用 住宅転用費の15%(上限150万円). そ ・住宅\n転用をしようとする建物の所有権を有する個人. 環境まちづくり部住宅課. ○賃貸用 住宅\n転用費の10%(上限100万円). または法人. ℡ 03(5211)4312. ・住民税(法人都民税)\nを滞納していないこと. ○調査設計費・共同施設整備費の2/3. そ ・都の事業認定を受け\n、地区 ..."]},
{"title": ["統計局ホームページ/小売物価統計調査(動向編) 調査結果 - 総務省統計局"], "texts": ["調査の結果. 毎月の結果 ( 全品目 / 自動車ガソリン ) e-Stat. 年間の結果 ( 全品目:\n平成13年(2001年)~平成29年(2017年) ). 過去の特別集計. 10年報:平成3年(1991\n年)~平成12年(2000年) e-Stat · 主要品目の東京", "部小売価格:昭和25年(1950年\n)~平成22年(2010年)(エクセル:587KB) · 東京", "部の「自動車ガソリン」「灯油」の\n長期時系列:昭和41年(1966年)~最新月 はこちら ..."]},
{"title": ["東京", "部の若年人口-1970年~2015年に20~24歳人口は63%減 ..."], "texts": ["2017年10月6日", "東京", "部でも若年人口が大幅に減少していることをご存知でしょうか? 周知のとおり\n、東京", "部には多くの人が地方から転入しています。2016年の、東京", "部への\n転入超過数は5万7千人でした(図表-1)。 2015年と比べると若干の減少となりました\nが、高水準での純流入が続いており、特に、若年層の15~29歳(日本人のみ)では7万\n8千人という大幅な転入超過となっています。 大幅な若年人口の純流入が続いている\n東京", "部は、全国で最も求人倍率が高く人手不足が最も深刻な地域の ..."]},
{"title": ["東京", "部における学校跡地活用状況に関する考察(その3)|書誌詳細 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京", "部における 産業構造・分布の変化と市街地再編|書誌詳細 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京", "部における事務所ビルの省エネルギー可能性に関する検討 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["戦後", "制度改革の歴史と論点(大都市制度の改革)|書誌詳細|国立 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京", "部における中小河川の廃止と転用実態に関する調査研究 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["消費者物価指数の動向(東京", "部4月中旬速報値)|書誌詳細|国立 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京", "部におけるひとり親世帯の居住支援の体制と課題について ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京", "内乗入民営バス会社の運賃改訂をめぐる諸問題|書誌詳細 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["消費者物価指数の動向--東京", "部(平成15年度平均速報値)|書誌 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["内エリア[運賃前払い方式]|京王バス"], "texts": ["京王バスのバスの乗り方をご案内いたします。こちらではICカードでの", "内エリア[\n運賃前払い方式]バス利用についてご案内いたします。"]},
{"title": ["1956・11~1957・1インフルエンザ流行における東京", "部小中学生 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["消費者物価指数の動向--東京", "部(8月中旬速報値)・全国(7月)|書誌 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["消費者物価指数の動向(東京", "部〔平成13年〕四月中旬速報値・全国 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京", "部及び周辺地域の居住者分布に関する地理学的研究--社会 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["特別区の今後のあり方を考える--", "双方の報告の意味するもの(特集 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京", "部災害時透析医療ネットワークから「災害時における ... - 全腎協"], "texts": ["ホーム > ニュース&トピックス > 東京", "部災害時透析医療ネットワークから「災害時\nにおける透析医療活動マニュアル」改訂版が発表されています。 全画面プリント; 本文\nプリント. 東京", "部災害時透析医療ネットワークから「災害時における透析医療活動\nマニュアル」改訂版が発表されています。 平成26年3月に東京", "部災害時透析医療\nネットワークが出している「災害時における透析医療活動マニュアル」の改訂版が発表\nされました。 「災害時における透析医療活動マニュアル」はこちらのサイトから\nダウンロードでき ..."]},
{"title": ["戦後", "制度の歴史的変遷 (概略 ) 調 和 - 特別区協議会"], "texts": ["戦後", "制度の歴史的変遷 (概略 ). 調. 和. 大都市地域内の各区の. 自主性・自律性の\n強化. 大都市(23 区)の地域の. 一体性・統一性の確保. 特別区は「基礎的な地方公共\n団体」となり、原則として「市」と同一の権能で発足. ・区長公選制. ・課税権(区税の創設). \n・条例制定権 etc.・. 特別区の性格を大都市の内部組織に変更(都を「基礎的な地方公共\n団体」とする。) 特別区に権限を大幅委譲. 特別区に「市並み」の自治権を付与. ただし「一\nつの試み」:区の法的性格は従前どおり. ・区長公選制の復活. ・都配属職員制度の ..."]},
{"title": ["のあり方や地方分権改革の動向等 | 板橋区 - 東京"], "texts": ["のあり方検討会.", "のあり方を根本的かつ発展的に検討するために、", "協議\n会に", "のあり方検討委員会が設置され、(1)", "の事務配分に関すること、(2)特別区\nの区域のあり方に関すること、(3)", "の税財政制度に関することを検討しています。\n詳細は、特別区長会のページ(別ウィンドウで開きます)をご覧ください。"]},
{"title": ["運営施設一覧(東京", "内)|株式会社セリオ"], "texts": ["セリオが東京都内で受託運営している活動室を紹介します。毎日の活動を通して礼儀や\nあいさつなどを学ぶとともに、毎日の学習習慣で考える力を育成します。"]},
{"title": ["ファイル:東京", "部-観光地図-1.jpg - Wikipedia"], "texts": ["このファイルはクリエイティブ・コモンズ 表示-継承 3.0 非移植ライセンスのもとに利用を\n許諾されています。 あなたは以下の条件に従う場合に限り、自由に. 共有 – 本作品を\n複製、頒布、展示、実演することができます。 再構成 – 二次的著作物を作成することが\nできます。 あなたの従うべき条件は以下の通りです。 表示 – あなたは原著作者または\n許諾者が指定した方法でこの作品のクレジットを表示しなければなりません (ただしその\n人たちが、あなたを、あるいは、あなたのこの作品の使用を、推薦していると示唆するよう\nな ..."]},
{"title": ["ファイル:東京", "部-観光地図-1.jpg - Wikipedia"], "texts": ["このファイルはクリエイティブ・コモンズ 表示-継承 3.0 非移植ライセンスのもとに利用を\n許諾されています。 あなたは以下の条件に従う場合に限り、自由に. 共有 – 本作品を\n複製、頒布、展示、実演することができます。 再構成 – 二次的著作物を作成することが\nできます。 あなたの従うべき条件は以下の通りです。 表示 – あなたは原著作者または\n許諾者が指定した方法でこの作品のクレジットを表示しなければなりません (ただしその\n人たちが、あなたを、あるいは、あなたのこの作品の使用を、推薦していると示唆するよう\nな ..."]},
{"title": ["Category:東京", "部の郵便局 - Wikipedia"], "texts": ["カテゴリ「東京", "部の郵便局」にあるページ. このカテゴリには 78 ページが含まれて\nおり、そのうち以下の 78 ページを表示しています。 あ. 赤坂郵便局 · 赤羽郵便局 · 浅草\n郵便局 · 麻布郵便局 · 足立郵便局 · 足立北郵便局 · 足立西郵便局 · 荒川郵便局. い. \n板橋郵便局 · 板橋北郵便局 · 板橋西郵便局. う. 上野郵便局 (東京都) · 牛込郵便局. え. \n江戸川郵便局 · 荏原郵便局. お. 王子郵便局 · 大泉郵便局 (東京都) · 大崎郵便局 · \n大森郵便局 (東京都) · 荻窪郵便局 · 落合郵便局 (東京都). か. 葛西郵便局 · 霞ヶ関\n郵便局 ..."]},
{"title": ["7301ガソリン1L当たりの小売価格(東京", "部) - 総務省統計局"], "texts": ["0. 20. 40. 60. 80. 100. 120. 140. 160. 180. 200. (円). 7301ガソリン1L当たりの小売\n価格(東京", "部). 第一次石油危機. 第二次石油危機. 原油価格の. 高騰. リ. ーマ. ン. \nシ. ョ. ッ. ク. 総務省統計局「小売物価統計調査」. ←. ↑. 最安値 1966年4~8月 50円. \n1982年9~12月 177円. ↓. 2018年3月142円. ↑. 1978年12月、1979年1月及び3月 \n111円、. 1979年2月 100円. ↑. 1999年5月 97円. 最高値 2008年8月 182円. ↓. \n平成元年."]},
{"title": ["東京", "市町村の公共施設等総合管理計画の策定状況 ... - 東京都総務局"], "texts": ["東京", "市町村の公共施設等総合管理計画の策定状況について. 地方公共団体\nにおいては、厳しい財政状況が続く中で、今後の人口減少等による公共施設等の利用\n需要の変化が予想されることを踏まえ、早急に公共施設等の全体の状況を把握し、長期\n的な視点をもって、更新・統廃合・長寿命化などを計画的に行うことにより、財政負担を\n軽減・平準化するとともに、公共施設等の最適な配置を実現することが必要となっており\n、公共施設等の総合的かつ計画的な管理を推進するための計画(公共施設等総合管理\n計画)の ..."]},
{"title": ["・", "の取組紹介|隅田川ルネサンス - 東京都建設局"], "texts": ["隅田川の賑わい創出にむけ、東京都と地元区(台東区・墨田区・中央区・江東区・荒川区\n)は様々なことに取り組んでいます。このページでは、都や地元区の取組を紹介します。"]},
{"title": ["東京", "部の住工混在地域における居住・生産環境の変容の考察(昭和 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京", "市町における主要死因の現状とその構造|書誌詳細|国立 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京", "部の都市計画道路の変遷と現在の取組み|書誌詳細|国立 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["東京", "部における都市型レジャー施設の立地--温浴施設の事例|書誌 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["「都の区」の制度廃止と「基礎自治体連合」の構想 | 特別区基礎講座 ..."], "texts": ["今回は課外授業として特別区制度調査会の報告(概要版)を読みながら、特別区の\nこれからの姿を探ってみよう。特別区制度調査会は特別区の自治に関する調査、研究を\n行うための検討組織で、平成12年の「制度改革後の特別区のあり方」について、特別\n区長会の依頼を受けて検討していたのは知っているね。 はい、博士。平成17年10月の\n第一次報告では", "制度の転換を提言しましたが、今回の報告はどういうものなんで\nすか? 平成19年12月の第二次報告は「『都の区』の制度廃止と『基礎自治体連合』の\n構想」 ..."]},
{"title": ["第3章", "・", "市町村及び防災機関の役割 - 東京都防災ホームページ"], "texts": ["1 東京都防災会議に関すること. 2 防災に係る組織及び施設に関すること. 3 災害情報\nの収集及び伝達に関すること. 4 自衛隊等への派遣要請に関すること. 5 政府機関、\n他府県、公共機関、駐留軍及び海外政府機関等に対する応援の要請に. 関すること. 6 \n警備、交通規制その他公共の安全と秩序の維持に関すること. 7 緊急輸送の確保\nに関すること. 8 被災者の救出及び避難誘導に関すること. 9 人命の救助及び救急\nに関すること. 10 消防及び水防に関すること. 11 医療、防疫及び保健衛生に関すること. \n12 応急給水 ..."]},
{"title": ["2015年基準 消費者物価指数 全国 平成29年(2017年)9月分、東京", "..."], "texts": ["2017年10月27日", "総務省は、2015年基準 消費者物価指数 全国 平成29年(2017年)9月分、東京", "部 \n平成29年(2017年)10月分(中旬速報値)の結果を公表しました。"]},
{"title": ["≪図解≫新幹線の『東京", "内』『東京山手線内』はどの駅まで? | king ..."], "texts": ["2018年2月22日", "こんにちは! 最近は用事で新幹線に乗ることが多く、乗車券として渡される切符に「東京", "内」と「東京山手線内」の2種類があります。 これは上越新幹線や東海道新幹線、\n北陸新幹線、東北新幹線など全ての新幹線に当てはまります。 東京", "内のきっぷ."]},
{"title": ["東京", "部北東部の交通不便の解消--新交通日暮里・舎人線建設工事 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["平成19年度", "財政調整|書誌詳細|国立国会図書館オンライン"], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["平成30年4月1日付 東京", "市町村立小学校 校長(統括校長)・校長 ..."], "texts": ["平成30年4月1日付 東京", "市町村立小学校 校長(統括校長)・校長 異動者一覧表. \n新. 任. 校. 職. 名. 氏. 名. 現. 任. 校. 職. 名. 備考. 港区立芝浦小学校. 校長(統括校長) \n三浦 和志. 港区立御田小学校. 校長. 大田区立田園調布小学校. 校長(統括校長) 茂呂 \n美恵子. 大田区立赤松小学校. 校長. 世田谷区立塚戸小学校. 校長(統括校長) 石田 \n孝士. 世田谷区立喜多見小学校. 校長. 杉並区立桃井第一小学校. 校長(統括校長) \n平田 英司. 人事部. 主任管理主事. 杉並区立桃井第五小学校. 校長(統括校長) 川田 \n忠."]},
{"title": ["東京", "- 現代俳句協会"], "texts": ["平成29年", "定時総会. 【 地区の紹介 】 東京", "現代俳句協会は、東京都23区に\n在住の現代俳句協会会員で構成されています。会員数は564名(平成30年1月31日\n現在)。 昭和58年11月23日発足、平成30年11月に創立35周年を迎えます。 また、\n平成8年にブロック制を採用し、各ブロックに事務局を設置しました。平成24年より4\nブロック制に再編成、現在それぞれのブロックで、吟行会、研修会等を開催し、研鑚と\n親睦を図っております。 【 行事 】 ※最近の活動記録は下記の会報のPDFをご覧下さい\n。各号巻頭言、 ..."]},
{"title": ["区市町村の産業政策として実施している施策・事業の例 - 東京都総務局"], "texts": ["下請中小企業の経営基盤はぜい弱で、経済情勢の変動等に伴う種々の影. 響を受け\nやすいため、弁護士や専門性の高い紛争解決専門員等を配置し、. 下請取引等を始めと\nする諸問題の解決に向けて取り組むとともに、適正な仕. 事の確保等により、都内の\n下請中小企業の自立化を図る。 ○下請企業取引対策. 取引情報の提供、裁判外紛争\n解決手続(ADR)を活用した取引改善指. 導、取引改善講習会の開催 等. ○下請企業等\nへの支援. 倒産防止対策、取引適正化に関する法制度の普及 等. 93. 海外販路開拓\n支援事. 業."]},
{"title": ["ファイル:東京", "部(地域別)人口の推移.png - Wikipedia"], "texts": ["ファイルの概要東京", "部(地域別)人口の推移.png. 東京", "部(地域別)人口の推移\n。都心3区(千代田区・中央区・港区)、副都心(新宿区・文京区・渋谷区・豊島区)、城東\n地域(台東区・墨田区・江東区・荒川区・足立区・葛飾区・江戸川区)、城南地域(品川区・\n目黒区・大田区)、城西地域(世田谷区・中野区・杉並区)、城北地域(北区・板橋区・\n練馬区)。いずれも国勢調査。地域区分は「東京の産業と雇用就業」での区分けと異なる\nので要注意(練馬区を城北地域に編入)。 出典. 東京都統計年鑑(平成18年)、2-3 地域\n別 ..."]},
{"title": ["「東京", "市町村別人口の予測」の概要|東京都"], "texts": ["報道発表資料 2017年03月30日 総務局. 「東京", "市町村別人口の予測」の概要. \nこの予測は、平成27年10月1日現在の国勢調査結果を基準人口とし、平成32年、37年\n、42年、47年及び52年における東京都の区市町村別人口を男女別にまとめたものです\n。 東京都の総人口のピークは平成37年の1398万人、区部のピークは平成42年の979\n万人; 都心3区の人口は平成52年まで増加、平成37年までに半数以上の区と全市町村\nがピークを迎える; 東京都の人口重心は、平成52年までの25年間に東へ706メートル\n移動 ..."]},
{"title": ["協議会及び特別区長との意見交換会を開催|東京都"], "texts": ["平成28年度第3回", "協議会及び特別区長との意見交換会を下記のとおり開催します\nので、お知らせいたします。"]},
{"title": ["23区内の建築確認等の窓口(建築基準法) | 東京都都市整備局"], "texts": ["東京都23区内の建築物の建築確認・許可申請等の所管. ・", "制度改革により、建築\n基準法施行令第149条が改正され、各区が行う建築確認・許可等の建築物の規模が、\n原則として延べ面積10,000 平方メートル 以下になりました。 ・ 延べ面積10,000 \n平方メートル を超える建築物については東京都都市整備局市街地建築部が相談窓口と\nなっています。 ・ なお、東京都が処理する建築確認・許可申請書等は、従来どおり各区\nで受付をしています。"]},
{"title": ["Category:東京", "部の橋 - Wikipedia"], "texts": ["カテゴリ「東京", "部の橋」にあるページ. このカテゴリには 58 ページが含まれており、\nそのうち以下の 58 ページを表示しています。 あ. 曙橋 · 曙橋 (神田川) · 飛鳥山下跨線\n人道橋 · 荒川橋梁 (埼京線) · 荒川橋梁 (東北新幹線) · 荒川橋梁 (東北本線). い. 池袋\n大橋 · 板橋 (石神井川). え. 恵比寿南橋. お. 大橋 (目黒川) · 尾竹橋 · お茶の水橋 · 面影\n橋 (東京都). か. ガス橋. け. 源水橋. こ. 後楽橋. さ. 笹目橋. し. 白鬚橋 · 白金桟道橋 · 新\n荒川大橋 · 新板橋 · 新神谷橋 · 新宿大ガード · 新多摩川大橋. す. 水神大橋 · 水道橋 (\n神田 ..."]},
{"title": ["Category:東京", "部の企業 - Wikipedia"], "texts": ["下位カテゴリ. このカテゴリには下位カテゴリ 24 件が含まれており、そのうち以下の24 \n件を表示しています。 あ. ▻ 足立区の企業 (48ページ). ▻ 荒川区の企業 (47ページ\n). い. ▻ 板橋区の企業 (80ページ). え. ▻ 江戸川区の企業 (33ページ). お. ▻ 大田\n区の企業 (1サブカテゴリ、136ページ). か. ▻ 葛飾区の企業 (1サブカテゴリ、49\nページ). き. ▻ 東京都北区の企業 (74ページ). こ. ▻ 江東区の企業 (2サブカテゴリ\n、234ページ). し. ▻ 品川区の企業 (5サブカテゴリ、461ページ). ▻ 渋谷区の企業 (\n15 ..."]},
{"title": ["Category:東京", "部の鉄道駅 - Wikipedia"], "texts": ["下位カテゴリ. このカテゴリには下位カテゴリ 23 件が含まれており、そのうち以下の23 \n件を表示しています。 あ. ▻ 足立区の鉄道駅 (26ページ). ▻ 荒川区の鉄道駅 (23\nページ). い. ▻ 板橋区の鉄道駅 (24ページ). え. ▻ 江戸川区の鉄道駅 (12ページ). \nお. ▻ 大田区の鉄道駅 (45ページ). か. ▻ 葛飾区の鉄道駅 (13ページ). き. ▻ 東京\n都北区の鉄道駅 (23ページ). こ. ▻ 江東区の鉄道駅 (31ページ). し. ▻ 品川区の\n鉄道駅 (33ページ). ▻ 渋谷区の鉄道駅 (22ページ). ▻ 新宿区の鉄道駅 (33\nページ). す."]},
{"title": ["消費者物価指数の動向--東京", "部(〔平成16年〕十一月中旬速報値 ..."], "texts": ["国立国会図書館検索・申込オンラインサービス(略称:国立国会図書館オンライン)は、\n国立国会図書館の所蔵資料及び国立国会図書館で利用可能なデジタルコンテンツを\n検索し、各種の申込みができるサービスです。"]},
{"title": ["公益財団法人 東京", "市町村振興協会:当協会について"], "texts": ["1 設立目的・事業活動. 当協会は、東京都内の62区市町村の振興と住民福祉の増進に\n資することを目的として、昭和54年4月1日に東京都知事の許可を得て設立された公益\n法人です。 事業活動は、市町村振興宝くじ(サマージャンボ宝くじ・ハロウィンジャンボ\n宝くじ(旧オータムジャンボ宝くじ))東京都交付金を財源としています。この交付金のうち\n、サマージャンボ宝くじ交付金は基金に積み立て、その基金を活用して、62区市町村が\n行う災害対策事業及び公共施設整備事業に対する資金貸付事業や、62区市町村の\n振興を ..."]},
{"title": ["平成22年国勢調査 東京", "市町村町丁別報告 - 東京都の統計"], "texts": ["平成22年国勢調査 東京", "市町村町丁別報告のページです。"]},
{"title": ["ELNEC-Jコアカリキュラム看護師教育プログラム(東京", "西部緩和 ..."], "texts": ["2017年11月21日", "慶應義塾大学病院の公式Webサイトです。我々は福澤諭吉の精神にもとづき、患者さん\nに優しく信頼され、先進的医療の開発、人間性と深い医療人の育成を実行してまいり\nます。このページでは弊社の「ELNEC-Jコアカリキュラム看護師教育プログラム(東京", "", "西部緩和ケア推進事業看護部会主催)を2/10(土)、2/11(日)に開催します ※申込を\n終了しました」について掲載しております。"]},
{"title": ["東京", "市町村の地方行政サービス改革の取組状況等 ... - 東京都総務局"], "texts": ["東京", "市町村の地方行政サービス改革の取組状況等について. 地方行政サービス\n改革については、平成27年8月に総務大臣通知「地方行政サービス改革の推進\nに関する留意事項について」が発出され、地方財政が依然として厳しい状況にある中で、\n効率的・効果的に行政サービスを提供する観点から、民間委託やクラウド化等の業務\n改革の推進に努めるよう、各地方公共団体に要請があったところです。 この度、都内区\n市町村における地方行政サービス改革の取組状況等について、各団体における取組\n状況や今後の ..."]},
{"title": ["財政調整制度|江東区 - 東京"], "texts": ["財政調整制度について概要を説明し、平成26年度決算における特別区交付金(\n財政調整交付金)」の金額等をお知らせします。"]},
{"title": ["JR東日本:Suica|在来線から新幹線にお乗り換えの際にSuicaで自動 ..."], "texts": ["東京(", "内)→仙台(市内)のきっぷ」. 大船駅ではSuicaで入場し、東京駅では新幹線\n自動改札機に新幹線のきっぷを投入してから、Suicaをタッチしてください。 大船駅では\nSuicaで入場し、東京駅では新幹線自動改札機に. 大船駅~蒲田駅(東京", "内の\n入口駅)間の運賃が、Suicaで自動精算されます。"]},
{"title": ["新幹線の「東京", "内」「山手線内」「市内」とは?|新幹線旅行研究所"], "texts": ["JRの新幹線や在来線などのきっぷやチケットに表示されている「東京", "内」「東京\n山手線内」「大阪市内」などの表示は何を意味するのでしょうか。その範囲や意味などを\n丁寧に説明します。世界一わかりやすい新幹線旅行の解説サイトです。"]},
{"title": ["東京都の区市町村章一覧 - Wikipedia"], "texts": ["東京都の区市町村章一覧(とうきょうとのくしちょうそんしょういちらん)は、東京都内の区\n市町村に制定されている、あるいは制定されていた市町村章の一覧である。なお、一覧\nの順序は全国地方公共団体コード順による。廃止された区市町村章は廃止日から順に\n掲載している。 目次. [非表示]. 1 特別区; 2 市部; 3 町村部. 3.1 多摩地方; 3.2 島嶼部. \n4 廃止された市町村章; 5 参考文献. 5.1 書籍; 5.2 都道府県書籍; 5.3 自治体冊子. 6 \n脚注; 7 関連項目. 特別区[編集]. 区, 区章, 由来, 制定日, 備考. 千代田区 · Emblem of ..."]},
{"title": ["別紙 平成29年度", "財政調整区別算定結果(当初算定)|東京都"], "texts": ["2017年8月7日", "平成29年度", "財政調整について、各特別区に対する交付額が決定しましたので、 \n下記のとおりお知らせします。"]},
{"title": ["平成30年度", "財政調整方針(案) - 東京都"], "texts": ["2018年1月26日", "3. 平成30年度", "財政調整方針(案). 平成30年度の", "財政調整については、\n下記により行うものとする。 記. 第一 基準財政収入額. 1 基準財政収入額は、各特別区\nの財政力を合理的に測定する趣旨を踏まえながら、. 過去の実績に基づく標準算定を\n行う。 2 算定に当たっては、社会経済及び税制改正の動向、国税の状況等を考慮し\nつつ、. 標準徴収率により算定する。 第二 基準財政需要額. 1 基準財政需要額は、特別\n区がひとしくその行うべき事務を遂行することができ. るよう、合理的かつ適正な ..."]},
{"title": ["区市町村行財政―東京都総務局行政部のページ | 地方公営企業の抜本 ..."], "texts": ["東京", "市町村の地方公営企業における抜本的な改革等の取組状況について. 地方\n公営企業の経営については、平成26年8月に総務省自治財政局公営企業課長等通知「\n公営企業の経営に当たっての留意事項について」が 発出され、また、平成29年6月の\n閣議決定「経済財政運営と改革の基本方針2017」においても、公営企業の抜本的な\n改革の検討を推進し、 進捗状況と効果をチェックすることとされています。 この度、都内\n区市町村の地方公営企業における抜本的な改革等の取組状況について、各団体\nにおける取組 ..."]},
{"title": ["2015年基準 消費者物価指数 全国 平成29年(2017年)4月分、東京", "..."], "texts": ["2017年5月26日", "総務省は、2015年基準 消費者物価指数 全国 平成29年(2017年)4月分、東京", "部 \n平成29年(2017年)5月分(中旬速報値)の結果を公表しました。"]},
{"title": ["統計局ホームページ/消費者物価指数(CPI) 東京", "部 平成29年度 ..."], "texts": ["2018年3月30日", "2015年基準 消費者物価指数 東京", "部 平成29年度(2017年度)平均(速報値) (\n2018年3月30日公表). ≪ポイント≫. (1) 総合指数は2015年(平成27年)を100として\n100.3 前年度比は0.5%の上昇 (2) 生鮮食品を除く総合指数は100.0 前年度比は0.4%\nの上昇 (3) 生鮮食品及びエネルギーを除く総合指数は100.6 前年度比は0.1%の上昇\n ..."]},
{"title": ["ファイル:東京", "部-観光地図-1.jpg - Wikipedia"], "texts": ["日付, 2010年12月2日. 原典. Source1:file: Ryogoku Great Sumo Hall.jpg; Source2:\nfile: Tokyo dome.JPG; Source3:file: Kokkaigijido.jpg; Source4:file: Nippon \nBudokan 2010.jpg; Source5:file: Yebisu Garden Place Tower.jpg; Source6:file: \n福澤諭吉像2.jpg; Source7:file: Kaminari mon.jpg. 作者. Source1: Steve Cadman; \nSource2: Carpkazu; Source3: っ; Source4: Wiiii; Source5: Occhanikov; Source6: \n塾生; Source7: oimax [1]; Derivative work: Dubianman ..."]},
{"title": ["平成28年度", "財政調整区別算定結果(当初算定)|東京都"], "texts": ["区名, 基準財政収入額, 基準財政需要額, 内訳, 普通交付金. 経常的経費, 投資的経費. \n千代田区, 24,206,939, 26,663,197, 22,104,753, 4,558,444, 2,456,258. 中央区, \n30,526,561, 42,324,243, 36,396,627, 5,927,616, 11,797,682. 港区, 72,265,796, \n56,793,147, 47,724,924, 9,068,223, 0", ". 新宿区, 50,183,787, 75,684,781, \n66,242,510, 9,442,271, 25,500,994. 文京区, 32,917,545, 48,244,581, 41,870,223, \n6,374,358, 15,327,036. 台東区, 23,566,977, 50,231,573, 43,440,699 ..."]},
{"title": ["平成30年度", "財政調整新規算定項目・改善項目等(PDF:161KB)"], "texts": ["2018年1月26日", "平成30年度", "財政調整 新規算定項目・改善項目等. 1.新規算定. 12項目. ○\n自治体中間サーバー・プラットフォーム運用経費負担金. ○防災市民組織育成費(防火\n防災訓練災害補償等掛金). ○被災者生活再建支援システム運用経費. ○安全安心\nまちづくり推進事業費(自動通話録音機貸与事業). ○小児慢性特定疾病児童日常生活\n用具給付事業費. ○定期利用保育補助事業費. ○待機児童解消緊急対策対応経費(\n認可外保育施設等保護者負担軽減事業費、保育従. 事職員宿舎借り上げ支援 ..."]},
{"title": ["秦", "とは - Weblio辞書"], "texts": ["秦", "とは? 秦", "(しんと-く)は中華人民共和国陝西省咸陽市に位置する市轄区。表\n・話・編・歴陝西省の行政区画副省級市西安市蓮湖区 | 新城区 | 碑林区 | 雁塔区 | 灞橋\n区 | 未央区 | 閻良区 | 臨潼区..."]},
{"title": ["お知らせ|東京都地区サッカー連盟|専門委員会 ... - 東京都サッカー協会"], "texts": ["2017年6月8日", "2017.06.08. 平成29年度 第70回東京都民体育大会サッカー競技. 【主催】(公財)東京\n都体育協会・東京都【主管】(公財)東京都サッカー協会【運営】東京都地区サッカー連盟\n【大会期間】2017年4月30日(日)~6/4(日) 【会場】駒沢第2球技場・補助競技場、\n大井第2球技場【参加】区市町34地区代表チーム【監督会議】2017年4月18日(火)\n19時~東京体育館第2会議室 都民大会旗 【大会速報】 6/4(日)3位決定戦・決勝が\n終了し大会が終了いたしました。 結果・日程表を更新しました。 優勝: 足立区 準優勝:\n三鷹 ..."]},
{"title": ["東京都の統計・分野から探す・分野別索引"], "texts": ["2018年3月16日", "資料・調査名等, 内容. 東京都統計年鑑 土地・気象, 都の代表的な総合統計書(毎年). \n東京の土地利用(土地利用現況調査), 【都市整備局】東京", "部、多摩・島しょ地域\n土地利用現況調査. 東京の土地(土地関係資料集), 【都市整備局】. 全国都道府県市区\n町村別面積調, 【国土交通省】 ..."]},
{"title": ["平成 22 年度", "財政調整協議まとまる - 特別区長会"], "texts": ["協議の特徴. 昨年の 12 月 2 日から始まった平成 22 年度", "財政調整協議は、本年 \n2 月 8 日の都. 区協議会において", "合意に至りました。 今年度の協議は、市町村民\n税法人分や特別区民税等の落ち込みにより、平成 21、22. 年度の両年にわたり、\nかつて経験したことのない大幅な税収減が見込まれる中で行わ. れました。 しかし、税制\n改正や事務配分の変更など、都区間の財源配分を見直すべき事由が生. じないことから\n、減収に対応した算定内容の見直しや起債の活用による財源補てん措. 置をどのように\n講じる ..."]},
{"title": ["ファイル:中央区(東京", ")", "内と周辺の鉄道路線図.png - Wikipedia"], "texts": ["ライセンス更新により、ライセンス更新基準を満たしているGFDLのみでライセンスされ\nていたものは、全てクリエイティブ・コモンズ 表示-継承ライセンスでも利用可能になり\nました。 このメッセージを見かけた場合、WP:LU#ライセンス更新に関する判定に\nしたがって、ライセンス更新基準を満たしているかどうかの判定を行なってください。 \nあなたがこのファイルの投稿者である場合、WP:LU#自分が投稿したファイルを\nライセンス更新に対応させるに従い、ライセンス更新に対応してください。 CC-BY-SA \nicon.svg · GNU ..."]},
{"title": ["第1回「", "のあり方検討委員会・幹事会」 会議録 - 東京都総務局"], "texts": ["第1回「", "のあり方検討委員会・幹事会」 会議録. ○ 日 時:平成19年1月31日(水)\n16:00∼16:30. ○ 会 場:都庁第一庁舎7階 中会議室. ○ 出 席 者:【検討委員会】. \n横山副知事、大塚副知事、関谷副知事、大原総務局長. 西野特別区長会会長(大田\n区長)、煙山同副会長(文京区長)、. 鎌形同事務局長. 【幹事会】. 大原総務局長(再掲)\n、前田行政部長、松崎行政改革推進部長、. 安藤主計部長、川澄自治制度改革推進\n担当部長、. 森", "制度改革担当部長、岸本参事<区政課長事務取扱>. 山﨑墨田\n区長、武井 ..."]},
{"title": ["東京", "部 平成29年 - 総務省"], "texts": ["2017年12月1日", "総務省は、2015年基準 消費者物価指数 全国 平成29年(2017年)10月分、東京", "部 平成29年(2017年)11月分(中旬速報値)の結果を公表しました。"]},
{"title": ["のあり方に関する検討の方向 - 特別区協議会"], "texts": ["のあり方検討の検討体制等. 検討組織. 副区長会. 企画・財政担当部長会.", "協議会. 区 長 会. 区長会に3つの専門部会を設置. 大都市制度部会. 税財政部会. 政策\n課題部会. ・・・事務配分の基準、区域等の基本的事項. (将来的な制度のあり方含む). \n・・・税財政制度関連事項. (財調算定見直し、将来的なあり方含む). ・・・事務配分\nに関する事項. (個別政策課題に関する事項含む). 情報. 意見. 情報. 意見. ≪検討委員\n会メンバー 9名≫. 区:区長会正副会長(3)、事務局長. 都:副知事(4)、総務局長. ≪\n幹事会 ..."]},
{"title": ["制度の改革 - 特別区協議会"], "texts": ["特別区は、平成 12 年 4 月 1 日に実施された地方自治法改正(以下「平成 12 年. 改革\n」という。)により、大都市制度である「", "制度」の基礎的な地方公共団体として. 歩み\n出した。一方、いわゆる「地方分権一括法」も同じく平成 12 年 4 月 1 日から実施さ. れ、\n国と地方及び都道府県と市区町村の関係を対等・協力の関係へ転換させる分権. 改革\nが行われた。その後、国、地方を通じた構造改革や地方自治制度のあり方をめぐ. る\n様々な改革や議論が加速している。 ○ こうした中で、特別区制度調査会(以下「調査会\n」という ..."]},
{"title": ["特別区長会 特別区制度の概要"], "texts": ["一方、東京23区の区域は、900万人近い人びとが暮し、1千万人を超える人びとが活動\nする巨大な大都市地域です。人口や産業が高度に集積するこの地域の行政は、全体\nとして滞りなく円滑に行われる必要があります。 このため、それぞれの特別区が身近な\n自治体として基本的な役割を担いつつ、広域自治体である東京都との役割分担のもとに\n、相互に連携して東京大都市地域の行政に責任を持つ特別な大都市制度が設けられ\nています。この仕組みを", "制度あるいは特別区制度と呼んでいます。 通常は市が行う\n上 ..."]},
{"title": ["事業案内 - 都政新報"], "texts": ["都政新報社は1950(昭和25)年1月に創立し、", "・", "市町村を対象にした自治体専門\n紙『都政新報』を発行しております。また、『", "市町村組織人事一覧』、", "の各種\n昇任試験関係参考書の刊行をはじめ、昇任試験対策講習会や各種PR・広告活動等を\n行っております。 □『都政新報』発行 小社の中心事業であります『都政新報』(週2回火・\n金曜日発行、ブランケット判6頁~12頁)は、創刊以来、現在まで一貫して", "政の\nオピニオンリーダーとしての強い信頼を得てまいりました。今日では、都議会を含めた", "・", "・ ..."]},
{"title": ["区市町村行財政 - 東京都総務局"], "texts": ["区市町村行財政. 特別区及び市町村の行財政に関する情報を提供します。 ○東京", "市町村の給与・定員等の状況について · ○東京都内市町村の給与制度に関する状況の\n公表について · ○東京", "市町村の集中改革プランの取組状況について · ○東京", "市町村の地方行政サービス改革の取組状況等について · ○東京", "市町村の地方\n公営企業における抜本的な改革等の取組状況について · ○東京", "市町村の公共\n施設等総合管理計画の策定状況について · ○東京", "市町村等の福利厚生事業の\n状況 ..."]},
{"title": ["参考資料1", "のあり方検討委員会設置要綱 - 東京都総務局"], "texts": ["検討事項). 第2 委員会の検討事項は、次のとおりとする。 (1)", "の事務配分\nに関すること. (2) 特別区の区域のあり方に関すること. (3)", "の税財政制度に関する\nこと. (4) 前各号のほか、", "のあり方に関して検討が必要な事項. (構. 成). 第3 委員\n会は、次に掲げる委員をもって構成する。 (都. 側) 副知事、総務局長. (特別区側) 特別\n区長会会長、特別区長会副会長、特別区長会事務局長. 2 委員会に、会長及び副会長\nを置く。 3 会長は、知事が指名する副知事をもって充て、副会長は、特別区長会会長."]},
{"title": ["平成30年度", "財政調整について(要旨)(報道発表 ... - 東京都総務局"], "texts": ["2018年1月26日", "平成30年度", "財政調整について(要旨). 平成30年度", "財政調整等について、\n下記のとおりお知らせします。 記. 1 平成30年度", "財政調整. (1) 概 要. 対前年度\n増減率. ① 調整税(当年度分). 1兆8,545億円 (6.1%). ② 交付金の総額(ア+イ). \n1兆 228億円 (7.3%). ア 当年度分(調整税の55%). 1兆 200億円. イ 精算分. 28\n億円. ③ 基準財政収入額A. 1兆1,315億円 (0.7%). ④ 基準財政需要額B. 2兆1,\n031億円 (3.7%). ア 経常的経費. 1兆8,773億円. イ 投資的経費."]},
{"title": ["空き家化・老朽化…", "内だけで約20万戸ある木造賃貸アパート。再生 ..."], "texts": ["2017年11月1日", "木造賃貸アパート、略して木賃アパート。主に東京、大阪といった大都市圏で見られる\n賃貸住宅である。第2次世界大戦後の高度成長期、1960年代頃から人口が増大した大\n都市で大量に建設され、地方から都会に出てきた若者をはじめ、さまざまな人の住まい\nとして機能してきた。取り壊されて高層ビルなどに姿を変えたものもあるが、今も東京23\n区内だけで約20万戸以上の木賃アパートが残っているという。そして、それらの多くが、\n老朽化や高齢化で住む人がいなくなり、空き家化しているという課題に ..."]},
{"title": ["大都市制度の考え方 ~大阪都構想と", "制度改革 - 東京大学公共政策 ..."], "texts": ["6、", "制度とは. 7、", "制度改革. 8、2000 年改革の経緯. 9、2000 年改革後の動き\n. 10、", "制度改革の問題点. 11、大阪都構想、大都市制度一般に向けて. 12、終わり\nに. 〔参考文献・資料〕. <本文>. 1、始めに. 近年、大阪を起点にして新たな地方自治\n制度、大都市制度の提案が反響を呼んでいる。大. 阪の地域政党である大阪維新の会\nが提唱する「大阪都構想」である。同構想は、大阪都市圏. に府と市の二層構造に代わる\n新たな行政枠組みを設け、大阪の抱える経済的停滞や行財政課. 題を解消する妙案 ..."]},
{"title": ["「スマートEX」とは|JR東海"], "texts": ["東京", "内」「大阪市内」といった所定の乗車券に適用される、いわゆる「特定", "市内\n制度」は適用されません。 新幹線乗車駅まで(降車駅から)在来線をご利用の場合は、\n別途在来線の運賃等が必要です。 このため、利用区間によっては、駅窓口等でお\n買い求めいただく所定のきっぷと比べて「スマートEXサービスと在来線の運賃等の合計\n額」の方が、高額になる場合があります。 自由席については、所定の運賃・自由席特急\n料金の合計額と同額です。 普通車指定席は、所定の指定席特急料金と同様に、通常期\n・閑散 ..."]},
{"title": ["e-Stat における東京", "部小売価格及び全国統一価格品目の価格の ..."], "texts": ["2018年1月26日", "... における月次の「東京", "部小売価格(第2表)」及び「全国統一価格品目の価格(第\n3表)」の調査年月は、これまで同時公表である「都. 市別小売価格(第1表)」に合わせ、\n実際の調査年月の「前月」を表示していました。 しかし、2018 年1月分以降は同時公表\nでなくなることから、2018 年1月分の都市別小売価格の公表(2018 年2月 23 日)の際\nに、「東京", "部. 小売価格(第2表)」及び「全国統一価格品目の価格(第3表)」の調査\n年月について、実際の調査年月を表示するよう変更します(下図参照)。 2018 年1月 26 \n日."]},
{"title": ["東京", "部0・8%上昇 3月、消費者物価指数 - SankeiBiz(サンケイビズ)"], "texts": ["2018年3月30日", "総務省が30日発表した3月の東京", "部の消費者物価指数(中旬速報値、生鮮食品を\n除く)は前年同月と比べて0・8%上昇の100・2だった。ガソリンなどエネルギー関連…"]},
{"title": ["区市町村行財政―東京都総務局行政部のページ | 東京都市町村の交付 ..."], "texts": ["特別区財政調整交付金について. 特別区財政調整交付金は、都と特別区間及び特別区\n相互間の財源配分の均衡化を図り、特別区の行政の自主的かつ計画的な運営を確保\nすることを目的として、都が課税・徴収する固定資産税、市町村民税法人分、特別土地\n保有税の収入額の一定割合を、各特別区に交付するものです。 交付金には、普通交付\n金と特別交付金の2種類があり、交付金の総額の95%が普通交付金、5%が特別交付\n金となります。普通交付金は、都が各特別区の基準財政需要額と基準財政収入額を\n算定 ..."]},
{"title": ["財政調整協議会幹事会設置要綱 - 東京都総務局"], "texts": ["第2 検討事項. 幹事会は、", "財政調整協議会の命を受けて、都と特別区及び特別区\n相互間の財政調整の制. 度及び運営の合理化に関する事項について具体的な検討を\n行う。 第3 構 成. 幹事会は、次に掲げる者をもって構成する。 1 東京都総務局行政部\n区政課長、財務局主計部財政課長、総務局行政部区政課課長代理(行政. 担当)、課長\n代理(", "財政調整担当)、課長代理(税務担当)及び課長代理(財政担当). 2 特別区\n財政担当課長会の幹事長、同副幹事長及び同幹事. 3 前各号のほか、幹事会が指名\nする者."]},
{"title": ["特別区長会", "財政調整関係資料"], "texts": ["地方自治法施行令等の一部改正に伴い、「都と特別区及び特別区相互間の財政調整\nに関する条例」の一部が改正されました。 1 条例の改正点. 別表のとおり. 2 条例の施行\n日. 一部を除き、平成32年4月1日. 項目, 改正内容, 説明. ①, 題目, 都と特別区及び\n特別区相互間の財政調整に関する条例 ↓ 都及び特別区並びに特別区相互間の財政\n調整に関する条例, 地方自治法の改正に伴い、題目中の「都と特別区及び」を「都及び\n特別区並びに」に改める。 ②,", "財政調整交付金の財源, 固定資産税、市町村民税法\n人分、 ..."]},
{"title": ["特別区長会", "協議会"], "texts": ["根拠・構成員.", "協議会関係法令抜粋 PDF (約65KB);", "協議会運営規程 PDF (\n約95KB);", "協議会委員名簿 PDF (約66KB). 平成29年度", "協議会開催状況. 第\n1回 (書面による会議) 平成29年8月7日決定. 議題. 第2回 平成30年2月1日決定. 議題 \n· 区長会会長発言要旨 PDF (約154KB). 平成28年度", "協議会開催状況. 第1回 (\n書面による会議) 平成28年5月16日決定. 議題. 第2回 (書面による会議) 平成28年8月\n5日決定. 議題. 第3回 平成29年2月2日決定. 議題 · 区長会会長発言要旨 PDF ..."]},
{"title": ["ファイル:千代田区(東京", ")", "内と周辺の鉄道路線図1967年.png ..."], "texts": ["千代田区(東京", ") -", "内と周辺の鉄道路線と路面電車の系統. 1967年の第一次都電\n撤去直前の情報を掲載しています。 この図に掲載されている路面電車の路線と系統は\nすべて、1967年から1972年にかけて段階的に廃止されました。(2007年現在、この\n範囲に路面電車は走行していません。) 2007年現在における鉄道路線は画像:千代田\n区(東京", ")", "内と周辺の鉄道路線図.pngを参照ください。 2007年3月3日作成. 「\nさざなみゴシック」を利用して作成しました。 画像作成者は提供者と同じです。"]},
{"title": ["たばこ依存度、", "部や北日本の市区が上位に :日本経済新聞"], "texts": ["2017年11月24日", "政府が2018年度税制改正で検討するたばこ増税は市区にとっても関心事だ。地方税収\nが市町村たばこ税に依存する度合いが高いほど増税は追い風になる。16年度の依存度\n1位は東京都千代田区で20%。昼間人口の."]},
{"title": ["東京", "部における焼却主灰のセメント資源化モデル - 東京都環境公社"], "texts": ["東京", "部における焼却主灰のセメント資源化モデル. 飯野成憲・荒井康裕*・稲員とよ\nの*・小泉 明*. (*首都大学東京大学院). ***********************************************\n***************************************************. 【要 約】東京 23 区における焼却主\n灰の最適なセメント資源化方法を検討するため、モデルを考案した。既存. セメント工場\nの焼却主灰受入余力は年間 28 万トンと推定された。既存セメント工場及び新設エコ\nセメント工場. のベストミックスによるコスト最小化モデルでは、近距離ではトラック、遠\n距離 ..."]},
{"title": ["内フリーきっぷ - JR東日本"], "texts": ["発売も 2013 年3月 31 日までとなります。 ※「", "内・りんかいフリーきっぷ」の有効\n期間は2日間となりますので、2013 年. 3月 31 日利用開始分のきっぷは、2013 年4月\n1日までご利用いただけます。 3 その他. JR時刻表の3月号にて発売終了の情報を\n掲載いたします。 以上. JR東日本では、東京近郊の各駅から東京", "内までの往復\n乗車券と東京", "内の. JR東日本線が乗り降り自由となるフリーエリアがセットになった\n「", "内フリーき. っぷ」「", "内・りんかいフリーきっぷ」を発売しておりますが、お客さま\nのご利用 ..."]},
{"title": ["新幹線の切符に表示される(東京", "内)の範囲はどこまで? | ビジネス ..."], "texts": ["特急あずさでも! 人気放送作家の鮫肌文殊氏と山名宏和氏が、知ってトクもしなけれ\nば、自慢もできない、だけど気になって眠れない、世にはびこる難問奇問を直撃解決!\nする…(1/3)"]},
{"title": ["市町村が実施するIT講習等 - 東京都総務局"], "texts": ["東京都の情報化を後押しする基幹システムの管理・運用を担う部署、総務局情報通信\n企画部が開設したページです。"]},
{"title": ["問い合わせ先一覧 都庁舎|東京都総務局"], "texts": ["調査課, ・都の組織・機構・職員の定数・再雇用制度及び臨時・非常勤職員制度, 5388-\n2391, S0000017. コンプライアンス推進部, ・コンプライアンスの推進 ・服務監察 ・職員\nの賠償責任調査, 5388-2400, S0036001. 行政部, 振興企画課, ・多摩島しょ地域、\n小笠原諸島の振興・区市町村の行財政に係る総合的な企画・調整・住民基本台帳法・\n行政書士法・公的個人認証, 5388-2413, S0000020. 区政課, ・特別区の行政・財政・\n特別区税・特別区の一部事務組合・", "行財政の調整・", "協議会・特別区の土地\n開発公社の ..."]},
{"title": ["東京", "市町村年報 - 東京都総務局"], "texts": ["イ 区市町村が出資している公社等. (7)関係機関. 5 住居表示実施状況. 6 平成27\n年度窓口事務処理状況. 7 地域団体数等. 8 橋りょうの整備状況. Ⅱ 財. 政. 1 特別区. \n(1)特別区財政. ア 平成27年度普通会計決算状況調. (ⅰ)収支状況. (ⅱ)歳入内訳. (\nⅲ)目的別歳出内訳. (ⅳ)性質別歳出内訳. イ 平成27年度収益事業決算調. (2)特別\n区税. ア 平成27年度特別区税徴収実績調. イ 平成28年度特別区税の税率等. (3)", "", "財政調整. ア 平成28年度", "財政調整決定方針. イ 平成28年度", "財政調整(前\n年度 ..."]},
{"title": ["3701灯油18L当たりの小売価格(東京", "部) - 総務省統計局"], "texts": ["3701灯油18L当たりの小売価格(東京", "部). 第一次石油危機. 第二次石油危機. \n原油価格の. 高騰. 配達. 店頭売り. 1957年12月 559円. ↓. 1982年11月 1,882円. ↓. \n2018年3月1,677円. ↑. 最安値 1969年5月 343円. 総務省統計局「小売物価統計調査\n」. 最高値 2008年8月 2,468円. ↓. ←. ↑. 1989年3月 782円. →. 2008年11月. 銘柄\n改正 1,780円. 2008年10月 2,291円. ←. (改正前). 配達. (改正後). 店頭売り. 平成元\n年. リ. ーマ. ン. シ. ョ. ッ. ク."]},
{"title": ["ファイル:港区(東京", ")", "内と周辺の鉄道駅別乗車人数.png - Wikipedia"], "texts": ["ライセンス更新により、ライセンス更新基準を満たしているGFDLのみでライセンスされ\nていたものは、全てクリエイティブ・コモンズ 表示-継承ライセンスでも利用可能になり\nました。 このメッセージを見かけた場合、WP:LU#ライセンス更新に関する判定に\nしたがって、ライセンス更新基準を満たしているかどうかの判定を行なってください。 \nあなたがこのファイルの投稿者である場合、WP:LU#自分が投稿したファイルを\nライセンス更新に対応させるに従い、ライセンス更新に対応してください。 CC-BY-SA \nicon.svg. GNU ..."]},
{"title": ["特別区制度研究会 | 特別区協議会"], "texts": ["表紙、はしがき、目次、裏表紙(PDF246KB) · 第1分科会研究報告(PDF2.57MB). 大\n都市制度の変革が与える特別区への影響 ○東京23区における高齢者介護の課題と\n今後の可能性. 第2分科会研究報告(PDF1.74MB). 特別区の財政調整 ○四半世紀後\n(2040年)の特別区の財政調整. 第3分科会研究報告(PDF3.27MB). 特別区の連携・\n連合 ○自治体間連携による災害時の支援・受援体制の構築. 第4分科会研究報告(\nPDF2.34MB).", "制度における", "の役割分担 ○地域防災力のさらなる向上と", "の役割 ..."]},
{"title": ["東京", "部0・9%上昇 2月の消費者物価 8カ月連続プラス - 産経ニュース"], "texts": ["2018年3月2日", "総務省が2日発表した2月の東京", "部の消費者物価指数(中旬速報値、生鮮食品を\n除く)は、前年同月と比べて0・9%上昇の100・1だった。原油高でガソリンなどエネル…"]},
{"title": ["東京", "部の下水道施設における臭気対策の現状 - J-Stage"], "texts": ["下水道施設は都市活動における重要な役割を担っているが,事業特性から臭気の発生\nが避けられない.このため,臭気対策の基本である発生の抑止とともに,下水処理施設\nでは臭気発生を前提とした把握,抑止,捕集,脱臭の4段階の対応が必要である.東京", "部においては,排水設備ではビルピット,下水道管では管清掃,ポンプ所と水再生\nセンターでは臭気捕集と脱臭設備を中心に,各段階の特性に応じた臭気対策を実施して\nいる.また,自主的な臭気測定を行うとともに,新しい脱臭技術の開発も手がけている."]},
{"title": ["基礎自治体連合構想と", "制度の現状・課題 - 特別区長会"], "texts": ["現行の", "制度は、東京大都市地域における身近な自治と行政の一体性を共. に確保\nする観点から、複数の基礎的な地方公共団体(特別区)と広域の地方. 公共団体(東京\n都)の特別な役割分担により対応する大都市制度である。 ○", "制度は、長年にわたる\n特別区の自治権拡充の取組みを経て今日の姿に至. ったものであり、平成12年に施行\nされた現行制度は、都と特別区が合意を. 得て国に法改正を求め、実現したものである。 \n○都と特別区は、様々な課題に直面し、厳しい協議を重ねつつも、自主的に解."]},
{"title": ["東京", "部における性・年齢階級別の孤独死数"], "texts": ["0. 100. 200. 300. 400. 500. 600. 1. 5. 歳. 未. 満. 1. 5. ~. 1. 9. 歳. 2. 0. ~. 2. 4. 歳. \n2. 5. ~. 2. 9. 歳. 3. 0. ~. 3. 4. 歳. 3. 5. ~. 3. 9. 歳. 4. 0. ~. 4. 4. 歳. 4. 5. ~. 4. 9. \n歳. 5. 0. ~. 5. 4. 歳. 5. 5. ~. 5. 9. 歳. 6. 0. ~. 6. 4. 歳. 6. 5. ~. 6. 9. 歳. 7. 0. ~. 7\n. 4. 歳. 7. 5. ~. 7. 9. 歳. 8. 0. ~. 8. 4. 歳. 8. 5. 歳. 以. 上. 死. 亡. 数. 年齢階級. 東京", "部における性・年齢階級別の孤独死数. 男性孤独死. 女性孤独死."]},
{"title": ["東京", "市町村等の福利厚生事業の状況について - 東京都総務局"], "texts": ["東京", "市町村等の福利厚生事業の状況について. 地方公共団体は、地方公務員法\n第42条に基づき、福利厚生事業を行っています。 また、「地方公共団体における行政\n改革の推進のための新たな指針 」(平成17年3月29日 総務事務次官通知)において、\n「職員に対する福利厚生事業については、住民の理解が得られるものとなるよう点検・\n見直しを行い、適正に事業を実施すること。」及び「人事行政運営等の状況の公表の\n一環として福利厚生事業の実施状況等を公表すること。」とされています。 さらに「地方\n公共団体が ..."]},
{"title": ["2.特別区における国民健康保険事業 東京都福祉保健局"], "texts": ["特別区における国民健康保険事業. 特別区での国保事業の開始. 国民皆保険の達成に\nは、大都市の実施が鍵と言われていました。 東京都特別区では、新国民健康保険法の\n施行に伴い、実施時期の目標を昭和34年10月1日として、都や特別区において準備が\n進められました。 国民健康保険事業の実施は、個々の市町村及び特別区が行うことと\nされていましたが、当時の特別区は、その成立の沿革、地理的、経済的関連の緊密性、\n住民感情等から一体性が極めて強く、特別区相互間の行政事務にも内容の統一が\n要求 ..."]},
{"title": ["東京", "部におけるムクドリの集団ねぐらと周辺土地利用の関係 Spatial ..."], "texts": ["東京", "部におけるムクドリの集団ねぐらと周辺土地利用の関係. Spatial analysis on \nthe distribution of communal roosts of gray starlings (Sturnus cineraceus) and \nsurrounding land uses in the Tokyo 23 special wards. 山内彩加*・土屋一彬**・大黒\n俊哉*. Ayaka Yamauchi*・Kazuaki Tsuchiya**・Toshiya Okuro*. Gray starlings (\nSturnus cineraceus) often roost communally in the built-up area, and the clouds \nof gray starlings often cause excessive noise and other problems."]},
{"title": ["東京都健康安全研究センター » 精度管理"], "texts": ["東京都・特別区衛生検査機関における精度管理調査.", "協定に基づき「", "精度\n管理調査」を実施しています。 当センターの担当研究科を中心に、精度管理試料の調製\n・配付・結果の解析を行い、参加機関への講評を行っています。", "精度管理調査の\nページへ ..."]},
{"title": ["特別区長会 東京区政会館 アクセスマップ"], "texts": ["会長就任挨拶 活動状況 · 特別区全国連携プロジェクト · 被災地への特別区の対応 · \n要望活動 · 共同事業 (「みどり東京・温暖化防止プロジェクト」サイトへのリンク); 特別区\nの国民健康保険制度 ·", "協議会 ·", "のあり方検討委員会 · 東京の自治のあり方\n研究会 · 税源偏在是正議論についての特別区の主張 · 東京富裕論への反論 · 都市\n計画交付金についての特別区の主張 · その他の活動 ..."]},
{"title": ["特別区長会 23区長の紹介"], "texts": ["会長就任挨拶 活動状況 · 特別区全国連携プロジェクト · 被災地への特別区の対応 · \n要望活動 · 共同事業 (「みどり東京・温暖化防止プロジェクト」サイトへのリンク); 特別区\nの国民健康保険制度 ·", "協議会 ·", "のあり方検討委員会 · 東京の自治のあり方\n研究会 · 税源偏在是正議論についての特別区の主張 · 東京富裕論への反論 · 都市\n計画交付金についての特別区の主張 · その他の活動 ..."]},
{"title": ["・", "市町村の相談窓口 | 東京都国際交流委員会"], "texts": ["外国人のための生活ガイド「リビング・インフォメーション」"]},
{"title": ["「東京の土地利用 平成23年東京", "部」の作成|東京都"], "texts": ["東京都は、このたび、平成23年度に東京都の23区を対象に実施した土地利用現況調査\nの結果の概要を「東京の土地利用 平成23年東京", "部」として取りまとめましたので、\nお知らせします。"]},
{"title": ["TOMAS CUP 第31回東京", "部ミニバスケットボール大会(2015年11月 ..."], "texts": ["TOMAS CUP 第31回東京", "部ミニバスケットボール大会(2015年11月29日)の写真\n販売・イベント情報ならオールスポーツコミュニティ。プロが撮影したTOMAS CUP 第31\n回東京", "部ミニバスケットボール大会の高品質な写真を販売中!あなたの写真が\nきっとある。"]},
{"title": ["2015年基準 消費者物価指数 全国 平成29年(2017年)1月分、東京", "..."], "texts": ["総務省は、2015年基準 消費者物価指数 全国 平成29年(2017年)1月分、東京", "部 \n平成29年(2017年)2月分(中旬速報値)の結果を公表しました。"]},
{"title": ["一般財団法人 東京都弘済会|事業一覧"], "texts": ["3.", "退職者互助事業. 健康増進旅行(", "退職者):", "退職者及び", "職員等の\n健康増進と相互交流を図るため、宿泊及び日帰りの旅行会を実施しています。詳細は\nこちら. 福利厚生事業(", "退職者): 都や区を退職された方々の福利増進を目的とした\n活動に対する支援及び情報提供等を行っています。詳細はこちら ..."]},
{"title": ["平成27年度", "財政調整 新規算定項目・改善項目等|東京都"], "texts": ["新規算定 7項目. ○帰宅困難者対策用食料等の備蓄(一時滞在施設) ○法務管理費○\n中等度難聴児発達支援事業費○医薬費(薬局開設許可等) ○【投資】まちづくり事業費\n(ホーム柵等整備促進事業) ○通学路防犯カメラ整備費○都民体育大会選手派遣費. 2\n.算定改善等 35項目. <算定充実> 10項目. ○防災行政無線システム維持管理費, \n○安全安心まちづくり推進事業費. ○職員健康管理費, ○地域生活支援事業費. ○\n子育てひろば事業費, ○母子歯科健康診査費. ○食品衛生費, ○交通災害 ..."]},
{"title": ["平成30年度", "財 政 調 整 ( フレーム対比 ) (案)"], "texts": ["2018年1月26日", "固. 定. 資. 産. 税. 1,230,907. 1,180,919. 49,988. 4.2. 市 町 村 民 税 法 人 分. \n623,550. 566,245. 57,305. 10.1. 特. 別. 土. 地. 保. 有. 税. 10. 10. 0. 0.0. 1,854,467. \n1,747,174. 107,293. 6.1. -. -. 1,019,957. 960,946. 59,011. 6.1. 2,820 △. 8,152. \n10,972. -. A. 1,022,777. 952,794. 69,983. 7.3. 普 通 交 付 金 分. A × 95%. \n971,638. 905,154. 66,484. 7.3. 特 別 交 付 金 分. A × 5%. 51,139. 47,640. 3,499. \n7.3. B. 1,131,526. 1,123,188. 8,338. 0.7. 特. 別. 区. 民. 税. 843,500. 806,875."]},
{"title": ["File:東京", "部-観光地図-1.jpg - Wikimedia Commons"], "texts": ["2018年2月17日", "Date/Time, Thumbnail, Dimensions, User, Comment. current, 01:14, 4 September \n2016 · Thumbnail for version as of 01:14, 4 September 2016, 1,200 × 1,210 (324 \nKB), Unknown chemist8103 (talk | contribs), 池袋のサンシャイン、原宿の竹下通り、\n渋谷など、観光地の追加. 23:07, 1 December 2010 · Thumbnail for version as of 23\n:07, 1 December 2010, 1,200 × 1,210 (430 KB), Dubianman (talk | contribs), {{\nInformation |Description={{ja|1=東京", "部の観光地図です。"]},
{"title": ["ファイル:千代田区(東京", ")", "内と周辺の鉄道路線図.png - Wikipedia"], "texts": ["ライセンス更新により、ライセンス更新基準を満たしているGFDLのみでライセンスされ\nていたものは、全てクリエイティブ・コモンズ 表示-継承ライセンスでも利用可能になり\nました。 このメッセージを見かけた場合、WP:LU#ライセンス更新に関する判定に\nしたがって、ライセンス更新基準を満たしているかどうかの判定を行なってください。 \nあなたがこのファイルの投稿者である場合、WP:LU#自分が投稿したファイルを\nライセンス更新に対応させるに従い、ライセンス更新に対応してください。 CC-BY-SA \nicon.svg. GNU ..."]},
{"title": ["ファイル:港区(東京", ")", "内と周辺の鉄道路線図.png - Wikipedia"], "texts": ["この記事内にあるすべての画像は、ベクターイメージである SVG ファイルとして再作成\nされるべきです。これにはいくつかの利点があります。詳しくはWikipedia:SVGへの\n乗り換えを参照してください。この画像の SVG 形式がすでに利用可能である場合は、\nアップロードしてください。アップロード後、この画像にあるこのテンプレートを{{SVG版\n利用可能|新しい画像ファイル名.svg}}テンプレートと置き換えてください。"]},
{"title": ["東京", "市町村年報 - 東京都総務局"], "texts": ["197. 荒川河口部. 1.12 (注)2. 中央防波堤埋立地. 6.78 (注)3. (注)1 面積は、国土交通\n省国土地理院の「平成27年全国都道府県市区町村別面積調(平成27年10月. 1日現在\n)」による。 千代田区、中央区、港区、葛飾区及び江戸川区については、境界の一部が\n未定のため、参考値. (便宜上の概算数値)を示している。 (注)2 境界未定のため、単独\nで面積を示している。 (注)3 所属未定のため、単独で面積を示している。 資料: 平成28\n年1月 「住民基本台帳による東京都の世帯と人口」(総務局). 区市町村名. 郵便番号. 所\n."]},
{"title": ["平成29年度", "財政調整について(要旨)(報道発表 ... - 東京都総務局"], "texts": ["平成29年度", "財政調整について(要旨). 平成29年度", "財政調整等について、\n下記のとおりお知らせします。 記. 1 平成29年度", "財政調整. (1) 概 要. 対前年度\n増減率. ① 調整税(当年度分). 1兆7,472億円 (△1.2%). ② 交付金の総額(ア+イ\n). 9,528億円 (△2.3%). ア 当年度分(調整税の55%). 9,609億円. イ 精算分. △\n81億円. ③ 基準財政収入額A. 1兆1,232億円 (△1.7%). ④ 基準財政需要額B. 2\n兆 284億円 (△2.0%). ア 経常的経費. 1兆8,081億円. イ 投資的経費."]},
{"title": ["国勢調査 東京", "市町村町丁別報告 平成22年 第1表 - 東京都の統計"], "texts": ["平成22年国勢調査 東京", "市町村別報告 第1表のページです。"]},
{"title": ["住民基本台帳による東京都の世帯と人口トップページ - 東京都の統計"], "texts": ["2018年3月22日", "第1表 区市町村別世帯数(昭和60年~平成30年) Excel97 49KB. 第2表 区市町村別\n男女別人口(昭和60年~平成30年) Excel97 98KB. 第3表 男女別人口及び地域別\n人口(日本人)(昭和32年~平成30年) Excel97 28KB. 第4表 地域別年少人口(日本\n人)(昭和32年~平成30年) Excel97 31KB. 第5表 地域別生産年齢人口(日本人)(\n昭和32年~平成30年) Excel97 29KB. 第6表 地域別老年人口(日本人)(昭和32年~\n平成30年) Excel97 31KB. 第7表 年齢3区分別人口の推移(日本人)( ..."]},
{"title": ["平成27年度第3回", "協議会を開催|東京都"], "texts": ["平成27年度第3回", "協議会を下記のとおり開催しますので、お知らせいたします。"]},
{"title": ["平成28年度", "財政調整(フレーム対比)(案)|東京都"], "texts": ["区分, 平成28年度当初見込ア, 平成27年度当初見込イ, 差引増減ウ=ア-イ, 増減率エ\n=ウ÷イ. 交付金の総額, 調整税, 固定資産税, 1,168,746, 1,146,628, 22,118, 1.9. \n市町村民税法人分, 600,458, 611,816, -11,358, -1.9. 特別土地保有税, 10, 10, 0, 0.0\n. 計, 1,769,214, 1,758,454, 10,760, 0.6. 条例で定める割合, 55%, 55%, -, -. 当\n年度分, 973,068, 967,149, 5,919, 0.6. 精算分, 2,503, 7,108, -4,605, -. 計 A, \n975,571, 974,257, 1,314, 0.1. 内訳, 普通交付金分 A×95%, 926,792, 925,544, \n1,248, 0.1."]},
{"title": ["別紙 平成29年度", "財政調整 (前年度当初算定対比)|東京都"], "texts": ["2017年8月7日", "平成29年度", "財政調整について、各特別区に対する交付額が決定しましたので、 \n下記のとおりお知らせします。"]},
{"title": ["区市町村行財政―東京都総務局行政部のページ | 都市町村協議会"], "texts": ["東京都及び都内市町村における事務事業執行上の関連事項について協議・調整し、\nその解決促進を図る。 2 開催状況. □ 平成29年度第1回都市町村協議会 (平成29年\n11月24日(金曜日)17:00~18:00). 報道発表資料 〔PDF〕 · 次第 〔PDF〕 · 席次 〔PDF\n〕 · 委員名簿 〔PDF〕 · 国の不合理な措置に対する東京都の主張 ―地方消費税の清算\n基準の見直しに向けた反論― 〔PDF〕 · 議案書 〔PDF〕 · 平成30年度東京都予算編成に\nかかる重点要望事項(東京都市長会) 〔PDF〕 · 平成30年度東京都予算編成に対する\n重点 ..."]},
{"title": ["公益財団法人東京", "市町村振興協会資金貸付細則"], "texts": ["趣旨). 第1条 この細則は、公益財団法人東京", "市町村振興協会基金積立運用規程\n(以下「規程」. という。)第4条の規定に基づき、公益財団法人東京", "市町村振興協会\n(以下「この法. 人」という。)が、規程第2条に定める基金を持って区市町村等に対して\n資金を貸し付け. る場合の貸付の条件、手続きその他必要事項を定めるものとする。 (\n貸付の種類). 第2条 資金の貸付は、長期貸付及び短期貸付とする。 2 長期貸付は、\n貸付対象事業に係る地方債の資金として区市町村等に対する貸付で、一会. 計年度を\n超える ..."]},
{"title": ["港区公式ホームページ/", "計画法第53条の許可申請手続き ... - 東京"], "texts": ["計画法第53条の許可申請手続きについて知りたい。 質問.", "計画法第53条の\n許可申請手続きについて知りたい。 回答. 都市計画として計画決定された都市施設には\n、道路、公園、緑地等があります。その計画区域内では、事業認可されるまでの間\nについても、事業の施行に大きな支障を及ばさないように建築行為を制限しています。 \n建築物を建築する場合は、都市計画法第53条の規定に基づく許可が必要になります。\n詳しくは担当窓口までお問い合わせください。 届出窓口. 街づくり支援部建築課 ..."]},
{"title": ["都内区市町村議会リンク | 東京都議会"], "texts": ["都内区市町村議会リンク. 東京23区議会. 千代田区議会 · 中央区議会 · 港区議会 · \n新宿区議会 · 文京区議会 · 台東区議会 · 墨田区議会 · 江東区議会 · 品川区議会 · 目黒\n区議会 · 大田区議会 · 世田谷区議会 · 渋谷区議会 · 中野区議会 · 杉並区議会 · 豊島区\n議会 · 北区議会 · 荒川区議会 · 板橋区議会 · 練馬区議会 · 足立区議会 · 葛飾区議会 · \n江戸川区議会 ..."]},
{"title": ["東京", "西部緩和ケア推進事業 | 総合相談・支援センター | 東京医科 ..."], "texts": ["この度、緩和ケア推進事業(区西部)の平成26年度モデル事業最終年度の成果物\nとして緩和ケアのための資源マップを作成いたしました。 退院支援や多職種連携等の\n患者支援に活用いただくことを目的とし、緩和ケアに関する医療資源の情報収集と共有\n化を図るために、看護師部会と介護・福祉部会が共同で編集にあたりました。 東京", "西部緩和ケア推進事業 看護師部会、介護・福祉部会 ..."]},
{"title": ["国勢調査 東京", "市町村町丁別報告 平成22年 第2表 - 東京都の統計"], "texts": ["平成22年国勢調査 東京", "市町村別報告 第2表のページです。"]},
{"title": ["東京都監察医務院で取り扱った自宅住居で亡くなった単身世帯の者の ..."], "texts": ["東京", "部における性・死後経過日数別の孤独死数構成割合. 東京", "部における性・\n死後経過日数別の孤独死数構成. ファイルダウンロード 新規ウインドウで開きます。 \n世帯分類別異状死統計_自宅死亡_平成27年性死後経過日数別(グラフ)(PDF:\n183KB). ※このページでは、PDFによる情報提供を行っております。PDFファイルによる\n入手が困難な場合は、監察医務院事務室庶務担当へお問い合わせください。 PDF形式\nのファイルを開くには、Adobe Acrobat Reader DC(旧Adobe Reader)が必要です。"]},
{"title": ["公益財団法人 東京", "市町村振興協会:事業内容"], "texts": ["当協会は、東京都内の区市町村の健全な発展を図るために、市町村振興宝くじ(サマー\nジャンボ宝くじ・ハロウィンジャンボ宝くじ)の収益金を活用し、区市町村の財政支援の\nための貸付事業等、区市町村を支援する事業を行なっています。"]},
{"title": ["総務省|「消費者物価指数 東京", "部 平成28年度平均(速報値)」が ..."], "texts": ["消費者物価指数 東京", "部 平成28年度平均(速報値)」が公表時刻前に閲覧可能な\n状態となっていたことについて. 本日3月31日(金)午前8時30分公表の「消費者物価\n指数 東京", "部 平成28年度平均(速報値)」の数値が、政府統計の総合窓口(e-Stat)\nにおいて、公表時刻前に閲覧可能な状態となっていました。 今後、再発防止の徹底を\n図ります。 <原因> e-Statへのデータ登録作業における、公開される日時の設定の誤り\nによるもの <再発防止策> ・データ登録作業時における、複数職員による ..."]},
{"title": ["平成26年度", "財政調整算定結果(要旨)|東京都"], "texts": ["平成26年度", "財政調整について、各特別区に対する交付額が決定しましたので、\nお知らせします。"]},
{"title": ["区市町村・国の補助金等情報 :東京都地球温暖化防止活動推進センター"], "texts": ["区市町村・国の補助金等情報. 東京都の区市町村や国の温暖化防止にかかわる補助\n金・助成金の紹介を行うリンク集です. 下記ボタンよりお進みください。 詳細は、各連絡先\nにお問い合わせください。 東京都の気候変動対策(地球温暖化対策)はこちら(外部\nサイト)>> ..."]},
{"title": ["助成金交付申請書 東京", "市町村における燃料電池自動車の導入促進 ..."], "texts": ["東京都環境公社理事長 殿. ㊞. 1 助成対象事業の目的及び内容. 2 助成対象自動車の\n初度登録日. 年. 月. 日. 3 交付申請額. 金. 円. 4 区市町村の連絡先. (備考)用紙は\n日本工業規格A列4番とする。 助成金交付申請書. 担当部署. (申請者). 区市町村長名. \nフ リ ガ ナ. 東京", "市町村における燃料電池自動車の導入促進事業助成金交付要綱\n(平成27年6月12日付27都. 環公総総第77号)第7条第1項の規定に基づき、助成金の\n交付について関係書類を添えて、次のと. おり申請します。 水素エネルギーが活用され\nた ..."]},
{"title": ["財政調整制度と特別区交付金について:目黒区公式 ... - 東京"], "texts": ["2018年4月6日", "", "財政調整制度とは、都と区の間の財源配分を行う制度です。一般の市町村では、\n固定資産税、市町村民税法人分及び特別土地保有税の三税は市町村税としてその\n自治体に納めるものですが、特別区は例外として東京都が賦課・徴収しています。特別\n区においては、大都市地域の行政に一体性・統一性を確保するという観点から、本来は\n市町村が行う事務の一部(例:消防・下水道等)を東京都が行っており、この財源として、\n市町村税である固定資産税、市町村民税法人分及び特別土地保有税の三 ..."]},
{"title": ["東京", "内|中古あげます・譲ります|ジモティーで不用品の処分"], "texts": ["【ジモティー】全国の東京", "内の検索結果一覧です。東京", "内の情報を全国の全て\nのカテゴリから探せます。中古あげます・譲りますのネットのフリマ、ジモティー。\nジモティーでは、東京", "内をはじめ様々な商品で無料や激安格安販売の情報を多数\n掲載しており、最安値のお得な商品を見つけることができます。単品だけでなくセット\n用品の..."]},
{"title": ["東京23区(東京", "部)の家事代行・家政婦【CaSy(カジー ... - casy.co.jp"], "texts": ["東京23区(東京", "部)の家事代行・家政婦。家事代行、家政婦は業界最安水準の\nCaSy(カジー)。掃除代行、料理代行の家事代行サービスをご用意しています。1時間\n2190円で東京都・神奈川県・千葉県・埼玉県・大阪府・兵庫県の家事代行依頼に対応\n可能です。"]},
{"title": ["大阪都構想の欠陥 東京23区の現実 - 太陽のまちから - Asahi Shimbun ..."], "texts": ["東京都知事選挙も後半にさしかかった、2月3日。日本維新の会の橋下徹・大阪市長は\n市長を辞職して、出直し市長選挙に立候補することを突然、表明しました。橋下市長が\n掲げる「大阪都構想」が市議会で維新の会以外."]},
{"title": ["区市町村行財政―東京都総務局行政部のページ | 区市町村行財政"], "texts": ["区市町村別の性質別歳出(人件費、扶助費、公債費など)の内訳をご覧になれます。 ○ \n目的別歳出内訳 区市町村別の目的別歳出(総務費、民生費、衛生費など)の内訳を\nご覧になれます。 ○ 健全化判断比率等の概要(報道発表資料) 27年度健全化判断\n比率等の概要(確報値)をご覧になれます。 ○ 健全化判断比率 27年度決算に基づく\n健全化判断比率をご覧になれます。 ○ 財務書類 新地方公会計制度に基づく財務書類\nを公表した市区町村ホームページリンク集を掲載しています。 ○ 平成27年度特別区\n決算状況( ..."]}
] |
{
"author": "AtVAxm7v",
"id": "r47PhI5m",
"title": "ПІСНЯ",
"link": "metrs_poem.php?poem=7443",
"html": "\n<h4></h4>\n\n<a href=\"/metrs.php?id=95&type=tvorch\" class=\"redhr1\">Творчість</a> |\n<a href=\"/metrs.php?id=95&type=biogr\" class=\"redhr1\">Біографія</a> |\n<a href=\"/metrs.php?id=95&type=critiques\" class=\"redhr1\">Критика</a>\n\n<h4>ПІСНЯ</h4>\n<!--<div style=\"float:right;margin-left: 10px\">\n\t<script async src=\"//pagead2.googlesyndication.com/pagead/js/adsbygoogle.js\"></script>\n\n\t<ins class=\"adsbygoogle\"\n\t\t style=\"display:inline-block;width:250px;height:400px\"\n\t\t data-ad-client=\"ca-pub-5357335372099528\"\n\t\t data-ad-slot=\"7581761695\"></ins>\n\t<script>\n\t(adsbygoogle = window.adsbygoogle || []).push({});\n\t</script>\n</div>-->\n\nПослухате мою пісню,<br>\nЯ вам заспіваю<br>\nПро гарну дівчиноньку,<br>\nЯкую я знаю;<br>\nРусявая, круглолиця,<br>\nОчищі чорненькі,<br>\nМоторная, як на диво,<br>\nРотичок маленький;<br>\nЯк квіточка, хорошая,<br>\nЯк тополька, статна<br>\nІ, як лебідь, білесенька,<br>\nЗовсім уся знатна;<br>\nГубоньки - як би намисто,<br>\nЩо добрим зоветься;<br>\nСонечко неначе зійде,<br>\nВона як сміється.<br>\nА як пісні заспіває,<br>\nСолов'я не треба:<br>\nСлухаєш, не знаєш, де це,<br>\nНеначе хто з неба.<br>\nБачать усі, бачу і я,<br>\nТа ба, не вертаться<br>\nЛітам моїм молоденьким,<br>\nЩоб поженихаться...<br>\nОй, не хочу співать більше,<br>\nБоліть серце буде!<br>\nВоно й так свого нещастя<br>\nПовік не забуде...\n\n\n<br><br>\n"
} |
{"is_answered": true, "view_count": 54, "tags": ["python", "python-3.x", "pandas", "dataframe"], "last_activity_date": 1474052097, "answer_count": 1, "creation_date": 1471460290, "score": 2, "link": "http://stackoverflow.com/questions/39004336/chaining-filters-for-a-series", "accepted_answer_id": 39004359, "owner": {"user_id": 336527, "profile_image": "https://www.gravatar.com/avatar/4a57f523157ebdf6e5a9662d2e8754b9?s=128&d=identicon&r=PG", "user_type": "registered", "reputation": 10382, "link": "http://stackoverflow.com/users/336527/max", "accept_rate": 90, "display_name": "max"}, "title": "Chaining filters for a Series", "last_edit_date": 1474052097, "question_id": 39004336} |
{"poster":"xXSonicbreakerXx","date":"2015-10-09T16:50:39.715+0000","title":"Jedes Spiel Farmbots in 3vs3","subforum":"Spielerverhalten & Moderation","up_votes":1,"down_votes":2,"body":"Bei jedem Spiel was ich im 3vs3 starte, habe ich 2-4 Farmbots im Spiel.\r\nEs gewinnt derjenige, der weniger Bots im eigenen Team hat.\r\nIch habe das Gefühl, diese Bot-Welle schwämmt mehr unechte Spieler herein als Flüchtlinge nach Deutschland.\r\nWas kann ich dagegen tun, nur noch 5vs5 spielen?","replies":[{"poster":"Ender Chest","date":"2015-10-09T17:11:13.113+0000","up_votes":2,"down_votes":1,"body":"Dieser Vergleich musste nun wirklich nicht sein..\nReporten.. Mehr kannst du nicht dagegen tun. Spiel Team3v3 Ranked. Dort findest du weniger Bots, oder such dir zwei weitere Spieler für 3v3.","replies":[]}]} |
{"poster":"Two Bans Later","date":"2017-11-03T10:10:17.723+0000","title":"League of Legends and it's community is SOFT","subforum":"Player Behavior","up_votes":4,"down_votes":21,"body":"This whole, "I'm reporting you, you swore at me.", is fucking pathetic. I received ONE report and got banned 15 days. Only reason I ever get triggered is trolls. They troll, then I get mad at them because I'm stuck in a game for another 30 fucking minutes with a troll and a loss. YET I get reported. Like WTF?! "oh be the bigger man and carry and win." why should I have to get him a win. Trolls don't every get punished, unless they are toxic via communication. \r\n\r\nIt is unbelievable that people are so soft, they report you after you say something anything remotely rude. Riot(League of Legends) and its Tribunal is pathetic. Oh and pings, dear lord. Trolls ping the shit out of you, driving you nuts with endless pings and no consequences.","replies":[{"poster":"Magical Player","date":"2017-11-03T10:12:41.027+0000","up_votes":4,"down_votes":2,"body":"1 report= 15 day ban you would of had to be high on the punishment list already\nor \nbroke a zero tolerance rule\n\n\nRiot gave you options to removing ping/chat/emotes","replies":[{"poster":"Two Bans Later","date":"2017-11-03T10:13:46.212+0000","up_votes":2,"down_votes":4,"body":"was a new account.\n\nand where is this option.","replies":[{"poster":"Magical Player","date":"2017-11-03T10:16:27.156+0000","up_votes":4,"down_votes":1,"body":"Hold tab when in game, next to everyones scores are three little buttons\n1 is for chat\n2 is for ping\n3 is for emotes\nclick it to show the symbol crossed out and it mutes them for that activity\nall three will full mute them in the game\n\nNew account, obtained 2 week ban? logs? Im confused how it happened","replies":[{"poster":"TaunkaTruck","date":"2017-11-03T10:19:10.589+0000","up_votes":4,"down_votes":0,"body":"> [{quoted}](name=Magical Player,realm=NA,application-id=ZGEFLEUQ,discussion-id=wigJEir5,comment-id=000000000000,timestamp=2017-11-03T10:16:27.156+0000)\n>\n> Hold tab when in game, next to everyones scores are three little buttons\n> 1 is for chat\n> 2 is for ping\n> 3 is for emotes\n> click it to show the symbol crossed out and it mutes them for that activity\n> all three will full mute them in the game\n\nI seriously didn't know that for some reason. Emote and ping spammers make me want to put my head through my monitor. Kudos to you.","replies":[{"poster":"Magical Player","date":"2017-11-03T10:20:32.104+0000","up_votes":2,"down_votes":0,"body":"> [{quoted}](name=TaunkaTruck,realm=NA,application-id=ZGEFLEUQ,discussion-id=wigJEir5,comment-id=0000000000000000,timestamp=2017-11-03T10:19:10.589+0000)\n>\n> I seriously didn't know that for some reason. Emote and ping spammers make me want to put my head through my monitor. Kudos to you.\n\nCorrect me if I'm wrong, I hope im not spreading misinformation, I havent logged in to check, just going off my last time seeing it","replies":[]},{"poster":"Two Bans Later","date":"2017-11-03T10:21:28.369+0000","up_votes":2,"down_votes":1,"body":"I agree, and there is nothing to do to stop them. Unless that works.","replies":[]}]},{"poster":"Two Bans Later","date":"2017-11-03T10:20:58.289+0000","up_votes":2,"down_votes":2,"body":"> [{quoted}](name=Magical Player,realm=NA,application-id=ZGEFLEUQ,discussion-id=wigJEir5,comment-id=000000000000,timestamp=2017-11-03T10:16:27.156+0000)\n>\n> Hold tab when in game, next to everyones scores are three little buttons\n> 1 is for chat\n> 2 is for ping\n> 3 is for emotes\n> click it to show the symbol crossed out and it mutes them for that activity\n> all three will full mute them in the game\n> \n> New account, obtained 2 week ban? logs? Im confused how it happened\n\nyeah tell me about it, was only level 14... also those options must be in a recent update.","replies":[{"poster":"Scuttle","date":"2017-11-03T13:05:31.724+0000","up_votes":2,"down_votes":1,"body":"They've been around for like 5 months.","replies":[]}]}]}]}]},{"poster":"Modi","date":"2017-11-03T23:27:07.501+0000","up_votes":2,"down_votes":0,"body":"If you wish to have the community's opinion, post your *uneditied* chat logs.","replies":[{"poster":"Two Bans Later","date":"2017-11-04T17:02:33.004+0000","up_votes":1,"down_votes":0,"body":"I would love to, how may I do so. \n\nAlso, not an excuse but chat logs do not show how the person I am \"harassing\" is acting. It will not show how they are trolling or mass spamming me.","replies":[]}]},{"poster":"Sarutobi","date":"2017-11-03T11:19:52.771+0000","up_votes":3,"down_votes":1,"body":"I hope you know that \"I'm reporting you, you swore at me\" isnt a reportable offense. Swearing is fine. It when you use it as a tool for harassment when it becomes a problem. But that should be common sense. You wouldnt curse out a random person say at the store/market place for no reason right? These people you are playing with are random people. If they are making mistakes in the game, what makes you the right to tell them off? If anything they should be around the same skill level as that is what matchmaking is suppose to do!\n\nAll in all though we cant make legit discussion since you are choosing not to show us your chatlogs which proves you have something to hide!","replies":[]},{"poster":"Mindspeaker","date":"2017-11-03T23:46:08.005+0000","up_votes":2,"down_votes":1,"body":"Hmm \"soft \"\n\nor a \n\n negative verbally abusive uncivilized person with emotional and anger management who rages at people in a video game.\n\nHey i have no problem with \"soft \" if I have to choose","replies":[]},{"poster":"EvilDustMan","date":"2017-11-03T10:45:40.549+0000","up_votes":2,"down_votes":1,"body":"Chat logs.","replies":[]},{"poster":"Fermi Paradox","date":"2017-11-03T10:19:50.052+0000","up_votes":2,"down_votes":1,"body":"You may have used some of those words that get you instantly banned. That includes any hate speech and the infamous three words asking you to kill yourself. Well, if you used any of those to a simple troll you definitely deserved that punishment.","replies":[{"poster":"Two Bans Later","date":"2017-11-03T10:23:07.680+0000","up_votes":3,"down_votes":4,"body":"I never troll. Just curse when trolled. That is why this community is so ass. You get trolled then swear at the troll, and you get punished. It baffles me.","replies":[]}]},{"poster":"Xurreal","date":"2017-11-05T01:00:03.904+0000","up_votes":1,"down_votes":0,"body":"When it comes to their game, you play by their rules, sir.","replies":[]},{"poster":"Brotha","date":"2017-11-03T19:05:28.684+0000","up_votes":1,"down_votes":0,"body":"Learn to accept you will not win every game. You cannot hard carry every game. Every game begins with a 50/50 chance of victory or loss. Everything you do after leaving base influences your chances of winning, including typing.","replies":[{"poster":"Two Bans Later","date":"2017-11-04T17:01:01.172+0000","up_votes":1,"down_votes":0,"body":"I fully understand not winning every game. That is not what I am bitching about. I am bitching about the trolls you get in your queue, or the immature kids who run it down mid. Then I cuss at them for wasting my time because I come to have fun. Then I AM the bad guy in the situation. When there is not trolls and people actually playing the game its very enjoyable, win or lose.","replies":[]}]},{"poster":"General Esdeath ","date":"2017-11-04T06:14:10.946+0000","up_votes":1,"down_votes":0,"body":"chat logs?","replies":[]},{"poster":"Tenth Leper","date":"2017-11-03T23:38:27.219+0000","up_votes":1,"down_votes":0,"body":"In such an environment it would seem to be best to say only those things which are not rude, sir.","replies":[]}]} |
{"poster":"LemønPykë","date":"2016-03-03T19:29:02.082+0000","title":"Aurelion Sol: El Falsificador de Estrellas Retorna","subforum":"Charlas Generales","embed":{"description":"\"Cower. Worship. Marvel. All appropriate responses, really.\"","url":"https://youtu.be/CAAnY_L4Pp4","image":"https://i.ytimg.com/vi/CAAnY_L4Pp4/hqdefault.jpg"},"up_votes":4,"down_votes":1,"body":"ES EL AJDKSKFLDLSNGJZSJNDMSKZNSA","replies":[{"poster":"Riot Cóndor","date":"2016-03-03T19:29:43.137+0000","up_votes":25,"down_votes":0,"body":"Falsificador op","replies":[{"poster":"Jota312","date":"2016-03-03T19:42:20.881+0000","up_votes":4,"down_votes":0,"body":"Aurelion sol puede usar la onda vital ?","replies":[]},{"poster":"LemønPykë","date":"2016-03-03T19:42:49.014+0000","up_votes":3,"down_votes":2,"body":"Sorry vad inglish","replies":[]},{"poster":"Arrat","date":"2016-03-03T19:43:07.189+0000","up_votes":2,"down_votes":3,"body":"> [{quoted}](name=Riot Cóndor,realm=LAS,application-id=v7qsfXsE,discussion-id=bgXMgkGz,comment-id=0000,timestamp=2016-03-03T19:29:43.137+0000)\n>\n> Falsificador op\n\nMejora Visual a Pant? plssss","replies":[{"poster":"CG Taric Macho","date":"2016-03-03T21:38:07.826+0000","up_votes":1,"down_votes":0,"body":"Siii pro favor!!","replies":[]},{"poster":"CG Taric Macho","date":"2016-03-03T21:36:56.118+0000","up_votes":1,"down_votes":0,"body":"Si por favor!!!!!!!","replies":[]}]},{"poster":"CG Taric Macho","date":"2016-03-03T21:37:45.623+0000","up_votes":1,"down_votes":0,"body":"A quien le van a dar amor con una skin definitiva este año?? xD","replies":[]},{"poster":"lPikachu","date":"2016-03-03T21:17:23.977+0000","up_votes":1,"down_votes":0,"body":"skin confirmed? XDDD","replies":[]}]},{"poster":"Natchin","date":"2016-03-03T19:31:48.129+0000","up_votes":5,"down_votes":0,"body":"DAT GOOGLE TRANSLATOR","replies":[{"poster":"LemønPykë","date":"2016-03-03T19:43:53.204+0000","up_votes":1,"down_votes":0,"body":"Okay :(","replies":[{"poster":"Jack310","date":"2016-03-03T20:03:36.209+0000","up_votes":1,"down_votes":0,"body":"creo que quisiste decir forjador y no falsificador {{champion:33}}","replies":[]}]}]},{"poster":"lPikachu","date":"2016-03-03T20:47:03.906+0000","up_votes":3,"down_votes":0,"body":"El Forjador* de de estrellas","replies":[{"poster":"Lemon Roots ","date":"2016-03-03T21:05:46.326+0000","up_votes":1,"down_votes":0,"body":"> [{quoted}](name=lPikachu,realm=LAS,application-id=v7qsfXsE,discussion-id=bgXMgkGz,comment-id=0007,timestamp=2016-03-03T20:47:03.906+0000)\n>\n> El Forjador* de de estrellas\n\nForger, es Falfisificador en ingles en el google translator xD\nsi queres avirgualo por ti mismo, no se si es un error traduccion de Riot o del google translator, pero Forger solamente, quiere decir Falsificador xD","replies":[{"poster":"lPikachu","date":"2016-03-03T21:14:16.497+0000","up_votes":1,"down_votes":0,"body":"si, es falsificador segun el traductor XDDD google pls","replies":[]}]}]},{"poster":"ECO DE BO LUDEN","date":"2016-03-04T07:47:04.535+0000","up_votes":1,"down_votes":0,"body":"¿Falsificador de estrellas?, ¿este es el representante de Maxi Lopes? {{sticker:slayer-jinx-wink}}","replies":[]},{"poster":"AINpro523","date":"2016-03-04T07:25:19.192+0000","up_votes":1,"down_votes":0,"body":"parece el dragon del señor de los anillos y ya confirmaron q es un nuevo champ o la nueva vercion de ao shin","replies":[]},{"poster":"Agatha Christie","date":"2016-03-04T01:54:40.870+0000","up_votes":1,"down_votes":0,"body":"Esa voz y ese dragón es muy Smaug ....","replies":[]},{"poster":"Arcoiris de Amor","date":"2016-03-03T21:18:12.442+0000","up_votes":1,"down_votes":0,"body":"mid o supp?","replies":[{"poster":"MariniZro","date":"2016-03-03T22:34:18.621+0000","up_votes":1,"down_votes":0,"body":"Mid","replies":[]},{"poster":"Eco G oxz","date":"2016-03-03T22:33:59.427+0000","up_votes":1,"down_votes":0,"body":"mid, ya se habia anunciado anteriormente que el proximo campeon iba a ser un mid mago","replies":[]}]},{"poster":"Winner74gui","date":"2016-03-03T21:08:51.013+0000","up_votes":1,"down_votes":0,"body":"Y la gente se queja de que el juego no representa el tamaño del lore de Malph, ahora tenemos un dragón espacial que revienta estrellas con la palma de la mano. Malph es una montaña, este bicho es una galaxia. Creo que entiendo por que no existen mas los invocadores.","replies":[]},{"poster":"Koijhy","date":"2016-03-03T20:56:22.976+0000","up_votes":1,"down_votes":0,"body":"que buena broma para april fools se están mandando, muy elaborada","replies":[]},{"poster":"Aıejandro","date":"2016-03-03T20:20:36.603+0000","up_votes":1,"down_votes":0,"body":"Ohh que hermoso la concha de la loraaa","replies":[]},{"poster":"Jack310","date":"2016-03-03T19:55:50.027+0000","up_votes":1,"down_votes":0,"body":"acabo de ver la versión en latino {{champion:33}}","replies":[]},{"poster":"RyuJakka","date":"2016-03-03T19:35:18.027+0000","up_votes":1,"down_votes":1,"body":"SI RITO dice falso es re falso \n{{sticker:slayer-jinx-wink}}\n\nmantenimiento OP de 250 fps a 40 fps ","replies":[{"poster":"LemønPykë","date":"2016-03-03T19:43:26.217+0000","up_votes":1,"down_votes":0,"body":"Lo publico riot :V","replies":[]}]},{"poster":"KarmaUnder","date":"2016-03-03T19:34:50.605+0000","up_votes":1,"down_votes":0,"body":"...","replies":[]},{"poster":"LemønPykë","date":"2016-03-03T20:11:30.415+0000","up_votes":1,"down_votes":1,"body":"> [{quoted}](name=GMING96,realm=LAS,application-id=v7qsfXsE,discussion-id=bgXMgkGz,comment-id=,timestamp=2016-03-03T19:29:02.082+0000)\n>\n> ES EL AJDKSKFLDLSNGJZSJNDMSKZNSA\n\nSI use el traductor, no me caguen a negativos no mas :(","replies":[]}]} |
{"pmid":32406749,"title":"Oncology clinical trials in the time of COVID-19: how a pandemic can revolutionize patients' care.","text":["Oncology clinical trials in the time of COVID-19: how a pandemic can revolutionize patients' care.","Future Oncol","Massari, Francesco","Mollica, Veronica","Salvagni, Stefania","Tognetto, Michele","Ardizzoni, Andrea","32406749"],"journal":"Future Oncol","authors":["Massari, Francesco","Mollica, Veronica","Salvagni, Stefania","Tognetto, Michele","Ardizzoni, Andrea"],"date":"2020-05-15T11:00:00Z","year":2020,"_id":"32406749","source":"PubMed","week":"202020|May 11 - May 17","doi":"10.2217/fon-2020-0364","keywords":["covid-19","clinical trials","coronavirus","oncology","patient benefit","treatment decisions"],"topics":["Prevention"],"weight":1,"_version_":1666802845316284417,"score":9.490897,"similar":[{"pmid":32484908,"title":"Oncology Treatment in the Era of COVID-19: We Cannot Afford to Hit the Pause Button.","text":["Oncology Treatment in the Era of COVID-19: We Cannot Afford to Hit the Pause Button.","The COVID-19 pandemic has far-reaching ramifications for patients undergoing cancer treatment. Oncologists and institutions have adjusted treatment practices and, in many cases, significantly curtailed clinical trial conduct. Whether these adjustments mitigate the risk of COVID-19 complications without jeopardizing treatment of the cancer is unknown. Given the expected duration of the pandemic, it is imperative that treatment of the patient's cancer remain the priority and that advances in drug development continue through appropriately designed clinical trials.","Clin Pharmacol Ther","Holstein, Sarah A","Vose, Julie M","32484908"],"abstract":["The COVID-19 pandemic has far-reaching ramifications for patients undergoing cancer treatment. Oncologists and institutions have adjusted treatment practices and, in many cases, significantly curtailed clinical trial conduct. Whether these adjustments mitigate the risk of COVID-19 complications without jeopardizing treatment of the cancer is unknown. Given the expected duration of the pandemic, it is imperative that treatment of the patient's cancer remain the priority and that advances in drug development continue through appropriately designed clinical trials."],"journal":"Clin Pharmacol Ther","authors":["Holstein, Sarah A","Vose, Julie M"],"date":"2020-06-03T11:00:00Z","year":2020,"_id":"32484908","source":"PubMed","week":"202023|Jun 01 - Jun 07","doi":"10.1002/cpt.1920","keywords":["covid-19","clinical trials","oncology","translational medicine"],"topics":["Prevention"],"weight":1,"_version_":1668704334432436224,"score":87.628204},{"pmid":32389524,"title":"How technology can help in oncologic patient management during COVID-19 outbreak.","text":["How technology can help in oncologic patient management during COVID-19 outbreak.","Eur J Surg Oncol","Mercantini, Paolo","Lucarini, Alessio","Mazzuca, Federica","Osti, Mattia Falchetto","Laghi, Andrea","32389524"],"journal":"Eur J Surg Oncol","authors":["Mercantini, Paolo","Lucarini, Alessio","Mazzuca, Federica","Osti, Mattia Falchetto","Laghi, Andrea"],"date":"2020-05-12T11:00:00Z","year":2020,"_id":"32389524","source":"PubMed","week":"202020|May 11 - May 17","doi":"10.1016/j.ejso.2020.04.050","keywords":["covid-19","gastrointestinal cancer","multidisciplinary team","oncology"],"topics":["Prevention"],"weight":1,"_version_":1666528580032528384,"score":72.77307},{"pmid":32437032,"title":"Care in the time of coronavirus: Ethical considerations in head and neck oncology.","text":["Care in the time of coronavirus: Ethical considerations in head and neck oncology.","As COVID-19 continues to challenge the practice of head and neck oncology, clinicians are forced to make new decisions in the setting of the pandemic that impact the safety of their patients, their institutions, and themselves. The difficulty inherent in these decisions is compounded by potentially serious ramifications to the welfare of patients and health-care staff, amid a scarcity of data on which to base informed choices. This paper explores the risks of COVID-19 incurred while striving to uphold the standard of care in head and neck oncology. The ethical problems are assessed from the perspective of the patient with cancer, health-care provider, and other patients within the health-care system. While no single management algorithm for head and neck cancer can be universally implemented, a detailed examination of these issues is necessary to formulate ethically sound treatment strategies.","Head Neck","Gordin, Eli A","Day, Andrew","Stankova, Lenka","Heitman, Elizabeth","Sadler, John","32437032"],"abstract":["As COVID-19 continues to challenge the practice of head and neck oncology, clinicians are forced to make new decisions in the setting of the pandemic that impact the safety of their patients, their institutions, and themselves. The difficulty inherent in these decisions is compounded by potentially serious ramifications to the welfare of patients and health-care staff, amid a scarcity of data on which to base informed choices. This paper explores the risks of COVID-19 incurred while striving to uphold the standard of care in head and neck oncology. The ethical problems are assessed from the perspective of the patient with cancer, health-care provider, and other patients within the health-care system. While no single management algorithm for head and neck cancer can be universally implemented, a detailed examination of these issues is necessary to formulate ethically sound treatment strategies."],"journal":"Head Neck","authors":["Gordin, Eli A","Day, Andrew","Stankova, Lenka","Heitman, Elizabeth","Sadler, John"],"date":"2020-05-22T11:00:00Z","year":2020,"_id":"32437032","source":"PubMed","week":"202021|May 18 - May 24","doi":"10.1002/hed.26272","keywords":["covid-19","cancer","ethics","head and neck","oncology"],"weight":0,"_version_":1667521393588174848,"score":68.44273},{"pmid":32427410,"title":"Head and neck oncologic surgery in the COVID-19 pandemic: Our experience in a deep south tertiary care center.","text":["Head and neck oncologic surgery in the COVID-19 pandemic: Our experience in a deep south tertiary care center.","INTRODUCTION: The ongoing worldwide pandemic due to COVID-19 has forced drastic changes on the daily lives of the global population. This is most notable within the health care sector. The current paper outlines the response of the head and neck oncologic surgery (HNS) division within our academic otolaryngology department in the state of Alabama. METHODS: Data with regard to case numbers and types were obtained during the pandemic and compared with time matched data. Our overall approach to managing previously scheduled and new cases, personal protective equipment (PPE) utilization, outpatient clinic, and resident involvement is summarized. DISCUSSION: Our HNS division saw a 55% reduction in surgical volume during the peak of the COVID-19 pandemic. We feel that an early and cohesive strategy to triaging surgical cases, PPE usage, and minimizing exposure of personnel is essential to providing care for HNS patients during this pandemic.","Head Neck","Morrison, Daniel R","Gentile, Christopher","McCammon, Susan","Buczek, Erin","32427410"],"abstract":["INTRODUCTION: The ongoing worldwide pandemic due to COVID-19 has forced drastic changes on the daily lives of the global population. This is most notable within the health care sector. The current paper outlines the response of the head and neck oncologic surgery (HNS) division within our academic otolaryngology department in the state of Alabama. METHODS: Data with regard to case numbers and types were obtained during the pandemic and compared with time matched data. Our overall approach to managing previously scheduled and new cases, personal protective equipment (PPE) utilization, outpatient clinic, and resident involvement is summarized. DISCUSSION: Our HNS division saw a 55% reduction in surgical volume during the peak of the COVID-19 pandemic. We feel that an early and cohesive strategy to triaging surgical cases, PPE usage, and minimizing exposure of personnel is essential to providing care for HNS patients during this pandemic."],"journal":"Head Neck","authors":["Morrison, Daniel R","Gentile, Christopher","McCammon, Susan","Buczek, Erin"],"date":"2020-05-20T11:00:00Z","year":2020,"_id":"32427410","source":"PubMed","week":"202021|May 18 - May 24","doi":"10.1002/hed.26262","keywords":["covid-19","coronavirus","head and neck","oncology","otolaryngology"],"locations":["Alabama"],"countries":["United States"],"countries_codes":["USA|United States"],"topics":["Prevention"],"weight":1,"_version_":1667252837679104002,"score":66.444565},{"pmid":32342541,"title":"Head and neck surgical oncology in the time of a pandemic: Subsite-specific triage guidelines during the COVID-19 pandemic.","text":["Head and neck surgical oncology in the time of a pandemic: Subsite-specific triage guidelines during the COVID-19 pandemic.","BACKGROUND: COVID-19 pandemic has strained human and material resources around the world. Practices in surgical oncology had to change in response to these resource limitations, triaging based on acuity, expected oncologic outcomes, availability of supportive resources, and safety of healthcare personnel. METHODS: The MD Anderson Head and Neck Surgery Treatment Guidelines Consortium devised the following to provide guidance on triaging Head and Neck cancer (HNC) surgeries based on multidisciplinary consensus. HNC subsites considered included aerodigestive tract mucosa, sinonasal, salivary, endocrine, cutaneous, and ocular. RECOMMENDATIONS: Each subsite is presented separately with disease-specific recommendations. Options for alternative treatment modalities are provided if surgical treatment needs to be deferred. CONCLUSION: These guidelines are intended to help clinicians caring for HNC patients appropriately allocate resources during a healthcare crisis, such as the COVID-19 pandemic. We continue to advocate for individual consideration of cases in a multidisciplinary fashion based on individual patient circumstances and resource availability.","Head Neck","Head, Anderson","Maniakas, Anastasios","Jozaghi, Yelda","Zafereo, Mark E","Sturgis, Erich M","Su, Shirley Y","Gillenwater, Ann M","Gidley, Paul W","Lewis, Carol M","Diaz, Eduardo Jr","Goepfert, Ryan P","Kupferman, Michael E","Gross, Neil D","Hessel, Amy C","Pytynia, Kristen B","Nader, Marc-Elie","Wang, Jennifer R","Lango, Miriam N","Kiong, Kimberley L","Guo, Theresa","Zhao, Xiao","Yao, Christopher M K L","Appelbaum, Eric","Alpard, Jennifer","Garcia, Jose A","Terry, Shawn","Flynn, Jill E","Bauer, Sarah","Fournier, Danielle","Burgess, Courtlyn G","Wideman, Cayla","Johnston, Matthew","You, Chenxi","De Luna, Rolando","Joseph, Liza","Diersing, Julia","Prescott, Kaitlin","Heiberger, Katherine","Mugartegui, Lilian","Rodriguez, Jessica","Zendehdel, Sara","Sellers, Justin","Friddell, Rebekah A","Thomas, Ajay","Khanjae, Sonam J","Schwarzlose, Katherine B","Chambers, Mark S","Hofstede, Theresa M","Cardoso, Richard C","Aponte Wesson, Ruth","Won, Alex","Otun, Adegbenga O","Gombos, Dan S","Al-Zubidi, Nagham","Hutcheson, Katherine A","Gunn, G Brandon","Rosenthal, David I","Gillison, Maura L","Ferrarotto, Renata","Weber, Randal S","Hanna, Ehab Y","Myers, Jeffrey N","Lai, Stephen Y","32342541"],"abstract":["BACKGROUND: COVID-19 pandemic has strained human and material resources around the world. Practices in surgical oncology had to change in response to these resource limitations, triaging based on acuity, expected oncologic outcomes, availability of supportive resources, and safety of healthcare personnel. METHODS: The MD Anderson Head and Neck Surgery Treatment Guidelines Consortium devised the following to provide guidance on triaging Head and Neck cancer (HNC) surgeries based on multidisciplinary consensus. HNC subsites considered included aerodigestive tract mucosa, sinonasal, salivary, endocrine, cutaneous, and ocular. RECOMMENDATIONS: Each subsite is presented separately with disease-specific recommendations. Options for alternative treatment modalities are provided if surgical treatment needs to be deferred. CONCLUSION: These guidelines are intended to help clinicians caring for HNC patients appropriately allocate resources during a healthcare crisis, such as the COVID-19 pandemic. We continue to advocate for individual consideration of cases in a multidisciplinary fashion based on individual patient circumstances and resource availability."],"journal":"Head Neck","authors":["Head, Anderson","Maniakas, Anastasios","Jozaghi, Yelda","Zafereo, Mark E","Sturgis, Erich M","Su, Shirley Y","Gillenwater, Ann M","Gidley, Paul W","Lewis, Carol M","Diaz, Eduardo Jr","Goepfert, Ryan P","Kupferman, Michael E","Gross, Neil D","Hessel, Amy C","Pytynia, Kristen B","Nader, Marc-Elie","Wang, Jennifer R","Lango, Miriam N","Kiong, Kimberley L","Guo, Theresa","Zhao, Xiao","Yao, Christopher M K L","Appelbaum, Eric","Alpard, Jennifer","Garcia, Jose A","Terry, Shawn","Flynn, Jill E","Bauer, Sarah","Fournier, Danielle","Burgess, Courtlyn G","Wideman, Cayla","Johnston, Matthew","You, Chenxi","De Luna, Rolando","Joseph, Liza","Diersing, Julia","Prescott, Kaitlin","Heiberger, Katherine","Mugartegui, Lilian","Rodriguez, Jessica","Zendehdel, Sara","Sellers, Justin","Friddell, Rebekah A","Thomas, Ajay","Khanjae, Sonam J","Schwarzlose, Katherine B","Chambers, Mark S","Hofstede, Theresa M","Cardoso, Richard C","Aponte Wesson, Ruth","Won, Alex","Otun, Adegbenga O","Gombos, Dan S","Al-Zubidi, Nagham","Hutcheson, Katherine A","Gunn, G Brandon","Rosenthal, David I","Gillison, Maura L","Ferrarotto, Renata","Weber, Randal S","Hanna, Ehab Y","Myers, Jeffrey N","Lai, Stephen Y"],"date":"2020-04-29T11:00:00Z","year":2020,"_id":"32342541","source":"PubMed","week":"202018|Apr 27 - May 03","doi":"10.1002/hed.26206","keywords":["sars-cov2","oncology","otolaryngology"],"topics":["Prevention"],"weight":1,"_version_":1666138495125553152,"score":63.50163}]} |
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{"poster":"SBmc","date":"2019-07-03T09:19:27.061+0000","title":"NO entra al lol","subforum":"Problemas Técnicos","up_votes":7,"down_votes":0,"body":"En el cliente me aparece: No podemos iniciar tu sesión porque es posible que estés desconectado...\r\nle pregunte a un amigo si podia y tampoco, me fije en el estado de servicio y esta todo OK no entiendo porque pasa esto, espero una respuesta pronto, soy de Salta Capital y tengo Arnet 20mb{{summoner:4}}","replies":[{"poster":"J P I T E R","date":"2019-07-03T17:22:29.233+0000","up_votes":2,"down_votes":0,"body":"**¡Saludos Invocador!**\n{{sticker:vlad-salute}} \nUsualmente pasa este error al tener un anti virus activado que bloquee la certificación del juego.\nSi al iniciar sesión se te demora y te sale el mensaje, puede ser error de tu conexión. Por favor:\n1. Prueba desactivando \"FIREWALL DE WINDOWS\": Por lo general al no permitir el acceso de \"League of Legends\" firewall te bloquea el acceso del juego.\n2. Desactiva tu Anti Virus\n**También el cliente suele utilizar un navegador predeterminado (Internet Explorer).**\n-Lo que tienes que hacer, en caso de que al desactivar firewall persista el error. Configura el Internet Explorer con independencia de tu navegador por defecto. Y pretende hacerlo con tus demas navegador (Google Chrome, Mozzila Firefox, etc...).\n\nSi nada de lo que te recomendé te funciona, envía un ticket al soporte de Riot dando a conocer tu error. Luego, te aparecerá una opción para solicitar un CHAT EN VIVO con el soporte. Por favor, solicitalo y descarga la **Herramienta de reparación Hextech** para evaluar un posible error de tu carpeta en donde se aloja el juego!.\n\nEspero que te haya servido!\n{{sticker:galio-happy}} \n-Suerte\n{{sticker:slayer-pantheon-thumbs}} \n\n**J P I T E R**","replies":[{"poster":"MlRTHA LEGRAND","date":"2019-07-03T17:30:34.288+0000","up_votes":1,"down_votes":0,"body":"Disculpame Jpiter, pero como es eso del internet explorer?\nPodrias explicarmelo un poco mejor. Ya tengo habilitado el LoL en el firewall pero sigo siendo \"espectador\" cuando entro al lol.\nHe sido \"expulsado del grupo\" \n{{champion:32}} {{item:3070}}","replies":[{"poster":"J P I T E R","date":"2019-07-03T18:03:40.785+0000","up_votes":1,"down_votes":0,"body":"¡Hola **Mirtha Legrand**!\nSi tienes el error que me das a conocer no se debe al **Navegador**. Pero, te invito a que leas lo siguiente:\n\n1. ¿Que navegador utilizas frecuentemente? Ojalá me puedas responder esta pregunta.\n2. Anteriormente, ¿Estuviste en un grupo y tu ordenador se apagó inesperadamente?. Por lo general cuando tu ordenador se apaga inesperadamente suele suceder este \"error\". Prueba reiniciando tu ordenador.\n\nSi el error persiste haz lo siguiente:\n1. Al abrir el cliente e iniciar sesión, en la esquina superior derecha te sale un icono de configuración (En el lado izquierdo de la X para cerrar el juego).\n2. Una vez que clickeaste esa opción te mandará a configuración general y busca la opción que dice **INICIAR REPARACIÓN COMPLETA**.\n3. Una vez le des click, dale a la opción que dice **Si** y espera a que se ejecute la reparación!.\n\n\nSaludos!\n{{sticker:slayer-pantheon-thumbs}}","replies":[{"poster":"MlRTHA LEGRAND","date":"2019-07-03T18:29:15.726+0000","up_votes":1,"down_votes":0,"body":"Uso Firefox mayormente.\n\nArregle el clente como 3 veces.\nActualize Internet Explorer.\nLo puse al LOL en excepciones en firewall.\nLo ejecute como administrador, y con compatiblidad.\n\nY nope :/\nLo peor que anoche (4:00 AM ) podia entrar.","replies":[{"poster":"J P I T E R","date":"2019-07-03T18:43:19.732+0000","up_votes":2,"down_votes":0,"body":"**¡Hola nuevamente Mirtha!**\n\n1.Te invito a clickear el siguiente enlace: **https://pbr.leagueoflegends.com/las/es_AR/bugReport/create** y reportes aquel bug.\n2.También, pásate por: **https://support.riotgames.com/hc/es-419/articles/224826367** y descarga aquel programa.\n3.Una vez descargado clickea:** https://support.riotgames.com/hc/es-419/requests/new** y completa los formularios.\n4.Cuando ya completes los formularios con tu problema, envia la solicitud, o bien, solicita un chat en vivo para que te den otros pasos a seguir!.\n\n-Saludos Mirtha, y haz los pasos que te dí!.\nJ P I TE R\n{{sticker:galio-happy}}","replies":[]},{"poster":"MlRTHA LEGRAND","date":"2019-07-03T18:38:42.243+0000","up_votes":1,"down_votes":0,"body":"_**[SOLUCION] (?)**_\n\nBueno parecera una tonteria pero lo solucione haciendo algo tonto.\n\nAl terminar de reparar el cliente (por 4ta vez) y entrar con mi cuenta paso lo siguiente:\n\nCarga la pantalla.\nSalta un cartel (que ya me habia aparecido antes) y salen 2 opciones:\n**[RECONECTAR]** y **[SALIR]**\n\nPor logica yo elegia [RECONECTAR], y la ultima vez aprete el boton **[SALIR]** y se arreglo asi sin mas.\n \n{{sticker:sg-lux-2}} >>>>>> {{sticker:slayer-pantheon-thumbs}} \n\n\n\n(Cuando elegia [Reconectar] las veces anteriores me dejaba como \"espectador\" dentro de mi cuenta)","replies":[]}]}]}]}]},{"poster":"Soybaba","date":"2019-07-03T14:46:14.137+0000","up_votes":1,"down_votes":0,"body":"Me pasa algo parecido. Me dejó entrar pero cuando entro me dice \"Lo sentimos, te expulsaron del grupo\" y no puedo hacer nada. Me dice que estoy en modo espectador... nada que ver.","replies":[{"poster":"0MonkeyDLuffy0","date":"2019-07-03T16:41:37.467+0000","up_votes":1,"down_votes":0,"body":"No puedo entrar, abre el cliente pero queda la ventana negra queda ahi.","replies":[]}]},{"poster":"SirOfShadows","date":"2019-07-03T15:39:31.004+0000","up_votes":1,"down_votes":0,"body":"es el antivirus y esas cosas firewall y todas esas mierdas, tuve que conectar a la red del movil para poder ingresar a la pagina de leagueoflegends","replies":[]}]} |
{"poster":"Mirkonge","date":"2015-09-14T14:36:19.019+0000","title":"Platin Supporter sucht (Ranked)Team","subforum":"Clans & Teams","embed":{"description":"Summoner Lookup with statistics, ratings, LoLSkillScore and more for Mirkonge, a League of Legends summoner on the Europe West region.","url":"http://www.lolskill.net/summoner/EUW/Mirkonge/summary","image":"http://static.lolskill.net/img/tiers/192/platinumV.png"},"up_votes":1,"down_votes":0,"body":"Hey,\nwie man dem Titel schon entnehmen kann suche ich derzeit ein Rankedteam.\n\nIch bin auf der suche nach einem 3n3 / 5n5 Team das nicht nur 1-2Wochen sondern dauerhaft bestehen soll!\nDie Mitspieler sollten am besten Humor, Geduld und Zeit besitzen.\n\nZu Mir:\nMeine Name: Michael\nAlter: 16\nHerkunft: Österreich\nSeit Wann ich Spiele: Mitte Season 2\nWie viele gewonnene Spiele ich vorweisen kann: +2.000Normale- und +1.000Ranglistenspiele\nWas ich bisher alles gemaint habe: Jungle,ADc und Support\nWas ich derzeit Maine: Support\nDerzeitige ELO: Plat IV\nELO letzte Season: Gold IV\nWarum ich Support spiele: Ich kann als Supporter den Spies in Teamfights ohne jeglichen Goldvorteil umdrehen \nMain Supporter: Janna,Soraka,Lulu,Blitz und Leona\nWann ich Zeit habe: Prinzipiel kenne ich meinen Stundenplan für dieses Jahr noch nicht, habe aber Abends und am Wochenende fast immer Zeit\nKommunikation: Besitze Ts (bevorzugt) und Skype\nAndere Teammember: Sollten Gold I oder höher sein\n\nIch hoffe das ich micht mit dieser Bewerbung selbst gut darstellen konnte und hoffe auf viele Anfragen die Ihr bitte mit einer kleinen Teambeschreibung in die Kommentare schreibt, nichts großartiges nur :\n-Den Namen des Teams\n-Eine kurtze Vorstellung der Mitspieler \n-Und was es für ein Team is\n\nDas genügt mir schon vollkommen.\n\nMFG Mirkonge.\n{{summoner:4}}","replies":[{"poster":"Mirkonge","date":"2015-09-15T17:23:28.360+0000","up_votes":1,"down_votes":0,"body":"/push","replies":[]},{"poster":"Mirkonge","date":"2015-09-14T16:55:13.160+0000","up_votes":1,"down_votes":0,"body":"/push","replies":[]}]} |
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{"poster":"Black INV","date":"2016-03-31T22:13:44.691+0000","title":"Ayuda para Ranked","subforum":"Guias y consejos","up_votes":1,"down_votes":0,"body":"Buenas! Mi problema es doble, tanto mio como de mi equipo. El tema es que ~~deseo~~ deseaba hacer las 10 primeras ranked y subir (o bajar) pero no es tan sencillo Empecemos con lo mas facil de responder y quizas lo menos importante\r\n\r\nMI EQUIPO\r\nNo maneja el juego de la misma manera a la que estoy acostumbrado en las normal con mis amigos (Parecen mas desordenados). Me nivelan con plata 2 o 3 cuando mi nivel dudo que llegue a bronce, mas de una vez jugué con otro unraked (uno tenia solo 5 victorias en normal!!). Y el principal problema es que como me gusta ser jg pretenden que sea su niñera en las 3 lineas a la vez, todos sabemos que es imposible y mas si quiero hacer la jungla y dejarle las kills a ellos (tampoco que yo soy carry). Juegan con lo que quieren sin importar si consiguen un equipo un poco balanceado y NO CANTA LA ~~PUTA~~ MIA.\r\n\r\nMIS PROBLEMAS\r\nPor algun motivo me mentalice la importanci de las Ranked y cada vez que juego me siento nervioso, no muerto de nervios, pero nervioso. Hago cosas que jamas haria, manqueo como si no tuviera ni brazos!! Si fuera asi en las normal esta bien, lo acepto, pero no! en las normal si bien no destaco en todas al menos siento que soy util para el equipo.\r\n\r\nSe que el principal problema no es mi equipo, ya que los demas tambien hacen lo mismo (dudo que de 8 partidas siempre nos junten a los mas malos en un equipo) asi que me gustaria si puedieran y serian tan buenos de darme consejos para terminar con esos nervios y no no quiero subirme arriba de YI.... ~~soy malo con Yi~~ No me gusta ese champ\r\n\r\nGracias por leer, buenas victorias y sabias derrotas! {{sticker:slayer-jinx-wink}}","replies":[{"poster":"Little T","date":"2016-04-01T08:56:40.007+0000","up_votes":2,"down_votes":0,"body":"A mi me pasaba lo mismo, lo único que hice fue rankear mucho y ya todo se naturalizo, solo juga y si tenes nervios no importa, al tiempo se te van.","replies":[]},{"poster":"firebreather","date":"2016-04-02T18:22:10.487+0000","up_votes":1,"down_votes":0,"body":"cuando seas level 30 no te tires haci nomas a la ranked solo esto si sos malo jugando normales (PvP){{summoner:31}}","replies":[]},{"poster":"Bardo de AlQaeda","date":"2016-03-31T22:31:16.102+0000","up_votes":1,"down_votes":0,"body":"La mejor manera de perder el miedo es usar un champ que tengas lo suficientemente maineado como para usarlo bien incluso si la partida va mal y te acaban de dar con una escopeta en la cara. Ademas siguen siendo simples partidas, si haces las cosas bien no habra ningun problema. Saludos.","replies":[{"poster":"Black INV","date":"2016-03-31T23:16:49.517+0000","up_votes":1,"down_votes":0,"body":"> [{quoted}](name=UltimateRA,realm=LAS,application-id=8sKIclmi,discussion-id=NAdLOXM5,comment-id=0000,timestamp=2016-03-31T22:31:16.102+0000)\n>\n> La mejor manera de perder el miedo es usar un champ que tengas lo suficientemente maineado como para usarlo bien incluso si la partida va mal y te acaban de dar con una escopeta en la cara. Ademas siguen siendo simples partidas, si haces las cosas bien no habra ningun problema. Saludos.\n\nEs que se me complica porque me siento mas seguro con Ahri, pero hay bastantes que me joden demasiado en mid y que se usan mucho ahora. Supongo que lo mejor es tratarlas como una partida mas. Gracias n.n","replies":[{"poster":"Bardo de AlQaeda","date":"2016-03-31T23:23:17.406+0000","up_votes":1,"down_votes":0,"body":"Mientras no mueras en linea, si te va mal roameas y la vas llevando, no todos los enfrentamientos se pueden ganar :D","replies":[]}]}]}]} |
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{"poster":"Tjarven","date":"2017-04-19T19:10:17.641+0000","title":"Xayah sucht Rakan für Normals","subforum":"Clans & Teams","up_votes":1,"down_votes":0,"body":"Bin Main ADC Dia V und suche Rakan egal welche Elo :)","replies":[]} |
{"publisher": "NXB Tri th\u1ee9c", "isbn": "2010708001061", "description": " Gia \u0110\u00ecnh, B\u1ea1n B\u00e8 V\u00e0 \u0110\u1ea5t N\u01b0\u1edbc - H\u1ed3i K\u00fd Nguy\u1ec5n Th\u1ecb B\u00ecnh Tr\u00ean tay c\u00e1c b\u1ea1n l\u00e0 H\u1ed3i k\u00fd c\u1ee7a b\u00e0 Nguy\u1ec5n Th\u1ecb B\u00ecnh, nguy\u00ean Ph\u00f3 Ch\u1ee7 t\u1ecbch n\u01b0\u1edbc, n\u1eef B\u1ed9 tr\u01b0\u1edfng Ngo\u1ea1i giao \u0111\u1ea7u ti\u00ean c\u1ee7a Vi\u1ec7t Nam, Tr\u01b0\u1edfng \u0111o\u00e0n \u0111\u00e0m ph\u00e1n c\u1ee7a Ch\u00ednh ph\u1ee7 c\u00e1ch m\u1ea1ng l\u00e2m th\u1eddi mi\u1ec1n Nam Vi\u1ec7t Nam t\u1ea1i h\u00f2a \u0111\u00e0m Paris. H\u1eb3n suy ngh\u0129 \u0111\u1ea7u ti\u00ean c\u1ee7a kh\u00f4ng \u00edt ng\u01b0\u1eddi khi c\u1ea7m cu\u1ed1n s\u00e1ch n\u00e0y l\u00e0 t\u00f2 m\u00f2 ch\u1edd \u0111\u1ee3i nh\u1eefng chuy\u1ec7n ly k\u1ef3 v\u1ec1 cu\u1ed9c h\u1ed9i \u0111\u00e0m n\u1ed5i ti\u1ebfng gay go v\u00e0 d\u00e0i nh\u1ea5t trong l\u1ecbch s\u1eed ngo\u1ea1i giao th\u1ebf gi\u1edbi \u1ea5y, m\u00e0 t\u00e1c gi\u1ea3 l\u00e0 ng\u01b0\u1eddi trong cu\u1ed9c. C\u1ea7n n\u00f3i ngay: ch\u1edd \u0111\u1ee3i \u1ea5y s\u1ebd kh\u00f4ng \u0111\u01b0\u1ee3c th\u1ecfa m\u00e3n. Hi\u1ec3u theo c\u00e1ch n\u00e0o \u0111\u00f3 \u1edf \u0111\u00e2y c\u0169ng c\u00f3 m\u1ed9t s\u1ef1 \"ly k\u1ef3\", nh\u01b0ng l\u00e0 ki\u1ec3u kh\u00e1c, v\u1ec1 m\u1ed9t con ng\u01b0\u1eddi. Cu\u1ed1n s\u00e1ch nh\u1ecf n\u00e0y n\u00f3i v\u1ec1 con ng\u01b0\u1eddi \u0111\u00f3, con \u0111\u01b0\u1eddng \u0111i c\u1ee7a b\u00e0, cu\u1ed9c \u0111\u1eddi b\u00e0, nh\u01b0 b\u00e0 \u0111\u00e3 ch\u1ecdn m\u1ed9t \u0111\u1ea7u \u0111\u1ec1 th\u1eadt gi\u1ea3n d\u1ecb: Gia \u0111\u00ecnh, b\u1ea1n b\u00e8, v\u00e0 \u0111\u1ea5t n\u01b0\u1edbc, nh\u1eefng ngu\u1ed3n g\u1ed1c \u0111\u00e3 t\u1ea1o n\u00ean s\u1ee9c m\u1ea1nh \u0111\u1eb7c bi\u1ec7t c\u1ee7a b\u00e0. Nh\u1eefng ng\u01b0\u1eddi \u00edt nhi\u1ec1u bi\u1ebft b\u00e0 Nguy\u1ec5n Th\u1ecb B\u00ecnh th\u01b0\u1eddng ng\u1ea1c nhi\u00ean v\u1ec1 hai \u0111i\u1ec1u: s\u1ee9c h\u1ea5p d\u1eabn, t\u00ednh thuy\u1ebft ph\u1ee5c l\u1edbn v\u00e0 s\u00e2u c\u1ee7a b\u00e0, kh\u00f4ng ch\u1ec9 \u1edf trong n\u01b0\u1edbc m\u00e0 c\u1ea3 \u0111\u1ed1i v\u1edbi \u0111\u00f4ng \u0111\u1ea3o nh\u1eefng ng\u01b0\u1eddi ngo\u00e0i n\u01b0\u1edbc, k\u1ec3 c\u1ea3 nh\u1eefng nh\u00e2n v\u1eadt l\u1edbn v\u00e0 \"kh\u00f3\" - ch\u00fang ta bi\u1ebft ch\u1eb3ng h\u1ea1n sau n\u0103m 1979, khi ta bu\u1ed9c ph\u1ea3i ti\u1ebfn h\u00e0nh cu\u1ed9c chi\u1ebfn tranh T\u00e2y Nam kh\u00f3 nh\u1ecdc ch\u1ed1ng l\u1ea1i qu\u00e2n P\u00f4n P\u1ed1t x\u00e2m l\u1ea5n bi\u00ean gi\u1edbi v\u00e0 c\u1ee9u nh\u00e2n d\u00e2n Campuchia kh\u1ecfi h\u1ecda di\u1ec7t ch\u1ee7ng, r\u1ea5t nhi\u1ec1u b\u1ea1n b\u00e8 c\u0169 \u0111\u00e3 kh\u00f4ng th\u1ec3 th\u1ea5u hi\u1ec3u v\u00e0 ch\u00fang ta \u0111\u00e3 ph\u1ea3i l\u00e2m v\u00e0o th\u1ebf c\u00f4 l\u1eadp kh\u00e1 l\u00e2u, h\u1ecd \u0111\u00e3 t\u00ecm \u0111\u1ebfn b\u00e0 B\u00ecnh, v\u00e0 sau khi nghe b\u00e0 \u00f4n t\u1ed3n gi\u1ea3i th\u00edch, h\u1ecd b\u1ea3o: \u0110\u00fang r\u1ed3i, ch\u00fang t\u00f4i \u0111\u00e3 nghe nhi\u1ec1u ng\u01b0\u1eddi, nh\u01b0ng \u0111\u1ebfn B\u00ecnh n\u00f3i th\u00ec t\u00f4i tin! Su\u1ed1t nh\u1eefng n\u0103m th\u00e1ng \u00e1c li\u1ec7t, kh\u00f3 kh\u0103n nh\u1ea5t c\u1ee7a chi\u1ebfn tranh ch\u1ed1ng ngo\u1ea1i x\u00e2m, \u1edf b\u1ea5t c\u1ee9 n\u01a1i n\u00e0o b\u00e0 \u0111\u1ebfn tr\u00ean h\u1ea7u kh\u1eafp th\u1ebf gi\u1edbi c\u0169ng v\u1eady, ng\u01b0\u1eddi ta b\u1ea3o\" \"B\u00ecnh n\u00f3i th\u00ec t\u00f4i tin\"... C\u00f3 th\u1ec3 n\u00f3i m\u00e0 kh\u00f4ng s\u1ee3 qu\u00e1 \u0111\u00e1ng, r\u1eb1ng c\u00f3 l\u1ebd b\u00e0 l\u00e0 ng\u01b0\u1eddi Vi\u1ec7t Nam c\u00f3 nhi\u1ec1u b\u1ea1n b\u00e8 nh\u1ea5t tr\u00ean th\u1ebf gi\u1edbi, t\u1eeb nh\u1eefng ng\u01b0\u1eddi d\u00e2n th\u01b0\u1eddng cho \u0111\u1ebfn c\u00e1c nguy\u00ean th\u1ee7 qu\u1ed1c gia n\u1ed5i ti\u1ebfng v\u00e0 thu\u1ed9c nhi\u1ec1u ch\u1ebf \u0111\u1ed9 ch\u00ednh tr\u1ecb kh\u00e1c nhau. Nh\u1eefng n\u0103m th\u00e1ng \u1ea5y, b\u00e0 c\u00f3 m\u1eb7t \u1edf h\u1ea7u kh\u1eafp h\u00e0nh tinh, v\u00e0 th\u1eadt l\u1ea1, th\u1eadt \u0111\u1eb9p, h\u00ecnh \u1ea3nh c\u1ee7a m\u1ed9t Vi\u1ec7t Nam \u0111ang chi\u1ebfn \u0111\u1ea5u kh\u1ed1c li\u1ec7t l\u1ea1i \u0111\u01b0\u1ee3c \u0111\u1ea1i di\u1ec7n kh\u00f4ng ph\u1ea3i b\u1eb1ng m\u1ed9t chi\u1ebfn binh \u0111\u1eb1ng \u0111\u1eb1ng s\u00e1t kh\u00ed m\u00e0 l\u00e0 m\u1ed9t ph\u1ee5 n\u1eef nh\u1ecf nh\u1eafn, khi\u00eam nh\u01b0\u1eddng m\u00e0 uy\u00ean b\u00e1c, g\u1ea7n g\u0169i m\u00e0 sang tr\u1ecdng, s\u1ef1 ki\u00ean \u0111\u1ecbnh kh\u00f4ng g\u00ec lay chuy\u1ec3n n\u1ed5i l\u1ea1i \u0111\u01b0\u1ee3c th\u1ec3 hi\u1ec7n ch\u00ednh b\u1eb1ng m\u1ed9t v\u1ebb thong dong \u0111\u1ea7y t\u1ef1 tin... B\u00e0 g\u1ecdi c\u00f4ng vi\u1ec7c \u0111\u00f3 l\u00e0 \"ngo\u1ea1i giao nh\u00e2n d\u00e2n\", ngh\u0129a l\u00e0 con ng\u01b0\u1eddi \u0111\u1ebfn v\u1edbi con ng\u01b0\u1eddi, tr\u00e1i tim \u0111\u1ebfn v\u1edbi tr\u00e1i tim. B\u00e0 \u0111em b\u1ea1n b\u00e8 v\u1ec1 cho d\u00e2n t\u1ed9c. V\u00e0 \u0111\u1ea5y l\u00e0 m\u1ed9t trong nh\u1eefng nh\u00e2n t\u1ed1 quan tr\u1ecdng nh\u1ea5t quy\u1ebft \u0111\u1ecbnh th\u1eafng l\u1ee3i k\u1ef3 l\u1ea1 c\u1ee7a Vi\u1ec7t Nam trong th\u1ebf k\u1ef7 qua. \u0110i\u1ec1u \"l\u1ea1\" th\u1ee9 hai \u1edf b\u00e0 l\u00e0 s\u1ee9c tr\u1ebb c\u1ee7a tr\u00ed tu\u1ec7 v\u00e0 t\u00e2m h\u1ed3n, s\u1ee9c s\u1ed1ng v\u00e0 s\u1ee9c l\u00e0m vi\u1ec7c \u0111\u00e1ng kinh ng\u1ea1c, t\u1ea7m ngh\u0129 r\u1ed9ng, s\u00e2u v\u00e0 s\u1eafc, th\u1eadm ch\u00ed c\u00e0ng ph\u00e1t tri\u1ec3n c\u00f9ng v\u1edbi tu\u1ed5i t\u00e1c. H\u1ea7u nh\u01b0 tr\u00ean t\u1ea5t c\u1ea3 c\u00e1c m\u0169i nh\u1ecdn nh\u1ea5t v\u00e0 s\u00e2u nh\u1ea5t c\u1ee7a \u0111\u1eddi s\u1ed1ng x\u00e3 h\u1ed9i v\u00e0 con ng\u01b0\u1eddi hi\u1ec7n t\u1ea1i \u0111\u1ec1u c\u00f3 m\u1eb7t b\u00e0, \u1edf h\u00e0ng \u0111\u1ea7u, mi\u1ec7t m\u00e0i, kh\u00f4ng m\u1ec7t m\u1ecfi... M\u1ee5c l\u1ee5cQu\u00ea H\u01b0\u01a1ng Tu\u1ed5i Th\u01a1 \"T\u00f4i L\u00e0 Ng\u01b0\u1eddi H\u1ea1nh Ph\u00fac Tr\u01b0\u1edfng Th\u00e0nh Trong Kh\u00e1ng Chi\u1ebfn Ch\u1ed1ng Ph\u00e1p M\u1ed9t M\u1eb7t Tr\u1eadn \u0110\u1eb7c Bi\u1ec7t C\u1ee7a Cu\u1ed9c Ch\u1ed1ng M\u1ef9 C\u1ee9u N\u01b0\u1edbc Cu\u1ed9c \u0110\u00e0m Ph\u00e1n D\u00e0i Nh\u1ea5t L\u1ecbch S\u1eed To\u00e0n Th\u1eafng \u0110\u00e3 V\u1ec1 Ta Nh\u1eefng K\u1ef7 Ni\u1ec7m...M\u1eddi b\u1ea1n \u0111\u00f3n \u0111\u1ecdc.", "img": "https://www.vinabook.com/images/thumbnails/product/240x/44505_51048.jpg", "author": "Nguy\u1ec5n Th\u1ecb B\u00ecnh", "class": "vanhoc", "name": "Gia \u0110\u00ecnh, B\u1ea1n B\u00e8 V\u00e0 \u0110\u1ea5t N\u01b0\u1edbc - H\u1ed3i K\u00fd Nguy\u1ec5n Th\u1ecb B\u00ecnh"} |
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{"poster":"TSLB Flako","date":"2018-05-06T07:41:52.644+0000","title":"Busco algun ADC (Oro) leer atentamente","subforum":"Reclutamiento","up_votes":2,"down_votes":5,"body":"Buenas a todos amigos, buscaba a un adc que sea de division Oro, no importa si Oro V o Oro I .. Ya tengo experiencias jugando con ese elo, actualemente me encuentro estancado en Plata II, mi mmr es de superior a Plata I.. Aun asi me cuesta subir, a Oro, y queria si alguien es tan amable de darme una mano para poder subir, no tengo duo y juego solo support, me gusta jugar esa linea por eso se me dificulta subir tambien.. No soy troll, se jugar bastante bien creo yo.. Desde ya muchas gracias, al que me agregue o al que responda aca, yo mismo lo agrego cualquier cosa, espero que sea alguien comprometido en ayudarme, ya que varios han dicho que los agregue, pero luego no quieren jugar, pueden chequear mi Perfil de partidas, o mi KDA con Lulu, Taric, Nami, son los que mas uso.. Gracias por todo..\n\nAca igualmente les dejo los porcentajes de victorias con cada champ..\n\nLulu 59 partidas ganadas, 29 perdidas 67,05% de Win rate\nShen 16 partidas ganadas, 7 Perdidas 69,57% de Win Rate\nMorgana 5 ganadas, 3 perdidas 62,50% de Win Rate\nFiddlestick 5 ganadas, 1 perdida 83,33% de win Rate\nTaric 65 ganadas, 50 perdidas 56,52% Win rate\n\nbueno eso es mas o menos, mayormente, juego only lulu, pero si tengo que sacar Alistar, Braum, o otro champ, se jugarlo a la perfeccion..","replies":[{"poster":"Deigex","date":"2018-05-06T08:00:55.557+0000","up_votes":2,"down_votes":1,"body":"Busca un duo de tu elo nadie quiere arruinar su mmr jugando con alguien de menor elo que el sólo para que vos subas.","replies":[]},{"poster":"BANEAME DE NUEVO","date":"2018-05-06T14:43:25.916+0000","up_votes":1,"down_votes":0,"body":"soy main suport oro 3, no he tenido problema para subir aunque casi solo juego janna","replies":[]}]} |
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{"poster":"shadowlight22","date":"2016-08-11T03:01:01.055+0000","title":"Buying RP on Amazon with Amazin gift card","subforum":"[ARCHIVED] Help & Support","up_votes":1,"down_votes":0,"body":"Recently I had bought an Amazon gift card which I planned to buy rp with. I didn't realize an Amazon account requires another payment option other than the gift card to use it. I persuaded my parents to lend to me their credit card to put on the account temporarily to spend the gift card money since they won't be charged anything anyway. However, on the checkout it said the digital code had an estimated tax amount which would put me over the gift card funds into the credit card. I heard that it wasn't supposed to charge you tax for the digital code. Was I wrong? Please help me my fellow members of the league community if you have had experience with purchasing to rp on Amazon and know if they actually charge the tax. Thank you for any replies to this message and sorry that I am still a kid who is unable to open a banking account :( .","replies":[{"poster":"Porocles","date":"2016-08-11T18:02:47.925+0000","up_votes":2,"down_votes":0,"body":"With my own experience with Amazon, I also thought that it could use the gift card as credit without other payment methods. I'm such an Amazon addict that I'm ashamed to be wrong about that (it's where I get my poro snax)! I also believe that taxes are [included where applicable](https://www.amazon.com/gp/help/customer/display.html?nodeId=468512). \n\nWhen you go to checkout your purchase, you should see a few areas that include Select Payment Method as well as More Payment Options just below it. There will be a small extendable link called Enter a gift card or promotional code, and you should be able to add your gift card there. If the tax goes over, then you may need to switch to a lower price. Hope that helps, and good luck!","replies":[]}]} |
{"poster":"19reymito96","date":"2015-02-15T09:07:39.672+0000","title":"Bug Aram","subforum":"Mappe e modalità","up_votes":2,"down_votes":1,"body":"Quando malzahar {{champion:90}} lancia la sua w al centro dell'abisso ululante, la zona negativa si vede tagliata, al di sotto del \"pavimento\" .. non so se capita solo a me..ma l'ho riscontrato più volte","replies":[{"poster":"zioBoscaiolo","date":"2015-02-15T18:52:33.160+0000","up_votes":1,"down_votes":0,"body":"in aram ho trovato spesso bug di questo tipo...non so perchè ma il + fastidioso è quando non funzionano le spells\ndovrebbero dare un'occhiata i tecnici! \nho preso delle infamate gratuite per questo! E non è divertente","replies":[{"poster":"19reymito96","date":"2016-02-24T20:57:40.332+0000","up_votes":1,"down_votes":2,"body":"400 visite, ma neanche un rioter, penso che in fondo in fondo questi se ne sbattono..{{sticker:zombie-brand-facepalm}}","replies":[{"poster":"BigPatata00","date":"2016-02-24T21:02:50.025+0000","up_votes":1,"down_votes":0,"body":"Dat necropost xD\nComunque i rioters sono occupati a fare altro, da poco hanno eletto dei Wrenchman che segnalano i bug a questi ultimi, ma di bug a malzahar in aram ce ne sono molti, ad esempio quando usa la skin della tempesta di neve a volte le abilità sono invisibili.","replies":[]}]}]}]} |
{"poster":"CW Rivelution","date":"2015-07-03T21:51:23.293+0000","title":"Ist Das ein Rekord?","subforum":"Allgemeiner Chat","embed":{"description":"Dieses Bild wurde am 03.07.2015 hochgeladen.","url":"http://www.directupload.net/file/d/4037/4ngfsnwu_png.htm","image":"http://i.embed.ly/1/image/resize?url=http%3A%2F%2Ffs2.directupload.net%2Fimages%2F150703%2F4ngfsnwu.png&key=a45e967db0914c7fb472fd4381e6c85b&width=425"},"up_votes":1,"down_votes":2,"body":"Ist das ein Rekord oder gibt es hier leute mit mehr ?","replies":[{"poster":"ÆonFox","date":"2015-07-04T02:53:08.830+0000","up_votes":2,"down_votes":0,"body":"Wie zum Geier kann man derart ein %%%%%%%%% sein das man sowas schafft???\nSowas gehört nichtmehr restrictet sondern Lifebanned!\n\nFox","replies":[]},{"poster":"Zamonianer","date":"2015-07-03T22:34:54.845+0000","up_votes":2,"down_votes":0,"body":"Gibt definitiv Leute mit einer höheren Restriction, aber es ist so oder so nichts, worauf man stolz sein kann.\n\nGruß,\nZamo","replies":[]},{"poster":"PremiumKartoffel","date":"2015-07-03T22:28:08.419+0000","up_votes":1,"down_votes":0,"body":"Nope ist es nicht der Deutsch/Englische Streamer Shaclone hat mal 50OO bekommen ^^","replies":[]}]} |
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[
"#C92 明日は東5ポ22bで自転車トレーニング&Zwift入門本『銀輪練之概略』出します。普段のライド+αでパフォーマンスアップするコツを集めたり、冬場に使えるVRサイクリングのzwift入門ガイドなど入ってます\n https://t.co/OCHqjJZEcx"
] |
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{"ast":null,"code":"var _interopRequireDefault = require(\"@babel/runtime/helpers/interopRequireDefault\");\n\nObject.defineProperty(exports, \"__esModule\", {\n value: true\n});\nexports.default = void 0;\n\nvar _createIconSet = _interopRequireDefault(require(\"./createIconSet\"));\n\nvar _FontAwesome = _interopRequireDefault(require(\"./vendor/react-native-vector-icons/Fonts/FontAwesome.ttf\"));\n\nvar _FontAwesome2 = _interopRequireDefault(require(\"./vendor/react-native-vector-icons/glyphmaps/FontAwesome.json\"));\n\nvar _default = (0, _createIconSet.default)(_FontAwesome2.default, 'FontAwesome', _FontAwesome.default);\n\nexports.default = _default;","map":{"version":3,"sources":["../src/FontAwesome.ts"],"names":[],"mappings":";;;;;;;AAAA;;AACA;;AACA;;eAEe,4BAAc,qBAAd,EAAwB,aAAxB,EAAuC,oBAAvC,C","sourcesContent":["import createIconSet from './createIconSet';\nimport font from './vendor/react-native-vector-icons/Fonts/FontAwesome.ttf';\nimport glyphMap from './vendor/react-native-vector-icons/glyphmaps/FontAwesome.json';\n\nexport default createIconSet(glyphMap, 'FontAwesome', font);\n"],"sourceRoot":""},"metadata":{},"sourceType":"script"} |
{
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{
"description": "Add a new contact note.",
"enabled": true,
"entry_point": "run.py",
"name": "contact_note_add",
"parameters": {
"api_action": {
"default": "contact_note_add",
"description": "contact_note_add",
"required": false,
"type": "string"
},
"api_key": {
"description": "Your API key",
"required": false,
"type": "string"
},
"api_output": {
"default": "json",
"description": "xml, json, or serialize (default is XML)",
"required": false,
"type": "string"
},
"contact": {
"description": "Optional contact data array to include with the date (used for the webhook). Example: contact[email] = test@test.com",
"required": false,
"type": "string"
},
"id": {
"description": "Contact ID to associate the note with.",
"required": true,
"type": "string"
},
"listid": {
"description": "List ID to associate the note with. Use 0 for all lists.",
"required": true,
"type": "string"
},
"note": {
"description": "Actual note content. HTML will be stripped.",
"required": true,
"type": "string"
}
},
"runner_type": "python-script"
}
|
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{
"name": "real-time-chat-application",
"version": "1.0.0",
"description": "This is very basic real time chat application to demonstrate the working of socket,io with node,js and express",
"main": "main.js",
"scripts": {
"start": "nodemon main.js"
},
"repository": {
"type": "git",
"url": "git+https://github.com/vaishalgandhi/real-time-chat-application.git"
},
"keywords": [
"realtime",
"chat",
"socket.io",
"node",
"express"
],
"author": "Vaishal Gandhi",
"license": "ISC",
"bugs": {
"url": "https://github.com/vaishalgandhi/real-time-chat-application/issues"
},
"homepage": "https://github.com/vaishalgandhi/real-time-chat-application#readme",
"dependencies": {
"ejs": "^2.6.1",
"express": "^4.16.3",
"socket.io": "^2.1.1"
},
"devDependencies": {
"babel-preset-env": "^1.7.0",
"babel-register": "^6.26.0"
}
}
|
{"poster":"NoMaineoAzir","date":"2018-05-14T19:49:09.511+0000","title":"Instagram vs Realidad","subforum":"Memes & juegos","up_votes":15,"down_votes":0,"body":"                   **Instagram**\n                   https://i.gyazo.com/b81a97e022755ba923cc215c06f316b0.png\n___\n                   **Realidad**\n\n                    https://i.gyazo.com/ef33249d6c6a66b223b1e5d7ebd061ac.png\n\nNa' que ver","replies":[{"poster":"MagmaStriker","date":"2018-05-14T20:15:55.712+0000","up_votes":6,"down_votes":0,"body":"Con que le pongan más verde a su piel y le cambien el pañuelo acorde al splash art todo bien.","replies":[{"poster":"Excorpion","date":"2018-05-14T22:04:05.633+0000","up_votes":1,"down_votes":4,"body":"Si no es para tanto tampoco... nunca le miran el rostro y alegan por eso.","replies":[{"poster":"MagmaStriker","date":"2018-05-14T22:21:41.621+0000","up_votes":3,"down_votes":0,"body":"Ahora dices eso pero cuando le metan cromas la primera cosa que se notará que cambia (además de su chaqueta) es el diseño del pañuelo.","replies":[{"poster":"Excorpion","date":"2018-05-14T22:24:24.450+0000","up_votes":1,"down_votes":4,"body":"No uso chromas...","replies":[{"poster":"vaVav","date":"2018-05-15T02:25:19.179+0000","up_votes":1,"down_votes":0,"body":"Ni sos el único jugador...","replies":[{"poster":"Excorpion","date":"2018-05-15T02:30:14.548+0000","up_votes":1,"down_votes":1,"body":"Pero me lo dice a mi... coolife ni se entrará de esto.","replies":[{"poster":"vaVav","date":"2018-05-15T02:31:57.078+0000","up_votes":2,"down_votes":0,"body":"Te dirigió el comentario a ti, pero claramente dice \"la primera cosa que se notará\", no \"la primera cosa que notarás\". Tiene razón, es algo notorio para muchos tanto en la clásica como seguramente será en sus chromas.","replies":[]}]}]}]}]},{"poster":"Rockett6","date":"2018-05-15T14:10:25.678+0000","up_votes":1,"down_votes":0,"body":"Pero nos muestran una cosa y nos entregan otra, yo queria algo que de miedo y nos dan a señor colmillotes.","replies":[{"poster":"Excorpion","date":"2018-05-15T14:15:11.151+0000","up_votes":1,"down_votes":0,"body":"Yo lo unico que concuerdo... es en la pañoleta\nEl resto me da igual.","replies":[]}]},{"poster":"SrTryndamerKing","date":"2018-05-15T11:25:35.683+0000","up_votes":1,"down_votes":1,"body":"En total te va matar igual, o su adc. Demas los feos son los más rotos... (amumu,urgot,udyr...){{summoner:6}} {{champion:23}}","replies":[]}]}]},{"poster":"EdxxEdxx","date":"2018-05-14T21:56:27.052+0000","up_votes":2,"down_votes":0,"body":"Jajaja me quedé muy wtf cuando vi el tease in-game, principalmente porque pensé que habían cambiado el pañuelo a algo raro y me parecía horrible, después vi que eran como colmillos y me quedé: \"Ggggguuuuaaaaaaaattttt, por khé\"\n\nIgual, siempre que salen campeones en el PBE (o en \"versión temprana\") les suelen faltar esos detalles, probablemente lo cambien. En el splash art de Pyke de Shurima, si te fijas en la mano que sostiene el cuchillo tiene un pintado que parece de paint, no hay dedos xD\n\nhttps://lolstatic-a.akamaihd.net/frontpage/apps/prod/rg-champion-reveal-pyke-bloodharbor-ripper/es_AR/cfe938476f33bc0dc97f1da69e9695e72c70835c/assets/downloads/wallpapers/PYKE_SANDWRAITH_WALLPAPER_LOGO_1920X1080.jpg?noredirect","replies":[]},{"poster":"Rockett6","date":"2018-05-15T14:08:49.856+0000","up_votes":1,"down_votes":0,"body":"TENES RAZON\n+10 LINC","replies":[]},{"poster":"Ciffra","date":"2018-05-14T20:08:29.688+0000","up_votes":1,"down_votes":0,"body":"El de la segunda foto quien es? xD","replies":[]},{"poster":"Mugman Rojo","date":"2018-05-14T20:05:15.269+0000","up_votes":1,"down_votes":0,"body":"https://vignette.wikia.nocookie.net/obscure/images/3/33/EvolInfecStudn.jpg/revision/latest?cb=20170106101930\n\nPero, Resulto ser un pañuelo, UN PAÑUELO?","replies":[]},{"poster":"Fenrito","date":"2018-05-14T20:04:04.275+0000","up_votes":1,"down_votes":0,"body":"Igual parece el mejor soporte que vi en mi vida desde zed supp full ad","replies":[]}]} |
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{"publisher": "Quang Minh", "isbn": "8936016019571", "description": " V\u1eady, ng\u01b0\u1eddi con g\u00e1i Hu\u1ebf \u1ea5y, ng\u01b0\u1eddi th\u01a1 Hu\u1ebf \u1ea5y l\u00e0 ai? Xin th\u01b0a, \u0111\u00f3 l\u00e0 N\u1eef s\u0129 C\u00f4ng T\u1eb1ng T\u00f4n N\u1eef H\u1ef7 Kh\u01b0\u01a1ng, n\u00e0ng th\u01a1 kh\u1ea3 \u00e1i, c\u00f4 con g\u00e1i \u00fat tri k\u1ef7 tri \u00e2m c\u1ee7a l\u00e3o b\u00e1 v\u01b0\u01a1ng t\u00f4n \u01afng B\u00ecnh Th\u00fac Gi\u1ea1 th\u1ecb c\u00f9ng v\u1ecb phu nh\u00e2n hi\u1ec1n th\u1ee5c nh\u00e2n t\u1eeb x\u01b0ong mai m\u00ecnh h\u1ea1c, l\u00fac n\u00e0o c\u0169ng c\u00f3 n\u00e9t c\u01b0\u1eddi r\u1ea5t M\u1eb9 v\u00e0 nh\u1eefng l\u1eddi th\u0103m h\u1ecfi ng\u1ecdt ng\u00e0o v\u1edbi c\u00e1c b\u1ea1n h\u1eefu c\u1ee7a con g\u00e1i m\u00ecnh trong m\u1ed7i d\u1ecbp g\u1eb7p g\u1ee1 vi\u1ebfng th\u0103m. Ngh\u0129a v\u1ee5 v\u00e0 ni\u1ec1m h\u1ea1nh ph\u00fac l\u1edbn lao c\u1ee7a \u0111\u1ea1o l\u00e0m con l\u00e0 \u0111\u01b0\u1ee3c ph\u1ee5ng d\u01b0\u1ee1ng m\u1eb9 cha khi sanh ti\u1ec1n v\u00e0 \u0111\u01b0\u1ee3c h\u01b0\u01a1ng kh\u00f3i ph\u1ee5ng th\u1edd khi song \u0111\u01b0\u1eddng khu\u1ea5t n\u1ebbo nh\u00e2n gian, c\u00e1c vi\u1ec7c \u1ea5y H\u1ef7 Kh\u01b0\u01a1ng \u0111\u1ec1u chu to\u00e0n, ch\u1ecb \u0111\u00e3 th\u1ef1c hi\u1ec7n \u0111\u00fang l\u1eddi Ph\u1eadt d\u1ea1y \u201cL\u00e0m con hi\u1ebfu h\u1ea1nh vi ti\u00ean\u201d thu\u1edf c\u00f2n b\u00e9 t\u00ed t\u1eb9o cho \u0111\u1ebfn th\u1eddi sen ng\u00f3 \u0111\u00e0o t\u01a1 ch\u1ecb \u0111\u00e3 h\u1ea7u h\u1ea1 \u00e2n c\u1ea7n, th\u1ea7n h\u00f4n \u0111\u1ecbnh t\u1ec9nh t\u1eed ph\u1ee5, v\u1edbi t\u1ea5t c\u1ea3 t\u1ea5m l\u00f2ng t\u00f4n k\u00ednh th\u01b0\u01a1ng y\u00eau th\u00e2m t\u00ecnh ph\u1ee5 t\u1eed, tr\u1ea3i d\u00e0i theo n\u0103m th\u00e1ng l\u00e0m m\u1ed9t \u201cti\u1ec3u \u0111\u1ed3ng\u201d l\u00fat c\u00fat theo ch\u00e2n m\u1ed9t m\u1eb7c kh\u00e1ch tao nh\u00e2n v\u1edbi gi\u00f3 tr\u0103ng l\u01b0ng t\u00fai \u0111\u1ec1 hu\u1ec1, ch\u1ecb tr\u1edf th\u00e0nh ng\u01b0\u1eddi ph\u00e1t ng\u00f4n chuy\u1ec3n t\u1ea3i \u0111\u1ebfn kh\u00e1ch m\u1ed9t \u0111i\u1ec7u v\u0103n ch\u01b0\u01a1ng c\u1ee7a cha m\u00ecnh qua gi\u1ecdng ng\u1ecdc tr\u1eddi ban, v\u1edbi nh\u1eefng \u0111i\u1ec7u h\u00f2 c\u00e2u h\u00e1t, v\u1ea7n th\u01a1 do cha s\u00e1ng t\u00e1c, n\u1eeda ph\u1ea7n mang phong c\u00e1ch d\u00e2n gian \u0111\u1ea1i ch\u00fang, n\u1eeda ph\u1ea7n uy\u00ean b\u00e1c h\u1ecdc h\u00e0n l\u00e2m. L\u00e0 ng\u01b0\u1eddi con ch\u00ed hi\u1ebfu, ng\u01b0\u1eddi th\u01b0 k\u00fd trung th\u00e0nh th\u00f4ng tu\u1ec7 ch\u1ecb \u0111\u00e3 kh\u00f4ng ph\u1ee5 s\u1ef1 tin c\u1eady k\u00fd th\u00e1c c\u1ee7a ng\u01b0\u1eddi cha y\u00eau k\u00ednh, c\u1ee7a b\u1eadc th\u1ea7y v\u00e0 c\u1ee7a ng\u01b0\u1eddi th\u01a1 phong v\u1eadn. T\u00f4i (NGTC) t\u1ef1 h\u1ecfi th\u1ea7m: n\u1ebfu v\u0103n nghi\u1ec7p c\u1ee7a c\u1ee5 thi\u1ebfu s\u1ef1 c\u1ea9n tr\u1ecdng gi\u1eef g\u00ecn, thi\u1ebfu s\u1ef1 ch\u0103m ch\u00fat t\u00e0i b\u1ed3i c\u1ee7a ch\u1ecb li\u1ec7u gia t\u00e0i \u1ea5y c\u00f3 \u0111\u01b0\u1ee3c \u0111\u1ea7y \u0111\u1ee7 tr\u00f2n v\u1eb9n cho ch\u00fang ta - nh\u1eefng ng\u01b0\u1eddi y\u00eau v\u0103n h\u1ecdc h\u00f4m nay v\u00e0 c\u1ea3 nh\u1eefng th\u1ebf h\u1ec7 mai sau? H\u1eb3n thu\u1edf sinh ti\u1ec1n c\u1ee5 \u01afng B\u00ecnh \u0111\u00e3 kh\u00e9o ch\u1ecdn m\u1eb7t g\u1edfi v\u00e0ng, t\u1ea5t l\u00e0 qu\u00fd h\u01a1n v\u00e0ng - b\u1edfi \u0111\u00f3 l\u00e0 v\u0103n ch\u01b0\u01a1ng \u2013 l\u00e0 L\u1ed9c Minh \u0110\u00ecnh Thi Th\u1ea3o, l\u00e0 Ti\u1ebfng H\u00e1t S\u00f4ng H\u01b0\u01a1ng, l\u00e0 B\u00e1n Bu\u1ed3n Mua Vui, l\u00e0 Tu\u1ed3ng L\u1ed9 \u0110\u1ecbch, l\u00e0 k\u1ecbch b\u1ea3n Chuy\u1ec7n T\u00e0o Lao\u2026 \u0110\u1ed1i v\u1edbi t\u1eeb m\u1eabu ng\u01b0\u1eddi \u0111\u00e3 ch\u00edn th\u00e1ng c\u01b0u mang ba n\u0103m b\u00fa m\u1edbm \u0111\u1ec3 t\u1ea1o d\u1ef1ng h\u00ecnh h\u00e0i con tr\u1ebb, H\u1ef7 Kh\u01b0\u01a1ng \u0111\u00e3 thay c\u00e1c anh ch\u1ecb h\u1ebft l\u00f2ng n\u00e2ng gi\u1ea5c ph\u1ee5ng s\u1ef1 chu t\u1ea5t l\u00fac l\u00e0nh m\u1ea1nh, bu\u1ed5i \u1ed1m \u0111au tr\u00e1i gi\u00f3 tr\u1edf tr\u1eddi, v\u1edbi ni\u1ec1m hi\u1ebfu k\u00ednh, lo, t\u1eeb gi\u1ea5c ng\u1ee7 mi\u1ebfng \u0103n m\u00e0 d\u00e2n gian t\u1eebng ca t\u1ee5ng: T\u00f4m r\u1eb1n l\u1ed9t v\u1ecf b\u1ecf \u0111u\u00f4i G\u1ea1o De An C\u1ef1u em nu\u00f4i m\u1eb9 gi\u00e0 (Ca dao) V\u00ec th\u1ebf v\u00e0 \u0111\u01b0\u1ee3c nh\u01b0 th\u1ebf n\u00ean l\u00e3o phu nh\u00e2n \u0111\u00e3 s\u1ed1ng th\u1eadt h\u1ea1nh l\u1ea1c, minh m\u1eabn, nh\u1eb9 nh\u00e0ng \u0111\u1ebfn tu\u1ed5i 97 v\u00e0 thanh th\u1ea3n b\u01b0\u1edbc v\u00e0o c\u00f5i v\u00f4 c\u00f9ng \u0111\u1ec3 g\u1eb7p l\u1ea1i phu qu\u00e2n trong ni\u1ec1m thu\u1ef7 chung g\u1eafn k\u1ebft s\u1ed1ng \u1edf th\u00e1c v\u1ec1, tr\u00f2n ni\u1ec1m \u00e2n t\u00ecnh phu ph\u1ee5. N\u00f3i \u0111\u1ebfn b\u01b0\u1edbc \u0111\u01b0\u1eddng th\u01a1 c\u1ee7a N\u1eef s\u1ec9 H\u1ef7 Kh\u01b0\u01a1ng h\u1eb3n ng\u01b0\u1eddi \u0111\u1ecdc ai c\u0169ng nh\u1edb kh\u1ed5 th\u01a1 t\u1ee9 tuy\u1ec7t \u0111\u1ea7u \u0111\u1eddi (h\u1ea7u nh\u01b0 ng\u01b0\u1eddi con g\u00e1i n\u00e0o b\u01b0\u1edbc v\u00e0o nghi\u1ec7p v\u0103n ch\u01b0\u01a1ng c\u0169ng b\u1eaft \u0111\u1ea7u b\u1eb1ng b\u00e0i th\u01a1 t\u1ee9 tuy\u1ec7t) v\u1edbi ng\u00f4n ng\u1eef ng\u00e2y th\u01a1 h\u1ed3n nhi\u00ean pha ph\u00fat t\u00f2 m\u00f2 th\u00edch th\u00fa do c\u00e1i \u0111\u1ee9c h\u00e1u \u0103n c\u1ee7a b\u1ea5t c\u1ee9 c\u00f4, c\u1eadu b\u00e9 n\u00e0o tr\u00ean h\u00e0nh tinh n\u00e0y, n\u1ebfu kh\u00f4ng v\u1eady th\u00ec ki\u1ebfm hi\u1ec7p gia Kim Dung \u0111\u00e3 kh\u00f4ng vi\u1ebft \u201cTr\u1ebb con d\u00f9 ngoan \u0111\u1ebfn \u0111\u00e2u c\u0169ng ham \u0103n\u201d (Anh H\u00f9ng X\u1ea1 \u0110i\u00eau). \u0110ung qu\u00e1 \u0111i ch\u1ee9, b\u1edfi H\u1ef7 Kh\u01b0\u01a1ng vi\u1ebft b\u00e0i t\u1ee9 tuy\u1ec7t nh\u01b0 sau: C\u00f4 Ph\u1ea9m \u0111em cho m\u1ed9t g\u00f3i n\u1ea7y, M\u1edf ra th\u00ec th\u1ea5y c\u1ea3 khoai t\u00e2y. R\u1ee9a m\u00e0 em t\u01b0\u1edfng l\u00e0 phong b\u00e1nh, Em ch\u1ea1y lanh quanh m\u00e9c v\u1edbi th\u1ea7y\u2026.\u201d (Tr\u00edch \u201cL\u1ed1i v\u00e0o m\u1ed9t cu\u1ed9c h\u00e0nh tr\u00ecnh\u201d) M\u1ee5c l\u1ee5c: Kh\u00fac t\u00e2m t\u00ecnh c\u1ee7a ng\u01b0\u1eddi bi\u00ean so\u1ea1n L\u1ed1i v\u00e0o m\u1ed9t cu\u1ed9c h\u00e0nh tr\u00ecnh Ti\u1ec3u s\u1eed T\u00f4n N\u1eef H\u1ef7 Kh\u01b0\u01a1ng \u0110\u1ee3i m\u00f9a tr\u0103ng \u0110\u1ed3ng \u0111i\u1ec7u \u201c\u0110\u1ee3i m\u00f9a tr\u0103ng\u201d v\u1edbi ba b\u00e0i th\u01a1 lu\u1eadt \u0111\u01b0\u1eddng ti\u00eau bi\u1ec3u \u0110\u1ecdc b\u00e0i th\u01a1 \u201cPh\u01b0\u01a1ng li\u00ean\u201d D\u1eb7n l\u00f2ng N\u1ed7i l\u00f2ng ng\u01b0\u1eddi con g\u00e1i trong b\u00e0i \u201ckh\u00f3c cha\u201d \u2026. M\u1ed9ng thanh b\u00ecnh \u0110\u1ecdc \u201cM\u1ed9ng thanh b\u00ecnh\u201d H\u1ed3i \u00e2m - t\u1eeb kh\u00e1ch tri \u00e2m \u201cT\u00f4i \u01b0\u1edbc m\u01a1\u201d ni\u1ec1m \u01b0\u1edbc m\u01a1 ch\u00e1y b\u1ecfng N\u1ed7i u ho\u00e0i c\u1ee7a t\u00e1c gi\u1ea3 khi vi\u1ebft \u201cG\u1ea7n hai m\u01b0\u01a1i n\u0103m\u201d \u2026\u2026 H\u1ed3i \u1ee9c v\u1ec1 cha t\u00f4i: \u01afng B\u00ecnh Th\u00fac Gi\u1ea1 Th\u1ecb \u0110\u1ecdc v\u0103n xu\u00f4i c\u1ee7a T\u00f4n N\u1eef H\u1ef7 Kh\u01b0\u01a1ng qua \u201cH\u1ed3i \u1ee9c v\u1ec1 cha t\u00f4i: \u01afng B\u00ecnh Th\u00fac Gi\u1ea1 Th\u1ecb\u201d \u01afng B\u00ecnh Th\u00fac Gi\u1ea1 Th\u1ecb v\u1edbi nh\u00e2n v\u1eadt v\u00e0 thi ca x\u1ee9 Hu\u1ebf \u2026. 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{
"author": "ZowtArFD",
"id": "7Go7FngUP",
"title": "\"Сивий дід...\"",
"link": "metrs_poem.php?poem=5875",
"html": "\n<h4></h4>\n\n<a href=\"/metrs.php?id=156&type=tvorch\" class=\"redhr1\">Творчість</a> |\n<a href=\"/metrs.php?id=156&type=biogr\" class=\"redhr1\">Біографія</a> |\n<a href=\"/metrs.php?id=156&type=critiques\" class=\"redhr1\">Критика</a>\n\n<h4>\"Сивий дід...\"</h4>\n<!--<div style=\"float:right;margin-left: 10px\">\n\t<script async src=\"//pagead2.googlesyndication.com/pagead/js/adsbygoogle.js\"></script>\n\n\t<ins class=\"adsbygoogle\"\n\t\t style=\"display:inline-block;width:250px;height:400px\"\n\t\t data-ad-client=\"ca-pub-5357335372099528\"\n\t\t data-ad-slot=\"7581761695\"></ins>\n\t<script>\n\t(adsbygoogle = window.adsbygoogle || []).push({});\n\t</script>\n</div>-->\n\nСивий дід<br>\nСадить дерево.<br>\nЛедве тримає в руках лопату -<br>\nСадить.<br>\nНіхто не питає,<br>\nНавіщо він садить<br>\nДерево.<br>\nА дід вже не дійде<br>\nДо хати.<br>\nОтут, під цим деревом,<br>\nТихо зітхне<br>\nІ випустить з рук<br>\nКопачку.<br>\nІ сизий вітер<br>\nРозвіє його бороду<br>\nПо білій сорочці<br>\nІ по чорній землі.<br>\nІ дід, увесь у білому,<br>\nБуде схожий на білий туман,<br>\nЩо випав у вечері.<br>\nА поки що<br>\nНіхто не знає,<br>\nЩо дід вже не дійде до хати.<br>\nТе знає <br>\nСам лише дід.<br>\nІ тому він садить<br>\nДерево.\n\n\n<br><br>\n"
} |
{"website": "facebook.com/BANDJIB", "twitter": "JIB_official", "intro": "멜로디컬 하고 미니멀한 사운드를 표현하는 밴드입니다.", "facebook": "BANDJIB", "genre": "Rock", "event": [{"venue_id": 161, "title": "잭인더박스,아한,Antisplit", "date": "2014-01-09", "price": "10000", "time": "20:00", "venue": "에반스라운지", "lineup": [{"name": "아한", "musician_id": 999}, {"name": "잭인더박스", "musician_id": 3455}, {"name": "Antisplit", "musician_id": 3806}]}, {"venue_id": 479, "title": "Heavy new year!", "date": "2014-01-04", "price": "15000 1free drink", "time": "20:00", "venue": "쓰리썸즈", "lineup": [{"name": "스모킹 배럴스(Smoking Barrels)", "musician_id": 1735}, {"name": "헤일스톰(Hailstorm)", "musician_id": 1859}, {"name": "크로스본즈(Crossbones)", "musician_id": 1860}, {"name": "도그 라스트 페이지", "musician_id": 2844}, {"name": "13데이즈", "musician_id": 3042}, {"name": "잭인더박스", "musician_id": 3455}]}, {"venue_id": 38, "title": "live or die", "date": "2013-12-13", "price": "10000", "time": "18:00", "venue": "스팟 (SPOT)", "lineup": [{"name": "로드런너 (Roadrunner)", "musician_id": 475}, {"name": "오이리솔루트 (Oi! 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Resolut)", "musician_id": 1523, "event_count": 1}, {"name": "HAERO", "musician_id": 3572, "event_count": 1}, {"name": "패션플라워 (Passion Flower)", "musician_id": 3195, "event_count": 1}, {"name": "이들", "musician_id": 2942, "event_count": 1}, {"name": "리메인즈", "musician_id": 1535, "event_count": 1}], "name": "잭인더박스", "musician_id": 3455, "member": "Guitar Vocal: 이슬 , Drum: Anselm Choi"} |
{"poster":"Bronze 5 Teeto","date":"2017-10-04T23:38:54.821+0000","title":"Silver is true elo hell","subforum":"Gameplay","up_votes":11,"down_votes":6,"body":"So I just got plat 5 on my main for the first time a couple weeks ago then i decided id get this account to gold. It was at silver 4 0lp. Legit took me about 100 games of trying to get through it. People tilt so freaking hard in this elo and just feed like animals when they lose lane. Then theres all the new to ranked players you randomly get on your team... Like jesus... theres so much trolls, so many toxic players, etc.... i mean not saying being plat makes me super good or anything but to take that long to get through silver for a plat player says something about how trash the matchmaking is here and how tilty these people are. Near impossible to carry half the games. Goodbye silver. Elo hell is real.","replies":[{"poster":"woodvsmurph","date":"2017-10-04T23:58:20.603+0000","up_votes":7,"down_votes":0,"body":"Yes, funny how that works and yet how people claim elo hell doesn't exist and you can carry any game if you just \"get good\". Some reasons for the challenge:\n\nNew players - valid reason for them being bronze/silver\n\nPeople refuse to take constructive criticism - not ok; people are not toxic for telling you to ward or to NOT engage a 3v5\n\nPeople are good enough to climb, but they always end up with more smurfs on the other team - this is where I get upset at smurfs. Play on smurf account, try out a new champ or build, that's all fine and good. But you shouldn't go out of your way to hard carry - this boosts bad players and holds down people who truly deserve to climb. Thus creating and reinforcing \"elo hell\".\n\nMacro play - very few players have a decent understanding of macro play - most follow the famous words of Gambit Gaming - \"see hero, kill hero.\". This means many swings in who is winning and longer games where it is more of a toss-up and advantages can easy be turned.\n\nTilt - people lack macro, so they don't realize that they can easily win despite losing lane. They think they must immediately get a reply kill if they die in lane - causing them to feed rather than lose gracefully. Also causing afk, flame, and lack of teamwork in more abundance than what should be expected. There seems to be a few bottlenecks in climbing and I can attest that silver (especially low/mid silver) is one of the worst.\n\nTroll picks - either they saw it on YouTube and have no clue why it worked, or they tried it in bots or ONE TIME in pvp and won with it. Therefore, it must be good against everything in every situation. And then it doesn't work. And they are feeding. And they are useless because their odd pick and build means they are either tanky without any damage or cc to threaten enemy team or they are all damage but die in 1.5 sec before they can make use of that damage.","replies":[{"poster":"Bronze 5 Teeto","date":"2017-10-05T00:06:30.208+0000","up_votes":2,"down_votes":0,"body":"The fun part is when ur enemy top laner and jg are duo smurf and u get dove under ur tower by nasus and hecarim 3 times before 10 minutes while ur jungler is busy with gromps. LOL! Tilting! More of what you would expect if ur plat playing with silver is to just shit all over them 1v5 every game but it doesnt work out like that :)","replies":[{"poster":"woodvsmurph","date":"2017-10-05T00:23:06.603+0000","up_votes":4,"down_votes":0,"body":"Too true.\n\nTrolling as teemo top and kill a fed kayn while splitpushing 1v3, nearly get 2 more kills; called a feeder. Meanwhile they can 4v2 get aced without killing anyone and they aren't feeders somehow.\n\nDie to a repeat gank thanks to flash cheese and laner taking ignite. Then ganked by a 3/0/0 mid at level 4 and die when you were about to 1v1 kill your opponent. Get told to stay bronze. Go on to be able to 1v2 double kill laner and jungler by level 11. Carry the game. Get 0 honor or apology for being flamed all game.\n\nTake a feeding team, stall out the enemy essentially 1v5 for 15 min till your adc can come online. Set up winning baron bait and minion wave to push bot tier 2 tower while you win a miracle 5v5 via tp flank onto the only ward in area - which you placed because team can't afford to use their free wards. Get baron. Pull 3 fed enemies top to stop your splitpush with baron. Get a kill and escape - keeping 2 more people top and giving team a 4v2 easy double kill and bot inhib tower. 1v2 stop enemy backs and let team win the game. 0 thanks - just flame and getting called garbage for not grouping. Never mind we would lose the 5v5 guaranteed.\n\nSo many players know so little. And the worst part is, they know so little they think they are right. It's not even worth your time explaining how they are wrong because they don't have the game knowledge to comprehend what you say or how it is better than what they did. Not that I know everything. But I know a lot more than most (low and high elo) would give me credit for.","replies":[]}]}]},{"poster":"Bańg","date":"2017-10-05T00:01:47.788+0000","up_votes":6,"down_votes":0,"body":"come to diamond 5 and tell me how long you last before quitting the game for a couple of days.\n\nthat elo literally takes your soul and fucks it","replies":[{"poster":"kaironen","date":"2017-10-05T00:53:53.623+0000","up_votes":1,"down_votes":0,"body":"I've been in d5 for a long time (just got it back since i quit for 4 months about a month ago). That elo is just pure elo hell. It always feels like you get the players that either don't care or are boosted. However, once you get to d4+ it starts being decent again.","replies":[{"poster":"Bańg","date":"2017-10-05T01:17:51.929+0000","up_votes":1,"down_votes":0,"body":"d4 is literally the same exact thing as d5 but people got lucky streaks.\n\nthankfully im not d4 and climbed past it but holy fuck everytime i smurf i realzie what a worthless cause that elo is.\n\n","replies":[]}]},{"poster":"Bronze 5 Teeto","date":"2017-10-05T00:07:31.513+0000","up_votes":1,"down_votes":0,"body":"Well I would be the reason everyone else quit i think lol","replies":[]}]},{"poster":"zarxus1234","date":"2017-10-04T23:48:45.818+0000","up_votes":6,"down_votes":0,"body":"silver is the hardest elo to climb out of. You have to be like a gold 3 player to just have a 60% winrate in silver. Its so luck base its unreal.","replies":[{"poster":"FatedSaviour","date":"2017-10-05T00:36:05.834+0000","up_votes":1,"down_votes":0,"body":"really, ive been in both, it was much harder to get out of bronze, i can just consistantly win in silver, but in bronze my teamates have no game knowledge and blame eachother for everything instead of thinking about what they did wrong, and saying, we should stop fighting","replies":[{"poster":"Hèntaî ","date":"2017-10-05T00:59:01.128+0000","up_votes":3,"down_votes":0,"body":"Bronze was a cake walk, I didnt have people quit because they didnt get 5 kills within the first 10 minutes of the game. Nor did I have people rage over the smallest stuff. Tbh bronze was fun a'f","replies":[{"poster":"FatedSaviour","date":"2017-10-05T01:06:06.419+0000","up_votes":2,"down_votes":0,"body":"once i got out of my bad team curse silver has been easy af, bronze tho, i had constant trolls, people who didnt have any game knowledge, no communication, and are displeased when i (the support) isnt their personal slave, or the adc who thinks sion support is trolling so full ap draven he goes, at least sion support is easy af to abuse in bronze, maybe im just lucky in silver and unlucky in bronze, maybe its an OCE thing","replies":[]}]},{"poster":"Emporio Sabo","date":"2018-11-03T17:32:35.936+0000","up_votes":2,"down_votes":0,"body":"I can attest that bronze is easy , i climbed from bronze 2 to silver 5 by spamming SIon","replies":[]}]},{"poster":"woodvsmurph","date":"2017-10-05T00:28:08.259+0000","up_votes":1,"down_votes":0,"body":"You can do it though with some practice. I was s3, got a 2 week 90% auto-loss streak, and dropped to s5 0lp. Got a chat restriction for 2 weeks for replying to teammate harassment with some choice words. Worked to improve my behavior somewhat. Got an end to my loss streak and climbed to g3. I only ever barely hit g4 last year and was always a silver before that. This season I can confidently say I've gone from only deserving g5 to holding my own in g3 barring games against smurfs from plat+. Not bad for starting in b3 due to poor matchmaking in placement matches.\n\nYeah silver is probably the hardest, but it can be done. Even if you aren't some plat smurf or getting elo boosted by someone.","replies":[]}]},{"poster":"Monkey With Guns","date":"2017-10-04T23:43:06.304+0000","up_votes":1,"down_votes":0,"body":"https://www.reddit.com/r/leagueoflegends/comments/74c4ac/my_last_ranked_game_experience_oh_gawd/\n\nYeah I just had a silver game where the tilt was R E A L. You can read about it there if you'd like ^","replies":[{"poster":"Bronze 5 Teeto","date":"2017-10-04T23:44:31.086+0000","up_votes":2,"down_votes":0,"body":"your reddit post got deleted by a mod i think lol","replies":[{"poster":"Monkey With Guns","date":"2017-10-05T00:04:06.401+0000","up_votes":1,"down_votes":0,"body":"Huh, doesnt look like it to me, \nhttps://gyazo.com/98133be338e7f65ea17caf898bae9afa\n\nhttps://www.reddit.com/r/leagueoflegends/comments/74c4ac/my_last_ranked_game_experience_oh_gawd/\n\nMaybe i copied the link wrong?","replies":[{"poster":"Bronze 5 Teeto","date":"2017-10-05T00:10:38.400+0000","up_votes":1,"down_votes":0,"body":"idk i cant read it when i click the reddit one but i see ur story in the gyazo and it sounds like a typical game of league lol","replies":[]}]}]}]},{"poster":"nm1010","date":"2017-10-05T01:21:59.540+0000","up_votes":3,"down_votes":1,"body":"It's a common problem for low plat players to have issues climbing in a clown fiesta environment. You are good at the game, but you don't understand macro enough to fully 1v9 carry and get too caught up in the silver style of games. It has little to due with \"elo hell\" and is more of a general lack of understanding how to carry clowns causing you to tilt.","replies":[]},{"poster":"JumpingFox23","date":"2018-08-15T17:30:27.931+0000","up_votes":1,"down_votes":0,"body":"As a silver player i just wanna say i believe that you cannot relay on team in low-elo if you want to esc. Bronze/Silver you have to focus on every mistake what team is doing meaning lets say they dont often do baron (fuck it build enough lifesteal/attack speed/health) do it solo dragons as well. Most of bronze/silver feed bot/support so the question is not what role do you want to play i feel the question is more of what role you must play (support/adc) next is total score as i did say B5 - S1 you are solo \"no team at all\" meaning 85% you have to solo carry which is really annoying and often you will find yourself dropping MMR mostly because your team didnt done shit lets say im playing easy mechanical champion veiger my score is 25/3/4 and total score is 32-44 this is bornze/silver if you wanna rank up you have to do solo alone at least more then 60-65% alone because matchmakeing is awful within the players.\n\nIf you made by the end of post i just wanna say thank you for reading it and try to stay calm in league","replies":[]},{"poster":"IBreedBagels","date":"2018-02-06T22:33:03.167+0000","up_votes":1,"down_votes":0,"body":"I made this exact post not too long ago. Plat 3 player here hard stuck in silver lol. In fact managed to lose my way from S1 down to S5. I don't understand either.","replies":[]},{"poster":"The Deckowner","date":"2017-10-05T00:35:40.395+0000","up_votes":1,"down_votes":0,"body":"If you play on your plat account you will see way more people rage flame troll int and give up.","replies":[{"poster":"Bronze 5 Teeto","date":"2017-10-05T04:52:59.726+0000","up_votes":1,"down_votes":0,"body":"just the whole play style difference between the two makes the game farrrrrrr more enjoyable. I know theres some bitches in plat too and some ery toxic people but at least they're interactive and funner to play with(example: tp gank in silver-team recalls and u die. tp gank in plat, team reacts and makes play). Silver players start raging in champ select and then go do the most retarded shit like dive full hp tryndameres under tower with no minions then rage at you... fuck idiots lol....","replies":[]}]},{"poster":"KVbqbFsC8e","date":"2017-10-05T01:42:13.411+0000","up_votes":1,"down_votes":0,"body":"I've never had any trouble at all getting through Silver. Plat is a nightmare though.","replies":[]},{"poster":"MagicFlyingLlama","date":"2017-10-05T00:14:19.718+0000","up_votes":1,"down_votes":0,"body":"Bronze is worse. I have watched it, as bad as silver is, bronze is a complete shitshow; all you can do is laugh at it.\nsilver is mostly luck for the last two seasons, bronze is *entirely* luck.","replies":[{"poster":"Bronze 5 Teeto","date":"2017-10-05T00:17:48.698+0000","up_votes":1,"down_votes":0,"body":"give me ur bronze account lol. nothing is entirely luck. if you play on it long enough you will certainly get out of it.","replies":[{"poster":"MagicFlyingLlama","date":"2017-10-05T01:38:56.876+0000","up_votes":1,"down_votes":0,"body":"I dont have a bronze account (or any alts at all - i dont have the misguided belief that i deserve better than my rank - Gold V) and never have, i just watch friends that are proud Bronze Vs.","replies":[]}]}]},{"poster":"2Charmnot2Charm","date":"2017-10-05T01:33:21.984+0000","up_votes":1,"down_votes":0,"body":"Makes me glad that 1 of my 2 silver smurfs already has plat mmr so i don't have to worry about bronze-golds refusing to get carried by me.","replies":[]},{"poster":"kaironen","date":"2017-10-05T00:51:14.101+0000","up_votes":1,"down_votes":0,"body":"I think silver is hard due to the difference in skills of players. Last time I went there on my smurf account it felt like silver 5-3 was pretty easy (close to bronze in skill). However, when you go to silver 3-1, they start playing a lot better and it feels like you are playing vs gold players sometimes.","replies":[]}]} |
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{"poster":"1nvade","date":"2017-08-06T04:58:50.348+0000","title":"My friends account has been hacked","subforum":"Help & Support (OCE)","up_votes":1,"down_votes":0,"body":"They have changed his passwords and his email so he can't login and he cant even receive emails to recover the password.","replies":[{"poster":"Domine Vindictam","date":"2017-08-06T06:53:01.130+0000","up_votes":1,"down_votes":0,"body":"https://support.riotgames.com/hc/en-us/requests/new is the best way to go, they will ask many questions but your friend should know ! Good luck!","replies":[{"poster":"1nvade","date":"2017-08-06T09:50:46.912+0000","up_votes":1,"down_votes":0,"body":"thanks for the help! :)","replies":[{"poster":"Ninox","date":"2017-08-06T10:15:46.078+0000","up_votes":1,"down_votes":0,"body":"> [{quoted}](name=1nvade,realm=OCE,application-id=ElA0rvVL,discussion-id=tkEnhl2G,comment-id=00000000,timestamp=2017-08-06T09:50:46.912+0000)\n>\n> thanks for the help! :)\n\nTell him to submit an Account Recovery ticket specifically and ideally to change the password to his attached email account/the email he signed up with as well, as it could also be compromised. \n\nAnd remember! A long password is better than a random one, most passwords are \"guessed\" by computers randomly putting letters together, so something really long like \"thecowwenttothemarketandboughtsomehayfordinner\" is a lot more secure,takes much longer to crack and is more memorable than \"a@17Hj\".","replies":[]}]}]}]} |
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"date": "2002-04-11 13:46:18",
"title": "Íslenska Vestrið.",
"text": "Ég sit hér á barnum og sötra á Baileys.\nEr ég lít á klukkuna sé ég það að hún er að ganga níu á fimmtudagskveldi en það er enn bjart úti.Er ég sný mér við sé eg að það er skuggalegur maður sem labbar inn um dyrnar á barnum. Ég horfi á hann i smástund og er hann lítur á mig segir hann “viltu koma að spila? Já ekkert mál svara ég.\nVið tökum nokkra pokera og hann er að taka allt af mér. Er ég kveiki mér í einni Malboro sé ég að hann er búin að vera klórasér mikið í pungnum þannig að ég sleppi sígarettunni og segi upps. Er ég teygi mig eftir henni þá sé ég að situr á heillri hrúgu af spilum þannig að eg stend upp og kalla hann svindlara. Hann stendur upp alveg öskureiður og segir “viltu virkilega fara í þennann leik.\nÉg brosa og segi Heldurðu virkilega að ég hræðist þig krypplingurinn þinn.\nHann labbar upp að mér og slær mig hanskanum sinum utan undir og segir kl 00:00 mun ég eyða þér. Ekkert mál segi ég.\nÉr klukkann slær tólf að miðnæti þá labba ég út á götu og bíð hans.Þegar hann kemur þá gerum við okkur tilbúna til þess að draga. Er við bíðum eftir kalli dómarans þá er bærinn svo hljóður að ég heyri í Gullfoss sem er hérna rétt hjá.\nDómarinn kallar og við drögum.Eftir að reykur hverfur sé ég að eg hef ekki hitt og hann ekki heldur og ég lít í kringum mig og sé að ég hef skotið í vindhanann og hann hefur skotið gínu sem var staðsett í búðar glugganum.Við förum að hlæja og skemmtum okkur mjög vel yfir þessu en hláturinn i honum fer svolítið í taugarnar þannig að ég dreg aftur upp byssuna og skít í áttina til hans og viti menn ég hitti hann beint í nefið og hann datt eins og fluga til jarðar. Síðan set ég byssuna aftur i hulstrið og labba inn á barinn og fær smá vodka i kok.\nEndir.",
"url": "https://www.hugi.is/smasogur/greinar/72058/islenska-vestrid/",
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"id": "503002",
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{
"user": "tmar",
"user_id": "14050",
"date": "2002-04-15 11:15:00",
"id": "503003",
"reply_to_id": "503002",
"text": "jamm….allt í lagi en ég hef séð það betra frá þér…hver segir kl.00:00 mun ég eyða þér!!? afhverju á miðnætti eða þess háttar….full margar stafsetningar- og uppsetningarvillur…hef það á tilfinningunni að þessi saga hafi verið unnin í miklum flýti….þarfnast meiri yfirlega því þetta er annars ágæt hugmynd"
},
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"user_id": "14745",
"date": "2002-04-15 16:22:03",
"id": "503004",
"reply_to_id": "503003",
"text": "Jú ég hefði mátt lesa aftur yfir hana.\nÞegar ég segi að eg muni eyða þér þá er ég svona að blanda nútima íslensku yfir í forna tíma.\nÞessi hugmynd á sögun varð bara til á kannski 10 mínutum og ákvað að skella henni á Huga og ég skrifaði bara það sem mér datt i hug á meðan."
},
{
"user": "Sithy",
"user_id": "18816",
"date": "2002-04-15 11:19:16",
"id": "503005",
"reply_to_id": "503002",
"text": "flott hugmynd! :) fíla íslenska vestrið…"
}
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{"poster":"FearMyPhear","date":"2017-06-19T15:59:25.157+0000","title":"Ich erhalte manchmal keine Noten nach dem Spiel mehr","subforum":"Melde einen Bug","embed":{"description":"Imgur: The most awesome images on the Internet.","url":"http://imgur.com/a/MLV7P","image":"http://i.imgur.com/RkkpW93.jpg?fb"},"up_votes":1,"down_votes":0,"body":"Hi,\r\nbeim ersten und fünften der hier gezeigten Spiele habe ich keine Note erhalten (das sechste war ein Botspiel). Woran liegt das?","replies":[{"poster":"Raphim01","date":"2017-06-23T16:04:42.847+0000","up_votes":2,"down_votes":0,"body":"Hab ich auch manchmal. Du bist nicht der einzige ^^\nIch deute das einfach so: Wir sind soooo Godlike, dass wir einfach nicht bewertet werden können xD","replies":[]},{"poster":"Nycaria","date":"2017-06-19T16:25:01.361+0000","up_votes":1,"down_votes":0,"body":"Hast du keine erhalten oder wird sie nur in der History nicht angezeigt?","replies":[{"poster":"FearMyPhear","date":"2017-06-19T16:27:18.902+0000","up_votes":1,"down_votes":0,"body":"Ich habe generell keine erhalten","replies":[]}]}]} |
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{"_id":"B06262","titles":["The true loyalist, or the obedient subject. To the tune of, Let Cæsar live long."],"place":"[London] :","date":"[between 1682-1700]","publisher":"Printed for J. Back, at the Black-Boy, on London-bridge,","notes":["Caption title.","Place and date range of publication suggested by Wing.","Two dates in ms. follow imprint: 1683 and 1686.","With music.","In two columns.","Reproduction of the original in the Bodleian Library."],"editionDate":"1682-1700?","language":"eng","keywords":["Political ballads and songs -- England -- 17th century.","Great Britain -- Politics and government -- 17th century -- Songs and music.","Broadsides -- England -- 17th century."]} |
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{
"sn35.18:0.1": "Saṁyutta Nikāya 35.18 ",
"sn35.18:0.2": "2. Yamakavagga ",
"sn35.18:0.3": "Dutiyanoceassādasutta ",
"sn35.18:1.1": "“No cedaṁ, bhikkhave, rūpānaṁ assādo abhavissa, nayidaṁ sattā rūpesu sārajjeyyuṁ. ",
"sn35.18:1.2": "Yasmā ca kho, bhikkhave, atthi rūpānaṁ assādo, tasmā sattā rūpesu sārajjanti. ",
"sn35.18:1.3": "No cedaṁ, bhikkhave, rūpānaṁ ādīnavo abhavissa, nayidaṁ sattā rūpesu nibbindeyyuṁ. ",
"sn35.18:1.4": "Yasmā ca kho, bhikkhave, atthi rūpānaṁ ādīnavo, tasmā sattā rūpesu nibbindanti. ",
"sn35.18:1.5": "No cedaṁ, bhikkhave, rūpānaṁ nissaraṇaṁ abhavissa, nayidaṁ sattā rūpehi nissareyyuṁ. ",
"sn35.18:1.6": "Yasmā ca kho, bhikkhave, atthi rūpānaṁ nissaraṇaṁ, tasmā sattā rūpehi nissaranti. ",
"sn35.18:1.7": "No cedaṁ, bhikkhave, saddānaṁ … ",
"sn35.18:1.8": "gandhānaṁ … ",
"sn35.18:1.9": "rasānaṁ … ",
"sn35.18:1.10": "phoṭṭhabbānaṁ … ",
"sn35.18:1.11": "dhammānaṁ assādo abhavissa, nayidaṁ sattā dhammesu sārajjeyyuṁ. ",
"sn35.18:1.12": "Yasmā ca kho, bhikkhave, atthi dhammānaṁ assādo, tasmā sattā dhammesu sārajjanti. ",
"sn35.18:1.13": "No cedaṁ, bhikkhave, dhammānaṁ ādīnavo abhavissa, nayidaṁ sattā dhammesu nibbindeyyuṁ. ",
"sn35.18:1.14": "Yasmā ca kho, bhikkhave, atthi dhammānaṁ ādīnavo, tasmā sattā dhammesu nibbindanti. ",
"sn35.18:1.15": "No cedaṁ, bhikkhave, dhammānaṁ nissaraṇaṁ abhavissa, nayidaṁ sattā dhammehi nissareyyuṁ. ",
"sn35.18:1.16": "Yasmā ca kho, bhikkhave, atthi dhammānaṁ nissaraṇaṁ, tasmā sattā dhammehi nissaranti. ",
"sn35.18:2.1": "Yāvakīvañca, bhikkhave, sattā imesaṁ channaṁ bāhirānaṁ āyatanānaṁ assādañca assādato, ādīnavañca ādīnavato, nissaraṇañca nissaraṇato yathābhūtaṁ nābbhaññaṁsu, neva tāva, bhikkhave, sattā sadevakā lokā samārakā sabrahmakā sassamaṇabrāhmaṇiyā pajāya sadevamanussāya nissaṭā visaññuttā vippamuttā vimariyādīkatena cetasā vihariṁsu. ",
"sn35.18:2.2": "Yato ca kho, bhikkhave, sattā imesaṁ channaṁ bāhirānaṁ āyatanānaṁ assādañca assādato, ādīnavañca ādīnavato, nissaraṇañca nissaraṇato yathābhūtaṁ abbhaññaṁsu, atha, bhikkhave, sattā sadevakā lokā samārakā sabrahmakā sassamaṇabrāhmaṇiyā pajāya sadevamanussāya nissaṭā visaññuttā vippamuttā vimariyādīkatena cetasā viharantī”ti. ",
"sn35.18:2.3": "Chaṭṭhaṁ. "
} |
{
"forum_title": "Breytingar, viðhald og viðgerðir",
"id": "11949",
"title": "Patrol-pakkdós aftan á vél.",
"url": "http://www.jeppaspjall.is/viewtopic.php?f=5&t=11949",
"posts": [
{
"user_name": "Siggi Kári",
"text": "Vitið þið hvaða stærð er af pakkdós aftan á vélinni ?\nMálið er að ég er að láta taka upp kassann og sá að það er smá smit með pakkdósinni, kannaði málið hjá umboðinu og þar á bæ kostar hún rúmlega 7000 kr, sem mér finnst vel í lagt....og gátu ekki gefið upp neinar stærðir.\nKv Siggi",
"date": "2012-07-27 08:56:00",
"post_id": "62012",
"reply_to_id": false
},
{
"user_name": "Siggi Kári",
"text": "Ps þetta er 2.8 1998 model",
"date": "2012-07-27 12:34:00",
"post_id": "62023",
"reply_to_id": "62012"
}
],
"date": "2012-07-27 08:56:00"
} |
{"rank":"29","song_id":"20202","song_name":"Too Close","artist_id":"312212","display_artist":"Next","spotify_id":"2fyTojfPYs67KBWN4WYRX7","lyrics":"I wonder if she could tell I'm hard right now, hmmm\nYeah, come on, dance for me baby, ha ha ha, yeah\nOh, oh, you feel that? Alright\nCome on, don't stop now\nYou done did it, come on, uh, yeah, alright, hold on\nBaby when we're grinding\nI get so excited\nOoh, how I like it\nI try but I can't fight it\nOh, your dancing real close\nPlus it's real real slow\n(You know what you're doing, don't you)\nYou're making it hard for me\n\nAll the slow songs you requested\nYou're dancing like you're naked\nOh, it's almost like we're sexing (oh yeah)\nYeah boo, I like it\nNo, I can't deny it\nBut I know you can tell\nI'm excited, oh girl\n\nStep back you're dancing kinda close\nI feel a little poke coming through\nOn you\n\nNow girl I know you felt it\nBefore you know I can't help it\nYou know what I want to do\n\nBaby when we're grinding\nI get so excited\nOoh, how I like it\nI try but I can't fight it\nOh, your dancing real close\nPlus it's real real slow\n(You know what you're doing, don't you)\nYou're making it hard for me\n\nBaby girl's dancing so close\nAin't a good idea\nCuz I'mma want you now and here\nThe way that you shake it on me\nMakes me want you so bad sexually\nOh girl\n\nStep back you're dancing kinda close\nI feel a little poke coming through\nOn you\n\nBaby when we're grinding\nI get so excited\nOoh, how I like it\nI try but I can't fight it\nOh, your dancing real close\nPlus it's real real slow\n(You know what you're doing, don't you)\nYou're making it hard for me\n\nBaby when we're grinding\nI get so excited\nOoh, how I like it\nI try but I can't fight it\nOh, your dancing real close\nPlus it's real real slow\n(You know what you're doing, don't you)\nYou're making it hard for me\n\nI love when you shake it like that, ah, ah, ah\nI see that you like it like that, oh, oh, oh\nI love when you shake it like that, ah, ah, ah\nI see that you like it like that, oh, oh, oh\n\nWell baby I like the way that you grind\nOn me\nBaby when we're grinding\nI get so excited\nOoh, how I like it\nI try but I can't fight it\nOh, your dancing real close\nPlus it's real real slow\n(You know what you're doing, don't you)\nYou're making it hard for me\n\nI like the way you move\nYou're making me want you\nOh the way\nI like those things you do\nBut you're a little too close\n"} |
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Munoz-Arancibia, F.E. Bauer, G. Pignata, F. Forster, A. Mourao, L. Hernandez-Garcia, L. Galbany, J. Silva-Farfan, R. Hoshino, E. Camacho, J. Arredondo, G. Cabrera-Vives, R. Carrasco-Davis, P.A. Estevez, P. Huijse, A. Moya E. Reyes, I. Reyes, P. Sanchez-Saez, D. Rodriguez-Mancini, M. Catelan, S. Eyheramendy, M.J. Graham on behalf of the ALeRCE broker", "discovery_datetime": "2022-08-27 10:02:50.997", "at_type": "1", "internal_name": "ZTF22abdmqzt", "remarks": "Early SN candidate (r-rise > 0.31+-0.07 mag/day) classified using ALeRCE's stamp classifier (Carrasco-Davis et al. 2021) and the public ZTF stream. 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Cabrera-Vives, R. Carrasco-Davis, P.A. Estevez, P. Huijse, A. Moya E. Reyes, I. Reyes, P. Sanchez-Saez, D. Rodriguez-Mancini, M. Catelan, S. Eyheramendy, M.J. Graham on behalf of the ALeRCE broker", "discovery_datetime": "2022-08-21 08:12:50.996", "at_type": "1", "internal_name": "ZTF22abdmhte", "remarks": "SN candidate classified using ALeRCE's stamp classifier (Carrasco-Davis et al. 2021) and the public ZTF stream. Discovery image and light curve in http://alerce.online/object/ZTF22abdmhte ", "non_detection": {"obsdate": "2022-08-21 07:27:39.004", "limiting_flux": "20.6055", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "photometry": {"photometry_group": {"0": {"obsdate": "2022-08-21 08:12:50.996", "flux": "20.6038", "flux_error": "0.227594", "limiting_flux": "20.5642", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "1": {"obsdate": "2022-08-23 07:41:20.003", "flux": "20.517", "flux_error": "0.262413", "limiting_flux": "20.7085", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "2": {"obsdate": "2022-08-25 10:23:40.004", "flux": "20.5455", "flux_error": "0.336011", "limiting_flux": "20.7142", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "3": {"obsdate": "2022-08-27 09:51:46.996", "flux": "20.335873", "flux_error": "0.1963369", "limiting_flux": "20.542889", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}}}, "host_name": "SDSS J232354.72+131718.7"}, "8": {"ra": {"value": "359.50318619999996", "error": "0.085", "units": "arcsec"}, "dec": {"value": "6.7819406", "error": "0.085", "units": "arcsec"}, "reporting_group_id": "74", "discovery_data_source_id": "48", "reporter": "A. Munoz-Arancibia, F.E. Bauer, G. Pignata, F. Forster, A. Mourao, L. Hernandez-Garcia, L. Galbany, J. Silva-Farfan, R. Hoshino, E. Camacho, J. Arredondo, G. Cabrera-Vives, R. Carrasco-Davis, P.A. Estevez, P. Huijse, A. Moya E. Reyes, I. Reyes, P. Sanchez-Saez, D. Rodriguez-Mancini, M. Catelan, S. Eyheramendy, M.J. Graham on behalf of the ALeRCE broker", "discovery_datetime": "2022-08-25 10:25:43.003", "at_type": "1", "internal_name": "ZTF22abdlqkr", "remarks": "SN candidate classified using ALeRCE's stamp classifier (Carrasco-Davis et al. 2021) and the public ZTF stream. Discovery image and light curve in http://alerce.online/object/ZTF22abdlqkr ", "non_detection": {"obsdate": "2022-08-25 09:06:14.000", "limiting_flux": "20.4145", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "photometry": {"photometry_group": {"0": {"obsdate": "2022-08-25 10:25:43.003", "flux": "20.7607", "flux_error": "0.250305", "limiting_flux": "20.753", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "1": {"obsdate": "2022-08-27 08:52:46.998", "flux": "20.324644", "flux_error": "0.18467467", "limiting_flux": "20.856298", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}}}, "host_name": "SDSS J235800.88+064657.0"}, "9": {"ra": {"value": "355.75759535", "error": "0.085", "units": "arcsec"}, "dec": {"value": "-4.2649139", "error": "0.085", "units": "arcsec"}, "reporting_group_id": "74", "discovery_data_source_id": "48", "reporter": "A. Munoz-Arancibia, F.E. Bauer, G. Pignata, F. Forster, A. Mourao, L. Hernandez-Garcia, L. Galbany, J. Silva-Farfan, R. Hoshino, E. Camacho, J. Arredondo, G. Cabrera-Vives, R. Carrasco-Davis, P.A. Estevez, P. Huijse, A. Moya E. Reyes, I. Reyes, P. Sanchez-Saez, D. Rodriguez-Mancini, M. Catelan, S. Eyheramendy, M.J. Graham on behalf of the ALeRCE broker", "discovery_datetime": "2022-08-23 10:06:41.996", "at_type": "1", "internal_name": "ZTF22abdljrg", "remarks": "SN candidate classified using ALeRCE's stamp classifier (Carrasco-Davis et al. 2021) and the public ZTF stream. Discovery image and light curve in http://alerce.online/object/ZTF22abdljrg ", "non_detection": {"obsdate": "2022-08-23 09:33:05.999", "limiting_flux": "20.6608", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "photometry": {"photometry_group": {"0": {"obsdate": "2022-08-23 10:06:41.996", "flux": "20.4874", "flux_error": "0.259063", "limiting_flux": "20.635", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "1": {"obsdate": "2022-08-27 08:33:35.001", "flux": "19.992983", "flux_error": "0.17165698", "limiting_flux": "20.74798", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}}}, "host_name": "SDSS J234301.94-041552.1", "host_redshift": "0.14386"}, "10": {"ra": {"value": "261.8476473", "error": "0.085", "units": "arcsec"}, "dec": {"value": "56.558826800000006", "error": "0.085", "units": "arcsec"}, "reporting_group_id": "74", "discovery_data_source_id": "48", "reporter": "A. Munoz-Arancibia, F.E. Bauer, G. Pignata, F. Forster, A. Mourao, L. Hernandez-Garcia, L. Galbany, J. Silva-Farfan, R. Hoshino, E. Camacho, J. Arredondo, G. Cabrera-Vives, R. Carrasco-Davis, P.A. Estevez, P. Huijse, A. Moya E. Reyes, I. Reyes, P. Sanchez-Saez, D. Rodriguez-Mancini, M. Catelan, S. Eyheramendy, M.J. Graham on behalf of the ALeRCE broker", "discovery_datetime": "2022-08-27 06:24:26.001", "at_type": "1", "internal_name": "ZTF22abdjqlm", "remarks": "Early SN candidate (g-rise > 0.90+-0.05 mag/day, r-rise > 0.67+-0.06 mag/day) classified using ALeRCE's stamp classifier (Carrasco-Davis et al. 2021) and the public ZTF stream. Discovery image and light curve in http://alerce.online/object/ZTF22abdjqlm ", "non_detection": {"obsdate": "2022-08-25 04:50:28.003", "limiting_flux": "20.639", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "photometry": {"photometry_group": {"0": {"obsdate": "2022-08-27 06:24:26.001", "flux": "19.268732", "flux_error": "0.13237941", "limiting_flux": "20.538286", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "1": {"obsdate": "2022-08-27 07:39:29.998", "flux": "18.732298", "flux_error": "0.10633819", "limiting_flux": "20.30673", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}}}, "host_name": "SDSS J172723.42+563331.7"}, "11": {"ra": {"value": "276.87701145", "error": "0.085", "units": "arcsec"}, "dec": {"value": "47.240329583333335", "error": "0.085", "units": "arcsec"}, "reporting_group_id": "74", "discovery_data_source_id": "48", "reporter": "A. Munoz-Arancibia, F.E. Bauer, G. Pignata, F. Forster, A. Mourao, L. Hernandez-Garcia, L. Galbany, J. Silva-Farfan, R. Hoshino, E. Camacho, J. Arredondo, G. Cabrera-Vives, R. Carrasco-Davis, P.A. Estevez, P. Huijse, A. Moya E. Reyes, I. Reyes, P. Sanchez-Saez, D. Rodriguez-Mancini, M. Catelan, S. Eyheramendy, M.J. Graham on behalf of the ALeRCE broker", "discovery_datetime": "2022-08-21 05:52:14.002", "at_type": "1", "internal_name": "ZTF22abdixyz", "remarks": "SN candidate classified using ALeRCE's stamp classifier (Carrasco-Davis et al. 2021) and the public ZTF stream. Discovery image and light curve in http://alerce.online/object/ZTF22abdixyz ", "non_detection": {"obsdate": "2022-08-18 06:16:43.000", "limiting_flux": "20.605", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "photometry": {"photometry_group": {"0": {"obsdate": "2022-08-21 05:52:14.002", "flux": "21.1212", "flux_error": "0.385908", "limiting_flux": "20.7173", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "1": {"obsdate": "2022-08-23 05:49:29.997", "flux": "20.8196", "flux_error": "0.363032", "limiting_flux": "20.6131", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "2": {"obsdate": "2022-08-23 06:56:11.000", "flux": "20.6162", "flux_error": "0.249741", "limiting_flux": "20.6663", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "3": {"obsdate": "2022-08-25 04:26:42.999", "flux": "20.5206", "flux_error": "0.288585", "limiting_flux": "20.6406", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "4": {"obsdate": "2022-08-27 05:19:46.001", "flux": "20.2972", "flux_error": "0.17612316", "limiting_flux": "20.664392", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "5": {"obsdate": "2022-08-27 07:38:07.996", "flux": "20.07266", "flux_error": "0.19193694", "limiting_flux": "20.480423", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}}}}, "12": {"ra": {"value": "273.44026936", "error": "0.085", "units": "arcsec"}, "dec": {"value": "23.12195388", "error": "0.085", "units": "arcsec"}, "reporting_group_id": "74", "discovery_data_source_id": "48", "reporter": "A. Munoz-Arancibia, F.E. Bauer, G. Pignata, F. Forster, A. Mourao, L. Hernandez-Garcia, L. Galbany, J. Silva-Farfan, R. Hoshino, E. Camacho, J. Arredondo, G. Cabrera-Vives, R. Carrasco-Davis, P.A. Estevez, P. Huijse, A. Moya E. Reyes, I. Reyes, P. Sanchez-Saez, D. Rodriguez-Mancini, M. Catelan, S. Eyheramendy, M.J. Graham on behalf of the ALeRCE broker", "discovery_datetime": "2022-08-21 05:55:38.001", "at_type": "1", "internal_name": "ZTF22abdipla", "remarks": "Early SN candidate (r-rise > 0.08+-0.03 mag/day) classified using ALeRCE's stamp classifier (Carrasco-Davis et al. 2021) and the public ZTF stream. Discovery image and light curve in http://alerce.online/object/ZTF22abdipla ", "non_detection": {"obsdate": "2022-08-21 04:44:11.999", "limiting_flux": "20.5013", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "photometry": {"photometry_group": {"0": {"obsdate": "2022-08-21 05:55:38.001", "flux": "20.5665", "flux_error": "0.244281", "limiting_flux": "20.6842", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "1": {"obsdate": "2022-08-23 06:44:34.996", "flux": "20.3736", "flux_error": "0.239243", "limiting_flux": "20.4492", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "2": {"obsdate": "2022-08-25 05:10:28.004", "flux": "20.3227", "flux_error": "0.253874", "limiting_flux": "20.5656", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "3": {"obsdate": "2022-08-27 04:44:11.999", "flux": "20.144022", "flux_error": "0.1693854", "limiting_flux": "20.531902", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "4": {"obsdate": "2022-08-27 05:25:53.003", "flux": "19.995676", "flux_error": "0.17904083", "limiting_flux": "20.482292", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}}}, "host_name": "SDSS J181345.66+230717.5"}, "13": {"ra": {"value": "336.885940475", "error": "0.085", "units": "arcsec"}, "dec": {"value": "14.462491825", "error": "0.085", "units": "arcsec"}, "reporting_group_id": "74", "discovery_data_source_id": "48", "reporter": "A. Munoz-Arancibia, F.E. Bauer, G. Pignata, F. Forster, A. Mourao, L. Hernandez-Garcia, L. Galbany, J. Silva-Farfan, R. Hoshino, E. Camacho, J. Arredondo, G. Cabrera-Vives, R. Carrasco-Davis, P.A. Estevez, P. Huijse, A. Moya E. Reyes, I. Reyes, P. Sanchez-Saez, D. Rodriguez-Mancini, M. Catelan, S. Eyheramendy, M.J. Graham on behalf of the ALeRCE broker", "discovery_datetime": "2022-08-25 06:37:22.002", "at_type": "1", "internal_name": "ZTF22abdfnyp", "remarks": "SN candidate classified using ALeRCE's stamp classifier (Carrasco-Davis et al. 2021) and the public ZTF stream. Discovery image and light curve in http://alerce.online/object/ZTF22abdfnyp ", "non_detection": {"obsdate": "2022-08-23 07:39:17.004", "limiting_flux": "20.789", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "photometry": {"photometry_group": {"0": {"obsdate": "2022-08-25 06:37:22.002", "flux": "20.5373", "flux_error": "0.278782", "limiting_flux": "20.7152", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "1": {"obsdate": "2022-08-25 07:42:48.001", "flux": "20.6671", "flux_error": "0.218924", "limiting_flux": "20.7263", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "2": {"obsdate": "2022-08-27 07:09:39.004", "flux": "20.218485", "flux_error": "0.20478189", "limiting_flux": "20.67081", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "3": {"obsdate": "2022-08-27 07:53:09.001", "flux": "19.98501", "flux_error": "0.17338984", "limiting_flux": "20.790905", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}}}, "host_name": "SDSS J222732.72+142744.2"}, "14": {"ra": {"value": "59.3319364", "error": "0.085", "units": "arcsec"}, "dec": {"value": "29.430094375000003", "error": "0.085", "units": "arcsec"}, "reporting_group_id": "74", "discovery_data_source_id": "48", "reporter": "A. Munoz-Arancibia, F.E. Bauer, G. Pignata, F. Forster, A. Mourao, L. Hernandez-Garcia, L. Galbany, J. Silva-Farfan, R. Hoshino, E. Camacho, J. Arredondo, G. Cabrera-Vives, R. Carrasco-Davis, P.A. Estevez, P. Huijse, A. Moya E. Reyes, I. Reyes, P. Sanchez-Saez, D. Rodriguez-Mancini, M. Catelan, S. Eyheramendy, M.J. Graham on behalf of the ALeRCE broker", "discovery_datetime": "2022-08-22 10:47:00.997", "at_type": "1", "internal_name": "ZTF22abdbpgi", "remarks": "SN candidate classified using ALeRCE's stamp classifier (Carrasco-Davis et al. 2021) and the public ZTF stream. Discovery image and light curve in http://alerce.online/object/ZTF22abdbpgi ", "non_detection": {"obsdate": "2022-08-15 11:33:17.004", "limiting_flux": "19.8934", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "photometry": {"photometry_group": {"0": {"obsdate": "2022-08-22 10:47:00.997", "flux": "19.9432", "flux_error": "0.257491", "limiting_flux": "19.7446", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "1": {"obsdate": "2022-08-25 10:44:37.997", "flux": "20.2233", "flux_error": "0.239236", "limiting_flux": "20.7315", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "2": {"obsdate": "2022-08-25 11:37:03.000", "flux": "20.040386", "flux_error": "0.15266418", "limiting_flux": "20.551493", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "3": {"obsdate": "2022-08-27 10:42:32.000", "flux": "20.130621", "flux_error": "0.20445333", "limiting_flux": "20.6008", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}}}, "host_name": "2MASS J03571963+2925483"}, "15": {"ra": {"value": "20.231795050000002", "error": "0.085", "units": "arcsec"}, "dec": {"value": "-14.39646705", "error": "0.085", "units": "arcsec"}, "reporting_group_id": "74", "discovery_data_source_id": "48", "reporter": "A. Munoz-Arancibia, F.E. Bauer, G. Pignata, F. Forster, A. Mourao, L. Hernandez-Garcia, L. Galbany, J. Silva-Farfan, R. Hoshino, E. Camacho, J. Arredondo, G. Cabrera-Vives, R. Carrasco-Davis, P.A. Estevez, P. Huijse, A. Moya E. Reyes, I. Reyes, P. Sanchez-Saez, D. Rodriguez-Mancini, M. Catelan, S. Eyheramendy, M.J. Graham on behalf of the ALeRCE broker", "discovery_datetime": "2022-08-25 10:03:56.998", "at_type": "1", "internal_name": "ZTF22abczsrs", "remarks": "SN candidate classified using ALeRCE's stamp classifier (Carrasco-Davis et al. 2021) and the public ZTF stream. Discovery image and light curve in http://alerce.online/object/ZTF22abczsrs ", "non_detection": {"obsdate": "2022-08-22 10:20:04.004", "limiting_flux": "20.1292", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "photometry": {"photometry_group": {"0": {"obsdate": "2022-08-25 10:03:56.998", "flux": "20.149185", "flux_error": "0.18012194", "limiting_flux": "20.497076", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "1": {"obsdate": "2022-08-27 11:04:40.996", "flux": "20.20349", "flux_error": "0.17007968", "limiting_flux": "20.52682", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}}}, "host_name": "WISEA J012055.65-142347.9"}, "16": {"ra": {"value": "334.7164299", "error": "0.085", "units": "arcsec"}, "dec": {"value": "14.554267575", "error": "0.085", "units": "arcsec"}, "reporting_group_id": "74", "discovery_data_source_id": "48", "reporter": "A. Munoz-Arancibia, F.E. Bauer, G. Pignata, F. Forster, A. Mourao, L. Hernandez-Garcia, L. Galbany, J. Silva-Farfan, R. Hoshino, E. Camacho, J. Arredondo, G. Cabrera-Vives, R. Carrasco-Davis, P.A. Estevez, P. Huijse, A. Moya E. Reyes, I. Reyes, P. Sanchez-Saez, D. Rodriguez-Mancini, M. Catelan, S. Eyheramendy, M.J. Graham on behalf of the ALeRCE broker", "discovery_datetime": "2022-08-23 07:39:17.004", "at_type": "1", "internal_name": "ZTF22abcvsrp", "remarks": "Early SN candidate (r-rise > 0.10+-0.04 mag/day) classified using ALeRCE's stamp classifier (Carrasco-Davis et al. 2021) and the public ZTF stream. Discovery image and light curve in http://alerce.online/object/ZTF22abcvsrp ", "non_detection": {"obsdate": "2022-08-23 06:12:06.002", "limiting_flux": "20.4098", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "photometry": {"photometry_group": {"0": {"obsdate": "2022-08-23 07:39:17.004", "flux": "20.9366", "flux_error": "0.250344", "limiting_flux": "20.8242", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "1": {"obsdate": "2022-08-25 06:37:22.002", "flux": "20.18657", "flux_error": "0.17693274", "limiting_flux": "20.73103", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "2": {"obsdate": "2022-08-27 07:09:39.004", "flux": "20.002436", "flux_error": "0.1784322", "limiting_flux": "20.581707", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "3": {"obsdate": "2022-08-27 07:53:09.001", "flux": "19.855118", "flux_error": "0.16888669", "limiting_flux": "20.73075", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}}}}, "17": {"ra": {"value": "19.815089642857142", "error": "0.085", "units": "arcsec"}, "dec": {"value": "0.5814291142857143", "error": "0.085", "units": "arcsec"}, "reporting_group_id": "74", "discovery_data_source_id": "48", "reporter": "A. Munoz-Arancibia, F.E. Bauer, G. Pignata, F. Forster, A. Mourao, L. Hernandez-Garcia, L. Galbany, J. Silva-Farfan, R. Hoshino, E. Camacho, J. Arredondo, G. Cabrera-Vives, R. Carrasco-Davis, P.A. Estevez, P. Huijse, A. Moya E. Reyes, I. Reyes, P. Sanchez-Saez, D. Rodriguez-Mancini, M. Catelan, S. Eyheramendy, M.J. Graham on behalf of the ALeRCE broker", "discovery_datetime": "2022-08-21 09:46:14.002", "at_type": "1", "internal_name": "ZTF22abbxmab", "remarks": "SN candidate classified using ALeRCE's stamp classifier (Carrasco-Davis et al. 2021) and the public ZTF stream. Discovery image and light curve in http://alerce.online/object/ZTF22abbxmab ", "non_detection": {"obsdate": "2022-08-18 11:16:49.002", "limiting_flux": "19.8687", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "photometry": {"photometry_group": {"0": {"obsdate": "2022-08-21 09:46:14.002", "flux": "20.077408", "flux_error": "0.16104797", "limiting_flux": "20.28345", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "1": {"obsdate": "2022-08-23 10:34:17.999", "flux": "20.105198", "flux_error": "0.17733257", "limiting_flux": "20.541122", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "2": {"obsdate": "2022-08-23 11:03:19.996", "flux": "20.255337", "flux_error": "0.1995963", "limiting_flux": "20.419329", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "3": {"obsdate": "2022-08-25 10:59:46.000", "flux": "20.122503", "flux_error": "0.1819545", "limiting_flux": "20.575842", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "4": {"obsdate": "2022-08-25 11:08:08.002", "flux": "20.0758", "flux_error": "0.175265", "limiting_flux": "20.4181", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "5": {"obsdate": "2022-08-27 10:02:50.997", "flux": "20.059628", "flux_error": "0.21251892", "limiting_flux": "20.23504", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "6": {"obsdate": "2022-08-27 11:08:46.000", "flux": "20.02167", "flux_error": "0.19045134", "limiting_flux": "20.62856", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}}}, "host_name": "SDSS J011915.62+003452.9"}, "18": {"ra": {"value": "336.47663642", "error": "0.085", "units": "arcsec"}, "dec": {"value": "36.16951352", "error": "0.085", "units": "arcsec"}, "reporting_group_id": "74", "discovery_data_source_id": "48", "reporter": "A. Munoz-Arancibia, F.E. Bauer, G. Pignata, F. Forster, A. Mourao, L. Hernandez-Garcia, L. Galbany, J. Silva-Farfan, R. Hoshino, E. Camacho, J. Arredondo, G. Cabrera-Vives, R. Carrasco-Davis, P.A. Estevez, P. Huijse, A. Moya E. Reyes, I. Reyes, P. Sanchez-Saez, D. Rodriguez-Mancini, M. Catelan, S. Eyheramendy, M.J. Graham on behalf of the ALeRCE broker", "discovery_datetime": "2022-08-21 07:24:54.999", "at_type": "1", "internal_name": "ZTF22abbgeok", "remarks": "SN candidate classified using ALeRCE's stamp classifier (Carrasco-Davis et al. 2021) and the public ZTF stream. Discovery image and light curve in http://alerce.online/object/ZTF22abbgeok ", "non_detection": {"obsdate": "2022-08-19 06:51:47.998", "limiting_flux": "20.4255", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "photometry": {"photometry_group": {"0": {"obsdate": "2022-08-21 07:24:54.999", "flux": "20.8347", "flux_error": "0.230452", "limiting_flux": "20.9586", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "1": {"obsdate": "2022-08-23 07:07:31.002", "flux": "20.8158", "flux_error": "0.205943", "limiting_flux": "20.9359", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "2": {"obsdate": "2022-08-25 06:48:41.003", "flux": "20.9129", "flux_error": "0.268805", "limiting_flux": "20.8454", "flux_units": "1", "filter_value": "110", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "3": {"obsdate": "2022-08-25 07:38:37.000", "flux": "20.7061", "flux_error": "0.22464", "limiting_flux": "20.6623", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}, "4": {"obsdate": "2022-08-27 07:18:12.004", "flux": "20.654154", "flux_error": "0.20415881", "limiting_flux": "20.69784", "flux_units": "1", "filter_value": "111", "instrument_value": "196", "exptime": "30", "observer": "Robot", "comments": "Data provided by ZTF"}}}, "host_name": "SDSS J222554.10+361007.4"}}} |
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