iVOD / 168647

Field Value
IVOD_ID 168647
IVOD_URL https://ivod.ly.gov.tw/Play/Clip/1M/168647
日期 2026-04-21
會議資料.會議代碼 院會-11-5-7
會議資料.會議代碼:str 第11屆第5會期第7次會議
會議資料.屆 11
會議資料.會期 5
會議資料.會次 7
會議資料.種類 院會
會議資料.標題 第11屆第5會期第7次會議
影片種類 Clip
開始時間 2026-04-21T10:35:17+08:00
結束時間 2026-04-21T10:51:16+08:00
影片長度 00:15:59
支援功能[0] ai-transcript
video_url https://ivod-lyvod.cdn.hinet.net/vod_1/_definst_/mp4:1MClips/a5162d46ac0a808932e3f85c06bf32fa0b71058f854e4ac4ab050b4bc408990a339739331fca71b35ea18f28b6918d91.mp4/playlist.m3u8
委員名稱 蔡易餘
委員發言時間 10:35:17 - 10:51:16
會議時間 2026-04-21T09:00:00+08:00
會議名稱 第11屆第5會期第7次會議(事由:一、討論事項:本院國民黨黨團,建請院會作成決議:「針對開放印度移工來台,國人深感憂心,要求行政院院長率相關部會首長向立法院提出『開放印度移工來台對我國整體勞工政策與社會治安的衝擊及相關配套(含強化國與國直聘制度及失聯移工強制遣返機制)防治作為』專案報告,並備質詢。」是否有當?請公決案等4案。(4月17日)二、對行政院院長提出施政方針及施政報告繼續質詢。(4月17日)三、邀請行政院院長、主計長、財政部部長列席報告「115年度中央政府總預算案」編製經過並備質詢(含志願役軍人加薪及警消人員退休金等預算編製處理情形併予報告)。(4月21日)四、4月17日上午9時至10時為國是論壇時間。)
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transcript.whisperx[0].start 15.691
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transcript.whisperx[0].text 謝謝主席那是不是我們先請我們行政院卓院長卓院長,可以請參議員好
transcript.whisperx[1].start 32.99
transcript.whisperx[1].end 49.608
transcript.whisperx[1].text 院長那總預算已經遲延了今天是236天那在今天的詢答結束後那才有交付審查的一個機會那也基於這樣總預算的一個延宕我們知道至少有2992億的一個新興計畫
transcript.whisperx[2].start 52.771
transcript.whisperx[2].end 74.334
transcript.whisperx[2].text 沒有辦法被執行新計畫跟新增預算那這樣的一個預算到現在已經四月了一直到未來可能完成三讀之後這些才能被執行可能要拖到七月所以今年就過了一半所以我要求我們各部會首長在立法院完全審查之後
transcript.whisperx[3].start 75.646
transcript.whisperx[3].end 91
transcript.whisperx[3].text 加快腳步用勤能補托啦把這個托育的時間給他交付審查後就取得快一點啦對 效率提高那我想每個委員會我們在委員會也都會拜託召委可以拜就拜用最快的速度
transcript.whisperx[4].start 91.6
transcript.whisperx[4].end 120.267
transcript.whisperx[4].text 趕快先找出來啦因為很多建設真的就因此而延宕了我說嘉義我們嘉義這裡我們六坎的大橋我們大的大橋7.5億那我也不一定說幾億台但是也是說卡地總預算包括我們現在說嘉義包括我們幾個比較市中心的地方在中保民窮破住我們這裡也都需要運動中心那平衡一些地方的一個運動的一個需求
transcript.whisperx[5].start 121.327
transcript.whisperx[5].end 146.809
transcript.whisperx[5].text 這也是在體育部也是一樣總預算卡的沒有辦法爭取那最重要的是治水預算包括水上的南進大排新港跟六角的六角的落卡白水那這一些預算也需要很多也沒有辦法被執行所以這一些的延宕是在是造成我們在地方的一些建設上在今年度就浪費了大半年所以你現在預算如果到了後
transcript.whisperx[6].start 148.703
transcript.whisperx[6].end 163.288
transcript.whisperx[6].text 也要結束了,要拖延期,拖延期可能還要辦預算保留事實上以後面的整個行政流程來說,那拖延期是很嚴重所以我們還是希望說,立法院該審預算我們要處理,我們就快處理,這樣好不好
transcript.whisperx[7].start 166.129
transcript.whisperx[7].end 190.984
transcript.whisperx[7].text 目前很急迫的是汛期快到五月的汛期快到很多治水的工程我們除了原來可以用的之外有些在必須要通過預算完整的審查之後但是我已經要求各部會尤其是經濟部水利署提前預作計畫那預算一旦通過就能夠馬上接軌下去執行就是後續的執行也是要趕快好那再下一個我們請教育部也上來
transcript.whisperx[8].start 191.804
transcript.whisperx[8].end 209.332
transcript.whisperx[8].text 下一個我想跟副院長來分享一個,是在講的台灣這個台語,台語的這個文化我現在接觸到的一些地方,那些孩子都對台語陌生,這件事我感覺比較沒差
transcript.whisperx[9].start 210.152
transcript.whisperx[9].end 239.01
transcript.whisperx[9].text 是在台語是全世界最國際化最好聽的一個語言我們台語我們講台語我們要很有信心的在台語我們就說出來所以我最近我看一個趣我看很感動的那我知道這個作者這個趣的創辦人叫溫若喬那我們賴清德總統也曾經把請到總統府我就看他那個影片他去講台語的國際化來我放給大家聽我們一定聽了會覺得很感動來我們放一下
transcript.whisperx[10].start 239.73
transcript.whisperx[10].end 257.908
transcript.whisperx[10].text Narasu Naga NarasudagaTaka Moshinto Taka MoshinAsa Furu AsakuruKimochi Tsubin Gyan Kimo Tsuburin Gyan
transcript.whisperx[11].start 259.225
transcript.whisperx[11].end 259.966
transcript.whisperx[11].text 我有看過韓語的 說真的
transcript.whisperx[12].start 287.947
transcript.whisperx[12].end 291.568
transcript.whisperx[12].text 所以這就是說 台語有時候我們過去我們台灣全世界沒有把語言學起來 變成台語所以這就是說 過去
transcript.whisperx[13].start 312.094
transcript.whisperx[13].end 327.419
transcript.whisperx[13].text 你知道將近一百年前有一部用日語寫成的台語詞典記錄了許多當時台灣人獨特的美麗詞彙嗎?這本詞典叫做台語大詞典這個文字系統將日語裡的片假名改造為適合台語的版本並且透過特別創造的符號來標記台語的聲調甚至連藥物、植物、礦物、動物等專有名詞也都記錄在內指的是從雲或樹木的縫隙灑落地面的陽光
transcript.whisperx[14].start 342.028
transcript.whisperx[14].end 357.11
transcript.whisperx[14].text 以前的台湾人会用刺激灰暗来形容这样的景色或者像是 疑灰这个词指的是渔泉游动的时候在水面所泛出的涟漪这样的词汇是在全世界的语言当中都很少见的甚至还有 见灰 这个词用来形容蜡烛点燃后焦洁的竹心如花一般散开的模样
transcript.whisperx[15].start 358.581
transcript.whisperx[15].end 386.373
transcript.whisperx[15].text 你看這就是台語 綠灰 綠灰 還有那個酒灰這樣都是很漂亮的語言所以台語說起來是一個很漂亮的一個語言這個語言我希望說我們院長跟部長我剛剛質詢我知道說因為這段時間我就一直去找現在我們的台語在教材當然說每一個年紀都要有教材這個教材也是公園做得很好
transcript.whisperx[16].start 387.173
transcript.whisperx[16].end 408.76
transcript.whisperx[16].text 但是我就覺得社會要提供台語教育的這件事力道少了一些既然台語我看溫柳橋他會這樣去分享台語的美那個分享都很多我會覺得我們國家也要用大一點的力道讓大家知道台語就是這麼漂亮的一個語言我們應該要大家都來講台語這樣講對不對來
transcript.whisperx[17].start 416.675
transcript.whisperx[17].end 444.627
transcript.whisperx[17].text 感謝委員關心我們台語的推薦其實我們從去年開始全國22個縣企業到局長都有成立我們由基院開始就是因應這個不同這個社區的族群結構開始用加台語或是加客語或是原住民語這我們有在做到今年的我們的過年我們中生教育師也還另外開發一套APP就是說
transcript.whisperx[18].start 445.447
transcript.whisperx[18].end 447.31
transcript.whisperx[18].text 就是這樣就對了創造讓大家覺得說台語
transcript.whisperx[19].start 461.827
transcript.whisperx[19].end 468.689
transcript.whisperx[19].text 吃舒服的一個環境我認為這個事情我們有必要每一個這麼好的一個議員還有這麼國際化的一個議員要讓他我們這樣一代一代傳下去這樣好嗎是啊 現在國家議員發展法都會說我們國家也有客家化也有這些原住民的胃 大家都愛但是我就覺得說
transcript.whisperx[20].start 482.933
transcript.whisperx[20].end 508.406
transcript.whisperx[20].text 這個台語真的是很漂亮啦也許我對其他的客家話那些我不夠了解但是我真的這陣時間 我覺得台語這麼好的一個語言沒花陽光大 有夠沒菜 有夠爽啦這個語言要保留 留團 或者說通用就是語言以外 要有文字啦我們現在也漸漸 就是羅馬拼音以外也有漸漸台語的文字 大家在研究我也看過幾篇文章 從台語寫出來
transcript.whisperx[21].start 511.127
transcript.whisperx[21].end 525.431
transcript.whisperx[21].text 剛才我看 比較不像慣史 越看你會覺得裡面可以種台語的氣味新來的思維 覺得很爽快所以文字的研究 我想我們要加強這個所以我希望我們應該要用更多資源 針對這裡做台語的藝人的研究 讓台語發揚光大要如何宣傳這件事情 我們都用更多資源來重視這件事情教育部 文化部都要導入這個行為保存我們的固有的意願
transcript.whisperx[22].start 540.516
transcript.whisperx[22].end 555.794
transcript.whisperx[22].text 我現在甩來請交通部長來 教育部長可以先來 院長 院長我真的覺得你這兩天來很辛苦 有夠辛苦沒有 大家都辛苦你應該是說 做行政議長休息以來 我覺得你真的是最辛苦的面對國民黨 民眾黨這樣惡搞
transcript.whisperx[23].start 561.132
transcript.whisperx[23].end 580.985
transcript.whisperx[23].text 毀憲亂政每一個法律他們都沒有用立法權完全要凌駕行政院編列預算直接就是都在下達指令要怎麼編才會有今天總預算的這樣一個僵局所以我覺得現在又因為他們把大法官又卡住所以很多事情沒有辦法現在還你公道但是你現在說著
transcript.whisperx[24].start 582.446
transcript.whisperx[24].end 600.073
transcript.whisperx[24].text 你可以說是把整個我們現在看到的中華民國憲法可以用的行政自我救濟你都把它發揮到 我覺得立訴這個會獻你一個功德 這個我很有信心民主是很不簡單的事情 而且對我來說 我很幸運的是我有很多前輩他們所走過的路 我們都可以好好去學習我也希望說 這個釣魚機桿
transcript.whisperx[25].start 605.325
transcript.whisperx[25].end 629.306
transcript.whisperx[25].text 既然今天可以好的開始,我們為好的發展來設一個最好的結構,更加這個事情總有損也好,那個軍國防的特別有損也好,或是我們的裁劃法,都可以在新的環境所以國家一定要向前走啦,雖然我們台灣不能因為朝野、在野黨、不理性的杯葛,才讓國家停頓所以院長我是覺得說
transcript.whisperx[26].start 630.765
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transcript.whisperx[26].text 律師會贏你一個功德,不是他中事實上我感覺,院長你現在需要一個你的作用的歷史定位這個作用的歷史定位就是你要有一項屬於你的建設要有人說,卓榮泰行政院長,就要一項建設我想要讓院長來推...來...來...來建議一件啦院長,實在我們可以來上台鐵的權限高價化啦
transcript.whisperx[27].start 661.323
transcript.whisperx[27].end 682.753
transcript.whisperx[27].text 台鐵全線高架因為你也知道台鐵現在每一段都在爭取高架我們水上嘉義的水上在爭取 貫庭也在爭取他的大林的高架化因為他也說未來如果雲林東南高架你不可以民雄高架到大陸下來到東南北去變雲霄飛車這都說得有道理可是事實上
transcript.whisperx[28].start 683.373
transcript.whisperx[28].end 695.466
transcript.whisperx[28].text 高鐵是需要被全線高架化為什麼因為你不是要做全線高架而已如果我們做了全線高架我們應該要進一步的把台鐵全部變成1435的標準軌
transcript.whisperx[29].start 698.849
transcript.whisperx[29].end 719.019
transcript.whisperx[29].text 因為我們知道現在台湯和我們阿里山的生鐵是五分的車現在台鐵是七分的車只有現在叫做戈鐵,它還是叫做標準軌日本都用標準軌,日本現在很少會用七分的車如果我們把高鐵高架起來,稍微做得比較快,用大軌包小軌
transcript.whisperx[30].start 720.696
transcript.whisperx[30].end 742.831
transcript.whisperx[30].text 就是標準軌裡面去包氣氛車所以氣氛車現在台鐵的車可以走比較靠近的標準軌的車也可以走一樣在那條軌道大軌、包小軌可以同時走的總控車你可以未來創造類似日本更多的觀光列車它的速度可以比現在台鐵的速度還要快
transcript.whisperx[31].start 743.812
transcript.whisperx[31].end 767.981
transcript.whisperx[31].text 你就這樣起來 把他高架起來 把他擴寬雖然整個台鐵以後會變得非常的強大大家也會知道說 這個是卓榮泰行政院長在任內因為國家每年的稅收成長我們只要一年 可能我們的十年計畫都要把他全線高架 一年用一千億這樣就做不起來一定 這我給你一個建議 我就來 這樣來實施嘛感謝委員 如果我可以選定
transcript.whisperx[32].start 773.697
transcript.whisperx[32].end 789.471
transcript.whisperx[32].text 不然這裡應該是都會區地下化跨縣區的高架化另外台北市來說地下化以後路面都很通院長我承認啦在都會是需要地下化都會地下化跨區的高架化如果可以像這樣說
transcript.whisperx[33].start 790.071
transcript.whisperx[33].end 810.148
transcript.whisperx[33].text 工程來進行,那不是個人什麼定位,那是整個國家大大的進步所以我是覺得,院長你讓我來啟動這件事不然你現在一直來倒規規這件事真的會讓大家都非常的有感,而且以後看到我們的台鐵像那種,日本有那種可以晚上在那裡過夜,那種旅遊型的列車
transcript.whisperx[34].start 814.612
transcript.whisperx[34].end 828.348
transcript.whisperx[34].text 鐵道旅遊是一個很高端的旅遊鐵道旅遊是非常的讓人家是喜歡的你看現在明日號也成功藍皮解憂也成功現在來我們大拿都有一個三藍號都成功了現在那個高端部會推一個台鐵
transcript.whisperx[35].start 829.389
transcript.whisperx[35].end 857.066
transcript.whisperx[35].text 整個環島四個九十分鐘台北到郭榮九十分鐘郭榮台東到台東九十分鐘台東到花蓮花蓮到台北四個九十分鐘這也是個環島目前如果這個路線都完整的話我們也可以發展另外一個廣東的事業這三條很好真的這三條很好不然就是差別你攔著全線高架他要跑的時候都沒有後顧之憂他就一定會趕跑我是覺得這個真的可以去思考好不好院長
transcript.whisperx[36].start 857.946
transcript.whisperx[36].end 866.194
transcript.whisperx[36].text 謝謝,我想跟高東坡請他介紹一下,現在還有什麼路段可以先來跟他講?對啦,這真的要這樣整個,就是我們本市整棟,一棟一棟,每棟都有,就直接做下去,這樣好不好?好,再來,來,院長請回,我請這個農業部長來,最好一分鐘,我要吹一下香氣,這個
transcript.whisperx[37].start 879.912
transcript.whisperx[37].end 904.531
transcript.whisperx[37].text 院長 事實上我們嘉義的產業園區事實上都有在建設可是我們現在知道在距離現在嘉科最近的有一個新港現在叫做新港農場這個農場內事實上也有產業園區的強烈必要因為它就在高鐵旁邊而且鄰近嘉義科學園區最大的優勢就是它那邊又是台塑整個
transcript.whisperx[38].start 906.693
transcript.whisperx[38].end 925.683
transcript.whisperx[38].text 台塑中原化工業區然後科學園區中抓這塊這塊事實上就是把它做成農業科技園區而且賴清德總統已經多次有來這裡有做這樣的承諾所以我希望議長我們新港的這個產業園區是不是要是你的臨來今天這間來合併這樣好不好我先跟委員報告委員也一時關心我們這個家業本身的這個建立一個農業科技園區嘛那在上面就是
transcript.whisperx[39].start 947.651
transcript.whisperx[39].end 950.856
transcript.whisperx[39].text 好謝謝謝謝蔡委員好謝謝蔡委員 謝謝