iVOD / 167429

Field Value
IVOD_ID 167429
IVOD_URL https://ivod.ly.gov.tw/Play/Clip/1M/167429
日期 2026-03-03
會議資料.會議代碼 院會-11-5-1
會議資料.會議代碼:str 第11屆第5會期第1次會議
會議資料.屆 11
會議資料.會期 5
會議資料.會次 1
會議資料.種類 院會
會議資料.標題 第11屆第5會期第1次會議
影片種類 Clip
開始時間 2026-03-03T15:35:38+08:00
結束時間 2026-03-03T15:51:59+08:00
影片長度 00:16:21
支援功能[0] ai-transcript
video_url https://h264media01.ly.gov.tw:443/vod_1/_definst_/mp4:1MClips/321e35c043cc325b3d814bedca50e4de05351cf5c593b4e37bb6fd4edd6f580a7b10ae65e3cca9285ea18f28b6918d91.mp4/playlist.m3u8
委員名稱 賴惠員
委員發言時間 15:35:38 - 15:51:59
會議時間 2026-03-03T09:00:00+08:00
會議名稱 第11屆第5會期第1次會議(事由:一、行政院院長提出施政方針及施政報告並備質詢(2月24日下午)。二、行政院院長提出臺美關稅談判結果及其影響專案報告並備質詢(3月3日)。)
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transcript.whisperx[0].text 好 謝謝 謝謝主席有請那個院長跟經濟部長跟農業部部長麻煩再請左院長 經濟部 國務部長備詢是 謝謝院長副院長不用副院長因為一路以來談判都非常的辛苦副院長很辛苦 請坐副院長是 院長需要
transcript.whisperx[1].start 36.724
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transcript.whisperx[1].text 內委好是 院長我想我還要農業部長請農業部長備選謝謝我想在這裡還是要非常感謝就是這個談判團隊對這一次台美關稅的一個談判的結果那我們也知道就是說團隊的一個互出它有這麼好的一個成績但是接著而來這個IPAD這個
transcript.whisperx[2].start 64.242
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transcript.whisperx[2].text 這個被裁定的違法近期的那個經貿局勢似乎又有一些變數那我在這裡要請教就是說院長那我們的AIT是不是具有法律的一個約束力呢
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transcript.whisperx[3].text 我們希望不僅我們希望啦現在台美雙方都認為持續讓已經談妥的有協議的這個部分能夠繼續進行下去應該是最符合雙方最大的利益其他各國也應該多數都是這樣的態度所以我們跟美方進行建下的密切的聯繫當中就是要確保我們已經得到的這些在談判當中ART以及MOU當中所獲得的最佳的待遇
transcript.whisperx[4].start 108.054
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transcript.whisperx[4].text 其實ART的優惠不會縮水這個是我們的一個主張可是我們需要做讓步我們的籌碼會不會升變
transcript.whisperx[5].start 119.523
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transcript.whisperx[5].text 會不會有這樣子的一個可能因為在現在如果法律的工具改變用122的話有一些美方他是全球豁免那原來只針對我們豁免的項目在全球豁免當中我們可能原來的優勢會相對的減少或者是說對我們本來有豁免的項目他現在並不在豁免的項目當中那這個也是降低了我們的競爭力這當然122跟
transcript.whisperx[6].start 145.475
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transcript.whisperx[6].text IEPA當中會有若干的差距所以我們現在希望是回到原來的談判的內容依照原來ART簽署的內容是對我國最有利的這個是對我們是最有利的那我還是想再請教一下由院長的口中再一次就是說跟大家做一個報告就是說這一個2500億的投資的籌碼是不是也是繼續
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transcript.whisperx[7].text 2500億是產業自主性的投資那要看產業他做全球布局的時候他怎麼來規劃他未來在全球上面的投資行動但是跟留台灣以台灣為關鍵領先地位的這個角色地位是不會改變的而且他做任何投資都要經過法定的程序
transcript.whisperx[8].start 193.151
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transcript.whisperx[8].text 沒有 燕子我知道就是說這個2500億我講的就是說這個台灣提供的一個信用保證的這個2500億是不是繼續存在這個要看我們的產業如果進行國外投資的時候他到底需要到什麼樣程度的信用保證那我們以上線2500億美金的這個上限作為整個投資的上限但當中我們經過保證乘數以及比例的分算我們應該
transcript.whisperx[9].start 222.355
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transcript.whisperx[9].text 分做五個階段來進行第一個階段我們所必須準備的應該大概60多億的美元那這個已經在準備當中所以說也是會繼續的一個執行是因為我們要求美方的承諾跟我們的有利的部分要履行我們也認為我們在這個相同的條件底下我們已經答應的部分我們也要做到所以說我們國家的堅持還是不變
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transcript.whisperx[10].text 對好謝謝院長接著我請教經濟部長就是中小企業其實需要一個更明確的一個方向當然就是說你是不是可以結合這個鼓勵中小企業站上國際的舞台是我今天執行的一個重點那我們看到經濟部你這個有一個創意
transcript.whisperx[11].start 265.883
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transcript.whisperx[11].text 那個企業創新研發催念的一個計畫那在這個計畫裡頭我們看到了這幾個大綱是不是部長可以就是跟我們做一個更明確深入的一個那個說明一下因為我們希望這個政策講得更清楚這個支持的力道會更強那個經濟部長是不是可以回顧我這一個問題
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transcript.whisperx[12].text 報告委員我們現在針對中小企業也好或傳統產業都希望他們可以雙手轉型智慧化的轉型也好或淨零的轉型這個是那我們會提供輔導來協助他們那當然也有一些太舊歡欣設備上的一些補助會增加的
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transcript.whisperx[13].text 那如果說您剛剛這邊提到的是Aplus計畫如果他是有產業鏈一起來不是只有一家公司來申請他跟他的供應鏈產業鏈關係一起來申請而且創造出更多的產業鏈效果跟就業那我們就會通過這個Aplus計畫來支持他做這樣的研發的一些工作
transcript.whisperx[14].start 328.945
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transcript.whisperx[14].text 這個Aplus計畫是不是只有受限於一個大的企業還是說這個中小企業就像你講的我們打群戰其實也是我們國家也是一樣會支持他要有一個主體性的企業然後這個主體企業他可以難掛住他很多的供應鏈廠商一起來做那我們也歡迎但是
transcript.whisperx[15].start 352.176
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transcript.whisperx[15].text Aplus計畫主要是針對這個研發的部分來支持那如果說像其他的他要帶整個國家隊也好或整個團隊出去
transcript.whisperx[16].start 366.607
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transcript.whisperx[16].text 這個經營國際市場那我們有另外的計畫來支持他們是 我想部長就是說我們一定有信心就是說政府會帶著產業打贏國際盃可是我們現在擔心的就是說這些產業會不會只落在科技產業AI產業 機器人產業而其他的產業我們就把他疏忽了會不會是這樣子報告委員 事實上我們那個930億支持方案當然我們經濟部分配到的額度是460億
transcript.whisperx[17].start 395.501
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transcript.whisperx[17].text 這460億絕大部分可以講90%以上都是用在傳統性產業跟做巧企業所以90%是用在傳產因為232的部分比較沒有受到一些影響受到影響的就是
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transcript.whisperx[18].text 我們剛剛提到的所謂的傳統性產業也好或中小型企業也好然後那個部分我們的資源大部分是用在這邊還有就是說 院長我們其實也擔心說122條的條款到期了150天到期了我們怎麼還換301跟388的一個條款的衝擊這個倒是就是說我想就是從早上到現在院長也講了很多很多
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transcript.whisperx[19].text 那當然我們比較擔心的就是除了我們是農業縣市以外在這個農業上的一個對等關稅的一個協助那也相對的就是要請教院長說會不會像歐盟就是暫緩這個四個月就是我們先慢一點來審議會不會有這樣的一個結果
transcript.whisperx[20].start 454.486
transcript.whisperx[20].end 479.125
transcript.whisperx[20].text 現在大多數的國家都希望依照原來的談妥的協議內容來繼續生效那美方因為現在他必須就他國內的法律途徑法律工具做調整那現在又發生了這個中東事件的衝突我認為會分散一點注意的時間跟力量但是我認為能夠儘快的定案還是我們最高的上策
transcript.whisperx[21].start 479.965
transcript.whisperx[21].end 496.581
transcript.whisperx[21].text 所以我希望我們能夠儘快跟美方取得一個如何的共識點他如何來印證說未來雙方所談妥的這些協議內容會繼續有效他只是變更他裡面的法律工具法律途徑如果我們拿到這樣的部分我想請大院也能夠
transcript.whisperx[22].start 497.462
transcript.whisperx[22].end 521.824
transcript.whisperx[22].text 緊述的合理的審慎這樣的工具對照起來能不能讓這個談判的效果及早的生效我方生效 美方也生效雙方就能夠進到一個穩定的關稅狀態當中好 謝謝院長那你就講得非常的清楚嘛你希望快這是盡快的來就是做這樣子的一個執行面的一個協議這個是我們行政院所做的一個準備
transcript.whisperx[23].start 523.265
transcript.whisperx[23].end 539.779
transcript.whisperx[23].text 接著我想就是說跟農業部長做一個探討這300億的那個龍安基金是不是有辦法來迎戰我們這個台美對等關稅未來就是說在整個農業不管是從進口我們先從進口開始來講
transcript.whisperx[24].start 541.941
transcript.whisperx[24].end 568.583
transcript.whisperx[24].text 就是米尤其我們台南其實我們台南的米就是非常的多那我們也謝謝就是談判團隊守住了這一個稻米的延稅率那非常感謝可是一樣我們就是對稻米進口關稅其實我們長期的一個關心在這裡我希望說部長你可以很明確的講出來對於這一個米你可以做更深入的一個怎麼樣的協助
transcript.whisperx[25].start 569.464
transcript.whisperx[25].end 591.044
transcript.whisperx[25].text 因為這是一個機會啊對 謝謝委員我想對米來講雖然說我們已經很明確的守住了但是我們更重要就是要讓我們國產農產品的優勢繼續保持同時更有力量能夠外銷所以我們在300億基金裡面不會因為我們守住了我們就不會去支持它我們反而會針對整個產業的國產品的韌性會更加強
transcript.whisperx[26].start 595.046
transcript.whisperx[26].end 622.346
transcript.whisperx[26].text 好 那就是說我們已經就是要求就是在美方的要求前面就是開放那我們也堅守住這個農業產業的一個利益那再接著我想這個我要跟你請教就是美國的液態乳液態乳的連關稅這個對我們的一個很大的一個衝擊你可以告訴大家這個液態乳是什麼樣的東西因為洛隆區在我本席的選區裡頭
transcript.whisperx[27].start 623.997
transcript.whisperx[27].end 649.407
transcript.whisperx[27].text 我想義太魯是我們需要持續關心的但是我舉一個例子就是去年台乳零關稅的時候大家都非常擔心紐西蘭的牛奶會大量進口但是從去年的整年的整個的一個進口量來講只有增加了百分之零點八左右所以換句話說其實我們在去年所啟動的相關的政策區自治產業是有效的
transcript.whisperx[28].start 649.827
transcript.whisperx[28].end 671.819
transcript.whisperx[28].text 那同樣的這是美國的進來的時候我相信特別在鮮乳的部分從去年的資料來看紐西蘭的鮮乳有提高但是美國的鮮乳就有下降所以這些鮮乳進來的時候應該會跟紐西蘭或者是澳洲彼此之間相互競爭但是我們還是會持續的去針對酪農產業去加以扶持
transcript.whisperx[29].start 674.48
transcript.whisperx[29].end 691.828
transcript.whisperx[29].text 怎麼扶持呢我希望有一些比較具體的方式第一個部分就是我們國產牛會繼續做有效的淘汰讓他的生產效率提高第二個部分我們會針對所有牛籍做全方位的保險強制性的保險那還有再補充他什麼
transcript.whisperx[30].start 695.892
transcript.whisperx[30].end 715.872
transcript.whisperx[30].text 對 然後相對的再來就是他們的集乳器他們的生產設施設備我們還是會持續的去做協助更重要的是我們在行銷端的部分我們去年做得相當不錯很多手搖飲店都是用鮮乳的部分所以後端的這些鮮乳的拉力如果拉高的時候前端的這些生產就比較安心
transcript.whisperx[31].start 716.172
transcript.whisperx[31].end 731.127
transcript.whisperx[31].text 所以說產業的工具我們會用最低的一個利息的一個補貼讓他們在這一個工具上的一個升級還有就是說我們的手搖乳電我們也會像去年一樣就是說要求他們就全力配合國產的這個鮮乳嗎是不是這樣子
transcript.whisperx[32].start 735.131
transcript.whisperx[32].end 759.968
transcript.whisperx[32].text 是的我想整個的國產的市佔率還是90%我們還是維持這個目標同時我們的力道絕對會比去年還要強特別像金融的支持我們一定會繼續做特別是保險的協助的部分還有一個部分就是最重要是後面的品牌的行銷特別是在台灣鮮乳唯一選擇我想我們會做更大的力道的來推廣
transcript.whisperx[33].start 763.931
transcript.whisperx[33].end 781.608
transcript.whisperx[33].text 我們國產鮮乳國內的市占率很高未來我們還是會讓我們國內的鮮乳看到的鮮乳就是指國內的鮮乳鮮乳跟保酒乳跟牛乳我們會在市場上分割就是更積極的幫台灣牛奶正名進口會進口國之間互相的競爭
transcript.whisperx[34].start 782.409
transcript.whisperx[34].end 797.042
transcript.whisperx[34].text 那更嚴重的還在後面我的豬肉這個豬肉的進口關稅減半它是不是會衝擊到台灣的養豬的產業你知道就是在今天這個禮拜天的一個開盤2月23號的一個開盤這個豬肉價
transcript.whisperx[35].start 802.728
transcript.whisperx[35].end 822.311
transcript.whisperx[35].text 那個作價的成本是一斤80塊結果他掉到了77塊甚至還有掉到了50塊都賣一家當然現在價錢有稍微上揚上來可是這也是針對的就是要提醒部長就是說整個就是我們的補貼的一個策略是不是
transcript.whisperx[36].start 822.851
transcript.whisperx[36].end 846.244
transcript.whisperx[36].text 有待檢討因為當我們去補貼那三家冷凍廠的時候冷凍廠他到了那個他也是生意人他不會像政府一樣是這麼照顧豬籠的所以我覺得是不是應該我們應該深刻的去檢討是不是我們的我們自己農業部也應該要有一個自己的冷凍廠這已經講了好多年了
transcript.whisperx[37].start 847.472
transcript.whisperx[37].end 851.645
transcript.whisperx[37].text 第一個我跟委員報告就是開春後的第一天的確價格有降到77塊
transcript.whisperx[38].start 852.867
transcript.whisperx[38].end 880.856
transcript.whisperx[38].text 那相對的只有那一天其他的都是在82到85甚至有到90塊的部分所以我想整個的市場機制裡面我們會密切的監控第二點就是說整個的冷凍廠我想由政府坐東去處理冷凍廠是最下策如果我們把冷凍廠是維持在全台灣的各地的時候那現在大概可以維持一個月整個冷凍廠能量可以維持一個月那第三個部分就是
transcript.whisperx[39].start 881.912
transcript.whisperx[39].end 911.392
transcript.whisperx[39].text 美豬的進口就是因為這樣的一個思維所以說遲遲都沒有我們自己的一個農業部還是台糖的一個冷凍廠然後你讓這些冷凍廠的這一些廠商一直不斷的獲利我當然知道你不是要圖利他們可是我想這個政策面我們還是可以再溝通我想好部長再回到蘭花那個蘭花這個到底到底這個對等關稅有沒有疊加沒有疊加那
transcript.whisperx[40].start 913.233
transcript.whisperx[40].end 940.484
transcript.whisperx[40].text 這個蘭花蝴蝶蘭到底他現在的關稅是多少我跟委員報告現在那個阿德的零關稅現在還在確認但是他沒有不見但是對業者來講他比去年的20%疊加還要好因為現在變成10%第二個重點就是在去年的時候我們的20可是我們的競爭對手國是15所以換句話
transcript.whisperx[41].start 943.285
transcript.whisperx[41].end 971.42
transcript.whisperx[41].text 所以我們希望說在這樣的一個短暫的10%的疊加的部分能夠盡快的話能夠確保我們阿倫的代工能夠好 林卓傑副長那院長我還是要問一句我的理念啦 之前是林彰誠跟林卓傑是對這個名字短暫的還好 還好是不是很難所以我們如果我們爭取確保原來的談判內容的話它就會回到原來的控制下
transcript.whisperx[42].start 975.27
transcript.whisperx[42].end 979.035
transcript.whisperx[42].text 好谢谢赖会员委员咨询谢谢主任长相关部会首长贝勋谢谢