關于我們
書單推薦
新書推薦
|
創(chuàng)新工場講AI課:從知識到實踐 讀者對象:本書適合 AI 相關專業(yè)的高校在校生及AI 行業(yè)的工程師使用,可作為他們了解AI 產業(yè)和開拓視野的讀物。
創(chuàng)新工場于 2017 年發(fā)起了面向高校在校生的DeeCamp 人工智能訓練營(簡稱DeeCamp訓練營),訓練營內容涵蓋學術界與產業(yè)界領軍人物帶來的全新AI 知識體系和來自產業(yè)界的真實實踐課題,旨在提升高校AI 人才在行業(yè)應用中的實踐能力,以及推進產學研深度結合。 本書以近兩年 DeeCamp 訓練營培訓內容為基礎,精選部分導師的授課課程及有代表性的學員參賽項目,以文字形式再現(xiàn)訓練營"知識課程+產業(yè)實戰(zhàn)”的教學模式和內容。全書共分為9 章,第1 章、第2 章分別介紹AI 賦能時代的創(chuàng)業(yè)、AI 的產品化和工程化挑戰(zhàn);第3 章至第8 章聚焦于AI 理論與產業(yè)實踐的結合,內容涵蓋機器學習、自然語言處理、計算機視覺、深度學習模型的壓縮與加速等;第9 章介紹了 4 個優(yōu)秀實踐課題,涉及自然語言處理和計算機視覺兩個方向。
DeeCamp 人工智能訓練營由創(chuàng)新工場于 2017 年發(fā)起,是一個致力于培養(yǎng)人工智能應用型人才的公益項目。2018 年 DeeCamp 被教育部選中作為「中國高校人工智能人才國際培養(yǎng)計劃」兩個組成部分之一的學生培訓營,F(xiàn)已初步建立了以創(chuàng)造性的團隊工程實踐項目為主干,以打通學術、產業(yè)邊界的系統(tǒng)性知識培訓為支撐,聚焦未來科技變革與商業(yè)發(fā)展,成規(guī)模、可復制的人工智能應用型人才培養(yǎng)體系。
第1 章AI 賦能時代的創(chuàng)業(yè)······················································································1
1.1 中國AI 如何彎道超車····································································································2 1.2 AI 從“發(fā)明期”進入“應用期”··················································································9 1.2.1 深度學習助推AI 進入“應用期”···································································10 1.2.2 To B 創(chuàng)業(yè)迎來黃金發(fā)展期···············································································.11 1.2.3 “傳統(tǒng)產業(yè)+AI”將創(chuàng)造巨大價值·····································································14 1.2.4 AI 賦能傳統(tǒng)行業(yè)四部曲···················································································16 1.3 AI 賦能時代的創(chuàng)業(yè)特點·······························································································21 1.3.1 海外科技巨頭成功因素解析·············································································21 1.3.2 科學家創(chuàng)業(yè)的優(yōu)勢和短板·················································································24 1.3.3 四因素降低AI 產品化、商業(yè)化門檻·······························································26 1.4 給未來AI 人才的建議··································································································30 第2 章AI 的產品化和工程化挑戰(zhàn)·········································································35 2.1 從AI 科研到AI 商業(yè)化································································································36 2.2 產品經理視角—數據驅動的產品研發(fā)······································································40 2.2.1 數據驅動············································································································41 2.2.2 典型C 端產品的設計和管理············································································43 2.2.3 典型B 端產品解決方案的設計和管理·····························································46 2.2.4 AI 技術的產品化·······························································································48 2.3 架構設計師視角—典型AI 架構···············································································51 2.3.1 為什么要重視系統(tǒng)架構····················································································51 2.3.2 與AI 相關的典型系統(tǒng)架構··············································································53 2.4 寫在本章最后的幾句話································································································78 本章參考文獻 ························································································································79 第3 章機器學習的發(fā)展現(xiàn)狀及前沿進展 ······························································81 3.1 機器學習的發(fā)展現(xiàn)狀····································································································82 3.2 機器學習的前沿進展····································································································85 3.2.1 復雜模型············································································································85 3.2.2 表示學習············································································································90 3.2.3 自動機器學習····································································································95 第4 章自然語言理解概述及主流任務 ··································································99 4.1 自然語言理解概述······································································································100 4.2 NLP 主流任務·············································································································100 4.2.1 中文分詞··········································································································101 4.2.2 指代消解··········································································································102 4.2.3 文本分類··········································································································103 4.2.4 關鍵詞(短語)的抽取與生成·······································································105 4.2.5 文本摘要··········································································································107 4.2.6 情感分析··········································································································108 本章參考文獻·····················································································································.111 第 5 章機器學習在 NLP 領域的應用及產業(yè)實踐···············································115 5.1 自然語言句法分析·····································································································.116 5.1.1 自然語言句法分析的含義與背景··································································.116 5.1.2 研究句法分析的幾個要素··············································································.117 5.1.3 句法分析模型舉例··························································································121 5.2 深度學習在句法分析模型參數估計中的應用····························································125 5.2.1 符號嵌入··········································································································126 5.2.2 上下文符號嵌入······························································································129 本章參考文獻······················································································································131 第 6 章計算機視覺前沿進展及實踐 ····································································133 6.1 計算機視覺概念··········································································································134 6.2 計算機視覺認知過程··································································································136 6.2.1 從低層次到高層次的理解···············································································137 6.2.2 基本任務及主流任務······················································································138 6.3 計算機視覺技術的前沿進展·······················································································141 6.3.1 圖像分類任務··································································································141 6.3.2 目標檢測任務··································································································148 6.3.3 圖像分割任務··································································································151 6.3.4 主流任務的前沿進展······················································································155 6.4 基于機器學習的計算機視覺實踐···············································································164 6.4.1 目標檢測比賽··································································································164 6.4.2 蛋筒質檢··········································································································167 6.4.3 智能貨柜··········································································································170 本章參考文獻······················································································································173 第 7 章深度學習模型壓縮與加速的技術發(fā)展與應用·········································175 7.1 深度學習的應用領域及面臨的挑戰(zhàn)···········································································176 7.1.1 深度學習的應用領域······················································································176 7.1.2 深度學習面臨的挑戰(zhàn)······················································································178 7.2 深度學習模型的壓縮和加速方法···············································································180 7.2.1 主流壓縮和加速方法概述···············································································180 7.2.2 權重剪枝··········································································································182 7.2.3 權重量化··········································································································192 7.2.4 知識蒸餾··········································································································199 7.2.5 權重量化與權重剪枝結合并泛化···································································200 7.3 模型壓縮與加速的應用場景·······················································································201 7.3.1 駕駛員安全檢測系統(tǒng)······················································································202 7.3.2 高級駕駛輔助系統(tǒng)··························································································202 7.3.3 車路協(xié)同系統(tǒng)··································································································203 本章參考文獻······················································································································204 第 8 章終端深度學習基礎、挑戰(zhàn)和工程實踐·····················································207 8.1 終端深度學習的技術成就及面臨的核心問題····························································208 8.1.1 終端深度學習的技術成就···············································································208 8.1.2 終端深度學習面臨的核心問題·······································································209 8.2 在冗余條件下減少資源需求的方法··········································································.211 8.3 在非冗余條件下減少資源需求的方法·······································································213 8.3.1 特殊化模型······································································································214 8.3.2 動態(tài)模型··········································································································215 8.4 深度學習系統(tǒng)的設計··································································································216 8.4.1 實際應用場景中的挑戰(zhàn)··················································································216 8.4.2 實際應用場景中的問題解決···········································································217 8.4.3 案例分析··········································································································219 本章參考文獻······················································································································224 第 9 章DeeCamp 訓練營最佳商業(yè)項目實戰(zhàn)·······················································225 9.1 方仔照相館—AI 輔助單張圖像生成積木方頭仔···················································227 9.1.1 讓“AI 方頭仔”觸手可及·············································································227 9.1.2 理論支撐:BiSeNet 和Mask R-CNN ·····························································229 9.1.3 任務分解:從圖像分析到積木生成的實現(xiàn)····················································231 9.1.4 團隊協(xié)作與時間安排······················································································237 9.2 AI 科幻世界—基于預訓練語言模型的科幻小說生成系統(tǒng)····································242 9.2.1 打造人機協(xié)作的科幻小說作家·······································································242 9.2.2 理論支撐:語言模型、Transformer 模型和GPT2 預訓練模型·····················243 9.2.3 從“找小說”到“寫小說”的實現(xiàn)步驟························································247 9.2.4 團隊協(xié)作與時間安排······················································································250 9.3 寵物健康識別—基于圖像表征學習的寵物肥胖度在線檢測系統(tǒng)·························254 9.3.1 人人都能做“養(yǎng)寵達人”···············································································254 9.3.2 理論支撐:表征學習、人臉識別原理和ArcFace 損失函數·························257 9.3.3 任務分解:從數據收集到肥胖度檢測···························································259 9.3.4 團隊協(xié)作與時間安排······················································································262 9.4 商品文案生成—基于檢索和生成的智能文案系統(tǒng)················································265 9.4.1 智能內容生成··································································································265 9.4.2 理論支撐:Word2Vec 詞嵌入、預訓練語言模型BERT 和Seq2Seq 文本生成··········································································································266 9.4.3 任務分解:“尋章摘句”和“文不加點”······················································269 9.4.4 團隊協(xié)作與時間安排······················································································273 本章參考文獻······················································································································276
你還可能感興趣
我要評論
|