國內唯一的人工智慧產業 AI 化專校-台灣人工智慧學校,繼台北課程引起熱烈迴響後,將前往新竹科學園區開辦分校,並於 2018 年 7 月 21 日假清華大學學習資源中心(旺宏館)國際會議廳舉行台灣人工智慧學校新竹分校首屆開學典禮,希望能為新竹當地的科技產業培育出優秀的 AI 人才,成為帶動台灣產業 AI 發展的重要人才培訓基地。
國內唯一的人工智慧產業 AI 化專校-台灣人工智慧學校,繼台北課程引起熱烈迴響後,將前往新竹科學園區開辦分校,並於 2018 年 7 月 21 日假清華大學學習資源中心(旺宏館)國際會議廳舉行台灣人工智慧學校新竹分校首屆開學典禮,希望能為新竹當地的科技產業培育出優秀的 AI 人才,成為帶動台灣產業 AI 發展的重要人才培訓基地。
摩方人力資本銀行:當責學習者。教導者。領導者。投資者
—讓你隨時隨地儲備&運用,從工作&學習獲得的財富
mFHC Bank by mFHC Guru-tech Inc.
張大明 Ta-Ming Chang, Richard 創辦人兼執行長
richard@abctech.pro 摩方人力資本科技股份有限公司(籌備中)
Deep learning techniques have achieved human-level performance in analyzing medical images for diseases. A model analyzed retinal scans and achieved an F1-score of 0.95 for detecting diabetic retinopathy, compared to 0.91 for ophthalmologists. Another model detected arrhythmias from ECG signals better than cardiologists, with an F1-score of 0.89 for the model versus 0.73 for pathologists. However, AI still has limitations such as lacking common sense, and requires further research to develop artificial general intelligence and truly intelligent assistants.
This document discusses the work of Project θ, an AI team in Taiwan. It summarizes their work over 2017-2019 solving over 10 problems for 10+ companies. Some of the problems they addressed included detecting defects in LCD panels, PCB boards, and after surface mount technology processes. They also worked on applications like predicting the quality percentage of a pigment based on its ingredients. The team grew over time and had success scaling their work through the use of transfer learning and GPU acceleration. They have continued their efforts to apply AI to address real-world problems through their non-profit AI Academy Taiwan.
This document discusses various topics related to artificial intelligence and machine learning. It provides examples of how deep learning is being used for tasks like detecting diabetic eye disease, classifying arrhythmias from ECG signals, and localizing tumors in medical images. The document also notes limitations of current AI, such as its lack of common sense, and discusses how machine learning is being applied in other domains like predicting hospital readmissions, personalized medicine, and monitoring rainforests for illegal logging.
1. The document discusses various topics related to artificial intelligence including machine learning models, data platforms, limitations of AI, and the future of jobs.
2. It provides statistics on AI adoption rates across industries and job functions. It also outlines what capabilities AI currently has and lacks, such as the ability for common sense but not general artificial intelligence.
3. The document examines use cases for AI in various fields including healthcare, transportation, manufacturing and concludes that AI will fundamentally change the global economy through mobile computing and data collection.
This document discusses the history and development of artificial intelligence in Taiwan. It covers topics such as machine learning, deep learning, natural language processing, computer vision, and generative models. The document provides examples of applications across different domains including image colorization, face generation, text summarization and machine translation. It also discusses challenges and ethical issues regarding the use of AI.
8. 陳昇瑋 / 人工智慧在台灣
Automatic Generation of Medical Imaging Reports
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https://medium.com/@Petuum/on-the-automatic-generation-of-medical-imaging-reports-7d0a7748fe3d
9. 陳昇瑋 / 人工智慧在台灣
machine-learning model from 30,000+ deals from the last decade that draws from
many sources, including Crunchbase, Mattermark, and PitchBook Data. For each deal,
we looked at whether a team made it to a series-A round by exploring 400 features and
identified 20 features as most predictive of future success.
One of the insights we uncovered is that start-ups that failed to advance to series A had
an average seed investment of $0.5 million, and the average investment for start-ups
that advanced to series A was $1.5 million.
Another example insight came from analyzing the background of founders, which
suggests that a deal with two founders from different universities is twice as likely to
succeed as those with founders from the same university.
from the 2015 cohort of seed-stage companies, 16 percent of all seed-stage companies
backed by VCs went on to raise series-A funding within 15 months. By comparison, 40
percent of recommended by ML (2.5 times improvement)
Human + AI would yield the best performance: 3.5 times the industry average
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https://www.mckinsey.com/industries/high-tech/our-insights/a-machine-learning-
approach-to-venture-capital
10. 陳昇瑋 / 人工智慧在台灣
AI outperformed 20 corporate lawyers at legal work
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Challenge: review risks contained in five non-disclosure agreements (NDAs).
AI vs. associates and in-house lawyers from global firms such as Goldman Sachs, Cisco and
Alston & Bird, as well as general counsel and sole practitioners.
AI matched the top-performing lawyer for accuracy – both achieved 94%. Collectively, the
lawyers managed an average of 85%, with the worst performer recording 67%.
AI: 26 seconds; lawyers’ average: 92 minutes, where the speediest lawyer took 51 minutes
https://www.weforum.org/agenda/2018/11/this-ai-outperformed-20-corporate-
lawyers-at-legal-work/
13. AI is “more profound than electricity or fire”
--- Google CEO, 2018
14. 陳昇瑋 / 人工智慧民主化在台湾 15
Mobile computing, inexpensive sensors collecting terabytes of data, and
the rise of machine learning that can use that data will fundamentally
change the way the global economy is organized.
- Fortune, “CEOs:The Revolution is Coming,” March 2016
31. Convolution Neural Networks + Transfer Learning
Pre-trained using 14-million image dataset
ResNet with > 8-million parameters
Input
images
Model training /
inference
OK
OK
以深度學習進行自動瑕疵檢測
37. 台灣人工智慧學校
Especially important for equipment with high failure cost (such as motors in machine
tools)
Also important for expensive consumables (such as blades used in precision cutting
machines)
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產業共通挑戰 #3-預測性維護