Amin Dorostanian: Demystifying AI Adoption, Five Pillars for Success and the Journey from Turbo Pascal to LSTMs
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Amin's journey into the world of artificial intelligence (AI) began around 2006 when he became captivated by the potential of neural networks to learn from data. He noticed that AI experienced periods of intense hype followed by quieter moments.
Amin delved into AI by building neural networks from scratch in C. This hands-on experience enabled him to understand AI models thoroughly and create complex applications.
In his industry work, Amin applied AI knowledge to real-world applications.
In business discussions, Amin highlights the challenge of balancing quick wins and long-term investments when adopting emerging tech like AI.
Amin identifies five pillars that companies should consider when evaluating AI investments:
- Investment in Data Infrastructure: Focusing on data governance and infrastructure to enable smarter applications.
- Data Collection, Processing, and Storage: Establishing best practices for data collection, labeling, and reliable model training.
- Cleaning Data and Validation: Recognizing the challenge of data cleaning, validation, and labeling, particularly as GDPR regulations emphasize ethical data usage.
- Ethical Framework for Data Usage: Ensuring transparency and compliance with data privacy regulations like GDPR.
- Creating an AI Supporting Ecosystem: Building an ecosystem that goes beyond technology, fostering organizational cultures that understand AI's value and prioritize trust and transparency.
Amin also emphasizes the need for companies to develop a clear AI roadmap aligned with their business objectives and integrate AI into their products and services strategically. While the AI hype can be beneficial in motivating companies to adopt AI, the associated risks lie in not having a well-defined plan or understanding of how AI can genuinely add value. To become AI-ready, companies must prioritize the business value of AI over its "coolness factor" and invest in the right talent to guide their AI initiatives.
Episode References:
- Turbo Pascal
- Neural Networks
- Machine Learning
- Jürgen Schmidhuber
- LSTM's
- Vanishing Gradient Problem
- GDPR (EU's Data Protection Laws)
- Gradient Boosting Machines (GBMs)
- Graphcore AI
- Geoffrey Hinton
Connect with Amin here:
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