The Artists of Data Science

Harpreet Sahota
The Artists of Data Science

In his book, "Linchpin", Seth Godin says that "Artists are people with a genius for finding a new answer, a new connection, or a new way of getting things done." Does that sound like you? If so, welcome to The Artists of Data Science podcast! The ONLY self-development podcast for data scientists. You're here because you want to develop, grow, and flourish. How will this podcast help you do that? Simple. By sharing advice on how to : - Develop in your professional life by getting you advice from the best and brightest leaders in tech - Grow in your personal life by talking to the leading experts on personal development - Stay informed on the latest happenings in the industry - Understand how data science affects the world around us, the good and the bad - Appreciate the implications of ethics in our field by speaking with philosophers and ethicists The purpose of this podcast is clear: to make you a well-rounded data scientist. To transform you from aspirant to practitioner to leader. A data scientist that thinks beyond the technicalities of data, and understands the impact you play in our modern world. Are you up for that? Is that what you want to become? If so, hit play on any episode and let's turn you into an Artist of Data Science!

  1. JUN 12

    Building a World Where Machines Can See with Kausthub Krishnamurthy

    Join us in this insightful podcast-style interview with Kausthub Krishnamurthy, a Senior Manager and Machine Learning Engineer at Nearmap, as we explore the fascinating world of robotic vision within deep learning. Kausthub shares his journey from modular cube flow pipelines to developing data pipelines and training models for computer vision at Nearmap, highlighting the multidisciplinary nature of robotics that intertwines machine learning, computer vision, software engineering, and robotics. Key Highlights: Robotic Vision and Machine Learning: Delve into the complexities of robotic vision, comparing classical computer vision techniques with deep learning methods, and discussing their applications in automation, field robotics, and cloud machine learning. Design Considerations: Understand the design considerations for integrating machine learning into robotics, addressing challenges related to real-time data processing, connectivity, hardware-software ecosystem, and the evolving roles within robotic vision and sensing. Simulation-Driven Development: Explore the importance of simulation-driven development in robotics, leveraging tools like ROS and Moose, and the role of agile development approaches in shaping the future of robotics. Career Paths and Continuous Learning: Gain insights into career paths in robotics beyond engineering, the vital role of simulation in robotics training, and tips for continuous learning and career advancement in the field. Project Ideas and Internship Tips: Discover project suggestions and internship tips for aspiring robotics professionals, and considerations regarding data privacy and safety in the context of consumer-direct robotics use. Embark on this enlightening conversation with Kausthub Krishnamurthy as he unravels the intricacies of robotic vision, machine learning, and the future of robotics in the dynamic landscape of technology and innovation.

    1h 11m
  2. JUN 12

    Graph Neural Networks with Kyle Kranen

    Kyle Kranen, a senior deep learning algorithm engineer at Nvidia, despite graduating from UC Berkeley in 2020, has nearly a decade of experience in Deep Learning. It shines through as he demystifies the intricacies of graph neural networks, providing a unique perspective shaped by technical internships and a current focus on implementing and optimizing state-of-the-art deep learning models. Key Highlights: Guest Introduction: Meet Kyle Kranen, a senior deep learning algorithm engineer at Nvidia, as he shares his wealth of experience and insights into the world of graph neural networks. Power of Graphs in Data Representation: Explore the significance of proper data structures in machine learning and delve into how graph neural networks have overcome challenges in handling complex relationships within data. Graph Anatomy: Uncover the intricacies of graphs, examining their role as a powerful tool for data representation and understanding their ubiquitous presence in various domains. Local Aggregation in Graphs: Kyle introduces the concept of local aggregation in graphs, shedding light on its importance and its role in enhancing the capabilities of graph neural networks. Message Passing: Gain a deeper understanding of the importance of message passing in graph neural networks, a fundamental mechanism for information exchange and aggregation. Graph Neural Network Architecture: Navigate the anatomy of a graph neural network, exploring its basic building blocks and the significance of learnable parameters in capturing complex relationships. Predictive Power: Discover the predictive power of graphs, exploring graph-level, node-level, and edge-level predictions, along with insights into representing the 'blobbiness' or unstructured nature of a graph. Edge Classification and Graph Isomorphism: Kyle delves into specific challenges such as edge classification and the graph isomorphism test problem, providing nuanced perspectives on tackling these issues. Popular Architectures: Explore the landscape of popular architectures for graph neural networks, understanding the diversity of approaches that cater to different applications. Production Pipelines: Gain insights into the production pipelines for graph neural networks, unraveling the practical aspects of deploying these models in real-world scenarios. Advantages of Graph Learning: The episode concludes with an exploration of the advantages of graph learning, highlighting the transformative potential of leveraging graph neural networks in diverse domains. Join us in this comprehensive discussion as Kyle Kranen demystifies the realm of Graph Neural Networks, offering profound insights into their applications, challenges, and the immense potential they hold in reshaping the landscape of deep learning.

    53 min
  3. JUN 12

    Music Generation Using AI with Dr. Tristan Behrens

    In this episode we get into the captivating realm of AI-driven creativity with Dr. Tristan Behrens, an AI advisor, musician, and freelance researcher. Join us as we explore the transformative power of artificial intelligence in unlocking creativity, focusing on Dr. Behrens' expertise in using AI to generate music through his machine, Hexagon. Key Points: Guest Introduction: Dr. Tristan Behrens, an AI advisor and researcher, shares his unique journey from software development to a Ph.D. in computer science and AI. Computation and Creativity: The episode begins by unraveling the intricate relationship between computation and creativity, highlighting the fusion of technology and artistic expression. AI in Music Composition: Dr. Behrens discusses the process of training AI models on diverse music genres using MIDI data, employing the Transformer architecture and a complex token vocabulary for music track generation. Credit in AI-Augmented Creativity: The discussion touches upon the evolving role of AI in augmenting human creativity, acknowledging the importance of giving credit to both AI and human contributors. Transformers in AI: Understanding the role of Transformers in AI, particularly in converting text to music, showcases the complexity and versatility of modern AI architectures. Data Pipeline and Modeling: Dr. Behrens provides insights into building the AI model, emphasizing the significance of a robust data pipeline and thoughtful modeling. AI Music Creation Process: Explore the intricacies of converting text to sound, accompanied by Dr. Behrens' firsthand experiences with neural network outputs. Challenges and Role of Symbolic AI: Delve into the challenges of AI in music generation and the potential influence of Symbolic AI in shaping the future of creative AI applications. Future Architectures: A glimpse into the future unfolds as Dr. Behrens discusses the evolving landscape of AI architectures and their impact on creative endeavors. Deep Reinforcement Learning: Uncover the potential role of deep reinforcement learning in pushing the boundaries of AI music generation. Challenges of Deep Learning in Creativity: The episode concludes by addressing the challenges inherent in integrating deep learning into the augmentation of human creativity. Join us in this enlightening conversation with Dr. Tristan Behrens as we navigate the fascinating intersection of artificial intelligence and creativity, unlocking new possibilities in the realm of AI-generated music.

    1h 5m
  4. JUN 12

    Production Machine Learning and MLOps with Josh Tobin

    Josh Tobin, co-founder and CEO of Gantry, shares from his extensive experience, including a PhD in Computer Science at UC Berkeley and his role as a research scientist at OpenAI, Tobin provides valuable insights into the transition of ML from academic research to real-world applications. Key Highlights: Guest Introduction: Meet Josh Tobin, as he shares his journey from academia to entrepreneurship, highlighting his expertise in MLOps and the practical aspects of deploying ML models in production. ML in Production: Explore the significant differences between ML in a research setting and ML in production, emphasizing the importance of integrating ML models within broader product systems. Emerging Trends: Tobin discusses the emerging field of MLOps, the impact of foundational models like GPT-3 on ML operations, and the nuanced challenges of deploying AI systems in real-world scenarios. Practical Considerations: Gain insights into practical aspects of ML in industry, including experiment management, feature stores, and the complexities of integrating state-of-the-art models into production systems. Future Outlook: Tobin offers advice for practitioners and businesses navigating the AI transformation, stressing the collaborative potential between humans and AI and underlining the critical role of prompt engineering in the next generation of AI applications. Join us in this engaging conversation with Josh Tobin, as we explore the dynamic landscape of ML research, production, and the future trends shaping the field of artificial intelligence and machine learning.

    52 min
  5. JUN 12

    Vision AI, AGI and YOLOv5 with Glenn Jocher

    Glenn Jocher, the founder of Ultralytics, unveils the journey behind YOLOv8 and discusses the future of object detection. As a pioneer in AI and the mastermind behind the renowned YOLO (You Only Look Once) object detection algorithms, Jocher shares invaluable insights and experiences in this insightful AMA session. Key Highlights: Origins of YOLOv8: Explore the evolution of YOLO models, from YOLOv3 to YOLOv8, as Jocher reveals the technical advancements and innovations driving the development of these groundbreaking object detection algorithms. Community Contributions: Learn about the pivotal role of open-source contributions and community collaboration in the success of YOLOv8, showcasing the power of collective intelligence in pushing the boundaries of AI vision systems. Technical Insights: Delve into the technical intricacies of YOLOv8, including architecture changes, loss functions, and the transition from anchor-based to anchor-free systems, offering a deeper understanding of the underlying mechanisms driving object detection. Wide Applications: Discover the diverse range of applications of YOLO models, from flaw detection in manufacturing to aiding visually impaired individuals, highlighting the versatility and real-world impact of these cutting-edge AI technologies. Future Directions: Gain insights into the future of YOLOv8 and beyond, including plans for mobile deployment, architectural improvements, convergence with NLP, and optimization strategies for custom datasets, paving the way for advancements in AI-driven object detection and computer vision. Embark on this enlightening journey with Glenn Jocher as he unravels the intricacies of YOLOv8 and shares his vision for the future of object detection in the ever-evolving landscape of artificial intelligence.

    1h 1m
4.9
out of 5
50 Ratings

About

In his book, "Linchpin", Seth Godin says that "Artists are people with a genius for finding a new answer, a new connection, or a new way of getting things done." Does that sound like you? If so, welcome to The Artists of Data Science podcast! The ONLY self-development podcast for data scientists. You're here because you want to develop, grow, and flourish. How will this podcast help you do that? Simple. By sharing advice on how to : - Develop in your professional life by getting you advice from the best and brightest leaders in tech - Grow in your personal life by talking to the leading experts on personal development - Stay informed on the latest happenings in the industry - Understand how data science affects the world around us, the good and the bad - Appreciate the implications of ethics in our field by speaking with philosophers and ethicists The purpose of this podcast is clear: to make you a well-rounded data scientist. To transform you from aspirant to practitioner to leader. A data scientist that thinks beyond the technicalities of data, and understands the impact you play in our modern world. Are you up for that? Is that what you want to become? If so, hit play on any episode and let's turn you into an Artist of Data Science!

You Might Also Like

To listen to explicit episodes, sign in.

Stay up to date with this show

Sign in or sign up to follow shows, save episodes, and get the latest updates.

Select a country or region

Africa, Middle East, and India

Asia Pacific

Europe

Latin America and the Caribbean

The United States and Canada