Product Manager Hub (PM Hub)

De: Cyrus Shirazian
  • Resumen

  • PM Hub Podcast is a weekly podcast for Product people and tech entrepreneurs to learn from top experts in the field. Subscribe now so you don’t miss an episode! Questions? Comments? Feedback? Reach out to your host Cyrus Shirazian on Twitter at @ceslamian or LinkedIn
    © 2022 - Product Manager Hub (PM Hub) by Cyrus Shirazian
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Episodios
  • The Agile Data Science Playbook: Quarterly Sprints to ML Success featuring Lauren Creedon
    Jul 7 2024
    Summary Summary In this conversation, Cyrus and Lauren discuss the intersection of Agile and data science, specifically focusing on the challenges of shipping AI-enabled products quickly. They emphasize the importance of democratizing AI within organizations and the need for product managers to understand AI and ML concepts. They also discuss the prioritization of AI ML feature sets per quarter and the balance between quick wins and long-term strategic initiatives. Lauren shares her recommendations for getting buy-in and support from leadership, including listening, scenario planning, and making informed decisions. Takeaways Democratizing AI within organizations is crucial for enabling more people to understand and work with AI and ML. Product managers should prioritize AI ML feature sets based on business goals and market expectations. Balancing quick wins and long-term strategic initiatives is important for delivering outcomes and driving growth. Getting buy-in and support from leadership requires listening, scenario planning, and making informed decisions. Understanding the constraints and goals of different teams and stakeholders is essential for successful product management in the AI ML space. Chapters 00:00 Introduction and Background 03:25 Challenges of Delivering Business Value Quickly 06:52 Democratizing AI within Organizations 11:05 Scoping AI/ML Feature Sets for Revenue Outcomes 14:12 Staying Up-to-Date with New Technologies 27:40 Incorporating AI into Product Strategies 28:54 Aligning Organizational Expectations and Goals 30:09 Understanding Constraints and Goals 33:10 Planning and Execution 36:04 Balancing Quick Wins and Long-Term Strategic Initiatives 40:17 Gaining Buy-In from Leadership 43:10 Democratizing Knowledge about AI and ML Keywords Agile, data science, intersection, challenges, shipping, AI-enabled products, democratizing AI, product managers, prioritization, feature sets, quick wins, long-term strategic initiatives, buy-in, leadership
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    44 m
  • AI Integration in Established Product Ecosystems with Geert Timmermans
    Apr 28 2024
    Summary Geert Timmermans, CPTO at StoryTech, shares his background and experience in integrating AI into product development. He emphasizes the importance of bridging the gap between engineering and product teams to maximize the value of AI. The challenges organizations face when integrating AI include the need for the right skillset, avoiding gimmicks, and focusing on the value AI brings to customers. Timmermans suggests a strong focus on product discovery and continuous discovery to ensure AI is integrated effectively. He also highlights the importance of giving engineers the freedom to experiment and collaborate with the product team. AI should be seen as an enabler and an opportunity to enhance and augment human capabilities, rather than a threat or replacement. It can assist in various industries, such as healthcare and marketing, by speeding up processes and improving quality. The adoption of AI requires a mindset shift and a willingness to upskill. It is important to build AI architecture in a way that allows for flexibility and the ability to plug in different models and suppliers. Data readiness is a challenge for many organizations, and a phased approach to AI implementation can help overcome this by starting small and gradually scaling up. Takeaways Bridging the gap between engineering and product teams is crucial for successful AI integration. Product discovery and continuous discovery are essential for effective AI integration. Avoid gimmicks and focus on the value AI brings to customers. Give engineers the freedom to experiment and collaborate with the product team. AI should be seen as an enabler and an opportunity to enhance and augment human capabilities. AI can assist in various industries by speeding up processes and improving quality. The adoption of AI requires a mindset shift and a willingness to upskill. Building AI architecture with flexibility and the ability to plug in different models and suppliers is important. Data readiness is a challenge, and a phased approach to AI implementation can help overcome this. Chapters 00:00 Geert's Background and Role as CPTO 07:06 Challenges of Integrating AI into Established Product Ecosystems 10:08 The Importance of Collaboration between Engineering and Product Teams 12:27 Product Discovery and Continuous Exploration for AI Integration 14:23 AI as a Foundational Aspect of Product Development 14:49 Introduction and Product Discovery 19:20 Collaboration between AI and Software Development Teams 36:09 The Phased Approach to AI Integration 40:39 The Challenges and Realities of AI 48:10 Data Quality and IP Protection 51:47 AI as an Enabler, Not a Threat Keywords Geert Timmermans, CPTO, StoryTech, background, integrating AI, product development, engineering, product teams, skillset, value, challenges, product discovery, continuous discovery, engineers, collaboration, AI, enabler, opportunity, enhance, augment, assist, healthcare, marketing, adoption, upskill, architecture, flexibility, data readiness, phased approach
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    49 m
  • The Language of Innovation: Navigating the NLP Revolution with Ivan Lee, CEO of Datasaur
    Mar 18 2024
    Summary In this conversation, Cyrus and Ivan discuss various topics related to NLP (Natural Language Processing) and its impact on AI. They cover Ivan's background in AI and NLP, pivotal moments in his career, the current state of the NLP industry, best practices for data collection and NLP-powered products, the challenges of scaling LLM-POCs (Large Language Models Proof of Concepts) into production, and the ethical considerations of NLP. They also touch on the future of NLP and AI, including the potential for AI agents and the role of NLP in unlocking human creativity. Takeaways NLP is revolutionizing AI by enabling machines to understand and process human language. Data collection and the design and build of NLP-powered products require careful consideration and alignment with business metrics. Labeling data for NLP models can be time-consuming and expensive, and automation tools can help save time and money. Ensuring consistency and accuracy in NLP models is crucial, especially when dealing with multiple correct answers and user intent. The future of NLP and AI holds exciting developments, such as multimodal language understanding and unlocking human creativity. Ethical considerations are essential in the application of NLP, and measures must be taken to protect user privacy and ensure fairness. Integrating NLP into products and services requires a positive and forward-thinking mindset, embracing the potential of NLP to enhance user experiences and drive innovation. Chapters 00:00 The Current State of NLP Industry 00:15 Pivotal Moments in Ivan's Career 03:24 Advancements in NLP and LLMs 14:27 Data Labeling and Saving Time and Money 17:54 Impact of Lawsuits and Real-Time Use Cases on User Experience 18:51 Future-Proofing Products and Fine-Tuning Models 19:52 Standardization and Automation in Model Development 21:19 Scaling LLM-POCs into Production Environments 23:03 Complexity of Multiple Truths and User Intent in NLP 24:20 Best Practices for Labeling and Model Training 27:01 Case Study: Impact of DataSaur's NLP Technology on the Legal Industry 28:55 Ensuring Consistency and Accuracy in Model Output 34:14 Ethical Considerations in NLP and AI 39:04 Exciting Developments in NLP and AI 45:18 Advice for Integrating NLP into Products and Services
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    47 m

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