Powered by RND
PodcastTecnologiaOpen||Source||Data

Open||Source||Data

Charna Parkey
Open||Source||Data
Ultimo episodio

Episodi disponibili

5 risultati 95
  • Your AI Roadmap: Building a Career, Revenue and a Future in AI | Dr. Joan Bajorek
    In this episode, Dr. Joan Bajorek—AI entrepreneur, author of Your AI Roadmap, and founder of Clarity AI—joins Charna Parkey to talk about what it really takes to build a future in AI. From career pivots and layoff anxiety to financial transparency and finding joy in your work, Joan shares practical advice and personal stories navigating fear, burnout, and career uncertainty in tech, while staying grounded in purpose, community, and long-term resilience.TIMESTAMPS[00:00:00] — Introduction to Joan Bajorek & Her Work[00:02:00] — Transparency About Finances and Career[00:04:00] — The Taboo Around Talking About Money[00:06:00] — Resilience During Tech Layoffs[00:08:00] — How to Get Credit for Your Work[00:12:00] — Should You Chase an AI Job?[00:14:00] — Career Goals vs. Financial Security[00:16:00] — Translating Academic and Life Skills into Tech[00:18:00] — Defining and Finding Joy in Work[00:20:00] — Multiple Income Streams and Personal Freedom[00:24:00] — AI’s Near-Future Impact on Jobs and Industries[00:26:00] — Data and AI Opportunities in Underexplored Domains[00:34:00] — Creating Scalable, Alternative Income Models[00:36:00] — How Joan Maintains Long-Term Motivation[00:42:00] — Post-Interview DiscussionQUOTESJoan Bajorek"Networking is how I've gotten the best opportunities and jobs of my life... LinkedIn has this research about how after COVID layoffs, 70% of people landed their next job based on an intro."Charna Parkey"I always try to strive for transparency, and I get such mixed results where at work with coworkers, it's absolutely valued. And then there seems to always be some sort of consequences in my personal life."
    --------  
    55:36
  • Cooperative Systems, Data Transparency & Quality and the Year of Small AI | Dr. Jason Corso
    Dr. Jason Corso joins Charna Parkey to debate the critical role of data quality, how its transparency shapes AI development and the rise of smaller, domain-specific AI models - making 2025 the year of small, specialized AI. QUOTESCharna Parkey"Knowing the right data is incredibly important, because it'll save you money, but predicting the impact of that data means that you don't have to do the training at all to even directionally know if it's going to work out, right?"Jason Corso "You can't understand and analyze an AI system in the way you can analyze open source software if you don't have access to the data."Timestamps[00:00:00] - Introduction[00:02:00] - Jason Corso’s journey on open source[00:08:00] - The importance of data in AI[00:10:00] - Voxel 51's mission[00:14:00] - The value of open source and the importance of data in AI systems[00:20:00] - Recent discoveries in AI[00:28:00] - The cost of training AI models[00:36:00] - Cooperative AI in healthcare[00:40:00] - Charna Parkey on the impact of AI in education[00:56:00] -The year of small AI 
    --------  
    1:03:09
  • Building the Future of Streaming Data | Alex Gallego
    In this episode of Open Source Data, Charna Parkey talks with Alex Gallego, CEO and founder of Redpanda Data, about his journey as a builder, the evolution of Redpanda, and the company's new agent framework for the enterprise. Alex shares insights on low-latency storage, distributed stream processing, and the importance of developer experience to the growth of AI and the Open Source space. Timestamps[00:00:00] Introduction[00:02:00] Alex Gallego talks about his background[00:04:00] Charna Parkey discusses the importance of hands-on experience in learning.[00:06:00] Alex explains the origins of Red Panda and how it emerged from challenges in the streaming space.[00:08:00] Alex details the evolution of Red Panda, its use of C-Star and FlatBuffers, and its low-latency design.[00:11:00] Alex discusses the positioning of Kafka versus Red Panda in the market.[00:20:00] Alex introduces Red Panda's new agent framework and multi-agent orchestration.[00:24:00] Alex explains how Red Panda fits into the evolving landscape of AI-powered applications.[00:30:00] The future of multi-agent orchestration.[00:44:00] Thoughts on AI model training and data retention.[00:46:00] Alex encourages future founders and shares his perspective on risk-taking.[00:50:00] Charna Parkey and Leo Godoy discuss the key takeaways from the conversation with Alex Gallego.[00:52:00] Charna reflects on open source trends and the role of developer experience in adoption.[00:54:00] Charna and Leo talk about the different types of founder journeys and the importance of team dynamQuotes Charna Parkey"For AI, unifying historical and real-time data is critical. If you're just using nightly or monthly data, it doesn’t match the context in which your prediction is being made. So it becomes very important in the future of applying AI because you need to align those things."Alex Gallego"Every app is going to span three layers. The first layer is going to be your operational layer, just like you have to do business right now. Then there always has to be an analytical layer, and the third layer is this layer of autonomy."
    --------  
    55:48
  • What is Neuro-Symbolic AI? | Emin Can Turan
    In this episode, we dive deep into the world of neuro-symbolic AI with Emin Can Turan, CEO of Pebbles AI. Learn how this technology combines neuroscience, behavioral economics, and AI to revolutionize B2B go-to-market strategies. Emin explains how neuro-symbolic AI bridges the gap between human logic and machine learning, enabling smarter, context-aware systems that democratize complex workflows for startups and enterprises alike.Timestamps[00:00:00] - Introduction by Charna Parkey and introduction of Emin Can Turan.[00:02:00] - Emin’s journey to AI and his background in go-to-market strategies.[00:06:00] - Emin explains his deep R&D phase and the development of neuro-symbolic AI.[00:08:00] - Emin describes the architecture of their AI system, including neuro-symbolic AI, generative AI, and agentic frameworks.[00:10:00] - Explanation of neuro-symbolic AI and its relevance to domain-specific problems.[00:12:00] - Discussion on the components of go-to-market strategies and the role of psychology and communication.[00:16:00] -The limitations of generative AI and how they applied strict communication tactics.[00:22:00] - Discussion on the importance of contextual science and data insights.[00:24:00] - The three agentic frameworks they use in their system.[00:26:00] - Explanation of how users control the product and the two co-pilots (strategy and execution).[00:36:00] - The ethical implications of AI and the potential for misuse.[00:38:00] - Discussion on the future of AI and the balance between dystopian and hopeful outcomes.[00:40:00] - Emin emphasizes the importance of truth and transparency in AI development.[00:42:00] - Emin shares his personal motivation for building his AI startup.[00:48:00] - Closing remarks and discussion on the user experience of their platform.[00:50:00] - Charna and Leo discuss the connection between Emin's work and the open-source community.QuotesEmin Can Turan"I felt that this was the future and that AI was the only technology that can digitalize this level of complexity for everyone to use. Nothing else could, you know, you can't use normal neural networks to do this. Even generative AI is not sufficient enough."Charna ParkeyI would love to be able to use Gen AI for more personal things. I love technology. I have the Oura Ring. I've got the Apple Watch. I want to feed that data into something that can somehow tell me and others, here's your state of mind. Here's what you're going to be affected by. 
    --------  
    56:22
  • How to Empower Non-Technical Teams with Data Insights | Suzanne El-Moursi
    Learn how BrightHive's AI-powered platform is democratizing data insights, making them accessible to non-technical teams across organizations. Suzanne El-Moursi discusses the importance of data fluency and how BrightHive is helping businesses harness the power of their data.Timestamps00:00:00 -  Introduction and Background00:02:30 - Journey to BrightHive and open source00:06:00 - The evolution of AI and BrightHive's approach00:14:00 - The data problem and the role of AI agents00:22:00 - Building BrightBot with open source frameworks00:26:00 - The future of AI agents and open source00:30:00 - People’s reaction to DeepSeek 00:34:00 - The future of work and AI00:40:00- AI in education and personal growth00:42:00 - Suzanne’s legacy 00:48:00 -Recap and takeaways with producer Leo GodoyQuotesCharna Parkey "Every single innovation comes out of some form of restriction or need. (...) Don't come and say, “oh, what is this? This is terrible”. I heard all kinds of responses to my excitement and to my belief."Suzanne El-Moursi"So if 97% of an organization is data consumers, there are strategists, the marketing analysts, the customer success associates, the managers all across the enterprise, who need to understand the insights in the company's data, in their functions, in their units, so that they can make the next right step for the customer and for their plan."
    --------  
    55:23

Altri podcast di Tecnologia

Su Open||Source||Data

What can we learn from ai-native development through stimulating conversations with developers, regulators, academics and people like you that drive forward development, seek to understand impact, and are working to mitigate risk in this new world? Join Charna Parkey and the community shaping the future of open source data, open source software, data in AI, and much more.
Sito web del podcast

Ascolta Open||Source||Data, Pillole di Bit e molti altri podcast da tutto il mondo con l’applicazione di radio.it

Scarica l'app gratuita radio.it

  • Salva le radio e i podcast favoriti
  • Streaming via Wi-Fi o Bluetooth
  • Supporta Carplay & Android Auto
  • Molte altre funzioni dell'app