Avsnitt

  • How do you build AI tools that actually meet users’ needs? In this episode of High Agency, Raza speaks with Lorilyn McCue, the driving force behind Superhuman’s AI-powered features. Lorilyn lays out the principles that guide her team’s work, from continuous learning to prioritizing user feedback. Learn how Superhuman’s "learning-first" approach allows them to fine-tune features like Ask AI and AI-driven summaries, creating practical solutions for today’s professionals.

    00:00 - Introduction
    04:20 - Overview of the Superhuman
    06:50 - Instant Reply and Ask AI
    10:00 - Building On-Demand vs. Always-On AI Features
    13:45 - Prompt Engineering for Effective Summarization
    22:35 - The Importance of Seamless AI Integration in User Workflows
    25:10 - Developing Advanced Email Search with Contextual Reasoning
    29:45 - Leveraging User Feedback
    32:15 - Balancing Customization and Scalability in AI-Generated Emails
    36:05 - Approach to Prioritization
    39:30 - Real-World Use Cases: The Versatility of Current AI Capabilities
    43:15 - Learning and Staying Updated in the Rapidly Evolving AI Field
    46:00 - Is AI Overhyped or Underhyped?
    49:20 - Final Thoughts and Closing Remarks

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    Humanloop is an Integrated Development Environment for Large Language Models. It enables product teams to develop LLM-based applications that are reliable and scalable. To find out more go to humanloop.com

  • This week on High Agency, Raza Habib is joined by Chroma founder Jeff Huber. They cover the evolution of vector databases in AI engineering, challenge common assumptions about RAG and share insights from Chroma's journey. Jeff shares insights from Chroma's development, including their focus on developer experience and observations about real-world usage patterns. They also get into whether or not we can expect a super AI any time soon and what is over and under hyped in the industry today.

    00:00 - Introduction
    02:30 - Why vector databases matter for AI
    06:00 - Understanding embeddings and similarity search
    12:00 - Chroma early days
    15:45 - Problems with existing vector database solutions
    19:30 - Workload patterns in AI applications
    23:40 - Real-world use cases and search applications
    27:15 - The problem with RAG terminology
    31:45 - Dynamic retrieval and model interactions
    35:30 - Email processing and instruction management
    39:15 - Context windows vs vector databases
    42:30 - Enterprise adoption and production systems
    45:45 - The journey from GPT-3 to production AI
    48:15 - Internal vs customer-facing applications
    51:00 - Advice for AI engineers

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    Humanloop is an Integrated Development Environment for Large Language Models. It enables product teams to develop LLM-based applications that are reliable and scalable. To find out more go to humanloop.com

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  • In this episode of High Agency podcast, Peter Gostev shares his experiences implementing LLMs at NatWest and Moonpig. He discusses creating an AI strategy, talks about challenges in deploying LLMs in large organizations, and shares thoughts on underappreciated AI developments.

    00:00 - Introduction
    00:44 - OpenAI dev day reactions
    03:47 - Using AI to automate customer service
    10:43 - Impact of AI products
    13:41 - Who are the users of LLMs
    14:47 - Challenges building with AI in a large enterprise
    21:22 - AI use cases at Moonpig
    24:34 - How to create an AI strategy
    28:10 - Underappreciated AI developments

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    Humanloop is an LLM evals platform for enterprises. It enables product teams to develop LLM-based applications that are reliable and scalable. To find out more go to humanloop.com

  • In this episode of High Agency, we're joined by Surojit Chatterjee, former CPO of Coinbase and now CEO of Ema. Surojit unveils his audacious plan to create universal AI employees and revolutionize Fortune 1000 workforce. Drawing from his career at tech giants like Google and Coinbase, he shares how these experiences fueled his vision for Ema. Surojit dives into the challenges of building AI agents, explores the concept of artificial humans, and predicts how this technology could transform the future of SaaS

    (00:00:00) Introduction and Surojit’s background

    (00:03:00) Founding story of Ema (Universal AI Employee)

    (00:04:53) How the Universal AI Employee works

    (00:08:39) Ema’s data integration and security

    (00:12:57) AI employee use cases in enterprises

    (00:15:02) Challenges with building AI agents

    (00:16:45) Evaluations, hallucinations, customizing models

    (00:19:52) Artificial human metaphor

    (00:25:42) AI employee vs humans

    (00:31:25) Advice for AI builders

    (00:37:14) Is AI overhyped or underhyped?

    (00:39:28) How the business model of SaaS will change


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    Humanloop is an Integrated Development Environment for Large Language Models. It enables product teams to develop LLM-based applications that are reliable and scalable. To find out more go to humanloop.com

  • Hamel Husain is a seasoned AI consultant and engineer with experience at companies like GitHub, DataRobot, and Airbnb. He is a trailblazer in AI development, known for his innovative work in literate programming and AI-assisted development tools. Shawn Wang (aka Swyx) is the host of the Latent Space podcast, the author of the essay 'Rise of the AI Engineer,' and the founder of the AI Engineer World Fair. In this episode, Hamel and Swyx share their unique insights on building effective AI products, the critical importance of evaluations, and their vision for the future of AI engineering.

    Chapters
    00:00 - Introduction and recent AI advancements

    06:14 - The critical role of evals in AI product development

    15:33 - Common pitfalls in AI product development

    26:33 - Literate programming: A new paradigm for AI development

    39:58 - Answer AI and innovative approaches to software development

    51:56 - Integrating AI with literate programming environments

    58:47 - The importance of understanding AI prompts

    01:00:37 - Assessing the current state of AI adoption

    01:07:10 - Challenges in evaluating AI models

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    Humanloop is an Integrated Development Environment for Large Language Models. It enables product teams to develop LLM-based applications that are reliable and scalable. To find out more go to humanloop.com

  • Raz Nussbaum is a Senior Product Manager in AI at Gong — the leading AI platform for revenue teams. He is an absolute legend when it comes to building and scaling AI products that genuinely deliver value. In this episode, he opens up about what it takes to build successful AI products in an era where things change at lightning speed.

    Chapters
    00:00 - Introduction
    01:16 - How LLMs Changed Product Development at Gong AI
    08:32 - Including Product Managers in Development Process
    13:05 - Testing and Monitoring Pre vs Post-deployment
    17:53 - New Challenges in the Face of Generative AI
    19:39 - Shipping Fast and Interacting with the Market
    23:25 - What's Next For Gong AI
    25:13 - The Psychology of Trusting AI
    28:19 - Is AI Overhyped or Underhyped?

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    Humanloop is an Integrated Development Environment for Large Language Models. It enables product teams to develop LLM-based applications that are reliable and scalable. To find out more go to humanloop.com

  • In this episode, we dive deep into the world of AI-assisted creative writing with James Yu, founder of Sudowrite. James shares the journey of building an AI assistant for novelists, helping writers develop ideas, manage complex storylines, and avoid clichés. James gets into the backlash the company faced when they first released Story Engine and how they're working to build a community of users.

    00:00 - Introduction and Background of Sudowrite
    02:26 - The Early Days: Concept, Skepticism, and User Adoption
    05:20 - Sudowrite's Interface, Features, and User Base
    10:23 - Developing and Iterating Features in Sudowrite
    17:29 - The Evolution of Story Bible and Writing Assistance
    24:27 - Challenges in Maintaining Coherence and AI-Assisted Writing
    29:12 - Evaluating AI Features and the Role of Prompt Engineering
    33:35 - Handling Tropes, Clichés, and Fine-Tuning for Author Voice
    40:43 - The Controversy and Future of AI in Creative Work
    51:37 - Predictions for AI in the Next Five Years

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    Humanloop is an Integrated Development Environment for Large Language Models. It enables product teams to develop LLM-based applications that are reliable and scalable. To find out more go to humanloop.com

  • In this episode, LiveKit CEO Russ d'Sa explores the critical role of real-time communication infrastructure in the AI revolution. From building voice demos to powering OpenAI's ChatGPT, he shares insights on technical challenges around building multimodal AI on the web and what new possibilities are opening up.

    00:00 - Introduction and Background
    01:34 - The Evolution of AI and Lessons for Founders
    05:20 - Timelines and Technological Progress
    10:32 - Overview of LiveKit and Its Impact on AI Development
    13:39 - Why LiveKit Matters for AI Developers
    19:08 - Partnership with OpenAI
    21:25 - Challenges in Streaming and Real-Time Data Transmission
    30:07 - Building a global network for AI communication
    37:21 - Real-world applications of LiveKit in AI systems
    40:55 - Future of AI and the Concept of Abundance
    43:38 - The Irony of Wealth in an Age of AI

    I hope you enjoy the conversation and if you do, please subscribe!

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    Humanloop is an Integrated Development Environment for Large Language Models. It enables product teams to develop LLM-based applications that are reliable and scalable. To find out more go to humanloop.com

  • This week we’re talking to Lin Qiao, former PyTorch lead at Meta and current CEO of Fireworks AI. We discuss the evolution of AI frameworks, the challenges of optimizing inference for generative AI, the future of AI hardware, and open-source models. Lin shares insights on PyTorch design philosophy, how to achieve low latency, and the potential for AI to become as ubiquitous as electricity in our daily lives.

    Chapters:
    00:00 - Introduction and PyTorch Background
    04:28 - PyTorch's Success and Design Philosophy
    08:20 - Lessons from PyTorch and Transition to Fireworks AI
    14:52 - Challenges in Gen AI Application Development
    22:03 - Fireworks AI's Approach
    24:24 - Technical Deep Dive: How to Achieve Low Latency
    29:32 - Hardware Competition and Future Outlook
    31:21 - Open Source vs. Proprietary Models
    37:54 - Future of AI and Conclusion

    I hope you enjoy the conversation and if you do, please subscribe!

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    Humanloop is an Integrated Development Environment for Large Language Models. It enables product teams to develop LLM-based applications that are reliable and scalable. To find out more go to humanloop.com

  • In this episode of High Agency, we are speaking to Paras Jain who is the CEO of AI video generation startup Genmo. Paras shares insights from his experience working on autonomous vehicles, why he chose academia over an offer from Tesla, and the research-minded approach that has lead to Genmo's rapid success.

    Chapters:
    (00:00) Introduction
    (01:52) Lessons from selling an AI company to Tesla
    (07:01) Working within GPU constraints and transformer architecture
    (11:18) Moving from research to startup success
    (14:36) Leading the video generation industry
    (16:05) Training diffusion models for videos
    (19:36) Evaluating AI video generation
    (24:06) Scaling laws and data architecture
    (28:34) Issues with scaling diffusion models
    (33:09) Business use cases for video generation models
    (36:43) Potential and limitations of video generation
    (40:59) Ethical training of video models

  • In this week’s episode of the High Agency podcast, Humanloop Co-Founder and CEO Raza Habib sat down with Eddie Kim, co-founder and Head of Technology at Gusto and guest host Ali Rowghani to discuss how Gusto has applied AI to revolutionize ops-heavy processes like payroll and HR admin. Eddie also elaborates why Gusto is choosing to build, and not buy, the majority of their GenAI tech stack.

    Chapters
    00:00 - Introduction and Background
    02:15 - Overview of Gusto's Business
    05:59 - Operational Complexity and AI Opportunities
    08:51 - Build vs. Buy: Internal vs. External AI Tools
    10:07 - Prioritizing AI Use Cases
    13:53 - Human-in-the-Loop Approach
    19:39 - Centralized AI Team and Approach
    22:53 - Measuring ROI from AI Initiatives
    32:25 - AI-Powered Reporting Feature
    38:46 - Code Generation and Developer Tools
    42:52 - Impact of AI on Companies and Society
    47:22 - AI Safety and Risks
    49:54 - Closing Thoughts

    I hope you enjoy the conversation and if you do, please subscribe!

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    Humanloop is an Integrated Development Environment for Large Language Models. It enables product teams to develop LLM-based applications that are reliable and scalable. To find out more go to humanloop.com/podcast

  • In this episode, we sit down with Michael Royzen, CEO and co-founder of Phind. Michael shares insights from his journey in building the first LLM-based search engine for developers, the challenges of creating reliable AI models, and his vision for how AI will transform the work of developers in the near future.

    Tune in to discover the groundbreaking advancements and practical implications of AI technology in coding and beyond.

    I hope you enjoy the conversation and if you do, please subscribe!

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    Humanloop is an Integrated Development Environment for Large Language Models. It enables product teams to develop LLM-based applications that are reliable and scalable. To find out more go to humanloop.com

  • Jason Liu is a true Renaissance Man in the world of AI. He began his career working on traditional ML recommender systems at tech giants like Meta and Stitch Fix and quickly pivoted into LLMs app development when ChatGPT opened its API in 2022. As the creator of Instructor, a Python library that structures LLM outputs for RAG applications, Jason has made significant contributions to the AI community. Today, Jason is a sought-after speaker, course creator, and Fortune 500 advisor.

    In this episode, we cut through the AI hype to explore effective strategies for building valuable AI products and discuss the future of AI across industries.

    Chapters:
    00:00 - Introduction and Background
    08:55 - The Role of Iterative Development and Metrics

    10:43 - The Importance of Hyperparameters and Experimentation

    18:22 - Introducing Instructor: Ensuring Structured Outputs
    20:26 - Use Cases for Instructor: Reports, Memos, and More
    28:13 - Automating Research, Due Diligence, and Decision-Making
    31:12 - Challenges and Limitations of Language Models
    32:50 - Aligning Evaluation Metrics with Business Outcomes
    35:09 - Improving Recommendation Systems and Search Algorithms
    46:05 - The Future of AI and the Role of Engineers and Product Leaders
    51:45 - The Raptor Paper: Organizing and Summarizing Text Chunks

    I hope you enjoy the conversation and if you do, please subscribe!

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    Humanloop is an Integrated Development Environment for Large Language Models. It enables product teams to develop LLM-based applications that are reliable and scalable. To find out more go to humanloop.com

  • If you need to understand the future trajectory of AI, Logan Kilpatrick will help you do just that. Having seen the frontier at both OpenAI and Google.

    Logan led developer relations at OpenAI before leading product on the Google AI Studio. He's been closer than anyone to developers building with LLMs and has seen behind the curtain at two frontier labs.

    Logan and I talked about:
    🔸 What it was like joining OpenAI the day ChatGPT hit 1 million users
    🔸 What you might expect from GPT5
    🔸 Google's latest innovations and the battle with OpenAI
    🔸 How can you stay ahead and achieve real ROI
    🔸 Logan's insights into the form factor of AI and what will replace chatbots

    Chapters:
    00:00 - Introduction
    01:50 - OpenAI and the Release of ChatGPT
    07:43 - Characteristics of Successful AI Products and Teams
    10:00 - The Rate of Change in AI
    12:22 - The Future of AI and the Role of Systems
    13:47 - ROI in AI and Challenges with Cost
    18:07 - Advice for Builders and the Potential of Fine-Tuning
    20:52 - The Role of Prompt Engineering in AI Development
    25:27 - The Current State of Gemini
    34:07 - Future Form Factors of AI
    39:34 - Challenges and Opportunities in Building AI Startups

    I hope you enjoy the conversation and if you do, please subscribe!

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    Humanloop is an Integrated Development Environment for Large Language Models. It enables product teams to develop LLM-based applications that are reliable and scalable. To find out more go to humanloop.com

  • I'm excited to share this conversation with Max Rumpf the founder of Sid.AI. I wanted to speak to Max because Retrieval Augmented generation has become core to building AI applications and he knows more about RAG than anyone I know.

    We get deep into the challenges of building RAG systems and the episode is full of technical detail and practical insights.

    We cover:
    00:00 - Introduction to Max Rumpf and SID.ai
    03:39 - How SID.ai's RAG approach differs from basic tutorials
    07:30 - Challenges of document processing and chunking strategies
    13:07 - Retrieval techniques and hybrid search approaches
    15:06 - Discussion on knowledge graphs and their limitations
    20:58 - Reranking in RAG systems and performance improvements
    32:14 - Impact of longer context windows on RAG systems
    35:10 - The future of RAG and information retrieval
    39:47 - Recent research papers on AI and hallucination detection
    42:04 - Value-augmented sampling for language model alignment
    43:11 - Future trends and investment opportunities in AI
    43:50 - SEO optimization for LLMs and its potential as a business
    45:20 - Closing thoughts and wrap-up

    I hope you enjoy the conversation and if you do, please subscribe!

  • In this episode, I had the pleasure of speaking with Wade Foster, the founder and CEO of Zapier. We discussed Zapier's journey with AI, from their early experiments to the company-wide AI hackathon they held in March. Wade shared insights on how they prioritize AI projects, the challenges they've faced, and the opportunities they see in the AI space. We also talked about the future of AI and how it might impact the way we work

  • In this episode, I chatted with Shawn Wang about his upcoming AI engineering conference and what an AI engineer really is. It's been a year since he penned the viral essay "Rise of the AI Engineer' and we discuss if this new role will be enduring, the make up of the optimal AI team and trends in machine learning.

    The Rise of the AI Engineer Blog Post: https://www.latent.space/p/ai-engineer

    Chapters
    00:00 - Introduction and background on Shawn Wang (Swyx)
    03:45 - Reflecting on the "Rise of the AI Engineer" essay
    07:30 - Skills and characteristics of AI Engineers
    12:15 - Team composition for AI products
    16:30 - Vertical vs. horizontal AI startups
    23:00 - Advice for AI product creators and leaders
    28:15 - Tools and buying vs. building for AI products
    33:30 - Key trends in AI research and development
    41:00 - Closing thoughts and information on the AI Engineer World Fair Summit

    Humanloop is an Integrated Development Environment for Large Language Models. It enables product teams to develop LLM-based applications that are reliable and scalable. To find out more go to https://hubs.ly/Q02yV72D0

  • Sourcegraph have built the most popular open source AI coding tool in both the dev community and the Fortune 500. I sat down with Beyang Liu their CTO and cofounder to find out how they did it.

    We dive into the technical details of Cody's architecture, discussing how Sourcegraph handles the challenges of limited context windows in LLMs, why they don't use embeddings in their RAG system, and the importance of starting with the simplest approach before adding complexity.

    We also touch on the future of software engineering, open-source vs closed LLM models and what areas of AI are overhyped vs underhyped

    I hope you enjoy the conversation!

    Chapters
    - 00:00:00 - Introduction
    - 00:02:30 - What is Cody, and how does it help developers?
    - 00:04:15 - Challenges of building AI for large, legacy codebases
    - 00:07:30 - The importance of starting with the simplest approach
    - 00:11:00 - Sourcegraph's multi-layered context retrieval architecture using RAG
    - 00:15:30 - Adapting to the evolving landscape of LLMs and model selection
    - 00:19:00 - The future of software engineering in the age of AI
    - [00:23:00 - Advice for individuals navigating the AI wave
    - 00:26:00 - Predictions for the future of AI in software development
    - 00:30:00 - Is AI overhyped, underhyped, or both?
    - 00:33:00 - Exciting AI startups to watch
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    Humanloop is an Integrated Development Environment for Large Language Models. It enables product teams to develop LLM-based applications that are reliable and scalable. To find out more go to https://hubs.ly/Q02yV72D0

  • I recently sat down with Bryan Bischof, AI lead at Hex, to dive deep into how they evaluate LLMs to ship reliable AI agents. Hex has deployed AI assistants that can automatically generate SQL queries, transform data, and create visualizations based on natural language questions. While many teams struggle to get value from LLMs in production, Hex has cracked the code.

    In this episode, Bryan shares the hard-won lessons they've learned along the way. We discuss why most teams are approaching LLM evaluation wrong and how Hex's unique framework enabled them to ship with confidence.

    Bryan breaks down the key ingredients to Hex's success:
    - Choosing the right tools to constrain agent behavior
    - Using a reactive DAG to allow humans to course-correct agent plans
    - Building granular, user-centric evaluators instead of chasing one "god metric"
    - Gating releases on the metrics that matter, not just gaming a score
    - Constantly scrutinizing model inputs & outputs to uncover insights

    For show notes and a transcript go to:
    https://hubs.ly/Q02BdzVP0
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    Humanloop is an Integrated Development Environment for Large Language Models. It enables product teams to develop LLM-based applications that are reliable and scalable. To find out more go to https://hubs.ly/Q02yV72D0

  • 50% of AI contracts at Ironclad’s largest customers are now automatically negotiated with the help of generative AI. Ironclad were one of the earliest adopters of LLMs, starting when the best model was still GPT-3. There’s a lot of hype around AI agents without many successful examples but Ironclad had successfully deployed them in one of the most sensitive industries imaginable.

    In this episode Cai explains how they achieved this. Why they had to build their own visual programming language to make agents reliable and shares his advice for AI leaders starting to build products today.

    Where to find us: https://hubs.ly/Q02z2J6v0