Recent Summaries

Why inventing new emotions feels so good

about 4 hours agotechnologyreview.com
View Source

This newsletter explores the emergence of "neo-emotions," new words and concepts for feelings that are arising online and in response to our changing world. It argues that these new emotions reflect a shift in emotion science, highlighting the cultural and social construction of feelings rather than a set of basic, universal emotions.

  • Proliferation of Neo-Emotions: The article highlights the increasing appearance of new terms for emotions, like "velvetmist," "eco-anxiety," and "Black joy," often originating online.

  • Social and Cultural Construction of Emotions: It challenges the traditional view of basic emotions, emphasizing that feelings are culturally determined and learned.

  • Online Influence: The internet and social media are seen as major drivers in the creation and spread of these neo-emotions, facilitating connection and shared understanding.

  • Emotional Granularity: The newsletter emphasizes the benefits of developing a more specific and detailed vocabulary for emotions, which is linked to improved mental and physical well-being.

  • Neo-emotions help individuals connect and make sense of experiences: These terms can provide a shared language for navigating complex or novel situations.

  • Emotional vocabulary is constantly evolving: Language adapts to express new experiences and cultural shifts.

  • Emodiversity is beneficial for your health: The ability to distinguish subtle differences in your emotional state is correlated with better health and life outcomes.

Adapting Your Data Platform to the Agent-Native Era

about 4 hours agogradientflow.com
View Source

This newsletter discusses the shift in data engineering towards agent-native data platforms driven by the increasing automation and context-heavy workloads handled by AI agents. It emphasizes the need for data platforms to prioritize reliability, code-first interfaces, multimodal data support, and pipeline-native safety to effectively support these agent-driven workflows. The evolution requires a move from human-centric to machine-centric data systems, optimizing for agent throughput and continuous, safe data iteration.

  • Rise of Agent-Native Data Platforms: Data engineering is evolving to support AI agents, with a shift from human-driven to machine-driven workflows.

  • Emphasis on Reliability and Safety: Critical requirements for agent-driven data platforms include version control, automated testing, and atomic pipeline updates to prevent data corruption.

  • Multimodal Data Support: Platforms must handle text, images, video, and high-dimensional vectors as primary data types, utilizing architectures like the Multimodal Lakehouse and formats like Lance.

  • Context as a First-Class Citizen: The newsletter highlights the importance of context stores and semantic layers to provide agents with the necessary business logic for data interpretation.

  • Heterogeneous Compute: The need for blending CPUs and GPUs in data pipelines, requiring policy-driven scheduling to optimize utilization.

  • The "Fragmentation Tax": The cost paid when data workflows are split across incompatible analysis, build, and run environments, leading to failures and hallucinations for autonomous agents.

  • Code-First Interface: Durable automation needs stable APIs and CLIs for every operation.

  • Write–audit–publish: Adopt this paradigm, where a doer agent is paired with a critic (or a test suite) so that every change must clear explicit checks before it lands.

  • Agent-Throughput Economics: The future of data engineering emphasizes fast scheduling, aggressive caching, and cheap retries to efficiently handle agentic workloads.

  • Evolving Role of Data Engineers: The data engineer role is shifting from manual pipeline construction to high-level system supervision, focusing on architecture, policy-setting, and orchestrating specialized agents.

AI ruined the job market, so people are using dating apps to find work

about 4 hours agoknowtechie.com
View Source

The KnowTechie newsletter highlights the surprising trend of job seekers using dating apps to network and find employment due to the increasing difficulty of getting past AI-powered hiring tools. This creative workaround reflects frustration with automated resume scanners and the importance of referrals in today's job market, with some users even finding romance along the way.

  • AI Impact on Hiring: AI-powered hiring tools are making it harder for job seekers to get noticed, leading to creative strategies to bypass algorithms.

  • Dating Apps as Networking Tools: A significant number of people are using dating apps to find job opportunities and make professional connections.

  • Referrals are Key: Referrals are becoming essential for bypassing automated systems, leading job seekers to unconventional networking methods.

  • Blurred Lines: A surprising percentage of these professional connections on dating apps also turn physical.

  • Job Market Frustration: The use of dating apps underscores the frustration and difficulty many experience in the current job market.

  • Networking Inequality: The reliance on networking highlights existing inequalities, as those without established networks seek alternative routes.

  • AI Bias Concerns: The article subtly points to the biases and limitations of AI-driven hiring processes.

The ascent of the AI therapist

1 day agotechnologyreview.com
View Source

This newsletter analyzes the rise of AI therapy and its potential consequences, reviewing several books that explore the intersection of AI and mental health. It highlights both the potential benefits of AI in addressing the global mental health crisis and the significant risks associated with unregulated AI therapy, including privacy concerns, algorithmic bias, and the erosion of human connection in mental healthcare.

  • Ethical Concerns: The newsletter emphasizes the ethical issues surrounding AI therapy, particularly regarding data privacy, potential for exploitation, and the lack of regulatory oversight.

  • The "Black Box" Problem: It discusses the inherent opacity of both the human brain and AI models, creating unpredictable feedback loops in AI therapy.

  • Commercialization vs. Care: The tension between the capitalist incentives driving AI therapy development and the genuine desire to provide mental health support is a key theme.

  • Dystopian Potential: The newsletter explores the potential for AI therapy to lead to a "digital asylum" where individuals are constantly surveilled and manipulated by algorithms.

  • AI therapy, while offering accessibility and potential for efficiency, carries risks of inconsistent, dangerous advice and privacy violations.

  • Over-reliance on AI in mental health could lead to atrophy of human therapists' skills and judgement.

  • The commodification of mental health data raises concerns about exploitation and market dominance over user well-being.

  • Despite good intentions, AI therapy tools can be enmeshed in systems that exploit, surveil, and reshape human behavior.

Data Engineering in 2026: What Changes?

1 day agogradientflow.com
View Source

This newsletter discusses the evolving landscape of data engineering in 2026, driven by the increasing use of AI agents for automated tasks. It emphasizes the need to adapt data platforms to handle multimodal data, ensure data reliability, and optimize for agent throughput rather than human pacing.

  • Agent-Native Data Platforms: Data platforms are shifting towards serving AI agents as primary users, necessitating changes in architecture and workflows.

  • Reliability and Safety First: The need for robust systems with version control, automated testing, and sandboxing becomes paramount to prevent errors when agents make decisions.

  • Multimodal Data Handling: The focus shifts from primarily tabular data to encompassing text, images, video, and vectors as first-class citizens, requiring new storage solutions like the Multimodal Lakehouse with formats like Lance.

  • Context and Semantics: Context stores and computable assets are crucial to bridge the "context gap," enabling agents to understand and interpret data correctly.

  • Evolution of the Data Engineer Role: The role is transitioning from manual tasks to high-level system supervision, architecture, and policy-setting as agents automate lower-level tasks.

  • Fragmented architectures are problematic: Agents hallucinate or stall when pipelines fail between "dev" and production, while human engineers investigate.

  • Code-first interfaces are critical: Stable APIs and CLIs (not GUIs) are needed for durable automation.

  • "Git for Data" is now a safety harness: Correctness guarantees need to exist at the pipeline boundary, not just individual table writes to prevent data corruption.

  • Ephemeral, disposable databases are emerging: Agents need serverless environments (like DuckDB or SQLite) to test single tasks and discard intermediate reasoning without clogging the permanent warehouse.

  • Focus on Modernization: High ROI for agents comes from modernizing legacy systems (scripts, stored procedures, etc) - refactoring things too risky for humans.

ChatGPT might get ads (again), and they might sit next to your advice

1 day agoknowtechie.com
View Source

This KnowTechie newsletter primarily focuses on the potential re-introduction of advertising within ChatGPT, exploring different implementation methods and their possible impact on user trust. It also touches on other AI and tech news, including privacy concerns around "ChatGPT Wrapped" and updates to ChatGPT's functionality.

  • ChatGPT Advertising: OpenAI is again exploring advertising within ChatGPT, potentially integrating sponsored content directly into chatbot responses or using sidebar ads.

  • User Trust: The primary concern revolves around maintaining user trust, especially if ads are subtly integrated into advice and recommendations. Transparency in ad labeling and personalization settings are crucial.

  • AI Development: The newsletter mentions Google Gemini as a competitor putting pressure on OpenAI, suggesting an ongoing race in AI development and quality.

  • ChatGPT Updates: Mentions recent updates, including increased image generation speed, improved editing, and personality settings that can be tweaked.

  • Other Tech News: Includes a variety of other tech-related news items, such as a lawsuit against ChatGPT, social media warning labels in New York, and updates to apps like WhatsApp.

  • The key takeaway is that the way ads are implemented in AI like ChatGPT significantly impacts user perception and trust. Subtly integrated ads are more likely to raise concerns than clearly labeled sidebar ads.

  • OpenAI's exploration of ads suggests a need to monetize the platform, but the company is seemingly aware of the potential user backlash.

  • The newsletter highlights the increasing importance of ethical considerations as AI becomes more integrated into daily life.

  • There is a focus on user awareness, with tips on managing privacy settings and understanding the implications of AI features.

  • The variety of other news items shows a broad coverage of trending topics in consumer technology.