Databricks Co-Founder Advocates for Open Source in the U.S. to Compete with China in AI

<div>
  <h2>The U.S. AI Landscape: A Call to Address China's Growing Dominance</h2>
  <p id="speakable-summary" class="wp-block-paragraph">Andy Konwinski, co-founder of Databricks and Laude, warns of a looming "existential" threat to American democracy posed by China's advancements in AI research.</p>

  <h3>Shifting Paradigms in AI Innovation</h3>
  <p class="wp-block-paragraph">Speaking at the Cerebral Valley AI Summit, Konwinski stated, “If you talk to PhD students at Berkeley and Stanford in AI right now, they’ll tell you that they’ve read twice as many interesting AI ideas in the last year that were from Chinese companies than American companies.”</p>

  <h3>Investments Fueling Research and Development</h3>
  <p class="wp-block-paragraph">Konwinski’s initiatives include both a venture fund, launched with industry veterans Pete Sonsini and Andrew Krioukov, and the Laude Institute, which offers grants to support researchers in the AI field.</p>

  <h3>Proprietary Innovations vs. Open Source Collaborations</h3>
  <p class="wp-block-paragraph">Despite significant advancements from major AI labs like OpenAI, Meta, and Anthropic, these innovations largely remain proprietary. These companies also attract top talent with lucrative salaries that far exceed academic compensation.</p>

  <h3>The Power of Open Exchange in AI Development</h3>
  <p class="wp-block-paragraph">Konwinski believes that for groundbreaking ideas to thrive, they must be shared and discussed publicly. He highlighted that generative AI's emergence stemmed from the freely available Transformer architecture, a crucial training methodology introduced in an open research paper.</p>

  <h3>China's Support for AI Innovation</h3>
  <p class="wp-block-paragraph">According to Konwinski, China's government fosters AI innovation by supporting open-source initiatives, such as those from DeepSeek and Alibaba's Qwen, allowing further advancements and breakthroughs.</p>

  <div class="wp-block-techcrunch-inline-cta">
    <div class="inline-cta__wrapper">
      <p>Techcrunch event</p>
      <div class="inline-cta__content">
        <p>
          <span class="inline-cta__location">San Francisco</span>
          <span class="inline-cta__separator">|</span>
          <span class="inline-cta__date">October 13-15, 2026</span>
        </p>
      </div>
    </div>
  </div>

  <h3>The Deteriorating Scientific Exchange in the U.S.</h3>
  <p class="wp-block-paragraph">Konwinski underscores a sharp decline in the collaborative exchange among scientists in the U.S., arguing that “the diffusion of scientists talking to scientists that we always have had in the United States, it’s dried up.”</p>

  <h3>A Dual Threat to Democracy and Business</h3>
  <p class="wp-block-paragraph">This trend poses a dual threat to both democracy and the viability of major U.S. AI labs. “We’re eating our corn seeds; the fountain is drying up. Fast-forward five years, the big labs are gonna lose too,” Konwinski warned. “We need to ensure the United States remains number one and open.”</p>
</div>

This rewrite uses HTML formatting with appropriate headers for SEO, ensuring the content is both engaging and informative while maintaining the original message.

Here are five FAQs based on the topic of Databricks co-founder advocating for open source to enhance the U.S. position in AI against China:

FAQ 1: Why does the Databricks co-founder believe open source is crucial for AI development in the U.S.?

Answer: The Databricks co-founder argues that adopting open source in AI development is essential to foster collaboration, innovation, and transparency. This approach can accelerate advancements and ensure that the technology remains accessible to a broader range of developers and researchers, ultimately strengthening the U.S. position in the AI race against China.

FAQ 2: How can open source initiatives benefit AI research and development?

Answer: Open source initiatives can enhance AI research by allowing multiple contributors to collaborate on projects, share insights, and build on existing work. This collective pool of resources and expertise can lead to faster technological breakthroughs, reduce duplication of efforts, and democratize access to cutting-edge tools and techniques.

FAQ 3: What role does government policy play in promoting open source AI?

Answer: Government policy can significantly influence the adoption of open source AI by providing funding, establishing supportive regulations, and encouraging public-private partnerships. Policies that promote open source initiatives can stimulate innovation and ensure that the U.S. remains competitive in the global AI landscape, particularly relative to countries like China.

FAQ 4: What are some examples of successful open source AI projects?

Answer: Successful open source AI projects include TensorFlow and PyTorch, both of which have become foundational frameworks for machine learning and deep learning. These projects have garnered robust community support and have significantly advanced the capabilities of AI development across various industries.

FAQ 5: How does a focus on open source AI influence ethical considerations in technology?

Answer: Focusing on open source AI promotes ethical considerations by encouraging transparency and scrutiny of algorithms and models, as they are accessible to public review. This openness can help prevent bias and ensure accountability in AI systems, ultimately fostering a more ethical approach to AI development and deployment.

Source link

Datumo, Based in Seoul, Secures $15.5M Funding to Compete with Scale AI, Supported by Salesforce

<div>
    <h2>Datumo Secures $15.5 Million to Enhance AI Safety and Evaluation</h2>

    <p id="speakable-summary" class="wp-block-paragraph">A recent McKinsey report reveals that many organizations feel unprepared to safely and responsibly implement generative AI. Key among the concerns is explainability—the need to comprehend AI decision-making processes. While 40% of respondents consider this a high risk, only 17% are addressing it effectively.</p>

    <h3>From Data Labeling to AI Safety Solutions</h3>
    <p class="wp-block-paragraph">Seoul-based <a target="_blank" href="https://open.datumo.com/en/" rel="noreferrer noopener nofollow">Datumo</a>, originally focused on AI data labeling, is now on a mission to support businesses in creating safer AI systems. Their tools facilitate testing, monitoring, and model improvement without requiring advanced technical skills. The startup recently raised $15.5 million, bringing its total funding to approximately $28 million, backed by investors like Salesforce Ventures, KB Investment, ACVC Partners, and SBI Investment.</p>

    <h3>Innovative Ideas from Frustration</h3>
    <p class="wp-block-paragraph">Frustrated by the tedious process of data labeling, CEO David Kim, a former AI researcher at Korea's Agency for Defense Development, invented a reward-based app that allows users to label data in their spare time while earning money. This concept was validated at a startup competition hosted by KAIST (Korea Advanced Institute of Science and Technology), leading to the founding of Datumo in 2018 alongside five KAIST alumni.</p>

    <h3>Rapid Growth and Client Demand</h3>
    <p class="wp-block-paragraph">Even before the app was fully developed, Datumo garnered tens of thousands of dollars in pre-contract sales during the customer discovery phase. In its first year, the startup exceeded $1 million in revenue and secured several prominent contracts. Today, its client roster includes major Korean corporations like Samsung, Hyundai, and SK Telecom, with over 300 total clients and an estimated revenue of $6 million in 2024.</p>

    <h3>Expanding Services Beyond Labeling</h3>
    <p class="wp-block-paragraph">“Clients began requesting more than just data labeling, wanting us to evaluate their AI model outputs,” said Michael Hwang, co-founder of Datumo, in a TechCrunch interview. This shift revealed that the company was already engaged in AI model evaluation, prompting it to release Korea's first benchmark dataset focused on AI trust and safety.</p>

    <h3>Adapting to the Evolving AI Landscape</h3>
    <p class="wp-block-paragraph">“We started with data annotation and expanded into pretraining datasets and evaluations as the LLM ecosystem matured,” Kim explained.</p>

    <h3>Competitive Landscape in AI Data and Evaluation</h3>
    <p class="wp-block-paragraph">Meta's recent $14.3 billion investment in data-labeling company Scale AI underscores the growing importance of this sector. Following this, OpenAI ceased using Scale AI, indicating fierce competition for AI training data. Datumo shares similarities with companies like Scale AI while distinguishing itself through licensed datasets, particularly those sourced from published books.</p>

    <h3>Innovative Evaluation Tools for Non-Developers</h3>
    <p class="wp-block-paragraph">Datumo sets itself apart by offering a comprehensive evaluation platform called <a target="_blank" href="https://datumo.com/en/" rel="noreferrer noopener nofollow">Datumo Eval</a>. This no-code tool enables non-developers in policy, safety, and compliance to proactively test for unsafe, biased, or inaccurate AI outputs.</p>

    <h3>Investor Interest and Future Plans</h3>
    <p class="wp-block-paragraph">After hosting an event with DeepLearning.AI's Andrew Ng, Kim shared insights on LinkedIn, piquing the interest of Salesforce Ventures. The fundraising process took about eight months. The new funding will propel R&D into automated evaluation tools and expand Datumo's market presence in South Korea, Japan, and the U.S.</p>

    <p class="wp-block-paragraph"><em>Your feedback is invaluable to us! Share your thoughts on our coverage and events by filling out </em><a target="_blank" href="https://survey.researchresults.com/survey/selfserve/53b/g002/s0064551?list=tcap#?" rel="noreferrer noopener nofollow"><em>this survey</em></a><em> for a chance to win a prize!</em></p>
</div>

This rewritten article incorporates engaging headlines, structured SEO formatting, and maintains the essential information from the original text.

Sure! Here are five FAQs with answers regarding Datumo’s recent funding and its mission:

FAQs about Datumo’s Funding and Mission

1. What is Datumo, and what does it do?
Answer: Datumo is a Seoul-based technology company specializing in data management and artificial intelligence solutions. The company aims to streamline data processes for businesses, helping them harness the power of AI technologies effectively.

2. How much funding did Datumo recently secure, and who are its investors?
Answer: Datumo raised $15.5 million in funding, with significant backing from Salesforce. This investment underscores the growing interest in AI and data management solutions.

3. How does Datumo plan to compete with Scale AI?
Answer: Datumo intends to differentiate itself by providing unique data services and advanced AI capabilities tailored to the needs of businesses in various industries. The company aims to offer more customizable and integrated solutions compared to its competitors.

4. Why is Salesforce’s investment significant for Datumo?
Answer: Salesforce’s investment is significant because it not only provides financial support but also enhances Datumo’s credibility and visibility in the tech industry. It may also open doors for strategic partnerships and access to a broader customer base.

5. What are the future plans for Datumo following this funding round?
Answer: Following this funding round, Datumo plans to expand its product offerings, invest in research and development, and enhance its sales and marketing efforts to grow its market presence and better serve its clients.

Feel free to ask if you need more information!

Source link