Wordy's new app helps you learn vocabulary while watching movies and TV shows

Wordy language learning app

Image Credits: Wordy

Wordy is a new iOS app that offers a unique way to learning English. The app automatically translates and defines unknown words while you watch your favorite movies or TV shows. Wordy has over 500,000 titles available, including popular series such as HBO’s “The Penguin” and the new Disney+ show, “Agatha All Along.”

Created by indie developer Sándor Bogyó, a 23-year-old from Budapest, the app was born out of his frustration with looking up unfamiliar phrases in his non-native language while watching shows in English. His experience with Language Reactor, a Chrome extension similar to Wordy, led him to realize the need for a mobile app that would make it easier to use his phone while watching TV or using the computer.

When a user selects an episode from Wordy’s library, the AI analyzes the subtitles, then extracts and lemmatizes each word. Using your phone’s microphone, a custom speech recognition model identifies spoken sentences from the audio coming from the TV or computer. This helps the app find where you are in the episode and follow along, scrolling down the transcript and highlighting certain words that may be difficult for non-native English speakers. When a new word appears, you can quickly glance at your phone for the translation. 

Additionally, there’s a summary page for each episode, allowing you to view every word at once, which are sorted by difficulty level: Proficiency English, Advanced English, Upper-intermediate, Intermediate, Elementary, and Beginner. Wordy also provides the option to save words to your Library and practice them later using digital flashcards.

Image Credits: Wordy

Wordy uses a combination of its proprietary and third-party AI models. Bogyó explained to TechCrunch that it leverages the largest open movie database, TMDB, for film and series data, along with OpenSubtitles.com via their API, which he has found to provide the most accurate and reliable subtitles. 

During our testing, we opened the app on our phone while watching Netflix’s hit TV show, “Wednesday” on a laptop. Wordy pointed out terms like “plagued,” “nefarious,” and “séance,” which are more sophisticated vocabulary that beginners just learning the language may not know. We found that the translations were accurate and easy to understand. 

One caveat is that it’s currently only available in English, whereas rival Language Reactor supports all the major languages. Bogyó assured us that he is working on adding more languages. He plans to integrate Spanish into the app in November, with French and German to follow in the coming months.

“I prefer to maintain quality over rushing the process, so I’m taking the time to ensure each language integration meets my standards for accuracy and user experience,” he said. 

The app costs $2.99 per month or $29.99 per year. An Android version will launch in November. 

The Scene's new app helps New Yorkers find dining and nightlife spots

Image Credits: The Scene

Choosing between New York City’s nearly 25,000 restaurants can be overwhelming. The pressure is especially high when you’re trying to impress a first date (or investor) or entertain family from out of town. A new app launched over the weekend to address precisely that.

The Scene, an iOS-only “pocket concierge service,” uses machine learning to match users with dining, drinking and dancing spots in NYC.

The Scene pulls recommendations for users based on various factors, including the type of event they’re planning for (dinner, brunch, drinks, etc.), the type of outing (date, birthday, anniversary, or other special occasions), cuisine preferences, size of the party, budget, date, time and neighborhood.

One standout feature is The Scene’s “Vibe” setting, which allows users to discover highly specific suggestions like “Instagrammable” clubs, rooftop restaurants, or bars with good music, letting users curate their preferred ambience.

The app then lists options, along with descriptions, reservation times, hours of operation, a link to the menu or website and more. The Scene is integrated with Instagram and Google to provide reviews and other information. 

The Scene launched as a web platform in 2021 and has since gained around 12,800 users. Its creators hope to reach more NYC-based users in app form.

Image Credits: The Scene

The service was founded by Ridhima Kalani, a former personal concierge who assisted clients in India, Singapore, Dubai, and London for a decade. When she arrived in NYC, Kalani noticed there was a “serious gap in the market when it came to the social planning process,” she told TechCrunch. 

“[P]eople love finding lesser-known spots, [so] a large point of The Scene is about democratizing the demand for restaurants overall in NYC and creating more long-term inconsistent demand for [unfamiliar] spots … Maybe you want to check out a new place, but you also don’t want to be embarrassed if it’s ‘sus,’” she says. “The Scene rules that out because you’re plugging in your vibe preferences, and then you’re being matched with those exact vibes. There’s no question mark around it.”

The app offers 550 spots located around Manhattan and Brooklyn, ranging from popular places like Hearsay, Little Sister, Le Bain, Somewhere Nowhere, and Jack’s Wife Freda to “underrated” gems such as Arte Cafe, Mémé, Pastai and more. About 100 restaurants in Queens will also be offered. 

The Scene plans to launch in 22 additional cities over the next five years.

Image Credits: The Scene

Kalani believes The Scene differentiates itself from direct competitors Bucket Listers and Secret NYC — as well as restaurant reservation apps OpenTable and Resy — with its hyper-personalization. The Scene also offers a broader selection than restaurant reservation apps, as it includes custom recommendations for clubs and other nightlife activities. 

“No other app is going to ask you what your favorite vibes are for the outing, and it’s a better algorithm that’s more focused on democratizing demand rather than always having the same top locations,” Kalani added, explaining that she created her own training data for the machine learning model based on her experiences, fine-tuning it so the model provides results that meet her standards. 

The app is currently limited in features but will gradually introduce AI-powered capabilities. For instance, The Scene is building a recommendation search engine that is trained to understand natural language, such as “Dinner in Soho at 7 pm on Saturday for 4 ppl.” The model comprehends that “ppl” means people. It’s also developing an AI concierge chatbot that can act as a private assistant for users, offering a personalized conversational experience. Kalani recently hired Arneesh Aima (Chief Technology Officer) and iOS Developer Anagha Jayaprakah to help with app development.

The Scene is currently bootstrapped but wants to raise funding in the near future.

The Scene's new app helps New Yorkers find dining and nightlife spots

Image Credits: The Scene

Choosing between New York City’s nearly 25,000 restaurants can be overwhelming. The pressure is especially high when you’re trying to impress a first date (or investor) or entertain family from out of town. A new app launched over the weekend to address precisely that.

The Scene, an iOS-only “pocket concierge service,” uses machine learning to match users with dining, drinking and dancing spots in NYC.

The Scene pulls recommendations for users based on various factors, including the type of event they’re planning for (dinner, brunch, drinks, etc.), the type of outing (date, birthday, anniversary, or other special occasions), cuisine preferences, size of the party, budget, date, time and neighborhood.

One standout feature is The Scene’s “Vibe” setting, which allows users to discover highly specific suggestions like “Instagrammable” clubs, rooftop restaurants, or bars with good music, letting users curate their preferred ambience.

The app then lists options, along with descriptions, reservation times, hours of operation, a link to the menu or website and more. The Scene is integrated with Instagram and Google to provide reviews and other information. 

The Scene launched as a web platform in 2021 and has since gained around 12,800 users. Its creators hope to reach more NYC-based users in app form.

Image Credits: The Scene

The service was founded by Ridhima Kalani, a former personal concierge who assisted clients in India, Singapore, Dubai, and London for a decade. When she arrived in NYC, Kalani noticed there was a “serious gap in the market when it came to the social planning process,” she told TechCrunch. 

“[P]eople love finding lesser-known spots, [so] a large point of The Scene is about democratizing the demand for restaurants overall in NYC and creating more long-term inconsistent demand for [unfamiliar] spots … Maybe you want to check out a new place, but you also don’t want to be embarrassed if it’s ‘sus,’” she says. “The Scene rules that out because you’re plugging in your vibe preferences, and then you’re being matched with those exact vibes. There’s no question mark around it.”

The app offers 550 spots located around Manhattan and Brooklyn, ranging from popular places like Hearsay, Little Sister, Le Bain, Somewhere Nowhere, and Jack’s Wife Freda to “underrated” gems such as Arte Cafe, Mémé, Pastai and more. About 100 restaurants in Queens will also be offered. 

The Scene plans to launch in 22 additional cities over the next five years.

Image Credits: The Scene

Kalani believes The Scene differentiates itself from direct competitors Bucket Listers and Secret NYC — as well as restaurant reservation apps OpenTable and Resy — with its hyper-personalization. The Scene also offers a broader selection than restaurant reservation apps, as it includes custom recommendations for clubs and other nightlife activities. 

“No other app is going to ask you what your favorite vibes are for the outing, and it’s a better algorithm that’s more focused on democratizing demand rather than always having the same top locations,” Kalani added, explaining that she created her own training data for the machine learning model based on her experiences, fine-tuning it so the model provides results that meet her standards. 

The app is currently limited in features but will gradually introduce AI-powered capabilities. For instance, The Scene is building a recommendation search engine that is trained to understand natural language, such as “Dinner in Soho at 7 pm on Saturday for 4 ppl.” The model comprehends that “ppl” means people. It’s also developing an AI concierge chatbot that can act as a private assistant for users, offering a personalized conversational experience. Kalani recently hired Arneesh Aima (Chief Technology Officer) and iOS Developer Anagha Jayaprakah to help with app development.

The Scene is currently bootstrapped but wants to raise funding in the near future.

Photo of woman from the back pushing her grocery cart through an aisle filled with food products.

Yume's platform helps manufacturers turn potential food waste into money

Photo of woman from the back pushing her grocery cart through an aisle filled with food products.

Image Credits: David Espejo (opens in a new window) / Getty Images

While running a bar in Melbourne, Katy Barfield was taken aback by the large amount of ingredients thrown out at the end of each day. After doing some research, she realized that Australia produces about 7.6 million tonnes of food waste each year. Yume was created to tackle that problem by working with manufacturers like Unilever to redistribute surplus packaged food to businesses and charities.

The startup announced today a $2 million AUD (about $1.3 million USD) seed funding, raised from venture firm Investible’s Climate Tech Fund, which focuses on the Asia-Pacific region. It also included participation from new and returning investors like Launch VIC, Goodrich Group, Veolia and angel investor Pitzy Folk. This brings Yume’s total funding so far to $7 million AUD. Yume is based in Melbourne and recognized by the Australian government as a certified social enterprise.

Founded in 2016, Yume works with manufacturers including Unilever, Kellanova (Kellogg’s) and Mars Food and Nutrition, along with Australia’s four largest charities, and has facilitated the redistribution of 8 million kilograms of surplus food so far. Yume currently has more than 35 large volume active buyers like the multinational- Sodexo and Accor Hotels- and returned $22 million AUD to the companies that use its platform to sell excess food. It has also helped donate over 1 million meals to charities. Yume monetizes through a subscription model and taking a buyer commission.

Barfield describes owning a bar “as one of those a-ha moments in my life.” Before that, she says she had little awareness of food waste. Then while working at the bar, she realized chefs had to deal with the unpredictability of what dishes would sell well that day. As a result, the staff usually had to throw away large amounts of unused ingredients after closing.

“That was the first time I thought, oh my goodness, these animals have been slaughtered and ended up in a plastic bin liner,” says Barfield. “And secondly, I thought about multiples of that. This was a tiny little bar in the middle of Melbourne. I looked it up and there were 40,000 different hospitality establishments across Australia. I thought if you take what we throw out on a Friday and multiply that by 40,000, that is a horrific amount of food waste.”

As she did more research, Barfield saw the other negative impacts of food waste, including the amount of methane emissions it produces. She realized that food manufacturers are struggling with the same problem as retailers, but at a much larger scale. Of the 7.6 million tonnes of food waste produced in Australia each year, 40% of that happens at the industrial level before food arrives at a supermarket or restaurant.

Yume founder Katy Barfield sitting at a table, with an abstract painting behind her and food on table in front of her.
Yume founder Katy Barfield. Image Credits: Yume

Part of finding a product-market fit was getting to the core of what manufacturers need, Barfield says. At first she assumed that manufacturers had highly sophisticated inventory management systems for clearances, but they didn’t.

Furthermore, excess inventory makes up 2% to 5% of their inventory, so they usually focus on other channels since reducing food waste is time consuming. As a result, Yume decided to make food waste prevention “a more pleasurable experience for those manufacturers,” Barfield says. She adds that Yume’s product-market fit is borne out by the fact is has a 100% renewal rate year-on-year for their annual subscriptions.

Saving surplus food from the landfill 

There are plenty of reasons for food waste. A major one is unpredictable supply and demand. For example, food manufacturers’ R&D departments might create new products that don’t perform as well as predicted. Some have a short shelf life or are seasonal products. Sometimes items are mislabeled or in the wrong packaging.

Yume was created to alleviate these problems. The platform focuses on consumer packaged goods and helps manufacturers find resellers. Barfield gives an example of cream cheese that was produced for export to China, but had a wrong character on it. It couldn’t be exported, but Yume was able to get it into a commercial kitchen for use. For food that can’t be sold, it is offered for donation.

“It’s a waterfall effect because the primary reason for manufacturers being in the business is to be able to sell the product and get a return,” Barfield says. “Then if it doesn’t sell, it can go through to donation. It’s making that end-to-end process really seamless and automated so we avoid all the leakage that currently occurs in the system.”

To use Yume, manufacturers identify excess inventory and upload it onto the platform, which already has their SKU libraries with product information. Then buyers submit offers to the manufacturers. If product is left over, it can go up for another round of bidding. Food that doesn’t sell is then available for donation and offered to food rescue organizations.

One of the advantages of using Yume’s software is that manufacturers can reach up to 30 buyers at a time, instead of having to make multiple phone calls. Then orders are placed in order of preference. Barfield explains that some suppliers want volume over value. For example, their priority might be to clear out a warehouse. Others might want to get the best price for their surplus food (manufacturers get historical product pricing to help them make decisions about realistic pricing). Yume operates throughout all of Australia, but sometimes manufacturers only want to ship within a state.

“There are many different things and the algorithm sorts through based on preferences. So manufacturers are served a whole list of best offers based on their preferences,” says Barfield. “They can just go tick, tick, tick, tick and it’s done, rather than all this back and forth on phones.”

Yume also makes the donation process easier by removing friction for manufacturers. Barfield explains there are usually several departments working on donations, including charity liaisons who have to ask their finance department if giving away goods is okay. Then they need to call food rescue organizations to ask if they want, say, 10 tonnes of cream cheese. Sometimes charities don’t need that much food and it goes to waste, especially if it has a short shelf life. Yume’s process for donations is similar to its process for selling food, because it contacts multiple organizations at once and organizes food available on its platform.

A countrywide focus on climate tech

Despite the funding winter, Australia’s climate tech sector is booming. Other food waste startups include Whole Green Foods, which converts food waste into usable ingredients; food waste processing provider GoTerra; Bardee, which turns food waste into protein and fertilizer; produce seller Good and Ugly; and Reground for putting coffee grounds and chaff back into soil.

Barfield says Yume is in a unique position in the food waste industry because it’s the only company that works with manufacturers on packaged goods. “The reason we do that is because it’s the most processed product,” she notes. “If you put that in the ground and bury it, that is such a great loss to the planet because there’s all that energy that’s gone into making the product, packaging the product, getting the product ready for sale, all of the packaging associated with it. It has the biggest impact environmentally.”

Yume is the newest portfolio startup in Investible’s Climate Tech Fund, which supports founders who are building high-growth tech with a positive climate impact in the Asia-Pacific region. It’s also the latest company led by a woman; about half, or 48%, of the Climate Tech Fund’s portfolio are companies with a female founding member, and 21% are solely led by a woman.

This funding also marks a milestone for Investible, because three of the firm’s vehicles invested together in Yume, with its Early Stage Fund 2 and Club Investible syndicates joining Investible Climate Tech Fund. Yume will use its new funding to prepare its technology for international expansion. It also plans to double its headcount by the end of this year, with 75% of new hires for its tech and product teams.

Investible chief investment officer Charlie Ill told TechCrunch one of the reasons the firm backed Yume is because of Barfield’s experience. She was previously founding CEO of SecondBite, a national food redistribution charity, and a recipient of the Order of Australia Medal in 2023.

“Yume has tried, tested and broken business models that took several iterations through product and target customers, before seeing a rapid uptake and lift in traction with many large-scale customers. Yume also has a first-mover advantage in the local Australian market with its end-to-end solution for clearance food,” he says.

When asked about Yume’s role in Australia’s growing startup scene, Ill said, “Yume fits into a key category that needs addressing. Food waste accounts for one-third of all human-caused greenhouse gas emissions, generating 8% of greenhouse gases annually. We are thrilled to be backing an impactful and smart business in Yume and look forward to joining the business of its growth journey.”

A bank of electric car chargers

Guided Energy helps EV fleet managers optimize battery charging

A bank of electric car chargers

Image Credits: Jon Challicom / Getty Images

Imagine you work for a car rental agency or a package delivery company and you’re in charge of a fleet of vehicles. If you’re switching to EV vehicles, it becomes more complex to manage your vehicles due to long charging time and limited charging point availabilities.

Guided Energy, a French startup that raised $5.2 million from Sequoia Capital and Dynamo Ventures at the end of 2023, is building a software tool that will help EV fleet operators with charge management and dispatch. The company aggregates data from vehicles, as well as public and private charging points and uses machine learning to tell you when and where you’re supposed to charge your vehicles.

“The beauty of the EV ecosystem is that it is all online. This means we connect to both EVs and charging points directly. Where customers already have telematics or supervision platforms in place, we can integrate with them using APIs into our platform, giving them a single, real-time, unified view of their EV operations,” co-founder and CEO Anant Kapoor told me.

Kapoor previously led product teams working on fleet management software to track and cut emissions. Eric Daoud Attoyan, the CTO of the company, is a PhD in machine learning from Inria.

Image Credits: Guided Energy

Some of Guided Energy’s customers include Sixt and Addison Lee. Generally, customers have in-house charging points. But they often hit the limit — all charging stations are already occupied and there’s not enough room to add another one.

“Some resort to public charging while others even charge at employees’ homes but struggle to incorporate these external solutions into their daily operational, reporting or finance workflows,” Kapoor said.

The core of the issue is that charging price varies significantly for EV vehicles. For instance, charging at home is usually cheap but pretty slow. Charging on the highway is usually much more expensive than other options.

In addition to pricing, a software tool like Guided Energy has to take into account the amount of time that it’ll require to put enough energy in the battery. So the distance between the charging point and the location where the vehicle needs to be is an important factor as well.

The startup thinks it can offer direct and indirect savings of up to $10,000 per electric vehicle when you consider both charging prices and operating costs — sending someone to a remote area in a big city can be costly too. As a result, Guided Energy charges a subscription fee per vehicle, something along the line of €30 to €40 per vehicle per month.

Guided Energy already tracks more than 1,000 vehicles on its platform. That number should double in the next few months, as the company has already signed contracts with additional customers.

Image Credits: Guided Energy

OpenBorder, e-commerce, international expansion

OpenBorder’s e-commerce software helps merchants access consumers around the world

OpenBorder, e-commerce, international expansion

Image Credits: OpenBorder

Richard Hong found that while expanding his e-commerce brand of men’s personal care brands, gaining international customers was easy to do. The challenges came when trying to get the merchandise to them.

“We found that logistics pack compliance, product compliance and marketing had no localization technology,” Hong told TechCrunch. “We had to build a lot of those capabilities in-house to be able to scale.”

Hong, working through his e-commerce company Pangaea Holdings, was able to scale to the point where a majority of revenue — well into nine figures — was coming from outside of the United States.

Hong and his Pangaea co-founder Darwish Gani started thinking about how they could help other e-commerce businesses expand internationally. Only not have to conquer the same obstacles.

Pangaea Holdings, developing men’s personal care brands, raises $68M, including minority stake from Eurazeo

In March 2023, Hong and Gani spun off the technology business into OpenBorder, which raised $10 million in seed funding. At the time, the company had five merchants, and that has grown to nearly 70 merchants in a year’s time. It has also increased processing volume 10 times.

OpenBorder’s cross-border trade concept is simple: Provide e-commerce merchants instant access to international customers through automation of certain logistical needs.

Those include shipping, trade, tax and duty compliance, product localization and international marketplace listings — all from one software platform. Merchants can also sell on Amazon and regional marketplaces with a two-day, Prime-like experience, Hong said.

With the cross-border market being a $2 trillion opportunity, OpenBorder is not alone in working to address this need. For example, Nocnoc is doing something similar for merchants in Latin America, while Keeta is providing a way for easier cross-border payments.

Meanwhile, Peak XV Partners (formerly Sequoia Capital Southeast Asia) led the investment and was joined by Capital 49 and Harlem Capital. OpenBorder is using the capital on software development, including partnerships and artificial intelligence to find areas of cost reduction to improve performance. The board also added Pangaea investor Eurazeo, which has vast experience in the consumer merchant segment.

Many OpenBorder merchants start at 4% of revenue coming from international, but grow to 15% or even 20%. Pangaea was able to reach over 50% of its revenue coming from non-U.S. customers, and OpenBorder wants to help other merchants get there in just a few years, Hong said.

“With us doing it, that tells us there is truly a potential for other merchants to get there, but the question is, “What does it take to get there?” Hong said. “We have the obvious answer to that question and want to help every merchant access every consumer around the world.”

We should all be paying more attention to the PDD-Alibaba rivalry

Karine Perset, AI Expert, OCED Divison for Digital Economy Policy

Karine Perset helps governments understand AI

Karine Perset, AI Expert, OCED Divison for Digital Economy Policy

Image Credits: Karine Perset

To give AI-focused women academics and others their well-deserved — and overdue — time in the spotlight, TechCrunch is launching a series of interviews focusing on remarkable women who’ve contributed to the AI revolution. We’ll publish several pieces throughout the year as the AI boom continues, highlighting key work that often goes unrecognized. Read more profiles here.

Karine Perset works for the Organization for Economic Co-operation and Development (OECD), where she runs its AI unit and oversees the OECD.AI Policy Observatory and the OECD.AI Networks of Experts within the Division for Digital Economy Policy.

Perset specializes in AI and public policy. She previously worked as an adviser to the Internet Corporation for Assigned Names and Numbers (ICANN)’s Governmental Advisory Committee and as Counsellor of the OECD’s Science, Technology, and Industry Director.

What work are you most proud of in the AI field?

I am extremely proud of the work we do at OECD.AI. Over the last few years, the demand for policy resources and guidance on trustworthy AI has really increased from both OECD member countries and also from AI ecosystem actors.

When we started this work around 2016, there were only a handful of countries that had national AI initiatives. Fast-forward to today, and the OECD.AI Policy Observatory — a one-stop shop for AI data and trends — documents over 1,000 AI initiatives across nearly 70 jurisdictions.

Globally, all governments are facing the same questions on AI governance. We are all keenly aware of the need to strike a balance between enabling innovation and opportunities AI has to offer and mitigating the risks related to the misuse of the technology. I think the rise of generative AI in late 2022 has really put a spotlight on this.

The 10 OECD AI Principles from 2019 were quite prescient in the sense that they foresaw many key issues still salient today — five years later and with AI technology advancing considerably. The Principles serve as a guiding compass towards trustworthy AI that benefits people and the planet for governments in elaborating their AI policies. They place people at the center of AI development and deployment, which I think is something we can’t afford to lose sight of, no matter how advanced, impressive, and exciting AI capabilities become.

To track progress on implementing the OECD AI Principles, we developed the OECD.AI Policy Observatory, a central hub for real-time or quasi-real-time AI data, analysis, and reports, which have become authoritative resources for many policymakers globally. But the OECD can’t do it alone, and multi-stakeholder collaboration has always been our approach. We created the OECD.AI Network of Experts — a network of more than 350 of the leading AI experts globally — to help tap their collective intelligence to inform policy analysis. The network is organized into six thematic expert groups, examining issues including AI risk and accountability, AI incidents, and the future of AI.

How do you navigate the challenges of the male-dominated tech industry and, by extension, the male-dominated AI industry?

When we look at the data, unfortunately, we still see a gender gap regarding who has the skills and resources to effectively leverage AI. In many countries, women still have less access to training, skills, and infrastructure for digital technologies. They are still underrepresented in AI R&D, while stereotypes and biases embedded in algorithms can prompt gender discrimination and limit women’s economic potential. In OECD countries, more than twice as many young men than women aged 16 to 24 can program, an essential skill for AI development. We clearly have more work to do to attract women to the AI field.

However, while the private sector AI technology world is highly male-dominated, I’d say that the AI policy world is a bit more balanced. For instance, my team at the OECD is close to gender parity. Many of the AI experts we work with are truly inspiring women, such as Elham Tabassi from the U.S National Institute of Standards and Technology (NIST); Francesca Rossi at IBM; Rebecca Finlay and Stephanie Ifayemi from the Partnership on AI; Lucilla Sioli, Irina Orssich, Tatjana Evas and Emilia Gómez from the European Commission; Clara Neppel from the IEEE; Nozha Boujemaa from Decathlon; Dunja Mladenic at the Slovenian JSI AI lab; and of course my own amazing boss and mentor Audrey Plonk, just to name a few, and there are so many more.

We need women and diverse groups represented in the technology sector, academia, and civil society to bring rich and diverse perspectives. Unfortunately, in 2022, only one in four researchers publishing on AI worldwide was a woman. While the number of publications co-authored by at least one woman is increasing, women only contribute to about half of all AI publications compared to men, and the gap widens as the number of publications increases. All this to say, we need more representation from women and diverse groups in these spaces.

So to answer your question, how do I navigate the challenges of the male-dominated technology industry? I show up. I am very grateful that my position allows me to meet with experts, government officials, and corporate representatives and speak in international forums on AI governance. It allows me to engage in discussions, share my point of view, and challenge assumptions. And, of course, I let the data speak for itself.

What advice would you give to women seeking to enter the AI field?

Speaking from my experience in the AI policy world, I would say not to be afraid to speak up and share your perspective. We need more diverse voices around the table when we develop AI policies and AI models. We all have our unique stories and something different to bring to the conversation.

To develop safer, more inclusive, and trustworthy AI, we must look at AI models and data input from different angles, asking ourselves: What are we missing? If you don’t speak up, then it might result in your team missing out on a really important insight. Chances are that, because you have a different perspective, you’ll see things that others do not, and as a global community, we can be greater than the sum of our parts if everyone contributes.

I would also emphasize that there are many roles and paths in the AI field. A degree in computer science is not a prerequisite to work in AI. We already see jurists, economists, social scientists, and many more profiles bringing their perspectives to the table. As we move forward, true innovation will increasingly come from blending domain knowledge with AI literacy and technical competencies to come up with effective AI applications in specific domains. We see already that universities are offering AI courses beyond computer science departments. I truly believe interdisciplinarity will be key for AI careers. So, I would encourage women from all fields to consider what they can do with AI. And to not shy away for fear of being less competent than men.

What are some of the most pressing issues facing AI as it evolves?

I think the most pressing issues facing AI can be divided into three buckets.

First, I think we need to bridge the gap between policymakers and technologists. In late 2022, generative AI advances took many by surprise, despite some researchers anticipating such developments. Understandingly, each discipline is looking at AI issues from a unique angle. But AI issues are complex; collaboration and interdisciplinarity between policymakers, AI developers, and researchers are key to understanding AI issues in a holistic manner, helping keep pace with AI progress and close knowledge gaps.

Second, the international interoperability of AI rules is mission-critical to AI governance. Many large economies have started regulating AI. For instance, the European Union just agreed on its AI Act, the U.S. has adopted an executive order for the safe, secure, and trustworthy development and use of AI, and Brazil and Canada have introduced bills to regulate the development and deployment of AI. What’s challenging here is to strike the right balance between protecting citizens and enabling business innovations. AI knows no borders, and many of these economies have different approaches to regulation and protection; it will be crucial to enable interoperability between jurisdictions.

Third, there is the question of tracking AI incidents, which have increased rapidly with the rise of generative AI. Failure to address the risks associated with AI incidents could exacerbate the lack of trust in our societies. Importantly, data about past incidents can help us prevent similar incidents from happening in the future. Last year, we launched the AI Incidents Monitor. This tool uses global news sources to track AI incidents around the world to understand better the harms resulting from AI incidents. It provides real-time evidence to support policy and regulatory decisions about AI, especially for real risks such as bias, discrimination, and social disruption, and the types of AI systems that cause them.

What are some issues AI users should be aware of?

Something that policymakers globally are grappling with is how to protect citizens from AI-generated mis- and disinformation — such as synthetic media like deepfakes. Of course, mis- and disinformation has existed for some time, but what is different here is the scale, quality, and low cost of AI-generated synthetic outputs.

Governments are well aware of the issue and are looking at ways to help citizens identify AI-generated content and assess the veracity of the information they are consuming, but this is still an emerging field, and there is still no consensus on how to tackle such issues.

Our AI Incidents Monitor can help track global trends and keep people informed about major cases of deepfakes and disinformation. But in the end, with the increasing volume of AI-generated content, people need to develop information literacy, sharpening their skills, reflexes, and ability to check reputable sources to assess information accuracy.

What is the best way to responsibly build AI?

Many of us in the AI policy community are diligently working to find ways to build AI responsibly, acknowledging that determining the best approach often hinges on the specific context in which an AI system is deployed. Nonetheless, building AI responsibly necessitates careful consideration of ethical, social, and safety implications throughout the AI system life cycle.

One of the OECD AI Principles refers to the accountability that AI actors bear for the proper functioning of the AI systems they develop and use. This means that AI actors must take measures to ensure that the AI systems they build are trustworthy. By this, I mean that they should benefit people and the planet, respect human rights, be fair, transparent, and explainable, and meet appropriate levels of robustness, security, and safety. To achieve this, actors must govern and manage risks throughout their AI systems’ life cycle — from planning, design, and data collection and processing to model building, validation and deployment, operation, and monitoring.

Last year, we published a report on “Advancing Accountability in AI,” which provides an overview of integrating risk management frameworks and the AI system life cycle to develop trustworthy AI. The report explores processes and technical attributes that can facilitate the implementation of values-based principles for trustworthy AI and identifies tools and mechanisms to define, assess, treat, and govern risks at each stage of the AI system life cycle.

How can investors better push for responsible AI?

By advocating for responsible business conduct in the companies they invest in. Investors play a crucial role in shaping the development and deployment of AI technologies, and they should not underestimate their power to influence internal practices with the financial support they provide.

For example, the private sector can support developing and adopting responsible guidelines and standards for AI through initiatives such as the OECD’s Responsible Business Conduct (RBC) guidelines, which we are currently tailoring specifically for AI. These guidelines will notably facilitate international compliance for AI companies selling their products and services across borders and enable transparency throughout the AI value chain — from suppliers to deployers to end users. The RBC guidelines for AI will also provide a non-judiciary enforcement mechanism — in the form of national contact points tasked by national governments to mediate disputes — allowing users and affected stakeholders to seek remedies for AI-related harms.

By guiding companies to implement standards and guidelines for AI — like RBC — private sector partners can play a vital role in promoting trustworthy AI development and shaping the future of AI technologies in a way that benefits society as a whole.

Glowing red and yellow error message overlaid on programming language source code text.

Sentry's AI-powered Autofix helps developers quickly debug and fix their production code

Glowing red and yellow error message overlaid on programming language source code text.

Image Credits: matejmo / Getty Images

Sentry has long helped developers monitor and debug their production code. Now, the company is adding some AI smarts to this process by launching AI Autofix, a new feature that uses all of the contextual data Sentry has about a company’s production environment to suggest fixes whenever an error occurs. While it’s called Autofix, this isn’t a completely automated system, something very few developers would be comfortable with. Instead, it is a human-in-the-loop tool that is “like having a junior developer ready to help on-demand,” as the company explains.

“Rather than thinking about the performance of your application — or your errors — from a system infrastructure perspective, we’re really trying to focus on evaluating it and helping you solve problems from a code-level perspective,” Sentry engineering manager Tillman Elser explained when I asked him how this new feature fits into the company’s overall product lineup.

Elser argued that many other AI-based coding tools are great for auto-completing code in the IDE, but since they don’t know about a company’s production environment, they can’t proactively look for issues. Autofix’s main value proposition, he explained, is that it can help developers speed up the process of triaging and resolving errors in production because it knows about the context the code is running in. “We’re trying to solve problems in production as fast as possible. We’re not trying to make you a faster developer when you’re building your application,” he said.

Image Credits: Sentry

Using an agent-based architecture, Autofix will keep an eye out for errors and then use its discovery agent to see if a code change could fix that error — and if not, it will provide a reason. What’s important here is that developers remain in the loop at all times. One nifty feature here, for example, is that they can add some additional context for the AI agents if they already have some idea of what the problem may be. Or they can opt to hit the “gimme fix” button and see what the AI comes up with.

The AI will then go through a few steps to assess the issue and create an action plan to fix it. In the process, Autofix will provide developers with a diff that explains the changes and then, if everything looks good, create a pull request to merge those changes.

Image Credits: Sentry

Autofix supports all major languages, though Elser acknowledged that the team did most of its testing with JavaScript and Python code. Obviously, it won’t always get things right. There is a reason Sentry likens it to a junior developer, after all. The most straightforward failure case, though, Elser told me, is when the AI simply doesn’t have enough context — maybe because the team hasn’t set up enough instrumentation to gather the necessary data for Autofix to work with, for example.

One thing to note here is that while Sentry is looking at building its own models, it is currently working with third-party models from the likes of OpenAI and Anthropic. That also means that users must opt in to send their data to these third-party services to use Autofix. Elser said that the company plans to revisit this in the future and maybe offer an in-house LLM that is fine-tuned on its data.

Image Credits: Sentry

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