TED Talks Daily - Can AI uplift entrepreneurs that traditional banks reject? | Mercedes Bidart

Episode Date: November 29, 2025

Can AI help people without a traditional credit history get access to fair loans? Impact entrepreneur Mercedes Bidart shows how AI is letting informal entrepreneurs in Latin America transform "invisib...le data" on their phones into a financial identity, helping them get credit and grow on their own terms. Hosted on Acast. See acast.com/privacy for more information.

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Starting point is 00:00:00 You're listening to TED Talks Daily, where we bring you new ideas to spark your curiosity every day. I'm your host, Elise Hu. We hear it all the time. Success isn't a one-size-fits-all type of thing. And yet, for small business owners who may find success outside traditional metrics, securing things like a bank loan can be tough. In this talk, Impact entrepreneur Mercedes BDart shows how AI tools. schools in Latin America are helping to change this by making the currency of trust in business visible and verifiable, opening doors to fairer finance.
Starting point is 00:00:47 I grew up in a family of small business owners in Argentina. My parents ran a courting and carpet shop, so I witnessed firsthand how difficult it is to grow a business. Trust and support from their community were key in keeping the business alive. But I decided not to continue with my family business. Instead, I studied political science. I was obsessed in how technology could support the growth of businesses like my parents. And that curiosity led me to MIT, where in 2019, my master thesis in AI and economic development got awarded funding to become a real-world pilot. And that's how I ended up working in informal settlements in Colombia.
Starting point is 00:01:37 In these neighborhoods where I did my research, you didn't need a credit card to buy lunch. It was enough for the shopkeeper to know who you were. If your mother had a good record with loans, if you said hello in the mornings, if you had a shop that was known by the neighbors, they would front you the rice, the sugar cane, the bread. The economy didn't run solely on cash. It ran on trust. That invisible currency
Starting point is 00:02:06 that is built over time. And I noticed something. Those same principles I saw growing up in Argentina were alive in Colombian businesses too. In many Latin American neighborhoods, trust has always been the strongest currency, a good name. But here comes the contradiction. When this same person goes to a bank and asks for a loan to grow this business, they will be rejected. They will tell them,
Starting point is 00:02:40 you don't have a collateral, you don't have a financial history, there's no way we can prove who you are. In many Latin American neighborhoods, this is the case, and in Latin America, half of our population is excluded from formal credit. After a decade working in the intersection of financial inclusion and urban development,
Starting point is 00:03:03 I dedicated my life to answer one question. What if what makes you create worthy in your neighborhood, trust, could also make you create worthy in the eyes of a bank? What if your word could be part of the risk assessment? What if we can scale the access to capital by making your potential measures? What is trust could be measured with AI? So before I tell you more, I want to share a little bit of how all this started. Since I was a child, I dream on changing the world, and that's why I studied political science.
Starting point is 00:03:48 I thought I was going to do it through policy. But then I realized policy was not moving at the speed people needed to. So I turn into technology. Technology doesn't recognize any geographic boundary. So at MIT, my classmates and I, started working on a local project to define local marketplaces for communities, platforms where they can upload what they're selling
Starting point is 00:04:17 and become visible into their community. We started visiting these businesses to help them to upload more pictures, of their products into the marketplace and become known and start selling more. And we noticed that they weren't growing their sales. So when we asked them why, their answer was very simple. They didn't have enough money to buy more supplies. Even though they were running these businesses for years,
Starting point is 00:04:47 they couldn't get more inventory. They couldn't get any access to working capital to buy more inventory. So we noticed something. something, we were not facing a visibility problem. We were facing a financial exclusion problem. And the deeper I went, the more I learned, something that we usually don't say enough. Being poor is very expensive. Products cost more when you can just afford them in small quantities. If you can't buy a whole bottle of shampoo, you end up buying a sachet. If you can't buy groceries for the whole week, you end up buying by the day, and you always end up paying
Starting point is 00:05:30 more. And when it comes to credit in the financial sector, the cost is even higher. When you don't have a great history or bank account, your only option is to access the predatory lenders, the got a got a gota, the loan sharks. And they come at brutal cost. They don't ask you for paperwork. But they could charge you 20% interest rate, per week, even per day, and they are violent and abusive. So I will tell you the story of Maria. She's a Venezuelan migrant living in a low-income neighborhood in Colombia. She makes these beautiful handcrafted bags, and she gets custom orders from her clients.
Starting point is 00:06:15 So before she sells and she gets paid, she needs to make the order. So she needs to buy the materials to make that order happen. As Maria is a migrant, she doesn't have a bank account, she doesn't have any great history, so her only option to buy those materials is to ask money to these predatory lenders that are really, really dangerous. Unfortunately, Maria in Latin America is not the exception. She's actually the rules. She's the rule in Latin America.
Starting point is 00:06:47 She's millions of microbusinesses. Microbusinesses like hers are everywhere. everywhere. They are from the corner shop to the restaurant, to the beauty salon. Actually, almost every business in Latin America is a micro-business. 99% of our businesses are micro. And they contribute one-third of our GDP. But still, they cannot even access one dollar from a bank. Why? Because they don't have the paperwork, the financial system was built to require. So Maria might not have a great history, she might not have a bank account, but she has a phone. And there's where we saw the opportunity, not to change who they are, but to change how they are seen.
Starting point is 00:07:37 So when we started, there was no data about this economy and this segment of the population we wanted to help. And, you know, that's one of the main problems with AI. Models can only predict what they have already seen. So we understood that if we wanted to start helping this population, we needed to build a data set ourselves. As this population we're talking about are informal entrepreneurs, then there's no record, there's no data, so you become invisible to the system.
Starting point is 00:08:15 So in traditional banking, the way they give out a loan is usually you know, the risk officer goes to the house of the person, checks the business with their own eyes, talks with the neighbors, see if actually that business exists, and they make the decision based on their experience that usually comes with bias, it's subjective, and it's really slow. So at that point, when we started to build a dataset, we were actually building the local marketplaces,
Starting point is 00:08:48 where people were uploading the products of what they were selling. And we noticed that the images themselves were full of economic signals. We could see if there were customers on the back, if the product was handmade, if there was potential for that product or service to be sold in that neighborhood. So the data was there, but just not in the format that the banks were trained to read. So when we started building the data set, we started small, super small. We started giving out $10 loans just enough for the entrepreneurs to refill their inventory and enough for us to start growing the dataset.
Starting point is 00:09:30 And we were very intentional to whom we were giving the loans to. Half of the people we were serving were women. Because if we want AI to be fair, then it needs to learn from everyone. So people like Maria the artisan, they might not have a great history, but she has a phone that is full of clues about her daily economy. She has a Facebook page where she uploads the products she's selling, she has, you know, text orders that she's receiving, she has this phone for years, she has videos of the products in her phone.
Starting point is 00:10:10 So we built a suite of scores, AI power models, that take this invisible data into a financial identity. This is all the data we are processing, but I will concentrate in three specific scores that are proprietary and that have been done by us. One of the main scores we have is looking at text messages, short-code text messages, where we are getting bill payments, order confirmations,
Starting point is 00:10:43 mobile recharges, any transactions that have been done in digital wallets or bank accounts. And by using an LLM motor and machine learning, we can detect patterns of income, of spending, of disposable, available balance per month. It's a kind of open banking, but instead of using a bank account, we are using telecom data. Another score we have developed is using videos. We replace that visit that usually the risk officer is doing to the houses of people that is usually very expensive and it takes a lot of time. We replace it by users sending one-minute video of their business
Starting point is 00:11:25 where they explain what they're doing. And using computer vision, we can get their stock, their inventory, their tone of voice, what they're saying about their business, their localization, the type of business, and all the potential that it has. We are detecting their willingness to pay. And lastly, we developed one that is connecting into their social media. Right now, most of businesses, even if they are informal, they are present, you know, online. They have a Facebook page or they have an Instagram.
Starting point is 00:11:57 So when they apply to the loan, they sign up into their social media and we can get their videos, their pictures, so we use, again, computer vision the same one we did for the other type of videos, but also we get the likes, the comments, the engagement they are having, their profile bio, and we detected that a business that has a really strong social presence and online presence has more probability to pay back. So all these data flows into our models and we detect patterns and signals that can tell us, that can tell us, can this person be trusted with a loan if they never had one before? and after three years, we can go beyond just saying yes or no,
Starting point is 00:12:44 that in fact we do it in just seconds. We can also say how much they can repay, when, and under what conditions. This is allowing us to simulate the interest rate, the number of installments. We can also detect for seasonal impact. So this is allowing us to offer credit that is actually supporting people's everyday needs. and that are tailor-made for them. It's not just one financial product that we are trying to sell to everyone. It's actually understanding what do you need for your business.
Starting point is 00:13:18 So we have validated this approach. After all these three years, we demonstrated that we can use this type of data to understand the informal sector. Our business and our models have reached an accuracy levels C levels on top of 0.83, which is at market standards, we have served more than 26,000 entrepreneurs. Our models have been trained with more than 150,000 data samples of informal entrepreneurs with millions of data points. But this is not just supporting the entrepreneur and their family. This is changing the financial system. What usually took years to be built,
Starting point is 00:14:06 or maybe we don't have it at all, a great history. Now can take just months. We're building a live financial monitor of the financial well-being that it can be updated daily so you don't need to wait years to be eligible for a loan. And this is allowing the informal sector to access loans from the formal banking system for the first time. efficient intelligence is not magic, it's a tool, one that can help us process millions of data points. No human risk officer could ever read, could ever read, watch or analyze at scale. AI, of course, is improving efficiency. But if we design it with intention, it becomes more
Starting point is 00:14:58 than efficient. It becomes fair. And it allows us to see value where others were seeing risk. It's allowing us to see gold where others saw stones. And it's allowing us to offer services at scale while at the same time honoring the local knowledge, culture, and context. It's allowing us the hyper-personalization of financial services. And to say yes to someone like Maria, to say yes to someone like my mom all those years ago when she started the business. And to millions of women entrepreneurs that we are pushing this economy forward, to say yes, not because of a bank statement, but because of millions of quiet signals that tells us
Starting point is 00:15:47 that she shows up, she delivers, and she can be trusted. That was Mercedes Beatard, speaking at 10.000. TED AI in Vienna, Austria in 2025. If you're curious about TED's curation, find out more at TED.com slash curation guidelines. And that's it for today. Ted Talks Daily is part of the TED Audio Collective. This talk was fact-checked by the TED Research Team and produced and edited by our team, Martha Estefanos, Oliver Friedman, Brian Green, Lucy Little, and Tonicaa Sung Marnivong. This episode was mixed by Christopher Faisi Bogan.
Starting point is 00:16:31 additional support from Emma Tobner and Daniela Balezzo. I'm Elise Hugh. I'll be back tomorrow with a fresh idea for your feed. Thanks for listening.

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