The hottest Data science Substack posts right now

And their main takeaways
Category
Top Technology Topics
Data Science Weekly Newsletter 19 implied HN points 29 Mar 18
  1. AI can change how people behave, and that might be used wrongly by companies and governments.
  2. Statisticians and computer scientists don't always understand each other's fields well, which can make collaboration harder.
  3. Machine learning can help detect diseases like Alzheimer's earlier than traditional methods by recognizing patterns quickly.
Data Science Weekly Newsletter 19 implied HN points 22 Mar 18
  1. A Senior Data Scientist's role is often unclear and expectations can vary widely. It can be helpful to define what skills and responsibilities are actually needed.
  2. Digital evolution in AI can show surprising creativity that doesn't always match our expectations. This means evolution can create new ideas in unexpected ways.
  3. There's a big conversation about AI and responsibility. When AI causes harm, it's tough to figure out who should be accountable for it.
Data Science Weekly Newsletter 19 implied HN points 15 Mar 18
  1. Machine learning can create completely new sounds by learning from existing ones, which is really cool for music-making.
  2. AI has a problem where it sometimes sees or hears things that aren't there, which makes using it tricky.
  3. Robots might be the future of farming, helping to automate growing food from start to finish for better efficiency.
Data Science Weekly Newsletter 19 implied HN points 08 Mar 18
  1. Success is influenced by both talent and luck. Sometimes, even the most talented individuals don’t succeed without a bit of luck.
  2. Humans can learn faster than AI because we have background knowledge and experience that help us understand new things more quickly.
  3. AI should enhance our conversations, not limit them. It’s important for AI to strive for interesting and meaningful dialogue rather than just following simple paths.
Data Science Weekly Newsletter 19 implied HN points 01 Mar 18
  1. AI still struggles with creativity and emotional understanding in music, meaning it can't fully replace human DJs and playlist makers.
  2. Female characters are underrepresented in superhero comics, and their portrayal is important to analyze as well.
  3. Containerization is a complex topic for data scientists, and balancing their autonomy with the need for engineering support is essential for success.
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Data Science Weekly Newsletter 19 implied HN points 22 Feb 18
  1. A moth's brain can learn to recognize odors faster than AI can, showing a fascinating aspect of how natural intelligence works.
  2. There's a shortage of AI talent, with only around 22,000 people worldwide having the necessary skills, which is a big challenge for the industry.
  3. New AI technologies are learning to be creative by understanding rules and then finding ways to break them, which could lead to innovative solutions.
Data Science Weekly Newsletter 19 implied HN points 15 Feb 18
  1. Deep learning can be implemented in simple tools like Google Sheets, making it more accessible for everyone.
  2. Reinforcement learning in trading could be a valuable research area, similar to training AI for multiplayer games.
  3. The use of AI tools is growing rapidly, impacting fields like data visualization and criminal justice decision-making.
Data Science Weekly Newsletter 19 implied HN points 08 Feb 18
  1. A large database helps researchers understand what makes people happy. This information can be used to improve well-being.
  2. Deep learning has some limitations, like being too simple or not always reliable. It's important to recognize these downsides as we advance in AI.
  3. There’s a need for ethical guidelines in data science because so much data is created every day. We need to ensure this data is used responsibly.
Data Science Weekly Newsletter 19 implied HN points 01 Feb 18
  1. Deep learning education needs a common way to explain why different layers exist. Right now, it’s taught differently than other technical fields.
  2. You can create autonomous driving models using simulation environments like AirSim. This lets you train a model to steer a car just with camera input.
  3. Learning matrix calculus helps in understanding deep learning better. This knowledge is crucial for mastering the training of deep neural networks.
Data Science Weekly Newsletter 19 implied HN points 25 Jan 18
  1. Artificial intelligence (AI) is rapidly changing many industries, similar to how electricity transformed the world. It's important to understand its potential impact on various sectors.
  2. Using data science can help create fairer political maps, a task that involves settling disagreements on what 'fair' means. This is a significant challenge in the fight against gerrymandering.
  3. Recommendation systems are not just for e-commerce; they can be used in any decision-making scenario where matching items is important. Understanding how they work can help improve their effectiveness in various applications.
Data Science Weekly Newsletter 19 implied HN points 18 Jan 18
  1. Deep learning can help automate front-end design by turning design mockups into code. This could make web development faster and easier for developers.
  2. Cloud AutoML is making AI technology more available to businesses that don't have a lot of machine learning experts. This tool can help them create their own high-quality models.
  3. A new recommendation method using a tree-based model can learn user preferences better than traditional methods. This could lead to smarter and more personalized recommendations for users.
Data Science Weekly Newsletter 19 implied HN points 11 Jan 18
  1. A cat named Oscar is surprisingly good at predicting when terminally ill patients are going to die, showing that sometimes animals can have abilities we don't understand yet.
  2. Researchers are making AI systems that can recognize when they are uncertain about something. This could help them make better decisions and avoid mistakes.
  3. There are new tricks used in AI, like AlphaGo Zero, that show how deep learning can improve by learning from its own experiences and using fewer resources.
Build Startup In Public 2 HN points 15 Apr 24
  1. Data scientists should not just focus on algorithms. They need to understand the business to make a real impact.
  2. Data science can improve many areas of a business, like marketing and customer service. It's important to use their skills effectively.
  3. Hiring 'business' data scientists is crucial. Teams should look for candidates who can think beyond just data and algorithms.
Data Science Weekly Newsletter 19 implied HN points 04 Jan 18
  1. Many data scientists come from different backgrounds, both academic and non-academic. It can be helpful for those in academia to learn from others who successfully transitioned to the industry.
  2. Algorithms used in various fields can reflect our biases, which creates ethical issues. Understanding these biases in data processing is crucial to avoid unfair outcomes.
  3. Reflecting on advancements in AI and deep learning over the past year can inspire new ideas and projects. It's a good practice to review and learn from previous developments.
Data Science Weekly Newsletter 19 implied HN points 28 Dec 17
  1. There was a lot of cool stuff happening in data science in 2017. It's a good idea to look back and see what others accomplished that year.
  2. NVIDIA is facing competition in deep learning hardware with new products coming from AMD and Intel. It might be wise to hold off on buying new hardware until the market settles.
  3. Machine learning is getting more attention in fields like physics, showing its importance in making big discoveries. Using tools like Python is becoming essential in modern science.
Data Science Weekly Newsletter 19 implied HN points 21 Dec 17
  1. Machine learning can help decode animal communication, like chicken chatter, for better farming practices. This shows how AI can be useful in agriculture.
  2. Turning raw data into useful products is complex, as seen with Google Maps, which relies on a lot of behind-the-scenes work. It highlights the importance of data processing in creating useful tools.
  3. Finding exoplanets is challenging, but machine learning has made some progress in this area. It illustrates how technology is advancing our understanding of the universe.
Data Science Weekly Newsletter 19 implied HN points 14 Dec 17
  1. Neural networks are being designed to improve memory, similar to how humans remember important things and forget the rest. This helps machines learn more efficiently.
  2. Stitch Fix is using advanced algorithms to improve online shopping by predicting the right sizes for customers without measuring them. This makes the shopping experience better and more personal.
  3. AI is being developed to combat fake news by identifying suspicious stories. However, this also raises concerns about an ongoing battle between true and false information.
Data Science Weekly Newsletter 19 implied HN points 07 Dec 17
  1. A new library of 3-D images can help robots better navigate in homes by recognizing different furniture. This means robots could become more helpful around the house.
  2. Deep learning continues to evolve, and some algorithms are now as good as expert doctors in diagnosing diseases. This could greatly impact healthcare and how we approach medical diagnoses.
  3. Effective data science management is crucial for the success of organizations. Understanding how to scale and manage data science teams can lead to more valuable outcomes.
Data Science Weekly Newsletter 19 implied HN points 30 Nov 17
  1. Computer Vision has seen many advancements recently, making a big impact on society. It's important to keep a balance when discussing potential future outcomes.
  2. The idea of an intelligence explosion is challenged by claims that it misunderstands how intelligence and self-improving systems work. Concrete examples support this perspective.
  3. A study showed that many comments about net neutrality might have been faked using natural language processing, raising concerns about online authenticity.
Data Science Weekly Newsletter 19 implied HN points 24 Nov 17
  1. Flies have a unique way of recognizing and categorizing odors, which inspired a new computer algorithm for searching similar images online.
  2. AI can now identify art forgeries just by analyzing brushstrokes, making the detection process easier and less expensive.
  3. Apple is still catching up in the AI field, despite previous promises to collaborate more with researchers and improve their technology.
Data Science Weekly Newsletter 19 implied HN points 16 Nov 17
  1. Neural networks are changing how we develop software, not just a simple tool for machine learning tasks. They represent a major new approach in programming.
  2. Evolution strategies can be visually explained, making it easier to understand this concept in AI. This approach helps simplify complex algorithms.
  3. There are new tools, like TensorFlow Lite, that make machine learning work better on mobile devices. This makes it easier to create smart applications that run quickly.
Data Science Weekly Newsletter 19 implied HN points 09 Nov 17
  1. Feature visualization helps us understand how neural networks work. It's a useful tool for exploring the inner workings of AI models.
  2. Many deep learning models are more complex than necessary, which can slow down progress. Using simpler baselines can help us better measure our advancements in the field.
  3. Humans and machines can achieve better results when they work together. Instead of worrying about job loss from AI, we should focus on how to collaborate effectively.
Data Science Weekly Newsletter 19 implied HN points 09 Nov 17
  1. Feature visualization helps us understand how neural networks operate. It's a tool that gives us insights into what's going on inside these complex systems.
  2. Using simpler models can sometimes be better than powerful ones. When we rely too much on complicated models, we may lose sight of our actual progress.
  3. Working together, humans and machines can achieve more than either can alone. It's important to focus on collaboration rather than just worrying about job losses due to AI.
sémaphore 2 implied HN points 29 Mar 24
  1. AI models are getting better at reasoning while the costs to run them are getting lower. This means we can expect more affordable and capable AI in the future.
  2. There are different types of customers based on their needs: some care more about low prices, others want a balance of cost and performance, and some prioritize performance above all else.
  3. As AI continues to improve, we might see exciting new developments, like specialized models for various industries and new ways to measure their effectiveness.
Data Science Weekly Newsletter 19 implied HN points 02 Nov 17
  1. A Fortune 50 company is looking to build a strong data science team in NYC. They want to hire both senior and junior data scientists.
  2. There's an interesting article about how humans are currently better than AI at playing StarCraft. A human gamer won a contest against AI with a score of 4-0.
  3. A new tool called Bounter can quickly count item frequencies in large datasets. It uses little memory and is designed for speed.
Data Science Weekly Newsletter 19 implied HN points 02 Nov 17
  1. A big company is looking to hire a skilled data science team in NYC, including both senior and junior positions. If you're interested, reach out with your details.
  2. There are various articles about interesting projects in data science, like using machine learning for costume recommendations and understanding what causes wildfires. These kinds of studies show the diverse applications of data science.
  3. New tools and resources are being developed to make data science easier, like TensorFlow's eager execution. These advancements help data scientists to work more effectively with large datasets.
Data Science Weekly Newsletter 19 implied HN points 26 Oct 17
  1. AlphaGo's victories sparked discussions about the significance and implications of AI developments. People are curious about how AI researchers view these breakthroughs.
  2. Machine learning software can be tricky to debug, so using unit tests is really important. They can save a lot of time and help ensure your algorithms work correctly.
  3. Adversarial attacks can trick machine learning models into making wrong predictions, raising safety concerns about AI systems that we rely on.
Data Science Weekly Newsletter 19 implied HN points 19 Oct 17
  1. Google is working on smart software that can create other software, making tech easier and more efficient.
  2. Our brains limit us to having meaningful relationships with only about five close friends, which is interesting for understanding social networks.
  3. There are many resources available, like open-source tools and training, that can help anyone learn data science and AI skills easily.
Data Science Weekly Newsletter 19 implied HN points 12 Oct 17
  1. A new smartphone program can accurately detect sick plants, which could really help farmers in developing countries.
  2. Online dating is changing how people meet and may even affect marriage patterns, like interracial marriages.
  3. Instacart is using complex simulations to improve the shopping experience by better matching supply and demand.
Data Science Weekly Newsletter 19 implied HN points 05 Oct 17
  1. Algorithms can be used in designing unique structures, like concert halls, by creating specific shapes for materials based on calculations.
  2. Understanding bias in AI is crucial because it can lead to intelligent systems that reflect human prejudices rather than being fair.
  3. New York City is seen as a top place for data scientists to grow their careers and for companies to build strong data teams.
Data Science Weekly Newsletter 19 implied HN points 28 Sep 17
  1. Linear programming can help optimize diets for better health. It's about finding the best balance of food for weight loss and longevity.
  2. Understanding the risk of extreme weather events, like floods, can help cities prepare better. It's important to question outdated models when they don't match recent data.
  3. AI and machine learning are changing design fields, like web design, by enabling automated creation. This could make building websites easier and more efficient.
Data Science Weekly Newsletter 19 implied HN points 21 Sep 17
  1. Machine-vision drones can assist in monitoring wildlife by providing accurate population estimates in remote areas. This technology helps wildlife management efforts.
  2. Unity has introduced Machine Learning Agents that can help researchers and game developers experiment with applying machine learning in gaming scenarios. This will enhance both fields by bridging the gap between them.
  3. There are many resources available for those interested in data science, including tutorials and job listings. These can help you improve your skills and find opportunities in the data science field.
Data Science Weekly Newsletter 19 implied HN points 07 Sep 17
  1. Uber has developed a machine learning platform called Michelangelo that makes it easier for businesses to use AI and machine learning.
  2. Understanding how to evaluate models with imbalanced data sets is important for data scientists, specifically using precision, recall, or ROC metrics.
  3. Data journalism is evolving, and interviews with journalists and developers can reveal best practices for creating engaging digital stories.
Data Science Weekly Newsletter 19 implied HN points 31 Aug 17
  1. Amazon's AI can help you find styles that suit you by using machine learning. It can even make new styles from scratch!
  2. Being a non-traditional data scientist is possible with interest and a willingness to learn. Many paths can lead you to a successful career in data science, even from diverse backgrounds.
  3. AI and machine learning are becoming essential tools in data science, expected to drive future economic growth just like past innovations such as electricity.
Data Science Weekly Newsletter 19 implied HN points 24 Aug 17
  1. Using machine learning models, like recurrent neural networks, can enhance text editing by making it smarter and more responsive. It allows for cool features like inline autocomplete that feels very natural.
  2. When choosing between deep learning frameworks like PyTorch and TensorFlow, think about how easy they are to use and their flexibility for your specific project needs.
  3. Building a strong data science resume and portfolio is crucial to getting hired; make sure they highlight your skills and tailor them to each job you apply for.
Data Science Weekly Newsletter 19 implied HN points 17 Aug 17
  1. The OpenAI DotA 2 bot is an impressive project, but it's important to understand that it's not the revolutionary breakthrough some claim it to be. It's a significant achievement in AI, yet its implications should be viewed more critically.
  2. There are innovative tools and experiments that use machine learning to enhance how we interact with platforms like Wikipedia, making it easier to explore content effectively. This shows how technology can change our access to information.
  3. Machine learning and AI are evolving rapidly, with new techniques such as autoregressive models and advanced algorithms present in various fields. It's exciting to see how these developments are shaping technology and everyday life.
Data Science Weekly Newsletter 19 implied HN points 10 Aug 17
  1. Computers can predict successful startups using AI, and they performed surprisingly well in identifying companies like Evernote and Spotify.
  2. Choosing the right data visualization style can help viewers understand information more easily, whether it's showing geographic variations or busy activity areas.
  3. Understanding different deep learning frameworks like PyTorch and TensorFlow is important for effective model building and analysis in data science.
Data Science Weekly Newsletter 19 implied HN points 03 Aug 17
  1. Salesforce is working on making artificial intelligence easier to use by automating how machine learning models are created.
  2. There's an important debate in social science about what counts as strong evidence in research, especially regarding the use of p-values.
  3. AI is being used in fun ways, like teaching machines to develop language skills and even create their own dance moves by watching games.