Data Science Weekly Newsletter

The Data Science Weekly Newsletter provides detailed insights on data science, machine learning, AI, and data engineering. It covers trends, tools, practical applications, and industry developments, emphasizing data quality, visualization, AI ethics, and career tips. Interviews and updates on evolving technologies are also highlighted.

Data Science Machine Learning Artificial Intelligence Data Engineering Data Visualization AI Ethics Career Development Data Tools and Techniques

The hottest Substack posts of Data Science Weekly Newsletter

And their main takeaways
19 implied HN points 06 Feb 20
  1. Good experiments in product development involve learning from both successes and failures, refining techniques over time.
  2. AI can help detect health crises, as seen with a platform that warned about the Wuhan virus before major health organizations.
  3. Neural networks are being used to enhance older video game graphics, making classic games look modern and appealing again.
19 implied HN points 30 Jan 20
  1. Data cleaning is a big part of a data scientist's job. Many great ideas can get stuck because people can't access or use the right data.
  2. Choosing the right settings, called hyperparameters, greatly impacts a machine learning project's success. There are smarter ways to find these settings than just guessing.
  3. Learning is easier when it's structured step by step. Using a curriculum helps models learn complex tasks bit by bit, just like how people learn.
19 implied HN points 23 Jan 20
  1. Smule is a popular karaoke app and now has a feature called Smulemates that helps users find others with similar singing styles to sing with.
  2. Facebook AI made a big advancement with a new learning algorithm called DD-PPO that helps machines navigate real-world environments using just basic tools like GPS and cameras.
  3. There’s a tool called Manifold from Uber that helps people check if their machine learning models are working well, and they have made it open source for everyone to use.
19 implied HN points 16 Jan 20
  1. Hiring smarter in the job market can be achieved by looking beyond the usual qualifications. There are talented candidates who might not fit the typical mold, and recognizing this can create great opportunities.
  2. Introducing machine learning into human decision systems can lead to issues, often referred to as the 'Uncanny Valley.' It’s important to carefully design these systems to avoid performance problems.
  3. TinyML is a growing field that allows advanced machine learning to happen on small devices. This means everyday products can become smarter without needing a lot of power.
19 implied HN points 09 Jan 20
  1. Creating effective data projects involves more than just building a model; you also need to consider context, strategy, and maintenance.
  2. AI can speed up material discovery by analyzing large datasets and predicting useful combinations, which could change many industries.
  3. Data lakes allow for more flexible data storage than data warehouses, but this flexibility comes with important tradeoffs to think about.
Get a weekly roundup of the best Substack posts, by hacker news affinity:
19 implied HN points 26 Dec 19
  1. Visualizing data is important. Tools like MNIST and butterfly datasets help us see patterns and improve recognition using machine learning.
  2. AI is making strides in complex games, like poker. There are now AI that can beat expert players, showing how advanced it's become.
  3. Learning and understanding the math behind neural networks is crucial. It helps us grasp how these systems work and improve our data analysis skills.
19 implied HN points 19 Dec 19
  1. NeurIPS 2019 had a lot of focus on workshops and research, showing that the field of AI is rapidly growing and evolving.
  2. AI's ability to play games like chess may not measure true intelligence since it can't solve everyday problems as easily as humans do.
  3. There's a push for improving AI tools and methods, particularly in language understanding and cooperation in complex tasks.
19 implied HN points 12 Dec 19
  1. NeurIPS 2019 saw a huge increase in submissions, with over 6,700 entries and a 21.6% acceptance rate. This shows how popular and competitive the field of data science has become.
  2. Data Science teams often use both R and Python together, but merging them can be challenging. Finding ways to integrate these languages can help teams be more effective in their projects.
  3. A new method has been discovered for understanding quadratic equations, making it easier for students who struggled with the traditional formula. This could change how math concepts are taught.
19 implied HN points 05 Dec 19
  1. New technology is helping scientists study animals more effectively, but it's also creating a lot of data to handle.
  2. Machine learning tools are still complex and unique, making it tough for researchers to replicate their work easily.
  3. Recent advancements in machine learning are uncovering historical authorship details, like who wrote parts of Shakespeare's plays.
19 implied HN points 28 Nov 19
  1. Data science can be quite tedious and involves a lot of boring tasks. It's important for aspiring data scientists to manage their expectations and be prepared for the long-term commitment.
  2. AI is changing the workplace, especially for white-collar jobs. Many roles in fields like law, marketing, and programming might be disrupted by advancements in artificial intelligence.
  3. Diversity in AI isn't just a technical issue; it's about understanding perspectives and the impact of pronouns and identity in discussions on diversity.
19 implied HN points 21 Nov 19
  1. Google Cloud is improving AI transparency by explaining how machine learning models make decisions. This helps businesses understand and improve their models.
  2. AI is being used to discover ancient symbols in Peru, making the research process faster and more efficient.
  3. Building a data science portfolio can attract potential employers and provide conversation starters during interviews.
19 implied HN points 14 Nov 19
  1. PhD students often face many challenges during their research, making it a tough journey. It's important to recognize that they might not be alone in these struggles.
  2. Scientists are making progress in decoding brain signals into speech, which could help people communicate directly from their thoughts. This could be a game changer for those with communication disabilities.
  3. AI and bias continue to be major topics, especially when systems make mistakes. It's crucial to address these issues and find solutions to prevent hidden biases in AI.
19 implied HN points 07 Nov 19
  1. Neural networks using biological strategies are improving, suggesting that ignoring specific goals could help create smarter machines.
  2. AI in healthcare is growing quickly, but there are challenges in making these technologies actually work in hospitals and clinics.
  3. When applying for data science jobs, resumes should focus more on results and actions rather than just academic achievements.
19 implied HN points 31 Oct 19
  1. Rising sea levels could affect more cities than we realized, based on new research using artificial intelligence to correct earlier mistakes.
  2. Machine learning has made it possible to solve complex math problems, like the three-body problem, much faster than before.
  3. AI can learn to play video games like StarCraft II at a high level by practicing against itself, showcasing advances in gaming and strategy development.
19 implied HN points 24 Oct 19
  1. A new gene editing method called prime editing works better than CRISPR. It can change DNA more accurately, which is a big deal for scientists.
  2. Teaching rats to drive tiny cars can help them feel less stressed and improve their learning. This shows how important the environment is for learning new skills.
  3. Quantum computing is growing and important experiments are being done to show its real potential. Researchers are working to solve complex problems that regular computers can't handle.
19 implied HN points 17 Oct 19
  1. Reinforcement learning can solve real-world problems, like making a robot hand solve a Rubik's Cube. It shows how advanced AI can be applied outside digital spaces.
  2. More researchers are shifting from TensorFlow to PyTorch for experiments, while TensorFlow remains popular in the industry. This could change what tools are most commonly used in future projects.
  3. Companies can use machine learning to find the best regions for hiring offshore talent. This helps them build remote teams with the right skills more effectively.
19 implied HN points 10 Oct 19
  1. Deep learning is great at spotting patterns but struggles to explain the reasons behind those patterns. This is something experts want to improve.
  2. Some scientists are using their skills in machine learning for everyday tasks like fashion recommendations instead of just space research.
  3. Tiny AI models can make phone features like autocorrect and voice assistants work much better and faster.
19 implied HN points 03 Oct 19
  1. Data scientists are in high demand, and platforms like Vettery can help connect them with top employers. It’s a good time to create a profile and name your salary.
  2. New developments in AI are making it easier for algorithms to understand natural language and plan tasks effectively. This approach could lead to smarter AI capable of tackling unfamiliar challenges.
  3. The training process for Generative Adversarial Networks (GANs) is often tricky, but researchers are working on methods to stabilize it. This could improve how GANs are used in various applications.
19 implied HN points 26 Sep 19
  1. Neural networks can create unique artworks, like an unseen Picasso painting, by analyzing and reconstructing based on existing styles.
  2. Explainable AI is important for understanding how AI models make decisions, especially to avoid biases and harmful behaviors.
  3. Anonymous data can still lead to re-identification, meaning privacy is a big concern even when personal information is removed.
19 implied HN points 20 Sep 19
  1. Backpropagation is crucial for how neural networks learn and improve their performance.
  2. AI is evolving rapidly, with successful projects like AlexNet revolutionizing technology and creating buzz among investors.
  3. Real-world data science experience is essential for job seekers, and there are resources available to help bridge the gap between education and practical skills.
19 implied HN points 19 Sep 19
  1. Backpropagation is key to how neural networks learn and work. It's important to understand how it makes AI smarter.
  2. There's a lot of interest in AI startups right now, like those that clean and prepare data for analysis. They are getting significant funding due to the AI boom.
  3. If you want a job in data science, gaining real-world experience is crucial. Many people feel discouraged, but projects and hands-on training can help bridge that gap.
19 implied HN points 12 Sep 19
  1. Machine learning is being used in fashion to create personalized outfits for users, showing how AI can enhance personal style.
  2. AI technology is transforming biology, especially in imaging, which could lead to significant advancements in understanding and treating diseases.
  3. Protection against job displacement from automation is important, with ideas like a robot tax being proposed to safeguard workers' roles.
19 implied HN points 05 Sep 19
  1. Deep learning is a big deal in AI. It's all about machines learning from data, and experts like Yann LeCun are leading the way.
  2. Data scientists are in high demand, and understanding their salaries can help you know what to expect in the job market.
  3. Using AI for face recognition can be surprising, like tracking chimpanzees, and shows how powerful this technology has become.
19 implied HN points 29 Aug 19
  1. Managing data scientists requires unique skills and knowledge that differ from other management roles. It's important for leaders to understand these differences for effective team building.
  2. Research in data science is a long-term commitment, not a quick task. Success often comes from persistence and adaptation over time.
  3. Creating a strong resume for data science roles is crucial. It can be challenging to know what to include, so seeking specific advice is helpful.
19 implied HN points 22 Aug 19
  1. Adversarial Fashion aims to confuse surveillance cameras by using items like license plates. This shows how fashion can be used to challenge technology.
  2. A new AI optimizer called RAdam can improve accuracy for various AI models. It's a helpful update for anyone working with machine learning.
  3. Deep learning is making waves in genetics, showing that it can help explore DNA. This opens new possibilities for understanding and working with genetic data.
19 implied HN points 15 Aug 19
  1. AI is now being used to train models for games like video soccer, building on its success in chess and Go. This shows how far AI technology has come in mastering complex tasks.
  2. Nvidia has made big strides in AI by speeding up the training process for advanced language models. This improvement can help in developing better conversational AI systems.
  3. To become a data scientist, it's more effective to start in a related job and learn along the way. Focusing too much on skills from blog posts can lead to confusion and delay.
19 implied HN points 01 Aug 19
  1. Integrating data science teams within companies can help improve collaboration and effectiveness. It's important to explore different models to find what works best.
  2. Automated thinking may lead to overdependence on AI, which can cause us to miss critical thinking skills. We should be cautious about relying too much on technology.
  3. Understanding how machine learning models work is crucial for building trust. New techniques are emerging that can help explain complex models better.
19 implied HN points 25 Jul 19
  1. Machine learning is being used in various industries to improve data handling and application. There's a growing trend of using Python notebooks for these projects.
  2. Facebook created a tool called Map With AI to help speed up the mapping of roads, especially in less-developed areas. It uses satellite imagery to predict road networks.
  3. Leaderboards in Natural Language Processing (NLP) encourage teams to compete, which drives the development of better models for understanding human language.
19 implied HN points 18 Jul 19
  1. Netflix is moving away from traditional collaborative filtering methods to improve its recommendation system.
  2. Using AI and natural language processing (NLP) can help companies better understand and meet customer requests.
  3. It's important to audit AI systems to check for bias, especially when making significant decisions like loans or legal verdicts.
19 implied HN points 11 Jul 19
  1. A new AI poker bot has learned to beat professional players, showing how advanced artificial intelligence has become in understanding complex strategies.
  2. Effective data science managers play a key role in driving team success and impact, focusing on building strong, skilled teams.
  3. Generative adversarial networks, often linked to deepfakes, can also be used positively in medical fields, like improving cancer diagnosis.
19 implied HN points 04 Jul 19
  1. AI is rapidly advancing, and there are important reports that analyze its progress and future implications. Staying updated can keep us informed about these changes.
  2. Machine learning is being used to translate ancient languages, bringing new opportunities to understand lost histories. This tech could unlock communication from the past.
  3. Building a strong data science portfolio and resume is crucial for job seekers in the field. Good guidance can help you showcase your skills effectively to potential employers.
19 implied HN points 27 Jun 19
  1. Amazon held its first AI conference showcasing robots and their vision for an efficient future. It was a glimpse into how technology can change everyday tasks.
  2. A new method helped process large DNA sequencing data faster using R and AWK. This approach can help researchers avoid common pitfalls.
  3. Machine learning can improve medical devices, like a better prosthetic hand. This shows how technology can help people lead better lives.
19 implied HN points 20 Jun 19
  1. New AI technology is advancing quickly, enabling robots to be more intelligent and functional. For example, Boston Dynamics has robots that can now actively defend themselves.
  2. Deepfake technology is becoming more sophisticated, allowing a single photo and audio file to create a singing video. This shows how media can be manipulated in exciting and potentially concerning ways.
  3. AI is starting to play roles traditionally held by humans, such as in healthcare. Chatbots are now providing medical advice, which raises questions about their effectiveness compared to real doctors.
19 implied HN points 13 Jun 19
  1. Facebook has created an AI that can mimic voices, even famous ones like Bill Gates. This technology raises questions about voice authenticity and security.
  2. Machine learning is enabling parents to potentially select traits like intelligence for their children through genetic choices. This could change how we think about heredity.
  3. Deepfake technology is becoming increasingly accessible, allowing users to easily edit videos and create convincing fake content. This poses a challenge for misinformation and trust in media.
19 implied HN points 06 Jun 19
  1. Machine learning can create lifelike animations from just one photo, which is both impressive and a little creepy.
  2. The AI industry relies on a lot of hidden human labor, often in poor conditions, as it grows and changes how businesses operate.
  3. Training large AI models can be very harmful to the environment, producing as much carbon emissions as five cars over their lifetime.
19 implied HN points 30 May 19
  1. Creating general artificial intelligence might be possible through AI-generating algorithms, which could be a better approach than manually piecing together intelligence components.
  2. Generative adversarial networks (GANs) could greatly change the fashion industry by allowing realistic digital models to replace human models in online shopping.
  3. Recent advances in AI technology are enabling more efficient processing on devices, reducing the need for powerful cloud machines and making AI applications more accessible.
19 implied HN points 23 May 19
  1. AI is becoming better at detecting diseases like lung cancer through improved analysis of CT scans. This could help doctors make more accurate diagnoses.
  2. Robots that learn to explore their environment can contribute to advancements in artificial intelligence. Facebook believes this could lead to smarter machines for various uses.
  3. Data analysis is playing a significant role in sports, such as soccer, by helping teams like Liverpool improve their performance and achieve success.
19 implied HN points 16 May 19
  1. Los Angeles has significant noise pollution, mainly from airports and heavy traffic. A recent map highlights how loud different neighborhoods are.
  2. There's a growing debate on whether data can truly act as a competitive advantage for companies, especially with AI startups. It's worth questioning if real evidence supports this idea.
  3. A Swedish distillery is set to release the first whisky designed by artificial intelligence. It raises interesting questions about how AI can influence creative processes.