Machine learning reddit.

Machine learning models can find patterns in big data to help us make data-driven decisions. In this skill path, you will learn to build machine learning models using regression, classification, and clustering. Along the way, you will create real-world projects to demonstrate your new skills, from basic models all the way to neural networks.

Machine learning reddit. Things To Know About Machine learning reddit.

The second edition also covers Generative Learning to a deeper extent as well as productionalizing learning algorithms. If you're looking for an RL reference, Sutton and Barto is the gold standard. OpenAI gym/rllib/stablebaselines are …Reddit is a popular social media platform that boasts millions of active users. With its vast user base and diverse communities, it presents a unique opportunity for businesses to ...Mar 7, 2016 ... ... deep learning celebrities : r/MachineLearning ... Remove r/MachineLearning filter and expand search to all of Reddit ... machine learning landmark.Machine Learning is mathematics first, and programming second. Machine Learning research is currently (and likely in future) dominated by Ph.D. graduates in Physics, Mathematics, Statistics, and Computer Science. Undergraduate studies in a quantitative discipline like mathematics, statistics, or physics will probably be the best place for you ...

Specialization - 3 course series. The Machine Learning Specialization is a foundational online program created in collaboration between DeepLearning.AI and Stanford Online. This …Machine Learning is a very active field of research. The two most prominent conferences are without a doubt NIPS and ICML. Both sites contain the pdf-version of the papers accepted …

Without further ado, here are my picks for the best machine learning online courses. 1. Machine Learning (Stanford University) Prof. Andrew Ng, instructor of the course. …

MICCAI and IPMI are A tier conferences in medical image computing (lot of similar themes as AI/ML are applied in these papers) Some applications conferences similar to CVPR or ACL that typically feature ML: FAccT, RecSys, WSDM, TheWebConf, SIGIR, ICDM.Aug 8, 2023 ... Learn Machine Learning. A subreddit dedicated to learning machine learning. Show more. 389K Members. 65 Online. Top 1% Rank by size. More posts ...At the company I work at, we've hired candidates who have gone on to be fantastic machine learning researchers without asking them for a GitHub repo or 3 years of Kaggle history. None of that crap. All you need to be successful (and what we look for) is have a solid understanding of the background maths (elements of calculus, linear algebra ...It will just create an arbitrage and every finance guy would want to exploit it thus killing the option in the long run. I'm not saying that there is no model for trading, but none that can predict the price of a product in the future, especially in forex or oil and that "stood the test of the time". Forex price or oil price are basically some ...Cleaning things that are designed to clean our stuff is an odd concept. Why does a dishwasher need washing when all it does is spray hot water and detergents around? It does though...

Machine learning, on the other hand, is applicable to datasets where the past is a good predictor of the future, like weather, electricity consumption, or foot traffic at a store. Always remember that all trading is fundamentally information arbitrage: gaining an advantage by leveraging data or insights that other market participants are missing.

Knowledge of "hard" mathematics that can underpin machine learning (e.g. advanced linear algebra, geometry focused on graph theory, symbolic/numeric/automatic diff) 1 == Good, you won't find it in any books or courses, or if you do find it in some books (e.g. fastai books or courses) then those are hard to find, incomplete and usually despised ...

Generally for R/Python vs Java: R and Python are much easier to play around with, try out ideas, etc. Java is a very verbose language. It might be more robust and since it's compiled it is decently fast, but it's NOT a language to easily try stuff out. It's an enterprise-y language, which can be sort of a cludge if you want to write some quick ...You're gonna have a bad time with the nitty gritty without calc knowledge. If you want to study machine learning to actually use it and apply it without understanding 100% of WhatsApp going on, yes you definitely could. You just need some basic python skills and need to learn sklearn.Reddit is a popular social media platform that boasts millions of active users. With its vast user base and diverse communities, it presents a unique opportunity for businesses to ...If you are fine with spending 1-2 years grinding Leetcode for SDE in a super expensive MS ML/AI/DS program, fine. (fyi: interned at top comp and startups 3 times before masters, top gpa, applied for 300+ internships (a mix of MLE/SDE/DS), heard back from like 10, interviewed at 3, rescinded offer from 1, rejected from 1, accepted from 1 but not ...I spent a summer as a Data Scientist intern and now work as ML Engineer. If you enjoy coding more, do ML Engineer. ML Engineer is just a specialized Software Engineer. If you ever seen the role "Software Engineer - Machine Learning" that's pretty much interchangeable with ML Engineer. Most ML Engineers I've met come from having Software ...NoPlansForNigel. •. AI will always be as good at generating code as you are at describing what you want. Doing a precise description of the software you want has always been the hardest …

A robust machine learning engineering skill set is hard won, just like compilers, operating systems, or distributed systems skillsets. So while you (perhaps thankfully) don’t have to acquire a PHD, getting into ML engineering isn’t a walk in the park. Presented below is an inevitably incomplete, but still fleshed out list of resources for ...If you want something really simple to get started, I'd recommend Paperspace . You can't beat Google Cloud 's $300 credits though! Microsoft Azure also provides you free credits to try out Machine Learning. I have never rented GPUs for ML. Few weeks ago, There was someone who submitted a post about vectordash.com. coursera – machine learning (first three weeks) 100 page ML book. From now on, three areas of focus will be given for each level: Mathematics, Concrete ML knowledge, and Programming. Level 2 – Competent Developer. Have basic intuition about the math relevant for ML. I spent a summer as a Data Scientist intern and now work as ML Engineer. If you enjoy coding more, do ML Engineer. ML Engineer is just a specialized Software Engineer. If you ever seen the role "Software Engineer - Machine Learning" that's pretty much interchangeable with ML Engineer. Most ML Engineers I've met come from having Software ...Other answers already mentioned there's an established ecosystem, but another important point is that Python can wrap libraries written in other faster programming languages. Most of numpy is written in C and Fortran, so this is why Python is good for ML even though it is slower than some other languages. 83.Jun 7, 2022 ... Reddit, Inc. © 2024. All rights reserved. r/learnmachinelearning. Join. Learn Machine Learning. A subreddit dedicated to learning machine ...

Jul 17, 2021 ... r/MachineLearning Current search is within r/MachineLearning. Remove r/MachineLearning filter and expand search to all of Reddit. TRENDING ...4tomorrow678. • 1 yr. ago. Python is widely used for machine learning due to its simple and easy-to-read syntax, and its strong community support. It allows developers to easily build and prototype machine learning models and perform data analysis tasks efficiently.

Deep learning is a method of machine learning involving at least 1 more "layer" of math between the input and output. An input can be pixels on the screen and the output numbers 0-9 and you want AI that can take an image of a number and determine what number that is.After completing the above, start with Introduction to Statistical Learning and then Elements of Statistical Learning. This will give you a really thorough grounding in the math behind ML algorithms. ESL is tricky, and highly math intensive, but once you work through it, it will pay off. 5. yash_paunikar.PhDs are indeed quite competitive, as others have described. On the brighter side though, many universities have started to offer masters programs in Data Science & ML (e.g. USF ), which typically have a higher intake (i.e. less competition) compared to PhD programs, and focus on practical application of Data Science & ML, rather than research. 1.Hello everyone, I am about to start college as a computer science and math double major, and I want to eventually pursue a PhD in Machine Learning, but I am fairly new to the field and would like long term advice for a robust budget pc build that will be useful for my needs for atleast 4 years , and whether I should use multiple GPUs or a hybrid of a single gpu …11 votes, 38 comments. true. I use machine learning for my long options portfolio, I use classifiers to establish potential group of candidates then predictors for placing the orders, stop loss is a simple ATR band, wider for calls, narrower for puts, Daily data set with price derivatives and fundamental analysis data to better time entry.The final capstone project in Coursera's Machine Learning and similar specializations is a worthwhile investment, IMHO. So, I probably wouldn't worry much about an individual course certificate, unless you plan to complete a series of courses and do the capstone project. 4.The #1 Reddit source for news, information, and discussion about modern board games and board game culture. Join our community! Come discuss games like Codenames, Wingspan, Terra Mystica, and all your other favorite games! ... An example of how machine learning can overcome all perceived odds youtubeWith all that said, my top recommendations are: Lemur Pro from System 76--very light, very powerful, long battery life, Linux pre-installed. No GPU. ThinkPad P-series (for high end, can include a small GPU but isn't big enough for most DL models) or X series.The common saying is "working with AI means spending 80% of your time working with data." Currently, working with AI means two things: either you do research (and you have to be somewhat exceptional for that), or you work in the "real world", which means you spend most of your time working with data. This is the impression I have gotten, and I ... If you are interested in learning Artificial Intelligence and Computer Science for FREE, you can checkout this list that we've made. You may not see some of the most popular courses that you may be familiar with (ex:IBM's) but those are free for like 7 days and than require payment.

Using Machine Learning to Solve Reddit’s “Rating-less ” Problem. Looking at the way in which Reddit’s marketplaces work led me to construct an algorithm to help solve the …

r/MachinesLearn: This is a subreddit for machine learning professionals. We share content on practical artificial intelligence: machine learning…

Matlab's pretty cool for learning concepts without as much library overhead, it's really not hard to pick up. If you're decent at coding, you'll likely find you can blow through assignment style problems pretty quick, at least if they're linear algebra related. If you'd rather do them in a more useful framework though, you can always do the ...There’s more to life than what meets the eye. Nobody knows exactly what happens after you die, but there are a lot of theories. On Reddit, people shared supposed past-life memories...Know how ML‘s potential can be utilized to serve themselves (or their teams) resources: coursera – ai for everyone andrew ng – machine learning yearning coursera – machine learning (first …Mar 2, 2022 ... ... reddit.com/r/MachineLearning/comments/t55lbw/d_whats_your_favorite_unpopularforgotten_machine/hz3hd4h/. You can think of clustering as a kind ... I spent a summer as a Data Scientist intern and now work as ML Engineer. If you enjoy coding more, do ML Engineer. ML Engineer is just a specialized Software Engineer. If you ever seen the role "Software Engineer - Machine Learning" that's pretty much interchangeable with ML Engineer. Most ML Engineers I've met come from having Software ... There are a lot of differences between MLOPs and the other types of infra/BE teams, as each of them are also pretty specialized. At the end of the day, I think it comes down to 1) who the team is designed to support/collaborate with and 2) what will they own. For 1), MLOps ppl will be interacting mostly with ML scientists/engineers, and so ...A compound machine is a machine composed of two or more simple machines. Common examples are bicycles, can openers and wheelbarrows. Simple machines change the magnitude or directi...A Machine Learning project is an order of magnitude more difficult to deliver than a software engineering project. Model drift, ethical implications of dataset outliers, driving project decisions that are centered around mathematics, all of that is insanely difficult.

It is the single and the best Tutorial on Machine Learning offered by the IIT alumni and have minimum experience of 18 years in the IT sector. This course provides an in-depth introduction to Machine Learning, helps you understand statistical modeling and discusses best practices for applying Machine Learning. Sentdex. Apple released TensorFlow support for the M1 Neural Chip (see my comment above). But since this would use system memory afaik, model complexity would indeed be limited. Though one can already fit very capable models within e.g., 4GB Neural Chip memory. Basic models yes, but for SOTA models not nearly enough. Alternatives to Reddit, Stumbleupon and Digg include sites like Slashdot, Delicious, Tumblr and 4chan, which provide access to user-generated content. These sites all offer their u... The common saying is "working with AI means spending 80% of your time working with data." Currently, working with AI means two things: either you do research (and you have to be somewhat exceptional for that), or you work in the "real world", which means you spend most of your time working with data. This is the impression I have gotten, and I ... Instagram:https://instagram. auto windshield repairthe good fightglass window replacementmens skincare routine Other answers already mentioned there's an established ecosystem, but another important point is that Python can wrap libraries written in other faster programming languages. Most of numpy is written in C and Fortran, so this is why Python is good for ML even though it is slower than some other languages. 83. how to watch the chiefs gamerags movie r/learnmachinelearning: A subreddit dedicated to learning machine learning. what are you looking for in your next role This is a subreddit for machine learning professionals. We share content on practical artificial intelligence: machine learning tutorials, DIY, projects, educative videos, new tools, demos, …Jul 17, 2021 ... r/MachineLearning Current search is within r/MachineLearning. Remove r/MachineLearning filter and expand search to all of Reddit. TRENDING ...