Machine learning reddit - Buying a used sewing machine can be a money-saver compared to buying a new one, but consider making sure it doesn’t need a lot of repair work before you buy. Repair costs can eat u...

 
ADMIN MOD. [D] A Super Harsh Guide to Machine Learning. Discussion. First, read fucking Hastie, Tibshirani, and whoever. Chapters 1-4 and 7-8. If you don't understand it, keep reading it until you do. You can read the rest of the book if you want. You probably should, but I'll assume you know all of it.. Killing flies

To help you, I've compiled an up-to-date list of 20+ active machine learning and data science communities grouped by platform. 1. Reddit. Reddit is a powerhouse for many active forums dedicated to all areas across AI, machine learning, and data science. Here's a list: r/machinelearning (2M+ members) r/datascience (500K+ members)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.Here are some steps you can take to become a Machine Learning Engineer: Gain a Strong Foundation in Computer Science, Mathematics, and Statistics: A solid foundation in computer science, mathematics, and statistics is essential for becoming a Machine Learning Engineer. You can obtain this foundation through formal education, such as a degree in ...I totally agree with you, I just wanted to point out that Siri is not even Apple’s main machine learning product and there is much more (e.g. lots of computer vision). Then I double checked the fact and found out about acquisiton of Siri, hence the edit. https://mml-book.github.io/ Well, this is literally almost all the math necessary for machine learning. Covering everything in great detail requires more than ~400 pages, but overall this is the most detailed guide on the mathematics used in machine learning. 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 ...Project. The deployment of ML models in production is a delicate process filled with challenges. You can deploy a model via a REST API, on an edge device, or as as an off-line unit used for batch processing. You can build the deployment pipeline from scratch, or use ML deployment frameworks. In my new mini-series, you'll learn best practices to ...281 votes, 165 comments. true. Yes. I'm pretty sure it will be leaps and bounds above whatever a regular Intel chipped laptop can do, but I'd debate the usefulness of being able to fit a 100GB model into memory when you have a fraction of processing cores available vs. even a consumer grade GPU, I'm a bit unsure about the usefulness of it.If you are looking to start your own embroidery business or simply want to pursue your passion for embroidery at home, purchasing a used embroidery machine can be a cost-effective ...On Reddit. 2.6M Members. Community Topics. View details for Data Science. Data Science. 26 communities for Data Scientists. View details for Machine Learning. Machine Learning. ...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 ...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 ...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 ... Representing words with words - a logical approach to word embedding using a self-supervised Tsetlin Machine Autoencoder. Hi all! Here is a new self-supervised machine learning approach that captures word meaning with concise logical expressions. The logical expressions consist of contextual words like “black,” “cup,” and “hot” to ... ADMIN MOD. [D] ICLR 2024 decisions are coming out today. Discussion. We will know the results very soon in upcoming hours. Feel free to advertise your accepted and rant about your rejected ones. Edit 2: AM in Europe right now and still no news. Technically the AOE timezone is not crossing Jan 16th yet so in PCs we trust guys (although I ... Reddit announced Thursday that it would buy Spell, a platform for running machine learning experiments, for an undisclosed amount.. Spell was founded by former …Data mining: A human looking for something in a large dataset. Machine learning: Computer programs (AIs) that learn from a large dataset to produce similar, original results. EgNotaEkkiReddit. • 3 yr. ago. They are related, but not all data mining is ML and not all ML is data mining. Data Mining is a wide field that involves finding ...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 …Hello guys, I am new to reddit and to machine learning as well. Just yesterday I finished a Hackathon where me and my team made an image recognition AI using MobileNetV2. I don't … r/learnmachinelearning: A subreddit dedicated to learning machine learning. Like the title said, I’m working on a research about Sparse Mixture of Experts and need to survey and choose a toolkit to build my research code base. This is more specific to deep learning but obviously many concepts apply to wider machine learning. This is supposed to be THE book. Freely available. Written by, among others, Ian Goodfellow; the creator of GANs. It’s actually pretty good. It’s about exactly the amount of maths you need to understand deep learning. 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. Related Machine learning Computer science Information & communications technology Applied science Formal science Technology Science forward back r/cybersecurity This subreddit is for technical professionals to discuss cybersecurity news, research, threats, etc.Hydraulic machines do most of the heavy hauling and lifting on most construction projects. Learn about hydraulic machines and types of hydraulic machines. Advertisement ­From backy...I can't give you the ulitmate roadmap for your introduction in Data Science field, but I can give you a good guide on how to start and make things easier. Firstly before even touching Machine Learning courses, you need to have a solid understanding of Python libraries like Numpy, Pandas, Matplotlib, Statistics (so as to not mess up ML later).Reddit announced Thursday that it would buy Spell, a platform for running machine learning experiments, for an undisclosed amount.. Spell was founded by former …There's really a few different things you could learn with AWS. Machine Learning training using GPU instances. This will likely be the easiest to learn, and it essentially just means allocating a server with a GPU (usually something like a K80 or P100 for $1-3/hr, prorated to the minute), setting it up, and training on it. No. R is maybe a bit better for explorations, but its productization is rly bad. Python has both. It can be used both for explorations and for developing final product. And its getting even better at both those tasks. Programming in Python since ~2003, using R for machine learning since ~2012. So naturally, I don't really know where to begin this journey. I've researched for resources and roadmaps to learn machine learning and created my own basic roadmap just to get started. Math - 107 hours. Single-Variable Calculus - MIT ~ 29 hours. Multi-Variable Calculus - MIT ~ 29 hours.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 ...Aug 29, 2022 ... [D] What are some dead ideas in machine learning or machine learning textbooks? · Initialize N instances of (the same) neural network. each ...The real learning starts when you begin to absorb someone else's concept then turn it into your own so you can work on your own projects. 4.5) [Optional] There are tons of specialized fields in ML, you should have enough foundations and intuitions to go in more specialized fields. eg computer vision, robotics etc.Mathematics for Machine Learning by Deisenroth. Hands-on ML with scikit learn, keras and TF, 2nd edition (it is substantially better than the previous edition) by Géron. The hundred page ML Book by Burkov. Introduction to ML 4th edition by Alpaydin. Only deep learning is really better in Python. Advanced statistics and new papers on that realm are much faster integrated to R on the other hand. Deep learning vs adv. Stats For "normal" machine learning use R works as well as Python. R has many packages which might cause confusion compared to Python having pretty much everything in scikit-learn. I'm deciding between these two. My current plan is Computing Systems. I'm a SWE with an interest in ML, but I'm not sure I need to do the ML track to necessarily to reap its benefits. With Computing Systems I can still take 4 of the most appealing ML classes.I can see a lot of overlap, and this is not in the order I'd take them in. When possible, these guides have stuck closely to the views of established Machine Learning engineers and researchers. In other places, the author has forwards their view of things. Please feel free to submit feedback and improvements for these any parts of these guides. 1. Getting Into ML: High Schoolers Guide. 2. A website’s welcome message should describe what the website offers its visitors. For example, “Reddit’s stories are created by its users.” The welcome message can be either a stat...Jun 16, 2023 ... Very little. A lot of data cleaning, summary statistics, A/B testing, slicing n dicing, and then a decent bit of linear modeling and validation ...So even if you go to industry after your PhD, you will be able to learn new technical material efficiently, which is a great skillset. Because yes, your dissertation topic you will probably never use in industry, but you have the ability to absorb new material without formal courses. 6. LegacyAngel • 3 yr. ago.The real learning starts when you begin to absorb someone else's concept then turn it into your own so you can work on your own projects. 4.5) [Optional] There are tons of specialized fields in ML, you should have enough foundations and intuitions to go in more specialized fields. eg computer vision, robotics etc.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 ... I’ve read a lot of posts asking for recommendations for textbooks to learn the math behind machine learning so I figured I’d make a self-study guide that walks you through it all including the recommended subjects and corresponding textbooks. You should have more than enough mathematical maturity to work through ESL and the Deep Learning ... I don't know which rankings you were looking at, but for machine learning research, Tuebingen is one of the best universities in Europe (or world-wide, for that matter). I can't say a lot about the quality of education, since I've not studied there myself.Project. The deployment of ML models in production is a delicate process filled with challenges. You can deploy a model via a REST API, on an edge device, or as as an off-line unit used for batch processing. You can build the deployment pipeline from scratch, or use ML deployment frameworks. In my new mini-series, you'll learn best practices to ...But though machine learning found the hidden oscillations, “only later did we understand them to be the murmurations.” Editor’s Note: Andrew Sutherland, Kyu-Hwan Lee …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 ...Machine learning projects have become increasingly popular in recent years, as businesses and individuals alike recognize the potential of this powerful technology. However, gettin...When you don't understand a concept or don't remember something, stop it, take a book (or open YouTube) and learn about it. It will take time, but it's worth it. If you don't remember anything about linear algebra or calculus, open YouTube and find some video about it. After that, continue with Andrew ng.Buying a used sewing machine can be a money-saver compared to buying a new one, but consider making sure it doesn’t need a lot of repair work before you buy. Repair costs can eat u...Reddit, often referred to as the “front page of the internet,” is a powerful platform that can provide marketers with a wealth of opportunities to connect with their target audienc... No. R is maybe a bit better for explorations, but its productization is rly bad. Python has both. It can be used both for explorations and for developing final product. And its getting even better at both those tasks. Programming in Python since ~2003, using R for machine learning since ~2012. The real learning starts when you begin to absorb someone else's concept then turn it into your own so you can work on your own projects. 4.5) [Optional] There are tons of specialized fields in ML, you should have enough foundations and intuitions to go in more specialized fields. eg computer vision, robotics etc. r/learnmachinelearning: A subreddit dedicated to learning machine learning. Like the title said, I’m working on a research about Sparse Mixture of Experts and need to survey and choose a toolkit to build my research code base. 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 ...How strong are the magnets in an MRI machine? Can they pull a watch of your arm or even more? Learn just how strong MRI magnets are on this page. Advertisement ­The biggest and mos...Secondly, learning and education is not a baby feeding session nor is it a quick hit with the golden solution. It is the pursuit of finding answers and solutions wherever they may be and using many different sources, however lengthy (e.g. a book) or a 13-minute YouTube clip (which you can scrub through to the end by the way, where the ...Speaking towards #2, if you want to solve real world problems by applying machine learning (ML) to well-understood domains and build products around that, that sounds more like an ML engineer. If you want to start doing things that push the frontier, merging many techniques from different areas of ML or solving brand new problems with ML, that ...So I was talking to my advisor on the topic of implicit regularization and he/she said told me, convergence of an algorithm to a minimum norm solution has been one of the most well-studied problem since the 70s, with hundreds of papers already published before ML people started talking about this so-called "implicit regularization phenomenon".. And then he/she said …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 …Sep 26, 2019. Let’s take a walk through the history of machine learning at Reddit from its original days in 2006 to where we are today, including the pitfalls and mistakes made as well …Related Machine learning Computer science Information & communications technology Applied science Formal science Technology Science forward back r/ITCareerQuestions This subreddit is designed to help anyone in or interested in the IT field to …Here are our top picks of Reddit’s machine learning datasets. Best Reddit Datasets for Machine Learning. Cryptocurrency Reddit Comments Dataset: Containing …Now my job is building machine learning models for huge datasets. I’m the old person that the newer engineers come to if they can’t figure something out. I can’t imagine that proofs would ever be an everyday thing in most machine learning programs. I honestly can’t remember the last time I did one. However I use math all the time. A place for beginners to ask stupid questions and for experts to help them! /r/Machine learning is a great subreddit, but it is for interesting articles and news related to machine learning. Here, you can feel free to ask any question regarding machine learning. When you don't understand a concept or don't remember something, stop it, take a book (or open YouTube) and learn about it. It will take time, but it's worth it. If you don't remember anything about linear algebra or calculus, open YouTube and find some video about it. After that, continue with Andrew ng.Hey Reddit, I am sharing a curriculum I created and followed that has helped me transition from a non technical job (marketing) to a career where I am now building deep learning training pipelines, prototyping apps and deploying them online. ... Start by learning how to code, then take Andrew Ng's machine learning course. That's a great start.Hello guys, I am new to reddit and to machine learning as well. Just yesterday I finished a Hackathon where me and my team made an image recognition AI using MobileNetV2. I don't …Check out Ace the Data Science Interview — it covers statistics, machine learning, and open-ended ML case study interview questions. The book focuses more on the foundations of the field + interview questions related to classical ML techniques, rather than something like reinforcement learning, because honestly, that's what 90% of Data Science & ML … Hands-on Machine Learning with Scikit-Learn, Keras, and TensorFlow: Concepts, Tools, and Techniques to Build Intelligent Systems (2nd Edition) (Aurélien Géron) Approaching (Almost) Any Machine Learning Problem (Abhishek Thakur) Feel free to comment below and add new book recommendations. Honest opinion: Except Andriy Burkov (not-really ... 1)General Python programming. Usually leetcode type questions about implementing something in Python, or questions about Python's features. Also very helpful to know mundane stuff like pulling data from APIs, formatting strings, and so on. 2)General Machine Learning and statistics questions. These tended to be theoretical. 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 … We evaluate the Data Interpreter on various data science and real-world tasks. Compared to open-source baselines, it demonstrated superior performance, exhibiting significant improvements in machine learning tasks, increasing from 0.86 to 0.95. Additionally, it showed a 26% increase in the MATH dataset and a remarkable 112% improvement in open ... 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 few tricks you can do with conda to make life a bit simpler, here is my run-done: Use miniconda instead of anaconda. Use conda-forge channel instead of defaults for the latest packages. (My usual channel priority is pytorch > conda-forge > defaults ) Never install packages in base.There are many good courses on machine learning available online. Some of the most popular ones include: Skillpro's Machine Learning course by by Juan Galvan: skillpro.io. Coursera's Machine Learning course by Andrew Ng: coursera.org. Fast.ai's Practical Deep Learning for Coders course: course.fast.ai.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.Data mining: A human looking for something in a large dataset. Machine learning: Computer programs (AIs) that learn from a large dataset to produce similar, original results. EgNotaEkkiReddit. • 3 yr. ago. They are related, but not all data mining is ML and not all ML is data mining. Data Mining is a wide field that involves finding ...So naturally, I don't really know where to begin this journey. I've researched for resources and roadmaps to learn machine learning and created my own basic roadmap just to get started. Math - 107 hours. Single-Variable Calculus - MIT ~ 29 hours. Multi-Variable Calculus - MIT ~ 29 hours.The Neural Networks and Deep Learning book does a good job explaining the basic math behind Neural Networks. If you can understand the formulas and code for a basic neural network you are on the right track. ML isn't just deep learning though. The free Intro to Machine Learning course on Udacity is good for math related to validating your model ...This brought me to the AMD MI25, and for $100 USD it was surprising what amount of horsepower, and vRAM you could get for the price. Hopefully my write up will help someone in the machine learning community. Let me know if you have any questions or need any help with a GPU compute setup. I'd be happy to assist! Furthermore, it is a necessity when constructing models based on optimization techniques for machine learning problems (such as logistic regression for multi-class classification), which rely heavily on first principles in mathematics (often involving derivatives) but can provide good results through the explicit minimization of a function. Michaels is an art and crafts shop with a presence in North America. The company has been incredibly successful and its brand has gained recognition as a leader in the space. Micha...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 ...Jun 7, 2022 ... Reddit, Inc. © 2024. All rights reserved. r/learnmachinelearning. Join. Learn Machine Learning. A subreddit dedicated to learning machine ...Reddit is a popular social media platform that has gained immense popularity over the years. With millions of active users, it is an excellent platform for promoting your website a...May 30, 2023 ... You can learn machine learning without being strong in math by focusing on practical implementations, utilizing high-level libraries, ...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 ...

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machine learning reddit

The real learning starts when you begin to absorb someone else's concept then turn it into your own so you can work on your own projects. 4.5) [Optional] There are tons of specialized fields in ML, you should have enough foundations and intuitions to go in more specialized fields. eg computer vision, robotics etc. In those cases, the language choice should not be driven by what language has the most advanced libraries. And my gut feeling is that people rush to Python when in fact for their context (and assuming they already know the Java ecosystem and not so much the Python one) the ROI won't be good. wildjokers. •. When possible, these guides have stuck closely to the views of established Machine Learning engineers and researchers. In other places, the author has forwards their view of things. Please feel free to submit feedback and improvements for these any parts of these guides. 1. Getting Into ML: High Schoolers Guide. 2. If you are looking to start your own embroidery business or simply want to pursue your passion for embroidery at home, purchasing a used embroidery machine can be a cost-effective ... Murphy's Machine Learning: a Probabilistic Perspective; MacKay's Information Theory, Inference and Learning Algorithms FREE; Goodfellow/Bengio/Courville's Deep Learning FREE; Nielsen's Neural Networks and Deep Learning FREE; Graves' Supervised Sequence Labelling with Recurrent Neural Networks FREE; Sutton/Barto's Reinforcement Learning: An ... 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 problems posed by the lack of a dedicated rating system. I thought this would be an interesting problem to apply Machine Learning and Python automation to.A place for beginners to ask stupid questions and for experts to help them! /r/Machine learning is a great subreddit, but it is for interesting articles and news related to machine learning. Here, you can feel free to ask any question regarding machine learning.I would disagree with Python's library for Machine learning applications. Matlab has a very extensive statistical library with many machine learning algorithms readily available. With python you will probably be able to find many of them, but you will have to work for it. Try Hidden Markov models in Python or Random Forests or Auto regressive ...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.Data mining: A human looking for something in a large dataset. Machine learning: Computer programs (AIs) that learn from a large dataset to produce similar, original results. EgNotaEkkiReddit. • 3 yr. ago. They are related, but not all data mining is ML and not all ML is data mining. Data Mining is a wide field that involves finding ...Hello. I am very interested in learning ML and AI. I did take a basics course still in the beginning of university, and I would like to deepen my knowledge on this topic, which I find deeply … 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. r/learnmachinelearning: A subreddit dedicated to learning machine learning. Like the title said, I’m working on a research about Sparse Mixture of Experts and need to survey and choose a toolkit to build my research code base. When you don't understand a concept or don't remember something, stop it, take a book (or open YouTube) and learn about it. It will take time, but it's worth it. If you don't remember anything about linear algebra or calculus, open YouTube and find some video about it. After that, continue with Andrew ng. ADMIN MOD. [D] ICLR 2024 decisions are coming out today. Discussion. We will know the results very soon in upcoming hours. Feel free to advertise your accepted and rant about your rejected ones. Edit 2: AM in Europe right now and still no news. Technically the AOE timezone is not crossing Jan 16th yet so in PCs we trust guys (although I ... I also do a bunch of ML research in Python, as the deep learning stack (particularly for distributed problems) is just not there on the JVM. The Python ecosystem still has better data frames & plotting, as well as the aforementioned distributed deep learning stack, but you can do many things in scikit-learn just as well in Java.There's really a few different things you could learn with AWS. Machine Learning training using GPU instances. This will likely be the easiest to learn, and it essentially just means allocating a server with a GPU (usually something like a K80 or P100 for $1-3/hr, prorated to the minute), setting it up, and training on it..

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