Machine learning reddit - To become a Machine Learning Engineer, one should follow a structured path that combines education, hands-on experience, and continuous learning. Begin by acquiring a strong foundation in mathematics, statistics, and computer science, as these are fundamental to understanding the underlying principles of machine learning.

 
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A Roadmap for Beginners in Machine Learning with many valuable resources for any ML workers or enthusiasts + how to stay up-to-date with news This guide is intended for anyone having zero or a small background in programming, maths, and machine learning. There is no specific order to follow, but a classic path would be from top to bottom. Tips for Learning AI: Start with the basics: Learn the necessary math, programming, and ML concepts. Work on projects: Apply your knowledge to real-world problems to solidify your understanding. Join a community: Engage with like-minded individuals to share ideas, resources, and support.Here is the list of books that I gathered to add: The Elements of Statistical Learning. Second Edition. Trevor Hastie, Robert Tibshirani, and Jerome Friedman. Reinforcement learning, An Introduction. Second Edition. Richard S. Sutton and Andrew G. …For example, perhaps take a walk through a park, take pictures of all of the plants of one species, and see if you can use machine learning that can figure out things like degree of branching, age, pest prevalence, etc., from images of the plant. Undergrad ML TA. I suggest you find a researcher at your university, preferably in biology ...In order to train a machine, you'll typically be using many multiple such training vectors. This creates a series of vectors next to each other, which is (drum roll) a matrix. If you are doing neural networks, you may have something like m training examples, each of which is a vector of length n. Then you have at least one layer of r hidden ...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.If you’re itching to learn quilting, it helps to know the specialty supplies and tools that make the craft easier. One major tool, a quilting machine, is a helpful investment if yo...The performance of machine learning models heavily depends on the quality of input data, yet real-world applications often encounter various data-related challenges. ... Link posts must include context (ie: a comment in the reddit …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 ...Related Machine learning Computer science Information & communications technology Applied science Formal science Technology Science forward back r/nvidia A place for everything NVIDIA, come talk about news, drivers, rumors, GPUs, the industry, show-off your build and more. 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. Intel continues to snap up startups to build out its machine learning and AI operations. In the latest move, TechCrunch has learned that the chip giant has acquired Cnvrg.io, an Is...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. 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. These for me are the best books to start with, then you move to more complex and funny books like Murphy or Bishop. 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 …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. 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. 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 ... 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...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.Related Machine learning Computer science Information & communications technology Applied science Formal science Technology Science forward back. r/cosplay. r/cosplay /r/cosplay: is a community where Cosplayers of all ages, and talent levels can post their work. Rules are strictly enforced , no NSFW, advertising, or pay sites of any kind ...Are you a programmer looking to take your tech skills to the next level? If so, machine learning projects can be a great way to enhance your expertise in this rapidly growing field...350K subscribers in the learnmachinelearning community. A subreddit dedicated to learning machine learning. Premium Explore Gaming. Valheim ... View community ranking In the Top 1% of largest communities on Reddit. 7 Best Free Machine Learning Courses Online …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. •.Yes. AI is hard. Right now, the people doing real AI stuff are people with PhDs or PhD students. Once the hard part of AI is done, it's not that hard for any dumb developer to wrap an app around the model to do some neat things with it. It's the developing and training the model that is the hard part.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. Hi all, I following many of these channels of youtube, some of these are really great! I prefer Daniel Bourke, he is very motivating! I am building-up my own youtube channel for Data Science, Machine Learning, Deep Learning and related topics - technical videos and advices on the daily routine. I compiled a list of machine learning courses with video lectures. The list includes some introductory courses to cover all the basics of machine learning. More interesting might be the more advanced and graduate-level courses, that are typically harder to find. I will continue to update this list, as I find suitable material.Specialization - 3 course series. The Machine Learning Specialization is a foundational online program created in collaboration between DeepLearning.AI and Stanford Online. This …I'm interested in learning machine learning and data science and am thinking about trying to get a career as an engineer. I don't have a computer science degree though. ... CSCareerQuestions protests in solidarity with the developers who made third party reddit apps. reddit's new API changes kill third party apps that offer accessibility ...Intel continues to snap up startups to build out its machine learning and AI operations. In the latest move, TechCrunch has learned that the chip giant has acquired Cnvrg.io, an Is... ClydeMachine. •. A machine learning engineer will be expected to apply their knowledge of data processing, models, statistics, etc. to making some application/service that will provide benefit. If you can't code beyond what you've described, you'll need to bridge that gap if you're to pass any ML engineering interview. 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.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 ...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 ...20th_Century_Flute • 7 yr. ago. "The training process of a machine learning algorithm is the optimization of the parameter's model so the desired output (which is the output we know from the data), and the actual output (which is the output predicted …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.I compiled a list of machine learning courses with video lectures. The list includes some introductory courses to cover all the basics of machine learning. More interesting might be the more advanced and graduate-level courses, that are typically harder to find. I will continue to update this list, as I find suitable material.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 there, they're a great way to catch up on the most up-to-date research in the field. ... This subreddit is temporarily closed in protest of Reddit killing third ... Algorithms, and an intro AI class is the standard. You should take Andrew Ng's course on machine learning to jumpstart your practical machine learning experience and then dive deep into tensorflow. It's not the job of the University to teach you practical machine learning applications, it's their job to teach theory. The post says "future." - Machine learning is about minimizing loss. In deep learning it propagates this through linear, lstm, and conv layers. - However, the differentiable programming ecosystem will move beyond these rigid confines to minimize loss in any function. Try the Stanford class on machine learning on YouTube, it's also by Andrew Ng but is more in depth, has more maths and IMO is all around better. Coursera Machine Learning is good but I feel the notation on neural networks is somewhat convoluted and it's taught in Matlab/Octave (which can be alright depending on your background, but it was a bit ... 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. Build a TensorFlow Image Classifier in 5 Min video. Deep Learning cheat-sheets covering Stanford's CS 230 Class cheat-sheet. cheat-sheets for AI, Neural Nets, ML, Deep Learning & Data Science cheat-sheet. Tensorflow-Cookbook cheat-sheet. Deep Learning Papers Reading Roadmap list ★. Papers with Code list ★.After some digging, I narrowed it down to these two candidates: Linear Algebra and Optimization for Machine Learning: A Textbook by Charu C. Aggarwal. Introduction to Linear Algebra by Gilbert Strang. Would very much appreciate to hear your experience with either of them! EDIT: Wow, thank you guys! It's a rendering technique that uses differentiable equations. Of course this is used in machine learning, but the DR itself doesn't have any predictions or "intelligence". Neural rendering is rendering using deep learning. So, of course it should need to use some form of differentiable rendering, but it goes a bit farther. 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. This subreddit is temporarily closed in protest of Reddit killing third party apps, see /r/ModCoord and /r/Save3rdPartyApps for more information. ... The dataset also has the projects tag so you can search for machine learning/deep learning/etc. The project has no forks, redundant file and were checked to be software projects ...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. •.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 ...With 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.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.Jul 10, 2023 ... r/MachineLearning Current search is within r/MachineLearning. Remove r/MachineLearning filter and expand search to all of Reddit. TRENDING ...The post says "future." - Machine learning is about minimizing loss. In deep learning it propagates this through linear, lstm, and conv layers. - However, the differentiable programming ecosystem will move beyond these rigid confines to minimize loss in any function. r/MachineLearning. This subreddit is temporarily closed in protest of Reddit killing third party apps, see /r/ModCoord and /r/Save3rdPartyApps for more information. [R] Towards understanding deep learning with the natural clustering prior (PhD thesis) r/math. This subreddit is for discussion of mathematics. 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.Symbolic reasoning consists of controlling specific kinds of discrete dynamic systems, and in that sense it isn’t any different from any other ML problem; you still need a state space embedding and algorithms for choosing actions. Although it’s a difficult area of research, it does not exist in opposition to deep learning.In 2023, Transformers made significant breakthroughs in time-series forecasting! For example, earlier this year, Zalando proved that scaling laws apply in time-series as well. Providing you have large datasets ( And yes, 100,000 time series of M4 are not enough - smallest 7B Llama was trained on 1 trillion tokens!This subreddit is temporarily closed in protest of Reddit killing third party apps, see /r/ModCoord and /r/Save3rdPartyApps for more information. ... The dataset also has the projects tag so you can search for machine learning/deep learning/etc. The project has no forks, redundant file and were checked to be software projects ...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.Aug 12, 2021 ... r/MachineLearning Current search is within r/MachineLearning. Remove r/MachineLearning filter and expand search to all of Reddit. TRENDING ... 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. 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.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...ML is applied stats. ML has a stronger focus on prediction and not so much about describing data distributions and metrics. Seems to contradict itself by showing a diagram where statistics and machine learning do not intersect - and then going on …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...350K subscribers in the learnmachinelearning community. A subreddit dedicated to learning machine learning. Premium Explore Gaming. Valheim ... View community ranking In the Top 1% of largest communities on Reddit. 7 Best Free Machine Learning Courses Online …im currently learning with the kaggle courses and udemy Machine Learning A-Z Any Recommendations on better courses or are these decent Related Topics Machine learning Computer science Information & communications technology Technology comments sorted by ... Reddit . reReddit: Top posts of February 17, 2022. 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. 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 secret to improving the predictive ability of machine learning is the sometimes deceptively obvious. The answer is feature engineering. You and cardiologist (in this case) need to think about what clues does a human use for making this decision that is not directly available in all the data that you are providing and then transform the data as necessary to make this information …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.r/learnmachinelearning: A subreddit dedicated to learning machine learning. Editing Guide and Rules. Mark a beginner-friendly resources by formatting it with bold.A beginner-friendly resource should specifically be designed for beginners, or its materials should be blatantly easy enough for beginners to pick upReddit 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...Intel continues to snap up startups to build out its machine learning and AI operations. In the latest move, TechCrunch has learned that the chip giant has acquired Cnvrg.io, an Is... 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. 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 ...View community ranking In the Top 1% of largest communities on Reddit [D] Advanced resources for ML theory/math. So I have been working in ML for the past 3 years as a researcher and now PhD candidate, and though I have an understanding of intermediate level of the math behind most algorithms. ... There seems to be a lot of overlap between the ...Hello, I'm a prospective Triton looking at what UC San Diego offers. I originally planned on a computer science major, but I was rejected from the department and ultimately chose this major (and looking into it more, this was something I was originally interested in (machine learning and artificial intelligence to create fully autonomous machines).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 …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 ...r/learnmachinelearning: A subreddit dedicated to learning machine learning. Editing Guide and Rules. Mark a beginner-friendly resources by formatting it with bold.A beginner-friendly resource should specifically be designed for beginners, or its materials should be blatantly easy enough for beginners to pick upSome of the benefits to science are that it allows researchers to learn new ideas that have practical applications; benefits of technology include the ability to create new machine...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 …Sep 12, 2021 ... Deep learning is a subset of ML that use variants of Neural Network model. Other than deep network there are decision trees, linear regression, ...

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 …. 9 month world cruise

machine learning reddit

Offer 1: Data Scientist at a big Oil and Gas Corp. The job profile involves research in Process Mining. Offer 2: Machine Learning Engineer at a popular Analytics Consulting Firm. The profile involves deploying machine learning and deep learning models using Kubernetes, Heroku, Dask, etc. Both options are at my choice of location and Offer 2 is ...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.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.The secret to improving the predictive ability of machine learning is the sometimes deceptively obvious. The answer is feature engineering. You and cardiologist (in this case) need to think about what clues does a human use for making this decision that is not directly available in all the data that you are providing and then transform the data as necessary …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...Work with language data, transaction data in tables, and even small-sample qualitative surveys. As you progress in your career you'll likely get more specialized but it's important to have a broad base of fundamental skills and analytical insights. - Keep learning. This field constantly changing. 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 ... Here’s how to get started with machine learning algorithms: Step 1: Discover the different types of machine learning algorithms. A Tour of Machine Learning Algorithms. Step 2: Discover the foundations of machine learning algorithms. How Machine Learning Algorithms Work. Parametric and Nonparametric Algorithms. If you only plan on using other people's fully developed code, you probably don't need to learn the math. But then you really don't know machine learning then, you just understand how to use software libraries and abstractions on top of machine learning algorithms. Although I personally enjoy learning to understand the mathematics behind ML, I ... r/learnmachinelearning. • 1 yr. ago. DeF_uIt. Is ML career worth it? Firstly I stuck with web backend development because of the huge pool of job openings and high payment. But then I'v got interested in machine learning (Deep learning, RL, CV actually all of that look attractive to me). After some digging, I narrowed it down to these two candidates: Linear Algebra and Optimization for Machine Learning: A Textbook by Charu C. Aggarwal. Introduction to Linear Algebra by Gilbert Strang. Would very much appreciate to hear your experience with either of them! EDIT: Wow, thank you guys!im currently learning with the kaggle courses and udemy Machine Learning A-Z Any Recommendations on better courses or are these decent Related Topics Machine learning Computer science Information & communications technology Technology comments sorted by ... Reddit . reReddit: Top posts of February 17, 2022.20th_Century_Flute • 7 yr. ago. "The training process of a machine learning algorithm is the optimization of the parameter's model so the desired output (which is the output we know from the data), and the actual output (which is the output predicted … Related Machine learning Computer science Information & communications technology Technology forward back r/learnpython Subreddit for posting questions and asking for general advice about your python code. Hands-on Deep Learning Course. Check out this new hands-on course on DL being offered by Mitesh M. Khapra and Pratyush Kumar from IIT Madras, through their start-up " One Fourth Labs "'. For example, in the first offering, students will learn how to automatically translate signboards from one Indian language to another. Here we go again... Discussion on training model with Apple silicon. "Finally, the 32-core Neural Engine is 40% faster. And M2 Ultra can support an enormous 192GB of unified memory, which is 50% more than M1 Ultra, enabling it to do things other chips just can't do. For example, in a single system, it can train massive ML workloads, like large tra Related Machine learning Computer science Information & communications technology Technology forward back r/OMSA The Subreddit for the Georgia Tech Online Master's in Analytics (OMSA) program caters for aspiring applicants and those taking the edX MicroMasters programme. 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. Deep Learning Specialization on Coursera. 5 courses and you pay $50/month until you finish them. Echoing previous comments, I would not take this for the “certificate” but for the knowledge. If you need help getting started on projects, take these courses then …Yes, ML is very much possible to be self taught, with the amount of online blogs and free courses on Coursera, it is very much possible. You can check out the popular Andrew NG's Machine Learning course from Coursera and then move on to deep learning.ai course. Another very detailed and in depth ML course will be from NPTEL..

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