Cheat Sheets for Machine Learning and Data Science
19
2022-10-12T13:10:11.660Z
2024-08-21T23:36:37.068Z
Published
What frustrates Data Scientists in Machine Learning projects?
My bloody experience that worked for an AI startup.
14
2022-10-03T07:50:47.917Z
2024-06-28T11:31:06.828Z
Published
Python Data Science Handbook | Python Data Science Handbook
Free Book
13
2022-10-03T07:17:17.157Z
2024-08-28T19:56:08.608Z
Published
An Introduction to VisiData — An Introduction to VisiData
15
2022-10-03T07:17:29.655Z
2024-09-04T13:31:14.369Z
Published
r/datascience - Imposter syndrome can really feel overwhelming.
63 votes and 16 comments so far on Reddit
20
2022-10-03T07:35:41.223Z
2024-09-04T11:36:05.041Z
Published
Data in Wonderland
Explores communication with data in various forms through seminal and cutting-edge ideas in writing, data analyses, and visualzation.
10
2022-10-03T07:16:34.851Z
2024-06-27T09:36:23.735Z
Published
PyTorch Internals (how pytorch works from the inside)
PyTorch Internals (how pytorch works from the inside)
23
2022-10-03T07:13:32.058Z
2024-09-06T01:07:35.791Z
Published
Introduction to GPUs: CUDA
9
2022-10-03T07:14:22.415Z
2024-06-27T10:26:11.581Z
Published
How to fine tune VERY large model if it doesn’t fit on your GPU
Memory-efficient techniques to defeat the problem of “CUDA memory error..” during training
17
2022-10-03T07:14:42.544Z
2024-09-03T00:16:27.022Z
Published
GitHub - cybertronai/gradient-checkpointing: Make huge neural nets fit in memory
Make huge neural nets fit in memory. Contribute to cybertronai/gradient-checkpointing development by creating an account on GitHub.
10
2022-10-03T07:15:20.742Z
2024-08-20T12:14:36.771Z
Published
Gradient Accumulation in PyTorch
Increasing batch size to overcome memory constraints
10
2022-10-03T07:15:49.024Z
2024-09-04T15:55:35.368Z
Published
Python for Data Analysis, 3E
Free Book
12
2022-10-03T07:16:49.830Z
2024-09-04T02:49:35.877Z
Published
Fundamentals of Data Visualization
Free Book
6
2022-10-03T07:17:42.273Z
2024-09-04T09:00:08.928Z
Published
Machine Learning Operations (MLOps): Overview, Definition, and Architecture
The final goal of all industrial machine learning (ML) projects is to develop
ML products and rapidly bring them into production. However, it is highly
challenging to automate and operationalize ML products and thus many ML
endeavors fail to deliver on their expectations. The paradigm of Machine
Lea…
12
2022-10-03T07:16:13.996Z
2024-09-03T15:41:05.721Z
Published
MLU-Explain
Visual explanations of core machine learning concepts.
11
2022-10-03T07:17:07.365Z
2024-09-04T09:58:01.081Z
Published
GitHub - mryab/efficient-dl-systems: Efficient Deep Learning Systems course materials (HSE, YSDA)
Efficient Deep Learning Systems course materials (HSE, YSDA) - GitHub - mryab/efficient-dl-systems: Efficient Deep Learning Systems course materials (HSE, YSDA)
49
2022-10-03T07:15:35.555Z
2024-08-30T13:36:12.239Z
Published
OpenML
OpenML is an open platform for sharing datasets, algorithms, and experiments - to learn how to learn better, together.
10
2022-10-03T07:18:08.564Z
2024-06-27T20:09:08.331Z
Published
Hugging Face – The AI community building the future.
We’re on a journey to advance and democratize artificial intelligence through open source and open science.
101
2022-10-03T07:18:25.518Z
2024-08-13T15:41:57.853Z
Published
Inference Optimization for Convolutional Neural Networks
Quantization and fusion for faster inference
6
2022-10-03T07:18:41.078Z
2024-09-04T01:17:23.409Z
Published
Build your open-source MLOps stack | MyMLOps
Explore 50+ most popular open-source MLOps tools. Build your own stack based on our template.
65
2022-10-03T07:18:52.646Z
2024-09-02T06:53:18.570Z
Published
Drivendata
Drivendata
7
2022-10-03T07:19:11.420Z
2024-08-21T09:24:50.816Z
Published
Part 1: Key Concepts in RL — Spinning Up documentation
8
2022-10-03T07:19:42.242Z
2024-09-06T12:58:35.179Z
Published
Introduction to Machine Learning Interviews Book · MLIB
20
2022-10-12T13:14:47.437Z
2024-04-18T18:54:00.056Z
Published
Neural Fields: Home
7
2022-10-03T07:39:26.602Z
2024-08-20T19:45:28.932Z
Published
paulbridger.com
Deep dive machine learning articles with a focus on solving the hard problems in production engineering.
7
2022-10-03T07:39:54.878Z
2024-09-03T04:06:12.511Z
Published
Learnings from Google’s comprehensive research into activation functions
This is a field that is heating up. Keep your eyes out on it
7
2022-10-03T07:40:22.171Z
2024-09-04T05:16:56.937Z
Published
14.4. Anchor Boxes — Dive into Deep Learning 1.0.0-alpha1.post0 documentation
6
2022-10-03T07:41:19.185Z
2024-08-20T21:22:14.235Z
Published
Interpreting the Latent Space of GANs for Semantic Face Editing
Despite the recent advance of Generative Adversarial Networks (GANs) in
high-fidelity image synthesis, there lacks enough understanding of how GANs are
able to map a latent code sampled from a random distribution to a
photo-realistic image. Previous work assumes the latent space learned by GANs
foll…
19
2022-10-03T07:41:38.876Z
2024-09-03T05:39:53.071Z
Published
The Principles of Deep Learning Theory
This book develops an effective theory approach to understanding deep neural
networks of practical relevance. Beginning from a first-principles
component-level picture of networks, we explain how to determine an accurate
description of the output of trained networks by solving layer-to-layer
iterati…
9
2022-10-03T07:42:07.458Z
2024-09-03T17:38:56.152Z
Published
You Only Learn One Representation: Unified Network for Multiple Tasks
People ``understand″ the world via vision, hearing, tactile, and also the
past experience. Human experience can be learned through normal learning (we
call it explicit knowledge), or subconsciously (we call it implicit knowledge).
These experiences learned through normal learning or subconsciously…
6
2022-10-03T07:42:16.311Z
2024-09-02T17:59:10.557Z
Published
Few-Shot Forecasting of Time-Series with Heterogeneous Channels
Learning complex time series forecasting models usually requires a large
amount of data, as each model is trained from scratch for each task/data set.
Leveraging learning experience with similar datasets is a well-established
technique for classification problems called few-shot classification. Howe…
12
2022-10-03T07:42:26.126Z
2024-08-31T12:07:00.720Z
Published
Information Theory Basic for Machine Learning & Deep Learning
Information theory
6
2022-10-03T07:42:38.626Z
2024-08-21T23:09:20.337Z
Published
Efficient Transformers: A Survey
Transformer model architectures have garnered immense interest lately due to
their effectiveness across a range of domains like language, vision and
reinforcement learning. In the field of natural language processing for
example, Transformers have become an indispensable staple in the modern deep
le…
8
2022-10-03T07:42:49.661Z
2024-09-03T18:22:03.768Z
Published
Generalized Out-of-Distribution Detection: A Survey
Out-of-distribution (OOD) detection is critical to ensuring the reliability
and safety of machine learning systems. For instance, in autonomous driving, we
would like the driving system to issue an alert and hand over the control to
humans when it detects unusual scenes or objects that it has never…
8
2022-10-03T07:43:04.458Z
2024-09-04T04:25:04.012Z
Published
VOS: Learning What You Don’t Know by Virtual Outlier Synthesis
Out-of-distribution (OOD) detection has received much attention lately due to
its importance in the safe deployment of neural networks. One of the key
challenges is that models lack supervision signals from unknown data, and as a
result, can produce overconfident predictions on OOD data. Previous ap…
6
2022-10-03T07:43:16.657Z
2024-09-02T16:32:23.224Z
Published
Model Assertions for Monitoring and Improving ML Models
ML models are increasingly deployed in settings with real world interactions
such as vehicles, but unfortunately, these models can fail in systematic ways.
To prevent errors, ML engineering teams monitor and continuously improve these
models. We propose a new abstraction, model assertions, that adap…
6
2022-10-03T07:43:32.092Z
2024-08-28T15:56:23.965Z
Published
Bounding Box Regression with Uncertainty for Accurate Object Detection
Large-scale object detection datasets (e.g., MS-COCO) try to define the
ground truth bounding boxes as clear as possible. However, we observe that
ambiguities are still introduced when labeling the bounding boxes. In this
paper, we propose a novel bounding box regression loss for learning bounding
b…
26
2022-10-03T07:43:43.348Z
2024-09-03T11:19:17.257Z
Published
Masked Visual Pre-training for Motor Control
Self-supervised visual pre-training from real-world images is effective for learning motor control tasks from pixels.
3
2022-10-03T07:44:05.000Z
2024-06-27T22:27:23.190Z
Published
I Deep Faked Myself In Every Meeting For A Whole Week
Not even one person noticed.
6
2022-10-03T07:44:32.296Z
2024-09-03T10:44:14.290Z
Published
The Next Big Challenge for Data is Organizational - Locally Optimistic
We have the tools we need to build the data world we want to live in. Now we just need a little organization. It’s time to bring the assembly line to data.
5
2022-10-03T07:46:38.756Z
2024-06-28T11:07:22.272Z
Published
Data team structure: embedded or centralised?
Embedded data teams are closer to business problems but ownership of what to do when data goes wrong is complicated
8
2022-10-03T07:46:57.048Z
2024-09-04T09:43:06.100Z
Published
The Secret of Delivering Machine Learning to Production
The vast majority of Machine Learning (ML) projects FAIL.
6
2022-10-03T07:47:20.123Z
2024-09-03T11:04:19.733Z
Published
Home - Made With ML
Learn how to responsibly deliver value with ML.
7
2022-10-03T07:47:52.857Z
2024-09-04T01:33:01.201Z
Published
CS 329S: Machine Learning Systems Design
4
2022-10-03T07:48:21.344Z
2024-09-05T15:51:32.942Z
Published
What I’ve learned about documentation for data teams
I used to be a hypocrite. There are numerous records of me in Slack complaining about other people’s lack of documentation. It would not be hard to track down the time I was venting furiously to a colleague about the non-existing API docs for a tool I was working to build out analytics for on a tigh…
14
2022-10-03T07:48:41.536Z
2024-09-03T04:22:45.646Z
Published
Andrej Karpathy
Blog of Sr. Director of AI at Tesla
8
2022-10-05T07:51:37.871Z
2024-09-04T16:27:16.730Z
Published
MLOps Is a Mess But That’s to be Expected
I discuss the messy state of MLOps today and how we are still in the early phases of a broader transformation to bring machine learning value to enterprises globally.
7
2022-10-03T07:49:21.985Z
2024-09-03T13:20:21.753Z
Published
Labeling and Crowdsourcing - Data-centric AI Resource Hub
Asking someone to perform an annotation task, such as labeling an image with text or classifying it into a certain category, may seem simple. However, the huge number of different interpretations of the task makes it difficult for machine learning practitioners to effectively source new training dat…
5
2022-10-03T07:49:11.344Z
2024-01-20T04:38:26.645Z
Published
Why 85% of Machine Learning Projects Fail - How to Avoid This – IIoT World
According to Gartner, 85% of Machine Learning (ML) projects fail. Worse yet, the research company predicts that this trend will continue through 2022. Does this point to some weakness in ML itself? No, it points to weaknesses in the way […]
8
2022-10-03T07:51:03.502Z
2024-06-27T23:46:04.889Z
Published
[ 李宏毅教授演講 ] 今天的人工智慧 其實沒有你想的那麼厲害
36
2022-10-03T07:51:23.812Z
2024-09-06T11:13:01.247Z
Published
labml.ai Annotated PyTorch Paper Implementations
46
2022-10-03T09:50:38.123Z
2024-09-02T17:03:59.330Z
Published
Machine Learning Papers
Find latest and trending machine learning papers
9
2022-10-03T09:50:49.162Z
2024-09-02T15:58:07.758Z
Published
Aman’s AI Journal • Papers List
Aman’s AI Journal | Course notes and learning material for Artificial Intelligence and Deep Learning Stanford classes.
9
2022-10-03T09:50:59.757Z
2024-09-03T15:46:05.734Z
Published
Deep Learning Monitor - Find new Arxiv papers, tweets and Reddit posts for you
Things happening in deep learning: arxiv, twitter, reddit
29
2022-10-03T09:51:07.179Z
2024-09-03T22:56:09.376Z
GitHub - cybertronai/gradient-checkpointing: Make huge neural nets fit in memory
Make huge neural nets fit in memory. Contribute to cybertronai/gradient-checkpointing development by creating an account on GitHub.