Machine learning books and papers – Telegram
2301.11696.pdf
871.9 KB
SLCNN: Sentence-Level Convolutional Neural Network for Text Classification

Ali Jarrahi, Leila Safari , Ramin Mousa

abstract: Text classification is a fundamental task in natural language processing (NLP). Several recent studies show the success of deep learning on text processing. Convolutional neural network (CNN), as a popular deep learning model, has shown remarkable success in the task of text classification. In this paper, new baseline models have been studied for text classification using CNN. In these models, documents are fed to the network as a three-dimensional tensor representation to provide sentence-level analysis. Applying such a method enables the models to take advantage of the positional information of the sentences in the text. Besides, analysing adjacent sentences allows extracting additional features. The proposed models have been compared with the state-of-the-art models using several datasets.
Author: @Raminmousa

@Machine_learn
👍6
إِنَّا لِلَّٰهِ وَإِنَّا إِلَيْهِ رَاجِعُونَ
🖤
@Machine_learn
💔44🤯3🔥1
STEPS: Joint Self-supervised Nighttime Image Enhancement and Depth Estimation (ICRA 2023)

🖥 Github: https://github.com/ucaszyp/steps

Paper: https://arxiv.org/abs/2302.01334v1

➡️ Dataset: https://paperswithcode.com/dataset/nuscenes

@Machine_learn
😍1
OReilly.Fundamentals.of.Deep.Learning.pdf
15.9 MB
Fundamentals of Deep Learning
Designing Next-Generation Machine Intelligence Algorithms
#Book #DL
@Machine_learn
4👍4
Internet_of_Things_Security_Architectures_and_Security_Measures.pdf
4.8 MB
Internet of Things Security Architectures and Security Measures
#Book #iot
@Machine_learn
👍4
Paper_artworks_2 [Autosaved] - Version final_2 3.pptx
3.3 MB
AI powered Traffic Flow Characterization, Monitoring and Prediction
Ramin Mousa
#Slide
@Machine_learn
👍5
🚀 Slapo: A Schedule Language for Large Model Training

Slapo is a schedule language for progressive optimization of large deep learning model training.

pip3 install slapo

🖥 Github: https://github.com/awslabs/slapo

⭐️Paper: https://arxiv.org/abs/2302.08005v1

💻 Docs: https://awslabs.github.io/slapo/

@Machine_learn
👍2
Manning.Inside.Deep.Learning.pdf
78.2 MB
Inside Deep Learning: Math, Algorithms, Models (2022)
#book #DL

@Machine_learn
4👍2
Core.ML.Survival.Guide.pdf
6.9 MB
Core ML Survival Guide: More than you ever wanted to know about mlmodel files and the Core ML and Vision APIs (2020)
#Book #ML
@Machine_leaen
4👍1
📡 Learning Visual Representations via Language-Guided Sampling

New approach deviates from image-text contrastive learning by relying on pre-trained language models to guide the learning rather than minimize a cross-modal similarity.



🖥 Github: https://github.com/mbanani/lgssl

⭐️Paper: https://arxiv.org/abs/2302.12248v1

Pre-trained Checkpoints: https://www.dropbox.com/sh/me6nyiewlux1yh8/AAAPrD2G0_q_ZwExsVOS_jHQa?dl=0

💻 Dataset : https://paperswithcode.com/dataset/redcaps

@Machine_learn
👍5
🖥 pyribs: A Bare-Bones Python Library for Quality Diversity Optimization

A bare-bones Python library for quality diversity optimization.

🖥 Github: https://github.com/icaros-usc/pyribs

Paper: https://arxiv.org/abs/2303.00191v1

⭐️ Dataset: https://paperswithcode.com/dataset/quality-diversity-benchmark-suite

@Machine_learn
👍21
what you know about chatGPT?
Do you want us to give you information about this on the channel?
Anonymous Poll
81%
👍
19%
👎
👍1
OReilly.Python.in.a.Nutshell.pdf
5.8 MB
Python in a Nutshell: A Desktop Quick Reference, 4th Edition (2023)
#python #2023 #book
@Machine_learn
👍3🔥1
Hariom_Tatsat,_Sahil_Puri_,_Brad_Lookabaugh_Machine_Learning_and.pdf
13.6 MB
Machine Learning & Data Science Blueprints for Finance From Building
Trading Strategies to Robo-Advisors Using Python
Authors: Hariom Tatsat, Sahil Puri & Brad Lookabaugh (2021)
#ML #book
@Machin_learn
7🔥1
Packt.Agile.Model-Based.Systems.Engineering.Cookbook.pdf
35.4 MB
Agile Model-Based Systems Engineering Cookbook: Improve system development by applying proven recipes for effective agile systems engineering, 2nd Edition (2023)
#Book #2023
@Machine_learn
4