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361.
▲
ML-intern: open-source ML engineer that reads papers, trains and ships models
(github.com/huggingface)
4 points
rzk
a month ago
discuss
362.
▲
Platform designed to facilitate job and training search
(github.com/stevecrafted)
4 points
stevemagics
2 months ago
discuss
363.
▲
Open Source Github Internal Training Materials
(teach.github.com)
4 points
EzGraphs
14 years ago
discuss
364.
▲
Show HN: A repo to turn any model into a reasoning model without training
(github.com/dl1683)
4 points
Dl1683
5 months ago
discuss
365.
▲
Show HN: Workin, a web app to control smart trainers
(github.com/jsmolka)
4 points
jsmolka
6 months ago
discuss
366.
▲
Show HN: Wake word detection with custom phrases without model training
(github.com/st-matskevich)
4 points
st-matskevich
10 months ago
discuss
367.
▲
An LLM trained only on data from certain time periods to reduce modern bias
(github.com/haykgrigo3)
4 points
pajop
a year ago
discuss
368.
▲
Simple GPT in pure Go, trained on Jules Verne books
(github.com/zakirullin)
4 points
kombucha255
a year ago
discuss
369.
▲
Show HN: Bemol, a free and open-source functional ear training app
(github.com/ftchirou)
4 points
jet4ble
a year ago
discuss
370.
▲
Rust based bluetooth dynamometer designed for finger training powered by ESP32
(github.com/SergioGasquez)
4 points
kalendos
a year ago
discuss
371.
▲
Show HN: Never train another ML model again
(github.com/Pravko-Solutions)
4 points
galgia
a year ago
discuss
372.
▲
Chessli2 – free and open-source chess trainer
(github.com/pwenker)
4 points
kamaraju
2 years ago
discuss
373.
▲
HuggingFace JAT: Distributed online training of a general multitask RL Agent
(github.com/huggingface)
4 points
yeldarb
2 years ago
discuss
374.
▲
Show HN: Transformer Lab – Download, interact, and train models locally
(github.com/transformerlab)
4 points
aliasaria
2 years ago
discuss
375.
▲
Higgsfield: Distributed LLM training and cluster management framework
(github.com/higgsfield-ai)
4 points
arpanetus
3 years ago
discuss
376.
▲
Silero Models: pre-trained speech-to-text, text-to-speech and text-enhancement
(github.com/snakers4)
4 points
tosh
3 years ago
discuss
377.
▲
Out-of-the-box FP8 training (nanoGPT)
(github.com/graphcore-research)
4 points
thecharlieblake
3 years ago
discuss
378.
▲
Autodistill: Use foundation vision models to train smaller, supervised models
(github.com/autodistill)
4 points
zerojames
3 years ago
discuss
379.
▲
NanoPALM: Lightweight repo for training small to medium sized PaLM models
(github.com/RobertRiachi)
4 points
mariuz
3 years ago
discuss
380.
▲
Facebook Research's logbook for training a 175B parameter language model [pdf]
(github.com/facebookresearch)
4 points
yeldarb
4 years ago
discuss
381.
▲
A multi-voice TTS system trained with an emphasis on quality
(github.com/neonbjb)
4 points
amai
4 years ago
discuss
382.
▲
CVNets – A library for training computer vision networks
(github.com/apple)
4 points
maydemir
4 years ago
discuss
383.
▲
End-to-end Speech Recognition in PyTorch trained on 50kh of speech is released
(github.com/snakers4)
4 points
snakers41
6 years ago
discuss
384.
▲
Determined: Deep Learning Training Platform
(github.com/determined-ai)
4 points
polskibus
6 years ago
discuss
385.
▲
Train LSTMs faster with Haste
(github.com/lmnt-com)
4 points
snrrrub
6 years ago
discuss
386.
▲
Show HN: SparkTorch: Distributed Training of PyTorch Networks on Apache Spark
(github.com/dmmiller612)
4 points
dmmiller612
6 years ago
discuss
387.
▲
SparkTorch: Distributed Training of Pytorch Networks on Apache Spark
(github.com/dmmiller612)
4 points
lodev12
7 years ago
discuss
388.
▲
A fast data loader for training deep learning models in Tensorflow 2.0
(github.com/HasnainRaz)
4 points
ivymike3257
7 years ago
discuss
389.
▲
Recommendations for training and deploying ML models in the cloud
(github.com/Microsoft)
4 points
L3g0l4s
7 years ago
discuss
390.
▲
Competition to train an ML model evaluated by an Ethereum contract
(github.com/algorithmiaio)
4 points
mikeyanderson
8 years ago
discuss
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