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Martin Kemka PRO

mkemka

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Self learning systems

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liked a model 5 months ago
apple/DepthPro
reacted to loztcontrol's post with 🤗 5 months ago
I am developing a personal project to further support and help people living with Depression and Anxiety. As I suffer mainly from chronic depression I would like to create a tool based on AI that can monitor my moods but first I will collect information about myself, my moods and after collecting at least 6 months of my moods and my writings I will be able to formulate as a kind of recognition when my emotions are “out of control” I mean those states or feelings of emptiness. I think that sometimes not all of us have access to treatments and therapies so I would like to develop in a free way this project that I have just started today. I have already started the code to register events of my moods. I will share with you the updates :D ``` import pandas as pd from sklearn.model_selection import train_test_split from sklearn.feature_extraction.text import CountVectorizer from sklearn.naive_bayes import MultinomialNB from sklearn.metrics import accuracy_score, classification_report import nltk from nltk.corpus import stopwords import string import matplotlib.pyplot as plt from datetime import datetime nltk.download('stopwords') data = { 'text': [ "Hoy me siento bien, aunque un poco cansado", "Me siento triste y solo", "Esto es frustrante, todo sale mal", "Estoy nervioso por lo que va a pasar", "No puedo con este estrés", "Todo está saliendo bien, me siento optimista", "Siento miedo de lo que pueda suceder", "Hoy fue un día horrible" ], 'emotion': [ 'felicidad', 'tristeza', 'enojo', 'ansiedad', 'ansiedad', 'felicidad', 'miedo', 'tristeza' ] } df = pd.DataFrame(data) # Función para limpiar el texto def clean_text(text): ``` Yes, I speak Spanish :P too
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mkemka's activity

reacted to loztcontrol's post with 🤗 5 months ago
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I am developing a personal project to further support and help people living with Depression and Anxiety. As I suffer mainly from chronic depression I would like to create a tool based on AI that can monitor my moods but first I will collect information about myself, my moods and after collecting at least 6 months of my moods and my writings I will be able to formulate as a kind of recognition when my emotions are “out of control” I mean those states or feelings of emptiness. I think that sometimes not all of us have access to treatments and therapies so I would like to develop in a free way this project that I have just started today. I have already started the code to register events of my moods. I will share with you the updates :D


import pandas as pd
from sklearn.model_selection import train_test_split
from sklearn.feature_extraction.text import CountVectorizer
from sklearn.naive_bayes import MultinomialNB
from sklearn.metrics import accuracy_score, classification_report
import nltk
from nltk.corpus import stopwords
import string
import matplotlib.pyplot as plt
from datetime import datetime

nltk.download('stopwords')

data = {
    'text': [
        "Hoy me siento bien, aunque un poco cansado", 
        "Me siento triste y solo", 
        "Esto es frustrante, todo sale mal", 
        "Estoy nervioso por lo que va a pasar",
        "No puedo con este estrés", 
        "Todo está saliendo bien, me siento optimista", 
        "Siento miedo de lo que pueda suceder", 
        "Hoy fue un día horrible"
    ],
    'emotion': [
        'felicidad', 
        'tristeza', 
        'enojo', 
        'ansiedad', 
        'ansiedad', 
        'felicidad', 
        'miedo', 
        'tristeza'
    ]
}

df = pd.DataFrame(data)

# Función para limpiar el texto
def clean_text(text):

Yes, I speak Spanish :P too
  • 3 replies
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reacted to clem's post with 🤗 about 1 year ago
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Is synthetic data the future of AI? 🔥🔥🔥

@HugoLaurencon @Leyo & @VictorSanh are introducing HuggingFaceM4/WebSight , a multimodal dataset featuring 823,000 pairs of synthetically generated HTML/CSS codes along with screenshots of the corresponding rendered websites to train GPT4-V-like models 🌐💻

While crafting their upcoming foundation vision language model, they faced the challenge of converting website screenshots into usable HTML/CSS codes. Most VLMs suck at this and there was no public dataset available for this specific task, so they decided to create their own.

They prompted existing LLMs to generate 823k HTML/CSS codes of very simple websites. Through supervised fine-tuning of a vision language model on WebSight, they were able to generate the code to reproduce a website component, given a screenshot.

You can explore the dataset here: HuggingFaceM4/WebSight

What do you think?
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New activity in google/sdxl over 1 year ago