#Machine learning and AI
Explore tagged Tumblr posts
Text
(Source)
73K notes
·
View notes
Text

#I'm serious stop doing it#theyre scraping fanfics and other authors writing#'oh but i wanna rp with my favs' then learn to write#studios wanna use ai to put writers AND artists out of business stop feeding the fucking machine!!!!
166K notes
·
View notes
Text
0 notes
Text
Machine learning and AI Analytics Services - Innodatatics
AI analytics and machine learning services provide businesses with cutting-edge ways to leverage data. These services examine enormous volumes of data, identifying patterns, trends, and insights that inform strategic decision-making through the use of complex algorithms and computational approaches. Machine learning and artificial intelligence (AI) services improve operational efficiency, optimize customer experiences, and stimulate innovation by automating complex operations and enabling predictive analytics. These services, which range from risk management and fraud detection to customized marketing and consumer segmentation, enable businesses to remain competitive in an increasingly data-driven world.
#Machine learning and AI Analytics Services#Machine learning and AI Projects#Machine learning and AI Projects In Hyderabad#Machine learning and AI Analytics Services in Hyderabad#Machine learning and AI#Machine learning Analytics Services#AI Analytics Services#Machine learning Analytics Services In Hyderabad#Artificial Intelligence Analytics Services In Hyderabad#Innodatatics Analytics Services#Machine learning Analytics Solutions In Hyderabad#Artificial Intelligence Analytics Solutions In Hyderabad
0 notes
Text
31% of employees are actively ‘sabotaging’ AI efforts. Here’s why
"In a new study, almost a third of respondents said they are refusing to use their company’s AI tools and apps. A few factors could be at play."
1K notes
·
View notes
Text
AI hasn't improved in 18 months. It's likely that this is it. There is currently no evidence the capabilities of ChatGPT will ever improve. It's time for AI companies to put up or shut up.
I'm just re-iterating this excellent post from Ed Zitron, but it's not left my head since I read it and I want to share it. I'm also taking some talking points from Ed's other posts. So basically:
We keep hearing AI is going to get better and better, but these promises seem to be coming from a mix of companies engaging in wild speculation and lying.
Chatgpt, the industry leading large language model, has not materially improved in 18 months. For something that claims to be getting exponentially better, it sure is the same shit.
Hallucinations appear to be an inherent aspect of the technology. Since it's based on statistics and ai doesn't know anything, it can never know what is true. How could I possibly trust it to get any real work done if I can't rely on it's output? If I have to fact check everything it says I might as well do the work myself.
For "real" ai that does know what is true to exist, it would require us to discover new concepts in psychology, math, and computing, which open ai is not working on, and seemingly no other ai companies are either.
Open ai has already seemingly slurped up all the data from the open web already. Chatgpt 5 would take 5x more training data than chatgpt 4 to train. Where is this data coming from, exactly?
Since improvement appears to have ground to a halt, what if this is it? What if Chatgpt 4 is as good as LLMs can ever be? What use is it?
As Jim Covello, a leading semiconductor analyst at Goldman Sachs said (on page 10, and that's big finance so you know they only care about money): if tech companies are spending a trillion dollars to build up the infrastructure to support ai, what trillion dollar problem is it meant to solve? AI companies have a unique talent for burning venture capital and it's unclear if Open AI will be able to survive more than a few years unless everyone suddenly adopts it all at once. (Hey, didn't crypto and the metaverse also require spontaneous mass adoption to make sense?)
There is no problem that current ai is a solution to. Consumer tech is basically solved, normal people don't need more tech than a laptop and a smartphone. Big tech have run out of innovations, and they are desperately looking for the next thing to sell. It happened with the metaverse and it's happening again.
In summary:
Ai hasn't materially improved since the launch of Chatgpt4, which wasn't that big of an upgrade to 3.
There is currently no technological roadmap for ai to become better than it is. (As Jim Covello said on the Goldman Sachs report, the evolution of smartphones was openly planned years ahead of time.) The current problems are inherent to the current technology and nobody has indicated there is any way to solve them in the pipeline. We have likely reached the limits of what LLMs can do, and they still can't do much.
Don't believe AI companies when they say things are going to improve from where they are now before they provide evidence. It's time for the AI shills to put up, or shut up.
5K notes
·
View notes
Text
shout out to machine learning tech (and all the human-input adjustment contributors) that's brought about the present developmental stage of machine translation, making the current global village 地球村 moment on rednote小红书 accessible in a way that would not have been possible years ago.
#translation#rednote#xhs#machine learning#linguistics#accessibility#unfinished thought pls read down the whole chain ty#when AI is accessibility tool for the masses :D
1K notes
·
View notes
Text
verdant garden
564 notes
·
View notes
Text
"The first satellite in a constellation designed specifically to locate wildfires early and precisely anywhere on the planet has now reached Earth's orbit, and it could forever change how we tackle unplanned infernos.
The FireSat constellation, which will consist of more than 50 satellites when it goes live, is the first of its kind that's purpose-built to detect and track fires. It's an initiative launched by nonprofit Earth Fire Alliance, which includes Google and Silicon Valley-based space services startup Muon Space as partners, among others.
According to Google, current satellite systems rely on low-resolution imagery and cover a particular area only once every 12 hours to spot significantly large wildfires spanning a couple of acres. FireSat, on the other hand, will be able to detect wildfires as small as 270 sq ft (25 sq m) – the size of a classroom – and deliver high-resolution visual updates every 20 minutes.
The FireSat project has only been in the works for less than a year and a half. The satellites are fitted with custom six-band multispectral infrared cameras, designed to capture imagery suitable for machine learning algorithms to accurately identify wildfires – differentiating them from misleading objects like smokestacks.
These algorithms look at an image from a particular location, and compare it with the last 1,000 times it was captured by the satellite's camera to determine if what it's seeing is indeed a wildfire. AI technology in the FireSat system also helps predict how a fire might spread; that can help firefighters make better decisions about how to control the flames safely and effectively.
This could go a long way towards preventing the immense destruction of forest habitats and urban areas, and the displacement of residents caused by wildfires each year. For reference, the deadly wildfires that raged across Los Angeles in January were estimated to have cuased more than $250 billion in damages.
Muon is currently developing three more satellites, which are set to launch next year. The entire constellation should be in orbit by 2030.
The FireSat effort isn't the only project to watch for wildfires from orbit. OroraTech launched its first wildfire-detection satellite – FOREST-1 – in 2022, followed by one more in 2023 and another earlier this year. The company tells us that another eight are due to go up toward the end of March."
-via March 18, 2025
#wildfire#wildfires#la wildfires#los angeles#ai#artificial intelligence#machine learning#satellite#natural disasters#good news#hope
722 notes
·
View notes
Text
why neuroscience is cool
space & the brain are like the two final frontiers
we know just enough to know we know nothing
there are radically new theories all. the. time. and even just in my research assistant work i've been able to meet with, talk to, and work with the people making them
it's such a philosophical science
potential to do a lot of good in fighting neurological diseases
things like BCI (brain computer interface) and OI (organoid intelligence) are soooooo new and anyone's game - motivation to study hard and be successful so i can take back my field from elon musk
machine learning is going to rapidly increase neuroscience progress i promise you. we get so caught up in AI stealing jobs but yes please steal my job of manually analyzing fMRI scans please i would much prefer to work on the science PLUS computational simulations will soon >>> animal testing to make all drug testing safer and more ethical !! we love ethical AI <3
collab with...everyone under the sun - psychologists, philosophers, ethicists, physicists, molecular biologists, chemists, drug development, machine learning, traditional computing, business, history, education, literally try to name a field we don't work with
it's the brain eeeeee
#my motivation to study so i can be a cool neuroscientist#science#women in stem#academia#stem#stemblr#studyblr#neuroscience#stem romanticism#brain#psychology#machine learning#AI#brain computer interface#organoid intelligence#motivation#positivity#science positivity#cogsci#cognitive science
2K notes
·
View notes
Text
We need to change the way we think about AI and remember that arms races don’t just exist between nations. The problem is once again capitalism, not the technology itself or some other boogeyman.
#leftblr#late stage capitalism#working class#left wing#class war#leftist#socialism#tech#technology#ai#machine learning
286 notes
·
View notes
Text

Frank Rosenblatt, often cited as the Father of Machine Learning, photographed in 1960 alongside his most-notable invention: the Mark I Perceptron machine — a hardware implementation for the perceptron algorithm, the earliest example of an artificial neural network, est. 1943.
#frank rosenblatt#tech history#machine learning#neural network#artificial intelligence#AI#perceptron#60s#black and white#monochrome#technology#u
820 notes
·
View notes
Text

Dragon…
||DO NOT FEED TO AI DO NOT USE FOR MACHINE LEARNING||
#my art#art#dragon#traditional art#drawing#sketch#tradtional drawing#sketchbook#dragon art#artists on tumblr#do not feed to ai#do not use for machine learning
336 notes
·
View notes
Text
Machine learning and AI Analytics Services In Hyderabad - Innodatatics
With the assistance of our state-of-the-art AI analytics and machine learning services, unleash the potential of your data. Our skilled staff utilizes cutting-edge algorithms and methodologies to provide actionable intelligence tailored to your specific needs, whether you're seeking insightful information, optimizing procedures, or streamlining operations. We leverage the power of sophisticated analytics, from computer vision and natural language processing to anomaly detection and predictive modeling, to support informed decision-making and innovation within your company. With our extensive range of services, you'll be able to capitalize on new growth prospects and maximize efficiency in today's data-driven environment.
#Machine learning and AI Analytics Services#Machine learning and AI Projects#Machine learning and AI Projects In Hyderabad#Machine learning and AI Analytics Services in Hyderabad#Machine learning and AI#Machine learning Analytics Services#AI Analytics Services#Machine learning Analytics Services In Hyderabad#Artificial Intelligence Analytics Services In Hyderabad#Innodatatics Analytics Services
0 notes
Text
Dichotomous key is nowhere near functional yet so here’s a little anatomy diagram I made.
#real isopod hours#isopods#not an identification#isopod differentiation guide#the (iso)podcast#Cubaris sp#art#bug art#diagram#do not feed to ai#do not use for machine learning
172 notes
·
View notes