Reddit Posts
I studied 830 penny stock explosions from 5 years of data. Here's the pattern they all had in common before they ran.
Beyond the Hype: My "AI Meets Atoms" speculative basket
Beamr Imaging (BMR) – $32M market cap, AI/ML catalysts
Why the app you’re using should be a stock you own ($RDDT)
What do expect from Today´s NVDA earnings?
Small-cap ranking system white paper- timestamping for 2-year follow-up
Organizing my portfolio holdings at various brokers as a single spreadsheet
I priced every SPY put credit spread, 2018-2026 (18M trades). Theory -EV, reality +$1.06/spread.
Built a free tool that computes independent ML fair values for every listed options contract
Everything I learned about the qualities of a robust system
Everything I learned about the qualities of a robust system
Institutional Flow Report: Major Rotation into 10Y Treasuries and S&P 500 Re-accumulation 📊
Built a TACO tracker inside my trading dashboard because TA is useless when the president is live-posting about bombing Iran
Institutional De-risking Report: COT Data and Probability Models show heavy Distribution in Equities vs. Record Inflows in 2Y Treasuries 📊
Nebius is running the exact Yandex playbook again. Physical AI is where it lands.
Intelimed and Neural Cloud: a Latin American bet on smarter ECG and arrhythmia detection
AIML Innovations Expands Neural Cloud Into Latin America Through Intelimed Partnership
AIML Innovations Expands Neural Cloud Into Latin America Through Intelimed Partnership
AI-Driven Industrial & Energy Technology: A Growing Investment Theme
Neural Cloud Enters Distribution Agreement with Intelimed to Expand into Latin America
Neural Cloud Enters Distribution Agreement with Intelimed to Expand into Latin America
Neural Cloud Expands Into Latin America With New Distribution Agreement
Is $VWAV the sleeper in AI + Defense right now? Recent $10M deal thoughts
Value investing tool that optimally turns market dips into higher‑return opportunities
AIML Subsidiary NeuralCloud Signs Non-Binding Agreement with Movesense to Pilot AI-Powered ECG and Holter Reporting
AIML’s commercial puzzle is starting to come together
Searching for disciplined traders to work on positional option selling together
Google Cloud backlog is $240b, up 55% in one quarter.
AIML: NeuralCloud Expands Bundled ECG Solutions Through Strategic Collaboration with Movesense
The Nervous System of Chips: How Arteris ($AIP) Is Powering the Chiplet Era
JTAI - A real DD to end all DDs (also my first DD post but the rest of you guys are regards)
Do biotech / med-tech stocks usually go up after FDA approval?
AIML subsidiary NeuralCloud Solutions Inc., Signs Non-Binding Commercial Term Sheet with Lakeshore Cardiology to Deploy CardioYield(TM) for AI-Powered Holter Analysis
AIML and the real bottleneck in Holter monitoring
AI/ML Innovations Inc. (AIML | CSE: AIML | OTCQB: AIMLF | FSE: 42FB): Where AI and Digital Health Meet
AI/ML Innovations Inc. (AIML | CSE: AIML | OTCQB: AIMLF | FSE: 42FB): Where AI and Digital Health Meet
Made a biotech catalyst tracker for fellow degens - free Pro access for beta testers
How do you track biotech catalysts? Finally built my own tool after getting frustrated
👋 Willkommen bei r/SystematischesTrading – Stell dich vor und lies dich zuerst ein!
$100K Seed to $500K Exit (5x return )Which specific niche sector gives you the highest conviction for this in the long term?
Transferring brokerage account from CS to ML
$2.4 Million Bet On RIVN - Cursed Carmaker Turnaround
$2.4 Million Bet On RIVN - Cursed Carmaker Turnaround
Apple poached a new brain. Is this a pivot??
Apple poached a new brain. Is this a pivot??
Asked for moderately conservative investment but feel ripped off
If TPUs are strong, is it a good time to buy NVIDIA?
Trying to combine crypto + equities sentiment into one trading model
NVIDIA Is Quietly Holding Back U.S. AI And the Next 3 Years Could Cut Their Market in Half
MicroVision (MVIS): Why MicroVision Could Become the Most Explosive Tech Rebound of the Decade.
Odd Lots: Cliff Asness on How Markets Got Dumber in the Last 10 Years - Bloomberg
Enova International (ENVA): AI-Driven Fintech Powerhouse with Strong Growth Potential
AAPL – Recent earnings and potential near-term catalysts
$CAI DD: Precision medicine could've saved Nana (113% YoY Revenue Growth)
MSAI + Amazon Partnership Confirmed
stock price predictor using ML (LSTM-Transformer Hybrid)
MOBX - Info on the industry and potential
Voyager Technologies and upcoming ER after hours
DVLT showing big signals of incredible growt potential
Are Algo Traders profiling us retail traders?
🚀BURU — Premarket Buyers Could Trigger Breakout Momentum | Under $0.42 • Major Catalysts & Earnings Ahead | AI • Drones • Lasers • Defense • NASA 🔥
ALRT - Meeting NATO, Teasing and the £180M Contract Opportunity
$BYND screenshot this whole post before I get banned like the Copybara. Truth will prevail.
From Vouchers To Verticals: Why GEAT’s Platform Can Scale Faster Than Its Chart
Two Products, One Funnel: Can WallStreetStats Feed GreetEat’s Growth?
I built an AI orchestration platform that breaks your promot and runs GPT-5, Claude Opus 4.1, Gemini 2.5 Pro, and 17+ other models together - with an Auto-Router that picks the best approach
I'm a Senior Machine Learning Engineer who was tired of paying for trading tools, so I built my own. It's now 100% free in public beta.
I'm a Senior Machine Learning Engineer who was tired of paying for trading tools, so I built my own. It's now 100% free in public beta.
I'm a Senior Machine Learning Engineer who was tired of paying for trading tools, so I built my own. It's now 100% free in public beta.
Follow-up on DBGI after yesterday’s post – more DD (NVIDIA)
NEWS: Prospector Drills New Discovery: Hole ML25-31 Intersects 13.79 g/t Au and 1.84% Cu over 44m, Includes Higher-Grade Interval of 21.93 g/t Au over 24.65m
So here's a bit of interesting trivia, for anyone over 60.....
AI / ML = “Actual inflation thru Money Laundering”
Does AI / ML stand for “Actual Inflation thru Money Laundering”? But seriously.. are we stuck in a circular money glitch?
Datavault AI Inc. (DVLT) - Up 33% Today & 7.5% AH - A Massive Run is Coming !
Yet to be released Visible Gold at ML Project PPP.V PMCOF
GLUE - Novartis Deal; jumped 44% - more upside potential
Analytics Depot - the "Home Depot of Analytics" platform: Seeking seed $3m-$10m @ $100m
Prospector Finds Visible Gold at Yet to be released North Vein Hole $PPP.V
Mentions
Good question. Is AI profitable yet? Absolutely not. But the build-out alone toward that day is going to be a transformative generator of wealth for people who have been and are invested. Sovereign AI is a part of that, nations need AI infrastructure. The same is true of Quantum. Look at China's spending on quantum, the US is barely just beginning to think about catching up with the recent announcement. At the end of the day the same forces that are driving AI built-out and adoption across business and government will apply even if only because of encryption. Up until a few months ago most people would have said MU wasn't worth holding long-term due to the cyclical nature of the sector. I've held NVDA for years, because I was working with scientists a decade ago who were doing ML-based space science work and couldn't get enough GPUs due to competition with gaming. I've held MU for years because they were making the RAM in devices I used. In neither case did I think they would become central for a global AI revolution. So yeah, it's hard to say what might happen. But I think it's pretty clear we either end up with a post-classical computing revolution that amplifies the AI revolution in progress and they feed into each other, or we're all standing around a barrel fire talking about back when there was an internet. There's no in-between future IMO.
Why the hostility? I know this is Reddit and it’s often a waste of time to provide an example to help someone see that maybe their view of a situation is more limited than they may realize, but I’m sure we can both see that others agree with my stance. I’m not trying to polish the knob of people selling AI/ML as the solution to everything, everywhere, and always. It’s often overkill with respect to resource utilization for easy tasks and underperforms for tasks it’s not well trained for but sold to be good at. However, with respect to its impact to the field of protein engineering for structurally biology and drug discovery applications, saying that “it’s pretty fucking great at suggesting which of my ideas is more likely to succeed” is such an understatement.
Maybe it’s possible that their work and my work and other people’s work differ considerably from your’s. Some of the software tools that we utilize that either directly use ML models to generate data to solve problems, or they analyze the models output data and meta data to solve problems. To arrive at the same quality solutions without AI/ML would take anywhere from “100x longer”, to, “we would never arrive at it”, because we as a species don’t have that level of statistical, biological, chemical, or physical insights, money, personnel, etc. to solve these types of problems at that scale. So while most people’s experience with AI/ML is social media and office work, a lot of ours’ is not.
Knicks ML, I'm not just shilling my bags this time
They literally have 3.6 billion daily active users, near half the world. Also one of the most normal P/E ratios of QQQ, let alone the Mag7 They have the most infrastructure outside of Google, Amazon, MSFT, and are moving like their life depends on it. Their new model is already borderline with GPT/Gemini, and they have the best ML algos in the world already.
I’ll comment this again Cost of launch on Falcon 6 was $20,000/kg. Falcon 9 was $2,700/kg. That’s an 86% drop. Google’s research for their orbital data centers states that the orbital compute economics close at $200/kg. Starship is projected to be $94/kg. It had a successful test flight like two weeks ago. There’s already orbital satellites running AI/ML workloads for the ISS. A small LLM has already been trained on an in-orbit H100. Not about this is pie in the sky impractical Sci-Fi. The concept is literally in active Beta testing.
Jumping in here... He was asked if he or anybody in the organization had contact with them and discussed anything about restricting or preventing purchases. [https://www.youtube.com/watch?v=ML9vX2Pyumc](https://www.youtube.com/watch?v=ML9vX2Pyumc) Knowing what's in the messages, and in the screenshots in that video, and what actually happened, can you honestly say that YOU believe they had those conversations on the general situation and not paying them the full PFOF without ever touching on the option/likelihood/need/desire/effects/repercussions of setting it PCO?
amzn, nvda, tsla, eth, btc, I got my lifetime supply of 10 baggers at the start of my investing journey 😭 the key is to have extremely high conviction and not sell. Unfortunately my nvda 10 bagger happened many years ago and I sold it all for what could have been a 500+ bagger. Bought them at 10 billion market cap because I liked their gpus and everyone I knew doing ML had zero intention of ever upgrading their macbooks when they switched to AMD. I have averaged 30% returns for almost 20 years so it's hard to complain but my 14k nvda investment would be over 7 million today if I just sat on my hands and ignored it. I also formatted a hdd with 10 btc on it that my IRC friend sent me when it was worth a fraction of a penny in 2008 and didn't buy it again for almost 10 years. RIP. I want to say the key is to come up with your own unique valuation and growth models and ignore what everyone else is saying. I'm a SWE specializing in distributed systems so I think I have good insight in to a lot of tech plays but the reality is the market has ripped so hard since I started investing just before the 2008 global financial crisis that it's pretty hard not to be a huge winner if you just kept shoveling in to the market.
Huh? Are you drunk or somethin? “Its over priced”…”so are you arguing people will pay when its 20x more overpriced?” Theyre not paying today. Its propped up by regurgitative tokenmaxxing at enterprise companies on the dream of being able to fire all the humans and outsource to india. I work at one of those companies. In AI and ML systems. There is no viable consumer product.
Same way it’s been done for 60 years. Radiating into space. I mean this isn’t something that’s just science fiction hoo-ha. There’s billions being poured into this rn. Starcloud already flew an H100 in orbit and trained an LLM on it. Their next satellite launches in October with 100x the power and the largest commercial deployable radiator ever flown. Axioms AxDCU-1 is running containerized cloud-native ML/AI workloads for the ISS. Arizona State researchers demonstrated that vanadium dioxide coatings shows a 6-fold enhancement in radiative thermal conductance. Sophia Space, backed by Nivida, is claiming 92% of generated energy to processing tasks significantly reducing heat waste from some novel GPU architecture. That prototype is set to launch in 2027. Google’s claims it’s new TPUs consume 15–30x less power per operation than GPUs, meaning 30x less heat per computation. Cerbreas claims the same for its new GPUs Idk what SpaceX is cooking up. But a company that can build reusable rocket ships likely has some pretty smart engineers. It’s just a complex engineering challenges with huge amount active funded research behind it - there is no thermodynamic wall. The payoff is huge. People will figure it out.
You’re missing HPE and Dell. HPE has invested heavily in SAAS for AI/ML, and it’s starting to pay off. Dell is also starting to take off for similar reasons. Storage and virtualization are both leveraged for AI/ML workloads. So Broadcom/VMware, structured and unstructured data storage solutions like Oracle, and others focused on low latency tiered storage and migration. One rips through terabytes of data to build a model; that model needs high end storage but those terabytes can go to tape or even get tossed when done. Being able to manage and prioritize data storage and access latency means only spending minimally for expensive, liberally for cheap, and moving it all around in between. Anyway AI/ML is currently the “killer app” driving tech. Everyone is looking to get products into those data centers. Manageability of data centers is also hard and key. AI observability lets you manage massive arrays with small human investment. But data collection and processing are continuous and ongoing. And of course, SECURITY. So much focus on something NO ONE seems to get right. It’s a continuous arms race, each side leveraging the latest tech to thwart the other. And investment is required because of the value of the data being invested in. Spending billions to develop an AI or ML model that is easily stolen by competitors and ransom jerks doesn’t make for profitable business. When you put all your eggs into an AI model basket, you simply MUST watch that basket.
LLMs are hitting diminishing returns on training. The way forward will be linking LLMs to expert systems and other forms of ML that are more reliable than a super-autocomplete. Probably also see multi-agent schemes that can audit each other, collaborate on problem solving steps, etc.
Figma is a deep value and growth stock. They are integrating AI tools into their editing software. I think some software stocks are way oversold, like Axon and ServiceNow. Some crappy ones like Hubspot, Asana, etc will be definitely losers if they don’t adapt quickly. As someone in the field, I don’t see ML getting good enough in the next couple of years to efficiently edit pictures to the level of trust that Figma commands.
You should fullport ASTS like me https://www.reddit.com/r/wallstreetbets/s/YT47yt22ML
You understand the hyperscaler market is much larger than pc and is the primary driver of the current growth right? Literally just look at nvda prior to the lets run ML on gpu white papers.
> vibe coding… Vibe coding is actually something where you don’t review the code but ignoring that, your concept of time to write vs review code is way off. I can write and review in a day that would easily take 2 weeks without LLMs. And that’s not even including having it write things in code im not familiar with like if I’m trying to make a UI. Yes it’s easy to have it write bad code but as people are learning to use it better, so is the code. I have many agents that do different specific types of reviews that the coding agent fixes before it even gets to people reviews. By that point there’s actually not many corrections I need to have it fix. > pre-existing tools Yes they existed but were often inaccurate for multiple reasons. LLMs can be too but for different reasons. Sites like Angi often weren’t accurate about a specific geographical region coupled with a specific service and product. You could figure out an accurate price by combing through many different sites, so it wasn’t something that couldn’t be done before. However LLMs have all that data and can look through many different sites much quicker than a person can. It can then aggregate that data and output it in a usable, often accurate format. Similarly, step by step guides did exist in the past. The things that have been great for me though is that sometimes I’m working with something that doesn’t have an easy to find step by step guide or I don’t know the specific name to search for. LLMs have been good at either identifying what exactly I need to search for, giving me general enough directions on how to use something. Something that probably would have taken me an hour in the past just to figure out what to look up. LLMs aren’t actually something completely new. They just put human language on top of complex ML problems that deal with massive sets of data. You should still do all your validation of what it says just like you should verify what you read on Wikipedia or anywhere on the internet. > railroads created more jobs So is AI. Who do you think are building these chips, the datacenters, the fiber optics, the generators, the LLM prompts, training the models, building the servers, creating the LLM based products? > commerce and flow of goods How long did that take for people to get? The railroads were expanded for the war. Once the war wasn’t going on any more, companies had to consolidate somewhere so that they could mass produce enough goods that they could be sold “exponentially.” They also had to get enough people to move to those locations to produce them. Until all of that happened, the average person didn’t see any benefit. The point being that didn’t happen immediately, it took decades (and a civil war). LLMs have existed for about 4 years so far. > please explain to me blah blah blah It’s not different than what AI is doing. The point of the entire post was to respond to the claim that railroads were great in every way and AI is horrible in every way. They both are good and bad.
My team and I do ML, AI, MLOps work in a small startup. we love it. Devops and fullstack teams also love it. We have very small amount of tech debt and our development speed is quite good. I havent used codex for quite some time, so cant tell if it is better or worse. I used opus 4.7 from cursor, it was amazing, then switched to claude code. As llm experience, I used pretty much all models, all models from gemini, 10s of chatgpt models, kiwi, composer etc. So, I have a good understanding of which models can do what.
Wouldn’t call myself lucky per se. I guess we all benefit from luck nowadays. But I have worked in the AI/ML space for the last 9 years and there was plenty of reasons to see NVDA as a good investment.
No way they actually have $500M revenue. They are a mobile marketing company, mostly a DSP doing acquisition and retargeting. Think very very small version of The Trade Desk. So revenue here is the amount of money they spend for brands the profit is the margin thier DSP collects from the media. Tough business and extremely competitive, Liftoff is not a leader in their vertical. Mobile marketing is past the boom days of 2010-2017. $500M is what they claim they get from brands to spend (they take a brands marketing budget and spend, no different than how an ad agency does) and there is just no way. I would be surprised if it was $100M a year. There is some serious number puffing here. They are a DSP. Overnight all their ML algorithms the DSP uses to make buying decisions became AI. Not an AI company. Also they’re not at all a leader in their space. Moloco is far and away #1 by a mile. Then a bunch of other companies Remerge, Dataseat, Jampp, Bidease with Liftoff firmly in this purgatory of mobile marketing companies that either got acquired for peanuts or missed the boat on mobile gaming hayday in 2015ish and didnt find a buyer and now are just stuck surving. If you buy this stock you are just a dumb person or a friend of the founders and trying to be nice. They’ll be delisted in a few years maybe sooner.
I really like the photonics & quantum sectors going into the next 10 years. Volumetric photonic processors running analog ML models are far more efficient than GPU based solutions. MIT recently built a proof of concept using refractive index & angle of incidence to map models to volumetric substrates. POET $1000, QBTS $1000
The biggest reason for the improvement from 3 to 4 is the huge improvements in resolution and quality of sensor data & the bigger /faster inference chip they have in hw 4, allowing for bigger model architecture & 16 bit float instead of 8 bit float computation. They also went from 1.2 megapixels to 5 megapixels, which greatly improved data quality. You're talking about hardware innovations, those again have nothing to do with the ml engineers at Xai (because those aren't typicaly hardware engineers but ML people). Software innovations (and differences in training methodology) would be visible through version differences on identical hardware.
meta revenue growth is from traditional ML applications. The capex bet is for LLM training/applications
Yeah nobody asked you this lmao Love these engagement comments. In what world does “big time player” asked you to replace Windows outside of it being a joke? You are saying this guy knows the costs of operating systems and ignorantly wants an ML engineer to replace it? It’s a cute way to show the reliance of windows OS but Reddit eats this shit up so good job on your engagement
Lol ai has been useful since before 2025. Image recognition being prime example for it. Lol so many ML algorithms being used in wallstreet since god knows when. I have no clue about the recombinant and transformationational creation would look into it.
They absolutely can create, either recombinant creation or transformational. Both have been observed in academia particularly in mathematics. I have been using ai and ML since 2010 and while it may seem like we've got a logarithmic growth in latent abilities and performance we've not seen that in actual usage. AI is currently still in the early stages of adoption and has only been meaningfully useful since late 2025 for functions outside of chatbots. (Agents, research, and data pipelines).
cortex AI is better than genie, I'll give you that. but for mature AI/ML, especially mlops either via model serving or containernisation, databricks is way ahead. also snowflake you need a bunch of supporting resources such as dbt right? in contrast, everything can be done in databricks
ML in DB is definitely a good experience. Since our data is Snowflake, we use their end to end ML and it’s super good…but this wasn’t always the case, I hear. The Databricks applied AI is not close to Snowflake. We tried their coding agent recently just to stay up on things. It was actually shocking how immature it felt in comparison to Snowflake.
Databricks and snowflake is very much converging on the same core things. Databricks has better AI and classic ML workflows integrated with their platform. snowflake has a better first class warehouse experience OOTB. Bigquery imo is pretty far behind both of them. Both DB and SNOW will see significant rev growth acceleration from AI though, since agents will need to query real enterprise data to keep themselves grounded in reality, and is drastically dropping the barrier to querying data.
I mean if they’re good analytics for people who pay for ads sure…I cannot believe this is the major play with the new capex though…I still think they’re cooking something else or maybe just organically increasing the infra for their already ongoing ML/data stuff.
Now add on the large amount of engineer/data/ML job postings for Reddit, which won’t be cheap. This story is just starting.
Yeah I agree on ML but that's not what is getting all the investment, it's these stupid LLMs.
I suggest you look up the statistical results of “active managed funds”. Your ML acct manager was probably blowing smoke to justify his paycheck. I mean he might have believed it, but it was probably still smoke. Then you went and parroted it to your next manager. I can’t offer you any advice. I manage my own accounts. I’m 40. I’ve interviewed a few FA/ account managers and always felt skeeved out by them and walked away. I’m now “using” the Fidelity wealth management but I don’t think I’m getting much more than the basic Monte Carlo sim you can access from any old 401k account these days I’ve been devouring the Rational Reminder podcast over the past year or so. It’s Canadian but still really great IMO as an American. I just tried listening to some Motley Fool podcasts and just don’t feel it.
ML did. It’s a pretty common strategy.
I understand the performance of the bonds I don't understand why the underperforming ETFs from the sector rotation plan haven't been addressed. We had a more conservative approach with ML and now this FA doesn't do anything.
Maybe to being a loser? But I work in software for a living, and reading this post, it's pretty clear they are just using AI slop and calling it ML.
Is it okay to buy a $25M house? Our household liquid net worth is \~$20M, mostly in S&P 500 holdings with about $5M in unrealized gains. Our annual income averages $10M pre-tax but is highly volatile—ranging from $5M to $25M over the last few years. While we expect this to continue, we’re aware that in tech/ML, things can change quickly.
Brain dead take. Meta stole nothing, they just massively improved it and the project got naturally subsumed with scale and resources, as has happened with countlessly many smaller open source projects. If anything, PyTorch is probably the greatest gift to the ML research community of the last 10 years.
what about the ML framework used by almost every single MLE in the industry?
So I was talking with a couple people at anthropic. And I guess their belief is that it won’t converge. Basically whoever can get the ML to iteratively improve on itself first takes the bag
To be clear, the anecdote above includes frontend, product and ML engineers.
I'm not sure about Intel but AMD is doing fine. AMD has diversified so aggressively over the past decade that framing them as a distant second to Nvidia misunderstands what the company actually is now. They're in consoles, desktops, laptops, tablets, phones via Samsung's Exynos licensing, servers, and routers. Ten years ago they were close to folding. That turnaround is not a small thing. On the software side, ROCm has closed the gap with CUDA faster than almost anyone expected. A year ago it was genuinely painful to work with. Now with ROCm 7.x, Windows support has arrived, PyTorch and most major ML frameworks treat it as a first-class option, and the 7.1.1 release delivered up to 5x performance gains over 6.4.4 across key AI models. It's not at full CUDA parity yet in every workload, but it's no longer a footnote. UDNA, which merges the RDNA and CDNA lines into a single unified architecture, is where things get genuinely interesting, and that's still ahead of us. On Nvidia's position in AI more broadly: this cycle has a pattern. One company moves in early, captures the market, prices rise, and the market diversifies to reduce the dependency. The current shift toward local inference first, cloud escalation second, with models like Gemma 4 running on-device and Google pushing AI into phones at the hardware level, represents exactly that kind of structural change. Nvidia's dominance is built on centralized cloud compute demand. If the architecture of deployment moves away from that, the moat shrinks. AMD has been methodical and capital-conservative. Nvidia has been running at full throttle on the assumption that the demand curve only goes one way. That kind of overextension is exactly the setup for a Zen 2 moment.
...Huh? Where was I disrespectful? Jesus. Cloud is one of the fastest areas of growth for Google atm, driven by... enterprise AI and ML offerings. This isn't about your banker friends using Gemini. (Although now the largest operating system in the history of the world comes with it embedded everywhere.)
The llm models themselves aren’t fully reliable tho. From what I’ve seen is the ai boom inside the tech industry has led a lot of companies to develop different types of ai for different things like ML algorithms for fraud detection. It’s not just slapping an LLM to something and calling it a day
Get off your high horse with this patronizing shit. I'm a ML Engineer. I know how this works. I use it and build it on a daily basis. You're literally talking about SDD like it's some godsend. It fucks up A LOT. Talking about Opus 4.6 Yes, good prompting and planning makes a huge difference. It still fucks up. Do a simple experiment. Write 10 changes by hand and save the git patch. Then write a simple prompt/agentic flow/ReAct flow to produce them from a simple description. One flow for all. Calculate the semantic difference to what you wrote. Then you'll have an idea of how well it performs.
take your money and go all in on cavs ML tonight your welcome
The bear case about big tech building custom silicon (Google TPUs, Amazon Trainium, Microsoft Maia) is real but consistently underestimated how long CUDA lock-in buys NVDA time. Every ML engineer in the world has years of CUDA code they'd have to rewrite. That's not a moat, that's a fortress. The China H200 approval is the wildcard - if Chinese firms get access, NVDA's revenue ceiling just moved up significantly. Jensen on Air Force One is the most Silicon Valley sentence ever written.
Well said. The circular deal narrative is easy for the media to present, and rational enough to believable. It's not wholly absurd to consider as a risk but the performance obligations and 'seeding the market' piece aren't new. Hyperscalers have been doing this for awhile. Ive been in tech infrastructure sales for 14+ years working for companies you would absolutely recognize. Ive sold everything from data center hardware, to cloud infra, to big data saas, to ML, to AI, to Agents. It impresses me how confident the narrative is that AI ROI is playing pin the tail on the donkey in the dark. This might have been true in 2023. I'm now on the professional service consulting and integration side now. In the last 6-12 months the models I'm seeing companies walk in with for use case analysis and the way they are quantifying TCO/ROI is getting orders of magnitude better on a month over month basis. Companies operate on a spectrum of competence, but the financial models at the ones who will likely be successful are iterative already. That knowledge will eventually be more ubiquitous and you'll see the same thing you saw with hyperscale infra - a smaller first mover demographic followed by a larger adoption wave as the risk starts to normalize. . We are still early, IMO.
iren is ran by retards, NBIS is run by one of the strongest AI/ML teams ever
$2.52T in total 2026 * AI Infrastructure: $1.37 trillion * AI Services: $589 billion * AI Software: $452 billion * AI Cybersecurity: $51 billion * Data Science / ML Platforms: $31 billion * AI Models: $26 billion https://www.gartner.com/en/newsroom/press-releases/2026-1-15-gartner-says-worldwide-ai-spending-will-total-2-point-5-trillion-dollars-in-2026
$2.52T in total 2026 * AI Infrastructure: $1.37 trillion * AI Services: $589 billion * AI Software: $452 billion * AI Cybersecurity: $51 billion * Data Science / ML Platforms: $31 billion * AI Models: $26 billion
Oh yeah totally, I was just curious. I was asking because not only do they have sensors and cameras that go into ML tech, It’s also a company that is used for the opposite of AI things. Actual movies, cameras for live events, human tech so to speak. They are both complimentary and opposite of AI stuff.
Software engineer as well, background in AI/ML. I bought a ton of Samsung/SK Hynix back in late 2024 because I knew HBM would become the bottleneck due to growing model sizes, growing KV cache with context size. I foresaw companies producing their own AI accelerator chips, and figured HBM was the common bottleneck, not Nvidia. I also had some WDC(pre sandisk split) because I figured data was important to AI training. AI coding tools definitely improved a lot recently to the point where they can no longer be ignored. And this obviously explains the recent compute shortages; AI coding usually requires intense reasoning models, and millions of engineers suddenly using it is going to cause a surge in demand. But I think inference demand growth is going to slow down from here, though. Most large orgs are already pushing devs to write most code with AI, and all employees in general to use AI. Therefore, there needs to be another massive application that LLMs take over in the very near future, or we will end up with substantial oversupply of compute as new datacenters come online. I think what's very telling is that all it took was a 300 MW SpaceX datacenter for all of Anthropic's compute shortages to be magically solved, and SpaceX was able to give it up without impacting Grok's availability. Additionally, OpenAI shows no signs of shortages, offering extremely generous limits on $20 plans. A 300 MW datacenter solves the compute shortage of a leading frontier lab, and yet there are several Gigawatts of capacity planned each year, and compute also gets substantially more efficient with each hardware generation. This suggests that the "compute shortage" is quite marginal and oversupply is nearly imminent.
Similar. I’m in Data Science/Data Engineering/ML and also followed a similar pattern - using ChatGPT to debug to using Claude locally to write code and merge PRs out of whole cloth. I’m not wholly convinced on your thesis. Models are becoming more efficient. It’s not clear whether token usage is simply going to increase exponentially. My opinion is that SaaS and Software stocks in general are doomed. Sales Force, Workday, DataDog etc It’s clear you can build highly customized software for basically a few dollars worth of tokens. You then have to figure out deployment and change management but the value add of cookie cutter SaaS is way way lower than it used to be. Agents can do so much now that you might not even need software UI at all for stuff that used to require standalone apps.
Andrew Ng believes that we are still technologically far from achieving AGI. He worries that companies investing in AI today could easily face disappointment, potentially leading to a sharp decline in AI investment and the bursting of the AI bubble. Andrew Ng is one of the most globally recognized leaders, pioneers, and educators in Artificial Intelligence (AI) and Machine Learning (ML). [https://youtu.be/4vzmTKUFtxg?si=g6eTFcjRlpevGHW_](https://youtu.be/4vzmTKUFtxg?si=g6eTFcjRlpevGHW_)
What I found in a ten second google search on (ironically) a Reddit thread: “A lot of python that’s used for ML like using tensorflow or PyTorch is like an API for the underlying c++ code. It’s when you have to really optimize things that’s when you would dive into lower level” I don’t know much about C++, my understanding was it was used primarily for like games and web design but yeah looks like there’s some practical usage for it in ML. That being said, I feel like a highly competent Python coder would almost never need to dive to that level. At least from what I’ve heard they don’t.
ML is everywhere. Massively expensive LLM inference of huge models is not
Basically nothing runs on AI so far. At least nothing that would justify such valuations. Most ML use is still for vector embeddings, scoring, sentiment analysis. Tech that's been around for ages and takes 1000X less compute than LLM
AI in modern terms generally means LLMs and Generative AI (image creation). Not the ML AI that is used in Medical
What do you mean it's not a sustainable business model and inevitably people will realize it's not price effective to replace workers with ML?
Not too late to but money on Detroit ML @ the half +870
This all depends on the balance of how long it takes these companies to start making profits from their AI expenses, vs how long investors have the free capital and hope for the future to keep giving them their money. No one is making profit from selling AI right now. If rates remains low and the fed continues the QE they started a few months ago, and these companies find a way to either significantly reduce training and compute costs, or convince people/companies that something like Claude or better is worth 5-6 figures per employee per year, then we will avoid problems. If recent geopolitical problems aren’t resolved and prices of power and electronics manufacturing continue to rapidly increase, if ML researchers have truly reached a plateau in what transformers can do, if money becomes less available due to the need to increase rates or some sort of liquidity crisis, or investors just lose faith that profits are coming or get spooked, we will be in trouble. In either case, the longer it takes for these companies to start turning a profit, the higher the risk of a correction.
"I can’t hire AI/ML people fast enough." As a shareholder, if I heard this on an earnings call, that would mean selling immediately. AI might prove amazing, but you won't be spending my money betting on it.
That’s too bad you feel this way about AI. I work for a Fortune 500 company. One of the best pharma firms in the world and I can tell you that our AI modernization efforts are in every single facet of our technology, research, manufacturing, and R&D. I can’t hire AI/ML people fast enough. The main SaaS providers are all building out agentic orchestration layers. The business demands it and if we let up the competition is going to eat us alive. I use AI for my own work every day and it has made me infinitely more efficient and able to produce at a level I cannot dream of. So I would be wary of judging the entire industry by your own anecdotal experience. Just go on LinkedIn and search for AI linked roles across all industries and tell me it’s a passing fad
How do I parlay 0DTEs and the Timberwolves ML?
I worked with a programmer who was really smart and built a killer day trading app. He was always broke and wanted his paycheck early. I think it’s a combination of chaos, insider trading, and an arms race between whatever ML or AI apps there are out there. It’s like betting on horses. You need to somehow know more than everyone else to consistently win, and that’s really hard to do unless you’re cheating.
OKLO close to design approval, use this info as you wish. https://www.nrc.gov/docs/ML2608/ML26086A285.pdf
I work at a biotech and we use a number of "AI" (ML) based tools. They're pretty cool and have come a very long way in the past 2 years. Not sure how they can get you from Ph 1 to Ph2 quicker though, as those stages and progression between them require (positive) clinical data, not AI predictions..
I think they are going to be built, and then they'll end up like dark fiber from 2000 - 2009: noone can afford to use them because the market will see them as commodities and the ML business case will fail to fill out the demand.
I lean long, and I use Schwab. One platform for investing. Another for banking. I set up two brokerage accounts. One is cold storage. I have a little money in ML but that's just to qualify for some benefits. Pro-tip: I gamble like an absolute r\*tard in my IRA and have been wildly successful, without having to deal with tax implications every year.
Solid breakdown. It’s interesting that you found RSI more effective than premium size—definitely a lesson in not chasing overcrowded trades. I’ve been experimenting with a similar approach but I focus more on real-time whale movements and 'Z-scores' of the order book. For example, **I'm seeing a Z-score of +1.14 on RIOT right now with a massive relative alpha of 6.79%**. Tracking those huge blocks *before* they hit the tape is where I've found the real edge. I actually ended up building a live terminal for this (ML engine and all) just for my own trading so I could dodge those high-premium traps. If you want to see the data I'm looking at, it's live here: [https://alphasignal.digital](https://alphasignal.digital/)
I'm talking about things like evolutionary scale model from Meta which is a protein sequence language model that helps with predicting experimental outcomes using purely sequence alone. Imagine that??? Can you imagine certain efficiency boosts that can be achieved using such tools?? Want to talk about other such machine learning workflows and solutions these tech companies are developing? Or do you want to simplify it to chat bots because that is what you have used? I'm glad to chat further. Have you used other ML models such as phikon for ihc slide scan based predictive models? Something that you can use to train classifiers to identify cell types from scanned tissue images?
Other ML algorithms and especially attention have solved text translation easily since 2013. Voice translation is a bit more of a new game changer, but people on this app are largely there to learn English or have a hobby, not necessarily become fluent to speak on a day to day.
Ding ding ding. Nvidia consistently submits across all of MLPerf for several years. Competitors only submit in certain benchmarks when it favors them (not so often). Submitting to MLPerf requires a lot of effort, too. The kind of effort requried to setuo and optimize large scale rujs on major datacenters/clusters. Top answer in this thread talks only about matrix math as though that’s the only thing large scale ML/LLMs are doing. It’s a full stack optimization problem from storage to memory to networking to compute to software orchestration etc. Jensen’s been talking about this for years.
Man crazy ass games yesterday! Had Raptors and Lakers ML
I graduated from b-school in 1994 and was offered an interview with Merrill Lynch's treasury office. I flew to NYC and the woman who interviewed me wore the most revealing shirt that she also had strategically unbuttoned just so. I struggled to maintain eye contact and spent much of the interview trying to avoid staring at her breasts.I knew immediately I wouldn't get an offer. It all worked out though as ML treasury was located in the WTC and we all know what happened a few years later.
Hi PaPa, First off, I'm a former Nasdaq market maker, held series 7,24,55,63.....now I'd be considered a retail participant. I can answer all your questions: I entered all these trades thru the 'spread' order entry ticket page. I have the highest level of options approval. Yes, this is a Reg T margin account, ML EDGE doesn't offer port margin. So none of those are not true. Yes, some brokers are more conservative and have stricter house rules. Yesterday, the agent said this is a FINRA Rule 4210 deal, not elevated house rules, which he's probably wrong. I've got other accounts at ML that are mid-seven figures but they are not 'tied' to this account. I found out that ML just isn't a good platform for active trading, either equities or options. This is where I whine a little, I had a huge back surgery last Nov, it worked out but I have a new issue that will require a revision procedure. My patience is short, but I feel a little better this week, so I thought I'd get in the pool, stay in the shallow end. This really is making my upset, confused. I elevated the issue up, they'll probably get back to me Monday or Tuesday. I do have access to Brian Moynahan, the CEO, but I hesitate to get him involved, that'd be silly. Thank for getting back to me. After a quick look at some brokers last night, I like TastyTrade and WeBull. I simply need a broker dealer that caters to active trading.
I had 76ers ML last night but big money on Denver. Man wtf happened to that Nuggets team. You have a multi time mvp, champs 3 years ago and now can’t even make it out the first round against a team missing 3 starters. Fucking embarrassing
#Hope yall took the knicks ML
Hawks +10000 ML I’m taking that
Hello guys, Having trouble with ML EDGE trading zero dte SPX credit spreads. I’m returning to trading after some back issues. Tuesday, I put on a credit put spread in SPX, it worked out, 5 contracts; same on Wednesday, both $10 wide fairly OTM , roughly 10 deltas. Both worked out, 5 contracts each day. Then Wednesday night, I get an email, I’ve become a pattern day trader, this account is roughly $350k, I get an email asking for a deposit of $150,000. I called them, they claimed this was a FINRA rule 4210 violation, in reality it’s a house rule, I don’t know sure seems like it. The agent says I have a naked option, I used the spread order entry page, there was never an exposed naked option. I was operating on the assumption, the max loss was the distance between strikes, $10. Or about $5k. ML is saying to trade SPX zero day options, I’ll to have the full notional value of an SPX value, around $500,000 for each contract, not the difference between strikes, less premium. What to do?
What was your thinking? About both. MSFT seems fucked for awhile, until they figure out how to properly implement ML, instead of shoving it into everyone's face as hard as possible. They do this with all technology: terrible innovators, pretty good thieves. Google literally invented modern ML, knew it wasn't ready, and held it back on purpose.
What evidence do you have to support your thesis that ML lied about the outage or even that the outage was intentional? Sounds like you are just mad and jumping to conspiracy.
Just threw another $200 on lakers ML LeBron is balling out. Insane he’s 41
It’s primarily GCP’s positioning as the driver of academic research. Now I am not sure about how GCP fairs in enterprise but for Academia, GCP works with a lot of leading ML/AI faculty (and for non ML research that requires heavy compute like large scientific datasets) to make compute available. For a lot of my coursework, I have been given up to 100 dollars on GCP credits to utilize for projects. This is of course just an anecdote. GCP has the following educational programs that I can point towards that could explain why they’re popular amongst universities: [Google Cloud Higher Education Programs](https://cloud.google.com/edu?options=research-credits#optionsBlogsocial&utm_campaign=2018-edu-gcp-research-credits) [In order to ensure that more researchers have access to powerful cloud tools, we’re launching Google Cloud Platform (GCP) research credits, a new program aimed to support faculty in qualified regions who want to take advantage of GCP’s compute, analytics, and machine-learning capabilities for research. Higher education researchers can use GCP research credits in a multitude of ways](https://research.google/blog/announcing-the-google-cloud-platform-research-credits-program/)
The basic Support and Resistance levels aren't timeframe bound: PDL, PDH, PMH, PML, 5MH Orb, 5ML Orb
Yeah, but by ML, mostly machine vision. There is no LLM involved.
I've worked in big tech for decades in ML/AI - LLMs will not be how humanity reaches AGI. (if we ever do). They are however powerful tools.
The you have a very basic level of exposure to the product. I used to design it for one of its largest BUs and led the first integrations of ML into its platform. OP’s position is bearish in my opinion. I’ve go over half a million on them
That's what bloomberg does basically and a bunch of others i don't see how you going to compete. Once again you can have all that sent to a basic ML model. You're essentially working on replacing some stuff that already exist. You son't have to contact to make customers move away from tools they have been using for the past decades and your technology is going to be obsolete in a year or so. My advice, pivot asap.
This was rddts. Same think they did really well and the market was trash Here’s RDDT’s last quarterly earnings (Q4 2025, reported Feb 5, 2026): Headline numbers ∙ EPS: $1.24 v s. $0.94 estimate (beat by ~32%) ∙ Q4 revenue: $726M, +70% YoY ∙ Q4 net income: $252M (35% margin), up $181M YoY ∙ Q4 adj. EBITDA: $327M (45% margin) ∙ DAUq: 121.4M, +19% YoY Full year 2025 ∙ Revenue: $2.2B, +69% YoY ∙ Net income: $530M (24% margin) ∙ Adj. EBITDA: $845M (38% margin) ∙ Free cash flow: $684M, up $468M YoY ∙ Cash & marketable securities: $2.48B Capital return & guidance ∙ Board authorized a $1B share repurchase program ∙ Q1 2026 guide: revenue $595M–$605M (+52%–54% YoY); adj. EBITDA $110M–$220M Drivers ∙ Q4 ad revenue $690M (+75% YoY); active advertiser count grew >75% YoY ∙ 2026 product priorities: improving onboarding, unifying search with Reddit Answers, feed relevancy via ML/AI, and verified profiles
the first comment is right — "learning AI" is too broad to be useful. the better question is: which part of your work is manual, repetitive, and runs on structured data? that's where AI actually delivers. i track AI upskilling trends across domains professionally — finance is one of the more interesting ones to watch. not because of the big flashy stuff (AI managing your entire portfolio isn't a realistic near-term play for most people), but because of how much manual, structured work exists in day-to-day finance. earnings call summaries, research synthesis, report generation, variance analysis, data reconciliation — a significant chunk of this can be smoothed out with the right AI workflow. i've spoken with a few finance professionals directly on this — including a head of finance and some senior practitioners. the consistent finding: AI is helping every function including finance — automating tasks, increasing speed, removing manual work, reducing errors, improving overall efficiency. and these weren't theoretical observations, they were things people were already doing week to week. the entry bar is also lower than most people assume. you don't need to learn ML or go deep technical. start with prompt engineering — just understanding how to get consistent, useful outputs from an AI tool for your specific workflow. from there, you can build real systems using no-code platforms without writing a single line of code. the constraint isn't technical — it's knowing your use case well enough to automate it. so yes — important. but the right starting question isn't "should i learn AI." it's: what in your current finance role takes the most time and feels most repetitive? I have put together a comprehensive list of AI use cases specifically for finance — dm me if you want the link.
I just have loads of experience dealing with steamed market data and the wild amount of wrong data points. These marks are based off buy sell price spreads which can wildly vary in low vol stocks. Thanks for coming to my ted talk, I’ll teach you how to use ML to beat the market after you get a PhD in data science or math
As a bear I am putting all my sqqq position on the Knicks ML. Thank you for your attention to this matter and god speed
As a software engineer i know enough about computers and little enough about the mind to conclude that ML is far too simple to emulate something so complex.
I dunno how much clearer I could make my sarcasm. I work in ML, and I'm a motorcyclist. Camera only FSD terrifies me. Teslas have already killed multiple motorcyclists because their self driving sucks at edge cases.
New CTO was 9 year at Meta, good. Including: "[2017-2022] Head of engineering for Video Machine Learning in Facebook App. **Responsible for AI/ML, content recommendations, content understanding,** integrity, publisher/creator success and ecosystem efforts powering Facebook Video, Audio, Music and Gaming. **Scaled video to be 50%+ time spent on Facebook** and a multi billion $$ creator/publisher economy. "