#NFL Injury Updates #Dolphins De'Von Achane - LP. Unless... setback occurs, data strongly favors playing. Re-injury risk likely low (~10%) given that it took only 2 wks to return to practice #Ravens Isaiah Likely - Out. Wk 2-4 return = likely. Data suggests 4 game ramp up 1/10show more

Deepak Chona, MD. SMA
1,378,782 görüntüleme • 10 ay önce
#NFL Injury Updates #Raiders Brock Bowers - Coach says... playing. Data favors sitting. Practice reports suggests PCL setback. Data strongly suggests major dip if active #Cowboys CeeDee Lamb - Suspect return Wk 6-7. Data favors Wk 7 as most likely. 20% re-injury risk 1/12show more

Deepak Chona, MD. SMA
298,896 görüntüleme • 9 ay önce
#NFL Injury Updates #Commanders Jayden Daniels - Playing increases... ACL risk. Video suggests he could if it were playoffs. Wk 3 TBD. Lean slightly toward playing w/brace + rushing dip #Packers Jayden Reed - Clavicle avg 6 wks. Foot 8. Data favors ~Wk 10 + 4 wk ramp up 1/9show more

Deepak Chona, MD. SMA
647,466 görüntüleme • 10 ay önce
#NFL Injury Updates #Rams Matthew Stafford - Lean toward... playing Wk 1. Epidurals imply disc herniation. Can recover, but carries HIGH re-injury risk. Caution w/Rams WRs #Packers Jordan Love - Low concern. Non-throwing hand. May affect handoffs, but likely not passing 1/10show more

Deepak Chona, MD. SMA
2,244,542 görüntüleme • 11 ay önce
#NFL Injury Updates #Rams Matthew Stafford - Likely disc... herniation. Susceptible to re-aggravation with rotation (essential to throwing) Tested last wk, didn’t respond well. Planning re-test this wk Often played w/injury before. Lean toward playing Wk1. But HIGH risk 1/9show more

Deepak Chona, MD. SMA
517,306 görüntüleme • 11 ay önce
#NFL Injury Updates #Cowboys CeeDee Lamb - Video suggests... high ankle. Attempting return implies mild. Avg ~ 2 wks. Most miss Wk 4 #Buccaneers Mike Evans - Hamstring. Avg = 2-3 wks. Age 32 + hamstring history predict longer. His reaction suggests high severity. Suspect IR 1/6show more

Deepak Chona, MD. SMA
2,370,577 görüntüleme • 9 ay önce
Tolutau Koula ruled out for Manly this weekend -... couldn’t overcome the AC joint injury he suffered in Magic Round. Typically an extremely painful injury, return becomes mostly pain management issue. Likely grade 2-3 sprain - usual return to play 2-4 weeks from initial injury.show more

NRL PHYSIO
20,417 görüntüleme • 2 yıl önce
Galaxy Digital $GLXY CEO and Founder Mike Novogratz Mike... Novogratz on Galaxy's decision to lease the first 800MW of its data center capacity to CoreWeave $CRWV instead of other cloud providers such as Oracle $ORCL: "I think CoreWeave is doing an awesome job.. and we took that bet. We could have done a deal with an Oracle and we would have made a whole lot less money on it. We took a bet on a company that we saw growing at the same kind of time (line as Galaxy).. Higher risk, higher return." Important to note - Galaxy expects to have an incremental 800MW of gross power capacity available for lease in the very near future. Meanwhile, mgmt. has strongly suggested they'll seek to diversify their tenant base beyond CoreWeave. I expect Oracle to be Galaxy's next tenant, given their significant data center capacity needs stemming from their monster cloud contract with OpenAI. While Oracle likely commands a lower rental rate (e.g. pays a lower price per MW of critical IT load), the yields on CapEx for Galaxy remain attractive, and a diversified tenant base should be rewarded with a higher multiple on the overall data center business.show more

Rittenhouse Research
44,085 görüntüleme • 9 ay önce
HOLEE SHIZZLES‼️ 🚨 The Fulton County Georgia FBI Raid... Affidavit CONFIRMS Election Records in Fulton County's 2020 Vote Count was MANIPULATED 1. Only 16 tabulators out of an expected much larger number were used to generate closing data for about 315,000 ballots across 138 provided poll tapes. This extreme concentration improperly funneled through a small set of machines, breaking chain-of-custody rules and making it easier to alter election results 2. Review of machine logs indicated that memory cards were likely removed from their original tabulators and inserted into different ones to produce or recreate closing poll tapes. This indictated tampering or fabrication of records to cover up discrepancies, as it allows data to be manipulated OUTSIDE the standard process. 3. Many closing poll tapes—essential documents that verify end-of-day vote totals from each polling site—were entirely MISSING from the records provided. Without these, there's no way to confirm that votes weren't added, removed, or changed post-election. FRAUD. 4. It was discovered that the Tabulator's data appeared to cover ballots from several different polling sites, which shouldn't happen under normal procedures. This suggests intentional mixing of data streams, which leads to DUPLICATE votes, misplaced ballots, or hidden errors across precincts. 5. Tabulators showed mismatched or anomalous timestamps in their logs, such as dates and times that didn't align with actual election events. This could indicate backdating, editing, or unauthorized access AFTER polls closed, further hinting at possible manipulation to make records appear consistent. 6. Auditors assisting in the Risk Limiting Audit reported counting purported absentee ballots that had never been creased or folded, as would be required for the ballot to be mailed to the voter and for the ballot to be returned in the sealed envelope requiring the voter’s signature for authentication. Affidavitshow more

MJTruthUltra
241,505 görüntüleme • 5 ay önce
To the people asking "Where's Hunter" after Trump adviser... Peter Navarro was just sentenced to 4 months in prison for defying a Congressional subpoena, you are leaving out the following: 1) Hunter's attorneys have argued that his subpoena is legally invalid, because they were issued before the full House authorized an impeachment inquiry on December 13, 2023. This wasn't Hunter's opinions, it was a Trump-era Office of Legal Counsel opinion. 2) Hunter Biden was more than willing to testify in public and his lawyers suggested that if he is re-subpoenaed he would likely appear privately as well. Now do Jim Jordan and Kevin McCarthy...show more

Brian Krassenstein
810,684 görüntüleme • 2 yıl önce
HOW TO DODGE EVERY SKILLSHOT IN LEAGUE OF LEGENDS... SO YOU GET ACCUSED OF SCRIPTING - Script in your mind - Draw out how far, wide, fast an ability is relative to your character thats all the easy stuff that I have been preaching already you can find in my free discord for improvement however one thing that League coaches fail to explain is the human aspect of it every game you play in League of Legends, every single person in the game is constantly building their profile in a game on how they operate both sides are constantly trying to mind f*ck each other to land and dodge skillshots. I have broken it down into layers the three layers to dodging are layer 0 - no dodge (unconscious) layer 1 - dodge (conscious) layer 2 - no dodge (conscious) Notice how in the clip in a challenger game below Olaf shoots a layer 0 skillshot, but because I am playing at a layer 1, I dodge his axe. Now the Thresh hook gets a little deeper bare with me, because I built the profile that I will dodge an ability in that moment, he thinks that I won't dodge and is shooting a hook at a layer 2 thinking that I will dodge at a layer 2 also. However I know that he knows I will likely not juke and walk straight so I make the conscious choice to dodge AGAIN playing at a layer 1 resulting in me dodging the hook, of course he could be accounting for my tumble but the point still stands. There are many deeper things to consider like zoning abilities, environment etc but you generally want to always play at a layer 1 until you gain more data in a game to adapt. However one thing that always stays true throughout my 13 years of playing League is in teamfights that have gone on for awhile, human beings tend to panic and default to layer 0 of shooting abilities, so if your able to operate at layer 1 as a teamfight progresses, you will likely dodge that one final skillshot that wins you the game. study the saskio wayshow more

Tony Chau
185,544 görüntüleme • 8 ay önce
This is why Tesla makes the safest vehicles in... the world: • All Tesla models have received five-star safety ratings from the National Highway Traffic Safety Administration. • Built from the ground up with an all-electric architecture, resulting in low rollover risk and reduced occupant injury probability. • Uses anonymous/aggregated real-world data from millions of miles driven to enhance safety via over-the-air updates and inform future vehicle designs. • Battery packs designed to isolate and vent heat away from the cabin; historically (2012–2020 U.S. data), Tesla vehicles ~10x less likely to experience fire per mile than average gas vehicles. • Before a crash occurs, Tesla uses the front cameras to observe the scenario and prepare the seat belt system to react faster and with adequate force and timing when impact occurs, reducing the amount of slack in each seat belt. • Tesla’s advanced airbags are tuned to deploy according to crash type and different-sized occupants. This includes active venting that changes the amount of pressure within the inflated cushion by releasing gas according to the expected crash severity. • When a serious collision is detected, the hazard lights will turn on to increase your visibility and doors will automatically unlock for emergency access. At the same time, your Tesla will automatically contact emergency services to get help to you as quickly as possible. • Tesla vehicle structures are designed to cushion and protect the battery in the event of an accident. Onboard systems will automatically disconnect the high-voltage battery upon impact. If a battery fire does occur, the battery pack is designed to spread heat away from the cabin to protect occupants.show more

Nic Cruz Patane
74,333 görüntüleme • 7 ay önce
🚨CLOSE TO 10 INCHES OF RAIN SO FAR -... TOTALS TRENDING HIGHER - Significant Flooding Rain has already fallen across Southern California, with parts of Santa Barbara and the LA area ALREADY seeing up to 9 inches or more. 🌧️ More heavy rain is coming today, with another 4 to 8 inches possible, which will only worsen ongoing flooding issues. 🌬️ Strong winds have arrived as well, with gusts over 60 mph reported in many areas. Power outages are becoming more likely, especially with Christmas right around the corner. And keep this in mind. Today is only Wave 1 of 2. Another round of rain, wind, and heavy mountain snow arrives Christmas Day. Hang in there, California. We’re praying for you 🙏show more

Brady Harris
50,124 görüntüleme • 6 ay önce
I wanted to take a moment to talk about... my early stages in golf and hopefully this helps someone out there getting into the game. This video is from 2013, around 1 year into golf and I was shooting mid- low 90s. My Dad was a teaching pro so the fundamentals came easy. However, all my friends at the time played since they were 5 years old and I felt a ton of pressure trying to “catch up”. Golf never seemed to come easy for myself. I struggled really bad for 2-3 years before I saw any true progress. I was never a “natural” at the game At this time, my main goal was to play college golf so a lot of progress needed to take place. So, we moved to Florida as a family for my dads job and that’s when everything changed. I began to practice each day for 3-5 hours. I realized since I wasn’t a natural, I had to work harder then everyone. My scores began to drop into the 70s consistently after 3-4 years of playing. When I started seeing these results I got even more motivated. To play in college I needed to be posting low scores in competitive junior tournaments. These environments I believe took my game even to another level. I began shooting in the low 70s and 60s on a consistent basis. Getting to this point easily took 5 years of grinding, while some of my friends it took 2-3 years. I did end up playing 4 years of D2 college golf and posted a lot of scores I’m super proud of. My overall point is people progress at different speeds in this game. I realize not everyone can’t practice 5 hours a day. But if you haven’t seen results right away, or even years into the game, never give up. Something might click and everything could change!show more

Grant Horvat
723,606 görüntüleme • 1 yıl önce
💸💵 $25 GIVEAWAY 💵💸 To Enter: ❤️ 1.) LIKE... ♻️ 2.) RETWEET (Must Follow) $25 Giveaway to one person once this PrizePicks play smacks tonight. Tatis is lighting it up. He’s gone for 5, 1 and 8 HRR in DR’s 3 games in the WBC and should continue that tonight. DR is scoring over 10+ runs a game and he’s leading off, giving him tons of opportunity to score and get production in. Dejounte has been very, very consistent in his return so far this season. Across the board, and especially in getting to the line. He’s averaging 4.17 FTM so far and is over in 5/6 (83%) of games, only missing in his first game back this season.show more

Winning Lineups
10,540 görüntüleme • 4 ay önce
[VAE] by Hand ✍️ A Variational Auto Encoder (VAE)... learns the structure (mean and variance) of hidden features and generates new data from the learned structure. In contrast, GANs only learn to generate new data to fool a discriminator; they may not necessarily know the underlying structure of the data. The International Conference on Learning Representations (ICLR) this year announced its first ever "Test of Time Award" to recognizes the VAE paper, published 10 years ago. This exercise demonstrates how to calculate a VAE by hand. [1] Given: ↳ Three training examples X1, X2, X3 ↳ Copy training examples to the bottom ↳ The purpose is to train the network to reconstruct the training examples. ↳ Since each target is a training example itself, we use the Greek word "auto" which means "self." This crucial step is what makes an autoencoder "auto." [2] Encoder: Layer 1 + ReLU ↳ Multiply inputs with weights and biases ↳ Apply ReLU, crossing out negative values (-1 -> 0) [3] Encoder: Mean and Variance ↳ Multiply features with two sets of weights and biases ↳ 🟩 The first set predicts the means (𝜇) of latent distributions ↳ 🟪 The second set predicts the standard deviation (𝜎) of latent distributions [4] Reparameterization Trick: Random Offset ↳ Sample epsilon ε from the normal distribution with mean = 0 and variance = 1. ↳ The purpose is to randomly pick a offset away from the mean. ↳ Multiply the standard deviation values with epsilon values. ↳ The purpose is to scale the offset by the standard deviation. [5] Reparameterization Trick: Mean + Offset ↳ Add the sampled offset to predicted mean ↳ The result are new parameters or features 🟨 as inputs to the Decoder. [6] Decoder: Layer 1 + ReLU ↳ Multiply input features with weights and biases ↳ Apply ReLU, crossing out negative values. Here, -4 is crossed out. [7] Decoder: Layer 2 ↳ Multiply features with weights and biases ↳ The output is Decoder's attempt to reconstruct the input data X from reparameterized distributions described by 𝜇 and 𝜎. [8]-[10] KL Divergence Loss [8] Loss Gradient: Mean 𝜇 ↳ We want 𝜇 to approach 0. ↳ A lot of math called SGVB simplifies the calculation of loss gradients to simply 𝜇 [9,10] Loss Gradient: Stdev 𝜎 ↳ We want 𝜎 to approach 1. ↳ A lot of math simplifies the calculation to 𝜎 - (1/ 𝜎) [11] Reconstruction Loss ↳ We want the reconstructed data Y (dark 🟧) to be the same as the input data X. ↳ Some math involving Mean Square Error simplifies the calculation to Y - X.show more

Tom Yeh
48,356 görüntüleme • 2 yıl önce
I took this with the intention of sharing it... earlier but wimped out. Changed my mind though because I figured it might help motivate someone. I started running again 4 weeks ago after almost no running in the last 10+ years. In just a month, I knocked out an unofficial half marathon. Not only that, but it felt easy enough to talk 11.5 miles in without being winded. I’m not running fast, in fact I’m really slow at around a 12min/mile pace, but that’s the point I want to make. Running at a low heart rate does amazing things. If you want to try out this style, look up zone 2 training. Or, just go out and do some extended exercise (walk/jog) while keeping your heart rate around 130-145. Walk if you go over that upper end, even I had to when I started. Stay consistent, and you’ll see improvement relatively quickly.show more

Faux
54,366 görüntüleme • 2 yıl önce
[Graph Convolutional Network] by hand ✍️ Graph Convolutional Networks... (GCNs), introduced by Thomas Kipf and Max Welling in 2017, have emerged as a powerful tool in the analysis and interpretation of data structured as graphs. This exercise demonstrates how GCN works in a simple application: binary classification. -- Goal -- Predict if a node in a graph is X. -- Architecture -- 🟪 Graph Convolutional Network (GCN) 1. GCN1(4,3) 2. GCN2(3,3) 🟦 Fully Connected Network (FCN) 1. Linear1(3,5) 2. ReLU 3. Linear2(5,1) 4. Sigmoid Simplications: • Adjacent matrices are not normalized. • ReLU is applied to messages directly. -- Walkthrough -- [1] Given ↳ A graph with five nodes A, B, C, D, E [2] 🟩 Adjacency Matrix: Neighbors ↳ Add 1 for each edge to neighbors ↳ Repeat in both directions (e.g., A->C, C->A) ↳ Repeat for both GCN layers [3] 🟩 Adjacency Matrix: Self ↳ Add 1's for each self loop ↳ Equivalent to adding the identity matrix ↳ Repeat for both GCN layers [4] 🟪 GCN1: Messages ↳ Multiply the node embeddings 🟨 with weights and biases ↳ Apply ReLU (negatives → 0) ↳ The result is one message per node [5] 🟪 GCN1: Pooling ↳ Multiply the messages with the adjacent matrix ↳ The purpose is the pool messages from each node's neighbors as well as from the node itself. ↳ The result is a new feature per node [6] 🟪 GCN1: Visualize ↳ For node 1, visualize how messages are pooled to obtain a new feature for better understanding ↳ [3,0,1] + [1,0,0] = [4,0,1] [7] 🟪 GCN2: Messages ↳ Multiply the node features with weights and biases ↳ Apply ReLU (negatives → 0) ↳ The result is one message per node [8] 🟪 GCN2: Pooling ↳ Multiply the messages with the adjacent matrix ↳ The result is a new feature per node [9] 🟪 GCN2: Visualize ↳ For node 3, visualize how messages are pooled to obtain a new feature for better understanding ↳ [1,2,4] + [1,3,5] + [0,0,1] = [2,5,10] [10] 🟦 FCN: Linear 1 + ReLU ↳ Multiply node features with weights and biases ↳ Apply ReLU (negatives → 0) ↳ The result is a new feature per node ↳ Unlike in GCN layers, no messages from other nodes are included. [11] 🟦 FCN: Linear 2 ↳ Multiply node features with weights and biases [12] 🟦 FCN: Sigmoid ↳ Apply the Sigmoid activation function ↳ The purpose is to obtain a probability value for each node ↳ One way to calculate Sigmoid by hand ✍️ is to use the approximation below: • >= 3 → 1 • 0 → 0.5 • <= -3 → 0 -- Outputs -- A: 0 (Very unlikely) B: 1 (Very likely) C: 1 (Very likely) D: 1 (Very likely) E: 0.5 (Neutral)show more

Tom Yeh
46,499 görüntüleme • 1 yıl önce
My bot made $12,300 while I was sleeping $25/month.... 4 open-source repos. Zero proprietary data One prompt to Claude: "14,000 wallets. Find every one with win rate above 70%" 4 minutes. 47 wallets Top 20 made more than the bottom 13,000 combined Three filters. Everything else gets killed: -> Claude's estimate vs market price gap under 7% - skip -> Order book depth under $500 - skip -> Resolution outside 4-48h window - skip 93% of markets die here. That's the point For everything that survives: -> 3 agents vote independently -> 2 agree - full position -> Disagree - no trade That filter killed 40% of losing trades before they happened Exit rules nobody talks about: -> 85% of expected move hit - out -> Volume spikes 3× in 10 minutes - follow smart money out -> 24h no movement - thesis stale - out Top wallets never hold to settlement Buy at 40¢, sell at 65¢, walk away The last 35 cents isn't worth the risk Day 2: +$370 Day 7: +$1,600 Day 14: +$8,100 Day 19: +$12,300 214 trades. 74% win rate. Sharpe 2.31 My friend asked what I do for work now I said I built something that works for me He asked if it needs a resume It doesn'tshow more

Trackmind
18,930 görüntüleme • 3 ay önce
I have not seen enough about the decision from... Mike Vrabel and Tim Kelly to go for 2 down by 8 last night. Here’s why I loved it: 1) NFL teams this season have been successful on 55% of two-point conversion attempts. The odds were in the Titans’ favor. 2) Will Levis was dealing in the 2nd half. 3) Titans still had all three timeouts and the two-minute warning. 4) Miami struggled to move the ball on offense all night. Their three scoring drives went for 12, 7, and 59 yards. 5) If successful on the two-point conversion, a stop on defense and a TD wins the game. If unsuccessful, you can still send it to OT. 6) Titans offense marched down the field, scored the TD to make it a one possession game and essentially told Miami, “we are going for two because we know you cannot stop us right now.” The odds are in your favor. It’s a good mathematical decision. You want to psych out an opposing offense? Give them the ball knowing they need to run the clock out, or you are going to have a chance to WIN the game, not send it to overtime. They saw what your offense just did to their defense. They saw your QB on the sideline screaming and hyping everyone up. Cutting the lead to six put WAY more pressure on the Dolphins offense. You want to hype up your defense? Put them back on the field knowing your offense just did their job. Put them back on the field knowing a stop and a TD wins it. At that point, they aren’t in the mindset of “we need a stop to have a chance to go to OT.” They are thinking, “let’s go out here, get a stop, and give our offense a chance to WIN.” There’s a fundamental difference in playing to WIN and playing NOT to LOSE. This was a decision by a coaching staff that was playing to WIN. Brilliant game by Vrabel and Kelly. Brilliant execution late in the game by the offense and the defense. Completely out-coached one of the best offensive minds in the game. #Titansshow more

Jake!
36,853 görüntüleme • 2 yıl önce
SIGNIFICANT SNOWFALL POTENTIAL FRIDAY NIGHT ******1ST CALL MAP****** 🎄... Merry Christmas to YOU!!! A pretty sizable snowstorm is expected across the region Friday night, with snow developing as early as Friday evening. I am very confident in a widespread 6–10" snowfall for a large portion of the Tri-State area, with lower confidence closer to NYC, Long Island, and the Jersey Shore where mixing remains a concern. At this time, I am keeping some mixing in play in central NJ/Long Island, but I’m not totally sold on how aggressive it becomes. While 4–6" looks like a very solid floor, several areas could easily boom to 6"+ if colder air locks in faster and holds longer than currently modeled. ZONE 1 – 6–10" OF SNOW This is the zone where cold air damming will be most prevalent, allowing snow to remain all snow for the duration of the event. Expect higher snow ratios, which could allow many areas to push toward double-digit totals, especially under any persistent banding. I could easily pull this zone into NYC and Nassau County as we see more model data. ZONE 2 – 4–6" OF SNOW This zone will likely start with heavy, wet snow, before transitioning to a lighter, fluffier snowfall as colder air works in. Some compaction is expected with lower snow ratios, but additional snow and mesoscale banding could still drive totals toward or above 6" in spots. ZONE 3 – 2–4" WITH MIXING This zone remains VERY uncertain. I could make a strong argument that cold air advection dominates, keeping this mostly snow and allowing totals to reach 4–6". However, low-level warm air transport on an easterly wind may introduce sleet, especially along the Jersey Shore (east of GSP) and into Suffolk County, which would eat into accumulations. I’ll be watching trends closely as this is shaping up to be a sharp cutoff storm where small shifts could have big impacts. 📺 On TV now with the latest on PIX11 Newsshow more

Mike Masco
242,183 görüntüleme • 6 ay önce