#chipstack
Explore tagged Tumblr posts
Text
Hi I liked this show


525 notes
ยท
View notes
Text
i never watched c2bc, but i have an ongoing thing where im making gijinkas for the characters based solely on my first impressions of them / only on their artworks :]
heres nine of the ones ive done so far, and let me know if youd like to see the others!









#art#my art#swanโs art#small artist#osc#object show#object shows#c2bc#clash to be champion#c2bc osc#osc c2bc#pound c2bc#glitchy c2bc#apple fritter c2bc#chipstack c2bc#princess hat c2bc#corky c2bc#fireball c2bc#service bell c2bc#statuette c2bc
60 notes
ยท
View notes
Text

procreate export qualitt is ass omg
#c2bc#original art#fireball c2bc#pound c2bc#object shows#osc art#c2bc chipstack#caramel apple c2bc#c2bc fanart#c2bc cheesewheel#c2bc maple leaf#are there seriously not tags for maple leaf? ๐๐
50 notes
ยท
View notes
Text
so i kindaโฆ drew the guy
#art#my art#c2bc#ctbc#clash 2 be champion#clash to be champion#chipstack c2bc#c2bc chipstack#c2bc fanart#not my design#gijinka#creechurly art
33 notes
ยท
View notes
Text
They are real in my heart...
CANON HUMAN DESIGNS FIREโผ๏ธโผ๏ธ๐ฅ๐ฅ๐ฅ
#clash to be champion#ctbc#c2bc#ctbc chipstack#ctbc apple fritter#chipstack x apple fritter#AAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA AAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA AAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA AAAAAAAAAAAAA PLS JUST LOOK AT THEM
14 notes
ยท
View notes
Text
Y'all how the hell am I supposed to draw chipstack as a human
9 notes
ยท
View notes
Text



how many divorce arcs with a green object am i gonna go through
#the only thing i know about this show is that firepound is canon hgdxcbhrdvb#my art#artists on tumblr#c2bc#ctbc#c2bc chipstack#ctbc chipstack#c2bc fireball#ctbc fireball#chipstack c2bc#chipstack ctbc#fireball c2bc#fireball ctbc#clash to be champion
18 notes
ยท
View notes
Text
Surge in Demand for 3D Semiconductor Packaging Anticipated
In a significant development for the semiconductor industry, there is an imminent surge in demand projected for 3D semiconductor packaging. This surge is largely attributed to substantial investments in research and development by major industry players.

The demand for 3D packaged chips is expected to escalate sharply, driven by advancements in semiconductor technology and the need for more efficient and compact electronic devices. Key players in the semiconductor market are intensifying their efforts in R&D to capitalize on this trend and gain a competitive edge in the market.
๐๐๐ช๐ฎ๐๐ฌ๐ญ ๐๐๐
๐๐๐ฆ๐ฉ๐ฅ๐ ๐๐จ๐ฉ๐ฒ ๐จ๐ ๐๐๐ฉ๐จ๐ซ๐ญ (๐๐ง๐๐ฅ๐ฎ๐๐ข๐ง๐ ๐
๐ฎ๐ฅ๐ฅ ๐๐๐, ๐๐ข๐ฌ๐ญ ๐จ๐ ๐๐๐๐ฅ๐๐ฌ & ๐
๐ข๐ ๐ฎ๐ซ๐๐ฌ, ๐๐ก๐๐ซ๐ญ)@ https://www.infinitivedataexpert.com/industry-report/3d-semiconductor-packaging-market#sample
Industry analysts suggest that the investments made by these leading companies are geared towards enhancing the performance, speed, and energy efficiency of semiconductor devices. This strategic focus underscores the growing importance of 3D semiconductor packaging in meeting the evolving demands of various technological applications.
The anticipated surge in demand for 3D packaged chips is not only poised to reshape the semiconductor landscape but also to accelerate innovation across industries reliant on advanced electronic components. As developments continue to unfold, stakeholders are closely monitoring these advancements to leverage the potential benefits offered by 3D semiconductor packaging.
๐๐๐ฒ ๐๐จ๐ฆ๐ฉ๐๐ง๐ข๐๐ฌ ๐๐ซ๐จ๐๐ข๐ฅ๐๐ - STMicroelectronics , SUSS MicroTec , Amkor Technology, Inc. , IBM , Intel Corporation , QUALCOMM TECHNOLOGIES INTERNATIONAL, LTD. , Jiangsu SHEMAR Electric Co., Ltd. , Siliconware Precision Industries , TSMC , Micron Technology , 3M , AMD , Samsung Electronics , TOKYO ELECTRON LIMITED , Toshiba Corporation , United Microelectronics Corporation (UMC) , Xilinx
๐๐๐ช๐ฎ๐๐ฌ๐ญ ๐๐๐
๐๐๐ฆ๐ฉ๐ฅ๐ ๐๐จ๐ฉ๐ฒ ๐จ๐ ๐๐๐ฉ๐จ๐ซ๐ญ (๐๐ง๐๐ฅ๐ฎ๐๐ข๐ง๐ ๐
๐ฎ๐ฅ๐ฅ ๐๐๐, ๐๐ข๐ฌ๐ญ ๐จ๐ ๐๐๐๐ฅ๐๐ฌ & ๐
๐ข๐ ๐ฎ๐ซ๐๐ฌ, ๐๐ก๐๐ซ๐ญ)@ https://www.infinitivedataexpert.com/industry-report/3d-semiconductor-packaging-market#sample
#3DSemiconductor#SemiconductorPackaging#AdvancedPackaging#ChipStacking#SystemInPackage#HeterogeneousIntegration#MultiChipModule#InterconnectTechnology#Microelectronics#FutureOfSemiconductors
0 notes
Note
Hello! Could you maybe do either more lee!j3ster hat or lee!ch1pstackk :33 I don't mind whos the lee on whoever you choose..love your art.btw.its real.cute
-@gl1tchlee
I'm terrible at drawing chipstack ๐ญ
I hope you like some ler fireball
89 notes
ยท
View notes
Text
Llama 4 Scout and GPT-4.1-nano Models In Azure AI Foundry

Microsoft Azure is offering new fine tuning models and approaches in Azure AI Foundry to help organisations create domain-specific AI systems. The GPT-4.1-nano and Llama 4 Scout models now have Supervised Fine-Tuning (SFT), and o4-mini will soon get Reinforcement Fine-Tuning (RFT).
RFT with o4-mini
RFT is touted to outperform Azure AI Foundry's model fine-tuning. It adds control to match complex business logic with model behaviour. It uses a feedback loop to apply reinforcement learning during training. Developers supply a task-specific grader that grades model outputs based on specified criteria. Train the model to optimise against this reward signal to gradually create replies that match the anticipated behaviour. RFT with o4-mini teaches a model to solve problems, while supervised fine-tuning replicates sample outputs.
Purpose: RFT improves model decision-making in dynamic or high-stakes scenarios by bringing models closer to optimum behaviour for real-world applications and teaching them what to generate and why.
The Model: The o4-mini will soon support this. First adjustable compact reasoning model is the o4-mini. It is one of OpenAI's latest multitasking models and excels at organised reasoning and chain-of-thought suggestions.
RFT with o4-mini is expected to expand use cases that require contextual awareness, adaptive reasoning, and domain-specific logic while maintaining fast inference performance.
It gives developers a lightweight, strong platform for exact adjustment of domain-specific reasoning tasks with high stakes while maintaining computational economy and speed for real-time applications. RFT-tuned models may improve mistake correction and data efficiency with new prompts, requiring fewer instances to match supervised techniques.
RFT is best for domain-specific behaviour, flexibility, and iterative learning. Domain-Specific Operational Standards, where internal procedures deviate from industry norms; Custom Rule Implementation, where decision logic is highly specific and cannot be easily captured through static prompts; or High Decision-Making Complexity, where results depend on navigating many subcases or dynamically weighing multiple inputs, should be considered.
The legal software startup DraftWise increased search result quality by 30% by employing RFT to improve contract creation and review reasoning models. Contoso Wellness is a fictitious illustration of how RFT may adapt to client engagement business principles, including identifying the optimal client interactions based on subtle trends.
Accordance OpenAI listed early adopters like Artificial Intelligence (which improved tax analysis by 39%), Ambience Healthcare (which improved medical coding), Harvey (which improved legal document citation extraction), Runloop (which produced legitimate Stripe API snippets), Milo (which improved complex calendar prompt output quality), and SafetyKit (which improved content moderation accuracy). Partners like ChipStack and Thomson Reuters improved performance.
RFT Usage: First, design a Python grading function that assigns a score between 0 and 1, create a high-quality prompt dataset, start a training job via API or dashboard, and analyse and iterate.
Pricing and Availability: Azure AI Foundry will offer RFT with o4-mini in Sweden Central and East US2. Over the OpenAI API, verified organisations can use o4-mini for RFT. Time spent actively training determines training costs, especially $100 per hour for core training. Organisations that provide datasets for research receive a 50% training cost rebate.
SFT for GPT-4.1-nano
It is believed that SFT fine-tunes the GPT-4.1-nano model using this traditional manner. Add company-specific language, procedures, and structured outputs to your SFT model to tailor it. Developers can contribute tagged datasets to train the nano model for specific use cases.
The GPT-4.1-nano model supports SFT. A compact but powerful foundation model for high-throughput and cost-sensitive workloads, this architecture. It's the company's fastest and cheapest model. Benchmarks are good, and it provides a million-token context window.
Fine-tuning GPT-4.1-nano enables Precision at Scale (tailoring responses while maintaining speed and efficiency), Enterprise-Grade Output (aligning with business processes and tone-of-voice), and a lightweight, deployable model (ideal for latency and cost-sensitive scenarios). With faster inference and lower computational costs than larger models, it offers unmatched speed and affordability.
It's best for internal knowledge assistants (who follow business rules) and customer support automation (which handles thousands of tickets per hour). It enables domain-specific categorisation, extraction, and conversational agents.
GPT-4.1-nano is ideal for distillation due to its compactness, speed, and power. To make 4.1-nano smarter, GPT-4.1 or o4 can provide training data.
Accessibility: Azure AI Foundry Central Sweden and North Central United States now offer 4.1-nano Supervised Fine-Tuning. GPT-4.1 mini supports SFT via OpenAI API for all paid API tiers. GitHub-Azure AI Foundry connectors will allow this fine-tuning strategy.
Model Llama 4 Scout
Model: Fine-tuning help Introducing Meta's Llama 4 Scout. It is a cutting-edge model with 17 billion active parameters. It offers the industry's widest context window of 10M tokens. It can infer on a single H100 GPU. It is a top-tier open source model that outperforms previous Llama models.
Accessibility: Azure AI Foundry managed computing now allows GPU-based Llama 4 fine-tuning and inference. It's in Azure Machine Learning and the Azure AI Foundry model catalogue. Availability through these components allows more hyperparameter customisation than serverless.
These Azure AI Foundry fine-tuning features aim to expand model customisation with efficiency, flexibility, and trust.
#Llama4Scout#ReinforcementFineTuning#Llama4Scoutmodel#SupervisedFineTuning#finetuningmethod#AzureAIFoundry#technology#technologynews#TechNews#news#govindhtech
0 notes
Photo

๐พ๐TODAY is the DAY!! ๐ฅณโผ๏ธ โ@Crunklesteinโs Critters 2โ goes down in just a few hrs at headyhawaii.com where weโll be releasing fresh chipstack gems to you all! ๐ช๐ผ Meet โLiamโ, the unbelievably INSANE UV full multi chipstack Elephant Rig that is charging through making his way to the showโฆ catch him TODAY! ๐๐ Weโll be going LIVE right here on IG very soonโฆ tune IN!! ๐ฅ๐คณ ๐ธ by @iamjeffdimarco. #crunklestein #crunklesteinglass #capncrunk #capncrunkglass #crunkglass #chipstack #chipstacks #milli #millie #millifiori #murrini #murrine #uvglass #glasselephant #glassart #boroart https://www.instagram.com/p/CaKwAqoJGgx/?utm_medium=tumblr
#crunklestein#crunklesteinglass#capncrunk#capncrunkglass#crunkglass#chipstack#chipstacks#milli#millie#millifiori#murrini#murrine#uvglass#glasselephant#glassart#boroart
6 notes
ยท
View notes
Photo

The poor printer has become an overflow workspace. ๐ . . . . . #poker #pokerchips #pokerchipcase #playingcards #productdesign #randd #chipstack #chipporn #livepoker #holdem https://www.instagram.com/p/CmZy6T4S6Yr/?igshid=NGJjMDIxMWI=
#poker#pokerchips#pokerchipcase#playingcards#productdesign#randd#chipstack#chipporn#livepoker#holdem
1 note
ยท
View note
Photo

#photo #rungood #hayleyphotography #poker #rungood #joplin #tana #thisismymoment #rungoodlife #proKO #photobyhayley #poker4breakfast #friday #cash #mtt #sng #livepoker #run+ev #chipstacks #chippornโ โฅโฃโฆ #cashcowspokertv https://www.instagram.com/p/B9KGtroAP7u/?igshid=avil79vbculn
#photo#rungood#hayleyphotography#poker#joplin#tana#thisismymoment#rungoodlife#proko#photobyhayley#poker4breakfast#friday#cash#mtt#sng#livepoker#run#chipstacks#chippornโ โฅโฃโฆ#cashcowspokertv
0 notes
Photo

#WSOP2018 #ChipStack #PokerMom ๐๐ป๐๐ฅ
0 notes