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Company: "amd"
Execuhires Round 2: Scale-Meta, Lamini-AMD, and Instacart-OpenAI
o3-pro o3 o1-pro gpt-4o gpt-4.1 gpt-4.1-mini gpt-4.1-nano meta-ai-fair scale-ai lamini amd openai gemini google anthropic model-release benchmarking reasoning fine-tuning pricing model-performance direct-preference-optimization complex-problem-solving alexandr_wang sharon_zhou fidji_simo sama jack_rae markchen90 kevinweil gdb gregkamradt lechmazur wesrothmoney paul_cal imjaredz cto_junior johnowhitaker polynoamial scaling01
Meta hires Scale AI's Alexandr Wang to lead its new "Superintelligence" division following a $15 billion investment for a 49% stake in Scale. Lamini's Sharon Zhou joins AMD as VP of AI under Lisa Su, while Instacart's Fidji Simo becomes CEO of Apps at OpenAI under Sama. Meta offers over $10 million/year compensation packages to top researchers, successfully recruiting Jack Rae from Gemini. OpenAI releases o3-pro model to ChatGPT Pro users and API, outperforming o3 and setting new benchmarks like Extended NYT Connections and SnakeBench. Despite being slower than o1-pro, o3-pro excels in reasoning and complex problem-solving. OpenAI cuts o3 pricing by 80%, making it cheaper than GPT-4o and pressuring competitors like Google and Anthropic to lower prices. Users can now fine-tune the GPT-4.1 family using direct preference optimization (DPO) for subjective tasks.
not much happened today
jamba-1.6 mistral-ocr qwq-32b o1 o3-mini instella llama-3-2-3b gemma-2-2b qwen-2-5-3b babel-9b babel-83b gpt-4o claude-3-7-sonnet ai21-labs mistral-ai alibaba openai amd anthropic hugging-face multimodality ocr multilinguality structured-output on-prem-deployment reasoning benchmarking api open-source model-training gpu-optimization prompt-engineering function-calling
AI21 Labs launched Jamba 1.6, touted as the best open model for private enterprise deployment, outperforming Cohere, Mistral, and Llama on benchmarks like Arena Hard. Mistral AI released a state-of-the-art multimodal OCR model with multilingual and structured output capabilities, available for on-prem deployment. Alibaba Qwen introduced QwQ-32B, an open-weight reasoning model with 32B parameters and cost-effective usage, showing competitive benchmark scores. OpenAI released o1 and o3-mini models with advanced API features including streaming and function calling. AMD unveiled Instella, open-source 3B parameter language models trained on AMD Instinct MI300X GPUs, competing with Llama-3.2-3B and others. Alibaba also released Babel, open multilingual LLMs performing comparably to GPT-4o. Anthropic launched Claude 3.7 Sonnet, enhancing reasoning and prompt engineering capabilities.
not much happened today
rstar-math o1-preview qwen2.5-plus qwen2.5-coder-32b-instruct phi-4 claude-3.5-sonnet openai anthropic alibaba microsoft cohere langchain weights-biases deepseek rakuten rbc amd johns-hopkins math process-reward-model mcts vision reasoning synthetic-data pretraining rag automation private-deployment multi-step-workflow open-source-dataset text-embeddings image-segmentation chain-of-thought multimodal-reasoning finetuning recursive-self-improvement collaborative-platforms ai-development partnerships cuda triton ai-efficiency ai-assisted-coding reach_vb rasbt akshaykagrawal arankomatsuzaki teortaxestex aidangomez andrewyng
rStar-Math surpasses OpenAI's o1-preview in math reasoning with 90.0% accuracy using a 7B LLM and MCTS with a Process Reward Model. Alibaba launches Qwen Chat featuring Qwen2.5-Plus and Qwen2.5-Coder-32B-Instruct models enhancing vision-language and reasoning. Microsoft releases Phi-4, trained on 40% synthetic data with improved pretraining. Cohere introduces North, a secure AI workspace integrating LLMs, RAG, and automation for private deployments. LangChain showcases a company research agent with multi-step workflows and open-source datasets. Transformers.js demos released for text embeddings and image segmentation in JavaScript. Research highlights include Meta Meta-CoT for enhanced chain-of-thought reasoning, DeepSeek V3 with recursive self-improvement, and collaborative AI development platforms. Industry partnerships include Rakuten with LangChain, North with RBC supporting 90,000 employees, and Agent Laboratory collaborating with AMD and Johns Hopkins. Technical discussions emphasize CUDA and Triton for AI efficiency and evolving AI-assisted coding stacks by Andrew Ng.
not much happened this weekend
o3 o1 opus sonnet octave openai langchain hume x-ai amd nvidia meta-ai-fair hugging-face inference-time-scaling model-ensembles small-models voice-cloning fine-math-dataset llm-agent-framework benchmarking software-stack large-concept-models latent-space-reasoning mechanistic-interpretability planning speech-language-models lisa-su clementdelangue philschmid neelnanda5
o3 model gains significant attention with discussions around its capabilities and implications, including an OpenAI board member referencing "AGI." LangChain released their State of AI 2024 survey. Hume announced OCTAVE, a 3B parameter API-only speech-language model with voice cloning. x.ai secured a $6B Series C funding round. Discussions highlight inference-time scaling, model ensembles, and the surprising generalization ability of small models. New tools and datasets include FineMath, the best open math dataset on Hugging Face, and frameworks for LLM agents. Industry updates cover a 5-month benchmarking of AMD MI300X vs Nvidia H100 + H200, insights from a meeting with Lisa Su on AMD's software stack, and open AI engineering roles. Research innovations include Large Concept Models (LCM) from Meta AI, Chain of Continuous Thought (Coconut) for latent space reasoning, and mechanistic interpretability initiatives.
not much happened today
llama-3-2-vision gpt-2 meta-ai-fair ollama amd llamaindex gemini gitpod togethercompute langchainai weights-biases stanfordnlp deeplearningai model-scaling neural-networks multi-gpu-support skip-connections transformers healthcare-ai automated-recruitment zero-trust-security small-language-models numerical-processing chain-of-thought optical-character-recognition multi-agent-systems agent-memory interactive-language-learning bindureddy fstichler stasbekman jxmnop bindureddy omarsar0 giffmana rajammanabrolu
This week in AI news highlights Ollama 0.4 supporting Meta's Llama 3.2 Vision models (11B and 90B), with applications like handwriting recognition. Self-Consistency Preference Optimization (ScPO) was introduced to improve model consistency without human labels. Discussions on model scaling, neural networks resurgence, and AMD's multi-GPU bandwidth challenges were noted. The importance of skip connections in Transformers was emphasized. In healthcare, less regulation plus AI could revolutionize disease treatment and aging. Tools like LlamaParse and Gemini aid automated resume insights. Gitpod Flex demonstrated zero-trust architecture for secure development environments. Research includes surveys on Small Language Models (SLMs), number understanding in LLMs, and DTrOCR using a GPT-2 decoder for OCR. Multi-agent systems in prediction markets were discussed by TogetherCompute and LangChainAI. Community events include NeurIPS Happy Hour, NLP seminars, and courses on Agent Memory with LLMs as operating systems.
Nothing much happened today
chameleon-7b chameleon-30b xlam-1b gpt-3.5 phi-3-mini mistral-7b-v3 huggingface truth_terminal microsoft apple openai meta-ai-fair yi axolotl amd salesforce function-calling multimodality model-releases model-updates model-integration automaticity procedural-memory text-image-video-generation
HuggingFace released a browser-based timestamped Whisper using transformers.js. A Twitter bot by truth_terminal became the first "semiautonomous" bot to secure VC funding. Microsoft and Apple abruptly left the OpenAI board amid regulatory scrutiny. Meta is finalizing a major upgrade to Reddit comments addressing hallucination issues. The Yi model gained popularity on GitHub with 7.4K stars and 454 forks, with potential integration with Axolotl for pregeneration and preprocessing. AMD technologies enable household/small business AI appliances. Meta released Chameleon-7b and Chameleon-30b models on HuggingFace supporting unified text and image tokenization. Salesforce's xLAM-1b model outperforms GPT-3.5 in function calling despite its smaller size. Anole pioneered open-source multimodal text-image-video generation up to 720p 144fps. Phi-3 Mini expanded from 3.8B to 4.7B parameters with function calling, competing with Mistral-7b v3. "System 2 distillation" in humans relates to automaticity and procedural memory.
Not much happened today
jamba-v0.1 command-r gpt-3.5-turbo openchat-3.5-0106 mixtral-8x7b mistral-7b midnight-miqu-70b-v1.0.q5_k_s cohere lightblue openai mistral-ai nvidia amd hugging-face ollama rag mixture-of-experts model-architecture model-analysis debate-persuasion hardware-performance gpu-inference cpu-comparison local-llm stable-diffusion ai-art-bias
RAGFlow open sourced, a deep document understanding RAG engine with 16.3k context length and natural language instruction support. Jamba v0.1, a 52B parameter MoE model by Lightblue, released but with mixed user feedback. Command-R from Cohere available on Ollama library. Analysis of GPT-3.5-Turbo architecture reveals about 7 billion parameters and embedding size of 4096, comparable to OpenChat-3.5-0106 and Mixtral-8x7B. AI chatbots, including GPT-4, outperform humans in debates on persuasion. Mistral-7B made amusing mistakes on a math riddle. Hardware highlights include a discounted HGX H100 640GB machine with 8 H100 GPUs bought for $58k, and CPU comparisons between Epyc 9374F and Threadripper 1950X for LLM inference. GPU recommendations for local LLMs focus on VRAM and inference speed, with users testing 4090 GPU and Midnight-miqu-70b-v1.0.q5_k_s model. Stable Diffusion influences gaming habits and AI art evaluation shows bias favoring human-labeled art.
Sama says: GPT-5 soon
gpt-5 mixtral-7b gpt-3.5 gemini-pro gpt-4 llama-cpp openai codium thebloke amd hugging-face mixture-of-experts fine-tuning model-merging 8-bit-optimization gpu-acceleration performance-comparison command-line-ai vector-stores embeddings coding-capabilities sam-altman ilya-sutskever itamar andrej-karpathy
Sam Altman at Davos highlighted that his top priority is launching the new model, likely called GPT-5, while expressing uncertainty about Ilya Sutskever's employment status. Itamar from Codium introduced the concept of Flow Engineering with AlphaCodium, gaining attention from Andrej Karpathy. On the TheBloke Discord, engineers discussed a multi-specialty mixture-of-experts (MOE) model combining seven distinct 7 billion parameter models specialized in law, finance, and medicine. Debates on 8-bit fine-tuning and the use of bitsandbytes with GPU support were prominent. Discussions also covered model merging using tools like Mergekit and compatibility with Alpaca format. Interest in optimizing AI models on AMD hardware using AOCL blas and lapack libraries with llama.cpp was noted. Users experimented with AI for command line tasks, and the Mixtral MoE model was refined to surpass larger models in coding ability. Comparisons among LLMs such as GPT-3.5, Mixtral, Gemini Pro, and GPT-4 focused on knowledge depth, problem-solving, and speed, especially for coding tasks.
12/31/2023: Happy New Year
mistral-7b mixtral lm-studio mistral-ai hugging-face amd fine-tuning hardware-optimization vram emotional-intelligence model-deployment integration gpu-optimization software-updates
LM Studio community discussions highlight variations and optimizations in Dolphin and Mistral 7b models, focusing on hardware-software configurations and GPU vRAM impact on processing speed. Challenges with Mixtral model deployment on local machines and workarounds for downloading models from HuggingFace in restricted regions were addressed. Users explored enhancing AI's emotional intelligence and personalities through extended prompts, referencing research on emotional stimuli in large language models. The community also discussed hardware setups for budget AI compute servers, integration issues with ChromaDB and Autogen, and shared positive feedback on LM Studio's usability and UI. Celebrations for the New Year added a social touch to the guild interactions.
12/27/2023: NYT vs OpenAI
phi2 openhermes-2.5-mistral-7b llama-2-7b llama-2-13b microsoft-research mistral-ai apple amd model-performance fine-tuning llm-api gpu-optimization hardware-configuration multi-gpu inference-speed plugin-release conversation-history
The LM Studio Discord community extensively discussed model performance comparisons, notably between Phi2 by Microsoft Research and OpenHermes 2.5 Mistral 7b, with focus on U.S. history knowledge and fine-tuning for improved accuracy. Technical challenges around LLM API usage, conversation history maintenance, and GPU optimization for inference speed were addressed. Hardware discussions covered DDR4 vs DDR5, multi-GPU setups, and potential of Apple M1/M3 and AMD AI CPUs for AI workloads. The community also announced the ChromaDB Plugin v3.0.2 release enabling image search in vector databases. Users shared practical tips on running multiple LM Studio instances and optimizing resource usage.