Cerebras Systems AI citations
Preview — this brand isn't onboarded yet
Build: 12/8/2025, 8:42:51 PM
Gathering citations and mentions for "Cerebras Systems". This page will populate as data is found.
Search our existing brands or suggest one:
Coverage
Do you want to track this brand?
7 days Free trial, you can cancel anytime.
Competitors
Explore similar brands
Google AdsWikipediaHubSpotnvidiaappleHorizon RoboticsGraphcoreMicrosoftQualcommIntelEtched.aiAMDCerebrasamazonKinaraHewlett Packard Enterprise (HPE)Dell TechnologiesStandalone Questionsserankingtechradarhai stanfordbuiltiniot-analyticssemrushHarvard Universitygartneraccenturemckinsey.comgocatalanttomsguideKnowledgeprocurementtacticsrcrwirelesscourseraahrefssearchengine journalbacklinkoicertisoneflowthetimes cowomanandhomeBritishmadeclothingrtingssoundguysplugthevergebestbuysinglegrainvoiceflowtelcotitans
Mentions
Best ai chip and hardware companies
chatgpt
Here are some of the top AI chip & hardware companies leading in accelerators, AI processors, and next-gen compute: {{[[NVIDIA]]:https://www.nvidia.com}} Ñ dominant in GPUs for AI training & inference (Blackwell, Grace, etc.) TechTarget +1 {{[[AMD]]:https://www.amd.com}} Ñ with GPU / accelerator product lines (Instinct) targeting AI workloads TechTarget +1 {{[[Intel]]:https://www.intel.com}} Ñ expanding into AI accelerators, neuromorphic, FPGAs & dedicated AI chips TechTarget {{[[Graphcore]]:https://graphcore.ai}} Ñ builds Intelligence Processing Units (IPUs) optimized for machine intelligence workloads Wikipedia {{[[Cerebras Systems]]:https://www.cerebras.ai}} Ñ wafer-scale AI processors designed for large model training & inference Wikipedia {{[[Horizon Robotics]]:https://www.horizonrobotics.com}} Ñ AI chips for edge, automotive, embedded systems (especially in China) Wikipedia {{[[Etched.ai]]:https://www.etched.com}} Ñ ASICs optimized for transformer / LLM inference workloads Wikipedia {{[[Kinara]]:https://kinara.ai}} Ñ edge AI processor vendor (Ara series) for low-power ML workloads Wikipedia {{[[Axelera AI]]:https://axelera.ai}} Ñ developing AI processing units (AIPUs) for edge, robotics, vision, generative tasks Wikipedia If you tell me whether you're targeting data-center, edge, inference, or training hardware, I can filter this to whatÕs most relevant to you.
perplexity
{{[[NVIDIA]]:https://aimagazine.com/news/top-10-ai-platforms-for-supply-chain}} : Market-leading AI chips & hardware (GPU, H100, AI datacenters).
{{[[AMD]]:https://aimagazine.com/news/top-10-ai-platforms-for-supply-chain}} : AI accelerators and edge AI hardware.
claude
Top AI chip and hardware companies:
1. {{[[NVIDIA]]:https://www.nvidia.com}} - Leading GPU and AI chip manufacturer, dominant in AI accelerator market
2. {{[[AMD]]:https://www.amd.com}} - Strong competitor in GPU and AI chip technology
3. {{[[Intel]]:https://www.intel.com}} - Major player in AI hardware and processor development
4. {{[[Google]]:https://cloud.google.com/tpu}} - Tensor Processing Units (TPUs) for AI acceleration
5. {{[[Apple]]:https://www.apple.com}} - Custom AI chips like M-series and Neural Engine
6. {{[[Qualcomm]]:https://www.qualcomm.com}} - AI chips for mobile and edge computing
7. {{[[Graphcore]]:https://www.graphcore.ai}} - Specialized AI processing units
8. {{[[Amazon]]:https://aws.amazon.com/machine-learning/inferentia/}} - Custom AI inference chips for AWS
9. {{[[Microsoft]]:https://www.microsoft.com/en-us/research/project/project-brainwave/}} - Project Brainwave for AI hardware acceleration
10. {{[[Cerebras]]:https://www.cerebras.net}} - Largest AI chip and wafer-scale computing platform
google ai overview
Leading AI chip design and manufacturing companies include:
{{[[NVIDIA]]:https://www.nvidia.com/en-us/}}, {{[[Intel]]:https://www.intel.com/content/www/us/en/homepage.html}}, {{[[AMD]]:https://www.amd.com/en.html}}, {{[[Google]]:https://cloud.google.com/tpu}} (for TPUs), {{[[Qualcomm]]:https://www.qualcomm.com/}} (for edge AI), {{[[Cerebras Systems]]:https://www.cerebras.net/}}, and {{[[Graphcore]]:https://www.graphcore.ai/}}.
Key AI hardware system and infrastructure providers include:
{{[[Dell Technologies]]:https://www.dell.com/en-us/}}, {{[[Hewlett Packard Enterprise (HPE)]]:https://www.hpe.com/us/en/home.html}}, {{[[Lenovo]]:https://www
Ai brand visibility
chatgpt
perplexity
Here are several high-quality sources on prominent AI brands and companies, with key details. Each brand is in [brackets].
## Notable AI Brands & Companies
| Brand | What they do / Why they stand out |
|-------|-----------------------------------|
| [OpenAI] | One of the leaders in language models, known for ChatGPT, GPT-4 etc. |
| [Google] | Major in AI research & development (e.g. Gemini models), large ecosystem across cloud, multimodal AI etc. |
| [Microsoft] | Key player in enterprise AI, cloud services, partnership with other AI firms. |
| [NVIDIA] | Builds hardware and software for training/inference; GPUs are critical to most large-scale AI. |
| [Anthropic] | Focuses on safe, advanced models (e.g. "Claude" series) competing at the frontier. |
| [Mistral AI] | From France, open-source or open-weight model developer; offering high-performance transparent AI models. |
| [DeepSeek] | Chinese company producing competitive open/open-weight models; low cost; expanding into device integration. |
| [Aleph Alpha] | Germany-based; working on large language models with emphasis on transparency, multilingual capability, European regulation compliance. |
| [Cerebras Systems] | Specialises in AI compute hardware/systems (e.g. wafer-scale engines) for training/inference at large scale. |
| [Qodo] | (formerly Codium) Focused on code integrity / tools for code generation & testing throughout development. |
## Additional Resources & Reports
• Stanford HAI: 2025 AI Index Report — trends, model scale, industrial vs academic contributions. https://hai.stanford.edu/ai-index/2025-ai-index-report
• "Generative AI in Academic Writing: A Comparison of DeepSeek, Qwen, ChatGPT, Gemini, Llama, Mistral, and Gemma" — a comparative evaluation paper. https://arxiv.org/abs/2503.04765
• EXAONE 3.5 by LG AI Research — strong instruction-tuned models for real-world tasks. https://arxiv.org/abs/2412.04862
## Sources:
https://builtin.com/ai-companies-roundup
https://iot-analytics.com/ai-companies/
https://en.wikipedia.org/wiki/DeepSeek
https://en.wikipedia.org/wiki/Aleph_Alpha
https://en.wikipedia.org/wiki/Cerebras
https://en.wikipedia.org/wiki/Qodo
https://hai.stanford.edu/ai-index/2025-ai-index-report
https://arxiv.org/abs/2503.04765
https://arxiv.org/abs/2412.04862
claude
google ai overview