companydirectorylist.com  全球商業目錄和公司目錄
搜索業務,公司,産業 :


國家名單
美國公司目錄
加拿大企業名單
澳洲商業目錄
法國公司名單
意大利公司名單
西班牙公司目錄
瑞士商業列表
奧地利公司目錄
比利時商業目錄
香港公司列表
中國企業名單
台灣公司列表
阿拉伯聯合酋長國公司目錄


行業目錄
美國產業目錄












Canada-0-Manicuring 公司名錄

企業名單和公司名單:
120660 ONTARIO INC
公司地址:  492 Blanchard Dr,EMERYVILLE,ON,Canada
郵政編碼:  N0R
電話號碼:  5197274233
傳真號碼:  
免費電話號碼:  
手機號碼:  
網址:  
電子郵件:  
美國SIC代碼:  0
美國的SIC目錄:  
銷售收入:  
員工人數:  
信用報告:  
聯繫人:  

120822 CANADA INC
公司地址:  1841 Ch McGill RR 3,SAINTE-JULIENNE,QC,Canada
郵政編碼:  J0K
電話號碼:  4508313271
傳真號碼:  
免費電話號碼:  
手機號碼:  
網址:  
電子郵件:  
美國SIC代碼:  0
美國的SIC目錄:  Upholsterers
銷售收入:  Less than $500,000
員工人數:  1 to 4
信用報告:  Unknown
聯繫人:  

121 CONSULTING
公司地址:  7581 Jane St,CONCORD,ON,Canada
郵政編碼:  L4K
電話號碼:  9053266839
傳真號碼:  
免費電話號碼:  
手機號碼:  
網址:  
電子郵件:  
美國SIC代碼:  0
美國的SIC目錄:  Dry Wall Contractors
銷售收入:  $500,000 to $1 million
員工人數:  5 to 9
信用報告:  Unknown
聯繫人:  

1210010 ONTARIO INC
公司地址:  3105 Winston Churchill Blvd,MISSISSAUGA,ON,Canada
郵政編碼:  L5L
電話號碼:  9055693500
傳真號碼:  
免費電話號碼:  
手機號碼:  
網址:  
電子郵件:  
美國SIC代碼:  0
美國的SIC目錄:  Investments
銷售收入:  $1 to 2.5 million
員工人數:  1 to 4
信用報告:  Unknown
聯繫人:  

1213673 ONTARIO INC
公司地址:  6 Silver Maple Crt,BRAMPTON,ON,Canada
郵政編碼:  L6T
電話號碼:  9054592979
傳真號碼:  
免費電話號碼:  
手機號碼:  
網址:  
電子郵件:  
美國SIC代碼:  0
美國的SIC目錄:  
銷售收入:  
員工人數:  
信用報告:  
聯繫人:  

1214914 ONTARIO INC
公司地址:  5880 Falbourne,MISSISSAUGA,ON,Canada
郵政編碼:  L4T
電話號碼:  9058905880
傳真號碼:  
免費電話號碼:  
手機號碼:  
網址:  
電子郵件:  
美國SIC代碼:  0
美國的SIC目錄:  Plumbing Fixtures & Supplies-W
銷售收入:  $2.5 to 5 million
員工人數:  5 to 9
信用報告:  Very Good
聯繫人:  

121757 CANADA INC
公司地址:  8600 Rue Jarry E,ANJOU,QC,Canada
郵政編碼:  H1J
電話號碼:  5143522747
傳真號碼:  
免費電話號碼:  
手機號碼:  
網址:  
電子郵件:  
美國SIC代碼:  0
美國的SIC目錄:  Cloth Cutting
銷售收入:  Less than $500,000
員工人數:  1 to 4
信用報告:  Good
聯繫人:  

121983 CANADA LTEE
公司地址:  155 Boul Des Laurentides,LAVAL,QC,Canada
郵政編碼:  H7G
電話號碼:  4506621261
傳真號碼:  4183686252
免費電話號碼:  
手機號碼:  
網址:  
電子郵件:  
美國SIC代碼:  0
美國的SIC目錄:  Economic Development Agencies
銷售收入:  $500,000 to $1 million
員工人數:  1 to 4
信用報告:  Good
聯繫人:  

1221884 ONTARIO LTD
公司地址:  1729 Bank St,OTTAWA,ON,Canada
郵政編碼:  K1V
電話號碼:  6132244488
傳真號碼:  
免費電話號碼:  
手機號碼:  
網址:  
電子郵件:  
美國SIC代碼:  0
美國的SIC目錄:  Restaurants
銷售收入:  $500,000 to $1 million
員工人數:  
信用報告:  Good
聯繫人:  

1227257 ONT LTD
公司地址:  250 Shields Crt,MARKHAM,ON,Canada
郵政編碼:  L3R
電話號碼:  9054794232
傳真號碼:  9054790470
免費電話號碼:  
手機號碼:  
網址:  
電子郵件:  
美國SIC代碼:  0
美國的SIC目錄:  Fiber Optics
銷售收入:  $1 to 2.5 million
員工人數:  5 to 9
信用報告:  Unknown
聯繫人:  

123 RESALE
公司地址:  591 Lancaster St W,KITCHENER,ON,Canada
郵政編碼:  N2K
電話號碼:  5195799805
傳真號碼:  
免費電話號碼:  
手機號碼:  
網址:  
電子郵件:  
美國SIC代碼:  0
美國的SIC目錄:  Beauty Salons
銷售收入:  Less than $500,000
員工人數:  1 to 4
信用報告:  Good
聯繫人:  

Show 155-165 record,Total 600 record
First Pre [10 11 12 13 14 15 16 17 18 19] Next Last  Goto,Total 55 Page










公司新聞:
  • Clever: A Curated Benchmark for Formally Verified Code Generation
    We introduce CLEVER, the first curated benchmark for evaluating the generation of specifications and formally verified code in Lean The benchmark comprises of 161 programming problems; it evaluates both formal speci-fication generation and implementation synthesis from natural language, requiring formal correctness proofs for both
  • CLEVER: A Curated Benchmark for Formally Verified Code Generation
    TL;DR: We introduce CLEVER, a hand-curated benchmark for verified code generation in Lean It requires full formal specs and proofs No few-shot method solves all stages, making it a strong testbed for synthesis and formal reasoning
  • Evaluating the Robustness of Neural Networks: An Extreme Value. . .
    Our analysis yields a novel robustness metric called CLEVER, which is short for Cross Lipschitz Extreme Value for nEtwork Robustness The proposed CLEVER score is attack-agnostic and is computationally feasible for large neural networks
  • Forum - OpenReview
    Promoting openness in scientific communication and the peer-review process
  • Counterfactual Debiasing for Fact Verification
    579 In this paper, we have proposed a novel counter- factual framework CLEVER for debiasing fact- checking models Unlike existing works, CLEVER is augmentation-free and mitigates biases on infer- ence stage In CLEVER, the claim-evidence fusion model and the claim-only model are independently trained to capture the corresponding information
  • Contrastive Learning Via Equivariant Representation - OpenReview
    In this paper, we revisit the roles of augmentation strategies and equivariance in improving CL's efficacy We propose CLeVER (Contrastive Learning Via Equivariant Representation), a novel equivariant contrastive learning framework compatible with augmentation strategies of arbitrary complexity for various mainstream CL backbone models
  • On the Planning Abilities of Large Language Models : A Critical . . .
    While, as we mentioned earlier, there can be thorny “clever hans” issues about humans prompting LLMs, an automated verifier mechanically backprompting the LLM doesn’t suffer from these We tested this setup on a subset of the failed instances in the one-shot natural language prompt configuration using GPT-4, given its larger context window
  • Dual-Model Defense: Safeguarding Diffusion Models from Membership . . .
    Membership inference and memorization is a key challenge with diffusion models Mitigating such vulnerabilities is hence an important topic The idea of using an ensemble of model is clever
  • STAIR: Improving Safety Alignment with Introspective Reasoning
    One common approach is training models to refuse unsafe queries, but this strategy can be vulnerable to clever prompts, often referred to as jailbreak attacks, which can trick the AI into providing harmful responses Our method, STAIR (SafeTy Alignment with Introspective Reasoning), guides models to think more carefully before responding
  • Submissions | OpenReview
    Leaving the barn door open for Clever Hans: Simple features predict LLM benchmark answers Lorenzo Pacchiardi, Marko Tesic, Lucy G Cheke, Jose Hernandez-Orallo 27 Sept 2024 (modified: 05 Feb 2025) Submitted to ICLR 2025 Readers: Everyone




企業名錄,公司名錄
企業名錄,公司名錄 copyright ©2005-2012 
disclaimer