share_log

Bullfrog AI Holdings, Inc. Prices IPO at $6.38 Per Share (BFRG)

Bullfrog AI Holdings, Inc. Prices IPO at $6.38 Per Share (BFRG)

牛蛙人工智能控股公司以每股 6.38 美元(BFRG)定價首次公開招股
Defense World ·  2022/12/30 14:21

Bullfrog AI Holdings, Inc. (BFRG) expects to raise $8 million in an initial public offering on Tuesday, January 3rd, IPO Scoop reports. The company plans to issue 1,300,000 shares at a price of $6.38 per share.

據IPO Scoop報道,牛蛙人工智能控股公司(BFRG)預計將於1月3日(星期二)首次公開募股(IPO),籌集800萬美元。該公司計劃以每股6.38美元的價格發行130萬股。

WallachBeth Capital and ViewTrade Securities acted as the underwriters for the IPO.

WallachBeth Capital和ViewTrade Securities擔任此次IPO的承銷商。

Bullfrog AI Holdings, Inc. provided the following description of their company for its IPO: "(Note: This is a unit IPO of 1.32 million units (1,317,647 units) at $6.375 per unit. Each unit consists of one share of common stock and one tradeable warrant to buy one share of stock. Bullfrog AI Holdings, Inc. filed an S-1/A dated Dec. 8, 2022, in which it disclosed new proposed symbols for its stock and its warrants to trade on the NASDAQ – BRFG for the stock and BFRGW for the warrants – and updated its financial statements through Sept. 30, 2022. The company filed its S-1 on Oct. 19, 2022, and disclosed terms for its unit IPO – 1.32 million units (1,317,647 at $6.375 per unit – to raise $8.4 million. Bullfrog AI Holdings filed confidential IPO documents on June 10, 2022. A 1-for-7 reverse stock split will take place before the IPO closes.) We use artificial intelligence and machine learning to advance medicines for both internal and external projects. We are committed to increasing the probability of success and decreasing the time and cost involved in developing therapeutics. Most current AI/ML platforms still fall short in their ability to synthesize disparate, high-dimensional data for actionable insight. Our platform technology, named, bfLEAP, is an analytical AI/ML platform derived from technology developed at The Johns Hopkins University Applied Physics Laboratory (JHU-APL), which is able to surmount the challenges of scalability and flexibility currently hindering researchers and clinicians by providing a more precise1, multi-dimensional understanding of their data. We are deploying bfLEAP for use at several critical stages of development for internal programs and through strategic partnerships and collaborations with the intention of streamlining data analytics in therapeutics development, decreasing the overall development costs by decreasing failure rates for new therapeutics, and impacting the lives of countless patients that may otherwise not receive the therapies they need. The bfLEAP platform utilizes both supervised and unsupervised machine learning – as such, it is able to reveal real/meaningful connections in the data without the need for a prior hypothesis. Supervised machine learning uses labeled input and output data, while an unsupervised learning algorithm does not. In supervised learning, the algorithm "learns" from the training dataset by iteratively making predictions on the data and adjusting for the correct answer. Unsupervised learning, also known as unsupervised machine learning, uses machine learning algorithms to analyze and cluster unlabeled datasets. These algorithms discover hidden patterns or data groupings without the need for human intervention. Algorithms used in the bfLEAP platform are designed to handle highly imbalanced data sets to successfully identify combinations of factors that are associated with outcomes of interest. Together with our strategic partners and collaborators, our primary goal is to improve the odds of success at any stage of pre-clinical and clinical therapeutics development. Our primary business model is improving the success and efficiency of drug development which is accomplished either through acquisition of drugs or partnerships and collaborations with companies that are developing drugs. We hope to accomplish this through strategic acquisitions of current clinical stage and failed drugs for in-house development, or through strategic partnerships with biopharmaceutical industry companies. We are able to pursue our drug asset enhancement business by leveraging a powerful and proven AI/ML platform (trade name: bfLEAP) initially derived from technology developed at JHU-APL. We believe the bfLEAP analytics platform is a potentially disruptive tool for analysis of pre-clinical and/or clinical data sets, such as the robust pre-clinical and clinical trial data sets being generated in translational R&D and clinical trial settings. In November 2021, we amended the agreement with JHU-APL to include additional advanced AI technology. Our platform is agnostic to the disease indication or treatment modality and therefore we believe that it is of value in the development of biologics or small molecules. The process for our drug asset enhancement program is to: ● acquire the rights to a drug from a biopharmaceutical industry company or academia, ● use the proprietary bfLEAP AI/ML platform to determine a multi-factorial profile for a patient that would best respond to the drug, ● rapidly conduct a clinical trial to validate the drug's use for the defined "high-responder" population, and ● divest/sell the rescued drug asset with the new information back to a large player in the pharma industry, following positive results of the clinical trial. **Note: For the nine months that ended Sept. 30, 2022, the company had a net loss from operations of about $2.11 million ($2,106,969) and no revenues, the prospectus says. ".

牛蛙人工智能控股公司在其首次公開募股中提供了以下對其公司的描述:“(注:這是一次132萬個單位(1317647個單位)的單位首次公開募股,每單位6.375美元。每個單位包括一股普通股和一股購買一股股票的可交易認股權證。牛蛙AI控股有限公司提交了一份日期為2022年12月8日的S-1/A文件,其中披露了其股票和在納斯達克交易的權證的新擬議代碼-BRFG購買股票,BFRGW購買認股權證-並更新了截至9月1日的財務報表。30,2022年。該公司於2022年10月19日提交了S-1文件,並披露了132萬個單位的首次公開募股條款(1317647個單位,每單位6.375美元),以籌集840萬美元。牛蛙AI控股於2022年6月10日提交了保密的IPO文件。7股1股的反向股票拆分將在IPO結束前進行。)我們使用人工智能和機器學習來推進內部和外部項目的藥物。我們致力於增加成功的可能性,並減少開發療法所涉及的時間和成本。目前大多數AI/ML平臺在綜合不同的高維數據以獲得可操作的洞察力方面仍然存在不足。我們的平臺技術名為bfLEAP,是一個分析性AI/ML平臺,源自約翰霍普金斯大學應用物理實驗室(JHU-APL)開發的技術,通過提供對他們的數據的更精確、多維的理解,能夠克服目前阻礙研究人員和臨牀醫生的可擴展性和靈活性方面的挑戰。我們正在部署bfLEAP,用於內部項目開發的幾個關鍵階段,並通過戰略合作伙伴關係和合作,旨在簡化治療開發中的數據分析, 通過降低新療法的失敗率來降低總體開發成本,並影響到無數原本可能得不到所需療法的患者的生活。BfLEAP平臺同時利用監督和非監督機器學習-因此,它能夠揭示數據中真實/有意義的聯繫,而不需要事先假設。有監督的機器學習使用標記的輸入和輸出數據,而非監督學習算法不使用。在有監督學習中,該算法通過迭代地對數據進行預測並調整正確答案來從訓練數據集中“學習”。無監督學習,也稱為無監督機器學習,使用機器學習算法來分析和聚類未標記的數據集。這些算法無需人工幹預即可發現隱藏的模式或數據分組。BfLEAP平臺中使用的算法旨在處理高度不平衡的數據集,以成功識別與感興趣的結果相關的因素組合。與我們的戰略合作伙伴和合作夥伴一起,我們的主要目標是提高臨牀前和臨牀治療發展的任何階段的成功機率。我們的主要商業模式是提高藥物開發的成功和效率,這是通過收購藥物或與開發藥物的公司建立夥伴關係和合作來實現的。我們希望通過戰略性收購目前的臨牀階段和失敗的藥物進行內部開發來實現這一目標, 或者通過與生物製藥行業公司的戰略合作伙伴關係。我們能夠通過利用最初源自JHU-APL開發的技術的強大且經過驗證的AI/ML平臺(商標:bfLEAP)來開展我們的藥物資產增強業務。我們相信,bfLEAP分析平臺對於分析臨牀前和/或臨牀數據集是一個潛在的顛覆性工具,例如在翻譯研發和臨牀試驗環境中生成的強大的臨牀前和臨牀試驗數據集。2021年11月,我們修改了與JHU-APL的協議,納入了額外的先進人工智能技術。我們的平臺與疾病適應症或治療方式無關,因此我們相信它在生物製品或小分子的開發中是有價值的。我們的藥物資產增強計劃的流程是:●從生物製藥行業公司或學術界獲得藥物的權利,●使用專有的bfLEAP AI/ML平臺為患者確定對該藥物最有效的多因素特徵,●快速進行臨牀試驗,以驗證該藥物在確定的“高響應者”人羣中的用途,以及●根據臨牀試驗的積極結果,剝離/出售帶有新信息的挽救的藥物資產給製藥行業的大型參與者。*注:截至9月9日的9個月招股説明書説,2022年30日,該公司運營淨虧損約211萬美元(合2106,969美元),沒有收入。“。”

Bullfrog AI Holdings, Inc. was founded in 2020 and has 4 employees. The company is located at 323 Ellington Blvd, Unit 317 Gaithersburg, MD 20878 and can be reached via phone at (240) 658-6710.

牛蛙AI控股有限公司成立於2020年,擁有4名員工。該公司位於馬裏蘭州蓋瑟斯堡317號埃靈頓大道323號,郵編:20878。

Receive News & Ratings for Bullfrog AI Holdings Inc. Daily - Enter your email address below to receive a concise daily summary of the latest news and analysts' ratings for Bullfrog AI Holdings Inc. and related companies with MarketBeat.com's FREE daily email newsletter.

每天接收牛蛙人工智能控股公司的新聞和評級-在下面輸入您的電子郵件地址,以通過MarketBeat.com的免費每日電子郵件時事通訊接收對BullFrog AI Holdings Inc.和相關公司的最新新聞和分析師評級的每日摘要。

譯文內容由第三人軟體翻譯。


以上內容僅用作資訊或教育之目的,不構成與富途相關的任何投資建議。富途竭力但無法保證上述全部內容的真實性、準確性和原創性。
    搶先評論