Sector
Health Tech & Life SciencesDigital HealthcareMedical Decision Support
Target Customer
Healthcare & Life SciencesHealthcareProviders
Core Technology
Artificial IntelligenceMachine LearningNatural Language Processing
Tags (11)
digital-healthcarehealthcare-providershospitalsautomationmedical-databig-datadeep-learningartificial-intelligencedecision-supportsurveillancenatural-language-processing
Geographic Markets
United StatesIsrael
MilagroAI Financials
Undisclosed
Capital raised
Cumulative Funding Raised Over Time ($)
$450KDec 2020
$2.5MJan 2015
$3.3MJan 2016
$3.4MJan 2024
$8.4MMay 2022
Private Equity Funding
Crescendo Venture Partners (Lead)
,
Undisclosed Investor(s), Dreamit Ventures
Non-Equity Funding
Israel Innovation Authority
MilagroAI Lifecycle
Cumulative Funding Raised Over Time
$450KDec 2020
$2.5MJan 2015
$3.3MJan 2016
$3.4MJan 2024
$8.4MMay 2022
All Events
Crescendo Venture Partners (Lead)
,
Undisclosed Investor(s), Dreamit Ventures
Israel Innovation Authority
MilagroAI News
1 article
10 Israeli companies scouring digital data to save our lives
The article highlights 10 promising Israeli startups in the field of medical technology. These startups are utilizing artificial intelligence and machine learning to analyze health data and improve diagnoses. The startups mentioned include MonitHer, MaxQ AI, Aidoc, ART Medical, Clew Medical, Nucleai, Medial EarlySign, MilagroAI, MedAware, and Zebra Medical Vision. These companies are developing innovative solutions for breast health monitoring, brain bleed detection, radiology analysis, automated feeding tubes, sepsis prediction, disease diagnosis, and prescription accuracy. The article emphasizes the potential of these startups to revolutionize healthcare and improve patient outcomes.
CustomersInvestment
MilagroAI Team
Amit May-Dan
Co-founder & CEO
Founder
Gregory Hobbs
Co-founder & CMO
Founder
Employee Info
| Employees (range) | 51-200 |
| Exact count | 77 |
| Team members | 3 |
Similar Companies
Similar companies data is computed dynamically and not stored in the entity profile. This section requires implementing a similarity query (e.g. by classification overlap, sector, district).
This entity has 9 classification IDs that could be used for matching.