Case Studies.

Our Case Study database tracks 18,926 case studies in the global enterprise technology ecosystem.
Filters allow you to explore case studies quickly and efficiently.

Filters
  • (5,794)
    • (2,602)
    • (1,765)
    • (764)
    • (622)
    • (301)
    • (236)
    • (163)
    • (155)
    • (101)
    • (94)
    • (86)
    • (49)
    • (28)
    • (14)
    • (2)
    • View all
  • (5,073)
    • (2,519)
    • (1,260)
    • (761)
    • (490)
    • (436)
    • (345)
    • (86)
    • (1)
    • View all
  • (4,407)
    • (1,774)
    • (1,292)
    • (480)
    • (428)
    • (424)
    • (361)
    • (272)
    • (211)
    • (199)
    • (195)
    • (41)
    • (8)
    • (8)
    • (5)
    • (1)
    • View all
  • (4,157)
    • (2,048)
    • (1,256)
    • (926)
    • (169)
    • (9)
    • View all
  • (2,488)
    • (1,262)
    • (472)
    • (342)
    • (225)
    • (181)
    • (150)
    • (142)
    • (140)
    • (127)
    • (97)
    • View all
  • View all 15 Technologies
  • (1,732)
  • (1,626)
  • (1,605)
  • (1,460)
  • (1,423)
  • (1,411)
  • (1,313)
  • (1,178)
  • (1,059)
  • (1,017)
  • (832)
  • (811)
  • (794)
  • (707)
  • (631)
  • (604)
  • (595)
  • (552)
  • (500)
  • (441)
  • (382)
  • (348)
  • (316)
  • (302)
  • (295)
  • (265)
  • (233)
  • (192)
  • (191)
  • (184)
  • (168)
  • (165)
  • (127)
  • (116)
  • (115)
  • (81)
  • (80)
  • (63)
  • (58)
  • (56)
  • (23)
  • (9)
  • View all 42 Industries
  • (5,781)
  • (4,113)
  • (3,091)
  • (2,780)
  • (2,671)
  • (1,596)
  • (1,471)
  • (1,291)
  • (1,013)
  • (969)
  • (782)
  • (246)
  • (203)
  • View all 13 Functional Areas
  • (2,568)
  • (2,482)
  • (1,866)
  • (1,561)
  • (1,537)
  • (1,529)
  • (1,126)
  • (1,027)
  • (907)
  • (695)
  • (647)
  • (604)
  • (600)
  • (521)
  • (514)
  • (514)
  • (491)
  • (423)
  • (392)
  • (363)
  • (351)
  • (348)
  • (341)
  • (312)
  • (312)
  • (293)
  • (272)
  • (243)
  • (238)
  • (237)
  • (230)
  • (217)
  • (214)
  • (208)
  • (207)
  • (204)
  • (198)
  • (191)
  • (188)
  • (181)
  • (181)
  • (175)
  • (160)
  • (155)
  • (144)
  • (143)
  • (142)
  • (142)
  • (141)
  • (138)
  • (120)
  • (119)
  • (118)
  • (116)
  • (113)
  • (108)
  • (107)
  • (99)
  • (97)
  • (96)
  • (96)
  • (90)
  • (88)
  • (87)
  • (85)
  • (83)
  • (82)
  • (80)
  • (80)
  • (73)
  • (67)
  • (66)
  • (64)
  • (61)
  • (60)
  • (59)
  • (58)
  • (57)
  • (53)
  • (53)
  • (50)
  • (49)
  • (49)
  • (48)
  • (44)
  • (39)
  • (36)
  • (36)
  • (35)
  • (32)
  • (31)
  • (30)
  • (29)
  • (27)
  • (26)
  • (26)
  • (25)
  • (25)
  • (22)
  • (22)
  • (21)
  • (19)
  • (19)
  • (18)
  • (18)
  • (17)
  • (17)
  • (16)
  • (14)
  • (13)
  • (13)
  • (12)
  • (11)
  • (11)
  • (11)
  • (9)
  • (7)
  • (6)
  • (5)
  • (4)
  • (4)
  • (3)
  • (2)
  • (2)
  • (2)
  • (2)
  • (1)
  • View all 127 Use Cases
  • (10,333)
  • (3,499)
  • (3,391)
  • (2,981)
  • (2,593)
  • (1,261)
  • (932)
  • (344)
  • (10)
  • View all 9 Services
  • (503)
  • (432)
  • (382)
  • (301)
  • (246)
  • (143)
  • (116)
  • (112)
  • (106)
  • (87)
  • (85)
  • (78)
  • (75)
  • (73)
  • (72)
  • (69)
  • (69)
  • (67)
  • (65)
  • (65)
  • (64)
  • (62)
  • (58)
  • (55)
  • (54)
  • (54)
  • (53)
  • (53)
  • (52)
  • (52)
  • (50)
  • (50)
  • (49)
  • (48)
  • (47)
  • (46)
  • (43)
  • (43)
  • (42)
  • (37)
  • (35)
  • (32)
  • (31)
  • (31)
  • (30)
  • (30)
  • (28)
  • (28)
  • (27)
  • (24)
  • (23)
  • (23)
  • (23)
  • (22)
  • (21)
  • (21)
  • (20)
  • (20)
  • (19)
  • (19)
  • (19)
  • (19)
  • (18)
  • (18)
  • (18)
  • (18)
  • (17)
  • (17)
  • (16)
  • (16)
  • (16)
  • (16)
  • (16)
  • (16)
  • (16)
  • (16)
  • (15)
  • (14)
  • (14)
  • (14)
  • (14)
  • (14)
  • (14)
  • (14)
  • (13)
  • (13)
  • (13)
  • (13)
  • (13)
  • (13)
  • (13)
  • (13)
  • (13)
  • (13)
  • (13)
  • (12)
  • (12)
  • (12)
  • (12)
  • (12)
  • (11)
  • (11)
  • (11)
  • (11)
  • (11)
  • (11)
  • (11)
  • (11)
  • (11)
  • (11)
  • (10)
  • (10)
  • (10)
  • (10)
  • (10)
  • (9)
  • (9)
  • (9)
  • (9)
  • (9)
  • (9)
  • (9)
  • (9)
  • (9)
  • (9)
  • (9)
  • (9)
  • (9)
  • (8)
  • (8)
  • (8)
  • (8)
  • (8)
  • (8)
  • (8)
  • (8)
  • (8)
  • (7)
  • (7)
  • (7)
  • (7)
  • (7)
  • (7)
  • (7)
  • (7)
  • (7)
  • (7)
  • (7)
  • (7)
  • (7)
  • (7)
  • (7)
  • (7)
  • (7)
  • (7)
  • (7)
  • (7)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (6)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (5)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (4)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (3)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (2)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • (1)
  • View all 737 Suppliers
Selected Filters
18,926 case studies
ALARM NOTIFICATION SOFTWARE PROTECTS ORLY AIRPORT POWER PLANT
WIN-911
The plant is also responsible for covering Orly’s energy requirements in the event of a failure of the regional power supply. Should the local power grid ever fail, restoration of power must be seamless to ensure an uninterrupted supply of energy to all ANA-related systems. There is simply no margin for error when faced with such an implacable need for continuity.
Tracking Vehicles in a Snap
Synapse Wireless
Fiat Chrysler Automobile needed to keep track of their powered industrial vehicles (PIVs) throughout the 560 acres of the Chrysler Technology Center and World Headquarters. The Chrysler facilities team wanted an easy way to know where all of the PIVS were located at any given time. The team had been encountering issues with the PIVs rented to third-parties not being returned to the designated areas promptly, so they wanted an asset tracking system to help them find the missing PIVs. Unfortunately, all of the commercial systems they looked at would cost nearly a million dollars. The facilities team needed a more cost-effective way to track the PIVs. So they decided to create their own.
WinWire's Digital Transformation Journey with Azure and Generative AI
WinWire
The case study revolves around the challenge of digital transformation faced by many organizations. In the rapidly evolving digital landscape, businesses are under constant pressure to adapt and innovate. They need to increase their business agility, improve customer experience, and lower the total cost of ownership. However, the process of digital transformation is complex and fraught with challenges. It requires a deep understanding of technology, a clear vision for the future, and the ability to execute effectively. The challenge is not just about adopting new technologies, but also about changing the way businesses operate and deliver value to their customers.
Washington, D.C. Pediatric Center Consults on Heart Disease with Immersive Video
Cisco
• Provide urgent pediatric care to children in developing countries• Connect medical teams internationally in real time• Increase access to education for surgical teams and nurses
Largest Production Deployment of AI and IoT Applications
C3 IoT
To increase efficiency, develop new services, and spread a digital culture across the organization, Enel is executing an enterprise-wide digitalization strategy. Central to achieving the Fortune 100 company’s goals is the large-scale deployment of the C3 AI Suite and applications. Enel operates the world’s largest enterprise IoT system with 20 million smart meters across Italy and Spain.
olOne for Condition Monitoring
Given to identical production pipe lines in an industrial plant each one with one motor equipment monitored by temperature and pressure sensors: check if the motors parameters on both production lines behave the same way. This operational context, requires that data processing system must be able to analyze in real-time more than 1M+ data points/s per sensors.
ER Telecom Turns To LoRaWAN To Accelerate Digital Transformation In Russia
Actility
Russia offers a unique environment for IoT connectivity compared to densely populated European countries, because of the sheer size of the Russian Federation and its sparsely-populated or empty areas where there is no GSM mobile network coverage – although these areas can still be home to industries such as mining, oil & gas production or logging. In addition, there is a specific requirement to store and process all data within Russian borders to comply with national data protection regulations.
Acoustics Analytics in Manufacturing
IBM
Maintenance of the production line is timely and costly. Knowing when to maintain an asset for peak performance is critical.
Making Landfills Safer
Synapse Wireless
While we not often think about it, the breakdown of matter in landfills potential produces methane and hydrogen sulfide gases. These gases present a risk of explosion (as they are both flammable) and hydrogen sulfide serves as a health hazard—potentially causing death if breathed in massive doses. Given the volatility of these two by-products of landfills, many local governments seek out better ways to monitor the potential production of these gases in their landfills. Moreover, seeing the needs of these local governments, Plexus Controls, a Canadian-owned designer and manufacturer of wireless monitoring and control products, decided to create a product for monitoring methane and hydrogen sulfide gases for landfills.
Modell’s Ups its Game with Self-service Data Prep
Retail is a fast-paced business. To stay competitive, organizations like Modell’s must react quickly to market place conditions, industry trends, and economic upticks and downturns, sometimes overnight. 20 years ago, critical sales, inventory and transactional data lived in a mainframe system that was only accessible through Lotus 1-2-3. Joe Paltenstein, now AVP, Assistant Controller at Modell’s Sporting Goods said, “It was challenging to get the data we needed out of the mainframe system and into a workable format that we could use. And with so many different types of data it was hard to extract any useful insights without a painfully slow reformatting process. We had to print out reports on green bar paper and then entered the data into spreadsheets.”
GreenRoad Technologies - GreenRoad Driver Behavior (Dupré Logistics)
GreenRoad Technologies
Dupré Logistics needed an effective yet non-intrusive way to improve safety for 800 drivers without reducing driver productivity or increasing net costs. For Dupré Logistics, the level of safety achieved by its drivers is directly tied to the level of profitability achieved by the company.
WIN-911 BABYSITS WASTEWATER TREATMENT PLANT
WIN-911
The City had been staffing their WWTP system 24/7, but could see that with the SCADA upgrades that the night operator was unproductive and bored. The overnight position was difficult to keep staffed and if a dramatic event occurred at either facility, the night shift operator would likely be unable to handle it himself.
Green Corporate HQ Roof
Opti
A Fortune 500 corporation wanted to reduce wet-weather discharge and enhance environmental benefits of their existing flood irrigated green roof while maintaining functionality.
LSE Group to develop Securities Data Blockchain Solution for European SMEs
IBM
Sharing secure and transparent critical network data across shareholder networks is difficult using traditional system. Furthermore, private SMEs lack access to public stock exchange networks or formalized credit structures.
Reliable Identification Solutions for the Automotive Industry
S+P Samson
High quality standards and full material traceability are essentialrequirements for identification solutions in the automotiveindustry. Parts identification and container management areconsidered to be important factors for a problem-free productionprocess. The labels must also retain their adhesive properties on many different types of surfaces - from porous structures to oilymaterials. The labels should also be able to withstand rugged, high-temperature environments without tearing or peeling off.
How Blockchain helped National Association of REALTORS Improve Member Services
IBM
The various local and state associations are independent corporations working together to deliver programs under a Code of Ethics that is over a hundred years old. There is an existing centralized database containing members’ billing information.Engagement information such as volunteerism, professional development and committee service is not shared. While sharing member engagement information is essential, it is difficult to get 1200 organizations to agree to contribute and relinquish control of their data to a single database.
How Augment’s Integration With Salesforce Streamlines the Sales Process
Augment
Coca Cola Germany’s sales team used to face a number of challenges when selling its beverage coolers.  Among the wide variety of designs and sizes available, it was difficult to find the ideal fit for each store and to show customers how Coca-Cola’s coolers would look in their space.  There seemed to be no solution that enabled customers to quickly reach a full appreciation of the product and layout.
8x increased productivity with VKS
VKS
Before VKS, a teacher would spend a lot of time showing a group of 22 students how to build a set of stairs within a semester of 120 hours. Along with not leaving the teacher much time to provide one-on-one support for each student to properly learn carpentry, it also left a considerable amount of room for error. Key information would be misinterpreted or lost as the class was taught in the typical show-and-tell way.
Predictive Maintenance
Faststream Technologies
Our client designs, manufactures, and leases industrial equipment and provides software to remotely monitor equipment operations. They looked to Faststream Technologies to accelerate the prototyping of intelligent features in the software platform that could reduce downtime of machinery by predicting and preventing faults.Working closely with our client’s software engineering team, Faststream built a predictive analytics prototype that consists of 2 wire current sensors, an Anemometer, equipment sensor time-series data to predict and prevent machine downtime. The system alerts field teams about units at risk of faulting, so they can proactively take action before any failure. The client’s team is able to continue the work on their own, maintain the code, and conduct further experiments using the data processing pipeline and machine learning framework we created.One sensor that we used was an inertial sensor that includes a Machine Learning Core (MLC) and a Finite State Machine (FSM). A revolutionary aspect of this sensor is that it has an embedded Machine Learning Core. Our team could configure specific parameters of the decision tree with Weka, an open-source collection of machine learning algorithms. 
Thin Client
Faststream Technologies
Our client requirement was to solve their desktop management environment. They aimed at minimizing cyclic renewal costs while maximizing their desktop hardware lifespan. They wanted to give their employees wider access, simplifying the management of hardware and increasing renewal costs.
Predictive Maintenance For Connected Vehicles
Luxoft
By 2025, Transport for London will have to meet strict emission-control regulations. This means buying and operating new fleets of hybrid or fully electric, zero-emission buses. As a consequence, many Original Equipment Manufacturers (OEMs) and operators will have to develop new technologies to help them get-to-market fast enough to meet demand.
K-Engine's On-site Design & Cost Estimation Benefits Using AR
VividWorks
In the housing industry, around 60,000 small to midsize housing builders are creating images and calculating the estimated cost of each project based on the requirements of home owners. Due to the huge selection of products and options, it usually takes around one week and cost for users to create images using CAD tools in addition to picking out products from multiple vendor product catalogs.
Wetland Sewer Overflow Reduction
Opti
The City of St. Joseph needed high-value solutions to reduce combined sewer overflows as a component of a large program to address regulatory requirements. During the design and construction of a wetland park, intelligent stormwater infrastructure was chosen to attenuate peak flows and help reduce wet-weather flow to the combined sewer.
Mobile – Based Solution To Integrate Disparate IoT Devices
Zerone Technologies
The quality of water is assessed against several parameters (around16+) using numerous sensors placed at the respective locations. The information generated by the sensors is in a form incomprehensible to humans (in bits and bytes). The staff that monitor water quality had to visit the location physically to check the parameters. This consumed a lot of time. One person is responsible for monitoring water quality at multiple locations. Most of the times, all the parameters will be within their thresholds. Only when the parameters go out of thresholds, the responsible person need to act upon it. So, ideally, an application should monitor water parameters at fixed intervals and give appropriate alarms to the responsible person, only when some parameters need attention. There were multiple types of instruments and different versions of the same type of instrument placed at several locations to check the quality of water. All these devices generated a huge quantity of data. The customer required an application that integrated all their IoT devices and provided reports, analytics and insights from a central depository.
Revolutionizing Construction Equipment Rental: A Case Study on ProsRent and ENO8
ENO8
ProsRent, a startup that won the 'Best Financial Opportunity' and 'Best Pitch' at CodeLaunch 2016, aimed to revolutionize the way construction professionals source and rent heavy equipment. In the construction industry, project managers and contractors typically rent heavy equipment from supply companies. However, predicting inventory can be challenging, and finding the required equipment at the right time and place can be a hassle. If the preferred vendor doesn't have the required equipment, it results in wasted time and money in searching for it, often leading to higher costs due to non-preferred rates and increased delivery costs if the vendor is located far from the job site. Suppliers, on the other hand, desired access to a wider base of trusted renters that they didn't have to vet themselves and wanted to offer dynamic rental pricing based on demand and availability in their market. ProsRent's challenge was to produce a minimum viable product that was fast and first to market but also strong enough to engender loyalty and repeat business from the target market.
Desoutter streamlines the digital transformation with CodeMeter
WIBU-SYSTEMS
In the Industry 4.0 world, Desoutter’s customers call for a higher degree of flexibility in the way they can use their products. The company looked for a solution that could bring that level of versatility within reach for every customer and help establish Desoutter’s position as an Industrial Internet frontrunner in the market.
Fully Automated Identification for Alping Italia
S+P Samson
Full material traceability ensures process reliability in production and it is a major building block for the economic success of manufacturing companies. To optimise production management, automated identification systems with tags which have barcodes printed on them are now increasingly used in production facilities and warehouses. This ensures full control from the receipt of raw materials to the finishing of the products and shipping.The steel industry in particular, is a difficult environment and the labels and tags that ensure full material traceability have to withstand extreme conditions. Raw materials and products have rough surfaces. In addition, the data carriers are exposed to enormous heat and heavy soiling. And last but not least, the whole identification process always has to be carried out under time pressure.
Re-Inventing Food Safety
Synapse Wireless
Sigma Industrial Automation formerly specialized in creating weights and scales for the food industry when they realized their customers were doing the majority of their measurements by hand. Seeing an opportunity to expand their product offering and improve their customers’ experience, Sigma team members decided to explore the creation of wireless equipment that could send measurements to a computer. Sigma just needed a way to make a product that met their customers’ needs—and a way to do it fast.
New GHS Regulations Require New Identification Concepts
S+P Samson
With the GHS regulations (GHS - Globally Harmonized System) the United Nations wanted to minimise the risks to human health and the environment arising from production, transport and the use of hazardous substances. Standardised danger symbols and texts now have to be used for the identification of chemicals around the world. 1200 quality products not only need to be produced, they also need to be stored and shipped in a professional manner. In April 2014, a dedicated team was set up to manage the changeover to the new GHS regulations under the umbrella of the PETROFER CHEMIE ICT (Information & Communication Technology) department. It was chaired by Roland Günther and Jonas Hartmann. They subjected the existing logistics and identification processes to some rigorous tests. They analysed and conceptualised.
An efficient solution for checking-in a flexible and ever-changing workforce
Rombit
According to EU and (when applicable) Belgian regulation, every worker and subcontractor needs to be registered in the Belgian social security database before entering a construction site. When you have a large and ever-changing workforce, this is a continuous administrative hassle with many errors.

Contact us

Let's talk!

* Required
* Required
* Required
* Invalid email address
By submitting this form, you agree that IoT ONE may contact you with insights and marketing messaging.
No thanks, I don't want to receive any marketing emails from IoT ONE.
Submit

Thank you for your message!
We will contact you soon.