Chennai, 600040,
India
7 Miles Per Second Technographics
7 Miles Per Second Technographics, Software Purchases, AI and Digital Transformation Initiatives
Discover the latest software purchases and digital transformation initiatives being undertaken by 7 Miles Per Second and its business and technology executives. Each quarter our research team identifies on-prem and cloud applications that are being used by the 50 7 Miles Per Second employees from the public (Press Releases, Customer References, Testimonials, Case Studies and Success Stories) and proprietary sources.
During our research, we have identified that 7 Miles Per Second has purchased the following applications: Collect.chat for Chatbots and Conversational AI in 2019, Google Workspace (Formerly Google G-Suite) for Collaboration in 2016, Google Tag Manager for Tag Management in 2016 and the related IT decision-makers and key stakeholders.
Our database provides customer insight and contextual information on which enterprise applications and software systems 7 Miles Per Second is running and its propensity to invest more and deepen its relationship with Collect.chat , Google , Cloudflare or identify new suppliers as part of their overall Digital and IT transformation projects to stay competitive, fend off threats from disruptive forces, or comply with internal mandates to improve overall enterprise efficiency.
We have been analyzing 7 Miles Per Second revenues, which have grown to $5.0 million in 2024, plus its IT budget and roadmap, cloud software purchases, aggregating massive amounts of data points that form the basis of our forecast assumptions for 7 Miles Per Second intention to invest in emerging technologies such as AI, Machine Learning, IoT, Blockchain, Autonomous Database or in cloud-based ERP, HCM, CRM, EPM, Procurement or Treasury applications.
7 Miles Per Second Tech Stack and Enterprise Applications
AI-Powered Application
Vendor |
Previous System |
Application |
Category |
Market |
VAR/SI |
When |
Live |
Insight |
|---|---|---|---|---|---|---|---|---|
| Collect.chat | Legacy | Collect.chat | Chatbots and Conversational AI | AI-Powered Application | n/a | 2019 | 2019 |
In 2019, 7 Miles Per Second deployed Collect.chat on their public website to introduce a conversational touchpoint for visitor engagement. Collect.chat was implemented as a Chatbots and Conversational AI solution to capture inquiries, present guided conversational flows, and replace or augment static web forms for initial customer contact.
The implementation centered on embedding the Collect.chat widget in the site front end, configuring conversational scripts and conditional logic to qualify visitors and collect contact information. Operational ownership was aligned to marketing and client-facing teams who maintain dialogue content and perform iterative tuning, while the technical deployment remained lightweight and web-centric. This work emphasized common Chatbots and Conversational AI capabilities such as conversational form substitution, conditional branching, and lead capture workflows.
|
Collaboration
Vendor |
Previous System |
Application |
Category |
Market |
VAR/SI |
When |
Live |
Insight |
|---|---|---|---|---|---|---|---|---|
| Legacy | Google Workspace (Formerly Google G-Suite) | Collaboration | Collaboration | n/a | 2016 | 2016 |
|
CRM
Vendor |
Previous System |
Application |
Category |
Market |
VAR/SI |
When |
Live |
Insight |
|---|---|---|---|---|---|---|---|---|
| Legacy | Google Tag Manager | Tag Management | CRM | n/a | 2016 | 2016 |
|
IaaS
Vendor |
Previous System |
Application |
Category |
Market |
VAR/SI |
When |
Live |
Insight |
|---|---|---|---|---|---|---|---|---|
|
|
|
|
Content Delivery Network | IaaS |
|
2024 | 2024 |
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IT Decision Makers and Key Stakeholders at 7 Miles Per Second
| First Name | Last Name | Title | Function | Department | Phone | |
|---|---|---|---|---|---|---|
| No data found | ||||||
Apps Being Evaluated by 7 Miles Per Second Executives
| Date | Company | Status | Vendor | Product | Category | Market |
|---|---|---|---|---|---|---|
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