


Simplismart
Software Development • San Francisco, California, United States • 21-50 Employees
Company overview
| Headquarters | San Francisco, California, United States |
| Website | |
| Keywords | Voice, Artificial Intelligence, Deep Learning, Machine Learning, Workflow Management, Audio Transcription, LLM, Summarization, Predictive Analysis, Entity Extraction, Supervised Learning, Distributed Learning, RAG, Entity Classification, Auto-Scale Deployments, Diffusion Pipelines |
| Founded | 2022 |
| Employees | 21-50 |
| Socials |
Key Contacts at Simplismart
Daksh Goel
Founder'S Office
Amritanshu Jain
Co-Founder And Ceo
Ali Asgar Saifee
Founder'S Office - Growth
Shrayansh Agarwal
Founder'S Office - Product | Business | Growth
Arinjay Saxena
Founder'S Office
Thomas Hall
Head Of Sales - North America
Simplismart Email Formats
Simplismart uses 1 email format. The most common is {first initial} (e.g., j@simplismart.ai), used 100% of the time.
| Format | Example | Percentage |
|---|---|---|
{first initial} | j@simplismart.ai | 100% |
About Simplismart
Fastest inference for generative AI workloads. Simplified orchestration via a declarative language similar to terraform. Deploy any open-source model and take advantage of Simplismart’s optimised serving. With a growing quantum of workloads, one size does not fit all; use our building blocks to personalise an inference engine for your needs. ***API vs In-house*** Renting AI via third-party APIs has apparent downsides: data security, rate limits, unreliable performance, and inflated cost. Every company has different inferencing needs: *One size does not fit all.* Businesses need control to manage their cost <> performance tradeoffs. Hence, the movement towards open-source usage: businesses prefer small niche models trained on relevant datasets over large generalist models that do not justify ROI. **Need for MLOps platform*** Deploying large models comes with its hurdles: access to compute, model optimisation, scaling infrastructure, CI/CD pipelines, and cost efficiency, all requiring highly skilled machine learning engineers. We need a tool to support this advent towards generative AI, as we had tools to transition to cloud and mobile. MLOps platforms simplify orchestration workflows for in-house deployment cycles. Two off-the-shelf solutions readily available: 1. Orchestration platforms with model serving layer: *do not offer optimised performance for all models, limiting user’s ability to squeeze performance* 2. GenAI Cloud Platforms: *GPU brokers offering no control over cost* Enterprises need control. Simplismart’s MLOps platform provides them with building blocks to prepare for the necessary inference. The fastest inference engine allows businesses to unlock and run each model at performant speed. The inference engine has been optimised at three levels: the model-serving layer, infrastructure layer, and a model-GPU-chip interaction layer, while also enhanced with a known model compilation technique.
Simplismart revenue & valuation
| Annual revenue | $2,138,875 |
| Revenue per employee | $86,000 |
| Estimated valuation?This valuation is estimated based on industry average for the Software Development industry and current estimated revenues | $6,900,000 |
| Total funding | $7,000,000 |
Employees by Management Level
Total employees: 21-50
Seniority
Employees
Employees by Department
Simplismart has 23 employees across 9 departments.
Departments
Number of employees
Simplismart Tech Stack
Discover the technologies and tools that power Simplismart's digital infrastructure, from frameworks to analytics platforms.
Analytics
CDN
CDN
JavaScript libraries
Security
Appointment scheduling
JavaScript libraries
Advertising
Page builders
Analytics
JavaScript graphics
Frequently asked questions
4.8
40,000 users



