Built in Paris. Trusted across Europe. Meet the minds behind Rakam.

Great systems start with great engineers.

We’re not just building AI. We’re engineering the next generation of intelligent software. Our team blends research, design, and discipline to make AI work where it matters most: in production.

Precision First

Compliance Built In

Flex schedule

Impact Measured

Clarity Over Hype

Team retreat

Modern tools

Equity plan

Growth budget

Collaborative Culture

Great AI isn’t born from algorithms. It’s built by teams that understand what’s really worth automating.

“Making AI possible was just the beginning. At Rakam, our mission is to build AI that is responsible, reliable, and real.”

Jean De Bodinat

CEO & Founder

“Making AI possible was just the beginning. At Rakam, our mission is to build AI that is responsible, reliable, and real.”

Jean De Bodinat

CEO & Founder

“Making AI possible was just the beginning. At Rakam, our mission is to build AI that is responsible, reliable, and real.”

Jean De Bodinat

CEO & Founder

From Idea to Impact: Your AI Roadmap

A new era for your SaaS: redesigned interface, AI-enhanced logic

AI Study - Explore

Identify promising use cases based on your product challenges and market context

Security

Efficiency

Speed

Accuracy

Status:

Updating:

Security

Efficiency

Speed

Accuracy

Status:

Updating:

Security

Efficiency

Speed

Accuracy

Status:

Updating:

Prioritise Project Strategy

Assess the added value against the effort required for each proposed AI feature.

class Sampling(layers.Layer):

    """Uses (mean, log_var) to sample z, the vector encoding a digit."""

 

    def call(self, inputs):

        mean, log_var = inputs

        batch = tf.shape(mean)[0]

        dim = tf.shape(mean)[1]

        return mean + tf.exp(0.5 * log_var) * epsilon

class Sampling(layers.Layer):

    """Uses (mean, log_var) to sample z, the vector encoding a digit."""

 

    def call(self, inputs):

        mean, log_var = inputs

        batch = tf.shape(mean)[0]

        dim = tf.shape(mean)[1]

        return mean + tf.exp(0.5 * log_var) * epsilon

class Sampling(layers.Layer):

    """Uses (mean, log_var) to sample z, the vector encoding a digit."""

 

    def call(self, inputs):

        mean, log_var = inputs

        batch = tf.shape(mean)[0]

        dim = tf.shape(mean)[1]

        return mean + tf.exp(0.5 * log_var) * epsilon

Schedule Technical Project

Transform selected use cases into concrete, technically feasible solutions

[OUR VALUES]

How we build matters as much as what we build.

We believe great AI isn’t just about speed, but more about depth, discipline, and design. At Rakam, every decision from architecture to ethics is guided by a few simple principles that keep our work real, responsible, and resilient.

Rigorous

Meticulously engineered
for every use case

Responsible

AI Act ready, gearing trust,
one API at a time

Robust

performance alligned
with ROI