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Founded by passionate advocates of learning and innovation, Learni set out to make professional training accessible to everyone, everywhere in the world. Our team works in the largest cities such as Paris, Lyon, Marseille, and internationally, to support talents and organizations in their skills development.
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30 free minutes with a training advisor — no commitment.
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Don't let this gap widen
Without MLflow, 70% of ML projects fail due to lack of reproducibility, according to Gartner.
Lose 15-20h per week on manual tracking via scattered Jupyter notebooks, struggle to compare your 50+ monthly runs, deploy unstable models causing 30% errors in production.
Avoid project delays, team frustrations, hidden costs of 10k€/year in rework.
With this training, track everything in 5 min, deploy in 1 click, boost ML ROI x3 from the first month.
The Training MLflow - Master Reproducible ML Tracking training is delivered in-person or remotely (blended-learning, e-learning, virtual classroom, remote in-person). At Learni, a Qualiopi-certified training organization, each program is designed to maximize skills acquisition, regardless of the training mode chosen.
The trainer alternates between demonstrative, interrogative, and active methods (through practical exercises and/or real-world scenarios). This pedagogical approach ensures concrete and directly applicable learning in the workplace.
To ensure the quality of the Training MLflow - Master Reproducible ML Tracking training, Learni provides the following teaching resources:
For in-house training at a location external to Learni, the client ensures and commits to having all necessary teaching materials (IT equipment, internet connection...) for the proper conduct of the training action in accordance with the prerequisites indicated in the communicated training program.
The assessment of skills acquired during the Training MLflow - Master Reproducible ML Tracking training is carried out through:
Learni is committed to the accessibility of its professional training programs. All our training programs are accessible to people with disabilities. Our teams are available to adapt teaching methods to your specific needs. Do not hesitate to contact us for any accommodation request.
Learni training programs are available for inter-company and intra-company settings, both in-person and remote. Registration is possible up to 48 business hours before the start of training. Our programs are eligible for OPCO, Pôle emploi, and FNE-Formation funding. Contact us to discuss your training project and funding possibilities.
Dive into MLflow by installing the tool via pip, launch your first ML experiment tracking with mlflow.start_run(), explore the UI interface to visualize metrics and parameters, complete practical exercises on simple datasets like Iris, generate your first automated logs, and produce a deliverable experiment report to observe immediate reproducibility of your runs.
Advance to expert management by logging models and artifacts with mlflow.log_model(), configure the Model Registry to version your best models, apply to real-world cases like customer churn prediction, chain collaborative exercises in small groups, compare runs via the UI, and create a deployable model registry that boosts your productivity from the next day.
Master deployment by launching MLflow Serving to expose your models via REST API, integrate MLflow into pipelines with MLflow Projects, simulate an end-to-end workflow on a real Kaggle project, test predictions live, optimize hyperparameters via automated tracking, and finalize with a deliverable: a deployed model ready to scale in production.
Target audience
Data scientists, ML engineers, Python developers upskilling.
Prerequisites
Python basics, machine learning fundamentals.
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