Physics / Tech Patent Attorney

Sacco Mann
London
1 year ago
Applications closed

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Stand out new opening!

If you are considering sending an application, make sure to hit the apply button below after reading through the entire description.Working with an exceptionally supportive, inclusive Partner, you will be joining a diverse, collegiate team with access to a fabulous, direct client list.

No churning through ‘same-old' telecoms here, you will be working with a range of premium tech and engineering businesses and sectors including automotive, optics, machine learning, consumer products, quantum computing, software and everything in between.

There is plenty of original drafting work along with complex prosecution and contentious work.

Having recently won and on-boarded an exciting new optics client, spirits are high and there could not be a better time to join the team!

Responsibilities:

Engage in original drafting work.

Handle complex prosecution and contentious work.

Maintain strong client relationships.

Collaborate effectively within a team-led environment.

Qualifications:

Physics (or similar) background.

Strong interpersonal skills and a team-oriented attitude.

Near qualifying to Associate level.

Excellent remuneration and a sociable, supportive culture. Please contact Lisa Kelly via



for more details.

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