Salesforce Administrator/ Business Analyst

London
2 months ago
Applications closed

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Salesforce Administrator - Hybrid, West London - £36k

Are you a Salesforce person looking to make a significant impact?

This business builds machine learning models which predicts consumer behavior.

So they understand that the inner workings of their business needs to work seamlessly to be successful.

You will work directly with the Chief revenue officer to optimize the use of Salesforce within their organization. Your knowledge of Salesforce's capabilities, including configuration, customization, and integration, will support business processes and drive efficiency.

We are looking for someone who knows how to work with CRM systems to deliver the best results, you can learn salesforce if you have experience with similar products.

If you would like to upskill then this role with definitely be for you.

Some of your responsibilities:

Design, develop, and implement Salesforce solutions to meet business needs.
Configure and customize Salesforce, including workflows, dashboards, reports, and custom objects.
Collaborate with the Marketing and Sales teams to develop and maintain in-depth reports and analytics that track sales funnels and marketing efficiency.
Manage Salesforce integrations with other business systems and applications.
Automate Salesforce processes and support system integration.
Provide sales support and troubleshoot Salesforce-related issues promptly.
Train and support users to maximize their use of the platform.
Manage user accounts, onboarding, and offboarding, ensuring clean and accurate data.
Stay up-to-date with Salesforce updates and features to recommend improvements.Benefits

25 days holiday
Hybrid office + flexible WFH
Pension contribution
Life insurance
Critical illness cover
Daily office lunch
Office snacks/drinks
Subsidized gym membership
Cycle to work scheme

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