50% off for Black Friday

Training Tools for Show Dogs

Bundle

Early Black Friday Deal: 50% off

Get 5 courses for 50% off when purchased in our "Training Tools for Show Dogs Bundle"

50% off only offered for Black Friday!

Get all 5 training tools courses for 50% off this Black Friday!

Train your dog for the show ring using advanced tools for stacking, gaiting and free baiting. In our training tools courses, Allison teaches you how to use Cavaletti Poles, Target Training, and Happy Stacker stack boxes to take your dog's training to the next level.

Included Courses:

  • Cavaletti Pole Training for Dogs
  • Advanced Training Techniques 2.0
  • Target Training for Dogs 2.0
  • Cavaletti Pole Training for Dogs Webinar 2.0
  • Teach Your Dog to Free Bait 2.0

If you are looking to have a confident, consistent and show-stopping show dog, The Training Tools for Show Dogs Bundle is for you!

Regular price: $397

Now $198 for Black Friday!

Included Courses

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Allison Alexander

Believing that you should always do what you love, Allison Alexander became a professional handler in 1987 and presented Canada's top dogs for over 30 years. Allison has bred, owned, groomed and handled many breeds across all seven groups and has finished more than 2000 champions!

With more than 750 All-Breed Best in Shows, she is proud to have been highly awarded at such prestigious shows as Crufts, the World Dog Show, Westminster Kennel Club, and the AKC Invitational.

In 2017, Allison launched Leading Edge Dog Show Academy, the world's first online dog show training school. Her mission is to help mentor a new generation of dog show enthusiasts through innovative video-based grooming and handling lessons. She looks forward to working with enthusiastic students as they perfect their skills on the way to the winner's circle!

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Apply the code EARLYFRIDAY at checkout if not automatically applied.