The activation of dinitrogen (N) and direct incorporation of its N atom into C-H bonds to create aliphatic C-N compounds remains unresolved. Incompatible conditions between dinitrogen reduction and C-H functionalization make this process extremely challenging. Herein, we report the first example of dinitrogen insertion into an aliphatic C-H bond on the ligand scaffold of a 1,3-propane-bridged [NN]-type dititanium complex. Mechanistic investigations on the behaviors of dinuclear and mononuclear Ti complexes indicated the intramolecular synergistic effect of two Ti centers at a C-N bond-forming step. Computational studies revealed the critical isomerization between the inactive side-on N complex and the active nitridyl complex, which is responsible for the C-H amination. This strategy maps an efficient route toward the future synthesis of aliphatic amines directly from N.

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